ling-1t by openrouter - AI Model Details, Pricing, and Performance Metrics

inclusionai

ling-1t

completions
byopenrouter

Ling-1T is a trillion-parameter open-weight large language model developed by inclusionAI and released under the MIT license. It represents the first flagship non-thinking model in the Ling 2.0 series, built around a sparse-activation architecture with roughly 50 billion active parameters per token. The model supports up to 128 K tokens of context and emphasizes efficient reasoning through an “Evolutionary Chain-of-Thought (Evo-CoT)” training strategy. Pre-trained on more than 20 trillion reasoning-dense tokens, Ling-1T achieves strong results across code generation, mathematics, and logical reasoning benchmarks while maintaining high inference efficiency. It employs FP8 mixed-precision training, MoE routing with QK normalization, and MTP layers for compositional reasoning stability. The model also introduces LPO (Linguistics-unit Policy Optimization) for post-training alignment, enhancing sentence-level semantic control. Ling-1T can perform complex text generation, multilingual reasoning, and front-end code synthesis with a focus on both functionality and aesthetics.

Released
Oct 8, 2025
Knowledge
Apr 11, 2025
Context
131072
Input
$0.57 / 1M tokens
Output
$2.28 / 1M tokens
Capabilities: tools
Accepts: text
Returns: text

Access ling-1t through LangDB AI Gateway

Recommended

Integrate with inclusionai's ling-1t and 250+ other models through a unified API. Monitor usage, control costs, and enhance security.

Unified API
Cost Optimization
Enterprise Security
Get Started Now

Free tier available • No credit card required

Instant Setup
99.9% Uptime
10,000+Monthly Requests

Category Scores

Benchmark Tests

View Other Benchmarks
AA Coding Index
37.6
Programming
AAII
44.8
General
AA Math Index
71.3
Mathematics
GPQA
71.9
STEM (Physics, Chemistry, Biology)
HLE
7.2
General Knowledge
LiveCodeBench
67.7
Programming
MMLU-Pro
82.2
General Knowledge
SciCode
35.2
Scientific

Code Examples

Integration samples and API usage