English | MP4 | AVC 1920×1080 | AAC 48KHz 2ch | 1h 58m | 433 MB
Build interactive chatbots, facial recognition, headline writers, and more. No AI experience required!
Python has surfaced as a dominant language in AI/ML programming because of its simplicity and flexibility. It has great support for open-source libraries such as Scikit-learn and TensorFlow.
Built for rookie AI enthusiasts across four realistic projects, this course covers modern techniques that make up the world of Artificial Intelligence. Dive into your first natural language processing project, build a facial recognition system, and build your very own self driving steering code. You will explore the use of neural networks and deep learning, and how you can train and test sets for feature extraction. You’ll be introduced to the Keras deep learning library, which you will use to predict taxi journey times, and to the use of natural language processing to find the most relevant articles in Wikipedia.
By the end of this video course, you will be confident enough to build your own AI projects with Python, and ready to take on more advanced content as you move on.
Built for amateur AI enthusiasts and using realistic examples, this course covers modern techniques that make up the world of Artificial Intelligence.
What You Will Learn
- Create your own NLP chatbot using Python AI
- Use open source, SaaS and custom-built algorithms to identify faces in pictures and video
- Understand data-mining methods, and how to work with multiple data sets when building a model
- How feature engineering works to get the most value from the data
- Apply open data and deep learning to predict taxi journey times in New York City
- Use convolutional neural networks to determine an appropriate steering angle for a self-driving car
Table of Contents
Using Natural Language Processing with Knowledge Bases
1 The Course Overview
2 Building a Dataset From Wikipedia Content
3 Introducing Topic Modeling
4 Using gensim and NLTK
5 The Code
6 Building a Web Service
Face Recognition
7 How Does Face Recognition Work
8 Using OpenCV for Face Recognition
9 AWS Rekognition
10 Recognizing Faces in Video
Predicting Taxi Journey Times
11 Summary of the Problem
12 Exploring the Data
13 Training the Model
14 Predicting Journey Times
Predicting the Steering Angles of a Self Driving Car
15 CNNs
16 Environment and Data
17 Training Our Model
18 Inferring Steering Angles
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