Skip to main content

Benchmark performance of **any Foundation Model (FM)** deployed on **any AWS Generative AI service**, be it **Amazon SageMaker**, **Amazon Bedrock**, **Amazon EKS**, or **Amazon EC2**. The FMs could be deployed on these platforms either directly through `FMbench`, or, if they are already deployed then also they could be benchmarked through the **Bring your own endpoint** mode supported by `FMBench`.

Project description

FMBench

Benchmark any Foundation Model (FM) on any AWS Generative AI service [Amazon SageMaker, Amazon Bedrock, Amazon EKS, Amazon EC2, or Bring your own endpoint.]

Amazon Bedrock | Amazon SageMaker | Amazon EKS | Amazon EC2

PyPI Version

🚨 What's new: Quickstart benchmarking on Amazon EC2 with the new FMBench orchestrator 🚨

FMBench is a Python package for running performance benchmarks and accuracy for any Foundation Model (FM) deployed on any AWS Generative AI service, be it Amazon SageMaker, Amazon Bedrock, Amazon EKS, or Amazon EC2. The FMs could be deployed on these platforms either directly through FMbench, or, if they are already deployed then also they could be benchmarked through the Bring your own endpoint mode supported by FMBench.

Here are some salient features of FMBench:

  1. Highly flexible: in that it allows for using any combinations of instance types (g5, p4d, p5, Inf2), inference containers (DeepSpeed, TensorRT, HuggingFace TGI and others) and parameters such as tensor parallelism, rolling batch etc. as long as those are supported by the underlying platform.

  2. Benchmark any model: it can be used to be benchmark open-source models, third party models, and proprietary models trained by enterprises on their own data. Benchmarking includes both performance benchmaking and model evaluations (accuracy measurement given ground truth). 🚨 NEW: Model evaluations done by a Panel of LLM Evaluators added in release 2.0.0 🚨

  3. Run anywhere: it can be run on any AWS platform where we can run Python, such as Amazon EC2, Amazon SageMaker, or even the AWS CloudShell. It is important to run this tool on an AWS platform so that internet round trip time does not get included in the end-to-end response time latency.

Intro Video

FMBench Intro

Determine the optimal price|performance serving stack for your generative AI workload

Use FMBench to benchmark an LLM on any AWS generative AI service for price and performance (inference latency, transactions/minute). Here is one of the plots generated by FMBench to help answer the price performance question for the Llama2-13b model when hosted on Amazon SageMaker (the instance types in the legend have been blurred out on purpose, you can find them in the actual plot generated on running FMBench).

business question

Determine the optimal model for your generative AI workload

Use FMBench to determine model accuracy using a panel of LLM evaluators (PoLL [1]). Here is one of the plots generated by FMBench to help answer the accuracy question for various FMs on Amazon Bedrock (the model ids in the charts have been blurred out on purpose, you can find them in the actual plot generated on running FMBench).

Accuracy trajectory with prompt size

Overall accuracy

Models benchmarked

Configuration files are available in the configs folder for the following models in this repo.

Llama3 on Amazon SageMaker

Llama3 is now available on SageMaker (read blog post), and you can now benchmark it using FMBench. Here are the config files for benchmarking Llama3-8b-instruct and Llama3-70b-instruct on ml.p4d.24xlarge, ml.inf2.24xlarge and ml.g5.12xlarge instances.

  • Config file for Llama3-8b-instruct on ml.p4d.24xlarge and ml.g5.12xlarge.
  • Config file for Llama3-70b-instruct on ml.p4d.24xlarge and ml.g5.48xlarge.
  • Config file for Llama3-8b-instruct on ml.inf2.24xlarge and ml.g5.12xlarge.

Full list of benchmarked models

Model Amazon EC2 Amazon SageMaker Amazon Bedrock
Anthropic Claude-3 Sonnet On-demand, provisioned
Anthropic Claude-3 Haiku On-demand
Mistral-7b-instruct inf2, trn1 g4dn, g5, p3, p4d, p5 On-demand
Mistral-7b-AWQ p5
Mixtral-8x7b-instruct On-demand
Llama3.2-1b instruct g5
Llama3.2-3b instruct g5
Llama3.1-8b instruct g5, p4d, p4de, p5, p5e, g6e, g6, inf2, trn1 g4dn, g5, p3, inf2, trn1 On-demand
Llama3.1-70b instruct p4d, p4de, p5, p5e, g6e, g5, inf2, trn1 inf2, trn1 On-demand
Llama3-8b instruct g5, g6e, inf2, trn1 g4dn, g5, p3, inf2, trn1, p4d, p5e On-demand
Llama3-70b instruct g5 g4dn, g5, p3, inf2, trn1, p4d On-demand
Llama2-13b chat g4dn, g5, p3, inf2, trn1, p4d On-demand
Llama2-70b chat g4dn, g5, p3, inf2, trn1, p4d On-demand
NousResearch-Hermes-70b g5, inf2, trn1 On-demand
Amazon Titan text lite On-demand
Amazon Titan text express On-demand
Cohere Command text On-demand
Cohere Command light text On-demand
AI21 J2 Mid On-demand
AI21 J2 Ultra On-demand
Gemma-2b g4dn, g5, p3
Phi-3-mini-4k-instruct g4dn, g5, p3
distilbert-base-uncased g4dn, g5, p3

New in this release

2.0.19

  1. Config files for Llama3.1-1b on AMD/Intel CPU instance types.
  2. Bug fixes for token counting for vLLM.

2.0.18

  1. Delete SageMaker endpoint as soon as the run finishes.

2.0.17

  1. Add support for embedding models through SageMaker jumpstart
  2. Add support for LLama 3.2 11b Vision Instruct benchmarking through FMBench
  3. Fix DJL Inference while deploying djl on EC2(424 Inference bug)

Release history

Getting started

FMBench is available as a Python package on PyPi and is run as a command line tool once it is installed. All data that includes metrics, reports and results are stored in an Amazon S3 bucket.

[!IMPORTANT] 💡 All documentation for FMBench is available on the FMBench website

You can run FMBench on either a SageMaker notebook or on an EC2 VM. Both options are described here as part of the documentation. You can even run FMBench as a Docker container A Quickstart guide for SageMaker is bring provided below as well.

👉 The following sections are discussing running FMBench the tool, as different from where the FM is actually deployed. For example, we could run FMBench on EC2 but the model being deployed is on SageMaker or even Bedrock.

Quickstart

FMBench on a Amazon SageMaker Notebook

  1. Each FMBench run works with a configuration file that contains the information about the model, the deployment steps, and the tests to run. A typical FMBench workflow involves either directly using an already provided config file from the configs folder in the FMBench GitHub repo or editing an already provided config file as per your own requirements (say you want to try benchmarking on a different instance type, or a different inference container etc.).

    👉 A simple config file with key parameters annotated is included in this repo, see config-llama2-7b-g5-quick.yml. This file benchmarks performance of Llama2-7b on an ml.g5.xlarge instance and an ml.g5.2xlarge instance. You can use this config file as it is for this Quickstart.

  2. Launch the AWS CloudFormation template included in this repository using one of the buttons from the table below. The CloudFormation template creates the following resources within your AWS account: Amazon S3 buckets, Amazon IAM role and an Amazon SageMaker Notebook with this repository cloned. A read S3 bucket is created which contains all the files (configuration files, datasets) required to run FMBench and a write S3 bucket is created which will hold the metrics and reports generated by FMBench. The CloudFormation stack takes about 5-minutes to create.

    AWS Region Link
    us-east-1 (N. Virginia)
    us-west-2 (Oregon)
    us-gov-west-1 (GovCloud West)
  3. Once the CloudFormation stack is created, navigate to SageMaker Notebooks and open the fmbench-notebook.

  4. On the fmbench-notebook open a Terminal and run the following commands.

    conda create --name fmbench_python311 -y python=3.11 ipykernel
    source activate fmbench_python311;
    pip install -U fmbench
    
  5. Now you are ready to fmbench with the following command line. We will use a sample config file placed in the S3 bucket by the CloudFormation stack for a quick first run.

    1. We benchmark performance for the Llama2-7b model on a ml.g5.xlarge and a ml.g5.2xlarge instance type, using the huggingface-pytorch-tgi-inference inference container. This test would take about 30 minutes to complete and cost about $0.20.

    2. It uses a simple relationship of 750 words equals 1000 tokens, to get a more accurate representation of token counts use the Llama2 tokenizer (instructions are provided in the next section). It is strongly recommended that for more accurate results on token throughput you use a tokenizer specific to the model you are testing rather than the default tokenizer. See instructions provided later in this document on how to use a custom tokenizer.

      account=`aws sts get-caller-identity | jq .Account | tr -d '"'`
      region=`aws configure get region`
      fmbench --config-file s3://sagemaker-fmbench-read-${region}-${account}/configs/llama2/7b/config-llama2-7b-g5-quick.yml > fmbench.log 2>&1
      
    3. Open another terminal window and do a tail -f on the fmbench.log file to see all the traces being generated at runtime.

      tail -f fmbench.log
      
    4. 👉 For streaming support on SageMaker and Bedrock checkout these config files:

      1. config-llama3-8b-g5-streaming.yml
      2. config-bedrock-llama3-streaming.yml
  6. The generated reports and metrics are available in the sagemaker-fmbench-write-<replace_w_your_aws_region>-<replace_w_your_aws_account_id> bucket. The metrics and report files are also downloaded locally and in the results directory (created by FMBench) and the benchmarking report is available as a markdown file called report.md in the results directory. You can view the rendered Markdown report in the SageMaker notebook itself or download the metrics and report files to your machine for offline analysis.

If you would like to understand what is being done under the hood by the CloudFormation template, see the DIY version with gory details

FMBench on SageMaker in GovCloud

No special steps are required for running FMBench on GovCloud. The CloudFormation link for us-gov-west-1 has been provided in the section above.

  1. Not all models available via Bedrock or other services may be available in GovCloud. The following commands show how to run FMBench to benchmark the Amazon Titan Text Express model in the GovCloud. See the Amazon Bedrock GovCloud page for more details.
account=`aws sts get-caller-identity | jq .Account | tr -d '"'`
region=`aws configure get region`
fmbench --config-file s3://sagemaker-fmbench-read-${region}-${account}/configs/bedrock/config-bedrock-titan-text-express.yml > fmbench.log 2>&1

Running FMBench via the FMBench-orchestrator

FMBench on Amazon EC2 via the FMBench orchestrator

If you want to benchmark FMs on Amazon EC2 then you can use the fmbench-orchestrator as a quick and simple way to get started. The orchestrator is a Python program that can be installed on an EC2 machine and it in turn launches other EC2 machines for benchmarking purposes. The orchestrator installs and runs FMBench on these EC2 machines, downloads the benchmarking result from these machines and finally terminates these machines once the benchmarking finished.

As an example, consider a scenario that you want to benchmark say the Llama3.1-8b model on a g5.2xlarge, g6.2xlarge, p4d.24xlarge, p5e.48xlarge and a trn1.32xlarge. Usually this would mean that you have to create these EC2 instances, install the pre-requisites, installed FMBench, run FMBench, download the results and then repeat the process for the next instance. This is tedious work. The orchestrator makes this super convenient by doing all this for you and doing this in parallel. It will spawn all these EC2 VMs and do all the steps mentioned above and at the end of the test you will have results from all the instances downloaded on the orchestrator VM and all the EC2 VMs that were spawned would have automatically been terminated. See the orchestrator README for more details.

Results

Depending upon the experiments in the config file, the FMBench run may take a few minutes to several hours. Once the run completes, you can find the report and metrics in the local results-* folder in the directory from where FMBench was run. The rpeort and metrics are also written to the write S3 bucket set in the config file.

Here is a screenshot of the report.md file generated by FMBench. Report

Benchmark models deployed on different AWS Generative AI services (Docs)

FMBench comes packaged with configuration files for benchmarking models on different AWS Generative AI services i.e. Bedrock, SageMaker, EKS and EC2 or bring your own endpoint even.

Enhancements

View the ISSUES on GitHub and add any you might think be an beneficial iteration to this benchmarking harness.

Security

See CONTRIBUTING for more information.

License

This library is licensed under the MIT-0 License. See the LICENSE file.

Star History

Star History Chart

Stargazers repo roster for @aws-samples/foundation-model-benchmarking-tool

Support

Contributors

References

[1] Pat Verga et al., "Replacing Judges with Juries: Evaluating LLM Generations with a Panel of Diverse Models", arXiv:2404.18796, 2024.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

fmbench-2.0.19.tar.gz (788.9 kB view details)

Uploaded Source

Built Distribution

fmbench-2.0.19-py3-none-any.whl (1.4 MB view details)

Uploaded Python 3

File details

Details for the file fmbench-2.0.19.tar.gz.

File metadata

  • Download URL: fmbench-2.0.19.tar.gz
  • Upload date:
  • Size: 788.9 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/1.8.4 CPython/3.11.10 Linux/6.8.0-1017-aws

File hashes

Hashes for fmbench-2.0.19.tar.gz
Algorithm Hash digest
SHA256 8800e8288ba99cb6d4204bdece1b58a8931924d14eba4484d035307989cb51ec
MD5 00cf902fae6081ce4511eedd1b6eaeb4
BLAKE2b-256 1435e07a5f5032c3521ac7104ba9d7116d51e58a2d70508f68d3a97dd304a0d9

See more details on using hashes here.

File details

Details for the file fmbench-2.0.19-py3-none-any.whl.

File metadata

  • Download URL: fmbench-2.0.19-py3-none-any.whl
  • Upload date:
  • Size: 1.4 MB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/1.8.4 CPython/3.11.10 Linux/6.8.0-1017-aws

File hashes

Hashes for fmbench-2.0.19-py3-none-any.whl
Algorithm Hash digest
SHA256 bb448cd8aadcfdb9b041ba6adfab2104c67bc86d00af96a1be2f7d6a472c716f
MD5 c28f5d14259a0dcc7661f95abf4a2b0b
BLAKE2b-256 30b97caa46e37cab9380114adb1c1fd2e7f783673dfb2e6aa470a17a4b9e6d3a

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page