Session

Workshop ML-based Amazon DevOps Guru for the Serverless applications

In this workshop, we’ll use a standard serverless application that uses API Gateway, Lambda, DynamoDB, S3, SQS, Kinesis, Step Functions (and other AWS-managed services). We'll explore how Amazon DevOps Guru recognizes operational issues and anomalies like increased latency and error rates (timeouts, throttling and increased latency). We will also explore DevOps Guru "Proactive Insights" which recognize configurational anti-patterns like missing failure destination on Kinesis Data Streams or DLQ on SQS or over-provisioning of AWS services like DynamoDB tables. We'll also integrate DevOps Guru with PagerDuty to provide even better incident management.

Amazon DevOps Guru analyzes data like application metrics, logs, events, and traces to establish baseline operational behavior and then uses ML to detect anomalies. The service uses pre-trained ML models that are able to identify spikes in application requests, so it knows when to alert and when not to.

In this workshop, we’ll use a standard serverless application that uses API Gateway, Lambda, DynamoDB, S3, SQS, Kinesis, Step Functions (and other AWS-managed services). We'll explore how Amazon DevOps Guru recognizes operational issues and anomalies like increased latency and error rates (timeouts, throttling and increased latency). We will also explore DevOps Guru "Proactive Insights" which recognize configurational anti-patterns like missing failure destination on Kinesis Data Streams or DLQ on SQS or over-provisioning of AWS services like DynamoDB tables. We'll also integrate DevOps Guru with PagerDuty to provide even better incident management.

Vadym Kazulkin

Head of Development at ip.labs in Bonn, Germany

Bonn, Germany

Actions

Please note that Sessionize is not responsible for the accuracy or validity of the data provided by speakers. If you suspect this profile to be fake or spam, please let us know.

Jump to top