The Evolution, Misconceptions, and Reality of AutoML
AutoML makes AI more accessible by automating complex manual data science processes. But there are caveats to its use. Here are the top 5 myths and realities …
Ryohei Fujimaki, Ph.D., is the Founder and CEO of dotData, a leader in full-cycle data science automation and operationalization for the enterprise. Prior to founding dotData, he was the youngest research fellow ever in NEC Corporation’s 119-year history, the title was honored for only six individuals among 1000+ researchers. During his tenure at NEC, Ryohei was heavily involved in developing many cutting-edge data science solutions with NEC’s global business clients and was instrumental in the successful delivery of several high-profile analytical solutions that are now widely used in the industry. Ryohei received his Ph.D. degree from the University of Tokyo in the field of machine learning and artificial intelligence.
AutoML makes AI more accessible by automating complex manual data science processes. But there are caveats to its use. Here are the top 5 myths and realities …
Follow these best practices for data lake management to ensure your organization can make the most of your investment.
The need for automated data pipelines is clear. What role will data scientists play in bringing them about?
Developing an enterprise-ready application that is based on machine learning requires multiple types of developers.
Cloud optimization could offer the best method for reducing costs according to a new report.