#pragma once #include namespace DB { /** Data for HyperLogLogBiasEstimator in the uniqCombined function. * The development plan is as follows: * 1. Assemble ClickHouse. * 2. Run the script src/src/scripts/gen-bias-data.py, which returns one array for getRawEstimates() * and another array for getBiases(). * 3. Update `raw_estimates` and `biases` arrays. Also update the size of arrays in InterpolatedData. * 4. Assemble ClickHouse. * 5. Run the script src/src/scripts/linear-counting-threshold.py, which creates 3 files: * - raw_graph.txt (1st column: the present number of unique values; * 2nd column: relative error in the case of HyperLogLog without applying any corrections) * - linear_counting_graph.txt (1st column: the present number of unique values; * 2nd column: relative error in the case of HyperLogLog using LinearCounting) * - bias_corrected_graph.txt (1st column: the present number of unique values; * 2nd column: relative error in the case of HyperLogLog with the use of corrections from the algorithm HyperLogLog++) * 6. Generate a graph with gnuplot based on this data. * 7. Determine the minimum number of unique values at which it is better to correct the error * using its evaluation (ie, using the HyperLogLog++ algorithm) than applying the LinearCounting algorithm. * 7. Accordingly, update the constant in the function getThreshold() * 8. Assemble ClickHouse. */ struct UniqCombinedBiasData { using InterpolatedData = std::array; static double getThreshold(); /// Estimates of the number of unique values using the HyperLogLog algorithm without applying any corrections. static const InterpolatedData & getRawEstimates(); /// Corresponding error estimates. static const InterpolatedData & getBiases(); }; }