Large Language Models (LLMs) have demonstrated remarkable effectiveness in addressing generic questions. An LLM can be fine-tuned using the company’s proprietary documents to utilize it for a company’s specific needs. However, this process is computationally intensive and has several limitations. Fine-tuning may lead to issues such as the Reversal Curse, where the model’s ability to…
Most advanced machine learning models, especially those achieving state-of-the-art results, require significant computational resources such as GPUs and TPUs. Deploying large models in resource-constrained environments like edge devices, mobile platforms, or other low-power hardware restricts the application of machine learning to cloud-based services or data centers, limiting real-time applications and increasing latency. Access to high-performance…
The research field of Spiking Neural P (SNP) systems, a subset of membrane computing, explores computational models inspired by biological neurons. These systems simulate neuronal interactions using mathematical representations, closely mimicking natural neuronal processes. The complexity of these models makes them valuable for advancing fields such as artificial intelligence and high-performance computing. By providing a…
Large language models (LLMs) have given rise to Role-Playing Agents (RPAs), designed to simulate specific characters and interact with users or other characters. RPAs aim to provide emotional value and support sociological studies unlike AI productivity assistants, with applications ranging from emotional companions to digital replicas and social simulations. Their main objective is to offer…
Organizations face challenges when dealing with unstructured data from various sources like forms, invoices, and receipts. This data, often stored in different formats, is difficult to process and extract meaningful information from, especially at scale. Traditional methods for handling such data are either too slow, require extensive manual work, or are not flexible enough to…
The release of the HQQ Llama-3.1-70b by Mobius Labs, boasting 70 billion parameters, has been designed to enhance the capabilities in natural language processing (NLP), image recognition, and data analysis. Mobius Labs, known for its cutting-edge innovations, has positioned this model as a cornerstone in the next generation of AI technologies. HQQ Llama-3.1-70b represents a…
SQL is essential in today’s data-driven world, as it enables efficient management, retrieval, and analysis of data stored in databases. With the increasing reliance on data for decision-making, learning SQL is crucial for anyone looking to work in fields like data science, analytics, or engineering. Understanding SQL empowers you to interact with large datasets, derive…
Cross-lingual code cloning has become an important and difficult job due to the rising complexity of modern software development, where numerous programming languages are typically employed inside a single project. The term ‘cross-lingual code clone detection’ describes the process of finding identical or nearly identical code segments in several computer languages. Recent advances in Artificial…
To diagnose and cure cancer, pathologic examination of tissue is crucial. The digital versions of the old histological slides used for light microscopy are gradually replacing them with whole-slide images (WSIs). This allows computational pathology to transition from being used primarily as academic proof points to becoming routine tools in clinical practice. To aid in…
Accurate segmentation of structures like cells and organelles is crucial for deriving meaningful biological insights from imaging data. However, as imaging technologies advance, images’ growing size, dimensionality, and complexity present challenges for scaling existing machine-learning techniques. This is particularly evident in volume electron microscopy, such as focused ion beam-scanning electron microscopy (FIB-SEM) with near-isotropic capabilities.…