Study finds AI tools made open source software developers 19 percent slower

Date:

Share:




Time saved on things like active coding was overwhelmed by the time needed to prompt, wait on, and review AI outputs in the study.

Time saved on things like active coding was overwhelmed by the time needed to prompt, wait on, and review AI outputs in the study.


Credit:

METR


On the surface, METR’s results seem to contradict other benchmarks and experiments that demonstrate increases in coding efficiency when AI tools are used. But those often also measure productivity in terms of total lines of code or the number of discrete tasks/code commits/pull requests completed, all of which can be poor proxies for actual coding efficiency.

Many of the existing coding benchmarks also focus on synthetic, algorithmically scorable tasks created specifically for the benchmark test, making it hard to compare those results to those focused on work with pre-existing, real-world code bases. Along those lines, the developers in METR’s study reported in surveys that the overall complexity of the repos they work with (which average 10 years of age and over 1 million lines of code) limited how helpful the AI could be. The AI wasn’t able to utilize “important tacit knowledge or context” about the codebase, the researchers note, while the “high developer familiarity with [the] repositories” aided their very human coding efficiency in these tasks.

These factors lead the researchers to conclude that current AI coding tools may be particularly ill-suited to “settings with very high quality standards, or with many implicit requirements (e.g., relating to documentation, testing coverage, or linting/formatting) that take humans substantial time to learn.” While those factors may not apply in “many realistic, economically relevant settings” involving simpler code bases, they could limit the impact of AI tools in this study and similar real-world situations.

And even for complex coding projects like the ones studied, the researchers are also optimistic that further refinement of AI tools could lead to future efficiency gains for programmers. Systems that have better reliability, lower latency, or more relevant outputs (via techniques such as prompt scaffolding or fine-tuning) “could speed up developers in our setting,” the researchers write. Already, they say there is “preliminary evidence” that the recent release of Claude 3.7 “can often correctly implement the core functionality of issues on several repositories that are included in our study.”

For now, however, METR’s study provides some strong evidence that AI’s much-vaunted usefulness for coding tasks may have significant limitations in certain complex, real-world coding scenarios.



Source link

━ more like this

Rivian agrees to settle shareholder lawsuit for $250 million

Rivian has agreed to settle a 2022 shareholder lawsuit. The automaker will pay out $250 million to qualifying investors if the agreement is...

Big tech is helping to pay for Trump’s ballroom that we all definitely want

The federal government has released a list of all of the entities helping to pay for President Trump's lavish White House ballroom, ....

This battery-powered Ring doorbell is back on sale for a record-low price

Amazon is offering a hefty discount on the . The video doorbell has dropped from its regular price of $150 to $80 in...
spot_img