Ai & Quantum Computing Mastery: From Zero To Expert Bootcamp
Published 3/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.57 GB | Duration: 5h 1m
Published 3/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.57 GB | Duration: 5h 1m
Hands-On Machine Learning, Deep Learning, Quantum Algorithms & Hybrid AI-QC Applications
What you'll learn
Master AI & Machine Learning – Learn AI fundamentals, Supervised & Unsupervised Learning, and build real-world ML models from scratch.
Build Deep Learning Models – Train Neural Networks, CNNs, and RNNs using TensorFlow & PyTorch for image recognition, NLP, and advanced AI applications.
Understand Quantum Computing – Learn Qubits, Superposition, Entanglement, and how Quantum Circuits work using Qiskit and IBM Quantum.
Implement Quantum Algorithms – Develop Grover’s Search, Shor’s Algorithm, and Variational Quantum Circuits for real-world problem-solving.
Train AI Models with Quantum Computing – Use Quantum Machine Learning (QML) to enhance AI models with quantum speedups and quantum feature mapping.
Build AI-Powered Chatbots & NLP Systems – Create AI-driven chatbots, voice assistants, and sentiment analysis models for real-world applications.
Develop AI for Finance & Trading – Predict stock trends, optimize financial portfolios, and enhance risk management with AI & Quantum AI techniques.
Explore Quantum Cryptography & Security – Implement Quantum Key Distribution (QKD) and quantum-safe encryption for secure communication.
Create AI-Based Fraud Detection Systems – Train AI models to detect fraudulent transactions and cyber threats in financial and cybersecurity sectors.
Build AI-Quantum Hybrid Applications – Combine AI & Quantum Computing to develop next-gen applications in healthcare, finance, and data science.
Requirements
This course is designed for absolute beginners, so no prior experience in AI or Quantum Computing is required
Basic programming knowledge (Python recommended, but not mandatory)
A computer with internet access (Windows, macOS, or Linux)
Familiarity with high school-level math (Algebra, Probability, and basic Linear Algebra)
Interest in AI, Machine Learning, and Quantum Computing
Willingness to learn and experiment with hands-on coding exercises
Description
Unlock the power of Artificial Intelligence (AI) and Quantum Computing (QC) with this comprehensive, hands-on course designed for absolute beginners and professionals looking to explore the next generation of computing technologies. This course covers Machine Learning (ML), Deep Learning (DL), Neural Networks, Quantum Mechanics, Quantum Machine Learning (QML), and Hybrid AI-QC Applications, equipping you with the skills to build real-world projects.As AI continues to transform industries like healthcare, finance, cybersecurity, and automation, Quantum Computing is revolutionizing the way we solve complex problems through superposition, entanglement, and quantum gates. This course is structured to help you master AI fundamentals before diving into Quantum Algorithms, Quantum AI, and Hybrid AI-QC Systems. Why Take This Course?Learn AI, Machine Learning, Deep Learning, and Neural Networks from scratch.Understand Quantum Computing principles including Qubits, Superposition, Entanglement, and Quantum Circuits.Master Quantum Machine Learning (QML) with Quantum Neural Networks (QNNs) and Quantum Optimization.Gain hands-on experience with TensorFlow, PyTorch, Qiskit, IBM Quantum, and OpenAI.Implement Quantum-powered applications for drug discovery, finance, and portfolio optimization.Develop expertise in AI-powered quantum simulations to accelerate big data analytics and deep learning.What You Will Learn:AI & Machine Learning FundamentalsIntroduction to Artificial Intelligence, Supervised & Unsupervised Learning.Hands-on Deep Learning with TensorFlow & PyTorch.Develop AI-powered chatbots, image recognition, and fraud detection models.Implement Reinforcement Learning for self-learning AI systems.Quantum Computing & Quantum AlgorithmsUnderstand Quantum Bits (Qubits), Quantum Gates, Quantum Superposition & Entanglement.Learn Quantum Circuit Design & Quantum Measurement.Implement Quantum Algorithms like Grover’s Search, Shor’s Algorithm, and Variational Quantum Classifiers (VQC).Quantum Machine Learning (QML) & AI-QC Hybrid ApplicationsExplore Quantum-enhanced AI, Quantum Kernel Methods, and Variational Quantum Circuits.Train Quantum Neural Networks (QNNs) for deep learning tasks.Implement Quantum-enhanced ML models for finance, drug discovery, and cybersecurity.Who Should Take This Course?Beginners looking to master AI, Machine Learning, Deep Learning & Quantum Computing.Software Developers & Data Scientists interested in Quantum AI & Hybrid AI-QC Applications.AI Researchers & Quantum Computing Enthusiasts exploring Quantum Neural Networks & QML.Tech Professionals wanting to transition into Quantum Computing & AI Research.Technologies CoveredPython, TensorFlow, PyTorch, OpenAI, IBM Quantum, Qiskit, D-Wave, Scikit-Learn, NumPy, PandasQuantum Algorithms, Quantum Neural Networks, Variational Quantum Circuits, Quantum CryptographyReinforcement Learning, Natural Language Processing (NLP), AI for Cybersecurity, AI for Healthcare, AI for FinanceThis course provides everything you need to become an AI & Quantum Computing expert, ensuring you're ready for the future of AI-powered Quantum Computing.
Overview
Section 1: Introduction to AI & Quantum Computing Mastery Course
Lecture 1 Quick Introduction to Quantum Computing
Lecture 2 Learn Python from Scratch - Quick Tutorial
Section 2: Introduction to AI & Quantum Computing
Lecture 3 Lesson 1: Course Overview & Prerequisites
Lecture 4 Lesson 2: Foundations of AI
Lecture 5 Lesson 3: Foundations of Quantum Computing
Section 3: Artificial Intelligence (AI) Deep Dive
Lecture 6 Lesson 4: Machine Learning & AI Frameworks
Lecture 7 Lesson 5: Deep Learning with TensorFlow & PyTorch
Lecture 8 Lesson 6: Reinforcement Learning
Section 4: Quantum Computing Deep Dive
Lecture 9 Lesson 7: Quantum Mechanics for Beginners
Lecture 10 Lesson 8: Quantum Circuits & Gates
Lecture 11 Lesson 9: Quantum Algorithms
Section 5: AI & Quantum Computing Together
Lecture 12 Lesson 10: How AI Benefits from Quantum Computing
Lecture 13 Lesson 11: Quantum Data Processing for AI
Lecture 14 Lesson 12: Quantum Neural Networks
Section 6: Advanced Applications
Lecture 15 Lesson 13: Real-World AI-QC Use Cases
Lecture 16 Lesson 14: Quantum AI Optimization Techniques
Beginners & Enthusiasts – If you're new to AI or Quantum Computing and want a structured, hands-on learning experience.,Software Developers & Engineers – Those looking to integrate AI and Quantum Computing into applications and real-world systems.,Data Scientists & Machine Learning Engineers – Professionals aiming to enhance their skills in AI and explore Quantum Machine Learning (QML).,Quantum Computing Enthusiasts – Learners interested in understanding quantum mechanics, quantum circuits, and quantum algorithms.,AI Researchers & Academics – Those studying Neural Networks, Reinforcement Learning, Quantum AI, and Variational Quantum Circuits (VQC).,Tech Professionals & IT Experts – Individuals looking to transition into AI-driven Quantum Computing roles.,Entrepreneurs & Innovators – Business leaders who want to leverage AI-powered quantum solutions for finance, cybersecurity, drug discovery, and optimization.,Students & Graduates – University students or recent graduates eager to specialize in AI, Quantum Computing, or their hybrid applications.