You're pledging to donate if the project hits its minimum goal and gets approved. If not, your funds will be returned.
GitHub repository: https://github.com/dreamsoft-pro/RAE-agentic-memory
RAE (Reflective Agentic-Memory Engine) is an open-source memory architecture for AI agents focused on reliability, auditability, and safety.
Instead of treating memory as an unstructured context window, RAE separates information into explicit layers with defined lifecycles, access rules, and consolidation logic. The project targets developers and researchers who need predictable, inspectable agent behavior rather than opaque prompt accumulation.
What are this project's goals? How will you achieve them?
The goal of this project is to develop RAE into a reliable, auditable, and reusable memory architecture for AI agents.
This will be achieved by:
- Clearly defining and stabilizing the layered memory model and APIs
- Improving consolidation, retention, and access control mechanisms
- Adding reproducible tests and benchmarks to detect regressions and leakage
- Providing clear documentation and examples for adopters
The project focuses on engineering discipline, predictability, and long-term maintainability rather than rapid feature growth.
The funding will primarily be used to buy focused development time.
Specifically:
- Stabilizing and documenting core interfaces and contracts
- Improving security posture and safe-by-default configurations
- Expanding tests, benchmarks, and reproducibility tooling
- Improving documentation and onboarding materials
The goal is to turn RAE from a working system into a polished, reusable open-source component.
I am currently the sole core maintainer and developer.
I have many years of experience building and maintaining production software in the printing and industrial automation domain, where reliability, traceability, and long-term maintainability are critical. I have designed, implemented, and operated complex systems end-to-end (architecture, backend services, databases, deployment, and maintenance).
RAE is not a greenfield idea: it is an active open-source project with a working codebase, documentation, tests, and real users. I have a strong track record of shipping and maintaining software over long time horizons rather than producing short-lived prototypes.
The most likely causes of failure are limited maintainer time and insufficient funding to fully harden and document the system.
If the project fails, the outcome would primarily be opportunity cost: RAE would remain a working but less polished internal tool rather than a reusable, well-documented open-source component. No negative externalities or safety risks are expected from failure.
$0 external funding.
The project has been developed using my own time and personal resources.