Grover
Modernizing Grover’s Data Infrastructure
Herausforderungen
- Performance Issues: Slow query speeds made accessing and analyzing data frustrating and inefficient.
- Manual Workflows: Many processes were still manual, leading to errors and consuming valuable time.
- Scalability Problems: Redshift struggled to handle the increasing complexity of data pipelines and analytics needs.
- High Maintenance Costs: Frequent manual interventions drove up costs and diverted resources.
- Data Integrity Concerns: Manual data transformation processes lacked traceability, increasing the risk of errors and inconsistencies.
Lösung
SymuFolk addressed Grover’s challenges by migrating their data infrastructure to Snowflake, a scalable cloud-based data warehouse that improved performance and efficiency. To enhance data accuracy and eliminate human error, DBT (Data Build Tool) was implemented, automating and streamlining data transformations.
Manual workflows were replaced with Apache Airflow, automating data pipelines, providing real-time logging, and introducing alerts for quick issue resolution. Additionally, SymuFolk optimized Grover’s existing Redshift environment, ensuring legacy systems operated smoothly during the transition.
unser Beitrag
Python
GraphQL
Node.js
NestJS
PHP
Microsoft Net
ERGEBNISSE
SymuFolk modernized Grover’s data infrastructure, enhancing scalability, automation, and processing speed, while reducing costs and manual inefficiencies, ensuring seamless data management.
40%
40%
Faster
Queries
25%
25%
Kosteneffizienz
50%
50%
Fewer Errors
wie wir es gemacht haben
Assessment & Planning
Design & Architecture
Migration & Implementation
Optimization & Testing
We optimized Redshift configurations and rigorously tested the new system to ensure seamless performance.
Monitoring & Support
Streamlined Workflows
Technologien
WIR VERWENDET