Autonomous web navigation deals with the development of AI agents used in automating complex online tasks from data mining to booking delivery services. This helps in enhancing productivity by automating certain tasks in both consumer and enterprise domains. Traditional web agents working on such complex web tasks are usually inefficient and prone to errors due…
Autonomous web navigation, which involves using AI agents to perform complex online tasks, is growing in significance. Presently, these AI agents are typically used for tasks such as data retrieval, form submissions, and more sophisticated activities like finding cheap flights or booking accommodations. Utilizing large language models (LLMs) and other AI methodologies, the aim of…
Evaluating the performance of Artificial Intelligence (AI) and Machine Learning (ML) models is crucial, especially with the advent of Large Language Models (LLMs). These evaluations help to assess the abilities of these models and establish reliable systems based on their capabilities. However, certain practices, termed as Questionable Research Practices (QRPs), frequently compromise the authenticity and…
Artificial Intelligence and Machine Learning are rapidly advancing fields, and a crucial aspect of their progress is the evaluation of model performance, particularly with the advent of Large Language Models (LLMs). However, the integrity of these evaluations is often compromised by what are known as Questionable Research Practices (QRPs), which can severely inflate published results…
Large Language Models (LLMs) face several deployment challenges including latency issues triggered by memory bandwidth constraints. To mitigate such problems, researchers have resorted to applying weight-only quantization, a technique that compresses the parameters of LLMs to lower precision. Nevertheless, to effectively implement weight-only quantization, it is necessary to employ mixed-type matrix-multiply kernels that can manage,…
In the dynamic and complex field of robotics, decision-making often involves managing continuous action spaces and processing high volumes of data. This scenario demands sophisticated methodologies to handle the information efficiently and translate it into meaningful action. To address this challenge, researchers from the University of Maryland, College Park, and Microsoft Research have proposed a…
Artificial intelligence (AI) is continually evolving, with a significant challenge being the creation of systems that can effectively collaborate in dynamic environments. One area of focus in this regard is multi-agent reinforcement learning (MARL), which aims to teach agents to interact and adapt in these settings. However, these methods struggle with complexity and adaptability, especially…
Deep learning's exceptional performance across a wide range of scientific fields and its utilization in various applications have been proven. However, these models often come with many parameters that require a substantial amount of computational power for training and testing. The improvement of these models has been a primary focus of advancement in the field,…
The realm of language models has seen tremendous growth thanks to transformative scaling efforts and applications such as OpenAI's GPT series. Innovations like Transformer-XL have broadened context windows, while models like Mistral, Falcon, Yi, DeepSeek, DBRX, and Gemini extended the reach of these capabilities. Parallel to these, visual language models (VLMs) have also observed similar…
At the Data + AI Summit 2024, Databricks unveiled the public preview of the Mosaic AI Agent Framework and Agent Evaluation, aimed at helping developers build and deploy superior Agentic and Retrieval Augmented Generation (RAG) applications on the Databricks Data Intelligence Platform.
Building quality generative AI applications pose distinct challenges for developers, such as selecting the…
Google DeepMind's AI systems AlphaProof and AlphaGeometry 2 have achieved a silver medal-level score at the 2024 International Mathematical Olympiad (IMO), a highly prestigious competition for budding mathematicians worldwide. Despite competing against 609 contestants, the AI models secured rankings among the top 58, by resolving four of the six difficult math problems, earning 28…