Skip to content

Details

๐Ÿ‘‹ Hello Grafana & Friends!

This month, we are excited to partner with the MongoDB User Group (MUG) Singapore for a collaborative evening of tech!

As observability and data landscapes become increasingly complex, the integration between the LGTM stack and MongoDB is more critical than ever. This month, we are bringing together engineers from both ecosystems to share implementation strategies, architectural best practices, and real-world monitoring patterns.

As always, come ready to learn, connect, and exchange ideas with the community. Light bites and networking included!

Topic 1: Real-Time Observability with MongoDB and Grafana: From Logs to Dashboard

๐ŸŽค Speaker: Piti Champeethong, Senior Consulting Engineer, MongoDB

Session Abstract: Learn how to integrate MongoDB Atlas with Azure Grafana to build real-time dashboards for both database performance and application data. This session covers Prometheus-based monitoring, direct querying, and Azure-native pipelines for modern observability.

๐Ÿ“… Date: Thursday, June 11th, 2026
๐Ÿ•ก Time: 6:00pm - 9:00pm
๐Ÿ“ Location: Smartworks Great Eastern Centre, 1 Pickering Street, Singapore 048659 - Level 8
โš ๏ธ Reminder: Please bring your valid physical photo ID (NRIC or Passport) to access the building.

Agenda

  • 6:00 PM: Registration, Light Bites & Networking
  • 6:55 PM: Welcome & Opening
  • 7:00 PM: Piti Champeethong, Senior Consulting Engineer at MongoDB โ€“ Real-Time Observability with MongoDB
  • 7:30 PM: Hendri Tjiptowibowo, Senior Partner Solutions Engineer at Grafana Labs - [Topic TBC]
  • 8:00PM: Networking & Close

In Partnership with MongoDB:
This event is a collaborative session between Grafana & Friends Singapore and the Singapore MongoDB User Group.

Special thanks to our Co-Partner, MongoDB, for providing the space.

Related topics

Events in Singapore, SG
Application Performance Monitoring
Open Source
Web Application
Performance Monitoring
Grafana

Sponsors

Grafana Labs

Grafana Labs

OSS is in our DNA

You may also like