tensor2tensor
T2T: Life of an Example
This doc explains how a training example flows through T2T, from data generation to training, evaluation, and decoding.
Some key files and their functions:
t2t_trainer.pyandtrainer_lib.py: Main entrypoint for training and evaluation. Constructs and runs all the main components of the system (theProblem, theHParams, theEstimator, theExperiment, theinput_fns andmodel_fn).common_hparams.py:basic_params1serves as the base for all model hyperparameters. Registered model hparams functions always start with this default set of hyperparameters.problem.py: Every dataset in T2T subclassesProblem.Problem.input_fnis the Estimator input function.t2t_model.py: Every model in T2T subclassesT2TModel.T2TModel.estimator_model_fnis the Estimator model function.
Data Generation
The t2t-datagen binary is the entrypoint for data generation. It simply looks
up the Problem specified by --problem and calls
Problem.generate_data(data_dir, tmp_dir).
All Problems are expected to generate 2 sharded TFRecords files - 1 for
training and 1 for evaluation - with tensorflow.Example protocol buffers. The
expected names of the files are given by Problem.{training, dev}_filepaths.
Typically, the features in the Example will be "inputs" and "targets";
however, some tasks have a different on-disk representation that is converted to
"inputs" and "targets" online in the input pipeline (e.g. image features are
typically stored with features "image/encoded" and "image/format" and the
decoding happens in the input pipeline).
For tasks that require a vocabulary, this is also the point at which the vocabulary is generated and all examples are encoded.
There are several utility functions in
generator_utils
that are commonly used by Problems to generate data. Several are highlighted
below:
generate_dataset_and_shuffle: given 2 generators, 1 for training and 1 for eval, yielding dictionaries of<feature name, list< int or float or string >>, will produce sharded and shuffledTFRecordsfiles withtensorflow.Exampleprotos.maybe_download: downloads a file at a URL to the given directory and filename (seemaybe_download_from_driveif the URL points to Google Drive).get_or_generate_vocab_inner: given a target vocabulary size and a generator that yields lines or tokens from the dataset, will build aSubwordTextEncoderalong with a backing vocabulary file that can be used to map input strings to lists of ids.SubwordTextEncoderuses word pieces and its encoding is fully invertible.
Data Input Pipeline
Once the data is produced on disk, training, evaluation, and inference (if
decoding from the dataset) consume it by way of the T2T input pipeline, defined
by Problem.input_fn.
The entire input pipeline is implemented with the new tf.data.Dataset API.
The input function has 2 main parts: first, reading and processing individual
examples, which is done is Problem.dataset, and second, batching, which is
done in Problem.input_fn after the call to Problem.dataset.
Problem subclasses may override the entire input_fn or portions of it (e.g.
example_reading_spec to indicate the names, types, and shapes of features on
disk). Typically they only override portions.
Batching
Problems that have fixed size features (e.g. image problems) can use
hp.batch_size to set the batch size.
Variable length Problems are bucketed by sequence length and then batched out of those buckets. This significantly improves performance over a naive batching scheme for variable length sequences because each example in a batch must be padded to match the example with the maximum length in the batch.
Controlling hparams:
hp.batch_size: the approximate total number of tokens in the batch (i.e. long sequences will have smaller actual batch size and short sequences will have a larger actual batch size in order to generally have an equal number of tokens in the batch).hp.max_length: For variable length features, sequences with length longer than this will be dropped during training (and also during eval ifhp.eval_drop_long_sequencesisTrue). If not set, the maximum length of examples is set tohp.batch_size.hp.batch_size_multiplier: multiplier for the maximum lengthhp.min_length_bucket: example length for the smallest bucket (i.e. the smallest bucket will bucket examples up to this length).hp.length_bucket_step: controls how spaced out the length buckets are.
Building the Model
At this point, the input features typically have "inputs" and "targets",
each of which is a batched 4-D Tensor (e.g. of shape [batch_size,
sequence_length, 1, 1] for text input or [batch_size, height, width, 3] for
image input).
The Estimator model function is created by T2TModel.estimator_model_fn, which
may be overridden in its entirety by subclasses if desired. Typically,
subclasses only override T2TModel.body.
The model function constructs a T2TModel, calls it, and then calls
T2TModel.{estimator_spec_train, estimator_spec_eval, estimator_spec_predict}
depending on the mode.
A call of a T2TModel internally calls bottom, body, top, and loss, all
of which can be overridden by subclasses (typically only body is).
The default implementations of bottom, top, and loss depend on the
Modality specified for the input and target features (e.g.
SymbolModality.bottom embeds integer tokens and SymbolModality.loss is
softmax_cross_entropy).
Estimator and Experiment
The actual training loop and related services (checkpointing, summaries,
continuous evaluation, etc.) are all handled by Estimator and Experiment
objects. t2t_trainer.py is the main entrypoint and uses trainer_lib.py
to construct the various components.
Decoding
System Overview for Train/Eval
See t2t_trainer.py and trainer_lib.py.
- Create HParams
- Create
RunConfig, includingParallelismobject (i.e.data_parallelism) - Create
Experiment, including hooks - Create
EstimatorT2TModel.estimator_model_fnmodel(features)model.model_fnmodel.bottommodel.bodymodel.topmodel.loss
- [TRAIN]
model.estimator_spec_traintrain_op = model.optimize
- [EVAL]
model.estimator_spec_eval- Create metrics
- Create input functions
Problem.input_fnProblem.dataset- Batching
- Create hooks
- Run Experiment –schedule (e.g.
exp.continuous_train_and_eval())estimator.traintrain_op = model_fn(input_fn(mode=TRAIN))- Run train op
estimator.evaluatemetrics = model_fn(input_fn(mode=EVAL))- Accumulate metrics
