Valuable lessons: 5G and Cyber security – All You Need to Know:

To go a step further on 5G, cyber security issues. With the upcoming times on 5G, there are concerns and safety measures that we must learn to think deeper. The security issues rises enormously. I often say this is the right time to worry and find a solutions to the set of upcoming and current problems that we are facing and yet to face.

What I would say about 5G till now?

I’m still looking forward to read a lot about 5G’s impacts and the consequences.

All you and me need to know is to learn wider and wider. Keep researching and keep sharing.

This article says some of the concerns and future of the 5G and Cyber security. To read the full article please visit the source link down below.

5G Cyber security Concerns

5G cyber security needs some significant improvements to avoid growing risks of hacking. Some of the security worries are a result of the network itself, while others involve the devices connecting to 5G. But both aspects put consumers, governments, and business at risk.

When it comes to 5g and cyber security, here are a few of the main concerns:

Decentralized security. Pre-5G networks had fewer hardware traffic points-of-contact, which made it easier to do security checks and upkeep. 5G’s dynamic software-based systems have far more traffic routing points. To be completely secure, all of these need to be monitored. Since this might prove difficult, any unsecured areas might compromise other parts of network.

More bandwidth will strain current security monitoring. While current networks are limited in speed and capacity, this has actually helped providers monitor security in real-time. So, the benefits of an expanded 5G network might actually hurt cyber security. The added speed and volume will challenge security teams to create new methods for stopping threats.

Many IoT devices are manufactured with a lack of security. Not all manufacturers are prioritizing cyber security, as seen with many low-end smart devices. 5G means more utility and potential for IoT. As more devices are encouraged to connect, billions of devices with varied security means billions of possible breach points. Smart TVs, door locks, refrigerators, speakers, and even minor devices like a thermometer for a fish tank can be a network weakness. A lack of security standards for IoT devices means network breaches and hacking might run rampant.

Lack of encryption early in connection process reveals device info that can be used for device specific IoT targeted attacks. This information helps hackers know exactly what devices are connected to the network. Details such as operating system and device type (smartphone, vehicle modem, etc.) can help hackers plan their attacks with more precision.

Cyber security vulnerabilities can take form in a wide variety of attacks. Some of the known cyber-threats include:

Botnet attacks control a network of connected devices to puppeteer a massive cyber-attack.

Distributed denial-of-service (DDoS) overload a network or website to take it offline.

Man-in-the-Middle (MiTM) attacks quietly intercept and change communications between two parties.

Location tracking and call interception can be done if someone knows even a small amount about broadcast paging protocols.

The Future of 5G and Cyber security

To stave off widespread weaknesses in national mobile networks, technology developers will have to be extra attentive to 5G security.

5G security foundations are needed in networks first. Network providers will begin focusing on software protections to cover the unique risks of 5G. They will need to collaborate with cyber security firms to develop solutions for encryption, network monitoring, and more.

Manufacturers need incentive to up their security efforts. 5G security is only as strong as its weakest links. But the costs of developing and implementing secure tech do not motivate all manufacturers to focus on cyber security. This is especially true in low-end products like kids’ smartwatches and cheap smart baby monitors. If manufacturers receive benefits that offset their bottom-line losses, they may be more likely to boost their consumer protections.

Consumer education on IoT cyber security is necessary. The wide variation in security quality means product labeling standards will be needed. Because users have no way to easily know how safe IoT devices are, smart tech manufacturers might start to be held accountable with a label system. The FCC grades other forms of radio transmission, so the growing market of IoT devices may soon be included as well. In addition, users need to be taught the importance of securing all internet devices with software updates.

Efforts to improve security are happening alongside the initial rollout of 5G. But because we need real-world results to refine the protections, work will continue long after 5G is deployed.

For more information on the future of 5g, check out some of our Kaspersky blogs.

How You Should Prepare for 5G

5G is a bit further away than the buzz may have you believe, but you’ll still need to be prepared. Even though rollout will take a long time to be truly significant, some areas have seen upgrades start to pop up. Be sure to take security and privacy into your own hands as much as possible:

Install an antivirus solution on all your devices. Products like Kaspersky Total Security will help prevent your devices from becoming infected.

Use a VPN to stop strangers from accessing your data without permission and spying on your online activity.

Practice strong password security. Always use passwords when available and make them incredibly strong. Long strings of random, variety characters are among the best passwords possible. Include uppercase, lowercase, symbols, and numbers.

Update the default backend passwords on all your IoT devices. Follow your device’s instructions on updating the “admin/password” style credentials of your gadgets. To find this information, consult with your manufacturer’s tech manuals or contact them directly.

Keep all your IoT devices updated with security patches. This includes your mobile phone, computers, all smart home device, and even your car’s infotainment system. Remember, any device that connects to internet, Bluetooth, or other data radio should have all the latest updates (apps, firmware, OS, etc.)

Protect all your devices today, start using Kaspersky Total Security – the ultimate anti-virus and malware protection software for you and your family.

SOURCE: https://usa.kaspersky.com/resource-center/threats/5g-pros-and-cons

With respect.

Valuable lessons: The 5G Economy: How 5G will Impact Global Industries, The Economy, and You.

By MIT Technology Review.

Let’s look at the impact of the economy. Every innovation/new technology or business which reaches the market will impact the economy too. To illustrate even more, AI impacts the economy too. So far, over the last few posts, but here I took a glimpse of major findings from this article.

To read the full article. I sincerely encourage you all the source link to visit further down below.

We are now in the early stages of the next technological revolution: the development of a ubiquitous wireless network that will marry data collection and computation with billions of devices. This will provide us with unprecedented insights and abilities that will change what we do and how we do it. This network is called 5G.

This unprecedented innovation will create a different economy, according to the landmark research project commissioned by Qualcomm and conducted by independent, third-party research firms IHS Markit, Penn Schoen Berland, and Berkeley Research Group. In addition to an in-depth analysis, 3,588 respondents — from business decision makers to technology enthusiasts and innovators — were surveyed. Leading economist and professor Dr. David Teece, the director of the Tusher Center at the Haas School of Business at U.C. Berkeley, validated the economic impact study results.

  • 5G will generate new revenue.
  • It will inspire new growth.
  • It will accelerate innovation.

To learn more about the research conducted by IHS Markit, Penn Schoen Berland, and Berkeley Research Group, read The 5G Economy report.

SOURCE: https://www.technologyreview.com/2017/03/01/153487/the-5g-economy-how-5g-will-impact-global-industries-the-economy-and-you/

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Valuable lessons: Is 5G technology bad for our health?

The answers are started coming from the 5G, whether, apart from impacting the fast pace in the day-to-day life. The health issues are far more important for us to know.

What might have the 5G unsafe for living creatures around the earth?

Yesterday, I used the term radiation. The right technical term in this article is “Electromagnetic radiation”.

What reports and researcher and experts saying here?

I must say that, this article gives me a bit more clear about the 5G and its’ health. To read the full article, I sincerely encourage you all to visit the source link down below.

But what does 5G have to do with our health?

In this Spotlight, we look at what electromagnetic radiation is, how it can impact our health, the controversy surrounding radiofrequency networks, and what this means for the advent of 5G technology.

What is electromagnetic radiation?

An electromagnetic field (EMF) is a field of energy that results from electromagnetic radiation, a form of energy that occurs as a result of the flow of electricity.

Electromagnetic radiation exists as a spectrum of different wavelengths and frequencies, which are measured in hertz (Hz). This term denotes the number of cycles per second.

Radiofrequency waves ‘possibly carcinogenic to humans’

In 2011, 30 international scientists, who are part of the working group of the International Agency for Research on Cancer (IARC), met to assess the risk of developing cancer as a result of exposure to RF-EMFs.

The working group published a summary of their findings in The Lancet Oncology.

WHO says ‘no adverse health effects’.

The International EMF Project, established in 1996, is in charge of this assessment.

According to the International EMF Project brochure:

“The project is overseen by an advisory committee consisting of representatives of eight international organizations, eight independent scientific institutions, and more than 50 national governments, providing a global perspective. The scientific work is conducted in collaboration with the International Commission on Non-Ionizing Radiation Protection (ICNIRP). All activities are coordinated and facilitated by the WHO Secretariat.”

The scientists looked at one cohort study and five case-control studies in humans, each of which was designed to investigate whether there is a link between cell phone use and glioma, a cancer of the central nervous system.

The team concluded that, based on studies of the highest quality, “A causal interpretation between mobile phone RF-EMF exposure and glioma is possible.” Smaller studies supported a similar conclusion for acoustic neuroma, but the evidence was not convincing for other types of cancer.

SOURCE: https://www.medicalnewstoday.com/articles/326141

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Valuable lessons: 5G Network: How It Works, and Is It Dangerous?

Along from curiosity, we are in the surprise mode too.

  1. How the 5G gonna works?
  2. What would be the downloadable speed?
  3. May be concern about the rates (expenses).
  4. How it will impact the work towards the fast pace in this fourth industrial revolution?

I too excited. But the real issue we need to think is the health problems for humans and other creatures. For instance the radiations and heat in the 5G.

  1. How the human gonna manage it?
  2. The most important question is the other living creatures around the earth. Birds etc.
  3. How the birds gonna tolerate?
  4. What are the health hazards we need to care in-order to use 5G?

If the 5G will gonna make us smarter or even faster the work do. That’s sounds very good.  Let’s know about the consequences too.

It took me a while to have a reason to write a bit about the 5G. I was started researching and reading about the most relevant article from livescience website regarding 5G and the health issues too. In this article, I would like to share the glimpse of expert views from this article.

I will paste the source link down below. I sincerely encourage you all to visit further to read the full article.

“That’s significant because it will enable new applications that are just not possible today,” said Harish Krishnaswamy, an associate professor of electrical engineering at Columbia University in New York. “Just for an example, at gigabits per second data rates, you could potentially download a movie to your phone or tablet in a matter of seconds. Those type of data rates could enable virtual reality applications or autonomous driving cars.”

“With a massive amount of antennas — tens to hundreds of antennas at each base station — you can serve many different users at the same, increasing the data rate,” Krishnaswamy said. At the Columbia high-Speed and Millimeter-wave IC (COSMIC) lab, Krishnaswamy and his team designed chips that enable both millimeter wave and  MIMO technologies. “Millimeter-wave and massive MIMO are the two biggest technologies 5G will use to deliver the higher data rates and lower latency we expect to see.”

“There’s often confusion between ionizing and non-ionizing radiation because the term radiation is used for both,” said Kenneth Foster, a professor of bioengineering at Pennsylvania State University. “All light is radiation because it is simply energy moving through space. It’s ionizing radiation that is dangerous because it can break chemical bonds.”

In 2018, the National Toxicology Program released a decade-long study that found some evidence of an increase in brain and adrenal gland tumors in male rats exposed to the RF radiation emitted by 2G and 3G cellphones, but not in mice or female rats. The animals were exposed to levels of radiation four times higher than the maximum level permitted for human exposure.

“Everyone I know, including me, is recommending more research on 5G because there’s not a lot of toxicology studies with this technology,” Foster said.

“I think 5G will have a transformational impact on our lives and enable fundamentally new things,” Krishnaswamy said. “What those types of applications will be and what that impact is, we can’t say for sure right now. It could be something that takes us by surprise and really changes something for society. If history has taught us anything, then 5G will be another example of what wireless can do for us.”

SOURCE: https://www.livescience.com/65959-5g-network.html

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Valuable lessons: 5 Facts You Didn’t Know About 5G Wireless

The next generation of wireless connectivity is almost here.

To really care about 5G, we need to know the impacts and the consequences. Moreover, entire globe has started paying attention towards the 5G. Please correct me, if I’m wrong. We heard sometimes, 5G gonna be the superfast. To me personally, using 5G is ultimately secondary. Knowing more about the 5G is matters most. I would love to know, how the user have curiosity upon 5G and what researcher/experts are saying about the 5G’s pros and cons. Let’s look forward and more about 5G.

Here are 5 the facts, I would like to share from fool website. Please click the source link to read the full article.

  1. 5G wireless will be available by 2020, or even a bit earlier. Verizon Communications (NYSE:VZ), Alphabet’s (NASDAQ:GOOG) (NASDAQ:GOOGL) Google, and AT&T (NYSE:T) are already testing 5G technologies right now. Google is testing solar-powered drones that can stay up in the sky for as long as five years and beam down 5G signals to users. AT&T and Verizon are taking a more traditional approach and are currently using 5G signals near their respective headquarters. Verizon says it will roll out tests in Boston, New York and San Francisco later this year.
  2. But there aren’t any set standards for 5G yet. The international wireless standards body, 3GPP, is still determine the specifications, along with Ericsson, Samsung, Nokia, Cisco Systems, and Verizon. The next generation of wave radio transmissions standards are likely to be set by 2018.
  3. 5G will be lightning fast. Verizon says that its 5G network will likely be 200 times faster than the 5Mbps speeds many of its users get on 4G LTE. That means 5G speeds will hit 1 Gbps, which is currently the fastest speed you can get from Google Fiber. At that rate, you’ll be able to download an HD movie in seven seconds. Speeds are expected to increase even higher than 1Gbps as well, as 5G evolves.
  4. 5G will likely be the next major fight for wireless carriers, and no one wants to be left out. The major U.S. carriers are all closing the gap on their 4G LTE coverage and speeds, which means they’ll likely latch onto their 5G networks to differentiate themselves. AT&T was dismissive about any type of 5G talk just a few months ago, but is now very open about its 5G plans. The company’s about-face shows just how much carriers don’t want to be seen as falling behind. 
  5. 5G will cost more than 4G LTE connections, but probably not much more. According to research by the University of Bridgeport, carriers will likely keep costs around the same as they are now, but you’ll get much faster speeds. That’s because carriers reduce the price of data by a little bit each year. Huawei and Nokia believe 5G will cost more than 4G LTE, but say that the carriers won’t be able to charge too much more than the current rates.

SOURCE: https://www.fool.com/investing/general/2016/02/16/5-facts-you-didnt-know-about-5g-wireless.aspx

With respect.

Valuable lessons: Careers in Machine Learning.

https://cdn.educba.com/academy/wp-content/uploads/2018/04/Career-in-Machine-Learning.jpg

Here is the career comes in Machine Learning field. I could evaluate myself, the posts I had been shared are a very good one. So far, I covered the most notable and relevant one. When you had passion about the particular fields like Machine Learning. This is the time to know substantially about the overall career. To be quite chronological, this post has to my first post when I started writing about Machine Learning over the last just 4 days.

But when you keep stretching your mind with the precise motive. At some point, you could analyse, still what I can I write and deliver. I never say I made myself as a compulsion to write. It is all about my thought process with regards to it.

Even more I will to agree and quite ashamed to admit, there is a lot to write and which I could not able to think too. Let’s see in the future posts. I’m gonna test and challenge myself.

Overall, when I started reading and researching about this content, particularly, this is one of the article will give you the brighter steps to make a career in Machine Learning. If you had a passion to thrive in this field.

I’m will paste the source link down below. I sincerely encourage you all to read the whole story.

Finally, in this source link, you could able to see the Machine Learning tutorial. Every topic by topic. You can read.

Introduction to Careers in Machine Learning

Machine learning is the field of AI that provides the ability to the system to learn on its own without any human intervention at higher accuracy, due to which it is highly required in the area of Information Technology Industry and the developers working in these technologies are assigned the role of Machine Learning Engineer. Initially, it is followed by the Architect level position whose work is to design the prototype for the applications that needs to be developed, starting salary of the machine learning engineer as per the American website is 100,000 dollars annually.

Education Required for Machine Learning

Machine Learning needs a lot of basic computer science concepts and one should be strong in computer science concepts such as Mathematical, Data Structures and Algorithms subjects like computations, statistics etc. Strong knowledge of basic mathematics is also recommended. Machine Learning is the core component of Artificial Intelligence where one needs to show much interest and enthusiasm in learning these concepts.

  • Machine Learning is evolving quite rapidly and gradually nowadays. A lot of technology professionals are required in the coming years in the area of Machine Learning.
  • Machine Learning includes technology, mathematics, statistics, business knowledge and many technical and logical skills to excel in this area. Data analysis is one of the main elements of the Machine Learning area where this area mainly depends on data in which the machine learns on its own.
  • This requires a lot of valuable data to be processed before a machine is learning itself. A Data Analyst can easily transform his/her career in Machine Learning. Python is the most used programming language in the area of Machine Learning. This is also included in most of the academic programs as well in most of the universities.

Career Path

  • The career path initially starts as a Machine Learning Engineer, who will be developing applications that perform some common tasks done by human beings and this will be used for repeated things that will perform without any errors and produces effective results.
  • A Machine Learning Engineer role will be followed by the Architect level position in. The next level of a career path in the Architect level will be of some role to design and develop the prototypes for the applications to be developed.
  • Even a software engineer with some years of experience can switch their careers in the Machine Learning area. A Python Developer or a data scientist can also easily switch careers in Machine Learning.
  • Persons even without any experience in software engineering can also start their careers in Machine Learning if they have some string knowledge in computer science, mathematics, statistics etc.

Job Positions or Application Areas

In the area of Machine Learning, there are different roles available in the information technology industry to pursue the career are such as Machine Learning Engineer, Senior Machine Learning Engineer, Lead Machine Learning Engineer, Machine Learning Engineer Front Office and Back office, Principal Engineer – Machine Learning, Machine Learning Software Engineer, Data Scientist, Senior Data Scientist, Data Scientist IT, Senior Data Scientist IT etc. The Machine Learning Engineer possesses some strong core knowledge of Computer Science concepts, a solid Mathematics background with Statistics as well.

Salary

The national average salary for a Machine Learning as mentioned in another top salary information website Glassdoor.com is $120,931 in the United States.

Career Outlook

  • There are also multiple career paths to move after entering into the Machine Learning Engineer area like Artificial Intelligence, Data Science and Data Analytics etc.
  • An IT professional with some good communication skills and strong technical skillset with a solid mathematics or statistics background can reach some top heights in their careers like Senior Architects or Senior Subject Matter Experts in the career of Machine Learning or Artificial Intelligence.
  • The requirements for the job positions in the area of Machine Learning Engineer in the United States are increasing daily in large numbers. Because of the day to day routine activities or tasks in the large customer based companies, the job handling responsibilities need to be very accurate and error-free for successful business deliverers to the customers.
  • Machine Learning Software applications or products are a great need for businesses to maintain the customers’ content data secure, Machine Learning Engineer is one of the best technological advancements available in the market to provide some high complexity business solutions.

Source: https://www.educba.com/careers-in-machine-learning/

With respect.

Valuable lessons: The Uncertainty in the Machine Learning Job Hunt.

It will always be with you. That doesn’t mean you won’t succeed. Here, I would like to give of this article. I’m gonna paste the source link down below to read the full article.
In less than a year, I will be deemed worthy by my university of a Bachelors degree. In less than a year, I will be saying goodbye to the place I called home for the last 4 years. In less than a year, I will know where the next chapter of my life begins.

Unfortunately, I’m not there yet. I am really only left with one question that occupies my mind space as I write my cover letters and send off my applications:

So Many Others are Going Through This Too.

It really is as simple as that.

Machine Learning and Data Science are highly competitive fields and I mean highly competitive fields. It’s a typical day. You check out LinkedIn and see the newest opportunities available at well developed start-ups. One catches your eye in particular and you realize: it was only posted 30 minutes ago! You click on the listing to see what the job entails only to see “200+ applicants” listed below the company’s name.

It’s a frustrating cycle. You and I are going through it together, no matter how much it seems like a competition to get a job in the first place. Entrenching yourself in a competitive mindset can be good to push you forward through difficult times, however it may lead you to neglect how similar you are to everyone you are competing with. We are all on our paths to success and we will find it in due time. Securing a good job is not a zero-sum game, simply because there are so many good fits for you.

The more you apply, the quicker you will find that fit. Best of luck on your journey.

SOURCE: https://towardsdatascience.com/the-uncertainty-in-the-machine-learning-job-hunt-a0e785c03a65

With respect.

Valuable lessons: 10 Machine Learning Methods that Every Data Scientist Should Know.

Jump-start your data science skills.

When I started researching this content. I really wonder, whether this content only to Data Scientist. I don’t think so. These ten steps are absolutely required to those who wanna become a statistician, those who would like to read Deep Learning and started learning Natural Language Processing in AI.

This article from towardsdatascience.com summarizes in the last solid start for further study for advanced algorithms and methods. The writer said there are few more to cover.

I’m gonna paste the source link down below. Please visit further to read the full article.

Machine learning is a hot topic in research and industry, with new methodologies developed all the time. The speed and complexity of the field makes keeping up with new techniques difficult even for experts — and potentially overwhelming for beginners.

To demystify machine learning and to offer a learning path for those who are new to the core concepts, let’s look at ten different methods, including simple descriptions, visualizations, and examples for each one.

A machine learning algorithm, also called model, is a mathematical expression that represents data in the context of a ­­­problem, often a business problem. The aim is to go from data to insight. For example, if an online retailer wants to anticipate sales for the next quarter, they might use a machine learning algorithm that predicts those sales based on past sales and other relevant data. Similarly, a windmill manufacturer might visually monitor important equipment and feed the video data through algorithms trained to identify dangerous cracks.

The ten methods described offer an overview — and a foundation you can build on as you hone your machine learning knowledge and skill:

  1. Regression.
  2. Classification.
  3. Clustering.
  4. Dimensionality Reduction.
  5. Ensemble Methods.
  6. Neural Nets and Deep Learning.
  7. Transfer Learning.
  8. Reinforcement Learning.
  9. Natural Language Processing.
  10. Word Embeddings.

All the visualizations of this blog were done using Watson Studio Desktop.

Special thanks to Steve Moore for his great feedback on this post.

Source: https://towardsdatascience.com/10-machine-learning-methods-that-every-data-scientist-should-know-3cc96e0eeee9

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Valuable lessons: 9 Applications of Machine Learning from Day-to-Day Life

We are using Machine Learning in our day to day life. We may or may not know, we you are using knowingly or unknowingly. If you start thinking over the last (just) 5 years, you will understand very well. What’s gone so far?

I think this is the right time to see and learn these kinds of apps and tools that we are using.

There is wise line. I would always say wise line. “You should learn to know what is going on across the globe too”.  

As I said, I’m not a tech-savvy at all. But I’m becoming. I would say, if you using or not, it’s would be better, if you know it in advance.

When I started reading this article from Medium website, I really wonder, is this Machine Learning apps?

My thoughts are roaming like a clock about Machine Learning. I just keep thinking. What can I start learning something new from Machine Learning?

I would like to share with purpose too.

Let’s look at it. I’m paste the source link down below to read the full article. I sincerely encourage you all to visit further.

  1. Virtual Personal Assistants.
  2. Predictions while Commuting.
  3. Videos Surveillance.
  4. Social Media Services.
  5. Email Spam and Malware Filtering.
  6. Online Customer Support.
  7. Search Engine Result Refining.
  8. Product Recommendations.
  9. Online Fraud Detection.

How do you Use Machine Learning Daily?

Please comment below.

Originally Published at: Daffodil’s App Development Blog

Source: https://medium.com/app-affairs/9-applications-of-machine-learning-from-day-to-day-life-112a47a429d0

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Valuable lessons: Why Machine Learning is important? An In-depth analysis.

Here, we need to know why Machine Learning is important. When we are talking about Artificial Intelligence, Machine Learning and Deep Learning are the subset of Artificial Intelligence.

At this moment, after understanding the glimpse of Machine Learning from my earlier posts, this is right time to arise the “Why” factor. Additionally, two more you can see this article such as requirements for better process and terms should know.

To me personally, this is also the learning pace. As I started pursuing Data Scientist course, Machine Learning plays a major role. To really understand, why it is. It is better to rise and research about further.

So, here I’m gonna write the brief about why it is important and an article from techwhippet. I’m gonna paste the source link down below. I sincerely encourage you all to visit further to read the full article.

Why is machine learning important?

Machine learning is very important in our life. The modern world is dependent on the machine because of the development of volumes and easily accessible data, data processing and computerization is not very expensive. It is comprehensible to quickly and in a natural way to create a design and that can analyze greater, accurate information and perform faster and exact output.

Requirements to make a better machine learning process:

  • Data construction abilities.
  • Algorithms- fundamental and advancement.
  • Computerization and iterative procedures
  • Innovative
  • Unity modeling

We all should know some of these terms related to machine learning:

  • A target is known as a label in machine learning.
  • A target is known as the dependent variable in the statistic
  • In machine learning, a variable is known as a feature.
  • In machine learning, a transformation is known as feature creation.

SOURCE: https://techwhippet.com/why-machine-learning-is-important/

With respect.