Nano: TF multi process how-to for customized training loop (#8006)
* add how-to guide * add overview * fix doc * fix pep8 * update the notebook
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			@ -137,6 +137,7 @@ subtrees:
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                              - file: doc/Nano/Howto/Training/TensorFlow/accelerate_tensorflow_training_multi_instance
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                              - file: doc/Nano/Howto/Training/TensorFlow/tensorflow_training_embedding_sparseadam
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                              - file: doc/Nano/Howto/Training/TensorFlow/tensorflow_training_bf16
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                              - file: doc/Nano/Howto/Training/TensorFlow/tensorflow_custom_training_multi_instance
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                        - file: doc/Nano/Howto/Training/General/index
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                          title: "General"
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                          subtrees:
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			@ -4,6 +4,7 @@ Training Optimization: For TensorFlow Users
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* `How to accelerate a TensorFlow Keras application on training workloads through multiple instances <accelerate_tensorflow_training_multi_instance.html>`_
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* |tensorflow_training_embedding_sparseadam_link|_
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* `How to conduct BFloat16 Mixed Precision training in your TensorFlow application <tensorflow_training_bf16.html>`_
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* `How to accelerate TensorFlow Keras customized training loop through multiple instances <tensorflow_custom_training_multi_instance.html>`_
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.. |tensorflow_training_embedding_sparseadam_link| replace:: How to optimize your model with a sparse ``Embedding`` layer and ``SparseAdam`` optimizer
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.. _tensorflow_training_embedding_sparseadam_link: tensorflow_training_embedding_sparseadam.html
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{
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    "path": "../../../../../../../../python/nano/tutorial/notebook/training/tensorflow/tensorflow_custom_training_multi_instance.ipynb"
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}
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			@ -42,6 +42,7 @@ TensorFlow
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* `How to accelerate a TensorFlow Keras application on training workloads through multiple instances <Training/TensorFlow/accelerate_tensorflow_training_multi_instance.html>`_
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* |tensorflow_training_embedding_sparseadam_link|_
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* `How to conduct BFloat16 Mixed Precision training in your TensorFlow Keras application <Training/TensorFlow/tensorflow_training_bf16.html>`_
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* `How to accelerate TensorFlow Keras customized training loop through multiple instances <Training/TensorFlow/tensorflow_custom_training_multi_instance.html>`_
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.. |tensorflow_training_embedding_sparseadam_link| replace:: How to optimize your model with a sparse ``Embedding`` layer and ``SparseAdam`` optimizer
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.. _tensorflow_training_embedding_sparseadam_link: Training/TensorFlow/tensorflow_training_embedding_sparseadam.html
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			@ -1,17 +1,25 @@
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# TensorFlow Training
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BigDL-Nano can be used to accelerate TensorFlow Keras applications on training workloads. The optimizations in BigDL-Nano are delivered through BigDL-Nano's `Model` and `Sequential` classes, which have identical APIs with `tf.keras.Model` and `tf.keras.Sequential`. For most cases, you can just replace your `tf.keras.Model` with `bigdl.nano.tf.keras.Model` and `tf.keras.Sequential` with `bigdl.nano.tf.keras.Sequential` to benefit from BigDL-Nano.
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BigDL-Nano can be used to accelerate TensorFlow Keras applications on training workloads. The optimizations in BigDL-Nano are delivered through
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We will briefly describe here the major features in BigDL-Nano for TensorFlow training. You can find complete examples here [links to be added]().
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- BigDL-Nano's `Model` and `Sequential` classes, which have identical APIs with `tf.keras.Model` and `tf.keras.Sequential` with an enhanced `fit` method.
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- BigDL-Nano's decorator `nano` (potentially with the help of `nano_multiprocessing` and `nano_multiprocessing_loss`) to handle keras model with customized training loop.
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We will briefly describe here the major features in BigDL-Nano for TensorFlow training.
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### Best Known Configurations
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When you install BigDL-Nano by `pip install bigdl-nano[tensorflow]`, `intel-tensorflow` will be installed in your environment, which has intel's oneDNN optimizations enabled by default; and when you run `source bigdl-nano-init`, it will export a few environment variables, such as `OMP_NUM_THREADS` and `KMP_AFFINITY`, according to your current hardware. Empirically, these environment variables work best for most TensorFlow applications. After setting these environment variables, you can just run your applications as usual (`python app.py`) and no additional changes are required.
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### Multi-Instance Training
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When training on a server with dozens of CPU cores, it is often beneficial to use multiple training instances in a data-parallel fashion to make full use of the CPU cores. However
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When training on a server with dozens of CPU cores, it is often beneficial to use multiple training instances in a data-parallel fashion to make full use of the CPU cores. However, naively using TensorFlow's `MultiWorkerMirroredStrategy` can cause conflict in CPU cores and often cannot provide performance benefits.
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- Naively using TensorFlow's `MultiWorkerMirroredStrategy` can cause conflict in CPU cores and often cannot provide performance benefits.
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- Customized training loop could be hard to use together with `MultiWorkerMirroredStrategy`
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BigDL-Nano makes it very easy to conduct multi-instance training correctly. You can just set the `num_processes` parameter in the `fit` method in your `Model` or `Sequential` object and BigDL-Nano will launch the specific number of processes to perform data-parallel training. Each process will be automatically pinned to a different subset of CPU cores to avoid conflict and maximize training throughput.
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BigDL-Nano makes it very easy to conduct multi-instance training correctly for default/customized training loop models.
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#### Keras Model with default training loop
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 You can just set the `num_processes` parameter in the `fit` method in your `Model` or `Sequential` object and BigDL-Nano will launch the specific number of processes to perform data-parallel training. Each process will be automatically pinned to a different subset of CPU cores to avoid conflict and maximize training throughput.
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```python
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import tensorflow as tf
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			@ -38,6 +46,45 @@ model.compile(optimizer='adam',
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model.fit(train_ds, epochs=3, validation_data=val_ds, num_processes=2)
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```
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#### Keras Model with customized training loop
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To make them run in a multi-process way, you may only add 2 lines of code.
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- add `nano_multiprocessing` to the `train_step` function with gradient calculation and applying process.
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- add `@nano(num_processes=...)` to the training loop function with iteration over full dataset.
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```python
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from bigdl.nano.tf.keras import nano_multiprocessing, nano
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import tensorflow as tf
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tf.random.set_seed(0)
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global_batch_size = 32
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model = tf.keras.Sequential([tf.keras.layers.Dense(1, input_shape=(1,))])
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optimizer = tf.keras.optimizers.SGD()
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loss_object = tf.keras.losses.BinaryCrossentropy(from_logits=True)
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dataset = tf.data.Dataset.from_tensors(([1.], [1.])).repeat(128).batch(
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    global_batch_size)
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@nano_multiprocessing  # <-- Just remove this line to run on 1 process
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@tf.function
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def train_step(inputs, model, loss_object, optimizer):
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    features, labels = inputs
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    with tf.GradientTape() as tape:
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        predictions = model(features, training=True)
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        loss = loss_object(labels, predictions)
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    gradients = tape.gradient(loss, model.trainable_variables)
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    optimizer.apply_gradients(zip(gradients, model.trainable_variables))
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    return loss
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@nano(num_processes=4)  # <-- Just remove this line to run on 1 process
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def train_whole_data(model, dataset, loss_object, optimizer, train_step):
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    for inputs in dataset:
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        print(train_step(inputs, model, loss_object, optimizer))
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```
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Note that, different from the conventions in [BigDL-Nano PyTorch multi-instance training](./pytorch_train.html#multi-instance-training), the effective batch size will not change in TensorFlow multi-instance training, which means it is still the batch size you specify in your dataset. This is because TensorFlow's `MultiWorkerMirroredStrategy` will try to split the batch into multiple sub-batches for different workers. We chose this behavior to match the semantics of TensorFlow distributed training.
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When you do want to increase your effective `batch_size`, you can do so by directly changing it in your dataset definition and you may also want to gradually increase the learning rate linearly to the `batch_size`, as described in this [paper](https://arxiv.org/abs/1706.02677) published by Facebook.
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