Tags
Language
Tags
December 2024
Su Mo Tu We Th Fr Sa
1 2 3 4 5 6 7
8 9 10 11 12 13 14
15 16 17 18 19 20 21
22 23 24 25 26 27 28
29 30 31 1 2 3 4

Ai & Ml Made Easy : A Comprehensive Guide (2024)

Posted By: ELK1nG
Ai & Ml Made Easy : A Comprehensive Guide (2024)

Ai & Ml Made Easy : A Comprehensive Guide (2024)
Published 10/2023
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 11.92 GB | Duration: 5h 8m

From Understanding Intelligence to Deep Learning: Unravel AI & ML in Real-World Applications for a Future-Proof Career

What you'll learn

Gain a solid understanding of AI & ML, from basic concepts to advanced topics like Deep Learning

Understand the role of AI & ML in various sectors through real-world examples and practical applications

Master the process of how machines learn, exploring Supervised, Unsupervised, and Reinforcement Learning

Acquire the skills to implement AI & ML solutions using popular programming languages, ensuring ethical AI use

Requirements

No previous experience required

Description

AI & ML Made Easy : A Comprehensive Guide (2024) offers an in-depth exploration of AI and ML, starting from the basics and gradually progressing towards more complex concepts. It begins with an introduction to the course, followed by a comprehensive understanding of intelligence, and then simplifying the definition of AI. You will journey through the evolution of AI, explore its philosophy, and understand the science that goes on behind the scenes. The course will help you decode the current popularity of AI and explore its different areas. It will demystify the process of how machines learn, and how AI is creating a paradigm shift in our world. The course also provides an overview of Machine Learning, the fundamental theory behind it, and the role of statistics & computer science in it. You will explore various machine learning approaches and delve into the mechanisms of supervised and unsupervised learning with practical examples. You will also gain insights into reinforcement learning, statistical algorithms, and the economics of AI. The course will guide you on how to navigate the AI and ML canvas, understand bias in machine learning, and explore the languages used for implementing ML. Towards the end, the course introduces you to advanced topics like deep learning, natural language processing (NLP), computer vision, and generative AI. Learning Outcomes- A thorough understanding of AI and ML concepts.- An ability to implement AI and ML in real-world scenarios.- A deeper understanding of the AI and ML process, including supervised and unsupervised learning.- Proficiency in the terminologies and jargon associated with AI and ML.- An understanding of the ethical considerations in AI and ML.- A strong foundation to explore advanced topics like deep learning, NLP, and computer vision.Career AspectAI and ML are among the fastest-growing fields in the tech industry today. This course AI & ML Made Easy : A Comprehensive Guide (2024) will equip you with the knowledge and skills needed to pursue a career in these areas. Whether you are a student looking to start a career in AI and ML, or a professional aiming to switch to these fields, this course will provide you with a solid foundation.CertificationUpon successful completion of the course, you will receive a Udemy Certificate of Completion. This certification will validate your skills and knowledge in AI and ML, and can be used to enhance your professional profile.Enrol now in this comprehensive course and kickstart your journey into the fascinating world of AI and Machine Learning. Unleash your potential and step into the future with confidence!

Overview

Section 1: Unfolding the AI Universe

Lecture 1 Kickstart Your Journey: Introduction to the Course

Lecture 2 Unlock the Mystery: Understanding Intelligence

Lecture 3 AI Simplified: Defining Artificial Intelligence

Lecture 4 Travel Through Time: The Evolution of AI

Lecture 5 AI and Beyond: Exploring the Philosophy

Lecture 6 Behind the Scenes: The Science of AI

Lecture 7 Why AI? Decoding its Current Popularity

Lecture 8 Dive Deeper: Exploring Different Areas of AI

Section 2: Understanding and Applying Machine Learning

Lecture 9 Demystifying the Process: How Machines Learn

Lecture 10 AI Revolution: Creating a Paradigm Shift

Lecture 11 Machine Learning in Action: Real-World Examples

Lecture 12 Everyday AI: Common Applications of Machine Learning

Section 3: Machine Learning Mastery: From Basics to Advanced Concepts

Lecture 13 Machine Learning Uncovered: An Overview

Lecture 14 The Backbone: Fundamental Theory Behind Machine Learning

Lecture 15 Deciphering the Jargon: Machine Learning Terminology

Lecture 16 The Machine Learning Blueprint: Understanding the Process

Lecture 17 Diverse Paths: Exploring Machine Learning Approaches

Lecture 18 Role of Statistics & Computer Science in Machine Learning

Section 4: Deep Dive into Supervised, Unsupervised, and Reinforcement Learning

Lecture 19 Guided Learning: An Introduction to Supervised Learning

Lecture 20 Unveiling the Mechanism: How Supervised Machine Learning Works

Lecture 21 Supervised Learning in Action: A Practical Example

Lecture 22 Autonomous Learning: Unsupervised Machine Learning Overview

Lecture 23 The Underlying Mechanism: How Unsupervised Machine Learning Works

Lecture 24 Spotlight on Unsupervised Learning: A Practical Example

Lecture 25 Learning by Doing: An Insight into Reinforcement Learning

Lecture 26 Crunching Numbers: Exploring Statistical Algorithms

Section 5: Navigating the Business and Economic Aspects of AI and Machine Learning

Lecture 27 From App to Solution: Transforming Problem Solving

Section 6: Navigating the AI Landscape: From Concepts to Practical Implementation

Lecture 28 The Standard: General Machine Learning Process

Lecture 29 The Human Element: Understanding Bias in Machine Learning

Lecture 30 The AI Artisans: Who Implements AI

Lecture 31 Exploring Languages for Implementing Machine Learning

Section 7: Deep Learning, Natural Language Processing, and Computer Vision

Lecture 32 Diving Deep: An Introduction to Deep Learning

Lecture 33 Understanding Natural Language Processing (NLP)

Lecture 34 Creating Realities: Generative AI & Overview

Section 8: Stages, Types, and Ethical Considerations

Lecture 35 The AI Spectrum: Exploring Types of AI

Beginners interested in learning the basics of AI and Machine Learning,Tech professionals looking to upskill and delve deeper into AI and ML,Researchers and academics who want to stay updated with the latest developments in AI and ML,Anyone curious about the future of technology and its impact on various sectors