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Formatting License Apache 2.0 PyPI version

Latest News

Contents

DeepSpeed Model Implementations for Inference (MII)

Introducing MII, an open-source Python library designed by DeepSpeed to democratize powerful model inference with a focus on high-throughput, low latency, and cost-effectiveness.

  • MII v0.1 introduces several features such as blocked KV-caching, continuous batching, Dynamic SplitFuse, tensor parallelism, and high-performance CUDA kernels to support fast high throughput text-generation for LLMs such as Llama-2-70B. MII delivers up to 2.3 times higher effective throughput compared to leading systems such as vLLM. For detailed performance results please see our DeepSpeed-FastGen blog.

Key Technologies

MII for High-Throughput Text Generation

MII provides accelerated text-generation inference through the use of four key technologies:

  • Blocked KV Caching
  • Continuous Batching
  • Dynamic SplitFuse
  • High Performance CUDA Kernels

For a deeper dive into understanding these features please refer to our blog which also includes a detailed performance analysis.

MII Legacy

In the past, MII introduced several key performance optimizations for low-latency serving scenarios:

  • DeepFusion for Transformers
  • Multi-GPU Inference with Tensor-Slicing
  • ZeRO-Inference for Resource Constrained Systems
  • Compiler Optimizations

How does MII work?

Figure 1: MII architecture, showing how MII automatically optimizes OSS models using DS-Inference before deploying them. DeepSpeed-FastGen optimizations in the figure have been published in our blog post.

Under-the-hood MII is powered by DeepSpeed-Inference. Based on the model architecture, model size, batch size, and available hardware resources, MII automatically applies the appropriate set of system optimizations to minimize latency and maximize throughput.

Supported Models

MII currently supports over 13,000 models across three popular model architectures. We plan to add additional models in the near term, if there are specific model architectures you would like supported please file an issue and let us know. All current models leverage Hugging Face in our backend to provide both the model weights and the model's corresponding tokenizer. For our current release we support the following model architectures:

model family size range ~model count
llama 7B - 65B 11,000
llama-2 7B - 70B 800
mistral 7B 1,100
opt 0.1B - 66B 900

MII Legacy Model Support

MII Legacy APIs support over 50,000 different models including BERT, RoBERTa, Stable Diffusion, and other text-generation models like Bloom, GPT-J, etc. For a full list please see our legacy supported models table.

Getting Started with MII

DeepSpeed-MII allows users to create non-persistent and persistent deployments for supported models in just a few lines of code.

Installation

The fasest way to get started is with our PyPI release of DeepSpeed-MII which means you can get started within minutes via:

pip install deepspeed-mii

For ease of use and significant reduction in lengthy compile times that many projects require in this space we distribute a pre-compiled python wheel covering the majority of our custom kernels through a new library called DeepSpeed-Kernels. We have found this library to be very portable across environments with NVIDIA GPUs with compute capabilities 8.0+ (Ampere+), CUDA 11.6+, and Ubuntu 20+. In most cases you shouldn't even need to know this library exists as it is a dependency of DeepSpeed-MII and will be installed with it. However, if for whatever reason you need to compile our kernels manually please see our advanced installation docs.

Non-Persistent Pipeline

A non-persistent pipeline is a great way to try DeepSpeed-MII. Non-persistent pipelines are only around for the duration of the python script you are running. The full example for running a non-persistent pipeline deployment is only 4 lines. Give it a try!

import mii
pipe = mii.pipeline("mistralai/Mistral-7B-v0.1")
response = pipe("DeepSpeed is", max_new_tokens=128)
print(response)

Tensor parallelism

Taking advantage of multi-GPU systems for greater performance is easy with MII. When run with the deepspeed launcher, tensor parallelism is automatically controlled by the --num_gpus flag:

# Run on a single GPU
deepspeed --num_gpus 1 mii-example.py

# Run on multiple GPUs
deepspeed --num_gpus 2 mii-example.py

Pipeline Options

While only the model name or path is required to stand up a non-persistent pipeline deployment, we offer customization options to our users:

mii.pipeline() Options:

  • model_name_or_path: str Name or local path to a HuggingFace model.
  • max_length: int Sets the default maximum token length for the prompt + response.
  • all_rank_output: bool When enabled, all ranks return the generated text. By default, only rank 0 will return text.

Users can also control the generation characteristics for individual prompts (i.e., when calling pipe()) with the following options:

  • max_length: int Sets the per-prompt maximum token length for prompt + response.
  • min_new_tokens: int Sets the minimum number of tokens generated in the response. max_length will take precedence over this setting.
  • max_new_tokens: int Sets the maximum number of tokens generated in the response.
  • ignore_eos: bool (Defaults to False) Setting to True prevents generation from ending when the EOS token is encountered.
  • top_p: float (Defaults to 0.9) When set below 1.0, filter tokens and keep only the most probable, where token probabilities sum to ≥top_p.
  • top_k: int (Defaults to None) When None, top-k filtering is disabled. When set, the number of highest probability tokens to keep.
  • temperature: float (Defaults to None) When None, temperature is disabled. When set, modulates token probabilities.
  • do_sample: bool (Defaults to True) When True, sample output logits. When False, use greedy sampling.
  • return_full_text: bool (Defaults to False) When True, prepends the input prompt to the returned text

Persistent Deployment

A persistent deployment is ideal for use with long-running and production applications. The persistent model uses a lightweight GRPC server that can be queried by multiple clients at once. The full example for running a persistent model is only 5 lines. Give it a try!

import mii
client = mii.serve("mistralai/Mistral-7B-v0.1")
response = client.generate("Deepspeed is", max_new_tokens=128)
print(response.response)

If we want to generate text from other processes, we can do that too:

client = mii.client("mistralai/Mistral-7B-v0.1")
response = client.generate("Deepspeed is", max_new_tokens=128)

When we no longer need a persistent deployment, we can shutdown the server from any client:

client.terminate_server()

Model Parallelism

Taking advantage of multi-GPU systems for better latency and throughput is also easy with the persistent deployments. Model parallelism is controlled by the tensor_parallel input to mii.serve:

client = mii.serve("mistralai/Mistral-7B-v0.1", tensor_parallel=2)

The resulting deployment will split the model across 2 GPUs to deliver faster inference and higher throughput than a single GPU.

Model Replicas

We can also take advantage of multi-GPU (and multi-node) systems by setting up multiple model replicas and taking advantage of the load-balancing that DeepSpeed-MII provides:

client = mii.serve("mistralai/Mistral-7B-v0.1", replica_num=2)

The resulting deployment will load 2 model replicas (one per GPU) and load-balance incoming requests between the 2 model instances.

Model parallelism and replicas can also be combined to take advantage of systems with many more GPUs. In the example below, we run 2 model replicas, each split across 2 GPUs on a system with 4 GPUs:

client = mii.serve("mistralai/Mistral-7B-v0.1", tensor_parallel=2, replica_num=2)

The choice between model parallelism and model replicas for maximum performance will depend on the nature of the hardware, model, and workload. For example, with small models users may find that model replicas provide the lowest average latency for requests. Meanwhile, large models may achieve greater overall throughput when using only model parallelism.

Persistent Deployment Options

While only the model name or path is required to stand up a persistent deployment, we offer customization options to our users.

mii.serve() Options:

  • model_name_or_path: str Name or local path to a HuggingFace model.
  • max_length: int Sets the default maximum token length for the prompt + response.
  • deployment_name: str A unique identifying string for the persistent model. If provided, client objects should be retrieved with client = mii.client(deployment_name).
  • tensor_parallel: int Number of GPUs to split the model across.
  • replica_num: int The number of model replicas to stand up.

mii.client() Options:

  • model_or_deployment_name: str Name of the model or deployment_name passed to mii.serve()

Users can also control the generation characteristics for individual prompts (i.e., when calling client.generate()) with the following options:

  • max_length: int Sets the per-prompt maximum token length for prompt + response.
  • min_new_tokens: int Sets the minimum number of tokens generated in the response. max_length will take precedence over this setting.
  • max_new_tokens: int Sets the maximum number of tokens generated in the response.
  • ignore_eos: bool (Defaults to False) Setting to True prevents generation from ending when the EOS token is encountered.
  • top_p: float (Defaults to 0.9) When set below 1.0, filter tokens and keep only the most probable, where token probabilities sum to ≥top_p.
  • top_k: int (Defaults to None) When None, top-k filtering is disabled. When set, the number of highest probability tokens to keep.
  • temperature: float (Defaults to None) When None, temperature is disabled. When set, modulates token probabilities.
  • do_sample: bool (Defaults to True) When True, sample output logits. When False, use greedy sampling.
  • return_full_text: bool (Defaults to False) When True, prepends the input prompt to the returned text

Contributing

This project welcomes contributions and suggestions. Most contributions require you to agree to a Contributor License Agreement (CLA) declaring that you have the right to, and actually do, grant us the rights to use your contribution. For details, visit https://cla.opensource.microsoft.com.

When you submit a pull request, a CLA bot will automatically determine whether you need to provide a CLA and decorate the PR appropriately (e.g., status check, comment). Simply follow the instructions provided by the bot. You will only need to do this once across all repos using our CLA.

This project has adopted the Microsoft Open Source Code of Conduct. For more information see the Code of Conduct FAQ or contact [email protected] with any additional questions or comments.

Trademarks

This project may contain trademarks or logos for projects, products, or services. Authorized use of Microsoft trademarks or logos is subject to and must follow Microsoft's Trademark & Brand Guidelines. Use of Microsoft trademarks or logos in modified versions of this project must not cause confusion or imply Microsoft sponsorship. Any use of third-party trademarks or logos are subject to those third-party's policies.