Diaflow's Documentation
HomePricingIntegrations
Documentation
Documentation
  • 😎WELCOME TO DIAFLOW
    • Introduction to Generative AI
    • What can you build with Diaflow?
  • 💻USER ACCOUNT
    • Create your user account
    • Delete your user account
    • Log out and log in
    • Change "Personal" & "Workspace" settings
    • Reset user account password
  • 🚀Getting Started
    • Let's start with the basics
      • How a component works?
      • How a flow works?
      • Creating your first flow
    • Dashboard
      • Services
      • Create a flow from scratch
      • Create a flow from templates
      • View your flows
    • Terminology
  • 🌊Flows
    • Overview
    • Create a flow
    • Delete a flow
    • Manage a flow
    • Publish a flow
    • Unpublish a flow
    • Deployment
    • Component Reference
      • Trigger
        • When inputs are submitted (Apps)
        • Cronjob (Automation)
        • Webhook (Automation)
        • Microsoft Outlook (Automation)
      • Outputs (Apps)
        • Text Output
        • Chart Output
        • Video Output
        • Audio Output
        • Image Output
      • Built in tools
        • Branch
        • Merge (Multiple data source to JSON)
        • Split Data (JSON Formatter)
        • Video to audio
        • Get current date and time
        • Web scraper
        • Document to plain text
        • Retrieve data from spreadsheet (Spreadsheet analyzer)
        • Spreadsheet creator
        • Convert JSON to chart data
        • PDF to image
        • Get weather information
        • HTTP Request
        • Get GEO Location
        • SMTP
        • Loop
      • Built in resources
        • Diaflow Vision
        • Diaflow Vectors
        • Diaflow Drive
        • Diaflow Table
      • Apps
        • Hunter.io
        • Outlook Email
        • Telegram
        • Slack
        • Python
        • YouTube
        • SerpAPI
        • Google Sheet
          • Document-level Operations
          • Sheet-level Operations
          • Data-level Operations
      • Database
        • MySQL
        • Microsoft SQL
        • PostgreSQL
        • Snowflake
      • Private AI/LLM Models
        • OpenAI
          • GPT Variants
          • GPT Vision
          • DALL-E Variants
          • TTS Variants
          • Whisper
        • Anthropic
        • Llama
        • Google Gemini
        • Cohere
        • MistralAI
      • Public AI/LLM Models
        • OpenAI Cloud
        • Perplexity Cloud
        • Deepseek Cloud
        • Anthropic Cloud
        • Replicate
        • Straico
        • OpenRouter
        • Cohere Cloud
        • Google Gemini Cloud
        • MistralAI Cloud
        • ElevenLabs Cloud
      • AI Tools
  • ✒️PRODUCTIVITY TOOLS
    • Tables
    • Drive
    • Vectors
      • Document
      • Article
      • URLs
  • 🏠Workspace
    • History
    • Teams
    • Billing & Subscription
      • Upgrade/Downgrade a subscription
      • Buy credits
      • Credit Usage
      • Cancel a subscription
    • Settings
      • Personnal
      • Workspace
        • Change workspace
        • Workspace settings
        • Custom Domain
        • Delete workspace
      • Change Language
    • Documentation
    • Integrations
    • API keys
  • 📑Other
    • FAQs
    • Contact Information
Powered by GitBook
On this page
  • Description
  • Inputs
  • Component settings
  • Advanced configurations
  • Outputs

Was this helpful?

  1. Flows
  2. Component Reference
  3. Public AI/LLM Models

Cohere Cloud

Use Cohere's models with your own API Key

Last updated 24 days ago

Was this helpful?

Description

The Cohere component allows you to integrate Cohere into your flows. You can customize the parameters used by Cohere component, and also specify the context of knowledge that the Cohere component operates on, as well as provide the input query.

The Cohere component UI changes depending on the model selected, as each model has differing available options. You can specify the exact model to run with the "Model" dropdown menu. These models range from Chat and more. See the Parameters table for more information on the available models to use.

The Cohere component has the identifier of opa-X, where X represents the instance number of the Cohere component.

Inputs

The Cohere component has the following input connections.

Input Name
Description
Constraints

From data Loaders/ Data source/Vector DB

This input connection represents the context information for the Cohere model

Must originate from a Data Loader/Data Source or VectorDB component.

From Input

This input connection represents the user query for the Cohere model.

Must originate from a component that generates a text string as output such as a Python or Text Input component.

Component settings

Parameter Name
Description

Credentials

You can specify to use your own Cohere credentials

Model

The list of models displayed depends on the customer's credential.

Prompt

Describes how you want the Cohere model to respond. For example, you can specify the role, manner and rules that Cohere should adhere to. Also mention the component ID to connect the components.

Advanced configurations

Options
Description

Enable caching

This option determines whether the results of the component are cached. This means that on the next run of the Flow, Cohere will utilize the previous computed component output, as long as the inputs have not changed.

Caching time

Only applicable if the "Enable Caching" option has been enabled. This parameter controls how long Cohere will wait before automatically clearing the cache.

Max token

This parameter controls the tokenthat will send to Cohere system

Outputs

The Cohere component has the following output connections.

Output Name
Description
Constraints

To Output

This output connection contains the text result of the Cohere component.

Can be connected to any component that accepts a string input.

🌊