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import copy |
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import logging |
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import re |
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from typing import Dict, List |
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import torch |
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from tabulate import tabulate |
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def convert_basic_c2_names(original_keys): |
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""" |
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Apply some basic name conversion to names in C2 weights. |
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It only deals with typical backbone models. |
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Args: |
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original_keys (list[str]): |
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Returns: |
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list[str]: The same number of strings matching those in original_keys. |
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""" |
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layer_keys = copy.deepcopy(original_keys) |
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layer_keys = [ |
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{"pred_b": "linear_b", "pred_w": "linear_w"}.get(k, k) for k in layer_keys |
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] |
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layer_keys = [k.replace("_", ".") for k in layer_keys] |
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layer_keys = [re.sub("\\.b$", ".bias", k) for k in layer_keys] |
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layer_keys = [re.sub("\\.w$", ".weight", k) for k in layer_keys] |
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layer_keys = [re.sub("bn\\.s$", "norm.weight", k) for k in layer_keys] |
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layer_keys = [re.sub("bn\\.bias$", "norm.bias", k) for k in layer_keys] |
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layer_keys = [re.sub("bn\\.rm", "norm.running_mean", k) for k in layer_keys] |
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layer_keys = [re.sub("bn\\.running.mean$", "norm.running_mean", k) for k in layer_keys] |
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layer_keys = [re.sub("bn\\.riv$", "norm.running_var", k) for k in layer_keys] |
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layer_keys = [re.sub("bn\\.running.var$", "norm.running_var", k) for k in layer_keys] |
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layer_keys = [re.sub("bn\\.gamma$", "norm.weight", k) for k in layer_keys] |
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layer_keys = [re.sub("bn\\.beta$", "norm.bias", k) for k in layer_keys] |
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layer_keys = [re.sub("gn\\.s$", "norm.weight", k) for k in layer_keys] |
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layer_keys = [re.sub("gn\\.bias$", "norm.bias", k) for k in layer_keys] |
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layer_keys = [re.sub("^res\\.conv1\\.norm\\.", "conv1.norm.", k) for k in layer_keys] |
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layer_keys = [re.sub("^conv1\\.", "stem.conv1.", k) for k in layer_keys] |
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layer_keys = [k.replace(".branch1.", ".shortcut.") for k in layer_keys] |
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layer_keys = [k.replace(".branch2a.", ".conv1.") for k in layer_keys] |
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layer_keys = [k.replace(".branch2b.", ".conv2.") for k in layer_keys] |
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layer_keys = [k.replace(".branch2c.", ".conv3.") for k in layer_keys] |
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layer_keys = [re.sub("^body.conv.fcn", "body_conv_fcn", k) for k in layer_keys] |
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layer_keys = [k.replace("AnnIndex.lowres", "ann_index_lowres") for k in layer_keys] |
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layer_keys = [k.replace("Index.UV.lowres", "index_uv_lowres") for k in layer_keys] |
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layer_keys = [k.replace("U.lowres", "u_lowres") for k in layer_keys] |
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layer_keys = [k.replace("V.lowres", "v_lowres") for k in layer_keys] |
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return layer_keys |
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def convert_c2_detectron_names(weights): |
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""" |
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Map Caffe2 Detectron weight names to Detectron2 names. |
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Args: |
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weights (dict): name -> tensor |
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Returns: |
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dict: detectron2 names -> tensor |
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dict: detectron2 names -> C2 names |
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""" |
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logger = logging.getLogger(__name__) |
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logger.info("Renaming Caffe2 weights ......") |
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original_keys = sorted(weights.keys()) |
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layer_keys = copy.deepcopy(original_keys) |
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layer_keys = convert_basic_c2_names(layer_keys) |
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layer_keys = [ |
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k.replace("conv.rpn.fpn2", "proposal_generator.rpn_head.conv") for k in layer_keys |
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] |
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layer_keys = [k.replace("conv.rpn", "proposal_generator.rpn_head.conv") for k in layer_keys] |
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layer_keys = [ |
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k.replace("rpn.bbox.pred.fpn2", "proposal_generator.rpn_head.anchor_deltas") |
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for k in layer_keys |
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] |
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layer_keys = [ |
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k.replace("rpn.cls.logits.fpn2", "proposal_generator.rpn_head.objectness_logits") |
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for k in layer_keys |
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] |
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layer_keys = [ |
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k.replace("rpn.bbox.pred", "proposal_generator.rpn_head.anchor_deltas") for k in layer_keys |
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] |
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layer_keys = [ |
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k.replace("rpn.cls.logits", "proposal_generator.rpn_head.objectness_logits") |
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for k in layer_keys |
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] |
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layer_keys = [re.sub("^bbox\\.pred", "bbox_pred", k) for k in layer_keys] |
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layer_keys = [re.sub("^cls\\.score", "cls_score", k) for k in layer_keys] |
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layer_keys = [re.sub("^fc6\\.", "box_head.fc1.", k) for k in layer_keys] |
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layer_keys = [re.sub("^fc7\\.", "box_head.fc2.", k) for k in layer_keys] |
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layer_keys = [re.sub("^head\\.conv", "box_head.conv", k) for k in layer_keys] |
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def fpn_map(name): |
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""" |
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Look for keys with the following patterns: |
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1) Starts with "fpn.inner." |
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Example: "fpn.inner.res2.2.sum.lateral.weight" |
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Meaning: These are lateral pathway convolutions |
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2) Starts with "fpn.res" |
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Example: "fpn.res2.2.sum.weight" |
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Meaning: These are FPN output convolutions |
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""" |
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splits = name.split(".") |
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norm = ".norm" if "norm" in splits else "" |
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if name.startswith("fpn.inner."): |
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stage = int(splits[2][len("res") :]) |
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return "fpn_lateral{}{}.{}".format(stage, norm, splits[-1]) |
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elif name.startswith("fpn.res"): |
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stage = int(splits[1][len("res") :]) |
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return "fpn_output{}{}.{}".format(stage, norm, splits[-1]) |
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return name |
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layer_keys = [fpn_map(k) for k in layer_keys] |
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layer_keys = [k.replace(".[mask].fcn", "mask_head.mask_fcn") for k in layer_keys] |
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layer_keys = [re.sub("^\\.mask\\.fcn", "mask_head.mask_fcn", k) for k in layer_keys] |
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layer_keys = [k.replace("mask.fcn.logits", "mask_head.predictor") for k in layer_keys] |
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layer_keys = [k.replace("conv5.mask", "mask_head.deconv") for k in layer_keys] |
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layer_keys = [k.replace("conv.fcn", "roi_heads.keypoint_head.conv_fcn") for k in layer_keys] |
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layer_keys = [ |
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k.replace("kps.score.lowres", "roi_heads.keypoint_head.score_lowres") for k in layer_keys |
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] |
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layer_keys = [k.replace("kps.score.", "roi_heads.keypoint_head.score.") for k in layer_keys] |
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assert len(set(layer_keys)) == len(layer_keys) |
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assert len(original_keys) == len(layer_keys) |
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new_weights = {} |
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new_keys_to_original_keys = {} |
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for orig, renamed in zip(original_keys, layer_keys): |
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new_keys_to_original_keys[renamed] = orig |
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if renamed.startswith("bbox_pred.") or renamed.startswith("mask_head.predictor."): |
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new_start_idx = 4 if renamed.startswith("bbox_pred.") else 1 |
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new_weights[renamed] = weights[orig][new_start_idx:] |
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logger.info( |
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"Remove prediction weight for background class in {}. The shape changes from " |
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"{} to {}.".format( |
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renamed, tuple(weights[orig].shape), tuple(new_weights[renamed].shape) |
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) |
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) |
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elif renamed.startswith("cls_score."): |
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logger.info( |
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"Move classification weights for background class in {} from index 0 to " |
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"index {}.".format(renamed, weights[orig].shape[0] - 1) |
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) |
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new_weights[renamed] = torch.cat([weights[orig][1:], weights[orig][:1]]) |
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else: |
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new_weights[renamed] = weights[orig] |
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return new_weights, new_keys_to_original_keys |
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def align_and_update_state_dicts(model_state_dict, ckpt_state_dict, c2_conversion=True): |
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""" |
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Match names between the two state-dict, and returns a new chkpt_state_dict with names |
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converted to match model_state_dict with heuristics. The returned dict can be later |
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loaded with fvcore checkpointer. |
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If `c2_conversion==True`, `ckpt_state_dict` is assumed to be a Caffe2 |
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model and will be renamed at first. |
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Strategy: suppose that the models that we will create will have prefixes appended |
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to each of its keys, for example due to an extra level of nesting that the original |
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pre-trained weights from ImageNet won't contain. For example, model.state_dict() |
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might return backbone[0].body.res2.conv1.weight, while the pre-trained model contains |
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res2.conv1.weight. We thus want to match both parameters together. |
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For that, we look for each model weight, look among all loaded keys if there is one |
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that is a suffix of the current weight name, and use it if that's the case. |
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If multiple matches exist, take the one with longest size |
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of the corresponding name. For example, for the same model as before, the pretrained |
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weight file can contain both res2.conv1.weight, as well as conv1.weight. In this case, |
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we want to match backbone[0].body.conv1.weight to conv1.weight, and |
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backbone[0].body.res2.conv1.weight to res2.conv1.weight. |
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""" |
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model_keys = sorted(model_state_dict.keys()) |
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if c2_conversion: |
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ckpt_state_dict, original_keys = convert_c2_detectron_names(ckpt_state_dict) |
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else: |
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original_keys = {x: x for x in ckpt_state_dict.keys()} |
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ckpt_keys = sorted(ckpt_state_dict.keys()) |
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def match(a, b): |
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return a == b or a.endswith("." + b) |
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match_matrix = [len(j) if match(i, j) else 0 for i in model_keys for j in ckpt_keys] |
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match_matrix = torch.as_tensor(match_matrix).view(len(model_keys), len(ckpt_keys)) |
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max_match_size, idxs = match_matrix.max(1) |
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idxs[max_match_size == 0] = -1 |
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logger = logging.getLogger(__name__) |
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matched_keys = {} |
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result_state_dict = {} |
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for idx_model, idx_ckpt in enumerate(idxs.tolist()): |
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if idx_ckpt == -1: |
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continue |
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key_model = model_keys[idx_model] |
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key_ckpt = ckpt_keys[idx_ckpt] |
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value_ckpt = ckpt_state_dict[key_ckpt] |
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shape_in_model = model_state_dict[key_model].shape |
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if shape_in_model != value_ckpt.shape: |
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logger.warning( |
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"Shape of {} in checkpoint is {}, while shape of {} in model is {}.".format( |
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key_ckpt, value_ckpt.shape, key_model, shape_in_model |
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) |
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) |
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logger.warning( |
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"{} will not be loaded. Please double check and see if this is desired.".format( |
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key_ckpt |
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) |
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) |
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continue |
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assert key_model not in result_state_dict |
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result_state_dict[key_model] = value_ckpt |
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if key_ckpt in matched_keys: |
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logger.error( |
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"Ambiguity found for {} in checkpoint!" |
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"It matches at least two keys in the model ({} and {}).".format( |
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key_ckpt, key_model, matched_keys[key_ckpt] |
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) |
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) |
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raise ValueError("Cannot match one checkpoint key to multiple keys in the model.") |
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matched_keys[key_ckpt] = key_model |
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matched_model_keys = sorted(matched_keys.values()) |
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if len(matched_model_keys) == 0: |
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logger.warning("No weights in checkpoint matched with model.") |
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return ckpt_state_dict |
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common_prefix = _longest_common_prefix(matched_model_keys) |
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rev_matched_keys = {v: k for k, v in matched_keys.items()} |
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original_keys = {k: original_keys[rev_matched_keys[k]] for k in matched_model_keys} |
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model_key_groups = _group_keys_by_module(matched_model_keys, original_keys) |
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table = [] |
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memo = set() |
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for key_model in matched_model_keys: |
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if key_model in memo: |
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continue |
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if key_model in model_key_groups: |
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group = model_key_groups[key_model] |
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memo |= set(group) |
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shapes = [tuple(model_state_dict[k].shape) for k in group] |
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table.append( |
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( |
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_longest_common_prefix([k[len(common_prefix) :] for k in group]) + "*", |
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_group_str([original_keys[k] for k in group]), |
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" ".join([str(x).replace(" ", "") for x in shapes]), |
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) |
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) |
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else: |
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key_checkpoint = original_keys[key_model] |
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shape = str(tuple(model_state_dict[key_model].shape)) |
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table.append((key_model[len(common_prefix) :], key_checkpoint, shape)) |
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submodule_str = common_prefix[:-1] if common_prefix else "model" |
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logger.info( |
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f"Following weights matched with submodule {submodule_str} - Total num: {len(table)}" |
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) |
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unmatched_ckpt_keys = [k for k in ckpt_keys if k not in set(matched_keys.keys())] |
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for k in unmatched_ckpt_keys: |
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result_state_dict[k] = ckpt_state_dict[k] |
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return result_state_dict |
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def _group_keys_by_module(keys: List[str], original_names: Dict[str, str]): |
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""" |
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Params in the same submodule are grouped together. |
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Args: |
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keys: names of all parameters |
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original_names: mapping from parameter name to their name in the checkpoint |
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Returns: |
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dict[name -> all other names in the same group] |
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""" |
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def _submodule_name(key): |
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pos = key.rfind(".") |
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if pos < 0: |
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return None |
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prefix = key[: pos + 1] |
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return prefix |
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all_submodules = [_submodule_name(k) for k in keys] |
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all_submodules = [x for x in all_submodules if x] |
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all_submodules = sorted(all_submodules, key=len) |
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ret = {} |
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for prefix in all_submodules: |
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group = [k for k in keys if k.startswith(prefix)] |
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if len(group) <= 1: |
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continue |
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original_name_lcp = _longest_common_prefix_str([original_names[k] for k in group]) |
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if len(original_name_lcp) == 0: |
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continue |
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for k in group: |
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if k in ret: |
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continue |
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ret[k] = group |
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return ret |
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def _longest_common_prefix(names: List[str]) -> str: |
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""" |
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["abc.zfg", "abc.zef"] -> "abc." |
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""" |
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names = [n.split(".") for n in names] |
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m1, m2 = min(names), max(names) |
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ret = [a for a, b in zip(m1, m2) if a == b] |
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ret = ".".join(ret) + "." if len(ret) else "" |
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return ret |
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def _longest_common_prefix_str(names: List[str]) -> str: |
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m1, m2 = min(names), max(names) |
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lcp = [] |
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for a, b in zip(m1, m2): |
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if a == b: |
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lcp.append(a) |
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else: |
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break |
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lcp = "".join(lcp) |
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return lcp |
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def _group_str(names: List[str]) -> str: |
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""" |
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Turn "common1", "common2", "common3" into "common{1,2,3}" |
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""" |
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lcp = _longest_common_prefix_str(names) |
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rest = [x[len(lcp) :] for x in names] |
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rest = "{" + ",".join(rest) + "}" |
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ret = lcp + rest |
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ret = ret.replace("bn_{beta,running_mean,running_var,gamma}", "bn_*") |
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ret = ret.replace("bn_beta,bn_running_mean,bn_running_var,bn_gamma", "bn_*") |
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return ret |
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