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import re
from collections import defaultdict

import numpy as np
from tqdm.auto import tqdm

from rdkit import Chem, RDLogger, DataStructs
from rdkit.Chem import MACCSkeys, AllChem
from rdkit.Chem.AllChem import AssignStereochemistry
from rdchiral.chiral import copy_chirality


from transformers import BertTokenizerFast

from nltk.translate.bleu_score import corpus_bleu
from nltk.translate.meteor_score import meteor_score
from rouge_score import rouge_scorer
from sklearn.metrics import roc_auc_score, f1_score, precision_score, recall_score, matthews_corrcoef

RDLogger.DisableLog('rdApp.*')


def canonicalize(smiles, isomeric=False, canonical=True, kekulize=False):
    # When canonicalizing a SMILES string, we typically want to
    # run Chem.RemoveHs(mol), but this will try to kekulize the mol
    # which is not required for canonical SMILES.  Instead, we make a
    # copy of the mol retaining only the information we desire (not explicit Hs)
    # Then, we sanitize the mol without kekulization.  copy_atom and copy_edit_mol
    # Are used to create this clean copy of the mol.
    def copy_atom(atom):
        new_atom = Chem.Atom(atom.GetSymbol())
        new_atom.SetFormalCharge(atom.GetFormalCharge())
        if atom.GetIsAromatic() and atom.GetNoImplicit():
            new_atom.SetNumExplicitHs(atom.GetNumExplicitHs())
            #elif atom.GetSymbol() == 'N':
            #    print(atom.GetSymbol())
            #    print(atom.GetImplicitValence())
            #    new_atom.SetNumExplicitHs(-atom.GetImplicitValence())
            #elif atom.GetSymbol() == 'S':
            #    print(atom.GetSymbol())
            #    print(atom.GetImplicitValence())
        return new_atom

    def copy_edit_mol(mol):
        new_mol = Chem.RWMol(Chem.MolFromSmiles(''))
        for atom in mol.GetAtoms():
            new_atom = copy_atom(atom)
            new_mol.AddAtom(new_atom)
        for bond in mol.GetBonds():
            a1 = bond.GetBeginAtom().GetIdx()
            a2 = bond.GetEndAtom().GetIdx()
            bt = bond.GetBondType()
            new_mol.AddBond(a1, a2, bt)
            new_bond = new_mol.GetBondBetweenAtoms(a1, a2)
            new_bond.SetBondDir(bond.GetBondDir())
            new_bond.SetStereo(bond.GetStereo())
        for new_atom in new_mol.GetAtoms():
            atom = mol.GetAtomWithIdx(new_atom.GetIdx())
            copy_chirality(atom, new_atom)
        return new_mol

    smiles = smiles.replace(" ", "")  
    tmp = Chem.MolFromSmiles(smiles, sanitize=False)
    tmp.UpdatePropertyCache()
    new_mol = copy_edit_mol(tmp)
    #Chem.SanitizeMol(new_mol, sanitizeOps=Chem.SanitizeFlags.SANITIZE_ALL)
    if not kekulize:
        Chem.SanitizeMol(new_mol, sanitizeOps=Chem.SanitizeFlags.SANITIZE_SETAROMATICITY | Chem.SanitizeFlags.SANITIZE_PROPERTIES | Chem.SanitizeFlags.SANITIZE_ADJUSTHS, catchErrors=True)
    else:
        Chem.SanitizeMol(new_mol, sanitizeOps=Chem.SanitizeFlags.SANITIZE_KEKULIZE | Chem.SanitizeFlags.SANITIZE_PROPERTIES | Chem.SanitizeFlags.SANITIZE_ADJUSTHS, catchErrors=True)
   
    AssignStereochemistry(new_mol, cleanIt=False, force=True, flagPossibleStereoCenters=True)
    
    new_smiles = Chem.MolToSmiles(new_mol, isomericSmiles=isomeric, canonical=canonical)
    return new_smiles


def canonicalize_molecule_smiles(smiles, return_none_for_error=True, skip_mol=False, sort_things=True, isomeric=True, kekulization=True, allow_empty_part=False):
    things = smiles.split('.')
    if skip_mol:
        new_things = things
    else:
        new_things = []
        for thing in things:
            try:
                if thing == '' and not allow_empty_part:
                    raise ValueError('SMILES contains empty part.')

                mol = Chem.MolFromSmiles(thing)
                assert mol is not None
                for atom in mol.GetAtoms():
                    atom.SetAtomMapNum(0)
                thing_smiles = Chem.MolToSmiles(mol, kekuleSmiles=False, isomericSmiles=isomeric)
                thing_smiles = Chem.MolFromSmiles(thing_smiles)
                thing_smiles = Chem.MolToSmiles(thing_smiles, kekuleSmiles=False, isomericSmiles=isomeric)
                thing_smiles = Chem.MolFromSmiles(thing_smiles)
                thing_smiles = Chem.MolToSmiles(thing_smiles, kekuleSmiles=False, isomericSmiles=isomeric)
                assert thing_smiles is not None
                can_in = thing_smiles
                can_out = canonicalize(thing_smiles, isomeric=isomeric)
                assert can_out is not None, can_in
                thing_smiles = can_out
                if kekulization:
                    thing_smiles = keku_mid = Chem.MolFromSmiles(thing_smiles)
                    assert keku_mid is not None, 'Before can: %s\nAfter can: %s' % (can_in, can_out)
                    thing_smiles = Chem.MolToSmiles(thing_smiles, kekuleSmiles=True, isomericSmiles=isomeric)
            except KeyboardInterrupt:
                raise
            except:
                if return_none_for_error:
                    return None
                else:
                    raise
            new_things.append(thing_smiles)
    if sort_things:
        new_things = sorted(new_things)
    new_things = '.'.join(new_things)
    return new_things


def canonicalize_reaction_smiles(smiles, return_none_for_error=True, return_segs=False, skip_mol=False, sort_things=True, isomeric=True, kekulization=True):
    segs = smiles.split('>')
    assert len(segs) == 3
    new_segs = []
    for seg in segs:
        if seg != '':
            new_things = canonicalize_molecule_smiles(seg, return_none_for_error=return_none_for_error, skip_mol=skip_mol, sort_things=sort_things, isomeric=isomeric, kekulization=kekulization)
            if return_none_for_error and new_things is None:
                return None
            new_segs.append(new_things)
        else:
            new_segs.append('')
    
    if return_segs:
        return tuple(new_segs)
    
    smiles = '>'.join(new_segs)
    return smiles


def get_molecule_id(smiles, remove_duplicate=True):
    if remove_duplicate:
        assert ';' not in smiles
        all_inchi = set()
        for part in smiles.split('.'):
            inchi = get_molecule_id(part, remove_duplicate=False)
            all_inchi.add(inchi)
        all_inchi = tuple(sorted(all_inchi))
        return all_inchi
    else:
        mol = Chem.MolFromSmiles(smiles)
        return Chem.MolToInchi(mol)


def convert_smiles_list_into_mol_list(smiles_list, raise_error_when_error=False):
    mol_list = []
    no_answer_labels = []
    invalid_labels = []
    for smiles in smiles_list:
        if smiles == '':
            mol = 'NA'
            no_answer_labels.append(True)
            if raise_error_when_error:
                raise ValueError('SMILES is empty.')
        else:
            mol = Chem.MolFromSmiles(smiles)
            if mol is None:
                mol = 'INVALID'
                invalid_labels.append(True)
                if raise_error_when_error:
                    raise ValueError('SMILES is not valid: %s' % smiles)
        mol_list.append(mol)
    
    no_answer_labels = np.array(no_answer_labels)
    invalid_labels = np.arange(invalid_labels)

    return mol_list, no_answer_labels, invalid_labels


def judge_exact_match(pred_can_smiles_list, gold_can_smiles_list):
    assert len(pred_can_smiles_list) == len(gold_can_smiles_list)
    exact_match_labels = []
    for pred_smiles, gold_smiles_list in zip(pred_can_smiles_list, gold_can_smiles_list):
        if pred_smiles is None:
            exact_match_labels.append(False)
            continue
        pred_smiles_inchi = get_molecule_id(pred_smiles)
        sample_exact_match = False
        for gold_smiles in gold_smiles_list:
            assert gold_smiles is not None
            gold_smiles_inchi = get_molecule_id(gold_smiles)
            if pred_smiles_inchi == gold_smiles_inchi:
                sample_exact_match = True
                break
        exact_match_labels.append(sample_exact_match)
    return np.array(exact_match_labels)


def calculate_fingerprint_similarity(pred_mol_list, gold_mols_list, morgan_r=2):
    assert len(pred_mol_list) == len(gold_mols_list)
    MACCS_sims = []
    morgan_sims = []
    RDK_sims = []
    for pred_mol, gold_mol_list in zip(pred_mol_list, gold_mols_list):
        if pred_mol is None or type(pred_mol) == str:
            raise ValueError(type(pred_mol))
        tmp_MACCS, tmp_RDK, tmp_morgan = 0, 0, 0
        for gold_mol in gold_mol_list:
            tmp_MACCS = max(tmp_MACCS, DataStructs.FingerprintSimilarity(MACCSkeys.GenMACCSKeys(gold_mol), MACCSkeys.GenMACCSKeys(pred_mol), metric=DataStructs.TanimotoSimilarity))
            tmp_RDK = max(tmp_RDK, DataStructs.FingerprintSimilarity(Chem.RDKFingerprint(gold_mol), Chem.RDKFingerprint(pred_mol), metric=DataStructs.TanimotoSimilarity))
            tmp_morgan = max(tmp_morgan, DataStructs.TanimotoSimilarity(AllChem.GetMorganFingerprint(gold_mol,morgan_r), AllChem.GetMorganFingerprint(pred_mol, morgan_r)))
        MACCS_sims.append(tmp_MACCS)
        RDK_sims.append(tmp_RDK)
        morgan_sims.append(tmp_morgan)
    maccs_sims_score = np.mean(MACCS_sims)
    rdk_sims_score = np.mean(RDK_sims)
    morgan_sims_score = np.mean(morgan_sims)
    return maccs_sims_score, rdk_sims_score, morgan_sims_score


def judge_multiple_match(pred_can_smiles_list, golds_can_smiles_list):
    assert len(pred_can_smiles_list) == len(golds_can_smiles_list)
    subset_labels = []
    intersection_labels = []
    for pred_smiles, gold_smiles_list in zip(pred_can_smiles_list, golds_can_smiles_list):
        if pred_smiles is None:
            subset_labels.append(False)
            intersection_labels.append(False)
            continue

        pred_ele_set = set()
        for smiles in pred_smiles.split('.'):
            pred_ele_set.add(get_molecule_id(smiles, remove_duplicate=False))

        intersection_label = False
        subset_label = False
        for gold_smiles in gold_smiles_list:
            assert gold_smiles is not None
            gold_ele_set = set()
            for smiles in gold_smiles.split('.'):
                gold_ele_set.add(get_molecule_id(smiles, remove_duplicate=False))

            if len(pred_ele_set & gold_ele_set) > 0:
                intersection_label = True
                g_p = gold_ele_set - pred_ele_set
                if len(g_p) >= 0 and len(pred_ele_set - gold_ele_set) == 0:
                    subset_label = True
                    break
        intersection_labels.append(intersection_label)
        subset_labels.append(subset_label)
    
    return intersection_labels, subset_labels


def calculate_smiles_metrics(
        preds_smiles_list, 
        golds_smiles_list,
        metrics=('exact_match', 'fingerprint')
):
    num_all = len(preds_smiles_list)
    assert num_all > 0
    assert num_all == len(golds_smiles_list)
    k = len(preds_smiles_list[0])

    dk_pred_smiles_list_dict = {}
    dk_pred_no_answer_labels_dict = {}
    dk_pred_invalid_labels_dict = {}
    for dk in range(k):
        dk_pred_smiles_list_dict[dk] = []
        dk_pred_no_answer_labels_dict[dk] = []
        dk_pred_invalid_labels_dict[dk] = []
    for pred_smiles_list in tqdm(preds_smiles_list):
        if pred_smiles_list is None:
            for dk in range(k):
                dk_pred_no_answer_labels_dict[dk].append(True)
                dk_pred_invalid_labels_dict[dk].append(False)
                dk_pred_smiles_list_dict[dk].append(None)
            continue
        assert len(pred_smiles_list) == k
        for dk, item in enumerate(pred_smiles_list):
            # item = item.strip()
            if item == '' or item is None:
                item = None
                dk_pred_no_answer_labels_dict[dk].append(True)
                dk_pred_invalid_labels_dict[dk].append(False)
            else:
                dk_pred_no_answer_labels_dict[dk].append(False)
                item = canonicalize_molecule_smiles(item)
                if item is None:
                    dk_pred_invalid_labels_dict[dk].append(True)
                else:
                    dk_pred_invalid_labels_dict[dk].append(False)
            dk_pred_smiles_list_dict[dk].append(item)
    
    new_list = []
    for gold_smiles_list in tqdm(golds_smiles_list):
        sample_gold_smiles_list = []
        for gold in gold_smiles_list:
            item = gold.strip()
            new_item = canonicalize_molecule_smiles(item, return_none_for_error=False)
            # if new_item is None:
            #     new_item = item  #TODO
            # assert new_item is not None, item
            sample_gold_smiles_list.append(new_item)
        new_list.append(sample_gold_smiles_list)
    golds_smiles_list = new_list

    metric_results = {'num_all': num_all}

    tk_pred_no_answer_labels = np.array([True] * num_all)
    tk_pred_invalid_labels = np.array([True] * num_all)
    for dk in range(k):
        dk_no_answer_labels = dk_pred_no_answer_labels_dict[dk]
        dk_invalid_labels = dk_pred_invalid_labels_dict[dk]
        tk_pred_no_answer_labels = tk_pred_no_answer_labels & dk_no_answer_labels
        tk_pred_invalid_labels = tk_pred_invalid_labels & dk_invalid_labels
        metric_results['num_t%d_no_answer' % (dk + 1)] = tk_pred_no_answer_labels.sum().item()
        metric_results['num_t%d_invalid' % (dk + 1)] = tk_pred_invalid_labels.sum().item()
    
    # d1_no_answer_labels = dk_pred_no_answer_labels_dict[0]
    # # print(np.array(d1_no_answer_labels).sum().item())
    # for label, item in zip(d1_no_answer_labels, preds_smiles_list):
    #     if label:
    #         print(item)

    for metric in metrics:
        if metric == 'exact_match':
            tk_exact_match_labels = np.array([False] * num_all)
            for dk in range(k):
                dk_pred_smiles_list = dk_pred_smiles_list_dict[dk]
                dk_exact_match_labels = judge_exact_match(dk_pred_smiles_list, golds_smiles_list)
                tk_exact_match_labels = tk_exact_match_labels | dk_exact_match_labels
                metric_results['num_t%d_exact_match' % (dk + 1)] = tk_exact_match_labels.sum().item()
        elif metric == 'fingerprint':
            d1_pred_mol_list = []
            gold_mols_list = []
            for pred_smiles, gold_smiles_list, no_answer, invalid in zip(dk_pred_smiles_list_dict[0], golds_smiles_list, dk_pred_no_answer_labels_dict[0], dk_pred_invalid_labels_dict[0]):
                if pred_smiles is None or pred_smiles.strip() == '' or no_answer is True or invalid is True:
                    continue
                pred_mol = Chem.MolFromSmiles(pred_smiles)
                # if pred_mol is None:  # TODO
                #     continue
                assert pred_mol is not None, pred_smiles
                gold_mol_list = []
                for gold_smiles in gold_smiles_list:
                    gold_mol = Chem.MolFromSmiles(gold_smiles)
                    # if gold_mol is None:
                    #     continue  # TODO
                    assert gold_mol is not None, gold_smiles
                    gold_mol_list.append(gold_mol)
                # if len(gold_mol_list) == 0:
                #     continue  # TODO
                d1_pred_mol_list.append(pred_mol)
                gold_mols_list.append(gold_mol_list)
            maccs_sims_score, rdk_sims_score, morgan_sims_score = calculate_fingerprint_similarity(d1_pred_mol_list, gold_mols_list)
            metric_results['t1_maccs_fps'] = maccs_sims_score
            metric_results['t1_rdk_fps'] = rdk_sims_score
            metric_results['t1_morgan_fps'] = morgan_sims_score
        elif metric == 'multiple_match':
            tk_intersection_labels = np.array([False] * num_all)
            tk_subset_labels = np.array([False] * num_all)
            for dk in range(k):
                dk_intersection_labels, dk_subset_labels = judge_multiple_match(dk_pred_smiles_list_dict[dk], golds_smiles_list)
                tk_intersection_labels = tk_intersection_labels | dk_intersection_labels
                tk_subset_labels = tk_subset_labels | dk_subset_labels
                metric_results['num_t%d_subset' % (dk + 1)] = tk_intersection_labels.sum().item()
                metric_results['num_t%d_intersection' % (dk + 1)] = tk_intersection_labels.sum().item()
        else:
            raise ValueError(metric)
    
    return metric_results


def judge_string_exact_match(pred_string_list, golds_string_list):
    exact_match_labels = []
    for pred_string, gold_string_list in zip(pred_string_list, golds_string_list):
        exact_match = False
        for gold_string in gold_string_list:
            if pred_string == gold_string:
                exact_match = True
                break
        exact_match_labels.append(exact_match)
    return np.array(exact_match_labels)


def judge_string_split_match(pred_string_list, golds_string_list, separater=';'):
    exact_match_labels = []
    for pred_string, gold_string_list in zip(pred_string_list, golds_string_list):
        pred_item = tuple(sorted(pred_string.split(separater)))
        exact_match = False
        for gold_string in gold_string_list:
            gold_item = tuple(sorted(gold_string.split(separater)))
            if pred_item == gold_item:
                exact_match = True
                break
        exact_match_labels.append(exact_match)
    return np.array(exact_match_labels)


def parse_molecule(molecular_formula):
    valid = re.match('([A-Za-z]\d*)+([\+\-]\d*)*$', molecular_formula)
    if valid is None:
        raise ValueError("Molecular formula \"%s\" is not valid." % molecular_formula)

    stack = [defaultdict(int)]

    def _parse_formula(formula, _stack):

        # Set remainder equal to 'None'
        r = None

        # Regular expression matching for each of the three cases:
        atom = re.match(r'([A-Z][a-z]?)(\d+)?', formula)
        opening = re.match(r'[\(\[\{]', formula)
        closing = re.match(r'[\)\]\}](\d+)?', formula)

        # If atom is identified:
        if atom:
            r = formula[len(atom.group()):]
            _stack[-1][atom.group(1)] += int(atom.group(2) or 1)

        # If opening brackets encountered:
        elif opening:
            r = formula[len(opening.group()):] #this sets the remainder equal to everything after the opening brackets
            _stack.append(defaultdict(int)) 

        # If closing brackets encountered:
        elif closing:
            r = formula[len(closing.group()):] #this sets the remainder equal to everything after the closing brackets
            for (k, v) in _stack.pop().items():
                _stack[-1][k] += v * int(closing.group(1) or 1) #v times amount of molecule k, depending on nesting

        # If anything remains, process remainders recursively as nested formulas:
        if r:
            _parse_formula(r, _stack)

        return dict(_stack[0])
    
    result = _parse_formula(molecular_formula, stack)

    charge = re.search('[\+\-]\d*', molecular_formula)
    if charge is not None:
        charge_str = charge.group()
        charge_type = charge_str[0]
        if len(charge_str) == 1:
            charge_num = 1
        else:
            charge_num = int(charge_str[1:])
        result[charge_type] = charge_num

    return result


def count_element_match(pred_formula_list, golds_formula_list):
    assert len(pred_formula_list) == len(golds_formula_list)
    ele_match_labels = []
    ele_invalid_labels = []
    for pred_formula, gold_formula_list in zip(pred_formula_list, golds_formula_list):
        if pred_formula == '' or pred_formula is None:
            ele_invalid_labels.append(False)
            ele_match_labels.append(False)
            continue
        try:
            pred_ele = parse_molecule(pred_formula)
        except KeyboardInterrupt:
            raise
        except:
            # print(pred_formula)
            # print('=====')
            ele_invalid_labels.append(True)
            ele_match_labels.append(False)
            continue
        ele_invalid_labels.append(False)
        ele_match = False
        for gold_formula in gold_formula_list:
            gold_ele = parse_molecule(gold_formula)
            if pred_ele == gold_ele:
                ele_match = True
                break
        ele_match_labels.append(ele_match)
    return ele_match_labels, ele_invalid_labels


def calculate_formula_metrics(
        preds_formula_list,
        golds_formula_list,
        metrics=('element_match',)
):
    """
    Calculate metrics for molecular formula. Here we use element_match (equals to exact_match used in our paper) by default, which compares the atom numbers and ignore the orders.
    For example, C5H8 == H8C5.
    """
    num_all = len(preds_formula_list)
    assert len(preds_formula_list) == len(golds_formula_list)
    try:
        k = len(preds_formula_list[0])
    except IndexError:
        print(preds_formula_list)
        raise
    dk_pred_formula_list_dict = dict()
    for dk in range(k):
        dk_pred_formula_list_dict[dk] = []
    for sample_formula_list in preds_formula_list:
        if sample_formula_list is None:
            for dk in range(k):
                dk_pred_formula_list_dict[dk].append('')
            continue
        assert len(sample_formula_list) == k
        for dk in range(k):
            item = sample_formula_list[dk]
            dk_pred_formula_list_dict[dk].append(item)
    golds_formula_list = [[small_item.strip() for small_item in item] for item in golds_formula_list]
    new_golds_formula_list = []
    for item in golds_formula_list:
        new_item = []
        for small_item in item:
            small_item = small_item.strip()
            assert small_item != ''
            new_item.append(small_item)
        new_golds_formula_list.append(new_item)
    golds_formula_list = new_golds_formula_list


    metric_results = {'num_all': num_all}

    tk_no_answer_labels = np.array([True] * num_all)
    for dk in range(k):
        dk_pred_formula_list = dk_pred_formula_list_dict[dk]
        dk_no_answer_labels = []
        for item in dk_pred_formula_list:
            if item == '' or item is None:
                dk_no_answer_labels.append(True)
            else:
                dk_no_answer_labels.append(False)
        dk_no_answer_labels = np.array(dk_no_answer_labels)
        tk_no_answer_labels = tk_no_answer_labels & dk_no_answer_labels
        metric_results['num_t%d_no_answer' % (dk + 1)] = tk_no_answer_labels.sum().item()

    for metric in metrics:
        if metric == 'exact_match':
            tk_exact_match_labels = np.array([False] * num_all)
            for dk in range(k):
                dk_pred_formula_list = dk_pred_formula_list_dict[dk]
                dk_exact_match_labels = judge_string_exact_match(dk_pred_formula_list, golds_formula_list)
                tk_exact_match_labels = tk_exact_match_labels | dk_exact_match_labels
                metric_results['num_t%d_exact_match' % (dk + 1)] = tk_exact_match_labels.sum().item()
        elif metric == 'element_match':
            tk_ele_match_labels = np.array([False] * num_all)
            tk_formula_invalid_labels = np.array([True] * num_all)
            for dk in range(k):
                dk_pred_formula_list = dk_pred_formula_list_dict[dk]
                dk_ele_match_labels, dk_formula_invalid_labels = count_element_match(dk_pred_formula_list, golds_formula_list)
                tk_ele_match_labels = tk_ele_match_labels | dk_ele_match_labels
                tk_formula_invalid_labels = tk_formula_invalid_labels & dk_formula_invalid_labels
                metric_results['num_t%d_ele_match' % (dk + 1)] = tk_ele_match_labels.sum().item()
                metric_results['num_t%d_formula_invalid' % (dk + 1)] = tk_formula_invalid_labels.sum().item()
        elif metric == 'split_match':
            tk_exact_match_labels = np.array([False] * num_all)
            for dk in range(k):
                dk_pred_formula_list = dk_pred_formula_list_dict[dk]
                dk_exact_match_labels = judge_string_split_match(dk_pred_formula_list, golds_formula_list)
                tk_exact_match_labels = tk_exact_match_labels | dk_exact_match_labels
                metric_results['num_t%d_split_match' % (dk + 1)] = tk_exact_match_labels.sum().item()
        else:
            raise ValueError(metric)
    
    return metric_results


def calculate_text_metrics(pred_text_list, gold_text_list, text_model='/AIRvePFS/dair/fsq-data/experiments/biomedgpt/biomedgpt_qwen/ckpts/text_ckpts/scibert_scivocab_uncased', text_trunc_length=512):
    assert len(pred_text_list) == len(gold_text_list)
    pred_text_list = [(item[0].strip() if item is not None else '') for item in pred_text_list]
    gold_text_list = [item[0].strip() for item in gold_text_list]

    num_no_answer = 0
    for pred_formula in pred_text_list:
        if pred_formula == '':
            num_no_answer += 1

    text_tokenizer = BertTokenizerFast.from_pretrained(text_model)

    meteor_scores = []

    references = []
    hypotheses = []

    for i, (gt, out) in enumerate(zip(gold_text_list, pred_text_list)):
        if out == '':
            continue

        gt_tokens = text_tokenizer.tokenize(gt, truncation=True, max_length=text_trunc_length,
                                            padding='max_length')
        gt_tokens = list(filter(('[PAD]').__ne__, gt_tokens))
        gt_tokens = list(filter(('[CLS]').__ne__, gt_tokens))
        gt_tokens = list(filter(('[SEP]').__ne__, gt_tokens))

        out_tokens = text_tokenizer.tokenize(out, truncation=True, max_length=text_trunc_length,
                                            padding='max_length')
        out_tokens = list(filter(('[PAD]').__ne__, out_tokens))
        out_tokens = list(filter(('[CLS]').__ne__, out_tokens))
        out_tokens = list(filter(('[SEP]').__ne__, out_tokens))

        references.append([gt_tokens])
        hypotheses.append(out_tokens)

        mscore = meteor_score([gt_tokens], out_tokens)
        meteor_scores.append(mscore)

    bleu2 = corpus_bleu(references, hypotheses, weights=(.5,.5))
    bleu4 = corpus_bleu(references, hypotheses, weights=(.25,.25,.25,.25))

    _meteor_score = np.mean(meteor_scores)

    scorer = rouge_scorer.RougeScorer(['rouge1', 'rouge2', 'rougeL'])

    rouge_scores = []

    references = []
    hypotheses = []

    for i, (gt, out) in enumerate(zip(gold_text_list, pred_text_list)):
        if out == '':
            continue

        rs = scorer.score(out, gt)
        rouge_scores.append(rs)

    rouge_1 = np.mean([rs['rouge1'].fmeasure for rs in rouge_scores])
    rouge_2 = np.mean([rs['rouge2'].fmeasure for rs in rouge_scores])
    rouge_l = np.mean([rs['rougeL'].fmeasure for rs in rouge_scores])

    result = {
        'num_all': len(pred_text_list),
        'num_no_answer': num_no_answer,
        'bleu2': bleu2,
        'bleu4': bleu4,
        'rouge_1': rouge_1,
        'rouge_2': rouge_2,
        'rouge_l': rouge_l,
        'meteor_score': _meteor_score,
    }

    return result


def calculate_number_metrics(pred_text_list, gold_text_list):
    assert len(pred_text_list) == len(gold_text_list)
    num_all = len(pred_text_list)
    metrics = {}
    metrics['num_all'] = num_all
    num_no_answer = 0
    num_invalid = 0
    new_pred_text_list, new_gold_text_list = [], []
    for (pred_item, gold_item) in zip(pred_text_list, gold_text_list):
        if pred_item is None:
            num_no_answer += 1
            continue
        assert len(pred_item) == 1
        assert len(gold_item) == 1
        pred_item = pred_item[0]
        gold_item = gold_item[0]
        if pred_item == '':
            num_no_answer += 1
            continue
        try:
            pred_item = float(pred_item)
        except (SyntaxError, ValueError):
            # print("\"%s\"" % pred_item)
            num_invalid += 1
            continue
        try:
            gold_item = float(gold_item)
        except:
            import pdb
            pdb.set_trace()
        new_pred_text_list.append(pred_item)
        new_gold_text_list.append(gold_item)
    
    new_pred_text_list = np.array(new_pred_text_list)
    new_gold_text_list = np.array(new_gold_text_list)
    score = np.sqrt(((new_pred_text_list - new_gold_text_list) ** 2).mean())
    
    metrics['num_no_answer'] = num_no_answer
    metrics['num_invalid'] = num_invalid
    metrics['RMSE'] = score

    return metrics


def calculate_boolean_metrics(pred_text_list, gold_text_list):
    assert len(pred_text_list) == len(gold_text_list)
    num_all = len(pred_text_list)
    metrics = {}
    metrics['num_all'] = num_all
    num_no_answer = 0
    num_invalid = 0
    num_correct = 0
    new_pred_text_list, new_gold_text_list = [], []
    for (pred_item, gold_item) in zip(pred_text_list, gold_text_list):
        if pred_item is None or pred_item == '':
            num_no_answer += 1
            continue
        assert len(pred_item) == 1
        assert len(gold_item) == 1
        pred_item = pred_item[0].strip().lower()
        gold_item = gold_item[0].strip().lower()
        if pred_item == '':
            num_no_answer += 1
            continue
        if pred_item not in ('yes', 'no'):
            num_invalid += 1
            continue
        pred_item = 1 if pred_item == 'yes' else 0
        gold_item = 1 if gold_item == 'yes' else 0
        new_pred_text_list.append(pred_item)
        new_gold_text_list.append(gold_item)
        if gold_item == pred_item:
            num_correct += 1

    metrics['num_no_answer'] = num_no_answer
    metrics['num_invalid'] = num_invalid
    metrics['num_correct'] = num_correct

    # return metrics

    new_gold_text_list = np.array(new_gold_text_list)
    new_pred_text_list = np.array(new_pred_text_list)

    macro_roc_auc_score = roc_auc_score(new_gold_text_list, new_pred_text_list)
    f1 = f1_score(new_gold_text_list, new_pred_text_list)
    metrics['roc_auc_score'] = macro_roc_auc_score
    metrics['precision'] = precision_score(new_gold_text_list, new_pred_text_list)
    metrics['recall'] = recall_score(new_gold_text_list, new_pred_text_list)
    metrics['f1_score'] = f1

    no_mask = (new_gold_text_list == 0)
    new_gold_text_list[no_mask] = -1
    no_mask = (new_pred_text_list == 0)
    new_pred_text_list[no_mask] = -1
    metrics['mcc'] = matthews_corrcoef(new_gold_text_list, new_pred_text_list)

    return metrics