Commit graph

6 commits

Author SHA1 Message Date
d0dc1b4280
.gitignore: ignore some more backup files: draw.io, .bak.png 2024-11-08 22:05:13 +00:00
c26a937cdd
Ignore Kate swap files 2023-01-20 20:33:32 +00:00
654eefd9ca
properly handle water dimensions; add log files to .gitignore
TODO: add heightmap
2022-08-31 18:03:39 +01:00
28a3f578d5
update .gitignore 2022-08-04 16:49:53 +01:00
1297f41105
.tfrecord files are too much hassle
let's go with a standard of .jsonl.gz instead
2022-07-01 18:28:39 +01:00
8a9cd6c1c0
Lay out some basic scaffolding
I *really* hope this works. This is the 3rd major revision of this
model. I've learnt a ton of stuff between now and my last attempt, so
here's hoping that all goes well :D

The basic idea behind this attempt is *Contrastive Learning*. If we
don't get anything useful with this approach, then we can assume that
it's not really possible / feasible.

Something we need to watch out for is the variance (or rather lack
thereof) in the dataset. We have 1.5M timesteps, but not a whole lot
will be happening in most of those....

We may need to analyse the variance of the water depth data and extract
a subsample that's more balanced.
2022-05-13 19:06:15 +01:00