2. NEP 2020 highlights (Learn, Unlearn,
Relearn)
● With scientific and technological advances, such as the rise of big data,
machine learning, and artificial intelligence, many unskilled jobs may be
taken over by machines,
● the need for a skilled workforce, with multidisciplinary abilities across the
sciences, social sciences, and humanities, will be increasingly in greater
demand.
● with the quickly changing employment landscape and global ecosystem, it is
becoming increasingly critical that children not only learn, but more
importantly learn how to learn.
3. What is
Intelligence
Intelligence - ability to learn and perform suitable techniques
to solve problems and achieve goals (Stanford Univ)
A modern factory robot is flexible, accurate, and consistent but
not intelligent.
4. What is
AI?
The branch of science and technology that is devoted to
the creation of machines (Computer System, Robots, etc.)
that learn and think as intelligently as human beings is
known as Artificial Intelligence or AI.
5. What is AI (Artificial Intelligence)
Simulation of human intelligence processes by computer systems.
Characteristics of human behaviour:
● Understanding
● Reasoning
● Learning
● Solving Problems
● Effective communication
The Science and Engineering of making intelligent machines, especially
intelligent computer programs - McCarthy
SIRI and Alexa are powered by AI
7. How AI systems work?
1
● by analyzing data and learning from patterns.
● use algorithms, or step-by-step instructions, to learn
from data and make decisions
● The more data they are given and the more patterns
they learn, the better they become at making
decisions and performing tasks.
●
8. Why sudden boom in AI Systems?
● significant improvements in computing power and data
storage capabilities
● The growth of the internet, social media, and other digital
technologies has led to the accumulation of vast amounts of
data, which can be analyzed and used to train AI models.
● Advances in the AI research (Deep Learning)
● Advancements in Natural Language Processing (NLP): The ability
of AI to understand and interpret human language
10. Major areas/fields of AI
Machine Learning - how computer agents can improve their
perception, knowledge, thinking, or actions based on
experience or data
Robotics - puts artificial intelligence into practice using machines that
perceive and interact with the physical world
Computer vision - can understand images and video
Natural language processing - understand written and spoken language;
automatic translation of text from one language to another, or
understanding text to produce knowledge about the world.
Expert Systems - learns and imitates a human being’s decision-making
ability.
11. Generative AI
It is a type of artificial intelligence that focuses on
creating/generating new content.
It's a subset of machine learning, drawing from techniques like
deep learning and reinforcement learning to generate output
that con include text, images, music, video, and more.
14. Conversational AI
a type of AI that can simulate human conversation.
Happens through natural language processing (NLP), a field of AI that allows
computers to understand and process human languages.
“synthetic brain power that makes machines capable of understanding,
processing and responding to human language.”
18. AI in
Education
Use of Computers in Education are primarily aimed towards:
● increasing accessibility - Learning resources can be accessed
from anywhere, at any time
● facilitating personalized learning inside and outside the
classroom. Learning can be tailored and adapted to each
student’s goals and abilities through personalized programs,
● Time-consuming, tedious tasks such as record keeping or
grading multiple-choice tests can be completed through AI
automation, and
● exploring fundamental questions about how people learn
19. Personalized Learning
● tailor learning experiences to the unique needs, preferences,
pace and abilities of each learner.
● analyzing data about individual learners, AI can provide
insights into areas of strengths and weaknesses, identify
learning styles, and provide customized recommendations for
content, resources, and activities.
● Leads to more engaging, relevant, and effective
learning experience
● bridge the skills gap that exists between different
learners
20. Adaptive Learning
● AI algorithms observe you to detect how you prefer to
learn as an individual or as a chort
● Goal is creating entire learning journeys or flows that
adjust to each learner based on their interests, learning
preferences, needs, skills, and what they wish to learn
21. Universal Access
● Real time text to speech, Speech to text conversion
● text to text, speech to speech conversion from one
language to another
● Will make the classroom accessible to people who speak
different languages or those having visual or hearing
impairments
22. From a policymaker’
s perspective
Potential application categories of AI in Edu:
(i) education management and delivery;
(ii) learning and assessment;
(iii) empowering teachers and enhancing teaching;
and
(iv) lifelong learning.
23. Education management and delivery
AI systems are designed to automate aspects of school
administration, including admissions, timetabling, attendance and
homework monitoring, and school inspections.
a data-mining approach ‘learning analytics’ is used to analyse the
big data generated in learning management systems to provide
information for teachers and administrators, and sometimes
guidance for students.
some learning analytics predict which students are at risk of
failure.
24. Education management and delivery
visual dashboards are used to inform data-driven decision
making
Many AI based applications collect huge amounts of student
interaction data, use machine-learning techniques to ‘search for
patterns’. The aim is to teach the software to identify when
children are confused or bored, in order to help them become
engaged.
25. Learning and
assessment
Broad aim to provide every learner, wherever they are in the
world, with access to high-quality, personalized, and ubiquitous
lifelong learning.
26. Learning and assessment
Other categories of AI based systems for learning and assessment
are:
Dialogue-based tutoring systems
(NLP) Exploratory learning
environments Automated writing
evaluation
AI-supported reading and language learning (Babbel,
Duolingo) Smart robots
Educational virtual and augmented reality
27. Intelligent T
utoring
System
Works is by providing step-by-step tutorials, individualized for
each student, through topics in structured subjects such as
mathematics or physics.
It determines an optimal pathway through the learning materials
and activities by drawing on expert knowledge about the subject and
cognitive sciences,
Respond to individual students’ misconceptions and successes
As the student engages with the learning activities, the system uses
knowledge tracing and machine learning to automatically adjust the
level of difficulty and provide hints or guidance according to the
individual student’s strengths and weaknesses
28. Empowering teachers and enhancing teaching
AI applications aim to help teachers reduce workloads
by automating tasks such as assessment, plagiarism
detection, administration and feedback.
AI-driven discussion forum monitoring (AI
Assistant) AI-powered teaching assistants
29. Empowering role of teachers
it is widely agreed that as AI tools become more
available in classroom, it is likely that teacher roles will
change.
What is not yet clear is how this will happen.
Teachers will need to build new competencies to enable
them to work effectively with AI, and undertake appropriate
professional development to foster their human and social
capabilities.
30. Lifelong learning
AI-driven lifelong learning companions
AI-enabled continuous assessment
AI-enabled record of lifelong learning achievements - AI-driven e-portfolio
31. Ethical Concerns Related to AI systems
1. Fairness: should be designed to avoid bias and discrimination and ensure equal
treatment for all individuals, regardless of their race, gender, age, or other
personal characteristics.
2. Transparency: should be transparent and explainable, with clear
documentation of how they make decisions and recommendations.
3. Privacy: respect the privacy of individuals and protect their personal data
from unauthorized access or misuse.
4. Accountability: Those who develop and deploy AI systems should be
accountable
5. Safety: to ensure the safety and well-being of users and others who
may be affected by their use.
32. Way Forward
● Educators need to develop a better understanding of AI’s
impact, including on education and training.
● educators and students should have a basic understanding of AI
and data usage to be able to engage positively, critically and
ethically with this technology and to exploit its full potential.
● European Commission published Ethical Guidelines
(https://ec.europa.eu/commission/presscorner/detail/en/ip_22_6338)
on the Use of Artificial Intelligence (AI) and data in teaching and
learning for teachers