Own the Engineering. Make the Scheduling Magic happen. At Doodle, we're building products that help our users protect their most valuable asset: their time. We are looking for a hands-on Machine Learning Engineer who can own and deliver an entire AI use case from end to end. This isn't just about a single function; you'll be a true full-stack engineer who designs, builds, and deploys intelligent systems that deliver real, measurable customer value. Your work will span from architecting our core analytics infrastructure to developing and deploying cutting-edge models. You'll build robust data pipelines, engineer features, curate high-quality datasets for training, and architect AI systems that can handle complex, multi-step tasks and adapt to a user’s context to make intelligent decisions. What You’ll Do Architect and Implement AI Systems: Lead the design and implementation of intelligent systems that go beyond a single model. You'll focus on delivering production-ready features, not just impressive demos, by selecting the right tools for the job—even if that means going beyond Large Language Models. Data Preparation and Curation: Prepare and curate high-quality datasets for modeling, keeping data quality at the center of all experimentation and delivery. You'll also design and build our feature store to ensure data and features are consistently and reliably available for both training and inference. Build Robust Data and ML Pipelines: Design and maintain end-to-end data and machine learning pipelines, from data ingestion to model deployment and monitoring. This includes building our analytics infrastructure with reusable dbt models and designing scalable pipelines using Airflow. Develop and Deploy Models: Take a hands-on role in developing and training models, ensuring they are performant, reliable, and reproducible. You will design, explore, and prototype solutions using various neural network architectures, including and beyond LLMs. Implement Advanced Retrieval Systems: Explore and implement solutions like Retrieval-Augmented Generation (RAG) or Graph RAG to improve the quality of information retrieval and reasoning in LLM workflows. This includes graph construction, entity linking, and hybrid scoring strategies. Focus on On-Device Intelligence: Quantize large models into smaller, more efficient models to enable edge intelligence and on-device processing where appropriate. Collaborate and Strategize: Work cross-functionally to define tracking schemas and event-level data that power both analytics and AI/ML initiatives. You'll also contribute to our AI strategy and roadmap, helping shape how we scale models responsibly across the platform. Our Ideal Candidate We are looking for a practical AI builder who thinks in terms of customer value. Your qualifications should include: End-to-End Ownership: You're a full-stack engineer, comfortable with the entire lifecycle of an AI component, from planning and modeling to testing and continuous improvement. You are capable of delivering an entire AI use case from inception to production. Modeling Expertise: You have experience designing, evaluating, and prototyping a variety of models. You are proficient in Python and have expertise in ML frameworks like SciKit-Learn, TensorFlow, PyTorch, and the Hugging Face ecosystem. MLOps and Data Proficiency: You have strong experience in MLOps foundations and tools, including MLflow and ZenML. You also have proven experience in dbt modeling and structuring data in both data warehouses and data lakes. Pipeline and Data Skills: You have hands-on experience building and scheduling data pipelines in Airflow and experience defining tracking schemas and event-level data for reliable analytics. You are familiar with modern data stacks (e.g., Kafka, Spark, or cloud data warehouses like BigQuery, Redshift, or Snowflake). Problem-Solving & Evaluation: You understand model behavior and output evaluation. You are capable of developing evaluation frameworks for testing model output quality, reliability, and alignment with user goals (e.g., hallucination detection, prompt regression, safety scoring). You are also familiar with RAG, Graph-based retrieval, prompt design, and multi-hop reasoning. Practical Mindset: You are committed to building things that are reliable, explainable, and usable by others. Why You’ll Love It Here Compensation & Financial Well-being Competitive Pay – We pay fair for top talent. Pension Plan – Set yourself up for the future. Flexible & Hybrid Culture Hybrid Work. 30 Vacation Days – Take the time you need to rest and recharge. Work-from-Anywhere – Go remote for up to 3 months in the EU and 1 month outside the EU. Learning & Career Growth Training/Conference Days – Invest in yourself. Learning Stipend – We cover courses, certifications, and more. Well-being & Home Office Setup Well-being & Home Office Budget – Use it for fitness, therapy, or your dream desk setup. Headspace Membership – Access guided meditation & mindfulness tools. Company Lunches & Team Events – Stay connected, even remotely. Family & Inclusive Benefits Parental Leave & Support – Paid leave for all caregivers. Extra Perks Doodle Premium – Free for you, your family, and friends. Top-Notch Equipment – MacBook, keyboard, trackpad—work at your best. Hiring Journey Initial Application Review Personality & Strengths Assessment (via BRYQ) Home Assignment Technical Interview Meet the Team/Hiring Manager Culture Fit Conversation Final Offer & Next Steps At Doodle, we’re committed to providing an environment of mutual trust and respect, where equal employment opportunities (EEO) are available to all applicants and teammates without regard to age, race, color, disability, religion, gender, and sexual orientation. Diversity and inclusion are of utmost importance to us. We’re committed to building a team that represents a variety of backgrounds, perspectives, and skills. The more inclusive we are, the better our work and our products will be. We want to hear from you, so please don’t hesitate to apply!We look forward to receiving your full application. IMPORTANT NOTICE: Please note that we can only consider your application if you are based and have the right to work in the specified countries. At this time, we are unable to sponsor visa for this position or support with relocation.