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Senior MLOps Engineer

XR is a global technology platform powering the creative economy. Its unified platform moves creative and productions forward, simplifying the fragmentation and delivering global insights that drive increased business value. XR operates in 130 countries and 45 languages, serving the top global advertisers and enabling $150 billion in video ad spend around the world. More than half a billion creative brand assets are managed in XR’s enterprise platform. 

Above all, we are a supportive and collaborative culture dedicated to DEI. We are caring, dedicated, positive, genuine, trustworthy, experienced, passionate and fun people with loyalty to our customers and our fellow teammates. It is our belief that the better we work together to help our clients achieve their goals, the more successful XR will be.  

The Opportunity 

The Senior MLOps Engineer plays a critical role in ensuring the seamless integration, deployment, monitoring, and scaling of machine learning models into production. The role blends the expertise of DevOps and machine learning to bridge the gap between data science and operational systems, ensuring that ML models perform reliably and at scale in real-world environments. As the Senior MLOps Engineer, you'll drive best practices for model lifecycle management and create the infrastructure to automate and streamline workflows. 

Job Responsibilities 

  • Design and architect the AI/ML models platform to support scalable, efficient, and high-performance machine learning workflows. 
  • Build and manage infrastructure that supports the deployment of machine learning models. This includes leveraging cloud services (AWS), CDK, and containerization tools like Docker. 
  • Architecting and developing MLOps systems with tools such as AWS Sagemaker, MLFlow, Stepfunctions, Lambdas. 
  • Lead the design and implementation of CI/CD pipelines to automate model deployment and rollback processes, ensuring that models can be delivered seamlessly to production aiming to reduce manual intervention and increasing system reliability. 
  • Ensure scalability and efficiency of the models to handle real-time predictions and batch processing. 
  • Set up monitoring and logging solutions for tracking the performance of models in production (DataDog, Cloudwatch).  
  • Define and promote best practices in MLOps. 
  • Provide technical leadership and mentorship to MLOps engineers on technologies, and standard processes. 
  • Partner with the global engineering team to drive cross-functional alignment and ensure seamless integration of AI ML models into wider data ecosystem. 
  • Work closely with Data Scientists, DevOps teams, and Product Managers to ensure that machine learning models are integrated into business workflows and deployed effectively. 
  • Stay up-to-date with the latest trends and technologies in MLOps and machine learning deployment and identify opportunities to incorporate new tools or practices to improve efficiency. 
  • MS/BS in Computer Science or related background preferred; 
  • 5+ years of experience in MLOps or related roles, with at least 2+ years in a senior engineering capacity;
  • Proven experience leading and mentoring teams, managing multiple stakeholders, and delivering projects on time; 
  • Proficiency in Python is essential; 
  • Experience with shell scripting, system diagnostic and automation tooling; 
  • Proficiency and professional experience of ML and computer vision; 
  • Have built and deployed ML, computer vision or GenAI solutions (PyTorch, TensorFlow); 
  • Experience working with databases to manage the flow of data through the machine learning lifecycle; 
  • Experience with cloud-native services for machine learning, such as AWS SageMaker, MLFlow, Stepfunctions, Lambdas is essential; 
  • Deep expertise in Docker for containerization of machine learning models and tools is essential; 
  • Experience delivering environment using infrastructure-as-code techniques (AWS CDK, CloudFormation); 
  • Experience setting up and managing continuous CI/CD pipelines for ML workflows using tools like Jenkins, GitLab; 
  • Experience in fast-paced, innovative, Agile SDLC; 
  • Strong problem solving, organization and analytical skills; 
  • Experience with Databricks is beneficial; 
  • Experience in building and managing training, evaluation and testing datasets in beneficial; 
  • Knowledge of security best practices in the context of machine learning. 

Average salary estimate

$140000 / YEARLY (est.)
min
max
$120000K
$160000K

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What You Should Know About Senior MLOps Engineer, Extreme Reach

Are you ready to take your expertise to the next level? Join XR as a Senior MLOps Engineer and play a pivotal role in revolutionizing the creative economy with cutting-edge technology. At XR, we empower creativity across 130 countries and 45 languages, serving major global advertisers and driving a whopping $150 billion in video ad spending. Our platform manages over half a billion creative brand assets, making us a leader in the industry. As the Senior MLOps Engineer, you will blend your DevOps and machine learning skills to ensure that our models perform reliably and efficiently in real-world environments. You'll design and architect a scalable AI/ML models platform, build and manage deployment infrastructures using cloud services like AWS, and leverage advanced tools such as Docker and MLFlow. With your leadership skills, you’ll mentor junior engineers, drive best practices, and collaborate across teams to ensure seamless integration of ML models into business workflows. If you’re passionate about using technology to streamline processes, drive efficiency, and innovate solutions that push the boundaries of the machine learning landscape, then we would love to have you on our team at XR. Let's transform the future together!

Frequently Asked Questions (FAQs) for Senior MLOps Engineer Role at Extreme Reach
What are the key responsibilities of a Senior MLOps Engineer at XR?

The Senior MLOps Engineer at XR is responsible for designing and architecting scalable AI/ML models, managing deployment infrastructures, and developing MLOps systems with tools like AWS Sagemaker and Docker. They also lead the design of CI/CD pipelines, set up monitoring solutions, and provide technical mentorship to MLOps engineers, ensuring seamless integration of machine learning models into the business's operational workflows.

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What qualifications are needed to apply for the Senior MLOps Engineer position at XR?

To qualify for the Senior MLOps Engineer position at XR, candidates should have an MS/BS in Computer Science or a related field, with at least 5 years of experience in MLOps or related roles, including 2 years in a senior capacity. Proficiency in Python and experience with cloud services like AWS and containerization tools like Docker are essential, along with a strong foundation in machine learning and computer vision.

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How does XR support professional growth for Senior MLOps Engineers?

At XR, we believe in fostering a supportive and collaborative culture. The Senior MLOps Engineer role includes opportunities for technical leadership and mentoring, allowing you to guide junior engineers while also growing your own skills. We prioritize staying up-to-date with the latest trends and technologies, ensuring you have access to continuous learning and professional development resources.

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What tools and technologies will I work with as a Senior MLOps Engineer at XR?

As a Senior MLOps Engineer at XR, you will work with a variety of cutting-edge tools and technologies, including AWS Sagemaker, MLFlow, Stepfunctions, and advanced containerization techniques using Docker. Additionally, you will engage with CI/CD pipelines using Jenkins or GitLab, and setup monitoring solutions with platforms like DataDog and CloudWatch to ensure the efficiency and reliability of machine learning models in production.

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What is the company culture like at XR for a Senior MLOps Engineer?

XR offers a vibrant and inclusive company culture that values DEI, collaboration, and creativity. As a Senior MLOps Engineer, you’ll work in a positive environment alongside passionate and experienced teammates who are dedicated to supporting each other and our customers. Our culture fosters loyalty, trust, and fun while striving for innovation and excellence in the creative economy.

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Common Interview Questions for Senior MLOps Engineer
What experience do you have with deploying machine learning models in production?

When answering about your experience deploying machine learning models in production, highlight specific projects where you took responsibility for managing deployment infrastructures. Discuss tools you used, such as AWS Sagemaker or Docker, and reference how you integrated monitoring solutions to ensure model performance.

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Can you explain your approach to MLOps and how it improves model performance?

In your response about MLOps, emphasize the lifecycle management of models, including deployment, monitoring, scaling, and feedback loops. Describe how a well-structured MLOps process can identify performance issues quickly and streamline workflow, leading to more reliable, real-time predictions.

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What CI/CD pipeline technologies have you used, and how did they enhance your workflow?

Detail your experience with CI/CD pipeline technologies such as Jenkins or GitLab. Highlight how you implemented these tools to automate deployment processes, reduce manual interventions, and ensure timely integration of machine learning models into production environments while maintaining high reliability.

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How do you keep up with the latest trends in MLOps and machine learning?

When discussing how you stay updated, mention attending industry conferences, participating in online forums, and following key influencers in the machine learning field. Highlight any recent trends or technologies you have adopted into your work processes to show your commitment to continuous learning.

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Describe a challenge you faced in your previous MLOps role and how you overcame it.

Pick a specific challenge, such as integrating a new ML model into an existing system. Explain the steps you took to address the issue, such as collaborating with other teams, revising deployment strategies, or improving monitoring protocols, and reflect on the successful outcome of your efforts.

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What tools have you used for monitoring and logging in machine learning applications?

Share your hands-on experience with monitoring tools like DataDog or CloudWatch. Discuss how using these tools helped you track model performance, diagnose issues, and optimize system reliability, ensuring robust performance in production environments.

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How do you manage data for machine learning workflows?

Outline your experience managing data throughout the machine learning lifecycle, including data collection, preprocessing, and feature engineering. Discuss the importance of maintaining high-quality datasets and how you've implemented data management processes in past projects.

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What methodologies do you employ for testing machine learning models?

Discuss methodologies such as cross-validation, A/B testing, or performance metrics that are crucial for assessing the accuracy and reliability of machine learning models. Emphasize how these methodologies can identify potential issues before deployment.

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How do you ensure security best practices while deploying machine learning models?

When discussing security, address the importance of securing sensitive data, implementing role-based access control, and following best practices for infrastructure security. Share examples of how you've incorporated these principles into your MLOps practices.

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How do you approach collaboration with data scientists and product managers?

Explain your collaborative approach to working with cross-functional teams, emphasizing open communication and aligning goals. Share examples of how you have facilitated collaboration to ensure the effective deployment and integration of machine learning models into business workflows.

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Extreme Reach is a company that provides cross-media video advertising solutions across TV, web and mobile channels through it's enterprise technology platform. Headquartered in Needham, Massachusetts, Extreme Reach maintains multiple locations th...

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Full-time, remote
DATE POSTED
March 21, 2025

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