2

Remote Nvidia Deep Learning Jobs in Oregon (NOW HIRING)

... inference, adaptive learning at the edge, and secure Earth-to-space data orchestration ... remote, or "denied" environments. * Systems Programming: Mastery of Go, C++, or Rust, with a deep ...

Continuous Learning: Participate in training to maintain subject matter expertise and improve ... With a commitment to excellence and a deep understanding of market trends, Naviga Recruiting ...

... deep marketplace expertise and a high bar for service. We pride ourselves on working with ... Support all team members, fostering a culture of growth, collaboration, and continuous learning.

Our work spans strategy, execution, and operational support, all grounded in deep marketplace ... Support all team members, fostering a culture of growth, collaboration, and continuous learning.

AI Red Teamer

OR · On-site +1

Deep understanding of attack techniques specific to machine learning and artificial intelligence ... Fully Remote: We are a completely remote global team. Though we're distributed, we are intentional ...

Dive deep into complex user journey data to uncover friction points, retention drivers, and growth ... Remote Time zone requirements The team operates on the East/West coast time zones. Travel ...

... deep analysis * Work with a world class team of engineers who are strong in both machine learning ... Location: Liftoff follows a philosophy of "remote first, come together meaningfully" and allows ...

Staff Performance Engineer - SDET

OR · On-site +1

$110K - $204K/yr

Remote or onsite, we are committed to ensuring you are fully engaged and included in our ... Share Knowledge & Foster Learning: Contribute to internal learning sessions, technical discussions ...

Principal Data Analyst, Growth Marketing

OR · On-site +1

$86K - $107K/yr

... and Machine Learning teams to drive deep understanding, actionable insights, and data-informed ... Remote Travel requirements - As a digital first company, the majority of your work can be ...

... Remote About The Role The NEAR AI team is building decentralized and confidential machine learning ... Deep knowledge of state-of-the-art GPU architectures, and effectively exploit them using PyTorch ...

Senior Software Engineer

OR · On-site +1

$160K - $200K/yr

To accelerate our impact, we are hiring a Senior Software Engineer with deep backend and ... This position is remote-only for East Coast candidates, but we prefer candidates based in New York ...

Senior Software Engineer

OR · On-site +1

$160K - $200K/yr

To accelerate our impact, we are hiring a Senior Software Engineer with deep backend and ... This position is remote-only for East Coast candidates, but we prefer candidates based in New York ...

next page

Showing results 1-20

Remote Nvidia Deep Learning information

What is the difference between Remote Nvidia Deep Learning vs Remote Machine Learning Engineer?

AspectRemote Nvidia Deep LearningRemote Machine Learning Engineer
Required CredentialsDeep learning certifications, Nvidia GPU expertise, programming skills in Python and CUDAMachine learning certifications, Python, data analysis, model deployment skills
Work EnvironmentRemote, GPU-intensive tasks, AI research, model trainingRemote, data processing, model development, deployment
Industry UsageAI research labs, tech companies, autonomous vehiclesTech firms, finance, healthcare, e-commerce

Remote Nvidia Deep Learning focuses on developing AI models using Nvidia GPUs and CUDA, often in research or AI-specific roles. Remote Machine Learning Engineers work on building and deploying machine learning models across various industries. While both roles require programming and data skills, Nvidia Deep Learning emphasizes GPU expertise and AI research, whereas Machine Learning Engineers focus on broader model deployment and application.

What are popular job titles related to Remote Nvidia Deep Learning jobs in Oregon? For Remote Nvidia Deep Learning jobs in Oregon, the most frequently searched job titles are:
What job categories do people searching Remote Nvidia Deep Learning jobs in Oregon look for? The top searched job categories for Remote Nvidia Deep Learning jobs in Oregon are:
What cities in Oregon are hiring for Remote Nvidia Deep Learning jobs? Cities in Oregon with the most Remote Nvidia Deep Learning job openings:
Senior Machine Learning Engineer II, Fulfillment, Matching and Positioning

Senior Machine Learning Engineer II, Fulfillment, Matching and Positioning

Instacart

OR • Remote

$104K - $143K/yr

Other

Re-posted 8 days ago


Instacart rating

7.1

Company rating: 7.1 out of 10

Based on 31 frontline employees who took The Breakroom Quiz

29th of 63 rated delivery companies


Job description

Overview

Instacart's Logistics organization powers the intelligence and execution behind our fulfillment system. We're hiring a Senior Machine Learning Engineer to join the Matching & Positioning team, a tight-knit group of 9 engineers and scientists focused on real-time decisioning for order batching, shopper routing, and assignment across a dynamic, multi-sided marketplace.

In this role, you'll work at the intersection of operations research, combinatorial optimization, and machine learning to design and ship algorithms that directly impact profitability, on-time delivery, shopper experience, and customer satisfaction at scale. You'll collaborate closely with engineering, product, and data science partners to translate ambiguous problems into well-formed optimization and ML systems that operate under sub-second latency and high throughput.

If you thrive in a fast-paced environment, enjoy rolling up your sleeves, and want to see your models make decisions in the real world every minute of every day, this team is for you.

About the Job

You will build production-grade optimization and ML solutions that drive Instacart's fulfillment decisions end-to-end in a rapidly evolving, high-scale environment.

  • Design, implement, and deploy algorithms for order batching, real-time shopper assignment, routing, and marketplace positioning using techniques such as MIP/CP-SAT, heuristics/metaheuristics, and learning-to-rank.
  • Own the full model lifecycle: problem formulation, data pipelines and features, offline evaluation and simulation, A/B testing, staged rollouts, and ongoing monitoring/observability.
  • Build reliable, low-latency services in Python (and, where performance dictates, C++ or Go) that integrate with solvers (e.g., OR-Tools, Gurobi, CPLEX) and run on cloud infrastructure with Docker/Kubernetes.
  • Partner with product, operations, and data science to define roadmaps and success metrics; deliver measurable impact to on-time rates, shopper utilization, cost per order, and customer experience.
  • Leverage experimentation and causal methods along with offline counterfactual replay/simulation to validate changes and de-risk launches.
  • Contribute to engineering excellence through code reviews, design docs, robust testing, and participation in an on-call rotation for mission-critical fulfillment services; mentor peers and raise the technical bar.

This is a fast-moving domain with evolving constraints and objectives. Success requires comfort with ambiguity, pragmatic prioritization, and a bias toward iterative learning and continuous improvement.

About You

You pair a deep toolkit in operations research and machine learning with strong software engineering fundamentals. You're motivated by real-world impact, communicate clearly with cross-functional partners, and take ownership from ideation to production.

Minimum Qualifications
  • Bachelor's degree in Computer Science, Operations Research, Electrical Engineering, Applied Mathematics, or a related field (or equivalent practical experience).
  • 5+ years of professional experience building and shipping ML and/or optimization systems to production.
  • 3+ years formulating and solving large-scale combinatorial optimization problems (e.g., VRP, matching, scheduling) using solvers such as OR-Tools, Gurobi, or CPLEX (MIP/CP-SAT) and heuristic methods.
  • Proficiency in Python and SQL, including writing production-quality code with testing, profiling, and code review practices.
  • Hands-on experience deploying algorithms/models as microservices with Docker and Kubernetes on a major cloud provider (GCP or AWS), including monitoring, alerting, and dashboards.
  • Experience designing and operating low-latency decision services in high-throughput environments (targeting sub-second P95 response times).
  • Practical experience with A/B testing or online experimentation platforms, from hypothesis through analysis and rollout decisions.
  • Strong collaboration and communication skills with engineering, product, and data science stakeholders.
Preferred Qualifications
  • Master's or PhD in Operations Research, Computer Science, Electrical Engineering, Applied Mathematics, or a related quantitative field.
  • Domain experience in logistics, ride-hailing, delivery, or marketplace optimization at scale.
  • Familiarity with reinforcement learning or contextual bandits for online decision-making and exploration/exploitation tradeoffs.
  • Experience with geospatial data, routing APIs, and graph algorithms.
  • Background in building simulation frameworks and counterfactual evaluation for decision systems.
  • Experience with streaming data and real-time feature computation (e.g., Kafka, Flink) and feature stores.
  • Proficiency in C++ or Go for performance-critical components.
  • Track record of mentoring engineers and leading cross-functional projects to measurable outcomes.
  • Experience participating in an on-call rotation for production ML/optimization services.

#LI-Remote


What Instacart employees say

Pay

Benefits

Hours and flexibility

Workplace

Get the full story on Breakroom


Instacart logo

About Instacart

Sourced by ZipRecruiter

Instacart, based in San Francisco, CA, US, operates within the retail industry, specifically grocery delivery and pick-up service. It is recognized as a pioneer in this field, delivering fresh groceries from local stores directly to customers' doors. The company, which launched its services in 2012, continues to pioneer change in the online grocery shopping sector through its commitment to cutting-edge technology, new business ideas, and dedicated service.

Industry

Technology, communication and media

Company size

10,000+ Employees

Headquarters location

San Francisco, CA, US

Year founded

2012