litellm/litellm/llms/petals.py
Krish Dholakia d57be47b0f
Litellm ruff linting enforcement (#5992)
* ci(config.yml): add a 'check_code_quality' step

Addresses https://github.com/BerriAI/litellm/issues/5991

* ci(config.yml): check why circle ci doesn't pick up this test

* ci(config.yml): fix to run 'check_code_quality' tests

* fix(__init__.py): fix unprotected import

* fix(__init__.py): don't remove unused imports

* build(ruff.toml): update ruff.toml to ignore unused imports

* fix: fix: ruff + pyright - fix linting + type-checking errors

* fix: fix linting errors

* fix(lago.py): fix module init error

* fix: fix linting errors

* ci(config.yml): cd into correct dir for checks

* fix(proxy_server.py): fix linting error

* fix(utils.py): fix bare except

causes ruff linting errors

* fix: ruff - fix remaining linting errors

* fix(clickhouse.py): use standard logging object

* fix(__init__.py): fix unprotected import

* fix: ruff - fix linting errors

* fix: fix linting errors

* ci(config.yml): cleanup code qa step (formatting handled in local_testing)

* fix(_health_endpoints.py): fix ruff linting errors

* ci(config.yml): just use ruff in check_code_quality pipeline for now

* build(custom_guardrail.py): include missing file

* style(embedding_handler.py): fix ruff check
2024-10-01 19:44:20 -04:00

217 lines
6.9 KiB
Python

import json
import os
import time
import types
from enum import Enum
from typing import Callable, Optional
import requests # type: ignore
import litellm
from litellm.utils import ModelResponse, Usage
from .prompt_templates.factory import custom_prompt, prompt_factory
class PetalsError(Exception):
def __init__(self, status_code, message):
self.status_code = status_code
self.message = message
super().__init__(
self.message
) # Call the base class constructor with the parameters it needs
class PetalsConfig:
"""
Reference: https://github.com/petals-infra/chat.petals.dev#post-apiv1generate
The `PetalsConfig` class encapsulates the configuration for the Petals API. The properties of this class are described below:
- `max_length` (integer): This represents the maximum length of the generated text (including the prefix) in tokens.
- `max_new_tokens` (integer): This represents the maximum number of newly generated tokens (excluding the prefix).
The generation parameters are compatible with `.generate()` from Hugging Face's Transformers library:
- `do_sample` (boolean, optional): If set to 0 (default), the API runs greedy generation. If set to 1, the API performs sampling using the parameters below:
- `temperature` (float, optional): This value sets the temperature for sampling.
- `top_k` (integer, optional): This value sets the limit for top-k sampling.
- `top_p` (float, optional): This value sets the limit for top-p (nucleus) sampling.
- `repetition_penalty` (float, optional): This helps apply the repetition penalty during text generation, as discussed in this paper.
"""
max_length: Optional[int] = None
max_new_tokens: Optional[int] = (
litellm.max_tokens
) # petals requires max tokens to be set
do_sample: Optional[bool] = None
temperature: Optional[float] = None
top_k: Optional[int] = None
top_p: Optional[float] = None
repetition_penalty: Optional[float] = None
def __init__(
self,
max_length: Optional[int] = None,
max_new_tokens: Optional[
int
] = litellm.max_tokens, # petals requires max tokens to be set
do_sample: Optional[bool] = None,
temperature: Optional[float] = None,
top_k: Optional[int] = None,
top_p: Optional[float] = None,
repetition_penalty: Optional[float] = None,
) -> None:
locals_ = locals()
for key, value in locals_.items():
if key != "self" and value is not None:
setattr(self.__class__, key, value)
@classmethod
def get_config(cls):
return {
k: v
for k, v in cls.__dict__.items()
if not k.startswith("__")
and not isinstance(
v,
(
types.FunctionType,
types.BuiltinFunctionType,
classmethod,
staticmethod,
),
)
and v is not None
}
def completion(
model: str,
messages: list,
api_base: Optional[str],
model_response: ModelResponse,
print_verbose: Callable,
encoding,
logging_obj,
optional_params: dict,
stream=False,
litellm_params=None,
logger_fn=None,
):
## Load Config
config = litellm.PetalsConfig.get_config()
for k, v in config.items():
if (
k not in optional_params
): # completion(top_k=3) > petals_config(top_k=3) <- allows for dynamic variables to be passed in
optional_params[k] = v
if model in litellm.custom_prompt_dict:
# check if the model has a registered custom prompt
model_prompt_details = litellm.custom_prompt_dict[model]
prompt = custom_prompt(
role_dict=model_prompt_details["roles"],
initial_prompt_value=model_prompt_details["initial_prompt_value"],
final_prompt_value=model_prompt_details["final_prompt_value"],
messages=messages,
)
else:
prompt = prompt_factory(model=model, messages=messages)
output_text: Optional[str] = None
if api_base:
## LOGGING
logging_obj.pre_call(
input=prompt,
api_key="",
additional_args={
"complete_input_dict": optional_params,
"api_base": api_base,
},
)
data = {"model": model, "inputs": prompt, **optional_params}
## COMPLETION CALL
response = requests.post(api_base, data=data)
## LOGGING
logging_obj.post_call(
input=prompt,
api_key="",
original_response=response.text,
additional_args={"complete_input_dict": optional_params},
)
## RESPONSE OBJECT
try:
output_text = response.json()["outputs"]
except Exception as e:
PetalsError(status_code=response.status_code, message=str(e))
else:
try:
import torch
from petals import AutoDistributedModelForCausalLM # type: ignore
from transformers import AutoTokenizer
except Exception:
raise Exception(
"Importing torch, transformers, petals failed\nTry pip installing petals \npip install git+https://github.com/bigscience-workshop/petals"
)
model = model
tokenizer = AutoTokenizer.from_pretrained(
model, use_fast=False, add_bos_token=False
)
model_obj = AutoDistributedModelForCausalLM.from_pretrained(model)
## LOGGING
logging_obj.pre_call(
input=prompt,
api_key="",
additional_args={"complete_input_dict": optional_params},
)
## COMPLETION CALL
inputs = tokenizer(prompt, return_tensors="pt")["input_ids"]
# optional params: max_new_tokens=1,temperature=0.9, top_p=0.6
outputs = model_obj.generate(inputs, **optional_params)
## LOGGING
logging_obj.post_call(
input=prompt,
api_key="",
original_response=outputs,
additional_args={"complete_input_dict": optional_params},
)
## RESPONSE OBJECT
output_text = tokenizer.decode(outputs[0])
if output_text is not None and len(output_text) > 0:
model_response.choices[0].message.content = output_text # type: ignore
prompt_tokens = len(encoding.encode(prompt))
completion_tokens = len(
encoding.encode(model_response["choices"][0]["message"].get("content"))
)
model_response.created = int(time.time())
model_response.model = model
usage = Usage(
prompt_tokens=prompt_tokens,
completion_tokens=completion_tokens,
total_tokens=prompt_tokens + completion_tokens,
)
setattr(model_response, "usage", usage)
return model_response
def embedding():
# logic for parsing in - calling - parsing out model embedding calls
pass