5 Production Stacks for Live Data Ingestion at Scale (Without Getting Blocked)
📰 Dev.to · Prithwish Nath
Learn 5 production stacks for live data ingestion at scale without over-engineering
Action Steps
- Assess your data ingestion requirements to determine the right stack
- Choose a stack based on your data volume and velocity
- Implement a simple stack using Fluentd or Logstash for low-volume data
- Use a more robust stack with Apache Kafka or Amazon Kinesis for high-volume data
- Monitor and optimize your data ingestion pipeline for performance and scalability
Who Needs to Know This
Data engineers and DevOps teams can benefit from these production stacks to efficiently handle live data ingestion at scale
Key Insight
💡 Don't over-engineer data ingestion, start simple and scale as needed
Share This
5 production stacks for live data ingestion at scale without over-engineering #dataingestion #devops
DeepCamp AI