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]]>In simple words, neural networks can be considered mathematical models loosely modeled on the human brain. Neural networks engage in two distinguished phases. First, comes the learning phase where a model is trained to perform certain tasks. These could be how to perform language translations or how to describe images to the blind. And second comes the application stage where the trained model is utilized. You can think of Spotify sending you a weekly-playlist created by analyzing your music taste. Neural networks come with some fundamental building blocks that include neurons, input, outputs, weights, and biases. Here, each neuron comes with one or multiple inputs together with a single output.
You can use this output as an input to one or multiple neurons or as the entire network’s output. The most intelligent thing about neural networks is the self-learning during the training period of the models. Here, a neural network is given a dataset of inputs (could be text, speech, or images – but everything has to be translated to numbers) and a true answer accompanying every observation set. Now the model learns to find out the true answer based on the inputs it has been presented with. Throughout the learning process, the model would estimate second-hand-values continuously and compare those to the true values. If there’s a large difference, the model parameters get automatically updated to push those estimates closer to true second-hand-values. This process gets repeated until the average difference between true and assigned values becomes adequately small.
You can think of deep learning as the absolute cutting edge of AI (artificial intelligence). Here, the machine trains itself to process, as well as, learn from data. With deep learning, you don’t need to teach machines to process and learn from data, which is the working method of machine learning.
The difference between deep learning and neural networks remains in the model’s depth where the former phrase is used to mention complex neural networks. A deep learning system is simply a self-teaching one that keeps on learning by filtering information via multiple hidden layers, much like the way the human brain works. It’s being assumed by some people that deep learning will automate a significant number of tasks and might replace many human workers in the future. But it’s also important to understand that implementation of deep learning might replace someone who works on repetitive, manual tasks but it just can’t replace the engineer or the scientist developing and maintaining a deep learning application.
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]]>The post How Artificial Intelligence leads us forward? appeared first on Magnimind Academy.
]]>While we’re probably heading toward a future where machines might become intellectually equal or superior to humans, let’s take a look at how artificial intelligence is transforming the present world now.
Virtually, there’s nothing that artificial intelligence won’t be able to support but it requires human expertise to oversee, assign its responsibilities, and identify its limitations. When the best parts of AI would be coupled with the best parts of humanity, it’ll take us to a different level together than either one could do individually. So, it can be safe to say that it’s probably the best time to learn artificial intelligence. A comprehensive AI training would not only help you get an edge in today’s competitive job market but will make you future-proof as well.
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]]>The post What is the best neural network model for temporal data in deep learning? appeared first on Magnimind Academy.
]]>You can consider an artificial neural network as a computational model which is based on the human brain’s neural structure. Neural networks are capable of learning to perform tasks such as prediction, decision-making, classification, visualization, just to name a few.
An artificial neural network contains processing elements or artificial neurons and is organized in different interconnected layers namely input, hidden, and output. In deep learning, different types of neural networks are used. Since the emergence of big data, the field of deep learning has been gaining steady popularity as the performance of neural networks has improved by working with more amounts of data than ever before.
A lot of neural networks are there, each with its unique strengths. Different principles are used by different types of neural networks to determine their own rules. Let’s have a look at the most common ones.
As you may have understood from the above, a recurrent neural network is the best suited for temporal data in working with deep learning. Neural networks are designed to truly learn and improve more with more usage and more data. And that’s why it’s sometimes said that different kinds of neural networks will be the next-generation AI’s fundamental framework.
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]]>The post Deep Learning and Its 5 Advantages appeared first on Magnimind Academy.
]]>Put simply, deep learning is a subset of machine learning which teaches machines to do what humans are naturally born with: learn by example. Though the technology is often considered a set of algorithms which ‘mimics the brain’, a more appropriate description would be a set of algorithms which ‘learns in layers’. It involves learning through layers that enable a computer to develop a hierarchy of complicated concepts from simpler concepts. In deep learning, a model learns to perform tasks directly from text, sound, or images and can achieve incredible accuracy, sometimes more than human-level performance. Deep learning is the central technology behind a lot of high-end innovations like driverless cars, voice control in devices like tablets, smartphones, hands-free speakers etc and many more. It’s offering results which weren’t possible before or even with traditional machine learning techniques.
A huge number of industries are using deep learning to leverage its benefits. Let’s have a look at a couple of them.
Majority of the deep learning methods utilize neural network architectures and that’s why deep learning models are widely known as deep neural networks as well. A deep learning process consists of two key phases – training and inferring. The training phase can be considered as a process of labeling huge amounts of data and identifying their matching characteristics. Here, the system compares those characteristics and memorizes them to come up with correct conclusions when it encounters similar data next time. During the inferring phase, the model makes conclusions and labels unexposed data with the help of the knowledge it gained previously.
During the training of deep learning models, professionals use large sets of labeled data together with neural network architectures which learn features from the data directly without the need for feature extraction done manually.
Professionals use deep learning in three most popular ways to perform object classification. Let’s have a look at them.
Though deep learning was developed as an approach of machine learning, the focus has shifted mainly on deep learning these days and for reasons. Traditional machine learning refers to the process of extraction of knowledge from a large dataset loaded into the machine. Professionals formulate the rules and rectify errors made by the machine. This approach removes the negative overtraining impact which appears frequently in deep learning. In traditional machine learning, a machine is provided with training data and examples to help it make correct decisions. In other words, in a traditional machine learning approach, a machine can solve a significant number of tasks, but it cannot perform them without human control. Let’s have a look at the differences between traditional machine learning and deep learning.
It’s implied in the deep learning concept that a machine develops its functionality by itself at the current time as long as it’s possible.
You may ask why a significant number of technology giants are steadily adopting deep learning. To understand the reason, we’ve to look at the advantages that can be gained by using a deep learning approach. Here’re five key advantage of using this technology.
Research from Gartner revealed that a huge percentage of an organization’s data is unstructured because the majority of it exists in different types of formats like pictures, texts etc. For the majority of machine learning algorithms, it’s difficult to analyze unstructured data, which means it’s remaining unutilized and this is exactly where deep learning becomes useful. You can use different data formats to train deep learning algorithms and still obtain insights which are relevant to the purpose of the training. For instance, you can use deep learning algorithms to uncover any existing relations between industry analysis, social media chatter, and more to predict upcoming stock prices of a given organization.
In machine learning, feature engineering is a fundamental job as it improves accuracy and sometimes the process can require domain knowledge about a certain problem. One of the biggest advantages of using deep learning approach is its ability to execute feature engineering by itself. In this approach, an algorithm scans the data to identify features which correlate and then combine them to promote faster learning without being told to do so explicitly. This ability helps data scientists to save a significant amount of work.
Humans get hungry or tired and sometimes make careless mistakes. When it comes to neural networks, this isn’t the case. Once trained properly, a deep learning model becomes able to perform thousands of routine, repetitive tasks within a relatively shorter period of time compared to what it would take for a human being. In addition, the quality of the work never degrades, unless the training data contains raw data which doesn’t represent the problem you’re trying to solve.
Recalls are highly expensive and for some industries, a recall can cost an organization millions of dollars in direct costs. With the help of deep learning, subjective defects which are hard to train like minor product labeling errors etc can be detected. Deep learning models can also identify defects which would be difficult to detect otherwise. When consistent images become challenging because of different reasons, deep learning can account for those variations and learn valuable features to make the inspections robust.
Data labeling can be an expensive and time-consuming job. With a deep learning approach, the need for well-labeled data becomes obsolete as the algorithms excel at learning without any guideline. Other types of machine learning approaches aren’t nearly as successful as this type of learning.
Keeping in mind the above and more advantages of using deep learning approach, it can be said that it’s obvious to experience the impact of deep learning in different high-end technologies like Advanced System Architecture or Internet of Things in the future. We can expect to see more valuable contributions to the larger business realm of connected and smart products and services. These days, deep learning has come a long way from being just a trend and it’s quickly becoming a critical technology being adopted steadily by an array of businesses, across multiple industries.
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]]>The post What are the differences between deep learning and usual machine learning? appeared first on Magnimind Academy.
]]>Though some people use these terms interchangeably, they’re not the same. In this post, we’re going to learn the differences between deep learning and usual machine learning based on various factors. But before delving deeper, let’s have a look at what these terms actually stand for.
In its most basic form, machine learning is a method to implement artificial intelligence. Machine learning algorithms parse data, learn from it, and then apply that learning to make informed decisions. To understand easily how machine learning algorithms work, you can think of an on-demand music streaming service. For it to decide about which new artists or songs to recommend to a particular listener, machine learning algorithms relate the preferences of that listener to other listeners who’ve a similar musical taste. Usual machine learning is widely used to perform all kinds of automated tasks across multiple industries, from finance professionals trying to identify favorable trades to data security firms trying to succeed in finding malware. When we refer to something that’s capable of doing machine learning, it means it’s capable of performing a function with data provided to it and gets better at that function progressively. Most often, usual machine learning algorithms work on a specific set of features extracted from the raw data. Features can be very simple like temporal values for a signal, pixel values for images, among others.
It’s important to understand that an algorithm isn’t a complete computer program which is a set of instructions. It’s a limited sequence of steps required to solve a specific problem. For instance, a search engine depends on an algorithm which grabs the text entered into the search box by a user and searches the associated database to come up with related search results. It takes certain steps to achieve a specific goal.
Different types of learning algorithms are used in machine learning. Let’s have a quick look at them.
That’s all about the fundamentals of usual machine learning. Now, let’s understand what deep learning is all about.
Though deep learning has been around for some time now, these days it’s getting more attention because of widespread adaptation. It’s a subset of machine learning and also comes with supervised, unsupervised, and reinforcement learning. Though deep learning is inspired by the way the human brain works, it needs high-end machines and huge amounts of big data to provide optimum performance. Unlike usual machine learning algorithms which break problems down into different parts and individually solve them, deep learning solves a problem from end to end. A deep learning technique is capable of learning categories incrementally via its hidden layer architecture. Probably the biggest advantage of using this technique is the more data you feed deep learning algorithms, the better they get at solving a task. And technology’s ‘Big Data Era’ is capable of providing massive amounts of opportunities for innovations in deep learning. There’s an array of methods are used in this technique. Some of these include convolutional neural network, recurrent neural network, generative adversarial network etc. In the earlier example for usual machine learning, where images of boys and girls were used, algorithms were used by the program to sort those images based on spoon-fed data mainly. But with deep learning, there’s no data given to the program to use. It scans every pixel within an image to identify edges which can be used to separate a boy from a girl. Then it’ll put shapes and edges into a ranked order of probable importance in order to determine those two genders.
Now that you’ve gained an overview of usual machine learning and deep learning, it’s time to learn about the differences between both based on some important points.
The biggest difference between usual machine learning and deep learning lies in their performance as the volume of data increases. Usual machine learning algorithms usually perform well even if the volume of the dataset is small. On the other hand, deep learning algorithms require a massive amount of data to perform perfectly.
Feature engineering refers to the process of putting the domain knowledge into the modeling of feature extractors to lower the complexity of data and make the patterns more visible in order to learn the algorithms working. The process is expensive and difficult in terms of expertise and time. In usual machine learning, performance depends on hand-crafted features as inputs. Here, features stand for pixel values, textures, shape, position, orientation, and color. The performance depends on how well these features are identified and extracted. On the other hand, deep learning doesn’t rely on hand-crafted features and performs a hierarchical method of feature extraction, which means it learns features layer-wise. Hence, deep learning lowers the task of creating new feature extractor for each and every problem.
Usually, deep learning relies on high-end machines while usual machine learning can be performed on low-end machines. For example, GPUs (graphical processing units) are an integral part of deep learning functioning. On the other hand, you can implement a usual machine learning algorithm on a CPU with fairly standard specifications.
Generally, deep learning algorithms need a long time to train because of the presence of a huge number of parameters. For example, a deep ResNet (deep residual network) takes around two weeks to train fully from scratch. On the contrary, usual machine learning needs much less time to train, from a few seconds to a couple of hours.
You need to divide a problem into different parts in order to solve it using usual machine learning. For example, you need to do multiple object detection. The task involves identifying what’s the object and where is it actually present in an image. In a usual machine learning approach, the problem would need to be divided into two steps: first is object detection and second is object recognition. On the other hand, in deep learning approach, the process would be done end-to-end. For instance, you’d need to pass in the image, and it would come out with the location together with the object’s name.
Usual machine learning algorithms are generally easy to be interpreted. They’re interpretable regarding the parameter it chose and the reason behind it. On the contrary, deep learning algorithms are simply a black box. Even if those algorithms can outshine humans in performance, they’re still not reliable in the context of to be deployed in the industry.
Both the usual machine learning and deep learning have the potential to transform the business landscape. Machine learning is already being heavily integrated by businesses across different industries to gain a competitive advantage. Deep learning is considered one of the most high-end techniques to deliver state-of-art performances. Both of these applications have been surprising researchers each day with their capabilities to do wonders and we can expect to see this trend to be continued in the future.
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]]>The post Deep Learning Structure Guide for Beginners appeared first on Magnimind Academy.
]]>In its simplest form, deep learning, also known as deep machine learning or deep structured learning, is a subset of machine learning and refers to neural networks that have the ability to learn the input data’s increasingly abstract representations. These days, implementation of deep learning techniques can be found to a great extent, from self-driving cars to academic researches.
If you follow prominent job portals, you can find that there’s a significant number of deep learning professionals job positions almost all of which are paying really well. Now, you may wonder why do companies hire these professionals? Or, what can such a professional bring to them? Let’s have a look.
Every company wants quality and sometimes work produced by human employees come inferior and with errors. This is particularly true for data processing repetitive tasks. However, a worker powered by deep learning is capable of developing new understandings and producing high-quality, accurate results.
With the help of deep learning, software robots can understand spoken language, recognize more images and data, and work more efficiently. These are the main reasons why companies across the globe are hiring deep learning professionals.
In its simple form, neural networks can be considered as trainable brains. These networks are provided with information and trained to do tasks, and they’ll use that training together with new information and their own work experience when it comes to accomplishing those tasks.
Implementation of deep learning in business can save the company a significant amount of time and money. In addition, when time-consuming or repetitive tasks are done efficiently and quickly, employees are freed up to take care of creative tasks that actually need human involvement.
As deep learning is a branch of machine learning, general people often become confused about when to use over the other. In general, when it comes to large datasets, deep learning should be the ideal technique while traditional machine learning models can do perfectly well with small datasets.
Deep learning outperforms traditional machine learning in the context of complex problems like speech recognition, natural language processing, image classification etc. Another key difference between them is that deep learning algorithm needs a long time to be trained because a large number of parameters while traditional machine learning algorithms can be trained within a few hours. Interpretability is another reason for which many companies prefer using machine learning over deep learning.
Deep learning is a complex field consisting of several components. In this deep learning structure guide part of the post, we’ve put together the major elements that you’d need to master upon.
Also, we’ve designed this deep learning guide assuming you’ve a good understanding of basic programming and basic knowledge of probability, linear algebra and calculus. Let’s have a look at the guide.
It’s imperative to get a good understanding of the basics of machine learning before you dive into deep learning. Basically, it’s distributed in three types of learning – supervised, unsupervised and reinforced learning.
In deep learning, a significant amount of machine learning techniques like logistic regression, linear regression etc are used. There’re lots of resources available that can help you accomplish this goal. You should also learn Python at this stage. Try to get yourself introduced to scikit-learn, a widely used machine learning library. At the end of this stage, you should have a good theoretical as well as a practical grasp of machine learning.
The first thing you should do is understand the frameworks of deep learning. Deep learning professionals mainly need to work with algorithms which are inspired by neural networks. Though there’re lots of resources available online that you can use to learn the basics of deep learning, it’s recommended to take a course from a reputed institute.
Try to get access to a GPU (graphics processing unit) to run your deep learning experiments. If possible, try to read some research papers in deep learning as they cover the fundamentals. At this stage, try to pick any of the three – PyTorch, TensorFlow or Keras. Whatever you choose, be sure to become very comfortable with it.
A neural network comes with a layered design that contains an input layer, a hidden layer, and an output layer. It functions like the human brain’s neurons such as receiving inputs and generating an output.
There’re several types of artificial neural networks that are implemented based on a set of parameters needed to determine the output and mathematical operations. The functions of these neural networks are utilized in deep learning which helps in image recognition, speech recognition, among others.
Put simply, Convolutional Neural Networks are multi-layer neural networks which consider the input data as images. It’s widely used in facial recognition, object detection, image recognition and classification etc. The best thing about Convolutional Neural Networks is the need for feature extraction is eliminated. The system learns to perform feature extraction.
The fundamental concept of CNN is, it utilizes convolution of images and filters to produce invariant features that are passed on to the next layer. In the next layer, the features are convoluted with a different set of filters to produce abstract and more invariant features and this process continues till we get final output/feature that is invariant to occlusions.
Unsupervised learning is a complex method with the goal of creating general systems which can be trained using a very minimum amount of data. It comes with the potential to unlock unsolvable problems which were done previously. This method is widely used to solve the problems created by supervised learning.
Natural language processing is focused on making computers capable of understanding and processing human languages in order to get them closer to the human-level understanding of language. This domain mainly deals with developing computational algorithms that can automatically analyze and represent human language. It can also be used for dialogue generation, machine translation etc.
Through this technique, software or a machine can learn to function in an environment by itself. Though some may compare reinforcement learning with other forms of learning like supervised and unsupervised learning, there remains a major difference. It’s that reinforcement learning isn’t provided with outcome instructions, instead it follows trial and error mechanism to develop appropriate outcomes.
5- Major applications of deep learning
Here’re some real-life applications where deep learning is used heavily.
You’ve probably heard about Apple’s intelligent assistant Siri, which is controlled by voice. The tech giant has started working on deep learning to develop its services even more.
You’re probably aware of that deep learning is utilized to identify images which contain letters and once they’re identified, those can be turned into text and translated, and the image can be recreated using that translated text. In general, this is called instant visual translation.
You may have already heard about the translation ability of Google. But did you know what’s the technology behind Google Translate? It’s machine translation that tremendously helps people who cannot communicate between themselves because of the difference in language. You may ask that this feature has been around for some time now, so there shouldn’t be anything new in this. Using deep learning, the tech giant has completely reformed the machine translation approach in Google Translate.
Here, we’ve only mentioned some popular real-life cases that use deep learning extensively and showing promising results. There’re lots of other applications where deep learning is successfully being implemented and demonstrating good results.
So, this is the overview of deep learning in a simple form. Hopefully, by now you’ve got a clear idea of what should be a good deep learning structure to follow in order to become a deep learning professional.
With the entire business landscape steadily leaning toward artificial intelligence together with massive amounts of data being generated every single day, the future surely holds a great place for deep learning professionals. The key reason behind this is the supremacy of deep learning in terms of accuracy when properly trained with an adequate amount of data. If you’re interested to step into the field, probably this is the best time to start your journey because the big data era is expected to provide massive amounts of opportunities for advancement and new innovations in the field of deep learning.
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]]>The post Invaluable Societal Benefits Of AI appeared first on Magnimind Academy.
]]>However, there’re lots of people who’re understandably concerned about the actual impact of artificial intelligence – whether it’s good for the society or not. Finding a proper answer to this question has become even more important as there’re individuals who’re deeply skeptical about AI’s potential and are wary of how the technology is going to impact the society.
Like any other technological aspect, the debate is complex for AI too. And of course, there’re benefits and issues along the way, as artificial intelligence becomes more pervasive in human lives.
We should always remember that when there’re challenges, there’re some good opportunities too. And we can’t afford to look at AI with skeptical eyes. Rather, we’ve to understand the benefits it has already offered to our society.
Some of the key societal benefits that artificial intelligence has brought along are outlined below.
Healthcare has always been one of the focal points of AI. It boasts of a huge amount of data to populate and analyze based on which computational sophistication has been improved by designers.
For instance, Merantix, a German company, applies deep learning to medical issues. It offers an application capable of detecting lymph nodes in the human body in CT (Computer Tomography) images. If the detection is done by humans, the charge would be prohibitively expensive. In this scenario, deep learning trains computers on datasets to learn what an irregular-appearing versus a normal-looking lymph node is. Once done, radiological imaging specialists apply this knowledge to real patients and identify the extent to which somebody is at risk of carcinogenic lymph nodes, at a significantly lower cost.
AI tools can predict substantial challenges lying ahead in advance and offer resources for patient education and proactive interventions, thus helping people to maintain their wellbeing.
Transportation is a field where artificial intelligence together with machine learning has produced major innovations. Autonomous vehicles like cars, buses, trucks etc use advanced capabilities that offer features like lane-changing systems, automated vehicle guidance, automated braking, use of sensors and cameras for collision avoidance, and analyzing information in real time by using AI, among others.
For instance, AI and LIDARs (light detection and ranging systems) play key roles in collision avoidance and navigation. These instruments provide information that helps to keep fast-moving vehicles in their designated lanes, thus helping them avoid other vehicles and applying brakes when needed etc, thus and ultimately saving human lives by reducing road accidents.
AI is considered as one of the perfect sources of predicting natural occurrences. There’s an AI model that can almost perfectly guide you what the weather will be for the next couple of days, which was almost unimaginable before the advent of artificial intelligence.
There’s also an incredible system that can predict, based on the simulation of tectonic plates of the earth, the time of volcanic eruptions. There’re AI-enabled projects that gather data for magnetometers of the phone and send it for analysis based on which successful predictions about earthquake can be made.
Farming is another sector that has been heavily benefitted from AI. This is an industry full of challenges like competition for natural resources, plateauing agricultural productivity, and rapidly growing population.
In this scenario, consider FarmLogs, a farming management app presently used by many farmers in the US, which uses technology and data to help farmers track the weather, monitor fields, obtain insights into soil utilizing historical satellite imagery, and even identify irregular plant growth. Real-time data analytics help farmers to maximize their crop yields and thus, in turn, their profits too.
Probably all of us have seen headlines that state something like adoption of AI will lead to unemployment. In reality, this is far from the truth. Artificial intelligence promotes a gradual evolution in the job field, which will be positive with the companies planning ahead.
Humans will still work, but they’ll be working more efficiently with the help of AI. Besides this unparalleled combination of machine and human, there will be a natural requirement of trained people who’ll be supervising the systems, apart from those who’ll actually do certain jobs. It’ll gradually result into more job openings, thus solidifying the economy.
AI is being implemented by various authorities to optimize different facilities. Artificial intelligence is considered as a way to deal with large volumes of data and to identify efficient ways of responding to various public requests. Instead of addressing service issues in ad hoc manners, authorities are implementing AI to be proactive in how urban services can be provided.
Smart city applications often use artificial intelligence to improve environmental planning, service delivery, energy utilization, resource management, and crime prevention, among others. Some of the top applications include intelligent traffic signals, e-governance applications, smart meters for utilities, Wi-Fi kiosks etc.
With the increasing implementation of AI in different segments of society, overall lifestyle of the humans gets enhanced. Some of the mundane tasks such as data entry or answering emails can be performed by intelligent assistants, freeing up precious time for humans to focus on creative aspects of the work.
Smart homes can be made capable of providing better security and reducing energy usage that would greatly promote the concept of a greener environment.
With all the AI benefits, there comes some significant disadvantages as well, but that’s natural for any technology.
The question that is making lots of people worried is this: With too much of authority given to the machines, how can implementation of AI be made more favorable to the society? Or, at the least, how to make it not act like a threat to human life and property?
Results can be questioned even with a greatly planned decision-making system, if the reasoning can’t be demonstrated. For example, if AI has diagnosed an illness, the patient can always ask for a proper reasoning, failing which would lead to non-transparency of the system.
Assuming that artificial intelligence will be making hugely important decisions, implementation of AI has to be perfectly planned and the results have to be transparent and explainable to be accepted by the society. In addition, AI should be use data science to improve the living conditions.
Artificial intelligence should be used where it’s more effective and efficient to employ a machine to handle the task compared to engaging a human brain to perform it. So, companies should ensure scenarios where success gets replicated in raising the technology, in terms of both costs and resources.
High-quality protocols should also be developed by data scientists when it comes to selecting training data and taxonomies for AI. If it’s trained with patchy, skewed or flawed examples, the results will be going to be unreliable. So, it also needs to be ensured that the data is relevant, appropriate, accurate, diverse, accurately labeled, and representative.
For instance, if an AI-enabled system for hiring recommendations is trained on the data of present and past employees solely, and those employees aren’t diverse (e.g. predominantly older white females), the resulting model would likely be biased unfairly against candidates who’re young, racial minorities, and male. Even after an AI-enabled system is launched, the risk and quality of unfair bias need to be assessed by human overseers in ongoing new training data.
In addition, as we aim to improve the fairness and efficacy of AI with proper training data to benefit the society, we should also keep in mind that fundamental privacy principles are closely related to the massive amounts of data used by AI. Usage and retention of personal data needs to be minimized, while limiting the ways in which that data could be used in the future. Big data analytics solutions include the remedy of these problems.
It’s important to note that AI isn’t able to learn on its own and thus, humans are required to help any type of artificial intelligence obtain a better understanding of all types of jobs, processes, things etc. When it comes to maximizing societal benefits, perhaps the best approach to leverage both AI systems and human-only systems is to do what each of them does best. Leveraging artificial intelligence as well as the best of human ability and values promises greater progress in accountability, transparency, and fairness. And this will be playing a crucial role in building a strong trust for AI in the society.
For instance, AI can be put to work to do the time-consuming analysis of the huge amount of information available. Building a culture of continuous learning and collaboration is crucial to take maximum advantage of artificial intelligence. This combined approach is what will make processes and people even more important than they are today. And to make the most out of the technology, society needs to deploy AI that puts humans first, protects human rights, and fosters humans’ trust. Immersive data science experience is proof that we can rely on artificial intelligence.
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