Code It now
Video
seeing the power of math in this video, I remembered smth. when we were in high school almost we all asked "why do we learn math?" did u any of u say 'we learn it to boost our thinking skill and problem solving"? or did u say, "it is just finding the value of x and y for years that nobody has got"?😂 Yh and there’s actually a very practical answer now. A lot of us in high school asked, “Why are we learning math? Is it only solving for x and y forever?” 😂But math quietly ended up powering a lot of the technology we use tdy especially search, information retrieval, and modern AI. ena When you search for a document, the computer usually doesn’t “understand” words the way humans do. It first converts text into numbers. That process is called an embedding. An embedding turns a word, sentence, or whole document into a vector basically a list of numbers that captures meaning. lemsale, words like “university,” “student,” and “campus” often end up closer together in that mathematical space than unrelated words like “banana” or “engine.”(sill they hv similarity but it is much too low.)
Then math helps compare those vectors. One common method is cosine similarity. equatinu degmo paper lay ale
Instead of checking whether two texts use exactly the same words, cosine similarity checks whether their vectors point in similar directions. If they do, the meanings are probably related. A simplified version of the process looks like this: mejemereya You ask a question kezia The system converts your question into an embedding (numbers) after that It already has stored embeddings for documents. then It compares your question vector with document vectors. finally. The documents with the highest similarity are retrieved.
That is a big part of vector space retrieval in the field of Information Retrieval.This is also how many RAG systems work. Before the AI writes an answer, it first retrieves the most relevant chunks of information using mathematical similarity. Then the model uses those retrieved pieces as context to generate a better answer.
So the funny thing is bzu sew a lot of what looked like “just x and y” in school later becomes vectors, distances, similarity scores, optimization, and probability and that’s part of what makes search engines and modern AI work.
and honestly AAU Chat bot ena Adwa AI assistant bezi new yeseranew.
@code_it_now
Then math helps compare those vectors. One common method is cosine similarity. equatinu degmo paper lay ale
Instead of checking whether two texts use exactly the same words, cosine similarity checks whether their vectors point in similar directions. If they do, the meanings are probably related. A simplified version of the process looks like this: mejemereya You ask a question kezia The system converts your question into an embedding (numbers) after that It already has stored embeddings for documents. then It compares your question vector with document vectors. finally. The documents with the highest similarity are retrieved.
That is a big part of vector space retrieval in the field of Information Retrieval.This is also how many RAG systems work. Before the AI writes an answer, it first retrieves the most relevant chunks of information using mathematical similarity. Then the model uses those retrieved pieces as context to generate a better answer.
So the funny thing is bzu sew a lot of what looked like “just x and y” in school later becomes vectors, distances, similarity scores, optimization, and probability and that’s part of what makes search engines and modern AI work.
and honestly AAU Chat bot ena Adwa AI assistant bezi new yeseranew.
@code_it_now
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Code It now
https://telegra.ph/A-Museum-of-Receipts-Can-I-Survive-a-Day-in-Addis-on-ETB-600-05-15
Can I Survive a Day in Addis on ETB 600?
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Forwarded from FinLoop
Hey everyone, Abuki is here .
A full stack dev , passionate about software development, saas , blockchain, fintech and digital opportunities.
I created this channel to share my journey and move my thoughts from saved messages to here .
If you’re into tech, and you are welcome here 🫡
Welcome to my channel, everyone.🔥
@abukidev0
A full stack dev , passionate about software development, saas , blockchain, fintech and digital opportunities.
I created this channel to share my journey and move my thoughts from saved messages to here .
If you’re into tech, and you are welcome here 🫡
Welcome to my channel, everyone.🔥
@abukidev0
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