Learning Python Application Development Learning Python Application Development
2023-11-25 06:02:26 73.55MB python
1
深度SVDD的PyTorch实现 该存储库提供了我们的ICML 2018论文“深度一类分类”中介绍的Deep SVDD方法的实现。 引用与联系 您可以在找到《深层一类分类ICML 2018》论文的PDF。 如果您使用我们的作品,也请引用以下文章: @InProceedings{pmlr-v80-ruff18a, title = {Deep One-Class Classification}, author = {Ruff, Lukas and Vandermeulen, Robert A. and G{\"o}rnitz, Nico and Deecke, Lucas and Siddiqui, Shoaib A. and Binder, Alexander and M{\"u}ller, Emmanuel and Kloft, Marius}, bookti
2023-11-24 15:54:02 2.12MB python machine-learning deep-learning pytorch
1
– Volume 2 – 20 Deep Learning 21 Convolutional Neural Nets (CNNs) 22 Recurrent Nerual Nets (RNNs) 23 Keras Part 1 24 Keras Part 2 25 Autoencoders 26 Reinforcement Learning 27 Generative Adversarial Networks (GANs) 28 Creative Applications 29 Datasets 30 Glossary
2023-11-23 13:30:42 45.26MB 深度学习 人工智能
1
SincNet SincNet是用于处理原始音频样本的神经体系结构。 这是一种新颖的卷积神经网络(CNN),它鼓励第一个卷积层发现更多有意义的滤波器。 SincNet基于参数化的Sinc函数,这些函数实现了带通滤波器。 与学习每个滤波器的所有元素的标准CNN相比,所提出的方法只能从数据中直接学习低和高截止频率。 这提供了一种非常紧凑而有效的方式来导出专门针对所需应用进行了调整的定制滤波器组。 该项目发布了一系列代码和实用程序,可通过SincNet进行说话人识别。 使用TIMIT数据库提供了说话人识别的示例。 如果您对应用于语音识别的SincNet感兴趣,可以查看PyTorch-Kaldi
2023-11-23 13:09:20 173KB audio python deep-learning signal-processing
1
  如果你是一名有经验的程序员,迅速阅读此书可以大体了解Python语言的核心。掌握了Python语言的核心,想再深入了解它的面向对象特性和编程技巧,可以看其他的Python大部头,或者最直接也是最有效的方式,下载并安装Python,在它的“Shell”里边用边学,这样可以事半功倍;如果你英语够好,python.org网站将是你挖宝的必经之地。此书也讲到了Python的这一易学特性,只要你仔细认真,定会从学习中得到乐趣。   《Python语言入门》曾是我大学时期读过的专业类好书之一,现在在我的同学中传阅。译者翻译得比较准确、通顺。在Python的入门级图书中,《Python语言入门》不失为一部经典之作。
2023-11-22 06:03:06 13.44MB Python Mobi mobi
1
Deep_Learning_for_Computer_Vision_with_Python,作者Adrian Rosebrock, 资料包含Starter, Practitioner, ImageNet Bundle三本书。
2023-11-15 06:03:12 60.58MB
1
Deep Learning for Computer Vision with Python Practioner Bundle + Starter Bundle by Adrian Rosebrock of PyImageSearch
2023-11-05 06:05:26 35.15MB Deep Learning Computer Vision
1
82篇顶会巨佬撰写的入门机器学习与深度学习的神书
2023-11-03 15:30:06 39.14MB python 机器学习
1
Python Machine Learning By Example by Yuxi (Hayden) Liu English | 31 May 2017 | ASIN: B01MT7ATL5 | 254 Pages | AZW3 | 3.86 MB Key Features Learn the fundamentals of machine learning and build your own intelligent applications Master the art of building your own machine learning systems with this example-based practical guide Work with important classification and regression algorithms and other machine learning techniques Book Description Data science and machine learning are some of the top buzzwords in the technical world today. A resurging interest in machine learning is due to the same factors that have made data mining and Bayesian analysis more popular than ever. This book is your entry point to machine learning. This book starts with an introduction to machine learning and the Python language and shows you how to complete the setup. Moving ahead, you will learn all the important concepts such as, exploratory data analysis, data preprocessing, feature extraction, data visualization and clustering, classification, regression and model performance evaluation. With the help of various projects included, you will find it intriguing to acquire the mechanics of several important machine learning algorithms – they are no more obscure as they thought. Also, you will be guided step by step to build your own models from scratch. Toward the end, you will gather a broad picture of the machine learning ecosystem and best practices of applying machine learning techniques. Through this book, you will learn to tackle data-driven problems and implement your solutions with the powerful yet simple language, Python. Interesting and easy-to-follow examples, to name some, news topic classification, spam email detection, online ad click-through prediction, stock prices forecast, will keep you glued till you reach your goal. What you will learn Exploit the power of Python to handle data extraction, manipulation, and exploration techniques Use Python to visualize data spread across multiple dimensions and extract useful features Dive deep into the world of analytics to predict situations correctly Implement machine learning classification and regression algorithms from scratch in Python Be amazed to see the algorithms in action Evaluate the performance of a machine learning model and optimize it Solve interesting real-world problems using machine learning and Python as the journey unfolds About the Author Yuxi (Hayden) Liu is currently a data scientist working on messaging app optimization at a multinational online media corporation in Toronto, Canada. He is focusing on social graph mining, social personalization, user demographics and interests prediction, spam detection, and recommendation systems. He has worked for a few years as a data scientist at several programmatic advertising companies, where he applied his machine learning expertise in ad optimization, click-through rate and conversion rate prediction, and click fraud detection. Yuxi earned his degree from the University of Toronto, and published five IEEE transactions and conference papers during his master's research. He finds it enjoyable to crawl data from websites and derive valuable insights. He is also an investment enthusiast. Table of Contents Getting Started with Python and Machine Learning Exploring the 20 newsgroups data set Spam email detection with Naive Bayes News topic classification with Support Vector Machine Click-through prediction with tree-based algorithms Click-through rate prediction with logistic regression Stock prices prediction with regression algorithms Best practices
2023-10-26 06:05:21 3.86MB Python Machine Learning
1
Large Scale Machine Learning with Python [PDF + EPUB + CODE] Packt Publishing | August 4, 2016 | English | 439 pages Large Python machine learning projects involve new problems associated with specialized machine learning architectures and designs that many data scientists have yet to tackle. But finding algorithms and designing and building platforms that deal with large sets of data is a growing need. Data scientists have to manage and maintain increasingly complex data projects, and with the rise of big data comes an increasing demand for computational and algorithmic efficiency. Large Scale Machine Learning with Python uncovers a new wave of machine learning algorithms that meet scalability demands together with a high predictive accuracy. Dive into scalable machine learning and the three forms of scalability. Speed up algorithms that can be used on a desktop computer with tips on parallelization and memory allocation. Get to grips with new algorithms that are specifically designed for large projects and can handle bigger files, and learn about machine learning in big data environments. We will also cover the most effective machine learning techniques on a map reduce framework in Hadoop and Spark in Python.
2023-10-26 06:03:49 10.97MB Large Scale Machine Learning
1