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Home»Artificial Intelligence»Cursor’s Composer 2 beats Opus 4.6 on coding benchmarks at a fraction of the price
Artificial Intelligence

Cursor’s Composer 2 beats Opus 4.6 on coding benchmarks at a fraction of the price

primereportsBy primereportsMarch 23, 2026No Comments3 Mins Read
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Cursor’s Composer 2 beats Opus 4.6 on coding benchmarks at a fraction of the price
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Cursor on Thursday released Composer 2, the third generation of its in-house coding model. The model outperforms Anthropic’s Opus 4.6 on some key coding benchmarks, and does so at a fraction of the cost. 

The new Cursor model costs as little as $0.5 per million input tokens and $2.5 per million output tokens. There is also a fast mode, which will be the default option, but it costs 3x as much, at $1.5/$7.5 per million input/output tokens. This fast mode offers the same intelligence, just at a higher price.

In comparison, Opus 4.6 costs $5/$25 and OpenAI’s GPT-5.4 $2.5/$15.

Cursor’s Composer 2 beats Opus 4.6 on coding benchmarks at a fraction of the price
Credit: Cursor.

On Terminal-Bench 2.0, a benchmark that measures how well AI agents handle real-world software engineering tasks in a terminal environment, the model scores 61.7%, beating Anthropic’s Claude Opus 4.6, which scores 58.0%. That’s still well behind OpenAI’s GPT-5.4 at 75.1%, but it shows how quickly Cursor has managed to catch up with the competition as it is speeding up its own model projects.

Since Cursor is model-agnostic, developers can choose which model to run or use Cursor’s Auto mode, which selects the best model based on a trade-off between intelligence, speed, and cost.

Credit: Cursor.

5 Months, 3 Generations

Composer 2 is the third Composer release since October. Cursor shipped the original Composer model, along with its 2.0 platform redesign, in October 2025. Composer 1.5 followed this February, and at the time, it was still trailing Opus 4.6 by 10% on Terminal-Bench 2.0. 

Previous Composer models applied reinforcement learning to an existing base model without modifying the base itself. Cursor notes that Composer 2 is the first version where Cursor ran continuous pre-training, which the company says provided “a far stronger base to scale our reinforcement learning.”

Training the model to compress its own memory

The key technical innovation for this new model is a training technique Cursor calls ‘self-summarization.’ “We trained Composer for long-horizon tasks through a reinforcement learning process called self-summarization. By making self-summarization part of Composer’s training, we can get training signal from trajectories much longer than the model’s max context window,” the company writes in its announcement.

Credit: Cursor.

Agentic coding tends to generate long action histories that quickly exceed a model’s context window. Traditionally, companies like Cursor compaction either creates a compact text-based summary of the work the model previously did, or there is a sliding context window that drops older context in favor of more recent work. 

“These approaches to compaction share the downside that they can cause the model to forget critical information from the context, reducing its efficacy as it advances through long-running tasks,” Cursor argues.

Cursor’s approach, which the team calls compaction-in-the-loop reinforcement learning, builds summarization directly into the training loop. When a generation hits a token-length trigger, the model pauses and compresses its own context to roughly 1,000 tokens, down from 5,000 or more with more traditional methods. Because the reinforcement learning reward the team used when training the model covers the entire chain, including the summarization steps, the model learns which details to keep and which to discard.

According to Cursor’s research post, self-summarization reduces compaction errors by 50%.


Group Created with Sketch.

Before joining The New Stack as its senior editor for AI, Frederic was the enterprise editor at TechCrunch, where he covered everything from the rise of the cloud and the earliest days of Kubernetes to the advent of quantum computing….

Read more from Frederic Lardinois



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