OpenAI和康泰纳仕达成多年协议,通过人工智能提供新闻服务

币界网Publicado em 2024-08-20Última atualização em 2024-08-20

币界网报道:

周二,出版巨头康泰纳仕加入了与ChatGPT创始人OpenAI达成交易的越来越多的公司行列。该协议使OpenAI及其SearchGPT原型能够访问出版商从《连线》、《纽约客》、《GQ》和《Vogue》等杂志上发布的大量文章。

OpenAI写道:“我们正在将我们的对话模型与网络信息相结合,为您提供快速及时的答案,并提供清晰相关的来源。”他指出,SearchGPT将提供“新闻报道的直接链接”,该技术最终将集成到ChatGPT中。

康泰纳仕首席执行官罗杰·林奇在与Decrypt分享的一份备忘录中告诉员工,这笔交易是一项多年的合作关系,将扩大康泰纳斯特内容的覆盖范围。

林奇说:“众所周知,生成式人工智能正在迅速改变观众发现信息的方式。”。“至关重要的是,我们要在受众所在的地方与他们见面,并接受新技术,同时确保对我们知识产权的使用进行适当的归因和补偿。”

交易条款——包括将康泰纳仕内容纳入OpenAI产品的补偿——尚未披露。

康泰纳仕加入了越来越多与OpenAI达成许可协议的出版商行列,其中包括美联社、《金融时报》、《美好家园与花园》、《人物》和新闻集团的出版商,后者出版《华尔街日报》、《巴伦周刊》和《市场观察》。

林奇表示,在过去十年中,新闻和数字媒体公司一直在努力将内容货币化,因为科技公司,尤其是通过搜索,侵蚀了他们的收入。他说,与OpenAI的合作提供了一种弥补部分损失的方法,并使康泰纳仕能够“继续保护和投资我们的新闻和创意事业”

“在整个过程中,OpenAI已经表明他们也非常致力于这一使命,”他补充道。“他们一直很透明,愿意与像我们这样的出版商进行富有成效的合作,这样公众就可以通过他们的平台获得可靠的信息和新闻。”

OpenAI没有立即回应Decrypt的置评请求。

OpenAI首席运营官Brad Lightcap在另一份声明中表示:“我们致力于与康泰纳仕和其他新闻出版商合作,确保随着人工智能在新闻发现和传播中发挥更大的作用,它保持准确性、完整性和对高质量报道的尊重。”。

尽管达成了这些协议,OpenAI仍与其他新闻出版商就侵犯版权的指控进行法律斗争。OpenAI和微软已被《纽约时报》、《纽约每日新闻》、《芝加哥论坛报》、《奥兰多哨兵报》和《圣何塞水星报》起诉。

媒体机构也反对新闻编辑室中的生成人工智能,包括美联社,该机构在2023年8月限制了工作人员记者如何使用生成人工智能进行新闻报道,这是在与OpenAI签署新闻报道许可协议一个月后。

美联社标准与包容性副总裁Amanda Barrett当时告诉员工:“生成性人工智能工具的任何输出都应该被视为未经审查的源材料。”。

由Ryan Ozawa编辑。

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