Goody Gifting is a modern business gifting platform designed to simplify the process of sending thoughtful, personalized gifts at scale. The company provides a
Data Analyst
Location
United States
Posted
91 days ago
Salary
$80K - $140K / year
Seniority
Senior
Job Description
Data Analyst
Goody Gifting
• Design and own **business-critical metrics** (definitions, edge cases, documentation) • Build **clean, reusable SQL models** (transformation layer) that become source-of-truth datasets • Partner with stakeholders to turn ambiguous questions into clear analytical deliverables • Create self-serve datasets and lightweight reporting so teams can answer questions without bottlenecks • Improve data reliability: sanity checks, reconciliations, and data quality monitoring (as available) • Contribute to analytics best practices (naming, documentation, metric governance)
Job Requirements
- 5–6 years experience in analytics / data analysis / analytics engineering
- Strong SQL: can model data cleanly, handle edge cases, optimize queries, and explain logic
- Comfortable defining metrics and pushing for clarity (“what decision are we making?”)
- Strong communication: can work with non-technical stakeholders and document clearly
- Experience with a cloud data warehouse (e.g. Snowflake, BigQuery, Redshift) and BI tools (eg. Tableau, Looker)
- Nice-to-haves
- DBT (or similar transformation tooling) experience
- Familiarity with experimentation, funnels, retention, attribution (helpful for Growth)
- Basic Python for analysis (not required)
- Experience with data quality tooling / monitoring
Benefits
- 100% remote work
- Group medical, dental, and vision coverage insurance (with opt-out benefits)
- 401k
- Stock options
- Open PTO, with a company-wide summer break designed to counterbalance the demands of the year-end holiday season.
- Paid parental leave benefits
- Annual company offsite – past locations include Cabo, San Diego, and Banff
- $100/month reimbursement for wellness
- $500 annual education stipend
- Lots of Goodys!
Related Guides
Related Categories
Related Job Pages
More Data Analyst Jobs
Data Analyst, Pharmaceutical Industry
Underscore MarketingMedia strategy and analytics for pharma, specializing in rare disease and oncology, helping brands drive real ROI
• Perform extensive SQL-based data transformations, integrating data from multiple internal and external sources (e.g., claims, media, CRM, EHR-derived datasets). • Define, validate, and govern metrics aligned to pharmaceutical business questions (e.g., brand performance, HCP engagement, patient journeys). • Apply statistical reasoning to analyze trends, identify drivers of performance, and ensure analytical rigor in insights and recommendations. • Maintain and iterate on analytical datasets and workflows as new data is ingested. • Conduct thorough exploratory data analysis (EDA) to uncover patterns, anomalies, and opportunities within complex healthcare datasets. • Interpret and translate analytical findings into clear business insights, tailored for stakeholders across marketing, analytics, strategy, and leadership teams. • Manually scrub, structure, and normalize data as needed to ensure data quality and analytical readiness, particularly for deep-dive analyses. • Prepare datasets to support advanced analytics, including exploratory and explanatory machine learning techniques, ensuring accuracy, consistency, and scalability. • Develop data visualizations and dashboards that clearly communicate insights and support decision-making. • Collaborate cross-functionally with data science, technology, media, strategy, and client-facing teams to align analyses with business needs. • Document methodologies, assumptions, and data limitations to support transparency and reproducibility.
• Design and maintain robust data transformations and mappings to convert raw medical claims into standardized canonical models. • Perform detailed data quality audits to detect, troubleshoot, and resolve issues impacting accuracy and completeness. • Write and optimize Spark SQL queries to validate data pipelines and support ongoing analytics. • Document data transformation logic and lineage to ensure transparency and reusability. • Collaborate cross-functionally with business stakeholders to translate data needs into technical specs. • Support onboarding of new client data feeds, ensuring smooth integration with minimal disruption. • Partner with data engineers to build and scale data pipelines, improving performance and reliability. • Act as a subject matter expert for healthcare claims data—advising on risk, trends, and business impact. • Work closely with data scientists to enable advanced analytics, ML models, and reporting use cases. • Troubleshoot ETL workflows and performance issues, driving continuous improvement in data architecture.
Data Analyst
Spectrum Comm IncMission focused | Delivering Exceptional Solutions | Operations and Digital Support | Management Consulting
• Work with stakeholders to improve and implement air force acquisition data/analysis capability. • Develop and maintain dashboards and analytical applications using Qlik Sense. • Collect, clean, and validate supplier and company data from multiple sources. • Maintain and manage structured data sets to ensure data accuracy and integrity. • Develop and maintain SQL queries, stored procedures, and database objects. • Administer and manage a small Microsoft Azure hosted SQL Server environment. • Perform advanced data analysis using Microsoft Excel (pivot tables, Power Query, formulas, automation). • General Data manipulation, automation, and exploratory analysis. • Generate recurring and ad hoc reports to support operational and strategic decisions. • Identify data discrepancies and implement corrective actions. • Collaborate with stakeholders to define reporting requirements and deliver actionable insights. • Ensure compliance with USAF and DoD policies.
Data Analyst
NextLink GroupIT services specialists since 1996. We enable success through simplicity, flexibility, and innovation.
• Remote position. • Analyze business requirements and translate them into technical specifications. • Develop and implement solutions based on data analysis. • Collaborate with cross-functional teams to ensure successful project delivery.



