Job Description:
• Analyze RNA-seq datasets, including preprocessing, QC, normalization, and differential expression analysis
• Develop and maintain bioinformatics pipelines for transcriptomic data
• Apply statistical and machine learning methods to identify diagnostic or predictive biomarkers
• Build and evaluate predictive models, including deep learning approaches
• Explore applications of large language models (LLMs) or multimodal AI in biological data analysis
• Collaborate with cross-functional teams to interpret results and guide experimental design
• Communicate findings through reports, visualizations, and presentations
Requirements:
• PhD candidate or PhD degree in Bioinformatics, Computational Biology, Biology, or a related field
• Hands-on experience with RNA-seq data analysis
• Strong programming skills in R and/or Python
• Familiarity with Linux/Unix environments and proficiency in bash scripting
• Formal training in statistics and machine learning
• Experience with machine learning frameworks (e.g., scikit-learn, TensorFlow, PyTorch)
• Experience developing or applying deep learning models
• Familiarity with large language models (LLMs) or generative AI applications in biology
• Experience with NGS pipelines and tools (e.g., STAR, Salmon, nf-core, etc.)
• Experience working in high-performance computing (HPC) or cloud environments
• Strong data visualization and communication skills
Benefits:
• Flexible, part-time engagement with meaningful scientific impact
• Opportunity to work on cutting-edge RNA-seq datasets from clinical samples
• Collaboration with a highly experienced, multidisciplinary team
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