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11fa3da665
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some cleanup, fixed the wrapper attention to explicitly use other sdpa backends
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2024-08-03 19:51:00 -05:00 |
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9564ecda43
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wrapper attention class for other sdpa backends + xformers seems to have broke...
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2024-08-03 15:12:11 -05:00 |
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9e1989be1b
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tweaked initial NAR pass's initial token embeddings to use a different value, or osmething
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2024-08-03 09:01:37 -05:00 |
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26f74c5739
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somehow fixed non-unified position IDs for the NAR-len
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2024-08-03 08:43:42 -05:00 |
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66407e5bdb
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tweaks for the NAR-len model, maybe
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2024-08-03 08:40:39 -05:00 |
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97c5241bef
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fixes, throw an exception when using NAR only model with non-unified position IDs, since for some reason it outputs garbage for the NAR
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2024-08-02 22:25:49 -05:00 |
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4456d3172b
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that's what I get for testing without hdf5 on my previous machine....
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2024-08-02 20:44:01 -05:00 |
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7a77978096
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oversight with using resize_modules
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2024-08-02 20:28:49 -05:00 |
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808a79ebaf
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oops
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2024-08-01 22:56:04 -05:00 |
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443422ecb5
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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)
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2024-08-01 22:43:39 -05:00 |
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c9ec6b28ef
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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)
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2024-08-01 20:56:28 -05:00 |
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b4c895114c
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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)
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2024-08-01 20:12:06 -05:00 |
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387358bc8a
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fixes for the NAR-len model, and documentation some config options, and a better way to handle resizing modules on state_dict load
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2024-07-31 20:35:09 -05:00 |
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52d13b321f
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I rather have it default to non-strict loading instead so I can clean up YAMLs
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2024-07-30 22:24:38 -05:00 |
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d7c6be6f78
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fix weird regression in handling checkpoints when backend is local, but deepspeed checkpoints are in (it was handled with LoRA loading but not real loading...)
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2024-07-30 22:15:56 -05:00 |
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07f8e2ad06
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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)
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2024-07-30 20:53:51 -05:00 |
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ebf848d249
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possible speedup for samplers that require a list of previous tokens (the DRY sampler made me realize that I should copy the tolist() thing from the rep pen sampler for everything else)
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2024-07-29 20:23:26 -05:00 |
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55b0121b1a
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trying (and failing) to nail a weird regression in fancier attentions
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2024-07-29 19:53:37 -05:00 |
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c2f5b916fc
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added what I think is DRY sampling
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2024-07-29 19:15:07 -05:00 |
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ce8bb1e4f7
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sanity cleanups with weird off-by-one-ness, cleaned up and validated vall_e.models.experimental works again
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2024-07-27 15:36:05 -05:00 |
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06e948aec1
|
suppress warning on exit about distributed not being cleaned up (because I updated my system)
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2024-07-25 16:50:47 -05:00 |
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682e4387dc
|
oops (fixed proms being erased from a config oversight)
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2024-07-25 12:39:57 -05:00 |
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1acb0e9c84
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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)
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2024-07-24 19:35:17 -05:00 |
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611a1c4bdc
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might help
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2024-07-22 20:57:01 -05:00 |
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188d116222
|
some weird fixes for an equally weird regression with LoRA loading
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2024-07-22 20:47:24 -05:00 |
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e33c4b0cb1
|
oops
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2024-07-22 19:38:39 -05:00 |
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75b04686f8
|
added prom-less training / inferencing, some other things
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2024-07-22 19:36:07 -05:00 |
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491ae2a684
|
some insanity for sanity checks (some phonemes from phonemizing japanese are not in my tokenizer...)
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2024-07-22 00:30:40 -05:00 |
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ad024f400f
|
actually pass language into dataset process script, fix coercing japanese into hiragana because espeak does not like kanji
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2024-07-21 23:21:37 -05:00 |
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3e5ca3a201
|
more demo page tweaks
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2024-07-21 19:31:13 -05:00 |
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7366f36f81
|
oops
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2024-07-21 19:17:25 -05:00 |
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e19aa643a6
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cleaned up demo page creation, added option to pass in RVQ level sampling distribution for training
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2024-07-21 19:12:03 -05:00 |
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ba7ee8c0ee
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added demo link to readme
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2024-07-19 21:22:30 -05:00 |
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9ec88d9444
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validated passing URI path for assets instead of base64 encoding them
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2024-07-19 21:07:17 -05:00 |
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d87b492295
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added rudimentary demo page creator (currently just embeds base64 wavs into the page, need to test not doing that)
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2024-07-19 20:49:40 -05:00 |
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d53038a9e4
|
actually have split classifiers working
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2024-07-19 15:33:31 -05:00 |
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692d09f9c1
|
eval/validation fix for SpeechX tasks
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2024-07-19 09:16:37 -05:00 |
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28a674e0f1
|
fixes...
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2024-07-18 23:25:32 -05:00 |
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39f961abcd
|
test trainer (vall_e.models.ar_nar) tests some SpeechX features
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2024-07-18 18:46:45 -05:00 |
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83a0954f85
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fixes for re-introducing SpeechX tasks (need to actually validate if these all do the right things)
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2024-07-18 17:16:32 -05:00 |
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bccbb77a1a
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added option to either naively concat codes to concat audio waveforms (prior behavior) or to decode => concat => encode instead (although this only currently happens for prom sampling if an utternace is too small)
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2024-07-18 16:48:41 -05:00 |
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97e768601c
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re-introducing SpeechX tasks (need to validate them all, everything works with base tts anyways)
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2024-07-18 16:16:14 -05:00 |
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c2b8035e74
|
oops, kept forgetting to actually pass in lang/tone tokens (despite not really using these at the moment)
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2024-07-18 14:18:34 -05:00 |
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22fe53508c
|
added experimental disjointed position IDs (because I *think* this might help because technically a sequence is made up of several parts, and the position embeddings shouldn't be unified)
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2024-07-16 19:52:41 -05:00 |
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fe0f235335
|
mechanism to store the model config inside the weights and load them, some other things to allow LoRA training on the RetNet (gradient checkpointing will gripe about inputs not having require_grad and nothing seems to remedy it)
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2024-07-16 18:23:13 -05:00 |
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3acc54df22
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allow loading a different model within the web ui (apparently I did not have the web UI in the documentation)
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2024-07-15 19:59:48 -05:00 |
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7b210d9738
|
sanity cleanup
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2024-07-04 15:58:08 -05:00 |
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1ecf2793f4
|
(commented-out) support for facebookresearch/AudioDec, but support really didn't wow me (so I commented it out until I figure out why my output audio is super crusty with AudioDec)
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2024-07-04 15:40:51 -05:00 |
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f770467eb3
|
stuff
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2024-07-01 18:13:29 -05:00 |
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312a8e3ead
|
add shuffle to samplers that can support it
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2024-06-30 11:36:46 -05:00 |
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396af541c5
|
ugh
|
2024-06-30 11:11:58 -05:00 |
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dced595391
|
more cleanup
|
2024-06-30 11:00:12 -05:00 |
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bc2a6fa756
|
sanity cleanup: moved experimental features under its own thing
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2024-06-30 10:37:33 -05:00 |
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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)
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2024-06-29 23:42:30 -05:00 |
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793ccb16fb
|
ugh
|
2024-06-29 22:14:35 -05:00 |
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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)
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2024-06-29 21:46:35 -05:00 |
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ec5eaebcbc
|
experimental method of using DACs quantizer ""embeddings"" to see if it helps with model quality
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2024-06-29 19:46:11 -05:00 |
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a8718d35a4
|
nasty bandaid because some of my DAC dataset only has 8 RVQ levels instead of the full 9
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2024-06-29 10:16:37 -05:00 |
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c4dd523b6f
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change from chunk-slicing paths for distributed dataloader to instead interleave
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2024-06-29 10:10:35 -05:00 |
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dd40463803
|
limit eval size because the training batch size seems to be used for the eval dataloader, somehow (bandaid)
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2024-06-29 09:11:28 -05:00 |
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591d3ac848
|
have eval dataloader use eval batch size for batchedordersampler
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2024-06-28 22:44:00 -05:00 |
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1a392b69f6
|
local training backend should be a bit more aware of variable batch sizes, maybe
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2024-06-28 22:39:05 -05:00 |
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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
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2024-06-28 22:28:54 -05:00 |
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8fffb94964
|
backport fix from tortoise_tts with local trainer + loading state when training lora
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2024-06-25 13:41:29 -05:00 |
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62a53eed64
|
fixed deducing tokenizer path, added option to default to naive tokenizer (for old models, like ar+nar-retnet-8)
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2024-06-18 22:11:14 -05:00 |
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8a986eb480
|
load exported LoRA weights if exists (to-do: make a better LoRA loading mechanism)
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2024-06-18 21:45:46 -05:00 |
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2bfe786ebd
|
ban stop token for NAR levels (because sometimes it gets sampled and causes problems)
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2024-06-17 22:14:43 -05:00 |
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7cfb78fa64
|
enable LoRA for targetted RVQ levels (to experiment with, seems to help)
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2024-06-17 21:45:03 -05:00 |
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7047fcc6e2
|
actually make deepspeed work with LoRAs
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2024-06-17 13:55:37 -05:00 |
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1d159b1476
|
updated export routine to split LoRA weights from the state dict (should work with deepspeed)
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2024-06-17 13:28:18 -05:00 |
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726a4b613f
|
naive, rudimentary DeepSpeed support (just live with the LoRA weights living with the original weights, they can be split later)
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2024-06-17 13:17:24 -05:00 |
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bd0bc10ec0
|
added LoRA policy to decide what layer of the model gets adapted based on simple inclusion/exclusion terms
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2024-06-17 13:05:06 -05:00 |
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be051d9544
|
added other LoRA method using parametrization rather than linear injection
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2024-06-17 09:58:34 -05:00 |
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45a39fb79f
|
very rudimentary lora support (no deepspeed support, tested training and saving but not loading yet)
|
2024-06-17 00:09:16 -05:00 |
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|
19410a919e
|
ugh
|
2024-06-15 12:29:03 -05:00 |
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|
d343bde09b
|
residual_in_fp32=False for mamba arch backends because it breaks the classifier (output projection / lm head / what-have-you) under AMP
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2024-06-15 12:08:03 -05:00 |
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ccb14c06ef
|
mamba2-hf using vasqu/mamba2-torch because it lets me use mamba2 without triton ops (training with my 4xV100s are not happy with mamba2 because of triton)
|
2024-06-14 19:42:17 -05:00 |
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31f71fa134
|
sampler update (some brainworm just never actually had a sampler for sample_type=path)
|
2024-06-14 16:55:40 -05:00 |
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b3b67f34ac
|
added option to sort paths by durations to better group equally lengthed sequences together (and there was maybe a logic error from creating the samplers and then interleave-reordering paths, desyncing them, maybe)
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2024-06-13 22:37:34 -05:00 |
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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 |
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26da24fd8d
|
mamba updated to fix that pesky NaN error during training
|
2024-06-13 12:38:33 -05:00 |
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|
bcf3910a17
|
the NAR only dream is dead (it just won't work)
|
2024-06-12 19:49:47 -05:00 |
|
|
a9353cf9fa
|
ugh
|
2024-06-12 00:14:29 -05:00 |
|
|
cca542a4c0
|
ugh
|
2024-06-11 23:59:28 -05:00 |
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|
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 |
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a7a6e0ac76
|
validated that inferencing works, changed some defaults (NAR benefits from greedy sampling)
|
2024-06-09 17:11:38 -05:00 |
|
|
234f9efc6e
|
ugh
|
2024-06-09 11:39:43 -05:00 |
|
|
132a02c48b
|
sanity cleanup, backup config yaml for each log file
|
2024-06-09 11:22:52 -05:00 |
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|
8d92dac829
|
forgot I renamed this
|
2024-06-09 11:12:30 -05:00 |
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|
80f9530840
|
ugh
|
2024-06-09 01:43:44 -05:00 |
|
|
5c732b72ee
|
ugh
|
2024-06-08 20:34:00 -05:00 |
|
|
8d068fa3f9
|
reticulating splines
|
2024-06-08 20:30:15 -05:00 |
|
|
ead3e2f0cb
|
ugh
|
2024-06-08 16:14:57 -05:00 |
|
|
b072f9b96b
|
fixes
|
2024-06-08 16:01:34 -05:00 |
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|
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 |
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|
e35a91c67a
|
ugh
|
2024-06-07 21:56:14 -05:00 |
|
|
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 |
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b0158a61d5
|
fixed some logic errors with training (grabbing wrong quant level...)
|
2024-06-07 20:34:36 -05:00 |
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eafa622be2
|
I forgot the actual reason I was cleaning things up was to re-include prom loss calculation (I realized the reason I did this was because of an prom embedding oversight, it seems to work now)
|
2024-06-07 20:29:25 -05:00 |
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da8242d086
|
finally got around to removing omegaconf
|
2024-06-07 20:23:53 -05:00 |
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