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Tesla
Tesla

Accelerating the world's transition to sustainable energy.

Sr. Mechanical Design Engineer, Automated Test Equipment

职能工程
级别资深
地点Richmond Hill, Ontario
方式现场办公
类型全职
发布今天
立即申请
What To Expect
We are looking for a highly motivated and hands-on Sr. Mechanical Engineer to join the Manufacturing Test Engineering team – part of the “machine that builds the machine.” This team designs and builds robust, data-driven test systems for Tesla’s power electronics used in vehicles, energy storage, charging solutions, and humanoid robots. The ideal candidate is detail-oriented, organized, and thrives in a fast-paced, high-responsibility environment. They take pride in hands-on problem solving, have strong analytical skills, and are eager to learn and share knowledge. This role requires flexibility and a willingness to travel both domestically and internationally to support equipment development, deployment, and collaboration with global teams. This position plays a key role in shaping the quality and performance of Tesla’s core technologies and is based in Toronto, Reno, or Palo Alto.

What You'll Do

  • Machine design of automated test equipment, which includes preparing detailed-level CAD models, pneumatic diagrams, and verifying designs using structural and thermal FEA, CFD, tolerance stack-up
  • Create detailed drawings and coordinate with vendors to fabricate custom machined parts, weldments, and sheet metal components
  • Selection and integration of commercial components, sensors, servos, pneumatic actuators, etc.
  • Lead conceptual equipment development and carefully balance product specifications, process requirements, layout complexity, cost, and lead-time limits
  • Review, identify, and provide feedback on performance, design simplicity, robustness, assembly, and installation
  • Support building, debugging, validation and equipment duplication efforts, and fine-tune equipment for release to production
  • Perform on-site and off-site acceptance testing (SAT/FAT) of test equipment


  • What You'll Bring

  • Degree in Mechanical Engineering, Robotics, Mechatronics Engineering, or equivalent experience
  • 5+ years of experience as Mechanical/Mechatronics/Automation Engineer with focus in automation, machine design, robotics, or product development
  • Versed in SolidWorks, PDM, and Ansys, or similar CAD/CAE software
  • Strong understanding of drafting standards and the application of GD&T (e.g., ASME Y14.5)
  • Knowledgeable in solid mechanics, pneumatics, hydraulics, dynamics, material selection, prototyping, testing methods, everyday machining, and fabrication processes
  • Exposure to a wide variety of test systems, production machinery, industrial sensors, actuators, and equipment (pogo-pins, pressure transducers, temperature controllers, current meters, etc.)


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    关于Tesla

    Tesla

    Tesla

    Public

    A financial leasing taxi company that provides vehicles to customers

    140,000+

    员工数

    Ciudad De Panamá

    总部位置

    $800B

    企业估值

    评价

    10条评价

    3.8

    10条评价

    工作生活平衡

    2.3

    薪酬

    4.0

    企业文化

    3.2

    职业发展

    4.1

    管理层

    2.8

    65%

    推荐率

    优点

    Innovative projects and cutting-edge technology

    Great team and supportive colleagues

    Good compensation and benefits

    缺点

    Long hours and poor work-life balance

    High pressure and tight deadlines

    Management issues and high expectations

    薪资范围

    1,403个数据点

    Junior/L3

    Mid/L4

    Junior/L3 · Associate Analyst

    2份报告

    $94,875

    年薪总额

    基本工资

    $82,500

    股票

    -

    奖金

    -

    $92,000

    $97,750

    面试评价

    4条评价

    难度

    3.5

    / 5

    时长

    14-28周

    体验

    正面 0%

    中性 75%

    负面 25%

    面试流程

    1

    Application Review

    2

    Recruiter Screen

    3

    Technical Phone Screen

    4

    Take-home Assignment

    5

    Panel Interview

    6

    Offer

    常见问题

    Coding/Algorithm

    Technical Knowledge

    Behavioral/STAR

    System Design

    Machine Learning Concepts