Case studies: real success stories and failures
Numbers, graphs, and lessons from real poker bot users. No names, but with specifics.
For whom: players considering bots; farmers who want to understand realistic expectations; investors who need numbers for their calculations.
Why case studies matter more than marketing promises
The poker bot market is full of claims about “guaranteed income” and “100% success.” Reality is more nuanced. Some users reach consistent profit within a month. Others blow their deposit in a week — and blame the software, when the real problem runs deeper: a lack of understanding of the fundamentals, failure to follow recommendations, and greed.
This article is a collection of real stories. No embellishments. With numbers you can verify, and lessons worth learning before you invest your first dollar.
Success stories: when everything worked
Case #1: quick start on X-Poker
| Parameter | Value |
|---|---|
| Platform | X-Poker, ClubGG, NLH |
| Fuel cost | ~$200 |
| Profit | ~$2,650 |
| ROI (on fuel) | ~1225% |
Context: A new partner started with a small fuel deposit on X-Poker and ClubGG — two of the softest club-based platforms. Within the first month of playing NLH at low-mid stakes, the bot generated ~$2,650 in profit. The partner ran multiple bot instances at the same tables, maximizing EV extraction from recreational players.
What the user did right:
-
Chose rooms with high fish traffic (X-Poker, ClubGG)
-
Seated multiple bots at the same table
-
Played at optimal stakes (didn’t chase high stakes right away)
-
Used TableSelect to choose tables
-
Had a sufficient stack
Case #2: scaling to a large farm
| Parameter | Value |
|---|---|
| Platforms | ClubGG, PokerBros, X-Poker |
| Fuel cost | ~$3,500 |
| Profit | ~$10,200 |
| ROI (on fuel) | ~+190% |
Context: An experienced partner built a full-scale operation across ClubGG, PokerBros, and X-Poker. The farm ran dozens of bot accounts simultaneously, generating hundreds of thousands of hands per month. Account management was systematic — rotation every 7 days, residential proxies, proper bankroll allocation per account. The result: consistent 17 BB/100 winrate over 240K hands with ~$10,200 in profit on ~$3,500 fuel spend.
| Sample | Profit (BB) | Comment |
|---|---|---|
| 50K hands | +9,000 BB | Initial results, high variance |
| 125K hands | +19,000 BB | Stabilization, EV converges with reality |
| 240K hands | +39,000 BB | Long-term trend confirmed |
| Average win rate | 17 BB/100 | Above market average |
Case #3: the impact of stack depth on win rate
Context: Data aggregated from multiple partners across WePoker, HHPoker, and PokerBros. The AI’s performance was measured against stack depth to determine optimal bankroll per table. The results show a clear pattern — deeper stacks allow the AI to leverage its post-flop edge more effectively.
Win rate as a function of stack size:
| Stack Depth | Win Rate (bb/100) |
|---|---|
| < 100 BB | ~28 |
| 100-200 BB | ~31 |
| 200-300 BB | ~40 |
| 300-400 BB | ~48 |
| 400+ BB | ~47 |
The AI demonstrates maximum efficiency at stacks of 200bb+. The difference between short stack play (<100bb) and deep stack (300-400bb) is approximately 20 bb/100. Over the long run, that’s enormous money.
Data from real clubs: what the numbers show
Beyond individual user cases, we have aggregated data from our partners’ real clubs.
Daily results: ClubGG
Context: One partner’s daily results from a ClubGG club operation. The partner ran multiple NLH bot accounts at low-to-mid stakes. These are 9 individual playing days selected from a longer period — they show only profitable days. Losing days also occur and are a normal part of poker variance.
| Day | Profit |
|---|---|
| 1 | +$2,383 |
| 2 | +$2,548 |
| 3 | +$3,039 |
| 4 | +$3,978 |
| 5 | +$4,012 |
| 6 | +$4,194 |
| 7 | +$4,620 |
| 8 | +$6,607 |
| 9 | +$9,103 |
Average profit across these 9 days: ~$4,500/day.


Regional performance: ClubGG (Israel, ILS)
ClubGG clubs operate in multiple currencies worldwide. Here are results from an Israeli club — individual member statistics showing consistent profit over hundreds of hands:


Large-scale operations: agent networks
| Platform | Accounts | Hands/Week | Rake/Week |
|---|---|---|---|
| ClubGG (agent) | 9 | 5,651 | 12,597 HKD |
| ClubGG (super-agent) | 27 | 20,587 | 68,913 HKD |
| X-Poker | 15–24 | — | 10,900–12,000 BRL |
| ClubGG / PokerBros | — | — | $16,900–26,300 |



PLO: session results across platforms
PokerBotAI bots support not only NLH but also PLO4, PLO5, PLO6, and OFC. Real PLO session results from our partners across multiple platforms:
- +$23,072, +$75,121, +$135,224 — PLO5 100/50 on PokerBros
- +$142,597, +$98,748 (PLO5 200/100–300/150)
- +$62,432 in a single PLO6 50/100 session on ClubGG (with a 20,000 chip buy-in — 312% ROI per session)


PLO5 results on Pokerrrr2 (India, INR):

High stakes: club games
At high stakes (blinds from 2,500/1,250 in club currency), results from a single session can reach hundreds of thousands and more. Top sessions from our partners: from +200,000 to +2,600,000 in local currency (e.g. Mongolian tugriks on Pokerrrr2).


- Currency. Large amounts on Pokerrrr2 and X-Poker are often expressed in local currency (tugriks, reais, etc.), not USD. The actual dollar equivalent can be several times smaller.
- The field decides. Such results are possible where big money is actually circulating and there are enough recreational players. If your club has low traffic or small stakes — profit will be proportionally smaller.
- Variance works both ways. Every winning streak can be followed by a downswing.
Losing periods: variance in action
Not all periods are profitable — and that’s a normal part of poker:
-
X-Poker, farm of 15-24 accounts: cumulative P&L was -36,392 BRL, while the farm generated 214,723 BRL in commissions. A loss on winnings with a gain on rake — a typical scenario on certain fields where rakeback compensates for variance.
-
PokerBros, weekly NLH series: out of 6 sessions — 4 profitable, 2 losing (-1,353 and -533). Weekly total: +8,975. Losing days are a normal part of the long run.
-
PokerBros, PLO4/PLO5: in a series of 12 sessions — 3 losing (-1,400, -900, -500), but the overall result was positive thanks to large winning sessions (+3,697, +2,086, and others).

Weekly statistics from a PokerBros NLH player — 498 BB/100 winrate over 291 hands:


Major industry scandals: lessons for everyone
Martin Zamani: bot farm at the poker table (january 2026)
Well-known poker pro Martin Zamani was caught running a bot farm. This case showed that even professionals with a reputation can get detected. The consequences — loss of reputation, a ban, and a public scandal.
CoinPoker: $156k returned to victims
The CoinPoker platform conducted an investigation and returned $156K to players affected by bots. This is an example of how rooms respond to bot detection — fund confiscation and victim compensation.
PartyPoker: 291 accounts banned
PartyPoker blocked 291 accounts linked to bot operations. The mass ban shows that major rooms invest in detection systems and are prepared to take decisive action.
Lesson: improper setup and ignoring security measures lead to loss of accounts, deposits, and reputation. Following stealth recommendations is not optional — it’s a necessity.
Failure cases: where things went wrong
Failure #1: ignoring AI advice
| Period | AI Adherence | Result |
|---|---|---|
| First week (~1,200 hands) | Manual play, overriding AI hints | Mediocre, negative EV |
| After switching to auto mode | 100% (auto mode, multiple bots) | 41 bb/100, consistent profit |
| Total | — | Time and money wasted in manual phase |
The user played manually with AI hints for about a week — roughly 3-4 hours per day, ~1,200 hands total. They frequently overrode the AI recommendations, trusting their own reads over calculated lines. After a week of break-even results and growing frustration, they switched to full auto mode with multiple bot accounts. The difference was immediate — the bots hit 41 bb/100 with zero manual intervention.
Failure #2: datacenter IP instead of residential
A classic story: the user saved money on proxies, grabbed cheap server IPs. Within a week — banned.
Why this happens:
-
Poker rooms maintain databases of datacenter IPs
-
Multiple accounts from the same IP range = red flag
-
Even if the software works perfectly, a bad IP kills the account
Masking Best Practices + Launch Checklist
Failure #3: panic over short-term results
A real case from the statistics:
-
First 6,000 hands — zero result, the curve trends downward
-
The user panicked and started changing settings
-
Switched to another room, then came back
-
Ended up losing time and money from all the jumping around
Meanwhile, those who continued on the same track without changes:
-
By 20K hands — win rate of 38 bb/100
-
EV grew steadily, while actual results fluctuated
-
Variance smoothed out, profit materialized
Failure #4: poor bankroll management
Most players who lose their bankroll do so not because of bad luck — they lose because they don’t manage risk properly.
A typical scenario:
-
Starting bankroll of $500 at NL50 (10 buy-ins)
-
Downswing of -3 buy-ins in one session
-
Attempt to recover at NL100
-
Result: -$500 in one evening
Lessons from the cases: what works
1. The long run decides everything
No success story is built on 5,000 hands. The minimum for conclusions is 50K+ hands. Over a short sample, variance can show anything: +50 bb/100 and -30 bb/100 alike. Only the long run reveals the true picture.
2. AI is smarter than intuition
The neural network is trained on 300+ million real hands (statistics from all poker rooms since the 2000s) and 7+ billion synthetic and solver-generated hands. Your intuition is based on a few thousand. When the AI says “fold” and you feel “call” — in 99% of cases, the AI is right. Failure #1 in this article proves it.
3. Infrastructure matters more than software
The best bot in the world won’t help if you’re using server proxies, holding 5 buy-ins at your level, and playing from one IP across 10 accounts. Most failures are not “bad bot” but “bad setup.”
4. Scale works
The large farm case shows: with the right approach, scaling linearly increases profit. ROI may decrease as volume grows, but absolute numbers increase.
5. Deep stack = more EV
The data is clear: the difference between playing at <100bb and 300-400bb is approximately 20 bb/100. The AI better capitalizes on its edge with deep stacks.
Realistic expectations: what you can expect
| Scenario | Fuel Investment | Expected ROI (on fuel) | Monthly Profit |
|---|---|---|---|
| Single account | $200-500 | 200-400% | $400-2,000 (depends on stakes) |
| Small farm (5-15 acc) | $1,000-3,000 | 150-300% | $1,500-5,000 (depends on number of bots and scale) |
| Large farm (50+ acc) | $5,000+ | 100-250% | $5,000-15,000+ (depends on number of bots, rooms, and stakes) |
More details in the article about bot ROI
Poker is a marathon, not a sprint. And bots play by the same rules.
Poker Bot ROI: Realistic Expectations
How Rooms Catch Bots: Detection Methods 2026
Variance and the Long Run: Why Results Are Deceiving
Masking Best Practices + Launch Checklist
TurnKey PokerBotFarm (The Deal)
How Much Do Poker Bots Cost + Solution Comparison
Related articles
Why PokerBotAI: 2026 Review
Choosing the Right Room and Stakes
Multi-Tabling with Bots: Risks and Optimization