Skydio

Wireless Hardware Engineer Intern

Skydio

internship

Posted on:

Location Type: Hybrid

Location: San MateoCaliforniaUnited States

Visit company website

Explore more

AI Apply
Apply

Salary

💰 $47 - $58 per hour

Job Level

Tech Stack

About the role

  • Develop automated data processing pipelines to analyze RF and antenna validation data from lab bench testing.
  • Build cloud-based tools and dashboards to streamline factory test data ingestion, processing, and visualization.
  • Improve data quality checks and validation frameworks to ensure reliable wireless performance metrics.
  • Partner with RF engineers to translate test requirements into scalable analysis workflows.
  • Optimize existing scripts and infrastructure to improve efficiency and reproducibility of wireless performance analysis.
  • Contribute to documentation and best practices for wireless data management across development and manufacturing.

Requirements

  • Currently pursuing a Bachelor’s (Upcoming junior or senior), Master’s, or PhD in Electrical Engineering, Computer Engineering, or a related field.
  • Strong fundamentals in wireless systems, RF engineering, or antenna theory.
  • Proficiency in cloud-based development and data processing (e.g., Python, data pipelines, scripting, APIs).
  • Experience working with large datasets and building scalable analysis tools.
  • Familiarity with data visualization tools or frameworks is a plus.
  • Comfortable working in a cross-functional engineering environment.
  • Self-driven, detail-oriented, and eager to learn and contribute in a fast-paced setting.
Benefits
  • Eligible to enroll in benefit plans
  • Variety of incentives and stipends
Applicant Tracking System Keywords

Tip: use these terms in your resume and cover letter to boost ATS matches.

Hard Skills & Tools
data processing pipelinescloud-based developmentPythonscriptingAPIsdata visualizationlarge datasetsscalable analysis toolswireless performance analysisdata quality checks
Soft Skills
self-drivendetail-orientedeager to learncross-functional collaboration