Senior Data Engineer
Company: New York Blood Center
Location: New York
Posted on: June 1, 2025
Job Description:
OverviewAt New York Blood Center Enterprises (NYBCe), one of the
most comprehensive blood centers in the world, our focus is on
cultivating excellence by merging cutting-edge innovation with
diligent customer service, groundbreaking research, and
comprehensive program and service development. Join us as we work
towards meeting and exceeding the growing needs of our diverse
communities, further our lifesaving strategic goals in a rapidly
changing environment, and expand our impact on the local, national,
and global communities we serve.ResponsibilitiesAs a Senior Data
Engineer, you'll be a pivotal figure in defining and advancing our
data infrastructure vision. Reporting to the Director of Data
Engineering, your role will be crucial in designing, implementing,
and refining databases, data pipelines, and data interfaces to
ensure scalability and performance. Your proficiency in SQL,
Python, and cloud environments (Azure, AWS, or Google Cloud) will
empower you to develop solutions that are both robust and optimally
aligned with our strategic goals. With a solid grasp of Big Data
concepts, including Spark and Cloud ETL tools like Databricks, you
will enhance our capabilities in handling complex data challenges.
By adopting Agile/SCRUM methodologies, you'll drive innovative and
timely project deliveries. You'll also mentor junior engineers,
promoting a culture of excellence and continuous improvement. As a
senior member of our team, you will work closely with data
scientists, BI teams, software engineers, and other stakeholders to
translate complex data requirements into practical and impactful
engineering strategies.Candidates must be able to report into one
of the following NYBCe locations:New York City, NY; Kansas City,
Missouri; St. Paul, Minnesota; Providence , RI and Newark,
DE.Responsibilities:
- Data Pipeline Design & Optimization: Design, implement, and
optimize robust and scalable data pipelines using SQL, Python, and
cloud-based ETL tools such as Databricks. Ensure efficient data
flow and processing to support large-scale data handling.
- Data Modeling: Develop and refine data models to accurately
represent business processes, ensuring they're scalable and fully
integrate with our extensive data architecture, including Big Data
frameworks like Spark.
- Data Architecture: Enhance our overarching data architecture
strategy, assisting in decisions related to data storage,
consumption, integration, and management within cloud environments
(Azure, AWS, or Google Cloud).
- Agile/SCRUM: Lead and contribute within Agile/SCRUM frameworks
to ensure timely and efficient project deliveries. Actively
participate in sprints and stand-ups, applying these methodologies
to streamline development.
- Collaboration: Partner with data scientists, BI teams, and
other engineering teams to understand and translate complex data
requirements into actionable engineering solutions.
- Mentorship: Guide and mentor junior data engineers, promoting
best practices in SQL, Python, and cloud technologies, and
fostering a culture of continuous learning and improvement.
- Quality & Governance: Uphold and champion data quality
standards and governance policies, ensuring reliability and
compliance in all data-related tasks.
- Performance Tuning: Monitor and enhance the performance of data
infrastructure, proactively identifying and resolving bottlenecks
or inefficiencies in cloud and Big Data environments.
- Innovation: Stay abreast of emerging data engineering and AI
technologies and methodologies, recommending and implementing
innovative tools or practices as appropriate.
- Documentation: Generate comprehensive documentation for data
processes, pipelines, and architectures to ensure clarity and ease
of maintenance for the team, including detailed descriptions of
cloud and Big Data implementations.QualificationsRequired Minimum
Education & Experience:Education:Bachelor's Degree in Computer
Science, Data Science, Information Technology or other quantitative
disciplines such as Science, Statistics, Economics, or
Mathematics.Essential Experience:
- 7+ years of progressive experience in data engineering, with
significant expertise in designing, implementing, and optimizing
databases and data pipelines.
- Extensive hands-on experience with SQL Server, Oracle, or other
relational database management systems (RDBMS).
- Proficiency in SQL and Python for advanced data manipulation
and analytics.
- Demonstrated experience with data modeling and architecture for
both analytics and transactional systems within large-scale
environments.Cloud and Big Data Experience:
- Proficient with at least one major cloud data platform (Azure,
AWS, Google Cloud) with practical application in data engineering
projects.
- Familiarity with Big Data technologies such as Spark and Cloud
ETL tools like Databricks, focusing on scalability and real-time
processing capabilities.Methodology and Tools:
- Proven track record of using Agile and SCRUM methodologies to
drive successful project delivery in a dynamic development
environment.
- Experience in developing data models for integration and
analysis that support business intelligence and data analytics
initiatives.Any combination of education, training, and experience
that provides the required knowledge, skills, and abilities to
perform the essential functions of the job.Preferred
Qualifications:Education: Master's Degree in Computer Science, Data
Science, Information Technology or other quantitative disciplines
such as Science, Statistics, Economics, or Mathematics.Experience
with the Microsoft Azure technology stack or similar technologies
in competing platforms.Practical knowledge of data analytics and
visualization tools to aid in data-driven decision making and
reporting.Certifications & Licenses:Professional certification in
Agile and SCRUM methodologies (e.g., Certified ScrumMaster (CSM),
SAFe Agilist).Certifications in Python and SQL programming (e.g.,
Microsoft Certified: Python Programming Specialist, Oracle SQL
Certification).Certifications in cloud services relevant to the job
(e.g., AWS Certified Solutions Architect, Google Professional Data
Engineer, Microsoft Certified: Azure Data Engineer Associate).Big
Data certifications (e.g., Cloudera Certified Professional (CCP):
Data Engineer, Databricks Certified Professional Data
Scientist).Willing to attain certification, if not currently
certified.Required Knowledge, Skills & Abilities:Knowledge
- Fluent Communication: Ability to articulate complex data
concepts and project updates clearly to both technical and
non-technical stakeholders.
- Strong Data Analysis Ability: Expertise in analyzing large
datasets to derive insights and inform business decisions.
- Proficiency in SQL and Python: High level of skill in SQL and
Python for data analysis, data manipulation and scripting.
- ETL/ELT Architecture: In-depth knowledge of developing and
managing ETL and ELT architectures using various tools and
frameworks.
- Cloud Experience: Experience with cloud platforms such as
Azure, AWS, or Google Cloud, and their respective data services and
tools.
- Big Data Concepts: Understanding of Big Data technologies and
frameworks, including Spark and Cloud ETL tools such as
Databricks.
- Agile and SCRUM Knowledge: Familiarity with Agile methodologies
and SCRUM practices, capable of integrating these into project
management and daily workflows.
- Quality Assurance and Data Governance: Knowledge of data
quality standards and governance, ensuring data integrity and
compliance across all processes.Skills
- Collaboration: Ability to work effectively with
cross-functional teams, including data scientists, BI analysts, and
software engineers, to implement data solutions.
- Mentorship and Leadership: Skills in mentoring junior engineers
and leading project teams to promote knowledge sharing and
professional growth within the team.
- Innovation and Continuous Learning: Commitment to staying
updated on the latest industry trends and technologies in data
engineering and implementing them as relevant.Abilities
- Ability to interact with customers one-on-one or in large
groups
- Ability to work independently with remote supervision.
- Ability to build in receiving feedback as part of the
development process, and seek consistent and constructive
feedback.
- Ability to embrace accountability and ownershipFor applicants
who will perform this position in New York City or Westchester
County, the proposed annual salary is $125,000.00to $135,000.00a
year. For applicants who will perform this position outside of New
York City or Westchester County, salary will reflect local market
rates and be commensurate with the applicant's skills, job-related
knowledge, and experience.
#J-18808-Ljbffr
Keywords: New York Blood Center, Toms River , Senior Data Engineer, Engineering , New York, New Jersey
Didn't find what you're looking for? Search again!
Loading more jobs...