Click Below to Get the Code

Browse, clone, and build from real-world templates powered by Harper.
Blog
GitHub Logo

Edge Data Platforms, Real-Time Services, & Modern Data Trends

Edge data platforms and real-time services are two solutions focused on solving the challenges of modern data management, and they are quickly gaining popularity among businesses. In this article, we will explore what edge data platforms and real-time services are, why they are important, and how they can be used.
Blog

Edge Data Platforms, Real-Time Services, & Modern Data Trends

Margo McCabe
Senior Director of Partnerships and Sales
at Harper
May 31, 2023
Margo McCabe
Senior Director of Partnerships and Sales
at Harper
May 31, 2023
Margo McCabe
Senior Director of Partnerships and Sales
at Harper
May 31, 2023
May 31, 2023
Edge data platforms and real-time services are two solutions focused on solving the challenges of modern data management, and they are quickly gaining popularity among businesses. In this article, we will explore what edge data platforms and real-time services are, why they are important, and how they can be used.
Margo McCabe
Senior Director of Partnerships and Sales

Intro

We all know that data is being generated at an unprecedented rate. You may also know that this has led to an increase in the demand for efficient and secure data storage solutions that won’t break the bank. Edge data platforms and real-time services are two solutions focused on solving the challenges of modern data management, and they are quickly gaining popularity among businesses. In this article, we will explore what edge data platforms and real-time services are, why they are important, and how they can be used.

What are Edge Data Platforms?

Edge data platforms are software solutions that enable businesses to collect, process, and analyze data at the edge of the network. These platforms offer several advantages over traditional cloud computing. By processing data at the edge of the network, latency can be minimized, which means that data can be processed and analyzed faster. This is especially important for applications that require real-time responses, such as autonomous vehicles, industrial IoT applications, or streaming media.

Edge data platforms typically include a range of tools and features, such as data ingestion, storage, and analysis, as well as machine learning and artificial intelligence capabilities. They are highly scalable and flexible, allowing businesses to manage large volumes of data from a variety of sources. 

When organizations are vetting edge technologies, factors such as scalability, connectivity, data storage, security, and support should all be taken into consideration. 

What are Real-Time Services?

Real-time services are software solutions that enable businesses to process and analyze data in real-time. These services offer several advantages over traditional batch processing. By processing data in real-time, businesses can get immediate insights and make decisions based on the latest data. This is important for applications such as financial trading, online gaming, or telecom.

Real-time services typically include a range of tools and features, such as data streaming, real-time analytics, and event processing.

Why are Edge Data Platforms and Real-Time Services Important?

Edge data platforms and real-time services are becoming increasingly important for businesses because they yield benefits like:

  1. Real-time Data Processing: By processing data in real-time, businesses can get immediate insights and make decisions based on the latest data.
  2. Reduced Latency and Cost: Reduce latency by processing data at the edge of the network or in real-time. This means that data can be processed and analyzed faster, enabling businesses to make decisions faster.
  3. Improved Data Security: Improve data security by keeping sensitive data at the edge of the network or in real-time. This can help to reduce the risk of data breaches and ensure that data is protected at all times.

How can Edge Data Platforms and Real-Time Services be Used?

Here are some common use cases:

  1. Retail: Analyze customer data in real-time and deliver personalized shopping experiences. This can help retailers to increase customer satisfaction and loyalty, and drive sales.
  2. Online Gaming: Process gaming data in real-time, enabling gamers to have a seamless and immersive gaming experience.
  3. Healthcare: Collect and analyze health data from wearables and other medical devices in real-time, providing doctors with real-time insights into patient health.
  4. Transportation: Process data from sensors and other devices in transportation networks, enabling real-time traffic monitoring and route optimization.
  5. Manufacturing: Monitor equipment in real-time, predict equipment failures, and optimize production processes. This can help to improve efficiency, reduce downtime, and increase productivity.

Final Thoughts

Edge data platforms and real-time services are important solutions for businesses that need to manage and analyze data from applications with lots of users in lots of places. By enabling real-time data processing and analysis, reducing latency, and improving data security, these solutions are becoming increasingly popular for use cases across the board. As the demand for efficient and secure data storage continues to grow, edge data platforms like Harper will continue to solve these seemingly complex problems while avoiding maintenance and cost headaches.

Intro

We all know that data is being generated at an unprecedented rate. You may also know that this has led to an increase in the demand for efficient and secure data storage solutions that won’t break the bank. Edge data platforms and real-time services are two solutions focused on solving the challenges of modern data management, and they are quickly gaining popularity among businesses. In this article, we will explore what edge data platforms and real-time services are, why they are important, and how they can be used.

What are Edge Data Platforms?

Edge data platforms are software solutions that enable businesses to collect, process, and analyze data at the edge of the network. These platforms offer several advantages over traditional cloud computing. By processing data at the edge of the network, latency can be minimized, which means that data can be processed and analyzed faster. This is especially important for applications that require real-time responses, such as autonomous vehicles, industrial IoT applications, or streaming media.

Edge data platforms typically include a range of tools and features, such as data ingestion, storage, and analysis, as well as machine learning and artificial intelligence capabilities. They are highly scalable and flexible, allowing businesses to manage large volumes of data from a variety of sources. 

When organizations are vetting edge technologies, factors such as scalability, connectivity, data storage, security, and support should all be taken into consideration. 

What are Real-Time Services?

Real-time services are software solutions that enable businesses to process and analyze data in real-time. These services offer several advantages over traditional batch processing. By processing data in real-time, businesses can get immediate insights and make decisions based on the latest data. This is important for applications such as financial trading, online gaming, or telecom.

Real-time services typically include a range of tools and features, such as data streaming, real-time analytics, and event processing.

Why are Edge Data Platforms and Real-Time Services Important?

Edge data platforms and real-time services are becoming increasingly important for businesses because they yield benefits like:

  1. Real-time Data Processing: By processing data in real-time, businesses can get immediate insights and make decisions based on the latest data.
  2. Reduced Latency and Cost: Reduce latency by processing data at the edge of the network or in real-time. This means that data can be processed and analyzed faster, enabling businesses to make decisions faster.
  3. Improved Data Security: Improve data security by keeping sensitive data at the edge of the network or in real-time. This can help to reduce the risk of data breaches and ensure that data is protected at all times.

How can Edge Data Platforms and Real-Time Services be Used?

Here are some common use cases:

  1. Retail: Analyze customer data in real-time and deliver personalized shopping experiences. This can help retailers to increase customer satisfaction and loyalty, and drive sales.
  2. Online Gaming: Process gaming data in real-time, enabling gamers to have a seamless and immersive gaming experience.
  3. Healthcare: Collect and analyze health data from wearables and other medical devices in real-time, providing doctors with real-time insights into patient health.
  4. Transportation: Process data from sensors and other devices in transportation networks, enabling real-time traffic monitoring and route optimization.
  5. Manufacturing: Monitor equipment in real-time, predict equipment failures, and optimize production processes. This can help to improve efficiency, reduce downtime, and increase productivity.

Final Thoughts

Edge data platforms and real-time services are important solutions for businesses that need to manage and analyze data from applications with lots of users in lots of places. By enabling real-time data processing and analysis, reducing latency, and improving data security, these solutions are becoming increasingly popular for use cases across the board. As the demand for efficient and secure data storage continues to grow, edge data platforms like Harper will continue to solve these seemingly complex problems while avoiding maintenance and cost headaches.

Edge data platforms and real-time services are two solutions focused on solving the challenges of modern data management, and they are quickly gaining popularity among businesses. In this article, we will explore what edge data platforms and real-time services are, why they are important, and how they can be used.

Download

White arrow pointing right
Edge data platforms and real-time services are two solutions focused on solving the challenges of modern data management, and they are quickly gaining popularity among businesses. In this article, we will explore what edge data platforms and real-time services are, why they are important, and how they can be used.

Download

White arrow pointing right
Edge data platforms and real-time services are two solutions focused on solving the challenges of modern data management, and they are quickly gaining popularity among businesses. In this article, we will explore what edge data platforms and real-time services are, why they are important, and how they can be used.

Download

White arrow pointing right

Explore Recent Resources

Comparison
GitHub Logo

Kafka-Centered Stacks vs. a Single Harper Cluster: Where Real-Time Latency Actually Comes From

End-to-end latency in real-time pipelines comes from coordination across systems, not from any single component. Four common workloads, tested two ways, show where multi-hop architectures compound delays and where collapsing storage, messaging, and compute into one runtime changes the math.
Cache
Comparison
End-to-end latency in real-time pipelines comes from coordination across systems, not from any single component. Four common workloads, tested two ways, show where multi-hop architectures compound delays and where collapsing storage, messaging, and compute into one runtime changes the math.
Person with short dark hair and moustache, wearing a colorful plaid shirt, smiling outdoors in a forested mountain landscape.
Aleks Haugom
Senior Manager of GTM
Comparison

Kafka-Centered Stacks vs. a Single Harper Cluster: Where Real-Time Latency Actually Comes From

End-to-end latency in real-time pipelines comes from coordination across systems, not from any single component. Four common workloads, tested two ways, show where multi-hop architectures compound delays and where collapsing storage, messaging, and compute into one runtime changes the math.
Aleks Haugom
Jun 2026
Comparison

Kafka-Centered Stacks vs. a Single Harper Cluster: Where Real-Time Latency Actually Comes From

End-to-end latency in real-time pipelines comes from coordination across systems, not from any single component. Four common workloads, tested two ways, show where multi-hop architectures compound delays and where collapsing storage, messaging, and compute into one runtime changes the math.
Aleks Haugom
Comparison

Kafka-Centered Stacks vs. a Single Harper Cluster: Where Real-Time Latency Actually Comes From

End-to-end latency in real-time pipelines comes from coordination across systems, not from any single component. Four common workloads, tested two ways, show where multi-hop architectures compound delays and where collapsing storage, messaging, and compute into one runtime changes the math.
Aleks Haugom
Tutorial
GitHub Logo

Your API cache is secretly a database

Most teams treat a cache as a black box: URL-keyed blobs with a TTL, useful for speed and nothing else. In Harper, cached data lands in a real table inside the same query engine. That means filtering, joining, real-time subscriptions, and vector search all work against it.
Cache
Tutorial
Most teams treat a cache as a black box: URL-keyed blobs with a TTL, useful for speed and nothing else. In Harper, cached data lands in a real table inside the same query engine. That means filtering, joining, real-time subscriptions, and vector search all work against it.
Person with very short blonde hair wearing a light gray button‑up shirt, standing with arms crossed and smiling outdoors with foliage behind.
Kris Zyp
SVP of Engineering
Tutorial

Your API cache is secretly a database

Most teams treat a cache as a black box: URL-keyed blobs with a TTL, useful for speed and nothing else. In Harper, cached data lands in a real table inside the same query engine. That means filtering, joining, real-time subscriptions, and vector search all work against it.
Kris Zyp
Jun 2026
Tutorial

Your API cache is secretly a database

Most teams treat a cache as a black box: URL-keyed blobs with a TTL, useful for speed and nothing else. In Harper, cached data lands in a real table inside the same query engine. That means filtering, joining, real-time subscriptions, and vector search all work against it.
Kris Zyp
Tutorial

Your API cache is secretly a database

Most teams treat a cache as a black box: URL-keyed blobs with a TTL, useful for speed and nothing else. In Harper, cached data lands in a real table inside the same query engine. That means filtering, joining, real-time subscriptions, and vector search all work against it.
Kris Zyp
Tutorial
GitHub Logo

Introducing Structon: Random-Access Binary Encoding for JavaScript

Deserializing entire records to read one field is a bottleneck at scale. Structon stores objects in a binary format where any field is reachable by byte offset, with lazy getters that never allocate until you access a property. It's the encoding Harper has used internally for years, now a standalone package.
JavaScript
Tutorial
Deserializing entire records to read one field is a bottleneck at scale. Structon stores objects in a binary format where any field is reachable by byte offset, with lazy getters that never allocate until you access a property. It's the encoding Harper has used internally for years, now a standalone package.
Person with very short blonde hair wearing a light gray button‑up shirt, standing with arms crossed and smiling outdoors with foliage behind.
Kris Zyp
SVP of Engineering
Tutorial

Introducing Structon: Random-Access Binary Encoding for JavaScript

Deserializing entire records to read one field is a bottleneck at scale. Structon stores objects in a binary format where any field is reachable by byte offset, with lazy getters that never allocate until you access a property. It's the encoding Harper has used internally for years, now a standalone package.
Kris Zyp
Jun 2026
Tutorial

Introducing Structon: Random-Access Binary Encoding for JavaScript

Deserializing entire records to read one field is a bottleneck at scale. Structon stores objects in a binary format where any field is reachable by byte offset, with lazy getters that never allocate until you access a property. It's the encoding Harper has used internally for years, now a standalone package.
Kris Zyp
Tutorial

Introducing Structon: Random-Access Binary Encoding for JavaScript

Deserializing entire records to read one field is a bottleneck at scale. Structon stores objects in a binary format where any field is reachable by byte offset, with lazy getters that never allocate until you access a property. It's the encoding Harper has used internally for years, now a standalone package.
Kris Zyp