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access

lifetime

content

3.5 Hours

**Description**

- Access 40 lectures & 3.5 hours of content 24/7
- Improve on traditional A/B testing w/ adaptive methods
- Learn about epsilon-greedy algorithm & improve upon it w/ a similar algorithm called UCB1
- Understand how to use a fully Bayesian approach to A/B testing

The Lazy Programmer is a data scientist, big data engineer, and full stack software engineer. For his master's thesis he worked on brain-computer interfaces using machine learning. These assist non-verbal and non-mobile persons to communicate with their family and caregivers.

He has worked in online advertising and digital media as both a data scientist and big data engineer, and built various high-throughput web services around said data. He has created new big data pipelines using Hadoop/Pig/MapReduce, and created machine learning models to predict click-through rate, news feed recommender systems using linear regression, Bayesian Bandits, and collaborative filtering and validated the results using A/B testing.

He has taught undergraduate and graduate students in data science, statistics, machine learning, algorithms, calculus, computer graphics, and physics for students attending universities such as Columbia University, NYU, Humber College, and The New School.

Multiple businesses have benefitted from his web programming expertise. He does all the backend (server), frontend (HTML/JS/CSS), and operations/deployment work. Some of the technologies he has used are: Python, Ruby/Rails, PHP, Bootstrap, jQuery (Javascript), Backbone, and Angular. For storage/databases he has used MySQL, Postgres, Redis, MongoDB, and more.

He has worked in online advertising and digital media as both a data scientist and big data engineer, and built various high-throughput web services around said data. He has created new big data pipelines using Hadoop/Pig/MapReduce, and created machine learning models to predict click-through rate, news feed recommender systems using linear regression, Bayesian Bandits, and collaborative filtering and validated the results using A/B testing.

He has taught undergraduate and graduate students in data science, statistics, machine learning, algorithms, calculus, computer graphics, and physics for students attending universities such as Columbia University, NYU, Humber College, and The New School.

Multiple businesses have benefitted from his web programming expertise. He does all the backend (server), frontend (HTML/JS/CSS), and operations/deployment work. Some of the technologies he has used are: Python, Ruby/Rails, PHP, Bootstrap, jQuery (Javascript), Backbone, and Angular. For storage/databases he has used MySQL, Postgres, Redis, MongoDB, and more.

Details & Requirements

- Length of time users can access this course: lifetime
- Access options: web streaming, mobile streaming
- Certification of completion not included
- Redemption deadline: redeem your code within 30 days of purchase
- Experience level required: all levels, but knowledge of calculus, probability, Python, Numpy, Scipy, and Matplotlib is expected
- All code for this course is available for download
*here*, in the directory ab_testing

Compatibility

- Internet required

**Terms**

- Unredeemed licenses can be returned for store credit within 15 days of purchase. Once your license is redeemed, all sales are final.

- Introduction and Outline
- What's this course all about? (2:18)
- Where to get the code for this course (1:17)
- How to succeed in this course (3:26)

- Bayes Rule and Probability Review
- Bayes Rule Review (9:28)
- Simple Probability Problem (2:03)
- The Monty Hall Problem (3:57)
- Imbalanced Classes (4:40)
- Maximum Likelihood - Mean of a Gaussian (4:52)
- Maximum Likelihood - Click-Through Rate (4:23)
- Confidence Intervals (10:17)
- What is the Bayesian Paradigm? (5:46)

- Traditional A/B Testing
- A/B Testing Problem Setup (4:26)
- Simple A/B Testing Recipe (5:07)
- P-Values (3:53)
- Test Characteristics, Assumptions, and Modifications (6:45)
- t-test in Code (3:23)
- 0.01 vs 0.011 - Why should we care? (1:46)
- A/B Test for Click-Through Rates (Chi-Square Test) (6:04)
- CTR A/B Test in Code (8:50)
- A/B/C/D/… Testing - The Bonferroni Correction (2:20)
- Statistical Power (3:08)
- A/B Testing Pitfalls (4:01)
- Traditional A/B Testing Summary (3:42)

- Bayesian A/B Testing
- Explore vs. Exploit (4:00)
- The Epsilon-Greedy Solution (2:58)
- UCB1 (4:35)
- Conjugate Priors (7:04)
- Bayesian A/B Testing (4:10)
- Bayesian A/B Testing in Code (8:50)
- The Online Nature of Bayesian A/B Testing (2:31)
- Finding a Threshold Without P-Values (4:52)
- Thompson Sampling Convergence Demo (4:01)
- Confidence Interval Approximation vs. Beta Posterior (5:41)

- Practice Makes Perfect
- Exercise: Compare different strategies (2:06)
- Exercise: Die Roll (2:38)
- Exercise: Multivariate Gaussian Likelihood (5:41)

- Appendix
- How to install Numpy, Scipy, Matplotlib, Pandas, IPython, Theano, and TensorFlow (17:32)
- How to Code by Yourself (part 1) (15:54)
- How to Code by Yourself (part 2) (9:23)
- Where to get Udemy coupons and FREE deep learning material (2:20)

access

lifetime

content

3.5 Hours