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Europos Sąjungos vėliava
EU Green Week

Empowering women in water sector

  • Konferencijos ir aukščiausiojo lygio susitikimai

This webinar, organised under the Horizon Europe project WE-ACT, explores how inclusive, data-driven tools can support more equitable and effective water governance, with a particular focus on empowering women in decision-making processes.

The session introduces innovative digital solutions developed within the project, including the miraX Decision Support System and Rana Data Warehouse, along with its underlying data infrastructure, designed to support transparent, evidence-based water allocation in transboundary river basins.

By combining technical demonstrations with real-world stakeholder experiences from Central Asia, the webinar highlights how participatory approaches and accessible tools can strengthen resilience to climate change, improve water management practices and enhance gender inclusion in environmental decision-making.

An interactive segment is included, enabling participants to directly engage with the tools and explore their practical applications.

WE-ACT webinar on empowering women in water governance through data-driven decisions, part of EU Green Week, 17 June 2026, online.
© cc WE-ACT Project
  • environmental impact | innovation | sustainable economic growth strategy
  • 2026 m. birželio 17 d., trečiadienis, 13:00 val. - 15:00 val. (CEST)
  • Munich, Germany

Praktinė informacija

Kada
2026 m. birželio 17 d., trečiadienis, 13:00 val. - 15:00 val. (CEST)
Kur
WE-ACT Project
Munich, Germany
Kalbos
English
Dalis
Interneto svetainė
Event website

Aprašymas

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