Commit Graph

212 Commits

Author SHA1 Message Date
mrq
0f2584eba7 new meme sampler PogChamp new meme sampler PogChamp (it sort of helps?) 2024-11-12 22:30:09 -06:00
mrq
663f07038d haha... (do not create a token dropout/noise mask when not training (this sadly didnt fix NAR-len output)) 2024-11-12 16:41:58 -06:00
mrq
b09328069e actually do CFG sampling for base AR+NAR tasks 2024-11-12 13:42:39 -06:00
mrq
2495a7ef67 Fixed STT in the web UI 2024-11-12 12:49:53 -06:00
mrq
8927bad7bc actually fixed rep pen (for ar and nar, it seems to help with nar unmasking) 2024-11-11 21:40:19 -06:00
mrq
b1f4db39c8 threw in CFG sampling for normal model as well to experiment with 2024-11-11 20:27:38 -06:00
mrq
2f56696506 overhauled inference/sampler kwargs to stop being a bloated mess 2024-11-11 20:21:16 -06:00
mrq
a748e223ce tweaks 2024-11-11 12:40:41 -06:00
mrq
48490757da fixes 2024-11-10 20:37:50 -06:00
mrq
9def34cd66 lol 2024-11-10 12:48:41 -06:00
mrq
9cb0b6901b unified nar.py into ar_nar.py 2024-11-10 12:19:48 -06:00
mrq
a9d2faf2d7 all I can do now until I wait for the model to (re)train for pure NAR 2024-11-09 22:57:34 -06:00
mrq
c127c4e488 'borrowed' a sampling scheduler for NAR-len's RVQ level 0 (better than before, but still not good enough) 2024-11-07 21:19:14 -06:00
mrq
d229725c76 more adjustments (adjustments of early-exit entropy/varentropy thresholds, default rep pen being 1.5, experimental refine-on-stop, etc.) 2024-11-03 18:31:28 -06:00
mrq
aee08b7307 changed layerskip float16 training warning (since it didnt seem to fry on my 4xV100 system) 2024-11-03 09:58:29 -06:00
mrq
ded746e157 very, very naive layerskip speculative sampling (it just checks if the current layer's state is good enough) 2024-11-02 11:49:05 -05:00
mrq
ec79230965 shuffled web UI options hidden by cfg.experimental to its own tab, expose early exit selection to inferencing (it kinda works naively, still need to implement self-speculation) 2024-11-01 21:30:06 -05:00
mrq
9b6c57bc57 third time's the charm (for some reason it escaped me that I should treat early exit loss as an aux_loss to be used with the normal loss, as if I was training a MoE's router) 2024-11-01 12:50:37 -05:00
mrq
a22534e8f4 layer skip training implemented (need to gut the inferencing from the repo, and to actually see if the model can benefit from this) 2024-10-30 20:05:45 -05:00
mrq
a96f5aee32 adjusted how i want to pass eval kwargs 2024-10-25 20:38:09 -05:00
mrq
92e6bff6dc actually ar temp 0.5 with rep pen 1.125 seems to have the benefits of better outputs without it degrading some of the time but not all the time 2024-10-23 00:03:35 -05:00
mrq
8920e5e86b actually have beam_width in the webUI work 2024-10-22 22:06:22 -05:00
mrq
910571ad34 too brainlet to diagnose why low temp / greedy sampling is randomly unstable some of the time 2024-10-22 20:13:54 -05:00
mrq
8eb9a4056b modified default arguments (ar temp = 0 and rep pen = 1.125 seems to be stable, at least given the few things i tested), do not pass top k/top p/min p to NAR even though technically none of those things should matter when greedy sampling 2024-10-22 18:12:39 -05:00
mrq
1a02cd5bce modify demo template to say F5 instead of YourTTS, swap LoRA comparison around to make the lora'd the base file, and the no-lora the suffix'd file 2024-10-21 19:52:02 -05:00
mrq
71731ed785 added prefixing with silence (was to test something, currently hidden under cfg.experimental=True) 2024-10-18 17:19:52 -05:00
mrq
fc8dfd8617 made greedy AR sampling viable (and preferable), with caveats (per comment in vall_e.models.ar_nar) 2024-10-18 16:55:00 -05:00
mrq
75b90be325 cleaned up unused config flags, allow less strict yaml by pruning missing keys, renamed some dataset configs to be more unified 2024-10-17 17:06:48 -05:00
mrq
04e983b86b modified demo page to be more modular with demoing comparisons, actually provide a path to use modified naive attention, entropix sampling is not tied to an experimental yaml flag now 2024-10-12 11:27:55 -05:00
mrq
666e8038fb ugh 2024-10-12 10:41:35 -05:00
mrq
d0ab7d755a added min-p (really does not seem useful since it's very sensitive), more tweaks to entropix 2024-10-11 22:36:06 -05:00
mrq
bef43a0c18 added experimental entropix sampling support 2024-10-11 21:18:26 -05:00
mrq
75a4c866d6 more demo page tweaks, added arg to force enable/disable LoRAs for inferencing (to-do: setup arg flags to handle this, and checkbox in web UI) 2024-10-10 19:04:12 -05:00
mrq
acdce66d4e readme tweaks, set the (unused) default model download URL back to the base ar+nar-llama-8 model, as ar+nar-tts+stt-llama-8 was renamed back to it since it performs well 2024-10-05 22:53:53 -05:00
mrq
84c7419001 faster 2024-10-04 22:30:47 -05:00
mrq
a507b769a1 sped up inferencing by not doing .tolist() for rep pen / length pen (and a bug fix in the web UI from prev commit) 2024-10-04 22:18:20 -05:00
mrq
4a8e3ccf06 README tweaks, added --input-prompt-prefix as an experiment (its literally better to just not do this, but i'll retain it in case i have a revelation on how to improve it) 2024-10-04 18:57:19 -05:00
mrq
d33a906119 cleanup for AR_NAR inferencing to allow both TTS and STT tasks simultaneously (need to have training eval do this to though) 2024-09-06 14:30:12 -05:00
mrq
341e19162b fixes, again 2024-09-06 11:41:41 -05:00
mrq
94cf81d38c tweak 2024-09-05 23:21:18 -05:00
mrq
413097f5f7 fixes 2024-09-05 21:42:59 -05:00
mrq
54547b74d8 experimental implementation of STT (need to actually test on a model, test trainer seems to work) 2024-09-05 20:43:20 -05:00
mrq
32287710a2 moved prints to use logger, edited readme (fused_attn doesnt seem stable for training) 2024-08-29 13:27:16 -05:00
mrq
2a1794c084 ughghghhhh 2024-08-09 21:15:01 -05:00
mrq
ed373957e2 maybe not 2024-08-09 11:38:08 -05:00
mrq
debcc93e7e add adapted MixtralAttention for when I make a bad decision to actually train a MoE 2024-08-04 22:03:22 -05:00
mrq
10aaf840e7 added export option to convert Llama to MixtralMoE for another dumb experiment 2024-08-04 20:25:06 -05:00
mrq
3a65cc4b22 fix issue with sft and shared tensors... 2024-08-04 19:56:21 -05:00
mrq
6a733eb2ed changed torch.Tensor().to(device, dtype) to just torch.tensor(..., device, dtype) because it's been bothering my autism that I'm creating tensors then converting rather than creating with the right device/dtype, some 'optimization' to compile the model but it doesnt seem to do anything useful 2024-08-03 22:10:21 -05:00
mrq
11fa3da665 some cleanup, fixed the wrapper attention to explicitly use other sdpa backends 2024-08-03 19:51:00 -05:00
mrq
97c5241bef fixes, throw an exception when using NAR only model with non-unified position IDs, since for some reason it outputs garbage for the NAR 2024-08-02 22:25:49 -05:00
mrq
443422ecb5 ugh, finally got some form of offloading working (need to test if it works on different GPUs, but GPU and CPU offloading seems to work in the test trainer) 2024-08-01 22:43:39 -05:00
mrq
c9ec6b28ef it actually wasn't working because Engines.__init__() automatically moves the entire module to the requested device, which was being called after offloading the model in the test trainer (and it seems I cant do it without injecting a bunch of shit in modeling_llama.py) 2024-08-01 20:56:28 -05:00
mrq
b4c895114c naive model offloading support (handles automatically splitting parts of the model to requested device per memory constraints, either inferred or requested in the yaml, input tensors are automatically migrated to the right device, it SEEMS to work for training under the test trainer when split between GPU and CPU) (this was specifically only because that Flux imagegen model released so I can test it there) 2024-08-01 20:12:06 -05:00
mrq
07f8e2ad06 added option to set the causal size (how many tokens to sample per AR step), but requires the model to be trained for this (which explains why recurrent chunk sampling just doesn't work for the retnet tests, obvious in hindsight) 2024-07-30 20:53:51 -05:00
mrq
c2f5b916fc added what I think is DRY sampling 2024-07-29 19:15:07 -05:00
mrq
ce8bb1e4f7 sanity cleanups with weird off-by-one-ness, cleaned up and validated vall_e.models.experimental works again 2024-07-27 15:36:05 -05:00
mrq
06e948aec1 suppress warning on exit about distributed not being cleaned up (because I updated my system) 2024-07-25 16:50:47 -05:00
mrq
1acb0e9c84 added experimental training setting to perform token dropout to MAYBE compensate for errors from the preceding RVQ level (two types: token error offset, token dropout embedding replace) 2024-07-24 19:35:17 -05:00
mrq
75b04686f8 added prom-less training / inferencing, some other things 2024-07-22 19:36:07 -05:00
mrq
e19aa643a6 cleaned up demo page creation, added option to pass in RVQ level sampling distribution for training 2024-07-21 19:12:03 -05:00
mrq
d87b492295 added rudimentary demo page creator (currently just embeds base64 wavs into the page, need to test not doing that) 2024-07-19 20:49:40 -05:00
mrq
39f961abcd test trainer (vall_e.models.ar_nar) tests some SpeechX features 2024-07-18 18:46:45 -05:00
mrq
97e768601c re-introducing SpeechX tasks (need to validate them all, everything works with base tts anyways) 2024-07-18 16:16:14 -05:00
mrq
c2b8035e74 oops, kept forgetting to actually pass in lang/tone tokens (despite not really using these at the moment) 2024-07-18 14:18:34 -05:00
mrq
3acc54df22 allow loading a different model within the web ui (apparently I did not have the web UI in the documentation) 2024-07-15 19:59:48 -05:00
mrq
7b210d9738 sanity cleanup 2024-07-04 15:58:08 -05:00
mrq
dced595391 more cleanup 2024-06-30 11:00:12 -05:00
mrq
bc2a6fa756 sanity cleanup: moved experimental features under its own thing 2024-06-30 10:37:33 -05:00
mrq
b21f74a5c5 added summing of external embeddings (at this point i dont think any amount of cope bandaids will get DAC to train nicely, I think the RVQ levels the NAR tends add too much noise if they're not accurate) 2024-06-29 23:42:30 -05:00
mrq
2808f881c8 cleaned up subjugated audio embedding into a flag, flag can also have it include the original, underlying embedding as well (it seems to do better when set to inclusive) 2024-06-29 21:46:35 -05:00
mrq
ec5eaebcbc experimental method of using DACs quantizer ""embeddings"" to see if it helps with model quality 2024-06-29 19:46:11 -05:00
mrq
a8718d35a4 nasty bandaid because some of my DAC dataset only has 8 RVQ levels instead of the full 9 2024-06-29 10:16:37 -05:00
mrq
591d3ac848 have eval dataloader use eval batch size for batchedordersampler 2024-06-28 22:44:00 -05:00
mrq
83075c1505 sort duration buckets to ensure that paths sorted-by-duration are actually sorted by duration (because i didnt know that python dicts can have non-strings as keys), added batching samples based on total duration to ensure best training throughput 2024-06-28 22:28:54 -05:00
mrq
2bfe786ebd ban stop token for NAR levels (because sometimes it gets sampled and causes problems) 2024-06-17 22:14:43 -05:00
mrq
7cfb78fa64 enable LoRA for targetted RVQ levels (to experiment with, seems to help) 2024-06-17 21:45:03 -05:00
mrq
19410a919e ugh 2024-06-15 12:29:03 -05:00
mrq
83eab4fa59 actually going for the suggested "2x layers, no intermediate scaling" is wrong for VALL-E, directly copying the normal transformer structure fixes mamba2 performance in the test trainer 2024-06-13 20:08:22 -05:00
mrq
26da24fd8d mamba updated to fix that pesky NaN error during training 2024-06-13 12:38:33 -05:00
mrq
65a8960305 option to split classifier per-level instead of sharing one (at this point I'm just scrambling to try and cope with training a DAC model, the NAR is being a pain) 2024-06-11 22:28:59 -05:00
mrq
132a02c48b sanity cleanup, backup config yaml for each log file 2024-06-09 11:22:52 -05:00
mrq
8d068fa3f9 reticulating splines 2024-06-08 20:30:15 -05:00
mrq
b072f9b96b fixes 2024-06-08 16:01:34 -05:00
mrq
58fb0a84db added experimental NAR only model (inferences text length, need more experimenting), AudioEmbedding logic cleanup (I still think it's being done wrong) 2024-06-08 15:42:02 -05:00
mrq
7d6fff24f9 un-tensor'd quant_level marker since it doesn't need to be one (I forgot why I had it as one but nothing seems to need it as a tensor that didn't already make it one) 2024-06-07 20:46:22 -05:00
mrq
f9f309281a ugh 2024-06-06 20:55:27 -05:00
mrq
a5c90348d9 head hurt 2024-06-06 20:51:31 -05:00
mrq
ee25d2e62e removed the need to supply targ_list + different AudioEmbedding + other things 2024-06-06 18:52:41 -05:00
mrq
fcac9503e2 cleanup 2024-06-06 13:08:02 -05:00
mrq
b2194b859a re-added loading multiple models because I'm now entertaining having split AR/NAR models again (and need a way to load both at once) 2024-06-06 09:48:43 -05:00
mrq
ff6fe6f1bc cleanup 2024-06-05 20:30:43 -05:00
mrq
880b4ecd1b cleanup, putting some thoughts in comments before I forget about them 2024-06-05 19:50:06 -05:00
mrq
48cd1054f9 madness 2024-06-04 23:48:51 -05:00
mrq
9e3f2e300f experimental "just have a token for what rvq level we're on" that seems to help all models (mamba almost works, but it might just have to be relegated as a pure AR model) 2024-06-04 23:23:31 -05:00
mrq
e0886c5a78 re-added mamba as a possible non-experimental arch backend (test trainer will set it as AR only, doing any NAR tasks lobotomizes it) 2024-06-04 22:41:22 -05:00
mrq
c93d5863fd fixes 2024-06-04 00:07:00 -05:00
mrq
7feeb944a0 probably insane with even entertaining going this route 2024-06-03 20:26:27 -05:00
mrq
e15c6c74c3 correctness 2024-05-30 20:50:45 -05:00
mrq
ddbacde0d1 DAC just doesn't work well enough...... 2024-05-25 11:07:52 -05:00