Dynamic Configuration of On-Street Parking Spaces using Multi Agent Reinforcement Learning

arXiv — cs.LGWednesday, December 3, 2025 at 5:00:00 AM
  • A new study has introduced a dynamic configuration system for on-street parking spaces using a multi-agent reinforcement learning framework. This approach aims to optimize parking allocations in urban areas, addressing the growing issue of traffic congestion exacerbated by limited road space due to parked vehicles.
  • The development is significant as it leverages advanced vehicle-to-infrastructure connectivity technologies, potentially improving traffic flow and reducing congestion in cities like Melbourne. This innovation could lead to more efficient urban mobility solutions.
  • The research aligns with ongoing advancements in artificial intelligence, particularly in reinforcement learning and autonomous systems. It reflects a broader trend towards data-driven solutions in urban planning, emphasizing the need for adaptive systems that can respond to real-time traffic conditions and enhance overall transportation efficiency.
— via World Pulse Now AI Editorial System

Was this article worth reading? Share it

Recommended apps based on your readingExplore all apps
Continue Readings
Thirsty work: how the rise of massive datacentres strains Australia’s drinking water supply
NegativeArtificial Intelligence
The rapid expansion of datacentres in Australia, particularly in Sydney and Melbourne, is raising concerns about their significant impact on the country's drinking water supply. Experts predict that the water demand for cooling these facilities in Sydney alone could surpass the total drinking water volume of Canberra within the next decade.
MathBode: Measuring the Stability of LLM Reasoning using Frequency Response
PositiveArtificial Intelligence
The paper introduces MathBode, a diagnostic tool designed to assess mathematical reasoning in large language models (LLMs) by analyzing their frequency response to parametric problems. It focuses on metrics like gain and phase to reveal systematic behaviors that traditional accuracy measures may overlook.
MagicView: Multi-View Consistent Identity Customization via Priors-Guided In-Context Learning
PositiveArtificial Intelligence
MagicView has been introduced as a lightweight adaptation framework that enhances existing generative models by enabling multi-view consistent identity customization through 3D priors-guided in-context learning. This innovation addresses the limitations of current methods that struggle with viewpoint control and identity consistency across different scenes.
ExPairT-LLM: Exact Learning for LLM Code Selection by Pairwise Queries
PositiveArtificial Intelligence
ExPairT-LLM has been introduced as an exact learning algorithm for code selection, addressing the challenges in code generation by large language models (LLMs). It utilizes pairwise membership and equivalence queries to enhance the accuracy of selecting the correct program from multiple outputs generated by LLMs, significantly improving success rates compared to existing algorithms.
NLP Datasets for Idiom and Figurative Language Tasks
NeutralArtificial Intelligence
A new paper on arXiv presents datasets aimed at improving the understanding of idiomatic and figurative language in Natural Language Processing (NLP). These datasets are designed to assist large language models (LLMs) in better interpreting informal language, which has become increasingly prevalent in social media and everyday communication.
Hierarchical Process Reward Models are Symbolic Vision Learners
PositiveArtificial Intelligence
A novel self-supervised symbolic auto-encoder has been introduced, enabling symbolic computer vision to interpret diagrams through structured representations and logical rules. This approach contrasts with traditional pixel-based visual models by parsing diagrams into geometric primitives, enhancing machine vision's interpretability.
FloodDiffusion: Tailored Diffusion Forcing for Streaming Motion Generation
PositiveArtificial Intelligence
FloodDiffusion has been introduced as a novel framework for text-driven, streaming human motion generation, capable of producing seamless motion sequences in real-time based on time-varying text prompts. This approach improves upon existing methods by employing a tailored diffusion forcing framework that addresses the limitations of traditional models, ensuring better alignment with real motion distributions.
Robust Multimodal Sentiment Analysis of Image-Text Pairs by Distribution-Based Feature Recovery and Fusion
PositiveArtificial Intelligence
A new method for robust multimodal sentiment analysis of image-text pairs has been proposed, addressing challenges related to low-quality and missing modalities. The Distribution-based feature Recovery and Fusion (DRF) technique utilizes a feature queue for each modality to approximate feature distributions, enhancing sentiment prediction accuracy in real-world applications.