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Hoot: Scheme on WebAssembly

https://www.spritely.institute/hoot/
2•AlexeyBrin•1m ago•0 comments

What the longevity experts don't tell you

https://machielreyneke.com/blog/longevity-lessons/
1•machielrey•2m ago•0 comments

Monzo wrongly denied refunds to fraud and scam victims

https://www.theguardian.com/money/2026/feb/07/monzo-natwest-hsbc-refunds-fraud-scam-fos-ombudsman
2•tablets•7m ago•0 comments

They were drawn to Korea with dreams of K-pop stardom – but then let down

https://www.bbc.com/news/articles/cvgnq9rwyqno
2•breve•9m ago•0 comments

Show HN: AI-Powered Merchant Intelligence

https://nodee.co
1•jjkirsch•12m ago•0 comments

Bash parallel tasks and error handling

https://github.com/themattrix/bash-concurrent
2•pastage•12m ago•0 comments

Let's compile Quake like it's 1997

https://fabiensanglard.net/compile_like_1997/index.html
1•billiob•12m ago•0 comments

Reverse Engineering Medium.com's Editor: How Copy, Paste, and Images Work

https://app.writtte.com/read/gP0H6W5
2•birdculture•18m ago•0 comments

Go 1.22, SQLite, and Next.js: The "Boring" Back End

https://mohammedeabdelaziz.github.io/articles/go-next-pt-2
1•mohammede•24m ago•0 comments

Laibach the Whistleblowers [video]

https://www.youtube.com/watch?v=c6Mx2mxpaCY
1•KnuthIsGod•25m ago•1 comments

Slop News - HN front page right now hallucinated as 100% AI SLOP

https://slop-news.pages.dev/slop-news
1•keepamovin•29m ago•1 comments

Economists vs. Technologists on AI

https://ideasindevelopment.substack.com/p/economists-vs-technologists-on-ai
1•econlmics•32m ago•0 comments

Life at the Edge

https://asadk.com/p/edge
3•tosh•37m ago•0 comments

RISC-V Vector Primer

https://github.com/simplex-micro/riscv-vector-primer/blob/main/index.md
4•oxxoxoxooo•41m ago•1 comments

Show HN: Invoxo – Invoicing with automatic EU VAT for cross-border services

2•InvoxoEU•42m ago•0 comments

A Tale of Two Standards, POSIX and Win32 (2005)

https://www.samba.org/samba/news/articles/low_point/tale_two_stds_os2.html
3•goranmoomin•45m ago•0 comments

Ask HN: Is the Downfall of SaaS Started?

3•throwaw12•46m ago•0 comments

Flirt: The Native Backend

https://blog.buenzli.dev/flirt-native-backend/
2•senekor•48m ago•0 comments

OpenAI's Latest Platform Targets Enterprise Customers

https://aibusiness.com/agentic-ai/openai-s-latest-platform-targets-enterprise-customers
1•myk-e•51m ago•0 comments

Goldman Sachs taps Anthropic's Claude to automate accounting, compliance roles

https://www.cnbc.com/2026/02/06/anthropic-goldman-sachs-ai-model-accounting.html
3•myk-e•53m ago•5 comments

Ai.com bought by Crypto.com founder for $70M in biggest-ever website name deal

https://www.ft.com/content/83488628-8dfd-4060-a7b0-71b1bb012785
1•1vuio0pswjnm7•54m ago•1 comments

Big Tech's AI Push Is Costing More Than the Moon Landing

https://www.wsj.com/tech/ai/ai-spending-tech-companies-compared-02b90046
4•1vuio0pswjnm7•56m ago•0 comments

The AI boom is causing shortages everywhere else

https://www.washingtonpost.com/technology/2026/02/07/ai-spending-economy-shortages/
2•1vuio0pswjnm7•58m ago•0 comments

Suno, AI Music, and the Bad Future [video]

https://www.youtube.com/watch?v=U8dcFhF0Dlk
1•askl•1h ago•2 comments

Ask HN: How are researchers using AlphaFold in 2026?

1•jocho12•1h ago•0 comments

Running the "Reflections on Trusting Trust" Compiler

https://spawn-queue.acm.org/doi/10.1145/3786614
1•devooops•1h ago•0 comments

Watermark API – $0.01/image, 10x cheaper than Cloudinary

https://api-production-caa8.up.railway.app/docs
2•lembergs•1h ago•1 comments

Now send your marketing campaigns directly from ChatGPT

https://www.mail-o-mail.com/
1•avallark•1h ago•1 comments

Queueing Theory v2: DORA metrics, queue-of-queues, chi-alpha-beta-sigma notation

https://github.com/joelparkerhenderson/queueing-theory
1•jph•1h ago•0 comments

Show HN: Hibana – choreography-first protocol safety for Rust

https://hibanaworks.dev/
5•o8vm•1h ago•1 comments
Open in hackernews

Capalyze – Natural language data analysis

https://capalyze.ai/home
7•alexliu518•8mo ago

Comments

alexliu518•8mo ago
Hey HN,

I’m one of the developers behind https://capalyze.ai, an AI-powered tool that helps small teams analyze their data using natural language — no code, no templates.

The idea came from conversations with indie e-commerce sellers and creators who had _tons_ of data (spreadsheets, reviews, exports from marketplaces) but lacked the time or tooling to make sense of it.

With Capalyze, you can:

1. Ask questions like _"What are the most common complaints in these reviews?"

2. Paste or upload product data and get a summary of pricing trends

3. Generate charts, compare columns, or extract keywords — just by asking

It works best with your own datasets right now (CSV, Excel, etc.). Web scraping isn’t live yet— we’re actively building it, and you can follow our updates if that’s important to you.

We’ve tested it with early users in e-commerce, real estate, and content — and the feedback has been super helpful. One user called it “ChatGPT with a purpose.”

We’d really appreciate feedback from the HN community:

1. Is the interface intuitive?

2. Are the responses helpful and explainable?

3. What would make this more useful for you?

Here’s the link: https://capalyze.ai Happy to answer questions and chat more about how we built it (multi-model backend with OpenAI, Claude, DeepSeek, plus a simple orchestration layer).

Thanks!

pbronez•8mo ago
My initial thought is "this can't possibly work."

We don't even have text to SQL working properly, and excel is so much messier than that.

What simplifying assumptions are you making about the spreadsheets people send you? How do you ensure correct results?

alexliu518•8mo ago
Very critical question. Excel is indeed more complex. Before analysis, Capalyze first preprocesses the data, which is crucial. We have designed a set of preprocessing algorithms that essentially focus on how to better identify the data suitable for analysis in Excel and clean and repair it. This process also leverages LLMs, as we found that LLMs perform quite well in recognizing table structures.
helltone•8mo ago
How does the chart generation work under the hood? It's quite magical. Also how did you build the spreadsheet interface it's very cool.
alexliu518•8mo ago
Two main aspects: 1. How to handle the data related to the target problem; 2. Choosing suitable charts to present this data. #1. By leveraging the increasingly powerful coding capabilities of LLMs, we can appropriately process raw data to obtain a dataset that closely aligns with our goals; #2. We expanded echart and utilized its rich chart types already supported, along with the Univer SDK from the Univer team, ultimately creating tables.
AIDataWhiz•8mo ago
Very interesting project. I may need to use data analysis. Keep it up.
alexliu518•8mo ago
Thank you very much for your support. If you have any questions, please feel free to give us feedback.
qwbfsa•8mo ago
Cool!
alexliu518•8mo ago
Thank you for your support