tracing.py 41.2 KB
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# -*- coding: utf-8 -*-
# MegEngine is Licensed under the Apache License, Version 2.0 (the "License")
#
# Copyright (c) 2014-2020 Megvii Inc. All rights reserved.
#
# Unless required by applicable law or agreed to in writing,
# software distributed under the License is distributed on an
# "AS IS" BASIS, WITHOUT ARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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import collections
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import contextlib
import functools
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import itertools
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import json
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import os
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import typing
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import warnings
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import weakref

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import numpy as np

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from ..core._imperative_rt import GraphProfiler
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from ..core._imperative_rt.ops import (
    CollectiveComm,
    OprAttr,
    RemoteRecv,
    RemoteSend,
    VirtualDep,
)
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from ..core._trace_option import set_symbolic_shape
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from ..core._wrap import device as as_device
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from ..core.ops.special import Const
from ..core.tensor import megbrain_graph as G
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from ..core.tensor.core import OpBase, TensorBase, TensorWrapperBase, apply
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from ..core.tensor.raw_tensor import OpDef, RawTensor, as_raw_tensor
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from ..core.tensor.tensor import Tensor
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from .sublinear_memory_config import SublinearMemoryConfig
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def _input_node_use_static_shape():
    return os.environ.get("MEGENGINE_INPUT_NODE_USE_STATIC_SHAPE") is not None


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class TraceMismatchError(RuntimeError):
    pass


active_trace = None
skip_tracing = False


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def is_tracing():
    if active_trace is None:
        return False
    else:
        return not skip_tracing


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@contextlib.contextmanager
def exclude_from_trace():
    global skip_tracing
    if skip_tracing:
        yield
        return
    try:
        skip_tracing = True
        if active_trace is not None:
            active_trace._begin_excluded_region()
        yield
    finally:
        skip_tracing = False


class TensorInfo:
    __slots__ = (
        # collected attributes
        "external",
        "exported",
        "data_read",
        "shape_read",
        "value_read",
        "device",
        "dtype",
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        "shape",
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        "is_const",
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        "bound_data",
        # resources for execution
        "varnode",
        "data_setter",
        "shape_reader",
        "value_reader",
        "data_reader",
    )

    def __init__(self):
        self.exported = None
        self.data_read = None
        self.shape_read = None
        self.value_read = None
        self.bound_data = None

        self.data_setter = None
        self.shape_reader = None
        self.value_reader = None
        self.data_reader = None


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_io_op_types = {CollectiveComm, RemoteSend, RemoteRecv}


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class trace:
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    """
    Wraps a callable and provide:

    * tracing via :meth:`.trace` and :meth:`.dump`
    * accelerated evalutaion via :meth:`.__call__`

    :param function: the function will be traced.
    :param symbolic: whether to apply symbolic execution for tracing. Default: False
    :param capture_as_const: capture global vars or closures as const value. Default: False
    :param sublinear_memory_config: configuration for sublinear memory optimization.
        If not None, it enables sublinear memory optimization with given setting.
    :param profiling: whether to profile compiled trace. Default: False
    :param opt_level: optimization level for compiling trace.
    :param symbolic_shape: whether to use symbolic shape for tracing. Default: True
    """

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    def __new__(cls, *args, **kwargs):
        if not args:
            return functools.partial(cls, **kwargs)
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        return super().__new__(cls)
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    def __init__(
        self,
        function,
        symbolic=False,
        capture_as_const=False,
        sublinear_memory_config: SublinearMemoryConfig = None,
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        profiling: bool = False,
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        opt_level: int = None,
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        symbolic_shape: bool = True,
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    ):
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        self.__wrapped__ = function
        self._symbolic = symbolic
        self._capture_as_const = capture_as_const
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        self._sublinear_memory_config = sublinear_memory_config
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        self._profiling = profiling
        self._profiler = None
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        self._graph_opt_level = opt_level
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        self._symbolic_shape = symbolic_shape
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        self._reset()

    def _reset(self):
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        self._untraced = True
        self._tinfo = []  # handle -> TensorInfo
        self._seq = []
        self._pc = 0
        self._graph = None
        self._need_reset_nodes = None
        self._lazy_eval_graph = None
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        self._lazy_eval_tensors = weakref.WeakSet()
        self._lazy_eval_links = None
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        self._active_tensors = weakref.WeakSet()
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        self._tensor_remaps = None
        self._inputs_to_restore = None
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        self._arg_bindings = None
        self._kwarg_bindings = None
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        self._output_bindings = None
        self._output_names = None
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    def _new_handle(self):
        handle = len(self._tinfo)
        info = TensorInfo()
        self._tinfo.append(info)
        return handle, info

    def _apply_op(self, op, args):
        assert not self._untraced
        # check against trace
        if self._pc >= len(self._seq):
            raise TraceMismatchError("trace should end here, but more op observed")
        record = self._seq[self._pc]
        op_, ihandles, ohandles = record
        if op != op_:
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            # FIXME: will be removed once better rng implementation is done
            if isinstance(op, OprAttr) and (
                op.type in ("UniformRNG", "GaussianRNG") and op.type == op_.type
            ):
                if op.param[8:] != op_.param[8:]:
                    raise TraceMismatchError("op different from last time")
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            else:
                raise TraceMismatchError("op different from last time")
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        if len(ihandles) != len(args):
            raise TraceMismatchError("op input size different from last time")

        for h, x in zip(ihandles, args):
            info = self._tinfo[h]
            if info.external:
                if (
                    x.__class__ is CompiledTensorProxy
                    and not self._tinfo[x._CompiledTensorProxy__handle].exported
                ):
                    raise TraceMismatchError(
                        "failed to capture: input was an external tensor "
                        "last time, got an internal tensor this time"
                    )
                if info.bound_data:
                    if x.__class__ is CompiledTensorProxy:
                        raise TraceMismatchError(
                            "const capture violated: was an external tensor "
                            "last time, got an internal tensor this time"
                        )
                    if x._handle != info.bound_data._handle:
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                        if not np.array_equal(x.numpy(), info.bound_data.numpy()):
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                            raise TraceMismatchError(
                                "const capture violated: got "
                                "a different tensor this time"
                            )
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                else:
                    if info.dtype != x.dtype:
                        raise TraceMismatchError(
                            "failed to capture: different dtype from last time"
                        )
                    if info.device != x.device:
                        raise TraceMismatchError(
                            "failed to capture: different device from last time"
                        )
                    info.data_setter.set_value(x._dev_tensor())
            else:
                if x.__class__ is not CompiledTensorProxy:
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                    if x not in self._tensor_remaps:
                        raise TraceMismatchError(
                            "unexpected capture: trying to use an external tensor as "
                            "input, but that input was an internal tensor last time"
                        )
                    else:
                        x = self._tensor_remaps[x]
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                if x._CompiledTensorProxy__handle != h:
                    raise TraceMismatchError(
                        "mis-wiring: input edge to an data flow "
                        "graph node is different from last time"
                    )

        self._pc += 1
        outputs = tuple([CompiledTensorProxy(h) for h in ohandles])
        self._active_tensors.update(outputs)
        return outputs

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    def _apply_const(self, op, args):
        assert not self._untraced
        # check against trace
        if self._pc >= len(self._seq):
            raise TraceMismatchError("trace should end here, but more op observed")
        record = self._seq[self._pc]
        op_, ihandles, ohandles = record
        assert isinstance(op_, Const)

        eq = op_.value == op.value
        if not isinstance(eq, bool):
            eq = all(eq)
        if not eq:
            raise TraceMismatchError(
                "const tensor violated: got a different tensor this time"
            )

        self._pc += 1
        (h,) = ohandles
        outputs = tuple([self._tinfo[h].bound_data])
        return outputs

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    def _record_op(self, op, inputs, outputs):
        if skip_tracing:
            for x in inputs:
                h = getattr(x, "_TraceMixin__handle", None)
                if h is not None:
                    self._tinfo[h].data_read = True
            return

        ihandles = []
        for x in inputs:
            h = getattr(x, "_TraceMixin__handle", None)
            if h is None or (not self._capture_as_const and self._tinfo[h].exported):
                h, info = self._new_handle()
                info.external = True
                info.device = x.device
                info.dtype = x.dtype
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                info.shape = x.shape
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                if self._capture_as_const:
                    info.bound_data = x

            ihandles.append(h)

        ohandles = []
        for x in outputs:
            h, info = self._new_handle()
            ohandles.append(h)
            info.external = False
            TraceMixin._TraceMixin__inject(x, h)

        self._seq.append((op, tuple(ihandles), tuple(ohandles)))
        self._active_tensors.update(outputs)

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    def _record_const(self, op, outputs):
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        if skip_tracing:
            (x,) = outputs
            h = getattr(x, "_TraceMixin__handle", None)
            if h is not None:
                self._tinfo[h].data_read = True
            return

        (x,) = outputs
        h, info = self._new_handle()
        ohandles = [h]
        info.external = True
        info.device = x.device
        info.dtype = x.dtype
        info.shape = x.shape
        info.bound_data = x
        info.is_const = True
        TraceMixin._TraceMixin__inject(x, h)
        self._seq.append((op, tuple(), tuple(ohandles)))
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    def _set_active(self, active: bool):
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        global active_trace
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        if active:
            if active_trace:
                raise NotImplementedError("sorry, not implemented: nested trace")
            active_trace = self
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        else:
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            assert active_trace is self
            active_trace = None

    def _init_trace(self, symbolic: bool):
        apply.enable(apply_with_tracing)
        apply.enable(apply_const_with_tracing)
        if symbolic:
            apply.enable(apply_symbolic_mode)
            apply.enable(apply_const_symbolic_mode)
            self._lazy_eval_graph = G.Graph()
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            self._apply_graph_options(self._lazy_eval_graph)
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            self._lazy_eval_links = ()
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    def _take_escaped_tensors(self):
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        escaped_tensors = tuple(self._active_tensors)
        self._active_tensors.clear()
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        return escaped_tensors

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    def _lazy_eval(self, lazy_eval_graph, lazy_eval_tensors, lazy_eval_links):
        readers = [
            G.OutputNode(x._LazyEvalTensor__varnode).outputs[0]
            for x in lazy_eval_tensors
        ]
        self._apply_graph_options(lazy_eval_graph)
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        # FIXME
        if self._graph_opt_level is not None:
            lazy_eval_graph.options.graph_opt_level = self._graph_opt_level
        else:
            lazy_eval_graph.options.graph_opt_level = 2
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        lazy_eval_graph.compile(*lazy_eval_links, *readers)
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        lazy_eval_graph()
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        for r, x in zip(readers, lazy_eval_tensors):
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            assign_raw_tensor(x, as_raw_tensor(r.op.get_value()))

    @contextlib.contextmanager
    def _setup(self):
        interrupted = False
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        def do_enter():
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            self._save_symbolic_shape = set_symbolic_shape(self._symbolic_shape)
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            self._set_active(True)
            if self._untraced:
                self._init_trace(self._symbolic)
            else:
                apply.enable(apply_compiled_mode)
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                apply.enable(apply_const_compiled_mode)
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                if self._graph is None:
                    self._compile()
                self._graph.execute()

        def do_finalize():
            escaped_tensors = self._take_escaped_tensors()
            if self._untraced:
                for x in escaped_tensors:
                    info = self._tinfo[x._TraceMixin__handle]
                    info.data_read = True
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                    x._TraceMixin__restore()
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                if self._inputs_to_restore:
                    for x in self._inputs_to_restore:
                        x._TraceMixin__restore()
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                if self._symbolic and (
                    self._lazy_eval_tensors or self._lazy_eval_links
                ):
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                    # eval lazy eval tensors
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                    self._lazy_eval(
                        self._lazy_eval_graph,
                        tuple(self._lazy_eval_tensors),
                        self._lazy_eval_links,
                    )
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                    self._lazy_eval_graph = None
                    self._lazy_eval_tensors = None
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                    self._lazy_eval_links = None
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                self._untraced = False
            else:
                # compiled_tensor leaks
                if self._pc == len(self._seq):
                    for x in escaped_tensors:
                        try:
                            assign_raw_tensor(x, as_raw_tensor(x._dev_tensor()))
                        except TraceMismatchError:
                            # TraceMismatchError thrown in do_exit
                            pass
                    self._graph.wait()
                    self._reset_exec_env()

            # reset status
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            self._pc = 0
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            self._tensor_remaps = None
            apply.disable(apply_with_tracing)
            apply.disable(apply_const_with_tracing)
            apply.disable(apply_symbolic_mode)
            apply.disable(apply_const_symbolic_mode)
            apply.disable(apply_compiled_mode)
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            apply.disable(apply_const_compiled_mode)
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            self._set_active(False)
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            # Restore global variable
            set_symbolic_shape(self._save_symbolic_shape)
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        def do_exit():
            if not self._untraced and self._pc != len(self._seq):
                raise TraceMismatchError("premature end")
            if not self._symbolic or not self._untraced:
                for x in self._active_tensors:
                    x._dev_tensor()

        try:
            do_enter()
            yield
            do_exit()
        except:
            interrupted = True
            raise
        finally:
            do_finalize()
            if interrupted:
                self._reset()
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    def _begin_excluded_region(self):
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        if self._capture_as_const:
            raise RuntimeError(
                "exclude_from_trace cannot be used with capture_as_const"
            )
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        if self._untraced:
            # conditionally reading a compiled tensor in excluded region
            # is permitted, so we have to assume every tensor might be read
            for x in self._active_tensors:
                info = self._tinfo[x._TraceMixin__handle]
                info.exported = True
                info.data_read = True

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    def _apply_graph_options(self, graph):

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        graph.options.no_force_inplace = True
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        graph.options.seq_opt.enable_seq_comp_node_opt = False
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        # graph opt level
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        # if self._graph_opt_level is not None:
        #     graph.options.graph_opt_level = self._graph_opt_level
        # FIXME
        graph.options.graph_opt_level = 0
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        # sublinear
        if self._sublinear_memory_config is not None:
            graph.options.enable_sublinear_memory_opt = True
            sublinear_config = graph.options.sublinear_mem_config
            sublinear_config.lb_memory = self._sublinear_memory_config.lb_memory
            sublinear_config.genetic_nr_iter = (
                self._sublinear_memory_config.genetic_nr_iter
            )
            sublinear_config.genetic_pool_size = (
                self._sublinear_memory_config.genetic_pool_size
            )
            sublinear_config.thresh_nr_try = self._sublinear_memory_config.thresh_nr_try
            sublinear_config.num_worker = self._sublinear_memory_config.num_worker
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        # profile
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        if self._profiling:
            self._profiler = GraphProfiler(graph)
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    def _compile(self):
        graph = self._graph = G.Graph()
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        graph.options.async_exec_level = 0b100
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        self._apply_graph_options(graph)
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        # graph.options.graph_opt_level = 0
        need_reset_nodes = self._need_reset_nodes = []
        # links enforce ordering of I/O nodes
        links = ()
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        readers = []
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        if self._capture_as_const:
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            for h in itertools.chain(self._arg_bindings, self._kwarg_bindings.values()):
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                info = self._tinfo[h]
                opnode = info.data_setter = G.InputNode(
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                    device=info.device,
                    dtype=info.dtype,
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                    shape=info.shape or (1,),
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                    graph=graph,
                    use_static_shape=_input_node_use_static_shape(),
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                )
                need_reset_nodes.append(opnode)
                info.varnode = opnode.outputs[0]
                links += opnode.outputs[1:]

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        for op, ihandles, ohandles in self._seq:
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            if isinstance(op, Const):
                assert len(ihandles) == 0
                (h,) = ohandles
                info = self._tinfo[h]
                if not hasattr(info, "varnode"):
                    assert info.external
                    assert info.bound_data
                    info.varnode = graph.make_const(
                        info.bound_data.numpy(),
                        info.bound_data.dtype,
                        info.bound_data.device,
                    )
                continue
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            require_links = type(op) in _io_op_types
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            ivars = []
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            for i, h in enumerate(ihandles):
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                info = self._tinfo[h]
                if not hasattr(info, "varnode"):
                    assert info.external
                    if info.bound_data:
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                        if hasattr(info, "is_const") and info.is_const:
                            info.varnode = graph.make_const(
                                info.bound_data.numpy(),
                                info.bound_data.dtype,
                                info.bound_data.device,
                            )
                        else:
                            info.varnode = graph.make_const(
                                info.bound_data._dev_tensor()
                                # info.bound_data.numpy()
                            )
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                    else:
                        opnode = info.data_setter = G.InputNode(
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                            *links,
                            device=info.device,
                            dtype=info.dtype,
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                            shape=info.shape or (1,),
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                            graph=graph,
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                            use_static_shape=_input_node_use_static_shape(),
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                        )
                        need_reset_nodes.append(opnode)
                        info.varnode, *links = opnode.outputs
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                if require_links and i == 0 and len(links) > 0:
                    info.varnode = apply(VirtualDep(), info.varnode, *links)[0]
                    links = (info.varnode,)
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                ivars.append(info.varnode)
            ovars = apply(op, *ivars)
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            if require_links and len(ovars) > 0:
                links = (ovars[0],)
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            assert len(ovars) == len(ohandles)
            for h, v in zip(ohandles, ovars):
                info = self._tinfo[h]
                info.varnode = v

                def add_reader(opnode):
                    nonlocal links
                    need_reset_nodes.append(opnode)
                    readers.append(opnode.outputs[0])
                    links = opnode.outputs

                if info.data_read:
                    # Shape can be obtained from data so doesn't need its own
                    # output node. On the other hand, value is read separately
                    # to leverage eager h2d copy
                    info.shape_read = False
                    opnode = info.data_reader = G.OutputNode(v, *links)
                    add_reader(opnode)
                if info.value_read:
                    opnode = info.value_reader = G.ValueOutputNode(v, *links)
                    add_reader(opnode)
                if info.shape_read:
                    opnode = info.shape_reader = G.AttrOutputNode(v, *links)
                    add_reader(opnode)
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        # FIXME
        if self._graph_opt_level is not None:
            graph.options.graph_opt_level = self._graph_opt_level
        else:
            graph.options.graph_opt_level = 2
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        graph.compile(*readers, *links)
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    def _reset_exec_env(self):
        for opnode in self._need_reset_nodes:
            opnode.reset()

    def _require_shape(self, handle):
        info = self._tinfo[handle]
        info.shape_read = True

    def _require_value(self, handle):
        info = self._tinfo[handle]
        info.value_read = True

    def _require_data(self, handle):
        info = self._tinfo[handle]
        info.data_read = True

    def __call__(self, *args, **kwargs):
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        if is_tracing():
            return self.__wrapped__(*args, **kwargs)
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        with self._setup():
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            if self._capture_as_const:
                self._process_inputs(*args, **kwargs)
            outputs = self.__wrapped__(*args, **kwargs)
            if self._capture_as_const:
                self._process_outputs(outputs)
            return outputs

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    def dump(
        self,
        file,
        *,
        arg_names=None,
        output_names=None,
        append=False,
        optimize_for_inference=True,
        **kwargs
    ):
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        r"""
        Serializes trace to file system.
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        :param file: output file, could be file object or filename.
        :param arg_names: names of the input tensors in the traced function.
        :param output_names: names of the output tensors in the traced function,
            use the default name if not specified.
        :param append: whether output is appended to ``file``.
            Only works when ``file`` is str.
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        :param optimize_for_inference: enbale optmizations,
            will skip all optimize options if this is False. Default: True
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        :Keyword Arguments:

            * enable_io16xc32 --
                whether to use float16 for I/O between oprs and use
                float32 as internal computation precision. Note the output var would be
                changed to float16.
            * enable_ioc16 --
                whether to use float16 for both I/O and computation
                precision.

            * enable_hwcd4 --
                whether to use NHWCD4 data layout. This is faster on some
                OpenCL backend.
            * enable_nchw88 --
                whether to use NCHW88 data layout, currently
                used in X86 AVX backend.
            * enable_nchw44 --
                whether to use NCHW44 data layout, currently
                used in arm backend.
            * enable_nchw44_dot --
                whether to use NCHW44_dot data layout, currently
                used in armv8.2+dotprod backend.
            * enable_nchw4 --
                whether to use NCHW4 data layout, currently
                used in nvidia backend(based on cudnn).
            * enable_nchw32 --
                whether to use NCHW32 data layout, currently
                used in nvidia backend with tensorcore(based on cudnn).
            * enable_chwn4 --
                whether to use CHWN4 data layout, currently
                used in nvidia backend with tensorcore.

            * enable_fuse_conv_bias_nonlinearity: whether to fuse conv+bias+nonlinearty
                into one opr.
            * enable_fuse_conv_bias_with_z: whether to fuse conv_bias with z
                input for inference on nvidia backend(this optimization pass will
                result in mismatch of the precision of output of training and
                inference)
        """
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        if not self._capture_as_const:
            raise ValueError(
                "you must specify capture_as_const=True at __init__ to use dump"
            )
        if self._untraced:
            raise RuntimeError("should run at least once before calling dump")
        if self._output_names and output_names:
            raise TypeError(
                "cannot specify output_names when output is already in dict format"
            )
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        if output_names and not isinstance(output_names, collections.abc.Sequence):
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            output_names = (output_names,)
        if output_names and len(output_names) != len(self._output_bindings):
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            raise ValueError(
                "wrong number of output_names, should be {} values".format(
                    len(self._output_bindings)
                )
            )
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        if arg_names is None:
            arg_names = ["arg_%d" % i for i in range(len(self._arg_bindings))]
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        if arg_names and not isinstance(arg_names, collections.abc.Sequence):
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            arg_names = (arg_names,)
        if arg_names and len(arg_names) != len(self._arg_bindings):
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            raise ValueError(
                "wrong number of arg_names, should be {} values".format(
                    len(self._arg_bindings)
                )
            )
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        output_names = output_names or self._output_names

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        dumped_device = as_device("xpux")

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        h2v = {}
        graph = G.Graph()
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        # only graph_opt_level takes effect in dump
        self._apply_graph_options(graph)
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        for i, h in enumerate(self._arg_bindings):
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            info = self._tinfo[h]
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            h2v[h] = graph.make_h2d(
                dtype=info.dtype,
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                device=dumped_device,
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                shape=info.shape or (1,),
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                name=arg_names[i] if arg_names else None,
            )
        for k, h in self._kwarg_bindings.items():
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            info = self._tinfo[h]
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            h2v[h] = graph.make_h2d(
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                dtype=info.dtype, device=dumped_device, shape=info.shape or (1,), name=k
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            )
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        for op, ihandles, ohandles in self._seq:
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            if isinstance(op, Const):
                assert len(ihandles) == 0
                (h,) = ohandles
                info = self._tinfo[h]
                if h not in h2v:
                    assert info.external
                    assert info.bound_data
                    h2v[h] = graph.make_const(
                        info.bound_data.numpy(), dtype=info.dtype, device=info.device,
                    )
                continue
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            ivars = []
            for h in ihandles:
                info = self._tinfo[h]
                if h not in h2v:
                    assert info.external
                    assert info.bound_data
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                    h2v[h] = graph.make_const(
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                        info.bound_data.numpy(), dtype=info.dtype, device=dumped_device
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                    )
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                ivars.append(h2v[h])
            ovars = apply(op, *ivars)
            assert len(ovars) == len(ohandles)
            h2v.update(zip(ohandles, ovars))

        dest_vars = []
        for i, h in enumerate(self._output_bindings):
            v = h2v[h]
            if output_names:
                v.name = output_names[i]
            dest_vars.append(v)

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        if optimize_for_inference:
            dest_vars = G.optimize_for_inference(dest_vars, **kwargs)
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        if isinstance(file, str):
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            permission = "wb" if append == False else "ab"
            file = open(file, permission)
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        dump_content, dump_info = G.dump_graph(dest_vars)
        file.write(dump_content)
        return dump_info
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    def _process_inputs(self, *args, **kwargs):
        if self._untraced:
            self._inputs_to_restore = []

            def record_input(x):
                if x is None:
                    return
                h, info = self._new_handle()
                info.external = False
                info.device = x.device
                info.dtype = x.dtype
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                info.shape = x.shape
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                TraceMixin._TraceMixin__inject(x, h)
                self._inputs_to_restore.append(x)
                return h

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            self._arg_bindings = []
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            for i, x in enumerate(args):
                x = find_raw_tensor(x)
                if x is None:
                    raise TypeError(
                        "positional arguments should all be tensor "
                        "but args[%d] cannot be recognized as one" % i
                    )
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                self._arg_bindings.append(record_input(x))
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            self._kwarg_bindings = {}
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            for k, x in kwargs.items():
                x = find_raw_tensor(x)
                if x is not None:
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                    self._kwarg_bindings[k] = record_input(x)
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        else:
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            if len(args) != len(self._arg_bindings):
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                raise TraceMismatchError("positional argument length mismatch")

            self._tensor_remaps = {}

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            for i, (h, x) in enumerate(zip(self._arg_bindings, args)):
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                x = find_raw_tensor(x)
                if x is None:
                    raise TypeError(
                        "positional arguments should all be tensor "
                        "but args[%d] cannot be recognized as one" % i
                    )
                info = self._tinfo[h]
                if x.dtype != info.dtype:
                    raise TypeError("args[%d].dtype different from last time" % i)
                if x.device != info.device:
                    raise TypeError("args[%d].device different from last time" % i)
                info.data_setter.set_value(x._dev_tensor())
                self._tensor_remaps[x] = CompiledTensorProxy(h)

            kwargs_tensors = {}
            for k, x in kwargs.items():
                x = find_raw_tensor(x)
                if x is not None:
                    kwargs_tensors[k] = x
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            if set(kwargs_tensors) != set(self._kwarg_bindings):
                too_many = set(kwargs_tensors) - set(self._kwarg_bindings)
                too_few = set(self._kwarg_bindings) - set(kwargs_tensors)
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                if too_many:
                    raise TraceMismatchError(
                        "keyword arguments found to be tensor this time "
                        "but were non-tensor previously: %s" % " ".join(too_many)
                    )
                if too_few:
                    raise TraceMismatchError(
                        "keyword arguments found to be non-tensor this time "
                        "but were tensor previously: %s" % " ".join(too_few)
                    )
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            for k, h in self._kwarg_bindings.items():
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                x = kwargs_tensors[k]
                info = self._tinfo[h]
                if x.dtype != info.dtype:
                    raise TypeError("kwargs[%s].dtype different from last time" % k)
                if x.device != info.device:
                    raise TypeError("kwargs[%s].device different from last time" % k)
                info.data_setter.set_value(x._dev_tensor())
                self._tensor_remaps[x] = CompiledTensorProxy(h)

    def _process_outputs(self, outputs):
        output_names = None
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        if isinstance(outputs, collections.abc.Mapping):
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            output_names, outputs = zip(*sorted(outputs.items()))
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        elif not isinstance(outputs, collections.abc.Sequence):
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            outputs = (outputs,)

        if not self._untraced:
            if output_names != self._output_names:
                too_many = set(output_names) - set(self._output_names)
                too_few = set(self._output_names) - set(output_names)
                if too_many:
                    raise TraceMismatchError(
                        "output has more keys than last time: %s" % " ".join(too_many)
                    )
                if too_few:
                    raise TraceMismatchError(
                        "output has less keys than last time: %s" % " ".join(too_few)
                    )
            if len(outputs) != len(self._output_bindings):
                raise TraceMismatchError("output size differs from last time")
        else:
            self._output_names = output_names
            self._output_bindings = []

        for i, x in enumerate(outputs):
            x = find_raw_tensor(x)
            if x is None:
                raise TypeError("every item of return value should be tensor")
            if self._untraced:
                if not isinstance(x, TraceMixin):
                    raise RuntimeError("output is not computed from inputs")
                h = x._TraceMixin__handle
                self._output_bindings.append(h)
            else:
                if not isinstance(x, CompiledTensorProxy):
                    raise RuntimeError("output is not computed from inputs")
                h = x._CompiledTensorProxy__handle
                if h != self._output_bindings[i]:
                    raise TraceMismatchError(
                        "retval[%s] is a different tensor than last time"
                        % (output_names and output_names[i] or i)
                    )
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    def get_profile(self):
        """
        Get profiling result for compiled trace.

        :return: a json compatible object.
        """
        if not self._profiler:
            raise RuntimeError("trace is not set with profiling=True")
        return json.loads(self._profiler.get())

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    def trace(self, *args, **kwargs):
        raise NotImplementedError(
            "trace is deemed unbeneficial with the new "
            "tracing mechanism. You should alwasy use __call__."
        )

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class CompiledTensorProxy(RawTensor):
    """
    Duck-typed RawTensor
    """

    def __init__(self, handle):
        self.__handle = handle
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        self._isscalar = False
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        self.__info = active_trace._tinfo[handle]
        self.__shape = None
        self.__data = None
        self.__value = None

    @property
    def dtype(self):
        return self.__info.varnode.dtype

    @property
    def device(self):
        return self.__info.varnode.device

    @property
    def shape(self):
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        if self._isscalar:
            return ()
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        if self.__shape is None:
            if self.__info.shape_read:
                self.__shape = self.__info.shape_reader.get_value().shape
            elif self.__info.data_read:
                self.__shape = self._dev_tensor().shape
            else:
                raise TraceMismatchError("shape of this tensor is not read in trace")
        return self.__shape

    def numpy(self):
        if self.__value is None:
            if self.__info.value_read:
                self.__value = self.__info.value_reader.get_value()
            elif self.__info.data_read:
                self.__value = self._dev_tensor().numpy()
            else:
                raise TraceMismatchError("value of this tensor is not read in trace")
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            if self._isscalar:
                self.__value = self.__value.squeeze()
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        return self.__value

    def _dev_tensor(self):
        if self.__data is None:
            if not self.__info.data_read:
                raise TraceMismatchError("raw data of this tensor is not read in trace")
            self.__data = self.__info.data_reader.get_value()
        return self.__data

    def __del__(self):
        if self.__info.shape_read and self.__shape is not None:
            self.__info.shape_reader.drop_value()
        if self.__info.value_read and self.__value is not None:
            self.__info.value_reader.drop_value()
        if self.__info.data_read and self.__data is not None:
            self.__info.data_reader.drop_value()


class LazyEvalTensor(RawTensor):
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    def __init__(self, varnode, isscalar=False):
        super().__init__()
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        self.__varnode = varnode
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        self._isscalar = isscalar
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    @property
    def dtype(self):
        return self.__varnode.dtype

    @property
    def device(self):
        return self.__varnode.device

    @property
    def shape(self):
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        if self._isscalar:
            return ()
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        return self.__varnode.shape

    def numpy(self):
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        ret = self.__varnode.value
        if self._isscalar:
            ret = ret.squeeze()
        return ret
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    def _dev_tensor(self):
        raise RuntimeError("cannot access data during symbolic tracing")


class TraceMixin:
    __subclass_cache = {}

    def __inject(self, handle):
        cache = __class__.__subclass_cache
        cls = self.__class__
        subcls = cache.get(cls)
        if subcls is None:
            subcls = cache[cls] = type("Traced" + cls.__name__, (__class__, cls), {})
        self.__class__ = subcls
        self.__handle = handle
        self.__cls = cls
        return self

    def __restore(self):
        cls = self.__cls
        del self.__handle
        del self.__cls
        self.__class__ = cls
        return self

    @property
    def shape(self):
        if not skip_tracing:
            active_trace._require_shape(self.__handle)
        return super().shape

    def numpy(self):
        if not skip_tracing:
            active_trace._require_value(self.__handle)
        return super().numpy()

    def _dev_tensor(self):
        if not skip_tracing:
            active_trace._require_data(self.__handle)
        return super()._dev_tensor()


class TracedRawTensor(TraceMixin, RawTensor):
    pass


class TracedLazyTensor(TraceMixin, LazyEvalTensor):
    pass


def assign_raw_tensor(lhs, rhs):
    handle = rhs._handle
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    # Keep isscalar of lhs
    isscalar = lhs._isscalar
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    rhs.__dict__.clear()
    lhs.__dict__.clear()
    lhs.__class__ = RawTensor
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    lhs.__init__(handle, isscalar=isscalar)
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# this hook turns RawTensor into LazyEvalTensor
@apply.register()
def apply_symbolic_mode(op: OpDef, *args: RawTensor):
    graph = active_trace._lazy_eval_graph
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    ivars = []
    for x in args:
        var = getattr(x, "_LazyEvalTensor__varnode", None)
        if var:
            ivars.append(var)
        else:
            data_setter = G.InputNode(
                device=x.device,
                dtype=x.dtype,
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                shape=x.shape or (1,),
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                graph=graph,
                use_static_shape=True,
            )
            var = data_setter.outputs[0]
            ivars.append(var)
            data_setter.set_value(x._dev_tensor())
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    require_links = type(op) in _io_op_types

    if require_links and active_trace._lazy_eval_links:
        assert len(ivars) > 0, "op should has at least one input"
        ivars[0] = apply(VirtualDep(), ivars[0], *active_trace._lazy_eval_links)[0]
        active_trace._lazy_eval_links = (ivars[0],)

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    ovars = apply(op, *ivars)
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    if require_links:
        active_trace._lazy_eval_links = (ovars[0],)

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    outputs = [LazyEvalTensor(v) for v in ovars]
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    active_trace._lazy_eval_tensors.update(outputs)
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    return outputs


apply.disable(apply_symbolic_mode)


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@apply.register()
def apply_const_symbolic_mode(op: Const, *args: RawTensor):
    graph = active_trace._lazy_eval_graph
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    ret = LazyEvalTensor(
        graph.make_const(op.value, dtype=op.dtype, device=op.device), isscalar=True
    )
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    active_trace._lazy_eval_tensors.add(ret)
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    return (ret,)


apply.disable(apply_const_symbolic_mode)


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@apply.register()
def apply_compiled_mode(op: OpDef, *args: RawTensor):
    if skip_tracing:
        args = [
            as_raw_tensor(x._dev_tensor()) if x.__class__ is CompiledTensorProxy else x
            for x in args
        ]
        return apply.super(op, *args)
    return active_trace._apply_op(op, args)


apply.disable(apply_compiled_mode)


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@apply.register()
def apply_const_compiled_mode(op: Const, *args: RawTensor):
    if skip_tracing:
        args = [
            as_raw_tensor(x._dev_tensor()) if x.__class__ is CompiledTensorProxy else x
            for x in args
        ]
        return apply.super(op, *args)
    return active_trace._apply_const(op, args)


apply.disable(apply_const_compiled_mode)


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# this hook injects TraceMixin
@apply.register()
def apply_with_tracing(op: OpDef, *args: RawTensor):
    outputs = apply.super(op, *args)
    active_trace._record_op(op, args, outputs)
    return outputs


apply.disable(apply_with_tracing)


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@apply.register()
def apply_const_with_tracing(op: Const, *args: RawTensor):
    outputs = apply.super(op, *args)
    active_trace._record_const(op, outputs)
    return outputs


apply.disable(apply_const_with_tracing)
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class BrokenRawTensor(RawTensor):
    def __getattribute__(self, _):
        raise RuntimeError("broken due to misuse of tracing")

    def __setattr__(self, *_):
        raise RuntimeError("broken due to misuse of tracing")
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@functools.singledispatch
def find_raw_tensor(x):
    return None


@find_raw_tensor.register(RawTensor)
def _(x):
    return x


@find_raw_tensor.register(TensorWrapperBase)
def _(x):
    x = getattr(x, "__wrapped__", None)
    if x is not None:
        return find_raw_tensor(x)


@find_raw_tensor.register(Tensor)
def _(x):
    x = getattr(x, "_data", None)
    if x is not None:
        return find_raw_tensor(x)