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IIIT Delhi
Data Scientist
June 16, 2026 – Present
learning_data_structures
August 3, 2019 – August 21, 2019
learning_data_structures — GitHub repository
View ProjectBayesian-Structure-Learning-from-Multiparameter-Single-Cell-Dataset
July 7, 2017 – July 7, 2017
Bayesian-Structure-Learning-from-Multiparameter-Single-Cell-Dataset — GitHub repository
View ProjectTriangle-Counting-Problem-in-Apache-Spark
May 15, 2017 – May 15, 2017
Implementation of Triangle Counting Problem in Apache Spark
View ProjectText-Categorization-using-NGrams-in-Apache-Spark
May 13, 2017 – May 13, 2017
Apache Spark based implementation of research paper titled "N-gram-based text categorization"
View ProjectSmartHealthPortal
November 21, 2016 – November 21, 2016
OOPD project done during Monsoon semester 2016 at IIIT Delhi.
View ProjectDiverse-Frequent-Pattern-Mining
October 10, 2016 – October 12, 2016
Implementing the "Discovering Diverse-Frequent Patterns in Transactional Databases" paper written by Somya Srivastava, R. Uday Kiran & P. Krishna Reddy
View ProjectMobile-Computing
September 27, 2016 – November 15, 2016
A repository for all mobile computing assignments during Monsoon Semester 2016-17 at IIIT Delhi.
View ProjectCultural Fit Analysis
The candidate's project portfolio shows a strong inclination towards research-oriented data science problems, which aligns well with roles requiring analytical depth. However, the projects are predominantly personal/academic, and there is only one listed professional experience as 'Data Scientist' at IIIT Delhi with a future start date, making it difficult to assess real-world team collaboration or industry experience. The diversity of technologies is moderate, focusing mainly on Python, Java, and Spark.
Soft Skills & Operational Fit
Insufficient data to assess soft skills and operational fit. No psychometric test results or interview feedback provided.