A
Custom Software Engineer
Accenture(Other)
Job Publish Date: 19 hours ago
Hyderabad, IndiaFull Time3 - 5 YearsWork From OfficeSource : Foundit
Job Description
Project Role : Custom Software Engineer
Project Role Description : Develop custom software solutions to design, code, and enhance components across systems or applications. Use modern frameworks and agile practices to deliver scalable, high-performing solutions tailored to specific business needs.
Must have skills : SAP BusinessObjects Data Services
Good to have skills : NA
Minimum 3 Year(s) Of Experience Is Required
Educational Qualification : 15 years full time education
Summary
AI Powered Tech Talent
Build AI native data integration and data quality platforms using SAP BusinessObjects Data Services (BODS) by combining deep ETL, data management, and metadata expertise with agentic AI patterns (LLMs + tools + retrieval + evaluation). This role focuses on moving beyond traditional batch ETL into intelligent, self optimizing data pipelines that can reason about data structures, detect anomalies, recommend transformations, and accelerate data modernization—without training foundation models from scratch.
Core Responsibilities
Implement robust batch and near real time data pipelines supporting analytics, reporting, data warehousing, and downstream applications.
Build reusable data flows, workflows, and transforms aligned to enterprise data architecture standards.
Implement data enrichment, standardization, and harmonization logic across multiple source systems.
Apply canonical data modeling practices to reduce duplication and point to point complexity.
Build profiling and validation pipelines to assess data completeness, accuracy, consistency, and timeliness.
Support governance requirements through lineage-aware jobs, audit trails, and traceable transformations.
Enable conversational exploration of data pipelines (e.g., why did this record fail , what changed in yesterday s load ) with grounded, auditable outputs.
Establish evaluation harnesses for AI behaviors: golden datasets for transformations, accuracy checks for generated rules, and drift detection.
Gate releases of ETL logic and AI-generated artifacts through measurable quality thresholds.
Implement error handling, restartability, idempotency, and recovery mechanisms to support reliable operations.
Monitor pipelines and proactively identify bottlenecks, failures, or data degradation patterns.
Perform root cause analysis for load failures and data issues document and automate preventive actions.
Use AI augmented diagnostics to cluster recurring issues and recommend remediation steps grounded in runbooks and past incidents.
Assist in transitioning legacy ETL logic toward more modular, metadata driven, and AI augmented data architectures.
Collaborate with data architects, analytics teams, and platform engineers to deliver end to end data solutions.
Primary Skills (AI Native Must Have)
Strong hands on expertise in SAP BusinessObjects Data Services (BODS) ETL development and operations.
Solid understanding of data integration patterns, transformation logic, and enterprise data quality practices.
Experience designing reliable, scalable data pipelines with performance and governance in mind.
AI native capability: tool augmented workflows, retrieval grounded recommendations, evaluation loops, and safe automation boundaries.
Secondary / Strongly Beneficial Skills
Data warehousing and analytics fundamentals (facts, dimensions, hierarchies, reconciliation).
Metadata management, lineage concepts, and data governance frameworks.
Experience integrating ETL platforms with cloud data ecosystems and modern analytics tools.
Scripting or automation skills to support pipeline orchestration and operational tooling.
What This Role Does Not Center On
Training or fine tuning foundation AI models.
Manual, opaque ETL development without observability or measurable quality controls.
Value Delivered
Faster data pipeline development through intelligent ETL scaffolding and grounded recommendations.
Higher data trust via automated quality rules, anomaly detection, and evaluation loops.
Scalable, modern data integration foundations that support analytics, AI, and enterprise decision making.
Additional Information
A 15 years full time education is required., 15 years full time education
Project Role Description : Develop custom software solutions to design, code, and enhance components across systems or applications. Use modern frameworks and agile practices to deliver scalable, high-performing solutions tailored to specific business needs.
Must have skills : SAP BusinessObjects Data Services
Good to have skills : NA
Minimum 3 Year(s) Of Experience Is Required
Educational Qualification : 15 years full time education
Summary
AI Powered Tech Talent
Build AI native data integration and data quality platforms using SAP BusinessObjects Data Services (BODS) by combining deep ETL, data management, and metadata expertise with agentic AI patterns (LLMs + tools + retrieval + evaluation). This role focuses on moving beyond traditional batch ETL into intelligent, self optimizing data pipelines that can reason about data structures, detect anomalies, recommend transformations, and accelerate data modernization—without training foundation models from scratch.
Core Responsibilities
- Enterprise Data Integration & ETL Engineering
Implement robust batch and near real time data pipelines supporting analytics, reporting, data warehousing, and downstream applications.
Build reusable data flows, workflows, and transforms aligned to enterprise data architecture standards.
- Data Modeling, Transformation & Enrichment
Implement data enrichment, standardization, and harmonization logic across multiple source systems.
Apply canonical data modeling practices to reduce duplication and point to point complexity.
- Data Quality, Profiling & Governance
Build profiling and validation pipelines to assess data completeness, accuracy, consistency, and timeliness.
Support governance requirements through lineage-aware jobs, audit trails, and traceable transformations.
- AI Native Data Engineering (Agentic ETL Layer)
- Analyze source metadata and recommend transformation logic.
- Propose data quality rules based on observed patterns and historical issues.
- Auto-generate initial ETL mappings and job scaffolding, validated against enterprise standards.
Enable conversational exploration of data pipelines (e.g., why did this record fail , what changed in yesterday s load ) with grounded, auditable outputs.
- Testing, Validation & Evaluation Loops
Establish evaluation harnesses for AI behaviors: golden datasets for transformations, accuracy checks for generated rules, and drift detection.
Gate releases of ETL logic and AI-generated artifacts through measurable quality thresholds.
- Performance, Scalability & Reliability
Implement error handling, restartability, idempotency, and recovery mechanisms to support reliable operations.
Monitor pipelines and proactively identify bottlenecks, failures, or data degradation patterns.
- Operations, Monitoring & Incident Response
Perform root cause analysis for load failures and data issues document and automate preventive actions.
Use AI augmented diagnostics to cluster recurring issues and recommend remediation steps grounded in runbooks and past incidents.
- Modernization & Platform Evolution
Assist in transitioning legacy ETL logic toward more modular, metadata driven, and AI augmented data architectures.
Collaborate with data architects, analytics teams, and platform engineers to deliver end to end data solutions.
Primary Skills (AI Native Must Have)
Strong hands on expertise in SAP BusinessObjects Data Services (BODS) ETL development and operations.
Solid understanding of data integration patterns, transformation logic, and enterprise data quality practices.
Experience designing reliable, scalable data pipelines with performance and governance in mind.
AI native capability: tool augmented workflows, retrieval grounded recommendations, evaluation loops, and safe automation boundaries.
Secondary / Strongly Beneficial Skills
Data warehousing and analytics fundamentals (facts, dimensions, hierarchies, reconciliation).
Metadata management, lineage concepts, and data governance frameworks.
Experience integrating ETL platforms with cloud data ecosystems and modern analytics tools.
Scripting or automation skills to support pipeline orchestration and operational tooling.
What This Role Does Not Center On
Training or fine tuning foundation AI models.
Manual, opaque ETL development without observability or measurable quality controls.
Value Delivered
Faster data pipeline development through intelligent ETL scaffolding and grounded recommendations.
Higher data trust via automated quality rules, anomaly detection, and evaluation loops.
Scalable, modern data integration foundations that support analytics, AI, and enterprise decision making.
Additional Information
A 15 years full time education is required., 15 years full time education
Key Skills
Analyticsautomationdata governance frameworksdata integration patternsData Warehousingenterprise data quality practicesEtl DevelopmentMetadata ManagementSAP BusinessObjects Data ServicesScriptingtransformation logic
Maximize your interview chances
Create tailored professional resumes in minutes using AI