James Betker
2e18c4c22d
Add CosineEmbeddingLoss to F
2020-09-22 17:10:29 -06:00
James Betker
f40beb5460
Add 'before' and 'after' defs to injections, steps and optimizers
2020-09-22 17:03:22 -06:00
James Betker
419f77ec19
Some new backbones
2020-09-21 12:36:49 -06:00
James Betker
9429544a60
Spinenet: implementation without 4x downsampling right off the bat
2020-09-21 12:36:30 -06:00
James Betker
384e3d54cc
Extract images into jpg, have a multiplier & size threshold
2020-09-21 12:36:03 -06:00
James Betker
bde35ced47
Fix recursive detach
2020-09-20 19:08:13 -06:00
James Betker
53a5657850
Fix SSGR
2020-09-20 19:07:15 -06:00
James Betker
17c569ea62
Add geometric loss
2020-09-20 16:24:23 -06:00
James Betker
17dd99b29b
Fix bug with discriminator noise addition
...
It wasn't using the scale and was applying the noise to the
underlying state variable.
2020-09-20 12:00:27 -06:00
James Betker
dab8ab8a8f
Offer option to configure the size of the normal distribution that the target size is drawn from
2020-09-20 11:59:31 -06:00
James Betker
3138f98fbc
Allow discriminator noise to be injected at the loss level, cleans up configs
2020-09-19 21:47:52 -06:00
James Betker
e9a39bfa14
Recursively detach all outputs, even if they are nested in data structures
2020-09-19 21:47:34 -06:00
James Betker
fe82785ba5
Add some new architectures to ssg
2020-09-19 21:47:10 -06:00
James Betker
b83f097082
Get rid of get_debug_values from RRDB, rectify outputs
2020-09-19 21:46:36 -06:00
James Betker
e0bd68efda
Add ImageFlowInjector
2020-09-19 10:07:00 -06:00
James Betker
e2a146abc7
Add in experiments hook
2020-09-19 10:05:25 -06:00
James Betker
4f75cf0f02
Revert "Full image dataset operates on lists"
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Going with an entirely new dataset instead..
This reverts commit 36ec32bf11
.
2020-09-18 09:50:43 -06:00
James Betker
36ec32bf11
Full image dataset operates on lists
2020-09-18 09:50:26 -06:00
James Betker
3cb2a9a9d3
New dataset, initial work
2020-09-18 09:49:13 -06:00
James Betker
9a17ade550
Some convenience adjustments to ExtensibleTrainer
2020-09-17 21:05:32 -06:00
James Betker
57fc3f490c
Add script for extracting image tiles with reference images
2020-09-17 13:30:51 -06:00
James Betker
9963b37200
Add a new script for loading a discriminator network and using it to filter images
2020-09-17 13:30:32 -06:00
James Betker
f5cd23e2d5
Further patch size adjustments
2020-09-16 16:50:35 -06:00
James Betker
723754c133
Update attention debugger outputting for SSG
2020-09-16 13:09:46 -06:00
James Betker
0b047e5f80
Increase scale of the patch selector random distribution
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This will cause larger slices of an image to appear more frequently,
increasing the difficulty of the generator.
2020-09-16 08:27:42 -06:00
James Betker
f211575e9d
Save models before validation
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Validation often fails with OOM, wasting hours of training time.
Save models first.
2020-09-16 08:17:17 -06:00
James Betker
0918430572
SSG network
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This branches off of SPSR. It is identical but substantially reduced
in complexity. It's intended to be my long term working arch.
2020-09-15 20:59:24 -06:00
James Betker
c833bd1eac
Misc changes
2020-09-15 20:57:59 -06:00
James Betker
6deab85b9b
Add BackboneEncoderNoRef
2020-09-15 16:55:38 -06:00
James Betker
d0321ca5de
Don't load amp state dict if amp is disabled
2020-09-14 15:21:42 -06:00
James Betker
94deab2792
Fix error serving gt_fullsize_ref in full_image_dataset
2020-09-14 15:05:44 -06:00
James Betker
ccf8438001
SPSR5
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This is SPSR4, but the multiplexers have access to the output of the transformations
for making their decision.
2020-09-13 20:10:24 -06:00
James Betker
5b85f891af
Only log the name of the first network in the total_loss training set
2020-09-12 16:07:09 -06:00
James Betker
fb595e72a4
Supporting infrastructure in ExtensibleTrainer to train spsr4
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Need to be able to train 2 nets in one step: the backbone will be entirely separate
with its own optimizer (for an extremely low LR).
This functionality was already present, just not implemented correctly.
2020-09-11 22:57:06 -06:00
James Betker
4e44bca611
SPSR4
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aka - return of the backbone! I'm tired of massively overparameterized generators
with pile-of-shit multiplexers. Let's give this another try..
2020-09-11 22:55:37 -06:00
James Betker
19896abaea
Clean up old SwitchedSpsr arch
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It didn't work anyways, so why not?
2020-09-11 16:09:28 -06:00
James Betker
4c2ee66fe4
Fix video processor
2020-09-11 13:10:14 -06:00
James Betker
50ca17bb0a
Feature mode -> back to LR fea
2020-09-11 13:09:55 -06:00
James Betker
1086f0476b
Fix ref branch using fixed filters
2020-09-11 08:58:35 -06:00
James Betker
8c469b8286
Enable memory checkpointing
2020-09-11 08:44:29 -06:00
James Betker
5189b11dac
Add combined dataset for training across multiple datasets
2020-09-11 08:44:06 -06:00
James Betker
313424d7b5
Add new referencing discriminator
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Also extend the way losses work so that you can pass
parameters into the discriminator from the config file
2020-09-10 21:35:29 -06:00
James Betker
9e5aa166de
Report the standard deviation of ref branches
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This patch also ups the contribution
2020-09-10 16:34:41 -06:00
James Betker
668bfbff6d
Back to best arch for spsr3
2020-09-10 14:58:14 -06:00
James Betker
992b0a8d98
spsr3 with conjoin stage as part of the switch
2020-09-10 09:11:37 -06:00
James Betker
e0fc5eb50c
Temporary commit - noise
2020-09-09 17:12:52 -06:00
James Betker
00da69d450
Temporary commit - ref
2020-09-09 17:09:44 -06:00
James Betker
df59d6c99d
More spsr3 mods
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- Most branches get their own noise vector now.
- First attention branch has the intended sole purpose of raw image processing
- Remove norms from joiner block
2020-09-09 16:46:38 -06:00
James Betker
747ded2bf7
Fixes to the spsr3
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Some lessons learned:
- Biases are fairly important as a relief valve. They dont need to be everywhere, but
most computationally heavy branches should have a bias.
- GroupNorm in SPSR is not a great idea. Since image gradients are represented
in this model, normal means and standard deviations are not applicable. (imggrad
has a high representation of 0).
- Don't fuck with the mainline of any generative model. As much as possible, all
additions should be done through residual connections. Never pollute the mainline
with reference data, do that in branches. It basically leaves the mode untrainable.
2020-09-09 15:28:14 -06:00
James Betker
0ffac391c1
SPSR with ref joining
2020-09-09 11:17:07 -06:00