2

Remote Image Analysis Jobs in Kansas (NOW HIRING)

$89K - $123K/yr

... analysis. Our breakthrough DeepStain and ReStain technologies enable unlimited virtual staining ... Remote US Company: Pictor Labs Employment Type: Full-time Responsibilities * Design, development ...

At Tango Analytics, we're all about helping businesses make smarter decisions through powerful ... remote state, and GitOps-based plan/apply pipelines - no unmanaged resources Audit the cloud estate ...

At Tango Analytics, we're all about helping businesses make smarter decisions through powerful ... remote state, and GitOps-based plan/apply pipelines - no unmanaged resources Audit the cloud estate ...

Remote Image Analysis information

What are the key skills and qualifications needed to thrive as a Remote Image Analyst, and why are they important?

To thrive as a Remote Image Analyst, you need a solid background in image processing, pattern recognition, and a relevant degree in fields like computer science or engineering. Familiarity with software such as MATLAB, Python (with libraries like OpenCV), and GIS platforms is typically required, along with certifications in data analysis or remote sensing. Attention to detail, analytical thinking, and effective communication are essential soft skills for interpreting images and sharing findings with stakeholders. These skills ensure accurate data interpretation, support decision-making, and enable seamless collaboration in remote work environments.

What is remote image analysis?

Remote image analysis is the process of examining and interpreting images from a distance, often using specialized software and cloud-based platforms. Professionals in this field analyze images from sources such as satellites, drones, medical imaging devices, or security cameras to extract useful information without being physically present. This approach allows for efficient data processing, real-time collaboration, and accessibility from anywhere with an internet connection. Remote image analysis is commonly used in industries like healthcare, agriculture, environmental monitoring, and security.

What are some common challenges faced in a remote image analysis role, and how can they be addressed?

One common challenge in remote image analysis is maintaining effective communication with team members and project stakeholders, as collaboration often relies on digital platforms. Additionally, handling large datasets and ensuring secure data transfer can be technically demanding in a remote setup. To address these issues, professionals should become proficient with collaborative tools (such as Slack, Zoom, or project management software) and follow best practices for data security and version control. Regular check-ins and clear documentation also help ensure smooth workflow and minimize misunderstandings.

What is the difference between Remote Image Analysis vs Remote Data Annotation?

AspectRemote Image AnalysisRemote Data Annotation
Primary FocusInterpreting and analyzing images to extract meaningful informationLabeling and tagging data to prepare datasets for machine learning
Required SkillsImage recognition, pattern analysis, attention to detailData labeling, understanding of annotation tools, accuracy
Work EnvironmentRemote, often flexible hours, tech-focusedRemote, collaborative platforms, tech and communication skills
Industry UsageHealthcare, security, autonomous vehiclesAI, machine learning, computer vision projects

Remote Image Analysis involves interpreting images to extract insights, often requiring specialized visual skills. Remote Data Annotation focuses on labeling data to train AI models, emphasizing accuracy and consistency. Both roles are remote, industry-specific, and essential for AI development, but they differ in their core tasks and skill sets.

What are popular job titles related to Remote Image Analysis jobs in Kansas? For Remote Image Analysis jobs in Kansas, the most frequently searched job titles are:
What cities in Kansas are hiring for Remote Image Analysis jobs? Cities in Kansas with the most Remote Image Analysis job openings:

$89K - $123K/yr

Other

Posted 7 days ago


Job description

About Pictor Labs

Pictor Labs is the leading virtual staining company revolutionizing digital pathology adoption worldwide through cutting-edge AI-powered technology. Our solutions deliver diagnostic-quality results in minutes while preserving tissue samples for comprehensive analysis.

Our breakthrough DeepStain and ReStain technologies enable unlimited virtual staining from a single tissue sample, eliminating the bottlenecks and limitations of traditional chemical staining processes. This innovation supports the critical evolution from research applications to clinical deployment, empowering laboratories to advance their digital pathology capabilities while reducing chemical waste, improving operational efficiency, and expanding diagnostic possibilities.

About the Role

We are seeking an experienced Senior ML Inference Engineer to join our team, focusing on optimizing and deploying our production virtual staining models at scale. The ideal candidate will have deep expertise in ML inference optimization, GPU programming, and building production-grade inference systems. You will work on critical challenges such as reducing inference latency for whole slide imaging (WSI) from tens of minutes to under 2 minutes, deploying models on edge devices with NVIDIA hardware, and ensuring our inference infrastructure meets FDA and SOC2 compliance requirements. This role offers the opportunity to work at the intersection of cutting-edge AI and life-saving healthcare technology, making a tangible impact on patient outcomes.

Location: Remote US
Company: Pictor Labs
Employment Type: Full-time

Responsibilities

  • Design, development, and optimization of production ML inference systems for virtual staining models (Deepstain, Restain, ClearStain) serving clinical and pharmaceutical customers
  • Architect and implement high-performance inference pipelines capable of processing gigapixel pathology images with sub-2-minute latency requirements
  • Work with ML Research and Engineering teams to optimize model architectures and deployment strategies for both cloud-based APIs and edge devices (NVIDIA DGX Sparc, Grace Blackwell superchips)
  • Evaluate, implement, and maintain state-of-the-art inference frameworks (TensorRT, Triton Inference Server, ONNX Runtime) to maximize GPU utilization and throughput
  • Profile and optimize deep neural networks on NVIDIA GPUs using tools such as NVIDIA Nsight, PyTorch Profiler, and custom instrumentation
  • Design and implement efficient model serving architectures that support both synchronous REST APIs and asynchronous batch processing workflows
  • Collaborate with Platform and Edge Device teams to containerize inference systems (Docker, Kubernetes) for deployment across cloud and on-premise environments
  • Partner with cloud providers (AWS, GCP, Azure) to optimize hosted inference solutions and leverage latest hardware accelerators
  • Ensure inference systems meet regulatory requirements (FDA 510(k), SOC2) with comprehensive monitoring, logging, and audit capabilities
  • Prototype and productionize new inference optimization techniques, including quantization, pruning, distillation, and dynamic batching strategies
  • Build robust telemetry and monitoring systems to track model performance, latency, throughput, and resource utilization in production

Qualifications

Required:

  • 7+ years of experience building and optimizing production ML inference systems at scale
  • Expert-level proficiency in Python and experience writing high-performance inference services
  • 5+ years of hands-on experience with PyTorch and at least one production inference tools (TensorRT, Triton Inference Server, ONNX Runtime, TorchServe)
  • Deep understanding of computer vision model architectures, particularly generative models (GANs, diffusion models) and vision transformers
  • Extensive experience profiling and optimizing deep neural networks on NVIDIA GPUs, including memory optimization, kernel fusion, and mixed-precision inference
  • Strong background in image processing pipelines and libraries (OpenCV, Pillow, scikit-image) for handling large-scale medical imaging data
  • Proven experience deploying ML systems on Kubernetes and major cloud providers (AWS, GCP, Azure)
  • Experience with Docker containerization and orchestration for ML workloads
  • Strong software engineering practices including version control (Git), CI/CD, unit testing, and production debugging
  • Excellent communication, collaboration, and technical documentation skills

Preferred:

  • Experience with medical imaging, digital pathology, or whole slide imaging (WSI) processing
  • Knowledge of edge device deployment and embedded systems for AI inference
  • Experience with MLOps tools (MLflow, Kubeflow, Apache Airflow) and model versioning
  • Understanding of FDA regulatory requirements for AI/ML in medical devices
  • Background in distributed inference systems and model parallelism techniques
  • Familiarity with monitoring and logging tools (Prometheus, Grafana, ELK Stack)

What We Offer

The opportunity to work on technology that directly improves patient outcomes and transforms clinical diagnostics, alongside a talented team of engineers and researchers pushing the boundaries of AI in healthcare.

Equal Employment Opportunity

Pictor Labs is an equal opportunity employer and does not discriminate on the basis of race, religion, national origin, gender, sexual orientation, age, veteran status, disability, or other legally protected statuses.

CCPA Notice

CCPA Notice at Collection - If you are a California resident, please review our California Applicant Privacy Notice, available at pictorlabs.ai/applicant-privacy-notice, which describes how we collect and use personal information in connection with your application.