Senior Big Data Developer

FUSTIS LLC
Washington, United States of America
yesterday

Role details

Contract type
Temporary contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English
Experience level
Senior
Compensation
$ 90K

Job location

Washington, United States of America

Tech stack

Java
JavaScript
Artificial Intelligence
Airflow
Amazon Web Services (AWS)
Business Analytics Applications
Data analysis
Azure
Big Data
Cloud Computing
Databases
Data Architecture
Information Engineering
Data Governance
Data Infrastructure
Data Integration
ETL
Dataspaces
Data Systems
Data Warehousing
Relational Databases
Linux
DevOps
Digital Architecture
Distributed Computing Environment
Perl
Github
Graph Database
Python
PostgreSQL
Linux System Administration
Machine Learning
Meta-Data Management
Microsoft SQL Server
MySQL
NoSQL
Performance Tuning
DataOps
Unstructured Data
Workflow Management Systems
Enterprise Data Management
Data Processing
Scripting (Bash/Python/Go/Ruby)
Cloud Platform System
Snowflake
Software Troubleshooting
Database Performance
Change Data Capture
Gitlab
GIT
Data Lake
Information Technology
Data Analytics
Data Management
Machine Learning Operations
Physical Data Models
Cloud Migration
Software Version Control
Data Pipelines
Programming Languages

Job description

The Data Architecture, Technology, and Analytics (DATA) team within the Federal Reserve Board's Division of Research & Statistics (R&S) is responsible for transforming how enterprise data is ingested, organized, analyzed, and visualized to support economic research and policy decision-making., We are seeking a highly skilled Data Architect / Data Engineer to design, develop, and optimize modern data architectures, enterprise data platforms, and scalable data pipelines. This individual will play a critical role in supporting economists, researchers, analysts, and technical teams by ensuring efficient, reliable, and scalable access to data across the organization., Design, develop, and maintain enterprise-scale data architectures and data platforms. Build and optimize scalable ETL/ELT pipelines for ingestion, transformation, and delivery of structured and unstructured data. Develop conceptual, logical, and physical data models aligned with enterprise architecture standards. Architect and manage relational databases, data warehouses, data lakes, and modern data ecosystems. Support migration of data workflows and pipelines between on-premises and cloud environments. Implement workflow orchestration and automation using tools such as Airflow, Prefect, Dagster, or AWS Step Functions. Perform data integration across multiple internal and external data sources. Design and implement Change Data Capture (CDC) solutions for enterprise data warehousing initiatives. Optimize database performance, scalability, reliability, and data processing workloads. Collaborate with economists, researchers, analysts, and technical stakeholders to understand business requirements and deliver effective data solutions. Conduct root cause analysis of data issues and identify opportunities for process improvement and automation. Implement and maintain CI/CD pipelines and DataOps practices for data engineering projects. Support machine learning and advanced analytics initiatives through efficient data infrastructure and model deployment frameworks. Ensure data governance, security, quality, and compliance standards are followed across all solutions. Document architecture designs, technical specifications, and operational procedures. Required Qualifications

Requirements

Do you have experience in Version control?, Do you have a Master's degree?, The ideal candidate is a hands-on data professional with deep expertise in data modeling, database architecture, ETL/ELT development, cloud platforms, and enterprise data management. This role requires strong analytical capabilities, excellent communication skills, and a passion for building data solutions that enable advanced research and business intelligence., Bachelor's Degree in Computer Science, Information Technology, Engineering, Data Science, or a related technical field. Master's Degree or other advanced degree is preferred. Experience

Minimum 7+ years of experience in Data Engineering, Data Architecture, Database Engineering, or related fields. Proven experience designing and implementing enterprise data platforms and large-scale data solutions. Required Technical Skills

Data Engineering & Architecture

Strong expertise in data architecture, data modeling, and enterprise information architecture. Experience designing conceptual, logical, and physical data models. Extensive experience building and maintaining scalable data pipelines and processing frameworks. Experience implementing enterprise data warehouses, data lakes, and modern analytics platforms. Strong understanding of Change Data Capture (CDC) methodologies. Databases

Advanced SQL expertise. Hands-on experience with: PostgreSQL Microsoft SQL Server MySQL Experience with database administration, optimization, and performance tuning. Programming & Scripting

Advanced proficiency in: Python R Strong scripting and automation experience. Experience with additional programming languages such as: Java Scala JavaScript Perl ETL/ELT & Workflow Automation

Experience designing and automating ETL/ELT processes. Hands-on experience with workflow orchestration tools such as: Apache Airflow Prefect Dagster AWS Step Functions Cloud & Modern Data Platforms

Experience working with: AWS Microsoft Azure Snowflake Experience migrating applications and data pipelines between on-premises and cloud environments. DevOps & DataOps

Experience implementing and maintaining: CI/CD pipelines DataOps frameworks Experience with Git-based source control platforms: GitHub GitLab Big Data & Analytics

Experience with: Distributed computing frameworks Large-scale data processing systems High-volume data workloads Experience processing structured and unstructured datasets. Linux & Infrastructure

Strong development and deployment experience in Linux environments. Preferred Qualifications

Experience working with economic, financial, or regulatory datasets. Experience supporting research organizations or data-driven policy environments. Understanding of time-series data modeling, forecasting, and statistical analysis techniques. Experience with NoSQL technologies and Graph Databases. Experience developing, deploying, and maintaining Machine Learning models. Knowledge of enterprise data governance and metadata management frameworks. Experience supporting advanced analytics and AI-driven data initiatives. Soft Skills

Excellent verbal and written communication skills. Strong stakeholder management and customer service mindset. Exceptional analytical and problem-solving abilities. Ability to work independently and manage multiple priorities simultaneously. Strong troubleshooting and root-cause analysis skills. Detail-oriented with a focus on quality and continuous improvement.

Apply for this position