#pragma once #include "config_formats.h" #include "config_core.h" #if USE_AVRO #include #include #include #include #include #include #include #include #include #include #include namespace DB { class AvroDeserializer { public: AvroDeserializer(const Block & header, avro::ValidSchema schema, bool allow_missing_fields); void deserializeRow(MutableColumns & columns, avro::Decoder & decoder, RowReadExtension & ext) const; private: using DeserializeFn = std::function; using SkipFn = std::function; static DeserializeFn createDeserializeFn(avro::NodePtr root_node, DataTypePtr target_type); SkipFn createSkipFn(avro::NodePtr root_node); struct Action { enum Type {Noop, Deserialize, Skip, Record, Union}; Type type; /// Deserialize int target_column_idx; DeserializeFn deserialize_fn; /// Skip SkipFn skip_fn; /// Record | Union std::vector actions; Action() : type(Noop) {} Action(int target_column_idx_, DeserializeFn deserialize_fn_) : type(Deserialize) , target_column_idx(target_column_idx_) , deserialize_fn(deserialize_fn_) {} Action(SkipFn skip_fn_) : type(Skip) , skip_fn(skip_fn_) {} static Action recordAction(std::vector field_actions) { return Action(Type::Record, field_actions); } static Action unionAction(std::vector branch_actions) { return Action(Type::Union, branch_actions); } void execute(MutableColumns & columns, avro::Decoder & decoder, RowReadExtension & ext) const { switch (type) { case Noop: break; case Deserialize: deserialize_fn(*columns[target_column_idx], decoder); ext.read_columns[target_column_idx] = true; break; case Skip: skip_fn(decoder); break; case Record: for (const auto & action : actions) action.execute(columns, decoder, ext); break; case Union: actions[decoder.decodeUnionIndex()].execute(columns, decoder, ext); break; } } private: Action(Type type_, std::vector actions_) : type(type_) , actions(actions_) {} }; /// Populate actions by recursively traversing root schema AvroDeserializer::Action createAction(const Block & header, const avro::NodePtr & node, const std::string & current_path = ""); /// Bitmap of columns found in Avro schema std::vector column_found; /// Deserialize/Skip actions for a row Action row_action; /// Map from name of named Avro type (record, enum, fixed) to SkipFn. /// This is to avoid infinite recursion when Avro schema contains self-references. e.g. LinkedList std::map symbolic_skip_fn_map; }; class AvroRowInputFormat : public IRowInputFormat { public: AvroRowInputFormat(const Block & header_, ReadBuffer & in_, Params params_, const FormatSettings & format_settings_); bool readRow(MutableColumns & columns, RowReadExtension & ext) override; void resetParser() override; String getName() const override { return "AvroRowInputFormat"; } private: std::unique_ptr file_reader_ptr; std::unique_ptr deserializer_ptr; bool allow_missing_fields; }; /// Confluent framing + Avro binary datum encoding. Mainly used for Kafka. /// Uses 3 caches: /// 1. global: schema registry cache (base_url -> SchemaRegistry) /// 2. SchemaRegistry: schema cache (schema_id -> schema) /// 3. AvroConfluentRowInputFormat: deserializer cache (schema_id -> AvroDeserializer) /// This is needed because KafkaStorage creates a new instance of InputFormat per a batch of messages class AvroConfluentRowInputFormat : public IRowInputFormat { public: AvroConfluentRowInputFormat(const Block & header_, ReadBuffer & in_, Params params_, const FormatSettings & format_settings_); virtual bool readRow(MutableColumns & columns, RowReadExtension & ext) override; String getName() const override { return "AvroConfluentRowInputFormat"; } class SchemaRegistry; protected: bool allowSyncAfterError() const override { return true; } void syncAfterError() override; private: std::shared_ptr schema_registry; using SchemaId = uint32_t; std::unordered_map deserializer_cache; const AvroDeserializer & getOrCreateDeserializer(SchemaId schema_id); avro::InputStreamPtr input_stream; avro::DecoderPtr decoder; FormatSettings format_settings; }; } #endif