Enterprise Application Data Architect, GTM Systems
Define and improve data architecture for GTM systems and enterprise CRM. Lead Salesforce data modeling, integrations, governance, and quality initiatives across the customer lifecycle.
260k – 288k/yr
Hybrid7+ YOEData Engineering
About the role
Responsibilities
Define the target architecture for customer, account, contact, lead, opportunity, activity, campaign, and support data
Assess and improve Salesforce data across the lead-to-support lifecycle
Design canonical data models, entity relationships, identity-resolution rules, and system-of-record definitions
Lead data-cleansing and remediation initiatives, including deduplication, normalization, enrichment, validation, and historical cleanup
Establish matching, merging, and survivorship rules for people, companies, accounts, and related records
Architect integrations between Salesforce, data warehouses, operational systems, support platforms, and third-party data providers
Define standards for field definitions, lifecycle stages, ownership, metadata, lineage, retention, and access controls
Implement automated monitoring for data quality, completeness, freshness, consistency, and integration failures
Improve the flow of data between marketing, sales, customer success, and support systems
Evaluate third-party data sources and define how external data should be matched, validated, and incorporated into enterprise systems
Partner with Business Systems, Revenue Operations, Data Engineering, Analytics, Security, and business stakeholders to translate operational requirements into durable technical solutions
Produce architecture diagrams, data dictionaries, integration specifications, governance documentation, and implementation guidance
Provide technical leadership and guide teams through complex data architecture and system-design decisions
Support and improve integrations involving Salesforce and go-to-market data platforms such as Clay, PitchBook, ZoomInfo, HG Insights, Cognism, Harmonic, and Meticulate
Requirements
Deep expertise in enterprise data architecture, data management, data engineering, or a related technical discipline
Strong hands-on experience with Salesforce data architecture, including leads, contacts, accounts, opportunities, activities, campaigns, and support-related objects
Successfully cleaned, restructured, or migrated large and complex enterprise CRM datasets
Understand master data management, identity resolution, entity matching, deduplication, metadata management, data lineage, and data governance
Experience designing batch, API-based, event-driven, and reverse-ETL integrations
Advanced SQL skills
Understand relational databases, cloud data warehouses, APIs, data pipelines, integration platforms, and distributed data systems
Senior individual contributor leading data architecture for Snowflake's internal data platform. Defines standards in dbt modeling, RBAC, and AI tooling; partners with product teams and represents capabilities externally. Requires 8+ years experience with deep Snowflake and dbt expertise.
248k – 326k/yr
Hybrid8+ YOEData Engineering
Senior Manager, Data Engineering
JustworksNew York, NY
Lead the technical direction and team for Justworks' core data platform. Own architecture, infrastructure, and standards for pipelines, orchestration, and data governance while managing managers and ICs.
240k – 310k/yr
Hybrid10+ YOEData Engineering
Lead Data Engineer
EveUnited States
Lead the design and build of data warehouse architecture, ETL/ELT pipelines, and business data models for a high-growth SaaS company. Partner with cross-functional teams to enable self-serve analytics using modern data stack tools like Snowflake, dbt, and Airflow.
280k – 315k/yr
RemoteData Engineering
Senior Data Engineer
EliseAINew York, NY +1
Builds and owns data pipelines, ETL processes, and infrastructure to power reporting and decision-making. Requires 4+ years experience with Python, PostgreSQL, Snowflake, and data modeling.
240k – 300k/yr
On-site4+ YOEData Engineering
Lead Analytics Engineer
ZooxFoster City, CA
Lead the design and implementation of a unified semantic layer and data models from complex enterprise systems (SAP, Salesforce, Workday) to create AI-ready datasets that power intelligent agents, analytics, and decision-making. Requires 10+ years data engineering experience, semantic modeling expertise, and hands-on AI-generated code deployment.