NSTC Logo

Home >Courses >Blockchain and AI Integration: Enhancing Security and Automation

Mentor Based

Blockchain and AI Integration: Enhancing Security and Automation

Blockchain, AI, security, automation, smart contracts, decentralized finance, supply chain management, data security, fintech

Register NowExplore Details

Early access to e-LMS included

  • Mode: Online/ e-LMS
  • Type: Mentor Based
  • Level: Advanced
  • Duration: 3 Weeks

About This Course

Blockchain and AI Integration: Enhancing Security and Automation is a 3-weeks program designed for Computer Science, IT, and related fields. It explores the fundamentals of both blockchain and AI and demonstrates their combined potential to solve complex challenges in security and automation, particularly in sectors like finance, healthcare, and supply chain management.

Aim

The program aims to provide an in-depth understanding of how blockchain and artificial intelligence can be synergistically used to enhance security and automate processes within various industries, fostering innovation and efficiency.

Program Objectives

  • Comprehensive Understanding: Master the technical aspects of blockchain and AI and their applications in enhancing security and automation.
  • Practical Application: Develop hands-on skills through labs and project work to implement blockchain and AI solutions.
  • Innovation and Problem Solving: Foster innovative thinking and problem-solving abilities in addressing industry-specific challenges.

Program Structure

  • Module 1: Introduction to Blockchain and AI

    Section 1.1: Introduction to Blockchain Technology

    • Subsection 1.1.1: Blockchain Fundamentals
      • What is Blockchain?
      • Blockchain architecture: Blocks, nodes, and miners.
      • How Blockchain ensures transparency, security, and immutability.
    • Subsection 1.1.2: Types of Blockchains
      • Public vs. Private blockchains.
      • Permissioned vs. Permissionless blockchains.
    • Subsection 1.1.3: Use Cases of Blockchain
      • Cryptocurrencies (Bitcoin, Ethereum).
      • Supply chain management, voting systems, and healthcare.

    Section 1.2: Introduction to AI and Its Components

    • Subsection 1.2.1: AI Overview
      • Types of AI: Narrow AI, General AI, and Super AI.
      • AI Techniques: Machine Learning, Deep Learning, Natural Language Processing, and Robotics.
    • Subsection 1.2.2: How AI Works
      • AI models and algorithms (neural networks, decision trees).
      • Data preprocessing, model training, and validation.

    Module 2: Blockchain and AI Synergy

    Section 2.1: Why Integrate Blockchain and AI?

    • Subsection 2.1.1: Benefits of Blockchain in AI Systems
      • Enhancing trust, transparency, and security in AI processes.
      • Decentralized data storage and management.
    • Subsection 2.1.2: Benefits of AI in Blockchain
      • AI-driven automation for smarter and more efficient blockchains.
      • Enhancing consensus mechanisms with machine learning.

    Section 2.2: Blockchain Use Cases Enhanced by AI

    • Subsection 2.2.1: Secure Data Sharing and Management
      • How Blockchain can securely store AI models and data for transparency.
      • Decentralized AI model deployment.
    • Subsection 2.2.2: Automating Processes with Smart Contracts
      • AI-enabled smart contracts for automated transactions and decision-making.
      • Use cases in financial services, insurance, and supply chains.
    • Subsection 2.2.3: AI for Blockchain Security
      • Using AI to detect vulnerabilities and attacks in blockchain networks.
      • Enhancing consensus protocols with AI-based anomaly detection.

    Module 3: Implementing Blockchain and AI Integration

    Section 3.1: AI and Blockchain in Data Security

    • Subsection 3.1.1: Blockchain for Secure Data Management
      • How Blockchain provides encryption, decentralized storage, and auditability.
      • Case study: AI applications in sensitive data management.
    • Subsection 3.1.2: AI for Threat Detection and Mitigation
      • Leveraging machine learning for detecting fraud, intrusions, and anomalous behavior in blockchain networks.

    Section 3.2: Decentralized AI Model Training

    • Subsection 3.2.1: Federated Learning and Blockchain
      • Integrating Blockchain for secure, decentralized AI training.
      • Advantages of federated learning in privacy-preserving AI.
    • Subsection 3.2.2: Ensuring Model Integrity
      • Using Blockchain to verify the authenticity and integrity of trained AI models.
      • Case study: Decentralized AI for healthcare data and model validation.

    Section 3.3: Smart Contracts and AI-Powered Automation

    • Subsection 3.3.1: Creating AI-Powered Smart Contracts
      • How AI can create dynamic and adaptive smart contracts that respond to changing data and conditions.
    • Subsection 3.3.2: Automating Decision-Making with Blockchain and AI
      • Use cases of automated workflows in finance, insurance, and supply chain industries.

    Module 4: Advanced Topics in Blockchain and AI Integration

    Section 4.1: AI for Blockchain Optimization

    • Subsection 4.1.1: Machine Learning for Blockchain Scalability
      • AI techniques to enhance the scalability of blockchain networks.
      • Blockchain sharding, sidechains, and AI-optimized consensus protocols.
    • Subsection 4.1.2: AI for Blockchain Interoperability
      • How AI can enable seamless communication between different blockchain networks.

    Section 4.2: Blockchain and AI for Privacy-Preserving Applications

    • Subsection 4.2.1: Zero-Knowledge Proofs and AI
      • Using Zero-Knowledge Proofs (ZKPs) to ensure data privacy in AI applications.
      • Case study: Privacy-preserving AI models for healthcare.
    • Subsection 4.2.2: Homomorphic Encryption and Blockchain
      • How Blockchain can store encrypted data and AI can process it securely without decryption.

    Section 4.3: Ethical and Regulatory Considerations

    • Subsection 4.3.1: Ethics of AI and Blockchain Integration
      • Addressing biases in AI algorithms and ensuring transparency in blockchain.
      • Privacy concerns, consent, and data ownership in decentralized systems.
    • Subsection 4.3.2: Regulatory Landscape for Blockchain and AI
      • Navigating the legal frameworks for integrating AI and Blockchain.
      • Global policies and standards for Blockchain and AI applications.

Who Should Enrol?

  • B.Tech, M.Tech, B.Sc,M.Sc, and BCA, MCA students in Computer Science, IT, and related fields.
  • E0 & E1 level professionals in IT services, BFSI, consulting, and fintech services looking to enhance their technological capabilities.

Program Outcomes

  • Skill Enhancement: Gain advanced skills in blockchain and AI to improve security and automation.
  • Strategic Implementation: Ability to strategically integrate cutting-edge technologies into business processes.
  • Leadership and Innovation: Prepared to lead projects and innovations at the intersection of blockchain and AI.

Fee Structure

Discounted: ₹8,499 | $112

We accept 20+ global currencies. View list →

What You’ll Gain

  • Full access to e-LMS
  • Real-world dry lab projects
  • 1:1 project guidance
  • Publication opportunity
  • Self-assessment & final exam
  • e-Certificate & e-Marksheet

Join Our Hall of Fame!

Take your research to the next level with NanoSchool.

Publication Opportunity

Get published in a prestigious open-access journal.

Centre of Excellence

Become part of an elite research community.

Networking & Learning

Connect with global researchers and mentors.

Global Recognition

Worth ₹20,000 / $1,000 in academic value.

Need Help?

We’re here for you!


(+91) 120-4781-217

★★★★★
Scientific Paper Writing: Tools and AI for Efficient and Effective Research Communication

excellent

Sridevi Mardham
★★★★★
Prediction of Protein Structure Using AlphaFold: An Artificial Intelligence (AI) Program

Thank you very much, but it would be better if you could show more examples.

Qingyin Pu
★★★★★
AI for Healthcare Applications

My mentor was very nice and generous when it came to questions, and he showed us many useful tools

Fatima Zahra Rami
★★★★★
The Green NanoSynth Workshop: Sustainable Synthesis of NiO Nanoparticles and Renewable Hydrogen Production from Bioethanol

Good overrall presentations, i liked them. Would like to see a more in depth explanation of the applications, thank you !

Pascu

View All Feedbacks →

Stay Updated


Join our mailing list for exclusive offers and course announcements

Ai Subscriber

>