By way of efficiency, V4 is, maybe unsurprisingly, an enormous soar from R1—and it appears to be a robust different to only about all the most recent huge AI fashions. On the main benchmarks, based on outcomes shared by the corporate, DeepSeek V4-Professional competes with main closed-source fashions, matching the efficiency of Anthropic’s Claude-Opus-4.6, OpenAI’s GPT-5.4, and Google’s Gemini-3.1. And in comparison with different open-source fashions, similar to Alibaba’s Qwen-3.5 or Z.ai’s GLM-5.1, DeepSeek V4 exceeds all of them on coding, math, and STEM issues, making it one of many strongest open-source fashions ever launched.
DeepSeek additionally says that V4-Professional now ranks among the many strongest open-source fashions on benchmarks for agentic coding duties and performs nicely on different exams that measure capacity to hold out multistep issues. Its writing capacity and world information additionally lead the sphere, based on benchmarking outcomes shared by the corporate.
In a technical report launched alongside the mannequin, DeepSeek shared outcomes from an inner survey of 85 skilled builders: Greater than 90% included V4-Professional amongst their high mannequin decisions for coding duties.
DeepSeek says it has particularly optimized V4 for standard agent frameworks similar to Claude Code, OpenClaw, and CodeBuddy.
2. It delivers on a brand new method to reminiscence effectivity.
One of many key improvements of V4 is its lengthy context window—the quantity of textual content the mannequin can course of without delay. Each variations can deal with 1 million tokens, which is giant sufficient to suit all three volumes of The Lord of the Rings and The Hobbit mixed. The corporate says this context window dimension is now the default throughout all DeepSeek companies and it matches what is obtainable by cutting-edge variations of fashions like Gemini and Claude.
Nevertheless it’s vital to know not simply that DeepSeek has made this leap, however how it did so. V4 makes important architectural adjustments to the corporate’s former fashions—particularly within the consideration mechanism, which is the characteristic of AI fashions that helps them perceive every a part of a immediate in relation to the remainder. Because the immediate textual content will get longer, these comparisons change into rather more expensive, making consideration one of many principal bottlenecks for long-context fashions.
