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AI-Powered Resume Parsing for Efficient Recruitment
Niranjan Kulkarni1
Department of Computer Science&
Design Engineering
New Horizon Institute of Technology & Management, Thane, India
niranjankulkarni@nhitm.ac.in
Shahbaz Shaikh4
Department of Computer Science&
Design Engineering
New Horizon Institute of Technology & Management, Thane, India
shahbazsk2003@gmail.com
Swati Patil2
Department of Computer Science&
Design Engineering
New Horizon Institute of Technology & Management, Thane, India
swatipatil@nhitm.ac.in
Aditya Khandagale5
Department of Computer Science&
Design Engineering
New Horizon Institute of Technology & Management, Thane, India
adityakhandagale639@gmail.com
Shahbaz Khan3
Department of Computer Science&
Design Engineering
New Horizon Institute of Technology & Management, Thane, India
shahbazkhan8452@gmail.com
Mubashshir Khan6
Department of Computer Science&
Design Engineering
New Horizon Institute of Technology & Management, Thane, India
khanmubashshir08@gmail.com
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Abstract - The incorporation of Artificial Intelligence (AI) into Business Process Management Systems (BPMS) has significantly transformed multiple industries, particularly human resource management. A notable innovation in this domain is the AI-driven Resume Parser, which enhances the recruitment process by automating resume evaluation and candidate selection. Conventional hiring methods can be inefficient, requiring extensive time and effort while being susceptible to human bias, making it challenging to identify the best candidates effectively. The proposed system utilizes Natural Language Processing (NLP) and Machine Learning (ML) to extract, classify, and organize essential resume details, allowing recruiters to make informed, data-driven hiring decisions.
This research explores the implementation of AI-driven resume parsing, highlighting its role in enhancing efficiency, accuracy, and fairness in recruitment. The system can process resumes in multiple formats, handle large-scale applicant pools. However, challenges such as contextual ambiguity, data privacy concerns, and algorithmic bias necessitate human oversight to ensure ethical and reliable decision-making. As organizations increasingly adopt AI-driven automation to optimize business processes, the AI Resume Parser represents a transformative solution that enhances recruitment efficiency while reducing operational workload.
Key Words: Artificial Intelligence, Business Process Management, AI in Recruitment, Resume Parsing, Natural Language Processing, Machine Learning, HR Automation, Data Extraction, Applicant Tracking System, Recruitment Optimization.