o4 mini
100
About
o4-mini is a compact, multimodal generative model designed for fast, practical reasoning across text and images. It natively accepts visual and textual inputs together, so users can ask it to interpret whiteboard sketches, handwritten formulas, charts, or screenshots alongside written instructions. The model shines at mathematical problem solving, coding tasks, and visual analysis: it delivers strong accuracy on contest-level math, solid real-world software assistance, and reliable diagram interpretation. Practical features include transparent step-by-step reasoning (so you can follow or intervene in its logic), self-checking to reduce factual errors, and the ability to use external tools — like web lookups or code execution — in parallel to complete complex tasks.
For end users this means faster, more explainable results: students can get clear worked solutions and formula recognition; developers can receive helpful code snippets, debugging guidance and context-aware suggestions; teams can analyze long documents, entire projects, or lengthy conversations thanks to a very large context window (supporting extremely large inputs and outputs). o4-mini is optimized for cost-efficiency and speed, offering a good balance of performance for production workflows that need high-quality reasoning without the expense of the largest models.
It also includes enhanced safety and alignment features to reduce risky outputs and improve content filtering. Limitations: it trades off some accuracy on highly specialized benchmarks compared with larger models and isn’t the top choice for narrow domain specialists (for example, some specialized chemistry models may outperform it). Overall, o4-mini is ideal for education, research support, collaborative visual work, and most code- and math-focused workflows where multimodal understanding and fast, explainable reasoning matter.
Percs
Multi-modal
High accuracy
Large context
Fast generation
Settings
Response length- The maximum number of tokens to generate in the output.