·
DataBubble
  • Home
  • Models
  • News
  • Compare
  • Boards
  • Pricing
  • About
  • Newsletter
  • Methodology
  • Contact
Latest
Nvidia chases $200B CPU market with AI agent PCs from Microsoft, Dell, and HP40m◆Florida sues OpenAI, Sam Altman, in first-of-its-kind lawsuit over violent incidents2h◆This could be Windows’ M1 moment — but expect it to cost a ton2h◆Gemini’s new AI agent is about as good as Google’s demo2h◆Meta’s own AI was exploited to hijack Instagram accounts2h◆Water access is now a risk factor in SpaceX’s IPO3h◆Anthropic has officially filed to go public5h◆Anthropic files to go public5h◆How we used Gemini to build Google I/O 20266h◆This AI weather startup is out-forecasting government agencies6h◆Introducing Mellum2: A 12B Mixture-of-Experts Model by JetBrains6h◆DuckDuckGo makes its ‘no-AI’ search engine easier to access as its traffic booms7h◆Microsoft to unveil new AI models and Windows improvements at Build7h◆AI is blowing up music. How should the Grammys handle it?7h◆Strava blames zero-code AI apps and scrapers as it tightens API access8h◆Beyond LLMs: Why Scalable Enterprise AI Adoption Depends on Agent Logic8h◆Building the infrastructure for the Intelligence Age in Michigan10h◆OpenAI frontier models and Codex are now available on AWS12h◆Welcome NVIDIA Cosmos 3: The First Open Omni-model for Physical AI Reasoning and Action17h◆Physically Viable World Models: A Case for Query-Conditioned Embodied AI18h◆Nvidia chases $200B CPU market with AI agent PCs from Microsoft, Dell, and HP40m◆Florida sues OpenAI, Sam Altman, in first-of-its-kind lawsuit over violent incidents2h◆This could be Windows’ M1 moment — but expect it to cost a ton2h◆Gemini’s new AI agent is about as good as Google’s demo2h◆Meta’s own AI was exploited to hijack Instagram accounts2h◆Water access is now a risk factor in SpaceX’s IPO3h◆Anthropic has officially filed to go public5h◆Anthropic files to go public5h◆How we used Gemini to build Google I/O 20266h◆This AI weather startup is out-forecasting government agencies6h◆Introducing Mellum2: A 12B Mixture-of-Experts Model by JetBrains6h◆DuckDuckGo makes its ‘no-AI’ search engine easier to access as its traffic booms7h◆Microsoft to unveil new AI models and Windows improvements at Build7h◆AI is blowing up music. How should the Grammys handle it?7h◆Strava blames zero-code AI apps and scrapers as it tightens API access8h◆Beyond LLMs: Why Scalable Enterprise AI Adoption Depends on Agent Logic8h◆Building the infrastructure for the Intelligence Age in Michigan10h◆OpenAI frontier models and Codex are now available on AWS12h◆Welcome NVIDIA Cosmos 3: The First Open Omni-model for Physical AI Reasoning and Action17h◆Physically Viable World Models: A Case for Query-Conditioned Embodied AI18h◆
News/Balancing Plasticity and Stability with Fast and Slow Successor Features
arxiv
PublishedMay 27, 2026 at 4:00 AM
—neutral

Balancing Plasticity and Stability with Fast and Slow Successor Features

Source
arxiv.orgfull article ↗
Read on arxiv→
Publisher summary· verbatim

arXiv:2605.26357v1 Announce Type: new Abstract: A hallmark of intelligence is the ability to adapt in non-stationary environments, yet deep Reinforcement Learning (RL) agents often struggle in such settings. Prior studies introduce non-stationarity through abrupt shifts in features or dynamics, wher

Stay posted· Newsletter

A 5-min weekly brief — top movers, price watch, story of the week.

// no spam · unsubscribe one-click · free forever

Discussion
Source
↗
arxiv
Read original ↗All from arxiv →

No replies yet. Be first.

Source
↗
arxiv
Read original ↗All from arxiv →

Related coverage

More from ARXIV
arxivPhysically Viable World Models: A Case for Query-Conditioned Embodied AI18h
The Bubble Brief
WEEKLY

Read AI insights every Tuesday — top movers, new releases, story of the week.

// no spam · unsubscribe one-click · free forever

Originally published on arxiv ↗
HomeModelsNews