In terms of language specification, any compliant Python compiler and runtime is fully allowed, for any instance of an immutable type, to make a new instance OR find an existing instance of the same type that's equal to the required value and use a new reference to that same instance. This means it's always incorrect to use
is or by-id comparison among immutables, and any minor release may tweak or change strategy in this matter to enhance optimization.
In terms of implementations, the tradeoff are pretty clear: trying to reuse an existing instance may mean time spent (perhaps wasted) trying to find such an instance, but if the attempt succeeds then some memory is saved (as well as the time to allocate and later free the memory bits needed to hold a new instance).
How to solve those implementation tradeoffs is not entirely obvious -- if you can identify heuristics that indicate that finding a suitable existing instance is likely and the search (even if it fails) will be fast, then you may want to attempt the search-and-reuse when the heuristics suggest it, but skip it otherwise.
In your observations you seem to have found a particular dot-release implementation that performs a modicum of peephole optimization when that's entirely safe, fast, and simple, so the assignments A to D all boil down to exactly the same as A (but E to F don't, as they involve named functions or methods that the optimizer's authors may reasonably have considered not 100% safe to assume semantics for -- and low-ROI if that was done -- so they're not peephole-optimized).
Thus, A to D reusing the same instance boils down to A and B doing so (as C and D get peephole-optimized to exactly the same construct).
That reuse, in turn, clearly suggests compiler tactics/optimizer heuristics whereby identical literal constants of an immutable type in the same function's local namespace are collapsed to references to just one instance in the function's
.func_code.co_consts (to use current CPython's terminology for attributes of functions and code objects) -- reasonable tactics and heuristics, as reuse of the same immutable constant literal within one function are somewhat frequent, AND the price is only paid once (at compile time) while the advantage is accrued many times (every time the function runs, maybe within loops etc etc).
(It so happens that these specific tactics and heuristics, given their clearly-positive tradeoffs, have been pervasive in all recent versions of CPython, and, I believe, IronPython, Jython, and PyPy as well;-).
This is a somewhat worthy and interesting are of study if you're planning to write compilers, runtime environments, peephole optimizers, etc etc, for Python itself or similar languages. I guess that deep study of the internals (ideally of many different correct implementations, of course, so as not to fixate on the quirks of a specific one -- good thing Python currently enjoys at least 4 separate production-worthy implementations, not to mention several versions of each!) can also help, indirectly, make one a better Python programmer -- but it's particularly important to focus on what's guaranteed by the language itself, which is somewhat less than what you'll find in common among separate implementations, because the parts that "just happen" to be in common right now (without being required to be so by the language specs) may perfectly well change under you at the next point release of one or another implementation and, if your production code was mistakenly relying on such details, that might cause nasty surprises;-). Plus -- it's hardly ever necessary, or even particularly helpful, to rely on such variable implementation details rather than on language-mandated behavior (unless you're coding something like an optimizer, debugger, profiler, or the like, of course;-).