Cryptography and Cryptocurrency – Coindoo

Back in 2017, the internet was flooded by news related to Bitcoin and the importance it will have in the future. This all started 9 years prior in 2008, a year where many innovations in tech were made such as the revolutionary iPhone, 3G technology. 2008 was also the year when Facebook reached over 1 million active users and the first Android device was released and so on. Other technologies like the GPS, something that was uninteresting to the public in previous years suddenly became widely used because of the smartphone.

Bitcoin has had a mysterious and interesting origin. It was developed in 2008 by an individual or group of individuals under the name Satoshi Nakamoto with the domain bitcoin dot org being registered in August of that year. The Bitcoin network was released in January next year when the first blockchain was mined by Satoshi known as the genesis block.

Cryptography has a major role in the blockchain. It is a process of securing communications from third parties and is used to prevent these parties from intercepting and reading the information sent. The use of cryptography can be found in many disciplines and areas such as mathematics, electrical engineering, computer science, computer passwords, military communications and lastly, cryptocurrencies such as Bitcoin. The opposite of this is cryptanalysis which is a discipline meant to break encrypted messages.

This discipline has been practiced even before modern computers came into existence. This practice goes back thousands of years and is used for the same purpose such as securing messages. In modern times cryptography is much more complicated and is used mainly in computer and network security.

In symmetric encryption, a single key is used to encrypt and decrypt the information between two ends. The sender and the receiver must have access to the same key for the information to be decrypted. This is different from asymmetric encryption that we will explore in a bit. Symmetric encryption uses an algorithm to encrypt data in a way that cannot be deciphered by anybody intercepting the data without the right key. The key is an algorithm that can reverse the encryption, returning the message to its former readable state. The security drawback of this process is the key exchange that can either be delivered to the receiver online or in a pen drive. A third party intercepting the key will be able to read the information.

Asymmetric encryption is a newer and more advanced method of encryption that uses 2 keys, one which is a public key and one is a private key. This method is also known as public-key encryption. This method requires 2 processes to be made: authentication and encryption. The authentication process requires the public key to make sure that the message was sent by the ones who own the private key. The encryption process is when the owner of the private key is decrypting the message that was encrypted with the public key.

Cryptocurrencies cannot be held, it cannot be seen and can only be accessed in the digital environment. It can only be accessed via the internet by using a computer or mobile phone. It is not centralized and it exists on a large network of computers and other devices and relies entirely on a peer-to-peer network. Peer-to-peer networks are computer systems connected via an internet connection.

Files can be easily shared between systems without the need for a centralized server, meaning that each device becomes both a file server and client. The way files are shared is by using a P2P software that allows a device to search for files on the devices of other people and at the same time, another users system can search for fields on your computer. The idea may seem frightening to some but keep in mind that the files that can be shared are typically located within a single folder that the user has designated to share.

Blockchain and cryptocurrencies can greatly change the way that we do business and it is a technology that is slowly being incorporated by many industries. Malta, for example, is looking to become a major hub of cryptocurrency and blockchain technology. New technology and digital endeavours have always been welcomed in Malta and are one of the first countries to have legislation in support of iGaming and among the most respected jurisdictions in the world.

Many other countries around the world have accepted the use of cryptocurrency, each of them to various degrees with some countries going so far as to ban them completely while others are embracing it. Many seem to agree that internet gaming platforms such as the online casino Starvegas and many others can greatly benefit from blockchain technology, improving the players gaming experience, securing personal information and also offer more transparency.

In more creative industries, some companies make use of what is known as smart property that can track and help secure the digital rights for creators by storing IP information on a digital network which then makes it able for artists to define their licensing terms. This includes the music industry, video content creation, articles and other artistic content such as plastic arts and even book authors.

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Cryptography and Cryptocurrency - Coindoo

Monero Offers Protection From Crisis Overreach – Yahoo Finance

In times of crisis, the ever-present balancing act between security and privacy always rises to the surface.

Sure, some sacrifices to privacy are considered justified in the short term. But Im concerned with the long-term consequences of giving central governments too much control and access into our lives.

And theres one government control mechanism under serious consideration right now which will have consequences that could far outlive the current global state of emergency: The abolition of paper currency.

True, coronavirus can live on surfaces for days on end, including on your pocket change. In fact, some countries have mandated their banks sanitize all paper currency before it can be withdrawn.

But wouldnt it be easier, says government officials, to simply do away with paper money altogether? Wouldnt a purely digital currency be better for your health? And if we did that, no one would need Bitcoin, right?

Wrong!

True cryptocurrencies, like Bitcoin and leading altcoins, protect their owners from government devaluation and confiscation. Government-controlled digital money does nothing of the kind.

In fact, ultimately, it could give governments the ability to dictate exactly how much money you can own and the conditions under which your assets can be stripped away from you.

All with the push of a button!

With privacy under severe attack, some citizens may suddenly find that the only alternative to government-controlled digital money is privacy coins crypto assets that prioritize protecting the identity of those involved in a transaction.

And one of the most prominent privacy coins according to our Weiss Ratings Model is Monero (XMR, Rated C+).

Itssimilar to Bitcoin (BTC, Rated B+) in that it's a Proof-of-Work crypto, 100% dedicated to processing payments.

But it does so in such a way that the sender, receiver and amount transferred are carefully cloaked behind cutting-edge cryptography.

This means that for Monero, privacy is a permanent fixture. If you use Monero, your payments will always be hidden fromeveryoneexcept parties to the transaction.

The developers behind Monero were sticklers for the original goal of cryptocurrencies: To be censorship-resistant money.

They felt privacy was relatively lacking in Bitcoin. So, they decided to make privacy far more robust.

Like Bitcoin, Monero was founded by an anonymous individual and based largely on open-source technology. When the founder later tried to implement a series of changes that the community of developers disagreed with, the community split off the original project.

Thats when they created the Monero we know today.

Trouble is, most governments dont like Monero. They fear its privacy features will enable criminals and spies.

We dont deny that risk is real. But as weve stressed here repeatedly: Technology is neutral.

And this type of privacy may become an essential feature demanded by millions of honest actors in the years to come.

Check out Weiss Crypto Ratings and Indexes:https://www.benzinga.com/cryptocurrency/weiss-crypto-ratings/https://www.benzinga.com/cryptocurrency/weiss-crypto-indexes/

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2020 Benzinga.com. Benzinga does not provide investment advice. All rights reserved.

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6 Ways Machine Learning Is Revolutionizing the Warehouse – Robotics Tomorrow

While machine learning offers many benefits to the company, try to move your employees around to other human-based areas of the business. Here are some ways that you can begin using machine learning in a warehouse environment.

6 Ways Machine Learning Is Revolutionizing the Warehouse

Cory Levins, Director of Business Development | Air Sea Containers

Advancements in technology are impacting the warehouse industry all the time with new ways to track shipments, communicate, organize warehouses and more. But, machine learning is one of the newest types of technology on the block, and it's helping to improve warehouse safety and keep warehouses more organized and on top of shipments. When it comes to machine learning, its important to remember how this is impacting human jobs as more automated machines take the place of human workers. If you own or manage a warehouse and youre interested in integrating machine learning tech, its important to consider what will happen to employees. While machine learning offers many benefits to the company, try to move your employees around to other human-based areas of the business. Here are some ways that you can begin using machine learning in a warehouse environment.

Machine learning is a phrase used to refer to a series of algorithms and statistics that a computer uses to notice patterns and essentially learn how to complete a given task. Machine learning is a subset of artificial intelligence, which is the development of a computer that is able to carry out tasks typically performed only by humans. Unlike with robotic machines that are programmed to do one specific task or movement, machine learning encourages the computer to analyze and understand data so it can figure out how to do the task, not mindlessly carry out an order. This means that machines with DRL (deep reinforcement learning) are able to sense their surroundings and react to a limited extent. One of the greatest benefits of machine learning is the fact that it can eliminate a lot of human errors, though machine learning is not perfect either.

Machine learning can vastly improve your overall supply chain because these machines were designed to pick up patterns. If a device analyzes your supply chain system, it may be able to notice areas where defeats are created or identify parts of the system that can be improved, making the entire process more efficient. With a human assessor, it would take more time to inspect each product and notice a pattern of defective items. A computer can do this analysis quickly, and there is a smaller chance that the machine will accidentally skip over a defeat, whereas the human eye may miss something that could become a larger problem in the future.

Many companies are beginning to move toward entirely automated warehouses in which machines perform the tasks of preparing packages for shipment and tracking inventory. Although this would eliminate human jobs, it would be much more efficient and, again, eliminate the chance of error. Still, there would be a need for humans to help fix machines and oversee the process, shifting the jobs from one segment of the warehouse industry to another. In the beginning, it may seem expensive to invest in the equipment, but in the long run, having machine-learned robots run the warehouse would reduce your overhead costs.

Not only can machine-learned computers package your shipments, but they are also able to organize products. From the moment a shipment enters the warehouse, these devices can scan and report the shipment, keeping accurate track of your inventory. For employees working in warehouses, this task can be monotonous and time-consuming, but when machines are used in place of humans, the task can be completed much quicker and leave your employees with more time to carry out tasks that only a human can accomplish.

If your warehouse is carrying items that have a specific expiration date or food products that can go bad, you want to ensure you dont store any of these items past the sell-by date. With machines that have been conditioned with some level of artificial intelligence, its easy to transmit data detailing when items will expire and need to be sold or disposed of. Humans can easily forget which items need to be sent out first, which causes waste when products are thrown away. Machine learning can help reduce this issue. Integrating eco-friendly packaging into your warehouse procedures can also help reduce waste by lowering your warehouses carbon footprint.

Its always important to provide your customers with actual human customer support, as it can be frustrating trying to explain an issue to a robot. There are still some benefits to machine-learned customer support. If you have a website for your warehouse, you can add a support chat feature that allows people to communicate with a computer via a messaging app. This is a great way to allow people to ask quick and simple questions without clogging your phone lines or asking people to wait on long hold times. You can also use automated customer support on your phone line to filter out simple questions, but you must always offer a human support option as well.

Warehouses can be dangerous places with so many heavy boxes and large machinery moving around one space. Of course, you should have strict safety practices in place to keep your employees as safe as possible. When you integrate machines into the process, you can make the environment even less dangerous and improve warehouse safety. If AI robots are responsible for driving dangerous machinery and storing inventory in hard-to-reach places, its less likely that an accident will occur. And even if it does, a human worker will not be the one to suffer the consequences.

If youre looking for ways to upgrade your warehousing procedures, consider adding some machines that have been programmed with machine learning capabilities. Youll be able to make your business more efficient and reduce the chances of workplace injuries. You dont need to automate the entire warehouse if you value the work and impact of human employees, but youll find that machine-learned robots can speed up the process and make things easier for workers as well.

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What Will Be the Future Prospects Of the Machine Learning Software Market? Trends, Factors, Opportunities and Restraints – Science In Me

Regal Intelligence has added latest report on Machine Learning Software Market in its offering. The global market for Machine Learning Software is expected to grow impressive CAGR during the forecast period. Furthermore, this report provides a complete overview of the Machine Learning Software Market offering a comprehensive insight into historical market trends, performance and 2020 outlook.

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The global Machine Learning Software Market report highly focuses on key industry players to identify the potential growth opportunities, along with the increased marketing activities is projected to accelerate market growth throughout the forecast period. Additionally, the market is expected to grow immensely throughout the forecast period owing to some primary factors fuelling the growth of this global market. Finally, the report provides detailed profile and data information analysis of leading Machine Learning Software company.

Key Companies included in this report: Microsoft, Google, TensorFlow, Kount, Warwick Analytics, Valohai, Torch, Apache SINGA, AWS, BigML, Figure Eight, Floyd Labs

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Market by Types: On-Premises, Cloud Based

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The Machine Learning Software Market research presents a study by combining primary as well as secondary research. The report gives insights on the key factors concerned with generating and limiting Machine Learning Software market growth. Additionally, the report also studies competitive developments, such as mergers and acquisitions, new partnerships, new contracts, and new product developments in the global Machine Learning Software market. The past trends and future prospects included in this report makes it highly comprehensible for the analysis of the market. Moreover, The latest trends, product portfolio, demographics, geographical segmentation, and regulatory framework of the Machine Learning Software market have also been included in the study.

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To conclude, the report presents SWOT analysis to sum up the information covered in the global Machine Learning Software market report, making it easier for the customers to plan their activities accordingly and make informed decisions. To know more about the report, get in touch with Regal Intelligence.

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What Will Be the Future Prospects Of the Machine Learning Software Market? Trends, Factors, Opportunities and Restraints - Science In Me

How Microsoft Teams will use AI to filter out typing, barking, and other noise from video calls – VentureBeat

Last month, Microsoft announced that Teams, its competitor to Slack, Facebooks Workplace, and Googles Hangouts Chat, had passed 44 million daily active users. The milestone overshadowed its unveiling of a few new features coming later this year. Most were straightforward: a hand-raising feature to indicate you have something to say, offline and low-bandwidth support to read chat messages and write responses even if you have poor or no internet connection, and an option to pop chats out into a separate window. But one feature, real-time noise suppression, stood out Microsoft demoed how the AI minimized distracting background noise during a call.

Weve all been there. How many times have you asked someone to mute themselves or to relocate from a noisy area? Real-time noise suppression will filter out someone typing on their keyboard while in a meeting, the rustling of a bag of chips (as you can see in the video above), and a vacuum cleaner running in the background. AI will remove the background noise in real time so you can hear only speech on the call. But how exactly does it work? We talked to Robert Aichner, Microsoft Teams group program manager, to find out.

The use of collaboration and video conferencing tools is exploding as the coronavirus crisis forces millions to learn and work from home. Microsoft is pushing Teams as the solution for businesses and consumers as part of its Microsoft 365 subscription suite. The company is leaning on its machine learning expertise to ensure AI features are one of its big differentiators. When it finally arrives, real-time background noise suppression will be a boon for businesses and households full of distracting noises. Additionally, how Microsoft built the feature is also instructive to other companies tapping machine learning.

Of course, noise suppression has existed in the Microsoft Teams, Skype, and Skype for Business apps for years. Other communication tools and video conferencing apps have some form of noise suppression as well. But that noise suppression covers stationary noise, such as a computer fan or air conditioner running in the background. The traditional noise suppression method is to look for speech pauses, estimate the baseline of noise, assume that the continuous background noise doesnt change over time, and filter it out.

Going forward, Microsoft Teams will suppress non-stationary noises like a dog barking or somebody shutting a door. That is not stationary, Aichner explained. You cannot estimate that in speech pauses. What machine learning now allows you to do is to create this big training set, with a lot of representative noises.

In fact, Microsoft open-sourced its training set earlier this year on GitHub to advance the research community in that field. While the first version is publicly available, Microsoft is actively working on extending the data sets. A company spokesperson confirmed that as part of the real-time noise suppression feature, certain categories of noises in the data sets will not be filtered out on calls, including musical instruments, laughter, and singing.

Microsoft cant simply isolate the sound of human voices because other noises also happen at the same frequencies. On a spectrogram of speech signal, unwanted noise appears in the gaps between speech and overlapping with the speech. Its thus next to impossible to filter out the noise if your speech and noise overlap, you cant distinguish the two. Instead, you need to train a neural network beforehand on what noise looks like and speech looks like.

To get his points across, Aichner compared machine learning models for noise suppression to machine learning models for speech recognition. For speech recognition, you need to record a large corpus of users talking into the microphone and then have humans label that speech data by writing down what was said. Instead of mapping microphone input to written words, in noise suppression youre trying to get from noisy speech to clean speech.

We train a model to understand the difference between noise and speech, and then the model is trying to just keep the speech, Aichner said. We have training data sets. We took thousands of diverse speakers and more than 100 noise types. And then what we do is we mix the clean speech without noise with the noise. So we simulate a microphone signal. And then you also give the model the clean speech as the ground truth. So youre asking the model, From this noisy data, please extract this clean signal, and this is how it should look like. Thats how you train neural networks [in] supervised learning, where you basically have some ground truth.

For speech recognition, the ground truth is what was said into the microphone. For real-time noise suppression, the ground truth is the speech without noise. By feeding a large enough data set in this case hundreds of hours of data Microsoft can effectively train its model. Its able to generalize and reduce the noise with my voice even though my voice wasnt part of the training data, Aichner said. In real time, when I speak, there is noise that the model would be able to extract the clean speech [from] and just send that to the remote person.

Comparing the functionality to speech recognition makes noise suppression sound much more achievable, even though its happening in real time. So why has it not been done before? Can Microsofts competitors quickly recreate it? Aichner listed challenges for building real-time noise suppression, including finding representative data sets, building and shrinking the model, and leveraging machine learning expertise.

We already touched on the first challenge: representative data sets. The team spent a lot of time figuring out how to produce sound files that exemplify what happens on a typical call.

They used audio books for representing male and female voices, since speech characteristics do differ between male and female voices. They used YouTube data sets with labeled data that specify that a recording includes, say, typing and music. Aichners team then combined the speech data and noises data using a synthesizer script at different signal to noise ratios. By amplifying the noise, they could imitate different realistic situations that can happen on a call.

But audiobooks are drastically different than conference calls. Would that not affect the model, and thus the noise suppression?

That is a good point, Aichner conceded. Our team did make some recordings as well to make sure that we are not just training on synthetic data we generate ourselves, but that it also works on actual data. But its definitely harder to get those real recordings.

Aichners team is not allowed to look at any customer data. Additionally, Microsoft has strict privacy guidelines internally. I cant just simply say, Now I record every meeting.'

So the team couldnt use Microsoft Teams calls. Even if they could say, if some Microsoft employees opted-in to have their meetings recorded someone would still have to mark down when exactly distracting noises occurred.

And so thats why we right now have some smaller-scale effort of making sure that we collect some of these real recordings with a variety of devices and speakers and so on, said Aichner. What we then do is we make that part of the test set. So we have a test set which we believe is even more representative of real meetings. And then, we see if we use a certain training set, how well does that do on the test set? So ideally yes, I would love to have a training set, which is all Teams recordings and have all types of noises people are listening to. Its just that I cant easily get the same number of the same volume of data that I can by grabbing some other open source data set.

I pushed the point once more: How would an opt-in program to record Microsoft employees using Teams impact the feature?

You could argue that it gets better, Aichner said. If you have more representative data, it could get even better. So I think thats a good idea to potentially in the future see if we can improve even further. But I think what we are seeing so far is even with just taking public data, it works really well.

The next challenge is to figure out how to build the neural network, what the model architecture should be, and iterate. The machine learning model went through a lot of tuning. That required a lot of compute. Aichners team was of course relying on Azure, using many GPUs. Even with all that compute, however, training a large model with a large data set could take multiple days.

A lot of the machine learning happens in the cloud, Aichner said. So, for speech recognition for example, you speak into the microphone, thats sent to the cloud. The cloud has huge compute, and then you run these large models to recognize your speech. For us, since its real-time communication, I need to process every frame. Lets say its 10 or 20 millisecond frames. I need to now process that within that time, so that I can send that immediately to you. I cant send it to the cloud, wait for some noise suppression, and send it back.

For speech recognition, leveraging the cloud may make sense. For real-time noise suppression, its a nonstarter. Once you have the machine learning model, you then have to shrink it to fit on the client. You need to be able to run it on a typical phone or computer. A machine learning model only for people with high-end machines is useless.

Theres another reason why the machine learning model should live on the edge rather than the cloud. Microsoft wants to limit server use. Sometimes, there isnt even a server in the equation to begin with. For one-to-one calls in Microsoft Teams, the call setup goes through a server, but the actual audio and video signal packets are sent directly between the two participants. For group calls or scheduled meetings, there is a server in the picture, but Microsoft minimizes the load on that server. Doing a lot of server processing for each call increases costs, and every additional network hop adds latency. Its more efficient from a cost and latency perspective to do the processing on the edge.

You want to make sure that you push as much of the compute to the endpoint of the user because there isnt really any cost involved in that. You already have your laptop or your PC or your mobile phone, so now lets do some additional processing. As long as youre not overloading the CPU, that should be fine, Aichner said.

I pointed out there is a cost, especially on devices that arent plugged in: battery life. Yeah, battery life, we are obviously paying attention to that too, he said. We dont want you now to have much lower battery life just because we added some noise suppression. Thats definitely another requirement we have when we are shipping. We need to make sure that we are not regressing there.

Its not just regression that the team has to consider, but progression in the future as well. Because were talking about a machine learning model, the work never ends.

We are trying to build something which is flexible in the future because we are not going to stop investing in noise suppression after we release the first feature, Aichner said. We want to make it better and better. Maybe for some noise tests we are not doing as good as we should. We definitely want to have the ability to improve that. The Teams client will be able to download new models and improve the quality over time whenever we think we have something better.

The model itself will clock in at a few megabytes, but it wont affect the size of the client itself. He said, Thats also another requirement we have. When users download the app on the phone or on the desktop or laptop, you want to minimize the download size. You want to help the people get going as fast as possible.

Adding megabytes to that download just for some model isnt going to fly, Aichner said. After you install Microsoft Teams, later in the background it will download that model. Thats what also allows us to be flexible in the future that we could do even more, have different models.

All the above requires one final component: talent.

You also need to have the machine learning expertise to know what you want to do with that data, Aichner said. Thats why we created this machine learning team in this intelligent communications group. You need experts to know what they should do with that data. What are the right models? Deep learning has a very broad meaning. There are many different types of models you can create. We have several centers around the world in Microsoft Research, and we have a lot of audio experts there too. We are working very closely with them because they have a lot of expertise in this deep learning space.

The data is open source and can be improved upon. A lot of compute is required, but any company can simply leverage a public cloud, including the leaders Amazon Web Services, Microsoft Azure, and Google Cloud. So if another company with a video chat tool had the right machine learners, could they pull this off?

The answer is probably yes, similar to how several companies are getting speech recognition, Aichner said. They have a speech recognizer where theres also lots of data involved. Theres also lots of expertise needed to build a model. So the large companies are doing that.

Aichner believes Microsoft still has a heavy advantage because of its scale. I think that the value is the data, he said. What we want to do in the future is like what you said, have a program where Microsoft employees can give us more than enough real Teams Calls so that we have an even better analysis of what our customers are really doing, what problems they are facing, and customize it more towards that.

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How Microsoft Teams will use AI to filter out typing, barking, and other noise from video calls - VentureBeat

With A.I., the Secret Life of Pets Is Not So Secret – The New York Times

This article is part of our latest Artificial Intelligence special report, which focuses on how the technology continues to evolve and affect our lives.

Most dog owners intuitively understand what their pet is saying. They know the difference between a bark for Im hungry and one for Im hurt.

Soon, a device at home will be able to understand them as well.

Furbo, a streaming camera that can dispense treats for your pet, snap photos and send you a notification if your dog is barking, provides a live feed of your home that you can check on a smartphone app.

In the coming months, Furbo is expected to roll out a new feature that allows it to differentiate among kinds of barking and alert owners if a dogs behavior appears abnormal.

Thats sort of why dogs were hired in the first place, to alert you of danger, said Andrew Bleiman, the North America general manager for Tomofun, the company that makes Furbo. So we can tell you not only is your dog barking, but also if your dog is howling or whining or frantically barking, and send you basically a real emergency alert.

The ever-expanding world of pet-oriented technology now allows owners to toss treats, snap a dog selfie and play with the cat all from afar. And the artificial intelligence used in such products is continuing to refine what we know about animal behavior.

Mr. Bleiman said the new version of Furbo was a result of machine learning from the video data of thousands of users. It relied on 10-second clips captured with its technology that users gave feedback on. (Furbo also allows users to opt out of sharing their data.)

The real evolution of the product has been on the computer vision and bioacoustics side, so the intelligence of the software, he said. When you have a camera that stares at a dog all day and listens to dogs all day, the amount of data is just tremendous.

The Furbo team is even able to refine the data by the breed or size of a dog: I can tell you, for example, that on average, at least as much as our camera picks up, a Newfoundland barks four times a day and a Husky barks 36 times a day.

Petcube is another interactive pet camera, the latest iteration of which is equipped with the Amazon Alexa voice assistant.

Yaroslav Azhnyuk, the companys chief executive and co-founder, is confident that A.I. is helping pet owners better understand their animals behavior. The company is working on being able to detect unusual behaviors.

We started applying algorithms to understand pet behavior and understand what they might be trying to say or how they are feeling, he said. We can warn you that OK, your dogs activity is lower than usual, you should maybe check with the vet.

Before the coronavirus pandemic forced many pet owners to work from home during the day, they were comforted by the ability to check on their pet in real time, which had driven demand for all kinds of cameras. Mr. Bleiman said the average Furbo user would check on their pet more than 10 times a day during the workweek.

Petcube users spent about 50 minutes a week talking to their pet through the camera, Mr. Azhnyuk said.

The same way you want to call your mom or child, you want to call your dog or cat, he said. Weve seen people using Petcubes for turtles and for snakes and chickens and pigs, all kinds of animals.

Now that shes working from home as part of measures to contain the spread of coronavirus in New York City, Patty Lynch, 43, has plenty of time to watch her dog, Sadie. When shes away from her Battery Park apartment, she uses a Google Nest to keep an eye on her. Ms. Lynch originally bought the camera three years ago to stream video of Sadie while she recovered from surgery.

I get alerts whenever she moves around, Ms. Lynch said. I also get noise alerts if she starts barking at something. Ill be able to go in and then see her in real time and figure out what shes doing.

Sometimes I just like to check in on her, she said. I just look at her and she makes me smile.

Lionel P. Robert Jr., associate professor at the University of Michigans school of information and a core faculty member at Michigans Robotics Institute, said A.I.-enabled technology has so far centered on the owners need for assurance that their pet was OK while they were away from home.

He predicted that future technology would focus more on the wellness of the pet.

There are a lot of people using these cameras because when they see their pet they feel assured and they feel comfortable. Right now, its less for the pet and more for the humans, he said.

Imagine if all that data was being fed to your veterinarian in real time and theyre sending back data. The idea of well-being for the pet, its weight, how far its walking.

Mr. Robert noted that other parts of the world had gone a step further with technology: Theyre actually adopting robotic pets.

While products like Petcube and Furbo are mostly used by dog owners, there are A.I. devices out there for cats as well. Many people track them throughout the day using interactive cameras, and one start-up has devised an intelligent laser for automated playtime.

Yuri Brigance came up with the idea about four years ago, after his divorce. He was away from the house, working up to 10 hours a day, and was worried about his two cats at home.

This idea came up of using a camera to track animals, where their positions are in the room and moving the laser intelligently instead of randomly so that they have something more real to chase, he said.

The result was Felik, a toy that can be scheduled via an app for certain playtimes and has features such as zone restriction, which designates areas in the home the laser cant go, such as on furniture.

Mr. Brigance said his product did not store video in the cloud and required an internet connection to work, like many video products. It analyzes data in the device.

We use machine-learning models to perform whats called semantic segmentation, which is basically separating the background, the room and all the objects in it, from interesting objects, things that are moving, like cats or humans, Mr. Brigance explained.

The device then determines where the cat has been and what it is currently doing, and predicts what it is about to do next, so it can create a playful game that mirrors chasing live prey.

The laser toy, Mr. Brigance said, has provided his cats, and those of his customers, with hours upon hours of playtime.

Some people are using it almost on a daily basis and theyre recording things like where they used to have a cat that would scratch furniture, that would get really agitated if it had nothing to do, that this actually prevents them from destroying the house, he said.

Or cats that meow in the morning and try to wake up their owners if you set a schedule for this thing to activate in the morning, it can distract the cat and let you sleep a little bit longer.

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With A.I., the Secret Life of Pets Is Not So Secret - The New York Times

What Is The Hiring Process Of Data Scientists At IBM? – Analytics India Magazine

In a world that is increasingly becoming digitalized, businesses are relying more heavily on data analytics to drive decision-making. In this setting, tech giant IBM has secured a firm footing in the domain of data science. With the opportunities that the company could offer in this space, how can aspirants get a leg up on a data science career with IBM?

According to the companys Asia Pacific Leader of Technical Elite Team for Data Warehouse & AI, Vishal Chahal, demonstrating holistic skills around ML Ops as well as Data Ops can go a long way.

As a data scientist, experience in handling data Ops has become far more important than just a candidates educational background, he says. They will need to demonstrate the stack skills where they have dealt with data before. A statistical background will be considered an added bonus, he adds.

The technical skills that IBM looks for in data science candidates encompasses ML Ops, which includes some of the newer skills, like debiasing and machine learning model runtime management.

In addition to that, they need to possess adequate skills in the areas of Data ops, data wrangling and domain knowledge, which is essentially a cross section between industry knowledge and applicability of machine learning in those industries, says Chahal.

Although the company does not overemphasize candidates educational background, they need to have a good grasp of the relevant competencies mentioned above. With several platforms abound with machine learning certifications, Chahal feels that that may be a good approach for data science aspirants to upskill themselves.

These certifications can verify their awareness about various platforms, tools, libraries and packages that are being used across enterprises today, as well as the familiarity or the ability to work with open source or enterprise/vendor-specific tools.

In fact, IBM also offers code patterns on data science for free, which explores the use of machine learning approaches to different industry scenarios and solution domains.

ALSO READ: Why Companies Like IBM Are Coming Up With Free Data Science Courses

Although the benefits of certifications cannot be emphasized enough, with changing times, the industry requirements for data scientists have evolved too. While online courses have their place in the sector, today the industry is looking for data science stack skills in developing programs, which requires augmented certification along with hands-on experience of having worked on projects. That is, the overall requirement is dual, and this trend is being observed in the hiring practices at IBM as well.

If you are starting off your career as a data scientist, certifications will certainly help you establish your skill, says Chahal. But what will give you the edge is demonstrating a few projects to prove that you have applied the acquired knowledge and skills, he adds.

According to him, having published code or open sourced on GitHub on data science, or having participated in Kaggle competitions, would prove a candidates credential that they have hands-on experience in different fields of data science. As an accomplished data scientist, we look for experience of having worked on a variety of projects in the data science technology stack.

Concurs Sharath Kumar RK, who has been working as a data scientist at IBM for nearly four years. While recruiters will test aspirants ability to solve problems on paper, the prime focus will still be on their understanding of challenges at both a micro and a macro level, he says.

READ MORE: Is Data Science For You? This IBM Data Scientist Tells How To Figure It Out

According to Chahal, once hired, data scientists at IBM, while focused on getting insights, have to adopt three important data science related best practices:

According to Chahal, while the popular hiring trend has seen the recruitment of experts from pure data science background with little or no industry experience in the beginning, this is no longer the case.

Lately, the trend has moved towards recruiting data scientists with stack skills, including Data Ops and ML Ops, or of data scientists possessing domain knowledge, he says. Some companies continue to recruit pure data science experts. However, they do look for additional certification, which proves their ability to work across enterprise-wide platforms or open source tools, he adds.

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What Is The Hiring Process Of Data Scientists At IBM? - Analytics India Magazine

Data Science and Machine-Learning Platforms Market discussed in a new research report – WhaTech Technology and Markets News

2020 Research Report on Global Data Science and Machine-Learning Platforms Market is a professional and comprehensive report on the Data Science and Machine-Learning Platforms industry.

Report: http://www.reportsnreports.com/contactme=3095475

The key players covered in this study- SAS- Alteryx- IBM- RapidMiner- KNIME- Microsoft- Dataiku- Databricks- TIBCO Software- MathWorks- H20.ai- Anaconda- SAP- Google- Domino Data Lab- Angoss- Lexalytics- Rapid Insight

The report pinpoints on the leading market competitors with explaining Data Science and Machine-Learning Platforms company profile depends on SWOT analysis to illustrate the competitive nature of the Data Science and Machine-Learning Platforms market globally. Even more, the report consists of company recent Data Science and Machine-Learning Platforms market evolution, market shares, associations and level of investments with other Data Science and Machine-Learning Platforms leading companies, monetary settlements impacting the Data Science and Machine-Learning Platforms market in recent years are analyzed.

Development policies and plans are discussed as well as manufacturing processes and cost structures are also analyzed. This report also states import/export consmption, supply and demand Figures, cost, price, revenue and gross margins.

The report focuses on global major leading Data Science and Machine-Learning Platforms Industry players providing information such as company profiles, product picture and specification, capacity, production, price, cost, revenue and contact information. Upstream raw materials and equipment and downstream demand analysis is also carried out.

The Data Science and Machine-Learning Platforms industry development trends and marketing channels are analyzed. Finally the feasibility of new investment projects are assessed and overall research conclusions offered.

Geographically, this report is categorized into various main regions, including sales, proceeds, market share and expansion Rate (percent) of Data Science and Machine-Learning Platforms in the following areas, North America, Asia-Pacific, South America, Europe, Asia-Pacific, The Middle East and Africa.

Report: http://www.reportsnreports.com/.aspx?name=3095475

Major Points from Table of Contents

Chapter 1 - Data Science and Machine-Learning Platforms Market Overview

Chapter 2 - Global Data Science and Machine-Learning Platforms Competition by Players/Suppliers, Type and Application

Chapter 3 - United States Data Science and Machine-Learning Platforms (Volume, Value and Sales Price)

Chapter 4 - China Data Science and Machine-Learning Platforms (Volume, Value and Sales Price)

Chapter 5- Europe Data Science and Machine-Learning Platforms (Volume, Value and Sales Price)

Chapter 6 - Japan Data Science and Machine-Learning Platforms (Volume, Value and Sales Price)

Chapter 7 - Southeast Asia Data Science and Machine-Learning Platforms (Volume, Value and Sales Price)

Chapter 8 - India Data Science and Machine-Learning Platforms (Volume, Value and Sales Price)

Chapter 9 - Global Data Science and Machine-Learning Platforms Players/Suppliers Profiles and Sales Data

Chapter 10 - Data Science and Machine-Learning Platforms Maufacturing Cost Analysis

Chapter 11 - Industrial Chain, Sourcing Strategy and Downstream Buyers

Chapter 12 - Marketing Strategy Analysis, Distributors/Traders

Chapter 13 - Market Effect Factors Analysis

Chapter 14 - Global Data Science and Machine-Learning Platforms Market Forecast (2020-2026)

Chapter 15 - Research Findings and Conclusion

Chapter 16 - Appendix

Report: http://www.reportsnreports.com/contactme=3095475

In the end, the Global Data Science and Machine-Learning Platforms Market report's conclusion part notes the estimation of the industry veterans.

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Data Science and Machine-Learning Platforms Market discussed in a new research report - WhaTech Technology and Markets News

Kin Insurance Partners with Cape Analytics to Improve Insurance Experience – AiThority

Cape Analytics is announcing that Kin Insurance a fully licensed home insurance technology company that provides easy, affordable coverage to homeowners in catastrophe-prone regions has expanded its partnership with Cape Analytics. Kin is using Cape Analytics geospatial property intelligence to inform its homeowner insurance offering and provide customers the best possible coverage at the lowest price with the least hassle. By utilizing Cape Analytics for remote risk assessment, Kin is continuing to write policies and serve customers, while maintaining social distancing rules that keep customers and employees safe.

We are thrilled to have a growing partnership with an innovative, data-first carrier like Kin where we can enable them to expand usage in alignment with their rapid growth as an upstart insurer

Cape Analytics is providing Kin with the most comprehensive, timely, and accurate property information available, by leveraging geospatial imagery, computer vision, and machine learning. The integration of Cape Analytics data allows Kin to provide customers with policies tailored to individual property and coverage needs. Cape Analytics automatically provides information such as roof condition, roof type, tree coverage, and presence of a swimming pool, allowing Kin customers to get the right coverage faster.

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Kin is using this new form of instant property intelligence in innovative ways by leveraging property attributes that are related to geo-specific risks. For example, in a wind-prone state like Florida, Kin can access Capes wind-related property attributes such as roof type and the presence of pool enclosures. In states with higher risk of wildfire, Kin may automatically retrieve Cape information regarding vegetation coverage surrounding a structure. In precipitation-heavy areas, Capes loss-predictive Roof Condition Rating can allow Kin to better understand the potential of a property experiencing water damage from a leaking roof.

In a recent study of Hurricane Irma, Cape Analytics found that Florida homes with roofs in poor or severe condition were far more vulnerable and had a 45 percent higher chance of suffering major damage. In addition, 65 percent of homes affected by the hurricane took more than six months to repair. Kin is leveraging these and other insights to decrease customer risk while improving their experience.

Recommended AI News: Cox Communications Uses Virtual Assistance to Support Customers at Social Distance During Coronavirus Crisis

Our platform is built from the ground up to seamlessly integrate industry-leading sources of data, which is exactly what Cape Analytics provides. As a result, we can leverage our machine learning prediction framework to instantly assess risk and customize coverage and prices through our super simple online experience, said Blake Konrardy, VP of Product at Kin.

We are thrilled to have a growing partnership with an innovative, data-first carrier like Kin where we can enable them to expand usage in alignment with their rapid growth as an upstart insurer, said Busy Cummings, VP of Sales at Cape Analytics.

Both companies have received outstanding recognition in recent months: Fast Company named Kin one of the most innovative finance companies of 2020, while Insurance Insider shortlisted Cape Analytics as 2020 InsurTech of the Year.

Recommended AI News: Extreme Networks Continues Rapid Expansion of Cloud Footprint

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Kin Insurance Partners with Cape Analytics to Improve Insurance Experience - AiThority

Signal warns it could stop operating in US if anti-encryption bill passes – Mashable

Image: Getty Images / iStockphoto

PCMag.com is a leading authority on technology, delivering Labs-based, independent reviews of the latest products and services. Our expert industry analysis and practical solutions help you make better buying decisions and get more from technology.

Signalis warning that an anti-encryption bill circulating in Congress could force the private messaging app to pull out of the US market.

Since the start of the coronavirus pandemic, the free app, which offersend-to-end encryption, has seen a surge in traffic. But on Wednesday, the nonprofit behind the app published a blog post, raising the alarm around the EARN IT Act. At a time when more people than ever are benefiting from these (encryption) protections, the EARN IT bill proposed by the Senate Judiciary Committee threatens to put them at risk, Signal developer Joshua Lund wrote in the post.

Although the goal of the legislation, which has bipartisan support, is to stamp out online child exploitation, it does so by letting the US government regulate how internet companies should combat the problemeven if it means undermining the end-to-end encryption protecting your messages from snoops.

If the companies fail to do so, they risk losing legal immunity under Section 230 of the Communications Decency Act, which can shield them from lawsuits concerning objectionable or illegal content posted on their websites or apps.

Some large tech behemoths could hypothetically shoulder the enormous financial burden of handling hundreds of new lawsuits if they suddenly became responsible for the random things their users say, but it would not be possible for a small nonprofit like Signal to continue to operate within the United States, Lund wrote in the blog post.

Why Signal is concerned the bill will undermine end-to-end encryption is because it gives US Attorney General William Barr a major critic of encryption the power to dictate how internet companies fight online child exploitation. In recent months, Barr has been calling on Facebook to reverse a plan to expand end-to-end encryption across its services, on claims the technology is preventing law enforcement from tracking down criminals, including child sex offenders.

Companies should not deliberately design their systems to preclude any form of access to content, even for preventing or investigating the most serious crimes, Barr wrote to Facebook back in October. This puts our citizens and societies at risk by severely eroding a companys ability to detect and respond to illegal content and activity, such as child sexual exploitation and abuse, terrorism.

However, Signal says the efforts to undermine end-to-end encryption risk doing more harm to innocent users than actual criminals, who will simply choose other ways to mask their activities online. If easy-to-use software like Signal somehow became inaccessible, the security of millions of Americans (including elected officials and members of the armed forces) would be negatively affected, Lund added. Meanwhile, criminals would just continue to use widely available (but less convenient) software to jump through hoops and keep having encrypted conversations.

The EARN IT Act opposed by privacy advocates and tech lobbying groups but has received support from six Democratic US senators and four Republican senators.Our goal is to do this in a balanced way that doesnt overly inhibit innovation, but forcibly deals with child exploitation, US Senator Lindsey Graham (R-South Carolina) said last month in announcing the legislation.

Simply put, tech companies need to do better, added Senator Richard Blumenthal (D-Connecticut). Tech companies have an extraordinary special safeguard against legal liability, but that unique protection comes with a responsibility.

But other lawmakers say they're against the bill, citing its potential to be abused. "This terrible legislation is a Trojan horse to give Attorney General Barr and Donald Trump the power to control online speech and require government access to every aspect of Americans' lives," said Senator Ron Wyden (D-Oregon) last month.

This article originally published at PCMaghere

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Signal warns it could stop operating in US if anti-encryption bill passes - Mashable