Domino’s Pizza Orchestrates 3,000+ Data Pipelines with BMC Control-M to Drive Real-Time Innovation

Client

Domino’s Pizza

Industry

Retail

AI Tech Solution

Control-M Data Pipeline Orchestration

Solution Provider

BMC Software

Challenge

Domino’s needed to modernize operations and sharpen its competitive edge by delivering real-time analytics across a growing global footprint. With thousands of stores and massive daily data intake, their challenge was orchestrating complex, high-volume workflows from diverse sources while ensuring uptime, SLA compliance, and business continuity.

Solution

Domino’s implemented Control-M to orchestrate over 3,000 data pipelines. The platform coordinates dependencies across multiple systems including Kafka, Couchbase, SQL Server, Talend, and Power BI. Control-M provides predictive analytics, SLA tracking, proactive failure alerts, and self-service pipeline management for IT, BI, and business teams.

Results

Orchestrated 3,000+ pipelines from thousands of data sources. Improved SLA compliance and reduced reporting delays. Enabled scalable delivery of executive and franchisee insights. Empowered data teams with self-service orchestration tools and real-time visibility into pipeline performance.
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