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Secure Your Early Bird Savings! |
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Kick off the new year with a boost to your professional
development by taking advantage of our Early Bird rates for 2025
web sessions.
Plan ahead and enjoy reduced rates on upcoming online trainings
covering essential actuarial topics, keeping you at the forefront
of your field.
Don't miss out - some Early Bird discounts are expiring
soon!
Explore all opportunities below or visit our website for even more ways to enhance your
skills and stay ahead. |
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Actuarial Data Science -
Basic |
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This is part one of four courses (seminar and exam) to obtain
the additional title Certified Actuarial Data Scientist by the AVÖ
and/or DAV. Participants who do not hold an AVÖ or DAV membership
have also the opportunity to obtain a newly established EAA Certificate in Actuarial Data
Science by taking part in all four modules and the
corresponding exams. In addition, all courses are open to
interested actuaries to deepen their knowledge and skills in the
field of Actuarial Data Science (without exams).
This module provides an introduction to the concepts of Actuarial
Data Science and its applications. We start at the very beginning,
so no prior knowledge is required.
In this three-day training, we cover a wide range of topics. This
includes a basic introduction to the concepts and terms of
artificial intelligence, modern data management concepts (with a
special look at insurance companies), aspects of data protection
and the mathematical and statistical concepts of data mining. On
our way, we touch different use cases in the actuarial environment.
To this end, we provide a brief insight into the widely used
language R and development tools in the data science context
(RStudio, Anaconda). The seminar rounds off with principles for the
ethical handling of artificial intelligence in the insurance
environment |
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Your early-bird registration fee is € 1,170.00 (net) / €
1,392.30 (incl. VAT, if applicable) until today (2
January 2025). After this date, the fee will be €
1,521.00 (net) / € 1,809.99 (incl. VAT, if applicable). |
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Non-Life Pricing Using
Statistical Techniques with R Applications |
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Non-Life insurance is facing many challenges ranging from
fierce competition on the market or evolution in the distribution
channel used by the consumers to evolution of the regulatory
environment. Pricing is the central link between solvency,
profitability and market shares (volume). Improving pricing
practice encompasses several dimensions:
- Technical
- Competition
- Elasticity
- Segmentation
The aim of this web session is to present some advanced actuarial/
statistical techniques used in non-life pricing or underwriting.
The web session focuses on selected practical problems faced by
pricing actuaries and product managers. |
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Your early-bird registration fee is € 975.00 (net) / € 1,160.25
(incl. VAT, if applicable) until 6 January 2025. After this
date, the fee will be € 1,270.00 (net) / € 1,511.30 (incl. VAT, if
applicable). |
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Actuarial Data Science -
Immersion |
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This is part one of four courses (seminar and exam) to obtain
the additional title Certified Actuarial Data Scientist by the AVÖ
and/or DAV. Participants who do not hold an AVÖ or DAV membership
have also the opportunity to obtain a newly established EAA Certificate in Actuarial Data
Science by taking part in all four modules and the
corresponding exams. In addition, all courses are open to
interested actuaries to deepen their knowledge and skills in the
field of Actuarial Data Science (without exams).
Based on the building blocks known from Basic and Advanced, in
this module, we deepen some topics and present further important
topics from the field of Actuarial Data Science.
In this three-day training, we cover a wide range of topics
including an advanced introduction to the concepts and terms of
artificial intelligence, concepts of information theory, aspects of
data protection, some mathematical and statistical concepts, as
well as insights into innovative products (with a special look at
insurance companies). On our way, we touch different use cases in
the actuarial environment. |
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Your early-bird registration fee is € 1,170.00 (net) / €
1,392.30 (incl. VAT, if applicable) until 13 January 2025. After
this date, the fee will be € 1,521.00 (net) / € 1,809.99 (incl.
VAT, if applicable). |
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CERA, Module C:
Processes in ERM |
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This web session is one part in a course that consists of four
modules. They can be booked as a whole series to fulfil the
requirements for receiving the CERA designation, or individually as
CPD training.
This module deals with the challenges of implementing ERM
Processes. It includes requirements on ERM Processes and the
discussion of best practices. It will be presented how to define an
organisation's risk strategy, risk appetite, risk tolerances and
limits. We discuss how business strategy influences risk strategy
and show their necessary interaction. We demonstrate the close
relationship between ERM and Value and Risk Based Management and
show how financial and other risks influence the selection of
strategy. We show how ERM can be appropriately imbedded in an
entity's strategic planning and discuss the Own Risk and Solvency
Assessment. We present the application of an internal risk control
process. In the context of ERM reports to different stakeholders
are required (management, supervisory body, regulators, public
disclosure). We give an overview of the different reports and the
main contents. Further we show examples of communication processes
in the context of ERM. During the web session we present case
studies to discuss the main subjects. |
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Your early-bird registration fee is € 650.00 (net) / €
773.50 (incl. VAT, if applicable) until 23 January 2025.
After this date, the fee will be € 720.00 (net) / € 856.80 (incl.
VAT, if applicable). |
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