Close Menu
  • Home
  • AI
  • Art & Style
  • Economy
  • Entertainment
  • International
  • Market
  • Opinion
  • Politics
  • Sports
  • Trump
  • US
  • World
What's Hot

Britain and China rush to conclude commercial deals

February 2, 2026

Justin Rose wins Farmers Insurance Open with a tournament-record 23-under par at Torrey Pines | Golf News

February 2, 2026

Oil prices fall as President Trump hints at talks with Iran, easing fears of supply shock

February 2, 2026
Facebook X (Twitter) Instagram
WhistleBuzz – Smart News on AI, Business, Politics & Global Trends
Facebook X (Twitter) Instagram
  • Home
  • AI
  • Art & Style
  • Economy
  • Entertainment
  • International
  • Market
  • Opinion
  • Politics
  • Sports
  • Trump
  • US
  • World
WhistleBuzz – Smart News on AI, Business, Politics & Global Trends
Home » Inception raises $50 million to build code and text pervasive model
AI

Inception raises $50 million to build code and text pervasive model

Editor-In-ChiefBy Editor-In-ChiefNovember 6, 2025No Comments3 Mins Read
Share Facebook Twitter Pinterest LinkedIn Tumblr Telegram Email Copy Link
Follow Us
Google News Flipboard
Share
Facebook Twitter LinkedIn Pinterest Email


With so much money flowing into AI startups, it’s a good time to become an AI researcher and test your ideas. Also, if your idea is sufficiently novel, it may be easier to obtain the necessary resources as an independent company rather than within a large research institute.

This is the story of Inception, a startup that develops diffusion-based AI models. The company just raised $50 million in seed funding led by Menlo Ventures with participation from Mayfield, Innovation Endeavors, Nvidia’s NVentures, Microsoft’s M12 Fund, Snowflake Ventures, and Databricks Investment. Andrew Ng and Andrej Karpathy provided additional angel funding.

The project leader is Professor Stefano Armon of Stanford University, whose research focuses on diffusion models that generate output through iterative refinement rather than word-by-word. These models power image-based AI systems such as Stable Diffusion, Midjourney, and Sora. Ermon, who has been working on these systems since before the AI ​​boom took off, uses Inception to apply the same model to a broader range of tasks.

Along with the funding, the company released a new version of its Mercury model designed for software development. Mercury is already integrated into many development tools, including ProxyAI, Buildglare, and Kilo Code. Most importantly, Ermon said the diffusion approach helps Inception’s model save on two of the most important metrics: latency (response time) and computational cost.

“These diffusion-based LLMs are much faster and more efficient than what others are building today,” Ermon says. “It’s a completely different approach, and there’s a lot of innovation that can still be done.”

A little background knowledge is required to understand the technical differences. Diffusion models are structurally different from the autoregressive models that dominate text-based AI services. Autoregressive models such as GPT-5 and Gemini work sequentially, each predicting the next word or word fragment based on what was previously processed. Diffusion models trained for image generation take a more holistic approach, incrementally changing the overall structure of the response until it matches the desired outcome.

Conventional wisdom is to use autoregressive models for text applications, and that approach has been very successful with recent generations of AI models. However, a growing body of research suggests that diffusion models may perform better when the models process large amounts of text or manage data constraints. According to Ermon, these properties are a big advantage when performing operations on large codebases.

tech crunch event

san francisco
|
October 13-15, 2026

The pervasive model also provides flexibility in how hardware is used, an advantage that is especially important as the infrastructure demands of AI become clearer. While autoregressive models require operations to be performed one after the other, diffuse models can process many operations simultaneously, significantly reducing latency for complex tasks.

“Our benchmark is over 1,000 tokens per second, which is much higher than what’s possible using existing autoregressive technology, because our product is built to be parallel. It’s built to be really, really fast,” Ermon says.



Source link

Share. Facebook Twitter Pinterest LinkedIn Tumblr Email
Editor-In-Chief
  • Website

Related Posts

These AI note-taking devices help you record and transcribe meetings

February 2, 2026

AI staff reduction or “AI cleaning”? |Tech Crunch

February 1, 2026

India to cut taxes to zero until 2047 to attract global AI workloads

February 1, 2026
Add A Comment

Comments are closed.

News

Cuba denies accusations of security threat as US increases pressure | Political News

By Editor-In-ChiefFebruary 2, 2026

The Cuban government rejected accusations that it threatened U.S. security and insisted it was ready…

President Trump to close Kennedy Center for renovations following backlash from performers | 2020 Donald Trump News

February 1, 2026

5-year-old boy and father detained by ICE return to Minnesota | Migration News

February 1, 2026
Top Trending

These AI note-taking devices help you record and transcribe meetings

By Editor-In-ChiefFebruary 2, 2026

Digital meeting note-taking tools like Read AI, Fireflies.ai, Fathom, and Granola can…

AI staff reduction or “AI cleaning”? |Tech Crunch

By Editor-In-ChiefFebruary 1, 2026

How many of the companies that have recently made layoffs have truly…

India to cut taxes to zero until 2047 to attract global AI workloads

By Editor-In-ChiefFebruary 1, 2026

As the global race to build AI infrastructure accelerates, India has offered…

Subscribe to News

Subscribe to our newsletter and never miss our latest news

Welcome to WhistleBuzz.com (“we,” “our,” or “us”). Your privacy is important to us. This Privacy Policy explains how we collect, use, disclose, and safeguard your information when you visit our website https://whistlebuzz.com/ (the “Site”). Please read this policy carefully to understand our views and practices regarding your personal data and how we will treat it.

Facebook X (Twitter) Instagram Pinterest YouTube

Subscribe to Updates

Subscribe to our newsletter and never miss our latest news

Facebook X (Twitter) Instagram Pinterest
  • Home
  • Advertise With Us
  • Contact US
  • DMCA Policy
  • Privacy Policy
  • Terms & Conditions
  • About US
© 2026 whistlebuzz. Designed by whistlebuzz.

Type above and press Enter to search. Press Esc to cancel.