@VincentLogic: Drowning in new Arxiv papers every day? Head spinning. Just discovered a treasure trove of a website that aggregates the latest AI papers and model benchmarks. Clean interface, just check Trending or filter by week/month. Best part: each paper directly links to the benchmarks and models it uses.
Summary
Recommend a free website sophon.at/papers that aggregates the latest AI papers and model benchmarks. Clean interface, supports Trending or weekly/monthly filtering. Each paper directly links to its benchmarks and models.
View Cached Full Text
Cached at: 06/13/26, 01:07 AM
Overwhelmed by new papers on Arxiv every day? It’s a headache.
Just discovered a treasure of a website that aggregates the latest AI papers and model benchmarks.
The interface is clean — you can directly view Trending or filter by week/month. The best part is that each paper is directly linked to the benchmarks and models it uses, so you don’t have to search for data everywhere.
Free and easy to use. If you’re doing research or keeping up with tech, just bookmark it.
http://sophon.at/papers
AI research papers
Source: https://sophon.at/papers Trending research and the full catalog - each paper linked to the benchmarks, methods, and models it introduces.
Similar Articles
@vikingmute: Who created this amazing website? https://sophon.at It collects and displays all AI-related information and content: papers, newest models, benchmarks, leaderboards. Papers can be viewed online directly, very comprehensive. Also has a feed to subscribe for the latest news. And this…
This article recommends a website called Sophon, which aggregates AI papers, models, benchmarks, leaderboards, and reinforcement learning environments. It provides real-time rankings, comparisons, and subscription features, and is hailed as the Bloomberg terminal for AI research.
@sheriyuo: AI method for reading papers: Read http://arxiv.org/abs/xxxx.xxxxx, summarize the core idea of this paper
Recommends using AI for reading papers and references the three-pass method from the classic 'How to Read a Paper' technique.
@VincentLogic: Discovered a powerful tool for high-quality AI information sources! follow-builders is an open-source project that tracks the daily updates of top AI figures worldwide and automatically summarizes and pushes them to you. Created by Zhang Ziya (who transitioned from a humanities background at Harvard to AI), its core philosophy is solid: "Follow builders, not influencers." It ignores trend-chasing influencers and focuses on real AI product builders...
Introduces follow-builders, an open-source project that automatically tracks updates from AI builders and generates summary notifications, aiming to help users access high-quality information.
@GitHub_Daily: To dive deep into model research, you can't just stay at the application layer—you need to understand how the underlying system is trained and optimized. I stumbled upon LLMSys-PaperList, a carefully curated collection of papers related to large model systems. It is continuously updated from 2022 to the latest top conference papers in 2026, and organized by categories such as training, inference, multimodality...
A carefully curated collection of papers related to large model systems, covering training, inference, multimodality, and more. It is continuously updated and includes technical reports, frameworks, and courses, making it a valuable reference for researchers and developers.
@PierceZhang34: Sharing an open collaborative repository focused on AI-assisted research: Awesome Vibe Research. The core goal is to collect and curate reusable, verifiable, and evolvable AI-assisted components across the full research workflow (from idea generation to paper publication and dissemination), including: Agents, Skills...
Shared an open collaborative repository Awesome Vibe Research maintained by ModelScope. This repository collects and curates reusable, verifiable, and evolvable AI-assisted components across the full research workflow, including agents, skills, workflows, tools, and best practices. It aims to help researchers and developers leverage AI to improve research efficiency.