The 2nd gen large language model released by Meta. The structure of this implementation of the model was inspired by Andrej Karpathy's llama.c, and originally written in Mojo by Aydyn Tairov. The model itself has been constructed from end to end in the Mojo language using the MAX Graph API.
Read the code and instructions, and run on desktop.
The 2nd gen large language model released by Meta. The structure of this implementation of the model was inspired by Andrej Karpathy's llama.c, and originally written in Mojo by Aydyn Tairov. The model itself has been constructed from end to end in the Mojo language using the MAX Graph API.
Read the code and instructions, and run on desktop.
Language: Mojo 🔥
API: MAX Graph
This pipeline demonstrates text completion from an initial prompt using the Llama 2 large language model. The model itself has been constructed from end to end in the Mojo language using the MAX Graph API.
The MAX Graph API provides an accessible Mojo interface to the construction of flexible accelerated compute graphs, which are then optimized by the MAX Engine's advanced graph compiler. This pipeline showcases how a large language model can be fully defined using Mojo and MAX Graphs and then compiled for optimal inference performance via the MAX Engine.
Llama 2 is an open source large language model released by Meta. The structure of this implementation was inspired by Andrej Karpathy's llama2.c, and originally written in Mojo by Aydyn Tairov.
The text completion demo is compatible with the the official Llama 2 text completion demo.
The default settings for this pipeline use the 7B set of pretrained weights in
q4_k
quantized encodings.
The easiest way to try out this pipeline is with our Magic command-line tool. Follow the instructions to install Magic. Once installed, you can try out text generation using Llama 2 with the following command:
magic run llama2 --prompt "I believe the meaning of life is"
On first execution, the tokenizer library and model weights will be
downloaded and placed in a .cache/modular
subdirectory within your home
directory. The model will then be compiled and text completion will begin from
the specified prompt.
To modify or build upon the pipeline code, you can use the following steps:
Install MAX:
If MAX is not already installed, follow the installation instructions to set it up on your system.
Clone the MAX examples repository:
If you don't already have a local clone of this repository, create one via:
git clone https://github.com/modularml/max.git
The following instructions assume that you're present within this pipeline's directory, and you can change to it after cloning:
cd max/examples/graph-api/pipelines/llama2/
(Optional) Install Python dependencies:
This enables using the HuggingFace
transformers AutoTokenizer.
If transformers
isn't found, a Mojo tokenizer implementation is used.
python3 -m pip install -r requirements.txt
Run the text completion demo:
To access the llama models, you need to agree to their license in Huggingface.
License is located here Llama-2-7b-hf
All of the pipelines have been configured to use a common driver, located in the directory hosting all MAX Graph examples. Assuming you're starting at the path of this README, the command invocation will look like:
mojo ../../run_pipeline.🔥 llama2 --prompt "I believe the meaning of life is"
The following command-line options are available to customize operation of the pipeline:
--model-path
: Overrides the default URL, and allows for an
already-downloaded pretrained weight file to be used with the model.--custom-ops-path
: The path to a compiled Mojo package containing a custom
graph operation to use within the pipeline.--tokenizer-path
: The path to the tokenizer library to be used by the
pipeline. (Default value: .cache/tokenizer.bin
)--max-length
: The context length of the model.
(Default value: 512)--max-new-tokens
: The maximum number of new tokens to generate. If a -1
value is provided, the model will continue to generate tokens for the entire
context length. (Default value: -1)--min-p
: The starting required percentage for
Min P sampling.
(Default value: 0.05)--prompt
: The text prompt to use for further generation.--quantization-encoding
: The encoding to use for a datatype that can be
quantized to a low bits per weight format. The options for quantized formats
will download and cache default weights, but float32
requires the use of
--model-path
to specify locally downloaded full-precision weights for use
in the model.
Valid values: q4_0
, q4_k
, q6_k
, float32
.
(Default value: q4_0
).--temperature
: The temperature for sampling, on a scale from 0.0 - 1.0,
with 0.0 being greedy sampling. (Default value: 0.5)There are many ways that this pipeline can be built upon or extended, and this is a short list of suggestions for future work:
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Graph
# ===----------------------------------------------------------------------=== #
# Copyright (c) 2024, Modular Inc. All rights reserved.
#
# Licensed under the Apache License v2.0 with LLVM Exceptions:
# https://llvm.org/LICENSE.txt
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
# ===----------------------------------------------------------------------=== #
from collections import Dict
import sys
from math import align_up
from memory import memcpy
from os import setenv
from pathlib import Path, cwd
from utils.index import Index
from max.engine import InferenceSession, Model, SessionOptions
from max.driver import (
AnyTensor,
AnyMojoValue,
Device,
Tensor,
cpu_device,
)
from max.tensor import TensorShape
from max.driver._cuda import cuda_device
from max.graph import Graph
from max.graph.quantization import (
Float32Encoding,
QuantizationEncoding,
Q4_0Encoding,
Q4_KEncoding,
Q6_KEncoding,
)
from max.serve.kv_cache.types import (
ContiguousKVCache,
ContiguousKVCacheManager,
ContiguousKVCacheCollection,
KVCacheLayout,
KVCacheStaticParams,
)
from ..llama3.kv_cache import KVCache
from ..llama3.metrics import Metrics
from .model import Llama2, QuantizedLlama2
from ..samplers.weighted_sampler import WeightedSampler
from .tokenizer.bpe import BPETokenizer
from ..configs.common import get_max_tokens_to_generate
from ..configs.llama import (
get_llama2_model_url,
LlamaConfigRegistry,
get_llama_base_default_config,
)
from ..configs.registry import ConfigRegistryDict
from ..configs.parse_args import (
OptionTypeEnum,
OptionValue,
parse_args,
register_pipeline_configs,
)
from ..tokenizer import AutoTokenizer, Tokenizer
from ..weights.download import download_to_cache, modular_cache_dir
from ..weights.gguf import GGUFFile
from ..weights.llama2checkpoint import LlamaCFile
from ..weights.loadable_model import LlamaHParams, LoadableModel
@value
struct Config:
"""Configuration for token generation runtime options."""
var config: Dict[String, OptionValue]
def __init__(inout self):
config_registry = LlamaConfigRegistry(ConfigRegistryDict())
default_configs = get_llama_base_default_config()
self.config = register_pipeline_configs(
config_registry.registry,
parse_args(),
default_configs,
)
# Check for invalid config
model_path = self.config["model-path"]
quantization_encoding = self.config["quantization-encoding"]
if (
model_path[Path].suffix() != ".gguf"
and not quantization_encoding[String]
):
raise (
"`--model-path` must be `.bin` or `.gguf` file. "
"Alternatively provide a `--quantization-encoding`"
)
fn get(inout self, key: String) raises -> OptionValue:
"""Returns an option value for `key` in the underlying config.
Args:
key: Key for the underlying config option.
Returns:
An OptionValue.
Raises:
An error for invalid key.
"""
return self.config[key]
fn set(inout self, key: String, val: OptionValue):
"""Sets a new value for a given config key. This will overwrite the old
value if the key is already present.
Args:
key: A string based key for the underlying config option.
val: A new value for a key that already exist.
"""
self.config[key] = val
def compile_graph(
graph: Graph,
execution_device: Device,
custom_ops_paths: List[Path] = List[Path](),
) -> Model:
"""Compiles a staged graph using the graph compiler."""
session = InferenceSession(SessionOptions(execution_device))
print("Compiling...")
return session.load(graph, custom_ops_paths=custom_ops_paths)
def _get_attention_mask(
prompt_mask: Tensor[DType.bool, 2], n: Int, host_device: Device
) -> AnyTensor:
mask = Tensor[DType.bool, rank=2](TensorShape(1, n), host_device)
memcpy(mask.unsafe_ptr(), prompt_mask.unsafe_ptr(), prompt_mask.spec()[1])
for i in range(prompt_mask.spec()[1], n):
mask[0, i] = True
return mask
def _generate_q_text_with_tokenizer[
tokenizer_type: Tokenizer,
](
inout tokenizer: tokenizer_type,
compiled_model: Model,
params: LlamaHParams,
config: Config,
inout metrics: Metrics,
execution_device: Device,
):
host_device = cpu_device()
metrics.begin_timing_prompt()
prompt = tokenizer.encode(
config.get("prompt")[String], bos=String("\n<s>\n")
)
padded_size = align_up(prompt.size, config.get("pad-to-multiple-of")[Int])
n_pad_tokens = padded_size - prompt.size
metrics.set_tokens_in_prompt(padded_size)
sampler = WeightedSampler(
config.get("temperature")[Float64].cast[DType.float32](),
config.get("min-p")[Float64].cast[DType.float32](),
)
# Allocate input & attention mask tensors, then initialize them.
# FIXME (MSDK-774): Padding logic should be handled by tokenizer instead.
tokens = Tensor[DType.int64, rank=2](
TensorShape(1, padded_size), host_device
)
prompt_attn_mask = Tensor[DType.bool, rank=2](
TensorShape(1, padded_size), host_device
)
for i in range(padded_size):
tokens[0, i] = 0 if i < n_pad_tokens else prompt[i - n_pad_tokens]
prompt_attn_mask[0, i] = False if i < n_pad_tokens else True
print("Executing...")
print(tokenizer.decode(prompt), end="")
kv_cache = KVCache(
params,
config.get("max-length")[Int],
config.get("batch-size")[Int],
host_device,
)
# The first iteration caches the entire prompt and all subsequent
# iterations generate one token.
# Avoid overrunning the cache by setting the trip count accordingly.
metrics.begin_timing_generation()
max_tokens = get_max_tokens_to_generate(
padded_size,
config.get("max-length")[Int],
config.get("max-new-tokens")[Int],
)
for i in range(padded_size, max_tokens + 1):
results = compiled_model.execute(
tokens.to_device_tensor().move_to(execution_device),
_get_attention_mask(prompt_attn_mask, i, host_device)
.to_device_tensor()
.move_to(execution_device),
kv_cache.keys_view(execution_device),
kv_cache.values_view(execution_device),
)
kv_cache.update(results[1].take(), results[2].take())
logits = results[0].take().to_device_tensor()
logits = logits.move_to(host_device)
logits_tensor = logits.to_tensor[DType.float32, rank=2]()
token = Int64(sampler.sample(logits_tensor^).selected)
tokens = Tensor[DType.int64, rank=2](TensorShape(1, 1), host_device)
tokens[0, 0] = token
metrics.new_token()
print(tokenizer.decode(token), end="")
print()
metrics.end_timing()
def _generate_text_with_tokenizer[
tokenizer_type: Tokenizer,
kv_params: KVCacheStaticParams,
](
inout tokenizer: tokenizer_type,
compiled_model: Model,
params: LlamaHParams,
config: Config,
inout metrics: Metrics,
execution_device: Device,
):
host_device = cpu_device()
metrics.begin_timing_prompt()
# Encode prompt and left pad-to-multiple-of
prompt = tokenizer.encode(
config.get("prompt")[String], bos=String("\n<s>\n")
)
padded_size = align_up(prompt.size, config.get("pad-to-multiple-of")[Int])
n_pad_tokens = padded_size - prompt.size
metrics.set_tokens_in_prompt(padded_size)
# Allocate input & attention mask tensors, then initialize them.
# FIXME (MSDK-774): Padding logic should be handled by tokenizer instead.
tokens = Tensor[DType.int64, rank=2](
TensorShape(1, padded_size), host_device
)
prompt_attn_mask = Tensor[DType.bool, rank=2](
TensorShape(1, padded_size), host_device
)
for i in range(padded_size):
tokens[0, i] = 0 if i < n_pad_tokens else prompt[i - n_pad_tokens]
prompt_attn_mask[0, i] = False if i < n_pad_tokens else True
max_tokens = get_max_tokens_to_generate(
padded_size,
config.get("max-length")[Int],
config.get("max-new-tokens")[Int],
)
# Initialize Sampler
sampler = WeightedSampler(
config.get("temperature")[Float64].cast[DType.float32](),
config.get("min-p")[Float64].cast[DType.float32](),
)
print("Executing...")
print(tokenizer.decode(prompt), end="")
kv_manager = ContiguousKVCacheManager[DType.float32, kv_params,](
config.get("batch-size")[Int],
max_tokens,
params.n_layers,
execution_device,
host_device,
)
kv_collection = kv_manager.claim(config.get("batch-size")[Int])
# The first iteration caches the entire prompt and all subsequent
# iterations generate one token.
# Avoid overrunning the cache by setting the trip count accordingly.
metrics.begin_timing_generation()
for i in range(padded_size, max_tokens + 1):
if i == padded_size:
valid_lengths = List[Int](padded_size)
else:
valid_lengths = List[Int](1)
# Update Mask
mask = Tensor[DType.bool, rank=2]((1, i), host_device)
memcpy(
mask.unsafe_ptr(),
prompt_attn_mask.unsafe_ptr(),
prompt_attn_mask.spec()[1],
)
for j in range(prompt_attn_mask.spec()[1], i):
mask[0, j] = True
result = compiled_model.execute(
tokens.move_to(execution_device),
mask.move_to(execution_device),
AnyMojoValue(kv_collection^),
)
logits = (
result[0]
.take()
.to_device_tensor()
.move_to(host_device)
.to_tensor[DType.float32, 2]()
)
kv_collection = (
result[1]
.take()
.to[ContiguousKVCacheCollection[DType.float32, kv_params]]()
)
kv_manager.step(valid_lengths, kv_collection)
token = SIMD[DType.int64, 1](sampler.sample(logits).selected)
tokens = Tensor[DType.int64, rank=2]((1, 1), host_device)
tokens[0, 0] = token
metrics.new_token()
print(tokenizer.decode(token), end="")
print()
metrics.end_timing()
_ = kv_manager^
_ = sampler^
# TODO: Delete this when we clean up quantize-tinystories
def generate_text[
layout: KVCacheLayout
](
compiled_model: Model,
params: LlamaHParams,
config: Config,
execution_device: Device,
inout metrics: Metrics,
):
"""Generated text by applying the compiled model to the provided prompt."""
mojo_tokenizer = BPETokenizer.from_file(config.get("tokenizer-path")[Path])
if params.n_kv_heads == 6 and params.head_dim == 48:
_generate_text_with_tokenizer[
BPETokenizer,
KVCacheStaticParams(num_heads=6, head_size=48, layout=layout),
](
mojo_tokenizer,
compiled_model,
params,
config=config,
execution_device=execution_device,
metrics=metrics,
)
else:
raise "Unsupported n_kv_head (" + str(
params.n_kv_heads
) + ") and head_dim (" + str(params.head_dim) + ")"
def run[
model_type: LoadableModel,
encoding: QuantizationEncoding,
target: StringLiteral,
kv_params: KVCacheStaticParams,
](config: Config) -> None:
# Initialize Device
execution_device = cpu_device() if target == "cpu" else cuda_device()
print("Building model...")
metrics = Metrics()
metrics.begin_timing_startup()
model_params = model_type(config.get("model-path")[Path])
params = model_params.hyperparams()
model = Llama2[model_type, kv_params, encoding](
model_params^,
)
graph = model.build_graph("llama2")
compiled_model = compile_graph(
graph, execution_device, config.get("custom-ops-path")[List[Path]]
)
metrics.end_timing_startup()
# Get Tokenizer
mojo_tokenizer = BPETokenizer.from_file(config.get("tokenizer-path")[Path])
_generate_text_with_tokenizer[BPETokenizer, kv_params](
mojo_tokenizer,
compiled_model,
params,
config=config,
execution_device=execution_device,
metrics=metrics,
)
def runq[
model_type: LoadableModel, encoding: QuantizationEncoding
](config: Config) -> None:
# initialize Metrics
metrics = Metrics()
metrics.begin_timing_startup()
# Build Model
model = QuantizedLlama2[model_type, encoding](
config.get("model-path")[Path],
)
params = model.hyperparams()
graph = model.build_graph("llama2")
# Quantized Llama can only be run on CPU
execution_device = cpu_device()
session_options = SessionOptions(execution_device)
session = InferenceSession(session_options)
compiled_model = compile_graph(
graph, execution_device, config.get("custom-ops-path")[List[Path]]
)
metrics.end_timing_startup()
mojo_tokenizer = BPETokenizer.from_file(config.get("tokenizer-path")[Path])
_generate_q_text_with_tokenizer[BPETokenizer](
mojo_tokenizer,
compiled_model,
params,
config=config,
execution_device=execution_device,
metrics=metrics,
)
def llama2_run():
config = Config()
encoding = config.get("quantization-encoding")[String]
# Download Model and Tokenizer as Needed
if not config.get("model-path")[Path]:
model_path = download_to_cache(get_llama2_model_url(encoding))
config.set("model-path", model_path)
if not config.get("tokenizer-path")[Path]:
tokenizer_path = download_to_cache(
"https://github.com/tairov/llama2.mojo/raw/master/tokenizer.bin",
)
config.set("tokenizer-path", tokenizer_path)
# Print CLI Warnings
if config.get("prompt")[String] == "I believe the meaning of life is":
print("Using default prompt, provide an argument to change it:")
print(' --prompt "Hello llama3"')
# Fork Pipeline Runs
if encoding != Float32Encoding.id():
if config.get("experimental-use-gpu")[Bool]:
raise encoding + " not available with 'experimental-use-gpu' option."
if encoding == Q4_0Encoding.id():
runq[GGUFFile, Q4_0Encoding](config)
elif encoding == Q4_KEncoding.id():
runq[GGUFFile, Q4_KEncoding](config)
elif encoding == Q6_KEncoding.id():
runq[GGUFFile, Q6_KEncoding](config)
else:
raise "--quantization-encoding " + encoding + " not supported"
else:
if config.get("experimental-use-gpu")[Bool]:
run[
LlamaCFile,
Float32Encoding,
"cuda",
KVCacheStaticParams(
num_heads=6, head_size=48, layout=KVCacheLayout.BSHD
),
](config)
else:
run[
LlamaCFile,
Float32Encoding,
"cpu",
KVCacheStaticParams(
num_heads=6, head_size=48, layout=KVCacheLayout.BHSD
),
](config)
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APPENDIX: How to apply the Apache License to your work.
To apply the Apache License to your work, attach the following
boilerplate notice, with the fields enclosed by brackets "[]"
replaced with your own identifying information. (Don't include
the brackets!) The text should be enclosed in the appropriate
comment syntax for the file format. We also recommend that a
file or class name and description of purpose be included on the
same "printed page" as the copyright notice for easier
identification within third-party archives.
Copyright [yyyy] [name of copyright owner]
Licensed under the Apache License, Version 2.0 (the "License");
you may not use this file except in compliance with the License.
You may obtain a copy of the License at
http://www.apache.org/licenses/LICENSE-2.0
Unless required by applicable law or agreed to in writing, software
distributed under the License is distributed on an "AS IS" BASIS,
WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
See the License for the specific language governing permissions and
limitations under the License.
---- LLVM Exceptions to the Apache 2.0 License ----
As an exception, if, as a result of your compiling your source code, portions of this Software are embedded into an Object form of such source code, you may redistribute such embedded portions in such Object form without complying with the conditions of Sections 4(a), 4(b) and 4(d) of the License.
In addition, if you combine or link compiled forms of this Software with software that is licensed under the GPLv2 ("Combined Software") and if a court of competent jurisdiction determines that the patent provision (Section 3), the indemnity provision (Section 9) or other Section of the License conflicts with the conditions of the GPLv2, you may retroactively and prospectively choose to deem waived or otherwise exclude such Section(s) of the License, but only in their entirety and only with respect to the Combined Software.
The LLVM Project contains third party software which is under different license terms. All such code will be identified clearly using at least one of two mechanisms:
LICENSE.txt
or
LICENSE
file at the top containing the specific license and restrictions
which apply to that software, or@ Copyright - Modular Inc - 2024