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import numpy as np
import json
import pandas as pd

QUES_TYPES = ['MCQ','MCQ(multiple)','Integer','Numeric']

models = [
    "Random",
    "GPT3_normal",
    "GPT3.5_normal",
    "GPT4_normal",
    "GPT4_CoT",
    'GPT4_CoT_self_refine',
    "GPT4_CoT+OneShot",
    "GPT4_CoT+SC@8"
]

def get_aggregate(answers, question_type, single_threshold=None, multiple_threshold=None):
    # Pass optional \tau_{single} and \tau_{multiple} parameters if needed for evaluation under risk. 
    if question_type == 'MCQ(multiple)' or question_type == 'MCQ':
        letter_to_idx = {'A': 0, 'B': 1, 'C': 2, 'D': 3, 'None': 4}
        idx_to_letter = {0: 'A', 1: 'B', 2: 'C', 3: 'D', 4: 'None'}
        abcd = [0,0,0,0,0]
        for ans in answers:
            if ans == 'None':
                abcd[letter_to_idx[ans]] += 1
            else:
                for c in ans:
                    abcd[letter_to_idx[c]] += 1
        if question_type == 'MCQ':
            abcd = abcd[:-1]
            answer = idx_to_letter[np.argmax(abcd)]
            if single_threshold is not None:
                answer = answer if abcd[np.argmax(abcd)]/len(answers) >= single_threshold else "None"
        else:
            if multiple_threshold is not None:
                options_selected = [idx_to_letter[x] for x in range(len(abcd)) if abcd[x] >= len(answers)*multiple_threshold and idx_to_letter[x] != 'None']
            else:
                options_selected = [idx_to_letter[x] for x in range(len(abcd)) if abcd[x] >= len(answers)/2 and idx_to_letter[x] != 'None']
            if len(options_selected) == 0:
                answer = "None"
            else:
                answer = ''.join(sorted(options_selected))          
    else: # For integer and numeric answers, choose the most common response(other than None)
        while "None" in answers:
            answers.remove("None")
        if len(answers) == 0:
            answers = ["None"]
        unique, counts = np.unique(answers, return_counts=True)
        answer = unique[np.argmax(counts)]
    return answer


def compute_score(gold, resp, question_type, year):
    assert question_type in QUES_TYPES
    if question_type == 'MCQ(multiple)':
        gold = set([c for c in ['A', 'B', 'C', 'D'] if c in gold])
        resp = set([c for c in ['A', 'B', 'C', 'D'] if c in resp])
        if resp == gold :
            return 1.0
        else:
            if len(resp-gold) == 0: 
                return 0.25*len(resp)
            return 0.0 # If response contains something not in the gold set, give 0
    elif question_type == 'MCQ':
        gold = set([c for c in ['A', 'B', 'C', 'D'] if c in gold])
        resp = set([c for c in ['A', 'B', 'C', 'D'] if c in resp])
        return int(gold == resp)
    else:
        if resp == "None":
            return 0.0
        g, r = float(gold), float(resp)
        return int(abs(g-r) <= 0.01)
    

def construct_responses_table():
    responses = {}
    for model in models:
        if "SC@" in model:
            pass
        elif "Random" == model:
            pass
        else:
            responses[model] = json.load(open(f"data/responses/{model}_responses/responses.json"))
    dataset = json.load(open('data/dataset.json'))
    extracts = {
        "Type": [],
        "Index": [],
        "Description": [], 
        "Subject": [],
        "Gold": [],
    }
    for model in models:
        if "Random" == model:
            continue
        else:
            extracts[f'{model}'] = []
    

    for i, q in enumerate(dataset):
        extracts['Type'].append(q['type'])
        extracts['Index'].append(q['index'])
        extracts['Description'].append(q['description'])
        extracts['Subject'].append(q['subject'])
        extracts['Gold'].append(q['gold'])
        
        for model in models:
            if "SC@" in model:
                continue
            elif "Random" == model:
                continue
            else:
                try:
                    assert q['question'] == responses[model][i]['question']
                except:

                    print(q['question'])
                    breakpoint()
                    print(responses[model][i]['question'])
                    breakpoint()
                try:
                    extracts[f'{model}'].append(responses[model][i]['extract'])
                except:
                    print(extracts)
    
    if "GPT4_CoT+SC" in model:
        num_responses = int(model.split("@")[1])
        for i, q in enumerate(dataset):
            sc_responses = json.load(open('data/responses/GPT4_CoT+SC_responses/responses.json'))
            resp = sc_responses[i]
            answers = [resp['GPT4_CoT+SC_response']['choices'][k]['extract'] for k in range(num_responses)]
            answer = get_aggregate(answers, resp['type'])
        
            extracts[f'{model}'].append(answer)
    pd.DataFrame(extracts).to_csv('results/extracts.csv', index=False)
    
    return pd.read_csv('results/extracts.csv',dtype=str)


responses = construct_responses_table()
output = []
for i, response in responses.iterrows():
    out = {}
    out["Type"] = response["Type"]
    out["Index"] = response["Index"]
    out["Description"] = response["Description"]
    out["Subject"] = response["Subject"]
    gold = response["Gold"]
    out["Gold"] = gold
    if response["Type"] == "MCQ":
        out["Random"] = 0.25
    elif response["Type"] == "MCQ(multiple)":
        num_ans = len(gold)
        if num_ans == 1:
            out["Random"] = 0.0625
        elif num_ans == 2:
            out["Random"] = 0.09375
        elif num_ans == 3:
            out["Random"] = 0.203125
        elif num_ans == 4:
            out["Random"] = 0.5
    else:
        out["Random"] = 0
        
    for model in models:
        if model == "Random":
            continue
        resp = response[f"{model}"]
        if not isinstance(resp, str):
            resp = "None"
        out[f"{model}"] = resp
        out[f'{model}'] = compute_score(gold,resp,out["Type"],out["Description"])
    out[f'Max'] = 1
    output.append(out)

df = pd.DataFrame()
df['Type'] = [x['Type'] for x in output]
df['Index'] = [x['Index'] for x in output]
df['Description'] = [x['Description'] for x in output]
df['Subject'] = [x['Subject'] for x in output]
df['Gold'] = [x['Gold'] for x in output]
df['Random'] = [x['Random'] for x in output]
for model in models:
    df[f"{model}"] = [
        x.get(f"{model}", "None") for x in output]
    df[f"{model}"] = [x.get(f"{model}", 0) for x in output]



df.to_csv(f"results/scores.csv", index=False)

modes = ['overall', 'type_wise', 'subject_wise']
for mode in modes:
    col_dict = {}
    for model in models:
        col_dict[f'{model}'] = ['mean']

    if mode != 'overall':
        col_dict[f'{models[0]}'].insert(0,'count')
    
    if mode == 'overall':
        grouped_multiple = df.agg(col_dict)
    elif mode == 'type_wise':
        grouped_multiple = df.groupby(['Type']).agg(col_dict)
    elif mode == 'subject_wise':
        grouped_multiple = df.groupby(['Subject']).agg(col_dict)

    if mode != 'overall':
        grouped_multiple.columns = ['count'] + models
    grouped_multiple = grouped_multiple.reset_index()
    grouped_multiple = grouped_multiple.round(3)
    grouped_multiple.to_csv(f"results/aggregated_scores_{mode}.csv", index=False)
print("Done!")