机器学习实战:基于ScikitLearn和TensorFlow
作者:Aurélien Géron
出版社:机械工业出版社
ISBN:9787111603023
VIP会员免费
(仅需0.8元/天)
¥ 60.0
温馨提示: 价值40000元的1000本电子书,VIP会员随意看哦!
电子书推荐
-
Machine Learning in Action&机器学习实战(高清中文版PDF+高清英文版PDF+源代码) 评分:
经典机器学习书籍Machine Learning in Action 高清中文版,配套源代码。 涉及机器学习绝大部分算法且算法讲解详细,并有配套源代码。 下载地址:https://pan.baidu.com/s/1rrvOT0eEWTkDXhZgeIhjFw
上传时间:2018-11 大小:186B
- 6.57MB
Machine Learning In Action pdf
2013-07-28Machine Learning In Action filetype:pdf 机器学习的python实践
- 16.14MB
机器学习实战_Machine_Learning_in_Action.pdf
2021-09-14机器学习实战_Machine_Learning_in_Action.pdf
- 9.8MB
Machine Learning in Action.pdf
2018-07-30Machine Learning in Action is unique book that blends the foundational theories of machine learning with the practical realities of building tools for everyday data analysis. You'll use the flexible Python programming language to build programs that implement algorithms for data classification, forecasting, recommendations, and higher-level features like summarization and simplification. About the Book A machine is said to learn when its performance improves with experience. Learning requires algorithms and programs that capture data and ferret out the interesting or useful patterns. Once the specialized domain of analysts and mathematicians, machine learning is becoming a skill needed by many. Machine Learning in Action is a clearly written tutorial for developers. It avoids academic language and takes you straight to the techniques you'll use in your day-to-day work. Many (Python) examples present the core algorithms of statistical data processing, data analysis, and data visualization in code you can reuse. You'll understand the concepts and how they fit in with tactical tasks like classification, forecasting, recommendations, and higher-level features like summarization and simplification. Readers need no prior experience with machine learning or statistical processing. Familiarity with Python is helpful. What's InsideA no-nonsense introduction Examples showing common ML tasks Everyday data analysis Implementing classic algorithms like Apriori and Adaboos =================================== Table of ContentsPART 1 CLASSIFICATION Machine learning basics Classifying with k-Nearest Neighbors Splitting datasets one feature at a time: decision trees Classifying with probability theory: naïve Bayes Logistic regression Support vector machines Improving classification with the AdaBoost meta algorithm PART 2 FORECASTING NUMERIC VALUES WITH REGRESSION Predicting numeric values: regression Tree-based regression PART 3 UNSUPERVISED LEARNING Grouping unlabeled items using k-means clustering Association analysis with the Apriori algorithm Efficiently finding frequent itemsets with FP-growth PART 4 ADDITIONAL TOOLS Using principal component analysis to simplify data Simplifying data with the singular value decomposition Big data and MapReduce
- 30.46MB
Machine Learning in Action源码
2014-02-27Machine Learning in Action书中源码,里面有书中用到的数据等
- 15.36MB
Machine-Learning-In-Action:机器学习实战源代码
2021-03-23行动中的机器学习 这是与Manning Inc.出版的Peter Harrington所著的“机器学习在行动”一起使用的源代码。该书的官方页面可以在这里找到: : 所有代码示例均在Python 2.6上运行,而2.7应该没有任何问题。 大多数示例都需要NumPy。 如果您无法运行我们在论坛上为本书所知的任何示例,: : ?forumID= 。 如果您想在其他版本的Python(例如3.0或IronPython)上运行它们,请随意编写代码。
- 0B
Machine Learning in Action(机器学习英文原版教材).pdf
2022-12-02Machine Learning in Action(机器学习英文原版教材).pdf
- 14.23MB
机器学学习实战 Machine Learning in Action
2018-04-21机器学学习实战 Machine Learning in Action各章的源代码和所需要的数据。
- 39.87MB
Machine Learning In Action(英文版) + 源碼
2017-06-03Manning 出版社。
- 38.82MB
《Machine Learning in Action》+SourceCode
2014-06-13Peter Harrington,《Machine Learning in Action》,附加源码和数据集。
- 11.76MB
Machine Learning in Action
2013-01-01Machine Learning in Action,机器学习入门书籍!没有过多的理论推导,用程序诠释抽象的概念。
- 8.62MB
Machine.Learning.in.Action(2012.3)Peter.Harrington.文字版.pdf.pdf
2019-09-14Machine.Learning.in.Action(2012.3)Peter.Harrington.文字版.pdf
- 10.31MB
Machine.Learning.in.Action(2012.3)].Peter.Harrington.文字版.pdf )
2013-06-23机器学习 实战宝典 完美目录 非常好的资料 !
- 7.65MB
Machine Learning in Action 原版PDF by Harrington
2018-05-05This book sets out to introduce people to important machine learning algorithms. Tools and applications using these algorithms are introduced to give the reader an idea of how they are used in practice today. A wide selection of machine learning books is available, which discuss the mathematics, but discuss little of how to program the algorithms. This book aims to be a bridge from algorithms presented in matrix form to an actual functioning program. With that in mind, please note that this book is heavy on code and light on mathematics
- 6.64MB
IronPython in Action.pdf
2018-12-26IronPython 经典书籍
- 6.78MB
IronPython in Action 无水印pdf版
2019-04-21IronPython in Action 无水印pdf版。 IronPython in Action 英文无水印pdf pdf所有页面使用FoxitReader和PDF-XChangeViewer测试都可以打开 本资源转载自网络 IronPython Action
- 8.70MB
IronPython in Action.7z
2019-06-14IronPython in Action
- 9.57MB
IronPython in Action
2010-09-13知道IronPython的都知道这是Bible,下吧~
- 8.0MB
IronPython_in_action.pdf.pdf
2019-09-12IronPython_in_action.pdf
- 352KB
MachineLearninginAction
2021-04-17Machine Learning in Action based on PyCharm 介绍 Peter Harrington机器学习实战配套参考code 机器学习入门PyCharm 实现 目录 01 k近邻算法
- 32.49MB
machinelearninginaction.zip
2021-04-01各类机器学习源代码(不使用第三方库),其中除了源码还有练习所用的数据集。
- 2KB
MachineLearningInAction:机器学习实战源代码管理
2021-03-23MachineLearningInAction:机器学习实战源代码管理
- 1.95MB
ChatGPT教程(终极版)最全整理
2023-05-16这是一篇动了某些人利益的良心教程。 这是一篇姗姗来迟的ChatGPT教程。 纯小白关于ChatGPT入门,你看我这篇文章就够了。 如果你已经用上了ChatGPT,更要恭喜你挖到宝藏,后面的高级技巧一定能让你有收获。 文章包含以下内容: 一、ChatGPT是啥?有什么用; 二、ChatGPT如何注册; 三、ChatGPT使用方法; 四、用ChatGPT搞钱; 五、高级技巧;
- 58KB
博客中Kmeans以及FCM算法数据(免积分)
2023-05-16博客中Kmeans以及FCM算法的数据,包括IRIS鸢尾花数据集、Wine葡萄酒数据集、Seed小麦种子数据集、glass数据集、WDBD乳腺癌数据集,下载在直接存入项目文件夹即可,如果下载不了,可以私信我,看到后会及时回复。
- 28.70MB
EDA探索式数据分析案例数据集
2024-02-25EDA探索式数据分析案例数据集
- 1.25MB
hugging face的models-openai-clip-vit-large-patch14文件夹
2023-10-25用于无法访问hugging face并需要运行stable-diffusion-webui时使用
- 10KB
神经网络回归预测--气温数据集
2021-11-26神经网络回归预测--气温数据集
- 1.87MB
XGBoost+LightGBM+LSTM-光伏发电量预测
2022-12-24包含比赛代码、数据、训练后的神经网络模型等。 在分析光伏发电原理的基础上,论证了辐照度、光伏板工作温度等影响光伏输出功率的因素,通过实时监测的光伏板运行状态参数和气象参数建立预测模型,预估光伏电站瞬时发电量,根据光伏电站DCS系统提供的实际发电量数据进行对比分析,验证模型的实际应用价值。 1 数据探索与数据预处理 1.1 赛题回顾 1.2 数据探索性分析与异常值处理 1.3 相关性分析 2 特征工程 2.1 光伏发电领域特征 2.2 高阶环境特征 3 模型构建与调试 3.1 预测模型整体结构 3.2 基于LightGBM与XGBoost的构建与调试 3.3 基于LSTM的模型构建与调试 3.4 模型融合与总结 4 总结与展望 参考文献
- 321KB
Stable-Diffusion WEBUI 简体中文语言包(2023.05.30更新)
2023-05-30AI绘图,Stable-Diffusion WEBUI,本地化(简体中文)语言文件。 原始文件来自翻译插件,根据自己实际使用情况,增加和修改了一些翻译。 配合【双语插件】看上去要自然一点,内容还在继续完善中。 本次增加了一些翻译内容,特别是插件。 同时继续合并了其它翻译插件的内容。 最近文字提示修改得有点多啊。 请放入“你的SDWebUI项目位置/localizations/”中。 中文翻译部分删掉了不少括起来的英文原文,所以别直接选它用。 请配合【Bilingual Localization】插件使用,双语同时显示,效果最好。