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import contextlib
import gc
import os
import re

import random
from encodec import EncodecModel
import funcy
import numpy as np
from scipy.special import softmax
import torch
import torch.nn.functional as F
import tqdm
from transformers import BertTokenizer
from huggingface_hub import hf_hub_download

from .model import GPTConfig, GPT
from .model_fine import FineGPT, FineGPTConfig


from rich.pretty import pprint

from .config import logger

from huggingface_hub import hf_hub_url
from collections import Counter
if (
    torch.cuda.is_available() and
    hasattr(torch.cuda, "amp") and
    hasattr(torch.cuda.amp, "autocast") and
    hasattr(torch.cuda, "is_bf16_supported") and
    torch.cuda.is_bf16_supported()
):
    autocast = funcy.partial(torch.cuda.amp.autocast, dtype=torch.bfloat16)
else:
    @contextlib.contextmanager
    def autocast():
        yield


# hold models in global scope to lazy load
global models
models = {}

global models_devices
models_devices = {}


CONTEXT_WINDOW_SIZE = 1024

SEMANTIC_RATE_HZ = 49.9
SEMANTIC_VOCAB_SIZE = 10_000

CODEBOOK_SIZE = 1024
N_COARSE_CODEBOOKS = 2
N_FINE_CODEBOOKS = 8
COARSE_RATE_HZ = 75

SAMPLE_RATE = 24_000


SUPPORTED_LANGS = [
    ("English", "en"),
    ("German", "de"),
    ("Spanish", "es"),
    ("French", "fr"),
    ("Hindi", "hi"),
    ("Italian", "it"),
    ("Japanese", "ja"),
    ("Korean", "ko"),
    ("Polish", "pl"),
    ("Portuguese", "pt"),
    ("Russian", "ru"),
    ("Turkish", "tr"),
    ("Chinese", "zh"),
]

ALLOWED_PROMPTS = {"announcer"}
for _, lang in SUPPORTED_LANGS:
    for prefix in ("", f"v2{os.path.sep}"):
        for n in range(10):
            ALLOWED_PROMPTS.add(f"{prefix}{lang}_speaker_{n}")




CUR_PATH = os.path.dirname(os.path.abspath(__file__))


default_cache_dir = os.path.join(os.path.expanduser("~"), ".cache")
CACHE_DIR = os.path.join(os.getenv("XDG_CACHE_HOME", default_cache_dir), "suno", "bark_v0")


USE_SMALL_MODELS = os.environ.get("SUNO_USE_SMALL_MODELS", False)
GLOBAL_ENABLE_MPS = os.environ.get("SUNO_ENABLE_MPS", False)
OFFLOAD_CPU = os.environ.get("SUNO_OFFLOAD_CPU", False)



REMOTE_MODEL_PATHS = {
    "text_small": {
        "repo_id": "suno/bark",
        "file_name": "text.pt",
    },
    "coarse_small": {
        "repo_id": "suno/bark",
        "file_name": "coarse.pt",
    },
    "fine_small": {
        "repo_id": "suno/bark",
        "file_name": "fine.pt",
    },
    "text": {
        "repo_id": "suno/bark",
        "file_name": "text_2.pt",
    },
    "coarse": {
        "repo_id": "suno/bark",
        "file_name": "coarse_2.pt",
    },
    "fine": {
        "repo_id": "suno/bark",
        "file_name": "fine_2.pt",
    },
}


if not hasattr(torch.nn.functional, 'scaled_dot_product_attention') and torch.cuda.is_available():
    logger.warning(
        "torch version does not support flash attention. You will get faster" +
        " inference speed by upgrade torch to newest nightly version."
    )


def _grab_best_device(use_gpu=True):
    if torch.cuda.device_count() > 0 and use_gpu:
        device = "cuda"
    elif torch.backends.mps.is_available() and use_gpu and GLOBAL_ENABLE_MPS:
        device = "mps"
    else:
        device = "cpu"
    return device


def _get_ckpt_path(model_type, use_small=False):
    key = model_type
    if use_small:
        key += "_small"
    return os.path.join(CACHE_DIR, REMOTE_MODEL_PATHS[key]["file_name"])


def _download(from_hf_path, file_name):
    os.makedirs(CACHE_DIR, exist_ok=True)
    hf_hub_download(repo_id=from_hf_path, filename=file_name, local_dir=CACHE_DIR)


class InferenceContext:
    def __init__(self, benchmark=False):
        # we can't expect inputs to be the same length, so disable benchmarking by default
        self._chosen_cudnn_benchmark = benchmark
        self._cudnn_benchmark = None

    def __enter__(self):
        self._cudnn_benchmark = torch.backends.cudnn.benchmark
        torch.backends.cudnn.benchmark = self._chosen_cudnn_benchmark

    def __exit__(self, exc_type, exc_value, exc_traceback):
        torch.backends.cudnn.benchmark = self._cudnn_benchmark


if torch.cuda.is_available():
    torch.backends.cuda.matmul.allow_tf32 = True
    torch.backends.cudnn.allow_tf32 = True


@contextlib.contextmanager
def _inference_mode():
    with InferenceContext(), torch.inference_mode(), torch.no_grad(), autocast():
        yield


def _clear_cuda_cache():
    if torch.cuda.is_available():
        torch.cuda.empty_cache()
        torch.cuda.synchronize()


def clean_models(model_key=None):
    global models
    model_keys = [model_key] if model_key is not None else models.keys()
    for k in model_keys:
        if k in models:
            del models[k]
    _clear_cuda_cache()
    gc.collect()


# def _load_model(ckpt_path, device, use_small=False, model_type="text"):
    


def _load_codec_model(device):
    model = EncodecModel.encodec_model_24khz()
    model.set_target_bandwidth(6.0)
    model.eval()
    model.to(device)
    _clear_cuda_cache()
    return model





def load_codec_model(use_gpu=True, force_reload=False):
    global models
    global models_devices
    device = _grab_best_device(use_gpu=use_gpu)
    if device == "mps":
        # encodec doesn't support mps
        device = "cpu"
    model_key = "codec"
    if OFFLOAD_CPU:
        models_devices[model_key] = device
        device = "cpu"
    if model_key not in models or force_reload:
        clean_models(model_key=model_key)
        model = _load_codec_model(device)
        models[model_key] = model
    models[model_key].to(device)
    return models[model_key]

"""
def preload_models(
    text_use_gpu=True,
    text_use_small=False,
    coarse_use_gpu=True,
    coarse_use_small=False,
    fine_use_gpu=True,
    fine_use_small=False,
    codec_use_gpu=True,
    force_reload=False,
):
"""

####
# Generation Functionality
####


def _tokenize(tokenizer, text):
    return tokenizer.encode(text, add_special_tokens=False)


def _detokenize(tokenizer, enc_text):
    return tokenizer.decode(enc_text)


def _normalize_whitespace(text):
    return re.sub(r"\s+", " ", text).strip()


TEXT_ENCODING_OFFSET = 10_048
SEMANTIC_PAD_TOKEN = 10_000
TEXT_PAD_TOKEN = 129_595
SEMANTIC_INFER_TOKEN = 129_599


def _load_history_prompt(history_prompt_input):
    if isinstance(history_prompt_input, str) and history_prompt_input.endswith(".npz"):
        history_prompt = np.load(history_prompt_input)
    elif isinstance(history_prompt_input, str):
        # make sure this works on non-ubuntu
        history_prompt_input = os.path.join(*history_prompt_input.split("/"))
        if history_prompt_input not in ALLOWED_PROMPTS:
            raise ValueError("history prompt not found")
        history_prompt = np.load(
            os.path.join(CUR_PATH, "assets", "prompts", f"{history_prompt_input}.npz")
        )
    elif isinstance(history_prompt_input, dict):
        assert("semantic_prompt" in history_prompt_input)
        assert("coarse_prompt" in history_prompt_input)
        assert("fine_prompt" in history_prompt_input)
        history_prompt = history_prompt_input
    else:
        raise ValueError("history prompt format unrecognized")
    return history_prompt
# removed semantic_history_oversize_limit because merging

def compute_log_probs(token_list, smoothing_factor, scaling_factor):
    # Count the frequency of each token.
    token_freq = Counter(token_list)

    # Add a smoothing factor.
    smoothed_token_freq = {token: freq + smoothing_factor for token, freq in token_freq.items()}

    # Normalize to create a probability distribution.
    total_tokens = len(token_list) + smoothing_factor * len(smoothed_token_freq)
    token_probs = {token: freq / total_tokens for token, freq in smoothed_token_freq.items()}

    # Transform into scaled log-probabilities.
    log_probs = {token: scaling_factor * np.log(prob) for token, prob in token_probs.items()}

    return log_probs




def generate_text_semantic(
    text,
    history_prompt=None,
    temp=0.7,
    top_k=None,
    top_p=None,
    silent=False,
    min_eos_p=0.2,
    max_gen_duration_s=None,
    allow_early_stop=True,
    use_kv_caching=False,
    history_prompt_magic=None,
    history_prompt_magic_text=None, # removed just do patch

):
    """Generate semantic tokens from text."""


    logger.debug(locals())
    assert isinstance(text, str)
    text = _normalize_whitespace(text)
    assert len(text.strip()) > 0
    if history_prompt is not None:
        history_prompt = _load_history_prompt(history_prompt)
        semantic_history = history_prompt["semantic_prompt"]
        assert (
            isinstance(semantic_history, np.ndarray)
            and len(semantic_history.shape) == 1
            and len(semantic_history) > 0
            and semantic_history.min() >= 0
            and semantic_history.max() <= SEMANTIC_VOCAB_SIZE - 1
        )
    else:
        semantic_history = None

    if history_prompt_magic is not None:
        assert (
            isinstance(history_prompt_magic, np.ndarray)
            and len(history_prompt_magic.shape) == 1
            and len(history_prompt_magic) > 0
            and history_prompt_magic.min() >= 0
            and history_prompt_magic.max() <= SEMANTIC_VOCAB_SIZE - 1
        )
    else:
        history_prompt_magic = None
    # load models if not yet exist
    global models
    global models_devices
    if "text" not in models:
        preload_models()
    model_container = models["text"]
    model = model_container["model"]
    tokenizer = model_container["tokenizer"]
    encoded_text = np.array(_tokenize(tokenizer, text)) + TEXT_ENCODING_OFFSET
    if OFFLOAD_CPU:
        model.to(models_devices["text"])
    device = next(model.parameters()).device
    if len(encoded_text) > 256:
        p = round((len(encoded_text) - 256) / len(encoded_text) * 100, 1)
        logger.warning(f"warning, text too long, lopping of last {p}%")
        encoded_text = encoded_text[:256]
    encoded_text = np.pad(
        encoded_text,
        (0, 256 - len(encoded_text)),
        constant_values=TEXT_PAD_TOKEN,
        mode="constant",
    )
    if semantic_history is not None:
        semantic_history = semantic_history.astype(np.int64)
        # lop off if history is too long, pad if needed
        semantic_history = semantic_history[-256:]
        semantic_history = np.pad(
            semantic_history,
            (0, 256 - len(semantic_history)),
            constant_values=SEMANTIC_PAD_TOKEN,
            mode="constant",
        )
        #print(f"Actual length of semantic history: {len(semantic_history)}")
    else:
        #print(f"No semantic history provided.")
        semantic_history = np.array([SEMANTIC_PAD_TOKEN] * 256)



    x = torch.from_numpy(
        np.hstack([
            encoded_text, semantic_history, np.array([SEMANTIC_INFER_TOKEN])
        ]).astype(np.int64)
    )[None]
    assert x.shape[1] == 256 + 256 + 1
    with _inference_mode():
        x = x.to(device)
        n_tot_steps = 768
        # custom tqdm updates since we don't know when eos will occur
        pbar = tqdm.tqdm(disable=silent, total=100)
        pbar_state = 0
        tot_generated_duration_s = 0
        kv_cache = None
        for n in range(n_tot_steps):
            if use_kv_caching and kv_cache is not None:
                x_input = x[:, [-1]]
            else:
                x_input = x
            logits, kv_cache = model(
                x_input, merge_context=True, use_cache=use_kv_caching, past_kv=kv_cache
            )
            relevant_logits = logits[0, 0, :SEMANTIC_VOCAB_SIZE]
            if allow_early_stop:
                relevant_logits = torch.hstack(
                    (relevant_logits, logits[0, 0, [SEMANTIC_PAD_TOKEN]])  # eos
                )
            if top_p is not None:
                # faster to convert to numpy
                logits_device = relevant_logits.device
                logits_dtype = relevant_logits.type()
                relevant_logits = relevant_logits.detach().cpu().type(torch.float32).numpy()
                sorted_indices = np.argsort(relevant_logits)[::-1]
                sorted_logits = relevant_logits[sorted_indices]
                cumulative_probs = np.cumsum(softmax(sorted_logits))
                sorted_indices_to_remove = cumulative_probs > top_p
                sorted_indices_to_remove[1:] = sorted_indices_to_remove[:-1].copy()
                sorted_indices_to_remove[0] = False
                relevant_logits[sorted_indices[sorted_indices_to_remove]] = -np.inf
                relevant_logits = torch.from_numpy(relevant_logits)
                relevant_logits = relevant_logits.to(logits_device).type(logits_dtype)
            if top_k is not None:
                v, _ = torch.topk(relevant_logits, min(top_k, relevant_logits.size(-1)))
                relevant_logits[relevant_logits < v[-1]] = -float("Inf")
            probs = F.softmax(relevant_logits / temp, dim=-1)
            # multinomial bugged on mps: shuttle to cpu if necessary
            inf_device = probs.device
            if probs.device.type == "mps":
                probs = probs.to("cpu")
            item_next = torch.multinomial(probs, num_samples=1)
            probs = probs.to(inf_device)
            item_next = item_next.to(inf_device)
            if allow_early_stop and (
                item_next == SEMANTIC_VOCAB_SIZE
                or (min_eos_p is not None and probs[-1] >= min_eos_p)
            ):
                # eos found, so break
                pbar.update(100 - pbar_state)
                break
            x = torch.cat((x, item_next[None]), dim=1)
            tot_generated_duration_s += 1 / SEMANTIC_RATE_HZ
            if max_gen_duration_s is not None and tot_generated_duration_s > max_gen_duration_s:
                pbar.update(100 - pbar_state)
                break
            if n == n_tot_steps - 1:
                pbar.update(100 - pbar_state)
                break
            del logits, relevant_logits, probs, item_next
            req_pbar_state = np.min([100, int(round(100 * n / n_tot_steps))])
            if req_pbar_state > pbar_state:
                pbar.update(req_pbar_state - pbar_state)
            pbar_state = req_pbar_state
        pbar.close()
        out = x.detach().cpu().numpy().squeeze()[256 + 256 + 1 :]
    if OFFLOAD_CPU:
        model.to("cpu")
    assert all(0 <= out) and all(out < SEMANTIC_VOCAB_SIZE)
    _clear_cuda_cache()
    return out



# 
def generate_text_semantic_garbage_version(
    text,
    history_prompt=None,
    temp=0.7,
    top_k=None,
    top_p=None,
    silent=False,
    min_eos_p=0.2,
    max_gen_duration_s=None,
    allow_early_stop=True,
    use_kv_caching=False,
    history_prompt_magic=None,
    history_prompt_magic_text=None,
    banned_tokens = None,
    absolute_banned_tokens = None,
    outside_banned_penalty = -100.0,
    target_distribution = None,
    target_k_smoothing_factor = 0.2,
    target_scaling_factor = 0.5, # scale and weight are too correlated, better to find some other way to represent this

    history_prompt_distribution = None, 


    history_prompt_k_smoothing_factor = 0.2,
    history_prompt_scaling_factor = 0.5,


    history_prompt_average_distribution = None,
    history_prompt_average_k_smoothing_factor = 0.2, 
    history_prompt_average_scaling_factor = 0.5,

    target_outside_default_penalty = -5.0, # default penalty for tokens outside target distribution
    target_outside_outlier_penalty = -25.0, # rare or absent in speaker and target
    history_prompt_unique_voice_penalty = -1.0, # if we think this is specific to the speaker, maybe this should actually be positivbe?

    consider_common_threshold = 100 / 10001, # todo: no idea what's good valu here
    history_prompt_unique_voice_threshold = 100 / 10001, 

):
    """Generate semantic tokens from text."""



    logger.debug(locals())
    assert isinstance(text, str)
    text = _normalize_whitespace(text)
    #assert len(text.strip()) > 0
    if history_prompt is not None:
        history_prompt = _load_history_prompt(history_prompt)
        semantic_history = history_prompt["semantic_prompt"]
        assert (
            isinstance(semantic_history, np.ndarray)
            and len(semantic_history.shape) == 1
            and len(semantic_history) > 0
            and semantic_history.min() >= 0
            and semantic_history.max() <= SEMANTIC_VOCAB_SIZE - 1
        )
        
    else:
        semantic_history = None

    if history_prompt_magic is not None:
        assert (
            isinstance(history_prompt_magic, np.ndarray)
            and len(history_prompt_magic.shape) == 1
            and len(history_prompt_magic) > 0
            and history_prompt_magic.min() >= 0
            and history_prompt_magic.max() <= SEMANTIC_VOCAB_SIZE - 1
        )
    else:
        history_prompt_magic = None
    # load models if not yet exist
    global models
    global models_devices
    if "text" not in models:
        preload_models()
    model_container = models["text"]
    model = model_container["model"]
    tokenizer = model_container["tokenizer"]
    encoded_text = np.array(_tokenize(tokenizer, text)) + TEXT_ENCODING_OFFSET
    if OFFLOAD_CPU:
        model.to(models_devices["text"])
    device = next(model.parameters()).device
    if len(encoded_text) > 256:
        p = round((len(encoded_text) - 256) / len(encoded_text) * 100, 1)
        logger.warning(f"warning, text too long, lopping of last {p}%")
        encoded_text = encoded_text[:256]
    encoded_text = np.pad(
        encoded_text,
        (0, 256 - len(encoded_text)),
        constant_values=TEXT_PAD_TOKEN,
        mode="constant",
    )
    if semantic_history is not None:
        semantic_history = semantic_history.astype(np.int64)
        # lop off if history is too long, pad if needed
        semantic_history = semantic_history[-256:]

        print(f"Semantic history Input Length pre 256 trim: {len(semantic_history)}")
        semantic_history = np.pad(
            semantic_history,
            (0, 256 - len(semantic_history)),
            constant_values=SEMANTIC_PAD_TOKEN,
            mode="constant",
        )

    else:
        print(f"No semantic history provided.")
        semantic_history = np.array([SEMANTIC_PAD_TOKEN] * 256)



    x = torch.from_numpy(
        np.hstack([
            encoded_text, semantic_history, np.array([SEMANTIC_INFER_TOKEN])
        ]).astype(np.int64)
    )[None]
    assert x.shape[1] == 256 + 256 + 1


    penalty_tensor = None
    banned_tokens_tensor = None
    # TODO Handle the non history_prompt case, just using either single reference distribution, or speaker reference + reference




    

    if target_distribution is not None and history_prompt is not None:
        # TODO defaults chosen arbitrarily. try to find better values


        
        
        history_prompt_distribution_log_probs = compute_log_probs(history_prompt_distribution, history_prompt_k_smoothing_factor, history_prompt_scaling_factor)
        target_distribution_log_probs = compute_log_probs(target_distribution, target_k_smoothing_factor, target_scaling_factor)

        if history_prompt_average_distribution is not None:

            history_prompt_average_distribution_log_probs = compute_log_probs(history_prompt_average_distribution , history_prompt_average_k_smoothing_factor, history_prompt_average_scaling_factor )


            history_prompt_uniqueness = {token: history_prompt_distribution_log_probs[token] - history_prompt_average_distribution_log_probs.get(token, 0) for token in history_prompt_distribution_log_probs.keys()}


        penalty_tensor = torch.full((10001,), target_outside_default_penalty, device=device, dtype=torch.float32)

        history_prompt_unique_voice_threshold_logn = np.log(history_prompt_unique_voice_threshold)

        for token in range(10001):  
            history_prompt_prob = history_prompt_distribution_log_probs.get(token, None)
            target_prob = target_distribution_log_probs.get(token, None)

            if target_prob is not None:

                penalty_tensor[token] = target_prob
            


            # Okay let's just back up and yank start removing things from this file, it doesn't seem like the quality increasing
            # let's get back to the simplest version that was still amazing.
            """
            if history_prompt_uniqueness[token] > history_prompt_unique_voice_threshold_logn:
                # looks like a token unique to our speaker
                penalty_tensor[token] = history_prompt_prob[token] + history_prompt_unique_voice_penalty 
                # maybe should also scale penalty by target frequency, but with scaling factor? gah too many options
            else:
                penalty_tensor[token] = target_prob

                
            """

        """
        token_freq = Counter(target_distribution)

        smoothed_token_freq = {token: freq + target_k_smoothing_factor for token, freq in token_freq.items()}

        # Normalize 
        total_tokens = len(target_distribution) + target_k_smoothing_factor * len(smoothed_token_freq)
        token_probs = {token: freq / total_tokens for token, freq in smoothed_token_freq.items()}


        log_probs = {token: np.log(prob) for token, prob in token_probs.items()}
        # are there some special bark tokens to exclude? seems to work fine without
        #log_probs_tensor = torch.full((10001,), -np.inf, device=device, dtype=torch.float32)
        log_probs_tensor = torch.full((10001,), target_outside_penalty, device=device, dtype=torch.float32)

        for token, log_prob in log_probs.items():
            log_probs_tensor[token] = target_scaling_factor * log_prob
        """

    with _inference_mode():
        x = x.to(device)
        n_tot_steps = 768
        # custom tqdm updates since we don't know when eos will occur
        pbar = tqdm.tqdm(disable=silent, total=100)
        pbar_state = 0
        tot_generated_duration_s = 0
        kv_cache = None



        for n in range(n_tot_steps):
            if use_kv_caching and kv_cache is not None:
                x_input = x[:, [-1]]
            else:
                x_input = x
            logits, kv_cache = model(
                x_input, merge_context=True, use_cache=use_kv_caching, past_kv=kv_cache
            )
            relevant_logits = logits[0, 0, :SEMANTIC_VOCAB_SIZE]
            if allow_early_stop:
                relevant_logits = torch.hstack(
                    (relevant_logits, logits[0, 0, [SEMANTIC_PAD_TOKEN]])  # eos
                )
            if top_p is not None:
                # faster to convert to numpy
                logits_device = relevant_logits.device
                logits_dtype = relevant_logits.type()
                relevant_logits = relevant_logits.detach().cpu().type(torch.float32).numpy()
                sorted_indices = np.argsort(relevant_logits)[::-1]
                sorted_logits = relevant_logits[sorted_indices]
                cumulative_probs = np.cumsum(softmax(sorted_logits))
                sorted_indices_to_remove = cumulative_probs > top_p
                sorted_indices_to_remove[1:] = sorted_indices_to_remove[:-1].copy()
                sorted_indices_to_remove[0] = False
                relevant_logits[sorted_indices[sorted_indices_to_remove]] = -np.inf
                relevant_logits = torch.from_numpy(relevant_logits)
                relevant_logits = relevant_logits.to(logits_device).type(logits_dtype)


            

            if top_k is not None:
                v, _ = torch.topk(relevant_logits, min(top_k, relevant_logits.size(-1)))
                relevant_logits[relevant_logits < v[-1]] = -float("Inf")

            # TODO not banning speaker most unique tokens compared to referenc history class



            if absolute_banned_tokens is not None:

                banned_tokens_tensor = torch.tensor(absolute_banned_tokens, device=relevant_logits.device)
                penalty_tensor = torch.full(banned_tokens_tensor.shape, -10000.0,  device=relevant_logits.device, dtype=relevant_logits.dtype)
                relevant_logits.index_add_(0, banned_tokens_tensor, penalty_tensor)

            elif banned_tokens is not None:

                banned_tokens_tensor = torch.tensor(banned_tokens, device=relevant_logits.device)
                penalty_tensor = torch.full(banned_tokens_tensor.shape, outside_banned_penalty, device=relevant_logits.device, dtype=relevant_logits.dtype)
                relevant_logits.index_add_(0, banned_tokens_tensor, penalty_tensor)
  

            if penalty_tensor is not None and target_distribution is not None:
                relevant_logits += penalty_tensor

                
            probs = F.softmax(relevant_logits / temp, dim=-1)



            # multinomial bugged on mps: shuttle to cpu if necessary
            inf_device = probs.device
            if probs.device.type == "mps":
                probs = probs.to("cpu")
            
            
            
            item_next = torch.multinomial(probs, num_samples=1)


            probs = probs.to(inf_device)
            item_next = item_next.to(inf_device)
            if allow_early_stop and (
                item_next == SEMANTIC_VOCAB_SIZE
                or (min_eos_p is not None and probs[-1] >= min_eos_p)
            ):
                # eos found, so break
                pbar.update(100 - pbar_state)
                break
            x = torch.cat((x, item_next[None]), dim=1)
            tot_generated_duration_s += 1 / SEMANTIC_RATE_HZ
            if max_gen_duration_s is not None and tot_generated_duration_s > max_gen_duration_s:
                pbar.update(100 - pbar_state)
                break
            if n == n_tot_steps - 1:
                pbar.update(100 - pbar_state)
                break
            del logits, relevant_logits, probs, item_next
            req_pbar_state = np.min([100, int(round(100 * n / n_tot_steps))])
            if req_pbar_state > pbar_state:
                pbar.update(req_pbar_state - pbar_state)
            pbar_state = req_pbar_state
        pbar.close()
        out = x.detach().cpu().numpy().squeeze()[256 + 256 + 1 :]
    if OFFLOAD_CPU:
        model.to("cpu")
    assert all(0 <= out) and all(out < SEMANTIC_VOCAB_SIZE)
    _clear_cuda_cache()
    return out




def generate_coarse(
    x_semantic,
    history_prompt=None,
    temp=0.7,
    top_k=None,
    top_p=None,
    silent=False,
    max_coarse_history=630,  # min 60 (faster), max 630 (more context)
    sliding_window_len=60,
    use_kv_caching=False,
    x_coarse_history_alignment_hack = -2,
):
    """Generate coarse audio codes from semantic tokens."""




    logger.debug(locals())
    assert (
        isinstance(x_semantic, np.ndarray)
        and len(x_semantic.shape) == 1
        and len(x_semantic) > 0
        and x_semantic.min() >= 0
        and x_semantic.max() <= SEMANTIC_VOCAB_SIZE - 1
    )
    assert 60 <= max_coarse_history <= 630
    assert max_coarse_history + sliding_window_len <= 1024 - 256
    semantic_to_coarse_ratio = COARSE_RATE_HZ / SEMANTIC_RATE_HZ * N_COARSE_CODEBOOKS

    max_semantic_history = int(np.floor(max_coarse_history / semantic_to_coarse_ratio))
    if history_prompt is not None:
        history_prompt = _load_history_prompt(history_prompt)
        x_semantic_history = history_prompt["semantic_prompt"]
        x_coarse_history = history_prompt["coarse_prompt"]

        print(f"Pre Trim lengths of semantic and coarse history: {x_semantic_history.shape} {x_coarse_history.shape}")
        assert (
            isinstance(x_semantic_history, np.ndarray)
            and len(x_semantic_history.shape) == 1
            and len(x_semantic_history) > 0
            and x_semantic_history.min() >= 0
            and x_semantic_history.max() <= SEMANTIC_VOCAB_SIZE - 1
            and isinstance(x_coarse_history, np.ndarray)
            and len(x_coarse_history.shape) == 2
            and x_coarse_history.shape[0] == N_COARSE_CODEBOOKS
            and x_coarse_history.shape[-1] >= 0
            and x_coarse_history.min() >= 0
            and x_coarse_history.max() <= CODEBOOK_SIZE - 1
            and (
                round(x_coarse_history.shape[-1] / len(x_semantic_history), 1)
                == round(semantic_to_coarse_ratio / N_COARSE_CODEBOOKS, 1)
            )
        )
        x_coarse_history = _flatten_codebooks(x_coarse_history) + SEMANTIC_VOCAB_SIZE
        # trim histories correctly
        n_semantic_hist_provided = np.min(
            [
                max_semantic_history,
                len(x_semantic_history) - len(x_semantic_history) % 2,
                int(np.floor(len(x_coarse_history) / semantic_to_coarse_ratio)),
            ]
        )
        n_coarse_hist_provided = int(round(n_semantic_hist_provided * semantic_to_coarse_ratio))
        x_semantic_history = x_semantic_history[-n_semantic_hist_provided:].astype(np.int32)
        x_coarse_history = x_coarse_history[-n_coarse_hist_provided:].astype(np.int32)
        # TODO: bit of a hack for time alignment (sounds better)
        #x_coarse_history = x_coarse_history[:-2]
        x_coarse_history = x_coarse_history[:x_coarse_history_alignment_hack]
        
    else:
        x_semantic_history = np.array([], dtype=np.int32)
        x_coarse_history = np.array([], dtype=np.int32)


    #print(f"actual lengths we're using, x_semantic_history: {len(x_semantic_history)} x_coarse_history: {len(x_coarse_history)}")

    # load models if not yet exist
    global models
    global models_devices
    if "coarse" not in models:
        preload_models()
    model = models["coarse"]
    if OFFLOAD_CPU:
        model.to(models_devices["coarse"])
    device = next(model.parameters()).device
    # start loop
    n_steps = int(
        round(
            np.floor(len(x_semantic) * semantic_to_coarse_ratio / N_COARSE_CODEBOOKS)
            * N_COARSE_CODEBOOKS
        )
    )
    assert n_steps > 0 and n_steps % N_COARSE_CODEBOOKS == 0

    # reminder to try filling up some of the COARSE_INFER_TOKEN with history to get better short clips
    x_semantic = np.hstack([x_semantic_history, x_semantic]).astype(np.int32)
    x_coarse = x_coarse_history.astype(np.int32)
    base_semantic_idx = len(x_semantic_history)
    with _inference_mode():
        x_semantic_in = torch.from_numpy(x_semantic)[None].to(device)
        x_coarse_in = torch.from_numpy(x_coarse)[None].to(device)
        n_window_steps = int(np.ceil(n_steps / sliding_window_len))
        n_step = 0
        for _ in tqdm.tqdm(range(n_window_steps), total=n_window_steps, disable=silent):
            semantic_idx = base_semantic_idx + int(round(n_step / semantic_to_coarse_ratio))
            # pad from right side
            x_in = x_semantic_in[:, np.max([0, semantic_idx - max_semantic_history]) :]
            x_in = x_in[:, :256]
            x_in = F.pad(
                x_in,
                (0, 256 - x_in.shape[-1]),
                "constant",
                COARSE_SEMANTIC_PAD_TOKEN,
            )
            x_in = torch.hstack(
                [
                    x_in,
                    torch.tensor([COARSE_INFER_TOKEN])[None].to(device),
                    x_coarse_in[:, -max_coarse_history:],
                ]
            )
            kv_cache = None
            for _ in range(sliding_window_len):
                if n_step >= n_steps:
                    continue
                is_major_step = n_step % N_COARSE_CODEBOOKS == 0

                if use_kv_caching and kv_cache is not None:
                    x_input = x_in[:, [-1]]
                else:
                    x_input = x_in

                logits, kv_cache = model(x_input, use_cache=use_kv_caching, past_kv=kv_cache)
                logit_start_idx = (
                    SEMANTIC_VOCAB_SIZE + (1 - int(is_major_step)) * CODEBOOK_SIZE
                )
                logit_end_idx = (
                    SEMANTIC_VOCAB_SIZE + (2 - int(is_major_step)) * CODEBOOK_SIZE
                )
                relevant_logits = logits[0, 0, logit_start_idx:logit_end_idx]
                if top_p is not None:
                    # faster to convert to numpy
                    logits_device = relevant_logits.device
                    logits_dtype = relevant_logits.type()
                    relevant_logits = relevant_logits.detach().cpu().type(torch.float32).numpy()
                    sorted_indices = np.argsort(relevant_logits)[::-1]
                    sorted_logits = relevant_logits[sorted_indices]
                    cumulative_probs = np.cumsum(softmax(sorted_logits))
                    sorted_indices_to_remove = cumulative_probs > top_p
                    sorted_indices_to_remove[1:] = sorted_indices_to_remove[:-1].copy()
                    sorted_indices_to_remove[0] = False
                    relevant_logits[sorted_indices[sorted_indices_to_remove]] = -np.inf
                    relevant_logits = torch.from_numpy(relevant_logits)
                    relevant_logits = relevant_logits.to(logits_device).type(logits_dtype)
                if top_k is not None:
                    v, _ = torch.topk(relevant_logits, min(top_k, relevant_logits.size(-1)))
                    relevant_logits[relevant_logits < v[-1]] = -float("Inf")
                probs = F.softmax(relevant_logits / temp, dim=-1)
                # multinomial bugged on mps: shuttle to cpu if necessary
                inf_device = probs.device
                if probs.device.type == "mps":
                    probs = probs.to("cpu")
                item_next = torch.multinomial(probs, num_samples=1)
                probs = probs.to(inf_device)
                item_next = item_next.to(inf_device)
                item_next += logit_start_idx
                x_coarse_in = torch.cat((x_coarse_in, item_next[None]), dim=1)
                x_in = torch.cat((x_in, item_next[None]), dim=1)
                del logits, relevant_logits, probs, item_next
                n_step += 1
            del x_in
        del x_semantic_in
    if OFFLOAD_CPU:
        model.to("cpu")
    gen_coarse_arr = x_coarse_in.detach().cpu().numpy().squeeze()[len(x_coarse_history) :]
    del x_coarse_in
    assert len(gen_coarse_arr) == n_steps
    gen_coarse_audio_arr = gen_coarse_arr.reshape(-1, N_COARSE_CODEBOOKS).T - SEMANTIC_VOCAB_SIZE
    for n in range(1, N_COARSE_CODEBOOKS):
        gen_coarse_audio_arr[n, :] -= n * CODEBOOK_SIZE
    _clear_cuda_cache()
    return gen_coarse_audio_arr


def generate_fine(
    x_coarse_gen,
    history_prompt=None,
    temp=0.5,
    silent=True,
):
    """Generate full audio codes from coarse audio codes."""

    logger.debug(locals())
    assert (
        isinstance(x_coarse_gen, np.ndarray)
        and len(x_coarse_gen.shape) == 2
        and 1 <= x_coarse_gen.shape[0] <= N_FINE_CODEBOOKS - 1
        and x_coarse_gen.shape[1] > 0
        and x_coarse_gen.min() >= 0
        and x_coarse_gen.max() <= CODEBOOK_SIZE - 1
    )
    if history_prompt is not None:
        history_prompt = _load_history_prompt(history_prompt)
        x_fine_history = history_prompt["fine_prompt"]
        assert (
            isinstance(x_fine_history, np.ndarray)
            and len(x_fine_history.shape) == 2
            and x_fine_history.shape[0] == N_FINE_CODEBOOKS
            and x_fine_history.shape[1] >= 0
            and x_fine_history.min() >= 0
            and x_fine_history.max() <= CODEBOOK_SIZE - 1
        )
    else:
        x_fine_history = None
    n_coarse = x_coarse_gen.shape[0]
    # load models if not yet exist
    global models
    global models_devices
    if "fine" not in models:
        preload_models()
    model = models["fine"]
    if OFFLOAD_CPU:
        model.to(models_devices["fine"])
    device = next(model.parameters()).device
    # make input arr
    in_arr = np.vstack(
        [
            x_coarse_gen,
            np.zeros((N_FINE_CODEBOOKS - n_coarse, x_coarse_gen.shape[1]))
            + CODEBOOK_SIZE,  # padding
        ]
    ).astype(np.int32)
    # prepend history if available (max 512)
    if x_fine_history is not None:
        x_fine_history = x_fine_history.astype(np.int32)
        in_arr = np.hstack(
            [
                x_fine_history[:, -512:].astype(np.int32),
                in_arr,
            ]
        )
        n_history = x_fine_history[:, -512:].shape[1]
    else:
        n_history = 0
    n_remove_from_end = 0
    # need to pad if too short (since non-causal model)
    if in_arr.shape[1] < 1024:
        n_remove_from_end = 1024 - in_arr.shape[1]
        in_arr = np.hstack(
            [
                in_arr,
                np.zeros((N_FINE_CODEBOOKS, n_remove_from_end), dtype=np.int32) + CODEBOOK_SIZE,
            ]
        )
    # we can be lazy about fractional loop and just keep overwriting codebooks
    n_loops = np.max([0, int(np.ceil((x_coarse_gen.shape[1] - (1024 - n_history)) / 512))]) + 1
    with _inference_mode():
        in_arr = torch.tensor(in_arr.T).to(device)
        for n in tqdm.tqdm(range(n_loops), disable=silent):
            start_idx = np.min([n * 512, in_arr.shape[0] - 1024])
            start_fill_idx = np.min([n_history + n * 512, in_arr.shape[0] - 512])
            rel_start_fill_idx = start_fill_idx - start_idx
            in_buffer = in_arr[start_idx : start_idx + 1024, :][None]
            for nn in range(n_coarse, N_FINE_CODEBOOKS):
                logits = model(nn, in_buffer)
                if temp is None:
                    relevant_logits = logits[0, rel_start_fill_idx:, :CODEBOOK_SIZE]
                    codebook_preds = torch.argmax(relevant_logits, -1)
                else:
                    relevant_logits = logits[0, :, :CODEBOOK_SIZE] / temp
                    probs = F.softmax(relevant_logits, dim=-1)
                    # multinomial bugged on mps: shuttle to cpu if necessary
                    inf_device = probs.device
                    if probs.device.type == "mps":
                        probs = probs.to("cpu")
                    codebook_preds = torch.hstack(
                        [
                            torch.multinomial(probs[nnn], num_samples=1).to(inf_device)
                            for nnn in range(rel_start_fill_idx, 1024)
                        ]
                    )
                in_buffer[0, rel_start_fill_idx:, nn] = codebook_preds
                del logits, codebook_preds
            # transfer over info into model_in and convert to numpy
            for nn in range(n_coarse, N_FINE_CODEBOOKS):
                in_arr[
                    start_fill_idx : start_fill_idx + (1024 - rel_start_fill_idx), nn
                ] = in_buffer[0, rel_start_fill_idx:, nn]
            del in_buffer
        gen_fine_arr = in_arr.detach().cpu().numpy().squeeze().T
        del in_arr
    if OFFLOAD_CPU:
        model.to("cpu")
    gen_fine_arr = gen_fine_arr[:, n_history:]
    if n_remove_from_end > 0:
        gen_fine_arr = gen_fine_arr[:, :-n_remove_from_end]
    assert gen_fine_arr.shape[-1] == x_coarse_gen.shape[-1]
    _clear_cuda_cache()
    return gen_fine_arr



def _flatten_codebooks(arr, offset_size=CODEBOOK_SIZE):
    assert len(arr.shape) == 2
    arr = arr.copy()
    if offset_size is not None:
        for n in range(1, arr.shape[0]):
            arr[n, :] += offset_size * n
    flat_arr = arr.ravel("F")
    return flat_arr


COARSE_SEMANTIC_PAD_TOKEN = 12_048
COARSE_INFER_TOKEN = 12_050




def codec_decode(fine_tokens):
    """Turn quantized audio codes into audio array using encodec."""
    # load models if not yet exist
    global models
    global models_devices
    if "codec" not in models:
        preload_models()
    model = models["codec"]
    if OFFLOAD_CPU:
        model.to(models_devices["codec"])
    device = next(model.parameters()).device
    arr = torch.from_numpy(fine_tokens)[None]
    arr = arr.to(device)
    arr = arr.transpose(0, 1)
    emb = model.quantizer.decode(arr)
    out = model.decoder(emb)
    audio_arr = out.detach().cpu().numpy().squeeze()
    del arr, emb, out
    if OFFLOAD_CPU:
        model.to("cpu")
    return audio_arr


## Added:

# Just overriding this because somehow I keep loading the wrong models?
def load_model(use_gpu=True, use_small=False, force_reload=False, model_type="text"):

    logger.debug(locals())

    _load_model_f = funcy.partial(_load_model, model_type=model_type, use_small=use_small)
    if model_type not in ("text", "coarse", "fine"):
        raise NotImplementedError()
    global models
    global models_devices
    device = _grab_best_device(use_gpu=use_gpu)
    model_key = f"{model_type}"
    if OFFLOAD_CPU:
        models_devices[model_key] = device
        device = "cpu"
    if model_key not in models or force_reload:
        ckpt_path = _get_ckpt_path(model_type, use_small=use_small)
        clean_models(model_key=model_key)
        model = _load_model_f(ckpt_path, device)
        models[model_key] = model
    if model_type == "text":
        models[model_key]["model"].to(device)
    else:
        models[model_key].to(device)
    logger.debug(f"Loaded {model_key} onto {device}.")
    return models[model_key]


def _load_model(ckpt_path, device, use_small=False, model_type="text"):
    if model_type == "text":
        ConfigClass = GPTConfig
        ModelClass = GPT
    elif model_type == "coarse":
        ConfigClass = GPTConfig
        ModelClass = GPT
    elif model_type == "fine":
        ConfigClass = FineGPTConfig
        ModelClass = FineGPT
    else:
        raise NotImplementedError()
    model_key = f"{model_type}_small" if use_small or USE_SMALL_MODELS else model_type
    model_info = REMOTE_MODEL_PATHS[model_key]
    if not os.path.exists(ckpt_path):
        logger.info(f"{model_type} model not found, downloading into `{CACHE_DIR}`.")

        ## added, actually screw logging, just print, rest easy always knowing which model is loaded
        remote_filename = hf_hub_url(model_info["repo_id"], model_info["file_name"])
        print(f"Downloading {model_key} {model_info['repo_id']} remote model file {remote_filename} {model_info['file_name']} to {CACHE_DIR}")  # added
        _download(model_info["repo_id"], model_info["file_name"])
    ## added
    print(f"Loading {model_key} model from {ckpt_path} to {device}") # added
    checkpoint = torch.load(ckpt_path, map_location=device)

    # this is a hack
    model_args = checkpoint["model_args"]
    if "input_vocab_size" not in model_args:
        model_args["input_vocab_size"] = model_args["vocab_size"]
        model_args["output_vocab_size"] = model_args["vocab_size"]
        del model_args["vocab_size"]
    gptconf = ConfigClass(**checkpoint["model_args"])
    model = ModelClass(gptconf)
    state_dict = checkpoint["model"]
    # fixup checkpoint
    unwanted_prefix = "_orig_mod."
    for k, v in list(state_dict.items()):
        if k.startswith(unwanted_prefix):
            state_dict[k[len(unwanted_prefix) :]] = state_dict.pop(k)
    extra_keys = set(state_dict.keys()) - set(model.state_dict().keys())
    extra_keys = set([k for k in extra_keys if not k.endswith(".attn.bias")])
    missing_keys = set(model.state_dict().keys()) - set(state_dict.keys())
    missing_keys = set([k for k in missing_keys if not k.endswith(".attn.bias")])
    if len(extra_keys) != 0:
        raise ValueError(f"extra keys found: {extra_keys}")
    if len(missing_keys) != 0:
        raise ValueError(f"missing keys: {missing_keys}")
    model.load_state_dict(state_dict, strict=False)
    n_params = model.get_num_params()
    val_loss = checkpoint["best_val_loss"].item()
    logger.info(f"model loaded: {round(n_params/1e6,1)}M params, {round(val_loss,3)} loss")
    model.eval()
    model.to(device)
    del checkpoint, state_dict
    _clear_cuda_cache()
    if model_type == "text":
        tokenizer = BertTokenizer.from_pretrained("bert-base-multilingual-cased")
        return {
            "model": model,
            "tokenizer": tokenizer,
        }
    return model


def preload_models(
    text_use_gpu=True,
    text_use_small=False,
    coarse_use_gpu=True,
    coarse_use_small=False,
    fine_use_gpu=True,
    fine_use_small=False,
    codec_use_gpu=True,
    force_reload=False,
):
    """Load all the necessary models for the pipeline."""



    # What is going on here
    logger.debug(f"USE_SMALL_MODELS = {USE_SMALL_MODELS} GLOBAL_ENABLE_MPS = {GLOBAL_ENABLE_MPS}, OFFLOAD_CPU = {OFFLOAD_CPU}")
    logger.debug(f"text_use_gpu = {text_use_gpu}, text_use_small = {text_use_small}, coarse_use_gpu = {coarse_use_gpu}, coarse_use_small = {coarse_use_small}, fine_use_gpu = {fine_use_gpu}, fine_use_small = {fine_use_small}, codec_use_gpu = {codec_use_gpu}, force_reload = {force_reload}") 

    # Is this actually bugged in Bark main, not my fault? This is checked further down the stack, but the chkpt_path is not updated in places

    # So we should also set this here, right, otherwise when not preloading, it tries to load a model which may not exist yet.

    if USE_SMALL_MODELS:
        text_use_small = True
        coarse_use_small = True
        fine_use_small = True
    
    if _grab_best_device() == "cpu" and (
        text_use_gpu or coarse_use_gpu or fine_use_gpu or codec_use_gpu
    ):
        logger.warning("No GPU being used. Careful, inference might be very slow!")
    _ = load_model(
        model_type="text", use_gpu=text_use_gpu, use_small=text_use_small, force_reload=force_reload
    )
    _ = load_model(
        model_type="coarse",
        use_gpu=coarse_use_gpu,
        use_small=coarse_use_small,
        force_reload=force_reload,
    )
    _ = load_model(
        model_type="fine", use_gpu=fine_use_gpu, use_small=fine_use_small, force_reload=force_reload
    )
    _ = load_codec_model(use_gpu=codec_use_gpu, force_reload=force_reload)