Your work days are brighter here. Were obsessed with making hard work pay off, for our people, our customers, and the world around us. As a Fortune 500 company and a leading AI platform for managing people, money, and agents, were shaping the future of work so teams can reach their potential and focus on what matters most. The minute you join, youll feel it. Not just in the products we build, but in how we show up for each other. Our culture is rooted in integrity, empathy, and shared enthusiasm. Were in this together, tackling big challenges with bold ideas and genuine care. We look for curious minds and courageous collaborators who bring sundrenched optimism and drive. Whether you''''re building smarter solutions, supporting customers, or creating a space where everyone belongs, youll do meaningful work with Workmates whove got your back. In return, well give you the trust to take risks, the tools to grow, the skills to develop and the support of a company invested in you for the long haul. So, if you want to inspire a brighter work day for everyone, including yourself, youve found a match in Workday, and we hope to be a match for you too. About the Team This is a very exciting opening in the AI Platform team. We believe if you do what you love, youll love what you do. Theres a lot to love at Workday. We are part of a global, highgrowth technology company and our team has the opportunity to develop the next generation of Workdays groundbreaking collaborative products supporting a customer base of more than 31 million strong. Over 65% of the Fortune 500 are Workday customers. The AI Platform Information Retrieval team is at the heart of Workdays intelligence layer. We dont just find documents; we bridge the gap between human language, search, and enterprise data, including reasoning over knowledge. Our products utilize advanced semantic search to navigate Workdays massive data model, turning natural language questions into precise SQL and Python executions. Youll work in a highgrowth environment where LLMs meet structured enterprise systems, building the agents that make Natural Language as a UI a reality at scale. Workdays AI Platform organization is bringing AI first products to life at every step of the Workday product offering. Were looking for highly creative, resultsfocused, and deeply skilled machine learning engineers/scientists to work with us on a range of these challenges. Why Workday? The Data: Work with exclusive, highintegrity enterprise datasets that most researchers never see. The Scale: Your code will empower the worlds largest companies to make datadriven decisions. The Culture: A peoplefirst environment that balances highintensity innovation with sustainable worklife integration. About the Role We are looking for a highly skilled and pragmatic Machine Learning Engineer to work with us on the applied research, development, deployment, and optimization of advanced ML systems, Search, Information Retrieval (IR) and Semantic Parsing products. You will be a crucial driver in embedding cuttingedge AI agent technology, directly into Workday products, moving quickly from deep applied research to robust production features. You will use Workdays vast computing resources on rich, exclusive datasets to deliver value that transforms the way our customers make decisions and run their businesses. We will challenge you to apply your best creative thinking, analysis, problemsolving, and technical abilities to make an impact on thousands of enterprises and millions of users. Sound like your kind of challenge? In this role, you would: Advanced Information Retrieval: Build and refine hybrid search systems (Vector, Keyword, Agentic, and Multistep Reasoning) that navigate Workdays proprietary data objects with high precision and recall. Apply deep learning techniques to enhance recommender systems, ranking models, and information retrieval systems, driving relevance and personalization across core Workday applications. Semantic Parsing & Code Gen: Design and optimize LLM, model and agent based products for TexttoSQL and TexttoPython, focusing on schema grounding, fewshot prompting, and finetuning for structured output. Evaluation Platform Development: Establish rigorous and scalable methods for evaluating Information Retrieval products, AI agents, LLMs, and other ML model accuracy and performance, including developing metrics for quality, safety, latency, and user experience. AI Agent Engineering: Design, build, and deploy sophisticated AI agents (e.g. orchestration agents, planning and execution nodes, tool selection agents, autonomous workflow agents, conversational interface agents) that interact seamlessly with enterprise data. Work on continuous learning for the agents. Prompt Engineering & Optimization: Develop, test, and maintain advanced prompt engineering and prompt optimization strategies and guardrails to ensure LLMpowered features are accurate, safe, and reliable at scale. Production and MLOps: Own the entire ML lifecycle, ensuring highquality, scalable deployment, monitoring, and continuous improvement of all models and agents in production environments. Own exploration, design and execution of advanced ML models, algorithms and frameworks that deliver value to our users. Collaborate with other ML engineers, software engineers, product managers, and across teams to deliver your products through Workday enduser applications. Be given autonomy and ownership over your work, but with the support of the entire organization. Keep abreast of the latest advancements in ML/AI, Information Retrieval, Agentic AI, Generative AI, NLP research, techniques and tools. Have extraordinary opportunities for career growth and learning in a fastgrowing, forwardlooking company. About You Basic Qualifications 3+ years of professional experience as a Machine Learning Engineer, focusing on researching, developing, building, training, and deploying deep learning, Information Retrieval, NLP solutions, and generative/agentic AI systems into production. Proven, handson experience building and launching Generative AI products powered by long context LLMs, specifically applied to structured data tasks e.g. TexttoSQL. Expertise in prompt engineering, prompt optimization, and developing robust strategies for integrating LLMs into userfacing products. Experience researching, developing and deploying productiongrade recommender systems, information retrieval systems and/or ranking models, e.g. vector databases, embedding models, and RAG (RetrievalAugmented Generation) architectures. Demonstrated experience in building and evaluating AI agents, including familiarity with agent frameworks, RAG architectures, and agent evaluation frameworks. Expertise in language model finetuning techniques (e.g., parameterefficient finetuning, domain adaptation) and building models with mid and large model architectures (e.g., BERT family, as well as LLMs). Proven theoretical and practical understanding of statistical analysis and machine learning algorithms, natural language processing, especially for supervised, unsupervised and selfsupervised methods. Engineering Excellence: Expertlevel Python skills, including topics relating to multithreading, API design, matrix processing, runtime memory design, and asynchronous call patterns. Expected to have experience with modern ML frameworks (PyTorch, HuggingFace) and orchestration libraries (LangGraph, Haystack, or LlamaIndex or equivalent). Systems Design: Strong understanding of how to build scalable Agentintheloop systems, including error handling and state management. Take ownership for finding creative algorithmic and system design solutions that move projects, workstreams and products forward. Have determination to turn ideas into reality and improve user experience. Solid understanding and experience with MLOps, scalability, and cloud services (e.g., AWS, GCP, Azure), containerization technologies (e.g. Docker), Kubernetes, and largescale ML systems. Other Qualifications A relevant advanced degree (Masters or Ph.D.) in Computer Science, Machine Learning, AI, Computer/Software engineering or a related quantitative programming field. Experience with embeddings (text, multimodal, and graph), vector databases, search indices, informational retrieval techniques, and largescale data ingestion pipelines. Data Mastery: Proficiency in SQL and experience with largescale data processing (Spark, Pandas). Schema Expertise: Familiarity with Knowledge Graphs or complex relational data modeling is a huge plus. Experience with advanced techniques such as reinforcement learning, imitation learning, graph neural networks, and multimodal models. Evaluation Obsession: You don''''t trust a model until you''''ve built a statistically sound way to break it. Experience with A/B testing and Golden Dataset curation. Standout leader and colleague, strong communication skills, with experience working across functions and teams, and working on ambiguous problems. Bonus points for machine learning related research publications. Resilience to obstacles, and the ability to lead the solving of problems independently. Workday Pay Transparency Statement The annualized base salary ranges for the primary location and any additional locations are listed below. Workday pay ranges vary based on work location. As a part of the total compensation package, this role may be eligible for the Workday Bonus Plan or a rolespecific commission/bonus, as well as annual refresh stock grants. Recruiters can share more detail during the hiring process. Each candidates compensation offer will be based on multiple factors including, but not limited to, geography, experience, skills, job duties, and business need, among other things. For more information regarding Workdays comprehensive benefits, please click here. Primary Location: CAN.ON.Toronto Secondary CAN Base Pay Range: $128,000 $192,000 CAD Additional CAN Location(s) Base Pay Range: $128,000 $192,000 CAD Our Approach to Flexible Work With Flex Work, were combining the best of both worlds: inperson time and remote. Our approach enables our teams to deepen connections, maintain a strong community, and do their best work. We know that flexibility can take shape in many ways, so rather than a number of required days inoffice each week, we simply spend at least half (50%) of our time each quarter in the office or in the field with our customers, prospects, and partners (depending on role). This means you''''ll have the freedom to create a flexible schedule that caters to your business, team, and personal needs, while being intentional to make the most of time spent together. Those in our remote home office roles also have the opportunity to come together in our offices for important moments that matter. Pursuant to applicable Fair Chance law, Workday will consider for employment qualified applicants with arrest and conviction records. Workday is an Equal Opportunity Employer including individuals with disabilities and protected veterans. At Workday, we are committed to providing an accessible and inclusive hiring experience where all candidates can fully demonstrate their skills. If you require assistance or an accommodation at any point, please email [email protected]. Are you being referred to one of our roles? If so, ask your connection at Workday about our Employee Referral process! At Workday, we value our candidates privacy and data security. Workday will never ask candidates to apply to jobs through websites that are not Workday Careers. Please be aware of sites that may ask for you to input your data in connection with a job posting that appears to be from Workday but is not. In addition, Workday will never ask candidates to pay a recruiting fee, or pay for consulting or coaching services, in order to apply for a job at Workday. #J-18808-Ljbffr
Job Title
Machine Learning Engineer