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import logging
import os
import sys
import importlib
from argparse import ArgumentParser
import csv
import numpy
import theano
from theano import printing
from theano import tensor
from theano.ifelse import ifelse
from blocks.filter import VariableFilter
from blocks.model import Model
from fuel.datasets.hdf5 import H5PYDataset
from fuel.transformers import Batch
from fuel.streams import DataStream
from fuel.schemes import ConstantScheme, SequentialExampleScheme
from blocks.algorithms import GradientDescent, Scale, AdaDelta, Momentum
from blocks.graph import ComputationGraph
from blocks.main_loop import MainLoop
from blocks.extensions import Printing, FinishAfter
from blocks.extensions.saveload import Dump, LoadFromDump, Checkpoint
from blocks.extensions.monitoring import DataStreamMonitoring
import data
import transformers
import hdist
import apply_model
if __name__ == "__main__":
if len(sys.argv) != 2:
print >> sys.stderr, 'Usage: %s config' % sys.argv[0]
sys.exit(1)
model_name = sys.argv[1]
config = importlib.import_module(model_name)
def setup_train_stream():
# Load the training and test data
train = H5PYDataset(data.H5DATA_PATH,
which_set='train',
subset=slice(0, data.dataset_size),
load_in_memory=True)
train = DataStream(train, iteration_scheme=SequentialExampleScheme(data.dataset_size - config.n_valid))
train = transformers.filter_out_trips(data.valid_trips, train)
train = transformers.TaxiGenerateSplits(train, max_splits=100)
train = transformers.add_first_k(config.n_begin_end_pts, train)
train = transformers.add_last_k(config.n_begin_end_pts, train)
train = transformers.Select(train, ('origin_stand', 'origin_call', 'first_k_latitude',
'last_k_latitude', 'first_k_longitude', 'last_k_longitude',
'destination_latitude', 'destination_longitude'))
train_stream = Batch(train, iteration_scheme=ConstantScheme(config.batch_size))
return train_stream
def setup_valid_stream():
valid = DataStream(data.valid_data)
valid = transformers.add_first_k(config.n_begin_end_pts, valid)
valid = transformers.add_last_k(config.n_begin_end_pts, valid)
valid = transformers.Select(valid, ('origin_stand', 'origin_call', 'first_k_latitude',
'last_k_latitude', 'first_k_longitude', 'last_k_longitude',
'destination_latitude', 'destination_longitude'))
valid_stream = Batch(valid, iteration_scheme=ConstantScheme(1000))
return valid_stream
def setup_test_stream():
test = data.test_data
test = DataStream(test)
test = transformers.add_first_k(config.n_begin_end_pts, test)
test = transformers.add_last_k(config.n_begin_end_pts, test)
test = transformers.Select(test, ('trip_id', 'origin_stand', 'origin_call', 'first_k_latitude',
'last_k_latitude', 'first_k_longitude', 'last_k_longitude'))
test_stream = Batch(test, iteration_scheme=ConstantScheme(1000))
return test_stream
def main():
model = config.model.Model(config)
cost = model.cost
hcost = model.hcost
outputs = model.outputs
train_stream = setup_train_stream()
valid_stream = setup_valid_stream()
# Training
cg = ComputationGraph(cost)
params = cg.parameters # VariableFilter(bricks=[Linear])(cg.parameters)
algorithm = GradientDescent(
cost=cost,
# step_rule=AdaDelta(decay_rate=0.5),
step_rule=Momentum(learning_rate=config.learning_rate, momentum=config.momentum),
params=params)
extensions=[DataStreamMonitoring([cost, hcost], valid_stream,
prefix='valid',
every_n_batches=1000),
Printing(every_n_batches=1000),
# Checkpoint('model.pkl', every_n_batches=100),
Dump('model_data/' + model_name, every_n_batches=1000),
LoadFromDump('model_data/' + model_name),
FinishAfter(after_epoch=5)
]
main_loop = MainLoop(
model=Model([cost]),
data_stream=train_stream,
algorithm=algorithm,
extensions=extensions)
main_loop.run()
main_loop.profile.report()
# Produce an output on the test data
test_stream = setup_test_stream()
outfile = open("test-output.csv", "w")
outcsv = csv.writer(outfile)
outcsv.writerow(["TRIP_ID", "LATITUDE", "LONGITUDE"])
for out in apply_model.Apply(outputs=outputs, stream=test_stream, return_vars=['trip_id', 'outputs']):
dest = out['outputs']
for i, trip in enumerate(out['trip_id']):
outcsv.writerow([trip, repr(dest[i, 0]), repr(dest[i, 1])])
outfile.close()
if __name__ == "__main__":
logging.basicConfig(level=logging.INFO)
main()
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