Huanzhi Mao
commited on
Commit
·
67249b1
1
Parent(s):
57013a0
Support auto-populated leaderboard from csv file.
Browse files
app.py
CHANGED
@@ -4,6 +4,7 @@ import webbrowser
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import os
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import re
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import pandas as pd
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# from anthropic import Anthropic
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from openai import OpenAI
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from mistralai.client import MistralClient
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@@ -627,344 +628,31 @@ COLUMNS = [
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"Parallel Multiple Exec",
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"Relevance Detection",
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]
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)
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(
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653 |
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88.00,
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83.50,
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72.94,
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78.00,
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68.00,
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50.00,
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87.50,
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),
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(
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3,
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84.16,
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"Gorilla-OpenFunctions-v2",
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"Gorilla LLM",
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"Apache 2.0",
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87.82,
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670 |
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88.50,
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82.50,
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78.00,
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85.88,
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82.00,
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68.00,
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55.00,
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71.67,
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),
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(
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4,
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83.67,
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"Claude-3-Opus-20240229",
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"Anthropic",
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"Proprietary",
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85.27,
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83.00,
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79.00,
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72.00,
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89.41,
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80.00,
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68.00,
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57.50,
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84.58,
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),
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(
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5,
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81.75,
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"Mistral-Medium-2312",
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"Mistral AI",
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"Proprietary",
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80.18,
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84.50,
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76.50,
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73.50,
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84.71,
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86.00,
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76.00,
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62.50,
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90.00,
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),
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(
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6,
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80.30,
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"Claude-3-Sonnet-20240229",
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"Anthropic",
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"Proprietary",
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85.64,
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87.50,
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83.50,
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83.00,
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90.59,
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82.00,
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72.00,
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60.00,
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41.25,
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),
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(
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7,
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80.30,
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"GPT-3.5-Turbo-0125",
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"OpenAI",
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"Proprietary",
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80.18,
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84.50,
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82.50,
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79.00,
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84.71,
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80.00,
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68.00,
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47.50,
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45.33,
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),
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(
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8,
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79.07,
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"Functionary-Medium-v2.2",
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"MeetKai",
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"N/A",
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79.17,
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90.00,
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85.00,
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78.00,
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65.88,
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62.00,
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70.00,
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50.00,
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79.17,
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),
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(
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9,
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77.41,
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"Claude-2.1",
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"Anthropic",
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"Proprietary",
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85.64,
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83.00,
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77.00,
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60.50,
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68.23,
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48.00,
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52.00,
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47.00,
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78.33,
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),
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10,
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61.75,
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"Mistral-tiny-2312",
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"Mistral AI",
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"Proprietary",
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59.64,
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62.50,
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56.00,
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43.00,
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71.17,
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84.00,
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74.00,
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36.00,
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77.08,
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),
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(
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11,
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61.02,
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"Claude-instant-1.2",
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"Anthropic",
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"Proprietary",
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68.73,
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59.00,
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56.00,
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44.00,
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),
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12,
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56.87,
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"Mistral-small-2312",
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"Mistral AI",
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"Proprietary",
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46.55,
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68.00,
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32.35,
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13,
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56.81,
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"Mistral-large-2402",
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"Mistral AI",
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"Proprietary",
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71.82,
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0.00,
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0.00,
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5.00,
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),
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(
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14,
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55.90,
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"Nexusflow-Raven-v2",
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"Nexusflow",
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"Apache 2.0",
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76.55,
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83.50,
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39.50,
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32.50,
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61.18,
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84.00,
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62.00,
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47.00,
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0.00,
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),
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(
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15,
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55.87,
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"FireFunction-v1",
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"Fireworks",
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"Apache 2.0",
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73.19,
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87.00,
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0.00,
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0.00,
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68.23,
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16,
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55.68,
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"Gemini-1.0-Pro",
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"Google",
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"Proprietary",
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79.71,
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89.00,
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0.00,
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0.00,
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51.19,
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17,
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54.52,
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"GPT-4-0613",
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"OpenAI",
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"Proprietary",
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74.55,
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86.00,
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0.00,
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2.00,
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45.96,
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"Deepseek-v1.5",
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"Deepseek",
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"Deepseek License",
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48.36,
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61.00,
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37.00,
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47.50,
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24.70,
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2.00,
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44.40,
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"Gemma",
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"Google",
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"gemma-terms-of-use",
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61.45,
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60.00,
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41.00,
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32.00,
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44.71,
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48.00,
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44.00,
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25.50,
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0.42,
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20,
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33.37,
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"Gorilla-OpenFunctions-v0",
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"Gorilla LLM",
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"Apache 2.0",
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60.00,
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56.00,
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0.00,
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3.50,
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38.24,
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65.00,
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0.00,
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0.00,
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4.58,
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),
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(
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21,
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24.58,
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"Glaive-v1",
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"Glaive",
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"cc-by-sa-4.0",
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34.55,
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26.00,
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0.00,
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0.00,
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21.18,
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36.00,
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0.00,
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2.50,
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MODELS = [
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"gorilla-openfunctions-v2",
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def send_feedback(prompt, function, model, temperature, codeOutput, jsonOutput, vote):
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# Login and get access token
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print("Sending feedback")
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login_url = 'https://us-west-2.aws.realm.mongodb.com/api/client/v2.0/app/data-onwzq/auth/providers/local-userpass/login'
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headers = {'Content-Type': 'application/json'}
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login_data = {
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else:
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print('Error:', response.text)
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def send_feedback_negative(prompt, function, model, temperature, codeOutput, jsonOutput):
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send_feedback(prompt, function, model, temperature, codeOutput, jsonOutput, "negative")
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return "Thank you for your feedback. We will use this to improve our service."
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def get_leaderboard():
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# Convert the leaderboard data to a pandas DataFrame for easier handling and display
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leaderboard_df = pd.DataFrame(DATA, columns=COLUMNS)
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return leaderboard_df
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# Initialize the leaderboard data so it's loaded when the page is opened
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initial_leaderboard_data = get_leaderboard()
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prompt = gr.Textbox(label="Prompt", placeholder="Type your prompt here...", lines=4)
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funcDescription = gr.Textbox(
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label="Function Description", placeholder="Describe the function...", lines=20
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outputs=[feedbackMsg],
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)
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demo.launch()
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import os
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import re
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import pandas as pd
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import csv
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# from anthropic import Anthropic
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from openai import OpenAI
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from mistralai.client import MistralClient
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"Parallel Multiple Exec",
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"Relevance Detection",
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]
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+
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def parse_csv(text):
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lines = text.split('\n')
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result = []
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for i in range(len(lines)):
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row = lines[i].split(',')[:15]
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row = [parse_value(value) for value in row]
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row.insert(0, i)
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overall_acc = row.pop(4)
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row.insert(1, overall_acc)
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row.pop(5)
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row.pop(5)
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result.append(row)
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return result
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def parse_value(value):
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if value.endswith('%'):
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return float(value[:-1])
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return value
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with open('./data.csv', 'r') as file:
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csv_text = file.read()
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DATA = parse_csv(csv_text)
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656 |
|
657 |
MODELS = [
|
658 |
"gorilla-openfunctions-v2",
|
|
|
665 |
|
666 |
def send_feedback(prompt, function, model, temperature, codeOutput, jsonOutput, vote):
|
667 |
# Login and get access token
|
|
|
668 |
login_url = 'https://us-west-2.aws.realm.mongodb.com/api/client/v2.0/app/data-onwzq/auth/providers/local-userpass/login'
|
669 |
headers = {'Content-Type': 'application/json'}
|
670 |
login_data = {
|
|
|
707 |
else:
|
708 |
print('Error:', response.text)
|
709 |
|
710 |
+
def get_voting_result():
|
711 |
+
login_url = 'https://us-west-2.aws.realm.mongodb.com/api/client/v2.0/app/data-onwzq/auth/providers/local-userpass/login'
|
712 |
+
headers = {'Content-Type': 'application/json'}
|
713 |
+
login_data = {
|
714 |
+
'username': 'website',
|
715 |
+
'password': mongoDBPassword
|
716 |
+
}
|
717 |
+
response = requests.post(login_url, headers=headers, json=login_data)
|
718 |
+
access_token = response.json()['access_token']
|
719 |
+
|
720 |
+
# Scanning the database
|
721 |
+
url = 'https://us-west-2.aws.data.mongodb-api.com/app/data-onwzq/endpoint/data/v1/action/find'
|
722 |
+
headers = {
|
723 |
+
'Content-Type': 'application/json',
|
724 |
+
'Access-Control-Request-Headers': '*',
|
725 |
+
'Authorization': f'Bearer {access_token}'
|
726 |
+
}
|
727 |
+
body = {
|
728 |
+
'collection': "vote",
|
729 |
+
'database': "gorilla-feedback",
|
730 |
+
'dataSource': "gorilla",
|
731 |
+
}
|
732 |
+
response = requests.post(url, headers=headers, json=body)
|
733 |
+
if response.ok:
|
734 |
+
data = response.json()
|
735 |
+
votes = data['documents']
|
736 |
+
votes = [vote for vote in votes if vote['result'] in ['positive', 'negative']]
|
737 |
+
# extract only the model, positive count, negative count
|
738 |
+
model_votes = {}
|
739 |
+
for vote in votes:
|
740 |
+
model = vote['model']
|
741 |
+
if model not in model_votes:
|
742 |
+
model_votes[model] = {'positive': 0, 'negative': 0}
|
743 |
+
model_votes[model][vote['result']] += 1
|
744 |
+
for model in model_votes:
|
745 |
+
model_votes[model]['accuracy'] = model_votes[model]['positive'] / (model_votes[model]['positive'] + model_votes[model]['negative'])
|
746 |
+
|
747 |
+
result = []
|
748 |
+
for model in model_votes:
|
749 |
+
result.append([model, model_votes[model]['accuracy'], model_votes[model]['positive'], model_votes[model]['negative']])
|
750 |
+
result = sorted(result, key=lambda x: x[1], reverse=True)
|
751 |
+
return pd.DataFrame(result, columns=['Model', 'Accuracy', 'Positive', 'Negative'])
|
752 |
+
else:
|
753 |
+
print('Error:', response.text)
|
754 |
+
return []
|
755 |
+
|
756 |
def send_feedback_negative(prompt, function, model, temperature, codeOutput, jsonOutput):
|
757 |
send_feedback(prompt, function, model, temperature, codeOutput, jsonOutput, "negative")
|
758 |
return "Thank you for your feedback. We will use this to improve our service."
|
|
|
954 |
def get_leaderboard():
|
955 |
# Convert the leaderboard data to a pandas DataFrame for easier handling and display
|
956 |
leaderboard_df = pd.DataFrame(DATA, columns=COLUMNS)
|
957 |
+
leaderboard_df = leaderboard_df.sort_values(by="Rank")
|
958 |
return leaderboard_df
|
959 |
|
960 |
|
|
|
|
|
|
|
961 |
prompt = gr.Textbox(label="Prompt", placeholder="Type your prompt here...", lines=4)
|
962 |
funcDescription = gr.Textbox(
|
963 |
label="Function Description", placeholder="Describe the function...", lines=20
|
|
|
1055 |
outputs=[feedbackMsg],
|
1056 |
)
|
1057 |
|
1058 |
+
with gr.TabItem("Voting Leaderboard"):
|
1059 |
+
gr.Markdown("## This is a live leaderboard where you can see user's voting result on the agent's response.")
|
1060 |
+
leaderboard_data = gr.Dataframe(
|
1061 |
+
value=get_voting_result(), wrap=True
|
1062 |
+
)
|
1063 |
+
|
1064 |
demo.launch()
|
data.csv
ADDED
@@ -0,0 +1,22 @@
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
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|
|
|
|
|
|
|
1 |
+
GPT-4-1106-Preview (FC),OpenAI,Proprietary,84.28%,86.06%,65.53%,80.73%,88.50%,90.50%,84.50%,74.12%,70.00%,68.00%,50.00%,88.75%
|
2 |
+
GPT-4-0125-Preview (FC),OpenAI,Proprietary,84.16%,85.61%,67.24%,81.45%,89.00%,88.50%,83.50%,72.94%,78.00%,68.00%,50.00%,87.50%
|
3 |
+
Gorilla-OpenFunctions-v2 (FC),Gorilla LLM,Apache 2.0,84.16%,84.33%,72.72%,87.82%,89.00%,82.50%,78.00%,85.88%,82.00%,68.00%,55.00%,71.67%
|
4 |
+
Claude-3-Opus-20240229 (Prompt),Anthropic,Proprietary,83.67%,79.82%,73.73%,85.27%,83.00%,79.00%,72.00%,89.41%,80.00%,68.00%,57.50%,84.58%
|
5 |
+
Mistral-Medium-2312 (Prompt),Mistral AI,Proprietary,81.75%,78.67%,66.93%,80.18%,84.50%,76.50%,73.50%,84.71%,76.00%,62.00%,45.00%,90.00%
|
6 |
+
Claude-3-Sonnet-20240229 (Prompt),Anthropic,Proprietary,80.30%,84.91%,76.15%,85.64%,87.50%,83.50%,83.00%,90.59%,82.00%,72.00%,60.00%,41.25%
|
7 |
+
GPT-3.5-Turbo-0125 (FC),OpenAI,Proprietary,80.30%,81.55%,69.43%,80.18%,84.50%,82.50%,79.00%,84.71%,80.00%,68.00%,45.00%,68.33%
|
8 |
+
Functionary-Small (FC),MeetKai,N/A,79.07%,82.31%,64.40%,75.75%,89.50%,82.50%,81.50%,64.12%,78.00%,68.00%,47.50%,78.33%
|
9 |
+
Functionary-Medium-v2.2 (FC),MeetKai,N/A,79.03%,82.25%,61.97%,76.00%,90.00%,85.00%,77.99%,65.88%,62.00%,70.00%,50.00%,79.17%
|
10 |
+
Claude-2.1 (Prompt),Anthropic,Proprietary,77.41%,76.53%,53.93%,85.64%,83.00%,77.00%,60.50%,68.23%,48.00%,52.00%,47.50%,78.33%
|
11 |
+
Mistral-tiny-2312 (Prompt),Mistral AI,Proprietary,61.75%,55.28%,53.42%,59.64%,62.50%,56.00%,43.00%,71.17%,74.00%,36.00%,32.50%,77.08%
|
12 |
+
Claude-instant-1.2 (Prompt),Anthropic,Proprietary,61.02%,57.06%,49.88%,68.73%,59.00%,56.50%,44.00%,60.00%,52.00%,50.00%,37.50%,61.67%
|
13 |
+
Mistral-small-2312 (Prompt),Mistral AI,Proprietary,56.87%,57.01%,36.18%,46.55%,68.00%,50.50%,63.00%,34.71%,32.00%,38.00%,40.00%,89.58%
|
14 |
+
Mistral-large-2402 (FC),Mistral AI,Proprietary,56.81%,40.58%,38.49%,71.82%,90.50%,0.00%,0.00%,72.94%,76.00%,0.00%,5.00%,84.58%
|
15 |
+
Nexusflow-Raven-v2 (FC),Nexusflow,Apache 2.0,55.90%,58.01%,63.67%,76.55%,83.50%,39.50%,32.50%,61.18%,84.00%,62.00%,47.50%,0.00%
|
16 |
+
FireFunction-v1 (FC),Fireworks,Apache 2.0,55.87%,40.05%,37.31%,73.19%,87.00%,0.00%,0.00%,68.23%,76.00%,0.00%,5.00%,81.25%
|
17 |
+
Gemini-1.0-Pro (FC),Google,Proprietary,55.68%,42.18%,29.30%,79.71%,89.00%,0.00%,0.00%,51.19%,66.00%,0.00%,0.00%,78.30%
|
18 |
+
GPT-4-0613 (FC),OpenAI,Proprietary,54.52%,40.14%,27.12%,74.55%,86.00%,0.00%,0.00%,50.00%,56.00%,0.00%,2.50%,87.08%
|
19 |
+
Deepseek-v1.5 (Prompt),Deepseek,Deepseek License,45.96%,48.59%,8.55%,48.36%,61.00%,37.50%,47.50%,24.70%,2.00%,0.00%,7.50%,66.25%
|
20 |
+
Gemma,Google,gemma-terms-of-use,44.40%,48.61%,40.43%,61.45%,60.00%,41.00%,32.00%,44.71%,48.00%,44.00%,25.00%,0.42%
|
21 |
+
Gorilla-OpenFunctions-v0 (FC),Gorilla LLM,Apache 2.0,33.37%,29.88%,24.06%,60.00%,56.00%,0.00%,3.50%,38.24%,58.00%,0.00%,0.00%,4.58%
|
22 |
+
Glaive-v1 (FC),Glaive,cc-by-sa-4.0,24.58%,15.14%,14.92%,34.55%,26.00%,0.00%,0.00%,21.18%,36.00%,0.00%,2.50%,46.25%
|