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Contoh Keras pelatihan sadar kuantisasi dan pelestarian cluster (PCQAT)

Lihat di TensorFlow.org Jalankan di Google Colab Lihat di GitHub Unduh buku catatan

Gambaran

Ini adalah mengakhiri contoh akhir yang menunjukkan penggunaan sparsity dan klaster melestarikan kuantisasi menyadari pelatihan (PCQAT) API, bagian dari pipa optimasi kolaboratif yang TensorFlow Model Optimasi Toolkit.

halaman lain

Untuk pengenalan pipa dan teknik lain yang tersedia, lihat kolaboratif halaman ikhtisar optimasi .

Isi

Dalam tutorial, Anda akan:

  1. Melatih tf.keras model untuk dataset MNIST dari awal.
  2. Sempurnakan model dengan pemangkasan dan lihat akurasinya dan amati bahwa model berhasil dipangkas.
  3. Terapkan pengelompokan yang mempertahankan sparitas pada model yang dipangkas dan amati bahwa sparitas yang diterapkan sebelumnya telah dipertahankan.
  4. Terapkan QAT dan amati hilangnya sparsity dan cluster.
  5. Terapkan PCQAT dan amati bahwa sparity dan clustering yang diterapkan sebelumnya telah dipertahankan.
  6. Hasilkan model TFLite dan amati efek penerapan PCQAT di atasnya.
  7. Bandingkan ukuran model yang berbeda untuk mengamati manfaat kompresi penerapan sparsity diikuti dengan teknik optimasi kolaboratif dari sparsity melestarikan clustering dan PCQAT.
  8. Bandingkan akurasi model yang dioptimalkan sepenuhnya dengan akurasi model dasar yang tidak dioptimalkan.

Mempersiapkan

Anda dapat menjalankan Notebook Jupyter ini di lokal Anda virtualenv atau colab . Untuk rincian pengaturan dependensi, silakan merujuk ke panduan instalasi .

 pip install -q tensorflow-model-optimization
import tensorflow as tf

import numpy as np
import tempfile
import zipfile
import os

Latih model tf.keras agar MNIST dipangkas dan dikelompokkan

# Load MNIST dataset
mnist = tf.keras.datasets.mnist
(train_images, train_labels), (test_images, test_labels) = mnist.load_data()

# Normalize the input image so that each pixel value is between 0 to 1.
train_images = train_images / 255.0
test_images  = test_images / 255.0

model = tf.keras.Sequential([
  tf.keras.layers.InputLayer(input_shape=(28, 28)),
  tf.keras.layers.Reshape(target_shape=(28, 28, 1)),
  tf.keras.layers.Conv2D(filters=12, kernel_size=(3, 3),
                         activation=tf.nn.relu),
  tf.keras.layers.MaxPooling2D(pool_size=(2, 2)),
  tf.keras.layers.Flatten(),
  tf.keras.layers.Dense(10)
])

opt = tf.keras.optimizers.Adam(learning_rate=1e-3)

# Train the digit classification model
model.compile(optimizer=opt,
              loss=tf.keras.losses.SparseCategoricalCrossentropy(from_logits=True),
              metrics=['accuracy'])

model.fit(
    train_images,
    train_labels,
    validation_split=0.1,
    epochs=10
)
Downloading data from https://storage.googleapis.com/tensorflow/tf-keras-datasets/mnist.npz
11493376/11490434 [==============================] - 0s 0us/step
11501568/11490434 [==============================] - 0s 0us/step
2021-09-02 11:14:14.164834: E tensorflow/stream_executor/cuda/cuda_driver.cc:271] failed call to cuInit: CUDA_ERROR_NO_DEVICE: no CUDA-capable device is detected
Epoch 1/10
1688/1688 [==============================] - 8s 5ms/step - loss: 0.2842 - accuracy: 0.9215 - val_loss: 0.1078 - val_accuracy: 0.9713
Epoch 2/10
1688/1688 [==============================] - 8s 5ms/step - loss: 0.1110 - accuracy: 0.9684 - val_loss: 0.0773 - val_accuracy: 0.9783
Epoch 3/10
1688/1688 [==============================] - 8s 4ms/step - loss: 0.0821 - accuracy: 0.9760 - val_loss: 0.0676 - val_accuracy: 0.9803
Epoch 4/10
1688/1688 [==============================] - 8s 4ms/step - loss: 0.0684 - accuracy: 0.9799 - val_loss: 0.0600 - val_accuracy: 0.9825
Epoch 5/10
1688/1688 [==============================] - 7s 4ms/step - loss: 0.0590 - accuracy: 0.9828 - val_loss: 0.0601 - val_accuracy: 0.9838
Epoch 6/10
1688/1688 [==============================] - 7s 4ms/step - loss: 0.0522 - accuracy: 0.9845 - val_loss: 0.0599 - val_accuracy: 0.9835
Epoch 7/10
1688/1688 [==============================] - 7s 4ms/step - loss: 0.0472 - accuracy: 0.9863 - val_loss: 0.0544 - val_accuracy: 0.9862
Epoch 8/10
1688/1688 [==============================] - 7s 4ms/step - loss: 0.0422 - accuracy: 0.9868 - val_loss: 0.0579 - val_accuracy: 0.9848
Epoch 9/10
1688/1688 [==============================] - 7s 4ms/step - loss: 0.0384 - accuracy: 0.9884 - val_loss: 0.0569 - val_accuracy: 0.9847
Epoch 10/10
1688/1688 [==============================] - 7s 4ms/step - loss: 0.0347 - accuracy: 0.9892 - val_loss: 0.0559 - val_accuracy: 0.9840
<keras.callbacks.History at 0x7f6a8212c550>

Evaluasi model dasar dan simpan untuk digunakan nanti

_, baseline_model_accuracy = model.evaluate(
    test_images, test_labels, verbose=0)

print('Baseline test accuracy:', baseline_model_accuracy)

_, keras_file = tempfile.mkstemp('.h5')
print('Saving model to: ', keras_file)
tf.keras.models.save_model(model, keras_file, include_optimizer=False)
Baseline test accuracy: 0.9811000227928162
Saving model to:  /tmp/tmprlekfdwb.h5

Pangkas dan sempurnakan model hingga 50% sparity

Terapkan prune_low_magnitude() API untuk mencapai model dipangkas yang akan berkerumun di langkah berikutnya. Mengacu pada panduan yang komprehensif pemangkasan untuk informasi lebih lanjut tentang pemangkasan API.

Tentukan model dan terapkan sparsity API

Perhatikan bahwa model pra-terlatih digunakan.

import tensorflow_model_optimization as tfmot

prune_low_magnitude = tfmot.sparsity.keras.prune_low_magnitude

pruning_params = {
      'pruning_schedule': tfmot.sparsity.keras.ConstantSparsity(0.5, begin_step=0, frequency=100)
  }

callbacks = [
  tfmot.sparsity.keras.UpdatePruningStep()
]

pruned_model = prune_low_magnitude(model, **pruning_params)

# Use smaller learning rate for fine-tuning
opt = tf.keras.optimizers.Adam(learning_rate=1e-5)

pruned_model.compile(
  loss=tf.keras.losses.SparseCategoricalCrossentropy(from_logits=True),
  optimizer=opt,
  metrics=['accuracy'])
/tmpfs/src/tf_docs_env/lib/python3.7/site-packages/keras/engine/base_layer.py:2223: UserWarning: `layer.add_variable` is deprecated and will be removed in a future version. Please use `layer.add_weight` method instead.
  warnings.warn('`layer.add_variable` is deprecated and '

Sempurnakan model, periksa sparity, dan evaluasi akurasi terhadap baseline

Sempurnakan model dengan pemangkasan selama 3 epoch.

# Fine-tune model
pruned_model.fit(
  train_images,
  train_labels,
  epochs=3,
  validation_split=0.1,
  callbacks=callbacks)
2021-09-02 11:15:31.836903: W tensorflow/python/util/util.cc:348] Sets are not currently considered sequences, but this may change in the future, so consider avoiding using them.
Epoch 1/3
1688/1688 [==============================] - 9s 5ms/step - loss: 0.2095 - accuracy: 0.9305 - val_loss: 0.1440 - val_accuracy: 0.9528
Epoch 2/3
1688/1688 [==============================] - 8s 4ms/step - loss: 0.1042 - accuracy: 0.9671 - val_loss: 0.0947 - val_accuracy: 0.9715
Epoch 3/3
1688/1688 [==============================] - 8s 4ms/step - loss: 0.0743 - accuracy: 0.9782 - val_loss: 0.0829 - val_accuracy: 0.9770
<keras.callbacks.History at 0x7f6a81f94250>

Tentukan fungsi pembantu untuk menghitung dan mencetak sparsity dan cluster model.

def print_model_weights_sparsity(model):
    for layer in model.layers:
        if isinstance(layer, tf.keras.layers.Wrapper):
            weights = layer.trainable_weights
        else:
            weights = layer.weights
        for weight in weights:
            if "kernel" not in weight.name or "centroid" in weight.name:
                continue
            weight_size = weight.numpy().size
            zero_num = np.count_nonzero(weight == 0)
            print(
                f"{weight.name}: {zero_num/weight_size:.2%} sparsity ",
                f"({zero_num}/{weight_size})",
            )

def print_model_weight_clusters(model):
    for layer in model.layers:
        if isinstance(layer, tf.keras.layers.Wrapper):
            weights = layer.trainable_weights
        else:
            weights = layer.weights
        for weight in weights:
            # ignore auxiliary quantization weights
            if "quantize_layer" in weight.name:
                continue
            if "kernel" in weight.name:
                unique_count = len(np.unique(weight))
                print(
                    f"{layer.name}/{weight.name}: {unique_count} clusters "
                )

Mari kita lepaskan pembungkus pemangkasan terlebih dahulu, lalu periksa apakah kernel model telah dipangkas dengan benar.

stripped_pruned_model = tfmot.sparsity.keras.strip_pruning(pruned_model)

print_model_weights_sparsity(stripped_pruned_model)
conv2d/kernel:0: 50.00% sparsity  (54/108)
dense/kernel:0: 50.00% sparsity  (10140/20280)

Terapkan pengelompokan yang mempertahankan sparitas dan periksa efeknya pada sparitas model dalam kedua kasus

Selanjutnya, terapkan sparity melestarikan pengelompokan pada model yang dipangkas dan amati jumlah klaster dan periksa apakah sparitas dipertahankan.

import tensorflow_model_optimization as tfmot
from tensorflow_model_optimization.python.core.clustering.keras.experimental import (
    cluster,
)

cluster_weights = tfmot.clustering.keras.cluster_weights
CentroidInitialization = tfmot.clustering.keras.CentroidInitialization

cluster_weights = cluster.cluster_weights

clustering_params = {
  'number_of_clusters': 8,
  'cluster_centroids_init': CentroidInitialization.KMEANS_PLUS_PLUS,
  'preserve_sparsity': True
}

sparsity_clustered_model = cluster_weights(stripped_pruned_model, **clustering_params)

sparsity_clustered_model.compile(optimizer='adam',
              loss=tf.keras.losses.SparseCategoricalCrossentropy(from_logits=True),
              metrics=['accuracy'])

print('Train sparsity preserving clustering model:')
sparsity_clustered_model.fit(train_images, train_labels,epochs=3, validation_split=0.1)
Train sparsity preserving clustering model:
Epoch 1/3
1688/1688 [==============================] - 9s 5ms/step - loss: 0.0495 - accuracy: 0.9847 - val_loss: 0.0611 - val_accuracy: 0.9843
Epoch 2/3
1688/1688 [==============================] - 8s 5ms/step - loss: 0.0472 - accuracy: 0.9855 - val_loss: 0.0705 - val_accuracy: 0.9812
Epoch 3/3
1688/1688 [==============================] - 8s 5ms/step - loss: 0.0463 - accuracy: 0.9846 - val_loss: 0.0796 - val_accuracy: 0.9780
<keras.callbacks.History at 0x7f6a81c10250>

Lepaskan pembungkus pengelompokan terlebih dahulu, lalu periksa apakah model telah dipangkas dan dikelompokkan dengan benar.

stripped_clustered_model = tfmot.clustering.keras.strip_clustering(sparsity_clustered_model)

print("Model sparsity:\n")
print_model_weights_sparsity(stripped_clustered_model)

print("\nModel clusters:\n")
print_model_weight_clusters(stripped_clustered_model)
Model sparsity:

kernel:0: 51.85% sparsity  (56/108)
kernel:0: 60.83% sparsity  (12337/20280)

Model clusters:

conv2d/kernel:0: 8 clusters 
dense/kernel:0: 8 clusters

Terapkan QAT dan PCQAT dan periksa efeknya pada cluster model dan sparity

Selanjutnya, terapkan QAT dan PCQAT pada model sparse clustered dan amati bahwa PCQAT mempertahankan sparsity dan clusters bobot dalam model Anda. Perhatikan bahwa model yang dilucuti diteruskan ke API QAT dan PCQAT.

# QAT
qat_model = tfmot.quantization.keras.quantize_model(stripped_clustered_model)

qat_model.compile(optimizer='adam',
              loss=tf.keras.losses.SparseCategoricalCrossentropy(from_logits=True),
              metrics=['accuracy'])
print('Train qat model:')
qat_model.fit(train_images, train_labels, batch_size=128, epochs=1, validation_split=0.1)

# PCQAT
quant_aware_annotate_model = tfmot.quantization.keras.quantize_annotate_model(
              stripped_clustered_model)
pcqat_model = tfmot.quantization.keras.quantize_apply(
              quant_aware_annotate_model,
              tfmot.experimental.combine.Default8BitClusterPreserveQuantizeScheme(preserve_sparsity=True))

pcqat_model.compile(optimizer='adam',
              loss=tf.keras.losses.SparseCategoricalCrossentropy(from_logits=True),
              metrics=['accuracy'])
print('Train pcqat model:')
pcqat_model.fit(train_images, train_labels, batch_size=128, epochs=1, validation_split=0.1)
Train qat model:
422/422 [==============================] - 4s 8ms/step - loss: 0.0343 - accuracy: 0.9892 - val_loss: 0.0600 - val_accuracy: 0.9858
Train pcqat model:
WARNING:tensorflow:Gradients do not exist for variables ['conv2d/kernel:0', 'dense/kernel:0'] when minimizing the loss.
WARNING:tensorflow:Gradients do not exist for variables ['conv2d/kernel:0', 'dense/kernel:0'] when minimizing the loss.
422/422 [==============================] - 4s 8ms/step - loss: 0.0371 - accuracy: 0.9880 - val_loss: 0.0664 - val_accuracy: 0.9832
<keras.callbacks.History at 0x7f6a81792910>
print("QAT Model clusters:")
print_model_weight_clusters(qat_model)
print("\nQAT Model sparsity:")
print_model_weights_sparsity(qat_model)
print("\nPCQAT Model clusters:")
print_model_weight_clusters(pcqat_model)
print("\nPCQAT Model sparsity:")
print_model_weights_sparsity(pcqat_model)
QAT Model clusters:
quant_conv2d/conv2d/kernel:0: 101 clusters 
quant_dense/dense/kernel:0: 18285 clusters 

QAT Model sparsity:
conv2d/kernel:0: 7.41% sparsity  (8/108)
dense/kernel:0: 7.64% sparsity  (1549/20280)

PCQAT Model clusters:
quant_conv2d/conv2d/kernel:0: 8 clusters 
quant_dense/dense/kernel:0: 8 clusters 

PCQAT Model sparsity:
conv2d/kernel:0: 51.85% sparsity  (56/108)
dense/kernel:0: 60.84% sparsity  (12338/20280)

Lihat manfaat kompresi model PCQAT

Tentukan fungsi pembantu untuk mendapatkan file model zip.

def get_gzipped_model_size(file):
  # It returns the size of the gzipped model in kilobytes.

  _, zipped_file = tempfile.mkstemp('.zip')
  with zipfile.ZipFile(zipped_file, 'w', compression=zipfile.ZIP_DEFLATED) as f:
    f.write(file)

  return os.path.getsize(zipped_file)/1000

Amati bahwa menerapkan sparsity, clustering, dan PCQAT ke model menghasilkan manfaat kompresi yang signifikan.

# QAT model
converter = tf.lite.TFLiteConverter.from_keras_model(qat_model)
converter.optimizations = [tf.lite.Optimize.DEFAULT]
qat_tflite_model = converter.convert()
qat_model_file = 'qat_model.tflite'
# Save the model.
with open(qat_model_file, 'wb') as f:
    f.write(qat_tflite_model)

# PCQAT model
converter = tf.lite.TFLiteConverter.from_keras_model(pcqat_model)
converter.optimizations = [tf.lite.Optimize.DEFAULT]
pcqat_tflite_model = converter.convert()
pcqat_model_file = 'pcqat_model.tflite'
# Save the model.
with open(pcqat_model_file, 'wb') as f:
    f.write(pcqat_tflite_model)

print("QAT model size: ", get_gzipped_model_size(qat_model_file), ' KB')
print("PCQAT model size: ", get_gzipped_model_size(pcqat_model_file), ' KB')
WARNING:absl:Found untraced functions such as reshape_layer_call_and_return_conditional_losses, reshape_layer_call_fn, conv2d_layer_call_and_return_conditional_losses, conv2d_layer_call_fn, flatten_layer_call_and_return_conditional_losses while saving (showing 5 of 20). These functions will not be directly callable after loading.
INFO:tensorflow:Assets written to: /tmp/tmp6_obh00g/assets
INFO:tensorflow:Assets written to: /tmp/tmp6_obh00g/assets
2021-09-02 11:16:32.221664: W tensorflow/compiler/mlir/lite/python/tf_tfl_flatbuffer_helpers.cc:351] Ignored output_format.
2021-09-02 11:16:32.221712: W tensorflow/compiler/mlir/lite/python/tf_tfl_flatbuffer_helpers.cc:354] Ignored drop_control_dependency.
WARNING:absl:Found untraced functions such as reshape_layer_call_and_return_conditional_losses, reshape_layer_call_fn, conv2d_layer_call_and_return_conditional_losses, conv2d_layer_call_fn, flatten_layer_call_and_return_conditional_losses while saving (showing 5 of 20). These functions will not be directly callable after loading.
INFO:tensorflow:Assets written to: /tmp/tmpuqqwyk0s/assets
INFO:tensorflow:Assets written to: /tmp/tmpuqqwyk0s/assets
QAT model size:  13.723  KB
PCQAT model size:  7.352  KB
2021-09-02 11:16:33.766310: W tensorflow/compiler/mlir/lite/python/tf_tfl_flatbuffer_helpers.cc:351] Ignored output_format.
2021-09-02 11:16:33.766350: W tensorflow/compiler/mlir/lite/python/tf_tfl_flatbuffer_helpers.cc:354] Ignored drop_control_dependency.

Lihat kegigihan akurasi dari TF ke TFLite

Tentukan fungsi pembantu untuk mengevaluasi model TFLite pada dataset uji.

def eval_model(interpreter):
  input_index = interpreter.get_input_details()[0]["index"]
  output_index = interpreter.get_output_details()[0]["index"]

  # Run predictions on every image in the "test" dataset.
  prediction_digits = []
  for i, test_image in enumerate(test_images):
    if i % 1000 == 0:
      print(f"Evaluated on {i} results so far.")
    # Pre-processing: add batch dimension and convert to float32 to match with
    # the model's input data format.
    test_image = np.expand_dims(test_image, axis=0).astype(np.float32)
    interpreter.set_tensor(input_index, test_image)

    # Run inference.
    interpreter.invoke()

    # Post-processing: remove batch dimension and find the digit with highest
    # probability.
    output = interpreter.tensor(output_index)
    digit = np.argmax(output()[0])
    prediction_digits.append(digit)

  print('\n')
  # Compare prediction results with ground truth labels to calculate accuracy.
  prediction_digits = np.array(prediction_digits)
  accuracy = (prediction_digits == test_labels).mean()
  return accuracy

Evaluasi model, yang telah dipangkas, dikelompokkan, dan dikuantisasi, lalu lihat bahwa akurasi dari TensorFlow tetap ada di backend TFLite.

interpreter = tf.lite.Interpreter(pcqat_model_file)
interpreter.allocate_tensors()

pcqat_test_accuracy = eval_model(interpreter)

print('Pruned, clustered and quantized TFLite test_accuracy:', pcqat_test_accuracy)
print('Baseline TF test accuracy:', baseline_model_accuracy)
Evaluated on 0 results so far.
Evaluated on 1000 results so far.
Evaluated on 2000 results so far.
Evaluated on 3000 results so far.
Evaluated on 4000 results so far.
Evaluated on 5000 results so far.
Evaluated on 6000 results so far.
Evaluated on 7000 results so far.
Evaluated on 8000 results so far.
Evaluated on 9000 results so far.


Pruned, clustered and quantized TFLite test_accuracy: 0.9803
Baseline TF test accuracy: 0.9811000227928162

Kesimpulan

Dalam tutorial ini, Anda belajar bagaimana untuk membuat model, memangkas itu menggunakan prune_low_magnitude() API, dan menerapkan sparsity melestarikan pengelompokan menggunakan cluster_weights() API untuk melestarikan sparsity sementara mengelompokkan bobot.

Selanjutnya, pelatihan sadar kuantisasi dan pelestarian klaster (PCQAT) diterapkan untuk mempertahankan sparitas model dan klaster saat menggunakan QAT. Model PCQAT terakhir dibandingkan dengan model QAT untuk menunjukkan bahwa sparity dan cluster dipertahankan pada model pertama dan hilang pada model terakhir.

Selanjutnya, model dikonversi ke TFLite untuk menunjukkan manfaat kompresi dari teknik optimasi model chaining sparsity, clustering, dan PCQAT dan model TFLite dievaluasi untuk memastikan bahwa akurasi tetap ada di backend TFLite.

Akhirnya, akurasi model TFLite PCQAT dibandingkan dengan akurasi model dasar pra-optimasi untuk menunjukkan bahwa teknik optimasi kolaboratif berhasil mencapai manfaat kompresi sambil mempertahankan akurasi yang sama dibandingkan dengan model aslinya.