Big Data Specialist

HireTalent
Gaithersburg, United States of America
2 days ago

Role details

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

Job location

Gaithersburg, United States of America

Tech stack

Java
Agile Methodologies
Artificial Intelligence
Amazon Web Services (AWS)
Amazon Web Services (AWS)
Data analysis
Build Automation
Automation of Tests
Big Data
Cloud Computing
Configuration Management
Information Systems
Databases
Continuous Integration
Data Architecture
Data Integration
ETL
Database Queries
Software Debugging
Distributed Systems
Memory Management
Hadoop
Hive
Python
Object-Oriented Software Development
Operational Databases
Performance Tuning
Scrum
E2e Testing
Standard Sql
Scala
Simple Data Format
Software Engineering
SQL Databases
System Testing
Test Case Design
Workflow Management Systems
Data Processing
Data Ingestion
GitHub Copilot
Concurrency
Prompt Engineering
Spark
Information Technology
Functional Programming
GPT
Data Pipelines
Serverless Computing

Job description

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 etc., * Design, develop, and maintain large-scale data processing pipelines using Big Data technologies (e.g., Hadoop, Spark, Python, Scala).

  • Implement data ingestion, storage, transformation, and analysis of 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

  • 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.
  • Past experience with developing enterprise quality solutions in an iterative or Agile environment.
  • 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.
  • Should be well organized, thorough, and able to handle competing priorities.
  • Ability to maintain focus and develop proficiency in new skills rapidly.
  • Ability to work in a fast paced environment.
  • Experience with object oriented programming languages such as Java, Scala or Python.

Essential Technical Skills:

  • AI Tool Proficiency: Hands-on experience with AI development tools (GitHub Copilot, Q Developer, ChatGPT, Claude, etc.)
  • Technical Background: Strong software development background with ability to contribute to technical discussions
  • Agile Methodology: Extensive experience with Scrum, Kanban, and continuous improvement practices
  • Big Data technologies
  • Experience with Big data technologies such as Hadoop, Spark, Hive & Trino
  • Evaluate understanding of common issues like:
  • ? Data skew and strategies to mitigate it.
  • ? Working with massive data volumes in PetaBytes.
  • ? Troublehsooting job failures due to resource limitations, bad data, scalability challenged.
  • Look for real-world debugging and mitigation stories.

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

SQL Skills (Window Functions, Joins, Complex Queries)

  • Assess comfort with SQL window functions, multi-table joins, aggregations.
  • Provide examples or ask them to write/optimize SQL queries on the spot.
  • Probe how they handle edge cases like NULLs, duplicates, ordering, etc.

Apache Spark (Development, Internals & Tuning)

  • Test their understanding of Spark's core architecture - executors, tasks, stages, DAG.
  • Focus on Spark performance tuning techniques: partitioning, caching, broadcast joins, etc.
  • Ask scenario-based questions on troubleshooting slow running/stuck jobs or resource issues in Spark.
  • Explore their experience optimizing Spark jobs for large-scale datasets.

Cloud Technologies

  • Check exposure to AWS services like S3, EMR, Glue, Lambda, Athena, etc.
  • Ask how they've used S3 with Spark (e.g., dealing with file formats, consistency issues).
  • EKS, Serverless knowledge, etc.

Programming - Python or Scala

  • Assess ability to write clean, modular, and performant code.
  • Look for experience in functional programming concepts (e.g., immutability, higher-order functions).
  • Ask about real-world use cases where they wrote scalable data processing code.
  • Evaluate understanding of collections, concurrency, and memory management.

Good to have:

  • Experience with managing production data pipelines/ETL systems
  • Experience with CI/CD
  • Experience writing test cases
  • AWS certifications

Apply for this position