Granite Switch: Composable model building
Project description
Granite Switch — Build AI models like you build software
| Browse Adapters | Models on HF | Tutorials |
Most AI models are monolithic — all capabilities baked into one set of weights. Granite Switch lets you compose a model from independent, task-specific components: pick the capabilities you need, compose a single checkpoint in minutes, then swap or upgrade individual components as your needs change.
Browse available libraries in the Granite Libraries collection on Hugging Face.
Key Features
- Composable — Combine independently developed adapters into one checkpoint, whether IBM's or yours. Swap, upgrade, or customize without retraining.
- Fast — Built on IBM's Activated LoRA technology for efficient KV cache reuse, low latency, and high inference throughput.
- Accurate — Task-specific adapters can match and even surpass the accuracy of significantly larger generalist models, while requiring only a fraction of the serving cost. See the adapter catalog for benchmark comparisons across all 12 adapters.
- Inference-ready — Support for Hugging Face and vLLM.
Quick Start
Install
python -m venv venv && source venv/bin/activate
# Granite-Switch installation is based on your usecase:
pip install "granite-switch[compose]" # Compose modular models
pip install "granite-switch[hf]" # HuggingFace inference
pip install "granite-switch[vllm]" # vLLM production inference (0.19.x)
pip install "granite-switch[vllm20]" # vLLM 0.20+ (requires CUDA 13+)
pip install "granite-switch[dev]" # Everything (uses vLLM 0.19.x by default)
pip install "granite-switch[dev-vllm20]" # Dev environment with vLLM 0.20+
Requires Python 3.9+ and PyTorch 2.0+.
vLLM version note: This project currently defaults to vLLM 0.19.1 due to vLLM 0.20's dependency on CUDA 13.0+ (via PyTorch 2.11), which is incompatible with many existing environments running CUDA 12.x drivers. Use
.[vllm20]if your environment supports CUDA 13+.
Compose a Model
Compose a base Granite model with adapter libraries into a single deployable checkpoint:
python -m granite_switch.composer.compose_granite_switch \
--base-model ibm-granite/granite-4.1-3b \
--adapters ibm-granite/granitelib-core-r1.0 ibm-granite/granitelib-rag-r1.0 ibm-granite/granitelib-guardian-r1.0 \
--output ./my-model
Use the Adapter Composer to browse available adapters, compare benchmarks, and generate a ready-to-run compose command.
This downloads the base model, embeds compatible LoRA adapters (with a preference towards activated LoRA), adds control tokens and a chat template, and produces a model directory that works with both HuggingFace and vLLM.
For convenience, you can find already composed Granite Switch models for the Granite 4.1 model family here:
- ibm-granite/granite-switch-4.1-3b-preview
- ibm-granite/granite-switch-4.1-8b-preview
- ibm-granite/granite-switch-4.1-30b-preview
Run Inference
vLLM + Mellea (recommended):
pip install mellea
# Example with the 3B model
python -m vllm.entrypoints.openai.api_server --model ibm-granite/granite-switch-4.1-3b-preview --port 8000
from mellea.backends.openai import OpenAIBackend
from mellea.stdlib.components.intrinsic import rag
from mellea.stdlib.context import ChatContext
backend = OpenAIBackend(
model_id="ibm-granite/granite-switch-4.1-3b-preview",
base_url="http://localhost:8000/v1",
api_key="unused",
)
backend.register_embedded_adapter_model("ibm-granite/granite-switch-4.1-3b-preview")
query = "I want to ask you something. what is...mmmm the the main city(capital you call it,right?) of France?"
ctx = ChatContext()
rewritten = rag.rewrite_question(query, ctx, backend)
print(f"original: {query}")
print(f"rewritten: {rewritten}")
# => "What is the capital of France?"
HuggingFace:
import granite_switch.hf # Register HF backend
from transformers import AutoModelForCausalLM, AutoTokenizer
model = AutoModelForCausalLM.from_pretrained("ibm-granite/granite-switch-4.1-3b-preview", device_map="auto")
tokenizer = AutoTokenizer.from_pretrained("ibm-granite/granite-switch-4.1-3b-preview")
messages = [{"role": "user", "content": "What is the capital of France?"}]
documents = [{"doc_id": "1", "text": "Paris is the capital of France."}]
prompt = tokenizer.apply_chat_template(
messages,
documents=documents,
adapter_name="answerability", # activates the answerability adapter
add_generation_prompt=True,
tokenize=False,
)
outputs = model.generate(**tokenizer(prompt, return_tensors="pt").to(model.device))
print(tokenizer.decode(outputs[0], skip_special_tokens=True))
# => "answerable"
How It Works
Granite Switch uses a switch layer—a small attention-based mechanism that reads control tokens from the input and determines which adapter's LoRA weights to apply at each position.
What makes composition work:
- KV cache normalization — each adapter sees only the base model's KV cache, never another adapter's internal state
- No joint training required — adapters are developed, tested, and published independently
- Standard inference — The entire model loads in vLLM with zero code changes
Documentation
For detailed tutorials and many working examples, see the Tutorials section.
IBM ❤️ Open Source AI
Granite Switch was started by IBM Research.
License
Granite Switch has an Apache-2.0 license, as found in the LICENSE file.
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