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Bidens AI Initiative: Will It Work? – Forbes

AI, Artificial Intelligence concept,3d rendering,conceptual image.

The Biden administration has recently set into action its initiative on AI (Artificial Intelligence).This is part of legislation that was passed last year and included a budget of $250 million (for a period of five years).The goals are to provide easier access to the troves of government data as well as provide for advanced systems to create AI models.

No doubt, this effort is a clear sign of the strategic importance of the technology.It is also a recognition that the U.S. does not want to fall behind other nations, especially China.

The AI task force has 12 distinguished members who are from government, private industry and academia.This diversity should help provide for a smarter approach.

But the focus on data will also be critical. In areas of social importance such as housing, healthcare, education or other social determinants, the government is the only central organizer of data, said Dr. Trishan Panch, who is the co-founder of Wellframe.As such, if AI is going to deliver gains in these areas, the government has to be involved.

Yet there will certainly be challenges.Lets face it, the U.S. government often moves slowly and is burdened with various levels of local, state and federal authorities.

To achieve the initiatives vision, government entities will need to go beyond sharing best practices and figure out how to share more data across departments, said Justin Borgman, who is the CEO of Starburst.For instance, expanding open data initiatives which today are largely siloed by departments, would greatly improve access to data. That would give Artificial Intelligence systems more fuel to do their jobs.

If anything, there will be a need for a different mindset from the government.And this could be a heavy lift.Based on my experience in the public sector, the major challenge for the government is addressing the Missing Middle, said Jon Knisley, who is the Principal of Automation and Process Excellence at FortressIQ. There are a number of very advanced programs on one end, and then there are a lot of emerging programs on the other end. The greatest opportunity lies in closing that gap and driving more adoption. To be successful, there should be a focus as much as possible on applied AI.

But the government initiative can do something that has been difficult for the private sector to achievethat is, to help reskill the workforce for AI.This is perhaps one of the biggest challenges for the U.S.

The question is: How do we create a large AI data science force that is integrated across every industry and department in the US?, said Judy Lenane, who is the Chief Medical Officer at iRhythm.To start, well need to begin AI curriculum early and encourage its growth in order to build a comprehensive workforce. This will be especially critical for industries that are currently behind in technological adoption, such as construction and infrastructure, but it also needs to be accessible.

In the meantime, the Biden AI effort will need to deal with the complex issues of privacy and ethics.

Presently there is significant resistance on this subject given that most consumers feel that their privacy has been compromised, said Alice Jacobs, who is the CEO of convrg.ai.This is the result of a lack of transparency around managing consents and proper safeguards to ensure that data is secure. We will only be able to be successful if we can manage consents in a way where the consumer feels in control of their data.Transparent unified consent management will be the path forward to alleviate resistance around data access and can provide the US a competitive advantage in this data and AI arms race.

Tom (@ttaulli) is an advisor/board member to startups and the author of Artificial Intelligence Basics: A Non-Technical Introduction, The Robotic Process Automation Handbook: A Guide to Implementing RPA Systems and Implementing AI Systems: Transform Your Business in 6 Steps. He also has developed various online courses, such as for the COBOL and Python programming languages.

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Bidens AI Initiative: Will It Work? - Forbes

Use of Artificial Intelligence in the Making of Hearing Aids – Analytics Insight

Applications of artificial intelligence are growing every day in different sectors. There are numerous instances of AI applications in healthcare. The AI that occurs in hearing aids has actually been going on for years and the following is about how it happened. Hearing aids used to be relatively simple, he notes, but when hearing aids introduced a technology known as wide dynamic range compression (WDRC), the devices actually began to make a few decisions based on what is heard. For hearing aids to work effectively, they need to adapt to a persons individual hearing needs as well as all sorts of background noise environments. AI, machine learning, and neural networks are very good techniques to deal with such a complicated, nonlinear, multi-variable problem.

Researchers have been able to accomplish a lot with AI to date when it comes to improving hearing. For instance, researchers at the Perception and Neurodynamics Laboratory (PNL) at the Ohio State University trained a DNN to distinguish speech from other noise (such as humming and other background conversations). DeLiang Wang, professor of computer science and engineering at Ohio State University, in IEEE Spectrum has further explained People with hearing impairment could decipher only 29% of words muddled by babble without the program, but they understood 84% after the processing,

In recent years, major hearing aid manufacturers have been adding AI technology to their premium hearing aid models. For example, Widexs Moment hearing aid utilizes AI and machine learning to create hearing programs based on a wearers typical environments. Recently, Oticon introduced its newest hearing aid device, Oticon More, the first hearing aid with an onboard deep neural network. Oticon More has decided 12 million-plus real-life sounds so that people wearing it can better understand speech and the sounds around them. In a crowded place, Oticon Mores neural net receives a complicated layer of sounds, known as input. The DNN gets to work, first scanning and extracting simple sound elements and patterns from the input. It builds these element-powered her to recognize and make sense of whats happening. Lastly, the hearing aids then make a decision on how to balance the sound scene, making sure the output is clean and ideally balanced to the persons unique type of hearing loss. Speech and other sounds in the environment are complicated acoustic waveforms, but with unique patterns and structures that are exactly the sort of data deep learning is designed to analyze.

Hearing aids range widely in price, and some at the lower end have fewer AI-driven bells and whistles. Some patients may not need all the features, like the people who live alone or rarely leave the house find themselves in crowded scenarios often, for instance, might not benefit from the functionality found in higher-end models.

But for anyone who is out and about a lot, especially in situations where there are big soundscapes, AI-powered features allow for an improved hearing experience. The improvement of memory can be measured in a lot of more natural cater is memory recall. Its not that the hearing aids like Oticon More literally improve a persons memory, but artificial intelligence helps people spend less time trying to make sense of the noise around them, a process known as listening effort. When the listening effort is more natural, a person can focus more on the conversation and all the nuances conveyed within. So, the use of AI in hearing aids would help the brain work in a more natural way.

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Use of Artificial Intelligence in the Making of Hearing Aids - Analytics Insight

Facebook’s new Artificial Intelligence technology not only identifies Deepfakes, it can also gives hints about their origin – Digital Information…

Artificial intelligence (AI) created videos and pictures have become much popular and that can create some serious problems as well, because you can create fake videos, and manipulated images of any type to put anyone in trouble. Deepfakes use deep learning models to create fictitious photos, videos, and events. These days, deepfakes look so realistic that it becomes very difficult to identify the real picture from the fake one with a normal human eye, therefore, Facebook's AI team has created a model in collaboration with a group of Michigan State University that has the ability to identify not only the fabricated picture or videos, but it can even trace the origin.

The latest technology of Facebook checks the resemblances from a compilation of deepfakes datasets to find out if they have a common basis, looking for a distinctive model such as small specks of noise or minor quirks in the color range of a photo. By spotting the small finger impressions in the photo, the new AI model is capable to distinguish particulars of how the impartial network that produced the photo was invented, such as how large the prototype is and how it was prepared.The experts experimented with the AI technology on the Facebook platform by working on data of about 100,000 fake pictures created by 100 diverse creators making a thousand snaps each. The aim was to use few pictures to make the AI technology competent enough while the rest of the images were detained and then it was shown to the technology as the picture with unidentified inventors and from where they have created. The experts working on this experiment repudiated to show how precise the Artificial intelligences evaluation was during the test, but they have assured that they are trying their best to make the technology even better, which can assist moderators of the platform to detect the corresponding bogus content.

The author of deepfakes wonders how effective the technology will be beyond the environment of the lab, confronting fake pictures on the internet wild. The author further said that fake images that were identified were based on the abstract database and then it was organized in the lab. There is still a chance that creators may make many realistic-looking videos and pictures that can bypass the system. The experts had no other research data so that they can compare their results with them, but they know that they have made this system work in a much better way than before.

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Facebook's new Artificial Intelligence technology not only identifies Deepfakes, it can also gives hints about their origin - Digital Information...

Allianz Global Artificial Intelligence, led by Sebastian Thomas. Accumulates 30% annualized to 3 years. Analysis by Daniel Prez Explica .co – Explica

To invest, it is key to position yourself on the side of growth, innovation and development, and currently the biggest disruptor we have in the world is Artificial Intelligence.

Today I want to talk about the Allianz Global Artificial Intelligence, led by Sebastian Thomas and that invests in this interesting topic. Accumulate 30% annualized to 3 years vs 18% of the index investing in all types of companies that benefit from AI

To talk about the fund, it is necessary to understand the issue, its impact on the economies and the most affected sectors. Here a projection of impact by sectors

They differentiate 3 different big levels to see the AI

AI infrastructure

AI applications

Traditional sectors

Here is a great summary photo of the broad investment spectrum and the different sub-topics

The investment process is divided into three key steps:

Generation of ideas

Fundamental Analysis

Portfolio construction

The distribution by block and the analysis of the impact of AI on the company are key. From there they add those with the greatest potential and manage their exposure

As a summary, we have a fund with a top management team, powerful analysis capabilities and that invests in a subject with high growth projections and impact on the economy

A great option to benefit from the changes that AI causes in the world

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Allianz Global Artificial Intelligence, led by Sebastian Thomas. Accumulates 30% annualized to 3 years. Analysis by Daniel Prez Explica .co - Explica

How George Floyd changed the online conversation around BLM – Brookings Institution

When a Minneapolis police officer murdered George Floyd last year, the video of his killing immediately ricocheted around the web. The massive social movement that followed may have been the largest in U.S. history. Millions took to the streets and the internet to express a desire for racial justice in the United States, in a movement that has become encapsulated by the viral hashtag #BlackLivesMatter.

But a year after Floyds killing many observers have begun to ask whatif anythinghas fundamentally changed? These questions are in part about the possibility of racial equality and real police reform in America, but also address the extent to which a political and social movement with online origins can break into the U.S. mainstream and effect real change. In the year since Floyds murder, online interest in Black Lives Matter has steadily grown. An analysis of more than 50 million Twitter posts between Jan. 28, 2013 and April 30, 2021 finds that the outpouring of online support for #BlackLivesMatter following Floyds killing resulted in a lasting shift and a more vocal and engaged online public, with no evidence of hashtag cooptation by more conservative users over the past year. While the Black Lives Matter movements impact on the policy landscape remains uncertain, its online presence is undoubtedly stronger.

The growth of a hashtag movement

On July 13, 2013, George Zimmerman was acquitted of all charges in the fatal shooting of Trayvon Martin. Immediately, several Twitter users aired their disappointment and reminded the world of a simple truth: Black Lives Matter. Their tweets marked some of the first uses of a hashtag that would enter the mainstream a year later, on November 25, 2014, when a grand jury declined to indict Darren Wilson in the fatal shooting of Michael Brownand protesters online and off turned to the #BlackLivesMatter hashtag to express their anger and grief. As police violence has persisted and the movement for racial justice continues, the #BlackLivesMatter hashtag has emerged as an enduring feature of online discourse. As of April 30, 2021, it has been used in more than 25 million original Twitter posts, which collectively have garnered approximately 444 billion likes, retweets, comments, or quotesroughly 17,000 engagements per post.[1]

Since Floyds murder, this online activism has only accelerated. In the seven days between his death on May 25, 2020, and the police attack on protesters in Lafayette Square on June 1, the #BlackLivesMatter hashtag generated approximately 3.4 million original posts with 69 billion engagementsor roughly 13% of all posts and 15.5% of all engagements on Twitter in that period. #BlackLivesMatter content peaked on June 8, with some 1.2 million original posts mentioning the hashtag.This marked an astonishing increase in use of the hashtag: Prior to the June protests, the record for posts had been July 8, 2016, following the deaths of Alton Sterling and Philando Castile, when original content reached 145,631 posts with an average of 7.4 engagements per post.

Figure 1 plots this dramatic increase in use of the #BlackLivesMatter hashtag, alongside markers of milestones in the movement. Following Floyds murder, posts increased exponentially and previous spikes in content barely register in comparison. The figure also plots use of #BlueLivesMatter, a hashtag movement expressing support for the police and that, here, illustrates the disparity in interest between the two hashtags. Between 2013 and 2021, #BlueLivesMatter has registered 1.6 million original posts and 1.7 billion engagements (about 1,000 per post), which while smaller in scope than #BlackLivesMatter, is not insignificant. Use of the two hashtag movements appear to rise and fall together.

Figure 1: Total Original #BlackLivesMatter and #BlueLivesMatter Posts

The basic time series detailed above highlights how atypical last summers social media discourse was surrounding #BlackLivesMatter. But the skewed nature of the data masks underlying patterns. Though it may not be immediately apparent, Floyds murder marked a turning point in Twitter conversations around #BlackLivesMatter. By transforming the data to a log-scale, the steady growth of a movement (and separation from a countermovement) becomes clear (Figure 2). This type of transformation is particularly useful on highly skewed data. Visually, the log transformation represents data as a percentage change, such that going from 1 to 2 will appear the same on a graph as going from 100 to 200, even though the absolute change in value (1 vs. 100) differs.

Figure 2: Total Original #BlackLivesMatter and #BlueLivesMatter Posts (Logged)

In the run-up to Floyds murder, #BlackLivesMatter and #BlueLivesMatter content tracked together, rising and falling in response to instances of police violence. But Floyds murder breaks this pattern: Both #BlackLivesMatter and #BlueLivesMatter content surge, but the former does not return to its pre-Floyd normal. #BlueLivesMatter content declines steadily in the subsequent months after the initial spike, but #BlackLivesMatter content rises relative to the time prior to Floyds murder. Between January 1 and March 31, 2020, the average daily number of original posts for #BlackLivesMatter and #BlueLivesMatter content was 1,829 and 836 respectively. During this same period in 2021, these numbers stand at 4,368 and 394 respectively. This represents a nearly 250% increase in #BlackLivesMatter content on the year, a sizableand seemingly durableshift.

Over the years, the overlapping spikes in #BlackLivesMatter and #BlueLivesMatter content have sparked intense rhetorical competition online among Twitter users. As a result, the sustained growth in #BlackLivesMatter content might be dismissed as a case of hashtag cooptation, in which the movements opponents ironically or negatively post using the hashtag. But by examining the expanded network of users sharing content, it is evident that this is not the case. Figures 3 and 4 plot the average political ideology of Twitter accounts using the #BlackLivesMatter and #BlueLivesMatter hashtags at two contentious political moments over the past yearthe January 6 assault on the U.S. Capitol and the Derek Chauvin trial.[2]

Until early January, the political ideology of these users was as we would expect itusers sharing the #BlackLivesMatter hashtag more liberal, users sharing the #BlueLivesMatter hashtag more conservative. Then, the ideology of users sharing the #BlueLivesMatter hashtag becomes dramatically more liberal for a brief period of time. This is likely due to an ironic appropriation of the hashtag in response to the Capitol assault, which resulted in one police officer dying and many more being injured. By contrast, the steady ideological score associated with posts that used the #BlackLivesMatter hashtag suggests that content during this period was driven by users supportive of the hashtags message.

Figure 3: Average Political Ideology of #BlackLivesMatter and #BlueLivesMatter Hashtag Users

The political ideology of users posting #BlackLivesMatter and #BlueLivesMatter has held steady during other periods of upheaval, indicating that it is unlikely that hashtag cooptation is causing a significant portion of the growth in use of the #BlackLivesMatter hashtag. Over the course of April, a police officer shot and killed Daunte Wright during a traffic stop in Brooklyn Center, Minnesota, while former police officer Derek Chauvin stood trial nearby for Floyds murder. Figure 4 shows that, as in January, the average ideology of users posting content with the #BlackLivesMatter hashtag barely fluctuated. Unlike in January, however, the average ideology of #BlueLivesMatter hashtag users did not change. Instead, what registers is an online battle for control of the #AllLivesMatter hashtag, which fluctuates wildly over the course of the month in ways that coincide with Wrights killing and Chauvins conviction.

Figure 4: Average Political Ideology of #BlackLivesMatter, #BlueLivesMatter, and #AllLivesMatter Hashtag Users

While support for the Black Lives Matter movement has declined in recent months, particularly in conservative America, there remains a steady interest in this online conversation. A growing number of users are actively engaged both during and outside the times of intense interest associated with moments of upheaval. For a social and political movement bolstered by a hashtag, this growth may serve as a silver lining to a challenging year. The difficulty, of course, is translating online activismcommonly critiqued as slacktivisminto offline political change. Yet some research has found that online support can translate to meaningful offline action. And this may be particularly true of young people, who unsurprisingly are disproportionately represented in online political conversations. This may be somewhat less difficult for #BlackLivesMatter, which began, in part, as a social media conversation and has now firmly entered the political mainstream.

Valerie Wirtschafter is a senior data analyst in the Artificial Intelligence and Emerging Technologies Initiative at the Brookings Institution and a Ph.D. candidate in the Department of Political Science at the University of California, Los Angeles.

[1] In this analysis, I exclude retweets, which are counted as observations in some analyses. Instead, retweets are included in engagements, which also includes likes, comments, and quote tweets. Data for this analysis from January 2013 to June 2020 comes from Giorgi, et al. (2020), which due to Twitters terms of service, provides only posts ids for approximately 41 million tweets that reference #BlackLivesMatter, #BlueLivesMatter or #AllLivesMatter. I use the rehydratoR package in R to pull the Twitter content from the post ids provided. Finally, I use the Twitter API to pull the remaining posts from July 2020 through April 2021. Twitter post IDs for this expanded dataset can be made available on request.

[2] In his 2015 Political Analysis paper, Pablo Barber develops a strategy for calculating the partisan ideology of Twitter users, based on the network of Twitter users they chose to follow. The idea is that the decision to follow certain elites is a signal of political interest, which can then be used as an input to determine the partisan preferences of a given Twitter user. This estimation strategy aligns well with other common measures of ideology, including party registration records and DW-NOMINATE scores. Given that these calculations are data intensive and Twitter API rate limits for this content are fairly restrictive, I utilize this strategy but restrict my analysis to users who shared relevant content over a given time period that received at least fifty likes, retweets, comments or quotes. In order to ensure the precision of ideology estimates, I also exclude users who follow fewer than five elites. Elites include politicians, media outlets, think tanks, political commentators, and other influential Twitter users. Positive scores are more conservative and negative scores are more liberal. More details on the methodology and implementation can be found here.

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How George Floyd changed the online conversation around BLM - Brookings Institution