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44za12

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Stop generating what you already have

aazar.me
2 points·by 44za12·16 dni temu·0 comments

Horcrux – Distributed, Zero-Trust Secret Manager

github.com
3 points·by 44za12·21 dni temu·2 comments

Lattice Deduction Transformers

arxiv.org
4 points·by 44za12·w zeszłym miesiącu·0 comments

MiniMax M3

xcancel.com
5 points·by 44za12·w zeszłym miesiącu·0 comments

δ-mem: Efficient Online Memory for Large Language Models

arxiv.org
240 points·by 44za12·2 miesiące temu·60 comments

Beyond Semantic Similarity

arxiv.org
68 points·by 44za12·2 miesiące temu·15 comments

In Defense of Boring Technology

aazar.me
1 points·by 44za12·5 miesięcy temu·0 comments

Show HN: RightSize CLI, Find the cheapest LLM that works for your prompt

github.com
3 points·by 44za12·6 miesięcy temu·0 comments

Show HN: LLM Sanity Checks – A practical guide to not over-engineering AI

github.com
1 points·by 44za12·6 miesięcy temu·0 comments

Stop using JSON for LLM structured output

nehmeailabs.com
2 points·by 44za12·6 miesięcy temu·1 comments

FlashCheck-270M: Open weights for fact verification (Apache 2.0, WASM Demo)

huggingface.co
2 points·by 44za12·7 miesięcy temu·0 comments

comments

44za12
·11 dni temu·discuss
Location: UAE Remote: Preferred Want to relocate: No

Philosophy: Brutally Efficient

More: https://aazar.me
44za12
·3 miesiące temu·discuss
I read it as an article in defence of boring tech with a fancier/clickbaity title.

Here’s the more honest one i wrote a while back:

https://aazar.me/posts/in-defense-of-boring-technology
44za12
·4 miesiące temu·discuss
Specialised models easily beat SOTA, case in point: https://nehmeailabs.com/flashcheck
44za12
·4 miesiące temu·discuss
All of us use the same keyboards more or less, maybe us randomly typing a large number is not as random as we would like to think. Just like how “asdf”, “xcyb” are common strings because these keys are together, there has to be some pattern here as well.
44za12
·6 miesięcy temu·discuss
Yes, I included a 'Model Selection Cheat Sheet' in the README (scroll down a bit).

I map them by task type:

Tiny (<3B): Gemma 3 1B (could try 4B as well), Phi-4-mini (Good for classification). Small (8B-17B): Qwen 3 8B, Llama 4 Scout (Good for RAG/Extraction). Frontier: GPT-5, Llama 4 Maverick, GLM, Kimi

Is that what you meant?
44za12
·6 miesięcy temu·discuss
This is the way. I actually mapped out the decision tree for this exact process and more here:

https://github.com/NehmeAILabs/llm-sanity-checks
44za12
·6 miesięcy temu·discuss
For simple extraction tasks, a delimiter-separated string uses 11 tokens vs 35 for JSON. Output tokens are the latency bottleneck.