Comment by strujillo
3 hours ago
Sparse workloads are a really good fit for scientific discovery pipelines, especially when you're searching over candidate equation spaces.
In practice, even relatively small systems can surface meaningful structure. I’ve been using sparse regression (SINDy-style) on raw solar wind data and was able to recover things like the Sun’s rotation period (~25.1 days estimate) and non-trivial scaling laws.
What becomes limiting pretty quickly is compute efficiency when you scale candidate spaces, so compiler-level optimizations like this feel directly relevant to making these approaches practical at larger scales.
No comments yet
Contribute on Hacker News ↗