Capability
20 artifacts provide this capability.
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Find the best match →via “mathematical reasoning and step-by-step problem solving”
DeepSeek's 236B MoE model specialized for code.
Unique: Trained on 6 trillion tokens including mathematical reasoning datasets and code-based solutions, enabling both symbolic reasoning and code generation for mathematical problems in a single model without separate math-specific components
vs others: Provides integrated mathematical reasoning and code generation (unlike Copilot which focuses on code) while maintaining open-source weights and supporting local deployment
via “mathematical proof generation and verification reasoning”
OpenAI's most powerful reasoning model for complex problems.
Unique: Applies extended reasoning specifically to mathematical proof generation, exploring multiple proof strategies and backtracking on invalid paths before committing to a solution — this enables reasoning through proof correctness rather than pattern matching
vs others: Achieves competitive-level mathematics performance (87.5% on ARC-AGI) by reasoning through proof strategies and constraint satisfaction, outperforming GPT-4 and Claude which rely more on pattern matching and memorized proof structures
via “mathematical problem solving with symbolic reasoning”
Cost-efficient reasoning model with configurable effort levels.
Unique: Implements specialized mathematical reasoning patterns with step-by-step derivation generation, achieving competition-level math performance through domain-specific training rather than general reasoning
vs others: Matches o3 on mathematical benchmarks at lower cost; outperforms standard LLMs (GPT-4, Claude) on competition-level problems due to reasoning-grade capabilities
via “mathematical problem solving with symbolic reasoning”
Latest compact reasoning model with native tool use.
Unique: Uses symbolic reasoning to manipulate mathematical expressions as abstract structures, not just pattern matching on numerical values. This enables solving novel problems through principled symbolic transformations rather than memorized solutions.
vs others: More capable than GPT-4o on symbolic math due to integrated reasoning; comparable to specialized symbolic math engines (Mathematica, SymPy) but with natural language reasoning about intent; faster than o1/o3 due to model size optimization.
via “mathematical reasoning and symbolic problem-solving”
text-generation model by undefined. 1,13,49,614 downloads.
Unique: DeepSeek-V3.2 was trained on mathematical reasoning datasets with explicit step-by-step annotations, enabling it to generate coherent multi-step proofs and derivations without external symbolic engines, though with pattern-matching rather than formal verification
vs others: Achieves 55-60% accuracy on MATH benchmark (vs. 50% for Llama-2-70B) by using specialized mathematical reasoning training, though still below GPT-4's 92% due to lack of formal verification and external tool integration
via “multi-step mathematical proof generation and verification”
OpenAI's reasoning model with chain-of-thought problem solving.
Unique: Generates multi-step mathematical proofs through extended reasoning that explores proof strategies and backtracks when necessary, rather than pattern-matching to training examples. The reasoning phase is visible in the thinking tokens, enabling transparency into proof construction.
vs others: Outperforms standard LLMs on mathematical proof generation because the extended thinking phase allows exploration of proof strategies and verification of intermediate steps, resulting in more rigorous and correct proofs.
via “mathematical problem solving with step-by-step verification”
text-generation model by undefined. 38,71,385 downloads.
Unique: Trained via RL to optimize for mathematical correctness with explicit intermediate step generation; learns to recognize and correct errors during reasoning rather than committing to incorrect paths
vs others: Outperforms GPT-4 on MATH and AIME benchmarks (94.3% vs 80%+ on AIME) through learned reasoning allocation; provides more transparent reasoning than Gemini while maintaining higher accuracy
via “mathematical-problem-solving-with-symbolic-reasoning”
Gemini 2.5 Pro is Google’s state-of-the-art AI model designed for advanced reasoning, coding, mathematics, and scientific tasks. It employs “thinking” capabilities, enabling it to reason through responses with enhanced accuracy...
Unique: Leverages extended internal reasoning to explore multiple mathematical approaches and verify symbolic manipulations before responding, providing higher confidence in mathematical correctness than models without reasoning capabilities.
vs others: Exceeds GPT-4 and Claude on complex mathematics by using internal reasoning to validate symbolic steps, reducing hallucinated solutions and improving explanation quality for educational use cases.
Gemini 2.5 Pro is Google’s state-of-the-art AI model designed for advanced reasoning, coding, mathematics, and scientific tasks. It employs “thinking” capabilities, enabling it to reason through responses with enhanced accuracy...
Unique: Applies extended thinking specifically to mathematical reasoning, allowing the model to explore multiple solution paths, verify intermediate steps algebraically, and backtrack if a path leads to contradiction. This produces mathematically sound solutions rather than pattern-matched approximations.
vs others: Provides reasoning-enhanced mathematical problem solving comparable to specialized tools like Wolfram Alpha, but with natural language explanation and multimodal input support; less precise than symbolic math engines but more accessible and context-aware.
via “scientific-and-mathematical-problem-solving”
Gemini 2.5 Pro is Google’s state-of-the-art AI model designed for advanced reasoning, coding, mathematics, and scientific tasks. It employs “thinking” capabilities, enabling it to reason through responses with enhanced accuracy...
Unique: Combines extended thinking tokens with domain-specific scientific knowledge to provide verified solutions with internal reasoning validation, enabling confidence in correctness for mathematical proofs and scientific derivations without exposing intermediate steps
vs others: Provides better reasoning transparency than Wolfram Alpha for understanding derivations, while offering more mathematical rigor than general-purpose LLMs like GPT-4, though less specialized than dedicated symbolic math engines
via “mathematical-problem-solving-with-symbolic-reasoning”
ERNIE-4.5-21B-A3B-Thinking is Baidu's upgraded lightweight MoE model, refined to boost reasoning depth and quality for top-tier performance in logical puzzles, math, science, coding, text generation, and expert-level academic benchmarks.
Unique: Combines MoE routing with specialized mathematical token embeddings trained on formal mathematical corpora, enabling the model to recognize and manipulate symbolic structures (equations, proofs) as first-class objects rather than treating them as opaque text sequences.
vs others: Achieves higher accuracy on mathematical benchmarks (AMC, AIME) than GPT-3.5 while using 1/10th the parameters, making it more cost-effective for math-heavy applications; however, still trails specialized symbolic solvers for formal verification
via “mathematical reasoning and symbolic computation”
GLM 4 32B is a cost-effective foundation language model. It can efficiently perform complex tasks and has significantly enhanced capabilities in tool use, online search, and code-related intelligent tasks. It...
Unique: GLM 4 32B includes specialized training on mathematical reasoning datasets, enabling it to show work and explain reasoning — not just generate answers — which is critical for educational and verification use cases
vs others: More cost-effective than Wolfram Alpha for symbolic reasoning while providing better explanations than calculators, though less precise than dedicated symbolic engines for complex expressions
via “mathematical-reasoning-and-problem-solving”
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: Trained on mathematical problem datasets with explicit step-by-step annotations, enabling the model to generate intermediate steps that match human problem-solving patterns rather than jumping directly to answers
vs others: More transparent than Wolfram Alpha for showing reasoning steps, though less reliable for advanced mathematics; stronger than GPT-3.5 on symbolic manipulation due to larger parameter count
via “mathematical reasoning and symbolic computation”
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 on mathematical datasets with chain-of-thought reasoning to prioritize step-by-step problem solving, using attention mechanisms that track variable relationships and equation transformations
vs others: Comparable to GPT-4 on mathematical reasoning, while maintaining lower cost; outperforms Llama 2 on complex multi-step problems due to larger parameter count and specialized training
via “mathematical reasoning and symbolic computation”
Qwen3-Max-Thinking is the flagship reasoning model in the Qwen3 series, designed for high-stakes cognitive tasks that require deep, multi-step reasoning. By significantly scaling model capacity and reinforcement learning compute, it...
Unique: Combines extended reasoning with mathematical domain knowledge to enable transparent, step-by-step mathematical problem-solving. Uses thinking tokens to represent intermediate mathematical steps and verification, making mathematical reasoning auditable and debuggable.
vs others: Provides better mathematical reasoning transparency than general-purpose LLMs while maintaining broader applicability than specialized mathematical AI systems, though with lower precision than dedicated computer algebra systems.
via “mathematical-problem-solving-with-step-by-step-reasoning”
DeepSeek-V3.1 is a large hybrid reasoning model (671B parameters, 37B active) that supports both thinking and non-thinking modes via prompt templates. It extends the DeepSeek-V3 base with a two-phase long-context...
Unique: Implements explicit reasoning phase specifically optimized for mathematical decomposition, allowing the model to verify intermediate steps before producing final answers, rather than generating answers directly.
vs others: More reliable for complex math than GPT-4 due to explicit verification phase, and more transparent than o1 (which hides reasoning) by allowing users to request step-by-step explanations.
via “mathematical problem solving with step-by-step verification”
The o-series of models are trained with reinforcement learning to think before they answer and perform complex reasoning. The o3-pro model uses more compute to think harder and provide consistently...
Unique: Applies extended reasoning to mathematical problem-solving, enabling explicit step-by-step verification and error-checking within the reasoning phase. Unlike standard LLMs that may skip steps or make calculation errors, o3-pro's reasoning allows it to catch and correct mistakes before output.
vs others: Achieves 90%+ accuracy on AIME and MATH benchmarks compared to 50-70% for GPT-4, due to reasoning-enabled verification and multi-path exploration.
via “mathematical-reasoning-and-proof-generation”
The latest and strongest model family from OpenAI, o1 is designed to spend more time thinking before responding. The o1 model series is trained with large-scale reinforcement learning to reason...
Unique: Trained via RLHF to learn which mathematical techniques apply to different problem classes and to validate intermediate steps during reasoning, rather than applying generic problem-solving. The model learns mathematical reasoning patterns that maximize correctness on diverse problem types.
vs others: Outperforms GPT-4 and standard LLMs on mathematical reasoning benchmarks (MATH, AMC) by 10-20% because it learns to apply domain-specific techniques and validate steps, but remains slower and less symbolic than specialized mathematical software.
via “mathematical reasoning and symbolic computation”
DeepSeek-V3.1 Terminus is an update to [DeepSeek V3.1](/deepseek/deepseek-chat-v3.1) that maintains the model's original capabilities while addressing issues reported by users, including language consistency and agent capabilities, further optimizing the model's...
Unique: V3.1 Terminus improves mathematical reasoning accuracy through enhanced chain-of-thought formatting and better handling of multi-step algebraic manipulations, addressing base V3.1's occasional sign errors and simplification mistakes
vs others: Matches GPT-4's mathematical reasoning quality while providing more transparent derivation steps; outperforms Claude 3.5 on competition-level math problems requiring deep symbolic reasoning
via “mathematical reasoning and problem-solving”
Qwen Plus 0728, based on the Qwen3 foundation model, is a 1 million context hybrid reasoning model with a balanced performance, speed, and cost combination.
Unique: Uses thinking tokens to work through mathematical reasoning before responding, similar to specialized math reasoning models but integrated into a general-purpose model with 1M context. This enables the model to solve problems while maintaining awareness of previous mathematical context or related problems in the conversation.
vs others: Provides reasoning-enhanced math solving comparable to specialized models like Wolfram Alpha but with natural language understanding and 1M context, enabling integration with broader problem-solving workflows
Building an AI tool with “Mathematical Problem Solving With Symbolic Reasoning And Proof Verification”?
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