Linda Mohamed
Leverage Cloud Computing Benefits with Serverless Multi-Cloud ML
#1about 10 minutes
Defining AI, machine learning, and data science
Key concepts like computer science, data science, artificial intelligence, and machine learning are defined and differentiated.
#2about 3 minutes
Understanding the machine learning development lifecycle
The typical machine learning cycle involves fetching data, cleaning it, training a model, evaluating performance, and deploying to production.
#3about 3 minutes
Defining the problem of juggling pattern detection
Initial research reveals existing models are inadequate, leading to the decision to use computer vision and object detection for the problem.
#4about 3 minutes
Manually labeling data with Azure Custom Vision
The initial pre-processing step involves manually labeling juggling objects in images using Azure Custom Vision, a time-consuming and unscalable process.
#5about 3 minutes
Why data cleaning is critical for model performance
Using raw, user-generated content without cleaning leads to poor model performance, highlighting the necessity of filtering data before training.
#6about 4 minutes
Automating the data pipeline with multi-cloud services
A multi-cloud pipeline using AWS, Azure, and Google Cloud services automates data collection, cleaning, and preparation for model training.
#7about 3 minutes
Training, evaluating, and debugging the ML model
The model is trained and evaluated using both Azure and Google Cloud platforms, revealing some humorous misclassifications along the way.
#8about 2 minutes
Deploying the machine learning model with Docker
The trained model is exported as a Docker container, enabling easy and consistent deployment across local environments and multiple cloud providers.
#9about 4 minutes
The role of cloud services in democratizing AI
Cloud platforms democratize technology by providing managed services that reduce the required expertise and time to build and deploy complex applications.
#10about 4 minutes
Project learnings and future development opportunities
Key takeaways include the benefits of serverless architecture and automation, with future plans for a CI/CD pipeline and expanded model capabilities.
Related jobs
Jobs that call for the skills explored in this talk.
Picnic Technologies B.V.
Amsterdam, Netherlands
Intermediate
Senior
Python
Structured Query Language (SQL)
+1
zeb consulting
Frankfurt am Main, Germany
Remote
Junior
Intermediate
Senior
Amazon Web Services (AWS)
Cloud Architecture
+1
Matching moments
02:20 MIN
The evolving role of the machine learning engineer
AI in the Open and in Browsers - Tarek Ziadé
09:10 MIN
How AI is changing the freelance developer experience
WeAreDevelopers LIVE – AI, Freelancing, Keeping Up with Tech and More
01:06 MIN
Malware campaigns, cloud latency, and government IT theft
Fake or News: Self-Driving Cars on Subscription, Crypto Attacks Rising and Working While You Sleep - Théodore Lefèvre
05:17 MIN
Europe's push for digital independence from US tech
WeAreDevelopers LIVE – AI, Freelancing, Keeping Up with Tech and More
01:53 MIN
The role of a freelancer integrated within a team
WeAreDevelopers LIVE – AI, Freelancing, Keeping Up with Tech and More
05:03 MIN
Building and iterating on an LLM-powered product
Slopquatting, API Keys, Fun with Fonts, Recruiters vs AI and more - The Best of LIVE 2025 - Part 2
03:07 MIN
Final advice for developers adapting to AI
WeAreDevelopers LIVE – AI, Freelancing, Keeping Up with Tech and More
01:15 MIN
Crypto crime, EU regulation, and working while you sleep
Fake or News: Self-Driving Cars on Subscription, Crypto Attacks Rising and Working While You Sleep - Théodore Lefèvre
Featured Partners
Related Videos
Serverless: Past, Present and Future
Oliver Arafat
Serverless on Cloud
Cheng Zhang
Seriously gaming your cloud expertise: from cloud tourist to cloud native
Piet van Dongen
Computer Vision from the Edge to the Cloud done easy
Flo Pachinger
Single Server, Global Reach: Running a Worldwide Marketplace on Bare Metal in a Cloud-Dominated World
Jens Happe
End the Monolith! Lessons learned adopting Serverless
Nočnica Fee
Serverless deployment of (large) NLP models
Marek Suppa
Server Side Serverless in Swift
Sebastien Stormacq
Related Articles
View all articles



From learning to earning
Jobs that call for the skills explored in this talk.


Aws Professional Services
Canton de Courbevoie-1, France
C
C++
Java
Ruby
Hadoop
+7


Downforce Technologies
Bristol, United Kingdom
Intermediate
DevOps
Continuous Integration
Amazon Web Services (AWS)


NEXT DIGITAL
Remote
Terraform
Continuous Integration
Amazon Web Services (AWS)
Scripting (Bash/Python/Go/Ruby)



Client Server
Luton, United Kingdom
Remote
£65K
Azure
DevOps
Python
+2