Metadata-Version: 2.1
Name: langchain-elasticsearch
Version: 0.3.0.dev1
Summary: An integration package connecting Elasticsearch and LangChain
Home-page: https://github.com/langchain-ai/langchain-elastic
License: MIT
Requires-Python: >=3.9,<4.0
Classifier: License :: OSI Approved :: MIT License
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.9
Classifier: Programming Language :: Python :: 3.10
Classifier: Programming Language :: Python :: 3.11
Classifier: Programming Language :: Python :: 3.12
Requires-Dist: elasticsearch[vectorstore-mmr] (>=8.13.1,<9.0.0)
Requires-Dist: langchain-core (>=0.3.0.dev5,<0.4.0)
Project-URL: Repository, https://github.com/langchain-ai/langchain-elastic
Project-URL: Source Code, https://github.com/langchain-ai/langchain-elastic/tree/main/libs/elasticsearch
Description-Content-Type: text/markdown

# langchain-elasticsearch

This package contains the LangChain integration with Elasticsearch.

## Installation

```bash
pip install -U langchain-elasticsearch
```

## Elasticsearch setup

### Elastic Cloud

You need a running Elasticsearch deployment. The easiest way to start one is through [Elastic Cloud](https://cloud.elastic.co/).
You can sign up for a [free trial](https://www.elastic.co/cloud/cloud-trial-overview).

1. [Create a deployment](https://www.elastic.co/guide/en/cloud/current/ec-create-deployment.html)
2. Get your Cloud ID:
    1. In the [Elastic Cloud console](https://cloud.elastic.co), click "Manage" next to your deployment
    2. Copy the Cloud ID and paste it into the `es_cloud_id` parameter below
3. Create an API key:
    1. In the [Elastic Cloud console](https://cloud.elastic.co), click "Open" next to your deployment
    2. In the left-hand side menu, go to "Stack Management", then to "API Keys"
    3. Click "Create API key"
    4. Enter a name for the API key and click "Create"
    5. Copy the API key and paste it into the `es_api_key` parameter below

### Elastic Cloud

Alternatively, you can run Elasticsearch via Docker as described in the [docs](https://python.langchain.com/docs/integrations/vectorstores/elasticsearch).

## Usage

### ElasticsearchStore

The `ElasticsearchStore` class exposes Elasticsearch as a vector store.

```python
from langchain_elasticsearch import ElasticsearchStore

embeddings = ... # use a LangChain Embeddings class or ElasticsearchEmbeddings

vectorstore = ElasticsearchStore(
    es_cloud_id="your-cloud-id",
    es_api_key="your-api-key",
    index_name="your-index-name",
    embeddings=embeddings,
)
```

### ElasticsearchRetriever

The `ElasticsearchRetriever` class can be user to implement more complex queries.
This can be useful for power users and necessary if data was ingested outside of LangChain
(for example using a web crawler).

```python
def fuzzy_query(search_query: str) -> Dict:
    return {
        "query": {
            "match": {
                text_field: {
                    "query": search_query,
                    "fuzziness": "AUTO",
                }
            },
        },
    }


fuzzy_retriever = ElasticsearchRetriever.from_es_params(
    es_cloud_id="your-cloud-id",
    es_api_key="your-api-key",
    index_name="your-index-name",
    body_func=fuzzy_query,
    content_field=text_field,
)

fuzzy_retriever.get_relevant_documents("fooo")
```

### ElasticsearchEmbeddings

The `ElasticsearchEmbeddings` class provides an interface to generate embeddings using a model
deployed in an Elasticsearch cluster.

```python
from langchain_elasticsearch import ElasticsearchEmbeddings

embeddings = ElasticsearchEmbeddings.from_credentials(
    model_id="your-model-id",
    input_field="your-input-field",
    es_cloud_id="your-cloud-id",
    es_api_key="your-api-key",
)
```

### ElasticsearchChatMessageHistory

The `ElasticsearchChatMessageHistory` class stores chat histories in Elasticsearch.

```python
from langchain_elasticsearch import ElasticsearchChatMessageHistory

chat_history = ElasticsearchChatMessageHistory(
    index="your-index-name",
    session_id="your-session-id",
    es_cloud_id="your-cloud-id",
    es_api_key="your-api-key",
)
```


### ElasticsearchCache

A caching layer for LLMs that uses Elasticsearch.

Simple example:

```python
from langchain.globals import set_llm_cache

from langchain_elasticsearch import ElasticsearchCache

set_llm_cache(
    ElasticsearchCache(
        es_url="http://localhost:9200",
        index_name="llm-chat-cache",
        metadata={"project": "my_chatgpt_project"},
    )
)
```

The `index_name` parameter can also accept aliases. This allows to use the 
[ILM: Manage the index lifecycle](https://www.elastic.co/guide/en/elasticsearch/reference/current/index-lifecycle-management.html)
that we suggest to consider for managing retention and controlling cache growth.

Look at the class docstring for all parameters.

#### Index the generated text

The cached data won't be searchable by default.
The developer can customize the building of the Elasticsearch document in order to add indexed text fields,
where to put, for example, the text generated by the LLM.

This can be done by subclassing end overriding methods.
The new cache class can be applied also to a pre-existing cache index:

```python
import json
from typing import Any, Dict, List

from langchain.globals import set_llm_cache
from langchain_core.caches import RETURN_VAL_TYPE

from langchain_elasticsearch import ElasticsearchCache


class SearchableElasticsearchCache(ElasticsearchCache):
    @property
    def mapping(self) -> Dict[str, Any]:
        mapping = super().mapping
        mapping["mappings"]["properties"]["parsed_llm_output"] = {
            "type": "text",
            "analyzer": "english",
        }
        return mapping

    def build_document(
        self, prompt: str, llm_string: str, return_val: RETURN_VAL_TYPE
    ) -> Dict[str, Any]:
        body = super().build_document(prompt, llm_string, return_val)
        body["parsed_llm_output"] = self._parse_output(body["llm_output"])
        return body

    @staticmethod
    def _parse_output(data: List[str]) -> List[str]:
        return [
            json.loads(output)["kwargs"]["message"]["kwargs"]["content"]
            for output in data
        ]


set_llm_cache(
    SearchableElasticsearchCache(
       es_url="http://localhost:9200", 
       index_name="llm-chat-cache"
    )
)
```

When overriding the mapping and the document building, 
please only make additive modifications, keeping the base mapping intact.

###  ElasticsearchEmbeddingsCache

Store and temporarily cache embeddings.

Caching embeddings is obtained by using the [CacheBackedEmbeddings](https://python.langchain.com/docs/modules/data_connection/text_embedding/caching_embeddings), it can be instantiated using `CacheBackedEmbeddings.from_bytes_store` method.

```python
from langchain.embeddings import CacheBackedEmbeddings
from langchain_openai import OpenAIEmbeddings

from langchain_elasticsearch import ElasticsearchEmbeddingsCache

underlying_embeddings = OpenAIEmbeddings(model="text-embedding-3-small")

store = ElasticsearchEmbeddingsCache(
    es_url="http://localhost:9200",
    index_name="llm-chat-cache",
    metadata={"project": "my_chatgpt_project"},
    namespace="my_chatgpt_project",
)

embeddings = CacheBackedEmbeddings.from_bytes_store(
    underlying_embeddings=OpenAIEmbeddings(),
    document_embedding_cache=store,
    query_embedding_cache=store,
)
```

Similarly to the chat cache, one can subclass `ElasticsearchEmbeddingsCache` in order to index vectors for search.

```python
from typing import Any, Dict, List
from langchain_elasticsearch import ElasticsearchEmbeddingsCache

class SearchableElasticsearchStore(ElasticsearchEmbeddingsCache):
    @property
    def mapping(self) -> Dict[str, Any]:
        mapping = super().mapping
        mapping["mappings"]["properties"]["vector"] = {
            "type": "dense_vector",
            "dims": 1536,
            "index": True,
            "similarity": "dot_product",
        }
        return mapping

    def build_document(self, llm_input: str, vector: List[float]) -> Dict[str, Any]:
        body = super().build_document(llm_input, vector)
        body["vector"] = vector
        return body
```

