DevOps / MLOPs Engineer

Tiro Partners Limited
London
1 year ago
Applications closed

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About the Company:

Tiro Partners is representing a start up Computer Vision business who are searching for a DevOps / MLOps Engineer to take ownership of optimising and managing their cloud infrastructure which support data application and Machine Learning. Working closely with the Product and Machine Learning teams to streamline deployment, automate tasks, and improve overall efficiency of operations.


About the Role:

Proven experience as DevOps/ MLOps Engineer, SRE with focus on cloud and automation. Extensive experience in at least one cloud platform (AWS preferable). Experience with Containerization tech (Docker). Strong understanding of CI/CD concepts and tools. Familiar with Machine Learning frameworks and concepts (Tensorflow, PyTorch) & experience deploying ML models in GPU environments. (Valohai, BentoML). Container Orchestration platform experience such as Kubernetes highly beneficial.


Responsibilities:

  • Take ownership of optimising and managing cloud infrastructure supporting data application and Machine Learning.
  • Work closely with Product and Machine Learning teams to streamline deployment, automate tasks, and improve overall efficiency of operations.


Qualifications:

N/A


Required Skills:

  • Proven experience as DevOps/ MLOps Engineer, SRE with focus on cloud and automation.
  • Extensive experience in at least one cloud platform (AWS preferable).
  • Experience with Containerization tech (Docker).
  • Strong understanding of CI/CD concepts and tools.
  • Familiar with Machine Learning frameworks and concepts (Tensorflow, PyTorch) & experience deploying ML models in GPU environments. (Valohai, BentoML).
  • Container Orchestration platform experience such as Kubernetes highly beneficial.


Preferred Skills:

No specific preferred skills mentioned.


Pay range and compensation package:

Salary range between £70 & £100k

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