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Overview
Lead / Manager

Lead CX Business Intelligence Analyst

Confirmed live in the last 24 hours

Gusto

Gusto

Compensation

$132,210 - $200,000/year

Denver, CO;San Francisco, CA;New York, NY;Las Vegas, NV;Chicago, IL;Phoenix, AZ
Hybrid
Posted March 26, 2026

Job Description

 


About Gusto

At Gusto, we're on a mission to grow the small business economy. We handle the hard stuff—like payroll, health insurance, 401(k)s, and HR—so owners can focus on their craft and customers. With teams in Denver, San Francisco, and New York, we’re proud to support more than 400,000 small businesses across the country, and we’re building a workplace that represents and celebrates the customers we serve. Learn more about our Total Rewards philosophy

About the Role:

Gusto’s Customer Experience team is evolving how we serve small businesses — launching new service models, migrating telephony platforms, and building data infrastructure to support it all. We’re looking for a Senior Analytics Engineer to own the data layer that makes this possible.

This isn’t a typical analyst role. You’ll spend roughly half your time building and refining ELT pipelines (new API integrations, telephony data, evolving process data) and the other half translating that data into dashboards, metrics, and insights that CX leaders use to make decisions. You’ll be the data engineering lead for CX — partnering with our centralized Data Engineering team while driving the priorities, definitions, and architecture for CX-specific data.

About the Team:

The CX Data & Insights team provides the analytical backbone for Gusto’s Customer Experience organization. We build scalable reporting, define operational metrics, and partner with CX leaders to turn data into action. You’ll work alongside analysts, workforce management and support partners, data science and engineering teams — and you’ll have a seat at the table when decisions are being made about how we measure and improve the customer experience.

Here’s what you’ll do day-to-day:

  • Design, build, and maintain ELT pipelines for CX data sources — including new API integrations, and evolving operational processes.
  • Lead CX data engineering workstreams in close partnership with the centralized Data Engineering team. You set the priorities and define what’s needed; they help you scale it.
  • Navigate messy, conflicting data sources (yes, there will be 50+ tables that don’t agree) to establish reliable sources of truth and well-documented metric definitions.
  • Build and maintain data models that support forecasting, capacity planning, agent performance, and service-level tracking.
  • Develop and maintain automated dashboards and reports for day-to-day operations and executive readouts.
  • Conduct deep-dive analyses to uncover growth opportunities, diagnose performance issues, and shape CX strategy.
  • Translate complex findings into clear, concise recommendations — lead with the conclusion, then show the work.
  • Partner directly with CX leaders to define what we should measure, why it matters, and how to act on it.

Here’s what we're looking for:

  • 4+ years of experience in Data Analytics, Data Engineering, or Data Governance
  • Proficient in SQL and Python, capable of querying and analyzing large datasets with ease.
  • Strong analytical skills, with the ability to interpret complex data and provide actionable insights.
  • Proven ability to work with messy, undocumented data: reconciling conflicting sources, defining metrics from scratch, and documenting your decisions and trade-offs along the way.
  • Clear, direct communication style. You can explain a complex data investigation to a non-technical stakeholder in 1–2 sentences before diving into the detail.
  • Comfortable working independently, managing competing priorities, and driving projects forward without waiting for perfect requirements.

Our cash compensation amount for this role is $132,210/yr to $165,263/yr in Denver & most major metro locations, and $160,000/yr to $200,000/yr for San Francisco & New York. Final offer amounts are determined by multiple factors including candidate location, experience and expertise and may vary from the amounts listed above.

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