MLOps Platforms

Interactive selector

MLOps Platform Selector

Weight what you actually need across eight capability axes, set your hard constraints (self-host, cloud, team size, OSS-only, budget), and get a ranked shortlist with a per-axis fit matrix and an explicit 'forces a second tool for…' gap note for each platform.

Scoring is transparent: capability scores (0–3) per axis are shown for every platform. Methodology in our platform selection framework (reviewed 2026-05-12).

Capability requirements

For each axis pick Required / Nice / Don't-need, then weight how much it matters (1–5).

Experiment tracking Logging params/metrics/artifacts, run comparison.
Model registry Versioned models, stage transitions, lineage.
Feature store Offline/online feature parity, point-in-time joins.
Model serving Managed real-time/batch inference endpoints.
Pipeline orchestration DAGs, scheduling, retries for training/data flows.
Data versioning Reproducible dataset snapshots tied to runs.
Evaluation Offline/online eval, LLM eval, regression gates.
Governance Audit trail, approvals, model cards, access control.
Hard constraints

Hosting model

Cloud

Team size

Licensing

Budget

All 10 platforms · capability scores (0–3)

Platform Experiment trackingModel registryFeature storeModel servingPipeline orchestrationData versioningEvaluationGovernance
MLflow ↗ Open source 33021122
Weights & Biases ↗ Commercial SaaS (self-host tier) 33011232
Amazon SageMaker ↗ Managed cloud (AWS) 23333223
Google Vertex AI ↗ Managed cloud (GCP) 23333233
Kubeflow ↗ Open source (Kubernetes) 12033112
ZenML ↗ Open source + managed 22123222
Metaflow ↗ Open source (Netflix/Outerbounds) 21013311
Databricks (Lakehouse + Mosaic AI) ↗ Managed platform (multi-cloud) 33332333
Feast ↗ Open source (feature store) 00310101
DVC + DVCLive ↗ Open source (data/model versioning) 21002311

Related tools in this network

Other interactive tools across the network that pair well with this one.