How to define, describe & think about IoT

There is no doubt that IoT is here to stay, mainly in areas such as manufacturing and transportation where there are clear benefits to connecting devices such as energy efficiency. Industrial IoT (IIoT), in particular, is being increasingly adopted as early adopters have successfully used the technology to remove inefficiencies, prevent errors, and optimize yields with real-time adjustments. …

Here is one model to think about how IoT projects can grow in complexity, and correspondingly, value: the IoT Extensibility Framework, taken from The Amazon Way on IoT. This describes four increasingly complex levels of IoT projects.

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#iot, #strategy

Creating the Intelligent Asset: Fusing IoT, Robotics, and Artificial Intelligence

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#iot, #robotics, #videos

The Artificial Intelligence–Powered Pivot to the Future

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#strategy, #videos

AI Knowledge Map: how to classify AI technologies

Multiple classifications, distinctions, landscapes, and infographics exist to represent and track the different ways to think about AI. However, I am not a big fan of those categorization exercises, mainly because I tend to think that the effort of classifying dynamic data points into predetermined fix boxes is often not worth the benefits of having such a “clear” framework (it is a generalization of course, cause sometimes they are extremely useful). …

This article in principle targets both people who are starting in AI to give them a broad sense of what is out there, as well as experts and practitioners who are experimenting with these technologies for a while (with an explicit request to send me feedback on how you would structure it or other technologies that should be captured by AI spectrum).

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#artificial-intelligence

Andrew Ng at Amazon re:MARS 2019

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#ai-first, #videos

The 4 Machine Learning Models Imperative for Business Transformation

Deploying machine learning models which predict an outcome across a business is no easy feat. That’s particularly true given that data science is an industry in which hype and promise are prevalent and specifically machine learning — although a massive competitive differentiator if harnessed the right way — is still elusive to most brands. There is a multitude of potential hurdles and gaps standing in the way of actuating models into production, such as skills gaps (both internally and with vendors or providers) and the possibility that your data or the models themselves don’t possess enough integrity and viability to produce meaningful results. …

In this post, we’re going to do just that…unpack the various elements of setting up and deploying a machine learning model which effectively predicts what’s needed to drive successful business outcomes. Read More

#strategy

Why buying and selling a house could soon be as simple as trading stocks

As different models — home trade-in companies, “iBuyers,” partnerships between new upstarts and old stalwarts — clamor for attention, lots of attention is focused on trying to determine what’s here to stay and what’s just an awkward rough draft — the Pets.com of the housing market.

Information technology has remade processes as disparate as ordering dinner delivery, hailing a cab and trading stocks. Now it’s coming for an industry so 20th century that much of the paperwork is still done on paper, where customers are often steered among professionals scratching each other’s backs, and where there’s enormous incentive for the incumbents to keep it hard for customers to manage on their own.

The stakes are big: $74 billion of real-estate-agent commissions were paid out in 2018, and investors have poured billions into all kinds of disrupters. Read More

#investing

Language2Pose: Natural Language Grounded Pose Forecasting

Generating animations from natural language sentences finds its applications in a a number of domains such as movie script visualization, virtual human animation and, robot motion planning. These sentences can describe different kinds of actions, speeds and direction of these actions, and possibly a target destination. The core modeling challenge in this language-to-pose application is how to map linguistic concepts to motion animations.

In this paper, we address this multimodal problem by introducing a neural architecture called Joint Language-toPose (or JL2P), which learns a joint embedding of language and pose. This joint embedding space is learned end-toend using a curriculum learning approach which emphasizes shorter and easier sequences first before moving to longer and harder ones. We evaluate our proposed model on a publicly available corpus of 3D pose data and humanannotated sentences. Both objective metrics and human judgment evaluation confirm that our proposed approach is able to generate more accurate animations and are deemed visually more representative by humans than other data. Read More

#nlp, #vfx

Turning fake news against itself: AI tool can detect disinformation with 92% accuracy

Fake news is already a massive problem worldwide and with continuing improvements in content generation tools powered by artificial intelligence we are not far from the era of neural fake news i.e., fake news generated by AI. That would make it an even more formidable challenge for publishers.

Currently, bots are being used to spread fake news, advanced AI models that are capable of consistently generating convincing pieces of disinformation are not yet available. 

Researchers are already working to counter such a scenario. An artificial intelligence model developed by researchers from the University of Washington and Allen Institute for AI (AI2) can spot fake news with 92% accuracy, per the team that developed the model.  Read More

#fake

Fireside Chat with Andrew Ng

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#ai-first, #strategy, #videos