Big Data Analytics | Advanced Big Data Analytics - Columbia University

Columbia University

Gain in-depth knowledge on analyzing Big Data, including storage, processing, analysis, visualization, and application. Ideal for graduate students interested in Big Data and data analysis.

University CoursesBig DataData AnalysisMachine Learning

Introduction

Students will gain knowledge on analyzing Big Data. It serves as an introductory course for graduate students who are expecting to face Big Data storage, processing, analysis, visualization, and application issues on both workplaces and research environments.

Highlights

  • Provides an in-depth understanding of Big Data analytics
  • Covers a wide range of topics, including Big Data storage, processing, analysis, visualization, and application
  • Suitable for graduate students interested in Big Data and data analysis

Recommendation

This course is highly recommended for graduate students who want to gain practical experience in Big Data analytics and prepare for real-world data challenges in their future careers or research.

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