Bring cutting-edge vision to life as a highly skilled Computer Vision Pipeline Engineer! This dynamic role combines deep learning expertise with infrastructure engineering to develop experiment with and deploy state-of-the-art CV models. Youll be at the core of building scalable training evaluation and deployment pipelines that power real-world computer vision applications.
Key Responsibilities:
Deploy large-scale computer vision models including YOLO and OWL optimizing for performance and efficiency.
Design and implement robust training pipelines and deployment frameworks using tools such as Kubernetes and Ubuntu-based environments.
Perform advanced hyperparameter tuning and model optimization to meet accuracy latency and compute requirements.
Build reusable tools for model evaluation and monitoring within an MLOps workflow.
Collaborate with cross-functional teams to integrate models into scalable production systems and automate the lifecycle of machine learning models.
Stay current with the latest CV research (e.g. foundation models prompt-based detection) and apply insights into model development.
Required Skills & Qualifications:
Proficiency in Python and deep learning frameworks especially PyTorch.
Strong hands-on experience with YOLO (You Only Look Once) and OWL (Open-World Localization) object detection models.
Solid understanding of computer vision tasks: object detection segmentation classification.
Experience deploying models using Kubernetes Docker and AWS SageMaker.
Familiarity with MLOps tools such as MLflow or Weights & Biases.
Expertise in Ubuntu/Linux environments for ML/AI experimentation and deployment.
Demonstrated success in hyperparameter tuning for large models.
Bachelors or Masters in Computer Science Machine Learning or a related field. A PhD or research experience is a plus.
Key Skills:
YOLO OWL.
Python PyTorch.
Kubernetes Ubuntu.
Hyperparameter Tuning.
MLOps.
AWS SageMaker.
Event-Driven Microservices.
Preferred Qualifications:
Experience with real-time inference and edge deployment (e.g. TensorRT ONNX Runtime Jetson).
Familiarity with distributed training frameworks.
Required Education:
Bachelors Degree or equivalent.
Benefits:
401(k).
Dental Insurance.
Health insurance.
Vision insurance.
We are an equal-opportunity employer and value diversity equality inclusion and respect for people.
The salary will be determined based on several factors including but not limited to location relevant education qualifications experience technical skills and business needs.
Additional Responsibilities:
Participate in OP monthly team meetings and participate in team-building efforts.
Contribute to OP technical discussions peer reviews etc.
Contribute content and collaborate via the OP-Wiki/Knowledge Base.
Provide status reports to OP Account Management as requested.
About us: OP is a technology consulting and solutions company offering advisory and managed services innovative platforms and staffing solutions across a wide range of fields - including AI cybersecurity enterprise architecture and beyond. Our most valuable asset is our people: dynamic creative thinkers who are passionate about doing quality work. As a member of the OP team you will have access to industry-leading consulting practices strategies & and technologies innovative training & education. An ideal OP team member is a technology leader with a proven track record of technical excellence and a strong focus on process and methodology.
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