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Building Observability for Microservices Worklo...

Building Observability for Microservices Workloads on Google Cloud

Ananda Dwi Ae

November 26, 2022
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  1. 1. Student in Software Eng, UGM, Jul 2019 – present

    2. Cloud Engineer, Btech, Jul 2019 – present 3. Tech background: System, Networking, IaaS & PaaS Cloud, DevOps, a bit of Programming 4. Bangkit Academy Contributor & #RoadToGDE Mentee 5. Open Source Enthusiast and Communities Member 6. https://linktr.ee/misskecupbung About Me
  2. “In control theory, observability is a measure of how well

    internal states of a system can be inferred from knowledge of its external outputs.” Source: Wikipedia, "Observability." https://en.wikipedia.org/wiki/Observability
  3. Goals 1. Provide leading indicators of an outage or service

    degradation. 2. Help debug and detect outages, service degradations, bugs, and unauthorized activity. 3. Identify long-term trends for capacity planning and business purposes. 4. Expose unexpected side effects of changes
  4. How to Measuring • Changes made to monitoring configuration •

    "Out of hours" alerts • Team alerting balance • False positives & negatives • Alert creation • Alert acknowledgement • Alert silencing and silence duration • Unactionable alerts • Usability: alerts, runbooks, dashboards • MTTD, MTTR, impact
  5. Tools Cloud provider: GCP 1. Cloud Monitoring: Full-stack monitoring for

    Google Cloud Platform and Amazon Web Services. 2. Cloud Logging: Real-time log management and analysis. 3. Error Reporting; Identify and understand your application errors. 4. Cloud Debugger: Investigate your code's behavior in production. 5. Cloud Trace: Find performance bottlenecks in production. 6. Cloud Profiler: Identify patterns of CPU, time, and memory consumption in production.
  6. Tools and Challenges 1. Want to be able to get

    a 360∘ view of a problem 2. Need to correlate logs, metrics and traces to get deeper insights 3. Repetitive troubleshooting process 4. Data introspection