Commit Graph

428 Commits

Author SHA1 Message Date
Nicolas Patry dae3bf1d87
Fix tokenization yi (#2507)
* Fixing odd tokenization self modifications on the Rust side (load and
resave in Python).

* Fixing the builds ?

* Fix the gh action?

* Fixing the location ?

* Validation is odd.

* Try a faster runner

* Upgrade python version.

* Remove sccache

* No sccache.

* Getting libpython maybe ?

* List stuff.

* Monkey it up.

* have no idea at this point

* Tmp.

* Shot in the dark.

* Tmate the hell out of this.

* Desperation.

* WTF.

* -y.

* Apparently 3.10 is not available anymore.

* Updating the dockerfile to make libpython discoverable at runtime too.

* Put back rust tests.

* Why do we want mkl on AMD ?

* Forcing 3.11 ?
2024-09-11 22:41:56 +02:00
Nicolas Patry a4e3e8c608
Prefix test - Different kind of load test to trigger prefix test bugs. (#2490)
* Adding prefix test.

* [WIP] tmp dump of integration load tests.

* Remove other tensor creation.

* Fixed the radix tree.

Used a slice everywhere in radix.rs to keep the cheap Arc cloning
instead of recomputing the input_ids.

* Fix parsing

* Is it really flashinfer version ?

* Remove some comments.

* Revert the max prefix hit.

* Adding numpy to diff.

* Upgraded flashinfer.

* Upgrading some stuff.

* Are we done yet ?

* Minor fixup

* Remove 1 log and put back the other.

* Add comment for why slot 0 is OK.

* Mounting on the job.

* Get me a debug branch

* Debugging CIs is fun.

* Attempt #28

* wip

* Tmate.

* Praying.

* Updating VLM causal model with updated context.

* Important line got squashed.

* Tmate again.

* Fingers crossed.

* We want only 1 run of integration tests.....

---------

Co-authored-by: Guillaume LEGENDRE <glegendre01@gmail.com>
2024-09-11 18:10:40 +02:00
Wang, Yi 5cd8025f18
hotfix: fix regression of attention api change in intel platform (#2439)
fix regression caused by attention api change. ipex.varlen_attention does not support paged-cache
format kv input now.

Signed-off-by: Wang, Yi A <yi.a.wang@intel.com>
2024-09-05 17:41:39 +02:00
drbh 6cb42f49ae
feat: support lora revisions and qkv_proj weights (#2482)
* feat: support lora revisions and qkv_proj weights

* fix: add qkv_proj weights to weight test
2024-09-02 13:09:06 -04:00
Nicolas Patry d9fbbaafb0
Tied embeddings in MLP speculator. (#2473)
* Tied embeddings in MLP speculator.

* Fixing the scale_weight when users decide to not use the speculation as
much as defined in the config.

* Adding scaling support + optimize some ops.
2024-08-29 17:44:54 +02:00
Nicolas Patry e415b690a6
Lots of improvements (Still 2 allocators) (#2449)
* Making prefix/flashinfer the default and testing the full release tests.

* Include flashinfer in the docker.

* Using prebuilt.

* Allowing window_left_size (dummy version).

* Disabling flashinfer/prefix caching on odd head_dim

* Disable prefix caching for lora.

* More specific codes.

* Update lock

* Updating integration tests with new values with FI/FD.

Remove paged as a default too, and using FD everywhere.

* Update cargo lock ?

* Upgrade to 1.80 because of bitstream...

* Everywhere 1.80

* Forgot last default place.

* Apply suggestions from code review

Co-authored-by: drbh <david.richard.holtz@gmail.com>

* Updated flake lock

* Tmp

* Upgrade resolution system for less errors in resolution.

* Remove lambda for cleaner function.

* Handling debugger.

* OVerride the env in server tests.

* Is this enough to make it work ?

* This seems to be working.

* Downgrade some logs.

* Fixing the default for vlm.

* Don't enable prefix caching on VLM just yet.

* Change `add_special_tokens` in order to have the correct tokens for chat
input and not (since it's super important with the prefixing now)

* Fixing prefix caching for flashdecoding.

* Update all models.

* Fixed flashinfer version.

* add_special_tokens is internal only

* Fixing seqlen with the new vlms.

* Fixing the issue with `add_special_tokens` not being passed around.

* Fixing the test.

* Removing encoder_decoder (seq2seq).

* Update the chat test.

* Fixing the batching tokenization in flash causal lm.

* Truncating left for radix purposes.

* Oops this doesn't belong here.

* Put back default pure shell.

* Update server tests

- Default to throughput test in k6
- Use TGI_WIGGLE_ROOM to adjust wiggle room

* Only n_heads / process_group.size() are necessary.

* Revert the integrationt tests change (seem linked to head_size
modification).

* Adding error message when assert is violated.

* Fixing the free algorithm to handle times where the common prefix is
smaller.

* Apply suggestions from code review

Co-authored-by: OlivierDehaene <olivier@huggingface.co>

* Update server/text_generation_server/layers/attention/common.py

Co-authored-by: OlivierDehaene <olivier@huggingface.co>

* Fix disabling prefix caching - Fix windowing checks.

* Revert the Cohere tokenizer change (for now using a revision instead).

* Fmt.

---------

Co-authored-by: drbh <david.richard.holtz@gmail.com>
Co-authored-by: OlivierDehaene <olivier@huggingface.co>
2024-08-29 16:29:01 +02:00
drbh 30be188400
Fix: don't apply post layernorm in SiglipVisionTransformer (#2459)
* Fix: don't apply post layernorm in SiglipVisionTransformer

This fixes a bug with LLaVA Next when using Siglip as the vision model. LLaVA Next expects the output of the vision model to be the encoder outputs before layernorm (see original transformers implementation here: https://github.com/huggingface/transformers/blob/main/src/transformers/models/llava_next/modeling_llava_next.py#L813).

This also makes Siglip consistent with the existing Clip implementation:

https://github.com/huggingface/text-generation-inference/blob/main/server/text_generation_server/models/custom_modeling/clip.py#L613

* fix: adjust pali gemma for post layer norm and small refactors

---------

Co-authored-by: Travis Addair <tgaddair@gmail.com>
2024-08-26 17:04:46 -04:00
Nicolas Patry b70ae0969f
Prefix caching (#2402)
* Prefix caching WIP

* Fixing prefix attention.

* Fixing flashinfer import.

* Fixing black.

* Fixing medusa (still wrong outputs, but functional).

* Just medusa values now.

* Fixing medusa without prefix caching.

* Fixing prefix caching.

* Medusa requires reshaping.

* Removing the logs.

* Remove router.nix

* Fixup:

- Remove logs
- Disable VLMs (they do not work)
- Disable prefix caching when user wants prefill logprobs.

* Update flake.lock

---------

Co-authored-by: Daniël de Kok <me@danieldk.eu>
2024-08-20 11:15:30 +02:00
Nicolas Patry 57b3495823
Fixing exl2 and other quanize tests again. (#2419)
* Fixing exl2 and other quanize tests again.

* Mark exl2 as non release (so CI tests them, needs to be removed latet).

* Fixing exl2 (by disabling cuda graphs)

* Fix quantization defaults without cuda graphs on exl2 (linked to new
issues with it).

* Removing serde override.

* Go back to released exl2 and remove log.

* Adding warnings for deprecated bitsandbytes + upgrade info to warn.
2024-08-15 11:12:51 +02:00
Nicolas Patry f3b5c69441
Upgrading exl2. (#2415)
* Upgrading exl2.

* Fixing the other pathways.

* Fix idefics.
2024-08-14 11:58:08 +02:00
drbh 1cebccc72b
fix: adds causal to attention params (#2408)
fix: adds causal to attention params to check when using flash attn v1
2024-08-13 16:19:46 +02:00
Wang, Yi 59922f9bc1
add numa to improve cpu inference perf (#2330)
Signed-off-by: Wang, Yi A <yi.a.wang@intel.com>
2024-08-13 15:33:55 +02:00
drbh 8a7749b8fb
fix: include create_exllama_buffers and set_device for exllama (#2407) 2024-08-12 17:59:37 -04:00
drbh 4c3f8a70a1
fix: allocate tmp based on sgmv kernel if available (#2345)
* fix: allocate tmp based on sgmv kernel if available

* fix: re add copy build artifacts step for punica kernels
2024-08-12 17:24:32 +02:00
drbh 155f9c98e2
feat: validate template variables before apply and improve sliding wi… (#2403)
* feat: validate template variables before apply and improve sliding window check

* fix: improve missing template var test
2024-08-12 10:58:40 -04:00
Daniël de Kok 8deeaca4ff
Add support for prefix caching to the v3 router (#2392)
This change adds support for prefix caching to the v3 router. This
is broken up from the backend support to ease reviewing.

For now prefix caching is only enabled with `USE_PREFIX_CACHING=1`
in this case, the router will switch to `RadixAllocator`. This
allocator uses a radix trie to keep track of prefills that were
seen prior. If a new prefill is a prefix of a previously-seen
prefil, the router will send a request with `prefix_len>0`, which
can be used by the backend to decide to reuse KV blocks from the
cache, rather than recomputing them.

Even though backend support is not added in this PR, the backend
will still work with prefix caching enabled. The prefix lengths
are just ignored and not used.
2024-08-12 14:59:17 +02:00
Nicolas Patry 84bc3d7b7d
Fixing import exl2 (#2399) 2024-08-12 14:08:59 +02:00
Nicolas Patry 7a48a84784
Using an enum for flash backens (paged/flashdecoding/flashinfer) (#2385)
* Using an enum for flash backens (paged/flashdecoding/flashinfer)

* Early exit on server too.

* Clippy.

* Fix clippy and fmt.
2024-08-09 16:41:17 +02:00
Vaibhav Srivastav b2b9c42724
Update documentation for Supported models (#2386)
* Minor doc fixes

* up.

* Other minor updates.
2024-08-09 15:01:34 +02:00
Daniël de Kok 7830de1566
Add FlashInfer support (#2354)
This change adds support for FlashInfer. FlashInfer can be enabled using
`FLASH_INFER=1` and is currently only implemented in `FlashCausalLM`.
Since this functionality is currently only for testing, FlashInfer is
not installed anywhere yet.

The FlashInfer API is quite different from FlashAttention/vLLM in that
it requires more global bookkeeping:

* A wrapper class needs to be contstructed (which we just call *state*).
  Since this is fairly expensive (due to pinned host memory allocation),
  we only do this once in a FlashCausalLM instance or for each CUDA
  Graph size.
* Each model forward call needs to be wrapped in `begin_forward` and
  `end_forward`. This sets up data structures that can be reused for all
  calls to attention for that forward call.

When calling attention, we need access to the state object. To avoid
passing an argument down the call chain (which would require changes to
all models), we use a context variable.

Each model forward call is wrapped using a context manager that does all
the bookkeeping for such a call:

* Set the context variable to the forward call's state.
* Call `begin_forward` on the state.
* Yield.
* Call `end_forward` on the state.
* Reset the context variable.

We cannot use a single shared global variable for this, since e.g. CUDA
Graphs of different sizes each have their own state.
2024-08-09 11:42:00 +02:00
drbh f852190060
fix: prefer hidden_activation over hidden_act in gemma2 (#2381) 2024-08-08 14:08:56 -04:00
drbh 2ca5980634
Pr 2337 ci branch (#2379)
* hotfix: fix xpu crash brought by code refine. torch.xpu rely on import ipex

Signed-off-by: Wang, Yi A <yi.a.wang@intel.com>

* reable gemma2 in xpu

Signed-off-by: Wang, Yi A <yi.a.wang@intel.com>

* fix in regression in ipex flashattention

Signed-off-by: Wang, Yi A <yi.a.wang@intel.com>

---------

Signed-off-by: Wang, Yi A <yi.a.wang@intel.com>
Co-authored-by: Wang, Yi A <yi.a.wang@intel.com>
2024-08-08 12:30:29 -04:00
Wang, Yi 689b1abbf6
fix EleutherAI/gpt-neox-20b does not work in tgi (#2346)
Signed-off-by: Wang, Yi A <yi.a.wang@intel.com>
2024-08-08 12:08:52 -04:00
drbh 82d19d7723
Pr 2374 ci branch (#2378)
* Update __init__.py

Fix issue with NoneType comparison for max_input_tokens and sliding_window

- Add default values for max_input_tokens and sliding_window to handle None cases.
- Ensure the comparison between max_input_tokens and sliding_window is handled correctly to prevent TypeError.
- This change addresses the error: TypeError: '<=' not supported between instances of 'int' and 'NoneType'.

* Update __init__.py

Handle NoneType in sliding_window comparison to fix TypeError in __init__.py by ensuring the comparison logic accounts for NoneType values, preventing errors and improving code robustness.

* fix: syntax/style tweak

---------

Co-authored-by: Praz <prazanth2006@gmail.com>
2024-08-08 11:14:06 -04:00
drbh a379d5536b
Fix the prefix for OPT model in opt_modelling.py #2370 (CI RUN) (#2371)
* Fix the bug

* fix: run lints

* fix: small syntax tweak

---------

Co-authored-by: Sadra Barikbin <sadraqazvin1@yahoo.com>
2024-08-07 23:14:02 -04:00
drbh 21267f3ca3
add gptj modeling in TGI #2366 (CI RUN) (#2372)
* add gptj modeling

Signed-off-by: Wang, Yi A <yi.a.wang@intel.com>

* fix: update docs for model addition

* fix: adjust syntax typo

* fix: adjust syntax typo again

---------

Signed-off-by: Wang, Yi A <yi.a.wang@intel.com>
Co-authored-by: Wang, Yi A <yi.a.wang@intel.com>
2024-08-07 21:32:37 -04:00
almersawi 8094ecfc9e
fix: fix num_ln_in_parallel_attn attribute name typo in RWConfig (#2350)
Co-authored-by: Islam Almersawi <islam.almersawi@openinnovation.ai>
2024-08-07 19:45:23 -04:00
drbh 133015f408
fix: prefer original layernorm names for 180B (#2365) 2024-08-06 15:25:30 -04:00
drbh a64d407d64
fix: default num_ln_in_parallel_attn to one if not supplied (#2364) 2024-08-06 13:33:22 -04:00
drbh 29b8d19cdf
fix: return the out tensor rather then the functions return value (#2361) 2024-08-06 13:49:53 +02:00
drbh 215ed3ad52
fix: attempt forward on flash attn2 to check hardware support (#2335)
* fix: attempt forward on flash attn2 to check hardware support

* fix: warn window_size_left when using flash attn 1

* fix: prefer version check over test op and avoid window_size_left if not flash attn2

* fix: improve condtional and error message

* fix: update sliding window conditional

* fix: simplify changes and revert model changes

* fix: avoid changing conditional

* fix: typo tweak
2024-08-05 09:11:40 -04:00
Daniël de Kok 47447ef017
Unify attention output handling (#2343)
- Always return the hidden states.
- Create the output tensor inside the `attention` and `paged_attention`
  functions.

This removes the difference between how the output is handled between
attention (output parameter) and paged attention (return value). This
also removes the assumption that the attention implementation can
write to an output tensor (in preparation of FlashInfer).
2024-08-01 17:03:28 +02:00
Wang, Yi 9ab9937414
enable HuggingFaceM4/idefics-9b in intel gpu (#2338)
Signed-off-by: Wang, Yi A <yi.a.wang@intel.com>
2024-08-01 11:08:36 +02:00
drbh f7f61876cf
Pr 2290 ci run (#2329)
* MODEL_ID propagation fix

* fix: remove global model id

---------

Co-authored-by: root <root@tw031.pit.tensorwave.lan>
2024-07-31 10:27:15 -04:00
Daniël de Kok 34f7dcfd80
Handle GPTQ-Marlin loading in `GPTQMarlinWeightLoader` (#2300)
The `GPTWeightLoader` was structured like this in pseudocode:

if marlin:
  Set up tensors in a way that GPTQ-Marlin expects
else:
  Set up tensors in a way that ExLlama/GPTQ/AWQ expect

However, the GPT-Marlin implementation details should really be in the
`marlin` module. So move the former part out to a separate
`GPTQMarlinWeightsLoader`.
2024-07-31 13:08:41 +02:00
Daniël de Kok 53aec27328
server quantize: store quantizer config in standard format (#2299)
- Create `quantization_config` option in the model config.
- Don't store the quantizer config in tensors anymore.
2024-07-30 15:16:20 +02:00
Erik Kaunismäki 3d7f4f41bb
patch-error-on-invalid-grammar (#2282)
* quick fix

* allow silent failure

* explicit todo that this is only short term
2024-07-29 10:09:25 -04:00
Daniël de Kok 922732b255
Install Marlin from standalone package (#2320) 2024-07-29 15:37:10 +02:00
drbh bab02ff2bc
feat: add ruff and resolve issue (#2262)
* feat: add ruff and resolve issue

* fix: update client exports and adjust after rebase

* fix: adjust syntax to avoid circular import

* fix: adjust client ruff settings

* fix: lint and refactor import check and avoid model enum as global names

* fix: improve fbgemm_gpu check and lints

* fix: update lints

* fix: prefer comparing model enum over str

* fix: adjust lints and ignore specific rules

* fix: avoid unneeded quantize check
2024-07-26 10:29:09 -04:00
Daniël de Kok 4b49c50f4c
Support tied embeddings in 0.5B and 1.5B Qwen2 models (#2313) 2024-07-26 14:57:24 +02:00
Daniël de Kok 9256d7c38c
Some small fixes for the Torch 2.4.0 update (#2304)
* Fix GPTQ autotune data type to be compatible with Torch 2.4.0

* Update poetry lock file

* Fix small PaliGemma logprob differences after the torch update
2024-07-25 13:34:44 +02:00
drbh 5d85a958c9
fix: refactor adapter weight loading and mapping (#2193)
* fix: refactor adapter weight loading and mapping

* feat: enable lora load from directory

* fix: adjust launcher for local lora adapters

* feat: improve weight loading and add tests

* fix: improve logging and rebase syntax issue

* fix: impove adapter merge comments and remove unused conditional

* fix: improve get_model_with_lora_adapters naming

* fix: comment typo
2024-07-24 15:32:14 -04:00
Daniël de Kok 93d2b9fe9c
Split up `layers.marlin` into several files (#2292)
The marlin.py file was getting large, split it up.
2024-07-24 16:33:26 +02:00
Wang, Yi 8642250602
fix of use of unquantized weights in cohere GQA loading, also enable … (#2291)
fix of use of unquantized weights in cohere GQA loading, also enable the model in intel platform

Signed-off-by: Wang, Yi A <yi.a.wang@intel.com>
2024-07-24 10:44:02 +02:00
Wang, Yi 5ad39dd3c3
fix crash in multi-modal (#2245)
* fix crash in multi-modal

Signed-off-by: Wang, Yi A <yi.a.wang@intel.com>

* update according to review comment

Signed-off-by: Wang, Yi A <yi.a.wang@intel.com>

* fix llava_next regression in latest main

Signed-off-by: Wang, Yi A <yi.a.wang@intel.com>

---------

Signed-off-by: Wang, Yi A <yi.a.wang@intel.com>
2024-07-24 10:39:08 +02:00
Daniël de Kok 4ab4173767
Add support for Llama 3 rotary embeddings (#2286)
* Add support for Llama 3 rotary embeddings

* Update transformers to 4.43
2024-07-23 17:18:54 +02:00
shaltielshmid 3961e32390
[WIP] Add support for Mistral-Nemo by supporting head_dim through config (#2254)
* Support passing head_dim through config

* Using `head_dim` as a fallback is necessary since it's a non standard
key in mistralConfig (as defined in transformers).

* Shorter diff.

---------

Co-authored-by: Nicolas Patry <patry.nicolas@protonmail.com>
2024-07-23 15:00:07 +02:00
Daniël de Kok 9935720c87
Add support for repacking AWQ weights for GPTQ-Marlin (#2278)
* Add support for repacking AWQ weights for GPTQ-Marlin

So far we couldn't support AWQ because virtually all AWQ models use
symmetric quantization, which GPTQ-Marlin did not suppors. GPTQ-Marlin
has recently added support AWQ repacking and AWQ asymmetric quantization
(zero_point=True).

This change updates all GPTQ-Marlin kernels from upstream and wires up
AWQ support. For now enabling AWQ using Marlin requires running TGI with
`--quantize gptq`.

* Enable Marlin for supported AWQ configurations by default

This makes the AWQ -> GPTQ repack test redundant, since we are now
testing this with the regular AWQ test.
2024-07-23 13:08:20 +02:00
OlivierDehaene 5fca30ee15
fix(l4): fix fp8 logic on l4 (#2277)
* fix(l4): fix fp8 logic on l4

* also quant weights with single scale

* use marlin even on 89
2024-07-23 11:24:29 +02:00
Nicolas Patry abc32537ea
Fixing mistral nemo. (#2276) 2024-07-23 11:16:03 +02:00