Every DeFi transaction generates data — churn patterns, purchase intent, engagement decay. It's public, permissionless, and almost entirely untapped by systematic strategies. BlockSight extracts predictive intelligence from on-chain activity and turns it into tradeable alpha.

6+
EVM chains
<3s
latency
Beta
access
What BlockSight Sees

Four prediction types. Zero correlation with existing strategies.

Derived from on-chain engagement patterns — not price, volume, or sentiment data.

CHR0 — 1

Churn Probability

Will this wallet stop engaging? Configurable horizons (7/14/30/90d). Aggregate churn risk across a protocol is a leading indicator of TVL decline — the signal arrives before price moves.

Trade exampleRising churn scores on Aave V3 users → short AAVE exposure before TVL drops.
PAFcategory + timing

Purchase Affinity

Predicted next-purchase category and timing per wallet. Aggregate purchase intent correlates with future demand for a protocol’s token or ecosystem assets.

Trade exampleCluster of NFT purchase affinity spiking → position ahead of marketplace volume.
EDCrate / period

Engagement Decay

The velocity at which wallet interaction frequency declines. Systematic decay across a protocol’s user cohort predicts TVL outflow weeks before it materializes.

Trade exampleDecay rate accelerating on a DEX’s top-100 LPs → reduce LP exposure.
BCRscore + tier

Behavioral Credit

Creditworthiness derived from engagement history, repayment patterns, and cross-protocol behavior. Goes beyond collateral ratios for DeFi lending counterparty risk.

Trade exampleLow behavioral credit on a large borrower → tighten risk parameters.
The Problem

Why quant firms aren't trading on-chain predictions yet.

The alpha is sitting in plain sight. On-chain engagement patterns are structurally analogous to the factors that drive traditional quant — order flow, microstructure, sentiment — but generated by pseudonymous wallets across decentralized protocols.

The problem isn't data quality. It's infrastructure. Getting clean, structured, cross-chain data from blockchains is an engineering nightmare that most firms won't touch.

01

Archive nodes per chain — 2TB+ storage, constant syncing, DevOps overhead. Multiply by every chain you need.

02

Raw transaction parsing — logs, events, internal calls in different formats. Months of engineering before one data point.

03

Cross-chain normalization — a swap on Uniswap looks nothing like PancakeSwap. Every protocol, a different schema.

04

Continuous maintenance — new protocols, contract upgrades, chain forks. Your pipeline breaks weekly.

One API call. BlockSight delivers structured, prediction-ready data across every major EVM chain — without running a single node or maintaining a single pipeline.

How It Works

From raw chain data to tradeable insight in under three seconds.

INGEST

Multi-Chain Data Ingestion

Real-time ingestion across 6+ EVM chains. Raw transactions, event emissions, LP positions, governance votes — decoded, normalized, and unified into a single schema.

EthereumArbitrumPolygonBaseOptimismBSC
ENCODE

BlockSight Encoder

Transformer for temporal sequences + Graph Neural Network for cross-protocol relationships. Produces a dense embedding per wallet that captures engagement patterns across the entire DeFi ecosystem.

TransformerGNNDense EmbeddingMulti-Task
PREDICT

Specialized Prediction Heads

Each prediction type has its own head optimized for that task. LSTM + XGBoost for churn. Collaborative filtering for purchase affinity. Ensemble methods for credit scoring. Not an LLM wrapper.

LSTM + XGBoostCollaborative FilteringEnsemble Methods
Output

REST API + WebSocket. Query any wallet for churn risk, purchase intent, engagement quality, credit tier.

Beta access available
Applications

Where BlockSight creates edge.

Each use case maps a BlockSight prediction to a concrete trading or risk strategy.

DEX / LP Strategies

Churn + Decay

Predict which LPs will withdraw liquidity and when. Time entries and exits around pool depth changes before they hit order flow.

Lending Protocols

Behavioral Credit

Assess borrower reliability beyond collateral ratios. Enable undercollateralized lending with engagement-based risk tiers.

Governance / DAOs

Engagement Decay

Predict vote outcomes before voting closes. Identify proposal momentum from engagement patterns of participating wallets.

MEV / Prop Desks

All signals

Identify whale accumulation phases, protocol migration flows, and systematic trading patterns before they manifest in mempool activity.

Institutional Allocators

Churn + Credit

Portfolio-level analytics for DeFi positions. Counterparty assessment, engagement-based due diligence, compliance-ready reporting.

Risk Management

All signals

Real-time risk monitoring across lending, LP, and governance positions. Early warning system for protocol-level deterioration.

The Edge

Others describe.
BlockSight predicts.

Existing on-chain analytics describe what happened. Social sentiment tools measure what people say. Neither predicts what users will actually do.

BlockSight's predictions are derived from what wallets do — longitudinal engagement patterns that are structurally uncorrelated with price, volume, and sentiment-based strategies.

Model Heritage

Purpose-built multi-task learning system. Transformer + GNN encoder branching into specialized prediction heads. The methodology originates from 30+ years of NASA-funded research on forecasting rare, high-consequence events from longitudinal time-series data.

6+
EVM Chains
<3s
Query Latency
Not an LLM wrapper
Signal type
Dune/NansenDescriptive
KaitoSocial / attention
BlockSightBehavioral / predictive
Churn prediction
Dune/Nansen
Kaito
BlockSight0–1 score, configurable horizon
Purchase prediction
Dune/Nansen
Kaito
BlockSightCategory + timing
Credit scoring
Dune/Nansen
Kaito
BlockSightBehavioral tiers
API access
Dune/NansenSQL export
KaitoPartial
BlockSightREST + WebSocket
Data flywheel
Dune/Nansen
Kaito
BlockSightCommerce → predict → act

“Attention correlates with short-term price. Behavior predicts long-term economic participation.”

Traction

Built, validated, shipping.

6+
EVM chains
<3s
latency
Multi-chain data ingestion pipeline operational across 6+ EVM chainsComplete
Prediction models designed and validated on historical dataValidated
Commerce widget deployed in production (KarratShop — Animoca Brands / NVIDIA)Live
Security penetration test — all findings remediatedComplete
Production deployment of live prediction engineIn Progress
Start in Block 2026 — Paris Blockchain Week (top 100 of 1,000+ applicants)Accepted
ETHVC submitted + investor meetingsActive
2,000+ waitlist signupsGrowing
Team

Quant science meets chain infrastructure.

Stefano
Stefano
CEO
10yr SWE · 3yr blockchain

Multiple products shipped to production. Smart contract architecture, payment systems, product strategy.

Devon Martens
Devon Martens
CTO
$50M+ AI-driven trading engines

Architected AI-driven trading engines across decentralized markets. Led Studio Chain L2. Deep ML infrastructure + on-chain systems.

Dr. Petrus C. Martens
Dr. Petrus C. Martens
Chief Scientist
30+ years NASA/NSF ML research

GSU Professor. Artemis program AI systems. The prediction methodology behind the platform originates from his work on forecasting rare events from longitudinal time-series.

Get Access

Predictive intelligence for DeFi, delivered via API.

BlockSight API access is available to qualified quantitative firms, institutional allocators, and DeFi protocols. We're onboarding partners who want early access to an entirely new factor class.

devon@blocksight.nl