Welcome to Mobilarian Forum - Official Symbianize forum.

Join us now to get access to all our features. Once registered and logged in, you will be able to create topics, post replies to existing threads, give reputation to your fellow members, get your own private messenger, and so, so much more. It's also quick and totally free, so what are you waiting for?

Applied MAB Algorithms For Online Live-Learning Systems

TOP 110


Alpha and Omega
Jan 21, 2021
Reaction score
3 years of service

Published 06/2022
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English + srt | Duration: 35 lectures (4h 30m) | Size: 1.72 GB

Hands-on tuition on how to build smart live-learning MAB agents to improve the click-through rate of ads on the web
What you'll learn
Designing the architecture of live-learning systems that uses multi-armed bandit algorithms.
Using Flask to implement MAB agents to optimise click-through rate of advertisements.
Implementations of Epsilon-Greedy, Softmax Exploration, and UCB in a live-learning system.
Transitioning from simulations of MAB problems into real applications.
General best-practices in Python software development.
General backend development with Flask.
Automation of database migrations and seeding.
Basic Object Oriented Programming in Python.
Basic mathematics (High school algebra is enough)
Previously enrolled in "Practical Multi-Armed Bandit Algorithms in Python"
This course is a sequel to my previous course titled "Practical Multi-Armed Bandit Algorithms In Python" and the goal is to teach how you can readily apply your knowledge on MAB algorithms to build and deploy smarts agents on the web that automatically learns how to improve the click-through rate of advertisements.
Every video in this course is hands-on, and collectively they equip you with expert knowledge on how to build web applications using Flask, and also how to integrate MAB agents that adjust their operations to improve CTR of online ads. By the end of this course, you will know precisely how to implement live-learning agents into web applications to optimise key business goals.
It is one thing knowing how to use simulations to validate the performance of MAB agents. However, transitioning from simulations into their real-world applications require some key skills that are taught in this course. For example, you'll need to know how to do the following
  • store and retrieve information from a database which will be used by the agent to choose actions.
  • translate user interactions (such as clicks) into rewards which the agent can use as evaluative feedback information.
  • adjusting the agent's knowledge to reflect the true user behaviours that has been observed through interaction.
  • implement various MAB algorithms with an API that makes it easier to switch one algorithm for the other.
  • design and implement a good software architecture for online live-learning systems.
I highly recommend that you complete my previous course titled "Practical Multi-Armed Bandit Algorithms In Python" before taking this course since it's a follow-up. However, if you already know how to implement various MAB algorithms, then you can jump right into this course and succeed without struggling.
This course is intentionally taught in a very simple way. It doesn't include the use of advanced mathematics and all you need to know is OOP in Python and simple high school algebra.
Thanks for taking this course! I can't wait to see what you will build with the knowledge shared in here!
Who this course is for
People who already know about multi-armed bandit algorithms and want to transition from simulations into building real applications.
Anyone who wants to learn how to design and implement an architecture for live-learning systems.
Engineers who want to learn how reinforcement learning can be used to optimise click-through rates of adverts.
Students of my previous course "Practical Multi-Armed Bandit Algorithms in Python" who wants to apply their knowledge to real-life situations.
Please, Log in or Register to view codes content!

Recommend Download Link Hight Speed | Please Say Thanks Keep Topic Live
Links are Interchangeable - No Password - Single Extraction
K 0

KatzSec DevOps

Alpha and Omega
Jan 17, 2022
Reaction score
2 years of service
TOP salamat sa pag contribute. Next time always upload your files sa
Please, Log in or Register to view URLs content!
para siguradong di ma dedeadlink. Let's keep on sharing to keep our community running for good. This community is built for you and everyone to share freely. Let's invite more contributors para mabalik natin sigla ng Mobilarian at tuloy ang puyatan. :)
Top Bottom