News

NVIDIA Releases Cosmos-Reason1: A Suite of AI Models Advancing Physical Common...

AI Observer
News

Asus is developing the ROG Flow Z13 to make more sense...

AI Observer
News

Nvidia CEO: PC gaming will never be rendered entirely by AI

AI Observer
News

Nvidia’s AI Snake is feeding itself. Announces GeForce GTX 5090 GPU....

AI Observer
Mergers & Acquisitions

Navigating AI M&A: A Comprehensive Guide to Due Diligence in the...

AI Observer
News

LG and Samsung will add Microsoft Copilot to their new TVs.

AI Observer
AI Hardware

HP at CES: The latest Elitebooks powered by Intel’s AI chips

AI Observer
Global Policies

Experts say that Trump revoking Biden’s AI EO will cause chaos...

AI Observer
Global Policies

ServiceNow launches enterprise AI governance capabilities

AI Observer
Expert Columns

Tips for ChatGPT Voice Mode? What are the best AI uses...

AI Observer
News

More and more young people are choosing the agricultural profession, and...

AI Observer

Featured

News

Sampling Without Data is Now Scalable: Meta AI Releases Adjoint Sampling...

AI Observer
Education

Meta Researchers Introduced J1: A Reinforcement Learning Framework That Trains Language...

AI Observer
News

This AI Paper Introduces PARSCALE (Parallel Scaling): A Parallel Computation Method...

AI Observer
News

Marktechpost Releases 2025 Agentic AI and AI Agents Report: A Technical...

AI Observer
AI Observer

Sampling Without Data is Now Scalable: Meta AI Releases Adjoint Sampling...

Data Scarcity in Generative Modeling Generative models traditionally rely on large, high-quality datasets to produce samples that replicate the underlying data distribution. However, in fields like molecular modeling or physics-based inference, acquiring such data can be computationally infeasible or even impossible. Instead of labeled data, only a scalar reward—typically derived...