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1 contribution to AI Bits and Pieces
AI in Real Life: So Many AI Tools, So Little Time — Here Is What They All Have in Common
I was commenting on a great question posed by @Girish Mohan, and I found myself thinking about it long after I responded.🤔 That reflection led to this post about the future of AI in a practical, real-world sense. The essence of the question: Is there a risk in becoming too dependent on one AI company, product, or tool set? I thought that was a smart question, because there is some real tension there. At this early stage of AI adoption, there is always a risk in overcommitting too soon. We have seen this before. During the eCommerce boom, a lot of companies looked like they were going to dominate, and many of them did not last. Early markets move fast. Leaders change. Sometimes you pick the wrong horse. 🐎 At the same time, over-diversifying creates its own problem. If you keep jumping from one tool to the next, you can lose the benefit of synergy. Some tools work better together. 🔗 Gemini and NotebookLM are a good example. When tools are designed to complement each other, the combined value can be better than chasing ten separate platforms that do similar things. There is also a practical reality that matters. One person cannot learn every AI tool coming to market. There are too many. At some point, each of us has to decide where we want depth, where we want breadth, and what kind of workflows actually fit the way we work. 🎯 That means some specialization is going to matter. People will need to find their niche instead of trying to master everything. But for me, the bigger point sits above all of that. We are moving into a very different communication model. 1) AI is shifting toward natural language. 2) More of the work will be handled through machine-to-machine interaction at machine speed, 3) All this be done without the user interface we think of today. 🛍️ My shopping AI may eventually interact with a retailer’s concierge AI. 🤖 Your scheduling assistant may work directly with mine. 🔄 Business systems will increasingly pass tasks, context, and decisions across platforms without the same kind of manual navigation we deal with today.
AI in Real Life: So Many AI Tools, So Little Time — Here Is What They All Have in Common
1 like • 19d
@Michael Wacht This is a realisation that I had the hard way. When I started out a few months ago and up until recently, I was under this exact phenomenon that you described - which I call now an AI beginner trap. Jumping from one tool to another and getting burnt out with all the new tools, concepts and ideas that come out on a daily basis. What i do now instead is try as much as I can to be “informed” about the updates but keep my focus on what matters to me the most. This helped me with focused learning and execution and improving all the while being updated with the industry. This way IF I am need of something, i know where to look for and what to look for. So I am 100% with you here - it’s AI fluency time.
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Girish Mohan
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@girish-mohan-6192
An AI enthusiast intrigued by the possibilities of AI

Active 31m ago
Joined Jan 27, 2026
Germany
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