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Not to be outdone, the launch of a unified AI platform from Google is imminent. The question remains: Will SAS, IBM, and MathWorks be able to maintain their grip on the market? Or will they be overwhelmed by the cloud brigade? Amazon SageMaker is making a big play right now and is gaining major traction. Those earning high markets from Gartner include Dataiku, Databricks, Tibco, Alteryx, DataRobot, KNIME, RapidMiner, and H2O.ai. There are also a lot of others competing in a crowded market. The latter was late to the party and is now coming on strong. SAS Visual Data Mining and Machine Learning currently rules the roost, according to Gartner, with the two others not far behind.īut beware the incursion from the cloud giants Google, Microsoft, and Amazon.
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Gartner listed the usual suspects as its leaders in the Magic Quadrant such as long time BI pioneers SAS, IBM Watson, and MathWorks. That may work for some organizations and not others. Other tools aim to democratize AI and ML. A few can afford such personnel, but many can’t. Some platforms are focused on the data scientist and require highly trained personnel. Gartner noted that the market generated $4 billion in 2019 and is growing at 17% per year.
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If real value can be gained, push ahead with AI and ML investments. One example from many years ago: a new post office was loved by management and hated by front line workers as it actually slowed their ability to complete transactions.
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The analyst firm’s best advice on how to see beyond the glowing marketing promises is to tightly focus ML and AI into actual use cases that deliver tangible business value. Gartner reports heavier investment in AI during the COVID-19 pandemic. These platforms are already proving valuable to data scientists and analysts in sourcing data, constructing models, analyzing data, and spotting trends. In fact, it goes on to name the top 20 candidates, explaining their strengths and weaknesses. Gartner doesn’t dismiss AI and ML as being without wholly substance. In other words, they were taking advantage of the hype to get more eyes viewing their software.
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How about artificial intelligence (AI) and machine learning (ML)? Gartner believes they are over-hyped according to its recent Gartner Magic Quadrant for Data Science and Machine-Learning Platforms.Ĭase in point: a recent interview with a software vendor led to the confession that the “AI capabilities” spoken about in their brochures weren’t there yet. Sometimes the hype is justified, often it is not. In some cases, companies relabel their existing wares to align with the new term without making any actual change to the product. Something new appears on the horizon and the hype machine ramps up to warp speed as it drafts a new term into its sales and marketing patter.
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