> job detail
đ§ȘData Scientist
Lead Data Scientist
Bloomerang · Remote, US
// classified as
Data Scientist (Modeling, experiments, research.)
posted
2d ago
location
Remote, US
languages
python
tools
databricks, mlflow
> stack
pythondatabricksmlflow
> description
<p>At Bloomerang, we believe change happens on purpose. We champion the power and potential of nonprofits, igniting next-level impact with the team and technology built for purpose. Our powerful giving platform and stellar support enable tens of thousands of nonprofits to raise more, recruit more, and retain more, fueling maximum impact and raising the bar on whatâs possible for the nonprofit sector. That's why, even as the nonprofit sector sees declines in giving, Bloomerang customers raise more year over year.</p>
<p>We're also in the business of creating thriving employees. Join a mission-driven culture built on our core values of Simplify, Care and Act. We know our people are the key to our success, and we're proud to be home to some of the most innovative and skilled individuals in the workforce today. Come feel invigorated and unstoppable with us!</p>
<p><strong> </strong></p>
<p><strong>The Role</strong></p>
<p>As a Data Science Lead at Bloomerang, you'll own the intelligence layer on top of the Unified Data Foundation (UDF)âthe models, experiments, and measurement that turn the data of 24,000+ nonprofits into products they can trust. Reporting to the Director of AI Product Engineering, you'll set the technical direction for data science across the Bloomerang Giving Platform: the causal measurement that proves what actually works, the predictive and forecasting models that anticipate donor behavior, the evaluation that keeps our AI products trustworthy, and the ML platform that gets all of it to production.</p>
<p>This is a hands-on, builder roleâa principal-level individual contributor who leads through the work, not a people-management seat. Data is the moat; intelligence is the castle. You'll prove causation instead of settling for correlation, set the bar for how models are built, measured, and shipped, and partner daily with data engineers, AI engineers, and product. You'll bring AI-native habits into how you build, test, and reason.</p>
<p><strong> </strong></p>
<p><strong>What You Will Do</strong></p>
<ul>
<li><strong>Prove what works, not just what correlates.</strong> Design and run the experimentation engineârandomized holdouts, uplift measurement, significance and powerâso we can claim a fundraising action caused a lift in retention or giving, not that it happened alongside one.</li>
<li><strong>Build the predictive and forecasting models</strong> that drive donor lifetime value, retention, lapse risk, and âwill we hit our goal?â forecastingâcalibrated, explainable, and honest about uncertainty rather than falsely precise.</li>
<li><strong>Own model quality and evaluation.</strong> Stand up the evals, accuracy bars, and monitoring that keep our AI products and agents trustworthyâbecause a confident wrong answer costs a fundraiser more than no answer at all.</li>
<li><strong>Get models to production and keep them healthy.</strong> Own the ML lifecycle on Databricks and MLflowâtraining, deployment, versioning, and drift and performance monitoringâso models keep earning trust long after launch.</li>
<li><strong>Set the technical direction for data science.</strong> Define how we model, measure, and validate; make the call on methods and tooling; and raise the rigor bar through the quality of your own work.</li>
<li><strong>Partner across the stack.</strong> Work daily with the data engineers building the data lakehouse, the AI engineers shipping the products.</li>
<li><strong>Use AI tools (Claude Code, Cursor, or similar) daily</strong> for analysis, modeling, evaluation, and problem-solving. We expect this to fundamentally change how you work, not just speed up what you'd do anyway.</li>
</ul>
<p><strong> </strong></p>
<p><strong>What You Need to Succeed</strong></p>
<p><strong>Technical Depth</strong></p>
<ul>
<li><strong>Applied data science experience:</strong> 8+ years building data science and machine learning that shipped to production and moved a real metricânot models that stalled in a notebook.</li>
<li><strong>Causal inference and experimentation:</strong> deep, hands-on work with A/B testing, randomized holdouts, uplift and treatment-effect modeling, and significance and power analysis. You know why measuring impact against KPIs without a control group is the most common way to learn the wrong lesson.</li>
<li><strong>Predictive and statistical modeling:</strong> propensity, churn and retention, lifetime value, time-series and forecasting, and calibrationâwith the judgment to reach for the simplest model that works.</li>
<li><strong>Strong Python and SQL,</strong> and fluency with the modern ML and statistics stack (e.g., scikit-learn, gradient boosting, and the tooling behind experiment design).</li>
<li><strong>Production ML sensibility:</strong> real experience deploying, versioning, and monitoring models (Langfuse, MLflow or similar). You own outcomes after the model ships, including drift and degradation.</li>
<li><strong>Modern data platform fluency:</strong> comfortable working on a lakehouse (Databricks preferred) and partnering closely on the data models your features depend on.</li>
</ul>
<p><strong>AI-Native Mindset</strong></p>
<ul>
<li><strong>Hands-on AI tool usage:</strong> you already use Claude Code, Cursor, or similar AI development environments as a daily part of how you build. You can speak to where they accelerate your work and where they don't.</li>
<li><strong>Curiosity about the frontier:</strong> you're energized by the pace of AI-driven changeâincluding LLM and agent evaluationâand you bring that energy into the team.</li>
</ul>
<p><strong>Leadership & Ownership</strong></p>
<ul>
<li><strong>Technical leadership without the org chart:</strong> you set direction through the clarity and rigor of your work, your standards, and your influence. This is a principal-level individual-contributor seat, not a people-management one.</li>
<li><strong>Quality-first instincts:</strong> you build evaluation, monitoring, and honest uncertainty in from day one. You'd rather ship a calibrated âwe're not sure yetâ than a confident answer that's wrong.</li>
<li><strong>Cross-functional partnership:</strong> a track record of working well with data engineers, ML and AI engineers, and product.</li>
<li><strong>Security and data trust:</strong> our customers trust us with their donors' data. You take thatâand the consent posture behind any cross-organization analyticsâseriously.</li>
</ul>
<p><strong> </strong></p>
<p><strong>Nice to Haves But Not Required</strong></p>
<ul>
<li>Background in nonprofit, fundraising, or CRM data.</li>
<li>Causal and experimentation work at product scale (experimentation platforms, sequential testing).</li>
<li>LLM and agent evaluation frameworks and techniques.</li>
<li>Familiarity with Data Vault 2.0 or medallion lakehouse modeling.</li>
</ul>
<p> </p>
<p><strong>Benefits</strong></p>
<p><strong>Health + Wellness</strong><br>Youâll have access to generous health, vision, and dental insurance options as well as HealthiestYou, a healthcare service that offers convenient, confidential access to quality doctors 24/7, anytime, anywhere. </p>
<p><strong>Time Off</strong><br>You'll get a competitive PTO package that includes 20 PTO days, 3 flex days, 4 optional volunteer days, 12 paid holidays, as well as paid parental leave. More is more!</p>
<p><strong>401k<br></strong>You'll receive a 401k match to help invest in your future.</p>
<p><strong>Equipment</strong><br>Everything you need to be successful, shipped right to your door. You got this. We got you.</p>
<p><strong>Compensation</strong> <br>The salary range for this position is $138,100 - $230,200. You may also be eligible for a discretionary bonus. Actual compensation within the range will be dependent on your skills, experience, qualifications, and location, as well as applicable employment laws</p>
<p><strong>Location</strong><br>This is a permanent, full-time, fully remote position (within the U.S. and select Canadian Provinces only). Employees living in Indianapolis, IN are welcome to work from our company headquarters. We do not offer Visa sponsorship or relocation assistance at this time.</p>
<p><strong>Accommodations<br></strong>Applicants who require accommodations may contact <a href="mailto:careers@bloomerang.com">careers@bloomerang.com</a> to request an accommodation in completing an application.</p>
<p> </p>
<p><em>Bloomerang is an Equal Opportunity Employer. Individuals seeking employment at Bloomerang are considered without regard to race, color, religion, national origin, age, sex, marital status, ancestry, physical or mental disability, veteran status, gender identity, or sexual orientation.</em></p>