State of the art faster Natural Language Processing in Tensorflow 2.0 .

Overview



Tests Coverage License

tf-transformers: faster and easier state-of-the-art NLP in TensorFlow 2.0

***************************************************************************************************************

We have a new version releasing soon, which have much more updates and major changes, please stay tuned ----


tf-transformers is designed to harness the full power of Tensorflow 2, to make it much faster and simpler comparing to existing Tensorflow based NLP architectures. On an average, there is 80 % improvement over current exsting Tensorflow based libraries, on text generation and other tasks. You can find more details in the Benchmarks section.

All / Most NLP downstream tasks can be integrated into Tranformer based models with much ease. All the models can be trained using model.fit, which supports GPU, multi-GPU, TPU.

Unique Features

  • Faster AutoReggressive Decoding using Tensorflow2. Faster than PyTorch in most experiments (V100 GPU). 80% faster compared to existing TF based libararies (relative difference) Refer benchmark code.
  • Complete TFlite support for BERT, RoBERTA, T5, Albert, mt5 for all down stream tasks except text-generation
  • Faster sentence-piece alignment (no more LCS overhead)
  • Variable batch text generation for Encoder only models like GPT2
  • No more hassle of writing long codes for TFRecords. minimal and simple.
  • Off the shelf support for auto-batching tf.data.dataset or tf.ragged tensors
  • Pass dictionary outputs directly to loss functions inside tf.keras.Model.fit using model.compile2 . Refer examples or blog
  • Multiple mask modes like causal, user-defined, prefix by changing one argument . Refer examples or blog

Performance Benchmarks

Evaluating performance benhcmarks is trickier. I evaluated tf-transformers, primarily on text-generation tasks with GPT2 small and t5 small, with amazing HuggingFace, as it is the ready to go library for NLP right now. Text generation tasks require efficient caching to make use of past Key and Value pairs.

On an average, tf-transformers is 80 % faster than HuggingFace Tensorflow implementation and in most cases it is comparable or faster than PyTorch.

1. GPT2 benchmark

The evaluation is based on average of 5 runs, with different batch_size, beams, sequence_length etc. So, there is qute a larg combination, when it comes to BEAM and **top-k*8 decoding. The figures are randomly taken 10 samples. But, you can see the full code and figures in the repo.

  • GPT2 greedy



  • GPT2 beam



  • GPT2 top-k top-p



  • GPT2 greedy histogram



Codes to reproduce GPT2 benchmark experiments

Codes to reproduce T5 benchmark experiments

QuickStart

I am providing some basic tutorials here, which covers basics of tf-transformers and how can we use it for other downstream tasks. All/most tutorials has following structure:

  • Introduction About the Problem
  • Prepare Training Data
  • Load Model and asociated downstream Tasks
  • Define Optimizer, Loss
  • Train using Keras and CustomTrainer
  • Evaluate Using Dev data
  • In Producton - Secton defines how can we use tf.saved_model in production + pipelines

Production Ready Tutorials

Start by converting HuggingFace models (base models only) to tf-transformers models.

Here are a few examples : Jupyter Notebooks:

Why should I use tf-transformers?

  1. Use state-of-the-art models in Production, with less than 10 lines of code.

    • High performance models, better than all official Tensorflow based models
    • Very simple classes for all downstream tasks
    • Complete TFlite support for all tasks except text-generation
  2. Make industry based experience to avaliable to students and community with clear tutorials

  3. Train any model on GPU, multi-GPU, TPU with amazing tf.keras.Model.fit

    • Train state-of-the-art models in few lines of code.
    • All models are completely serializable.
  4. Customize any models or pipelines with minimal or no code change.

Do we really need to distill? Jont Loss is all we need.

1. GLUE

We have conducted few experiments to squeeze the power of Albert base models ( concept is applicable to any models and in tf-transformers, it is out of the box.)

The idea is minimize the loss for specified task in each layer of your model and check predictions at each layer. as per our experiments, we are able to get the best smaller model (thanks to Albert), and from layer 4 onwards we beat all the smaller model in GLUE benchmark. By layer 6, we got a GLUE score of 81.0, which is 4 points ahead of Distillbert with GLUE score of 77 and MobileBert GLUE score of 78.

The Albert model has 14 million parameters, and by using layer 6, we were able to speed up the compuation by 50% .

The concept is applicable to all the models.

Codes to reproduce GLUE Joint Loss experiments


Benchmark Results

  • GLUE score ( not including WNLI )

2. SQUAD v1.1

We have trained Squad v1.1 with joint loss. At layer 6 we were able to achieve same performance as of Distillbert - (EM - 78.1 and F1 - 86.2), but slightly worser than MobileBert.

Benchmark Results



Codes to reproduce Squad v1.1 Joint Loss experiments

Note: We have a new model in pipeline. :-)

Installation

With pip

This repository is tested on Python 3.7+, and Tensorflow 2.3.1

Recommended to use a virtual environment.

Assuming Tensorflow 2.0 is installed

pip install tf-transformers

From Github

Assuming poetry is installed. If not pip install poetry .

git clone https://github.com/legacyai/tf-transformers.git

cd tf-transformers

poetry install

Pipeline

Pipeline in tf-transformers is different from HuggingFace. Here, pipeline for specific tasks expects a model and tokenizer_fn. Because in an ideal scenario, no one will be able to understand whats the kind of pre-processing we want to do to our inputs. Please refer above tutorial notebooks for examples.

Token Classificaton Pipeline (NER)

from tf_transformers.pipeline import Token_Classification_Pipeline

def tokenizer_fn(feature):
    """
    feature: tokenized text (tokenizer.tokenize)
    """
    result = {}
    result["input_ids"] = tokenizer.convert_tokens_to_ids([tokenizer.cls_token] +  feature['input_ids'] + [tokenizer.bos_token])
    result["input_mask"] = [1] * len(result["input_ids"])
    result["input_type_ids"] = [0] * len(result["input_ids"])
    return result

# load Keras/ Serialized Model
model_ner = # Load Model
slot_map_reverse = # dictionary index - entity mapping
pipeline = Token_Classification_Pipeline( model = model_ner,
                tokenizer = tokenizer,
                tokenizer_fn = tokenizer_fn,
                SPECIAL_PIECE = SPIECE_UNDERLINE,
                label_map = slot_map_reverse,
                max_seq_length = 128,
                batch_size=32)

sentences = ['I would love to listen to Carnatic music by Yesudas',
            'Play Carnatic Fusion by Various Artists',
            'Please book 2 tickets from Bangalore to Kerala']
result = pipeline(sentences)

Span Selection Pipeline (QA)

from tf_transformers.pipeline import Span_Extraction_Pipeline

def tokenizer_fn(features):
    """
    features: dict of tokenized text
    Convert them into ids
    """

    result = {}
    input_ids = tokenizer.convert_tokens_to_ids(features['input_ids'])
    input_type_ids = tf.zeros_like(input_ids).numpy().tolist()
    input_mask = tf.ones_like(input_ids).numpy().tolist()
    result['input_ids'] = input_ids
    result['input_type_ids'] = input_type_ids
    result['input_mask'] = input_mask
    return result

model = # Load keras/ saved_model
# Span Extraction Pipeline
pipeline = Span_Extraction_Pipeline(model = model,
                tokenizer = tokenizer,
                tokenizer_fn = tokenizer_fn,
                SPECIAL_PIECE = ROBERTA_SPECIAL_PEICE,
                n_best_size = 20,
                n_best = 5,
                max_answer_length = 30,
                max_seq_length = 384,
                max_query_length=64,
                doc_stride=20)


questions = ['When was Kerala formed?']
contexts = ['''Kerala (English: /ˈkɛrələ/; Malayalam: [ke:ɾɐɭɐm] About this soundlisten (help·info)) is a state on the southwestern Malabar Coast of India. It was formed on 1 November 1956, following the passage of the States Reorganisation Act, by combining Malayalam-speaking regions of the erstwhile states of Travancore-Cochin and Madras. Spread over 38,863 km2 (15,005 sq mi), Kerala is the twenty-first largest Indian state by area. It is bordered by Karnataka to the north and northeast, Tamil Nadu to the east and south, and the Lakshadweep Sea[14] to the west. With 33,387,677 inhabitants as per the 2011 Census, Kerala is the thirteenth-largest Indian state by population. It is divided into 14 districts with the capital being Thiruvananthapuram. Malayalam is the most widely spoken language and is also the official language of the state.[15]''']
result = pipeline(questions=questions, contexts=contexts)

Classification Model Pipeline

from tf_transformers.pipeline import Classification_Pipeline
from tf_transformers.data import pad_dataset_normal

tokenizer = BertTokenizer.from_pretrained("bert-base-uncased")
max_seq_length = 128

@pad_dataset_normal
def tokenizer_fn(texts):
    """
    feature: tokenized text (tokenizer.tokenize)
    pad_dataset_noral will automatically pad it.
    """
    input_ids = []
    input_type_ids = []
    input_mask = []
    for text in texts:
        input_ids_ex = [tokenizer.cls_token] + tokenizer.tokenize(text)[: max_seq_length-2] + [tokenizer.sep_token] # -2 to add CLS and SEP
        input_ids_ex = tokenizer.convert_tokens_to_ids(input_ids_ex)
        input_mask_ex = [1] * len(input_ids_ex)
        input_type_ids_ex = [0] * len(input_ids_ex)

        input_ids.append(input_ids_ex)
        input_type_ids.append(input_type_ids_ex)
        input_mask.append(input_mask_ex)

    result = {}
    result['input_ids'] = input_ids
    result['input_type_ids'] = input_type_ids
    result['input_mask'] = input_mask
    return result

model = # Load keras/ saved_model
label_map_reverse = {0: 'unacceptable', 1: 'acceptable'}
pipeline = Classification_Pipeline( model = model,
                tokenizer_fn = tokenizer_fn,
                label_map = label_map_reverse,
                batch_size=32)

sentences = ['In which way is Sandy very anxious to see if the students will be able to solve the homework problem?',
            'The book was written by John.',
            'Play Carnatic Fusion by Various Artists',
            'She voted herself.']
result = pipeline(sentences)

Supported Models architectures

tf-transformers currently provides the following architectures .

  1. ALBERT (from Google Research and the Toyota Technological Institute at Chicago) released with the paper ALBERT: A Lite BERT for Self-supervised Learning of Language Representations, by Zhenzhong Lan, Mingda Chen, Sebastian Goodman, Kevin Gimpel, Piyush Sharma, Radu Soricut.
  2. BERT (from Google) released with the paper BERT: Pre-training of Deep Bidirectional Transformers for Language Understanding by Jacob Devlin, Ming-Wei Chang, Kenton Lee and Kristina Toutanova.
  3. BERT For Sequence Generation (from Google) released with the paper Leveraging Pre-trained Checkpoints for Sequence Generation Tasks by Sascha Rothe, Shashi Narayan, Aliaksei Severyn.
  4. ELECTRA (from Google Research/Stanford University) released with the paper ELECTRA: Pre-training text encoders as discriminators rather than generators by Kevin Clark, Minh-Thang Luong, Quoc V. Le, Christopher D. Manning.
  5. GPT-2 (from OpenAI) released with the paper Language Models are Unsupervised Multitask Learners by Alec Radford*, Jeffrey Wu*, Rewon Child, David Luan, Dario Amodei** and Ilya Sutskever**.
  6. MT5 (from Google AI) released with the paper mT5: A massively multilingual pre-trained text-to-text transformer by Linting Xue, Noah Constant, Adam Roberts, Mihir Kale, Rami Al-Rfou, Aditya Siddhant, Aditya Barua, Colin Raffel.
  7. RoBERTa (from Facebook), released together with the paper a Robustly Optimized BERT Pretraining Approach by Yinhan Liu, Myle Ott, Naman Goyal, Jingfei Du, Mandar Joshi, Danqi Chen, Omer Levy, Mike Lewis, Luke Zettlemoyer, Veselin Stoyanov.
  8. T5 (from Google AI) released with the paper Exploring the Limits of Transfer Learning with a Unified Text-to-Text Transformer by Colin Raffel and Noam Shazeer and Adam Roberts and Katherine Lee and Sharan Narang and Michael Matena and Yanqi Zhou and Wei Li and Peter J. Liu.

Note

tf-transformers is a personal project. This has nothing to do with any organization. So, I might not be able to host equivalent checkpoints of all base models. As a result, there is a conversion notebooks, to convert above mentioned architectures from HuggingFace to tf-transformers.

Credits

I want to give credits to Tensorflow NLP official repository. I used November 2019 version of master branch ( where tf.keras.Network) was used for models. I have modified that by large extend now.

Apart from that, I have used many common scripts from many open repos. I might not be able to recall everything as it is. But still credit goes to them too.

Citation

:-)

Comments
  • Where is the benchmark about 90 times faster than HF transformers?

    Where is the benchmark about 90 times faster than HF transformers?

    You said this library is 90 times faster than HF transformers, but there is no benchmark about it. https://github.com/legacyai/tf-transformers/tree/main/benchmarks

    question 
    opened by hyunwoongko 11
  • Colab

    Colab

    This is great work!!! I have problem with TF2+HF with too many errors, reported to TF2, I aim to switch to tf-transformers. Though library did not work in colab, I guess there are some missing files? Thanks.

    opened by Rababalkhalifa 5
  • HF models are not using key-value caching?

    HF models are not using key-value caching?

    I was reading the code for the HF GPT2 benchmark, and it seems like key-value caching is not being used? This is pretty important for any kind of autoregressive generation and would greatly speed up the decoding time. HF models have had support for key-value caching for a while, see config arguments use_cache and past_key_values here: https://huggingface.co/docs/transformers/model_doc/gpt2#transformers.GPT2LMHeadModel.

    I think it would be important for this project to re-benchmark the HF models with key-value caching enabled, as that is standard practice and without it the HF numbers are being handicapped.

    question 
    opened by abhi-mosaic 2
  • Bump urllib3 from 1.26.3 to 1.26.5

    Bump urllib3 from 1.26.3 to 1.26.5

    Bumps urllib3 from 1.26.3 to 1.26.5.

    Release notes

    Sourced from urllib3's releases.

    1.26.5

    :warning: IMPORTANT: urllib3 v2.0 will drop support for Python 2: Read more in the v2.0 Roadmap

    • Fixed deprecation warnings emitted in Python 3.10.
    • Updated vendored six library to 1.16.0.
    • Improved performance of URL parser when splitting the authority component.

    If you or your organization rely on urllib3 consider supporting us via GitHub Sponsors

    1.26.4

    :warning: IMPORTANT: urllib3 v2.0 will drop support for Python 2: Read more in the v2.0 Roadmap

    • Changed behavior of the default SSLContext when connecting to HTTPS proxy during HTTPS requests. The default SSLContext now sets check_hostname=True.

    If you or your organization rely on urllib3 consider supporting us via GitHub Sponsors

    Changelog

    Sourced from urllib3's changelog.

    1.26.5 (2021-05-26)

    • Fixed deprecation warnings emitted in Python 3.10.
    • Updated vendored six library to 1.16.0.
    • Improved performance of URL parser when splitting the authority component.

    1.26.4 (2021-03-15)

    • Changed behavior of the default SSLContext when connecting to HTTPS proxy during HTTPS requests. The default SSLContext now sets check_hostname=True.
    Commits
    • d161647 Release 1.26.5
    • 2d4a3fe Improve performance of sub-authority splitting in URL
    • 2698537 Update vendored six to 1.16.0
    • 07bed79 Fix deprecation warnings for Python 3.10 ssl module
    • d725a9b Add Python 3.10 to GitHub Actions
    • 339ad34 Use pytest==6.2.4 on Python 3.10+
    • f271c9c Apply latest Black formatting
    • 1884878 [1.26] Properly proxy EOF on the SSLTransport test suite
    • a891304 Release 1.26.4
    • 8d65ea1 Merge pull request from GHSA-5phf-pp7p-vc2r
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    dependencies 
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  • enable flexible tf version for tf.keras.mix_precision global_policy feature

    enable flexible tf version for tf.keras.mix_precision global_policy feature

    according to this post https://stackoverflow.com/questions/67037067/attributeerror-module-tensorflow-keras-mixed-precision-has-no-attribute-set

    global_policy is no longer experimental but a feature after tensorflow 2.4

    This PR would provide users with flexibility of TensorFlow versions, otherwise, the following error would occur:

    AttributeError                            Traceback (most recent call last)
    /tmp/ipykernel_1331/2018827728.py in <module>
          4 
          5 # Initializing a model from the original configuration
    ----> 6 model = RobertaModel.from_config(configuration)
    
    /opt/conda/lib/python3.8/site-packages/tf_transformers/models/roberta/roberta_model.py in from_config(cls, config, return_layer, use_mlm_layer, **kwargs)
        155         # Just create a model and return it with random_weights
        156         # (Distribute strategy fails)
    --> 157         model_layer = Encoder(config_dict, **kwargs_copy)
        158         if use_mlm_layer:
        159             model_layer = MaskedLMModel(model_layer, config_dict["embedding_size"], config_dict["layer_norm_epsilon"])
    
    /opt/conda/lib/python3.8/site-packages/tf_transformers/models/roberta/roberta.py in __init__(self, config, mask_mode, name, use_dropout, is_training, use_auto_regressive, use_decoder, batch_size, sequence_length, return_all_layer_outputs, **kwargs)
        147         self.call_fn = self.get_call_method(self._config_dict)
        148         # Initialize model
    --> 149         self.model_inputs, self.model_outputs = self.get_model(initialize_only=True)
        150 
        151     def get_model(self: LegacyLayer, initialize_only: bool = False):
    
    /opt/conda/lib/python3.8/site-packages/tf_transformers/models/roberta/roberta.py in get_model(self, initialize_only)
        242                 del inputs["past_length"]
        243 
    --> 244         layer_outputs = self(inputs)
        245         if initialize_only:
        246             return inputs, layer_outputs
    
    /opt/conda/lib/python3.8/site-packages/keras/utils/traceback_utils.py in error_handler(*args, **kwargs)
         65     except Exception as e:  # pylint: disable=broad-except
         66       filtered_tb = _process_traceback_frames(e.__traceback__)
    ---> 67       raise e.with_traceback(filtered_tb) from None
         68     finally:
         69       del filtered_tb
    
    /opt/conda/lib/python3.8/site-packages/tf_transformers/models/roberta/roberta.py in tf__call(self, inputs)
          8                 do_return = False
          9                 retval_ = ag__.UndefinedReturnValue()
    ---> 10                 outputs = ag__.converted_call(ag__.ld(self).call_fn, (ag__.ld(inputs),), None, fscope)
         11                 try:
         12                     do_return = True
    
    /opt/conda/lib/python3.8/site-packages/tf_transformers/models/roberta/roberta.py in tf__call_encoder(self, inputs)
        121                 i = ag__.Undefined('i')
        122                 layer = ag__.Undefined('layer')
    --> 123                 ag__.for_stmt(ag__.converted_call(ag__.ld(range), (ag__.ld(self)._config_dict['num_hidden_layers'],), None, fscope), None, loop_body, get_state_5, set_state_5, ('embeddings',), {'iterate_names': 'i'})
        124                 cls_token_tensor = ag__.converted_call(ag__.converted_call(ag__.ld(tf).keras.layers.Lambda, (ag__.autograph_artifact((lambda x: ag__.converted_call(ag__.ld(tf).squeeze, (ag__.ld(x)[:, 0:1, :],), dict(axis=1), fscope))),), None, fscope), (ag__.ld(encoder_outputs)[(- 1)],), None, fscope)
        125                 cls_output = ag__.converted_call(ag__.ld(self)._pooler_layer, (ag__.ld(cls_token_tensor),), None, fscope)
    
    /opt/conda/lib/python3.8/site-packages/tf_transformers/models/roberta/roberta.py in loop_body(itr)
        116                     i = itr
        117                     layer = ag__.ld(self)._transformer_layers[ag__.ld(i)]
    --> 118                     (embeddings, _, _) = ag__.converted_call(ag__.ld(layer), ([ag__.ld(embeddings), ag__.ld(attention_mask)],), None, fscope)
        119                     ag__.converted_call(ag__.ld(encoder_outputs).append, (ag__.ld(embeddings),), None, fscope)
        120                 _ = ag__.Undefined('_')
    
    /opt/conda/lib/python3.8/site-packages/tf_transformers/layers/transformer/bert_transformer.py in tf__call(self, inputs, mode, cache_key, cache_value)
         26                     outputs = ag__.converted_call(ag__.ld(self).call_encoder, (ag__.ld(inputs),), dict(cache_key=ag__.ld(cache_key), cache_value=ag__.ld(cache_value)), fscope)
         27                 outputs = ag__.Undefined('outputs')
    ---> 28                 ag__.if_stmt(ag__.ld(self)._use_decoder, if_body, else_body, get_state, set_state, ('outputs',), 1)
         29                 try:
         30                     do_return = True
    
    /opt/conda/lib/python3.8/site-packages/tf_transformers/layers/transformer/bert_transformer.py in else_body()
         24                 def else_body():
         25                     nonlocal outputs
    ---> 26                     outputs = ag__.converted_call(ag__.ld(self).call_encoder, (ag__.ld(inputs),), dict(cache_key=ag__.ld(cache_key), cache_value=ag__.ld(cache_value)), fscope)
         27                 outputs = ag__.Undefined('outputs')
         28                 ag__.if_stmt(ag__.ld(self)._use_decoder, if_body, else_body, get_state, set_state, ('outputs',), 1)
    
    /opt/conda/lib/python3.8/site-packages/tf_transformers/layers/transformer/bert_transformer.py in tf__call_encoder(self, inputs, cache_key, cache_value)
         29                 attention_output = ag__.converted_call(ag__.ld(self)._attention_dropout, (ag__.ld(attention_output),), dict(training=ag__.ld(self)._use_dropout), fscope)
         30                 attention_output = ag__.converted_call(ag__.ld(self)._attention_layer_norm, ((ag__.ld(input_tensor) + ag__.ld(attention_output)),), None, fscope)
    ---> 31                 attention_output = ag__.converted_call(ag__.ld(tf).cast, (ag__.ld(attention_output),), dict(dtype=ag__.converted_call(ag__.ld(tf_utils).get_dtype, (), None, fscope)), fscope)
         32                 intermediate_output = ag__.converted_call(ag__.ld(self)._intermediate_dense, (ag__.ld(attention_output),), None, fscope)
         33                 layer_output = ag__.converted_call(ag__.ld(self)._output_dense, (ag__.ld(intermediate_output),), None, fscope)
    
    /opt/conda/lib/python3.8/site-packages/tf_transformers/utils/tf_utils.py in tf__get_dtype()
         10                 retval_ = ag__.UndefinedReturnValue()
         11                 dtype = ag__.ld(tf).float32
    ---> 12                 policy = ag__.converted_call(ag__.ld(tf).keras.mixed_precision.experimental.global_policy, (), None, fscope)
         13 
         14                 def get_state():
    
    AttributeError: Exception encountered when calling layer "tf_transformers/roberta" (type RobertaEncoder).
    
    in user code:
    
        File "/opt/conda/lib/python3.8/site-packages/tf_transformers/models/roberta/roberta.py", line 718, in call  *
            outputs = self.call_fn(inputs)
        File "/opt/conda/lib/python3.8/site-packages/tf_transformers/models/roberta/roberta.py", line 290, in call_encoder  *
            embeddings, _, _ = layer([embeddings, attention_mask])
        File "/opt/conda/lib/python3.8/site-packages/keras/utils/traceback_utils.py", line 67, in error_handler  **
            raise e.with_traceback(filtered_tb) from None
        File "/tmp/__autograph_generated_fileflkmddlu.py", line 28, in tf__call
            ag__.if_stmt(ag__.ld(self)._use_decoder, if_body, else_body, get_state, set_state, ('outputs',), 1)
        File "/tmp/__autograph_generated_fileflkmddlu.py", line 26, in else_body
            outputs = ag__.converted_call(ag__.ld(self).call_encoder, (ag__.ld(inputs),), dict(cache_key=ag__.ld(cache_key), cache_value=ag__.ld(cache_value)), fscope)
        File "/tmp/__autograph_generated_filetd9bb7wo.py", line 31, in tf__call_encoder
            attention_output = ag__.converted_call(ag__.ld(tf).cast, (ag__.ld(attention_output),), dict(dtype=ag__.converted_call(ag__.ld(tf_utils).get_dtype, (), None, fscope)), fscope)
        File "/tmp/__autograph_generated_file9o5z35_o.py", line 12, in tf__get_dtype
            policy = ag__.converted_call(ag__.ld(tf).keras.mixed_precision.experimental.global_policy, (), None, fscope)
    
        AttributeError: Exception encountered when calling layer "transformer/layer_0" (type TransformerBERT).
        
        in user code:
        
            File "/opt/conda/lib/python3.8/site-packages/tf_transformers/layers/transformer/bert_transformer.py", line 331, in call  *
                outputs = self.call_encoder(inputs, cache_key=cache_key, cache_value=cache_value)
            File "/opt/conda/lib/python3.8/site-packages/tf_transformers/layers/transformer/bert_transformer.py", line 256, in call_encoder  *
                attention_output = tf.cast(attention_output, dtype=tf_utils.get_dtype())
            File "/opt/conda/lib/python3.8/site-packages/tf_transformers/utils/tf_utils.py", line 178, in get_dtype  *
                policy = tf.keras.mixed_precision.experimental.global_policy()
        
            AttributeError: module 'keras.api._v2.keras.mixed_precision' has no attribute 'experimental'
        
        
        Call arguments received by layer "transformer/layer_0" (type TransformerBERT):
          • inputs=['tf.Tensor(shape=(None, None, 768), dtype=float32)', 'tf.Tensor(shape=(None, None, None), dtype=float32)']
          • mode=encoder
          • cache_key=None
          • cache_value=None
    
    
    Call arguments received by layer "tf_transformers/roberta" (type RobertaEncoder):
      • inputs={'input_ids': 'tf.Tensor(shape=(None, None), dtype=int32)', 'input_mask': 'tf.Tensor(shape=(None, None), dtype=int32)', 'input_type_ids': 'tf.Tensor(shape=(None, None), dtype=int32)'}
    

    This is shown after following the official example

    from tf_transformers.models import RobertaConfig, RobertaModel
    # Initializing an bert-base-uncased style configuration
    configuration = RobertaConfig()
    
    # Initializing a model from the original configuration
    model = RobertaModel.from_config(configuration)
    

    settings:

    tf_transformers version: 2.0.0
    tensorflow text version: 2.9.0
    sentencepiece version: 0.1.97
    tensorflow version: 2.9.1
    
    opened by kerrychu 0
Releases(v2.0.0)
  • v2.0.0(Apr 8, 2022)

    This is the first stable version of tf-transformers.

    What's Changed

    • Added new tutorials + docs by @legacyai in https://github.com/legacyai/tf-transformers/pull/35
    • Added Code Translation tutorial by @legacyai in https://github.com/legacyai/tf-transformers/pull/36
    • Fixed docs , tutorials and patch by @legacyai in https://github.com/legacyai/tf-transformers/pull/37
    • Ready to release v2.0.0 by @legacyai in https://github.com/legacyai/tf-transformers/pull/38

    Full Changelog: https://github.com/legacyai/tf-transformers/compare/v1.0.21...v2.0.0

    Source code(tar.gz)
    Source code(zip)
  • v1.0.20(Apr 2, 2022)

    What's Changed

    • More tutorials + Documentaion by @legacyai in https://github.com/legacyai/tf-transformers/pull/27
    • Moved some documentation by @legacyai in https://github.com/legacyai/tf-transformers/pull/28
    • feat: Added tutorial for vit image classification by @legacyai in https://github.com/legacyai/tf-transformers/pull/29
    • Added Image Classification tutorial by @legacyai in https://github.com/legacyai/tf-transformers/pull/30
    • Added more tutorials . by @legacyai in https://github.com/legacyai/tf-transformers/pull/31
    • Added README.MD with more info by @legacyai in https://github.com/legacyai/tf-transformers/pull/32
    • Added Sentence Transformers + Model Usage + docs by @legacyai in https://github.com/legacyai/tf-transformers/pull/33

    Full Changelog: https://github.com/legacyai/tf-transformers/compare/v1.0.19...v1.0.20

    Source code(tar.gz)
    Source code(zip)
  • v1.0.19(Mar 10, 2022)

    What's Changed

    • Fixing workflows by @legacyai in https://github.com/legacyai/tf-transformers/pull/24
    • Fix workflow in cd.yaml by @legacyai in https://github.com/legacyai/tf-transformers/pull/25
    • Added new tutorials and docs by @legacyai in https://github.com/legacyai/tf-transformers/pull/26

    Full Changelog: https://github.com/legacyai/tf-transformers/compare/v1.0.18...v1.0.19

    Source code(tar.gz)
    Source code(zip)
  • v1.0.18(Mar 3, 2022)

    What's Changed

    • Merging some major changes by @legacyai in https://github.com/legacyai/tf-transformers/pull/23

    Full Changelog: https://github.com/legacyai/tf-transformers/compare/v1.0.17...v1.0.18

    Source code(tar.gz)
    Source code(zip)
  • v1.0.17(Jan 12, 2022)

    What's Changed

    • fix: Added patch fix by @legacyai in https://github.com/legacyai/tf-transformers/pull/22

    Full Changelog: https://github.com/legacyai/tf-transformers/compare/v1.0.16...v1.0.17

    Source code(tar.gz)
    Source code(zip)
  • v1.0.16(Jan 12, 2022)

    What's Changed

    • fix: Added patch and ref by @legacyai in https://github.com/legacyai/tf-transformers/pull/21

    Full Changelog: https://github.com/legacyai/tf-transformers/compare/v1.0.13...v1.0.16

    Source code(tar.gz)
    Source code(zip)
  • v1.0.15(Jan 12, 2022)

  • v1.0.14(Jan 12, 2022)

    What's Changed

    • fix: So many fixes by @legacyai in https://github.com/legacyai/tf-transformers/pull/18

    Full Changelog: https://github.com/legacyai/tf-transformers/compare/v1.0.13...v1.0.14

    Source code(tar.gz)
    Source code(zip)
  • v1.0.13(Jan 12, 2022)

    What's Changed

    • fix: Added patch by @legacyai in https://github.com/legacyai/tf-transformers/pull/20

    Full Changelog: https://github.com/legacyai/tf-transformers/compare/v1.0.15...v1.0.13

    Source code(tar.gz)
    Source code(zip)
  • v1.0.12(Jan 12, 2022)

    Test

    What's Changed

    • fix: patch script + push tag on release.yaml by @legacyai in https://github.com/legacyai/tf-transformers/pull/16

    Full Changelog: https://github.com/legacyai/tf-transformers/compare/v1.0.11...v1.0.12

    Source code(tar.gz)
    Source code(zip)
  • v1.0.11(Jan 12, 2022)

    Test workflow

    What's Changed

    • Fixed yaml file by @legacyai in https://github.com/legacyai/tf-transformers/pull/15

    Full Changelog: https://github.com/legacyai/tf-transformers/compare/v1.0.10...v1.0.11

    Source code(tar.gz)
    Source code(zip)
  • v1.0.10(Jan 12, 2022)

  • v1.0.9(Jan 12, 2022)

    This a test to check workflow in release.yaml

    What's Changed

    • fix: Added workflow tests by @legacyai in https://github.com/legacyai/tf-transformers/pull/14

    Full Changelog: https://github.com/legacyai/tf-transformers/compare/v1.0.8...v1.0.9

    Source code(tar.gz)
    Source code(zip)
  • v1.0.1(Mar 15, 2021)

    This is the first official release of tf-transformers. NP with TensorFlow 2.0 and TFlite. Added many tutorials + best model using Joint Loss.

    Source code(tar.gz)
    Source code(zip)
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