Robotics Reliability Engineer - Motors, Mechanisms and Electronics

Reposted 21 Days Ago
Be an Early Applicant
Menlo Park, CA, USA
In-Office
Mid level
Artificial Intelligence • Robotics • Automation
The Role
Drive reliability requirements across robotics subsystems, oversee test designs, analyze failures, manage analytics, and lead reliability testing initiatives.
Summary Generated by Built In
Company Overview

Each year, 2.5 trillion hours are spent on household chores. At Matic, we’re on a mission to recapture that lost time, and we’re doing it by revolutionizing home robotics.

Our first product, also called Matic, is a Wall-E-esque floor cleaning robot. We've built what amounts to "full self-driving in the home” with real-time 3D mapping, adaptive path-tracking, and a precise semantic understanding of the home. Our breakthroughs in spatial AI allow Matic to work reliably in real homes, using only RGB cameras and neural networks running on-device.

Privacy First

What happens in the home, stays in the home. Our robots are private by design, with all data processing performed by the robot itself, not in the cloud.

Our Approach

Before the iPhone, consumers adopted several distinct devices; cell phones, PDAs, and portable music players each served a particular need. We believe in a similar progression for home robotics, starting with single-purpose robots and building iteratively toward more complex capabilities over time.

Our Culture

Matic is a tight-knit and collaborative team, singularly focused on building products our customers will cherish. We're ultra-hardworking people committed to solving tough problems that save precious time and energy.

About the role

As a Robotics Reliability Engineer, you own reliability across our subsystems, especially motors, mechanisms, and electronics, from the drawing board all the way into customers’ homes. The role has two halves, and you live in both.

Before launch, you are our design-for-reliability conscience. You partner with design engineers to predict how a part or subsystem could fail, run DFMEA to map those failure modes, and define how we prove them out: which tests, accelerated how, for how long, and with how many samples. You set the reliability targets and the plan to hit them, so problems get caught on the bench instead of in someone’s living room.

After launch, once robots are in real homes, the real data starts coming from every direction: support tickets, customers posting when something breaks, robots sent back for repair, and the motor and sensor telemetry customers consent to share. A robot returned for one problem is often broken in five other ways the customer never noticed, so you tear it down and find all of them. Your job is to see every way a robot is failing or could fail, keep track of all of it, and turn that signal into action: new tests and test setups where we need them, and clear input on which failure modes are under-prioritized and need engineering bandwidth.

What you’ll do
  • Partner with design engineers to understand the physics of failure and design accelerated test methods that represent real field behavior

  • Run DFMEA and set reliability targets early, predicting failure modes before launch and specifying the tests, sample sizes, durations, and acceleration factors needed to prove the design out

  • Collaborate with our reliability design engineers to design and build test setups for different loading scenarios such as fatigue, vibration and shock, and temperature and humidity

  • Monitor every way our robots fail in the field, across support tickets, social media, returns, and telemetry, and tear down returned units to find failures the customer never reported

  • Own and track the full catalog of field and potential failure modes across the fleet, and drive each one to resolution through either testing or a design change

  • Build and own the analytics on motor and sensor telemetry that surface where features and parts are failing at scale

  • Perform root cause failure analysis at every stage, from early bench testing through field returns

  • Prepare concise and detailed test plans, drive test execution, analyze test reports, and present results to all relevant stakeholders

  • Influence design direction and prioritization by flagging which failure modes are under-prioritized and where design bandwidth should go

  • Strengthen DFR practices while acting in a cross-disciplinary fashion spanning mechanical, electrical, and software engineering

What we look for
  • Technical degree in mechanical engineering, materials science, or equivalent, with 2-5 years of experience in a reliability engineering position. An advanced degree in reliability, materials science, or a related field is a strong plus

  • Track record of defining reliability targets and test plans for consumer electronic products

  • Deep comfort with reliability statistics: life data analysis, Weibull++ or equivalent, and a range of accelerated test models

  • Solid understanding of Design of Experiments (DOE), Failure Mode and Effect Analysis (FMEA and DFMEA), and physics of failure

  • Experience specifying test setups for reliability testing and partnering with others to build them

  • Comfort analyzing messy, multi-source field data such as support tickets, returns, and telemetry, and turning it into clear engineering priorities

  • Comfort with fast-paced, startup atmosphere — you don’t shy away from the hard work

  • High level of maturity, ownership, and pride in your work

We’d love to hear from you if...
  • You are genuinely motivated to help those around you

  • You are passionate about learning outside of your normal comfort zones

  • You love diagnosing complex technical issues

  • You are excited to do great work

Compensation:

Base: $130,000 - $200,000 per annum.

Actual Compensation will depend on skills, experience and qualifications. Base Salary is one part of the total compensation package. The role is also eligible for equity through the company’s discretionary equity program, along with a comprehensive benefits package that includes medical, dental and vision coverage access to a 401(k) plan.

Skills Required

  • Technical degree in mechanical engineering or equivalent
  • 2-5 years of work experience in reliability engineering position
  • Track record of defining reliability targets and test plans for consumer electronic products
  • Experience driving the design of test setups for reliability testing
  • Statistical experience such as Weibull++ or familiarity with different accelerated test models
  • Solid understanding of Design of Experiments (DOE) and Failure Mode and Effect Analysis (FMEA)
  • Comfort with fast-paced, startup atmosphere
  • High level of maturity, ownership, and pride in your work
Am I A Good Fit?
beta
Get Personalized Job Insights.
Our AI-powered fit analysis compares your resume with a job listing so you know if your skills & experience align.

The Company
HQ: Mountain View, California
78 Employees
Year Founded: 2017

What We Do

Matic is reimagining the next generation of fully autonomous, helpful, and elegant home robots using AI and computer vision. Level-5 autonomy in your home. Our flagship product, Matic, is a remarkably smart, proactive, and secure floor-cleaning robot that uses photo-realistic vision with precise 3D mapping to provide a home with perpetually clean floors.

Similar Jobs

HiBob Logo HiBob

Account Executive

HR Tech • Information Technology • Professional Services • Sales • Software
Remote or Hybrid
United States
1350 Employees
95K-119K Annually

HiBob Logo HiBob

Account Executive

HR Tech • Information Technology • Professional Services • Sales • Software
Remote or Hybrid
United States
1350 Employees
95K-119K Annually

Halter Logo Halter

Territory Manager (Southern California)

Greentech • Hardware • Internet of Things • Machine Learning • Software • Business Intelligence • Agriculture
In-Office or Remote
2 Locations
350 Employees
140K-190K Annually

Halter Logo Halter

Territory Manager (Northern California)

Greentech • Hardware • Internet of Things • Machine Learning • Software • Business Intelligence • Agriculture
In-Office or Remote
2 Locations
350 Employees
140K-190K Annually

Similar Companies Hiring

Legora Thumbnail
Artificial Intelligence • Legal Tech • Software
Chicago, Illinois
700 Employees
Hanover Park Thumbnail
Artificial Intelligence • Fintech • Software • Financial Services
New York, New York
42 Employees
Onshore Thumbnail
Artificial Intelligence • Fintech • Software • Financial Services
New York, New York
60 Employees

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account