דרושים » תוכנה » Computer Vision Researcher - Generative Models for Video Restoration

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Location: Herzliya
Job Type: Full Time
We are seeking a talented Computer Vision / ML Researcher to develop diffusion-based generative models for video restoration in new imaging systems. The role will focus on large, high-quality models that restore degraded video while preserving fidelity, detail, motion, and temporal consistency. You will be part of an interdisciplinary team developing technologies that will shape our future products.
Deep hands-on experience with diffusion models is required. The ideal candidate has worked on diffusion-based image or video models and has a strong research track record, ideally including publications on diffusion, generative vision, video models, restoration, or inverse problems.

Deep learning development: Design, train, evaluate, and optimize deep learning models for video restoration tasks such as denoising, deblurring, artifact removal, super-resolution, detail recovery, and temporal stabilization. Work with large-scale video datasets, synthetic and real degradations, and rigorous evaluation pipelines.
Research: Develop and adapt diffusion models for video restoration, including video diffusion, DiT-style architectures, latent diffusion, conditional diffusion, diffusion for inverse problems, and efficient sampling. Analyze results, compare against leading methods, and investigate approaches for fidelity preservation, hallucination control, temporal consistency, distillation, and production-quality inference.
Collaboration: Work closely with ML researchers, engineers, and cross-functional teams to translate research ideas into robust models and practical systems.
Requirements:
Minimum Qualifications:
Strong foundation in computer vision, machine learning, deep learning, and video processing.
Deep hands-on experience with diffusion models.
Experience training diffusion-based image or video models.
Proficiency in Python and deep learning frameworks such as PyTorch.
Hands-on experience training deep learning models using large-scale datasets.
Experience with model evaluation, debugging, experimental analysis, and failure analysis.
Masters or PhD in Computer Science, Electrical Engineering, Machine Learning, Computer Vision, or a related field, or equivalent experience.
Strong written and verbal communication skills.
Ability to work both independently and collaboratively.
5+ years of relevant experience, or a PhD with relevant research contributions.

Preferred Qualifications:
Publications on diffusion models, generative vision, video models, restoration, or inverse problems at top-tier venues such as CVPR, ICCV, ECCV, NeurIPS.
Experience with video diffusion, DiT architectures, latent diffusion, conditional diffusion, rectified flow, consistency models, or diffusion distillation.
Experience with video restoration, super-resolution, denoising, deblurring, artifact removal, inverse problems, or computational imaging.
Strong understanding of temporal consistency, motion, occlusion, flicker, hallucination control, and fidelity-preserving generation.
Experience with efficient inference, model optimization, distillation, or deployment on constrained hardware.
Background in signal processing, physics, computational imaging, or inverse problems.
This position is open to all candidates.
 
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Location: Herzliya
Job Type: Full Time
We are seeking a talented Computer Vision / ML researcher to join our team. The job will focus on developing innovative deep learning solutions for efficient video restoration in new imaging systems. You will be part of an interdisciplinary team developing technologies that will shape future our products.

Deep learning development:
Design, implement, and optimize deep learning models for various tasks in the field of video restoration. Implement and validate models using various datasets.
Prepare, filter, process, and analyze large-scale datasets to train and evaluate models.
Analyze the results of your algorithm and compare with other leading methods.
Optimize models for real-time performance and resource efficiency.
Research:
Investigate efficient architecture patterns (lightweight backbones, attention mechanisms, recurrent designs) suitable for on-device inference.
Explore how algorithm approaches can mitigate artifacts of new imaging systems.
Stay updated with recent advancements in the field.
Collaboration:
Work closely with ML researchers, SW, HW and camera architecture engineers to translate research ideas into robust models and practical systems.
Requirements:
Minimum Qualifications
Strong foundation in image processing, computer vision, machine learning, and deep learning.
Proficiency in Python and deep learning frameworks (e.g. PyTorch).
Hands on demonstrated experience with designing real time deep learning solutions, using large scale datasets.
Proficiency in Python and deep learning frameworks (e.g. PyTorch).
Experience with model evaluation, debugging, experimental analysis, and failure analysis.
PhD or Master's degree in Computer Science, Electrical Engineering, in related research fields.
Proficient in both written and verbal communication.
Ability to work both autonomously and collaboratively.
PhD or Master's degree in Computer Science, Electrical Engineering in related research fields.
5+ or more years of relevant experience.

Preferred Qualifications
Experience with video restoration, super-resolution, denoising, deblurring, artifact removal, inverse problems or computational imaging.
Experience with advanced implementation architectures on GPU, Dedicated HW or Neural engines.
Experience with generative priors (diffusion, flow matching) is an advantage.
Background in signal processing, physics, computational imaging or inverse problems.
Publications in top-tier computer vision conferences (CVPR, ICCV, ECCV, NeurIPS).
This position is open to all candidates.
 
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31/05/2026
Location: Herzliya
Job Type: Full Time and Hybrid work
A deep-tech startup building real-time vision intelligence systems, is looking for a senior applied researcher to take full ownership of a core domain - from research to production. The company is tackling one of the hardest perception challenges - early detection of low-visibility targets such as drones and vessels. The systems are deployed in real-world environments and have direct impact on safety and life-saving operations.
Responsibilities:
Own a computer vision / AI domain end-to-end - from problem definition to production deployment
Develop new algorithms and improve existing models with measurable performance impact
Design and execute experiments, analyze results, and iterate rapidly
Integrate research directly into production systems and codebase
Collaborate closely with researchers and engineers to deliver real-world solutions
Requirements:
5+ years of experience in Computer Vision / Deep Learning with production exposure
Proven ability to take complex problems from research to working solutions
Strong experimental skills - ability to design, evaluate, and iterate effectively
Strong coding skills in Python and experience with PyTorch
Experience working within production codebases (not only research environments)
Understanding of data lifecycle: collection, validation, and evaluation methodologies
Independent, curious, and collaborative mindset
Nice to Have:
Experience with low-resolution, long-range, video, or thermal imaging
Experience with embedded / edge deployment (ONNX, TensorRT, on-device inference)
This position is open to all candidates.
 
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