Загрузка видео...

Не удалось загрузить видео

На главную

Check this!! Microsoft open-sourced a no-code data analysis tool. It's called Data Formulator and it provides AI-powered data analysis and an drag-and-drop UI for viz tasks. It also works beyond the initial dataset by creating relevant fields and the corresponding viz.

260,055 просмотров • 1 год назад •via X (Twitter)

Комментарии: 10

Фото профиля house of crypto
house of crypto1 год назад

Datasecurity? Asking as🇪🇺

Фото профиля IDI Consulting
IDI Consulting1 год назад

Turn data into actionable insights with IDI Consulting’s Analytics services. We help you unlock the power of your data to drive smarter decisions and achieve better outcomes. Contact us today to get started.

Фото профиля Akshay 🚀
Akshay 🚀1 год назад

Great find! Thanks for sharing Avi!

Фото профиля Avi Chawla
Avi Chawla1 год назад

Happy to help 🤝

Фото профиля L8NTLABS
L8NTLABS1 год назад

No-code data analysis tools like Data Formulator are a game changer for non-tech folks, but I'm curious to see how it handles complex datasets. Reminds me of the time I had to debug a GPU issue while on hold with a client - multitasking is underrated, indeed.

Фото профиля Abhinav Girdhar
Abhinav Girdhar1 год назад

Microsoft’s Data Formulator looks like a game-changer No-code, AI-powered data analysis with drag-and-drop viz—excited to see how it evolves!

Фото профиля sanchay
sanchay1 год назад

this data Formulator looks solid

Фото профиля charlie100kirk
charlie100kirk1 год назад

Thanks bro. COuld you please share its link or github or app link? WOuld appreicate brother

Фото профиля BenMakesDataEasy
BenMakesDataEasy1 год назад

Wow!

Фото профиля ☩ PRNCLY ☩ 🇹🇿
☩ PRNCLY ☩ 🇹🇿1 год назад

@elisha_bulalu

Похожие видео

Today, we’re pushing a major update to Edison Analysis, our data analysis agent, which is tuned for scientific research and SOTA across data analysis benchmarks. In contrast to Kosmos, which runs for 6-12 hours and produces tens of thousands of lines of code, Edison Analysis runs for seconds to minutes and is best for specific, well-defined computational tasks. It is available both on our platform under the Analysis tab, and via API, and costs only one credit per run, so it is available to users on both free and paid tiers. Edison Analysis is a modified version of the data analysis agent Kosmos uses in its trajectories. Try it out! One of the most important improvements over our previous data analysis agents has been the addition of a specialized data retrieval tool. Edison Analysis can either use this tool to access data, or can pull data down directly via API. To evaluate this tool, we ranked the most commonly used public data repositories across recent papers from BioRxiv, and created a new benchmark that measures the ability of a language agent system to retrieve raw data from those sources. Edison Analysis gets 71% on this benchmark, and we’ll be working to increase this over time. You can read more about our benchmarks in the our blog post, link below. Some features worth highlighting: 1. Edison Analysis produces a report on the analysis it runs, along with a Jupyter notebook that you can download to reproduce the analysis yourself. Every figure it produces is linked back to the specific lines of code used to produce the figure, to make it easy to reproduce. 2. It works well with both Python and R. 3. One of the best uses for Edison Analysis is to use it to retrieve datasets that you can then analyze with Kosmos. We have a bunch of major improvements to Edison Analysis coming in the next few months that we’re excited to share. In the meantime, congratulations to the team, especially Ludovico Mitchener, Jon Laurent, Conor Igoe , Alex Andonian, and many more.

Sam Rodriques

61,667 просмотров • 6 месяцев назад

Data teams spend weeks on simple requests. (This AI answers them in minutes.) Most data analysis is repetitive manual tasks. Data teams spend more time on setup than actual analysis. The workflow usually looks like this: → Run some exploratory data analysis in a local Jupyter notebook or environment → Pull data from multiple disconnected sources → Write code from scratch for every analysis → Export static charts that stakeholders can't explore (or wrestle with legacy BI to create a dashboard) → Manually send updates via email or Slack when data changes → Start over for each new request Most teams accept this as "how data analysis works." While business decisions wait for insights. That's where Fabi changes the entire approach. It's a powerful, AI-native platform built for teams that want to boost productivity and supercharge their data workflows. Instead of working on separate tools and manual processes, you collaborate on analysis that automatically delivers insights where teams work. Here's what makes Fabi different: AI-Native Analysis Environment ↳ SQL and Python work together with AI assistance that handles coding and debugging automatically. Smart Automation Workflows ↳ Automatically send AI-powered reports and summaries right where business works in Slack, email, and spreadsheets. Universal Data Integration ↳ Analyze data from files, Google Sheets, Airtable, plus your data warehouse and databases in one place. Collaborative Data Apps ↳ Create interactive dashboards that stakeholders can explore and ask follow-up questions directly. What you can do with Fabi that legacy BI can't: ➟ Send AI-generated insights directly to Slack channels ➟ Automatically email data summaries to stakeholders ➟ Analyze uploaded files without complex ETL processes ➟ Collaborate on analysis like Google Docs for data ➟ Build workflows that push insights to spreadsheets Perfect for teams that want to move beyond the constraints of legacy and increase their impact. Teams using Fabi see immediate results: ✓ Insights delivered in minutes instead of days ✓ Reduced context switching between tools ✓ Stakeholders explore data independently ✓ Workflows automated to save hours of manual work From analysis to automated delivery - all in one AI-native environment. 📌 Try Fabi today: 👉 Follow Fabi.ai and marc for Fabi updates. 🔄 Repost to help other teams streamline data analysis #DataAnalysis #ModernBI #DataOps #InteractiveDashboards #FabiPartnership #SponsoredByFabi

Andrew Bolis

36,504 просмотров • 8 месяцев назад