- Java Deep Learning Essentials
- Yusuke Sugomori
- 358字
- 2021-07-16 10:38:42
Chapter 1. Deep Learning Overview
Artificial Intelligence (AI) is a word that you might start to see more often these days. AI has become a hot topic not only in academic society, but also in the field of business. Large tech companies such as Google and Facebook have actively bought AI-related start-ups. Mergers and acquisitions in these AI areas have been especially active, with big money flowing into AI. The Japanese IT/mobile carrier company Softbank released a robot called Pepper in June 2014, which understands human feelings, and a year later they have started to sell Pepper to general consumers. This is a good movement for the field of AI, without a doubt.
The idea of AI has been with us for decades. So, why has AI suddenly became a hot field? One of the factors that has driven recent AI-related movements, and is almost always used with the word AI, is deep learning. After deep learning made a vivid debut and its technological capabilities began to grow exponentially, people started to think that finally AI would become a reality. It sounds like deep learning is definitely something we need to know. So, what exactly is it?
To answer the previous questions, in this chapter we'll look at why and how AI has become popular by following its history and fields of studies. The topics covered will be:
- The former approaches and techniques of AI
- An introduction to machine learning and a look at how it has evolved into deep learning
- An introduction to deep learning and some recent use cases
If you already know what deep learning is or if you would like to find out about the specific algorithm of the deep learning/implementation technique, you can skip this chapter and jump directly to Chapter 2, Algorithms for Machine Learning – Preparing for Deep Learning.
Although deep learning is an innovative technique, it is not actually that complicated. It is rather surprisingly simple. Reading through this book, you will see how brilliant it is. I sincerely hope that this book will contribute to your understanding of deep learning and thus to your research and business.
- 數(shù)據(jù)庫應用實戰(zhàn)
- Greenplum:從大數(shù)據(jù)戰(zhàn)略到實現(xiàn)
- 劍破冰山:Oracle開發(fā)藝術(shù)
- 新型數(shù)據(jù)庫系統(tǒng):原理、架構(gòu)與實踐
- 揭秘云計算與大數(shù)據(jù)
- 大數(shù)據(jù)技術(shù)入門
- Oracle高性能SQL引擎剖析:SQL優(yōu)化與調(diào)優(yōu)機制詳解
- 數(shù)據(jù)庫查詢優(yōu)化器的藝術(shù):原理解析與SQL性能優(yōu)化
- 大數(shù)據(jù)分析:R基礎(chǔ)及應用
- 數(shù)據(jù)指標體系:構(gòu)建方法與應用實踐
- Scratch 2.0 Game Development HOTSHOT
- Oracle 11g數(shù)據(jù)庫管理員指南
- 大數(shù)據(jù)隱私保護技術(shù)與治理機制研究
- MySQL性能調(diào)優(yōu)與架構(gòu)設(shè)計
- 推薦系統(tǒng)全鏈路設(shè)計:原理解讀與業(yè)務實踐