What strategy is emerging to address the difficulty in finding a single candidate skilled in all domains of genomic epidemiology?
Answer
Structuring teams to be complementary, ensuring expertise is distributed across modeling, scripting, and local public health knowledge.
Due to the complexity of the required skills, a practical approach is building teams where different members specialize in complementary areas—statistics, programming, and epidemiology—allowing the team to pivot effectively.

#Videos
Module 1.1 - What is genomic epidemiology? - YouTube
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