Depths of ML – What is Machine Learning?

There is no debate about the fact that humans and computers are different entities. One of the main differentiating factors between humans and computers is that the former is capable of learning from past experiences. Well, to some extent. At the same time, computers need to be told what to do specifically. Computers are code-based strictly logic machines that do not possess common sense. This means that if we want them to do something, we have to tell them what to do precisely. This is done by providing them with step-by-step instructions on what to do exactly. Humans write scripts and program computers to follow instructions. This is where Machine Learning comes in! In simple terms, Machine Learning (ML) is a concept that consists of teaching computers to learn from experiences beyond data. 

What is Machine Learning? 

Machine Learning (ML) is a form of Artificial Intelligence (AI) that allows the software to predict more accurate outcomes without being programmed to do so exclusively. ML algorithms draw from historical data as input in order to predict new output values. Some of the ways ML is used are through recommendation engines, fraud detection, spam filtering, malware threat detection, and much more. So, what’s the big deal? Why is ML being used around as a trendy keyword in the world of AI? 

ML is important as it allows enterprises to observe the changing trends in customer behavior. Business operational patterns can also be observed through ML, whereas the technology also helps in the development of new products. Tech giants around the world like Google, Facebook, Uber, and many others use ML as a central part of their operations. Similar to AI, ML also has different categories. While classical ML is usually classified by how an algorithm learns to output accurate predictions, there are four different approaches to how it is done. The approaches to ML are listed below – 

Supervised Learning

In this type of ML, data scientists supply algorithms with specifically labeled training data. The variables of the data here are defined to the minutest details and both the input and output of the algorithm are specified. Supervised learning algorithms are good at binary classification, multi-class classification, regression modeling, and ensembling. 

Unsupervised Learning

Unsupervised ML algorithms do not require the data to be labeled. Most types of deep learning used are unsupervised algorithms. These algorithms discover hidden patterns and groupings without the need for human input. Due to its ability to discover similarities and differences in information, unsupervised learning is the best solution for customer segmentation, image recognition, exploratory data analysis, and more. 

Semi-supervised learning

As one would expect, this is the middle ground between Supervised and unsupervised learning. While training this type of algorithm, data scientists use smaller labeled data sets to guide classification. A small amount of labeled training data is fed to an algorithm which allows it to learn the dimensions of the data set. 

Reinforcement learning

This type of learning is used to teach a machine to complete a multi-step process for which the rules are clearly defined. An algorithm is programmed with a distinct goal and a prescribed set of rules to accomplish that goal. One of the main implementations of reinforcement learning is robotics. Robots can learn to perform physical tasks with the help of reinforcement learning. Whereas, reinforcement learning can also be used to teach bots to play a number of different video games. Resource management is another way where RL can be used as finite resources and a defined goal can allow enterprises to plan how to allocate resources. 

There are a lot of ways where machine learning is being used in a wide range of applications today. One of the best examples here is your Facebook news feed. The news feed uses ML to personalize every member’s feed. If you as a user frequently go on Kim Kardashian’s Facebook page then your News Feed is likely to show you more of her activity on the feed. We often start seeing advertisements for a certain product right after we search for it on Google or Amazon, that is due to the machine learning algorithm working in the background. Behind the scenes, the software is simply using statistical analysis and predictive analysis in order to identify patterns in your user data and use the same data to populate your news feed.

Depths of ML – What is Machine Learning?

There is no debate about the fact that humans and computers are different entities. One of the main differentiating factors between humans and computers is that the former is capable of learning from past experiences. Well, to some extent. At the same time, computers need to be told what to do specifically. Computers are code-based strictly logic machines that do not possess common sense. This means that if we want them to do something, we have to tell them what to do precisely. This is done by providing them with step-by-step instructions on what to do exactly. Humans write scripts and program computers to follow instructions. This is where Machine Learning comes in! In simple terms, Machine Learning (ML) is a concept that consists of teaching computers to learn from experiences beyond data. 

What is Machine Learning? 

Machine Learning (ML) is a form of Artificial Intelligence (AI) that allows the software to predict more accurate outcomes without being programmed to do so exclusively. ML algorithms draw from historical data as input in order to predict new output values. Some of the ways ML is used are through recommendation engines, fraud detection, spam filtering, malware threat detection, and much more. So, what’s the big deal? Why is ML being used around as a trendy keyword in the world of AI? 

ML is important as it allows enterprises to observe the changing trends in customer behavior. Business operational patterns can also be observed through ML, whereas the technology also helps in the development of new products. Tech giants around the world like Google, Facebook, Uber, and many others use ML as a central part of their operations. Similar to AI, ML also has different categories. While classical ML is usually classified by how an algorithm learns to output accurate predictions, there are four different approaches to how it is done. The approaches to ML are listed below – 

Supervised Learning 

In this type of ML, data scientists supply algorithms with specifically labeled training data. The variables of the data here are defined to the minutest details and both the input and output of the algorithm are specified. Supervised learning algorithms are good at binary classification, multi-class classification, regression modeling, and ensembling. 

Unsupervised Learning

Unsupervised ML algorithms do not require the data to be labeled. Most types of deep learning used are unsupervised algorithms. These algorithms discover hidden patterns and groupings without the need for human input. Due to its ability to discover similarities and differences in information, unsupervised learning is the best solution for customer segmentation, image recognition, exploratory data analysis, and more. 

Semi-supervised learning

As one would expect, this is the middle ground between Supervised and unsupervised learning. While training this type of algorithm, data scientists use smaller labeled data sets to guide classification. A small amount of labeled training data is fed to an algorithm which allows it to learn the dimensions of the data set. 

Reinforcement learning

This type of learning is used to teach a machine to complete a multi-step process for which the rules are clearly defined. An algorithm is programmed with a distinct goal and a prescribed set of rules to accomplish that goal. One of the main implementations of reinforcement learning is robotics. Robots can learn to perform physical tasks with the help of reinforcement learning. Whereas, reinforcement learning can also be used to teach bots to play a number of different video games. Resource management is another way where RL can be used as finite resources and a defined goal can allow enterprises to plan how to allocate resources. 

There are a lot of ways where machine learning is being used in a wide range of applications today. One of the best examples here is your Facebook news feed. The news feed uses ML to personalize every member’s feed. If you as a user frequently go on Kim Kardashian’s Facebook page then your News Feed is likely to show you more of her activity on the feed. We often start seeing advertisements for a certain product right after we search for it on Google or Amazon, that is due to the machine learning algorithm working in the background. Behind the scenes, the software is simply using statistical analysis and predictive analysis in order to identify patterns in your user data and use the same data to populate your news feed.

Pluto Wants To Talk With You Using Google LaMDA

I don’t surf anything on Facebook as I can’t see the frequency of poison these platforms are penetrating into Indian society. However, I have never left LinkedIn, and it has become a habit of following it like Facebook. Yesterday, I found one post where Google’s CEO, Sundar Pichai, shows how their new tool, LaMDA, will work. Considering what I have seen in Google I/O editions, I feel amazed with whichever product they bring every time. This Exhibit blog is for you to give you more details on this Google LaMDA tool. 

Pluto Conversing With Human

Through the video, Pichai shared the information that LaMDA is currently in the research and development stage. But, the Google team created a snippet to show this tool is working. LaMDA was acting like a dwarf planet, Pluto, where it was talking about itself. The concerned individual who was interacting with Pluto asked about the information of whether came to visit it. In reply, Pluto answered that it was New Horizon that came a few days back. This conversation can simply give some an awestruck mode. I remembered how their voice module booked a haircut with one shop. 

Working Principle of Google LaMDA tool

Many may like this part or section as it contains the granular detail of anything the Exhibit discusses. First of all, it is clear that this tool has added some essential libraries like NLP, speech recognition, apart from machine learning models. The machine learning model and the dataset help this tool grab information on any domain, in this case, Pluto. When it recognizes the words that the user has told, it stores the essential keywords and accordingly sends a reply. This process continues unless the tool gets any hint that the individual is going to stop the conversation. 

Cons of Google LaMDA tool

Well, no one will tell, but I think I got one. You will say that even Google or any Tech review firm has not come up with it. But, yes, I got one. How? Here’s it. If you watch the video, you will see that this tool, when acting like Pluto, said that New Horizon had visited it a few days back. It means this tool has no information if any extraterrestrial object went to the dwarf planet. Hence, the information on the basis of which this tool will interact can be limited if the Google team has not provided it. Therefore, it may also happen that if you are talking to the coral reefs of Thailand about the sun cream ban, it may not be able to tell anything on the issue.

Potential of Google LaMDA tool

I see one can use it anywhere and everywhere, wherever one wants to use it. Consider that the Indian railway reservation system integrates this tool. Then, you can book a ticket merely using it and without tapping on any button or options. You will only have to use your hand when you have to book your tickets. Take another instance, you are VP of sales of your organization, and your ERP cum CRM software application has Google LaMDA as one of its features. You can easily check out the potential sales and actual revenue by comparing the leads generated in any stipulated timeline. 

Artificial Intelligence Tool LuminarAI Brings New Update

If you are a selfie geek, you will always like to have the finest smartphone in your pocket that has advanced filters and image editing options to make images glitter more. But, if you ask a professional photographer about these features present in your smartphone, they may call you naive. It’s because a professional photographer has software or application that is like Virat Kohli of image editing in front of your Naseer Jamshed (don’t even hear of it?) Now, please don’t approach a judicial authority as it has undermined your dignity and ego. But now, you must know that these photographers will feel more empowered as one of their favorite platforms, Skylum, is coming up with an update that has inducted an artificial intelligence tool. Through this Exhibit blog, you will get more details related to this news.

Skylum’s Artificial Intelligence Tool – LuminarAI 

Skylum has brought the fourth update in their product LuminuminarAIarAI that has a feature named Portrait BokehAI. This new feature will be the biggest attraction point for professional wedding photographers. It is because this feature tried to identify the position of an individual or an entire group. BokehAI can blur the background for the emulation of richness that can come out from the picture to give more focus to such positions. Portrait BokehAI will also help out a photographer like you to add intelligent mask creation to the subjects. Though the boken gets automatically generated or created, the photographer gets full control by editing these pictures using some sliders. Hence, you will have the finest and sophisticated virtual tools to create a masterpiece from the captured snapshots. 

How is artificial intelligence helping?

There’s a possibility that developers have added high-end image libraries separately to add these new functionalities to this application. Through these libraries, you can access all the essential values related to the image that you are editing. Now, when you obtain all these parameters, you have the sliders through which you can set a new value or range for the same parameters and attributes. Fetching these values and presenting them to you is possible because of the training of these tools over a dataset. Now the image that you have to edit is like the test data over which the tool performs as per the functionality.

How can you get this update?

Well, if you are already a LuminarAI user, you will get this as a free update. But a lot depends upon the operating system that is loaded in your PC. If it’s macOS, all you need is to launch the LuminarAI application and from the menu bar, select the LuminarAI option and then choose the Check for Updates. It is slightly different in the case for Windows as you can’t see the Check for Updates options from the LuminarAI. For Windows, you will get in the Help window.

Self-Driving Cars Subscriptions Launched by Tesla

The year 2014. A gimmick started floating – Acche din aayenge. Now, many may start a discourse about the same where it is, or it has arrived. But when it comes to technology, this Hindi idiom always takes a new writeup due to the advancement humanity is making with each lap. With the UK becoming the first country in the world to give a green signal to self-driving cars, the race has begun. And, with the race to better technology, you cannot keep Elon Musk away. Tesla has declared a full self-driving subscription beta model. With this Exhibit blog, get more details on this subject.

Steering Not in My Hands

Gimmicks and charming words have always attracted people. Indian media floated one a few days back – “Not in my name.” With driverless cars taking the center stage, you will find something like “Steering not in my hands” for sure. With $199 (around 14.8k INR) in a month, Tesla has announced that people who are craving a driverless car can start toying around the streets. Those who bought a Tesla car between 2016 and 2019 have to go through a hardware installation and update to ensure that they can witness such an experience too. For FSD chips and enjoying its features, Tesla has said they will give free hardware upgrades for hardware 2.0 and 5.0. 

Future of Autonomous Vehicles

Suppose someone asks me what the future of autonomous vehicles is. In that case, I will say watch TheWire interview of Kerala’s Governor Arif Mohammad Khan, where he was asked about the future of Muslims. Now, please don’t tag me as a communitarian. Just use an analogy. What analogy? Well, the answer to the question is whatever is the future of AI, same as that for the future of autonomous vehicles/driverless cars. Yes, the way AI & mechatronics will take turns will determine how many driverless cars you will see on the road. The current advancement has already forecasted that there will be more than 55 million autonomous vehicles on the road by 2040. 

Working Principle of Self-Driving Cars

The essential part of autonomous vehicles or self-driving cars is Computer Vision. Yeah, these cars will detect signals and check the proximity of objects near them. As per the dataset, the steering of these cars will take turns and move accordingly. The dataset will help to generate an algorithm for moving ahead and taking turns. Hence, machine learning and artificial intelligence will get more importance.

Major Concerns for Self-Driving Cars

The two-word answer is low reliability. Yeah, we are bringing this technology solely because they can reduce road accidents as a convention ratified in the Brasilia Declaration. But, still relying on a machine is a major concern that is creating hiccups for sovereign states to take any decision on self-driving cars. 

AI in the Fight Against COVID-19

2020 has been a disaster. The first quarter of the year is almost over and people have no other option but to sit inside their homes, while a China originated human-killing virus wipes a considerable amount of the world population. While ‘Thanos’ was an imaginary being in the Marvel Universe, his aim was no different. He wanted to relieve the world of half its population and restore balance. The COVID-19 is no different situation apart from the fact that killing innocent humans is not going to restore the balance on earth, not after it has been subjected to all the malicious atrocities that it has been subjected since the arrival of mankind.

The virus which is also known as coronavirus is said to be originated in the city of Wuhan, China and suspected to be contracted from animals to humans. As people kept mingling and travelling all over the world, the virus too was spread. The current situation is so bad that most advanced countries like the USA and healthcare dominant countries like Italy are on the verge of giving up. All the global leaders, dignitaries and citizens of most of the infected countries are just asking the same question. When will this end?

In the fight against coronavirus, artificial intelligence (AI) and Machine learning (ML) have all of a sudden great role to play. While doctors, physicians, pharma companies and scientists are directly engaged in this duel of humanity against the virus, AI and ML are now being used as human allies for the answer to we all looking to hear. 

How will AI and ML fight the disease?

For most of us, AI and ML are just boxed in computers. Apart from seeing AI and ML suggest products from our last google search, none of us has actually seen AI work in real-time. What most people would know AI as just a bunch of codes which work behind the scenes to make things easier in front of the screen. However, if you think so, you are wrong. You can not physically see AI and ML do its job, but AI and ML are contributing to this fight, a whole lot more than you can imagine. 

AI and ML can effectively track the disease spread and the trends which points out where the medical help is most needed and where the virus is most likely to spread. This helps medical professionals to quickly act and helps to curb the spread of the disease. AI or as we know artificial intelligence is beyond normal human learning and use its past learning patterns to quickly identify where the things could go wrong. Based on its learning and combining its previous knowledge with insights, it can predict where the disease could go next based on the population flow and density. 

Artificial Intelligence can also match the symptoms of COVID-19 and the required treatment or any other therapy that is required. AI is also streamlining the best treatments for the disease which we still await an effective vaccine. Not only this, but AI and ML are also being used to analyse millions of drugs, elements and formulas with high speed to develop a vaccine. AI might seem to be working at its full speed, but a vaccine is still a year or more away from being developed. 

Now coming to the other side, AI and ML must also contribute to risk management. AI is as good as 95% correct most of the times. With more and more learning, AI continuously improves and thus corrects itself. However, it is quite dicey at this point to depend on AI alone, especially when the data samples (available data on COVID-19) is very less. Will AI still be that effective when it comes to less available data and also predict the failures? This is still to be understood at large unless there is a huge amount of data available for artificial intelligence to learn from. 

For any organisation or company using AI and ML as a tool in the current crisis, it is clear that AI and ML are no more proprietary or experimental technology anymore. The current situation has help demonstrate AI and ML have far more usage and applications, especially when human knowledge and efforts seem to have seen a dead end.

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