banking & finance


#FinServ_2019-11-13_11-31-13.xlsx

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The graph represents a network of 2,353 Twitter users whose tweets in the requested range contained "#FinServ", or who were replied to or mentioned in those tweets. The network was obtained from the NodeXL Graph Server on Wednesday, 13 November 2019 at 19:32 UTC. The requested start date was Monday, 11 November 2019 at 01:01 UTC and the maximum number of days (going backward) was 14. The maximum number of tweets collected was 5,000. The tweets in the network were tweeted over the 5-day, 13-hour, 33-minute period from Tuesday, 05 November 2019 at 11:26 UTC to Monday, 11 November 2019 at 01:00 UTC.


Artificial Intelligence Will Enable the Future, Blockchain Will Secure It :: bitsmart

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Speaking at BlockShow Asia 2019, Todalarity CEO Toufi Saliba posed a hypothetical question to the audience: "How many people would take a pill that made you smarter, knowing they can be controlled by a social entity?". "Now imagine at the same time the pill has autonomous decentralized governance so that no one can control or repurpose that pill but the host – yourself." . "It is when we are at a point of centralizing data that you can begin to think about decentralization


Integration of AI into RPA - Part 2

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In Part 1 of this article, we talked about how RPA is a platform to integrate point AI solutions to solve complex business processes. Now let us dive into a specific end to end business process and discuss how AI can be integrated into RPA. Consider a business user in an auto insurance claim processing department. The business user receives emails (tons of them) every day with a claim form and pictures of the cars involved in the incident. Let's say a claim is submitted via email, which has a loss form (pdf) and pictures of the damaged cars.


AI marketing sector attracts $2.5bn of investment in 2018 - CityAM

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Artificial intelligence (AI) marketing companies bagged $2.5bn of investment last year as marketers turned to the new technology to help analyse huge troves of data. Last year's investment surge has continued into 2019, with $1bn invested in the second quarter alone, according to figures compiled by tech investment firm GP Bullhound. The report shows that marketing AI remains a nascent sector, with private placements outnumbering merger and acquisition transactions. However, the steady rise highlights how marketers and increasingly looking to technology to help sort and analyse growing amounts of user data. "Artificial intelligence heralds the beginning of a new marketing era, driven by the need to connect vast amounts of disparate data, uncover patterns and make predictions, which only AI can accomplish," said Oliver Schweitzer, executive director at GP Bullhound.


3 Important Revelations From NVIDIA's Q3 Earnings The Motley Fool

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After a year of uncertainty, NVIDIA (NASDAQ:NVDA) shareholders were holding out hope that the company could return to year-over-year revenue growth, or at least continue the incremental improvements it has delivered in each of the previous two quarters. While the return to growth has yet to materialize, NVIDIA did deliver sequential improvement in its third-quarter earnings report out Thursday, supporting investors' hopes that the worst is over. For the fiscal 2020 third quarter, which ended Oct. 27, NVIDIA reported revenue of $3.01 billion, down 5% year over year -- but up 17% sequentially. This was easily above analysts' consensus top estimates of $2.91 billion and the high end of management's forecast, which called for $2.96 billion. Profits were equally promising, as adjusted earnings per share of $1.78 declined 3% from a year ago but soared past expectations of $1.57.


Bard Ionson Home Page

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New currencies are being created outside of government control. Art is being created with artificial intelligence. Fake news is generated from deep fake videos and images. Augmented and virtual reality is being created inside the memory of computers. Humans once used physical things to trade value with each other; stones, shells, beads, cheese, bits of metal with simple images.


5 Disruptive Technologies Shaping Our Future

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Throughout the centuries, humans have made tremendous leaps forward in the way we build, interact, and communicate with each other and the world. More recently, we've shifted self-execute industrialization to the age of information. We now have a seemingly unlimited amount of knowledge available at our fingertips. Technological advances are now accelerating faster than ever before. As technology continues to evolve, we can expect it to impact all aspects of our lives and society as a whole.


How Will Automation And AI Change The Nonprofit World?

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Across all industries, technologies like automation, artificial intelligence (AI) and machine learning are improving processes, increasing efficiency and aiding decision-makers. As these tools evolve and become even more advanced, there will be a greater number of potential applications across more fields, including the nonprofit sector. We asked a panel of Forbes Nonprofit Council members how they foresee this cutting-edge technology impacting their operations in the next five years. Here are their predictions for a nonprofit world powered by automation and AI. As online platforms grow in sophistication, it will be easier and easier to automate donor communications that feel personalized and authentic.


Hot New Releases Expert Systems in Artificial Intelligence Books

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In artificial intelligence, an expert system is a computer system that emulates the decision-making ability of a human expert. Expert systems are designed to solve complex problems by reasoning through bodies of knowledge, represented mainly as if–then rules rather than through conventional procedural code. This new second edition improves with the addition of Spark―a ML framework from the Apache foundation. By implementing Spark, machine learning students can easily process much large data sets and call the spark algorithms using ordinary Python code. Machine Learning with Spark and Python focuses on two algorithm families (linear methods and ensemble methods) that effectively predict outcomes.


Can the planet really afford the exorbitant power demands of machine learning? John Naughton

The Guardian

There is, alas, no such thing as a free lunch. This simple and obvious truth is invariably forgotten whenever irrational exuberance teams up with digital technology in the latest quest to "change the world". A case in point was the bitcoin frenzy, where one could apparently become insanely rich by "mining" for the elusive coins. All you needed was to get a computer to solve a complicated mathematical puzzle and – lo! – you could earn one bitcoin, which at the height of the frenzy was worth $19,783.06. All you had to do was buy a mining kit (or three) from Amazon, plug it in and become part of the crypto future.