4
legacy tracks with provenance and SME accountability mappings
Supporto AI Lab
Imballiamo, etichettiamo e consegniamo artefatti COBOL, RPG e mainframe con tracciabilità verificabile.
Pensato per team enterprise con governance, auditabilità e confini di handoff definiti.
Proof before rollout
Each engagement is prepared for ingestion-grade trust: training-data provenance, documented SME review, and policy-aware handoff rules.
No unlabeled assumptions: every claim is traceable from source artifact to AI operations handoff.
4
legacy tracks with provenance and SME accountability mappings
94%
source lineage fields preserved across data and specialist handoffs
48h
from sourcing assessment to dual-track training-ready handoff
0
audit findings from policy exceptions entering release
Offer matrix
Combine governed data, AI specialists, and operating support so model teams can work with legacy-system knowledge without losing control.
Package 1
COBOLpro provides legacy SMEs and runbooks; your lab retains model training decisions and deployment control.
Includes
Output: Annotated SME roster + onboarding runbook + policy alignment memo
Package 2
Data packages are delivered with immutable manifests, lineage graphs, and readiness checks for model training and RL environments.
Includes
Output: JSONL + Parquet + manifest + policy map
Package 3
COBOLpro supports the operating layer around legacy-system knowledge; your lab controls model training, evaluation, and deployment decisions.
Includes
Output: Operating runbook + QA checklist + escalation path + handoff evidence
4-step workflow
Il flusso è semplice: acquisizione, etichettatura, validazione, quindi consegna controllata.
Step 01
Assess legacy estates, ownership, and policy constraints to identify data, specialist, and operating-support requirements.
Step 02
Define train/rl readiness criteria, handoff boundaries, and governance checkpoints for each selected track.
Step 03
Operationalize SME onboarding and dataset preparation in parallel, then validate annotations, quality gates, and policy controls together.
Step 04
Deliver dual-track packages with reproducibility trails, governance evidence, and model- or RL-ready acceptance checkpoints.
Compliance and controls
COBOLpro is built for AI labs and model teams requiring evidence, policy enforcement, and reproducible handoff before training or evaluation.
Control layer
Final controls
Designed for AI labs and model teams that require auditable compliance across annotation, training, and RL operations.
Request AI lab intakeBook a scoped intake to validate data provenance, specialist support, governance, and reproducibility before procurement.