李小萌资源网 人工智能 斯坦福大学吴恩达Andrew Ng机器学习教程


斯坦福大学吴恩达Andrew Ng机器学习教程

2019-08-22 1241
陈胖子学长
资源介绍

斯坦福大学吴恩达Andrew Ng机器学习教程

机器学习是一门让计算机在非精确编程下進行活动的科学。在过去十年,机器学习促成了无人驾驶车、高效语音识别、精确网络搜索及人类基因组认知的大力发展。机器学习如此无孔不入,你可能已经在不知情的情况下利用过无数次。许多研究者认为,这种手段是达到人类水平AI的最佳方式。这门课程中,你将学习到高效的机器学习技巧,及学会如何利用它为你服务。重点是,你不仅能学到理论基础,更能知晓如何快速有效应用这些技巧到新的问题上。最后,你会接触到硅谷创新中几个优秀的涉及机器学习与AI的应用实例。
此课程将广泛介绍机器学习、数据挖掘与统计模式识别的知识。
主题包括:
(i) 监督学习(参数/非参数算法、支持向量机、内核、神经网络)。

(iii) 机器学习的优秀案例(偏差/方差理论;机器学习和人工智能的创新过程)课程将拮取案例研究与应用,学习如何将学习算法应用到智能机器人(观感,控制)、文字理解(网页搜索,防垃圾邮件)、计算机视觉、医学信息学、音频、数据挖掘及其他领域上。


【课程内容】
1 - 1 - Welcome (7 min)

1 - 2 - What is Machine Learning- (7 min)
1 - 3 - Supervised Learning (12 min)
1 - 4 - Unsupervised Learning (14 min)
2 - 1 - Model Representation (8 min)
2 - 2 - Cost Function (8 min)
2 - 3 - Cost Function - Intuition I (11 min)
2 - 4 - Cost Function - Intuition II (9 min)
2 - 5 - Gradient Descent (11 min)
2 - 6 - Gradient Descent Intuition (12 min)
2 - 7 - Gradient Descent For Linear Regression (10 min)
2 - 8 - What-'s Next (6 min)
3 - 1 - Matrices and Vectors (9 min)
3 - 2 - Addition and Scalar Multiplication (7 min)
3 - 3 - Matrix Vector Multiplication (14 min)
3 - 4 - Matrix Matrix Multiplication (11 min)
3 - 5 - Matrix Multiplication Properties (9 min)
3 - 6 - Inverse and Transpose (11 min)
4 - 1 - Multiple Features (8 min)
4 - 2 - Gradient Descent for Multiple Variables (5 min)
4 - 3 - Gradient Descent in Practice I - Feature Scaling (9 min)
4 - 4 - Gradient Descent in Practice II - Learning Rate (9 min)
4 - 5 - Features and Polynomial Regression (8 min)
4 - 6 - Normal Equation (16 min)
4 - 7 - Normal Equation Noninvertibility (Optional) (6 min)
5 - 1 - Basic Operations (14 min)
5 - 2 - Moving Data Around (16 min)
5 - 3 - Computing on Data (13 min)
5 - 4 - Plotting Data (10 min)
5 - 5 - Control Statements- for, while, if statements (13 min)
5 - 6 - Vectorization (14 min)
5 - 7 - Working on and Submitting Programming Exercises (4 min)
6 - 1 - Classification (8 min)
6 - 2 - Hypothesis Representation (7 min)
6 - 3 - Decision Boundary (15 min)
6 - 4 - Cost Function (11 min)
6 - 5 - Simplified Cost Function and Gradient Descent (10 min)
6 - 6 - Advanced Optimization (14 min)
6 - 7 - Multiclass Classification- One-vs-all (6 min)
7 - 1 - The Problem of Overfitting (10 min)
7 - 2 - Cost Function (10 min)
7 - 3 - Regularized Linear Regression (11 min)
7 - 4 - Regularized Logistic Regression (9 min)
8 - 1 - Non-linear Hypotheses (10 min)
8 - 2 - Neurons and the Brain (8 min)
8 - 3 - Model Representation I (12 min)
8 - 4 - Model Representation II (12 min)
8 - 5 - Examples and Intuitions I (7 min)
8 - 6 - Examples and Intuitions II (10 min)
8 - 7 - Multiclass Classification (4 min)
9 - 1 - Cost Function (7 min)
9 - 2 - Backpropagation Algorithm (12 min)
9 - 3 - Backpropagation Intuition (13 min)
9 - 4 - Implementation Note- Unrolling Parameters (8 min)
9 - 5 - Gradient Checking (12 min)
9 - 6 - Random Initialization (7 min)
9 - 7 - Putting It Together (14 min)
9 - 8 - Autonomous Driving (7 min)
10 - 1 - Deciding What to Try Next (6 min)
10 - 2 - Evaluating a Hypothesis (8 min)
10 - 3 - Model Selection and Train-Validation-Test Sets (12 min)
10 - 4 - Diagnosing Bias vs. Variance (8 min)
10 - 5 - Regularization and Bias-Variance (11 min)
10 - 6 - Learning Curves (12 min)
10 - 7 - Deciding What to Do Next Revisited (7 min)
11 - 1 - Prioritizing What to Work On (10 min)
11 - 2 - Error Analysis (13 min)
11 - 3 - Error Metrics for Skewed Classes (12 min)
11 - 4 - Trading Off Precision and Recall (14 min)
11 - 5 - Data For Machine Learning (11 min)
12 - 1 - Optimization Objective (15 min)
12 - 2 - Large Margin Intuition (11 min)
12 - 3 - Mathematics Behind Large Margin Classification (Optional) (20 min)
12 - 4 - Kernels I (16 min)
12 - 5 - Kernels II (16 min)
12 - 6 - Using An SVM (21 min)
13 - 1 - Unsupervised Learning- Introduction (3 min)
13 - 2 - K-Means Algorithm (13 min)
13 - 3 - Optimization Objective (7 min)
13 - 4 - Random Initialization (8 min)
13 - 5 - Choosing the Number of Clusters (8 min)
14 - 1 - Motivation I- Data Compression (10 min)
14 - 2 - Motivation II- Visualization (6 min)
14 - 3 - Principal Component Analysis Problem Formulation (9 min)
14 - 4 - Principal Component Analysis Algorithm (15 min)
14 - 5 - Choosing the Number of Principal Components (11 min)
14 - 6 - Reconstruction from Compressed Representation (4 min)
14 - 7 - Advice for Applying PCA (13 min)
15 - 1 - Problem Motivation (8 min)
15 - 2 - Gaussian Distribution (10 min)
15 - 3 - Algorithm (12 min)
15 - 4 - Developing and Evaluating an Anomaly Detection System (13 min)
15 - 5 - Anomaly Detection vs. Supervised Learning (8 min)
15 - 6 - Choosing What Features to Use (12 min)<br style="overflow-wrap: break-word; color: rgb(111, 116, 121); font-family: -apple-system, " helvetica="" neue",="" helvetica,="" arial,="" "pingfang="" sc",="" "hiragino="" sans="" gb",="" stheiti,="" "microsoft="" yahei",="" jhenghei",="" simsun,="" sans-serif;="" font-size:="" 14px;"="">





百度网盘可以用手机平板电脑在线播放,也可以下载之后播放

本帖资源评论
人工智能与大数据特训班视频课程 包含基础理论和项目实战
小象学院机器学习升级版 第七期+课程源码
Matlab机器学习基础与实战
[机器学习/深度学习] 北风网人工智能全面系统学习课程 推荐系统+深度学习+机器学习三大阶段实战人工智能
台大机器学习技法 视频教程+课件
机器学习实战应用视频教程 机器学习&推荐系统文档 机器学习必备实践课程
深度学习与PyTorch入门实战教程(价值399元)
GPU并行计算和CUDA程序开发及优化
[机器学习/深度学习] Udacity深度学习4套精华课程合集 神经网络+卷积神经网络+循环神经网络+生成对抗网络
硅谷专家讲解模型评估和验证视频教程附源码英语中文字幕 253课
最新深度学习与机器学习
[机器学习/深度学习] 最新机器学习超多项目实战 纯项目实战+音乐推荐系统+Pytorch+机器翻译+金融反欺诈等
[人工智能] 专业数据分析视频教程 SPSS视频教程(经典讲解+案例分析+数据处理+综合实例讲解
人工智能机器学习全新升级版I
某善智能全集(精品)
小象学院机器学习升级版 第七期+课程源码
大数据-基于Spark的机器学习-智能客户系统项目实战 2017年11月
机器学习项目班100%纯实战 附代码、资料
上海交大 统计机器学习 41讲 张志华主讲 视频教程 教学视频
[数据挖掘] 机器读心术之文本挖掘与自然语言处理 炼数成金机器学习视频教程
没有账号? 注册