Source code for aimet_tensorflow.compress

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""" Top-level API for aimet compression library """

from typing import Union, Tuple, List
import tensorflow as tf

from aimet_common.defs import CostMetric, CompressionScheme, EvalFunction, CompressionStats
from aimet_common.bokeh_plots import BokehServerSession

from aimet_tensorflow.utils.graph_saver import wrapper_func, save_and_load_graph
from aimet_tensorflow.defs import SpatialSvdParameters, ChannelPruningParameters
from aimet_tensorflow.compression_factory import CompressionFactory


[docs]class ModelCompressor: """ aimet model compressor: Enables model compression using various schemes """ # pylint: disable=too-many-arguments
[docs] @staticmethod def compress_model(sess: tf.compat.v1.Session, working_dir: str, eval_callback: EvalFunction, eval_iterations, input_shape: Union[Tuple, List[Tuple]], compress_scheme: CompressionScheme, cost_metric: CostMetric, parameters: Union[SpatialSvdParameters, ChannelPruningParameters], trainer=None, visualization_url=None) -> Tuple[tf.compat.v1.Session, CompressionStats]: """ Compress a given model using the specified parameters :param sess: Model, represented by a tf.compat.v1.Session, to compress :param working_dir: File path to save compressed TensorFlow meta file :param eval_callback: Evaluation callback. Expected signature is evaluate(model, iterations, use_cuda). Expected to return an accuracy metric. :param eval_iterations: Iterations to run evaluation for :param trainer: Training Class: Contains a callable, train_model, which takes model, layer which is being fine tuned and an optional parameter train_flag as a parameter None: If per layer fine tuning is not required while creating the final compressed model :param input_shape: tuple or list of tuples of input shapes to the model (channels_last format) :param compress_scheme: Compression scheme. See the enum for allowed values :param cost_metric: Cost metric to use for the compression-ratio (either mac or memory) :param parameters: Compression parameters specific to given compression scheme :param trainer: Training function None: If per layer fine tuning is not required while creating the final compressed model :param visualization_url: url the user will need to input where visualizations will appear :return: A tuple of the compressed model session, and compression statistics """ # If no url is passed in, then do not create a bokeh server session if not visualization_url: bokeh_session = None else: # create a bokeh session to publish visualizations to the server document for compression bokeh_session = BokehServerSession(url=visualization_url, session_id="compression") if parameters.multiplicity < 1: raise ValueError('Rounding Multiplicity should be greater than 1') if compress_scheme == CompressionScheme.spatial_svd: # wrapper_func saves and reloads the graph before evaluation # In TF after making changes to the graph you must save and reload, then evaluate eval_callback = wrapper_func(eval_callback) algo = CompressionFactory.create_spatial_svd_algo(sess, working_dir, eval_callback, eval_iterations, input_shape, cost_metric, parameters, bokeh_session) elif compress_scheme == CompressionScheme.channel_pruning: algo = CompressionFactory.create_channel_pruning_algo(sess, working_dir, eval_callback, input_shape, eval_iterations, cost_metric, parameters, bokeh_session) else: raise ValueError("Compression scheme not supported: {}".format(compress_scheme)) compressed_layer_db, stats = algo.compress_model(cost_metric, trainer) # TODO: this is a temporary fix, needs to be resolved # In TF after making changes to the graph you must save and reload, then evaluate updated_model = save_and_load_graph('./saver', compressed_layer_db.model) compressed_layer_db.model.close() return updated_model, stats