Introduction
QwQ-32B-FlagOS-iluvatar provides an all-in-one deployment solution, enabling execution of QwQ-32B on iluvatar GPUs. As the first-generation release for the iluvatar, this package delivers two key features:
- Comprehensive Integration:
- Integrated with FlagScale (https://github.com/FlagOpen/FlagScale).
- Open-source inference execution code, preconfigured with all necessary software and hardware settings.
- Pre-built Docker image for rapid deployment on iluvatar.
- Consistency Validation:
- Evaluation tests verifying consistency of results between the official and ours.
Technical Summary
Serving Engine
We use FlagScale as the serving engine to improve the portability of distributed inference.
FlagScale is an end-to-end framework for large models across multiple chips, maximizing computational resource efficiency while ensuring model effectiveness. It ensures both ease of use and high performance for users when deploying models across different chip architectures:
- One-Click Service Deployment: FlagScale provides a unified and simple command execution mechanism, allowing users to fast deploy services seamlessly across various hardware platforms using the same command. This significantly reduces the entry barrier and enhances user experience.
- Automated Deployment Optimization: FlagScale automatically optimizes distributed parallel strategies based on the computational capabilities of different AI chips, ensuring optimal resource allocation and efficient utilization, thereby improving overall deployment performance.
- Automatic Operator Library Switching: Leveraging FlagScale's unified Runner mechanism and deep integration with FlagGems, users can seamlessly switch to the FlagGems operator library for inference by simply adding environment variables in the configuration file.
Triton Support
We validate the execution of QwQ-32B model with a Triton-based operator library as a PyTorch alternative.
We use a variety of Triton-implemented operation kernels to run the QwQ-32B model. These kernels come from two main sources:
Most Triton kernels are provided by FlagGems (https://github.com/FlagOpen/FlagGems). You can enable FlagGems kernels by setting the environment variable USE_FLAGGEMS.
Also included are Triton kernels from vLLM, such as fused MoE.
Container Image Download
Usage | iluvatar | |
---|---|---|
Basic Image | basic software environment that supports FlagOS model running | [email protected] by emailοΌplease indicate the unit/contact person/contact information/equipment source/specific requirements |
Evaluation Results
Benchmark Result
Metrics | QwQ-32B-H100-CUDA | QwQ-32B-FlagOS-iluvatar |
---|---|---|
AIME 2024 | 0.800 | 0.800 |
GPQA-Diamond | 0.641 | 0.589 |
MMLU | 0.797 | 0.782 |
LIVEBENCH | - | 0.548 |
MUSR | - | 0.664 |
THEOREMQA | - | 0.100 |
How to Run Locally
π Getting Started
Download open-source weights
pip install modelscope
modelscope download --model Qwen/QwQ-32B --local_dir /nfs/QwQ-32B
Download the FlagOS image
docker pull <IMAGE>
Start the inference service
docker run --rm --init --detach \
--net=host --uts=host --ipc=host \
--security-opt=seccomp=unconfined \
--privileged=true \
--ulimit stack=67108864 \
--ulimit memlock=-1 \
--ulimit nofile=1048576:1048576 \
--shm-size=32G \
-v /nfs:/nfs \
--gpus all \
--name flagos \
<IMAGE> \
sleep infinity
docker exec -it flagos bash
Serve
flagscale serve qwq_32b
Contributing
We warmly welcome global developers to join us:
- Submit Issues to report problems
- Create Pull Requests to contribute code
- Improve technical documentation
- Expand hardware adaptation support
π Contact Us
Scan the QR code below to add our WeChat group send "FlagRelease"
License
The weights of this model are based on Qwen/QwQ-32B and are open-sourced under the Apache 2.0 License: https://www.apache.org/licenses/LICENSE-2.0.txt.
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