Intuitive and personalised experience provide a learning environment that takes your training to the next level. Join a global community, learn from experts, and collaborate on a modern, easy to use platform.
LEARN BY DOING
Learning paths that support the training needs of Data Producers and Data Toolers to develop the skills needed to use and support the .Stat Suite, from installation to designing SDMX data models.
GAMIFY YOUR LEARNING
Content is designed to make your experience engaging, solving practical problems to help you to get inspired to expand your knowledge with our quiz-based activities and interactive exercises.
REACH YOUR GOAL
Learning levels designed to build your knowledge and skills over time, geared towards your goal, from foundations or becoming an expert with the capability or recognition to coach and contribute to the development of the practice.
Are you a Data Producer (Methodology adviser, Statistical Assistant, Statistician, Data Reporter...), or a Data Tooler (.Stat Platform Manager, Database Manager, IT Infrastructure Manager, Developer...)?
READ WHAT OUR COMMUNITY OF USERS ARE SAYING ABOUT THE .STAT ACADEMY
Christophe
IT Officer
“ Thanks to all the team for the webinar. It was really useful! Especially the presentations from Anastassia and David aroused my interest.. ”
Manuel
Software Engineer
“ The webinar made setup less intimidating and enables IT and substantive teams appreciate the power of .Stat Suite and SDMX. ”
Pieter
Dissemination Manager
“ The resources on SDMX helped my team understand the value in adopting such a standard for the purpose of disseminating our data and made the learning curve so much easier. I’ve learned a lot, and I highly recommend it. Thank you. ”
Rebeca
Business Analyst
“ The many resources available helped me to understand the rich set of capabilities and support the business case for adopting the .Stat Suite for our organisation. ”
Balazs
Systems Administrator
“ Excellent resources to help me plan and design our own infrastructure to run the .Stat Suite. Keep up the good work! ”
Susan
Developer
“ I was able to quickly dive into the .Stat Suite open source project and understand how it all fits together. I hope to start contributing soon! ”
SUBSCRIBE TO THE community MAILING LIST
The SIS-CC newsletter compiles news, events and training opportunities, delivering updates from the global SDMX community directly to your inbox.
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Now available! .Stat Academy FREE course, Introduction to SDMX for data producers, is designed for Data Producers (Methodology adviser, Statistical Assistant, Statistician, Data Reporter…) as a way to introduce the SDMX standard and various concepts used in the .Stat Suite context.
In this course, you will learn about:
what is SDMX with a high-level overview of the standard.