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import gradio as gr |
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import pandas as pd |
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import requests |
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from io import StringIO |
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DESCRIPTION = """ |
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<h2 style='text-align: center; color: #cbff4d !important; text-shadow: 2px 2px 4px rgba(0,0,0,0.1);'>๐ LLM Inference Leaderboard: Pushing the Boundaries of Performance ๐</h2> |
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""" |
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INTRODUCTION = """ |
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<div style='background-color: #e6ffd9; padding: 20px; border-radius: 15px; margin-bottom: 20px; box-shadow: 0 4px 6px rgba(0,0,0,0.1);'> |
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<h3 style='color: #00480a;'>๐ฌ Our Exciting Quest</h3> |
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<p style='color: #00480a;'>We're on a thrilling journey to help developers discover the perfect LLMs and libraries for their innovative projects! We've put these models through their paces using six cutting-edge inference engines:</p> |
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<ul style='color: #00480a;'> |
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<li>๐ vLLM</li> |
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<li>๐ TGI</li> |
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<li>โก TensorRT-LLM</li> |
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<li>๐ฎ Tritonvllm</li> |
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<li>๐ Deepspeed-mii</li> |
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<li>๐ฏ ctranslate</li> |
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</ul> |
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<p style='color: #00480a;'>All our tests were conducted on state-of-the-art A100 GPUs hosted on Azure, ensuring a fair and neutral battleground!</p> |
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<p style='color: #00480a; font-weight: bold;'>Our mission: Empower developers, researchers, and AI enthusiasts to find their perfect LLM match for both development and production environments!</p> |
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</div> |
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""" |
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HOW_WE_TESTED = """ |
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<div style='background-color: #cbff4d; padding: 20px; border-radius: 15px; margin-top: 20px; box-shadow: 0 4px 6px rgba(0,0,0,0.1);'> |
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<h3 style='color: #00480a;'>๐งช Our Rigorous Testing Process</h3> |
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<p style='color: #00480a;'>We left no stone unturned in our quest for reliable benchmarks:</p> |
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<ul style='color: #00480a;'> |
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<li><strong>๐ฅ๏ธ Platform:</strong> A100 GPUs from Azure - the ultimate testing ground!</li> |
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<li><strong>๐ณ Setup:</strong> Docker containers for each library, ensuring a pristine environment.</li> |
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<li><strong>โ๏ธ Configuration:</strong> Standardized settings (temperature 0.5, top_p 1) for laser-focused performance comparisons.</li> |
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<li><strong>๐ Prompts & Token Ranges:</strong> Six diverse prompts, input lengths from 20 to 2,000 tokens, and generation lengths of 100, 200, and 500 tokens - pushing the boundaries of flexibility!</li> |
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<li><strong>๐ค Models & Libraries Tested:</strong> We put the best through their paces: Phi-3-medium-128k-instruct, Meta-Llama-3.1-8B-Instruct, Mistral-7B-Instruct-v0.3, Qwen2-7B-Instruct, and Gemma-2-9b-it, using TGI, vLLM, DeepSpeed Mii, CTranslate2, Triton with vLLM Backend, and TensorRT-LLM.</li> |
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</ul> |
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</div> |
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""" |
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CSV_URL = "hf://datasets/rbgo/llm-inference-benchmark/LLM-inference-benchmark-3.csv" |
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def load_and_process_csv(): |
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df = pd.read_csv(CSV_URL) |
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columns_order = [ |
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"Model_Name", "Library", "TTFT", "Tokens-per-Second", "Token_Count", "input_length","output_length" |
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] |
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for col in columns_order: |
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if col not in df.columns: |
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df[col] = pd.NA |
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return df[columns_order] |
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df = load_and_process_csv() |
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def get_leaderboard_df(): |
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return df |
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def filter_and_search(search_term, library_filter): |
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filtered_df = df.copy() |
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if search_term: |
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filtered_df = filtered_df[filtered_df['Model_Name'].str.contains(search_term, case=False, na=False)] |
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if library_filter != "All": |
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filtered_df = filtered_df[filtered_df['Library'] == library_filter] |
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return filtered_df |
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custom_css = """ |
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body { |
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background-color: #f0fff0; |
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font-family: 'Roboto', sans-serif; |
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} |
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.gradio-container { |
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max-width: 1200px !important; |
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} |
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.gradio-container .prose * { |
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color: #00480a !important; |
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} |
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.gradio-container .prose h2, |
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.gradio-container .prose h3 { |
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color: #00480a !important; |
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} |
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.tabs { |
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background-color: #e6ffd9; |
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border-radius: 15px; |
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overflow: hidden; |
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box-shadow: 0 4px 6px rgba(0,0,0,0.1); |
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} |
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.tab-nav { |
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background-color: #00480a; |
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padding: 10px; |
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} |
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.tab-nav button { |
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color: #cbff4d !important; |
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background-color: #006400; |
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border: none; |
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padding: 10px 20px; |
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margin-right: 5px; |
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border-radius: 10px; |
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cursor: pointer; |
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transition: all 0.3s ease; |
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} |
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.tab-nav button:hover { |
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background-color: #cbff4d; |
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color: #00480a !important; |
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} |
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.tab-nav button.selected { |
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background-color: #cbff4d; |
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color: #00480a !important; |
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font-weight: bold; |
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} |
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.gr-button-primary { |
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background-color: #00480a !important; |
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border-color: #00480a !important; |
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color: #cbff4d !important; |
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} |
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.gr-button-primary:hover { |
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background-color: #cbff4d !important; |
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color: #00480a !important; |
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} |
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""" |
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with gr.Blocks(css=custom_css) as demo: |
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gr.HTML(DESCRIPTION) |
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gr.HTML(INTRODUCTION) |
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with gr.Tabs(): |
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with gr.TabItem("๐ Leaderboard"): |
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with gr.Row(): |
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search_input = gr.Textbox(label="๐ Search Model Name", placeholder="Enter model name...") |
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library_dropdown = gr.Dropdown(choices=["All"] + df['Library'].unique().tolist(), label="๐ท๏ธ Filter by Library", value="All") |
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leaderboard = gr.DataFrame(df) |
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gr.HTML(HOW_WE_TESTED) |
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search_input.change(filter_and_search, inputs=[search_input, library_dropdown], outputs=leaderboard) |
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library_dropdown.change(filter_and_search, inputs=[search_input, library_dropdown], outputs=leaderboard) |
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demo.load(get_leaderboard_df, outputs=[leaderboard]) |
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if __name__ == "__main__": |
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demo.launch() |