Business AI Research

Creating AI breakthroughs that redefine businesses.
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Who we are

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At SAP Business AI Research, we serve as the bridge between academia and industry, dedicated to advancing next-generation AI systems. Our research addresses the complexities of real-world enterprise environments by integrating cutting-edge AI techniques with domain-specific challenges. We focus on two main research tracks to ensure that our models are not only powerful but also practical, trustworthy, and scalable.

Research areas

Track A: Structure - Aware Foundation Models

We develop foundation models that reason over complex, linked business data—spanning tables, time series, and graphs. By integrating structural awareness, multimodal inputs, and causal reasoning, our models enable advanced Business AI for analysis, forecasting, and decision-making.

Table representation learning

Learning tabular data representations via table-native and language-based models, integrating business data for advanced reasoning.

Graph neural networks

Using Graph Neural Networks to model relational tabular data, enabling accurate predictions and deeper insights in enterprise AI.

Business knowledge graph

Building enterprise knowledge graphs to enable precise, context-aware queries across diverse business data.

Agentic AI

Building self-improving agents for reliable, goal-driven automation in enterprise systems.

Coding LLM (ABAP)

Empowering enterprise software development with domain-specific ABAP foundation models for intelligent coding assistance.

Track B: Trustworthy AI

Our research develops AI systems that are robust, fair, transparent, and aligned with human values—essential for real-world enterprise use. We focus on robustness, explainability, fairness, privacy, and alignment with domain-specific constraints to ensure reliable and responsible AI deployment.

Differential privacy

We develop efficient deep learning models that save resources and protect privacy.

Data confidentiality

We ensure data confidentiality by protecting structured data and validating privacy through audits and attacks.

Model protection

Analysing sentiments in text using neural embedding and attention.

Security testing

Enhancing model transparency by making predictions explainable.

Human-Alignment

Extracting data from documents using NLP and computer vision.

Careers

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Join us and build the future of Business AI

Work with rich datasets to find machine learning-based solutions to real-world problems in close collaboration with our global network of research partners.

PhD Internship (US): Foundation Models on Structured Data

PhD Internship (DE/EU): Foundation Models on Structured Data

PhD Internship (DE/EU): Agents and Knowledge Graph

PhD Internship (SGP): Document AI

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