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vllm_causallms.py
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vllm_causallms.py
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import copy
from importlib.metadata import version
from importlib.util import find_spec
from typing import TYPE_CHECKING, Dict, List, Literal, Optional, Tuple, Union
from more_itertools import distribute
from packaging.version import parse as parse_version
from tqdm import tqdm
from lm_eval.api.instance import Instance
from lm_eval.api.model import TemplateLM
from lm_eval.api.registry import register_model
from lm_eval.models.utils import Collator, configure_pad_token, undistribute
from lm_eval.utils import (
eval_logger,
get_rolling_token_windows,
make_disjoint_window,
)
try:
import ray
from vllm import LLM, SamplingParams
from vllm.lora.request import LoRARequest
from vllm.transformers_utils.tokenizer import get_tokenizer
except ModuleNotFoundError:
pass
if TYPE_CHECKING:
pass
eval_logger = eval_logger
@register_model("vllm")
class VLLM(TemplateLM):
_DEFAULT_MAX_LENGTH = 2048
def __init__(
self,
pretrained: str,
dtype: Literal["float16", "bfloat16", "float32", "auto"] = "auto",
revision: Optional[str] = None,
trust_remote_code: Optional[bool] = False,
tokenizer: Optional[str] = None,
tokenizer_mode: Literal["auto", "slow"] = "auto",
tokenizer_revision: Optional[str] = None,
add_bos_token: Optional[bool] = False,
prefix_token_id: Optional[int] = None,
tensor_parallel_size: int = 1,
quantization: Optional[str] = None,
max_gen_toks: int = 256,
swap_space: int = 4,
batch_size: Union[str, int] = 1,
max_batch_size=None,
max_length: int = None,
max_model_len: int = None,
seed: int = 1234,
gpu_memory_utilization: float = 0.9,
device: str = "cuda",
data_parallel_size: int = 1,
lora_local_path: str = None,
**kwargs,
):
super().__init__()
if not find_spec("vllm"):
raise Exception(
"attempted to use 'vllm' LM type, but package `vllm` is not installed. "
"Please install vllm via `pip install lm-eval[vllm]` or `pip install -e .[vllm]`"
)
assert "cuda" in device or device is None, "vLLM only supports CUDA"
assert (
max_length is None or max_model_len is None
), "Either max_length or max_model_len may be provided, but not both"
self._max_length = max_model_len if max_model_len is not None else max_length
self.tensor_parallel_size = int(tensor_parallel_size)
self.data_parallel_size = int(data_parallel_size)
self.model_args = {
"model": pretrained,
"gpu_memory_utilization": float(gpu_memory_utilization),
"revision": revision,
"dtype": dtype,
"tokenizer": tokenizer,
"tokenizer_mode": tokenizer_mode,
"tokenizer_revision": tokenizer_revision,
"trust_remote_code": trust_remote_code,
"tensor_parallel_size": int(tensor_parallel_size),
"max_model_len": int(self._max_length) if self._max_length else None,
"swap_space": int(swap_space),
"quantization": quantization,
"seed": int(seed),
}
self.model_args.update(kwargs)
self.batch_size = (
"auto"
if isinstance(batch_size, str) and "auto" in batch_size
else batch_size
)
if self.data_parallel_size <= 1:
self.model = LLM(**self.model_args)
else:
eval_logger.warning(
"You might experience occasional issues with model weight downloading when data_parallel is in use. To ensure stable performance, run with data_parallel_size=1 until the weights are downloaded and cached."
)
self.model_args["worker_use_ray"] = True
self.batch_size = "auto"
eval_logger.info("Manual batching is not compatible with data parallelism.")
from transformers import AutoConfig
self._config = AutoConfig.from_pretrained(
pretrained, trust_remote_code=trust_remote_code, revision=revision
)
self.tokenizer = get_tokenizer(
tokenizer if tokenizer else pretrained,
tokenizer_mode=tokenizer_mode,
trust_remote_code=trust_remote_code,
tokenizer_revision=tokenizer_revision,
)
self.tokenizer = configure_pad_token(self.tokenizer)
self.add_bos_token = add_bos_token
if "gemma" in pretrained.lower():
self.add_bos_token = True
eval_logger.info(
"Found 'gemma' in model name, a BOS token will be used as Gemma series models underperform without it."
)
self.custom_prefix_token_id = prefix_token_id
if prefix_token_id is not None:
eval_logger.info(
f"Loglikelihood prefix token id used in evaluation: {self.prefix_token_id}"
)
self._max_gen_toks = max_gen_toks
if lora_local_path is not None:
assert parse_version(version("vllm")) > parse_version(
"0.3.0"
), "lora adapters only compatible with vllm > v0.3.0."
self.lora_request = LoRARequest("finetuned", 1, lora_local_path)
else:
self.lora_request = None
@property
def eot_token_id(self):
# we use EOT because end of *text* is more accurate for what we're doing than end of *sentence*
return self.tokenizer.eos_token_id
@property
def prefix_token_id(self):
# it is used as prefix for loglikelihood
if self.custom_prefix_token_id is not None:
return self.custom_prefix_token_id
if self.tokenizer.bos_token_id is not None:
return self.tokenizer.bos_token_id
return self.tokenizer.eos_token_id
@property
def max_length(self):
if self._max_length: # if max length manually set, return it
return self._max_length
if self.data_parallel_size <= 1:
return self.model.llm_engine.model_config.max_model_len
else:
seqlen_config_attrs = ("n_positions", "max_position_embeddings", "n_ctx")
for attr in seqlen_config_attrs:
if hasattr(self._config, attr):
return getattr(self._config, attr)
if hasattr(self.tokenizer, "model_max_length"):
if self.tokenizer.model_max_length == 1000000000000000019884624838656:
return self._DEFAULT_MAX_LENGTH
return self.tokenizer.model_max_length
return self._DEFAULT_MAX_LENGTH
@property
def max_gen_toks(self):
return self._max_gen_toks
def apply_chat_template(self, chat_history: List[Dict[str, str]]) -> str:
"""
Method to apply a chat template to a list of chat history between user and model.
"""
return self.tokenizer.apply_chat_template(
chat_history, tokenize=False, add_generation_prompt=True
)
@property
def tokenizer_name(self) -> str:
return self.tokenizer.name_or_path.replace("/", "__")
def tok_encode(
self,
string: Union[str, List[str]],
left_truncate_len: int = None,
add_special_tokens: bool = False,
truncation: bool = False,
) -> Union[List[int], List[List[int]]]:
if not add_special_tokens:
add_special_tokens = False or self.add_bos_token
encoding: Union[List[List[int]], List[int]] = self.tokenizer(
string,
add_special_tokens=add_special_tokens,
truncation=truncation,
return_attention_mask=False,
).input_ids
# left-truncate the encoded context to be at most `left_truncate_len` tokens long
if left_truncate_len:
if not isinstance(string, str):
encoding = [enc[-left_truncate_len:] for enc in encoding]
else:
encoding = encoding[-left_truncate_len:]
return encoding
def _model_generate(
self,
requests: List[List[int]] = None,
generate: bool = False,
max_tokens: int = None,
stop: Optional[List[str]] = None,
**kwargs,
):
if generate:
kwargs = self.modify_gen_kwargs(kwargs)
sampling_params = SamplingParams(max_tokens=max_tokens, stop=stop, **kwargs)
else:
sampling_params = SamplingParams(
temperature=0, prompt_logprobs=1, max_tokens=1, detokenize=False
)
if self.data_parallel_size > 1:
# vLLM hangs if tensor_parallel > 1 and resources are set in ray.remote
# also seems to only work with decorator and not with ray.remote() fn
# see https://github.com/vllm-project/vllm/issues/973
# note: this has changed on 0.3.3, and it only works now if num_gpus are set.
# but then tensor_parallel breaks
@ray.remote
def run_inference_one_model(
model_args: dict, sampling_params, requests: List[List[int]]
):
llm = LLM(**model_args)
return llm.generate(
prompt_token_ids=requests, sampling_params=sampling_params
)
# dispatch requests to all self.data_parallel_size workers, in interleaved fashion
# interleaved important to balance context lengths across workers
requests = [list(x) for x in distribute(self.data_parallel_size, requests)]
inputs = ((self.model_args, sampling_params, req) for req in requests)
object_refs = [run_inference_one_model.remote(*x) for x in inputs]
results = ray.get(object_refs)
# Invoke ray.shutdown() to prevent hang-ups if subsequent calls required.
ray.shutdown()
# flatten results
return undistribute(results)
if self.lora_request is not None:
outputs = self.model.generate(
prompt_token_ids=requests,
sampling_params=sampling_params,
use_tqdm=True if self.batch_size == "auto" else False,
lora_request=self.lora_request,
)
else:
outputs = self.model.generate(
prompt_token_ids=requests,
sampling_params=sampling_params,
use_tqdm=True if self.batch_size == "auto" else False,
)
return outputs
def loglikelihood_rolling(
self, requests: List[Instance], disable_tqdm: bool = False
) -> List[float]:
loglikelihoods = []
for (string,) in tqdm([req.args for req in requests], disable=disable_tqdm):
rolling_token_windows = list(
map(
make_disjoint_window,
get_rolling_token_windows(
token_list=self.tok_encode(string),
prefix_token=self.prefix_token_id,
# max_seq_len - (1 for context)
max_seq_len=self.max_length - 1,
context_len=1,
),
)
)
rolling_token_windows = [(None,) + x for x in rolling_token_windows]
string_nll = self._loglikelihood_tokens(
rolling_token_windows,
)
# discard is_greedy
string_nll = [x[0] for x in string_nll]
string_nll = sum(string_nll)
loglikelihoods.append(string_nll)
# cache this loglikelihood_rolling request
self.cache_hook.add_partial("loglikelihood_rolling", (string,), string_nll)
return loglikelihoods
def generate_until(
self, requests: List[Instance], disable_tqdm: bool = False
) -> List[str]:
res = []
# batch tokenize contexts
context, all_gen_kwargs = zip(*(req.args for req in requests))
context_encoding: List[List[int]] = self.tok_encode(
context, add_special_tokens=self.add_bos_token
)
requests = [
((a, b), c) for a, b, c in zip(context, context_encoding, all_gen_kwargs)
]
def _collate_gen(_requests):
# the negative sign on len(toks) sorts descending - this has a few advantages:
# - time estimates will always be over not underestimates, which is more useful for planning
# - to know the size of a batch when going through the list, you know the first one is always the batch
# padded context length. this is useful to simplify the batching logic and more importantly to make
# automatic adaptive batches much much easier to implement
# - any OOMs will happen right away rather than near the end
return -len(_requests[0][1]), _requests[0][0]
# we group requests by their generation_kwargs,
# so that we don't try to execute e.g. greedy sampling and temp=0.8 sampling
# in the same batch.
re_ords = Collator(requests, _collate_gen, group_by="gen_kwargs")
chunks = re_ords.get_batched(
n=int(self.batch_size) if self.batch_size != "auto" else 0, batch_fn=None
)
pbar = tqdm(
total=len(requests),
disable=(disable_tqdm or (self.rank != 0)),
desc="Running generate_until requests",
)
# for each different set of kwargs, we execute all requests, by batch.
for chunk in chunks:
context_and_encoding, all_gen_kwargs = zip(*chunk)
context, context_encoding = zip(*context_and_encoding)
# we assume all gen kwargs in the batch are the same
# this is safe to assume because the `grouper` object ensures it.
gen_kwargs = all_gen_kwargs[0]
# unpack our keyword arguments.
until = None
if isinstance(gen_kwargs, dict):
kwargs = copy.deepcopy(gen_kwargs) # edge case for repeats > 1
if "until" in kwargs.keys():
until = kwargs.pop("until")
if isinstance(until, str):
until = [until]
elif not isinstance(until, list):
raise ValueError(
f"Expected `kwargs['until']` to be of type Union[str,list] but got {until}"
)
else:
raise ValueError(
f"Expected `kwargs` to be of type `dict` but got {gen_kwargs}"
)
# add EOS token to stop sequences
eos = self.tokenizer.decode(self.eot_token_id)
if not until:
until = [eos]
else:
until.append(eos)
if "max_gen_toks" in kwargs.keys():
max_gen_toks = kwargs.pop("max_gen_toks")
else:
max_gen_toks = self.max_gen_toks
# set the max length in tokens of inputs ("context_enc")
# max len for inputs = max length, minus room to generate the max new tokens
max_ctx_len = self.max_length - max_gen_toks
context_encoding = [x[-max_ctx_len:] for x in context_encoding]
# perform batched generation
cont = self._model_generate(
requests=context_encoding,
generate=True,
max_tokens=max_gen_toks,
stop=until,
**kwargs,
)
# cache generations
for output, context in zip(cont, context):
generated_text = output.outputs[0].text
res.append(generated_text)
self.cache_hook.add_partial(
"generate_until", (context, gen_kwargs), generated_text
)
pbar.update(1)
pbar.close()
# reorder all group of results back to original unsorted form
return re_ords.get_original(res)
def _loglikelihood_tokens(
self,
requests: List[Tuple[Tuple[str, str], List[int], List[int]]],
disable_tqdm: bool = False,
) -> List[Tuple[float, bool]]:
res = []
def _collate(x):
toks = x[1] + x[2]
return -len(toks), tuple(toks)
# Reorder requests by length and batch
re_ord = Collator(requests, sort_fn=_collate)
chunks = re_ord.get_batched(
n=int(self.batch_size) if self.batch_size != "auto" else 0, batch_fn=None
)
pbar = tqdm(
total=len(requests),
disable=disable_tqdm,
desc="Running loglikelihood requests",
)
for chunk in chunks:
inputs = []
ctxlens = []
for cache_key, context_enc, continuation_enc in chunk:
inp = (context_enc + continuation_enc)[-(self.max_length) :]
ctxlen = len(context_enc) - max(
0, len(context_enc) + len(continuation_enc) - (self.max_length)
)
inputs.append(inp)
ctxlens.append(ctxlen)
outputs = self._model_generate(requests=inputs, generate=False)
for output, ctxlen, (cache_key, _, _), inp in zip(
outputs, ctxlens, chunk, inputs
):
answer = self._parse_logprobs(
tokens=inp,
outputs=output,
ctxlen=ctxlen,
)
res.append(answer)
if cache_key is not None:
# special case: loglikelihood_rolling produces a number of loglikelihood requests
# all with cache key None. instead do add_partial on the per-example level
# in the loglikelihood_rolling() function for those.
self.cache_hook.add_partial("loglikelihood", cache_key, answer)
pbar.update(1)
pbar.close()
return re_ord.get_original(res)
@staticmethod
def _parse_logprobs(tokens: List, outputs, ctxlen: int) -> Tuple[float, bool]:
"""Process logprobs and tokens.
:param tokens: list
Input tokens (potentially left-truncated)
:param outputs: RequestOutput
Contains prompt_logprobs
:param ctxlen: int
Length of context (so we can slice them away and only keep the predictions)
:return:
continuation_logprobs: float
Log probabilities of continuation tokens
is_greedy: bool
Whether argmax matches given continuation exactly
"""
# The first entry of prompt_logprobs is None because the model has no previous tokens to condition on.
continuation_logprobs_dicts = outputs.prompt_logprobs
def coerce_logprob_to_num(logprob):
# vLLM changed the return type of logprobs from float
# to a Logprob object storing the float value + extra data
# (https://github.com/vllm-project/vllm/pull/3065).
# If we are dealing with vllm's Logprob object, return
# the logprob value stored as an attribute. Otherwise,
# return the object itself (which should be a float
# for older versions of vLLM).
return getattr(logprob, "logprob", logprob)
continuation_logprobs_dicts = [
{
token: coerce_logprob_to_num(logprob)
for token, logprob in logprob_dict.items()
}
if logprob_dict is not None
else None
for logprob_dict in continuation_logprobs_dicts
]
# Calculate continuation_logprobs
# assume ctxlen always >= 1
continuation_logprobs = sum(
logprob_dict.get(token)
for token, logprob_dict in zip(
tokens[ctxlen:], continuation_logprobs_dicts[ctxlen:]
)
)
# Determine if is_greedy
is_greedy = True
for token, logprob_dict in zip(
tokens[ctxlen:], continuation_logprobs_dicts[ctxlen:]
):
# Get the token with the maximum log probability from the logprob_dict
if logprob_dict: # Ensure the logprob_dict is not None
top_token = max(logprob_dict, key=logprob_dict.get)
if top_token != token:
is_greedy = False
break
return continuation_logprobs, is_greedy
@staticmethod
def modify_gen_kwargs(kwargs: dict) -> dict:
# sampling_params
do_sample = kwargs.pop("do_sample", None)
if do_sample is False and "temperature" not in kwargs:
eval_logger.debug(
"Got `do_sample=False` and no temperature value, setting VLLM temperature to 0.0 ..."
)
kwargs["temperature"] = 0.0
# hf defaults
kwargs["skip_special_tokens"] = kwargs.get("skip_special_tokens", False)
kwargs["spaces_between_special_tokens"] = kwargs.get(
"spaces_between_special_tokens", False
)
return kwargs