Search Menu

Applications

Learn specific applications of DLX that will help automate your lab

Breakthrough applications with limitless possibilities

The remedy for restrictive, point-to-point lab connections, our iPaaS for Science uses easily configured, cloud-based technology to deliver true data mobility. From simple tasks to sophisticated workflows, Scitara DLXTM automates processes and the exchange of data across the entire lab enterprise—accelerating scientific discovery.

“We expect a 20-25% reduction in costs due to eliminating time spent on documentation.”

—QC Leader Top 10 Pharma

Application Note


Biologics Manufacturing Use Case

Challenges:

  • Manual transcriptions
  • Data errors
  • Extensive analyst time

Results with DLX:

  • Elimination of manual transcriptions
  • $187,200 yearly cost savings (at analyst rate of $150/hr)
  • 24-hr reduction in batch release time

Application Note


Revvity’s SignalsTM Notebook: Sensors

Challenges:

  • Access to remote sensors
  • Manually entering data from multiple sources
  • Time-consuming data errors

Results with DLX:

  • Automated data gathering
  • Improved data reliability
  • Integrated data collection from multiple sources

Application Note


Revvity’s SignalsTM Notebook: Balance

Challenges:

  • Manual data collection
  • Transcription errors
  • Unattributed measurement readings

Results with DLX:

  • Automated data routing
  • User authentication for measurements
  • Improved device request monitoring

Application Note


Revvity’s SignalsTM Notebook: Chromatography

Challenges:

  • Connecting disparate CDS systems
  • Maintaining data integrity
  • Establishing a chain of custody

Results with DLX:

  • Seamless bi-directional integration of CDS systems
  • Configurable user input
  • Full digital chain of custody

Application Note


Mettler Toledo LabXTM

Challenges:

  • Manual data collection and transcription
  • Human error and reduced data accuracy
  • Extensive analyst time/cost

Results with DLX:

  • Automated data gathering
  • Improved data reliability
  • Increased productivity