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import math
import re
from typing import *

import numpy as np
import pandas as pd
import plotly.express as px
import plotly.graph_objects as go
import streamlit as st
from sklearn.linear_model import LogisticRegression

from modules.nav import Navbar


# page related utils
def default_page_setting(
    layout: Literal["wide", "centered"] = "centered",
):
    st.set_page_config(page_title="VARCO Arena", layout=layout)
    sidebar_placeholder = st.sidebar.empty()

    css = f"""
    <style>
        .appview-container .main .block-container {{
            padding-top: 32px;
        }}
        [data-testid="stSidebarNav"]>ul {{
            padding-top: 32px;
        }}
    </style>
    """
    st.markdown(css, unsafe_allow_html=True)
    if "korean" not in st.session_state:
        st.session_state["korean"] = False
    return sidebar_placeholder


# Function to update is_running and refresh only the sidebar
def set_nav_bar(is_running: bool, sidebar_placeholder=None, toggle_hashstr: str = None):
    st.session_state["is_running"] = is_running
    # Refresh only the sidebar content
    Navbar(sidebar_placeholder, toggle_hashstr=toggle_hashstr)


def set_prompt_preview(did_select_prompt: bool, expander_placeholder=None):
    st.session_state["did_select_prompt"] = did_select_prompt


def show_linebreak_in_md(text: str) -> str:
    return text.replace("\n", "    \n") if isinstance(text, str) else "(Empty)"


def escape_markdown(text: str, version: int = 2, entity_type: str = None) -> str:
    """
    Helper function to escape telegram markup symbols.

    Args:
        text (:obj:`str`): The text.
        version (:obj:`int` | :obj:`str`): Use to specify the version of telegrams Markdown.
            Either ``1`` or ``2``. Defaults to ``1``.
        entity_type (:obj:`str`, optional): For the entity types ``PRE``, ``CODE`` and the link
            part of ``TEXT_LINKS``, only certain characters need to be escaped in ``MarkdownV2``.
            See the official API documentation for details. Only valid in combination with
            ``version=2``, will be ignored else.
    """
    if int(version) == 1:
        escape_chars = r"_*`["
    elif int(version) == 2:
        if entity_type in ["pre", "code"]:
            escape_chars = r"\`"
        elif entity_type == "text_link":
            escape_chars = r"\)"
        else:
            escape_chars = r"_*[]()~`>#+-=|{}.!:"
    else:
        raise ValueError("Markdown version must be either 1 or 2!")

    return re.sub(f"([{re.escape(escape_chars)}])", r"\\\1", text)


# Elo result related computes
def compute_relative_winrate_to_1st(elo_df, float_pts: int = 3):
    """
    Post-processing utility for saving elo table to an excel file. Possibly work as a absolute measure for quality.

    elo_df:
    columns: Model, Elo rating

    add:
    column: relative_winrate_to_1st
    """
    from functools import partial

    rating1st = elo_df["Elo rating"].max()
    win_rate_to_1st = partial(elo_to_winrate, rating_b=rating1st)
    elo_df["winrate_vs_1st"] = elo_df["Elo rating"].apply(win_rate_to_1st)

    return elo_df


def elo_to_winrate(rating_a: float = None, rating_b: float = None) -> float:
    # compute P(A wins B) from ratings
    rate_diff = rating_a - rating_b
    win_rate = 1 / (1 + 10 ** (-rate_diff / 400))
    return win_rate


def compute_mle_elo(df, SCALE=400, BASE=10, INIT_RATING=1000):
    if isinstance(df, list):
        df = pd.DataFrame(df)
    df = df.dropna(subset=["winner", "model_a", "model_b"])  # dropping None vs sth

    models = pd.concat([df["model_a"], df["model_b"]]).unique()
    models = pd.Series(np.arange(len(models)), index=models)

    # duplicate battles
    df = pd.concat([df, df], ignore_index=True)
    p = len(models.index)
    n = df.shape[0]

    X = np.zeros([n, p])
    X[np.arange(n), models[df["model_a"]]] = +math.log(BASE)
    X[np.arange(n), models[df["model_b"]]] = -math.log(BASE)

    # one A win => two A win
    Y = np.zeros(n)
    Y[df["winner"] == "A"] = 1.0

    WARNING = "elo.py:L{L} compute_mle_elo() // Warning: Seeing this message indicates the regression result for elo is unreliable. You should be test-running the Varco Arena or something odd (perfect one-sided wins) is happening\n\nto avoid logistic regressor error, manually putting other class"
    if (Y == 0).all():
        print(WARNING.format(L=32))
        Y[-1] = 1.0
    elif (Y == 1.0).all():
        print(WARNING.format(L=35))
        Y[-1] = 0.0

    lr = LogisticRegression(fit_intercept=False)
    lr.fit(X, Y)

    elo_scores = SCALE * lr.coef_[0] + INIT_RATING

    elo_scores = pd.Series(elo_scores, index=models.index).sort_values(ascending=False)

    df = (
        pd.DataFrame(
            [[n, round(elo_scores[n], 2)] for n in elo_scores.keys()],
            columns=["Model", "Elo rating"],
        )
        .sort_values("Elo rating", ascending=False)
        .reset_index(drop=True)
    )
    df.index = df.index + 1

    return df


def fill_missing_values(df, default_value=0):
    """
    This is used for completing pivot table
    """
    # ๊ธฐ์กด ์ธ๋ฑ์Šค์™€ ์ปฌ๋Ÿผ์„ ๊ฐ€์ ธ์˜ต๋‹ˆ๋‹ค.
    existing_index = set(df.index)
    existing_columns = set(df.columns)

    # ๋ชจ๋“  ๊ฐ€๋Šฅํ•œ ์ธ๋ฑ์Šค์™€ ์ปฌ๋Ÿผ์„ ๊ฐ€์ ธ์˜ต๋‹ˆ๋‹ค.
    all_index = set(df.index.union(df.columns))
    all_columns = set(df.index.union(df.columns))

    # ๊ธฐ๋ณธ๊ฐ’์œผ๋กœ ๋ˆ„๋ฝ๋œ ํ–‰๊ณผ ์—ด์„ ์ฑ„์›๋‹ˆ๋‹ค.
    missing_index = all_index - existing_index
    missing_columns = all_columns - existing_columns

    # ๋ˆ„๋ฝ๋œ ํ–‰์„ ๊ธฐ๋ณธ๊ฐ’์œผ๋กœ ์ถ”๊ฐ€ํ•ฉ๋‹ˆ๋‹ค.
    for idx in missing_index:
        df.loc[idx] = default_value

    # ๋ˆ„๋ฝ๋œ ์—ด์„ ๊ธฐ๋ณธ๊ฐ’์œผ๋กœ ์ถ”๊ฐ€ํ•ฉ๋‹ˆ๋‹ค.
    for col in missing_columns:
        df[col] = default_value

    # ์ธ๋ฑ์Šค์™€ ์ปฌ๋Ÿผ์„ ๋‹ค์‹œ ์ •๋ ฌํ•ฉ๋‹ˆ๋‹ค.
    df.sort_index(axis=0, inplace=True)
    df.sort_index(axis=1, inplace=True)

    return df


def _plot_length_bias(results, judgename: str = None, ratio: bool = True):
    if not isinstance(results, pd.DataFrame):
        results = pd.DataFrame.from_dict(results)

    if ratio:

        def _win_to_loss_wc_ratio(row):
            try:
                if row.winner == "A":
                    ratio = len(row.generated_a.split()) / len(row.generated_b.split())
                else:
                    ratio = len(row.generated_b.split()) / len(row.generated_a.split())
            except Exception as e:
                ratio = None
            return ratio

        df = results
        df["ratio"] = df.apply(_win_to_loss_wc_ratio, axis=1)
        df["category"] = "win/loss wc ratio"

        # Create the box plot
        plot_df = df.drop(
            columns=[col for col in df if col not in ["category", "ratio"]]
        )
        fig = px.violin(
            plot_df,
            x="category",
            y="ratio",
            # log_y=True,
            title=f"Length bias ({judgename})",
            # labels={"category": "win/loss wc ratio", "ratio": "ratio"},
        )

    else:
        data = []
        for _, row in results.iterrows():
            data.append(
                {
                    "category": "won",
                    "wordcounts": len(row.generated_a.split())
                    if row["winner"] == "A"
                    else len(row.generated_b.split()),
                }
            )
            data.append(
                {
                    "category": "lost",
                    "wordcounts": len(row.generated_b.split())
                    if row["winner"] == "A"
                    else len(row.generated_a.split()),
                }
            )
            data.append(
                {
                    "category": "won/lost ratio",
                    "wordcounts": len(row.generated_a.split())
                    / len(row.generated_b.split())  # a won
                    if row["winner"] == "A"
                    else len(row.generated_b.split())
                    / len(row.generated_a.split()),  # b won
                }
            )

        plot_df = pd.DataFrame(data)

        # Create the box plot
        fig = px.violin(
            plot_df,
            x="category",
            y="wordcounts",
            # log_y=True,
            title=f"Length bias ({judgename})",
            labels={"category": "outcome", "wordcount": "wordcount"},
        )

    return fig, plot_df


def visualization(results, is_overall=False):
    """
    varco_arena/visualization.py ๋กœ๋ถ€ํ„ฐ ๊ฐ€์ ธ์˜จ ํ•จ์ˆ˜์ด๋‚˜ ์—…๋ฐ์ดํŠธ๊ฐ€ ๋งŽ์ด ๋˜์—ˆ์œผ๋ฏ€๋กœ ์กฐ์‹ฌ!
    """
    if not isinstance(results, pd.DataFrame):
        results = pd.DataFrame.from_dict(results)

    figure_dict = {}
    judgename = results.iloc[0]["evaluation_model"]

    # judge bias of length
    fig, plot_df = _plot_length_bias(results, judgename=judgename)
    figure_dict["length_bias"] = fig
    figure_dict["length_bias_df"] = plot_df

    # Judge bias  of Position A/B
    fig = px.bar(
        results["winner"].value_counts(),
        title=f"Position A/B bias\n({judgename})",
        text_auto=True,
        height=400,
    )
    fig.update_layout(xaxis_title="Match Winner", yaxis_title="Count", showlegend=False)
    figure_dict["counts_of_match_winners"] = fig

    # Num. matches of each model
    fig = px.bar(
        pd.concat([results["model_a"], results["model_b"]]).value_counts(),
        title="Match Count per Model",
        text_auto=True,
    )
    fig.update_layout(
        xaxis_title="Model", yaxis_title="Match Count", height=400, showlegend=False
    )
    figure_dict["match_count_for_each_model"] = fig

    # Num. matches matrix (model v. model)
    ptbl = pd.pivot_table(
        results,
        index="model_a",
        columns="model_b",
        aggfunc="size",
        fill_value=0,
    )
    match_counts = ptbl + ptbl.T
    ordering = match_counts.sum().sort_values(ascending=False).index
    fig = px.imshow(
        match_counts.loc[ordering, ordering],
        title="Number of Matches (model vs. model)",
        text_auto=True,
    )
    fig.update_layout(
        xaxis_title="Model B",
        yaxis_title="Model A",
        xaxis_side="top",
        height=800,
        width=800,
        title_xanchor="left",
        title_yanchor="top",
        font=dict(size=10),
    )
    fig.update_traces(
        hovertemplate="Model A: %{y}<br>Model B: %{x}<br>Count: %{z}<extra></extra>"
    )
    figure_dict["match_count_of_each_combination_of_models"] = fig

    # Win rate matrix (model v. model)
    a_win_ptbl = pd.pivot_table(
        results[results["winner"] == "A"],
        index="model_a",
        columns="model_b",
        aggfunc="size",
        fill_value=0,
    )
    a_win_ptbl = fill_missing_values(a_win_ptbl)
    b_win_ptbl = pd.pivot_table(
        results[results["winner"] == "B"],
        index="model_a",
        columns="model_b",
        aggfunc="size",
        fill_value=0,
    )
    b_win_ptbl = fill_missing_values(b_win_ptbl)
    num_results_ptbl = pd.pivot_table(
        results, index="model_a", columns="model_b", aggfunc="size", fill_value=0
    )

    row_beats_col_freq = (a_win_ptbl + b_win_ptbl.T) / (
        num_results_ptbl + num_results_ptbl.T
    )
    prop_wins = row_beats_col_freq.mean(axis=1).sort_values(ascending=False)
    model_names = list(prop_wins.keys())

    row_beats_col = row_beats_col_freq.loc[model_names, model_names]
    fig = px.imshow(
        row_beats_col,
        color_continuous_scale="RdBu",
        text_auto=".2f",
        title="P(A wins B)",
    )
    fig.update_layout(
        xaxis_title="Model B",
        yaxis_title="Model A",  # y axis = row = index
        title_xanchor="left",
        title_yanchor="top",
        xaxis_side="top",
        height=800,
        width=800,
    )
    fig.update_traces(
        hovertemplate="Model A: %{y}<br>Model B: %{x}<br>P(A wins B): %{z}<extra></extra>"
    )
    figure_dict["fraction_of_model_a_wins_for_all_a_vs_b_matches"] = fig

    # Elo Rating
    elo = compute_mle_elo(results)
    elo_wr = compute_relative_winrate_to_1st(elo)
    # beautify
    elo_wr["Elo rating"] = elo_wr["Elo rating"].astype(int)
    elo_wr["winrate_vs_1st"] = elo_wr["winrate_vs_1st"].round(3)
    elo_wr.index.name = "Rank"

    figure_dict["elo_rating"] = elo_wr

    # Elo Rating by Task: Radar chart
    if is_overall:
        tasks = results["task"].unique().tolist()
        elo_by_task = pd.concat(
            [
                compute_mle_elo(results[results["task"] == task]).assign(task=task)
                for task in tasks
            ]
        )
        fig = px.line_polar(
            elo_by_task,
            r="Elo rating",
            theta="task",
            line_close=True,
            category_orders={"task": tasks},
            color="Model",
            markers=True,
            color_discrete_sequence=px.colors.qualitative.Pastel,
            title="Elo Rating by Task",
        )
        figure_dict["elo_rating_by_task"] = fig
    figure_dict["judgename"] = judgename

    return figure_dict