> Some situations require code to be generated on the fly at runtime, rather than compiled ahead of time. The Julia language, for example, JIT-compiles its code, because it needs to run fast and interact with the user via a REPL (read-eval-print loop) or interactive prompt.
Numba, a math-acceleration package for Python, JIT-compiles selected Python functions to machine code. It can also compile Numba-decorated code ahead of time, but (like Julia) Python offers rapid development by being an interpreted language. Using JIT compilation to produce such code complements Python’s interactive wor…