import math from copy import deepcopy from typing import List, Set, Tuple from torch.fx import Graph, Node from colossalai.fx.profiler import calculate_fwd_in, calculate_fwd_tmp from .ckpt_solver_base import CheckpointSolverBase __all__ = ['CheckpointSolverChen'] class CheckpointSolverChen(CheckpointSolverBase): def __init__(self, graph: Graph, cnode: List[str] = None, num_grids: int = 6): """ This is the simple implementation of Algorithm 3 in https://arxiv.org/abs/1604.06174. Note that this algorithm targets at memory optimization only, using techniques in appendix A. Usage: Assume that we have a `GraphModule`, and we already applied the `MetaInfoProp` to the graph to retrieve all information needed, then we could use the following code to find a solution using `CheckpointSolverChen`: >>> solver = CheckpointSolverChen(gm.graph) >>> chen_graph = solver.solve() >>> gm.graph = chen_graph # set the graph to a new graph Args: graph (Graph): The computing graph to be optimized. cnode (List[str], optional): Common node List, should be the subset of input. Defaults to None. num_grids (int, optional): Number of grids to search for b. Defaults to 6. """ super().__init__(graph, 0, 0, True, cnode) self.num_grids = num_grids def solve(self) -> Graph: """Solve the checkpointing problem using Algorithm 3. Returns: graph (Graph): The optimized graph, should be a copy of the original graph. """ checkpointable_op = ['call_module', 'call_method', 'call_function', 'get_attr'] ckpt = self.grid_search() for i, seg in enumerate(ckpt): for idx in range(*seg): nodes = self.node_list[idx] for n in nodes: if n.op in checkpointable_op: n.meta['activation_checkpoint'] = i return deepcopy(self.graph) def run_chen_greedy(self, b: int = 0) -> Tuple[Set, int]: """ This is the simple implementation of Algorithm 3 in https://arxiv.org/abs/1604.06174. """ ckpt_intv = [] temp = 0 x = 0 y = 0 prev_idx = 2 for idx, nodes in enumerate(self.node_list): for n in nodes: n: Node temp += calculate_fwd_in(n) + calculate_fwd_tmp(n) y = max(y, temp) if temp > b and idx > prev_idx: x += calculate_fwd_in(nodes[0]) temp = 0 ckpt_intv.append((prev_idx, idx + 1)) prev_idx = idx + 1 return ckpt_intv, math.floor(math.sqrt(x * y)) def grid_search(self) -> Set: """ Search ckpt strategy with b = 0, then run the allocation algorithm again with b = √xy. Grid search over [√2/2 b, √2 b] for ckpt_opt over num_grids as in appendix A. """ _, b_approx = self.run_chen_greedy(0) b_min, b_max = math.floor(b_approx / math.sqrt(2)), math.ceil(b_approx * math.sqrt(2)) b_opt = math.inf for b in range(b_min, b_max, (b_max - b_min) // self.num_grids): ckpt_intv, b_approx = self.run_chen_greedy(b) if b_approx < b_opt: b_opt = b_approx ckpt_opt = ckpt_intv return ckpt_opt