#pragma once #include #include class EventCounter; namespace DB { namespace ErrorCodes { extern const int LOGICAL_ERROR; extern const int NOT_IMPLEMENTED; } class IQueryPlanStep; class IProcessor; using ProcessorPtr = std::shared_ptr; using Processors = std::vector; /** Processor is an element (low level building block) of a query execution pipeline. * It has zero or more input ports and zero or more output ports. * * Blocks of data are transferred over ports. * Each port has fixed structure: names and types of columns and values of constants. * * Processors may pull data from input ports, do some processing and push data to output ports. * Processor may indicate that it requires input data to proceed and indicate that it needs data from some ports. * * Synchronous work must only use CPU - don't do any sleep, IO wait, network wait. * * Processor may want to do work asynchronously (example: fetch data from remote server) * - in this case it will initiate background job and allow to subscribe to it. * * Processor may throw an exception to indicate some runtime error. * * Different ports may have different structure. For example, ports may correspond to different resultsets * or semantically different parts of result. * * Processor may modify its ports (create another processors and connect to them) on the fly. * Example: first execute the subquery; on basis of subquery result * determine how to execute the rest of query and build the corresponding pipeline. * * Processor may simply wait for another processor to execute without transferring any data from it. * For this purpose it should connect its input port to another processor, and indicate need of data. * * Examples: * * Source. Has no input ports and single output port. Generates data itself and pushes it to its output port. * * Sink. Has single input port and no output ports. Consumes data that was passed to its input port. * * Empty source. Immediately says that data on its output port is finished. * * Null sink. Consumes data and does nothing. * * Simple transformation. Has single input and single output port. Pulls data, transforms it and pushes to output port. * Example: expression calculator. * TODO Better to make each function a separate processor. It's better for pipeline analysis. Also keep in mind 'sleep' and 'rand' functions. * * Squashing or filtering transformation. Pulls data, possibly accumulates it, and sometimes pushes it to output port. * Examples: DISTINCT, WHERE, squashing of blocks for INSERT SELECT. * * Accumulating transformation. Pulls and accumulates all data from input until it it exhausted, then pushes data to output port. * Examples: ORDER BY, GROUP BY. * * Limiting transformation. Pulls data from input and passes to output. * When there was enough data, says that it doesn't need data on its input and that data on its output port is finished. * * Resize. Has arbitary number of inputs and arbitary number of outputs. * Pulls data from whatever ready input and pushes it to randomly choosed free output. * Examples: * Union - merge data from number of inputs to one output in arbitary order. * Split - read data from one input and pass it to arbitary output. * * Concat. Has many inputs and only one output. Pulls all data from first input until it is exhausted, * then all data from second input, etc. and pushes all data to output. * * Ordered merge. Has many inputs but only one output. Pulls data from selected input in specific order, merges and pushes it to output. * * Fork. Has one input and many outputs. Pulls data from input and copies it to all outputs. * Used to process multiple queries with common source of data. * * Select. Has one or multiple inputs and one output. * Read blocks from inputs and check that blocks on inputs are "parallel": correspond to each other in number of rows. * Construct a new block by selecting some subset (or all) of columns from inputs. * Example: collect columns - function arguments before function execution. * * * TODO Processors may carry algebraic properties about transformations they do. * For example, that processor doesn't change number of rows; doesn't change order of rows, doesn't change the set of rows, etc. * * TODO Ports may carry algebraic properties about streams of data. * For example, that data comes ordered by specific key; or grouped by specific key; or have unique values of specific key. * And also simple properties, including lower and upper bound on number of rows. * * TODO Processor should have declarative representation, that is able to be serialized and parsed. * Example: read_from_merge_tree(database, table, Columns(a, b, c), Piece(0, 10), Parts(Part('name', MarkRanges(MarkRange(0, 100), ...)), ...)) * It's reasonable to have an intermediate language for declaration of pipelines. * * TODO Processor with all its parameters should represent "pure" function on streams of data from its input ports. * It's in question, what kind of "pure" function do we mean. * For example, data streams are considered equal up to order unless ordering properties are stated explicitly. * Another example: we should support the notion of "arbitary N-th of M substream" of full stream of data. */ class IProcessor { protected: InputPorts inputs; OutputPorts outputs; public: IProcessor() = default; IProcessor(InputPorts inputs_, OutputPorts outputs_) : inputs(std::move(inputs_)), outputs(std::move(outputs_)) { for (auto & port : inputs) port.processor = this; for (auto & port : outputs) port.processor = this; } virtual String getName() const = 0; enum class Status { /// Processor needs some data at its inputs to proceed. /// You need to run another processor to generate required input and then call 'prepare' again. NeedData, /// Processor cannot proceed because output port is full or not isNeeded(). /// You need to transfer data from output port to the input port of another processor and then call 'prepare' again. PortFull, /// All work is done (all data is processed or all output are closed), nothing more to do. Finished, /// No one needs data on output ports. /// Unneeded, /// You may call 'work' method and processor will do some work synchronously. Ready, /// You may call 'schedule' method and processor will initiate some background work. Async, /// Processor is doing some work in background. /// You may wait for next event or do something else and then you should call 'prepare' again. Wait, /// Processor wants to add other processors to pipeline. /// New processors must be obtained by expandPipeline() call. ExpandPipeline, }; static std::string statusToName(Status status); /** Method 'prepare' is responsible for all cheap ("instantaneous": O(1) of data volume, no wait) calculations. * * It may access input and output ports, * indicate the need for work by another processor by returning NeedData or PortFull, * or indicate the absence of work by returning Finished or Unneeded, * it may pull data from input ports and push data to output ports. * * The method is not thread-safe and must be called from a single thread in one moment of time, * even for different connected processors. * * Instead of all long work (CPU calculations or waiting) it should just prepare all required data and return Ready or Async. * * Thread safety and parallel execution: * - no methods (prepare, work, schedule) of single object can be executed in parallel; * - method 'work' can be executed in parallel for different objects, even for connected processors; * - method 'prepare' cannot be executed in parallel even for different objects, * if they are connected (including indirectly) to each other by their ports; */ virtual Status prepare() { throw Exception("Method 'prepare' is not implemented for " + getName() + " processor", ErrorCodes::NOT_IMPLEMENTED); } using PortNumbers = std::vector; /// Optimization for prepare in case we know ports were updated. virtual Status prepare(const PortNumbers & /*updated_input_ports*/, const PortNumbers & /*updated_output_ports*/) { return prepare(); } /** You may call this method if 'prepare' returned Ready. * This method cannot access any ports. It should use only data that was prepared by 'prepare' method. * * Method work can be executed in parallel for different processors. */ virtual void work() { throw Exception("Method 'work' is not implemented for " + getName() + " processor", ErrorCodes::NOT_IMPLEMENTED); } /** You may call this method if 'prepare' returned Async. * This method cannot access any ports. It should use only data that was prepared by 'prepare' method. * * This method should return instantly and fire an event (or many events) when asynchronous job will be done. * When the job is not done, method 'prepare' will return Wait and the user may block and wait for next event before checking again. * * Note that it can fire many events in EventCounter while doing its job, * and you have to wait for next event (or do something else) every time when 'prepare' returned Wait. */ virtual void schedule(EventCounter & /*watch*/) { throw Exception("Method 'schedule' is not implemented for " + getName() + " processor", ErrorCodes::NOT_IMPLEMENTED); } /** You must call this method if 'prepare' returned ExpandPipeline. * This method cannot access any port, but it can create new ports for current processor. * * Method should return set of new already connected processors. * All added processors must be connected only to each other or current processor. * * Method can't remove or reconnect existing ports, move data from/to port or perform calculations. * 'prepare' should be called again after expanding pipeline. */ virtual Processors expandPipeline() { throw Exception("Method 'expandPipeline' is not implemented for " + getName() + " processor", ErrorCodes::NOT_IMPLEMENTED); } /// In case if query was cancelled executor will wait till all processors finish their jobs. /// Generally, there is no reason to check this flag. However, it may be reasonable for long operations (e.g. i/o). bool isCancelled() const { return is_cancelled; } void cancel() { is_cancelled = true; onCancel(); } /// Additional method which is called in case if ports were updated while work() method. /// May be used to stop execution in rare cases. virtual void onUpdatePorts() {} virtual ~IProcessor() = default; auto & getInputs() { return inputs; } auto & getOutputs() { return outputs; } UInt64 getInputPortNumber(const InputPort * input_port) const { UInt64 number = 0; for (auto & port : inputs) { if (&port == input_port) return number; ++number; } throw Exception("Can't find input port for " + getName() + " processor", ErrorCodes::LOGICAL_ERROR); } UInt64 getOutputPortNumber(const OutputPort * output_port) const { UInt64 number = 0; for (auto & port : outputs) { if (&port == output_port) return number; ++number; } throw Exception("Can't find output port for " + getName() + " processor", ErrorCodes::LOGICAL_ERROR); } const auto & getInputs() const { return inputs; } const auto & getOutputs() const { return outputs; } /// Debug output. void dump() const; /// Used to print pipeline. void setDescription(const std::string & description_) { processor_description = description_; } const std::string & getDescription() const { return processor_description; } /// Helpers for pipeline executor. void setStream(size_t value) { stream_number = value; } size_t getStream() const { return stream_number; } constexpr static size_t NO_STREAM = std::numeric_limits::max(); void enableQuota() { has_quota = true; } bool hasQuota() const { return has_quota; } /// Step of QueryPlan from which processor was created. void setQueryPlanStep(IQueryPlanStep * step, size_t group = 0) { query_plan_step = step; query_plan_step_group = group; } IQueryPlanStep * getQueryPlanStep() const { return query_plan_step; } size_t getQueryPlanStepGroup() const { return query_plan_step_group; } protected: virtual void onCancel() {} private: std::atomic is_cancelled{false}; std::string processor_description; size_t stream_number = NO_STREAM; bool has_quota = false; IQueryPlanStep * query_plan_step = nullptr; size_t query_plan_step_group = 0; }; }