Confidential • FY 2025-26
Regrettable Attrition Lens
Objective: separate value-neutral exits from value-destroying losses using a simple, auditable score.
The Scoring System
0
1
2
3
4
Non-Regrettable
5
6
Watchlist
7
8
9
10
Regrettable High
Score = Performance (0-6) + Tenure (0/2) +
Voluntary (0/2)
*Involuntary exits forced to 0
Section A: Exposure Analysis
Non-Regrettable
₹20.29 Cr
81% Exits
Watchlist
₹5.46 Cr
10% Exits
High Regret
₹3.99 Cr
9% Exits
Total Regrettable Exposure: ₹9.45 Cr
32%
of exited compensation mass comes from just 19% of leavers.
Regrettable exits are not random. They are concentrated in value-dense,
hard-to-replace roles. The company is disproportionately losing capacity that matters.
Conclusion: Overall attrition is healthy. But ~20% of exits represent concentrated, avoidable damage and
deserve focused leadership attention.
Section B
How Much Business Capacity Did We Lose?
We do not claim theoretical revenue losses. We calculate the direct cost of workforce capacity that exited
and must be replaced while the business continues to run.
Direct Exposure
₹9.45 Cr
Exited Compensation
● High (3.99)
● Med (5.46)
×
Rebuild Factor
1.3x
Hiring • Onboarding • Ramp-up
=
Rebuild Capacity Cost
~₹12.3 Cr
Estimated Replacement Value
Interpretation
This is not simply “money lost” — this is proven execution capacity that walked out the
door. The organization now incurs a "double spend": paying for the vacancy (lost productivity) and
paying the premium to rebuild it (hiring + ramp-up).
Conclusion (Q2): Even after excluding involuntary exits, the organization is being forced to rebuild ~₹10–12
Cr worth of proven execution capacity.
Section C
Where Is The Damage Concentrated?
We analyzed only the 97 high-regret exits (₹9.45 Cr exposure) to locate the source. The data shows clear
clustering in specific pockets.
By Business Unit
Business A
₹1.64 Cr
14 Exits
Businesss B
₹1.57 Cr
14 Exits
Business C
₹0.92 Cr
11 Exits
Top 3 BUs ≈ 44% of exposure
By Department
Dept 1
₹1.86 Cr
24 Exits
Dept 2
₹1.77 Cr
16 Exits
Dept 3
₹0.93 Cr
15 Exits
Top 3 Depts ≈ 48% of exposure
By BU Head
BU head 1
₹2.57 Cr
26 Exits
BU head 2
₹1.41 Cr
11 Exits
BU head 3
₹0.89 Cr
7 Exits
Top 2 Heads ≈ 42% of exposure
⚠️
Structural Pattern: Highly Concentrated
This is not a company-wide problem. This is a pocket-level problem. The damage is contained within specific teams and leaders, meaning it requires surgical intervention, not broad policy changes.
Conclusion (Q3): We are dealing with specific, identifiable pockets of capacity destruction. This is
controllable and fixable with focused intervention.
Section D
Is this getting better or worse?
Trend analysis of regrettable attrition over the fiscal year.
50%
25%
9.6%
Q1
Apr-Jun
Apr-Jun
23.3%
Q2
Jul-Sep
Jul-Sep
16.0%
Q3
Oct-Dec
Oct-Dec
Spike
55.8%
Q4*
Jan-Mar
Jan-Mar
| FY Quarter | Total Exits | Regrettable Exits | % High Regret | Status |
|---|---|---|---|---|
| FY25 Q1 (Apr-Jun) | 177 | 17 | 9.6% | Stable |
| FY25 Q2 (Jul-Sep) | 133 | 31 | 23.3% | Elevated |
| FY25 Q3 (Oct-Dec) | 156 | 25 | 16.0% | Monitor |
| FY25 Q4* (Jan-Mar) | 43 | 24 | 55.8% | CRITICAL SPIKE |
Conclusion (Q4): The quality of attrition is unstable and periodically spikes. This is a controllable system
failure, not randomness.
Section E
Are we losing people at the worst possible time?
Compounding Window Analysis: Identifying when value-destructive exits occur in the employee lifecycle.
0%
< 6 Months
Hiring Failures
Hiring Failures
Danger Zone
46.4%
6–18 Months
Compounding Window
Compounding Window
33.0%
18–36 Months
Return Phase
Return Phase
20.6%
36+ Months
Retention Phase
Retention Phase
| Tenure Band | Regrettable Exits | % Share |
|---|---|---|
| < 6 months | 0 | 0.0% |
| 6–18 months | 45 | 46.4% |
| 18–36 months | 32 | 33.0% |
| 36+ months | 20 | 20.6% |
Conclusion (Q5): Nearly half of value-destructive exits happen in the 6–18 month compounding window. This is
controllable with targeted intervention.
Section F
What kind of performers are we losing?
Performance rating distribution of regrettable exits. High-performer loss (Rating 4 & 5) represents the most
acute value destruction.
Rating 5
Exceptional
Exceptional
3.1%
Rating 4
High Perf
High Perf
19.6%
Rating 3
Good Perf
Good Perf
56.7%
Missing
Governance Flag
Governance Flag
20.6%
(!) Governance Note: 20.6% of regrettable leavers had NO
performance rating recorded, indicating a gap in data hygiene.
| Performance Rating | Regrettable Exits | % Share |
|---|---|---|
| Rating 5 (Exceptional) | 3 | 3.1% |
| Rating 4 (High) | 19 | 19.6% |
| Rating 3 (Good) | 55 | 56.7% |
| Missing Rating | 20 | 20.6% |
Conclusion (Q6): We are losing high performers. We need to drill down further into these cases to understand
reasons for attrition for top performers.
Section G
Are we underpaying or misallocating retention money?
Analysis of regrettable attrition by Pay Quartile.
Higher Pay ≠ Lower Regret
0%
Q1
Lowest Paid
4.1%
Q2
Low-Mid
37.1%
Q3
High-Mid
58.8%
Q4
Highest Paid
| Pay Quartile | total Exits | % Share of Regret | Regrettable Rate |
|---|---|---|---|
| Q1 (Lowest) | 0 | 0.0% | 0.0% |
| Q2 | 4 | 4.1% | 3.3% |
| Q3 | 36 | 37.1% | 28.1% |
| Q4 (Highest) | 57 | 58.8% | 47.9% |
Conclusion (Q7): This is not a low-pay problem. Regrettable exits are concentrated in already expensive
roles. Retention spend must be targeted, not sprayed.