Sun.Oct 06, 2024

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What do Top Leaders have to Say About Agentic AI?

Analytics Vidhya

Introduction Agentic AI is an exciting concept! It’s all about creating AI that can work on its own, without us constantly telling it what to do. Think of it like having a super-smart assistant; it doesn’t just sit there waiting for orders, but predicts what you need and gets it done. This idea is getting […] The post What do Top Leaders have to Say About Agentic AI?

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Aftershoot Review: Save Hours on Photo Culling with AI

Unite.AI

If you’re a photographer, nothing is more time-consuming than sorting through hundreds (if not thousands) of photos after a big event or shoot. Did you know that professional photographers spend an average of 3-4 hours editing for every hour of shooting? I recently came across Aftershoot , and it’s a game-changer for photo culling. If you don't know what culling is, it’s the process of going through all your photos to pick out the best ones.

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Qualitative evaluation

Ehud Reiter

I’ve had some discussions recently with medical colleagues about evaluation, where they have essentially suggested that I put more emphasis on qualitative evaluation. Ie, in AI and NLP we usually focus on numbers and quantitative evaluation, and perhaps in some cases this is a mistake. I think my group does more qualitative work than most NLP groups, but my medical colleagues felt we should consider doing even more.

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Improving How Machine Translations Handle Grammatical Gender Ambiguity

Machine Learning Research at Apple

Machine Translation (MT) enables people to connect with others and engage with content across language barriers. Grammatical gender presents a difficult challenge for these systems, as some languages require specificity for terms that can be ambiguous or neutral in other languages. For example, when translating the English word "nurse" into Spanish, one must decide whether the feminine "enfermera" or the masculine "enfermero" is appropriate.

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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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FakeShield: An Explainable AI Framework for Universal Image Forgery Detection and Localization Using Multimodal Large Language Models

Marktechpost

The rapid advancement of generative AI has made image manipulation easier, complicating the detection of tampered content. While effective, current Image Forgery Detection and Localization (IFDL) methods need to work on two key challenges: the black-box nature of their detection principles and limited generalization across various tampering methods like Photoshop, DeepFake, and AIGC-Editing.

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Rev Releases Reverb AI Models: Open Weight Speech Transcription and Diarization Model Beating the Current SoTA Models

Marktechpost

Automatic Speech Recognition (ASR) and Diarization technologies have become essential tools for transforming how machines interpret human speech. These innovations enable accurate transcription, speech segmentation, and speaker identification across various applications like media transcriptions, legal documentation, and customer service automation.

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Deploying HuggingFace Models with AWS SageMaker

Pragnakalp

Introduction Machine learning is no longer just a buzzword—it’s becoming a key part of how businesses solve problems and make smarter decisions. However, building, training, and deploying machine learning models can still be daunting, especially when trying to balance performance with cost and scalability. That’s where AWS SageMaker comes in.

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RLEF: A Reinforcement Learning Approach to Leveraging Execution Feedback in Code Synthesis

Marktechpost

Large Language Models (LLMs) generate code aided by Natural Language Processing. There is a growing application of code generation in complex tasks such as software development and testing. Extensive alignment with input is crucial for an adept and bug-free output, but the developers identified it as computationally demanding and time-consuming. Hence, creating a framework for the algorithm to improve itself continuously to provide real-time feedback in the form of error messages or negative poi

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Depth Pro: Sharp Monocular Metric Depth in Less Than a Second

Machine Learning Research at Apple

We present a foundation model for zero-shot metric monocular depth estimation. Our model, Depth Pro, synthesizes high-resolution depth maps with unparalleled sharpness and high-frequency details. The predictions are metric, with absolute scale, without relying on the availability of metadata such as camera intrinsics. And the model is fast, producing a 2.25-megapixel depth map in 0.3 seconds on a standard GPU.

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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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Optimizing Long-Context Processing with Role-RL: A Reinforcement Learning Framework for Efficient Large Language Model Deployment

Marktechpost

Training Large Language Models (LLMs) that can handle long-context processing is still a difficult task because of data sparsity constraints, implementation complexity, and training efficiency. Working with documents of infinite duration, which are typical in contemporary media formats like automated news updates, live-stream e-commerce platforms, and viral short-form movies, makes these problems very clear.

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‘We Build AI Agents’ – Flank’s Jake Jones

Artificial Lawyer

‘Our ambition is to build an AI colleague – and [for it] to be trusted as one – that’s what keeps me going,’ explains Jake Jones, MD and co-founder of Flank, as he sets out the company’…

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Compositional Hardness in Large Language Models (LLMs): A Probabilistic Approach to Code Generation

Marktechpost

A popular method when employing Large Language Models (LLMs) for complicated analytical tasks, such as code generation, is to attempt to solve the full problem within the model’s context window. The informational segment that the LLM is capable of processing concurrently is referred to as the context window. The amount of data the model can process at once has a significant impact on its capacity to produce a solution.

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Learn the Differences Between ETL and ELT

Pickl AI

Summary: This blog explores the key differences between ETL and ELT, detailing their processes, advantages, and disadvantages. Understanding these methods helps organizations optimize their data workflows for better decision-making. Introduction In today’s data-driven world, efficient data processing is crucial for informed decision-making and business growth.

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15 Modern Use Cases for Enterprise Business Intelligence

Large enterprises face unique challenges in optimizing their Business Intelligence (BI) output due to the sheer scale and complexity of their operations. Unlike smaller organizations, where basic BI features and simple dashboards might suffice, enterprises must manage vast amounts of data from diverse sources. What are the top modern BI use cases for enterprise businesses to help you get a leg up on the competition?

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Compositional GSM: A New AI Benchmark for Evaluating Large Language Models’ Reasoning Capabilities in Multi-Step Problems

Marktechpost

Natural language processing (NLP) has experienced rapid advancements, with large language models (LLMs) being used to tackle various challenging problems. Among the diverse applications of LLMs, mathematical problem-solving has emerged as a benchmark to assess their reasoning abilities. These models have demonstrated remarkable performance on math-specific benchmarks such as GSM8K, which measures their capabilities to solve grade-school math problems.

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Pruning Aware Training(PAT) in LLMs

Bugra Akyildiz

Articles (Image is taken from Model Optimization Toolkit page from Tensorflow) Pruning Aware Training Pruning in deep learning refers to the process of removing unnecessary weights or neurons from a neural network to reduce its size and computational requirements while maintaining performance. Traditionally, pruning has been applied after training, but this approach often leads to significant performance degradation, especially for large language models.

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AI-Assisted Causal Inference: Using LLMs to Revolutionize Instrumental Variable Selection

Marktechpost

Endogeneity presents a significant challenge in conducting causal inference in observational settings. Researchers in social sciences, statistics, and related fields have developed various identification strategies to overcome this obstacle by recreating natural experiment conditions. The instrumental variables (IV) method has emerged as a leading approach, with researchers discovering IVs in diverse settings and justifying their adherence to exclusion restrictions.

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Meta Gets Into AI Video Generation

TheSequence

Created Using Ideogram Next Week in The Sequence: Edge 337: Our series about state space models(SSM) discussed BlackMamba, a model that combines MoEs and SSMs in a single architecture. We also review teh original BlackMamba paper and the amazing SWE-Agent for solving engineering tasks. Edge 438: We dive into DataGEmma, Google DeepMind’s recent work to ground LLMs on factual knowledge.

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The Cloud Development Environment Adoption Report

Cloud Development Environments (CDEs) are changing how software teams work by moving development to the cloud. Our Cloud Development Environment Adoption Report gathers insights from 223 developers and business leaders, uncovering key trends in CDE adoption. With 66% of large organizations already using CDEs, these platforms are quickly becoming essential to modern development practices.

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Put Speech AI on the roadmap

AssemblyAI

Staying ahead means embracing the right tools at the right time, and Speech AI is transforming how companies interact with customers, process information, and make decisions. You probably already use Speech AI technology every day without even realizing it. Voice assistants on your phone, live transcriptions on your TV show, or even a phone call with a bot to schedule an appointment—these are all examples of Speech AI in action.