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Detecting Bots: Uncovering Insights from GGPoker Data Analysis Detecting Bots: Uncovering Insights from GGPoker Data Analysis

05-04-2024 , 01:52 PM
another bots?

Cl16theBest
CyHelpful
BalancingAct
Detecting Bots: Uncovering Insights from GGPoker Data Analysis Quote
05-27-2024 , 10:13 PM
Bot Analysis Report: Tight Cash Bots for Rake Races

We continue our analysis of various bot groups. This time, we focus on tight cash bots that play primarily for rake races and rakeback. Out of this group, 10 nicknames were previously reported by y2da, and we've identified 2 additional accounts.



General Gameplay Patterns:



1. 0% Cold-Call (CC) from HJ, CO, and SB: Only 3% CC from the BTN.
2. 70% Fold vs. 3-Bet: Significantly overfolding.
3. BB Isolation vs. SB 30%: Solver frequency is 40-42%.
4. C-Betting Ranges: 63/49/47 - tight c-betting ranges, almost similar to solver frequencies.
5. Raiser Out of Position (OOP) and Raiser SBvsBB Freqs slightly higher and value-oriented than GTO.
6. Delay C-Bet Frequencies and BXB: Solver or below solver frequencies.
7. Caller OOP: Probe Turn, Probe River, XXB also at solver or below solver frequencies.

8. C-Bets Flop into 3-Way Single Raised Pot (SRP) Freqs.


C-bet Flop into 3-Way SRP vs IP/OOP is very tight.


9. C-Bet Flop into 4-Way SRP: Even tighter, hypervalue-oriented.





I could elaborate on their characteristics extensively, but the main point is that they employ a mix of solver-oriented and tighter strategies. All accounts use a single symmetrical strategy. Instead of delving into more specifics here, I invite you to examine their hands yourself for a more detailed study.
https://mega.nz/file/G9EgRIoR#5_XTzi...MC5ZPO8LgxADgg

Results with This Strategy:



Despite their structured approach, their results were not impressive. They couldn't beat the rake and played at -3.7 EVbb/100, but remained profitable or breakeven due to rakeback and promotions.

You might wonder, if they don't win much, why does it matter? The issue is that poker is meant to be a game of people competing against each other, not bots versus humans. A bot at the table kills the enjoyment, even if it isn't a particularly dangerous opponent. Botfarm also start with cautious strategies in low-stakes games and through years of evolution, develop exploits to gain significant advantages. Other botnets like this could follow a similar path. The only effective way to combat them is by studying their strategies and monitoring their evolution. It's impossible to counter them effectively without transparent hand histories.

Donation Wallets:

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TON: UQDEMfu7YIOp8di0rN__G_elC6SdZLERJvAcU3z0nUwRNVti
Detecting Bots: Uncovering Insights from GGPoker Data Analysis Quote
Yesterday , 12:36 AM
good job exposing them. keep up the good work
Detecting Bots: Uncovering Insights from GGPoker Data Analysis Quote

      
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