PygmalionAI's large-scale inference engine
pygmalion.chat

It is designed to serve as the inference endpoint for the PygmalionAI website, and to allow serving the Pygmalion models to a large number of users with blazing fast speeds (thanks to vLLM's Paged Attention).

AlpinDale 709628a74d fix 4 months ago
.github b1e61268a8 bump torch to 2.3.1 4 months ago
aphrodite 709628a74d fix 4 months ago
assets b3df2351c8 readme: update with bsz1 graph 10 months ago
cmake 271a680026 feat: inference support for PowerPC ISA 4 months ago
docker a8d10fcfee chore: add contribution guidelines + Code of Conduct (#507) 4 months ago
docs 9371a33e90 docs: add installation guides 4 months ago
examples 96d5b8cf2c fix: allow getting the chat template from a url 4 months ago
kernels 815736fc54 feat: add cuda kernels for sampling 4 months ago
tests 709628a74d fix 4 months ago
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.dockerignore 6a57861fca feat: initial XPU support via intel_extension_for_pytorch (#571) 5 months ago
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.gitignore 0c17c2a8a7 chore: add commit hash, clean up engine logs 4 months ago
CMakeLists.txt 815736fc54 feat: add cuda kernels for sampling 4 months ago
CODE_OF_CONDUCT.md 9c45fe9a2a openai: fix metrics endpoint (#512) 6 months ago
CONTRIBUTING.md 9c45fe9a2a openai: fix metrics endpoint (#512) 6 months ago
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Dockerfile.openvino 0886c361f4 feat: OpenVINO CPU backend (#576) 4 months ago
Dockerfile.ppc64le 271a680026 feat: inference support for PowerPC ISA 4 months ago
Dockerfile.rocm fa15bad2ea chore: minor AMD fixes 4 months ago
Dockerfile.tpu e1475fbec7 feat: MoE support with Pallas GMM kernel for TPUs 4 months ago
Dockerfile.xpu 6a57861fca feat: initial XPU support via intel_extension_for_pytorch (#571) 5 months ago
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MANIFEST.in a4a0423149 include more device requirements in manifest 5 months ago
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build-linux-wheel.sh 9d81716bfd [v0.5.3] Release Candidate (#388) 8 months ago
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environment.yaml b1e61268a8 bump torch to 2.3.1 4 months ago
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mypy.ini 9d81716bfd [v0.5.3] Release Candidate (#388) 8 months ago
patch_xformers.rocm.sh 13d850334e fix: navi support (#283) 10 months ago
pyproject.toml b1e61268a8 bump torch to 2.3.1 4 months ago
requirements-build.txt b1e61268a8 bump torch to 2.3.1 4 months ago
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requirements-cuda.txt ea54ffafa4 let's try this again 4 months ago
requirements-dev.txt 690110a051 feat: bitsandbytes quantization 5 months ago
requirements-neuron.txt 9d81716bfd [v0.5.3] Release Candidate (#388) 8 months ago
requirements-openvino.txt 5ac65d2d49 chore: bump optimum-intel 4 months ago
requirements-rocm.txt fa15bad2ea chore: minor AMD fixes 4 months ago
requirements-tpu.txt fe21123a1c feat: TPU support (#570) 5 months ago
requirements-xpu.txt 6a57861fca feat: initial XPU support via intel_extension_for_pytorch (#571) 5 months ago
runtime.sh cbe37e8b18 fix: speed up cuda home detection (#288) 10 months ago
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README.md

Breathing Life into Language

aphrodite

Aphrodite is the official backend engine for PygmalionAI. It is designed to serve as the inference endpoint for the PygmalionAI website, and to allow serving the Pygmalion models to a large number of users with blazing fast speeds (thanks to vLLM's Paged Attention).

Aphrodite builds upon and integrates the exceptional work from various projects.

The compute necessary for Aphrodite's development is provided by Arc Compute.

Features

  • Continuous Batching
  • Efficient K/V management with PagedAttention from vLLM
  • Optimized CUDA kernels for improved inference
  • Quantization support via AQLM, AWQ, Bitsandbytes, EXL2, GGUF, GPTQ, QuIP#, Smoothquant+, and SqueezeLLM
  • Distributed inference
  • Variety of sampling methods (Mirostat, Locally Typical Sampling, Tail-Free Sampling, etc)
  • 8-bit KV Cache for higher context lengths and throughput, at both FP8 and INT8 formats.

Quickstart

Install the engine:

$ pip install -U aphrodite-engine --extra-index-url https://downloads.pygmalion.chat/whl

Then launch a model:

$ aphrodite run meta-llama/Meta-Llama-3-8B-Instruct

This will create a OpenAI-compatible API server that can be accessed at port 2242 of the localhost. You can plug in the API into a UI that supports OpenAI, such as SillyTavern.

Please refer to the wiki for the full list of arguments and flags you can pass to the engine.

You can play around with the engine in the demo here:

Open In Colab

Docker

Additionally, we provide a Docker image for easy deployment. Here's a basic command to get you started:

sudo docker run -d -e MODEL_NAME="mistralai/Mistral-7B-Instruct-v0.2" -p 2242:2242 --gpus all --ipc host alpindale/aphrodite-engine

This will pull the Aphrodite Engine image (~9GiB download), and launch the engine with the Mistral-7B model at port 2242. Check here for the full list of env variables.

See here for the Compose file to use with Docker Compose.

Requirements

  • Operating System: Linux (or WSL for Windows)
  • Python: at least 3.8

For windows users, it's recommended to use tabbyAPI instead, if you do not need batching support.

Build Requirements:

  • CUDA >= 11

For supported GPUs, see here. Generally speaking, all semi-modern GPUs are supported - down to Pascal (GTX 10xx, P40, etc.)

Installation

Usage

For usage, please refer to the wiki page for detailed instructions. Aphrodite provides many different options for LLM inference, so please read through the list of options here.

Performance

Speeds vary with different GPUs, model sizes, quantization schemes, batch sizes, etc. Here are some baseline benchmarks conducted by requesting as many completions as possible from the API server.

Batch Size 1 Performance

These are the speeds a user would normally get if they request a single output with a sizable prompt and output length. Essentially, normal chatting experience.

The following results were gathered by sending a request with 8192 prompt tokens and requesting 1024 tokens with ignore_eos=True.

GPU: NVIDIA A40, Mistral 7B. Baseline is the same model loaded with text-generation-webui in FP16.

High Batch Size Performance

Work in Progress.

Notes

  1. By design, Aphrodite takes up 90% of your GPU's VRAM. If you're not serving an LLM at scale, you may want to limit the amount of memory it takes up. You can do this in the API example by launching the server with the --gpu-memory-utilization 0.6 (0.6 means 60%).

  2. You can view the full list of commands by running aphrodite run --help.

  3. Context Length extension via the RoPE method is supported for most models. Use the command-line flag --max-model-len to specify a desired context length and the engine will adjust the RoPE scaling accordingly.

  4. Please refer to the FAQ & Issues if you run into problems. If you don't find an answer there, please make an issue.

Acknowledgements

Aphrodite Engine would have not been possible without the phenomenal work of other open-source projects. Credits go to:

Contributing

Everyone is welcome to contribute. You can support the project by opening Pull Requests for new features, fixes, or general UX improvements.