The 'last-mile' data problem is stalling enterprise agentic AI — 'golden pipelines' aim to fix it

Bullish 51.4
Traditional ETL tools like dbt or Fivetran prepare data for reporting: structured analytics and dashboards with stable schemas. AI applications need something different: preparing messy, evolving operational data for model inference in real-time. Empromptu calls this distinction "inference integrity" versus "reporting integrity." Instead of treating data preparation as a separate discipline, golden pipelines integrate normalization directly into the AI application workflow, collapsing what typically requires 14 days of manual engineering into under an hour, the company says. Empromptu's "golden pipeline" approach is a way to accelerate data preparation and make sure that data is accurate.The company works primarily with mid-market and enterprise customers in regulated industries where data
Read Source Login to use Pulse AI

Pulse AI Analysis

Pulse analysis not available yet. Click "Get Pulse" above.

This analysis was generated using Pulse AI, Glideslope's proprietary AI engine designed to interpret market sentiment and economic signals. Results are for informational purposes only and do not constitute financial advice.