All jobs

Senior/ Staff Analyst, Finance Analytics & AI

Snowflake8h ago
United StatesOnsite$114K–$143KFull-timeSenior Level5+ yrs exp
H-1B sponsor

Top focus

Analytics Engineer

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 We are an AI-first analytics team. We don't use AI to augment traditional BI workflows — we've replaced them. The Finance Analytics team builds the intelligence layer that Strategic Finance runs on: AI agents that encode repeatable finance processes, Streamlit apps that surface real-time insight, semantic models that let any analyst query complex data in plain English, and workflow automations that collapse hours of manual work into a single prompt.

Our primary development environment is CoCo (Cortex Code), Snowflake's AI coding assistant, and SnowWork , the AI IDE we ship work in. Every deliverable on this team is built AI-first: you design the workflow, you write the prompt, you validate the output.

If you are still building dashboards by hand, refreshing Excel files manually, or treating AI as a spell-checker for your code — this role will ask you to operate differently. This is a high-breadth seat. One week you're building a new AI agent for quarterly revenue analysis; the next you're designing a sensitivity analysis tool for an earnings war room.

You are equally comfortable in an AI-IDE, a Python file, and a stakeholder summary for a senior finance leader. What you'll work on AI agent and workflow development (primary focus) Design and build skills and agentic experiences that encode repeatable finance workflows — revenue analysis, cost monitoring, earnings prep, headcount tracking — into reusable, invokable tools using CoCo and CoWork Write and iterate on prompt & skill structures (YAML + Markdown skill files) based on output quality and stakeholder feedback Build skills that allows non-technical finance analysts to produce analyst-quality output in a single prompt Evaluate model outputs rigorously — you are the quality gate before anything reaches a finance stakeholder Finance analytics Build and maintain quarterly and weekly revenue summary pipelines Support sensitivity analysis models for quarterly business reviews & revenue forecast scenarios Produce ad-hoc analysis for Strategic Finance Semantic Layer & Application development Own semantic layers end-to-end — model design, versioning strategy, verified query coverage, and accuracy iteration based on eval metrics; not just build models, but maintain the contract between the model and its consumers across each quarterly iteration Develop and deploy production finance dashboards as Streamlit apps (locally and deployed to Snowflake) Build customer-facing demo applications for Sales and Field teams Apply reusable component patterns and shared utility libraries for consistent, polished UI Earnings and reporting automation Participate in quarterly earnings cycle prep — scenario tooling, export automation, IR data requests Build and maintain source-of-truth reporting exports (multi-tab Excel, formatted to spec) Support ad-hoc disclosure and investor relations data needs during quarter-end Hard skills required Must-have AI-assisted development — You have used an LLM coding assistant (CoCo, Cursor, GitHub Copilot, Claude, or equivalent) as your primary development tool .

You know how to write a prompt that produces production-ready output, how to steer a model that's heading in the wrong direction, and how to encode domain logic into a reusable, parameterized skill. You have a measurable, trackable record of daily AI usage.

Prompt engineering and skill authoring — You can write a structured prompt (YAML + Markdown or equivalent) that routes correctly 95% of the time, handles edge cases gracefully, and encodes enough domain knowledge that the model behaves like a subject matter expert.

You think in terms of context, instructions, examples, and output format — not just "the thing I typed before the code came out." Python — Modern, type-hinted, readable. You write Python-based applications, data pipelines, and reporting automation.

You understand caching, session state, and how to structure a multi-page app cleanly. At the senior level: you've contributed to a shared library or package that others depend on, and you've designed agent orchestration systems — including parallel agent patterns with synthesis layers.

SQL — CTEs, window functions, incremental pipeline patterns. You don't look up the syntax for a row-numbered deduplication. Data modeling fundamentals — You understand bronze, silver, and gold data models conceptually and contribute to the gold layers and how they translate to semantic layer.

You know not just how to build a model, but how to version it, evaluate SQL generation accuracy, maintain a verified query library, and iterate based on real analyst feedback. A non-technical user should be able to query your model in plain English and get a correct answer.

Strong plus Snowflake Cortex — Cortex Analyst, Cortex Agents, AI_SUMMARIZE, AI_EXTRACT, Dynamic Tables, semantic views SnowWork / CoCo — Prior experience deploying agents, authoring skill files, or working within the Snowflake Intelligence ecosystem Finance literacy — You can read a revenue waterfall, distinguish ARR from NRR, and explain what drives a QoQ change in product revenue Reporting automation — openpyxl, multi-tab Excel exports formatted to spec, named ranges dbt — Model authoring, ref() patterns, YAML tests in a cloud warehouse context Semantic search / embeddings — Vector similarity, embedding-based retrieval, and how they power natural language analytics Soft skills required Translates between AI, data, and finance Your stakeholders are financial analysts and senior directors who think in Excel models and board decks.

You write prompts and code, but your output needs to make sense to someone who has never opened a terminal. You are the translation layer between what the model can do and what finance actually needs. You communicate complex ideas simply, ensuring stakeholders understand, trust, and can act on what you build.

You are the translation layer between what the model can do and what finance actually needs. You set the standard for how agents are built on this team. Junior analysts look to your skills and code as the reference implementation. You push back on shortcuts that create maintenance debt.

You don't wait to be asked to improve shared infrastructure. Thinks in workflows, not tasks You don't just answer a question — you build a tool that answers it forever. When asked to do something twice, you automate it. Your instinct is to encode work into a reusable agent, not to redo it manually each week.

At the senior level, this extends to the team: when the team does something repeatedly, you build the shared infrastructure that makes everyone faster. Works fast with high accuracy The role runs on a weekly cadence tied to finance deliverables.

You scope, build, and ship a working artifact in 1–2 days. Accuracy matters more than speed — but accuracy is not a reason to be perpetually slow. Comfortable with ambiguity The brief is often: "Can you build something like the earnings tool, but for sensitivity analysis?" You scope it, build a working prototype, and come back for feedback — not a list of clarifying questions.

Minimum requirements 3-5+ years of experience in analytics, data engineering, or a technical finance adjacent role Has used an AI coding assistant as a primary development tool — daily usage, not occasional Proficient in SQL — you can write a window function without looking it up Has shipped multiple Python applications that end-users actually interacted with; at least one is actively maintained in production Comfortable working in Git (PRs, branches, code review) Familiar with fiscal year concepts and core revenue metrics (ARR, bookings, NRR) What success looks like at 90 days You've taken ownership of the quarterly and weekly revenue analysis workflows — they run correctly on schedule without hand-holding You've shipped at least one Streamlit app to production or a demo application to the Finance Workloads team You've participated in at least one quarterly earnings cycle You've contributed a module, skill, or shared component to the team's shared infrastructure — something other analysts use without you having to explain it Why this role is unusual at this level This seat asks you to do all of that and build the AI infrastructure that makes the entire Finance Analytics team faster.

You are simultaneously a practitioner and a workflow engineer. If you are fluent with AI development tools, you can punch significantly above your level. At the senior level, you are not just building the infrastructure — you are deciding what it should be.

That means making architectural calls that hold across quarters, not just shipping the next feature. 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

Required skills

AI-assisted developmentprompt engineeringPythonSQLdata modelingSnowflake CortexSnowWorkreporting automationdbt
Posted on JobRush — the end-to-end AI job-search platform.