Clarifai Guide
Clarifai Home
v7.0
v7.0
  • Welcome
  • Getting Started
    • Quick Start
    • Applications
      • Create an Application
      • Application Settings
      • Collaboration
    • Authentication
      • App-Specific API Keys
      • Personal Access Tokens
      • Scopes
      • Authorize
      • 2FA
    • Glossary
  • How-To
    • Portal
      • Auto Annotation
      • Custom Models
      • Text Classification
      • Visual Text Recognition
    • API
      • Auto Annotation
      • Batch Predict CSV on Custom Text Model
      • Custom KNN Face Classifier Workflow
      • Custom Models
      • Custom Text Model
      • Visual Text Recognition
  • API Guide
    • API overview
      • API Clients
      • Using Postman with Clarifai APIs
      • Status Codes
      • Pagination
      • Patching
    • Data Mode
      • Supported Formats
      • Create, Get, Update, Delete
      • Collectors
    • Concepts
      • Create, Get, Update
      • Languages
      • Search by Concept
      • Knowledge Graph
    • Scribe Label
      • Annotations
      • Training Data
      • Positive and Negative Annotations
      • Tasks
      • Task Annotations
    • Enlight Train
      • Clarifai Models
      • Model Types
      • Create, Get, Update, Delete
      • Deep Training
      • Evaluate
        • Interpreting Evaluations
        • Improving Your Model
    • Mesh Workflows
      • Base Workflows
      • Create, Get, Update, Delete
      • Input Nodes
      • Workflow Predict
    • Armada Predict
      • Images
      • Video
      • Prediction Parameters
      • Multilingual Classification
    • Spacetime Search
      • Search Overview
      • Combine or Negate
      • Filter
      • Rank
      • Index Images for Search
      • Legacy Search
        • Combine or Negate
        • Filter
        • Rank
        • Saved Searches
  • Portal Guide
    • Portal Overview
    • Data Mode
      • Supported Formats
      • Bulk Labeling
      • CSV and TSV
      • Collectors
    • Concepts
      • Create, Get, Update, Delete
      • Knowledge Graph
      • Languages
    • Scribe Label
      • Create a Task
      • Label Types
      • Labeling Tools
      • AI Assist
      • Workforce Management
      • Review
      • Training Data
      • Positive and Negative Annotations
    • Enlight Train
      • Training Basics
      • Clarifai Models
      • Model Types
      • Deep Training
      • Evaluate
        • Interpreting Evaluations
        • Improving Your Model
    • Mesh Workflows
      • Base Workflows
      • Setting Up a Mesh Workflow
      • Input Nodes
    • Armada Predict
    • Spacetime Search
      • Rank
      • Filter
      • Combine or Negate
      • Saved Searches
      • Visual Search
  • Data Labeling Services
    • Scribe LabelForce
  • Product Updates
    • Upcoming API Changes
    • Changelog
      • Release 7.0
      • Release 6.11
      • Release 6.10
      • Release 6.9
      • Release 6.8
      • Release 6.7
      • Release 6.6
      • Release 6.5
      • Release 6.4
      • Release 6.3
      • Release 6.2
      • Release 6.1
      • Release 6.0
      • Release 5.11
      • Release 5.10
Powered by GitBook
On this page
  • Create an app
  • Navigate to Explorer Mode
  • Add your inputs
  • Option 1: Browse your files
  • Option 2: Add text
  • Navigate to Model Mode
  • Select Context-based Classifier
  • Try out your new model

Was this helpful?

  1. How-To
  2. Portal

Text Classification

Build a powerful and flexible application for classifying text passages.

PreviousCustom ModelsNextVisual Text Recognition

Last updated 4 years ago

Was this helpful?

Text models can be trained to understand the meaning of text passages. We offer a general text embedding model, as well as a specialized text moderation model. This walkthrough shows you how to create a custom text model from our text embedding model.

Create an app

Create a new application and select “Text” as your default workflow.

Navigate to Explorer Mode

Add your inputs

Option 1: Browse your files

You can upload your text directly from a .csv file. This means you can work with your favorite spreadsheet software or text editor when preparing your data for upload. Just use the provided "CSV template" to get started.

Next, add your text data. At a minimum, you should add text to the input.data.text.raw field. You can add one concept per column to the input.data.concepts[*].id fields. For the input.data.concepts[*].value column, there are two options: enter the number 1 if the concept is present in the input, enter the value 0 if the concept is not present in the input (a negative example). If no value is entered, a default value of 1 will be assigned to your input.

You can add columns for as many concepts as you like, and you can add new columns to add values for any other values supported by the API:

Field

Description

input.id

A unique identifier for your input

input.data.text.raw

The "text" for your input

input.data.concepts[i].id

Your custom concept

input.data.concepts[i].value

The value for your custom concept (1 for true, 0 for false)

input.metadata

input.data.geo.geo_point.latitude

Latitude for geodata

input.data.geo.geo_point.longitude

Longitude for geodata

Finally, you will need to save your work as a .csv file. If you are editing in Google Sheets, go to File >>> Download >>> Comma-separated values (.csv, current sheet). If you are using Excel, go to File >>> Save As >>> Browse >>> Save as Type >>> CSV.

Once you have downloaded the .csv file, you can then upload it by clicking on “Browse your files”

Option 2: Add text

Just click “add text” and directly enter your text in the text field.

Label your inputs If you “add text” you will need to then label your inputs in Portal.

Add custom concepts

Click on an input and add new concepts in the right hand sidebar. Just click in the empty form field under “Custom Model Predictions”, enter your concept, and hit “return”.

Navigate to Model Mode

Select Context-based Classifier

  • MODEL ID (OPTIONAL) - Optional custom model ID of your choosing.

  • DISPLAY NAME - This is the name of your new custom model. Enter a descriptive name.

  • OUTPUT_INFO.DATA.CONCEPTS - Click in the empty form field and select all of the custom concepts that you have added one-by-one.

  • OUTPUT_INFO.OUTPUT_CONFIG.CONCEPTS_MUTUALLY_EXCLUSIVE - Use the default setting.

  • OUTPUT_INFO.OUTPUT_CONFIG.CLOSED_ENVIRONMENT - Set CLOSED_ENVIRONMENT to “Yes”.

  • OUTPUT_INFO.OUTPUT_CONFIG.EMBED_MODEL_VERSION_ID - Use the default setting.

Once you click “Create Model”, a new screen will appear.

Click “Train Model” in the upper right hand corner of the screen.

Try out your new model

Navigate to “Explorer Mode” and “Add Inputs”. Add some new text inputs, and then navigate back to “Explorer Mode”

You will see custom concept predictions in the right hand sidebar when you click on an individual input.

Any additional metadata in valid format

JSON
Natural Language Processing with Clarifai