Google is pushing the boundaries of artificial intelligence with Google DeepMind AlphaEvolve, a new AI tool that generates better algorithms to solve real-world problems, from server optimization to chip efficiency.
Google DeepMind AlphaEvolve builds on years of AI research and is powered by the Gemini 2.0 large language model. Unlike typical coding AIs, AlphaEvolve uses a unique scoring method to refine its solutions. It generates multiple code options, evaluates them for performance, and continues refining them until it produces the most efficient result.
One standout example is how Google used AlphaEvolve to improve how it allocates jobs across its millions of servers. The tool’s optimization helped save 0.7% of total computing resources—a major win at Google’s scale. The same tool also helped cut power usage on Google’s tensor processing unit (TPU) chips, which are critical for running AI models.
AlphaEvolve even found ways to speed up the training of Gemini itself by improving internal computations used during training. These real-world wins show how AlphaEvolve can have a major impact beyond theory.
The tool works by prompting Gemini 2.0 Flash to generate code based on a problem description. Each version is tested and scored. The best versions are refined further, sometimes using the more powerful Gemini 2.0 Pro to break deadlocks. This evolutionary process continues until no better solution emerges.
AlphaEvolve is the next step in DeepMind’s journey, following earlier tools like AlphaTensor and AlphaDev, which tackled complex math puzzles. But unlike its predecessors, AlphaEvolve can write long programs and handle a wide variety of problems, not just theoretical ones.
It’s already shown its power in matrix multiplication—beating previous records—and solved over 50 other math challenges. However, what makes AlphaEvolve different is its real-world impact, from saving energy to improving hardware performance.
While it doesn’t always offer insight into why its solutions work, experts agree its ability to solve problems is groundbreaking. “AI is becoming an essential tool in math, science, and industry,” says Jakob Moosbauer, a mathematician at the University of Warwick.
As Google DeepMind continues to test and expand AlphaEvolve, the potential applications—across tech, research, and daily life—are enormous. Whether optimizing cloud systems or powering faster chips, Google DeepMind AlphaEvolve is showing how AI can make our world run better.