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Nipun Khandelwal

Nipun Khandelwal

AI/ML Engineer (Data Labeling & AI Training – NER/Classification)

India flagN/A, India
$5.00/hrIntermediate

Key Skills

Software

No software listed

Top Subject Matter

Healthcare Data & Medical Documentation
biomedical text
clinical data

Top Data Types

TextText
DocumentDocument

Top Task Types

Entity (NER) ClassificationEntity (NER) Classification

Freelancer Overview

AI/ML Engineer (Data Labeling & AI Training – NER/Classification). Brings 4+ years of professional experience across complex professional workflows, research, and quality-focused execution. Core strengths include Internal and Proprietary Tooling. Education includes Bachelor of Technology, Lovely Professional University (2024). AI-training focus includes data types such as Text and labeling workflows including Entity (NER) Classification.

IntermediateEnglish

Labeling Experience

AI/ML Engineer (Data Labeling & AI Training – NER/Classification)

TextEntity Ner Classification
Contributed to data labeling and AI training for entity recognition and classification in biomedical and clinical datasets. Applied fine-tuning and transfer learning on NLP pipelines using frameworks such as PyTorch, TensorFlow, and HuggingFace Transformers. Ensured compliance with regulatory requirements through rigorous model and data validation protocols. • Labeled and classified clinical and health-related texts for entity extraction and categorization. • Engaged in model fine-tuning for named entity recognition and text classification tasks using annotated data. • Used Python-based ML tools and internal/proprietary software for annotating large-scale biomedical datasets. • Supported pipeline evaluation and iterative improvements based on annotation accuracy and feedback.

Contributed to data labeling and AI training for entity recognition and classification in biomedical and clinical datasets. Applied fine-tuning and transfer learning on NLP pipelines using frameworks such as PyTorch, TensorFlow, and HuggingFace Transformers. Ensured compliance with regulatory requirements through rigorous model and data validation protocols. • Labeled and classified clinical and health-related texts for entity extraction and categorization. • Engaged in model fine-tuning for named entity recognition and text classification tasks using annotated data. • Used Python-based ML tools and internal/proprietary software for annotating large-scale biomedical datasets. • Supported pipeline evaluation and iterative improvements based on annotation accuracy and feedback.

2023 - Present

Education

L

Lovely Professional University

Bachelor of Technology, Data Science

Bachelor of Technology
2020 - 2024

Work History

M

Merck

AI/ML Engineer

N/A
2023 - Present