Attendance

Friday, 01 May 2026

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Weekly Trends Report

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Time Analysis Report

Detailed time-based attendance analysis


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41

Total Registered

Users

24.39%

Attendance Rate

10 present today

0

Late Arrivals Today

Attended but late

31

Absent Today

Did not attend
Analytics Date Range & Period
Attendance Trends
Average Monthly Attendance
Month Rate Present
Mar 2026 37.92% 26/41
Apr 2026 29.82% 22/41
May 2026 24.39% 10/41
Overall Average: 30.71%
Termly Attendance Rates
Term Attendance Rate Period
Term 1 70.73% Jan 1 - Apr 30, 2026
Term 2 24.39% May 1 - Aug 31, 2026
Term 3 0% Sep 1 - Dec 31, 2026
Quick Statistics
Mar 2 - May 1, 2026
Total Records
657
Present Users
27
Absent Rate
15.63%
Early Departures
0
Frequent Absentees
Mar 2 - May 1, 2026
45 weekdays in period
Range Full Name Days Present Attendance % Last Seen
22 Antoneil Espira 2/45 days 4.44% Mar 15, 2026 (47 days ago)
12 Moses Nambuaya 6/45 days 13.33% Mar 19, 2026 (43 days ago)
4 Francis Kasyamani 8/45 days 17.78% Apr 9, 2026 (22 days ago)
30 JULIAN BARASA 9/45 days 20% Mar 17, 2026 (45 days ago)
7 Nelly Lime 11/45 days 24.44% May 1, 2026 (0 days ago)
37 RAEL ELISEBA 13/45 days 28.89% May 1, 2026 (0 days ago)
26 MILDRED ATSULU 13/45 days 28.89% May 1, 2026 (0 days ago)
24 KEVIN MWOKI 13/45 days 28.89% May 1, 2026 (0 days ago)
16 Geodion Lusigi 13/45 days 28.89% May 1, 2026 (0 days ago)
39 SEDRINE ASACHA 14/45 days 31.11% Apr 23, 2026 (8 days ago)
10 Gentrine Wanekhwe 14/45 days 31.11% Apr 30, 2026 (1 days ago)
29 PHILIP AMOYI 19/45 days 42.22% Apr 28, 2026 (3 days ago)
17 Hellen Nasambu 20/45 days 44.44% May 1, 2026 (0 days ago)
3 Pelice Chabari 21/45 days 46.67% Apr 26, 2026 (5 days ago)
23 SHEILA BARASA 21/45 days 46.67% May 1, 2026 (0 days ago)
Showing users with less than 70% attendance during weekdays in selected period
Check-ins by Hour
Today's Latecomers
May 1, 2026
User Check-in Time Status
_ _ _ Late
Total today: 1 late arrivals
Frequent Late Comers
Mar 2 - May 1, 2026

No frequent late comers data available.

Historical Name Analytics
Showing names as they were during the attendance period
User ID Historical Name Total Days Late Count Early Departures Total Hours
13 Phoebe Anyango _ ID: 13 36 days On time Stayed 235.5 hrs
14 Beatrice Injili _ ID: 14 42 days On time Stayed 315.9 hrs
15 Louis Chunguli _ ID: 15 28 days On time Stayed 101 hrs
18 Edith Makungu _ ID: 18 42 days On time Stayed 221.7 hrs
19 Esther Njeri _ ID: 19 45 days On time Stayed 381 hrs
2 Samwel Ongeri _ ID: 2 41 days On time Stayed 304.6 hrs
24 KEVIN MWOKI _ ID: 24 22 days On time Stayed 49.7 hrs
28 LOICE KARAKACHA _ ID: 28 35 days On time Stayed 92.7 hrs
30 JULIAN BARASA _ ID: 30 12 days On time Stayed 30 hrs
39 SEDRINE ASACHA _ ID: 39 16 days On time Stayed 41.3 hrs
41 JAMES WANJALA _ ID: 41 36 days On time Stayed 270.2 hrs
9 Esther Injili _ ID: 9 51 days On time Stayed 428.8 hrs
10 Gentrine Wanekhwe _ ID: 10 18 days On time Stayed 115.9 hrs
6 SHARON KADENYI _ ID: 6 29 days On time Stayed 204 hrs
12 Moses Nambuaya _ ID: 12 8 days On time Stayed 32.5 hrs
37 RAEL ELISEBA _ ID: 37 16 days On time Stayed 0 hrs
16 Geodion Lusigi _ ID: 16 20 days On time Stayed 10.5 hrs
17 Hellen Nasambu _ ID: 17 27 days On time Stayed 176.2 hrs
23 SHEILA BARASA _ ID: 23 24 days On time Stayed 41.8 hrs
3 Pelice Chabari _ ID: 3 27 days On time Stayed 157.9 hrs
22 Antoneil Espira _ ID: 22 4 days On time Stayed 0 hrs
31 SHEILLAH IKAGALA _ ID: 31 2 days On time Stayed 0 hrs
29 PHILIP AMOYI _ ID: 29 34 days On time Stayed 149.4 hrs
4 Francis Kasyamani _ ID: 4 14 days On time Stayed 33.5 hrs
7 Nelly Lime _ ID: 7 12 days On time Stayed 10.1 hrs
21 Nancy Muruli _ ID: 21 1 days On time Stayed 0 hrs
26 MILDRED ATSULU _ ID: 26 15 days On time Stayed 100.7 hrs
Attendance Calculation Note

All attendance rates and statistics are calculated based on weekdays only (Monday-Friday). Saturdays and Sundays are automatically excluded from all calculations including:

  • Overall attendance rates
  • Monthly averages
  • Frequent absentees identification
  • Daily trends visualization