data / inference.py
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import abc
import os
from dataclasses import field
from typing import Any, Dict, List, Literal, Optional, Union
from tqdm import tqdm
from .artifact import Artifact
from .operator import PackageRequirementsMixin
class InferenceEngine(abc.ABC, Artifact):
"""Abstract base class for inference."""
@abc.abstractmethod
def _infer(self, dataset):
"""Perform inference on the input dataset."""
pass
def infer(self, dataset) -> str:
"""Verifies instances of a dataset and performs inference."""
[self.verify_instance(instance) for instance in dataset]
return self._infer(dataset)
class LogProbInferenceEngine(abc.ABC, Artifact):
"""Abstract base class for inference with log probs."""
@abc.abstractmethod
def _infer_log_probs(self, dataset):
"""Perform inference on the input dataset that returns log probs."""
pass
def infer_log_probs(self, dataset) -> List[Dict]:
"""Verifies instances of a dataset and performs inference that returns log probabilities of top tokens.
For each instance , returns a list of top tokens per position.
[ "top_tokens": [ { "text": ..., "logprob": ...} , ... ]
"""
[self.verify_instance(instance) for instance in dataset]
return self._infer_log_probs(dataset)
class HFPipelineBasedInferenceEngine(InferenceEngine, PackageRequirementsMixin):
model_name: str
max_new_tokens: int
use_fp16: bool = True
lazy_load: bool = False
_requirements_list = {
"transformers": "Install huggingface package using 'pip install --upgrade transformers"
}
def _prepare_pipeline(self):
import torch
from transformers import AutoConfig, pipeline
model_args: Dict[str, Any] = (
{"torch_dtype": torch.float16} if self.use_fp16 else {}
)
model_args.update({"max_new_tokens": self.max_new_tokens})
device = torch.device(
"mps"
if torch.backends.mps.is_available()
else 0
if torch.cuda.is_available()
else "cpu"
)
# We do this, because in some cases, using device:auto will offload some weights to the cpu
# (even though the model might *just* fit to a single gpu), even if there is a gpu available, and this will
# cause an error because the data is always on the gpu
if torch.cuda.device_count() > 1:
assert device == torch.device(0)
model_args.update({"device_map": "auto"})
else:
model_args.update({"device": device})
task = (
"text2text-generation"
if AutoConfig.from_pretrained(
self.model_name, trust_remote_code=True
).is_encoder_decoder
else "text-generation"
)
if task == "text-generation":
model_args.update({"return_full_text": False})
self.model = pipeline(
model=self.model_name, trust_remote_code=True, **model_args
)
def prepare(self):
if not self.lazy_load:
self._prepare_pipeline()
def is_pipeline_initialized(self):
return hasattr(self, "model") and self.model is not None
def _infer(self, dataset):
if not self.is_pipeline_initialized():
self._prepare_pipeline()
outputs = []
for output in self.model([instance["source"] for instance in dataset]):
if isinstance(output, list):
output = output[0]
outputs.append(output["generated_text"])
return outputs
class MockInferenceEngine(InferenceEngine):
model_name: str
def prepare(self):
return
def _infer(self, dataset):
return ["[[10]]" for instance in dataset]
class IbmGenAiInferenceEngineParams(Artifact):
decoding_method: Optional[Literal["greedy", "sample"]] = None
max_new_tokens: Optional[int] = None
min_new_tokens: Optional[int] = None
random_seed: Optional[int] = None
repetition_penalty: Optional[float] = None
stop_sequences: Optional[List[str]] = None
temperature: Optional[float] = None
top_k: Optional[int] = None
top_p: Optional[float] = None
typical_p: Optional[float] = None
class IbmGenAiInferenceEngine(InferenceEngine, PackageRequirementsMixin):
label: str = "ibm_genai"
model_name: str
parameters: IbmGenAiInferenceEngineParams = field(
default_factory=IbmGenAiInferenceEngineParams
)
_requirements_list = {
"genai": "Install ibm-genai package using 'pip install --upgrade ibm-generative-ai"
}
data_classification_policy = ["public", "proprietary"]
def prepare(self):
from genai import Client, Credentials
api_key_env_var_name = "GENAI_KEY"
api_key = os.environ.get(api_key_env_var_name)
assert api_key is not None, (
f"Error while trying to run IbmGenAiInferenceEngine."
f" Please set the environment param '{api_key_env_var_name}'."
)
credentials = Credentials(api_key=api_key)
self.client = Client(credentials=credentials)
def _infer(self, dataset):
from genai.schema import TextGenerationParameters
genai_params = TextGenerationParameters(
max_new_tokens=self.parameters.max_new_tokens,
min_new_tokens=self.parameters.min_new_tokens,
random_seed=self.parameters.random_seed,
repetition_penalty=self.parameters.repetition_penalty,
stop_sequences=self.parameters.stop_sequences,
temperature=self.parameters.temperature,
top_p=self.parameters.top_p,
top_k=self.parameters.top_k,
typical_p=self.parameters.typical_p,
decoding_method=self.parameters.decoding_method,
)
return [
response.results[0].generated_text
for response in self.client.text.generation.create(
model_id=self.model_name,
inputs=[instance["source"] for instance in dataset],
parameters=genai_params,
)
]
class OpenAiInferenceEngineParams(Artifact):
frequency_penalty: Optional[float] = None
presence_penalty: Optional[float] = None
max_tokens: Optional[int] = None
seed: Optional[int] = None
stop: Union[Optional[str], List[str]] = None
temperature: Optional[float] = None
top_p: Optional[float] = None
top_logprobs: Optional[int] = 20
class OpenAiInferenceEngine(
InferenceEngine, LogProbInferenceEngine, PackageRequirementsMixin
):
label: str = "openai"
model_name: str
parameters: OpenAiInferenceEngineParams = field(
default_factory=OpenAiInferenceEngineParams
)
_requirements_list = {
"openai": "Install openai package using 'pip install --upgrade openai"
}
data_classification_policy = ["public"]
def prepare(self):
from openai import OpenAI
api_key_env_var_name = "OPENAI_API_KEY"
api_key = os.environ.get(api_key_env_var_name)
assert api_key is not None, (
f"Error while trying to run OpenAiInferenceEngine."
f" Please set the environment param '{api_key_env_var_name}'."
)
self.client = OpenAI(api_key=api_key)
def _infer(self, dataset):
outputs = []
for instance in tqdm(dataset, desc="Inferring with openAI API"):
response = self.client.chat.completions.create(
messages=[
# {
# "role": "system",
# "content": self.system_prompt,
# },
{
"role": "user",
"content": instance["source"],
}
],
model=self.model_name,
frequency_penalty=self.parameters.frequency_penalty,
presence_penalty=self.parameters.presence_penalty,
max_tokens=self.parameters.max_tokens,
seed=self.parameters.seed,
stop=self.parameters.stop,
temperature=self.parameters.temperature,
top_p=self.parameters.top_p,
)
output = response.choices[0].message.content
outputs.append(output)
return outputs
def _infer_log_probs(self, dataset):
outputs = []
for instance in tqdm(dataset, desc="Inferring with openAI API"):
response = self.client.chat.completions.create(
messages=[
# {
# "role": "system",
# "content": self.system_prompt,
# },
{
"role": "user",
"content": instance["source"],
}
],
model=self.model_name,
frequency_penalty=self.parameters.frequency_penalty,
presence_penalty=self.parameters.presence_penalty,
max_tokens=self.parameters.max_tokens,
seed=self.parameters.seed,
stop=self.parameters.stop,
temperature=self.parameters.temperature,
top_p=self.parameters.top_p,
logprobs=True,
top_logprobs=self.parameters.top_logprobs,
)
top_logprobs_response = response.choices[0].logprobs.content
output = [
{
"top_tokens": [
{"text": obj.token, "logprob": obj.logprob}
for obj in generated_token.top_logprobs
]
}
for generated_token in top_logprobs_response
]
outputs.append(output)
return outputs
class WMLInferenceEngineParams(Artifact):
decoding_method: Optional[Literal["greedy", "sample"]] = None
length_penalty: Optional[Dict[str, Union[int, float]]] = None
temperature: Optional[float] = None
top_p: Optional[float] = None
top_k: Optional[int] = None
random_seed: Optional[int] = None
repetition_penalty: Optional[float] = None
min_new_tokens: Optional[int] = None
max_new_tokens: Optional[int] = None
stop_sequences: Optional[List[str]] = None
time_limit: Optional[int] = None
truncate_input_tokens: Optional[int] = None
prompt_variables: Optional[Dict[str, Any]] = None
return_options: Optional[Dict[str, bool]] = None
def initialize_wml_parameters(self) -> Dict[str, Any]:
from ibm_watsonx_ai.metanames import GenTextParamsMetaNames
return {
param_name.upper(): param_value
for param_name, param_value in self.to_dict().items()
if param_value and param_name.upper() in GenTextParamsMetaNames().get()
}
class WMLInferenceEngine(InferenceEngine, PackageRequirementsMixin):
"""Runs inference using ibm-watsonx-ai.
Attributes:
client: By default, it is created by a class instance but can be directly
provided instead as an instance of 'ibm_watsonx_ai.client.APIClient'.
credentials: By default, it is created by a class instance which tries to retrieve
proper environment variables ("WML_URL", "WML_PROJECT_ID", "WML_APIKEY").
However, either a dictionary with the following keys: "url", "apikey",
"project_id", or an instance of 'ibm_watsonx_ai.credentials.Credentials'
can be directly provided instead.
model_name (str, optional): ID of a model to be used for inference. Mutually
exclusive with 'deployment_id'.
deployment_id (str, optional): Deployment ID of a tuned model to be used for
inference. Mutually exclusive with 'model_name'.
parameters (WMLInferenceEngineParams): An instance of 'WMLInferenceEngineParams'
which defines parameters used for inference. All the parameters are optional.
Examples:
from .api import load_dataset
wml_parameters = WMLInferenceEngineParams(top_p=0.5, random_seed=123)
wml_credentials = {
"url": "some_url", "project_id": "some_id", "api_key": "some_key"
}
model_name = "google/flan-t5-xxl"
wml_inference = WMLInferenceEngine(
credentials=wml_credentials,
parameters=wml_parameters,
model_name=model_name,
)
dataset = load_dataset(
dataset_query="card=cards.argument_topic,template_card_index=0,loader_limit=5"
)
results = wml_inference.infer(dataset["test"])
"""
client = None
credentials = None
model_name: Optional[str] = None
deployment_id: Optional[str] = None
parameters: WMLInferenceEngineParams = field(
default_factory=WMLInferenceEngineParams
)
_parameters: Dict[str, Any] = field(default_factory=dict)
label: str = "wml"
_requirements_list = {
"ibm-watsonx-ai": "Install ibm-watsonx-ai package using 'pip install --upgrade ibm-watsonx-ai'. "
"It is advised to have Python version >=3.10 installed, as at lower version this package "
"may cause conflicts with other installed packages."
}
data_classification_policy = ["proprietary"]
@staticmethod
def _read_wml_credentials_from_env() -> Dict[str, str]:
credentials = {}
for env_var_name in ["WML_URL", "WML_PROJECT_ID", "WML_APIKEY"]:
env_var = os.environ.get(env_var_name)
assert env_var, (
f"Error while trying to run 'WMLInferenceEngine'. "
f"Please set the env variable: '{env_var_name}', or "
f"directly provide an instance of ibm-watsonx-ai 'Credentials' "
f"to the engine."
)
name = env_var_name.lower().replace("wml_", "")
credentials[name] = env_var
return credentials
def _initialize_wml_client(self):
from ibm_watsonx_ai.client import APIClient
if self.credentials is None:
self.credentials = self._read_wml_credentials_from_env()
client = APIClient(credentials=self.credentials)
client.set.default_project(self.credentials["project_id"])
return client
def prepare(self):
if self.client is None:
self.client = self._initialize_wml_client()
self._parameters = self.parameters.initialize_wml_parameters()
def verify(self):
assert (
self.model_name
or self.deployment_id
and not (self.model_name and self.deployment_id)
), "Either 'model_name' or 'deployment_id' must be specified, but not both at the same time."
super().verify()
def _infer(self, dataset):
from ibm_watsonx_ai.foundation_models import ModelInference
model = ModelInference(
model_id=self.model_name,
deployment_id=self.deployment_id,
api_client=self.client,
)
return [
model.generate_text(
prompt=instance["source"],
params=self._parameters,
)
for instance in dataset
]