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Custom Software Engineer

30+ days ago 2026/09/13
Other Business Support Services
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Job description

Project Role : Custom Software Engineer
Project Role Description : Design, build and configure applications to meet business process and application requirements.
Must have skills : SAP BTP Datasphere
Good to have skills : NA
Minimum 3 year(s) of experience is required
Educational Qualification : 15 years full time education
Summary
Build AI native, data centric products on SAP BTP Datasphere by combining strong enterprise data warehousing and semantic modeling expertise with agentic AI architectures (LLMs + tools + retrieval + evaluation). The focus is to move beyond dashboards into intelligent data experiences—data agents, conversational analytics, and grounded insights—built on governed Datasphere models and integrated enterprise sources.
SAP Datasphere is positioned as a data warehousing solution with integration capabilities.
Core Responsibilities
1) AI Native Data Product Engineering (on Datasphere)
Design and implement governed data products using Datasphere concepts such as Spaces and shareable models/views, enabling teams to explore, transform, and share curated datasets across domains.
Build semantic models that are fit for both analytics and AI consumption (clear entity definitions, measures, hierarchies, lineage-friendly design).
2) Retrieval + Grounding (RAG) over Enterprise Data
Create grounded AI experiences by connecting LLM applications to Datasphere s curated models and enterprise sources (SAP and non SAP), ensuring responses are traceable to governed data.
Engineer retrieval strategies that respect domain boundaries (spaces), freshness needs, and access controls, so AI outputs remain reliable and compliant.
3) Hybrid Modernization & Migration (BW bridge patterns)
Enable transition paths from legacy warehouse investments by leveraging approaches such as reusing SAP BW models and skills with Datasphere / BW bridge, supporting phased cloud modernization.
4) Lakehouse style Layering & Data Quality by Design
Implement layered design patterns (e.g., Bronze/Silver/Gold) to land raw data, cleanse/validate, and publish analytics ready models—while maintaining clear rules for what s exposed for consumption.
Embed quality controls, validation checks, and reproducible transformations as part of the delivery lifecycle.
5) Agentic Orchestration & Tooling
Build data agents that can plan, call tools (query/metadata/lineage), retrieve context, and generate answers with citations—backed by deterministic checks and fallback behaviors.
Implement prompt templates, tool schemas, and safe action boundaries for enterprise-grade usage.
6) Evaluation, Observability & Responsible AI
Establish offline/online evaluation loops (golden questions, regression suites, behavior tests) for conversational analytics and data agents.
Add telemetry for AI interactions (latency, grounding rate, failure modes) to improve reliability and cost efficiency.
7) Integration & Collaboration
Partner closely with business, data governance, and platform teams to align data products with real decisions and operational workflows.
Drive reusable patterns and accelerators for repeatable delivery across domains.
Primary Skills (AI Native Must Have)
SAP BTP Datasphere: data modeling, spaces, sharing patterns, enterprise semantic design.
Strong data warehousing fundamentals and ability to translate business domains into governed analytical models.
Hands-on building with LLMs + RAG (retrieval, grounding, prompt/tool design, evaluation).
Solid software engineering fundamentals: testability, CI/CD mindset, reliable integrations.
Secondary / Strongly Beneficial Skills
Migration/modernization experience leveraging BW bridge style transition patterns.
Layered architecture implementation (Bronze/Silver/Gold) for scalable analytics delivery.
Familiarity with vector search / embedding pipelines (when integrating external AI retrieval components).
What This Role Does Not Center On
Training foundation models from scratch (the emphasis is on building agentic apps and governed retrieval on enterprise data).
AI assisted only delivery this role owns the AI behavior (grounding, evaluation, safety) end to end.
Value Delivered
Faster path from data to decision through conversational + agentic analytics grounded in governed Datasphere models.
Scalable modernization of hybrid data estates via patterns like BW bridge.
Higher trust AI outputs by implementing layered quality + evaluation loops.
Additional Information
A 15 years full time education is required
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