There is a lot of hype around AI nowadays. Apart from the big players like Google, Facebook and Apple, AI remains complicated for most companies. This is true because the challenges in using AI lie not only in understanding the algorithms. It is also about the software engineering challenges of rapidly processing massive amounts of data, running training jobs on specialized hardware, orchestrating parallel jobs, visualizing data and output from models and much more. But on an even bigger picture, it also requires a different organisational mindset and workflow when moving the problem statement to the data. This presentation will go into some of these challenges, outline how we have approached them at Peltarion.
You may also like
9 Takeaways from the Ninth Edition of Data Innovation Summit!
And yet another wrap of a fantastic edition of the biggest data, analytics, and AI event in the Nordics – Data Innovation Summit! With both in-person and online, this event transcended traditional event limits!
Operational Data Science: Ensuring ML Models Can Deliver Real-world Impact – Interview with Dr. Indy Leclercq, Manager Data Science at Talabat
In this Hyperight Data Talks interview, we had the opportunity to speak with Dr. Indy Leclercq, Manager Data Science at Talabat! In our discussion, we talk about operational data science, ensuring ML models drive impact...
Recap: Day 2 at Data Innovation Summit 2024
Yet another day filled with amazing moments came to an end! Day two at the Data Innovation Summit marked the conclusion of an unforgettable event! Just like the exciting kickoff yesterday, today was packed with even...
Add comment