Research Scientist Agentic AI, Reinforcement Learning and Neuro-Symbolic Systems (f/m/div.)
š Worldwide
TensorFlow
Python
GitHub
Machine Learning
Design
Research Scientist Agentic AI, Reinforcement Learning and Neuro-Symbolic Systems (f/m/div.)
from š Worldwide
At Bosch, we shape the future by inventing high-quality technologies and services that spark enthusiasm and enrich peopleās lives. Our promise to our associates is rock-solid: We grow together, we enjoy our work, and we inspire each other. Welcome to Bosch.
TheĀ Robert Bosch GmbH is looking forward to your application!
- As a research scientist in the semantic understanding and reasoning group (CR/AIR4) at Bosch Corporate Research, you will lead and advance research on intelligent AI systems that are able to take action, reason over goals and constraints, as well as organize knowledge through complex neuro-symbolic structures.
- Your work will focus on next-generation agentic systems that combine reinforcement learning, structured reasoning, memory, and knowledge-based representations to operate effectively in semantically rich alsoĀ technically demanding environments.
- This role goes beyond individual technical contributions. You will contribute to shaping Bosch's scientific agenda in this area by identifying promising research directions, initiating and coordinating research activities, building connections to external academic and industrial partners, as well as representing Bosch in relevant research communities.
- You are expected to bring a strong external network and effectively position Bosch in collaborative projects, scientific exchanges, also strategic initiatives related to agentic AI, reinforcement learning, as well as neuro-symbolic systems.
- From a scientific perspective, you focus on developing systems that move from passive understanding toward goalādirected behavior. You investigate how agents learn through interaction, simulation, and structured feedback, represent also manipulate knowledge in compositional forms, as well asĀ integrate reinforcement learning with symbolic abstractions, hierarchical planning, memory, and reasoning. Your objective is to design systems that actively act while structuring knowledge to enable robust behavior, interpretability, alsoĀ strong generalization.
- You will work closely with research scientists, engineers, students, as well asĀ domain experts across Bosch. In addition to conducting high-level research, you will mentor students also junior researchers, actively shape and structure collaborative research activities, and contribute to the organizational development of this research area. Your work will be instrumental in establishing Boschās long-term leadership in intelligent systems for complex technical environments.
- Education:Ā
- excellent MSc in Computer Science, Machine Learning, Artificial Intelligence, Robotics, Systems Engineering, or related fields
- PhD in Machine Learning, Reinforcement Learning, Agentic AI, Neuro-Symbolic AI, Sequential Decision-Making, or a closely related area is mandatory
- ideally several years of post-PhD research experience in academia, industry research, or a comparable environment
- strong publication record in leading AI, machine learning, or autonomous systems venues such as NeurIPS, ICLR, ICML, AAAI, IJCAI, CoRL, RSS, AAMAS, ACL, EMNLP, KR, or similar
- Experience and Knowledge:Ā
- Agentic AI, RL & ActionāOriented Systems
- strong expertise in reinforcement learning and agentic AI, including sequential decisionāmaking and learningābased planning
- experience with advanced RL paradigms such as modelābased, hierarchical, offline, multiāagent, or constrained RL
- deep understanding of goalādirected AI systems involving memory, tool use, planning, multiāstep reasoning, and longāhorizon behavior
- ability to design and analyze systems that act in complex environments and improve through interaction, simulation, or structured feedback
- NeuroāSymbolic Systems & Knowledge Organization
- proven experience in combining learningābased AI with symbolic or structured representations
- familiarity with neuroāsymbolic architectures, knowledge graphs, formal reasoning structures, and compositional representations
- ability to design systems that organize knowledge in semantically meaningful ways while supporting action, planning, interpretability, and generalization
- Systems Engineering & Structured Technical Domains
- interest in applying advanced AI methods to complex technical and cyberāphysical domains such as systems engineering, robotics, or industrial automation
- experience with structured engineering artifacts (e.g. requirements, system models, simulations, or formal specifications) is an advantage
- ability to frame complex technical challenges in terms of sequential decisionāmaking, planning, or knowledgeābased reasoning
- Scientific Leadership, Networking & Mentoring
- demonstrated ability to initiate, structure, and lead research activities in a focused technical domain
- strong external scientific network and experience building collaborations with academic and industrial partners
- proven track record in publications, project coordination, and communityābuilding activities
- mentoring experience with students and junior researchers, combined with strong organizational and coordination skills
- AI Infrastructure & Research Prototyping
- solid experience in Python and modern deepālearning frameworks (e.g. PyTorch, TensorFlow, JAX)
- familiarity with scalable experimentation, reproducible research, and collaborative software development
- ability to translate research ideas into functional prototypes and experimental platforms
- Scientific Contributions & Mindset
- strong sense of ownership and entrepreneurial mindset in driving research topics
- ability to connect fundamental research with longāterm strategic value
- excellent analytical and communication skills, paired with a collaborative, interdisciplinary leadership style
- Agentic AI, RL & ActionāOriented Systems
- Personality and Working Practice:Ā you are a scientifically strong and organizationally capable researcher with a clear ambition to shape and lead research activities in the field of agentic AI at Bosch; you combine deep methodological expertise with external visibility, mentoring experience, and the ability to build and coordinate impactful research efforts
- Languages:Ā fluent English skillsĀ written and spoken,Ā German is a plus
https://www.bosch-ai.comĀ
www.bosch.com/research
Please submit all relevant documents (CV, letter of motivation, certificates, and links to GitHub or kaggle account).Ā
We offer flexible working models: from various part-time options to mobile working and job sharing. Feel free to contact us.
Diversity and inclusion are not just trends for us but are firmly anchored in our corporate culture. Therefore, we welcome all applications, regardless of gender, age, disability, religion, ethnic origin or sexual identity.
Need support during your application?
Meltem ArabaciogluĀ (Human Resources)
+49 174 1744 961
Need further information about the job?
Michael PfeifferĀ (Functional Department)
+49 711 811 18195
Jim Mainprice (Functional Department)
+49 711 811 21859
Work #LikeABosch starts here: Apply now!
