About the Role
We are seeking a highly skilled and experienced Data Lake Cloud Engineer with a proven track record of designing, implementing, and maintaining large-scale cloud-based data lake platforms. This role requires a professional who can take ownership of our current data lake ecosystem, optimize its performance, and drive future enhancements with minimal oversight. The ideal candidate will have at least 5 years of hands-on experience in building enterprise-grade data lakes, strong cloud architecture expertise, and the ability to work with cutting-edge data ingestion, processing, and analytics tools.
Key Responsibilities
-
Take ownership of the existing enterprise data lake platform, ensuring scalability, reliability, and performance.
-
Lead the design, architecture, and implementation of cloud-native data lake solutions and integrations.
-
Manage and optimize data ingestion pipelines on Oracle OCI, using tools such as Apache NiFi, Kafka, Batch Processing of data, Data captures, and or CSV.
-
Design and implement pipelines for network data ingestion and file formats (e.g., Parquet, Avro, OCR, etc.), ensuring efficient storage, processing, and retrieval.
-
Build, configure, and tune query engines such as Trino (Presto), Spark, and Hive for efficient analytics and reporting.
-
Implement and maintain metadata management, data governance, and security frameworks.
-
Monitor and troubleshoot system performance, ensuring SLAs are met for ingestion, processing, and query workloads.
-
Automate platform deployment, monitoring, and maintenance with Infrastructure-as-Code (Terraform, CloudFormation, etc.).
-
Collaborate with data engineers, analysts, and business teams to understand data requirements and deliver solutions that maximize data accessibility and usability.
-
Keep the data platform up to date with the latest open-source and cloud-agnostic technologies, implementing upgrades and enhancements where needed.
Requirements
5+ years of proven, hands-on experience implementing and managing large-scale data lakes in the cloud (OCI). Strong expertise in:
-
Data ingestion & orchestration: Apache NiFi, Apache Kafka, CSV, and others
-
Data processing frameworks: Apache Spark, PySpark, Trino (Presto), Hive, Flink.
-
Storage & lakehouse architectures: Delta Lake, Apache Hudi, Iceberg, and cloud-native object storage (S3).
-
Query & analytics tools: Trino/Presto, SparkSQL, Metabase, or Apache Superset.
-
Experience with data lake file formats such as Apache Parquet, Avro, ORC, CSV, etc. including ingestion, parsing, and analytics within a data lake.
-
Solid understanding of data governance, lineage, cataloging, and security frameworks (Apache Atlas).
-
Experience with CI/CD and IaC (ArgoCD, Terraform, Ansible) for automated deployments.
-
Hands-on experience with cloud security best practices, including IAM, encryption, and network security.
-
Strong proficiency in Python or Java for data engineering and automation tasks.
-
Proven ability to work independently, quickly understand existing environments, and deliver results without extensive training.
Preferred Skills
-
Exposure to machine learning workflows integrated with data lakes.
-
Experience with real-time streaming data pipelines.
-
Familiarity with containerization and orchestration (Docker, Kubernetes).
-
Knowledge of cost optimization strategies in cloud-based data platforms.