Open-Sourced AI Models May Be More Costly in the Long Run, Study Finds

0
10K

As more businesses adopt AI, picking which model to go with is a major decision. While open-sourced models may seem cheaper initially, a new study warns that those savings can evaporate fast, due to the extra computing power they require.

In fact, open-source AI models burn through significantly more computing resources than their closed-source rivals when performing the same tasks, according to a study published Thursday by Nous Research.

The researchers tested dozens of AI models, including closed systems from Google and OpenAI, as well as open-source models from DeepSeek and Magistral. They measured how much computing effort each required to complete identical tasks across three categories: simple knowledge questions, math problems, and logic puzzles.

To do this, they used the number of tokens each model used to solve and answer questions as for computing resources consumed.

“Open-weight models use 1.5–4× more tokens than closed ones—and up to 10× for simple knowledge questions—making them sometimes more expensive per query despite lower per-token costs,” the study authors wrote.

Why token efficiency matters

In AI, a token is a piece of text or data—it could be a word, part of a word, or even punctuation—that models use to understand language. Models process and generate text one token at a time, so the more tokens they use, the more computing power and time a task requires.

Since most closed-source models don’t reveal their raw reasoning process or chain of thought (CoT), the researchers measured their computing efficiency by counting the tokens they used instead. Because models are billed by total output tokens used in their reasoning process and outputting the final answer, completion tokens serve as a proxy for the effort needed to produce a response.

This is an important consideration for companies using AI for many reasons.

“First, while hosting open weight models may be cheaper, this cost advantage could be easily offset if they require more tokens to reason about a given problem,” the researchers wrote. “Second, an increased number of tokens will lead to longer generation times and increased latency.”

Closed models were the clear winners

The study found that open models consistently use more tokens than closed models for the same tasks, sometimes three times as many for simple knowledge questions. The gap narrowed to less than twice for math and logic problems.

“Closed models (OpenAI, Grok-4) optimize for fewer tokens to cut costs, while open models (DeepSeek, Qwen) use more tokens, possibly for better reasoning,” the study authors wrote.

Among open models, llama-3.3-nemotron-super-49b-v1 was the most efficient, while Magistral models were the most inefficient.

OpenAI’s models were standouts as well. Both its o4‑mini and the new open-weight gpt‑oss models showed impressive token efficiency, especially on math problems.

The researchers noted that OpenAI’s gpt‑oss models, with their concise chain-of-thoughts, could serve as a benchmark for improving token efficiency in other open models.

Like
Love
Haha
3
Search
Categories
Read More
News
Kể từ nay, chưa trả tiền sử dụng đất có thể sang tên Sổ đỏ được không?
Theo khoản 5 Điều 45 Luật Đất đai 2024, trường hợp...
By AdDull849 2025-08-03 03:12:06 0 8K
Xã Hội
Bắt Chủ tịch Công ty cà phê Ia Châm, anh trai ông Thích Minh Tuệ
Công an tỉnh Gia Lai đã bắt tạm giam ông Lê Anh Tuấn, Chủ tịch kiêm Giám đốc Công ty TNHH MTV Cà...
By HandsomeNbusty 2025-07-02 07:23:06 0 9K
News
Con giáp nào may mắn vào Thứ năm, ngày 21 tháng 8, tức 28 tháng 6 nhuận âm lịch?
Đầu tiên là Ngọ Ngũ hành của ngựa vào giờ ngọ là hỏa....
By Dumbsol 2025-08-20 08:55:06 0 8K
Tech
Trump Admin Has Dropped a Third of All Investigations Into Big Tech, Advocates Say
Trump talked a big game during the election about...
By UsefulPut1111 2025-08-15 18:39:02 0 8K
News
Hướng dẫn cách đổi thẻ Căn cước theo quê quán, địa chỉ mới thông qua ứng dụng VNeID
Các bước sau để đăng ký đổi thẻ Căn cước theo địa chỉ...
By biegeylo 2025-08-21 02:27:11 0 8K