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"""Script to produce radial plots."""

from functools import partial
import plotly.graph_objects as go
import json
import numpy as np
from collections import defaultdict
import pandas as pd
from pydantic import BaseModel
import gradio as gr
import requests


class Task(BaseModel):
    """Class to hold task information."""

    name: str
    metric: str

    def __hash__(self):
        return hash(self.name)


class Language(BaseModel):
    """Class to hold language information."""

    code: str
    name: str

    def __hash__(self):
        return hash(self.code)


class Dataset(BaseModel):
    """Class to hold dataset information."""

    name: str
    language: Language
    task: Task

    def __hash__(self):
        return hash(self.name)


TEXT_CLASSIFICATION = Task(name="text classification", metric="mcc")
INFORMATION_EXTRACTION = Task(name="information extraction", metric="micro_f1_no_misc")
GRAMMAR = Task(name="grammar", metric="mcc")
QUESTION_ANSWERING = Task(name="question answering", metric="em")
SUMMARISATION = Task(name="summarisation", metric="bertscore")
KNOWLEDGE = Task(name="knowledge", metric="mcc")
REASONING = Task(name="reasoning", metric="mcc")
ALL_TASKS = [obj for obj in globals().values() if isinstance(obj, Task)]

DANISH = Language(code="da", name="Danish")
NORWEGIAN = Language(code="no", name="Norwegian")
SWEDISH = Language(code="sv", name="Swedish")
ICELANDIC = Language(code="is", name="Icelandic")
FAROESE = Language(code="fo", name="Faroese")
GERMAN = Language(code="de", name="German")
DUTCH = Language(code="nl", name="Dutch")
ENGLISH = Language(code="en", name="English")
ALL_LANGUAGES = {
    obj.name: obj for obj in globals().values() if isinstance(obj, Language)
}

DATASETS = [
    Dataset(name="swerec", language=SWEDISH, task=TEXT_CLASSIFICATION),
    Dataset(name="angry-tweets", language=DANISH, task=TEXT_CLASSIFICATION),
    Dataset(name="norec", language=NORWEGIAN, task=TEXT_CLASSIFICATION),
    Dataset(name="sb10k", language=GERMAN, task=TEXT_CLASSIFICATION),
    Dataset(name="dutch-social", language=DUTCH, task=TEXT_CLASSIFICATION),
    Dataset(name="sst5", language=ENGLISH, task=TEXT_CLASSIFICATION),
    Dataset(name="suc3", language=SWEDISH, task=INFORMATION_EXTRACTION),
    Dataset(name="dansk", language=DANISH, task=INFORMATION_EXTRACTION),
    Dataset(name="norne-nb", language=NORWEGIAN, task=INFORMATION_EXTRACTION),
    Dataset(name="norne-nn", language=NORWEGIAN, task=INFORMATION_EXTRACTION),
    Dataset(name="mim-gold-ner", language=ICELANDIC, task=INFORMATION_EXTRACTION),
    Dataset(name="fone", language=FAROESE, task=INFORMATION_EXTRACTION),
    Dataset(name="germeval", language=GERMAN, task=INFORMATION_EXTRACTION),
    Dataset(name="conll-nl", language=DUTCH, task=INFORMATION_EXTRACTION),
    Dataset(name="conll-en", language=ENGLISH, task=INFORMATION_EXTRACTION),
    Dataset(name="scala-sv", language=SWEDISH, task=GRAMMAR),
    Dataset(name="scala-da", language=DANISH, task=GRAMMAR),
    Dataset(name="scala-nb", language=NORWEGIAN, task=GRAMMAR),
    Dataset(name="scala-nn", language=NORWEGIAN, task=GRAMMAR),
    Dataset(name="scala-is", language=ICELANDIC, task=GRAMMAR),
    Dataset(name="scala-fo", language=FAROESE, task=GRAMMAR),
    Dataset(name="scala-de", language=GERMAN, task=GRAMMAR),
    Dataset(name="scala-nl", language=DUTCH, task=GRAMMAR),
    Dataset(name="scala-en", language=ENGLISH, task=GRAMMAR),
    Dataset(name="scandiqa-da", language=DANISH, task=QUESTION_ANSWERING),
    Dataset(name="norquad", language=NORWEGIAN, task=QUESTION_ANSWERING),
    Dataset(name="scandiqa-sv", language=SWEDISH, task=QUESTION_ANSWERING),
    Dataset(name="nqii", language=ICELANDIC, task=QUESTION_ANSWERING),
    Dataset(name="germanquad", language=GERMAN, task=QUESTION_ANSWERING),
    Dataset(name="squad", language=ENGLISH, task=QUESTION_ANSWERING),
    Dataset(name="squad-nl", language=DUTCH, task=QUESTION_ANSWERING),
    Dataset(name="nordjylland-news", language=DANISH, task=SUMMARISATION),
    Dataset(name="mlsum", language=GERMAN, task=SUMMARISATION),
    Dataset(name="rrn", language=ICELANDIC, task=SUMMARISATION),
    Dataset(name="no-sammendrag", language=NORWEGIAN, task=SUMMARISATION),
    Dataset(name="wiki-lingua-nl", language=DUTCH, task=SUMMARISATION),
    Dataset(name="swedn", language=SWEDISH, task=SUMMARISATION),
    Dataset(name="cnn-dailymail", language=ENGLISH, task=SUMMARISATION),
    Dataset(name="mmlu-da", language=DANISH, task=KNOWLEDGE),
    Dataset(name="mmlu-no", language=NORWEGIAN, task=KNOWLEDGE),
    Dataset(name="mmlu-sv", language=SWEDISH, task=KNOWLEDGE),
    Dataset(name="mmlu-is", language=ICELANDIC, task=KNOWLEDGE),
    Dataset(name="mmlu-de", language=GERMAN, task=KNOWLEDGE),
    Dataset(name="mmlu-nl", language=DUTCH, task=KNOWLEDGE),
    Dataset(name="mmlu", language=ENGLISH, task=KNOWLEDGE),
    Dataset(name="arc-da", language=DANISH, task=KNOWLEDGE),
    Dataset(name="arc-no", language=NORWEGIAN, task=KNOWLEDGE),
    Dataset(name="arc-sv", language=SWEDISH, task=KNOWLEDGE),
    Dataset(name="arc-is", language=ICELANDIC, task=KNOWLEDGE),
    Dataset(name="arc-de", language=GERMAN, task=KNOWLEDGE),
    Dataset(name="arc-nl", language=DUTCH, task=KNOWLEDGE),
    Dataset(name="arc", language=ENGLISH, task=KNOWLEDGE),
    Dataset(name="hellaswag-da", language=DANISH, task=REASONING),
    Dataset(name="hellaswag-no", language=NORWEGIAN, task=REASONING),
    Dataset(name="hellaswag-sv", language=SWEDISH, task=REASONING),
    Dataset(name="hellaswag-is", language=ICELANDIC, task=REASONING),
    Dataset(name="hellaswag-de", language=GERMAN, task=REASONING),
    Dataset(name="hellaswag-nl", language=DUTCH, task=REASONING),
    Dataset(name="hellaswag", language=ENGLISH, task=REASONING),
]


def main() -> None:
    """Produce a radial plot."""

    # Download all the newest records
    response = requests.get("https://scandeval.com/scandeval_benchmark_results.jsonl")
    response.raise_for_status()
    records = [
        json.loads(dct_str)
        for dct_str in response.text.split("\n")
        if dct_str.strip("\n")
    ]

    # Build a dictionary of languages -> results-dataframes, whose indices are the
    # models and columns are the tasks.
    results_dfs = dict()
    for language in {dataset.language for dataset in DATASETS}:
        possible_dataset_names = {
            dataset.name for dataset in DATASETS if dataset.language == language
        }
        data_dict = defaultdict(dict)
        for record in records:
            model_name = record["model"]
            dataset_name = record["dataset"]
            if dataset_name in possible_dataset_names:
                dataset = next(
                    dataset for dataset in DATASETS if dataset.name == dataset_name
                )
                results_dict = record['results']['total']
                score = results_dict.get(
                    f"test_{dataset.task.metric}", results_dict.get(dataset.task.metric)
                )
                if dataset.task in data_dict[model_name]:
                    data_dict[model_name][dataset.task].append(score)
                else:
                    data_dict[model_name][dataset.task] = [score]
        results_df = pd.DataFrame(data_dict).T.map(
            lambda list_or_nan:
            np.mean(list_or_nan) if list_or_nan == list_or_nan else list_or_nan
        ).dropna()
        if any(task not in results_df.columns for task in ALL_TASKS):
            results_dfs[language] = pd.DataFrame()
        else:
            results_dfs[language] = results_df

    all_languages: list[str | int | float | tuple[str, str | int | float]] | None = [
        language.name for language in ALL_LANGUAGES.values()
    ]
    all_models: list[str | int | float | tuple[str, str | int | float]] | None = list({
        model_id
        for df in results_dfs.values()
        for model_id in df.index
    })

    with gr.Blocks() as demo:
        gr.Markdown("# Radial Plot Generator")
        gr.Markdown("### Select the models and languages to include in the plot")
        with gr.Row():
            with gr.Column():
                language_names_dropdown = gr.Dropdown(
                    choices=all_languages,
                    multiselect=True,
                    label="Languages",
                    value=["Danish"],
                    interactive=True,
                )
                model_ids_dropdown = gr.Dropdown(
                    choices=all_models,
                    multiselect=True,
                    label="Models",
                    value=["gpt-3.5-turbo-0613", "mistralai/Mistral-7B-v0.1"],
                    interactive=True,
                )
                use_win_ratio_checkbox = gr.Checkbox(
                    label="Compare models with win ratios (as opposed to raw scores)",
                    value=True,
                    interactive=True,
                )
            with gr.Column():
                plot = gr.Plot(
                    value=produce_radial_plot(
                        model_ids_dropdown.value,
                        language_names=language_names_dropdown.value,
                        use_win_ratio=use_win_ratio_checkbox.value,
                        results_dfs=results_dfs,
                    ),
                )

        language_names_dropdown.change(
            fn=partial(update_model_ids_dropdown, results_dfs=results_dfs),
            inputs=language_names_dropdown,
            outputs=model_ids_dropdown,
        )

        # Update plot when anything changes
        language_names_dropdown.change(
            fn=partial(produce_radial_plot, results_dfs=results_dfs),
            inputs=[
                model_ids_dropdown, language_names_dropdown, use_win_ratio_checkbox
            ],
            outputs=plot,
        )
        model_ids_dropdown.change(
            fn=partial(produce_radial_plot, results_dfs=results_dfs),
            inputs=[
                model_ids_dropdown, language_names_dropdown, use_win_ratio_checkbox
            ],
            outputs=plot,
        )
        use_win_ratio_checkbox.change(
            fn=partial(produce_radial_plot, results_dfs=results_dfs),
            inputs=[
                model_ids_dropdown, language_names_dropdown, use_win_ratio_checkbox
            ],
            outputs=plot,
        )


    demo.launch()


def update_model_ids_dropdown(
    language_names: list[str], results_dfs: dict[Language, pd.DataFrame] | None
) -> dict:
    """When the language names are updated, update the model ids dropdown.

    Args:
        language_names:
            The names of the languages to include in the plot.
        results_dfs:
            The results dataframes for each language.

    Returns:
        The Gradio update to the model ids dropdown.
    """
    if results_dfs is None or len(language_names) == 0:
        return gr.update(choices=[], value=[])

    filtered_models = list({
        model_id
        for language, df in results_dfs.items()
        for model_id in df.index
        if language.name in language_names
    })

    if len(filtered_models) == 0:
        return gr.update(choices=[], value=[])

    return gr.update(choices=filtered_models, value=filtered_models[0])


def produce_radial_plot(
    model_ids: list[str],
    language_names: list[str],
    use_win_ratio: bool,
    results_dfs: dict[Language, pd.DataFrame] | None
) -> go.Figure:
    """Produce a radial plot as a plotly figure.

    Args:
        model_ids:
            The ids of the models to include in the plot.
        language_names:
            The names of the languages to include in the plot.
        use_win_ratio:
            Whether to use win ratios (as opposed to raw scores).
        results_dfs:
            The results dataframes for each language.

    Returns:
        A plotly figure.
    """
    if results_dfs is None or len(language_names) == 0 or len(model_ids) == 0:
        return go.Figure()

    tasks = ALL_TASKS
    languages = [ALL_LANGUAGES[language_name] for language_name in language_names]

    results_dfs_filtered = {
        language: df
        for language, df in results_dfs.items()
        if language.name in language_names
    }

    # Add all the evaluation results for each model
    results: list[list[float]] = list()
    for model_id in model_ids:
        result_list = list()
        for task in tasks:
            win_ratios = list()
            scores = list()
            for language in languages:
                score = results_dfs_filtered[language].loc[model_id][task]
                win_ratio = np.mean([
                    score >= other_score
                    for other_score in results_dfs_filtered[language][task].dropna()
                ])
                win_ratios.append(win_ratio)
                scores.append(score)
            if use_win_ratio:
                result_list.append(np.mean(win_ratios))
            else:
                result_list.append(np.mean(scores))
        results.append(result_list)

    # Sort the results to avoid misleading radial plots
    model_idx_with_highest_variance = np.argmax(
        [np.std(result_list) for result_list in results]
    )
    sorted_idxs = np.argsort(results[model_idx_with_highest_variance])
    results = [np.asarray(result_list)[sorted_idxs] for result_list in results]
    tasks = np.asarray(tasks)[sorted_idxs]

    # Add the results to a plotly figure
    fig = go.Figure()
    for model_id, result_list in zip(model_ids, results):
        fig.add_trace(go.Scatterpolar(
            r=result_list,
            theta=[task.name for task in tasks],
            fill='toself',
            name=model_id,
        ))

    languages_str = ""
    if len(languages) > 1:
        languages_str = ", ".join([language.name for language in languages[:-1]])
        languages_str += " and "
    languages_str += languages[-1].name

    if use_win_ratio:
        title = f'Win Ratio on on {languages_str} Language Tasks'
    else:
        title = f'LLM Score on on {languages_str} Language Tasks'

    # Builds the radial plot from the results
    fig.update_layout(
        polar=dict(radialaxis=dict(visible=True)), showlegend=True, title=title
    )

    return fig

if __name__ == "__main__":
    main()