Sat.Jun 22, 2024

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Stanford Researchers Launch Nuclei.io: Revolutionizing Artificial Intelligence AI and Clinician Collaboration for Enhanced Pathology Datasets and Models

Marktechpost

The integration of AI in clinical pathology faces challenges due to data constraints and concerns over model transparency and interoperability. AI and ML algorithms have shown significant advancements in tasks such as cell segmentation, image classification, and prognosis prediction in digital pathology. Despite outperforming pathologists in specific functions like predicting colorectal carcinoma microsatellite instability, regulatory hurdle,s and ethical considerations hinder their widespread c

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Want to Learn Quantization in The Large Language Model?

Towards AI

Last Updated on June 24, 2024 by Editorial Team Author(s): Milan Tamang Originally published on Towards AI. Want to Learn Quantization in The Large Language Model? 1. Image by writer: Flow shows the need for quantization. (The happy face and angry face image is by Yan Krukau, [link] Before I explain the diagram above, let me begin with the highlights that you’ll be learning in this post.

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Orthogonal Paths: Simplifying Jailbreaks in Language Models

Marktechpost

Ensuring the safety and ethical behavior of large language models (LLMs) in responding to user queries is of paramount importance. Problems arise from the fact that LLMs are designed to generate text based on user input, which can sometimes lead to harmful or offensive content. This paper investigates the mechanisms by which LLMs refuse to generate certain types of content and develops methods to improve their refusal capabilities.

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Rethinking Neural Network Efficiency: Beyond Parameter Counting to Practical Data Fitting

Marktechpost

Neural networks, despite their theoretical capability to fit training sets with as many samples as they have parameters, often fall short in practice due to limitations in training procedures. This gap between theoretical potential and practical performance poses significant challenges for applications requiring precise data fitting, such as medical diagnosis, autonomous driving, and large-scale language models.

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Usage-Based Monetization Musts: A Roadmap for Sustainable Revenue Growth

Speaker: David Warren and Kevin O'Neill Stoll

Transitioning to a usage-based business model offers powerful growth opportunities but comes with unique challenges. How do you validate strategies, reduce risks, and ensure alignment with customer value? Join us for a deep dive into designing effective pilots that test the waters and drive success in usage-based revenue. Discover how to develop a pilot that captures real customer feedback, aligns internal teams with usage metrics, and rethinks sales incentives to prioritize lasting customer eng

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Factory AI Introduces ‘Code Droid’ Designed to Automate and Enhance Coding with Advanced Autonomous Capabilities: Achieving 19.27% on SWE-bench Full and 31.67% on SWE-bench Lite

Marktechpost

Factory AI has released its latest innovation, Code Droid , a groundbreaking AI tool designed to automate and accelerate software development processes. This release signifies a significant advancement in artificial intelligence and software engineering. Introduction to Code Droid Code Droid is an autonomous system engineered to execute various coding tasks based on natural language instructions.

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The Rise of Diffusion-Based Language Models: Comparing SEDD and GPT-2

Marktechpost

Large Language Models (LLMs) have revolutionized natural language processing, demonstrating exceptional performance on various benchmarks and finding real-world applications. However, the autoregressive training paradigm underlying these models presents significant challenges. Notably, the sequential nature of autoregressive token generation results in slow processing speeds, limiting the models’ efficiency in high-throughput scenarios.

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MaPO: The Memory-Friendly Maestro – A New Standard for Aligning Generative Models with Diverse Preferences

Marktechpost

Machine learning has achieved remarkable advancements, particularly in generative models like diffusion models. These models are designed to handle high-dimensional data, including images and audio. Their applications span various domains, such as art creation and medical imaging, showcasing their versatility. The primary focus has been on enhancing these models to better align with human preferences, ensuring that their outputs are useful and safe for broader applications.

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PlanRAG: A Plan-then-Retrieval Augmented Generation for Generative Large Language Models as Decision Makers

Marktechpost

Decision-making is critical for organizations, involving data analysis and selecting the most suitable alternative to achieve specific goals. In business scenarios like pharmaceutical distribution networks, companies face complex decisions such as determining which plants to operate, how many employees to hire, and optimizing production costs while ensuring timely delivery.

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Supervision by Roboflow Enhances Computer Vision Projects: Installation, Features, and Community Support Guide

Marktechpost

Roboflow’s Supervision tool is a robust and versatile resource that caters to various computer vision needs. From loading datasets to drawing detections and counting items within a zone, Supervision provides essential functionalities to streamline and enhance these processes. Let’s delve into Supervision’s comprehensive features, installation methods, and practical applications, emphasizing its utility in modern computer vision projects.

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Optimizing The Modern Developer Experience with Coder

Many software teams have migrated their testing and production workloads to the cloud, yet development environments often remain tied to outdated local setups, limiting efficiency and growth. This is where Coder comes in. In our 101 Coder webinar, you’ll explore how cloud-based development environments can unlock new levels of productivity. Discover how to transition from local setups to a secure, cloud-powered ecosystem with ease.

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Microsoft Researchers Introduce a Theoretical Framework Using Variational Bayesian Theory Incorporating a Bayesian Intention Variable

Marktechpost

In decision-making, habitual behavior has always been seen as separate from goal-directed behavior. Habitual behaviors are automatic responses, deeply ingrained through experience. Like riding a bike or reaching for your coffee cup in the morning, they required little to no conscious thought. In contrast, goal-directed behavior requires deliberate planning and action to achieve a specific outcome, like finding a new route for the office because of traffic.

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Enhancing LLM Reliability: Detecting Confabulations with Semantic Entropy

Marktechpost

LLMs like ChatGPT and Gemini demonstrate impressive reasoning and answering capabilities but often produce “hallucinations,” meaning they generate false or unsupported information. This problem hampers their reliability in critical fields, from law to medicine, where inaccuracies can have severe consequences. Efforts to reduce these errors through supervision or reinforcement have seen limited success.

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