Search: output-data-table

Last modified by admin on 2022/04/24 04:58

Results 1 - 10 of 17 next page » Page 1 2

[4] Capture Custom Table Data

Last modified by admin on 2023/05/14 13:20
Rendered document content
. Adding a new table In order to create a new table, click [Add Field], select Data Type = “table
A basic element in the extraction schema is the data field. However, akaBot Vision enables the capture of even more complex structures like tables. Adding a predefined table field If you are missing
Title
[4] Capture Custom Table Data
Location
Capturing Custom Table Data in akaBot Vision
Customizing Data Extract
Raw document content
, click [Add Field], select Data Type = “table” and then input the value you want to create a new table
="wikigeneratedid" id="HParagraph1" %) A basic element in the extraction schema is the data field. However, akaBot Vision enables the capture of even more complex structures like tables. == **Adding a predefined table

[2] Add New Field for Model

Last modified by admin on 2024/01/11 18:17
Rendered document content
and choose data type is "Table". Step 3: (This step is optional) Turn on button "Required" to set require
and data type for each column Step 6: Click "Save" button Table of Content
and Table Field 1. Add Form Field Step 1: On Add Learning Instance screen, click "Add Field" button
Raw document content
the table name on "Label" field and choose data type is "Table". ))) [[image:image-20221028164141-11.png
types of fields: Form Field and Table Field == **1. Add Form Field** == (% class="box infomessage
the field name on "Label" field and choose data type for field on "Data Type" field ))) [[image:image

[6] Customize Data Extract

Located in
Last modified by admin on 2023/05/14 13:16
Rendered document content
Automation of Fields Capture Custom Table Data Configure Automation Type for Pipeline Configure Fields for Data Extraction
Title
[6] Customize Data Extract
Location
Customizing Data Extract
Raw document content
* [[Automation of Fields>>path:/bin/view/akaBot%20Vision/Customizing%20Data%20Extract/Automation%20of%20Fields%20in%20akaBot%20Vision/]] * [[Capture Custom Table Data>>path:/bin/view/akaBot%20Vision
/Configure%20Automation%20Type%20for%20Pipeline%20/]] * [[Configure Fields for Data Extraction>>path:/bin

[3] Review Document

Last modified by admin on 2024/01/11 18:13
Rendered document content
After importing the document successfully and the data extraction process is successfully finished
, akaBot Vision provides users with the capability to add or remove rows in a table To insert a row, you can click "+" icon To delete a row, you can click "x" icon To add a new row at the end of the table
Raw document content
="wikigeneratedid" %) After importing the document successfully and the data extraction process is successfully
with this status in the “To review” tab in the user interface. [[image:image-20220420193327-1.png||data-xwiki
in each field that has been detected incorrectly [[image:image-20220420193327-2.png||data-xwiki-image

[1] Create New Learning Model

Last modified by admin on 2024/01/11 18:17
Rendered document content
documents to extract data. Staff can create a new learning model by following these below steps: Step 1
choose base model, staff will have to create form fields and table from scratch Step 5: Click "Save
. With the Form Fields, staff should label both "Label" and "Value" for each field if having enough data
Raw document content
, send the learning models to production and use them to run on actual documents to extract data. Staff
||cursorshover="true"]] * If staff doesn't choose base model, staff will have to create form fields and table
" for each field if having enough data in documents. This helps the model will extract data more exactly

[3] Configure Fields for Data Extraction

Last modified by admin on 2023/05/14 13:20
Rendered document content
Each Pipeline defines the structure of Data fields that akaBot Vision extracts. Description When editing this structure you have two options: Use pre-trained Data fields – AkaBot Vision’s Generic AI engine has been pre-trained to recognize specific Data fields and enables you to start extracting data
Title
[3] Configure Fields for Data Extraction
Location
Customizing Data Extract
Configuring Fields for Data Extraction
Raw document content
="wikigeneratedid" id="HParagraph1" %) Each Pipeline defines the structure of Data fields that akaBot Vision
options: * Use pre-trained Data fields – AkaBot Vision’s Generic AI engine has been pre-trained to recognize specific Data fields and enables you to start extracting data without any additional training

[1.1] Operation Model

Last modified by admin on 2023/09/08 17:51
Rendered document content
. Step 4 and 5: IDP system process the document and put the output in a ready queue. RPA bot, API, or human will download IDP output and then use that structured data to input to other enterprise systems
data to the user's server by API Output Note: Most of the APIs in akaBot Vision are synchronous APIs
Raw document content
process the document and put the output in a ready queue. RPA bot, API, or human will download IDP output and then use that structured data to input to other enterprise systems. **Step 3**: IDP system will inform
. == == == **Operation Model** == There are 3 modes to get output from the akaBot Vision system: 1. **Single Invoice

[1.2] API Reference

Last modified by admin on 2023/04/10 17:45
Rendered document content
organization's data and account information. In this document, you will find an introduction to the API usage
is processed successfully and the user can export data via calling API Export Document with input parameters
to review documents then change it to "Confirmed" status by API Update Document Status before exporting data
Raw document content
** == The akaBot Vision API allows you to programmatically access and manage your organization's data and account
and the user can export data via calling API (%%)[[Export Document>>https://docs.akabot.com/bin/view/akaBot
%20with%20RPA/API%20Automation/#H4.UpdateDocumentStatus]](% style="color:#000000" %) before exporting data

[1] Create an Account

Last modified by admin on 2024/01/10 15:46
Rendered document content
1. Create an Account Note: Although akaBot Vision currently supports Pre-trained data fields only for Invoice processing, the technology is documented agnostic and can extract data from any
customizable, so you can add/group/remove pipelines as needed. Table of Content
Raw document content
currently supports Pre-trained data fields only for Invoice processing, the technology is documented agnostic and can extract data from any structured document including receipts, purchase orders, shipping
-20220420182302-1.png||alt="image-20220420183141-4.png" data-xwiki-image-style-alignment="center"]] **Step 2

[2] Configure Automation Type for Pipeline

Last modified by admin on 2023/05/14 13:20
Rendered document content
: Choose Automation Type and set conditions for required fields and data formats The Automation Type
will be bypassed Bypass wrong data formats: All the documents with wrong data formats inside will be moved
. If you turn this mode on, all the wrong data formats will be bypassed Step 3: Click [Save] to save
Location
Customizing Data Extract
Raw document content
Automation Type and set conditions for required fields and data formats ))) * The Automation Type will have
fields will be bypassed * Bypass wrong data formats: All the documents with wrong data formats inside
these later. If you turn this mode on, all the wrong data formats will be bypassed [[image:image
next page » Page 1 2
RSS feed for search on [output-data-table]
Created by admin on 2022/04/17 14:38