featured-image

What’s Included?

icon High-Quality Video, E-book & Audiobook icon Modules Quizzes icon AI Mentor icon Access for Tablet & Phone icon Online Proctored Exam with One Free Retake

Prerequisites

    • A foundational knowledge of AI concepts, no technical skills are required.
    • Willingness to exploring unconventional approaches to problem-solving within the context of AI and Quantum.
    • Openness to engage critically with ethical dilemmas and considerations related to AI technology in quantum practices.

Self Study Materials Included

Videos

Engaging visual content to enhance understanding and learning experience.

Podcasts

Insightful audio sessions featuring expert discussions and real-world cases.

Audiobooks

Listen and learn anytime with convenient audio-based knowledge sharing.

E-Books

Comprehensive digital guides offering in-depth knowledge and learning support.

Module Wise Quizzes

Interactive assessments to reinforce learning and test conceptual clarity.

Additional Resources

Supplementary references and list of tools to deepen knowledge and practical application.

Tools You’ll Master

IBM Qiskit

IBM Qiskit

D-Wave Leap

D-Wave Leap

Google TensorFlow Quantum (TFQ)

Google TensorFlow Quantum (TFQ)

Amazon Braket

Amazon Braket

What You’ll Learn

Quantum Algorithm Development

Learners will acquire skills in developing quantum algorithms specifically designed for AI applications. This involves creating and implementing quantum circuits and understanding how quantum gates operate within these algorithms.

Quantum Machine Learning and Deep Learning

Learners will learn how to apply quantum computing principles to machine learning and deep learning models. This includes the development and optimization of quantum-enhanced models that leverage the unique advantages of quantum computing.

Designing Quantum Circuits

Learners will gain practical skills in designing and constructing quantum circuits, essential for implementing quantum algorithms and solving complex computational problems.

Optimization of Quantum-AI Models

Learners will learn techniques to optimize quantum-AI models for better performance, including fine-tuning parameters and reducing computational complexity.

Course Modules

Module 1: Overview of Artificial Intelligence (AI) and Quantum Computing
  1. 1.1 Artificial Intelligence Refresher
  2. 1.2 Quantum Computing Refresher
Module 2: Quantum Computing Gates, Circuits, and Algorithms
  1. 2.1 Quantum Gates and their Representation
  2. 2.2 Multi Qubit Systems and Multi Qubit Gates
Module 3: Quantum Algorithms for AI
  1. 3.1 Core Quantum Algorithms
  2. 3.2 QFT and Variational Quantum Algorithms
Module 4: Quantum Machine Learning
  1. 4.1 Algorithms for Regression and Classification
  2. 4.2 Algorithms for Dimensionality and Clustering
Module 5: Quantum Deep Learning
  1. 5.1 Algorithms for Neural Networks – Part I
  2. 5.2 Algorithms for Neural Networks – Part II
Module 6: Ethical Considerations
  1. 6.1 Ethics for Artificial Intelligence
  2. 6.2 Ethics for Quantum Computing
Module 7: Trends and Outlook
  1. 7.1 Current Trends and Tools
  2. 7.2 Future Outlook and Investment
Module 8: Use Cases & Case Studies
  1. 8.1 Quantum Use Cases
  2. 8.2 QML Case Studies
Module 9: Workshop
  1. 9.1 Project – I: QSVM for Iris Dataset
  2. 9.2 Project – II: VQC/QNN on Iris Dataset
  3. 9.3 Bonus: IBM Quantum Computers
Optional Module: AI Agents for Quantum
  1. 1. What Are AI Agents
  2. 2. Key Capabilities of AI Agents in Quantum Computing
  3. 3. Applications and Trends for AI Agents in Quantum Computing
  4. 4. How Does an AI Agent Work
  5. 5. Core Characteristics of AI Agents
  6. 6. Types of AI Agents

Frequently Asked Questions

Yes, the course includes a hands-on workshop to reinforce theoretical concepts. Participants will engage in practical exercises to apply Quantum Computing principles to AI scenarios, enhancing their understanding through real-world applications.

This course is for professionals and enthusiasts with a basic understanding of AI, eager to explore AI and Quantum Computing technologies for innovative problem-solving.

Graduates of this course are equipped to contribute to industries undergoing rapid transformation, including healthcare, finance, cybersecurity, and logistics, where AI and Quantum Computing are driving innovative solutions and advancements.

By understanding both AI and Quantum Computing, participants gain insights into cutting-edge technologies that complement each other. This interdisciplinary knowledge equips them to innovate and solve complex problems more effectively across various industries.

The course emphasizes practical applications through hands-on workshops and real-world case studies. Participants gain experience in implementing Quantum Computing algorithms and techniques, enhancing their readiness to tackle industry challenges.