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Deep Learning

  • Neural Networks and Deep Learning(简体中文)

    Neural Networks and Deep Learning(简体中文),比较经典的深度学习入门教程。

    标签: Networks Learning Neural Deep and 简体中文

    上传时间: 2016-11-09

    上传用户:zhousui

  • 深度学习 Deep Learning 经典书籍教程合集,共11本

    图像配准理论及算法研究.pdf cnn_tutorial.pdf Deep Learning(深度学习)学习笔记整理.pdf 00.神经⽹络与深度学习.pdf Deep Learning.pdf 深度学习方法及应用PDF高清晰完整版.pdf 斯坦福大学-深度学习基础教程.pdf 深度学习基础教程.pdf deep+learning.pdf 深度学习 中文版 ---文字版.pdf 神经网络与机器学习(原书第3版).pdf

    标签: 低压 电工 实用技术 问答

    上传时间: 2013-06-07

    上传用户:eeworm

  • deep API

    Deep Learning paper Deep Learning paper Deep Learning paper Deep Learning paper Deep Learning paper Deep Learning paper Deep Learning paper Deep Learning paper

    标签: deep API

    上传时间: 2018-06-13

    上传用户:1203955829@qq.com

  • Auto-Machine-Learning-Methods-Systems-Challenges

    The past decade has seen an explosion of machine learning research and appli- cations; especially, Deep Learning methods have enabled key advances in many applicationdomains,suchas computervision,speechprocessing,andgameplaying. However, the performance of many machine learning methods is very sensitive to a plethora of design decisions, which constitutes a considerable barrier for new users. This is particularly true in the booming field of Deep Learning, where human engineers need to select the right neural architectures, training procedures, regularization methods, and hyperparameters of all of these components in order to make their networks do what they are supposed to do with sufficient performance. This process has to be repeated for every application. Even experts are often left with tedious episodes of trial and error until they identify a good set of choices for a particular dataset.

    标签: Auto-Machine-Learning-Methods-Sys tems-Challenges

    上传时间: 2020-06-10

    上传用户:shancjb

  • word2vec源码分析

    mikolove 开源软件word2vec源码分析,深入了解Deep Learning模型

    标签: dl woed2vec

    上传时间: 2015-06-18

    上传用户:xuyue

  • 基于卷积神经网络的深度学习模型分析

    深度学习,神经网络,卷积神经网络 Analysis of Deep Learning Models using CNN Techniques

    标签: 卷积 神经网络 模型分析

    上传时间: 2020-01-02

    上传用户:wzy2020

  • Deep Learning---1

    Inventors have long dreamed of creating machines that think. This desire dates back to at least the time of ancient Greece. The mythical figures Pygmalion, Daedalus, and Hephaestus may all be interpreted as legendary inventors, and Galatea, Talos, and Pandora may all be regarded as artificial life ( , Ovid and Martin 2004 Sparkes 1996 Tandy 1997 ; , ; , ).

    标签: Learning Deep

    上传时间: 2020-06-10

    上传用户:shancjb

  • Deep-Learning-with-PyTorch

    We’re living through exciting times. The landscape of what computers can do is changing by the week. Tasks that only a few years ago were thought to require higher cognition are getting solved by machines at near-superhuman levels of per- formance. Tasks such as describing a photographic image with a sentence in idiom- atic English, playing complex strategy game, and diagnosing a tumor from a radiological scan are all approachable now by a computer. Even more impressively, computers acquire the ability to solve such tasks through examples, rather than human-encoded of handcrafted rules.

    标签: Deep-Learning-with-PyTorch

    上传时间: 2020-06-10

    上传用户:shancjb

  • Embedded_Deep_Learning_-_Algorithms

    Although state of the art in many typical machine learning tasks, Deep Learning algorithmsareverycostly interms ofenergyconsumption,duetotheirlargeamount of required computations and huge model sizes. Because of this, Deep Learning applications on battery-constrained wearables have only been possible through wireless connections with a resourceful cloud. This setup has several drawbacks. First, there are privacy concerns. Cloud computing requires users to share their raw data—images, video, locations, speech—with a remote system. Most users are not willing to do this. Second, the cloud-setup requires users to be connected all the time, which is unfeasible given current cellular coverage. Furthermore, real-time applications require low latency connections, which cannot be guaranteed using the current communication infrastructure. Finally, wireless connections are very inefficient—requiringtoo much energyper transferredbit for real-time data transfer on energy-constrained platforms.

    标签: Embedded_Deep_Learning Algorithms

    上传时间: 2020-06-10

    上传用户:shancjb

  • 深度神经网络及目标检测学习笔记

    上面是一段实时目标识别的演示, 计算机在视频流上标注出物体的类别, 包括人、汽车、自行车、狗、背包、领带、椅子等。今天的计算机视觉技术已经可以在图片、视频中识别出大量类别的物体, 甚至可以初步理解图片或者视频中的内容, 在这方面,人工智能已经达到了3 岁儿童的智力水平。这是一个很了不起的成就, 毕竟人工智能用了几十年的时间, 就走完了人类几十万年的进化之路,并且还在加速发展。道路总是曲折的, 也是有迹可循的。在尝试了其它方法之后, 计算机视觉在仿生学里找到了正确的道路(至少目前看是正确的) 。通过研究人类的视觉原理,计算机利用深度神经网络( Deep Neural Network,NN)实现了对图片的识别,包括文字识别、物体分类、图像理解等。在这个过程中,神经元和神经网络模型、大数据技术的发展,以及处理器(尤其是GPU)强大的算力,给人工智能技术的发展提供了很大的支持。本文是一篇学习笔记, 以深度优先的思路, 记录了对深度学习(Deep Learning)的简单梳理,主要针对计算机视觉应用领域。

    标签: 深度神经网络 目标检测

    上传时间: 2022-06-22

    上传用户: