Leap ahead in your Career with Quantum & AI.
Improve your skills with certification from IISc & QpiAI.
QpiAI™ Quantum & AI Certification consists of comprehensive courses covering all major topics in Quantum and AI. From basics to advanced, we have it all covered.
Joint learning program by

Register! >
Fast Track Your Career.

Courses from Experts
Courses are taught by Prof. Shalabh Bhatnagar(IISC), Prof. Ujwal Sen(HRI), QpiAI team and experts from around the world! The course content will be updated constantly. Download the complete information brochure here.

Upto 1 year free license for QpiAI Explorer*
QpiAI Explorer is the fastest and easiest way to learn and apply Quantum and AI Concepts. Learn more about QpiAI Explorer.
* – On purchase of certification course.

Certification from IISc. and QpiAI
Get ahead of your peers with a recognized certification from IISc. and QpiAI.
Learn
Artificial Intelligence
![]() |
Artificial Intelligence |
![]() |
Machine Learning |
![]() |
Deep Learning |

Artificial Intelligence

Machine Learning

Deep Learning
Quantum Computing
![]() |
Essential Mathematics |
![]() |
Quantum Computation |
![]() |
Quantum Information |
![]() |
Quantum Communication |
![]() |
Quantum Programming |
![]() |
Quantum Applications |

Essential Mathematics

Quantum Computation

Quantum Information

Quantum Communication

Quantum Programming

Quantum Applications
Course Structure

Study Material
We have curated an extensive in-depth curriculum for teaching Quantum Computing and Artificial Intelligence. We cover the basics of quantum mechanics, then expand on quantum circuits, algorithms, protocols, and their applications to various science and technology problems. In AI, we cover the basics of mathematics, and then cover traditional machine learning. We stress on supervised and unsupervised learning methods, and deep neural networks.

Assignments and Projects
Students will be supplemented with exercises and assignments based on the study material. They will be guided to read and implement research papers and build projects based on state-of-the-art developments in Quantum Technologies and Artificial Intelligence

QpiAI Explorer
Upto 1 Year License*
QpiAI Explorer Software will enable the students to build quantum circuits and experiment with the simulation of quantum algorithms and protocols. Our tool provides detailed explanatory visualizations and even capability to simulate hybrid circuits. The software will also enable the students to build machine learning models and experiment on various classes of problems and datasets. It will teach the students to prepare data, run algorithms, train models, and build ML systems.
Available Courses (3)
AI Certification – Beginner (Level 1)
Topics Covered
- Artificial Intelligence
- Machine Learning
- Deep Learning
Duration
3 Months.
Batch 1
Starts on May 1.
Registration cut off date is April 15, 2021.

6 Months free access*
Topics Covered

Artificial Intelligence

Machine Learning

Deep Learning
![]() |
Artificial Intelligence |
![]() |
Machine Learning |
![]() |
Deep Learning |
How you will learn

Theory Sessions

Practical Sessions

Assignments, Projects and Tests

All within one tool – QpiAI™ Explorer
![]() |
Theory Sessions |
![]() |
Practical Sessions |
![]() |
Assignments |
![]() |
All within one tool – QpiAI™ Explorer |
Course comes with 6 months access to

QpiAI™ Explorer is the fastest and easiest way to learn, build ML & AI Models, play with Quantum Computing, and keep up to date with AI & Quantum World.
Duration
3 Months
Start Date – Batch 1
May 1, 2021
Registration Cut Off Date – Batch 1
April 15, 2021
Curriculum
Chapter 1: Prerequisites for Artificial Intelligence
1.1 Linear Algebra
1.2 Probability Theory
1.3 Bayes Theorem and Statistics
1.4 Calculus and Optimization
Chapter 2: Supervised Machine Learning
2.1 Regression Models
2.2 Linear and Multiple Linear Regression
2.3 Regression Performance Metrics
2.4 Classification Models
2.5 KNN, Logistic Regression
2.6 Support Vector Machines
2.7 Confusion Matrix, ROC Curves
2.8 Decision Tree, Bagging, Boosting and Ensembling
Chapter 3: Unsupervised Machine Learning
3.1 Dimensionality Reduction: PCA
3.2 Clustering: K-Means Clustering
Chapter 4: Deep Learning
4.1 Activation Functions, Feedforward Network
4.2 Back Propagation, Loss Functions, Hyperparameters
4.3 Convolutional Neural Networks
4.4 CNN Architectures for Image Classification
4.5 Recurrent Neural Networks
4.6 Long Short-Term Memory Models
4.7 Autoencoders
Chapter 5: Reinforcement Learning
5.1 Finite Markov Decision Processes
5.2 Value and Policy Iteration (Dynamic Programming)
5.3 Monte-Carlo Methods
5.4 On-policy and Off-Policy Algorithms
Click/Tap on a chapter to see it’s contents.
Register Now!
Get ahead of your peers with a recognized certification from IISc. and QpiAI.
AI Certification – Advanced (Level 2)
Topics Covered
All topics covered in AI Certification Beginner (Level 1) +
- Practical and Advanced Machine Learning
- Advanced Topics in Deep Learning
Duration
6 Months.
Batch 1
Starts on May 1.
Registration cut off date is April 15, 2021.

1 Year free access*
Topics Covered
All topics covered in AI Certification Beginner (Level 1) +

Practical and Advanced Machine Learning

Advanced Topics in Deep Learning
![]() |
Practical and Advanced Machine Learning |
![]() |
Advanced Topics in Deep Learning |
How you will learn

Theory Sessions

Practical Sessions

Assignments, Projects and Tests

All within one tool – QpiAI™ Explorer
![]() |
Theory Sessions |
![]() |
Practical Sessions |
![]() |
Assignments |
![]() |
All within one tool – QpiAI™ Explorer |
Course comes with 1 year access to

QpiAI™ Explorer is the fastest and easiest way to learn, build ML & AI Models, play with Quantum Computing, and keep up to date with AI & Quantum World.
Duration
6 Months
(3 Months Level 1 + 3 Months Level 2)
Start Date – Batch 1
May 1, 2021
Registration Cut Off Date – Batch 1
April 15, 2021
Curriculum
All curriculum covered in AI Certification Beginner (Level 1) +
Chapter 1: Prerequisites for Artificial Intelligence
1.1 Linear Algebra
1.2 Probability Theory
1.3 Bayes Theorem and Statistics
1.4 Calculus and Optimization
Chapter 2: Supervised Machine Learning
2.1 Regression Models
2.2 Linear and Multiple Linear Regression
2.3 Regression Performance Metrics
2.4 Classification Models
2.5 KNN, Logistic Regression
2.6 Support Vector Machines
2.7 Confusion Matrix, ROC Curves
2.8 Decision Tree, Bagging, Boosting and Ensembling
Chapter 3: Unsupervised Machine Learning
3.1 Dimensionality Reduction: PCA
3.2 Clustering: K-Means Clustering
3.3 t-SNE
3.4 Kernel PCA
3.5 Spectral Clustering
Chapter 4: Deep Learning
4.1 Activation Functions, Feedforward Network
4.2 Back Propagation, Loss Functions, Hyperparameters
4.3 Convolutional Neural Networks
4.4 CNN Architectures for Image Classification
4.5 Recurrent Neural Networks
4.6 Long Short-Term Memory Models
4.7 Autoencoders
Chapter 5: Practical Machine Learning
5.1 Exploratory Data Analysis
5.2 Feature Engineering
5.3 Hyperparameter Tuning
5.4 Model Selection
5.5 End-to-end Machine Learning
Chapter 6: Bayesian Methods in Machine Learning
6.1 Bayesian Inference
6.2 Bayesian Optimization
6.3 Variational Methods
6.4 Gaussian Process Regression
Chapter 7: Advanced Topics in Deep Learning
7.1 Object Detection
7.2 Semantic Segmentation
7.3 Generative Adversarial Networks
7.4 Variational Autoencoders
Chapter 8: Reinforcement Learning and Deep Reinforcement Learning
8.1 Finite Markov Decision Processes
8.2 Value and Policy Iteration (Dynamic Programming)
8.3 Monte-Carlo Methods
8.4 On-policy and Off-Policy Algorithms
8.5 Deep Reinforcement Learning
8.6 Value-based methods and Q-learning
8.7 Function Approximation, DQN
8.8 Policy Gradient Methods, Actor Critic Methods
Click/Tap on a chapter to see it’s contents.
Register Now!
Get ahead of your peers with a recognized certification from IISc. and QpiAI.
Joint Certification Program in Artificial
Intelligence and Quantum Computing
Topics Covered
All topics covered in AI Certification Beginner (Level 1) and Advanced (Level 2) +
- Essential Mathematics
- Quantum Computation
- Quantum Information
- Quantum Communication
- Quantum Programming
- Quantum Applications.
Duration
6 Months.
Batch 1
Starts on May 1.
Registration cut off date is April 15, 2021.

1 Year free access*
Topics Covered
All topics covered in AI Certification Beginner (Level 1) and Advanced (Level 2) +

Essential Mathematics

Quantum Computation

Quantum Information

Quantum Communication

Quantum Programming

Quantum Applications
![]() |
Essential Mathematics |
![]() |
Quantum Computation |
![]() |
Quantum Information |
![]() |
Quantum Communication |
![]() |
Quantum Programming |
![]() |
Quantum Applications |
How you will learn

Theory Sessions

Practical Sessions

Assignments, Projects and Tests

All within one tool – QpiAI™ Explorer
![]() |
Theory Sessions |
![]() |
Practical Sessions |
![]() |
Assignments |
![]() |
All within one tool – QpiAI™ Explorer |
Course comes with 1 year access to

QpiAI™ Explorer is the fastest and easiest way to learn, build ML & AI Models, play with Quantum Computing, and keep up to date with AI & Quantum World.
Duration
6 Months
Start Date – Batch 1
May 1, 2021
Registration Cut Off Date – Batch 1
April 15, 2021
Curriculum
All curriculum covered in AI Certification Beginner (Level 1) and Advanced (Level 2) +
Chapter 1: Prerequisites for Quantum Computing
1.1 Essential Linear Algebra
1.2 Essential Computer Science
1.3 Basics of Quantum Mechanics
Chapter 2: Quantum States and Qubits
2.1 Single-qubit states and superposition
2.2 Single-qubit gates and measurements
2.3 Two-qubit states, entanglement, and Bell’s inequality
2.4 Two-qubit gates and observable
2.5 Multi-Qubit states (GHZ and W states)
2.6 Universal gates and quantum circuit model
2.7 Quantum adiabatic computation and the Ising model for NP-hard problems
Chapter 3: Quantum Algorithms
3.1 Quantum Circuits
3.2 Deutsch-Jozsa Algorithm
3.3 Bernstein-Vazirani Algorithm
3.4 Quantum Fourier Transform
3.5 Quantum Factoring: Shor’s Algorithm
3.6 Quantum Database Search: Grover’s Algorithm
3.7 Circuit Simulations on QpiAI Explorer Software
Chapter 4: Quantum Protocols
4.1 Quantum Teleportation
4.2 Superdense Coding
4.3 Simulation of QpiAI Explorer Software
4.4 Quantum Cryptography and Key Distribution
4.5 Quantum Communication and Networks
Chapter 5: NISQ Devices
5.1 Noise Models
5.2 Quantum Error Mitigation
5.3 Quantum Volume and Performance Metrics
5.4 Hybrid Quantum-Classical Computing
Chapter 6: Quantum Algorithms for Applications
6.1 Quantum Inspired Computing
6.2 Variational Quantum Algorithms
6.3 Variational Quantum Eigensolver
6.4 Quantum Approximate Optimization Algorithm
6.5 Quantum Machine Learning: QNNs
6.6 HHL Algorithm for Solving Linear Systems
Chapter 7: Quantum Hardware: Superconducting Qubits
7.1 Introduction to physical qubits
7.2 Circuit Quantum Electrodynamics
7.3 Transmon and Coupled Qubits
7.4 Control and Readout
Chapter 8: Quantum Hardware: Semiconducting Qubits
8.1 Introduction to physical qubits
8.2 Spin Physics and Quantum Dots
8.3 Control and Readout
8.4 Scalability
Click/Tap on a chapter to see it’s contents.
Register Now!
Get ahead of your peers with a recognized certification from IISc. and QpiAI.

Certificate shown is for representational purposes only. Actual certificate may vary.
Get Certified
Improve your resume with a certification from IISc. and QpiAI India. What’s more? Students who perform excellently* get free 1-year license to QpiAI Pro and free 1-year license to the upcoming QpiAI AI/ML Model Marketplace as both buyer and seller.
*Students who secure above 90% in Level 2 AI Certification or Joint Certification on Quantum and AI are eligible. For QpiAI Pro 1-year free license, cloud computation costs shall be borne by the student/user.
Frequently Asked Questions
1. How can I enroll in the certificate courses?
Here is a step by step video on how to enroll for the certification courses
2. Would there be an entrance test for the certification?
3. What are prerequisites for two sets of courses (Quantum, AI) in general?
4. What will be the course structure for the 3 courses?
You can also download the complete course information brochure here:
5. What is the eligibility criteria for a certification program?
6. What is the mode delivery for the courses? Is it entirely online or requires physical presence?
7. How would the hands-on component (projects/assignments) be completed/submitted?
8. How much weekly workload is expected? (in hours)
AI-Level 1 Course is 4.5 hours.
AI-Level 2 Course is 4.5 hours.
Joint AI and Quantum Course is 9 hours.
9. How will I get support for query resolution / project guidance during the course?
10. Would there be guest lectures from the industry?
11. How long will the course material be accessible ?
- The AI Level-1 certification is a 3-months program.
- The AI Level-2 certification is a 6-months program.
- The Joint AI-Quantum Computing Certification is a 6-months program.
- Students for Level-1 AI Certification will have access to course materials for 6 months.
- Students for Level-2 AI and Joint AI+Quantum Certification will have 1 year access.
12. Would it help for an experienced professional like me to switch domains or do a career transition?
Highly motivated candidates might as well transition to the world of quantum computing technologies and take up roles in taking the industry forward.
13. Could top candidates get an opportunity to work at QpiAI?
- Have an opportunity to be considered for AI as well as Quantum computing jobs at QpiAI
- Have 1-year QpiAI Pro License and 1 year free membership to QpiAI Marketplace AI and Quantum Solutions Marketplace
- The cloud computation cost for QpiAI Pro will be borne by the candidate
14. Still have questions?
You can also write to us at certification@qpiai.tech and our team will get back as soon as possible.
-
Email Us
Call us at
Office
WeWork Manyata NXT Tower – 1
Embassy Manyata Business Park, Nagavara, Bengaluru, Karnataka 560045