text-generation-inference/server/text_generation_server/models/globals.py
Nicolas Patry b70ae0969f
Prefix caching (#2402)
* Prefix caching WIP

* Fixing prefix attention.

* Fixing flashinfer import.

* Fixing black.

* Fixing medusa (still wrong outputs, but functional).

* Just medusa values now.

* Fixing medusa without prefix caching.

* Fixing prefix caching.

* Medusa requires reshaping.

* Removing the logs.

* Remove router.nix

* Fixup:

- Remove logs
- Disable VLMs (they do not work)
- Disable prefix caching when user wants prefill logprobs.

* Update flake.lock

---------

Co-authored-by: Daniël de Kok <me@danieldk.eu>
2024-08-20 11:15:30 +02:00

61 lines
1.8 KiB
Python

import torch
import os
from loguru import logger
from typing import Dict, Optional
from text_generation_server.utils.log import log_master
PREFIX_CACHING = os.getenv("USE_PREFIX_CACHING", "0").lower() in {"1", "true"}
log_master(logger.info, f"Using prefix caching = {PREFIX_CACHING}")
ATTENTION = os.getenv("ATTENTION", "flashinfer" if PREFIX_CACHING else "paged")
_expected = {"paged", "flashdecoding", "flashinfer"}
assert (
ATTENTION in _expected
), f"Attention is not valid {ATTENTION}, expected {_expected}"
log_master(logger.info, f"Using Attention = {ATTENTION}")
if PREFIX_CACHING and ATTENTION != "flashinfer":
raise RuntimeError("Prefix caching is only supported with flashinfer")
MEM_POOL = torch.cuda.graph_pool_handle() if torch.cuda.is_available() else None
# This is overridden by the cli
BLOCK_SIZE: int
if ATTENTION == "flashdecoding":
BLOCK_SIZE = 256
elif ATTENTION == "flashinfer":
BLOCK_SIZE = 1
else:
BLOCK_SIZE = 16
cuda_graphs = os.getenv("CUDA_GRAPHS")
if cuda_graphs is not None:
try:
cuda_graphs = [int(item) for item in cuda_graphs.split(",")]
except Exception as e:
raise RuntimeError(
f"Could not parse cuda graphs {cuda_graphs}, expected comma separated list for batch sizes to run on: {e}"
)
else:
cuda_graphs = None
# sorting the cuda graphs in descending order helps reduce the
# memory impact and results in less memory usage
if cuda_graphs is not None:
cuda_graphs.sort(reverse=True)
CUDA_GRAPHS = cuda_graphs
# NOTE: eventually we should move this into the router and pass back the
# index in all cases.
ADAPTER_TO_INDEX: Optional[Dict[str, int]] = None
def set_adapter_to_index(adapter_to_index: Dict[str, int]):
global ADAPTER_TO_INDEX
ADAPTER_TO_INDEX = adapter_to_index
def get_adapter_to_index():
global ADAPTER_TO_INDEX
return ADAPTER_TO_INDEX