Agentic Data quality icon
Agentic Data quality icon

Agentic Data quality

An AI Co-Pilot for Salesforce Data Quality.

Fix records view.

Cost / License

  • Subscription
  • Proprietary

Platforms

  • Salesforce
  • Salesforce Platform
  • Online
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Agentic Data quality information

  • Developed by

    Connor O'Brien
  • Licensing

    Proprietary and Commercial product.
  • Pricing

    Subscription ranging between $200 and $20000 per month.
  • Alternatives

    1 alternatives listed
  • Supported Languages

    • English

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What is Agentic Data quality?

Transform Your Salesforce Data Quality with AI-Powered Intelligence ADQ is an AI-powered solution that detects, analyzes, and fixes Salesforce data quality issues in real-time, helping organizations transform data from a liability into a strategic asset. Unlike traditional data management tools that require technical expertise, ADQ empowers all users through a natural language interface and intelligent automation.

The ADQ Difference: AI-Driven Data Quality Management ADQ stands apart from conventional data tools by leveraging artificial intelligence to proactively identify and remediate data quality issues with minimal human intervention:

Key Capabilities

  1. Real-time Data Quality Fixes – Scans your Salesforce data to identify quality issues beyond simple validation rules based on your prompts
  2. Natural Language Interface – Describe data issues in plain English rather than technical query language (e.g., "Find all opportunities with missing product details that closed this quarter")
  3. Intelligent Fix Suggestions – Generates precise remediation actions tailored to specific issues rather than simply flagging problems
  4. Contextual Analysis – Analyzes data points in relation to associated records, historical patterns, and organizational standards
  5. Self-Learning System – Continuously improves detection and remediation capabilities based on user interactions and feedback
  6. Business User Accessibility – Eliminates dependency on technical teams by enabling business users to implement fixes directly
  7. Batch and Individual Remediation – Supports both targeted fixes for individual records and bulk operations for systematic issues