📣 BIG NEWS: Neptune is joining OpenAI! → Read the message from our CEO 📣

Compare Neptune vs Weights & Biases

Keep the features you rely on and gain a snappier UI

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vs
Weights & Biases

Log thousands of internal model metrics you need for debugging and actually be able to use them.
Browse, visualize, and compare your results in seconds. Whether in the cloud or self-hosted.

icon Responsive UI at scale

Navigate & visualize thousands of metrics in minutes milliseconds

Neptune doesn’t rely only on the browser to visualize your logs. Instead, it preprocesses your data at ingestion in a powerful backend. So, even if you track massive amounts of per-layer metrics, you can quickly search, filter, and display them to monitor results. No stalled queries. No stuck charts.

quote
Just wanted to say, I LOVE Neptune. It’s actually fast!
Research Scientist Top Reasearch Lab working on SOTA LLMs
icon Self-hosted deployment

Deploy on-prem or in your private cloud. From day one.

The sensitivity of your research makes deployment on your own infra essential. You shouldn’t be forced into a cloud-only option. With Neptune, you can get a secure and scalable self-hosted version adapted to the size of your project and your volume of logs.

You get high availability, horizontal scalability, and everything inside your network by design. Plus, our engineering team provides clear guidance and support to ensure a seamless and quick rollout

quote
For us, self-hosted deployment was too difficult and time-consuming in the previous solution. We could achieve that with Neptune, and it allowed us to close important deals that had stringent security requirements.
Daniel Danciu CTO at Cradle Bio

Switching to Neptune is simpler than you think

WandB and Neptune’s client libraries are similar enough that you can migrate without worrying that anything will break along the way.

1

Migrate your historical data with our ready-to-go migration script.

2

Transition to Neptune’s client library with just a few lines of code changes.

3

Resolve any migration issues within 24 hours with our on-call product experts.

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Feature-by-feature comparison

All the tracking tools you need, built to handle scale

Compare experiment tracking, model monitoring, and debugging features to check if you can move from WandB to Neptune without losing core capabilities.

Show differences only

Commercial offering

Commercial offering chevron
Open-source software or a managed cloud service?

Managed cloud service

Managed cloud service

Pricing model

User based and usage based (ingestion data points)

User based and usage based (tracked hours)

Guarantees around service levels (SLOs / SLAs)

Yes

Yes

Support 24Ă—7

Yes

Yes

User access management (SSO, ACL)

Yes

Yes

Security policy and compliance

Yes

Yes

General information

Deployment chevron
Cloud (SaaS)

Yes

Yes

Self-hosted (on-prem, private cloud)

Yes

Yes

Installation in air-gapped environment

Yes

Yes

Setup chevron
Infrastructure requirements

Minimal setup—install the Python client and ensure internet access (for managed hosting). Self-hosting requires additional infrastructure; see requirements here.

Minimal setup—install wandb python library and ensure internet access (for managed hosting). Self-hosting requires additional infrastructure; see requirements here.

Integration with the training process

A few lines of code via the Neptune Python library.

A few lines of code via Python, JavaScript, or CLI.

Flexibility and accessibility chevron
Accessing model metadata

CLI/custom API and Python SDK

CLI/custom API, Python SDK, Java SDK, Julia SDK

Supported operations

Search, Update, Delete, Download

Search, Update, Delete, Download

Logging modes

Offline, Disabled/Off, Asynchronous

Offline, Disabled/off, Asynchronous, Synchronous

Customizable metadata structure

Yes

Yes

Distributed training support

Yes

Yes

Pipelining support

Yes

Yes

Live monitoring

Yes

Yes

Webhooks and notifications

No

Yes

Resuming experiments

Yes

Yes

Forking runs

Yes

Yes

Capabilities

Log and display chevron
Parameters

Yes

Yes

Single values (metrics, losses, gradients, activations, etc.)

Yes

Yes

Series of values (metrics, losses, gradients, activations, etc.)

Yes

Yes

Series aggregates (min/max/avg/var/last)

Yes

Yes

Tags

Yes

Yes

Descriptions/comments

Yes

Yes

Rich format

Images, Plots, Video, Audio

Images, Plots, Interactive visualizations, Video, Audio

Hardware consumption

Yes

CPU, GPU, TPU, Memory

Dataset

No

Yes

Code versions

Git, Source, Notebooks

System information

Console logs, Execution command

Console logs, Error stack trace, Execution command, System details

Environment config

No

pip requirements.txt, Docker Dockerfile

Files (model binaries, CSV)

Yes

Yes

External file reference (S3 buckets)

No

Yes

Searching & filtering chevron
Searching on multiple criteria

Yes

Yes

Custom attribute filtering (e.g. tags)

Yes

Yes

Support for regular expressions

Yes

Yes

Auto-update charts based on regex

Yes

Yes

Saving searches and filter history

Yes

Yes

Visualizations chevron
Custom (calculated) metrics

Yes

Yes

Forked charts

Yes

Yes

Histograms

Yes

Yes

Custom axes

Yes

Yes

Customizable global settings

Yes

Yes

Customizable legends

Yes

Yes

Comparing experiments chevron
Table format diff

Yes

Yes

Single-metric overlayed plots

Yes

Yes

Multi-metric overlayed plots

Yes

Yes

Grouping experiments by metadata

Yes

Yes

Scatter plot

Yes

Yes

Parallel coordinates plot

No

Yes

Parameter importance plot

No

Yes

Rich format (side by side)

No

Images, Audio, Video, Interactive visualizations, Text

Data versions diff

No

No

Cross-project comparisons

Yes

Yes

Custom analysis chevron
Experiment table customization

Yes

Saving experiment table views

Yes

Yes

Dashboards combining different metadata types

Yes

Yes

Custom widgets and plugins

No

Yes

Persistent custom plots coloring

Yes

Yes

Collaboration and knowledge sharing chevron
Reports

Yes

Yes

Adding text in Reports

Yes

Yes

Commenting

Yes

Downloading charts

Yes

Yes

Sharing persistent UI links

Yes

Yes

User groups and ACL

Yes

Yes

This table was updated on 14 May 2025. Some information may be outdated.
Report outdated information here.

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