Innovations in Medical Education Conference Confronts the AI Tipping Point - University of Miami
Innovations in Medical Education Conference Confronts the AI Tipping Point University of Miami
Could not retrieve the full article text.
Read on Google News: AI →Sign in to highlight and annotate this article

Conversation starters
Daily AI Digest
Get the top 5 AI stories delivered to your inbox every morning.
More about
conference![First time NeurIPS. How different is it from low-ranked conferences? [D]](https://d2xsxph8kpxj0f.cloudfront.net/310419663032563854/konzwo8nGf8Z4uZsMefwMr/default-img-robot-hand-JvPW6jsLFTCtkgtb97Kys5.webp)
First time NeurIPS. How different is it from low-ranked conferences? [D]
I'm a PhD student and already published papers in A/B ranked paper (10+). My field of work never allowed me to work on something really exciting and a core A* conference. But finally after years I think I have work worthy of some discussion at the top venue. I'm referring to papers (my field and top papers) from previous editions and I notice that there's a big difference on how people write, how they put their message on table and also it is too theoretical sometimes. Are there any golden rules people follow who frequently get into these conferences? Should I be soft while making novelty claims? Also those who moved from submitting to niche-conferences to NeurIPS/ICML/CVPR, did you change your approach? My field is imaging in healthcare. submitted by /u/ade17_in [link] [comments]

Q&A: AWS on new AI agents, quantum computing in healthcare
LAS Vegas – Dr. Rowland Illing, chief medical officer at Amazon Web Services (AWS), sat down with MobiHealthNews at the recent 2026 HIMSS Global Health Conference & Exposition here to discuss how AI and quantum computing could unlock new capabilities in healthcare, enabling organizations to solve complex problems and innovate in ways previously unimaginable.
Knowledge Map
Connected Articles — Knowledge Graph
This article is connected to other articles through shared AI topics and tags.
More in Research Papers

RFT FPCM OV - a Hugging Face Space by RFTSystems
huggingface.co RFT FPCM OV - a Hugging Face Space by RFTSystems RFT Fixed Parameter Cosmology Model, Open Validation 1. Fixed‑Parameter Cosmology Panel (FPCM‑OV) This side of the Space shows the core RFT cosmology running on one locked parameter set. Nothing adjusts itself — the whole model stands or falls on this single solution. What people can see here Age at z = 13.67: RFT gives 568.52 Myr , which lines up with JWST early‑galaxy maturity without any tuning. Horizon Ratio: The model naturally produces a horizon about 490× larger than ΛCDM. (This removes the horizon problem without inflation.) Unified Expansion Curve (H_RFT) The purple curve shows how expansion behaves across all redshifts using the same fixed parameters. JWST Maturity Plot The cyan and red lines show how RFT’s predicted



Discussion
Sign in to join the discussion
No comments yet — be the first to share your thoughts!