Type-aware transformations for data and programs.
Hydra is a domain-specific language for data models and data transformations. It is based on a typed lambda calculus, and transforms data and schemas between languages in a way which maintains type conformance. Hydra will even transform functional programs between selected languages, including much of its own source code.
Hydra-Haskell
Hydra is a type-aware data transformation toolkit which aims to be highly flexible and portable. It has its roots in graph databases and type theory, and provides APIs in Haskell and Java. See the main Hydra README for more details. This Haskell package contains Hydra's Haskell API and Haskell sources specifically. Releases are available on Hackage.
Build
Haskell is the current source-of-truth language for Hydra, which means that most of the Hydra implementation is written either in "raw" Haskell or in a Haskell-based DSL. You can find the DSL-based sources here; anything written in the DSL is also mapped into the generated Java and Scala sources. You can find the generated Haskell sources here. To build Hydra-Haskell and enter the GHCi REPL, use:
stack ghci
Or to enter the test environment:
stack ghci hydra:hydra-test
To run all tests at the command line, use:
stack test
Code generation
It is a long-term goal for Hydra to generate its own source code into various languages, producing nearly-complete Hydra implementations in those languages. Both Haskell and Java are fully supported as target languages, which means that all of Hydra's types and programs currently specified in the Haskell DSL are mapped correctly to both Haskell and Java. Scala support, on the other hand, is partial and experimental at this time.
You can generate Hydra's Haskell sources by first entering the GHCi REPL as above, then:
import Hydra.Codegen
writeHaskell "src/gen-main/haskell" mainModules
The first argument to writeHaskell
is the base directory to which the generated files are to be written, and the second is the list of modules you want to generate (in this case, a special list containing all built-in modules). For individual modules, use list syntax, e.g.
writeHaskell "src/gen-main/haskell" [rdfSyntaxModule, shaclModelModule]
To generate test modules, use:
writeHaskell "src/gen-test/haskell" testModules
Java generation is similar, e.g.
writeJava "../hydra-java/src/gen-main/java" mainModules
For Java tests, use:
writeJava "../hydra-java/src/gen-test/java" testModules
Scala generation has known bugs, but you can try it out with:
writeScala "../hydra-scala/src/gen-main/scala" kernelModules
There is schema-only support for GraphQL:
import Hydra.Sources.Langs.Graphql.Syntax
import Hydra.Sources.Langs.Json.Model
writeGraphql "/tmp/graphql" [graphqlSyntaxModule, jsonModelModule]
Because GraphQL does not support imports, the GraphQL coder will gather all of the dependencies of a given module together, and map them to a single .graphql
file. Hydra has a similar level of schema-only support for Protobuf:
writeProtobuf "/tmp/proto" [jsonModelModule]
...and similarly for PDL:
writePdl "/tmp/pdl" [jsonModelModule]
Note that neither the Protobuf nor PDL coder currently supports polymorphic models.
JSON and YAML generation
JSON and YAML are slightly different than the languages above, in that they are pure data languages, without accompanying syntax for schemas (types). Hydra terms can be serialized to either JSON or YAML by first providing a type, then any number of terms corresponding to that type. For example:
:module Hydra.Kernel
import Hydra.Codegen
import Hydra.Langs.Json.Serde
import Hydra.Dsl.Terms as Terms
-- Choose a graph in which to execute flows; we will use the Hydra kernel graph.
g = hydraKernel
flow = fromFlowIo g
-- Choose a type for terms to encode. In this case, we will be encoding numeric precision values.
typ = TypeVariable _Precision
-- Construct an instance of the chosen type. In this case, we construct a precision value, then encode it as a term.
term = Terms.inject _Precision (Field _Precision_bits $ Terms.int32 64)
-- Create the adapting coder
coder <- flow $ jsonStringCoder typ
-- Apply the encoding, which turns the term into a JSON string.
flow (coderEncode coder term) >>= putStrLn
For a more sophisticated example involving recursive types, use:
typ = TypeVariable _Type
term = Terms.inject _Type (Field _Type_literal $ Terms.inject _LiteralType (Field _LiteralType_boolean $ Terms.record _UnitType []))
in place of the Precision
type and term above. This defines a type (in this case, the type of all types), and also a term which is an instance of that type (so in this case, an encoded type).
Haskell API
Structures
The most important structural types in Hydra are Type
and Term
(provided in the generated Hydra.Core module in Haskell), and Graph
and Element
(provided in the generated Hydra.Mantle module). Type
provides a datatype, and a Term
is an instance of a known Type
. An Element
is a named term together with its type, and a Graph
is a collection of elements. A Module
is a collection of elements in the same logical namespace, sometimes called a "model" if most of the elements represent type definitions. The main purpose of Hydra is to define and carry out transformations between graphs, where those graphs may be almost anything which fits into Hydra's type system -- data, schemas, source code, other transformations, etc. "Graphs" in the traditional sense are partially supported at this time, including property graphs and RDF graphs.
Types, terms, graphs, elements, and many other entities are parameterized by an annotation type, so you will usually see Type m
, Term m
, Context m
, etc. in the code. The most common annotation type is called Meta
(which is just a map of string-valued keys to terms), so you will also encounter Type Meta
, etc.
Transformations
Transformations in Hydra take the form of simple functions or, more commonly, expressions involving the Flow
monad (a special case of the State monad, which has been implemented in many programming languages) as well as a bidirectional flow called Coder
and a two-level transformation (types and terms) called Adapter
. All of these constructs are provided in the generated Hydra.Compute module in Haskell, along with the Context
type which you will see almost everywhere in Hydra; a Context
provides a graph, the schema of that graph (which is itself a graph), a set of primitive functions, an evaluation strategy, and other constructs which are needed for computation. A context is part of the state which flows through a graph transformation as it is being applied.
In Haskell, you will often see Flow
and Context
combined as the GraphFlow
alias:
type GraphFlow m = Flow (Context m)
There are two helper types, FlowState
and Trace
, which are used together with Flow
; a FlowState
is the result of evaluating a Flow
, while Trace
encapsulates a stack trace and error or logger messages. Since Flow
is a monad, you can create a GraphFlow
with f = pure x
, where x
is anything you would like to enter into a transformation pipeline. The transformation is actually applied when you call unFlow
and pass in a graph context and a trace, i.e.
unFlow f cx emptyTrace
This gives you a flow state, which you can think of as the exit point of a transformation. Inside the state object is either a concrete value (if the transformation succeeded) or Nothing
(if the transformation failed), a stack trace, and a list of messages. You will always find at least one message if the transformation failed; this is analogous to an exception in mainstream programming languages.
A Coder
, as mentioned above, is a construct which has a Flow
in either direction between two types. As a trivial example, consider this coder which serializes integers to strings using Haskell's built-in show
function, then reads the strings back to integers using read
:
intStringCoder :: Coder () () Int String
intStringCoder = Coder {
coderEncode = pure . show,
coderDecode = pure . read}
The ()
's indicate that this coder is stateless in both directions, which makes the use of Coder
overkill in this case. For a more realistic, but still simple example, see the JSON coder, which makes use of state for error propagation. For a more sophisticated example, see the Haskell coder or the Java coder; these make use of all of the facilities of a graph flow, including lexical lookups, type decoding, annotations, etc.
DSLs
Constructing types and terms directly from the Type
and Term
APIs mentioned above is perfectly correct, but not very convenient. For example, the type of all lists of strings may be expressed as TypeList $ TypeLiteral LiteralTypeString
, and a specific instance of that type (a term) may be expressed as TermList [TermLiteral $ LiteralString "foo", TermLiteral $ LiteralString "bar"]
.
Since all of the work of defining transformations in Hydra consists of specifying types and terms, we make the task (much) easier using domain-specific languages (DSLs). These DSLs are specific to the host language, so we have Haskell DSLs in hydra-haskell, and (similar, but distinct) Java DSLs in hydra-java. For example, the type of a list of strings is just list string
if you include the Types DSL, and the specific list of strings we mentioned is just list [string "foo", string "bar"]
, or (better yet) list ["foo", "bar"]
if you include the Terms DSL. There is additional syntactic sugar in Hydra-Haskell which aims to make defining models and transformations as easy as possible; see the Sources directory for many examples.
Phantom types
A minority of Hydra's primary sources, rather than providing models (type definitions), provide collections of functions. For example, look at Basics.hs or Utils.hs. There are not many of these files because the syntax for constructing transformations natively in Hydra DSLs is still in flux, but you will notice that the type signatures in these modules look very different. For example, you will see signatures like Definition (Precision -> String)
which appear to use native Haskell types such as String
, or generated types like Precision
, rather than Hydra's low-level constructs (Type
, Term
, etc.). This is a convenience for the programmer which will will be expanded upon as more of Hydra's kernel (indispensable code which is needed in each host language) is pulled out of raw Haskell and into the DSLs. If you are curious how these types work, see the Phantoms model and these slides. Phantom types are available both in Haskell and Java.