
    9jV                       U d dl mZ d dlZd dlmZ d dlmZmZmZ d dlm	Z	m
Z
mZ d dlZd dlmZ erd dlmZ dd	lmZ g d
Z ed      Z e	d      Z eej,                  d      s] ed      ej,                  j.                  d<    ed      ej,                  j.                  d<    ed      ej,                  j.                  d<   d dlmZmZmZ ddZddZ G d de      Z G d d      Zej@                  jB                  ede"f   z  Z#de$d<   e	 	 	 d 	 	 	 	 	 	 	 	 	 	 	 d!d       Z%e	 	 	 d 	 	 	 	 	 	 	 	 	 	 	 d"d       Z%	 	 	 d 	 	 	 	 	 	 	 	 	 	 	 d#dZ%y)$    )annotationsN)Callable)overloadTYPE_CHECKING	TypeAlias)	ParamSpecSelfTypeVar)Tensor)_POOL_HANDLE   )_dummy_type)is_current_stream_capturinggraph_pool_handleXPUGraphgraphmake_graphed_callables_R_P_XpuStreamBase	_XPUGraph_xpu_graph_pool_handle_xpu_isCurrentStreamCapturing)r   r   r   c                     t               S )zReturn True if XPU graph capture is underway on the current XPU stream, False otherwise.

    If a XPU context does not exist on the current device, returns False without initializing the context.
    )r        P/media/conek/DATA/Code/OCR/venv/lib/python3.12/site-packages/torch/xpu/graphs.pyr   r   (   s    
 )**r   c                 P    t         j                  j                  t                     S )zBReturn an opaque token representing the id of a graph memory pool.)torchxpur   r   r   r   r   r   r   0   s    99!!"8":;;r   c                       e Zd ZdZdd fdZdd fdZd fdZd fdZd fdZd fdZ	d fdZ
d fd	Zd fd
Zd fdZd fdZ xZS )r   a  Wrapper around a XPU graph.

    Arguments:
        keep_graph (bool, optional): If ``keep_graph=False``, the
            executable command graph will be instantiated on GPU at the end of
            ``capture_end`` and the underlying modifiable command graph will be
            destroyed. Note that the executable command graph will not be
            instantiated at the end of ``capture_end`` in this
            case. Instead, it will be instantiated via an explicit called
            to ``instantiate`` or automatically on the first call to
            ``replay`` if ``instantiate`` was not already called. Calling
            ``instantiate`` manually before ``replay`` is recommended to
            prevent increased latency on the first call to ``replay``.

    c                $    t         |   | |      S N)super__new__)cls
keep_graph	__class__s     r   r%   zXPUGraph.__new__F   s    wsJ//r   c                &    t         |   |       y)a  Begin capturing XPU work on the current xpu stream.

        Typically, you shouldn't call ``capture_begin`` yourself.
        Use :class:`~torch.xpu.graph`, which call ``capture_begin`` internally.

        Arguments:
            pool (optional): Token (returned by :func:`~torch.xpu.graph_pool_handle` or
                :meth:`other_Graph_instance.pool()<torch.xpu.XPUGraph.pool>`) that hints this graph may share memory
                with the indicated pool.
        poolN)r$   capture_begin)selfr+   r(   s     r   r,   zXPUGraph.capture_beginI   s     	4(r   c                "    t         |           y)a  End XPU graph capture on the current stream.

        After ``capture_end``, ``replay`` may be called on this instance.

        Typically, you shouldn't call ``capture_end`` yourself.
        Use :class:`~torch.xpu.graph`, which call ``capture_end`` internally.
        N)r$   capture_endr-   r(   s    r   r/   zXPUGraph.capture_endV   s     	r   c                "    t         |           y)a/  Instantiate the XPU graph. Will be called by
        ``capture_end`` if ``keep_graph=False``, or by ``replay`` if
        ``keep_graph=True`` and ``instantiate`` has not already been
        explicitly called. Does not destroy the xpu modify command graph returned
        by ``raw_xpu_graph``.
        N)r$   instantiater0   s    r   r2   zXPUGraph.instantiate`   s     	r   c                "    t         |           y)z+Replay the XPU work captured by this graph.N)r$   replayr0   s    r   r4   zXPUGraph.replayi   s    r   c                "    t         |           y)z1Delete the graph currently held by this instance.N)r$   resetr0   s    r   r6   zXPUGraph.resetm   s    r   c                     t         |          S )zReturn an opaque token representing the id of this graph's memory pool.

        This id can optionally be passed to another graph's ``capture_begin``,
        which hints the other graph may share the same memory pool.
        )r$   r+   r0   s    r   r+   zXPUGraph.poolq   s     w|~r   c                     t         |          S )z.Enable debugging mode for XPUGraph.debug_dump.)r$   enable_debug_moder0   s    r   r9   zXPUGraph.enable_debug_modey   s    w(**r   c                "    t         |   |      S )z
        Arguments:
            debug_path (required): Path to dump the graph to.

        Calls a debugging function to dump the graph if the debugging is
        enabled via XPUGraph.enable_debug_mode()
        )r$   
debug_dump)r-   
debug_pathr(   s     r   r;   zXPUGraph.debug_dump}   s     w!*--r   c                     t         |          S )zReturns the underlying xpuGraph_t. ``keep_graph`` must be True.

        XPU doesn't provide APIs to manipulate this object.
        )r$   raw_xpu_graphr0   s    r   r>   zXPUGraph.raw_xpu_graph   s    
 w$&&r   c                     t         |          S )a  Returns the underlying xpuGraphExec_t. ``instantiate`` must have been called if ``keep_graph`` is True, or ``capture_end`` must have been called if ``keep_graph`` is False. If you call ``instantiate()`` after ``raw_xpu_graph_exec()``, the previously returned xpuGraphExec_t will be destroyed. It is your responsibility not to use this object after destruction.

        XPU doesn't provide APIs to manipulate this object.
        )r$   raw_xpu_graph_execr0   s    r   r@   zXPUGraph.raw_xpu_graph_exec   s    
 w)++r   )F)r'   boolreturnr	   r#   )r+   _POOL_HANDLE | NonerB   NonerB   rD   rB   r   )r<   strrB   rD   )rB   int)__name__
__module____qualname____doc__r%   r,   r/   r2   r4   r6   r+   r9   r;   r>   r@   __classcell__)r(   s   @r   r   r   5   sD     0)+.', ,r   r   c                  H    e Zd ZU dZdZded<   	 	 d	 	 	 	 	 d	dZd
dZddZy)r   a  Context-manager that captures XPU work into a :class:`torch.xpu.XPUGraph` object for later replay.

    Arguments:
        xpu_graph (torch.xpu.XPUGraph): Graph object used for capture.
        pool (optional): Opaque token (returned by a call to :func:`~torch.xpu.graph_pool_handle()` or
            :meth:`other_Graph_instance.pool()<torch.xpu.XPUGraph.pool>`) hinting this graph's capture
            may share memory from the specified pool.
        stream (torch.xpu.Stream, optional): If supplied, will be set as the current stream in the context.
            If not supplied, ``graph`` sets its own internal side stream as the current stream in the context.

    .. note::
        For effective memory sharing, if you pass a ``pool`` used by a previous capture and the previous capture
        used an explicit ``stream`` argument, you should pass the same ``stream`` argument to this capture.

    Ntorch.xpu.Stream | Nonedefault_capture_streamc                >   | j                   j                  -t        j                  j	                         | j                   _        |dn|f| _        ||n| j                   j                  | _        | j                  t        d      | j                  | _        || _	        y )Nr   zcapture_stream must not be None)
r(   rP   r   r    Streamr+   capture_streamAssertionError
stream_ctx	xpu_graph)r-   rV   r+   streams       r   __init__zgraph.__init__   s     >>00849II4D4D4FDNN1;?<RdW	(Fdnn.S.S 	 & !BCC--"r   c                    t         j                  j                          t         j                  j                          | j                  j                           | j                  j                  | j                    y r#   )	r   r    synchronizeempty_cacherU   	__enter__rV   r,   r+   )r-   s    r   r\   zgraph.__enter__   sJ    				!!#$$$dii0r   c                j    | j                   j                           | j                  j                  |  y r#   )rV   r/   rU   __exit__)r-   argss     r   r^   zgraph.__exit__   s&    ""$   $'r   )NN)rV   r   r+   rC   rW   rO   rE   )r_   objectrB   rD   )	rI   rJ   rK   rL   rP   __annotations__rX   r\   r^   r   r   r   r   r      sH      7;3:
 %)*.	## "# (	#*1(r   r   .r   _ModuleOrCallablec                     y r#   r   	callablessample_argsnum_warmup_itersallow_unused_inputr+   s        r   r   r      s     r   c                     y r#   r   rd   s        r   r   r      s     %(r   c                |   t        j                         rt        j                         rt        d      d}t	        | t
              s*d}| f} t        j                  t
        t        df   |      f}n,t        j                  t
        t
        t        df   df   |      }g }t        | |      D ]  \  }}	t	        |t         j                  j                        r~t        |j                        dk(  r0t        |j                        dk(  rt        |j                        dk(  st        d      t!        d |j#                         D              st        d      t        j$                  j&                  j(                  |	 }
|j+                  t        |
             t!        d	 |
D              rt-        d
       |D 	cg c]  }	t        |	       }}	| D cg c]A  }t	        |t         j                  j                        rt        |j/                               ndC }}t1        t        |             D cg c]  }||   ||   z    }}t1        t        |             D cg c]   }t         j2                  j5                         " }}t1        t        |             D cg c]   }t         j2                  j5                         " }}|
t7               n|}t         j2                  j9                          t         j2                  j;                  t         j2                  j=                               5  t        | ||      D ]  \  }}	}d\  }}}t1        |      D ]  }t         j$                  j&                  j?                   ||	       }t        d |D              }t        |      dkD  sPt         j@                  jC                  |t        d |D              t        d |D              d|      } |||fD ]  }~  	 ddd       t         j2                  j9                          g }g }t        | ||      D ]  \  }}	}t         j2                  jE                  ||      5   ||	 }ddd       t         j$                  j&                  jG                        \  }}|j+                  t        |             |j+                  |        g }g } t        tI        |      tI        |      tI        |            D ]  \  }}!}"t        d |!D              }#t        d |!D              }d}t        |      dkD  rnt         j2                  jE                  |"|      5  t         j@                  jC                  |t        d |D              t        d |#D              d|      }ddd       g }$d}%|D ];  }&|&jJ                  r||$j+                  ||%          |%dz  }%+|$j+                  d       = t        |$      }$|j+                  |#       | j+                  |$        |jM                          | jM                          	 	 	 	 	 	 	 	 	 	 	 	 	 	 	 	 	 	 	 	 dd}'g }(tO        |       D ]  \  }} |'||   ||   ||   ||   ||   ||   ||   ||   | |   	      })t	        |t         j                  j                        rD	 	 	 	 	 	 	 	 	 	 dd}* |*||jP                  |)|jR                        |_)        |(j+                  |       |(j+                  |)        |r|(d   S t        |(      S c c}	w c c}w c c}w c c}w c c}w # 1 sw Y   .xY w# 1 sw Y   xY w# 1 sw Y   xY w)a  Accept callables (functions or :class:`nn.Module<torch.nn.Module>`\ s) and returns graphed versions.

    Each graphed callable's forward pass runs its source callable's
    forward XPU work as a XPU graph inside a single autograd node.

    The graphed callable's forward pass also appends
    a backward node to the autograd graph. During backward, this node runs the
    callable's backward work as a XPU graph.

    Therefore, each graphed callable should be a drop-in replacement for its source callable
    in an autograd-enabled training loop.

    See :ref:`Partial-network capture<partial-network-capture>` for detailed use and constraints.

    If you pass a tuple of several callables, their captures will use the same memory pool.

    Arguments:
        callables (torch.nn.Module or Python function, or tuple of these): Callable or callables to graph.
            If you pass a tuple of callables, their order in the tuple must be the same order they'll run
            in the live workload.
        sample_args (tuple of Tensors, or tuple of tuples of Tensors): Samples args for each callable.
            If a single callable was passed, ``sample_args`` must be a single tuple of argument Tensors.
            If a tuple of callables was passed, ``sample_args`` must be tuple of tuples of argument Tensors.
        num_warmup_iters (int): The number of warmup iterations. Currently, ``DataDistributedParallel`` needs
            11 iterations for warm up. Default: ``3``.
        allow_unused_input (bool): If False, specifying inputs that were not used when computing outputs
            (and therefore their grad is always zero) is an error. Defaults to False.
        pool (optional): Token (returned by :func:`~torch.xpu.graph_pool_handle` or
            :meth:`other_Graph_instance.pool()<torch.xpu.XPUGraph.pool>`) that hints this graph may share memory
            with the indicated pool.
    .. note::
        The ``requires_grad`` state of each Tensor in ``sample_args`` must match the state
        that's expected for the corresponding real input in the training loop.

    .. warning::
        This API is in beta and may change in future releases.

    .. warning::
        ``sample_args`` for each callable must contain only Tensors. Other types are not allowed.

    .. warning::
        Returned callables do not support higher order differentiation (e.g., double backward).

    .. warning::
        In any :class:`~torch.nn.Module` passed to :func:`~make_graphed_callables`, only parameters
        may be trainable. Buffers must have ``requires_grad=False``.

    .. warning::
        After you pass a :class:`torch.nn.Module` through :func:`~make_graphed_callables`,
        you may not add or remove any of that Module's parameters or buffers.

    .. warning::
        :class:`torch.nn.Module`\s passed to :func:`~torch.xpu.make_graphed_callables` must not have module hooks
        registered on them at the time they are passed. However, registering hooks on modules *after* passing them
        through :func:`~torch.xpu.make_graphed_callables` is allowed.

    .. warning::
        When running a graphed callable, you must pass its arguments in the same order and format
        they appeared in that callable's ``sample_args``.

    .. warning::
        The automatic mixed precision is supported in :func:`~torch.xpu.make_graphed_callables` only with disabled
        caching. The context manager `torch.amp.autocast()` must have `cache_enabled=False`.
    z_make_graphed_callables does not support the autocast caching. Please set `cache_enabled=False`.FT.r   zModules must not have hooks registered at the time they are passed. However, registering hooks on modules after passing them through make_graphed_callables is allowed.c              3  8   K   | ]  }|j                   d u   yw)FNrequires_grad.0bs     r   	<genexpr>z)make_graphed_callables.<locals>.<genexpr>F  s     EAq%/Es   zIn any :class:`~torch.nn.Module` passed to :func:`~make_graphed_callables`, only parameters may be trainable. All buffers must have ``requires_grad=False``.c              3  P   K   | ]  }t        |t        j                           y wr#   )
isinstancer   r   )ro   args     r   rq   z)make_graphed_callables.<locals>.<genexpr>N  s     HS:c5<<0Hs   $&zfIn the beta API, sample_args for each callable must contain only Tensors. Other types are not allowed.r   N)NNNc              3  :   K   | ]  }|j                   s|  y wr#   rl   ro   os     r   rq   z)make_graphed_callables.<locals>.<genexpr>n  s     $K11??Q$K   c              3  :   K   | ]  }|j                   s|  y wr#   rl   ro   is     r   rq   z)make_graphed_callables.<locals>.<genexpr>r  s      %"#qA%rx   c              3  `   K   | ]&  }|j                   st        j                  |       ( y wr#   rm   r   
empty_likerv   s     r   rq   z)make_graphed_callables.<locals>.<genexpr>u  s&      +45AOOE,,Q/+s   ..)outputsinputsgrad_outputsonly_inputsallow_unusedr*   c              3  b   K   | ]'  }|j                   rt        j                  |      nd  ) y wr#   r}   rv   s     r   rq   z)make_graphed_callables.<locals>.<genexpr>  s+      $
AB1??EQ<$
s   -/c              3  :   K   | ]  }|j                   s|  y wr#   rl   rv   s     r   rq   z)make_graphed_callables.<locals>.<genexpr>  s     J1!//QJrx   c              3  :   K   | ]  }|j                   s|  y wr#   rl   rz   s     r   rq   z)make_graphed_callables.<locals>.<genexpr>  s      TqAOO Trx   c              3  &   K   | ]	  }||  y wr#   r   rv   s     r   rq   z)make_graphed_callables.<locals>.<genexpr>  s     &WQq&Ws      c	           	         
  G  fddt         j                  j                        
d
fd}	|	S )Nc                      e Zd Zedfd       Zeej                  j                  j                  d fd              Z	y)Omake_graphed_callables.<locals>.make_graphed_autograd_function.<locals>.Graphedc                   t              D ]A  }|   j                         ||   j                         k7  s+|   j                  ||          C j                          t	        t
              st        d      t        d D              S )Nzstatic_outputs must be a tuplec              3  <   K   | ]  }|j                           y wr#   detachrv   s     r   rq   zjmake_graphed_callables.<locals>.make_graphed_autograd_function.<locals>.Graphed.forward.<locals>.<genexpr>  s     @AQXXZ@s   )rangedata_ptrcopy_r4   rs   tupleRuntimeError)ctxr   r{   	fwd_graphlen_user_argsstatic_input_surfacestatic_outputss      r   forwardzWmake_graphed_callables.<locals>.make_graphed_autograd_function.<locals>.Graphed.forward  s     }- AA+A.779VAY=O=O=QQ,Q/55fQi@A   "!.%8&'GHH@@@@r   c                   t        |      t              k7  r#t        dt               dt        |             t        |      D ];  \  }}|	|j                         |j                         k7  s+|j	                  |       = j                          t        t              st        d      t        d D              S )Nz	Expected z gradients but got z"static_grad_inputs must be a tuplec              3  D   K   | ]  }||j                         n|  y wr#   r   rn   s     r   rq   zkmake_graphed_callables.<locals>.make_graphed_autograd_function.<locals>.Graphed.backward.<locals>.<genexpr>  s$      ;<!-AHHJQ6s    )lenr   zipr   r   r4   rs   r   )r   gradsggrad	bwd_graphstatic_grad_inputsstatic_grad_outputss       r   backwardzXmake_graphed_callables.<locals>.make_graphed_autograd_function.<locals>.Graphed.backward  s     u:%8!99&#C(;$<#==PQTUZQ[P\]   ##6> *GAt}::<4==?:GGDM*   "!"4e<&'KLL @R  r   N)r   r`   r   r   rB   tuple[Tensor, ...])r   r`   r   r   rB   r   )
rI   rJ   rK   staticmethodr   r   autogradfunctiononce_differentiabler   )r   r   r   r   r   r   r   s   r   Graphedr     sC    A A ^^$$88 9 r   r   c                     t        j                  j                  j                  |  } j                  t        |      z    }t         j                  j                  j                  |      S r#   )r   utils_pytreearg_tree_leavesapplyr   tree_unflatten)	user_argsflatten_user_argsoutr   module_paramsoutput_unflatten_specs      r   functionalizedzVmake_graphed_callables.<locals>.make_graphed_autograd_function.<locals>.functionalized  sW     % 3 3 C CY O'--%(9":]"JLC;;&&55c;PQQr   )r   r`   rB   r`   )r   r   Function)r   r   r   r   r   r   r   r   r   r   r   s   ````````` @r   make_graphed_autograd_functionz>make_graphed_callables.<locals>.make_graphed_autograd_function  s.    	 	enn-- 	B	R r   c                      d fd}|S )Nc                 B    j                   k(  r | i |S  | i |S r#   )training)r   user_kwargsfuncgraph_training_stategraphedorig_fwds     r   new_fwdzEmake_graphed_callables.<locals>.make_graphed_forward.<locals>.new_fwd  s0    }}(<<&	A[AA'BkBBr   )r   z_P.argsr   z	_P.kwargsrB   r   r   )r   r   r   r   r   s   ```` r   make_graphed_forwardz4make_graphed_callables.<locals>.make_graphed_forward  s    C C r   )r   r   r   r   r   ztuple[torch.nn.Parameter, ...]r   rH   r   ztorch.utils._pytree.TreeSpecr   r   r   r   r   ztuple[Tensor | None, ...]r   r   rB   zCallable[..., object])
r   ztorch.nn.Moduler   rA   r   Callable[_P, _R]r   r   rB   r   )*r   is_autocast_enabledis_autocast_cache_enabledr   rs   r   typingcastr   r   nnModuler   _backward_hooks_forward_hooks_forward_pre_hooksallbuffersr   r   r   append	TypeError
parametersr   r    r   r   rZ   rW   rR   tree_leavesr   r   r   tree_flattenreversedrm   reverse	enumerater   r   )+re   rf   rg   rh   r+   just_one_callable_sample_argsflatten_sample_argscr_   flatten_argper_callable_len_user_argsper_callable_module_paramsr{   "per_callable_static_input_surfaces_
fwd_graphs
bwd_graphsmempoolr   r   grad_inputsr   outputs_gradvper_callable_static_outputs"per_callable_output_unflatten_specr   func_outputsflatten_outputsspec per_callable_static_grad_outputsper_callable_static_grad_inputsr   r   r   r   grad_idxrt   r   retr   r   s+                                              r   r   r      ss   N   "u'F'F'Hm
 	
  i' L	E&#+$6DF{{5vs{);S)@#A;Oy,/ 4a)A%%&!+(()Q.,,-2"a  EEE"1 
 kk))994@""5#56HKHH^ )6 9L!L#d)!L!L " ",Auxx!?allnRG" " s9~&* 	A!;A!>>*& *
 16c)n0EF1%))$$&FJF05c)n0EF1%))$$&FJF%)\!tG 
II			%))**,	- 03|%G1
 	,D$, 2B.K,+, ++--99$+F$$K$KK|$q("'.."5"5 ,$ %';%   &+ +9@+ & %)%7 #6 
#K	 |[9 '	. 
II #%)+&!$Yj!I 8dIYY__YW_5 	';L	' !& 3 3 @ @ N#**5+AB*11$78 (*$&(#;>34,-<  C7ni
 $ $
FT$
 
 JJJ|q 9 #nn11(  T,@ TT!&&W2E&W!W $!3 2   ' 	0C  [%<"))+h*?@A"))$/	0 ##56(//0CD'../ABA CF %,,.#++-222 62 	2
  <2 12 +2 72 /2 
2h $&CY' " 40qMqM&q)&q).q1.q1'*,Q/+A.

 dEHHOO,%&* * +	
 " 0dmmWdllDL JJtJJwE" H 1v:w "M"*
 GF <	' 	', sL   6[>A\,\%\%\!A5\A\
\$:A\1\!$\.	1\;	)rB   rA   rF   )   FN)re   rb   rf   r   rg   rH   rh   rA   r+   rC   rB   rb   )re   tuple[_ModuleOrCallable, ...]rf   ztuple[tuple[Tensor, ...], ...]rg   rH   rh   rA   r+   rC   rB   r   )re   1_ModuleOrCallable | tuple[_ModuleOrCallable, ...]rf   z3tuple[Tensor, ...] | tuple[tuple[Tensor, ...], ...]rg   rH   rh   rA   r+   rC   rB   r   )&
__future__r   r   collections.abcr   r   r   r   typing_extensionsr   r	   r
   r   r   	torch.xpur   _utilsr   __all__r   r   hasattr_C__dict__torch._Cr   r   r   r   r   r   r   r   r   r`   rb   ra   r   r   r   r   <module>r      s   "  $ 5 5 6 6   &   T]t_uxx)*%0%=EHHk"2=>V2WEHH./9D':EHH56 V U+<
^,y ^,B3( 3(l  %xx#v+1FF 9 F 
 $ $ #  	
   
 
 $ $(,(/( ( 	(
 ( #( 
( $ $n@nDn n 	n
 n 7nr   