UC-Berkeley-CS-188-Artificial-Intelligence and Berkeley-AI-CS188
These are competitors—both are independent student solutions to the same UC Berkeley CS 188 course assignments, offering alternative implementations of identical coursework problems.
About UC-Berkeley-CS-188-Artificial-Intelligence
BigEggStudy/UC-Berkeley-CS-188-Artificial-Intelligence
Assignment code for UC Berkeley CS 188 Artificial Intelligence
Covers core AI algorithms including uninformed search (DFS, BFS, UCS), informed search with A* and heuristics, constraint satisfaction problems, adversarial search with minimax and alpha-beta pruning, Markov decision processes, and reinforcement learning including Q-learning. Implements practical agent-based solutions in Python, with search agents navigating grid-based environments and game-playing agents using adversarial techniques. Complements Berkeley's edX course materials with quiz problems spanning search theory, CSP solving strategies, and learning algorithms.
About Berkeley-AI-CS188
OctaviPascual/Berkeley-AI-CS188
🤖Artificial Intelligence - Berkeley - CS188 - Summer 2016
Scores updated daily from GitHub, PyPI, and npm data. How scores work