Add news
March 2010 April 2010 May 2010 June 2010 July 2010
August 2010
September 2010 October 2010 November 2010 December 2010 January 2011 February 2011 March 2011 April 2011 May 2011 June 2011 July 2011 August 2011 September 2011 October 2011 November 2011 December 2011 January 2012 February 2012 March 2012 April 2012 May 2012 June 2012 July 2012 August 2012 September 2012 October 2012 November 2012 December 2012 January 2013 February 2013 March 2013 April 2013 May 2013 June 2013 July 2013 August 2013 September 2013 October 2013 November 2013 December 2013 January 2014 February 2014 March 2014 April 2014 May 2014 June 2014 July 2014 August 2014 September 2014 October 2014 November 2014 December 2014 January 2015 February 2015 March 2015 April 2015 May 2015 June 2015 July 2015 August 2015 September 2015 October 2015 November 2015 December 2015 January 2016 February 2016 March 2016 April 2016 May 2016 June 2016 July 2016 August 2016 September 2016 October 2016 November 2016 December 2016 January 2017 February 2017 March 2017 April 2017 May 2017 June 2017 July 2017 August 2017 September 2017 October 2017 November 2017 December 2017 January 2018 February 2018 March 2018 April 2018 May 2018 June 2018 July 2018 August 2018 September 2018 October 2018 November 2018 December 2018 January 2019 February 2019 March 2019 April 2019 May 2019 June 2019 July 2019 August 2019 September 2019 October 2019 November 2019 December 2019 January 2020 February 2020 March 2020 April 2020 May 2020 June 2020 July 2020 August 2020 September 2020 October 2020 November 2020 December 2020 January 2021 February 2021 March 2021 April 2021 May 2021 June 2021 July 2021 August 2021 September 2021 October 2021 November 2021 December 2021 January 2022 February 2022 March 2022 April 2022 May 2022 June 2022 July 2022 August 2022 September 2022 October 2022 November 2022 December 2022 January 2023 February 2023 March 2023 April 2023 May 2023 June 2023 July 2023 August 2023 September 2023 October 2023 November 2023 December 2023 January 2024 February 2024 March 2024 April 2024 May 2024 June 2024 July 2024 August 2024 September 2024 October 2024 November 2024 December 2024 January 2025 February 2025 March 2025 April 2025 May 2025 June 2025 July 2025 August 2025 September 2025 October 2025 November 2025 December 2025 January 2026
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29
30
31
News Every Day |

Airtable's Superagent maintains full execution visibility to solve multi-agent context problem

Airtable is applying its data-first design philosophy to AI agents with the debut of Superagent on Tuesday. It's a standalone research agent that deploys teams of specialized AI agents working in parallel to complete research tasks.

The technical innovation lies in how Superagent's orchestrator maintains context. Earlier agent systems used simple model routing where an intermediary filtered information between models. Airtable's orchestrator maintains full visibility over the entire execution journey: the initial plan, execution steps and sub-agent results. This creates what co-founder Howie Liu calls "a coherent journey" where the orchestrator made all decisions along the way. "It ultimately comes down to how you leverage the model's self-reflective capability," Liu told VentureBeat. Liu co-founded Airtable more than a dozen years ago with a cloud-based relational database at its core.

Airtable built its business on a singular bet: Software should adapt to how people work, not the other way around. That philosophy powered growth to over 500,000 organizations, including 80% of the Fortune 100, using its platform to build custom applications fitted to their workflows.

The Superagent technology is an evolution of capabilities originally developed by DeepSky (formerly known as Gradient), which Airtable acquired in October 2025.

From structured data to free-form agents

Liu frames Airtable and Superagent as complementary form factors that together address different enterprise needs. Airtable provides the structured foundation, and Superagent handles unstructured research tasks.

"We obviously started with a data layer. It's in the name Airtable: It's a table of data," Liu said.

The platform evolved as scaffolding around that core database with workflow capabilities, automations, and interfaces that scale to thousands of users. "I think Superagent is a very complementary form factor, which is very unstructured," Liu said. "These agents are, by nature, very free form."

The decision to build free-form capabilities reflects industry learnings about using increasingly capable models. Liu said that as the models have gotten smarter, the best way to use them is to have fewer restrictions on how they run.

How Superagent's multi-agent system works

When a user submits a query, the orchestrator creates a visible plan that breaks complex research into parallel workstreams. So, for example if you're researching a company for investment, it'll break that up into different parts of that task, like research the team, research the funding history, research the competitive landscape. Each workstream gets delegated to a specialized agent that executes independently. These agents work in parallel, their work coordinated by the system, each contributing its piece to the whole.

While Airtable describes Superagent as a multi-agent system, it relies on a central orchestrator that plans, dispatches, and monitors subtasks — a more controlled model than fully autonomous agents.

Airtable's orchestrator maintains full visibility over the entire execution journey: the initial plan, execution steps and sub-agent results. This creates what Liu calls "a coherent journey" where the orchestrator made all decisions along the way. The sub-agent approach aggregates cleaned results without polluting the main orchestrator's context. Superagent uses multiple frontier models for different sub-tasks, including OpenAI, Anthropic, and Google.

This solves two problems: It manages context windows by aggregating cleaned results without pollution, and it enables adaptation during execution.

"Maybe it tried doing a research task in a certain way that didn't work out, couldn't find the right information, and then it decided to try something else," Liu said. "It knows that it tried the first thing and it didn't work. So it won't make the same mistake again."

Why data semantics determine agent performance

From a builder perspective, Liu argues that agent performance depends more on data structure quality than model selection or prompt engineering. He based this on Airtable's experience building an internal data analysis tool to figure out what works.

The internal tool experiment revealed that data preparation consumed more effort than agent configuration.

"We found that the hardest part to get right was not actually the agent harness, but most of the special sauce had more to do with massaging the data semantics," Liu said. "Agents really benefit from good data semantics."

The data preparation work focused on three areas: restructuring data so agents could find the right tables and fields, clarifying what those fields represent, and ensuring agents could use them reliably in queries and analysis.

What enterprises need to know

For organizations evaluating multi-agent systems or building custom implementations, Liu's experience points to several technical priorities.

Data architecture precedes agent deployment. The internal experiment demonstrated that enterprises should expect data preparation to consume more resources than agent configuration. Organizations with unstructured data or poor schema documentation will struggle with agent reliability and accuracy regardless of model sophistication.

Context management is critical. Simply stitching different LLMs together to create an agentic workflow isn't enough. There needs to be a proper context orchestrator that can maintain state and information with a view of the whole workflow.

Relational databases matter. Relational database architecture provides cleaner semantics for agent navigation than document stores or unstructured repositories. Organizations standardizing on NoSQL for performance reasons should consider maintaining relational views or schemas for agent consumption.

Orchestration requires planning capabilities. Just like a relational database has a query planner to optimize results, agentic workflows need an orchestration layer that plans and manages outcomes.

"So the punchline and the short version is that a lot of it comes down to having a really good planning and execution orchestration layer for the agent, and being able to fully leverage the models for what they're good at," Liu said.

Ria.city






Read also

Detainees at Florida’s ‘Alligator Alcatraz’ say they were punished for seeking legal help

Google Disrupts Network That Allowed Bad Actors to Use Consumers’ IP Addresses

‘Think about it’ – Didi Hamann raises unexpected centre-back suggestion for Liverpool to target

News, articles, comments, with a minute-by-minute update, now on Today24.pro

Today24.pro — latest news 24/7. You can add your news instantly now — here




Sports today


Новости тенниса


Спорт в России и мире


All sports news today





Sports in Russia today


Новости России


Russian.city



Губернаторы России









Путин в России и мире







Персональные новости
Russian.city





Friends of Today24

Музыкальные новости

Персональные новости