Data Scientist, Advanced Analytics & Commercial Effectiveness
Mississauga - Canada
Job Summary
When we put unexpected teams in the same room we unleash bold thinking with the power to inspire life-changing -person working gives us the platform to connect work at pace and challenge perceptions. Thats why we work on average a minimum of three days per week from the office. But that doesnt mean were not flexible. We balance the expectation of being in the office while respecting individual flexibility. Join us in our unique and ambitious world.
Introduction to role:
Are you ready to bring publication-grade statistical difficulty and AI-native analytics together to uncover hidden patients elevate commercial strategy and improve outcomes for people living with rare diseases In this role you will turn sophisticated de-identified healthcare data into decisions that sharpen field execution optimize investment and ultimately reach those who need therapies most.
You will join a fast-moving analytics team that pairs deep statistical expertise with modern machine learning and Snowflake Cortex AI to accelerate model development without compromising interpretability or compliance. From patient identification and adherence prediction to marketing effectiveness and causal impact you will deliver models that are trusted by leaders and used by teams every day. Do you thrive at the intersection of analytical depth and real-world impact
Accountabilities:
Statistical Authority: Act as the go-to expert to set analytical standards across hypothesis testing regression inference and experimental design; ensure outputs meet publication-grade rigor with clear assumptions diagnostics and power.
Predictive Modeling: Design validate and deploy models using XGBoost LightGBM Random Forest SVM neural networks and ensembles; address class imbalance with robust evaluation and calibration to drive precise commercial actions.
Time-to-Event Analytics: Build survival models (Cox AFT competing risks) to predict adherence discontinuation and patient lifetime value that inform proactive interventions.
Forecasting: Create and maintain ensemble time-series frameworks (ARIMA Prophet exponential smoothing gradient-boosted) to guide demand planning revenue scenarios and launch-readiness decisions.
Causal Impact: Design A/B tests and apply quasi-experimental methods (DiD PSM synthetic control IV RDD) to quantify the true effect of commercial initiatives on prescribing and patient outcomes.
Marketing Mix Optimization: Develop Bayesian MMM to estimate channel-level return on investment and response curves; recommend promotional reallocations that improve impact across personal and non-personal channels.
Next-Best-Action Engines: Build and refine HCP-level recommendation systems using contextual bandits collaborative filtering and reinforcement learning; integrate daily actions into Veeva CRM.
Patient Identification: Train supervised classifiers on claims labs and specialty pharmacy data to prioritize likely undiagnosed patients and direct field resources where they matter most.
Adherence and Retention: Deploy models that detect early risk signals from dispense intervals hub interactions and scheduling patterns to reduce discontinuation.
Segmentation and Targeting: Construct HCP and patient segments using clustering and NLP-enriched profiles to focus engagement and tailor messaging.
Competitive Intelligence: Create real-time switching surveillance models from claims and formulary data to anticipate market dynamics and inform agile responses.
Agent-Assisted Development: Use Snowflake Cortex AI and AI coding agents to speed prototyping and feature engineering while retaining full human-led statistical validation.
Validation and Hallucination Detection: Build guardrails and evaluation suites that stress-test agent outputs catch plausible-but-wrong reasoning and prevent flawed insights from reaching decisions.
Agent Tuning and Evaluation: Design domain-specific prompts benchmarks and feedback loops to continuously improve agent analytical performance.
HIPAA-Compliant Data Operations: Work exclusively with de-identified patient-level data; implement minimum-necessary access and maintain re-identification risk assessments.
Model Guardrails and Interpretability: Implement bias detection fairness audits SHAP/LIME drift monitoring and validation gates; maintain end-to-end audit trails aligned to FDA REMS GDPR SOC2 21 CFR Part 11 and enterprise AI governance.
Cross-Functional Partnership: Translate sophisticated statistics into clear recommendations for Brand Market Access Patient Services and Field teams; influence senior leaders with evidence that drives action.
Documentation and Enablement: Create meticulous documentation code reviews and trainings that set the standard across the analytics community and ensure sustainable repeatable excellence.
Essential Skills/Experience:
Education: Masters or PhD in Statistics Biostatistics Data Science Econometrics Applied Mathematics or a related quantitative field.
Experience: 48 years in data science applied statistics or quantitative commercial analytics with a track record of deploying production-grade models in healthcare or life sciences.
Statistical Expertise: Expert-level proficiency in hypothesis testing regression analysis (linear logistic mixed-effects regularized) ANOVA survival analysis Bayesian inference experimental design power analysis significance testing and multiple comparison corrections. Deep understanding of when statistical methods apply when they break down and how to adapt for small-population rare disease contexts.
Predictive Analytics & ML: Proficiency in XGBoost LightGBM Random Forest SVM ensemble methods neural networks and time-series forecasting with thorough validation (cross-validation precision-recall ROC/AUC calibration).
Programming & Libraries: Expert-level Python (scikit-learn XGBoost LightGBM statsmodels lifelines PyMC CausalML DoWhy SHAP PyTorch) and SQL. Proficiency with Jupyter Git and CI/CD integration for model deployment.
Data Platform: Proficiency with Snowflake (Snowpark Python Snowpark Container Services Cortex AI) Spark/PySpark and MLflow or equivalent experiment tracking and model registry tools.
Marketing Mix & NBA: Hands-on experience building Bayesian MMM (PyMC LightweightMMM Robyn) and Next-Best-Action recommendation engines for pharmaceutical promotional optimization.
AI/LLM Proficiency: Experience with AI coding agents (Cortex AI Claude Code Copilot) for analytical development. Ability to critically evaluate agent-generated code and identify incorrect statistical reasoning.
HIPAA & Guardrails: Solid understanding of HIPAA de-identification standards model explainability frameworks (SHAP LIME) bias detection and compliance with regulated healthcare data environments.
Communication: Ability to translate sophisticated statistical findings into actionable recommendations for non-technical commercial stakeholders and senior leadership.
Desirable Skills/Experience:
Rare Disease & Specialty Pharma: Experience in rare disease or specialty pharma analytics small-population modeling patient identification specialty pharmacy data hub/PSP REMS-related data and high-value-per-patient environments.
Industry Data Sources: Hands-on experience with Komodo Health (open and closed claims) IQVIA (Symphony NPA DDD) Veeva CRM MMIT Model N specialty pharmacy dispense data and EMR/EHR data.
NLP & Deep Learning: Experience with NLP (topic modeling NER embeddings text classification) and neural network architectures (RNNs LSTMs transformers) for healthcare analytics applications.
LLM Evaluation: Experience with RLHF concepts benchmark design systematic prompt evaluation and agent reasoning quality assessment.
Visualization: Proficiency with PowerBI Tableau or Qlik for executive-facing dashboards and self-service reporting.
When we put unexpected teams in the same room we unleash bold thinking with the power to inspire life-changing -person working gives us the platform we need to connect work at pace and challenge perceptions. Thats why we work on average a minimum of three days per week from the office. But that doesnt mean were not flexible. We balance the expectation of being in the office while respecting individual flexibility. Join us in our unique and ambitious world.
Why AstraZeneca:
Here you will use cutting-edge data platforms and modern AI methods to tackle meaningful problems for under-served patient populations supported by teammates who value curiosity integrity and momentum. You will feel the energy of a nimble entrepreneurial environment with the reach of a global biopharma collaborating across disciplines to turn analytics into confident decisions that shape markets and care pathways. We value kindness alongside ambition and we invest in growth that deepens both your technical mastery and your understanding of patients lived experiencesso your contribution scales from a single model to lasting impact.
Call to Action:
If you are ready to pair statistical excellence with AI-native speed to create sharper decisions and better outcomes seize this opportunity to lead from the front and make your impact.
At Alexion you will find a collaborative culture that encourages innovation and a diverse environment where your contributions are valued. You will have the opportunity to be at the forefront of rare disease research and make a meaningful difference in patients lives.
Ready to lead and inspire Apply now and take the first step towards a fulfilling career at Alexion AstraZeneca Rare Disease.
#LI-Hybrid
Annual base salary for this position ranges from 134708.00 to 176804.25.
AstraZeneca is committed to providing fair and equitable compensation opportunities to all colleagues. Our compensation policies and practices have been designed to allow colleagues to progress through the salary range over time as they progress in their role. The range provided in this posting represents an offer pay range used in a majority of situations. The base pay offered will vary depending on multiple individualized factors including the candidates skills and experience job-related knowledge and other specific business and organizational some cases offers outside the range may also be considered to address unique circumstances.
In addition our permanent positions offer an annual Variable Pay Bonus/Short Term Incentive opportunity as well as eligibility to participate in our equity-based long-term incentive program (if applicable to role). Benefits offered for permanent roles include a competitive Flex Benefits & Retirement Savings Program 4 weeks paid vacation and annual Personal Days. Fixed Term Contract/Temporary positions (excluding students) are offered a Contract Benefits Program.
We are using AI as part of the recruitment process.
This advertisement relates to a current vacancy.
Required Experience:
IC
About Company
AstraZeneca is an equal opportunity employer. AstraZeneca will consider all qualified applicants for employment without discrimination on grounds of disability, sex or sexual orientation, pregnancy or maternity leave status, race or national or ethnic origin, age, religion or belief, ... View more