Exceeds

MARCH 2026

yale.edu Engineering AI Productivity Report

A focused summary of AI adoption, productivity lift, and code quality for the yale.edu engineering team.

See how AI-active teams rank this week on the Exceeds Leaderboards.

The yale.edu engineering team reports 72.3% AI adoption, 1.30× productivity lift, and 15.8% code quality across recent work.

These metrics track how AI integrates into delivery pipelines, how throughput changes when assistance is used, and the health of AI-supported code review outcomes.

What this report measures

We analyze commits and diffs to estimate AI adoption, productivity lift, and code quality for your engineering organization.

How to interpret these metrics

Use these signals to understand how AI assistance fits into day-to-day development, where enablement efforts drive throughput, and how review practices keep quality steady.

AI Adoption Rate

HIGH

72.3%

AI assistance is present in 72.3% of recent commits for yale.edu.

AI Productivity Lift

MODERATE

1.30×

AI-enabled workflows deliver an estimated 30% lift in throughput.

AI Code Quality

LOW

15.8%

Review insights show 15.8% overall code health on AI-supported changes.

How is the yale.edu team performing with AI?

The yale.edu engineering team reports 72.3% AI adoption, translating into 1.30× productivity lift while sustaining 15.8% code quality. These outcomes suggest AI-supported reviews are embedded in day-to-day delivery without trading off reliability.

Manager Questions Answered

Real questions engineering leaders ask about AI productivity, with live benchmarks and company-specific data.

What's a good company AI adoption rate?

yale.edu is at 72.3%. This is 28.6pp above the community median (43.7%)..

72.3%

Roughly in line43.7% Community Median

Spot squads sitting below the median and pair them with high-adoption champions to share workflows.

Does AI actually make developers faster?

yale.edu operates at 1.30×. This is 0.17× above the community median (1.13×)..

1.30×

Roughly in line1.13× Community Median

Instrument reviewer assignment and AI summaries to trim the slowest merge steps and edge past the median.

How does AI affect code quality?

yale.edu holds AI-assisted quality at 15.8%. This is 7.4pp below the community median (23.2%)..

15.8%

↓7.4pp below23.2% Community Median

Add structured AI code review rubrics and require human sign-off for critical surfaces.

How evenly is AI use distributed across our team?

AI impact is concentrated—87.6% of AI commits come from a few experts, raising enablement risk.

87.6%

Run prompt-sharing sessions, codify AI review checklists, and incentivize broad participation.

How can I prove AI ROI to executives?

To prove ROI, yale.edu needs steadier adoption, measurable lift, and consistent quality. The ingredients are forming but not yet executive-grade.

Start with a lighthouse project, measure cycle improvements end-to-end, and harden quality guardrails.

See how your full organization compares

Unlock personalized insights across all your repositories, teams, and contributors.

Securely connect Exceeds with your codebase to get commit-level insights on AI adoption and performance.

How Your Company Ranks

See how top engineering organizations compare across AI adoption, productivity lift, and code quality.

AI Adoption

% of commits with AI assistance

Companies in this quartile:

CA

cancun.tecnm.mx

(87.3%)

MO

momentohq.com

(87.3%)

UB

ub.edu

(21.2%)

RO

rossabaker.com

(21.2%)

Top 25% of teams adopt AI in 65-75% of their commits.

Productivity Lift

Cycle-time improvement vs baseline

Companies in this quartile:

IN

inngest.com

(4.82×)

U.

u.nus.edu

(2.87×)

AC

acad.pucrs.br

(1.12×)

MC

mcornholio.ru

(1.12×)

Top performers sustain 1.5× cycle-time improvements over six months when embedding AI into workflows.

Code Quality

Post-merge defect rate

Companies in this quartile:

GZ

gzgz.dev

(20.0%)

GW

gwu.edu

(20.0%)

DR

draad.nl

(-82634.9%)

IN

inria.fr

(-2424.6%)

Top 25% maintain quality above 92% while expanding AI usage, pairing automation with rigorous guardrails.

Rankings based on aggregated Exceeds AI dataset of 1.2M commits across open-source and enterprise engineering teams (Q4 2025).

Top contributors

Top contributors combine high AI adoption and quality output. Encourage internal sharing of best practices.

DB

David Blankenship

Commits666
AI Usage90.5%
Productivity Lift2.00x
Code Quality20.0%
EM

Ethan M

Commits88
AI Usage94.0%
Productivity Lift2.00x
Code Quality20.0%
RA

Robert A McDougal

Commits34
AI Usage92.0%
Productivity Lift1.71x
Code Quality20.0%
NR

nrnhines

Commits37
AI Usage92.0%
Productivity Lift1.36x
Code Quality20.0%
YZ

Yu Zhang

Commits192
AI Usage90.7%
Productivity Lift1.12x
Code Quality20.0%

Encourage knowledge transfer from top AI users to others through internal mentoring or recorded "AI coding walkthroughs." Balanced adoption across the team typically improves overall performance by 12-15%.

Cross-Organization Network

Shared Repositories

14

JachymPutta

hmemcpy/nixpkgs

ramcdougal

neuronsimulator/nrn

nrnhines

neuronsimulator/nrn

adamjhn

neuronsimulator/nrn

emath12

YaleComputerSociety/ymeets

Yu-zh

moonbitlang/moon

moonbitlang/core

+1 more

Activity

833 Commits

Your Network

20 People
adamjhn
Member
anthonysmaldone
Member
arushsrivastava-git
Member
dmo7567
Member
dblanken-yale
Member
davidvng
Member
diegoaspinwall@yale.edu
Member
ephraim.akai-nettey@yale.edu
Member
emath12
Member

Why these metrics matter for engineering managers

Faster delivery

1.4x lift → predictable roadmaps

Safer velocity

93% quality → lower rollback risk

Equitable gains

AI less dependency on heroes

Governance

Depth monitoring audit-ready

ExceedsExceeds AI

Turns these insights into daily coaching and automatic alerts, helping managers balance speed with sustainability.

See the truth of AI impact

Adoption + lift + quality in one view

Learn more

Know where to act first

Repo and role level "lift potential"

Learn more

Prove ROI

Export executive snapshots and benchmarks

Learn more