MIT LIDS

152 posts

MIT LIDS banner
MIT LIDS

MIT LIDS

@MITLIDS

LIDS is an interdepartmental research lab in @MIT_SCC Affiliations include @MITEECS @MITAeroAstro @MITMechE @MIT_CEE @ORCenter @MITIDSS @MITSloan @eapsMIT

Cambridge, MA Sumali Mayıs 2024
134 Sinusundan506 Mga Tagasunod
MIT LIDS nag-retweet
Gioele Zardini
Gioele Zardini@GioeleZardini·
Check out this great article written by Stephanie Martinovich about our work on AMoD reproducibility. Work led by Xinling Li and Meshal Alharbi 💥 recently published in IEEE Transactions on Robotics!!! ieeexplore.ieee.org/document/11397…
MIT CEE@MIT_CEE

A new study led by @GioeleZardini, CEE graduate student Xinling Li, and @MITEECS graduate student Meshal Alharbi finds autonomous mobility-on-demand research must become more transparent and reproducible to guide real-world transportation decisions. cee.mit.edu/before-autonom…

English
0
1
6
321
MIT LIDS nag-retweet
Luca Carlone
Luca Carlone@lucacarlone1·
Working on the SLAM Handbook has been one of the highlights of my career — I’m grateful to have collaborated with such an incredible group of co-editors and contributors. The handbook is now free and open-source: dspace.mit.edu/handle/1721.1/… [1/n]
Luca Carlone tweet media
English
3
50
378
20.1K
MIT LIDS
MIT LIDS@MITLIDS·
Spotting overconfident #LLMs New work from LIDS Kimia Hamidieh, Marzyeh Ghassemi, and collaborators introduces a more reliable uncertainty metric to flag when models are confident but wrong. This could help users better judge when to trust #AI outputs. bit.ly/4sobRZN
MIT LIDS tweet media
English
0
0
0
14
MIT LIDS
MIT LIDS@MITLIDS·
Planning complex visual tasks with #genAI New system from Yilun Hao, Yongchao Chen, Yang Zhang, Chuchu Fan plans long-term visual tasks 2x as well as existing methods. This could help robots navigate changing environments or coordinate multirobot assembly. bit.ly/4t2vczN
MIT LIDS tweet media
English
0
0
1
205
MIT LIDS
MIT LIDS@MITLIDS·
🧬 AI for a fuller picture of the cell A new #AI framework identifies which cellular signals are unique to a measurement method — and which are shared across modalities. The approach helps researchers better understand cell states and disease mechanisms. bit.ly/4ufvuV0
MIT LIDS tweet media
English
0
1
2
147
MIT LIDS nag-retweet
Cathy Wu (Hiring PhD/postdocs)
Have you noticed how navigation apps include walking & waiting for public transit, but excludes parking & walking for driving? After being late a few times 😅, we finally did. We got curious: what if these apps account for parking?
Cathy Wu (Hiring PhD/postdocs) tweet media
English
1
1
7
233
MIT LIDS
MIT LIDS@MITLIDS·
Reducing emissions — and parking frustration 🚗♻️ MIT LIDS researchers developed a parking-aware navigation system that guides drivers to lots balancing proximity + availability. The result? Up to 35 minutes saved and more accurate travel time estimates. bit.ly/3P5QYne
MIT LIDS tweet media
English
0
1
3
170
MIT LIDS
MIT LIDS@MITLIDS·
Can personalization make LLMs too agreeable? Research from @MITLIDS Shomik Jain, Charlotte Park, and PI Ashia Wilson finds that long-term conversations can cause LLMs to mirror users’ views — potentially reducing accuracy & reinforcing echo chambers. More: bit.ly/3OqbC1b
MIT LIDS tweet media
English
0
1
4
231
MIT LIDS
MIT LIDS@MITLIDS·
MIT research finds platforms ranking the latest #LLMs can be surprisingly fragile — removing just a handful of crowdsourced votes can flip which model tops the leaderboard. The work underscores a need for more rigorous strategies to evaluate model rankings bit.ly/4csuBC8
MIT LIDS tweet media
English
0
1
6
289
MIT LIDS
MIT LIDS@MITLIDS·
Where the ocean and atmosphere communicate 🌊🌬️ In a recent profile, LIDS PI @abigailbodner explores how ocean turbulence shapes climate patterns—and how math, Earth science, and AI come together in her research. Read the profile in MIT Spectrum: bit.ly/4qWJv8d
MIT LIDS tweet media
English
0
2
4
240
MIT LIDS
MIT LIDS@MITLIDS·
Moving beyond overly aggregated #ML metrics. New research from LIDS postdoc Olawale Salaudeen, PI Marzyeh Ghassemi, and collaborators reveals how commonly used, highly aggregated ML metrics can hide serious failures — and offers a method to correct them. bit.ly/4k5LMLE
MIT LIDS tweet media
English
0
3
6
320
MIT LIDS
MIT LIDS@MITLIDS·
Health data breaches are becoming routine: 747 major incidents recorded by HHS in the past 24 months. New MIT LIDS research shows that foundation #AI models trained on de-identified EHRs can still memorize and expose sensitive patient data. bit.ly/4sFzZYx
MIT LIDS tweet media
English
0
0
2
118
MIT LIDS nag-retweet
MIT Schwarzman College of Computing
AI will transform every sector of human society in fundamental ways. Is there a case to be made for how it can be a force for good? Tell us what you think the future holds. Over $20K in prizes will be awarded. Open to MIT students only. Submit by 2/8/2026. computing.mit.edu/FutureComputin…
MIT Schwarzman College of Computing tweet media
English
0
2
5
776
MIT LIDS
MIT LIDS@MITLIDS·
#AI is often criticized for its growing energy use—but it can also help modernize the power grid. In a 3Q with MIT News, LIDS PI Priya Donti explains how AI can boost grid efficiency, improve resilience to extreme weather, and enable more renewable energy. bit.ly/4pGrwkM
MIT LIDS tweet media
English
0
3
6
386
MIT LIDS nag-retweet
Chara Podimata
Chara Podimata@charapod·
📢 Asu Ozdaglar and I are hiring a postdoc for next year to work on adaptive, ethically-informed decision systems, human–AI collaboration, and decision-making under uncertainty. More info here: charapodimata.com/postdoc_announ….
English
0
4
13
2.3K
MIT LIDS
MIT LIDS@MITLIDS·
New prognostic tool could help clinicians identify high-risk lymphoma patients earlier—and tailor treatment to improve survival. MIT LIDS researchers show how early relapse strongly predicts outcomes using Synthetic Survival Controls. Published in Blood. bit.ly/45zomYY
MIT LIDS tweet media
English
0
1
1
185
MIT LIDS nag-retweet
Luca Carlone
Luca Carlone@lucacarlone1·
DAAAM!! "Describe Anything Anywhere at Any Moment". State of the art approach to provide spatio-temporal memory to robots and agents. Powered by VLMs and scene graphs. Directly suitable for LLM queries. great work by Nicolas Gorlo and Lukas Schmid! nicolasgorlo.com/DAAAM_25/
English
9
153
936
58.8K