11/11/2020
Retry Premium
Search
Publishing menu
Free
Normal
Saved
Publish
Add credit and caption
Artificial Intelligence Vs Machine Learning Vs Deep Learning Artificial Intelligence Vs Machine Learning Vs Deep Learning This technology is no longer a matter of science fiction. Instead, we see artificial intelligence in every part of our lives. Smart assistants are on our phones and speakers, helping us find information and complete everyday tasks. At work, chatbots are affiliated with the Customer Support Team, with estimates that they will be responsible for 85% of customer service by next year. There are also intelligent algorithms that can use a lot of data to make accurate predictive behavior of people and clients. However, even though AI is more common today than it was in the world today, it is still something that many people do not fully understand.
https://www.linkedin.com/post/edit/6732178418152042496/
1/10
11/11/2020
Premium There are so many different phrases with this disruptive technology thatRetry some Search Free
words are often combined. For example, in a particular circle, terms like AI Publishing menuartificialNormal SERVICES intelligence,
Saved canPublish machine learning, and deep learning be
used interchangeably. However, although these concepts are all linked, they are not the same thing. As intelligence experts explain, different parts of AI are positioned as Russian nesting dolls. The outer layer is artificial intelligence, which is the largest, allencompassing part of technology. There is a more refined concept of machine learning in it, and there is a small subset of deep learning in it. What is Artificial Intelligence? Let’s start with the basics. By next year (2020), 30% of companies worldwide believe that AI will somehow be used in their digital processes. The question is — what is artificial intelligence, and why is it necessary for the modern landscape? The definition of artificial intelligence is not always easy. At a basic level, AI is part of our research labs and part of decades of scientific study — computer scientists first coined the term at the 1956 Dartmouth conference. Since then, AI has been described as the future of human civilization. However, at its core, it is another computer program. Artificial intelligence is any computer algorithm that can work intelligently. In other words, it uses a complex statistical model or if these statements are used to perform tasks. Artificial intelligence is “smart” because it can follow very complex instructions without responding to a single or basic trigger.
https://www.linkedin.com/post/edit/6732178418152042496/
2/10
11/11/2020
Retry Premium In recentSearch years, AI has gained in popularity, thanks to the increase in available
GPUs that make parallel processing easier, cheaper, and more accessible. Publishing menu However, not
Saved all AI Normal is the same. There are 3 basic sides to artificial
Free
Publish
intelligence, which are the basis of much debate. The first option is Narrow AI, where an intelligent bot can do an important job — like defeating a human in a board game. This is what Google DeepMind product Alpha Go 2016 did. The second option is Artificial General Intelligence or AGI, which can successfully perform intellectual tasks, such as responding to queries at the customer service station. There is also Super-Intelligent AI — which scientists are still working on. Superintelligent AI is smarter than humans. What is Machine Learning? While Artificial Intelligence is the umbrella term for all computer programs that follow complex instructions, machine learning is something that falls under that umbrella. So, what is machine learning? Be machine learning? Simply put, this is a subset of AI. With machine learning tools, it is possible to establish computer algorithms that are searchable by data and apply heaps of knowledge and training to a specific task. For example, machine learning service can use millions of face images to identify specific people or certain features on the face. Machine learning is now used in fields such as translation, object recognition, and speech recognition. It is also possible to teach machine learning tools on how to understand emotion and moods. Machine learning allows a system to detect patterns in data that a human cannot take on his own. Because these algorithms can process such vast information
https://www.linkedin.com/post/edit/6732178418152042496/
3/10
11/11/2020
Premium almost instantly, they can make informed decisions about the data muchRetry faster Search Free
than a human. Publishing menu
Normal
Saved
Publish
For machine learning algorithms to thrive, they need massive amounts of data. The more information you have to browse through a program, the easier it is to make that decision and answer the necessary questions. Machine learning tools also take considerable time to train so that they are as accurate as possible. The original machine learning definition came from the earliest minds of the AI group. Over the years, the algorithmic contacts us The algorithmic approaches used for this technology include everything from inductive logic programming to reinforcement networks and Bayesian networks. What is Deep Learning? Now we come to complicated things — deep learning. When you compare deep learning vs. machine learning, you will find that deep learning is a refined subset of machine learning. Deep artificial neural networks use complex algorithms in deep learning to allow high levels of accuracy when solving important problems such as sound recognition, image recognition, recommendations and more. Deep learning algorithms use some basic techniques in machine learning, and we use human decision making to tap into neural networks to solve complex real-world problems. Although deep learning is more complex and precise than artificial intelligence or machine learning, it is also very expensive. Scientists need huge data sets to train neural networks because there are too many
https://www.linkedin.com/post/edit/6732178418152042496/
4/10
11/11/2020
parameters to understand any learning algorithm before making accurateRetry Premium Search Free
learning choices. Publishing menu
Normal
Saved
Publish
The neural networks responsible for deep learning strategies know our understanding of human biology and how the brain works. It allows machines to make more relevant and relevant decisions by creating connections between hundreds, thousands, or even millions of different data sets. How Artificial Intelligence Works: So, now that you know these concepts, let’s dive a little deeper and ask, “How does artificial intelligence work?” Less than a decade after he dismantled the enigma of the Nazi encryption machine, mathematician Alan Turing changed the world by asking if machines could think. In 1950 a paper called “Computing Machinery and Intelligence” was published and the Turing test was established. Since Turing made his initial question, much of the artificial intelligence that has been dismantled is designed to see if it can teach machines to think like a human. The artificial intelligence we have today falls into the categories of narrow AI and artificial general intelligence. Narrow AI is a “weak” AI that works in a limited context. It is a simulation of human intelligence that applies to a specific task or series of tasks. Narrow AI focuses on completing a task well, such as finding pictures of dogs or playing games. Artificial general intelligence is very complex. This is the kind of artificial intelligence we see on television — the ability to do many different things with the help of machine learning and deep learning. https://www.linkedin.com/post/edit/6732178418152042496/
5/10
11/11/2020
RetryAI. Premium We haveSearch yet to fully discover the next stage of artificial super-intelligence Free
If we unlock this extra level of AI, we have created robots that can think for Publishing menuwithoutNormal themselves, any input
Saved from humans. Since those robots can think Publish and
process data faster than humans, we are creating something smarter than ourselves. How machine learning works: Machine learning is an underlying concept that reinforces most artificial intelligence. How can we ensure that these bots can work themselves, using vast data sets, without relying on constant human input? So, how does machine learning work? Machine learning uses two basic methods to deliver results. The first option is supervised learning, which refers to training a model based on relevant input and output data so that the model can predict future needs and learn on its own. On the other hand, unsupervised learning allows the bot to search through information and find hidden patterns or trends in the data. Supervised machine learning relies on humans to create models that allow a machine to be evaluated based on the presence of information. Supervised algorithms take known data sets and use that information to respond to queries and demands. Supervised machine learning also enables things like predictive analytics. Unsupervised learning is a very sophisticated approach to machine learning, which requires the bot to find its hidden themes and structures in the data. It may also allow the bot to conclude from incomplete data sources and information we cannot translate. Clustering is one of the most common methods used for unsupervised machine learning. It enables machines to use https://www.linkedin.com/post/edit/6732178418152042496/
6/10
11/11/2020
exploratory data analysis to find answers in the areas of commodity Search
Retry Premium
identification, market research, and genome analysis. Publishing menu
Normal
Saved
Free
Publish
If a phone company wants to optimize the places they are building their cell towers, g. They can use machine learning (unsupervised) to determine how many towers depend on different locations around one location. This allows the machine to use clustering algorithms to create the right placement strategy for the business. How Does Deep Learning Works? Deep learning is a sophisticated subset of machine learning, so it uses a lot of similar processes to the ones we mentioned above. Deep learning relies on very valuable information. If you are given a picture of a cat, you will be able to determine if the cat you saw was a different color, or if the cat was lying on its side. You can identify the image as you are aware of all the different factors that go into the shape and image of the cat. Deep learning machines end up similarly. It brings together multiple data points to identify information. Deep learning is commonly used in autonomous vehicles because it allows cars to know what is going on around them before doing anything. To do this, you need to identify car bikes, vehicles, people, road signs, and more. Standard machine learning algorithms cannot process this information at once. Tools that are created using deep learning beyond the basics of machine learning to find out how different types of information relate to one another in a vast neural network. This is the difference between a machine’s perception of looking at a picture of a fox as it examines images from a certain part of the https://www.linkedin.com/post/edit/6732178418152042496/
7/10
11/11/2020
countryside in response to a specific question, and the same machine is Retry Premium Search Free
pointing ears, four legs, and a tail thinking “dog”. Publishing menu
Normal
Saved
Publish
To develop deep learning algorithms, they need highly precise and immersive neural networks, which provide vast amounts of information to bring the task into question. These neural networks can take months or even years to train, and require much investment from data scientists and the companies behind them. AI vs. Machine Learning vs. Deep Learning: Applying these processes together Machine learning is a subfield of AI that uses pre-loaded information to make decisions. Deep learning is a form of artificial intelligence that goes much deeper than that. This technique uses deep neural networks to retrieve and retrieve samples from too much data. Although artificial intelligence, machine learning, and deep learning are not the same things, they are all part of the same family. Often, these components can work together to help businesses solve complex problems in their environment. For example, in a task that requires a machine to detect a cat’s image, the artificial intelligence requires the programmer to input all the code needed to automatically associate a cat’s image with what it already knows. Machine learning, on the other hand, requires that the programmer be taught what kinds of factors to identify a cat. It also includes a programmer who corrects machine analysis until the computer becomes more precise in its work. Finally, deep learning requires the task of identifying the cat as a host of different layers. At one layer, the artificial intelligence algorithm divides the https://www.linkedin.com/post/edit/6732178418152042496/
8/10
11/11/2020
Retry Premium cat’s task of detecting the eye, while examining the shape of another layer. Search Free
Connected layers of neural network results. Publishing menu
Normal
Saved
Publish
In an intelligent contact center, on the other hand, artificial intelligence can use pre-loaded information to find out where to send individual callers to get the best answers to their questions. Machine learning can understand the caller’s language and make suggestions on how the agent can respond. Deep learning can analyze the sentiments of the caller and formulate strategies for how to get a good return on investment for the call. Both machine learning and deep learning make AI much smarter and more accessible. AI, ML, and DL in the cloud: Today, significant advances in the world of cloud technology make deep learning, machine learning, and artificial intelligence more accessible and accessible. Cloud-like AWS, Google Cloud, and AI service providers in Microsoft Azure provide solutions in the computing, networking, memory, and bandwidth that are scalable and easy to use. At the same time, cloud-integrated technology platforms such as PASS, SASS, IAS, and IPAS allow small and medium-sized companies to use everything from big data storage to advanced analytics. Natural language processing techniques, computer vision, and ML algorithms are all pre-loaded into the service, and the data center performs the calculation remotely. This means that there is no need for specialized training in data engineering and data science. The cloud means that anyone can access the amazing global AI and continue to help technology grow, evolve, and transform. https://www.linkedin.com/post/edit/6732178418152042496/
9/10
11/11/2020
https://www.linkedin.com/post/edit/6732178418152042496/
10/10