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Arena-Hard-Auto

🚨 New feature: Style Control is now added to Arena Hard Auto! Check this section to start using style control!

Arena-Hard-Auto-v0.1 (See Paper) is an automatic evaluation tool for instruction-tuned LLMs. It contains 500 challenging user queries sourced from Chatbot Arena. We prompt GPT-4-Turbo as judge to compare the models' responses against a baseline model (default: GPT-4-0314). Notably, Arena-Hard-Auto has the highest correlation and separability to Chatbot Arena among popular open-ended LLM benchmarks (See Paper). If you are curious to see how well your model might perform on Chatbot Arena, we recommend trying Arena-Hard-Auto.

Although both Arena-Hard-Auto and Chatbot Arena Category Hard (See Blog) employ similar pipeline to select hard prompts, Arena-Hard-Auto employs automatic judge as a cheaper and faster approximator to human preference. Checkout BenchBuilder folder for code and resources on how we curate Arena-Hard-Auto.

Content

Style Control Leaderboard

Following the newly introduced Style Control on Chatbot Arena, we release Style Control on Arena Hard Auto! We employ the same Style Control methods as proposed in the blogpost. Please refer to the blogpost for methodology and technical background.

(Updated: 11/14)

claude-3-5-sonnet-20241022     | score: 86.4  | 95% CI: (-1.3, 1.3)  | average #tokens: 691                
claude-3-5-sonnet-20240620     | score: 82.2  | 95% CI: (-1.9, 1.6)  | average #tokens: 567                
o1-preview-2024-09-12          | score: 81.7  | 95% CI: (-2.2, 2.1)  | average #tokens: 1193                      
o1-mini-2024-09-12             | score: 79.3  | 95% CI: (-2.8, 2.3)  | average #tokens: 1399                      
gpt-4-turbo-2024-04-09         | score: 74.3  | 95% CI: (-2.4, 2.4)  | average #tokens: 662                       
gpt-4-0125-preview             | score: 73.6  | 95% CI: (-2.0, 2.0)  | average #tokens: 619                               
athene-v2-chat                 | score: 72.1  | 95% CI: (-2.5, 2.5)  | average #tokens: 884                               
gpt-4o-2024-08-06              | score: 71.1  | 95% CI: (-2.5, 2.0)  | average #tokens: 594                                         
llama-3.1-nemotron-70b-instruct| score: 71.0  | 95% CI: (-2.8, 3.1)  | average #tokens: 869                                        
gpt-4o-2024-05-13              | score: 69.9  | 95% CI: (-2.5, 2.0)  | average #tokens: 696                                                    
athene-70b-0725                | score: 68.3  | 95% CI: (-2.6, 2.4)  | average #tokens: 683                                                    
llama-3.1-405b-instruct-fp8    | score: 67.1  | 95% CI: (-2.2, 2.8)  | average #tokens: 658                                                    
yi-lightning                   | score: 66.9  | 95% CI: (-3.3, 2.7)  | average #tokens: 875                                                                 
claude-3-opus-20240229         | score: 65.5  | 95% CI: (-2.3, 2.2)  | average #tokens: 541                                                                 
yi-large-preview               | score: 65.1  | 95% CI: (-2.5, 2.5)  | average #tokens: 720                                                                 
gpt-4o-mini-2024-07-18         | score: 64.0  | 95% CI: (-3.5, 2.9)  | average #tokens: 668                                                                 
qwen2.5-72b-instruct           | score: 63.3  | 95% CI: (-2.5, 2.3)  | average #tokens: 821                                                                                
mistral-large-2407             | score: 63.1  | 95% CI: (-3.0, 2.6)  | average #tokens: 623                                                                                
gemini-1.5-pro-api-0514        | score: 62.7  | 95% CI: (-3.2, 3.0)  | average #tokens: 676                                                                                
glm-4-0520                     | score: 61.4  | 95% CI: (-2.6, 2.4)  | average #tokens: 636                                                                                
yi-large                       | score: 59.4  | 95% CI: (-2.8, 2.5)  | average #tokens: 626                                                                                
deepseek-coder-v2              | score: 58.3  | 95% CI: (-2.8, 2.6)  | average #tokens: 578                                                                                                   
glm-4-0116                     | score: 54.2  | 95% CI: (-2.2, 2.2)  | average #tokens: 622                                                                                                   
llama-3.1-70b-instruct         | score: 51.8  | 95% CI: (-3.4, 2.1)  | average #tokens: 628                                                                                                   
glm-4-air                      | score: 50.6  | 95% CI: (-2.6, 2.4)  | average #tokens: 619                                                                                                   
gpt-4-0314                     | score: 50.0  | 95% CI:  (0.0, 0.0)  | average #tokens: 423                                                                                                   
claude-3-sonnet-20240229       | score: 49.9  | 95% CI: (-2.7, 2.4)  | average #tokens: 552                                                                                                   
gpt-4-0613                     | score: 49.7  | 95% CI: (-2.3, 2.5)  | average #tokens: 354                
qwen2-72b-instruct             | score: 49.6  | 95% CI: (-2.1, 2.2)  | average #tokens: 515                
gemma-2-27b-it                 | score: 47.5  | 95% CI: (-2.5, 2.7)  | average #tokens: 577                
gemini-1.5-pro-api-0409-preview| score: 46.7  | 95% CI: (-2.6, 3.1)  | average #tokens: 478                              
mistral-large-2402             | score: 45.6  | 95% CI: (-2.1, 2.3)  | average #tokens: 400                               
claude-3-haiku-20240307        | score: 45.4  | 95% CI: (-2.5, 2.7)  | average #tokens: 505                               
llama-3-70b-instruct           | score: 44.5  | 95% CI: (-2.4, 2.0)  | average #tokens: 591                               
mixtral-8x22b-instruct-v0.1    | score: 44.2  | 95% CI: (-2.7, 3.1)  | average #tokens: 430                               
gemini-1.5-flash-api-0514      | score: 39.9  | 95% CI: (-2.5, 2.1)  | average #tokens: 642                               
llama-3.1-nemotron-51b-instruct| score: 39.9  | 95% CI: (-2.9, 2.7)  | average #tokens: 747                              
qwen1.5-72b-chat               | score: 39.9  | 95% CI: (-2.1, 2.4)  | average #tokens: 474                               
mistral-next                   | score: 39.6  | 95% CI: (-2.4, 2.7)  | average #tokens: 297                               
mistral-medium                 | score: 39.1  | 95% CI: (-2.4, 2.8)  | average #tokens: 485                               
phi-3-medium-4k-instruct       | score: 38.8  | 95% CI: (-2.5, 2.7)  | average #tokens: 517                               
command-r-plus                 | score: 37.5  | 95% CI: (-2.4, 2.3)  | average #tokens: 541                               
claude-2.0                     | score: 36.6  | 95% CI: (-3.0, 3.0)  | average #tokens: 295                               
claude-2.1                     | score: 35.0  | 95% CI: (-2.6, 2.3)  | average #tokens: 290                                                    
gpt-3.5-turbo-0613             | score: 34.9  | 95% CI: (-2.4, 2.9)  | average #tokens: 401                                                    
gpt-3.5-turbo-0125             | score: 34.6  | 95% CI: (-2.3, 2.6)  | average #tokens: 329                                                    
phi-3-small-8k-instruct        | score: 33.8  | 95% CI: (-2.4, 1.9)  | average #tokens: 568                                                    
gemma-2-9b-it                  | score: 33.6  | 95% CI: (-2.3, 2.2)  | average #tokens: 541                                                    
gpt-3.5-turbo-1106             | score: 32.9  | 95% CI: (-3.7, 2.4)  | average #tokens: 285                                                    
dbrx-instruct-preview          | score: 32.0  | 95% CI: (-2.5, 2.4)  | average #tokens: 415                                                    
internlm2-20b-5-chat           | score: 30.4  | 95% CI: (-2.2, 2.6)  | average #tokens: 576                                                    
mixtral-8x7b-instruct-v0.1     | score: 29.8  | 95% CI: (-2.3, 2.2)  | average #tokens: 457                                                    
gpt-3.5-turbo-0314             | score: 29.4  | 95% CI: (-2.5, 3.0)  | average #tokens: 334                                                    
starling-lm-7b-beta            | score: 26.1  | 95% CI: (-2.6, 2.0)  | average #tokens: 530                                                    
snowflake-arctic-instruct      | score: 25.8  | 95% CI: (-2.3, 2.1)  | average #tokens: 365                                                    
gemini-pro                     | score: 24.9  | 95% CI: (-1.8, 2.5)  | average #tokens: 322                                                    
command-r                      | score: 23.3  | 95% CI: (-1.9, 2.0)  | average #tokens: 432                                                                                
snorkel-mistral-pairrm-dpo     | score: 21.9  | 95% CI: (-1.6, 1.9)  | average #tokens: 564                                                                                
yi-34b-chat                    | score: 21.9  | 95% CI: (-1.5, 2.2)  | average #tokens: 611                                                                                
internlm2-20b-chat             | score: 21.3  | 95% CI: (-2.1, 1.8)  | average #tokens: 667                                                                                
llama-3-8b-instruct            | score: 19.8  | 95% CI: (-1.6, 1.9)  | average #tokens: 585                                                                                
llama-3.1-8b-instruct          | score: 18.3  | 95% CI: (-1.6, 1.6)  | average #tokens: 861                                                                                
tulu-2-dpo-70b                 | score: 18.0  | 95% CI: (-1.9, 2.4)  | average #tokens: 550                                                                                
starling-lm-7b-alpha           | score: 16.4  | 95% CI: (-1.4, 1.5)  | average #tokens: 483                                                                                
phi-3-mini-128k-instruct       | score: 16.1  | 95% CI: (-1.5, 1.6)  | average #tokens: 609                                                                                
mistral-7b-instruct            | score: 15.2  | 95% CI: (-1.6, 2.0)  | average #tokens: 541                                                                                
llama-2-70b-chat               | score: 13.4  | 95% CI: (-1.5, 1.8)  | average #tokens: 595                                                                                
vicuna-33b                     | score: 11.8  | 95% CI: (-1.8, 1.3)  | average #tokens: 451                                                                                
gemma-1.1-7b-it                | score: 11.5  | 95% CI: (-1.5, 1.3)  | average #tokens: 341                                                                                
gemma-7b-it                    | score:  7.1  | 95% CI: (-1.3, 1.2)  | average #tokens: 378                                                                                
gemma-1.1-2b-it                | score:  3.5  | 95% CI: (-0.5, 0.8)  | average #tokens: 316                                                                                
gemma-2b-it                    | score:  2.9  | 95% CI: (-0.6, 0.7)  | average #tokens: 369                                                                                                

Leaderboard

The following leaderboard has no style control.

(Updated: 11/14)

o1-mini-2024-09-12             | score: 92.0  | 95% CI: (-1.2, 1.0)  | average #tokens: 1399                                                     
o1-preview-2024-09-12          | score: 90.4  | 95% CI: (-1.1, 1.3)  | average #tokens: 1193
claude-3-5-sonnet-20241022     | score: 85.2  | 95% CI: (-1.4, 1.6)  | average #tokens: 691
athene-v2-chat                 | score: 85.0  | 95% CI: (-1.4, 1.7)  | average #tokens: 884
llama-3.1-nemotron-70b-instruct| score: 84.9  | 95% CI: (-1.7, 1.8)  | average #tokens: 869
gpt-4-turbo-2024-04-09         | score: 82.6  | 95% CI: (-1.8, 1.5)  | average #tokens: 662                                                      
yi-lightning                   | score: 81.5  | 95% CI: (-1.6, 1.6)  | average #tokens: 875                                                     
claude-3-5-sonnet-20240620     | score: 79.3  | 95% CI: (-2.1, 2.0)  | average #tokens: 567
gpt-4o-2024-05-13              | score: 79.2  | 95% CI: (-1.9, 1.7)  | average #tokens: 696        
gpt-4-0125-preview             | score: 78.0  | 95% CI: (-2.1, 2.4)  | average #tokens: 619
qwen2.5-72b-instruct           | score: 78.0  | 95% CI: (-1.8, 1.8)  | average #tokens: 821
gpt-4o-2024-08-06              | score: 77.9  | 95% CI: (-2.0, 2.1)  | average #tokens: 594
athene-70b                     | score: 77.6  | 95% CI: (-2.7, 2.2)  | average #tokens: 684
gpt-4o-mini                    | score: 74.9  | 95% CI: (-2.5, 1.9)  | average #tokens: 668
gemini-1.5-pro-api-preview     | score: 72.0  | 95% CI: (-2.1, 2.5)  | average #tokens: 676
mistral-large-2407             | score: 70.4  | 95% CI: (-1.6, 2.1)  | average #tokens: 623
llama-3.1-405b-instruct-fp8    | score: 69.3  | 95% CI: (-2.4, 2.2)  | average #tokens: 658
glm-4-0520                     | score: 63.8  | 95% CI: (-2.9, 2.8)  | average #tokens: 636          
yi-large                       | score: 63.7  | 95% CI: (-2.6, 2.4)  | average #tokens: 626
deepseek-coder-v2              | score: 62.3  | 95% CI: (-2.1, 1.8)  | average #tokens: 578             
claude-3-opus-20240229         | score: 60.4  | 95% CI: (-2.5, 2.5)  | average #tokens: 541
gemma-2-27b-it                 | score: 57.5  | 95% CI: (-2.1, 2.4)  | average #tokens: 577
llama-3.1-70b-instruct         | score: 55.7  | 95% CI: (-2.9, 2.7)  | average #tokens: 628
glm-4-0116                     | score: 55.7  | 95% CI: (-2.4, 2.3)  | average #tokens: 622
glm-4-air                      | score: 50.9  | 95% CI: (-2.9, 2.7)  | average #tokens: 619
gpt-4-0314                     | score: 50.0  | 95% CI:  (0.0, 0.0)  | average #tokens: 423
gemini-1.5-flash-api-preview   | score: 49.6  | 95% CI: (-2.2, 2.8)  | average #tokens: 642
qwen2-72b-instruct             | score: 46.9  | 95% CI: (-2.5, 2.7)  | average #tokens: 515          
claude-3-sonnet-20240229       | score: 46.8  | 95% CI: (-2.3, 2.7)  | average #tokens: 552
llama-3-70b-instruct           | score: 46.6  | 95% CI: (-2.3, 2.6)  | average #tokens: 591
claude-3-haiku-20240307        | score: 41.5  | 95% CI: (-2.5, 2.5)  | average #tokens: 505
gpt-4-0613                     | score: 37.9  | 95% CI: (-2.8, 2.4)  | average #tokens: 354
mistral-large-2402             | score: 37.7  | 95% CI: (-2.1, 2.6)  | average #tokens: 400
mixtral-8x22b-instruct-v0.1    | score: 36.4  | 95% CI: (-2.4, 2.6)  | average #tokens: 430
Qwen1.5-72B-Chat               | score: 36.1  | 95% CI: (-2.0, 2.7)  | average #tokens: 474
phi-3-medium-4k-instruct       | score: 33.4  | 95% CI: (-2.6, 2.1)  | average #tokens: 517          
command-r-plus                 | score: 33.1  | 95% CI: (-2.8, 2.4)  | average #tokens: 541
mistral-medium                 | score: 31.9  | 95% CI: (-1.9, 2.2)  | average #tokens: 485
internlm2.5-20b-chat           | score: 31.2  | 95% CI: (-2.4, 2.8)  | average #tokens: 576
phi-3-small-8k-instruct        | score: 29.8  | 95% CI: (-1.8, 1.9)  | average #tokens: 568          
mistral-next                   | score: 27.4  | 95% CI: (-2.4, 2.4)  | average #tokens: 297
gpt-3.5-turbo-0613             | score: 24.8  | 95% CI: (-1.9, 2.3)  | average #tokens: 401
dbrx-instruct-preview          | score: 24.6  | 95% CI: (-2.0, 2.6)  | average #tokens: 415
internlm2-20b-chat             | score: 24.4  | 95% CI: (-2.0, 2.2)  | average #tokens: 667
claude-2.0                     | score: 24.0  | 95% CI: (-1.8, 1.8)  | average #tokens: 295
Mixtral-8x7B-Instruct-v0.1     | score: 23.4  | 95% CI: (-2.0, 1.9)  | average #tokens: 457
gpt-3.5-turbo-0125             | score: 23.3  | 95% CI: (-2.2, 1.9)  | average #tokens: 329
Yi-34B-Chat                    | score: 23.1  | 95% CI: (-1.6, 1.8)  | average #tokens: 611
Starling-LM-7B-beta            | score: 23.0  | 95% CI: (-1.8, 1.8)  | average #tokens: 530
claude-2.1                     | score: 22.8  | 95% CI: (-2.3, 1.8)  | average #tokens: 290
llama-3.1-8b-instruct          | score: 21.3  | 95% CI: (-1.9, 2.2)  | average #tokens: 861
Snorkel-Mistral-PairRM-DPO     | score: 20.7  | 95% CI: (-1.8, 2.2)  | average #tokens: 564                       
llama-3-8b-instruct            | score: 20.6  | 95% CI: (-2.0, 1.9)  | average #tokens: 585                       
gpt-3.5-turbo-1106             | score: 18.9  | 95% CI: (-1.8, 1.6)  | average #tokens: 285                       
gpt-3.5-turbo-0301             | score: 18.1  | 95% CI: (-1.9, 2.1)  | average #tokens: 334                               
gemini-1.0-pro                 | score: 17.8  | 95% CI: (-1.2, 2.2)  | average #tokens: 322                               
snowflake-arctic-instruct      | score: 17.6  | 95% CI: (-1.8, 1.5)  | average #tokens: 365                                         
command-r                      | score: 17.0  | 95% CI: (-1.7, 1.8)  | average #tokens: 432                                         
phi-3-mini-128k-instruct       | score: 15.4  | 95% CI: (-1.4, 1.4)  | average #tokens: 609                                                    
tulu-2-dpo-70b                 | score: 15.0  | 95% CI: (-1.6, 1.3)  | average #tokens: 550                                                    
Starling-LM-7B-alpha           | score: 12.8  | 95% CI: (-1.6, 1.4)  | average #tokens: 483                                                    
mistral-7b-instruct            | score: 12.6  | 95% CI: (-1.7, 1.4)  | average #tokens: 541                                                                 
gemma-1.1-7b-it                | score: 12.1  | 95% CI: (-1.3, 1.3)  | average #tokens: 341                                                                 
Llama-2-70b-chat-hf            | score: 11.6  | 95% CI: (-1.5, 1.2)  | average #tokens: 595                                                                 
vicuna-33b-v1.3                | score:  8.6  | 95% CI: (-1.1, 1.1)  | average #tokens: 451                                                                 
gemma-7b-it                    | score:  7.5  | 95% CI: (-1.2, 1.3)  | average #tokens: 378                                                                                
Llama-2-7b-chat-hf             | score:  4.6  | 95% CI: (-0.8, 0.8)  | average #tokens: 561                                                                                
gemma-1.1-2b-it                | score:  3.4  | 95% CI: (-0.6, 0.8)  | average #tokens: 316                                                                                
gemma-2b-it                    | score:  3.0  | 95% CI: (-0.6, 0.6)  | average #tokens: 369

Install Dependencies

git clone https://github.com/lm-sys/arena-hard.git
cd arena-hard
pip install -r requirements.txt
pip install -r requirements-optional.txt  # Optional dependencies (e.g., anthropic sdk)

Download dataset

We have pre-generated many popular models answers and judgments. You can browse them with an online demo or download them (with git-lfs installed) by

> git clone https://huggingface.co/spaces/lmsys/arena-hard-browser
// copy answers/judgments to the data directory
> cp -r arena-hard-browser/data . 

Then run

> python show_result.py
gpt-4-0125-preview             | score: 78.0  | 95% CI: (-1.8, 2.2)  | average #tokens: 619
claude-3-opus-20240229         | score: 60.4  | 95% CI: (-2.6, 2.1)  | average #tokens: 541
gpt-4-0314                     | score: 50.0  | 95% CI:  (0.0, 0.0)  | average #tokens: 423
claude-3-sonnet-20240229       | score: 46.8  | 95% CI: (-2.7, 2.3)  | average #tokens: 552
claude-3-haiku-20240307        | score: 41.5  | 95% CI: (-2.4, 2.5)  | average #tokens: 505
gpt-4-0613                     | score: 37.9  | 95% CI: (-2.1, 2.2)  | average #tokens: 354
mistral-large-2402             | score: 37.7  | 95% CI: (-2.9, 2.8)  | average #tokens: 400
Qwen1.5-72B-Chat               | score: 36.1  | 95% CI: (-2.1, 2.4)  | average #tokens: 474
command-r-plus                 | score: 33.1  | 95% CI: (-2.0, 1.9)  | average #tokens: 541

Running show_result.py will save generated battles into data/arena_hard_battles.jsonl and bootstrapping statistics into data/bootstrapping_results.jsonl. If you don't want to regenerate battles or bootstrapping statistics, simply toggle argument --load-battles or --load-bootstrap, respectively.

Evaluate

Step 1. Set up the endpoint config to your model

Fill in your API endpoint in config/api_config.yaml. We support OpenAI compatible API server. You can specify parallel to indicate the number of concurrent API requests (default: 1).

# example
gpt-3.5-turbo-0125:
    model_name: gpt-3.5-turbo-0125
    endpoints: null
    api_type: openai
    parallel: 8

[YOUR-MODEL-NAME]:
    model_name: [YOUR-MODEL-NAME]
    endpoints:
        - api_base: [YOUR-ENDPOINT-URL]
          api_key: [YOUR-API-KEY]
    api_type: openai
    parallel: 8

You may use inference engine such as Latest TGI version or vLLM or SGLang to host your model with an OpenAI compatible API server.

TGI Quick start

hf_pat=
model=
volume=/path/to/cache
port=1996

huggingface-cli download $model
sudo docker run --gpus 8 -e HUGGING_FACE_HUB_TOKEN=$hf_pat --shm-size 2000g -p $port:80 -v $volume:/data ghcr.io/huggingface/text-generation-inference:2.0.4 --model-id $model --max-input-length 8192 --max-batch-total-tokens 8193 --max-batch-prefill-tokens 8193 --max-total-tokens 8193

Step 2. Generate Model Answers

In config/gen_answer_config.yaml, add your model name in model_list.

bench_name: arena-hard-v0.1
temperature: 0.0
max_tokens: 4096
num_choices: 1


model_list:
  - [YOUR-MODEL-NAME]

Run the command to generate answers:

python gen_answer.py

Caching feature is implemented. The code will skip generating an answer when there is already an existing answer/judgment to the same prompt.

Step 3. Generate Judgments

In config/judge_config.yaml, add your model name in model_list.

...
# Add your model below for evaluation
model_list:
  - gpt-3.5-turbo-0125
  - [YOUR-MODEL-NAME]

Run the command to generate judgments:

python gen_judgment.py

Judgment caching is also implemented. It will skip generating judgments that has already been generated or lacks one of the model answers.

Step 4. Show result

Output model win rates. Optionally, use --full-stats for detailed results. To save a csv file of the model rankings, use --output

> python show_result.py

Step 5. Arena Hard UI

You can review individual judgment results using our UI code.

> python qa_browser.py --share

Style Control

Following the newly introduced Style Control on Chatbot Arena, we release Style Control on Arena Hard Auto! We employ the same Style Control methods as proposed in the blogpost. Please refer to the blogpost for methodology and technical background.

Before applying style control, make sure your model answers has proper style attribute generated. Either pull the latest data from huggingface repo, or run the following script!

To add style attribute to your model answers, use add_markdown_info.py. The following command takes model answers from --dir, append style attributes (token length, number of headers, etc), and save the new answers in --output-dir.

> python add_markdown_info.py --dir data/arena-hard-v0.1/model_answer --output-dir data/arena-hard-v0.1/model_answer

To control for style (token length and markdown elements), use --style-control when running show_result.py.

> python show_result.py --style-control

To control for length and markdown separately, use --length-control-only and --markdown-control-only.

Community Contribution

Coming soon...

Citation

The code in this repository is mostly developed for or derived from the papers below. Please cite it if you find the repository helpful.

@article{li2024crowdsourced,
  title={From Crowdsourced Data to High-Quality Benchmarks: Arena-Hard and BenchBuilder Pipeline},
  author={Li, Tianle and Chiang, Wei-Lin and Frick, Evan and Dunlap, Lisa and Wu, Tianhao and Zhu, Banghua and Gonzalez, Joseph E and Stoica, Ion},
  journal={arXiv preprint arXiv:2406.11939},
  year={2024}
}
@misc{chiang2024chatbot,
    title={Chatbot Arena: An Open Platform for Evaluating LLMs by Human Preference},
    author={Wei-Lin Chiang and Lianmin Zheng and Ying Sheng and Anastasios Nikolas Angelopoulos and Tianle Li and Dacheng Li and Hao Zhang and Banghua Zhu and Michael Jordan and Joseph E. Gonzalez and Ion Stoica},
    year={2024},
    eprint={2403.04132},
    archivePrefix={arXiv},
    primaryClass={cs.AI}
}
@misc{arenahard2024,
    title = {From Live Data to High-Quality Benchmarks: The Arena-Hard Pipeline},
    url = {https://lmsys.org/blog/2024-04-19-arena-hard/},
    author = {Tianle Li*, Wei-Lin Chiang*, Evan Frick, Lisa Dunlap, Banghua Zhu, Joseph E. Gonzalez, Ion Stoica},
    month = {April},
    year = {2024}
}

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