Just Build It! Tips for Making ML Engineering and MLOps Real // Andy McMahon // MLOps Meetup #91
MLOps Community Meetup #91! Last Wednesday we talked to Andy McMahon, Machine Learning Engineering Lead of NatWest Group.
//Abstract
Data science and Machine Learning in an industrial setting are hard. The problems you have to solve are complex, the data landscape is challenging and you often don't have the freedom you would like to design experiments or create observational studies on real-world processes. This is before you even think about how to manage stakeholders, use cloud technologies, write software or wrap your solution up into a product that has to run predictions 24/7/365 and support business operations!
In this talk, we reflect on many of the learnings Andy has gained through the past few years working in successful data science and machine learning engineering teams building operational products that create millions of dollars of value.
In particular, Andy discusses how he thinks we can 'bootstrap' ML Engineering (MLEng) and MLOps practices in your organization.
// Bio
Andy is a machine learning engineer and data scientist with experience of working in, and leading, successful analytics and software teams. His expertise centers on building production-grade ML systems that can deliver value at scale.
Andy is currently an ML Engineering Lead at NatWest Group and was previously Analytics Team Lead at Aggreko. He has an undergraduate degree in theoretical physics from the University of Glasgow, as well as Masters and Ph.D. degrees in condensed matter physics from Imperial College London. In 2019, Andy was named Data Scientist of the Year at the International Data Science Awards. He currently co-hosts the AI Right podcast, discussing hot topics in AI with other members of the Scottish tech scene.
// Related links
Andy's YouTube Channel (new so no clean name yet! Many recordings of talks I've given are shown in here): https://www.youtube.com/channel/UCCGJ33qA72ckWfKGe8ruXag
Andy's book: https://www.amazon.co.uk/Machine-Learning-Engineering-Python-p
Watch on YouTube ↗
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