|
777ba43305
|
oops
|
2023-10-03 15:01:37 -05:00 |
|
|
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 |
|
|
c0b25541e3
|
restructured some things with the model to remove dead weights
|
2023-09-20 19:10:59 -05:00 |
|
|
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 |
|
|
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 |
|
|
23a5fdd645
|
implemented a naive beam search (I really should be taking a break)
|
2023-09-12 21:28:07 -05:00 |
|
|
a6ae344e5b
|
some comments
|
2023-09-12 16:04:45 -05:00 |
|
|
d07c63b9d8
|
unified more things with training the AR+NAR monolothic model
|
2023-09-12 15:54:41 -05:00 |
|
|
40ef34e1ca
|
this embedding class definitely works, and migrating from the previous embedding weights seems to work.
|
2023-09-11 14:13:42 -05:00 |
|
|
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 |
|
|
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 |
|
|
ba71020318
|
added option to limit (or exceed) inferenced RVQ-bin levels through the NAR
|
2023-09-10 13:50:13 -05:00 |
|
|
10c34c5b98
|
added a length-based decay factor for repetition penalty
|
2023-09-08 21:02:00 -05:00 |
|
|
14c78bae39
|
added lots of sampling options (top-k/top-p, repetition penalty, length penalty)
|
2023-09-08 20:30:54 -05:00 |
|
|
f69aad9c65
|
some day I'll get it right
|
2023-09-08 15:36:26 -05:00 |
|
|
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 |
|
|
ab5134f385
|
tweaks and fixes
|
2023-09-07 17:08:38 -05:00 |
|
|
b2c2dec291
|
added homebrewed per-RVQ-bin embedding solutions
|
2023-09-07 16:48:02 -05:00 |
|
|
e7a67410d1
|
oops
|
2023-09-07 09:14:03 -05:00 |
|
|
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 |
|
|
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 |
|
|
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 |
|