Spark Data Engineer
Mumbai, Maharashtra, India
9 hours ago
Applicants: 0
4 weeks left to apply
Job Description
Company: Mactores Website: Visit Website Business Type: Startup Company Type: Service Business Model: B2B Funding Stage: Pre-seed Industry: Data Analytics Job Description Mactores is a trusted leader among businesses in providing modern data platform solutions. Since 2008, Mactores have been enabling businesses to accelerate their value through automation by providing End-to-End Data Solutions that are automated, agile, and secure. We collaborate with customers to strategize, navigate, and accelerate an ideal path forward with a digital transformation via assessments, migration, or modernization. We are seeking a highly skilled and innovative Spark Engineer to join our team. In this role, you will design, develop, optimize, and operationalize high-performance data pipelines and applications using Apache Spark. This role requires hands-on expertise in distributed data processing, ETL engineering, performance tuning, cluster management, and working with cross-functional teams to deliver reliable, scalable, and efficient data solutions What Will You Do Architect, design, and build scalable data pipelines and distributed applications using Apache Spark (Spark SQL, DataFrames, RDDs) Develop and manage ETL/ELT pipelines to process structured and unstructured data at scale. Write high-performance code in Scala or PySpark for distributed data processing workloads. Optimize Spark jobs by tuning shuffle, caching, partitioning, memory, executor cores, and cluster resource allocation. Monitor and troubleshoot Spark job failures, cluster performance, bottlenecks, and degraded workloads. Debug production issues using logs, metrics, and execution plans to maintain SLA-driven pipeline reliability. Deploy and manage Spark applications on on-prem or cloud platforms (AWS, Azure, or GCP). Collaborate with data scientists, analysts, and engineers to design data models and enable self-serve analytics. Implement best practices around data quality, data reliability, security, and observability. Support cluster provisioning, configuration, and workload optimization on platforms like Kubernetes, YARN, or EMR/Databricks. Maintain version-controlled codebases, CI/CD pipelines, and deployment automation. Document architecture, data flows, pipelines, and runbooks for operational excellence What We Are Looking For Bachelor?s degree in Computer Science, Engineering, or a related field. 4+ years of experience building distributed data processing pipelines, with deep expertise in Apache Spark. Strong understanding of Spark internals (Catalyst optimizer, DAG scheduling, shuffle, partitioning, caching). Proficiency in Scala and/or PySpark with strong software engineering fundamentals. Solid expertise in ETL/ELT, distributed computing, and large-scale data processing. Experience with cluster and job orchestration frameworks. Strong ability to identify and resolve performance bottlenecks and production issues. Familiarity with data security, governance, and data quality frameworks. Excellent communication and collaboration skills to work with distributed engineering teams. Ability to work independently and deliver scalable solutions in a fast-paced environment You Will Be Preferred If Experience with Databricks, AWS EMR, Glue Spark, or GCP Dataproc. Familiarity with workflow orchestration tools like Apache Airflow, Dagster, or Prefect. Exposure to streaming platforms such as Kafka, Kinesis, or Pub/Sub. Experience running Spark workloads on Kubernetes. Familiarity with data warehouse ecosystems (Snowflake, BigQuery, Redshift, Iceberg, Delta Lake, Hudi). Understanding of DevOps practices, CI/CD, and IaC (Terraform, CloudFormation). Knowledge of distributed logging and monitoring tools (Grafana, Prometheus, CloudWatch, ELK). Prior experience in high-scale production environments or data platform teams
Required Skills
Additional Information
- Company Name
- SourcingXPress
- Industry
- N/A
- Department
- N/A
- Role Category
- Machine Learning Engineer
- Job Role
- Mid-Senior level
- Education
- No Restriction
- Job Types
- Hybrid
- Gender
- No Restriction
- Notice Period
- Less Than 30 Days
- Year of Experience
- 1 - Any Yrs
- Job Posted On
- 9 hours ago
- Application Ends
- 4 weeks left to apply