Actuarial Developer

Shepherd

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profile Job Location:

New York City, NY - USA

profile Monthly Salary: $ 160 - 210
Posted on: Yesterday
Vacancies: 1 Vacancy

Job Summary

What We Do

Shepherd is an AI-native commercial insurance platform transforming how high-hazard industries get covered. Our mission is to make risk frictionless for the builders and operators shaping the physical world protecting progress from concept through construction and into decades of operation.

The infrastructure behind the AI boom data centers semiconductor fabs renewable energy assets has to be built and insured. But traditional carriers werent built for this speed:

  • Complex commercial construction projects routinely wait weeks for a single quote

  • Legacy carriers rely on static applications and disconnected systems

  • Brokers chase carriers through calls emails and resubmissions

We built Shepherd to solve that. Our AI performs the same underwriting workflows in seconds and integrates real-time data from construction technology partners Procore Autodesk OpenSpace DroneDeploy and others to see risk as it actually exists not just as it was reported on a static form.

Were pursuing the most ambitious technical vision in commercial insurance: fully autonomous underwriting. Were closing in on the first fully agentic submission in the industry email in price out no human intervention until the last mile.

With Shepherd safety speed and quality no longer trade off against one another they compound. Were building:

  • Faster decisions

  • Smarter more accurate pricing

  • Better risk outcomes for insureds who invest in safer practices

Were not just modernizing insurance products. Were building the risk infrastructure for the next generation of financial services.

Our Investors

In March 2026 Shepherd raised a $42M Series B bringing total funding to over $60M led by Intact Private Capital the investment arm of one of the largest insurers in the world. Intact is not only our lead investor but also a carrier partner a testament to the confidence the incumbent industry has in what were building. Our investors:

Our Team

Were a team of technologists and insurance enthusiasts bridging the two worlds together. Check out our About page to learn more.

The Role

You will help design build and maintain the internal pricing service and data models that allows actuaries to deploy new python-based rating engines and allows insurance product heads to directly configure our appetite as Shepherd grows into new sectors coverages and lines of business. You will ensure Shepherds platform serves the actuarial and insurance product use case.

In this role you are not handing requirements over a wall to engineers. You are in the codebase in the architecture discussions in the PR reviews. The split is roughly: 3040% of your time writing code yourself and 6070% designing systems reviewing implementations and guiding adjacent engineering decisions with actuarial context.

This is an individual contributor role for someone with real actuarial depth and experience deploying versioned well-tested specialty and commercial lines rating engines to production. If youve implemented hx Renew or a similar pricing platform at a carrier or MGU this is the role for you. If youve spent your career wishing actuarial pricing could move at the speed of software this is the role for you.

What Youll Build

Rating engine service (50-70%). Youll design and develop the FastAPI service in collaboration with engineers that allows the python-native actuarial team to implement rating logic for multiple lines of business that make account-level pricing coherent and extensible to new sectors & new coverages.

Product configuration service (20-30%). You will design and develop a service that enables Insurance Product heads to update product configurations (coverage options pricing parameters). Youll design the data model versioning scheme and validation logic that makes this safe and self-service.

Data integration architecture (0-20%). Youll evaluate third-party data sources for pricing segmentation benefits and collaborate with data engineers on how best to integrate these data sources for the needs of predictive modeling underwriting and business development. Youll need to be comfortable with data quality validation and the messy reality of third-party commercial data.

Predictive models occasionally (0-20%). Loss cost models trained on our claims corpus increased limits factor analysis and behavior-based pricing models that turn insureds operational data into quantitative risk signals.

What You Bring

Required

ACAS or near-ACAS exam progress. You have 4 years of P&C commercial lines actuarial experience. You understand ISO rate plans large account pricing concepts experience rating collateral because youve built or maintained pricing models that have used them. We care about the judgment not the letters but exam progress is a good indicator of the former.

Production Python experience. Youve written production python for 2 years that other people depend on: pricing tools data pipelines internal APIs analytical applications. Our stack includes EC2 Lambda FastAPI pytest uv dbt dagster postgres.

Experience designing or working within rating engine architectures. You know how commercial and specialty lines (e.g. CGL Business Auto Workers Comp Excess Commercial Property) rate plans are structured and you have implemented them in python.

Previous titles might include: Pricing Developer Actuarial Data Engineer Pricing Actuary.

Preferred

Experience with hx Renew or a similar Python-based pricing platform. You have either configured models on it or led its implementation at a carrier or MGU.

Data pipeline experience. You are familiar with third-party data sources used in commercial underwriting. Youve built or maintained ETL/ELT workflows wrangled messy external data or supported ML/GLM model deployment. You dont need to be a data engineer but you should be comfortable with orchestration concepts columnar formats and data quality tooling.

Hands-on predictive modeling for insurance pricing. GLMs gradient-boosted trees loss cost models or similar approaches that produce risk scores feeding into traditional rating structures.

Benefits

Premium Healthcare
100% contribution to top-tier health dental and vision

Fertility benefits and family building support

Unlimited PTO
Flexibility to take the time off recharge and perform

Daily lunches dinners and snacks
We work together and enjoy meals together too

SF NYC Dallas-Fort Worth Chicago and LA Offices

Professional Development
Access to premium coaching including leadership development

Competitive 401(k) Plan

Dog-friendly office
Plenty of dogs to play with and make friends with in the SF office


Required Experience:

IC

What We DoShepherd is an AI-native commercial insurance platform transforming how high-hazard industries get covered. Our mission is to make risk frictionless for the builders and operators shaping the physical world protecting progress from concept through construction and into decades of operatio...
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About Company

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Commercial insurance for construction's middle market with industry leading speed-to-quote

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