Senior Autonomy Data Infrastructure and Analytics Software Engineer

XWING

XWING

Software Engineering, Other Engineering, Data Science

Santa Cruz, CA, USA

USD 167,900-245k / year + Equity

Posted on May 12, 2026

Senior Autonomy Data Infrastructure and Analytics Software Engineer

Job Locations US-CA-Santa Cruz
ID
2026-5017
Category
Flight Research
Type
Regular Full-Time

Company Overview

Joby Flight Research designs, develops, and flight-tests novel aircraft using a software-first autonomy approach. We build and deploy autonomy, perception, planning, and radar systems across conventional, electric, and hydrogen-electric aircraft in both CTOL and VTOL configurations.

Overview

Joby Flight Research is seeking a Staff Software Engineer, Autonomy Data Infrastructure and Analytics to build the data infrastructure and evaluation platform for our Superpilot™ autonomy stack. This position offers a unique opportunity to build the data infrastructure that powers Joby’s varied fleet of autonomous aircraft. In this role, you will own the end-to-end data lifecycle, from the moment a flight log leaves our aircraft to the moment it generates safety-critical metrics.

You will design robust infrastructure for flight telemetry, sensor, and imagery data, turning raw logs into reliable datasets, metrics, and workflows that support development, validation, and operational insight. Your work will help teams detect regressions, investigate edge cases, and validate safety-critical behavior long before it reaches flight operations.

We are a small, high-impact team that values curiosity, technical initiative, and the ability to operate independently. You will collaborate deeply with perception, controls, and flight software engineers to build a foundation that accelerates our path to safe, autonomous flight. The right candidate is a strong software engineer who cares deeply about system design, reliability, developer experience, and enabling fast, safe iteration across multiple aircraft programs.

Responsibilities

  • Data Ingestion
    • Design, implement, and maintain a highly-scalable ingestion pipeline for a heterogeneous fleet of aircraft, owning the data schemas, APIs, and associated tooling.
    • Transform raw flight data into queryable, well-structured databases to unlock organization-wide insights.
    • Develop data augmentation scripts to help catalog the data (metadata, anomaly detection, missing data). This might include novel statistical sampling methods and machine learning solutions to maximize the value of collected data.
    • Establish data stewardship for cost control, access control, integrity, traceability, and regulatory compliance.
  • Data Analysis
    • Build the analysis platform that transforms raw flight and simulation data into trustworthy metrics, curated datasets, and actionable engineering insight.
    • Develop scalable pipelines for flight physics analysis, system health monitoring, autonomy evaluation, and predictive maintenance.
    • Create reusable tooling for offline replay, scenario mining, metric computation, labeling, and regression analysis across large datasets.
    • Define and operationalize evaluation frameworks that allow teams to measure autonomy performance consistently across aircraft, environments, and software versions.
    • Drive investigation of anomalies and edge cases by connecting logs, sensor data, simulation outputs, and derived metrics.
    • Work cross-functionally with autonomy, perception, controls, and flight software teams to deliver analysis capabilities that are robust, self-serve, and tightly integrated with development workflows.
  • Large-scale Evaluation Platform
    • Develop the scheduling and execution engine for teams to run massive batch jobs on ingested data (e.g. post-processing, flight replay, metrics, “what-if” scenarios)
    • Provide the tools, APIs, and dashboards that empower autonomy teams to self-serve evaluation workloads, from recurring CI pipelines to punctual experiments.
    • Proactively explore the data, develop new metrics, interpret trends, and investigate anomalies in data from both real world and simulation.
  • Collaborate closely with the rest of the Superpilot™ team to ideate, plan and execute on high-quality, well-integrated solutions and features.
  • Monitor system health and performance, proactively addressing issues and providing user support.

Required

  • 5+ years of experience architecting and operating large-scale distributed systems and data infrastructure

  • Expertise in developing databases, query engines, and storage backends for high-frequency, high-cardinality time series data

  • Experience with one of the “Big Three” cloud providers (AWS, GCP, Azure) and Infrastructure as Code (IaC) tools like Terraform or Kubernetes

  • Deep understanding of backend, streaming, and batch processing architectures

  • Strong proficiency in Python, C++, and Git within a Linux-based environment

  • Experience processing high-bandwidth sensor data from robotics or autonomous platforms (e.g., GPS, IMU, Lidar, Radar)

  • Proven ability to document complex technical designs, architectural trade-offs, and implementation roadmaps

  • Champion of software best practices, including rigorous code reviews and mentorship.

  • Excellent communication skills for collaborating with cross-functional teams

This position must meet US export control compliance requirements, therefore a candidate must qualify as a “US Person” as defined by 22 C.F.R. § 120.15. “US Person” includes US Citizens, lawful permanent residents, refugees, or asylees.

Desired

  • Expertise in designing distributed batch processing and workflow orchestration systems for large-scale evaluation (e.g. Airflow, Spark, Ray, or Temporal)
  • Familiarity with Databricks
  • Building dataset management infrastructure
  • Experience with autonomous vehicles
  • Experience in processing aircraft data (GPS, inertial, air data, radio data, etc.)
  • Experience with hardware-in-the-loop (HIL) workflows
  • Expert-level software engineering: deep expertise in architecting and writing clean, scalable, and maintainable code
  • Experience with version control and CI/CD platforms, able to manage your software through its entire lifecycle (development, testing, deployment)
  • Experience deploying ML models in a production environment using modern MLOps principles and tools (e.g., MLflow, Kubeflow)

Compensation at Joby is a combination of base pay and Restricted Stock Units (RSUs). The target base pay for this position is $167,900 - $245,000/yr. The compensation package will be determined by job-related knowledge, skills, and experience.

Joby also offers a comprehensive benefits package, including paid time off, healthcare benefits, a 401(k) plan with a company match, an employee stock purchase plan (ESPP), short-term and long-term disability coverage, life insurance, and more.

Additional Information

Joby Aviation is an equal opportunity employer.

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