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How to Approach CNN Architecture from Scratch? - Analytics Vidhya

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This article was published as a part of the Data Science Blogathon. As a consequence of the large quantity of data accessible, particularly in the form of photographs and videos, the need for Deep Learning is growing by the day. Many advanced designs have been observed for diverse objectives, but Convolution Neural Network – Deep Learning techniques are the foundation for everything. So that'll be the topic of today's piece. Deep learning is a machine learning and artificial intelligence (AI) area that mimics how people learn.


Graviti AI Community

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Build skills and get inspired through solving real-world machine learning problems. Find the most exciting challenges and brainstorm with other great minds like you to come up with cutting-edge solutions.


How We Learned To Break Down Barriers To Machine Learning - AI Summary

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This article is the first in a short series of pieces that will recap each of the day's talks for the benefit of those who weren't able to travel to DC for our first conference. Dr. Sephus came to AWS via a roundabout path, growing up in Mississippi before eventually joining a tech startup called Partpic. When asked, she identified access as the biggest barrier to the greater use of AI/ML--in a lot of ways, it's another wrinkle in the old problem of the digital divide. A core component of being able to utilize most common AI/ML tools is having reliable and fast Internet access, and drawing on experience from her background, Dr. Sephus pointed out that a lack of access to technology in primary schools in poorer areas of the country sets kids on a path away from being able to use the kinds of tools we're talking about. Dr. Sephus said that AWS has been hiring sociologists and psychologists to join its tech teams to figure out ways to tackle the digital divide by meeting people where they are rather than forcing them to come to the technology.


Neptune.ai Named to the 2022 CB Insights AI 100 List of Most Promising AI Startups - neptune.ai

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InstaDeep is an EMEA leader in delivering decision-making AI products. Leveraging their extensive know-how in GPU-accelerated computing, deep learning, and reinforcement learning, they have built products, such as the novel DeepChain platform, to tackle the most complex challenges across a range of industries. InstaDeep has also developed collaborations with global leaders in the AI ecosystem, such as Google DeepMind, NVIDIA, and Intel. They are part of Intel's AI Builders program and are one of only 2 NVIDIA Elite Service Delivery Partners across EMEA. The InstaDeep team is made up of approximately 155 people working across its network of offices in London, Paris, Tunis, Lagos, Dubai, and Cape Town, and is growing fast.


An Artificial Intelligence Remedy to Ease Traffic Jam Madness This Summer – Skift

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While traffic jams seem inevitable in response to pent-up travel demand, a new machine-learning and artificial intelligence-based technology, …


Using AI as a perception-altering drug

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They all had some effect, surely. Could I have done it without them? Hang on, what *is* the it that I wouldn't have done? Real life usually lacks counterfactuals. I sense this topic could add some spice to the discussions of those who have been asking about the role of psychoactive substances in art since time immemorial, though the AI component adds nothing fundamentally new.


The HR Guide to Machine Learning and AI

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Learn about how machine learning, artificial intelligence (AI), and big data can help HR leaders do their job more efficiently and productively.


ML Collective's ICML Paper: A Probabilistic Interpretation of Transformers

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Since their introduction in 2017, transformers have become the go-to machine learning architecture for natural language processing (NLP) and computer vision. Although they have achieved state-of-the-art performance in these fields, the theoretical framework underlying transformers remains relatively underexplored. In the new paper A Probabilistic Interpretation of Transformers, ML Collective researcher Alexander Shim provides a probabilistic explanation of transformers' exponential dot product attention and contrastive learning based on distributions of the exponential family. An oft-proposed explanation for transformers' power and performance is their attention mechanisms' superior ability to model dependencies in long input sequences. But this doesn't directly address how and why transformer architecture choices such as exponential dot product attention outperform the alternatives.


Probability Distributions To Be Aware Of For Data Science (With Code)

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Probability and statistics knowledge is at the core of data science and machine learning; You'll require both statistics and probability knowledge to effectively gather, review, analyze and communicate with data. This means it's essential for you to have a good grasp of some fundamental terminologies, what they mean, and how to identify them. One such term you'll hear thrown around a lot is'distribution.' All this is in reference to is the properties of the data. There's several instances of phenomena in the real world that are considered to be statistical in nature (i.e. This means there are several instances in which we've been able to develop methodologies that help us model nature through mathematical functions that can describe the characteristics of the data.


The HR Guide to Machine Learning and AI

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Human Resources leaders are coming into their own among C-suite executives as they transform workplaces during these historic times. One of the important tasks at hand is better understanding technology, especially machine learning (ML) and artificial intelligence (AI), and the way it connects with data analytics to influence decision-making. HR professionals who gain an understanding of how they can use ML and AI to help them address all the big issues, including recruitment, employee engagement, career growth of employees, DEI, and more will have a competitive edge.