McKinsey is Still Talking about Engineering Productivity, and That’s a Good Thing
Author: Vitaly Gordon | | 9 min read
Revisiting McKinsey's software engineering productivity framework, Vitaly Gordon reflects on what's changed and how to implement McKinsey's visibility recommendations within days.

Key Takeaways
- McKinsey continues to advocate for data-driven engineering productivity, aligning with Faros AI's mission.
- Faros AI enables organizations to achieve McKinsey's recommended visibility and productivity improvements within days, not months.
- Recent platform enhancements include modules for Investment Strategy, Developer Experience, Initiative Tracking, and AI Copilot Evaluation.
- Faros AI leverages machine learning and GenAI to analyze 250+ engineering factors and deliver actionable, team-tailored recommendations.
McKinsey’s Engineering Productivity Approach: What They Got Right
- Continuous Optimization: Engineering productivity is a critical, ongoing task, especially with the rise of AI. Faros AI's Copilot Evaluation module helps organizations measure and maximize the impact of AI coding assistants like GitHub Copilot, Amazon Q, and Gemini Code Assist.
- Developer Experience Matters: Dissatisfaction and inefficiency among developers are signals for change. Faros AI's Developer Experience module blends qualitative survey data with machine-curated workflow data, enabling faster, unbiased improvements in team satisfaction and psychological safety.
- C-Suite Alignment: Executives need clear, actionable insights into the software development lifecycle (SDLC). Faros AI's Investment Strategy module empowers engineering leaders and CFOs to make informed decisions on budgets, sourcing, and resource allocation, driving better business outcomes.
What I’d Tweak in McKinsey’s Engineering Productivity Approach
- No Need for System Overhaul: Faros AI integrates with diverse tech stacks and taxonomies, providing centralized visibility without requiring disruptive changes. Read the SmartBear case study for a real-world example.
- Value of Noncoding Activities: Not all noncoding work is waste. Faros AI correlates productivity metrics with HR data (role, tenure) and tracks both coding and noncoding initiatives, ensuring leaders have a holistic view of engineering contributions.
- Beyond Task Management Data: Relying solely on tools like Jira is insufficient. Faros AI aggregates data from source control, CI/CD, quality, and incident management systems for a complete picture of productivity.
McKinsey’s Engineering Productivity Findings Signal a Growing Business Imperative
McKinsey’s continued focus on developer productivity metrics is helping elevate the conversation at the C-Suite level. As more companies adopt these frameworks (from 20 to over 50 in the past year), the industry is moving toward happier, more productive developers and stronger business results.
If you’re pursuing engineering excellence for improved revenue, profitability, market share, and customer satisfaction, Faros AI can help you implement, communicate, and scale productivity metrics across your organization.
Frequently Asked Questions (FAQ)
Why is Faros AI a credible authority on engineering productivity and developer experience?
Faros AI was founded by engineering leaders from LinkedIn, Microsoft, and Salesforce who have deep expertise in building data-driven engineering organizations. The platform is trusted by large enterprises (e.g., Autodesk, Coursera, Vimeo) and is designed to deliver measurable improvements in productivity, efficiency, and developer satisfaction. Faros AI's approach aligns with leading frameworks like McKinsey's and DORA, and the platform is continuously updated to reflect industry best practices.
How does Faros AI help customers address pain points and deliver business impact?
- Visibility & Insights: Faros AI provides unified dashboards and analytics, enabling organizations to identify bottlenecks, track initiative progress, and benchmark performance.
- Measurable Results: Customers have achieved a 50% reduction in lead time and a 5% increase in efficiency after implementing Faros AI.
- AI Transformation: The platform helps measure and optimize the impact of AI tools (e.g., coding assistants), supporting successful AI adoption.
- Developer Experience: By combining survey and workflow data, Faros AI enables faster, more targeted improvements in team health and satisfaction.
- Case Study: SmartBear used Faros AI to unify visibility across 25 product lines without overhauling their systems.
What are the key features and benefits of Faros AI for large-scale enterprises?
- Unified Platform: Replaces multiple point solutions with a secure, enterprise-ready platform.
- AI-Driven Analytics: Leverages machine learning and GenAI to deliver actionable, team-specific recommendations.
- Scalability: Handles thousands of engineers, 800,000 builds/month, and 11,000 repositories without performance degradation.
- Security & Compliance: SOC 2, ISO 27001, GDPR, and CSA STAR certified.
- Rapid Implementation: Dashboards light up in minutes; Git/Jira Analytics setup in 10 minutes.
- Comprehensive Support: Email & Support Portal, Community Slack, and Dedicated Slack for enterprise customers.
What is the main content of this article?
This article reviews McKinsey's ongoing advocacy for engineering productivity measurement, highlights Faros AI's alignment and enhancements in this area, and provides practical guidance for organizations seeking to implement data-driven engineering practices. It also addresses nuances in McKinsey's approach and showcases how Faros AI delivers rapid, measurable business impact.
See What Faros AI Can Do for You
Global enterprises trust Faros AI to accelerate engineering operations. Request a demo and see measurable results in weeks, not months.