Pooling Models#
vLLM also supports pooling models, including embedding, reranking and reward models.
In vLLM, pooling models implement the VllmModelForPooling interface.
These models use a Pooler to extract the final hidden states of the input
before returning them.
Note
We currently support pooling models primarily as a matter of convenience. As shown in the Compatibility Matrix, most vLLM features are not applicable to pooling models as they only work on the generation or decode stage, so performance may not improve as much.
For pooling models, we support the following --task options.
The selected option sets the default pooler used to extract the final hidden states:
Task |
Pooling Type |
Normalization |
Softmax |
|---|---|---|---|
Embedding ( |
|
✅︎ |
❌ |
Classification ( |
|
❌ |
✅︎ |
Sentence Pair Scoring ( |
* |
* |
* |
Reward Modeling ( |
|
❌ |
❌ |
*The default pooler is always defined by the model.
Note
If the model’s implementation in vLLM defines its own pooler, the default pooler is set to that instead of the one specified in this table.
When loading Sentence Transformers models,
we attempt to override the default pooler based on its Sentence Transformers configuration file (modules.json).
Tip
You can customize the model’s pooling method via the --override-pooler-config option,
which takes priority over both the model’s and Sentence Transformers’s defaults.
Offline Inference#
The LLM class provides various methods for offline inference.
See Engine Arguments for a list of options when initializing the model.
LLM.encode#
The encode method is available to all pooling models in vLLM.
It returns the extracted hidden states directly, which is useful for reward models.
from vllm import LLM
llm = LLM(model="Qwen/Qwen2.5-Math-RM-72B", task="reward")
(output,) = llm.encode("Hello, my name is")
data = output.outputs.data
print(f"Data: {data!r}")
LLM.embed#
The embed method outputs an embedding vector for each prompt.
It is primarily designed for embedding models.
from vllm import LLM
llm = LLM(model="intfloat/e5-mistral-7b-instruct", task="embed")
(output,) = llm.embed("Hello, my name is")
embeds = output.outputs.embedding
print(f"Embeddings: {embeds!r} (size={len(embeds)})")
A code example can be found here: examples/offline_inference/basic/embed.py
LLM.classify#
The classify method outputs a probability vector for each prompt.
It is primarily designed for classification models.
from vllm import LLM
llm = LLM(model="jason9693/Qwen2.5-1.5B-apeach", task="classify")
(output,) = llm.classify("Hello, my name is")
probs = output.outputs.probs
print(f"Class Probabilities: {probs!r} (size={len(probs)})")
A code example can be found here: examples/offline_inference/basic/classify.py
LLM.score#
The score method outputs similarity scores between sentence pairs.
It is designed for embedding models and cross encoder models. Embedding models use cosine similarity, and cross-encoder models serve as rerankers between candidate query-document pairs in RAG systems.
Note
vLLM can only perform the model inference component (e.g. embedding, reranking) of RAG. To handle RAG at a higher level, you should use integration frameworks such as LangChain.
from vllm import LLM
llm = LLM(model="BAAI/bge-reranker-v2-m3", task="score")
(output,) = llm.score("What is the capital of France?",
"The capital of Brazil is Brasilia.")
score = output.outputs.score
print(f"Score: {score}")
A code example can be found here: examples/offline_inference/basic/score.py
Online Serving#
Our OpenAI-Compatible Server provides endpoints that correspond to the offline APIs:
Pooling API is similar to
LLM.encode, being applicable to all types of pooling models.Embeddings API is similar to
LLM.embed, accepting both text and multi-modal inputs for embedding models.Score API is similar to
LLM.scorefor cross-encoder models.