コード例 #1
0
def dressed_dilep(df, gen, dressed):
    """
    Build a dilepton candidate from dressed leptons.

    :param df: Data frame
    :type df: dataframe
    :param gen: Gen. candidates
    :type gen: JaggedCandidateArray
    :param dressed: Dressed gen candidates
    :type dressed: JaggedCandidateArray
    :return: pt and phi of dilepton
    :rtype: tuple of two 1D arrays
    """
    # Dressed leptons
    neutrinos = gen[(gen.status == 1) & isnu(gen.pdg) & ((gen.flag & 1) == 1)]
    if is_lo_z(df['dataset']) or is_nlo_z(df['dataset']) or is_lo_z_ewk(
            df['dataset']):
        target = 91

        # nu
        dilep_nu = find_gen_dilepton(neutrinos, 0)
        dilep_nu = dilep_nu[np.abs(dilep_nu.mass - target).argmin()]

        # For Z(nunu), we are done here
        if is_lo_znunu(df['dataset']):
            return dilep_nu.pt.max(), dilep_nu.phi.max()

        # For DY, we have to deal with ele/mu decays as well as
        # with leptonic tau decays
        # e, mu
        dilep_dress = find_gen_dilepton(dressed, 0)
        dilep_dress = dilep_dress[np.abs(dilep_dress.mass - target).argmin()]

        # tau
        dilep_tau = find_gen_dilepton(gen[np.abs(gen.pdg) == 15], 0)
        dilep_tau = dilep_tau[np.abs(dilep_tau.mass - target).argmin()]

        # Merge by taking higher-mass
        return merge_dileptons(dilep_tau, dilep_dress, target=target)

    elif is_lo_w(df['dataset']) or is_nlo_w(df['dataset']) or is_lo_w_ewk(
            df['dataset']):
        target = 81
        # e, mu
        dilep_dress = dressed.cross(neutrinos)
        dilep_dress = dilep_dress[ (
                                      ((np.abs(dilep_dress.i0.pdg)==11) & (np.abs(dilep_dress.i1.pdg)==12) ) \
                                    | ((np.abs(dilep_dress.i0.pdg)==13) & (np.abs(dilep_dress.i1.pdg)==14) ) \
                                    ) & (dilep_dress.i0.pdg*dilep_dress.i1.pdg< 0)
                                    ]
        dilep_dress = dilep_dress[np.abs(dilep_dress.mass - target).argmin()]

        # tau
        dilep_tau = find_gen_dilepton(
            gen[(np.abs(gen.pdg) == 15) | (np.abs(gen.pdg) == 16)], 1)
        dilep_tau = dilep_tau[np.abs(dilep_tau.mass - target).argmin()]
        return merge_dileptons(dilep_tau, dilep_dress, target=target)
コード例 #2
0
ファイル: lheVProcessor.py プロジェクト: alpakpinar/bucoffea
    def process(self, df):
        output = self.accumulator.identity()
        dataset = df['dataset']

        genjets = setup_lhe_cleaned_genjets(df)

        # Dilepton
        gen = setup_gen_candidates(df)
        tags = ['stat1', 'lhe']
        if is_lo_w(dataset) or is_nlo_w(dataset) or is_lo_z(
                dataset) or is_nlo_z(dataset):
            dressed = setup_dressed_gen_candidates(df)
            fill_gen_v_info(df, gen, dressed)
            tags.append('dress')
        elif is_lo_g(dataset) or is_nlo_g(dataset) or is_lo_g_ewk(
                dataset) or is_nlo_g_ewk(dataset):
            photons = gen[(gen.status == 1) & (gen.pdg == 22)]
            df['gen_v_pt_stat1'] = photons.pt.max()
            df['gen_v_phi_stat1'] = photons[photons.pt.argmax()].phi.max()
            df['gen_v_pt_lhe'] = df['LHE_Vpt']
            df['gen_v_phi_lhe'] = np.zeros(df.size)

        for tag in tags:
            # Dijet for VBF
            dijet = genjets[:, :2].distincts()

            # Selection
            vbf_sel = vbf_selection(df[f'gen_v_phi_{tag}'], dijet, genjets)
            monojet_sel = monojet_selection(df[f'gen_v_phi_{tag}'], genjets)

            nominal = df['Generator_weight']

            output[f'gen_vpt_inclusive_{tag}'].fill(dataset=dataset,
                                                    vpt=df[f'gen_v_pt_{tag}'],
                                                    weight=nominal)

            mask_vbf = vbf_sel.all(*vbf_sel.names)
            output[f'gen_vpt_vbf_{tag}'].fill(
                dataset=dataset,
                vpt=df[f'gen_v_pt_{tag}'][mask_vbf],
                jpt=genjets.pt.max()[mask_vbf],
                mjj=dijet.mass.max()[mask_vbf],
                weight=nominal[mask_vbf])

            mask_monojet = monojet_sel.all(*monojet_sel.names)

            output[f'gen_vpt_monojet_{tag}'].fill(
                dataset=dataset,
                vpt=df[f'gen_v_pt_{tag}'][mask_monojet],
                jpt=genjets.pt.max()[mask_monojet],
                weight=nominal[mask_monojet])

        # Keep track of weight sum
        output['sumw'][dataset] += df['genEventSumw']
        output['sumw2'][dataset] += df['genEventSumw2']
        return output
コード例 #3
0
ファイル: gen.py プロジェクト: vukasinmilosevic/bucoffea
def dressed_dilep(df, gen, dressed):
    """
    Build a dilepton candidate from dressed leptons.

    :param df: Data frame
    :type df: dataframe
    :param gen: Gen. candidates
    :type gen: JaggedCandidateArray
    :param dressed: Dressed gen candidates
    :type dressed: JaggedCandidateArray
    :return: pt and phi of dilepton
    :rtype: tuple of two 1D arrays
    """
    # Dressed leptons
    neutrinos = gen[(gen.status == 1) & isnu(gen.pdg)]
    if is_lo_z(df['dataset']) or is_nlo_z(df['dataset']) or is_lo_z_ewk(
            df['dataset']):
        # e, mu
        dilep_dress = find_gen_dilepton(dressed, 0)
        dilep_dress = dilep_dress[dilep_dress.mass.argmax()]

        #nu
        dilep_nu = find_gen_dilepton(neutrinos, 0)
        dilep_nu = dilep_nu[dilep_nu.mass.argmax()]

        # tau
        dilep_tau = find_gen_dilepton(gen[np.abs(gen.pdg) == 15], 0)
        dilep_tau = dilep_tau[dilep_tau.mass.argmax()]

        # Merge by taking higher-mass
        return merge_dileptons(dilep_tau, dilep_dress, dilep_nu)

    elif is_lo_w(df['dataset']) or is_nlo_w(df['dataset']) or is_lo_w_ewk(
            df['dataset']):
        # e, mu
        dilep_dress = dressed.cross(neutrinos)
        dilep_dress = dilep_dress[np.abs(dilep_dress.i0.pdg +
                                         dilep_dress.i1.pdg) == 1]
        dilep_dress = dilep_dress[dilep_dress.mass.argmax()]

        # tau
        dilep_tau = find_gen_dilepton(
            gen[(np.abs(gen.pdg) == 15) | (np.abs(gen.pdg) == 16)], 1)
        dilep_tau = dilep_tau[dilep_tau.mass.argmax()]
        return merge_dileptons(dilep_tau, dilep_dress)
コード例 #4
0
ファイル: gen.py プロジェクト: vukasinmilosevic/bucoffea
def stat1_dilepton(df, gen):
    """Build a dilepton candidate from status 1 leptons

    :param df: Data frame
    :type df: dataframe
    :param gen: Gen. candidates
    :type gen: JaggedCandidateArray
    :return: pt and phi of dilepton
    :rtype: tuple of two 1D arrays
    """
    if is_lo_z(df['dataset']) or is_lo_z_ewk(df['dataset']) or is_nlo_z(
            df['dataset']):
        pdgsum = 0
    elif is_lo_w(df['dataset']) or is_lo_w_ewk(df['dataset']) or is_nlo_w(
            df['dataset']):
        pdgsum = 1
    gen_dilep = find_gen_dilepton(gen, pdgsum)
    gen_dilep = gen_dilep[gen_dilep.mass.argmax()]
    return gen_dilep.pt.max(), gen_dilep.phi.max()
コード例 #5
0
    def process(self, df):
        if not df.size:
            return self.accumulator.identity()
        self._configure(df)
        dataset = df['dataset']
        df['is_lo_w'] = is_lo_w(dataset)
        df['is_lo_z'] = is_lo_z(dataset)
        df['is_lo_znunu'] = is_lo_znunu(dataset)
        df['is_lo_w_ewk'] = is_lo_w_ewk(dataset)
        df['is_lo_z_ewk'] = is_lo_z_ewk(dataset)
        df['is_lo_g'] = is_lo_g(dataset)
        df['is_nlo_z'] = is_nlo_z(dataset)
        df['is_nlo_w'] = is_nlo_w(dataset)
        df['has_lhe_v_pt'] = df['is_lo_w'] | df['is_lo_z'] | df[
            'is_nlo_z'] | df['is_nlo_w'] | df['is_lo_g'] | df[
                'is_lo_w_ewk'] | df['is_lo_z_ewk']
        df['is_data'] = is_data(dataset)

        gen_v_pt = None
        if df['is_lo_w'] or df['is_lo_z'] or df['is_nlo_z'] or df[
                'is_nlo_w'] or df['is_lo_z_ewk'] or df['is_lo_w_ewk']:
            gen = setup_gen_candidates(df)
            dressed = setup_dressed_gen_candidates(df)
            fill_gen_v_info(df, gen, dressed)
            gen_v_pt = df['gen_v_pt_combined']
        elif df['is_lo_g']:
            gen = setup_gen_candidates(df)
            all_gen_photons = gen[(gen.pdg == 22)]
            prompt_mask = (all_gen_photons.status
                           == 1) & (all_gen_photons.flag & 1 == 1)
            stat1_mask = (all_gen_photons.status == 1)
            gen_photons = all_gen_photons[prompt_mask |
                                          (~prompt_mask.any()) & stat1_mask]
            gen_photon = gen_photons[gen_photons.pt.argmax()]

            gen_v_pt = gen_photon.pt.max()

        # Generator-level leading dijet mass
        if df['has_lhe_v_pt']:
            genjets = setup_lhe_cleaned_genjets(df)
            digenjet = genjets[:, :2].distincts()
            df['mjj_gen'] = digenjet.mass.max()
            df['mjj_gen'] = np.where(df['mjj_gen'] > 0, df['mjj_gen'], 0)

        # Candidates
        # Already pre-filtered!
        # All leptons are at least loose
        # Check out setup_candidates for filtering details
        met_pt, met_phi, ak4, bjets, _, muons, electrons, taus, photons = setup_candidates(
            df, cfg)

        # Remove jets in accordance with the noise recipe
        if df['year'] == 2017:
            ak4 = ak4[(ak4.ptraw > 50) | (ak4.abseta < 2.65) |
                      (ak4.abseta > 3.139)]
            bjets = bjets[(bjets.ptraw > 50) | (bjets.abseta < 2.65) |
                          (bjets.abseta > 3.139)]

        # Filtering ak4 jets according to pileup ID
        ak4 = ak4[ak4.puid]

        # Muons
        df['is_tight_muon'] = muons.tightId \
                      & (muons.iso < cfg.MUON.CUTS.TIGHT.ISO) \
                      & (muons.pt>cfg.MUON.CUTS.TIGHT.PT) \
                      & (muons.abseta<cfg.MUON.CUTS.TIGHT.ETA)

        dimuons = muons.distincts()
        dimuon_charge = dimuons.i0['charge'] + dimuons.i1['charge']

        df['MT_mu'] = ((muons.counts == 1) *
                       mt(muons.pt, muons.phi, met_pt, met_phi)).max()

        # Electrons
        df['is_tight_electron'] = electrons.tightId \
                            & (electrons.pt > cfg.ELECTRON.CUTS.TIGHT.PT) \
                            & (electrons.absetasc < cfg.ELECTRON.CUTS.TIGHT.ETA)

        dielectrons = electrons.distincts()
        dielectron_charge = dielectrons.i0['charge'] + dielectrons.i1['charge']

        df['MT_el'] = ((electrons.counts == 1) *
                       mt(electrons.pt, electrons.phi, met_pt, met_phi)).max()

        # ak4
        leadak4_index = ak4.pt.argmax()

        elejet_pairs = ak4[:, :1].cross(electrons)
        df['dREleJet'] = np.hypot(
            elejet_pairs.i0.eta - elejet_pairs.i1.eta,
            dphi(elejet_pairs.i0.phi, elejet_pairs.i1.phi)).min()
        muonjet_pairs = ak4[:, :1].cross(muons)
        df['dRMuonJet'] = np.hypot(
            muonjet_pairs.i0.eta - muonjet_pairs.i1.eta,
            dphi(muonjet_pairs.i0.phi, muonjet_pairs.i1.phi)).min()

        # Recoil
        df['recoil_pt'], df['recoil_phi'] = recoil(met_pt, met_phi, electrons,
                                                   muons, photons)

        df["dPFCaloSR"] = (met_pt - df["CaloMET_pt"]) / met_pt
        df["dPFCaloCR"] = (met_pt - df["CaloMET_pt"]) / df["recoil_pt"]

        df["dPFTkSR"] = (met_pt - df["TkMET_pt"]) / met_pt

        df["minDPhiJetRecoil"] = min_dphi_jet_met(ak4,
                                                  df['recoil_phi'],
                                                  njet=4,
                                                  ptmin=30,
                                                  etamax=5.0)
        df["minDPhiJetMet"] = min_dphi_jet_met(ak4,
                                               met_phi,
                                               njet=4,
                                               ptmin=30,
                                               etamax=5.0)
        selection = processor.PackedSelection()

        # Triggers
        pass_all = np.ones(df.size) == 1
        selection.add('inclusive', pass_all)
        selection = trigger_selection(selection, df, cfg)

        selection.add('mu_pt_trig_safe', muons.pt.max() > 30)

        # Common selection
        selection.add('veto_ele', electrons.counts == 0)
        selection.add('veto_muo', muons.counts == 0)
        selection.add('veto_photon', photons.counts == 0)
        selection.add('veto_tau', taus.counts == 0)
        selection.add('at_least_one_tau', taus.counts > 0)
        selection.add('veto_b', bjets.counts == 0)
        selection.add('mindphijr',
                      df['minDPhiJetRecoil'] > cfg.SELECTION.SIGNAL.MINDPHIJR)
        selection.add('mindphijm',
                      df['minDPhiJetMet'] > cfg.SELECTION.SIGNAL.MINDPHIJR)

        selection.add('dpfcalo_sr',
                      np.abs(df['dPFCaloSR']) < cfg.SELECTION.SIGNAL.DPFCALO)
        selection.add('dpfcalo_cr',
                      np.abs(df['dPFCaloCR']) < cfg.SELECTION.SIGNAL.DPFCALO)

        selection.add('recoil', df['recoil_pt'] > cfg.SELECTION.SIGNAL.RECOIL)
        selection.add('met_sr', met_pt > cfg.SELECTION.SIGNAL.RECOIL)

        # AK4 dijet
        diak4 = ak4[:, :2].distincts()
        leadak4_pt_eta = (diak4.i0.pt > cfg.SELECTION.SIGNAL.LEADAK4.PT) & (
            np.abs(diak4.i0.eta) < cfg.SELECTION.SIGNAL.LEADAK4.ETA)
        trailak4_pt_eta = (diak4.i1.pt > cfg.SELECTION.SIGNAL.TRAILAK4.PT) & (
            np.abs(diak4.i1.eta) < cfg.SELECTION.SIGNAL.TRAILAK4.ETA)
        hemisphere = (diak4.i0.eta * diak4.i1.eta < 0).any()
        has_track0 = np.abs(diak4.i0.eta) <= 2.5
        has_track1 = np.abs(diak4.i1.eta) <= 2.5

        leadak4_id = diak4.i0.tightId & (has_track0 * (
            (diak4.i0.chf > cfg.SELECTION.SIGNAL.LEADAK4.CHF) &
            (diak4.i0.nhf < cfg.SELECTION.SIGNAL.LEADAK4.NHF)) + ~has_track0)
        trailak4_id = has_track1 * (
            (diak4.i1.chf > cfg.SELECTION.SIGNAL.TRAILAK4.CHF) &
            (diak4.i1.nhf < cfg.SELECTION.SIGNAL.TRAILAK4.NHF)) + ~has_track1

        df['mjj'] = diak4.mass.max()
        df['dphijj'] = dphi(diak4.i0.phi.min(), diak4.i1.phi.max())
        df['detajj'] = np.abs(diak4.i0.eta - diak4.i1.eta).max()

        leading_jet_in_horn = ((diak4.i0.abseta < 3.2) &
                               (diak4.i0.abseta > 2.8)).any()
        trailing_jet_in_horn = ((diak4.i1.abseta < 3.2) &
                                (diak4.i1.abseta > 2.8)).any()

        selection.add('hornveto', (df['dPFTkSR'] < 0.8)
                      | ~(leading_jet_in_horn | trailing_jet_in_horn))

        if df['year'] == 2018:
            if df['is_data']:
                metphihem_mask = ~((met_phi > -1.8) & (met_phi < -0.6) &
                                   (df['run'] > 319077))
            else:
                metphihem_mask = pass_all
            selection.add("metphihemextveto", metphihem_mask)
            selection.add('no_el_in_hem',
                          electrons[electrons_in_hem(electrons)].counts == 0)
        else:
            selection.add("metphihemextveto", pass_all)
            selection.add('no_el_in_hem', pass_all)

        selection.add('two_jets', diak4.counts > 0)
        selection.add('leadak4_pt_eta', leadak4_pt_eta.any())
        selection.add('trailak4_pt_eta', trailak4_pt_eta.any())
        selection.add('hemisphere', hemisphere)
        selection.add('leadak4_id', leadak4_id.any())
        selection.add('trailak4_id', trailak4_id.any())
        selection.add('mjj',
                      df['mjj'] > cfg.SELECTION.SIGNAL.DIJET.SHAPE_BASED.MASS)
        selection.add(
            'dphijj',
            df['dphijj'] < cfg.SELECTION.SIGNAL.DIJET.SHAPE_BASED.DPHI)
        selection.add(
            'detajj',
            df['detajj'] > cfg.SELECTION.SIGNAL.DIJET.SHAPE_BASED.DETA)

        # Cleaning cuts for signal region
        max_neEmEF = np.maximum(diak4.i0.nef, diak4.i1.nef)
        selection.add('max_neEmEF', (max_neEmEF < 0.7).any())

        vec_b = calculate_vecB(ak4, met_pt, met_phi)
        vec_dphi = calculate_vecDPhi(ak4, met_pt, met_phi, df['TkMET_phi'])

        no_jet_in_trk = (diak4.i0.abseta > 2.5).any() & (diak4.i1.abseta >
                                                         2.5).any()
        no_jet_in_hf = (diak4.i0.abseta < 3.0).any() & (diak4.i1.abseta <
                                                        3.0).any()

        at_least_one_jet_in_hf = (diak4.i0.abseta >
                                  3.0).any() | (diak4.i1.abseta > 3.0).any()
        at_least_one_jet_in_trk = (diak4.i0.abseta <
                                   2.5).any() | (diak4.i1.abseta < 2.5).any()

        # Categorized cleaning cuts
        eemitigation = ((no_jet_in_hf | at_least_one_jet_in_trk) &
                        (vec_dphi < 1.0)) | (
                            (no_jet_in_trk & at_least_one_jet_in_hf) &
                            (vec_b < 0.2))

        selection.add('eemitigation', eemitigation)

        # HF-HF veto in SR
        both_jets_in_hf = (diak4.i0.abseta > 3.0) & (diak4.i1.abseta > 3.0)
        selection.add('veto_hfhf', ~both_jets_in_hf.any())

        # Divide into three categories for trigger study
        if cfg.RUN.TRIGGER_STUDY:
            two_central_jets = (np.abs(diak4.i0.eta) <= 2.4) & (np.abs(
                diak4.i1.eta) <= 2.4)
            two_forward_jets = (np.abs(diak4.i0.eta) > 2.4) & (np.abs(
                diak4.i1.eta) > 2.4)
            one_jet_forward_one_jet_central = (~two_central_jets) & (
                ~two_forward_jets)
            selection.add('two_central_jets', two_central_jets.any())
            selection.add('two_forward_jets', two_forward_jets.any())
            selection.add('one_jet_forward_one_jet_central',
                          one_jet_forward_one_jet_central.any())

        # Dimuon CR
        leadmuon_index = muons.pt.argmax()
        selection.add('at_least_one_tight_mu', df['is_tight_muon'].any())
        selection.add('dimuon_mass', ((dimuons.mass > cfg.SELECTION.CONTROL.DOUBLEMU.MASS.MIN) \
                                    & (dimuons.mass < cfg.SELECTION.CONTROL.DOUBLEMU.MASS.MAX)).any())
        selection.add('dimuon_charge', (dimuon_charge == 0).any())
        selection.add('two_muons', muons.counts == 2)

        # Single muon CR
        selection.add('one_muon', muons.counts == 1)
        selection.add('mt_mu', df['MT_mu'] < cfg.SELECTION.CONTROL.SINGLEMU.MT)

        # Diele CR
        leadelectron_index = electrons.pt.argmax()

        selection.add('one_electron', electrons.counts == 1)
        selection.add('two_electrons', electrons.counts == 2)
        selection.add('at_least_one_tight_el', df['is_tight_electron'].any())


        selection.add('dielectron_mass', ((dielectrons.mass > cfg.SELECTION.CONTROL.DOUBLEEL.MASS.MIN)  \
                                        & (dielectrons.mass < cfg.SELECTION.CONTROL.DOUBLEEL.MASS.MAX)).any())
        selection.add('dielectron_charge', (dielectron_charge == 0).any())

        # Single Ele CR
        selection.add('met_el', met_pt > cfg.SELECTION.CONTROL.SINGLEEL.MET)
        selection.add('mt_el', df['MT_el'] < cfg.SELECTION.CONTROL.SINGLEEL.MT)

        # Photon CR
        leadphoton_index = photons.pt.argmax()

        df['is_tight_photon'] = photons.mediumId & photons.barrel

        selection.add('one_photon', photons.counts == 1)
        selection.add('at_least_one_tight_photon', df['is_tight_photon'].any())
        selection.add('photon_pt', photons.pt.max() > cfg.PHOTON.CUTS.TIGHT.PT)
        selection.add('photon_pt_trig',
                      photons.pt.max() > cfg.PHOTON.CUTS.TIGHT.PTTRIG)

        # Fill histograms
        output = self.accumulator.identity()

        # Gen
        if df['has_lhe_v_pt']:
            output['genvpt_check'].fill(vpt=gen_v_pt,
                                        type="Nano",
                                        dataset=dataset)

        if 'LHE_Njets' in df:
            output['lhe_njets'].fill(dataset=dataset,
                                     multiplicity=df['LHE_Njets'])
        if 'LHE_HT' in df:
            output['lhe_ht'].fill(dataset=dataset, ht=df['LHE_HT'])
        if 'LHE_HTIncoming' in df:
            output['lhe_htinc'].fill(dataset=dataset, ht=df['LHE_HTIncoming'])

        # Weights
        evaluator = evaluator_from_config(cfg)

        weights = processor.Weights(size=df.size, storeIndividual=True)
        if not df['is_data']:
            weights.add('gen', df['Generator_weight'])

            try:
                weights.add('prefire', df['PrefireWeight'])
            except KeyError:
                weights.add('prefire', np.ones(df.size))

            weights = candidate_weights(weights, df, evaluator, muons,
                                        electrons, photons, cfg)
            weights = pileup_weights(weights, df, evaluator, cfg)
            weights = ak4_em_frac_weights(weights, diak4, evaluator)
            if not (gen_v_pt is None):
                weights = theory_weights_vbf(weights, df, evaluator, gen_v_pt,
                                             df['mjj_gen'])

        # Save per-event values for synchronization
        if cfg.RUN.KINEMATICS.SAVE:
            for event in cfg.RUN.KINEMATICS.EVENTS:
                mask = df['event'] == event
                if not mask.any():
                    continue
                output['kinematics']['event'] += [event]
                output['kinematics']['met'] += [met_pt[mask]]
                output['kinematics']['met_phi'] += [met_phi[mask]]
                output['kinematics']['recoil'] += [df['recoil_pt'][mask]]
                output['kinematics']['recoil_phi'] += [df['recoil_phi'][mask]]

                output['kinematics']['ak4pt0'] += [ak4[leadak4_index][mask].pt]
                output['kinematics']['ak4eta0'] += [
                    ak4[leadak4_index][mask].eta
                ]
                output['kinematics']['leadbtag'] += [ak4.pt.max() < 0][mask]

                output['kinematics']['nLooseMu'] += [muons.counts[mask]]
                output['kinematics']['nTightMu'] += [
                    muons[df['is_tight_muon']].counts[mask]
                ]
                output['kinematics']['mupt0'] += [
                    muons[leadmuon_index][mask].pt
                ]
                output['kinematics']['mueta0'] += [
                    muons[leadmuon_index][mask].eta
                ]

                output['kinematics']['nLooseEl'] += [electrons.counts[mask]]
                output['kinematics']['nTightEl'] += [
                    electrons[df['is_tight_electron']].counts[mask]
                ]
                output['kinematics']['elpt0'] += [
                    electrons[leadelectron_index][mask].pt
                ]
                output['kinematics']['eleta0'] += [
                    electrons[leadelectron_index][mask].eta
                ]

                output['kinematics']['nLooseGam'] += [photons.counts[mask]]
                output['kinematics']['nTightGam'] += [
                    photons[df['is_tight_photon']].counts[mask]
                ]
                output['kinematics']['gpt0'] += [
                    photons[leadphoton_index][mask].pt
                ]
                output['kinematics']['geta0'] += [
                    photons[leadphoton_index][mask].eta
                ]

        # Sum of all weights to use for normalization
        # TODO: Deal with systematic variations
        output['nevents'][dataset] += df.size
        if not df['is_data']:
            output['sumw'][dataset] += df['genEventSumw']
            output['sumw2'][dataset] += df['genEventSumw2']
            output['sumw_pileup'][dataset] += weights._weights['pileup'].sum()

        regions = vbfhinv_regions(cfg)

        # Get veto weights (only for MC)
        if not df['is_data']:
            veto_weights = get_veto_weights(df, cfg, evaluator, electrons,
                                            muons, taus)

        for region, cuts in regions.items():
            exclude = [None]
            region_weights = copy.deepcopy(weights)

            if not df['is_data']:
                ### Trigger weights
                if re.match(r'cr_(\d+)e.*', region):
                    p_pass_data = 1 - (1 -
                                       evaluator["trigger_electron_eff_data"]
                                       (electrons.etasc, electrons.pt)).prod()
                    p_pass_mc = 1 - (1 - evaluator["trigger_electron_eff_mc"]
                                     (electrons.etasc, electrons.pt)).prod()
                    trigger_weight = p_pass_data / p_pass_mc
                    trigger_weight[np.isnan(trigger_weight)] = 1
                    region_weights.add('trigger', trigger_weight)
                elif re.match(r'cr_(\d+)m.*', region) or re.match(
                        'sr_.*', region):
                    region_weights.add(
                        'trigger_met',
                        evaluator["trigger_met"](df['recoil_pt']))
                elif re.match(r'cr_g.*', region):
                    photon_trigger_sf(region_weights, photons, df)

                # Veto weights
                if re.match('.*no_veto.*', region):
                    exclude = [
                        "muon_id_iso_tight", "muon_id_tight", "muon_iso_tight",
                        "muon_id_loose", "muon_iso_loose", "ele_reco",
                        "ele_id_tight", "ele_id_loose", "tau_id"
                    ]
                    region_weights.add(
                        "veto",
                        veto_weights.partial_weight(include=["nominal"]))

                # HEM-veto weights for signal region MC
                if re.match('^sr_vbf.*', region) and df['year'] == 2018:
                    # Events that lie in the HEM-veto region
                    events_to_weight_mask = (met_phi > -1.8) & (met_phi < -0.6)
                    # Weight is the "good lumi fraction" for 2018
                    weight = 21.1 / 59.7
                    hem_weight = np.where(events_to_weight_mask, weight, 1.0)

                    region_weights.add("hem_weight", hem_weight)

            # This is the default weight for this region
            rweight = region_weights.partial_weight(exclude=exclude)

            # Blinding
            if (self._blind and df['is_data'] and region.startswith('sr')):
                continue

            # Cutflow plot for signal and control regions
            if any(x in region for x in ["sr", "cr", "tr"]):
                output['cutflow_' + region][dataset]['all'] += df.size
                for icut, cutname in enumerate(cuts):
                    output['cutflow_' +
                           region][dataset][cutname] += selection.all(
                               *cuts[:icut + 1]).sum()

            mask = selection.all(*cuts)

            if cfg.RUN.SAVE.TREE:
                if region in ['cr_1e_vbf', 'cr_1m_vbf']:
                    output['tree_int64'][region][
                        "event"] += processor.column_accumulator(
                            df["event"][mask])
                    output['tree_float16'][region][
                        "gen_v_pt"] += processor.column_accumulator(
                            np.float16(gen_v_pt[mask]))
                    output['tree_float16'][region][
                        "gen_mjj"] += processor.column_accumulator(
                            np.float16(df['mjj_gen'][mask]))
                    output['tree_float16'][region][
                        "recoil_pt"] += processor.column_accumulator(
                            np.float16(df["recoil_pt"][mask]))
                    output['tree_float16'][region][
                        "recoil_phi"] += processor.column_accumulator(
                            np.float16(df["recoil_phi"][mask]))
                    output['tree_float16'][region][
                        "mjj"] += processor.column_accumulator(
                            np.float16(df["mjj"][mask]))

                    output['tree_float16'][region][
                        "leadak4_pt"] += processor.column_accumulator(
                            np.float16(diak4.i0.pt[mask]))
                    output['tree_float16'][region][
                        "leadak4_eta"] += processor.column_accumulator(
                            np.float16(diak4.i0.eta[mask]))
                    output['tree_float16'][region][
                        "leadak4_phi"] += processor.column_accumulator(
                            np.float16(diak4.i0.phi[mask]))

                    output['tree_float16'][region][
                        "trailak4_pt"] += processor.column_accumulator(
                            np.float16(diak4.i1.pt[mask]))
                    output['tree_float16'][region][
                        "trailak4_eta"] += processor.column_accumulator(
                            np.float16(diak4.i1.eta[mask]))
                    output['tree_float16'][region][
                        "trailak4_phi"] += processor.column_accumulator(
                            np.float16(diak4.i1.phi[mask]))

                    output['tree_float16'][region][
                        "minDPhiJetRecoil"] += processor.column_accumulator(
                            np.float16(df["minDPhiJetRecoil"][mask]))
                    if '_1e_' in region:
                        output['tree_float16'][region][
                            "leadlep_pt"] += processor.column_accumulator(
                                np.float16(electrons.pt.max()[mask]))
                        output['tree_float16'][region][
                            "leadlep_eta"] += processor.column_accumulator(
                                np.float16(electrons[
                                    electrons.pt.argmax()].eta.max()[mask]))
                        output['tree_float16'][region][
                            "leadlep_phi"] += processor.column_accumulator(
                                np.float16(electrons[
                                    electrons.pt.argmax()].phi.max()[mask]))
                    elif '_1m_' in region:
                        output['tree_float16'][region][
                            "leadlep_pt"] += processor.column_accumulator(
                                np.float16(muons.pt.max()[mask]))
                        output['tree_float16'][region][
                            "leadlep_eta"] += processor.column_accumulator(
                                np.float16(
                                    muons[muons.pt.argmax()].eta.max()[mask]))
                        output['tree_float16'][region][
                            "leadlep_phi"] += processor.column_accumulator(
                                np.float16(
                                    muons[muons.pt.argmax()].phi.max()[mask]))

                    for name, w in region_weights._weights.items():
                        output['tree_float16'][region][
                            f"weight_{name}"] += processor.column_accumulator(
                                np.float16(w[mask]))
                    output['tree_float16'][region][
                        f"weight_total"] += processor.column_accumulator(
                            np.float16(rweight[mask]))
                if region == 'inclusive':
                    output['tree_int64'][region][
                        "event"] += processor.column_accumulator(
                            df["event"][mask])
                    for name in selection.names:
                        output['tree_bool'][region][
                            name] += processor.column_accumulator(
                                np.bool_(selection.all(*[name])[mask]))
            # Save the event numbers of events passing this selection
            # Save the event numbers of events passing this selection
            if cfg.RUN.SAVE.PASSING:
                output['selected_events'][region] += list(df['event'][mask])

            # Multiplicities
            def fill_mult(name, candidates):
                output[name].fill(dataset=dataset,
                                  region=region,
                                  multiplicity=candidates[mask].counts,
                                  weight=rweight[mask])

            fill_mult('ak4_mult', ak4[ak4.pt > 30])
            fill_mult('bjet_mult', bjets)
            fill_mult('loose_ele_mult', electrons)
            fill_mult('tight_ele_mult', electrons[df['is_tight_electron']])
            fill_mult('loose_muo_mult', muons)
            fill_mult('tight_muo_mult', muons[df['is_tight_muon']])
            fill_mult('tau_mult', taus)
            fill_mult('photon_mult', photons)

            def ezfill(name, **kwargs):
                """Helper function to make filling easier."""
                output[name].fill(dataset=dataset, region=region, **kwargs)

            # Monitor weights
            for wname, wvalue in region_weights._weights.items():
                ezfill("weights", weight_type=wname, weight_value=wvalue[mask])
                ezfill("weights_wide",
                       weight_type=wname,
                       weight_value=wvalue[mask])

            # All ak4
            # This is a workaround to create a weight array of the right dimension
            w_alljets = weight_shape(ak4[mask].eta, rweight[mask])
            w_alljets_nopref = weight_shape(
                ak4[mask].eta,
                region_weights.partial_weight(exclude=exclude +
                                              ['prefire'])[mask])

            ezfill('ak4_eta', jeteta=ak4[mask].eta.flatten(), weight=w_alljets)
            ezfill('ak4_phi', jetphi=ak4[mask].phi.flatten(), weight=w_alljets)
            ezfill('ak4_pt', jetpt=ak4[mask].pt.flatten(), weight=w_alljets)

            ezfill('ak4_eta_nopref',
                   jeteta=ak4[mask].eta.flatten(),
                   weight=w_alljets_nopref)
            ezfill('ak4_phi_nopref',
                   jetphi=ak4[mask].phi.flatten(),
                   weight=w_alljets_nopref)
            ezfill('ak4_pt_nopref',
                   jetpt=ak4[mask].pt.flatten(),
                   weight=w_alljets_nopref)

            # Leading ak4
            w_diak4 = weight_shape(diak4.pt[mask], rweight[mask])
            ezfill('ak4_eta0',
                   jeteta=diak4.i0.eta[mask].flatten(),
                   weight=w_diak4)
            ezfill('ak4_phi0',
                   jetphi=diak4.i0.phi[mask].flatten(),
                   weight=w_diak4)
            ezfill('ak4_pt0',
                   jetpt=diak4.i0.pt[mask].flatten(),
                   weight=w_diak4)
            ezfill('ak4_ptraw0',
                   jetpt=diak4.i0.ptraw[mask].flatten(),
                   weight=w_diak4)
            ezfill('ak4_chf0',
                   frac=diak4.i0.chf[mask].flatten(),
                   weight=w_diak4)
            ezfill('ak4_nhf0',
                   frac=diak4.i0.nhf[mask].flatten(),
                   weight=w_diak4)
            ezfill('ak4_nconst0',
                   nconst=diak4.i0.nconst[mask].flatten(),
                   weight=w_diak4)

            # Trailing ak4
            ezfill('ak4_eta1',
                   jeteta=diak4.i1.eta[mask].flatten(),
                   weight=w_diak4)
            ezfill('ak4_phi1',
                   jetphi=diak4.i1.phi[mask].flatten(),
                   weight=w_diak4)
            ezfill('ak4_pt1',
                   jetpt=diak4.i1.pt[mask].flatten(),
                   weight=w_diak4)
            ezfill('ak4_ptraw1',
                   jetpt=diak4.i1.ptraw[mask].flatten(),
                   weight=w_diak4)
            ezfill('ak4_chf1',
                   frac=diak4.i1.chf[mask].flatten(),
                   weight=w_diak4)
            ezfill('ak4_nhf1',
                   frac=diak4.i1.nhf[mask].flatten(),
                   weight=w_diak4)
            ezfill('ak4_nconst1',
                   nconst=diak4.i1.nconst[mask].flatten(),
                   weight=w_diak4)

            # B tag discriminator
            btag = getattr(ak4, cfg.BTAG.ALGO)
            w_btag = weight_shape(btag[mask], rweight[mask])
            ezfill('ak4_btag', btag=btag[mask].flatten(), weight=w_btag)

            # MET
            ezfill('dpfcalo_cr',
                   dpfcalo=df["dPFCaloCR"][mask],
                   weight=rweight[mask])
            ezfill('dpfcalo_sr',
                   dpfcalo=df["dPFCaloSR"][mask],
                   weight=rweight[mask])
            ezfill('met', met=met_pt[mask], weight=rweight[mask])
            ezfill('met_phi', phi=met_phi[mask], weight=rweight[mask])
            ezfill('recoil',
                   recoil=df["recoil_pt"][mask],
                   weight=rweight[mask])
            ezfill('recoil_phi',
                   phi=df["recoil_phi"][mask],
                   weight=rweight[mask])
            ezfill('dphijm',
                   dphi=df["minDPhiJetMet"][mask],
                   weight=rweight[mask])
            ezfill('dphijr',
                   dphi=df["minDPhiJetRecoil"][mask],
                   weight=rweight[mask])

            ezfill('dphijj', dphi=df["dphijj"][mask], weight=rweight[mask])
            ezfill('detajj', deta=df["detajj"][mask], weight=rweight[mask])
            ezfill('mjj', mjj=df["mjj"][mask], weight=rweight[mask])

            if gen_v_pt is not None:
                ezfill('gen_vpt',
                       vpt=gen_v_pt[mask],
                       weight=df['Generator_weight'][mask])
                ezfill('gen_mjj',
                       mjj=df['mjj_gen'][mask],
                       weight=df['Generator_weight'][mask])

            # Photon CR data-driven QCD estimate
            if df['is_data'] and re.match("cr_g.*", region) and re.match(
                    "(SinglePhoton|EGamma).*", dataset):
                w_imp = photon_impurity_weights(
                    photons[leadphoton_index].pt.max()[mask], df["year"])
                output['mjj'].fill(dataset=data_driven_qcd_dataset(dataset),
                                   region=region,
                                   mjj=df["mjj"][mask],
                                   weight=rweight[mask] * w_imp)
                output['recoil'].fill(dataset=data_driven_qcd_dataset(dataset),
                                      region=region,
                                      recoil=df["recoil_pt"][mask],
                                      weight=rweight[mask] * w_imp)

            # Uncertainty variations
            if df['is_lo_z'] or df['is_nlo_z'] or df['is_lo_z_ewk']:
                theory_uncs = [x for x in cfg.SF.keys() if x.startswith('unc')]
                for unc in theory_uncs:
                    reweight = evaluator[unc](gen_v_pt)
                    w = (region_weights.weight() * reweight)[mask]
                    ezfill('mjj_unc',
                           mjj=df['mjj'][mask],
                           uncertainty=unc,
                           weight=w)

            # Two dimensional
            ezfill('recoil_mjj',
                   recoil=df["recoil_pt"][mask],
                   mjj=df["mjj"][mask],
                   weight=rweight[mask])

            # Muons
            if '_1m_' in region or '_2m_' in region or 'no_veto' in region:
                w_allmu = weight_shape(muons.pt[mask], rweight[mask])
                ezfill('muon_pt', pt=muons.pt[mask].flatten(), weight=w_allmu)
                ezfill('muon_pt_abseta',
                       pt=muons.pt[mask].flatten(),
                       abseta=muons.eta[mask].flatten(),
                       weight=w_allmu)
                ezfill('muon_mt', mt=df['MT_mu'][mask], weight=rweight[mask])
                ezfill('muon_eta',
                       eta=muons.eta[mask].flatten(),
                       weight=w_allmu)
                ezfill('muon_phi',
                       phi=muons.phi[mask].flatten(),
                       weight=w_allmu)

            # Dimuon
            if '_2m_' in region:
                w_dimu = weight_shape(dimuons.pt[mask], rweight[mask])
                ezfill('muon_pt0',
                       pt=dimuons.i0.pt[mask].flatten(),
                       weight=w_dimu)
                ezfill('muon_pt1',
                       pt=dimuons.i1.pt[mask].flatten(),
                       weight=w_dimu)
                ezfill('muon_eta0',
                       eta=dimuons.i0.eta[mask].flatten(),
                       weight=w_dimu)
                ezfill('muon_eta1',
                       eta=dimuons.i1.eta[mask].flatten(),
                       weight=w_dimu)
                ezfill('muon_phi0',
                       phi=dimuons.i0.phi[mask].flatten(),
                       weight=w_dimu)
                ezfill('muon_phi1',
                       phi=dimuons.i1.phi[mask].flatten(),
                       weight=w_dimu)
                ezfill('dimuon_pt',
                       pt=dimuons.pt[mask].flatten(),
                       weight=w_dimu)
                ezfill('dimuon_eta',
                       eta=dimuons.eta[mask].flatten(),
                       weight=w_dimu)
                ezfill('dimuon_mass',
                       dilepton_mass=dimuons.mass[mask].flatten(),
                       weight=w_dimu)

            # Electrons
            if '_1e_' in region or '_2e_' in region or 'no_veto' in region:
                w_allel = weight_shape(electrons.pt[mask], rweight[mask])
                ezfill('electron_pt',
                       pt=electrons.pt[mask].flatten(),
                       weight=w_allel)
                ezfill('electron_pt_eta',
                       pt=electrons.pt[mask].flatten(),
                       eta=electrons.eta[mask].flatten(),
                       weight=w_allel)
                ezfill('electron_mt',
                       mt=df['MT_el'][mask],
                       weight=rweight[mask])
                ezfill('electron_eta',
                       eta=electrons.eta[mask].flatten(),
                       weight=w_allel)
                ezfill('electron_phi',
                       phi=electrons.phi[mask].flatten(),
                       weight=w_allel)

            # Dielectron
            if '_2e_' in region:
                w_diel = weight_shape(dielectrons.pt[mask], rweight[mask])
                ezfill('electron_pt0',
                       pt=dielectrons.i0.pt[mask].flatten(),
                       weight=w_diel)
                ezfill('electron_pt1',
                       pt=dielectrons.i1.pt[mask].flatten(),
                       weight=w_diel)
                ezfill('electron_eta0',
                       eta=dielectrons.i0.eta[mask].flatten(),
                       weight=w_diel)
                ezfill('electron_eta1',
                       eta=dielectrons.i1.eta[mask].flatten(),
                       weight=w_diel)
                ezfill('electron_phi0',
                       phi=dielectrons.i0.phi[mask].flatten(),
                       weight=w_diel)
                ezfill('electron_phi1',
                       phi=dielectrons.i1.phi[mask].flatten(),
                       weight=w_diel)
                ezfill('dielectron_pt',
                       pt=dielectrons.pt[mask].flatten(),
                       weight=w_diel)
                ezfill('dielectron_eta',
                       eta=dielectrons.eta[mask].flatten(),
                       weight=w_diel)
                ezfill('dielectron_mass',
                       dilepton_mass=dielectrons.mass[mask].flatten(),
                       weight=w_diel)

            # Photon
            if '_g_' in region:
                w_leading_photon = weight_shape(
                    photons[leadphoton_index].pt[mask], rweight[mask])
                ezfill('photon_pt0',
                       pt=photons[leadphoton_index].pt[mask].flatten(),
                       weight=w_leading_photon)
                ezfill('photon_eta0',
                       eta=photons[leadphoton_index].eta[mask].flatten(),
                       weight=w_leading_photon)
                ezfill('photon_phi0',
                       phi=photons[leadphoton_index].phi[mask].flatten(),
                       weight=w_leading_photon)
                ezfill('photon_pt0_recoil',
                       pt=photons[leadphoton_index].pt[mask].flatten(),
                       recoil=df['recoil_pt'][mask
                                              & (leadphoton_index.counts > 0)],
                       weight=w_leading_photon)
                ezfill('photon_eta_phi',
                       eta=photons[leadphoton_index].eta[mask].flatten(),
                       phi=photons[leadphoton_index].phi[mask].flatten(),
                       weight=w_leading_photon)

                # w_drphoton_jet = weight_shape(df['dRPhotonJet'][mask], rweight[mask])

            # Tau
            if 'no_veto' in region:
                w_all_taus = weight_shape(taus.pt[mask], rweight[mask])
                ezfill("tau_pt", pt=taus.pt[mask].flatten(), weight=w_all_taus)

            # PV
            ezfill('npv', nvtx=df['PV_npvs'][mask], weight=rweight[mask])
            ezfill('npvgood',
                   nvtx=df['PV_npvsGood'][mask],
                   weight=rweight[mask])

            ezfill('npv_nopu',
                   nvtx=df['PV_npvs'][mask],
                   weight=region_weights.partial_weight(exclude=exclude +
                                                        ['pileup'])[mask])
            ezfill('npvgood_nopu',
                   nvtx=df['PV_npvsGood'][mask],
                   weight=region_weights.partial_weight(exclude=exclude +
                                                        ['pileup'])[mask])

            ezfill('rho_all',
                   rho=df['fixedGridRhoFastjetAll'][mask],
                   weight=region_weights.partial_weight(exclude=exclude)[mask])
            ezfill('rho_central',
                   rho=df['fixedGridRhoFastjetCentral'][mask],
                   weight=region_weights.partial_weight(exclude=exclude)[mask])
            ezfill('rho_all_nopu',
                   rho=df['fixedGridRhoFastjetAll'][mask],
                   weight=region_weights.partial_weight(exclude=exclude +
                                                        ['pileup'])[mask])
            ezfill('rho_central_nopu',
                   rho=df['fixedGridRhoFastjetCentral'][mask],
                   weight=region_weights.partial_weight(exclude=exclude +
                                                        ['pileup'])[mask])
        return output
コード例 #6
0
    def process(self, df):
        if not df.size:
            return self.accumulator.identity()
        self._configure(df)
        dataset = df['dataset']
        df['is_lo_w'] = is_lo_w(dataset)
        df['is_lo_z'] = is_lo_z(dataset)
        df['is_data'] = is_data(dataset)

        if not df['is_data']:
            gen_v_pt = df['LHE_Vpt']

        # Candidates
        # Already pre-filtered!
        # All leptons are at least loose
        # Check out setup_candidates for filtering details
        ak4, ak8, muons, electrons, taus, photons, hlt = setup_candidates(
            df, cfg)

        # Muons
        is_tight_muon = muons.tightId \
                      & (muons.iso < cfg.MUON.CUTS.TIGHT.ISO) \
                      & (muons.pt>cfg.MUON.CUTS.TIGHT.PT) \
                      & (np.abs(muons.eta)<cfg.MUON.CUTS.TIGHT.ETA)

        dimuons = muons.distincts()
        dimuon_charge = dimuons.i0['charge'] + dimuons.i1['charge']

        df['MT_mu'] = (
            (muons.counts == 1) *
            mt(muons.pt, muons.phi, df['MET_pt'], df['MET_phi'])).max()

        # Electrons
        is_tight_electron = electrons.tightId \
                            & (electrons.pt > cfg.ELECTRON.CUTS.TIGHT.PT) \
                            & (np.abs(electrons.eta) < cfg.ELECTRON.CUTS.TIGHT.ETA)

        dielectrons = electrons.distincts()
        dielectron_charge = dielectrons.i0['charge'] + dielectrons.i1['charge']

        df['MT_el'] = ((electrons.counts == 1) * mt(
            electrons.pt, electrons.phi, df['MET_pt'], df['MET_phi'])).max()

        # ak4
        jet_acceptance = np.abs(ak4.eta) < 2.4

        # B tagged ak4
        btag_cut = cfg.BTAG.CUTS[cfg.BTAG.algo][cfg.BTAG.wp]
        jet_btag_val = getattr(ak4, cfg.BTAG.algo)
        jet_btagged = jet_btag_val > btag_cut
        bjets = ak4[ jet_acceptance \
                     & jet_btagged \
                     & (ak4.pt>20) ]

        # Recoil
        df['recoil_pt'], df['recoil_phi'] = recoil(df['MET_pt'], df['MET_phi'],
                                                   electrons, muons, photons)
        df["dPFCalo"] = (df['MET_pt'] - df["CaloMET_pt"]) / df["recoil_pt"]
        df["minDPhiJetRecoil"] = min_dphi_jet_met(ak4,
                                                  df['recoil_phi'],
                                                  njet=4,
                                                  ptmin=30)
        df["minDPhiJetMet"] = min_dphi_jet_met(ak4,
                                               df['MET_phi'],
                                               njet=4,
                                               ptmin=30)
        selection = processor.PackedSelection()

        selection.add('inclusive', np.ones(df.size) == 1)

        # Triggers
        if cfg.RUN.SYNC:  # Synchronization mode
            pass_all = np.ones(df.size) == 1
            selection.add('filt_met', pass_all)
            selection.add('trig_met', pass_all)
            selection.add('trig_ele', pass_all)
            selection.add('trig_mu', pass_all)

        else:
            selection.add('filt_met', df['Flag_METFilters'])
            selection.add('trig_met', combine_masks(df, cfg.TRIGGERS.MET))

            # Trigger overlap
            if df['is_data']:
                if "SinglePhoton" in dataset:
                    trig_ele = combine_masks(
                        df, cfg.TRIGGERS.ELECTRON.SINGLE_BACKUP) & (
                            ~combine_masks(df, cfg.TRIGGERS.ELECTRON.SINGLE))
                else:
                    trig_ele = combine_masks(df, cfg.TRIGGERS.ELECTRON.SINGLE)
            else:
                trig_ele = combine_masks(
                    df, cfg.TRIGGERS.ELECTRON.SINGLE_BACKUP) | combine_masks(
                        df, cfg.TRIGGERS.ELECTRON.SINGLE)

            selection.add('trig_ele', trig_ele)
            selection.add('trig_mu', combine_masks(df,
                                                   cfg.TRIGGERS.MUON.SINGLE))
            selection.add('trig_ht_for_g_eff',
                          combine_masks(df, cfg.TRIGGERS.HT.GAMMAEFF))

        # Trigger objects
        hlt_muons = hlt[hlt.id == 13]
        hlt_single_muons = hlt_muons[hlt_muons.filter & 8 == 8]
        hlt_double_muons = hlt_muons[hlt_muons.filter & 16 == 16]

        selection.add('one_hlt_muon', hlt_single_muons.counts >= 1)
        selection.add(
            'two_hlt_muons',
            (hlt_single_muons.counts + 2 * hlt_double_muons.counts) >= 2)

        # Common selection
        selection.add('veto_ele', electrons.counts == 0)
        selection.add('veto_muo', muons.counts == 0)
        selection.add('veto_photon', photons.counts == 0)
        selection.add('veto_tau', taus.counts == 0)
        selection.add('veto_b', bjets.counts == 0)
        selection.add('mindphijr',
                      df['minDPhiJetRecoil'] > cfg.SELECTION.SIGNAL.MINDPHIJR)
        selection.add('dpfcalo',
                      np.abs(df['dPFCalo']) < cfg.SELECTION.SIGNAL.DPFCALO)
        selection.add('recoil', df['recoil_pt'] > cfg.SELECTION.SIGNAL.RECOIL)

        # AK4 Jet
        leadak4_index = ak4.pt.argmax()
        leadak4_pt_eta = (ak4.pt.max() > cfg.SELECTION.SIGNAL.leadak4.PT) \
                         & (np.abs(ak4.eta[leadak4_index]) < cfg.SELECTION.SIGNAL.leadak4.ETA).any()
        selection.add('leadak4_pt_eta', leadak4_pt_eta)

        selection.add('leadak4_id',(ak4.tightId[leadak4_index] \
                                                    & (ak4.chf[leadak4_index] >cfg.SELECTION.SIGNAL.leadak4.CHF) \
                                                    & (ak4.nhf[leadak4_index]<cfg.SELECTION.SIGNAL.leadak4.NHF)).any())

        # AK8 Jet
        leadak8_index = ak8.pt.argmax()
        leadak8_pt_eta = (ak8.pt.max() > cfg.SELECTION.SIGNAL.leadak8.PT) \
                         & (np.abs(ak8.eta[leadak8_index]) < cfg.SELECTION.SIGNAL.leadak8.ETA).any()
        selection.add('leadak8_pt_eta', leadak8_pt_eta)

        selection.add('leadak8_id', (ak8.tightId[leadak8_index]).any())

        # Mono-V selection
        selection.add('leadak8_tau21',
                      ((ak8.tau2[leadak8_index] / ak8.tau1[leadak8_index]) <
                       cfg.SELECTION.SIGNAL.LEADAK8.TAU21).any())
        selection.add('leadak8_mass', ((ak8.mass[leadak8_index] > cfg.SELECTION.SIGNAL.LEADAK8.MASS.MIN) \
                                    & (ak8.mass[leadak8_index] < cfg.SELECTION.SIGNAL.LEADAK8.MASS.MAX)).any())

        selection.add(
            'veto_vtag', ~selection.all("leadak8_pt_eta", "leadak8_id",
                                        "leadak8_tau21", "leadak8_mass"))

        # Dimuon CR
        leadmuon_index = muons.pt.argmax()
        selection.add('at_least_one_tight_mu', is_tight_muon.any())
        selection.add('dimuon_mass', ((dimuons.mass > cfg.SELECTION.CONTROL.DOUBLEMU.MASS.MIN) \
                                    & (dimuons.mass < cfg.SELECTION.CONTROL.DOUBLEMU.MASS.MAX)).any())
        selection.add('dimuon_charge', (dimuon_charge == 0).any())
        selection.add('two_muons', muons.counts == 2)

        # Single muon CR
        selection.add('one_muon', muons.counts == 1)
        selection.add('mt_mu', df['MT_mu'] < cfg.SELECTION.CONTROL.SINGLEMU.MT)

        # Diele CR
        leadelectron_index = electrons.pt.argmax()

        selection.add('one_electron', electrons.counts == 1)
        selection.add('two_electrons', electrons.counts == 2)
        selection.add('at_least_one_tight_el', is_tight_electron.any())

        selection.add('dielectron_mass', ((dielectrons.mass > cfg.SELECTION.CONTROL.DOUBLEEL.MASS.MIN)  \
                                        & (dielectrons.mass < cfg.SELECTION.CONTROL.DOUBLEEL.MASS.MAX)).any())
        selection.add('dielectron_charge', (dielectron_charge == 0).any())
        selection.add('two_electrons', electrons.counts == 2)

        # Single Ele CR
        selection.add('mt_el', df['MT_el'] < cfg.SELECTION.CONTROL.SINGLEEL.MT)

        # Photon CR
        selection.add('trig_photon',
                      combine_masks(df, cfg.TRIGGERS.PHOTON.SINGLE))
        leadphoton_index = photons.pt.argmax()

        is_tight_photon = photons.mediumId \
                         & (photons.pt > cfg.PHOTON.CUTS.TIGHT.PT) \
                         & (np.abs(photons.eta) < cfg.PHOTON.CUTS.TIGHT.ETA)

        selection.add('one_photon', photons.counts == 1)
        selection.add('at_least_one_tight_photon', is_tight_photon.any())

        # Fill histograms
        output = self.accumulator.identity()

        # Gen
        if not df['is_data']:
            output['genvpt_check'].fill(vpt=gen_v_pt,
                                        type="Nano",
                                        dataset=dataset)

        # Weights
        evaluator = monojet_evaluator(cfg)
        all_weights = {}
        if df['is_data']:
            weight = np.ones(df.size)
        else:
            weight = df['Generator_weight']

            # Muon ID and Isolation for tight and loose WP
            # Function of pT, eta (Order!)
            all_weights["muon_id_tight"] = evaluator['muon_id_tight'](
                muons[is_tight_muon].pt, muons[is_tight_muon].eta).prod()
            all_weights["muon_iso_tight"] = evaluator['muon_iso_tight'](
                muons[is_tight_muon].pt, muons[is_tight_muon].eta).prod()
            all_weights["muon_id_loose"] = evaluator['muon_id_loose'](
                muons[~is_tight_muon].pt, muons[~is_tight_muon].eta).prod()
            all_weights["muon_iso_loose"] = evaluator['muon_iso_loose'](
                muons[~is_tight_muon].pt, muons[~is_tight_muon].eta).prod()

            # Electron ID and reco
            # Function of eta, pT (Other way round relative to muons!)
            all_weights["ele_reco"] = evaluator['ele_reco'](
                electrons.eta, electrons.pt).prod()
            all_weights["ele_id_tight"] = evaluator['ele_id_tight'](
                electrons[is_tight_electron].eta,
                electrons[is_tight_electron].pt).prod()
            all_weights["ele_id_loose"] = evaluator['ele_id_loose'](
                electrons[~is_tight_electron].eta,
                electrons[~is_tight_electron].pt).prod()

            # Photon ID and electron veto
            all_weights["photon_id_tight"] = evaluator['photon_id_tight'](
                photons[is_tight_photon].eta,
                photons[is_tight_photon].pt).prod()

            # CSEV not split only by EE/EB for now
            csev_sf_index = 0.5 * photons.barrel + 2.5 * ~photons.barrel
            all_weights["photon_csev"] = evaluator['photon_csev'](
                csev_sf_index).prod()

            all_weights["pileup"] = evaluator['pileup'](df['Pileup_nTrueInt'])

            if df['is_lo_w']:
                all_weights["theory"] = evaluator["qcd_ew_nlo_w"](gen_v_pt)
            elif df['is_lo_z']:
                all_weights["theory"] = evaluator["qcd_ew_nlo_z"](gen_v_pt)
            else:
                all_weights["theory"] = np.ones(df.size)
            for iw in all_weights.values():
                weight = weight * iw

        # Save per-event values for synchronization
        if cfg.RUN.KINEMATICS.SAVE:
            for event in cfg.RUN.KINEMATICS.EVENTS:
                mask = df['event'] == event
                if not mask.any():
                    continue
                output['kinematics']['event'] += [event]
                output['kinematics']['met'] += [df['MET_pt'][mask]]
                output['kinematics']['met_phi'] += [df['MET_phi'][mask]]
                output['kinematics']['recoil'] += [df['recoil_pt'][mask]]
                output['kinematics']['recoil_phi'] += [df['recoil_phi'][mask]]

                output['kinematics']['ak4pt0'] += [ak4[leadak4_index][mask].pt]
                output['kinematics']['ak4eta0'] += [
                    ak4[leadak4_index][mask].eta
                ]
                output['kinematics']['leadbtag'] += [
                    jet_btag_val[jet_acceptance & (ak4.pt > 20)][mask].max()
                ]

                output['kinematics']['nLooseMu'] += [muons.counts[mask]]
                output['kinematics']['nTightMu'] += [
                    muons[is_tight_muon].counts[mask]
                ]
                output['kinematics']['mupt0'] += [
                    muons[leadmuon_index][mask].pt
                ]
                output['kinematics']['mueta0'] += [
                    muons[leadmuon_index][mask].eta
                ]

                output['kinematics']['nLooseEl'] += [electrons.counts[mask]]
                output['kinematics']['nTightEl'] += [
                    electrons[is_tight_electron].counts[mask]
                ]
                output['kinematics']['elpt0'] += [
                    electrons[leadelectron_index][mask].pt
                ]
                output['kinematics']['eleta0'] += [
                    electrons[leadelectron_index][mask].eta
                ]

                output['kinematics']['nLooseGam'] += [photons.counts[mask]]
                output['kinematics']['nTightGam'] += [
                    photons[is_tight_photon].counts[mask]
                ]
                output['kinematics']['gpt0'] += [
                    photons[leadphoton_index][mask].pt
                ]
                output['kinematics']['geta0'] += [
                    photons[leadphoton_index][mask].eta
                ]

        # Sum of all weights to use for normalization
        # TODO: Deal with systematic variations
        if not df['is_data']:
            output['sumw'][dataset] += df['genEventSumw']
            output['sumw2'][dataset] += df['genEventSumw2']

        regions = monojet_regions()
        for region, cuts in regions.items():
            # Blinding
            if (self._blind and df['is_data'] and region.startswith('sr')):
                continue

            # Cutflow plot for signal and control regions
            if any(x in region for x in ["sr", "cr", "tr"]):
                output['cutflow_' + region]['all'] += df.size
                for icut, cutname in enumerate(cuts):
                    output['cutflow_' + region][cutname] += selection.all(
                        *cuts[:icut + 1]).sum()

            mask = selection.all(*cuts)

            # Save the event numbers of events passing this selection
            if cfg.RUN.SAVE.PASSING:
                output['selected_events'][region] += list(df['event'][mask])

            # Multiplicities
            def fill_mult(name, candidates):
                output[name].fill(dataset=dataset,
                                  region=region,
                                  multiplicity=candidates[mask].counts,
                                  weight=weight[mask])

            fill_mult('ak8_mult', ak8)
            fill_mult('ak4_mult', ak4)
            fill_mult('bjet_mult', bjets)
            fill_mult('loose_ele_mult', electrons)
            fill_mult('tight_ele_mult', electrons[is_tight_electron])
            fill_mult('loose_muo_mult', muons)
            fill_mult('tight_muo_mult', muons[is_tight_muon])
            fill_mult('tau_mult', taus)
            fill_mult('photon_mult', photons)

            def ezfill(name, **kwargs):
                """Helper function to make filling easier."""
                output[name].fill(dataset=dataset, region=region, **kwargs)

            # Monitor weights
            for wname, wvalue in all_weights.items():
                ezfill("weights", weight_type=wname, weight_value=wvalue[mask])

            # All ak4
            # This is a workaround to create a weight array of the right dimension
            w_alljets = weight_shape(ak4[mask].eta, weight[mask])

            ezfill('ak4eta', jeteta=ak4[mask].eta.flatten(), weight=w_alljets)
            ezfill('ak4pt', jetpt=ak4[mask].pt.flatten(), weight=w_alljets)

            # Leading ak4
            leadak4_indices = ak4.pt.argmax()
            w_leadak4 = weight_shape(ak4[leadak4_indices].eta[mask],
                                     weight[mask])
            ezfill('ak4eta0',
                   jeteta=ak4[leadak4_indices].eta[mask].flatten(),
                   weight=w_leadak4)
            ezfill('ak4pt0',
                   jetpt=ak4[leadak4_indices].pt[mask].flatten(),
                   weight=w_leadak4)

            # All ak8
            w_allak8 = weight_shape(ak8.eta[mask], weight[mask])

            ezfill('ak8eta', jeteta=ak8[mask].eta.flatten(), weight=w_allak8)
            ezfill('ak8pt', jetpt=ak8[mask].pt.flatten(), weight=w_allak8)
            ezfill('ak8mass', mass=ak8[mask].mass.flatten(), weight=w_allak8)

            # Leading ak8
            leadak8_indices = ak8.pt.argmax()
            w_leadak8 = weight_shape(ak8[leadak8_indices].eta[mask],
                                     weight[mask])

            ezfill('ak8eta0',
                   jeteta=ak8[leadak8_indices].eta[mask].flatten(),
                   weight=w_leadak8)
            ezfill('ak8pt0',
                   jetpt=ak8[leadak8_indices].pt[mask].flatten(),
                   weight=w_leadak8)
            ezfill('ak8mass0',
                   mass=ak8[leadak8_indices].mass[mask].flatten(),
                   weight=w_leadak8)

            # B tag discriminator
            btag = getattr(ak4, cfg.BTAG.ALGO)
            w_btag = weight_shape(btag[mask], weight[mask])
            ezfill('ak4btag', btag=btag[mask].flatten(), weight=w_btag)

            # MET
            ezfill('dpfcalo', dpfcalo=df["dPFCalo"][mask], weight=weight[mask])
            ezfill('met', met=df["MET_pt"][mask], weight=weight[mask])
            ezfill('recoil', recoil=df["recoil_pt"][mask], weight=weight[mask])
            ezfill('dphijm',
                   dphi=df["minDPhiJetMet"][mask],
                   weight=weight[mask])

            # Muons
            w_allmu = weight_shape(muons.pt[mask], weight[mask])
            ezfill('muon_pt', pt=muons.pt[mask].flatten(), weight=w_allmu)
            ezfill('muon_mt', mt=df['MT_mu'][mask], weight=weight[mask])
            ezfill('muon_eta', eta=muons.eta[mask].flatten(), weight=w_allmu)
            # Dimuon
            w_dimu = weight_shape(dimuons.pt[mask], weight[mask])

            ezfill('dimuon_pt', pt=dimuons.pt[mask].flatten(), weight=w_dimu)
            ezfill('dimuon_eta',
                   eta=dimuons.eta[mask].flatten(),
                   weight=w_dimu)
            ezfill('dimuon_mass',
                   dilepton_mass=dimuons.mass[mask].flatten(),
                   weight=w_dimu)

            # Electrons
            w_allel = weight_shape(electrons.pt[mask], weight[mask])
            ezfill('electron_pt',
                   pt=electrons.pt[mask].flatten(),
                   weight=w_allel)
            ezfill('electron_mt', mt=df['MT_el'][mask], weight=weight[mask])
            ezfill('electron_eta',
                   eta=electrons.eta[mask].flatten(),
                   weight=w_allel)

            # Dielectron
            w_diel = weight_shape(dielectrons.pt[mask], weight[mask])
            ezfill('dielectron_pt',
                   pt=dielectrons.pt[mask].flatten(),
                   weight=w_diel)
            ezfill('dielectron_eta',
                   eta=dielectrons.eta[mask].flatten(),
                   weight=w_diel)
            ezfill('dielectron_mass',
                   dilepton_mass=dielectrons.mass[mask].flatten(),
                   weight=w_diel)

            # Photon
            w_leading_photon = weight_shape(photons[leadphoton_index].pt[mask],
                                            weight[mask])
            ezfill('photonpt0',
                   pt=photons[leadphoton_index].pt[mask].flatten(),
                   weight=w_leading_photon)
            ezfill('photoneta0',
                   eta=photons[leadphoton_index].eta[mask].flatten(),
                   weight=w_leading_photon)
            ezfill('photonphi0',
                   phi=photons[leadphoton_index].phi[mask].flatten(),
                   weight=w_leading_photon)

        return output
コード例 #7
0
ファイル: monojetProcessor.py プロジェクト: snwebb/bucoffea
    def process(self, df):
        if not df.size:
            return self.accumulator.identity()
        self._configure(df)
        dataset = df['dataset']
        df['is_lo_w'] = is_lo_w(dataset)
        df['is_lo_z'] = is_lo_z(dataset)
        df['is_lo_g'] = is_lo_g(dataset)
        df['is_nlo_z'] = is_nlo_z(dataset)
        df['is_nlo_w'] = is_nlo_w(dataset)
        df['has_v_jet'] = has_v_jet(dataset)
        df['has_lhe_v_pt'] = df['is_lo_w'] | df['is_lo_z'] | df['is_nlo_z'] | df['is_nlo_w'] | df['is_lo_g']
        df['is_data'] = is_data(dataset)

        gen_v_pt = None
        if not df['is_data']:
            gen = setup_gen_candidates(df)
        if df['is_lo_w'] or df['is_lo_z'] or df['is_nlo_z'] or df['is_nlo_w']:
            dressed = setup_dressed_gen_candidates(df)
            fill_gen_v_info(df, gen, dressed)
            gen_v_pt = df['gen_v_pt_combined']
        elif df['is_lo_g']:
            gen_v_pt = gen[(gen.pdg==22) & (gen.status==1)].pt.max()

        # Candidates
        # Already pre-filtered!
        # All leptons are at least loose
        # Check out setup_candidates for filtering details
        met_pt, met_phi, ak4, bjets, ak8, muons, electrons, taus, photons = setup_candidates(df, cfg)

        # Muons
        df['is_tight_muon'] = muons.tightId \
                      & (muons.iso < cfg.MUON.CUTS.TIGHT.ISO) \
                      & (muons.pt>cfg.MUON.CUTS.TIGHT.PT) \
                      & (muons.abseta<cfg.MUON.CUTS.TIGHT.ETA)

        dimuons = muons.distincts()
        dimuon_charge = dimuons.i0['charge'] + dimuons.i1['charge']

        df['MT_mu'] = ((muons.counts==1) * mt(muons.pt, muons.phi, met_pt, met_phi)).max()

        # Electrons
        df['is_tight_electron'] = electrons.tightId \
                            & (electrons.pt > cfg.ELECTRON.CUTS.TIGHT.PT) \
                            & (electrons.abseta < cfg.ELECTRON.CUTS.TIGHT.ETA)

        dielectrons = electrons.distincts()
        dielectron_charge = dielectrons.i0['charge'] + dielectrons.i1['charge']

        df['MT_el'] = ((electrons.counts==1) * mt(electrons.pt, electrons.phi, met_pt, met_phi)).max()

        # ak4
        leadak4_index=ak4.pt.argmax()

        elejet_pairs = ak4[:,:1].cross(electrons)
        df['dREleJet'] = np.hypot(elejet_pairs.i0.eta-elejet_pairs.i1.eta , dphi(elejet_pairs.i0.phi,elejet_pairs.i1.phi)).min()
        muonjet_pairs = ak4[:,:1].cross(muons)
        df['dRMuonJet'] = np.hypot(muonjet_pairs.i0.eta-muonjet_pairs.i1.eta , dphi(muonjet_pairs.i0.phi,muonjet_pairs.i1.phi)).min()

        # Photons
        # Angular distance leading photon - leading jet
        phojet_pairs = ak4[:,:1].cross(photons[:,:1])
        df['dRPhotonJet'] = np.hypot(phojet_pairs.i0.eta-phojet_pairs.i1.eta , dphi(phojet_pairs.i0.phi,phojet_pairs.i1.phi)).min()

        # Recoil
        df['recoil_pt'], df['recoil_phi'] = recoil(met_pt,met_phi, electrons, muons, photons)
        df["dPFCalo"] = (met_pt - df["CaloMET_pt"]) / df["recoil_pt"]
        df["minDPhiJetRecoil"] = min_dphi_jet_met(ak4, df['recoil_phi'], njet=4, ptmin=30, etamax=2.4)
        df["minDPhiJetMet"] = min_dphi_jet_met(ak4, met_phi, njet=4, ptmin=30, etamax=2.4)
        selection = processor.PackedSelection()



        # Triggers
        pass_all = np.ones(df.size)==1
        selection.add('inclusive', pass_all)
        selection = trigger_selection(selection, df, cfg)
        selection.add('mu_pt_trig_safe', muons.pt.max() > 30)

        # Common selection
        selection.add('veto_ele', electrons.counts==0)
        selection.add('veto_muo', muons.counts==0)
        selection.add('veto_photon', photons.counts==0)
        selection.add('veto_tau', taus.counts==0)
        selection.add('veto_b', bjets.counts==0)
        selection.add('mindphijr',df['minDPhiJetRecoil'] > cfg.SELECTION.SIGNAL.MINDPHIJR)
        selection.add('mindphijm',df['minDPhiJetMet'] > cfg.SELECTION.SIGNAL.MINDPHIJR)
        selection.add('dpfcalo',np.abs(df['dPFCalo']) < cfg.SELECTION.SIGNAL.DPFCALO)
        selection.add('recoil', df['recoil_pt']>cfg.SELECTION.SIGNAL.RECOIL)

        if(cfg.MITIGATION.HEM and extract_year(df['dataset']) == 2018 and not cfg.RUN.SYNC):
            selection.add('hemveto', df['hemveto'])
        else:
            selection.add('hemveto', np.ones(df.size)==1)

        # AK4 Jet
        leadak4_pt_eta = (ak4.pt.max() > cfg.SELECTION.SIGNAL.leadak4.PT) \
                         & (ak4.abseta[leadak4_index] < cfg.SELECTION.SIGNAL.leadak4.ETA).any()
        selection.add('leadak4_pt_eta', leadak4_pt_eta)

        selection.add('leadak4_id',(ak4.tightId[leadak4_index] \
                                                    & (ak4.chf[leadak4_index] >cfg.SELECTION.SIGNAL.leadak4.CHF) \
                                                    & (ak4.nhf[leadak4_index]<cfg.SELECTION.SIGNAL.leadak4.NHF)).any())

        # AK8 Jet
        leadak8_index=ak8.pt.argmax()
        leadak8_pt_eta = (ak8.pt.max() > cfg.SELECTION.SIGNAL.leadak8.PT) \
                         & (ak8.abseta[leadak8_index] < cfg.SELECTION.SIGNAL.leadak8.ETA).any()
        selection.add('leadak8_pt_eta', leadak8_pt_eta)

        selection.add('leadak8_id',(ak8.tightId[leadak8_index]).any())

        # Mono-V selection
        selection.add('leadak8_tau21', ((ak8.tau2[leadak8_index] / ak8.tau1[leadak8_index]) < cfg.SELECTION.SIGNAL.LEADAK8.TAU21).any())
        selection.add('leadak8_mass', ((ak8.mass[leadak8_index] > cfg.SELECTION.SIGNAL.LEADAK8.MASS.MIN) \
                                    & (ak8.mass[leadak8_index] < cfg.SELECTION.SIGNAL.LEADAK8.MASS.MAX)).any())
        selection.add('leadak8_wvsqcd_loosemd', ((ak8.wvsqcdmd[leadak8_index] > cfg.WTAG.LOOSEMD)
                                    & (ak8.wvsqcdmd[leadak8_index] < cfg.WTAG.TIGHTMD)).any())
        selection.add('leadak8_wvsqcd_tightmd', ((ak8.wvsqcdmd[leadak8_index] > cfg.WTAG.TIGHTMD)).any())
        selection.add('leadak8_wvsqcd_loose', ((ak8.wvsqcd[leadak8_index] > cfg.WTAG.LOOSE)
                                    & (ak8.wvsqcd[leadak8_index] < cfg.WTAG.TIGHT)).any())
        selection.add('leadak8_wvsqcd_tight', ((ak8.wvsqcd[leadak8_index] > cfg.WTAG.TIGHT)).any())

        selection.add('veto_vtag', ~selection.all("leadak8_pt_eta", "leadak8_id", "leadak8_tau21", "leadak8_mass"))
        selection.add('only_one_ak8', ak8.counts==1)

        # Dimuon CR
        leadmuon_index=muons.pt.argmax()
        selection.add('at_least_one_tight_mu', df['is_tight_muon'].any())
        selection.add('dimuon_mass', ((dimuons.mass > cfg.SELECTION.CONTROL.DOUBLEMU.MASS.MIN) \
                                    & (dimuons.mass < cfg.SELECTION.CONTROL.DOUBLEMU.MASS.MAX)).any())
        selection.add('dimuon_charge', (dimuon_charge==0).any())
        selection.add('two_muons', muons.counts==2)

        # Single muon CR
        selection.add('one_muon', muons.counts==1)
        selection.add('mt_mu', df['MT_mu'] < cfg.SELECTION.CONTROL.SINGLEMU.MT)

        # Diele CR
        leadelectron_index=electrons.pt.argmax()


        selection.add('one_electron', electrons.counts==1)
        selection.add('two_electrons', electrons.counts==2)
        selection.add('at_least_one_tight_el', df['is_tight_electron'].any())

        selection.add('dielectron_mass', ((dielectrons.mass > cfg.SELECTION.CONTROL.DOUBLEEL.MASS.MIN)  \
                                        & (dielectrons.mass < cfg.SELECTION.CONTROL.DOUBLEEL.MASS.MAX)).any())
        selection.add('dielectron_charge', (dielectron_charge==0).any())
        selection.add('two_electrons', electrons.counts==2)

        # Single Ele CR
        selection.add('met_el', met_pt > cfg.SELECTION.CONTROL.SINGLEEL.MET)
        selection.add('mt_el', df['MT_el'] < cfg.SELECTION.CONTROL.SINGLEEL.MT)

        # Photon CR
        leadphoton_index=photons.pt.argmax()

        df['is_tight_photon'] = photons.mediumId \
                         & (photons.abseta < cfg.PHOTON.CUTS.TIGHT.ETA)

        selection.add('one_photon', photons.counts==1)
        selection.add('at_least_one_tight_photon', df['is_tight_photon'].any())
        selection.add('photon_pt', photons.pt.max() > cfg.PHOTON.CUTS.TIGHT.PT)
        selection.add('photon_pt_trig', photons.pt.max() > cfg.PHOTON.CUTS.TIGHT.PTTRIG)

        # Fill histograms
        output = self.accumulator.identity()

        # Gen
        if gen_v_pt is not None:
            output['genvpt_check'].fill(vpt=gen_v_pt,type="Nano", dataset=dataset, weight=df['Generator_weight'])

        if 'LHE_HT' in df:
            output['lhe_ht'].fill(dataset=dataset, ht=df['LHE_HT'])

        # Weights
        evaluator = evaluator_from_config(cfg)

        weights = processor.Weights(size=df.size, storeIndividual=True)
        if not df['is_data']:
            weights.add('gen', df['Generator_weight'])

            try:
                weights.add('prefire', df['PrefireWeight'])
            except KeyError:
                weights.add('prefire', np.ones(df.size))

            weights = candidate_weights(weights, df, evaluator, muons, electrons, photons)
            weights = pileup_weights(weights, df, evaluator, cfg)
            if not (gen_v_pt is None):
                weights = theory_weights_monojet(weights, df, evaluator, gen_v_pt)

        # Save per-event values for synchronization
        if cfg.RUN.KINEMATICS.SAVE:
            for event in cfg.RUN.KINEMATICS.EVENTS:
                mask = df['event'] == event
                if not mask.any():
                    continue
                output['kinematics']['event'] += [event]
                output['kinematics']['met'] += [met_pt[mask].flatten()]
                output['kinematics']['met_phi'] += [met_phi[mask].flatten()]
                output['kinematics']['recoil'] += [df['recoil_pt'][mask].flatten()]
                output['kinematics']['recoil_phi'] += [df['recoil_phi'][mask].flatten()]

                output['kinematics']['ak4pt0'] += [ak4[leadak4_index][mask].pt.flatten()]
                output['kinematics']['ak4eta0'] += [ak4[leadak4_index][mask].eta.flatten()]
                output['kinematics']['leadbtag'] += [ak4.pt.max()<0][mask]

                output['kinematics']['nLooseMu'] += [muons.counts[mask]]
                output['kinematics']['nTightMu'] += [muons[df['is_tight_muon']].counts[mask].flatten()]
                output['kinematics']['mupt0'] += [muons[leadmuon_index][mask].pt.flatten()]
                output['kinematics']['mueta0'] += [muons[leadmuon_index][mask].eta.flatten()]
                output['kinematics']['muphi0'] += [muons[leadmuon_index][mask].phi.flatten()]

                output['kinematics']['nLooseEl'] += [electrons.counts[mask]]
                output['kinematics']['nTightEl'] += [electrons[df['is_tight_electron']].counts[mask].flatten()]
                output['kinematics']['elpt0'] += [electrons[leadelectron_index][mask].pt.flatten()]
                output['kinematics']['eleta0'] += [electrons[leadelectron_index][mask].eta.flatten()]

                output['kinematics']['nLooseGam'] += [photons.counts[mask]]
                output['kinematics']['nTightGam'] += [photons[df['is_tight_photon']].counts[mask].flatten()]
                output['kinematics']['gpt0'] += [photons[leadphoton_index][mask].pt.flatten()]
                output['kinematics']['geta0'] += [photons[leadphoton_index][mask].eta.flatten()]


        # Sum of all weights to use for normalization
        # TODO: Deal with systematic variations
        output['nevents'][dataset] += df.size
        if not df['is_data']:
            output['sumw'][dataset] +=  df['genEventSumw']
            output['sumw2'][dataset] +=  df['genEventSumw2']
            output['sumw_pileup'][dataset] +=  weights.partial_weight(include=['pileup']).sum()

        regions = monojet_regions(cfg)

        for region, cuts in regions.items():
            region_weights = copy.deepcopy(weights)
            if not df['is_data']:
                if re.match(r'cr_(\d+)e.*', region):
                    region_weights.add('trigger', np.ones(df.size))
                elif re.match(r'cr_(\d+)m.*', region) or re.match('sr_.*', region):
                    region_weights.add('trigger', evaluator["trigger_met"](df['recoil_pt']))
                elif re.match(r'cr_g.*', region):
                    region_weights.add('trigger', np.ones(df.size))

            if not df['is_data']:
                genVs = gen[((gen.pdg==23) | (gen.pdg==24) | (gen.pdg==-24)) & (gen.pt>10)]
                leadak8 = ak8[ak8.pt.argmax()]
                leadak8_matched_mask = leadak8.match(genVs, deltaRCut=0.8)
                matched_leadak8 = leadak8[leadak8_matched_mask]
                unmatched_leadak8 = leadak8[~leadak8_matched_mask]
                for wp in ['loose','loosemd','tight','tightmd']:
                    if re.match(r'.*_{wp}_v.*', region):

                        if (wp == 'tight') or ('nomistag' in region): # no mistag SF available for tight cut
                            matched_weights = evaluator[f'wtag_{wp}'](matched_leadak8.pt).prod()
                        else:
                            matched_weights = evaluator[f'wtag_{wp}'](matched_leadak8.pt).prod() \
                                    * evaluator[f'wtag_mistag_{wp}'](unmatched_leadak8.pt).prod()

                        region_weights.add('wtag_{wp}', matched_weights)



            # Blinding
            if(self._blind and df['is_data'] and region.startswith('sr')):
                continue

            # Cutflow plot for signal and control regions
            if any(x in region for x in ["sr", "cr", "tr"]):
                output['cutflow_' + region]['all']+=df.size
                for icut, cutname in enumerate(cuts):
                    output['cutflow_' + region][cutname] += selection.all(*cuts[:icut+1]).sum()

            mask = selection.all(*cuts)


            if cfg.RUN.SAVE.TREE:
                def fill_tree(variable, values):
                    treeacc = processor.column_accumulator(values)
                    name = f'tree_{region}_{variable}'
                    if dataset in output[name].keys():
                        output[name][dataset] += treeacc
                    else:
                        output[name][dataset] = treeacc
                if region in ['cr_2m_j','cr_1m_j','cr_2e_j','cr_1e_j','cr_g_j']:
                    fill_tree('recoil',df['recoil_pt'][mask].flatten())
                    fill_tree('weight',region_weights.weight()[mask].flatten())
                    if gen_v_pt is not None:
                        fill_tree('gen_v_pt',gen_v_pt[mask].flatten())
                    else:
                        fill_tree('gen_v_pt', -1 * np.ones(sum(mask)))
            # Save the event numbers of events passing this selection
            if cfg.RUN.SAVE.PASSING:
                output['selected_events'][region] += list(df['event'][mask])


            # Multiplicities
            def fill_mult(name, candidates):
                output[name].fill(
                                  dataset=dataset,
                                  region=region,
                                  multiplicity=candidates[mask].counts,
                                  weight=region_weights.weight()[mask]
                                  )

            fill_mult('ak8_mult', ak8)
            fill_mult('ak4_mult', ak4)
            fill_mult('bjet_mult',bjets)
            fill_mult('loose_ele_mult',electrons)
            fill_mult('tight_ele_mult',electrons[df['is_tight_electron']])
            fill_mult('loose_muo_mult',muons)
            fill_mult('tight_muo_mult',muons[df['is_tight_muon']])
            fill_mult('tau_mult',taus)
            fill_mult('photon_mult',photons)

            def ezfill(name, **kwargs):
                """Helper function to make filling easier."""
                output[name].fill(
                                  dataset=dataset,
                                  region=region,
                                  **kwargs
                                  )
            # Monitor weights
            for wname, wvalue in region_weights._weights.items():
                ezfill("weights", weight_type=wname, weight_value=wvalue[mask])

            # All ak4
            # This is a workaround to create a weight array of the right dimension
            w_alljets = weight_shape(ak4[mask].eta, region_weights.weight()[mask])

            ezfill('ak4_eta',    jeteta=ak4[mask].eta.flatten(), weight=w_alljets)
            ezfill('ak4_phi',    jetphi=ak4[mask].phi.flatten(), weight=w_alljets)
            ezfill('ak4_eta_phi', phi=ak4[mask].phi.flatten(),eta=ak4[mask].eta.flatten(), weight=w_alljets)
            ezfill('ak4_pt',     jetpt=ak4[mask].pt.flatten(),   weight=w_alljets)

            # Leading ak4
            w_leadak4 = weight_shape(ak4[leadak4_index].eta[mask], region_weights.weight()[mask])
            ezfill('ak4_eta0',   jeteta=ak4[leadak4_index].eta[mask].flatten(),    weight=w_leadak4)
            ezfill('ak4_phi0',   jetphi=ak4[leadak4_index].phi[mask].flatten(),    weight=w_leadak4)
            ezfill('ak4_pt0',    jetpt=ak4[leadak4_index].pt[mask].flatten(),      weight=w_leadak4)
            ezfill('ak4_ptraw0',    jetpt=ak4[leadak4_index].ptraw[mask].flatten(),      weight=w_leadak4)
            ezfill('ak4_chf0',    frac=ak4[leadak4_index].chf[mask].flatten(),      weight=w_leadak4)
            ezfill('ak4_nhf0',    frac=ak4[leadak4_index].nhf[mask].flatten(),      weight=w_leadak4)

            ezfill('drelejet',    dr=df['dREleJet'][mask],      weight=region_weights.weight()[mask])
            ezfill('drmuonjet',    dr=df['dRMuonJet'][mask],      weight=region_weights.weight()[mask])
            ezfill('drphotonjet',    dr=df['dRPhotonJet'][mask],  weight=region_weights.weight()[mask])

            # AK8 jets
            if region=='inclusive' or region.endswith('v'):
                # All
                w_allak8 = weight_shape(ak8.eta[mask], region_weights.weight()[mask])

                ezfill('ak8_eta',    jeteta=ak8[mask].eta.flatten(), weight=w_allak8)
                ezfill('ak8_phi',    jetphi=ak8[mask].phi.flatten(), weight=w_allak8)
                ezfill('ak8_pt',     jetpt=ak8[mask].pt.flatten(),   weight=w_allak8)
                ezfill('ak8_mass',   mass=ak8[mask].mass.flatten(),  weight=w_allak8)

                # Leading
                w_leadak8 = weight_shape(ak8[leadak8_index].eta[mask], region_weights.weight()[mask])

                ezfill('ak8_eta0',       jeteta=ak8[leadak8_index].eta[mask].flatten(),    weight=w_leadak8)
                ezfill('ak8_phi0',       jetphi=ak8[leadak8_index].phi[mask].flatten(),    weight=w_leadak8)
                ezfill('ak8_pt0',        jetpt=ak8[leadak8_index].pt[mask].flatten(),      weight=w_leadak8 )
                ezfill('ak8_mass0',      mass=ak8[leadak8_index].mass[mask].flatten(),     weight=w_leadak8)
                ezfill('ak8_tau210',     tau21=ak8[leadak8_index].tau21[mask].flatten(),     weight=w_leadak8)
                ezfill('ak8_wvsqcd0',    tagger=ak8[leadak8_index].wvsqcd[mask].flatten(),     weight=w_leadak8)
                ezfill('ak8_wvsqcdmd0',  tagger=ak8[leadak8_index].wvsqcdmd[mask].flatten(),     weight=w_leadak8)
                ezfill('ak8_zvsqcd0',    tagger=ak8[leadak8_index].zvsqcd[mask].flatten(),     weight=w_leadak8)
                ezfill('ak8_zvsqcdmd0',  tagger=ak8[leadak8_index].zvsqcdmd[mask].flatten(),     weight=w_leadak8)

                # histogram with only gen-matched lead ak8 pt
                if not df['is_data']:
                    w_matchedleadak8 = weight_shape(matched_leadak8.eta[mask], region_weights.weight()[mask])
                    ezfill('ak8_Vmatched_pt0', jetpt=matched_leadak8.pt[mask].flatten(),      weight=w_matchedleadak8 )


                # Dimuon specifically for deepak8 mistag rate measurement
                if 'inclusive_v' in region:
                    ezfill('ak8_passloose_pt0', wppass=ak8[leadak8_index].wvsqcd[mask].max()>cfg.WTAG.LOOSE, jetpt=ak8[leadak8_index].pt[mask].max(),      weight=w_leadak8 )
                    ezfill('ak8_passtight_pt0', wppass=ak8[leadak8_index].wvsqcd[mask].max()>cfg.WTAG.TIGHT, jetpt=ak8[leadak8_index].pt[mask].max(),      weight=w_leadak8 )
                    ezfill('ak8_passloosemd_pt0', wppass=ak8[leadak8_index].wvsqcdmd[mask].max()>cfg.WTAG.LOOSEMD, jetpt=ak8[leadak8_index].pt[mask].max(),      weight=w_leadak8 )
                    ezfill('ak8_passtightmd_pt0', wppass=ak8[leadak8_index].wvsqcdmd[mask].max()>cfg.WTAG.TIGHTMD, jetpt=ak8[leadak8_index].pt[mask].max(),      weight=w_leadak8 )
                    ezfill('ak8_passloose_mass0', wppass=ak8[leadak8_index].wvsqcd[mask].max()>cfg.WTAG.LOOSE, mass=ak8[leadak8_index].mass[mask].max(),      weight=w_leadak8 )
                    ezfill('ak8_passtight_mass0', wppass=ak8[leadak8_index].wvsqcd[mask].max()>cfg.WTAG.TIGHT, mass=ak8[leadak8_index].mass[mask].max(),      weight=w_leadak8 )
                    ezfill('ak8_passloosemd_mass0', wppass=ak8[leadak8_index].wvsqcdmd[mask].max()>cfg.WTAG.LOOSEMD, mass=ak8[leadak8_index].mass[mask].max(),      weight=w_leadak8 )
                    ezfill('ak8_passtightmd_mass0', wppass=ak8[leadak8_index].wvsqcdmd[mask].max()>cfg.WTAG.TIGHTMD, mass=ak8[leadak8_index].mass[mask].max(),      weight=w_leadak8 )

            # MET
            ezfill('dpfcalo',            dpfcalo=df["dPFCalo"][mask],       weight=region_weights.weight()[mask] )
            ezfill('met',                met=met_pt[mask],            weight=region_weights.weight()[mask] )
            ezfill('met_phi',            phi=met_phi[mask],            weight=region_weights.weight()[mask] )
            ezfill('recoil',             recoil=df["recoil_pt"][mask],      weight=region_weights.weight()[mask] )
            ezfill('recoil_phi',         phi=df["recoil_phi"][mask],      weight=region_weights.weight()[mask] )
            ezfill('recoil_nopog',    recoil=df["recoil_pt"][mask],      weight=region_weights.partial_weight(include=['pileup','theory','gen','prefire'])[mask])
            ezfill('recoil_nopref',    recoil=df["recoil_pt"][mask],      weight=region_weights.partial_weight(exclude=['prefire'])[mask])
            ezfill('recoil_nopu',    recoil=df["recoil_pt"][mask],      weight=region_weights.partial_weight(exclude=['pileup'])[mask])
            ezfill('recoil_notrg',    recoil=df["recoil_pt"][mask],      weight=region_weights.partial_weight(exclude=['trigger'])[mask])
            ezfill('ak4_pt0_over_recoil',    ratio=ak4.pt.max()[mask]/df["recoil_pt"][mask],      weight=region_weights.weight()[mask])
            ezfill('dphijm',             dphi=df["minDPhiJetMet"][mask],    weight=region_weights.weight()[mask] )
            ezfill('dphijr',             dphi=df["minDPhiJetRecoil"][mask],    weight=region_weights.weight()[mask] )

            if 'noveto' in region:
                continue

            # Muons
            if '_1m_' in region or '_2m_' in region:
                w_allmu = weight_shape(muons.pt[mask], region_weights.weight()[mask])
                ezfill('muon_pt',   pt=muons.pt[mask].flatten(),    weight=w_allmu )
                ezfill('muon_mt',   mt=df['MT_mu'][mask],           weight=region_weights.weight()[mask])
                ezfill('muon_eta',  eta=muons.eta[mask].flatten(),  weight=w_allmu)
                ezfill('muon_eta_phi', phi=muons.phi[mask].flatten(),eta=muons.eta[mask].flatten(), weight=w_allmu)
                ezfill('muon_phi',  phi=muons.phi[mask].flatten(),  weight=w_allmu)
                ezfill('muon_dxy',  dxy=muons.dxy[mask].flatten(),  weight=w_allmu)
                ezfill('muon_dz',  dz=muons.dz[mask].flatten(),  weight=w_allmu)

                # Leading muon
                w_leadmu = weight_shape(muons[leadmuon_index].pt[mask], region_weights.weight()[mask])
                ezfill('muon_pt0',   pt=muons[leadmuon_index].pt[mask].flatten(),    weight=w_leadmu )
                ezfill('muon_eta0',  eta=muons[leadmuon_index].eta[mask].flatten(),  weight=w_leadmu)
                ezfill('muon_phi0',  phi=muons[leadmuon_index].phi[mask].flatten(),  weight=w_leadmu)
                ezfill('muon_dxy0',  dxy=muons[leadmuon_index].dxy[mask].flatten(),  weight=w_leadmu)
                ezfill('muon_dz0',  dz=muons[leadmuon_index].dz[mask].flatten(),  weight=w_leadmu)

            # Dimuon
            if '_2m_' in region:
                w_dimu = weight_shape(dimuons.pt[mask], region_weights.weight()[mask])

                ezfill('dimuon_pt',     pt=dimuons.pt[mask].flatten(),              weight=w_dimu)
                ezfill('dimuon_eta',    eta=dimuons.eta[mask].flatten(),            weight=w_dimu)
                ezfill('dimuon_mass',   dilepton_mass=dimuons.mass[mask].flatten(), weight=w_dimu )
                ezfill('dimuon_dr',   dr=dimuons.i0.p4.delta_r(dimuons.i1.p4)[mask].flatten(), weight=w_dimu )

                ezfill('muon_pt1',   pt=muons[~leadmuon_index].pt[mask].flatten(),    weight=w_leadmu )
                ezfill('muon_eta1',  eta=muons[~leadmuon_index].eta[mask].flatten(),  weight=w_leadmu)
                ezfill('muon_phi1',  phi=muons[~leadmuon_index].phi[mask].flatten(),  weight=w_leadmu)

            # Electrons
            if '_1e_' in region or '_2e_' in region:
                w_allel = weight_shape(electrons.pt[mask], region_weights.weight()[mask])
                ezfill('electron_pt',   pt=electrons.pt[mask].flatten(),    weight=w_allel)
                ezfill('electron_mt',   mt=df['MT_el'][mask],               weight=region_weights.weight()[mask])
                ezfill('electron_eta',  eta=electrons.eta[mask].flatten(),  weight=w_allel)
                ezfill('electron_phi',  phi=electrons.phi[mask].flatten(),  weight=w_allel)
                ezfill('electron_eta_phi', phi=electrons.phi[mask].flatten(),eta=electrons.eta[mask].flatten(), weight=w_allel)
                ezfill('electron_dz',  dz=electrons.dz[mask].flatten(),  weight=w_allel)
                ezfill('electron_dxy',  dxy=electrons.dxy[mask].flatten(),  weight=w_allel)

                w_leadel = weight_shape(electrons[leadelectron_index].pt[mask], region_weights.weight()[mask])
                ezfill('electron_pt0',   pt=electrons[leadelectron_index].pt[mask].flatten(),    weight=w_leadel)
                ezfill('electron_eta0',  eta=electrons[leadelectron_index].eta[mask].flatten(),  weight=w_leadel)
                ezfill('electron_phi0',  phi=electrons[leadelectron_index].phi[mask].flatten(),  weight=w_leadel)

                w_trailel = weight_shape(electrons[~leadelectron_index].pt[mask], region_weights.weight()[mask])
                ezfill('electron_tightid1',  id=electrons[~leadelectron_index].tightId[mask].flatten(),  weight=w_trailel)

            # Dielectron
            if '_2e_' in region:
                w_diel = weight_shape(dielectrons.pt[mask], region_weights.weight()[mask])
                ezfill('dielectron_pt',     pt=dielectrons.pt[mask].flatten(),                  weight=w_diel)
                ezfill('dielectron_eta',    eta=dielectrons.eta[mask].flatten(),                weight=w_diel)
                ezfill('dielectron_mass',   dilepton_mass=dielectrons.mass[mask].flatten(),     weight=w_diel)
                ezfill('dielectron_dr',   dr=dielectrons.i0.p4.delta_r(dielectrons.i1.p4)[mask].flatten(), weight=w_diel )

                ezfill('electron_pt1',   pt=electrons[~leadelectron_index].pt[mask].flatten(),    weight=w_leadel)
                ezfill('electron_eta1',  eta=electrons[~leadelectron_index].eta[mask].flatten(),  weight=w_leadel)
                ezfill('electron_phi1',  phi=electrons[~leadelectron_index].phi[mask].flatten(),  weight=w_leadel)
            # Photon
            if '_g_' in region:
                w_leading_photon = weight_shape(photons[leadphoton_index].pt[mask],region_weights.weight()[mask]);
                ezfill('photon_pt0',              pt=photons[leadphoton_index].pt[mask].flatten(),    weight=w_leading_photon)
                ezfill('photon_eta0',             eta=photons[leadphoton_index].eta[mask].flatten(),  weight=w_leading_photon)
                ezfill('photon_phi0',             phi=photons[leadphoton_index].phi[mask].flatten(),  weight=w_leading_photon)
                ezfill('photon_eta_phi', phi=photons[leadphoton_index].phi[mask].flatten(),eta=photons[leadphoton_index].eta[mask].flatten(), weight=w_leading_photon)

                # w_drphoton_jet = weight_shape(df['dRPhotonJet'][mask], region_weights.weight()[mask])

            # PV
            ezfill('npv', nvtx=df['PV_npvs'][mask], weight=region_weights.weight()[mask])
            ezfill('npvgood', nvtx=df['PV_npvsGood'][mask], weight=region_weights.weight()[mask])

            ezfill('npv_nopu', nvtx=df['PV_npvs'][mask], weight=region_weights.partial_weight(exclude=['pileup'])[mask])
            ezfill('npvgood_nopu', nvtx=df['PV_npvsGood'][mask], weight=region_weights.partial_weight(exclude=['pileup'])[mask])

            ezfill('rho_all', rho=df['fixedGridRhoFastjetAll'][mask], weight=region_weights.weight()[mask])
            ezfill('rho_central', rho=df['fixedGridRhoFastjetCentral'][mask], weight=region_weights.weight()[mask])
            ezfill('rho_all_nopu', rho=df['fixedGridRhoFastjetAll'][mask], weight=region_weights.partial_weight(exclude=['pileup'])[mask])
            ezfill('rho_central_nopu', rho=df['fixedGridRhoFastjetCentral'][mask], weight=region_weights.partial_weight(exclude=['pileup'])[mask])
        return output
コード例 #8
0
    def process(self, df):
        if not df.size:
            return self.accumulator.identity()
        self._configure(df)
        dataset = df['dataset']
        df['is_lo_w'] = is_lo_w(dataset)
        df['is_lo_z'] = is_lo_z(dataset)
        df['is_lo_w_ewk'] = is_lo_w_ewk(dataset)
        df['is_lo_z_ewk'] = is_lo_z_ewk(dataset)
        df['is_lo_g'] = is_lo_g(dataset)
        df['is_nlo_z'] = is_nlo_z(dataset)
        df['is_nlo_w'] = is_nlo_w(dataset)
        df['has_lhe_v_pt'] = df['is_lo_w'] | df['is_lo_z'] | df[
            'is_nlo_z'] | df['is_nlo_w'] | df['is_lo_g'] | df[
                'is_lo_w_ewk'] | df['is_lo_z_ewk']
        df['is_data'] = is_data(dataset)

        gen_v_pt = None
        if df['is_lo_w'] or df['is_lo_z'] or df['is_nlo_z'] or df[
                'is_nlo_w'] or df['is_lo_z_ewk'] or df['is_lo_w_ewk']:
            gen = setup_gen_candidates(df)
            dressed = setup_dressed_gen_candidates(df)
            fill_gen_v_info(df, gen, dressed)
            gen_v_pt = df['gen_v_pt_dress']
        elif df['is_lo_g']:
            gen = setup_gen_candidates(df)
            gen_v_pt = gen[(gen.pdg == 22) & (gen.status == 1)].pt.max()

        # Generator-level leading dijet mass
        if df['has_lhe_v_pt']:
            genjets = setup_lhe_cleaned_genjets(df)
            digenjet = genjets[:, :2].distincts()
            df['mjj_gen'] = digenjet.mass.max()

        # Candidates
        # Already pre-filtered!
        # All leptons are at least loose
        # Check out setup_candidates for filtering details
        met_pt, met_phi, ak4, bjets, _, muons, electrons, taus, photons = setup_candidates(
            df, cfg)

        # Filtering ak4 jets according to pileup ID
        ak4 = ak4[ak4.puid]
        bjets = bjets[bjets.puid]

        # Muons
        df['is_tight_muon'] = muons.tightId \
                      & (muons.iso < cfg.MUON.CUTS.TIGHT.ISO) \
                      & (muons.pt>cfg.MUON.CUTS.TIGHT.PT) \
                      & (muons.abseta<cfg.MUON.CUTS.TIGHT.ETA)

        dimuons = muons.distincts()
        dimuon_charge = dimuons.i0['charge'] + dimuons.i1['charge']

        df['MT_mu'] = ((muons.counts == 1) *
                       mt(muons.pt, muons.phi, met_pt, met_phi)).max()

        # Electrons
        df['is_tight_electron'] = electrons.tightId \
                            & (electrons.pt > cfg.ELECTRON.CUTS.TIGHT.PT) \
                            & (electrons.abseta < cfg.ELECTRON.CUTS.TIGHT.ETA)

        dielectrons = electrons.distincts()
        dielectron_charge = dielectrons.i0['charge'] + dielectrons.i1['charge']

        df['MT_el'] = ((electrons.counts == 1) *
                       mt(electrons.pt, electrons.phi, met_pt, met_phi)).max()

        # ak4
        leadak4_index = ak4.pt.argmax()

        elejet_pairs = ak4[:, :1].cross(electrons)
        df['dREleJet'] = np.hypot(
            elejet_pairs.i0.eta - elejet_pairs.i1.eta,
            dphi(elejet_pairs.i0.phi, elejet_pairs.i1.phi)).min()
        muonjet_pairs = ak4[:, :1].cross(muons)
        df['dRMuonJet'] = np.hypot(
            muonjet_pairs.i0.eta - muonjet_pairs.i1.eta,
            dphi(muonjet_pairs.i0.phi, muonjet_pairs.i1.phi)).min()

        # Recoil
        df['recoil_pt'], df['recoil_phi'] = recoil(met_pt, met_phi, electrons,
                                                   muons, photons)
        df["dPFCalo"] = (met_pt - df["CaloMET_pt"]) / df["recoil_pt"]
        df["minDPhiJetRecoil"] = min_dphi_jet_met(ak4,
                                                  df['recoil_phi'],
                                                  njet=4,
                                                  ptmin=30,
                                                  etamax=4.7)
        df["minDPhiJetMet"] = min_dphi_jet_met(ak4,
                                               met_phi,
                                               njet=4,
                                               ptmin=30,
                                               etamax=4.7)
        selection = processor.PackedSelection()

        # Triggers
        pass_all = np.ones(df.size) == 1
        selection.add('inclusive', pass_all)
        selection = trigger_selection(selection, df, cfg)

        selection.add('mu_pt_trig_safe', muons.pt.max() > 30)

        # Common selection
        selection.add('veto_ele', electrons.counts == 0)
        selection.add('veto_muo', muons.counts == 0)
        selection.add('veto_photon', photons.counts == 0)
        selection.add('veto_tau', taus.counts == 0)
        selection.add('veto_b', bjets.counts == 0)
        selection.add('mindphijr',
                      df['minDPhiJetRecoil'] > cfg.SELECTION.SIGNAL.MINDPHIJR)
        selection.add('dpfcalo',
                      np.abs(df['dPFCalo']) < cfg.SELECTION.SIGNAL.DPFCALO)
        selection.add('recoil', df['recoil_pt'] > cfg.SELECTION.SIGNAL.RECOIL)

        if (cfg.MITIGATION.HEM and extract_year(df['dataset']) == 2018
                and not cfg.RUN.SYNC):
            selection.add('hemveto', df['hemveto'])
        else:
            selection.add('hemveto', np.ones(df.size) == 1)

        # AK4 dijet
        diak4 = ak4[:, :2].distincts()
        leadak4_pt_eta = (diak4.i0.pt > cfg.SELECTION.SIGNAL.LEADAK4.PT) & (
            np.abs(diak4.i0.eta) < cfg.SELECTION.SIGNAL.LEADAK4.ETA)
        trailak4_pt_eta = (diak4.i1.pt > cfg.SELECTION.SIGNAL.TRAILAK4.PT) & (
            np.abs(diak4.i1.eta) < cfg.SELECTION.SIGNAL.TRAILAK4.ETA)
        hemisphere = (diak4.i0.eta * diak4.i1.eta < 0).any()
        has_track0 = np.abs(diak4.i0.eta) <= 2.5
        has_track1 = np.abs(diak4.i1.eta) <= 2.5

        leadak4_id = diak4.i0.tightId & (has_track0 * (
            (diak4.i0.chf > cfg.SELECTION.SIGNAL.LEADAK4.CHF) &
            (diak4.i0.nhf < cfg.SELECTION.SIGNAL.LEADAK4.NHF)) + ~has_track0)
        trailak4_id = has_track1 * (
            (diak4.i1.chf > cfg.SELECTION.SIGNAL.TRAILAK4.CHF) &
            (diak4.i1.nhf < cfg.SELECTION.SIGNAL.TRAILAK4.NHF)) + ~has_track1

        df['mjj'] = diak4.mass.max()
        df['dphijj'] = dphi(diak4.i0.phi.min(), diak4.i1.phi.max())
        df['detajj'] = np.abs(diak4.i0.eta - diak4.i1.eta).max()

        selection.add('two_jets', diak4.counts > 0)
        selection.add('leadak4_pt_eta', leadak4_pt_eta.any())
        selection.add('trailak4_pt_eta', trailak4_pt_eta.any())
        selection.add('hemisphere', hemisphere)
        selection.add('leadak4_id', leadak4_id.any())
        selection.add('trailak4_id', trailak4_id.any())
        selection.add('mjj',
                      df['mjj'] > cfg.SELECTION.SIGNAL.DIJET.SHAPE_BASED.MASS)
        selection.add(
            'dphijj',
            df['dphijj'] < cfg.SELECTION.SIGNAL.DIJET.SHAPE_BASED.DPHI)
        selection.add(
            'detajj',
            df['detajj'] > cfg.SELECTION.SIGNAL.DIJET.SHAPE_BASED.DETA)

        # Divide into three categories for trigger study
        if cfg.RUN.TRIGGER_STUDY:
            two_central_jets = (np.abs(diak4.i0.eta) <= 2.4) & (np.abs(
                diak4.i1.eta) <= 2.4)
            two_forward_jets = (np.abs(diak4.i0.eta) > 2.4) & (np.abs(
                diak4.i1.eta) > 2.4)
            one_jet_forward_one_jet_central = (~two_central_jets) & (
                ~two_forward_jets)
            selection.add('two_central_jets', two_central_jets.any())
            selection.add('two_forward_jets', two_forward_jets.any())
            selection.add('one_jet_forward_one_jet_central',
                          one_jet_forward_one_jet_central.any())

        # Dimuon CR
        leadmuon_index = muons.pt.argmax()
        selection.add('at_least_one_tight_mu', df['is_tight_muon'].any())
        selection.add('dimuon_mass', ((dimuons.mass > cfg.SELECTION.CONTROL.DOUBLEMU.MASS.MIN) \
                                    & (dimuons.mass < cfg.SELECTION.CONTROL.DOUBLEMU.MASS.MAX)).any())
        selection.add('dimuon_charge', (dimuon_charge == 0).any())
        selection.add('two_muons', muons.counts == 2)

        # Single muon CR
        selection.add('one_muon', muons.counts == 1)
        selection.add('mt_mu', df['MT_mu'] < cfg.SELECTION.CONTROL.SINGLEMU.MT)

        # Diele CR
        leadelectron_index = electrons.pt.argmax()

        selection.add('one_electron', electrons.counts == 1)
        selection.add('two_electrons', electrons.counts == 2)
        selection.add('at_least_one_tight_el', df['is_tight_electron'].any())

        selection.add('dielectron_mass', ((dielectrons.mass > cfg.SELECTION.CONTROL.DOUBLEEL.MASS.MIN)  \
                                        & (dielectrons.mass < cfg.SELECTION.CONTROL.DOUBLEEL.MASS.MAX)).any())
        selection.add('dielectron_charge', (dielectron_charge == 0).any())
        selection.add('two_electrons', electrons.counts == 2)

        # Single Ele CR
        selection.add('met_el', met_pt > cfg.SELECTION.CONTROL.SINGLEEL.MET)
        selection.add('mt_el', df['MT_el'] < cfg.SELECTION.CONTROL.SINGLEEL.MT)

        # Photon CR
        leadphoton_index = photons.pt.argmax()

        df['is_tight_photon'] = photons.mediumId \
                         & (photons.abseta < cfg.PHOTON.CUTS.TIGHT.ETA)

        selection.add('one_photon', photons.counts == 1)
        selection.add('at_least_one_tight_photon', df['is_tight_photon'].any())
        selection.add('photon_pt', photons.pt.max() > cfg.PHOTON.CUTS.TIGHT.PT)
        selection.add('photon_pt_trig',
                      photons.pt.max() > cfg.PHOTON.CUTS.TIGHT.PTTRIG)

        # Fill histograms
        output = self.accumulator.identity()

        # Gen
        if df['has_lhe_v_pt']:
            output['genvpt_check'].fill(vpt=gen_v_pt,
                                        type="Nano",
                                        dataset=dataset)

        if 'LHE_Njets' in df:
            output['lhe_njets'].fill(dataset=dataset,
                                     multiplicity=df['LHE_Njets'])
        if 'LHE_HT' in df:
            output['lhe_ht'].fill(dataset=dataset, ht=df['LHE_HT'])
        if 'LHE_HTIncoming' in df:
            output['lhe_htinc'].fill(dataset=dataset, ht=df['LHE_HTIncoming'])

        # Weights
        evaluator = evaluator_from_config(cfg)

        weights = processor.Weights(size=df.size, storeIndividual=True)
        if not df['is_data']:
            weights.add('gen', df['Generator_weight'])

            try:
                weights.add('prefire', df['PrefireWeight'])
            except KeyError:
                weights.add('prefire', np.ones(df.size))

            weights = candidate_weights(weights, df, evaluator, muons,
                                        electrons, photons)
            weights = pileup_weights(weights, df, evaluator, cfg)
            if not (gen_v_pt is None):
                weights = theory_weights_vbf(weights, df, evaluator, gen_v_pt,
                                             df['mjj_gen'])

        # Save per-event values for synchronization
        if cfg.RUN.KINEMATICS.SAVE:
            for event in cfg.RUN.KINEMATICS.EVENTS:
                mask = df['event'] == event
                if not mask.any():
                    continue
                output['kinematics']['event'] += [event]
                output['kinematics']['met'] += [met_pt[mask]]
                output['kinematics']['met_phi'] += [met_phi[mask]]
                output['kinematics']['recoil'] += [df['recoil_pt'][mask]]
                output['kinematics']['recoil_phi'] += [df['recoil_phi'][mask]]

                output['kinematics']['ak4pt0'] += [ak4[leadak4_index][mask].pt]
                output['kinematics']['ak4eta0'] += [
                    ak4[leadak4_index][mask].eta
                ]
                output['kinematics']['leadbtag'] += [ak4.pt.max() < 0][mask]

                output['kinematics']['nLooseMu'] += [muons.counts[mask]]
                output['kinematics']['nTightMu'] += [
                    muons[df['is_tight_muon']].counts[mask]
                ]
                output['kinematics']['mupt0'] += [
                    muons[leadmuon_index][mask].pt
                ]
                output['kinematics']['mueta0'] += [
                    muons[leadmuon_index][mask].eta
                ]

                output['kinematics']['nLooseEl'] += [electrons.counts[mask]]
                output['kinematics']['nTightEl'] += [
                    electrons[df['is_tight_electron']].counts[mask]
                ]
                output['kinematics']['elpt0'] += [
                    electrons[leadelectron_index][mask].pt
                ]
                output['kinematics']['eleta0'] += [
                    electrons[leadelectron_index][mask].eta
                ]

                output['kinematics']['nLooseGam'] += [photons.counts[mask]]
                output['kinematics']['nTightGam'] += [
                    photons[df['is_tight_photon']].counts[mask]
                ]
                output['kinematics']['gpt0'] += [
                    photons[leadphoton_index][mask].pt
                ]
                output['kinematics']['geta0'] += [
                    photons[leadphoton_index][mask].eta
                ]

        # Sum of all weights to use for normalization
        # TODO: Deal with systematic variations
        output['nevents'][dataset] += df.size
        if not df['is_data']:
            output['sumw'][dataset] += df['genEventSumw']
            output['sumw2'][dataset] += df['genEventSumw2']
            output['sumw_pileup'][dataset] += weights._weights['pileup'].sum()

        regions = vbfhinv_regions(cfg)
        for region, cuts in regions.items():
            # Blinding
            if (self._blind and df['is_data'] and region.startswith('sr')):
                continue

            # Cutflow plot for signal and control regions
            if any(x in region for x in ["sr", "cr", "tr"]):
                output['cutflow_' + region]['all'] += df.size
                for icut, cutname in enumerate(cuts):
                    output['cutflow_' + region][cutname] += selection.all(
                        *cuts[:icut + 1]).sum()

            mask = selection.all(*cuts)

            # Save the event numbers of events passing this selection
            if cfg.RUN.SAVE.PASSING:
                output['selected_events'][region] += list(df['event'][mask])

            # Multiplicities
            def fill_mult(name, candidates):
                output[name].fill(dataset=dataset,
                                  region=region,
                                  multiplicity=candidates[mask].counts,
                                  weight=weights.weight()[mask])

            fill_mult('ak4_mult', ak4)
            fill_mult('bjet_mult', bjets)
            fill_mult('loose_ele_mult', electrons)
            fill_mult('tight_ele_mult', electrons[df['is_tight_electron']])
            fill_mult('loose_muo_mult', muons)
            fill_mult('tight_muo_mult', muons[df['is_tight_muon']])
            fill_mult('tau_mult', taus)
            fill_mult('photon_mult', photons)

            def ezfill(name, **kwargs):
                """Helper function to make filling easier."""
                output[name].fill(dataset=dataset, region=region, **kwargs)

            # Monitor weights
            for wname, wvalue in weights._weights.items():
                ezfill("weights", weight_type=wname, weight_value=wvalue[mask])
                ezfill("weights_wide",
                       weight_type=wname,
                       weight_value=wvalue[mask])

            # All ak4
            # This is a workaround to create a weight array of the right dimension
            w_alljets = weight_shape(ak4[mask].eta, weights.weight()[mask])
            w_alljets_nopref = weight_shape(
                ak4[mask].eta,
                weights.partial_weight(exclude=['prefire'])[mask])

            ezfill('ak4_eta', jeteta=ak4[mask].eta.flatten(), weight=w_alljets)
            ezfill('ak4_phi', jetphi=ak4[mask].phi.flatten(), weight=w_alljets)
            ezfill('ak4_pt', jetpt=ak4[mask].pt.flatten(), weight=w_alljets)

            ezfill('ak4_eta_nopref',
                   jeteta=ak4[mask].eta.flatten(),
                   weight=w_alljets_nopref)
            ezfill('ak4_phi_nopref',
                   jetphi=ak4[mask].phi.flatten(),
                   weight=w_alljets_nopref)
            ezfill('ak4_pt_nopref',
                   jetpt=ak4[mask].pt.flatten(),
                   weight=w_alljets_nopref)

            # Leading ak4
            w_diak4 = weight_shape(diak4.pt[mask], weights.weight()[mask])
            ezfill('ak4_eta0',
                   jeteta=diak4.i0.eta[mask].flatten(),
                   weight=w_diak4)
            ezfill('ak4_phi0',
                   jetphi=diak4.i0.phi[mask].flatten(),
                   weight=w_diak4)
            ezfill('ak4_pt0',
                   jetpt=diak4.i0.pt[mask].flatten(),
                   weight=w_diak4)
            ezfill('ak4_ptraw0',
                   jetpt=diak4.i0.ptraw[mask].flatten(),
                   weight=w_diak4)
            ezfill('ak4_chf0',
                   frac=diak4.i0.chf[mask].flatten(),
                   weight=w_diak4)
            ezfill('ak4_nhf0',
                   frac=diak4.i0.nhf[mask].flatten(),
                   weight=w_diak4)
            ezfill('ak4_nconst0',
                   nconst=diak4.i0.nconst[mask].flatten(),
                   weight=w_diak4)

            # Trailing ak4
            ezfill('ak4_eta1',
                   jeteta=diak4.i1.eta[mask].flatten(),
                   weight=w_diak4)
            ezfill('ak4_phi1',
                   jetphi=diak4.i1.phi[mask].flatten(),
                   weight=w_diak4)
            ezfill('ak4_pt1',
                   jetpt=diak4.i1.pt[mask].flatten(),
                   weight=w_diak4)
            ezfill('ak4_ptraw1',
                   jetpt=diak4.i1.ptraw[mask].flatten(),
                   weight=w_diak4)
            ezfill('ak4_chf1',
                   frac=diak4.i1.chf[mask].flatten(),
                   weight=w_diak4)
            ezfill('ak4_nhf1',
                   frac=diak4.i1.nhf[mask].flatten(),
                   weight=w_diak4)
            ezfill('ak4_nconst1',
                   nconst=diak4.i1.nconst[mask].flatten(),
                   weight=w_diak4)

            # B tag discriminator
            btag = getattr(ak4, cfg.BTAG.ALGO)
            w_btag = weight_shape(btag[mask], weights.weight()[mask])
            ezfill('ak4_btag', btag=btag[mask].flatten(), weight=w_btag)

            # MET
            ezfill('dpfcalo',
                   dpfcalo=df["dPFCalo"][mask],
                   weight=weights.weight()[mask])
            ezfill('met', met=met_pt[mask], weight=weights.weight()[mask])
            ezfill('met_phi', phi=met_phi[mask], weight=weights.weight()[mask])
            ezfill('recoil',
                   recoil=df["recoil_pt"][mask],
                   weight=weights.weight()[mask])
            ezfill('recoil_phi',
                   phi=df["recoil_phi"][mask],
                   weight=weights.weight()[mask])
            ezfill('dphijm',
                   dphi=df["minDPhiJetMet"][mask],
                   weight=weights.weight()[mask])
            ezfill('dphijr',
                   dphi=df["minDPhiJetRecoil"][mask],
                   weight=weights.weight()[mask])

            ezfill('dphijj',
                   dphi=df["dphijj"][mask],
                   weight=weights.weight()[mask])
            ezfill('detajj',
                   deta=df["detajj"][mask],
                   weight=weights.weight()[mask])
            ezfill('mjj', mjj=df["mjj"][mask], weight=weights.weight()[mask])

            # Two dimensional
            ezfill('recoil_mjj',
                   recoil=df["recoil_pt"][mask],
                   mjj=df["mjj"][mask],
                   weight=weights.weight()[mask])

            # Muons
            if '_1m_' in region or '_2m_' in region:
                w_allmu = weight_shape(muons.pt[mask], weights.weight()[mask])
                ezfill('muon_pt', pt=muons.pt[mask].flatten(), weight=w_allmu)
                ezfill('muon_mt',
                       mt=df['MT_mu'][mask],
                       weight=weights.weight()[mask])
                ezfill('muon_eta',
                       eta=muons.eta[mask].flatten(),
                       weight=w_allmu)
                ezfill('muon_phi',
                       phi=muons.phi[mask].flatten(),
                       weight=w_allmu)

            # Dimuon
            if '_2m_' in region:
                w_dimu = weight_shape(dimuons.pt[mask], weights.weight()[mask])
                ezfill('muon_pt0',
                       pt=dimuons.i0.pt[mask].flatten(),
                       weight=w_dimu)
                ezfill('muon_pt1',
                       pt=dimuons.i1.pt[mask].flatten(),
                       weight=w_dimu)
                ezfill('muon_eta0',
                       eta=dimuons.i0.eta[mask].flatten(),
                       weight=w_dimu)
                ezfill('muon_eta1',
                       eta=dimuons.i1.eta[mask].flatten(),
                       weight=w_dimu)
                ezfill('muon_phi0',
                       phi=dimuons.i0.phi[mask].flatten(),
                       weight=w_dimu)
                ezfill('muon_phi1',
                       phi=dimuons.i1.phi[mask].flatten(),
                       weight=w_dimu)
                ezfill('dimuon_pt',
                       pt=dimuons.pt[mask].flatten(),
                       weight=w_dimu)
                ezfill('dimuon_eta',
                       eta=dimuons.eta[mask].flatten(),
                       weight=w_dimu)
                ezfill('dimuon_mass',
                       dilepton_mass=dimuons.mass[mask].flatten(),
                       weight=w_dimu)

            # Electrons
            if '_1e_' in region or '_2e_' in region:
                w_allel = weight_shape(electrons.pt[mask],
                                       weights.weight()[mask])
                ezfill('electron_pt',
                       pt=electrons.pt[mask].flatten(),
                       weight=w_allel)
                ezfill('electron_mt',
                       mt=df['MT_el'][mask],
                       weight=weights.weight()[mask])
                ezfill('electron_eta',
                       eta=electrons.eta[mask].flatten(),
                       weight=w_allel)
                ezfill('electron_phi',
                       phi=electrons.phi[mask].flatten(),
                       weight=w_allel)

            # Dielectron
            if '_2e_' in region:
                w_diel = weight_shape(dielectrons.pt[mask],
                                      weights.weight()[mask])
                ezfill('electron_pt0',
                       pt=dielectrons.i0.pt[mask].flatten(),
                       weight=w_diel)
                ezfill('electron_pt1',
                       pt=dielectrons.i1.pt[mask].flatten(),
                       weight=w_diel)
                ezfill('electron_eta0',
                       eta=dielectrons.i0.eta[mask].flatten(),
                       weight=w_diel)
                ezfill('electron_eta1',
                       eta=dielectrons.i1.eta[mask].flatten(),
                       weight=w_diel)
                ezfill('electron_phi0',
                       phi=dielectrons.i0.phi[mask].flatten(),
                       weight=w_diel)
                ezfill('electron_phi1',
                       phi=dielectrons.i1.phi[mask].flatten(),
                       weight=w_diel)
                ezfill('dielectron_pt',
                       pt=dielectrons.pt[mask].flatten(),
                       weight=w_diel)
                ezfill('dielectron_eta',
                       eta=dielectrons.eta[mask].flatten(),
                       weight=w_diel)
                ezfill('dielectron_mass',
                       dilepton_mass=dielectrons.mass[mask].flatten(),
                       weight=w_diel)

            # Photon
            if '_g_' in region:
                w_leading_photon = weight_shape(
                    photons[leadphoton_index].pt[mask],
                    weights.weight()[mask])
                ezfill('photon_pt0',
                       pt=photons[leadphoton_index].pt[mask].flatten(),
                       weight=w_leading_photon)
                ezfill('photon_eta0',
                       eta=photons[leadphoton_index].eta[mask].flatten(),
                       weight=w_leading_photon)
                ezfill('photon_phi0',
                       phi=photons[leadphoton_index].phi[mask].flatten(),
                       weight=w_leading_photon)
                ezfill('photon_pt0_recoil',
                       pt=photons[leadphoton_index].pt[mask].flatten(),
                       recoil=df['recoil_pt'][mask
                                              & (leadphoton_index.counts > 0)],
                       weight=w_leading_photon)
                ezfill('photon_eta_phi',
                       eta=photons[leadphoton_index].eta[mask].flatten(),
                       phi=photons[leadphoton_index].phi[mask].flatten(),
                       weight=w_leading_photon)

                # w_drphoton_jet = weight_shape(df['dRPhotonJet'][mask], weights.weight()[mask])

            # PV
            ezfill('npv',
                   nvtx=df['PV_npvs'][mask],
                   weight=weights.weight()[mask])
            ezfill('npvgood',
                   nvtx=df['PV_npvsGood'][mask],
                   weight=weights.weight()[mask])

            ezfill('npv_nopu',
                   nvtx=df['PV_npvs'][mask],
                   weight=weights.partial_weight(exclude=['pileup'])[mask])
            ezfill('npvgood_nopu',
                   nvtx=df['PV_npvsGood'][mask],
                   weight=weights.partial_weight(exclude=['pileup'])[mask])

            ezfill('rho_all',
                   rho=df['fixedGridRhoFastjetAll'][mask],
                   weight=weights.weight()[mask])
            ezfill('rho_central',
                   rho=df['fixedGridRhoFastjetCentral'][mask],
                   weight=weights.weight()[mask])
            ezfill('rho_all_nopu',
                   rho=df['fixedGridRhoFastjetAll'][mask],
                   weight=weights.partial_weight(exclude=['pileup'])[mask])
            ezfill('rho_central_nopu',
                   rho=df['fixedGridRhoFastjetCentral'][mask],
                   weight=weights.partial_weight(exclude=['pileup'])[mask])
        return output
コード例 #9
0
    def process(self, df):
        output = self.accumulator.identity()
        dataset = df['dataset']

        # Dilepton

        genjets_all = JaggedCandidateArray.candidatesfromcounts(
            df['nGenJet'],
            pt=df['GenJet_pt'],
            eta=df['GenJet_eta'],
            abseta=np.abs(df['GenJet_eta']),
            phi=df['GenJet_phi'],
            mass=df['GenJet_mass'])
        gen = setup_gen_candidates(df)
        tags = ['stat1', 'lhe']
        if is_lo_w(dataset) or is_nlo_w(dataset) or is_lo_z(
                dataset) or is_lo_w(dataset):
            dressed = setup_dressed_gen_candidates(df)
            fill_gen_v_info(df, gen, dressed)
            tags.append('dress')

            # Select jets not overlapping with leptons
            genjets = genjets_all[
            (~genjets_all.match(dressed,deltaRCut=0.4)) &
            (~genjets_all.match(gen[islep(gen)],deltaRCut=0.4)) \
            ]
        elif is_lo_g(dataset) or is_nlo_g(dataset):
            photons = gen[(gen.status == 1) & (gen.pdg == 22)]
            df['gen_v_pt_stat1'] = photons.pt.max()
            df['gen_v_phi_stat1'] = photons[photons.pt.argmax()].phi.max()
            df['gen_v_pt_lhe'] = df['LHE_Vpt']
            df['gen_v_phi_lhe'] = np.zeros(df.size)

            # Select jets not overlapping with photon
            genjets = genjets_all[
                (~genjets_all.match(photons[photons.pt.argmax()],deltaRCut=0.4)) \
            ]
        for tag in tags:

            # Dijet for VBF
            dijet = genjets[:, :2].distincts()

            # Selection
            vbf_sel = vbf_selection(df[f'gen_v_phi_{tag}'], dijet, genjets)
            monojet_sel = monojet_selection(df[f'gen_v_phi_{tag}'], genjets)

            nominal = df['Generator_weight']

            output[f'gen_vpt_inclusive_{tag}'].fill(dataset=dataset,
                                                    vpt=df[f'gen_v_pt_{tag}'],
                                                    jpt=genjets.pt.max(),
                                                    weight=nominal)

            mask_vbf = vbf_sel.all(*vbf_sel.names)
            output[f'gen_vpt_vbf_{tag}'].fill(
                dataset=dataset,
                vpt=df[f'gen_v_pt_{tag}'][mask_vbf],
                jpt=genjets.pt.max()[mask_vbf],
                mjj=dijet.mass.max()[mask_vbf],
                weight=nominal[mask_vbf])

            mask_monojet = monojet_sel.all(*monojet_sel.names)

            output[f'gen_vpt_monojet_{tag}'].fill(
                dataset=dataset,
                vpt=df[f'gen_v_pt_{tag}'][mask_monojet],
                jpt=genjets.pt.max()[mask_monojet],
                weight=nominal[mask_monojet])

        # Keep track of weight sum
        output['sumw'][dataset] += df['genEventSumw']
        output['sumw2'][dataset] += df['genEventSumw2']
        return output