feat(applications): submit Google Sr Data Engineer + Kraken SRE AI Agents (2026-06-15)

Two applications sent and finalized on 2026-06-15:

- Google - Senior Data Engineer (Merchant Data Science, Zurich), 85.5/100.
  Tier-1 scope fix + both Tier-2 polish applied: re-scoped the Swisscom
  migration claim in resume B2 + CL P2 (Scope-Discipline), added project-
  delivery vocab (B4), and JD-exact 'distributed data processing' (B5).
- Kraken (Payward) - SRE, AI Agents (remote, CH-eligible), 87.2/100.
  Finalized as-is; crypto-native + production-ML edge, honest infra gaps.

Logs both as 'applied' in job_scout/state/decisions.json and flips their
CLAUDE.md Active Sessions rows to SENT. Open item for both: confirm level
and comp clear the 180k+ all-in bar at the recruiter stage.

Co-Authored-By: Claude Fable 5 <noreply@anthropic.com>
This commit is contained in:
2026-06-15 19:57:18 +02:00
parent d0350ca668
commit cad2c230eb
16 changed files with 1819 additions and 1 deletions
+46
View File
@@ -0,0 +1,46 @@
Senior Data Engineer — Google (Merchant Data Science, Merchant Shopping Organization)
JD source: live scrape 2026-06-15 via Playwright (Google careers board), re-verified live same day
URL: https://www.google.com/about/careers/applications/jobs/results/87066954308690630-senior-data-engineer?location=Switzerland
Location: Mountain View, CA, USA; Zürich, Switzerland (preferred-location choice at apply)
Level chip: "Mid" (title says Senior — clarify L4 vs L5 at recruiter stage)
Comp (US band shown): $156,000 - $227,000 USD + 15% bonus target + equity + benefits. Zürich band NOT posted — verify clears 180k+ all-in.
--- VERBATIM POSTING TEXT ---
Note: By applying to this position you will have an opportunity to share your preferred working location from the following: Mountain View, CA, USA; Zürich, Switzerland.
Minimum qualifications:
Bachelor's degree or equivalent practical experience.
5 years of experience designing data pipelines, and dimensional data modeling for synch and asynch system integration and implementation using internal (e.g., Flume, etc.) and external stacks (DataFlow, Spark, etc.).
5 years of experience coding in one or more programming languages.
5 years of experience working with data infrastructure and data models by performing exploratory queries and scripts.
Preferred qualifications:
5 years of experience with statistical methodology and data consumption tools such as business intelligence tools, collabs, jupyter notebooks, Tableau, Power BI, DataStudio, and business intelligence platforms.
3 years of experience developing project plans and delivering projects on time within budget and scope.
3 years of experience partnering with stakeholders (e.g., users, partners, customer), and managing stakeholders/customers.
Experience with Machine Learning for production workflows.
About the job
The Merchant Data Science team is a group within the Merchant Shopping Organization. We work on building scalable data products that empower data-driven decision-making.
In this role, you will innovate and build durable, impactful data products. You will bridge the gap between software engineering, data engineering, and data science.
As a Data Engineer in the Merchant Shopping organization, you will build data products and foundations to improve Google's Shopping products. You will collaborate with a multidisciplinary team of data scientists, engineers, and PMs on a wide range of problems. You will bring an understanding of data, logging, and engineering. You will solve non-routine problems, build reliable data products used across the organization, and drive impact on cross-functional projects.
Individual pay is determined by factors including job-related skills, experience, and relevant education or training.
US: $156000 - $227000 (USD) + 15% bonus target + equity + benefits
Responsibilities
Identify the underlying need, process datasets, and apply advanced data engineering, data modeling, and architectural frameworks when needed.
Design, build, and scale innovative data products, including self-serve tools, and automated pipelines.
Advance data infrastructure, product quality, and foundational understanding through automated validation frameworks, data quality, and reliability monitoring.
Operate with a high degree of autonomy, owning data engineering projects from initial conception to landing and impact.
Advocate impactful data products while contributing to a team culture that values engineering excellence, robust data, and sharp communication.