1. 18 Nov, 2024 1 commit
    • Daniël de Kok's avatar
      Add support for compressed-tensors w8a8 int checkpoints (#2745) · 3c9df21f
      Daniël de Kok authored
      
      
      * Add support for compressed-tensors w8a8 int checkpoints
      
      This change adds a loader for w8a8 int checkpoints. One large benefit of
      int8 support is that the corresponding cutlass matmul kernels also work on
      compute capability 7.5.
      
      Evaluation on neuralmagic/Meta-Llama-3.1-8B-Instruct-quantized.w8a8:
      
      |     Tasks     |Version|     Filter     |n-shot|        Metric         |   |Value |   |Stderr|
      |---------------|------:|----------------|-----:|-----------------------|---|-----:|---|------|
      |gsm8k_cot_llama|      3|flexible-extract|     8|exact_match            |↑  |0.8431|±  |0.0100|
      |               |       |strict-match    |     8|exact_match            |↑  |0.8393|±  |0.0101|
      |ifeval         |      4|none            |     0|inst_level_loose_acc   |↑  |0.8597|±  |   N/A|
      |               |       |none            |     0|inst_level_strict_acc  |↑  |0.8201|±  |   N/A|
      |               |       |none            |     0|prompt_level_loose_acc |↑  |0.7967|±  |0.0173|
      |               |       |none            |     0|prompt_level_strict_acc|↑  |0.7468|±  |0.0187|
      
      Which is the same ballpark as vLLM.
      
      As usual, lots of thanks to Neural Magic/vLLM for the kernels.
      
      * Always use dynamic input quantization for w8a8 int
      
      It's far less flaky and gives better output.
      
      * Use marlin-kernels 0.3.5
      
      * Fix a typo
      Co-authored-by: default avatardrbh <david.richard.holtz@gmail.com>
      
      * Small fixes
      
      ---------
      Co-authored-by: default avatardrbh <david.richard.holtz@gmail.com>
      3c9df21f
  2. 24 Oct, 2024 1 commit
    • Daniël de Kok's avatar
      Add support for FP8 KV cache scales (#2628) · eab07f74
      Daniël de Kok authored
      * Add support for FP8 KV cache scales
      
      Since FP8 only has limited dynamic range, we can scale keys/values
      before storing them into the cache (and unscale them in attention). To
      avoid rescaling the cache as the absmax values change, good scales are
      usually determined per layer using calibration calibration data and stored
      in the checkpoint.
      
      This change adds support for for using key-value scales and loading them
      from checkpoints in the two most common formats:
      
      - Separate per-layer `k_scale` and `v_scale` scalars.
      - Per-layer `kv_scale` scalar (older format).
      
      Currently, scales are only used with an `float8_e4m3fn` cache.
      
      Besides adding support for key/value scales, the `fp8_quantize` function
      is also extended to support quantization with a kernel vendored from
      vLLM. This is slightly faster than the PyTorch implementation, but also
      scales in FP32, potentially improving accuracy.
      
      * Update FP8 KV cache test to use checkpoint with scales
      
      * `can_scale`: check that the attention is flashinfer
      eab07f74
  3. 16 Oct, 2024 1 commit
    • Mohit Sharma's avatar
      Fp8 e4m3_fnuz support for rocm (#2588) · 704a58c8
      Mohit Sharma authored
      * (feat) fp8 fnuz support for rocm
      
      * (review comments) Fix compression_config load, type hints
      
      * (bug) update all has_tensor
      
      * (review_comments) fix typo and added comments
      
      * (nit) improved comment
      704a58c8
  4. 17 Sep, 2024 1 commit
    • Daniël de Kok's avatar
      Move to moe-kernels package and switch to common MoE layer (#2511) · ce85efa9
      Daniël de Kok authored
      * Move to moe-kernels package and switch to common MoE layer
      
      This change introduces the new `moe-kernels` package:
      
      - Add `moe-kernels` as a dependency.
      - Introduce a `SparseMoELayer` module that can be used by MoE
        models.
      - Port over Mixtral and Deepseek.
      
      * Make `cargo check` pass
      
      * Update runner
      ce85efa9
  5. 22 Jul, 2024 1 commit
  6. 20 Jul, 2024 1 commit
    • OlivierDehaene's avatar
      feat(fp8): use fbgemm kernels and load fp8 weights directly (#2248) · 53ec0b79
      OlivierDehaene authored
      * feat(fp8): add support for fbgemm
      
      * allow loading fp8 weights directly
      
      * update outlines
      
      * fix makefile
      
      * build fbgemm
      
      * avoid circular import and fix dockerfile
      
      * add default dtype
      
      * refactored weights loader
      
      * fix auto conversion
      
      * fix quantization config parsing
      
      * force new nccl on install
      
      * missing get_weights implementation
      
      * increase timeout
      53ec0b79
  7. 19 Jul, 2024 2 commits
    • Daniël de Kok's avatar
      Add support for Deepseek V2 (#2224) · e52be9bb
      Daniël de Kok authored
      Deepseek V2 is a MoE model from Deepseek. Relevant variations
      compared to other models:
      
      - Grouped top-K in expert selection.
      - mscale in yarn is calculated using the `mscale` and `mscale_all_dim`
        configuration options.
      - `mscale_all_dim` is also used in scaling attention softmax.
      - Permuting of the query/key representations before applying rotary
        embeddings.
      - Some projections cannot be sharded (`q_a_proj`, `kv_a_proj_with_mqa`).
        So, we need weight loads that supports quantized weights. To this
        end `{Weights,WeightLoader}.get_weight` was added.
      - The query/key head dimensionality differs from that of the value,
        so we need to pad during attention.
      - Heads with size 192, needs an extension to our paged attention
        fork and we need to ensure that the KV cache is allocated with the
        correct size.
      - Shared experts.
      e52be9bb
    • Daniël de Kok's avatar
      Improve the handling of quantized weights (#2250) · ba291dad
      Daniël de Kok authored
      * Improve the handling of quantized weights
      
      Handling of quantized weights was split between two mechanisms:
      
      - For quantized checkpoints, we used the new weight loader
        infrastructure.
      - For quantization while loading (EETQ, FP8, bitsandbytes) we
        instead relied on conditional in `get_linear`.
      
      Weight loaders support context managers to selectively load
      particular layers with different weight loaders, which is useful
      for models like Idefics2 AWQ, which uses a quantized text model,
      but unquantized vision and connector models. However, the context
      manager would be overrided by `get_linear`, which string-checks
      `quantizer`. Also, the context manager would not work with
      EETQ, FP8, and bitsandbytes.
      
      This change migrates all quantizers to the weight loader infrastructure.
      This has several benefits:
      
      - We can use context managers with all quantizers.
      - All the implementation details move down to the quantizer layers,
        `get_linear` does not need to know how to handle quantizer linear
        layers.
      - All quantizer weights are strongly typed, we don't pass around
        raw tensors.
      - We don't have to pass around the `quantizer` string everywhere.
      
      * Exclude non-MLP layers when using FP8 quantization with Llama
      ba291dad
  8. 16 Jul, 2024 2 commits
  9. 12 Jul, 2024 1 commit
    • Daniël de Kok's avatar
      Use symmetric quantization in the `quantize` subcommand (#2120) · dbb23fbf
      Daniël de Kok authored
      Packing of asymmetric quantization is broken, all (q)zeros values
      of `0` get reset to `1`, resulting in a loss of accuracy. So instead
      use symmetric quantization. To be able to distinguish models with
      symmetric and asymmetric quantization, a new config tensor `gptq_sym` is
      added. If this tensor is not present, we assume `sym=False`.
      dbb23fbf
  10. 09 Jul, 2024 1 commit
    • Daniël de Kok's avatar
      Move quantized weight handling out of the `Weights` class (#2194) · 8511669c
      Daniël de Kok authored
      Quantized weights were loaded in the `Weights` class, but this was
      getting quite unwieldy, where every higher level method to load weights
      was a long conditional to cover all the different quantizers.
      
      This change moves loading of quantized weights out of the `Weights`
      class. This is done by defining a simple `WeightsLoader` interface
      that is implemented by `Exl2WeightsLoader`, `GPTQWeightsLoader`,
      and `MarlinWeightsLoader`. These implementations are in the quantizers'
      respective modules. The `Weights` class provides the low-level load
      operations (such as loading tensors or sharded tensors), but delegates
      loads that need quantizer-specific weight processing to a loader. The
      loaders still use the low-level functionality provided by `Weights`.
      
      I initially tried making a hierarchy where a class like `GPTQWeights`
      would inherit from `Weights`. But it is not very flexible (e.g. does
      not work well with the new weight storage mock used in tests) and
      the implicit indirections made the code harder to follow.
      8511669c
  11. 01 Jul, 2024 1 commit
    • Daniël de Kok's avatar
      Use GPTQ-Marlin for supported GPTQ configurations (#2111) · 2ce80194
      Daniël de Kok authored
      GPTQ-Marlin is currently the best-performing kernel for GPTQ models. So
      let's use it by default if the kernels are installed, the GPU supports
      it, and the kernels support the configuration.
      
      For models generated by `text-generation-server quantize`, use
      `sym=False`. This subcommand symmetric quantization since the beginning
      and incorrectly reporting the model to be symmetric will use
      GPTQ-Marlin (which does not support asymmetric quantization).
      2ce80194
  12. 25 Jun, 2024 1 commit
    • Daniël de Kok's avatar
      Add support for Marlin 2:4 sparsity (#2102) · f1f98e36
      Daniël de Kok authored
      This change adds support for 2:4 sparsity when using Marlin
      quantization. The 2:4 kernel is used when:
      
      * The quantizer is `marlin`;
      * the quantizer checkpoint format is `marlin_24`.
      
      Fixes #2098.
      f1f98e36
  13. 20 Jun, 2024 1 commit
    • Daniël de Kok's avatar
      Factor out sharding of packed tensors (#2059) · bcb3faa1
      Daniël de Kok authored
      For Phi-3-Small I need to shard a packed QKV bias tensor, for which
      I implemented the `Weights.get_packed_sharded` method. However, this
      method can also replace the `Weights._get_qweight` method and the
      custom sharding code from `Weights.get_weights_col_packed`.
      bcb3faa1
  14. 14 Jun, 2024 1 commit
    • Daniël de Kok's avatar
      Add support for GPTQ Marlin (#2052) · 093a27c5
      Daniël de Kok authored
      Add support for GPTQ Marlin kernels
      
      GPTQ Marlin extends the Marlin kernels to support common GPTQ
      configurations:
      
      - bits: 4 or 8
      - groupsize: -1, 32, 64, or 128
      - desc_act: true/false
      
      Using the GPTQ Marlin kernels requires repacking the parameters in the
      Marlin quantizer format.
      
      The kernels were contributed by Neural Magic to VLLM. We vendor them
      here for convenience.
      093a27c5
  15. 10 Jun, 2024 1 commit
    • Daniël de Kok's avatar
      Add Phi-3 medium support (#2039) · 85dfc392
      Daniël de Kok authored
      Add support for Phi-3-medium
      
      The main difference between the medium and mini models is that medium
      uses grouped query attention with a packed QKV matrix. This change adds
      support for GQA with packed matrixes to `Weights.get_weights_col_packed`
      and uses it for Phi-3. This also allows us to remove the custom
      implementation of GQA from dbrx attention loading.
      85dfc392
  16. 06 Jun, 2024 2 commits
  17. 04 Jun, 2024 1 commit
  18. 03 Jun, 2024 2 commits
    • Nicolas Patry's avatar
      Hotfix GPTQ. · 9a59ebce
      Nicolas Patry authored
      9a59ebce
    • Nicolas Patry's avatar
      Fixing GPTQ imports. (#1994) · 9add5d0a
      Nicolas Patry authored
      # What does this PR do?
      
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      9add5d0a
  19. 30 May, 2024 1 commit
    • Daniël de Kok's avatar
      Add support for exl2 quantization · 36dd1601
      Daniël de Kok authored
      Mostly straightforward, changes to existing code:
      
      * Wrap quantizer parameters in a small wrapper to avoid passing
        around untyped tuples and needing to repack them as a dict.
      * Move scratch space computation to warmup, because we need the
        maximum input sequence length to avoid allocating huge
        scratch buffers that OOM.
      36dd1601
  20. 13 May, 2024 1 commit
    • Nicolas Patry's avatar
      Refactor layers. (#1866) · fd89d9df
      Nicolas Patry authored
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      fd89d9df
  21. 23 Apr, 2024 1 commit
    • Nicolas Patry's avatar
      Phi3 support (#1797) · 986b4044
      Nicolas Patry authored
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      986b4044
  22. 12 Feb, 2024 1 commit
  23. 09 Feb, 2024 1 commit
    • Ilyas Moutawwakil's avatar
      ROCm AWQ support (#1514) · a4e58016
      Ilyas Moutawwakil authored
      # What does this PR do?
      
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      This PR adds the possibility to run AWQ models with Exllama/GPTQ
      kernels, specifically for ROCm devices that support Exllama kernels but
      not AWQ's GEMM.
      
      This is done by :
      - un-packing, reordering and re-packing AWQ weights when `--quantize
      gptq` but the model's `quant_method=awq`.
      - avoiding overflows when adding 1 to zeros in exllama and triton.
      
      Ref: https://github.com/casper-hansen/AutoAWQ/pull/313
      
      ## Before submitting
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      ---------
      Co-authored-by: default avatarNicolas Patry <patry.nicolas@protonmail.com>
      a4e58016
  24. 24 Jan, 2024 1 commit
    • Nicolas Patry's avatar
      Fixing non divisible embeddings. (#1476) · 7e542d4d
      Nicolas Patry authored
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      7e542d4d
  25. 22 Dec, 2023 1 commit
  26. 21 Dec, 2023 1 commit
  27. 18 Dec, 2023 1 commit
  28. 14 Dec, 2023 1 commit
  29. 11 Dec, 2023 1 commit
  30. 25 Nov, 2023 1 commit
    • Nicolas Patry's avatar
      Exllama v2 (#1211) · ed2a3f61
      Nicolas Patry authored
      # What does this PR do?
      
      See #1165
      
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      members/contributors who may be interested in your PR.
      
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      ---------
      Co-authored-by: default avatarFlorian Zimmermeister <flozi00.fz@gmail.com>
      Co-authored-by: default avatarUbuntu <ubuntu@ip-172-31-24-153.ec2.internal>
      ed2a3f61
  31. 05 Oct, 2023 1 commit
    • Nicolas Patry's avatar
      Fixing GPTQ exllama kernel usage. (#1101) · 87f43814
      Nicolas Patry authored
      # What does this PR do?
      
      Fixes #1098 
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      ## Before submitting
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            Pull Request section?
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      [forum](https://discuss.huggingface.co/)? Please add a link
            to it if that's the case.
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      Here are the
      [documentation
      guidelines](https://github.com/huggingface/transformers/tree/main/docs),
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      [here are tips on formatting
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      - [ ] Did you write any new necessary tests?
      
      
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      87f43814
  32. 03 Oct, 2023 1 commit
    • Nicolas Patry's avatar
      Handling bloom prefix. (#1090) · 85acb11b
      Nicolas Patry authored
      # What does this PR do?
      
      <!--
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      <!-- Remove if not applicable -->
      
      Fixes # (issue)
      
      
      ## Before submitting
      - [ ] This PR fixes a typo or improves the docs (you can dismiss the
      other checks if that's the case).
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      guideline](https://github.com/huggingface/transformers/blob/main/CONTRIBUTING.md#start-contributing-pull-requests),
            Pull Request section?
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      [forum](https://discuss.huggingface.co/)? Please add a link
            to it if that's the case.
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      Here are the
      [documentation
      guidelines](https://github.com/huggingface/transformers/tree/main/docs),
      and
      [here are tips on formatting
      docstrings](https://github.com/huggingface/transformers/tree/main/docs#writing-source-documentation).
      - [ ] Did you write any new necessary tests?
      
      
      ## Who can review?
      
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      85acb11b
  33. 27 Sep, 2023 1 commit
  34. 25 Sep, 2023 1 commit
    • Nicolas Patry's avatar
      Add AWQ quantization inference support (#1019) (#1054) · c5de7cd8
      Nicolas Patry authored
      # Add AWQ quantization inference support
      
      Fixes
      https://github.com/huggingface/text-generation-inference/issues/781
      
      This PR (partially) adds support for AWQ quantization for inference.
      More information on AWQ [here](https://arxiv.org/abs/2306.00978). In
      general, AWQ is faster and more accurate than GPTQ, which is currently
      supported by TGI.
      
      This PR installs 4-bit GEMM custom CUDA kernels released by AWQ authors
      (in `requirements.txt`, just one line change).
      
      Quick way to test this PR would be bring up TGI as follows:
      
      ```
      text-generation-server download-weights abhinavkulkarni/codellama-CodeLlama-7b-Python-hf-w4-g128-awq
      
      text-generation-launcher \
      --huggingface-hub-cache ~/.cache/huggingface/hub/ \
      --model-id abhinavkulkarni/codellama-CodeLlama-7b-Python-hf-w4-g128-awq \
      --trust-remote-code --port 8080 \
      --max-input-length 2048 --max-total-tokens 4096 --max-batch-prefill-tokens 4096 \
      --quantize awq
      ```
      
      Please note:
      * This PR was tested with FlashAttention v2 and vLLM.
      * This PR adds support for AWQ inference, not quantizing the models.
      That needs to be done outside of TGI, instructions
      
      [here](https://github.com/mit-han-lab/llm-awq/tree/f084f40bd996f3cf3a0633c1ad7d9d476c318aaa).
      * This PR only adds support for `FlashLlama` models for now.
      * Multi-GPU setup has not been tested. 
      * No integration tests have been added so far, will add later if
      maintainers are interested in this change.
      * This PR can be tested on any of the models released
      
      [here](https://huggingface.co/abhinavkulkarni?sort_models=downloads#models).
      
      Please refer to the linked issue for benchmarks for
      
      [abhinavkulkarni/meta-llama-Llama-2-7b-chat-hf-w4-g128-awq](https://huggingface.co/abhinavkulkarni/meta-llama-Llama-2-7b-chat-hf-w4-g128-awq)
      vs
      
      [TheBloke/Llama-2-7b-Chat-GPTQ](https://huggingface.co/TheBloke/Llama-2-7b-Chat-GPTQ).
      
      Please note, AWQ has released faster (and in case of Llama, fused)
      kernels for 4-bit GEMM, currently at the top of the `main` branch at
      https://github.com/mit-han-lab/llm-awq, but this PR uses an older commit
      that has been tested to work. We can switch to latest commit later on.
      
      ## Who can review?
      
      @OlivierDehaene OR @Narsil
      
      ---------
      
      
      
      # What does this PR do?
      
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      Fixes # (issue)
      
      
      ## Before submitting
      - [ ] This PR fixes a typo or improves the docs (you can dismiss the
      other checks if that's the case).
      - [ ] Did you read the [contributor
      guideline](https://github.com/huggingface/transformers/blob/main/CONTRIBUTING.md#start-contributing-pull-requests),
            Pull Request section?
      - [ ] Was this discussed/approved via a Github issue or the
      [forum](https://discuss.huggingface.co/)? Please add a link
            to it if that's the case.
      - [ ] Did you make sure to update the documentation with your changes?
      Here are the
      [documentation
      guidelines](https://github.com/huggingface/transformers/tree/main/docs),
      and
      [here are tips on formatting
      docstrings](https://github.com/huggingface/transformers/tree/main/docs#writing-source-documentation
      
      ).
      - [ ] Did you write any new necessary tests?
      
      
      ## Who can review?
      
      Anyone in the community is free to review the PR once the tests have
      passed. Feel free to tag
      members/contributors who may be interested in your PR.
      
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      ---------
      Co-authored-by: default avatarAbhinav M Kulkarni <abhinavkulkarni@gmail.com>
      Co-authored-by: default avatarAbhinav Kulkarni <abhinav@concentric.ai>
      c5de7cd8
  35. 08 Sep, 2023 1 commit
    • xiaobin's avatar
      fit for baichuan models (#981) · 4cce8430
      xiaobin authored
      
      
      As more and more people begin to use Baichuan's open-source models, the
      influence of Baichuan models is growing, especially in China. Many
      community members are interested in adding support for Baichuan models
      to TGI. Meanwhile, Baichuan is a very open company, and in the future,
      it plans to open-source more and more models, taking all this into
      consideration, we would like to add support for the Baichuan model to
      TGI. To do this, we need to make some changes, which we hope can be
      merged into the main branch of TGI. In the future, we would be happy to
      help maintain support for Baichuan models in TGI. We sincerely hope that
      our pull request can be accepted. Thank you.
      
      By the way, the changes of this time mainly for supporting Baichuan-7B.
      
      ---------
      Co-authored-by: default avatarxiaoyuze <xiaoyuze@baichuan.com>
      Co-authored-by: default avatarNicolas Patry <patry.nicolas@protonmail.com>
      4cce8430
  36. 07 Sep, 2023 1 commit