
A Machine Learning Engineer, with software engineering background. Experience working on end-to-end Machine Learning and Deep Learning projects.
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Evaluating your skill match against the job requirements…
Assessing your cultural and operational fit
ai-engineer-portfolio
June 17, 2025 – July 29, 2025
AI Engineer Portfolio - A Next.js project showcasing my work and skills
View Projectweek0_starter_network_analysis
November 26, 2023 – April 10, 2024
week0_starter_network_analysis — GitHub repository
View ProjectBiker-Sharing-Demand
December 23, 2022 – January 9, 2023
Biker-Sharing-Demand — GitHub repository
View ProjectRecommendation-System-Project-Research
December 1, 2022 – December 1, 2022
Recommendation-System-Project-Research — GitHub repository
View ProjectRefund-by-Location-Smart-Contract
July 13, 2022 – July 18, 2022
Using Ethereum smart contract to refund someone based on that person staying in one area in a given time
View ProjectBreast-Cancer-Diagnostic-Analysis-using-causal-inference-with-machine-learning
June 29, 2022 – July 4, 2022
Exploring causality inference with machine learning on a breast cancer diagnostic data
View ProjectPylidar
June 22, 2022 – June 27, 2022
Building a python module to fetch Lidar data from different sources
View Projectend-to-end-web3-dapps-with-algorand
June 14, 2022 – June 20, 2022
Building an End-to-End Web3 Dapp with algorand blockchain that enables 10academy provide certificates using NFT
View ProjectCultural Fit Analysis
The candidate shows a broad interest in various technologies including Web3, AI, and data analysis, which indicates adaptability. However, the projects are predominantly personal and lack details on collaborative efforts or team contributions, making it difficult to assess cultural fit comprehensively. The diversity of projects suggests a curious and self-driven individual.
Soft Skills & Operational Fit
Insufficient data to assess soft skills and operational fit. No psychometric test results or interview feedback provided.