mirror of https://github.com/hpcaitech/ColossalAI
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874 lines
33 KiB
874 lines
33 KiB
import copy |
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from typing import Dict, List, Tuple |
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from torch.fx.node import Node |
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from .utils import NodeMgr, find_first_tensor_arg, flat_list, get_module_node_name, get_node_name, get_node_shape |
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class TraceIndice(object): |
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""" |
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Trace all indice infomation for every node. |
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Indice is a logical concept. Equal dims can been treated as one indice. |
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eg. dim(x1) = [a, b, c] |
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dim(x2) = [d, e, f] |
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and we have x3 = x1 * x2. |
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then a=d, b=e, c=f, due to the broadcast property, |
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dim(x1)=dim(x2)=dim(x3)=[a, b, c] |
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This class will record every node's dims' indice, compute and source. |
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Attibutes: |
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node_list (List) |
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indice_trace_list (List): [{"indice": [...], "compute": [...], "source": [...]}, {...}] |
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indice_view_list (Dict): not used for now |
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indice_count (int): record indice number |
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Args: |
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node_list (List) |
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""" |
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def __init__(self, node_mgr: NodeMgr) -> None: |
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self.node_mgr = node_mgr |
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self.indice_trace_list = self._init_indice_trace_list() |
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self.indice_view_list = {} |
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self.indice_count = -1 |
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self.trace_range = [] |
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self.active_node_list = [] |
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def _init_indice_trace_list(self) -> List: |
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indice_trace_list = [] |
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for n in self.node_mgr.get_node_list(): |
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if get_node_shape(n) != None: |
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cur_trace = { |
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"indice": [None for _ in range(len(get_node_shape(n)))], |
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"compute": [[] for _ in range(len(get_node_shape(n)))], |
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"source": [{} for _ in range(len(get_node_shape(n)))], |
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} |
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else: |
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cur_trace = {"indice": [], "compute": [], "source": []} |
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indice_trace_list.append(cur_trace) |
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return indice_trace_list |
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def set_trace_range(self, trace_range: List, active_node_list: List) -> None: |
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self.trace_range = trace_range |
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self.active_node_list = active_node_list |
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def _add_indice(self) -> int: |
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""" |
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Update the count and return it. To record the idx number. |
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Returns: |
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indice_count: int |
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""" |
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self.indice_count += 1 |
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return self.indice_count |
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def _del_dim(self, idx: int, dim_idx: int) -> None: |
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""" |
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delete a dim for indice, compute and source |
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""" |
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self.indice_trace_list[idx]["indice"].pop(dim_idx) |
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self.indice_trace_list[idx]["compute"].pop(dim_idx) |
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self.indice_trace_list[idx]["source"].pop(dim_idx) |
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def _add_dim(self, node_idx: int, dim_idx: int) -> None: |
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""" |
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add a dim for indice, compute and source |
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""" |
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self.indice_trace_list[node_idx]["indice"].insert(dim_idx, self._add_indice()) |
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self.indice_trace_list[node_idx]["compute"].insert(dim_idx, []) |
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self.indice_trace_list[node_idx]["source"].insert(dim_idx, {}) |
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def _add_source( |
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self, |
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node_from: Node, |
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node_from_dim: int, |
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node_to: Node, |
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node_to_dim: int, |
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init=False, |
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) -> None: |
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node_from_dim = self._transform_indice(node_from, node_from_dim) |
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node_from_trace_source = self._find_source_trace_from_node(node_from) |
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node_to_dim = self._transform_indice(node_to, node_to_dim) |
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node_to_trace_source = self._find_source_trace_from_node(node_to) |
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node_from_idx = self.node_mgr.find_node_idx(node_from) |
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if init: |
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node_to_trace_source[node_to_dim] = {} |
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# add dim to cur new source |
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if node_from_idx not in node_to_trace_source[node_to_dim]: |
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node_to_trace_source[node_to_dim][node_from_idx] = [node_from_dim] |
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else: |
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if node_from_dim not in node_to_trace_source[node_to_dim][node_from_idx]: |
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node_to_trace_source[node_to_dim][node_from_idx].append(node_from_dim) |
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# update inputs source |
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for node_idx, node_dim in node_from_trace_source[node_from_dim].items(): |
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if node_idx not in node_to_trace_source[node_to_dim]: |
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node_to_trace_source[node_to_dim][node_idx] = copy.deepcopy(node_dim) |
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else: |
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for d in node_dim: |
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if d not in node_to_trace_source[node_to_dim][node_idx]: |
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node_to_trace_source[node_to_dim][node_idx].append(d) |
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def _transform_indice(self, node: Node, node_dim: int) -> int: |
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node_idx = self._find_indice_trace_from_node(node) |
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dims = list(range(len(node_idx))) |
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return dims[node_dim] |
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def _inherit_indice( |
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self, |
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node_from: Node, |
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node_from_dim: int, |
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node_to: Node, |
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node_to_dim: int, |
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init: bool = True, |
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) -> None: |
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""" |
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node_to's node_to_dim inherit node_from's node_from_dim by indice, compute and source |
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""" |
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node_from_dim = self._transform_indice(node_from, node_from_dim) |
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node_to_dim = self._transform_indice(node_to, node_to_dim) |
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node_from_trace = self._find_trace_from_node(node_from) |
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node_to_trace = self._find_trace_from_node(node_to) |
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if init: |
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node_to_trace["indice"][node_to_dim] = node_from_trace["indice"][node_from_dim] |
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node_to_trace["compute"][node_to_dim] = copy.deepcopy(node_from_trace["compute"][node_from_dim]) |
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else: |
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for j in node_from_trace["compute"][node_from_dim]: |
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if j not in node_to_trace["compute"][node_to_dim]: |
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node_to_trace["compute"][node_to_dim].append(j) |
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self._add_source(node_from, node_from_dim, node_to, node_to_dim, init) |
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def _inherit_all_indice(self, node_from: Node, node_to: Node) -> None: |
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""" |
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inherit all dims with init |
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""" |
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# find indice just for assert length |
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node_from_indice = self._find_indice_trace_from_node(node_from) |
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node_to_indice = self._find_indice_trace_from_node(node_to) |
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assert len(node_from_indice) == len(node_to_indice) |
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for i in range(len(node_from_indice)): |
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self._inherit_indice(node_from, i, node_to, i, init=True) |
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def _inherit_more_indice_from_node_with_exclude(self, node_from: Node, node_to: Node, exclude: List = None) -> None: |
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""" |
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inheirt indice from node without init |
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""" |
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if exclude == None: |
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exclude = [] |
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else: |
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exclude = [self._transform_indice(node_to, i) for i in exclude] |
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node_from_compute = self._find_compute_trace_from_node(node_from) |
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node_to_compute = self._find_compute_trace_from_node(node_to) |
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# assert len(node_from_compute) == len(node_to_compute) |
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for i in range(-1, -min(len(node_from_compute), len(node_to_compute)) - 1, -1): |
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if self._transform_indice(node_to, i) in exclude: |
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continue |
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self._inherit_indice(node_from, i, node_to, i, init=False) |
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def _mark_computation(self, node: Node, idx: int, dim: int) -> None: |
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""" |
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Mark some dims of node as computed. |
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Args: |
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node (node) |
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idx (int): node index |
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dim (list or int): dims to be marked as computed |
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""" |
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if isinstance(dim, int): |
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dim = [dim] |
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dims = list(range(len(get_node_shape(node)))) |
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for d in dim: |
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cur_dim = dims[d] |
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if idx not in self.indice_trace_list[idx]["compute"][cur_dim]: |
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self.indice_trace_list[idx]["compute"][cur_dim].append(idx) |
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def _find_trace_from_node(self, node: Node) -> Dict: |
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""" |
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Find node idx and compute trace by the node. |
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Args: |
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node (node) |
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Returns: |
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idx (list): idx of the node |
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compute (list): computed idx of the node. |
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""" |
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node_idx = self.node_mgr.find_node_idx(node) |
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node_dict = self.indice_trace_list[node_idx] |
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return node_dict |
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def _find_source_trace_from_node(self, node: Node) -> List: |
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""" |
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Find node source trace by the node. |
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Args: |
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node (node) |
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Returns: |
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idx (list): idx of the node |
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compute (list): computed idx of the node. |
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""" |
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node_idx = self.node_mgr.find_node_idx(node) |
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node_dict = self.indice_trace_list[node_idx] |
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return node_dict["source"] |
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def _find_indice_trace_from_node(self, node) -> List: |
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""" |
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Find node idx trace by the node. |
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Args: |
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node (node) |
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Returns: |
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idx (list): idx of the node |
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""" |
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node_idx = self.node_mgr.find_node_idx(node) |
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return self.indice_trace_list[node_idx]["indice"] |
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def _find_compute_trace_from_node(self, node: Node) -> List: |
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""" |
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Find node compute trace by the node. |
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Args: |
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node (node) |
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Returns: |
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compute (list): computed idx of the node. |
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""" |
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node_idx = self.node_mgr.find_node_idx(node) |
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return self.indice_trace_list[node_idx]["compute"] |
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def _assign_indice_as_input(self, node: Node, node_idx: int, input_node=None) -> None: |
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""" |
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Assign node's trace as its input node. |
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Args: |
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node (node) |
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node_idx (int) |
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""" |
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if input_node == None: |
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input_node = find_first_tensor_arg(node) |
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self._inherit_all_indice(input_node, node) |
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def _assign_all_indice(self, node: Node, node_idx: int) -> None: |
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""" |
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Add new indice for all node's dims. |
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Args: |
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node (node) |
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node_idx (int) |
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""" |
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shape = node.meta["tensor_meta"].shape |
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if shape is None: |
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return |
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new_trace = [] |
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for _ in shape: |
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new_trace.append(self._add_indice()) |
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self.indice_trace_list[node_idx]["indice"] = new_trace |
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def _assign_transpose_indice(self, node: Node, node_idx: int) -> None: |
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""" |
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Assign indice for transpose op. |
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1. swap input's dim according to transpose args |
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2. inherit input's computation |
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Args: |
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node (node) |
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node_idx (int) |
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""" |
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input_node = node.args[0] |
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tranpose_dim = node.args[1:] |
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self._assign_indice_as_input(node, node_idx, input_node) |
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self._inherit_indice(input_node, tranpose_dim[1], node, tranpose_dim[0]) |
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self._inherit_indice(input_node, tranpose_dim[0], node, tranpose_dim[1]) |
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def _assign_permute_indice(self, node: Node, node_idx: int) -> None: |
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""" |
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Assign indice for permute op. |
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1. swap input's dim according to permute args |
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2. inherit input's computation |
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Args: |
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node (node) |
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node_idx (int) |
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""" |
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permute_dim = flat_list(node.args[1:]) |
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input_node = node.args[0] |
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self._assign_indice_as_input(node, node_idx, input_node) |
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for idx, d in enumerate(permute_dim): |
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self._inherit_indice(input_node, d, node, idx) |
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def _assign_linear_indice(self, node: Node, node_idx: int) -> None: |
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""" |
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Assign indice for linear op. |
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1. copy trace from input node and change last indice accroding to weight |
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2. mark equal for input node last indice, weight first dim and bias dim. |
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3. inherit input's computation, mark computation for last dim. |
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Args: |
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node (node) |
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node_idx (int) |
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""" |
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self._assign_indice_as_input(node, node_idx) |
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if len(node.args) >= 2: |
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weight = node.args[1] |
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self._inherit_indice(weight, 1, node, -1) |
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else: |
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self._del_dim(node_idx, -1) |
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self._add_dim(node_idx, -1) |
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self._mark_computation(node, node_idx, [-1]) |
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def _assign_addmm_indice(self, node: Node, node_idx: int) -> None: |
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""" |
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Assign indice for addmm op. |
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Args: |
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node (node) |
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node_idx (int) |
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""" |
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bias, input_node, weight = node.args |
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assert len(get_node_shape(bias)) == 1 and len(get_node_shape(weight)) == 2 |
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self._assign_indice_as_input(node, node_idx, input_node) |
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self._inherit_indice(weight, 1, node, -1) |
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self._inherit_more_indice_from_node_with_exclude(bias, node) |
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self._mark_computation(node, node_idx, [-1]) |
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def _assign_baddbmm_indice(self, node: Node, node_idx: int) -> None: |
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""" |
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Assign indice for baddbmm(batch add and batch matmul) op. |
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add, matmul_left, matmul_right = args |
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out = add + (matmul_left x matmul_right) |
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Args: |
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node (node) |
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node_idx (int) |
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""" |
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add, matmul_left, matmul_right = node.args |
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assert get_node_shape(add) == get_node_shape(node) |
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assert len(get_node_shape(matmul_left)) == len(get_node_shape(matmul_right)) |
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self._assign_indice_as_input(node, node_idx, matmul_left) |
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# matmul |
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self._inherit_indice(matmul_right, -1, node, -1) |
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self._inherit_more_indice_from_node_with_exclude(matmul_right, node, [-2, -1]) |
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self._mark_computation(node, node_idx, [-1]) |
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# add |
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self._inherit_more_indice_from_node_with_exclude(add, node) |
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def _assign_matmul_indice(self, node: Node, node_idx: int) -> None: |
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""" |
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Assign indice for matmul op. |
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1. copy trace from matmul_left and change last indice accroding to matmul_right. (assert they have same length) |
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2. mark equal for input matmul_left -1 indice and matmul_right -2 dim. |
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3. inherit matmul_left and matmul_right computation, mark computation for last dim. |
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Args: |
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node (node) |
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node_idx (int) |
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""" |
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matmul_left, matmul_right = node.args |
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assert len(get_node_shape(matmul_left)) == len(get_node_shape(matmul_right)) |
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self._assign_indice_as_input(node, node_idx, matmul_left) |
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self._inherit_indice(matmul_right, -1, node, -1) |
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self._inherit_more_indice_from_node_with_exclude(matmul_right, node, [-1, -2]) |
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self._mark_computation(node, node_idx, [-1]) |
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def _assign_conv2d_indice(self, node: Node, node_idx: int) -> None: |
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""" |
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Assign indice for conv2d op. |
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Args: |
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node (node) |
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node_idx (int) |
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""" |
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# get conv module |
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node_targets = node.target.split(".") |
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conv_module = node.graph.owning_module |
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for i in node_targets: |
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conv_module = getattr(conv_module, i) |
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assert conv_module.dilation == (1, 1), "dilation for conv2d not implemented" |
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# get conv input |
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assert len(node.args) == 1 |
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input_node = node.args[0] |
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assert len(get_node_shape(input_node)) == 4 |
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# assgin index |
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self._assign_indice_as_input(node, node_idx, input_node) |
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self._del_dim(node_idx, 1) |
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self._add_dim(node_idx, 1) |
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self._mark_computation(node, node_idx, [1, 2, 3]) |
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def _assign_interpolate_indice(self, node: Node, node_idx: int) -> None: |
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""" |
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Assign indice for interpolate op. |
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Args: |
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node (node) |
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node_idx (int) |
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""" |
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# get conv input |
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assert node.kwargs['size'] is None |
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assert len(get_node_shape(node)) == 4 |
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# assgin index |
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self._assign_indice_as_input(node, node_idx) |
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self._mark_computation(node, node_idx, [-1, -2]) |
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def _assign_layernorm_indice(self, node, idx): |
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""" |
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Assign indice for layernorm op. |
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1. assign indice as input node |
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2. inherit computation and mark last 2 dims as computed. |
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Args: |
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node (node) |
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node_idx (int) |
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""" |
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self._assign_indice_as_input(node, idx) |
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self._mark_computation(node, idx, [-1]) |
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def _assign_groupnorm_indice(self, node, idx): |
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""" |
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Assign indice for groupnorm op. |
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Args: |
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node (node) |
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node_idx (int) |
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""" |
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assert len(get_node_shape(node)) == 4 |
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self._assign_indice_as_input(node, idx) |
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self._mark_computation(node, idx, [-1, -2, -3]) |
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def _assign_elementwise_indice(self, node, idx): |
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""" |
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Assign indice for element-wise op (eg. relu sigmoid add mul). |
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1. assign indice as input node |
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2. inherit computation from all input nodes. |
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Args: |
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node (node) |
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node_idx (int) |
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""" |
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self._assign_indice_as_input(node, idx) |
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nodes_in = [] |
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for node_in in node.args: |
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if type(node_in) == type(node): |
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nodes_in.append(node_in) |
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self._inherit_more_indice_from_node_with_exclude(node_in, node) |
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def _assgin_no_change_indice(self, node, idx): |
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self._assign_indice_as_input(node, idx) |
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for node_in in node.args: |
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if type(node_in) == type(node): |
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self._inherit_more_indice_from_node_with_exclude(node_in, node) |
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def _assign_einsum_indice(self, node, idx): |
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""" |
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Assign indice for einsum op. |
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Args: |
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node (node) |
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node_idx (int) |
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""" |
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patterns = node.args[0] |
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input_nodes = node.args[1:] |
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patterns = patterns.replace(" ", "") |
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left, right = patterns.split("->") |
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left = left.split(",") |
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if "..." in right: |
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replace_list = "!@#$%^&*" |
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target_len = len(get_node_shape(node)) |
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add_len = target_len - len(right) + 3 |
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replace_str = replace_list[:add_len] |
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right = right.replace("...", replace_str) |
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for ll in range(len(left)): |
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left[ll] = left[ll].replace("...", replace_str) |
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all_index = [] |
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for i in left: |
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for c in i: |
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all_index.append(c) |
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all_index = set(all_index) |
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for right_idx, right_indice in enumerate(right): |
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for left_idx, left_str in enumerate(left): |
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if right_indice in left_str: |
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source_idx = left_str.index(right_indice) |
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self._inherit_indice(input_nodes[left_idx], source_idx, node, right_idx) |
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def _assign_softmax_indice(self, node, idx): |
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""" |
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Assign indice for softmax op. |
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1. assign indice as input node |
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2. inherit computation and mark softmax dim as computed. |
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Args: |
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node (node) |
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node_idx (int) |
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""" |
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self._assign_indice_as_input(node, idx) |
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self._mark_computation(node, idx, [node.kwargs["dim"]]) |
|
|
|
def _assign_split_indice(self, node: Node, node_idx: int) -> None: |
|
""" |
|
Assign indice for split op. |
|
|
|
Args: |
|
node (node) |
|
node_idx (int) |
|
""" |
|
self._assign_indice_as_input(node, node_idx) |
|
dim_idx = node.kwargs["dim"] |
|
self._del_dim(node_idx, dim_idx) |
|
self._add_dim(node_idx, dim_idx) |
|
|
|
def _assign_unsqueeze_indice(self, node: Node, node_idx: int) -> None: |
|
""" |
|
Assign indice for unsqueeze op. |
|
1. assign new indice for unsqueeze dim |
|
|
|
Args: |
|
node (node) |
|
node_idx (int) |
|
""" |
|
self._del_dim(node_idx, -1) |
|
self._assign_indice_as_input(node, node_idx) |
|
dim_idx = node.args[1] |
|
# unsqueeze(-1) = unsqueeze(shape_num + 1) |
|
if dim_idx < 0: |
|
dim_idx = list(range(len(get_node_shape(node))))[dim_idx] |
|
self._add_dim(node_idx, dim_idx) |
|
|
|
def _assign_cat_indice(self, node: Node, node_idx: int) -> None: |
|
""" |
|
Assign indice for cat op. |
|
|
|
Args: |
|
node (node) |
|
node_idx (int) |
|
""" |
|
nodes_in = flat_list(node.args[0]) |
|
self._assign_indice_as_input(node, node_idx, input_node=nodes_in[0]) |
|
for n in nodes_in[1:]: |
|
self._inherit_more_indice_from_node_with_exclude(n, node) |
|
cat_dim = node.kwargs["dim"] |
|
self._del_dim(node_idx, cat_dim) |
|
self._add_dim(node_idx, cat_dim) |
|
|
|
def _assign_sum_indice(self, node: Node, node_idx: int) -> None: |
|
""" |
|
Assign indice for sum op. |
|
|
|
Args: |
|
node (node) |
|
node_idx (int) |
|
""" |
|
nodes_in = flat_list(node.args[0]) |
|
self._add_dim(node_idx, 0) |
|
self._assign_indice_as_input(node, node_idx, input_node=nodes_in[0]) |
|
for n in nodes_in[1:]: |
|
self._inherit_more_indice_from_node_with_exclude(n, node) |
|
cat_dim = node.kwargs["dim"] |
|
self._del_dim(node_idx, cat_dim) |
|
|
|
def _assign_embedding_indice(self, node: Node, node_idx: int) -> None: |
|
""" |
|
Assign indice for embedding op. |
|
|
|
Args: |
|
node (node) |
|
node_idx (int) |
|
""" |
|
self._del_dim(node_idx, -1) |
|
self._assign_indice_as_input(node, node_idx) |
|
self._add_dim(node_idx, -1) |
|
|
|
def _assign_getitem_indice(self, node: Node, node_idx: int) -> None: |
|
""" |
|
Assign indice for getitem. |
|
getitem can act like slice sometimes |
|
|
|
Args: |
|
node (node) |
|
node_idx (int) |
|
""" |
|
node_args = flat_list(node.args[1:]) |
|
|
|
# deal with split |
|
if get_node_name(node.args[0]) == "split": |
|
self._assign_indice_as_input(node, node_idx) |
|
self._del_dim(node_idx, node.args[0].kwargs["dim"]) |
|
self._add_dim(node_idx, node.args[0].kwargs["dim"]) |
|
return |
|
|
|
# skip non tensor |
|
if get_node_shape(node) is None: |
|
return |
|
|
|
# find if slice |
|
flag = False |
|
for node_arg in node_args: |
|
node_arg_str = str(node_arg) |
|
if any(i == node_arg_str for i in ["None", "Ellipsis"]): |
|
flag = True |
|
break |
|
if "slice" in node_arg_str: |
|
flag = True |
|
break |
|
if flag == False: |
|
return |
|
|
|
# node args should be like [Ellipsis, slice(start, step, end), None] |
|
node_shape = get_node_shape(node) |
|
origin_idx_count = 0 |
|
new_idx_count = 0 |
|
new_dim_num = sum([1 if str(i) == "None" else 0 for i in node_args]) |
|
for _ in range(new_dim_num): |
|
self._del_dim(node_idx, 0) |
|
delete_dim_num = sum([1 if str(i) == "0" else 0 for i in node_args]) |
|
for _ in range(delete_dim_num): |
|
self._add_dim(node_idx, 0) |
|
self._assign_indice_as_input(node, node_idx) |
|
|
|
for _, node_arg in enumerate(node_args): |
|
node_arg_str = str(node_arg) |
|
# Ellipsis means [..., ] |
|
if "Ellipsis" == node_arg_str: |
|
shape_gap = len(node_shape) - len(node_args) + 1 |
|
origin_idx_count += shape_gap |
|
new_idx_count += shape_gap |
|
# slice(None, None, None) means all indexes |
|
elif "slice" in node_arg_str: |
|
if "slice(None, None, None)" != node_arg_str: |
|
self._del_dim(node_idx, new_idx_count) |
|
self._add_dim(node_idx, new_idx_count) |
|
origin_idx_count += 1 |
|
new_idx_count += 1 |
|
# None means a new dim |
|
elif "None" == node_arg_str: |
|
self._add_dim(node_idx, new_idx_count) |
|
new_idx_count += 1 |
|
elif "0" == node_arg_str: |
|
self._del_dim(node_idx, new_idx_count) |
|
origin_idx_count += 1 |
|
else: |
|
raise NotImplementedError() |
|
|
|
def _assign_view_reshape_indice(self, node: Node, node_idx: int) -> None: |
|
""" |
|
Assign indice for view and reshape op. |
|
1. get origin shape and target shape by meta info. |
|
2. compute the real value of -1 in target shape. |
|
3. determine changed dim, and assgin indice for generated dim. |
|
4. log changed dim and generated dim for restore |
|
5. inherit computation. |
|
6. look into view list to see whether the view is associated with other, |
|
if so assgin equal dim according to previous view. |
|
|
|
Args: |
|
node (node) |
|
node_idx (int) |
|
""" |
|
# get data, turn into number |
|
origin_node = node.args[0] |
|
origin_shape = origin_node.meta["tensor_meta"].shape |
|
target_shape = [] |
|
unflated_args = flat_list(node.args) |
|
for i in range(1, len(unflated_args)): |
|
if isinstance(unflated_args[i], int): |
|
target_shape.append(unflated_args[i]) |
|
else: |
|
target_shape.extend(unflated_args[i].meta["fwd_out"]) |
|
|
|
# compute the value of -1 |
|
if -1 in target_shape: |
|
origin_product = 1 |
|
for i in origin_shape: |
|
origin_product *= i |
|
target_product = -1 |
|
for i in target_shape: |
|
target_product *= i |
|
shape_idx = target_shape.index(-1) |
|
target_shape[shape_idx] = origin_product // target_product |
|
|
|
# determine changed dim |
|
len_diff = len(origin_shape) - len(target_shape) |
|
if len_diff == 1: |
|
# dim merge |
|
dim_equal = [i == j for i, j in zip(origin_shape[:-1], target_shape)] |
|
dim_to = [dim_equal.index(False)] |
|
dim_from = [dim_equal.index(False), dim_equal.index(False) + 1] |
|
self._add_dim(node_idx, -1) |
|
elif len_diff == -1: |
|
# dim expand |
|
dim_equal = [i == j for i, j in zip(origin_shape, target_shape[:-1])] |
|
dim_from = [dim_equal.index(False)] |
|
dim_to = [dim_equal.index(False), dim_equal.index(False) + 1] |
|
self._del_dim(node_idx, -1) |
|
elif len_diff == 0: |
|
# dim equal |
|
dim_equal = [i == j for i, j in zip(origin_shape, target_shape[:-1])] |
|
dim_from = [] |
|
dim_to = [] |
|
else: |
|
raise NotImplementedError("shape" + str(origin_shape) + "and" + str(target_shape) + "view not implemented") |
|
|
|
# get new indice |
|
origin_trace = self._find_indice_trace_from_node(origin_node) |
|
self._assign_indice_as_input(node, node_idx, origin_node) |
|
idx_from = [origin_trace[i] for i in dim_from] |
|
dim_from.reverse() |
|
for i in dim_from: |
|
self._del_dim(node_idx, i) |
|
for i in dim_to: |
|
self._add_dim(node_idx, i) |
|
dim_from.reverse() |
|
|
|
# search view list |
|
for view_node, view_dict in self.indice_view_list.items(): |
|
if (view_dict["idx_to"] == idx_from and view_dict["dim_to"] == dim_from |
|
and view_dict["dim_from"] == dim_to): |
|
# inheirt indice from current node |
|
if len_diff == 1: |
|
if origin_shape[dim_from[0]] == 1: |
|
self._inherit_indice(origin_node, dim_from[1], node, dim_to[0], init=False) |
|
elif origin_shape[dim_from[1]] == 1: |
|
self._inherit_indice(origin_node, dim_from[0], node, dim_to[0], init=False) |
|
elif len_diff == -1: |
|
if target_shape[dim_to[0]] == 1: |
|
self._inherit_indice(origin_node, dim_from[0], node, dim_to[1], init=False) |
|
elif target_shape[dim_to[1]] == 1: |
|
self._inherit_indice(origin_node, dim_from[0], node, dim_to[0], init=False) |
|
# inherid indice from input node of last view |
|
for dim_to_i in dim_to: |
|
self._inherit_indice(view_node.args[0], dim_to_i, node, dim_to_i, init=False) |
|
|
|
# log view, not used now |
|
view_dict = { |
|
"idx_from": [origin_trace[i] for i in dim_from], |
|
"dim_from": dim_from, |
|
"idx_to": [self.indice_trace_list[node_idx]["indice"][i] for i in dim_to], |
|
"dim_to": dim_to, |
|
} |
|
self.indice_view_list[node] = view_dict |
|
|
|
def _clear_trace(self, node_idx: int) -> None: |
|
""" |
|
clear too far trace to speed up computation |
|
""" |
|
trace_range = None |
|
for i in range(len(self.trace_range)): |
|
if self.trace_range[i][1] == node_idx: |
|
trace_range = (self.trace_range[i][0], self.trace_range[i][1]) |
|
break |
|
if self.trace_range[i][1] > node_idx: |
|
break |
|
if trace_range is None: |
|
return |
|
|
|
active_nodes = self.active_node_list[trace_range[0]:trace_range[1] + 1] |
|
active_nodes = set(flat_list(active_nodes)) |
|
active_nodes = [self.node_mgr.find_node_idx_by_name(i) for i in active_nodes] |
|
for i in range(trace_range[0], trace_range[1] + 1): |
|
trace = self.indice_trace_list[i] |
|
# clear compute |
|
for dim_compute in trace["compute"]: |
|
for i in range(len(dim_compute) - 1, -1, -1): |
|
if (dim_compute[i] < trace_range[0] and dim_compute[i] not in active_nodes): |
|
dim_compute.pop(i) |
|
continue |
|
# clear source |
|
for dim_source in trace["source"]: |
|
for k in list(dim_source.keys()): |
|
if k < trace_range[0] and k not in active_nodes: |
|
dim_source.pop(k) |
|
|
|
def trace_indice(self) -> None: |
|
for idx, node in enumerate(self.node_mgr.get_node_list()): |
|
node_name = get_node_name(node) |
|
if node.op == "placeholder": |
|
self._assign_all_indice(node, idx) |
|
elif node.op == "call_method": |
|
if "transpose" == node_name: |
|
self._assign_transpose_indice(node, idx) |
|
elif "permute" == node_name: |
|
self._assign_permute_indice(node, idx) |
|
elif "view" == node_name or "reshape" == node_name: |
|
self._assign_view_reshape_indice(node, idx) |
|
elif "unsqueeze" == node_name: |
|
self._assign_unsqueeze_indice(node, idx) |
|
elif "split" == node_name: |
|
self._assign_split_indice(node, idx) |
|
elif any(i == node_name for i in ["to", "contiguous", "clone", "type", "float"]): |
|
self._assgin_no_change_indice(node, idx) |
|
elif "new_ones" == node_name: |
|
self._assign_all_indice(node, idx) |
|
elif any(i == node_name for i in ["size"]): |
|
continue |
|
else: |
|
raise NotImplementedError(node_name, "method not implemented yet!") |
|
elif node.op == "call_function": |
|
if "linear" == node_name: |
|
self._assign_linear_indice(node, idx) |
|
elif "cat" == node_name: |
|
self._assign_cat_indice(node, idx) |
|
elif any(n == node_name for n in ["matmul", "bmm"]): |
|
self._assign_matmul_indice(node, idx) |
|
elif "softmax" == node_name: |
|
self._assign_softmax_indice(node, idx) |
|
elif any(n == node_name for n in [ |
|
"mul", "add", "sigmoid", "relu", "sub", "truediv", "pow", "dropout", "where", "tanh", "exp", |
|
"sin", "cos" |
|
]): |
|
self._assign_elementwise_indice(node, idx) |
|
elif "einsum" == node_name: |
|
self._assign_einsum_indice(node, idx) |
|
elif "sum" == node_name: |
|
self._assign_sum_indice(node, idx) |
|
elif "layer_norm" == node_name: |
|
self._assign_layernorm_indice(node, idx) |
|
elif "getitem" == node_name: |
|
self._assign_getitem_indice(node, idx) |
|
elif "addmm" == node_name: |
|
self._assign_addmm_indice(node, idx) |
|
elif "baddbmm" == node_name: |
|
self._assign_baddbmm_indice(node, idx) |
|
elif "interpolate" == node_name: |
|
self._assign_interpolate_indice(node, idx) |
|
elif any(i == node_name for i in ["arange", "ones", "ones_like", "tensor", "empty"]): |
|
self._assign_all_indice(node, idx) |
|
elif any(i == node_name for i in ["getattr", "eq", "_assert_is_none", "_assert", "finfo"]): |
|
continue |
|
else: |
|
raise NotImplementedError(node_name, "function not implemented yet!") |
|
elif node.op == "call_module": |
|
node_name = get_module_node_name(node) |
|
if "layernorm" == node_name: |
|
self._assign_layernorm_indice(node, idx) |
|
elif "groupnorm" == node_name: |
|
self._assign_groupnorm_indice(node, idx) |
|
elif "embedding" == node_name: |
|
self._assign_embedding_indice(node, idx) |
|
elif "linear" == node_name: |
|
self._assign_linear_indice(node, idx) |
|
elif "conv2d" == node_name: |
|
self._assign_conv2d_indice(node, idx) |
|
elif any(n == node_name for n in ["sigmoid", "dropout", "relu", "silu"]): |
|
self._assign_elementwise_indice(node, idx) |
|
else: |
|
raise NotImplementedError(node_name, "module not implemented yet!") |
|
elif node.op == "get_attr": |
|
self._assign_all_indice(node, idx) # get param |
|
elif node.op == "output": |
|
continue |
|
else: |
|
raise NotImplementedError(node.op, "op not implemented yet!") |
|
|
|
# limit trace range |
|
self._clear_trace(idx)
|
|
|