Esempio n. 1
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    def run_gcm(self, optim_iter):
        """run the MITgcm at the given optimization iteration"""

        # iter0
        # 0. create sim
        run_dir = self.get_run_dir(optim_iter)
        m1qn3_dir = self.get_m1qn3_dir()
        sim = rp.Simulation(run_dir=run_dir, **self.dsim)

        # 1. write data.ctrl
        self.write_ctrl_namelist(optim_iter)

        # 2. write data.optim
        self.write_optim_namelist(optim_iter)

        # 3. link and launch
        sim.link_to_run_dir()
        if optim_iter > 0:
            fname = self.ctrl_packname + f'_MIT_CE_000.opt{optim_iter:04d}'
            _symlink(join(m1qn3_dir, fname), join(run_dir, fname))

        sim.write_slurm_script()
        jid = sim.submit_slurm(**self.slurm)

        self.submit_next_stage(next_stage='m1qn3',
                               optim_iter=optim_iter,
                               jid_depends=jid,
                               mysim=sim)
Esempio n. 2
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    def run_gcm(self, optim_iter, gcm_type):
        """run the MITgcm at the given optimization iteration"""

        # iter0
        # 0. create sim
        run_dir = self.get_run_dir(optim_iter, gcm_type)
        m1qn3_dir = self.get_m1qn3_dir()
        dsim = self.adm_sim if gcm_type =='adm' else self.fwd_sim

        # --- Pickups 1: first kill the pickup_dir if needed
        #     then let the sim create the run directory, etc
        #     fwd: always uses same pickups to do original spinup+this iter's ctrl
        #     adm: use what fwd just gave you
        if  (optim_iter > 0 and gcm_type == 'adm'):
            dsim['pickup_dir'] = None


        sim = rp.Simulation(run_dir=run_dir,**dsim)

        # --- Pickups 2: now copy over
        if  (optim_iter > 0 and gcm_type == 'adm'):
            previous_fwd_dir = self.get_run_dir(optim_iter, 'fwd')
            for suffix in ['meta','data']:

                old_pickup = os.path.join(previous_fwd_dir,
                                          f'pickup.{self.nIterSpinFinal:010d}.{suffix}')
                new_pickup = os.path.join(run_dir,
                                          f'pickup.{self.nIter0:010d}.{suffix}')
                copyfile(old_pickup, new_pickup)

        # 1. write data.ctrl
        self.write_ctrl_namelist(optim_iter, gcm_type)

        # 2. write data.optim
        self.write_optim_namelist(optim_iter, gcm_type)

        # 3. link and launch
        sim.link_to_run_dir()
        if optim_iter>0:
            fname=self.ctrl_packname+f'_MIT_CE_000.opt{optim_iter:04d}'
            _symlink(join(m1qn3_dir,fname), join(run_dir,fname))

        sim.write_slurm_script()
        jid = sim.submit_slurm(**self.slurm)

        next_stage = 'm1qn3' if gcm_type == 'adm' else 'adm'
        self.submit_next_stage(next_stage=next_stage,optim_iter=optim_iter,
                               jid_depends=jid,mysim=sim)
Esempio n. 3
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    def start(self,main_dir,
              adm_sim,fwd_sim,
              stage='adm',optim_iter=0,
              **kwargs):
        """Start the experiment by writing everything we need to file,
        to be read in later by "pickup"

        Parameters
        ----------
        main_dir : str
            main directory where all the mitgcm run directories will launch from
        adm_sim, fwd_sim : dict
            containing the base parameters for a rosypig.Simulation
            with everything but run_dir
            see rosypig.Simulation for details
        kwargs
            Are passed to override the default class attributes
            Additionally:
            optimx : str, optional
                path to m1qn3 executable, default is main_dir/build.m1qn3/optim.x
        """

        # --- make some dirs
        slurm_dir = os.path.join(main_dir,'slurm')
        for mydir in ['json',main_dir,slurm_dir]:
            _dir(mydir);

        dirs={'main_dir':main_dir,'slurm_dir':slurm_dir}
        self.write_json(dirs,'_dirs.json')
        self.write_json(adm_sim,'_adm_sim.json')
        self.write_json(fwd_sim,'_fwd_sim.json')

        # Requiring these arguments, but throwing them into kwargs b/c it's easy
        if kwargs !={}:
            self.write_json(kwargs,'_kwargs.json')

        # --- "pickup" experiment at stage
        self.pickup()
        adm_sim.pop('name')
        startsim = rp.Simulation('startmeup',**adm_sim)
        self.submit_next_stage(next_stage=stage,optim_iter=optim_iter,
                               mysim=startsim)
Esempio n. 4
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    def range_approx_one(self):
        """Define the Laplacian-like operator A = delta - div(kappa grad( ))
        and use the MITgcm to:

            1. generate n_samples gaussian random samples, g_i
            2. solve the linear system for z_i: Az_i = g_i
               to get the range of A^{-1}
            3. use to compute the sample variance of A^{-1}

        ... pass to the next step
        """
        jid_list = []
        for Nx in self.NxList:
            for xi in self.xiList:

                _, write_dir, run_dir = self._get_dirs('range_approx_one', Nx,
                                                       xi)

                self.smooth_writer(write_dir,
                                   xi=xi,
                                   smooth_apply=False,
                                   num_inputs=self.n_samples)

                matern = MaternField(xdalike=self.mymodel,
                                     n_range=Nx,
                                     horizontal_factor=xi,
                                     isotropic=self.isotropic)
                matern.write_binaries(write_dir=write_dir,
                                      smoothOpNb=self.smoothOpNb)

                sim = rp.Simulation(name=f'{Nx:02}dx_{xi:02}xi_oi_ra1',
                                    run_dir=run_dir,
                                    obs_dir=write_dir,
                                    **self.dsim)

                # launch job
                sim.link_to_run_dir()

                sim.write_slurm_script()
                jid = sim.submit_slurm(**self.slurm)
                jid_list.append(jid)
Esempio n. 5
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    def start(self,
              dirs,
              dsim,
              mymodel,
              ctrl_ds,
              startat='range_approx_one',
              **kwargs):
        """Start the experiment by writing everything we need to file,
        to be read in later by "pickup"

        Parameters
        ----------
        dirs : dict
            containing the key directories for the experiment
            'main_run' : the directory where MITgcm files are written
                and simulations are started
            'netcdf' : where to save netcdf files when finished
                Note: a separate tmp/ directory is created inside for
                intermittent saves
        dsim : dict
            containing the base parameters for a rosypig.Simulation
            'machine', 'n_procs', 'exe_file', 'binary_dir', 'pickup_dir', 'time'
            see rosypig.Simulation for details
        mymodel : xarray DataArray
            a mask field with True denoting domain wet points, e.g. maskC
            Note: the dimension order should be appropriate for MITgcm read/write,
            with vertical going from top to bottom
            Note: dimensions are assumed to be ordered like
            (vertical, meridional, zonal)
        m0 : xarray DataArray
            with the initial guess
            Note: must have attribute "standard_name" with identifying name, e.g.
            m0.attrs['standard_name'] = 'zeros'
        ctrl_ds : xarray DataArray
            dataset with the FULL coordinate dataset, for evaluating the laplacian
        obs_mask : xarray DataArray
            mask field denoting where observations are taken, on an "observation grid"
            Note: dimensions are assumed to be ordered like
            (vertical, meridional, zonal)
        obs_mean, obs_std : xarray DataArray
            containing observation mean and uncertainties
            (of course, at the mask points!)
        startat : str, optional
            stage to start at
        kwargs
            Are passed to override the default class attributes
        """

        # --- Add tmp netcdf directory
        dirs['nctmp'] = dirs['netcdf'] + '/tmp'
        for mydir in ['json', dirs['netcdf'], dirs['nctmp'], dirs['main_run']]:
            _dir(mydir)

        # --- Write the directories
        def write_json(mydict, mysuff):
            json_file = f'json/{self.experiment}' + mysuff
            with open(json_file, 'w') as f:
                json.dump(mydict, f)

        write_json(dirs, '_dirs.json')
        write_json(dsim, '_sim.json')
        if kwargs != {}:
            write_json(kwargs, '_kwargs.json')

        # --- Write ctrl and obs datasets to netcdf
        myctrl = xr.Dataset({'mymodel': mymodel})
        myctrl.to_netcdf(dirs['nctmp'] + f'/{self.experiment}_ctrl.nc')
        ctrl_ds.to_netcdf(dirs['nctmp'] + f'/{self.experiment}_cds.nc')

        # --- "pickup" experiment at startat
        self.pickup()
        startsim = rp.Simulation('startmeup', **dsim)
        self.submit_next_stage(next_stage=startat, mysim=startsim)
Esempio n. 6
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    def run_m1qn3(self,optim_iter):
        run_dir = self.get_run_dir(optim_iter, gcm_type='m1qn3')
        m1qn3_dir = self.get_m1qn3_dir()

        # link optim.x to run directory
        exe = os.path.basename(self.optimx)
        _symlink(self.optimx, join(m1qn3_dir,exe))

        # link over cost vector
        fname = self.cost_packname+f'_MIT_CE_000.opt{optim_iter:04d}'
        _symlink(join(run_dir,fname), join(m1qn3_dir,fname))

        # iter 0: get ctrl vector too
        if optim_iter == 0:
            fname = self.ctrl_packname+f'_MIT_CE_000.opt{optim_iter:04d}'
            _symlink(join(run_dir,fname), join(m1qn3_dir,fname))

        # copy data.ctrl, data.optim
        for fname in ['data.ctrl','data.optim']:
            copyfile(join(run_dir,fname), join(m1qn3_dir,fname))

        # move to run dir and run
        pwd = os.getenv('PWD')
        os.chdir(m1qn3_dir)
        run_cmd = f'./{exe} > stdout.{optim_iter:04d} 2> stderr.{optim_iter:04d}'
        subprocess.run(run_cmd,shell=True)

        # check stderr
        fname=f'stderr.{optim_iter:04d}'
        with open(fname,'r') as f:
            stderr = f.read()
        if len(stderr)>0:
            raise RuntimeError(f'm1qn3 failed, see: {os.path.realpath(fname)}')
        os.chdir(pwd)

        # read gradient norm
        with open(f'{m1qn3_dir}/m1qn3_output.txt','r') as f:
            for line in f.readlines():
                if 'two-norm of g' in line:
                    g_norm = float(line.split('=')[1][:-1].replace('D','E'))

        # set ||g0||
        if optim_iter==0:
            self.g0 = g_norm
            self.write_json
            kwargs = self.read_json('_kwargs.json')
            kwargs = kwargs if kwargs is not None else {}
            kwargs['g0'] = g_norm
            self.write_json(kwargs,'_kwargs.json')

        # submit next optim iter
        if optim_iter+1 < self.optim_iter_max and g_norm > self.epsg*self.g0:
            sim=rp.Simulation(**self.fwd_sim)
            self.submit_next_stage(next_stage='fwd',optim_iter=optim_iter+1, mysim=sim)
        else:
            if g_norm < self.epsg * self.g0:
                print('\t\t---\t\tCongratulations!!\t\t---')
                print('')
                print(f'     ||g_{optim_iter}||_2 / ||g_0||_2 < eps_g = {self.epsg}')
                print('')
                print(f'            g_norm = {g_norm:1.6e}')
                print(f'            optim_iter = {optim_iter}')

            else:
                print(f' --- Reached Maximum Optimization Iterations: {self.optim_iter_max} ---')
                print(' exiting ...')