score
Magistral Small 1.2 scores 11 on the Artificial Analysis Intelligence Index, placing it above …
vs class avg: 9
Intelligence, Performance & Price Analysis
score
Magistral Small 1.2 scores 11 on the Artificial Analysis Intelligence Index, placing it above …
vs class avg: 9
output tokens/sec
Magistral Small 1.2 generates output at 80.1 tokens per second (based on Mistral's API), which is …
TTFT
Magistral Small 1.2 has a time to first token (TTFT) of 0.99s (based on Mistral's API), which is …
/ 1M tokens
Magistral Small 1.2 costs $0.50 per 1M input tokens (at the higher end, median: $0.18) and $1. …
/ 1M tokens
Magistral Small 1.2 costs $0.50 per 1M input tokens (at the higher end, median: $0.18) and $1. …
Ethen's intelligence-driven routing assessment for this model
Overall verdict
Capable everyday model
Good for routine tasks; route complex reasoning and premium workloads to stronger models.
Routing recommendation
Cheaper routes for predictable extraction, labeling, or summarization
Cache-backed reuse for repeated prompts
Cost pressure
Moderate pricing — $0.50 / M input, $1.50 / M output. Costs are manageable, but volume should still be reviewed.
Use this model where capability pays for itself; route away where volume, latency, or budget dominate.
| Use case | Fit | Reason | Routing note |
|---|---|---|---|
| Complex reasoning & agentic workflows | Moderate | Intelligence score 11 handles routine reasoning but may struggle with open-ended agentic tasks. | Route simpler sub-tasks here; keep hard reasoning on a stronger model. |
| High-volume chat & customer-facing | Strong | Output speed 80.1 tokens/sec is adequate for chat. | Suitable for chat; monitor latency under concurrent load. |
| Latency-sensitive applications | Excellent | TTFT 0.99s — among the lowest latencies, suitable for interactive latency-critical use cases. | Good first choice for real-time applications. |
| Cost-sensitive pipelines | Strong | Output pricing at $1.50 is reasonable for moderate volume. | Suitable for production; review costs as volume grows. |
Cost pressure
MediumPricing is moderate — input $0.50, output $1.50. Costs accumulate at volume but are manageable for valuable tasks.
Key benchmark results at a glance.
Intelligence
Artificial Analysis Intelligence Index · Higher is better · Evaluation results measured independently by Artificial Analysis
Magistral Small 1.2 scores 11 on the Artificial Analysis Intelligence Index, placing it above average among other open weight models of similar size (median: 9).
Speed
Output tokens per second · Higher is better · Evaluation results measured independently by Artificial Analysis
Magistral Small 1.2 generates output at 80.1 tokens per second (based on Mistral's API), which is below average compared to other open weight models of similar size (median: 101.0 t/s).
Context, Cost & Pricing
Weighted average cost (USD) per Intelligence Index task · Lower is better · Evaluation results measured independently by Artificial Analysis
Pricing is moderate — input $0.50, output $1.50. Costs accumulate at volume but are manageable for valuable tasks.
Benchmark scores and quality indices measuring model capability.
AA-Omniscience Index (higher is better) measures knowledge reliability and hallucination. It rewards correct answers, penalizes hallucinations, and has no penalty for refusing to answer. Scores range from -100 to 100, where 0 means as many correct as incorrect answers, and negative scores mean more incorrect than correct. · Evaluation results measured independently by Artificial Analysis
Chart source and provenance are listed in Methodology & sources below.
Artificial Analysis Intelligence Index v4.1 incorporates 9 evaluations: GDPval-AA v2, 𝜏³-Banking, Terminal-Bench v2.1, SciCode, Humanity's Last Exam, GPQA Diamond, CritPt, AA-Omniscience, AA-LCR · Evaluation results measured independently by Artificial Analysis
Chart source and provenance are listed in Methodology & sources below.
Artificial Analysis Intelligence Index v4.1 incorporates 9 evaluations: GDPval-AA v2, 𝜏³-Banking, Terminal-Bench v2.1, SciCode, Humanity's Last Exam, GPQA Diamond, CritPt, AA-Omniscience, AA-LCR · Evaluation results measured independently by Artificial Analysis
Chart source and provenance are listed in Methodology & sources below.
Openness Index assesses model openness on a 0 to 100 normalized scale (higher is more open) · Evaluation results measured independently by Artificial Analysis
Chart source and provenance are listed in Methodology & sources below.
Artificial Analysis Intelligence Index · Higher is better · Evaluation results measured independently by Artificial Analysis
Chart source and provenance are listed in Methodology & sources below.
Output tokens per second and generation throughput.
Output tokens per second · Higher is better · Evaluation results measured independently by Artificial Analysis
Chart source and provenance are listed in Methodology & sources below.
Output tokens per second · Higher is better · Evaluation results measured independently by Artificial Analysis
Chart source and provenance are listed in Methodology & sources below.
Time to first token and end-to-end response latency.
Seconds to output 500 tokens, including reasoning model 'thinking' time · Lower is better · Evaluation results measured independently by Artificial Analysis
Chart source and provenance are listed in Methodology & sources below.
Seconds to first answer token received · Accounts for reasoning model 'thinking' time · Evaluation results measured independently by Artificial Analysis
Chart source and provenance are listed in Methodology & sources below.
Context window size, cost per task, and token pricing.
Context window: tokens limit · Higher is better · Evaluation results measured independently by Artificial Analysis
Chart source and provenance are listed in Methodology & sources below.
Weighted average cost (USD) per Artificial Analysis Intelligence Index task, segmented by token type. Lower is better · Evaluation results measured independently by Artificial Analysis
Chart source and provenance are listed in Methodology & sources below.
Weighted average cost (USD) per Intelligence Index task · Lower is better · Evaluation results measured independently by Artificial Analysis
Chart source and provenance are listed in Methodology & sources below.
Cost (USD) to run all evaluations in the Artificial Analysis Intelligence Index · Evaluation results measured independently by Artificial Analysis
Chart source and provenance are listed in Methodology & sources below.
Price (USD per M Tokens) · Evaluation results measured independently by Artificial Analysis
Chart source and provenance are listed in Methodology & sources below.
Weighted average decode time (minutes) per task; excludes TTFT and overhead time · Lower is better · Evaluation results measured independently by Artificial Analysis
Chart source and provenance are listed in Methodology & sources below.
Model size, parameters, and architectural details.
Comparison between total model parameters and parameters active during inference · Evaluation results measured independently by Artificial Analysis
Chart source and provenance are listed in Methodology & sources below.
Further benchmark and comparison data.
Weighted average number of output tokens used to run one task in the Artificial Analysis Intelligence Index · Evaluation results measured independently by Artificial Analysis
Chart source and provenance are listed in Methodology & sources below.
Magistral Small 1.2 scores 11 on the Artificial Analysis Intelligence Index, placing it above average among other open weight models of similar size (median: 9). Magistral Small 1.2 generates output at 80.1 tokens per second (based on Mistral's API), which is below average compared to other open weight models of similar size (median: 101.0 t/s). Magistral Small 1.2 costs $0.50 per 1M input tokens (at the higher end, median: $0.18) and $1.50 per 1M output tokens (somewhat higher than average, median: $0.40), based on Mistral's API.
This page is rendered from the normalized profile and page JSON for Magistral Small 1.2.
Benchmark values are preserved as normalized; only layout, disclosure ordering, and typography are adjusted for readability.