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Recommender systems have gained prominence across various applications, with deep neural network-based algorithms showing impressive capabilities. Large language models (LLMs) have recently demonstrated proficiency in multiple tasks, prompting researchers to explore their potential in recommendation systems. However, two main challenges hinder LLM adoption: high computational requirements and neglect of collaborative signals. Recent studies have focused…
One of the biggest challenges when developing deep learning models is ensuring they run efficiently across different hardware. Most frameworks that handle this well are complex and difficult to extend, especially when supporting new types of accelerators like GPUs or specialized chips. This complexity can make it hard for developers to experiment with new hardware,…
Personalized image generation is gaining traction due to its potential in various applications, from social media to virtual reality. However, traditional methods often require extensive tuning for each user, limiting efficiency and scalability. Imagine Yourself, an innovative model that overcomes these limitations by eliminating the need for user-specific fine-tuning, enabling a single model to cater…
Large Language Models (LLMs) have advanced rapidly, becoming powerful tools for complex planning and cognitive tasks. This progress has spurred the development of LLM-powered multi-agent systems (LLM-MA systems), which aim to simulate and solve real-world problems through coordinated agent cooperation. These systems can be applied to various scenarios, from software development simulations to analyzing social…
Enhancing Agricultural Resilience through Remote Sensing and AI: Modern agriculture faces significant challenges from climate change, limited water resources, rising production costs, and disruptions like the COVID-19 pandemic. These issues jeopardize the sustainability of food production systems, necessitating innovative solutions to meet the demands of a growing global population. Recent advancements in remote sensing and…
Microsoft has recently expanded its artificial intelligence capabilities by introducing three sophisticated models: Phi 3.5 Mini Instruct, Phi 3.5 MoE (Mixture of Experts), and Phi 3.5 Vision Instruct. These models represent significant advancements in natural language processing, multimodal AI, and high-performance computing, each designed to address specific challenges and optimize various AI-driven tasks. Let’s examine…
Neuro-symbolic artificial intelligence (NeSy AI) is a rapidly evolving field that seeks to combine the perceptive abilities of neural networks with the logical reasoning strengths of symbolic systems. This hybrid approach is designed to address complex tasks that require both pattern recognition and deductive reasoning. NeSy systems aim to create more robust and generalizable AI…
The capacity of platooning technology to precisely control cars, optimize traffic flow, and increase energy economy is well known. Platooning reduces aerodynamic drag, boosts fuel efficiency, and expands road capacity by enabling vehicles to move in close proximity and in unison. However, a number of issues arise when it comes to large-scale mixed platoons, which…
Process mining is a part of data science concerned with analyzing event logs produced by information systems to learn about business processes. This paper addresses process mining techniques, which involve process discovery. All these are very important in organizations, especially in workflow optimization and enhancing efficiency and potential areas for improvement. One major problem in…
Logs provide important insights that are frequently the earliest signs of system problems, making them an essential tool for program maintenance and failure diagnostics. These logs must be effectively parsed for automated log analysis tasks like anomaly identification, troubleshooting, and root cause investigation. The act of turning semi-structured log messages into structured templates is known…