> On 31 May 2017, at 14:23, Steffen Märcker <merk...@web.de> wrote: > > Hi, > > I am the developer of the library 'Transducers' for VisualWorks. It was > formerly known as 'Reducers', but this name was a poor choice. I'd like to > port it to Pharo, if there is any interest on your side. I hope to learn more > about Pharo in this process, since I am mainly a VW guy. And most likely, I > will come up with a bunch of questions. :-) > > Meanwhile, I'll cross-post the introduction from VWnc below. I'd be very > happy to hear your optinions, questions and I hope we can start a fruitful > discussion - even if there is not Pharo port yet. > > Best, Steffen
Hi Steffen, Looks like very interesting stuff. Would make an nice library/framework for Pharo. Sven > Transducers are building blocks that encapsulate how to process elements > of a data sequence independently of the underlying input and output source. > > > > # Overview > > ## Encapsulate > Implementations of enumeration methods, such as #collect:, have the logic > how to process a single element in common. > However, that logic is reimplemented each and every time. Transducers make > it explicit and facilitate re-use and coherent behavior. > For example: > - #collect: requires mapping: (aBlock1 map) > - #select: requires filtering: (aBlock2 filter) > > > ## Compose > In practice, algorithms often require multiple processing steps, e.g., > mapping only a filtered set of elements. > Transducers are inherently composable, and hereby, allow to make the > combination of steps explicit. > Since transducers do not build intermediate collections, their composition > is memory-efficient. > For example: > - (aBlock1 filter) * (aBlock2 map) "(1.) filter and (2.) map elements" > > > ## Re-Use > Transducers are decoupled from the input and output sources, and hence, > they can be reused in different contexts. > For example: > - enumeration of collections > - processing of streams > - communicating via channels > > > > # Usage by Example > > We build a coin flipping experiment and count the occurrence of heads and > tails. > > First, we associate random numbers with the sides of a coin. > > scale := [:x | (x * 2 + 1) floor] map. > sides := #(heads tails) replace. > > Scale is a transducer that maps numbers x between 0 and 1 to 1 and 2. > Sides is a transducer that replaces the numbers with heads an tails by > lookup in an array. > Next, we choose a number of samples. > > count := 1000 take. > > Count is a transducer that takes 1000 elements from a source. > We keep track of the occurrences of heads an tails using a bag. > > collect := [:bag :c | bag add: c; yourself]. > > Collect is binary block (reducing function) that collects events in a bag. > We assemble the experiment by transforming the block using the transducers. > > experiment := (scale * sides * count) transform: collect. > > From left to right we see the steps involved: scale, sides, count and > collect. > Transforming assembles these steps into a binary block (reducing function) > we can use to run the experiment. > > samples := Random new > reduce: experiment > init: Bag new. > > Here, we use #reduce:init:, which is mostly similar to #inject:into:. > To execute a transformation and a reduction together, we can use > #transduce:reduce:init:. > > samples := Random new > transduce: scale * sides * count > reduce: collect > init: Bag new. > > We can also express the experiment as data-flow using #<~. > This enables us to build objects that can be re-used in other experiments. > > coin := sides <~ scale <~ Random new. > flip := Bag <~ count. > > Coin is an eduction, i.e., it binds transducers to a source and > understands #reduce:init: among others. > Flip is a transformed reduction, i.e., it binds transducers to a reducing > function and an initial value. > By sending #<~, we draw further samples from flipping the coin. > > samples := flip <~ coin. > > This yields a new Bag with another 1000 samples. > > > > # Basic Concepts > > ## Reducing Functions > > A reducing function represents a single step in processing a data sequence. > It takes an accumulated result and a value, and returns a new accumulated > result. > For example: > > collect := [:col :e | col add: e; yourself]. > sum := #+. > > A reducing function can also be ternary, i.e., it takes an accumulated > result, a key and a value. > For example: > > collect := [:dic :k :v | dict at: k put: v; yourself]. > > Reducing functions may be equipped with an optional completing action. > After finishing processing, it is invoked exactly once, e.g., to free > resources. > > stream := [:str :e | str nextPut: each; yourself] completing: #close. > absSum := #+ completing: #abs > > A reducing function can end processing early by signaling Reduced with a > result. > This mechanism also enables the treatment of infinite sources. > > nonNil := [:res :e | e ifNil: [Reduced signalWith: res] ifFalse: [res]]. > > The primary approach to process a data sequence is the reducing protocol > with the messages #reduce:init: and #transduce:reduce:init: if transducers > are involved. > The behavior is similar to #inject:into: but in addition it takes care of: > - handling binary and ternary reducing functions, > - invoking the completing action after finishing, and > - stopping the reduction if Reduced is signaled. > The message #transduce:reduce:init: just combines the transformation and > the reducing step. > > However, as reducing functions are step-wise in nature, an application may > choose other means to process its data. > > > ## Reducibles > > A data source is called reducible if it implements the reducing protocol. > Default implementations are provided for collections and streams. > Additionally, blocks without an argument are reducible, too. > This allows to adapt to custom data sources without additional effort. > For example: > > "XStreams adaptor" > xstream := filename reading. > reducible := [[xstream get] on: Incomplete do: [Reduced signal]]. > > "natural numbers" > n := 0. > reducible := [n := n+1]. > > > ## Transducers > > A transducer is an object that transforms a reducing function into another. > Transducers encapsulate common steps in processing data sequences, such as > map, filter, concatenate, and flatten. > A transducer transforms a reducing function into another via #transform: > in order to add those steps. > They can be composed using #* which yields a new transducer that does both > transformations. > Most transducers require an argument, typically blocks, symbols or numbers: > > square := Map function: #squared. > take := Take number: 1000. > > To facilitate compact notation, the argument types implement corresponding > methods: > > squareAndTake := #squared map * 1000 take. > > Transducers requiring no argument are singletons and can be accessed by > their class name. > > flattenAndDedupe := Flatten * Dedupe. > > > > # Advanced Concepts > > ## Data flows > > Processing a sequence of data can often be regarded as a data flow. > The operator #<~ allows define a flow from a data source through > processing steps to a drain. > For example: > > squares := Set <~ 1000 take <~ #squared map <~ (1 to: 1000). > fileOut writeStream <~ #isSeparator filter <~ fileIn readStream. > > In both examples #<~ is only used to set up the data flow using reducing > functions and transducers. > In contrast to streams, transducers are completely independent from input > and output sources. > Hence, we have a clear separation of reading data, writing data and > processing elements. > - Sources know how to iterate over data with a reducing function, e.g., > via #reduce:init:. > - Drains know how to collect data using a reducing function. > - Transducers know how to process single elements. > > > ## Reductions > > A reduction binds an initial value or a block yielding an initial value to > a reducing function. > The idea is to define a ready-to-use process that can be applied in > different contexts. > Reducibles handle reductions via #reduce: and #transduce:reduce: > For example: > > sum := #+ init: 0. > sum1 := #(1 1 1) reduce: sum. > sum2 := (1 to: 1000) transduce: #odd filter reduce: sum. > > asSet := [:set :e | set add: e; yourself] initializer: [Set new]. > set1 := #(1 1 1) reduce: asSet. > set2 := #(1 to: 1000) transduce: #odd filter reduce: asSet. > > By combining a transducer with a reduction, a process can be further > modified. > > sumOdds := sum <~ #odd filter > setOdds := asSet <~ #odd filter > > > ## Eductions > > An eduction combines a reducible data sources with a transducer. > The idea is to define a transformed (virtual) data source that needs not > to be stored in memory. > > odds1 := #odd filter <~ #(1 2 3) readStream. > odds2 := #odd filter <~ (1 to 1000). > > Depending on the underlying source, eductions can be processed once > (streams, e.g., odds1) or multiple times (collections, e.g., odds2). > Since no intermediate data is stored, transducers actions are lazy, i.e., > they are invoked each time the eduction is processed. > > > > # Origins > > Transducers is based on the same-named Clojure library and its ideas. > Please see: > http://clojure.org/transducers >