Martin Andres Liendo
09/01/2018
Martin Andres Liendo
Data analyst
Contact: liendomartin@gmail.com
5 lectures of 60/90 minutes:
Introduction to R and the topics. Basic commands and mini-test
Data pre-processing. Exploratory Data
Models and performance measures. Case study
Other models in ML and introduction to Markdown
Capstone projects and next step
Hands on in R: Exercises and project.
Understand the machine learning project pipe
Introduce useful models for classification purposes
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Why R ? Open source vs Commercial softwares.
What is Machine learning, AI , Deep learning and Reinforcement Learning?
Data : Revolution ( “the new energy/oil”) or a buzzword ?
Reproductibility in the project
Free / Open Source -> big community and free resources availables
Easier automation and more powerful advanced process
Better reading different data sources and capable of processing big data
Runs on a wide array of platforms and likely to run on any computer
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