Commit Graph

127 Commits

Author SHA1 Message Date
mrq
91062361af tweaks 2024-03-01 20:38:06 -06:00
mrq
f3c59c3e7e cleaner replacement code (because I realized BitNet had an implementation for it too), added calculating gradient norm and performing gradient clipping in local trainer (non-deepspeed) 2024-03-01 20:18:43 -06:00
mrq
47435207f7 Added cfg.bitsandbytes.replace as a less intrusive alternative to cfg.bitsandbytes.inject to replace all Linear modules in a model 2024-03-01 19:20:10 -06:00
mrq
35d78a2bb0 Yet Another Underlying Transformer Implementation (BitNet, will give it a few days to see how it fares) 2024-02-29 20:29:17 -06:00
mrq
3da1518ace added Mistral (non-Mixtral) backend, useless optimization when not training, proper adjustment of the LR for Prodigyopt through d_coeff (maybe), recurrent sampling for LLaMA/Mistral/Mixtral backends (again, doesn't actually work) 2024-01-31 21:48:36 -06:00
mrq
cce929e136 nasty hotfix for transformer's Mixtral throwing an error when batch sizes > 1 2024-01-26 19:41:12 -06:00
mrq
e799665759 experimental weighting of prom/resp embeds 2024-01-25 12:18:48 -06:00
mrq
c690aa509d fixes and compat (MoE-fying an existing model and retraining from there just ruins it after a second of audio...) 2023-12-25 21:20:32 -06:00
mrq
e513d2ef19 experts weren't forwarded into constructer (wasted a few days of training garbage) 2023-12-23 16:08:17 -06:00
mrq
0db3203b21 added LLaMA/Mixtral (if experts>1) model arches, utilize XMoE's loss as well, set MoE frequency to 1 to make every layer MoE'd for RetNet, etc. (going to do tests without burning out again to see how things go) 2023-12-22 19:27:36 -06:00
mrq
9c198eb75a added torchscale XMOE integration (because Mixtral 8x7B seems very promising and I want to see if it works) 2023-12-20 18:45:58 -06:00
mrq
ed54f4ebec un 'experimental' the better target sequence preparation 2023-10-22 09:06:59 -05:00
mrq
9a6040383e make validation samplers ignore sampler type 2023-10-22 09:01:47 -05:00
mrq
09cda7d3f9 added sampling by speaker group name (might be better to de-emphasize the LibriVox/Audiobooks that are in large numbers, and emphasize the smaller pools), log cleanup 2023-10-16 19:30:38 -05:00
mrq
a539f6889f mucked around with the loss calculation, this seems better? 2023-10-13 18:22:21 -05:00
mrq
65f500083d tweaks to try and get deepspeed quantized inferencing, validating bitsandbytes and deepspeed quantization, nothing seems to work 2023-10-12 22:21:43 -05:00
mrq
08bae355eb actually use langs from the dataloader 2023-10-11 21:21:50 -05:00
mrq
3af19d79fd oops 2023-10-11 20:49:54 -05:00
mrq
8740cdefc6 added initial support for languages (still testing, marked as model version 3), added experimental 'context extend by limiting the resp context' (untested) 2023-10-11 20:38:40 -05:00
mrq
7facacf7c9 separated samplers into its own file, don't bother copying the logits back to the GPU after sampling, it's not necessary 2023-10-11 12:25:31 -05:00
mrq
47b3077415 fixed mirostat issue 2023-10-10 18:09:49 -05:00
mrq
99e980d323 documentation and more better-er attribution 2023-10-10 17:15:16 -05:00
mrq
e727b6e5c1 changed dynamic temperature trigger to be a min-(n)ar-temp value between [0,(n)ar-temp), flags to set min temp, checkbox in web UI to request it 2023-10-10 17:02:33 -05:00
mrq
ec25f56bd9 used torch.max fixes things, somehow, for dynamic temp sampling 2023-10-10 16:42:24 -05:00
mrq
87db03dd93 trim the input prompt to 3 seconds when training NAR tasks (marked as experimental; the paper mentions doing so, but I don't know how much this would harm the retention heads) 2023-10-09 22:03:58 -05:00
mrq
26fbb92ec6 reduced dynamic temperature threshold to > 1.0, as it seems to not quite be useful for audio LMs, sped up any sampling that touches logits by copying them to CPU first, as accessing tensors on the GPU is slow as balls) 2023-10-09 14:46:17 -05:00
mrq
27483e56f0 disabled preparing of SpeechX tasks, added dynamic temperature testing (to-do: test it, credited in the function) 2023-10-09 13:01:40 -05:00
mrq
2deb995cc9 updated setup script 2023-10-06 20:08:28 -05:00
mrq
63cc9cf37a added compat flags for torchscale because the maintainer for torchscale broke compat for existing models 2023-10-05 16:39:46 -05:00
mrq
777ba43305 oops 2023-10-03 15:01:37 -05:00
mrq
d12877ee09 added option to set probability of selecting the AR during training under a monolithic AR+NAR, added some more to-dos while I have them in mind 2023-10-02 16:52:42 -05:00
mrq
c0b25541e3 restructured some things with the model to remove dead weights 2023-09-20 19:10:59 -05:00
mrq
a6bfe43590 added mirostat sampling (given a partially trained model, it got far decent output than I expected, need to test on a better trained model) 2023-09-18 18:55:41 -05:00
mrq
2567e082b5 UGH 2023-09-16 00:26:13 -05:00
mrq
22ffaf3a33 have loss for the NAR not-ignore the text prompt, I imagine this should help the NAR and explain why it's always had a bit of an issue with training 2023-09-15 19:08:44 -05:00
mrq
4aef798135 added picking final candidate based on sum of score instead of first candidate (this changes nothing). 2023-09-13 13:19:11 -05:00
mrq
23a5fdd645 implemented a naive beam search (I really should be taking a break) 2023-09-12 21:28:07 -05:00
mrq
a6ae344e5b some comments 2023-09-12 16:04:45 -05:00
mrq
d07c63b9d8 unified more things with training the AR+NAR monolothic model 2023-09-12 15:54:41 -05:00
mrq
40ef34e1ca this embedding class definitely works, and migrating from the previous embedding weights seems to work. 2023-09-11 14:13:42 -05:00
mrq
a1f250ffac set default max_levels for NAR to 0 and implicitly set it to max resps levels because the previous way was implicitly assuming all models were outputting at 1+7 RVQ bins. 2023-09-10 20:33:33 -05:00
mrq
671dca88ee throw error when no reference audio is provided in the web UI because someone keeps doing that in the HF space 2023-09-10 15:50:50 -05:00
mrq
ba71020318 added option to limit (or exceed) inferenced RVQ-bin levels through the NAR 2023-09-10 13:50:13 -05:00
mrq
10c34c5b98 added a length-based decay factor for repetition penalty 2023-09-08 21:02:00 -05:00
mrq
b922f35b6b added documentation on how these new sampling parameters are very iffy and you really need to know what you are doing to use them because this is audio generation and not text generation 2023-09-08 20:43:36 -05:00
mrq
14c78bae39 added lots of sampling options (top-k/top-p, repetition penalty, length penalty) 2023-09-08 20:30:54 -05:00
mrq
f69aad9c65 some day I'll get it right 2023-09-08 15:36:26 -05:00
mrq
b2907ae7e0 seems that my PromEmbedding/RespEmbedding doesn't actually work all that well, naively using dedicated MultiEmbeddings for AR/NAR in the monolithic model is the best way to go 2023-09-08 01:03:24 -05:00
mrq
c47fc3274e added backwards compat flag 2023-09-07 17:12:17 -05:00
mrq
ab5134f385 tweaks and fixes 2023-09-07 17:08:38 -05:00
mrq
b2c2dec291 added homebrewed per-RVQ-bin embedding solutions 2023-09-07 16:48:02 -05:00
mrq
e7a67410d1 oops 2023-09-07 09:14:03 -05:00
mrq
712808494f added support for optional prodigy optimizer (https://github.com/konstmish/prodigy) although it consumes a lot more VRAM per parameter 2023-09-06 20:33:16 -05:00
mrq
7ce06432fd fixed the AR+NAR dual model, the resp_emb has to be split up (classifier might too) 2023-09-06 19:33:39 -05:00
mrq
100ca6b7d0 added option to use SGD optimizer through the YAML, added option to pass in additional optimizer parameters through the YAML, added experimental unified AR+NAR model (does not seem fruitful in testing) 2023-09-06 18:58:35 -05:00
mrq
451726fdd5 added ability to disable activation checkpointing through the YAML (it is very VRAM intensive at double layer size) 2023-09-05 15:38:21 -05:00
mrq
143aee7526 removed dedicated interleaved AR code 2023-09-03 22:47:03 -05:00
mrq
2f9cd0842f merged dedicated interleaved AR code with the normal AR code 2023-09-03 22:46:08 -05:00
mrq
3a6bd50322 haha 2023-09-03 21:36:58 -05:00
mrq
c56ce033d9 work on an interleaved AR (spoiler: it does not work) 2023-09-03 21:27:58 -05:00
mrq
8a6c203277 added per-speaker samplers 2023-09-03 21:27:13 -05:00
mrq
2f06166ddd cleanups 2023-09-01 21:33:51 -05:00
mrq
e40c0d34a0 somewhat got recurrent forward working (it's as accurate as chunkwise forward: it's not accurate at all), added option to use AMP instead of blanket setting the weight's dtype 2023-09-01 20:58:29 -05:00
mrq
2bc2d08b09 (need to verify) added modifying model size and config bool to align with VALL-E continuous' methodology 2023-09-01 17:19:34 -05:00
mrq
165a1154e0 Undo naive=False test flag, this shouldn't have made its way in 2023-08-26 22:00:43 -05:00
mrq
78378ed1ce overhauled dataloading code to be marginally faster, mostly cleaned up, and can leverage a metadata json to help things out 2023-08-26 19:53:23 -05:00
mrq
16e0020901 disabled chunkwise_recurrent for 2x speed gains (I suppose it has been working the entire time, but I have not been properly grabbing things, and this might explain why the output is bad) 2023-08-25 19:50:19 -05:00
mrq
2d1a9f10c0 nightmare of spaghetti that might break compat; mechanism to increase RVQ bins of an existing model without retraining, keeps sampled proms/resps at max RVQ level and trim off excess levels according to what model receives them, some other things I already forgot (I really hope no one else has weights being baked right now) 2023-08-19 15:06:33 -05:00
mrq
2a71486cb6 preparing for SpeechX extensions 2023-08-18 20:58:07 -05:00
mrq
d7deaf6def distributed training works now (hopefully) 2023-08-13 22:07:45 -05:00
mrq
2af09d0bef fixed that mysterious discepancy between the reported losses (I am so freaking mad, my piss is boiling, I had to interrupt halfway through an epoch) 2023-08-05 15:25:41 -05:00
mrq
0a524f1d59 reticulating splines 2023-08-03 21:39:00 -05:00
mrq
608c1970eb ops 2023-08-03 20:36:19 -05:00
mrq
c85101403f big cleanup 2023-08-03 20:26:36 -05:00
mrq
2e03e5ac93 Fixed an issue with having fairseq installed at all will brick logging 2023-08-02 22:57:10 -05:00
mrq
f6597e2dfe adjustments 2023-08-02 18:36:26 -05:00
mrq
7a06b27a9c Tweaks 2023-08-02 22:06:39 +00:00