Match score not available

DevOps Engineer

fully flexible
Remote: 
Full Remote
Experience: 
Mid-level (2-5 years)
Work from: 

Offer summary

Qualifications:

3+ years experience in DevOps, Experience in MLOps solutions, Proficiency with Google Cloud, Knowledge of containerization technologies.

Key responsabilities:

  • Lead design and implementation of DevOps solutions
  • Develop end-to-end CI/CD pipelines for machine learning workflows
Imagine.io logo
Imagine.io Startup https://imagine.io/
51 - 200 Employees
See more Imagine.io offers

Job description

Imagine.io’s mission is to make 3D simple for everyone. We believe that simplicity in 3D visualization is critical for creating engaging visual content at scale. To go beyond the traditional 2D-3D canvas and create contextual, photo-realistic, and interactive experiences with ease and simplicity will come from vision and creativity. We are working to scale our 3D technology with generative AI models and easy-to-adopt UX, so brands, retailers, and individuals are empowered to generate visual content using 3D.

Imagine.io is financially backed by top VC firms.

Our Product Video - https://www.youtube.com/watch?v=dI3M-Ayrk9g

To learn more, log onto our website- https://imagine.io/

Job Summary:

Imagine.io is seeking an experienced Senior DevOps Engineer to join our dynamic team and play a pivotal role in advancing our AI-driven solutions. As an Experienced Senior DevOps Engineer, you will lead the design and implementation of cutting-edge MLOps and DevOps solutions, leveraging your extensive expertise to optimize performance, scalability, and reliability. You'll collaborate closely with multidisciplinary teams to develop end-to-end CI/CD pipelines tailored for machine learning workflows and help in defining and setting development, testing, release, update, and support processes for DevOps and MLOps operations to establishing best practices for model versioning, monitoring, and governance.

Designation: DevOps Engineer

Job Location: Delhi (Hybrid/Remote)

Job Type: Full-Time

Start Date: ASAP

Responsibilities:
  • Lead the design and implementation of DevOps and MLOps solutions to enhance our platform's capabilities.
  • Defining and setting development, testing, release, update, and support processes for DevOps and MLOps operations.
  • Deployment of diffusion models, LLM Models, and Cost-effective deployment of Generative AI products.
  • Collaborate closely with data scientists, machine learning engineers, and product developers to integrate Generative AI models into our existing infrastructure seamlessly.
  • Develop and implement end-to-end CI/CD pipelines specifically tailored for Generative AI model workflows to ensure reliable and automated model deployment.
  • Optimize and fine-tune infrastructure services, including PaaS and IaaS, to maximize performance, scalability, and cost efficiency for machine learning applications.
  • Stay updated with the latest advancements in MLOps tools, techniques, and industry trends to drive innovation and continuously improve our MLOps practices.
  • Provide technical leadership and mentorship to junior team members to foster a culture of continuous learning and growth within the MLOps and DevOps team.

Requirements

  • 3+ years of total experience in DevOps with relevant experience in implementing MLOps solutions.
  • Must have experience with Google Cloud, with hands-on experience deploying machine learning models in production environments.
  • Experienced in the scalable and cost-effective deployment of machine learning models and other modules.
  • Extensive experience with containerization technologies like Docker and orchestration tools like Kubernetes for managing workloads at scale.
  • Proficiency in Infrastructure as code (IaC) for automating the provisioning and configuration of cloud resources.
  • Experience with DevOps practices and tools, including CI/CD pipelines, version control systems, and automated testing frameworks.
  • Excellent problem-solving skills and the ability to troubleshoot and debug complex MLOps workflows.

Good to have:
  • Experienced in deployment of diffusion models, LLM Models, and Generative AI products
  • Certifications in cloud platforms, such as AWS and Google Cloud.
  • Experience with MLOps tools and frameworks, such as Kubeflow, MLflow, or TFX, for managing the end-to-end machine learning lifecycle.
  • Knowledge of data engineering principles and techniques for building scalable and reliable data pipelines.
  • Familiarity with software development methodologies, such as Agile or Scrum, for iterative and collaborative project management.

Benefits

  • Build products from scratch and be part of decision making.
  • Freedom to explore and implement your own ideas
  • Hybrid Work Mode
  • Open culture with flexible timings
  • Work with a Team who is a Family

Required profile

Experience

Level of experience: Mid-level (2-5 years)
Spoken language(s):
English
Check out the description to know which languages are mandatory.

Other Skills

  • Collaboration
  • Problem Solving
  • Mentorship

DevOps Engineer Related jobs