InvokeAI/invokeai/backend/model_management
2023-10-03 14:25:34 -04:00
..
models Fix IP-Adapter calculation of memory footprint. 2023-09-25 18:28:10 -04:00
__init__.py isort wip 3 2023-09-12 13:01:58 -04:00
convert_ckpt_to_diffusers.py enable v_prediction for sd-1 models 2023-09-24 12:22:29 -04:00
libc_util.py Add LibcUtil class. 2023-10-03 14:25:34 -04:00
lora.py isort wip 3 2023-09-12 13:01:58 -04:00
memory_snapshot.py Catch a more specific exception in environments that do not have a libc shared library. 2023-10-03 14:25:34 -04:00
model_cache.py Disable garbage collection in ModelCache calls to MemorySnapshot in order minimize snapshot overhead. 2023-10-03 14:25:34 -04:00
model_manager.py Initial (barely) working version of IP-Adapter model management. 2023-09-13 08:27:24 -04:00
model_merge.py isort wip 3 2023-09-12 13:01:58 -04:00
model_probe.py enable v_prediction for sd-1 models 2023-09-24 12:22:29 -04:00
model_search.py fix probing for ip_adapter folders 2023-09-23 22:32:03 -04:00
README.md Add README with info about glib memory fragmentation caused by the model cache. 2023-10-03 14:25:34 -04:00
seamless.py chore: seamless print statement cleanup 2023-08-29 13:09:30 +12:00
util.py Format by black 2023-08-11 03:20:56 +03:00

Model Cache

glibc Memory Allocator Fragmentation

Python (and PyTorch) relies on the memory allocator from the C Standard Library (libc). On linux, with the GNU C Standard Library implementation (glibc), our memory access patterns have been observed to cause severe memory fragmentation. This fragmentation results in large amounts of memory that has been freed but can't be released back to the OS. Loading models from disk and moving them between CPU/CUDA seem to be the operations that contribute most to the fragmentation. This memory fragmentation issue can result in OOM crashes during frequent model switching, even if max_cache_size is set to a reasonable value (e.g. a OOM crash with max_cache_size=16 on a system with 32GB of RAM).

This problem may also exist on other OSes, and other libc implementations. But, at the time of writing, it has only been investigated on linux with glibc.

To better understand how the glibc memory allocator works, see these references:

Note the differences between memory allocated as chunks in an arena vs. memory allocated with mmap. Under glibc's default configuration, most model tensors get allocated as chunks in an arena making them vulnerable to the problem of fragmentation.

We can work around this memory fragmentation issue by setting the following env var:

# Force blocks >1MB to be allocated with `mmap` so that they are released to the system immediately when they are freed.
MALLOC_MMAP_THRESHOLD_=1048576

See the following references for more information about the malloc tunable parameters:

The model cache emits debug logs that provide visibility into the state of the libc memory allocator. See the LibcUtil class for more info on how these libc malloc stats are collected.