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Senior

Senior Machine Learning Engineer, Pegasus

Confirmed live in the last 24 hours

Twelve Labs

Twelve Labs

Seoul, South Korea
On-site
Posted April 13, 2026

Job Description

Who we are

At TwelveLabs, we are pioneering the development of cutting-edge multimodal foundation models that have the ability to comprehend videos just like humans do. Our models have redefined the standards in video-language modeling, empowering us with more intuitive and far-reaching capabilities, and fundamentally transforming the way we interact with and analyze various forms of media.

With a $110+ million in Seed and Series A funding, our company is backed by top-tier venture capital firms such as NVIDIA’s NVentures, NEA, Radical Ventures, and Index Ventures, and prominent AI visionaries and founders such as Fei-Fei Li, Silvio Savarese, Alexandr Wang and more. Headquartered in San Francisco, with an influential APAC presence in Seoul, our global footprint underscores our commitment to driving worldwide innovation.

Our partnership with NVIDIA and AWS gives us access to the most advanced chips, including B300s, enabling us to push the boundaries of what's possible in video AI.

We are a global company that values the uniqueness of each person’s journey. It is the differences in our cultural, educational, and life experiences that allow us to constantly challenge the status quo. We are looking for individuals who are motivated by our mission and eager to make an impact as we push the bounds of technology to transform the world. Join us as we revolutionize video understanding and multimodal AI.

About the Team

The Pegasus team sits at the core of TwelveLabs' video understanding capabilities and is responsible for driving Pegasus, our Video Analysis product. Our focus is on developing multimodal video analysis systems that are designed for high instruction following capability and producing highly complex, hierarchically structured outputs. We focus on shipping products with real-world value rather than doing research in isolation, and we work in a goal-oriented, cross-functional team that encompasses both ML researchers and engineers.

Our work covers a broad range of challenges: large-scale distributed training of multi-modal LLMs that span from pre-training to RL, accurate temporal segmentation and structured metadata extraction for real-world use cases, extending temporal context length to multiple hours, and data curation processes that enable well-aligned evaluation and performance improvements through training data enhancements.

Our team has access to the most advanced chips in the world, including NVIDIA B300s, to push the boundaries of video analysis systems—accelerating our research-to-production cycle as fast as possible.

In this role, you will

  • Lead complex ML systems work across Pegasus from design through production, especially in areas with greater technical ambiguity or system complexity.

  • Make strong design and architectural decisions across deployment, inference, evaluation, monitoring, and ML infrastructure within your domain.

  • Improve critical parts of the ML lifecycle so research advances can be integrated into production quickly and reliably.

  • Drive improvements to model serving, inference architecture, and ML workflows for Video Language Models (VLMs) in production.

  • Support other engineers through technical guidance, design reviews, and strong engineering judgment.

  • Explore and adopt AI-assisted development tools such as Claude, Gemini, and GPT to improve productivity across coding, experimentation, debugging, and documentation.

You may be a good fit if you have

  • Significant experience building and productionizing ML systems as a hands-on individual contributor.

  • Experience independently owning technically complex ML projects end-to-end.

  • Strong foundations in machine learning and experience with multimodal systems such as vision, language, or video-based models.

  • Experience designing or operating distributed ML or data systems, ideally in Kubernetes-based environments.

  • Strong technical judgment in system design, performance tradeoffs, reliability, and production operations.

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