Enable vision models for (Together, Fireworks, Meta-Reference, Ollama) (#376)

* Enable vision models for Together and Fireworks

* Works with ollama 0.4.0 pre-release with the vision model

* localize media for meta_reference inference

* Fix
This commit is contained in:
Ashwin Bharambe 2024-11-05 16:22:33 -08:00 committed by GitHub
parent db30809141
commit cde9bc1388
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GPG key ID: B5690EEEBB952194
11 changed files with 465 additions and 81 deletions

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@ -29,6 +29,8 @@ from llama_stack.providers.utils.inference.openai_compat import (
from llama_stack.providers.utils.inference.prompt_adapter import (
chat_completion_request_to_prompt,
completion_request_to_prompt,
convert_image_media_to_url,
request_has_media,
)
OLLAMA_SUPPORTED_MODELS = {
@ -38,6 +40,7 @@ OLLAMA_SUPPORTED_MODELS = {
"Llama3.2-3B-Instruct": "llama3.2:3b-instruct-fp16",
"Llama-Guard-3-8B": "llama-guard3:8b",
"Llama-Guard-3-1B": "llama-guard3:1b",
"Llama3.2-11B-Vision-Instruct": "x/llama3.2-vision:11b-instruct-fp16",
}
@ -109,22 +112,8 @@ class OllamaInferenceAdapter(Inference, ModelsProtocolPrivate):
else:
return await self._nonstream_completion(request)
def _get_params_for_completion(self, request: CompletionRequest) -> dict:
sampling_options = get_sampling_options(request.sampling_params)
# This is needed since the Ollama API expects num_predict to be set
# for early truncation instead of max_tokens.
if sampling_options["max_tokens"] is not None:
sampling_options["num_predict"] = sampling_options["max_tokens"]
return {
"model": OLLAMA_SUPPORTED_MODELS[request.model],
"prompt": completion_request_to_prompt(request, self.formatter),
"options": sampling_options,
"raw": True,
"stream": request.stream,
}
async def _stream_completion(self, request: CompletionRequest) -> AsyncGenerator:
params = self._get_params_for_completion(request)
params = await self._get_params(request)
async def _generate_and_convert_to_openai_compat():
s = await self.client.generate(**params)
@ -142,7 +131,7 @@ class OllamaInferenceAdapter(Inference, ModelsProtocolPrivate):
yield chunk
async def _nonstream_completion(self, request: CompletionRequest) -> AsyncGenerator:
params = self._get_params_for_completion(request)
params = await self._get_params(request)
r = await self.client.generate(**params)
assert isinstance(r, dict)
@ -183,26 +172,66 @@ class OllamaInferenceAdapter(Inference, ModelsProtocolPrivate):
else:
return await self._nonstream_chat_completion(request)
def _get_params(self, request: ChatCompletionRequest) -> dict:
async def _get_params(
self, request: Union[ChatCompletionRequest, CompletionRequest]
) -> dict:
sampling_options = get_sampling_options(request.sampling_params)
# This is needed since the Ollama API expects num_predict to be set
# for early truncation instead of max_tokens.
if sampling_options.get("max_tokens") is not None:
sampling_options["num_predict"] = sampling_options["max_tokens"]
input_dict = {}
media_present = request_has_media(request)
if isinstance(request, ChatCompletionRequest):
if media_present:
contents = [
await convert_message_to_dict_for_ollama(m)
for m in request.messages
]
# flatten the list of lists
input_dict["messages"] = [
item for sublist in contents for item in sublist
]
else:
input_dict["raw"] = True
input_dict["prompt"] = chat_completion_request_to_prompt(
request, self.formatter
)
else:
assert (
not media_present
), "Ollama does not support media for Completion requests"
input_dict["prompt"] = completion_request_to_prompt(request, self.formatter)
input_dict["raw"] = True
return {
"model": OLLAMA_SUPPORTED_MODELS[request.model],
"prompt": chat_completion_request_to_prompt(request, self.formatter),
"options": get_sampling_options(request.sampling_params),
"raw": True,
**input_dict,
"options": sampling_options,
"stream": request.stream,
}
async def _nonstream_chat_completion(
self, request: ChatCompletionRequest
) -> ChatCompletionResponse:
params = self._get_params(request)
r = await self.client.generate(**params)
params = await self._get_params(request)
if "messages" in params:
r = await self.client.chat(**params)
else:
r = await self.client.generate(**params)
assert isinstance(r, dict)
choice = OpenAICompatCompletionChoice(
finish_reason=r["done_reason"] if r["done"] else None,
text=r["response"],
)
if "message" in r:
choice = OpenAICompatCompletionChoice(
finish_reason=r["done_reason"] if r["done"] else None,
text=r["message"]["content"],
)
else:
choice = OpenAICompatCompletionChoice(
finish_reason=r["done_reason"] if r["done"] else None,
text=r["response"],
)
response = OpenAICompatCompletionResponse(
choices=[choice],
)
@ -211,15 +240,24 @@ class OllamaInferenceAdapter(Inference, ModelsProtocolPrivate):
async def _stream_chat_completion(
self, request: ChatCompletionRequest
) -> AsyncGenerator:
params = self._get_params(request)
params = await self._get_params(request)
async def _generate_and_convert_to_openai_compat():
s = await self.client.generate(**params)
if "messages" in params:
s = await self.client.chat(**params)
else:
s = await self.client.generate(**params)
async for chunk in s:
choice = OpenAICompatCompletionChoice(
finish_reason=chunk["done_reason"] if chunk["done"] else None,
text=chunk["response"],
)
if "message" in chunk:
choice = OpenAICompatCompletionChoice(
finish_reason=chunk["done_reason"] if chunk["done"] else None,
text=chunk["message"]["content"],
)
else:
choice = OpenAICompatCompletionChoice(
finish_reason=chunk["done_reason"] if chunk["done"] else None,
text=chunk["response"],
)
yield OpenAICompatCompletionResponse(
choices=[choice],
)
@ -236,3 +274,26 @@ class OllamaInferenceAdapter(Inference, ModelsProtocolPrivate):
contents: List[InterleavedTextMedia],
) -> EmbeddingsResponse:
raise NotImplementedError()
async def convert_message_to_dict_for_ollama(message: Message) -> List[dict]:
async def _convert_content(content) -> dict:
if isinstance(content, ImageMedia):
return {
"role": message.role,
"images": [
await convert_image_media_to_url(
content, download=True, include_format=False
)
],
}
else:
return {
"role": message.role,
"content": content,
}
if isinstance(message.content, list):
return [await _convert_content(c) for c in message.content]
else:
return [await _convert_content(message.content)]