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yonl

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yonl
·12 months ago·discuss
Congrats on the launch. I never understood why an AI meeting notetaker needed sota LLMs and subscriptions (talking about literally all the other notetakers) - thanks for making it local first. I use a locally patched up whisperx + qwen3:1.7 + nomic embed (ofcourse with a swift script that picks up the audio buffer from microphone) and it works just fine. Rarely i create next steps / sop from the transcript - i use gemini 2.5 and export it as pdf. I’ll give Hyprnote a try soon.

I hope, since it’s opensource, you are thinking about exposing api / hooks for downstream tasks.
yonl
·last year·discuss
I would agree to this point as well.

Speaking of implementation, i don’t mind if a browser extension forward cookies from my browser to the automation (privacy and security is an issue of course, and i’d ideally want the cookies to not leave my device, but personally i’m okay with some trade off).
yonl
·last year·discuss
This is really interesting. At my previous company, I built a data lakehouse for operational reporting with recency prioritization (query only recent data, archive the rest). While there was no LLM integration when I left, I've learned from former colleagues that they've since added a lightweight LLM layer on top (though I suspect Dustt's implementation is more comprehensive).

Our main requirement was querying recent operational data across daily/weekly/monthly/quarterly timeframes. The data sources included OLTP binlogs, OLAP views, SFDC, and about 15 other marketing platforms. We implemented a datalake with our own query and archival layers. This approach worked well for queries like "conversion rate per channel this quarter" where we needed broad data coverage (all 17 integrations) but manageable depth (reasonable row scanned).

This architecture also enabled quick solutions for additional use cases, like on-the-fly SFDC data enrichment that our analytics team could handle independently. Later, I learned the team integrated LLMs as they began dumping OLAP views inside the datalake for different query types, and eventually replaced our original query layer with DuckDB.

I believe approaches like these (what I had done as in house solution and what definite may be doing more extensively) are data and query-pattern focused first. While it might initially seem like overkill, this approach can withstand organizational complexity challenges - with LLMs serving primarily as an interpretation layer. From skimming the Dustt blog, their approach is refreshing, though it seems their product was built primarily for LLM integration rather than focusing first on data management and scale. They likely have internal mechanisms to handle various use cases that weren't detailed in the blog.
yonl
·5 years ago·discuss
Point and click to navigate is pretty slow compared to keyboard driven approaches. Realized after switching to vim. Probably because, after certain point, it just the reflex which drives vim.