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NYU Love Data Week

Home to NYU Data Services' annual celebration of data-related teaching, learning, and research

Welcome to Love Data Week 2025!

Yellow and white banner that reads "Save The Date, International Love Data Week 2025 February 10-14 2025".

Join NYU's Data Services in celebrating Love Data Week 2025! 

This year, Love Data Week runs from February 10 to 14. The goal is to celebrate data, foster data driven community by raising global awareness about all things data; and promote the importance of data driven research, decision making, and data management.

At NYU Data Services, we will be offering a full slate of our instructional sessions designed to train all researchers, whether beginner, intermediate, or advanced learners in the tools they need to conduct their work. We will also be offering an alumni career panel, research presentations, and other events aimed at sharing the work we do with data. You are invited to our month-long February series of events in celebration of Love Data Week 2025.

See the full schedule below and explore this site for more details as well as for information on our past events.

Be sure to checkout other Love Data Week events happening around campus, including LDW at Dibner Library and NYU Law Library.

This year's theme is "Whose Data Is It, Anyway?"  

Data is personal. Join International Love Data Week February 10-14, 2025, to learn about data equity and inclusion, disciplinary communities, and creating a kinder world through data.

Content related to Love Data Week can be found on various social media platforms at the hashtag #LoveData25.

About Love Data Week

Every year, the week around Valentine’s Day is celebrated as the International Love Data Week and is hosted by ICPSR. Organizations involved in the stewardship, use, and reuse of data collectively spotlight the importance of caring for the data used in our research, policy planning, and scholarly pursuit.

At NYU, Data Services and other groups celebrate by organizing and hosting data-related programming.