{ "globals": { "sys.conversation_turns": 0, "sys.date": "", "sys.files": [], "sys.history": [], "sys.query": "", "sys.user_id": "" }, "graph": { "edges": [ { "data": { "isHovered": false }, "id": "xy-edge__Filestart-Parser:HipSignsRhymeend", "source": "File", "sourceHandle": "start", "target": "Parser:HipSignsRhyme", "targetHandle": "end" }, { "data": { "isHovered": false }, "id": "xy-edge__Parser:HipSignsRhymestart-TitleChunker:FlatMiceFixend", "source": "Parser:HipSignsRhyme", "sourceHandle": "start", "target": "TitleChunker:FlatMiceFix", "targetHandle": "end" }, { "data": { "isHovered": false }, "id": "xy-edge__TitleChunker:FlatMiceFixstart-Extractor:ThreeDrinksActend", "markerEnd": "logo", "source": "TitleChunker:FlatMiceFix", "sourceHandle": "start", "target": "Extractor:ThreeDrinksAct", "targetHandle": "end", "type": "buttonEdge", "zIndex": 1001 }, { "data": { "isHovered": false }, "id": "xy-edge__Extractor:ThreeDrinksActstart-Extractor:ItchyFoxesStriveend", "source": "Extractor:ThreeDrinksAct", "sourceHandle": "start", "target": "Extractor:ItchyFoxesStrive", "targetHandle": "end" }, { "data": { "isHovered": false }, "id": "xy-edge__Extractor:ItchyFoxesStrivestart-Extractor:BusyClocksRushend", "source": "Extractor:ItchyFoxesStrive", "sourceHandle": "start", "target": "Extractor:BusyClocksRush", "targetHandle": "end" }, { "data": { "isHovered": false }, "id": "xy-edge__Extractor:BusyClocksRushstart-Extractor:CuteSignsCutend", "source": "Extractor:BusyClocksRush", "sourceHandle": "start", "target": "Extractor:CuteSignsCut", "targetHandle": "end" }, { "data": { "isHovered": false }, "id": "xy-edge__Extractor:CuteSignsCutstart-Tokenizer:KindHandsWinend", "markerEnd": "logo", "source": "Extractor:CuteSignsCut", "sourceHandle": "start", "target": "Tokenizer:KindHandsWin", "targetHandle": "end", "type": "buttonEdge", "zIndex": 1001 } ], "nodes": [ { "data": { "label": "File", "name": "File" }, "dragging": false, "id": "File", "measured": { "height": 49, "width": 200 }, "position": { "x": 239.52494800353588, "y": 92.44515504032671 }, "selected": false, "sourcePosition": "left", "targetPosition": "right", "type": "beginNode" }, { "data": { "form": { "outputs": { "html": { "type": "string", "value": "" }, "json": { "type": "Array", "value": [] }, "markdown": { "type": "string", "value": "" }, "text": { "type": "string", "value": "" } }, "setups": [ { "fileFormat": "pdf", "flatten_media_to_text": true, "output_format": "json", "parse_method": "DeepDOC" }, { "fileFormat": "spreadsheet", "flatten_media_to_text": true, "output_format": "html", "parse_method": "DeepDOC" }, { "fileFormat": "image", "output_format": "text", "parse_method": "ocr" }, { "fields": [ "from", "to", "cc", "bcc", "date", "subject", "body", "attachments" ], "fileFormat": "email", "output_format": "text" }, { "fileFormat": "markdown", "flatten_media_to_text": true, "output_format": "json" }, { "fileFormat": "text&code", "output_format": "json" }, { "fileFormat": "html", "output_format": "json" }, { "fileFormat": "doc", "output_format": "json", "vlm": {} }, { "fileFormat": "docx", "flatten_media_to_text": true, "output_format": "json" }, { "fileFormat": "slides", "output_format": "json", "parse_method": "DeepDOC" } ] }, "label": "Parser", "name": "Parser_0" }, "dragging": false, "id": "Parser:HipSignsRhyme", "measured": { "height": 197, "width": 200 }, "position": { "x": 252.18327231534056, "y": 157.25954787377458 }, "selected": true, "sourcePosition": "right", "targetPosition": "left", "type": "parserNode" }, { "data": { "form": { "fields": "text", "filename_embd_weight": 0.1, "outputs": {}, "search_method": [ "embedding", "full_text" ] }, "label": "Tokenizer", "name": "Indexer_0" }, "dragging": false, "id": "Tokenizer:KindHandsWin", "measured": { "height": 113, "width": 200 }, "position": { "x": 663.5327731044026, "y": 544.5236681687471 }, "selected": false, "sourcePosition": "right", "targetPosition": "left", "type": "tokenizerNode" }, { "data": { "form": { "hierarchy": "1", "include_heading_content": false, "method": "hierarchy", "outputs": { "chunks": { "type": "Array", "value": [] } }, "promote_first_heading_to_root": false, "root_chunk_as_heading": true, "rules": [ { "levels": [ { "expression": "^\\s*(?i:(?:\\d+[\\.\\)]\\s*)?(?:EDUCATION|ACADEMIC\\s*BACKGROUND|ACADEMIC\\s*HISTORY|EDUCATIONAL\\s*BACKGROUND|RELEVANT\\s*COURSEWORK|COURSEWORK|EXPERIENCE|WORK\\s*EXPERIENCE|PROFESSIONAL\\s*EXPERIENCE|RELEVANT\\s*EXPERIENCE|EMPLOYMENT\\s*HISTORY|CAREER\\s*HISTORY|INTERNSHIP\\s*EXPERIENCE|PROJECTS|PROJECT\\s*EXPERIENCE|ACADEMIC\\s*PROJECTS|PROFESSIONAL\\s*PROJECTS|SKILLS|TECHNICAL\\s*SKILLS|CORE\\s*COMPETENCIES|COMPETENCIES|QUALIFICATIONS|SUMMARY\\s*OF\\s*QUALIFICATIONS|CERTIFICATIONS|LICENSES|CERTIFICATES|AWARDS|HONORS|HONOURS|ACHIEVEMENTS|PUBLICATIONS|RESEARCH|RESEARCH\\s*EXPERIENCE|LEADERSHIP|LEADERSHIP\\s*EXPERIENCE|ACTIVITIES|EXTRACURRICULAR\\s*ACTIVITIES|ACTIVITIES\\s*(?:&|AND)\\s*SKILLS|INVOLVEMENT|CAMPUS\\s*INVOLVEMENT|VOLUNTEER\\s*EXPERIENCE|VOLUNTEERING|COMMUNITY\\s*SERVICE|LANGUAGES|INTERESTS|HOBBIES|PROFILE|PROFESSIONAL\\s*PROFILE|SUMMARY|PROFESSIONAL\\s*SUMMARY|CAREER\\s*SUMMARY|OBJECTIVE|CAREER\\s*OBJECTIVE|PERSONAL\\s*INFORMATION|CONTACT\\s*INFORMATION|ADDITIONAL\\s*INFORMATION|TRAINING))\\s*[::]?\\s*$" } ] }, { "levels": [ { "expression": "^\\s*(?:\\d+[\\.、\\)]\\s*)?(?:教育背景|教育经历|学历背景|学术背景|技术背景|工作经历|工作经验|实习经历|项目经历|项目经验|科研经历|研究经历|校园经历|实践经历|专业经历|职业经历|技能|专业技能|技能特长|核心技能|技术栈|个人技能|工作技能|职业技能|技能与评价|技能与自我评价|工作技能与自我评价|职业技能与自我评价|证书|资格证书|职业资格|资质证书|获奖情况|获奖经历|荣誉|荣誉奖项|奖项|科研成果|论文发表|发表论文|领导经历|学生工作|校园活动|社团经历|活动经历|志愿经历|志愿服务|社会实践|语言能力|语言|自我评价|个人评价|自我总结|个人总结|个人优势|个人简介|个人信息|基本信息|联系方式|求职意向|应聘意向|职业目标|求职目标|兴趣爱好|兴趣特长|培训经历|其他信息|附加信息)\\s*[::]?\\s*$" } ] } ] }, "label": "TitleChunker", "name": "Title Chunker_0" }, "dragging": false, "id": "TitleChunker:FlatMiceFix", "measured": { "height": 73, "width": 200 }, "position": { "x": 524.2908769627791, "y": 53.05515313482098 }, "selected": false, "sourcePosition": "right", "targetPosition": "left", "type": "chunkerNode" }, { "data": { "form": { "field_name": "metadata", "frequencyPenaltyEnabled": true, "frequency_penalty": 0.7, "llm_id": "MiniMax-M2.7@MiniMax", "maxTokensEnabled": false, "max_tokens": 256, "outputs": { "chunks": { "type": "Array", "value": [] } }, "presencePenaltyEnabled": true, "presence_penalty": 0.4, "prompts": "Content: {TitleChunker:FlatMiceFix@chunks}", "sys_prompt": "Act as a precise resume metadata extractor. Extract stable, chunk-supported metadata from the provided resume content.\n\nRules:\n1. Use only information explicitly stated in the content. Do not infer, guess, normalize, or add missing facts.\n2. The input may be only one chunk of a resume. Extract only what this content directly supports.\n3. Use only these field names:\ncandidate_name, gender, phone, email, city, location, nationality, linkedin, github, website, highest_degree, degree_levels, school_names, majors, graduation_years, work_experience_years, current_job_title, job_titles, company_names, job_experience, industries, target_job_titles, target_locations, employment_types, skills, certificates, awards, summary_tags\n4. Ignore detailed responsibilities, project descriptions, achievement narratives, self-evaluation, and other low-value local details.\n5. Keep values in the same language as the source text whenever possible.\n6. Remove duplicates and keep only concise, high-value metadata.\n7. Return only fields that are explicitly supported by the content. Do not return empty or unsupported fields.\n\nField guidance:\n- highest_degree: highest explicit degree level mentioned\n- degree_levels: all explicit degree levels mentioned\n- school_names: explicit school, college, or university names\n- majors: explicit fields of study\n- graduation_years: explicit graduation years only\n- work_experience_years: only if explicitly stated\n- current_job_title: only if explicitly current or most recent\n- job_titles: explicit role titles\n- company_names: explicit employer names\n- job_experience: concise structured work entries explicitly supported by the content, preferably including title, company, and time information when available\n- industries: explicit industry names only\n- target_job_titles: explicit desired roles only\n- target_locations: explicit desired work locations only\n- skills: concise, core, search-useful skills explicitly mentioned\n- certificates: explicit certificate names only\n- awards: explicit award names only\n- summary_tags: short, high-value tags strictly supported by the content\n\nReturn only the extracted metadata. Do not output explanatory text.", "temperature": 0.1, "temperatureEnabled": true, "tenant_llm_id": 29, "topPEnabled": true, "top_p": 0.3 }, "label": "Extractor", "name": "Auto Metadata" }, "dragging": false, "id": "Extractor:ThreeDrinksAct", "measured": { "height": 89, "width": 200 }, "position": { "x": 550.8123774842874, "y": 161.4998493859579 }, "selected": false, "sourcePosition": "right", "targetPosition": "left", "type": "contextNode" }, { "data": { "form": { "field_name": "keywords", "frequencyPenaltyEnabled": true, "frequency_penalty": 0.7, "llm_id": "MiniMax-M2.7@MiniMax", "maxTokensEnabled": false, "max_tokens": 256, "outputs": { "chunks": { "type": "Array", "value": [] } }, "presencePenaltyEnabled": true, "presence_penalty": 0.4, "prompts": "文本内容\n[在此处插入文本]", "sys_prompt": "角色\n你是一名文本分析员。\n\n任务\n从给定的文本内容中提取最重要的关键词/短语。\n\n要求\n- 总结文本内容,并给出最重要的5个关键词/短语。\n- 关键词必须与给定的文本内容使用相同的语言。\n- 关键词之间用英文逗号分隔。\n- 仅输出关键词。", "temperature": 0.1, "temperatureEnabled": true, "topPEnabled": true, "top_p": 0.3 }, "label": "Extractor", "name": "提取器_0" }, "dragging": false, "id": "Extractor:ItchyFoxesStrive", "measured": { "height": 89, "width": 200 }, "position": { "x": 558.7638130889704, "y": 260.698149098317 }, "selected": false, "sourcePosition": "right", "targetPosition": "left", "type": "contextNode" }, { "data": { "form": { "field_name": "questions", "frequencyPenaltyEnabled": true, "frequency_penalty": 0.7, "llm_id": "MiniMax-M2.7@MiniMax", "maxTokensEnabled": false, "max_tokens": 256, "outputs": { "chunks": { "type": "Array", "value": [] } }, "presencePenaltyEnabled": true, "presence_penalty": 0.4, "prompts": "文本内容\n[在此处插入文本]", "sys_prompt": "角色\n你是一名文本分析员。\n\n任务\n针对给定的文本内容提出3个问题。\n\n要求\n- 理解并总结文本内容,并提出最重要的3个问题。\n- 问题的含义不应重叠。\n- 问题应尽可能涵盖文本的主要内容。\n- 问题必须与给定的文本内容使用相同的语言。\n- 每行一个问题。\n- 仅输出问题。", "temperature": 0.1, "temperatureEnabled": true, "topPEnabled": true, "top_p": 0.3 }, "label": "Extractor", "name": "提取器_1" }, "dragging": false, "id": "Extractor:BusyClocksRush", "measured": { "height": 89, "width": 200 }, "position": { "x": 592.4119346324834, "y": 353.6113302354397 }, "selected": false, "sourcePosition": "right", "targetPosition": "left", "type": "contextNode" }, { "data": { "form": { "field_name": "summary", "frequencyPenaltyEnabled": true, "frequency_penalty": 0.7, "llm_id": "MiniMax-M2.7@MiniMax", "maxTokensEnabled": false, "max_tokens": 256, "outputs": { "chunks": { "type": "Array", "value": [] } }, "presencePenaltyEnabled": true, "presence_penalty": 0.4, "prompts": "要总结的文本:\n[在此处插入文本]", "sys_prompt": "扮演一个精准的摘要者。你的任务是为提供的内容创建一个简洁且忠实于原文的摘要。\n\n关键说明:\n1. 准确性:摘要必须严格基于所提供的信息。请勿引入任何未明确说明的新事实、结论或解释。\n2. 语言:摘要必须使用与原文相同的语言。\n3. 客观性:不带偏见地呈现要点,保留内容的原始意图和语气。请勿进行编辑。\n4. 简洁性:专注于最重要的思想,省略细节和多余的内容。", "temperature": 0.1, "temperatureEnabled": true, "topPEnabled": true, "top_p": 0.3 }, "label": "Extractor", "name": "提取器_2" }, "dragging": false, "id": "Extractor:CuteSignsCut", "measured": { "height": 89, "width": 200 }, "position": { "x": 616.822830981782, "y": 449.2756537664745 }, "selected": false, "sourcePosition": "right", "targetPosition": "left", "type": "contextNode" } ] }, "variables": [] }