--- license: cc-by-4.0 task_categories: - reinforcement-learning - tabular-classification language: - en tags: - synthetic - finance - defi - crypto - mcts - trading-agents - execution-intelligence pretty_name: Solstice ARC-T DeFi Execution Intelligence --- # Solstice ARC-T DeFi Execution Intelligence (Sample) **Synthetic risk-to-execution decision loops for autonomous DeFi agents.** This dataset captures 3,000 multi-step decision traces from autonomous trading agents operating in a simulated Decentralized Finance (DeFi) ecosystem. Built by [Solstice AI Studio](https://www.solsticestudio.ai/datasets) as a free sample of a larger commercial pack. 100% synthetic — no real wallet addresses or on-chain history used. ## What's in the box Each record in the JSONL stream represents a full execution loop, including: - **Market State:** Simulated oracle prices, liquidity depths, and volatility triggers. - **Risk Assessment:** Whale movement signals and oracle staleness metrics. - **Agent Reasoning:** MCTS-style strategy selection (Monte Carlo Tree Search) with success/failure probability weights. - **Execution Outcome:** Final trade result including gas costs, slippage, and PnL. ## Use Cases - **Autonomous Agent Training:** Train models to select optimal trading strategies based on simulated market stress. - **Risk Model Evaluation:** Benchmark protocol safety against extreme market scenarios and oracle failures. - **Anomaly Detection:** Identify malicious or inefficient trading patterns in high-frequency DeFi telemetry. ## Data Provenance Generated using Solstice’s PhantasOS / SIMA simulation engine. The simulation uses MCTS (Monte Carlo Tree Search) to explore the decision space of a trading agent, recording both the chosen path and the explored alternatives. ## Get the Full Pack Scale this dataset to 1M+ decision loops, including cross-chain bridge logic and complex liquidity provider (LP) scenarios. [www.solsticestudio.ai/datasets](https://www.solsticestudio.ai/datasets)