Isaac Sacolick, President of StarCIO, a digital transformation learning company, guides leaders on adopting the practices needed to lead transformational change in their organizations. He is the author of Digital Trailblazer and the Amazon bestseller Driving Digital and speaks about agile planning, devops, data science, product management, and other digital transformation best practices. Sacolick is a recognized top social CIO, a digital transformation influencer, and has over 900 articles published at InfoWorld, CIO.com, his blog Social, Agile, and Transformation, and other sites.
The opinions expressed in this blog are those of Isaac Sacolick and do not necessarily represent those of IDG Communications, Inc., its parent, subsidiary or affiliated companies.
Architecture review boards have gone out of favor in the age of agile and devops, but what's really needed is a more collaborative approach.
GenAI is undoubtedly changing how data scientists and analysts work, including tools, processes, and deliverables. Here’s what data scientists can do now to prepare.
As more organizations embrace AI, it is vital to document the policies and procedures that govern its use. Here are seven questions that define effective AI governance.
More companies are leveraging data fabrics to solve complex data management challenges. Here's what business and IT leaders need to know.
Data pipelines are essential for connecting data across systems and platforms. Here's a deep dive into how data pipelines are implemented, what they're used for, and how they're evolving with genAI.
Product management has similar objectives for any kind of software rollout, but some responsibilities are specific to analytics and data products. Here are five ways a great product manager improves the results of data science initiatives.
Which low-code, no-code, or process automation platform is right for your organization? It depends on how well the platform meets your business objectives. Here are seven questions to help you narrow the field.
Data analytics and machine learning can deliver real business value, but too many projects miss their mark. Here are seven mistakes to watch out for, and what to do instead.