Among the main advancements in AI, seven areas stand out for their potential to revolutionize different sectors: neuromorphic computing, quantum computing for AI, Explainable AI (XAI), AI-augmented design and Creativity, Autonomous Vehicles and Robotics, AI in Cybersecurity and AI for Environmental Sustainability. These technologies promise to enhance current AI capabilities and offer new paradigms in…
The quest for efficient data processing techniques in machine learning and data science is paramount. These fields heavily rely on quickly and accurately sifting through massive datasets to derive actionable insights. The challenge lies in developing scalable methods that can accommodate the ever-increasing volume of data without a corresponding increase in processing time. The fundamental…
Computational biology has emerged as an indispensable discipline at the intersection of biological research & computer science, primarily focusing on biomolecular structure prediction. The ability to accurately predict these structures has profound implications for understanding cellular functions and developing new medical therapies. Despite the complexity, this field is pivotal for gaining insights into the intricate…
Over the past decade, advancements in deep learning and artificial intelligence have driven significant strides in self-driving vehicle technology. These technologies have revolutionized computer vision, robotics, and natural language processing and played a pivotal role in the autonomous driving revolution. From basic driver assistance to fully autonomous vehicles(AVs) capable of navigating without human intervention, the…
Wearables have transformed human-technology interaction, facilitating continuous health monitoring. The wearables market is projected to surge from 70 billion USD in 2023 to 230 billion USD by 2032, with head-worn devices, including earphones and glasses, experiencing rapid growth (71 billion USD in 2023 to 172 billion USD by 2030). This growth is propelled by the…
In the dynamic realm of Artificial Intelligence, Natural Language Processing (NLP), and Information Retrieval, advanced architectures like Retrieval Augmented Generation (RAG) have gained a significant amount of attention. However, most data science researchers suggest not to leap into sophisticated RAG models until the evaluation pipeline is completely reliable and robust. Carefully assessing RAG pipelines is…
AI21 Labs has introduced the Jamba-Instruct model, which addresses the challenge of leveraging large context windows in natural language processing tasks for enterprise use. Traditional models often have limited context capabilities, which often impacts their effectiveness in tasks such as summarization and conversation continuation. AI21 Labs’ Jamba-Instruct aims to overcome these limitations by providing a…
The integration of data-intensive computational studies is vital across scientific disciplines. Computational workflows systematically outline methods, data, and computing resources. With complex simulation models and vast data volumes, Computational Sciences and Engineering (CSE) workflows facilitate research beyond simulations, enabling analysis of diverse data and methodologies. FAIR principles ensure research data are Findable, Accessible, Interoperable, and…
The use of artificial intelligence (AI) to power presentation generators has changed presentation creation and delivery in the modern digital era. These technologies use AI to make creating easier, visually appealing, and engaging for the audience. If you want to take your next presentation to the next level, this article will review the fourteen best…
The rapid advancement of Large Language Models (LLMs) has sparked interest among researchers in academia and industry alike. Both the Natural Language Processing (NLP) and database communities are exploring the potential of LLMs in tackling the Natural Language to SQL NL2SQL task, which involves converting natural language queries into executable SQL statements consistent with user…