CYE
Senior Data & AI Engineer
TLDR
Engage in innovative projects at the forefront of cybersecurity by designing AI-powered systems and improving organizational cyber resilience with a world-class team.
Cye is building a data-driven cybersecurity optimization SaaS platform that helps organizations
continuously improve their cyber resilience. With Cye, organizations can identify, evaluate, and remediate
the weakest links in their networks.
At Cye, we believe the best results come from combining the power of AI with deep human expertise. That’s
why we’ve built a world-class team of cybersecurity experts who augment and enhance the capabilities of
our platform.
We’re expanding our Data & AI group and looking for a passionate, experienced Senior Data & AI Engineer
to join our mission. This is a unique opportunity to work at the intersection of data engineering, LLMpowered systems, agentic workflows, and cybersecurity innovation
What you’ll work on
Data Infrastructure & Engineering
Design, build, and scale production-grade data pipelines using Databricks, Spark, and modern cloud-native
technologies. Ensure high standards of data integrity, system performance, reliability, and scalability.
Core Backend & Platform
Design and contribute to scalable backend services and platform capabilities using microservices and
event-driven architectures. Build reliable APIs, integrations, and asynchronous data flows that support highscale AI, data, and cybersecurity use cases.
LLM & Agentic Systems
Design, prototype, and integrate LLM-powered systems, including Retrieval-Augmented Generation
pipelines, agentic workflows, tool-using agents, multi-step reasoning flows, and AI-driven automation. Work
with technologies such as AWS Bedrock, OpenAI, Anthropic, LangGraph, vector databases, and modern
orchestration frameworks.
AI-Assisted Engineering & Developer Productivity
Explore and apply advanced AI coding assistants and software-engineering agents, such as Codex and
Claude Code, to improve development velocity, code quality, debugging, testing, and experimentation.
Build proof-of-concepts and internal tools that help engineering and research teams work more effectively
with AI-powered development workflows.
Intelligent Cybersecurity Features
Collaborate with Security Researchers, Engineers, and Product teams to identify opportunities for
intelligent, data-driven features that deliver actionable cybersecurity insights to customers. Transform
complex cybersecurity and platform data into reliable, explainable, and useful AI-powered capabilities.
You’ll be a great fit if you have
Deep understanding and hands-on experience with data lake architectures, batch processing, and
real-time data processing.
Experience with tools and technologies such as Spark, Kafka, Databricks, and SQL.
Hands-on experience designing and building LLM-powered systems using providers such as OpenAI,
Anthropic, AWS Bedrock, or similar platforms.
Strong practical experience with Retrieval-Augmented Generation, embeddings, vector databases,
prompt engineering, evaluation techniques, and LLM orchestration frameworks such as LangGraph
or OpenAI Agents SDK.
Understanding of agentic system design, including tool use, memory, planning, multi-agent
collaboration, and autonomous reasoning workflows.
Experience working with advanced AI code assistants and coding agents, such as Codex, Claude
Code, or similar AI-native development tools, to improve engineering productivity.
3+ years of Python development experience in production environments.
Proficiency with Git, CI/CD practices, and deploying data, automation, or AI-powered pipelines at
scale.
Experience maintaining scalable, reliable AI/LLM workflows in cloud-native environments.
Strong understanding of non-functional requirements, including performance, reliability, scalability,
observability, security, and cost efficiency.
Advantages
Background in cybersecurity, threat intelligence, or security-focused data models.
Experience building internal developer-productivity tools, evaluation harnesses, or AI-assisted
engineering workflows.
Awareness of COGS optimization and FinOps practices in SaaS data and AI systems.
Design, build, and scale production-grade data pipelines using Databricks, Spark, and modern cloud-native
technologies. Ensure high standards of data integrity, system performance, reliability, and scalability.
Design and contribute to scalable backend services and platform capabilities using microservices and
event-driven architectures. Build reliable APIs, integrations, and asynchronous data flows that support highscale AI, data, and cybersecurity use cases.
Design, prototype, and integrate LLM-powered systems, including Retrieval-Augmented Generation
pipelines, agentic workflows, tool-using agents, multi-step reasoning flows, and AI-driven automation. Work
with technologies such as AWS Bedrock, OpenAI, Anthropic, LangGraph, vector databases, and modern
orchestration frameworks.
Explore and apply advanced AI coding assistants and software-engineering agents, such as Codex and
Claude Code, to improve development velocity, code quality, debugging, testing, and experimentation.
Build proof-of-concepts and internal tools that help engineering and research teams work more effectively
with AI-powered development workflows.
Collaborate with Security Researchers, Engineers, and Product teams to identify opportunities for
intelligent, data-driven features that deliver actionable cybersecurity insights to customers. Transform
complex cybersecurity and platform data into reliable, explainable, and useful AI-powered capabilities.
real-time data processing.
Anthropic, AWS Bedrock, or similar platforms.
prompt engineering, evaluation techniques, and LLM orchestration frameworks such as LangGraph
or OpenAI Agents SDK.
collaboration, and autonomous reasoning workflows.
Code, or similar AI-native development tools, to improve engineering productivity.
Proficiency with Git, CI/CD practices, and deploying data, automation, or AI-powered pipelines at
scale.
observability, security, and cost efficiency.
engineering workflows.
About us
Cye helps security and risk leaders gain a clear, defensible view of their cyber exposure, grounded in financial impact and real-world attack paths. By continuously quantifying exposure and validating it in context, organizations can establish a strong baseline, prioritize decisions with confidence, and track measurable reduction over time.
Cye provides security and risk leaders with a clear and defensible perspective on their cyber exposure, linking it to financial implications and real-world attack scenarios. By continuously quantifying risks and validating findings within their context, organizations can create a strong baseline, confidently prioritize their security decisions, and measure their progress over time.
AI Engineer