Skip to main content

cyllama is a comprehensive zero-dependencies Python library for local AI inference using the state-of-the-art llama, whisper, and stable-diffusion .cpp ecosystem.

Project description

cyllama - Fast, Pythonic AI Inference

cyllama is a no-dependencies Python library for local AI inference built on the .cpp inference stack:

It combines the performance of compiled Cython wrappers with a simple, high-level Python API for cross-modal AI inference.

Documentation | PyPI | Changelog

Features

  • High-level API -- complete(), chat(), LLM class for quick prototyping / text generation.

  • Streaming -- token-by-token output with callbacks

  • Batch processing -- process multiple prompts in parallel

  • GPU acceleration -- Metal (macOS), CUDA (NVIDIA), ROCm (AMD), Vulkan (cross-platform), SYCL (Intel)

  • Speculative decoding -- 2-3x speedup with draft models

  • Agent framework -- ReActAgent, ConstrainedAgent, ContractAgent with tool calling

  • RAG -- retrieval-augmented generation with local embeddings and sqlite-vector

  • Speech recognition -- whisper.cpp transcription and translation

  • Image/Video generation -- stable-diffusion.cpp handles image, image-edit and video models.

  • OpenAI-compatible servers -- EmbeddedServer (C/Mongoose) and PythonServer with chat completions and embeddings endpoints

  • Framework integrations -- OpenAI API client, LangChain LLM interface

Installation

From PyPI

pip install cyllama

This installs the cpu-backend for linux and windows. For MacOS, the Metal backend is installed by default to take advantage of Apple Silicon.

GPU-Accelerated Variants

GPU variants are available on PyPI as separate packages (dynamically linked, Linux x86_64 only for now):

pip install cyllama-cuda12   # NVIDIA GPU (CUDA 12.4)
pip install cyllama-rocm     # AMD GPU (ROCm 6.3, requires glibc >= 2.35)
pip install cyllama-sycl     # Intel GPU (oneAPI SYCL 2025.3)
pip install cyllama-vulkan   # Cross-platform GPU (Vulkan)

All variants install the same cyllama Python package -- only the compiled backend differs. Install one at a time (they replace each other). GPU variants require the corresponding driver/runtime installed on your system.

You can verify which backend is active after installation:

cyllama info

You can also query the backend configuration at runtime:

from cyllama import _backend
print(_backend.cuda)   # True if built with CUDA
print(_backend.metal)  # True if built with Metal

Build from source with a specific backend

GGML_CUDA=1 pip install cyllama --no-binary cyllama
GGML_VULKAN=1 pip install cyllama --no-binary cyllama

Command-Line Interface

cyllama provides a unified CLI for all major functionality:

# Text generation
cyllama gen -m models/llama.gguf -p "What is Python?" --stream
cyllama gen -m models/llama.gguf -p "Write a haiku" --temperature 0.9 --json

# Chat (single-turn or interactive)
cyllama chat -m models/llama.gguf -p "Explain gravity" -s "You are a physicist"
cyllama chat -m models/llama.gguf                      # interactive mode
cyllama chat -m models/llama.gguf -n 1024              # interactive, up to 1024 tokens per response
cyllama chat -m models/llama.gguf --stats              # show session stats on exit

# Embeddings
cyllama embed -m models/bge-small.gguf -t "hello world" -t "another text"
cyllama embed -m models/bge-small.gguf --dim                        # print dimensions
cyllama embed -m models/bge-small.gguf --similarity "cats" -f corpus.txt --threshold 0.5

# Other commands
cyllama rag -m models/llama.gguf -e models/bge-small.gguf -d docs/ -p "How do I configure X?"
cyllama rag -m models/llama.gguf -e models/bge-small.gguf -f file.md   # interactive mode
cyllama rag -m models/llama.gguf -e models/bge-small.gguf -d docs/ --db docs.sqlite -p "..."  # index to persistent DB
cyllama rag -m models/llama.gguf -e models/bge-small.gguf --db docs.sqlite -p "..."           # reuse existing DB, no re-indexing
cyllama server -m models/llama.gguf --port 8080
cyllama transcribe -m models/ggml-base.en.bin audio.wav
cyllama tts -m models/tts.gguf -p "Hello world"
cyllama sd txt2img --model models/sd.gguf --prompt "a sunset"
cyllama info       # build and backend information
cyllama memory -m models/llama.gguf  # GPU memory estimation

Run cyllama --help or cyllama <command> --help for full usage. See CLI Cheatsheet for the complete reference.

Quick Start

from cyllama import complete

# One line is all you need
response = complete(
    "Explain quantum computing in simple terms",
    model_path="models/llama.gguf",
    temperature=0.7,
    max_tokens=200
)
print(response)

Key Features

Simple by Default, Configurable When Needed

High-Level API - Get started in seconds:

from cyllama import complete, chat, LLM

# One-shot completion
response = complete("What is Python?", model_path="model.gguf")

# Multi-turn chat
messages = [
    {"role": "system", "content": "You are a helpful assistant."},
    {"role": "user", "content": "What is machine learning?"}
]
response = chat(messages, model_path="model.gguf")

# Reusable LLM instance (faster for multiple prompts)
llm = LLM("model.gguf")
response1 = llm("Question 1")
response2 = llm("Question 2")  # Model stays loaded!

Streaming Support - Real-time token-by-token output:

for chunk in complete("Tell me a story", model_path="model.gguf", stream=True):
    print(chunk, end="", flush=True)

Performance Optimized

Batch Processing - Process multiple prompts 3-10x faster:

from cyllama import batch_generate

prompts = ["What is 2+2?", "What is 3+3?", "What is 4+4?"]
responses = batch_generate(prompts, model_path="model.gguf")

Speculative Decoding - 2-3x speedup with draft models:

from cyllama.llama.llama_cpp import Speculative, SpeculativeParams

params = SpeculativeParams(n_max=16, p_min=0.75)
spec = Speculative(params, ctx_target)
draft_tokens = spec.draft(prompt_tokens, last_token)

Memory Optimization - Smart GPU layer allocation:

from cyllama import estimate_gpu_layers

estimate = estimate_gpu_layers(
    model_path="model.gguf",
    available_vram_mb=8000
)
print(f"Recommended GPU layers: {estimate.n_gpu_layers}")

N-gram Cache - 2-10x speedup for repetitive text:

from cyllama.llama.llama_cpp import NgramCache

cache = NgramCache()
cache.update(tokens, ngram_min=2, ngram_max=4)
draft = cache.draft(input_tokens, n_draft=16)

Response Caching - Cache LLM responses for repeated prompts:

from cyllama import LLM

# Enable caching with 100 entries and 1 hour TTL
llm = LLM("model.gguf", cache_size=100, cache_ttl=3600, seed=42)

response1 = llm("What is Python?")  # Cache miss - generates response
response2 = llm("What is Python?")  # Cache hit - returns cached response instantly

# Check cache statistics
info = llm.cache_info()  # ResponseCacheInfo(hits=1, misses=1, maxsize=100, currsize=1, ttl=3600)

# Clear cache when needed
llm.cache_clear()

Note: Caching requires a fixed seed (not the default random sentinel) since random seeds produce non-deterministic output. Streaming responses are not cached.

Framework Integrations

OpenAI-Compatible API - Drop-in replacement:

from cyllama.integrations import OpenAIClient

client = OpenAIClient(model_path="model.gguf")

response = client.chat.completions.create(
    messages=[{"role": "user", "content": "Hello!"}],
    temperature=0.7
)
print(response.choices[0].message.content)

LangChain Integration:

from cyllama.integrations import CyllamaLLM
from langchain.chains import LLMChain

llm = CyllamaLLM(model_path="model.gguf", temperature=0.7)
chain = LLMChain(llm=llm, prompt=prompt_template)
result = chain.run(topic="AI")

Agent Framework

Cyllama includes a zero-dependency agent framework with three agent architectures:

ReActAgent - Reasoning + Acting agent with tool calling:

from cyllama import LLM
from cyllama.agents import ReActAgent, tool
from simpleeval import simple_eval

@tool
def calculate(expression: str) -> str:
    """Evaluate a math expression safely."""
    return str(simple_eval(expression))

llm = LLM("model.gguf")
agent = ReActAgent(llm=llm, tools=[calculate])
result = agent.run("What is 25 * 4?")
print(result.answer)

ConstrainedAgent - Grammar-enforced tool calling for 100% reliability:

from cyllama.agents import ConstrainedAgent

agent = ConstrainedAgent(llm=llm, tools=[calculate])
result = agent.run("Calculate 100 / 4")  # Guaranteed valid tool calls

ContractAgent - Contract-based agent with C++26-inspired pre/post conditions:

from cyllama.agents import ContractAgent, tool, pre, post, ContractPolicy

@tool
@pre(lambda args: args['x'] != 0, "cannot divide by zero")
@post(lambda r: r is not None, "result must not be None")
def divide(a: float, x: float) -> float:
    """Divide a by x."""
    return a / x

agent = ContractAgent(
    llm=llm,
    tools=[divide],
    policy=ContractPolicy.ENFORCE,
    task_precondition=lambda task: len(task) > 10,
    answer_postcondition=lambda ans: len(ans) > 0,
)
result = agent.run("What is 100 divided by 4?")

See Agents Overview for detailed agent documentation.

Speech Recognition

Whisper Transcription - Transcribe audio files with timestamps:

from cyllama.whisper import WhisperContext, WhisperFullParams
import numpy as np

# Load model and audio
ctx = WhisperContext("models/ggml-base.en.bin")
samples = load_audio_as_16khz_float32("audio.wav")  # Your audio loading function

# Transcribe
params = WhisperFullParams()
ctx.full(samples, params)

# Get results
for i in range(ctx.full_n_segments()):
    start = ctx.full_get_segment_t0(i) / 100.0
    end = ctx.full_get_segment_t1(i) / 100.0
    text = ctx.full_get_segment_text(i)
    print(f"[{start:.2f}s - {end:.2f}s] {text}")

See Whisper docs for full documentation.

Stable Diffusion

Image Generation - Generate images from text using stable-diffusion.cpp:

from cyllama.sd import text_to_image

# Simple text-to-image
image = text_to_image(
    model_path="models/sd_xl_turbo_1.0.q8_0.gguf",
    prompt="a photo of a cute cat",
    width=512,
    height=512,
    sample_steps=4,
    cfg_scale=1.0
)
image.save("output.png")

Advanced Generation - Full control with SDContext:

from cyllama.sd import SDContext, SDContextParams

params = SDContextParams()
params.model_path = "models/sd_xl_turbo_1.0.q8_0.gguf"
params.n_threads = 4

ctx = SDContext(params)
# sample_method / scheduler / eta / wtype default to auto-resolve
# sentinels (SD C-library defaults) -- pass explicitly only to override.
images = ctx.generate(
    prompt="a beautiful mountain landscape",
    negative_prompt="blurry, ugly",
    width=512,
    height=512,
)

CLI Tool - Command-line interface:

# Text to image
cyllama sd txt2img \
    --model models/sd_xl_turbo_1.0.q8_0.gguf \
    --prompt "a beautiful sunset" \
    --output sunset.png

# Image to image
cyllama sd img2img \
    --model models/sd-v1-5.gguf \
    --init-img input.png \
    --prompt "oil painting style" \
    --strength 0.7

# Show system info
cyllama sd info

Supports SD 1.x/2.x, SDXL, SD3, FLUX, FLUX2, z-image-turbo, video generation (Wan/CogVideoX), LoRA, ControlNet, inpainting, and ESRGAN upscaling. See Stable Diffusion docs for full documentation.

RAG (Retrieval-Augmented Generation)

CLI - Query your documents from the command line:

# Single query against a directory of docs
cyllama rag -m models/llama.gguf -e models/bge-small.gguf \
    -d docs/ -p "How do I configure X?" --stream

# Interactive mode with source display
cyllama rag -m models/llama.gguf -e models/bge-small.gguf \
    -f guide.md -f faq.md --sources

# Persistent vector store: index once, reuse across runs
cyllama rag -m models/llama.gguf -e models/bge-small.gguf \
    -d docs/ --db docs.sqlite -p "How do I configure X?"   # first run: indexes to docs.sqlite
cyllama rag -m models/llama.gguf -e models/bge-small.gguf \
    --db docs.sqlite -p "Another question?"                # later runs: reuse index, no re-embedding

Simple RAG - Query your documents with LLMs:

from cyllama.rag import RAG

# Create RAG instance with embedding and generation models
rag = RAG(
    embedding_model="models/bge-small-en-v1.5-q8_0.gguf",
    generation_model="models/llama.gguf"
)

# Add documents
rag.add_texts([
    "Python is a high-level programming language.",
    "Machine learning is a subset of artificial intelligence.",
    "Neural networks are inspired by biological neurons."
])

# Query
response = rag.query("What is Python?")
print(response.text)

Load Documents - Support for multiple file formats:

from cyllama.rag import RAG, load_directory

rag = RAG(
    embedding_model="models/bge-small-en-v1.5-q8_0.gguf",
    generation_model="models/llama.gguf"
)

# Load all documents from a directory
documents = load_directory("docs/", glob="**/*.md")
rag.add_documents(documents)

response = rag.query("How do I configure the system?")

Hybrid Search - Combine vector and keyword search:

from cyllama.rag import RAG, HybridStore, Embedder

embedder = Embedder("models/bge-small-en-v1.5-q8_0.gguf")
store = HybridStore("knowledge.db", embedder)

store.add_texts(["Document content..."])

# Hybrid search with configurable weights
results = store.search("query", k=5, vector_weight=0.7, fts_weight=0.3)

Embedding Cache - Speed up repeated queries with LRU caching:

from cyllama.rag import Embedder

# Enable cache with 1000 entries
embedder = Embedder("models/bge-small-en-v1.5-q8_0.gguf", cache_size=1000)

embedder.embed("hello")  # Cache miss
embedder.embed("hello")  # Cache hit - instant return

info = embedder.cache_info()
print(f"Hits: {info.hits}, Misses: {info.misses}")

Agent Integration - Use RAG as an agent tool:

from cyllama import LLM
from cyllama.agents import ReActAgent
from cyllama.rag import RAG, create_rag_tool

rag = RAG(
    embedding_model="models/bge-small-en-v1.5-q8_0.gguf",
    generation_model="models/llama.gguf"
)
rag.add_texts(["Your knowledge base..."])

# Create a tool from the RAG instance
search_tool = create_rag_tool(rag)

llm = LLM("models/llama.gguf")
agent = ReActAgent(llm=llm, tools=[search_tool])
result = agent.run("Find information about X in the knowledge base")

Supports text chunking, multiple embedding pooling strategies, LRU caching for repeated queries, async operations, reranking, and SQLite-vector for persistent storage. See RAG Overview for full documentation.

Common Utilities

GGUF File Manipulation - Inspect and modify model files:

from cyllama.llama.llama_cpp import GGUFContext

ctx = GGUFContext.from_file("model.gguf")
metadata = ctx.get_all_metadata()
print(f"Model: {metadata['general.name']}")

Structured Output - JSON schema to grammar conversion (pure Python, no C++ dependency):

from cyllama.llama.llama_cpp import json_schema_to_grammar

schema = {"type": "object", "properties": {"name": {"type": "string"}}}
grammar = json_schema_to_grammar(schema)

Huggingface Model Downloads:

from cyllama.llama.llama_cpp import download_model, list_cached_models, get_hf_file

# Download from HuggingFace (saves to ~/.cache/llama.cpp/)
download_model("bartowski/Llama-3.2-1B-Instruct-GGUF:latest")

# Or with explicit parameters
download_model(hf_repo="bartowski/Llama-3.2-1B-Instruct-GGUF:latest")

# Download specific file to custom path
download_model(
    hf_repo="bartowski/Llama-3.2-1B-Instruct-GGUF",
    hf_file="Llama-3.2-1B-Instruct-Q8_0.gguf",
    model_path="./models/my_model.gguf"
)

# Get file info without downloading
info = get_hf_file("bartowski/Llama-3.2-1B-Instruct-GGUF:latest")
print(info)  # {'repo': '...', 'gguf_file': '...', 'mmproj_file': '...'}

# List cached models
models = list_cached_models()

What's Inside

Text Generation (llama.cpp)

  • Full llama.cpp API - Cython wrapper with strong typing

  • High-Level API - Simple, Pythonic interface (LLM, complete, chat)

  • Streaming Support - Token-by-token generation with callbacks

  • Batch Processing - Efficient parallel inference

  • Multimodal - LLAVA and vision-language models

  • Speculative Decoding - 2-3x inference speedup with draft models

Speech Recognition (whisper.cpp)

  • Full whisper.cpp API - Cython wrapper

  • High-Level API - Simple transcribe() function

  • Multiple Formats - WAV, MP3, FLAC, and more

  • Language Detection - Automatic or specified language

  • Timestamps - Word and segment-level timing

Image & Video Generation (stable-diffusion.cpp)

  • Full stable-diffusion.cpp API - Cython wrapper

  • Text-to-Image - SD 1.x/2.x, SDXL, SD3, FLUX, FLUX2, Z-Image

  • Image-to-Image - Transform existing images

  • Inpainting - Mask-based editing

  • ControlNet - Guided generation with edge/pose/depth

  • Video Generation - Wan, CogVideoX models

  • Upscaling - ESRGAN 4x upscaling

Cross-Cutting Features

  • GPU Acceleration - Metal, CUDA, ROCm, Vulkan, SYCL backends

  • Memory Optimization - Smart GPU layer allocation

  • Agent Framework - ReActAgent, ConstrainedAgent, ContractAgent

  • Framework Integration - OpenAI API, LangChain, FastAPI

Why Cyllama?

Performance: Compiled Cython wrappers with minimal overhead

  • Strong type checking at compile time

  • Zero-copy data passing where possible

  • Efficient memory management

  • Native integration with llama.cpp optimizations

Simplicity: From 50 lines to 1 line for basic generation

  • Pythonic API

  • Automatic resource management

  • Sensible defaults, full control when needed

Well-tested with broad api coverage

  • Extensive test coverage across the API surface

  • Documentation and examples fir each module

  • Proper error handling and logging

  • Framework integration for real applications

Up-to-Date: Tracks bleeding-edge llama.cpp

  • Regular updates with latest features

  • All high-priority APIs wrapped

  • Performance optimizations included

Status

Build System: scikit-build-core + CMake

See pyproject.toml for the current cyllama version and CHANGELOG.md for the pinned llama.cpp / whisper.cpp / stable-diffusion.cpp revisions.

Platform & GPU Availability

Pre-built wheels on PyPI:

Package Backend Platform Arch Linking
cyllama CPU Linux x86_64 static
cyllama CPU Windows x86_64 static
cyllama Metal macOS arm64 (Apple Silicon) static
cyllama Metal macOS x86_64 (Intel) static
cyllama-cuda12 CUDA 12.4 Linux x86_64 dynamic
cyllama-rocm ROCm 6.3 Linux x86_64 dynamic
cyllama-sycl Intel SYCL (oneAPI 2025.3) Linux x86_64 dynamic
cyllama-vulkan Vulkan Linux x86_64 dynamic

We will be adding additional wheel support for more platforms in the future, starting with vulkan and cuda12 support Windows.

Build from source (any platform with a C++ toolchain):

Backend macOS Linux Windows
CPU make build-cpu make build-cpu make build-cpu
Metal make build-metal (default) -- --
CUDA -- make build-cuda make build-cuda
ROCm (HIP) -- make build-hip --
Vulkan make build-vulkan make build-vulkan make build-vulkan
SYCL -- make build-sycl --
OpenCL make build-opencl make build-opencl make build-opencl

All source builds support both static (make build-<backend>) and dynamic (make build-<backend>-dynamic) linking.

Recent Releases

See CHANGELOG.md for full release notes.

  • v0.2.13 (Apr 2026) - QdrantVectorStore reference adapter for VectorStoreProtocol; pipeline-integrated reranking (RAGConfig.rerank) with RerankerProtocol; ccache + concurrency groups on CPU cibw workflows; Windows GPU-wheel LoadLibraryW PATH fix

  • v0.2.12 - Windows-CUDA, Windows-Vulkan, and macOS-Intel Vulkan GPU wheels; canonical delocate/auditwheel/delvewheel packaging. Experimental abi3 wheels (cp312+)

  • v0.2.11 (Apr 2026) - Pluggable RAG backends (VectorStoreProtocol / EmbedderProtocol) and MCP client API on LLM

  • v0.2.10 (Apr 2026) - GPU wheel size halved; packaging fixes (build_config.json, auditwheel SONAME, Vulkan ABI)

  • v0.2.9 (Apr 2026) - CUDA + SD stability fixes; get_perf_data() telemetry APIs

  • v0.2.8 (Apr 2026) - Expanded Cython bindings across llama / whisper / SD; interactive-chat streaming & sampling

  • v0.2.7 (Apr 2026) - SD defaults aligned with C library (fixes blank CUDA images)

  • v0.2.6 (Apr 2026) - Hotfix: remove accidental test-only runtime dependency

  • v0.2.5 (Apr 2026) - RAG hardening: persistent store, corpus dedup, vendored jinja2 chat templates

  • v0.2.4 (Apr 2026) - Unified cyllama CLI (gen, chat, embed, rag, …)

  • v0.2.3 (Apr 2026) - Wheel packaging and GPU portability fixes

  • v0.2.2 (Apr 2026) - CUDA wheel size stability

  • v0.2.1 (Mar 2026) - Code-quality hardening, GIL release, async fixes

  • v0.2.0 (Mar 2026) - Dynamic-linked GPU wheels on PyPI (CUDA, ROCm, SYCL, Vulkan)

  • v0.1.21 (Mar 2026) - GPU wheel builds: CUDA + ROCm, sqlite-vector bundled

  • v0.1.20 (Feb 2026) - Update llama.cpp + stable-diffusion.cpp

  • v0.1.19 (Dec 2025) - Metal fix for stable-diffusion.cpp

  • v0.1.18 (Dec 2025) - Remaining stable-diffusion.cpp wrapped

  • v0.1.16 (Dec 2025) - Response class, Async API, Chat templates

  • v0.1.12 (Nov 2025) - Initial wrapper of stable-diffusion.cpp

  • v0.1.11 (Nov 2025) - ACP support, build improvements

  • v0.1.10 (Nov 2025) - Agent Framework, bug fixes

  • v0.1.9 (Nov 2025) - High-level APIs, integrations, batch processing, comprehensive documentation

  • v0.1.8 (Nov 2025) - Speculative decoding API

  • v0.1.7 (Nov 2025) - GGUF, JSON Schema, Downloads, N-gram Cache

  • v0.1.6 (Nov 2025) - Multimodal test fixes

  • v0.1.5 (Oct 2025) - Mongoose server, embedded server

  • v0.1.4 (Oct 2025) - Memory estimation, performance optimizations

See CHANGELOG.md for complete release history.

Building from Source

To build cyllama from source:

  1. A recent version of python3 (currently testing on python 3.13)

  2. Git clone the latest version of cyllama:

    git clone https://github.com/shakfu/cyllama.git
    cd cyllama
    
  3. We use uv for package management:

    If you don't have it see the link above to install it, otherwise:

    uv sync
    
  4. Type make in the terminal.

    This will:

    1. Download and build llama.cpp, whisper.cpp and stable-diffusion.cpp
    2. Install them into the thirdparty folder
    3. Build cyllama using scikit-build-core + CMake

Build Commands

# Full build (default: static linking, builds llama.cpp from source)
make              # Build dependencies + editable install

# Dynamic linking (downloads pre-built llama.cpp release)
make build-dynamic  # No source compilation needed for llama.cpp

# Build wheel for distribution
make wheel        # Creates wheel in dist/
make dist         # Creates sdist + wheel in dist/

# Backend-specific builds (static)
make build-cpu    # CPU only
make build-metal  # macOS Metal (default on macOS)
make build-cuda   # NVIDIA CUDA
make build-vulkan # Vulkan (cross-platform)
make build-hip    # AMD ROCm
make build-sycl   # Intel SYCL
make build-opencl # OpenCL

# Backend-specific builds (dynamic -- shared libs)
make build-cpu-dynamic
make build-cuda-dynamic
make build-vulkan-dynamic
make build-metal-dynamic
make build-hip-dynamic
make build-sycl-dynamic
make build-opencl-dynamic

# Backend-specific wheels (static and dynamic)
make wheel-cuda           # Static wheel
make wheel-cuda-dynamic   # Dynamic wheel with shared libs

# Clean and rebuild
make clean        # Remove build artifacts + dynamic libs
make reset        # Full reset including thirdparty and .venv
make remake       # Clean rebuild with tests

# Code quality
make lint         # Lint with ruff (auto-fix)
make format       # Format with ruff
make typecheck    # Type check with mypy
make qa           # Run all: lint, typecheck, format

# Memory leak detection
make leaks        # RSS-growth leak check (10 cycles, 20% threshold)

# Publishing
make check        # Validate wheels with twine
make publish      # Upload to PyPI
make publish-test # Upload to TestPyPI

GPU Acceleration

By default, cyllama builds with Metal support on macOS and CPU-only on Linux. To enable other GPU backends (CUDA, Vulkan, etc.):

# Static builds (all libs compiled in)
make build-cuda
make build-vulkan

# Dynamic builds (shared libs installed alongside extension)
make build-cuda-dynamic
make build-vulkan-dynamic

# Multiple backends
export GGML_CUDA=1 GGML_VULKAN=1
make build

See Build Backends for comprehensive backend build instructions.

Multi-GPU Configuration

For systems with multiple GPUs, cyllama provides full control over GPU selection and model splitting:

from cyllama import LLM, GenerationConfig

# Use a specific GPU (GPU index 1)
llm = LLM("model.gguf", main_gpu=1)

# Multi-GPU with layer splitting (default mode)
llm = LLM("model.gguf", split_mode=1, n_gpu_layers=-1)

# Multi-GPU with tensor parallelism (row splitting)
llm = LLM("model.gguf", split_mode=2, n_gpu_layers=-1)

# Custom tensor split: 30% GPU 0, 70% GPU 1
llm = LLM("model.gguf", tensor_split=[0.3, 0.7])

# Full configuration via GenerationConfig
config = GenerationConfig(
    main_gpu=0,
    split_mode=1,          # 0=NONE, 1=LAYER, 2=ROW
    tensor_split=[1, 2],   # 1/3 GPU0, 2/3 GPU1
    n_gpu_layers=-1
)
llm = LLM("model.gguf", config=config)

Split Modes:

  • 0 (NONE): Single GPU only, uses main_gpu

  • 1 (LAYER): Split layers and KV cache across GPUs (default)

  • 2 (ROW): Tensor parallelism - split layers with row-wise distribution

Testing

The tests directory in this repo provides extensive examples of using cyllama.

However, as a first step, you should download a smallish llm in the .gguf model from huggingface. A good small model to start and which is assumed by tests is Llama-3.2-1B-Instruct-Q8_0.gguf. cyllama expects models to be stored in a models folder in the cloned cyllama directory. So to create the models directory if doesn't exist and download this model, you can just type:

make download

This basically just does:

cd cyllama
mkdir models && cd models
wget https://huggingface.co/unsloth/Llama-3.2-1B-Instruct-GGUF/resolve/main/Llama-3.2-1B-Instruct-Q8_0.gguf

Now you can test it using llama-cli or llama-simple:

bin/llama-cli -c 512 -n 32 -m models/Llama-3.2-1B-Instruct-Q8_0.gguf \
 -p "Is mathematics discovered or invented?"

The library covers both quick prototyping and longer-running deployments:

make test  # Run full test suite

You can also explore interactively:

python3 -i scripts/start.py

>>> from cyllama import complete
>>> response = complete("What is 2+2?", model_path="models/Llama-3.2-1B-Instruct-Q8_0.gguf")
>>> print(response)

Documentation

Full documentation is available at https://shakfu.github.io/cyllama/ (built with MkDocs).

To serve docs locally: make docs-serve

Roadmap

Completed

  • Full llama.cpp API wrapper with Cython

  • High-level API (LLM, complete, chat)

  • Async API support (AsyncLLM, complete_async, chat_async)

  • Response class with stats and serialization

  • Built-in chat template system (llama.cpp templates)

  • Batch processing utilities

  • OpenAI-compatible API client

  • LangChain integration

  • Speculative decoding

  • GGUF file manipulation

  • JSON schema to grammar conversion

  • Model download helper

  • N-gram cache

  • OpenAI-compatible servers (PythonServer, EmbeddedServer, LlamaServer) with chat and embeddings

  • Whisper.cpp integration

  • Multimodal support (LLAVA)

  • Memory estimation utilities

  • Agent Framework (ReActAgent, ConstrainedAgent, ContractAgent)

  • Stable Diffusion (stable-diffusion.cpp) - image/video generation

  • RAG utilities (text chunking, document processing)

Future

  • Web UI for testing

Contributing

Contributions are welcome! Please see the User Guide for development guidelines.

License

This project wraps llama.cpp, whisper.cpp, and stable-diffusion.cpp which all follow the MIT licensing terms, as does cyllama.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distributions

No source distribution files available for this release.See tutorial on generating distribution archives.

Built Distributions

If you're not sure about the file name format, learn more about wheel file names.

cyllama_vulkan-0.2.14-cp314-cp314-win_amd64.whl (30.9 MB view details)

Uploaded CPython 3.14Windows x86-64

cyllama_vulkan-0.2.14-cp314-cp314-manylinux_2_31_x86_64.manylinux_2_35_x86_64.whl (31.7 MB view details)

Uploaded CPython 3.14manylinux: glibc 2.31+ x86-64manylinux: glibc 2.35+ x86-64

cyllama_vulkan-0.2.14-cp314-cp314-macosx_11_0_x86_64.whl (31.4 MB view details)

Uploaded CPython 3.14macOS 11.0+ x86-64

cyllama_vulkan-0.2.14-cp313-cp313-win_amd64.whl (30.8 MB view details)

Uploaded CPython 3.13Windows x86-64

cyllama_vulkan-0.2.14-cp313-cp313-manylinux_2_31_x86_64.manylinux_2_35_x86_64.whl (31.7 MB view details)

Uploaded CPython 3.13manylinux: glibc 2.31+ x86-64manylinux: glibc 2.35+ x86-64

cyllama_vulkan-0.2.14-cp313-cp313-macosx_11_0_x86_64.whl (31.4 MB view details)

Uploaded CPython 3.13macOS 11.0+ x86-64

cyllama_vulkan-0.2.14-cp312-cp312-win_amd64.whl (30.8 MB view details)

Uploaded CPython 3.12Windows x86-64

cyllama_vulkan-0.2.14-cp312-cp312-manylinux_2_31_x86_64.manylinux_2_35_x86_64.whl (31.7 MB view details)

Uploaded CPython 3.12manylinux: glibc 2.31+ x86-64manylinux: glibc 2.35+ x86-64

cyllama_vulkan-0.2.14-cp312-cp312-macosx_11_0_x86_64.whl (31.4 MB view details)

Uploaded CPython 3.12macOS 11.0+ x86-64

cyllama_vulkan-0.2.14-cp311-cp311-win_amd64.whl (30.8 MB view details)

Uploaded CPython 3.11Windows x86-64

cyllama_vulkan-0.2.14-cp311-cp311-manylinux_2_31_x86_64.manylinux_2_35_x86_64.whl (31.8 MB view details)

Uploaded CPython 3.11manylinux: glibc 2.31+ x86-64manylinux: glibc 2.35+ x86-64

cyllama_vulkan-0.2.14-cp311-cp311-macosx_11_0_x86_64.whl (31.4 MB view details)

Uploaded CPython 3.11macOS 11.0+ x86-64

cyllama_vulkan-0.2.14-cp310-cp310-win_amd64.whl (30.8 MB view details)

Uploaded CPython 3.10Windows x86-64

cyllama_vulkan-0.2.14-cp310-cp310-manylinux_2_31_x86_64.manylinux_2_35_x86_64.whl (31.8 MB view details)

Uploaded CPython 3.10manylinux: glibc 2.31+ x86-64manylinux: glibc 2.35+ x86-64

cyllama_vulkan-0.2.14-cp310-cp310-macosx_11_0_x86_64.whl (31.4 MB view details)

Uploaded CPython 3.10macOS 11.0+ x86-64

File details

Details for the file cyllama_vulkan-0.2.14-cp314-cp314-win_amd64.whl.

File metadata

File hashes

Hashes for cyllama_vulkan-0.2.14-cp314-cp314-win_amd64.whl
Algorithm Hash digest
SHA256 53d1b7fa961b4444afa211dc393b14cee0bb844b9260cc0e61664d2f2457b481
MD5 e030a319070917c43b8b86dad7641248
BLAKE2b-256 2f81656b0bba6f846b5f921b6c6bb343441efd8045d3f5c579e2e1c8f1334d52

See more details on using hashes here.

File details

Details for the file cyllama_vulkan-0.2.14-cp314-cp314-manylinux_2_31_x86_64.manylinux_2_35_x86_64.whl.

File metadata

File hashes

Hashes for cyllama_vulkan-0.2.14-cp314-cp314-manylinux_2_31_x86_64.manylinux_2_35_x86_64.whl
Algorithm Hash digest
SHA256 c3ad86df81ac098be58a2e5b4e9b0c29fcda4170cc4bff8adfc3087891970579
MD5 eb1ef1322a1e25637f78dc82124e7ad1
BLAKE2b-256 1c07d86763c5065849c7337a817e46142d81769e8bf96b7177bebf6be0bfa2d5

See more details on using hashes here.

File details

Details for the file cyllama_vulkan-0.2.14-cp314-cp314-macosx_11_0_x86_64.whl.

File metadata

File hashes

Hashes for cyllama_vulkan-0.2.14-cp314-cp314-macosx_11_0_x86_64.whl
Algorithm Hash digest
SHA256 af95a70d080f0826a6a5cb51c601cc344c44cc85d7c49aeb912fbc0cc9c4e385
MD5 7ce97e17c201707cd607a8a283811b0f
BLAKE2b-256 9f4944188bb128150f7b80421e3d701a3f6ee8ecff1ef8fb72b45d2aa0ca82f1

See more details on using hashes here.

File details

Details for the file cyllama_vulkan-0.2.14-cp313-cp313-win_amd64.whl.

File metadata

File hashes

Hashes for cyllama_vulkan-0.2.14-cp313-cp313-win_amd64.whl
Algorithm Hash digest
SHA256 2b581f9eb76989daaeaded5c1c499c96b011b7c65d67973847d97b4fd3dbc282
MD5 5bb8171e1062608abebd5e942d662bc7
BLAKE2b-256 0cf0a212ea8e2dca95ed43f0b2d4c157d7117415a219464c60b2e6107e88e29b

See more details on using hashes here.

File details

Details for the file cyllama_vulkan-0.2.14-cp313-cp313-manylinux_2_31_x86_64.manylinux_2_35_x86_64.whl.

File metadata

File hashes

Hashes for cyllama_vulkan-0.2.14-cp313-cp313-manylinux_2_31_x86_64.manylinux_2_35_x86_64.whl
Algorithm Hash digest
SHA256 9f5c87d762dee22cc8a8e160d83c7683dec2af0890d4d2176ff3d080f0997995
MD5 6f2bf0ef98f775b43165cf916fd50c7c
BLAKE2b-256 020bb81378891459c2eb201ec20fa39e91c63575d40c7cb4996bd03972f298be

See more details on using hashes here.

File details

Details for the file cyllama_vulkan-0.2.14-cp313-cp313-macosx_11_0_x86_64.whl.

File metadata

File hashes

Hashes for cyllama_vulkan-0.2.14-cp313-cp313-macosx_11_0_x86_64.whl
Algorithm Hash digest
SHA256 aa8c48de2622dc0c9e1075df715600227ce303ac78cbbce3c3505dd0027cc06b
MD5 3601b99d49cb2a00e514118ce6db8d10
BLAKE2b-256 ab3974e02f40e3a3e20888b3cb7951a5c20b5ec80524f44dcef396dde4e95160

See more details on using hashes here.

File details

Details for the file cyllama_vulkan-0.2.14-cp312-cp312-win_amd64.whl.

File metadata

File hashes

Hashes for cyllama_vulkan-0.2.14-cp312-cp312-win_amd64.whl
Algorithm Hash digest
SHA256 7dd88db7ac893cd2f351901dee58c1f5fb9a95ce3c21b68632958da0c3eb2936
MD5 261f9cd861521f05d072f94724d52972
BLAKE2b-256 183f8607411de458200997f18548c9e99cef90abe4b5648fcf2542d95ce36049

See more details on using hashes here.

File details

Details for the file cyllama_vulkan-0.2.14-cp312-cp312-manylinux_2_31_x86_64.manylinux_2_35_x86_64.whl.

File metadata

File hashes

Hashes for cyllama_vulkan-0.2.14-cp312-cp312-manylinux_2_31_x86_64.manylinux_2_35_x86_64.whl
Algorithm Hash digest
SHA256 0e7097c787ac4c7ea9aadba115164308746695997bc001fa1b5a4cc87b44b788
MD5 c312e7fcea4607b114c9539f32a29ad6
BLAKE2b-256 8837860f3e59651fd2fa500872392beaad057fbdd98938915ebec1622e8ce95c

See more details on using hashes here.

File details

Details for the file cyllama_vulkan-0.2.14-cp312-cp312-macosx_11_0_x86_64.whl.

File metadata

File hashes

Hashes for cyllama_vulkan-0.2.14-cp312-cp312-macosx_11_0_x86_64.whl
Algorithm Hash digest
SHA256 c7a8811f55bbbe6803b06e3aa37641e95d8b19cb655e9f2422a272a475359692
MD5 74fc04c3c9ebc05969adca2598e4ce9d
BLAKE2b-256 45ef2bca61dab85880a11cba7ca269a736000628be237fe202e8c820bd42b0b9

See more details on using hashes here.

File details

Details for the file cyllama_vulkan-0.2.14-cp311-cp311-win_amd64.whl.

File metadata

File hashes

Hashes for cyllama_vulkan-0.2.14-cp311-cp311-win_amd64.whl
Algorithm Hash digest
SHA256 0ef2bb5fbf1c51809f6f9593c81cc4acdc013816148118b26f955cc6682f3f47
MD5 84f41410de9b13fe31ec55190a28a246
BLAKE2b-256 c306804d6f2e91014eeb68602b0197421a4bb42e915042a5f71317613d9214b3

See more details on using hashes here.

File details

Details for the file cyllama_vulkan-0.2.14-cp311-cp311-manylinux_2_31_x86_64.manylinux_2_35_x86_64.whl.

File metadata

File hashes

Hashes for cyllama_vulkan-0.2.14-cp311-cp311-manylinux_2_31_x86_64.manylinux_2_35_x86_64.whl
Algorithm Hash digest
SHA256 8abc7b784650f456742c0b1505b76c04b74c8a6420455d45b0478f128fda073c
MD5 492243be4d22dffc7ccdba4f51833bdf
BLAKE2b-256 c6c8ea352148c3c5c061917fe49f650ebbcee0459013805f4ca0f77c7de8defa

See more details on using hashes here.

File details

Details for the file cyllama_vulkan-0.2.14-cp311-cp311-macosx_11_0_x86_64.whl.

File metadata

File hashes

Hashes for cyllama_vulkan-0.2.14-cp311-cp311-macosx_11_0_x86_64.whl
Algorithm Hash digest
SHA256 d7368098399b2ebffd60119ef37da5aad6114c521db3053eb414e0f00b8d1bcf
MD5 7b299ca3782c1e2fbaf8586f3026d7d3
BLAKE2b-256 136bca8cfe03adceec46a893c4101c571b569f4257a3d591a1fae35a4071ab8c

See more details on using hashes here.

File details

Details for the file cyllama_vulkan-0.2.14-cp310-cp310-win_amd64.whl.

File metadata

File hashes

Hashes for cyllama_vulkan-0.2.14-cp310-cp310-win_amd64.whl
Algorithm Hash digest
SHA256 d3466c678695409e608df77e674d0a8dd6f9442d5888d5b15953eb4ad5ce0b83
MD5 c19f6dd0dc94ec5e1d07173349180652
BLAKE2b-256 38d00b0568c0a6db3fe9f54c2e507f424f6c3162d8d78484c91fca9f140a4f01

See more details on using hashes here.

File details

Details for the file cyllama_vulkan-0.2.14-cp310-cp310-manylinux_2_31_x86_64.manylinux_2_35_x86_64.whl.

File metadata

File hashes

Hashes for cyllama_vulkan-0.2.14-cp310-cp310-manylinux_2_31_x86_64.manylinux_2_35_x86_64.whl
Algorithm Hash digest
SHA256 7a2d2671a8a01587f4b8aa72175bd4581c3e2e15c76789059f5b59888c5506c0
MD5 6a5ea6a4291b06b7c0a346d3b761e431
BLAKE2b-256 8b5687a2b2293b447390015d09ec08f25306016ca7a9719153200328c2e6aabf

See more details on using hashes here.

File details

Details for the file cyllama_vulkan-0.2.14-cp310-cp310-macosx_11_0_x86_64.whl.

File metadata

File hashes

Hashes for cyllama_vulkan-0.2.14-cp310-cp310-macosx_11_0_x86_64.whl
Algorithm Hash digest
SHA256 314994d1f089f373c9d57d7b6f755d8c47bcbc22caefb39024646a9603c71169
MD5 f597249f16493339e03611f05081483b
BLAKE2b-256 ea6e1993d514fcf990e3180b3c1585b06385c913e1b24747767637ea0e6c65ae

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page