Merge remote-tracking branch 'origin/gramic'
This commit is contained in:
		
						commit
						6ff940dbfe
					
				
							
								
								
									
										17
									
								
								README.md
									
									
									
									
									
								
							
							
						
						
									
										17
									
								
								README.md
									
									
									
									
									
								
							@ -18,4 +18,19 @@ Für die folgenden Aufträge dürfen Sie je nach Vorkenntnisse beliebige Tools (
 | 
			
		||||
## Problems
 | 
			
		||||
- Garmin Weekly Algorithmus unknown.
 | 
			
		||||
  Reverse Engineering necessery
 | 
			
		||||
- Comparison between Garmin (Instict Solar 2X) and Withings (Steel HR Sport) not necessarely given
 | 
			
		||||
- Comparition between Garmin (Instict Solar 2X) and Withings (Steel HR Sport) not necessarely given
 | 
			
		||||
 | 
			
		||||
## Python Depencencis
 | 
			
		||||
-
 | 
			
		||||
 | 
			
		||||
```shell
 | 
			
		||||
pip install --upgrade pip
 | 
			
		||||
pip install matplotlib
 | 
			
		||||
pip install pandas
 | 
			
		||||
pip install pybtex
 | 
			
		||||
pip install requests
 | 
			
		||||
pip install pyyaml
 | 
			
		||||
pip install setuptools
 | 
			
		||||
pip install bs4
 | 
			
		||||
pip install requests
 | 
			
		||||
```
 | 
			
		||||
 | 
			
		||||
							
								
								
									
										53
									
								
								data/raw/Schlaf.csv
									
									
									
									
									
										Normal file
									
								
							
							
						
						
									
										53
									
								
								data/raw/Schlaf.csv
									
									
									
									
									
										Normal file
									
								
							@ -0,0 +1,53 @@
 | 
			
		||||
Datum,Ø Score,Ø Qualität,Durchschnittliche Dauer,Ø Schlafenszeit,Ø Aufstehzeit
 | 
			
		||||
Okt 11-17,45,Schlecht,5h 59min,1:40,7:50
 | 
			
		||||
Okt 4-10,52,Schlecht,6h 38min,0:29,7:25
 | 
			
		||||
Sep 27 - Okt 3,53,Schlecht,6h 5min,0:14,6:31
 | 
			
		||||
Sep 20-26,60,Ausreichend,7h 5min,0:12,7:23
 | 
			
		||||
Sep 13-19,61,Ausreichend,6h 27min,0:44,7:18
 | 
			
		||||
Sep 6-12,53,Schlecht,6h 8min,1:08,7:22
 | 
			
		||||
Aug 30 - Sep 5,66,Ausreichend,6h 59min,0:11,7:19
 | 
			
		||||
Aug 23-29,61,Ausreichend,6h 39min,0:35,7:19
 | 
			
		||||
Aug 16-22,67,Ausreichend,6h 25min,0:41,7:17
 | 
			
		||||
Aug 9-15,57,Schlecht,5h 43min,0:17,6:04
 | 
			
		||||
Aug 2-8,61,Ausreichend,6h 30min,0:31,7:24
 | 
			
		||||
Jul 26 - Aug 1,62,Ausreichend,6h 55min,0:31,7:48
 | 
			
		||||
Jul 19-25,55,Schlecht,7h 0min,2:35,10:14
 | 
			
		||||
Jul 12-18,72,Ausreichend,6h 48min,0:03,7:05
 | 
			
		||||
Jul 5-11,58,Schlecht,7h 42min,0:32,8:57
 | 
			
		||||
Jun 28 - Jul 4,66,Ausreichend,6h 26min,1:24,7:57
 | 
			
		||||
Jun 21-27,65,Ausreichend,6h 25min,0:39,7:17
 | 
			
		||||
Jun 14-20,59,Schlecht,5h 43min,0:24,6:14
 | 
			
		||||
Jun 7-13,61,Ausreichend,6h 34min,23:47,6:26
 | 
			
		||||
Mai 31 - Jun 6,61,Ausreichend,6h 47min,0:35,7:33
 | 
			
		||||
Mai 24-30,52,Schlecht,6h 33min,1:00,7:38
 | 
			
		||||
Mai 17-23,51,Schlecht,6h 11min,1:12,7:30
 | 
			
		||||
Mai 10-16,48,Schlecht,5h 44min,0:48,6:39
 | 
			
		||||
Mai 3-9,45,Schlecht,5h 55min,0:49,6:48
 | 
			
		||||
Apr 26 - Mai 2,56,Schlecht,6h 11min,1:26,7:41
 | 
			
		||||
Apr 19-25,51,Schlecht,6h 19min,2:55,9:31
 | 
			
		||||
Apr 12-18,57,Schlecht,6h 24min,1:28,8:03
 | 
			
		||||
Apr 5-11,62,Ausreichend,6h 4min,0:56,7:09
 | 
			
		||||
Mrz 29 - Apr 4,73,Ausreichend,6h 59min,1:34,8:53
 | 
			
		||||
Mrz 22-28,59,Schlecht,5h 59min,1:05,7:11
 | 
			
		||||
Mrz 15-21,55,Schlecht,6h 25min,0:47,7:23
 | 
			
		||||
Mrz 8-14,53,Schlecht,6h 22min,0:56,7:25
 | 
			
		||||
Mrz 1-7,47,Schlecht,5h 56min,0:51,6:56
 | 
			
		||||
Feb 23-29,64,Ausreichend,7h 11min,0:09,7:27
 | 
			
		||||
Feb 16-22,46,Schlecht,6h 56min,0:24,7:52
 | 
			
		||||
Feb 9-15,50,Schlecht,8h 26min,23:58,8:48
 | 
			
		||||
Feb 2-8,43,Schlecht,6h 13min,1:06,7:26
 | 
			
		||||
Jan 26 - Feb 1,55,Schlecht,7h 17min,1:12,8:32
 | 
			
		||||
Jan 19-25,55,Schlecht,6h 33min,0:59,7:37
 | 
			
		||||
Jan 12-18,49,Schlecht,6h 16min,1:39,8:04
 | 
			
		||||
Jan 5-11,54,Schlecht,6h 35min,1:28,8:14
 | 
			
		||||
Dez 29, 2023 - Jan 4, 2024,55,Schlecht,7h 15min,0:52,8:34
 | 
			
		||||
Dez 22-28, 2023,56,Schlecht,7h 10min,1:02,8:33
 | 
			
		||||
Dez 15-21, 2023,61,Ausreichend,7h 40min,0:18,8:18
 | 
			
		||||
Dez 8-14, 2023,43,Schlecht,7h 45min,23:45,8:52
 | 
			
		||||
Dez 1-7, 2023,47,Schlecht,6h 51min,0:31,7:25
 | 
			
		||||
Nov 24-30, 2023,48,Schlecht,7h 5min,0:29,8:01
 | 
			
		||||
Nov 17-23, 2023,53,Schlecht,7h 1min,0:26,7:34
 | 
			
		||||
Nov 10-16, 2023,47,Schlecht,7h 5min,0:19,7:28
 | 
			
		||||
Nov 3-9, 2023,49,Schlecht,6h 10min,23:58,7:12
 | 
			
		||||
Okt 27 - Nov 2, 2023,61,Ausreichend,6h 33min,0:08,6:50
 | 
			
		||||
Okt 20-26, 2023,47,Schlecht,6h 11min,0:41,7:14
 | 
			
		||||
| 
		
		
			 Can't render this file because it has a wrong number of fields in line 43. 
		
	 | 
							
								
								
									
										53
									
								
								data/raw/hr_gramic.csv
									
									
									
									
									
										Normal file
									
								
							
							
						
						
									
										53
									
								
								data/raw/hr_gramic.csv
									
									
									
									
									
										Normal file
									
								
							@ -0,0 +1,53 @@
 | 
			
		||||
Datum;In Ruhe;Hoch
 | 
			
		||||
Okt 4-10;67 bpm;130 bpm
 | 
			
		||||
Sep 27 - Okt 3;67 bpm;143 bpm
 | 
			
		||||
Sep 20-26;66 bpm;149 bpm
 | 
			
		||||
Sep 13-19;66 bpm;144 bpm
 | 
			
		||||
Sep 6-12;62 bpm;132 bpm
 | 
			
		||||
Aug 30 - Sep 5;64 bpm;141 bpm
 | 
			
		||||
Aug 23-29;67 bpm;150 bpm
 | 
			
		||||
Aug 16-22;63 bpm;143 bpm
 | 
			
		||||
Aug 9-15;69 bpm;141 bpm
 | 
			
		||||
Aug 2-8;67 bpm;140 bpm
 | 
			
		||||
Jul 26 - Aug 1;67 bpm;147 bpm
 | 
			
		||||
Jul 19-25;69 bpm;136 bpm
 | 
			
		||||
Jul 12-18;66 bpm;151 bpm
 | 
			
		||||
Jul 5-11;67 bpm;146 bpm
 | 
			
		||||
Jun 28 - Jul 4;66 bpm;157 bpm
 | 
			
		||||
Jun 21-27;64 bpm;141 bpm
 | 
			
		||||
Jun 14-20;70 bpm;145 bpm
 | 
			
		||||
Jun 7-13;69 bpm;134 bpm
 | 
			
		||||
Mai 31 - Jun 6;70 bpm;139 bpm
 | 
			
		||||
Mai 24-30;72 bpm;142 bpm
 | 
			
		||||
Mai 17-23;72 bpm;135 bpm
 | 
			
		||||
Mai 10-16;71 bpm;147 bpm
 | 
			
		||||
Mai 3-9;73 bpm;142 bpm
 | 
			
		||||
Apr 26 - Mai 2;69 bpm;151 bpm
 | 
			
		||||
Apr 19-25;61 bpm;135 bpm
 | 
			
		||||
Apr 12-18;58 bpm;140 bpm
 | 
			
		||||
Apr 5-11;64 bpm;131 bpm
 | 
			
		||||
Mrz 29 - Apr 4;63 bpm;139 bpm
 | 
			
		||||
Mrz 22-28;65 bpm;135 bpm
 | 
			
		||||
Mrz 15-21;66 bpm;137 bpm
 | 
			
		||||
Mrz 8-14;62 bpm;136 bpm
 | 
			
		||||
Mrz 1-7;70 bpm;134 bpm
 | 
			
		||||
Feb 23-29;68 bpm;144 bpm
 | 
			
		||||
Feb 16-22;71 bpm;132 bpm
 | 
			
		||||
Feb 9-15;65 bpm;143 bpm
 | 
			
		||||
Feb 2-8;66 bpm;133 bpm
 | 
			
		||||
Jan 26 - Feb 1;59 bpm;142 bpm
 | 
			
		||||
Jan 19-25;62 bpm;136 bpm
 | 
			
		||||
Jan 12-18;60 bpm;134 bpm
 | 
			
		||||
Jan 5-11;56 bpm;139 bpm
 | 
			
		||||
Dez 29, 2023 - Jan 4, 2024;59 bpm;128 bpm
 | 
			
		||||
Dez 22-28, 2023;52 bpm;124 bpm
 | 
			
		||||
Dez 15-21, 2023;57 bpm;133 bpm
 | 
			
		||||
Dez 8-14, 2023;65 bpm;133 bpm
 | 
			
		||||
Dez 1-7, 2023;69 bpm;134 bpm
 | 
			
		||||
Nov 24-30, 2023;68 bpm;139 bpm
 | 
			
		||||
Nov 17-23, 2023;68 bpm;143 bpm
 | 
			
		||||
Nov 10-16, 2023;64 bpm;144 bpm
 | 
			
		||||
Nov 3-9, 2023;63 bpm;140 bpm
 | 
			
		||||
Okt 27 - Nov 2, 2023;57 bpm;133 bpm
 | 
			
		||||
Okt 20-26, 2023;55 bpm;138 bpm
 | 
			
		||||
Okt 13-19, 2023;50 bpm;121 bpm
 | 
			
		||||
		
		
			
  | 
							
								
								
									
										53
									
								
								data/raw/sleep_gramic.csv
									
									
									
									
									
										Normal file
									
								
							
							
						
						
									
										53
									
								
								data/raw/sleep_gramic.csv
									
									
									
									
									
										Normal file
									
								
							@ -0,0 +1,53 @@
 | 
			
		||||
Datum,Ø Score,Ø Qualität,Durchschnittliche Dauer,Ø Schlafenszeit,Ø Aufstehzeit
 | 
			
		||||
Okt 10-16,46,Schlecht,6h 11min,1:28,7:50
 | 
			
		||||
Okt 3-9,56,Schlecht,6h 34min,0:33,7:22
 | 
			
		||||
Sep 26 - Okt 2,52,Schlecht,6h 23min,0:00,6:37
 | 
			
		||||
Sep 19-25,59,Schlecht,6h 41min,0:27,7:16
 | 
			
		||||
Sep 12-18,59,Schlecht,6h 18min,0:48,7:12
 | 
			
		||||
Sep 5-11,55,Schlecht,6h 19min,0:56,7:22
 | 
			
		||||
Aug 29 - Sep 4,66,Ausreichend,7h 1min,0:21,7:31
 | 
			
		||||
Aug 22-28,57,Schlecht,6h 17min,0:35,6:59
 | 
			
		||||
Aug 15-21,72,Ausreichend,6h 36min,0:38,7:25
 | 
			
		||||
Aug 8-14,56,Schlecht,5h 45min,0:16,6:06
 | 
			
		||||
Aug 1-7,64,Ausreichend,7h 4min,0:39,8:10
 | 
			
		||||
Jul 25-31,61,Ausreichend,6h 52min,0:40,7:56
 | 
			
		||||
Jul 18-24,54,Schlecht,6h 26min,2:16,9:19
 | 
			
		||||
Jul 11-17,74,Ausreichend,7h 10min,0:06,7:26
 | 
			
		||||
Jul 4-10,58,Schlecht,7h 35min,0:45,9:05
 | 
			
		||||
Jun 27 - Jul 3,60,Ausreichend,6h 8min,1:22,7:42
 | 
			
		||||
Jun 20-26,69,Ausreichend,6h 30min,0:19,6:58
 | 
			
		||||
Jun 13-19,59,Schlecht,6h 1min,0:25,6:33
 | 
			
		||||
Jun 6-12,60,Ausreichend,6h 22min,0:02,6:30
 | 
			
		||||
Mai 30 - Jun 5,60,Ausreichend,6h 33min,0:34,7:15
 | 
			
		||||
Mai 23-29,51,Schlecht,6h 47min,0:56,7:54
 | 
			
		||||
Mai 16-22,50,Schlecht,5h 51min,1:13,7:08
 | 
			
		||||
Mai 9-15,55,Schlecht,6h 21min,0:58,7:23
 | 
			
		||||
Mai 2-8,40,Schlecht,5h 36min,0:39,6:19
 | 
			
		||||
Apr 25 - Mai 1,55,Schlecht,6h 2min,1:18,7:26
 | 
			
		||||
Apr 18-24,56,Schlecht,6h 28min,3:11,9:55
 | 
			
		||||
Apr 11-17,56,Schlecht,6h 17min,1:23,7:51
 | 
			
		||||
Apr 4-10,62,Ausreichend,6h 18min,0:39,7:10
 | 
			
		||||
Mrz 28 - Apr 3,68,Ausreichend,6h 50min,1:45,8:51
 | 
			
		||||
Mrz 21-27,60,Ausreichend,6h 9min,0:56,7:13
 | 
			
		||||
Mrz 14-20,54,Schlecht,6h 11min,1:03,7:24
 | 
			
		||||
Mrz 7-13,54,Schlecht,6h 22min,0:49,7:17
 | 
			
		||||
Feb 29 - Mrz 6,50,Schlecht,6h 4min,0:56,7:09
 | 
			
		||||
Feb 22-28,61,Ausreichend,7h 11min,0:08,7:25
 | 
			
		||||
Feb 15-21,44,Schlecht,6h 58min,0:19,7:51
 | 
			
		||||
Feb 8-14,50,Schlecht,8h 17min,0:09,8:47
 | 
			
		||||
Feb 1-7,43,Schlecht,6h 12min,1:06,7:25
 | 
			
		||||
Jan 25-31,57,Schlecht,7h 21min,1:17,8:40
 | 
			
		||||
Jan 18-24,51,Schlecht,6h 25min,0:56,7:26
 | 
			
		||||
Jan 11-17,50,Schlecht,6h 27min,1:36,8:12
 | 
			
		||||
Jan 4-10,59,Schlecht,6h 44min,1:26,8:24
 | 
			
		||||
Dez 28, 2023 - Jan 3, 2024,54,Schlecht,7h 2min
 | 
			
		||||
Dez 21-27, 2023,55,Schlecht,7h 16min,0:38
 | 
			
		||||
Dez 14-20, 2023,56,Schlecht,7h 17min,0:31
 | 
			
		||||
Dez 7-13, 2023,44,Schlecht,7h 53min,23:46
 | 
			
		||||
Nov 30 - Dez 6, 2023,48,Schlecht,6h 51min,0:33
 | 
			
		||||
Nov 23-29, 2023,48,Schlecht,7h 11min,0:21
 | 
			
		||||
Nov 16-22, 2023,53,Schlecht,7h 7min,0:23
 | 
			
		||||
Nov 9-15, 2023,47,Schlecht,7h 5min,0:19
 | 
			
		||||
Nov 2-8, 2023,50,Schlecht,6h 2min,0:00
 | 
			
		||||
Okt 26 - Nov 1, 2023,59,Schlecht,6h 39min,0:14
 | 
			
		||||
Okt 19-25, 2023,48,Schlecht,6h 17min,0:46
 | 
			
		||||
		
		
			
  | 
							
								
								
									
										52
									
								
								data/sandbox/combined_data.csv
									
									
									
									
									
										Normal file
									
								
							
							
						
						
									
										52
									
								
								data/sandbox/combined_data.csv
									
									
									
									
									
										Normal file
									
								
							@ -0,0 +1,52 @@
 | 
			
		||||
Woche,avg_hr,Durchschnittliche Dauer
 | 
			
		||||
W40-2024,98.5,6.566666666666666
 | 
			
		||||
W39-2024,105.0,6.383333333333334
 | 
			
		||||
W38-2024,107.5,6.683333333333334
 | 
			
		||||
W37-2024,105.0,6.3
 | 
			
		||||
W36-2024,97.0,6.316666666666666
 | 
			
		||||
W35-2024,102.5,7.016666666666667
 | 
			
		||||
W34-2024,108.5,6.283333333333333
 | 
			
		||||
W33-2024,103.0,6.6
 | 
			
		||||
W32-2024,105.0,5.75
 | 
			
		||||
W31-2024,103.5,7.066666666666666
 | 
			
		||||
W30-2024,107.0,6.866666666666667
 | 
			
		||||
W29-2024,102.5,6.433333333333334
 | 
			
		||||
W28-2024,108.5,7.166666666666667
 | 
			
		||||
W27-2024,106.5,7.583333333333333
 | 
			
		||||
W26-2024,111.5,6.133333333333334
 | 
			
		||||
W25-2024,102.5,6.5
 | 
			
		||||
W24-2024,107.5,6.016666666666667
 | 
			
		||||
W23-2024,101.5,6.366666666666666
 | 
			
		||||
W22-2024,104.5,6.55
 | 
			
		||||
W21-2024,107.0,6.783333333333333
 | 
			
		||||
W20-2024,103.5,5.85
 | 
			
		||||
W19-2024,109.0,6.35
 | 
			
		||||
W18-2024,107.5,5.6
 | 
			
		||||
W17-2024,110.0,6.033333333333333
 | 
			
		||||
W16-2024,98.0,6.466666666666667
 | 
			
		||||
W15-2024,99.0,6.283333333333333
 | 
			
		||||
W14-2024,97.5,6.3
 | 
			
		||||
W13-2024,101.0,6.833333333333333
 | 
			
		||||
W12-2024,100.0,6.15
 | 
			
		||||
W11-2024,101.5,6.183333333333334
 | 
			
		||||
W10-2024,99.0,6.366666666666666
 | 
			
		||||
W9-2024,102.0,6.066666666666666
 | 
			
		||||
W8-2024,106.0,7.183333333333334
 | 
			
		||||
W7-2024,101.5,6.966666666666667
 | 
			
		||||
W6-2024,104.0,8.283333333333333
 | 
			
		||||
W5-2024,99.5,6.2
 | 
			
		||||
W4-2024,100.5,7.35
 | 
			
		||||
W3-2024,99.0,6.416666666666667
 | 
			
		||||
W2-2024,97.0,6.45
 | 
			
		||||
W1-2024,97.5,6.733333333333333
 | 
			
		||||
W52-2024,93.5,7.033333333333333
 | 
			
		||||
W51-2023,88.0,7.266666666666667
 | 
			
		||||
W50-2023,95.0,7.283333333333333
 | 
			
		||||
W49-2023,99.0,7.883333333333333
 | 
			
		||||
W48-2023,101.5,6.85
 | 
			
		||||
W47-2023,103.5,7.183333333333334
 | 
			
		||||
W46-2023,105.5,7.116666666666666
 | 
			
		||||
W45-2023,104.0,7.083333333333333
 | 
			
		||||
W44-2023,101.5,6.033333333333333
 | 
			
		||||
W43-2023,95.0,6.65
 | 
			
		||||
W42-2023,96.5,6.283333333333333
 | 
			
		||||
		
		
			
  | 
							
								
								
									
										53
									
								
								data/sandbox/hr_data_clean.csv
									
									
									
									
									
										Normal file
									
								
							
							
						
						
									
										53
									
								
								data/sandbox/hr_data_clean.csv
									
									
									
									
									
										Normal file
									
								
							@ -0,0 +1,53 @@
 | 
			
		||||
Woche,avg_hr
 | 
			
		||||
W40-2024,98.5
 | 
			
		||||
W39-2024,105.0
 | 
			
		||||
W38-2024,107.5
 | 
			
		||||
W37-2024,105.0
 | 
			
		||||
W36-2024,97.0
 | 
			
		||||
W35-2024,102.5
 | 
			
		||||
W34-2024,108.5
 | 
			
		||||
W33-2024,103.0
 | 
			
		||||
W32-2024,105.0
 | 
			
		||||
W31-2024,103.5
 | 
			
		||||
W30-2024,107.0
 | 
			
		||||
W29-2024,102.5
 | 
			
		||||
W28-2024,108.5
 | 
			
		||||
W27-2024,106.5
 | 
			
		||||
W26-2024,111.5
 | 
			
		||||
W25-2024,102.5
 | 
			
		||||
W24-2024,107.5
 | 
			
		||||
W23-2024,101.5
 | 
			
		||||
W22-2024,104.5
 | 
			
		||||
W21-2024,107.0
 | 
			
		||||
W20-2024,103.5
 | 
			
		||||
W19-2024,109.0
 | 
			
		||||
W18-2024,107.5
 | 
			
		||||
W17-2024,110.0
 | 
			
		||||
W16-2024,98.0
 | 
			
		||||
W15-2024,99.0
 | 
			
		||||
W14-2024,97.5
 | 
			
		||||
W13-2024,101.0
 | 
			
		||||
W12-2024,100.0
 | 
			
		||||
W11-2024,101.5
 | 
			
		||||
W10-2024,99.0
 | 
			
		||||
W9-2024,102.0
 | 
			
		||||
W8-2024,106.0
 | 
			
		||||
W7-2024,101.5
 | 
			
		||||
W6-2024,104.0
 | 
			
		||||
W5-2024,99.5
 | 
			
		||||
W4-2024,100.5
 | 
			
		||||
W3-2024,99.0
 | 
			
		||||
W2-2024,97.0
 | 
			
		||||
W1-2024,97.5
 | 
			
		||||
W52-2024,93.5
 | 
			
		||||
W51-2023,88.0
 | 
			
		||||
W50-2023,95.0
 | 
			
		||||
W49-2023,99.0
 | 
			
		||||
W48-2023,101.5
 | 
			
		||||
W47-2023,103.5
 | 
			
		||||
W46-2023,105.5
 | 
			
		||||
W45-2023,104.0
 | 
			
		||||
W44-2023,101.5
 | 
			
		||||
W43-2023,95.0
 | 
			
		||||
W42-2023,96.5
 | 
			
		||||
W41-2023,85.5
 | 
			
		||||
		
		
			
  | 
							
								
								
									
										53
									
								
								data/sandbox/sleep_data_clean.csv
									
									
									
									
									
										Normal file
									
								
							
							
						
						
									
										53
									
								
								data/sandbox/sleep_data_clean.csv
									
									
									
									
									
										Normal file
									
								
							@ -0,0 +1,53 @@
 | 
			
		||||
Woche,Durchschnittliche Dauer
 | 
			
		||||
W41-2024,6.183333333333334
 | 
			
		||||
W40-2024,6.566666666666666
 | 
			
		||||
W39-2024,6.383333333333334
 | 
			
		||||
W38-2024,6.683333333333334
 | 
			
		||||
W37-2024,6.3
 | 
			
		||||
W36-2024,6.316666666666666
 | 
			
		||||
W35-2024,7.016666666666667
 | 
			
		||||
W34-2024,6.283333333333333
 | 
			
		||||
W33-2024,6.6
 | 
			
		||||
W32-2024,5.75
 | 
			
		||||
W31-2024,7.066666666666666
 | 
			
		||||
W30-2024,6.866666666666667
 | 
			
		||||
W29-2024,6.433333333333334
 | 
			
		||||
W28-2024,7.166666666666667
 | 
			
		||||
W27-2024,7.583333333333333
 | 
			
		||||
W26-2024,6.133333333333334
 | 
			
		||||
W25-2024,6.5
 | 
			
		||||
W24-2024,6.016666666666667
 | 
			
		||||
W23-2024,6.366666666666666
 | 
			
		||||
W22-2024,6.55
 | 
			
		||||
W21-2024,6.783333333333333
 | 
			
		||||
W20-2024,5.85
 | 
			
		||||
W19-2024,6.35
 | 
			
		||||
W18-2024,5.6
 | 
			
		||||
W17-2024,6.033333333333333
 | 
			
		||||
W16-2024,6.466666666666667
 | 
			
		||||
W15-2024,6.283333333333333
 | 
			
		||||
W14-2024,6.3
 | 
			
		||||
W13-2024,6.833333333333333
 | 
			
		||||
W12-2024,6.15
 | 
			
		||||
W11-2024,6.183333333333334
 | 
			
		||||
W10-2024,6.366666666666666
 | 
			
		||||
W9-2024,6.066666666666666
 | 
			
		||||
W8-2024,7.183333333333334
 | 
			
		||||
W7-2024,6.966666666666667
 | 
			
		||||
W6-2024,8.283333333333333
 | 
			
		||||
W5-2024,6.2
 | 
			
		||||
W4-2024,7.35
 | 
			
		||||
W3-2024,6.416666666666667
 | 
			
		||||
W2-2024,6.45
 | 
			
		||||
W1-2024,6.733333333333333
 | 
			
		||||
W52-2024,7.033333333333333
 | 
			
		||||
W51-2023,7.266666666666667
 | 
			
		||||
W50-2023,7.283333333333333
 | 
			
		||||
W49-2023,7.883333333333333
 | 
			
		||||
W48-2023,6.85
 | 
			
		||||
W47-2023,7.183333333333334
 | 
			
		||||
W46-2023,7.116666666666666
 | 
			
		||||
W45-2023,7.083333333333333
 | 
			
		||||
W44-2023,6.033333333333333
 | 
			
		||||
W43-2023,6.65
 | 
			
		||||
W42-2023,6.283333333333333
 | 
			
		||||
		
		
			
  | 
							
								
								
									
										53
									
								
								data/sandbox/sleep_gramic.csv
									
									
									
									
									
										Normal file
									
								
							
							
						
						
									
										53
									
								
								data/sandbox/sleep_gramic.csv
									
									
									
									
									
										Normal file
									
								
							@ -0,0 +1,53 @@
 | 
			
		||||
Datum;Ø Score;Ø Qualität;Durchschnittliche Dauer;Ø Schlafenszeit;Ø Aufstehzeit
 | 
			
		||||
Okt 10-16;46;Schlecht;6h 11min;1:28;7:50
 | 
			
		||||
Okt 3-9;56;Schlecht;6h 34min;0:33;7:22
 | 
			
		||||
Sep 26 - Okt 2;52;Schlecht;6h 23min;0:00;6:37
 | 
			
		||||
Sep 19-25;59;Schlecht;6h 41min;0:27;7:16
 | 
			
		||||
Sep 12-18;59;Schlecht;6h 18min;0:48;7:12
 | 
			
		||||
Sep 5-11;55;Schlecht;6h 19min;0:56;7:22
 | 
			
		||||
Aug 29 - Sep 4;66;Ausreichend;7h 1min;0:21;7:31
 | 
			
		||||
Aug 22-28;57;Schlecht;6h 17min;0:35;6:59
 | 
			
		||||
Aug 15-21;72;Ausreichend;6h 36min;0:38;7:25
 | 
			
		||||
Aug 8-14;56;Schlecht;5h 45min;0:16;6:06
 | 
			
		||||
Aug 1-7;64;Ausreichend;7h 4min;0:39;8:10
 | 
			
		||||
Jul 25-31;61;Ausreichend;6h 52min;0:40;7:56
 | 
			
		||||
Jul 18-24;54;Schlecht;6h 26min;2:16;9:19
 | 
			
		||||
Jul 11-17;74;Ausreichend;7h 10min;0:06;7:26
 | 
			
		||||
Jul 4-10;58;Schlecht;7h 35min;0:45;9:05
 | 
			
		||||
Jun 27 - Jul 3;60;Ausreichend;6h 8min;1:22;7:42
 | 
			
		||||
Jun 20-26;69;Ausreichend;6h 30min;0:19;6:58
 | 
			
		||||
Jun 13-19;59;Schlecht;6h 1min;0:25;6:33
 | 
			
		||||
Jun 6-12;60;Ausreichend;6h 22min;0:02;6:30
 | 
			
		||||
Mai 30 - Jun 5;60;Ausreichend;6h 33min;0:34;7:15
 | 
			
		||||
Mai 23-29;51;Schlecht;6h 47min;0:56;7:54
 | 
			
		||||
Mai 16-22;50;Schlecht;5h 51min;1:13;7:08
 | 
			
		||||
Mai 9-15;55;Schlecht;6h 21min;0:58;7:23
 | 
			
		||||
Mai 2-8;40;Schlecht;5h 36min;0:39;6:19
 | 
			
		||||
Apr 25 - Mai 1;55;Schlecht;6h 2min;1:18;7:26
 | 
			
		||||
Apr 18-24;56;Schlecht;6h 28min;3:11;9:55
 | 
			
		||||
Apr 11-17;56;Schlecht;6h 17min;1:23;7:51
 | 
			
		||||
Apr 4-10;62;Ausreichend;6h 18min;0:39;7:10
 | 
			
		||||
Mrz 28 - Apr 3;68;Ausreichend;6h 50min;1:45;8:51
 | 
			
		||||
Mrz 21-27;60;Ausreichend;6h 9min;0:56;7:13
 | 
			
		||||
Mrz 14-20;54;Schlecht;6h 11min;1:03;7:24
 | 
			
		||||
Mrz 7-13;54;Schlecht;6h 22min;0:49;7:17
 | 
			
		||||
Feb 29 - Mrz 6;50;Schlecht;6h 4min;0:56;7:09
 | 
			
		||||
Feb 22-28;61;Ausreichend;7h 11min;0:08;7:25
 | 
			
		||||
Feb 15-21;44;Schlecht;6h 58min;0:19;7:51
 | 
			
		||||
Feb 8-14;50;Schlecht;8h 17min;0:09;8:47
 | 
			
		||||
Feb 1-7;43;Schlecht;6h 12min;1:06;7:25
 | 
			
		||||
Jan 25-31;57;Schlecht;7h 21min;1:17;8:40
 | 
			
		||||
Jan 18-24;51;Schlecht;6h 25min;0:56;7:26
 | 
			
		||||
Jan 11-17;50;Schlecht;6h 27min;1:36;8:12
 | 
			
		||||
Jan 4-10;59;Schlecht;6h 44min;1:26;8:24
 | 
			
		||||
Dez 28, 2023 - Jan 3, 2024;54;Schlecht;7h 2min
 | 
			
		||||
Dez 21-27, 2023;55;Schlecht;7h 16min;0:38
 | 
			
		||||
Dez 14-20, 2023;56;Schlecht;7h 17min;0:31
 | 
			
		||||
Dez 7-13, 2023;44;Schlecht;7h 53min;23:46
 | 
			
		||||
Nov 30 - Dez 6, 2023;48;Schlecht;6h 51min;0:33
 | 
			
		||||
Nov 23-29, 2023;48;Schlecht;7h 11min;0:21
 | 
			
		||||
Nov 16-22, 2023;53;Schlecht;7h 7min;0:23
 | 
			
		||||
Nov 9-15, 2023;47;Schlecht;7h 5min;0:19
 | 
			
		||||
Nov 2-8, 2023;50;Schlecht;6h 2min;0:00
 | 
			
		||||
Okt 26 - Nov 1, 2023;59;Schlecht;6h 39min;0:14
 | 
			
		||||
Okt 19-25, 2023;48;Schlecht;6h 17min;0:46
 | 
			
		||||
| 
		
		
			 Can't render this file because it has a wrong number of fields in line 43. 
		
	 | 
							
								
								
									
										
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								media/gra/gramic_sleep_hr_correlation.png
									
									
									
									
									
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											BIN
										
									
								
								media/gra/gramic_sleep_hr_correlation.png
									
									
									
									
									
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		 After Width: | Height: | Size: 40 KiB  | 
							
								
								
									
										
											BIN
										
									
								
								media/gra/weekly_hr_sleep.png
									
									
									
									
									
										Normal file
									
								
							
							
						
						
									
										
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								media/gra/weekly_hr_sleep.png
									
									
									
									
									
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		 After Width: | Height: | Size: 45 KiB  | 
							
								
								
									
										161
									
								
								src/gra/corelation.py
									
									
									
									
									
										Normal file
									
								
							
							
						
						
									
										161
									
								
								src/gra/corelation.py
									
									
									
									
									
										Normal file
									
								
							@ -0,0 +1,161 @@
 | 
			
		||||
import pandas as pd
 | 
			
		||||
import matplotlib.pyplot as plt
 | 
			
		||||
import numpy as np
 | 
			
		||||
from datetime import datetime
 | 
			
		||||
 | 
			
		||||
# Manuelle Zuordnung der Monatsnamen von Deutsch auf Englisch
 | 
			
		||||
month_translation = {
 | 
			
		||||
    'Jan': 'Jan', 'Feb': 'Feb', 'Mär': 'Mar', 'Mrz': 'Mar', 'Apr': 'Apr', 'Mai': 'May', 'Jun': 'Jun',
 | 
			
		||||
    'Jul': 'Jul', 'Aug': 'Aug', 'Sep': 'Sep', 'Okt': 'Oct', 'Nov': 'Nov', 'Dez': 'Dec'
 | 
			
		||||
}
 | 
			
		||||
 | 
			
		||||
# Funktion zur Umwandlung von '6h 11min' in numerische Stundenwerte
 | 
			
		||||
def convert_sleep_duration(sleep_duration_str):
 | 
			
		||||
    hours = 0
 | 
			
		||||
    minutes = 0
 | 
			
		||||
    if 'h' in sleep_duration_str:
 | 
			
		||||
        hours_part = sleep_duration_str.split('h')[0].strip()
 | 
			
		||||
        hours = int(hours_part)
 | 
			
		||||
    if 'min' in sleep_duration_str:
 | 
			
		||||
        minutes_part = sleep_duration_str.split('h')[-1].replace('min', '').strip()
 | 
			
		||||
        minutes = int(minutes_part)
 | 
			
		||||
    return hours + (minutes / 60)
 | 
			
		||||
 | 
			
		||||
# Funktion, um Datumsbereiche in Kalenderwoche und Jahr zu konvertieren
 | 
			
		||||
def convert_to_week_and_year(date_range_str):
 | 
			
		||||
    date_range_str = date_range_str.replace(" - ", "-").replace(",", "")
 | 
			
		||||
 | 
			
		||||
    if "-" not in date_range_str and len(date_range_str.split(" ")) == 2:
 | 
			
		||||
        month_str, day_str = date_range_str.split(" ")
 | 
			
		||||
        day = int(day_str.strip())
 | 
			
		||||
        year_str = str(datetime.now().year)
 | 
			
		||||
 | 
			
		||||
        if month_str in month_translation:
 | 
			
		||||
            month_str = month_translation[month_str]
 | 
			
		||||
 | 
			
		||||
        start_date = datetime.strptime(f"{month_str} {day} {year_str}", "%b %d %Y")
 | 
			
		||||
        week_number = start_date.isocalendar()[1]
 | 
			
		||||
        year = start_date.year
 | 
			
		||||
 | 
			
		||||
        return f"W{week_number}-{year}"
 | 
			
		||||
 | 
			
		||||
    if date_range_str[-4:].isdigit():
 | 
			
		||||
        year_str = date_range_str[-4:]
 | 
			
		||||
        date_range_str = date_range_str[:-5]
 | 
			
		||||
    else:
 | 
			
		||||
        year_str = str(datetime.now().year)
 | 
			
		||||
 | 
			
		||||
    start_part, end_part = date_range_str.split("-")
 | 
			
		||||
    start_parts = start_part.split(" ")
 | 
			
		||||
    start_month_str = start_parts[0]
 | 
			
		||||
    start_day = int(start_parts[1].strip())
 | 
			
		||||
    end_parts = end_part.split(" ")
 | 
			
		||||
 | 
			
		||||
    if len(end_parts) == 2:
 | 
			
		||||
        end_month_str = end_parts[0]
 | 
			
		||||
        end_day = int(end_parts[1].strip())
 | 
			
		||||
    else:
 | 
			
		||||
        end_month_str = start_month_str
 | 
			
		||||
        end_day = int(end_parts[0].strip())
 | 
			
		||||
 | 
			
		||||
    if start_month_str in month_translation:
 | 
			
		||||
        start_month_str = month_translation[start_month_str]
 | 
			
		||||
    if end_month_str in month_translation:
 | 
			
		||||
        end_month_str = month_translation[end_month_str]
 | 
			
		||||
 | 
			
		||||
    start_date = datetime.strptime(f"{start_month_str} {start_day} {year_str}", "%b %d %Y")
 | 
			
		||||
    week_number = start_date.isocalendar()[1]
 | 
			
		||||
    year = start_date.year
 | 
			
		||||
 | 
			
		||||
    return f"W{week_number}-{year}"
 | 
			
		||||
 | 
			
		||||
# Datei Pfade
 | 
			
		||||
hr_data_path = '/home/gra/PycharmProjects/cds_introduction_data_science_assignment/data/raw/hr_gramic.csv'
 | 
			
		||||
sleep_data_path = '/home/gra/PycharmProjects/cds_introduction_data_science_assignment/data/sandbox/sleep_gramic.csv'
 | 
			
		||||
hr_clean_path = '/home/gra/PycharmProjects/cds_introduction_data_science_assignment/data/sandbox/hr_data_clean.csv'
 | 
			
		||||
sleep_clean_path = '/home/gra/PycharmProjects/cds_introduction_data_science_assignment/data/sandbox/sleep_data_clean.csv'
 | 
			
		||||
combined_data_path = '/home/gra/PycharmProjects/cds_introduction_data_science_assignment/data/sandbox/combined_data.csv'
 | 
			
		||||
graphic_corr_path = '/home/gra/PycharmProjects/cds_introduction_data_science_assignment/data/final/gramic_sleep_hr_correlation.png'
 | 
			
		||||
graphic_weekly_path = '/home/gra/PycharmProjects/cds_introduction_data_science_assignment/data/final/weekly_hr_sleep.png'
 | 
			
		||||
 | 
			
		||||
# Schritt 1: Lade die HR-Daten und entferne 'bpm'
 | 
			
		||||
hr_data = pd.read_csv(hr_data_path, sep=';')
 | 
			
		||||
hr_data['In Ruhe'] = hr_data['In Ruhe'].str.replace(' bpm', '').astype(float)
 | 
			
		||||
hr_data['Hoch'] = hr_data['Hoch'].str.replace(' bpm', '').astype(float)
 | 
			
		||||
hr_data['Woche'] = hr_data['Datum'].apply(convert_to_week_and_year)
 | 
			
		||||
hr_data['avg_hr'] = hr_data[['In Ruhe', 'Hoch']].mean(axis=1)
 | 
			
		||||
hr_data_clean = hr_data[['Woche', 'avg_hr']]
 | 
			
		||||
hr_data_clean.to_csv(hr_clean_path, index=False)
 | 
			
		||||
 | 
			
		||||
# Schritt 2: Lade die Schlafdaten
 | 
			
		||||
sleep_data = pd.read_csv(sleep_data_path, sep=';')
 | 
			
		||||
sleep_data['Woche'] = sleep_data['Datum'].apply(convert_to_week_and_year)
 | 
			
		||||
sleep_data['Durchschnittliche Dauer'] = sleep_data['Durchschnittliche Dauer'].apply(convert_sleep_duration)
 | 
			
		||||
sleep_data_clean = sleep_data[['Woche', 'Durchschnittliche Dauer']]
 | 
			
		||||
sleep_data_clean.to_csv(sleep_clean_path, index=False)
 | 
			
		||||
 | 
			
		||||
# Schritt 3: Kombiniere die HR- und Schlafdaten
 | 
			
		||||
combined_data = pd.merge(hr_data_clean, sleep_data_clean, on='Woche', how='inner')
 | 
			
		||||
combined_data.to_csv(combined_data_path, index=False)
 | 
			
		||||
 | 
			
		||||
# Schritt 4: Berechne die Korrelation
 | 
			
		||||
correlation = combined_data['avg_hr'].corr(combined_data['Durchschnittliche Dauer'])
 | 
			
		||||
print(f"Die Korrelation zwischen der durchschnittlichen Herzfrequenz und der Schlafdauer ist: {correlation}")
 | 
			
		||||
 | 
			
		||||
# # Schritt 5: Visualisiere den Zusammenhang zwischen Herzfrequenz und Schlafdauer (invertierte x-Achse)
 | 
			
		||||
# plt.figure(figsize=(10, 6))
 | 
			
		||||
# plt.scatter(combined_data['avg_hr'], combined_data['Durchschnittliche Dauer'], color='blue', label='Datenpunkte')
 | 
			
		||||
# plt.title('Zusammenhang zwischen Herzfrequenz (Durchschnitt) und Schlafdauer')
 | 
			
		||||
# plt.xlabel('Durchschnittliche Herzfrequenz (bpm)')
 | 
			
		||||
# plt.ylabel('Schlafdauer (Stunden)')
 | 
			
		||||
# plt.grid(True)
 | 
			
		||||
# m, b = np.polyfit(combined_data['avg_hr'], combined_data['Durchschnittliche Dauer'], 1)
 | 
			
		||||
# plt.plot(combined_data['avg_hr'], m * combined_data['avg_hr'] + b, color='red', label=f'Trendlinie (Kor = {correlation:.2f})')
 | 
			
		||||
# plt.gca().invert_xaxis()  # X-Achse invertieren
 | 
			
		||||
# plt.legend()
 | 
			
		||||
# plt.savefig(graphic_corr_path)
 | 
			
		||||
# plt.show()
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		||||
 | 
			
		||||
# Schritt 5: Visualisiere den Zusammenhang zwischen Schlafdauer und Herzfrequenz
 | 
			
		||||
plt.figure(figsize=(10, 6))
 | 
			
		||||
plt.scatter(combined_data['Durchschnittliche Dauer'], combined_data['avg_hr'], color='blue', label='Datenpunkte')
 | 
			
		||||
plt.title('Zusammenhang zwischen Schlafdauer und Herzfrequenz (Durchschnitt)')
 | 
			
		||||
plt.xlabel('Schlafdauer (Stunden)')
 | 
			
		||||
plt.ylabel('Durchschnittliche Herzfrequenz (bpm)')
 | 
			
		||||
plt.grid(True)
 | 
			
		||||
 | 
			
		||||
# Berechne und zeichne die Trendlinie
 | 
			
		||||
m, b = np.polyfit(combined_data['Durchschnittliche Dauer'], combined_data['avg_hr'], 1)
 | 
			
		||||
plt.plot(combined_data['Durchschnittliche Dauer'], m * combined_data['Durchschnittliche Dauer'] + b, color='red', label=f'Trendlinie (Kor = {correlation:.2f})')
 | 
			
		||||
 | 
			
		||||
plt.legend()
 | 
			
		||||
plt.savefig(graphic_corr_path)
 | 
			
		||||
plt.show()
 | 
			
		||||
 | 
			
		||||
# Schritt 6: Erstelle eine Grafik pro Kalenderwoche (HR und Schlafdaten)
 | 
			
		||||
fig, ax1 = plt.subplots(figsize=(30, 8))  # Breitere Darstellung
 | 
			
		||||
 | 
			
		||||
# Erste Achse: Herzfrequenz
 | 
			
		||||
ax1.bar(combined_data['Woche'], combined_data['avg_hr'], width=0.4, label='Durchschnittliche Herzfrequenz', align='center', color='b')
 | 
			
		||||
ax1.set_xlabel('Kalenderwoche')
 | 
			
		||||
ax1.set_ylabel('Durchschnittliche Herzfrequenz (bpm)', color='b')
 | 
			
		||||
ax1.tick_params(axis='y', labelcolor='b')
 | 
			
		||||
 | 
			
		||||
# Zweite Achse: Schlafdauer
 | 
			
		||||
ax2 = ax1.twinx()
 | 
			
		||||
ax2.bar(combined_data['Woche'], combined_data['Durchschnittliche Dauer'], width=0.4, label='Schlafdauer', align='edge', color='g')
 | 
			
		||||
ax2.set_ylabel('Schlafdauer (Stunden)', color='g')
 | 
			
		||||
ax2.tick_params(axis='y', labelcolor='g')
 | 
			
		||||
 | 
			
		||||
plt.title('Durchschnittliche Herzfrequenz und Schlafdauer pro Kalenderwoche')
 | 
			
		||||
 | 
			
		||||
# Anpassung der x-Achse für bessere Lesbarkeit
 | 
			
		||||
plt.xticks(rotation=90, ha='center', fontsize=12)  # Schriftgröße auf 12 erhöht
 | 
			
		||||
 | 
			
		||||
# Zeige nur jede zweite Woche
 | 
			
		||||
ax1.set_xticks(ax1.get_xticks()[::2])
 | 
			
		||||
 | 
			
		||||
fig.tight_layout()
 | 
			
		||||
 | 
			
		||||
plt.savefig(graphic_weekly_path)
 | 
			
		||||
plt.show()
 | 
			
		||||
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