Browse Comments — Raw (as collected)
Close reading of the corpus at each pipeline stage: raw → clean → relevant → coded.
4.3K
comments matched
· page 212 of 215
Thanks for sharing 👍
Confidence without a validation layer is just noise someone else inherits later.
Bookmarked …The agentic RAG and multi agent system examples look particularly interesting Excited to explore them further
#cfbr
Thanks for sharing! Abhishek Veeramalla
@Demis Hassabis +
Demis, sending you this post — would genuinely value your perspective.
Link: https://www.linkedin.com/posts/activity-7470034950143221775-ANje?utm_source=share&utm_medium=member_ios&rcm=ACoAAFpobyABlZYDPPhHOhe8WItAT4PmOkSq2Rg
No pitch, no agenda. Just a founder who believes dialogue beats countdowns.
Ishtvan Moysa
Business needs it ai workflow to done there daily repeatative tasks with one trigger like click or chat manual for that I'm also using AI in SEO for my clients to get results fast than usual
Great resources.
📌 Sometimes I think:
When will the UAE stop surprising me
but everyday i woke up with even bigger news
Such audacity only SMZ can pull off Nadeem Zaman نديم زمان
Evripides Achilleos Halting problem
Yes, agree with you
What caught my attention is the focus on agent memory and multi-agent workflows. Those topics seem to be becoming the equivalent of distributed systems patterns in the AI world
The gap between learning AI concepts and actually building systems is real. It's great to see a resource that combines notebooks, workshops, and production-ready applications in one place.
Abhishek Veeramalla do you just this to a beginner?
Abhishek Veeramalla Al is making audits faster, but the real advantage is still knowing what to do with the insights. Tools can flag problems in seconds. A skilled media buyer knows which fixes will actually move revenue, improve efficiency, and create scalable growth.
The next phase of AI strategy and implementation will be discerning where to use AI and where to go back to pure programming to drive automation. Not using AI to solve all use cases will help with the environmental footprint.
The future belongs to those who move beyond learning AI and start building with it. Practical, production-ready resources like these bridge the gap between theory and real-world impact. 🚀
I wanted to learn MATLAB and I have been taking course provided by Mathworks.. I was suggested to do some GitHub project by many people. However, I wasn't able to navigate and understand how these projects and coding works. Can you help me out?
Dr. Hassabis,
You wrote that agents and world understanding will be crucial for achieving AGI.
I wonder whether AGI research may be starting from the wrong end of the problem. Most approaches begin with cognition, language, and human behavior. My work starts with a simpler question: what is the minimal form of life capable of continuing itself in a changing environment?
From this perspective, reason emerges as a mechanism for navigating reality in service of life's continuation, rather than as a property of cognition itself.
This raises a question that I rarely see discussed: should intelligence be derived from human cognition, or from the minimal functional requirements of life?
I explored this idea in the work below and would be interested in your thoughts.
https://zenodo.org/records/20573467
Kun Cheng I think AGI research may be starting from the wrong end of the problem.
Human language, reasoning and consciousness are already highly evolved products.
The more fundamental question is: what is the minimal mechanism required for life to continue itself in an uncertain environment?
Once a system must obtain resources, distinguish useful from harmful and make choices, the foundations of reason already begin to emerge.
Perhaps we should derive intelligence from life rather than derive life from intelligence.