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Update app.py
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app.py
CHANGED
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@@ -4,20 +4,20 @@ import pandas as pd
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from math import isnan
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ROWS = [
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{"Team_name":"Nguyen Quang Thao","vi-law-nli
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{"Team_name":"NHK","vi-law-nli
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{"Team_name":"Innovation-LLM","vi-law-nli
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{"Team_name":"Bosch@AI Team","vi-law-nli
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{"Team_name":"URAx","vi-law-nli
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{"Team_name":"Abe","vi-law-nli
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{"Team_name":"PSLV-Warrior","vi-law-nli
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{"Team_name":"MinLegal","vi-law-nli
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{"Team_name":"NLPhi","vi-law-nli
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{"Team_name":"LICTU","vi-law-nli
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]
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BASE_DF = pd.DataFrame(ROWS)
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NUM_COLS = ["vi-law-nli
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def _prep_df(df: pd.DataFrame) -> pd.DataFrame:
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out = df.copy()
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@@ -41,8 +41,8 @@ def _render_table(df: pd.DataFrame) -> str:
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tds = [
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f"<td class='rank'>{int(row['Rank'])}</td>",
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f"<td class='team'>{row['Team_name']}</td>",
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f"<td>{_bar_html(row['vi-law-nli
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f"<td>{_bar_html(row['vi-law-qa
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f"<td>{_bar_html(row['vilaw-syllo'])}</td>",
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f"<td>{_bar_html(row['Final Result'])}</td>",
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]
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from math import isnan
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ROWS = [
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{"Team_name":"Nguyen Quang Thao","vi-law-nli":0.5816,"vi-law-qa":0.8217,"vilaw-syllo":0.38,"Final Result":0.5944333333},
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{"Team_name":"NHK","vi-law-nli":0.9333,"vi-law-qa":0.8683,"vilaw-syllo":0.3275,"Final Result":0.7097},
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{"Team_name":"Innovation-LLM","vi-law-nli":0.9567,"vi-law-qa":0.8367,"vilaw-syllo":0.541666667,"Final Result":0.7783555556},
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{"Team_name":"Bosch@AI Team","vi-law-nli":0.97,"vi-law-qa":0.9267,"vilaw-syllo":0.535833333,"Final Result":0.8108444444},
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{"Team_name":"URAx","vi-law-nli":0.945,"vi-law-qa":0.8333,"vilaw-syllo":0.576666667,"Final Result":0.7849888889},
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{"Team_name":"Abe","vi-law-nli":0.82,"vi-law-qa":0.84,"vilaw-syllo":0.2875,"Final Result":0.6491666667},
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{"Team_name":"PSLV-Warrior","vi-law-nli":0.565,"vi-law-qa":0.0333,"vilaw-syllo":0.525,"Final Result":0.3744333333},
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{"Team_name":"MinLegal","vi-law-nli":0.98,"vi-law-qa":0.8733,"vilaw-syllo":0.530833333,"Final Result":0.7947111111},
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{"Team_name":"NLPhi","vi-law-nli":0.6517,"vi-law-qa":0.815,"vilaw-syllo":0.479166667,"Final Result":0.6486222222},
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{"Team_name":"LICTU","vi-law-nli":0.8467,"vi-law-qa":0.8067,"vilaw-syllo":0.5375,"Final Result":0.7303},
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]
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BASE_DF = pd.DataFrame(ROWS)
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NUM_COLS = ["vi-law-nli", "vi-law-qa", "vilaw-syllo", "Final Result"]
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def _prep_df(df: pd.DataFrame) -> pd.DataFrame:
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out = df.copy()
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tds = [
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f"<td class='rank'>{int(row['Rank'])}</td>",
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f"<td class='team'>{row['Team_name']}</td>",
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f"<td>{_bar_html(row['vi-law-nli'])}</td>",
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f"<td>{_bar_html(row['vi-law-qa'])}</td>",
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f"<td>{_bar_html(row['vilaw-syllo'])}</td>",
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f"<td>{_bar_html(row['Final Result'])}</td>",
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]
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