Osnovno

Data Scientist II – Performance Optimization Squad

Stockholm, Stockholm County, Sweden Tvrtka: TN Sweden Klijent / Poslodavac: Spotify
Objavljeno: 20.05.2026
Datum zatvaranja: 04.07.2026
Preporuka za posao: d5401b16196480b9607e15c0cbf75767

Informacije o poslu

Lokacija
Stockholm, Stockholm County, Sweden
Tvrtka
TN Sweden
Klijent / Poslodavac
Spotify
Preporuka za posao
d5401b16196480b9607e15c0cbf75767
Vrsta popisa
Osnovno
Potrebna je radna dozvola EU-a
Ne
Objavljeno
20.05.2026
Datum zatvaranja
04.07.2026

Opis posla

The Performance Optimization Squad is a newly formed team in the Core Infrastructure Studio with a mission to establish a core competency in performance engineering and address systemic inefficiencies across Spotify's platform. With 3,200+ microservices, 40,000 VMs at peak, and 500,000 K8s pods, even minor fleet-wide efficiency improvements result in substantial cost savings. We've already identified $8M+ in annual savings from our first initiative alone, and we're just getting started.This squad works horizontally across the entire stack — but none of that optimization happens without the data to see it. We're looking for a Data Analyst who will build the measurement foundation that drives every decision we make. What You'll Do Optimization at this scale is only possible when someone can see the problem clearly. You'll build the data foundation from scratch; designing and owning the datasets, pipelines, and metrics that make performance inefficiencies visible across the platform. Design, build, and maintain datasets and data pipelines that surface resource utilization, cost, and performance signals across Spotify's infrastructure Define and own metrics for efficiency, latency, and resource utilization; turning raw infrastructure signals into insights that drive prioritization Proactively investigate performance data to surface optimization opportunities, not just respond to engineering requests Build dashboards and analyses that support decision-making across the squad and partnering platform teams Work with engineers and platform teams to define guardrail metrics, validate findings, and measure the real-world impact of optimization efforts Translate complex infrastructure data into clear stories for both technical and non-technical audiences Own the data foundation: There is no inherited data infrastructure here; you'll design and build it from scratch. What gets measured, and how, is yours to define See your impact directly: Every insight you surface translates into cost savings. We measure success in dollars saved and efficiency gained; your work shows up in production Breadth at scale: Work across the entire Spotify platform; 3,200+ microservices, 40,000 VMs, 500,000 K8s pods. Few companies offer data problems at this scale Greenfield from day one: Help shape the culture, tooling, and data strategy of a brand new squad with strong executive support Who You Are You have experience working with infrastructure, platform, or cloud cost data; Kubernetes metrics, cost attribution, utilization signals, or observability data feel familiar Or you're a strong technical analyst with enough grounding in distributed systems and cloud infrastructure to navigate GKE cost data, JVM metrics, and resource utilization signals You write clean, efficient SQL and Python; comfortable enough to model data and build lightweight pipelines, not just query existing tables You're self-directed: at your best when hunting for problems in the data, not waiting to be handed them Comfortable with ambiguity and able to carve your own path in an early-stage, unstructured environment Experienced with data visualization tools (Looker or similar) and know how to make a dashboard tell a story, not just display numbers You communicate clearly and confidently with engineers and non-technical stakeholders alike Where You'll Be This role is based in Stockholm or London. We offer you the flexibility to work where you work best! There will be some in person meetings, but still allows for flexibility to work from home.

Vještine

apply blended learning apply for research funding apply research ethics and scientific integrity principles in research activities build recommender systems Business Analytics Business Intelligence collect ICT data communicate with a non-scientific audience Computational Biology Computer Simulation conduct research across disciplines create data models Data Engineering data ethics Data Mining Data Models data quality assessment Data Science data visualisation software define data quality criteria deliver visual presentation of data demonstrate disciplinary expertise design database in the cloud design database scheme develop data processing applications develop professional network with researchers and scientists Digital Curation disseminate results to the scientific community draft scientific or academic papers and technical documentation empirical analysis establish data processes evaluate research activities execute analytical mathematical calculations Hadoop handle data samples Healthcare Analytics image recognition implement data quality processes increase the impact of science on policy and society information categorisation Information Extraction integrate gender dimension in research integrate ICT data interact professionally in research and professional environments interpret current data LDAP LINQ make data-driven decisions manage data manage data collection systems manage findable accessible interoperable and reusable data manage ICT data architecture manage ICT data classification manage intellectual property rights manage open publications manage personal professional development manage research data Marketing Analytics mathematical modelling MDX mentor individuals multidisciplinary research N1QL normalise data online analytical processing operate open source software perform data cleansing perform data mining perform project management perform scientific research promote open innovation in research promote the participation of citizens in scientific and research activities promote the transfer of knowledge publish academic research quantitative analysis query languages report analysis results Research Design resource description framework query language Scientific Computing scientific literature Social Network Analysis SPARQL speak different languages State Estimation statistical modeling techniques Statistics synthesise information teach in academic or vocational contexts think abstractly Unstructured Data use data processing techniques use databases use spreadsheets software visual presentation techniques write scientific publications XQuery

Slični poslovi

Predloženi poslovi

Eurojobs Support Assistant