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24.4
24.4
  • 🏠Introduction
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    • Streamline documentation with Macros
    • Create model documentation with Vectice Reports
    • Document phase outcomes
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  • ↗️References
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  1. Create Model documentation and reports

Create model documentation with Vectice Reports

PreviousStreamline documentation with MacrosNextDocument phase outcomes

Vectice offers a streamlined process for documenting your model work, requesting reviews, and securely storing the documentation from Vectice Reports.

How to Create a Report

  1. Go to the Reports Tab Once model development is complete, navigate to the Reports tab within your project.

  2. Click 'Create Report' Select Create Report to start generating documentation. Choose a report template based on your needs.

  3. Select Report Assets Choose the report assets to include in the report.

  4. Generate the Report Once your selections are made, click Generate Report to compile the documentation.

  5. Edit and Add Information Review the auto-generated report and make any necessary edits. You can add additional information manually or use AskAI to automate documentation generation.

  6. Request Review After finalizing the report, you can request reviews from team members, such as model validators or leads.

  7. Export and Store Export the report in Word or PDF format and store it in your preferred repository for safekeeping.


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