Original link: https://www.paypal-engineering.com/tag/data-science/absrtact: with the explosive growth of data and thousands of machine clusters, we need to adapt the algorithm to run in such a distributed environment. Running machine learning algorithms in a common distributed computing environment has a number of challenges. This article explores how to implement and deploy deep
The history of CNNIn a review of the 2006 Hinton their science Paper, it was mentioned that the 2006, although the concept of deep learning was proposed, but the academic community is still not satisfied. At that time, there was a story of Hinton students on the stage when the paper, machine learning under the Taiwan Daniel Disdain, questioned your things have a
In recent years, machine learning, represented by deep learning, has become more and more in the field of health care. According to the type of data processed can be divided into numerical, textual and image data; This paper focuses on text data.
Clinical Diagnostic Decisions:
(Miotto r,et al;2016) [1] A new unsupervised depth feature
Original URL: http://www.iteye.com/news/312701. We should see deeper models, which can be learned from fewer training samples compared to today's models, and will make substantial progress in unsupervised learning. We should see more accurate and useful speech and visual recognition systems.2. I expect deep learning to be increasingly used for multi-mode (multi-m
About TensorFlow a very good article, reprinted from the "TensorFlow deep learning, an article is enough" click to open the link
Google is not only the leader in big data and cloud computing, but also has a good practice and accumulation in machine learning and deep learning
21. Application of Depth neural network in visual significance (visual Attention with deep neural Networks) (English, conference papers, 2015, IEEE Search)This article focuses on the application of CNN in the field of significance detection. 22. Progress in deep learning Research (Chinese, Journal, 2015, net)A summary article on
Deep Learning, also known as unsupervised feature learning or feature learning, is a hot topic at present.
This article mainly introduces the basic idea and common methods of deep learning.
1. What is
21. Application of Depth neural network in visual significance (visual Attention with deep neural Networks) (English, conference papers, 2015, IEEE Search)This article focuses on the application of CNN in the field of significance detection. 22. Progress in deep learning Research (Chinese, Journal, 2015, net)A summary article on
Deep learning has been fire for a long time, some people have been here for many years, and some people have just begun, such as myself.
How to get into this field quickly in a short period of time to master deep learning the latest technology is a question worth thinking about.
In the present situation, it is the best
since the beginning of the 2016, the use of neural networks and deep learning Alphago to win the Master of Human go, deep learning is also considered to be the closest machine learning approach to AI. from the current development trend of the global AI, the
Deep learning is a prominent topic in the AI field. it has been around for a long time. It has received much attention because it has made breakthroughs beyond human capabilities in computer vision (ComputerVision) and AlphaGO. Since the last investigation, attention to deep learning has increased significantly.
In the previous sections, we have covered what is target detection and how to detect targets, as well as the concepts of sliding windows, bounding box, and IOU, non-maxima suppression.Here will summarize the current target detection research results, and several classical target detection algorithms to summarize, this article is based on deep learning target detection, in the following sections, will be spe
The recent deep learning fire not only attracted the attention of the academic community, but also sought after in the industry. In many important evaluations, DL has achieved the effect of state of the art. Especially in terms of speech recognition, DL has reduced the error rate by about 30% and has made significant progress. If the company that uses speech recognition does not use DL, I am sorry to say he
A summaryIn this paper, we present a very simple image classification deep learning framework, which relies on several basic data processing methods: 1) Cascade principal component Analysis (PCA), 2) Two value hash coding, 3) chunking histogram. In the proposed framework, the multi-layer filter kernel is first studied by PCA method, and then sampled and encoded using two-valued hash coding and block histogr
This section begins the Basic theory system learning phase of machine learning and deep learning, and the blog content is the notes that are collated during the learning process.1. Machine learningConcept: Multi-disciplinary interdisciplinary, involving probability theory, s
How Yahoo implements large-scale distributed deep learning on Hadoop Clusters
Over the past decade, Yahoo has invested a lot of energy in the construction and expansion of Apache Hadoop clusters. Currently, Yahoo has 19 Hadoop clusters, including more than 40 thousand servers and over Pb of storage. They developed large-scale machine learning algorithms on these
Deep learning with STRUCTURECharlie Tang is a PhD student in the machine learning group at the University of Toronto, working with Geoffrey Hinton andRuslan Salakhutdinov, whose the interests include machine learning, computer vision and cognitive science. More specifically, he had developed various higher-order extens
Recommended 10 open-source deep learning frameworks on GitHubRecently, Google Open source TensorFlow (GitHub), the move in the field of deep learning impact, because Google in the field of artificial intelligence research achievements, has a strong talent pool, and Google's own Gmail and search engines are using a self
IT168 commented on Google's Open source TensorFlow (GitHub) Earlier this week, a move that has had a huge impact in deep learning because Google has a strong talent pool in the field of AI research, And Google's own Gmail and search engines are using deep learning tools that are developed on their own.
Google Open source TensorFlow (GitHub) Earlier this week, a move that has a huge impact on deep learning because Google has a strong talent pool, and Google's own Gmail and search engines are using a self-developed deep learning tool.Undoubtedly, the TensorFlow from the Google arsenal is necessarily the star of the ope
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