- You can’t be a master without basics. Also you need to have the core skills in those domains.
- To use machine learning first know how to program. The Google Class for Python
- Learn and Understand statistics, especially Bayesian probability, which is essential for many machine learning algorithms. Blog for free books on data science / statistics.
- Also learn Scipy, numpy, pandas from youtube
- After basics, it’s time to take some free courses from best universities
- Stanford’s Machine Learning Course, this is the famous course by Andrew Ng
- Harvard’s Data Science Course, this is End-to-end data science course. Get practice with the entire data science workflow from data collection to analysis
- Read An Introduction to Statistical Learning and Elements of Statistical Learning
- Practice the entire machine learning workflow: Data collection, cleaning, and preprocessing. Model building, tuning, and evaluation using real data sets. Pick 5-10 datasets from the UCI Machine Learning Repository. For example, you can pick 3 datasets each for regression, classification, and clustering.
- Now go and participate in machine learning competitions.
All information about Big Data, Data Science, Data Analytics. Its all about thinking BIG with BIG DATA
Saturday, May 13, 2017
Baby steps for Machine learning
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#datascience,
data analysis,
machine learning
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nice post Hari, keep up your interest on in learning new technologies!!
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