41d0f753d102c4436b9ee5acdecd21f975fbc792
[phd-thesis.git] / dsl / class.tex
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7 \begin{document}
8 \input{subfileprefix}
9 \chapter{Deep embedding with class}%
10 \label{chp:classy_deep_embedding}
11
12 \begin{chapterabstract}
13 The two flavours of \gls{DSL} embedding are shallow and deep embedding.
14 In functional languages, shallow embedding models the language constructs as functions in which the semantics are embedded.
15 Adding semantics is therefore cumbersome while adding constructs is a breeze.
16 Upgrading the functions to type classes lifts this limitation to a certain extent.
17
18 Deeply embedded languages represent their language constructs as data and the semantics are functions on it.
19 As a result, the language constructs are embedded in the semantics, hence adding new language constructs is laborious where adding semantics is trouble free.
20
21 This paper shows that by abstracting the semantics functions in deep embedding to type classes, it is possible to easily add language constructs as well.
22 So-called classy deep embedding results in \glspl{DSL} that are extensible both in language constructs and in semantics while maintaining a concrete abstract syntax tree.
23 Additionally, little type-level trickery or complicated boilerplate code is required to achieve this.
24 \end{chapterabstract}
25
26 \section{Introduction}
27 The two flavours of \gls{DSL} embedding are deep and shallow embedding \citep{boulton_experience_1992}.
28 In \gls{FP} languages, shallow embedding models language constructs as functions in the host language.
29 As a result, adding new language constructs---extra functions---is easy.
30 However, the semantics of the language is embedded in these functions, making it troublesome to add semantics since it requires updating all existing language constructs.
31
32 On the other hand, deep embedding models language constructs as data in the host language.
33 The semantics of the language are represented by functions over the data.
34 Consequently, adding new semantics, i.e.\ novel functions, is straightforward.
35 It can be stated that the language constructs are embedded in the functions that form a semantics.
36 If one wants to add a language construct, all semantics functions must be revisited and revised to avoid ending up with partial functions.
37
38 This juxtaposition has been known for many years \citep{reynolds_user-defined_1978} and discussed by many others \citep{krishnamurthi_synthesizing_1998} but most famously dubbed the \emph{expression problem} by \citet{wadler_expression_1998}:
39
40 \begin{quote}
41 The \emph{expression problem} is a new name for an old problem.
42 The goal is to define a data type by cases, where one can add new cases to the data type and new functions over the data type, without recompiling existing code, and while retaining static type safety (e.g., no casts).
43 \end{quote}
44
45 In shallow embedding, abstracting the functions to type classes disentangles the language constructs from the semantics, allowing extension both ways.
46 This technique is dubbed tagless-final embedding \citep{carette_finally_2009}, nonetheless it is no silver bullet.
47 Some semantics that require an intensional analysis of the syntax tree, such as transformation and optimisations, are difficult to implement in shallow embedding due to the lack of an explicit data structure representing the abstract syntax tree.
48 The semantics of the \gls{DSL} have to be combined and must hold some kind of state or context, so that structural information is not lost \citep{kiselyov_typed_2012}.
49
50 \subsection{Research contribution}
51 This paper shows how to apply the technique observed in tagless-final embedding to deep embedding.
52 The presented basic technique, christened \emph{classy deep embedding}, does not require advanced type system extensions to be used.
53 However, it is suitable for type system extensions such as \glspl{GADT}.
54 While this paper is written as a literate
55 \Gls{HASKELL} \citep{peyton_jones_haskell_2003} program using some minor extensions provided by \gls{GHC} \citep{ghc_team_ghc_2021}, the idea is applicable to other languages as well\footnotemark.
56 \footnotetext{Lubbers, M. (2021): Literate Haskell/lhs2\TeX{} source code of the paper ``Deep Embedding
57 with Class'': TFP 2022.\ DANS.\ \url{https://doi.org/10.5281/zenodo.5081386}.}
58
59 \section{Deep embedding}
60 Pick a \gls{DSL}, any \gls{DSL}, pick the language of literal integers and addition.
61 In deep embedding, terms in the language are represented by data in the host language.
62 Hence, defining the constructs is as simple as creating the following algebraic data type\footnote{All data types and functions are subscripted to indicate the evolution.}.
63
64 \begin{lstHaskellLhstex}
65 data Expr_0
66 = Lit_0 Int
67 | Add_0 Expr_0 Expr_0
68 \end{lstHaskellLhstex}
69
70 Semantics are defined as functions on the \haskelllhstexinline{Expr_0} data type.
71 For example, a function transforming the term to an integer---an evaluator---is implemented as follows.
72
73 \begin{lstHaskellLhstex}
74 eval_0 :: Expr_0 -> Int
75 eval_0 (Lit_0 e) = e
76 eval_0 (Add_0 e1 e2) = eval_0 e1 + eval_0 e2
77 \end{lstHaskellLhstex}
78
79 Adding semantics---e.g.\ a printer---just means adding another function while the existing functions remain untouched.
80 I.e.\ the key property of deep embedding.
81 The following function, transforming the \haskelllhstexinline{Expr_0} data type to a string, defines a simple printer for our language.
82
83 \begin{lstHaskellLhstex}
84 print_0 :: Expr_0 -> String
85 print_0 (Lit_0 v) = show v
86 print_0 (Add_0 e1 e2) = "(" ++ print_0 e1 ++ "-" ++ print_0 e2 ++ ")"
87 \end{lstHaskellLhstex}
88
89 While the language is concise and elegant, it is not very expressive.
90 Traditionally, extending the language is achieved by adding a case to the \haskelllhstexinline{Expr_0} data type.
91 So, adding subtraction to the language results in the following revised data type.
92
93 \begin{lstHaskellLhstex}
94 data Expr_0
95 = Lit_0 Int
96 | Add_0 Expr_0 Expr_0
97 | Sub_0 Expr_0 Expr_0
98 \end{lstHaskellLhstex}
99
100 Extending the \gls{DSL} with language constructs exposes the Achilles' heel of deep embedding.
101 Adding a case to the data type means that all semantics functions have become partial and need to be updated to be able to handle this new case.
102 This does not seem like an insurmountable problem, but it does pose a problem if either the functions or the data type itself are written by others or are contained in a closed library.
103
104 \section{Shallow embedding}
105 Conversely, let us see how this would be done in shallow embedding.
106 First, the data type is represented by functions in the host language with embedded semantics.
107 Therefore, the evaluators for literals and addition both become a function in the host language as follows.
108
109 \begin{lstHaskellLhstex}
110 type Sem_s = Int
111
112 lit_s :: Int -> Sem_s
113 lit_s i = i
114
115 add_s :: Sem_s -> Sem_s -> Sem_s
116 add_s e1 e2 = e1 + e2
117 \end{lstHaskellLhstex}
118
119 Adding constructions to the language is done by adding functions.
120 Hence, the following function adds subtraction to our language.
121
122 \begin{lstHaskellLhstex}
123 sub_s :: Sem_s -> Sem_s -> Sem_s
124 sub_s e1 e2 = e1 - e2
125 \end{lstHaskellLhstex}
126
127 Adding semantics on the other hand---e.g.\ a printer---is not that simple because the semantics are part of the functions representing the language constructs.
128 One way to add semantics is to change all functions to execute both semantics at the same time.
129 In our case this means changing the type of \haskelllhstexinline{Sem_s} to be \haskelllhstexinline{(Int, String)} so that all functions operate on a tuple containing the result of the evaluator and the printed representation at the same time. %chktex 36
130 Alternatively, a single semantics can be defined that represents a fold over the language constructs \citep{gibbons_folding_2014}, delaying the selection of semantics to the moment the fold is applied.
131
132 \subsection{Tagless-final embedding}\label{sec:tagless-final_embedding}
133 Tagless-final embedding overcomes the limitations of standard shallow embedding.
134 To upgrade to this embedding technique, the language constructs are changed from functions to type classes.
135 For our language this results in the following type class definition.
136
137 \begin{lstHaskellLhstex}
138 class Expr_t s where
139 lit_t :: Int -> s
140 add_t :: s -> s -> s
141 \end{lstHaskellLhstex}
142
143 Semantics become data types implementing these type classes, resulting in the following instance for the evaluator\footnotemark.
144 \footnotetext{%
145 In this case \haskelllhstexinline{newtype}s are used instead of regular \haskelllhstexinline{data} declarations.
146 A \haskelllhstexinline{newtype} is a special data type with a single constructor containing a single value only to which it is isomorphic.
147 It allows the programmer to define separate class instances that the instances of the isomorphic type without any overhead.
148 During compilation the constructor is completely removed \citep[\citesection{4.2.3}]{peyton_jones_haskell_2003}.
149 }
150
151 \begin{lstHaskellLhstex}
152 newtype Eval_t = E_t Int
153
154 instance Expr_t Eval_t where
155 lit_t v = E_t v
156 add_t (E_t e1) (E_t e2) = E_t (e1 + e2)
157 \end{lstHaskellLhstex}
158
159 Adding constructs---e.g.\ subtraction---just results in an extra type class and corresponding instances.
160
161 \begin{lstHaskellLhstex}
162 class Sub_t s where
163 sub_t :: s -> s -> s
164
165 instance Sub_t Eval_t where
166 sub_t (E_t e1) (E_t e2) = E_t (e1 - e2)
167 \end{lstHaskellLhstex}
168
169 Finally, adding semantics such as a printer over the language is achieved by providing a data type representing the semantics accompanied by instances for the language constructs.
170
171 \begin{lstHaskellLhstex}
172 newtype Printer_t = P_t String
173
174 instance Expr_t Printer_t where
175 lit_t i = P_t (show i)
176 add_t (P_t e1) (P_t e2) = P_t ("(" ++ e1 ++ "+" ++ e2 ++ ")")
177
178 instance Sub_t Printer_t where
179 sub_t (P_t e1) (P_t e2) = P_t ("(" ++ e1 ++ "-" ++ e2 ++ ")")
180 \end{lstHaskellLhstex}
181
182 \section{Lifting the backends}%
183 Let us rethink the deeply embedded \gls{DSL} design.
184 Remember that in shallow embedding, the semantics are embedded in the language construct functions.
185 Obtaining extensibility both in constructs and semantics was accomplished by abstracting the semantics functions to type classes, making the constructs overloaded in the semantics.
186 In deep embedding, the constructs are embedded in the semantics functions instead.
187 So, let us apply the same technique, i.e.\ make the semantics overloaded in the language constructs by abstracting the semantics functions to type classes.
188 The same effect may be achieved when using similar techniques such as explicit dictionary passing or ML style modules.
189 In our language this results in the following type class.
190
191 \begin{lstHaskellLhstex}
192 class Eval_1 v where
193 eval_1 :: v -> Int
194
195 data Expr_1
196 = Lit_1 Int
197 | Add_1 Expr_1 Expr_1
198 \end{lstHaskellLhstex}
199
200 Implementing the semantics type class instances for the \haskelllhstexinline{Expr_1} data type is an elementary exercise.
201 By a copy-paste and some modifications, we come to the following implementation.
202
203 \begin{lstHaskellLhstex}
204 instance Eval_1 Expr_1 where
205 eval_1 (Lit_1 v) = v
206 eval_1 (Add_1 e1 e2) = eval_1 e1 + eval_1 e2
207 \end{lstHaskellLhstex}
208
209 Subtraction can now be defined in a separate data type, leaving the original data type intact.
210 Instances for the additional semantics can now be implemented separately as instances of the type classes.
211
212 \begin{lstHaskellLhstex}
213 data Sub_1 = Sub_1 Expr_1 Expr_1
214
215 instance Eval_1 Sub_1 where
216 eval_1 (Sub_1 e1 e2) = eval_1 e1 - eval_1 e2
217 \end{lstHaskellLhstex}
218
219 \section{Existential data types}%
220
221 The astute reader might have noticed that we have dissociated ourselves from the original data type.
222 It is only possible to create an expression with a subtraction on the top level.
223 The recursive knot is left untied and as a result, \haskelllhstexinline{Sub_1} can never be reached from an \haskelllhstexinline{Expr_1}.
224
225 Luckily, we can reconnect them by adding a special constructor to the \haskelllhstexinline{Expr_1} data type for housing extensions.
226 It contains an existentially quantified \citep{mitchell_abstract_1988} type with type class constraints \citep{laufer_combining_1994,laufer_type_1996} for all semantics type classes \citep[\citesection{6.4.6}]{ghc_team_ghc_2021} to allow it to house not just subtraction but any future extension.
227
228 \begin{lstHaskellLhstex}
229 data Expr_2
230 = Lit_2 Int
231 | Add_2 Expr_2 Expr_2
232 | forall x. Eval_2 x => Ext_2 x
233 \end{lstHaskellLhstex}
234
235 The implementation of the extension case in the semantics type classes is in most cases just a matter of calling the function for the argument as can be seen in the semantics instances shown below.
236
237 \begin{lstHaskellLhstex}
238 instance Eval_2 Expr_2 where
239 eval_2 (Lit_2 v) = v
240 eval_2 (Add_2 e1 e2) = eval_2 e1 + eval_2 e2
241 eval_2 (Ext_2 x) = eval_2 x
242 \end{lstHaskellLhstex}
243
244 Adding language construct extensions in different data types does mean that an extra \haskelllhstexinline{Ext_2} tag is introduced when using the extension.
245 This burden can be relieved by creating a smart constructor for it that automatically wraps the extension with the \haskelllhstexinline{Ext_2} constructor so that it is of the type of the main data type.
246
247 \begin{lstHaskellLhstex}
248 sub_2 :: Expr_2 -> Expr_2 -> Expr_2
249 sub_2 e1 e2 = Ext_2 (Sub_2 e1 e2)
250 \end{lstHaskellLhstex}
251
252 In our example this means that the programmer can write\footnotemark:
253 \footnotetext{%
254 Backticks are used to use functions or constructors in an infix fashion \citep[\citesection{4.3.3}]{peyton_jones_haskell_2003}.
255 }
256 \begin{lstHaskellLhstex}
257 e2 :: Expr_2
258 e2 = Lit_2 42 `sub_2` Lit_2 1
259 \end{lstHaskellLhstex}
260 instead of having to write
261 \begin{lstHaskellLhstex}
262 e2p :: Expr_2
263 e2p = Ext_2 (Lit_2 42 `Sub_2` Lit_2 1)
264 \end{lstHaskellLhstex}
265
266 \subsection{Unbraiding the semantics from the data}
267 This approach does reveal a minor problem.
268 Namely, that all semantics type classes are braided into our datatypes via the \haskelllhstexinline{Ext_2} constructor.
269 Say if we add the printer again, the \haskelllhstexinline{Ext_2} constructor has to be modified to contain the printer type class constraint as well.\footnote{Resulting in the following constructor: \haskelllhstexinline{forall x.(Eval_2 x, Print_2 x) => Ext_2 x}.} %chktex 36
270 Thus, if we add semantics, the main data type's type class constraints in the \haskelllhstexinline{Ext_2} constructor need to be updated.
271 To avoid this, the type classes can be bundled in a type class alias or type class collection as follows.
272
273 \begin{lstHaskellLhstex}
274 class (Eval_2 x, Print_2 x) => Semantics_2 x
275
276 data Expr_2
277 = Lit_2 Int
278 | Add_2 Expr_2 Expr_2
279 | forall x. Semantics_2 x => Ext_2 x
280 \end{lstHaskellLhstex}
281
282 The class alias removes the need for the programmer to visit the main data type when adding additional semantics.
283 Unfortunately, the compiler does need to visit the main data type again.
284 Some may argue that adding semantics happens less frequently than adding language constructs but in reality it means that we have to concede that the language is not as easily extensible in semantics as in language constructs.
285 More exotic type system extensions such as constraint kinds \citep{bolingbroke_constraint_2011,yorgey_giving_2012} can untangle the semantics from the data types by making the data types parametrised by the particular semantics.
286 However, by adding some boilerplate, even without this extension, the language constructs can be parametrised by the semantics by putting the semantics functions in a data type.
287 First the data types for the language constructs are parametrised by the type variable \haskelllhstexinline{d} as follows.
288
289 \begin{lstHaskellLhstex}
290 data Expr_3 d
291 = Lit_3 Int
292 | Add_3 (Expr_3 d) (Expr_3 d)
293 | forall x. Ext_3 (d x) x
294
295 data Sub_3 d = Sub_3 (Expr_3 d) (Expr_3 d)
296 \end{lstHaskellLhstex}
297
298 The \haskelllhstexinline{d} type variable is inhabited by an explicit dictionary for the semantics, i.e.\ a witness to the class instance.
299 Therefore, for all semantics type classes, a data type is made that contains the semantics function for the given semantics.
300 This means that for \haskelllhstexinline{Eval_3}, a dictionary with the function \haskelllhstexinline{EvalDict_3} is defined, a type class \haskelllhstexinline{HasEval_3} for retrieving the function from the dictionary and an instance for \haskelllhstexinline{HasEval_3} for \haskelllhstexinline{EvalDict_3}.
301
302 \begin{lstHaskellLhstex}
303 newtype EvalDict_3 v = EvalDict_3 (v -> Int)
304
305 class HasEval_3 d where
306 getEval_3 :: d v -> v -> Int
307
308 instance HasEval_3 EvalDict_3 where
309 getEval_3 (EvalDict_3 e) = e
310 \end{lstHaskellLhstex}
311
312 The instances for the type classes change as well according to the change in the datatype.
313 Given that there is a \haskelllhstexinline{HasEval_3} instance for the witness type \haskelllhstexinline{d}, we can provide an implementation of \haskelllhstexinline{Eval_3} for \haskelllhstexinline{Expr_3 d}.
314
315 \begin{lstHaskellLhstex}
316 instance HasEval_3 d => Eval_3 (Expr_3 d) where
317 eval_3 (Lit_3 v) = v
318 eval_3 (Add_3 e1 e2) = eval_3 e1 + eval_3 e2
319 eval_3 (Ext_3 d x) = getEval_3 d x
320
321 instance HasEval_3 d => Eval_3 (Sub_3 d) where
322 eval_3 (Sub_3 e1 e2) = eval_3 e1 - eval_3 e2
323 \end{lstHaskellLhstex}
324
325 Because the \haskelllhstexinline{Ext_3} constructor from \haskelllhstexinline{Expr_3} now contains a value of type \haskelllhstexinline{d}, the smart constructor for \haskelllhstexinline{Sub_3} must somehow come up with this value.
326 To achieve this, a type class is introduced that allows the generation of such a dictionary.
327
328 \begin{lstHaskellLhstex}
329 class GDict a where
330 gdict :: a
331 \end{lstHaskellLhstex}
332
333 This type class has individual instances for all semantics dictionaries, linking the class instance to the witness value.
334 I.e.\ if there is a type class instance known, a witness value can be conjured using the \haskelllhstexinline{gdict} function.
335
336 \begin{lstHaskellLhstex}
337 instance Eval_3 v => GDict (EvalDict_3 v) where
338 gdict = EvalDict_3 eval_3
339 \end{lstHaskellLhstex}
340
341 With these instances, the semantics function can be retrieved from the \haskelllhstexinline{Ext_3} constructor and in the smart constructors they can be generated as follows:
342
343 \begin{lstHaskellLhstex}
344 sub_3 :: GDict (d (Sub_3 d)) => Expr_3 d -> Expr_3 d -> Expr_3 d
345 sub_3 e1 e2 = Ext_3 gdict (Sub_3 e1 e2)
346 \end{lstHaskellLhstex}
347
348 Finally, we reached the end goal, orthogonal extension of both language constructs as shown by adding subtraction to the language and in language semantics.
349 Adding the printer can now be done without touching the original code as follows.
350 First the printer type class, dictionaries and instances for \haskelllhstexinline{GDict} are defined.
351
352 \begin{lstHaskellLhstex}
353 class Print_3 v where
354 print_3 :: v -> String
355
356 newtype PrintDict_3 v = PrintDict_3 (v -> String)
357
358 class HasPrint_3 d where
359 getPrint_3 :: d v -> v -> String
360
361 instance HasPrint_3 PrintDict_3 where
362 getPrint_3 (PrintDict_3 e) = e
363
364 instance Print_3 v => GDict (PrintDict_3 v) where
365 gdict = PrintDict_3 print_3
366 \end{lstHaskellLhstex}
367
368 Then the instances for \haskelllhstexinline{Print_3} of all the language constructs can be defined.
369
370 \begin{lstHaskellLhstex}
371 instance HasPrint_3 d => Print_3 (Expr_3 d) where
372 print_3 (Lit_3 v) = show v
373 print_3 (Add_3 e1 e2) = "(" ++ print_3 e1 ++ "+" ++ print_3 e2 ++ ")"
374 print_3 (Ext_3 d x) = getPrint_3 d x
375 instance HasPrint_3 d => Print_3 (Sub_3 d) where
376 print_3 (Sub_3 e1 e2) = "(" ++ print_3 e1 ++ "-" ++ print_3 e2 ++ ")"
377 \end{lstHaskellLhstex}
378
379 \section{Transformation semantics}
380 Most semantics convert a term to some final representation and can be expressed just by functions on the cases.
381 However, the implementation of semantics such as transformation or optimisation may benefit from a so-called intentional analysis of the abstract syntax tree.
382 In shallow embedding, the implementation for these types of semantics is difficult because there is no tangible abstract syntax tree.
383 In off-the-shelf deep embedding this is effortless since the function can pattern match on the constructor or structures of constructors.
384
385 To demonstrate intensional analyses in classy deep embedding we write an optimizer that removes addition and subtraction by zero.
386 In classy deep embedding, adding new semantics means first adding a new type class housing the function including the machinery for the extension constructor.
387
388 \begin{lstHaskellLhstex}
389 class Opt_3 v where
390 opt_3 :: v -> v
391
392 newtype OptDict_3 v = OptDict_3 (v -> v)
393
394 class HasOpt_3 d where
395 getOpt_3 :: d v -> v -> v
396
397 instance HasOpt_3 OptDict_3 where
398 getOpt_3 (OptDict_3 e) = e
399
400 instance Opt_3 v => GDict (OptDict_3 v) where
401 gdict = OptDict_3 opt_3
402 \end{lstHaskellLhstex}
403
404 The implementation of the optimizer for the \haskelllhstexinline{Expr_3} data type is no complicated task.
405 The only interesting bit occurs in the \haskelllhstexinline{Add_3} constructor, where we pattern match on the optimised children to determine whether an addition with zero is performed.
406 If this is the case, the addition is removed.
407
408 \begin{lstHaskellLhstex}
409 instance HasOpt_3 d => Opt_3 (Expr_3 d) where
410 opt_3 (Lit_3 v) = Lit_3 v
411 opt_3 (Add_3 e1 e2) = case (opt_3 e1, opt_3 e2) of
412 (Lit_3 0, e2p ) -> e2p
413 (e1p, Lit_3 0) -> e1p
414 (e1p, e2p ) -> Add_3 e1p e2p
415 opt_3 (Ext_3 d x) = Ext_3 d (getOpt_3 d x)
416 \end{lstHaskellLhstex}
417
418 Replicating this for the \haskelllhstexinline{Opt_3} instance of \haskelllhstexinline{Sub_3} seems a clear-cut task at first glance.
419
420 \begin{lstHaskellLhstex}
421 instance HasOpt_3 d => Opt_3 (Sub_3 d) where
422 opt_3 (Sub_3 e1 e2) = case (opt_3 e1, opt_3 e2) of
423 (e1p, Lit_3 0) -> e1p
424 (e1p, e2p ) -> Sub_3 e1p e2p
425 \end{lstHaskellLhstex}
426
427 Unsurprisingly, this code is rejected by the compiler.
428 When a literal zero is matched as the right-hand side of a subtraction, the left-hand side of type \haskelllhstexinline{Expr_3} is returned.
429 However, the type signature of the function dictates that it should be of type \haskelllhstexinline{Sub_3}.
430 To overcome this problem we add a convolution constructor.
431
432 \subsection{Convolution}
433 Adding a loopback case or convolution constructor to \haskelllhstexinline{Sub_3} allows the removal of the \haskelllhstexinline{Sub_3} constructor while remaining the \haskelllhstexinline{Sub_3} type.
434 It should be noted that a loopback case is \emph{only} required if the transformation actually removes tags.
435 This changes the \haskelllhstexinline{Sub_3} data type as follows.
436
437 \begin{lstHaskellLhstex}
438 data Sub_4 d
439 = Sub_4 (Expr_4 d) (Expr_4 d)
440 | SubLoop_4 (Expr_4 d)
441
442 instance HasEval_4 d => Eval_4 (Sub_4 d) where
443 eval_4 (Sub_4 e1 e2) = eval_4 e1 - eval_4 e2
444 eval_4 (SubLoop_4 e1) = eval_4 e1
445 \end{lstHaskellLhstex}
446
447 With this loopback case in the toolbox, the following \haskelllhstexinline{Sub} instance optimises away subtraction with zero literals.
448
449 \begin{lstHaskellLhstex}
450 instance HasOpt_4 d => Opt_4 (Sub_4 d) where
451 opt_4 (Sub_4 e1 e2) = case (opt_4 e1, opt_4 e2) of
452 (e1p, Lit_4 0) -> SubLoop_4 e1p
453 (e1p, e2p ) -> Sub_4 e1p e2p
454 opt_4 (SubLoop_4 e) = SubLoop_4 (opt_4 e)
455 \end{lstHaskellLhstex}
456
457 \subsection{Pattern matching}
458 Pattern matching within datatypes and from an extension to the main data type works out of the box.
459 Cross-extensional pattern matching on the other hand---matching on a particular extension---is something that requires a bit of extra care.
460 Take for example negation propagation and double negation elimination.
461 Pattern matching on values with an existential type is not possible without leveraging dynamic typing \citep{abadi_dynamic_1991,baars_typing_2002}.
462 To enable dynamic typing support, the \haskelllhstexinline{Typeable} type class as provided by \haskelllhstexinline{Data.Dynamic} \citep{ghc_team_datadynamic_2021} is added to the list of constraints in all places where we need to pattern match across extensions.
463 As a result, the \haskelllhstexinline{Typeable} type class constraints are added to the quantified type variable \haskelllhstexinline{x} of the \haskelllhstexinline{Ext_4} constructor and to \haskelllhstexinline{d}s in the smart constructors.
464
465 \begin{lstHaskellLhstex}
466 data Expr_4 d
467 = Lit_4 Int
468 | Add_4 (Expr_4 d) (Expr_4 d)
469 | forall x. Typeable x => Ext_4 (d x) x
470 \end{lstHaskellLhstex}
471
472 First let us add negation to the language by defining a datatype representing it.
473 Negation elimination requires the removal of negation constructors, so a convolution constructor is defined as well.
474
475 \begin{lstHaskellLhstex}
476 data Neg_4 d
477 = Neg_4 (Expr_4 d)
478 | NegLoop_4 (Expr_4 d)
479
480 neg_4 :: (Typeable d, GDict (d (Neg_4 d))) => Expr_4 d -> Expr_4 d
481 neg_4 e = Ext_4 gdict (Neg_4 e)
482 \end{lstHaskellLhstex}
483
484 The evaluation and printer instances for the \haskelllhstexinline{Neg_4} datatype are defined as follows.
485
486 \begin{lstHaskellLhstex}
487 instance HasEval_4 d => Eval_4 (Neg_4 d) where
488 eval_4 (Neg_4 e) = negate (eval_4 e)
489 eval_4 (NegLoop_4 e) = eval_4 e
490
491 instance HasPrint_4 d => Print_4 (Neg_4 d) where
492 print_4 (Neg_4 e) = "(~" ++ print_4 e ++ ")"
493 print_4 (NegLoop_4 e) = print_4 e
494 \end{lstHaskellLhstex}
495
496 The \haskelllhstexinline{Opt_4} instance contains the interesting bit.
497 If the sub expression of a negation is an addition, negation is propagated downwards.
498 If the sub expression is again a negation, something that can only be found out by a dynamic pattern match, it is replaced by a \haskelllhstexinline{NegLoop_4} constructor.
499
500 \begin{lstHaskellLhstex}
501 instance (Typeable d, GDict (d (Neg_4 d)), HasOpt_4 d) => Opt_4 (Neg_4 d) where
502 opt_4 (Neg_4 (Add_4 e1 e2))
503 = NegLoop_4 (Add_4 (opt_4 (neg_4 e1)) (opt_4 (neg_4 e2)))
504 opt_4 (Neg_4 (Ext_4 d x))
505 = case fromDynamic (toDyn (getOpt_4 d x)) of
506 Just (Neg_4 e) -> NegLoop_4 e
507 _ -> Neg_4 (Ext_4 d (getOpt_4 d x))
508 opt_4 (Neg_4 e) = Neg_4 (opt_4 e)
509 opt_4 (NegLoop_4 e) = NegLoop_4 (opt_4 e)
510 \end{lstHaskellLhstex}
511
512 Loopback cases do make cross-extensional pattern matching less modular in general.
513 For example, \haskelllhstexinline{Ext_4 d (SubLoop_4 (Lit_4 0))} is equivalent to \haskelllhstexinline{Lit_4 0} in the optimisation semantics and would require an extra pattern match.
514 Fortunately, this problem can be mitigated---if required---by just introducing an additional optimisation semantics that removes loopback cases.
515 Luckily, one does not need to resort to these arguably blunt matters often.
516 Dependent language functionality often does not need to span extensions, i.e.\ it is possible to group them in the same data type.
517
518 \subsection{Chaining semantics}
519 Now that the data types are parametrised by the semantics a final problem needs to be overcome.
520 The data type is parametrised by the semantics, thus, using multiple semantics, such as evaluation after optimising is not straightforwardly possible.
521 Luckily, a solution is readily at hand: introduce an ad-hoc combination semantics.
522
523 \begin{lstHaskellLhstex}
524 data OptPrintDict_4 v = OPD_4 (OptDict_4 v) (PrintDict_4 v)
525
526 instance HasOpt_4 OptPrintDict_4 where
527 getOpt_4 (OPD_4 v _) = getOpt_4 v
528 instance HasPrint_4 OptPrintDict_4 where
529 getPrint_4 (OPD_4 _ v) = getPrint_4 v
530
531 instance (Opt_4 v, Print_4 v) => GDict (OptPrintDict_4 v) where
532 gdict = OPD_4 gdict gdict
533 \end{lstHaskellLhstex}
534
535 And this allows us to write \haskelllhstexinline{print_4 (opt_4 e1)} resulting in \verb|"((~42)+(~38))"| when \haskelllhstexinline{e1} represents $(\sim(42+38))-0$ and is thus defined as follows.
536
537 \begin{lstHaskellLhstex}
538 e1 :: Expr_4 OptPrintDict_4
539 e1 = neg_4 (Lit_4 42 `Add_4` Lit_4 38) `sub_4` Lit_4 0
540 \end{lstHaskellLhstex}
541
542 When using classy deep embedding to the fullest, the ability of the compiler to infer very general types expires.
543 As a consequence, defining reusable expressions that are overloaded in their semantics requires quite some type class constraints that cannot be inferred by the compiler (yet) if they use many extensions.
544 Solving this remains future work.
545 For example, the expression $\sim(42-38)+1$ has to be defined as:
546
547 \begin{lstHaskellLhstex}
548 e3 :: (Typeable d, GDict (d (Neg_4 d)), GDict (d (Sub_4 d))) => Expr_4 d
549 e3 = neg_4 (Lit_4 42 `sub_4` Lit_4 38) `Add_4` Lit_4 1
550 \end{lstHaskellLhstex}
551
552 \section{\texorpdfstring{\Glsxtrlongpl{GADT}}{Generalised algebraic data types}}%
553 \Glspl{GADT} are enriched data types that allow the type instantiation of the constructor to be explicitly defined \citep{cheney_first-class_2003,hinze_fun_2003}.
554 Leveraging \glspl{GADT}, deeply embedded \glspl{DSL} can be made statically type safe even when different value types are supported.
555 Even when \glspl{GADT} are not supported natively in the language, they can be simulated using embedding-projection pairs or equivalence types \citep[\citesection{2.2}]{cheney_lightweight_2002}.
556 Where some solutions to the expression problem do not easily generalise to \glspl{GADT} (see \cref{sec:cde:related}), classy deep embedding does.
557 Generalising the data structure of our \gls{DSL} is fairly straightforward and to spice things up a bit, we add an equality and boolean not language construct.
558 To make the existing \gls{DSL} constructs more general, we relax the types of those constructors.
559 For example, operations on integers now work on all numerals instead.
560 Moreover, the \haskelllhstexinline{Lit_g} constructor can be used to lift values of any type to the \gls{DSL} domain as long as they have a \haskelllhstexinline{Show} instance, required for the printer.
561 Since some optimisations on \haskelllhstexinline{Not_g} remove constructors and therefore use cross-extensional pattern matches, \haskelllhstexinline{Typeable} constraints are added to \haskelllhstexinline{a}.
562 Furthermore, because the optimisations for \haskelllhstexinline{Add_g} and \haskelllhstexinline{Sub_g} are now more general, they do not only work for \haskelllhstexinline{Int}s but for any type with a \haskelllhstexinline{Num} instance, the \haskelllhstexinline{Eq} constraint is added to these constructors as well.
563 Finally, not to repeat ourselves too much, we only show the parts that substantially changed.
564 The omitted definitions and implementation can be found in \cref{sec:cde:appendix}.
565
566 \begin{lstHaskellLhstex}
567 data Expr_g d a where
568 Lit_g :: Show a => a -> Expr_g d a
569 Add_g :: (Eq a, Num a) => Expr_g d a -> Expr_g d a -> Expr_g d a
570 Ext_g :: Typeable x => d x -> x a -> Expr_g d a
571 data Neg_g d a where
572 Neg_g :: (Typeable a, Num a) => Expr_g d a -> Neg_g d a
573 NegLoop_g :: Expr_g d a -> Neg_g d a
574 data Not_g d a where
575 Not_g :: Expr_g d Bool -> Not_g d Bool
576 NotLoop_g :: Expr_g d a -> Not_g d a
577 \end{lstHaskellLhstex}
578
579 The smart constructors for the language extensions inherit the class constraints of their data types and include a \haskelllhstexinline{Typeable} constraint on the \haskelllhstexinline{d} type variable for it to be usable in the \haskelllhstexinline{Ext_g} constructor as can be seen in the smart constructor for \haskelllhstexinline{Neg_g}:
580
581 \begin{lstHaskellLhstex}
582 neg_g :: (Typeable d, GDict (d (Neg_g d)), Typeable a, Num a) =>
583 Expr_g d a -> Expr_g d a
584 neg_g e = Ext_g gdict (Neg_g e)
585
586 not_g :: (Typeable d, GDict (d (Not_g d))) =>
587 Expr_g d Bool -> Expr_g d Bool
588 not_g e = Ext_g gdict (Not_g e)
589 \end{lstHaskellLhstex}
590
591 Upgrading the semantics type classes to support \glspl{GADT} is done by an easy textual search and replace.
592 All occurrences of \haskelllhstexinline{v} are now parametrised by type variable \haskelllhstexinline{a}:
593
594 \begin{lstHaskellLhstex}
595 class Eval_g v where
596 eval_g :: v a -> a
597 class Print_g v where
598 print_g :: v a -> String
599 class Opt_g v where
600 opt_g :: v a -> v a
601 \end{lstHaskellLhstex}
602
603 Now that the shape of the type classes has changed, the dictionary data types and the type classes need to be adapted as well.
604 The introduced type variable \haskelllhstexinline{a} is not an argument to the type class, so it should not be an argument to the dictionary data type.
605 To represent this type class function, a rank-2 polymorphic function is needed \citep[\citesection{6.4.15}]{ghc_team_ghc_2021}\citep{odersky_putting_1996}.
606 Concretely, for the evaluatior this results in the following definitions:
607
608 \begin{lstHaskellLhstex}
609 newtype EvalDict_g v = EvalDict_g (forall a. v a -> a)
610 class HasEval_g d where
611 getEval_g :: d v -> v a -> a
612 instance HasEval_g EvalDict_g where
613 getEval_g (EvalDict_g e) = e
614 \end{lstHaskellLhstex}
615
616 The \haskelllhstexinline{GDict} type class is general enough, so the instances can remain the same.
617 The \haskelllhstexinline{Eval_g} instance of \haskelllhstexinline{GDict} looks as follows:
618
619 \begin{lstHaskellLhstex}
620 instance Eval_g v => GDict (EvalDict_g v) where
621 gdict = EvalDict_g eval_g
622 \end{lstHaskellLhstex}
623
624 Finally, the implementations for the instances can be ported without complication show using the optimisation instance of \haskelllhstexinline{Not_g}:
625
626 \begin{lstHaskellLhstex}
627 instance (Typeable d, GDict (d (Not_g d)), HasOpt_g d) => Opt_g (Not_g d) where
628 opt_g (Not_g (Ext_g d x))
629 = case fromDynamic (toDyn (getOpt_g d x)) :: Maybe (Not_g d Bool) of
630 Just (Not_g e) -> NotLoop_g e
631 _ -> Not_g (Ext_g d (getOpt_g d x))
632 opt_g (Not_g e) = Not_g (opt_g e)
633 opt_g (NotLoop_g e) = NotLoop_g (opt_g e)
634 \end{lstHaskellLhstex}
635
636 \section{Conclusion}%
637
638 Classy deep embedding is a novel organically grown embedding technique that alleviates deep embedding from the extensibility problem in most cases.
639
640 By abstracting the semantics functions to type classes they become overloaded in the language constructs.
641 Thus, making it possible to add new language constructs in a separate type.
642 These extensions are brought together in a special extension constructor residing in the main data type.
643 This extension case is overloaded by the language construct using a data type containing the class dictionary.
644 As a result, orthogonal extension is possible for language constructs and semantics using only little syntactic overhead or type annotations.
645 The basic technique only requires---well established through history and relatively standard---existential data types.
646 However, if needed, the technique generalises to \glspl{GADT} as well, adding rank-2 types to the list of type system requirements as well.
647 Finally, the abstract syntax tree remains observable which makes it suitable for intensional analyses, albeit using occasional dynamic typing for truly cross-extensional transformations.
648
649 Defining reusable expressions overloaded in semantics or using multiple semantics on a single expression requires some boilerplate still, getting around this remains future work.
650 \Cref{sec:classy_reprise} shows how the boilerplate can be minimised using advanced type system extensions.
651
652 \section{Related work}%
653 \label{sec:cde:related}
654
655 Embedded \gls{DSL} techniques in functional languages have been a topic of research for many years, thus we do not claim a complete overview of related work.
656
657 Clearly, classy deep embedding bears most similarity to the \emph{Datatypes \`a la Carte} \citep{swierstra_data_2008}.
658 In \citeauthor{swierstra_data_2008}'s approach, semantics are lifted to type classes similarly to classy deep embedding.
659 Each language construct is their own datatype parametrised by a type parameter.
660 This parameter contains some type level representation of language constructs that are in use.
661 In classy deep embedding, extensions only have to be enumerated at the type level when the term is required to be overloaded, in all other cases they are captured in the extension case.
662 Because all the constructs are expressed in the type system, nifty type system tricks need to be employed to convince the compiler that everything is type safe and the class constraints can be solved.
663 Furthermore, it requires some boilerplate code such as functor instances for the data types.
664 In return, pattern matching is easier and does not require dynamic typing.
665 Classy deep embedding only strains the programmer with writing the extension case for the main data type and the occasional loopback constructor.
666
667 \Citet{loh_open_2006} proposed a language extension that allows open data types and open functions, i.e.\ functions and data types that can be extended with more cases later on.
668 They hinted at the possibility of using type classes for open functions but had serious concerns that pattern matching would be crippled because constructors are becoming types, thus ultimately becoming impossible to type.
669 In contrast, this paper shows that pattern matching is easily attainable---albeit using dynamic types---and that the terms can be typed without complicated type system extensions.
670
671 A technique similar to classy deep embedding was proposed by \citet{najd_trees_2017} to tackle a slightly different problem, namely that of reusing a data type for multiple purposes in a slightly different form.
672 For example to decorate the abstract syntax tree of a compiler differently for each phase of the compiler.
673 They propose to add an extension descriptor as a type variable to a data type and a type family that can be used to decorate constructors with extra information and add additional constructors to the data type using an extension constructor.
674 Classy deep embedding works similarly but uses existentially quantified type variables to describe possible extensions instead of type variables and type families.
675 In classy deep embedding, the extensions do not need to be encoded in the type system and less boilerplate is required.
676 Furthermore, pattern matching on extensions becomes a bit more complicated but in return it allows for multiple extensions to be added orthogonally and avoids the necessity for type system extensions.
677
678 Tagless-final embedding is the shallowly embedded counterpart of classy deep embedding and was invented for the same purpose; overcoming the issues with standard shallow embedding \citep{carette_finally_2009}.
679 Classy deep embedding was organically grown from observing the evolution of tagless-final embedding.
680 The main difference between tagless-final embedding and classy deep embedding---and in general between shallow and deep embedding---is that intensional analyses of the abstract syntax tree is more difficult because there is no tangible abstract syntax tree data structure.
681 In classy deep embedding, it is possible to define transformations even across extensions.
682 Furthermore, in classy deep embedding, defining (mutual) dependent interpretations is automatically supported whereas in tagless-final embedding this requires some amount of code duplication \citep{sun_compositional_2022}.
683
684 Hybrid approaches between deep and shallow embedding exist as well.
685 For example, \citet{svenningsson_combining_2013} show that by expressing the deeply embedded language in a shallowly embedded core language, extensions can be made orthogonally as well.
686 This paper differs from those approaches in the sense that it does not require a core language in which all extensions need to be expressible.
687
688 \subsection{Comparison}
689 No \gls{DSL} embedding technique is the silver bullet.
690 \Citet{sun_compositional_2022} provided a thorough comparison of embedding techniques including more axes than just the two stated in the expression problem.
691
692 \Cref{tbl:dsl_comparison_brief} shows a variant of their comparison table.
693 The first two rows describe the two axes of the original expression problem and the third row describes theadded axis of modular dependency handling as stated by \citeauthor{sun_compositional_2022}.
694 The \emph{poly.} style of embedding---including tagless-final---falls short of this requirement.
695
696 Intensional analysis is an umbrella term for pattern matching and transformations.
697 In shallow embedding, intensional analysis is more complex and requires stateful views describing context but it is possible to implement though.
698
699 Simple type system describes the whether it is possible to encode this embedding technique with many type system extensions.
700 In classy deep embedding, there is either a bit more scaffolding and boilerplate required or advanced type system extensions need to be used.
701
702 Little boilerplate denotes the amount of scaffolding and boilerplate required.
703 For example, hybrid embedding requires a transcoding step between the deep syntax and the shallow core language.
704
705 \begin{table}[ht]
706 \begin{threeparttable}[b]
707 \small
708 \caption{Comparison of embedding techniques, extended from \citet[\citesection{3.6}]{sun_compositional_2022}.}%
709 \label{tbl:dsl_comparison_brief}
710 \begin{tabular}{llllllll}
711 \toprule
712 & Shallow & Deep & Hybrid
713 & Poly. & Comp. & \`a la
714 & Classy\\
715 \midrule
716 Extend constructs & \CIRCLE{} & \Circle{} & \LEFTcircle{}\tnote{1}
717 & \CIRCLE{} & \CIRCLE{} & \CIRCLE{}
718 & \CIRCLE{}\\
719 Extend views & \Circle{} & \CIRCLE{} & \CIRCLE{}
720 & \CIRCLE{} & \CIRCLE{} & \CIRCLE{}
721 & \CIRCLE{}\\
722 Modular dependencies & \Circle{} & \CIRCLE{} & \CIRCLE{}
723 & \Circle{} & \CIRCLE{} & \CIRCLE{}
724 & \CIRCLE{}\\
725 Intensional analysis & \LEFTcircle{}\tnote{2} & \CIRCLE{} & \CIRCLE{}
726 & \LEFTcircle{}\tnote{2} & \LEFTcircle{}\tnote{2} & \CIRCLE{}
727 & \LEFTcircle{}\tnote{3}\\
728 Simple type system & \CIRCLE{} & \CIRCLE{} & \Circle{}
729 & \CIRCLE{} & \CIRCLE{} & \Circle{}
730 & \LEFTcircle{}\tnote{4}\\
731 Little boilerplate & \CIRCLE{} & \CIRCLE{} & \Circle{}
732 & \CIRCLE{} & \CIRCLE{} & \Circle{}
733 & \LEFTcircle{}\tnote{4}\\
734 \bottomrule
735 \end{tabular}
736 \begin{tablenotes}
737 \item [1] Only if the extension is expressible in the core language.
738 \item [2] Requires ingenuity and are sometimes awkward to write.
739 \item [3] Cross-extensional pattern matching requires \emph{safe} dynamic typing.
740 \item [4] Either a simple type system or little boilerplate.
741 \end{tablenotes}
742 \end{threeparttable}
743 \end{table}
744
745 \section*{Acknowledgements}
746 This research is partly funded by the Royal Netherlands Navy.
747 Furthermore, I would like to thank Pieter and Rinus for the fruitful discussions, Ralf for inspiring me to write a functional pearl, and the anonymous reviewers for their valuable and honest comments.
748
749 \begin{subappendices}
750 \section{Reprise: reducing boilerplate}%
751 \label{sec:classy_reprise}
752 One of the unique selling points of this novel \gls{DSL} embedding technique is that it, in its basic form, does not require advanced type system extensions nor a lot of boilerplate.
753 However, generalising the technique to \glspl{GADT} arguably unleashes a cesspool of \emph{unsafe} compiler extensions.
754 If we are willing to work with extensions, almost all of the boilerplate can be inferred or generated.
755
756 In classy deep embedding, the \gls{DSL} datatype is parametrised by a type variable providing a witness to the interpretation on the language.
757 When using multiple interpretations, these need to be bundled in a data type.
758 Using the \gls{GHC}'s \GHCmod{ConstraintKind} extension, we can make these witnesses explicit, tying into \gls{HASKELL}'s type system immediately.
759 Furthermore, this constraint does not necessarily has to be a single constraint, after enabling \GHCmod{DataKinds} and \GHCmod{TypeOperators}, we can encode lists of witnesses instead.
760 The data type for this list of witnesses is \haskelllhstexinline{Record} as shown in \cref{lst_cbde:record_type}.
761 This \gls{GADT} is parametrised by two type variables.
762 The first type variable (\haskelllhstexinline{dt}) is the type or type constructor on which the constraints can be applied and the second type variable (\haskelllhstexinline{clist}) is the list of constraints constructors itself.
763 This means that when \haskelllhstexinline{Cons} is pattern matched, the overloading of the type class constraint for \haskelllhstexinline{c dt} can be solved by the compiler.
764 \GHCmod{KindSignatures} is used to force the kinds of the type parameters and the kind of \haskelllhstexinline{dt} is polymorphic (\GHCmod{PolyKinds}) so that the \haskelllhstexinline{Record} data type can be used for \glspl{DSL} using type classes but also type constructor classes (e.g.\ when using \glspl{GADT}).
765
766 \begin{lstHaskellLhstex}[label={lst_cbde:record_type},caption={Data type for a list of constraints}]
767 data Record (dt :: k) (clist :: [k -> Constraint]) where
768 Nil :: Record dt '[]
769 Cons :: c dt => Record dt cs -> Record dt (c ': cs)
770 \end{lstHaskellLhstex}
771
772 To incorporate this type in the \haskelllhstexinline{Expr} type, the \haskelllhstexinline{Ext} constructor changes from containing a single witness dictionary to a \haskelllhstexinline{Record} type containing all the required dictionaries.
773
774 \begin{lstHaskellLhstex}[caption={Data type for a list of constraints}]
775 data Expr c
776 = Lit Int
777 | Add (Expr c) (Expr c)
778 | Ext (Record x c) x
779 \end{lstHaskellLhstex}
780
781 Furthermore, we define a type class (\haskelllhstexinline{In}) that allows us to extract explicit dictionaries \haskelllhstexinline{Dict} from these records if the constraint can is present in the list.
782 Since the constraints become available as soon as the \haskelllhstexinline{Cons} constructor is matched, the implementation is a trivial type-level list traversal.
783
784 \begin{lstHaskellLhstex}[caption={Membership functions for constraints}]
785 class c `In` cs where
786 project :: Record dt cs -> Dict (c dt)
787 instance {-# OVERLAPPING #-} c `In` (c ': cs) where
788 project (Cons _) = Dict
789 instance {-# OVERLAPPING #-} c `In` cs => c `In` (b ': cs) where
790 project (Cons xs) = project xs
791 \end{lstHaskellLhstex}
792
793 The final scaffolding is a multi-parameter type class \haskelllhstexinline{CreateRecord} (requiring the \GHCmod{MultiParamTypeclasses} and \GHCmod{FlexibleInstances} extension) to create these \haskelllhstexinline{Record} witnesses automatically.
794 This type class creates a record structure cons by cons if and only if all type class constraints are available in the list of constraints.
795 It is not required to provide instances for this for specific records or type classes, the two instances describe all the required constraints.
796
797 \begin{lstHaskellLhstex}[caption={Membership functions for constraints}]
798 class CreateRecord dt c where
799 createRecord :: Record dt c
800 instance CreateRecord d '[] where
801 createRecord = Nil
802 instance (c (d c0), CreateRecord (d c0) cs) =>
803 CreateRecord (d c0) (c ': cs) where
804 createRecord = Cons createRecord
805 \end{lstHaskellLhstex}
806
807 The class constraints for the interpretation instances can now be greatly simplified, as shown in the evaluation instance for \haskelllhstexinline{Expr}.
808 The implementation remains the same, only that for the extension case, a trick needs to be applied to convince the compiler of the correct instances.
809 Using \haskelllhstexinline{`In`}'s \haskelllhstexinline{project} function, a dictionary can be brought into scope.
810 This dictionary can then subsequently be used to apply the type class function on the extension using the \haskelllhstexinline{withDict} function from the \haskelllhstexinline{Data.Constraint} library.\footnote{\haskelllhstexinline{withDict :: Dict c -> (c => r) -> r}}
811 The \GHCmod{ScopedTypeVariables} extension is used to make sure the existentially quantified type variable for the extension is matched to the type of the dictionary.
812 Furthermore, because the class constraint is not smaller than the instance head, \GHCmod{UndecidableInstances} should be enabled.
813
814 \begin{lstHaskellLhstex}
815 class Eval v where
816 eval :: v -> Int
817
818 instance Eval `In` s => Eval (Expr s) where
819 eval (Lit i) = i
820 eval (Add l r) = eval l + eval r
821 eval (Ext r (e :: x)) = withDict (project r :: Dict (Eval x)) eval e
822 \end{lstHaskellLhstex}
823
824 Smart constructors need to be adapted as well, as can be seen from the smart constructor \haskelllhstexinline{subst}.
825 Instead of a \haskelllhstexinline{GDict} class constraint, a \haskelllhstexinline{CreateRecord} class constraint needs to be added.
826
827 \begin{lstHaskellLhstex}
828 subst :: (Typeable c, CreateRecord (Subt c) c)
829 => Expr c -> Expr c -> Expr c
830 subst l r = Ext createRecord (l `Subt` r)
831 \end{lstHaskellLhstex}
832
833 Finally, defining terms in the language can be done immediately if the interpretations are known.
834 For example, if we want to print and/or optimise the term $\displaystyle ~(~(42+(38-4)))$, we can define it as follows:
835
836 \begin{lstHaskellLhstex}
837 e0 :: Expr '[Print,Opt]
838 e0 = neg (neg (Lit 42 `Add` (Lit 38 `subt` Lit 4)))
839 \end{lstHaskellLhstex}
840
841 It is also possible to define terms in the \gls{DSL} as being overloaded in the interpretation.
842 This does require enumerating all the \haskelllhstexinline{CreateRecord} type classes for every extension in a similar fashion as was required for \haskelllhstexinline{GDict}.
843 At the call site, the concrete list of constraints must be known.
844
845 \begin{lstHaskellLhstex}
846 e1 :: (Typeable c, CreateRecord (Neg c) c, CreateRecord (Subst c) c)
847 => Expr c
848 e1 = neg (neg (Lit 42 `Add` (Lit 38 `subt` Lit 4)))
849 \end{lstHaskellLhstex}
850
851 Finally, using the \GHCmod{TypeFamilies} extension, type families can be created for bundling \haskelllhstexinline{`In`} constraints (\haskelllhstexinline{UsingExt}) and \haskelllhstexinline{CreateRecord} constraints (\haskelllhstexinline{DependsOn}), making the syntax even more descriptive.
852 E.g.\ \haskelllhstexinline{UsingExt '[A, B, C] c} expands to \haskelllhstexinline{(CreateRecord (A c) c, CreateRecord (B c) c, CreateRecord (C c) c)} and \haskelllhstexinline{DependsOn '[A, B, C] s} expands to \haskelllhstexinline{(A `In` s, B `In` s, C `In` s)}.
853
854 \begin{lstHaskellLhstex}
855 type family UsingExt cs c :: Constraint where
856 UsingExt '[] c = ()
857 UsingExt (d ': cs) c = (CreateRecord (d c) c, UsingExt cs c)
858
859 type family DependsOn cs c :: Constraint where
860 DependsOn '[] c = ()
861 DependsOn (d ': cs) c = (d `In` c, DependsOn cs c)
862 \end{lstHaskellLhstex}
863
864 Defining the previous expression can now be done with the following shortened type that describes the semantics better:
865
866 \begin{lstHaskellLhstex}
867 e1 :: (Typeable c, UsingExt '[Neg, Subst]) => Expr c
868 \end{lstHaskellLhstex}
869
870 Giving an instance for \haskelllhstexinline{Interp} for \haskelllhstexinline{DataType} that uses the extensions \haskelllhstexinline{e_1, e2, ...} and depends on interpretations \haskelllhstexinline{i_1,i_2, ...} is done as follows:
871
872 \begin{lstHaskellLhstex}
873 instance ( UsingExt '[e_1, e_2, ...] s, DependsOn '[i_1, i_2, ...] s)
874 => Interp (DataType s) where
875 ...
876 \end{lstHaskellLhstex}
877
878 With these enhancements, there is hardly any boilerplate required to use classy deep embedding.
879 The \haskelllhstexinline{Record} data type; the \haskelllhstexinline{CreateRecord} type class; and the \haskelllhstexinline{UsingExt} and \haskelllhstexinline{DependsOn} type families can be provided as a library only requiring the programmer to create the extension constructors with their respective implementations and smart constructors for language construct extensions.
880 The source code for this extension can be found here: \url{https://gitlab.com/mlubbers/classydeepembedding}.
881
882 \section{Data types and definitions}%
883 \label{sec:cde:appendix}
884 \lstset{basicstyle=\tt\footnotesize}
885 \begin{lstHaskellLhstex}[caption={Data type definitions.}]
886 data Sub_g d a where
887 Sub_g :: (Eq a, Num a) => Expr_g d a -> Expr_g d a -> Sub_g d a
888 SubLoop_g :: Expr_g d a -> Sub_g d a
889
890 data Eq_g d a where
891 Eq_g :: (Typeable a, Eq a) => Expr_g d a -> Expr_g d a -> Eq_g d Bool
892 EqLoop_g :: Expr_g d a -> Eq_g d a
893 \end{lstHaskellLhstex}
894
895 \begin{lstHaskellLhstex}[caption={Smart constructions.}]
896 sub_g :: (Typeable d, GDict (d (Sub_g d)), Eq a, Num a) =>
897 Expr_g d a -> Expr_g d a -> Expr_g d a
898 sub_g e1 e2 = Ext_g gdict (Sub_g e1 e2)
899
900 eq_g :: (Typeable d, GDict (d (Eq_g d)), Eq a, Typeable a) =>
901 Expr_g d a -> Expr_g d a -> Expr_g d Bool
902 eq_g e1 e2 = Ext_g gdict (Eq_g e1 e2)
903 \end{lstHaskellLhstex}
904
905 \begin{lstHaskellLhstex}[caption={Semantics classes and data types.}]
906 newtype PrintDict_g v = PrintDict_g (forall a.v a -> String)
907
908 class HasPrint_g d where
909 getPrint_g :: d v -> v a -> String
910
911 instance HasPrint_g PrintDict_g where
912 getPrint_g (PrintDict_g e) = e
913
914 newtype OptDict_g v = OptDict_g (forall a.v a -> v a)
915
916 class HasOpt_g d where
917 getOpt_g :: d v -> v a -> v a
918
919 instance HasOpt_g OptDict_g where
920 getOpt_g (OptDict_g e) = e
921 \end{lstHaskellLhstex}
922
923 \begin{lstHaskellLhstex}[caption={\texorpdfstring{\haskelllhstexinline{GDict}}{GDict} instances}]
924 instance Print_g v => GDict (PrintDict_g v) where
925 gdict = PrintDict_g print_g
926 instance Opt_g v => GDict (OptDict_g v) where
927 gdict = OptDict_g opt_g
928 \end{lstHaskellLhstex}
929
930 \begin{lstHaskellLhstex}[caption={Evaluator instances}]
931 instance HasEval_g d => Eval_g (Expr_g d) where
932 eval_g (Lit_g v) = v
933 eval_g (Add_g e1 e2) = eval_g e1 + eval_g e2
934 eval_g (Ext_g d x) = getEval_g d x
935
936 instance HasEval_g d => Eval_g (Sub_g d) where
937 eval_g (Sub_g e1 e2) = eval_g e1 - eval_g e2
938 eval_g (SubLoop_g e) = eval_g e
939
940 instance HasEval_g d => Eval_g (Neg_g d) where
941 eval_g (Neg_g e) = negate (eval_g e)
942 eval_g (NegLoop_g e) = eval_g e
943
944 instance HasEval_g d => Eval_g (Eq_g d) where
945 eval_g (Eq_g e1 e2) = eval_g e1 == eval_g e2
946 eval_g (EqLoop_g e) = eval_g e
947
948 instance HasEval_g d => Eval_g (Not_g d) where
949 eval_g (Not_g e) = not (eval_g e)
950 eval_g (NotLoop_g e) = eval_g e
951 \end{lstHaskellLhstex}
952
953 \begin{lstHaskellLhstex}[caption={Printer instances}]
954 instance HasPrint_g d => Print_g (Expr_g d) where
955 print_g (Lit_g v) = show v
956 print_g (Add_g e1 e2) = "(" ++ print_g e1 ++ "+" ++ print_g e2 ++ ")"
957 print_g (Ext_g d x) = getPrint_g d x
958
959 instance HasPrint_g d => Print_g (Sub_g d) where
960 print_g (Sub_g e1 e2) = "(" ++ print_g e1 ++ "-" ++ print_g e2 ++ ")"
961 print_g (SubLoop_g e) = print_g e
962
963 instance HasPrint_g d => Print_g (Neg_g d) where
964 print_g (Neg_g e) = "(negate " ++ print_g e ++ ")"
965 print_g (NegLoop_g e) = print_g e
966
967 instance HasPrint_g d => Print_g (Eq_g d) where
968 print_g (Eq_g e1 e2) = "(" ++ print_g e1 ++ "==" ++ print_g e2 ++ ")"
969 print_g (EqLoop_g e) = print_g e
970
971 instance HasPrint_g d => Print_g (Not_g d) where
972 print_g (Not_g e) = "(not " ++ print_g e ++ ")"
973 print_g (NotLoop_g e) = print_g e
974 \end{lstHaskellLhstex}
975
976 \begin{lstHaskellLhstex}[caption={Optimisation instances}]
977 instance HasOpt_g d => Opt_g (Expr_g d) where
978 opt_g (Lit_g v) = Lit_g v
979 opt_g (Add_g e1 e2) = case (opt_g e1, opt_g e2) of
980 (Lit_g 0, e2p ) -> e2p
981 (e1p, Lit_g 0) -> e1p
982 (e1p, e2p ) -> Add_g e1p e2p
983 opt_g (Ext_g d x) = Ext_g d (getOpt_g d x)
984
985 instance HasOpt_g d => Opt_g (Sub_g d) where
986 opt_g (Sub_g e1 e2) = case (opt_g e1, opt_g e2) of
987 (e1p, Lit_g 0) -> SubLoop_g e1p
988 (e1p, e2p ) -> Sub_g e1p e2p
989 opt_g (SubLoop_g e) = SubLoop_g (opt_g e)
990
991 instance (Typeable d, GDict (d (Neg_g d)), HasOpt_g d) => Opt_g (Neg_g d) where
992 opt_g (Neg_g (Add_g e1 e2))
993 = NegLoop_g (Add_g (opt_g (neg_g e1)) (opt_g (neg_g e2)))
994 opt_g (Neg_g (Ext_g d x))
995 = case fromDynamic (toDyn (getOpt_g d x)) of
996 Just (Neg_g e) -> NegLoop_g e
997 _ -> Neg_g (Ext_g d (getOpt_g d x))
998 opt_g (Neg_g e) = Neg_g (opt_g e)
999 opt_g (NegLoop_g e) = NegLoop_g (opt_g e)
1000
1001 instance HasOpt_g d => Opt_g (Eq_g d) where
1002 opt_g (Eq_g e1 e2) = Eq_g (opt_g e1) (opt_g e2)
1003 opt_g (EqLoop_g e) = EqLoop_g (opt_g e)
1004 \end{lstHaskellLhstex}
1005 \lstset{basicstyle=\tt\small}
1006
1007 \end{subappendices}
1008
1009 \input{subfilepostamble}
1010 \end{document}