Kubernetes Engineer w/ Spark/Big Data exp

Forsys Inc
Rockville, United States of America
3 days ago

Role details

Contract type
Temporary contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English

Job location

Remote
Rockville, United States of America

Tech stack

Artificial Intelligence
Amazon Web Services (AWS)
Amazon Web Services (AWS)
Amazon Web Services (AWS)
Data analysis
Build Automation
Automation of Tests
Big Data
Cloud Computing
Configuration Management
Information Systems
Databases
Data Architecture
Data Integration
ETL
Database Queries
Software Debugging
Distributed Systems
Memory Management
Github
Hadoop
Monitoring of Systems
Hive
Identity and Access Management
Subnetting
Python
Octopus Deploy
Object-Oriented Software Development
Operational Databases
Performance Tuning
PVCS Version Manager
Prometheus
Standard Sql
Scala
Simple Data Format
Software Engineering
SQL Databases
System Testing
Systems Integration
Workflow Management Systems
YAML
Data Logging
Data Processing
Freeform SQL
Data Ingestion
GitHub Copilot
Autoscaling
Istio
Grafana
Concurrency
Prompt Engineering
Spark
Kubernetes Helm Charts
Caching
Amazon Web Services (AWS)
Cloudformation
PySpark
Gitlab-ci
Kubernetes
Information Technology
Amazon Web Services (AWS)
Linkerd (Service Mesh)
Functional Programming
Cloudwatch
Terraform
GPT
Data Pipelines
Serverless Computing
Amazon Web Services (AWS)
Docker
ELK
Jenkins

Job description

  • Must be able to interview onsite in Rockville, MD for final round.
  • Any work authorization is fine
  • 6 month base contract likely long-term, multi-year extensions (our average consultant stays 4.5 years on contract), We are seeking a highly skilled and experienced Big Data Engineer to design, develop, and optimize large-scale data processing systems. In this role, you will work closely with cross-functional teams to architect data pipelines, implement data integration solutions, and ensure the performance, scalability, and reliability of big data platforms. The ideal candidate will have deep expertise in distributed systems, cloud platforms, and modern big data technologies such as Hadoop, Spark, and Kubernetes-based orchestration., Design, develop, and maintain large-scale data processing pipelines using Big Data technologies (e.g., Hadoop, Spark, Python, Scala).

Architect and deploy containerized big data workloads on Amazon EMR on EKS (Elastic Kubernetes Service).

Design and implement Kubernetes-based infrastructure for running Spark applications at scale.

Implement data ingestion, storage, transformation, and analysis solutions that are scalable, efficient, and reliable.

Stay current with industry trends and emerging Big Data technologies to continuously improve the data architecture.

Collaborate with cross-functional teams to understand business requirements and translate them into technical solutions.

Optimize and enhance existing data pipelines for performance, scalability, and reliability.

Develop automated testing frameworks and implement continuous testing for data quality assurance.

Conduct unit, integration, and system testing to ensure the robustness and accuracy of data pipelines.

Work with data scientists and analysts to support data-driven decision-making across the organization.

Ability to write and maintain automated unit, integration, and end-to-end tests.

Monitor and troubleshoot data pipelines in production environments to identify and resolve issues.

Requirements

  • Transitioning from EMR on EC2 over to EMR on EKS
  • Experience with Helm charts, Spark on K8 s, Kubectl, etc
  • Must also have Spark experience
  • Must be willing to create Pyspark data pipelines
  • Certifications are preferred but not mandatory (CKAD, CKA), AI Tool Proficiency:

Hands-on experience with AI development tools (GitHub Copilot, Q Developer, ChatGPT, Claude, etc.)

Big Data Technologies:

Experience with Big data technologies such as Hadoop, Spark, Hive & Trino

Understanding of common issues like data skew and strategies to mitigate it, working with massive data volumes in PetaBytes, and troubleshooting job failures due to resource limitations, bad data, and scalability challenges.

Real-world experience with debugging and mitigation strategies.

Container Orchestration & Kubernetes:

Strong experience with Kubernetes architecture, concepts, and operations (pods, services, deployments, namespaces, ConfigMaps, Secrets)

Hands-on experience with Amazon EMR on EKS (Kubernetes) for running Apache Spark workloads

Experience with Kubernetes resource management, scheduling, and auto-scaling

Knowledge of Helm charts for deploying and managing applications on Kubernetes

Understanding of Kubernetes networking, storage (PVs, PVCs), and security best practices

Experience with kubectl and Kubernetes YAML manifests

Ability to troubleshoot Kubernetes cluster issues, pod failures, and resource constraints

Experience integrating Spark with Kubernetes operators and dynamic allocation

AI Skills:

Prompt Engineering: Proficiency in crafting effective prompts for AI coding assistants and analysis tools

AI Workflow Design: Experience redesigning development processes to leverage AI capabilities

Data Analysis: Ability to interpret AI-generated insights and translate them into actionable team improvements

Change Management: Experience leading teams through AI adoption and workflow transformation

Apache Spark (Development, Internals & Tuning):

Deep understanding of Spark's core architecture - executors, tasks, stages, DAG

Expertise in Spark performance tuning techniques: partitioning, caching, broadcast joins, etc.

Experience troubleshooting slow running/stuck jobs or resource issues in Spark

Proven ability to optimize Spark jobs for large-scale datasets

Experience running Spark on Kubernetes and understanding Spark-on-K8s architecture

Cloud Technologies:

Experience with AWS services like S3, EMR, EMR on EKS, Glue, Lambda, Athena, etc.

Hands-on experience using S3 with Spark (e.g., dealing with file formats, consistency issues)

Strong experience with Amazon EKS (Elastic Kubernetes Service) architecture and best practices

Experience with AWS IAM roles for service accounts (IRSA) for Kubernetes workloads

Knowledge of AWS networking for EKS (VPC, subnets, security groups)

Experience with AWS monitoring and logging tools (CloudWatch, CloudTrail) for Kubernetes workloads

Serverless knowledge (Lambda, Fargate)

Programming - Python or Scala:

Ability to write clean, modular, and perform code

Experience with functional programming concepts (e.g., immutability, higher-order functions)

Real-world use cases where scalable data processing code was implemented

Strong understanding of collections, concurrency, and memory management

SQL Skills (Window Functions, Joins, Complex Queries):

Proficiency with SQL window functions, multi-table joins, and aggregations

Ability to write and optimize complex SQL queries

Experience handling edge cases like NULLs, duplicates, and ordering

Good to have:

Experience with managing production data pipelines/ETL systems

Experience with CI/CD pipelines (Jenkins, GitLab CI, GitHub Actions, ArgoCD)

Experience with Infrastructure as Code (Terraform, CloudFormation) for provisioning EKS clusters and EMR on EKS

Experience writing comprehensive test cases and test automation

Experience with Docker and container image optimization

Knowledge of service mesh technologies (Istio, Linkerd)

Experience with monitoring and observability tools (Prometheus, Grafana, ELK stack)

AWS certifications (AI practitioner, Solutions Architect, Big Data Specialty, or Kubernetes certifications like CKA/CKAD)

Experience with GitOps practices for Kubernetes deployments

Education/Experience Requirements:

Bachelor's degree in Computer Science, Information Systems or related discipline with at least five (5) years of related experience, or equivalent training and/or work experience; Master's degree and past Financial Services industry experience preferred.

Demonstrated technical expertise in Object Oriented and database technologies/concepts which resulted in deployment of enterprise quality solutions.

Extensive knowledge of industry leading software engineering approaches including Test Automation, Build Automation and Configuration Management frameworks.

Strong written and verbal technical communication skills.

Demonstrated ability to develop effective working relationships that improved the quality of work products..

Ability to maintain focus and develop proficiency in new skills rapidly.

Ability to work in a fast paced environment.

About the company

Forsys Inc. is a global Lead-to-Revenue and Enterprise Transformation consulting firm helping enterprises modernize revenue operations and core business platforms. Headquartered in Milpitas, California, Forsys partners with enterprise customers across the Americas to deliver large-scale Oracle, Salesforce, and cloud-led transformations.

Apply for this position