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Job Description Apply now Job Title: Postdoctoral Associate- Intervention Development and Testing Division: Pediatrics Work Arrangement: Onsite only Location: Houston, TX Salary Range: Per NIH
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using deep learning, computational chemistry, medicinal chemistry, chemical biology, and molecular cell biology to develop novel therapeutics to tackle complex diseases such as cancers. Successful
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Associate will develop and present innovative bioinformatics educational materials to postdoctoral scientists and early career faculty in biological fields. The FunInBio curriculum surrounds a community
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the molecular bases of lung development in humans. Training will be provided in grant application preparation. At Baylor College of Medicine, postdoctoral associates will have access to daily lectures and
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experiments, develop analytical workflows, and drive projects from conception through publication. This role offers outstanding opportunities to publish high-impact research, present at international
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models of heart disease. The lab possesses state-of-the-art equipment and is actively involved in the development of innovative techniques and devices for heart research. The lab is currently pursuing
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interested in the interactions of nutrition, metabolism, and the development and treatment of metabolic diseases such as obesity and cancer. The goal is to identify nutritional interventions and metabolic
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: Commensurate with Experience FLSA Status: Exempt Work Schedule: Monday – Friday, 8 a.m. – 5 p.m. Summary The St-Pierre Lab is seeking a motivated and creative scientist or engineer to develop next-generation
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PIs, publish manuscripts, and apply for career development grants. Develops statistical and generative AI models for single-cell and spatial data from the Martin Lab and multimodal (genetic, imaging
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Schedule: Flexible Summary Dr. Putluri's lab is applying mass spectrometry technology to study metabolic profiling studies in cancer development and progression. The lab has established a robust research