Strategic Objectives
• Master the integration of neural pattern recognition with symbolic logic.
• Understand how sensory inputs transform into shareable semantic symbols.
• Learn to build AI systems that are both intuitive and explainable.
• Discover the future of seamless communication between humans and machines.
The Core Challenge
Deep learning thrives on data but fails at logic, while symbolic AI excels at rules but struggles with the messy real world.
01
The Great Convergence
02
The Architecture of Perception
03
The Power of the Symbol
04
From Pixels to Predicates
05
Reasoning with Logic
06
Semantic Networks
07
The Knowledge Graph Advantage
08
The Bayesian Bridge
09
Deep Learning for Discovery
10
Cognitive Architectures
11
Inductive Logic Programming
12
Natural Language Processing
13
The Role of Ontology
14
Explainable AI (XAI)
15
Computer Vision and Semantics
16
Robot Learning and Manipulation
17
Connectionist Temporal Classification
18
The Semantic Web
19
Reinforcement Learning with Logic
20
Ethics and Symbolic Governance
21