Staff Data Scientist

Toast
Remote, USPosted 24 February 2026

Job Description

<p>Toast creates technology to help restaurants and local businesses succeed in a digital world, helping business owners operate, increase sales, engage customers, and keep employees happy.</p> <p><strong>A day in the life (Responsibilities)</strong></p> <p>As a Staff Data Scientist, you’ll lead the design and development of scalable ML systems for use cases such as menu recommendation, demand forecasting, offer targeting, and guest personalization. You will serve as a technical thought partner across teams, set best practices, and influence the roadmap for ML-driven products that support key business outcomes. Your work will directly shape strategic decisions and enhance customer experience at scale.</p> <ul> <li>Own the full machine learning lifecycle—from problem framing and data exploration to modeling, deployment, and monitoring—for mission-critical initiatives.</li> <li>Design and implement advanced ML and statistical models that improve product performance, operational efficiency, or customer insights.</li> <li>Collaborate with engineers, product managers, and business stakeholders to define project scope, success metrics, and integration strategy.</li> <li>Guide architectural decisions, set modeling standards, and champion best practices for experimentation, validation, and productionization.</li> <li>Mentor other data scientists and raise the technical bar through design reviews, feedback, and sharing domain expertise.</li> <li>Proactively identify areas where data science can create business value and lead cross-functional efforts to drive those opportunities forward.</li> </ul> <p><strong>What you'll need to thrive (Requirements)</strong></p> <ul> <li>10+ years of experience in data science with a proven track record of delivering production ML systems that drive measurable impact.</li> <li>Deep focus on mentorship, having leveled up more junior data scientist </li> <li>You’ve been a technical leader for core data science at Toast</li> <li>Deep knowledge of statistical modeling, machine learning (e.g., tree-based models, time series, deep learning), and model evaluation.</li> <li>Experience working with real-world product data at scale and translating ambiguous problems into well-scoped ML solutions.</li> <li>Experience with distributed data processing and training, real-time inference, and ML Ops frameworks</li> <li>Prior experience mentoring other data scientists or acting as a tech lead.</li> <li>Experience leading experimentation (e.g., A/B testing), causal inference, and real-time decision systems.</li> <li>Proficiency in Python and SQL, and experience with ML frameworks (e.g., scikit-learn, PyTorch, TensorFlow).</li> <li>Strong grasp of software engineering principles including modular design, version control, testing, and CI/CD.</li> <li>Hands-on experience with cloud platforms (preferably AWS), including tools like SageMaker, Athena, Glue, DynamoDB, and Bedrock.</li> <li>Excellent communication skills and the ability to influence both technical and non-technical stakeholders.</li> <li>Strong business acumen with the ability to align technical solutions with company goals.</li> </ul> <p><strong>Bonus</strong> <strong><em>ingredients*</em></strong><strong>:</strong></p> <ul> <li>An advanced degree in Computer Science, Statistics, or a related STEM field is preferred.</li> <li>Familiarity with MLOps tooling for monitoring, drift detection, retraining, and explainability.</li> <li>Experience fine-tuning LLMs and applying reinforcement learning from human feedback (RLHF) to improve model performance and alignment.</li> </ul> <p data-pm-slice="1 1 []"><strong>AI at Toast</strong></p> <p>At Toast, one of our company values is that we're hungry to build and learn. We believe learning new AI tools empowers us to build for our customers faster, more independently, and with higher quality. We provide these tools across all disciplines, from Engineering and Product to Sales and Support, and are inspired by how our Toast ... (truncated, view full listing at source)
Apply Now

Direct link to company career page

Share this job