Sohan Maheshwar
Optimizing your AI/ML workloads for sustainability
#1about 3 minutes
Understanding the carbon footprint of large AI models
The increasing size and complexity of models like GPT-4 result in a significant carbon footprint, with training a single model consuming more energy than a lifetime of car usage.
#2about 3 minutes
Reducing emissions with the cloud's shared responsibility model
Migrating workloads to a cloud provider like AWS can reduce energy usage by up to 80%, operating under a shared responsibility model where AWS manages the cloud's sustainability.
#3about 5 minutes
Optimizing the ML lifecycle starting with problem framing
Begin the ML lifecycle sustainably by using purpose-built hardware, pre-trained models from marketplaces, and managed AI services to avoid redundant computation.
#4about 6 minutes
Implementing sustainable data processing and storage strategies
Reduce your workload's environmental impact by using tiered storage with lifecycle policies, efficient compression algorithms, and optimized file formats like Parquet.
#5about 2 minutes
Selecting purpose-built hardware for ML workloads
Improve energy efficiency by selecting specialized silicon for different ML phases, such as AWS Trainium for training, Inferentia for inference, and Graviton processors for general workloads.
#6about 3 minutes
Adopting sustainable practices for model development
During model development, define acceptable performance criteria to prevent over-training, choose energy-efficient algorithms, and use pre-trained models to reduce computational waste.
#7about 5 minutes
Optimizing the high-cost model deployment and inference phase
Since deployment accounts for 90% of ML costs, focus on right-sizing inference environments by smoothing traffic peaks with queues and negotiating flexible service level agreements.
#8about 4 minutes
Applying the AWS Well-Architected Framework for sustainability
Use the sustainability pillar of the AWS Well-Architected Framework to get recommendations, such as choosing regions with higher renewable energy usage to lower your carbon footprint.
#9about 2 minutes
Measuring and tracking your workload's carbon footprint
Actively monitor your environmental impact using tools like the AWS Customer Carbon Footprint tool and normalize metrics to track efficiency gains as your workload scales.
#10about 4 minutes
Applying AI and ML to solve global sustainability challenges
Leverage AI/ML for positive environmental impact by using open datasets like the Amazon Sustainability Data Initiative to address challenges in conservation, climate risk, and the circular economy.
#11about 6 minutes
Real-world case studies of ML in environmental conservation
Explore how organizations use ML on satellite imagery to monitor oceans for oil spills and deploy ML at the edge with rugged devices to protect forests and endangered species.
#12about 1 minute
A call to action for building sustainable technology
Take action by starting sustainability conversations, exploring open data initiatives like ASDI, and applying the AWS Well-Architected Framework to your own projects.
Related jobs
Jobs that call for the skills explored in this talk.
Matching moments
24:26 MIN
Uncovering the hidden environmental costs of AI
Fireside Chat: AI and Sustainability - Thorsten Jonas
27:30 MIN
Managing AI's energy consumption with sustainable infrastructure
How to build a sovereign European AI compute infrastructure
33:39 MIN
Using the AWS shared responsibility and well-architected models
An Architect’s guide to reducing the carbon footprint of your applications
14:46 MIN
The hidden environmental cost of AI-powered development
Are frameworks like React redundant in an AI world?
08:37 MIN
Addressing the growing power consumption of AI computing
The Future of Computing: AI Technologies in the Exascale Era
02:05 MIN
How AI workloads accelerate energy consumption
Minimising the Carbon Footprint of Workloads
13:44 MIN
Building a real-time inference architecture on AWS
The Road to MLOps: How Verivox Transitioned to AWS
00:58 MIN
Considering the impact and energy cost of AI
Official Opening of WeAreDevelopers World Congress
Featured Partners
Related Videos
An Architect’s guide to reducing the carbon footprint of your applications
Ricardo Sueiras Sueiras
Engineering Mindset in the Age of AI - Gunnar Grosch, AWS
Gunnar Grosch
How AI Models Get Smarter
Ankit Patel
Minimising the Carbon Footprint of Workloads
Michael Mueller
Inside the AI Revolution: How Microsoft is Empowering the World to Achieve More
Simi Olabisi
The state of MLOps - machine learning in production at enterprise scale
Bas Geerdink
DevOps for AI: running LLMs in production with Kubernetes and KubeFlow
Aarno Aukia
Introducing Green IT practices to a large Software Company
Pierre-Luc Noel & Fritz Reichmann
Related Articles
View all articles.gif?w=240&auto=compress,format)



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

AI Systems and MLOps Engineer for Earth Observation
Forschungszentrum Jülich GmbH
Jülich, Germany
Intermediate
Senior
Linux
Docker
AI Frameworks
Machine Learning

Machine Learning (ML) Engineer Expert - frameworks MLOps / Python / Orchestration/Pipelines
ASFOTEC
Canton de Lille-6, France
Senior
GIT
Bash
DevOps
Python
Gitlab
+6

Sr. AI/ML Specialist Solutions Architect
Amazon.com, Inc.
Municipality of Madrid, Spain
Senior
DevOps
PyTorch
Data analysis
Machine Learning
Amazon Web Services (AWS)

Delivery Consultant - Machine Learning (GenAI), ProServe EMEA
Amazon.com, Inc
Senior
Spark
Hadoop
PyTorch
Machine Learning
Amazon Web Services (AWS)

Sr Delivery Consultant (AI/ML), Professional Services
Amazon.com, Inc.
Municipality of Zaragoza, Spain
Senior
Python
Terraform
Machine Learning
Amazon Web Services (AWS)
Natural Language Processing
+1

Delivery Consultant - Machine Learning (GenAI), ProServe EMEA
Amazon.com, Inc
Intermediate
R
Python
Matlab
Terraform
Machine Learning
+2

Delivery Consultant - Machine Learning (GenAI), ProServe EMEA
Amazon.com, Inc
Intermediate
Python
Terraform
Machine Learning
Amazon Web Services (AWS)
Scripting (Bash/Python/Go/Ruby)

Senior Delivery Consultant - Machine Learning (GenAI), ProServe EMEA
Aws Emea Sarl
Zürich, Switzerland
Senior
Java
Spark
Hadoop
Python
PyTorch
+2

Sr Delivery Consultant (AI/ML), Professional Services
AWS EMEA SARL (UK Branch)
Charing Cross, United Kingdom
Senior
Python
Terraform
Machine Learning
Amazon Web Services (AWS)
Natural Language Processing
+1