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Dynamics 365 is Microsoft’s suite of enterprise software that powers many of the largest businesses in the world. The Dynamics 365 Contact Center team provides an AI‑first platform that enables customers to operate intelligent and scalable contact centers. We are building the next generation of our applications running on Azure that pull together Dynamics 365, Office 365 and a number of other Microsoft cloud services to deliver high value, complete, and predictive application scenarios across all devices and form factors. D365 Contact Center is a robust application that extends the power of CRM’s like Dynamics 365 Customer Service to enable organizations to instantly connect and engage with their customers via channels like Live Chat, Voice, and SMS. As a Research Engineer I in the Microsoft Dynamics Customer Experience Applications team, you will contribute to the design and implementation of intelligent solutions within Dynamics 365 by applying both software engineering and AI skills. You’ll work closely with senior engineers, business stakeholders, and partners to help build scalable, production-ready systems that leverage AI to address real-world business challenges. In this role, you are expected to demonstrate strong software engineering fundamentals -including coding, testing, and deployment - while integrating and optimizing AI models and frameworks. You will contribute to delivering solutions that are reliable, impactful, and innovative, with mentorship and guidance from more senior team members. We innovate quickly and collaborate closely with our partners and customers in a very agile environment. If the opportunity to collaborate with a diverse engineering team, on enabling end-to-end business scenarios using cutting-edge AI first technologies and to solve problems for large scale 24x7 business SaaS applications excite you, we would love to talk to you!
Job Responsibility:
Develop highly usable, scalable application capabilities, integrating AI models and enhancing existing features to meet evolving customer needs
Build and debug production-grade code in distributed systems
Translate business requirements into AI solutions, collaborating with data scientists, product managers, and engineering teams to ensure alignment and impact
Optimize AI model performance and reliability in production environments, including retraining, evaluation, and continuous monitoring
Own deployment, quality and operation of AI systems, including automated testing, CI/CD pipelines, deployment, and monitoring with strong MLOps and DevOps practices
Troubleshoot live site issues as part of both product development and live site support rotations, ensuring rapid resolution and learning
Ensure high reliability and performance of applications and services through intelligent monitoring, alerting, and proactive failover strategies
Requirements:
Bachelor’s degree in computer science, Computer Engineering, or related technical field AND 2+ years technical engineering experience with coding in languages including, but not limited to, Python, C#, Java, Rust, or C++
OR equivalent experience
1+ years of experience with GenAI, LLMs, or agentic systems
Experience with customers success, zero trust security and compliance
Experience with proficient coding, debugging, and problem-solving skills
Ability to meet Microsoft, customer and/or government security screening requirements
This position will be required to pass the Microsoft Cloud Background Check upon hire/transfer and every two years thereafter
Nice to have:
Advanced degree (MS or PhD) in Computer Science, Machine Learning, or a related field
AI & Domain Expertise: Deep expertise in one or more AI domains, with a proven track record of deploying and scaling AI models in cloud environments
MLOps & LLMOps: Strong experience with MLOps workflows (CI/CD, monitoring, retraining pipelines) and familiarity with modern LLMOps frameworks
Cloud & Infrastructure: Skilled in building and operating infrastructure using Azure, AWS, or Google Cloud, and deploying containerized models with Docker, Kubernetes, or similar tools
Engineering Excellence: Passion for building high-quality, reliable, and maintainable software with strong coding and debugging practices
Collaboration & Communication: Excellent verbal, written, and cross-team communication skills
a collaborative team player across time zones and diverse stakeholder groups