2

Part Time Cuda Programmer Jobs (NOW HIRING)

This role is ideal for a student who can work part-time (16 hours/week) for 6 months to 1 year and ... Graphics experience (GPU / CUDA) Job Type:Student / Intern Shift:Shift 1 (United States of America ...

This role is ideal for a student who can work part-time (16 hours/week) for 6 months to 1 year and ... Graphics experience (GPU / CUDA) Job Type:Student / Intern Shift:Shift 1 (United States of America ...

Python, C#, Typescript, Java, Kotlin, Swift, GoLang, Cuda * Documented knowledge in Secure-Element ... We are open to ideas, including flexible work arrangements, job sharing or part-time job seekers.

GPU/CUDA acceleration * FPGA, NPU, or hardware-accelerated vision pipelines * Memory-mapped I/O ... PART-TIME Full-Time POSITION Computer Vision (Software) Engineer LOCATION Palo Alto, HQ Pay Range ...

HPC Engineer, Mid

Beavercreek, OH ยท On-site

$61K - $141K/yr

Experience with GPU computing, including CUDA and ROCm, or GPU-accelerated workflows * Experience ... Full-time and part-time employees working at least 20 hours a week on a regular basis are eligible ...

Part Time Cuda Programmer information

See salary details

$12

$39

$68

How much do part time cuda programmer jobs pay per hour?

As of Jun 20, 2026, the average hourly pay for part time cuda programmer in the United States is $39.54, according to ZipRecruiter salary data. Most workers in this role earn between $25.72 and $51.44 per hour, depending on experience, location, and employer.

Is CUDA programming still relevant?

CUDA programming remains highly relevant for roles involving GPU acceleration, high-performance computing, and machine learning. Proficiency in CUDA is valuable as NVIDIA continues to develop its platform, and many industries rely on GPU programming for demanding computational tasks.

Can you work part-time as a programmer?

Part-time programming jobs, including roles like CUDA programmer, are common in the tech industry and often involve flexible schedules. These positions typically require specific skills, such as knowledge of parallel computing and GPU programming, and may be suitable for students or professionals seeking additional work hours. Availability depends on employer needs and project requirements.

What is the difference between Part Time Cuda Programmer vs Part Time GPU Developer?

AspectPart Time Cuda ProgrammerPart Time GPU Developer
Required CredentialsKnowledge of CUDA, programming skills in C/C++, understanding of parallel computingSimilar skills in CUDA, OpenCL, or other GPU programming languages, with additional focus on hardware optimization
Work EnvironmentPrimarily software development, coding, testing on GPU hardware or simulatorsSoftware development with possible hardware integration, testing on GPU systems
Employer & Industry UsageTech companies, research labs, gaming, AI, scientific computingTech firms, research institutions, industries utilizing GPU acceleration

While both roles involve GPU programming, a Part Time Cuda Programmer focuses specifically on CUDA-based development, whereas a Part Time GPU Developer may work with multiple GPU programming frameworks and broader hardware optimization tasks. The roles overlap in skills but differ slightly in scope and specialization.

How much does a CUDA programmer make?

A CUDA programmer's salary varies based on experience, location, and industry, but typically ranges from $70,000 to $130,000 annually. Entry-level positions may start lower, while experienced developers with specialized skills in parallel computing and GPU optimization can earn higher salaries. Freelance or contract roles may also offer different compensation structures.

What is the salary of Nvidia CUDA developer?

The salary of a CUDA developer varies based on experience, location, and employer, but typically ranges from $70,000 to $130,000 annually. Skilled programmers with expertise in parallel computing and GPU optimization can earn higher salaries, especially in tech hubs or with advanced certifications.
More about Part Time Cuda Programmer jobs
What are the most commonly searched types of Cuda Programmer jobs? The most popular types of Cuda Programmer jobs are:
What job categories do people searching Part Time Cuda Programmer jobs look for? The top searched job categories for Part Time Cuda Programmer jobs are:
Infographic showing various Part Time Cuda Programmer job openings in the United States as of June 2026, with employment types broken down into 2% Locum Tenens, 20% As Needed, 3% Full Time, 13% Temporary, 61% Contract, and 1% Summer. Highlights an 87% Physical, 6% Hybrid, and 7% Remote job distribution, with an average salary of $82,234 per year, or $39.5 per hour.

Remote | CUDA & GPU Kernel Optimization Engineer -- $70-$90/hour

24-MAG

New York, NY โ€ข On-site, Remote

$70 - $90/hr

Part-time, Contractor

This job post hasย expired 1 day ago.ย Applications are no longer accepted.


Job description

We are sharing a specialised part-time consulting opportunity for CUDA and GPU programming professionals experienced in kernel optimization, C++ engineering, profiler-guided performance analysis, GPU hardware utilization, and technical review.

This role supports current and upcoming remote consulting opportunities focused on GPU kernel optimization, performance evaluation, CUDA/HIP review, profiler metric analysis, C++ and Python workflows, and high-quality project execution. Selected professionals will apply their GPU programming expertise to analyze kernels, identify performance bottlenecks, improve implementation quality, and document optimization decisions across modern hardware environments.

Key Responsibilities

Professionals in this role may contribute to:

GPU Kernel Optimization

  • Analyze and optimize GPU kernels for performance, efficiency, and hardware utilization
  • Review kernel implementations and identify bottlenecks in memory access, occupancy, throughput, or execution patterns
  • Improve performance outcomes using CUDA, HIP, shader programming, or related GPU programming models
  • Optimize kernels even when limited background context is available for the underlying algorithm

Profiler-Guided Performance Analysis

  • Use profiler metrics such as L2 cache hit rate, L2 throughput, occupancy, memory behavior, and related performance signals
  • Evaluate when specific profiler metrics are useful, misleading, or secondary to other optimization factors
  • Document optimization decisions clearly and explain tradeoffs in technical terms
  • Calibrate performance judgments against structured benchmarks, hardware constraints, and project-specific criteria

C++, Python & GPU Programming Review

  • Write, modify, and reason about C++17, Python, and GPU programming code
  • Review code for correctness, performance impact, maintainability, and optimization potential
  • Use Git-based workflows to manage technical materials and project submissions
  • Apply practical GPU programming expertise across CUDA, HIP, Slang, HLSL, GLSL, or related kernel programming environments

Ideal Profile

Strong candidates may have:

  • Strong practical experience with GPU programming and kernel optimization
  • Fluency in core C++ features through C++17
  • Working knowledge of Python and Git
  • Fluency in at least one GPU programming model, such as CUDA, HIP, Slang, HLSL, GLSL, or related kernel programming
  • At least 1 year of professional or graduate-level research experience working with GPUs
  • Strong understanding of GPU profiler performance metrics and how to use them to optimize kernels
  • Ability to work independently on technical review and optimization tasks
  • Availability to work at least 20 hours per week depending on project scope

Educational Background

  • A degree in computer science, electrical engineering, computer engineering, applied mathematics, physics, mechanical engineering, or a related technical field is helpful
  • Graduate-level research, professional GPU engineering experience, or equivalent hands-on kernel optimization experience is highly relevant
  • Practical experience with CUDA, HIP, GPU architecture, high-performance computing, graphics programming, or compiler-adjacent performance work may be especially valuable

Nice to Have

  • Experience with CUDA, HIP, CUDA C++ Core Libraries, inline PTX assembly, or tensor core-level optimization
  • Experience optimizing kernels for NVIDIA Blackwell hardware or other modern GPU architectures
  • Familiarity with Nsight Compute or comparable GPU profiling tools
  • Prior experience with GPU hardware organizations such as NVIDIA, AMD, Qualcomm, or similar technical environments
  • Open-source contributions related to GPU kernel optimization, HPC, compiler tooling, graphics, or performance engineering

Why This Opportunity

  • Apply advanced GPU programming expertise to structured remote project work
  • Contribute to high-quality kernel optimization, performance review, and technical evaluation workflows
  • Work on flexible assignments aligned with CUDA, C++, profiler analysis, and GPU architecture strengths
  • Use your ability to identify bottlenecks, improve performance, and explain optimization decisions clearly
  • Remote structure with competitive hourly compensation

Contract Details

  • Independent contractor role
  • Fully remote with flexible scheduling
  • Eligible professionals may be based in approved project locations depending on project needs
  • Expected commitment of at least 20 hours per week depending on project availability
  • Competitive rates between $70โ€“$90 per hour depending on expertise and project scope
  • Weekly payments via Stripe or Wise
  • Projects may be extended, shortened, or adjusted depending on scope and performance
  • Work will not involve access to confidential or proprietary information from any employer, client, or institution

About the Platform

This opportunity is available through 24-MAG LLC. We connect experienced professionals with remote consulting opportunities across technical, evaluation, and project-based workstreams.

By submitting this application, you acknowledge that your information may be processed by 24-MAG LLC for recruitment and opportunity matching in accordance with our Privacy Policy: https://www.24-mag.com/privacy-policy.