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RES.EC-001 Exploring Fairness in Machine Learning Case Studies

Familiarity with Data Science Statistics or Machine Learning. • Familiarity with Python



Exploring Fairness in Machine Learning: Background

AMIT GANDHI: Hi my name is Amit Gandhi



MIT6_0002F16_Lecture 11

Machine learning is a huge topic E with whole courses devoted to it For more information see https://ocw.mit.edu/help/faq-fair-use/.



Case Studies with Data: Mitigating Gender Bias on the

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Mathematics of Machine Learning Lecture Notes

9/09/2015 This course focuses on statistical learning theory which roughly means understanding the amount of data required to achieve a certain ...



watch?v=esmzYhuFnds

OpenCourseWare at ocw.mit.edu. We're in the unit of a course on machine learning and ... that I'm a slightly unreconstructed Python 2 programmers.



Overview Plotting Large Datasets Introduction

The following may not correspond to a particular course on MIT OpenCourseWare but has been provided by the author as an individual learning resource. For 



Online textbook: Computational Biology: Genomes Networks

6/01/2016 algorithmic and machine learning techniques needed for tackling them. ... For more information see http://ocw.mit.edu/help/faq-fair-use/.



Lecture 2

PROFESSOR: Thank you. OK. So we're about to launch into learning some basic elements of. Python today. The elements I'm going to talk about are common to 



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Machine Learning. • Classification. • Clustering. • http://www.ml-class.org. • MIT 6.867. • Python scikit-learn (sklearn). Raw Data.



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Introduction to Machine Learning - MIT OpenCourseWare

This course introduces principles algorithms and applications of machine learning from the point of view of modeling and prediction



Machine Learning Electrical Engineering and Computer Science

6 867 is an introductory course on machine learning which gives an overview of many concepts techniques and algorithms in machine learning beginning with 



Lecture 11: Introduction to Machine Learning - MIT OpenCourseWare

Description: In this lecture Prof Guttag introduces machine learning and shows examples of supervised learning using feature vectors



Class 2: Artificial Intelligence Machine Learning and Deep Learning

This section contains the vide lecture slides readings and study questions for Class #2



Introduction to Computational Thinking and Data Science

(Courtesy of Ana Bell ) Download Course · MIT Open Learning



Lecture Notes Machine Learning - MIT OpenCourseWare

Lecture Notes ; 4 Classification errors regularization logistic regression (PDF) ; 5 Linear regression estimator bias and variance active learning (PDF) ; 6 



Lecture Slides and Files Introduction to Computational Thinking

This section includes lecture notes for the class including associated files



Introduction to Deep Learning - MIT OpenCourseWare

This is MIT's introductory course on deep learning methods with applications to computer vision natural language processing biology and more!



Projects Prediction: Machine Learning and Statistics

This section contains a project description a list of project components suggested topics and examples of student work