Play, learn, solve, and analyze No-Limit Texas Hold Em. Implementation follows from Monte Carlo counter-factual regret minimization over with hierarchical K-means imperfect recall abstractions.
-
Updated
Aug 8, 2025 - Rust
Play, learn, solve, and analyze No-Limit Texas Hold Em. Implementation follows from Monte Carlo counter-factual regret minimization over with hierarchical K-means imperfect recall abstractions.
A simplified solver written for Heads Up No-Limit Hold'Em Poker
River Nash equilibrium solver with bet size solving functionality
This project is a heads-up no-limit Texas Hold’em solver designed to compute GTO strategies. It leverages CFR with efficient abstractions, allowing scalable strategy computation and analysis. The solver supports range input, action abstraction, and real-time decision-making, making it suitable for both research and practical gameplay analysis
A Monte Carlo CFR solver for All-In or Fold poker, computing approximate Nash-equilibrium strategies efficiently
Robust Deep Monte Carlo Counterfactual Regret Minimization: Addressing Theoretical Risks in Neural Fictitious Self-Play
A GTO solver for Spin & Go poker variant
Add a description, image, and links to the poker-solver topic page so that developers can more easily learn about it.
To associate your repository with the poker-solver topic, visit your repo's landing page and select "manage topics."