Department Harris School Bike Shop About the Department The Bike Shop seeks to solve society’s most pressing challenges by designing and scaling advanced algorithms—particularly AI—that enhance human capacity, not simply automate tasks. The center develops new behaviorally-informed AI technologies through foundational research, builds the tools and interventions that drive measurable social impact, and trains the next generation of scholars at the intersection of AI, behavioral science, and public policy. By translating advances into scalable, actionable solutions, the center empowers governments and institutions to achieve outcomes traditional approaches cannot. Job Summary The Bike Shop is hiring a Machine Learning Researcher. The Bike Shop is a CS and Economics research lab focused on building “bicycles for the mind”, algorithms that enhance (rather than automate) human capabilities. The Machine Learning Researcher serves as a computational scientist and technical lead, supporting advanced applications of artificial intelligence and machine learning in a research lab environment. The role contributes to the technical vision and architecture for ML projects and software solutions, spanning data preparation, acquisition, ingestion, integration, model development, training, and evaluation across multiple modalities. This position engages collaboratively with faculty, PhD students, and lab researchers in computer science, policy, economics, and related disciplines to design, implement, and analyze state-of-the-art machine learning and research computing approaches. The Machine Learning Researcher represents the lab in the broader research community through publications, presentations, and technical collaborations. This position is not eligible for employer-sponsored employment authorization. This gift funded role is expected to be one year in duration but may be renewed annually. Responsibilities Architect complex machine learning and scientific computing research projects, including designing scalable front-end and back-end software structures that integrate and accelerate scientific workflows for multi-institutional collaborations. Develop, test, debug, and maintain new and existing application software, user interfaces, and back-end services supporting data acquisition, ingestion, and integration from heterogeneous sources (including structured/unstructured datasets and metadata extraction). Provide technical guidance in project requirements, documentation, software solution design, architecture, and implementation across research-focused computational projects. Design, develop, train, and rigorously evaluate machine learning and deep learning models (CNNs, DNNs, transformers, graph neural networks, diffusion models, multimodal models, reinforcement learning) as well as software solutions for scientific data integration. Serve as technical lead, mentoring PhD students and lab researchers on engineering standards, reproducible research practices, advanced ML techniques, and robust software development methodologies. Collaborate with faculty to identify, scope, and implement computational and ML-driven solutions aligned with cross-disciplinary research priorities, including strategies for collection, organization, analysis, and display of scientific or geographic data. Build robust end-to-end data processing pipelines, including data cleaning, feature engineering, and management for multimodal scientific datasets. Integrate cloud platforms, high-performance computing resources, and collaborate with infrastructure teams employing MLOps tools for scalable experimentation and deployment. Document and communicate research results via manuscripts, technical reports, conference presentations, and internal or external stakeholder briefings. Participate in regular team and project meetings, supporting planning, risk management, milestone coordination, and contributing technical expertise to project feasibility reviews. Apply ML and software engineering best practices including version control, testing, technical documentation, and reproducible computation. Evaluates new technologies and software products to determine feasibility and desirability of incorporating their capabilities within research projects. Works independently to define and document project requirements and provides overall technical guidance in design, architecture and implementation of software solutions. Perform other related work as needed. Minimum Qualifications Education: Minimum requirements include a college or university degree in related field. Work Experience: Minimum requirements include knowledge and skills developed through 5-7 years of work experience in a related job discipline. Certifications: --- Preferred Qualifications Education: Bachelor’s degree in computer science, engineering, mathematics, statistics, or a related technical field. Master’s degree or PhD in computer science, electrical engineering, data science, or a related d
£89,355 - £124,779
year
FULL TIME
senior
4/13/2026
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