Vectice Docs
API Reference (Latest)Vectice WebsiteStart Free Trial
24.4
24.4
  • ๐Ÿ Introduction
    • Vectice overview
      • Autolog
      • AskAI
      • Vectice for financial services
  • ๐ŸQuickstart
    • Getting started
    • Quickstart project
    • Tutorial project
    • FAQ
  • โ–ถ๏ธDemo Center
    • Feature videos
  • ๐Ÿ“ŠManage AI/ML projects
    • Organize workspaces
      • Create a workspace
      • Workspace Dashboard
    • Organize projects
      • Create a project
      • Project templates best practices
    • Define phase requirements
    • Invite colleagues
    • Collaborate with your team
  • ๐Ÿš€Log and Manage Assets with Vectice API
    • API cheatsheets
      • Vectice Python API cheatsheet
      • Vectice R API cheatsheet
    • Connect to API
    • Log assets to Vectice
      • Autolog your assets
      • Log datasets
      • Log models
      • Log attachments and notes
      • Log code
      • Log a custom data source
      • Log assets using Vectice IDs
      • Log dataset structure and statistics
      • Log custom metadata in a table format
      • Log MLFLow runs
    • Retrieve assets from app
    • Manage your assets
    • Manage your iteration
    • Preserve your code and asset lineage
  • ๐ŸคCreate Model documentation and reports
    • Auto-document models with AskAI
    • Streamline documentation with Macros
    • Create model documentation with Vectice Reports
    • Document phase outcomes
  • ๐Ÿ—‚๏ธAdmin Guides
    • Organization management
    • Workspace management
    • User management
      • User roles and permissions
      • Update a user role in your organization
      • Activate and deactivate users
      • Reset a user's password
  • ๐Ÿ”—Integrations
    • Integrations Overview
    • Integrate Vectice with your data platform
  • ๐Ÿ’ปIT & Security
    • IT & Security Overview
    • Secure Evaluation Environment Overview
    • Deployment
      • SaaS offering (Multi-Tenant SaaS)
      • Kubernetes self-hosted offering
        • General Architecture & Infrastructure
        • Kubernetes on GCP
          • Appendices
        • Kubernetes on AWS
          • Appendices
        • Kubernetes on Azure
          • Appendices
        • GCP Marketplace deployment
        • On premise
        • Configuration
    • User management
    • SSO management
      • Generic SAML integration
      • Okta SSO integration
    • Security
      • Data storage security
      • Network Security
        • HTTPS communication
        • Reverse proxy
        • CORS/CSRF
        • VPC segregation
      • Sessions
      • Secrets and certificates
      • Audit logs
      • SOC2
      • Security updates
      • Best practices
      • Business continuity
    • Monitoring
      • Installation guide
      • Customizing the deployments
    • Maintenance & upgrades
    • Integrating Vectice Securely
  • โญGlossary
    • Concepts
      • Workspaces
      • Projects
        • Setup a project
      • Phases
      • Iterations
        • Iterative development
      • Datasets
        • Dataset resources
        • Dataset properties
        • Dataset lineage and versions
      • Models
      • Reports
  • ๐ŸŽฏRelease notes
    • Release notes
  • โ†—๏ธReferences
    • Vectice Python API Reference
    • Vectice R API Cheatsheet
    • Notebooks and code samples
    • Vectice website
Powered by GitBook
On this page
  • Macros with AskAI
  • Key Features and Benefits
  1. Introduction
  2. Vectice overview

AskAI

PreviousAutologNextVectice for financial services

AskAI helps you leverage the power of LLMs to document your AI/ML projects quickly. Teams can either use the Vectice library of customizable prompts designed for data science project documentation or create their own to generate entire documentation sections.

By integrating directly with Vecticeโ€™s metadata, AskAI provides tailored insights and context-rich outputs, delivering more value than standalone tools like ChatGPT.

Learn how AskAI can save time and ensure consistent, high-quality documentation in this video:

Macros with AskAI

AskAI enhances macros by integrating GenAI capabilities into your reporting process. Pre-written prompts automatically generate important information using Vectice's internal metadata, enabling tailored, context-specific content creation directly in your reports.

This feature ensures that your documentation is not only accurate and insightful but also streamlined and easy to collaborate on. By embedding prompts into macros, teams can:

  • Automate text generation with metadata-driven insights.

  • Maintain consistency in reporting by standardizing prompts across workflows.

  • Save time and boost collaboration with easy-to-access, pre-written prompts.

Key Features and Benefits

  • ๐Ÿ“ Automated Documentation Generation: Generate complete documentation for models and datasets using intuitive, metadata-driven prompts that ensure accuracy and quality with minimal effort.

  • ๐Ÿ“‹ GenAI in Macros and Templates: Pre-written AskAI prompts embedded in macros and templates help generate text tailored to specific purposes, adding valuable context and streamlining workflows.

  • ๐Ÿ” Customizable Prompts: Tailor documentation to your project by creating custom prompts for specific questions, comparisons, or unique insights.

  • ๐Ÿ“‚ Metadata-Driven Insights: Use Vecticeโ€™s internal metadata to generate precise, context-rich documentation, providing an advantage over generic tools like ChatGPT.

  • โœ๏ธ Text Editing Assistance: Improve your documentation effortlessly by highlighting text for automated spelling correction, content expansion, summarization, or language simplification.

With AskAI, documentation becomes faster, smarter, and more collaborative, enabling teams to focus on analysis and insights rather than manual reporting tasks.

To learn more about Macros, view our guide.

For more detailed information, view our guide.

๐Ÿ 
Streamline documentation with Macros
Auto-document models with AskAI