Sr. AI Backend & Data Engineer

Pendo Pendo · Enterprise · Herzliya, Israel · Engineering

Sr. AI Backend & Data Engineer role focused on designing, building, and shipping AI-integrated data systems and backend services for an AI-native predictive analytics platform. The role emphasizes end-to-end ownership, daily shipping, and the integration of AI/ML components as first-class runtime dependencies, with a focus on agentic AI development and AI-augmented engineering workflows.

What you'd actually do

  1. Design, build, and own scalable data and ML pipelines, backend services, and AI-powered capabilities that are part of the platform's production decision-making layer.
  2. Decompose complex work into safely mergeable increments and ship them daily.
  3. Leverage AI-assisted development tooling (code generation, automated testing, architecture prototyping) as a core workflow multiplier.
  4. Own your work from design through production deployment, operational monitoring, and business impact measurement.
  5. Make pragmatic, timely architectural choices that balance modern AI and data technologies with reliability, cost, and delivery speed.

Skills

Required

  • 5+ years building and shipping production-grade back end and data systems in distributed cloud environments (AWS and/or GCP)
  • Hands-on AI/ML integration in production workflows
  • Active use of AI-assisted development tooling as a workflow multiplier
  • Strong back end expertise in Java (Spring Boot), Python, and/or Go
  • Hands-on experience with relational and non-relational databases, data modeling, and query optimization
  • Demonstrated expertise in automated testing, CI/CD, and observability
  • High-Velocity ownership
  • Demonstrated ability to break work into small, incremental deliveries and maintain strong delivery flow

Nice to have

  • Experience shipping ML-Ops powered systems in production (model serving, monitoring, retraining pipelines)
  • Experience with distributed data technologies (e.g., Parquet, Athena, or similar query engines)
  • Experience making and documenting architectural decisions autonomously (ADRs or equivalent lightweight decision records)

What the JD emphasized

  • AI/ML integration in production workflows
  • shipped systems where AI, LLM, or agent-based components are part of the production runtime
  • architectural tradeoffs of integrating AI into live backend systems
  • Active use of AI-assisted development tooling as a workflow multiplier
  • currently use AI tooling (Copilot, Cursor, or equivalent) to accelerate your engineering output
  • High-Velocity ownership
  • shipping daily and owning outcomes are fundamental to the role
  • track record of decomposing complex work into small, safely mergeable increments

Other signals

  • AI components are first-class runtime dependencies
  • Agentic AI development is a core part of how we increase engineering velocity
  • AI-integrated data systems from concept through production
  • transition into an AI-native function
  • AI-native Systems Development
  • AI and ML components are runtime dependencies
  • AI-Augmented Engineering Workflow
  • Hands-on AI/ML integration in production workflows
  • architectural tradeoffs of integrating AI into live backend systems