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Remote Computer Vision Engineer Jobs in Ohio (NOW HIRING)

... computer vision, and autonomous systems in the context of DoW use cases. * Maintain sufficient technical depth and credibility to review architectures, guide technical tradeoffs, mentor engineering ...

$166K - $191K/yr

Quora offers a wide range of benefits including medical/dental/vision coverage, equity refreshers ... For Toronto and Vancouver based applicants, the salary range is $166,675 - $191,397 CAD + equity ...

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Remote Computer Vision Engineer information

See Ohio salary details

$46.1K

$115.5K

$130.7K

How much do remote computer vision engineer jobs pay per year?

As of Jul 16, 2026, the average yearly pay for remote computer vision engineer in Ohio is $115,524.00, according to ZipRecruiter salary data. Most workers in this role earn between $106,000.00 and $125,000.00 per year, depending on experience, location, and employer.

What is a Remote Computer Vision Engineer job?

A Remote Computer Vision Engineer develops and implements computer vision algorithms and machine learning models to analyze and interpret visual data. They work with image and video processing, deep learning frameworks, and cloud-based or edge computing environments. This role involves tasks like object detection, image segmentation, and facial recognition, often using tools like OpenCV, TensorFlow, or PyTorch. Since it is a remote position, strong communication and collaboration skills are essential for working with distributed teams.

What are the key skills and qualifications needed to thrive in the Remote Computer Vision Engineer position, and why are they important?

To excel as a Remote Computer Vision Engineer, you need strong proficiency in image processing, machine learning, and programming languages such as Python or C++, typically supported by a degree in computer science or a related field. Experience with frameworks like OpenCV, TensorFlow, or PyTorch, and familiarity with cloud platforms and version control systems, are highly valuable. Excellent problem-solving skills, self-motivation, and effective remote communication abilities set standout candidates apart. These skills ensure the successful development and deployment of advanced computer vision solutions in a collaborative, distributed work environment.

What are some typical challenges remote computer vision engineers face and how can they address them?

Remote computer vision engineers often encounter challenges such as aligning on project objectives with distributed teams, managing large datasets, and ensuring models perform well in real-world conditions. Effective communication through regular video meetings and clear documentation can help bridge distance-related gaps. Utilizing collaborative tools for code reviews and version control also streamlines teamwork. To overcome technical hurdles, staying updated on the latest frameworks and best practices in computer vision is important. Proactively addressing these challenges leads to more efficient project delivery and professional growth.

What are the most commonly searched types of Computer Vision Engineer jobs in Ohio? The most popular types of Computer Vision Engineer jobs in Ohio are:
What are popular job titles related to Remote Computer Vision Engineer jobs in Ohio? For Remote Computer Vision Engineer jobs in Ohio, the most frequently searched job titles are:
What cities in Ohio are hiring for Remote Computer Vision Engineer jobs? Cities in Ohio with the most Remote Computer Vision Engineer job openings:
MLOps Engineer - AI/ML Systems Deployment (TS/SCI Preferred)

MLOps Engineer - AI/ML Systems Deployment (TS/SCI Preferred)

Rackner

Dayton, OH โ€ข On-site, Remote

Other

Medical, Dental, Vision, Life, Retirement, PTO

Re-posted 24 days ago


Job description

MLOps Engineer - AI/ML Systems Deployment
Location: Dayton, OH preferred
Work Arrangement: On-site preferred; remote may be considered for highly aligned, clearance-ready candidates able to support secure / CAC-enabled environments and travel as needed
Clearance: Active TS/SCI strongly preferred; active Secret may be considered for upgrade
Requirement: U.S. citizenship required

Build and Deploy Real-World AI Systems

Rackner is hiring an MLOps Engineer to move AI/ML systems from prototype deployment operational use in a secure, mission-focused environment.

This is not a research role-this is where models become reliable, repeatable, auditable systems that run in real-world conditions.

This role is ideal for engineers who want to:

  • Work across AI/ML, Kubernetes, infrastructure, and mission systems
  • Own deployed systems, not just experiments
  • Build high-demand MLOps expertise in secure and constrained environments
  • Deliver technology that is used, trusted, and operational

You will help operationalize AI/ML capabilities where reliability, performance, and trust matter most.

What You'll Do

Operationalize AI/ML Systems

  • Deploy AI/ML models and ML-enabled applications into secure, real-world environments
  • Move workflows from experimentation into containerized, repeatable deployment pipelines
  • Support batch and real-time inference architectures
  • Bridge model development, software engineering, and platform operations

Own the ML Lifecycle

  • Build and operate production-grade ML pipelines
  • Support model versioning, lineage, reproducibility, and lifecycle governance
  • Work with tools such as MLflow, Kubeflow, Airflow, Argo, ClearML, or similar platforms

Build Cloud-Native ML Infrastructure

  • Deploy and support Kubernetes-based ML workloads
  • Containerize models, pipelines, and services using Docker or similar tools
  • Support CI/CD, automation, and repeatable deployment patterns for AI/ML systems

Engineer for Reliability

  • Monitor model and system performance after deployment
  • Support observability using tools such as Prometheus, Grafana, OpenTelemetry, or similar
  • Detect and resolve issues related to latency, reliability, drift, degradation, or resource usage

Support Secure and Constrained Environments

  • Help deploy AI/ML systems in secure, CAC-enabled, or constrained environments
  • Support limited compute, restricted data, degraded connectivity, and other operational constraints
  • Optimize systems for reliability and usability beyond ideal lab conditions

Create Repeatable Systems

  • Develop runbooks, deployment documentation, and operational playbooks
  • Build systems that can be understood, maintained, and operated by others

What You Bring

Core Experience

  • U.S. citizenship
  • Background in deploying ML systems, AI-enabled applications, or production software
  • Strong programming skills in Python
  • Hands-on work with Docker, containers, or containerized deployment
  • Familiarity with Kubernetes or cloud-native environments
  • Understanding of CI/CD, automation, or pipeline-based delivery
  • Clear communication of technical decisions, tradeoffs, and ownership
  • Ability to operate in a CAC-enabled or secure environment

Preferred Qualifications

  • Active TS/SCI clearance
  • Active Secret clearance with eligibility for upgrade
  • Familiarity with ML lifecycle tools such as MLflow, Kubeflow, Airflow, Argo, ClearML, or similar
  • Background in model serving, inference APIs, or deploying ML systems in production
  • Exposure to LLMs, transformer-based models, computer vision, NLP, or applied AI solutions
  • Hands-on work with Kubernetes-based ML workloads
  • Knowledge of observability and monitoring tools such as Prometheus, Grafana, or OpenTelemetry
  • Experience in DoD, defense, intelligence, regulated, or mission-critical settings
  • Work in edge, offline, air-gapped, low-bandwidth, D-DIL, or limited-compute environments

Clearance Requirements

  • Active TS/SCI clearance strongly preferred
  • Candidates with an active Secret clearance may be considered and supported for upgrade
  • Candidates without an active clearance must be:
    • U.S. citizens
    • eligible to obtain and maintain a clearance
    • able to work in a CAC-enabled or secure environment

Note:ย Start timelines and work scope may vary depending on clearance status and program requirements

Who We Are

Rackner is a software consultancy that builds cloud-native solutions for startups, enterprises, and the public sector. We are an energetic, growing team focused on solving complex problems through:

  • Distributed systems
  • DevSecOps
  • AI/ML
  • Cloud-native architecture

Our approach is cloud-first, cost-effective, and outcome-driven, delivering systems that scale and perform in real-world environments.

Benefits & Perks

  • 100% covered certifications & training aligned to your role
  • 401(k) with 100% match up to 6%
  • Highly competitive PTO
  • Comprehensive Medical, Dental, Vision coverage
  • Life Insurance + Short & Long-Term Disability
  • Home office & equipment plan
  • Industry-leading weekly pay schedule

Apply

If you are an engineer who wants to move from building models or platforms to owning deployed AI/ML systems, we would like to connect.