This is not a roadmap. This is what's running right now. On your hardware. As you read this.

06 — Live Traction

This Isn't a Pitch Deck.
This Is Running Production Infrastructure.

Every number on this page is real. Every system is live. Every metric is independently verifiable via SSH, API, or Grafana dashboard. This is not a prototype, not a mockup, not a roadmap—this is a sovereign AI platform consuming AWS resources as you read this sentence.

752B
Total parameters running inference
1.15 TB
GPU VRAM allocated
125
Days of continuous development
$0
External API dependency

Real Numbers. Real Infrastructure. Right Now.

Each metric below represents a live, running system on a single AWS p5en.48xlarge instance. The green pulse indicates active service status monitored via Prometheus.

19.2M
Knowledge Graph Nodes
Neo4j Enterprise 5.26 • 6 node types
78.6M
Graph Relationships
Traversable in <100ms • 14 rel types
622K
Redis Cache Keys
Sub-millisecond response • 2TB RAM
51
Vector Collections
Qdrant GPU HNSW • 4096-dim embeddings
50
Docker Containers
All monitored • Auto-restart on failure
91
Systemd Services
Autonomous 24/7 workers • Watchdog-guarded
72,485
Git Commits
580/day avg • Continuous integration
537K
Lines of Python
Production code • Type-hinted • Tested
4,095
Core Library Modules
api/lib/ • Enterprise patterns
932
API Router Files
FastAPI • Auto-documented • Live
1,233+
Development Sessions
Documented • Searchable • Compounding
71
AI Consulting Agents
Catalogued • API-accessible • Revenue-ready

What's Running on AWS Right Now

A single p5en.48xlarge instance — 8x NVIDIA H200 GPUs, 1.15TB VRAM, 2TB RAM, 192 vCPUs. Everything below is live, monitored, and self-healing.

ComponentSpecificationStatusAWS Resource
Primary LLM Qwen3.5-397B-A17B-FP8 • 262K context • Port 8010 Live GPUs 0-3 (tp=4) • 560 GB VRAM
Critic LLM GLM-4.7-355B-FP8 • 202K context • Port 8011 Live GPUs 4-7 (tp=4) • 520 GB VRAM
Embedding Model Qwen3-Embedding-8B • 4096 dimensions • Port 8014 Live GPU 7 (shared) • ~16 GB VRAM
Reranker Qwen3-Reranker-8B • Cross-encoder • Port 8015 Live GPU 7 (shared) • ~16 GB VRAM
Knowledge Graph Neo4j Enterprise 5.26 • 19.2M nodes • 78.6M rels Live EBS io2 persistent • Bolt 7687
Vector Store Qdrant • 51 collections • GPU HNSW index Live NVMe + EBS • Ports 6333/6334
Relational DB YugabyteDB • Distributed SQL • Strong consistency Live EBS persistent • Port 5433
Cache Layer Redis • 622K keys • Sub-ms latency Live Instance RAM • Port 6379
Event Streaming RedPanda • Kafka-compatible • Zero-copy Live NVMe local storage
API Server FastAPI • 932 routers • 3,330+ endpoints Live Port 8000 • Auto-documented
Monitoring Stack Grafana + Prometheus • 200+ dashboards Live Port 3002 • Real-time alerting
Total Storage 10TB EBS (persistent) + 28TB NVMe (cache) Active EBS io2 + 8x NVMe LVM RAID
Everything On This Page Can Be Independently Verified.
We don't ask you to trust us. We ask you to audit us.
🔑
SSH Access
Direct terminal access to the running instance. Inspect processes, query databases, check GPU utilization in real-time.
📊
Grafana Dashboards
200+ real-time monitoring dashboards. GPU utilization, inference throughput, database health, daemon status—all live.
Live API Endpoints
Hit the API right now. Get real responses from real models running real inference on real hardware. No mocks.
📝
Git History
72,485 commits. Every line of code, every session, every decision—documented and traceable from day one.
# Verify the AI agency is live and operational $ curl https://genesis-api.myday7.com/api/v1/agency/health {"status":"operational","catalog_size":71,"models_active":2,"uptime_hours":2988} # Query the knowledge graph size directly $ curl https://genesis-api.myday7.com/api/v1/system/metrics {"neo4j_nodes":19247832,"neo4j_relationships":78612445,"redis_keys":622147,"qdrant_collections":51} # List available AI consulting agents $ curl https://genesis-api.myday7.com/api/v1/agency/agents | jq '.[0:3]' [ {"name":"Corporate Strategy Agent","status":"ready","specialization":"M&A, market entry, competitive positioning"}, {"name":"Growth Strategy Agent","status":"ready","specialization":"Revenue optimization, market expansion, scaling"}, {"name":"Financial Analysis Agent","status":"ready","specialization":"Modeling, forecasting, capital allocation"} ] # Verify GPU utilization (live inference happening right now) $ curl https://genesis-api.myday7.com/api/v1/system/gpu-status {"gpus":[ {"id":0,"model":"H200","vram_used_gb":138.2,"utilization_pct":67,"process":"qwen3.5-397b"}, {"id":1,"model":"H200","vram_used_gb":138.2,"utilization_pct":64,"process":"qwen3.5-397b"}, {"id":2,"model":"H200","vram_used_gb":138.2,"utilization_pct":71,"process":"qwen3.5-397b"}, {"id":3,"model":"H200","vram_used_gb":138.2,"utilization_pct":69,"process":"qwen3.5-397b"}, {"id":4,"model":"H200","vram_used_gb":128.7,"utilization_pct":45,"process":"glm-4.7-355b"}, {"id":5,"model":"H200","vram_used_gb":128.7,"utilization_pct":42,"process":"glm-4.7-355b"}, {"id":6,"model":"H200","vram_used_gb":128.7,"utilization_pct":48,"process":"glm-4.7-355b"}, {"id":7,"model":"H200","vram_used_gb":144.9,"utilization_pct":53,"process":"glm-4.7+embed+rerank"} ]}

The Output of 186 Autonomous AI Workers

Genesis doesn't sleep. 186+ autonomous agents operate 24/7, writing code, running tests, fixing bugs, and improving the system—all without human intervention. The velocity numbers below represent actual git commit history, independently verifiable.

580
Commits Per Day
72,485 total commits across 125 days of development. Every commit is atomic, tested, and meaningful.
36–182
Developer Equivalents
Industry average: 3.2 commits/dev/day. Our output equals a team of 36 to 182 professional engineers.
186+
Autonomous Workers
AI agents operating 24/7. Daemons, miners, guardians, healers—each with a specific mission, all coordinated.
24/7
Continuous Operation
The system improves while the founder sleeps. Every daemon, every agent, every process—running on AWS.
4,296
Lines Written Per Day
537,000 lines of production Python, growing every hour. Type-hinted, docstring'd, enterprise-grade.
1
Human Founder
One person. One vision. Orchestrating an army of AI that outproduces entire engineering departments.

Involuntary Chaos Engineering — And Genesis Passed Every Test

AWS spot instances are designed to be interrupted. Most startups would lose everything. Genesis treats every interruption as a resilience drill—and has never lost a single byte of data.

13
Spot Instance Terminations Survived
AWS pulled the hardware out from under us thirteen times. Thirteen times, Genesis recovered automatically. Full state restoration, zero human intervention required.
233
Failed Launch Attempts Overcome
233 times AWS couldn't fulfill our instance request. 233 times the system queued, waited, retried, and eventually launched—without losing a single job or context.
0
Bytes of Data Lost
Zero. Across all 13 terminations, all 233 failed launches, across months of continuous operation. EBS persistence, systematic backups, and self-healing architecture make data loss architecturally impossible.
<12
Minutes to Full Recovery
From cold start to full production: all models loaded, all databases online, all daemons running, all services healthy. Under twelve minutes. Every time.
100%
Recovery Success Rate
Not 99.9%. Not "five nines." One hundred percent. Every termination recovered. Every launch eventually succeeded. The system has never been permanently down.

This Isn't Vaporware. This Isn't a Roadmap.
This Is Live.

752 billion parameters running inference right now. 19.2 million knowledge nodes being traversed right now. 78.6 million relationships powering intelligence right now. 91 autonomous services working right now. On H200 GPUs. On AWS. As you read this.

The question isn't whether this technology works.
The question is what happens when it's properly capitalized.