CodePath is reprogramming higher education to create the first generation of AI-native engineers, CTOs, and founders.
We deliver industry-vetted courses and career support centered on the needs of first-generation and low-income students. Our students train with senior engineers, intern at top companies, and rise together to become the tech leaders of tomorrow.
With 30,000 students and alumni from 700 colleges now working at 2,000 companies, we are reshaping the tech workforce and the industries of the future.
About the Role
Location: Remote, United States
Role Type: Full-Time
Reporting to: Lead Data Scientist
Compensation: $90,000 to $130,000 per year
CodePath is entering a pivotal stage of growth, building the data, analytics, and AI infrastructure that powers our learning platform and supports tens of thousands of students nationwide. We are looking for a highly capable and mission-driven Data Scientist to join our growing Measurement, Evaluation, and Learning (MEL) team and help shape this future.
As a Data Scientist at CodePath, you will work across the full analytics and modeling lifecycle, supporting data pipelines, conducting exploratory analysis, building statistical and machine learning models, and developing the insights that guide organizational strategy. You will collaborate closely with data engineering and cross-functional partners to ensure our data systems, analyses, and models enable student success, operational efficiency, and accurate impact measurement.
This role is ideal for someone who enjoys solving problems in a fast-paced environment, applies clear analytical thinking, and wants to grow by supporting high-impact projects that advance CodePath’s data and AI work.
Key Activities
Impact Measurement: Define, track, and analyze organizational impact, student outcomes, and program performance with MEL leadership
Data Modeling & ML: Build and refine statistical and machine learning models for outcomes analyses, forecasting, and decision support
Exploratory Analysis: Conduct deep exploratory analyses to surface trends, anomalies, and insights across large datasets
Dashboards & BI Tools: Develop and maintain dashboards, reports, and visualizations (Tableau, streamlit, or similar) that translate complex results into clear, actionable insights
Feature Engineering & Data Preparation: Partner with data engineering to develop reliable datasets and features that power modeling and analytics workflows
Pipeline Support: Support and validate data pipelines to ensure analytical datasets remain accurate, consistent, and well-structured
Cross-Functional Work: Collaborate with program, product, and operations teams to understand their data needs and translate them into well-defined analytical questions
Documentation: Document analytical processes, models, and methodologies to ensure clarity, scaling, and reproducibility
Continuous Improvement: Identify opportunities to enhance data quality, improve modeling processes, and expand MEL’s modeling and reporting capabilities
Key Success Metrics
High-quality Analytical Assets: Produces dashboards, Quarto reports, and reusable modules that meet MEL standards, with 90%+ requiring no major revision
Stronger Impact Measurement: Improves outcomes reporting and forecasting through validated datasets, models, and analyses
Improved Data Quality & Reliability: Identifies and resolves data issues across pipelines and transformations in partnership with Data Engineering
Meaningful Modeling Contributions: Builds statistical or ML models that improve decision-making through greater accuracy, clarity, or adoption
Qualifications
3+ years of professional experience in data science, machine learning, analytics, or a related field
Strong foundation in statistics, probability, and machine learning algorithms
Proficiency with Python (pandas/polars, numpy, scikit-learn, TensorFlow or PyTorch)
Strong SQL skills and experience working with large-scale datasets
Experience with cloud platforms (GCP, AWS, or Azure) and deploying or maintaining data-driven applications
Familiarity with data modeling concepts, data engineering workflows, and data pipelines
Strong communicator able to present complex analyses clearly and accessibly
Preferred Qualifications
Experience with impact evaluation, education data, or social science research methods
Exposure to dbt, Airbyte, FiveTran, or similar tooling
Experience with experimental or quasi-experimental methods, causal inference, or A/B testing
Ability to turn ambiguous problems into structured analytical approaches
Proactive, collaborative mindset with enthusiasm for continuous learning
Compensation
CodePath has standardized salaries based on the position’s level, no matter where you live. For this role, we’re hiring for an Individual Contributor level position at an annual salary of $90,000 to $130,000. Salary is determined based on your relevant experience and skills as evaluated through our interview process.
This is a 100% remote position; you can work from anywhere in the U.S. CodePath prioritizes employee well-being with a competitive benefits package to support your health, financial security, and work-life balance.
Health & Wellness:Medical, dental, and vision insurance (90% employer-covered), employer-funded healthcare reimbursement, FSAs, and Employee Assistance Program
Financial Security: 401(k), employer-paid life & disability insurance, and identity theft protection
Work-Life Balance: Generous PTO, paid holidays, 10 weeks of fully paid parental leave, and an annual year-end company closure (Dec 24 – Jan 2)
Professional Growth: $1,000 annual professional development stipend and home office setup support
Student Loan Forgiveness: CodePath is a qualifying employer for Public Service Loan Forgiveness (PSLF)
Additional Perks: Pet wellness plans, legal services, home/auto insurance discounts, and exclusive marketplace savings