Nuclia automatically indexes your unstructured data from any internal and external source, providing optimized search results and generative answers. It can handle video and audio transcription, image content extraction, and document parsing.
SetupThe
Nuclia Understanding API
supports the processing of unstructured data, including text, web pages, documents, and audio/video contents. It extracts all texts wherever they are (using speech-to-text or OCR when needed), it also extracts metadata, embedded files (like images in a PDF), and web links. If machine learning is enabled, it identifies entities, provides a summary of the content and generates embeddings for all the sentences.
To use the Nuclia Understanding API
, you need to have a Nuclia account. You can create one for free at https://nuclia.cloud, and then create a NUA key.
%pip install --upgrade --quiet protobuf
%pip install --upgrade --quiet nucliadb-protos
import os
os.environ["NUCLIA_ZONE"] = "<YOUR_ZONE>"
os.environ["NUCLIA_NUA_KEY"] = "<YOUR_API_KEY>"
Example
To use the Nuclia document loader, you need to instantiate a NucliaUnderstandingAPI
tool:
from langchain_community.tools.nuclia import NucliaUnderstandingAPI
nua = NucliaUnderstandingAPI(enable_ml=False)
from langchain_community.document_loaders.nuclia import NucliaLoader
loader = NucliaLoader("./interview.mp4", nua)
You can now call the load
the document in a loop until you get the document.
import time
pending = True
while pending:
time.sleep(15)
docs = loader.load()
if len(docs) > 0:
print(docs[0].page_content)
print(docs[0].metadata)
pending = False
else:
print("waiting...")
Retrieved information
Nuclia returns the following information:
Note:
Generated files (thumbnail, extracted embedded files, etc.) are provided as a token. You can download them with the /processing/download
endpoint.
Also at any level, if an attribute exceeds a certain size, it will be put in a downloadable file and will be replaced in the document by a file pointer. This will consist of {"file": {"uri": "JWT_TOKEN"}}
. The rule is that if the size of the message is greater than 1000000 characters, the biggest parts will be moved to downloadable files. First, the compression process will target vectors. If that is not enough, it will target large field metadata, and finally it will target extracted text.
RetroSearch is an open source project built by @garambo | Open a GitHub Issue
Search and Browse the WWW like it's 1997 | Search results from DuckDuckGo
HTML:
3.2
| Encoding:
UTF-8
| Version:
0.7.4