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import gradio as gr |
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import pandas as pd |
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from src.utils import AutoEvalColumn, fields, make_clickable_names, plot_throughput |
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df = pd.read_csv("data/code_eval_board.csv") |
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COLS = [c.name for c in fields(AutoEvalColumn) if not c.hidden] |
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TYPES = [c.type for c in fields(AutoEvalColumn) if not c.hidden] |
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COLS_LITE = [ |
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c.name for c in fields(AutoEvalColumn) if c.displayed_by_default and not c.hidden |
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] |
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TYPES_LITE = [ |
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c.type for c in fields(AutoEvalColumn) if c.displayed_by_default and not c.hidden |
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] |
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def select_columns(df, columns): |
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always_here_cols = [ |
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AutoEvalColumn.model_type_symbol.name, |
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AutoEvalColumn.model.name, |
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] |
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filtered_df = df[ |
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always_here_cols |
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+ [c for c in COLS if c in df.columns and c in columns] |
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] |
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return filtered_df |
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def filter_items(df, leaderboard_table, query): |
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if query == "all": |
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return df[leaderboard_table.columns] |
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else: |
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query = query[0] |
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filtered_df = df[(df["T"] == query)] |
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return filtered_df[leaderboard_table.columns] |
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def search_table(df, leaderboard_table, query): |
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filtered_df = df[(df["Models"].str.contains(query, case=False))] |
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return filtered_df[leaderboard_table.columns] |
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df = make_clickable_names(df) |
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demo = gr.Blocks() |
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with demo: |
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with gr.Row(): |
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gr.Markdown( |
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"""<div style="text-align: center;"><h1> β Multilingual <span style='color: #e6b800;'>Code</span> Models <span style='color: #e6b800;'>Evaluation</span></h1></div>\ |
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<br>\ |
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<p>Inspired from the <a href="https://huggingface.co/spaces/HuggingFaceH4/open_llm_leaderboard">π€ Open LLM Leaderboard</a> and <a href="https://huggingface.co/spaces/optimum/llm-perf-leaderboard">π€ Open LLM-Perf Leaderboard ποΈ</a>, we compare performance of base multilingual code generation models on <a href="https://huggingface.co/datasets/openai_humaneval">HumanEval</a> benchmark and <a href="https://huggingface.co/datasets/nuprl/MultiPL-E">MultiPL-E</a>. We also measure throughput and provide\ |
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information about the models. We only compare pre-trained multilingual code models, that people can start from as base models for their trainings.</p>""" |
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) |
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with gr.Tabs(elem_classes="tab-buttons") as tabs: |
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with gr.Column(): |
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with gr.Tabs(elem_classes="A100-tabs") as A100_tabs: |
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with gr.TabItem("π Evaluation table", id=0): |
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with gr.Column(): |
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shown_columns = gr.CheckboxGroup( |
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choices=[ |
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c |
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for c in COLS |
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if c |
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not in [ |
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AutoEvalColumn.dummy.name, |
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AutoEvalColumn.model.name, |
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AutoEvalColumn.model_type_symbol.name, |
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] |
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], |
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value=[ |
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c |
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for c in COLS_LITE |
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if c |
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not in [ |
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AutoEvalColumn.dummy.name, |
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AutoEvalColumn.model.name, |
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AutoEvalColumn.model_type_symbol.name, |
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] |
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], |
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label="Select columns to show", |
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elem_id="column-select", |
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interactive=True, |
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) |
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with gr.Row(): |
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search_bar = gr.Textbox( |
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placeholder="π Search for your model and press ENTER...", |
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show_label=False, |
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elem_id="search-bar", |
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) |
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filter_columns = gr.Radio( |
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label="β Filter model types", |
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choices=["all", "π’ base", "πΆ instruction-tuned"], |
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value="all", |
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elem_id="filter-columns", |
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) |
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leaderboard_df = gr.components.Dataframe( |
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value=df[ |
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[ |
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AutoEvalColumn.model_type_symbol.name, |
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AutoEvalColumn.model.name, |
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] |
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+ shown_columns.value |
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], |
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headers=[ |
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AutoEvalColumn.model_type_symbol.name, |
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AutoEvalColumn.model.name, |
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] |
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+ shown_columns.value, |
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datatype=TYPES, |
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elem_id="leaderboard-table", |
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) |
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hidden_leaderboard_df = gr.components.Dataframe( |
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value=df, |
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headers=COLS, |
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datatype=["str" for _ in range(len(COLS))], |
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visible=False, |
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) |
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search_bar.submit( |
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search_table, |
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[hidden_leaderboard_df, leaderboard_df, search_bar], |
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leaderboard_df, |
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) |
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shown_columns.change( |
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select_columns, |
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[hidden_leaderboard_df, shown_columns], |
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leaderboard_df, |
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) |
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filter_columns.change( |
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filter_items, |
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[hidden_leaderboard_df, leaderboard_df, filter_columns], |
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leaderboard_df, |
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) |
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with gr.TabItem("π Performance Plot", id=1): |
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with gr.Row(): |
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bs_1_plot = gr.components.Plot( |
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value=plot_throughput(df, bs=1), |
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elem_id="bs1-plot", |
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show_label=False, |
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) |
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bs_50_plt = gr.components.Plot( |
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value=plot_throughput(df, bs=50), |
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elem_id="bs50-plot", |
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show_label=False, |
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) |
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with gr.Row(): |
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gr.Markdown( |
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"""Notes: |
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<ul> |
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<li> Throughputs and peak memory usage are measured using <a href="https://github.com/huggingface/optimum-benchmark/tree/main">Optimum-Benchmark</a> which powers <a href="https://huggingface.co/spaces/optimum/llm-perf-leaderboard">Open LLM-Perf Leaderboard</a>. (0 throughput corresponds to OOM).</li> |
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<li> All models were evaluated with the <a href="https://github.com/bigcode-project/bigcode-evaluation-harness/tree/main">bigcode-evaluation-harness</a> with top-p=0.95, temperature=0.2 and n_samples=50.</li> |
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<li> HumanEval-Python, reports the pass@1 on HumanEval, the rest is from MultiPL-E benchmark.</li> |
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<li> Average score is the average pass@1 over all languages. For Win Rate, we compute model rank for each language as <code style="white-space: nowrap; display: inline;">num_models - (rank -1)</code> and average their rankings.</li> |
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<li> #Languages column represents the number of programming languages included during the pretraining. |
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</ul>""" |
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) |
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demo.launch() |
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