ML Platform Engineer
Location: San Pedro Garza Garcia-Nuevo Leon-Mexico
Time Type: Full time
Job Description
How you will do it
ML Platform Engineering & MLOps (Azure-Focused)
Build and manage end-to-end ML/LLM pipelines on Azure ML using Azure DevOps for CI/CD, testing, and release automation.
Operationalize LLMs and generative AI solutions (e.g., GPT, LLaMA, Claude) with a focus on automation, security, and scalability.
Develop and manage infrastructure as code using Terraform, including provisioning compute clusters (e.g., Azure Kubernetes Service, Azure Machine Learning compute), storage, and networking.
Implement robust model lifecycle management (versioning, monitoring, drift detection) with Azure-native MLOps components.
Infrastructure & Cloud Architecture
Design highly available and performant serving environments for LLM inference using Azure Kubernetes Service (AKS) and Azure Functions or App Services.
Build and manage RAG pipelines using vector databases (e.g., Azure Cognitive Search, Redis, FAISS) and orchestrate with tools like LangChain or Semantic Kernel.
Ensure security, logging, role-based access control (RBAC), and audit trails are implemented consistently across environments.
Automation & CI/CD Pipelines
Build reusable Azure DevOps pipelines for deploying ML assets (data pre-processing, model training, evaluation, and inference services).
Use Terraform to automate provisioning of Azure resources, ensuring consistent and compliant environments for data science and engineering teams.
Integrate automated testing, linting, monitoring, and rollback mechanisms into the ML deployment pipeline.
Collaboration & Enablement
Work closely with Data Scientists, Cloud Engineers, and Product Teams to deliver production-ready AI features.
Contribute to solution architecture for real-time and batch AI use cases, including conversational AI, enterprise search, and summarization tools powered by LLMs.
Provide technical guidance on cost optimization, scalability patterns, and high-availability ML deployments.
Qualifications & Skills
Required Experience
Bachelor’s or Master’s in Computer Science, Engineering, or a related field.
5+ years of experience in ML engineering, MLOps, or platform engineering roles.
Strong experience deploying machine learning models on Azure using Azure ML and Azure DevOps.
Proven experience managing infrastructure as code with Terraform in production environments.
Technical Proficiency
Proficiency in Python (PyTorch, Transformers, LangChain) and Terraform, with scripting experience in Bash or PowerShell.
Experience with Docker and Kubernetes, especially within Azure (AKS).
Familiarity with CI/CD principles, model registry, and ML artifact management using Azure ML and Azure DevOps Pipelines.
Working knowledge of vector databases, caching strategies, and scalable inference architectures.
Soft Skills & Mindset
Systems thinker who can design, implement, and improve robust, automated ML systems.
Excellent communication and documentation skills—capable of bridging platform and data science teams.
Strong problem-solving mindset with a focus on delivery, reliability, and business impact.
Preferred Qualifications
Experience with LLMOps, prompt orchestration frameworks (LangChain, Semantic Kernel), and open-weight model deployment.
Exposure to smart buildings, IoT, or edge-AI deployments.
Understanding of governance, privacy, and compliance concerns in enterprise GenAI use cases.
Certification in Azure (e.g., Azure Solutions Architect, Azure AI Engineer, Terraform Associate) is a plus.
There are more than 50,000 engineering jobs:
Subscribe to membership and unlock all jobs
Engineering Jobs
60,000+ jobs from 4,500+ well-funded companies
Updated Daily
New jobs are added every day as companies post them
Refined Search
Use filters like skill, location, etc to narrow results
Become a member
🥳🥳🥳 452 happy customers and counting...
Overall, over 80% of customers chose to renew their subscriptions after the initial sign-up.
To try it out
For active job seekers
For those who are passive looking
Cancel anytime
Frequently Asked Questions
- We prioritize job seekers as our customers, unlike bigger job sites, by charging a small fee to provide them with curated access to the best companies and up-to-date jobs. This focus allows us to deliver a more personalized and effective job search experience.
- We've got over 200,000 jobs from 15,000+ vetted companies. No fake or sleazy jobs here!
- We aggregate jobs from 15,000+ companies' career pages, so you can be sure that you're getting the most up-to-date and relevant jobs.
- We're the only job board *for* software engineers, *by* software engineers… in case you needed a reminder! We add thousands of new jobs daily and offer powerful search filters just for you. 🛠️
- Every single hour! We add 2,000-3,000 new jobs daily, so you'll always have fresh opportunities. 🚀
- Typically, job searches take 3-6 months. EchoJobs helps you spend more time applying and less time hunting. 🎯
- Check daily! We're always updating with new jobs. Set up job alerts for even quicker access. 📅
What Fellow Engineers Say
