mirror of
https://github.com/guillaume-be/rust-bert.git
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540c9268e7
* Fixed Clippy warnings
* Revert "Shallow clone optimization (#243)"
This reverts commit ba584653bc
.
* updated dependencies
* tryouts
* GPT2 tryouts
* WIP GPT2
* input mapping
* Cache storage
* Initial GPT2 prototype
* Initial ONNX Config and decoder implementation
* ONNXDecoder first draft
* Use Decoders in example
* Automated tch-ort conversion, decoder implementation
* ONNXCausalDecoder implementation
* Refactored _get_var_store to be optional, added get_device to gen trait
* updated example
* Added decoder_start_token_id to ConfigOption
* Addition of ONNXModelConfig, make max_position_embeddigs optional
* Addition of forward pass function for ONNXModel
* Working ONNX causal decoder
* Simplify tensor conversion
* refactor translation to facilitate ONNX integration
* Implementation of ONNXEncoder
* Implementation of ONNXConditionalGenerator
* working ONNXCausalGenerator
* - Reworked model resources type for pipelines and generators
* Aligned ONNXConditionalGenerator with other generators to use GenerateConfig for creation
* Moved force_token_id_generation to common utils function, fixed tests, Translation implementation
* generalized forced_bos and forced_eos tokens generation
* Aligned the `encode_prompt_text` method across language models
* Fix prompt encoding for causal generation
* Fix prompt encoding for causal generation
* Support for ONNX models for SequenceClassification
* Support for ONNX models for TokenClassification
* Support for ONNX models for POS and NER pipelines
* Support for ONNX models for ZeroShotClassification pipeline
* Support for ONNX models for QuestionAnswering pipeline
* Support for ONNX models for MaskedLM pipeline
* Added token_type_ids , updated layer cache i/o parsing for ONNX pipelines
* Support for ONNX models for TextGenerationPipeline, updated examples for remote resources
* Remove ONNX zero-shot classification example (lack of correct pretrained model)
* Addition of tests for ONNX pipelines support
* Made onnx feature optional
* Fix device lookup with onnx feature enabled
* Updates from main branch
* Flexible tokenizer creation for M2M100 (NLLB support), make NLLB test optional du to their size
* Fixed Clippy warnings
* Addition of documentation for ONNX
* Added documentation for ONNX support
* upcoming tch 1.12 fixes
* Fix merge conflicts
* Fix merge conflicts (2)
* Add download libtorch feature to ONNX tests
* Add download-onnx feature
* attempt to enable onnx download
* add remote resources feature
* onnx download
* pin ort version
* Update ort version
38 lines
1.8 KiB
Rust
38 lines
1.8 KiB
Rust
use rust_bert::pipelines::common::{ModelResource, ModelType, ONNXModelResources};
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use rust_bert::pipelines::sentiment::SentimentModel;
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use rust_bert::pipelines::sequence_classification::SequenceClassificationConfig;
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use rust_bert::resources::RemoteResource;
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fn main() -> anyhow::Result<()> {
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let classification_model = SentimentModel::new(SequenceClassificationConfig::new(
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ModelType::DistilBert,
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ModelResource::ONNX(ONNXModelResources {
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encoder_resource: Some(Box::new(RemoteResource::new(
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"https://huggingface.co/optimum/distilbert-base-uncased-finetuned-sst-2-english/resolve/main/model.onnx",
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"onnx-distilbert-base-uncased-finetuned-sst-2-english",
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))),
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..Default::default()
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}),
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RemoteResource::new(
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"https://huggingface.co/optimum/distilbert-base-uncased-finetuned-sst-2-english/resolve/main/config.json",
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"onnx-distilbert-base-uncased-finetuned-sst-2-english",
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),
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RemoteResource::new(
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"https://huggingface.co/optimum/distilbert-base-uncased-finetuned-sst-2-english/resolve/main/vocab.txt",
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"onnx-distilbert-base-uncased-finetuned-sst-2-english",
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),
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None,
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true,
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None,
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None,
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))?;
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let input = [
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"Probably my all-time favorite movie, a story of selflessness, sacrifice and dedication to a noble cause, but it's not preachy or boring.",
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"This film tried to be too many things all at once: stinging political satire, Hollywood blockbuster, sappy romantic comedy, family values promo...",
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"If you like original gut wrenching laughter you will like this movie. If you are young or old then you will love this movie, hell even my mom liked it.",
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];
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let output = classification_model.predict(input);
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println!("{:?}", output);
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Ok(())
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}
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