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On Fri, 27 Sept, 8:02 AM UTC
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[1]
Airtable just launched an AI platform that could change how you work
Join our daily and weekly newsletters for the latest updates and exclusive content on industry-leading AI coverage. Learn More As companies struggle to realize returns on massive investments in artificial intelligence, Airtable is betting it can help enterprises finally deploy AI into critical business workflows at scale. The San Francisco-based company announced on Thursday new capabilities that transform its collaborative app-building platform into what it calls a "true enterprise-grade AI platform." The additions include App Library, which allows companies to create standardized AI-powered applications that can be customized across an organization, and HyperDB, which enables integration of massive datasets of over 100 million records. AI deployment: Moving beyond chatbots to workflow automation "There's been way too much emphasis on just the hard tech, and not nearly enough emphasis on the ergonomics and how to actually utilize LLMs today," said Howie Liu, Airtable's co-founder and CEO, in an interview with VentureBeat. He argued that while there's been fascination with ever-larger AI models, the focus needs to shift to deploying AI in real business use cases. The move positions Airtable to capitalize on surging enterprise interest in generative AI. Goldman Sachs forecasts $1 trillion in AI investments from tech firms, corporations and utilities in coming years. But many early AI initiatives have failed to deliver tangible business impact. "We're at a tipping point in the AI era, yet most enterprise AI adoption is still just scratching the surface of the powerful potential that could transform digital operations," the company said in its announcement. Balancing standardization and customization: The Enterprise AI challenge Airtable claims its platform is already used by major media, retail and financial services companies to power critical operations. One unnamed "leading streaming company" reportedly saved 280 hours per week on content genre classification using custom AI solutions built on Airtable. The new enterprise offerings aim to strike a balance between standardization and customization -- a common challenge for global organizations. App Library allows central teams to create standardized applications with embedded AI that can then be adapted by different business units. "We give them a Lego kit, and we make the technology really accessible," Liu said, emphasizing Airtable's focus on empowering business users rather than just technical teams. HyperDB, meanwhile, is designed to make massive datasets from systems like Snowflake and Salesforce more accessible for use in departmental applications while maintaining centralized governance. Scaling AI: From chat interfaces to parallel processing of thousands of tasks Airtable faces competition from established enterprise software vendors racing to embed AI capabilities, as well as a crop of AI-native startups. But Liu believes Airtable's approach of enabling parallel deployment of AI across thousands of records or workflow steps is differentiated. "It would be like, could you hire overnight and just for five minutes worth of work, 10,000 decently smart interns to go work on a task," he said. "That is a really powerful kind of form factor." The moves come as Airtable, valued at $11 billion in late 2021, navigates a more challenging funding environment for tech startups. The company laid off about 250 employees last year and is reportedly preparing for a potential IPO. Airtable's enterprise push represents a significant pivot from its roots as a user-friendly collaborative spreadsheet tool. While the company has successfully built a large user base with its grassroots adoption strategy, competing in the enterprise market presents new challenges. Airtable will need to prove it can handle the complex security, compliance, and integration requirements of large organizations. This strategic shift positions Airtable in direct competition with tech giants like Microsoft, Salesforce, and ServiceNow, all of which are rapidly integrating AI into their offerings. Airtable's success will likely depend on whether its approach -- empowering business users to create AI-enhanced applications -- can deliver tangible productivity gains more efficiently and cost-effectively than solutions from established vendors. As enterprises grapple with how to extract value from their AI investments, Airtable's platform could find a receptive audience. However, the company will need to clearly articulate its differentiation and ROI proposition to stand out in an increasingly crowded market for enterprise AI solutions. In the end, Airtable's ambitious leap from organizing data to orchestrating AI may just prove that in the world of enterprise software, the best way to think outside the box is to rebuild it entirely.
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Airtable's new updates simplify the creation of no-code apps with integrated generative AI - SiliconANGLE
Airtable's new updates simplify the creation of no-code apps with integrated generative AI Airtable Inc., creator of a no-code platform for building applications and workflows, is expanding on its investments in artificial intelligence with the launch of new tools that will enable every organization to start taking advantage of AI. The new products announced today include App Library, a new tool for deploying custom-developed applications that integrate AI models, and HyperDB, which paves the way for companies to create workflows that integrate massive datasets from platforms like Databricks and Snowflake. Airtable sells a cloud-based "Digital Operations Platform" that enables teams to store, organize and collaborate on structured data. It works as a real-time database and has often been referred to as "spreadsheets on steroids". It's known for its user-friendly interface, which makes it possible for anyone to spin up a database in just a few minutes, and store, organize and collaborate on information about anything -- including employee directories, product inventories, marketing campaigns and so on, without any knowledge of Structured Query Language. Indeed, they don't even need to know what SQL stands for. The company first began probing what generative AI can do with the launch of its Airtable AI tools last year. At the time of its launch, the company said the idea was to make it simple for companies to integrate generative AI into the no-code applications and business workflows created using its platform, without any technical skills. In an interview with VentureBeat, Airtable co-founder and Chief Executive Howie Liu said the new capabilities launched today build on that release, and are designed to make the underlying large language models that power generative AI more accessible to everyday workers. "There's been way too much emphasis on just the hard tech, and not nearly enough emphasis on the ergonomics and how to actually utilize LLMs today," he said. With its new tools, Airtable says it's trying to get the balance right between standardization and customization of applications. To that end, App Library provides a simple framework for building standardized business apps with embedded AI capabilities that can then be customized by different business teams. Liu likened the App Library to a "Lego kit" and said it's all about making LLM technology more accessible to citizen developers. As for HyperDB, this makes it easy for users to create customized AI apps and workflows that can tap into Databricks and Snowflake data. "All the while, administrators maintain governance of the data and ensure compliance to industry standards," the company said in a blog post. "With HyperDB, it's possible to pull 100M+ records into Airtable, and operationalize that data across the organization. The result? Stronger decision making fueled by critical, cross-functional information." Additional capabilities announced today include "Org Branding", which allows users to customize Airtable with their own branding and logos, and "App Sandbox", for creating, testing and customizing no-code applications in a safe environment prior to deployment. The company said one of its customers, described as a "leading streaming company", has already used its new tools to create an application for automatica content genre classification. According to Airtable, that company has saved its teams around 280 hours per week. The focus on AI and application building accelerates Airtable's shift from its origins as a simple, collaborative spreadsheet tool. As its offerings become more powerful, it's increasingly going up against competing tools offered by big enterprises such as Microsoft Corp., Salesforce Inc. and ServiceNow Inc., which offer similar capabilities for creating applications and workflows that integrate with AI. To succeed, the company will need to ensure that its innovations provide the kind of productivity gains it claims without causing headaches for employees. And it will have to do this in a way that's more cost-effective than its rivals.
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Airtable introduces new AI-powered capabilities, including App Library and HyperDB, to help enterprises deploy AI into critical business workflows at scale, potentially transforming how organizations work with data and automation.
Airtable, the San Francisco-based collaborative app-building platform, has announced a significant expansion of its artificial intelligence capabilities, positioning itself as an "enterprise-grade AI platform" [1]. This move comes as companies struggle to realize returns on massive AI investments, with Airtable betting it can help enterprises finally deploy AI into critical business workflows at scale.
The company has introduced two major new capabilities:
App Library: This feature allows companies to create standardized AI-powered applications that can be customized across an organization. It strikes a balance between standardization and customization, a common challenge for global organizations [1].
HyperDB: This enables integration of massive datasets of over 100 million records from systems like Snowflake and Salesforce. It makes these datasets more accessible for use in departmental applications while maintaining centralized governance [1][2].
Howie Liu, Airtable's co-founder and CEO, emphasized the need to shift focus from developing larger AI models to deploying AI in real business use cases. "There's been way too much emphasis on just the hard tech, and not nearly enough emphasis on the ergonomics and how to actually utilize LLMs today," Liu stated in an interview [1].
The move positions Airtable to capitalize on surging enterprise interest in generative AI. Goldman Sachs forecasts $1 trillion in AI investments from tech firms, corporations, and utilities in coming years [1]. However, many early AI initiatives have failed to deliver tangible business impact, creating an opportunity for solutions that can bridge this gap.
Airtable claims its platform is already used by major media, retail, and financial services companies to power critical operations. One unnamed "leading streaming company" reportedly saved 280 hours per week on content genre classification using custom AI solutions built on Airtable [1][2].
As Airtable pivots towards the enterprise market, it faces competition from established enterprise software vendors like Microsoft, Salesforce, and ServiceNow, all of which are rapidly integrating AI into their offerings [1][2]. The company will need to prove it can handle the complex security, compliance, and integration requirements of large organizations.
Liu believes Airtable's approach of enabling parallel deployment of AI across thousands of records or workflow steps is differentiated. He likened it to hiring "10,000 decently smart interns to go work on a task" for just five minutes [1]. This capability for mass parallel processing could be a key differentiator in the market.
As Airtable navigates a more challenging funding environment and prepares for a potential IPO, its success will likely depend on whether its approach of empowering business users to create AI-enhanced applications can deliver tangible productivity gains more efficiently and cost-effectively than solutions from established vendors [1][2].
The company's ambitious leap from organizing data to orchestrating AI represents a significant evolution in the world of enterprise software. As organizations grapple with extracting value from their AI investments, Airtable's platform could find a receptive audience, provided it can clearly articulate its differentiation and ROI proposition in an increasingly crowded market for enterprise AI solutions.
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