Data Analytics Engineering: Probability & Techniques
Key Takeaways
Applies data cleaning and data wrangling operations using modern data structures and covers conceptual and practical applications of probability and distribution
Original Description
This course offers students an opportunity to learn fundamentals of computation required to understand and analyze real world data. The course helps students to work with modern data structures, apply data cleaning and data wrangling operations. The course covers conceptual and practical applications of probability and distribution, cluster analysis, text analysis and time series analysis.
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