fitgap

Weka

Features
Ease of use
Ease of management
Quality of support
Affordability
Market presence
Take the quiz to check if Weka and its alternatives fit your requirements.
Pricing from
Completely free
Free Trial unavailable
Free version
User corporate size
Small
Medium
Large
User industry
  1. Education and training
  2. Agriculture, fishing, and forestry
  3. Professional services (engineering, legal, consulting, etc.)

What is Weka

Weka is an open-source machine learning software suite that provides a collection of algorithms and tools for data preprocessing, classification, regression, clustering, association rules, and model evaluation. It is commonly used by students, researchers, and practitioners for exploratory modeling, teaching, and prototyping on structured (tabular) datasets. Weka includes a desktop GUI (Explorer/Experimenter/Knowledge Flow) and Java APIs, which makes it suitable for interactive analysis as well as programmatic experimentation.

pros

Broad algorithm library

Weka ships with a wide range of classical machine learning algorithms and evaluation methods out of the box. It supports common workflows such as feature selection, cross-validation, and hyperparameter experimentation through its interfaces. This breadth makes it useful for quickly comparing baseline models without assembling multiple separate tools.

Accessible GUI for learning

The Explorer and Experimenter interfaces let users load datasets, run models, and review metrics without writing code. This lowers the barrier for teaching and for early-stage prototyping compared with platforms that assume a full data engineering and deployment stack. The Knowledge Flow interface also supports visual, step-based pipelines for repeatable experiments.

Open-source and extensible

Weka is distributed under an open-source license and has a long-standing academic and practitioner community. It provides Java APIs and a plugin ecosystem that allow teams to extend algorithms, filters, and integrations. This can be advantageous for research settings or organizations that need transparency into implementations.

cons

Limited production deployment tooling

Weka focuses on experimentation and analysis rather than end-to-end MLOps. It does not natively provide the same level of model serving, monitoring, governance, or CI/CD integration that many enterprise machine learning platforms emphasize. Teams often need additional infrastructure to operationalize models built in Weka.

Scalability constraints on big data

Weka is typically used on single-machine, in-memory datasets and can become constrained with very large data volumes. While there are related projects and integrations for distributed processing, the core experience is not designed around cloud-scale data processing. This can limit suitability for high-volume, low-latency, or large-feature-space workloads.

Primarily tabular ML focus

Weka is strongest for traditional machine learning on structured data and standard evaluation workflows. It is not centered on deep learning, large-scale feature stores, or modern GPU-accelerated training pipelines. Users working heavily with unstructured data (images, audio, large text corpora) may need complementary tools.

Plan & Pricing

Pricing model: Open-source / Free License: GNU General Public License (GPL) — Weka is distributed under the GPL as stated on the official Weka site. Free tier/trial: Weka is available free to download and use (no paid tiers listed). Commercial license: The official Weka documentation/wiki notes that for commercial projects that require distributing Weka code under a non-GPL license it may be possible to purchase an appropriate license from the copyright holders; no prices are published on the official site and interested parties are instructed to contact the University of Waikato. Example costs: Not listed on the official site. Notes: No subscription/paid plans, no usage-based pricing information, and no time-limited trial is advertised on the official pages.

Seller details

University of Waikato
Hamilton, New Zealand
1993
Open Source
https://www.cs.waikato.ac.nz/ml/weka/

Tools by University of Waikato

1-Click Ready Windows Tool Weka on Windows 2012 R2
Weka

Best Weka alternatives

Vertex AI
PyTorch
MLlib
See all alternatives

Popular categories

All categories