Coursera吴恩达机器学习课程笔记及资源整理
☆558Mar 18, 2024Updated 2 years ago
Alternatives and similar repositories for Notes-ML-AndrewNg
Users that are interested in Notes-ML-AndrewNg are comparing it to the libraries listed below. We may earn a commission when you buy through links labeled 'Ad' on this page.
Sorting:
- 吴恩达老师的机器学习课程个人笔记☆36,854Aug 25, 2025Updated 8 months ago
- coursera吴恩达机器学习课程作业自写Python版本+Matlab原版☆960Jan 11, 2018Updated 8 years ago
- deeplearning.ai(吴恩达老师的深度学习课程笔记及资源)☆20,536Apr 29, 2022Updated 4 years ago
- 吴恩达机器学习作业☆714Feb 26, 2024Updated 2 years ago
- 吴恩达《深度学习》系列课程笔记及代码 | Notes in Chinese for Andrew Ng Deep Learning Course☆1,038Jan 19, 2022Updated 4 years ago
- Managed hosting for WordPress and PHP on Cloudways • AdManaged hosting for WordPress, Magento, Laravel, or PHP apps, on multiple cloud providers. Deploy in minutes on Cloudways by DigitalOcean.
- Andrew Ng's machine learning programming assignments on Coursera☆111Jul 23, 2019Updated 6 years ago
- 一些高质量电子书资源分享 -- 严选经典和易懂的书☆19Jul 23, 2019Updated 6 years ago
- 机器学习-Coursera-吴恩达- python+Matlab代码实现☆217May 27, 2022Updated 3 years ago
- 台大机器学习课程作业详解☆304May 20, 2019Updated 6 years ago
- PyTorch implementation of Attentional Factorization Machines☆10May 30, 2019Updated 6 years ago
- 南瓜书:《机器学习》(西瓜书)公式详解☆25,797Apr 22, 2026Updated 2 weeks ago
- TensorFlow上的一些项目实例☆16Apr 15, 2019Updated 7 years ago
- 吴恩达机器学习coursera课程,学习代码(2017年秋) The Stanford Coursera course on MachineLearning with Andrew Ng☆274May 11, 2020Updated 5 years ago
- 周志华《机器学习》又称西瓜书是一本较为全面的书籍,书中详细介绍了机器学习领域不同类型的算法(例如:监督学习、无监督学习、半监督学习、强化学习、集成降维、特征选择等),记录了本人在学习过程中的理解思路与扩展知识点,希望对新人阅读西瓜书有所帮助!☆7,706Feb 26, 2022Updated 4 years ago
- Wordpress hosting with auto-scaling - Free Trial Offer • AdFully Managed hosting for WordPress and WooCommerce businesses that need reliable, auto-scalable performance. Cloudways SafeUpdates now available.
- LatexTalk☆11Mar 23, 2024Updated 2 years ago
- Risk Minimization Algorithms in Structured Prediction (JMLR 2016)☆13Jan 26, 2017Updated 9 years ago
- 《李宏毅深度学习教程》(李宏毅老师推荐👍,苹果书🍎),PDF下载地址:https://github.com/datawhalechina/leedl-tutorial/releases☆16,525Nov 23, 2025Updated 5 months ago
- 机器学习师从Andrew Ng(吴恩达),获得在Coursera平台上斯坦福大学Andrew Ng(吴恩达教授)机器学习(Machine Learning)的资格证书,为了有一个平台和大家分享和交流机器学习,因此特地在此进行课程的:笔记整理,重点划分,内置习题,在线习题,…☆73Oct 15, 2019Updated 6 years ago
- 机器学习初学者公众号作品☆2,334Mar 21, 2021Updated 5 years ago
- Statistical learning methods, 统计学习方法(第2版)[李航] [笔记, 代码, notebook, 参考文献, Errata, lihang]☆6,292Aug 5, 2023Updated 2 years ago
- 周志华《机器学习》手推笔记☆3,770Mar 13, 2021Updated 5 years ago
- 深度学习笔记☆816Dec 19, 2020Updated 5 years ago
- 数据科学的笔记以及资料搜集☆8,553Aug 16, 2021Updated 4 years ago
- GPU virtual machines on DigitalOcean Gradient AI • AdGet to production fast with high-performance AMD and NVIDIA GPUs you can spin up in seconds. The definition of operational simplicity.
- AiLearning:数据分析+机器学习实战+线性代数+PyTorch+NLTK+TF2☆42,220Nov 12, 2024Updated last year
- 机器学习算法python实现☆8,468May 20, 2024Updated last year
- Python 进阶学习笔记☆531Aug 10, 2020Updated 5 years ago
- 记录Learning from data一书中的习题解答☆1,002May 15, 2019Updated 6 years ago
- 《动手学深度学习》:面向中文读者、能运行、可讨论。中英文版被70多个国家的500多所大学用于教学。☆77,678Jul 30, 2024Updated last year
- 《机器学习实战》的python3源码☆1,343Aug 2, 2020Updated 5 years ago
- 《统计学习方法》的代码实现☆19,581Aug 22, 2023Updated 2 years ago
- 致力于将李航博士《统计学习方法》一书中所有算法实现一遍☆5,837Apr 29, 2019Updated 7 years ago
- 机器学习相关教程☆12,912Dec 22, 2020Updated 5 years ago
- 1-Click AI Models by DigitalOcean Gradient • AdDeploy popular AI models on DigitalOcean Gradient GPU virtual machines with just a single click. Zero configuration with optimized deployments.
- 吴恩达机器学习课程的讲义,欢迎大家一起学习☆1,523Apr 29, 2019Updated 7 years ago
- 《python数据分析与挖掘实战》的代码笔记☆1,800Aug 2, 2020Updated 5 years ago
- B站上炼数成金的公开课笔记☆364Aug 24, 2019Updated 6 years ago
- 手写实现李航《统计学习方法》书中全部算法☆11,616Nov 25, 2025Updated 5 months ago
- 机器学习笔记,来源于:李航的《统计学习方法》 周志华的《机器学习》 Peter Harrington 的《机器学习实战》 以及Python的 Scikit-Learn 开源库。☆43May 14, 2016Updated 9 years ago
- Python programming assignments for Machine Learning by Prof. Andrew Ng in Coursera☆1,440Sep 2, 2020Updated 5 years ago
- 深度学习500问,以问答形式对常用的概率知识、线性代数、机器学习、深度学习、计算机视觉等热点问题进行阐述,以帮助自己及有需要的读者。 全书分为18个章节,50余万字。由于水平有限,书中不妥之处恳请广大读者批评指正。 未完待续............ 如有意合作,联系sc…☆57,365Jun 26, 2024Updated last year