Contents Menu Expand Light mode Dark mode Skip to content

Webinar: Why Industrial IoT Data Breaks Traditional Databases — and What to Do About It

Register Now
  • Product
    • Editions
      • CrateDB Cloud
      • CrateDB Enterprise
      • CrateDB OSS
    • Features
      • Overview
      • High cardinality
      • SQL syntax
      • Integrations
      • Security
    • Data models
      • Time-series
      • Document/JSON
      • Vector
      • Full-text
      • Spatial
      • Relational
  • Solutions
    • By use cases | Real-time
      • Industrial Analytics
      • AI operations
      • Application analytics
    • By industry
      • Manufacturing
      • Energy
      • FMCG
      • Logistics
      • Oil, Gas & Mining
      • Transportation
      • SaaS
      • Media & Entertainment
  • Resources
    • Customer stories
    • Academy
    • Asset library
    • Blog
    • Guides
    • Events
  • Developer
    • Documentation
    • Drivers and tools
    • Community
    • GitHub
    • Support
  • Pricing
  • Login
  • Get Started
    • Overview
      • Solutions and use cases
        • Time series data
          • Fundamentals
            • Generate time series data
              • Generate time series data from the command line
              • Generate time series data using Python
              • Generate time series data using Node.js
              • Generate time series data using Go
            • Normalize time series data intervals
            • Analyzing weather data
            • Analyzing device readings with metadata integration
          • Advanced analysis
          • Video tutorials
        • Industrial big data
          • Azure IoT
          • Machine Learning
          • ABB insights
          • Rauch insights
          • SPGo! insights
          • TGW insights
        • Long-term store
          • Automatic retention and expiration
        • Real-time raw-data analytics
          • Bitmovin insights
        • Machine learning
    • Getting Started
      • Video learning
      • Data modelling
        • Relational data
        • JSON data
        • Time series data
        • Geospatial data
        • Full-text data
        • Vector data
        • Primary key strategies
      • Query capabilities
        • Aggregations
        • Ad-hoc queries
        • Search
        • AI integration
        • Performance
      • Import data
      • Sample applications

    Build

    • Load data into CrateDB
      • Load and Export (ETL)
      • Change Data Capture (CDC)
      • Metrics, telemetry, and logs
    • Connect / Drivers
      • General information
      • Applications
      • Software Testing
      • C#
      • Elixir
      • Erlang
        • Erlang ODBC
        • Erlang epgsql
      • F#
      • Go
        • pgx
        • pq
        • KSQL
      • Groovy
      • Java
        • PostgreSQL JDBC
        • CrateDB JDBC
        • Hibernate / JPA
        • jOOQ
        • Software testing
      • JavaScript
        • node-postgres
        • node-crate
      • Julia
      • Kotlin
      • Perl
      • PHP
        • AMPHP PostgreSQL
        • PostgreSQL PDO
        • CrateDB PDO
        • CrateDB DBAL
      • Python
        • crate-python
        • sqlalchemy-cratedb
        • Conecta
        • cratedb-async
        • micropython-cratedb
        • psycopg2
        • psycopg3
        • aiopg
        • asyncpg
        • ConnectorX
        • Records
        • turbodbc
      • R
      • Ruby
      • Rust
      • Scala
      • ODBC
        • C#
        • Erlang
        • Python
        • Visual Basic
      • Visual Basic
      • Zig
      • Natural language
    • Integrations
      • Categories
        • Business Intelligence
        • Data Lineage
        • Data Visualization
        • Programming Frameworks
        • Migrations
          • Rockset
            • Migrate Queries
      • Airflow / Astronomer
        • Getting started
        • Import Parquet files
        • Import stock market data
        • Export to S3
        • Data retention policy
        • Hot/cold data retention
      • AMQP
        • Usage
      • Arrow
        • Import Parquet files
      • Atlan
      • AWS Lambda
      • Azure Functions
        • Tutorial
      • Balena
        • Usage
      • Cluvio
        • Usage
      • collectd
        • Usage with collectd
        • Usage with Telegraf
      • Conecta
      • Coreflux
        • Usage
      • Dapr
        • Usage
      • Dask
        • Usage
      • Databricks
        • Azure Databricks
      • DataGrip
      • Datashader
      • DBeaver
      • dbt
        • Usage
      • Debezium
        • Tutorial
      • Django
        • Settings
        • Models
        • Fields
        • Scalar functions
      • dlt
        • Usage
      • DMS (AWS Database Migration Service)
      • DynamoDB
      • Estuary
      • Explo
      • Flink
      • Gradio
      • Grafana
        • Tutorial
      • HiveMQ
        • Usage
      • Hop
      • Iceberg
      • InfluxDB
        • Usage
        • Cloud to Cloud
        • Data Model
      • ingestr
      • JMeter
      • Kafka
        • Using Kafka with Python
        • Using Confluent Kafka Connect
      • Kestra
        • Usage
      • Kinesis
      • LangChain
        • Usage
      • LlamaIndex
        • Text-to-SQL synopsis
        • Text-to-SQL usage
      • Locust
        • Tutorial
      • Marquez
        • Usage
      • Model Context Protocol (MCP)
        • CrateDB MCP Server
        • Community servers
      • Meltano
      • Metabase
        • Usage
      • MindsDB
      • MLflow
      • MongoDB
        • Usage
        • Cloud to Cloud
        • MongoDB’s data model
      • Mosquitto
        • Usage
      • MQTT
      • MySQL and MariaDB
        • Usage
        • Use CSV
      • n8n
      • NiFi
        • Usage
      • Node-RED
        • Tutorial
      • OpenTelemetry
        • Collector Usage
        • Telegraf Usage
      • Oracle
        • Usage
      • pandas
        • Starter tutorial
        • Jupyter tutorial
        • Efficient ingest
      • Plotly and Dash
      • Polars
      • PostgreSQL
        • Usage
      • Power BI
        • Power BI Desktop
        • Power BI Service
      • Prefect
        • Usage
      • Prometheus
        • Usage
      • PyCaret
      • PyViz
      • QueryZen
      • R
        • Tutorial
      • Rill
        • Usage
      • RisingWave
        • Stream processing from Iceberg tables to CrateDB using RisingWave
      • rsyslog
        • Usage
      • scikit-learn
      • Spark
        • Usage
      • SQL Server
      • StatsD
        • Usage
      • Streamlit
      • StreamSets
        • Usage
      • Superset / Preset
        • Usage
        • Sandbox
      • Tableau
      • Telegraf
        • Usage
      • TensorFlow
        • Tutorial
      • Terraform
        • Usage
      • Trino
        • Usage
    • All Features
      • Highlights
      • SQL
      • Document Store
        • Tutorial
      • Relational / JOINs
      • Search: FTS, Geo, Vector, Hybrid
        • Full-Text Search
          • Full-text Search Options
          • Analyzers, Tokenizers, and Filters
          • Tutorial
          • Indexing Text for Both Effective Search and Accurate Analysis
        • Geospatial Search
        • Vector Search
        • Hybrid Search
      • BLOB Store
      • Clustering
      • Snapshots
      • Cloud Native
      • Storage Layer
        • Indexing and storage in CrateDB
      • Hybrid Index
      • Advanced Querying
        • Recurrent queries
      • Generated Columns
      • Server-Side Cursors
      • Foreign data wrappers
      • User-Defined Functions
      • Cross-Cluster Replication
        • Usage

    Operations

    • Installation
      • Debian, Ubuntu
      • Red Hat, SUSE
      • Windows
      • Tarball
      • Container setup
        • Docker
        • Kubernetes
          • CrateDB and Kubernetes
          • Run CrateDB with Kubernetes Operator
      • Cloud hosting
        • Amazon AWS
          • CrateDB on Amazon EC2
          • Deploy using Terraform
          • Using Amazon S3 as a snapshot repository
        • Microsoft Azure
          • CrateDB on Azure VMs
          • Deploy using Terraform
      • Configuration settings
      • Multi-node setup
      • Multi-zone setup
    • Administration
      • Bootstrap checks
      • User management
      • Going into production
      • Monitoring and diagnostics
        • Prometheus and Grafana
        • Prometheus JMX Exporter
        • Prometheus SQL Exporter
      • Memory configuration
      • Circuit breaker
      • Troubleshooting
        • System Tables
        • CrateDB Flight Recorder (CFR)
        • Java Flight Recorder (JFR)
        • The jcmd Utility
          • Using jcmd with CrateDB on Docker
          • Java Flight Recorder (JFR)
        • The crate-node command
      • Scaling
        • Expand
        • On-Demand
        • Autoscale
        • On Kubernetes
      • Upgrading
        • Guidelines
        • Rolling Upgrade
        • Full Restart Upgrade
    • Performance guides
      • Sharding and partitioning 101
      • Sharding recommendations
      • Scaling
      • Storage
      • Fast Inserts
        • Insert Methods
        • Bulk Inserts
        • Parallel Inserts
        • Configuration Tuning for Inserts
        • Testing Insert Performance
      • Fast Selects
      • Query Optimization 101

    References

  • CrateDB Cloud
    • CrateDB
      • Tools

      • Admin UI
        • CrateDB CLI
          • Cloud CLI
            • CrateDB MCP
            • CrateDB Toolkit
            • Support
            • Community

            Run CrateDB on Amazon Web Services (AWS)¶

            Amazon Web Services (AWS) offers a wide range of cloud services, allowing to easily run and scale applications such as CrateDB.

            This section explains particularities in setting up CrateDB on AWS, to make the best use of its capabilities.

            Table of contents

            • CrateDB on Amazon EC2
            • Deploy using Terraform
            • Using Amazon S3 as a snapshot repository
            Next
            CrateDB on Amazon EC2
            Previous
            Cloud hosting
              Feedback

              Suggest improvement

              Edit page

              View page source

            On this page
            • Run CrateDB on Amazon Web Services (AWS)
            • Imprint
            • Contact
            • Legal
            Follow us
            Follow us on X Follow us on LinkedIn Follow us on Facebook Follow us on Instagram Follow us on Facebook