The unstructured-inference repo contains hosted model inference code for layout parsing models.
These models are invoked via API as part of the partitioning bricks in the unstructured package.
Run pip install unstructured-inference.
Detectron2 is required for using models from the layoutparser model zoo but is not automatically installed with this package. For MacOS and Linux, build from source with:
pip install 'git+https://github.com/facebookresearch/detectron2.git@57bdb21249d5418c130d54e2ebdc94dda7a4c01a'Other install options can be found in the Detectron2 installation guide.
Windows is not officially supported by Detectron2, but some users are able to install it anyway. See discussion here for tips on installing Detectron2 on Windows.
To install the repository for development, clone the repo and run make install to install dependencies.
Run make help for a full list of install options.
To get started with the layout parsing model, use the following commands:
from unstructured_inference.inference.layout import DocumentLayout
layout = DocumentLayout.from_file("sample-docs/loremipsum.pdf")
print(layout.pages[0].elements)Once the model has detected the layout and OCR'd the document, the text extracted from the first
page of the sample document will be displayed.
You can convert a given element to a dict by running the .to_dict() method.
The inference pipeline operates by finding text elements in a document page using a detection model, then extracting the contents of the elements using direct extraction (if available), OCR, and optionally table inference models.
We offer several detection models including Detectron2 and YOLOX.
When doing inference, an alternate model can be used by passing the model object to the ingestion method via the model parameter. The get_model function can be used to construct one of our out-of-the-box models from a keyword, e.g.:
from unstructured_inference.models.base import get_model
from unstructured_inference.inference.layout import DocumentLayout
model = get_model("yolox")
layout = DocumentLayout.from_file("sample-docs/layout-parser-paper.pdf", detection_model=model)Any detection model can be used for in the unstructured_inference pipeline by wrapping the model in the UnstructuredObjectDetectionModel class. To integrate with the DocumentLayout class, a subclass of UnstructuredObjectDetectionModel must have a predict method that accepts a PIL.Image.Image and returns a list of LayoutElements, and an initialize method, which loads the model and prepares it for inference.
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| Unstructured Community Github | Information about Unstructured.io community projects |
| Unstructured Github | Unstructured.io open source repositories |
| Company Website | Unstructured.io product and company info |
