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train.py
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train.py
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#BSD 3-Clause License
#
#Copyright (c) 2022, FourCastNet authors
#All rights reserved.
#
#Redistribution and use in source and binary forms, with or without
#modification, are permitted provided that the following conditions are met:
#
#1. Redistributions of source code must retain the above copyright notice, this
# list of conditions and the following disclaimer.
#
#2. Redistributions in binary form must reproduce the above copyright notice,
# this list of conditions and the following disclaimer in the documentation
# and/or other materials provided with the distribution.
#
#3. Neither the name of the copyright holder nor the names of its
# contributors may be used to endorse or promote products derived from
# this software without specific prior written permission.
#
#THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS "AS IS"
#AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE
#IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE ARE
#DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT HOLDER OR CONTRIBUTORS BE LIABLE
#FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL, EXEMPLARY, OR CONSEQUENTIAL
#DAMAGES (INCLUDING, BUT NOT LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR
#SERVICES; LOSS OF USE, DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER
#CAUSED AND ON ANY THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY,
#OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE
#OF THIS SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE.
#
#The code was authored by the following people:
#
#Jaideep Pathak - NVIDIA Corporation
#Shashank Subramanian - NERSC, Lawrence Berkeley National Laboratory
#Peter Harrington - NERSC, Lawrence Berkeley National Laboratory
#Sanjeev Raja - NERSC, Lawrence Berkeley National Laboratory
#Ashesh Chattopadhyay - Rice University
#Morteza Mardani - NVIDIA Corporation
#Thorsten Kurth - NVIDIA Corporation
#David Hall - NVIDIA Corporation
#Zongyi Li - California Institute of Technology, NVIDIA Corporation
#Kamyar Azizzadenesheli - Purdue University
#Pedram Hassanzadeh - Rice University
#Karthik Kashinath - NVIDIA Corporation
#Animashree Anandkumar - California Institute of Technology, NVIDIA Corporation
import os
import time
import numpy as np
import argparse
import h5py
import torch
import cProfile
import re
import torchvision
from torchvision.utils import save_image
import torch.nn as nn
import torch.cuda.amp as amp
import torch.distributed as dist
from torch.nn.parallel import DistributedDataParallel
import logging
from utils import logging_utils
logging_utils.config_logger()
from utils.YParams import YParams
from utils.data_loader_multifiles import get_data_loader
from networks.afnonet import AFNONet, PrecipNet
from utils.img_utils import vis_precip
import wandb
from utils.weighted_acc_rmse import weighted_acc, weighted_rmse, weighted_rmse_torch, unlog_tp_torch
from apex import optimizers
from utils.darcy_loss import LpLoss
import matplotlib.pyplot as plt
from collections import OrderedDict
import pickle
DECORRELATION_TIME = 36 # 9 days
import json
from ruamel.yaml import YAML
from ruamel.yaml.comments import CommentedMap as ruamelDict
class Trainer():
def count_parameters(self):
return sum(p.numel() for p in self.model.parameters() if p.requires_grad)
def __init__(self, params, world_rank):
self.params = params
self.world_rank = world_rank
self.device = torch.cuda.current_device() if torch.cuda.is_available() else 'cpu'
if params.log_to_wandb:
wandb.init(config=params, name=params.name, group=params.group, project=params.project, entity=params.entity)
logging.info('rank %d, begin data loader init'%world_rank)
self.train_data_loader, self.train_dataset, self.train_sampler = get_data_loader(params, params.train_data_path, dist.is_initialized(), train=True)
self.valid_data_loader, self.valid_dataset = get_data_loader(params, params.valid_data_path, dist.is_initialized(), train=False)
self.loss_obj = LpLoss()
logging.info('rank %d, data loader initialized'%world_rank)
params.crop_size_x = self.valid_dataset.crop_size_x
params.crop_size_y = self.valid_dataset.crop_size_y
params.img_shape_x = self.valid_dataset.img_shape_x
params.img_shape_y = self.valid_dataset.img_shape_y
# precip models
self.precip = True if "precip" in params else False
if self.precip:
if 'model_wind_path' not in params:
raise Exception("no backbone model weights specified")
# load a wind model
# the wind model has out channels = in channels
out_channels = np.array(params['in_channels'])
params['N_out_channels'] = len(out_channels)
if params.nettype_wind == 'afno':
self.model_wind = AFNONet(params).to(self.device)
else:
raise Exception("not implemented")
if dist.is_initialized():
self.model_wind = DistributedDataParallel(self.model_wind,
device_ids=[params.local_rank],
output_device=[params.local_rank],find_unused_parameters=True)
self.load_model_wind(params.model_wind_path)
self.switch_off_grad(self.model_wind) # no backprop through the wind model
# reset out_channels for precip models
if self.precip:
params['N_out_channels'] = len(params['out_channels'])
if params.nettype == 'afno':
self.model = AFNONet(params).to(self.device)
else:
raise Exception("not implemented")
# precip model
if self.precip:
self.model = PrecipNet(params, backbone=self.model).to(self.device)
if self.params.enable_nhwc:
# NHWC: Convert model to channels_last memory format
self.model = self.model.to(memory_format=torch.channels_last)
if params.log_to_wandb:
wandb.watch(self.model)
if params.optimizer_type == 'FusedAdam':
self.optimizer = optimizers.FusedAdam(self.model.parameters(), lr = params.lr)
else:
self.optimizer = torch.optim.Adam(self.model.parameters(), lr = params.lr)
if params.enable_amp == True:
self.gscaler = amp.GradScaler()
if dist.is_initialized():
self.model = DistributedDataParallel(self.model,
device_ids=[params.local_rank],
output_device=[params.local_rank],find_unused_parameters=True)
self.iters = 0
self.startEpoch = 0
if params.resuming:
logging.info("Loading checkpoint %s"%params.checkpoint_path)
self.restore_checkpoint(params.checkpoint_path)
if params.two_step_training:
if params.resuming == False and params.pretrained == True:
logging.info("Starting from pretrained one-step afno model at %s"%params.pretrained_ckpt_path)
self.restore_checkpoint(params.pretrained_ckpt_path)
self.iters = 0
self.startEpoch = 0
#logging.info("Pretrained checkpoint was trained for %d epochs"%self.startEpoch)
#logging.info("Adding %d epochs specified in config file for refining pretrained model"%self.params.max_epochs)
#self.params.max_epochs += self.startEpoch
self.epoch = self.startEpoch
if params.scheduler == 'ReduceLROnPlateau':
self.scheduler = torch.optim.lr_scheduler.ReduceLROnPlateau(self.optimizer, factor=0.2, patience=5, mode='min')
elif params.scheduler == 'CosineAnnealingLR':
self.scheduler = torch.optim.lr_scheduler.CosineAnnealingLR(self.optimizer, T_max=params.max_epochs, last_epoch=self.startEpoch-1)
else:
self.scheduler = None
'''if params.log_to_screen:
logging.info(self.model)'''
if params.log_to_screen:
logging.info("Number of trainable model parameters: {}".format(self.count_parameters()))
def switch_off_grad(self, model):
for param in model.parameters():
param.requires_grad = False
def train(self):
if self.params.log_to_screen:
logging.info("Starting Training Loop...")
best_valid_loss = 1.e6
for epoch in range(self.startEpoch, self.params.max_epochs):
if dist.is_initialized():
self.train_sampler.set_epoch(epoch)
# self.valid_sampler.set_epoch(epoch)
start = time.time()
tr_time, data_time, train_logs = self.train_one_epoch()
valid_time, valid_logs = self.validate_one_epoch()
if epoch==self.params.max_epochs-1 and self.params.prediction_type == 'direct':
valid_weighted_rmse = self.validate_final()
if self.params.scheduler == 'ReduceLROnPlateau':
self.scheduler.step(valid_logs['valid_loss'])
elif self.params.scheduler == 'CosineAnnealingLR':
self.scheduler.step()
if self.epoch >= self.params.max_epochs:
logging.info("Terminating training after reaching params.max_epochs while LR scheduler is set to CosineAnnealingLR")
exit()
if self.params.log_to_wandb:
for pg in self.optimizer.param_groups:
lr = pg['lr']
wandb.log({'lr': lr})
if self.world_rank == 0:
if self.params.save_checkpoint:
#checkpoint at the end of every epoch
self.save_checkpoint(self.params.checkpoint_path)
if valid_logs['valid_loss'] <= best_valid_loss:
#logging.info('Val loss improved from {} to {}'.format(best_valid_loss, valid_logs['valid_loss']))
self.save_checkpoint(self.params.best_checkpoint_path)
best_valid_loss = valid_logs['valid_loss']
if self.params.log_to_screen:
logging.info('Time taken for epoch {} is {} sec'.format(epoch + 1, time.time()-start))
#logging.info('train data time={}, train step time={}, valid step time={}'.format(data_time, tr_time, valid_time))
logging.info('Train loss: {}. Valid loss: {}'.format(train_logs['loss'], valid_logs['valid_loss']))
# if epoch==self.params.max_epochs-1 and self.params.prediction_type == 'direct':
# logging.info('Final Valid RMSE: Z500- {}. T850- {}, 2m_T- {}'.format(valid_weighted_rmse[0], valid_weighted_rmse[1], valid_weighted_rmse[2]))
def train_one_epoch(self):
self.epoch += 1
tr_time = 0
data_time = 0
self.model.train()
for i, data in enumerate(self.train_data_loader, 0):
self.iters += 1
# adjust_LR(optimizer, params, iters)
data_start = time.time()
inp, tar = map(lambda x: x.to(self.device, dtype = torch.float), data)
if self.params.orography and self.params.two_step_training:
orog = inp[:,-2:-1]
if self.params.enable_nhwc:
inp = inp.to(memory_format=torch.channels_last)
tar = tar.to(memory_format=torch.channels_last)
if 'residual_field' in self.params.target:
tar -= inp[:, 0:tar.size()[1]]
data_time += time.time() - data_start
tr_start = time.time()
self.model.zero_grad()
if self.params.two_step_training:
with amp.autocast(self.params.enable_amp):
gen_step_one = self.model(inp).to(self.device, dtype = torch.float)
loss_step_one = self.loss_obj(gen_step_one, tar[:,0:self.params.N_out_channels])
if self.params.orography:
gen_step_two = self.model(torch.cat( (gen_step_one, orog), axis = 1) ).to(self.device, dtype = torch.float)
else:
gen_step_two = self.model(gen_step_one).to(self.device, dtype = torch.float)
loss_step_two = self.loss_obj(gen_step_two, tar[:,self.params.N_out_channels:2*self.params.N_out_channels])
loss = loss_step_one + loss_step_two
else:
with amp.autocast(self.params.enable_amp):
if self.precip: # use a wind model to predict 17(+n) channels at t+dt
with torch.no_grad():
inp = self.model_wind(inp).to(self.device, dtype = torch.float)
gen = self.model(inp.detach()).to(self.device, dtype = torch.float)
else:
gen = self.model(inp).to(self.device, dtype = torch.float)
loss = self.loss_obj(gen, tar)
if self.params.enable_amp:
self.gscaler.scale(loss).backward()
self.gscaler.step(self.optimizer)
else:
loss.backward()
self.optimizer.step()
if self.params.enable_amp:
self.gscaler.update()
tr_time += time.time() - tr_start
try:
logs = {'loss': loss, 'loss_step_one': loss_step_one, 'loss_step_two': loss_step_two}
except:
logs = {'loss': loss}
if dist.is_initialized():
for key in sorted(logs.keys()):
dist.all_reduce(logs[key].detach())
logs[key] = float(logs[key]/dist.get_world_size())
if self.params.log_to_wandb:
wandb.log(logs, step=self.epoch)
return tr_time, data_time, logs
def validate_one_epoch(self):
self.model.eval()
n_valid_batches = 20 #do validation on first 20 images, just for LR scheduler
if self.params.normalization == 'minmax':
raise Exception("minmax normalization not supported")
elif self.params.normalization == 'zscore':
mult = torch.as_tensor(np.load(self.params.global_stds_path)[0, self.params.out_channels, 0, 0]).to(self.device)
valid_buff = torch.zeros((3), dtype=torch.float32, device=self.device)
valid_loss = valid_buff[0].view(-1)
valid_l1 = valid_buff[1].view(-1)
valid_steps = valid_buff[2].view(-1)
valid_weighted_rmse = torch.zeros((self.params.N_out_channels), dtype=torch.float32, device=self.device)
valid_weighted_acc = torch.zeros((self.params.N_out_channels), dtype=torch.float32, device=self.device)
valid_start = time.time()
sample_idx = np.random.randint(len(self.valid_data_loader))
with torch.no_grad():
for i, data in enumerate(self.valid_data_loader, 0):
if (not self.precip) and i>=n_valid_batches:
break
inp, tar = map(lambda x: x.to(self.device, dtype = torch.float), data)
if self.params.orography and self.params.two_step_training:
orog = inp[:,-2:-1]
if self.params.two_step_training:
gen_step_one = self.model(inp).to(self.device, dtype = torch.float)
loss_step_one = self.loss_obj(gen_step_one, tar[:,0:self.params.N_out_channels])
if self.params.orography:
gen_step_two = self.model(torch.cat( (gen_step_one, orog), axis = 1) ).to(self.device, dtype = torch.float)
else:
gen_step_two = self.model(gen_step_one).to(self.device, dtype = torch.float)
loss_step_two = self.loss_obj(gen_step_two, tar[:,self.params.N_out_channels:2*self.params.N_out_channels])
valid_loss += loss_step_one + loss_step_two
valid_l1 += nn.functional.l1_loss(gen_step_one, tar[:,0:self.params.N_out_channels])
else:
if self.precip:
with torch.no_grad():
inp = self.model_wind(inp).to(self.device, dtype = torch.float)
gen = self.model(inp.detach())
else:
gen = self.model(inp).to(self.device, dtype = torch.float)
valid_loss += self.loss_obj(gen, tar)
valid_l1 += nn.functional.l1_loss(gen, tar)
valid_steps += 1.
# save fields for vis before log norm
if (i == sample_idx) and (self.precip and self.params.log_to_wandb):
fields = [gen[0,0].detach().cpu().numpy(), tar[0,0].detach().cpu().numpy()]
if self.precip:
gen = unlog_tp_torch(gen, self.params.precip_eps)
tar = unlog_tp_torch(tar, self.params.precip_eps)
#direct prediction weighted rmse
if self.params.two_step_training:
if 'residual_field' in self.params.target:
valid_weighted_rmse += weighted_rmse_torch((gen_step_one + inp), (tar[:,0:self.params.N_out_channels] + inp))
else:
valid_weighted_rmse += weighted_rmse_torch(gen_step_one, tar[:,0:self.params.N_out_channels])
else:
if 'residual_field' in self.params.target:
valid_weighted_rmse += weighted_rmse_torch((gen + inp), (tar + inp))
else:
valid_weighted_rmse += weighted_rmse_torch(gen, tar)
if not self.precip:
try:
os.mkdir(params['experiment_dir'] + "/" + str(i))
except:
pass
#save first channel of image
if self.params.two_step_training:
save_image(torch.cat((gen_step_one[0,0], torch.zeros((self.valid_dataset.img_shape_x, 4)).to(self.device, dtype = torch.float), tar[0,0]), axis = 1), params['experiment_dir'] + "/" + str(i) + "/" + str(self.epoch) + ".png")
else:
save_image(torch.cat((gen[0,0], torch.zeros((self.valid_dataset.img_shape_x, 4)).to(self.device, dtype = torch.float), tar[0,0]), axis = 1), params['experiment_dir'] + "/" + str(i) + "/" + str(self.epoch) + ".png")
if dist.is_initialized():
dist.all_reduce(valid_buff)
dist.all_reduce(valid_weighted_rmse)
# divide by number of steps
valid_buff[0:2] = valid_buff[0:2] / valid_buff[2]
valid_weighted_rmse = valid_weighted_rmse / valid_buff[2]
if not self.precip:
valid_weighted_rmse *= mult
# download buffers
valid_buff_cpu = valid_buff.detach().cpu().numpy()
valid_weighted_rmse_cpu = valid_weighted_rmse.detach().cpu().numpy()
valid_time = time.time() - valid_start
valid_weighted_rmse = mult*torch.mean(valid_weighted_rmse, axis = 0)
if self.precip:
logs = {'valid_l1': valid_buff_cpu[1], 'valid_loss': valid_buff_cpu[0], 'valid_rmse_tp': valid_weighted_rmse_cpu[0]}
else:
try:
logs = {'valid_l1': valid_buff_cpu[1], 'valid_loss': valid_buff_cpu[0], 'valid_rmse_u10': valid_weighted_rmse_cpu[0], 'valid_rmse_v10': valid_weighted_rmse_cpu[1]}
except:
logs = {'valid_l1': valid_buff_cpu[1], 'valid_loss': valid_buff_cpu[0], 'valid_rmse_u10': valid_weighted_rmse_cpu[0]}#, 'valid_rmse_v10': valid_weighted_rmse[1]}
if self.params.log_to_wandb:
if self.precip:
fig = vis_precip(fields)
logs['vis'] = wandb.Image(fig)
plt.close(fig)
wandb.log(logs, step=self.epoch)
return valid_time, logs
def validate_final(self):
self.model.eval()
n_valid_batches = int(self.valid_dataset.n_patches_total/self.valid_dataset.n_patches) #validate on whole dataset
valid_weighted_rmse = torch.zeros(n_valid_batches, self.params.N_out_channels)
if self.params.normalization == 'minmax':
raise Exception("minmax normalization not supported")
elif self.params.normalization == 'zscore':
mult = torch.as_tensor(np.load(self.params.global_stds_path)[0, self.params.out_channels, 0, 0]).to(self.device)
with torch.no_grad():
for i, data in enumerate(self.valid_data_loader):
if i>100:
break
inp, tar = map(lambda x: x.to(self.device, dtype = torch.float), data)
if self.params.orography and self.params.two_step_training:
orog = inp[:,-2:-1]
if 'residual_field' in self.params.target:
tar -= inp[:, 0:tar.size()[1]]
if self.params.two_step_training:
gen_step_one = self.model(inp).to(self.device, dtype = torch.float)
loss_step_one = self.loss_obj(gen_step_one, tar[:,0:self.params.N_out_channels])
if self.params.orography:
gen_step_two = self.model(torch.cat( (gen_step_one, orog), axis = 1) ).to(self.device, dtype = torch.float)
else:
gen_step_two = self.model(gen_step_one).to(self.device, dtype = torch.float)
loss_step_two = self.loss_obj(gen_step_two, tar[:,self.params.N_out_channels:2*self.params.N_out_channels])
valid_loss[i] = loss_step_one + loss_step_two
valid_l1[i] = nn.functional.l1_loss(gen_step_one, tar[:,0:self.params.N_out_channels])
else:
gen = self.model(inp)
valid_loss[i] += self.loss_obj(gen, tar)
valid_l1[i] += nn.functional.l1_loss(gen, tar)
if self.params.two_step_training:
for c in range(self.params.N_out_channels):
if 'residual_field' in self.params.target:
valid_weighted_rmse[i, c] = weighted_rmse_torch((gen_step_one[0,c] + inp[0,c]), (tar[0,c]+inp[0,c]), self.device)
else:
valid_weighted_rmse[i, c] = weighted_rmse_torch(gen_step_one[0,c], tar[0,c], self.device)
else:
for c in range(self.params.N_out_channels):
if 'residual_field' in self.params.target:
valid_weighted_rmse[i, c] = weighted_rmse_torch((gen[0,c] + inp[0,c]), (tar[0,c]+inp[0,c]), self.device)
else:
valid_weighted_rmse[i, c] = weighted_rmse_torch(gen[0,c], tar[0,c], self.device)
#un-normalize
valid_weighted_rmse = mult*torch.mean(valid_weighted_rmse[0:100], axis = 0).to(self.device)
return valid_weighted_rmse
def load_model_wind(self, model_path):
if self.params.log_to_screen:
logging.info('Loading the wind model weights from {}'.format(model_path))
checkpoint = torch.load(model_path, map_location='cuda:{}'.format(self.params.local_rank))
if dist.is_initialized():
self.model_wind.load_state_dict(checkpoint['model_state'])
else:
new_model_state = OrderedDict()
model_key = 'model_state' if 'model_state' in checkpoint else 'state_dict'
for key in checkpoint[model_key].keys():
if 'module.' in key: # model was stored using ddp which prepends module
name = str(key[7:])
new_model_state[name] = checkpoint[model_key][key]
else:
new_model_state[key] = checkpoint[model_key][key]
self.model_wind.load_state_dict(new_model_state)
self.model_wind.eval()
def save_checkpoint(self, checkpoint_path, model=None):
""" We intentionally require a checkpoint_dir to be passed
in order to allow Ray Tune to use this function """
if not model:
model = self.model
torch.save({'iters': self.iters, 'epoch': self.epoch, 'model_state': model.state_dict(),
'optimizer_state_dict': self.optimizer.state_dict()}, checkpoint_path)
def restore_checkpoint(self, checkpoint_path):
""" We intentionally require a checkpoint_dir to be passed
in order to allow Ray Tune to use this function """
checkpoint = torch.load(checkpoint_path, map_location='cuda:{}'.format(self.params.local_rank))
try:
self.model.load_state_dict(checkpoint['model_state'])
except:
new_state_dict = OrderedDict()
for key, val in checkpoint['model_state'].items():
name = key[7:]
new_state_dict[name] = val
self.model.load_state_dict(new_state_dict)
self.iters = checkpoint['iters']
self.startEpoch = checkpoint['epoch']
if self.params.resuming: #restore checkpoint is used for finetuning as well as resuming. If finetuning (i.e., not resuming), restore checkpoint does not load optimizer state, instead uses config specified lr.
self.optimizer.load_state_dict(checkpoint['optimizer_state_dict'])
if __name__ == '__main__':
parser = argparse.ArgumentParser()
parser.add_argument("--run_num", default='00', type=str)
parser.add_argument("--yaml_config", default='./config/AFNO.yaml', type=str)
parser.add_argument("--config", default='default', type=str)
parser.add_argument("--enable_amp", action='store_true')
parser.add_argument("--epsilon_factor", default = 0, type = float)
args = parser.parse_args()
params = YParams(os.path.abspath(args.yaml_config), args.config)
params['epsilon_factor'] = args.epsilon_factor
params['world_size'] = 1
if 'WORLD_SIZE' in os.environ:
params['world_size'] = int(os.environ['WORLD_SIZE'])
world_rank = 0
local_rank = 0
if params['world_size'] > 1:
dist.init_process_group(backend='nccl',
init_method='env://')
local_rank = int(os.environ["LOCAL_RANK"])
args.gpu = local_rank
world_rank = dist.get_rank()
params['global_batch_size'] = params.batch_size
params['batch_size'] = int(params.batch_size//params['world_size'])
torch.cuda.set_device(local_rank)
torch.backends.cudnn.benchmark = True
# Set up directory
expDir = os.path.join(params.exp_dir, args.config, str(args.run_num))
if world_rank==0:
if not os.path.isdir(expDir):
os.makedirs(expDir)
os.makedirs(os.path.join(expDir, 'training_checkpoints/'))
params['experiment_dir'] = os.path.abspath(expDir)
params['checkpoint_path'] = os.path.join(expDir, 'training_checkpoints/ckpt.tar')
params['best_checkpoint_path'] = os.path.join(expDir, 'training_checkpoints/best_ckpt.tar')
# Do not comment this line out please:
args.resuming = True if os.path.isfile(params.checkpoint_path) else False
params['resuming'] = args.resuming
params['local_rank'] = local_rank
params['enable_amp'] = args.enable_amp
# this will be the wandb name
# params['name'] = args.config + '_' + str(args.run_num)
# params['group'] = "era5_wind" + args.config
params['name'] = args.config + '_' + str(args.run_num)
params['group'] = "era5_precip" + args.config
params['project'] = "ERA5_precip"
params['entity'] = "flowgan"
if world_rank==0:
logging_utils.log_to_file(logger_name=None, log_filename=os.path.join(expDir, 'out.log'))
logging_utils.log_versions()
params.log()
params['log_to_wandb'] = (world_rank==0) and params['log_to_wandb']
params['log_to_screen'] = (world_rank==0) and params['log_to_screen']
params['in_channels'] = np.array(params['in_channels'])
params['out_channels'] = np.array(params['out_channels'])
if params.orography:
params['N_in_channels'] = len(params['in_channels']) +1
else:
params['N_in_channels'] = len(params['in_channels'])
params['N_out_channels'] = len(params['out_channels'])
if world_rank == 0:
hparams = ruamelDict()
yaml = YAML()
for key, value in params.params.items():
hparams[str(key)] = str(value)
with open(os.path.join(expDir, 'hyperparams.yaml'), 'w') as hpfile:
yaml.dump(hparams, hpfile )
trainer = Trainer(params, world_rank)
trainer.train()
logging.info('DONE ---- rank %d'%world_rank)