Getting machine learning models into product faster and more cost efficiently | Diego Oppenheimer, Algorithmia

The rate at which technology is advancing is incredible.  From all of the use cases we’ve explored in this podcast alone, we’ve seen some mind-boggling uses of AI.  As innovators, we’re always trying to push the boundaries of what’s possible – in this case via AI – but we also need resources to support rapid innovation when we get ahead of our skis.  DevOps is a field that is enabling more safe and efficient deployment of software.  Similarly, MLOps is exploding on the seen to enable ML teams to get models into production faster and more securely.   In this episode, I sit with Diego Oppenheimer, Co-Founder and CEO of Algorithmia.  We discuss topics such as Diego’s experience building legendary products at Microsoft, optimizing the deployment of ML models, who is actually leveraging AI at scale, leveraging a freemium strategy to build champions, the importance of customer feedback, and much much more.   If your company is looking to scale it’s AI initiatives, head over to Tesoro AI (www.tesoroai.com) – experts in AI strategy, staff augmentation, and AI product development.     Timestamps: 2:15  Moving finance as a career starter to business intelligence Microsoft 3:00  How a career in business intelligence tooling led to expertise in predictive analytics and ML 6:13  Developing a passion for using data to provide insights to clients that had gone unnoticed 8:44  The origin of Algorithmia | “No tools existed to optimize deployment of ML models” 10:53  What matters to DevOps?  What is MLOps and why is it important? 12:42  Where Algorithmia sits within the ML Pipeline 14:00  How IT orgs and Data Scientists/ML engineers interact with the platform 15:23  KPIs and ROI metrics used when communicating value to clients (see algorithmia.com/resources) 18:45  Who is actually putting AI/ML into production? 20:25  Figuring out who the initial customer would be and what pains they’d experience 23:56  Creating a freemium model to entice data scientists | Building champions in an organization 26:15  Determining the first key hires as a startup 27:35  Establishing a process for getting early customer feedback 31:00 Favorite tech tool: Microsoft Excel 32:22  Why Diego has been inspired by Tableau and their approach to the data space 34:00 team.algorithmia.com – Try the product for free

Om Podcasten

Exploring practical applications of artificial intelligence in business. We learn from leading AI startups and executives how AI is reinventing the way we run businesses and our society.