Book description
The past year or so has seen a true explosion in both the capabilities and adoption of artificial intelligence technologies. Today’s generalized AI tools can solve specific problems more powerfully than the complex rule-based tools that preceded them. And, because these new AI tools can be deployed in many contexts, more and more applications and industries are ripe for transformation with AI technologies.
By drawing from the best posts on the O’Reilly AI blog, this in-depth report summarizes the current state of AI technologies and applications, and provides useful guides to help you get started with deep learning and other AI tools.
In six distinct parts, this report covers:
- The AI landscape: the platforms, businesses, and business models shaping AI growth; plus a look at the emerging AI stack
- Technology: AI’s technical underpinnings and deep learning capabilities, tools, and tutorials
- Homebuilt autonomous systems: "hobbyist" applications that showcase AI tools, libraries, cloud processing, and mobile computing
- Natural language: strategies for scoping and tackling NLP projects
- Use cases: an analysis of two of the leading-edge use cases for artificial intelligence—chat bots and autonomous vehicles
- Integrating human and machine intelligence: development of human-AI hybrid applications and workflows; using AI to map and access large-scale knowledge databases
Table of contents
- Introduction
- I. The AI Landscape
- 1. The State of Machine Intelligence 3.0
- 2. The Four Dynamic Forces Shaping AI
- II. Technology
- 3. To Supervise or Not to Supervise in AI?
- 4. Compressed Representations in the Age of Big Data
- 5. Compressing and Regularizing Deep Neural Networks
- 6. Reinforcement Learning Explained
- 7. Hello, TensorFlow!
- 8. Dive into TensorFlow with Linux
- 9. A Poet Does TensorFlow
- 10. Complex Neural Networks Made Easy by Chainer
- 11. Building Intelligent Applications with Deep Learning and TensorFlow
- III. Homebuilt Autonomous Systems
- 12. How to Build a Robot That “Sees” with $100 and TensorFlow
- 13. How to Build an Autonomous, Voice-Controlled, Face-Recognizing Drone for $200
- IV. Natural Language
- 14. Three Three Tips for Getting Started with NLU
- 15. Training and Serving NLP Models Using Spark
- 16. Capturing Semantic Meanings Using Deep Learning
- V. Use Cases
- 17. Bot Thots
- 18. Infographic: The Bot Platforms Ecosystem
- 19. Creating Autonomous Vehicle Systems
- VI. Integrating Human and Machine Intelligence
- 20. Building Human-Assisted AI Applications
- 21. Using AI to Build a Comprehensive Database of Knowledge
Product information
- Title: Artificial Intelligence Now
- Author(s):
- Release date: February 2017
- Publisher(s): O'Reilly Media, Inc.
- ISBN: 9781491977620
You might also like
video
AWS Certified Cloud Practitioner Complete Video Course
7 Hours of Video Instruction Seven hours of video instruction covering the fundamentals of cloud computing; …
book
Machine Learning for Finance
A guide to advances in machine learning for financial professionals, with working Python code Key Features …
video
Linear Algebra for Machine Learning
6.5 Hours of Video Instruction An introduction to the linear algebra behind machine learning models Overview …
video
React - The Complete Guide (Includes Hooks, React Router, and Redux) - Second Edition
**This course is now updated for the latest version of React—React 18** React.js is the most …