This applies Counterfactual Regret Minimization (CFR) to Kuhn poker.
Kuhn Poker is a two player 3-card betting game. The players are dealt one card each out of Ace, King and Queen (no suits). There are only three cards in the pack so one card is left out. Ace beats King and Queen and King beats Queen - just like in normal ranking of cards.
Both players ante chip (blindly bet chip). After looking at the cards, the first player can either pass or bet chip. If first player passes, the the player with higher card wins the pot. If first player bets, the second play can bet (i.e. call) chip or pass (i.e. fold). If the second player bets and the player with the higher card wins the pot. If the second player passes (i.e. folds) the first player gets the pot. This game is played repeatedly and a good strategy will optimize for the long term utility (or winnings).
Here's some example games:
KAp
 - Player 1 gets K. Player 2 gets A. Player 1 passes. Player 2 doesn't get a betting chance and Player 2 wins the pot of  chips. QKbp
 - Player 1 gets Q. Player 2 gets K. Player 1 bets a chip. Player 2 passes (folds). Player 1 gets the pot of  because Player 2 folded. QAbb
 - Player 1 gets Q. Player 2 gets A. Player 1 bets a chip. Player 2 also bets (calls). Player 2 wins the pot of .He we extend the InfoSet
 class and History
 class defined in __init__.py
 with Kuhn Poker specifics.
37from typing import List, cast, Dict
38
39import numpy as np
40
41from labml import experiment
42from labml.configs import option
43from labml_nn.cfr import History as _History, InfoSet as _InfoSet, Action, Player, CFRConfigs
44from labml_nn.cfr.infoset_saver import InfoSetSaverKuhn poker actions are pass (p
) or bet (b
) 
47ACTIONS = cast(List[Action], ['p', 'b'])The three cards in play are Ace, King and Queen
49CHANCES = cast(List[Action], ['A', 'K', 'Q'])There are two players
51PLAYERS = cast(List[Player], [0, 1])54class InfoSet(_InfoSet):Does not support save/load
59    @staticmethod
60    def from_dict(data: Dict[str, any]) -> 'InfoSet':62        pass Return the list of actions. Terminal states are handled by History
 class.
64    def actions(self) -> List[Action]:68        return ACTIONSHuman readable string representation - it gives the betting probability
70    def __repr__(self):74        total = sum(self.cumulative_strategy.values())
75        total = max(total, 1e-6)
76        bet = self.cumulative_strategy[cast(Action, 'b')] / total
77        return f'{bet * 100: .1f}%'This defines when a game ends, calculates the utility and sample chance events (dealing cards).
The history is stored in a string:
80class History(_History):History
94    history: strInitialize with a given history string
96    def __init__(self, history: str = ''):100        self.history = historyWhether the history is terminal (game over).
102    def is_terminal(self):Players are yet to take actions
107        if len(self.history) <= 2:
108            return FalseLast player to play passed (game over)
110        elif self.history[-1] == 'p':
111            return TrueBoth players called (bet) (game over)
113        elif self.history[-2:] == 'bb':
114            return TrueAny other combination
116        else:
117            return FalseCalculate the terminal utility for player ,
119    def _terminal_utility_p1(self) -> float:if Player 1 has a better card and otherwise
124        winner = -1 + 2 * (self.history[0] < self.history[1])Second player passed
127        if self.history[-2:] == 'bp':
128            return 1Both players called, the player with better card wins chips
130        elif self.history[-2:] == 'bb':
131            return winner * 2First player passed, the player with better card wins chip
133        elif self.history[-1] == 'p':
134            return winnerHistory is non-terminal
136        else:
137            raise RuntimeError()Get the terminal utility for player
139    def terminal_utility(self, i: Player) -> float:If is Player 1
144        if i == PLAYERS[0]:
145            return self._terminal_utility_p1()Otherwise,
147        else:
148            return -1 * self._terminal_utility_p1()The first two events are card dealing; i.e. chance events
150    def is_chance(self) -> bool:154        return len(self.history) < 2Add an action to the history and return a new history
156    def __add__(self, other: Action):160        return History(self.history + other)Current player
162    def player(self) -> Player:166        return cast(Player, len(self.history) % 2)Sample a chance action
168    def sample_chance(self) -> Action:172        while True:Randomly pick a card
174            r = np.random.randint(len(CHANCES))
175            chance = CHANCES[r]See if the card was dealt before
177            for c in self.history:
178                if c == chance:
179                    chance = None
180                    breakReturn the card if it was not dealt before
183            if chance is not None:
184                return cast(Action, chance)Human readable representation
186    def __repr__(self):190        return repr(self.history)Information set key for the current history. This is a string of actions only visible to the current player.
192    def info_set_key(self) -> str:Get current player
198        i = self.player()Current player sees her card and the betting actions
200        return self.history[i] + self.history[2:]202    def new_info_set(self) -> InfoSet:Create a new information set object
204        return InfoSet(self.info_set_key())A function to create an empty history object
207def create_new_history():209    return History()Configurations extends the CFR configurations class
212class Configs(CFRConfigs):216    pass Set the create_new_history
 method for Kuhn Poker
219@option(Configs.create_new_history)
220def _cnh():224    return create_new_history227def main():Create an experiment, we only write tracking information to sqlite
 to speed things up. Since the algorithm iterates fast and we track data on each iteration, writing to other destinations such as Tensorboard can be relatively time consuming. SQLite is enough for our analytics. 
236    experiment.create(name='kuhn_poker', writers={'sqlite'})Initialize configuration
238    conf = Configs()Load configuration
240    experiment.configs(conf)Set models for saving
242    experiment.add_model_savers({'info_sets': InfoSetSaver(conf.cfr.info_sets)})Start the experiment
244    with experiment.start():Start iterating
246        conf.cfr.iterate()250if __name__ == '__main__':
251    main()