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DevOps Engineer, TikTok Applied Machine Learning
DevOps Engineer, TikTok Applied Machine Learning
The DevOps Engineer in TikTok's Applied Machine Learning (AML) team will research, design, and develop computer and network software and utility programs. This role involves analyzing user needs to create software solutions, maintaining large-scale distributed systems, and integrating hardware and software components to ensure high availability of machine learning services.
About the role
About The Team
The Applied Machine Learning (AML) team combines system engineering and the art of machine learning to develop and run massively distributed recommendation systems around the world. On this team, you'll have the opportunity to sharpen your expertise in coding, performance analysis, and large system operation, and get heavily involved in the process of hardware/capacity decision-making. DevOps ensures that the very centric machine learning services at TikTok have the highest level of availability, as well as creating highly automated systems and pipelines.
Responsibilities
- Research, design, and develop computer and network software or specialised utility programs.
- Analyse user needs and develop software solutions, applying principles and techniques of computer science, engineering, and mathematical analysis.
- Update software, enhances existing software capabilities, and develops and direct software testing and validation procedures.
- Work with computer hardware engineers to integrate hardware and software systems and develop specifications and performance requirements.
Qualifications
- Bachelor’s degree in Computer Science or equivalent.
- Proven experience in analyzing and troubleshooting distributed systems.
- Prior experience designing and maintaining large-scale systems.
- Experience programming in at least one of the following languages: Python or C/C++.
- Expertise in DevOps technologies like Ansible, Terraform, Salt, Bash Scripting, etc.
- Experience in building solutions with AWS, Google, Azure, AliCloud or other cloud services.
- Familiar with Unix/Linux operating systems.
Preferred Qualifications
- Ability to thrive in a fast-paced environment.
- Strong understanding of code optimizing and routine tasks automation.
- Proficiency in at least one machine learning framework: TensorFlow, PyTorch, MXNet or PaddlePaddle.
- Solid background of algorithms and data structures.