Saleem Ansari is a full-stack developer with over 8 years of industry experience. He has a special interest in machine learning and information retrieval. Having implemented data ingestion and a processing pipeline in Core Java and Ruby separately, he knows the challenges faced by huge data sets in such systems. He has worked for companies such as Red Hat, Impetus Technologies, Belzabar Software, and Exzeo Software. He is also a passionate member of free and open source software (FOSS) community. He started his journey with FOSS in the year 2004. The very next year, he formed JMILUG―Linux Users Group at Jamia Millia Islamia University, New Delhi. Since then, he has been contributing to FOSS by organizing community activities and contributing code to various projects (for more information, visit http://github.com/tuxdna). He also mentors students about FOSS and its benefits.
In 2015, he reviewed two books related to Apache Mahout, namely Learning Apache Mahout and Apache Mahout Essentials; both the books were produced by Packt Publishing.
He blogs at http://tuxdna.in/ and can be reached at tuxdna@fedoraproject.org via e-mail.
发表于2024-11-18
Building a Recommendation Engine with Scala 2024 pdf epub mobi 电子书
图书标签: 推荐系统 Scala
With an increase of data in online e-commerce systems, the challenges in assisting users with narrowing down their search have grown dramatically. The various tools available in the Scala ecosystem enable developers to build a processing pipeline to meet those challenges and create a recommendation system to accelerate business growth and leverage brand advocacy for your clients.
This book provides you with the Scala knowledge you need to build a recommendation engine.
You'll be introduced to Scala and other related tools to set the stage for the project and familiarise yourself with the different stages in the data processing pipeline, including at which stages you can leverage the power of Scala and related tools. You'll also discover different machine learning algorithms using MLLib.
As the book progresses, you will gain detailed knowledge of what constitutes a collaborative filtering based recommendation and explore different methods to improve users' recommendation.
What you will learn
Discover the tools in the Scala ecosystem
Understand the challenges faced in e-commerce systems and learn how you can solve those challenges with a recommendation engine
Familiarise yourself with machine learning algorithms provided by the Apache Spark framework
Build different versions of recommendation engines from practical code examples
Enhance the user experience by learning from user feedback
Dive into the various techniques of recommender systems such as collaborative, content-based, and cross-recommendations
Building a Recommendation Engine with Scala 2024 pdf epub mobi 电子书