☁️ FinOptix-14B

Your FinOps architect in 14 billion parameters.

A QLoRA fine-tuned Qwen 2.5 14B model specialized in AWS Cloud Governance, FinOps Cost Optimization, and Infrastructure as Code (Terraform HCL) auditing.

Developed as a submission for the Hugging Face Build Small Hackathon.

πŸš€ Key Capabilities

  • Terraform HCL Auditor β€” Scans IaC for cost waste, governance violations, rightsizing opportunities. Outputs compliant code.
  • AWS Cost JSON Parser β€” Extracts anomalies, burn rates, and actionable insights from Cost Explorer / Anomaly Detection payloads.
  • BYaML Governance Engine β€” Validates architecture YAML against a 38-type component catalog and 13 governance policies.
  • FinOps Q&A β€” Expert answers on Reserved Instances, Savings Plans, tagging strategies, unit economics, and more.

πŸ› οΈ Training Details

Parameter Value
Base Model
Method QLoRA (4-bit NF4, double quantization)
LoRA Config r=16, alpha=32, dropout=0.05, target_linear=True
Hardware NVIDIA A100-80GB (Modal)
Duration ~40 minutes
Epochs 3
Dataset 265 gold synthetic examples (FinOps, Terraform, AWS Cost, BYaML)
Sequence Length 2048 tokens
Optimizer paged_adamw_8bit, lr=2e-4, cosine schedule

πŸ“Š Dataset Composition

Category Count Description
Terraform HCL 100 Audit + refactor (rightsizing, tags, encryption, lifecycle)
AWS Cost JSON 80 Anomaly detection, budget alerts, cost-by-service
BYaML Governance 50 Schema validation, policy checks, relationship verification
FinOps Q&A 15 Deep expert answers (frameworks, strategies, tooling)
Bash/Python Scripts 20 Real boto3 + bash for cloud automation

All data is 100% synthetic β€” no client or proprietary information. Modeled after real-world AWS patterns.

πŸ’» Usage

With PEFT (recommended)

🎯 Demo

Try it live: FinOptix-14B Space

πŸ•οΈ Hackathon Context

  • Track: Backyard AI β€” solving a real FinOps problem for my own startup (Brickstore AI)
  • Constraint: ≀ 32B parameters (this model is 14B βœ…)
  • Builder: Carlos Cortez (@ccortezb) β€” AWS Community Hero, Lima, Peru
  • Badges: 🎯 Well-Tuned Β· 🎨 Off-Brand Β· πŸ““ Field Notes

βš–οΈ License

Apache 2.0 β€” inheriting from Qwen 2.5 base model license.

πŸ™ Acknowledgments

  • Qwen Team for the exceptional base model
  • Modal for 50 GPU credits (training infrastructure)
  • Hugging Face for hosting and hackathon organization
  • Axolotl for the training framework
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