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import datetime
import typing
import numpy as np
import struct
import os
import getpass
import logging
import torch
import torch.nn as nn
from collections import defaultdict
import math


LOG = logging.getLogger(__name__)

def masked_mean(values, mask):
    assert mask.dtype == torch.bool
    assert values.shape == mask.shape
    return (values * mask.float()).sum() / mask.sum().float()


def mask_hf_labels(labels, null_token=0):
    valid_mask = labels != -100
    valid_labels = labels.masked_fill(~valid_mask, null_token)
    return valid_mask, valid_labels


def gather_log_probs(logits, labels):
    assert labels.dim() == logits.dim() - 1
    assert labels.shape == logits.shape[:-1]
    return logits.log_softmax(-1).gather(-1, labels.unsqueeze(-1)).squeeze(-1)


def off_diagonal(mat):
    assert mat.dim() == 2
    # assert mat.shape[0] == mat.shape[1]

    mask = ~torch.eye(max(mat.shape), dtype=torch.bool)
    mask = mask[:mat.shape[0], :mat.shape[1]]
    off_d = mat[mask]

    assert off_d.numel() == mat.shape[0] * mat.shape[1] - min(mat.shape)

    return off_d


def set_dropout(model, p):
    if p is not None:
        n_reset = 0
        for m in model.modules():
            if isinstance(m, nn.Dropout):
                m.p = p
                n_reset += 1

            if hasattr(m, "dropout"):  # Requires for BART, which uses F.dropout
                if isinstance(m.dropout, float):
                    m.dropout = p
                    n_reset += 1

            if hasattr(m, "activation_dropout"):  # Requires for BART, which uses F.dropout
                if isinstance(m.activation_dropout, float):
                    m.activation_dropout = p
                    n_reset += 1

        LOG.info(f"Set {n_reset} dropout modules to p={p}")


def _inner_params(named_parameters, inner_names):
    param_dict = dict(named_parameters)
    return [(n, param_dict[n]) for n in inner_names]


def shift_targets(config):
    return "t5" not in config.model.name.lower() and "blender" not in config.model.name.lower()


# https://stackoverflow.com/questions/32871539/integer-factorization-in-python
def factorization(n):
    return [(i, n // i) for i in range(1, int(n**0.5) + 1) if n % i == 0]


def scr():
    if os.path.exists("/scr-ssd"):
        scr_dir = "/scr-ssd/" + getpass.getuser()
    else:
        scr_dir = "/scr/" + getpass.getuser()

    if not os.path.exists(scr_dir):
        os.makedirs(scr_dir)

    return scr_dir


def uuid(digits=4):
    if not hasattr(uuid, "uuid_value"):
        uuid.uuid_value = struct.unpack('I', os.urandom(4))[0] % int(10**digits)

    return uuid.uuid_value


def formatted_timestamp(time=None):
    if time is None:
        time = datetime.datetime.now()
    return time.strftime("%d/%m/%Y-%H:%M:%S/%f")


def time_delta_seconds(start, finish=None):
    assert type(start) == str

    t1 = datetime.datetime.strptime(start, "%d/%m/%Y-%H:%M:%S/%f")
    if finish is not None:
        assert type(finish) == str
        t2 = datetime.datetime.strptime(finish, "%d/%m/%Y-%H:%M:%S/%f")
    else:
        t2 = datetime.datetime.now()

    return (t2 - t1).total_seconds()


def dict_to(d, device):
    new_dict = {}
    for k, v in d.items():
        if isinstance(v, torch.Tensor):
            new_dict[k] = v.to(device)
        elif isinstance(v, dict):
            new_dict[k] = dict_to(v, device)
        else:
            new_dict[k] = v

    return new_dict


def safe_backward(loss, parameters, accumulate=1, allow_unused=False, backward=False):
    if backward:
        (loss / accumulate).backward()
    else:
        parameters = list(parameters)  # Capture the generator output
        grads = torch.autograd.grad(loss, parameters, allow_unused=allow_unused)
        nan, inf = False, False
        for g in grads:
            if g is not None:
                nan |= g.isnan().any().item()
                inf |= g.isinf().any().item()

        if not (nan or inf):
            for p, g in zip(parameters, grads):
                if g is None:
                    continue

                if p.grad is None:
                    p.grad = g / accumulate
                else:
                    p.grad += g / accumulate
        else:
            LOG.info(f"Skipping grad accumulation because inf: {inf} nan: {nan}")


def _logits(x):
    if hasattr(x, "logits"):
        return x.logits
    elif hasattr(x, "scores"):
        return torch.cat(x.scores).unsqueeze(0)
    return x


def _last_encoder_state(x):
    if hasattr(x, "encoder_last_hidden_state"):
        return x.encoder_last_hidden_state
    elif hasattr(x, "encoder_hidden_states"):
        return x.encoder_hidden_states[-1]
    else:
        return x.hidden_states[-1]


def load_archive(path):
    import torch

    if not os.path.exists(path):
        # We've not passed an explicit path, but a part of the filename
        wd = '/iris/u/clin/code/efk/'
        directories = ["outputs", "multirun"]
        matches = []
        for d in directories:
            search = os.path.join(wd, d)
            for run_dir in os.listdir(search):
                if path in run_dir:
                    matches.append(os.path.join(search, run_dir))
        assert len(matches) == 1, f">1 matches for search {path}; specify exact path"

        full_run_dir = matches[0]
        if "0" in os.listdir(full_run_dir):
            full_run_dir = os.path.join(full_run_dir, "0")
        models_dir = os.path.join(full_run_dir, "models")
        models = os.listdir(models_dir)
        non_bk = [m for m in models if not m.endswith(".bk")]
        assert (
            len(non_bk) == 1
        ), f"Expected a single model in {models_dir}, got {len(non_bk)}"
        path = os.path.join(models_dir, non_bk[0])

    LOG.info(f"Loading checkpoint from {path}")
    archive = torch.load(path, map_location="cpu")
    LOG.info("Load complete.")

    return archive, path


def flatten_dict(d):
    to_process = list(d.items())
    output = {}
    while len(to_process):
        k, v = to_process.pop()
        if isinstance(v, typing.MutableMapping):
            to_process.extend([(f"{k}.{k_}", v_) for (k_, v_) in v.items()])
        else:
            assert k not in output.keys(), "Somehow ended up with duplicate keys"
            output[k] = v

    return output


def add_padding(tokenizer, model):
    tokenizer.add_special_tokens({'pad_token': '[PAD]'})
    model.resize_token_embeddings(len(tokenizer))
    model.transformer.wte.weight.data[-1] = model.transformer.wte.weight.data.mean(0)


def add_sep(tokenizer, model):
    tokenizer.add_special_tokens({'sep_token': '[SEP]'})
    # model.resize_token_embeddings(len(tokenizer))
    # model.lm_head.weight.data[-1, :] = model.lm_head.weight.data.mean(0)


class EarlyStopper:
    def __init__(self, patience: int, key: str, minimize: bool = False):
        self.best_value = 1e9 if minimize else -1e9
        self.best_iter = 0
        self.current_iter = 0
        self.key = key
        self.patience = patience
        self.minimize = minimize
        self._stop = False

    def update(self, idx, stats):
        assert self.key in stats, f"'{self.key}' not in stats dict"
        value = stats[self.key]
        new_best = value < self.best_value if self.minimize else value > self.best_value
        if new_best:
            self.best_value = value
            self.best_iter = idx

        self.current_iter = idx
        return new_best

    def should_stop(self):
        self._stop |= self.current_iter - self.best_iter >= self.patience
        return self._stop


class RunningStatAverager:
    def __init__(self, suffix="", exclude=["grad/"], compute_ppl: bool = True):
        self.underlying = None
        self.suffix = suffix
        self.exclude = exclude
        self.compute_ppl = compute_ppl

        self.reset()

    def add(self, d: dict):
        for k, v in d.items():
            if not any([k.startswith(prefix) for prefix in self.exclude]):
                if len(self.suffix):
                    self.underlying[f"{k}_{self.suffix}"].append(v)
                else:
                    self.underlying[k].append(v)

    def average(self):
        average = {}
        for k, v in self.underlying.items():
            if not k.startswith("nll/"):
                average[k] = sum(v) / len(v)
            else:
                assert len(k.split("/")) == 2, f"Invalid key {k}"
                name = k.split("/")[1]
                token_counts = self.underlying[f"n_tokens/{name}"]
                total_nll = sum([nll * c for nll, c in zip(v, token_counts)])
                average[k] = total_nll / sum(token_counts)
                if self.compute_ppl:
                    average[f"perplexity/{name}"] = math.e ** average[k]

        return {k: v if not isinstance(v, torch.Tensor) else v.item() for k, v in average.items()}

    def reset(self):
        self.underlying = defaultdict(list)


class EditBatchSampler:
    def __init__(
        self,
        n,
        memorize_mode=False,
        loc_disjoint=True,
        seed=0,
        hard_neg=False,
        hard_neg_prob=1.0,
        loc_distr_matrix=None,
        loc_idx_matrix=None,
        keep_probs=None,
        mutex=None
    ):
        self.memorize_mode = memorize_mode
        self.n = n
        self.loc_disjoint = loc_disjoint
        self.rng = np.random.default_rng(seed)
        self.hard_neg = hard_neg
        self.hard_neg_prob = hard_neg_prob
        self.loc_probs = loc_distr_matrix
        self.loc_idxs = loc_idx_matrix
        self.keep_probs = np.array(keep_probs)[:self.n] if keep_probs is not None else None
        self.mutex = mutex[:self.n] if mutex is not None else None
        self._init()

    def _init(self):
        idxs = np.arange(self.n)
        if self.keep_probs is not None:
            sample = self.rng.binomial(1, self.keep_probs).astype(np.bool)
            idxs = idxs[sample]

        self.perm = self.rng.permutation(idxs)
        self.edit_position = 0

    def get_edit_idxs(self, batch_size):
        if self.mutex is None:
            idxs = set([int(idx) for idx in self.perm[self.edit_position: self.edit_position + batch_size]])
            self.edit_position += batch_size
        else:
            mutexes = []
            idxs = []

            def notin(x, mutexes):
                for m in mutexes:
                    if x in m or m in x:
                        return False
                return True
            while len(idxs) < batch_size:
                new_idx = self.perm[self.edit_position]
                if notin(self.mutex[new_idx], mutexes):
                    mutexes.append(self.mutex[new_idx])
                    idxs.append(int(new_idx))
                self.edit_position += 1
                if self.edit_position == self.perm.shape[0]:
                    return None

            idxs = set(idxs)

        return idxs

    def sample(self, batch_size, return_hard_flag=False):
        if self.memorize_mode:
            return list(range(batch_size)), list(range(batch_size, batch_size * 2))

        if self.edit_position + batch_size >= self.perm.shape[0]:
            self._init()  # Re-start if we end with a partially-sized batch

        edit_idxs = self.get_edit_idxs(batch_size)
        if edit_idxs is None:
            self._init()
            edit_idxs = self.get_edit_idxs(batch_size)
            if edit_idxs is None:
                raise RuntimeError(f"No valid batches of size {batch_size} exist!")

        if self.hard_neg:
            assert self.loc_probs is not None, "hard_neg is on, but don't have distance matrix!"

        def get_loc_idxs():
            if self.hard_neg and self.rng.uniform() < self.hard_neg_prob:
                return [int(self.rng.choice(self.loc_idxs[idx], p=self.loc_probs[idx])) for idx in edit_idxs], True
            else:
                # Use deterministic implementation in case edit batches are large
                non_edit_idxs = list(set(range(self.n)) - set(edit_idxs))
                return [int(idx) for idx in self.rng.choice(non_edit_idxs, batch_size)], False

        loc_idxs, hard = get_loc_idxs()
        if self.loc_disjoint:
            steps = 0
            while len(edit_idxs.intersection(set(loc_idxs))) > 0:
                loc_idxs, hard = get_loc_idxs()
                steps += 1
                if steps > 100:
                    raise RuntimeError("Can't find disjoint loc_idxs and edit_idxs!")

        if return_hard_flag:
            return list(edit_idxs), loc_idxs, hard
        else:
            return list(edit_idxs), loc_idxs


def parent_module(model, pname):
    comps = pname.split('.')
    parent = model
    for comp in comps[:-1]:
        if hasattr(parent, comp):
            parent = getattr(parent, comp)
        elif comp.isdigit():
            parent = parent[int(comp)]
        else:
            raise RuntimeError(f"Couldn't find child module {comp}")
    assert hasattr(parent, comps[-1])
    return parent


def build_distr_matrix(edit_qs, config, loc_qs=None, slice_size=1000):
    n = len(edit_qs)
    device = "cuda" if torch.cuda.is_available() else "cpu"

    num_neighbors = config.data.hard_neg_neighbors
    num_exclude = config.data.hard_neg_exclude
    temp = config.data.hard_neg_temp

    from sentence_transformers import SentenceTransformer
    from sentence_transformers.util import pytorch_cos_sim
    embedding_model = SentenceTransformer('all-MiniLM-L6-v2', cache_folder=scr()).to(device)

    ind_matrix = torch.zeros((n, num_neighbors - num_exclude), dtype=torch.long)
    distr_matrix = torch.full((n, num_neighbors - num_exclude), float('nan'))
    edit_encodings = torch.FloatTensor(embedding_model.encode(edit_qs, batch_size=256)).to(device)

    # If loc_qs is None then build the similarity matrix between edit_qs and itself
    loc_encodings = edit_encodings if loc_qs is None else embedding_model.encode(loc_qs, batch_size=256)
    if isinstance(loc_encodings, np.ndarray):
        loc_encodings = torch.FloatTensor(loc_encodings).to(device)

    for idx in range(0, n, slice_size):
        end_idx = idx + slice_size if idx + slice_size <= n else n
        slice_encodings = edit_encodings[idx:end_idx]
        sim_rows = pytorch_cos_sim(slice_encodings, loc_encodings)
        indices = sim_rows.topk(num_neighbors, -1).indices[:, num_exclude:]
        ind_matrix[idx:end_idx] = indices.cpu()
        distr_matrix[idx:end_idx] = sim_rows.gather(-1, indices).mul(temp).exp().cpu()

    assert not torch.isnan(distr_matrix).any()

    LOG.info(f"Built hard negative distribution matrix of size {distr_matrix.shape}")
    distr_matrix = distr_matrix.numpy()
    distr_matrix = distr_matrix / distr_matrix.sum(-1, keepdims=True)
    return distr_matrix, ind_matrix.numpy()