Pathway to Multi-Cloud Security Architecture

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Digitization of business has changed the way IT supports the needs of the organization. As a result, IT infrastructures have changed, moving more and more toward virtual, cloud and multi-cloud. Workloads with different performance, cost, and capability needs will benefit from being deployed on different types of cloud infrastructures.

Spotlight

Genesis Networks Enterprises

Genesis Networks delivers integrated technology solutions to the large enterprise and communications service provider markets. Over the last thirteen years, Genesis has grown steadily thanks to one thing: customer loyalty. Throughout those years, we have added new services, technologies, and personnel in support of the changing demands of our clients. Genesis is more than a technology services provider; we are a technology solutions partner.

OTHER ARTICLES

How Governments Have Used AI to Fight COVID-19

Article | March 29, 2020

Governments all around the globe are using artificial intelligence (AI) to help fight against the ongoing COVID-19 pandemic. The technology is being used for various different things, including speeding up the development of testing kits and treatments, giving citizens access to real-time data, and tracking the spread of the virus. South Korea’s government, one that is being touted as an example for how to combat the virus, pushed their private sector to start developing testing kits right away, immediately after the reports began to arrive out of China. One of those companies was Seoul-based molecular biotech company Seegene, which used AI to help quicken the process of developing testing kits. The company was able to submit its solution to the Korea Centers for Disease Control and Prevention (KCDC) just three weeks after the scientists began their work. According to Chun Jong-Yoon, founder and chief executive of the company, the process would have taken at least two to three months without the use of AI.

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AI TECH

Artificial Intelligence in a post-covid world: 2021 and beyond

Article | March 29, 2020

COVID-19 has impacted every aspect of our lives including the way we do business. In fact, according to a recent survey by McKinsey, COVID has accelerated companies’ digital transformation journeys. In a post-COVID world, there will be an even-greater acceleration of AI adoption by enterprises. AI business applications will be centered around automating tasks, forecasting supply disruptions, and enhancing customer behavioral analytics. There will be a rise in industry and sector specific AI applications where business domain knowledge and business content data are the main differentiators. However, increases in AI adoption rates do not necessarily translate into higher success rates. To avoid failure, business executives need to develop robust AI strategies and metrics, enhance data quality, and focus on AI integration and governance. Key trends and applications for 2021 and beyond are as follows: AI and Healthcare Artificial intelligence played a crucial role in the detection of COVID-19. Indeed, we have seen the emergence of the use of AI at hospitals to evaluate chest CT scans. With the use of deep learning and image recognition, COVID patients could be diagnosed thus enabling the medical team to follow the necessary protocols. Another important application was the triage of COVID-19. Once a patient has been diagnosed with COVID, AI has been used to predict the likely severity of the illness so the medical staff can prioritize resources and treatments. In a post-COVID world, we will see increased use of AI in detection of illnesses, triage of patients, and drug discovery. According to a recent market research reported by PRnewswire, the market size for global healthcare IT is expected to reach $270 billion by 2020. The increase will be driven by COVID-19, government policies, and the use of technologies such as artificial intelligence and big data. AI and Supply Chains Coronavirus has highlighted the need to re-think traditional supply chain models. There will be an increase in the use of technology such as artificial intelligence, Internet of Things, and 5G to make supply chains more efficient. Artificial intelligence applications will focus on improving end to end visibility, analyzing data to detect anomalies, and forecasting supply and demand outlooks thus making supply chains more resilient. AI and Retail The pandemic has changed what and how consumers buy, with retailers forced to grow their online presence. E-commerce has been put at the forefront: in the first six months of 2020 consumer spending with US retailers increased by about a third compared for the same period in 2019 according to Digitalcommerce360. According to new market research reported by PRnewswire, AI in retail will be worth about $20 billion by 2027. When it comes to retail and ecommerce, we can find AI applications in several areas including customers analytics for product recommendations, targeted marketing, and price optimizations. For the latter, AI is applied to analyze patterns and data on customer profiles, their purchase power, product specification, timing of purchase, and what the competition is offering. The outcome of the analysis will set the pricing strategy. Several companies use AI to set their pricing strategy on a frequent basis, for example Amazon’s average product’s cost changes about every 10 minutes according to Business Insider source. AI and Intelligent autonomous agents COVID has highlighted the need to deploy intelligent autonomous agents that cannot catch diseases to fight against the pandemic. We have seen both robots used at hospitals to diagnose COVID-19 patients and drones deployed to monitor if the public is adhering to social distancing rules. An ABI research showed that mobile robotics applications market size will increase to $23 billion by 2021. This increase is mainly due to applications that disinfect, monitor, and deliver materials. The integration of AI with drone technology and robotics will create new application opportunities and will make them mainstreamed across several sectors. AI and Education Education is another sector that was badly hit by COVID. According to Unicef more than 1 billion children are at risk of falling behind due to school closures. The pandemic has highlighted the need for educators to adopt digital solutions to minimize learning vulnerabilities across the globe. AI application in education will mainly focus on personalized learning where the technology is used to design and tailor training materials that matches the student’s ability and learning preferences. Other applications include the deployment of voice assistants to interact with educational material and the use of AI to support teachers in administrative tasks. AI and Digital Twins The pandemic has accelerated the adoption of digital twin technology. Digital twins are replicas of physical assets such as cities, offices, and factories. This technology became crucial in testing pandemic scenarios and emergency plans. Digital twins technology is expected to reach a global spend level of about $13 billion by 2023 fueled by AI and machine learning according to Juniper Research. When integrated with artificial intelligence and IoT, digital twin technology becomes very powerful when trying to test scenarios and predict bottlenecks, breakdowns, and productivity. AI and Ethics Over the last year, we had several prominent examples of AI ethics issues. The first example relates to facial recognition: after several calls against mass surveillance, racial profiling and bias, and in light of Black Lives Matter movement starting in the United States, several tech companies such as Microsoft banned the police from using its facial recognition technology. The second example relates to the use of an algorithm to predict exam results during COVID-19 period: after accusations and protests that the controversial algorithm was biased against students from poorer backgrounds, the United Kingdom government was forced to ditch the algorithm. In the absence of regulations and tightened frameworks, ethics will continue to be the main concerns surrounding the use of artificial intelligence.

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What Is the Difference Between a Web Designer and Web Developer?

Article | March 29, 2020

There is often confusion around Web Developers and Web Designers, as people consider them to be performing the same set of duties which includes designing a website – when, in fact, that is indeed what both of them do – however, on an entirely different spectrum. So the terms ‘web designers’ and ‘web developers’ are not interchangeable. How? Let’s see the major differences in detail. Before we dive into their expertise and which part of the website building process they are in charge of, know that it is possible to be both. Since all it takes is to have the necessary skills related to both professions.

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Basics of Artificial Intelligence and Machine Learning

Article | March 29, 2020

Lately, we all often come across two very hot buzzwords — Artificial Intelligence (AI) and Machine Learning (ML). Perhaps the impact of artificial intelligence and machine learning on today’s business world is more than our daily lives. According to a Bloomberg report, around $300 million were invested in 2014 to promote AI-powered startups. It was 300% more than the previous year’s investment in venture capital. It’s hard to deny the fact that artificial intelligence and machine learning are all around us. Whether it is about protecting confidential information at work or just playing your favourite games on PS5, AI and ML are there. Researchers, scientists, computer engineers, and analysts are working hard together to pass on human-like intelligence in machines so that they can think and act according to real-life scenarios. Businesses have changed their approach to AI keeping enterprise adoption in mind rather than treating it as just a research topic. Tech giants such as Google, Facebook, Microsoft have already invested billions in Artificial Intelligence and Machine Learning and already have started to reshape the customer experience. But the AI and ML incorporation we see today is just the tip of an iceberg. In the coming years, you will see them take over products and services one after another. What Is Artificial Intelligence and Machine Learning? It is nowadays common to see several companies marketing themselves as AI-powered startups even though their operations don’t really revolve around AI. To understand this type of gimmicky marketing, it is essential to first understand what Artificial Intelligence and Machine Learning are. Let’s be clear in the beginning about one fact — AI and ML are not the same things. If you think they are, kill this perception before it makes things very confusing. Both these terms crop up especially when the discussion is about the use of Artificial Intelligence in marketing, the use of Machine Learning in marketing, analytics, Big Data, and the modern-day tech that is transforming the world. To ease down the learning, here’s the best answer: Artificial Intelligence is a science used to develop systems that can mimic decision-making and behaviour like humans. In simple words, the main application of Artificial Intelligence is to make intelligent machines. Machine Learning is the subset of artificial intelligence that uses data to perform tasks. It involves designing and applying the data models or algorithms that can learn from their past experiences. There’s a subset of Machine Learning, too — Deep Learning. It counts on multilayered neural networks to perform tasks. Early Days of Artificial Intelligence The early mentions of AI trace back to Greek mythologies that have stories of a mechanical man that could mimic our own behaviour. Plus, the early computers were termed as “logical machines'' in Europe. These machines could solve arithmetic operations and even store memory. Scientists, fundamentally, were inspired by them to create mechanical brains. Over time, technology got more and more modern. And, our understanding of how the human mind works improved. Both these factors lead to the current AI revolution. Today, the use of AI is more focused on mimicking the decision-making process of humans rather than performing complex calculations. The prime motive of this is to allow machines to think and act more like humans. AI-powered machines that are designed to act intelligently come into two basic groups — General AI and Applied AI. General AIs are relatively less common and can theoretically handle any task. The most exciting improvements in the field of AI are happening in this specific area. In fact, it’s generalized AI that led to the rise of Machine Learning. On the other hand, applied AIs are designed to perform relatively smaller tasks like smartly trading shares and stocks, or guiding an autonomous vehicle to its destination, etc. The Rise of Machine Learning As mentioned earlier, Machine Learning is a subset of AI and can also be treated as the current state-of-the-art. It came into reality primarily because of the two major breakthroughs — the rise of the internet and human realization. In 1959, an American pioneer in the field of computer gaming and AI, Arthur Samual, realized that it can be possible to teach machines how to learn to perform tasks themselves rather than us telling them how to. As long as the emergence of the internet is concerned, that helped scientists with tons of digital information that could be analysed for the betterment of AI and eventually, ML. After these innovations, it was more efficient for scientists and engineers to program machines in a way that they learn to think like humans and then connect them to the internet so that they have all the needed information. Vertical AI And Horizontal AI No matter what kind of AI research it is, knowledge engineering is its essential part. Machines need plenty of information to think and act like humans. Therefore, AI needs access to objects, categories, properties, and relations between them to apply knowledge engineering. AI is responsible for generating analytical reasoning power, problem-solving abilities, and common sense in machines. And, it is not an easy task! The way AI serves us can be divided into two parts — Vertical AI and Horizontal AI. Vertical AI is used to perform single jobs such as automating repetitive tasks, scheduling meetings, etc. Vertical AI bots are so accurate in performing a single job that people often mistake them for human beings. Horizontal AI, on the other hand, can handle more than one task at the same time. The best examples of horizontal AI are Alexa, Siri, and Cortana. Different Types of Machine Learning ML can be best used to fix complex tasks such as enabling self-driving cars, face recognition, credit card fraud detection, etc. It uses huge, complex algorithms that keep on iterating frequently over big data sets. The following are the 3 major Machine Learning areas: ● Reinforcement Learning ● Unsupervised Learning ● Supervised Learning Reinforcement Learning In reinforcement machine learning, algorithms allow machines and software agents to automate ideal behaviour within a particular context to improve the performance of an overall system. It is characterised by learning problems rather than learning methods. If any method can solve a problem, it can be a reinforcement learning method. This Machine Learning technique assumes that the dynamic environment is connected to a software agent such as a computer program, bot, or robot. Ultimately, it chooses a specific action in order to rapidly deliver the most efficient result. Unsupervised Learning Due to the involvement of unclustered data, unsupervised machine learning is more complex than others. With it, the machine has to learn independently without any supervision. No fixed or correct solution is provided for any problem in this technique. The algorithm has to identify the data patterns and find the solution. The recommendation engines we see on several eCommerce websites and Facebook friend requests suggestions are the best examples of this sort of Machine Learning. Supervised Learning Training datasets are used in supervised learning. The algorithms are created in such a way that they can analyse the data patterns and develop an inferred function. The produced correct solution is then used to map new examples. The best example of supervised machine learning is credit card fraud detection. Final Words Artificial Intelligence and Machine Learning never fall short to surprise us with their exciting innovations. Their impact has reached all the industries including eCommerce, customer service, finance, education, healthcare, pharma, infrastructure security, and whatnot. Needless to say, all these industries are very keen on reaping all the benefits of Artificial Intelligence and Machine Learning. The human-like AI was an inevitable thing as most technologists thought. Today, we are indeed closer to this goal than ever. This exciting journey in the past couple of years is the result of how we predict AL and ML works. FAQs Why is AI Marketing important? With AI marketing, businesses and marketers can analyse and consolidate a large amount of data from emails, social media, and other platforms faster. The achieved insights can be used to improve campaign performance and eventually boost the returns on investment in a relatively lesser time. AI marketing is the best and the most efficient way to eliminate the risks of human errors while optimizing and streamlining the campaigns more effectively. The following benefits of AI marketing justify the attention it has received all over the world. ● A better understanding of your consumers ● Optimization of digital advertising campaigns ● Offer comprehensive customer profiles ● Allow real-time interactions with consumers ● Refined content delivery ● Reduced marketing costs ● Improved ROI Is artificial intelligence and machine learning the same? The straight answer to this question is NO. They are not the same thing. AI allows machines to learn human behaviour while ML is the subset of AI that teaches machines to learn on their own with the help of past data. Does AI need machine learning? Fundamentally, ML is not required for AI as AI systems do not need to be pre-programmed. Instead of such software agents, they get help from algorithms that can use their own intelligence to solve queries. These can be Machine Learning algorithms such as Deep Learning neural networks and Reinforcement Learning algorithms. { "@context": "https://schema.org", "@type": "FAQPage", "mainEntity": [{ "@type": "Question", "name": "Why is AI Marketing important?", "acceptedAnswer": { "@type": "Answer", "text": "With AI marketing , businesses and marketers can analyse and consolidate a large amount of data from emails, social media, and other platforms faster. The achieved insights can be used to improve campaign performance and eventually boost the returns on investment in a relatively lesser time. AI marketing is the best and the most efficient way to eliminate the risks of human errors while optimizing and streamlining the campaigns more effectively. The following benefits of AI marketing justify the attention it has received all over the world. A better understanding of your consumers Optimization of digital advertising campaigns Offer comprehensive customer profiles Allow real-time interactions with consumers Refined content delivery Reduced marketing costs Improved ROI" } },{ "@type": "Question", "name": "Is artificial intelligence and machine learning the same?", "acceptedAnswer": { "@type": "Answer", "text": "The straight answer to this question is NO. They are not the same thing. AI allows machines to learn human behaviour while ML is the subset of AI that teaches machines to learn on their own with the help of past data." } },{ "@type": "Question", "name": "Does AI need machine learning?", "acceptedAnswer": { "@type": "Answer", "text": "Fundamentally, ML is not required for AI as AI systems do not need to be pre-programmed. Instead of such software agents, they get help from algorithms that can use their own intelligence to solve queries. These can be Machine Learning algorithms such as Deep Learning neural networks and Reinforcement Learning algorithms." } }] }

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Spotlight

Genesis Networks Enterprises

Genesis Networks delivers integrated technology solutions to the large enterprise and communications service provider markets. Over the last thirteen years, Genesis has grown steadily thanks to one thing: customer loyalty. Throughout those years, we have added new services, technologies, and personnel in support of the changing demands of our clients. Genesis is more than a technology services provider; we are a technology solutions partner.

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