.. _pooling_models: Pooling Models ============== vLLM also supports pooling models, including embedding, reranking and reward models. In vLLM, pooling models implement the :class:`~vllm.model_executor.models.VllmModelForPooling` interface. These models use a :class:`~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 :ref:`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. Offline Inference ----------------- The :class:`~vllm.LLM` class provides various methods for offline inference. See :ref:`Engine Arguments ` for a list of options when initializing the model. For pooling models, we support the following :code:`task` options: - Embedding (:code:`"embed"` / :code:`"embedding"`) - Classification (:code:`"classify"`) - Sentence Pair Scoring (:code:`"score"`) - Reward Modeling (:code:`"reward"`) The selected task determines the default :class:`~vllm.model_executor.layers.Pooler` that is used: - Embedding: Extract only the hidden states corresponding to the last token, and apply normalization. - Classification: Extract only the hidden states corresponding to the last token, and apply softmax. - Sentence Pair Scoring: Extract only the hidden states corresponding to the last token, and apply softmax. - Reward Modeling: Extract all of the hidden states and return them directly. When loading `Sentence Transformers `__ models, we attempt to override the default pooler based on its Sentence Transformers configuration file (:code:`modules.json`). You can customize the model's pooling method via the :code:`override_pooler_config` option, which takes priority over both the model's and Sentence Transformers's defaults. ``LLM.encode`` ^^^^^^^^^^^^^^ The :class:`~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. .. code-block:: python 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 :class:`~vllm.LLM.embed` method outputs an embedding vector for each prompt. It is primarily designed for embedding models. .. code-block:: python 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 in `examples/offline_inference_embedding.py `_. ``LLM.classify`` ^^^^^^^^^^^^^^^^ The :class:`~vllm.LLM.classify` method outputs a probability vector for each prompt. It is primarily designed for classification models. .. code-block:: python 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 in `examples/offline_inference_classification.py `_. ``LLM.score`` ^^^^^^^^^^^^^ The :class:`~vllm.LLM.score` method outputs similarity scores between sentence pairs. It is primarily designed for `cross-encoder models `__. These types of 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 `_. .. code-block:: python 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 in `examples/offline_inference_scoring.py `_. Online Inference ---------------- Our `OpenAI Compatible Server <../serving/openai_compatible_server>`__ can be used for online inference. Please click on the above link for more details on how to launch the server. Embeddings API ^^^^^^^^^^^^^^ Our Embeddings API is similar to ``LLM.embed``, accepting both text and :ref:`multi-modal inputs `. The text-only API is compatible with `OpenAI Embeddings API `__ so that you can use OpenAI client to interact with it. A code example can be found in `examples/openai_embedding_client.py `_. The multi-modal API is an extension of the `OpenAI Embeddings API `__ that incorporates `OpenAI Chat Completions API `__, so it is not part of the OpenAI standard. Please see :ref:`this page ` for more details on how to use it. Score API ^^^^^^^^^ Our Score API is similar to ``LLM.score``. Please see `this page <../serving/openai_compatible_server.html#score-api-for-cross-encoder-models>`__ for more details on how to use it.