The Data Architecture Technology and Analytics (DATA) section is tasked with
transforming how the Federal Reserve Boards Division of Research & Statistics (R&S)
ingests organize uses and visualizes data.
The Data Architecture Technology and Analytics (DATA) section is looking for an
experienced detailed oriented Data Architect/Engineer who will be responsible for
expanding and optimizing our data and data pipeline architecture as well as optimizing
data flow and collection for economic policy and research teams. The ideal candidate is
an experienced hands-on data modeler with working knowledge of database design and
administration data pipeline building and data wrangling who enjoys improving existing
data systems and/or building them from the ground up. The Data Architect/Engineer will
support our economists and technical experts and will ensure optimal data delivery architecture is designed and developed. They must have a service mindset be self-directed and be comfortable supporting the data needs of multiple teams and systems.
The right candidate will be excited by the prospect of optimizing or even re-designing the
R&S divisions data architecture to support our next generation of data initiatives.
Technical Skills:
Bachelors degree in computer science Information Technology Engineering or a related
technical field and at least 7 years of related experience; advanced degree preferred.
Advanced working knowledge of SQL and experience working with relational database
platforms including PostgreSQL Microsoft SQL Server and MySQL.
Advanced working knowledge of Python R and other scripting languages used for data
engineering and analytics.
Experience working with large-scale data systems including distributed computing scalable
data processing data storage architecture and optimization of high-volume data workloads.
Experience designing developing and automating ETL/ELT workflows and data integration
pipelines.
Experience building optimizing and maintaining scalable databases data pipelines and data
processing frameworks.
Experience with workflow orchestration and pipeline automation tools such as Apache
Airflow Prefect Dagster or AWS Step Functions.
Experience migrating workflows and data pipelines between on-premises and cloud
environments.
Experience processing analyzing and integrating structured and unstructured data sources.
Experience developing in Linux environments and using source control platforms such as
GitLab and/or GitHub.
Experience performing root cause analysis on internal and external data and business
processes to answer business questions and identify opportunities for improvement.
Ability to design and communicate enterprise information architecture at conceptual logical
and physical levels.
In-depth experience designing and implementing database data lake and enterprise data
platform solutions.
Strong hands-on software engineering and implementation experience including
development testing and deployment of data applications and services.
Excellent oral and written communication skills with a strong customer service orientation.
Exceptional analytical problem-solving and troubleshooting skills.
Understanding of time series data and related analytical and forecasting techniques.
Experience working in a research environment and/or with economic or financial data.
Experience with NoSQL and graph database technologies.
Experience developing training deploying and maintaining machine learning models.
Working experience with cloud technologies such as AWS Microsoft Azure and Snowflake.
Experience implementing data warehouses utilizing Change Data Capture (CDC)
methodologies.
Experience implementing and maintaining CI/CD pipelines and DataOps platforms.
Working knowledge of additional programming and scripting languages such as Java Scala
JavaScript or Perl.
Required Skills :
Basic Qualification :
Additional Skills :
Background Check : No
Drug Screen : No
Work Experience: The Data Architecture Technology and Analytics (DATA) section is tasked with transforming how the Federal Reserve Boards Division of Research & Statistics (R&S) ingests organize uses and visualizes data. The Data Architecture Technology and Analytics (DATA) section is looking ...
Work Experience:
The Data Architecture Technology and Analytics (DATA) section is tasked with
transforming how the Federal Reserve Boards Division of Research & Statistics (R&S)
ingests organize uses and visualizes data.
The Data Architecture Technology and Analytics (DATA) section is looking for an
experienced detailed oriented Data Architect/Engineer who will be responsible for
expanding and optimizing our data and data pipeline architecture as well as optimizing
data flow and collection for economic policy and research teams. The ideal candidate is
an experienced hands-on data modeler with working knowledge of database design and
administration data pipeline building and data wrangling who enjoys improving existing
data systems and/or building them from the ground up. The Data Architect/Engineer will
support our economists and technical experts and will ensure optimal data delivery architecture is designed and developed. They must have a service mindset be self-directed and be comfortable supporting the data needs of multiple teams and systems.
The right candidate will be excited by the prospect of optimizing or even re-designing the
R&S divisions data architecture to support our next generation of data initiatives.
Technical Skills:
Bachelors degree in computer science Information Technology Engineering or a related
technical field and at least 7 years of related experience; advanced degree preferred.
Advanced working knowledge of SQL and experience working with relational database
platforms including PostgreSQL Microsoft SQL Server and MySQL.
Advanced working knowledge of Python R and other scripting languages used for data
engineering and analytics.
Experience working with large-scale data systems including distributed computing scalable
data processing data storage architecture and optimization of high-volume data workloads.
Experience designing developing and automating ETL/ELT workflows and data integration
pipelines.
Experience building optimizing and maintaining scalable databases data pipelines and data
processing frameworks.
Experience with workflow orchestration and pipeline automation tools such as Apache
Airflow Prefect Dagster or AWS Step Functions.
Experience migrating workflows and data pipelines between on-premises and cloud
environments.
Experience processing analyzing and integrating structured and unstructured data sources.
Experience developing in Linux environments and using source control platforms such as
GitLab and/or GitHub.
Experience performing root cause analysis on internal and external data and business
processes to answer business questions and identify opportunities for improvement.
Ability to design and communicate enterprise information architecture at conceptual logical
and physical levels.
In-depth experience designing and implementing database data lake and enterprise data
platform solutions.
Strong hands-on software engineering and implementation experience including
development testing and deployment of data applications and services.
Excellent oral and written communication skills with a strong customer service orientation.
Exceptional analytical problem-solving and troubleshooting skills.
Understanding of time series data and related analytical and forecasting techniques.
Experience working in a research environment and/or with economic or financial data.
Experience with NoSQL and graph database technologies.
Experience developing training deploying and maintaining machine learning models.
Working experience with cloud technologies such as AWS Microsoft Azure and Snowflake.
Experience implementing data warehouses utilizing Change Data Capture (CDC)
methodologies.
Experience implementing and maintaining CI/CD pipelines and DataOps platforms.
Working knowledge of additional programming and scripting languages such as Java Scala