Commit graph

52 commits

Author SHA1 Message Date
Daniel Hiltgen
9754c6d9d8 Harden AMD driver lookup logic
It looks like the version file doesnt exist on older(?) drivers
2024-02-16 16:20:16 -08:00
Daniel Hiltgen
6d84f07505 Detect AMD GPU info via sysfs and block old cards
This wires up some new logic to start using sysfs to discover AMD GPU
information and detects old cards we can't yet support so we can fallback to CPU mode.
2024-02-12 08:19:41 -08:00
Daniel Hiltgen
4072b5879b
Merge pull request #2246 from dhiltgen/reject_cuda_without_avx
Don't disable GPUs on arm without AVX
2024-01-28 16:26:55 -08:00
Daniel Hiltgen
15562e887d Don't disable GPUs on arm without AVX
AVX is an x86 feature, so ARM should be excluded from
the check.
2024-01-28 15:22:38 -08:00
Daniel Hiltgen
f07f8b7a9e Harden for zero detected GPUs
At least with the ROCm libraries, its possible to have the library
present with zero GPUs.  This fix avoids a divide by zero bug in llm.go
when we try to calculate GPU memory with zero GPUs.
2024-01-28 13:13:10 -08:00
Daniel Hiltgen
e02ecfb6c8
Merge pull request #2116 from dhiltgen/cc_50_80
Add support for CUDA 5.0 cards
2024-01-27 10:28:38 -08:00
Jagadish Krishnamoorthy
59d87127f5
Update gpu_info_rocm.c 2024-01-26 22:08:27 -08:00
Daniel Hiltgen
667a2ba18a Detect lack of AVX and fallback to CPU mode
We build the GPU libraries with AVX enabled to ensure that if not all
layers fit on the GPU we get better performance in a mixed mode.
If the user is using a virtualization/emulation system that lacks AVX
this used to result in an illegal instruction error and crash before this
fix.  Now we will report a warning in the server log, and just use
CPU mode to ensure we don't crash.
2024-01-26 11:36:03 -08:00
Daniel Hiltgen
30c43c285c
Merge pull request #2195 from dhiltgen/rocm_real_gpus
Ignore AMD integrated GPUs
2024-01-26 09:30:24 -08:00
Daniel Hiltgen
9d7b5d6c91 Ignore AMD integrated GPUs
Detect and ignore integrated GPUs reported by rocm.
2024-01-26 09:21:35 -08:00
Daniel Hiltgen
5d9c4a5f5a Fix crash on cuda ml init failure
The new driver lookup code was triggering after init failure due to a missing return
2024-01-26 09:18:33 -08:00
Daniel Hiltgen
013fd07139 More logging for gpu management
Fix an ordering glitch of dlerr/dlclose and add more logging to help
root cause some crashes users are hitting. This also refines the
function pointer names to use the underlying function names instead
of simplified names for readability.
2024-01-24 10:32:36 -08:00
Daniel Hiltgen
987c16b2f7 Report more information about GPUs in verbose mode
This adds additional calls to both CUDA and ROCm management libraries to
discover additional attributes about the GPU(s) detected in the system, and
wires up runtime verbosity selection.  When users hit problems with GPUs we can
ask them to run with `OLLAMA_DEBUG=1 ollama serve` and share the results.
2024-01-23 11:37:02 -08:00
Daniel Hiltgen
a447a083f2 Add compute capability 5.0, 7.5, and 8.0 2024-01-20 14:24:05 -08:00
Jeffrey Morgan
f32ea81b21
increase minimum overhead to 1024MiB (#2114) 2024-01-20 17:11:38 -05:00
Daniel Hiltgen
681a914990 Add support for CUDA 5.2 cards 2024-01-20 10:48:43 -08:00
Daniel Hiltgen
552db98bf1 More WSL paths 2024-01-19 13:23:29 -08:00
Self Denial
eb76f3e379 Fix CPU-only build under Android Termux enviornment.
Update gpu.go initGPUHandles() to declare gpuHandles variable before
reading it. This resolves an "invalid memory address or nil pointer
dereference" error.

Update dyn_ext_server.c to avoid setting the RTLD_DEEPBIND flag under
__TERMUX__ (Android).
2024-01-18 17:25:33 -07:00
Daniel Hiltgen
abec7f06e5
Merge pull request #2056 from dhiltgen/slog
Mechanical switch from log to slog
2024-01-18 14:27:24 -08:00
Daniel Hiltgen
fedd705aea Mechanical switch from log to slog
A few obvious levels were adjusted, but generally everything mapped to "info" level.
2024-01-18 14:12:57 -08:00
Alexander F. Rødseth
f4bf1d514f Let gpu.go and gen_linux.sh also find CUDA on Arch Linux 2024-01-14 13:40:36 +01:00
Daniel Hiltgen
7427fa1387 Fix up the CPU fallback selection
The memory changes and multi-variant change had some merge
glitches I missed.  This fixes them so we actually get the cpu llm lib
and best variant for the given system.
2024-01-11 15:27:06 -08:00
Daniel Hiltgen
de2fbdec99
Merge pull request #1819 from dhiltgen/multi_variant
Support multiple LLM libs; ROCm v5 and v6; Rosetta, AVX, and AVX2 compatible CPU builds
2024-01-11 14:00:48 -08:00
Daniel Hiltgen
39928a42e8 Always dynamically load the llm server library
This switches darwin to dynamic loading, and refactors the code now that no
static linking of the library is used on any platform
2024-01-11 08:42:47 -08:00
Daniel Hiltgen
d88c527be3 Build multiple CPU variants and pick the best
This reduces the built-in linux version to not use any vector extensions
which enables the resulting builds to run under Rosetta on MacOS in
Docker.  Then at runtime it checks for the actual CPU vector
extensions and loads the best CPU library available
2024-01-11 08:42:47 -08:00
Fabian Preiß
3bc8b9832b
fix gpu_test.go Error (same type) uint64->uint32 (#1921) 2024-01-11 08:22:23 -05:00
Daniel Hiltgen
8da7bef05f Support multiple variants for a given llm lib type
In some cases we may want multiple variants for a given GPU type or CPU.
This adds logic to have an optional Variant which we can use to select
an optimal library, but also allows us to try multiple variants in case
some fail to load.

This can be useful for scenarios such as ROCm v5 vs v6 incompatibility
or potentially CPU features.
2024-01-10 17:27:51 -08:00
Jeffrey Morgan
b24e8d17b2
Increase minimum CUDA memory allocation overhead and fix minimum overhead for multi-gpu (#1896)
* increase minimum cuda overhead and fix minimum overhead for multi-gpu

* fix multi gpu overhead

* limit overhead to 10% of all gpus

* better wording

* allocate fixed amount before layers

* fixed only includes graph alloc
2024-01-10 19:08:51 -05:00
Daniel Hiltgen
3c49c3ab0d Harden GPU mgmt library lookup
When there are multiple management libraries installed on a system
not every one will be compatible with the current driver.  This change
improves our management library algorithm to build up a set of discovered
libraries based on glob patterns, and then try all of them until we're able to
load one without error.
2024-01-10 15:06:41 -08:00
Jeffrey Morgan
c336693f07
calculate overhead based number of gpu devices (#1875) 2024-01-09 15:53:33 -05:00
Daniel Hiltgen
1961a81f03 Set corret CUDA minimum compute capability version
If you attempt to run the current CUDA build on compute capability 5.2
cards, you'll hit the following failure:
cuBLAS error 15 at ggml-cuda.cu:7956: the requested functionality is not supported
2024-01-09 11:28:24 -08:00
Jeffrey Morgan
6df83e6daa update rough cuda overhead estimate to 15% + 384MiB 2024-01-09 13:51:08 -05:00
Jeffrey Morgan
6164f378f2 revert cuda overhead to 20% 2024-01-09 00:54:29 -05:00
Jeffrey Morgan
6566387ae3 add TODO for cuda overhead 2024-01-09 00:28:03 -05:00
Jeffrey Morgan
37708931fb update cuda overhead to 20% to fix crashes when switching between models and large context sizes 2024-01-09 00:05:23 -05:00
Jeffrey Morgan
f6cb0a553c update cuda overhead to 15% or 400MiB 2024-01-08 23:45:45 -05:00
Jeffrey Morgan
2680078c13 fix build on linux 2024-01-08 23:44:13 -05:00
Jeffrey Morgan
f1b7e5f560 update overhead to 15% 2024-01-08 23:37:45 -05:00
Jeffrey Morgan
cb534e6ac2 use 10% vram overhead for cuda 2024-01-08 23:17:44 -05:00
Jeffrey Morgan
08f1e18965
Offload layers to GPU based on new model size estimates (#1850)
* select layers based on estimated model memory usage

* always account for scratch vram

* dont load +1 layers

* better estmation for graph alloc

* Update gpu/gpu_darwin.go

Co-authored-by: Bruce MacDonald <brucewmacdonald@gmail.com>

* Update llm/llm.go

Co-authored-by: Bruce MacDonald <brucewmacdonald@gmail.com>

* Update llm/llm.go

* add overhead for cuda memory

* Update llm/llm.go

Co-authored-by: Bruce MacDonald <brucewmacdonald@gmail.com>

* fix build error on linux

* address comments

---------

Co-authored-by: Bruce MacDonald <brucewmacdonald@gmail.com>
2024-01-08 16:42:00 -05:00
Daniel Hiltgen
d74ce6bd4f Detect very old CUDA GPUs and fall back to CPU
If we try to load the CUDA library on an old GPU, it panics and crashes
the server.  This checks the compute capability before we load the
library so we can gracefully fall back to CPU mode.
2024-01-06 21:40:29 -08:00
Jeffrey Morgan
1caa56128f add cuda lib path for nvidia container toolkit 2024-01-05 21:10:37 -05:00
Jeffrey Morgan
df32537312
gpu: read memory info from all cuda devices (#1802)
* gpu: read memory info from all cuda devices

* add `LOOKUP_SIZE` constant

* better constant name

* address comments
2024-01-05 11:25:58 -05:00
Jeffrey Morgan
c7ea8f237e
set num_gpu to 1 only by default on darwin arm64 (#1771) 2024-01-03 14:10:29 -05:00
Daniel Hiltgen
a2ad952440 Fix windows system memory lookup
This refines the gpu package error handling and fixes a bug with the
system memory lookup on windows.
2024-01-03 08:50:01 -08:00
Daniel Hiltgen
d966b730ac Switch windows build to fully dynamic
Refactor where we store build outputs, and support a fully dynamic loading
model on windows so the base executable has no special dependencies thus
doesn't require a special PATH.
2024-01-02 15:36:16 -08:00
Daniel Hiltgen
7555ea44f8 Revamp the dynamic library shim
This switches the default llama.cpp to be CPU based, and builds the GPU variants
as dynamically loaded libraries which we can select at runtime.

This also bumps the ROCm library to version 6 given 5.7 builds don't work
on the latest ROCm library that just shipped.
2023-12-20 14:45:57 -08:00
Daniel Hiltgen
1d1eb1688c Additional nvidial-ml path to check 2023-12-19 15:52:34 -08:00
Daniel Hiltgen
6558f94ed0 Fix darwin intel build 2023-12-19 13:32:24 -08:00
Daniel Hiltgen
5646826a79 Add WSL2 path to nvidia-ml.so library 2023-12-19 09:05:46 -08:00