I'm Vic, an engineer and builder creating the programmable intelligence layer across decentralized protocols, data networks, and autonomous AI systems.
My north star: ship 1B+ USD worth of open systems that accelerate global autonomy, intelligence, and transparency β at scale.
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I am heavily involved in optimizing network performance, building scalable data pipelines, and solving complex infrastructure problems across decentralized protocols, agentic systems, and distributed networks.
Presently: Substrate, Solana, EVM, Rollups, Layer2, Agentic AI, LLM Infrastructure, Data Infrastructure, P2P Networking, Node Architecture, Local-First Systems, and Compute Over Data
- π§± 15 years in software engineering
- π± 15 years of Nodejs
- π 12 years of Python
- π¦ 8 years of Rust
- πΉ 6 years of Go
- ποΈ 4 years of C
- π¦ Can't stop Zigging
- π§ͺ 12 years in data, machine learning, and AI
- ποΈ 12 years of SQL/NoSQL
- π§± 8 years of Big Data
- π€ 6 years in AI
- πΈοΈ 5 years building Web3 protocols
- π 4 years Ethereum (EVM)
- π 3 years Substrate
- β‘οΈ 2 years Solana
- βοΈ 1 year Bitcoin
{
"blockchain": {
"Protocols": ["Ethereum", "Solana", "Polkadot", "Optimism", "Optimism", "Bitcoin"],
"Clients": ["Substrate", "op-geth", "Firedancer"],
},
"agentic_ai": {
"Frameworks": ["OpenClaw", "Hermes"],
"Coding Agents": ["Claude Code", "OpenAI Codex"],
"Models": ["Gemini", "Qwen", "Llama"],
"Inference": ["vLLM", "Ollama", "LM Studio"],
"Tools": ["MCP", "RAG"]
},
"llm_training": {
"Model Adaptation": ["LoRA/QLoRA", "PEFT", "Hugging Face Transformers"],
"Testing & Evaluation": ["Evaluation Datasets", "Benchmarking", "Experiment Tracking"]
},
"machine_learning_and_data_science": {
"deep_learning": ["PyTorch", "TensorFlow"],
"computer_vision": ["Edge Detection", "Segmentation", "Object Tracking"],
},
"data": {
"Databases": ["PostgreSQL", "MongoDB", "Cassandra", "HBase", "Redis"],
"Search & Vectors": ["Elasticsearch", "Qdrant", "FAISS"],
"Graph": ["JanusGraph", "Neo4j"],
"Streaming": ["Kafka", "NATS"],
"Big Data": ["Spark", "Flink", "Hadoop"],
"Warehouse & OLAP": ["ClickHouse", "BigQuery", "Snowflake"],
"Pipelines": ["Airflow", "Dagster", "dbt"]
},
"backend": {
"Python": ["FastAPI", "Quart"],
"Node.js": ["Fastify", "NestJS", "tRPC"],
"Rust": ["Tokio"],
"Java": ["Spring Boot"]
},
"devops_and_monitoring": {
"Infra": ["Docker", "Kubernetes", "Terraform", "ChaosMonkey", "Jepsen"],
"Metrics & Monitoring": ["Prometheus", "Grafana", "InfluxDB"],
"Logs & Search": ["Loki", "Elasticsearch", "Kibana"],
"Tracing": ["Tempo", "OpenTelemetry"],
},
}tickoniβ High-performance AI harness for agentic financecere-networkβ Decentralized AI Agent Platformpayoutβ Payout, fees, and debt managementoffchain-worker-etlβ Consensus-based aggregation of distributed activitymerkle-proofs- Proof-of-activity batching via MMR trees
op-bnbβ OpStack-based optimistic rollup for BNB Chainop-batcherβ Foundational contributions to Optimism client to solve race conditionop-perfβ Node sync improvements and state verificationop-nodeβ Client patch for sequencer backpressure handling
kermesβ Solana Restaking Platform- Multi-Asset Staking: SPL tokens, SPL-2022 tokens, NFTs, and LSTs
- Vault Share Tokens: LP-like representation of user shares
- Reward System: Rewards in tokens, points, or NFTs
- Secure CPI: Safe cross-program interactions
random-pedersenβ Pedersen commitment and randomness tooling- Secure Decentralized Randomness: Pedersen + MPC for tamper-proof RNG.
- Homomorphic Aggregation: Combine values without revealing inputs.
- Collaborative Commit-Reveal Protocol: Multi-node process with integrity checks.
- Axum-based JSON AP*: Minimal HTTP API with ephemeral cache.
llama-eatsβ AI-powered food ordering with contextual LLM recommendations- LLM-Powered Intent Parsing: Uses quantized LLaMA-2 for dynamic dialogue state tracking.
- Vector-Based Preference Matching: Embedding models + cosine similarity for dish retrieval.
- Numerical Inference via Fine-Tuned GPT-2: Parses budget constraints from natural expressions.
- Context-Preserving Session Embeddings: UUID-based context store for coherent multi-turn ordering.
raceme-jsβ Modular clustering framework with genetic algorithm extensions- Genetic Clustering Extensions: Implements genetic-based algorithms tailored for social network community detection.
- Multi-Store Adaptability: Supports planned adapters for Cassandra, MongoDB, and Neo4j.
- Algorithm Diversity: Supports K-Medoids, Fuzzy C-Means, and Betweenness clustering.
- Performance & Comparisons: Framework benchmarking and comparing clustering models.