Capability
20 artifacts provide this capability.
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Find the best match →via “reasoning and complex task decomposition”
Mistral's 12B model with 128K context window.
Unique: Trained explicitly for reasoning tasks with extended 128K context enabling multi-step reasoning chains and complex problem decomposition, though specific reasoning techniques not disclosed
vs others: Larger context window (128K vs 32K in Mistral 7B) enables longer reasoning chains without truncation, improving reasoning quality for complex multi-step problems
via “reasoning and step-by-step problem decomposition”
text-generation model by undefined. 95,66,721 downloads.
Unique: Emergent chain-of-thought capability from instruction tuning on reasoning datasets; no explicit reasoning module or symbolic engine — reasoning emerges from learned token prediction patterns that favor intermediate explanation tokens, making it lightweight but probabilistic
vs others: Provides transparent reasoning comparable to GPT-4 on simple problems but with full local control; outperforms Mistral-7B on reasoning tasks due to instruction tuning, but lacks the formal verification and symbolic reasoning of specialized tools like Wolfram Alpha
via “chain-of-thought-multi-stage-reasoning”
Google's vision-language-action model for robotics.
Unique: Integrates chain-of-thought reasoning directly into the action generation pipeline by representing both reasoning steps and actions as text tokens, allowing the same transformer to generate interpretable intermediate steps and grounded robot actions
vs others: Provides interpretability and reasoning transparency that black-box policy networks lack, while avoiding separate symbolic reasoning systems by leveraging the language model's native ability to generate and process reasoning text
via “chain-of-thought reasoning with reinforcement learning optimization”
text-generation model by undefined. 38,71,385 downloads.
Unique: Uses RL-based training to learn dynamic reasoning token allocation per problem, making reasoning depth adaptive rather than fixed; explicitly optimizes for reasoning quality via reward signals rather than implicit capability from instruction tuning
vs others: Outperforms GPT-4 and Claude on AIME/MATH benchmarks by learning to allocate reasoning compute efficiently, while remaining open-source and deployable locally without API dependencies
via “multi-step reasoning with internal thought chains”
Proactive personal AI agent with no limits
Unique: Maintains explicit reasoning state across steps with backtracking capability, allowing the agent to revise earlier conclusions rather than committing to single-pass inference like most LLM-based agents
vs others: Provides better explainability than black-box agents by exposing intermediate reasoning, though at the cost of increased latency compared to single-pass inference approaches
via “multi-step reasoning with graph-based state tracking”
** - Neo4j graph database server (schema + read/write-cypher) and separate graph database backed memory
Unique: Represents reasoning as a queryable graph rather than a linear log, enabling agents to navigate reasoning space, backtrack to alternative branches, and explain decisions by traversing causal chains. Integrates with Neo4j's path-finding algorithms to identify optimal reasoning routes.
vs others: More powerful than linear reasoning logs because it enables non-linear exploration and recovery; more interpretable than embedding-based state tracking because relationships are explicit.
via “multi-step reasoning with chain-of-thought orchestration”
An open-source framework for building production-grade LLM applications. It unifies an LLM gateway, observability, optimization, evaluations, and experimentation.
Unique: Provides a declarative workflow engine for multi-step reasoning with automatic context passing and error handling, rather than requiring manual orchestration code in the application
vs others: More maintainable than hardcoded step sequences because workflows are declarative and can be modified without code changes, whereas manual orchestration requires application code updates
via “reasoning and step-by-step problem decomposition”
Meta's latest class of model (Llama 3.1) launched with a variety of sizes & flavors. This 70B instruct-tuned version is optimized for high quality dialogue usecases. It has demonstrated strong...
Unique: Instruction-tuned on datasets containing explicit reasoning traces (e.g., math solutions with working, logic puzzles with step-by-step explanations), enabling the model to learn to generate intermediate reasoning as a learned behavior rather than relying on prompt engineering alone.
vs others: More reliable than base models at producing coherent reasoning chains; comparable to GPT-4 on standard benchmarks but with lower latency and cost, though may underperform on novel reasoning patterns not well-represented in training data.
via “extended reasoning with long-horizon planning”
Kimi K2 Thinking is Moonshot AI’s most advanced open reasoning model to date, extending the K2 series into agentic, long-horizon reasoning. Built on the trillion-parameter Mixture-of-Experts (MoE) architecture introduced in...
Unique: Trillion-parameter MoE architecture enables reasoning chains to scale without the token-collapse problem seen in dense models; K2 Thinking extends the K2 series specifically for agentic long-horizon tasks rather than generic reasoning, suggesting specialized routing and attention patterns for multi-step planning
vs others: Maintains reasoning coherence across longer planning horizons than o1-preview due to MoE sparse activation, while offering lower latency than o1 for moderate-complexity tasks through optimized routing
via “reasoning and chain-of-thought task decomposition”
Step 3.5 Flash is StepFun's most capable open-source foundation model. Built on a sparse Mixture of Experts (MoE) architecture, it selectively activates only 11B of its 196B parameters per token....
Unique: Implements reasoning through sparse expert routing that activates reasoning-specialized modules for complex tasks while maintaining efficiency. The MoE architecture allows the model to allocate more parameters to reasoning steps when needed without the overhead of a dense model.
vs others: Provides reasoning transparency comparable to GPT-4 or Claude while consuming 40-50% fewer tokens due to sparse activation, making it cost-effective for reasoning-heavy applications.
via “extended-chain-of-thought-generation”
Hermes 4 70B is a hybrid reasoning model from Nous Research, built on Meta-Llama-3.1-70B. It introduces the same hybrid mode as the larger 405B release, allowing the model to either...
Unique: Combines 70B parameter scale with process-reward modeling to maintain reasoning coherence across 10+ step chains, whereas smaller models typically degrade after 3-4 steps due to context drift and accumulated errors
vs others: Produces more reliable multi-step reasoning than GPT-3.5 while being more cost-effective than GPT-4 for reasoning tasks, with explicit step visibility that proprietary models don't expose
via “complex reasoning and chain-of-thought decomposition”
Command R7B (12-2024) is a small, fast update of the Command R+ model, delivered in December 2024. It excels at RAG, tool use, agents, and similar tasks requiring complex reasoning...
Unique: Command R7B's reasoning is optimized for RAG and tool-use contexts, where intermediate steps can reference retrieved documents or tool outputs, enabling grounded reasoning that combines external knowledge with logical inference
vs others: Outperforms GPT-4 on MATH and AIME benchmarks when combined with tool use for calculation, because it can delegate computation to tools rather than attempting symbolic math in-context
via “extended reasoning with implicit chain-of-thought”
Grok 4 is xAI's latest reasoning model with a 256k context window. It supports parallel tool calling, structured outputs, and both image and text inputs. Note that reasoning is not...
Unique: Implicit reasoning allocation based on problem complexity, with reasoning traces integrated into output without explicit token budget management, contrasting with OpenAI's explicit reasoning token approach
vs others: More transparent reasoning than GPT-4o (which hides reasoning) but less controllable than o1 (which offers explicit reasoning token budgets); better for exploratory reasoning where depth is problem-dependent
via “reasoning-focused problem decomposition and chain-of-thought”
This is Mistral AI's flagship model, Mistral Large 2 (version mistral-large-2407). It's a proprietary weights-available model and excels at reasoning, code, JSON, chat, and more. Read the launch announcement [here](https://mistral.ai/news/mistral-large-2407/)....
Unique: Trained specifically on chain-of-thought datasets to prioritize reasoning steps, using attention mechanisms that weight intermediate reasoning tokens higher than direct answers, enabling more transparent problem-solving
vs others: Comparable to GPT-4's reasoning on complex problems, while maintaining lower latency and cost; outperforms Llama 2 on multi-step reasoning due to larger parameter count and specialized training
via “reasoning-aware response generation with chain-of-thought transparency”
GLM-4.5 is our latest flagship foundation model, purpose-built for agent-based applications. It leverages a Mixture-of-Experts (MoE) architecture and supports a context length of up to 128k tokens. GLM-4.5 delivers significantly...
Unique: Chain-of-thought reasoning is trained directly into the model rather than implemented as a decoding strategy; the model learns to generate reasoning steps as part of its core training objective
vs others: More natural and coherent reasoning steps than prompt-injection approaches (e.g., appending 'think step by step') because reasoning is learned as a first-class capability
via “reasoning and step-by-step problem solving”
Olmo 3.1 32B Instruct is a large-scale, 32-billion-parameter instruction-tuned language model engineered for high-performance conversational AI, multi-turn dialogue, and practical instruction following. As part of the Olmo 3.1 family, this...
Unique: Instruction-tuning on chain-of-thought datasets enables the model to generate coherent reasoning steps when prompted, without requiring explicit reasoning modules or external symbolic solvers — this implicit reasoning approach is more flexible than hard-coded reasoning systems but less precise than specialized solvers
vs others: More transparent reasoning than direct answer generation, but lower accuracy on specialized domains than models fine-tuned exclusively on reasoning tasks; better for educational use cases than production problem-solving
via “reasoning and chain-of-thought response generation”
Mixtral 8x7B Instruct is a pretrained generative Sparse Mixture of Experts, by Mistral AI, for chat and instruction use. Incorporates 8 experts (feed-forward networks) for a total of 47 billion...
Unique: Instruction-tuning on reasoning datasets combined with sparse expert routing allows different experts to specialize in different reasoning types (mathematical, logical, causal) while maintaining efficient inference
vs others: Generates coherent multi-step reasoning at 3x lower cost than GPT-4 while achieving 70-80% accuracy on reasoning benchmarks, making it suitable for cost-sensitive reasoning-focused applications
via “reasoning and multi-step problem decomposition”
Qwen3-235B-A22B-Instruct-2507 is a multilingual, instruction-tuned mixture-of-experts language model based on the Qwen3-235B architecture, with 22B active parameters per forward pass. It is optimized for general-purpose text generation, including instruction following,...
Unique: Instruction-tuned on chain-of-thought examples enabling the model to naturally decompose reasoning without requiring explicit prompting frameworks or external planning systems, with MoE architecture potentially routing complex reasoning to specialized parameter subsets
vs others: More natural reasoning flow than base models due to instruction-tuning, though may underperform specialized reasoning models (o1, DeepSeek-R1) on very complex mathematical or logical problems requiring extensive search
via “reasoning and multi-step problem decomposition”
Kimi K2 0905 is the September update of [Kimi K2 0711](moonshotai/kimi-k2). It is a large-scale Mixture-of-Experts (MoE) language model developed by Moonshot AI, featuring 1 trillion total parameters with 32...
Unique: Dedicates specialized expert subsets within the MoE architecture to reasoning tasks, enabling structured chain-of-thought reasoning that maintains logical consistency across 200K tokens without requiring separate reasoning-specific model weights — single unified architecture handles both generation and reasoning
vs others: Provides more transparent reasoning traces than GPT-4 (which uses hidden reasoning) and maintains reasoning coherence across longer problem decompositions than o1-mini due to extended context window and expert routing
via “reasoning and chain-of-thought problem solving”
Meta's Llama 3.1 — high-quality text generation and reasoning
Unique: Explicitly trained for chain-of-thought reasoning across all three variants, with the 405B model claiming state-of-the-art performance. Generates transparent intermediate reasoning steps within a single forward pass, unlike ensemble or multi-turn approaches.
vs others: Provides transparent reasoning comparable to Claude 3.5 Sonnet and GPT-4o, but runs locally without API calls. Reasoning quality likely inferior to specialized reasoning models (OpenAI o1), but available for on-premise deployment without cloud dependencies.
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