Iterable
serves as an API for objects that can be iterated with for
and related iteration constructs, like assignment to a Positional
variable.
Iterable
objects nested in other Iterable
objects (but not within scalar containers) flatten in certain contexts, for example when passed to a slurpy parameter (*@a
), or on explicit calls to flat
.
Its most important aspect is a method stub for iterator
.
does Iterable my := DNA.new('GAATCC');.say for ; # OUTPUT: «(G A A)(T C C)»
This example mixes in the Iterable role to offer a new way of iterating over what is essentially a string (constrained by where
to just the four DNA letters). In the last statement, for
actually hooks to the iterator
role printing the letters in groups of 3.
Methods §
method iterator §
Defined as:
method iterator(--> Iterator)
Method stub that ensures all classes doing the Iterable
role have a method iterator
.
It is supposed to return an Iterator.
say (1..10).iterator;
method flat §
Defined as:
method flat(Iterable: --> Iterable)
Returns another Iterable that flattens out all iterables that the first one returns.
For example
say (<a b>, 'c').elems; # OUTPUT: «2» say (<a b>, 'c').flat.elems; # OUTPUT: «3»
because <a b>
is a List and thus iterable, so (<a b>, 'c').flat
returns ('a', 'b', 'c')
, which has three elems.
Note that the flattening is recursive, so ((("a", "b"), "c"), "d").flat
returns ("a", "b", "c", "d")
, but it does not flatten itemized sublists:
say ($('a', 'b'), 'c').raku; # OUTPUT: «($("a", "b"), "c")»
You can use the hyper method call to call the .List
method on all the inner itemized sublists and so de-containerize them, so that flat
can flatten them:
say ($('a', 'b'), 'c')>>.List.flat.elems; # OUTPUT: «3»
method lazy §
Defined as:
method lazy(--> Iterable)
Returns a lazy iterable wrapping the invocant.
say (1 ... 1000).is-lazy; # OUTPUT: «False» say (1 ... 1000).lazy.is-lazy; # OUTPUT: «True»
method hyper §
Defined as:
method hyper(Int(Cool) : = 64, Int(Cool) : = 4)
Returns another Iterable that is potentially iterated in parallel, with a given batch size and degree of parallelism.
The order of elements is preserved.
say ([1..100].hyper.map().list);
Use hyper
in situations where it is OK to do the processing of items in parallel, and the output order should be kept relative to the input order. See race
for situations where items are processed in parallel and the output order does not matter.
Options degree and batch §
The degree
option (short for "degree of parallelism") configures how many parallel workers should be started. To start 4 workers (e.g. to use at most 4 cores), pass :4degree
to the hyper
or race
method. Note that in some cases, choosing a degree higher than the available CPU cores can make sense, for example I/O bound work or latency-heavy tasks like web crawling. For CPU-bound work, however, it makes no sense to pick a number higher than the CPU core count.
The batch
size option configures the number of items sent to a given parallel worker at once. It allows for making a throughput/latency trade-off. If, for example, an operation is long-running per item, and you need the first results as soon as possible, set it to 1. That means every parallel worker gets 1 item to process at a time, and reports the result as soon as possible. In consequence, the overhead for inter-thread communication is maximized. In the other extreme, if you have 1000 items to process and 10 workers, and you give every worker a batch of 100 items, you will incur minimal overhead for dispatching the items, but you will only get the first results when 100 items are processed by the fastest worker (or, for hyper
, when the worker getting the first batch returns.) Also, if not all items take the same amount of time to process, you might run into the situation where some workers are already done and sit around without being able to help with the remaining work. In situations where not all items take the same time to process, and you don't want too much inter-thread communication overhead, picking a number somewhere in the middle makes sense. Your aim might be to keep all workers about evenly busy to make best use of the resources available.
You can also check out this blog post on the semantics of hyper and race
method race §
Defined as:
method race(Int(Cool) : = 64, Int(Cool) : = 4 --> Iterable)
Returns another Iterable that is potentially iterated in parallel, with a given batch size and degree of parallelism (number of parallel workers).
Unlike hyper
, race
does not preserve the order of elements (mnemonic: in a race, you never know who will arrive first).
say ([1..100].race.map().list);
Use race in situations where it is OK to do the processing of items in parallel, and the output order does not matter. See hyper
for situations where you want items processed in parallel and the output order should be kept relative to the input order.
Blog post on the semantics of hyper and race
See hyper
for an explanation of :$batch
and :$degree
.