Photo

Pipeline Patterns and Antipatterns - Things your Pipeline Should (Not) Do

Daniel Raniz Raneland

from factor10 (Varberg, Sweden)

About speaker

Sourceror @ factor10

Raniz is a programmer, architect, speaker and coach at factor10. He is a problem solver who keeps track of the bigger picture. He is prestigeless, likes to get into new domains, and loves sharing knowledge and ideas.

About speakers company

We are consultants. Software consultants, actually. Business-oriented coding architects, when we describe ourselves. Our ambition is to contribute to making the world a radically better place, and we are doing it through the power of outstanding software. We know that we are succeeding when: - Customers choose us because they want to make more out of their business. - People in our business believe they can make more of an impact by working with us. - People develop their capability to make outstanding software by interacting with us.

Abstracts

specific

Automated pipelines have become an integral part of our daily workflow. As the pipelines become increasingly important, the demands placed on them rise proportionally.

As with many things, a great pipeline operates seamlessly in the background, while a poorly designed one becomes a constant irritation.

Are you publishing your artefacts every time the pipeline runs, running all steps in a sequence, or installing all the tools every time a new build starts?

In this talk, I will address these antipatterns and more I have encountered during my work as a consultant, explaining why I consider them such and what you should do instead.

After listening to this talk, you will better understand what makes a pipeline great and concrete things you can do to improve it and shorten the feedback loop.


Pipelines can be frustrating, but what if they weren't?

In this talk I'll discuss some patterns and anti-patterns that I regularly use or have encountered in my work as a consultant and explain why I consider them such and what impact it may have on your day-to-day work.

The Program Committee has not yet taken a decision on this talk

other talks of this topic

Photo
Crafting the Ultimate Docker Image for Spring Applications

Pasha Finkelshteyn

BellSoft

specific
Photo
An Efficient Git Workflow For High-Stakes Projects

Vladislav Shpilevoy

VirtualMinds

specific
Photo
From null to applications on Kubernetes

Roberth Strand

Sopra Steria

specific
Photo
Become a Gen AI Bot Master in Just 50 Minutes – No Kidding!!

Ambesh Singh

Visionet Systems Deutschland

broad
Photo
Three Flavors of Pokémon - Framework Agnostic UI Testing

Shelly Goldblit

Dell Technologies

broad
Photo
UX at the centre of system development and design

Anesu Makwasha

Tose Technologies

specific
Photo
Workshop: Master Anti-Ban & Web Scraping Techniques (2h)

Fabien Vauchelles

Scrapoxy

specific
Photo
Path to Golden Path

Daniel Drack

FullStackS GmbH

broad
Photo
JavaScript is weird. MythBusters special.

Małgorzata Janeczek

Sector Alarm Tech

broad
Photo
Sculpting Data for Machine Learning: Generative AI edition

Rishabh Misra

Attentive Mobile Inc

broad
Photo
How Unit Testing Saved My Career

Annelore Egger

OpenValue Switzerland

broad
Photo
From Server to Serverless - A story of saving Cost

Yoav Nordmann

Tikal Knowledge

specific
Photo
Simple and stable UI tests with Ultron

Aleksei Tiurin

Exness

specific
Photo
C# 13 Unleashed: Live Demos of my Top 10 Cutting-Edge Features!

Ambesh Singh

Visionet Systems Deutschland

broad
Photo
Putting the asm in Wasm: from bytecode to native

Edoardo Vacchi

Tetrate

specific
Photo
Deep dive into the postgres index types

Jesús Espino

Mattermost Inc.

specific
Photo
How we elevated tracking data accuracy from ~60% to ~80%

Alina Krasavina

Delivery hero

broad
Photo
You don't need to implement GraphQL

Sefi Ninio

Tikal Knowledge

specific
Photo
Pros and Cons of Jetpack Compose Toolkit

Stevan Milovanovic

InterVenture

specific
Photo
What the @#!? is Auth

Warren Parad

Authress

specific
Photo
Taking Shortcuts Beyond Your IDE

Annelore Egger

OpenValue Switzerland

broad
Photo
Why You Ignore Best Practices and How You Can Fix It

Annelore Egger

OpenValue Switzerland

broad
Photo
Go performance profiling in theory and practice

Alexey Palazhchenko

FerretDB Inc.

broad
Photo
Collaborative applications and how to make them fast

Bartosz Sypytkowski

appflowy.io

specific
Photo
Throw exceptions... out of your codebase

Guillaume Faas

Vonage

specific
Photo
Continuous Profiling on K8s - why, when and how

Ant(on) Weiss

PerfectScale

specific
Photo
Algorithm Of Massively Parallel Networking In C++

Vladislav Shpilevoy

VirtualMinds

specific