Awesome and Dark Tactics
Homepage Catalog Tag Selection Contributions
All Tags AWS ai algorithm-design architecture browser cloud cloud-efficiency cloud-principles cost-reduction data-centric data-compression data-processing deployment design documentation edge-computing email-sharing energy-efficiency energy-footprint enterprise-optimization green-ai hardware libraries llm locality machine-learning maintainability management measured microservices migration mobile model-optimization model-training multi-objective network-traffic parameter-tuning performance queries rebuilding scaling services storage-optimization strategies tabs template testing workloads

<- Back to category

Tactic: Apply auto-scaling

Tactic sort: Awesome Tactic
Type: Architectural Tactic or Software Practice
Category: resource-allocation
Tags: scaling 

Title

Apply auto-scaling

Description

Research has explored techniques to reduce carbon emissions using predictive autoscaling algorithms, using e.g., machine learning models.

Participant

SIG employees

Related software artifact

autoscaling

Context

serverless platform

Software feature

resource allocation

Tactic intent

replica scaling logic

Target quality attribute

resource efficiency

Other related quality attributes

carbon efficiency; energy efficiency

Measured impact

heatmap

Source

Architectural Tactics to Improve the Environmental Sustainability of Microservices (DOI: https://doi.org/10.48550/arXiv.2407.16706)


Graphical representation

  • Contact person
  • Patricia Lago (VU Amsterdam)
  •  disc at vu.nl
  •  patricialago.nl

The Archive of Awesome and Dark Tactics (AADT) is an initiative of the Digital Sustainability Center (DiSC). It received funding from the VU Amsterdam Sustainability Institute, and is maintained by the S2 Group of the Vrije Universiteit Amsterdam.

Initial development of the Archive of Awesome and Dark Tactics by Robin van der Wiel