Lead Machine Learning Infrastructure Engineer

  • Mountain View, CA
  • Posted 18 hours ago | Updated 8 hours ago

Overview

On Site
BASED ON EXPERIENCE
Contract - Independent
Contract - W2

Skills

Pivotal
Collaboration
Workflow
Regulatory Compliance
Mentorship
Continuous Improvement
FOCUS
Programming Languages
Python
Java
Microsoft Azure
TensorFlow
PyTorch
scikit-learn
Continuous Integration
Continuous Delivery
Terraform
Docker
Kubernetes
Big Data
Apache Spark
Apache Hadoop
Conflict Resolution
Problem Solving
Effective Communication
Computer Science
Data Science
Google Cloud Platform
Google Cloud
Cloud Computing
Amazon Web Services
Management
Open Source
Machine Learning (ML)
DevOps
Grafana

Job Details

About Convene Inc.

Convene, Inc. is a Tampa based, award-winning technology services organization with offices and resources throughout the US, Mexico, and India. We have successful, referenceable customers, competitive benefits, and high-growth opportunities.

Lead ML Infrastructure Engineer

Mountain View, CA/ Dallas, TX / Chicago, IL / NYC, NY

About the Role

We are seeking a highly skilled Lead ML Infrastructure Engineer to spearhead the development, deployment, and scaling of machine learning infrastructure. This pivotal role involves collaborating closely with data scientists, ML engineers, and operations teams to build robust, scalable, and efficient machine learning pipelines. The ideal candidate will be passionate about pushing the boundaries of ML infrastructure, and possess a deep understanding of cloud platforms, containerization, and big data technologies.


Responsibilities

  • Lead the design, implementation, and maintenance of scalable ML infrastructure solutions.
  • Collaborate with data science and ML teams to optimize model deployment workflows.
  • Develop and manage CI/CD pipelines to automate deployment processes.
  • Architect and implement containerized environments using Docker and Kubernetes.
  • Ensure infrastructure security, reliability, and compliance across cloud platforms.
  • Optimize resource utilization and cost-efficiency in cloud environments.
  • Drive best practices in Infrastructure as Code (IaC) with tools like Terraform.
  • Stay current with the latest advancements in ML frameworks, cloud services, and infrastructure tooling.
  • Mentor junior team members and promote a culture of continuous improvement.

Requirements

  • Proven experience as a Machine Learning Engineer or Infrastructure Engineer, with a focus on ML infrastructure.
  • Strong expertise in programming languages Python and Java.
  • Hands-on experience working with cloud platforms, with a strong preference for Google Cloud Platform; AWS and Azure experience are also valuable.
  • Familiarity with popular machine learning frameworks such as TensorFlow and PyTorch, along with libraries like scikit-learn.
  • Solid understanding of DevOps principles and experience with CI/CD pipelines.
  • Experience with Infrastructure as Code tools, especially Terraform.
  • Proficiency in containerization technologies including Docker and Kubernetes.
  • Knowledge of big data processing tools like Apache Spark and Hadoop is highly preferred.
  • Excellent problem-solving abilities combined with effective communication skills.
  • Ability to work collaboratively in a fast-paced, dynamic environment.

Preferred Qualifications:

  • Master's or Bachelor's or Master's in Computer Science, Data Science, or related field.
  • Certifications in cloud platforms (e.g., Google Cloud Platform Professional Cloud Architect, AWS Certified Solutions Architect).
  • Demonstrated experience leading a team or managing complex infrastructure projects.
  • Contributions to open-source ML or DevOps projects.
  • Experience with monitoring and logging tools such as Prometheus, Grafana, ELK stack.
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