Table of Contents
- How the ChatGPT Trading Bot Works
- ChatGPT Trading Bot Outperforms Benchmarks
- GPT in Retail Finance Is Exploding
- What Makes the ChatGPT Trading Bot Different
- Real World vs Simulated Results
- ChatGPT Trading Bot Signals Broader Shift in Market Intelligence
- The Road Ahead for EquiTrade
- AI Is Rewriting the Playbook for Young Investors
In a world where hedge funds spend millions building trading infrastructure, three New Jersey high school students have built a ChatGPT trading bot that outperformed Wall Street’s benchmark index.
Using OpenAI’s GPT-4 and basic Python code, the students developed a bot, EquiTrade, that posted a 13.2% return in 10 weeks, while the S&P 500 gained just 4.2% in the same period. Their bot analyzed financial news, gauged market sentiment, and executed simulated trades using nothing more than publicly available tools.
The kicker? The project started as a school science fair submission.

Source: Nathan Smith
How the ChatGPT Trading Bot Works
EquiTrade feeds 40–60 news headlines per day into GPT-4, asking it to rate each one as bullish, bearish, or neutral. The bot then aggregates sentiment and makes 3–5 trades daily based on the strongest trends.
Key numbers:
- 13.2% total return
- 3.1x outperformance over the S&P 500
- 10-week simulation
- 100+ trades placed
- >500 articles processed
Unlike traditional sentiment models that rely on scoring words in isolation, the ChatGPT trading bot can interpret context and nuance. This allows it to identify genuine bullish signals even when negative terms are present.
Read Also: How to Find Crypto Gems Using ChatGPT
For instance, the phrase “Tesla dodges earnings disaster” might be misclassified by older models due to “disaster,” but GPT reads it as a bullish outcome.
ChatGPT Trading Bot Outperforms Benchmarks
The students benchmarked EquiTrade against key indices and funds:
| Investment Instrument | 10-Week Return |
|---|---|
| EquiTrade (GPT-powered) | +13.2% |
| S&P 500 | +4.2% |
| Nasdaq Composite | +6.1% |
| ARK Innovation ETF (ARKK) | -1.5% |
| 60/40 Portfolio (Stocks/Bonds) | +3.8% |
Notably, even adjusted for hypothetical slippage, taxes, and fees (roughly 1%), the bot would still outperform most passive portfolios and retail-favored ETFs.
GPT in Retail Finance Is Exploding
The ChatGPT trading bot built by these students is part of a larger movement: the rise of AI-assisted finance for non-professionals.
In 2025:
- Over 30% of quant funds use GPT to analyze earnings reports and social sentiment
- Retail bot deployments using GPT have grown 65% year-over-year
- LLM-based bots are influencing up to 2% of daily crypto DEX volume
- Platforms like Alpaca, QuantConnect, and Replit have made bot-building accessible to millions
The democratization of algorithmic trading is underway. What once required a $100K Bloomberg terminal can now be replicated with:
- A GPT-4 API key (~$20/month)
- A brokerage API
- Basic Python skills
What Makes the ChatGPT Trading Bot Different
GPT’s edge is understanding narratives, not just keywords.
Most trading bots operate on rigid sentiment scoring. But GPT understands irony, contrast, and implied meanings. That allows it to capture complex market psychology reflected in the news cycle.
In testing, EquiTrade succeeded at:
- Picking up on pre-market earnings signals
- Understanding merger announcements and regulatory changes
- Detecting soft signals like CEO commentary tone or subtle market optimism
It still has limitations, like hallucination risks and lack of trade memory, but paired with rule-based logic, its accuracy significantly exceeds basic NLP sentiment engines.
Real World vs Simulated Results
The students used ThinkOrSwim for paper trading, which doesn’t include real-world execution challenges. In practice, slippage, latency, fees, and liquidity could reduce performance by 0.5–1.5%.
But even accounting for that, EquiTrade would still deliver a risk-adjusted return 2x better than passive index investing over the same period.
ChatGPT Trading Bot Signals Broader Shift in Market Intelligence
This isn’t just a one-off story. It’s the start of something bigger.
GPT and other LLMs are being integrated across financial institutions:
- Morgan Stanley uses GPT-4 to summarize analyst calls
- BloombergGPT, trained on 700B tokens of financial data, is revolutionizing research
- Crypto hedge funds use GPTs to parse Telegram signals, DeFi proposals, and Twitter news in real time
The financial AI market is expected to grow from $19.5 billion in 2023 to $48 billion by 2028, a CAGR of 25%. And Gen Z developers aren’t just consumers, they’re becoming the architects.
The Road Ahead for EquiTrade
The students, Benjy Deutch, Charlie Emery, and Alex Tan, are already planning V2 of their bot. Features in development include:
- Parsing full-length earnings call transcripts
- Integrating real-time stock and crypto APIs
- Using vector databases to give GPT trade memory
- Multimodal inputs (text + audio)
They’ve also been approached by accelerators and VCs. At least three fintech funds have contacted the team since their win at the Regeneron Science Talent Search.
AI Is Rewriting the Playbook for Young Investors
EquiTrade is more than a clever hack, it’s a preview of a future where anyone with an idea and internet access can challenge the finance establishment.
Instead of learning by watching charts or reading textbooks, today’s students are deploying bots, running simulations, and building new tools.
In 2025, the next Warren Buffett might not come from Harvard Business School. They might be sitting in a high school lab, fine-tuning prompts and API keys after soccer practice.