Amir2244/movies-rating
"movies-rating" is a recommendation system project that leverages distributed frameworks. Which includes services such as Hadoop Namenode, Hadoop Datanode, Spark Master, Spark Worker, and Redis.
Implements collaborative filtering with batch model training on Google Dataproc and real-time event processing via Kafka, storing pre-computed user/item factors in Redis for fast vector similarity search. The microservices architecture separates concerns across Spring Boot APIs, a Next.js analytics dashboard, and dedicated processing services that feed MongoDB for analytics queries and Redis for recommendation lookups.
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Stars
9
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Language
Java
License
MIT
Category
Last pushed
Aug 03, 2025
Commits (30d)
0
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