Apply

Data Engineering Manager

Posted about 1 month agoViewed

View full description

💎 Seniority level: Manager, 5+ years

🔍 Industry: Healthcare

🏢 Company: Cylinder Health

🗣️ Languages: English

⏳ Experience: 5+ years

Requirements:
  • Proven experience (5+ years in Data or other Software Engineering with 2+ years in Data Engineering leadership roles), with a track record of successfully delivering complex software projects.
  • Strong, hands-on expertise in modern data engineering tools and frameworks (e.g., DBT, Airflow, Google Cloud Platform), with a focus on scalability and operational excellence.
  • Exceptional leadership and team-building skills, with the ability to motivate, mentor and inspire technical teams.
  • Experience working in a HIPAA regulated environment (or other regulated industry) and supporting data security and privacy controls.
  • Demonstrated experience building and supporting Data Warehouse solutions.
  • Strong drive for automated testing.
Responsibilities:
  • Help define and execute on a strategic vision for data engineering that aligns with business goals.
  • Collaborate with Product and other stakeholders to define and prioritize the technical roadmap, ensuring alignment with business objectives.
  • Drive the successful execution of data engineering projects across multiple teams, including planning, resource allocation, and project management.
  • Oversee the development and maintenance of scalable, reliable data pipelines and infrastructure.
  • Establish and enforce best practices for data quality, privacy, security, compliance (e.g., HIPAA) and ethical data usage.
  • Build and grow a high-performing team of data engineers.
  • Provide mentorship and clear career growth paths for team members.
Apply

Related Jobs

Apply

📍 USA

🧭 Full-Time

🔍 Fintech

🏢 Company: Keep

  • Held a Data Manager position with a strong focus on the technical side.
  • Previous experience in Startups and Fintechs.
  • Hands-on experience with setting up and scaling data infrastructure.
  • Proficiency in Python, SQL, and modern data tools, including DBT, Snowflake, Fivetran, Hightouch, and other ETL/reverse ETL tools
  • Have strong data engineering skills, including data pipeline creation and maintenance.
  • Design, implement, and maintain a robust data infrastructure using modern tools like DBT, Snowflake, and ETL frameworks.
  • Ensure data accuracy, availability, and security across all systems.
  • Define and implement key underwriting performance metrics (e.g., default rates and approval times).
  • Run experiments to optimize underwriting processes and measure their impact.
  • Work closely with Product, Engineering, and Operations to understand workflows and suggest changes to improve data visibility and usability.
  • Communicate complex data insights to stakeholders, facilitating informed decision-making.
  • Address data bottlenecks impacting SWE teams.
  • Lay the groundwork for a scalable data team, mentoring and guiding new hires as the team grows.
  • Foster a culture of collaboration, innovation, and data-driven decision-making.

LeadershipPythonSQLETLSnowflakeCross-functional Team LeadershipData engineeringCommunication SkillsAnalytical SkillsMentoringData visualizationTeam managementData modelingData analyticsData management

Posted 4 days ago
Apply
Apply

📍 United States

🧭 Full-Time

💸 135000.0 - 230000.0 USD per year

🔍 Information Technology

🏢 Company: University👥 11-50🫂 Last layoff 7 months agoConsultingRentalProject ManagementInformation Technology

  • 7+ years of experience of building high scale enterprise Business Intelligence and data engineering solutions with ELT/ETL/Data warehousing, large scale Data environments e.g., Cloudera and public cloud (AWS preferred) using Ab Initio, Spark, Hive, Kafka, RDBMS (Oracle, MySQL).
  • 3+ years of management experience leading a high-performance engineering team.
  • 3+ years of experience in AWS serviced using Route53, S3, IAM, KMS, Athena, Glue, Cloud Watch, EC2 and Redshift.
  • AWS Solution Architect certification preferred.
  • Design scalable, robust, and secure data architectures that integrates with existing/new infrastructure.
  • Solution Architect with direct experience in analysis, design, development, implementation and testing of data engineering applications in highly agile and fast-moving teams.
  • Ensure alignment with business requirements, scalability needs, and technology trends.
  • Evaluate and select data technologies, platforms (Cloud, Data lakes and Data warehouses) and tools (ETL/ELT) and recommend appropriate data solutions for data storage, processing, and management.
  • Define data integration workflow, data flow, and pipelines to move and transform data across platforms.
  • Monitor and optimize data architectures for performance, scalability, and reliability.
  • Identify bottlenecks and suggest improvements in data pipelines and storage solutions.
  • Firsthand experience with AWS services and prior experience on migrating workloads from OnPrem to AWS S3 & Redshift.
  • Strong Experience in implementing Data warehouse solutions in Redshift by Optimizing and tuning the Redshift environment to enable more query performance.
  • Hands - on experience in designing ETL pipelines to enable automated data load into AWS S3 & Redshift.
  • Strong experience on architecting and Data modeling for AWS Redshift.
  • Experience in designing ETL pipelines to enable automated data load into AWS S3 & Redshift.
  • Ensure Seamless data exchange between on-premises and cloud systems.
  • Implement the Data governance framework to ensure data quality, consistency, and accuracy.
  • Implement the security measure for Personally Identifiable Information (PII) data security standards and Payment Card Industry (PCI) data security standards such as tokenization, encryption (at rest and in transit) and identity and access management.
  • Partner with Data Architects to identify opportunities to reuse existing data structures and follow established data architecture and data modeling standards. And to efficiently design data applications with scalability, resiliency, and speed.
  • Drive data solution and application standards across enterprise data lake, Data warehouse and Public Cloud (AWS preferred).
  • Collaborate across cross-functional teams to improve and deliver on business objectives and priorities.
  • Work closely with Engineering Leads, Product owners, Product Managers, Program manager, RTE, Scrum-masters in a Scaled Agile framework.
  • Develop and maintain detailed documentation, best practices and standards for data solution architecture and data management.
  • Stays up to date on latest trends in emerging data technologies, trends and recommends best practices.
  • Advocate for and lead innovative to adopt innovative data strategies (AI/ML Models, Predictive analytics, and real time data processing).
  • Mentor and coach the team to promote Synchrony values and culture.
  • Perform other duties and/or special projects as assigned.

AWSLeadershipSQLAgileCloud ComputingETLKafkaData engineeringSparkCommunication SkillsProblem SolvingRESTful APIsMentoringTeamworkData modelingData analyticsData management

Posted 7 days ago
Apply
Apply

📍 Canada, USA

🏢 Company: Lantern

  • 7+ years of experience in Data Engineering, with a track record of driving technical innovation and implementation of complex data solutions at scale
  • 5+ years of hands-on programming experience Python
  • 3+ years of experience managing a team or as a team lead
  • 4+ years of Cloud Experience: Azure (preferred)/AWS/GCP.
  • 3+ years of working with EDI or HIE standards (e.g. X12, HL7, and/or FHIR)
  • Experience in Modern Data Technologies like Spark, Databricks, and Kafka.
  • Expertise with Microsoft SQL Server (preferred) or other relational databases.
  • Experience in building data lakes to support high speed querying by the end users.
  • Strong communication skills, with the ability to convey complex technical concepts to non-technical stakeholders.
  • Lead and mentor a team of data engineers to design, develop, and deploy scalable solutions.
  • Collaborate with product and business stakeholders to deliver data solutions that meet user needs.
  • Architect, build, and maintain data infrastructure, ensuring reliability, scalability, and performance across various data sources and platforms.
  • Implement Data Ingestion, Transformation, and Data Quality features to support Application Engineering, Analytics, and various Business Verticals across the organization.
  • Collaborate with Data Engineers, Architects, and Business Analysts in building data models to improve reliability and interpretability of data for analytical and business needs.
  • Define and enforce coding standards and document best practices within the team.
  • Actively contribute to the creation of design documents, assess technologies, and conduct Proof of Concepts (PoCs).
  • Experience supporting production jobs and mitigate issues within the defined SLA.
  • Partner with senior leadership to define Data Strategy, Roadmap and hiring for future needs.
  • Bring in a positive attitude and foster a culture that embraces continuous learning and Innovation

AWSLeadershipPythonSQLCloud ComputingData AnalysisETLKafkaMicrosoft SQL ServerAzureData engineeringSparkCommunication SkillsAnalytical SkillsCI/CDRESTful APIsTerraformData visualizationTeam managementData modelingData management

Posted 8 days ago
Apply
Apply

📍 United States

🧭 Full-Time

💸 204000.0 - 260000.0 USD per year

🔍 Software Development

  • 5+ years of engineering management experience, with 9+ years of of relevant software development industry experience in a fast paced tech environment
  • Experience working on user facing product surfaces, especially in search related product areas
  • Strong communication skill and ability to influence decisions from a wide variety of stakeholders
  • Defining and executing on the technical direction and vision for the team to serve the data needs across Trust defenses and products
  • Raising the quality bar for the data assets owned by the team
  • Identifying strategic areas to uplevel data accessibility for various Trust x-functional stakeholders

AWSLeadershipSoftware DevelopmentSQLApache AirflowCloud ComputingData AnalysisETLPeople ManagementCross-functional Team LeadershipAlgorithmsApache KafkaData engineeringData StructuresREST APICommunication SkillsCI/CDProblem SolvingAgile methodologiesMentoringData visualizationTeam managementStakeholder managementData modelingSoftware EngineeringData analyticsData management

Posted 2 months ago
Apply
Apply

📍 Canada

🧭 Full-Time

🔍 EdTech

🏢 Company: Top Hat👥 251-500💰 $130,000,000 Series E over 4 years ago🫂 Last layoff over 1 year agoEducationEdTechMobileSoftware

  • 2+ years of experience in leading data engineering team
  • 5+ years of experience with data modelling in an agile work environment.
  • Proficient in multiple modeling techniques.
  • Alignment with a culture of experimentation and A/B testing.
  • Experience gathering and analyzing product requirements.
  • Expertise in SQL, ETL tools, big data systems like Hadoop, Spark, and dbt.
  • Experience creating ETL Specifications to satisfy product requirements.
  • Experience testing Data products.
  • Familiarity with ERwin data modelling tool.
  • Familiarity with database management systems like PostgreSQL, MongoDB.
  • Familiarity with data visualization tools.
  • Familiarity with agile practices and methodologies.
  • Possesses an experimentation mindset.
  • Lead and inspire a team of data engineers to develop cutting-edge data technology.
  • Modernize and mature business intelligence and the internal data platform engineering capabilities.
  • Gather and analyze feedback from engineers to ensure alignment with their needs.
  • Collaborate with engineering managers to prioritize capabilities that enhance developer experience.
  • Analyze requirements and design data models for the data lake and warehouse.
  • Optimize and migrate existing database systems.
  • Improve system performance through testing, troubleshooting, and integration.
  • Develop and maintain data governance policies and a metadata management strategy.
  • Coordinate with Data Science and Revenue Operation teams to identify future needs.
  • Provide operational support for downstream business units.

PostgreSQLSQLAgileData AnalysisData MiningErwinETLHadoopMongoDBMySQLNosqlSparkAnalytical SkillsData visualizationData modeling

Posted 2 months ago
Apply
Apply

📍 Canada

🧭 Full-Time

🔍 Dental

🏢 Company: Dandy👥 501-1000Food and BeverageFood Processing

  • 2+ years of management experience in data engineering, with a proven track record of building and leading teams in a fast-paced, growth environment. You have experience shaping new functions and driving change within an organization.
  • 6+ years of experience in data engineering, with hands-on expertise in designing and implementing data pipelines, ETL processes, and data platforms. You are skilled in Python, Airflow/Dagster, DBT, and cloud platforms like AWS or GCP.
  • Experience building or scaling a centralized data engineering function
  • Build & Shape the Centralized Data Engineering Team: You will be the first leader of our centralized data engineering team, tasked with defining its structure, setting the team’s vision, and establishing the foundations of a high-performing data function. You’ll define roles, responsibilities, and career paths for data engineers and set the tone for the team’s growth and culture.
  • Create Scalable Data Engineering Processes: You’ll define and build the processes, methodologies, and tools that will shape the way we build, deploy, and maintain data pipelines across the organization. From setting standards for pipeline development and testing to implementing monitoring and data quality checks, you will create a framework that ensures high-quality, reliable data.
  • Drive Cross-Team Collaboration: Work closely with data science, data analytics, and business teams to understand their needs and deliver high-quality, actionable data. You’ll ensure that data engineering is the underlying layer that accelerates decision-making and business value for all teams. You will also serve as a bridge between technical teams and non-technical stakeholders, ensuring alignment and driving clarity on data initiatives.
  • Develop & Optimize the Data Platform: Lead the design and scaling of Dandy’s data platform, ensuring it supports cross-functional needs. You'll build a platform that integrates seamlessly with various data sources, tools, and systems, empowering teams to access, analyze, and utilize data faster and more effectively.
  • Increase Data Velocity & Throughput: Work to increase the velocity and throughput of data pipelines by optimizing processes and removing bottlenecks. By building robust, scalable infrastructure, you will enable teams to access and utilize data more quickly, helping to drive business decisions faster and with greater accuracy.
  • Implement Best Practices for Data Engineering: Establish and enforce best practices for data pipeline development, code quality, data documentation, testing, monitoring, and deployment. You'll ensure that all data systems are built with rigor and are scalable and maintainable in the long term.
  • Foster a Data-Driven Culture: Advocate for the use of data throughout the organization. You’ll help cultivate a culture where data is not just accessible, but trusted and actionable. Ensure that all teams have the data they need to drive insights, decision-making, and innovation.

AWSLeadershipPythonSQLCloud ComputingETLGCPCross-functional Team LeadershipAirflowData engineeringPostgresREST APICommunication SkillsAnalytical SkillsProblem SolvingData visualizationTeam managementStrategic thinkingProcess improvementData modeling

Posted 3 months ago
Apply
Apply

📍 Poland. Serbia. Hungary. Spain. Portugal

🧭 Full-Time

🔍 Home improvement

🏢 Company: HomeBuddy👥 101-250Home ServicesHome ImprovementMarketing

  • 5+ years of experience in data engineering, with 2+ years in a leadership role.
  • Strong experience with Python, SQL, and Snowflake.
  • Familiarity with AWS Services like Lambda, Glue, and S3.
  • Knowledge of data governance, security, data modeling principles, and data quality monitoring.
  • Experience with DataOps practices such as orchestration and CI/CD.
  • Excellent communication skills for both technical and non-technical audiences.
  • Strong analytical skills and business acumen.
  • Business fluency in English.
  • Architect and oversee data infrastructure to support advanced analytics, real-time insights, and machine learning.
  • Create high-performance data pipelines integrating diverse data sources for real-time and batch processing.
  • Collaborate with Data Science, Engineering, and Product teams for impactful data-driven solutions.
  • Establish data engineering standards focusing on governance, security, and compliance.
  • Guide the data engineering team through code reviews and foster a high-performing culture.
  • Design and maintain ETL/ELT processes ensuring data accuracy and accessibility.
  • Lead planning and prioritization for data engineering initiatives focusing on ROI and long-term value.

AWSDockerLeadershipPythonSQLETLMachine LearningSnowflakeAirflowData engineeringCommunication SkillsAnalytical SkillsCollaborationCI/CDComplianceData modeling

Posted 6 months ago
Apply
Apply

📍 Egypt

🏢 Company: BlackStone eIT👥 251-500Augmented RealityRoboticsAnalyticsProject Management

  • Bachelor's or Master's degree in Computer Science, Data Science, or a related field.
  • At least 7 years of experience in data engineering, with a minimum of 3 years in a managerial role.
  • Strong proficiency in data engineering tools and technologies, including ETL frameworks, SQL, and NoSQL databases.
  • Experience with cloud platforms (AWS, Azure, or GCP) and big data technologies (Hadoop, Spark).
  • Excellent project management skills, with the ability to prioritize and manage multiple projects simultaneously.
  • Strong leadership skills with demonstrated experience in building and mentoring high-performing teams.
  • Excellent analytical and problem-solving abilities.
  • Strong communication skills, with the ability to convey complex data concepts to technical and non-technical stakeholders.
  • Knowledge of data governance and compliance standards.
  • Manage and lead the data engineering team, providing guidance, mentorship, and support in their professional growth.
  • Design and implement scalable data solutions to meet business needs.
  • Collaborate with cross-functional teams to identify and prioritize data initiatives.
  • Oversee the development and maintenance of data pipelines, ensuring optimal data quality and accessibility.
  • Implement policies and procedures for data governance, security, and compliance.
  • Monitor and optimize data performance, reliability, and efficiency.
  • Stay abreast of industry trends and advancements in data engineering methodologies.
  • Facilitate clear communication of data strategy and project updates to stakeholders.

AWSLeadershipProject ManagementSQLETLGCPHadoopStrategyAzureData engineeringData scienceNosqlSparkCommunication Skills

Posted 7 months ago
Apply

Related Articles

Posted about 1 month ago

How to Overcome Burnout While Working Remotely: Practical Strategies for Recovery

Burnout is a silent epidemic among remote workers. The blurred lines between work and home life, coupled with the pressure to always be “on,” can leave even the most dedicated professionals feeling drained. But burnout doesn’t have to define your remote work experience. With the right strategies, you can recover, recharge, and prevent future episodes. Here’s how.



Posted 6 days ago

Top 10 Skills to Become a Successful Remote Worker by 2025

Remote work is here to stay, and by 2025, the competition for remote jobs will be tougher than ever. To stand out, you need more than just basic skills. Employers want people who can adapt, communicate well, and stay productive without constant supervision. Here’s a simple guide to the top 10 skills that will make you a top candidate for remote jobs in the near future.

Posted 9 months ago

Google is gearing up to expand its remote job listings, promising more opportunities across various departments and regions. Find out how this move can benefit job seekers and impact the market.

Posted 10 months ago

Read about the recent updates in remote work policies by major companies, the latest tools enhancing remote work productivity, and predictive statistics for remote work in 2024.

Posted 10 months ago

In-depth analysis of the tech layoffs in 2024, covering the reasons behind the layoffs, comparisons to previous years, immediate impacts, statistics, and the influence on the remote job market. Discover how startups and large tech companies are adapting, and learn strategies for navigating the new dynamics of the remote job market.