RLLaMA is a pure Rust implementation of LLaMA large language model inference..
- Uses either
f16
andf32
weights. - LLaMA-7B, LLaMA-13B, LLaMA-30B, LLaMA-65B all confirmed working
- Hand-optimized AVX2 implementation
- OpenCL support for GPU inference.
- Load model only partially to GPU with
--percentage-to-gpu
command line switch to run hybrid-GPU-CPU inference. - Simple HTTP API support, with the possibility of doing token sampling on client side
- It can load
Vicuna-13B
instruct-finetuned model (although currently there is no nice UX).
The current performance is as follows:
Pure Rust implementations:
LLaMA-7B: AMD Ryzen 3950X: 552ms / token f16 (pure Rust)
LLaMA-7B: AMD Ryzen 3950X: 1008ms / token f32 (pure Rust)
LLaMA-13B: AMD Ryzen 3950X: 1029ms / token f16 (pure Rust)
LLaMA-13B: AMD Ryzen 3950X: 1930ms / token f32 (pure Rust)
LLaMA-30B: AMD Ryzen 5950X: 2112ms / token f16 (pure Rust)
LLaMA-65B: AMD Ryzen 5950X: 4186ms / token f16 (pure Rust)
OpenCL (all use f16):
LLaMA-7B: AMD Ryzen 3950X + OpenCL RTX 3090 Ti: 216ms / token (OpenCL on GPU)
LLaMA-7B: AMD Ryzen 3950X + OpenCL Ryzen 3950X: 680ms / token (OpenCL on CPU)
LLaMA-13B: AMD Ryzen 3950X + OpenCL RTX 3090 Ti: 420ms / token (OpenCL on GPU)
LLaMA-13B: AMD Ryzen 3950X + OpenCL Ryzen 3950X: 1232ms / token (OpenCL on CPU)
LLaMA-30B: AMD Ryzen 5950X + OpenCL Ryzen 5950X: 4098ms / token (OpenCL on CPU)
Scroll to the bottom of this README.md to see benchmarks over time.
You can install with cargo
tool. RLLaMA uses intrinsics extensively and you
likely need to enable them to install the executable.
RUSTFLAGS="-C target-feature=+sse2,+avx,+fma,+avx2" cargo install rllama
There is a .cargo/config.toml
inside this repository that will enable these
features if you install manually from this Git repository instead.
There is a Dockerfile you can use if you'd rather just get started quickly and
you are familiar with docker
. You still need to download the models yourself.
docker build -f ./.docker/cpu.dockerfile -t rllama .
docker run -v /models/LLaMA:/models:z -it rllama \
rllama --model-path /models/7B \
--param-path /models/7B/params.json \
--tokenizer-path /models/tokenizer.model \
--prompt "hi I like cheese"
Replace /models/LLaMA
with the directory you've downloaded your models to.
The :z
in -v
flag may or may not be needed depending on your distribution
(I needed it on Fedora Linux)
Follow the instructions here.
Refer to https://github.com/facebookresearch/llama/ As of now, you need to be approved to get weights.
For LLaMA-7B make sure, you got these files:
* 7B/consolidated.00.pth
* 7B/params.json
* tokenizer.model
The consolidated.00.pth
is actually a zip file. You need to unzip it:
$ cd 7B
$ unzip consolidated.00.pth
$ mv consolidated consolidated.00
If you are using a larger model like LLaMA-13B, then you can skip the last step
of renaming the consolidated
directory.
You should now be ready to generate some text.
Run LLaMA-7B with some weights casted to 16-bit floats:
rllama --tokenizer-path /path/to/tokenizer.model \
--model-path /path/to/LLaMA/7B \
--param-path /path/to/LLaMA/7B/params.json \
--f16 \
--prompt "The meaning of life is"
Use rllama --help
to see all the options.
rllama
can load only some of the transformer blocks to GPU. There is a
command line argument:
--percentage-to-gpu <value between 0 and 1, defaults to 1>
1 means 100% and 0 means 0%. Values in-between load the model partially to GPU.
You can use this to load LLaMA-13B or Vicuna-13B on a consumer GPU of 24
gigabytes at around --percentage-to-gpu 0.9
before it fails to out-of-memory
error (if there are no competing programs on the computer that use GPU memory).
There is a simple experimental interactive mode to try force a type of back-and-forth discussion with the model.
rllama ... --start-interactive \
--interactive-system-prompt "Helpful assistant helps curious human." \ # (optional)
--interactive-prompt-postfix " ###Assistant:" \ # (optional)
--interactive-stop "###Human: " # (optional)
In this mode, you need to type your prompt before the AI starts doing its work.
If the AI outputs token sequence given in --interactive-stop
(defaults to
###Human:
) then it will ask for another input.
The defaults match Vicuna-13B model:
--interactive-system-prompt "A chat between a curious human and an artificial intelligence assistant. The assistant gives helpful, detailed, and polite answers to the human's questions."
--interactive-prompt-postfix " ###Assissant:"
--interactive-prompt-prefix " "
--interactive-stop "###Human:"
--interactive-prompt-postfix
is appended automatically to your typed text and
--interactive-prompt-prefix
is appended to the start of your typed text.Here
is an example of interactive mode command line with the default settings:
rllama --f16 \
--param-path /models/vicuna13b/params.json \
--model-path /models/vicuna13b \
--tokenizer-path /stonks/LLaMA/tokenizer.model \
--start-interactive
As of writing of this, the output is not formatted prettily for chat and there is no visual indication of when you are supposed to be typing. That will come later.
rllama
can run in an inference server mode with a simple HTTP JSON API. You
need to enable server
features for this.
cargo build --release --features server
The command line flags for this are:
--inference-server
using this will turn on the inference server.--inference-server-port
sets the port. Default port is 8080.--inference-server-host
sets the host. The default host is 127.0.0.1.--inference-server-max-concurrent-inferences
sets how many concurrent requests are allowed to be actively doing inference at the same time. The default is 5.--inference-server-api-path
sets which path servers the API requests. The default path is/rllama/v1/inference
--inference-server-prompt-cache-size
sets how many previous prompt calculations should be cached. Default is 50. This speeds up token generation for prompts that were already requested before, however it also increases memory use as the cache gets more full.--inference-server-exit-after-one-query
will make the server exit with exit code 0 after it has served one HTTP query. This is used for troubleshooting and experiments.
Prompts and flags related to token sampling are all ignored in inference server mode. Instead, they are obtained from each HTTP JSON API request.
There is an examples/api_hello_world.py
for a minimal API use example.
POST /rllama/v1/inference
Expects a JSON body and Accept: application/json
or Accept: text/jsonl
.
The expected JSON is as follows:
{
"temperature": <number, optional>
"top_k": <integer, optional, default 20>
"top_p": <number, optional, default: 1.0>
"repetition_penalty": <number, optional, default: 1.0>
"stop_at_end_token": <bool, optional, default: true>
"max_seq_len": <integer, optional, default: 1024. Clamped to
be at highest the same as --max-seq-len command line option.>
"max_new_tokens": <integer, optional, default: 1024>
"no_token_sampling": <bool, optional, default: false>
"prompt": <string, required>
}
The form of the response depends on if no_token_sampling
is set to true or false. The
response is in JSONL, i.e. multiple JSON dictionaries, separated by newlines.
no_token_sampling
can turn off rllama
's own token sampling. In this case,
the probabilities for every token are returned instead.
When no_token_sampling = false:
{<token string>: {"p": <number>, "is_end_token": bool, might not be present}}
token
contains the new token to be appended to output. It does not include string you fed to the system originally.p
is the probability that this token was chosen. For example, if this value is 0.1, it means that this particular token had 10% chance of being selected with the current token sampling settings.is_end_token
istrue
is the given token signifies end of output. This field is not present otherwise.
When no_token_sampling = true:
{<token string>: {"p": <number>, "is_end_token": bool, might not be present} \
,<token string>: {"p": <number>, "is_end_token": bool, might not be present} \
,...}
If you want to implement your own token sampling, you may want to set
max_new_tokens=1
and stop_at_end_token=false
to suppress rllama's own
sampling behavior entirely.
rllama
internally caches recently queried prompts and the intermediate
computations so that it's able to continue off quickly if you issue a query
that is either the same as a previous query or a continuation of one.
Use opencl
Cargo feature.
RUSTFLAGS="-C target-feature=+sse2,+avx,+fma,+avx2" cargo install rllama --features opencl
rllama --tokenizer-path /path/to/tokenizer.model \
--model-path /path/to/LLaMA/7B \
--param-path /path/to/LLaMA/7B/params.json \
--opencl-device 0 \
--prompt "The meaning of life is"
With opencl
feature, there is also another argument, --opencl-device
that
takes a number. That number selects Nth OpenCL device found on the system. You
can see the devices in the output when you run the program (e.g. see the
screenshot below).
Weights are always cast to 16-bit floats for OpenCL.
This is a hobby thing for me so don't expect updates or help.
- There are various BLAS libraries like CLBlast to speed up matrix multiplication that probably outperform my handwritten code.
- I've heard there is some thing called Tensor Cores on nVidia GPUs. Not accessible with OpenCL. But might be accessible on Vulkan with a an extension. Or with cuBLAS.
I'm trying to track that I'm making this faster and not slower.
For 50-length sequence generation:
cargo run --release --
--model-path /LLaMA/13B \
--param-path /LLaMA/13B/params.json \
--tokenizer-path /LLaMA/tokenizer.model \
--prompt "Computers are pretty complica" --max-seq-len 50
# commit c9c861d199bd2d87d7e883e3087661c1e287f6c4 (13 March 2023)
LLaMA-7B: AMD Ryzen 3950X: 1058ms / token
LLaMA-13B: AMD Ryzen 3950X: 2005ms / token
# commit 63d27dba9091823f8ba11a270ab5790d6f597311 (13 March 2023)
# This one has one part of the transformer moved to GPU as a type of smoke test
LLaMA-7B: AMD Ryzen 3950X + OpenCL RTX 3090 Ti: 567ms / token
LLaMA-7B: AMD Ryzen 3950X + OpenCL Ryzen 3950X: 956ms / token
LLaMA-13B: AMD Ryzen 3950X + OpenCL RTX 3090 Ti: 987ms / token
LLaMA-13B: AMD Ryzen 3950X + OpenCL Ryzen 3950X: 1706ms / token
# commit 35b0c372a87192761e17beb421699ea5ad4ac1ce (13 March 2023)
# I moved some attention stuff to OpenCL too.
LLaMA-7B: AMD Ryzen 3950X + OpenCL RTX 3090 Ti: 283ms / token
LLaMA-7B: AMD Ryzen 3950X + OpenCL Ryzen 3950X: 679ms / token
LLaMA-13B: AMD Ryzen 3950X + OpenCL RTX 3090 Ti: <ran out of GPU memory>
LLaMA-13B: AMD Ryzen 3950X + OpenCL Ryzen 3950X: 1226ms / token
# commit de5dd592777b3a4f5a9e8c93c8aeef25b9294364 (15 March 2023)
# The matrix multiplication on GPU is now much faster. It didn't have that much
# effect overall though, but I got modest improvement on LLaMA-7B GPU.
LLaMA-7B: AMD Ryzen 3950X + OpenCL RTX 3090 Ti: 247ms / token
LLaMA-7B: AMD Ryzen 3950X + OpenCL Ryzen 3950X: 680ms / token
LLaMA-13B: AMD Ryzen 3950X + OpenCL RTX 3090 Ti: <ran out of GPU memory>
LLaMA-13B: AMD Ryzen 3950X + OpenCL Ryzen 3950X: 1232ms / token
LLaMA-30B: AMD Ryzen 5950X + OpenCL Ryzen 5950X: 4098ms / token
# commit 3d0afcf24309f28ec540ed7645c35400a865ad6f (17 March 2023)
# I've been focusing on making the ordinary non-OpenCL CPU implementation
# faster and I got some gains, most importantly from multithreading.
# There is Float16 support now, so I've added f16/f32 to these tables:
#
# I also managed to run LLaMA-65B for the first time.
LLaMA-7B: AMD Ryzen 3950X: 552ms / token f16
LLaMA-7B: AMD Ryzen 3950X: 1008ms / token f32
LLaMA-13B: AMD Ryzen 3950X: 1029ms / token f16
LLaMA-13B: AMD Ryzen 3950X: 1930ms / token f32
LLaMA-30B: AMD Ryzen 5950X: 2112ms / token f16
LLaMA-65B: AMD Ryzen 5950X: 4186ms / token f16
# commit f5328ab5bd62fe9bd930539382b13e9033434a0b (5 April 2023)
# I've worked on making Vicuna-13B runnable and added an option to only
# partially use GPU. Improved one of the OpenCL kernels:
LLaMA-7B: AMD Ryzen 3950X + OpenCL RTX 3090 Ti: 420ms (at 90%/10% GPU/CPU split)
LLaMA-13B: AMD Ryzen 3950X + OpenCL RTX 3090 Ti: 216ms (at 100% GPU)