applied-ai-018's picture
Add files using upload-large-folder tool
d94d830 verified
raw
history blame
4.71 kB
import logging
from typing import Callable, Dict
import evaluate as hf_evaluate
from lm_eval.api.model import LM
eval_logger = logging.getLogger("lm-eval")
MODEL_REGISTRY = {}
def register_model(*names):
# either pass a list or a single alias.
# function receives them as a tuple of strings
def decorate(cls):
for name in names:
assert issubclass(
cls, LM
), f"Model '{name}' ({cls.__name__}) must extend LM class"
assert (
name not in MODEL_REGISTRY
), f"Model named '{name}' conflicts with existing model! Please register with a non-conflicting alias instead."
MODEL_REGISTRY[name] = cls
return cls
return decorate
def get_model(model_name):
try:
return MODEL_REGISTRY[model_name]
except KeyError:
raise ValueError(
f"Attempted to load model '{model_name}', but no model for this name found! Supported model names: {', '.join(MODEL_REGISTRY.keys())}"
)
TASK_REGISTRY = {}
GROUP_REGISTRY = {}
ALL_TASKS = set()
func2task_index = {}
def register_task(name):
def decorate(fn):
assert (
name not in TASK_REGISTRY
), f"task named '{name}' conflicts with existing registered task!"
TASK_REGISTRY[name] = fn
ALL_TASKS.add(name)
func2task_index[fn.__name__] = name
return fn
return decorate
def register_group(name):
def decorate(fn):
func_name = func2task_index[fn.__name__]
if name in GROUP_REGISTRY:
GROUP_REGISTRY[name].append(func_name)
else:
GROUP_REGISTRY[name] = [func_name]
ALL_TASKS.add(name)
return fn
return decorate
OUTPUT_TYPE_REGISTRY = {}
METRIC_REGISTRY = {}
METRIC_AGGREGATION_REGISTRY = {}
AGGREGATION_REGISTRY: Dict[str, Callable[[], Dict[str, Callable]]] = {}
HIGHER_IS_BETTER_REGISTRY = {}
DEFAULT_METRIC_REGISTRY = {
"loglikelihood": [
"perplexity",
"acc",
],
"loglikelihood_rolling": ["word_perplexity", "byte_perplexity", "bits_per_byte"],
"multiple_choice": ["acc", "acc_norm"],
"generate_until": ["exact_match"],
}
def register_metric(**args):
# TODO: do we want to enforce a certain interface to registered metrics?
def decorate(fn):
assert "metric" in args
name = args["metric"]
for key, registry in [
("metric", METRIC_REGISTRY),
("higher_is_better", HIGHER_IS_BETTER_REGISTRY),
("aggregation", METRIC_AGGREGATION_REGISTRY),
]:
if key in args:
value = args[key]
assert (
value not in registry
), f"{key} named '{value}' conflicts with existing registered {key}!"
if key == "metric":
registry[name] = fn
elif key == "aggregation":
registry[name] = AGGREGATION_REGISTRY[value]
else:
registry[name] = value
return fn
return decorate
def get_metric(name: str, hf_evaluate_metric=False) -> Callable:
if not hf_evaluate_metric:
if name in METRIC_REGISTRY:
return METRIC_REGISTRY[name]
else:
eval_logger.warning(
f"Could not find registered metric '{name}' in lm-eval, searching in HF Evaluate library..."
)
try:
metric_object = hf_evaluate.load(name)
return metric_object.compute
except Exception:
eval_logger.error(
f"{name} not found in the evaluate library! Please check https://huggingface.co/evaluate-metric",
)
def register_aggregation(name: str):
def decorate(fn):
assert (
name not in AGGREGATION_REGISTRY
), f"aggregation named '{name}' conflicts with existing registered aggregation!"
AGGREGATION_REGISTRY[name] = fn
return fn
return decorate
def get_aggregation(name: str) -> Callable[[], Dict[str, Callable]]:
try:
return AGGREGATION_REGISTRY[name]
except KeyError:
eval_logger.warning(f"{name} not a registered aggregation metric!")
def get_metric_aggregation(name: str) -> Callable[[], Dict[str, Callable]]:
try:
return METRIC_AGGREGATION_REGISTRY[name]
except KeyError:
eval_logger.warning(f"{name} metric is not assigned a default aggregation!")
def is_higher_better(metric_name) -> bool:
try:
return HIGHER_IS_BETTER_REGISTRY[metric_name]
except KeyError:
eval_logger.warning(
f"higher_is_better not specified for metric '{metric_name}'!"
)