トレンド企業

Uber
Uber

Move the way you want.

Senior Applied Scientist

職種データサイエンス
経験シニア級
勤務地Amsterdam, Netherlands
勤務オンサイト
雇用正社員
掲載3ヶ月前
応募する

福利厚生

フレックスタイム

健康保険

必須スキル

TypeScript

JavaScript

Node.js

About the Role
We are looking for a Senior Applied Scientist with a passion for building software solutions where customer experiences take centre stage and products are built with service quality at heart.

We are building a real-time data platform to enable customer experience observability and analytics at scale: key ingredients to ensure we deliver best-in-class experiences for our users. The platform helps detect and respond to degradations in customer experience, supports safe code deployments and fast feature rollouts through real-time monitoring, and powers deeper analytics that inform product improvements, enabling both reactive and proactive service quality processes.

This is an outstanding opportunity for an applied scientist with a collaborative spirit to the core, who will work with the engineering team to drive an ambitious observability platform. It's a high-impact role where you will collaborate on challenges across domains and functions, spanning time-series anomaly detection, statistical monitoring and guardrails, and the data foundations needed to make customer experience measurable and actionable.

If you have the technical chops, we invite you to join us to solve tough large-scale data challenges and raise the bar of service quality.

What You Will Do:

  • Incident Detection & Mitigation

  • Design and improve state-of-the-art anomaly detection and alerting for multivariate time series metrics.

  • Build methods to reduce incident impact, such as by shortening incident time-to-detection and time-to-resolution while reducing alert fatigue (deduplication, correlation, grouping, etc).

  • Contribute to intelligent incident response workflows: auto-triage to right team, suspected root-cause hints, auto-mitigation actions as well as agentic mitigation flows (supporting on-call Engineers in debugging and mitigating).

  • Rollout Safety & Speed (Experimentation & Monitoring)

  • Develop statistical monitoring approaches for code deployment safety and feature rollout safety (e.g. near-real-time sequential A/B testing, before/after system degradation detection, etc).

  • Support safe and fast product releases by adjusting code deployment soak times or feature rollout speed based on statistical significance in guardrail metrics.

  • Analytics Enablement

  • Partner with Engineering on building data infrastructure producing "analytics-ready" datasets: consistent definitions, clean data, scalable feature/metric computation.

  • Define best practices in instrumentation and metric definitions to facilitate incident detection, including SOPs and templates for common patterns to be applied across different user flows and user traffic patterns.

  • Contribute to monitoring converge assisted observability and monitoring.

  • Scientific & Operational Excellence

  • Define success metrics for incident detection systems (precision, recall, time to detect, coverage, etc) and create evaluation harnesses using historical incidents and annotated alerts.

  • Communicate results clearly to technical and non-technical stakeholders; drive alignment on tradeoffs, OKRs and roadmap.

Basic Qualifications:

  1. M.S. or Ph.D.in Computer Science, Machine Learning, Statistics, Operations Research, Economics, or another quantitative field.2. 6+ years of proven experience as an Applied Scientist, Machine Learning Scientist/Engineer, Research Scientist, or equivalent.3. Strong expertise in causal inference / experimentation, including designing, executing, and analyzing A/B tests; experience with related methodologies (e.g., quasi-experimental designs, uplift/heterogeneous treatment effects) is highly valued.4. Strong expertise in anomaly detection and time-series analysis, with hands-on experience building production-grade, scalable detection and alerting pipelines **for large-scale, real-time systems (including time-series feature engineering, modeling, monitoring, and drift/seasonality handling).**5. Experience in production coding and deployment of ML, statistical, causal, and/or optimization models in real-time or near-real-time systems

(end-to-end: data, modeling, evaluation, deployment, monitoring, and iteration).6. Ability to use Python (or similar languages)**to work efficiently at scale with large datasets in production environments; strong software engineering fundamentals (testing, reliability, performance).**7. Proficiency in SQL **and distributed data processing (e.g.Py Spark, Flink SQL).**8. Excellent communication skills in cross-functional settings, with demonstrated ability to translate business/system problems into technical solutions and influence stakeholders.9. Thought leadership and ownership to drive multi-functional initiatives from conceptualization through productionization, including setting technical direction and raising the quality bar.

Preferred Qualifications:

  1. Experience with real-time or near-real-time pipelines and large-scale data systems (e.g., Spark, streaming, Kafka-like systems, OLAP stores).
  2. Experience in observability, user analytics, experimentation platforms, or reliability monitoring.
  3. Familiarity with event correlation and change attribution (e.g., linking regressions to code/config/feature flag changes).
  4. Experience building tools that improve workflow quality (onboarding, annotation, diagnosis dashboards).

Uber's mission is to reimagine the way the world moves for the better. Here, bold ideas create real-world impact, challenges drive growth, and speed fuelds progress. What moves us, moves the world - let's move it forward, together.

Offices continue to be central to collaboration and Uber's cultural identity. Unless formally approved to work fully remotely, Uber expects employees to spend at least half of their work time in their assigned office. For certain roles, such as those based at green-light hubs, employees are expected to be in-office for 100% of their time. Please speak with your recruiter to better understand in-office expectations for this role.

Accommodations may be available based on religious and/or medical conditions, or as required by applicable law. To request an accommodation, please reach out to accommodations@uber.com.

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Uberについて

Uber

Uber

Public

Uber Technologies, Inc. is an American multinational transportation company that provides ride-hailing services, courier services, food delivery, and freight transport. It is headquartered in San Francisco, California, and operates in approximately 70 countries and 15,000 cities worldwide.

10,001+

従業員数

San Francisco

本社所在地

$120B

企業価値

レビュー

10件のレビュー

3.7

10件のレビュー

ワークライフバランス

3.2

報酬

4.1

企業文化

4.0

キャリア

3.4

経営陣

2.5

68%

知人への推奨率

良い点

Good compensation and pay

Flexible hours and schedule

Great team culture and colleagues

改善点

Long hours and heavy workload

High pressure and stress during peak times

Poor management and lack of support

給与レンジ

15,360件のデータ

Junior/L3

Mid/L4

Senior/L5

Staff/L6

Junior/L3 · Data Analyst

6件のレポート

$156,600

年収総額

基本給

$156,000

ストック

-

ボーナス

-

$152,600

$162,200

面接レビュー

レビュー5件

難易度

3.0

/ 5

期間

14-28週間

内定率

40%

体験

ポジティブ 80%

普通 20%

ネガティブ 0%

面接プロセス

1

Application Review

2

Online Assessment

3

Recruiter Screen

4

Technical Phone Screen

5

Case Study/Analytics Test

6

Final Loop/Panel Interview

7

Offer

よくある質問

Coding/Algorithm

System Design

Behavioral/STAR

Case Study

Technical Knowledge