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About Cantina
Cantina Labs is a social AI company, developing a suite of advanced real-time models that push the boundaries of expression, personality, and realism. We bring characters to life, transforming how people tell stories, connect, and create. We build and power ecosystems. Cantina, our flagship social AI platform, is just the beginning.
About The Role
Cantina is expanding, and we're looking for an ML Engineer to join our growing Singapore team! In this role, you will build and scale systems for ingesting, processing, and delivering large-scale video and multimodal data for model training. You'll own the full pipeline — from raw content to curated, filtered, and training-ready datasets — with a focus on speed, reliability, reproducibility, and cost-efficiency. You'll partner closely with curation and modeling teams to operationalize evolving dataset recipes and iterate on approaches that improve model outcomes.
What You’ll Do
Cantina Labs is a social AI company, developing a suite of advanced real-time models that push the boundaries of expression, personality, and realism. We bring characters to life, transforming how people tell stories, connect, and create. We build and power ecosystems. Cantina, our flagship social AI platform, is just the beginning.
About The Role
Cantina is expanding, and we're looking for an ML Engineer to join our growing Singapore team! In this role, you will build and scale systems for ingesting, processing, and delivering large-scale video and multimodal data for model training. You'll own the full pipeline — from raw content to curated, filtered, and training-ready datasets — with a focus on speed, reliability, reproducibility, and cost-efficiency. You'll partner closely with curation and modeling teams to operationalize evolving dataset recipes and iterate on approaches that improve model outcomes.
What You’ll Do
- Design and scale distributed data pipelines for preprocessing, dataset generation, and repeated dataset refreshes
- Own workflow orchestration, job scheduling, monitoring, and failure recovery for large-scale data processing jobs
- Implement and maintain containerized pipeline infrastructure using Kubernetes or equivalent orchestration systems
- Optimize cloud-based data storage and movement across providers (AWS, GCS, or Azure) for cost, throughput, and operational efficiency
- Define and implement best practices for dataset storage layout, versioning, caching, retention, and access patterns
- Design and implement curation pipelines that determine which video and image content is selected, filtered, and retained for model training, including image-text pair datasets used in joint training regimes
- Build and improve VLM-based captioning and metadata generation workflows at scale across both video and image data
- Develop and apply quality and aesthetic scoring models, CLIP-based semantic filtering, and other signal-extraction approaches for data selection
- Build tooling to support deduplication workflows at scale, including near-dedup and exact deduplication pipelines over large video corpora
- Analyze dataset composition, identify quality issues, and iterate on curation logic to improve training outcomes
- Define and evolve standards for what constitutes high-quality, training-ready video data across different training regimes
- Strong hands-on experience building or scaling large-scale data systems and pipelines for machine learning, including dataset curation, filtering, and quality improvement
- Experience with distributed data processing frameworks such as PySpark or Ray, and orchestration tools such as Airflow or equivalent
- Familiarity with containerization and container orchestration, including Docker and Kubernetes
- Experience working with cloud-based data storage and compute (AWS, GCS, and/or Azure), including tradeoffs around cost, throughput, storage layout, and access patterns
- Experience with VLM-based captioning pipelines or quality/aesthetic scoring models for video or image data, including curation of image-text pair datasets for joint image-video training
- Familiarity with CLIP-based or embedding-based filtering and semantic data selection techniques
- Familiarity with video and media processing tools such as FFmpeg, PyAV, DALI, or OpenCV, and relevant libraries such as Decord, torchvision, PyTorchVideo, or torchaudio
- Proficiency in Python
- Strong problem-solving, communication, and documentation skills
- Competitive salary and generous company equity
- Personal time off and paid holidays
- Health insurance
- Global travel insurance: Covers you when traveling internationally
- Monthly spending stipend: $500 (~S$635)
- Equipment: All equipment needed for your home office
Key Skills
Ranked by relevance
storage
cloud
aws
ai
containerization
machine learning
kubernetes
docker
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- Posted
- May 13, 2026
- Type
- Full-time
- Level
- Not Applicable
- Location
- Singapore
- Company
- Cantina Labs
Industries
Software Development
Categories
Engineering
Information Technology
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3 roles aligned with this opportunity
View Job Details
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Machine Learning Engineer
2026-05-27
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Engineering
View Job Details
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Machine Learning Engineer II
2026-05-20
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Backend Engineer - Remote
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