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Resources to better understand LLMs and how to use them?

2 点作者 frabia超过 1 年前
I realize that by using chatGPT (and similar), there are certain situations in which they perform really well (e.g. code suggestion) and others where they give bland and generic responses. Therefore I would like to become better at using them.<p>I&#x27;ve seen a lot around &quot;Prompt Engineering&quot; but so far I haven&#x27;t seen anything that is significantly better than OpenAI&#x27;s own documentation about GPT&#x27;s best practices. Is there actually valid content being produced in this regard?<p>Furthermore, aside from Prompt Engineering, I would be interested to understand how LLMs work. My goal is to be able to evaluate critically what I can use them for, and what are their limitations (i.e. since the quality of their output changes depending on the area of expertise). If it helps, I&#x27;m happy to start studying Machine Learning, but my goal –at least atm– is not to build models from scratch. Is there any resource that is oriented towards a general understanding rather than in-depth application of LLMs?<p>TLDR: I feel I have a lack of understanding about how LLMs work, and I would like to make up for it in order to employ them better in my work.<p>Thanks

1 comment

frabia超过 1 年前
well... Nobody replied to this, but I later found exactly what I was looking for and thought I would reply to my own answer in case it helped anybody else: <a href="https:&#x2F;&#x2F;gist.github.com&#x2F;veekaybee&#x2F;be375ab33085102f9027853128dc5f0e" rel="nofollow noreferrer">https:&#x2F;&#x2F;gist.github.com&#x2F;veekaybee&#x2F;be375ab33085102f9027853128...</a>