Browse Comments — Clean (de-noised)
Close reading of the corpus at each pipeline stage: raw → clean → relevant → coded.
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Congratulations 🥳
This is the kind of resource that shortens the gap between consuming AI content and actually building with it. A lot of people are stuck in endless learning loops right now. Repositories like this become valuable because they move learning from theory into implementation, systems thinking, experimentation, and real-world problem solving
Thanks for updating👏
Very useful
I want to learn AI from YouTube
One problem is that a lot of people want to learn but while doing so, lack fundamental knowledge. It’s like building a network infrastructure but you are clueless when I ask you what the OSI model is about.
Abhishek the gap between learning and building is exactly where most people get stuck, so having real, working examples makes a big difference in actually progressing instead of just consuming theory.
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The key point for me is that AI performance is not only about model size or raw capability. It is about whether the architecture preserves the context that matters for the task. Voice is a good example. A transcript captures words, but not always meaning. That is where more specialised or ensemble-based approaches could become very important.
How many testing hours and benchmarking has been done with real world scenarios. Let’s just accept today creating something isn’t hard. But validation is the difficult part. After years of working with OpenAi models, I think their models are NOT production ready.
Neeraj Tiwari
This is exactly what's missing in most AI learning journeys practical, production-ready examples. Saving this immediately. Thanks for sharing.
Really compelling direction, moving from monolithic models to orchestrated ensembles feels like a practical path past current scaling limits, especially for richer modalities like voice. Excited to see where this goes 👏
Thank you for this Gem )
Git hub is really nice 👌 Recently I’m using git but in past i used SVN repo, compare that git is really good 👍 🙌
Thanks for sharing 👍🏻
Love this approach- how many times has a team gone in the wrong direction because a metric was misinterpreted.
Repo repo kerte kerte aap ne Tesla le li
i was very surprised to see my preferred email@ prefix in the doc. i guess i cant talk with you guys sadly. name collisions are serious biz ess :)