2

Home Based Remote Algorithms Engineer Jobs in California

Senior Software Platform Engineer

Palo Alto, CA ยท On-site +1

$144K - $189K/yr

Our architecture and approach is based on silicon photonics. By leveraging the advanced ... PsiQuantum also develops the algorithms and software needed to make these systems commercially ...

$122K - $168K/yr

These challenging engineering problems call for an algorithmic approach and a passion for data ... remote work.

... Remote Key Responsibilities: Design, develop, and implement AI/ML models and algorithms using ... Collaborate with data scientists and other engineers to integrate AI models into existing systems.

Senior Robotics Engineer, Manipulation

Milpitas, CA ยท On-site +1

$121K - $167K/yr

You will architect the algorithms that allow our robot to reach, grasp, and manipulate objects ... You will build the mathematical engine behind our remote manipulation capabilities. You are ...

Product Engineer Location: Remote (Europe) Preferred: Portugal About the Role At Maker, we build an ... No whiteboard algorithms. 1. Intro conversation - We talk about your background, what drives you ...

This role will be based in Sunnyvale, San Francisco, Bellevue or New York City. At LinkedIn, our ... The work location of this role is hybrid, meaning it will be performed both from home and from a ...

next page

Showing results 1-20

Home Based Remote Algorithms Engineer information

What are Home Based Remote Algorithms Engineers?

Home Based Remote Algorithms Engineers are professionals who design, develop, and optimize algorithms while working remotely from their home or any other location outside a traditional office. Their work often involves solving complex computational problems, improving software efficiency, and applying mathematical models to real-world challenges. They may work in industries like technology, finance, healthcare, or artificial intelligence, collaborating with teams online and using various programming languages. This role requires strong analytical skills, proficiency in programming, and the ability to communicate technical concepts effectively in a remote environment.

What are some common challenges faced by Home Based Remote Algorithms Engineers, and how can they be effectively managed?

Home Based Remote Algorithms Engineers often face challenges such as limited real-time collaboration, managing complex projects independently, and maintaining clear communication with distributed teams. To overcome these obstacles, it is important to leverage collaboration tools (like Slack or GitHub), set regular check-ins with team members, and establish clear documentation practices. Proactively seeking feedback and participating in virtual code reviews also helps maintain alignment and ensures code quality while working remotely.

What is the difference between Home Based Remote Algorithms Engineer vs Data Scientist?

AspectHome Based Remote Algorithms EngineerData Scientist
Required CredentialsBachelor's or Master's in CS, Math, or related field; experience with algorithms and programmingBachelor's or Master's in Data Science, Statistics, or related field; proficiency in analytics tools
Work EnvironmentRemote, project-based, focused on algorithm developmentRemote or on-site, data analysis and modeling tasks
Industry UsageTech, AI, software development companiesTech, finance, healthcare, marketing

Home Based Remote Algorithms Engineers focus on designing and optimizing algorithms, often requiring programming and mathematical skills. Data Scientists analyze data to extract insights, using statistical and machine learning techniques. While both roles can be remote and require similar educational backgrounds, their core responsibilities differ: algorithms engineers develop solutions, whereas data scientists interpret data.

What are the key skills and qualifications needed to thrive as a Home Based Remote Algorithms Engineer, and why are they important?

To thrive as a Home Based Remote Algorithms Engineer, you need a deep understanding of mathematics, computer science fundamentals, and experience in algorithm design, often backed by a relevant degree. Proficiency with programming languages such as Python or C++, version control systems like Git, and familiarity with cloud-based collaboration tools are typically required. Strong problem-solving skills, self-motivation, and effective written communication are critical for remote teamwork and independent project delivery. These competencies ensure you can develop efficient algorithms, collaborate remotely, and meet project goals in a distributed work environment.
What are popular job titles related to Home Based Remote Algorithms Engineer jobs in California? For Home Based Remote Algorithms Engineer jobs in California, the most frequently searched job titles are:
What job categories do people searching Home Based Remote Algorithms Engineer jobs in California look for? The top searched job categories for Home Based Remote Algorithms Engineer jobs in California are:
What cities in California are hiring for Home Based Remote Algorithms Engineer jobs? Cities in California with the most Home Based Remote Algorithms Engineer job openings:
Infographic showing various Home Based Remote Algorithms Engineer job openings in California as of June 2026, with employment types broken down into 2% As Needed, 86% Full Time, 7% Part Time, 3% Temporary, and 2% Contract. Highlights an 79% Physical, 3% Hybrid, and 18% Remote job distribution.
Senior Software Platform Engineer

Senior Software Platform Engineer

PsiQuantum

Palo Alto, CA โ€ข On-site, Remote

$144K - $189K/yr

Full-time

Posted 5 days ago


Key responsibilities

  • Own AWS infrastructure end-to-end and actively shape its evolution, including building and maintaining systems.

  • Reduce friction in the deployment pipeline to enable developers to ship without infrastructure blockers.

  • Make GPU clusters and other infrastructure invisible to researchers running quantum simulations.


Job description

PsiQuantum's mission is to build the first useful quantum computers-machines capable of delivering the breakthroughs the field has long promised. Since our founding in 2016, our singular focus has been to build and deploy million-qubit, fault-tolerant quantum systems.
Quantum computers harness the laws of quantum mechanics to solve problems that even the most advanced supercomputers or AI systems will never reach. Their impact will span energy, pharmaceuticals, finance, agriculture, transportation, materials, and other foundational industries.
Our architecture and approach is based on silicon photonics. By leveraging the advanced semiconductor manufacturing industry-including partners like GlobalFoundries-we use the same high-volume processes that already produce billions of chips for telecom and consumer electronics. Photonics offers natural advantages for scale: photons don't feel heat, are immune to electromagnetic interference, and integrate with existing cryogenic cooling and standard fiber-optic infrastructure.
In 2024, PsiQuantum announced government-funded projects to support the build-out of our first utility-scale quantum computers in Brisbane, Australia, and Chicago, Illinois. These initiatives reflect a growing recognition that quantum computing will be strategically and economically defining-and that now is the time to scale.
PsiQuantum also develops the algorithms and software needed to make these systems commercially valuable. Our application, software, and industry teams work directly with leading Fortune 500 companies-including Lockheed Martin, Mercedes-Benz, Boehringer Ingelheim, and Mitsubishi Chemical-to prepare quantum solutions for real-world impact.
Quantum computing is not an extension of classical computing. It represents a fundamental shift-and a path to mastering challenges that cannot be solved any other way. The potential is enormous, and we have a clear path to make it real.
Come join us.
Team Overview
PsiQuantum's Applications Software Engineering Team builds tools for quantum algorithm developers: cloud development environments, circuit design tools, and resource estimation systems that help researchers write, simulate, and optimize quantum algorithms for the world's first utility-scale, fault-tolerant quantum computer.
We're hiring a platform engineer who bridges software infrastructure with GPU-accelerated computing, someone who can improve our AWS platform while helping researchers run quantum simulations efficiently on GPU clusters.
Role Overview
We're looking for someone to partner with our existing platform engineer, splitting responsibilities across a growing platform and making it easier for quantum researchers to do their best work.
That platform includes AWS infrastructure, Terraform configs, CI/CD workflows, and the GPU clusters our researchers depend on for large-scale, computationally intensive quantum simulations. There's a real opportunity to shape how all of it evolves.
The right person for this role is comfortable making judgment calls under uncertainty; they will have a lot of latitude, and accountability to match.
Responsibilities:
How You'll Spend Your Time
Platform Engineering (70%)
  • Own our AWS infrastructure end-to-end and actively shape how it evolves; building, not just maintaining.
  • Reduce friction in the deployment pipeline so developers can ship without infrastructure blockers.
  • Harden systems with intention: lock down IAM roles, container images, and authentication flows in ways that reflect a clear understanding of where the real risks are.
  • Implement monitoring and alerting that catches production issues before users notice them.
  • Make deployments faster to roll out, easier to roll back, and less prone to failure.
  • Lead incident response and post-mortems when necessary.

GPU/HPC Bridge Work (30%)
  • Make GPU clusters and other infrastructure invisible to the researchers running it.
  • Own CUDA compatibility and driver versions across heterogeneous GPU clusters.
  • Build standardized SLURM job submission workflows that researchers can use without help.
  • Package and containerize Python simulation code for reproducible execution.
  • Monitor job health across utilization, cost, and runtime efficiency.

Experience/Qualifications:
Required Qualifications
  • Experience: 5+ years in Platform Engineering, DevOps, or SRE roles.
  • Production AWS experience: Built and maintained systems on ECS/EKS, managed multi-account networking (VPCs, security groups), and dealt with real-world infrastructure complexity.
  • Infrastructure as Code: You've written and maintained Terraform (or Pulumi/CDK) in production, including applying ongoing changes as requirements evolved.
  • CI/CD: Improved build pipelines in production (reduced build times, increased reliability, made deployments easier to debug), including experience with GitLab CI, GitHub Actions, or equivalent.
  • GPU/HPC experience: Supported GPU workloads in production environments, including code optimization, CUDA debugging, and job scheduler setup.

Preferred Qualifications
  • Background in scientific computing, research infrastructure, ML platforms, or early-stage startups (especially research computing vendors).
  • Security & compliance experience: You've implemented auth systems (Auth0/Okta), managed encryption (KMS), or worked on FedRAMP/compliance-driven infrastructure. FedRAMP experience is a strong plus.
  • Exposure to quantum computing SDKs (Qiskit, Cirq, PennyLane) or hybrid classical-quantum workflows is a plus, but not required; genuine interest in quantum computing matters more than prior exposure.

What We're Not Looking For
  • Candidates focused on enterprise-scale batch computing rather than cloud-native platform engineering.
  • Platform engineers without exposure to GPU workloads or HPC concepts.
  • Candidates who prioritize architectural purity over iterative delivery.

PsiQuantum provides equal employment opportunity for all applicants and employees. PsiQuantum does not unlawfully discriminate on the basis of race, color, religion, sex (including pregnancy, childbirth, or related medical conditions), gender identity, gender expression, national origin, ancestry, citizenship, age, physical or mental disability, military or veteran status, marital status, domestic partner status, sexual orientation, genetic information, or any other basis protected by applicable laws.
Note: PsiQuantum will only reach out to you using an official PsiQuantum email address and will never ask you for bank account information as part of the interview process. Please report any suspicious activity to recruiting@psiquantum.com
We are not accepting unsolicited resumes from employment agencies.
The ranges below reflect the target ranges for a new hire base salary. One is for the Bay Area (within 50 miles of HQ, Palo Alto), the second one (if applicable) is for elsewhere in the US (beyond 50 miles of HQ, Palo Alto). If there is only one range, it is for the specific location of where the position will be located. Actual compensation may vary outside of these ranges and is dependent on various factors including but not limited to a candidate's qualifications including relevant education and training, competencies, experience, geographic location, and business needs. Base pay is only one part of the total compensation package. Full time roles are eligible for equity and benefits. Base pay is subject to change and may be modified in the future.
U.S. Base Pay Range
$150,000-$170,000 USD
Bay Area Pay Range
$165,000-$185,000 USD