Anomaly Detection: Machine Learning, Deep Learning, Automl
Last updated 3/2023
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.41 GB | Duration: 4h 39m
Last updated 3/2023
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.41 GB | Duration: 4h 39m
Covers Time Based, Non Time Based and Image Anomalies | Understand what happens inside a library | With Explainer AI
What you'll learn
What is an anomaly?
What are the areas where anomaly detection can be applied?
What are the three types of anomaly detection techniques?
How to analyze time based data for anomalies?
How to use supervised learning to identify anomalies?
How to apply unsupervised learning algorithms like DBSCAN and Isolation Forest to detect anomalies?
How to analyze images and identify anomalies among them?
Requirements
None.
Description
Recent UpdatesFeb 2023: Explaining the outcome of an algorithm is always challenging, more so in an unsupervised area. We have added a video lecture on this interesting area.Jan 2023: Added anomaly detection algorithms (Auto Encoders, Boltzmann Machines, Adversarial Networks) using deep learningNov 2022: We all want to know what goes on inside a library. We have explained isolation forest algorithm by taking few data points and identifying anomaly point through manual calculation. A unique approach to explain an algorithm!July 2022: AutoML is the new evolution in IT and ML industry. AutoML is about deploying ML without writing any code. Anomaly Detection Using PowerBI has been added. June 2022: A new video lecture on Predicting High Impact Low Volume Events: Predictive Maintenance has been added.May 2022: A new video lecture on PyOD: A comparison of 10 algorithms has been added–––––––––––––––––––––––––––––––––––––––––––––––––––––––––––Course DescriptionAn anomaly is a data point that doesn’t fit or gel with other data points. Detecting this anomaly point or a set of anomaly points in a process area can be highly beneficial as it can point to potential issues affecting the organization. In fact, anomaly detection has been the most widely adopted area with in the artificial intelligence - machine learning space in the world of business. As a practitioner of AI, I always ask my clients to start off with anomaly detection in their AI journey because anomaly detection can be applied even when data availability is limited.Anomaly detection can be applied in the following areas:· Predictive maintenance in the manufacturing industry· Fraud detection across industries· Surveillance activities across industries· Customer Service and retail industries. SalesThe following will be covered in this program:· The three types of anomaly detection – time based, non time based and image. Of these, image anomaly is a new frontier for AI. Just like we analyze the numbers, we can now analyze images and identify anomalies.· Machine learning and deep learning concepts· Supervised and unsupervised algorithms (DBSCAN, Isolation Forest). Image anomaly detection using deep learning techniques· Scenarios where anomaly detection can be applied· Python is covered in great detail to assist those who are new to python or want a refresher on any of the python topics.Anomaly detection is one area that can be applied in any type of business and hence organizations embarking on AI journey normally first explore anomaly detection area. So, as professionals and students, you can also explore this wonderful field!
Overview
Section 1: Introduction
Lecture 1 Introduction
Lecture 2 Course Structure
Section 2: The Three Types of Anomalies
Lecture 3 Understanding Anomalies
Lecture 4 Application Scenarios
Lecture 5 Anomaly Vs Outlier: Is Every Anomaly An Outlier?
Section 3: Anomaly Detection - Time Series
Lecture 6 Understanding Anomaly Detection in Time Series Data
Lecture 7 Programming for Anomaly Detection - Time Series
Section 4: Anomaly Detection - Unsupervised DBSCAN
Lecture 8 Anomaly Detection - Unsupervised DBSCAN
Section 5: Anomaly Detection - Unsupervised Isolation Forest
Lecture 9 Uncovering Isolation Forest Algorithm
Lecture 10 Isolation Forest Programming
Lecture 11 Explainer AI: Understand the Output of Algorithm
Section 6: Anomaly Detection - Supervised
Lecture 12 Anomaly Detection - Supervised
Section 7: Anomaly Detection - Images
Lecture 13 Intro and Background
Lecture 14 Anomaly Detection - Images
Section 8: Anomaly Detection Using Deep Learning
Lecture 15 GAN
Lecture 16 RBM, DBN
Lecture 17 Auto Encoder
Lecture 18 Building the anomaly detection models
Section 9: PyOD: A comparison of 10 algorithms
Lecture 19 PyOD: A comparison of 10 algorithms
Section 10: Predicting High Impact Low Volume Events: Predictive Maintenance
Lecture 20 Predicting High Impact Low Volume Events: Predictive Maintenance
Section 11: No Code (AutoML) approach to anomaly detection using PowerBI
Lecture 21 What is AutoML
Lecture 22 Anomaly Detection Using PowerBI
Section 12: Machine Learning
Lecture 23 Machine Learning Concepts
Lecture 24 Logistic Regression and Introduction to Deep Learning
Lecture 25 Unsupervised Learning
Section 13: Bonus Lecture
Lecture 26 Bonus Lecture
Machine and Deep Learning enthusiasts,Data Science/Analytics Managers & Heads,Beginners in Data Science