AI Learning Roadmap
A structured curriculum from the dawn of ImageNet to the future of AGI.
START LEARNING
1
Module 01: History & Legacy
The ImageNet Revolution
Understand the historical context and the “Big Bang” of modern AI. Why did deep learning suddenly work in 2012?
-
01
The Evolution of ImageNet: How It Changed AI Forever The story of the dataset that started it all.
-
02
Key Milestones in Computer Vision History From early pixels to the Deep Learning explosion.
-
03
The Role of Large-Scale Datasets Why data quantity matters as much as algorithms.
-
04
How ILSVRC Revolutionized Global Research The competition that united the global scientific community.
-
05
Looking Back: The Visionaries Behind ImageNet Profiles of the pioneers who saw the future.
2
Module 02: Foundations
Computer Vision Fundamentals
Master the core technologies. How do Convolutional Neural Networks (CNNs) actually see and process the world?
-
06
Deep Learning Architecture: CNNs and Beyond Deconstructing the neural networks that power vision.
-
07
Object Detection vs. Image Classification A comprehensive guide to the core tasks of vision AI.
-
08
How Machines “See”: Digital Image Processing The science of turning pixels into meaning.
-
09
Transfer Learning: Using Pre-trained Models How to teach old models new tricks efficiently.
-
10
The Importance of Data Annotation The unsung hero of accurate AI model training.
3
Module 03: The New Wave
Generative AI & Future Tech
Move from recognition to creation. Explore the cutting edge of Diffusion Models and Multimodal AI.
-
11
From Recognition to Creation: Generative AI The paradigm shift from analyzing data to creating it.
-
12
Computer Vision and LLMs Synergy When eyes meet language: The birth of visual understanding.
-
13
Diffusion Models Explained How noise becomes art: The tech behind Stable Diffusion.
-
14
Multimodal AI: Integrating Vision, Text, Audio Towards AGI: Systems that sense the world like humans.
-
15
The Future of Autonomous Systems Robotics and self-driving cars powered by Vision AI.
4
Module 04: Society & Ethics
Ethics & Practical Applications
Apply knowledge to the real world. Understanding responsibility, bias, and industrial transformation.
-
16
AI Ethics and Bias in Visual Datasets Navigating the challenges of fairness in machine learning.
-
17
Real-World Applications in Healthcare Saving lives with computer vision diagnostics.
-
18
AI Impact on Security & Face Recognition Balancing safety and privacy in the digital age.
-
19
Transforming Retail and E-commerce The revolution in shopping experiences powered by AI.
-
20
Sustainable AI: Reducing Environmental Impact Building a greener future for large-scale model training.
MASTERY ACHIEVED