Artificial And Machine Learning Lab 

 

For students in the CBSE curriculum, AI and ML labs offer hands-on learning through dedicated school facilities and vendor-provided kits and platforms. CBSE provides an official syllabus for Artificial Intelligence as a skill subject, which is often implemented through such labs. 

Implementation of AI/ML labs in CBSE schools

  • Atal Tinkering Labs (ATL): Many CBSE-affiliated schools that have established ATLs use this government-funded infrastructure to provide hands-on experience in AI and robotics. Some ATLs specifically incorporate AI modules.
  • Third-party vendors: Companies like STEMpedia, STEMROBO, and RobotLAB partner with CBSE schools to set up dedicated AI and ML labs. These vendors offer comprehensive packages that include:
    • Curriculum aligned with CBSE syllabus
    • AI and robotics kits
    • Python-based coding software
    • Teacher training programs
    • Learning management systems
  • PM SHRI Labs: The PM Schools for Rising India (PM SHRI) scheme also includes the establishment of multi-tech labs, with a focus on Artificial Intelligence and Machine Learning. 

CBSE AI and ML syllabus overview

CBSE offers AI as a skill subject (Code 417 for classes IX-X and Code 843 for classes XI-XII). The curriculum is structured to blend theoretical knowledge with practical, activity-based learning. 

Classes IX and X (Code 417)

  • Introduction to AI: Covers basic concepts, applications in daily life, and the three main AI domains: Data Science, Natural Language Processing (NLP), and Computer Vision.
  • AI Project Cycle: Teaches students the methodology for developing AI projects, from problem scoping to evaluation.
  • Data Science: Includes concepts like data literacy and mathematics for AI (statistics and probability).
  • Python: Students learn Python programming to work on AI concepts.
  • Practical work and project: The course includes significant practical components and project-based assignments, focusing on real-world applications and sustainable development goals. 

Classes XI and XII (Code 843)

  • Advanced AI concepts: Covers higher-level topics such as machine learning algorithms, deep learning, and advanced Python.
  • Practical implementation: The syllabus includes practical labs focused on implementing various algorithms, including supervised, unsupervised, and reinforcement learning.
  • Ethical AI: Discusses ethical considerations, biases, and data privacy related to AI. 

Benefits of AI/ML labs in schools

  • Hands-on learning: Enables students to move beyond theoretical knowledge and apply AI concepts to real-world problems.
  • Future skills: Equips students with 21st-century skills like critical thinking, problem-solving, and creativity, preparing them for future careers.
  • Interdisciplinary approach: Connects AI concepts with other subjects like mathematics, science, and social studies.
  • Increased engagement: Interactive tools and projects make learning more engaging for students of all ages.
  • Ethical awareness: Promotes a responsible approach to technology by addressing issues like AI bias and ethical implications.