[Apply in 3 Minutes] Senior MLOps Engineer ...

Daniel J Edelman Holdings
London
3 days ago
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Edelman is a voice synonymous with trust, reimagininga future where the currency of communication is action. Our culturethrives on three promises: boldness is possibility, empathy isprogress, and curiosity is momentum. At Edelman, we understanddiversity, equity, inclusion and belonging (DEIB) transform ourcolleagues, our company, our clients, and our communities. We arein relentless pursuit of an equitable and inspiring workplace thatis respectful of all, reflects and represents the world in which welive, and fosters trust, collaboration and belonging. We arecurrently seeking a Senior MLOps Engineer with 5+ years of relevantexperience to lead the design, deployment, and optimization ofscalable machine learning pipelines, focusing on Generative AI andlarge language models (LLMs). You will collaborate across teams tostreamline workflows, ensure system reliability, and integrate thelatest MLOps tools and practices. Why You'll Love Working with UsWe are at an exciting point in our journey, leveraging GenerativeAI (GenAI), Large Language Models (LLMs), and advancedRetrieval-Augmented Generation (RAG) techniques to buildintelligent, data-driven systems that deliver powerful PR insights.You'll also work on developing agentic workflows that autonomouslyorchestrate tasks, enabling scalable and dynamic solutions. Ourdata stack is modern and efficient, designed to process large-scaleinformation, automate analysis pipelines, and integrate seamlesslywith AI-driven workflows. This is an excellent opportunity to makea significant impact on projects that push the boundaries ofAI-powered insights and automation. If you're passionate aboutbuilding high-performance data systems, working with cutting-edgeAI frameworks, and solving complex challenges in a supportive,forward-thinking environment, you'll thrive here! Responsibilities:- Develop and maintain scalable MLOps pipelines for GenAIapplications. - Deploy and optimize GenAI models, including largelanguage models (LLMs) such as GPT and similar architectures, inproduction environments. - Develop solutions leveraging traditionalAI techniques such as decision trees, clustering, and regressionanalysis to complement advanced AI workflows - Implement and manageCI/CD pipelines for ML workflows, including testing, validation,and deployment. - Optimize cloud infrastructure for cost-efficienttraining and serving of GenAI and LLM models. - Define and enforcebest practices for model versioning, reproducibility, andgovernance. - Monitor and troubleshoot production systems tominimize downtime. - Utilize Databricks to build and manage dataand ML pipelines integrated with GenAI and LLM workflows. -Evaluate and integrate state-of-the-art MLOps tools and frameworksfor LLMs and other GenAI models. - Stay updated on advancements inGenAI technologies, including LLM fine-tuning and serving, andcontribute to strategic initiatives. Qualifications: - Bachelor'sor Master’s degree in Computer Science, Engineering, or a relatedfield. - 5+ years of experience in MLOps, DevOps, or related roles,focusing on ML and AI. - Proven expertise in deploying and managingGenerative AI models (e.g., GPT, Stable Diffusion, BERT). -Proficient in Python and ML libraries such as TensorFlow, PyTorch,or Hugging Face. - Skilled in cloud platforms (AWS, GCP, Azure) andmanaged AI/ML services. - Hands-on experience with Docker,Kubernetes, and container orchestration. - Expertise withDatabricks, including ML workflows and data pipeline management. -Familiarity with tools like MLflow, DVC, Prometheus, and Grafanafor versioning and monitoring. - Experience implementing securityand compliance standards for AI systems. - Strong problem-solvingand communication skills, with a collaborative mindset. -Experience with support and guidance of junior team members -Fluency in written and spoken English Preferred Qualifications: -Experience with large-scale distributed training and fine-tuning ofGenAI models. - Familiarity with prompt engineering and modeloptimization techniques. - Contributions to open-source projects inthe MLOps or GenAI space. - Familiarity with PySpark fordistributed data processing. £45,000 - £57,000 a year #LI-RT9 Weare dedicated to building a diverse, inclusive, and authenticworkplace, so if you’re excited about this role but your experiencedoesn’t perfectly align with every qualification, we encourage youto apply anyway. You may be just the right candidate for this orother roles. #J-18808-Ljbffr

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