AI Isn’t Static. Why Are We Still Feeding It Yesterday’s Data?
Developers need large context windows for breadth, automatic caching for efficiency, and easy-to-use embedding pipelines for retrieval.
Jon Alexander is Senior Vice President of Product for the Cloud Technology Group at Akamai. He is responsible for the strategy, roadmap, and success of the cloud computing and delivery products. Alexander joined Akamai in 2017 and led various product teams inside Akamai, starting within the media division. Before joining Akamai, he worked in several roles focused on building large-scale internet infrastructure. Alexander spent 10 years running the media business at one of the world’s largest telecommunications carriers and has led product teams at start-ups as they defined, launched, and grew new solutions. He is passionate about fostering innovation and building customer-centric product teams. He holds a Master of Arts and a Master of Engineering from Cambridge University.
Developers need large context windows for breadth, automatic caching for efficiency, and easy-to-use embedding pipelines for retrieval.
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.