Загрузка страницы

Clean Code for Data Scientists // Matt Sharp // MLOps Podcast # 160

MLOps Coffee Sessions #160 with Matt Sharp, Data Developer at Shopify, Clean Code for Data Scientists co-hosted by Abi Aryan. This episode is brought to you by Zilliz.

// Abstract
Let's delve into Shopify's real-time serving platform, Merlin, which enables features like recommender systems, inbox classification, and fraud detection. Matt shares his insights on clean coding and the new book he is writing about LLMs in production.

// Bio
Matt is a Chemical Engineer turned Data scientist turned Data Engineer.

Self-described "Recovering Data Scientist", Matt got tired of all the inefficiencies he faced as a Data Scientist and made the switch to Data Engineering. At Matt's last job, he ended up building the entire MLOps platform from scratch for a fintech startup called MX. Matt gives tips to data scientists on LinkedIn on how to level up their careers and has started to be known for my clean code tips in particular.

Matt recently just started a new job at Shopify.

// MLOps Jobs board
https://mlops.pallet.xyz/jobs

// MLOps Swag/Merch
https://mlops-community.myshopify.com/

// Related Links
https://zilliz.com/
https://www.shopify.com/
LLMs in Production Conference Part 2:
https://home.mlops.community/home/events/llm-in-prod-part-ii-2023-06-20

--------------- ✌️Connect With Us ✌️ -------------
Join our slack community: https://go.mlops.community/slack
Follow us on Twitter: @mlopscommunity
Sign up for the next meetup: https://go.mlops.community/register
Catch all episodes, blogs, newsletters, and more: https://mlops.community/

Connect with Demetrios on LinkedIn: https://www.linkedin.com/in/dpbrinkm/
Connect with Abi on LinkedIn: https://www.linkedin.com/in/goabiaryan/
Connect with Matt on LinkedIn: https://www.linkedin.com/in/matthewsharp/

Timestamps:
[00:00] Matt's preferred drink
[00:54] Takeaways
[03:04] Watch out for Matt's LLMs in Production book coming up!
[03:29] Please like, share, subscribe, and join the upcoming LLMs in Production Conference Part 2!
[05:07] Raising awareness about the fundamental problems of writing clean code
[07:57] Definition of clean code
[09:46] Communicable clean code
[13:52] Getting out of Jupyter notebooks at the end of their life
[17:21] Exploratory data analysis
[21:22] Most popular post on LinkedIn
[26:41] Zilliz Ad
[27:44] Best practices on production-level software engineering
[29:41] Merlin
[33:51] Upcoming Shopify projects
[39:10] Matt's upcoming LLMs in Production book
[45:06] LLMs in Production book Early Access
[46:00] Wrap up

Видео Clean Code for Data Scientists // Matt Sharp // MLOps Podcast # 160 канала MLOps.community
Показать
Комментарии отсутствуют
Введите заголовок:

Введите адрес ссылки:

Введите адрес видео с YouTube:

Зарегистрируйтесь или войдите с
Информация о видео
7 июня 2023 г. 20:01:41
00:46:13
Другие видео канала
DevOps, Security, and Observability in ML // Luke Marsden // MLOps  Meetup #106DevOps, Security, and Observability in ML // Luke Marsden // MLOps Meetup #106Durable Data Discovery: Making Exploratory Analysis Stick // James Campbell //  MLOps Meetup #86Durable Data Discovery: Making Exploratory Analysis Stick // James Campbell // MLOps Meetup #86Balancing Productivity & Prevention of Harmful Content Generation // Nils Reimers //Podcast 158 clipBalancing Productivity & Prevention of Harmful Content Generation // Nils Reimers //Podcast 158 clipScaling Real-time Machine Learning at Chime // Peeyush Agarwal // Lightning Sessions #1Scaling Real-time Machine Learning at Chime // Peeyush Agarwal // Lightning Sessions #1Leveraging Models Without Extensive Technical Know-How // Tuhin Srivastava //MLOps Podcast #161 clipLeveraging Models Without Extensive Technical Know-How // Tuhin Srivastava //MLOps Podcast #161 clipThe Adaptation Gap: Bridging the Gap between Generalist and Specialized ModelsThe Adaptation Gap: Bridging the Gap between Generalist and Specialized ModelsThe Importance of Domain Experts in Creating Stress TestsThe Importance of Domain Experts in Creating Stress TestsMLOps at Volvo Cars // Leonard  Aukea // MLOps Meetup #84MLOps at Volvo Cars // Leonard Aukea // MLOps Meetup #84#mlops #machinelearning #ai #llm#mlops #machinelearning #ai #llmMultilingual Programming and a Project Structure to Enable It // Rodolfo Núñez // MLOps Podcast #153Multilingual Programming and a Project Structure to Enable It // Rodolfo Núñez // MLOps Podcast #153Optimizing ML Capabilities for Business Success // Jason McCampbell // MLOps Podcast #149 clipOptimizing ML Capabilities for Business Success // Jason McCampbell // MLOps Podcast #149 clipHow mlctl Helps Intuit's Workflow // Srivathsan Canchi // Coffee Sessions # 50 short clipHow mlctl Helps Intuit's Workflow // Srivathsan Canchi // Coffee Sessions # 50 short clipBuilding ML/Data Platform on Top of Kubernetes // Julien Bisconti // MLOps Coffee Sessions #86Building ML/Data Platform on Top of Kubernetes // Julien Bisconti // MLOps Coffee Sessions #86Model Watching: Keeping Your Project in Production // Ben Wilson // MLOps Meetup #58Model Watching: Keeping Your Project in Production // Ben Wilson // MLOps Meetup #58Modern ML Stack is a LieModern ML Stack is a Lie#mlops #machinelearning #Union #Flyte#mlops #machinelearning #Union #FlyteDemocratizing AI // Yujian Tang // MLOps Podcast #163Democratizing AI // Yujian Tang // MLOps Podcast #163ML in Production: A DS from Ubisoft Perspective // Jean-Michel Daignan // MLOps Podcast #151ML in Production: A DS from Ubisoft Perspective // Jean-Michel Daignan // MLOps Podcast #151Machine Learning Operations — What is it and Why Do We Need It? // Niklas Kühl // MLOps Podcast #137Machine Learning Operations — What is it and Why Do We Need It? // Niklas Kühl // MLOps Podcast #137Model Monitoring: The Million Dollar Problem // Loka Team // MLOps Meetup #87Model Monitoring: The Million Dollar Problem // Loka Team // MLOps Meetup #87
Яндекс.Метрика