back

From Mixture of Experts to Mixture of Agents with Super Fast Inference – Daniel Kim & Daria Soboleva

Get SIGNAL/NOISE in your inbox daily

AI's next frontier evolves beyond MoE

In the race to build more efficient AI systems, researchers are confronting a pivotal challenge: balancing computational demands against performance. A recent talk by Daniel Kim and Daria Soboleva explores a groundbreaking approach that could fundamentally reshape how we deploy large language models. Their work on transitioning from Mixture of Experts (MoE) to Mixture of Agents represents one of the most promising architectural innovations for making AI systems simultaneously more powerful and more practical.

Key insights from their research:

  • From MoE to Mixture of Agents: The researchers have evolved beyond traditional MoE architectures (which route inputs to specialized neural network "experts") to create a system where specialized language models function as agents with distinct capabilities that can be dynamically composed.

  • Dramatic inference speed improvements: Their approach achieves up to 25x faster inference compared to conventional MoE models while maintaining comparable performance, addressing one of the most significant barriers to real-world AI deployment.

  • Dynamic resource allocation: The system intelligently determines which specialized agents to invoke for each specific task, efficiently managing computational resources by only activating what's needed rather than running the entire model.

  • Hierarchical reasoning capability: By structuring agents in multiple tiers—from small, task-specific models to more sophisticated reasoning models—the architecture enables complex problem-solving through collaboration between different AI components.

Why this architectural shift matters

The most profound insight from this research isn't just about technical performance—it's about reimagining how AI systems should be structured. Traditional approaches to scaling language models have focused primarily on making them bigger, which has yielded impressive capabilities but at unsustainable computational costs. The Mixture of Agents paradigm represents a fundamental pivot toward modular, composable AI that can achieve similar capabilities with dramatically lower resource requirements.

This matters tremendously in the broader AI landscape. We're witnessing a growing tension between what's theoretically possible with AI and what's practically deployable. Companies investing in AI capabilities often find themselves constrained not by what models can do, but by the economics of running them at scale. A 25x improvement in inference speed doesn't just mean faster responses—it potentially transforms AI from a luxury resource to a widely accessible utility.

Beyond the presentation: Implications and applications

Recent Videos

Oct 6, 2025

How To Earn MONEY With Images (No Bullsh*t)

Smart earnings from your image collection In today's digital economy, passive income streams have become increasingly accessible to creators with various skill sets. A recent YouTube video cuts through the hype to explore legitimate ways photographers, designers, and even casual smartphone users can monetize their image collections. The strategies outlined don't rely on unrealistic promises or complicated schemes—instead, they focus on established marketplaces with proven revenue potential for image creators. Key Points Stock photography platforms like Shutterstock, Adobe Stock, and Getty Images remain viable income sources when you understand their specific requirements and optimize your submissions accordingly. Specialized marketplaces focusing...

Oct 3, 2025

New SHAPE SHIFTING AI Robot Is Freaking People Out

Liquid robots will change everything In the quiet labs of Carnegie Mellon University, scientists have created something that feels plucked from science fiction—a magnetic slime robot that can transform between liquid and solid states, slipping through tight spaces before reassembling on the other side. This technology, showcased in a recent YouTube video, represents a significant leap beyond traditional robotics into a realm where machines mimic not just animal movements, but their fundamental physical properties. While the internet might be buzzing with dystopian concerns about "shape-shifting terminators," the reality offers far more promising applications that could revolutionize medicine, rescue operations, and...

Oct 3, 2025

How To Do Homeless AI Tiktok Trend (Tiktok Homeless AI Tutorial)

AI homeless trend raises ethical concerns In an era where social media trends evolve faster than we can comprehend them, TikTok's "homeless AI" trend has sparked both creative engagement and serious ethical questions. The trend, which involves using AI to transform ordinary photos into images depicting homelessness, has rapidly gained traction across the platform, with creators eagerly jumping on board to showcase their digital transformations. While the technical process is relatively straightforward, the implications of digitally "becoming homeless" for entertainment deserve careful consideration. The video tutorial provides a step-by-step guide on creating these AI-generated images, explaining how users can transform...