SIFS

Sample Importance Feature Selector

- SIFS is an automated comprehensive data quality reporting tool
- Identify important samples and features to reduce data processing load
- Unsupervised: Track changes in information content with data gathering
- Supervised: Highlight evolution in dominant data samples and features
- Data quality metrics to indicate shortcomings in data samples and features

Practical Uses

Intelligent Sampling

Extract information preserving samples for ML load reduction

Feature Selection

Identify non-redundant dominant features

Data Quality Metrics

Can your data satisfy your predictive requirements?

Data Acquisition

Indicate data samples to enhance predictive features

Active Learning

Cost effective data gathering strategies for evolving datasets

Interpretable

Tailor made for business needs for confident decision making

Benchmarks

Coming Soon

So What's New?

- SIFS is an automated comprehensive data quality reporting tool
- Identify important samples and features to reduce data processing load
- Unsupervised: Track changes in information content with data gathering
- Supervised: Highlight evolution in dominant data samples and features
- Data quality metrics to indicate shortcomings in data samples and features