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Causal Ai: An Introduction


Causal Ai: An Introduction
Causal Ai: An Introduction
Published 8/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.77 GB | Duration: 6h 45m


Learn the foundational components of Causal Artificial Intelligence

What you'll learn

What Causality is

The relationship between Causation and Association

Why RCT's are the golden standard for Causal Inference

Main components of Pearlian Framework for Causality: Ladder of Causation, Causal Graphs, Do-calculus, Structural Causal Models

Machine Learning & Propensity Score-based Causal Effect Estimators

Causal Discovery (Algorithms)

How to estimate Average Causal Effects using observational data (covering the entire end-to-end process)

Requirements

Basic Probability and Statistics knowledge

Description

In this course, you'll learn the foundational components of Causal Artificial Intelligence (Causal AI). More and more people are starting to realise that correlation-focused models are not enough to answer our most important business questions. Business decision-making is all about understanding the effect different decisions have on outcomes, and choosing the best option. We can't understand the effect decisions have on outcomes with just correlations; we must understand cause and effect. Unfortunately, there is a huge gap of knowledge in causal techniques among people working in the data & statistics industry. This means that causal problems are often approached with correlation-focused models, which results in sub-optimal or even poor solutions. In recent years, the field of Causality has evolved significantly, particularly due to the work of Judea Pearl. Judea Pearl has created a framework that provides clear and general methods we can use to understand causality and estimate causal effects using observational data. Combining his work with advances in AI has given rise to the field of Causal Artificial Intelligence.Causal AI is all about using AI models to estimate causal effects (using observational data). Generally, businesses rely only on experimentation methods like Randomized Controlled Trials (RCTs) and A/B tests to determine causal effects. Causal AI now adds to this by offering tools to estimate causal effects using observational data, which is more commonly available in business settings. This is particularly valuable when experimentation is not feasible or practical, making it a powerful tool for businesses looking to use their existing data for decision-making.This course is designed to bridge the knowledge gap in causal techniques for individuals interested in data and statistics. You will learn the foundational components of Causal AI, with a specific focus on the Pearlian Framework. Key concepts covered include The Ladder of Causation, Causal Graphs, Do-calculus, and Structural Causal Models. Additionally, the course will go into various estimation techniques, incorporating both machine learning and propensity score-based estimators. Last, you'll learn about methods we can use to obtain Causal Graphs, a process called Causal Discovery.By the end of this course, you'll be fully equipped with all tools needed to estimate average causal effects using observational data. We believe that everyone working in the data and statistics field should understand causality and be equipped with causal techniques. By educating yourself early in this area, you will set yourself apart from others in the field. If you have a basic understanding of probability and statistics and are interested in learning about Causal AI, this course is perfect for you!

Overview

Section 1: Causality, Association & RCT's

Lecture 1 Welcome

Lecture 2 Course Slides

Lecture 3 What is Causal AI?

Lecture 4 Simpson's Paradox

Lecture 5 The Need for Causality in Business

Lecture 6 Causation and its relation to Association

Lecture 7 RCT's: The Golden Standard for Causal Inference

Lecture 8 Course Outline

Section 2: The Ladder of Causation

Lecture 9 Introduction

Lecture 10 Layer 1 Explained

Lecture 11 Layer 1 Techniques

Lecture 12 Layer 2 Explained

Lecture 13 Layer 2 Techniques

Lecture 14 Layer 3 Explained

Lecture 15 Layer 3 Techniques

Lecture 16 Do-operator in light of Structural Causal Models

Lecture 17 Recap

Section 3: Causal Directed Acyclic Graphs

Lecture 18 Introduction

Lecture 19 What are Causal DAGs?

Lecture 20 Do-operator in light of Causal DAGs

Lecture 21 Graph Independence & Information Flows

Lecture 22 Graph Patterns

Lecture 23 Blocking Paths & D-separation

Lecture 24 From Graph (In)dependence to Statistical (In)dependence

Lecture 25 Recap

Section 4: Causal Inference Part 1: Identification

Lecture 26 Introduction

Lecture 27 Estimand & Conditional Ignorability

Lecture 28 Probabilities as the foundation of Causal Quantities

Lecture 29 Backdoor Adjustment

Lecture 30 Frontdoor Adjustment

Lecture 31 Do-calculus

Lecture 32 Positivity/Unconfoundedness Trade-Off

Lecture 33 Recap

Section 5: Causal Inference Part 2: Estimation

Lecture 34 Introduction

Lecture 35 Causal Quantities of Interest

Lecture 36 S-Learner

Lecture 37 T-Learner

Lecture 38 X-Learner

Lecture 39 Matching

Lecture 40 Inverse Probability Weighting

Lecture 41 Systematic vs. Random Errors

Lecture 42 Recap

Section 6: Causal Discovery

Lecture 43 Introduction

Lecture 44 Domain Expertise

Lecture 45 Causal Discovery Algorithms: Categories

Lecture 46 Causal Discovery Algorithms: Assumptions

Lecture 47 Constraint-based Causal Discovery

Lecture 48 Score-based Causal Discovery

Lecture 49 Function-based Causal Discovery

Lecture 50 Continuous Optimization-based Causal Discovery

Lecture 51 Causal Discovery in Practice: Hybrid & Iterative

Lecture 52 Recap

Section 7: Closure

Lecture 53 Introduction

Lecture 54 Challenges with Causal AI

Lecture 55 Considerations, Recommendations & Closure

Everyone interested in learning about Causal AI and who has some basic knowledge of Probability and Statistics,Particularly relevant for those working in the Data & Statistics field, like Data Scientists, Data Analysts, Decision Scientists, Statisticians, Data Engineers, Machine Learning Engineers, Computer Scientists, Business Intelligence Analysts, Quantitative Analysts, etc.,Those who want to be at the forefront of advancements in Data and AI for decision-making








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