Generative AI
Generative AI is revolutionizing how the world computes, but there are still roadblocks for scaling to solve real business problems. At IBM Research, we’re working on trustworthy models, software, and infrastructure to allow any business to harness the power of generative AI.
Our work
BeeAI now has multiple agents, and a standardized way for them to talk
ResearchKim MartineauAI and quantum computing: How IBM showed up at SXSW 2025
NewsMike MurphyIBM’s Mikhail Yurochkin wants to make AI’s “cool” factor tangible
ResearchKim MartineauIBM Granite now has eyes
ResearchKim MartineauIBM’s new benchmark changes monthly to avoid teaching to the test
ResearchKim MartineauA benchmark for evaluating conversational RAG
ResearchKim Martineau- See more of our work on Generative AI
Publications
CIRCUITSYNTH-RL: LLM-Based Circuit Topology Synthesis with RL Refinement
- Prashanth Vijayaraghavan
- Luyao Shi
- et al.
- 2025
- DAC 2025
Guardrails in generative AI workflows via orchestration
- Gaurav Kumbhat
- Evaline Ju
- 2025
- ODSC East 2025
InspectorRAGet: An Introspection Platform for RAG Evaluation
- Benjamin Sznajder
- Kshitij Fadnis
- et al.
- 2025
- NAACL 2025
DAMAGeR: Deploying Automatic and Manual Approaches to GenAI Red-teaming
- Manish Nagireddy
- Michael Feffer
- et al.
- 2025
- NAACL 2025
Can LLMs Replace Manual Annotation of Software Engineering Artifacts?
- Toufique Ahmed
- Premkumar Devanbu
- et al.
- 2025
- MSR 2025
ASTER: Natural and Multi-language Unit Test Generation with LLMs
- Rangeet Pan
- Myeongsoo Kim
- et al.
- 2025
- ICSE 2025