| const RAW_NODES = [{"id": "graph_codebase_py", "label": "graph_codebase.py", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 22.4, "font": {"size": 12, "color": "#ffffff"}, "title": "graph_codebase.py", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "code", "degree": 14}, {"id": "graph_codebase_py_docstring", "label": "graphify_rebuild.py \u2014 One-shot NudR knowledge graph regeneration.Usage: py", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 10.9, "font": {"size": 0, "color": "#ffffff"}, "title": "graphify_rebuild.py \u2014 One-shot NudR knowledge graph regeneration.Usage: py", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "rationale", "degree": 1}, {"id": "graph_codebase_py_detect_files", "label": "detect_files()", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 12.6, "font": {"size": 0, "color": "#ffffff"}, "title": "detect_files()", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "code", "degree": 3}, {"id": "graph_codebase_py_detect_files_doc", "label": "Walk the project and return list of relevant files with metadata.", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 10.9, "font": {"size": 0, "color": "#ffffff"}, "title": "Walk the project and return list of relevant files with metadata.", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "rationale", "degree": 1}, {"id": "graph_codebase_py_get_changed_files", "label": "get_changed_files()", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 12.6, "font": {"size": 0, "color": "#ffffff"}, "title": "get_changed_files()", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "code", "degree": 3}, {"id": "graph_codebase_py_get_changed_files_doc", "label": "Compare against manifest to find changed files.", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 10.9, "font": {"size": 0, "color": "#ffffff"}, "title": "Compare against manifest to find changed files.", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "rationale", "degree": 1}, {"id": "graph_codebase_py_hash_file", "label": "hash_file()", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 12.6, "font": {"size": 0, "color": "#ffffff"}, "title": "hash_file()", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "code", "degree": 3}, {"id": "graph_codebase_py_hash_file_doc", "label": "SHA-256 hash for cache keying.", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 10.9, "font": {"size": 0, "color": "#ffffff"}, "title": "SHA-256 hash for cache keying.", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "rationale", "degree": 1}, {"id": "graph_codebase_py_extract_ast_file", "label": "extract_ast_file()", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 15.3, "font": {"size": 12, "color": "#ffffff"}, "title": "extract_ast_file()", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "code", "degree": 6}, {"id": "graph_codebase_py_extract_ast_file_doc", "label": "Extract AST nodes and edges from a single Python file.", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 10.9, "font": {"size": 0, "color": "#ffffff"}, "title": "Extract AST nodes and edges from a single Python file.", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "rationale", "degree": 1}, {"id": "graph_codebase_py__get_call_name", "label": "_get_call_name()", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 12.6, "font": {"size": 0, "color": "#ffffff"}, "title": "_get_call_name()", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "code", "degree": 3}, {"id": "graph_codebase_py__get_call_name_doc", "label": "Extract callable name from ast.Call node.", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 10.9, "font": {"size": 0, "color": "#ffffff"}, "title": "Extract callable name from ast.Call node.", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "rationale", "degree": 1}, {"id": "graph_codebase_py__get_name", "label": "_get_name()", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 12.6, "font": {"size": 0, "color": "#ffffff"}, "title": "_get_name()", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "code", "degree": 3}, {"id": "graph_codebase_py__get_name_doc", "label": "Extract name from various AST node types.", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 10.9, "font": {"size": 0, "color": "#ffffff"}, "title": "Extract name from various AST node types.", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "rationale", "degree": 1}, {"id": "graph_codebase_py__resolve_edges", "label": "_resolve_edges()", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 12.6, "font": {"size": 0, "color": "#ffffff"}, "title": "_resolve_edges()", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "code", "degree": 3}, {"id": "graph_codebase_py__resolve_edges_doc", "label": "Post-process edges to resolve bare names to actual node IDs.The per-file AST e", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 10.9, "font": {"size": 0, "color": "#ffffff"}, "title": "Post-process edges to resolve bare names to actual node IDs.The per-file AST e", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "rationale", "degree": 1}, {"id": "graph_codebase_py_run_ast_extraction", "label": "run_ast_extraction()", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 15.3, "font": {"size": 12, "color": "#ffffff"}, "title": "run_ast_extraction()", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "code", "degree": 6}, {"id": "graph_codebase_py_run_ast_extraction_doc", "label": "Run AST extraction on all Python files, with caching.", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 10.9, "font": {"size": 0, "color": "#ffffff"}, "title": "Run AST extraction on all Python files, with caching.", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "rationale", "degree": 1}, {"id": "graph_codebase_py_build_semantic_nodes", "label": "build_semantic_nodes()", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 12.6, "font": {"size": 0, "color": "#ffffff"}, "title": "build_semantic_nodes()", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "code", "degree": 3}, {"id": "graph_codebase_py_build_semantic_nodes_doc", "label": "Build semantic nodes from documentation files.These capture high-level architec", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 10.9, "font": {"size": 0, "color": "#ffffff"}, "title": "Build semantic nodes from documentation files.These capture high-level architec", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "rationale", "degree": 1}, {"id": "graph_codebase_py_merge_and_build", "label": "merge_and_build()", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 12.6, "font": {"size": 0, "color": "#ffffff"}, "title": "merge_and_build()", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "code", "degree": 3}, {"id": "graph_codebase_py_merge_and_build_doc", "label": "Merge AST + semantic, build NetworkX graph, cluster, analyze.", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 10.9, "font": {"size": 0, "color": "#ffffff"}, "title": "Merge AST + semantic, build NetworkX graph, cluster, analyze.", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "rationale", "degree": 1}, {"id": "graph_codebase_py_generate_outputs", "label": "generate_outputs()", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 12.6, "font": {"size": 0, "color": "#ffffff"}, "title": "generate_outputs()", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "code", "degree": 3}, {"id": "graph_codebase_py_generate_outputs_doc", "label": "Generate report, HTML, JSON, and manifest.", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 10.9, "font": {"size": 0, "color": "#ffffff"}, "title": "Generate report, HTML, JSON, and manifest.", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "rationale", "degree": 1}, {"id": "graph_codebase_py_run_pipeline", "label": "run_pipeline()", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 17.9, "font": {"size": 12, "color": "#ffffff"}, "title": "run_pipeline()", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "code", "degree": 9}, {"id": "graph_codebase_py_run_pipeline_doc", "label": "Execute the full graphify pipeline.", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 10.9, "font": {"size": 0, "color": "#ffffff"}, "title": "Execute the full graphify pipeline.", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "rationale", "degree": 1}, {"id": "graph_codebase_py_watch_mode", "label": "watch_mode()", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 12.6, "font": {"size": 0, "color": "#ffffff"}, "title": "watch_mode()", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "code", "degree": 3}, {"id": "graph_codebase_py_watch_mode_doc", "label": "Watch for file changes and rebuild automatically.", "color": {"background": "#4E79A7", "border": "#4E79A7", "highlight": {"background": "#ffffff", "border": "#4E79A7"}}, "size": 10.9, "font": {"size": 0, "color": "#ffffff"}, "title": "Watch for file changes and rebuild automatically.", "community": 10, "community_name": "Module Group 10", "source_file": "graph_codebase.py", "file_type": "rationale", "degree": 1}, {"id": "data_raw_fce_json_to_m2_py", "label": "json_to_m2.py", "color": {"background": "#76B7B2", "border": "#76B7B2", "highlight": {"background": "#ffffff", "border": "#76B7B2"}}, "size": 18.8, "font": {"size": 12, "color": "#ffffff"}, "title": "json_to_m2.py", "community": 13, "community_name": "Token Management", "source_file": "data/raw/fce/json_to_m2.py", "file_type": "code", "degree": 10}, {"id": "data_raw_fce_json_to_m2_py_main", "label": "main()", "color": {"background": "#76B7B2", "border": "#76B7B2", "highlight": {"background": "#ffffff", "border": "#76B7B2"}}, "size": 17.1, "font": {"size": 12, "color": "#ffffff"}, "title": "main()", "community": 13, "community_name": "Token Management", "source_file": "data/raw/fce/json_to_m2.py", "file_type": "code", "degree": 8}, {"id": "data_raw_fce_json_to_m2_py_parse_args", "label": "parse_args()", "color": {"background": "#76B7B2", "border": "#76B7B2", "highlight": {"background": "#ffffff", "border": "#76B7B2"}}, "size": 11.8, "font": {"size": 0, "color": "#ffffff"}, "title": "parse_args()", "community": 13, "community_name": "Token Management", "source_file": "data/raw/fce/json_to_m2.py", "file_type": "code", "degree": 2}, {"id": "data_raw_fce_json_to_m2_py_get_paras", "label": "get_paras()", "color": {"background": "#76B7B2", "border": "#76B7B2", "highlight": {"background": "#ffffff", "border": "#76B7B2"}}, "size": 11.8, "font": {"size": 0, "color": "#ffffff"}, "title": "get_paras()", "community": 13, "community_name": "Token Management", "source_file": "data/raw/fce/json_to_m2.py", "file_type": "code", "degree": 2}, {"id": "data_raw_fce_json_to_m2_py_clean_para", "label": "clean_para()", "color": {"background": "#76B7B2", "border": "#76B7B2", "highlight": {"background": "#ffffff", "border": "#76B7B2"}}, "size": 11.8, "font": {"size": 0, "color": "#ffffff"}, "title": "clean_para()", "community": 13, "community_name": "Token Management", "source_file": "data/raw/fce/json_to_m2.py", "file_type": "code", "degree": 2}, {"id": "data_raw_fce_json_to_m2_py_get_token_edits", "label": "get_token_edits()", "color": {"background": "#76B7B2", "border": "#76B7B2", "highlight": {"background": "#ffffff", "border": "#76B7B2"}}, "size": 13.5, "font": {"size": 0, "color": "#ffffff"}, "title": "get_token_edits()", "community": 13, "community_name": "Token Management", "source_file": "data/raw/fce/json_to_m2.py", "file_type": "code", "degree": 4}, {"id": "data_raw_fce_json_to_m2_py_get_all_tok_starts_and_ends", "label": "get_all_tok_starts_and_ends()", "color": {"background": "#76B7B2", "border": "#76B7B2", "highlight": {"background": "#ffffff", "border": "#76B7B2"}}, "size": 11.8, "font": {"size": 0, "color": "#ffffff"}, "title": "get_all_tok_starts_and_ends()", "community": 13, "community_name": "Token Management", "source_file": "data/raw/fce/json_to_m2.py", "file_type": "code", "degree": 2}, {"id": "data_raw_fce_json_to_m2_py_convert_char_to_tok", "label": "convert_char_to_tok()", "color": {"background": "#76B7B2", "border": "#76B7B2", "highlight": {"background": "#ffffff", "border": "#76B7B2"}}, "size": 11.8, "font": {"size": 0, "color": "#ffffff"}, "title": "convert_char_to_tok()", "community": 13, "community_name": "Token Management", "source_file": "data/raw/fce/json_to_m2.py", "file_type": "code", "degree": 2}, {"id": "data_raw_fce_json_to_m2_py_get_sents", "label": "get_sents()", "color": {"background": "#76B7B2", "border": "#76B7B2", "highlight": {"background": "#ffffff", "border": "#76B7B2"}}, "size": 12.6, "font": {"size": 0, "color": "#ffffff"}, "title": "get_sents()", "community": 13, "community_name": "Token Management", "source_file": "data/raw/fce/json_to_m2.py", "file_type": "code", "degree": 3}, {"id": "data_raw_fce_json_to_m2_py_prepare_sent_edits_output", "label": "prepare_sent_edits_output()", "color": {"background": "#76B7B2", "border": "#76B7B2", "highlight": {"background": "#ffffff", "border": "#76B7B2"}}, "size": 11.8, "font": {"size": 0, "color": "#ffffff"}, "title": "prepare_sent_edits_output()", "community": 13, "community_name": "Token Management", "source_file": "data/raw/fce/json_to_m2.py", "file_type": "code", "degree": 2}, {"id": "data_raw_fce_json_to_m2_py_noop_edit", "label": "noop_edit()", "color": {"background": "#76B7B2", "border": "#76B7B2", "highlight": {"background": "#ffffff", "border": "#76B7B2"}}, "size": 11.8, "font": {"size": 0, "color": "#ffffff"}, "title": "noop_edit()", "community": 13, "community_name": "Token Management", "source_file": "data/raw/fce/json_to_m2.py", "file_type": "code", "degree": 2}, {"id": "data_raw_jfleg_repo_EACL_exp_m2converter_util___init___py", "label": "__init__.py", "color": {"background": "#EDC948", "border": "#EDC948", "highlight": {"background": "#ffffff", "border": "#EDC948"}}, "size": 10.0, "font": {"size": 0, "color": "#ffffff"}, "title": "__init__.py", "community": 25, "community_name": "Module Group 25", "source_file": "data/raw/jfleg_repo/EACL_exp/m2converter/util/__init__.py", "file_type": "code", "degree": 0}, {"id": "data_raw_jfleg_repo_eval_gleu_py", "label": "gleu.py", "color": {"background": "#E15759", "border": "#E15759", "highlight": {"background": "#ffffff", "border": "#E15759"}}, "size": 21.5, "font": {"size": 12, "color": "#ffffff"}, "title": "gleu.py", "community": 12, "community_name": "Module Group 12", "source_file": "data/raw/jfleg_repo/eval/gleu.py", "file_type": "code", "degree": 13}, {"id": "data_raw_jfleg_repo_eval_gleu_py_docstring", "label": 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