vllm/docs/models/pooling_models.md
Ning Xie d97841078b
[Misc] unify variable for LLM instance (#20996)
Signed-off-by: Andy Xie <andy.xning@gmail.com>
2025-07-21 12:18:33 +01:00

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# Pooling Models
vLLM also supports pooling models, including embedding, reranking and reward models.
In vLLM, pooling models implement the [VllmModelForPooling][vllm.model_executor.models.VllmModelForPooling] interface.
These models use a [Pooler][vllm.model_executor.layers.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](../features/compatibility_matrix.md), 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.
If the model doesn't implement this interface, you can set `--task` which tells vLLM
to convert the model into a pooling model.
| `--task` | Model type | Supported pooling tasks |
|------------|----------------------|-------------------------------|
| `embed` | Embedding model | `encode`, `embed` |
| `classify` | Classification model | `encode`, `classify`, `score` |
| `reward` | Reward model | `encode` |
## Pooling Tasks
In vLLM, we define the following pooling tasks and corresponding APIs:
| Task | APIs |
|------------|--------------------|
| `encode` | `encode` |
| `embed` | `embed`, `score`\* |
| `classify` | `classify` |
| `score` | `score` |
\*The `score` API falls back to `embed` task if the model does not support `score` task.
Each pooling model in vLLM supports one or more of these tasks according to [Pooler.get_supported_tasks][vllm.model_executor.layers.Pooler.get_supported_tasks].
By default, the pooler assigned to each task has the following attributes:
| Task | Pooling Type | Normalization | Softmax |
|------------|----------------|---------------|---------|
| `encode` | `ALL` | ❌ | ❌ |
| `embed` | `LAST` | ✅︎ | ❌ |
| `classify` | `LAST` | ❌ | ✅︎ |
These defaults may be overridden by the model's implementation in vLLM.
When loading [Sentence Transformers](https://huggingface.co/sentence-transformers) models,
we attempt to override the defaults based on its Sentence Transformers configuration file (`modules.json`),
which takes priority over the model's defaults.
You can further customize this via the `--override-pooler-config` option,
which takes priority over both the model's and Sentence Transformers's defaults.
!!! note
The above configuration may be disregarded if the model's implementation in vLLM defines its own pooler
that is not based on [PoolerConfig][vllm.config.PoolerConfig].
## Offline Inference
The [LLM][vllm.LLM] class provides various methods for offline inference.
See [configuration][configuration] for a list of options when initializing the model.
### `LLM.encode`
The [encode][vllm.LLM.encode] method is available to all pooling models in vLLM.
It returns the extracted hidden states directly, which is useful for reward models.
```python
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][vllm.LLM.embed] method outputs an embedding vector for each prompt.
It is primarily designed for embedding models.
```python
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: <gh-file:examples/offline_inference/basic/embed.py>
### `LLM.classify`
The [classify][vllm.LLM.classify] method outputs a probability vector for each prompt.
It is primarily designed for classification models.
```python
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: <gh-file:examples/offline_inference/basic/classify.py>
### `LLM.score`
The [score][vllm.LLM.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](https://www.sbert.net/examples/applications/cross-encoder/README.html) 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](https://github.com/langchain-ai/langchain).
```python
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: <gh-file:examples/offline_inference/basic/score.py>
## Online Serving
Our [OpenAI-Compatible Server](../serving/openai_compatible_server.md) provides endpoints that correspond to the offline APIs:
- [Pooling API][pooling-api] is similar to `LLM.encode`, being applicable to all types of pooling models.
- [Embeddings API][embeddings-api] is similar to `LLM.embed`, accepting both text and [multi-modal inputs](../features/multimodal_inputs.md) for embedding models.
- [Classification API][classification-api] is similar to `LLM.classify` and is applicable to sequence classification models.
- [Score API][score-api] is similar to `LLM.score` for cross-encoder models.
## Matryoshka Embeddings
[Matryoshka Embeddings](https://sbert.net/examples/sentence_transformer/training/matryoshka/README.html#matryoshka-embeddings) or [Matryoshka Representation Learning (MRL)](https://arxiv.org/abs/2205.13147) is a technique used in training embedding models. It allows user to trade off between performance and cost.
!!! warning
Not all embedding models are trained using Matryoshka Representation Learning. To avoid misuse of the `dimensions` parameter, vLLM returns an error for requests that attempt to change the output dimension of models that do not support Matryoshka Embeddings.
For example, setting `dimensions` parameter while using the `BAAI/bge-m3` model will result in the following error.
```json
{"object":"error","message":"Model \"BAAI/bge-m3\" does not support matryoshka representation, changing output dimensions will lead to poor results.","type":"BadRequestError","param":null,"code":400}
```
### Manually enable Matryoshka Embeddings
There is currently no official interface for specifying support for Matryoshka Embeddings. In vLLM, if `is_matryoshka` is `True` in `config.json,` it is allowed to change the output to arbitrary dimensions. Using `matryoshka_dimensions` can control the allowed output dimensions.
For models that support Matryoshka Embeddings but not recognized by vLLM, please manually override the config using `hf_overrides={"is_matryoshka": True}`, `hf_overrides={"matryoshka_dimensions": [<allowed output dimensions>]}` (offline) or `--hf_overrides '{"is_matryoshka": true}'`, `--hf_overrides '{"matryoshka_dimensions": [<allowed output dimensions>]}'`(online).
Here is an example to serve a model with Matryoshka Embeddings enabled.
```text
vllm serve Snowflake/snowflake-arctic-embed-m-v1.5 --hf_overrides '{"matryoshka_dimensions":[256]}'
```
### Offline Inference
You can change the output dimensions of embedding models that support Matryoshka Embeddings by using the dimensions parameter in [PoolingParams][vllm.PoolingParams].
```python
from vllm import LLM, PoolingParams
llm = LLM(model="jinaai/jina-embeddings-v3",
task="embed",
trust_remote_code=True)
outputs = llm.embed(["Follow the white rabbit."],
pooling_params=PoolingParams(dimensions=32))
print(outputs[0].outputs)
```
A code example can be found here: <gh-file:examples/offline_inference/embed_matryoshka_fy.py>
### Online Inference
Use the following command to start vllm server.
```text
vllm serve jinaai/jina-embeddings-v3 --trust-remote-code
```
You can change the output dimensions of embedding models that support Matryoshka Embeddings by using the dimensions parameter.
```text
curl http://127.0.0.1:8000/v1/embeddings \
-H 'accept: application/json' \
-H 'Content-Type: application/json' \
-d '{
"input": "Follow the white rabbit.",
"model": "jinaai/jina-embeddings-v3",
"encoding_format": "float",
"dimensions": 32
}'
```
Expected output:
```json
{"id":"embd-5c21fc9a5c9d4384a1b021daccaf9f64","object":"list","created":1745476417,"model":"jinaai/jina-embeddings-v3","data":[{"index":0,"object":"embedding","embedding":[-0.3828125,-0.1357421875,0.03759765625,0.125,0.21875,0.09521484375,-0.003662109375,0.1591796875,-0.130859375,-0.0869140625,-0.1982421875,0.1689453125,-0.220703125,0.1728515625,-0.2275390625,-0.0712890625,-0.162109375,-0.283203125,-0.055419921875,-0.0693359375,0.031982421875,-0.04052734375,-0.2734375,0.1826171875,-0.091796875,0.220703125,0.37890625,-0.0888671875,-0.12890625,-0.021484375,-0.0091552734375,0.23046875]}],"usage":{"prompt_tokens":8,"total_tokens":8,"completion_tokens":0,"prompt_tokens_details":null}}
```
A openai client example can be found here: <gh-file:examples/online_serving/openai_embedding_matryoshka_fy.py>