Services DevOps DevSecOps Cloud Consulting Infrastructure Automation Managed Services AIOps MLOps DataOps Microservices πŸ” Private AINEW Solutions DevOps Transformation CI/CD Automation Platform Engineering Security Automation Zero Trust Security Compliance Automation Cloud Migration Kubernetes Migration Cloud Cost Optimisation AI-Powered Operations Data Platform Modernisation SRE & Observability Legacy Modernisation Managed IT Services πŸ” Private AI DeploymentNEW Products ✨ ZippyOPS AINEW πŸ›‘οΈ ArmorPlane πŸ”’ DevSecOpsAsService πŸ–₯️ LabAsService 🀝 Collab πŸ§ͺ SandboxAsService 🎬 DemoAsService Bootcamp πŸ”„ DevOps Bootcamp ☁️ Cloud Engineering πŸ”’ DevSecOps πŸ›‘οΈ Cloud Security βš™οΈ Infrastructure Automation πŸ“‘ SRE & Observability πŸ€– AIOps & MLOps 🧠 AI Engineering πŸŽ“ ZOLS β€” Free Learning Company About Us Projects Careers Get in Touch
Homeβ€ΊProjectsβ€ΊSaaS Analytics
πŸ“Š DataOps
🏒 SaaS Analytics

Real-Time Analytics Platform Handling 10M Events Per Day

23/45Project Reference
12 weeksEngagement Duration
3 architectsZippyOPS Team
4Measurable Outcomes
The Challenge

What the Client Was Facing

A SaaS analytics company was generating 10M events per day but had no real-time processing capability. All analytics were batch-processed overnight, meaning customers saw data that was 24 hours old. Churn was increasing as competitors launched real-time dashboards.

Our Role

What ZippyOPS Was Engaged To Do

ZippyOPS was brought in to design and implement a solution addressing the root causes of the client's challenges β€” delivering measurable outcomes within a fixed engagement timeline. Our team worked embedded with the client's engineers throughout the entire project.

The Solution

How We Solved It

ZippyOPS designed and implemented a real-time streaming pipeline β€” Kafka for event ingestion, Flink for stream processing, BigQuery for analytical storage and a dbt layer for business-logic transformations. Looker served dashboards with sub-minute data freshness.

Technologies Used

Apache Kafka Apache Flink BigQuery dbt Looker Grafana Terraform GCP Python Kubernetes
The Results

Measurable Outcomes Delivered

βœ“

Customer-facing data freshness reduced from 24 hours to under 60 seconds

βœ“

Real-time analytics feature launched β€” directly credited with winning 3 enterprise contracts

βœ“

Pipeline handles 10M+ events/day with 99.9% delivery guarantee

βœ“

Infrastructure cost 40% lower than equivalent batch approach

Want Similar Results for Your Team?

Book a free consultation and let's discuss how ZippyOPS can deliver the same transformation for your organisation.

Scroll to Top