Commit graph

397 commits

Author SHA1 Message Date
Ashwin Bharambe
09b793c4d6 Fix fp8 implementation which had bit-rotten a bit
I only tested with "on-the-fly" bf16 -> fp8 conversion, not the "load
from fp8" codepath.

YAML I tested with:

```
providers:
  - provider_id: quantized
    provider_type: meta-reference-quantized
    config:
      model: Llama3.1-8B-Instruct
      quantization:
        type: fp8
```
2024-10-15 13:57:01 -07:00
Yuan Tang
80ada04f76
Remove request arg from chat completion response processing (#240)
Signed-off-by: Yuan Tang <terrytangyuan@gmail.com>
2024-10-15 13:03:17 -07:00
Xi Yan
209cd3d35e Bump version to 0.0.42 2024-10-14 11:13:04 -07:00
Yuan Tang
a2b87ed0cb
Switch to pre-commit/action (#239) 2024-10-11 11:09:11 -07:00
Yuan Tang
05282d1234
Enable pre-commit on main branch (#237) 2024-10-11 10:03:59 -07:00
Yuan Tang
2128e61da2
Fix incorrect completion() signature for Databricks provider (#236) 2024-10-11 08:47:57 -07:00
Dalton Flanagan
9fbe8852aa
Add Swift Package Index badge 2024-10-10 23:39:25 -04:00
Xi Yan
ca29980c6b fix agents context retriever 2024-10-10 20:17:29 -07:00
Ashwin Bharambe
1ff0476002 Split off meta-reference-quantized provider 2024-10-10 16:03:19 -07:00
Xi Yan
7ff5800dea generate openapi 2024-10-10 15:30:34 -07:00
Dalton Flanagan
a3e65d58a9
Add logo 2024-10-10 15:04:21 -04:00
Russell Bryant
eba9d1ea14
ci: Run pre-commit checks in CI (#176)
Run the pre-commit checks in a github workflow to validate that a PR
or a direct push to the repo does not introduce new errors.
2024-10-10 11:21:59 -07:00
Ashwin Bharambe
89d24a07f0 Bump version to 0.0.41 2024-10-10 10:27:03 -07:00
Ashwin Bharambe
6bb57e72a7
Remove "routing_table" and "routing_key" concepts for the user (#201)
This PR makes several core changes to the developer experience surrounding Llama Stack.

Background: PR #92 introduced the notion of "routing" to the Llama Stack. It introduces three object types: (1) models, (2) shields and (3) memory banks. Each of these objects can be associated with a distinct provider. So you can get model A to be inferenced locally while model B, C can be inference remotely (e.g.)

However, this had a few drawbacks:

you could not address the provider instances -- i.e., if you configured "meta-reference" with a given model, you could not assign an identifier to this instance which you could re-use later.
the above meant that you could not register a "routing_key" (e.g. model) dynamically and say "please use this existing provider I have already configured" for a new model.
the terms "routing_table" and "routing_key" were exposed directly to the user. in my view, this is way too much overhead for a new user (which almost everyone is.) people come to the stack wanting to do ML and encounter a completely unexpected term.
What this PR does: This PR structures the run config with only a single prominent key:

- providers
Providers are instances of configured provider types. Here's an example which shows two instances of the remote::tgi provider which are serving two different models.

providers:
  inference:
  - provider_id: foo
    provider_type: remote::tgi
    config: { ... }
  - provider_id: bar
    provider_type: remote::tgi
    config: { ... }
Secondly, the PR adds dynamic registration of { models | shields | memory_banks } to the API surface. The distribution still acts like a "routing table" (as previously) except that it asks the backing providers for a listing of these objects. For example it asks a TGI or Ollama inference adapter what models it is serving. Only the models that are being actually served can be requested by the user for inference. Otherwise, the Stack server will throw an error.

When dynamically registering these objects, you can use the provider IDs shown above. Info about providers can be obtained using the Api.inspect set of endpoints (/providers, /routes, etc.)

The above examples shows the correspondence between inference providers and models registry items. Things work similarly for the safety <=> shields and memory <=> memory_banks pairs.

Registry: This PR also makes it so that Providers need to implement additional methods for registering and listing objects. For example, each Inference provider is now expected to implement the ModelsProtocolPrivate protocol (naming is not great!) which consists of two methods

register_model
list_models
The goal is to inform the provider that a certain model needs to be supported so the provider can make any relevant backend changes if needed (or throw an error if the model cannot be supported.)

There are many other cleanups included some of which are detailed in a follow-up comment.
2024-10-10 10:24:13 -07:00
Dalton Flanagan
8c3010553f
Fix agents path in generate.py 2024-10-10 11:41:03 -04:00
Dalton Flanagan
7a8aa775e5
JSON serialization for parallel processing queue (#232)
* send/recv pydantic json over socket

* fixup

* address feedback

* bidirectional wrapper

* second round of feedback
2024-10-09 17:24:12 -04:00
kebbbnnn
0f66ae0f61
Add function for stopping inference (#224) 2024-10-09 10:50:19 -04:00
Xi Yan
6b094b72d3
Update cli_reference.md 2024-10-08 15:32:06 -07:00
Xi Yan
ce70d21f65
Add files via upload 2024-10-08 15:29:19 -07:00
Dalton Flanagan
2d4f7d8acf
Create SECURITY.md 2024-10-08 13:30:40 -04:00
Yuan Tang
48d0d2001e
Add classifiers in setup.py (#217)
* Add classifiers in setup.py

* Update setup.py

* Update setup.py
2024-10-08 06:55:16 -07:00
Xi Yan
4d5f7459aa
[bugfix] Fix logprobs on meta-reference impl (#213)
* fix log probs

* add back LogProbsConfig

* error handling

* bugfix
2024-10-07 19:42:39 -07:00
Yuan Tang
e4ae09d090
Add .idea to .gitignore (#216)
Signed-off-by: Yuan Tang <terrytangyuan@gmail.com>
2024-10-07 19:38:43 -07:00
Xi Yan
16ba0fa06f
Update README.md 2024-10-07 11:24:27 -07:00
Russell Bryant
996efa9b42
README.md: Add vLLM to providers table (#207)
Signed-off-by: Russell Bryant <russell.bryant@gmail.com>
2024-10-07 10:26:52 -07:00
Xi Yan
2366e18873
refactor docs (#209) 2024-10-07 10:21:26 -07:00
Mindaugas
53d440e952
Fix ValueError in case chunks are empty (#206) 2024-10-07 08:55:06 -07:00
Russell Bryant
a4e775c465
download: improve help text (#204) 2024-10-07 08:40:04 -07:00
Ashwin Bharambe
4263764493 Fix adapter_id -> adapter_type for Weaviate 2024-10-07 06:46:32 -07:00
Zain Hasan
f4f7618120
add Weaviate memory adapter (#95) 2024-10-06 22:21:50 -07:00
Xi Yan
27587f32bc fix db path 2024-10-06 11:46:08 -07:00
Xi Yan
cfe3ad33b3 fix db path 2024-10-06 11:45:35 -07:00
Prithu Dasgupta
7abab7604b
add databricks provider (#83)
* add databricks provider

* update provider and test
2024-10-05 23:35:54 -07:00
Russell Bryant
f73e247ba1
Inline vLLM inference provider (#181)
This is just like `local` using `meta-reference` for everything except
it uses `vllm` for inference.

Docker works, but So far, `conda` is a bit easier to use with the vllm
provider. The default container base image does not include all the
necessary libraries for all vllm features. More cuda dependencies are
necessary.

I started changing this base image used in this template, but it also
required changes to the Dockerfile, so it was getting too involved to
include in the first PR.

Working so far:

* `python -m llama_stack.apis.inference.client localhost 5000 --model Llama3.2-1B-Instruct --stream True`
* `python -m llama_stack.apis.inference.client localhost 5000 --model Llama3.2-1B-Instruct --stream False`

Example:

```
$ python -m llama_stack.apis.inference.client localhost 5000 --model Llama3.2-1B-Instruct --stream False
User>hello world, write me a 2 sentence poem about the moon
Assistant>
The moon glows bright in the midnight sky
A beacon of light,
```

I have only tested these models:

* `Llama3.1-8B-Instruct` - across 4 GPUs (tensor_parallel_size = 4)
* `Llama3.2-1B-Instruct` - on a single GPU (tensor_parallel_size = 1)
2024-10-05 23:34:16 -07:00
Xi Yan
29138a5167
Update getting_started.md 2024-10-05 12:28:02 -07:00
Xi Yan
6d4013ac99
Update getting_started.md 2024-10-05 12:14:59 -07:00
Mindaugas
9d16129603
Add 'url' property to Redis KV config (#192) 2024-10-05 11:26:26 -07:00
Ashwin Bharambe
bfb0e92034 Bump version to 0.0.40 2024-10-04 09:33:43 -07:00
Ashwin Bharambe
dc75aab547 Add setuptools dependency 2024-10-04 09:30:54 -07:00
Dalton Flanagan
441052b0fd avoid jq since non-standard on macOS 2024-10-04 10:11:43 -04:00
Dalton Flanagan
9bf2e354ae CLI now requires jq 2024-10-04 10:05:59 -04:00
raghotham
00ed9a410b
Update getting_started.md
update discord invite link
2024-10-03 23:28:43 -07:00
AshleyT3
734f59d3b8
Check that the model is found before use. (#182) 2024-10-03 23:24:47 -07:00
Ashwin Bharambe
f913b57397 fix fp8 imports 2024-10-03 14:40:21 -07:00
Ashwin Bharambe
8d41e6caa9 Bump version to 0.0.39 2024-10-03 11:31:03 -07:00
Ashwin Bharambe
7f49315822 Kill a derpy import 2024-10-03 11:25:58 -07:00
Xi Yan
62d266f018
[CLI] avoid configure twice (#171)
* avoid configure twice

* cleanup tmp config

* update output msg

* address comment

* update msg

* script update
2024-10-03 11:20:54 -07:00
Russell Bryant
06db9213b1
inference: Add model option to client (#170)
I was running this client for testing purposes and being able to
specify which model to use is a convenient addition. This change makes
that possible.
2024-10-03 11:18:57 -07:00
Ashwin Bharambe
210b71b0ba
fix prompt guard (#177)
Several other fixes to configure. Add support for 1b/3b models in ollama.
2024-10-03 11:07:53 -07:00
Xi Yan
b9b1e8b08b
[bugfix] conda path lookup (#179)
* fix conda lookup

* comments
2024-10-03 10:45:16 -07:00