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sampling, analytical methods such as GC-MS, LC-MS, or other relevant instrumentation. Experience in olfactory system research is highly desirable. Background in experimental design, data analysis
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: Introduction to experimental techniques and data analysis in optical research. Requirements: PhD in Experimental Physics, with a focus on nonlinear optics. Experience in experimental research on nonlinear
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advanced AI/ML methods for robust analysis and integration. Data sparsity, batch effects, and missing values across different omics layers and platforms. Cross-omics data fusion and representation learning
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, and C, N, P, and other elements biogeochemical cycling within the critical zone. The successful candidate must understand the roles of water and atmospheric physics and chemistry in forming soils and
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, concentration, recovery, or destruction of certain elements. Therefore, the chosen candidate will be expected to contribute to the performance of a wide range of scale-up studies of a magnetic and electromagnetic
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communities in soil environments. Develop and optimize laboratory protocols for characterization, and functional analysis of soil biology. Utilize high-throughput sequencing technologies to analyze soil
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, regardless of process parameters, it is essential to conduct a physical, chemical, and mineralogical analysis of the tailings to study the distribution of phosphates and their relationships with gangue
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-on experience with experimental gas neutralization setups. Proficiency in mineral characterization tools (XRD, XRF, TGA, SEM). Proficiency in laboratory analysis techniques (pH, ion chromatography, titration, ICP
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surfaces using surface chemistry and interfacial analysis techniques. Contribute to the optimization of flotation process parameters based on experimental results. Work closely with a multidisciplinary team
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processes, or energy management. Preferred Skills: Experience with time-series analysis, predictive modeling, and anomaly detection. Familiarity with real-time applications of AI/ML in embedded or IoT devices