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Show HN: I built an AI dataset generator

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169 points by matthewhefferon 10 months ago · 35 comments

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mritchie712 10 months ago

I use this prompt to spin up demos for customers at https://www.definite.app/:

    @Web Do some research on https://somecompany.com and write up a detailed overview of what the company does. What might their database schema look like?

    I need you to build a mock database for them in duckdb for a demo

Then:

    Create a uv project and write a python script to add demo data. Use Faker.

    @Web research how many customers they have. Make the database to appropriate scale.

Only takes a few minutes in Cursor, should work just as well in Claude Code. It works really well for the companies core business, but I still need to create one to populate 3rd party sources (e.g. Stripe, Salesforce, Hubspot, etc.).
  • matthewhefferonOP 10 months ago

    Cool, I don’t do customer-specific demos, but I like this idea. I might add this use case as an option. Thanks for sharing!

matthewhefferonOP 10 months ago

I was tired of digging through Kaggle and writing prompts over and over just to get fake data for dashboards and demos. So I built a little tool to help me out.

It uses GPT-4o to generate a detailed schema and business rules based on a few dropdowns (like business type, schema structure, and row count). Then Faker fills in the rows using those rules, which keeps it fast and cheap.

You can preview the data, export as CSV or SQL, or spin up Metabase with one click to explore the data. It’s open-source, still in early stages, but wanted to share, get feedback and see how you'd improve it.

paxys 10 months ago

Feature request - make the URL for the OpenAI API configurable. That way one can swap it out with Anthropic or any other LLM provider of their choice that provides an OpenAI-compatible API.

MattSayar 10 months ago

I used Anthropic's new Claude API integration with artifacts to make a probably-worse version that you can play with (after logging in of course).

https://claude.ai/public/artifacts/eb7d8256-6d21-4c85-af9b-c...

I used this GitHub repo as context and Claude Opus 4 to create this artifact

  • NitpickLawyer 10 months ago

    Haha, I find this kind of exercise telling for what's coming to the one-size-fits-all SaaS companies out there. I see a future where small teams can in-house the set of features they actually need, and a big drop in SaaS usage. Avoids the big vendor lock-in problems, unwanted features and bypasses all the accenture-style consulting fees.

    • MattSayar 10 months ago

      Optimistically, this will allow smaller teams to do more, hopefully incentivizing the consulting places to help out with harder problems.

ChrisMarshallNY 10 months ago

I wrote a Swift CLI app to generate dummy user profiles for an app we wrote (I needed many more than we’ll actually get, and I needed screenshots for the App Store that didn’t have real user data).

It was pretty “dumb,” and used thispersondoesnotexist.com for profile pics.

smcleod 10 months ago

This is a bit confusing, I sort of expected it to be a bit like Kiln https://github.com/Kiln-AI/Kiln to generate datasets for AI, but it looks like the outputs are more just data / files than datasets?

jasonthorsness 10 months ago

AI is really good at this sort of thing; I've been using an LLM with Faker for some time to load data for demos into SingleStore: https://github.com/jasonthorsness/loadit

reedlaw 10 months ago

"Dataset" connotes training data, but this seems to generate sample data, maybe for testing an application. Is there any use for synthetic datasets in ML?

klntsky 10 months ago

You absolutely do not need docker as a requirement here

wiradikusuma 10 months ago

"Stack: OpenAI API (GPT-4o for data generation)" -- I wonder if someday we'll have a generic API like how it's done in Java (e.g., Servlet API implemented by Tomcat, JBoss etc), so everyone can use their favorite LLM instead of having to register each provider like streaming services e.g. Disney+, Netflix, etc.

margotli 10 months ago

Feels like a useful tool for anyone learning analytics or just needing sample data to test with.

alienbaby 10 months ago

Good for the shape of data, but what about the actual data? If it's entirely random then it's more of a UI demo tool than a tool to generate useful data.

ajar8087 10 months ago

I was thinking more synthetic data to fit models like https://whitelightning.ai/

jmsdnns 10 months ago

depending on what you're using the synthetic data for, it is sometimes called distillation. here is a robust example from some upenn students: https://datadreamer.dev/

b0a04gl 10 months ago

seen this pattern a before too. faker holds shape without flow. real tables come from actions : retry, decline, manual review, all that. you just set col types, you might miss why the row even happened. gen needs to simulate behavior, not format

  • ajd555 10 months ago

    Was looking for this exact comment. I completely agree with this method, especially if you're testing an entire flow, and not just a UI tool. You want to test the service that interfaces between the API and the dabatase.

    I've been writing custom simulation agents (just simple go programs) that simulate different users of my system. I can scale appropriately and see test data flow in. If metabase could generate these simulation agents based on a schema and some instructions, now that would be quite neat! Good job on this first version of the tool, though!

  • matthewhefferonOP 10 months ago

    That’s a solid callout, appreciate you pointing it out. I’ll definitely dig into that more.

  • tomrod 10 months ago

    The best synthetic data are those that capture ingestion and action, instead of just relationship.

    Relationship is important, but your data structure might capture a virtually infinite number of unexpected behaviors that you would preferably call errors or bugs.

  • zikani_03 10 months ago

    This is well put. I once built a tool called [zefaker] (github.com/creditdatamw/zefaker) to test some data pipelines but never managed to get a good pattern or method for generating data that simulates actions or scenarios that didn't involve too much extra work.

    Was hoping this AI dataset generator solves that issue, but i guess it is still early days. Looks good though and using Faker to generate the data locally sounds good as a cost-cutting measure, but also potentially opens room for human-in-the-loop adjustments of the generated data.

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