Esempio n. 1
0
    def estimator_model_fn(cls,
                           hparams,
                           features,
                           labels,
                           mode,
                           config=None,
                           params=None,
                           decode_hparams=None,
                           use_tpu=False):
        hparams = hparams_lib.copy_hparams(hparams)
        hparams.use_tpu = use_tpu
        # merge decode_hparams into hparams if present
        if mode == tf.estimator.ModeKeys.PREDICT and decode_hparams is not None:
            for k, v in six.iteritems(decode_hparams.values()):
                if hasattr(hparams, k) and getattr(hparams, k) != v:
                    tf.logging.warning(
                        "Overriding hparams.%s with %s from decode_hparams" %
                        (k, v))
                setattr(hparams, k, v)

        # Instantiate model
        data_parallelism = None
        if not use_tpu and config:
            data_parallelism = config.data_parallelism
        model = cls(hparams,
                    mode,
                    data_parallelism=data_parallelism,
                    decode_hparams=decode_hparams)

        global_step = tf.train.get_global_step()

        mesh_shape = mtf.convert_to_shape(hparams.mesh_shape)
        layout_rules = mtf.convert_to_layout_rules(hparams.layout)
        if use_tpu:
            ctx = params["context"]
            num_hosts = ctx.num_hosts
            host_placement_fn = ctx.tpu_host_placement_function
            device_list = [
                host_placement_fn(host_id=t) for t in range(num_hosts)
            ]
            # TODO(ylc): Better estimation of replica cache size?
            replica_cache_size = 300 * 1000000  # 300M per replica
            # Worker 0 caches all the TPU binaries.
            worker0_mem = replica_cache_size * ctx.num_replicas
            devices_memeory_usage = [worker0_mem] + [0] * (num_hosts - 1)
            var_placer = mtf.utils.BalancedVariablePlacer(
                device_list, devices_memeory_usage)
            mesh_devices = [""] * mesh_shape.size
            mesh_impl = mtf.simd_mesh_impl.SimdMeshImpl(
                mesh_shape, layout_rules, mesh_devices, ctx.device_assignment)
        else:
            var_placer = None
            if data_parallelism is None or len(
                    data_parallelism.ps_devices) == 1:
                mesh_devices = [""] * mesh_shape.size
            else:
                assert len(data_parallelism.ps_devices) == mesh_shape.size
                mesh_devices = data_parallelism.ps_devices
            mesh_impl = mtf.placement_mesh_impl.PlacementMeshImpl(
                mesh_shape, layout_rules, mesh_devices)

        graph = mtf.Graph()
        mesh = mtf.Mesh(graph, "my_mesh", var_placer)
        # PREDICT mode
        if mode == tf.estimator.ModeKeys.PREDICT:
            return model.estimator_spec_predict(features, mesh, mesh_impl,
                                                use_tpu)

        logits, loss = model.mtf_model_fn(features, mesh)
        if use_tpu and logits is not None:
            logits = mtf.anonymize(logits)

        # TRAIN mode
        if mode == tf.estimator.ModeKeys.TRAIN:
            var_grads = mtf.gradients(
                [loss], [v.outputs[0] for v in graph.trainable_variables])
            lr = learning_rate.learning_rate_schedule(hparams)
            tf.summary.scalar("learning_rate", lr)
            mtf_lr = mtf.import_tf_tensor(
                mesh, tf.convert_to_tensor(lr, dtype=tf.float32),
                mtf.Shape([]))
            optimizer = mtf.optimize.make_optimizer(hparams, mtf_lr)
            update_ops = optimizer.apply_grads(var_grads,
                                               graph.trainable_variables)

        lowering = mtf.Lowering(graph, {mesh: mesh_impl})

        tf_loss = lowering.export_to_tf_tensor(loss)
        tf_loss = tf.to_float(tf_loss)
        if logits and mode != tf.estimator.ModeKeys.TRAIN:
            tf_logits = lowering.export_to_tf_tensor(logits)

        if mode == tf.estimator.ModeKeys.TRAIN:
            tf_update_ops = [
                lowering.lowered_operation(op) for op in update_ops
            ]
            tf_update_ops.append(tf.assign_add(global_step, 1))
            # tf.logging.info("tf_update_ops: {}".format(tf_update_ops))
            train_op = tf.group(tf_update_ops)

        with mtf.utils.outside_all_rewrites():
            # Copy master variables to slices. Must be called first.
            restore_hook = mtf.MtfRestoreHook(lowering)
            saver = tf.train.Saver(tf.global_variables(),
                                   sharded=True,
                                   max_to_keep=10,
                                   keep_checkpoint_every_n_hours=2,
                                   defer_build=False,
                                   save_relative_paths=True)
            tf.add_to_collection(tf.GraphKeys.SAVERS, saver)
            saver_listener = mtf.MtfCheckpointSaverListener(lowering)
            saver_hook = tf.train.CheckpointSaverHook(
                hparams.model_dir,
                save_steps=1000,
                saver=saver,
                listeners=[saver_listener])

        # EVAL mode
        if mode == tf.estimator.ModeKeys.EVAL:
            tf_logits = lowering.export_to_tf_tensor(logits)
            return model.estimator_spec_eval(features, tf_logits, labels,
                                             tf_loss, restore_hook, use_tpu)

        if use_tpu:
            # TPU host call. Important: need to be called before remove_summaries()
            if hparams.tpu_enable_host_call:
                host_call = t2t_model.create_host_call(hparams.model_dir)
            else:
                host_call = None

            if hparams.warm_start_from:

                def scaffold_fn():
                    t2t_model.initialize_from_ckpt(
                        ckpt_dir=hparams.warm_start_from, hparams=hparams)
                    return tf.train.Scaffold()
            else:
                scaffold_fn = None

            t2t_model.remove_summaries()
            return tpu_estimator.TPUEstimatorSpec(
                mode=tf.estimator.ModeKeys.TRAIN,
                loss=tf_loss,
                train_op=train_op,
                host_call=host_call,
                training_hooks=[restore_hook, saver_hook],
                scaffold_fn=scaffold_fn)
        else:
            if hparams.warm_start_from:
                t2t_model.initialize_from_ckpt(
                    ckpt_dir=hparams.warm_start_from, hparams=hparams)
            return tf.estimator.EstimatorSpec(
                tf.estimator.ModeKeys.TRAIN,
                loss=tf_loss,
                train_op=train_op,
                training_chief_hooks=[restore_hook, saver_hook])
Esempio n. 2
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 def scaffold_fn():
     t2t_model.initialize_from_ckpt(
         ckpt_dir=hparams.warm_start_from, hparams=hparams)
     return tf.train.Scaffold()