
The Data Cloud.
Applied Scientist, Customer FinOps Intelligence
At Snowflake, we are powering the era of the agentic enterprise. To usher in this new era, we seek AI-native thinkers across every function who are energized by the opportunity to reinvent how they work. You don’t just use tools; you possess an innate curiosity, treating AI as a high-trust collaborator that is core to how you solve problems and accelerate your impact. We look for low-ego individuals who thrive in dynamic and fast-moving environments and move with an experimental mindset — who rapidly test emerging capabilities to discover simpler, more powerful ways to deliver results. At Snowflake, your role isn't just to execute a function, but to help redefine the future of how work gets done.
About the Role
Snowflake sits at the center of the world's data — powering thousands of organizations across every industry. This role exists to prove and communicate the business value Snowflake delivers to its customers — through rigorous analysis of platform telemetry, not anecdote or assumption.
As an Applied Scientist on the Customer Fin Ops Intelligence team, you will mine aggregated, anonymized platform usage signals to answer three foundational questions: How are customers using Snowflake? How efficiently are they using it? And where are they leaving value on the table? Your analysis will surface opportunities for smarter feature adoption, more efficient workload design, and stronger unit economics — creating momentum for customers to get more from their Snowflake investment while strengthening Snowflake's retention and expansion story.
You will build the analytical models, benchmarking frameworks, and peer comparison methodologies that translate raw platform signals into compelling, data-driven insights — collaborating closely with field teams to ensure findings are communicated with clarity and acted upon at scale.
What You Will Do
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Develop and maintain peer benchmarking models using platform usage signals to produce unit economic metrics:
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Credits per 1,000 jobs
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Credits per TB scanned
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Workload mix (% spend on Data Engineering, BI, Data Science, ELT, etc.)
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Cost efficiency percentiles (p25 / p50 / p75 / p90) by industry and customer segment
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Construct peer groups using unsupervised ML techniques (clustering, dimensionality reduction) on account-level feature vectors — combining industry vertical, usage fingerprint, and size normalization into meaningful comparable cohorts
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Engineer a benchmarking feature store from large-scale platform usage datasets using Snowpark and dbt, covering compute, storage, and workload dimensions at account and industry level
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Apply statistical rigor to handle skewed distributions, outlier accounts, and temporal variation in usage patterns across a highly diverse customer base
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Package benchmarking outputs into repeatable advisory assets — cost optimization playbooks, benchmarking dashboards, and narrative summaries — that can be consumed by field teams and scaled across the customer base
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Partner with Account Executives, Solution Engineers, and Customer Success Managers to embed Fin Ops benchmarking into the customer lifecycle — translating analytical outputs into field-ready narratives and customer conversations
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Collaborate cross-functionally with Product, Fin Ops, and Sales Strategy to ensure advisory insights feed back into product priorities and field positioning
What We Are Looking For
Must Have
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MS or PhD in Statistics, Applied Mathematics, Econometrics, Computer Science, or a quantitative field
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5+ years of hands-on experience in applied data science, quantitative research, or value engineering — ideally at a cloud platform, enterprise SaaS, or management consulting firm
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Expert-level SQL — comfortable with complex multi-join queries across billions of rows of operational metadata
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Strong proficiency in Python (pandas/polars, scikit-learn, statsmodels) for statistical modeling and ML
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Deep experience with unsupervised ML: clustering (k-means, DBSCAN, hierarchical), PCA/UMAP, anomaly detection
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Experience designing and interpreting percentile-based benchmarks and cohort analyses at scale
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Strong communication and storytelling skills — able to interpret complex quantitative findings and present them clearly to both technical teams and business stakeholders
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Comfort operating in ambiguous, greenfield environments where the methodology is yours to define
Strong Plus
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Prior experience at a cloud platform, SaaS analytics company, or management consulting firm working on benchmarking, telemetry analytics, or customer value modeling
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Familiarity with Snowflake's platform architecture: credit model, virtual warehouses, workload types, and query execution fundamentals
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Experience with Snowpark for in-platform Python ML execution
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Background in Fin Ops, cost optimization, or cloud economics
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Exposure to economic modeling or industry benchmarking methodologies
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Experience presenting analytical findings to field teams or customer stakeholders (nice to have — not required)
The Data You Will Work With
You will work with one of the most comprehensive platform analytics datasets in enterprise software — aggregated and anonymized signals spanning compute usage, storage patterns, workload composition, and cost attribution across thousands of global customers and deployments. This includes:
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Compute & credit consumption data at job and warehouse granularity
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Workload classification signals across Data Engineering, BI, Data Science, ELT, and other categories
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Account-level feature datasets with hundreds of dimensions for ML modeling
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Storage, table access, and usage tracking rollups across cloud regions and industry verticals
Why This Role Is Unique
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You will work with one of the most comprehensive platform analytics datasets in enterprise software — aggregated signals spanning petabytes of usage data across thousands of global customers
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Your advisory work will directly influence customer retention, expansion conversations, and how customers perceive the ROI of their Snowflake investment
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You will operate at the intersection of data science, economics, and cloud infrastructure — a rare combination that drives outsized impact
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This is a greenfield, high-visibility opportunity — you will define the benchmarking methodology, shape the advisory practice, and directly influence how Snowflake delivers Fin Ops value at scale
Location
Remote (US preferred) | Open to hybrid in San Mateo, CA or Seattle, WA
Snowflake is an equal opportunity employer. We celebrate diversity and are committed to creating an inclusive environment for all employees.
Snowflake is growing fast, and we’re scaling our team to help enable and accelerate our growth. We are looking for people who share our values, challenge ordinary thinking, and push the pace of innovation while building a future for themselves and Snowflake.
How do you want to make your impact?
For jobs located in the United States, please visit the job posting on the Snowflake Careers Site for salary and benefits information: careers.snowflake.com
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Snowflake 소개

Snowflake
Publicsnowflake provides web applications and web hosting services.
1-50
직원 수
Zürich
본사 위치
$70B
기업 가치
리뷰
10개 리뷰
3.9
10개 리뷰
워라밸
2.8
보상
3.5
문화
4.2
커리어
3.2
경영진
3.1
72%
지인 추천률
장점
Innovative/cutting-edge technology
Supportive team and colleagues
Great learning opportunities and training programs
단점
Fast-paced/overwhelming environment
Heavy workload and long hours
High pressure to perform
연봉 정보
2,067개 데이터
Junior/L3
L6
Mid/L4
Senior/L5
Staff/L6
L3
L4
L5
Junior/L3 · Data Scientist
277개 리포트
$252,858
총 연봉
기본급
$171,306
주식
$57,741
보너스
$23,811
$190,229
$354,557
면접 후기
후기 6개
난이도
3.0
/ 5
소요 기간
14-28주
면접 과정
1
Application Review
2
Online Assessment
3
Technical Phone Screen
4
Technical Interview
5
Final Interview Round
자주 나오는 질문
Coding/Algorithm
Technical Knowledge
System Design
Behavioral/STAR
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