Key Responsibilities
- Develop the foundational world model to accurately simulate the physical world.
- Collaborate with engineering and data teams to tackle key challenges in training the world model on large-scale clusters.
- Develop metrics and evaluation benchmarks to better assess model performance.
- Design and implement a scalable and efficient data annotation pipeline to ensure high-quality labeled data for training and evaluation.
- Optimize inference efficiency to enable real-time interaction.
Areas of Focus
- Scalable Training Systems: Develop and optimize infrastructure for training multimodal LLMs and video diffusion models at massive scale.
- Efficient Data Pipelines: Build scalable video data pipelines and annotation frameworks to support high-quality training data.
- Inference Optimization: Enhance inference efficiency through optimization and distillation techniques to enable real-time interaction.
- Visual Tokenization: Develop methods for discretizing visual features into tokens for improved model representation.
- Quantitative Evaluation: Establish rigorous benchmarks to assess physical accuracy, controllability, and intelligence.
- Scaling Laws for Video Pretraining: Investigate scaling law principles to guide efficient video pre-training strategies.
Academic Qualifications
- MSc or PhD in Machine Learning or Computer Science, or equivalent industry experience.
Professional Experience
- Experience in large-scale model training (LLMs or Diffusion Models) on large clusters.
- Hands-on experience with state-of-the-art video generative models (e.g., Sora, Veo2, MovieGen, CogVideoX, etc.).
- Experiences in building and optimizing large-scale video data pipelines.
- Experience in accelerating diffusion model inference for improved efficiency.
- Exceptional problem-solving and troubleshooting skills to tackle complex technical challenges.
- Strong systems and engineering expertise in deep learning frameworks such as PyTorch.
- Strong communication and collaboration skills for effective cross-functional teamwork.
- Ability to navigate ambiguity and drive projects in rapidly evolving research areas.
- Research contributions to top-tier conferences or journals (e.g., ICML, ICLR, NeurIPS, ACL, CVPR, COLM, etc.), with published work in relevant domains.
Skills Required
- MSc or PhD in Machine Learning, Computer Science, or equivalent industry experience.
- Experience in large-scale model training (LLMs or diffusion models) on large clusters.
- Hands-on experience with state-of-the-art video generative models (e.g., Sora, Veo2, MovieGen, CogVideoX).
- Experience building and optimizing large-scale video data pipelines and annotation frameworks.
- Experience accelerating diffusion model inference and applying distillation techniques for efficiency.
- Strong systems and engineering expertise in deep learning frameworks such as PyTorch.
- Research contributions or publications in top-tier conferences or journals (ICML, ICLR, NeurIPS, ACL, CVPR, COLM, etc.).
- Exceptional problem-solving and troubleshooting skills.
- Strong communication and collaboration skills and ability to navigate ambiguity.
What We Do
First a passion, then an idea transformed into success – when it comes to pioneering automation and digitalisation technology, the ifm group is the ideal partner. Since its foundation in 1969, ifm has developed, produced and sold sensors, controllers, software and systems for industrial automation and for SAP-based solutions for supply chain management and shop floor integration worldwide. As one of the pioneers of Industry 4.0, ifm develops and implements consistent solutions to digitalise the entire value chain “from sensor to ERP”. Today, the second-generation family-run ifm group has more than 8,750 employees and is one of the worldwide market leaders. The group combines the internationality and innovative strength of a growing group of companies with the flexibility and close customer contact of a medium-sized company.

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