Exemplo n.º 1
0
def scenario_2d_report(value_date, book_name, greeks, \
        scens = [['COMFwd', 'SGXIRO', [-3.0, -2.0, -1.0, 0.0, 1.0, 2.0, 3.0], cmq_inst.CurveShiftType.Abs], \
                ['COMVolATM', 'SGXIRO', [-0.02, -0.01, 0.0, 0.01, 0.02], cmq_inst.CurveShiftType.Abs]]):
    book = cmq_book.get_book_from_db(book_name, status=[2])
    base_mkt = cmq_market_data.load_market_data(book.mkt_deps,
                                                value_date=value_date)
    res = {}
    for greek in greeks:
        output = {}
        for shift_x in scens[0][2]:
            mkt_data_x = cmq_inst_risk.generate_scen(base_mkt, scens[0][0], scens[0][1], 'ALL', \
                                                shift_size=shift_x, shift_type=scens[0][3])
            x_key = scens[0][0] + '_' + str(shift_x)
            output[x_key] = {}
            for shift_y in scens[1][2]:
                mkt_data_y = cmq_inst_risk.generate_scen(mkt_data_x, scens[1][0], scens[1][1], 'ALL', \
                                                shift_size = shift_y, shift_type = scens[1][3])
                re = cmq_risk_engine.CMQRiskEngine(book, mkt_data_y, [greek])
                re.run_risk()
                y_key = scens[1][0] + '_' + str(shift_y)
                output[x_key][y_key] = re.book_risks[greek]
                if greek in ['cmdelta', 'cmvega_atm', 'cmvega_v90', 'cmvega_v75', \
                             'cmvega_v25', 'cmvega_v10', 'cmgamma']:
                    output[x_key][y_key] = sum(output[x_key][y_key].values())
        res[greek] = pd.DataFrame.from_dict(output, orient='index')
    return res
Exemplo n.º 2
0
def scenario_2d_report(value_date, book, greeks, \
        scens = [['COMFwd', 'SGXIRO', [-3.0, -2.0, -1.0, 0.0, 1.0, 2.0, 3.0], 0], \
                ['COMVolATM', 'SGXIRO', [-0.02, -0.01, 0.0, 0.01, 0.02], 0]],\
                base_mkt = {}, region = 'EOD'):
    if len(base_mkt) == 0:
        base_mkt = cmq_market_data.load_market_data(book.mkt_deps, value_date=value_date, region = region)
    res = {}
    for greek in greeks:
        output = {}
        for shift_x in scens[0][2]:
            mkt_data_x = cmq_inst_risk.generate_scen(base_mkt, scens[0][0], scens[0][1], 'ALL', \
                                                shift_size=shift_x, shift_type=scens[0][3])
            x_key = scens[0][0] + '_' + str(shift_x)
            output[x_key] = {}
            for shift_y in scens[1][2]:
                mkt_data_y = cmq_inst_risk.generate_scen(mkt_data_x, scens[1][0], scens[1][1], 'ALL', \
                                                shift_size = shift_y, shift_type = scens[1][3])
                re = cmq_risk_engine.CMQRiskEngine(book, mkt_data_y, [greek])
                re.run_risk()
                y_key = scens[1][0] + '_' + str(shift_y)
                output[x_key][y_key] = re.book_risks[greek]
                if greek in ['cmdelta', 'cmvega_atm', 'cmvega_v90', 'cmvega_v75', \
                             'cmvega_v25', 'cmvega_v10', 'cmgamma']:
                    output[x_key][y_key] = sum(output[x_key][y_key].values())
        res[greek] = pd.DataFrame.from_dict(output, orient='index')
    return res
Exemplo n.º 3
0
def greeks_ladder_report(value_date, book_name, \
                        req_greeks = ['cmdeltas', 'cmgammas', 'cmvegas_atm'], \
                        scens = ['COMFwd', 'SGXIRO', [-5.0, -4.0, -3.0, -2.0, -1.0, 0.0, 1.0, 2.0, 3.0, 4.0, 5.0], cmq_inst.CurveShiftType.Abs]):
    book = cmq_book.get_book_from_db(book_name, status=[2])
    base_mkt = cmq_market_data.load_market_data(book.mkt_deps,
                                                value_date=value_date)
    output = dict([(greek, {}) for greek in req_greeks])
    for shift in scens[2]:
        mkt_data = cmq_inst_risk.generate_scen(base_mkt,
                                               scens[0],
                                               scens[1],
                                               curve_tenor='ALL',
                                               shift_size=shift,
                                               shift_type=scens[3])
        re = cmq_risk_engine.CMQRiskEngine(book, mkt_data, req_greeks)
        re.run_risk()
        for greek in req_greeks:
            for idx in re.book_risks[greek]:
                if idx not in output[greek]:
                    output[greek][idx] = {}
                output[greek][idx][shift] = copy.deepcopy(
                    re.book_risks[greek][idx])
    res = dict([(greek, {}) for greek in req_greeks])
    for greek in req_greeks:
        for idx in output[greek]:
            if idx not in res[greek]:
                res[greek][idx] = {}
            res[greek][idx] = pd.DataFrame.from_dict(output[greek][idx],
                                                     orient='columns')
    return res
Exemplo n.º 4
0
def book_greek_scen_report(value_date, book_name, \
                    req_greeks = ['pv', 'theta', 'cmdelta', 'cmgamma', 'cmvega_atm'], \
                    scens = ['COMFwd', 'SGXIRO',  [- 5.0, -3.0, -1.0, 0.0, 1.0, 3.0, 5.0], cmq_inst.CurveShiftType.Abs]):
    book = cmq_book.get_book_from_db(book_name, status=[2])
    base_mkt = cmq_market_data.load_market_data(book.mkt_deps,
                                                value_date=value_date)
    output = {}
    for shift in scens[2]:
        mkt_data = cmq_inst_risk.generate_scen(base_mkt,
                                               scens[0],
                                               scens[1],
                                               curve_tenor='ALL',
                                               shift_size=shift,
                                               shift_type=scens[3])
        re = cmq_risk_engine.CMQRiskEngine(book, mkt_data, req_greeks)
        re.run_risk()
        output[shift] = copy.deepcopy(re.book_risks)
        for greek in req_greeks:
            if greek in [
                    'cmdelta', 'cmvega_atm', 'cmgamma', 'cmvega_v90',
                    'cmvega_v75', 'cmvega_v25', 'cmvega_v10'
            ]:
                output[shift][greek] = sum(output[shift][greek].values())
    df = pd.DataFrame.from_dict(output, orient='index').round(2)
    df.index = numpy.round(scens[2], 2)
    return df
Exemplo n.º 5
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def book_greek_scen_report(value_date, book, \
                    req_greeks = ['pv', 'theta', 'cmdelta', 'cmgamma', 'cmvega_atm'], \
                    scens = ['COMFwd', [- 5.0, -3.0, -1.0, 0.0, 1.0, 3.0, 5.0], 0], \
                    base_mkt = {}, region = 'EOD', use_pool = False):
    if len(base_mkt) == 0:
        base_mkt = cmq_market_data.load_market_data(book.mkt_deps, value_date=value_date, region = region)
    output = {}
    if use_pool:
        num_cpus = mp.cpu_count() - 1
        pool = mp.Pool(num_cpus)
    else:
        pool = None
    re = {}
    fwd_list = book.mkt_deps[scens[0]].keys()
    for fwd_idx in fwd_list:
        for shift in scens[1]:
            mkt_data = cmq_inst_risk.generate_scen(base_mkt, scens[0], fwd_idx, curve_tenor = 'ALL', shift_size = shift, shift_type = scens[2])
            key = (fwd_idx, shift)
            re[key] = cmq_risk_engine.CMQRiskEngine(book, mkt_data, req_greeks, pool)
            re[key].run_scenarios()
    for fwd_idx in fwd_list:
        for shift in scens[1]:
            key = (fwd_idx, shift)
            re[key].summerize_risks()
            output[key] = copy.deepcopy(re[key].book_risks)
            for greek in req_greeks:
                if greek in ['cmdelta', 'cmvega_atm', 'cmgamma', 'cmvega_v90', 'cmvega_v75', 'cmvega_v25', 'cmvega_v10']:
                    if fwd_idx in output[key][greek]:
                        output[key][greek] = output[key][greek][fwd_idx]
                    else:
                        output[key][greek] = 0.0
    df = pd.DataFrame.from_dict(output, orient='index')
    return df
Exemplo n.º 6
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def book_greek_scen_report(value_date, book, \
                    req_greeks = ['pv', 'theta', 'cmdelta', 'cmgamma', 'cmvega_atm'], \
                    scens = ['COMFwd', 'SGXIRO',  [- 5.0, -3.0, -1.0, 0.0, 1.0, 3.0, 5.0], 0], \
                    base_mkt = {}, use_pool = False):
    if len(base_mkt) == 0:
        base_mkt = cmq_market_data.load_market_data(book.mkt_deps,
                                                    value_date=value_date)
    output = {}
    if use_pool:
        num_cpus = mp.cpu_count() - 1
        pool = mp.Pool(num_cpus)
    else:
        pool = None
    re = {}
    for shift in scens[2]:
        mkt_data = cmq_inst_risk.generate_scen(base_mkt,
                                               scens[0],
                                               scens[1],
                                               curve_tenor='ALL',
                                               shift_size=shift,
                                               shift_type=scens[3])
        re[shift] = cmq_risk_engine.CMQRiskEngine(book, mkt_data, req_greeks,
                                                  pool)
        re[shift].run_scenarios()
    for shift in scens[2]:
        re[shift].summerize_risks()
        output[shift] = copy.deepcopy(re[shift].book_risks)
        for greek in req_greeks:
            if greek in [
                    'cmdelta', 'cmvega_atm', 'cmgamma', 'cmvega_v90',
                    'cmvega_v75', 'cmvega_v25', 'cmvega_v10'
            ]:
                output[shift][greek] = sum(output[shift][greek].values())
    df = pd.DataFrame.from_dict(output, orient='index')
    return df
Exemplo n.º 7
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 def update_risk_store(self):
     self.scen_keys = []
     for inst in self.book.inst_dict:
         self.risk_store[inst] = cmq_inst_risk.CMQInstRiskStore(inst, self.base_market, self.req_greeks)
         self.risk_store[inst].get_scen_keys()
         for scen in self.risk_store[inst].scen_keys:
             if scen not in self.scen_keys:
                 self.scen_keys.append(scen)
                 self.scenarios[scen] = cmq_inst_risk.generate_scen(self.base_market, \
                                                                    scen[0], scen[1], scen[2], scen[3])
Exemplo n.º 8
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 def update_risk_store(self):
     self.scen_keys = []
     for inst in self.book.inst_dict:
         self.risk_store[inst] = cmq_inst_risk.CMQInstRiskStore(inst, self.base_market, self.req_greeks, self.book.reporting_ccy)
         self.risk_store[inst].get_scen_keys()
         for scen in self.risk_store[inst].scen_keys:
             if scen not in self.scen_keys:
                 self.scen_keys.append(scen)
                 self.scenarios[scen] = cmq_inst_risk.generate_scen(self.base_market, \
                                                                    scen[0], scen[1], scen[2], scen[3])
def greek_ladder_report(value_date, book, \
                        req_greeks = ['cmdeltas', 'cmgammas', 'cmvegas_atm'], \
                        scens = ['COMFwd', [-0.05, -0.03, -0.02, -0.01, 0.0, 0.01, 0.02, 0.03, 0.05], 1],\
                        base_mkt = {}, region = 'EOD', use_pool = False):
    if len(base_mkt) == 0:
        base_mkt = cmq_market_data.load_market_data(book.mkt_deps,
                                                    value_date=value_date,
                                                    region=region)
    output = dict([(greek, {}) for greek in req_greeks])
    if use_pool:
        num_cpus = mp.cpu_count() - 1
        pool = mp.Pool(num_cpus)
    else:
        pool = None
    re = {}
    fwd_list = book.mkt_deps[scens[0]].keys()
    for fwd_idx in fwd_list:
        for shift in scens[1]:
            key = (fwd_idx, shift)
            mkt_data = cmq_inst_risk.generate_scen(base_mkt,
                                                   scens[0],
                                                   fwd_idx,
                                                   curve_tenor='ALL',
                                                   shift_size=shift,
                                                   shift_type=scens[2])
            re[key] = cmq_risk_engine.CMQRiskEngine(book, mkt_data, req_greeks,
                                                    pool)
            re[key].run_scenarios()
    for fwd_idx in fwd_list:
        output[greek][fwd_idx] = {}
        for shift in scens[1]:
            key = (fwd_idx, shift)
            re[key].summerize_risks()
            if fwd_idx in re[key].book_risks[greek]:
                for greek in req_greeks:
                    output[greek][fwd_idx][shift] = copy.deepcopy(
                        re[key].book_risks[greek][fwd_idx])
    res = dict([(greek, pd.DataFrame()) for greek in req_greeks])
    for greek in req_greeks:
        for fwd_idx in fwd_list:
            df = pd.DataFrame.from_dict(output[greek][fwd_idx],
                                        orient='columns')
            df.loc['Total', :] = df.sum()
            df = df.reset_index()
            df.rename(columns={'index': 'tenor'}, inplace=True)
            cols = list(df.columns)
            df['fwd_idx'] = fwd_idx
            df = df[['fwd_idx'] + cols]
            res[greek] = res[greek].append(df)
        res[greek] = res[greek].set_index(['fwd_idx', 'tenor'])
    return res
def book_greek_scen_report(value_date, book, \
                    req_greeks = ['pv', 'theta', 'cmdelta', 'cmgamma', 'cmvega_atm'], \
                    scens = ['COMFwd', [- 5.0, -3.0, -1.0, 0.0, 1.0, 3.0, 5.0], 0], \
                    base_mkt = {}, region = 'EOD', use_pool = False):
    if len(base_mkt) == 0:
        base_mkt = cmq_market_data.load_market_data(book.mkt_deps,
                                                    value_date=value_date,
                                                    region=region)
    output = {}
    if use_pool:
        num_cpus = mp.cpu_count() - 1
        pool = mp.Pool(num_cpus)
    else:
        pool = None
    re = {}
    fwd_list = book.mkt_deps[scens[0]].keys()
    for fwd_idx in fwd_list:
        for shift in scens[1]:
            mkt_data = cmq_inst_risk.generate_scen(base_mkt,
                                                   scens[0],
                                                   fwd_idx,
                                                   curve_tenor='ALL',
                                                   shift_size=shift,
                                                   shift_type=scens[2])
            key = (fwd_idx, shift)
            re[key] = cmq_risk_engine.CMQRiskEngine(book, mkt_data, req_greeks,
                                                    pool)
            re[key].run_scenarios()
    for fwd_idx in fwd_list:
        for shift in scens[1]:
            key = (fwd_idx, shift)
            re[key].summerize_risks()
            output[key] = copy.deepcopy(re[key].book_risks)
            for greek in req_greeks:
                if greek in [
                        'cmdelta', 'cmvega_atm', 'cmgamma', 'cmvega_v90',
                        'cmvega_v75', 'cmvega_v25', 'cmvega_v10'
                ]:
                    if fwd_idx in output[key][greek]:
                        output[key][greek] = output[key][greek][fwd_idx]
                    else:
                        output[key][greek] = 0.0
    df = pd.DataFrame.from_dict(output, orient='index')
    return df
Exemplo n.º 11
0
def greek_ladder_report(value_date, book, \
                        req_greeks = ['cmdeltas', 'cmgammas', 'cmvegas_atm'], \
                        scens = ['COMFwd', [-0.05, -0.03, -0.02, -0.01, 0.0, 0.01, 0.02, 0.03, 0.05], 1],\
                        base_mkt = {}, region = 'EOD', use_pool = False):
    if len(base_mkt) == 0:
        base_mkt = cmq_market_data.load_market_data(book.mkt_deps, value_date=value_date, region = region)
    output = dict([(greek, {}) for greek in req_greeks])
    if use_pool:
        num_cpus = mp.cpu_count() - 1
        pool = mp.Pool(num_cpus)
    else:
        pool = None
    re = {}
    fwd_list = book.mkt_deps[scens[0]].keys()
    for fwd_idx in fwd_list:
        for shift in scens[1]:
            key = (fwd_idx, shift)
            mkt_data = cmq_inst_risk.generate_scen(base_mkt, scens[0], fwd_idx, curve_tenor = 'ALL', shift_size = shift, shift_type = scens[2])
            re[key] = cmq_risk_engine.CMQRiskEngine(book, mkt_data, req_greeks, pool)
            re[key].run_scenarios()
    for fwd_idx in fwd_list:
        output[greek][fwd_idx] = {}
        for shift in scens[1]:
            key = (fwd_idx, shift)
            re[key].summerize_risks()
            if fwd_idx in re[key].book_risks[greek]:
                for greek in req_greeks:
                    output[greek][fwd_idx][shift] = copy.deepcopy(re[key].book_risks[greek][fwd_idx])
    res = dict([(greek, pd.DataFrame()) for greek in req_greeks])
    for greek in req_greeks:
        for fwd_idx in fwd_list:
            df = pd.DataFrame.from_dict(output[greek][fwd_idx], orient='columns')
            df.loc['Total', :] = df.sum()
            df = df.reset_index()
            df.rename(columns = {'index': 'tenor'}, inplace=True)
            cols = list(df.columns)
            df['fwd_idx'] = fwd_idx
            df = df[['fwd_idx'] + cols]
            res[greek] = res[greek].append(df)
        res[greek] = res[greek].set_index(['fwd_idx', 'tenor'])
    return res
Exemplo n.º 12
0
def greeks_ladder_report(value_date, book, \
                        req_greeks = ['cmdeltas', 'cmgammas', 'cmvegas_atm'], \
                        scens = ['COMFwd', 'SGXIRO', [-5.0, -4.0, -3.0, -2.0, -1.0, 0.0, 1.0, 2.0, 3.0, 4.0, 5.0], 0],\
                        base_mkt = {}, use_pool = False):
    if len(base_mkt) == 0:
        base_mkt = cmq_market_data.load_market_data(book.mkt_deps,
                                                    value_date=value_date)
    output = dict([(greek, {}) for greek in req_greeks])
    if use_pool:
        num_cpus = mp.cpu_count() - 1
        pool = mp.Pool(num_cpus)
    else:
        pool = None
    re = {}
    for shift in scens[2]:
        mkt_data = cmq_inst_risk.generate_scen(base_mkt,
                                               scens[0],
                                               scens[1],
                                               curve_tenor='ALL',
                                               shift_size=shift,
                                               shift_type=scens[3])
        re[shift] = cmq_risk_engine.CMQRiskEngine(book, mkt_data, req_greeks,
                                                  pool)
        re[shift].run_scenarios()
    for shift in scens[2]:
        re[shift].summerize_risks()
        for greek in req_greeks:
            for idx in re[shift].book_risks[greek]:
                if idx not in output[greek]:
                    output[greek][idx] = {}
                output[greek][idx][shift] = copy.deepcopy(
                    re[shift].book_risks[greek][idx])
    res = dict([(greek, {}) for greek in req_greeks])
    for greek in req_greeks:
        for idx in output[greek]:
            if idx not in res[greek]:
                res[greek][idx] = {}
            res[greek][idx] = pd.DataFrame.from_dict(output[greek][idx],
                                                     orient='columns')
    return res