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  1. Process Insight

Process Insight

Managing Process Data

PreviousSchema RegistryNextOverview

Last updated 6 years ago

Invariant Process Insight is designed to help business with the real time analysis and monitoring of their enterprise business processes. Process Insight enables enterprises to capture and aggregate process event data to provide a near real time pulse of the end to end business processes.

Most complex processes which span multiple subsystems including legacy applications act as silos of data that cannot easily be mined for reporting and making decisions. Process insight can capture and correlate events from these diverse subsystems into a centralized data store to provide a real time insight into the state of the overall process. This improved visibility into business processes can help managers make better data-based decisions leading to improved business outcomes.

Analyzing the historical performance of the processes also plays a key role in the optimization and improvement of the existing business processes and supporting subsystems.

Features

  • Capture process metrics as soon as they occur (near real time)

  • Aggregate events into meaningful metrics

  • Provide filters to drill into specific case type or other attribute (year, form etc)

  • Support controls such as autocomplete for custom dashboards

  • Use with BI tools such as Tableau and Microsoft PowerBI