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Hours Full-time, Part-time
Location Marlboro, Massachusetts

About this job

Machine Learning Platform Engineer, Sr. Stafff

47590BR

USA - Massachusetts - Marlboro, USA - Texas - Austin

Job Description and Requirements

Synopsys' Generative AI Center of Excellence defines the technology strategy to advance applications of Generative AI across the company. The Gen AI COE pioneers the core technologies - platforms, processes, data, and foundation models - to enable generative AI solutions, and partners with business groups and corporate functions to advance AI-focused roadmaps.

We are looking for an experienced, passionate, and self-driven individual who possesses both a broad technical strategy and the ability to tackle architectural and modernization challenges. As an Ideal candidate will help build enterprise Machine Learning platform. They will work with a team of enthusiastic and dynamic ML engineers and Data scientists in building a platform to help Synopsys R&D teams to experiment, train models and build Gen AI & ML products.

You will be responsible for:

  • Building ML Platform to orchestrate enterprise-wide Data pipelines, ML training, and inferencing servers.
  • Develop "ML App Store" eco system to enable R&D teams build Gen AI and ML products in Cloud
  • Orchestrate GPU Scheduling from within Kubernetes eco-system (e.g. Nvidia GPU Operator, MIG, and so on)
  • Create reliable and cost-effective Hybrid cloud architecture using cutting edge technologies (E.g. Kubernetes Cluster Federation, Azure Arc and so on)
  • Required Qualifications

  • BS/MS/PhD in Computer Science/Software Engineering or an equivalent degree
  • 10+ years of total experience building systems software, enterprise software applications, ML applications and microservices.
  • Expertise and/or experience in following programming languages: Python, and Go
  • Design complex distributed systems (High-level and low-level systems design)
  • In-Depth Kubernetes knowledge: Be able to deploy Kubernetes on-prem, and working experience with managed Kubernetes services (AKS/EKS/GKE)
  • Strong systems knowledge in Linux Kernel, CGroups, namespaces, and Docker
  • Experience with at least one cloud provider (AWS/GCP/Azure)
  • Ability to solve complex problems using efficient algorithms.
  • Experience with using RDBMS (PostgreSQL preferred) for storing and queuing large sets of data
  • Preferred Qualifications:

  • Prior experience with AI/ML workflows and tools (PyTorch, ML Flow, AirFlow, ...)
  • Experience prototyping, experimenting, and testing with large datasets, and analytic data flows in production.
  • Strong fundamentals in Statistics, Machine Learning, and/or Deep Learning
The base salary range across the U.S. for this role is between $171,000-$257,000.00 In addition, this role may be eligible for an annual bonus, equity, and other discretionary bonuses. Synopsys offers comprehensive health, wellness, and financial benefits as part of a of a competitive total rewards package. The actual compensation offered will be based on a number of job-related factors, including location, skills, experience, and education. Your recruiter can share more specific details on the total rewards package upon request.

Job Category

Engineering

Country

United States

Job Subcategory

Machine Learning

Hire Type

Employee

Base Salary Range

$171,000-$257,000