Carnegie Mellon University - Postdoctoral Research Associate - Print & Probability Project - Di
Listed on 2026-02-12
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Business
Data Scientist
Location: Elkins Park
Carnegie Mellon University - Postdoctoral Research Associate - Print & Probability Project - Dietrich College
Carnegie Mellon University is a private, global research university that challenges the curious and hardworking to deliver work that matters. Our outstanding institution has distinctive areas of excellence and a culture marked by ambition and a deep, practical engagement with challenges facing society. We continue to produce versatile alumni and draw faculty and staff eager to be a part of the university’s creative, dedicated and close-knit community.
We place emphasis on practical problem solving, interdisciplinary learning, a transformative spirit, and collaboration
From creative writing to statistics and data science, behavioral economics to social and political history, Dietrich College is home to 11 humanities and sciences departments, programs and institutes. Our world-class faculty and students work across areas to investigate and solve real-world problems.
The Print & Probability project seeks a Postdoctoral Research Associate to develop AI methods for identifying printers of anonymous early modern books ). Building on successful prior work that's identified clandestine printers of famous works such as Milton's Areopagitica, Hobbes' Leviathan, Locke's Two Treatises and Spinoza's Theological-Political Treatise, this Schmidt Sciences-funded phase integrates large language models with computer vision to systematically uncover hidden networks of controversial printing during censorship.
CoreResponsibilities
- Develop LLM-driven knowledge graphsthat construct probabilistic historical priors from bibliographic records, trial transcripts, censorship lists, and apprenticeship data
- Design agentic frameworksusing In-Context Learning and Chain-of-Thought prompting for transparent historical inference
- Develop Historical Hypothesesin collaboration with (other) expert humanists and book historians
- Integrate top-down LLM hypotheses with established bottom-up vision pipeline(existing: dh Segment/Eynollah line extraction, damage detection models, 280M+ character image database)
- Assist in original researchon clandestine printing networks using computational tools
- Contribute to publications in both AI and humanities venues(machine learning conferences and book history journals)
- Contribute to open-source tools and datasetsfor the research community
Flexibility, excellence, and passion are vital qualities within the Dietrich College. Collaboration and cultural sensitivity are valued competencies refore, we are in search of a team member who can effectively interact with a varied population of internal and external partners at a high level of integrity. We are looking for someone who shares our values and who will support the mission of the university through their work.
BaseQualifications
- PhDin Computer Science, Computational Linguistics, Digital Humanities, Computational Cultural Studies, History, or related field
- Demonstrated expertise with large language models(fine-tuning, prompting, deployment)
- Strong Python programmingwith deep learning frameworks (PyTorch, Tensor Flow)
- Experience with unstructured historical data(text extraction, entity resolution, knowledge graphs)
- Excellent communication skillsand commitment to interdisciplinary collaboration
- Evidence of scholarly productivity(publications, presentations, software)
Preferred Qualifications
- Knowledge of early modern European history ) or book history
- Experience with historical bibliography or archival research
- Familiarity with computer vision for document analysis
- Multilingual reading ability (e.g., English, Latin, French, Spanish, Italian, Dutch)
- Publication record in digital humanities or computational social science
- A combination of education and proven experience from which comparable knowledge is demonstrated may be considered.
Joining the CMU team opens the door to an array of exceptional benefits.
For a comprehensive overview of the benefits available, explore our Benefits page .
At Carnegie Mellon, we value the whole package when extending offers of employment. Beyond credentials, we evaluate the role and responsibilities, your valuable work…
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