Who We Are
At Corebridge Financial, we believe action is everything. Thatâs why every day we partner with financial professionals and institutions to make it possible for more people to take action in their financial lives, for today and tomorrow.
We align to a set of Values that are the core pillars that define our culture and help bring our brand purpose to life:
Who you'll work with
Group:Balance Sheet Risk Management (BSRM)
Reports to: Head of Actuarial Strategy & Integration
About the role
Join BSRM as our hands-on Senior Predictive Liability Analytics Lead. Youâll build next-gen short-term models of policyholder behavior starting with annuity surrenders, withdrawals, and utilization. Youâll collaborate with other stakeholders such as financial planning, ALM, pricing, valuation and capital as appropriate. This is a technical leadership role (not initially a people-manager or strategy role). Youâll do the math, write the code, build models, and mentor by example.
Responsibilities
Modeling & Innovation (hands-on)
Design predictive and semi-structural models with a short-term focus (performance focused on fitting the next 18-36 months) on long-horizon behavior (surrenders, partial withdrawals, lapse, rider utilization) using GLMs/GAMs, survival & hazard models (Cox, discrete-time, competing risks), tree ensembles (Boost/LightGBM/CatBoost), and deep learning choosing the most appropriate tool depending on the business problem.
Leverage unstructured data (contract text, correspondence, customer relationship notes, call transcripts) via NLP/transformer embeddings, RAG pipelines, and LLM-assisted document parsing to create novel behavioral features within guardrails.
Pilot generative-AI (foundation models) for feature extraction/summarization; use genetic/evolutionary algorithms for feature selection, architecture search, or synthetic cohort generation when appropriate.
Make models scenario-aware: incorporate drivers like credited rate, market rate spreads, moneyness, surrender charge state, distribution channel effects; calibrate elasticity to economic conditions documented in industry studies.Â
Integration with actuarial / finance
Translate model outputs into curves/driver functions consumable by projection engines (e.g., Moodyâs AXIS, Aon Pathwise, Prophet, RAFM, or internal models); generate reproducible, versioned results tables.
Share models with valuation/projection/ALM teams so behavior sensitivities can be considered alongside assumptions that normally flow through cash-flow projections, LDTI assumption updates, RBC/CTE stresses, and hedge effectiveness studies.
Partner with valuation and pricing to reconcile actual vs. expected and attribute earnings/variance to behavior; document the âmodel storyâ and explainability for governance.
MLOps, deployment & monitoring
Build training/scoring pipelines in Python/SQL on Databricks/Spark/Snowflake/AWS; track experiments with MLflow/DVC, version in Git, package with containers, and serve via batch/API.
Stand up dashboards for calibration, drift, stability, and bias; set retraining schedules, fallback models, rollback criteria, and automated alerts.
Cross-functional enablement
Co-design experiments (A/B, uplift, causal inference) with Business Owners/Operations/Distribution to test interventions; when warranted, explore contextual bandits/RL for offer timing and messaging.
Support Actuarial/Finance/Capital on scenario stress, attribution, and sensitivity runs; including helping to present results to model governance, assumption committees, and internal validation as needed.
Skills & Qualifications
Masterâs/PhD in Statistics, Data Science/ML, Applied Math, Computer Science, or Actuarial Science; FSA/ASA a plus (or equivalent domain depth).
Certifications in ML/AI (nice to have).
7â10+ years building production predictive models; insurance/annuity or long-duration liability exposure preferred.
Practical wins in behavior modeling (surrender/utilization/lapse) and integration
Comfortable spanning structured + unstructured data and bridging to projection engines.
Clear, concise communicator; strong documentation habits; bias to ship and iterate.
Mentors by example; sets standards for code quality, reproducibility, and testing.
Balances accuracy, interpretability, and operational simplicity under governance.
Collaborate within a highly matrixed organization.
Python (pandas, NumPy, scikit-learn, XGBoost/LightGBM, PyTorch/TensorFlow), SQL R
NLP/LLM: transformers/embeddings, RAG, prompt engineering; genetic/evolutionary search for features/hyper-params.
Databricks/Spark, Snowflake, AWS/Azure; MLflow, model registries, CI/CD; Tableau/Power BI for monitoring & storytelling.
Working familiarity with Actuarial platform (AXIS/Prophet/RAFM/etc.) integration patterns (assumption tables, mapping layers).Â
Compensation
The anticipated salary range for this position is $190,000 to $210,000 at the commencement of employment.Not all candidates will be eligible for the upper end of the salary range. The actual compensation offered will ultimately be dependent on multiple factors, which may include the candidateâs geographic location, skills, experience and other qualifications.
In addition, the position is eligible for a discretionary bonus in accordance with the terms of the applicable incentive plan.
Corebridge also offers a range of competitive benefits as part of the total compensation package, as detailed below.
Work Location
This position is based in Corebridge Financialâs Woodland Hills or New York office and is subject to our hybrid working policy, which gives colleagues the benefits of working both in an office and remotely.
Estimated Travel
Minimal travel.
Why Corebridge?
At Corebridge Financial, we prioritize the health, well-being, and work-life balance of our employees. Our comprehensive benefits and wellness program is designed to support employees both personally and professionally, ensuring that they have the resources and flexibility needed to thrive.
Benefit Offerings Include:
Eligibility for and participation in employer-sponsored benefit plans and Company programs will be subject to applicable law, governing Plan document(s) and Company policy.
We are an Equal Opportunity Employer
Corebridge Financial, is committed to being an equal opportunity employer and we comply with all applicable federal, state, and local fair employment laws. All applicants will be considered for employment based on job-related qualifications and without regard to race, color, religion, sex, gender, gender identity or expression, sexual orientation, national origin, disability, neurodivergence, age, veteran status, or any other protected characteristic. The Company is also committed to compliance with all fair employment practices regarding citizenship and immigration status. At Corebridge Financial, we believe that dive
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