54 evolution-"https:"-"https:"-"https:"-"https:"-"https:"-"L2CM"-"L2CM" positions at City of Hope in United States
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, shaping the future of medicine through cutting-edge research. The Analytical Development / Quality Control (QC) team at the Center for Bioinnovation and Manufacturing seeks a Quality Control Associate III
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corresponding data into the institution’s OnCore Clinical Trials Management System (CTMS). Critical to this work is the development of a clinical trial’s calendar within the CTMS that forms the backbone
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include not only operating the instrument but also assay development, sample preparation, calibration, data analysis, data management/backup and routine maintenance/trouble shooting. In addition, you will
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support of leukemia genomics and other biomedical research projects. The position emphasizes next-generation sequencing (NGS) data analysis, workflow development, high-performance computing, and structured
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: · Contribute to the development of CD38 antibody‑drug conjugates (ADCs) and other multiple myeloma targets, including monoclonal antibody (mAb) engineering, ADC conjugation, biophysical characterization (SPR
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genes related to the development of type 2 diabetes and cardiovascular disease in the Hispanic population. He also continues to oversee the Diabetes and Cardiovascular Risk Reduction Program, which he
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Cytometry Core Director to lead a high-performance shared resource supporting basic, translational, and clinical cancer research. The Director manages daily operations, technology development, and scientific
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evolution. Our work builds on experience developing pangenome graph construction and analysis tools (PGGB, ODGI, IMPG) and contributions to the Telomere-to-Telomere Consortium and Human Pangenome Reference
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career development. For more information about Dr. You’s lab, please visit here. As a successful candidate, you will: Lead independent and collaborative projects investigating the molecular and cellular
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. This project involves the development and application of interpretable machine learning methods to uncover allosteric regulation of disordered regions in the dynamics of G-protein coupled receptors to enable