Case Studies

Featured Case Study

"With Materialize, we can write the same SQL for real-time data as we do with Snowflake in batch."

Emily Hawkins portrait

Emily Hawkins

Data Infrastructure Lead, Drizly
Read Case Study
Drizly Featured Image
Drizly Logo Image
  • Kepler Cheuvreux Post Image
    Kepler Cheuvreux Logo Image

    Kepler Cheuvreux streamlined their architecture into just Materialize and Kafka, removing Postgres replicas. With timely data being vital to their business, they replaced batch jobs with streaming workloads. They also enabled real-time alerting and dashboarding in Metabase and Grafana, having Materialize serve as the underlying source of information.

  • Density Post Image
    Density Logo Image

    With Materialize, Density’s internal tooling data is now updated as data is processed, in milliseconds, allowing the Customer Success team to have a consistently correct and up-to-date picture of sensory data powering their people-counting software.

  • Maqqie Post Image
    Maqqie Logo Image

    Materialize was the solution that met their real-time requirements with the lowest overhead. One Maqqie developer manages Materialize on his own.

  • Unimarket Post Image
    Unimarket Logo Image

    Materialize helped Unimarket easily build and maintain dashboards, enabling Unimarket to feel equipped to build new dashboards and enhance the customer experience. With Materialize, Unimarket dashboards update 2x faster and their OLAP code base has reduced by 60%.

  • SproutFi Post Image
    SproutFi Logo Image

    SproutFi cut their development time by 50% with the services built by Materialize while saving 10% of data management and migration time. Materialize also enabled SproutFi to eventually eliminate Cassandra from their infrastructure, simplifying their data stack. Overall, because Materialize helped SproutFi save on maintenance costs, it’s changed how SproutFi is developing their product. The SproutFi team feels empowered to economically and easily try new projects.

  • Datalot Post Image
    Datalot Logo Image

    With Materialize, Datalot removed load from their existing SQL database. From a cost-savings perspective, using standard SQL allowed more people at Datalot to participate in the development process without having to hire additional support. From a tactical perspective, Datalot can now take the same analytics that previously were embedded in reports, and use them to notify people the moment something becomes an issue, rather than spending time looking through a report or dashboard.