Mastering Artificial Intelligence: Learn Fundamentals Ai
Last updated 1/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 5.33 GB | Duration: 6h 9m
Last updated 1/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 5.33 GB | Duration: 6h 9m
Practical AI with Python – Master AI Fundamentals, NLP & Computer Vision with Real-World Projects
What you'll learn
Understand the fundamentals of AI, its history, and key subfields such as NLP, Computer Vision, and Generative AI.
Learn the key differences between AI, Machine Learning, and Deep Learning, and when to use each approach.
Work with essential AI tools and Python libraries such as NumPy, Pandas, Matplotlib, and Scikit-learn.
Apply AI techniques in Natural Language Processing (NLP), including text classification, word embeddings, and Named Entity Recognition (NER).
Implement Computer Vision applications using OpenCV, including image processing, object recognition, and feature extraction.
Explore Search Algorithms & Optimization, including A* search and gradient descent techniques.
Build AI-driven applications using Generative AI models, including Autoencoders and AI-generated text.
Develop hands-on AI projects, such as a text classification model, an image classification system, and an AI-powered search algorithm.
Requirements
Basic programming experience in Python (knowledge of NumPy, Pandas, and Matplotlib is helpful but not required).
Understanding of fundamental Machine Learning concepts will be beneficial but is not mandatory.
Enthusiasm to learn Artificial Intelligence through hands-on coding and real-world projects.
Description
Master Artificial Intelligence with Hands-On Projects and Real-World ApplicationsArtificial Intelligence is transforming industries and shaping the future of technology. This course provides a comprehensive introduction to AI, covering key concepts, tools, and techniques needed to build intelligent systems.This course is designed for beginners and professionals looking to enhance their skills in AI, Machine Learning, and Deep Learning. Through step-by-step explanations and hands-on projects, learners will gain a strong foundation in AI applications.What You’ll Learn in This Course:AI Fundamentals – Understand AI concepts, applications, and history.Machine Learning & AI – Learn how AI systems make predictions and process data.Natural Language Processing (NLP) – Work with text-processing techniques like tokenization, sentiment analysis, and text classification.Computer Vision – Implement image processing and object recognition models.AI Project Development – Build AI-powered applications such as chatbots, AI assistants, and intelligent systems.Hands-On Learning – Use Python, TensorFlow, OpenCV, and Scikit-learn to develop AI solutions.Who Should Take This Course?Beginners interested in learning AI from scratch.Software developers and engineers who want to integrate AI into their work.Data analysts and aspiring AI professionals looking to build AI models.Entrepreneurs and business professionals who want to understand AI applications.No prior AI experience is required. The course provides step-by-step instructions to help learners gain practical AI skills.Why Take This Course?Structured, beginner-friendly approach – Covers AI fundamentals without overwhelming technical details.Real-world AI projects – Hands-on exercises to apply concepts in practical scenarios.Industry-standard tools – Learn AI using Python, TensorFlow, and OpenCV.Lifetime access and updates – Study at your own pace with continuous improvements to the course.By the end of this course, learners will have a solid understanding of AI fundamentals and the confidence to build AI-powered applications.
Overview
Section 1: Introduction to Artificial Intelligence
Lecture 1 Course Overview
Lecture 2 What is Artificial Intelligence?
Lecture 3 AI vs. ML vs. DL
Lecture 4 Core Components of AI
Section 2: Foundations of Python for AI
Lecture 5 Essential Python Libraries for AI
Lecture 6 Data Management Techniques
Section 3: Natural Language Processing (NLP)
Lecture 7 NLP Fundamentals
Lecture 8 Working with Word Embeddings
Lecture 9 NLP Applications
Lecture 10 Project - Build a basic text classification model
Section 4: Computer Vision
Lecture 11 Basics of Image Processing
Lecture 12 Object Recognition and Feature Extraction
Lecture 13 Applications in Vision
Lecture 14 Project - Create a pipeline for image classification
Section 5: Search and Optimization in AI
Lecture 15 Fundamentals of Search
Lecture 16 Optimization Techniques
Lecture 17 Applications of Search in AI
Lecture 18 Project - Implement A* search
Section 6: Reinforcement Learning
Lecture 19 Introduction to Reinforcement Learning
Lecture 20 Q-Learning Basics
Section 7: Generative AI
Lecture 21 Introduction to Generative AI
Lecture 22 Working with Autoencoders
Lecture 23 Applications of Generative AI
Lecture 24 Project - Generate realistic text using an AI-based language model
Anyone looking to build practical AI projects, such as chatbots, recommendation systems, and AI-driven search engines.,Students and professionals with a background in Machine Learning or strong programming skills who want to dive into AI.,AI enthusiasts eager to explore Natural Language Processing (NLP), Computer Vision, Search Algorithms, and Generative AI.,Data analysts and data scientists looking to expand their expertise into AI-driven solutions.,Developers interested in integrating AI capabilities into their projects, such as NLP-powered applications or AI-enhanced automation.