Custom Workspace

Introduction

Custom workspaces provide the complete power and flexibility of the Acodis platform. With custom workflows a big variety of use-cases can be covered end-to-end featuring

  • custom data point extractions

  • digital twin workflows

  • AI Search

  • Visual workflow editor

  • and even custom UI for your very unique use-case

to just name a few.

We understand that every use-case and every set of documents is unique. Custom workspaces enable you to build your workflow around this, optimized for your purpose to leverage today’s AI technologies to its fullest potential.

 

Table of Content

Workflow

In custom workspaces, workflows can be built using the graphical editor based on so-called workflow resources. Simply drag and drop available resources from their panel on the right-hand side into the workflow. Workflow resources can be created using right-click on the workflow editor.

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Adding Resources to your Workflow
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Create a new Analysis resource for your Workflow

Collections

Collections are folders that store your documents for the workflow design- and exploration phase.

Analyses

An essential part of almost every workflow are analyses. In the analysis, you can configure which steps should be run on your documents with the following main purposes:

  1. Pre-processing

  2. Structuring

  3. Semantic Definitions

  4. Post-processing

Most of the steps allow you to visually interact with your documents. This enables you to specify your workflow according to your individual use-case and train a tailored AI-model.

From the collections you can open documents in the analysis document viewer featuring from the left to right:

  • The steps control panel

  • A preview of the document with options to interact with the selected step

  • Various previews for the extracted data

Model evaluation

For each analysis, you can create and manage models. For each trainable step in the analysis, a separate tailored model is trained on the selected training set using the document state as provided by the previous steps. The performance of each model can be evaluated for each step individually.