Compare - AWS Kinesis VS PostHog

Here’s the difference between AWS Kinesis and PostHog. The comparison is based on pricing, deployment, business model, and other important factors.

About AWS Kinesis

Amazon Kinesis makes it easy to collect, process, and analyze real-time, streaming data so you can get timely insights and react quickly to new information. Amazon Kinesis offers key capabilities to cost-effectively process streaming data at any scale, along with the flexibility to choose the tools that best suit the requirements of your application. With Amazon Kinesis, you can ingest real-time data such as video, audio, application logs, website clickstreams, and IoT telemetry data for machine learning, analytics, and other applications. Amazon Kinesis enables you to process and analyze data as it arrives and respond instantly instead of having to wait until all your data is collected before the processing can begin.

About PostHog

Provider of product analytics tools. The features of the product include user behavior analysis, analyzation of trends, funnels, retention, and cohorts, compatibility, secure data access, etc. It also provides data retention, support, SSO/SAML, export to data lakes, pricing model, analytics stack, infrastructure, etc. The clients of the company include HASURA, TINKOFF, Staples, etc.

Comparison Table

Overview
CategoriesData StreamingProduct Analytics
StageLate StageEarly Stage
Target SegmentEnterprise, Mid sizeEnterprise, Mid size
DeploymentSaaSOpen source
Business ModelCommercialOpen Source
PricingContact SalesFreemium, Contact Sales
LocationUSSan Francisco, California
Companies using it
Coca Cola logoNetflix logoOneFootball logoUproad logovmt pvt ltd logoCraft logoDashlane logonashtech global logodadosfera logoTrackingplan logo
ostro logoVizzly logo
Contact info
linkedin icon
twitter icon
linkedin icon
twitter icon

Add to compare

Similar Companies
Apache Storm logo
Apache Storm
Data Streaming
Fast Data
Data Streaming
Giga Spaces logo
Giga Spaces
Data Streaming
Gridgain
Data Streaming