Route data to multiple destinations
Enrich data events with business or service context
Search and analyze data directly at its source, an S3 bucket, or Cribl Lake
Reduce the size of data
Shape data to optimize its value
Store data in S3 buckets or Cribl Lake
Replay data from low-cost storage
Collect logs and metrics from host devices
Centrally receive and route telemetry to all your tools
Redact or mask sensitive data
Optimize data for better threat detection and response
Streamline infrastructure to reduce complexity and cost
Simplify Kubernetes data collection
Optimize logs for value
Control how telemetry is stored
Easily handle new cloud telemetry
Ensure freedom in your tech stack
Accelerate the value of AIOps
Effortlessly search, collect, process, route and store telemetry from every corner of your infrastructure—in the cloud, on-premises, or both—with Cribl. Try the Cribl Suite of products today.
Learn moreGet telemetry data from anywhere to anywhere
Get started quickly without managing infrastructure
Streamline collection with a scalable, vendor-neutral agent
AI-powered tools designed to maximize productivity
Easily access and explore telemetry from anywhere, anytime
Instrument, collect, observe
Store, access, and replay telemetry.
Get hands-on support from Cribl experts to quickly deploy and optimize Cribl solutions for your unique data environment.
Work with certified partners to get up and running fast. Access expert-level support and get guidance on your data strategy.
Get inspired by how our customers are innovating IT, security, and observability. They inspire us daily!
Read customer storiesFREE training and certs for data pros
Log in or sign up to start learning
Step-by-step guidance and best practices
Tutorials for Sandboxes & Cribl.Cloud
Ask questions and share user experiences
Troubleshooting tips, and Q&A archive
The latest software features and updates
Get older versions of Cribl software
For registered licensed customers
Advice throughout your Cribl journey
Connect with Cribl partners to transform your data and drive real results.
Join the Cribl Partner Program for resources to boost success.
Log in to the Cribl Partner Portal for the latest resources, tools, and updates.
Our Criblpedia glossary pages provide explanations to technical and industry-specific terms, offering valuable high-level introduction to these concepts.
The choice of technique depends on the specific goals of the analysis and the nature of the data. Some common methods include:
Aggregation
Combining multiple data points into summary statistics or aggregates, such as computing averages, totals, or other summary measures.
Sampling
Selecting a representative subset of the data for analysis allows the selected subset to be as fair as possible to represent the entire dataset.
Dimensionality Reduction
Reducing the number of variables or features in a dataset.
Binning or Histogramming
Grouping continuous data into discrete bins or intervals. This reduces the granularity of the data while preserving overall patterns and trends.
Clustering
Grouping similar data points into clusters, and representing each cluster with a representative or centroid. This can reduce the number of data points while maintaining the diversity within clusters.
Data Transformation
Applying mathematical transformations to the data, such as normalization or scaling, to reduce the range or variance of values.
Reducing Data without Losing Value
One of the primary challenges of data reduction is the potential loss of information. When compressing or summarizing data, there is a risk of oversimplifying or omitting critical details, leading to a loss of nuance in the dataset. Organizations must balance data simplification with the preservation of essential details.
Avoiding Selection Bias in Sampling
In techniques like sampling, where a subset of data is selected for analysis, there is a risk of introducing selection bias. If the chosen subset is not truly representative of the entire dataset, the results may be skewed and not reflect the true nature of the data. Avoiding selection bias in sampling is a key challenge of data reduction to navigate, as maintaining data integrity is crucial.
Choosing Appropriate Reduction Techniques
Different datasets may require different approaches, and the effectiveness of a technique depends on the characteristics of the data. Additionally, inappropriate choices may lead to misinterpretations or distortions in the analytical results.
Classic choice. Sadly, our website is designed for all modern supported browsers like Edge, Chrome, Firefox, and Safari
Got one of those handy?