Herding Behavior Analytics for DeFi Developers
DeFi developers building prediction market applications and on-chain analytics tools find Resolved Markets invaluable for accessing Polymarket orderbook data at scale. Our platform provides continuous snapshots of 100+ crypto prediction markets—including BTC/ETH up-down movements, SOL and XRP volatility predictions, and cross-exchange price correlations—all captured at 20Hz with full bid/ask depth. The REST API and WebSocket streaming enable seamless integration into smart contract monitoring, liquidation detection systems, and market-making bots. With ClickHouse-backed historical storage of 11.4M+ snapshots and millisecond timestamps, developers can build sophisticated applications that leverage prediction market signals for on-chain decision-making, yield optimization, and risk management across DeFi protocols.
DeFi developers building on Polymarket need Herding Behavior Analytics as a programmable data source. Resolved Markets exposes research-grade prediction-market data via REST and WebSocket, so smart-contract systems can read regime detection, arbitrage backtests, sentiment indices, factor models the same way they read centralized exchange feeds.
Data challenges DeFi Developers run into
Herding Behavior Analytics from Resolved Markets is built around the data gaps DeFi Developers hit when they try to work with raw Polymarket feeds.
Limited access to decentralized prediction market orderbook data at scale
Building prediction market applications on Polymarket historically requires direct contract interaction or fragmented data sources that don't capture complete orderbook depth. Resolved Markets solves this by providing 100+ markets worth of continuous snapshots at 20Hz, including BTC/ETH volatility predictions and cross-asset correlation markets. Instead of piecing together data from multiple APIs or running your own indexing infrastructure, you get production-grade orderbook data with full bid/ask arrays delivered instantly, enabling developers to focus on application logic rather than data infrastructure.
Difficulty integrating fragmented market data sources into cohesive applications
DeFi applications need unified data access across prediction markets, spot prices, lending rates, and liquidation risks simultaneously. Resolved Markets integrates orderbook data from Polymarket with consistent formatting, standardized timestamps, and complete depth information. This eliminates the complexity of normalizing data from different sources—your smart contract monitoring tools, market-making bots, and analytics dashboards all consume the same reliable data stream through a single API.
Inability to capture high-frequency orderbook dynamics for algorithmic trading
Market-making bots and arbitrage algorithms require high-frequency orderbook updates to capture fleeting opportunities. Our 20Hz capture rate for crypto markets and WebSocket API with sub-millisecond latency enable you to build algorithms that respond to orderbook changes faster than competing systems. Historical snapshots let you backtest strategies against real market dynamics, and live streaming supports deployment of sophisticated quoting and hedging strategies in production.
Lack of precise timestamps for on-chain event correlation analysis
Smart contract events must be precisely correlated with market movements for accurate on-chain analytics and liquidation detection. Resolved Markets provides millisecond-level timestamps across all 11.4M+ historical snapshots and live updates. This precision enables you to construct event windows with sub-second accuracy, correlate on-chain transactions with orderbook changes, and identify causal relationships between prediction market signals and protocol behavior that inform risk management decisions.
Built for quantitative work on Herding Behavior Analytics
Orderbook-level prediction-market data that doesn't exist anywhere else.
Build prediction market applications without managing custom indexing infrastructure
Traditional approaches require developers to run custom indexing infrastructure or rely on fragmented APIs. Resolved Markets eliminates this operational burden by providing production-grade orderbook data directly. Deploy prediction market applications instantly with access to 11.4M+ historical snapshots and real-time WebSocket streams. Our ClickHouse-backed storage handles query performance automatically, freeing your team to focus on application features rather than database optimization and data pipeline maintenance.
Access high-frequency orderbook data for algorithmic trading and market-making
Algorithmic traders and market-making bots thrive on high-frequency orderbook data. Our 20Hz capture rate for BTC, ETH, SOL, and XRP prediction markets delivers the granularity needed for sophisticated algorithms. Backtest strategies against realistic historical orderbooks with full depth arrays and millisecond timestamps. Deploy live bots that subscribe via WebSocket to continuous updates, execute quoting strategies based on spread dynamics, and respond to market-moving events with sub-second latency.
Create real-time dashboards with live bid/ask depth across 100+ markets
Effective risk management in DeFi requires understanding prediction market sentiment in real-time. Build dashboards that visualize bid/ask spreads across BTC volatility, ETH movement, stablecoin health, and liquidation risk markets simultaneously. Our WebSocket API delivers continuous updates that power dynamic alerts, heat maps, and risk scoring systems. When market spreads spike, confidence shifts, or correlations break down, your risk systems detect these signals immediately and can trigger hedging or position adjustments.
Integrate prediction market signals into on-chain risk management systems
Smart contract systems benefit enormously from prediction market signals for automated decision-making. Integrate Resolved Markets' API into smart contracts monitoring on-chain liquidations, protocol parameter changes, and governance decisions. Use prediction market sentiment to optimize yield farming strategies, detect emerging risks before they materialize, and coordinate cross-protocol interactions. Historical snapshots enable backtesting of smart contract behavior against real market conditions, ensuring your automation logic performs correctly across market cycles.
How DeFi Developers use Herding Behavior Analytics
Seven categories, hundreds of markets
Prediction markets across crypto, sports, economics, weather, and more — live and historical orderbook data, all queryable through one API.
Crypto
BTC, ETH, SOL, XRP — up/down markets every 5m to 1d.
Equities
S&P 500 (SPX) daily open — up or down predictions.
Social
Elon Musk tweet counts — weekly prediction ranges.
Sports
NBA, NFL, EPL — game outcomes and season predictions.
Economics
Fed decisions, jobs reports — FOMC meetings and macro data.
Weather
44 cities daily — temperature, hurricanes, Arctic ice.
Hyperliquid
BTC, ETH, SOL, XRP perp orderbooks — 1/sec sampling.
Tick-level orderbook snapshots
Every snapshot includes full bid/ask depth, mid prices, spreads, and crypto spot price.
| Side | Bid | Size | Ask | Size | Spread |
|---|---|---|---|---|---|
| UP | 0.5400 | 1,240 | 0.5500 | 1,100 | 1.00% |
| UP | 0.5300 | 980 | 0.5600 | 1,450 | 3.00% |
| UP | 0.5200 | 1,560 | 0.5700 | 890 | 5.00% |
| UP | 0.5100 | 2,100 | 0.5800 | 2,300 | 7.00% |
| UP | 0.5000 | 1,800 | 0.5900 | 1,700 | 9.00% |
| UP | 0.4900 | 3,200 | 0.6000 | 3,100 | 11.00% |
cryptoLowCardinality(String)BTCtimeframeLowCardinality(String)5mtoken_sideEnum8('UP','DOWN')UPtimestampDateTime64(3)2026-05-09 03:14:12.061crypto_priceFloat64$80,471.01best_bidFloat640.5400best_askFloat640.5500mid_priceFloat640.5450spreadFloat640.0100bidsArray(Tuple(F64,F64))[(0.54,1240),...]asksArray(Tuple(F64,F64))[(0.55,1100),...]Comprehensive market coverage
Prediction markets across multiple categories, captured continuously with high-frequency precision.
Herding Behavior Analytics ships with
What DeFi Developers build with Herding Behavior Analytics
Up and running in minutes
Three steps from signup to live Herding Behavior Analytics in your application.
Get Your API Key
Generate a free API key instantly. No credit card. Just click and go.
Sign Up FreeExplore the API
Browse 11 endpoints with live examples. Test requests directly from the docs.
API ReferenceStart Building
Integrate live Herding Behavior Analytics into your research pipeline, trading bot, or analytics platform.
fetch('/v1/markets/live', { headers: { 'X-API-Key': key } })
curl -H 'X-API-Key: rm_xxx' 'https://api.resolvedmarkets.com/api/snapshot?...'Wiring Herding Behavior Analytics into your workflow
DeFi developers integrate Herding Behavior Analytics via REST for keepers, WebSocket for event-driven systems, and the CLI for backfills. Each path returns the same continuous Polymarket capture.
- QuantConnect Lean engine adapter
- Native Zipline bundle for backtesting
- Polygon.io-compatible REST shim
Why DeFi Developers pick Herding Behavior Analytics
- High-frequency orderbook data for 100+ crypto prediction markets (BTC, ETH, SOL, XRP) captured at 20Hz with full bid/ask depth arrays and millisecond timestamps
- Production-grade REST API and WebSocket streaming eliminating custom indexing infrastructure for Polymarket data integration
- 11.4M+ historical snapshots with complete orderbook state enabling strategy backtesting and on-chain event correlation analysis
- Free tier with no credit card required for development and research with MCP integration for AI agents and autonomous systems
Why Herding Behavior Analytics matters
Herding Behavior Analytics matters for DeFi developers because protocols need a clean, programmable data source. Resolved Markets ships Herding Behavior Analytics with 11.4M+ snapshots across 7 prediction-market categories so on-chain systems can rely on it.
Herding Behavior Analytics in context
Polymarket-adjacent DeFi protocols increasingly need a structured data layer. Herding Behavior Analytics from Resolved Markets is exactly that — programmable, documented, and deliverable in three protocol-friendly formats.
Frequently asked: Herding Behavior Analytics for DeFi Developers
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What is the latency and update frequency for BTC and ETH prediction market orderbooks?
Resolved Markets captures orderbook snapshots at 20Hz (every 50ms) for crypto prediction markets including BTC up/down, ETH up/down, SOL, and XRP markets on Polymarket. Our WebSocket API delivers these updates with sub-millisecond latency, enabling market-making bots and arbitrage algorithms to react before competing systems. Each snapshot includes complete bid/ask depth arrays with millisecond timestamps, providing the precision needed for sophisticated algorithmic trading strategies.
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How can I use Resolved Markets data to detect liquidation risks on DeFi protocols?
Prediction markets reflect trader expectations about asset prices and volatility. By monitoring bid/ask spreads and price shifts in BTC/ETH volatility markets, liquidation risk markets, and stablecoin health markets, you detect early signals of market stress. Integrate our WebSocket API into smart contract monitoring systems that correlate prediction market sentiment with on-chain collateral ratios and lending rates. When prediction markets signal increased liquidation risk (widening spreads, probability shifts), your systems can proactively trigger hedging or de-risking.
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Can I backtest market-making strategies using historical orderbook data?
Yes. Resolved Markets stores 11.4M+ historical snapshots with complete orderbook depth, bid/ask prices, and millisecond timestamps. Our ClickHouse-backed storage enables fast queries across any prediction market and time period. Reconstruct past orderbooks for BTC, ETH, SOL, and XRP markets, simulate your quoting strategies against realistic depth, and measure profitability under different market conditions. Backtesting against actual Polymarket history ensures your algorithms will perform correctly in production.
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How does Resolved Markets integrate with smart contract monitoring and on-chain analytics?
Our REST API returns standardized JSON data that integrates directly into smart contract indexing systems. Each orderbook snapshot includes the on-chain block timestamp correlation, enabling precise matching between prediction market events and on-chain transactions. Build monitoring systems that watch for liquidations, large liquidation orders on Aave/Compound, and simultaneously check prediction market sentiment from our API. This correlation enables smarter risk scoring and automated interventions when on-chain and prediction market signals align.
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What markets are included in the Resolved Markets orderbook data?
We track 100+ prediction markets across crypto, sports, economics, and weather categories on Polymarket. Crypto markets include BTC price direction, ETH movement, SOL/XRP volatility, and cross-exchange price correlation predictions. We also cover sports (NBA, NFL, EPL), economics (FOMC, jobs reports, inflation), and weather (30 cities with daily predictions). Each market has continuous orderbook snapshots; crypto markets are sampled at 20Hz for maximum precision in algorithmic applications.
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What programmability does Herding Behavior Analytics support?
REST endpoints for ad-hoc queries, WebSocket for live event-driven keepers, and the CLI for batch data pipelines. All three return the same Herding Behavior Analytics.
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Can Herding Behavior Analytics be used to compare on-chain vs off-chain pricing?
Yes. Developers building synthetic Polymarket protocols use Herding Behavior Analytics to benchmark on-chain pool pricing against off-chain orderbook consensus.
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How do DeFi developers use Herding Behavior Analytics?
Developers feed Herding Behavior Analytics into smart contract systems via off-chain oracles, keeper bots, and synthetic prediction-market protocols. 11.4M+ snapshots across 7 prediction-market categories ensures data freshness.
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Is there published research using Herding Behavior Analytics?
Yes — academic and industry researchers have published work on prediction-market microstructure using Resolved Markets data. The dataset is documented and reproducible, which makes it suitable for peer review.
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Can Herding Behavior Analytics be used in a portfolio context?
Yes. Many funds treat prediction markets as an alternative sleeve and use Herding Behavior Analytics as the structured data feed. Risk-parity, factor-tilting, and sentiment-overlay strategies all consume Herding Behavior Analytics.