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experiment.py
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experiment.py
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from concern.config import Configurable, State
from concern.log import Logger
from structure.builder import Builder
from structure.representers import *
from structure.measurers import *
from structure.visualizers import *
from data.data_loader import *
from data import *
from training.model_saver import ModelSaver
from training.checkpoint import Checkpoint
from training.optimizer_scheduler import OptimizerScheduler
class Structure(Configurable):
builder = State()
representer = State()
measurer = State()
visualizer = State()
def __init__(self, **kwargs):
self.load_all(**kwargs)
@property
def model_name(self):
return self.builder.model_name
class TrainSettings(Configurable):
data_loader = State()
model_saver = State()
checkpoint = State()
scheduler = State()
epochs = State(default=10)
def __init__(self, **kwargs):
kwargs['cmd'].update(is_train=True)
self.load_all(**kwargs)
if 'epochs' in kwargs['cmd']:
self.epochs = kwargs['cmd']['epochs']
class ValidationSettings(Configurable):
data_loaders = State()
visualize = State()
interval = State(default=100)
exempt = State(default=-1)
def __init__(self, **kwargs):
kwargs['cmd'].update(is_train=False)
self.load_all(**kwargs)
cmd = kwargs['cmd']
self.visualize = cmd['visualize']
class EvaluationSettings(Configurable):
data_loaders = State()
visualize = State(default=True)
resume = State()
def __init__(self, **kwargs):
self.load_all(**kwargs)
class EvaluationSettings2(Configurable):
structure = State()
data_loaders = State()
def __init__(self, **kwargs):
self.load_all(**kwargs)
class ShowSettings(Configurable):
data_loader = State()
representer = State()
visualizer = State()
def __init__(self, **kwargs):
self.load_all(**kwargs)
class Experiment(Configurable):
structure = State(autoload=False)
train = State()
validation = State(autoload=False)
evaluation = State(autoload=False)
logger = State(autoload=True)
def __init__(self, **kwargs):
self.load('structure', **kwargs)
cmd = kwargs.get('cmd', {})
if 'name' not in cmd:
cmd['name'] = self.structure.model_name
self.load_all(**kwargs)
self.distributed = cmd.get('distributed', False)
self.local_rank = cmd.get('local_rank', 0)
if cmd.get('validate', False):
self.load('validation', **kwargs)
else:
self.validation = None