BGA孵化:利用区块链和人工智能变革零售业 —— Libera Global AI的故事

币界网Published on 2024-07-30Last updated on 2024-07-30

币界网报道:

与Libera Global AI的采访

Libera Global AI处于利用AI、区块链和知识图谱来革新新兴市场零售业的前沿。我们与其创始人Max Ward进行了深入交流,探讨了Libera Global AI的使命、影响力和创新之处。

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您能简要介绍一下Libera Global AI吗?

Libera Global AI是一家开创性的技术公司,利用人工智能、区块链和知识图谱来革新新兴市场的零售业。我们的平台旨在为小型商户提供AI驱动的工具,激励数据共享,为小型商户、大品牌和消费者解锁有价值的洞察和机会。

我们的主要使命是通过激励数据共享和为小型商户提供AI驱动的工具,在新兴市场创建一个透明、包容和可持续的零售生态系统。我们的目标是数字化和连接数百万小型商店,通过数据驱动的洞察力解锁经济机会,推动积极的社会影响。

Libera Global AI在社会或环境方面有哪些关键影响?

Libera Global AI通过促进金融包容性和赋能小型商户,推动了显著的社会影响。主要社会影响包括:

  • 金融包容性:通过提供微激励和解锁有价值的洞察力,我们促进了金融包容性、经济增长,并为新兴市场的小型商户提供更好的资本获取机会。

  • 赋能小型商户:我们的AI驱动工具帮助小型商户优化运营、提高利润,并做出数据驱动的决策,最终改善他们的生计并支持地方经济。

  • 透明和包容的生态系统:我们创建了一个透明、包容和可持续的零售生态系统,惠及所有参与者,从小型商户到大品牌和消费者。

我们通过多种指标来衡量我们的影响力,例如小型商户的数量、利润和效率的提高、共享的数据量和处理的交易量,以及我们运营地区零售生态系统的整体增长。

您能分享一个Libera Global AI对个人或社区产生积极影响的故事吗?

Libera采用“变革理论”框架,通过创新的数据货币化策略为微型商户创造和增强收入来源,从而在他们的生活中产生社会影响。通过从印度尼西亚等大市场的多达400个消费品品牌收集和销售微型商户的数据,Libera为这些小企业主创造了显著的收入。此外,这些数据还出售给金融科技公司、银行、非政府组织等实体,进一步多样化商户的收入来源。这些数据被代币化,确保了商户收入流的安全和透明。

除了直接的财务收益,从这些数据中得出的洞察力使Libera能够提供定制的产品推荐和优惠交易,帮助微型商户通过储存畅销产品来增加收入。这种综合方法不仅提供了即时的财务提升,还促进了可持续增长和改善微型商户的生计。在许多国家,一个五口之家的平均月收入可以从250美元提高到500美元。

Libera Global AI使用了哪些酷炫的技术来实现其魔力?

Libera Global AI的平台由一系列尖端技术驱动:

  • 知识图谱AI:我们的知识图谱AI技术结合了多种数据源,创建了零售生态系统的全面视图,提供个性化推荐、实时决策支持和预测洞察。

  • 区块链:我们利用区块链技术确保数据共享的安全性和透明性,打造了一个所有利益相关者都受益的可信生态系统。

  • AI驱动的工具:我们使用大型语言模型和图检索和推理技术,允许小型商户使用自然语言查询系统,使高级分析对非技术用户也易于访问。

有哪些突出特点或创新让Libera Global AI独树一帜?

Libera Global AI的突出特点包括:

  • 微激励系统:我们通过数据共享奖励小型商户,创建了一个公平和透明的数据生态系统。

  • 可扩展性和适应性:我们的模块化架构使平台能够有效地扩展和适应各种市场需求和零售环境。

  • 本地化解决方案:我们的AI模型根据地区消费者行为和市场动态量身定制,确保了相关性和准确性。

Libera Global AI的旅程中有哪些重要转折?未来一年有哪些令人兴奋的机会和发布计划?

我们的旅程充满了激动人心的转折。最初,我们公司专注于在印度尼西亚等大市场的“供应链AI”。新冠疫情对我们造成了重大影响,迫使我们离开印度尼西亚,但这一挑战揭示了一个重大的商业问题:大型品牌缺乏零售销售数据,因为它们的很多销售发生在线下和小型商户。

在加密寒冬之前,我们通过Animoca的资金开发了一个MVP,随后市场变化和乌克兰战争也对我们产生了影响。尽管面临这些挑战,我们强烈的使命感帮助我们克服了各种障碍。

您为什么选择加入Blockchain for Good Alliance?从中获得了哪些帮助?

我们选择加入Blockchain for Good Alliance,因为我们的价值观在利用区块链技术和AI方面是一致的。联盟致力于数据共享的民主化,就像我们一样,专注于长期影响而不是短期收益。

您对想要启动区块链公益项目的人有什么建议?

研究非营利组织和影响力组织使用的“变革理论”框架,以衡量他们在世界上产生积极变化的能力,超越利润。将影响力与核心业务原则结合起来可能具有挑战性,但也可能非常有价值,并且往往本身就是一个终极目标。

他人如何参与或支持您的愿景?

有很多方式可以参与和支持我们的愿景。关注我们的社交渠道并加入我们的旅程。通过社区参与想法、合作伙伴关系、投资或将我们纳入即将举行的活动来支持我们。我们是一个有大使命的小团队,需要更多的人来传播信息和支持我们。

关注Blockchain for Good Alliance,了解更多区块链创造积极变化的励志故事。

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