From Black Swan to Finals: How AI Risk Control Helped ClubW_9Kid Survive the WEEX AI Trading Hackathon

By: WEEX|2026/02/23 11:00:00
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The WEEX AI Trading Hackathon finals are now in full swing, drawing global attention as top traders and AI innovators compete under real market conditions. After weeks of competition, more than 230 teams have been narrowed down to just 37 finalists, each representing a different vision of the future of AI trading. Beyond rankings and performance, every finalist carries a unique story — from strategy design to psychological battles and breakthroughs in human-AI collaboration.

To help our users gain a more vivid and comprehensive understanding of the WEEX AI Hackathon, we conducted a series of exclusive finalist interviews. In this feature, finalist ClubW_9Kid shares the thinking behind his “Survivor Strategy,” revealing how risk control, system resilience, and AI execution come together in the journey toward the finals.

How Fintech Experience Shaped an AI Trading Strategy in the WEEX Hackathon

Unlike traditional quant traders, ClubW_9Kid brings an unusual mix of experiences. Professionally active in the fintech and payments sector, he closely observes how macroeconomic shifts influence real businesses. At the same time, operating multiple nightclubs exposes him to people from every social layer — students, entrepreneurs, and corporate executives.

One surprising observation connected these worlds: regardless of profession, more and more people were beginning to use AI to improve their trading decisions. With years of equity day-trading experience, he sensed the industry was undergoing a quiet but profound transformation. Hearing about AI was no longer enough — he wanted to experience it firsthand. The WEEX AI Hackathon became his first real step toward delegating execution logic to machines rather than relying solely on manual judgment.

Prior to joining the hackathon, he primarily saw himself as a learner exploring the emerging AI trading landscape. Based in Australia, he discovered Deerbit AI — a magic tool he describes as “like Cursor for traders,” allowing strategies to be built and executed through natural language interaction. During the competition, he focused on refining what he called a “survivor strategy,” continuously integrating signal insights with his own market experience and iterating repeatedly using LLMs, including Deerbit’s dedicated Web3 model. The process reshaped his understanding of trading: AI dramatically shortened the distance between ideas and execution, making it possible to move from concept to results faster than ever before.

The Human-AI Blueprint: Philosophy for Humans, Execution & Evolution for AI

Can a trading team exist with only one human member? According to ClubW_9Kid, the answer is yes — because in his framework, the human is responsible for philosophy, while AI is responsible for execution and evolution. Rather than treating AI as a signal generator, he positions it as a nonstop research partner. He inputs core principles such as “Dynamic Capital Protection” and “Position Distribution Rebalancing,” then allows multiple AI models to stress-test scenarios repeatedly, refining logic across nearly 60 iterations before forming what he calls the “Survivor Strategy.”

At the heart of this system is a clear priority: survival under extreme volatility. Instead of chasing entries, the strategy first allocates capital through a structured distribution model, similar to a defensive formation. Positions are adjusted dynamically as market conditions change, allowing exposure to expand only when risk decreases and contract automatically during instability. This creates a layered defense mechanism where losses are contained early while profitable trends are allowed to grow gradually.

A key innovation lies in replacing directional prediction with structural protection. Rather than betting on where the market will go, the system builds a “dynamic moat” — a continuously adapting risk buffer that absorbs sudden shocks such as geopolitical news or liquidity cascades. In practice, this means the strategy aims to remain active after volatility wipes out aggressive traders. As ClubW_9Kid summarizes it: profits are not the objective of the system; they are the consequence of staying alive long enough in the market.

Why Risk Control Beat High ROI in the WEEX AI Trading Hackathon

Does WEEX AI Hackathon match his expectations?

Initially, he expected a straightforward ROI competition — a race focused purely on returns. Instead, the hackathon revealed something far deeper: a test of system resilience. Real-time leaderboard movements created constant psychological pressure, with rankings shifting rapidly throughout the competition. The experience made one lesson unmistakably clear — profitability without stability is temporary. Emotional endurance, disciplined execution, and risk control proved just as important as strategy design itself.

The event also reshaped his understanding of AI trading. Observing fellow participants, he noticed trading frequencies ranging from just 11 trades to as many as 371, with some competitors pushing leverage up to 20×. Both large profits and heavy losses exceeding $6,000 appeared during the competition. For newcomers, this highlighted a hidden risk: without sufficient expertise or time to monitor systems, AI can easily lead to overtrading, excessive fee erosion, and chaotic execution caused by poorly structured logic or ineffective leverage management.

Rather than simply showcasing performance extremes, the WEEX AI Hackathon demonstrated why structured competition matters. It provided a controlled environment where participants could confront their own limitations and better understand the risks behind automated trading. For him, the biggest takeaway was not winning trades, but gaining clarity — recognizing weaknesses and learning how to refine future strategies more responsibly.

Black Swan Market Moments: How AI Positioning Helped Secure a Finals Spot

What ultimately pushed him into the finals?

The turning point arrived during the February 6 market shock — a moment when volatility swept across the market faster than most human traders could react. Prices moved violently, liquidity thinned, and hesitation became costly within seconds. While many participants were still trying to interpret what was happening, ClubW_9Kid’s system had already made its decision. The AI was positioned short before the collapse fully unfolded.

What followed was not just profit, but proof of concept. As panic spread across the market, the AI executed its rules with absolute discipline — holding positions, rebalancing exposure, and resisting the human urge to interfere. He openly credits luck for being on the right side of the move — but emphasizes that luck alone never converts into results without execution speed. The real difference was that AI removed hesitation at the exact moment humans tend to freeze.

Ironically, the experience also revealed a hidden flaw. Watching unrealized profits fluctuate exposed how difficult manual profit-taking decisions can be under pressure. This realization led to a major upgrade for the finals: fully automated take-profit and profit-segregation mechanisms designed to lock in gains without emotional intervention. In his words, the market provided chaos — AI provided certainty.

How His AI Strategy Locks in Profits Without Emotional Interference

How will his strategy evolve in the finals?

The upgraded system introduces a “Booster Acceleration Patch.” Once trends are confirmed and positions reach break-even, AI increases exposure using controlled leverage expansion. At the same time, profits above defined equity thresholds are isolated behind protective layers.

This creates a dual structure: controlled aggression supported by automated defense. The goal is not reckless growth, but scalable confidence.

The Future of AI Trading: Survival as the Ultimate Competitive Edge

What message does he want to share with traders watching the finals?

His answer is simple: “Don’t try to beat the market. Learn how to survive it.”

Competing against global participants strengthened his belief that the future of AI trading will not be decided by indicators or coding complexity. It will be determined by who builds the most resilient systems against uncertainty and human emotion. In the AI era, defense may become the new alpha.

Season 2 Is Coming: A Bigger Battlefield for AI Trading Systems

As the finals unfold, anticipation is already building for the next chapter. The second season of the WEEX AI Hackathon is scheduled to launch this May, bringing expanded participation slots, stronger global collaboration, and more advanced AI trading experimentation.

For traders, developers, and AI innovators who watched from the sidelines, the next wave is approaching fast. The question is no longer whether AI will reshape trading — but whether you will help build that future yourself.

About WEEX

Founded in 2018, WEEX has developed into a global crypto exchange with over 6.2 million users across more than 150 countries. The platform emphasizes security, liquidity, and usability, providing over 1,200 spot trading pairs and offering up to 400x leverage in crypto futures trading. In addition to the traditional spot and derivatives markets, WEEX is expanding rapidly in the AI era — delivering real-time AI news, empowering users with AI trading tools, and exploring innovative trade-to-earn models that make intelligent trading more accessible to everyone. Its 1,000 BTC Protection Fund further strengthens asset safety and transparency, while features such as copy trading and advanced trading tools allow users to follow professional traders and experience a more efficient, intelligent trading journey.

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