Fast item-to-item recommendations on the command line.
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Updated
Nov 1, 2022 - Rust
Fast item-to-item recommendations on the command line.
Recommender system based on Item Collaborative Filtering and MapReduce
Repository for the Recommender Systems Challenge 2020/2021 @ PoliMi
Code repo of solution of 11th place in Recsys Challenge 2022
A system that assists students in selecting their courses in a smarter way
Recommendation systems
A platform where user is suggested items to buy based on previous transaction history and current cart. Implemented item to item collaborative filtering using Apriori algorithm. Improved upon the algorithm which provided pairwise affinity only, to allow computation of items similar to a given set of items. Technologies used – Python libraries, R…
Repository for the Recommender Systems Challenge 2020/2021 @ PoliMi
Project for CS267 Topics in Database Systems
The objective of the competition was to create the best recommender system for a book recommendation service by providing 10 recommended books to each user. The evaluation metric was MAP@10.
A recommendation system for Restaurants!
基于ItemCF与Springboot的图书商城系统
Machine Learning Algorithms
Analysis of massive data sets
This repository represents several projects completed in IE HST's MS in Business Analytics and Big Data program, Recommendation Engines course.
Big Data Intern Recommendation System @ VIPS Zhimin Feng
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