Compare - Quantive Signals VS Starburst

Here’s the difference between Quantive Signals and Starburst. The comparison is based on pricing, deployment, business model, and other important factors.

About Quantive Signals

Quantive Signals is a business observability platform that autonomously monitors your KPIs and intelligently alerts you when, what, and why something unexpected happens. With Quantive Signals, you can scale your business operations and mitigate disruption as quickly as possible. Quantive Signals empowers you to Bring data from any source into a unified platform To automatically monitor data and identify anomalies, identify factors that create unexpected changes, and respond quickly to issues with real-time alerts.

About Starburst

For data-driven companies, Starburst offers a full-featured data lake analytics platform, built on open source Trino. Our platform includes the capabilities needed to discover, organize, and consume data without the need for time-consuming and costly migrations. We believe the lake should be the center of gravity, but support accessing data outside the lake when needed. With Starburst, teams can access more complete data, lower the cost of infrastructure, use the tools best suited to their specific needs, and avoid vendor lock-in. Trusted by companies like Comcast, Grubhub, and Priceline, Starburst helps companies make better decisions faster on all their data.

Comparison Table

Overview
CategoriesBusiness Reliability/ObservabilityData Lakes, Data Mesh
StageEarly StageMid Stage
Target SegmentSMB, EnterpriseEnterprise, Mid size
DeploymentOn PremSaaSSaaSOn Prem
Business ModelCommercialCommercial
PricingFreemiumContact Sales
LocationDenver, ColoradoUS
Companies using it
Fanatics Inc logo
Contact info
linkedin icon
twitter icon
linkedin icon
twitter icon

Add to compare

Similar Companies
Anodot logo
Anodot
Business Reliability/Observability
Outlier logo
Outlier
Business Reliability/Observability
Avora logo
Avora
Business Reliability/Observability
Cuefact logo
Cuefact
Business Reliability/Observability