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seventhson

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seventhson
·3 anni fa·discuss
Switch to a Dvorak layout (with blank keycaps!) and you will have all the bases covered.
seventhson
·3 anni fa·discuss
We already have an emergency messaging system called Amber Alert. Just generalize that infrastructure a bit and you're halfway there.
seventhson
·3 anni fa·discuss
Linus' post is 15+ years old. Much has changed in Intel hardware since then. He was probably right on the money re the hardware available at the time.
seventhson
·3 anni fa·discuss
I once worked on a very large commercial application that was based on a home-grown I/O framework which operated on similar principles.

It was a complete pain in the ass. You were constantly future-proofing your data structures because you knew you were going to be stuck with them for all eternity because the I/O framework was going to serialize them verbatim whether you liked it or not. Those were dark days...
seventhson
·3 anni fa·discuss
Require reviews to show a substantial understanding of what the book was about? That means moderation which is always dangerous but probably better than the alternative.
seventhson
·3 anni fa·discuss
The wavelengths are too large for LIGO. The wave measurements were correlated with data collected from many pulsars.

https://arstechnica.com/science/2023/06/nanograv-picks-up-si...
seventhson
·3 anni fa·discuss
"Ooo, the drugs for this cancer are cheap and plentiful. I'll choose this cancer for my terminal disease."
seventhson
·3 anni fa·discuss
> floats really really want to be "near 1", to keep precision.

The number of significant digits is identical for (nearly) the entire range of FP values. There's no value to keeping it "near 1" for IEEE 754 floats - the precision is exactly the same regardless whether near 1 or near 1 trillion. This makes them ideal for general computation and modeling physical properties.

In contrast, posits, the unum alternative to IEEE 754, are highly sensitive to absolute scale. Posits lose precision as the magnitudes increase. Otoh, for small values, you get much higher precision which is why they getting some attention from the AI world where normalized weights are everywhere.
seventhson
·3 anni fa·discuss
It might be stupid, or it also might just be naive, or a shift in priorities.

100x throughput improvement might just come from caching results from earlier computations (less naive) - at the cost of 10x memory footprint possibly (different priorities).