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spectrum of artificial intelligence in its various interfaces), the failure of liberal democracies, and the constitution of contemporary subjectivities exiled from themselves. Mandatory requirements - PhD in
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available for full-time dedication. How to apply: Applications must be submitted by April 30, 2026, via email to cpodv.fflch@usp.br (copy to megiani@usp.br ). For full details, please visit: https
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seven years. Application: Applicants should send by email to gfraiden@unicamp.br , by April 17, 2026, the following PDF documents: FAPESP Curricular summary , updated CV, Master's and PhD academic records
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(with email and/or phone). Use the subject line: “PostDoc Remote Sensing”. Applications should be sent to edson.bolfe@embrapa.br by April 30, 2026. Where to apply Website http://www.fapesp.br
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optimization in distributed systems. The work also involves modern compiler infrastructures, with emphasis on MLIR, and contributions to LLVM and the OpenMP standard. Applicants must hold a PhD in Computer
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intellectual property and technological development; - Ability to operate and adapt pilot plants for gasification and ethanol reforming. Eligibility Applicants must be near completion of their PhD or have
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potential in preclinical experimental models. Requirements: Applicants must have obtained their PhD within the last five years and have experience in the study of non-conventional lymphocyte populations, as
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, 2026, with the email subject “Opportunity PDP4-2026.” Website for additional job details https://cepenfito.org.br/ Work Location(s) Number of offers available1Company/InstituteEngineering Research Center
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to staff position within a Research Infrastructure? No Offer Description What we are mainly looking for (selection criteria can be found in the position description) • PhD in aquaculture, environmental
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. Requirements: PhD completed less than 7 years ago in Computer Science or related areas; experience in machine learning and data science (supervised/unsupervised models, recommendation and evaluation/robustness