Training & Post-Training
PlannedDistributed Fine-Tuning and Post-Training Orchestrator
Reproducible, gated distributed fine-tuning and post-training runs.
This system is planned. The case study describes the intended design; metrics are targets or planned, not measured results.
Problem
Fine-tuning runs are often one-off notebooks: hard to reproduce, expensive to rerun, and promoted to production without a consistent evaluation gate.
Why this matters
Post-training (SFT, preference optimization, distillation) is where model quality is won. Reproducible, gated, distributed orchestration is core infrastructure for any lab shipping model updates safely and repeatably.
Constraints
- Reproducible runs from a versioned config and dataset snapshot.
- Ephemeral, cost-capped compute (no idle GPU clusters).
- Every promotion must pass an eval gate.
- No leakage between training and evaluation sets.
Architecture
Interface
- Run spec / CLI
- Experiment metadata
Orchestration
- SchedulerRay on K8s
- Checkpoint manager
Compute
- Distributed workersephemeral GPU
- Object storage
Gate
- Eval + regression
- Model registry
Data flow
Run spec + data snapshot enter the scheduler, workers train and checkpoint to object storage, the eval gate scores the result, and only passing models are written to the registry.
Control plane vs data plane
Control: Scheduler, run specs, experiment metadata, and the promotion gate.
Data: Distributed training workers, checkpoint read/write, and object storage.
Core capabilities
- Declarative job specs with pinned data, config, and seeds.
- Distributed execution with checkpoint/resume.
- Automatic eval + regression comparison against a baseline.
- Artifact and metadata tracking for every run.
Staff-level tradeoffs
Ephemeral clusters over always-on GPUs.
Keeps cost bounded for a portfolio-scale project; the orchestration logic is the interesting part, not idle hardware.
Eval gate is mandatory before registration.
Prevents 'it trained, ship it'. Promotion requires beating a baseline on a held-out set.
Tech stack
ML / Data
- Python
- PyTorch
- Ray
Backend
- Control API
- Go / Python
Infrastructure
- Kubernetes
- Terraform
- object storage
Tracking
- experiment metadata
- model registry
Metrics
- Run reproducibility Planned
- Config + data snapshot pinned
- Promotion gate Planned
- Must beat baseline on held-out eval
- Idle GPU cost Target
- $0 (ephemeral clusters)
- Checkpoint resume Planned
- Resume after worker loss
Metrics are labeled measured, target, or planned. Nothing here is an achieved result unless it is marked measured.
Failure modes
Worker crash mid-run
Resume from the latest checkpoint rather than restarting the run.
Eval gate fails
Model is not registered or promoted; run is marked failed with the diff.
Missing data snapshot
Run refuses to start rather than training on an unpinned dataset.
What's next
- Implement the run-spec schema and a minimal single-node path first.
- Add distributed checkpoint/resume, then the eval gate.