Veeam Software · 7 hours ago
Machine Learning Engineer
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Cloud InfrastructureData Center
Comp. & BenefitsNo H1B
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Responsibilities
Design, build, and refine machine learning models for diverse use cases, including ransomware detection, backup data classification, and conversational AI
Implement scalable and reproducible ML pipelines on Azure, using managed services such as Azure Fabric, Azure Machine Learning, Azure Data Lake Service, Azure Data Factory, Databricks, and/or Snowflake
Integrate models into production services and ensure robust monitoring, logging, and automated CI/CD (MLOps) practices for continuous improvement and rapid iteration
Collaborate with data engineers to define data architectures and managed services that facilitate efficient model training and inference
Continuously optimize ML models through feature selection, engineering, dimensionality reduction, and benchmarking to enhance accuracy, latency, and scalability
Implement model quality checks, bias detection, and model explainability frameworks to maintain ethical and transparent AI standards
Work closely with product managers, UX designers, and stakeholders to understand business requirements and translate them into technical ML solutions
Educate and mentor team members, data scientists, and engineers on ML best practices, frameworks, and toolsets
Qualification
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Required
Bachelor's or Master's degree in Computer Science, Data Engineering, Data Science, Machine Learning, or a related field
Proven experience building and deploying ML models in production using Python and popular ML frameworks (e.g., TensorFlow, PyTorch, scikit-learn)
Hands-on experience with modern ML tools and services, including Azure Fabric, Azure ML Studio, Azure Data Lake, Databricks, Snowflake, and similar services
Strong knowledge of MLOps principles, data governance best-practices, CI/CD pipelines, containerization (Docker), orchestration (Kubernetes), and networking
Familiarity with anomaly detection, time series analysis, and/or NLP
Strong statistical knowledge, including hypothesis testing, regression analysis, and model evaluation metrics
Ability to deconstruct a broad problem or ask into smaller well-defined components. Identify and flesh out uncertainty where needed
Excellent communication and interpersonal skills, with the ability to explain complex ML concepts to both technical and non-technical stakeholders
Self-driven, detail-oriented, and excited about working in a dynamic, fast-paced, startup-like environment within a larger organization
Benefits
Medical, dental, and vision insurance. Employee premiums for health insurance are 100% company paid
Unlimited Paid Time Off
Life and Disability Insurance
Veeam Care Days – additional 24 hours for your volunteering activities
Professional training and education, including courses and workshops, internal meetups, and unlimited access to our online learning platforms (Percipio, Athena, O'Reilly) and mentoring through our MentorLab program
Company
Veeam Software
Veeam provides data resilience and data management solutions for cloud, virtual, and physical environments.
Funding
Current Stage
Late StageTotal Funding
$2.5BKey Investors
TPGInsight Partners
2024-12-04Secondary Market· $2B
2020-01-09Acquired
2019-01-16Private Equity· $500M
Recent News
Private Equity News
2024-12-06
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2024-12-05
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