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A pure Python poker hand evaluation library

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Treys

A pure Python poker hand evaluation library

[ 3 ❤ ] , [ 3 ♠ ]

Installation

$ pip install treys

Implementation notes

Treys is a Python 3 port of Deuces based on the initial work in msaindon’s fork. Deuces was written by Will Drevo for the MIT Pokerbots Competition.

Treys is lightweight and fast. All lookups are done with bit arithmetic and dictionary lookups. That said, Treys won’t beat a C implemenation (~250k eval/s) but it is useful for situations where Python is required or where bots are allocated reasonable thinking time (human time scale).

Treys handles 5, 6, and 7 card hand lookups. The 6 and 7 card lookups are done by combinatorially evaluating the 5 card choices.

Usage

Treys is easy to set up and use.

>>> from treys import Card
>>> card = Card.new('Qh')

Card objects are represented as integers to keep Treys performant and lightweight.

Now let’s create the board and an example Texas Hold’em hand:

>>> board = [
>>>     Card.new('Ah'),
>>>     Card.new('Kd'),
>>>     Card.new('Jc')
>>> ]
>>> hand = [
>>>    Card.new('Qs'),
>>>    Card.new('Th')
>>> ]

Pretty print card integers to the terminal:

>>> Card.print_pretty_cards(board + hand)
  [ A ❤ ] , [ K ♦ ] , [ J ♣ ] , [ Q ♠ ] , [ T ❤ ]

If you have termcolor installed, they will be colored as well.

Otherwise move straight to evaluating your hand strength:

>>> from treys import Evaluator
>>> evaluator = Evaluator()
>>> print(evaluator.evaluate(board, hand))
1600

Hand strength is valued on a scale of 1 to 7462, where 1 is a Royal Flush and 7462 is unsuited 7-5-4-3-2, as there are only 7642 distinctly ranked hands in poker.

If you want to deal out cards randomly from a deck, you can also do that with Treys:

>>> from treys import Deck
>>> deck = Deck()
>>> board = deck.draw(5)
>>> player1_hand = deck.draw(2)
>>> player2_hand = deck.draw(2)

and print them:

>>> Card.print_pretty_cards(board)
  [ 4 ♣ ] , [ A ♠ ] , [ 5 ♦ ] , [ K ♣ ] , [ 2 ♠ ]
>>> Card.print_pretty_cards(player1_hand)
  [ 6 ♣ ] , [ 7 ❤ ]
>>> Card.print_pretty_cards(player2_hand)
  [ A ♣ ] , [ 3 ❤ ]

Let’s evaluate both hands strength, and then bin them into classes, one for each hand type (High Card, Pair, etc)

>>> p1_score = evaluator.evaluate(board, player1_hand)
>>> p2_score = evaluator.evaluate(board, player2_hand)
>>> p1_class = evaluator.get_rank_class(p1_score)
>>> p2_class = evaluator.get_rank_class(p2_score)

or get a human-friendly string to describe the score,

>>> print("Player 1 hand rank = %d (%s)\n" % (p1_score, evaluator.class_to_string(p1_class)))
Player 1 hand rank = 6330 (High Card)

>>> print("Player 2 hand rank = %d (%s)\n" % (p2_score, evaluator.class_to_string(p2_class)))
Player 2 hand rank = 1609 (Straight)

or, coolest of all, get a blow-by-blow analysis of the stages of the game with relation to hand strength:

>>> hands = [player1_hand, player2_hand]
>>> evaluator.hand_summary(board, hands)

========== FLOP ==========
Player 1 hand = High Card, percentage rank among all hands = 0.893192
Player 2 hand = Pair, percentage rank among all hands = 0.474672
Player 2 hand is currently winning.

========== TURN ==========
Player 1 hand = High Card, percentage rank among all hands = 0.848298
Player 2 hand = Pair, percentage rank among all hands = 0.452292
Player 2 hand is currently winning.

========== RIVER ==========
Player 1 hand = High Card, percentage rank among all hands = 0.848298
Player 2 hand = Straight, percentage rank among all hands = 0.215626

========== HAND OVER ==========
Player 2 is the winner with a Straight

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