4 High relevance to you

Indigenous-Led Disaster Resilience: Insights from AJEM Webinar for Mining ESG

Indigenous-Led Disaster Resilience: Insights from AJEM Webinar for Mining ESG
Webinars

This content presents Indigenous-led research and perspectives on disaster resilience, as featured in the AJEM Indigenous edition webinar.

  • Highlights Indigenous care for land and water over millennia
  • Addresses impacts of colonisation and ongoing resilience
  • Showcases Indigenous leadership in disaster management
  • Documents practices from Australia and New Zealand
  • Encourages incorporation of Indigenous knowledge in emergency management
  • Promotes decolonial and inclusive approaches to resilience

Content shared in this community may be provided by external contributors. Copyright and responsibility for opinions expressed rest with the original authors.

How this may be relevant to you

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Relevant. Contains valuable information for your focus area.

This webinar is relevant for mining industry professionals seeking to integrate Indigenous knowledge and resilience practices into ESG strategies.

  • Supports culturally responsive risk management and rehabilitation
  • Highlights partnership models for fire and land management
  • Encourages collaboration with Indigenous communities
  • Promotes transparency and governance in disaster planning
  • Aligns with post-mine land use and closure priorities
  • Showcases research applicable to compliance and safety

Content shared in this community may be provided by external contributors. Copyright and responsibility for opinions expressed rest with the original authors.

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