


Claude 3 overtakes GPT-4 Arena to reach the top! Xiaobei Haiku becomes the new favorite of developers: unrivaled cost-effectiveness
GPT-4 has really been overtaken!
In the large model arena, Claude 3 Grand Cup Opus is the new king, and the Elo score reaches the top of the list.
Even Xiaobei Haiku has entered the second echelon, surpassing the GPT-4-0613 model and leaving GPT-3.5-turbo far behind.
Haiku’s input token price is half cheaper than GPT-3.5-turbo. In terms of output, it is also nearly 2 cheaper than GPT-3.5-turbo per 1 million tokens. bucks.
Compared with GPT-4, the price is only 1/20. And Haiku also supports 200k context.
No wonder some developers bluntly said:
GPT-3.5 is vulnerable to Claude Haiku.
Not only is the price cheaper, Haiku has also gone to the next level.
Before Claude 3 joined the competition, the GPT-4 family had dominated the rankings for almost a year.
Add some background knowledge to new friends: The scoring standard for the LMSYS Chatbot Arena Leaderboard is human scoring, the same question Throw it to two models A and B at the same time, and the human referee will vote for whichever answer is better.
小 Cup Haiku has become the new favorite of developers
It is worth mentioning that in the official congratulatory message from the Arena, the Haiku model was also highlighted:
According to our user preferences, Claude 3 Haiku reaches GPT-4 level.
Its speed, functionality and context length are unique on the market today.
Some netizens have made a direct comparison of how fast it is:
Bolt has not finished running 100 meters, Haiku has already I’ve finished reading the 100k token document...
In fact, with its super cost-effectiveness, in the developer community, Claude 3 Cup Haiku has indeed become a new favorite.
Someone has immediately opened up their imagination and created an open source project that can "overclock" the Haiku effect to the level of a large Opus, attracting a lot of attention.
To put it simply, let Opus be a teacher for Haiku:
First use Opus to generate examples of performing tasks, and then use these teaching cases to improve Haiku posture level.
Key point: Haiku's price is only 1/60 of Opus, and its response speed is 10 times that of Opus.
This project called gpt-prompt-engineer currently has a total of 7.3k stars on GitHub.
It’s this brother Matt who also used Opus and Haiku to create an “AI stock analyst”, which directly became popular on GitHub.
不少應用程式產品也在第一時間接入了Haiku。例如能依據Prompt自動產生網站UI的Vercel。
△就說快不快吧
不過,就在一片給Claude 3新王點讚的聲音中,也有網友認為:
GPT-3.5作為一個「老」模型,至今仍在與最新的模型競爭,這件事本身就很瘋狂了。
但最讓開發者們期待的當然還是:
OpenAI,快起來卷( doge)。
The above is the detailed content of Claude 3 overtakes GPT-4 Arena to reach the top! Xiaobei Haiku becomes the new favorite of developers: unrivaled cost-effectiveness. For more information, please follow other related articles on the PHP Chinese website!

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