Everything You Need To Know About Machine Learning In Unity 3D – Analytics India Magazine

Unity 3D is a popular platform for creating and operating interactive, real-time 3D content. It is a cross-platform 3D engine and a user-friendly integrated development environment (IDE) which helps in creating games in 3D as well as applications for desktop, mobile, web and more. It consists of a number of tools for programmers as well as artists to create real-time solutions, such as films and automotive, apart from games. The flexible real-time tools of Unity offer incredible possibilities for all industries and applications.

With a vision to maximise the transformative impact of Machine Learning for researchers and developers, Unity released the first version of Unity Machine Learning Agents Toolkit (ML-Agents) in 2017.

The aim of this ML environment is to allow game developers and AI researchers to use Unity as a platform to train as well as embed intelligent agents with the help of the latest advancements in ML and AI.

The Unity Machine Learning Agents Toolkit or simply ML-Agents is an open-source project by Unity, which allows games and simulations to serve as environments for training the intelligent agents. ML-Agents includes a C# software development kit (SDK) to set up a scene and define the agents within it, and a state-of-the-art ML library to train agents for 2D, 3D, and VR/AR environments.

The agents can be trained using techniques like reinforcement learning, imitation learning, neuro-evolution and other such ML methods through a simple-to-use Python API. The toolkit includes a number of training options, such as Curriculum Learning, Curiosity module for sparse-reward environments, Self-Play for multi-agent scenarios and more.

The Unity environment also provides implementations of state-of-the-art algorithms, which are based on TensorFlow to enable game developers to easily train intelligent agents for 2D, 3D and VR/AR games.

These trained agents can be utilised for multiple purposes, including controlling NPC behaviour, automated testing of the game builds as well as evaluating various game design decisions prior to its release.

The ML-Agents Toolkit provides a central platform where advances in Artificial Intelligence can be evaluated on the environments of Unity and then made accessible to the game developer communities for wider research.

Unity ML-Agents include a number of intuitive features. Some of them are:

Unity Machine Learning Agents (ML-Agents) allows developers to create more compelling gameplay and enhanced game experience. Using the platform, a developer can teach intelligent agents to learn through a combination of deep reinforcement learning and imitation learning.

The steps involved in ML-Agents are:

Know more here.

The key benefits of Unity ML-Agents are:

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A Technical Journalist who loves writing about Machine Learning and Artificial Intelligence. A lover of music, writing and learning something out of the box. Contact: ambika.choudhury@analyticsindiamag.com

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Everything You Need To Know About Machine Learning In Unity 3D - Analytics India Magazine

Machine Learning Operationalization Software Market | Global Industry Analysis, Segments, Top Key Players, Drivers and Trends to 2025 – AlgosOnline

Market Study Report, LLC, adds a comprehensive research of the ' Machine Learning Operationalization Software market' that mentions valuable insights pertaining to market share, profitability graph, market size, SWOT analysis, and regional proliferation of this industry. This study incorporates a disintegration of key drivers and challenges, industry participants, and application segments, devised by analyzing profuse information about this business space.

The Machine Learning Operationalization Software market report rigorously examines the implications of the major growth drivers, restraints, and opportunities on the revenue cycle of this industry vertical.

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As the world continues to battle the rampaging Covid-19 pandemic, lockdowns and restrictions have put a big question mark on the growth of businesses. Some industries will have to face adversities even once the economy recovers.

The coronavirus outbreak has prompted almost all businesses to revise their budget, in an effort to restore the profitability in the forthcoming years. Our in-depth assessment of this business space will help you craft an action plan to tackle the market uncertainties.

A complete study of the various market segmentations with their growth prospects are also included in the report. In addition, insights into the competitive dynamics are provided.

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Machine Learning Operationalization Software Market segmentations elucidated in the report:

Regional bifurcation: North America, Europe, Asia-Pacific, South America, Middle East and Africa

Product types:

Applications range:

Competitive outlook:

Report Focuses:

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Executive Summary

Manufacturing Cost Structure Analysis

Development and Manufacturing Plants Analysis of Machine Learning Operationalization Software

Key Figures of Major Manufacturers

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Machine Learning Operationalization Software Market | Global Industry Analysis, Segments, Top Key Players, Drivers and Trends to 2025 - AlgosOnline

Amazon’s Machine Learning University To Make Its Online Courses Available To The Public – Analytics India Magazine

In a recent development, Amazon announced that it will make online courses by its Machine Learning University available to the public. The classes were previously only available to Amazon employees.

The company believes that machine learning has the potential to transform businesses in all industries, but theres a major limitation: demand for individuals with ML expertise far outweighs supply. Thats a challenge for Amazon, and for companies big and small across the globe.

The Machine Learning University (MLU) was founded with an aim to meet this demand in 2016. It helped ML practitioners sharpen their skills and keep them abreast with the latest developments in the field. The classes are taught by Amazon ML experts.

The tech giant now plans to make these classes available to the ML community across the globe. It will include nine more in-depth courses before the year ends. As the blog post notes, by the beginning of 2021, all MLU classes will be available via on-demand video, along with associated coding materials. It will cover topics such as natural language processing, computer vision and tabular data while addressing various business problems.

By going public with the classes, we are contributing to the scientific community on the topic of machine learning, and making machine learning more democratic, said Brent Werness, AWS research scientist and MLUs academic director.

This initiative to bring our courseware online represents a step toward lowering barriers for software developers, students and other builders who want to get started with practical machine learning, he added.

Instead of a three-class sequence that takes upwards of 18 or 20 weeks to complete, in the accelerated classes we can engage students with machine learning right up front, shared Ben Starsky, MLU program manager.

The company said that similar to other open-source initiatives, MLUs courseware will evolve to improve over time based on input from the builder community. It also looking to rebuild its curriculum to further integrate dive into deep learning into class sessions.

The company wants to include as many important things as possible while offering flexibility in the way people can take these classes.

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Srishti currently works as Associate Editor at Analytics India Magazine. When not covering the analytics news, editing and writing articles, she could be found reading or capturing thoughts into pictures.

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Amazon's Machine Learning University To Make Its Online Courses Available To The Public - Analytics India Magazine

The Ethics Of AI And Death – Big Easy Magazine

AI can now accurately predict death, but is that a prediction we want to hear?

In almost every industry, artificial intelligence (AI) is on the fast track to outpacing human endeavor. Machine learning technologies are already better than the average person at gaming, creating content and even building AI, and it appears they are only going from strength to strength.

As a result of their developing intelligence, the most common question AI critics have been asking is whether its ethical to be putting ourselves out of a job. YouTube video essayist CGP Grey put it best when he said that, by investing in AI development, we are steaming ahead towards a market in which humans need not apply without adequately preparing the population for that scenario.

However, there is another ethical question to ask about superhuman AI: do we truly want all our questions answered? Is there some knowledge that, given the option, wed actually prefer not to have? Perhaps the most profound piece of knowledge any one of us could have would be knowing when we die. The idea that we could predict death with 100% accuracy has been the subject of art and literature from Ancient Greece to modern science fiction and beyond, and its no wonder. The preservation of life is an evolutionary instinct and knowing whether and when that life will end is necessarily part of preserving it.

With regard to preserving and prolonging life, AI already has a very good track record. Frances AI in the hands of medical experts is a truly powerful tool to detect and deter disease. Deep learning technology based on retinal scans was shown to be a good indicator of cardiovascular health and a predictor of potential heart attacks, and also supremely accurate at indicating diabetes with the addition of expert assessment.

The greatest advantage of these early warning systems was the ability to anticipate treatment plans, particularly for conditions with potentially precipitous declines. One such disease is Alzheimers, the appearance of which can be hard to notice before the effects are irreversible. Thats why a 2017 study attempted to use machine learning to identify incipient Alzheimers dementia in patients. The system predicted the progression of dementia within the next 24 months and was accurate 84% of the time.

Considering all of this, its not all that surprising that AI is getting very good at predicting death. The most-quoted example of this was the University of Nottinghams study last year, which developed a deep- and machine-learning algorithm to predict premature death in patients aged 40 to 69.

Based on health data from 2006 to 2010 from over half a million people within the age range, the deep learning program was significantly more accurate in predicting death than the standard prediction models developed by a human expert. What this means in numbers is that the two AI algorithms were able to accurately identify 76% and 64% of subjects who died, respectively, while the human-generated prediction model predicted only 44%.

One of the lessons from the University of Nottingham study is that AI can be used to enhance human predictive models. The two systems used in the study arrived at their predictions by looking at different variables than the human model. While the human model leaned heavily on the ethnicity, gender, age, and physical activity of the subjects, one algorithm focussed on factors like body fat percentage and fruit and vegetable intake, while the most accurate algorithm looked mostly at job-related hazards and the consumption of alcohol and medication.

This means, that far from replacing scientists and healthcare professionals, AI can be used to shed new light on old problems, creating a partnership of humans and machines that could lead to new innovations.

However, the question still stands, how much do we want to know about our own mortality? Of course, the ability to identify life-risking habits and behaviors is an invaluable way to prevent unnecessary death and ease the burden on the healthcare industry worldwide. As systems become more sophisticated they will likely be able to identify specific actions and individual decisions that lead to a prolonged or foreshortened life. Insofar as prolonging life is the purpose of healthcare, AI certainly has a future as a tool to enhance the vital work of doctors and health scientists.

But at what point do we begin to shape our lives around the algorithm? Progressing to its logical conclusion, AI systems will likely soon have the ability to accurately predict the life expectancy of anyone. If you know you have 40 more years to live, how will that change the way you live those 40 years? What if it was 2 years?

Furthermore, is it possible that we are building a world in which we allow the predictions of machines to interfere with our ethical choices? A pregnant mother could know with near certainty that their baby will be born disabled from the moment of conception. How will that affect the ethical debate on abortion?

I do not have the answers to any of these questions I dont think anyone does but they begging to be asked. As we develop our technological abilities further, we need to assess how they affect our social and ethical lives.

Sources

Molly Crockett writes for UK writings and Academized. She is also an editor for Essay Roo. As a marketing writer, she shares her lifestyle and personal development advice with readers.

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The Ethics Of AI And Death - Big Easy Magazine

Global Machine Learning Market expected to grow USD XX.X million by 2025: Microsoft, IBM, SAP, SAS, Google, Amazon Web Services – Bulletin Line

Global Machine Learning Market research report presentation demonstrates and presents an easily understandable market depiction, lending crucial insights on market size, market share as well as latest market developments and notable trends that collectively harness growth in the global Machine Learning market.This detailed and meticulously composed market research report on the Machine Learning market discussed the various market growth tactics and techniques that are leveraged by industry players to make maximum profits in the Machine Learning market even amidst pandemic situation such as COVID-19.

The various components and growth propellants such as dominant trends, existing challenges and restrictions as well as opportunities have also been discussed at length. The report is designed to guide the business decisions of various companies and research experts who look forward to maket profitable decisions in the Machine Learning market.

Global Machine Learning Market 2020-26: Competitive Landscape Analytical ReviewMicrosoftIBMSAPSASGoogleAmazon Web ServicesBaiduBigMLFair Isaac Corporation (FICO)HPEIntelKNIMERapidMinerAngossH2O.aiOracleDomino Data LabDataikuLuminosoTrademarkVisionFractal AnalyticsTIBCOTeradataDell

This report also includes substantial inputs regarding the current competition spectrum and discusses pertinent details such as new product-based developments that various market players are targeting. Further, relevant inputs on M&A developments, business partnership, collaborations and commercial agreements have also been touched upon in this report on Machine Learning market.

Access Complete Report @ https://www.orbismarketreports.com/global-machine-learning-market-size-status-and-forecast-2019-2025-2?utm_source=Puja

By the product type, the market is primarily split into Professional ServicesManaged Services

By the end-users/application, this report covers the following segments BFSIHealthcare and Life SciencesRetailTelecommunicationGovernment and DefenseManufacturingEnergy and Utilities

What to expect from the report A complete analysis of the Machine Learning market Concrete and tangible alterations in market dynamics A thorough study of dynamic segmentation of the Machine Learning market A complete review of historical, current as well as potential foreseeable growth projections concerning volume and value A holistic review of the vital market alterations and developments Notable growth friendly activities of leading players

Regional Analysis of the Machine Learning Market: The report further proceeds with unravelling the geographical scope of the Machine Learning market. Additionally, a country-wise discussion with specific growth pockets have also been touched upon in the succeeding sections of this detailed report on the Machine Learning market.

North America (U.S., Canada, Mexico) Europe (U.K., France, Germany, Spain, Italy, Central & Eastern Europe, CIS) Asia Pacific (China, Japan, South Korea, ASEAN, India, Rest of Asia Pacific) Latin America (Brazil, Rest of L.A.) Middle East and Africa (Turkey, GCC, Rest of Middle East)

Scope of the ReportThe discussed Machine Learning market has been valued at xx million US dollars in 2019 and is further projected to grow at xx million US dollars through the forecast span till 2026, growing at a CAGR of xx% through the forecast period.

For the convenience of complete analytical review of the Machine Learning market, 2019 has been identified as the base year and 2020-24 comprises the forecast period to make accurate estimation about the future growth prospects in the Machine Learning market.

Some Major TOC Points: Chapter 1. Report Overview Chapter 2. Global Growth Trends Chapter 3. Market Share by Key Players Chapter 4. Breakdown Data by Type and Application Chapter 5. Market by End Users/Application Chapter 6. COVID-19 Outbreak: Machine Learning Industry Impact Chapter 7. Opportunity Analysis in Covid-19 Crisis Chapter 9. Market Driving ForceAnd Many More

Further in the subsequent sections of the report, readers can get an overview and complete picture of all major company players, covering also upstream and downstream market developments such as raw material supply and equipment profiles as well as downstream demand prospects. This Machine Learning market report offers report readers with vital details on opportunities, primary stakeholders as well as high potential segments that trigger growth in the Machine Learning market.

Do You Have Any Query or Specific Requirement? Ask Our Industry [emailprotected] https://www.orbismarketreports.com/enquiry-before-buying/61812?utm_source=Puja

Target Audience:* Machine Learning Manufactures* Traders, Importers, and Exporters* Raw Material Suppliers and Distributors* Research and Consulting Firms* Government and Research Organizations* Associations and Industry Bodies

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Global Machine Learning Market expected to grow USD XX.X million by 2025: Microsoft, IBM, SAP, SAS, Google, Amazon Web Services - Bulletin Line

Machine Learning Market Emerging Trends, Business Opportunities, Segmentation, Production Values, Supply-Demand, Brand Shares and Forecast 2020-2027 -…

Machine Learning Market Report Forecast to 2027

Reports and Data has added a new research report titled Global Machine Learning Market to its extensive database. The report thoroughly explains the market dynamics from vital industry data to accurate estimation in the forecast years. It comprises of all the crucial segments of the changing dynamics of the market. The information can be beneficial for readers to gain a robust footing in the global market.

The report mainly focuses on the types, applications, overview, and major players in the Machine Learning market. The report provides historical data from 2017-2018 and industrial development trends and growth patterns for the forecast years 2020-2027. The report is updated with the latest economic scenario due to the global COVID-19 crisis. The pandemic has brought dynamic changes in the major segments of the market. The report covers the present and future impact of the COVID-19 crisis and the economic scenario post-COVID-19.

Get a sample of the report @ https://www.reportsanddata.com/sample-enquiry-form/2149

The report on the global Machine Learning market consists of up-to-date financial data formulated by extensive research to provide accurate analysis. The report also consists of the evaluation of key market trends, in-depth analysis of segmentations, and sub-market categorization on a regional and global scale. The report also provides strategic recommendations to key market players and new entrants based on current emerging trends.

Key players of the market mentioned in the report are:

IBM Corporation, Microsoft Corporation, SAP SE, Dell Inc., SAS Institute Inc., Google, Inc., Amazon Web Services Inc., Baidu, Inc., BigML, Inc., Intel Corporation, RapidMiner, Inc., Hewlett Packard Enterprise (HPE), Angoss Software Corporation, Alpine Data, Dataiku, Luminoso Technologies, Inc., TrademarkVision, Fractal Analytics Inc., TIBCO Software Inc., Teradata, and Oracle Corporation, among others.

The report provides an in-depth analysis of production cost, market segmentation, end-use applications, and industry chain analysis. The report provides CAGR, value, volume, revenue, and other key factors related to the global Machine Learning market. All the findings and data have been gathered through extensive primary and secondary research and are validated by industry experts and research analysts.

The report further studies the segmentation of the market based on product types offered in the market and their end-use/applications.

Component Outlook (Revenue, USD Billion; 2016-2026)

SoftwareAccess controlSecurity intelligenceBig data governance

Cloud and Web-based Application Programming Interface (APIs)OthersServicesManaged servicesProfessional servicesSupport and MaintenanceSystem IntegrationTraining

Organization Size Outlook (Revenue, USD Billion; 2016-2026)

Small and Medium-Sized EnterprisesLarge Enterprises

Application Outlook (Revenue, USD Billion; 2016-2026)

Fraud Detection & Risk AnalyticsAugmented & Virtual realityNatural Language processingComputer visionSecurity & surveillanceMarketing & AdvertisementAutomated Network ManagementPredictive MaintenanceOthers

Industry Vertical Outlook (Revenue, USD Billion; 2016-2026)

AutomotiveAerospace & DefenseRetail & E-commerceGovernmentHealthcare And Life SciencesMedia And EntertainmentIT And TelecommunicationsBanking, Financial Services, And InsuranceOthers

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Major geographical regions studied in this report include:

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Key points covered in the report:

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David is an Experience Business writer who regularly contributes to the blog, He specializes in manufacturing news

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Machine Learning Market Emerging Trends, Business Opportunities, Segmentation, Production Values, Supply-Demand, Brand Shares and Forecast 2020-2027 -...

Stanford Center for Health Education Launches Online Program in Artificial Intelligence in Healthcare to Improve Patient Outcomes – PRNewswire

STANFORD, Calif., Aug. 10, 2020 /PRNewswire/ --TheStanford Center for Health Education launched an online program in AI and Healthcare this week. The program aims to advance the delivery of patient care and improve global health outcomes through artificial intelligence and machine learning.

The online program, taught by faculty from Stanford Medicine, is designed for healthcare providers, technology professionals, and computer scientists. The goal is to foster a common understanding of the potential for AI to safely and ethically improve patient care.

Stanford University is a leader in AI research and applications in healthcare, with expertise in health economics, clinical informatics, computer science, medical practice, and ethics.

"Effective use of AI in healthcare requires knowing more than just the algorithms and how they work," said Nigam Shah, associate professor of medicine and biomedical data science, the faculty director of the new program. "Stanford's AI in Healthcare program will equip participants to design solutions that help patients and transform our healthcare system. The program will provide a multifaceted perspective on what it takes to bring AI to the clinic safely, cost-effectively, and ethically."

AI has the potential to enable personalized care and predictive analytics, using patient data. Computer system analyses of large patient data sets can help providers personalize optimal care. And data-driven patient risk assessment canbetter enable physicians to take the right action, at the right time. Participants in the four-course program will learn about: the current state, trends and implications of artificial intelligence in healthcare; the ethics of AI in healthcare; how AI affects patient care safety, quality, and research; how AI relates to the science, practice and business of medicine; practical applications of AI in healthcare; and how to apply the building blocks of AI to innovate patient care and understand emerging technologies.

The Stanford Center for Health Education (SCHE), which created the AI in Healthcare program, develops online education programs to extend Stanford's reach to learners around the world. SCHE aims to shape the future of health and healthcare through the timely sharing of knowledge derived from medical research and advances. By facilitating interdisciplinary collaboration across medicine and technology, and introducing professionals to new disciplines, the AI in Healthcare program is intended to advance the field.

"In keeping with the mission of the Stanford Center for Health Education to expand knowledge and improve health on a global scale, we are excited to launch this online certificate program on Artificial Intelligence in Healthcare," said Dr. Charles G. Prober, founding executive director of SCHE. "This program features several of Stanford's leading thinkers in this emerging field a discipline that will have a profound effect on human health and disease in the 21st century."

The Stanford Center for Health Education is a university-wide program supported by Stanford Medicine. The AI in Healthcare program is available for enrollment through Stanford Online, and hosted on the Coursera online learning platform. The program consists of four online courses, and upon completion, participants can earn a Stanford Online specialization certificate through the Coursera platform. The four courses comprising the AI in Healthcare specialization are: Introduction to Healthcare, Introduction to Clinical Data, Fundamentals of Machine Learning for Healthcare, and Evaluations of AI Applications in Healthcare.

SOURCE Stanford Center for Health Education

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Stanford Center for Health Education Launches Online Program in Artificial Intelligence in Healthcare to Improve Patient Outcomes - PRNewswire

Data Annotation- Types, Tools, Benefits, and Applications in Machine Learning – Customer Think

It is unarguably true that the advent of machine learning and artificial intelligence has brought a revolutionary change in various industries globally. Both these technologies have made applications and machines way smarter than our imaginations. But, have you ever wondered how AI and ML work or how they make machines act, think, and behave like human beings.

To understand this, you have to dig deeper into the technical things. It is actually the trained data sets that do the magic to create automated machines and applications. These data sets are further needed to be created and trained through a process named Data annotation.

Data annotation is the technique of labeling the data, which is present in different formats such as images, texts, and videos. Labeling the data makes objects recognizable to computer vision, which further trains the machine. In short, the process helps the machine to understand and memorize the input patterns.

To create a data set required for machine learning, different types of data annotation methods are available. The prime aim of all these types of annotations is to help a machine to recognize text, images, and videos (objects) via computer vision.

Bounding boxesLines and splinesSemantic segmentation3D cuboidsPolygonal segmentationLandmark and key-pointImages and video annotationsEntity annotationContent and text categorization

Lets read them in detail:

The most common kind of data annotation is bounding boxes. These are the rectangular boxes used to identify the location of the object. It uses x and y-axis coordinates in both the upper-left and lower-right corners of the rectangle. The prime purpose of this type of data annotation is to detect the objects and locations.

This type of data annotation is created by lines and splines to detect and recognize lanes, which is required to run an autonomous vehicle.

This type of annotation finds its role in situations where environmental context is a crucial factor. It is a pixel-wise annotation that assigns every pixel of the image to a class (car, truck, road, park, pedestrian, etc.). Each pixel holds a semantic sense. Semantic segmentation is most commonly used to train models for self-driving cars.

This type of data annotation is almost like bounding boxes but it provides extra information about the depth of the object. Using 3D cuboids, a machine learning algorithm can be trained to provide a 3D representation of the image.

The image can further help in distinguishing the vital features (such as volume and position) in a 3D environment. For instance- 3D cuboids help driverless cars to utilize the depth information to find out the distance of objects from the vehicle.

Polygonal segmentation is used to identify complex polygons to determine the shape and location of the object with the utmost accuracy. This is also one of the common types of data annotations.

These two annotations are used to create dots across the image to identify the object and its shape. Landmark and key-point annotations play their role in facial recognitions, identifying body parts, postures, and facial expressions.

Entity annotation is used for labeling unstructured sentences with the relevant information understandable by a machine. It can be further categorized into named entity recognition and intent extraction.

Data annotation offers innumerable advantages to machine learning algorithms that are responsible for training predicting data. Here are some of the advantages of this process:

Enhanced user experience

Applications powered by ML-based trained models help in delivering a better experience to end-users. AI-based chatbots and virtual assistants are a perfect example of it. The technique makes these chatbots to provide the most relevant information in response to a users query.

Improved precision

Image annotations increase the accuracy of output by training the algorithm with huge data sets. Leveraging these data sets, the algo will learn various kinds of factors that will further assist the model to look for the suitable information in the database.

The most common annotation formats include:

COCOYOLOPascal VOC

By now, you must be aware of the different types of data annotations. Lets check out the applications of the same in machine learning:

Sequencing- It includes text and time series and a label.

Classification- Categorizing the data into multiple classes, one label, multiple labels, binary classes, and more.

Segmentation- It is used to search the position where a paragraph splits, search transitions between different topics, and for various other purposes.

Mapping- It can be done for language to language translation, to convert a complete text into the summary, and to accomplish other tasks.

Check out below some of the common tools used for annotating images:

RectlabelLabelMeLabelImgMakeSense.AIVGG image annotator

In this article, we have mentioned what data annotation or labeling is, and what are its types and benefits. Besides this, we have also listed the top tools used for labeling images. The process of labeling texts, images, and other objects help ML-based algorithms to improve the accuracy of the output and offer an ultimate user experience.

A reliable and experienced machine learning company holds expertise on how to utilize these data annotations for serving the purpose an ML algorithm is being designed for. You can contact such a company or hire ML developers to develop an ML-based application for your startup or enterprise.

Read More: How does Machine Learning Revolutionizing the Mobile Applications?

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Data Annotation- Types, Tools, Benefits, and Applications in Machine Learning - Customer Think

Computer vision: Why its hard to compare AI and human perception – TechTalks

This article is part of ourreviews of AI research papers, a series of posts that explore the latest findings in artificial intelligence.

Human-level performance. Human-level accuracy. Those are terms you hear a lot from companies developing artificial intelligence systems, whether its facial recognition, object detection, or question answering. And to their credit, the recent years have seen many great products powered by AI algorithms, mostly thanks to advances in machine learning and deep learning.

But many of these comparisons only take into account the end-result of testing the deep learning algorithms on limited data sets. This approach can create false expectations about AI systems and yield dangerous results when they are entrusted with critical tasks.

In a recent study, a group of researchers from various German organizations and universities have highlighted the challenges of evaluating the performance of deep learning in processing visual data. In their paper, titled, The Notorious Difficulty of Comparing Human and Machine Perception, the researchers highlight the problems in current methods that compare deep neural networks and the human vision system.

In their research, the scientist conducted a series of experiments that dig beneath the surface of deep learning results and compare them to the workings of the human vision system. Their findings are reminder that we must be cautious when comparing AI to humans, even if it shows equal or better performance on the same task.

In the seemingly endless quest to reconstruct human perception, the field that has become known as computer vision, deep learning has so far yielded the most favorable results. Convolutional neural networks (CNN), an architecture often used in computer vision deep learning algorithms, are accomplishing tasks that were extremely difficult with traditional software.

However, comparing neural networks to the human perception remains a challenge. And this is partly because we still have a lot to learn about the human vision system and the human brain in general. The complex workings of deep learning systems also compound the problem. Deep neural networks work in very complicated ways that often confound their own creators.

In recent years, a body of research has tried to evaluate the inner workings of neural networks and their robustness in handling real-world situations. Despite a multitude of studies, comparing human and machine perception is not straightforward, the German researchers write in their paper.

In their study, the scientists focused on three areas to gauge how humans and deep neural networks process visual data.

The first test involves contour detection. In this experiment, both humans and AI participants must say whether an image contains a closed contour or not. The goal here is to understand whether deep learning algorithms can learn the concept of closed and open shapes, and whether they can detect them under various conditions.

For humans, a closed contour flanked by many open contours perceptually stands out. In contrast, detecting closed contours might be difficult for DNNs as they would presumably require a long-range contour integration, the researchers write.

For the experiment, the scientists used the ResNet-50, a popular convolutional neural network developed by AI researchers at Microsoft. They used transfer learning to finetune the AI model on 14,000 images of closed and open contours.

They then tested the AI on various examples that resembled the training data and gradually shifted in other directions. The initial findings showed that a well-trained neural network seems to grasp the idea of a closed contour. Even though the network was trained on a dataset that only contained shapes with straight lines, it could also performed well on curved lines.

These results suggest that our model did, in fact, learn the concept of open and closed contours and that it performs a similar contour integration-like process as humans, the scientists write.

However, further investigation showed that other changes that didnt affect human performance degraded the accuracy of the AI models results. For instance, changing the color and width of the lines caused a sudden drop in the accuracy of the deep learning model. The model also seemed to struggle with detecting shapes when they became larger than a certain size.

The neural network was also very sensitive to adversarial perturbations, carefully crafted changes that are imperceptible to the human eye but cause disruption in the behavior of machine learning systems.

To further investigate the decision-making process of the AI, the scientists used a Bag-of-Feature network, a technique that tries to localize the bits of data that contribute to the decision of a deep learning model. The analysis proved that there do exist local features such as an endpoint in conjunction with a short edge that can often give away the correct class label, the researchers found.

The second experiment tested the abilities of deep learning algorithms in abstract visual reasoning. The data used for the experiment is based on the Synthetic Visual Reasoning Test (SVRT), in which the AI must answer questions that require understanding of the relations between different shapes in the picture. The tests include same-different tasks (e.g., are two shapes in a picture identical?) and spatial tasks (e.g., is the smaller shape in the center of the larger shape?). A human observer would easily solve these problems.

For their experiment, the researchers use the ResNet-50 and tested how it performed with different sizes of training dataset. The results show that a pretrained model finetuned on 28,000 samples performs well both on same-different and spatial tasks. (Previous experiments trained a very small neural network on a million images.) The performance of the AI dropped as the researchers reduced the number of training examples, but degradation in same-different tasks was faster.

Same-different tasks require more training samples than spatial reasoning tasks, the researchers write, adding, this cannot be taken as evidence for systematic differences between feed-forward neural networks and the human visual system.

The researchers note that the human visual system is naturally pre-trained on large amounts of abstract visual reasoning tasks. This makes it unfair to test the deep learning model on a low-data regime, and it is almost impossible to draw solid conclusions about differences in the internal information processing of humans and AI.

It might very well be that the human visual system trained from scratch on the two types of tasks would exhibit a similar difference in sample efficiency as a ResNet-50, the researchers write.

The recognition gap is one of the most interesting tests of visual systems. Consider the following image. Can you tell what it is without scrolling further down?

Below is the zoomed-out view of the same image. Theres no question that its a cat. If I showed you a close-up of another part of the image (perhaps the ear), you might have had a greater chance of predicting what was in the image. We humans need to see a certain amount of overall shapes and patterns to be able to recognize an object in an image. The more you zoom in, the more features youre removing, and the harder it becomes to distinguish what is in the image.

Deep learning systems also operate on features, but they work in subtler ways. Neural networks sometimes the find minuscule features that are imperceptible to the human eye but remain detectable even when you zoom in very closely.

In their final experiment, the researchers tried to measure the recognition gap of deep neural networks by gradually zooming in images until the accuracy of the AI model started to degrade considerably.

Previous experiments show a large difference between the image recognition gap in humans and deep neural networks. But in their paper, the researchers point out that most previous tests on neural network recognition gaps are based on human-selected image patches. These patches favor the human vision system.

When they tested their deep learning models on machine-selected patches, the researchers obtained results that showed a similar gap in humans and AI.

These results highlight the importance of testing humans and machines on the exact same footing and of avoiding a human bias in the experiment design, the researchers write. All conditions, instructions and procedures should be as close as possible between humans and machines in order to ensure that all observed differences are due to inherently different decision strategies rather than differences in the testing procedure.

As our AI systems become more complex, we will have to develop more complex methods to test them. Previous work in the field shows that many of the popular benchmarks used to measure the accuracy of computer vision systems are misleading. The work by the German researchers is one of many efforts that attempt to measure artificial intelligence and better quantify the differences between AI and human intelligence. And they draw conclusions that can provide directions for future AI research.

The overarching challenge in comparison studies between humans and machines seems to be the strong internal human interpretation bias, the researchers write. Appropriate analysis tools and extensive cross checks such as variations in the network architecture, alignment of experimental procedures, generalization tests, adversarial examples and tests with constrained

networks help rationalizing the interpretation of findings and put this internal bias into perspective. All in all, care has to be taken to not impose our human systematic bias when comparing human and machine perception.

Link:
Computer vision: Why its hard to compare AI and human perception - TechTalks

Machine Learning in Medical Imaging Market Size, Global Future Trend, Segmentation, Business Growth, Top Key Players, Opportunities and Forecast to…

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