Upgrade to Pro
— share decks privately, control downloads, hide ads and more …
Speaker Deck
Features
Speaker Deck
PRO
Sign in
Sign up for free
Search
Search
Performance Stability of Public Clouds
Search
xLeitix
April 03, 2019
Research
1
78
Performance Stability of Public Clouds
Talk given at VECS (automotive industry conference in Gothenburg)
xLeitix
April 03, 2019
Tweet
Share
More Decks by xLeitix
See All by xLeitix
Presentation WASP Software Technology Cluster 2025
xleitix
0
140
2024_uzh_collo.pdf
xleitix
0
42
CrossFit: Fine-Grained Benchmarking of Serverless Application Performance Across Cloud Providers
xleitix
0
270
Unit testing performance using code microbenchmarks - how far are we?
xleitix
0
400
Developer-Targeted Performance Engineering (ZHAW Colloquium)
xleitix
0
81
Developer-Targeted Performance Engineering
xleitix
0
230
Cachematic – Automatic Invalidation in Application-Level Caching Systems
xleitix
0
130
AWS Lambda and #serverless. What’s all the fuzz about?
xleitix
1
610
Performance Testing in a Public Cloud - How bad is it really?
xleitix
0
450
Other Decks in Research
See All in Research
2026年1月の生成AI領域の重要リリース&トピック解説
kajikent
0
850
[SITA2025 Workshop] 空中計算による高速・低遅延な分散回帰分析
k_sato
0
130
教師あり学習と強化学習で作る 最強の数学特化LLM
analokmaus
2
980
2026年3月1日(日)福島「除染土」の公共利用をかんがえる
atsukomasano2026
0
460
ドメイン知識がない領域での自然言語処理の始め方
hargon24
1
270
離散凸解析に基づく予測付き離散最適化手法 (IBIS '25)
taihei_oki
1
730
ScoreMatchingRiesz for Automatic Debiased Machine Learning and Policy Path Estimation with an Application to Japanese Monetary Policy Evaluation
masakat0
0
150
COFFEE-Japan PROJECT Impact Report(海ノ向こうコーヒー)
ontheslope
0
1k
視覚から身体性を持つAIへ: 巧緻な動作の3次元理解
tkhkaeio
1
220
When Learned Data Structures Meet Computer Vision
matsui_528
1
4.3k
データサイエンティストの業務変化
datascientistsociety
PRO
0
300
「なんとなく」の顧客理解から脱却する ──顧客の解像度を武器にするインサイトマネジメント
tajima_kaho
10
7k
Featured
See All Featured
Introduction to Domain-Driven Design and Collaborative software design
baasie
1
650
How People are Using Generative and Agentic AI to Supercharge Their Products, Projects, Services and Value Streams Today
helenjbeal
1
140
Being A Developer After 40
akosma
91
590k
How to Think Like a Performance Engineer
csswizardry
28
2.5k
Game over? The fight for quality and originality in the time of robots
wayneb77
1
140
Designing Experiences People Love
moore
143
24k
SEO Brein meetup: CTRL+C is not how to scale international SEO
lindahogenes
1
2.4k
A Guide to Academic Writing Using Generative AI - A Workshop
ks91
PRO
0
240
BBQ
matthewcrist
89
10k
SEO for Brand Visibility & Recognition
aleyda
0
4.4k
Google's AI Overviews - The New Search
badams
0
940
The AI Revolution Will Not Be Monopolized: How open-source beats economies of scale, even for LLMs
inesmontani
PRO
3
3.2k
Transcript
Performance Stability of (Public) Clouds Philipp Leitner
[email protected]
@xLeitix
Chalmers !2 Cloud Computing Image Credit: https://www.networkworld.com/article/3195527/did-cloud-kill-backup.html
Chalmers !3 Some disclaimers before we get started …. Image
Credit: https://thenounproject.com/term/exclamation-mark/
Chalmers !4 Image Credit: https://nordicapis.com/living-in-the-cloud-stack-understanding-saas-paas-and-iaas-apis/
Chalmers !5 Cloud Usage in Automotive Source (Accenture): https://www.accenture.com/t20150914T170053__w__/us-en/_acnmedia/Accenture/Conversion-Assets/DotCom/Documents/Global/PDF/ Industries_18/Accenture-Cloud-Automative-PoV.pdf
Chalmers !6 Cloud Usage in Automotive Source (Accenture): https://www.accenture.com/t20150914T170053__w__/us-en/_acnmedia/Accenture/Conversion-Assets/DotCom/Documents/Global/PDF/ Industries_18/Accenture-Cloud-Automative-PoV.pdf
Chalmers !7 (One) Challenge for Cloud Adoption in Automotive: Predictability
Image Credit: http://chittagongit.com
Chalmers !8 Predictability Do I know what I will get?
Do I get the same thing every time? Image Credit: http://chittagongit.com
Chalmers !9 Aside: Cloud Instance Types (“flavors”) Image Credit (Rightscale):
https://www.rightscale.com/about-cloud-management/cloud-cost-optimization/cloud-pricing-comparison
Chalmers !10 Predictability Inter-Instance Intra-Instance
Chalmers !11 Predictability Inter-Instance Intra-Instance
Chalmers !12 Predictability Inter-Instance Intra-Instance
Chalmers !13 Source (Leitner and Cito): https://arxiv.org/pdf/1411.2429.pdf
Chalmers !14 Relative Standard Deviations Benchmarks of identical instances Source
(Leitner and Cito): https://arxiv.org/pdf/1411.2429.pdf (anno ~ 2015)
Chalmers !15 Recent Results (unpublished data) (Feb 2019) 2015
Chalmers !16 Instance Runtime (unpublished data) (Feb 2019) 2015 3.5
4.0 4.5 5.0 5.5 0 20 40 60 Benchmark Runtime [h] Benchmark Value Continuous io azure D2s
Chalmers !17 Changes Over the Years (mean of all measurements)
Chalmers !18 2015 2019 CPU 8.1 3.6 - 55% Changes
Over the Years (mean of all measurements)
Chalmers !19 2015 2019 CPU 8.1 3.6 - 55% MEM
12.6 6.5 - 48% Changes Over the Years (mean of all measurements)
Chalmers !20 2015 2019 CPU 8.1 3.6 - 55% MEM
12.6 6.5 - 48% IO 38.6 15.9 - 59% Changes Over the Years (mean of all measurements)
Chalmers !21 What has changed?
Chalmers !22 For IO: multi-tenancy For CPU: hardware heterogeneity Traditional
Reasons for Lack of Predictability
Chalmers !23 Reason 0: More commitment to predictable performance levels
and transparency
Chalmers !24 Reason 1: Move towards guaranteed hardware
Chalmers !25 (anno ~ 2015) Heterogenous Hardware? Source (Leitner and
Cito): https://arxiv.org/pdf/1411.2429.pdf
Chalmers !26 (anno ~ 2015) Heterogenous Hardware? Source (Leitner and
Cito): https://arxiv.org/pdf/1411.2429.pdf (now) (Largely) guaranteed hardware
Chalmers !27 Reason 2: Move towards SLAs and credit systems
over best-effort delivery
Chalmers !28 (anno ~ 2015) Best-Effort Delivery? Source (Leitner and
Cito): https://arxiv.org/pdf/1411.2429.pdf
Chalmers !29 (anno ~ 2015) Best-Effort Delivery? Source (Leitner and
Cito): https://arxiv.org/pdf/1411.2429.pdf (unpublished data) (now) 0 5 10 15 20 25 0 50 100 150 200 Benchmark Runtime [h] Benchmark Value c5−large / IO
Chalmers !30 Credit Models - General Idea Resources are distributed
fairly between tenants based on usage tokens Available for: CPU (in case of shared CPU instance types) IO (some providers)
Chalmers !31 Credit Models at Runtime Source (Leitner and Scheuner):
https://www.zora.uzh.ch/id/eprint/112940/
Chalmers !32 Summary Public clouds are not all that unpredictable
(anymore)
Chalmers !33 Summary Public clouds are not all that unpredictable
(anymore) … useful even for workloads sensitive to performance variation … but it’s still virtualized infrastructure
Chalmers !34 Summary Public clouds are not all that unpredictable
(anymore) New developments have changed the game: Specialized hardware, credit models, provisioned IOPS
Chalmers !35 Cloud Workbench Tool for scheduling cloud experiments Code:
https://github.com/sealuzh/cloud-workbench Demo: https://www.youtube.com/watch? v=0yGFGvHvobk
Chalmers !36 Questions? Source: https://dilbert.com/strip/2008-05-08