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StructureModeOperationTime
0Связный списокСлучайныйВставка0.047621
1Связный списокСлучайныйПоиск0.003505
2Связный списокСлучайныйУдаление0.005502
3Связный списокСлучайныйВставка0.048707
4Связный списокСлучайныйПоиск0.003505
...............
193Бинарное дерево поискаОтсортированныйПоиск0.007040
194Бинарное дерево поискаОтсортированныйУдаление0.013611
195Бинарное дерево поискаОтсортированныйВставка (среднее)0.303134
196Бинарное дерево поискаОтсортированныйПоиск (среднее)0.007562
197Бинарное дерево поискаОтсортированныйУдаление (среднее)0.013591
\n", + "

198 rows × 4 columns

\n", + "" + ], + "text/plain": [ + " Structure Mode Operation Time\n", + "0 Связный список Случайный Вставка 0.047621\n", + "1 Связный список Случайный Поиск 0.003505\n", + "2 Связный список Случайный Удаление 0.005502\n", + "3 Связный список Случайный Вставка 0.048707\n", + "4 Связный список Случайный Поиск 0.003505\n", + ".. ... ... ... ...\n", + "193 Бинарное дерево поиска Отсортированный Поиск 0.007040\n", + "194 Бинарное дерево поиска Отсортированный Удаление 0.013611\n", + "195 Бинарное дерево поиска Отсортированный Вставка (среднее) 0.303134\n", + "196 Бинарное дерево поиска Отсортированный Поиск (среднее) 0.007562\n", + "197 Бинарное дерево поиска Отсортированный Удаление (среднее) 0.013591\n", + "\n", + "[198 rows x 4 columns]" + ] + }, + "execution_count": 226, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "csv_path = \"../results/benchmarks.csv\"\n", + "\n", + "data = pd.read_csv(csv_path)\n", + "data" + ] + }, + { + "cell_type": "code", + "execution_count": 227, + "id": "a3737f45", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "(np.float64(0.003486), np.float64(0.048099), np.float64(0.006181))" + ] + }, + "execution_count": 227, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "# Получение данных для Связного списка\n", + "\n", + "ll_random_insert = data.loc[\n", + " (data['Structure'] == 'Связный список') & (data['Mode'] == 'Случайный') & (data['Operation'] == 'Вставка'),\n", + " 'Time'\n", + " ].tolist()\n", + "ll_random_insert_average = data.loc[\n", + " (data['Structure'] == 'Связный список') & (data['Mode'] == 'Случайный') & (data['Operation'] == 'Вставка (среднее)'),\n", + " 'Time'\n", + " ].iloc[0]\n", + "\n", + "ll_random_search = data.loc[\n", + " (data['Structure'] == 'Связный список') & (data['Mode'] == 'Случайный') & (data['Operation'] == 'Поиск'),\n", + " 'Time'\n", + " ].tolist()\n", + "ll_random_search_average = data.loc[\n", + " (data['Structure'] == 'Связный список') & (data['Mode'] == 'Случайный') & (data['Operation'] == 'Поиск (среднее)'),\n", + " 'Time'\n", + " ].iloc[0]\n", + "\n", + "ll_random_delete = data.loc[\n", + " (data['Structure'] == 'Связный список') & (data['Mode'] == 'Случайный') & (data['Operation'] == 'Удаление'),\n", + " 'Time'\n", + " ].tolist()\n", + "ll_random_delete_average = data.loc[\n", + " (data['Structure'] == 'Связный список') & (data['Mode'] == 'Случайный') & (data['Operation'] == 'Удаление (среднее)'),\n", + " 'Time'\n", + " ].iloc[0]\n", + "ll_random_search_average, ll_random_insert_average, ll_random_delete_average" + ] + }, + { + "cell_type": "code", + "execution_count": 228, + "id": "5434d260", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "(np.float64(0.003512), np.float64(0.048028), np.float64(0.005869))" + ] + }, + "execution_count": 228, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "# Получение данных для Связного списка\n", + "\n", + "ll_sorted_insert = data.loc[\n", + " (data['Structure'] == 'Связный список') & (data['Mode'] == 'Отсортированный') & (data['Operation'] == 'Вставка'),\n", + " 'Time'\n", + " ].tolist()\n", + "ll_sorted_insert_average = data.loc[\n", + " (data['Structure'] == 'Связный список') & (data['Mode'] == 'Отсортированный') & (data['Operation'] == 'Вставка (среднее)'),\n", + " 'Time'\n", + " ].iloc[0]\n", + "\n", + "ll_sorted_search = data.loc[\n", + " (data['Structure'] == 'Связный список') & (data['Mode'] == 'Отсортированный') & (data['Operation'] == 'Поиск'),\n", + " 'Time'\n", + " ].tolist()\n", + "ll_sorted_search_average = data.loc[\n", + " (data['Structure'] == 'Связный список') & (data['Mode'] == 'Отсортированный') & (data['Operation'] == 'Поиск (среднее)'),\n", + " 'Time'\n", + " ].iloc[0]\n", + "\n", + "ll_sorted_delete = data.loc[\n", + " (data['Structure'] == 'Связный список') & (data['Mode'] == 'Отсортированный') & (data['Operation'] == 'Удаление'),\n", + " 'Time'\n", + " ].tolist()\n", + "ll_sorted_delete_average = data.loc[\n", + " (data['Structure'] == 'Связный список') & (data['Mode'] == 'Отсортированный') & (data['Operation'] == 'Удаление (среднее)'),\n", + " 'Time'\n", + " ].iloc[0]\n", + "ll_sorted_search_average, ll_sorted_insert_average, ll_sorted_delete_average" + ] + }, + { + "cell_type": "code", + "execution_count": 229, + "id": "3deed9a5", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "(np.float64(0.0), np.float64(0.002007), np.float64(0.0))" + ] + }, + "execution_count": 229, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "#Получение данных для хеш таблицы\n", + "ht_random_insert = data.loc[\n", + " (data['Structure'] == 'Хеш таблица') & (data['Mode'] == 'Случайный') & (data['Operation'] == 'Вставка'),\n", + " 'Time'\n", + " ].tolist()\n", + "ht_random_insert_average = data.loc[\n", + " (data['Structure'] == 'Хеш таблица') & (data['Mode'] == 'Случайный') & (data['Operation'] == 'Вставка (среднее)'),\n", + " 'Time'\n", + " ].iloc[0]\n", + "\n", + "ht_random_search = data.loc[\n", + " (data['Structure'] == 'Хеш таблица') & (data['Mode'] == 'Случайный') & (data['Operation'] == 'Поиск'),\n", + " 'Time'\n", + " ].tolist()\n", + "ht_random_search_average = data.loc[\n", + " (data['Structure'] == 'Хеш таблица') & (data['Mode'] == 'Случайный') & (data['Operation'] == 'Поиск (среднее)'),\n", + " 'Time'\n", + " ].iloc[0]\n", + "\n", + "ht_random_delete = data.loc[\n", + " (data['Structure'] == 'Хеш таблица') & (data['Mode'] == 'Случайный') & (data['Operation'] == 'Удаление'),\n", + " 'Time'\n", + " ].tolist()\n", + "ht_random_delete_average = data.loc[\n", + " (data['Structure'] == 'Хеш таблица') & (data['Mode'] == 'Случайный') & (data['Operation'] == 'Удаление (среднее)'),\n", + " 'Time'\n", + " ].iloc[0]\n", + "\n", + "ht_random_delete_average, ht_random_insert_average, ht_random_search_average" + ] + }, + { + "cell_type": "code", + "execution_count": 230, + "id": "490e5c46", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "(np.float64(0.00015), np.float64(0.001794), np.float64(5e-05))" + ] + }, + "execution_count": 230, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "#Получение данных для хеш таблицы\n", + "ht_sorted_insert = data.loc[\n", + " (data['Structure'] == 'Хеш таблица') & (data['Mode'] == 'Отсортированный') & (data['Operation'] == 'Вставка'),\n", + " 'Time'\n", + " ].tolist()\n", + "ht_sorted_insert_average = data.loc[\n", + " (data['Structure'] == 'Хеш таблица') & (data['Mode'] == 'Отсортированный') & (data['Operation'] == 'Вставка (среднее)'),\n", + " 'Time'\n", + " ].iloc[0]\n", + "\n", + "ht_sorted_search = data.loc[\n", + " (data['Structure'] == 'Хеш таблица') & (data['Mode'] == 'Отсортированный') & (data['Operation'] == 'Поиск'),\n", + " 'Time'\n", + " ].tolist()\n", + "ht_sorted_search_average = data.loc[\n", + " (data['Structure'] == 'Хеш таблица') & (data['Mode'] == 'Отсортированный') & (data['Operation'] == 'Поиск (среднее)'),\n", + " 'Time'\n", + " ].iloc[0]\n", + "\n", + "ht_sorted_delete = data.loc[\n", + " (data['Structure'] == 'Хеш таблица') & (data['Mode'] == 'Отсортированный') & (data['Operation'] == 'Удаление'),\n", + " 'Time'\n", + " ].tolist()\n", + "ht_sorted_delete_average = data.loc[\n", + " (data['Structure'] == 'Хеш таблица') & (data['Mode'] == 'Отсортированный') & (data['Operation'] == 'Удаление (среднее)'),\n", + " 'Time'\n", + " ].iloc[0]\n", + "\n", + "ht_sorted_delete_average, ht_sorted_insert_average, ht_sorted_search_average" + ] + }, + { + "cell_type": "code", + "execution_count": 231, + "id": "9d7274ab", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "(np.float64(0.013959), np.float64(0.301662), np.float64(0.007347))" + ] + }, + "execution_count": 231, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "#Получение данных для дерева\n", + "bst_random_insert = data.loc[\n", + " (data['Structure'] == 'Бинарное дерево поиска') & (data['Mode'] == 'Случайный') & (data['Operation'] == 'Вставка'),\n", + " 'Time'\n", + " ].tolist()\n", + "bst_random_insert_average = data.loc[\n", + " (data['Structure'] == 'Бинарное дерево поиска') & (data['Mode'] == 'Случайный') & (data['Operation'] == 'Вставка (среднее)'),\n", + " 'Time'\n", + " ].iloc[0]\n", + "\n", + "bst_random_search = data.loc[\n", + " (data['Structure'] == 'Бинарное дерево поиска') & (data['Mode'] == 'Случайный') & (data['Operation'] == 'Поиск'),\n", + " 'Time'\n", + " ].tolist()\n", + "bst_random_search_average = data.loc[\n", + " (data['Structure'] == 'Бинарное дерево поиска') & (data['Mode'] == 'Случайный') & (data['Operation'] == 'Поиск (среднее)'),\n", + " 'Time'\n", + " ].iloc[0]\n", + "\n", + "bst_random_delete = data.loc[\n", + " (data['Structure'] == 'Бинарное дерево поиска') & (data['Mode'] == 'Случайный') & (data['Operation'] == 'Удаление'),\n", + " 'Time'\n", + " ].tolist()\n", + "bst_random_delete_average = data.loc[\n", + " (data['Structure'] == 'Бинарное дерево поиска') & (data['Mode'] == 'Случайный') & (data['Operation'] == 'Удаление (среднее)'),\n", + " 'Time'\n", + " ].iloc[0]\n", + "\n", + "bst_random_delete_average, bst_random_insert_average, bst_random_search_average" + ] + }, + { + "cell_type": "code", + "execution_count": 232, + "id": "92a545c9", + "metadata": {}, + "outputs": [ + { + "data": { + "text/plain": [ + "(np.float64(0.013591), np.float64(0.303134), np.float64(0.007562))" + ] + }, + "execution_count": 232, + "metadata": {}, + "output_type": "execute_result" + } + ], + "source": [ + "#Получение данных для дерева\n", + "bst_sorted_insert = data.loc[\n", + " (data['Structure'] == 'Бинарное дерево поиска') & (data['Mode'] == 'Отсортированный') & (data['Operation'] == 'Вставка'),\n", + " 'Time'\n", + " ].tolist()\n", + "bst_sorted_insert_average = data.loc[\n", + " (data['Structure'] == 'Бинарное дерево поиска') & (data['Mode'] == 'Отсортированный') & (data['Operation'] == 'Вставка (среднее)'),\n", + " 'Time'\n", + " ].iloc[0]\n", + "\n", + "bst_sorted_search = data.loc[\n", + " (data['Structure'] == 'Бинарное дерево поиска') & (data['Mode'] == 'Отсортированный') & (data['Operation'] == 'Поиск'),\n", + " 'Time'\n", + " ].tolist()\n", + "bst_sorted_search_average = data.loc[\n", + " (data['Structure'] == 'Бинарное дерево поиска') & (data['Mode'] == 'Отсортированный') & (data['Operation'] == 'Поиск (среднее)'),\n", + " 'Time'\n", + " ].iloc[0]\n", + "\n", + "bst_sorted_delete = data.loc[\n", + " (data['Structure'] == 'Бинарное дерево поиска') & (data['Mode'] == 'Отсортированный') & (data['Operation'] == 'Удаление'),\n", + " 'Time'\n", + " ].tolist()\n", + "bst_sorted_delete_average = data.loc[\n", + " (data['Structure'] == 'Бинарное дерево поиска') & (data['Mode'] == 'Отсортированный') & (data['Operation'] == 'Удаление (среднее)'),\n", + " 'Time'\n", + " ].iloc[0]\n", + "\n", + "bst_sorted_delete_average, bst_sorted_insert_average, bst_sorted_search_average" + ] + }, + { + "cell_type": "code", + "execution_count": 233, + "id": "b2e93d6e", + "metadata": {}, + "outputs": [], + "source": [ + "countUsers = 10_000\n", + "countRepeat = 10\n", + "countRandomSearch = 200\n", + "countNotExitstSearch = 100\n", + "countDeletes = 500\n", + "\n", + "\n", + "ll_col = 'blue'\n", + "ht_col = 'orange'\n", + "bst_col = 'green'\n", + "\n", + "iterations = range(countRepeat)" + ] + }, + { + "cell_type": "code", + "execution_count": 234, + "id": "208784a5", + "metadata": {}, + "outputs": [ + { + "data": { + "image/png": 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Knfz222/FLkuV3rvuuss1V1KzrHSeeOIJFyzSDUJywFPq16/vAkvJATatiypsCxcudPMUJ9PtFKRKWqqKQSq6udGX9t///ndXJtFyVXlRk6VUfNPx4nTt2tWWLVuWchv4wGpR1IRNFdqzzjrLNbnJBWompX2uSrKCh9qPd955Z6kDsJnK1vGUa3S+6iZCN2pqEqgmdjq2AQDRQP0xnO97BbgUzFPz5WQKVu2xxx6uvAp4KlDYsGHDIpen7at1UkBQwVd1JdSoUaOEeSZNmhT/v7pdUKBXgcpUFHzWttA2U5A5WM9KVbfVw28FlbTdFBQt6f5NRc3RFSDVtkon1UNkraPqLffdd5/rSkEBYQXI1Uw/eZv4sioAq+NY3TSlo24LXnrpJXf8aFnea6+9Vqhfz5Icm7lIdXsFkLVf1dWCujAoS9BQXSVkcl5o+6sLhuC21P5UFwmVdVsqqP3QQw+5ban7kzfeeCPelQtQHIKwQB7Sl5oqHeqz5uCDD3b9karfKWVfivrqSRb8YjzvvPOK/YzkeVRJVf9N6l9LTwiL+1JWZVeBNFUslXmpyqjeW69evULzatl6Yqrlz5492723bdu2KZercqhS8frrr7t+TtXfaXLGaXEy3U5BerLvs1aLo/6zFIjVPlI2gPo4evrpp+3cc89NOb8yIRRA3bRpU/wps4KlynrVe1Oto/pPUn9JCshqGyirpDiqbOrGQP0opXoyndw/W0kqTn5/qwx6n4LW6u9W/UllQhVj3axdeOGF7uYh1b4piUw7yy/N8fT888+7TBtP+6m4fmq1bZK3V1GBUT+/bjB+//1369atm6tcZ/IgwD/BV3a0bgBVMQYAgPpj2eqPvo/ZLbbYIuXrTZs2dUHr6dOnp63zBanPVvn8889dC6fi6j6ZfL7qYVqe+qsvjjKfxfcNW5r9G6TAqzKEfTCzpILro4C26raHHnpo2rLKp59+mrYOq/2toKT6fVWfqMm0zVWXVqBb9aXkMSGSaUyG5PqczyJORa8lz69lZFLHVABU40eoH15lbKdL4kimBBAF6vWeso4BoL5Ulf2cKT3M0Tmruqq2ZzDzPN15nlxfLooyfYP3Rcl9zqbbX8rQVb/EOud1XirAmgnN+5///Mc9HNC5l2kyDsCRAuQpDa6kyooqeuoMXcEr33xHFbBsUmVAHeLrSeC9995rW221lZteVFaCAky+CYfoS0xNmFT5V6f/Qcq+8INdqVx6wq+n/akyIZWloafkejquwQg0jwKcJekgvTTbScGwVAHRdDRIkga8UnnV8bwqlKkGwfCVVj1t1ZNkVay1Xvqd3CTPN/nRvlal88knn4xvS91AFVfZUnMudZavSkhxNChE8g2Emsplur/1tFgVZw0uUNT7kgOx6kRf+1frWdrm88oqTpUJk0ppjidVxvzAFKKsGFXw09FxH9w2ooydogTn182BbpaVqaIn8amOi2SqNCtbZcyYMfbee++59wMAQP2x9PVH33Q93XbSA/vgfJnKdPtn+/P1cF6yMcq7AmLqdktBr1QDbJV0fcpS1mAdVu9XQFJ17WeeeSaenaz6lAaJUjdOaoWlhxFa7+CguqlaoyXX5zTYWzrK4E2eX4FeZfpmUsdUQoYG/NU9gur9mdSL9aBDD+F1bivpIlVGfKaU8BGs76Yzbdo0t94KFGt7+CC8zrVMz3PRgGLBgeqSKcNaD2U8zauM30z2l+4NdN3RQwLVwTMpl6gurXq07mUU0M+kDg5wlAB5zFcylQ0ZbCKUrvJT1NPadFQB0CiQejqv/rt8BdpXlLziMjEVkNOXsipGyeuhjAxVrBUc1EifCiimCtypqZYqSqrI60m8L39wXRQsDfYPlUpptpOyJoL9oBVHTef0Ba+ntsrQOOyww9LOq+wOZXIoSKpMVY0EqopGquZXai72z3/+01UggjcjwW2Qal/oqbgqosn9pIVFQVQ1q9P+Km5/+ONMQWsFHNVMTZnEycdYpvS0WhXQ4mTreAqbbixVcdSosr6fr6Jo/RX414iuPXr0cNkfySNRAwCii/pj6b7vfX+o6VoKKfNSdRif0Zmp7bbbzq1Tuu2vgKN+Mvn84HpmEjzz27EslGmoIHdZAn7J66NMVwUdy1pWBc3UX68yoC+77LJ4FwUnnniiq5srUKgAbGmOzbBpGyiQqqxR/c6EWpPpwYeSA/SAQpmppaWWWMUloOi41HmuJJHRo0cnZEEXd29SnnR+qasQrVO6pJhk2nbKyFfdWy0WlVgCZIIgLJCn9HRy6tSpLuPPNzlSRVX9e6mfo1SKyjwo6gtIlXQNRBB8Uq6gZJAqv8VRxVTNa/Slno6aXasSp2wFNREK0pe7qCP+oOC6KOO0uOYsmW4nfZ6adPkO2TPpKytIlT1VOhRUVdP8bNA6KSinzuHTbYNU+0LZHkX1mRUGZRso8Ku+1oqieRQ0VIVRT9HVlF5Pt1WRLI1XXnklYbCLdLJ1PJUHn7nhbzqKooq6ui5QNuzw4cNdP3UKipc2qA0AyB/UH0v/fa+sSQV8U2XrKQilbEUNjpmqz9PivuP18FmZw/PmzUvZz6qmK2iogG2qz/eDl2kAtmC2oO82KTmjVH8ri1AJBsnbpaTUxZWSCdQPaCZS7UftXx0LGnRMgXUdMzrulB2ZKhCrbFJlfSrLtTh+f/j9rYfayqAt6njI9NjMpfrfhx9+6IKGOk7UF6weXChDtajzJh1dI9Q6rTjq0kQPD44//viEbtuUeRpsoZcL21LHp9Yxk22peZRIo4c36hpDGd66vijTHigOQVigElJFSv3opGuCoyZkanKl11XZ9B3Nq68adT6vfm/U1Co5CyBdJcv32eNHj03O6NTTw2AfmFo/BXcUlNQXu5pRBZt+pRpk6ttvv3UZoQqOBZ+Sal5VvIKUxaAgoyqkKmty31nBdVHFzI8Cr3VRwK+45jqZbidVXFQB1Dpq/ZP7RdL0ogbU0oBIeo+eEAdHFy1JZkHy8rUNFNgNVqhU6VY2rW52NH+wqYx/v8oZvAny05OX7/8OjnAa/DtVeTUt+VhVRqua7agZlW7s/PuS97WWq6aQyhrx21cjIWu7K3hdXN9ZydQNgvrPSr4R8OsXLFdJj6eSbpt08/tp6bZlcH1FmT86LtV0Szezfr7kbSm6oVLTTR1zogyGBx54wN1wFNVlAgCg8qP+GG79URmTauat7oGC9RNtzz59+rhuF9I9QC5qW4laQ2mbqRl9sC9NJQNoG6kOoP2kZvXK+NX+CtJgq+pvV9s3mbZVch1AQSUFdhV4T9Xfrl/ndOvrlyva3n6Qt+D0dHXkn376KWGQIx0XShTQ+qt8vh6rpuQKKqt1WLAupYD5Y4895rqSCAYK032etq3vKkyUzJB8POi96ktW/SZnWv8rrj6Xbv5U65qq/qf/K3tbgUOfxZuuPq1kEZ3balHn6VhQRroexJe0CzZ1y3DxxRcXW5dWH8w6L9QKLfiwX3VP1ef9/UryvUlp6sYlrX8nl1lB1eXLl8fHSki3LXVe6AGVuqvw3ZspWUTHjR7E0LoMxaFPWKASUWVQwSdVTvwFXk/2g52xq5N2dZSuip46X1eT7yD1daMKmyrRehKqSpEqbWoar4pM8ItLzXP0ReObOGskdT2BVqDHV1D0xF2VX82rSpYqwHqvmrpomb6yqKeDauqjLEStn77QVBFQ4E+VegXlrrnmGvdEUVR5VSVWlQZ9aatipMqDnn5rZHc9tVclQP35KKtAzZxUIdDT7Ouvv941q9cAWKqYqP8hVSC1Lvpy9IGqomSynfSa1lNP2bXunsqpbaZyKttCFUdVcJIzZbU8BcP0JV4SerqvSqi2jbbfX/7yFzv11FPdsaDtq+2qMu63336ucqAApralKgy+0qAn0+o/TRVK0XbXSLMqnyp06vhftN01UrIqF9qHCtaJ5tEgF/osfaaatosqzcoeUGVQA1r4/a0MEN38qJKlY1cVZFXwNZ+aIaoLBVF/XHq/Pk/ZuSNHjnRZDsra0A2MgoY6XrTemk/rpmOtuFF79YRdN0baN8HjLDgoiCgjeZ999nHlyvR40o2f5vHbQO/Vk3Dd8GgwMX2m6IZW20w3Dbqp8eeVyqLy6jjSgB0qc/K+Vbk1orH6KBNtN2XbaH5l5mg7aPtqW+mmQ+9X5VLbRQ8L9MRe3TkoC0KZITqHdHyIblRE71f/eTrP1E0BACA/UH8sv/pj9+7d3eeo1YnqWfrO1XqrGyQFeZIfuus7WNnHqteJ+q/Vd7XqInpYH8x4VPaw6k6qd2jwIK2nHlDrobSnQK32k5qaqw6q92lfaPsqqOgzJ4OaNWvm9re2o9ZPmYsqt+pxydmO6hJA9TM12dexpCCatqPWQ8Er33Q/WGdUQFj7TfUM1RN9gDhYZwwORqpjRPWefv36uWNMn6l6oMoVPGb1mo4L7SfVdbQOOmb0WTq2fHBddHz4/vYVfFTCgprKK4ivJAUdq/441qCx2h8KzipbU9nAOjZ9oE3Hifq41T5WMNHXzXx5lGWqbae6rd4fvBfQZ/njU0E+dX+h80Prqjqj6sSi402JCjrmlOns65LqHkF9kKqMepCg41YBTgWE9RmqQ4qOeXWpoPNO66ntpHVTXdA3t9fxqXKpHqpzTsdbUYO16jjS8af6tLoR0TEWpOPYL1f7QftEx70ys7X9VRYdn1oPlU33Hb5bLB17ykhX/Vjni44tHRfaDjqmtM+0nRUkVX1ZmbUqm7KsfRatgvGarvsFXaeC9zjqLkDbUXVxv7+0f1RX1jbQZ+r6qLq8toPq8D5DXtcbXVd0/Gobax4d9+q+wPcdq3sz7Q/tX527up/Q56Y634AqMdofAkCF0Je+KmpFddofZQqOKmibjQEhVElSRVAVaFVUkzvO11ehKpeqcKkCqkpUNj43V/in/QwYAAAAPAWYFSQr7WBZ2eaDWkUNwITMqX6rOmCmA9IWRftEx4se9qsJfqpuNZQZrWCsHibogUQw8zZf7k2ysS0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+ "text/plain": [ + "
" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "# Создание двух графиков рядом\n", + "fig, (ax1, ax2) = plt.subplots(1, 2, figsize=(14, 6))\n", + "\n", + "# ============= Левый график: случайные данные =============\n", + "ax1.set_title(\"Вставка случайных данных\")\n", + "ax1.set_ylabel('Время, с')\n", + "ax1.set_xlabel('Повторения')\n", + "ax1.set_xticks(iterations)\n", + "\n", + "# Связный список\n", + "ax1.scatter(iterations, ll_random_insert, label='связный список', color=ll_col)\n", + "ax1.axhline(y=ll_random_insert_average, color=ll_col, linewidth=1, \n", + " linestyle='--', alpha=0.7)\n", + "\n", + "# Хеш таблица\n", + "\n", + "ax1.scatter(iterations, ht_random_insert, label='хеш таблица', color=ht_col)\n", + "ax1.axhline(y=ht_random_insert_average, color=ht_col, linewidth=1, \n", + " linestyle='--', alpha=0.7)\n", + "\n", + "# Дерево\n", + "\n", + "ax1.scatter(iterations, bst_random_insert, label='дерево', color=bst_col)\n", + "ax1.axhline(y=bst_random_insert_average, color=bst_col, linewidth=1, \n", + " linestyle='--', alpha=0.7)\n", + "\n", + "ax1.legend(loc='best')\n", + "ax1.grid(True, alpha=0.3)\n", + "\n", + "# ============= Правый график: отсортированные данные =============\n", + "ax2.set_title(\"Вставка отсортированных данных\")\n", + "ax2.set_ylabel('Время, с')\n", + "ax2.set_xlabel('Повторения')\n", + "ax2.set_xticks(iterations)\n", + "# ax2.set_xticklabels(range(1, 6))\n", + "\n", + "# Связный список\n", + "ax2.scatter(iterations, ll_sorted_insert, label='связный список', color=ll_col)\n", + "ax2.axhline(y=ll_sorted_insert_average, color=ll_col, linewidth=1, \n", + " linestyle='--', alpha=0.5)\n", + "\n", + "# Хеш таблица\n", + "ax2.scatter(iterations, ht_sorted_insert, label='хеш таблица', color=ht_col)\n", + "ax2.axhline(y=ht_sorted_insert_average, color=ht_col, linewidth=1, \n", + " linestyle='--', alpha=0.5)\n", + "\n", + "# Дерево\n", + "ax2.scatter(iterations, bst_sorted_insert, label='дерево', color=bst_col)\n", + "ax2.axhline(y=bst_sorted_insert_average, color=bst_col, linewidth=1, \n", + " linestyle='--', alpha=0.5)\n", + "\n", + "ax2.legend(loc='best')\n", + "ax2.grid(True, alpha=0.3)\n", + "\n", + "# Общая настройка\n", + "plt.suptitle(f'Сравнение производительности вставки в структуры данных (N = {countUsers})', \n", + " fontsize=14)\n", + "plt.tight_layout()\n", + "plt.savefig('./img/insert.pdf',\n", + " format='pdf',\n", + " dpi=300,\n", + " bbox_inches='tight', \n", + " pad_inches=0.1)\n", + "plt.show()" + ] + }, + { + "cell_type": "code", + "execution_count": 235, + "id": "7de42c9d", + "metadata": {}, + "outputs": [ + { + "data": { + "image/png": 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NmzbZ+++/H36ePe7Uv7755hsX+FNeV1E3+7PPPttee+21iNywnnfffdd1o/f8/fffrgXn/vvvH7F8/+cEPzO39ahdu7a7oabX1DU/OP+ff/5pZ511VgG2iNkdd9xhjz32mG3cuDE8Ta1NFTT1lutfl2itWfW6AqxXXHFF1ByyVatWteHDh7tWut56azlvvPGGC4prHV5//fWIdVDe10GDBrkAtvcZ3nv1HgW1lXZh6tSpBSovgCRPR7DPPvvYqlWr3InDU7FiRXdCAAAApZvq8/pJj3L946bpWmLwYLNevUhNgNKHeiyAZNC7t3KgZv/e+m94qoWsArB6vbgoEKjUAgpWeoFRtd5cs2aNjRs3zpYtW+YGkFJQUcFTdXl/6623XHDxmmuuce/XoFO6uaXu948++qhbhnoZaDnqJq+Ao3K3bt261b1fg1/p85QeRp8hd999t1122WVusDC1IFVr3Pvvv98FiRVcVE8GBXo3b97sBgNTWhmlNFBr12effdbNf99999nAgQPdMvVc53zlolUPCL0maq2r9fKCmUFevlsNhKUWqRqg66STTnKtUBXonDlzpmv1qxQDaknslVd5WQcMGOB6Vrzwwgtu/smTJ7sA9eOPP+7WX9MbNWpkPXr0sGHDhlmVKlVcTl21blUgVTcGRalyxo8f74K4asWr8upR75Fp06a5ZWk9NPDZJZdc4lreannKP6ttP1iVNQDFqkwo2i0kFElmZqbVrFnTdUfw7v4liu6G6YSrbhHB0R5TEeVNbelU3nQqq1De1PLhhxqh99/nZctmWYcOK23WrAzLyvq3vNOnJ37U5pKQ6vu3JMtbnHUoREc9NjHSqazpWF61Rpw3b54LginIFe8bnzNnZg/CpRywSkFQ0jc4FUJQ3tHy5ctHbcXpp5aYseRaTWYFKW9ppwC2juXq1au7YHCqf3/T7VxFeUu+/lTotfjkk0/ynSe3EQsBAEDplUyjNgOFQT0WQGmh+KVuaJ52WvZjaYtnlvYALADEU6GDsM8991y+8ygvCgAASC3JNGozUBjUY0ueWvd99JHZjBnZj4FUjQAAACmn0DlhlUPl//7v/1yT/GjUXF+5Wh555JGirB8AAEjSUZs1CFe0pEbqqafXi2PUZqAwqMeWLA3cpzyXy5aZdehgNmuWmcbq0UBExZnnEgAAoFQEYZVYWwmd/d0LPvzwQ+v2v+RvqrzSggAAgNQdtblPn5IftRkoDOqxJRuA1blDN3D86dl0U0fTNRARgVgAAJCKCh2EPfPMM+2GG27IkfRWo+z5k3ADAIDUHrVZrdlKctRmoKCox5YMbVKdM6K1oNc03cTRYN29enETBwAApJ6y8Uyw/e6779qECRPCz6+99trCrxkAAEhqCrQuWGD2/vtmV12V/Th/PgFYJD/qsSVDI7wvWZL76wrELl6cPR8AAECqKXQQdt26dRHPt23bZmXKlLFLL73UhgwZ4loTrFixIh7rCAAAkpRiWV27mnXpkv1I6zWUBtRjS8by5fGdDwAAIC3SEcyZM8fef/99lzvr77//tjvvvNMuueQSa9mypfXu3ds+++wzq1q1qk2bNi2+awwAAAAUAfXYktGgQXznAwAASIsgbP/+/e3II490rQakcePGdvvtt7sK66effupeW7hwYTzXFQAAACgy6rElo3Pn7LzRGoQrWl5Y7Q69rvkAAABSTaHTERx33HH2wgsv2NFHH23nnnuuq7Cq4iqtW7d2I8zWqFEjnusKAAAAFBn12JKhdCVjx2b/+3/x7zDvuQb2I60JAABIRYVuCSunnnqq+4umadOmNnDgQAuFQuFWBgAAAEAyoB5bMjRw36RJZoMGmS1b9u90tYBVAJaB/QAAQKoqX5QBDapXr57nPEOHDqXiCgAAgKRCPbZkKdDaq5fZjBlmq1aZ1auXPbgfLWABAEAqK3Q6gnvuuSffee66667CLh4AAABICOqxJU8B165ds4OveiQAC6C4/fPPP/bqq6/aeeed5wZqBICkbQn7zDPPuNYB5ctHX8S2bdvs+eeftzvuuKMo6wcAAADEFfVYAKVG1g6zVTPNNi03q9LArF5ns7LctSiKBQsW2OWXX+7ygR9wwAHWsWNHzvcAkjsIu379eps5c2aur6vyunLlysIuHgAAAEgI6rEASoXFk81mDTLbuOTfaVUbm3UYa9aEBMqFsWbNGjvppJPsqquussmTJ+d6Mw4AEqHQZxzdNXr33XetXLlybmTZli1b5phn8ODBRV0/AAAAIK6oxwIoFQHYmX3MLBQ5fePS7OmdJxGILYSnnnrKRo4cad27dy/pVQGQhgqdE7Zt27auCf/FF19ss2fPtvvvv99efPFF27hxY3ge5VYBAAAAkgn1WABJn4JALWCDAVjnf9NmDc6eL8HeeecdO+yww1wKl3Hjxrlp9957r1WrVs3drFqyJLuV7u+//24XXXSRPfTQQzZixAh77rnn3PTffvvNBg4c6N5/ww03uFQAmmfnnXe2I444wqZOnWrTpk2zI4880urUqeNe2759e9R1uemmm+y4446zRx55xP7zn//YLrvsYo8++qhdeeWVbh29ngz67PHjx7v1HDRokOv94Pn777+tSZMmds0117jyKP/3rbfemuMztR5KU6B5Hn/8cdtzzz1tv/32czlkly5d6sqoMum35Oeff7YPPvjAevToES7Dli1b7OGHH3bPNV3l1O/NZZdd5t6n93vb7uuvv7ann37afc6FF15o77//foL2JoCSVuS292pBcOyxx4ZPaC+//LJt2LDB9t57b+vcuXM81hEAAACIO+qxAJKScsD6UxDkEDLbuDh7vl0SO6CUegt06dLF9tlnH9tpp53ctKZNm9qzzz5rffv2dQFFBTkVHJ0+fbo1bNjQzXPIIYe4G17KuaogqQKTt9xyi5UtW9YGDBhgEydOtNNPP90FKGXRokW2detW91puKleubC+99JJbjypVqtjatWvdzTQZPny4e5wwYYKNGTPGfvnlF/f8+uuvd4HSJ598MhykVQD3k08+sdq1a7tpKotuvCkQ6tF6KNDcv39/C4VCLoVNixYtXCoDLyCs8gwZMsSaN29u7du3d+/X8r0yXHrppe535bTTTguXU/M/+OCDdvPNN4c/68QTT3QDRp599tlu+W3atLEvv/zSWrVqFcc9CaBUt4SNRnezdIdId3h69uxpRx11VDwXDwAAACQE9VgASUODcMVzviJSMFIBRgVTFdycP3++9e79byoEBVjVutQLwIpatmqAQ1GgVhSA9Wha8Hl+GjRoEA4EB9/TunVr96jWqwqcenRD7aOPPgo/Vx7YDh06hAOwcsopp7jg7jfffBPxef7l69/B535vvPFG1PyysZRTwVrd/PN+ixSEVdocAKknLlmoV6xY4e4eKb+KuiEcc8wx9sILL4RbFgAAAADJiHosgKRTpUF854sDtWw955xz3A2qOXPmRLz21VdfudawOo961Hq0WbNmcV0HtRTN77W99trLpSl44IEHrGLFiq7L/44d/6ZtUGvbRo0aRbxX89WtW9cFa5VyoKD0Gfr9UMB37ty5BX7/tddea++99569/fbbbt0zMzMj1hlA6ih0EFbN7P/73/+65v4a2GD33Xe3c889184880zLyMhw83z33Xeu20JhvPnmm67Jv+5o6USmO0PqrpAX3S165ZVXbLfddrNly5a5u1vBQRXUukF5YzTPP//8407Cyk2T26iI+vE4/vjjXS6Y4MkaAAAApU+i67EAUCT1OptVbZw9CFfUvLBlsl/XfMVI19CVKlVyObTPOuus8PTNmzdb/fr1I1qglhQFMpV39bXXXnMB2Q8//NDdaPOoJW20a3/lhA3mhVUsID9ZWVku4HvbbbeFW/4WhHLHqlWxBogcNWqUVahQweWzBZCaCh2EVXBUObOU3+SLL76IesfouuuucyfBglJ+ljvuuMMFVb3m+r169XLN+E899dSo75k3b567M/f999+7XDGiJNx33323XX311e75mjVrXOsG3anTnS4ZPXq0O0kruXc0mv5///d/rrIOAACA0i+R9VgAKLKy5cw6jDWb2Sc74BoRiP1fd/YOY7LnKyZq/bpp0ybX6En5TZUn1stZqhag/lawHnXvL0zL0qJQ134NuqUArBfk9GjwrAMPPNDFDvz0e/DXX3/ZwQcfHDE9twHC/DT4lvLSKnhaGApo66afbgwqT7l/nbW+3oBjANI8CKuWpkporW4HSiwdPFmpQvvHH38Uatk33nhjOMm3v3uBmunnFoS9/fbbXf4uLwDrvUcnLSXiVuJu3aHSydgLwEq/fv1ck38l7G7cuHHEMjWSo7qoAQAAIHUksh4LAHHRpLdZ50lmswZFDtKlFrAKwOr1YqJz5Z133ulaaKphlIKO559/vk2bNs0FDi+55BJ74okn3PPDDz/cveeHH35wPVoVhI2lRanEOp/XAjXa/GqVW6tWrfBzrYcXTF26dKkL0Hbt2tUWLFjgBtQSBZDV+/XQQw91A2TptaFDh4Z7RkRbN++58rd6+WgLUiZNV7xD61ujRo1wAFbxh5UrV7p11voCSC2FDsKqy5a66Od1olYy7oLS3bUZM2a4wKmfRiLU3TfdtVJT/aApU6bYsGHDcrxHIyZ+9tlnLhireXTny69OnTou0bhysKhMHp30lA9MrWs16iEAAABSQ6LqsQAQVwq0Nupltmpm9iBcygGrFATF2AL2mWeecb1L161b59L56fpZ50jlT1UDKaX/69Spk3s+fPhwdy2voKIGmNK1tAbyGjt2rFvWXXfd5QKkCqCqwdOrr77qgpDyzjvv2I8//ui65CsWkFu6wFWrVtnEiRPtueees59//tnuvfde1yr3oIMOcq9rgK2RI0e6YKYCnWq1q5626v2qPwVNp0+f7uZRIyy1glX+1Zdfftm9v23btvbll1+6dDUjRoxw05TOQL10ldpQjbr0Wd5viKZpPXRzT+ukMtx///120UUXuQHLFATWYGBeOb2csQoGK92i15tXvXj12QrMKtit3rwKdgNILWVCBbnd5KOTq052efHfCYuVTmB77LGHTZ061Y444ojwdCW63nXXXV23sKOPPjriPTpxKrfL448/7u7IeZRCQEm21UVAd+fq1avnTobK1+KnXK/KAaYfF49OmCeeeKLLGatgrkaA9O6UBam7gL+bgxJpa3RI/UjpByiR9AOmHyKVzT/qYqqivKktncqbTmUVypvaKG9qK87yqg6lnP66iZ7IOlSi6rGpQPugZs2aCd8H3rGlFl9qbZbq36V0Kms6lnfjxo2usZC656sHZqrty+A+VAhBjZYUKPX3Xk1V8S6v4gRqOazz7a233mrJRMFiHcvVq1d3cZJU//6m27mK8pZ8/anQLWG9iqu+pL/++qs7GWnwLN1FUu6XAw44oFAVV52Q3IoF7nx5z73XC/MePUa7o6Zp/uXOmjXLnXAaNmzouiLkR10zbr755hzTdcHi3fFK5EGlnawfhnT5ElHe1JVO5U2nsgrlTW2UN7UVZ3nV0qo4JKoeKwwuCyCVpMPvXHHTOV7pDqLFEADEx44duumuuJxZvXqq+5n9L+tHiSp0ENbrTqDWo4r4qtWqRpdVLhO1GlU3ALU4LeidQO/OUm45V6I13I31PZov2vs1zZuuyrjKocEYYqVctUOGDMnRElYtRoqjBYHKlU6tcShv6kqn8qZTWYXypjbKm9qKs7z+3P6Jloh6LIPLAgBixQ0yIDEmT1ZdSmMAmHXooIaWZg0bmikzSu/iS6cd3yCsKqYff/yxa0a/7777uvypHg2qpRYGqjzedNNNBVqumu+K7u77ed39vdcL8x49Bufx5vPmUYV1wIABBVrnSpUqub8gVbiL4+JMlfzi+qxkQHlTWzqVN53KKpQ3tVHe1FZc5S2u7ZmoeiyDywIAYuVPpQggfgHYPn3U2FL1yn+na5w7TZ80qWQDsYUOwmrEWA105VHuVb/69eu7lgUFpUG31Aoh+F51gxMl0g5SPtgGDRrk+x7llI22TppP82hQsK+//jqi0qr8EaKKuNITKNk4AAAASq9E1GMZXBYAAKBkUxAMGpQdgA3SNN0jV7anXr1KLjVBoYOwuQ1S5VeYfKhVq1a1Qw891FWO/TQwV9OmTV0gNRqNYBvtPVqeRmv05lFl1m/x4sWuJay6oamlwfPPPx/x+ocffuhGRlR3sFjKDAAAgOSWiHqsgqwKgCowGmws4LVODQZhNbiscsDm9R4FYRXE7d69e47P1Hyax085YDUQbbTeX7EOMOulodBfImn5SgmW6M9JBulU1nQtr6eQ416XOnmlC0xF6VJefznT4fubjueqVC7vjBnZKQi8FrBlyyqllsY0yIpoEav5unaN72fHuk0LHYT95ZdfwiMERjsZKbipv8IYMWKEXXXVVS5Ztbf8F1980Y0cqO5d+uzTTjvNRo0aFR404ZprrrHjjjvODeigkfy892i6V5FVmoGnnnrKlixZEu62pXnUekAjWUajARokVQ9SAACAdJOIemxpHFxWGGC2eKRTWdOxvLrpoTIrB3Nug+WlEu1X7zrZn34lVaVTefXbqGNZcRX1Ck7172+6natSvbyrVmXngPWUKZNlrVurh7zGgSobMd//Or0X++Cyhf6FOProo92deQ1gtf/++4cHt1KFVd2iVJlTC9LC0J1+5dRSELZt27auZcFJJ53kcl95rQYWLlxo69evD79HI8UqwKqg65577mnLly+3Zs2aRXTv0oASb7/9tsu9pXk0yIGWkduABloHtYT1BkhQea+44opClQkAAADJIRH12NI4uKwwwGzxSKeypmN5N27c6L47FSpUSIsgrEflTSfpUF4dv/rOqiFbRkZGyn9/0+1clerlrVcvexAuT3YL2DL2zTf1LCurbMR8GRklM7hsoX8hlGdq0aJFrvWpV/nTwADeyenBBx90XfwLSyPJ6i+aAw44wAVQg5TGQH95adeuXa5B1yCVRwMy6OD07mwCAACgdEtEPbY0Di4rDDBbfNKprOlWXn8ZU72lpOi86ZWT8qYWfznT5fubTmVN9fJ26WLWsGF2ygHv3nUoVMYFYPWnw1ud4jVfvIsf6/Ys0m06pQ048cQT7ZlnnrHZs2e7D9XIrXl17y9N/BVSlS1aBRUAAAClT7zrsQwuCwAAUHLKlTMbO9asT5/sQbj8vOdjxpTcoFxS5L4SqqyOHDkyPmsDAAAAFJN41mMZXBYAAKBk9e5tNmmSUopmD9LlUQtYBWD1ekkqcgPc6dOn2xlnnGH77ruv7bfffq71wFdffRWftQMAAAASJN71WLWunTRpkhvYxBMcXHbvvfe2adOmhV/XeAZ67h/QIdrgsr/99psbXNY/D4PLAgAARFKgVeOTvv++2VVXZT/On1/yAdgit4S98sorbfTo0e7fXj6q7777znXr0kirGlgLAAAASDaJqMcyuCyAeNuRtcNmLpppy9cttwbVG1jnpp2tXNkS7EsLAKVAuXJmXbsqPVP2IFzJkgK30EHYcePG2csvv2z333+/a0FQu3ZtN3316tWuInnvvfe6QbCOPfbYeK4vAAAAUCSJrMcyuCyAeJk8e7INmjLIlmT+2wq+cY3GNrbnWOu9exI06QIAFEihY8HqAqXuWgMHDgxXXKVOnTquZcEXX3xhjz76aGEXDwAAACREqtdjNZisN0ovg8sCpTcA22din4gArCzNXOqm63UAQOlS6Jawe+yxhxvNNTfqRqVuWAAApBOlYZwxw2zVKnUhNuvSpWRH4ASQE/VYAMmegkAtYEMWyvGappWxMjZ4ymDr1bZXsaUmUK7rhx9+2F566SXr37+/yzt98803uxQpSp+idCx6rps+devWdXmsb7vtNqtQoYKb/91333UDBUr58uXdjbATTzzR+vbtGzEooQZL1KCJK1eutDZt2tiZZ55ps2fPtrFjx7peDHpdKWT0ft0402d4N500Tb0cNBCieh1oXZSSBQBKfRBWJ9P8VKxYMeL5nDlzch0ZFgCA0m7y5H9H4uzQwWzWLLOGDc3Gjk2ORPAAslGPBZDMlAM22AI2GIhdnLnYzdetebdiWScFTi+//HKrWrWqnXfeeS4oq4CnUrr06NHD5Z3WDazBgwe7+dWbQEHXBx980F544QXr2LGjC7I+/vjj7nXltVaaFQVQ+/Tp454fd9xxbsDEhqo8mdkhhxzibogplYuWpSCseiuIcm0rX3br1q3dIIU//fSTXXrppfbpp5+Gz/EKCitH9i233FIs2wgAEpaOoH379uGE/9F89tln1qJFi4hpDAgAAEjlAGyfPma+wcudpUuzp+t1AMmBeiyAZKZBuOI5XzxFyzG9dOlSF2xVMNXTs2dPe/7558PPK1eubJ06dQo/32mnnez888+3a6+91j1/6KGHrEmTJuEArBx55JHhZZQpUybiMzXwoSiQ6+XCPvrooyNusilAfNddd9mff/4Zl7IDQIm1hFX3gjvuuMMOPvjgHHmm/v77b5dLSydBVWJl8+bN9sEHHxR5hYF0QZdmoHR9X9UCNpSz16CbpusGNQzRWD18j4GSRz0WQDJrUL1BXOeLJ6/rv9+3337rWsZOmTLFtZgVpSs47LDDXNA2t94He++9t40YMcJWrVrlUgmoNawGR/SEQiHXutZPr69bt87eeecd+/jjj106BFELWp23/Ro3buw+X+dypT4AgFIbhH322Wdt48aNrrl/NLrTpROhZ9OmTbZ169bCfhyQVujSnNrSLcCeDuWdOTNnC9hgIHbx4uz5uhVPr0EkSDocz+mAeiyAZNa5aWdrXKOxG4QrWl5Y5YTV65qvOClIWqVKlRzTdaNK1BK2Vq1a4elKW5AXBVm9wK6WUb9+fZc/Ni/e6xdeeKEL8qolrdIYKAiclZUVMa/3XK8BQKkOwu6yyy7uzlP16tVjfk/Xrl0L+3GIIt0uBNOlvF6XZtVJ/DeavS7NkyYRiC3N0i3Ani7lXb48vvMhOaXL8ZwOqMcCSGYabGtsz7HWZ2IfF3D1B2L1XMb0HFNsg3J5pk2bZt2i3E1WrwK1gFUvg4MOOig8/bvvvnODbHmtZ72gq+ebb76x3Xff3Q2w1blz54hWsP559ttvvxzT1YtBOWOV81VBWK3DokWLIuZZsGCBlStXzuWjBYBSnRNWIyAWpOIqAwcOLOzHIcqFYPPmZkccYTZyZPajnqdqzsF0KW9+XZpFXZo1H0qfdMsZmk7lzWOQ9ULNh+STTsdzOqAeCyDZ9d69t03qO8ka1WgUMV0tYDVdrxcn9Qb4+eefrWnTphHTFVht1KiRDRkyxOWF9Sgdweuvvx6RvsDfw2DNmjX2xBNP2H333eeeX3LJJa7FqgK9nh9++MHmzp0b/pxoAVrl+BalmNHnqZeDZ8yYMTZo0CCXaxYASnVLWCW5LqiTTz65sB+HNG4pmU7lpUtz6kq3nKHpVt7OnZV3LPu8FK3MKq9e13wofdLteE4H1GMBlAYKtPZq28tmLprpBuFSDlilICjuFrATJ0600aNHuxapjz76qAuIKmD666+/2jPPPGPVqlVzA2CNHDnS3bDSwIbKxTpgwICI5SgYqqCrWqfOmjXLtXzV4FtSo0YN++ijj2z48OE2Y8YM93znnXe2c845x3755Rcbq24nZu79agX75ZdfWkZGht1///1uulrgjh8/3g2i2KpVK1u5cqV71E03ACj1Qdgg3aF68sknXZLsY445xo2GiPhLtwvBdCsvXZpTV7oF2NOtvDr/6NpAN4YCg/eGn48ZkxrnqXSUbsdzOqIeCyBZKeDarXnJ/rg8/PDD4SBsxYoVw0HYiy66yL7//nsX6Ozbt68NHTo0z+W0adMmz5yvDRs2dIHUoHbt2tm4cePcX146derk/uJJv/Hr1imvrJnGHFMnimBdDwDino7gzz//tFNPPdVq1qxprVu3DncbEN2p0siGuvulLgjHHnusOyGjZC8EU0G6lZcuzakr3QLs6VZeUYt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+ "text/plain": [ + "
" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "# Создание двух графиков рядом\n", + "fig, (ax1, ax2) = plt.subplots(1, 2, figsize=(14, 6))\n", + "\n", + "# ============= Левый график: случайные данные =============\n", + "ax1.set_title(\"Поиск в случайных данных\")\n", + "ax1.set_ylabel('Время, с')\n", + "ax1.set_xlabel('Повторения')\n", + "ax1.set_xticks(iterations)\n", + "# ax1.set_xticklabels(range(1, 6))\n", + "\n", + "ax1.scatter(iterations, ll_random_search, label='связный список', color=ll_col)\n", + "ax1.axhline(y=ll_random_search_average, color=ll_col, linewidth=1, linestyle='--', alpha=0.7)\n", + "\n", + "ax1.scatter(iterations, ht_random_search, label='хеш таблица', color=ht_col)\n", + "ax1.axhline(y=ht_random_search_average, color=ht_col, linewidth=1, linestyle='--', alpha=0.7)\n", + "\n", + "ax1.scatter(iterations, bst_random_search, label='дерево', color=bst_col)\n", + "ax1.axhline(y=bst_random_search_average, color=bst_col, linewidth=1, linestyle='--', alpha=0.7)\n", + "\n", + "ax1.legend()\n", + "ax1.grid(True, alpha=0.3)\n", + "\n", + "# ============= Правый график: отсортированные данные =============\n", + "ax2.set_title(\"Поиск в отсортированных данных\")\n", + "ax2.set_ylabel('Время, с')\n", + "ax2.set_xlabel('Повторения')\n", + "ax2.set_xticks(iterations)\n", + "# ax2.set_xticklabels(range(1, 6))\n", + "\n", + "ax2.scatter(iterations, ll_sorted_search, label='связный список', color=ll_col)\n", + "ax2.axhline(y=ll_sorted_search_average, color=ll_col, linewidth=1, linestyle='--', alpha=0.7)\n", + "\n", + "ax2.scatter(iterations, ht_sorted_search, label='хеш таблица', color=ht_col)\n", + "ax2.axhline(y=ht_sorted_search_average, color=ht_col, linewidth=1, linestyle='--', alpha=0.7)\n", + "\n", + "ax2.scatter(iterations, bst_sorted_search, label='дерево', color=bst_col)\n", + "ax2.axhline(y=bst_sorted_search_average, color=bst_col, linewidth=1, linestyle='--', alpha=0.7)\n", + "\n", + "ax2.legend()\n", + "ax2.grid(True, alpha=0.3)\n", + "\n", + "# Общий заголовок\n", + "plt.suptitle(f'Сравнение времени поиска в структурах данных (N = {countRandomSearch} + {countNotExitstSearch})', fontsize=14)\n", + "\n", + "plt.tight_layout()\n", + "plt.savefig('./img/search.pdf', \n", + " format='pdf',\n", + " dpi=300,\n", + " bbox_inches='tight', # обрезает лишние поля\n", + " pad_inches=0.1)\n", + "plt.show()" + ] + }, + { + "cell_type": "code", + "execution_count": 236, + "id": "0fd42f30", + "metadata": {}, + "outputs": [ + { + "data": { + "image/png": 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" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "# Создание двух графиков рядом\n", + "fig, (ax1, ax2) = plt.subplots(1, 2, figsize=(14, 6))\n", + "\n", + "# ============= Левый график: случайные данные =============\n", + "ax1.set_title(\"Удаление в случайных данных\")\n", + "ax1.set_ylabel('Время, с')\n", + "ax1.set_xlabel('Повторения')\n", + "ax1.set_xticks(iterations)\n", + "# ax1.set_xticklabels(range(1, 6))\n", + "\n", + "ax1.scatter(iterations, ll_random_delete, label='связный список', color=ll_col)\n", + "ax1.axhline(y=ll_random_delete_average, color=ll_col, linewidth=1, linestyle='--', alpha=0.7)\n", + "\n", + "ax1.scatter(iterations, ht_random_delete, label='хеш таблица', color=ht_col)\n", + "ax1.axhline(y=ht_random_delete_average, color=ht_col, linewidth=1, linestyle='--', alpha=0.7)\n", + "\n", + "ax1.scatter(iterations, bst_random_delete, label='дерево', color=bst_col)\n", + "ax1.axhline(y=bst_random_delete_average, color=bst_col, linewidth=1, linestyle='--', alpha=0.7)\n", + "\n", + "ax1.legend()\n", + "ax1.grid(True, alpha=0.3)\n", + "\n", + "# ============= Правый график: отсортированные данные =============\n", + "ax2.set_title(\"Удаление в отсортированных данных\")\n", + "ax2.set_ylabel('Время, с')\n", + "ax2.set_xlabel('Повторения')\n", + "ax2.set_xticks(iterations)\n", + "# ax2.set_xticklabels(range(1, 6))\n", + "\n", + "ax2.scatter(iterations, ll_sorted_delete, label='связный список', color=ll_col)\n", + "ax2.axhline(y=ll_sorted_delete_average, color=ll_col, linewidth=1, linestyle='--', alpha=0.7)\n", + "\n", + "ax2.scatter(iterations, ht_sorted_delete, label='хеш таблица', color=ht_col)\n", + "ax2.axhline(y=ht_sorted_delete_average, color=ht_col, linewidth=1, linestyle='--', alpha=0.7)\n", + "\n", + "ax2.scatter(iterations, bst_sorted_delete, label='дерево', color=bst_col)\n", + "ax2.axhline(y=bst_sorted_delete_average, color=bst_col, linewidth=1, linestyle='--', alpha=0.7)\n", + "\n", + "ax2.legend()\n", + "ax2.grid(True, alpha=0.3)\n", + "\n", + "# Общий заголовок\n", + "plt.suptitle(f'Сравнение времени удаления в структурах данных (N = {countDeletes})', fontsize=14)\n", + "\n", + "plt.tight_layout()\n", + "plt.savefig('./img/delete.pdf', \n", + " format='pdf',\n", + " dpi=300,\n", + " bbox_inches='tight', \n", + " pad_inches=0.1)\n", + "plt.show()" + ] + }, + { + "cell_type": "code", + "execution_count": null, + "id": "9eca6493", + "metadata": {}, + "outputs": [], + "source": [] + } + ], + "metadata": { + "kernelspec": { + "display_name": "Python 3", + "language": "python", + "name": "python3" + }, + "language_info": { + "codemirror_mode": { + "name": "ipython", + "version": 3 + }, + "file_extension": ".py", + "mimetype": "text/x-python", + "name": "python", + "nbconvert_exporter": "python", + "pygments_lexer": "ipython3", + "version": "3.13.7" + } + }, + "nbformat": 4, + "nbformat_minor": 5 +} diff --git a/stepushovgs/data-structures/source/pkg/structures/bin_search_tree/bin_search_tree.go b/stepushovgs/data-structures/source/pkg/structures/bin_search_tree/bin_search_tree.go index 2154865..4291039 100644 --- a/stepushovgs/data-structures/source/pkg/structures/bin_search_tree/bin_search_tree.go +++ b/stepushovgs/data-structures/source/pkg/structures/bin_search_tree/bin_search_tree.go @@ -164,6 +164,12 @@ func (root *BSTree) insert(data ds.MyData) *BSTree { return root } +func (bst *BinSearchTree) InsertAll(data []ds.MyData) { + for _, el := range data { + bst.Insert(el) + } +} + // Delete удаляет узел по имени. // Возвращает нового потомка для родительского узла. diff --git a/stepushovgs/data-structures/source/pkg/structures/hash_table/hash_table.go b/stepushovgs/data-structures/source/pkg/structures/hash_table/hash_table.go index 32fed46..129c223 100644 --- a/stepushovgs/data-structures/source/pkg/structures/hash_table/hash_table.go +++ b/stepushovgs/data-structures/source/pkg/structures/hash_table/hash_table.go @@ -90,6 +90,12 @@ func (h *HashTable) Insert(new ds.MyData) { h.size++ } +func (ht *HashTable) InsertAll(data []ds.MyData) { + for _, el := range data { + ht.Insert(el) + } +} + func (h *HashTable) Search(name string) (phone string, status bool) { ind := h.GetIndex(name) diff --git a/stepushovgs/data-structures/source/pkg/structures/linked_list/linked_list.go b/stepushovgs/data-structures/source/pkg/structures/linked_list/linked_list.go index b383414..c2e8bbb 100644 --- a/stepushovgs/data-structures/source/pkg/structures/linked_list/linked_list.go +++ b/stepushovgs/data-structures/source/pkg/structures/linked_list/linked_list.go @@ -80,6 +80,12 @@ func (ll *LinkedList) Insert(data ds.MyData) { current.next = newNode } +func (ll *LinkedList) InsertAll(data []ds.MyData) { + for _, el := range data { + ll.Insert(el) + } +} + func (ll *LinkedList) Search(targetName string) (string, bool) { current := ll.head diff --git a/stepushovgs/data-structures/source/results/benchmarks.csv b/stepushovgs/data-structures/source/results/benchmarks.csv index 3f611b3..1e4bbad 100644 --- a/stepushovgs/data-structures/source/results/benchmarks.csv +++ b/stepushovgs/data-structures/source/results/benchmarks.csv @@ -1,37 +1,199 @@ Structure,Mode,Operation,Time -Связный список,Случайный,Вставка,0.047607 -Связный список,Случайный,Вставка,0.050350 -Связный список,Случайный,Вставка,0.049572 -Связный список,Случайный,Вставка,0.049258 -Связный список,Случайный,Вставка,0.048659 -Связный список,Случайный,Вставка,0.049089 -Связный список,Отсортированный,Вставка,0.047619 -Связный список,Отсортированный,Вставка,0.047478 -Связный список,Отсортированный,Вставка,0.048357 -Связный список,Отсортированный,Вставка,0.048174 -Связный список,Отсортированный,Вставка,0.048270 -Связный список,Отсортированный,Вставка,0.047980 -Хеш таблица,Случайный,Вставка,0.002014 -Хеш таблица,Случайный,Вставка,0.002013 -Хеш таблица,Случайный,Вставка,0.002008 -Хеш таблица,Случайный,Вставка,0.001003 -Хеш таблица,Случайный,Вставка,0.002505 -Хеш таблица,Случайный,Вставка,0.001908 -Хеш таблица,Отсортированный,Вставка,0.001514 -Хеш таблица,Отсортированный,Вставка,0.001504 -Хеш таблица,Отсортированный,Вставка,0.002012 -Хеш таблица,Отсортированный,Вставка,0.001003 -Хеш таблица,Отсортированный,Вставка,0.002506 -Хеш таблица,Отсортированный,Вставка,0.001708 -Бинарное дерево поиска,Случайный,Вставка,0.318901 -Бинарное дерево поиска,Случайный,Вставка,0.320504 -Бинарное дерево поиска,Случайный,Вставка,0.316685 -Бинарное дерево поиска,Случайный,Вставка,0.315862 -Бинарное дерево поиска,Случайный,Вставка,0.320947 -Бинарное дерево поиска,Случайный,Вставка,0.318580 -Бинарное дерево поиска,Отсортированный,Вставка,0.313718 -Бинарное дерево поиска,Отсортированный,Вставка,0.318131 -Бинарное дерево поиска,Отсортированный,Вставка,0.322564 -Бинарное дерево поиска,Отсортированный,Вставка,0.315526 -Бинарное дерево поиска,Отсортированный,Вставка,0.314289 -Бинарное дерево поиска,Отсортированный,Вставка,0.316846 +Связный список,Случайный,Вставка,0.047621 +Связный список,Случайный,Поиск,0.003505 +Связный список,Случайный,Удаление,0.005502 +Связный список,Случайный,Вставка,0.048707 +Связный список,Случайный,Поиск,0.003505 +Связный список,Случайный,Удаление,0.006007 +Связный список,Случайный,Вставка,0.048086 +Связный список,Случайный,Поиск,0.003546 +Связный список,Случайный,Удаление,0.006606 +Связный список,Случайный,Вставка,0.049133 +Связный список,Случайный,Поиск,0.003018 +Связный список,Случайный,Удаление,0.006084 +Связный список,Случайный,Вставка,0.048328 +Связный список,Случайный,Поиск,0.003524 +Связный список,Случайный,Удаление,0.007066 +Связный список,Случайный,Вставка,0.047057 +Связный список,Случайный,Поиск,0.003518 +Связный список,Случайный,Удаление,0.006054 +Связный список,Случайный,Вставка,0.047979 +Связный список,Случайный,Поиск,0.003604 +Связный список,Случайный,Удаление,0.006039 +Связный список,Случайный,Вставка,0.047694 +Связный список,Случайный,Поиск,0.004520 +Связный список,Случайный,Удаление,0.005522 +Связный список,Случайный,Вставка,0.047864 +Связный список,Случайный,Поиск,0.003514 +Связный список,Случайный,Удаление,0.006814 +Связный список,Случайный,Вставка,0.048523 +Связный список,Случайный,Поиск,0.002611 +Связный список,Случайный,Удаление,0.006122 +Связный список,Случайный,Вставка (среднее),0.048099 +Связный список,Случайный,Поиск (среднее),0.003486 +Связный список,Случайный,Удаление (среднее),0.006181 +Связный список,Отсортированный,Вставка,0.046193 +Связный список,Отсортированный,Поиск,0.004520 +Связный список,Отсортированный,Удаление,0.005769 +Связный список,Отсортированный,Вставка,0.048112 +Связный список,Отсортированный,Поиск,0.003001 +Связный список,Отсортированный,Удаление,0.007026 +Связный список,Отсортированный,Вставка,0.047699 +Связный список,Отсортированный,Поиск,0.003503 +Связный список,Отсортированный,Удаление,0.006515 +Связный список,Отсортированный,Вставка,0.047867 +Связный список,Отсортированный,Поиск,0.003509 +Связный список,Отсортированный,Удаление,0.006001 +Связный список,Отсортированный,Вставка,0.047622 +Связный список,Отсортированный,Поиск,0.003001 +Связный список,Отсортированный,Удаление,0.006008 +Связный список,Отсортированный,Вставка,0.047737 +Связный список,Отсортированный,Поиск,0.003546 +Связный список,Отсортированный,Удаление,0.005514 +Связный список,Отсортированный,Вставка,0.048361 +Связный список,Отсортированный,Поиск,0.003012 +Связный список,Отсортированный,Удаление,0.005328 +Связный список,Отсортированный,Вставка,0.049622 +Связный список,Отсортированный,Поиск,0.003510 +Связный список,Отсортированный,Удаление,0.005522 +Связный список,Отсортированный,Вставка,0.048137 +Связный список,Отсортированный,Поиск,0.003518 +Связный список,Отсортированный,Удаление,0.005531 +Связный список,Отсортированный,Вставка,0.048927 +Связный список,Отсортированный,Поиск,0.004004 +Связный список,Отсортированный,Удаление,0.005470 +Связный список,Отсортированный,Вставка (среднее),0.048028 +Связный список,Отсортированный,Поиск (среднее),0.003512 +Связный список,Отсортированный,Удаление (среднее),0.005869 +Хеш таблица,Случайный,Вставка,0.001504 +Хеш таблица,Случайный,Поиск,0.000000 +Хеш таблица,Случайный,Удаление,0.000000 +Хеш таблица,Случайный,Вставка,0.002047 +Хеш таблица,Случайный,Поиск,0.000000 +Хеш таблица,Случайный,Удаление,0.000000 +Хеш таблица,Случайный,Вставка,0.002010 +Хеш таблица,Случайный,Поиск,0.000000 +Хеш таблица,Случайный,Удаление,0.000000 +Хеш таблица,Случайный,Вставка,0.002005 +Хеш таблица,Случайный,Поиск,0.000000 +Хеш таблица,Случайный,Удаление,0.000000 +Хеш таблица,Случайный,Вставка,0.002513 +Хеш таблица,Случайный,Поиск,0.000000 +Хеш таблица,Случайный,Удаление,0.000000 +Хеш таблица,Случайный,Вставка,0.001505 +Хеш таблица,Случайный,Поиск,0.000000 +Хеш таблица,Случайный,Удаление,0.000000 +Хеш таблица,Случайный,Вставка,0.002529 +Хеш таблица,Случайный,Поиск,0.000000 +Хеш таблица,Случайный,Удаление,0.000000 +Хеш таблица,Случайный,Вставка,0.001504 +Хеш таблица,Случайный,Поиск,0.000000 +Хеш таблица,Случайный,Удаление,0.000000 +Хеш таблица,Случайный,Вставка,0.002023 +Хеш таблица,Случайный,Поиск,0.000000 +Хеш таблица,Случайный,Удаление,0.000000 +Хеш таблица,Случайный,Вставка,0.002429 +Хеш таблица,Случайный,Поиск,0.000000 +Хеш таблица,Случайный,Удаление,0.000000 +Хеш таблица,Случайный,Вставка (среднее),0.002007 +Хеш таблица,Случайный,Поиск (среднее),0.000000 +Хеш таблица,Случайный,Удаление (среднее),0.000000 +Хеш таблица,Отсортированный,Вставка,0.002005 +Хеш таблица,Отсортированный,Поиск,0.000000 +Хеш таблица,Отсортированный,Удаление,0.000000 +Хеш таблица,Отсортированный,Вставка,0.001282 +Хеш таблица,Отсортированный,Поиск,0.000000 +Хеш таблица,Отсортированный,Удаление,0.001504 +Хеш таблица,Отсортированный,Вставка,0.001015 +Хеш таблица,Отсортированный,Поиск,0.000000 +Хеш таблица,Отсортированный,Удаление,0.000000 +Хеш таблица,Отсортированный,Вставка,0.002016 +Хеш таблица,Отсортированный,Поиск,0.000000 +Хеш таблица,Отсортированный,Удаление,0.000000 +Хеш таблица,Отсортированный,Вставка,0.001505 +Хеш таблица,Отсортированный,Поиск,0.000000 +Хеш таблица,Отсортированный,Удаление,0.000000 +Хеш таблица,Отсортированный,Вставка,0.002016 +Хеш таблица,Отсортированный,Поиск,0.000502 +Хеш таблица,Отсортированный,Удаление,0.000000 +Хеш таблица,Отсортированный,Вставка,0.002009 +Хеш таблица,Отсортированный,Поиск,0.000000 +Хеш таблица,Отсортированный,Удаление,0.000000 +Хеш таблица,Отсортированный,Вставка,0.001068 +Хеш таблица,Отсортированный,Поиск,0.000000 +Хеш таблица,Отсортированный,Удаление,0.000000 +Хеш таблица,Отсортированный,Вставка,0.002516 +Хеш таблица,Отсортированный,Поиск,0.000000 +Хеш таблица,Отсортированный,Удаление,0.000000 +Хеш таблица,Отсортированный,Вставка,0.002505 +Хеш таблица,Отсортированный,Поиск,0.000000 +Хеш таблица,Отсортированный,Удаление,0.000000 +Хеш таблица,Отсортированный,Вставка (среднее),0.001794 +Хеш таблица,Отсортированный,Поиск (среднее),0.000050 +Хеш таблица,Отсортированный,Удаление (среднее),0.000150 +Бинарное дерево поиска,Случайный,Вставка,0.304277 +Бинарное дерево поиска,Случайный,Поиск,0.007550 +Бинарное дерево поиска,Случайный,Удаление,0.013564 +Бинарное дерево поиска,Случайный,Вставка,0.297918 +Бинарное дерево поиска,Случайный,Поиск,0.007167 +Бинарное дерево поиска,Случайный,Удаление,0.014539 +Бинарное дерево поиска,Случайный,Вставка,0.300777 +Бинарное дерево поиска,Случайный,Поиск,0.008009 +Бинарное дерево поиска,Случайный,Удаление,0.015144 +Бинарное дерево поиска,Случайный,Вставка,0.307342 +Бинарное дерево поиска,Случайный,Поиск,0.008307 +Бинарное дерево поиска,Случайный,Удаление,0.013577 +Бинарное дерево поиска,Случайный,Вставка,0.301149 +Бинарное дерево поиска,Случайный,Поиск,0.007792 +Бинарное дерево поиска,Случайный,Удаление,0.012897 +Бинарное дерево поиска,Случайный,Вставка,0.304480 +Бинарное дерево поиска,Случайный,Поиск,0.006521 +Бинарное дерево поиска,Случайный,Удаление,0.014053 +Бинарное дерево поиска,Случайный,Вставка,0.299029 +Бинарное дерево поиска,Случайный,Поиск,0.007552 +Бинарное дерево поиска,Случайный,Удаление,0.013073 +Бинарное дерево поиска,Случайный,Вставка,0.304265 +Бинарное дерево поиска,Случайный,Поиск,0.006518 +Бинарное дерево поиска,Случайный,Удаление,0.014555 +Бинарное дерево поиска,Случайный,Вставка,0.297193 +Бинарное дерево поиска,Случайный,Поиск,0.007529 +Бинарное дерево поиска,Случайный,Удаление,0.014092 +Бинарное дерево поиска,Случайный,Вставка,0.300190 +Бинарное дерево поиска,Случайный,Поиск,0.006525 +Бинарное дерево поиска,Случайный,Удаление,0.014096 +Бинарное дерево поиска,Случайный,Вставка (среднее),0.301662 +Бинарное дерево поиска,Случайный,Поиск (среднее),0.007347 +Бинарное дерево поиска,Случайный,Удаление (среднее),0.013959 +Бинарное дерево поиска,Отсортированный,Вставка,0.317393 +Бинарное дерево поиска,Отсортированный,Поиск,0.007554 +Бинарное дерево поиска,Отсортированный,Удаление,0.013053 +Бинарное дерево поиска,Отсортированный,Вставка,0.301527 +Бинарное дерево поиска,Отсортированный,Поиск,0.006503 +Бинарное дерево поиска,Отсортированный,Удаление,0.014265 +Бинарное дерево поиска,Отсортированный,Вставка,0.300625 +Бинарное дерево поиска,Отсортированный,Поиск,0.008043 +Бинарное дерево поиска,Отсортированный,Удаление,0.013068 +Бинарное дерево поиска,Отсортированный,Вставка,0.303297 +Бинарное дерево поиска,Отсортированный,Поиск,0.007039 +Бинарное дерево поиска,Отсортированный,Удаление,0.013601 +Бинарное дерево поиска,Отсортированный,Вставка,0.300072 +Бинарное дерево поиска,Отсортированный,Поиск,0.008539 +Бинарное дерево поиска,Отсортированный,Удаление,0.013535 +Бинарное дерево поиска,Отсортированный,Вставка,0.298420 +Бинарное дерево поиска,Отсортированный,Поиск,0.007256 +Бинарное дерево поиска,Отсортированный,Удаление,0.013550 +Бинарное дерево поиска,Отсортированный,Вставка,0.298652 +Бинарное дерево поиска,Отсортированный,Поиск,0.008040 +Бинарное дерево поиска,Отсортированный,Удаление,0.013532 +Бинарное дерево поиска,Отсортированный,Вставка,0.299859 +Бинарное дерево поиска,Отсортированный,Поиск,0.007577 +Бинарное дерево поиска,Отсортированный,Удаление,0.013575 +Бинарное дерево поиска,Отсортированный,Вставка,0.307201 +Бинарное дерево поиска,Отсортированный,Поиск,0.008025 +Бинарное дерево поиска,Отсортированный,Удаление,0.014125 +Бинарное дерево поиска,Отсортированный,Вставка,0.304290 +Бинарное дерево поиска,Отсортированный,Поиск,0.007040 +Бинарное дерево поиска,Отсортированный,Удаление,0.013611 +Бинарное дерево поиска,Отсортированный,Вставка (среднее),0.303134 +Бинарное дерево поиска,Отсортированный,Поиск (среднее),0.007562 +Бинарное дерево поиска,Отсортированный,Удаление (среднее),0.013591 diff --git a/stepushovgs/data-structures/source/tests/benchmark/main.go b/stepushovgs/data-structures/source/tests/benchmark/main.go index 3cd60da..36bbd71 100644 --- a/stepushovgs/data-structures/source/tests/benchmark/main.go +++ b/stepushovgs/data-structures/source/tests/benchmark/main.go @@ -17,22 +17,23 @@ import ( const ( countUsers = 10_000 - countRepeat = 5 - countRandomSearch = 100 - countNotExitstSearch = 10 - countDeletes = 50 + countRepeat = 10 + countRandomSearch = 200 + countNotExitstSearch = 100 + countDeletes = 500 ) type TestData struct { Items []ds.MyData // все записи ItemsSorted []ds.MyData // все записи отсортированные - Existing []ds.MyData // для поиска (существующие) - NonExisting []ds.MyData // для поиска (несуществующие) + Search []ds.MyData // для поиска (существующие и несуществующие) ToDelete []ds.MyData // для удаления + UniqueItems []ds.MyData // Уникальные элементы для тестов } type DataStructure interface { Insert(data ds.MyData) + InsertAll(data []ds.MyData) Search(name string) (string, bool) Delete(name string) bool Len() int @@ -97,17 +98,35 @@ func GenerateTestData() TestData { // fmt.Println(randInd) } + for _, el := range notExisting { + existing = append(existing, el) + } + + // toDelete = make([]ds.MyData, countDeletes) + usedIndices := make(map[int]bool) + for i := 0; i < countDeletes; i++ { + var randInd int + for { + randInd = rand.Intn(countUniq) + if !usedIndices[randInd] { + usedIndices[randInd] = true + break + } + } + toDelete[i] = uniqueItems[randInd] + } + return TestData{ Items: items, ItemsSorted: itemsSort, - Existing: existing, - NonExisting: notExisting, + Search: existing, ToDelete: toDelete, + UniqueItems: uniqueItems, } } // Тест вставки массива данных (один раз) -func testOneInsert(structure DataStructure, data []ds.MyData) float64 { +func testOnesInsert(structure DataStructure, data []ds.MyData) float64 { start := time.Now() for _, item := range data { @@ -117,63 +136,121 @@ func testOneInsert(structure DataStructure, data []ds.MyData) float64 { return time.Since(start).Seconds() } -func TestInsert(factory StructureFactory, data []ds.MyData, nameStruct, mode string) { - BenchRes := make([]csvwriter.BenchmarkResult, 0) +// Тест поиска массива данных (один раз) +func testOnesSearch(structure DataStructure, data []ds.MyData) float64 { + start := time.Now() - allTestTime := time.Now() - averageTime := 0. + for _, item := range data { + structure.Search(item.Name) + // p, ok := structure.Search(item.Name) + // fmt.Println(p, item.Phone, ok) + } - // Тест Слчайной вставки + return time.Since(start).Seconds() +} - for i := 0; i < countRepeat; i++ { - head := factory() +// Тест удаления массива данных (один раз) +func testOnesDelete(structure DataStructure, data []ds.MyData) float64 { + start := time.Now() - resTime := testOneInsert(head, data) + for _, item := range data { + structure.Delete(item.Name) + } + + return time.Since(start).Seconds() +} + +func testForData(nameStruct, mode string, factory StructureFactory, data_insert, data_search, data_delete []ds.MyData) { + BenchRes := make([]csvwriter.BenchmarkResult, 0, countRepeat*3+3) // Массив строк отчёта + + averageTimeInsert := 0. + averageTimeSearch := 0. + averageTimeDelete := 0. + + for iteration := 0; iteration < countRepeat; iteration++ { + + structure := factory() + + insertTime := testOnesInsert(structure, data_insert) + averageTimeInsert += insertTime - averageTime += resTime BenchRes = append(BenchRes, csvwriter.BenchmarkResult{ Structure: nameStruct, Mode: mode, Operation: "Вставка", - Time: resTime, + Time: insertTime, }) - fmt.Printf("%s | Вставка | %s | Время: %f\n", nameStruct, mode, resTime) - // fmt.Println(BenchRes) + + searchTime := testOnesSearch(structure, data_search) + averageTimeSearch += searchTime + + BenchRes = append(BenchRes, csvwriter.BenchmarkResult{ + Structure: nameStruct, + Mode: mode, + Operation: "Поиск", + Time: searchTime, + }) + + deleteTime := testOnesDelete(structure, data_delete) + averageTimeDelete += deleteTime + + BenchRes = append(BenchRes, csvwriter.BenchmarkResult{ + Structure: nameStruct, + Mode: mode, + Operation: "Удаление", + Time: deleteTime, + }) + fmt.Printf("%s | Вставка | %s | Время: %f\n", nameStruct, mode, insertTime) + fmt.Printf("%s | Поиск | %s | Время: %f\n", nameStruct, mode, searchTime) + fmt.Printf("%s | Удаление | %s | Время: %.9f\n", nameStruct, mode, deleteTime) } - averageTime = time.Since(allTestTime).Seconds() / countRepeat + averageTimeInsert /= countRepeat + averageTimeSearch /= countRepeat + averageTimeDelete /= countRepeat BenchRes = append(BenchRes, csvwriter.BenchmarkResult{ Structure: nameStruct, Mode: mode, - Operation: "Вставка", - Time: averageTime, + Operation: "Вставка (среднее)", + Time: averageTimeInsert, }) + BenchRes = append(BenchRes, csvwriter.BenchmarkResult{ + Structure: nameStruct, + Mode: mode, + Operation: "Поиск (среднее)", + Time: averageTimeSearch, + }) + BenchRes = append(BenchRes, csvwriter.BenchmarkResult{ + Structure: nameStruct, + Mode: mode, + Operation: "Удаление (среднее)", + Time: averageTimeDelete, + }) + + fmt.Printf("%s | Вставка | %s | Время (среднее): %f\n", nameStruct, mode, averageTimeInsert) + fmt.Printf("%s | Поиск | %s | Время (среднее): %f\n", nameStruct, mode, averageTimeSearch) + fmt.Printf("%s | Удаление | %s | Время (среднее): %f\n", nameStruct, mode, averageTimeDelete) csvwriter.AppendRaw(BenchRes) } -func Test(nameStruct string, factory StructureFactory, data TestData) { +func Test(nameStruct string, factory StructureFactory) { + data := GenerateTestData() - // BenchRes := make([]csvwriter.BenchmarkResult, 0) + testForData(nameStruct, "Случайный", factory, data.Items, data.Search, data.ToDelete) - // allTestTime := time.Now() - TestInsert(factory, data.Items, nameStruct, "Случайный") - TestInsert(factory, data.ItemsSorted, nameStruct, "Отсортированный") + testForData(nameStruct, "Отсортированный", factory, data.ItemsSorted, data.Search, data.ToDelete) } func main() { - testData := GenerateTestData() - csvwriter.CreateEmptyCSV("results", "benchmarks.csv") - // head_ll := &ll.LinkedList{} - // head_ht := ht.NewHashTable(256, 0.75) - // head_bst := bst.NewBinSearchTree() + csvwriter.CreateEmptyCSV("results", "benchmarks.csv") fmt.Println("============= Начало тестов =============") - Test("Связный список", NewLinkedList, testData) - Test("Хеш таблица", NewHashTable, testData) - Test("Бинарное дерево поиска", NewBinSearchTree, testData) + Test("Связный список", NewLinkedList) + Test("Хеш таблица", NewHashTable) + Test("Бинарное дерево поиска", NewBinSearchTree) }