Settings

Theme

Show HN: Parallel AI agents that research a stock simultaneously

dapto.ai

1 points by sharmasachin98 a month ago · 0 comments · 2 min read

Reader

Hi HN,

I’ve been working on a system that runs multiple AI agents in parallel to perform structured research instead of generating a single summary response.

One use case I tested recently was stock research.

When you properly research a stock like NVIDIA, you usually open multiple tabs:

- Financials - Earnings reports - Analyst sentiment - Competitors - Recent news - Risks - Market positioning

Most AI tools generate one combined answer, which often becomes shallow or blended.

So I built a workflow execution agents that:

- Spawns multiple specialized agents at once - Assigns each agent a focused responsibility (financials, competitors, risks, etc.) - Runs them in parallel - Normalizes structure - Compiles everything into a single structured research report

Instead of one AI response, you get multiple independent research threads that are merged into a coherent output.

The goal isn’t “better summaries.” It’s structured multi-angle research without manually orchestrating prompts.

Here’s a short demo using NVIDIA stock:

https://youtu.be/QBmFK843Kuo

Would love feedback on:

- Does parallel specialization meaningfully improve depth vs single-thread LLM prompts? - Where else would this model be more useful (beyond stock research)? - What would you want to see measured (quality benchmarks, latency, cost breakdown)?

Happy to answer technical questions.

No comments yet.

Keyboard Shortcuts

j
Next item
k
Previous item
o / Enter
Open selected item
?
Show this help
Esc
Close modal / clear selection