Webinar 
Virtual
January 23, 2024

Casualty Actuarial Society (CAS) - Akur8 Webinar - The Modeler's Edge: Philosophies and Practices in Predictive Modeling

Ready to level up your skills in model building? On January 23, 2024, join the Casualty Actuarial Society (CAS) Akur8 webinar titled, "The Modeler's Edge: Philosophies and Practices in Predictive Modeling." Max Martinelli, Actuarial Data Scientist at Akur8, will lead the session and discuss how classic actuarial methods can be enhanced with the latest predictive analytics techniques. Discover practical strategies to stay competitive in the actuarial field and build superior models.

You don't need to be a CAS member to participate. Register for FREE to access the live and recorded version of the webinar. Those attending will receive CE credits as well!  

Click below to register on the CAS website.

Featured speaker:
Max Martinelli, Actuarial Data Scientist, Akur8
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Max Martinelli, Actuarial Data Scientist, Akur8

Max Martinelli joined Akur8 as an Actuarial Data Scientist in 2023. He works with clients to ensure they get the most out of Akur8's transparent machine learning software. This ranges from actuarial modeling advice to collaborating on how an insurer can get the most out of their data. Before this, Max worked in various actuarial and data science roles at Allstate for nearly 8 years. He has worked on auto, property and specialty lines with a broad scope of projects. These ranged from traditional actuarial indications to price optimization to cutting-edge high-fidelity telematics models. His work spanned from production grade models to rapid research models to further Allstate's pricing sophistication with extensive use of GLMs, GLMnets, GBMs and Bayesian GLMs.