TechCrunch News 2024年11月03日
GenAI suffers from data overload, so companies should focus on smaller, specific goals
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本文探讨了生成式AI应用的现状与未来发展趋势。专家们指出,在AI领域,数据至关重要,尤其是非结构化大规模数据。但现阶段AI技术仍处于早期发展阶段,企业应避免过度追求规模,而是要优先考虑产品市场匹配,从小处着手,逐步推进。文章强调了构建生成式AI应用需要关注数据质量、实时数据、以及团队建设等方面,并建议企业从解决实际问题出发,利用现有数据构建内部应用,逐步探索AI的应用场景。专家们认为,生成式AI目前仍处于发展初期,类似于“愤怒的小鸟”时代,尚未带来颠覆性变革,但未来一年将是企业应用AI进行转型的关键时期,AI应用将逐渐改变企业的运营模式。

🤔 **数据是AI发展的基石,尤其是海量非结构化数据:**生成式AI的应用离不开数据的支撑,其中非结构化数据扮演着至关重要的角色。DataStax的董事长兼首席执行官Chet Kapoor强调,没有数据就没有AI,没有非结构化数据就没有AI,更没有大规模的AI应用。这表明,企业需要重视数据的收集、存储和管理,为AI应用提供充足的数据基础。此外,数据质量也是AI应用的关键因素,高质量的数据能够提高AI模型的准确性和可靠性,从而提升AI应用的效果。例如,在构建一个基于自然语言处理的AI客服系统时,需要大量的用户对话数据来训练模型,才能使AI客服能够理解用户的意图并做出准确的回复。同时,数据的质量也至关重要,如果训练数据中包含大量错误或不完整的信息,那么AI客服的回复也可能存在偏差,无法满足用户的需求。因此,企业需要建立完善的数据管理体系,确保数据的质量和完整性,为AI应用提供可靠的数据支撑。

🚀 **生成式AI应用初期应聚焦产品市场匹配,而非一味追求规模:**在生成式AI领域,专家们建议企业应优先考虑产品市场匹配,而非一味追求规模。NEA合伙人Vanessa Larco强调,企业应该从解决实际问题出发,找到所需数据并将其用于特定的应用场景。这意味着企业应该根据自身业务需求和市场情况,选择合适的AI应用场景,并利用现有数据构建简单的内部应用,例如构建一个AI驱动的销售预测模型,或者一个AI驱动的客户服务系统。这种“从小处着手”的策略能够帮助企业快速验证AI应用的价值,并积累经验,为后续的规模化应用奠定基础。例如,一家电商企业可以先利用AI技术优化其商品推荐系统,通过分析用户历史购买数据和浏览数据,为用户推荐更符合其需求的商品,从而提升用户体验和销售业绩。如果这个应用取得成功,企业就可以考虑将其扩展到其他业务领域,例如利用AI技术优化物流配送路线或提升客服效率。

💡 **企业应从解决现存问题出发,逐步探索AI应用场景:**Fivetran首席执行官George Fraser建议企业专注于解决当前面临的实际问题,而非追求过度创新。他指出,创新过程中大部分成本都花在了那些最终没有成功的项目上,而非那些事后才发现应该提前规划规模的项目。这意味着企业应该将AI应用于解决其业务运营中存在的痛点,例如提高生产效率、降低运营成本、提升客户满意度等。例如,一家制造企业可以利用AI技术优化其生产线,通过分析生产数据,识别潜在的故障并及时采取措施,从而减少停机时间和生产成本。或者,一家金融机构可以利用AI技术识别欺诈行为,通过分析交易数据和用户行为,识别潜在的风险并及时采取措施,从而保护用户的资金安全。这种“问题导向”的AI应用策略能够帮助企业快速获得收益,并为后续的AI应用探索提供经验和数据支撑。

“There is no AI without data, there is no AI without unstructured data, and there is no AI without unstructured data at scale,” said Chet Kapoor, chairman and CEO of data management company DataStax.

Kapoor was kicking off a conversation at TechCrunch Disrupt 2024 about “new data pipelines” in the context of modern AI applications, where he was joined by Vanessa Larco, partner at VC firm NEA; and George Fraser, CEO of data integration platform Fivetran. While the chat covered multiple bases, such as the importance of data quality and the role of real-time data in generative AI, one of the big takeaways was the importance of prioritizing product-market fit over scale in what really is still the early days of AI. The advice for companies looking to jump into the dizzying world of generative AI is straightforward — don’t be overly ambitious at first, and focus on practical, incremental progress. The reason? We’re really still figuring it all out.

“The most important thing for generative AI is that it all comes down to the people,” Kapoor said. “The SWAT teams that actually go off and build the first few projects — they are not reading a manual; they are writing the manual for how to do generative AI apps.”

While it’s true that data and AI go hand in hand, it’s easy to become overwhelmed by the sheer amount of data a company may have, some of it possibly sensitive and subject to strict protections, and maybe even stored across myriad locations. Larco, who works with (and sits on the board of) numerous startups across the B2C and B2B spectrum, suggested a simple-but-pragmatic approach to unlocking true value in these early days.

“Work backwards for what you’re trying to accomplish — what are you trying to solve for, and what is the data that you need?” Larco said. “Find that data, wherever it resides, and then use it for this purpose.”

This is in contrast to trying to splash generative AI across the whole company from the get-go, throwing all their data at the large language model (LLM) and hoping that it spits out the right thing at the end. That, according to Larco, will likely create an inaccurate, expensive mess. “Start small,” she said. “What we’re seeing is companies starting small, with internal applications, with very specific goals, and then finding the data that matches what they’re trying to accomplish.”

Fraser, who has led “data movement” platform Fivetran since its inception 12 years ago, amassing big-name customers such as OpenAI and Salesforce en route, suggested that companies should focus narrowly on real issues they’re facing in the now.

“Only solve the problems you have today; that’s the mantra,” Fraser said. “The costs in innovation are always 99% in things you built that didn’t work out, not in things that worked out that you wish you had planned for scale ahead of time. Even though those are the problems we always think about in retrospect, those are not the 99% of the cost you bear.”

So much like the early days of the web and, more recently, the smartphone revolution, early applications and use cases for generative AI have shown glimpses of a powerful new AI-enabled future. But so far, they haven’t necessarily been game-changing.

“I call this the Angry Birds era of generative AI,” Kapoor said. “It’s not completely changing my life, no one’s doing my laundry yet. This year, every enterprise that I work with is putting something into production — small, internal, but putting it into production because they’re actually working out the kinks, on how to form the teams to go and make this happen. Next year is what I call the year of transformation, when people will start doing apps that actually start changing the trajectory of the company that they work for.”

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生成式AI 数据 产品市场匹配 AI应用 创新
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