About Cyera
Come join the company building the security operating model for the age of AI. AI has changed how data is used — and security must change with it. Cyera's mission is to empower businesses to accelerate AI adoption by defining a holistic approach to securing AI — from data to access to model. Instead of perimeter controls and static policies, Cyera provides a unified control plane that understands relationships between data, access, and behaviors across humans, systems, and AI. Backed by the world's leading investors and working with a large and growing list of Fortune 1000 companies, we are looking for world-class talent to join us as we usher in the new era of data and AI security.
About the Role
We're looking for a Senior Data Engineer to help build Cyera's next-generation data platform — the lakehouse foundation that will power data processing across the entire product. This is not a "write pipelines on top of someone else's platform" role, and it's not a pure infrastructure role either. It's both, deliberately.
You'll own the platform end to end: the infrastructure it runs on (Spark on Kubernetes, Apache Iceberg, AWS Glue, Airflow), the frameworks and tooling that let dozens of other engineers build on it without reinventing the wheel, and the design of the data pipelines themselves. Everything you build becomes leverage for the teams around you — your abstractions, base images, CI/CD flows, and operational patterns are what make the platform usable at scale.
You'll also own one of the hardest ongoing trade-offs in a high-scale data platform: balancing cost and performance. Compute sizing, storage layout, partitioning and compaction strategy, job scheduling — every decision has a price tag and a latency profile, and you'll be the one making those calls with data.
This role is ideal for an engineer who is equally comfortable debugging a Spark executor OOM on Kubernetes at 10am, designing a clean Python framework API at noon, and modeling the cost impact of a table layout change in the afternoon.
What You'll Do
Platform & Infrastructure
- Design, deploy, and operate our Spark-on-Kubernetes compute platform, including autoscaling, resource tuning, and multi-tenancy considerations.
- Own the lakehouse storage layer built on Apache Iceberg and AWS Glue catalog — table design, partitioning, compaction, schema evolution, and retention.
- Build and operate orchestration on Airflow: DAG standards, deployment flows, environment promotion, and reliability.
- Own production operations of the platform: monitoring, alerting, incident response, and continuous hardening.
Frameworks & Developer Enablement
- Build the code frameworks, libraries, and templates that other engineers use to write pipelines — so that spinning up a new production-grade Spark job is measured in hours, not weeks.
- Define and enforce standards for pipeline structure, testing, observability, and deployment across teams.
- Own CI/CD for data workloads: image builds, artifact promotion, and GitOps-based delivery.
- Act as a technical partner to product and research teams building on the platform — your customers are other engineers.
Data Pipelines & Architecture
- Design and build scalable batch and streaming pipelines processing complex, high-volume datasets from diverse sources.
- Lead large-scale backfills and migration initiatives, ensuring data consistency and integrity across evolving storage and compute platforms.
- Design event-driven data flows over large-scale queue systems (Kafka) for reliable, efficient data movement.
Cost & Performance
- Continuously balance cost against performance: right-size compute, tune queries and jobs, optimize storage layout and file sizes, and choose the correct engine for each workload.
- Build cost visibility and attribution into the platform so trade-offs are made with data, not guesswork.
What You Bring
- 5+ years of experience in software engineering, with meaningful time spent building and operating large-scale data platforms.
- Strong hands-on experience with distributed processing engines (Spark strongly preferred), including performance tuning and debugging in production.
- Practical experience deploying and operating workloads in Kubernetes-based environments — you're not afraid of infra work; you enjoy it.
- Experience building shared frameworks, libraries, or internal tooling used by other engineers, with the product mindset that comes with it (clean APIs, docs, versioning, backward compatibility).
- Strong proficiency in SQL and data modeling: complex analytical queries, query tuning, partitioning strategies.
- Solid software engineering fundamentals in Python (and/or Scala/Java): testing, code review culture, CI/CD.
- Experience with cloud-native data infrastructure on AWS (or equivalent) at high scale.
- A strong sense of ownership — from design through deployment, operation, and cost.
- Ability to thrive in a fast-changing environment, making pragmatic decisions with incomplete information.
Nice to Have
- Hands-on experience with Apache Iceberg or other open table formats (Delta Lake, Hudi) — compaction, schema evolution, catalog management.
- Experience with EMR on EKS, Spark Operator, or similar Spark-on-Kubernetes setups.
- Experience with Airflow at scale (custom operators, deferrable operators, multi-environment deployment).
- Kafka-heavy or event-driven architectures; CDC pipelines (Debezium or similar).
- GitOps tooling and infrastructure-as-code.
- Experience with FinOps / cloud cost optimization for data workloads.
- Background in cybersecurity-related data infrastructure or compliance-constrained environments (e.g., FedRAMP / GovCloud).
- Contributions to open-source data engineering tools or frameworks.
Why Join Us?
At Cyera, we own what we build and how we work. Cyerans are empowered to take initiative, move quickly, and turn ideas into impact. We push boundaries by challenging the status quo, learning fast, and continuously raising the bar — for ourselves and for the industry. We elevate together by lifting each other up, celebrating wins as a team, and recognizing that our success is shared.
In this role specifically: everything you build becomes the foundation other engineers stand on. You'll work at the technical heart of the company's data platform, solve problems that only exist at real scale, and shape how an entire engineering organization works with data.
Feel free to apply even if your experience doesn't tick every box. We're building something special here — and we welcome Cyerans with diverse backgrounds, perspectives, and experiences.
Skills Required
- 5+ years software engineering experience building and operating large-scale data platforms.
- Hands-on experience with distributed processing engines (Spark) including performance tuning and debugging.
- Practical experience deploying and operating workloads in Kubernetes-based environments.
- Experience building shared frameworks, libraries, or internal tooling for other engineers (APIs, docs, versioning).
- Strong proficiency in SQL and data modeling, including query tuning and partitioning strategies.
- Solid software engineering fundamentals in Python (and/or Scala/Java), testing, code review, and CI/CD.
- Experience with cloud-native data infrastructure on AWS at scale (AWS Glue, AWS ecosystem).
- Experience operating Airflow for orchestration and building reliable DAGs and deployment flows.
- Experience designing and operating Kafka-based or event-driven data architectures.
- Hands-on experience with Apache Iceberg or other open table formats (Delta Lake, Hudi).
- Experience with EMR on EKS, Spark Operator, or similar Spark-on-Kubernetes setups.
- Experience with CDC pipelines (Debezium or similar).
- Familiarity with GitOps tooling and infrastructure-as-code.
- Experience with FinOps / cloud cost optimization for data workloads.
- Background in cybersecurity-related data infrastructure or compliance-constrained environments (FedRAMP/GovCloud).
Cyera Compensation & Benefits Highlights
The following summarizes recurring compensation and benefits themes identified from responses generated by popular LLMs to common candidate questions about Cyera and has not been reviewed or approved by Cyera.
-
Fair & Transparent Compensation — Pay is considered competitive across roles, with posted salary bands and strong base/OTE signals in key functions. Visible ranges and attractive totals in senior engineering and sales reinforce a compelling cash foundation.
-
Equity Value & Accessibility — Equity via RSUs/options is positioned as a meaningful part of total rewards with notable upside potential. An employee tender offer program enables liquidity on vested shares, improving practical access to equity value.
-
Wellbeing & Lifestyle Benefits — Perks span meal stipends, stocked kitchens, commuting support, wellness programs, and remote office reimbursements. Additional supports like learning stipends and flexible workspace memberships add everyday utility.
Cyera Insights
What We Do
Our platform gives organizations a complete view of where their data lives, how it’s used, and how to keep it safe, so they can reduce risk and unlock the full value of their data, wherever it is. Backed by more than $1.7 billion in funding from top-tier investors including Accel, Blackstone, Coatue, Cyberstarts, Georgian, Lightspeed, and Sequoia, Cyera’s unified data security platform helps businesses discover, secure, and leverage their most valuable asset - data - and eliminate blind spots, cut alert noise, and protect sensitive information across the cloud, SaaS, databases, AI ecosystems, and on-premise environments.
Why Work With Us
Cyera's culture focuses on growth - for our employees, for our customers, and for our business. Our team is a collaborative, empowering group of innovators looking to make a lasting impact. We offer flexible work options, an unlimited vacation policy, and are dedicated to making our team successful.
Gallery








