FREE ACCESS
5,000–10,000 jobs/day

See all jobs on JobTailor
Search thousands of fresh jobs every day.
Discover
- Fresh listings
- Fast filters
- No subscription required
Create a free account and start exploring right away.

Data Platform Engineer
PaymentologyData Platform Engineer building scalable cloud-based data infrastructure at Paymentology. Collaborating in a fully remote environment to design robust data systems and pipelines.
Tech Stack
Tools & technologiesAirflowAmazon RedshiftApacheAWSBigQueryCloudGoogle Cloud PlatformKafkaKubernetesNoSQLPythonSparkSQLTerraform
About the role
Key responsibilities & impact- Design and implement cloud-based data platform infrastructure using Infrastructure as Code (Terraform), with a strong focus on scalability, security, reliability, and cost-efficiency
- Build and maintain CI/CD pipelines that automate data engineering workflows, data pipeline deployments, and infrastructure provisioning, ensuring faster deployment cycles and minimizing errors
- Implement and operate observability solutions — integrating monitoring, logging, and metrics to ensure platform reliability, performance visibility, and fast incident response
- Collaborate closely with data engineers and cross-functional teams to design and implement data pipelines, data models, and platform capabilities that meet performance and business requirements
- Apply best practices for high availability, disaster recovery, security and cost optimization, while documenting infrastructure patterns, data architecture decisions, and operational procedures.
Requirements
What you’ll need- 3-5 years of hands-on experience in Data Engineering, Platform Engineering, or DataOps roles
- Proven track record in designing and implementing reliable, scalable data platforms and data infrastructure — not just supporting, but owning end-to-end delivery
- Hands-on experience with modern data engineering tools such as dbt, Apache Airflow or Apache Kafka is required
- Hands-on proficiency with Infrastructure as Code (Terraform) and cloud architecture patterns on AWS or GCP
- Deep experience with AWS or GCP, including data storage and processing services (e.g., BigQuery, Snowflake, S3, Redshift)
- Practical experience with Kubernetes and containerised workloads for orchestrating data platform services
- Experience implementing observability stacks for data platform monitoring, logging, metrics, and alerting
- Strong programming skills in Python, SQL, and Bash to build data pipelines, automate workflows, and perform data processing
- Excellent problem-solving skills and the ability to work effectively in a collaborative, fully remote environment
- A strong inclination to deepen expertise in data architecture, data modelling, and MLOps capabilities.
- Experience with real-time data processing (e.g., Kafka, Spark Streaming) and both SQL and NoSQL data storage solutions is an advantage.
Benefits
Comp & perks- Health insurance
- 401(k) matching
- Flexible work hours
- Paid time off
- Remote work options