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schelskedevco/ignidash

An open-source, AI-powered alternative to ProjectionLab for planning your long-term personal finances.

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What it does

Ignidash is a free, self-hostable personal finance planning app that lets users model their long-term financial future — including retirement scenarios, net worth projections, and tax estimates — powered by AI-driven chat and insights. It works similarly to paid tools like ProjectionLab, running thousands of simulated financial scenarios to help users understand the range of possible outcomes for their money over time.

Why it matters

The personal finance software market is dominated by subscription-based tools, and an open-source, AI-enhanced alternative signals real demand for transparent, customizable financial planning products that users can trust and control. For founders and investors, this points to a growing opportunity in AI-native fintech tools that combine conversational interfaces with serious financial modeling — a space where user trust and data privacy are becoming key differentiators.

1Active

On the radar — signal detected

Stars
257
Forks
18
Contributors
3
Language
TypeScript

Score updated Mar 1, 2026

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