Mistral Nemo vs Databricks Llama 3.1 405B

Performance benchmarks + pricing comparison — updated April 2026

Mistral Nemo

Mistral

Compact 12B open-weight model co-developed with NVIDIA. Excellent coding performance at minimal cost.

Input$0.150/M
Output$0.150/M
Context128K tokens
Best ForSelf-hosted deployments, cost-sensitive coding, edge deployments
Benchmark48/100

Databricks Llama 3.1 405B

Databricks

Meta's 405B model hosted on Databricks. Largest open-weight model available for enterprise use.

Input$5.00/M
Output$15.00/M
Context128K tokens
Best ForEnterprise AI, complex reasoning, custom fine-tuning

Cost Comparison by Scenario

Estimated cost per project with 30% cache hit rate. Actual costs may vary based on usage patterns.

ScenarioMistral NemoDatabricks Llama 3.1 405BSavings
Small Script (1K lines) <$0.01 $0.63 Mistral Nemo saves $0.62 (98%)
Medium Feature (10K lines) $0.08 $4.75 Mistral Nemo saves $4.67 (98%)
Large Project (50K lines) $0.41 $23.75 Mistral Nemo saves $23.34 (98%)
Code Review (5K lines) $0.03 $1.25 Mistral Nemo saves $1.22 (98%)

Verdict

Mistral Nemo wins on both price and performance — $0.150/M input with a benchmark score of N/A/100.

For most developers, this is the clear choice between these two models.

Compare with Other Models