AI-Powered strategies to exploit the meta
Meta big data
Millions of hands from the meta are analyzed to reveal actual pool trends, such as overfolds or overbluffing in specific spots.
AI-Modeled decision trees
AI creates decision trees capturing the meta’s frequencies and ranges, reflecting opponents’ play in every spot.
Max ev without range balancing
The top ev lines are targeted, avoiding range balancing to maximize profits by exploiting meta weaknesses.


GTOkiller your AI coach
Move explanation
GTOkiller acts as an coach, explaining the reason for each move and detailing which meta leak it exploits.
Data-Driven clarity
Explanations use real meta frequencies and ranges for accurate understanding.
GTO limits your winrate
Range balancing reduces ev
Using bluffs and bluff-catchers only for balance wastes EV when these moves aren’t profitable against the meta.
Opponents far from GTO
GTO assumes optimal opponents, but real meta players deviate from GTO, making balanced lines inefficient.
Exploit and crush
GTOkiller simplifies strategy, selecting max-ev lines that punish meta leaks for ev++.



Strategies customized for your pool
Unique meta per site
GTOkiller creates strategies specific to each site, adapting to the unique mix of regulars, fish, or rake defining each meta.
Strategies by villain profile
Aggressive or tight opponents demand different approaches. GTOkiller adjusts max-ev lines based on villain’s profile to exploit their leaks.