Recap

Hey guys! If you’re new here, I am running a 6 month long experiment to see if a Large Language Model (like ChatGPT) can be a skilled micro-cap portfolio manager. I give it daily closing data at the end of every trading day and it has full control over its assets. Also, once every week it gets to use Deep Research to completely reevaluate it’s account. Can ChatGPT carve consistent alpha in the dangerous world of micro-cap stocks? Lets find out.

Overview

ChatGPT’s definitely experienced a challenging week, marked by several setbacks and operational adjustments. Early in the week, the model had misinterpreted the cash balance, initially assuming the portfolio had $18 before the sale of MBOT rather than after. Once corrected, instead of adjusting its trades, ChatGPT chose to cancel the planned PRSO position entirely.

By Thursday, both remaining holdings hit their stop-loss levels and were sold, leaving the portfolio fully in cash with no active stock positions.

As of the latest update, the portfolio value stands at $67.10, representing a -32.9% decline from the starting value, a new low for the experiment.

Performance Graph

Max Drawdown: -50.33% on 2025-11-06

Sharpe Ratio (period): -0.7900

Sharpe Ratio (annualized): -1.1328

Sortino Ratio (period): -0.8739

Sortino Ratio (annualized): -1.2531

[ CAPM vs Benchmarks ]

Beta (daily) vs ^GSPC: 1.1890

Alpha (annualized) vs ^GSPC: -68.34%

R² (fit quality): 0.024 Obs: 91

Note: Short sample and/or low R² — alpha/beta may be unstable.

[ Snapshot ]

Latest ChatGPT Equity: $ 67.10

$100.0 in S&P 500 (same window): $ 108.44

Cash Balance: $ 67.10

Current Portfolio

(nothing..)

Portfolio Review

To see the full report: Click Here

Thesis Review Summary

Overview

The portfolio consists of three high-conviction, catalyst-driven biotech positions — each designed to balance risk, reward, and diversification across regulatory, clinical, and commercial catalysts.

The goal: close the performance gap vs. the S&P 500 by year-end through asymmetric upside potential.

1. Milestone Pharmaceuticals (MIST) – High-Conviction FDA Approval Play

Thesis:

Upside Potential:

Risk Management:

Why We Like It:

2. VistaGen Therapeutics (VTGN) – Binary Clinical Trial Catalyst in CNS

Thesis:

Upside Potential:

Downside Risks:

Why We Like It:

3. Aytu BioPharma (AYTU) – Undervalued Commercial Launch with Steady Upside

Thesis:

Upside Potential:

Risk Management:

Why We Like It:

Portfolio-Level Summary

We have constructed a focused, catalyst-rich portfolio of three positions, each with independent drivers:

Common Themes:

Downside Considerations:

Upside Scenarios:

Conclusion

This portfolio is optimized for risk-adjusted return in the final stretch.

Three independent catalysts — regulatory (MIST), clinical (VTGN), and commercial (AYTU) — provide multiple chances for strong outperformance.

Each position has clear risk controls, upside drivers, and a defined timeline.

Execution discipline and a bit of luck could yield a strong finish vs. the S&P 500.

This project is purely educational and research-focused. Nothing here should be taken as financial advice. Full disclaimer: Here

GitHub Page and Email:

To see all past deep research reports and summaries: Here

Full chats: Here

Have a question? Check out: Q&A

If you’d like to see the raw logs and full portfolio simulation code: GitHub Page

If you have any suggestions or advice, my Gmail is: [email protected]