# Copyright (c) 2025 PaddlePaddle Authors. All Rights Reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. import math import re from itertools import product from .lexer import Token, TokenType def macro(name, priority): def decorator(func): macro_registry.register_macro(name, func, priority) return func return decorator class MacroRegistry: _instance = None def __new__(cls, *args, **kwargs): if cls._instance is None: cls._instance = super().__new__(cls) return cls._instance def __init__(self): if not hasattr(self, 'macros'): self.macros = [] def register_macro(self, name, func, priority): if any(macro['name'] == name for macro in self.macros): raise ValueError(f"Macro '{name}' is already registered.") self.macros.append({'name': name, 'func': func, 'priority': priority}) self.macros.sort(key=lambda x: x['priority'], reverse=False) macro_registry = MacroRegistry() GLOBAL_ATTRIBUTE_KEYWORDS = [ "axis", 'fused_ffn', 'fused_qkv_old', 'num_heads', 'num_key_value_groups', 'permute', 'dtype', 'fused_qkv', 'src_dtype', 'dst_dtype', ] EXTRA_SUFFIX = [ "^T", ] def extract_axis_and_clean_tokens(tokens): axis = 1 for idx, tkn in enumerate(tokens): if tkn.value == "axis" and idx + 2 < len(tokens): axis = int(tokens[idx + 2].value) end_idx = idx + 3 if end_idx < len(tokens) - 1: assert tokens[end_idx].value == ",", ( f"The different attributes must split by a comma, but now the token is {tokens[end_idx].value}." ) end_idx += 1 tokens = tokens[:idx] + tokens[end_idx:] break return axis, tokens # star_macro must be called after layer_id_macro @macro(name='star_macro', priority=3) def star_macro(tokens, expression, context): STAR_TAG = "*" if STAR_TAG not in expression: return expression def _sort_keys_by_numeric_part(prefix, suffix, allkeys): pattern = re.compile(rf"{re.escape(prefix)}(\d+){re.escape(suffix)}") filtered_keys = [] for key in allkeys: match = pattern.fullmatch(key) if match: num = int(match.group(1)) filtered_keys.append((key, num)) sorted_keys = sorted(filtered_keys, key=lambda x: x[1]) return [key for key, _ in sorted_keys] pre_rarrow = True new_tokens = [] for token in tokens: if token.type == TokenType.RARROW: pre_rarrow = False if token.type == TokenType.IDENTIFIER and STAR_TAG in token.value: prefix, suffix = token.value.split(STAR_TAG) allkeys = ( context.get_all_dst_state_keys() if not pre_rarrow else context.get_all_src_state_keys() ) assert len(allkeys) != 0, ( f"No keys found with prefix '{prefix}' and suffix '{suffix}' in " f"{'destination_state_shard_info' if not pre_rarrow else 'source_state_shard_info'}, please check!" ) keys = list(_sort_keys_by_numeric_part(prefix, suffix, allkeys)) for key in keys: new_tokens.append(Token(TokenType.IDENTIFIER, key)) if key != keys[-1]: new_tokens.append(Token(TokenType.COMMA, ",")) else: new_tokens.append(token) new_expression = "".join([token.value for token in new_tokens]) return new_expression @macro(name='layer_id_offset_macro', priority=1) def layer_id_offset_macro(tokens, expression, context): LAYER_ID_OFFSET_MACRO_TAG = "$LAYER_ID_OFFSET" if LAYER_ID_OFFSET_MACRO_TAG not in expression: return expression name_with_layer_id_offset = next( ( token.value for token in tokens if token.type == TokenType.IDENTIFIER and LAYER_ID_OFFSET_MACRO_TAG in token.value ), None, ) assert name_with_layer_id_offset, ( "No $LAYER_ID_OFFSET found in NAME tokens.Please check the aoa_config." ) assert all( (t.type != TokenType.IDENTIFIER) or (LAYER_ID_OFFSET_MACRO_TAG in t.value) or (t.value in GLOBAL_ATTRIBUTE_KEYWORDS) for t in tokens ), ( f"All IDENTIFIER tokens must contain {LAYER_ID_OFFSET_MACRO_TAG} when a NAME with it is present, except for GLOBAL_ATTRIBUTE_KEYWORDS." ) match_layer_id_offset = context.get_num_hidden_layers( name_with_layer_id_offset, LAYER_ID_OFFSET_MACRO_TAG ) expanded_expressions = [] match_layer_id_offset = sorted(match_layer_id_offset) for layer_id in match_layer_id_offset: expr = "" before_rarrow = True for token in tokens: if token.type == TokenType.RARROW: before_rarrow = False if before_rarrow: cur_layer_id = layer_id else: cur_layer_id = layer_id - 1 if token.type == TokenType.IDENTIFIER: if LAYER_ID_OFFSET_MACRO_TAG in token.value: expr += token.value.replace( LAYER_ID_OFFSET_MACRO_TAG, str(cur_layer_id) ) elif token.value not in GLOBAL_ATTRIBUTE_KEYWORDS: expr += f"{token.value}.layer.{cur_layer_id}" else: expr += token.value else: expr += token.value expanded_expressions.append(expr) return expanded_expressions @macro(name='array_macro', priority=2) def array_macro(tokens, expression, context): if "[" not in expression: return expression new_tokens = [] idx = 0 while idx < len(tokens): if tokens[idx].type == TokenType.LBRACKET: name = tokens[idx - 1].value assert ( tokens[idx + 1].type == TokenType.NUMBER and tokens[idx + 2].type == TokenType.COLON and tokens[idx + 3].type == TokenType.NUMBER and tokens[idx + 4].type == TokenType.RBRACKET ), ( f"The array macro format is incorrect which is must be like: NAME[START:END], but now the format is {tokens[idx].value}{tokens[idx + 1].value}:{tokens[idx + 3].value}{tokens[idx + 4].value}." ) new_tokens.pop() start = int(tokens[idx + 1].value) end = int(tokens[idx + 3].value) for i in range(start, end): new_tokens.append( Token(TokenType.IDENTIFIER, name + "_" + str(i)) ) if i != end - 1: new_tokens.append(Token(TokenType.COMMA, ",")) idx += 5 else: new_tokens.append(tokens[idx]) idx += 1 new_expression = "".join([token.value for token in new_tokens]) return new_expression @macro(name='fused_qkv_old_macro', priority=6) def fused_qkv_old_macro(tokens, expression, context): FUSED_QKV_OLD_TAG = "fused_qkv_old" if not any(tkn.value == FUSED_QKV_OLD_TAG for tkn in tokens): return expression axis, tokens = extract_axis_and_clean_tokens(tokens) attn_head_num = None num_key_value_groups = None fused_qkv_old_pos = None rarrow_pos = None right_var_end_pos = None for idx, token in enumerate(tokens): if token.type == TokenType.IDENTIFIER: if token.value == "num_heads" and idx + 2 < len(tokens): attn_head_num = int(tokens[idx + 2].value) elif token.value == "num_key_value_groups" and idx + 2 < len( tokens ): num_key_value_groups = int(tokens[idx + 2].value) elif token.value == FUSED_QKV_OLD_TAG: fused_qkv_old_pos = idx elif token.type == TokenType.RARROW and rarrow_pos is None: rarrow_pos = idx if ( right_var_end_pos is None and token.type == TokenType.IDENTIFIER and token.value in {FUSED_QKV_OLD_TAG, "num_heads", "num_key_value_groups"} ): right_var_end_pos = idx + 1 assert attn_head_num and attn_head_num > 0, ( f"num_heads must be positive.(got: {attn_head_num})." ) assert num_key_value_groups and num_key_value_groups > 0, ( f"num_key_value_groups must be positive.(got: {num_key_value_groups})." ) assert fused_qkv_old_pos is not None, ( f"No fused_qkv_old tag found in expression. The tag must be {FUSED_QKV_OLD_TAG}." ) assert rarrow_pos is not None, "No -> found in expression." assert attn_head_num % num_key_value_groups == 0, ( f"num_heads ({attn_head_num}) must be divisible by num_key_value_groups ({num_key_value_groups})." ) results = [] num_key_value_heads = num_key_value_groups if rarrow_pos == 1: src_qkv_weight_name = tokens[0].value if fused_qkv_old_pos > 4: dst_qkv_weight_name = None else: dst_qkv_weight_name = tokens[2].value if context.aoa_config_reverse: dst_state_shard_num = context.get_src_state_shard_num( dst_qkv_weight_name ) src_state_shard_num = ( context.get_dst_state_shard_num(src_qkv_weight_name) if src_qkv_weight_name is not None else 1 ) else: src_state_shard_num = context.get_src_state_shard_num( src_qkv_weight_name ) dst_state_shard_num = ( context.get_dst_state_shard_num(dst_qkv_weight_name) if dst_qkv_weight_name is not None else 1 ) configs = [ (src_state_shard_num, src_qkv_weight_name), (dst_state_shard_num, dst_qkv_weight_name), ] head_config = [ ("Q", attn_head_num), ("K", num_key_value_heads), ("V", num_key_value_heads), ] def gen_expr(tp_degree, num_heads, tp_rank, comp): start = tp_rank * num_heads // tp_degree count = num_heads // tp_degree return ",".join( f"fused_qkv_old_tmp.{comp}_{i}" for i in range(start, start + count) ) for idx, (tp_degree, qkv_weight_name) in enumerate(configs): qkv_parts = [ gen_expr(tp_degree, n, tp_rank, c) for tp_rank in range(tp_degree) for c, n in head_config ] if idx == 0: mapping = ( f"{qkv_weight_name} -> {','.join(qkv_parts)}, axis={axis}" ) results.append(mapping) elif qkv_weight_name is not None: mapping = ( f"{','.join(qkv_parts)} -> {qkv_weight_name}, axis={axis}" ) results.append(mapping) if fused_qkv_old_pos > 4: def _generate_expr(prefix, count, target_name): elements = ",".join( f"fused_qkv_old_tmp.{prefix}_{i}" for i in range(count) ) return f"{elements} -> {target_name}, axis={axis}" q_name = tokens[2].value k_name = tokens[4].value v_name = tokens[6].value results.append(_generate_expr("Q", attn_head_num, q_name)) results.append(_generate_expr("K", num_key_value_heads, k_name)) results.append(_generate_expr("V", num_key_value_heads, v_name)) elif rarrow_pos == 5: q_name = tokens[0].value k_name = tokens[2].value v_name = tokens[4].value dst_qkv_weight_name = tokens[6].value fused_qkv_tmp_name = f"{q_name}.{k_name}.{v_name}.tmp" results.append( f"{q_name},{k_name},{v_name} -> {fused_qkv_tmp_name}, axis={axis}" ) dst_state_shard_num = context.get_dst_state_shard_num( dst_qkv_weight_name ) configs = [ (1, fused_qkv_tmp_name), (dst_state_shard_num, dst_qkv_weight_name), ] head_config = [ ("Q", attn_head_num), ("K", num_key_value_heads), ("V", num_key_value_heads), ] def gen_expr(tp_degree, num_heads, tp_rank, comp): start = tp_rank * num_heads // tp_degree count = num_heads // tp_degree return ",".join( f"fused_qkv_old_tmp.{comp}_{i}" for i in range(start, start + count) ) for idx, (tp_degree, qkv_weight_name) in enumerate(configs): qkv_parts = [ gen_expr(tp_degree, n, tp_rank, c) for tp_rank in range(tp_degree) for c, n in head_config ] if idx == 0: mapping = ( f"{qkv_weight_name} -> {','.join(qkv_parts)}, axis={axis}" ) else: mapping = ( f"{','.join(qkv_parts)} -> {qkv_weight_name}, axis={axis}" ) results.append(mapping) else: raise ValueError( f"Unsupported fused_qkv_old macro format: {expression}." ) return results @macro(name='fused_ffn_macro', priority=6) def fused_ffn_macro(tokens, expression, context): FUSED_FFN_TAG = "fused_ffn" if not any(tkn.value == FUSED_FFN_TAG for tkn in tokens): return expression axis, tokens = extract_axis_and_clean_tokens(tokens) rarrow_pos = None fused_ffn_pos = None for idx, token in enumerate(tokens): if token.type == TokenType.RARROW and rarrow_pos is None: rarrow_pos = idx elif ( token.type == TokenType.IDENTIFIER and token.value == FUSED_FFN_TAG ): fused_ffn_pos = idx assert rarrow_pos is not None, "No -> found in expression." assert fused_ffn_pos is not None, ( f"No fused_ffn tag found in expression. The tag must be {FUSED_FFN_TAG}." ) results = [] if rarrow_pos == 1: src_ffn_weight_name = tokens[0].value if fused_ffn_pos == 4: dst_ffn_weight_name = tokens[2].value else: dst_ffn_weight_name = None if context.aoa_config_reverse: dst_state_shard_num = context.get_src_state_shard_num( dst_ffn_weight_name ) src_state_shard_num = ( context.get_dst_state_shard_num(src_ffn_weight_name) if src_ffn_weight_name is not None else 1 ) else: src_state_shard_num = context.get_src_state_shard_num( src_ffn_weight_name ) dst_state_shard_num = ( context.get_dst_state_shard_num(dst_ffn_weight_name) if dst_ffn_weight_name is not None else 1 ) splited_num = math.lcm(src_state_shard_num, dst_state_shard_num) configs = [ (src_state_shard_num, src_ffn_weight_name), (dst_state_shard_num, dst_ffn_weight_name), ] split_config = [("GATE", splited_num), ("UP", splited_num)] def gen_expr(tp_degree, splited_num, tp_rank, comp): return ",".join( f"fused_ffn_tmp.{comp}_{tp_rank * splited_num // tp_degree + idx}" for idx in range(splited_num // tp_degree) ) for idx, (tp_degree, ffn_weight_name) in enumerate(configs): ffn_parts = [ gen_expr(tp_degree, n, tp_rank, c) for tp_rank in range(tp_degree) for c, n in split_config ] if idx == 0: results.append( f"{ffn_weight_name} -> {','.join(ffn_parts)}, axis={axis}" ) elif ffn_weight_name is not None: results.append( f"{','.join(ffn_parts)} -> {ffn_weight_name}, axis={axis}" ) if fused_ffn_pos > 4: def _generate_expr(prefix, count, target_name): elements = ",".join( f"fused_ffn_tmp.{prefix}_{i}" for i in range(count) ) return f"{elements} -> {target_name}, axis={axis}" gate_name = tokens[2].value up_name = tokens[4].value results.append(_generate_expr("GATE", splited_num, gate_name)) results.append(_generate_expr("UP", splited_num, up_name)) elif rarrow_pos == 3: gate_name = tokens[0].value up_name = tokens[2].value dst_ffn_weight_name = tokens[4].value fused_gate_up_tmp_name = f"{gate_name}.{up_name}.tmp" results.append( f"{gate_name},{up_name} -> {fused_gate_up_tmp_name}, axis={axis}" ) dst_state_shard_num = context.get_dst_state_shard_num( dst_ffn_weight_name ) configs = [ (1, fused_gate_up_tmp_name), (dst_state_shard_num, dst_ffn_weight_name), ] split_config = [ ("GATE", dst_state_shard_num), ("UP", dst_state_shard_num), ] def gen_expr(tp_degree, splited_num, tp_rank, comp): return ",".join( f"fused_ffn_tmp.{comp}_{tp_rank * splited_num // tp_degree + idx}" for idx in range(splited_num // tp_degree) ) for idx, (tp_degree, ffn_weight_name) in enumerate(configs): ffn_parts = [ gen_expr(tp_degree, n, tp_rank, c) for tp_rank in range(tp_degree) for c, n in split_config ] if idx == 0: results.append( f"{ffn_weight_name} -> {','.join(ffn_parts)}, axis={axis}" ) else: results.append( f"{','.join(ffn_parts)} -> {ffn_weight_name}, axis={axis}" ) else: raise ValueError(f"Unsupported fused_ffn macro format: {expression}.") return results @macro(name='transpose_macro', priority=5) def transpose_macro(tokens, expression, context): TRANSPOSE_TAG = "^T" if TRANSPOSE_TAG not in expression: return expression transpose_vars = set() new_expression = "" rarrow_pos = None for idx, token in enumerate(tokens): if token.type == TokenType.RARROW: rarrow_pos = idx break assert rarrow_pos is not None, "No -> found in expression." for token in tokens[rarrow_pos + 1 :]: if token.type == TokenType.IDENTIFIER and token.value.endswith( TRANSPOSE_TAG ): raise ValueError( "Cannot assign to transpose (e.g., 'A -> B^T').\n" "B^T is not a real variable, just a view.\n" "Assign first: A -> B\n" "Then transpose: B^T -> B" ) for token in tokens: if token.type == TokenType.IDENTIFIER and token.value.endswith( TRANSPOSE_TAG ): var_name = token.value[: -len(TRANSPOSE_TAG)] transpose_vars.add(var_name) new_expression += var_name + "_transpose_tmp" else: new_expression += token.value results = [ f'{var} -> {var}_transpose_tmp, permute = "[]"' for var in transpose_vars ] results.append(new_expression) return results @macro(name='fused_qkv_macro', priority=6) def fused_qkv_macro(tokens, expression, context): FUSED_QKV_TAG = "fused_qkv" if not any(tkn.value == FUSED_QKV_TAG for tkn in tokens): return expression axis, tokens = extract_axis_and_clean_tokens(tokens) attn_head_num = num_heads = None num_key_value_groups = None fused_qkv_pos = None rarrow_pos = None for idx, token in enumerate(tokens): if token.type == TokenType.IDENTIFIER: if token.value == "num_heads" and idx + 2 < len(tokens): attn_head_num = int(tokens[idx + 2].value) elif token.value == "num_key_value_groups" and idx + 2 < len( tokens ): num_key_value_groups = int(tokens[idx + 2].value) elif token.value == FUSED_QKV_TAG: fused_qkv_pos = idx elif token.type == TokenType.RARROW and rarrow_pos is None: rarrow_pos = idx assert attn_head_num and attn_head_num > 0, ( f"num_heads must be positive (got: {attn_head_num})" ) assert num_key_value_groups and num_key_value_groups > 0, ( f"num_key_value_groups must be positive (got: {num_key_value_groups})" ) assert fused_qkv_pos is not None, ( f"No fused_qkv tag found in expression. The tag must be {FUSED_QKV_TAG}." ) assert rarrow_pos is not None, "No -> found in expression." assert rarrow_pos == 1 or rarrow_pos == 5, ( "Only support q,k,v -> fused_qkv or fused_qkv -> q,k,v patterns" ) assert attn_head_num % num_key_value_groups == 0, ( f"num_heads ({attn_head_num}) must be divisible by num_key_value_groups ({num_key_value_groups})." ) num_key_value_heads = attn_head_num // num_key_value_groups def make_names(base, n): return [f"{base}{i}" for i in range(n)] results = [] if rarrow_pos == 1: fused_qkv_var = tokens[0].value q_var = tokens[rarrow_pos + 1].value k_var = tokens[rarrow_pos + 3].value v_var = tokens[rarrow_pos + 5].value q_names = make_names(q_var, attn_head_num) k_names = make_names(k_var, num_key_value_groups) v_names = make_names(v_var, num_key_value_groups) fused_qkv_order = [] for g in range(num_key_value_groups): fused_qkv_order.extend( q_names[g * num_key_value_heads : (g + 1) * num_key_value_heads] ) fused_qkv_order.append(k_names[g]) fused_qkv_order.append(v_names[g]) results.append( f"{fused_qkv_var} -> {','.join(fused_qkv_order)}, axis={axis}" ) results.append(f"{','.join(q_names)} -> {q_var}, axis={axis}") results.append(f"{','.join(k_names)} -> {k_var}, axis={axis}") results.append(f"{','.join(v_names)} -> {v_var}, axis={axis}") return results elif rarrow_pos == 5: q_var = tokens[0].value k_var = tokens[2].value v_var = tokens[4].value fused_qkv_var = tokens[rarrow_pos + 1].value q_names = make_names(q_var, attn_head_num) k_names = make_names(k_var, num_key_value_groups) v_names = make_names(v_var, num_key_value_groups) results.append(f"{q_var} -> {','.join(q_names)}, axis={axis}") results.append(f"{k_var} -> {','.join(k_names)}, axis={axis}") results.append(f"{v_var} -> {','.join(v_names)}, axis={axis}") fused_qkv_order = [] for g in range(num_key_value_groups): fused_qkv_order.extend( q_names[g * num_key_value_heads : (g + 1) * num_key_value_heads] ) fused_qkv_order.append(k_names[g]) fused_qkv_order.append(v_names[g]) results.append( f"{','.join(fused_qkv_order)} -> {fused_qkv_var}, axis={axis}" ) return results else: return expression class IDMatcher: def __init__( self, source_keys: list[str], extra_suffixes: list[str], allowed_placeholders: list[str], ): self.source_keys = set(source_keys) self.allowed_placeholders = allowed_placeholders # Dynamically build regex pattern from allowed placeholders placeholder_pattern = '|'.join( re.escape(ph) for ph in self.allowed_placeholders ) self._placeholder_pattern = re.compile(f'({placeholder_pattern})') self.extra_suffixes = sorted(extra_suffixes, key=lambda x: (-len(x), x)) def _remove_extra_suffixes(self, key: str) -> str: for sfx in self.extra_suffixes: if key.endswith(sfx): key = key[: -len(sfx)] break return key def _pattern_to_regex(self, pattern: str) -> tuple[re.Pattern, list[str]]: placeholders = sorted(set(self._placeholder_pattern.findall(pattern))) regex_str = re.escape(pattern) for ph in placeholders: group_name = ph[1:] regex_str = regex_str.replace( re.escape(ph), f'(?P<{group_name}>\\d+)' ) return re.compile(f'^{regex_str}$'), [ph[1:] for ph in placeholders] def _substitute_ids(self, pattern: str, id_dict: dict[str, int]) -> str: key = pattern for ph, value in id_dict.items(): key = key.replace(f'${ph}', str(value)) return key def find_matches(self, pattern: str) -> dict[str, list[int]]: pattern = self._remove_extra_suffixes(pattern) regex, ph_names = self._pattern_to_regex(pattern) id_values = {ph: set() for ph in ph_names} for key in self.source_keys: match = regex.match(key) if match: for k, v in match.groupdict().items(): id_values[k].add(int(v)) return {k: sorted(vs) for k, vs in id_values.items()} # Global registry for allowed_placeholders _REGISTERED_PLACEHOLDERS = ['$EXPERT_ID', '$LAYER_ID'] # TODO: need to adapt the scene of temp_layers.\$LAYER_ID.weight -> dst_layers.\$LAYER_ID.weight @macro(name='id_macro', priority=1) def id(tokens, expression, context): allowed_placeholders = _REGISTERED_PLACEHOLDERS has_allowed_placeholder = any( ph in expression for ph in allowed_placeholders ) if not has_allowed_placeholder: return expression if not context.aoa_config_reverse: name_with_id = next( ( token.value for token in tokens if token.type == TokenType.IDENTIFIER and any(ph in token.value for ph in allowed_placeholders) ), None, ) else: flag_right_var = False for token in tokens: if token.type == TokenType.RARROW: flag_right_var = True if token.type == TokenType.IDENTIFIER and any( ph in token.value for ph in allowed_placeholders ): if flag_right_var: name_with_id = token.value break assert name_with_id is not None, "No $ID found in NAME tokens" all_src_state_keys = context.get_all_src_state_keys() id_matcher = IDMatcher( all_src_state_keys, EXTRA_SUFFIX, allowed_placeholders ) valid_id_combos = id_matcher.find_matches(name_with_id) valid_keys = list(valid_id_combos.keys()) IDENTIFIER_tokens = [] for token in tokens: if token.value in GLOBAL_ATTRIBUTE_KEYWORDS: break if token.type == TokenType.IDENTIFIER: IDENTIFIER_tokens.append(token) for token in IDENTIFIER_tokens: assert all(k in token.value for k in valid_keys), ( f"The token: {token.value} must contain all of the following keys: {valid_keys}.When use the id macro all IDENTIFIER tokens must contain the same ID placeholders." ) def dict_cartesian_tuples(d: dict[str, list[int]]): keys = list(d.keys()) value_lists = [d[k] for k in keys] for prod in product(*value_lists): yield tuple(zip(keys, prod)) results = [] id_combs = dict_cartesian_tuples(valid_id_combos) id_combs = sorted(id_combs) for id_comb in id_combs: cur_statement = "" for tkn in tokens: tkn_val = tkn.value if tkn.type == TokenType.IDENTIFIER and any( ph in tkn.value for ph in allowed_placeholders ): for id_tag, id_val in id_comb: tkn_val = tkn_val.replace("$" + id_tag, str(id_val)) cur_statement += tkn_val else: cur_statement += tkn_val results.append(cur_statement) return results # This macro processes variable mappings between source and destination states, # but it requires that all expansion macros (layer_id_macro, expert_id_macro, # star_macro, array_macro, etc.) have already been executed to expand template # variables into concrete variable names. @macro(name='get_var_mapping_chain_macro', priority=4) def get_var_mapping_chain_macro(tokens, expression, context): flag_left_var = True left_var_list = [] right_var_list = [] for tkn in tokens: if tkn.value in GLOBAL_ATTRIBUTE_KEYWORDS: break if tkn.type == TokenType.RARROW: flag_left_var = False if tkn.type == TokenType.IDENTIFIER: extra_suffix_removed_value = tkn.value for sfx in EXTRA_SUFFIX: extra_suffix_removed_value = ( extra_suffix_removed_value.removesuffix(sfx) ) if flag_left_var: left_var_list.append(extra_suffix_removed_value) else: right_var_list.append(extra_suffix_removed_value) assert len(left_var_list) == 1 or len(right_var_list) == 1, ( "Left or right variable must have the only one element,the aoa_statements not support 'multiple var -> multiple var' pattern." ) if len(left_var_list) == 1: context.left_var_to_right_var_mapping[left_var_list[0]] = right_var_list for right_var in right_var_list: context.right_var_from_left_var_mapping[right_var] = left_var_list else: context.right_var_from_left_var_mapping[right_var_list[0]] = ( left_var_list ) for left_var in left_var_list: context.left_var_to_right_var_mapping[left_var] = right_var_list return expression