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| | <youtube>6tQhoUuQrOw</youtube> | | <youtube>6tQhoUuQrOw</youtube> |
| − | <b>HH1 | + | <b>Predicting the Winning Team with Machine Learning |
| − | </b><br>BB1 | + | </b><br>[[Creatives#Siraj Raval]] Can we predict the outcome of a football game given a dataset of past games? That's the question that we'll answer in this episode by using the [[Python#scikit-learn|scikit-learn]] machine learning library as our predictive tool. [http://github.com/llSourcell/Predicting_Winning_Teams Code for this video] |
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| | <youtube>pMyWrsA9Qeo</youtube> | | <youtube>pMyWrsA9Qeo</youtube> |
| − | <b>HH2 | + | <b>Artificial Intelligence Football Analysis or machine learning football |
| − | </b><br>BB2 | + | </b><br>Artificial Intelligence Football Analysis or machine learning football |
| | + | Most beautiful watch ever ! with Speaker, Heart Rate, GPS, NFC, and Smartphone Notifications: http://amzn.to/2JDSSGX To make sense of data, OLOCIP brings together the most advanced modeling strategies, capable of transforming temporal-space data into transparent statistical models, with a thorough insight to the differential factors of the sport. Artificial Intelligence (AI ) enables a complete and secure analysis based on a more efficient capability that can register, retain and discern the events captured. In this way, Olocip transparent IA models, not only detect and identify each of the weak points, but also provides instructions in order to maximize the achievement of marked objectives. Combining scientific rigor, technological innovation and best in class soccer expertise, This is how OLOCIP creates support applications that facilitate and optimize decision making, acting from the descriptive dimension to predictive and prescriptive dimension that optimize the management of soccer clubs and related companies. |
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| − | <b>HH1 | + | <b>Sports Betting with Reinforcement Learning |
| − | </b><br>BB1 | + | </b><br>[[Creatives#Siraj Raval]] - Sports betting is a popular past-time for many and a great use-case for an important concept known as dynamic programming that I’ll introduce in this video. We'll go over concepts like value iteration, the [[Markov Decision Process (MDP)]], and the bellman optimality principle, all to help create a system that will help US optimally bet on the winning hockey team in order to maximize profits. Code, animations, theory, and yours truly. Enjoy! [http://github.com/llSourcell/sports_betting_with_reinforcement_learning Code for this video] |
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