• You can log in to your eeworld account to continue watching:
  • Reinforcement Learning Basics
  • Login
  • Duration:10 minutes and 38 seconds
  • Date:2018/04/01
  • Uploader:老白菜
Introduction
This course is aimed at all types of programming learners. It explains the currently popular machine learning-related technologies and methods, helps learners master the basic ability of machine learning algorithms to solve general problems using Python language, and gets a glimpse of the mysteries of cutting-edge machine learning algorithms.
This course introduces scikit-learn, a popular machine learning algorithm library in the Python computing ecosystem. These algorithms have extremely wide application potential in engineering, information, management, economics and other disciplines, and are used by major scientific research institutes and internationally renowned institutions around the world. Widely used by companies, it includes two parts: compulsory content and elective content.

The compulsory contents include:
(1) Understanding machine learning, introducing classic algorithms by introducing the basic problems of machine learning (classification, clustering, regression, dimensionality reduction);
(2) Python third-party library sklearn (scikit-learn), explaining the application of machines Learn algorithms to quickly solve real-world problems.
The elective content includes:
(1) Explanation of the machine learning principles behind AlphaGo (reinforcement learning);
(2) Demonstration of game battle examples to demonstrate the powerful charm of independent learning through examples.

According to the content characteristics of the third-party library, the course is divided into 6 content modules and 2 practical modules:

Module 1: Basic ideas and principles of machine learning vs. sklearn library
Module 2: Clustering, algorithms and use cases of unsupervised learning (sklearn in K-means, DBSCAN)
Module 3: Dimensionality reduction, algorithms and use cases
of unsupervised learning (PCA, NMF in sklearn) Module 4: Classification, algorithms and use cases of supervised learning (KNN, Naive Bayes, Decision Tree in sklearn )
Module 5: Regression, algorithms and use cases of supervised learning (linear regression, non-linear review in sklearn)
Module 6 (Practical): Writing examples of supervised learning to achieve handwriting recognition, algorithm comparison and analysis
Module 7 (Elective): Reinforcement learning methods, Deep Learning
Module 8 (Elective, Practical Combat): Practical Project: Flappy Bird Game Intelligent Battle
Unfold ↓

You Might Like

Recommended Posts

ACM19264A01 LCD screen
I have an ACM19264A01 LCD screen. How do I know what its driver chip is? Is there a Chinese font library? Thank you!
qwei312 51mcu
Open course download address
Open course download address
平行缘分 51mcu
Problems in RGB mixed white light LED
[i=s]This post was last edited by qwqwqw2088 on 2015-11-7 09:46[/i] [p=22, null, left][color=rgb(51,51,51)][font=宋体, Georgia, verdana, serif]When making white light LEDs that synthesize the three prim
qwqwqw2088 LED Zone
【Comparison Contest】+ Preparation for WENENCH design: PCB, and provide communication: cost price 5 yuan
[i=s] This post was last edited by dontium on 2014-6-26 15:22 [/i] Among the TI power ICs I have, there are still a few that don’t have PCBs, and I plan to make them later. This is the PCB of TPS54360
dontium Analogue and Mixed Signal
What are the advantages of using data selectors to form a full adder?
What are the advantages of using data selectors to form a full adder?
量子阱 FPGA/CPLD
Some misunderstandings and precautions of C51
1) C is averse to absolute positioning. I often see beginners asking to use _at_. This is a fallacy, treating C as ASM. In C, variable positioning is the job of the compiler. As long as beginners defi
呱呱 51mcu

Recommended Content

Circuit

可能感兴趣器件

EEWorld
subscription
account

EEWorld
service
account

Automotive
development
circle

About Us Customer Service Contact Information Datasheet Sitemap LatestNews


Room 1530, 15th Floor, Building B, No.18 Zhongguancun Street, Haidian District, Beijing, Postal Code: 100190 China Telephone: 008610 8235 0740

Copyright © 2005-2024 EEWORLD.com.cn, Inc. All rights reserved 京B2-20211791 京ICP备10001474号-1 电信业务审批[2006]字第258号函 京公网安备 11010802033920号