openashbyhqexpa
Staff ML Research Engineer, Marengo
Twelve Labs
LocationSeoul, South Korea
WorkplaceHybrid
EmploymentFullTime
Posted2025-12-15T02:40:55.614+00:00
Last observed2026-07-02 05:05:41.165315
Job idexpa-twelve-labs:ashbyhq:38e8e1c9-bf91-449c-b64a-c3f481099801
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 This team owns the research and development of Marengo, TwelveLabs’ multimodal embedding model. We develop foundation models that bring video, audio, and text into a shared embedding space, powering state-of-the-art multimodal understanding and retrieval. End-to-end model development: We work across a broad range of research areas, including contrastive learning, temporal video understanding, and multimodal representation learning. The team owns the entire model development lifecycle—from building large-scale training datasets and designing model architectures to optimizing distributed training and developing robust evaluation frameworks. Research at scale: With access to world-class compute infrastructure, including NVIDIA B300 GPUs, we rapidly iterate on large-scale experiments, enabling fast progress on ambitious research problems. Research with real-world impact: The path from research to production is exceptionally short. We work closely with the Search, Product, and Infrastructure teams to continuously improve the models that power multimodal search and understanding for thousands of customers worldwide. ABOUT THE ROLE As a Staff ML Research Engineer on the Marengo team, you will set the technical direction for TwelveLabs' next-generation multimodal embedding models and own the end-to-end model development process, from research strategy and data architecture to training infrastructure and evaluation frameworks. This is a high-autonomy role at the intersection of multimodal representation learning, large-scale systems design, and cross-team technical leadership. We're looking for someone who thrives in ambiguity: someone who can identify the highest-impact research problems, define the technical approach, and drive cross-team execution to deliver models that serve customers worldwide. IN THIS ROLE, YOU WILL - Set the technical direction for next-generation multimodal embedding model architecture, training methodology, and data strategy - Own end-to-end model development from research planning through large-scale distributed training to production evaluation - Architect and optimize training infrastructure: distributed training pipelines, data processing systems, experiment workflows, and GPU utilization across the team's compute fleet - Drive data strategy: design large-scale data curation, filtering, and quality frameworks that systematically improve model performance - Define evaluation methodology and quality standards for embedding models, ensuring rigorous benchmarking that captures what matters - Co-design em
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