| ===================== |
| YAML I/O |
| ===================== |
| |
| .. contents:: |
| :local: |
| |
| Introduction to YAML |
| ==================== |
| |
| YAML is a human readable data serialization language. The full YAML language |
| spec can be read at `yaml.org |
| <http://www.yaml.org/spec/1.2/spec.html#Introduction>`_. The simplest form of |
| yaml is just "scalars", "mappings", and "sequences". A scalar is any number |
| or string. The pound/hash symbol (#) begins a comment line. A mapping is |
| a set of key-value pairs where the key ends with a colon. For example: |
| |
| .. code-block:: yaml |
| |
| # a mapping |
| name: Tom |
| hat-size: 7 |
| |
| A sequence is a list of items where each item starts with a leading dash ('-'). |
| For example: |
| |
| .. code-block:: yaml |
| |
| # a sequence |
| - x86 |
| - x86_64 |
| - PowerPC |
| |
| You can combine mappings and sequences by indenting. For example a sequence |
| of mappings in which one of the mapping values is itself a sequence: |
| |
| .. code-block:: yaml |
| |
| # a sequence of mappings with one key's value being a sequence |
| - name: Tom |
| cpus: |
| - x86 |
| - x86_64 |
| - name: Bob |
| cpus: |
| - x86 |
| - name: Dan |
| cpus: |
| - PowerPC |
| - x86 |
| |
| Sometime sequences are known to be short and the one entry per line is too |
| verbose, so YAML offers an alternate syntax for sequences called a "Flow |
| Sequence" in which you put comma separated sequence elements into square |
| brackets. The above example could then be simplified to : |
| |
| |
| .. code-block:: yaml |
| |
| # a sequence of mappings with one key's value being a flow sequence |
| - name: Tom |
| cpus: [ x86, x86_64 ] |
| - name: Bob |
| cpus: [ x86 ] |
| - name: Dan |
| cpus: [ PowerPC, x86 ] |
| |
| |
| Introduction to YAML I/O |
| ======================== |
| |
| The use of indenting makes the YAML easy for a human to read and understand, |
| but having a program read and write YAML involves a lot of tedious details. |
| The YAML I/O library structures and simplifies reading and writing YAML |
| documents. |
| |
| YAML I/O assumes you have some "native" data structures which you want to be |
| able to dump as YAML and recreate from YAML. The first step is to try |
| writing example YAML for your data structures. You may find after looking at |
| possible YAML representations that a direct mapping of your data structures |
| to YAML is not very readable. Often the fields are not in the order that |
| a human would find readable. Or the same information is replicated in multiple |
| locations, making it hard for a human to write such YAML correctly. |
| |
| In relational database theory there is a design step called normalization in |
| which you reorganize fields and tables. The same considerations need to |
| go into the design of your YAML encoding. But, you may not want to change |
| your existing native data structures. Therefore, when writing out YAML |
| there may be a normalization step, and when reading YAML there would be a |
| corresponding denormalization step. |
| |
| YAML I/O uses a non-invasive, traits based design. YAML I/O defines some |
| abstract base templates. You specialize those templates on your data types. |
| For instance, if you have an enumerated type FooBar you could specialize |
| ScalarEnumerationTraits on that type and define the enumeration() method: |
| |
| .. code-block:: c++ |
| |
| using llvm::yaml::ScalarEnumerationTraits; |
| using llvm::yaml::IO; |
| |
| template <> |
| struct ScalarEnumerationTraits<FooBar> { |
| static void enumeration(IO &io, FooBar &value) { |
| ... |
| } |
| }; |
| |
| |
| As with all YAML I/O template specializations, the ScalarEnumerationTraits is used for |
| both reading and writing YAML. That is, the mapping between in-memory enum |
| values and the YAML string representation is only in place. |
| This assures that the code for writing and parsing of YAML stays in sync. |
| |
| To specify a YAML mappings, you define a specialization on |
| llvm::yaml::MappingTraits. |
| If your native data structure happens to be a struct that is already normalized, |
| then the specialization is simple. For example: |
| |
| .. code-block:: c++ |
| |
| using llvm::yaml::MappingTraits; |
| using llvm::yaml::IO; |
| |
| template <> |
| struct MappingTraits<Person> { |
| static void mapping(IO &io, Person &info) { |
| io.mapRequired("name", info.name); |
| io.mapOptional("hat-size", info.hatSize); |
| } |
| }; |
| |
| |
| A YAML sequence is automatically inferred if you data type has begin()/end() |
| iterators and a push_back() method. Therefore any of the STL containers |
| (such as std::vector<>) will automatically translate to YAML sequences. |
| |
| Once you have defined specializations for your data types, you can |
| programmatically use YAML I/O to write a YAML document: |
| |
| .. code-block:: c++ |
| |
| using llvm::yaml::Output; |
| |
| Person tom; |
| tom.name = "Tom"; |
| tom.hatSize = 8; |
| Person dan; |
| dan.name = "Dan"; |
| dan.hatSize = 7; |
| std::vector<Person> persons; |
| persons.push_back(tom); |
| persons.push_back(dan); |
| |
| Output yout(llvm::outs()); |
| yout << persons; |
| |
| This would write the following: |
| |
| .. code-block:: yaml |
| |
| - name: Tom |
| hat-size: 8 |
| - name: Dan |
| hat-size: 7 |
| |
| And you can also read such YAML documents with the following code: |
| |
| .. code-block:: c++ |
| |
| using llvm::yaml::Input; |
| |
| typedef std::vector<Person> PersonList; |
| std::vector<PersonList> docs; |
| |
| Input yin(document.getBuffer()); |
| yin >> docs; |
| |
| if ( yin.error() ) |
| return; |
| |
| // Process read document |
| for ( PersonList &pl : docs ) { |
| for ( Person &person : pl ) { |
| cout << "name=" << person.name; |
| } |
| } |
| |
| One other feature of YAML is the ability to define multiple documents in a |
| single file. That is why reading YAML produces a vector of your document type. |
| |
| |
| |
| Error Handling |
| ============== |
| |
| When parsing a YAML document, if the input does not match your schema (as |
| expressed in your XxxTraits<> specializations). YAML I/O |
| will print out an error message and your Input object's error() method will |
| return true. For instance the following document: |
| |
| .. code-block:: yaml |
| |
| - name: Tom |
| shoe-size: 12 |
| - name: Dan |
| hat-size: 7 |
| |
| Has a key (shoe-size) that is not defined in the schema. YAML I/O will |
| automatically generate this error: |
| |
| .. code-block:: yaml |
| |
| YAML:2:2: error: unknown key 'shoe-size' |
| shoe-size: 12 |
| ^~~~~~~~~ |
| |
| Similar errors are produced for other input not conforming to the schema. |
| |
| |
| Scalars |
| ======= |
| |
| YAML scalars are just strings (i.e. not a sequence or mapping). The YAML I/O |
| library provides support for translating between YAML scalars and specific |
| C++ types. |
| |
| |
| Built-in types |
| -------------- |
| The following types have built-in support in YAML I/O: |
| |
| * bool |
| * float |
| * double |
| * StringRef |
| * int64_t |
| * int32_t |
| * int16_t |
| * int8_t |
| * uint64_t |
| * uint32_t |
| * uint16_t |
| * uint8_t |
| |
| That is, you can use those types in fields of MappingTraits or as element type |
| in sequence. When reading, YAML I/O will validate that the string found |
| is convertible to that type and error out if not. |
| |
| |
| Unique types |
| ------------ |
| Given that YAML I/O is trait based, the selection of how to convert your data |
| to YAML is based on the type of your data. But in C++ type matching, typedefs |
| do not generate unique type names. That means if you have two typedefs of |
| unsigned int, to YAML I/O both types look exactly like unsigned int. To |
| facilitate make unique type names, YAML I/O provides a macro which is used |
| like a typedef on built-in types, but expands to create a class with conversion |
| operators to and from the base type. For example: |
| |
| .. code-block:: c++ |
| |
| LLVM_YAML_STRONG_TYPEDEF(uint32_t, MyFooFlags) |
| LLVM_YAML_STRONG_TYPEDEF(uint32_t, MyBarFlags) |
| |
| This generates two classes MyFooFlags and MyBarFlags which you can use in your |
| native data structures instead of uint32_t. They are implicitly |
| converted to and from uint32_t. The point of creating these unique types |
| is that you can now specify traits on them to get different YAML conversions. |
| |
| Hex types |
| --------- |
| An example use of a unique type is that YAML I/O provides fixed sized unsigned |
| integers that are written with YAML I/O as hexadecimal instead of the decimal |
| format used by the built-in integer types: |
| |
| * Hex64 |
| * Hex32 |
| * Hex16 |
| * Hex8 |
| |
| You can use llvm::yaml::Hex32 instead of uint32_t and the only different will |
| be that when YAML I/O writes out that type it will be formatted in hexadecimal. |
| |
| |
| ScalarEnumerationTraits |
| ----------------------- |
| YAML I/O supports translating between in-memory enumerations and a set of string |
| values in YAML documents. This is done by specializing ScalarEnumerationTraits<> |
| on your enumeration type and define a enumeration() method. |
| For instance, suppose you had an enumeration of CPUs and a struct with it as |
| a field: |
| |
| .. code-block:: c++ |
| |
| enum CPUs { |
| cpu_x86_64 = 5, |
| cpu_x86 = 7, |
| cpu_PowerPC = 8 |
| }; |
| |
| struct Info { |
| CPUs cpu; |
| uint32_t flags; |
| }; |
| |
| To support reading and writing of this enumeration, you can define a |
| ScalarEnumerationTraits specialization on CPUs, which can then be used |
| as a field type: |
| |
| .. code-block:: c++ |
| |
| using llvm::yaml::ScalarEnumerationTraits; |
| using llvm::yaml::MappingTraits; |
| using llvm::yaml::IO; |
| |
| template <> |
| struct ScalarEnumerationTraits<CPUs> { |
| static void enumeration(IO &io, CPUs &value) { |
| io.enumCase(value, "x86_64", cpu_x86_64); |
| io.enumCase(value, "x86", cpu_x86); |
| io.enumCase(value, "PowerPC", cpu_PowerPC); |
| } |
| }; |
| |
| template <> |
| struct MappingTraits<Info> { |
| static void mapping(IO &io, Info &info) { |
| io.mapRequired("cpu", info.cpu); |
| io.mapOptional("flags", info.flags, 0); |
| } |
| }; |
| |
| When reading YAML, if the string found does not match any of the the strings |
| specified by enumCase() methods, an error is automatically generated. |
| When writing YAML, if the value being written does not match any of the values |
| specified by the enumCase() methods, a runtime assertion is triggered. |
| |
| |
| BitValue |
| -------- |
| Another common data structure in C++ is a field where each bit has a unique |
| meaning. This is often used in a "flags" field. YAML I/O has support for |
| converting such fields to a flow sequence. For instance suppose you |
| had the following bit flags defined: |
| |
| .. code-block:: c++ |
| |
| enum { |
| flagsPointy = 1 |
| flagsHollow = 2 |
| flagsFlat = 4 |
| flagsRound = 8 |
| }; |
| |
| LLVM_YAML_UNIQUE_TYPE(MyFlags, uint32_t) |
| |
| To support reading and writing of MyFlags, you specialize ScalarBitSetTraits<> |
| on MyFlags and provide the bit values and their names. |
| |
| .. code-block:: c++ |
| |
| using llvm::yaml::ScalarBitSetTraits; |
| using llvm::yaml::MappingTraits; |
| using llvm::yaml::IO; |
| |
| template <> |
| struct ScalarBitSetTraits<MyFlags> { |
| static void bitset(IO &io, MyFlags &value) { |
| io.bitSetCase(value, "hollow", flagHollow); |
| io.bitSetCase(value, "flat", flagFlat); |
| io.bitSetCase(value, "round", flagRound); |
| io.bitSetCase(value, "pointy", flagPointy); |
| } |
| }; |
| |
| struct Info { |
| StringRef name; |
| MyFlags flags; |
| }; |
| |
| template <> |
| struct MappingTraits<Info> { |
| static void mapping(IO &io, Info& info) { |
| io.mapRequired("name", info.name); |
| io.mapRequired("flags", info.flags); |
| } |
| }; |
| |
| With the above, YAML I/O (when writing) will test mask each value in the |
| bitset trait against the flags field, and each that matches will |
| cause the corresponding string to be added to the flow sequence. The opposite |
| is done when reading and any unknown string values will result in a error. With |
| the above schema, a same valid YAML document is: |
| |
| .. code-block:: yaml |
| |
| name: Tom |
| flags: [ pointy, flat ] |
| |
| |
| Custom Scalar |
| ------------- |
| Sometimes for readability a scalar needs to be formatted in a custom way. For |
| instance your internal data structure may use a integer for time (seconds since |
| some epoch), but in YAML it would be much nicer to express that integer in |
| some time format (e.g. 4-May-2012 10:30pm). YAML I/O has a way to support |
| custom formatting and parsing of scalar types by specializing ScalarTraits<> on |
| your data type. When writing, YAML I/O will provide the native type and |
| your specialization must create a temporary llvm::StringRef. When reading, |
| YAML I/O will provide a llvm::StringRef of scalar and your specialization |
| must convert that to your native data type. An outline of a custom scalar type |
| looks like: |
| |
| .. code-block:: c++ |
| |
| using llvm::yaml::ScalarTraits; |
| using llvm::yaml::IO; |
| |
| template <> |
| struct ScalarTraits<MyCustomType> { |
| static void output(const T &value, llvm::raw_ostream &out) { |
| out << value; // do custom formatting here |
| } |
| static StringRef input(StringRef scalar, T &value) { |
| // do custom parsing here. Return the empty string on success, |
| // or an error message on failure. |
| return StringRef(); |
| } |
| }; |
| |
| |
| Mappings |
| ======== |
| |
| To be translated to or from a YAML mapping for your type T you must specialize |
| llvm::yaml::MappingTraits on T and implement the "void mapping(IO &io, T&)" |
| method. If your native data structures use pointers to a class everywhere, |
| you can specialize on the class pointer. Examples: |
| |
| .. code-block:: c++ |
| |
| using llvm::yaml::MappingTraits; |
| using llvm::yaml::IO; |
| |
| // Example of struct Foo which is used by value |
| template <> |
| struct MappingTraits<Foo> { |
| static void mapping(IO &io, Foo &foo) { |
| io.mapOptional("size", foo.size); |
| ... |
| } |
| }; |
| |
| // Example of struct Bar which is natively always a pointer |
| template <> |
| struct MappingTraits<Bar*> { |
| static void mapping(IO &io, Bar *&bar) { |
| io.mapOptional("size", bar->size); |
| ... |
| } |
| }; |
| |
| |
| No Normalization |
| ---------------- |
| |
| The mapping() method is responsible, if needed, for normalizing and |
| denormalizing. In a simple case where the native data structure requires no |
| normalization, the mapping method just uses mapOptional() or mapRequired() to |
| bind the struct's fields to YAML key names. For example: |
| |
| .. code-block:: c++ |
| |
| using llvm::yaml::MappingTraits; |
| using llvm::yaml::IO; |
| |
| template <> |
| struct MappingTraits<Person> { |
| static void mapping(IO &io, Person &info) { |
| io.mapRequired("name", info.name); |
| io.mapOptional("hat-size", info.hatSize); |
| } |
| }; |
| |
| |
| Normalization |
| ---------------- |
| |
| When [de]normalization is required, the mapping() method needs a way to access |
| normalized values as fields. To help with this, there is |
| a template MappingNormalization<> which you can then use to automatically |
| do the normalization and denormalization. The template is used to create |
| a local variable in your mapping() method which contains the normalized keys. |
| |
| Suppose you have native data type |
| Polar which specifies a position in polar coordinates (distance, angle): |
| |
| .. code-block:: c++ |
| |
| struct Polar { |
| float distance; |
| float angle; |
| }; |
| |
| but you've decided the normalized YAML for should be in x,y coordinates. That |
| is, you want the yaml to look like: |
| |
| .. code-block:: yaml |
| |
| x: 10.3 |
| y: -4.7 |
| |
| You can support this by defining a MappingTraits that normalizes the polar |
| coordinates to x,y coordinates when writing YAML and denormalizes x,y |
| coordinates into polar when reading YAML. |
| |
| .. code-block:: c++ |
| |
| using llvm::yaml::MappingTraits; |
| using llvm::yaml::IO; |
| |
| template <> |
| struct MappingTraits<Polar> { |
| |
| class NormalizedPolar { |
| public: |
| NormalizedPolar(IO &io) |
| : x(0.0), y(0.0) { |
| } |
| NormalizedPolar(IO &, Polar &polar) |
| : x(polar.distance * cos(polar.angle)), |
| y(polar.distance * sin(polar.angle)) { |
| } |
| Polar denormalize(IO &) { |
| return Polar(sqrt(x*x+y*y, arctan(x,y)); |
| } |
| |
| float x; |
| float y; |
| }; |
| |
| static void mapping(IO &io, Polar &polar) { |
| MappingNormalization<NormalizedPolar, Polar> keys(io, polar); |
| |
| io.mapRequired("x", keys->x); |
| io.mapRequired("y", keys->y); |
| } |
| }; |
| |
| When writing YAML, the local variable "keys" will be a stack allocated |
| instance of NormalizedPolar, constructed from the suppled polar object which |
| initializes it x and y fields. The mapRequired() methods then write out the x |
| and y values as key/value pairs. |
| |
| When reading YAML, the local variable "keys" will be a stack allocated instance |
| of NormalizedPolar, constructed by the empty constructor. The mapRequired |
| methods will find the matching key in the YAML document and fill in the x and y |
| fields of the NormalizedPolar object keys. At the end of the mapping() method |
| when the local keys variable goes out of scope, the denormalize() method will |
| automatically be called to convert the read values back to polar coordinates, |
| and then assigned back to the second parameter to mapping(). |
| |
| In some cases, the normalized class may be a subclass of the native type and |
| could be returned by the denormalize() method, except that the temporary |
| normalized instance is stack allocated. In these cases, the utility template |
| MappingNormalizationHeap<> can be used instead. It just like |
| MappingNormalization<> except that it heap allocates the normalized object |
| when reading YAML. It never destroys the normalized object. The denormalize() |
| method can this return "this". |
| |
| |
| Default values |
| -------------- |
| Within a mapping() method, calls to io.mapRequired() mean that that key is |
| required to exist when parsing YAML documents, otherwise YAML I/O will issue an |
| error. |
| |
| On the other hand, keys registered with io.mapOptional() are allowed to not |
| exist in the YAML document being read. So what value is put in the field |
| for those optional keys? |
| There are two steps to how those optional fields are filled in. First, the |
| second parameter to the mapping() method is a reference to a native class. That |
| native class must have a default constructor. Whatever value the default |
| constructor initially sets for an optional field will be that field's value. |
| Second, the mapOptional() method has an optional third parameter. If provided |
| it is the value that mapOptional() should set that field to if the YAML document |
| does not have that key. |
| |
| There is one important difference between those two ways (default constructor |
| and third parameter to mapOptional). When YAML I/O generates a YAML document, |
| if the mapOptional() third parameter is used, if the actual value being written |
| is the same as (using ==) the default value, then that key/value is not written. |
| |
| |
| Order of Keys |
| -------------- |
| |
| When writing out a YAML document, the keys are written in the order that the |
| calls to mapRequired()/mapOptional() are made in the mapping() method. This |
| gives you a chance to write the fields in an order that a human reader of |
| the YAML document would find natural. This may be different that the order |
| of the fields in the native class. |
| |
| When reading in a YAML document, the keys in the document can be in any order, |
| but they are processed in the order that the calls to mapRequired()/mapOptional() |
| are made in the mapping() method. That enables some interesting |
| functionality. For instance, if the first field bound is the cpu and the second |
| field bound is flags, and the flags are cpu specific, you can programmatically |
| switch how the flags are converted to and from YAML based on the cpu. |
| This works for both reading and writing. For example: |
| |
| .. code-block:: c++ |
| |
| using llvm::yaml::MappingTraits; |
| using llvm::yaml::IO; |
| |
| struct Info { |
| CPUs cpu; |
| uint32_t flags; |
| }; |
| |
| template <> |
| struct MappingTraits<Info> { |
| static void mapping(IO &io, Info &info) { |
| io.mapRequired("cpu", info.cpu); |
| // flags must come after cpu for this to work when reading yaml |
| if ( info.cpu == cpu_x86_64 ) |
| io.mapRequired("flags", *(My86_64Flags*)info.flags); |
| else |
| io.mapRequired("flags", *(My86Flags*)info.flags); |
| } |
| }; |
| |
| |
| Sequence |
| ======== |
| |
| To be translated to or from a YAML sequence for your type T you must specialize |
| llvm::yaml::SequenceTraits on T and implement two methods: |
| ``size_t size(IO &io, T&)`` and |
| ``T::value_type& element(IO &io, T&, size_t indx)``. For example: |
| |
| .. code-block:: c++ |
| |
| template <> |
| struct SequenceTraits<MySeq> { |
| static size_t size(IO &io, MySeq &list) { ... } |
| static MySeqEl element(IO &io, MySeq &list, size_t index) { ... } |
| }; |
| |
| The size() method returns how many elements are currently in your sequence. |
| The element() method returns a reference to the i'th element in the sequence. |
| When parsing YAML, the element() method may be called with an index one bigger |
| than the current size. Your element() method should allocate space for one |
| more element (using default constructor if element is a C++ object) and returns |
| a reference to that new allocated space. |
| |
| |
| Flow Sequence |
| ------------- |
| A YAML "flow sequence" is a sequence that when written to YAML it uses the |
| inline notation (e.g [ foo, bar ] ). To specify that a sequence type should |
| be written in YAML as a flow sequence, your SequenceTraits specialization should |
| add "static const bool flow = true;". For instance: |
| |
| .. code-block:: c++ |
| |
| template <> |
| struct SequenceTraits<MyList> { |
| static size_t size(IO &io, MyList &list) { ... } |
| static MyListEl element(IO &io, MyList &list, size_t index) { ... } |
| |
| // The existence of this member causes YAML I/O to use a flow sequence |
| static const bool flow = true; |
| }; |
| |
| With the above, if you used MyList as the data type in your native data |
| structures, then then when converted to YAML, a flow sequence of integers |
| will be used (e.g. [ 10, -3, 4 ]). |
| |
| |
| Utility Macros |
| -------------- |
| Since a common source of sequences is std::vector<>, YAML I/O provides macros: |
| LLVM_YAML_IS_SEQUENCE_VECTOR() and LLVM_YAML_IS_FLOW_SEQUENCE_VECTOR() which |
| can be used to easily specify SequenceTraits<> on a std::vector type. YAML |
| I/O does not partial specialize SequenceTraits on std::vector<> because that |
| would force all vectors to be sequences. An example use of the macros: |
| |
| .. code-block:: c++ |
| |
| std::vector<MyType1>; |
| std::vector<MyType2>; |
| LLVM_YAML_IS_SEQUENCE_VECTOR(MyType1) |
| LLVM_YAML_IS_FLOW_SEQUENCE_VECTOR(MyType2) |
| |
| |
| |
| Document List |
| ============= |
| |
| YAML allows you to define multiple "documents" in a single YAML file. Each |
| new document starts with a left aligned "---" token. The end of all documents |
| is denoted with a left aligned "..." token. Many users of YAML will never |
| have need for multiple documents. The top level node in their YAML schema |
| will be a mapping or sequence. For those cases, the following is not needed. |
| But for cases where you do want multiple documents, you can specify a |
| trait for you document list type. The trait has the same methods as |
| SequenceTraits but is named DocumentListTraits. For example: |
| |
| .. code-block:: c++ |
| |
| template <> |
| struct DocumentListTraits<MyDocList> { |
| static size_t size(IO &io, MyDocList &list) { ... } |
| static MyDocType element(IO &io, MyDocList &list, size_t index) { ... } |
| }; |
| |
| |
| User Context Data |
| ================= |
| When an llvm::yaml::Input or llvm::yaml::Output object is created their |
| constructors take an optional "context" parameter. This is a pointer to |
| whatever state information you might need. |
| |
| For instance, in a previous example we showed how the conversion type for a |
| flags field could be determined at runtime based on the value of another field |
| in the mapping. But what if an inner mapping needs to know some field value |
| of an outer mapping? That is where the "context" parameter comes in. You |
| can set values in the context in the outer map's mapping() method and |
| retrieve those values in the inner map's mapping() method. |
| |
| The context value is just a void*. All your traits which use the context |
| and operate on your native data types, need to agree what the context value |
| actually is. It could be a pointer to an object or struct which your various |
| traits use to shared context sensitive information. |
| |
| |
| Output |
| ====== |
| |
| The llvm::yaml::Output class is used to generate a YAML document from your |
| in-memory data structures, using traits defined on your data types. |
| To instantiate an Output object you need an llvm::raw_ostream, and optionally |
| a context pointer: |
| |
| .. code-block:: c++ |
| |
| class Output : public IO { |
| public: |
| Output(llvm::raw_ostream &, void *context=NULL); |
| |
| Once you have an Output object, you can use the C++ stream operator on it |
| to write your native data as YAML. One thing to recall is that a YAML file |
| can contain multiple "documents". If the top level data structure you are |
| streaming as YAML is a mapping, scalar, or sequence, then Output assumes you |
| are generating one document and wraps the mapping output |
| with "``---``" and trailing "``...``". |
| |
| .. code-block:: c++ |
| |
| using llvm::yaml::Output; |
| |
| void dumpMyMapDoc(const MyMapType &info) { |
| Output yout(llvm::outs()); |
| yout << info; |
| } |
| |
| The above could produce output like: |
| |
| .. code-block:: yaml |
| |
| --- |
| name: Tom |
| hat-size: 7 |
| ... |
| |
| On the other hand, if the top level data structure you are streaming as YAML |
| has a DocumentListTraits specialization, then Output walks through each element |
| of your DocumentList and generates a "---" before the start of each element |
| and ends with a "...". |
| |
| .. code-block:: c++ |
| |
| using llvm::yaml::Output; |
| |
| void dumpMyMapDoc(const MyDocListType &docList) { |
| Output yout(llvm::outs()); |
| yout << docList; |
| } |
| |
| The above could produce output like: |
| |
| .. code-block:: yaml |
| |
| --- |
| name: Tom |
| hat-size: 7 |
| --- |
| name: Tom |
| shoe-size: 11 |
| ... |
| |
| Input |
| ===== |
| |
| The llvm::yaml::Input class is used to parse YAML document(s) into your native |
| data structures. To instantiate an Input |
| object you need a StringRef to the entire YAML file, and optionally a context |
| pointer: |
| |
| .. code-block:: c++ |
| |
| class Input : public IO { |
| public: |
| Input(StringRef inputContent, void *context=NULL); |
| |
| Once you have an Input object, you can use the C++ stream operator to read |
| the document(s). If you expect there might be multiple YAML documents in |
| one file, you'll need to specialize DocumentListTraits on a list of your |
| document type and stream in that document list type. Otherwise you can |
| just stream in the document type. Also, you can check if there was |
| any syntax errors in the YAML be calling the error() method on the Input |
| object. For example: |
| |
| .. code-block:: c++ |
| |
| // Reading a single document |
| using llvm::yaml::Input; |
| |
| Input yin(mb.getBuffer()); |
| |
| // Parse the YAML file |
| MyDocType theDoc; |
| yin >> theDoc; |
| |
| // Check for error |
| if ( yin.error() ) |
| return; |
| |
| |
| .. code-block:: c++ |
| |
| // Reading multiple documents in one file |
| using llvm::yaml::Input; |
| |
| LLVM_YAML_IS_DOCUMENT_LIST_VECTOR(std::vector<MyDocType>) |
| |
| Input yin(mb.getBuffer()); |
| |
| // Parse the YAML file |
| std::vector<MyDocType> theDocList; |
| yin >> theDocList; |
| |
| // Check for error |
| if ( yin.error() ) |
| return; |
| |
| |