Cloud Native Engineer, ARK Large Model Platform (Singapore)

1 Week ago • 3 Years + • Research & Development • Artificial Intelligence

About the job

SummaryBy Outscal

Must have:
  • B. Sc or higher degree in Computer Science or related fields
  • 3+ years of R&D experience in cloud computing or large-scale model systems
  • Experience in Golang/C++/Cuda development
  • Understanding of Linux systems and cloud platforms
  • Knowledge of cloud-native orchestration technologies like Kubernetes
  • Experience in large-scale cluster maintenance and optimization
  • Grasp of computer networking, Linux file system, object storage services, SQL and NoSQL databases
  • Self-motivated, innovative, collaborative, and uphold high coding and documentation standards
Good to have:
  • Experience in developing ML platforms or MLOps platforms
  • Experience in distributed machine learning model training, ML model fine-tuning, and deployment
Not hearing back from companies?
Unlock the secrets to a successful job application and accelerate your journey to your next opportunity.
Responsibilities
ByteDance will be prioritizing applicants who have a current right to work in Singapore, and do not require ByteDance's sponsorship of a visa. Founded in 2012, ByteDance's mission is to inspire creativity and enrich life. With a suite of more than a dozen products, including TikTok, Helo, and Resso, as well as platforms specific to the China market, including Toutiao, Douyin, and Xigua, ByteDance has made it easier and more fun for people to connect with, consume, and create content. Why Join Us Creation is the core of ByteDance's purpose. Our products are built to help imaginations thrive. This is doubly true of the teams that make our innovations possible. Together, we inspire creativity and enrich life - a mission we aim towards achieving every day. To us, every challenge, no matter how ambiguous, is an opportunity; to learn, to innovate, and to grow as one team. Status quo? Never. Courage? Always. At ByteDance, we create together and grow together. That's how we drive impact - for ourselves, our company, and the users we serve. Join us. About the Team The Applied Machine Learning (AML) - Enterprise team provides machine learning platform products on VolcanoEngine with cloud native resource scheduling system which intelligently orchestrates different tasks and jobs with minimised costs of every experiment and maximised resource utilisation, rich modelling tools including customised machine learning tasks and web IDE, and multi-framework high performance model inference services. In 2021, through VolcanoEngine, we released this machine learning infrastructure to the public, to provide more enterprises with reduced costs of computation power, lower barriers to machine learning engineering and deeper developments in AI capabilities. Responsibilities Responsible for Ark Large Model Platform development on Volcano Engine, researching systematic solutions on large model solution implementations and applications in various industries, striving to reduce the IT cost of large model applications, meeting the users' ever-growing demand for intelligent interaction and improving the lifestyle and communications of users in the future world. - Maintain a large-scale AI cluster and develop state-of-the-art machine learning platforms to support a diverse group of stakeholders. - Tackle extremely challenging tasks which include, but are not limited to, delivering highly efficient training and inference for large language models, managing extremely effective distributed training jobs across clusters with over 10,000 nodes and GPU chips, and constructing highly reliable ML systems with unparalleled scalability. - The work encompasses various aspects of LLMOps (Large Language Model Operations), such as resource scheduling, task orchestration, model training, model inference, model management, dataset management, and workflow orchestration. - Investigate cutting-edge technologies related to large language models, AI, and machine learning at large, such as state-of-the-art distributed training systems with heterogeneous hardware, GPU utilization optimization, and the latest in hardware architecture. - Employ a variety of technological and mathematical analyses to enhance cluster efficiency and performance.
Qualifications
Minimum Qualifications - B. Sc or higher degree in Computer Science or related fields from accredited and reputable institutions with at least 3 years of R&D experience in the fields of cloud computing or large-scale model systems. - Experience in Golang/C++/Cuda development with a solid understanding of Linux systems and popular cloud platforms such as Volcano Engine Cloud, AWS, and Azure Cloud. - Profound knowledge of cloud-native orchestration technologies like Kubernetes, coupled with experience in large-scale cluster maintenance, job scheduling optimization, and cluster efficiency enhancement. - A strong grasp on various foundational areas of computer science, including computer networking, the Linux file system, object storage services, and SQL as well as NoSQL databases. - Self-motivated, thirst for innovation, collaborative working aptitude, and consistently uphold high standards in coding and documentation quality. Preferred Qualifications: - Experience in developing ML platforms or MLOps platforms. Experience in distributed machine learning model training, ML model fine-tuning, and deployment. ByteDance is committed to creating an inclusive space where employees are valued for their skills, experiences, and unique perspectives. Our platform connects people from across the globe and so does our workplace. At ByteDance, our mission is to inspire creativity and enrich life. To achieve that goal, we are committed to celebrating our diverse voices and to creating an environment that reflects the many communities we reach. We are passionate about this and hope you are too.
View Full Job Description

Level Up Your Career in Game Development!

Transform Your Passion into Profession with Our Comprehensive Courses for Aspiring Game Developers.

Job Common Plug