This job is no longer available

The job listing you are looking has expired.
Please browse our latest remote jobs.

See open jobs →
← Back to all jobs

Manager/Lead Data Engineering

Added
22 days ago
Location
Type
Full time
Salary
Not Specified

Use AI to Automatically Apply!

Let your AI Job Copilot auto-fill application questions
Auto-apply to relevant jobs from 300,000 companies

Auto-apply with JobCopilot Apply manually instead
Save job

About Zeta

Zeta is a Next-Gen Banking Tech company that empowers banks and fintechs to launch banking products for the future. It was founded by Bhavin Turakhia and Ramki Gaddipati in 2015.

Our flagship processing platform - Zeta Tachyon - is the industry’s first modern, cloud-native, and fully API-enabled stack that brings together issuance, processing, lending, core banking, fraud & risk, and many more capabilities as a single-vendor stack. 20M+ cards have been issued on our platform globally.

Zeta is actively working with the largest Banks and Fintechs in multiple global markets transforming customer experience for multi-million card portfolios.

Zeta has over1,700+ employeesacross the US, EMEA, and Asia, with70%+ roles in R&D. Backed bySoftBank, Mastercard, and other investors, we raised$330M at a $2B valuationin 2025.

Learn more @www.zeta.tech,careers.zeta.tech,Linkedin,Twitter

About the Role

As Manager, Data Engineering you will oversee a team of data engineers and architect, implement and manage several large, core business, data lakes and data warehouses, comprising data from multiple disparate sources.

Responsibilities

  • Strategic Leadership & Architecture
  • Define and drive the data engineering vision, strategy, and roadmap aligned with business goals.
  • Design and oversee the implementation of modern, scalable data architecture on AWS cloud (e.g., data lakes, data mesh, data warehouses).
  • Lead data platform modernization and migration initiatives. Stay abreast of emerging technologies and trends in the data engineering space. Evaluate and recommend tools and technologies to enhance the data engineering infrastructure.
  • Team Management & Execution
  • Build, lead, and mentor a high-performing team of data engineers and platform specialists.
  • Establish development best practices, code standards, and CI/CD workflows for data pipelines and infrastructure.
  • Data Infrastructure & Operations
  • Oversee the ingestion, transformation, and integration of large-scale, complex data sets from internal systems (e.g., transaction processing, customer service) and external partners (e.g., credit bureaus, open banking APIs).
  • Ensure high availability, reliability, and performance of the data platform in a highly regulated financial environment.
  • Monitor and optimize the performance of data systems and pipelines. Identify and address bottlenecks and inefficiencies in data processes.
  • Collaborate with Data Science, Analytics, Product, and Compliance teams to ensure secure and governed access to data assets.
  • Governance, Security, and Compliance
  • Partner with InfoSec, Compliance, and Risk teams to implement robust data security, privacy, and governance controls (e.g., PII management, SOC 2, GDPR, PCIDSS).
  • Support data lineage, cataloging, and metadata management initiatives.
  • Project Management
  • Plan, prioritize, and manage multiple data engineering projects simultaneously. Track project progress and resource utilization.
  • Documentation and Training
  • Ensure thorough documentation of data engineering processes and systems. Provide training to team members and other stakeholders on data engineering best practices.
  • Skills

  • Technical Skills
  • Expertise in data modeling, database design, and data warehousing. Proficient in programming languages such as Python, Java, or Scala.
  • Cloud-native architecture expertise (AWS, GCP, or Azure), including containerization (Docker, Kubernetes) and infrastructure-as-code (Terraform, CloudFormation).
  • Familiarity with streaming data architectures and tools like Debezium for change data capture
  • Experience with distributed query engines like Trino (formerly Presto) for high performance querying of big data.
  • Leadership and Communication: Excellent leadership and people management skills. Strong communication skills to effectively convey technical concepts to non-technical stakeholders. Ability to provide technical guidance and mentorship to team members.
  • Problem Solving and Analytical Thinking: Strong problem-solving skills and the ability to analyze complex data issues. Experience in troubleshooting and resolving data-related issues.
  • Project Management: Proven experience in project management and delivery of data engineering projects.
  • Data Governance and Security: Deep understanding of data governance principles and practices. Knowledge of data security best practices and regulatory requirements.
  • Experience and Qualifications

  • Bachelor’s/Master’s degree in engineering (computer science, information systems) with 7+ years of experience in data engineering, with a strong focus on data architecture, ETL, and data modeling using tools such as Apache Spark, Flink, Trino, Airflow, DBT (good to have), and Python.
  • 4+ years of experience in managing a team of data engineers, with a track record of successful delivery of complex data projects and strong leadership skills.
  • Additional Information

    Equal Opportunity

    Zeta is an equal opportunity employer. We celebrate diversity and are committed to creating an inclusive environment for all employees. We encourage applicants from all backgrounds, cultures, and communities to apply and believe that a diverse workforce is key to our success

    Use AI to Automatically Apply!

    Let your AI Job Copilot auto-fill application questions
    Auto-apply to relevant jobs from 300,000 companies

    Auto-apply with JobCopilot Apply manually instead
    Share job

    Meet JobCopilot: Your Personal AI Job Hunter

    Automatically Apply to On site Data Jobs. Just set your preferences and Job Copilot will do the rest—finding, filtering, and applying while you focus on what matters.

    Related Data Jobs

    See more Data jobs →