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{
"cells": [
{
"cell_type": "code",
"execution_count": 1,
"metadata": {},
"outputs": [],
"source": [
"import dask.array as dsa\n",
"import dask\n",
"import numpy as np\n",
"from matplotlib import pyplot as plt\n",
"%matplotlib inline"
]
},
{
"cell_type": "code",
"execution_count": 2,
"metadata": {},
"outputs": [],
"source": [
"def naive_rechunk(nt, nx, ct=1, cx=-1, nt_final=-1):\n",
" \"\"\"Generate random 3D input data and rechunk along the time dimension.\n",
" \n",
" Parameters\n",
" ----------\n",
" nt : int, number of timesteps\n",
" nx : int, size of spatial dimension\n",
" ct : int, chunking of temporal dimension\n",
" default (1) means one chunk per timestep\n",
" cx : int, intial spatial chunk size\n",
" default (-1) means contiguous\n",
" nt_final : int, desired final chunk size\n",
" default (-1) means contiguous\n",
" \n",
" Returns\n",
" -------\n",
" a0 : dask.Array\n",
" The original data\n",
" a1 : dask.Array\n",
" The rechunked data\n",
" \"\"\"\n",
" shape0 = nt, nx, nx\n",
" chunks0 = ct, cx, cx\n",
" a0 = dsa.random.random(shape0, chunks=chunks0)\n",
" \n",
" if nt_final == -1:\n",
" nt_final = nt\n",
" spatial_fac = nt_final**0.5\n",
" cx_new = nx // spatial_fac \n",
" \n",
" chunks1 = (nt_final, cx_new, cx_new)\n",
" a1 = a0.rechunk(chunks1)\n",
" \n",
" return a0, a1"
]
},
{
"cell_type": "code",
"execution_count": 3,
"metadata": {},
"outputs": [
{
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},
"execution_count": 3,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"nt = 4\n",
"nx = 4000\n",
"\n",
"a0, a1 = naive_rechunk(nt, nx)\n",
"display(a0)\n",
"display(a1)\n",
"a1.visualize()"
]
},
{
"cell_type": "code",
"execution_count": 4,
"metadata": {},
"outputs": [
{
"data": {
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"metadata": {},
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"\n",
" <!-- Vertical lines -->\n",
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"\n",
" <!-- Colored Rectangle -->\n",
" <polygon points=\"80.588235,70.588235 197.775735,70.588235 197.775735,187.775735 80.588235,187.775735\" style=\"fill:#ECB172A0;stroke-width:0\"/>\n",
"\n",
" <!-- Text -->\n",
" <text x=\"139.181985\" y=\"207.775735\" font-size=\"1.0rem\" font-weight=\"100\" text-anchor=\"middle\" >4000</text>\n",
" <text x=\"217.775735\" y=\"129.181985\" font-size=\"1.0rem\" font-weight=\"100\" text-anchor=\"middle\" transform=\"rotate(-90,217.775735,129.181985)\">4000</text>\n",
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"</svg>\n",
"</td>\n",
"</tr>\n",
"</table>"
],
"text/plain": [
"dask.array<rechunk-merge, shape=(4096, 4000, 4000), dtype=float64, chunksize=(4096, 62, 62), chunktype=numpy.ndarray>"
]
},
"metadata": {},
"output_type": "display_data"
},
{
"name": "stdout",
"output_type": "stream",
"text": [
"nt=4096, ntasks=258983\n"
]
}
],
"source": [
"nts = 2**np.arange(2, 13, 2)\n",
"ntasks_vs_nt = []\n",
"for nt in nts:\n",
" a0, a1 = naive_rechunk(nt, nx, 1, nx)\n",
" ntasks = len(a1.dask)\n",
" display(a1)\n",
" print(f'nt={nt}, ntasks={ntasks}')\n",
" ntasks_vs_nt.append(ntasks)"
]
},
{
"cell_type": "code",
"execution_count": 5,
"metadata": {},
"outputs": [
{
"data": {
"text/plain": [
"<matplotlib.legend.Legend at 0x7f5e8c2856a0>"
]
},
"execution_count": 5,
"metadata": {},
"output_type": "execute_result"
},
{
"data": {
"image/png": 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\n",
"text/plain": [
"<Figure size 432x288 with 1 Axes>"
]
},
"metadata": {
"needs_background": "light"
},
"output_type": "display_data"
}
],
"source": [
"plt.loglog(nts, ntasks_vs_nt, 'o-')\n",
"plt.loglog(nts, ntasks_vs_nt[0]*nts/nts[0], '--', color='0.5', label='linear')\n",
"plt.grid()\n",
"plt.xlabel('Num. Timesteps')\n",
"plt.ylabel('Num. Tasks')\n",
"plt.legend()"
]
},
{
"cell_type": "code",
"execution_count": 6,
"metadata": {},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"1.3029921729787994\n"
]
}
],
"source": [
"scale_fac, _ = np.polyfit(np.log(nts), np.log(ntasks_vs_nt), 1)\n",
"print(scale_fac)"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"### Compare Two Target Chunk Shapes"
]
},
{
"cell_type": "code",
"execution_count": 7,
"metadata": {},
"outputs": [
{
"data": {
"text/html": [
"<table>\n",
"<tr>\n",
"<td>\n",
"<table>\n",
" <thead>\n",
" <tr><td> </td><th> Array </th><th> Chunk </th></tr>\n",
" </thead>\n",
" <tbody>\n",
" <tr><th> Bytes </th><td> 65.54 GB </td> <td> 126.88 MB </td></tr>\n",
" <tr><th> Shape </th><td> (512, 4000, 4000) </td> <td> (512, 176, 176) </td></tr>\n",
" <tr><th> Count </th><td> 21913 Tasks </td><td> 529 Chunks </td></tr>\n",
" <tr><th> Type </th><td> float64 </td><td> numpy.ndarray </td></tr>\n",
" </tbody>\n",
"</table>\n",
"</td>\n",
"<td>\n",
"<svg width=\"203\" height=\"193\" style=\"stroke:rgb(0,0,0);stroke-width:1\" >\n",
"\n",
" <!-- Horizontal lines -->\n",
" <line x1=\"10\" y1=\"0\" x2=\"33\" y2=\"23\" style=\"stroke-width:2\" />\n",
" <line x1=\"10\" y1=\"5\" x2=\"33\" y2=\"28\" />\n",
" <line x1=\"10\" y1=\"10\" x2=\"33\" y2=\"34\" />\n",
" <line x1=\"10\" y1=\"15\" x2=\"33\" y2=\"39\" />\n",
" <line x1=\"10\" y1=\"21\" x2=\"33\" y2=\"44\" />\n",
" <line x1=\"10\" y1=\"26\" x2=\"33\" y2=\"49\" />\n",
" <line x1=\"10\" y1=\"31\" x2=\"33\" y2=\"55\" />\n",
" <line x1=\"10\" y1=\"36\" x2=\"33\" y2=\"60\" />\n",
" <line x1=\"10\" y1=\"42\" x2=\"33\" y2=\"65\" />\n",
" <line x1=\"10\" y1=\"47\" x2=\"33\" y2=\"71\" />\n",
" <line x1=\"10\" y1=\"52\" x2=\"33\" y2=\"76\" />\n",
" <line x1=\"10\" y1=\"58\" x2=\"33\" y2=\"81\" />\n",
" <line x1=\"10\" y1=\"63\" x2=\"33\" y2=\"86\" />\n",
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],
"source": [
"nt = 512\n",
"a0, a1 = naive_rechunk(nt, nx)\n",
"display(a1)"
]
},
{
"cell_type": "code",
"execution_count": 8,
"metadata": {},
"outputs": [
{
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},
"metadata": {},
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}
],
"source": [
"a0, a1 = naive_rechunk(nt, nx, nt_final=128)\n",
"display(a1)"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"### Do Some Actual Computations\n",
"\n",
"And record performance report"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": [
"from dask.distributed import Client\n",
"from dask_kubernetes import KubeCluster\n",
"\n",
"cluster = KubeCluster(n_workers=20)\n",
"cluster"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": [
"client = Client(cluster)\n",
"client"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": [
"class DevNullStore:\n",
" \n",
" def __init__(self):\n",
" pass\n",
" \n",
" def __setitem__(*args, **kwargs):\n",
" pass\n",
" \n",
"null_store = DevNullStore()"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": [
"from dask.distributed import performance_report"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": [
"nt = 512\n",
"a0, a1 = naive_rechunk(nt, nx, 1, nx)\n",
"display(a1)\n",
"\n",
"with performance_report(filename=\"dask-perf-report-nt512.html\"):\n",
" dsa.store(a1, null_store, lock=False, compute=True)"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": []
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": []
},
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"cell_type": "code",
"execution_count": null,
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"source": []
}
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