Why is it so hard to correctly estimate AI projects?
Why can't you estimate an AI project correctly and can you do anything about it?
Published on: 17 Feb 2025
Hi, I'm Bartosz β Data-Intensive AI Specialist. I love helping companies build AI-based Big Data applications and analytics pipelines.
I worked with Bartosz while he was a member of Data Engineering team at Fandom. He is very professional and open to share his knowledge with his teammates and beyond. His approach was always very data-driven and he has great knowledge in Data Engineering area what made him very valuable partner in discussions.
I had the pleasure to work with Bartosz at Fandom, shaping the Data Engineering department. Bartosz is an absolute worth recommendation as Senior Data Engineer, he has shown his engagement, diligence, and customer-centric approach in any activity he was performing. He was always willing to help customers, teammates with extreme patience and a result-oriented attitude. Additionally, he was always able to find a time to learn, and mentor others by writing multiple branch-specific articles.
It was my pleasure to work with Bartosz. Bartosz is a dedicated and experienced Data Engineer who showed a range of skills and readiness to help. I appreciated that I could count on Bartosz to lead sophisticated technical projects. Highly recommend!
Awesome @scala_lang talk π€© You included so many simple and yet effective ideas/mind hacks to repair the sometimes cumbersome habits of software engineers ππ Thanks for all the provided inspiration
MANY thanks to @mikulskibartosz for YOUR excellent talk abt #DDD with #Scala @jugthde πππ So many great thoughts and laugths π If you can manage to hear @mikulskibartosz, do it πββοΈ You wonβt regret it!
Everything was conducted excellently. A broad scope of knowledge but presented gradually, so it was clear what resulted from what.
Why can't you estimate an AI project correctly and can you do anything about it?
Published on: 17 Feb 2025
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