At least 3 years of experience with Deep Learning Pipelines., Knowledge and experience with Azure/AWS/GCP., Experience in implementing database schema., Approachable and friendly disposition..
Key responsibilities:
Develop and implement Deep Learning Pipelines.
Maintain infrastructure for Deep Learning inference on Azure.
Build CI/CD pipeline for automated deployment.
Prototype and refine pipelines with the team.
Report This Job
Help us maintain the quality of our job listings. If you find any issues with this job post, please let us know.
Select the reason you're reporting this job:
ZAUBAR Information Technology & Services Scaleup
11 - 50
Employees
About ZAUBAR
ZAUBAR is a Berlin-based B2B SaaS company offering a rich suite of tools for creators of all sizes to tell their location-based augmented reality stories with the help of AI. Our mission is to bring the Metaverse to the streets. Our platform helps you turn your already-existing multimedia content into an interactive and immersive augmented reality experience or help you easily create 3D AI content. ZAUBAR has worked with enterprise-grade customers from the tourism, art, e-Learning, sports, and media industries. Among the users of our creator platform are brands, museums, galleries, memorial sites, news agencies, and tour guides.Adlon AR: https://www.kempinski.com/en/hotel-adlon/overview/hotel-information/adlon-app
Innovative company ZAUBAR is bringing the metaverse to the streets with location-based augmented reality tours. Collaborating with prestigious German institutions, we're making these immersive journeys a reality and soon, we'll enable anyone to create, distribute, and monetize immersive tours. Backed by a team with strong AI, 3D UI, and journalism expertise, we're turning time travel into an interactive experience.
We're looking for an experienced Machine Learning Engineer to join our expanding team. Your role will encompass designing and implementing Deep Learning Pipelines using cutting-edge models, maintaining our Azure infrastructure, and establishing automated deployment pipelines. Staying abreast with AI trends and refining pipeline prototypes alongside the team and clients until perfected will also be key.
In a fast-paced environment where your code is quickly deployed, you'll have a high degree of ownership over product code and work closely with the team and creative and product teams to prioritize issues and opportunities. At ZAUBAR, we provide everything needed to succeed in a dynamic, employee-centric structure where you are entrusted with making time travel possible. If you're a motivated individual with a passion for machine learning, we'd love to hear from you!
Tasks
We make use of the following stack:
Cloud platform: Azure
Deep learning framework: Pytorch
CI/CD tools: Pytest, Github Actions, Docker
Infrastructure as code tool: Terraform
Job Functions:
Develop and implement Deep Learning Pipelines using cutting-edge models
Sustain the infrastructure for Deep Learning inference on Azure
Build a CI/CD pipeline for automated deployment
Keep up-to-date with latest developments in the AI field
Prototype the pipelines and refine them with the team and clients until the final product
Additional tasks will include:
Managing the AI inference backend, facilitating secure frontend requests
Designing and implementing database schema and serverless architectures
Requirements
At least 3 years of experience with Deep Learning Pipelines
Knowledge and experience with Azure/AWS/GCP, preferably Azure
An approachable and friendly disposition
The ability to see through problems to their resolution
Benefits
We provide an attractive salary and benefits package, including flexible working hours, the option to work remotely, and avenues for career advancement. If you are a highly driven individual with a fervor for machine learning, we encourage you to reach out to us!
Please attach a portfolio of your work.
Required profile
Experience
Level of experience:Mid-level (2-5 years)
Industry :
Information Technology & Services
Spoken language(s):
English
Check out the description to know which languages are mandatory.