Eternal Software Initiative Created
In brief
- Developers have created the Eternal Software Initiative to preserve software for the future.
- This project defines a simple machine architecture and provides tools to compile existing software into self-contained capsules.
- The goal is to prevent software from becoming obsolete due to complex dependencies on proprietary hardware and software.
- This problem affects legacy software and will be even more significant for historians in the future.
- The Eternal Software Initiative solves this by creating a simple architecture that can be written down and used to revive software without needing current computing systems.
- This project ensures that software can be preserved and run in the future with minimal dependencies.
- The software will be revived and experienced without assuming knowledge of present day computing systems, and this will be possible for years to come.
Terms in this brief
- machine architecture
- A detailed plan for how a computer system should be built and operate. The Eternal Software Initiative uses this to create simple, self-contained software that doesn't rely on complex modern hardware or software systems, ensuring it can run in the future even if current computing systems become obsolete.
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