implemented a naive
approach to stacking analysis via StackedUpperLimitView
This commit is contained in:
17
GeVgal.csv
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17
GeVgal.csv
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@@ -0,0 +1,17 @@
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Name,l,b,Dist Mpc,log(M/M⊙)
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NGC0628,138.617,-45.705,10.19,10.128 ± 0.136
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NGC0660,141.607,-47.347,11.57,10.098 ± 0.331
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NGC1291,247.524,-57.042,9.08,10.707 ± 0.136
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NGC1433,255.691,-51.195,9.04,10.070 ± 0.201
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NGC1512,248.668,-48.166,11.63,10.172 ± 0.160
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NGC1532,233.168,-46.584,14.26,10.528 ± 0.600
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NGC2903,208.710,44.540,8.87,10.404 ± 0.136
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NGC3368,234.435,57.010,10.42,10.523 ± 0.136
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NGC3877,150.719,65.956,14.63,10.096 ± 0.476
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NGC4192,265.434,74.960,12.68,10.371 ± 0.136
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NGC4666,299.538,62.368,14.70,10.298 ± 0.136
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NGC4818,305.212,54.323,11.04,10.008 ± 0.530
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NGC5248,335.929,68.751,13.75,10.264 ± 0.606
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NGC7331,93.722,-20.724,12.62,10.724 ± 0.327
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NGC7814,106.410,-45.175,14.40,10.520 ± 0.136
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PGC032861,245.103,55.513,14.45,12.827 ± 0.502
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170
stack_request_test.ipynb
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170
stack_request_test.ipynb
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@@ -0,0 +1,170 @@
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{
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"cells": [
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{
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"cell_type": "code",
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"execution_count": 1,
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"id": "4cffd6c5",
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"metadata": {},
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"outputs": [
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{
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"name": "stdout",
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"output_type": "stream",
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"text": [
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"RA List: [np.float64(24.1741435187182), np.float64(25.759787769012984), np.float64(49.32806570275772), np.float64(55.50613654382996), np.float64(60.97590646798826), np.float64(63.018113741788355), np.float64(143.0416839498853), np.float64(161.69014062163393), np.float64(176.53216723085026), np.float64(183.45178780664702), np.float64(191.28607761407375), np.float64(194.20387680952962), np.float64(204.38304472867193), np.float64(339.2669893687885), np.float64(0.8130105246497964), np.float64(164.03825008738184)]\n",
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"Dec List: [np.float64(15.783869592105441), np.float64(13.645005280982105), np.float64(-41.10817408896737), np.float64(-47.22221653992977), np.float64(-43.34878852480052), np.float64(-32.87392378612486), np.float64(21.501827494459036), np.float64(11.819887017791151), np.float64(47.49512808371984), np.float64(14.900261322222237), np.float64(-0.4622668171007003), np.float64(-8.524938659400307), np.float64(8.885499320910338), np.float64(34.4157929700228), np.float64(16.14532447253357), np.float64(6.1729868291531)]\n"
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]
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}
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],
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"source": [
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"import csv\n",
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"from astropy.coordinates import SkyCoord\n",
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"import astropy.units as u\n",
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"\n",
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"# Initialize empty lists for RA and Dec\n",
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"ra_list = []\n",
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"dec_list = []\n",
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"\n",
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"# Define the path to your CSV file\n",
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"csv_file_path = \"GeVgal.csv\"\n",
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"\n",
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"# Open and read the CSV file\n",
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"with open(csv_file_path, 'r') as csvfile:\n",
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" # Use csv.reader to handle the file, skipping the header row\n",
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" csv_reader = csv.reader(csvfile)\n",
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" next(csv_reader) # Skip the header row\n",
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"\n",
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" # Loop through each row in the CSV\n",
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" for row in csv_reader:\n",
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" try:\n",
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" # Extract l and b, which are in the second and third columns (index 1 and 2)\n",
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" l = float(row[1])\n",
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" b = float(row[2])\n",
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"\n",
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" # Create a SkyCoord object with galactic coordinates\n",
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" galactic_coord = SkyCoord(l=l*u.degree, b=b*u.degree, frame='galactic')\n",
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"\n",
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" # Convert to ICRS (equatorial) coordinates\n",
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" icrs_coord = galactic_coord.icrs\n",
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"\n",
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" # Append the RA and Dec values to the lists\n",
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" ra_list.append(icrs_coord.ra.deg)\n",
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" dec_list.append(icrs_coord.dec.deg)\n",
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"\n",
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" except (ValueError, IndexError) as e:\n",
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" # Handle potential errors if a row is malformed\n",
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" print(f\"Skipping a malformed row: {row} - Error: {e}\")\n",
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"\n",
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"# Now, ra_list and dec_list contain the converted coordinates\n",
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"print(\"RA List:\", ra_list)\n",
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"print(\"Dec List:\", dec_list)"
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]
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},
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{
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"cell_type": "code",
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"execution_count": null,
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"id": "ff1d339a",
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"metadata": {},
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"outputs": [
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{
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"name": "stdout",
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"output_type": "stream",
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"text": [
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"Request successful!\n",
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"{\n",
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" \"Status\": 0,\n",
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" \"ErrorMessage\": \"\",\n",
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" \"ClassicUpperLimit\": 36.99647944311798,\n",
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" \"ClassicLowerLimit\": 0.0,\n",
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" \"ClassicOneSideUL\": 33.54440898622437,\n",
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" \"ClassicCountRateUpperLimit\": 0.022452965897451615,\n",
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" \"ClassicCountRateLowerLimit\": 0.0,\n",
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" \"ClassicCountRateOneSideUL\": 0.020357922763323065,\n",
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" \"ClassicFluxUpperLimit\": 7.504496105362505e-13,\n",
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" \"ClassicFluxLowerLimit\": 0.0,\n",
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" \"ClassicFluxOneSideUL\": 6.804265983763352e-13,\n",
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" \"BayesianUpperLimit\": 33.83295926177776,\n",
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" \"BayesianLowerLimit\": 0.10792639479099073,\n",
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" \"BayesianOneSideUL\": 33.727107645421896,\n",
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" \"BayesianCountRateUpperLimit\": 0.020533042385357955,\n",
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" \"BayesianCountRateLowerLimit\": 6.549995291856849e-05,\n",
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" \"BayesianCountRateOneSideUL\": 0.020468801604397097,\n",
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" \"BayesianFluxUpperLimit\": 6.862796537256179e-13,\n",
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" \"BayesianFluxLowerLimit\": 2.189216978388652e-15,\n",
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" \"BayesianFluxOneSideUL\": 6.841325222832595e-13,\n",
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" \"FluxEstimate\": 3.2382519031831067e-13,\n",
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" \"ApertureCounts\": 94,\n",
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" \"ApertureBackgroundCounts\": 78.03571428571428,\n",
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" \"SourceCounts\": 15.964285714285722,\n",
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" \"Exposure\": 2057.325295693534,\n",
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" \"SourceRate\": 0.009688639787230046,\n",
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" \"BackgroundRate\": 0.03793066388142964,\n",
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" \"NormalizedBackgroundRate\": 1.6914547063541448e-05,\n",
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" \"Contamination\": false,\n",
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" \"CountMap\": {\n",
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" \"healpix\": [],\n",
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" \"counts\": [],\n",
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" \"exposure\": [],\n",
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" \"nside\": 4096,\n",
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" \"order\": \"ring\",\n",
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" \"radius_as\": 0.0\n",
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" }\n",
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"}\n"
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]
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}
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],
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"source": [
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"import requests\n",
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"import json\n",
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"\n",
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"# Define the URL of your Django API endpoint\n",
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"url = \"http://localhost:8000/api/stacked-upper-limit/\"\n",
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"\n",
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"payload = {\n",
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" \"ra\": ra_list, # List of RA values\n",
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" \"dec\": dec_list, # List of Dec values\n",
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" \"cl\": 0.95, # A numeric confidence level\n",
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" \"survey\": \"1-4\", # A string for the survey parameter\n",
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" \"mr\": 0 # A numeric value for map_radius\n",
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"}\n",
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"\n",
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"try:\n",
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" # Send the PUT request with the JSON payload\n",
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" response = requests.put(url, json=payload)\n",
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"\n",
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" # Check the response status code\n",
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" response.raise_for_status() # This will raise an HTTPError for bad responses (4xx or 5xx)\n",
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"\n",
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" # Print the JSON response from the server\n",
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" print(\"Request successful!\")\n",
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" print(json.dumps(response.json(), indent=4))\n",
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"\n",
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"except requests.exceptions.HTTPError as err:\n",
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" print(f\"HTTP Error: {err}\")\n",
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" print(f\"Response body: {err.response.text}\")\n",
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"except requests.exceptions.RequestException as err:\n",
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" print(f\"An error occurred: {err}\")"
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]
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}
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],
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"metadata": {
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"kernelspec": {
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"display_name": ".venv-pypy",
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"language": "python",
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"name": "python3"
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},
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"language_info": {
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"codemirror_mode": {
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"name": "ipython",
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"version": 3
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},
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"file_extension": ".py",
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"mimetype": "text/x-python",
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"name": "python",
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"nbconvert_exporter": "python",
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"pygments_lexer": "ipython3",
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"version": "3.11.11"
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}
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},
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"nbformat": 4,
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"nbformat_minor": 5
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}
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11
urls.py
11
urls.py
@@ -1,10 +1,19 @@
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# uplim/urls.py
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from django.urls import path
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from .views import PixelAggregateView, UpperLimitView # , PixelDetailView
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from .views import (
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PixelAggregateView,
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UpperLimitView,
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StackedUpperLimitView,
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) # , PixelDetailView
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urlpatterns = [
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# path('pixel/<int:hpid>/', PixelDetailView.as_view(), name='pixel-detail'),
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path("pixel-aggregate/", PixelAggregateView.as_view(), name="pixel-aggregate"),
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path("upper-limit/", UpperLimitView.as_view(), name="upper-limit"),
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path(
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"stacked-upper-limit/",
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StackedUpperLimitView.as_view(),
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name="stacked-upper-limit",
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),
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]
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506
views.py
506
views.py
@@ -24,6 +24,7 @@ from django.db.models import (
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Value,
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)
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from django.db.models.functions import Cast
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from django.db.models import Q
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from django.shortcuts import get_object_or_404
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from rest_framework.views import APIView
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from rest_framework.response import Response
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@@ -147,7 +148,7 @@ class UpperLimitView(APIView):
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confidence_level = float(request.query_params.get("cl"))
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except (TypeError, ValueError):
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return Response(
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{"error": "Invalud parameters, provide RA, DEC, and CL"},
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{"error": "Invalid parameters, provide RA, DEC, and CL"},
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status=status.HTTP_400_BAD_REQUEST,
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)
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# pull & parse survey selection
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@@ -262,7 +263,7 @@ class UpperLimitView(APIView):
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# create and populate a list of average exposures per survey
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survey_averages = []
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for survey_id, exposures in t_by_survey.items():
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for _, exposures in t_by_survey.items():
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average_exposure = sum(exposures) / len(exposures)
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survey_averages.append(average_exposure)
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@@ -367,7 +368,7 @@ class UpperLimitView(APIView):
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error_message = str(e)
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N = Nnpix = Bcounts = Bnpix = B = t = S = CR = BR = 0.0
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N = Nnpix = Bcounts = Bnpix = B = t = S = CR = BR = NBR = 0.0
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Flux = 0.0
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classic_count_ul = classic_count_ll = classic_count_UL = 0.0
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classic_rate_ul = classic_rate_ll = classic_rate_UL = 0.0
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@@ -460,39 +461,15 @@ class UpperLimitView(APIView):
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.order_by("hpid")
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)
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# map_pixels_qs = (
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# Pixel.objects.filter(hpid__in=map_pixel_list, survey__in=survey_numbers)
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# .values("hpid")
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# .annotate(
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# total_counts=Sum("counts"),
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# max_contaminated_int=Max(Cast("contaminated", IntegerField())),
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# )
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# .annotate(
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# contaminated=Case(
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# When(max_contaminated_int=1, then=Value(True)),
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# default=Value(False),
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# output_field=BooleanField(),
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# )
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# )
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# .order_by("hpid")
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# )
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# turn the queryset to a list
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map_pixels_list = list(map_pixels_qs)
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# get lists of healpix indices and count values
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map_healpix_list = [d["hpid"] for d in map_pixels_list]
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map_counts_list = [d["counts"] for d in map_pixels_list]
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map_exposure_list = [d["exposure"] for d in map_pixels_list]
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# map_contaminated_list = [d["contaminated"] for d in map_pixels_list]
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# cont_dict = dict(
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# Pixel.objects.filter(hpid__in=map_healpix_list, survey__in=survey_numbers)
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# .values_list("hpid", "contaminated")
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# .distinct()
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# )
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# map_contaminated_list = [cont_dict[h] for h in map_healpix_list]
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# set map nside
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map_nside = 4096
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@@ -503,6 +480,7 @@ class UpperLimitView(APIView):
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map_dict = {
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"healpix": map_healpix_list,
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"counts": map_counts_list,
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"exposure": map_exposure_list,
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# "contaminated": map_contaminated_list,
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"nside": map_nside,
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"order": map_order,
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@@ -558,3 +536,475 @@ class UpperLimitView(APIView):
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clean = sanitize(result) # calling sanitize() to convert NaN to null
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return Response(clean, status=status.HTTP_200_OK)
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class StackedUpperLimitView(APIView):
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"""
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Calculate confidence bounds based on aperture photometry using classic and bayesian methods for a set of sources
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"""
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def put(self, request):
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data = request.data
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try:
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ra_list = data.get("ra", [])
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dec_list = data.get("dec", [])
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confidence_level = data.get("cl")
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if not isinstance(ra_list, list) or not all(
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isinstance(x, (float, int)) for x in ra_list
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):
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raise TypeError
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if not isinstance(dec_list, list) or not all(
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isinstance(x, (float, int)) for x in dec_list
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):
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raise TypeError
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if not isinstance(confidence_level, (float, int)):
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raise TypeError
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except TypeError:
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return Response(
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{
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"error": "Invalid parameters, provide 'ra', 'dec' lists of numbers, and a numeric 'cl'"
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},
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status=status.HTTP_400_BAD_REQUEST,
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)
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raw_survey = data.get("survey")
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if raw_survey is None:
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return Response(
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{"error": "Missing required `survey` parameter"},
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status=status.HTTP_400_BAD_REQUEST,
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)
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try:
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survey_numbers = parse_survey_param(raw_survey)
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except ValueError:
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return Response(
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{"error": "Malformed `survey`; use formats like 1, 2-5, or 1,3-4"},
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status=status.HTTP_400_BAD_REQUEST,
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)
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map_radius_value = data.get("mr")
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# DEFINE APERTURE AND ANNULUS RADII
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# **************************************************************
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aperture_radius = 71 # radius of the aperture in arc seconds
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# HPD ~48 arcseconds
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# 90% ~100 arcseconds
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annulus_inner = 213 # 3 * aperture_radius
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annulus_outer = 355 # 5 * aperture_radius
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# CREATE SKYCOORD, CONVERT TO GALACTIC BECAUSE THE HEALPIX
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# MAP ITSELF WAS MADE IN GALACTIC COORDINATES
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# **************************************************************
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# a list of skycoords
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src_coord_list = SkyCoord(ra_list, dec_list, unit="deg", frame="icrs")
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gal_list = src_coord_list.galactic
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# and then vectors
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src_vec_list = hp.ang2vec(gal_list.l.deg, gal_list.b.deg, lonlat=True)
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# FETCH PIXEL DATA DEFINED VIA HP.QUERY_DISC (INCLUSIVE=FALSE)
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# **************************************************************
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# first init pixel lists
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source_pixel_dict, inner_pixel_dict, outer_pixel_dict = {}, {}, {}
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# then loop over vectors appending indices to lists
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for index, src_vec in enumerate(src_vec_list):
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source_pixel_dict[index] = hp.query_disc(
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nside=4096,
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vec=src_vec,
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inclusive=False,
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nest=False,
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radius=(aperture_radius * u.arcsecond).to(u.radian).value,
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)
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inner_pixel_dict[index] = hp.query_disc(
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nside=4096,
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vec=src_vec,
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inclusive=False,
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nest=False,
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radius=(annulus_inner * u.arcsecond).to(u.radian).value,
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)
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||||
outer_pixel_dict[index] = hp.query_disc(
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||||
nside=4096,
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||||
vec=src_vec,
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||||
inclusive=False,
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||||
nest=False,
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||||
radius=(annulus_outer * u.arcsecond).to(u.radian).value,
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||||
)
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# flatten dicts into lists for most of math
|
||||
|
||||
outer_pixel_list = [
|
||||
item for sublist in outer_pixel_dict.values() for item in sublist
|
||||
]
|
||||
|
||||
inner_pixel_list = [
|
||||
item for sublist in inner_pixel_dict.values() for item in sublist
|
||||
]
|
||||
|
||||
source_pixel_list = [
|
||||
item for sublist in source_pixel_dict.values() for item in sublist
|
||||
]
|
||||
|
||||
# proceed as is
|
||||
annulus_pixel_list = [
|
||||
item for item in outer_pixel_list if item not in inner_pixel_list
|
||||
]
|
||||
|
||||
source_pixels = Pixel.objects.filter(
|
||||
hpid__in=source_pixel_list, survey__in=survey_numbers
|
||||
)
|
||||
|
||||
annulus_pixels = Pixel.objects.filter(
|
||||
hpid__in=annulus_pixel_list, survey__in=survey_numbers
|
||||
)
|
||||
|
||||
# check contamination
|
||||
contamination = (
|
||||
source_pixels.filter(contaminated=True).exists()
|
||||
or annulus_pixels.filter(contaminated=True).exists()
|
||||
)
|
||||
|
||||
# exclude contaminated pixels from the background and source regions
|
||||
annulus_pixels = annulus_pixels.exclude(contaminated=True)
|
||||
# source_pixels = source_pixels.exclude(contaminated=True)
|
||||
|
||||
status_int = 0
|
||||
error_message = ""
|
||||
|
||||
if not source_pixels.exists() or not annulus_pixels.exists():
|
||||
status_int = 1 # status 1 if there are no source or bg pixels
|
||||
|
||||
# COMPUTE COUNTS, BACKGROUND ESTIMATE, EXPOSURE
|
||||
# **************************************************************
|
||||
try:
|
||||
# summing counts across all surveys
|
||||
N = sum(obj.counts for obj in source_pixels)
|
||||
|
||||
Nnpix = len(source_pixels)
|
||||
|
||||
Bcounts = sum(obj.counts for obj in annulus_pixels)
|
||||
|
||||
Bnpix = len(annulus_pixels)
|
||||
|
||||
B = Bcounts / Bnpix * Nnpix
|
||||
|
||||
t = 0
|
||||
|
||||
for source_pixel_sublist in source_pixel_dict.values():
|
||||
|
||||
source_pixels = Pixel.objects.filter(
|
||||
hpid__in=source_pixel_sublist, survey__in=survey_numbers
|
||||
)
|
||||
|
||||
# create a dict of exposures keyed by survey
|
||||
t_by_survey = defaultdict(list)
|
||||
|
||||
for pixel in source_pixels:
|
||||
t_by_survey[pixel.survey].append(pixel.exposure)
|
||||
|
||||
# create and populate a list of average exposures per survey
|
||||
survey_averages = []
|
||||
|
||||
for _, exposures in t_by_survey.items():
|
||||
average_exposure = sum(exposures) / len(exposures)
|
||||
survey_averages.append(average_exposure)
|
||||
|
||||
# sum them up across surveys
|
||||
t += sum(survey_averages)
|
||||
|
||||
# CONSTANTS
|
||||
# **************************************************************
|
||||
|
||||
# EEF = .9 # eclosed energy fraction, .5 for hpd, .9 for w90
|
||||
# ECF = 4e-11 # energy conversion factor
|
||||
|
||||
EEF = 0.80091 # use values from the paper
|
||||
ECF = 3.3423184e-11
|
||||
|
||||
# BAYESIAN IMPLEMENTATION VIA POISSON_CONF_INTERVAL
|
||||
# **************************************************************
|
||||
|
||||
# double sided interval
|
||||
low, high = poisson_conf_interval(
|
||||
n=N,
|
||||
background=B,
|
||||
interval="kraft-burrows-nousek",
|
||||
confidence_level=confidence_level,
|
||||
)
|
||||
|
||||
# because poisson_conf_interval returns lists
|
||||
bayesian_count_ul = high[0]
|
||||
bayesian_count_ll = low[0]
|
||||
|
||||
# compute upper limit
|
||||
bayesian_count_UL = (
|
||||
sp.gammaincinv(
|
||||
N + 1,
|
||||
confidence_level * sp.gammaincc(N + 1, B) + sp.gammainc(N + 1, B),
|
||||
)
|
||||
- B
|
||||
)
|
||||
|
||||
bayesian_rate_ul = bayesian_count_ul / t / EEF # count rate limits
|
||||
bayesian_rate_ll = bayesian_count_ll / t / EEF
|
||||
bayesian_rate_UL = bayesian_count_UL / t / EEF
|
||||
|
||||
bayesian_flux_ul = bayesian_rate_ul * ECF # flux limits
|
||||
bayesian_flux_ll = bayesian_rate_ll * ECF
|
||||
bayesian_flux_UL = bayesian_rate_UL * ECF
|
||||
|
||||
# CLASSICAL IMPLEMENTATION VIA GAMMAINCCINV
|
||||
# ****************************************************************
|
||||
|
||||
# confidence level for the double sided interval
|
||||
cl2 = (1 + confidence_level) / 2
|
||||
# double sided interval
|
||||
classic_count_ul = sp.gammainccinv(N + 1, 1 - cl2) - B
|
||||
classic_count_ll = sp.gammainccinv(N, cl2) - B
|
||||
# one sided interval
|
||||
classic_count_UL = sp.gammainccinv(N + 1, 1 - confidence_level) - B
|
||||
|
||||
if not np.isfinite(classic_count_ll) or classic_count_ll < 0:
|
||||
classic_count_ll = 0.0
|
||||
|
||||
classic_rate_ul = classic_count_ul / t / EEF # count rate limits
|
||||
classic_rate_ll = classic_count_ll / t / EEF
|
||||
classic_rate_UL = classic_count_UL / t / EEF
|
||||
|
||||
classic_flux_ul = classic_rate_ul * ECF # flux limits
|
||||
classic_flux_ll = classic_rate_ll * ECF
|
||||
classic_flux_UL = classic_rate_UL * ECF
|
||||
|
||||
# FLUX ESTIMATION
|
||||
# ****************************************************************
|
||||
|
||||
S = N - B # counts as simply counts within aperture
|
||||
# with the background estimate subtracted
|
||||
|
||||
CR = S / t / EEF # source count rate
|
||||
|
||||
BR = B / t # background rate within aperture
|
||||
|
||||
FL = CR * ECF # conversion to flux
|
||||
|
||||
Flux = max(FL, 0) # flux cannot be lower than zero
|
||||
|
||||
# NORMALIZED BACKGROUND RATE
|
||||
# ****************************************************************
|
||||
# in units of ct/s/keV/arcmin^2
|
||||
|
||||
sr_to_arcmin2 = (180 / np.pi * 60) ** 2
|
||||
|
||||
pix_area = (
|
||||
hp.nside2pixarea(nside=4096) * sr_to_arcmin2
|
||||
) # nside2pixarea yields area in sr
|
||||
|
||||
bg_area = pix_area * Bnpix # get total bg region area
|
||||
|
||||
en_range = 12 - 4
|
||||
|
||||
NBR = Bcounts / t / en_range / bg_area
|
||||
|
||||
# handle exceptions: write error text to the response
|
||||
# zero out all math results
|
||||
except Exception as e:
|
||||
|
||||
error_message = str(e)
|
||||
|
||||
N = Nnpix = Bcounts = Bnpix = B = t = S = CR = BR = 0.0
|
||||
Flux = 0.0
|
||||
classic_count_ul = classic_count_ll = classic_count_UL = 0.0
|
||||
classic_rate_ul = classic_rate_ll = classic_rate_UL = 0.0
|
||||
classic_flux_ul = classic_flux_ll = classic_flux_UL = 0.0
|
||||
bayesian_count_ul = bayesian_count_ll = bayesian_count_UL = 0.0
|
||||
bayesian_rate_ul = bayesian_rate_ll = bayesian_rate_UL = 0.0
|
||||
bayesian_flux_ul = bayesian_flux_ll = bayesian_flux_UL = 0.0
|
||||
|
||||
# NEARBY SOURCES CHECK
|
||||
# ****************************************************************
|
||||
# disabled for now, many-to-many separation computation is expensive
|
||||
# if map_radius == 0:
|
||||
# radius_as = 5 * aperture_radius
|
||||
# else:
|
||||
# radius_as = map_radius * 2
|
||||
|
||||
# radius_deg = 3 # radius_as / 3600
|
||||
|
||||
# # dec_min_list = max(dec_list - radius_deg, -90)
|
||||
# # dec_max_list = min(dec_list + radius_deg, 90)
|
||||
|
||||
# dec_min_list = [max(d - radius_deg, -90) for d in dec_list]
|
||||
# dec_max_list = [min(d + radius_deg, 90) for d in dec_list]
|
||||
|
||||
# # cheap belt query
|
||||
# # belt_sources = CatalogSource.objects.filter(
|
||||
# # dec_deg__gte=dec_min, dec_deg__lte=dec_max
|
||||
# # )
|
||||
|
||||
# query = Q()
|
||||
|
||||
# for dec_min, dec_max in zip(dec_min_list, dec_max_list):
|
||||
# query |= Q(dec_deg__gte=dec_min, dec_deg__lte=dec_max)
|
||||
|
||||
# belt_list_sources = CatalogSource.objects.filter(query)
|
||||
|
||||
# center_coord = SkyCoord(ra_list, dec_list, unit="deg")
|
||||
|
||||
# nearby_sources = []
|
||||
|
||||
# radius_map = {0: 0.06, 125: 0.15, 250: 0.5, 2000: 0.9, 20000: 2.5}
|
||||
|
||||
# sorted_bounds = sorted(radius_map.keys())
|
||||
|
||||
# # refine belt to circular region using astropy separation
|
||||
# for catsrc in belt_list_sources:
|
||||
# catsrc_coord = SkyCoord(catsrc.ra_deg, catsrc.dec_deg, unit="deg")
|
||||
# separation = center_coord.separation(catsrc_coord)
|
||||
# if separation.deg > radius_deg:
|
||||
# continue
|
||||
# f = catsrc.flux or 0.0
|
||||
# for lb in reversed(sorted_bounds):
|
||||
# if f >= lb:
|
||||
# mask_radius = radius_map[lb] * 3600
|
||||
# break
|
||||
|
||||
# nearby_sources.append(
|
||||
# {
|
||||
# "srcid": catsrc.srcid,
|
||||
# "name": catsrc.name,
|
||||
# "ra_deg": catsrc.ra_deg,
|
||||
# "dec_deg": catsrc.dec_deg,
|
||||
# "pos_error": catsrc.pos_error,
|
||||
# "significance": catsrc.significance,
|
||||
# "flux": catsrc.flux,
|
||||
# "flux_error": catsrc.flux_error,
|
||||
# "catalog_name": catsrc.catalog_name,
|
||||
# "new_xray": catsrc.new_xray,
|
||||
# "source_type": catsrc.source_type,
|
||||
# "mask_radius_as": mask_radius,
|
||||
# "separation_as": separation.arcsecond,
|
||||
# }
|
||||
# )
|
||||
# nearby_sources.sort(key=lambda src: src["separation_as"])
|
||||
|
||||
# REGION IMAGE SERVING
|
||||
# ****************************************************************
|
||||
#
|
||||
# default value if not specified in the query
|
||||
# get hpids within a circle of radius sqrt(2) * outer annulus radius
|
||||
if map_radius_value is None:
|
||||
map_radius = annulus_outer * np.sqrt(2)
|
||||
else:
|
||||
map_radius = float(map_radius_value)
|
||||
|
||||
# iterate over source vectors, making maps
|
||||
|
||||
# Create a single list to hold all Healpix IDs
|
||||
all_map_pixels = []
|
||||
|
||||
# Iterate over source vectors and get all unique Healpix IDs
|
||||
for index, src_vec in enumerate(src_vec_list):
|
||||
pixels = hp.query_disc(
|
||||
nside=4096,
|
||||
vec=src_vec,
|
||||
inclusive=False,
|
||||
nest=False,
|
||||
radius=(map_radius * u.arcsecond).to(u.radian).value,
|
||||
)
|
||||
all_map_pixels.extend(pixels)
|
||||
|
||||
# Get only unique Healpix IDs
|
||||
unique_map_pixels = list(set(all_map_pixels))
|
||||
|
||||
# Perform a single database query for all unique pixels
|
||||
map_pixels_qs = (
|
||||
Pixel.objects.filter(hpid__in=unique_map_pixels, survey__in=survey_numbers)
|
||||
.values("hpid")
|
||||
.annotate(counts=Sum("counts"), exposure=Sum("exposure"))
|
||||
.order_by("hpid")
|
||||
)
|
||||
|
||||
# turn the queryset to a list
|
||||
map_pixels_list = list(map_pixels_qs)
|
||||
|
||||
# get lists of healpix indices and count values
|
||||
map_healpix_list = [d["hpid"] for d in map_pixels_list]
|
||||
map_counts_list = [d["counts"] for d in map_pixels_list]
|
||||
map_exposure_list = [d["exposure"] for d in map_pixels_list]
|
||||
# map_contaminated_list = [d["contaminated"] for d in map_pixels_list]
|
||||
|
||||
# set map nside
|
||||
map_nside = 4096
|
||||
|
||||
# set map order
|
||||
map_order = "ring"
|
||||
|
||||
# assemble the result dict
|
||||
map_dict = {
|
||||
"healpix": map_healpix_list,
|
||||
"counts": map_counts_list,
|
||||
"exposure": map_exposure_list,
|
||||
# "contaminated": map_contaminated_list,
|
||||
"nside": map_nside,
|
||||
"order": map_order,
|
||||
"radius_as": map_radius,
|
||||
}
|
||||
|
||||
# RESULT JSON
|
||||
# ****************************************************************
|
||||
|
||||
result = {
|
||||
"Status": status_int,
|
||||
# 0 OK
|
||||
# 1 either source or bg pixels missing
|
||||
"ErrorMessage": error_message,
|
||||
# frequentist limits
|
||||
"ClassicUpperLimit": classic_count_ul,
|
||||
"ClassicLowerLimit": classic_count_ll,
|
||||
"ClassicOneSideUL": classic_count_UL,
|
||||
"ClassicCountRateUpperLimit": classic_rate_ul,
|
||||
"ClassicCountRateLowerLimit": classic_rate_ll,
|
||||
"ClassicCountRateOneSideUL": classic_rate_UL,
|
||||
"ClassicFluxUpperLimit": classic_flux_ul,
|
||||
"ClassicFluxLowerLimit": classic_flux_ll,
|
||||
"ClassicFluxOneSideUL": classic_flux_UL,
|
||||
# bayesian limits
|
||||
"BayesianUpperLimit": bayesian_count_ul,
|
||||
"BayesianLowerLimit": bayesian_count_ll,
|
||||
"BayesianOneSideUL": bayesian_count_UL,
|
||||
"BayesianCountRateUpperLimit": bayesian_rate_ul,
|
||||
"BayesianCountRateLowerLimit": bayesian_rate_ll,
|
||||
"BayesianCountRateOneSideUL": bayesian_rate_UL,
|
||||
"BayesianFluxUpperLimit": bayesian_flux_ul,
|
||||
"BayesianFluxLowerLimit": bayesian_flux_ll,
|
||||
"BayesianFluxOneSideUL": bayesian_flux_UL,
|
||||
# flux 'center value' estimate
|
||||
"FluxEstimate": Flux,
|
||||
# raw data
|
||||
"ApertureCounts": N,
|
||||
"ApertureBackgroundCounts": B,
|
||||
"SourceCounts": S,
|
||||
"Exposure": t,
|
||||
# count rates
|
||||
"SourceRate": CR,
|
||||
"BackgroundRate": BR,
|
||||
"NormalizedBackgroundRate": NBR, # ct/s/keV/arcmin2
|
||||
# contamination
|
||||
"Contamination": contamination,
|
||||
# "NearbySources": nearby_sources,
|
||||
# count map for the frontend image
|
||||
"CountMap": map_dict,
|
||||
}
|
||||
|
||||
clean = sanitize(result) # calling sanitize() to convert NaN to null
|
||||
|
||||
return Response(clean, status=status.HTTP_200_OK)
|
||||
|
Reference in New Issue
Block a user