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Artificial Intelligence (AI) makes it likely for machines to learn from experience, adapt to new inputs, and perform human-like tasks. Most examples of AI you hear today – from computers playing chess to self-driving cars – are based on profound learning and natural language processing. Using these technologies, computers can be proficient in performing specific tasks by processing large amounts of data and recognising patterns in the data.
Types of Artificial Intelligence—weak AI and strong AI
Weak AI, also known as Narrow AI or Artificial Narrow Intelligence (ANI), is a type of artificial Intelligence trained to perform specific tasks. Weak AI is driving much of the AI around us right now. We can more accurately describe this AI as ‘narrow’ since it is far from fragile; this artificial Intelligence enables highly robust applications such as Apple’s Siri, Amazon’s Alexa, IBM Watson and autonomous vehicles.
Strong AI consists of Artificial General Intelligence (AGI) and Super Intelligence (ASI). Artificial General Intelligence (AGI) or general artificial Intelligence is a theoretical form of artificial intelligence in which a machine has equal Intelligence with humans; it has a self-aware consciousness that solves problems, learns and makes plans. Artificial Super Intelligence (ASI) – also known as super Intelligence – is a type of Intelligence that transcends the Intelligence and limits of the human brain. At the same time, strong AI is still in the theory stage today, devoid of practical examples. That doesn’t mean AI researchers haven’t tried to develop it. Meanwhile, the best examples of artificial superintelligence can originate in science fiction, like HAL, the superhuman, maverick computer assistant in 2001: A Space Odyssey.
Why is Artificial Intelligence Important?
AI automates repetitive learning and data exploration
But artificial Intelligence is dissimilar from hardware-driven robotic automation. In its place of automating manual tasks, AI performs routine, high-volume, computerised duties reliably and effortlessly. This type of automation still requires human resources to set up the system and ask the right questions.
AI adds intelligence to existing products
AI will not vend as an individual application. Instead, the products you already use will improve AI capabilities, such as adding Siri as a feature to next-gen Apple products.
AI allows data to program through advanced learning algorithms
Artificial Intelligence seeks structure and regularity in data, so the algorithm acquires a skill: classification or prediction. So, just as the process can teach itself how to play chess. It can also lead itself which product to recommend to that person on the next visit. And when it comes to new data, models adapt.
AI analyzes more and deeper data using neural networks with many hidden layers
Building a scam detection system with five hidden layers was nearly impossible a few years ago. All of this is an incredible amount of computing power and big data. Because they learn directly from data, you need a lot of data to train deep learning models. The more data you feed them, the additional accurate they will be.
AI works with an accuracy that was previously impossible, thanks to deep neural networks
For example, your interactions with Alexa, Google Searches, and Google Photos are all created on deep learning – and they keep receiving more accuracy as we use them. In the medical field, artificial intelligence techniques such as deep learning, image classification and object recognition can now use to find cancer in MRIs with the same accuracy as highly trained radiologists.
AI makes the most of data
As algorithms learn by themselves, data itself can become intellectual property. The answer is in the data; You only have to uncover it using artificial Intelligence. Because the role of data is more critical than ever, it can create a competitive advantage. In a competitive industry, the best information always wins when you have the best data, even if everyone uses similar techniques.
Artificial Intelligence and IBM Cloud
IBM has been a leader in expanding AI-based technologies for organizations and has pioneered the future of machine learning systems in many industries. Based on years of AI research and experience working with organizations of all sizes. Knowledge from over 30,000 IBM Watson projects, IBM has developed the AI Ladder approach for successful AI deployments:
- Collection: Simplifying data collection and accessibility.
- Organizing: Establishing a ready-made analytical foundation for business.
- I am analyzing: Creating scalable and reliable AI-based systems.
- Integrate: Integrating and optimizing systems throughout a business framework.
- Modernize: Moving your AI applications and systems to the cloud.
IBM Watson provides organizations with AI tools to transform business systems and workflows while dramatically improving automation and efficiency. Explore IBM’s portfolio of managed services and solutions to learn more about how IBM can help you complete your AI journey.
Artificial Intelligence has been an integral part of SAS software for years. Today, we help our customers in every industry benefit from advances in AI; We will continue to embed AI technologies. Such as machine learning and deep learning into solutions in the SAS portfolio.
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