diff options
Diffstat (limited to 'ml/ml.cc')
-rw-r--r-- | ml/ml.cc | 1881 |
1 files changed, 0 insertions, 1881 deletions
diff --git a/ml/ml.cc b/ml/ml.cc deleted file mode 100644 index 5f8f5033e..000000000 --- a/ml/ml.cc +++ /dev/null @@ -1,1881 +0,0 @@ -// SPDX-License-Identifier: GPL-3.0-or-later - -#include <dlib/clustering.h> - -#include "ml-private.h" - -#include <random> - -#include "ad_charts.h" -#include "database/sqlite/sqlite3.h" - -#define ML_METADATA_VERSION 2 - -#define WORKER_TRAIN_QUEUE_POP 0 -#define WORKER_TRAIN_ACQUIRE_DIMENSION 1 -#define WORKER_TRAIN_QUERY 2 -#define WORKER_TRAIN_KMEANS 3 -#define WORKER_TRAIN_UPDATE_MODELS 4 -#define WORKER_TRAIN_RELEASE_DIMENSION 5 -#define WORKER_TRAIN_UPDATE_HOST 6 -#define WORKER_TRAIN_FLUSH_MODELS 7 - -static sqlite3 *db = NULL; -static netdata_mutex_t db_mutex = NETDATA_MUTEX_INITIALIZER; - -/* - * Functions to convert enums to strings -*/ - -__attribute__((unused)) static const char * -ml_machine_learning_status_to_string(enum ml_machine_learning_status mls) -{ - switch (mls) { - case MACHINE_LEARNING_STATUS_ENABLED: - return "enabled"; - case MACHINE_LEARNING_STATUS_DISABLED_DUE_TO_EXCLUDED_CHART: - return "disabled-sp"; - default: - return "unknown"; - } -} - -__attribute__((unused)) static const char * -ml_metric_type_to_string(enum ml_metric_type mt) -{ - switch (mt) { - case METRIC_TYPE_CONSTANT: - return "constant"; - case METRIC_TYPE_VARIABLE: - return "variable"; - default: - return "unknown"; - } -} - -__attribute__((unused)) static const char * -ml_training_status_to_string(enum ml_training_status ts) -{ - switch (ts) { - case TRAINING_STATUS_PENDING_WITH_MODEL: - return "pending-with-model"; - case TRAINING_STATUS_PENDING_WITHOUT_MODEL: - return "pending-without-model"; - case TRAINING_STATUS_TRAINED: - return "trained"; - case TRAINING_STATUS_UNTRAINED: - return "untrained"; - case TRAINING_STATUS_SILENCED: - return "silenced"; - default: - return "unknown"; - } -} - -__attribute__((unused)) static const char * -ml_training_result_to_string(enum ml_training_result tr) -{ - switch (tr) { - case TRAINING_RESULT_OK: - return "ok"; - case TRAINING_RESULT_INVALID_QUERY_TIME_RANGE: - return "invalid-query"; - case TRAINING_RESULT_NOT_ENOUGH_COLLECTED_VALUES: - return "missing-values"; - case TRAINING_RESULT_NULL_ACQUIRED_DIMENSION: - return "null-acquired-dim"; - case TRAINING_RESULT_CHART_UNDER_REPLICATION: - return "chart-under-replication"; - default: - return "unknown"; - } -} - -/* - * Features -*/ - -// subtract elements that are `diff_n` positions apart -static void -ml_features_diff(ml_features_t *features) -{ - if (features->diff_n == 0) - return; - - for (size_t idx = 0; idx != (features->src_n - features->diff_n); idx++) { - size_t high = (features->src_n - 1) - idx; - size_t low = high - features->diff_n; - - features->dst[low] = features->src[high] - features->src[low]; - } - - size_t n = features->src_n - features->diff_n; - memcpy(features->src, features->dst, n * sizeof(calculated_number_t)); - - for (size_t idx = features->src_n - features->diff_n; idx != features->src_n; idx++) - features->src[idx] = 0.0; -} - -// a function that computes the window average of an array inplace -static void -ml_features_smooth(ml_features_t *features) -{ - calculated_number_t sum = 0.0; - - size_t idx = 0; - for (; idx != features->smooth_n - 1; idx++) - sum += features->src[idx]; - - for (; idx != (features->src_n - features->diff_n); idx++) { - sum += features->src[idx]; - calculated_number_t prev_cn = features->src[idx - (features->smooth_n - 1)]; - features->src[idx - (features->smooth_n - 1)] = sum / features->smooth_n; - sum -= prev_cn; - } - - for (idx = 0; idx != features->smooth_n; idx++) - features->src[(features->src_n - 1) - idx] = 0.0; -} - -// create lag'd vectors out of the preprocessed buffer -static void -ml_features_lag(ml_features_t *features) -{ - size_t n = features->src_n - features->diff_n - features->smooth_n + 1 - features->lag_n; - features->preprocessed_features.resize(n); - - unsigned target_num_samples = Cfg.max_train_samples * Cfg.random_sampling_ratio; - double sampling_ratio = std::min(static_cast<double>(target_num_samples) / n, 1.0); - - uint32_t max_mt = std::numeric_limits<uint32_t>::max(); - uint32_t cutoff = static_cast<double>(max_mt) * sampling_ratio; - - size_t sample_idx = 0; - - for (size_t idx = 0; idx != n; idx++) { - DSample &DS = features->preprocessed_features[sample_idx++]; - DS.set_size(features->lag_n); - - if (Cfg.random_nums[idx] > cutoff) { - sample_idx--; - continue; - } - - for (size_t feature_idx = 0; feature_idx != features->lag_n + 1; feature_idx++) - DS(feature_idx) = features->src[idx + feature_idx]; - } - - features->preprocessed_features.resize(sample_idx); -} - -static void -ml_features_preprocess(ml_features_t *features) -{ - ml_features_diff(features); - ml_features_smooth(features); - ml_features_lag(features); -} - -/* - * KMeans -*/ - -static void -ml_kmeans_init(ml_kmeans_t *kmeans) -{ - kmeans->cluster_centers.reserve(2); - kmeans->min_dist = std::numeric_limits<calculated_number_t>::max(); - kmeans->max_dist = std::numeric_limits<calculated_number_t>::min(); -} - -static void -ml_kmeans_train(ml_kmeans_t *kmeans, const ml_features_t *features, time_t after, time_t before) -{ - kmeans->after = (uint32_t) after; - kmeans->before = (uint32_t) before; - - kmeans->min_dist = std::numeric_limits<calculated_number_t>::max(); - kmeans->max_dist = std::numeric_limits<calculated_number_t>::min(); - - kmeans->cluster_centers.clear(); - - dlib::pick_initial_centers(2, kmeans->cluster_centers, features->preprocessed_features); - dlib::find_clusters_using_kmeans(features->preprocessed_features, kmeans->cluster_centers, Cfg.max_kmeans_iters); - - for (const auto &preprocessed_feature : features->preprocessed_features) { - calculated_number_t mean_dist = 0.0; - - for (const auto &cluster_center : kmeans->cluster_centers) { - mean_dist += dlib::length(cluster_center - preprocessed_feature); - } - - mean_dist /= kmeans->cluster_centers.size(); - - if (mean_dist < kmeans->min_dist) - kmeans->min_dist = mean_dist; - - if (mean_dist > kmeans->max_dist) - kmeans->max_dist = mean_dist; - } -} - -static calculated_number_t -ml_kmeans_anomaly_score(const ml_kmeans_t *kmeans, const DSample &DS) -{ - calculated_number_t mean_dist = 0.0; - for (const auto &CC: kmeans->cluster_centers) - mean_dist += dlib::length(CC - DS); - - mean_dist /= kmeans->cluster_centers.size(); - - if (kmeans->max_dist == kmeans->min_dist) - return 0.0; - - calculated_number_t anomaly_score = 100.0 * std::abs((mean_dist - kmeans->min_dist) / (kmeans->max_dist - kmeans->min_dist)); - return (anomaly_score > 100.0) ? 100.0 : anomaly_score; -} - -/* - * Queue -*/ - -static ml_queue_t * -ml_queue_init() -{ - ml_queue_t *q = new ml_queue_t(); - - netdata_mutex_init(&q->mutex); - pthread_cond_init(&q->cond_var, NULL); - q->exit = false; - return q; -} - -static void -ml_queue_destroy(ml_queue_t *q) -{ - netdata_mutex_destroy(&q->mutex); - pthread_cond_destroy(&q->cond_var); - delete q; -} - -static void -ml_queue_push(ml_queue_t *q, const ml_training_request_t req) -{ - netdata_mutex_lock(&q->mutex); - q->internal.push(req); - pthread_cond_signal(&q->cond_var); - netdata_mutex_unlock(&q->mutex); -} - -static ml_training_request_t -ml_queue_pop(ml_queue_t *q) -{ - netdata_mutex_lock(&q->mutex); - - ml_training_request_t req = { - {'\0'}, // machine_guid - NULL, // chart id - NULL, // dimension id - 0, // current time - 0, // first entry - 0 // last entry - }; - - while (q->internal.empty()) { - pthread_cond_wait(&q->cond_var, &q->mutex); - - if (q->exit) { - netdata_mutex_unlock(&q->mutex); - - // We return a dummy request because the queue has been signaled - return req; - } - } - - req = q->internal.front(); - q->internal.pop(); - - netdata_mutex_unlock(&q->mutex); - return req; -} - -static size_t -ml_queue_size(ml_queue_t *q) -{ - netdata_mutex_lock(&q->mutex); - size_t size = q->internal.size(); - netdata_mutex_unlock(&q->mutex); - return size; -} - -static void -ml_queue_signal(ml_queue_t *q) -{ - netdata_mutex_lock(&q->mutex); - q->exit = true; - pthread_cond_signal(&q->cond_var); - netdata_mutex_unlock(&q->mutex); -} - -/* - * Dimension -*/ - -static std::pair<calculated_number_t *, ml_training_response_t> -ml_dimension_calculated_numbers(ml_training_thread_t *training_thread, ml_dimension_t *dim, const ml_training_request_t &training_request) -{ - ml_training_response_t training_response = {}; - - training_response.request_time = training_request.request_time; - training_response.first_entry_on_request = training_request.first_entry_on_request; - training_response.last_entry_on_request = training_request.last_entry_on_request; - - training_response.first_entry_on_response = rrddim_first_entry_s_of_tier(dim->rd, 0); - training_response.last_entry_on_response = rrddim_last_entry_s_of_tier(dim->rd, 0); - - size_t min_n = Cfg.min_train_samples; - size_t max_n = Cfg.max_train_samples; - - // Figure out what our time window should be. - training_response.query_before_t = training_response.last_entry_on_response; - training_response.query_after_t = std::max( - training_response.query_before_t - static_cast<time_t>((max_n - 1) * dim->rd->rrdset->update_every), - training_response.first_entry_on_response - ); - - if (training_response.query_after_t >= training_response.query_before_t) { - training_response.result = TRAINING_RESULT_INVALID_QUERY_TIME_RANGE; - return { NULL, training_response }; - } - - if (rrdset_is_replicating(dim->rd->rrdset)) { - training_response.result = TRAINING_RESULT_CHART_UNDER_REPLICATION; - return { NULL, training_response }; - } - - /* - * Execute the query - */ - struct storage_engine_query_handle handle; - - storage_engine_query_init(dim->rd->tiers[0].backend, dim->rd->tiers[0].db_metric_handle, &handle, - training_response.query_after_t, training_response.query_before_t, - STORAGE_PRIORITY_BEST_EFFORT); - - size_t idx = 0; - memset(training_thread->training_cns, 0, sizeof(calculated_number_t) * max_n * (Cfg.lag_n + 1)); - calculated_number_t last_value = std::numeric_limits<calculated_number_t>::quiet_NaN(); - - while (!storage_engine_query_is_finished(&handle)) { - if (idx == max_n) - break; - - STORAGE_POINT sp = storage_engine_query_next_metric(&handle); - - time_t timestamp = sp.end_time_s; - calculated_number_t value = sp.sum / sp.count; - - if (netdata_double_isnumber(value)) { - if (!training_response.db_after_t) - training_response.db_after_t = timestamp; - training_response.db_before_t = timestamp; - - training_thread->training_cns[idx] = value; - last_value = training_thread->training_cns[idx]; - training_response.collected_values++; - } else - training_thread->training_cns[idx] = last_value; - - idx++; - } - storage_engine_query_finalize(&handle); - - global_statistics_ml_query_completed(/* points_read */ idx); - - training_response.total_values = idx; - if (training_response.collected_values < min_n) { - training_response.result = TRAINING_RESULT_NOT_ENOUGH_COLLECTED_VALUES; - return { NULL, training_response }; - } - - // Find first non-NaN value. - for (idx = 0; std::isnan(training_thread->training_cns[idx]); idx++, training_response.total_values--) { } - - // Overwrite NaN values. - if (idx != 0) - memmove(training_thread->training_cns, &training_thread->training_cns[idx], sizeof(calculated_number_t) * training_response.total_values); - - training_response.result = TRAINING_RESULT_OK; - return { training_thread->training_cns, training_response }; -} - -const char *db_models_create_table = - "CREATE TABLE IF NOT EXISTS models(" - " dim_id BLOB, after INT, before INT," - " min_dist REAL, max_dist REAL," - " c00 REAL, c01 REAL, c02 REAL, c03 REAL, c04 REAL, c05 REAL," - " c10 REAL, c11 REAL, c12 REAL, c13 REAL, c14 REAL, c15 REAL," - " PRIMARY KEY(dim_id, after)" - ");"; - -const char *db_models_add_model = - "INSERT OR REPLACE INTO models(" - " dim_id, after, before," - " min_dist, max_dist," - " c00, c01, c02, c03, c04, c05," - " c10, c11, c12, c13, c14, c15)" - "VALUES(" - " @dim_id, @after, @before," - " @min_dist, @max_dist," - " @c00, @c01, @c02, @c03, @c04, @c05," - " @c10, @c11, @c12, @c13, @c14, @c15);"; - -const char *db_models_load = - "SELECT * FROM models " - "WHERE dim_id = @dim_id AND after >= @after ORDER BY before ASC;"; - -const char *db_models_delete = - "DELETE FROM models " - "WHERE dim_id = @dim_id AND before < @before;"; - -const char *db_models_prune = - "DELETE FROM models " - "WHERE after < @after LIMIT @n;"; - -static int -ml_dimension_add_model(const uuid_t *metric_uuid, const ml_kmeans_t *km) -{ - static __thread sqlite3_stmt *res = NULL; - int param = 0; - int rc = 0; - - if (unlikely(!db)) { - error_report("Database has not been initialized"); - return 1; - } - - if (unlikely(!res)) { - rc = prepare_statement(db, db_models_add_model, &res); - if (unlikely(rc != SQLITE_OK)) { - error_report("Failed to prepare statement to store model, rc = %d", rc); - return 1; - } - } - - rc = sqlite3_bind_blob(res, ++param, metric_uuid, sizeof(*metric_uuid), SQLITE_STATIC); - if (unlikely(rc != SQLITE_OK)) - goto bind_fail; - - rc = sqlite3_bind_int(res, ++param, (int) km->after); - if (unlikely(rc != SQLITE_OK)) - goto bind_fail; - - rc = sqlite3_bind_int(res, ++param, (int) km->before); - if (unlikely(rc != SQLITE_OK)) - goto bind_fail; - - rc = sqlite3_bind_double(res, ++param, km->min_dist); - if (unlikely(rc != SQLITE_OK)) - goto bind_fail; - - rc = sqlite3_bind_double(res, ++param, km->max_dist); - if (unlikely(rc != SQLITE_OK)) - goto bind_fail; - - if (km->cluster_centers.size() != 2) - fatal("Expected 2 cluster centers, got %zu", km->cluster_centers.size()); - - for (const DSample &ds : km->cluster_centers) { - if (ds.size() != 6) - fatal("Expected dsample with 6 dimensions, got %ld", ds.size()); - - for (long idx = 0; idx != ds.size(); idx++) { - calculated_number_t cn = ds(idx); - int rc = sqlite3_bind_double(res, ++param, cn); - if (unlikely(rc != SQLITE_OK)) - goto bind_fail; - } - } - - rc = execute_insert(res); - if (unlikely(rc != SQLITE_DONE)) { - error_report("Failed to store model, rc = %d", rc); - return rc; - } - - rc = sqlite3_reset(res); - if (unlikely(rc != SQLITE_OK)) { - error_report("Failed to reset statement when storing model, rc = %d", rc); - return rc; - } - - return 0; - -bind_fail: - error_report("Failed to bind parameter %d to store model, rc = %d", param, rc); - rc = sqlite3_reset(res); - if (unlikely(rc != SQLITE_OK)) - error_report("Failed to reset statement to store model, rc = %d", rc); - return rc; -} - -static int -ml_dimension_delete_models(const uuid_t *metric_uuid, time_t before) -{ - static __thread sqlite3_stmt *res = NULL; - int rc = 0; - int param = 0; - - if (unlikely(!db)) { - error_report("Database has not been initialized"); - return 1; - } - - if (unlikely(!res)) { - rc = prepare_statement(db, db_models_delete, &res); - if (unlikely(rc != SQLITE_OK)) { - error_report("Failed to prepare statement to delete models, rc = %d", rc); - return rc; - } - } - - rc = sqlite3_bind_blob(res, ++param, metric_uuid, sizeof(*metric_uuid), SQLITE_STATIC); - if (unlikely(rc != SQLITE_OK)) - goto bind_fail; - - rc = sqlite3_bind_int(res, ++param, (int) before); - if (unlikely(rc != SQLITE_OK)) - goto bind_fail; - - rc = execute_insert(res); - if (unlikely(rc != SQLITE_DONE)) { - error_report("Failed to delete models, rc = %d", rc); - return rc; - } - - rc = sqlite3_reset(res); - if (unlikely(rc != SQLITE_OK)) { - error_report("Failed to reset statement when deleting models, rc = %d", rc); - return rc; - } - - return 0; - -bind_fail: - error_report("Failed to bind parameter %d to delete models, rc = %d", param, rc); - rc = sqlite3_reset(res); - if (unlikely(rc != SQLITE_OK)) - error_report("Failed to reset statement to delete models, rc = %d", rc); - return rc; -} - -static int -ml_prune_old_models(size_t num_models_to_prune) -{ - static __thread sqlite3_stmt *res = NULL; - int rc = 0; - int param = 0; - - if (unlikely(!db)) { - error_report("Database has not been initialized"); - return 1; - } - - if (unlikely(!res)) { - rc = prepare_statement(db, db_models_prune, &res); - if (unlikely(rc != SQLITE_OK)) { - error_report("Failed to prepare statement to prune models, rc = %d", rc); - return rc; - } - } - - int after = (int) (now_realtime_sec() - Cfg.delete_models_older_than); - - rc = sqlite3_bind_int(res, ++param, after); - if (unlikely(rc != SQLITE_OK)) - goto bind_fail; - - rc = sqlite3_bind_int(res, ++param, num_models_to_prune); - if (unlikely(rc != SQLITE_OK)) - goto bind_fail; - - rc = execute_insert(res); - if (unlikely(rc != SQLITE_DONE)) { - error_report("Failed to prune old models, rc = %d", rc); - return rc; - } - - rc = sqlite3_reset(res); - if (unlikely(rc != SQLITE_OK)) { - error_report("Failed to reset statement when pruning old models, rc = %d", rc); - return rc; - } - - return 0; - -bind_fail: - error_report("Failed to bind parameter %d to prune old models, rc = %d", param, rc); - rc = sqlite3_reset(res); - if (unlikely(rc != SQLITE_OK)) - error_report("Failed to reset statement to prune old models, rc = %d", rc); - return rc; -} - -int ml_dimension_load_models(RRDDIM *rd, sqlite3_stmt **active_stmt) { - ml_dimension_t *dim = (ml_dimension_t *) rd->ml_dimension; - if (!dim) - return 0; - - spinlock_lock(&dim->slock); - bool is_empty = dim->km_contexts.empty(); - spinlock_unlock(&dim->slock); - - if (!is_empty) - return 0; - - std::vector<ml_kmeans_t> V; - - sqlite3_stmt *res = active_stmt ? *active_stmt : NULL; - int rc = 0; - int param = 0; - - if (unlikely(!db)) { - error_report("Database has not been initialized"); - return 1; - } - - if (unlikely(!res)) { - rc = sqlite3_prepare_v2(db, db_models_load, -1, &res, NULL); - if (unlikely(rc != SQLITE_OK)) { - error_report("Failed to prepare statement to load models, rc = %d", rc); - return 1; - } - if (active_stmt) - *active_stmt = res; - } - - rc = sqlite3_bind_blob(res, ++param, &dim->rd->metric_uuid, sizeof(dim->rd->metric_uuid), SQLITE_STATIC); - if (unlikely(rc != SQLITE_OK)) - goto bind_fail; - - rc = sqlite3_bind_int64(res, ++param, now_realtime_sec() - (Cfg.num_models_to_use * Cfg.max_train_samples)); - if (unlikely(rc != SQLITE_OK)) - goto bind_fail; - - spinlock_lock(&dim->slock); - - dim->km_contexts.reserve(Cfg.num_models_to_use); - while ((rc = sqlite3_step_monitored(res)) == SQLITE_ROW) { - ml_kmeans_t km; - - km.after = sqlite3_column_int(res, 2); - km.before = sqlite3_column_int(res, 3); - - km.min_dist = sqlite3_column_int(res, 4); - km.max_dist = sqlite3_column_int(res, 5); - - km.cluster_centers.resize(2); - - km.cluster_centers[0].set_size(Cfg.lag_n + 1); - km.cluster_centers[0](0) = sqlite3_column_double(res, 6); - km.cluster_centers[0](1) = sqlite3_column_double(res, 7); - km.cluster_centers[0](2) = sqlite3_column_double(res, 8); - km.cluster_centers[0](3) = sqlite3_column_double(res, 9); - km.cluster_centers[0](4) = sqlite3_column_double(res, 10); - km.cluster_centers[0](5) = sqlite3_column_double(res, 11); - - km.cluster_centers[1].set_size(Cfg.lag_n + 1); - km.cluster_centers[1](0) = sqlite3_column_double(res, 12); - km.cluster_centers[1](1) = sqlite3_column_double(res, 13); - km.cluster_centers[1](2) = sqlite3_column_double(res, 14); - km.cluster_centers[1](3) = sqlite3_column_double(res, 15); - km.cluster_centers[1](4) = sqlite3_column_double(res, 16); - km.cluster_centers[1](5) = sqlite3_column_double(res, 17); - - dim->km_contexts.push_back(km); - } - - if (!dim->km_contexts.empty()) { - dim->ts = TRAINING_STATUS_TRAINED; - } - - spinlock_unlock(&dim->slock); - - if (unlikely(rc != SQLITE_DONE)) - error_report("Failed to load models, rc = %d", rc); - - if (active_stmt) - rc = sqlite3_reset(res); - else - rc = sqlite3_finalize(res); - if (unlikely(rc != SQLITE_OK)) - error_report("Failed to %s statement when loading models, rc = %d", active_stmt ? "reset" : "finalize", rc); - - return 0; - -bind_fail: - error_report("Failed to bind parameter %d to load models, rc = %d", param, rc); - rc = sqlite3_reset(res); - if (unlikely(rc != SQLITE_OK)) - error_report("Failed to reset statement to load models, rc = %d", rc); - return 1; -} - -static enum ml_training_result -ml_dimension_train_model(ml_training_thread_t *training_thread, ml_dimension_t *dim, const ml_training_request_t &training_request) -{ - worker_is_busy(WORKER_TRAIN_QUERY); - auto P = ml_dimension_calculated_numbers(training_thread, dim, training_request); - ml_training_response_t training_response = P.second; - - if (training_response.result != TRAINING_RESULT_OK) { - spinlock_lock(&dim->slock); - - dim->mt = METRIC_TYPE_CONSTANT; - - switch (dim->ts) { - case TRAINING_STATUS_PENDING_WITH_MODEL: - dim->ts = TRAINING_STATUS_TRAINED; - break; - case TRAINING_STATUS_PENDING_WITHOUT_MODEL: - dim->ts = TRAINING_STATUS_UNTRAINED; - break; - default: - break; - } - - dim->suppression_anomaly_counter = 0; - dim->suppression_window_counter = 0; - dim->tr = training_response; - - dim->last_training_time = training_response.last_entry_on_response; - enum ml_training_result result = training_response.result; - - spinlock_unlock(&dim->slock); - - return result; - } - - // compute kmeans - worker_is_busy(WORKER_TRAIN_KMEANS); - { - memcpy(training_thread->scratch_training_cns, training_thread->training_cns, - training_response.total_values * sizeof(calculated_number_t)); - - ml_features_t features = { - Cfg.diff_n, Cfg.smooth_n, Cfg.lag_n, - training_thread->scratch_training_cns, training_response.total_values, - training_thread->training_cns, training_response.total_values, - training_thread->training_samples - }; - ml_features_preprocess(&features); - - ml_kmeans_init(&dim->kmeans); - ml_kmeans_train(&dim->kmeans, &features, training_response.query_after_t, training_response.query_before_t); - } - - // update models - worker_is_busy(WORKER_TRAIN_UPDATE_MODELS); - { - spinlock_lock(&dim->slock); - - if (dim->km_contexts.size() < Cfg.num_models_to_use) { - dim->km_contexts.push_back(std::move(dim->kmeans)); - } else { - bool can_drop_middle_km = false; - - if (Cfg.num_models_to_use > 2) { - const ml_kmeans_t *old_km = &dim->km_contexts[dim->km_contexts.size() - 1]; - const ml_kmeans_t *middle_km = &dim->km_contexts[dim->km_contexts.size() - 2]; - const ml_kmeans_t *new_km = &dim->kmeans; - - can_drop_middle_km = (middle_km->after < old_km->before) && - (middle_km->before > new_km->after); - } - - if (can_drop_middle_km) { - dim->km_contexts.back() = dim->kmeans; - } else { - std::rotate(std::begin(dim->km_contexts), std::begin(dim->km_contexts) + 1, std::end(dim->km_contexts)); - dim->km_contexts[dim->km_contexts.size() - 1] = std::move(dim->kmeans); - } - } - - dim->mt = METRIC_TYPE_CONSTANT; - dim->ts = TRAINING_STATUS_TRAINED; - - dim->suppression_anomaly_counter = 0; - dim->suppression_window_counter = 0; - - dim->tr = training_response; - dim->last_training_time = rrddim_last_entry_s(dim->rd); - - // Add the newly generated model to the list of pending models to flush - ml_model_info_t model_info; - uuid_copy(model_info.metric_uuid, dim->rd->metric_uuid); - model_info.kmeans = dim->km_contexts.back(); - training_thread->pending_model_info.push_back(model_info); - - spinlock_unlock(&dim->slock); - } - - return training_response.result; -} - -static void -ml_dimension_schedule_for_training(ml_dimension_t *dim, time_t curr_time) -{ - switch (dim->mt) { - case METRIC_TYPE_CONSTANT: - return; - default: - break; - } - - bool schedule_for_training = false; - - switch (dim->ts) { - case TRAINING_STATUS_PENDING_WITH_MODEL: - case TRAINING_STATUS_PENDING_WITHOUT_MODEL: - schedule_for_training = false; - break; - case TRAINING_STATUS_UNTRAINED: - schedule_for_training = true; - dim->ts = TRAINING_STATUS_PENDING_WITHOUT_MODEL; - break; - case TRAINING_STATUS_SILENCED: - case TRAINING_STATUS_TRAINED: - if ((dim->last_training_time + (Cfg.train_every * dim->rd->rrdset->update_every)) < curr_time) { - schedule_for_training = true; - dim->ts = TRAINING_STATUS_PENDING_WITH_MODEL; - } - break; - } - - if (schedule_for_training) { - ml_training_request_t req; - - memcpy(req.machine_guid, dim->rd->rrdset->rrdhost->machine_guid, GUID_LEN + 1); - req.chart_id = string_dup(dim->rd->rrdset->id); - req.dimension_id = string_dup(dim->rd->id); - req.request_time = curr_time; - req.first_entry_on_request = rrddim_first_entry_s(dim->rd); - req.last_entry_on_request = rrddim_last_entry_s(dim->rd); - - ml_host_t *host = (ml_host_t *) dim->rd->rrdset->rrdhost->ml_host; - ml_queue_push(host->training_queue, req); - } -} - -static bool -ml_dimension_predict(ml_dimension_t *dim, time_t curr_time, calculated_number_t value, bool exists) -{ - // Nothing to do if ML is disabled for this dimension - if (dim->mls != MACHINE_LEARNING_STATUS_ENABLED) - return false; - - // Don't treat values that don't exist as anomalous - if (!exists) { - dim->cns.clear(); - return false; - } - - // Save the value and return if we don't have enough values for a sample - unsigned n = Cfg.diff_n + Cfg.smooth_n + Cfg.lag_n; - if (dim->cns.size() < n) { - dim->cns.push_back(value); - return false; - } - - // Push the value and check if it's different from the last one - bool same_value = true; - std::rotate(std::begin(dim->cns), std::begin(dim->cns) + 1, std::end(dim->cns)); - if (dim->cns[n - 1] != value) - same_value = false; - dim->cns[n - 1] = value; - - // Create the sample - assert((n * (Cfg.lag_n + 1) <= 128) && - "Static buffers too small to perform prediction. " - "This should not be possible with the default clamping of feature extraction options"); - calculated_number_t src_cns[128]; - calculated_number_t dst_cns[128]; - - memset(src_cns, 0, n * (Cfg.lag_n + 1) * sizeof(calculated_number_t)); - memcpy(src_cns, dim->cns.data(), n * sizeof(calculated_number_t)); - memcpy(dst_cns, dim->cns.data(), n * sizeof(calculated_number_t)); - - ml_features_t features = { - Cfg.diff_n, Cfg.smooth_n, Cfg.lag_n, - dst_cns, n, src_cns, n, - dim->feature - }; - ml_features_preprocess(&features); - - /* - * Lock to predict and possibly schedule the dimension for training - */ - if (spinlock_trylock(&dim->slock) == 0) - return false; - - // Mark the metric time as variable if we received different values - if (!same_value) - dim->mt = METRIC_TYPE_VARIABLE; - - // Decide if the dimension needs to be scheduled for training - ml_dimension_schedule_for_training(dim, curr_time); - - // Nothing to do if we don't have a model - switch (dim->ts) { - case TRAINING_STATUS_UNTRAINED: - case TRAINING_STATUS_PENDING_WITHOUT_MODEL: { - case TRAINING_STATUS_SILENCED: - spinlock_unlock(&dim->slock); - return false; - } - default: - break; - } - - dim->suppression_window_counter++; - - /* - * Use the KMeans models to check if the value is anomalous - */ - - size_t sum = 0; - size_t models_consulted = 0; - - for (const auto &km_ctx : dim->km_contexts) { - models_consulted++; - - calculated_number_t anomaly_score = ml_kmeans_anomaly_score(&km_ctx, features.preprocessed_features[0]); - if (anomaly_score == std::numeric_limits<calculated_number_t>::quiet_NaN()) - continue; - - if (anomaly_score < (100 * Cfg.dimension_anomaly_score_threshold)) { - global_statistics_ml_models_consulted(models_consulted); - spinlock_unlock(&dim->slock); - return false; - } - - sum += 1; - } - - dim->suppression_anomaly_counter += sum ? 1 : 0; - - if ((dim->suppression_anomaly_counter >= Cfg.suppression_threshold) && - (dim->suppression_window_counter >= Cfg.suppression_window)) { - dim->ts = TRAINING_STATUS_SILENCED; - } - - spinlock_unlock(&dim->slock); - - global_statistics_ml_models_consulted(models_consulted); - return sum; -} - -/* - * Chart -*/ - -static bool -ml_chart_is_available_for_ml(ml_chart_t *chart) -{ - return rrdset_is_available_for_exporting_and_alarms(chart->rs); -} - -void -ml_chart_update_dimension(ml_chart_t *chart, ml_dimension_t *dim, bool is_anomalous) -{ - switch (dim->mls) { - case MACHINE_LEARNING_STATUS_DISABLED_DUE_TO_EXCLUDED_CHART: - chart->mls.num_machine_learning_status_disabled_sp++; - return; - case MACHINE_LEARNING_STATUS_ENABLED: { - chart->mls.num_machine_learning_status_enabled++; - - switch (dim->mt) { - case METRIC_TYPE_CONSTANT: - chart->mls.num_metric_type_constant++; - chart->mls.num_training_status_trained++; - chart->mls.num_normal_dimensions++; - return; - case METRIC_TYPE_VARIABLE: - chart->mls.num_metric_type_variable++; - break; - } - - switch (dim->ts) { - case TRAINING_STATUS_UNTRAINED: - chart->mls.num_training_status_untrained++; - return; - case TRAINING_STATUS_PENDING_WITHOUT_MODEL: - chart->mls.num_training_status_pending_without_model++; - return; - case TRAINING_STATUS_TRAINED: - chart->mls.num_training_status_trained++; - - chart->mls.num_anomalous_dimensions += is_anomalous; - chart->mls.num_normal_dimensions += !is_anomalous; - return; - case TRAINING_STATUS_PENDING_WITH_MODEL: - chart->mls.num_training_status_pending_with_model++; - - chart->mls.num_anomalous_dimensions += is_anomalous; - chart->mls.num_normal_dimensions += !is_anomalous; - return; - case TRAINING_STATUS_SILENCED: - chart->mls.num_training_status_silenced++; - chart->mls.num_training_status_trained++; - - chart->mls.num_anomalous_dimensions += is_anomalous; - chart->mls.num_normal_dimensions += !is_anomalous; - return; - } - - return; - } - } -} - -/* - * Host detection & training functions -*/ - -#define WORKER_JOB_DETECTION_COLLECT_STATS 0 -#define WORKER_JOB_DETECTION_DIM_CHART 1 -#define WORKER_JOB_DETECTION_HOST_CHART 2 -#define WORKER_JOB_DETECTION_STATS 3 - -static void -ml_host_detect_once(ml_host_t *host) -{ - worker_is_busy(WORKER_JOB_DETECTION_COLLECT_STATS); - - host->mls = {}; - ml_machine_learning_stats_t mls_copy = {}; - - if (host->ml_running) { - netdata_mutex_lock(&host->mutex); - - /* - * prediction/detection stats - */ - void *rsp = NULL; - rrdset_foreach_read(rsp, host->rh) { - RRDSET *rs = static_cast<RRDSET *>(rsp); - - ml_chart_t *chart = (ml_chart_t *) rs->ml_chart; - if (!chart) - continue; - - if (!ml_chart_is_available_for_ml(chart)) - continue; - - ml_machine_learning_stats_t chart_mls = chart->mls; - - host->mls.num_machine_learning_status_enabled += chart_mls.num_machine_learning_status_enabled; - host->mls.num_machine_learning_status_disabled_sp += chart_mls.num_machine_learning_status_disabled_sp; - - host->mls.num_metric_type_constant += chart_mls.num_metric_type_constant; - host->mls.num_metric_type_variable += chart_mls.num_metric_type_variable; - - host->mls.num_training_status_untrained += chart_mls.num_training_status_untrained; - host->mls.num_training_status_pending_without_model += chart_mls.num_training_status_pending_without_model; - host->mls.num_training_status_trained += chart_mls.num_training_status_trained; - host->mls.num_training_status_pending_with_model += chart_mls.num_training_status_pending_with_model; - host->mls.num_training_status_silenced += chart_mls.num_training_status_silenced; - - host->mls.num_anomalous_dimensions += chart_mls.num_anomalous_dimensions; - host->mls.num_normal_dimensions += chart_mls.num_normal_dimensions; - - STRING *key = rs->parts.type; - auto &um = host->type_anomaly_rate; - auto it = um.find(key); - if (it == um.end()) { - um[key] = ml_type_anomaly_rate_t { - .rd = NULL, - .normal_dimensions = 0, - .anomalous_dimensions = 0 - }; - it = um.find(key); - } - - it->second.anomalous_dimensions += chart_mls.num_anomalous_dimensions; - it->second.normal_dimensions += chart_mls.num_normal_dimensions; - } - rrdset_foreach_done(rsp); - - host->host_anomaly_rate = 0.0; - size_t NumActiveDimensions = host->mls.num_anomalous_dimensions + host->mls.num_normal_dimensions; - if (NumActiveDimensions) - host->host_anomaly_rate = static_cast<double>(host->mls.num_anomalous_dimensions) / NumActiveDimensions; - - mls_copy = host->mls; - - netdata_mutex_unlock(&host->mutex); - } else { - host->host_anomaly_rate = 0.0; - - auto &um = host->type_anomaly_rate; - for (auto &entry: um) { - entry.second = ml_type_anomaly_rate_t { - .rd = NULL, - .normal_dimensions = 0, - .anomalous_dimensions = 0 - }; - } - } - - worker_is_busy(WORKER_JOB_DETECTION_DIM_CHART); - ml_update_dimensions_chart(host, mls_copy); - - worker_is_busy(WORKER_JOB_DETECTION_HOST_CHART); - ml_update_host_and_detection_rate_charts(host, host->host_anomaly_rate * 10000.0); -} - -typedef struct { - RRDHOST_ACQUIRED *acq_rh; - RRDSET_ACQUIRED *acq_rs; - RRDDIM_ACQUIRED *acq_rd; - ml_dimension_t *dim; -} ml_acquired_dimension_t; - -static ml_acquired_dimension_t -ml_acquired_dimension_get(char *machine_guid, STRING *chart_id, STRING *dimension_id) -{ - RRDHOST_ACQUIRED *acq_rh = NULL; - RRDSET_ACQUIRED *acq_rs = NULL; - RRDDIM_ACQUIRED *acq_rd = NULL; - ml_dimension_t *dim = NULL; - - rrd_rdlock(); - - acq_rh = rrdhost_find_and_acquire(machine_guid); - if (acq_rh) { - RRDHOST *rh = rrdhost_acquired_to_rrdhost(acq_rh); - if (rh && !rrdhost_flag_check(rh, RRDHOST_FLAG_ORPHAN | RRDHOST_FLAG_ARCHIVED)) { - acq_rs = rrdset_find_and_acquire(rh, string2str(chart_id)); - if (acq_rs) { - RRDSET *rs = rrdset_acquired_to_rrdset(acq_rs); - if (rs && !rrdset_flag_check(rs, RRDSET_FLAG_OBSOLETE)) { - acq_rd = rrddim_find_and_acquire(rs, string2str(dimension_id)); - if (acq_rd) { - RRDDIM *rd = rrddim_acquired_to_rrddim(acq_rd); - if (rd) - dim = (ml_dimension_t *) rd->ml_dimension; - } - } - } - } - } - - rrd_unlock(); - - ml_acquired_dimension_t acq_dim = { - acq_rh, acq_rs, acq_rd, dim - }; - - return acq_dim; -} - -static void -ml_acquired_dimension_release(ml_acquired_dimension_t acq_dim) -{ - if (acq_dim.acq_rd) - rrddim_acquired_release(acq_dim.acq_rd); - - if (acq_dim.acq_rs) - rrdset_acquired_release(acq_dim.acq_rs); - - if (acq_dim.acq_rh) - rrdhost_acquired_release(acq_dim.acq_rh); -} - -static enum ml_training_result -ml_acquired_dimension_train(ml_training_thread_t *training_thread, ml_acquired_dimension_t acq_dim, const ml_training_request_t &tr) -{ - if (!acq_dim.dim) - return TRAINING_RESULT_NULL_ACQUIRED_DIMENSION; - - return ml_dimension_train_model(training_thread, acq_dim.dim, tr); -} - -static void * -ml_detect_main(void *arg) -{ - UNUSED(arg); - - worker_register("MLDETECT"); - worker_register_job_name(WORKER_JOB_DETECTION_COLLECT_STATS, "collect stats"); - worker_register_job_name(WORKER_JOB_DETECTION_DIM_CHART, "dim chart"); - worker_register_job_name(WORKER_JOB_DETECTION_HOST_CHART, "host chart"); - worker_register_job_name(WORKER_JOB_DETECTION_STATS, "training stats"); - - heartbeat_t hb; - heartbeat_init(&hb); - - while (!Cfg.detection_stop) { - worker_is_idle(); - heartbeat_next(&hb, USEC_PER_SEC); - - RRDHOST *rh; - rrd_rdlock(); - rrdhost_foreach_read(rh) { - if (!rh->ml_host) - continue; - - ml_host_detect_once((ml_host_t *) rh->ml_host); - } - rrd_unlock(); - - if (Cfg.enable_statistics_charts) { - // collect and update training thread stats - for (size_t idx = 0; idx != Cfg.num_training_threads; idx++) { - ml_training_thread_t *training_thread = &Cfg.training_threads[idx]; - - netdata_mutex_lock(&training_thread->nd_mutex); - ml_training_stats_t training_stats = training_thread->training_stats; - training_thread->training_stats = {}; - netdata_mutex_unlock(&training_thread->nd_mutex); - - // calc the avg values - if (training_stats.num_popped_items) { - training_stats.queue_size /= training_stats.num_popped_items; - training_stats.allotted_ut /= training_stats.num_popped_items; - training_stats.consumed_ut /= training_stats.num_popped_items; - training_stats.remaining_ut /= training_stats.num_popped_items; - } else { - training_stats.queue_size = ml_queue_size(training_thread->training_queue); - training_stats.consumed_ut = 0; - training_stats.remaining_ut = training_stats.allotted_ut; - - training_stats.training_result_ok = 0; - training_stats.training_result_invalid_query_time_range = 0; - training_stats.training_result_not_enough_collected_values = 0; - training_stats.training_result_null_acquired_dimension = 0; - training_stats.training_result_chart_under_replication = 0; - } - - ml_update_training_statistics_chart(training_thread, training_stats); - } - } - } - - return NULL; -} - -/* - * Public API -*/ - -bool ml_capable() -{ - return true; -} - -bool ml_enabled(RRDHOST *rh) -{ - if (!rh) - return false; - - if (!Cfg.enable_anomaly_detection) - return false; - - if (simple_pattern_matches(Cfg.sp_host_to_skip, rrdhost_hostname(rh))) - return false; - - return true; -} - -bool ml_streaming_enabled() -{ - return Cfg.stream_anomaly_detection_charts; -} - -void ml_host_new(RRDHOST *rh) -{ - if (!ml_enabled(rh)) - return; - - ml_host_t *host = new ml_host_t(); - - host->rh = rh; - host->mls = ml_machine_learning_stats_t(); - host->host_anomaly_rate = 0.0; - host->anomaly_rate_rs = NULL; - - static std::atomic<size_t> times_called(0); - host->training_queue = Cfg.training_threads[times_called++ % Cfg.num_training_threads].training_queue; - - netdata_mutex_init(&host->mutex); - - host->ml_running = true; - rh->ml_host = (rrd_ml_host_t *) host; -} - -void ml_host_delete(RRDHOST *rh) -{ - ml_host_t *host = (ml_host_t *) rh->ml_host; - if (!host) - return; - - netdata_mutex_destroy(&host->mutex); - - delete host; - rh->ml_host = NULL; -} - -void ml_host_start(RRDHOST *rh) { - ml_host_t *host = (ml_host_t *) rh->ml_host; - if (!host) - return; - - host->ml_running = true; -} - -void ml_host_stop(RRDHOST *rh) { - ml_host_t *host = (ml_host_t *) rh->ml_host; - if (!host || !host->ml_running) - return; - - netdata_mutex_lock(&host->mutex); - - // reset host stats - host->mls = ml_machine_learning_stats_t(); - - // reset charts/dims - void *rsp = NULL; - rrdset_foreach_read(rsp, host->rh) { - RRDSET *rs = static_cast<RRDSET *>(rsp); - - ml_chart_t *chart = (ml_chart_t *) rs->ml_chart; - if (!chart) - continue; - - // reset chart - chart->mls = ml_machine_learning_stats_t(); - - void *rdp = NULL; - rrddim_foreach_read(rdp, rs) { - RRDDIM *rd = static_cast<RRDDIM *>(rdp); - - ml_dimension_t *dim = (ml_dimension_t *) rd->ml_dimension; - if (!dim) - continue; - - spinlock_lock(&dim->slock); - - // reset dim - // TODO: should we drop in-mem models, or mark them as stale? Is it - // okay to resume training straight away? - - dim->mt = METRIC_TYPE_CONSTANT; - dim->ts = TRAINING_STATUS_UNTRAINED; - dim->last_training_time = 0; - dim->suppression_anomaly_counter = 0; - dim->suppression_window_counter = 0; - dim->cns.clear(); - - ml_kmeans_init(&dim->kmeans); - - spinlock_unlock(&dim->slock); - } - rrddim_foreach_done(rdp); - } - rrdset_foreach_done(rsp); - - netdata_mutex_unlock(&host->mutex); - - host->ml_running = false; -} - -void ml_host_get_info(RRDHOST *rh, BUFFER *wb) -{ - ml_host_t *host = (ml_host_t *) rh->ml_host; - if (!host) { - buffer_json_member_add_boolean(wb, "enabled", false); - return; - } - - buffer_json_member_add_uint64(wb, "version", 1); - - buffer_json_member_add_boolean(wb, "enabled", Cfg.enable_anomaly_detection); - - buffer_json_member_add_uint64(wb, "min-train-samples", Cfg.min_train_samples); - buffer_json_member_add_uint64(wb, "max-train-samples", Cfg.max_train_samples); - buffer_json_member_add_uint64(wb, "train-every", Cfg.train_every); - - buffer_json_member_add_uint64(wb, "diff-n", Cfg.diff_n); - buffer_json_member_add_uint64(wb, "smooth-n", Cfg.smooth_n); - buffer_json_member_add_uint64(wb, "lag-n", Cfg.lag_n); - - buffer_json_member_add_double(wb, "random-sampling-ratio", Cfg.random_sampling_ratio); - buffer_json_member_add_uint64(wb, "max-kmeans-iters", Cfg.random_sampling_ratio); - - buffer_json_member_add_double(wb, "dimension-anomaly-score-threshold", Cfg.dimension_anomaly_score_threshold); - - buffer_json_member_add_string(wb, "anomaly-detection-grouping-method", - time_grouping_method2string(Cfg.anomaly_detection_grouping_method)); - - buffer_json_member_add_int64(wb, "anomaly-detection-query-duration", Cfg.anomaly_detection_query_duration); - - buffer_json_member_add_string(wb, "hosts-to-skip", Cfg.hosts_to_skip.c_str()); - buffer_json_member_add_string(wb, "charts-to-skip", Cfg.charts_to_skip.c_str()); -} - -void ml_host_get_detection_info(RRDHOST *rh, BUFFER *wb) -{ - ml_host_t *host = (ml_host_t *) rh->ml_host; - if (!host) - return; - - netdata_mutex_lock(&host->mutex); - - buffer_json_member_add_uint64(wb, "version", 2); - buffer_json_member_add_uint64(wb, "ml-running", host->ml_running); - buffer_json_member_add_uint64(wb, "anomalous-dimensions", host->mls.num_anomalous_dimensions); - buffer_json_member_add_uint64(wb, "normal-dimensions", host->mls.num_normal_dimensions); - buffer_json_member_add_uint64(wb, "total-dimensions", host->mls.num_anomalous_dimensions + - host->mls.num_normal_dimensions); - buffer_json_member_add_uint64(wb, "trained-dimensions", host->mls.num_training_status_trained + - host->mls.num_training_status_pending_with_model); - netdata_mutex_unlock(&host->mutex); -} - -bool ml_host_get_host_status(RRDHOST *rh, struct ml_metrics_statistics *mlm) { - ml_host_t *host = (ml_host_t *) rh->ml_host; - if (!host) { - memset(mlm, 0, sizeof(*mlm)); - return false; - } - - netdata_mutex_lock(&host->mutex); - - mlm->anomalous = host->mls.num_anomalous_dimensions; - mlm->normal = host->mls.num_normal_dimensions; - mlm->trained = host->mls.num_training_status_trained + host->mls.num_training_status_pending_with_model; - mlm->pending = host->mls.num_training_status_untrained + host->mls.num_training_status_pending_without_model; - mlm->silenced = host->mls.num_training_status_silenced; - - netdata_mutex_unlock(&host->mutex); - - return true; -} - -bool ml_host_running(RRDHOST *rh) { - ml_host_t *host = (ml_host_t *) rh->ml_host; - if(!host) - return false; - - return true; -} - -void ml_host_get_models(RRDHOST *rh, BUFFER *wb) -{ - UNUSED(rh); - UNUSED(wb); - - // TODO: To be implemented - netdata_log_error("Fetching KMeans models is not supported yet"); -} - -void ml_chart_new(RRDSET *rs) -{ - ml_host_t *host = (ml_host_t *) rs->rrdhost->ml_host; - if (!host) - return; - - ml_chart_t *chart = new ml_chart_t(); - - chart->rs = rs; - chart->mls = ml_machine_learning_stats_t(); - - rs->ml_chart = (rrd_ml_chart_t *) chart; -} - -void ml_chart_delete(RRDSET *rs) -{ - ml_host_t *host = (ml_host_t *) rs->rrdhost->ml_host; - if (!host) - return; - - ml_chart_t *chart = (ml_chart_t *) rs->ml_chart; - - delete chart; - rs->ml_chart = NULL; -} - -bool ml_chart_update_begin(RRDSET *rs) -{ - ml_chart_t *chart = (ml_chart_t *) rs->ml_chart; - if (!chart) - return false; - - chart->mls = {}; - return true; -} - -void ml_chart_update_end(RRDSET *rs) -{ - ml_chart_t *chart = (ml_chart_t *) rs->ml_chart; - if (!chart) - return; -} - -void ml_dimension_new(RRDDIM *rd) -{ - ml_chart_t *chart = (ml_chart_t *) rd->rrdset->ml_chart; - if (!chart) - return; - - ml_dimension_t *dim = new ml_dimension_t(); - - dim->rd = rd; - - dim->mt = METRIC_TYPE_CONSTANT; - dim->ts = TRAINING_STATUS_UNTRAINED; - dim->last_training_time = 0; - dim->suppression_anomaly_counter = 0; - dim->suppression_window_counter = 0; - - ml_kmeans_init(&dim->kmeans); - - if (simple_pattern_matches(Cfg.sp_charts_to_skip, rrdset_name(rd->rrdset))) - dim->mls = MACHINE_LEARNING_STATUS_DISABLED_DUE_TO_EXCLUDED_CHART; - else - dim->mls = MACHINE_LEARNING_STATUS_ENABLED; - - spinlock_init(&dim->slock); - - dim->km_contexts.reserve(Cfg.num_models_to_use); - - rd->ml_dimension = (rrd_ml_dimension_t *) dim; - - metaqueue_ml_load_models(rd); -} - -void ml_dimension_delete(RRDDIM *rd) -{ - ml_dimension_t *dim = (ml_dimension_t *) rd->ml_dimension; - if (!dim) - return; - - delete dim; - rd->ml_dimension = NULL; -} - -bool ml_dimension_is_anomalous(RRDDIM *rd, time_t curr_time, double value, bool exists) -{ - ml_dimension_t *dim = (ml_dimension_t *) rd->ml_dimension; - if (!dim) - return false; - - ml_host_t *host = (ml_host_t *) rd->rrdset->rrdhost->ml_host; - if (!host->ml_running) - return false; - - ml_chart_t *chart = (ml_chart_t *) rd->rrdset->ml_chart; - - bool is_anomalous = ml_dimension_predict(dim, curr_time, value, exists); - ml_chart_update_dimension(chart, dim, is_anomalous); - - return is_anomalous; -} - -static void ml_flush_pending_models(ml_training_thread_t *training_thread) { - int op_no = 1; - - // begin transaction - int rc = db_execute(db, "BEGIN TRANSACTION;"); - - // add/delete models - if (!rc) { - op_no++; - - for (const auto &pending_model: training_thread->pending_model_info) { - if (!rc) - rc = ml_dimension_add_model(&pending_model.metric_uuid, &pending_model.kmeans); - - if (!rc) - rc = ml_dimension_delete_models(&pending_model.metric_uuid, pending_model.kmeans.before - (Cfg.num_models_to_use * Cfg.train_every)); - } - } - - // prune old models - if (!rc) { - if ((training_thread->num_db_transactions % 64) == 0) { - rc = ml_prune_old_models(training_thread->num_models_to_prune); - if (!rc) - training_thread->num_models_to_prune = 0; - } - } - - // commit transaction - if (!rc) { - op_no++; - rc = db_execute(db, "COMMIT TRANSACTION;"); - } - - // rollback transaction on failure - if (rc) { - netdata_log_error("Trying to rollback ML transaction because it failed with rc=%d, op_no=%d", rc, op_no); - op_no++; - rc = db_execute(db, "ROLLBACK;"); - if (rc) - netdata_log_error("ML transaction rollback failed with rc=%d", rc); - } - - if (!rc) { - training_thread->num_db_transactions++; - training_thread->num_models_to_prune += training_thread->pending_model_info.size(); - } - - vacuum_database(db, "ML", 0, 0); - - training_thread->pending_model_info.clear(); -} - -static void *ml_train_main(void *arg) { - ml_training_thread_t *training_thread = (ml_training_thread_t *) arg; - - char worker_name[1024]; - snprintfz(worker_name, 1024, "training_thread_%zu", training_thread->id); - worker_register("MLTRAIN"); - - worker_register_job_name(WORKER_TRAIN_QUEUE_POP, "pop queue"); - worker_register_job_name(WORKER_TRAIN_ACQUIRE_DIMENSION, "acquire"); - worker_register_job_name(WORKER_TRAIN_QUERY, "query"); - worker_register_job_name(WORKER_TRAIN_KMEANS, "kmeans"); - worker_register_job_name(WORKER_TRAIN_UPDATE_MODELS, "update models"); - worker_register_job_name(WORKER_TRAIN_RELEASE_DIMENSION, "release"); - worker_register_job_name(WORKER_TRAIN_UPDATE_HOST, "update host"); - worker_register_job_name(WORKER_TRAIN_FLUSH_MODELS, "flush models"); - - while (!Cfg.training_stop) { - worker_is_busy(WORKER_TRAIN_QUEUE_POP); - - ml_training_request_t training_req = ml_queue_pop(training_thread->training_queue); - - // we know this thread has been cancelled, when the queue starts - // returning "null" requests without blocking on queue's pop(). - if (training_req.chart_id == NULL) - break; - - size_t queue_size = ml_queue_size(training_thread->training_queue) + 1; - - usec_t allotted_ut = (Cfg.train_every * USEC_PER_SEC) / queue_size; - if (allotted_ut > USEC_PER_SEC) - allotted_ut = USEC_PER_SEC; - - usec_t start_ut = now_monotonic_usec(); - - enum ml_training_result training_res; - { - worker_is_busy(WORKER_TRAIN_ACQUIRE_DIMENSION); - ml_acquired_dimension_t acq_dim = ml_acquired_dimension_get( - training_req.machine_guid, - training_req.chart_id, - training_req.dimension_id); - - training_res = ml_acquired_dimension_train(training_thread, acq_dim, training_req); - - string_freez(training_req.chart_id); - string_freez(training_req.dimension_id); - - worker_is_busy(WORKER_TRAIN_RELEASE_DIMENSION); - ml_acquired_dimension_release(acq_dim); - } - - usec_t consumed_ut = now_monotonic_usec() - start_ut; - - usec_t remaining_ut = 0; - if (consumed_ut < allotted_ut) - remaining_ut = allotted_ut - consumed_ut; - - if (Cfg.enable_statistics_charts) { - worker_is_busy(WORKER_TRAIN_UPDATE_HOST); - - netdata_mutex_lock(&training_thread->nd_mutex); - - training_thread->training_stats.queue_size += queue_size; - training_thread->training_stats.num_popped_items += 1; - - training_thread->training_stats.allotted_ut += allotted_ut; - training_thread->training_stats.consumed_ut += consumed_ut; - training_thread->training_stats.remaining_ut += remaining_ut; - - switch (training_res) { - case TRAINING_RESULT_OK: - training_thread->training_stats.training_result_ok += 1; - break; - case TRAINING_RESULT_INVALID_QUERY_TIME_RANGE: - training_thread->training_stats.training_result_invalid_query_time_range += 1; - break; - case TRAINING_RESULT_NOT_ENOUGH_COLLECTED_VALUES: - training_thread->training_stats.training_result_not_enough_collected_values += 1; - break; - case TRAINING_RESULT_NULL_ACQUIRED_DIMENSION: - training_thread->training_stats.training_result_null_acquired_dimension += 1; - break; - case TRAINING_RESULT_CHART_UNDER_REPLICATION: - training_thread->training_stats.training_result_chart_under_replication += 1; - break; - } - - netdata_mutex_unlock(&training_thread->nd_mutex); - } - - if (training_thread->pending_model_info.size() >= Cfg.flush_models_batch_size) { - worker_is_busy(WORKER_TRAIN_FLUSH_MODELS); - netdata_mutex_lock(&db_mutex); - ml_flush_pending_models(training_thread); - netdata_mutex_unlock(&db_mutex); - continue; - } - - worker_is_idle(); - std::this_thread::sleep_for(std::chrono::microseconds{remaining_ut}); - } - - return NULL; -} - -void ml_init() -{ - // Read config values - ml_config_load(&Cfg); - - if (!Cfg.enable_anomaly_detection) - return; - - // Generate random numbers to efficiently sample the features we need - // for KMeans clustering. - std::random_device RD; - std::mt19937 Gen(RD()); - - Cfg.random_nums.reserve(Cfg.max_train_samples); - for (size_t Idx = 0; Idx != Cfg.max_train_samples; Idx++) - Cfg.random_nums.push_back(Gen()); - - // init training thread-specific data - Cfg.training_threads.resize(Cfg.num_training_threads); - for (size_t idx = 0; idx != Cfg.num_training_threads; idx++) { - ml_training_thread_t *training_thread = &Cfg.training_threads[idx]; - - size_t max_elements_needed_for_training = (size_t) Cfg.max_train_samples * (size_t) (Cfg.lag_n + 1); - training_thread->training_cns = new calculated_number_t[max_elements_needed_for_training](); - training_thread->scratch_training_cns = new calculated_number_t[max_elements_needed_for_training](); - - training_thread->id = idx; - training_thread->training_queue = ml_queue_init(); - training_thread->pending_model_info.reserve(Cfg.flush_models_batch_size); - netdata_mutex_init(&training_thread->nd_mutex); - } - - // open sqlite db - char path[FILENAME_MAX]; - snprintfz(path, FILENAME_MAX - 1, "%s/%s", netdata_configured_cache_dir, "ml.db"); - int rc = sqlite3_open(path, &db); - if (rc != SQLITE_OK) { - error_report("Failed to initialize database at %s, due to \"%s\"", path, sqlite3_errstr(rc)); - sqlite3_close(db); - db = NULL; - } - - // create table - if (db) { - int target_version = perform_ml_database_migration(db, ML_METADATA_VERSION); - if (configure_sqlite_database(db, target_version)) { - error_report("Failed to setup ML database"); - sqlite3_close(db); - db = NULL; - } - else { - char *err = NULL; - int rc = sqlite3_exec(db, db_models_create_table, NULL, NULL, &err); - if (rc != SQLITE_OK) { - error_report("Failed to create models table (%s, %s)", sqlite3_errstr(rc), err ? err : ""); - sqlite3_close(db); - sqlite3_free(err); - db = NULL; - } - } - } -} - -void ml_fini() { - if (!Cfg.enable_anomaly_detection) - return; - - int rc = sqlite3_close_v2(db); - if (unlikely(rc != SQLITE_OK)) - error_report("Error %d while closing the SQLite database, %s", rc, sqlite3_errstr(rc)); -} - -void ml_start_threads() { - if (!Cfg.enable_anomaly_detection) - return; - - // start detection & training threads - Cfg.detection_stop = false; - Cfg.training_stop = false; - - char tag[NETDATA_THREAD_TAG_MAX + 1]; - - snprintfz(tag, NETDATA_THREAD_TAG_MAX, "%s", "PREDICT"); - netdata_thread_create(&Cfg.detection_thread, tag, NETDATA_THREAD_OPTION_JOINABLE, ml_detect_main, NULL); - - for (size_t idx = 0; idx != Cfg.num_training_threads; idx++) { - ml_training_thread_t *training_thread = &Cfg.training_threads[idx]; - snprintfz(tag, NETDATA_THREAD_TAG_MAX, "TRAIN[%zu]", training_thread->id); - netdata_thread_create(&training_thread->nd_thread, tag, NETDATA_THREAD_OPTION_JOINABLE, ml_train_main, training_thread); - } -} - -void ml_stop_threads() -{ - if (!Cfg.enable_anomaly_detection) - return; - - Cfg.detection_stop = true; - Cfg.training_stop = true; - - if (!Cfg.detection_thread) - return; - - netdata_thread_cancel(Cfg.detection_thread); - netdata_thread_join(Cfg.detection_thread, NULL); - - // signal the training queue of each thread - for (size_t idx = 0; idx != Cfg.num_training_threads; idx++) { - ml_training_thread_t *training_thread = &Cfg.training_threads[idx]; - - ml_queue_signal(training_thread->training_queue); - } - - // cancel training threads - for (size_t idx = 0; idx != Cfg.num_training_threads; idx++) { - ml_training_thread_t *training_thread = &Cfg.training_threads[idx]; - - netdata_thread_cancel(training_thread->nd_thread); - } - - // join training threads - for (size_t idx = 0; idx != Cfg.num_training_threads; idx++) { - ml_training_thread_t *training_thread = &Cfg.training_threads[idx]; - - netdata_thread_join(training_thread->nd_thread, NULL); - } - - // clear training thread data - for (size_t idx = 0; idx != Cfg.num_training_threads; idx++) { - ml_training_thread_t *training_thread = &Cfg.training_threads[idx]; - - delete[] training_thread->training_cns; - delete[] training_thread->scratch_training_cns; - ml_queue_destroy(training_thread->training_queue); - netdata_mutex_destroy(&training_thread->nd_mutex); - } -} |