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Financial Data Architect

Job

Q One Inc.

Remote

Full-Time

Posted 3 days ago (Updated 12 hours ago) • Actively hiring

Expires 7/20/2026

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Job Description

Financial Data Architect at Q One Inc. Financial Data Architect at Q One Inc. in Calabasas, California Posted in 42 minutes ago.
Type:
full-time
Job Description:
Financial Data ArchitectQ One -
Market Intelligence Operating System Location:
Remote Employment Type:
Full-Time Compensation:
Competitive Salary + Equity + Performance Bonus About Q One Q One is building an AI-powered Market Intelligence Operating System that transforms complex financial and economic data into actionable intelligence. We are seeking a Financial Data Architect to design and govern the core financial data model that powers our analytics, AI, quantitative research, and market intelligence systems. This role will be responsible for creating a unified framework that connects market data, fundamentals, macroeconomic indicators, corporate actions, alternative data, and security reference data into a single institutional-grade architecture. Responsibilities Design and maintain Q One's enterprise financial data architecture. Build and govern the security master framework.
Develop data models for:
Equities Futures Options Fixed Income FX Commodities Cryptocurrencies Create entity relationship models for issuers, securities, exchanges, and instruments. Design corporate actions processing architecture. Build symbol mapping and instrument normalization frameworks. Establish data governance, lineage, metadata, and quality standards. Define financial data taxonomies and classifications. Partner with data engineering, AI, and quantitative teams to ensure consistent data definitions across the organization. Ensure data structures support both real-time and historical analytics. Must-Have QualificationsFinancial Markets Expertise Strong understanding of: Equities Futures Options Fixed Income Foreign Exchange Market Structure Security Master Design Corporate Actions Data Architecture Experience designing: Enterprise Data Models Financial Data Warehouses Data Governance Frameworks Metadata Management Systems Data Lineage Architecture Data Platforms Strong experience with: Snowflake PostgreSQL SQL Server ClickHouse Databricks Technical Skills Advanced SQL Python Data Modeling ETL/ELT Architecture API Integration Data Quality Management Financial Data Vendors Experience with one or more: Bloomberg FactSet Morningstar Refinitiv / LSEG S&P Global ICE Data Services Strongly Preferred Previous experience at: Bloomberg FactSet Refinitiv / LSEG S&P Global Morningstar Nasdaq CME Group BlackRock State Street Goldman Sachs OR Graduates from: Carnegie Mellon MIT Stanford Berkeley Princeton Columbia NYU What Success Looks LikeFirst 90 Days Design Q One's enterprise financial data model. Implement security master architecture. Define instrument and entity classification standards. Establish data governance and quality controls. First 12 Months Build a unified financial intelligence framework. Standardize all financial datasets across the platform. Create scalable data structures supporting AI, quantitative research, and institutional analytics. Serve as the foundation for every investment intelligence product developed by Q One. Ideal Candidate You understand financial data at a structural level. You know how securities, issuers, exchanges, corporate actions, and market events connect together and can design architectures that transform fragmented information into a single source of truth for investors, researchers, and AI systems.