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Fastly Fastly Fastly Fastly Fastly Fastly Fastly Fastly Fastly Fastly Fastly Fastly Fastly Fastly Fastly Fastly Fastly Fastly Six Common Live Streaming Mistakes (And How to Avoid Them) How Fastly and Skyfire Enable Trusted Agentic Commerce at the Edge Bot Defense is Table Stakes. Machine Traffic Requires a Business Strategy AI Traffic Grew 6.5x Faster Than Human Traffic This Year Python SDK Beta: How the Language of AI Runs Faster and Safer with Fastly Give AI Agents the Markdown They Actually Want How to Configure Local Logging for an On-Prem Next-Gen WAF Agent Accountability Without Control Is Breaking Security Leadership Fastly Joins the Agentic AI Foundation (AAIF) to Guide Edge AI Interoperability The E-commerce Industry in the AI Era: Has the Agentic Flood Hit? No Margin for Error: What the FIFA World Cup Teaches Us About Performance at the Edge Why iGaming Infrastructure is Breaking and What Comes Next The Publishing Industry in the AI Era: Why Bot Strategy is Now a Business Strategy Bad Performance Kills SaaS/PaaS Growth — Why Your CDN Matters Why your code is safe from Copy Fail on Fastly Compute Myth or Marvel: Claude Mythos and What it Means for Security Introducing Compliance Audit Reports Supporting Google Private AI Compute with Privacy-Preserving Edge Infrastructure Fastly Nearly Half the Web Isn’t Human: Inside Fastly’s Threat Insight Report Media over QUIC: Can Streaming Finally Have Both Scale and Low Latency? Introducing Fastly’s Redesigned Homepage: Your Central Hub for Actionable Insights The False Choice of Indiscriminate Blocking: Why Technical Precision is the New Standard for an Open Internet What is CVE-2026-23869? React Server Components Security Alert Fastly enables first-party tagging for Google Advertisers Shrink Your Bill With Efficient Software Your AI coding agent just got better at Fastly Fastly Ranked as a Leader in the 2026 Forrester Wave™ for Edge Development Platforms Fastly at RSAC 2026: New Advances in AppSec, Bot Management, and Deception Mastering the Edge: What Golf Can Teach Us About Speed, Precision, and Performance Real-Time CDN Monitoring for Live Events with Bronto Imperva Alternatives Fastly + Scalepost: Extending the Fastly platform to manage AI Crawlers Best content delivery networks for bot management Maximizing Compute Performance with Log Explorer & Insights Fastly CDN Expands Scaling Fastly Network: Balancing Requests | Fastly Best Practices for Multi-CDN Implementations | Fastly Compute@Edge: Serverless Insights by Company | Fastly Fastly can teach you about the Wasm future in just 6 talks Fastly's Observability Unleashed: New Updates and Insights Optimizing your multi-CDN infrastructure to improve performance Stay ahead of attackers by pushing your security perimeter to the edge Are APIs the Key to Digital Innovation or a Trojan Horse? Fastly Academy: on-demand learning at your fingertips. | Fastly 30 Years of Web: Building for Tomorrow 4 Ways Legacy WAF Fails to Protect Your Apps Adobe boosts performance and MTTR with Epsagon and Fastly logs | Fastly Beta" A New Serverless Compute Environment Early TLS at Fastly Technical trainings & the future of edge delivery at Altitude 2016: a year in review Innovation Capacity Defined: Tech Stack Values | Fastly Deep Log Visibility Offered by Logentries | Fastly Caching the Uncacheable: CSRF Security Increase Your Hit Ratio With This Simple Tip
Vibe Shift? Senior Developers Ship nearly 2.5x more AI Code than Junior Counterparts
Alina Lehtinen-Vela · 2025-08-27 · via Fastly Blog

Key Takeaways

  • Senior developers ship ~2.5× more AI-generated code than juniors (32% vs 13%)

  • AI feels faster, but research shows developers can take ~19% longer with it

  • Nearly 1 in 3 developers spend enough time fixing AI output to offset gains

  • Experience drives trust: senior devs are more confident using AI in production

  • AI boosts morale (~80% enjoy coding more), even if productivity gains are unclear

  • Most developers are aware of AI’s environmental impact

Bottom line: AI coding tools reshape developer workflows more than they improve raw productivity and experience determines who benefits most.

---

Fastly’s July 2025 survey of 791 developers found a notable difference in how much AI-generated code is making it into production. About a third of senior developers (10+ years of experience) say over half their shipped code is AI-generated — nearly two and a half times the rate reported by junior developers (0–2 years of experience), at 13%.

“AI will bench test code and find errors much faster than a human, repairing them seamlessly. This has been the case many times,” one senior developer said. A junior respondent noted the trade-offs: “It’s always hard when AI assumes what I’m doing and that’s not the case, so I have to go back and redo it myself.”

Senior developers were also more likely to say they invest time fixing AI-generated code. Just under 30% of seniors reported editing AI output enough to offset most of the time savings, compared to 17% of juniors. Even so, 59% of seniors say AI tools help them ship faster overall, compared to 49% of juniors.

How Much your Code is AI

Senior Developers Are More Optimistic About AI Saving Time

Just over 50% of junior developers say AI makes them moderately faster. By contrast, only 39% of more senior developers say the same. But senior devs are more likely to report significant speed gains: 26% say AI makes them a lot faster, double the 13% of junior devs who agree.

One reason for this gap may be that senior developers are simply better equipped to catch and correct AI’s mistakes. They have the experience to recognize when code “looks right” but isn’t. That makes them more confident at using AI tools efficiently, even for high-stakes or business-critical code. By contrast, junior developers may not fully trust their ability to spot errors, which can make them more cautious about relying on AI, or more likely to avoid using it in production at all.

That tracks with how much AI-generated code actually makes it into production. Among junior devs, just 13% say over half of their shipped code is AI-generated. By contrast, 32% of senior developers say the same, suggesting that more experienced engineers are not only using AI more aggressively, but are also trusting it more in production environments. This is surprising given growing concerns about “vibe coding” introducing vulnerabilities into applications. 

Perception vs. Reality

Nearly 1 in 3 developers (28%) say they frequently have to fix or edit AI-generated code enough that it offsets most of the time savings. Only 14% say they rarely need to make changes. And yet, over half of developers still feel faster with AI tools like Copilot, Gemini, or Claude.

How often do you fix AI code

Fastly’s survey isn’t alone in calling AI productivity gains into question. A recent randomized controlled trial (RCT) of experienced open-source developers found something even more striking: when developers used AI tools, they took 19% longer to complete their tasks.

This disconnect may come down to psychology. AI coding often feels smooth: code autocompletes with a few keystrokes. This gives the impression of momentum, but the early speed gains are often followed by cycles of editing, testing, and reworking that eat into any gains. This pattern is echoed both in conversations we've had with Fastly developers and in many of the comments we received in our survey.

One respondent put it this way: “An AI coding tool like GitHub Copilot greatly helps my workflow by suggesting code snippets and even entire functions. However, it once generated a complex algorithm that seemed correct but contained a subtle bug, leading to several hours of debugging.”

Another noted: “The AI tool saves time by using boilerplate code, but it also needs manual fixes for inefficiencies, which keep productivity in check.”

Yet, AI still seems to improve developer job satisfaction. Nearly 80% of developers say AI tools make coding more enjoyable. For some, it’s about skipping grunt work. For others, it might be the dopamine rush of code on demand.

How have AI tools affected your enjoyment of work

“It helps me complete a task that I’m stuck with. It allows me to find the answers necessary to finish the task,” one survey respondent says.

Enjoyment doesn’t equal efficiency, but in a profession wrestling with burnout and backlogs, that morale boost might still count for something.

The Hidden Cost of AI Coding

Fastly’s survey also explored developer awareness of green coding—the practice of writing energy-efficient software— and the energy cost behind AI coding tools. The practice of green coding goes up sharply with experience. Just over 56% of junior developers say they actively consider energy use in their work, while nearly 80% among mid- and senior-level engineers consider this when coding. 

Developers are very aware of the environmental cost of AI tools: roughly two-thirds of developers across all experience levels said they know that these tools can carry a significant carbon footprint. Only a small minority (under 8% even at the most junior levels) were completely unaware. Altogether, the data suggests that sustainability is increasingly embedded in developer culture.

Methodology

This survey was conducted by Fastly from July 10 to July 14, 2025, with 791 professional developers. All respondents confirm that writing or reviewing code is a core part of their job. The survey is distributed in the US and quality-controlled for accuracy, though, as with all self-reported data, some bias is possible.