Decision Making in Machines | One Shot Revision | ICSE Class 10 Robotics & AI, Code 66 Full Syllabus
Автор: Prof.Analysis
Загружено: 2026-01-17
Просмотров: 11
Описание:
Master the fundamentals of Decision Making in Machines in this comprehensive one-shot revision for ICSE Class 10 Robotics and AI (Subject Code 66)! 🤖💡
This video kicks off Part 2 of the syllabus, focusing on Artificial Intelligence. We break down complex concepts into simple, exam-oriented explanations to help you understand how machines think, learn, and act in the real world.
In this lesson, we cover:
✅ Automated vs. Autonomous Systems: Why a microwave is automated but a Roomba is autonomous.
✅ Deterministic vs. Probabilistic Systems: Understanding certain outcomes vs. likelihood-based guesses.
✅ Subjective vs. Objective Decision Making: How machines bridge the gap between hard facts and personal opinions.
✅ Object Classification: A deep dive into how humans recognize cats instantly while computers need thousands of pixel patterns.
✅ Machine Learning (ML) Fundamentals: The steps of collecting data, preparing it, training the model, and testing it with new examples.
✅ Real-World Application: A detailed case study of a Fruit Sorting Machine using the ML approach to distinguish between apples and oranges.
Why watch this?
Strictly follows the ICSE Grade 10 Syllabus (Code 66).
Exam Ready: Clear definitions and "Key Takeaways" for quick revision.
Practical Examples: Real-world scenarios like autocorrect and autonomous vacuums.
Subscribe to Prof. Analysis for more ICSE Robotics & AI lessons, including Python programming and advanced ML concepts!
🕒 Timestamps
[00:00] Introduction to ICSE Class 10 Robotics & AI (Part 2)
[01:24] Automated vs. Autonomous Systems Explained
[03:52] Deterministic vs. Probabilistic Systems
[06:10] Subjective vs. Objective Decision Making
[08:24] Object Classification: Humans vs. Computers
[10:35] What is Machine Learning (ML)?
[11:43] Data vs. Information: The Role of Patterns
[12:51] The 5 Key Steps in Machine Learning
[14:55] Programming, Algorithms & Coding for ML
[16:34] Case Study: Fruit Sorting Machine (Automated Approach)
[17:42] Case Study: Fruit Sorting Machine (Machine Learning Approach)
[20:25] How ML Models Calculate Probability & Confidence
[22:31] Key Takeaways: The Future of Learning Systems
#ICSEClass10 #RoboticsAndAI #DecisionMaking #ICSECode66 #MachineLearning #ArtificialIntelligence #STEMEducation #ProfAnalysis #RevisionOneShot #Automation #FutureTech
Повторяем попытку...
Доступные форматы для скачивания:
Скачать видео
-
Информация по загрузке: