×
AI gets wise with novel reinforcement learning approach
Written by
Published on
Join our daily newsletter for breaking news, product launches and deals, research breakdowns, and other industry-leading AI coverage
Join Now

Google DeepMind and Stanford researchers have developed a new technique that could significantly advance AI’s ability to solve complex, multi-step problems. Step-Wise Reinforcement Learning (SWiRL) specifically addresses the limitations of current large language models when handling complex reasoning tasks that require sequential thinking and tool use. This advancement comes at a crucial time as enterprises increasingly look to integrate sophisticated AI reasoning capabilities into their business applications and workflows.

The big picture: Traditional reinforcement learning methods for training language models fall short when faced with the multi-step reasoning processes required in real-world enterprise applications.

  • SWiRL was developed by Anna Goldie of Google DeepMind and Azalia Mirhosseini of Stanford University to bridge this critical capability gap.
  • The technique specifically targets teaching models how to break down complex problems into manageable subtasks, determining when and how to use tools, and synthesizing findings effectively.

How it works: SWiRL employs a two-stage methodology that combines synthetic data generation with specialized reinforcement learning.

  • The first stage involves generating and filtering large quantities of multi-step reasoning and tool-use data.
  • In the second stage, a step-wise reinforcement learning algorithm optimizes a base language model using these generated trajectories.
  • The approach can even learn from trajectories that end in incorrect final answers, extracting valuable reasoning patterns.

Why this matters: The technique demonstrates strong generalization capabilities, suggesting models trained with SWiRL on one core task would likely show improved performance across seemingly unrelated tasks.

  • This cross-task transfer ability could significantly reduce the need for task-specific fine-tuning in enterprise environments.

Real-world applications: The research addresses practical challenges faced by businesses implementing AI solutions for complex workflows.

  • Multi-step processes like planning marketing campaigns—which involve market research, data analysis, budget calculations, and reviewing customer support—could benefit from SWiRL-enhanced models.
  • These enhanced models would more effectively coordinate between online searches, internal database access, and code execution.
SWiRL: The business case for AI that thinks like your best problem-solvers

Recent News

Disney abandons Slack after hacker steals terabytes of confidential data using fake AI tool

A Disney employee fell victim to malware disguised as an AI art tool, enabling the hacker to steal 1.1 terabytes of confidential data and forcing the company to abandon Slack entirely.

How parents are using ChatGPT to reimagine their kids’ drawings

New AI tools allow parents to turn their children's simple sketches into detailed, realistic renderings while preserving the original creative spirit.

Midjourney V7 charts a riskier, more creative path for image generation

The artistic AI model emphasizes creative experimentation and personalization over the consistency and user-friendliness offered by competitors like ChatGPT.