To integrate Amazon CloudWatch and Amazon Kinesis with your monitoring system, please reach out to MetricFire. Book a demo with the MetricFire team to discuss integrating Amazon CloudWatch and Amazon Kinesis and how that can support your monitoring system.
Amazon CloudWatch is a management and monitoring service designed for AWS and other infrastructure resources or on-premises applications. It is the official metrics monitoring tool for Amazon Web Services. Using CloudWatch, you can access all your performance and operational metrics in a single platform, helping you overcome the challenge of monitoring multiple systems. CloudWatch helps you monitor your entire stack — including applications, infrastructure, and services — thus freeing up valuable resources to allow you to focus on building applications.
You can use CloudWatch Container Insights to monitor and troubleshoot your applications and microservices. CloudWatch collects, aggregates, and summarizes computer utilization information; like CPU and memory usage, network data history, and also monitoring diagnostic information. Container Insights provides you with details about container management services, such as: Amazon ECS for Kubernetes (EKS), Amazon's Elastic Container Service (ECS), etc.
The brilliant thing about Amazon Cloudwatch is that it is your gatekeeper to data and metrics for all your Amazon applications and services. However, monitoring more than the standard set of metrics can become very expensive with CloudWatch. CloudWatch custom metrics are very expensive and they should be used sparingly. For example, if a company is monitoring their AWS systems with the standard CloudWatch dashboards, it might cost around 1000 USD a month. However, if you’re monitoring hundreds of thousands of metrics related to a new launch, AWS CloudWatch could quickly rack up to 50,000 USD a month.
That's why it's such a vital integration point for MetricFire. MetricFire treats all metrics the same, so if you’re monitoring thousands of specialized metrics, you’ll still pay the same basic rate for those metrics. CloudWatch can be integrated with MetricFire, so you can pull your AWS metrics into the MetricFire platform. Then, you can get low-cost metrics scaling, while still being able to monitor your AWS metrics all in a single pane of glass. MetricFire's advanced filtering lets you choose only the data views you want to see and discard the rest. You can also set up simple rules to discard data you no longer need to keep, plus receive alerts via email or Slack.
Amazon Kinesis is the company’s real-time streaming data analysis platform. It provides powerful insights on video, data, audio, and other streams.
This data platform is a foundational component of data processing for machine learning, artificial intelligence, IoT telemetry, and more. With Amazon Kinesis, you have access to fully managed infrastructure to process all your streaming needs with low latency and little downtime.
It also easily connects to third-party databases and tools, like MetricFire, SQL, and Amazon Web Services (AWS) data stores.
No matter how much data you’re inputting, Amazon Kinesis easily queries and analyzes it to create flawless video, deep reporting, and even automation through Amazon S3 buckets, Redshift, Splunk, and other AWS services.
All data streams are securely encrypted and create a lot of use-cases. These proactive cognitive solutions create innovative new ways to interact with your data stores.
But why do you need it?
Amazon Kinesis gives businesses real-time access to all the necessary data for their businesses. It's an intuitive interface with visual access to all required information.
Leveraging real-time application monitoring is useful for fraud detection, tracking leaderboards, and quickly identifying issues.
Netflix uses Amazon Kinesis to keep its video streams healthy while also monitoring social media. The use cases are endless.
MetricFire easily connects to many different data sources, including Amazon Kinesis. MetricFire's advanced filtering lets you choose only the data views you want to see and discard the rest. You can also set up simple rules to discard data you no longer keep, plus receive alerts via email or Slack when your block store is doing something it shouldn't. First, you’ll need to download the Amazon AWS CloudWatch add-on from Hosted Graphite and connect your accounts.
From there, we have a comprehensive guide on how to link your accounts and set them up to automatically exchange data between both platforms.
To integrate Amazon CloudWatch and Amazon Kinesis with your monitoring system, sign up for a free trial with MetricFire. Talk with the MetricFire team about how to integrate Amazon CloudWatch and Amazon Kinesis and get Amazon CloudWatch and Amazon Kinesis interacting with your MetricFire dashboards directly.
MetricFire is a full-scale platform that provides infrastructure, system, and application monitoring using a suite of open-source monitoring tools. We enable you to use Hosted Graphite and aesthetic custom dashboards to visualize your metrics so you can understand what is happening.
MetricFire offers users a complete ecosystem of end-to-end infrastructure monitoring, comprised of popular open-source monitoring software services: Graphite and popular dashboards. Plugins for many other open-source projects are preconfigured, such as StatsD, collectd, and Kubernetes. You get all these within a hosted environment as a single product. Not only does MetricFire fit well into the infrastructure monitoring use-case, such as network monitoring and server monitoring, but we also do application monitoring and business intelligence.
Through this hosted environment, MetricFire boosts the unique features of open-source projects to give you more functionality than the original products. Below are some of the MetricFire features at a glance:
The key thing to remember is that Hosted Graphite by MetricFire is more than just Graphite. Our Hosted Graphite product actually adds data dimensionality and better data storage.
The benefits of MetricFire are:
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