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Remote Insurance Data Analytics Jobs in Utah (NOW HIRING)

This is a remote role that is part of the Finance department and reports to the Director of Data & Analytics. YOUR RESPONSIBILITIES * Partner directly with stakeholders across the business (Product ...

Senior Data Analyst - Remote

Draper, UT ยท On-site +1

$80K - $101K/yr

Serve as a senior analytics partner to the Credit team, providing data-driven insights across credit risk, portfolio performance, underwriting, and loss mitigation * Develop, optimize, and maintain ...

Senior Data Analyst

Murray, UT ยท On-site +1

$80K - $101K/yr

... predictive analytics to join our team. The ideal candidate will combine strong statistical ... Basic Employee Life Insurance - company-paid * Voluntary Dependent Life Insurance * Voluntary ...

Data Engineer (MedInsight)

Salt Lake City, UT ยท On-site +1

$93K - $177K/yr

Analyze and improve data intake processes and optimize SparkSQL/Python workloads for performance ... Location This role can be remote within the U.S. The expected application deadline for this job is ...

Sales Ops Data Analyst In Office /Remote: /Hybrid Exempt / Non-exempt Based: Manila, Philippines Job Purpose: Navitas Semiconductor (Nasdaq: NVTS) is a next-generation power semiconductor leader ...

Data Engineer

Lehi, UT ยท On-site +1

$107K - $129K/yr

Standardize analytics workflows by integrating software engineering best practices, including ... Medical, dental, and vision insurance * Generous PTO * 11 paid company holidays * Hybrid work model ...

Data Engineer

Lehi, UT ยท On-site +1

$107K - $129K/yr

Standardize analytics workflows by integrating software engineering best practices, including ... Medical, dental, and vision insurance * Generous PTO * 11 paid company holidays * Hybrid work model ...

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Remote Insurance Data Analytics information

What is the difference between Remote Insurance Data Analytics vs Remote Insurance Underwriter?

AspectRemote Insurance Data AnalyticsRemote Insurance Underwriter
Required CredentialsBachelor's in Data Science, Statistics, or related field; often certifications in data analysis or analyticsBachelor's in Business, Finance, or related; often requires insurance licensing or certifications
Work EnvironmentPrimarily data analysis, modeling, and reporting; often collaborative with IT and actuarial teamsAssessing risks, reviewing applications, making underwriting decisions; involves communication with agents and clients
Employer & Industry UsageUsed across insurance companies, reinsurers, and brokers for data-driven decision makingUsed by insurance carriers to evaluate and approve policies

Remote Insurance Data Analytics focuses on analyzing insurance data to inform business decisions, while Remote Insurance Underwriters evaluate individual insurance applications to determine coverage. Both roles are essential in the insurance industry but differ in daily tasks and required skills.

What is remote insurance data analytics?

Remote insurance data analytics is the practice of analyzing insurance-related data, such as claims, risk assessments, and customer information, from a location outside of a traditional office setting. Professionals in this field use statistical methods, data mining, and machine learning tools to identify patterns, detect fraud, and help insurance companies make data-driven decisions. This remote role often requires proficiency in data analysis tools like SQL, Python, or R, and a strong understanding of insurance industry concepts. Remote insurance data analysts collaborate with teams virtually to provide insights and support business strategies, making it a flexible career option.

How do Remote Insurance Data Analytics professionals typically collaborate with cross-functional teams to drive business insights?

Remote Insurance Data Analytics professionals often work closely with underwriters, actuaries, claims managers, and IT teams to gather data requirements, interpret findings, and implement data-driven solutions. Collaboration usually happens through virtual meetings, collaborative dashboards, and project management tools to ensure clear communication and alignment on objectives. This cross-functional approach helps identify trends, optimize risk assessments, and support strategic decision-making within the organization. Building strong relationships with team members across departments is key to successfully translating analytical results into actionable business strategies.

What are the key skills and qualifications needed to thrive as a Remote Insurance Data Analytics professional, and why are they important?

To excel in Remote Insurance Data Analytics, you need strong analytical skills, a background in statistics or mathematics, and typically a degree in data science, actuarial science, or a related field. Familiarity with data analysis tools like SQL, Python, R, and specialized insurance analytics platforms such as SAS or Tableau, as well as relevant certifications, is highly valuable. Attention to detail, problem-solving abilities, and effective communication set candidates apart in this role. These skills are crucial for transforming complex insurance data into actionable insights that drive informed business decisions and risk assessments.
What are the most commonly searched types of Insurance Data Analytics jobs in Utah? The most popular types of Insurance Data Analytics jobs in Utah are:
What are popular job titles related to Remote Insurance Data Analytics jobs in Utah? For Remote Insurance Data Analytics jobs in Utah, the most frequently searched job titles are:
What job categories do people searching Remote Insurance Data Analytics jobs in Utah look for? The top searched job categories for Remote Insurance Data Analytics jobs in Utah are:
What cities in Utah are hiring for Remote Insurance Data Analytics jobs? Cities in Utah with the most Remote Insurance Data Analytics job openings:
Data Analyst

Data Analyst

Stio

Salt Lake City, UT โ€ข Remote

Full-time

Medical, Dental, Vision, Retirement, PTO

Posted 11 days ago


Job description

ABOUT US

Stio is an omni-channel mountain brand that designs, develops and sells beautiful, functional, and innovative apparel, footwear and other accessories infused with the soul of the mountain lifestyle. With headquarters in Jackson, Wyoming, Stio draws inspiration from the surrounding Teton Range and offers product via Stio.com, catalog, B2B and its Mountain Studio retail locations.

We live and love mountain life, and as such see ourselves as caretakers of the resources that provide it. We are proud partners of Protect Our Winters and the Conservation Alliance among many other organizations. We have a strong preferred materials platform, use Bluesign approved textiles wherever possible, audit our supply chains for best practices, and operate our workplaces responsibly.

We think that outside is the best side and that you can't improve on nature. It's good for mind, body and soul, and it's our responsibility to help enable access for all people, regardless of race, gender, beliefs, background or ability. We strive for inclusion at Stio and in our local and national communities.

YOUR ROLE

The Data Analyst is a key early member of Stio's Data & Analytics team, working alongside the Director of Data & Analytics to expand how the business uses data to make decisions. This is a full-stack, horizontal role: the work spans data infrastructure (ingestion, modeling, transformation) through analysis, BI development, and direct stakeholder partnership across Finance, Merchandising, Marketing, Operations, Inventory Planning, and B2B. You'll work where the highest-leverage problems are and grow the breadth and depth of the analytics function in the process.

You'll work in a stack built around Snowflake, Fivetran, dbt, Power BI, GitHub, and increasingly Python in addition to SQL and R. AI-assisted development is the default form factor for the team. Most of the code we ship is written collaboratively with AI agents in tools like Claude Code, then reviewed, tested, and iterated. The expectation is not that you arrive an expert in AI tooling. The expectation is that you bring strong fundamentals - the kind of data and modeling intuition that lets you catch silently wrong AI output that runs cleanly and passes tests - and that you're genuinely curious about how this part of the craft is evolving. As an early team member, you'll help shape how we work in this environment, not just execute someone else's playbook.

We're looking for an analyst who connects what they see in the data to the bigger picture and who has a strong bias for tying analysis to action. The right person doesn't hesitate to sweep the floor (fix a broken Excel link), isn't afraid to question the status quo (does this metric actually measure what it claims to?), and would rather quickly solve a pressing business problem with simple analysis than build a sophisticated model that collects dust. A foundation of technical skills is essential. Even more important is an eagerness to learn new things, sound judgment under ambiguity, and a desire to drive positive progress at Stio.

This is a remote role that is part of the Finance department and reports to the Director of Data & Analytics.

YOUR RESPONSIBILITIES

  • Partner directly with stakeholders across the business (Product Development, Marketing, DTC, B2B, Finance, Operations, Inventory Planning) to translate ambiguous questions into well-defined analyses, dashboards, and data products. You'll own these end-to-end: scoping, building, validating, and communicating findings.
  • Build and maintain dbt models that turn raw source-system data into trustworthy, well-documented datasets. Write the tests and documentation that let both humans and AI agents downstream rely on the work.
  • Develop and maintain the semantic context, dashboards, and reports that the rest of the business uses to operate day-to-day.
  • Own metric definitions and business semantics. Drive alignment when stakeholders disagree on what a definition or number means.
  • Review and harden AI-generated SQL, dbt models, and Python code with the judgment to catch issues that pass tests but are semantically wrong. The majority of your output will be code you've collaborated on with AI agents, and you'll bring the data intuition that makes that work trustworthy.
  • Investigate ambiguous data questions where the answer isn't in the schema: talk to source-system owners, investigate edge cases, reconcile conflicting definitions, and improve our model of the business.
  • Help build and maintain Stio's data infrastructure - currently Snowflake, Fivetran, dbt, GitHub, Power BI, R, and Python - and contribute to decisions about where the stack should evolve.
  • Improve data governance for both the Data & Analytics team and the business at large by creating documentation that's actually useful and that AI agents can consume as context for future work.
  • Continuously develop your skills as the practice of data analytics evolves. This is a real part of the job, not something done on the side.

YOUR SKILLS AND EXPERIENCE

  • 3+ years of professional experience as a data analyst, analytics engineer, or similar role
  • Advanced SQL: CTEs, window functions, comfortable wrangling messy real-world data, can read and reason about query plans well enough to know when something is off
  • Hands-on experience with dbt, including writing models, tests, and documentation. You don't need to have built a dbt project from scratch, but you should be comfortable contributing to one and know what good looks like
  • Experience with cloud data warehouses (Snowflake, BigQuery, Databricks, Redshift, Microsoft Fabric, or similar)
  • Version control with Git/GitHub as part of your normal workflow
  • Experience as a developer with at least one BI tool (Power BI, Tableau, Looker, Omni, or similar)
  • A real point of view on AI-assisted development for analytics work - what it's actually good at, where it falls down, what you do to make the output trustworthy
  • History of building collaborative, trusting relationships with non-technical stakeholders
  • Comfort presenting findings to leadership verbally, in writing, and visually

PREFERRED ADDITIONAL SKILLS AND EXPERIENCE

Though not required, we would consider the following as an added plus:

  • Working knowledge of Python and/or R for analysis
  • Experience with the components of our data stack (Snowflake, Fivetran, dbt, GitHub, Power BI, Python, R, Claude Code, Codex)
  • Experience with some of the systems we use: NetSuite, Shopify, Google Analytics, Segment, Klaviyo
  • Professional experience at a DTC or omni-channel retail, apparel, footwear, or outdoor company
  • Experience working in a small or solo data team where you owned the work end-to-end

THE FINE PRINT

  • Must be able to work in a stationary position 50% - 75% of the work day
  • Medical, Dental Vision plans
  • Company Paid Long Term Disability
  • Employee Assistance Programs
  • 401k with Match
  • Generous paid time off policies
  • Gear test, perks and more

We provide competitive compensation packages, inclusive of base pay, incentives and benefits. The base salary range for this role is $85,000-$100,000. It would not be typical for someone to be hired at the top end of the range for the role, as actual pay will be determined based on several factors including experience, skills, and qualifications.

This job description is not necessarily an exhaustive list of all responsibilities, skills, duties, requirements, efforts, or working conditions associated with the job. While this is intended to be an accurate reflection of the current job, we reserve the right to revise the job or to require that other or different tasks be performed. Stio is an equal opportunity employer of all qualified individuals, including minorities, BIPOC, LGBTQ+, veterans & individuals with disabilities.