How Smart Money Tracker Survived Live AI Trading at WEEX AI Hackathon
From 230 Teams to 37 Finalists: WEEX AI Trading's Ultimate Test
At the AI Wars: WEEX Alpha Awakens, more than 230 teams from around the world competed in the preliminary rounds, with only 37 teams advancing to the finals. These finalists faced live-market conditions that would rigorously test their AI trading strategies. Among them was Jannet Ekka, founder of Smart Money Tracker, a solo builder whose AI system integrates whale tracking, sentiment analysis, technical indicators, and a multi-person decision architecture designed to withstand extreme market volatility.
As part of WEEX’s ongoing commitment to advancing AI-powered trading innovation, we sat down with Jannet for an exclusive interview. She shares how her system operates in live markets, the critical lessons learned from navigating real-time flash crashes, and why, in her philosophy, survival must always come before profit.
Smart Money Tracker's 4-Layer Architecture: Multi-Persona AI for Risk-Resilient Trading
At its core, Smart Money Tracker operates through a layered architecture integrating whale activity monitoring, order flow analysis, market sentiment intelligence, and technical structure indicators. Each module functions as an independent analytical “persona,” generating structured reasoning rather than isolated numerical triggers.
At the final layer sits a decision engine — internally referred to as “the Judge.” Its role is not simply to aggregate signals, but to weigh confidence levels, validate alignment across personas, and determine whether market conditions are structurally stable before deploying capital. This design intentionally avoids single-factor dependency and prioritizes conviction over frequency — a discipline that proved essential under live-market pressure.
Jannet explains the system through a simple analogy: crossing a busy street. Multiple observers gather information, but one trusted decision-maker determines whether it’s safe to move. “It’s not ‘if X > 0.7, sell.’ It’s understanding why whale distribution aligns with aggressive taker selling and what that context implies.” That reasoning layer, she argues, is what separates AI from simple automation.
Flash Crash Response: Smart Money Tracker's AI Reduced Exposure to Avoid Losses
The competition’s flash crash became a real-time stress test. While some strategies attempted to trade the volatility spike, Smart Money Tracker stepped back.“By design, it is a coward.”
The system reduces exposure when persona alignment weakens or volatility exceeds predefined thresholds. If signals conflict, execution pauses entirely. In extreme conditions, the AI can suspend trading for hours. During the crash, Jannet logged dozens of refinements — strengthening flash-crash protection, raising confidence thresholds, and adjusting internal weighting logic.
The event also reshaped her signal hierarchy. On-chain whale data showed 80–90% confidence levels during turbulence. In hindsight, she believes those signals deserved greater weight. The lesson: multi-factor models reduce noise, but edge lies in differentiated data and disciplined weighting — especially signals reflecting informed capital behavior.
From 4,100 to 10,000: Smart Money Tracker's Profit Lock Recovery Strategy
Following a drawdown to roughly $4,100 in equity, Smart Money Tracker entered recovery mode. The path back toward $10,000 requires approximately 7–8% compounded daily growth — a mathematical challenge demanding precision rather than reinvention.
Three upgrades were deployed. First, a profit-lock mechanism: instead of waiting for 15% targets, the system banks 1–2% gains repeatedly. At 18x leverage, small price movements compound meaningfully. Second, a “Fear Shield” that protects profitable positions during extreme Fear & Greed conditions. Third, a hard cap of three concurrent positions to reduce fee bleed and increase conviction per trade.
“The strategy that delivered 566% in qualifiers still works,” Jannet noted. “What broke wasn’t the signal quality — it was position management.” Version V3.1.64 represents the most refined iteration to date. Whether it succeeds now depends less on code — and more on market cooperation.
WEEX AI Trading Hackathon: Real Money, Real AI Trading Consequences
Following a drawdown to roughly $4,100 in equity, Smart Money Tracker entered recovery mode. The path back toward $10,000 requires approximately 7–8% compounded daily growth — a mathematical challenge demanding precision rather than reinvention. Instead of rewriting the core system that delivered 566% in the qualifiers, Jannet focused on execution discipline. A profit-lock mechanism now banks 1–2% gains instead of waiting for 15% targets; at 18x leverage, even small price movements compound meaningfully. A “Fear Shield” protects profitable positions during extreme sentiment regimes, and a hard cap of three concurrent positions reduces fee bleed while increasing conviction per trade. “What broke wasn’t the signal quality — it was position management,” she said.
But recovery, for Jannet, is not just a tactical adjustment — it reflects a broader philosophy. Smart Money Tracker was built on free-tier cloud infrastructure, open-source tools, and public APIs. “You don’t need a Bloomberg terminal or a quantitative physics PhD,” she noted. “The barrier to AI trading is zero. The barrier to good AI trading is sleep deprivation and stubbornness.” Her message to builders is simple: ship the 80% version, take the 1% gain, and let compounding do the rest.
In live markets, ambition without protection is fragility. For Jannet — and for Smart Money Tracker — survival is not a defensive stance.It is the strategy.
WEEX AI Trading Hackathon: Real Money, Real Consequences
The defining difference of the WEEX AI Trading Hackathon was real capital. Not paper trading, not simulation — but live execution with slippage, fees, leverage, and public equity curves.
“When your bot opens a $31,000 notional BTC position at 18x leverage, you feel it,” Jannet said. A 1% move translates into an 18% return on equity — or loss. Code written at 2 AM is no longer theoretical; it directly determines financial outcomes.
Most hackathons test creativity. This one tested durability. With the leaderboard fully transparent, there was no place to hide weak risk management. For Jannet, the experience reinforced a fundamental truth: intelligent systems are not defined by how aggressively they trade, but by how well they endure.
To see how Smart Money Tracker and other finalists perform under live-market pressure, explore the full WEEX AI Trading Hackathon Finals here: https://www.weex.com/events/ai-trading
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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Debunking the AI Doomsday Myth: Why Establishment Inertia and the Software Wasteland Will Save Us
Editor's Note: Citrini7's cyberpunk-themed AI doomsday prophecy has sparked widespread discussion across the internet. However, this article presents a more pragmatic counter perspective. If Citrini envisions a digital tsunami instantly engulfing civilization, this author sees the resilient resistance of the human bureaucratic system, the profoundly flawed existing software ecosystem, and the long-overlooked cornerstone of heavy industry. This is a frontal clash between Silicon Valley fantasy and the iron law of reality, reminding us that the singularity may come, but it will never happen overnight.
The following is the original content:
Renowned market commentator Citrini7 recently published a captivating and widely circulated AI doomsday novel. While he acknowledges that the probability of some scenes occurring is extremely low, as someone who has witnessed multiple economic collapse prophecies, I want to challenge his views and present a more deterministic and optimistic future.
In 2007, people thought that against the backdrop of "peak oil," the United States' geopolitical status had come to an end; in 2008, they believed the dollar system was on the brink of collapse; in 2014, everyone thought AMD and NVIDIA were done for. Then ChatGPT emerged, and people thought Google was toast... Yet every time, existing institutions with deep-rooted inertia have proven to be far more resilient than onlookers imagined.
When Citrini talks about the fear of institutional turnover and rapid workforce displacement, he writes, "Even in fields we think rely on interpersonal relationships, cracks are showing. Take the real estate industry, where buyers have tolerated 5%-6% commissions for decades due to the information asymmetry between brokers and consumers..."
Seeing this, I couldn't help but chuckle. People have been proclaiming the "death of real estate agents" for 20 years now! This hardly requires any superintelligence; with Zillow, Redfin, or Opendoor, it's enough. But this example precisely proves the opposite of Citrini's view: although this workforce has long been deemed obsolete in the eyes of most, due to market inertia and regulatory capture, real estate agents' vitality is more tenacious than anyone's expectations a decade ago.
A few months ago, I just bought a house. The transaction process mandated that we hire a real estate agent, with lofty justifications. My buyer's agent made about $50,000 in this transaction, while his actual work — filling out forms and coordinating between multiple parties — amounted to no more than 10 hours, something I could have easily handled myself. The market will eventually move towards efficiency, providing fair pricing for labor, but this will be a long process.
I deeply understand the ways of inertia and change management: I once founded and sold a company whose core business was driving insurance brokerages from "manual service" to "software-driven." The iron rule I learned is: human societies in the real world are extremely complex, and things always take longer than you imagine — even when you account for this rule. This doesn't mean that the world won't undergo drastic changes, but rather that change will be more gradual, allowing us time to respond and adapt.
Recently, the software sector has seen a downturn as investors worry about the lack of moats in the backend systems of companies like Monday, Salesforce, Asana, making them easily replicable. Citrini and others believe that AI programming heralds the end of SaaS companies: one, products become homogenized, with zero profits, and two, jobs disappear.
But everyone overlooks one thing: the current state of these software products is simply terrible.
I'm qualified to say this because I've spent hundreds of thousands of dollars on Salesforce and Monday. Indeed, AI can enable competitors to replicate these products, but more importantly, AI can enable competitors to build better products. Stock price declines are not surprising: an industry relying on long-term lock-ins, lacking competitiveness, and filled with low-quality legacy incumbents is finally facing competition again.
From a broader perspective, almost all existing software is garbage, which is an undeniable fact. Every tool I've paid for is riddled with bugs; some software is so bad that I can't even pay for it (I've been unable to use Citibank's online transfer for the past three years); most web apps can't even get mobile and desktop responsiveness right; not a single product can fully deliver what you want. Silicon Valley darlings like Stripe and Linear only garner massive followings because they are not as disgustingly unusable as their competitors. If you ask a seasoned engineer, "Show me a truly perfect piece of software," all you'll get is prolonged silence and blank stares.
Here lies a profound truth: even as we approach a "software singularity," the human demand for software labor is nearly infinite. It's well known that the final few percentage points of perfection often require the most work. By this standard, almost every software product has at least a 100x improvement in complexity and features before reaching demand saturation.
I believe that most commentators who claim that the software industry is on the brink of extinction lack an intuitive understanding of software development. The software industry has been around for 50 years, and despite tremendous progress, it is always in a state of "not enough." As a programmer in 2020, my productivity matches that of hundreds of people in 1970, which is incredibly impressive leverage. However, there is still significant room for improvement. People underestimate the "Jevons Paradox": Efficiency improvements often lead to explosive growth in overall demand.
This does not mean that software engineering is an invincible job, but the industry's ability to absorb labor and its inertia far exceed imagination. The saturation process will be very slow, giving us enough time to adapt.
Of course, labor reallocation is inevitable, such as in the driving sector. As Citrini pointed out, many white-collar jobs will experience disruptions. For positions like real estate brokers that have long lost tangible value and rely solely on momentum for income, AI may be the final straw.
But our lifesaver lies in the fact that the United States has almost infinite potential and demand for reindustrialization. You may have heard of "reshoring," but it goes far beyond that. We have essentially lost the ability to manufacture the core building blocks of modern life: batteries, motors, small-scale semiconductors—the entire electricity supply chain is almost entirely dependent on overseas sources. What if there is a military conflict? What's even worse, did you know that China produces 90% of the world's synthetic ammonia? Once the supply is cut off, we can't even produce fertilizer and will face famine.
As long as you look to the physical world, you will find endless job opportunities that will benefit the country, create employment, and build essential infrastructure, all of which can receive bipartisan political support.
We have seen the economic and political winds shifting in this direction—discussions on reshoring, deep tech, and "American vitality." My prediction is that when AI impacts the white-collar sector, the path of least political resistance will be to fund large-scale reindustrialization, absorbing labor through a "giant employment project." Fortunately, the physical world does not have a "singularity"; it is constrained by friction.
We will rebuild bridges and roads. People will find that seeing tangible labor results is more fulfilling than spinning in the digital abstract world. The Salesforce senior product manager who lost a $180,000 salary may find a new job at the "California Seawater Desalination Plant" to end the 25-year drought. These facilities not only need to be built but also pursued with excellence and require long-term maintenance. As long as we are willing, the "Jevons Paradox" also applies to the physical world.
The goal of large-scale industrial engineering is abundance. The United States will once again achieve self-sufficiency, enabling large-scale, low-cost production. Moving beyond material scarcity is crucial: in the long run, if we do indeed lose a significant portion of white-collar jobs to AI, we must be able to maintain a high quality of life for the public. And as AI drives profit margins to zero, consumer goods will become extremely affordable, automatically fulfilling this objective.
My view is that different sectors of the economy will "take off" at different speeds, and the transformation in almost all areas will be slower than Citrini anticipates. To be clear, I am extremely bullish on AI and foresee a day when my own labor will be obsolete. But this will take time, and time gives us the opportunity to devise sound strategies.
At this point, preventing the kind of market collapse Citrini imagines is actually not difficult. The U.S. government's performance during the pandemic has demonstrated its proactive and decisive crisis response. If necessary, massive stimulus policies will quickly intervene. Although I am somewhat displeased by its inefficiency, that is not the focus. The focus is on safeguarding material prosperity in people's lives—a universal well-being that gives legitimacy to a nation and upholds the social contract, rather than stubbornly adhering to past accounting metrics or economic dogma.
If we can maintain sharpness and responsiveness in this slow but sure technological transformation, we will eventually emerge unscathed.
Source: Original Post Link

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