VentureBeat 前天 23:04
SAP推出表格模型RPT-1,旨在取代通用大语言模型
index_new5.html
../../../zaker_core/zaker_tpl_static/wap/tpl_guoji1.html

 

SAP公司推出其自有的基础性“表格”模型RPT-1,旨在减少企业的训练需求。该模型内置商业和企业知识,无需微调即可进行预测分析。RPT-1基于企业交易数据(如Excel表格)训练,提供开箱即用的预测分析能力。SAP表示,RPT-1将于2025年第四季度通过其AI基础平台提供通用服务,并计划 soon 发布开源模型。与学习文本的LLM不同,RPT-1专注于表格数据,理解数字及单元格间关系,提供更精确的答案。企业可通过上下文工程指导模型,因其具备语义感知能力。SAP的ConTextTab技术使模型能学习结构化商业数据并添加上下文,适用于金融等需要精确答案的场景。

💡 RPT-1是SAP推出的基础性“表格”模型,旨在通过内置商业知识减少企业对通用大语言模型的需求,实现开箱即用的预测分析能力,特别适用于处理表格数据。

📊 与学习文本的LLM不同,RPT-1专注于结构化数据(如Excel表格),理解数字及单元格间关系,提供更精确、结构化的答案,适用于金融和企业级应用场景。

🧠 RPT-1的核心优势在于其语义感知能力,可通过上下文工程进行指导,即使信息有限也能提供有价值的分析,无需大量针对特定企业的额外信息即可运作。

🔗 该模型建立在SAP的ConTextTab技术之上,该技术使模型能够学习结构化商业数据(如SAP知识图谱),并通过实际使用添加更多上下文,提升任务适应性。

🚀 SAP计划于2025年第四季度通过其AI基础平台提供RPT-1的通用服务,并计划 soon 发布开源模型,表明其在行业特定模型领域的积极布局。

SAP aims to displace more general large language models with the release of its own foundational “tabular” model, which the company claims will reduce training requirements for enterprises. 

The model, called SAP RPT-1, is a pre-trained model with business and enterprise knowledge out of the box. SAP calls it a Relational Foundation Model, meaning it can do predictions based on relational databases even without fine-tuning or additional training.

Walter Sun, SAP's global head of AI, told VentureBeat in an interview that the value of the new model lies in its ability to perform various enterprise tasks, such as predictive analytics, out of the box. 

“Everyone knows about language models, and there’s a bunch of good ones that already exist,” Sun said. “But we trained the model on data on business transactions, basically Excel spreadsheets, and so we have a model that can do predictive analytics where the value is that it’s out of the box, meaning you don’t need to have specifics of a company to do tasks analogous to a language model.” 

Sun said that right out of the gate, RPT-1 can essentially build out a business model for enterprises based on its knowledge gained from data from SAP’s decades of information. Organizations can plug the model directly into applications, even without additional fine-tuning.

RPT-1, SAP’s first large family of AI models, will be generally available in “Q4 of 2025” and be deployed via SAP’s AI Foundation. While RPT-1 is currently available, the company stated that additional models will be made available soon, including an open-source, state-of-the-art model. 

SAP will also release a no-code playground environment to experiment with the model. 

Tabular models vs LLMs

Tabular or relational AI models learned from spreadsheets, unlike LLMs, which learned from text and code. RPT-1 not only understands numbers and the relationships between different cells, but it’s also able to provide more structured and precise answers. 

When enterprises decide to use RPT-1, they can add more direction to the model through a bit of context engineering, since the model is semantically aware and learns based on how it is being used. 

SAP researchers first proposed the idea that tabular models can both exhibit semantic awareness and learn from content through a paper published in June. It proposed ConTextTab introduced context-aware pretraining. It utilizes semantic signals, such as table headers or column types, to guide model training, enabling the model to build a relational structure with the data. It’s this architecture that makes the model work best for tasks with precise answers, such as for financial or enterprise use cases.

The RPT models build on the ConTextTab work that lets it learn structured business data, say from SAP’s knowledge graph, and then be able to add more context through usage. 

SAP researchers did test ConTextTab against benchmarks, saying it “is competitive” against similar models like TabPFN and TabIFL. 

Industry-specific models continue to grow

Many enterprises prefer to fine-tune general LLMs like GPT-5 or Claude, to basically retrain the model to answer only questions relevant to their business. However, a shift towards industry-specific models has begun to take root

Sun said that his experience at a previous company, building a very narrow, highly customized AI model for sentiment analysis, influenced a lot of what makes RPT-1 different. 

“It was a very customized model, a narrow model that takes specific feedback for specific products but it wasn’t scalable,” Sun said. “When LLMs came about, that one model measures sentiment. But there are use cases that we can do that LLMs cannot do.”

He said these use cases include predictions, such as determining when a shopper will return to a grocery store, which may involve numerical analysis along with an understanding of the shopper’s buying habits. However, some LLMs have begun integrating into spreadsheets, and AI model providers encourage users to upload similar data to teach them context. Microsoft added new capabilities to Copilot, including the ability to work in Excel. Anthropic integrated its Claude model with Excel, complementing its Claude for Finance service. Chinese startup Manus also offers a data visualization tool that understands spreadsheets, and ChatGPT can create charts from uploaded spreadsheets and other data sources. 

However, SAP noted that it is more than just reading a spreadsheet; RPT-1 should stand out amongst its competitors because it requires fewer additional pieces of information about a business to provide its responses. 

Fish AI Reader

Fish AI Reader

AI辅助创作,多种专业模板,深度分析,高质量内容生成。从观点提取到深度思考,FishAI为您提供全方位的创作支持。新版本引入自定义参数,让您的创作更加个性化和精准。

FishAI

FishAI

鱼阅,AI 时代的下一个智能信息助手,助你摆脱信息焦虑

联系邮箱 441953276@qq.com

相关标签

SAP RPT-1 表格模型 Tabular Model 大语言模型 LLM 预测分析 企业AI ConTextTab 语义感知
相关文章