This Sophon-3 AI model flow starts with the Nasdaq-100 as the asset universe, then chains together two AI model nodes: Sophon-3 Screener and Sophon-3 Forecast.
The idea is simple: first narrow the universe to more interesting candidates, then forecast their near-term return potential before sending the results into portfolio construction. This creates a practical workflow where screening, forecasting, and position sizing work together instead of as separate steps.
In this template, Sophon-3 Screener uses data types including Current Ratio and Revenue. Current Ratio compares current assets to current liabilities and helps summarize near-term liquidity—whether the company appears able to cover bills and obligations due within roughly the next year. Revenue is the top-line sales figure, which helps describe the company’s scale and demand; growth and consistency in revenue can signal whether the business is expanding or stalling.
Together, these inputs give the screener both a liquidity lens (short-term financial flexibility) and a scale/growth lens (how much the company sells and whether it’s growing).
Sophon-3 Screener is an AI model node that continually learns from new market dynamics instead of relying on fixed screening rules. Its role is to filter the Nasdaq-100 toward stocks with stronger potential versus the benchmark.
The selected names are then passed to Sophon-3 Forecast, another AI model node, built for continual deep learning forecasting. Sophon-3 Forecast focuses more directly on price dynamics and estimates near-term return direction and magnitude.
Chaining the two nodes is meaningful because they solve different parts of the problem. Sophon-3 Screener helps reduce noise by finding better candidates, while Sophon-3 Forecast complements it by analyzing price behavior and short-term timing. Those forecasts then flow into portfolio construction, where stronger conviction can translate into larger position sizes.
1. The metrics are measured since live deployment of the agent. April 21, 2026.