🎥 How Much Energy Does Your Prompt Use? Measuring AI Impact with Ecologits

As LLMs become part of our daily workflows, it’s time to ask a critical question:
What’s the environmental cost of our AI usage?

In this episode, I explore the energy footprint of LLMs and how we can observe and estimate their impact using open-source tools like:
:magnifying_glass_tilted_left: OpenLLMetry – Distributed tracing for LLMs
:bar_chart: OpenLit – GPU usage, cost estimation & evaluation
:seedling: Ecologits – Estimating energy, GHG emissions, and resource depletion
:high_voltage: CodeCarbon – Real energy tracking for self-hosted models

:laptop: As always, I’ve prepared a GitHub repo with all the examples and code used in the episode:
:backhand_index_pointing_right: GitHub - isItObservable/ecologits

Whether you’re running hosted models or self-hosting your own, this episode will help you observe your AI workloads responsibly and understand their environmental impact.

:television: Watch the full episode here:
:backhand_index_pointing_right: https://www.youtube.com/watch?v=D-sLBzggFkQ&feature=youtu.be
Let’s build smarter — and greener — AI systems.

hasztag#Observability hasztag#LLM hasztag#Sustainability hasztag#OpenTelemetry hasztag#AI hasztag#GreenTech hasztag#Ecologits hasztag#OpenLLMetry hasztag#OpenLit hasztag#CodeCarbon