aiexperiments-ai-duet/server/magenta/pipelines/pipelines_common.py
Yotam Mann ff837cec16 server
2016-11-11 13:53:51 -05:00

120 lines
4.4 KiB
Python

# Copyright 2016 Google Inc. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""Defines Module base class and implementations.
Modules are data processing building blocks for creating datasets.
"""
import random
# internal imports
import numpy as np
import tensorflow as tf
from magenta.music import melodies_lib
from magenta.music import sequences_lib
from magenta.pipelines import pipeline
from magenta.pipelines import statistics
from magenta.protobuf import music_pb2
class Quantizer(pipeline.Pipeline):
"""A Module that quantizes NoteSequence data."""
def __init__(self, steps_per_quarter=4):
super(Quantizer, self).__init__(
input_type=music_pb2.NoteSequence,
output_type=sequences_lib.QuantizedSequence)
self.steps_per_quarter = steps_per_quarter
def transform(self, note_sequence):
quantized_sequence = sequences_lib.QuantizedSequence()
try:
quantized_sequence.from_note_sequence(note_sequence,
self.steps_per_quarter)
return [quantized_sequence]
except sequences_lib.MultipleTimeSignatureException:
tf.logging.debug('Multiple time signatures found in NoteSequence')
self._set_stats([statistics.Counter(
'sequences_discarded_because_multiple_time_signatures', 1)])
return []
class MonophonicMelodyExtractor(pipeline.Pipeline):
"""Extracts monophonic melodies from a QuantizedSequence."""
def __init__(self, min_bars=7, min_unique_pitches=5, gap_bars=1.0,
ignore_polyphonic_notes=False):
super(MonophonicMelodyExtractor, self).__init__(
input_type=sequences_lib.QuantizedSequence,
output_type=melodies_lib.MonophonicMelody)
self.min_bars = min_bars
self.min_unique_pitches = min_unique_pitches
self.gap_bars = gap_bars
self.ignore_polyphonic_notes = False
def transform(self, quantized_sequence):
try:
melodies, stats = melodies_lib.extract_melodies(
quantized_sequence,
min_bars=self.min_bars,
min_unique_pitches=self.min_unique_pitches,
gap_bars=self.gap_bars,
ignore_polyphonic_notes=self.ignore_polyphonic_notes)
except melodies_lib.NonIntegerStepsPerBarException as detail:
tf.logging.warning('Skipped sequence: %s', detail)
melodies = []
stats = [statistics.Counter('non_integer_steps_per_bar', 1)]
self._set_stats(stats)
return melodies
class RandomPartition(pipeline.Pipeline):
"""Outputs multiple datasets.
This Pipeline will take a single input feed and randomly partition the inputs
into multiple output datasets. The probabilities of an input landing in each
dataset are given by `partition_probabilities`. Use this Pipeline to partition
previous Pipeline outputs into training and test sets, or training, eval, and
test sets.
"""
def __init__(self, type_, partition_names, partition_probabilities):
super(RandomPartition, self).__init__(
type_, dict([(name, type_) for name in partition_names]))
if len(partition_probabilities) != len(partition_names) - 1:
raise ValueError('len(partition_probabilities) != '
'len(partition_names) - 1. '
'Last probability is implicity.')
self.partition_names = partition_names
self.cumulative_density = np.cumsum(partition_probabilities).tolist()
self.rand_func = random.random
def transform(self, input_object):
r = self.rand_func()
if r >= self.cumulative_density[-1]:
bucket = len(self.cumulative_density)
else:
for i, cpd in enumerate(self.cumulative_density):
if r < cpd:
bucket = i
break
self._set_stats(self._make_stats(self.partition_names[bucket]))
return dict([(name, [] if i != bucket else [input_object])
for i, name in enumerate(self.partition_names)])
def _make_stats(self, increment_partition=None):
return [statistics.Counter(increment_partition + '_count', 1)]