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Schedule Interview NowMy name is Bibek B. and I have over 4 years of experience in the tech industry. I specialize in the following technologies: Django Stack, Python, React, RESTful API, JavaScript, etc.. I hold a degree in Bachelor of Computer Applications. Some of the notable projects I’ve worked on include: Trend Rush - Fashion Recommender System, Movie Recommender system. I am based in Kathmandu, Nepal. I've successfully completed 2 projects while developing at Softaims.
I specialize in architecting and developing scalable, distributed systems that handle high demands and complex information flows. My focus is on building fault-tolerant infrastructure using modern cloud practices and modular patterns. I excel at diagnosing and resolving intricate concurrency and scaling issues across large platforms.
Collaboration is central to my success; I enjoy working with fellow technical experts and product managers to define clear technical roadmaps. This structured approach allows the team at Softaims to consistently deliver high-availability solutions that can easily adapt to exponential growth.
I maintain a proactive approach to security and performance, treating them as integral components of the design process, not as afterthoughts. My ultimate goal is to build the foundational technology that powers client success and innovation.
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Leapfrog Technology
Trend Rush is a trend prediction and analysis system designed to identify and forecast emerging trends in various domains such as social media, marketplace products, technology, and consumer behavior. The system uses machine learning models and data analysis techniques to predict future trends based on historical data and real-time inputs, helping businesses and individuals stay ahead of the curve.
As a Django Developer with extensive experience in building web applications and integrating machine learning models, I developed a Movie Recommender System that leverages both Collaborative Filtering and Content-Based Filtering techniques to provide personalized movie recommendations to users. This project integrates seamlessly with a Django-based web application, ensuring a smooth user experience while handling large-scale movie data.
Bachelor of Computer Applications in Computer science
2019-01-01-2024-01-01