ChatGPT update for Teams&Enterprise

ChatGPT transforms into a true AI teammate with meeting recording, smart notes, and deep cloud integrations.

In partnership with

Dear Readers,

The boundary between tool and team partner is becoming blurred. What OpenAI is introducing with the new ChatGPT update for Teams and Enterprise is far more than just a few additional features - it marks a paradigm shift. The new “Record” mode not only allows meetings to be recorded and transcribed, but also transforms them into structured notes, including task lists and timestamps. At the same time, ChatGPT now docks deeply into Google Drive, OneDrive, Dropbox & Co. - making stored information directly usable in the dialog.

As a result, ChatGPT is finally transformed from a mere text generator into a proactive work assistant. Instead of reacting to questions, it now initiates productive impulses itself: “Here is the log”, “I have found relevant files”, “You should follow up on these points”. This saves time and energy - and gives teams a completely new way of working together.

For the AI community, this is a significant step towards agent systems: AI as an active knowledge manager, as an organizational interface, as a thinking partner. Not somewhere in the future, but now - in everyday office life, in project management, in meetings.

In Today’s Issue:


All the best,

ChatGPT update for Teams&Enterprise

The TLDR
ChatGPT now records meetings, transcribes them, and generates task lists, while integrating with Google Drive, Dropbox, and more for seamless document analysis. It marks a leap toward autonomous, agent-like AI that actively supports daily workflows.

ChatGPT is getting a major upgrade: with the new “Record” mode, the AI assistant can record and transcribe meetings and automatically create structured notes including timestamps and task lists. At the same time, ChatGPT is now deeply integrated into cloud platforms such as Google Drive, OneDrive, Box and Dropbox. This allows users to ask questions about saved documents - such as financial reports, project plans or travel receipts - directly in the chat.

ChatGPT is thus evolving from a reactive chatbot to a proactive work companion. For teams, companies and individuals, this means a radical simplification of knowledge work: protocols no longer have to be created manually, documents no longer have to be searched for a long time. Everything is where it is needed - in dialog with the AI.

What is particularly exciting for the AI community is that these features are a concrete step towards agent-like AI systems that take on tasks independently, link information and deliver real added value in everyday life. Once again, it shows how AI not only generates texts, but can also act as an intelligent knowledge and workflow partner.

Why it matters: ChatGPT becomes a central interface for communication and organization. The integration of storage and meeting functions brings AI directly into productive everyday life - efficiently, helpfully and increasingly autonomously.

Sources:

Unlock the Social Media Tactics That Work Right Now

Is your social strategy ready for what's next in 2025?

HubSpot Media's latest Social Playbook reveals what's actually working for over 1,000 global marketing leaders across TikTok, Instagram, LinkedIn, Pinterest, Facebook, and YouTube.

Inside this comprehensive report, you’ll discover:

  • Which platforms are delivering the highest ROI in 2025

  • Content formats driving the most engagement across industries

  • How AI is transforming social content creation and analytics

  • Tactical recommendations you can implement immediately

Unlock the playbook—free when you subscribe to the Masters in Marketing newsletter.

Get cutting-edge insights, twice a week, from the marketing leaders shaping the future.

In The News

Veo 3 and the Dawn of Optimizable Video

Veo 3 is wowing creators with high-quality AI-generated video that feels transformative, especially when paired with audio. But the deeper shift is this: video, our most intuitive and high-bandwidth medium, is now directly optimizable — not just served, but generated and tuned for engagement or learning. This marks the start of a powerful new era in media, where infinite content can be tailored in real time, for better or worse.

AI Boosts Individual Productivity, But Organizations Lag Behind

A new survey reveals that 43.2% of U.S. workers use generative AI at work, applying it to a third of their tasks and reporting a 3x productivity gain. Yet, these individual benefits aren't translating into broader organizational performance, signaling a growing adoption gap.

The Illusion of “Future Readiness”: Coding, AI, and the Education Hype Cycle

Despite billions in funding and corporate advocacy for K–12 computer science education, entry-level coding jobs are shrinking as AI tools take over basic programming tasks. Critics warn we’re repeating the same cycle with AI education—framing it as equity and opportunity while ignoring long-term job realities.

Graph of the Day

More and more benchmarks show that the latest DeepSeek update has brought significant improvements. In the Tetris benchmark, for example, DeepSeek is now in 2nd place - directly behind o3.

AI-supported evaluation of longevity interventions

An international research team has formulated requirements for the use of AI, in particular Large Language Models (LLMs), for the evaluation of anti-ageing interventions. They emphasize the need for accurate, useful, comprehensive and explainable analyses that take causality and interdisciplinary approaches into account. The use of knowledge graphs and retrieval augmented generation is recommended to improve the quality of AI answers and enable informed decisions in longevity research.

Stochastic modeling of the age distribution of longevity leaders

Researchers have developed a stochastic model that describes the age distribution of the oldest people worldwide. Based on data since 1955, the model shows that the maximum age of the oldest living individuals increases over time. This provides valuable insights into the dynamics of extreme longevity and supports the development of strategies to promote healthy ageing.

Interpretable machine learning for high-dimensional ageing data

A new model called Dynamic Joint Interpretable Network (DJIN) combines modern machine learning techniques with an interpretable interaction network to analyze individual aging trajectories. It enables the prediction of health trajectories and survival rates based on demographic, lifestyle and medical data. DJIN offers a transparent and scalable solution for personalized ageing research.

Question of the Day

Do you have the feeling that Western society is becoming healthier or unhealthier?

Login or Subscribe to participate in polls.

Quote of the Day

How'd We Do?

Please let us know what you think! Also feel free to just reply to this email with suggestions (we read everything you send us)!

Login or Subscribe to participate in polls.