AI/ML Book Recommendation System for an International Educational Institution
Business Problems
Needed to create a data-driven book recommendation engine that harnesses the expertise of tenured librarians to improve library holdings.
Needed a personalized algorithm to improve the institute’s library experience and provide collaborative filtering.
Required a benchmark to capture the expertise of educators for recommending engaging titles to improve the overall academic performance.
Needs to have an integration with the existing portal for showcasing the suggestions and recommendations of titles.
Solution Details
Understanding the requirements to design an algorithm to evaluate libraries and make compelling recommendations.
Customized a software system to ingest a list of any titles, identify areas of interest, recommend additional books, and suggest related artifacts; while factoring in expert recommendations.
Enabled ongoing improvement through ML ensuring the current needs of students are prioritized by recommendations always.
WHY NETFOTECH
Service Offerings
Ease of reporting and analysis for the educators based on the books taken by students.
Enabled the libraries to understand the student’s search pattern/ interest and thereby the institution can predict the future needs as per new launches.
The time taking for identifying a specific book has been reduced by 50 – 60% and this resulted in more engagements from all the users.
Recommendation system continues to learn and adapt automatically.
Time taken for classifying and tagging the books has been reduced thereby task turn-around time has been reduced significantly.