Applied Researcher 1

eBayBellevue, WA
$147,200 - $196,500Hybrid

About The Position

eBay, Inc. seeks Applied Researcher 1 in Bellevue, WA. This role involves developing, implementing, and optimizing virtual try-on technologies using advanced generative AI models like Stable Diffusion XL (SDXL) and FLUX. The focus is on enhancing realism and image fidelity through techniques such as flow matching and transformer-based models with attention mechanisms. The researcher will collaborate with engineering and product teams for production deployment, conduct rigorous performance assessments, and contribute to research publications. Maintaining up-to-date knowledge of generative AI advancements is crucial for refining product offerings.

Requirements

  • Master’s degree, or foreign equivalent, in Data Science, Computer Science, Applied Mathematics, or a related quantitative discipline plus 18 months of experience as a software engineer or machine learning engineer.
  • Attention and self-attention mechanisms, including transformer-based designs (ViT, Swin, BERT, or LLaMA)
  • Architecting custom attention layers or modifying transformer backbones for vision or multimodal applications.
  • Scaling laws, memory optimization, and distributed attention computation.
  • Implementing OCR, object detection, image segmentation, and image classification pipelines.
  • Frameworks such as torch vision or OpenCV
  • Integrating visual encoders (CLIP, BLIP, Flamingo, or Kosmos) with large language models.
  • Large-scale data preprocessing using PySpark or similar distributed data frameworks.
  • Designing efficient data pipelines for model training and evaluation at scale (terabytes to petabytes).
  • Quantitative and qualitative evaluation methodologies for computer vision and generative models.
  • Machine learning validation principles, including proper dataset splitting (train/validation/test), cross-validation, and prevention of data leakage.
  • Designing robust evaluation pipelines, ensuring statistical significance of results, reproducibility of experiments, and proper use of control baselines or ablation studies.
  • Coding skills in Python, PyTorch, Transformers, and Hugging Face ecosystems.
  • Working with ML Ops and model deployment workflows (Docker, Ray, Airflow, or MLflow).

Responsibilities

  • Develop, implement, and optimize virtual try-on technologies using Stable Diffusion XL (SDXL) and FLUX, incorporating advanced sampling techniques and flow matching methodologies to enhance realism and image fidelity.
  • Apply flow matching techniques to improve the efficiency and stability of generative models, enabling more accurate and faster image synthesis.
  • Leverage transformer-based models and attention mechanisms to effectively capture complex visual patterns in virtual garment generation.
  • Collaborate closely with software engineering and product management teams to integrate and deploy advanced virtual try-on models into production environments.
  • Perform rigorous performance assessments, including quantitative analyses of model accuracy, visual realism, user experience, and stability across various diffusion settings and model configurations.
  • Write detailed technical documentation, comprehensive research reports, and summaries outlining methodologies, results, and guidelines to facilitate internal knowledge sharing and practical application of developed technologies.
  • Contribute actively to peer-reviewed research publications and technical white papers related to advanced virtual try-on methodologies, innovations in diffusion models, and transformer architectures.
  • Maintain updated knowledge of cutting-edge developments in generative AI, diffusion processes, and related deep learning methodologies to continuously enhance and refine virtual try-on product offerings.

Benefits

  • 401(k) eligibility
  • various paid time off benefits, such as PTO and parental leave
  • target bonus
  • restricted stock units
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