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[Inference Client] Factorize inference payload build #2601
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The docs for this PR live here. All of your documentation changes will be reflected on that endpoint. The docs are available until 30 days after the last update. |
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Thanks @hanouticelina! I'm sorry I realized to late that I commented on both _client.py
and _async_client.py
but all comments applied to both (since it's autogenerated). My main concern is about determining if a task expects binaries as input or not (see below). Let me know if you have other ideas on how to fix it. I'm half-happy about the suggested solution of expect_binary: bool
😄
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def is_raw_content(inputs: Union[str, Dict[str, Any], ContentT]) -> bool: | ||
return isinstance(inputs, (bytes, Path)) or ( | ||
isinstance(inputs, str) and inputs.startswith(("http://", "https://")) |
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This is an annoying part 😕 Depending on the context, inputs.startswith(("http://", "https://"))
should lead to different behavior:
- in
image_to_text
, a url as input must be passed aspost(data=...)
so that the url is loaded and sent to the inference server - in
feature_extraction
, a url as input should be passed aspost(payload={"inputs": ...}
=> a URL is a special case of string input, but still a valid one
Since _prepare_payload
is agnostic of the task, it can't know in which case we are.
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What do you think of modifying the method signature to
def _prepare_payload(
inputs: Union[str, Dict[str, Any], ContentT],
parameters: Optional[Dict[str, Any]],
expect_binary: bool,
)
?
For tasks that expect a binary input (image_to_*
, audio_to_*
), you pass _prepare_payload(..., expect_binary=True)
.
This way you could have a logic like this:
is_binary = isinstance(inputs, (bytes, Path))
if expect_binary and not is_binary and not isinstance(inputs, str):
raise ValueError(...) # should be a binary or at least a string (local path or url)
if expect_binary and not has_parameter:
return _InferenceInputs(raw_data=inputs)
if not expect_binary and is_binary:
raise ValueError(...) # cannot be a binary
# else set as "inputs" in a json payload
...
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hum yes you're right! actually I did not update image_to_text
as we don't have any parameters or logic to either send a json payload or a raw data:
response = self.post(data=image, model=model, task="image-to-text")
output = ImageToTextOutput.parse_obj(response)
return output[0] if isinstance(output, list) else output
but of course your point is totally valid.
Having a flag seems to cover all the cases. In the beginning I though about having a Input type enum and add a input_type
arg to _prepare_payload()
but it's simpler to just use a expect_binary
flag. I don't have a better solution either for now 😕
I will fix the suggestions and I will get back to this :)
thanks @Wauplin for the review! I addressed your suggestions and I ended up adding an |
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Looking good! I have a question related to question answering and then we should be good to merge
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Been a bit picky on corner cases here but I do think it's worth it 😇
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Thanks @hanouticelina! That should make the inference client more reliable on corner cases in the future. And reduce the amount of duplicate code 😄
thanks @Wauplin! I think we're good to merge this one |
This PR is a first attempt to factorize the payload build in multiple
InferenceClient
methods. In fact, there's some repetitive logic across several methods for handling inputs and parameters, so here we introduce a new (private) helper function to factorize this logic.Key changes
_InferenceInputs
object containing the json payload and raw data if any. (I don't have a strong opinion on this, we can also return a Tuple instead).InferenceClient
andAsyncInferenceClient
.