
     `i2                        d dl mZ d dlZd dlmZ d dlmZ erddlmZ  G d d          Z	 G d	 d
e	          Z
 G d de
          Z G d de
          ZdS )    )annotationsN)Queue)TYPE_CHECKING   )AutoTokenizerc                      e Zd ZdZd Zd ZdS )BaseStreamerzG
    Base class from which `.generate()` streamers should inherit.
    c                    t                      )z;Function that is called by `.generate()` to push new tokensNotImplementedErrorselfvalues     u/home/jaya/work/projects/VOICE-AGENT/VIET/agent-env/lib/python3.11/site-packages/transformers/generation/streamers.pyputzBaseStreamer.put        !###    c                    t                      )zHFunction that is called by `.generate()` to signal the end of generationr   r   s    r   endzBaseStreamer.end$   r   r   N)__name__
__module____qualname____doc__r   r    r   r   r	   r	      s<         $ $ $$ $ $ $ $r   r	   c                  8    e Zd ZdZdddZd Zd	 ZdddZd ZdS )TextStreamera)  
    Simple text streamer that prints the token(s) to stdout as soon as entire words are formed.

    <Tip warning={true}>

    The API for the streamer classes is still under development and may change in the future.

    </Tip>

    Parameters:
        tokenizer (`AutoTokenizer`):
            The tokenized used to decode the tokens.
        skip_prompt (`bool`, *optional*, defaults to `False`):
            Whether to skip the prompt to `.generate()` or not. Useful e.g. for chatbots.
        decode_kwargs (`dict`, *optional*):
            Additional keyword arguments to pass to the tokenizer's `decode` method.

    Examples:

        ```python
        >>> from transformers import AutoModelForCausalLM, AutoTokenizer, TextStreamer

        >>> tok = AutoTokenizer.from_pretrained("openai-community/gpt2")
        >>> model = AutoModelForCausalLM.from_pretrained("openai-community/gpt2")
        >>> inputs = tok(["An increasing sequence: one,"], return_tensors="pt")
        >>> streamer = TextStreamer(tok)

        >>> # Despite returning the usual output, the streamer will also print the generated text to stdout.
        >>> _ = model.generate(**inputs, streamer=streamer, max_new_tokens=20)
        An increasing sequence: one, two, three, four, five, six, seven, eight, nine, ten, eleven,
        ```
    F	tokenizerr   skip_promptboolc                Z    || _         || _        || _        g | _        d| _        d| _        d S )Nr   T)r   r   decode_kwargstoken_cache	print_lennext_tokens_are_prompt)r   r   r   r"   s       r   __init__zTextStreamer.__init__K   s8    "&* &*###r   c                Z   t          |j                  dk    r |j        d         dk    rt          d          t          |j                  dk    r|d         }| j        r| j        r	d| _        dS | j                            |                                            | j        j	        | j        fi | j
        }|                    d          r|| j        d         }g | _        d| _        nt          |          dk    rU|                     t          |d                             r-|| j        d         }| xj        t          |          z  c_        nB|| j        |                    d          dz            }| xj        t          |          z  c_        |                     |           dS )	zm
        Receives tokens, decodes them, and prints them to stdout as soon as they form entire words.
           r   z'TextStreamer only supports batch size 1FN
 )lenshape
ValueErrorr   r%   r#   extendtolistr   decoder"   endswithr$   _is_chinese_charordrfindon_finalized_text)r   r   textprintable_texts       r   r   zTextStreamer.putU   s    u{aEKNQ$6$6FGGG!!!HE 	 ; 	*/D'F 	///$t~$T%5LL9KLL == 	2!$."2"23N!DDNNYY]]t44Sb]]CC]!$."2"23NNNc.111NNN "$.4::c??Q3F"FGNNNc.111NN~.....r   c                    t          | j                  dk    r; | j        j        | j        fi | j        }|| j        d         }g | _        d| _        nd}d| _        |                     |d           dS )z;Flushes any remaining cache and prints a newline to stdout.r   N T)
stream_end)r,   r#   r   r1   r"   r$   r%   r6   )r   r7   r8   s      r   r   zTextStreamer.endw   s     t  1$$(4>()9PPT=OPPD!$."2"23N!DDNNN&*#~$?????r   r7   strr;   c                2    t          |d|sdnd           dS )zNPrints the new text to stdout. If the stream is ending, also prints a newline.Tr:   N)flushr   )printr   r7   r;   s      r   r6   zTextStreamer.on_finalized_text   s&    d$j$BBBdCCCCCCr   c                    |dk    r|dk    sT|dk    r|dk    sH|dk    r|dk    s<|dk    r|dk    s0|d	k    r|d
k    s$|dk    r|dk    s|dk    r|dk    s|dk    r|dk    rdS dS )z6Checks whether CP is the codepoint of a CJK character.i N  i  i 4  iM  i   iߦ i  i? i@ i i  i i   i  i  i TFr   )r   cps     r   r3   zTextStreamer._is_chinese_char   s     6\\bFllfvg"--g"--g"--g"--fvg"--4ur   NF)r   r   r   r    r7   r<   r;   r    )	r   r   r   r   r&   r   r   r6   r3   r   r   r   r   r   )   s         B+ + + + + /  /  /D@ @ @D D D D D    r   r   c                  >     e Zd ZdZ	 dd fd
ZdddZd Zd Z xZS )TextIteratorStreamera  
    Streamer that stores print-ready text in a queue, to be used by a downstream application as an iterator. This is
    useful for applications that benefit from accessing the generated text in a non-blocking way (e.g. in an interactive
    Gradio demo).

    <Tip warning={true}>

    The API for the streamer classes is still under development and may change in the future.

    </Tip>

    Parameters:
        tokenizer (`AutoTokenizer`):
            The tokenized used to decode the tokens.
        skip_prompt (`bool`, *optional*, defaults to `False`):
            Whether to skip the prompt to `.generate()` or not. Useful e.g. for chatbots.
        timeout (`float`, *optional*):
            The timeout for the text queue. If `None`, the queue will block indefinitely. Useful to handle exceptions
            in `.generate()`, when it is called in a separate thread.
        decode_kwargs (`dict`, *optional*):
            Additional keyword arguments to pass to the tokenizer's `decode` method.

    Examples:

        ```python
        >>> from transformers import AutoModelForCausalLM, AutoTokenizer, TextIteratorStreamer
        >>> from threading import Thread

        >>> tok = AutoTokenizer.from_pretrained("openai-community/gpt2")
        >>> model = AutoModelForCausalLM.from_pretrained("openai-community/gpt2")
        >>> inputs = tok(["An increasing sequence: one,"], return_tensors="pt")
        >>> streamer = TextIteratorStreamer(tok)

        >>> # Run the generation in a separate thread, so that we can fetch the generated text in a non-blocking way.
        >>> generation_kwargs = dict(inputs, streamer=streamer, max_new_tokens=20)
        >>> thread = Thread(target=model.generate, kwargs=generation_kwargs)
        >>> thread.start()
        >>> generated_text = ""
        >>> for new_text in streamer:
        ...     generated_text += new_text
        >>> generated_text
        'An increasing sequence: one, two, three, four, five, six, seven, eight, nine, ten, eleven,'
        ```
    FNr   r   r   r    timeoutfloat | Nonec                     t                      j        ||fi | t                      | _        d | _        || _        d S N)superr&   r   
text_queuestop_signalrG   r   r   r   rG   r"   	__class__s        r   r&   zTextIteratorStreamer.__init__   sD     	KAA=AAA''r   r7   r<   r;   c                    | j                             || j                   |r(| j                             | j        | j                   dS dS )\Put the new text in the queue. If the stream is ending, also put a stop signal in the queue.rG   N)rL   r   rG   rM   r@   s      r   r6   z&TextIteratorStreamer.on_finalized_text   sZ    D$,777 	HO 0$,GGGGG	H 	Hr   c                    | S rJ   r   r   s    r   __iter__zTextIteratorStreamer.__iter__       r   c                x    | j                             | j                  }|| j        k    rt	                      |S NrR   )rL   getrG   rM   StopIterationr   s     r   __next__zTextIteratorStreamer.__next__   s9    ##DL#99D$$$//!Lr   FNr   r   r   r    rG   rH   rC   rD   )	r   r   r   r   r&   r6   rT   rZ   __classcell__rO   s   @r   rF   rF      s        + +\ \`      H H H H H        r   rF   c                  >     e Zd ZdZ	 dd fd
ZdddZd Zd Z xZS )AsyncTextIteratorStreamera'	  
    Streamer that stores print-ready text in a queue, to be used by a downstream application as an async iterator.
    This is useful for applications that benefit from accessing the generated text asynchronously (e.g. in an
    interactive Gradio demo).

    <Tip warning={true}>

    The API for the streamer classes is still under development and may change in the future.

    </Tip>

    Parameters:
        tokenizer (`AutoTokenizer`):
            The tokenized used to decode the tokens.
        skip_prompt (`bool`, *optional*, defaults to `False`):
            Whether to skip the prompt to `.generate()` or not. Useful e.g. for chatbots.
        timeout (`float`, *optional*):
            The timeout for the text queue. If `None`, the queue will block indefinitely. Useful to handle exceptions
            in `.generate()`, when it is called in a separate thread.
        decode_kwargs (`dict`, *optional*):
            Additional keyword arguments to pass to the tokenizer's `decode` method.

    Raises:
        TimeoutError: If token generation time exceeds timeout value.

    Examples:

        ```python
        >>> from transformers import AutoModelForCausalLM, AutoTokenizer, AsyncTextIteratorStreamer
        >>> from threading import Thread
        >>> import asyncio

        >>> tok = AutoTokenizer.from_pretrained("openai-community/gpt2")
        >>> model = AutoModelForCausalLM.from_pretrained("openai-community/gpt2")
        >>> inputs = tok(["An increasing sequence: one,"], return_tensors="pt")

        >>> # Run the generation in a separate thread, so that we can fetch the generated text in a non-blocking way.
        >>> async def main():
        ...     # Important: AsyncTextIteratorStreamer must be initialized inside a coroutine!
        ...     streamer = AsyncTextIteratorStreamer(tok)
        ...     generation_kwargs = dict(inputs, streamer=streamer, max_new_tokens=20)
        ...     thread = Thread(target=model.generate, kwargs=generation_kwargs)
        ...     thread.start()
        ...     generated_text = ""
        ...     async for new_text in streamer:
        ...         generated_text += new_text
        >>>     print(generated_text)
        >>> asyncio.run(main())
        An increasing sequence: one, two, three, four, five, six, seven, eight, nine, ten, eleven,
        ```
    FNr   r   r   r    rG   rH   c                     t                      j        ||fi | t          j                    | _        d | _        || _        t          j                    | _        t          t          d          | _
        d S )NrG   )rK   r&   asyncior   rL   rM   rG   get_running_looploophasattrhas_asyncio_timeoutrN   s        r   r&   z"AsyncTextIteratorStreamer.__init__  sj     	KAA=AAA!-//,..	#*7I#>#>   r   r7   r<   r;   c                    | j                             | j        j        |           |r,| j                             | j        j        | j                   dS dS )rQ   N)rd   call_soon_threadsaferL   
put_nowaitrM   r@   s      r   r6   z+AsyncTextIteratorStreamer.on_finalized_text(  sZ    	&&t'A4HHH 	YI**4?+EtGWXXXXX	Y 	Yr   c                    | S rJ   r   r   s    r   	__aiter__z#AsyncTextIteratorStreamer.__aiter__.  rU   r   c                  K   	 | j         rct          j        | j                  4 d {V  | j                                         d {V }d d d           d {V  n# 1 d {V swxY w Y   n8t          j        | j                                        | j                   d {V }|| j        k    rt                      |S # t          j        $ r t                      w xY wrW   )	rf   rb   rG   rL   rX   wait_forrM   StopAsyncIterationTimeoutErrorr   s     r   	__anext__z#AsyncTextIteratorStreamer.__anext__1  s     	' \"?4<88 8 8 8 8 8 8 8 8"&/"5"5"7"7777777E8 8 8 8 8 8 8 8 8 8 8 8 8 8 8 8 8 8 8 8 8 8 8 8 8 8 8 &.t/B/B/D/Ddl[[[[[[[[[ ((((*** # 	! 	! 	!.. 	!s.   &C  A
C 
A&&C )A&*<C Cr[   r\   rC   rD   )	r   r   r   r   r&   r6   rk   rp   r]   r^   s   @r   r`   r`      s        2 2j \`? ? ? ? ? ? ?Y Y Y Y Y        r   r`   )
__future__r   rb   queuer   typingr   models.autor   r	   r   rF   r`   r   r   r   <module>ru      s.    # " " " " "                     ,++++++$ $ $ $ $ $ $ $v v v v v< v v vrD D D D D< D D DNU U U U U U U U U Ur   