Travel & Margin Analysis

Quantify excess travel cost and identify optimization opportunities across your field service operation

Tech Placement Detail →
WOs Analyzed
285
Total Travel Cost
$22,914
34,200 miles
Avoidable Cost
$13,344
19,916 excess miles
Optimal Cost
$9,571
If closest tech always used
Avg Excess / WO
69.9 mi
$46.82 per WO
Median Excess
0.0 mi
Outlier Rate (>50mi)
8.8%
25 WOs

Actual Travel Expenses

From 91 WOs with expense data
Total Expenses
$20,141
Labor - Travel
$273
Mileage
$0
Lodging
$5,323
Airfare
$0
Car Rental
$31
Per Diem
$2,925
Meals
$0
Other
$11,588

🎯 Low Hanging Fruit — Biggest Drivers of Excess Travel Cost

Ranked by total avoidable cost across five dimensions. Focus on the top items in each category for the highest ROI improvements.

By Vertical

Which service verticals generate the most excess travel? Clinical Education stands out with very high per-WO excess.

# Vertical WOs Avoidable Cost Impact Avg Excess Outliers Flew Actual Expense Techs
1 Kiosk 285 $13,344
100%
69.9 mi 25 $20,141 18

By State

States with the highest total avoidable travel cost.

# State WOs Avoidable Cost Impact Avg Excess Flew
1 CO 19 $6,748
530.1 mi
2 IL 43 $5,018
174.2 mi
3 TX 140 $1,334
14.2 mi
4 MO 18 $80
6.7 mi
5 AZ 10 $51
7.6 mi
6 OK 40 $6
0.2 mi
7 KS 6 $4
1.1 mi
8 FL 3 $0
0.0 mi

By City

Top cities by total avoidable cost. These are your biggest geographic hotspots.

# City State WOs Avoidable Cost Impact Avg Excess Flew
1 Dallas TX 18 $220
18.2 mi
2 Houston TX 14 $135
14.4 mi
3 Plano TX 7 $90
19.2 mi
4 Pearland TX 3 $68
33.7 mi
5 Irving TX 6 $63
15.7 mi
6 Phoenix AZ 6 $51
12.6 mi
7 Friendswood TX 3 $48
24.1 mi
8 Denton TX 3 $46
22.9 mi
9 Austin (Lakeline) TX 3 $37
18.5 mi
10 Mckinney TX 3 $32
16.1 mi
11 Springfield IL 20 $31
2.3 mi
12 Grand Prairie TX 4 $27
10.3 mi
13 Garland TX 4 $25
9.6 mi
14 Saint Louis MO 3 $21
10.3 mi
15 Burleson TX 3 $10
4.9 mi
16 Tulsa OK 7 $0
0.0 mi
17 Edmond OK 3 $0
0.0 mi
18 Lawton OK 3 $0
0.0 mi
19 Mcallen TX 3 $0
0.0 mi
20 Norman OK 3 $0
0.0 mi
21 Oklahoma City OK 13 $0
0.0 mi
22 Spring TX 3 $0
0.0 mi
23 Amarillo TX 3 $0
0.0 mi

By Coordinator

Coordinators whose dispatching decisions result in the most excess travel. High avg excess suggests systematic over-dispatching; high WO count with moderate excess suggests volume-driven impact.

# Coordinator WOs Avoidable Cost Impact Avg Excess Outliers Flew Actual Expense Techs Used
1 Kaitlyn Kelch 285 $13,344
69.9 mi 25 $20,141 18

By Technician — Repeat Offenders

Techs who consistently travel far beyond the closest available option. High states-served count may indicate a roaming/national tech; high avg excess with few states suggests a misplaced home base.

# Technician WOs Avoidable Cost Impact Avg Actual Dist Avg Excess Outliers Flew States Actual Expense
1 Jason Morris 10 $6,366
1,001 mi 950.2 mi 10 1 $171
2 Andrew Przybyla 10 $5,119
797 mi 764.1 mi 6 3 $260
3 Christopher Womack 67 $601
46 mi 13.4 mi 0 1 $1,987
4 Chane Lacy 33 $304
35 mi 13.8 mi 1 1 $874
5 Curtis Sprague 11 $288
119 mi 39.1 mi 3 1 $123
6 Blake Ward 14 $168
84 mi 18.0 mi 0 2 $224
7 Kevin Cox 33 $159
103 mi 7.2 mi 1 2 $592
8 Thomas J Langenberg Jr 14 $103
62 mi 10.9 mi 2 3 $533
9 Zachary Stieben 15 $17
29 mi 1.7 mi 0 1 $1,228
10 Darrell Hendrix 48 $10
65 mi 0.3 mi 0 3 $1,225
11 Anthony Wirth 7 $6
68 mi 1.3 mi 0 1 $294
12 Ben Heinz 9 $0
44 mi 0.0 mi 0 2 $205
13 Tyler Bollman 6 $0
10 mi 0.0 mi 0 1 $514