Tassilo Klein, Ph.D. Portrait of Tassilo Klein

Director of ML Research · Principal Scientist · SAP AI

Foundation models, agents, structured data, generative UI

Tassilo J. Klein, Ph.D.

Research leadership in foundation models, enterprise data, and applied AI systems.

My work connects machine learning research with deployed AI systems, from representation learning and foundation models for structured data to agentic workflows and AI-native interfaces.


About

I lead ML research at the SAP AI CTO Office, where my team works on foundation models for enterprise data. As a scientific advisor to startups, I also work on agentic AI systems and generative UI. My research spans the full stack: from representation learning and self-supervised pre-training to autonomous agent runtimes and AI-native interface generation.

I’m particularly interested in the coordination economics of agentic AI — how protocol-mediated agent systems change the cost structure of enterprise software, and what that implies for how we build and deploy AI at scale.

Previously: postdoc at MIT CSAIL and Harvard Medical School (representation learning, multimodal medical imaging). Ph.D. summa cum laude from TU Munich. Member of ELLIS.


Selected Impact


Research

Area Focus
Agentic AI Autonomous agent runtimes, MCP-based tool calling, multi-agent orchestration, self-growing tool libraries
Foundation Models for Structured Data Tabular pre-training, relational reasoning, enterprise-scale data representation
generative UI AI-driven dynamic interface generation, adaptive UX, intent-to-UI synthesis
Knowledge-Augmented LLMs RAG, privacy-preserving fine-tuning, domain adaptation
Representation Learning Contrastive and self-supervised methods, multimodal alignment

Selected Publications & Projects

2026

May 2026 · FMSD @ ICML 2026 Workshop

A Generative Foundation Model for Heterogeneous Tabular Data

May 2026 · FMSD @ ICML 2026 Workshop

TableFactory: Generating Semantically Linked Tabular Data via Multi-Agent Behavioral Simulation

May 2026 · FMSD @ ICML 2026 Workshop

Statistically Indistinguishable, Operationally Distinct: A Formal Barrier for Tabular Foundation Models

May 2026 · Preprint

Tabular Foundation Model for Generative Modelling

February 2026 · Preprint

The Headless Firm: How AI Reshapes Enterprise Boundaries

2025

November 2025 · Spotlight · EurIPS Workshop on AI for Tabular Data

SALT-KG: A Benchmark for Semantics-Aware Learning on Enterprise Tables

July 2025 · SIGMOD Workshop on Data Management for End-to-End Machine Learning

Table Dissolution: Adding Salt To Your Data

July 2025 · Dataset integration

SALT integrated into RelBench

May 2025 · Preprint

Foundation Models for Tabular Data in Enterprises

May 2025 · ACL 2025

Contrastive Perplexity for Controlled Generation: An Application in Detoxifying Large Language Model

2024

October 2024 · NeurIPS Table Representation Learning Workshop

SALT: Sales Autocompletion Linked Business Tables Dataset

October 2024 · NeurIPS Table Representation Learning Workshop

PORTAL: Scalable Tabular Foundation Models via Content-Specific Tokenization

2023

May 2023 · ACL 2023

Low-shot contrastive learning of sentence representations

2022

February 2022 · ACL 2022

Self-supervised sentence representation learning

2021

August 2021 · EMNLP 2021

Contrastive Language Model Refinement for Commonsense Reasoning

August 2021 · EMNLP 2021

Contrastive Self-Supervised Learning for Commonsense Reasoning

April 2021 · ICML Workshop

Co-organizer: Self-Supervised Learning for Reasoning and Perception

February 2021 · IPMI 2021

Self-supervised representation learning for medical imaging

2020

September 2020 · Presentation

Commonsense reasoning in AI

April 2020 · ACL 2020

Contrastive self-supervised commonsense reasoning

February 2020 · NeuroImage

Representation learning for medical imaging

2019

October 2019 · ICCV 2019

Multi-Domain Learning

February 2019 · CVPR 2019

Deep generative models for visual learning

2017


Service & Mentorship


Alumni

Former interns who have gone on to research roles at top labs and faculty positions:

Last updated — July 2026