Hyperparam

126 posts

Hyperparam banner
Hyperparam

Hyperparam

@hyperparamapp

Using JavaScript to make better AI

Seattle เข้าร่วม Aralık 2023
88 กำลังติดตาม63 ผู้ติดตาม
Hyperparam
Hyperparam@hyperparamapp·
If you’ve got multimodal datasets, Claude Code on terminal isn’t going to work — but we’ve got you. We’re excited to be at GTC announcing multimodal support in Hyperparam: images, audio and geospatial data. Drop a dataset on Hyperparam to check it out.
GIF
English
0
0
0
29
Hyperparam
Hyperparam@hyperparamapp·
Hyparquet-writer v0.12.3 with a 10%+ speed increase! JS Optimization Tip: Always prefer Uint8Array over ArrayBuffer when you can. ArrayBuffer.slice makes a copy, Uint8Array can slice for free.
English
0
1
2
52
Hyperparam
Hyperparam@hyperparamapp·
Apache Parquet added an Implementation Status page for parquet clients. But Hyparquet had a shameful red ❌ on Variant Encoding. But JavaScript deserves first-class Parquet support! So I stayed up late, and now Hyparquet 1.24.0 has full Variant support ✅ Peer pressure works!
GIF
English
1
1
2
67
Hyperparam
Hyperparam@hyperparamapp·
Squirreling is a browser-native SQL engine built for interactive data exploration with async execution, streaming results, and no traditional backend. Kenny wrote about why existing tools struggle with this workflow, explains his thought process behind Squirreling, and gives insights into its architecture.
Kenny Daniel@platypii

Announcing Squirreling: an open-source JavaScript SQL engine built for interactive data exploration in the browser. It prioritizes streaming, late materialization, and async user-defined functions. No other database engine can do this in the browser.

English
0
0
0
19
Hyperparam รีทวีตแล้ว
Kenny Daniel
Kenny Daniel@platypii·
Someone leaked our architecture diagram 😲 What if our competitors learn that you don’t actually need a backend??
Kenny Daniel tweet media
English
1
1
3
111
Hyperparam
Hyperparam@hyperparamapp·
AI-assisted scoring is great for surfacing the patterns in LLM chat logs that you’d never find manually, but you still need a human looking at those patterns and deciding which ones matter. Even if you use AI for everything, the human-in-the-loop still provides that extra layer of judgment a machine can’t deliver unless you tell it what to do.
English
0
0
0
84
Hyperparam
Hyperparam@hyperparamapp·
Are you really looking at your LLM data? Or just the tiny slice your tools can load? If you’ve ever wondered what’s hiding in the rows you never see (the hallucinations buried in long-form text, tone shifts after certain prompts) this is the breakdown you’ll want to read. We wrote up what we built, why we built it, and what becomes possible when you can explore AI-scale datasets in full. blog.hyperparam.app/explore-massiv…
English
0
0
0
16
Hyperparam
Hyperparam@hyperparamapp·
Reasoning models now process more than half of all token usage, according to the OpenRouter 100T-token report. Especially notable has been a significant shift to coding over this past year: developers are using LLMs for everything from logic debugging to script drafting. What use case is responsible for the majority of your token use?
English
0
0
0
24
Hyperparam
Hyperparam@hyperparamapp·
A tiny group of engineers already treat the browser like a first-class data workbench. The rest of the world still acts like the browser collapses if you look at it wrong.
English
0
0
0
16
Hyperparam
Hyperparam@hyperparamapp·
We love AI, use it for everything. But we will NOT ship slop!
English
0
0
1
152
Hyperparam
Hyperparam@hyperparamapp·
Now sponsoring bundlephobia on github. They are a doing a fantastic service for the JS community.
Hyperparam tweet media
English
0
0
0
32
Hyperparam
Hyperparam@hyperparamapp·
Browser-first data tools > Python-first. Hyperparam opens Parquet datasets in the browser with no backend, so your time-to-first-row is ~instant #BurnTheBackEnd
GIF
English
0
1
2
190
Hyperparam รีทวีตแล้ว
Kenny Daniel
Kenny Daniel@platypii·
Today I'm excited to announce that we are launching @hyperparamapp, an AI-powered Swiss Army knife for massive LLM datasets. It lets you view, score, filter, label, and transform LLM data directly in the browser. I started Hyperparam one year ago because I knew that the world of data was changing, and existing tools like Python and Jupyter Notebooks were not built for the scale of LLM data. The weights of LLMs may be tensors, but the input and output of LLMs are massive piles of text. The training set of LLMs is a large corpus of text from various sources, meticulously cleaned and preprocessed. The output of LLMs is also text, and it’s being produced in even greater quantities than the training data. No human has the patience to sift through all that text, so we need better tools to help us understand and analyze it. That's why I built Hyperparam to be the first tool specifically designed for working with LLM data at scale. To accomplish this required rethinking how data analysis tools work. I started Hyperparam as a side project and wanted to see if I could build it entirely in the browser. No Python, no servers, just pure interactive web experience. I'm pretty excited about how it turned out. Hyperparam is fast, powerful, and easy to use. It can handle datasets with millions of rows of text and provides a rich set of tools for exploring and analyzing that data using LLMs agents for assistance. Every company is now producing volumes of LLM data. Chat logs, agent traces, coding agent logs, and more. Hyperparam is designed to help you make sense of all that data. If you're working with LLM data (and let's be honest... every company is producing LLM data now), I encourage you to give Hyperparam a try. It’s free while in beta. 🚀
English
5
6
13
880
Hyperparam
Hyperparam@hyperparamapp·
We’re excited to announce the launch of Hyperparam–an AI-powered Swiss Army knife for your data. It lets you view, score, filter, label, categorize, and transform massive datasets entirely in the browser. No backend, no setup. It’s blazing fast, interactive, lets one person handle workloads that usually require a whole team, and free to use during open beta. Try it here:
English
1
0
1
36
Hyperparam
Hyperparam@hyperparamapp·
Everyone working with LLM data has been there: thousands of conversations and no way to find the one that matters. Existing data tools were not built for the massive scale of LLM data. Hyperparam was built to solve this problem. Free while in beta starting 11/19.
Hyperparam tweet media
English
0
0
0
128
Hyperparam
Hyperparam@hyperparamapp·
Browser-native isn’t a toy. It’s an architectural choice that puts performance and UX at the center instead of bolting them on later. Most systems start backend first, then hand off to the frontend to make it usable. We started with the user — and built the app around them.
English
0
0
0
170
Hyperparam
Hyperparam@hyperparamapp·
If your app is useful, people use it. If it isn’t, they don’t. Check out the lessons our founder, @platypii, learned from our year of open source data transformation in this Q&A:
English
1
0
0
24