发送带有简历文本、文件或网址的JSON主体的POST请求 接收结构化的详细信息,如联系信息、经验和技能
提取简历数据 - 端点功能
| 对象 | 描述 |
|---|---|
请求体 |
[必需] Json |
{"personalInformation":{"firstName":"Jane","lastName":"Smith","phoneNumber":"(123) 456-7891","emailAddress":"[email protected]","linkedinUrl":"","websiteUrl":"","headline":"Seasoned Customer Call Center Professional with a 15-year history in call center functions."},"skills":[{"category":"Common Skill","skillName":"Customer Service","skillId":"KS121Z26S4VJLQ1WXN21"},{"category":"Specialized Skill","skillName":"De-escalation Techniques","skillId":"ES5BD288B5B33FF14750"},{"category":"Specialized Skill","skillName":"Standard Operating Procedure","skillId":"KS1248P6CJ6XH85L8SX2"},{"category":"Common Skill","skillName":"Team Leadership","skillId":"KS4418462TTGKL3CWJHT"},{"category":"Specialized Skill","skillName":"Service Level","skillId":"KS440HG6L2FMWJBJDZQK"},{"category":"Specialized Skill","skillName":"Customer Relationship Management","skillId":"KS1217P66NK6BW72M9FH"},{"category":"Specialized Skill","skillName":"Call Center Experience","skillId":"KS121BS6QFLZVY39PMHD"},{"category":"Common Skill","skillName":"Problem Solving","skillId":"KS125F678LV2KB3Z5XW0"},{"category":"Common Skill","skillName":"Reservations","skillId":"KS7G4T15W4RYVZTCDSWZ"},{"category":"Common Skill","skillName":"Information Technology","skillId":"KS1227V6WBR3BH3SJYSZ"},{"category":"Common Skill","skillName":"Management","skillId":"KS1218W78FGVPVP2KXPX"},{"category":"Common Skill","skillName":"Business Administration","skillId":"KS1218B62M9QRBY8WRSK"}],"workExperience":[{"companyName":"Cloud Clearwater","jobTitle":"Call Center Administrator","city":"Dallas","country":"USA","fromDate":"2014-08-01","toDate":"current","description":"Developed and implemented standard operating procedures to maintain a monthly quality service level that averaged 90% and above. Managed a team of 10 center supervisors and 100 customer service representatives. Created a rotating schedule to maximize center efficiency, resulting in a $50,000 annual savings in personnel costs."},{"companyName":"River Tech","jobTitle":"Customer Call Center Supervisor","city":"Dallas","country":"USA","fromDate":"current","toDate":"current","description":"Managed and coached a team of 25 call center representatives. Utilized effective de-escalation techniques to resolve approximately 40 escalated calls each day. Maintained a 97% average monthly customer-satisfaction rating for my team."},{"companyName":"Crane & Smith","jobTitle":"Call Center Representative","city":"Dallas","country":"USA","fromDate":"current","toDate":"current","description":"Assisted approximately 125 customers daily with making rental car reservations in a 24/7 call center. Consistently completed at least five live customer transfers to our hotel partners for booking. Promoted to advanced customer relations team to handle at least 45 VIP customers each day."}],"education":[{"institutionName":"Hawaii Western","fieldOfStudy":"Information Technology/Business Administration","degree":"","grade":"","city":"","country":"","fromDate":"1998-08-01","toDate":"2002-05-01","description":""}],"certifications":[],"summary":{"profile":"Seasoned Customer Call Center Professional with a 15-year history of excelling in all call center functions, including roles as an initial customer-contact representative, floor supervisor and center administrator."},"achievements":"","projects":[],"hobbies":[]}
curl --location --request POST 'https://zylalabs.com/api/5566/applicant+data+extractor+api/7211/extract+resume+data' --header 'Authorization: Bearer YOUR_API_KEY'
--data-raw '{
"resumeText": "Jane Smith\r\nDallas, TX | (123) 456-7891\r\[email protected]\r\nSummary\r\nSeasoned Customer Call Center Professional with a 15-year history of excelling in all call center functions, including roles as an initial customer-contact representative, floor supervisor and center administrator. Adept at quickly problem solving for customers and resolving the most challenging complaints.\r\nEducation\r\nHawaii Western\r\nAug '98 - May '02\r\nInformation Technology/Business Administration\r\nExperience\r\nCloud Clearwater, Call Center Administrator Aug '14 - Current\r\nDeveloped and implemented standard operating procedures to maintain a monthly quality service level that averaged 90% and above\r\nManaged a team of 10 center supervisors and 100 customer service representatives\r\nCreated a rotating schedule to maximize center efficiency, resulting in a $50,000 annual savings in personnel costs\r\nRiver Tech, Customer Call Center Supervisor Current - Current\r\nManaged and coached a team of 25 call center representatives\r\nUtilized effective de-escalation techniques to resolve approximately 40 escalated calls each day\r\nMaintained a 97% average monthly customer-satisfaction rating for my team\r\nCrane & Smith, Call Center Representative Current - Current\r\nAssisted approximately 125 customers daily with making rental car reservations in a 24/7 call center\r\nConsistently completed at least five live customer transfers to our hotel partners for booking\r\nPromoted to advanced customer relations team to handle at least 45 VIP customers each day\r\nSkills\r\nCall Center Management\r\nTeam Leadership"
}'
| 标头 | 描述 |
|---|---|
授权
|
[必需] 应为 Bearer access_key. 订阅后,请查看上方的"您的 API 访问密钥"。 |
无长期承诺。随时升级、降级或取消。 免费试用包括最多 50 个请求。
申请人数据提取器API是一个符合GDPR的简历解析解决方案,它自动提取简历中的结构化数据,包括联系方式、工作经验、教育背景和技能,以简化招聘工作流程
该API通过实施零数据保留政策和实时处理来确保GDPR合规,优先考虑用户隐私并遵守数据保护法规
该API支持多种输入格式进行简历解析,包括PDF文件、URLs和原始文本,为不同的使用场景提供灵活性
API的关键特性包括技能标准化以进行标准化数据比较 强大的解析能力以处理复杂的简历格式 以及未来的增强功能如职位报价解析和匹配能力
人力资源专业人士 招聘人员 和开发招聘工具的开发者可以从此API中受益,因为它加速了人才获取并通过可操作的洞察改善了决策
提取简历数据端点返回结构化信息,包括个人详细信息(姓名、电话、电子邮件)、工作经验、教育背景和按类型分类的技能列表
响应中的关键字段包括“个人信息”(包含名字,姓氏,电话号码,电子邮件)“技能”(包含技能类别和名称)以及“经验”(详细说明职位名称和任期)
响应数据以JSON格式组织,顶层键包括个人信息、技能和经验。每个部分包含嵌套对象或数组以详细描述属性
该端点提供个人信息、工作经历、教育背景和全面的技能清单,使候选人的资格获得整体视图
用户可以通过在POST请求的JSON体中发送特定的简历文本、文件格式(PDF)或URL来自定义数据请求,从而根据输入类型进行定制解析
典型的用例包括自动化候选人筛选 比较申请者之间的技能 将解析的数据整合到人力资源系统中以简化招聘流程
数据准确性通过强大的解析算法得以维护,这些算法处理各种简历格式和结构,确保从多种来源可靠地提取相关信息
如果用户收到部分或空结果,他们应该验证输入格式和内容,确保简历清晰且结构良好。调整输入方法也可能会改善结果
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