Use case #0002

TAT reporting: how MIS AI tracks origination-to-disbursement time across 50 branches

Turnaround time — the days from application receipt to funds in the borrower's account — is the single metric that determines whether the institution's credit process is a competitive advantage or a competitive liability. A borrower who applied for a home loan at two institutions simultaneously will disburse from whichever one reaches them first. An MSME borrower who needed working capital on Monday and disburses on Friday instead of Wednesday has had two days of business interrupted. TAT is not a process metric — it is a customer experience metric, a competitive positioning metric, and a collections risk metric, because borrowers who wait longer have more time to reconsider. The MIS & Reporting Agent AI tracks TAT at step level and branch level for every application, identifies where each branch's time is being lost, and produces a weekly TAT analysis that allows the Head of Ops to direct improvement efforts at the specific steps and branches where they will have the most impact.

Turnaround time — the days from application receipt to funds in the borrower's account — is the single metric that determines whether the institution's credit process is a competitive advantage or a competitive liability. A borrower who applied for a home loan at two institutions simultaneously will disburse from whichever one reaches them first. An MSME borrower who needed working capital on Monday and disburses on Friday instead of Wednesday has had two days of business interrupted. TAT is not a process metric — it is a customer experience metric, a competitive positioning metric, and a collections risk metric, because borrowers who wait longer have more time to reconsider. The MIS & Reporting Agent AI tracks TAT at step level and branch level for every application, identifies where each branch's time is being lost, and produces a weekly TAT analysis that allows the Head of Ops to direct improvement efforts at the specific steps and branches where they will have the most impact.

Why total TAT is the wrong measurement unit — and what step-level TAT reveals

An institution that measures "average origination-to-disbursement TAT" and finds it is 8.2 days knows it is above the 7-day target. What it does not know is whether the 1.2-day excess is concentrated in the credit assessment step, the valuation step, the QC step, or the post-sanction documentation step — or whether it is distributed evenly across all steps. These are four different operational problems requiring four different interventions. A credit assessment bottleneck requires analyst reallocation or credit process acceleration. A valuation bottleneck requires panel expansion or reassignment. A QC bottleneck requires error reduction at origination (feeding into the QC feedback loop). A post-sanction documentation bottleneck requires ops process redesign.

The MIS & Reporting Agent AI tracks TAT at the step level for every application in every branch — maintaining a real-time clock on every step, updated from the LOS and CBS each morning. The weekly TAT report shows not just each branch's total average TAT but their step-wise contribution to that average, making the operational intervention obvious rather than investigative.

"An 8.2-day average TAT with a 7-day target is a 1.2-day problem. A 2.8-day average credit assessment step with a 1-day target is a 1.8-day problem with a specific owner, a specific intervention, and a specific improvement metric."

The weekly TAT analysis: all branches · Week ending November 14, 2025

TAT Analysis — All Branches · Week Ending Nov 14, 2025
47 branches reporting · 284 disbursements analysed · Avg TAT: 8.4 days · Target: 7.0 days · 3 branches above 10 days
Branches reporting47 of 50
Overall avg TAT8.4 days (target: 7.0)
Branches meeting target28 (59.6%)
Branches above 10 days3 (immediate attention)
Branch TAT comparison — top performers and outliers
Bengaluru HO
5.8 days · target 7 · within
5.8d Fastest — benchmark
Mysuru
6.4 days · within target
6.4d Within target
Hubli
7.8 days · above target
7.8d Credit step delay
Raichur
8.4 days · above target
8.4d Valuation delay
Bellary
11.2 days · far above target
11.2d QC hold spike
Hospet
10.8 days · above 10-day alert
10.8d Legal review delay
All other (41 branches)
6.8 days avg · within target
6.8d avg Within target
Step-level TAT — institution average vs target · Week ending Nov 14
Application → QC review0.9dTarget: 1d
QC review → credit assessment1.8dTarget: 1d
Credit assessment → approval1.4dTarget: 1d
Property valuation3.2dTarget: 3d
Legal review2.6dTarget: 2d
Sanction → KFS → NACH1.2dTarget: 1.5d
NACH → disbursement0.6dTarget: 0.5d
● 3 steps above target · Credit assessment (+0.8d) · Legal review (+0.6d) · Valuation at target but Raichur and Hospet driving local exceedances · Post-sanction: outperforming target

The step-level TAT analysis: what each excess day costs and where the fix lies

Step exceeding targetAvg excess timePrimary causeBranches most affectedIntervention
QC review → credit assessment+0.8 daysCredit analyst queue — 2 analysts on leave simultaneously; Hubli credit team carrying full institution volumeHubli (2.1d average) · Bellary exacerbated by QC holdsTemporary analyst reallocation · Bellary QC hold reduction reduces volume entering credit queue
Legal review+0.6 daysHospet: complex ancestral property title chains · Legal team handling 2 contentious EC disputes simultaneouslyHospet (10.8d total) · Institution average marginally affectedHospet: external legal counsel for EC disputes to free legal team capacity · Title chain complexity: additional legal resource
Property valuationAt target — 3.2d vs 3.0d · Raichur outlierRaichur: 6 properties with single overloaded valuer · Girish (panel valuer) unreachable Nov 12–14Raichur specifically · Institution average within 0.2d of targetRaichur: reassign to adjacent panel valuer (implemented Nov 13) · Panel expansion for Raichur geography
8.4 daysInstitution average TAT — vs 7.0-day target · 1.4-day excess · 3 steps above target · Post-sanction steps outperforming
11.2 daysBellary — worst branch · QC hold spike (34%) driving excess · ₹5.2 Cr disbursement shortfall linked
+0.8 daysLargest step excess: credit assessment → approval · Hubli analyst queue · Temporary reallocation recommended
5.8 daysBengaluru HO — fastest branch · Benchmark for comparison · Step-level comparison to Bengaluru shows where others lose time

The Bengaluru HO's 5.8-day TAT is not luck — it is the result of each step performing at or near its target simultaneously. The step-level comparison shows every other branch exactly where its time is going.

When the Head of Ops reads the TAT report and sees that Hubli's credit assessment step averages 2.1 days against the 1-day target, they know the intervention is a staffing question, not a quality question. When they see that Hospet's legal review step averages 4.2 days against the 2-day target, they know it is a complexity question — the title chains in Hospet's geography are more complicated than the legal team's capacity was designed for. The step-level data converts a TAT problem — "Hospet is slow" — into an operational problem — "Hospet's legal review step needs additional capacity for complex title chains" — which is a problem with a specific, fixable solution. A head of operations who works from total TAT data generates generic exhortations to "move faster." One who works from step-level data generates specific operational interventions. The MIS & Reporting Agent AI produces the second kind of analysis, automatically, every week, for all 50 branches, without an analyst spending 3 hours in Excel.

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