Data & Backend Architect – Azure Data Brick, Data Layer (Claude AI–Driven)
Product Development, Sustenance, Modernization & Agentic AI infusion
Travel: 25% only if required during active client engagements
Experience Level: 15+ years
Key Responsibilities
- Architect and build the core backend systems that power cross-portfolio data normalization, scalable reporting layers, and analytics-ready data platforms.
- Design and implement backend services, APIs, and data pipelines using an Azure-based stack (Azure Web Apps, Microsoft Fabric), ensuring high performance, scalability, and production readiness.
- Structure and deliver data models and transformation pipelines that standardize disparate portfolio company data into a consistent, queryable format for dashboards and downstream analytics
- Enable natural-language and ad hoc analytics capabilities by building backend systems that support AI-driven querying over normalized enterprise data.
- Leverage Claude AI extensively as an engineering productivity accelerator—driving faster GTM through rapid prototyping, code generation, debugging, and design exploration across the development lifecycle.
- Establish and scale Claude-driven development practices to improve engineering velocity, reduce cycle times, and enhance code quality and consistency within the embedded team.
- Own backend technical design for platform evolution, translating product requirements into robust, scalable backend implementations in close collaboration with the client’s product team.
- Operate as a fully embedded engineer within the client team, contributing to day-to-day development, design reviews, and delivery workflows aligned to a dedicated, full-time engagement model.
- Maintain high engineering standards including code quality, testing rigor, modular architecture, and maintainability across all backend deliverables.
- Drive execution discipline and delivery outcomes, ensuring backend systems are production-grade, aligned with roadmap timelines, and optimized for rapid iteration enabled by Claude AI.
-
Required Qualifications
- 15+ years of software engineering experience, including 5+ years at Principal Architect / Senior IC level building large-scale backend and data platforms in enterprise environments.
- Proven experience designing and delivering data-intensive backend systems that support reporting, analytics, and multi-source data normalization at enterprise scale.
- Demonstrated ownership of backend architecture and delivery for at least two large platform programs with measurable outcomes (scalability, performance, usability, or time-to-market improvements).
- Active hands-on coder, currently writing production-grade backend code, reviewing pull requests, and driving reference implementations.
- Strong experience working in embedded/forward-deployed engineering models, collaborating directly with product teams and stakeholders to translate evolving requirements into backend systems
- Extensive usage of Claude AI or equivalent AI coding assistants as a core development accelerator—demonstrated impact on engineering velocity, code quality, and GTM timelines.
-
Backend & Data Platform Engineering (Required — Primary Focus Area)
- Strong expertise in backend development using modern service-oriented and API-driven architectures (REST, gRPC, event-driven patterns).
- Experience designing data ingestion, transformation, and normalization pipelines for heterogeneous enterprise data sources.
- Deep understanding of scalable data modeling for reporting, dashboards, and analytics consumption layers.
- Proven ability to build backend systems that enable ad hoc querying and analytics over structured datasets.
- Expertise in distributed systems design, including fault tolerance, performance optimization, and scalability patterns.
-
Cloud & Azure Stack (Required — Primary Focus Area)
- Hands-on experience with Azure-based backend systems, including App Services / Web Apps and cloud-native service design.
- Experience working with modern cloud data platforms, including Microsoft Fabric or equivalent (data lake, warehouse, transformation pipelines).
- Familiarity with building backend systems that integrate with AI and analytics layers, supporting natural-language or advanced querying use cases.
- Strong understanding of cloud-native observability, deployment patterns, and performance tuning.
-
Claude AI–Driven Engineering (Required — Differentiator)
- Extensive hands-on usage of Claude AI for software development, including:
- Code generation and rapid prototyping
- Debugging and optimization
- System design exploration
- Documentation and knowledge capture
- Demonstrated ability to accelerate GTM timelines using Claude AI, reducing development cycle times while maintaining high quality.
- Experience establishing Claude-driven development workflows and best practices within engineering teams.
- Ability to balance AI-assisted development with strong engineering judgment, ensuring maintainable, production-grade code.
-
Engineering Excellence & Delivery (Required)
- Strong grounding in engineering best practices: code quality, modular architecture, testing discipline, and maintainability
- Experience delivering in time & materials or roadmap-driven engagements, adapting to evolving scope and priorities
- Excellent problem-solving and system design skills, with the ability to operate independently in high-ownership IC roles
- Strong communication skills, including working with product managers and stakeholders to shape technical solutions
-
Microsoft Fabric & Analytics Layer (Required)
- Experience with Microsoft Fabric (OneLake, Lakehouse, Warehouse, data pipelines) for building analytics-ready platforms
- Understanding of reporting and dashboarding ecosystems (e.g., Power BI or equivalent)
- Awareness of designing data platforms optimized for downstream analytics and ad hoc insights generation
• Preferred Qualifications Microsoft certifications relevant to data and cloud platforms: Azure Solutions Architect Expert, Azure Data Engineer Associate, Azure AI Engineer Associate, Microsoft Fabric Analytics Engineer or equivalent.
• Demonstrated use of Claude AI (or equivalent AI coding assistants) to accelerate software delivery, with proven impact on reducing development cycle times and improving engineering productivity.
• Contributions to the engineering community, such as conference speaking, open-source contributions, or technical writing in backend systems, data platforms, or AI-enabled development practices.
• Industry experience in one or more of the following domains: Private Equity portfolio platforms, financial services, enterprise SaaS, or data-driven digital products.
• Experience working on data platform initiatives for multi-entity or portfolio-based organizations, including standardization and normalization of distributed data sources.
• Exposure to analytics-driven product platforms, including systems powering dashboards, reporting, and ad hoc insights generation.
• Experience operating in high-velocity, embedded delivery models, including partnerships with product teams, evolving roadmaps, and rapid GTM expectations.