Course Information
Course Overview
Master the art of data analysis by unleashing the power of Haskell
A staggering amount of data is created everyday; analyzing and organizing this enormous amount of data can be quite a complex task. Haskell is a powerful and well-designed functional programming language that is designed to work with complex data. It is trending in the field of data science as it provides a powerful platform for robust data science practices.
This course will introduce the basic concepts of Haskell and move on to discuss how Haskell can be used to solve the issues by using the real-world data.
The course will guide you through the installation procedure, after you have all the tools that you require in place, you will explore the basic concepts of Haskell including the functions, and the data structures.
It will also discuss the various formats of raw data and the procedures for cleaning the data and plotting them.
With a good hold on the basics of Haskell and data analysis, you will then be introduced to advanced concepts of data analysis such as Kernel Density Estimation, Hypothesis Testing, Regression Analysis, Text Analysis, Clustering, Naïve Bayes Classification, and Principal Component Analysis.
Why go for this course?
We've spent the last decade working to help developers stay relevant. The structure of this course is a result of deep and intensive research into what real-world developers need to know in order to be job-ready. We don't spend too long on theory, and focus on practical results so that you can see for yourself how things work in action.
This course follows an example-based approach that will take you through learning Haskell initially, and then learning to manipulate data and visualizing it, and then gradually building your skill level where you can perform advanced algorithms on the data, such that you can make more sense of the data and interpret the future, or give suggestions. It's a blend of text, videos, code examples, and assessments, which together makes your learning journey all the more exciting and truly rewarding. It includes sections that form a sequential flow of concepts covering a focused learning path presented in a modular manner. This helps you learn a range of topics at your own speed and also move towards your goal of learning Haskell.
After completing this course, you will be equipped to analyze data and organize them using advanced algorithms.
This course is authored by some of the best in the field.
We have combined the following best Haskell products by Packt:
- Learning Haskell Programming by Hakim Cassimally
- Getting Started with Haskell Data Analysis by James Church
- Learning Haskell Data Analysis by James Church
- Advanced Data Analysis with Haskell by James Church
Meet your expert instructions:
James Church is an assistant professor of computer science at Austin Peay State University. He has consulted for various companies and a chemical laboratory for the purpose of performing data analysis work.
Hakim Cassimally learned the basics of Lisp 15 years ago and has been interested in functional programming ever since. He has written, spoken, and evangelised about learning and writing Haskell since 2006.
What are the requirements?
You do not need any programming knowledge, or knowledge in data science before you take up this course.
What am I going to get from this course?
Learn the basics of Haskell
Learn how to clean data
Learn how to plot data on a graph and to draw conclusions based on the graphs
Apply advanced algorithms on the data to extract more information from the data.
Course Content
- 14 section(s)
- 64 lecture(s)
- Section 1 How do I get Started with Haskell Data Analysis?
- Section 2 Getting Started with Haskell
- Section 3 Working with CSV and SQLite3
- Section 4 Cleaning Our Datasets
- Section 5 Visualization
- Section 6 Kernel Density Estimation
- Section 7 Hypothesis Testing
- Section 8 Regression Analysis
- Section 9 Multiple Regression
- Section 10 Text Analysis
- Section 11 Clustering
- Section 12 Naïve Bayes Classification
- Section 13 Principal Component Analysis
- Section 14 Recommendation Engine
What You’ll Learn
- Understand the basic concepts of data analysis, Create Haskell functions for the common descriptive statistics functions, Learn to apply regular expressions in large-scale datasets , Plot data with the gnuplot tool and the EasyPlot library, Reduce the size of data without affecting the data’s effectiveness using Principal Component Analysis, Master the techniques necessary to perform multivariate regression using Haskell code
Skills covered in this course
Reviews
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SSebastian Pereira Gutierrez
The info is outdated. In the second part they just introduce Jupyter Notebooks, but on them support for Haskell was dropped a long time ago.
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TThomas Hutterer
Too many unexplained jumps in requirements
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AAndrzej Kurowski
Easy to follow and intresting presentation.
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MMathinson Rondon
Thanks, I appretiate the work you'all have done in this course.