Customise KAPTO Model details

This article is a guide on customising KAPTO model details. KAPTO is a platform for building custom AI models; users can create, manage, and train their models. The article outlines how to modify the model's name, tags, manager, state, and type and the different KAPTO models.

The following article will explain Model Details' customisation in KAPTO. To eliminate confusion, the article will include a screenshot with annotated descriptions to show what the Model Details in KAPTO look like.

Navigate to Models > Overview > Edit models.

Model Name: The name given to a KAPTO model with regard to uniquely identify from other models; may contain a naming convention based on elements that are important to the model designation.

Tags:  Assign tags to describe a KAPTO model to be retrieved by searching. Tags can be put to practical use in any model and come in unstructured forms, from a simple list of relevant keywords to highly structured properties.  

Manager: Assigned User Role to a user in KAPTO.

State: Select the state of classification model from In training to Operational.  

Training: In the image above, you can choose In Training phase, with the scope of giving examples to the AI model that should learn by mapping information provided by a human.  

We designate this as a training facility when based only on extracting information.  

Operational: When our KAPTO model is in an Operational state, and a document is moved into the Verification state, a user accessing the verification tab can then verify the document.  

Model Type: This entitles the Classification or Extraction Model in KAPTO. To cover additional information that complements the text of documentation.

Classification Model Type: The KAPTO Classification Model concludes from the input values given for training. The model identifies the categories into which new data will fall into various classes. Classification can be performed on structured or unstructured data.

Extraction Model Type:  The objective of the extraction model is to read documents, extract information, and populate entity instances with the extracted values.

In the following sections, we will delve into the concepts of Summarization, Table Detection, and Form Detection.

Summarization: The goal of text summarization is to condense large amounts of text while maintaining its important content. Some models can summarize text by extracting key information from the original text, while others can generate entirely new text based on the input.

Table Detection: The extraction phase evidently is implicated in a traditional OCR recognition process. However, the entities are structured in rows and columns instead.

Form Detection: Used to extract text, key-value pairs, tables, and structures from documents automatically and accurately.  

Template: We can define templates, and through categorization, AI finds that these templates automatically belong to this category. This is one option for automatically using the information; the second is that when the document category that belongs to this type of page layout is attached, the pre-processing phase is making image registration. In the case where a template is used, it means that the image is registered over the template.

Note: If a template is attached, all documents coming in this model belong to the same template.

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