Resume driven development in Machine learning & software engineering

MLOps.community · Beginner ·📐 ML Fundamentals ·6y ago

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Discusses the concept of resume driven development in machine learning and software engineering

Full Transcript

yeah Irishman during the development yeah of course so this is one of the concept that I think I've heard that in 2012 and some for some guy up Microsoft it's that when some developers don't think about that texture or the best solution for the company itself or the best solution for application self but he thinks in the solution that can earn a plus lining in there in there in that resume so let me put some example of this so some part of the past I used to I used to work with this part so to do on some machine learning spark and basically one of the developers those Disgaea are very very good in Scala so and but the problem is that the rest of the team used to work only Python so it means that we had for example all this guys should adapt himself onto Python or all older all the other guys should learn Python for example and the consequence of that it's that this guy made the whole a data processing pipeline in Scala and just delivering the mash data for a data scientist and basically this guy earned for example okay yeah this guy just put in his resume or in his Lincoln is something oh yeah I used to do tons of the engineer in Scala but for their sake that every time that some of those data scientists or order data engineers that doesn't know Escala needs to make some kind of maintenance in the code base for example the whole maintenance took for example days are pretty more than two or three spoons of 15 days for example or most of the time the code itself was not was not manageable at all another case for example was when when one guy that I used to work the bass for example none I used to work with it directly but it's some kind of site similar stuff like this that this guy who'd like to learn about elector you know like Alex mixer so it's a very nice language and basically this I put inside of the pipeline some ATL to that use elixir that reads spreadsheets from the Excel and puts that inside of the inside of database so it's not it's not a bad thing but if you want to learn something so take that for you or at least share this risk with your company and put the or or are all all the aspects involving that or don't do that because otherwise for example when someone leaves the company the code base can be can be can be couple of manageable at all so this is one of the examples of resume driven development

Original Description

What is resume driven development and why can it be a problem? In our 5th meetup, we spoke with the Brasilian ML Engineer Flavio Clesio. In this video he talks to us about his feelings about resume driven development. This is taken from a longer conversation that can be found here: https://youtu.be/9g4deV1uNZo Machine Learning Systems play a huge role in several businesses from the Banking industry to recommender systems in entertainment applications until health domains. The era of "A Data Scientist with a Script in a single machine" is officially over in high stakes ML. We're entering an era of Machine Learning Operations (MLOps) where those critical applications that impact society and businesses need to be aware of aspects like active failures and latent conditions. This talk will discuss risk assessment in ML Systems from the perspective of reliability, safety and especially causal aspects that can lead to the rise of silent risks in said systems. Slides to the talk can be found here: https://docs.google.com/presentation/d/1gP0A_EXLYafeYAak_vM8lA2nwT7EBaNv3QAWkzBC004/edit?usp=sharing Bio: Flavio Clesio is Machine Learning Engineer (NLP, CV, Marketplace RecSys) and at the moment works at MyHammer AG, where he helps build Core Machine Learning applications to exploit revenue opportunities and automation in decision making. Prior to MyHammer, Flavio was a Data Intelligence lead in the mobile industry, and business intelligence analyst in financial markets, specifically in Non-Performing Loans. He holds a master’s degree in computational intelligence applied in financial markets (exotic credit derivatives). This was a virtual fireside chat between Flavio Clesio, Demetrios Brinkmann and the MLOps community. Relevant links can be found below. Join our MLOps slack community: https://bit.ly/3aOTwgR and register for the next meetup here. Connect with Demetrios on LinkedIn: https://www.linkedin.com/in/dpbrinkm/ Connect with FLavio Clesio on Linkedin: https://ww
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