Senior Data Engineer

Incedo Inc.
Austin, TX

Incedo Inc. is a high-growth Digital, Data and AI Transformation Specialist firm headquartered in New Jersey. We

are a long-term strategy execution partner for Fortune 500 enterprises, operating at the intersection of business

and technology across Banking & Payments, Wealth Management, Telecom, Hi-Tech, and Life Sciences.

We are building Incedo 4.0 - an AI-native, execution-focused, founder-led organization designed for scale, speed,

and long-term impact.

Incedo delivers ROI from AI @ Scale through the “Power of 3”:

• Deep domain expertise

• AI & Data capabilities

• Engineering & Operations excellence


Data Engineer — Wealth Management Platform

We are seeking a skilled Data Engineer with a strong wealth management background to join our data and technology team. This role sits at the intersection of financial data and modern cloud engineering — you will design, build, and maintain the data pipelines and infrastructure that power our advisor and client reporting, reconciliation processes, and platform integrations.

The ideal candidate brings hands-on experience with Databricks and the Microsoft cloud ecosystem, a deep understanding of wealth management data domains, and the ability to leverage AI tooling to accelerate their daily work.

Key Responsibilities

Data Pipeline Development & Engineering

  • Design, build, and maintain scalable data pipelines using Databricks and Azure cloud services
  • Develop and optimize PySpark and Python-based ETL/ELT workflows for ingesting, transforming, and serving wealth management data
  • Build and manage data models that support advisor, account, client, position, transaction, and security datasets
  • Ensure data pipelines meet performance, reliability, and latency requirements for downstream consumers


Financial Data & Reconciliation

  • Reconcile financial datasets across custodians, internal systems, and third-party data providers — identifying and resolving breaks at the position, transaction, and account level
  • Partner with operations and service teams to investigate and resolve data discrepancies impacting advisors and clients
  • Implement data quality checks, validation rules, and alerting to proactively catch data integrity issues
  • Support the build-out of reconciliation frameworks that scale across growing data volumes and entity counts


Cloud Infrastructure & Platform

  • Build and manage data infrastructure on Microsoft Azure, including Azure Data Factory, Azure Data Lake, and related services
  • Contribute to the architecture and governance of the data lakehouse environment within Databricks (Delta Lake, Unity Catalog)
  • Collaborate with platform and DevOps teams on CI/CD pipelines, environment management, and data infrastructure as code


AI-Augmented Engineering

  • Actively leverage AI coding assistants and automation tools (e.g., GitHub Copilot, Claude, ChatGPT) to accelerate development, code review, and documentation
  • Identify opportunities to apply AI/ML techniques to financial data problems such as anomaly detection, break prediction, or data classification
  • Stay current on emerging AI tooling and bring practical recommendations to the team

Required Qualifications

  • 5–8 years of experience in data engineering, with direct exposure to wealth management data domains
  • Databricks Certified (Associate or Professional) or demonstrated deep, hands-on Databricks expertise in a production environment
  • Proficiency in Python and PySpark for building and optimizing large-scale data pipelines
  • Hands-on experience with Microsoft Azure cloud services (Azure Data Factory, Azure Data Lake Storage, Azure Synapse, or equivalent)
  • Direct experience working with wealth management data including positions, transactions, accounts, clients, advisors, and security master data
  • Experience reconciling financial datasets across custodians, platforms, or internal systems
  • Strong understanding of data modeling, ETL/ELT patterns, and data warehouse or lakehouse architecture
  • Demonstrated use of AI tools in day-to-day engineering work — this is not optional; we expect engineers to be actively leveraging AI to move faster and work smarter

Preferred Qualifications

  • Experience with Delta Lake, Unity Catalog, or Databricks Asset Bundles
  • Familiarity with custodial data feeds and formats (Schwab, Fidelity, Pershing, or similar)
  • Exposure to advisor technology platforms such as Addepar, Black Diamond, Envestnet, Orion, or Tamarac
  • Experience with dbt (data build tool) for transformation layer development
  • Knowledge of financial instruments including equities, fixed income, alternatives, and managed accounts
  • Familiarity with data governance, data lineage, and metadata management practices
  • Experience in a fintech, WealthTech, RIA, or asset management environment

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