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  1. Stackups
  2. DevOps
  3. Log Management
  4. Log Management
  5. Gravwell vs Sumo Logic

Gravwell vs Sumo Logic

OverviewComparisonAlternatives

Overview

Sumo Logic
Sumo Logic
Stacks192
Followers282
Votes21
Gravwell
Gravwell
Stacks5
Followers9
Votes11

Sumo Logic vs Gravwell: What are the differences?

Developers describe Sumo Logic as "Cloud Log Management for Application Logs and IT Log Data". Cloud-based machine data analytics platform that enables companies to proactively identify availability and performance issues in their infrastructure, improve their security posture and enhance application rollouts. Companies using Sumo Logic reduce their mean-time-to-resolution by 50% and can save hundreds of thousands of dollars, annually. Customers include Netflix, Medallia, Orange, and GoGo Inflight. On the other hand, Gravwell is detailed as "Ingest everything, compromise nothing. Data analytics at scale with predictive pricing". It is the most flexible full-stack analytics platform in the world. We excel at fusing disparate data sources such as firewall logs, end point event logs, network traffic, OT IDS logs, OT process data, threat feed data, etc. to create a central source of knowledge. Created in the IoT age we know modern data insights demand unlimited ingest and analysis capability for cybersecurity, IoT, business analytics, and more. We support a wide range of customers, from energy production, energy delivery, government, finance, and insurance to health and beauty products.

Sumo Logic and Gravwell belong to "Log Management" category of the tech stack.

Some of the features offered by Sumo Logic are:

  • Ability to collect data from on-premise sources, private/public/hybrid clouds, and SaaS/PaaS environments
  • Real-time continuous query engine that constantly updates dashboards and reports for immediate visualization
  • Anomaly detection engine that enables companies to proactively uncover events without writing rules

On the other hand, Gravwell provides the following key features:

  • Ability for deployment in cloud, on-premises, or in an isolated on-premises network lacking outside network connectivity
  • Capable of collecting disparate unstructured time-series data sources into a queryable data lake
  • Enable data scientists to create custom analysis code/tools to be executed as part of a search pipeline or query system

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Detailed Comparison

Sumo Logic
Sumo Logic
Gravwell
Gravwell

Cloud-based machine data analytics platform that enables companies to proactively identify availability and performance issues in their infrastructure, improve their security posture and enhance application rollouts. Companies using Sumo Logic reduce their mean-time-to-resolution by 50% and can save hundreds of thousands of dollars, annually. Customers include Netflix, Medallia, Orange, and GoGo Inflight.

It is the most flexible full-stack analytics platform in the world. We excel at fusing disparate data sources such as firewall logs, end point event logs, network traffic, OT IDS logs, OT process data, threat feed data, etc. to create a central source of knowledge. Created in the IoT age we know modern data insights demand unlimited ingest and analysis capability for cybersecurity, IoT, business analytics, and more. We support a wide range of customers, from energy production, energy delivery, government, finance, and insurance to health and beauty products.

Ability to collect data from on-premise sources, private/public/hybrid clouds, and SaaS/PaaS environments;Real-time continuous query engine that constantly updates dashboards and reports for immediate visualization;Anomaly detection engine that enables companies to proactively uncover events without writing rules;LogReduce, our pattern-recognition engine, that distills tens/hundreds of thousands of log messages into a set of patterns for easier issue identification and resolution;The ability to support data bursts on-demand with our elastic log processing architecture;Real-time alerts and notifications
Ability for deployment in cloud, on-premises, or in an isolated on-premises network lacking outside network connectivity; Capable of collecting disparate unstructured time-series data sources into a queryable data lake; Enable data scientists to create custom analysis code/tools to be executed as part of a search pipeline or query system; Analysts and data scientists have access to raw entry records for retroactive analysis and application of machine learning that did not exist at the time of collection; Capable of data separation and fine-grained access controls for multi-tenancy; Data collectors or agents are modifiable by the customer to enable processing, filtering, or enrichment before forwarding to the central store; Massive scalability. Over 100 Terabytes a day is no problem. ; Unlimited data ingestion; Unlimited retention; Live Dashboards; Secure and Proprietary; Offline ("Cold") and online ("Hot") replication; Region-aware redundancy; Multi-tenancy Permissions & Unlimited user seats; Binary data support; Configurable data retention and automatic age-out; Distributed web frontends; Unlimited search count
Statistics
Stacks
192
Stacks
5
Followers
282
Followers
9
Votes
21
Votes
11
Pros & Cons
Pros
  • 11
    Search capabilities
  • 5
    Live event streaming
  • 3
    Pci 3.0 compliant
  • 2
    Easy to setup
Cons
  • 2
    Expensive
  • 1
    Occasionally unreliable log ingestion
  • 1
    Missing Monitoring
Pros
  • 1
    Indexing on writes
  • 1
    No storage-based pricing
  • 1
    Multi-tenancy
  • 1
    Rapid deployment
  • 1
    Ready-to-install kits
Cons
  • 1
    Query language is a lot to learn
Integrations
Amazon CloudFront
Amazon CloudFront
Amazon S3
Amazon S3
Akamai
Akamai
AWS CloudTrail
AWS CloudTrail
No integrations available

What are some alternatives to Sumo Logic, Gravwell?

Papertrail

Papertrail

Papertrail helps detect, resolve, and avoid infrastructure problems using log messages. Papertrail's practicality comes from our own experience as sysadmins, developers, and entrepreneurs.

Logmatic

Logmatic

Get a clear overview of what is happening across your distributed environments, and spot the needle in the haystack in no time. Build dynamic analyses and identify improvements for your software, your user experience and your business.

Loggly

Loggly

It is a SaaS solution to manage your log data. There is nothing to install and updates are automatically applied to your Loggly subdomain.

Logentries

Logentries

Logentries makes machine-generated log data easily accessible to IT operations, development, and business analysis teams of all sizes. With the broadest platform support and an open API, Logentries brings the value of log-level data to any system, to any team member, and to a community of more than 25,000 worldwide users.

Logstash

Logstash

Logstash is a tool for managing events and logs. You can use it to collect logs, parse them, and store them for later use (like, for searching). If you store them in Elasticsearch, you can view and analyze them with Kibana.

Graylog

Graylog

Centralize and aggregate all your log files for 100% visibility. Use our powerful query language to search through terabytes of log data to discover and analyze important information.

Sematext

Sematext

Sematext pulls together performance monitoring, logs, user experience and synthetic monitoring that tools organizations need to troubleshoot performance issues faster.

Fluentd

Fluentd

Fluentd collects events from various data sources and writes them to files, RDBMS, NoSQL, IaaS, SaaS, Hadoop and so on. Fluentd helps you unify your logging infrastructure.

ELK

ELK

It is the acronym for three open source projects: Elasticsearch, Logstash, and Kibana. Elasticsearch is a search and analytics engine. Logstash is a server‑side data processing pipeline that ingests data from multiple sources simultaneously, transforms it, and then sends it to a "stash" like Elasticsearch. Kibana lets users visualize data with charts and graphs in Elasticsearch.

Splunk

Splunk

It provides the leading platform for Operational Intelligence. Customers use it to search, monitor, analyze and visualize machine data.

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