Computational linguistics has seen significant advancements in recent years, particularly in the development of Multilingual Large Language Models (MLLMs). These are capable of processing a multitude of languages simultaneously, which is critical in an increasingly globalized world that requires effective interlingual communication. MLLMs address the challenge of efficiently processing and generating text across various languages,…
In recent years, there has been increasing attention paid to the development of Small Language Models (SLMs) as a more efficient and cost-effective alternative to Large Language Models (LLMs), which are resource-heavy and present operational challenges. In this context, researchers from the Department of Computer Science and Technology at Tsinghua University and Modelbest Inc. have…
The swift pace of global evolution has made the resolution of open-ended Artificial Intelligence (AI) engineering tasks, both rigorous and daunting. Software engineers often grapple with complex issues necessitating pioneering solutions. However, efficient planning and execution of these tasks remain significant challenges to be tackled.
Some of the existing solutions come in the form of AI…
Researchers from Meta/FAIR Labs and Mohamed bin Zayed University of AI have carried out a detailed exploration into the scaling laws for large language models (LLMs). These laws delineate the relationship between factors such as a model's size, the time it takes to train, and its overall performance. While it’s commonly held that larger models…
The field of Natural Language Processing (NLP) has witnessed a radical transformation following the advent of Large Language Models (LLMs). However, the prevalent Transformer architecture used in these models suffers from quadratic complexity issues. While techniques such as sparse attention have been developed to lower this complexity, a new generation of models is making headway…
Causal learning plays a pivotal role in the effective operation of artificial intelligence (AI), helping improve AI models' ability to rationalize decisions, adapt to new data, and visualize hypothetical scenarios. However, the evaluation of large language models' (LLM) proficiency in processing causality, such as GPT-3 and its variants, remains a challenge due to the need…
To overcome the challenges in interpretability and reliability of Large Language Models (LLMs), Google AI has introduced a new technique, Patchscopes. LLMs, based on autoregressive transformer architectures, have shown great advancements but their reasoning process and decision-making are opaque and complex to understand. Current methods of interpretation involve intricate techniques that dig into the models'…
SambaNova has unveiled its latest Composition of Experts (CoE) system, the Samba-CoE v0.3, marking a significant advancement in the effectiveness and efficiency of machine learning models. The Samba-CoE v0.3 demonstrates industry-leading capabilities and has outperformed competitors such as DBRX Instruct 132B and Grok-1 314B on the OpenLLM Leaderboard.
Samba-CoE v0.3 unveils a new and efficient routing…
Deep Learning Structures: A Study of CNN, RNN, GAN, Transformers, and Encoder-Decoder Configurations
Deep learning architectures have greatly impacted the field of artificial intelligence due to their innovative problem-solving capabilities across various sectors. This article discussed some prominent deep learning architectures: Convolutional Neural Networks (CNNs), Recurrent Neural Networks (RNNs), Generative Adversarial Networks (GANs), Transformers, and Encoder-Decoder architectures. These different architectures were analyzed based on their unique characteristics, applications,…
Artificial Intelligence (AI) company Cohere has launched Rerank 3, an advanced foundation model designed to enhance enterprise search and Retrieval Augmented Generation (RAG) systems, promising superior efficiency, accuracy, and cost-effectiveness than its earlier versions.
The key beneficiaries of Rerank 3 are enterprises grappling with vast and diverse semi-structured data, such as emails, invoices, JSON documents,…
In the realm of Multi-modal learning, large image-text foundational models have shown remarkable zero-shot performance and enhanced stability across a multitude of downstream tasks. These models, like Contrastive Language-Image Pretraining (CLIP), have notably improved Multi-modal AI due to their capability to simultaneously assess both images and text. A variety of architectures have recently been shown…
Snowflake has recently launched the public preview of Snowflake SQL Copilot, an AI-powered SQL assistant designed to transform how users engage with databases. As businesses increasingly depend on vast quantities of data, the demand for a tool that allows for rapid and precise data insight extraction grows. Snowflake Copilot is designed to give access to…