• Aucun résultat trouvé

Building a serverless application using FaaS workflows

N/A
N/A
Protected

Academic year: 2022

Partager "Building a serverless application using FaaS workflows"

Copied!
1
0
0

Texte intégral

(1)

Building a serverless application using FaaS workflows

Diego Mart´ın, ZHAW

Abstract

The present tutorial will give the participants a ba- sic understanding of the new-style workflow languages for FaaS through a tech-talk with an on-hand project.

The tutorial is open to anybody interested on FaaS and FaaS composition (AKA workflows, e.g. Fission Work- flows, IBM Composer, AWS Step Functions) with no need of prior knowledge on the matter. Ideally the participants should have a basic understanding of pro- gramming and what a JSON/YAML file is, and bring a laptop in case they want to follow the on-hands part.

36

Références

Documents relatifs

The aim of this work is to develop an automated resource man- agement solution for FaaS platforms that satisfies the performance and availability requirements of users, while

Les solutions existantes utilisent des services spéciaux déinis de manière manuelle pour gérer les conversions de formats de données entre les entrées et sorties des

Le scanner abdominal et la bili-IRM ont révélé une dilatation des voies biliaires intra-hépatiques, du canal de Wirsung et une dilatation de la voie biliaire principale en amont

This paper presents a catalog of criteria which can be practically used with the presented questionnaire for the decision of whether to implement a functionality as a

According to the design process results based on the technical task and technical requirements set in it, the “DAC” concept has technical characteristics presented in the

As a solution, this article proposes domain-specific lan- guage Anzer created to easily describe the types of data transmitted, the type-safe composition of functions within the

Keywords: Serverless Computing, Function as a Service, FaaS, Benchmarking, Load Pattern, Cold Start, Pricing, Simulation Framework..

Our proposition is the employment of a multi-objective genetic algorithms (MOGAs) [15] as our optimization method that will generate near-optimal solutions and their performance will