A 10 step guide to Machine Learning success



    Machine learning (ML) has the power to take an organization’s digital transformation to dizzying new heights. While this is a well known fact amongst business leaders in the enterprise, full scale ML implementation is often perceived as unattainable. This, however, could not be further from the truth. For those that are open to new ways of thinking, the endless possibilities created by even minor ML deployments – such as decreased costs and helping teams to work more efficiently – are up for grabs. And many business leaders are seizing the opportunity to integrate it into their current IT infrastructure. In fact, according to Forbes research, the global ML market was valued at $1.58B in 2017 and is expected to reach $20.83B in 2024.

    About the author

    Santiago Giraldo, Director of Product Marketing at Cloudera.

    To reap the benefits of ML, businesses must embrace a fresh approach to their data journey. At the same time, enterprises have to acknowledge one of the most common stumbling blocks they will face when it comes to ML is that implementation is not always straightforward. Often, issues arise when teams try to bridge the gap from simply trying ML to mastering full-scale ML production. While properly adopting ML requires a long-term commitment across your organization – and can frankly feel quite daunting – every organization can set themselves up for success with these ten easy-to-follow steps.

    Adopting a holistic approach



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