Ptechhub
  • News
  • Industries
    • Enterprise IT
    • AI & ML
    • Cybersecurity
    • Finance
    • Telco
  • Brand Hub
    • Lifesight
  • Blogs
No Result
View All Result
  • News
  • Industries
    • Enterprise IT
    • AI & ML
    • Cybersecurity
    • Finance
    • Telco
  • Brand Hub
    • Lifesight
  • Blogs
No Result
View All Result
PtechHub
No Result
View All Result

Small Language Models Are the New Rage, Researchers Say

By Wired by By Wired
April 13, 2025
Home AI & ML
Share on FacebookShare on Twitter


The original version of this story appeared in Quanta Magazine.

Large language models work well because they’re so large. The latest models from OpenAI, Meta, and DeepSeek use hundreds of billions of “parameters”—the adjustable knobs that determine connections among data and get tweaked during the training process. With more parameters, the models are better able to identify patterns and connections, which in turn makes them more powerful and accurate.

But this power comes at a cost. Training a model with hundreds of billions of parameters takes huge computational resources. To train its Gemini 1.0 Ultra model, for example, Google reportedly spent $191 million. Large language models (LLMs) also require considerable computational power each time they answer a request, which makes them notorious energy hogs. A single query to ChatGPT consumes about 10 times as much energy as a single Google search, according to the Electric Power Research Institute.

In response, some researchers are now thinking small. IBM, Google, Microsoft, and OpenAI have all recently released small language models (SLMs) that use a few billion parameters—a fraction of their LLM counterparts.

Small models are not used as general-purpose tools like their larger cousins. But they can excel on specific, more narrowly defined tasks, such as summarizing conversations, answering patient questions as a health care chatbot, and gathering data in smart devices. “For a lot of tasks, an 8 billion–parameter model is actually pretty good,” said Zico Kolter, a computer scientist at Carnegie Mellon University. They can also run on a laptop or cell phone, instead of a huge data center. (There’s no consensus on the exact definition of “small,” but the new models all max out around 10 billion parameters.)

To optimize the training process for these small models, researchers use a few tricks. Large models often scrape raw training data from the internet, and this data can be disorganized, messy, and hard to process. But these large models can then generate a high-quality data set that can be used to train a small model. The approach, called knowledge distillation, gets the larger model to effectively pass on its training, like a teacher giving lessons to a student. “The reason [SLMs] get so good with such small models and such little data is that they use high-quality data instead of the messy stuff,” Kolter said.

Researchers have also explored ways to create small models by starting with large ones and trimming them down. One method, known as pruning, entails removing unnecessary or inefficient parts of a neural network—the sprawling web of connected data points that underlies a large model.

Pruning was inspired by a real-life neural network, the human brain, which gains efficiency by snipping connections between synapses as a person ages. Today’s pruning approaches trace back to a 1989 paper in which the computer scientist Yann LeCun, now at Meta, argued that up to 90 percent of the parameters in a trained neural network could be removed without sacrificing efficiency. He called the method “optimal brain damage.” Pruning can help researchers fine-tune a small language model for a particular task or environment.

For researchers interested in how language models do the things they do, smaller models offer an inexpensive way to test novel ideas. And because they have fewer parameters than large models, their reasoning might be more transparent. “If you want to make a new model, you need to try things,” said Leshem Choshen, a research scientist at the MIT-IBM Watson AI Lab. “Small models allow researchers to experiment with lower stakes.”

The big, expensive models, with their ever-increasing parameters, will remain useful for applications like generalized chatbots, image generators, and drug discovery. But for many users, a small, targeted model will work just as well, while being easier for researchers to train and build. “These efficient models can save money, time, and compute,” Choshen said.


Original story reprinted with permission from Quanta Magazine, an editorially independent publication of the Simons Foundation whose mission is to enhance public understanding of science by covering research developments and trends in mathematics and the physical and life sciences.



Source link

Tags: Artificial Intelligencequanta magazinescience
By Wired

By Wired

Next Post
Five Chinese AI plays that could ride out trade war volatility

Five Chinese AI plays that could ride out trade war volatility

Recommended.

FiEE, Inc. to Invest Approximately .0 Million to Build AI Music Ecosystem

FiEE, Inc. to Invest Approximately $3.0 Million to Build AI Music Ecosystem

March 27, 2026
Five Cool AI PCs Unveiled At HP Amplify 2025

Five Cool AI PCs Unveiled At HP Amplify 2025

March 18, 2025

Trending.

Weibo Publishes 2025 Environmental, Social and Governance Report

Weibo Publishes 2025 Environmental, Social and Governance Report

April 28, 2026
It Takes 2 Minutes to Hack the EU’s New Age-Verification App

It Takes 2 Minutes to Hack the EU’s New Age-Verification App

April 18, 2026
CTIA Names Preston Wise Senior Vice President of External and State Affairs

CTIA Names Preston Wise Senior Vice President of External and State Affairs

May 6, 2026
The AI Correction Will Not Be Evenly Distributed | Computer Weekly

The AI Correction Will Not Be Evenly Distributed | Computer Weekly

May 5, 2026
Match Group Announces First Quarter Results

Match Group Announces First Quarter Results

May 5, 2026

PTechHub

A tech news platform delivering fresh perspectives, critical insights, and in-depth reporting — beyond the buzz. We cover innovation, policy, and digital culture with clarity, independence, and a sharp editorial edge.

Follow Us

Industries

  • AI & ML
  • Cybersecurity
  • Enterprise IT
  • Finance
  • Telco

Navigation

  • About
  • Advertise
  • Privacy & Policy
  • Contact

Subscribe to Our Newsletter

  • About
  • Advertise
  • Privacy & Policy
  • Contact

Copyright © 2025 | Powered By Porpholio

No Result
View All Result
  • News
  • Industries
    • Enterprise IT
    • AI & ML
    • Cybersecurity
    • Finance
    • Telco
  • Brand Hub
    • Lifesight
  • Blogs

Copyright © 2025 | Powered By Porpholio