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

Code Examples

Integration samples and API usage