4 Greynubo Jobs
GreyNubo - DevOps/MLOps Engineer (4-6 yrs)
Greynubo
posted 11hr ago
Flexible timing
Key skills for the job
Job Type : Full Time - MLOps/DevOps Engineer
Job Description :
Warehousing and logistics systems play an increasingly critical role in contributing to the competitiveness of many companies and, at the same time, to the effectiveness of the general world economy. The modern intra-logistics solutions combine state-of-the-art mechatronic, complex software, advanced robotics, modern computational perception, and sophisticated AI and operations research algorithms to provide high throughput and efficient processing for many mission critical commercial logistics applications.
Our Warehouse Execution Software leverages advances in classical and modern optimization techniques to bring intelligent execution to the world of intralogistics and warehouse automation. We synchronize the discrete and low-level logistics related processes to create a real-time decision engine that drives labor and equipment at the highest efficiency.
Our software provides customers the operational agility they need to efficiently handle the demands of an Omni-channel environment. We are looking for a highly motivated individual who can develop cutting edge MLOps and DevOps frameworks to deploy AI models.
The candidate should have a solid grasp of state-of-the-art cloud technologies, best in class deployment architectures/frameworks and production grade software. The candidate must have an open mindset regarding the tradeoffs between coding from scratch versus utilizing existing frameworks.
Many of the problems we encounter are novel and have never been solved before, so creative, out-of-the-box thinking and a fondness for experimentation are a must. We also want someone who stays current with recent trends in MLOps/DevOps so our approaches remain the most robust and competitive in the industry.
Finally, the role requires strong team and interdisciplinary collaboration to see products through the development cycle from beginning to end.
Core Job Responsibilities :
- Develop end-to-end ML pipelines encompassing the ML lifecycle from data ingestion, data transformation, model training, model validation, model serving, and model evaluation over time.
- Collaborate closely with AI scientists to accelerate productionization of ML algorithms.
- Setup CI/CD/CT pipelines for ML algorithms.
- Deploy models as a service both on-cloud and on-prem.
- Learn and apply new tools, technologies, and industry best practices.
Key Qualifications :
- MS in Computer Science, Software Engineering, or equivalent field
- Experience with Cloud Platforms, especially GCP and Azure, and related skills : Docker, Kubernetes, edge computing
- Familiarity with task orchestration tools such as MLflow, Kubeflow, Airflow, Vertex AI, Azure ML, etc.
- Fluency in at least one general purpose programming language.
- Python or Java preferred.
- Strong DevOps
Skills :
- Linux/Unix environment, testing, troubleshooting, automation, Git, , dependency management, and build tools (GCP Cloud Build, Jenkins, Gitlab CI/CD, Github Actions, etc.).
- Data engineering skills a plus, such as Beam, Spark, Pandas, SQL, Kafka, GCP Dataflow, etc.
- 3+ years of experience, including academic experience, in any of the above.
Functional Areas: Other
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