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The Latest Monitoring and Observability Topics

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Learning to Read x86 Assembly Language
How does your code talk to the machine? Assembly doesn't have to be only for debugging, but its syntax can be hard to wrap your head around.
January 23, 2017
by Pat Shaughnessy
· 13,928 Views · 2 Likes
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Scheduling Statistics Maintenance in Azure SQL Data Warehouse
You can leverage your Azure SQL Data Warehouse to automate some of your maintenance. Creating a Runbook will let you schedule to your hearts content.
January 23, 2017
by Grant Fritchey
· 4,472 Views · 2 Likes
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Java Performance Monitoring: 5 Open Source Tools You Should Know
Stagemonitor, Pinpoint, MoSKito, Glowroot, and Kamon are all promising open source Java monitoring tools. See where they can be best put to use.
January 19, 2017
by Henn Idan
· 92,861 Views · 39 Likes
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Creating Your Own E-Mail Service With Haraka, PostgreSQL, and AWS S3
There are many paid email services out there that offer various integration features. However, most of the time, they aren’t 100% customizable to one’s requirements.
January 16, 2017
by Thihara Neranjya
· 19,612 Views · 2 Likes
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AWS Lambda Performance and Cold Starts
How do you build fast and resilient functions when many traditional system and application metrics are either unavailable or no longer relevant?
January 13, 2017
by Clay Smith
· 15,473 Views · 2 Likes
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Creating AWS Lambda Functions From Octopus Deployments
Merging continuous deployment and serverless tech is possible. Assuming you've got a pivot machine, you can combine the power of your Octopus deploys and AWS Lambda.
January 12, 2017
by João Rosa
· 9,980 Views · 4 Likes
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Triggering Lambda Functions With an AWS IoT Button
It turns out that it's easy to merge serverless architecture with your IoT projects by having AWS IoT Button trigger an AWS Lambda function.
December 31, 2016
by Arun Gupta
· 14,203 Views · 4 Likes
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Integrate Spring Boot and EC2 Using Cloudformation
Getting your Spring application up and running on top of an EC2 instance is pretty simple.
December 28, 2016
by Emmanouil Gkatziouras DZone Core CORE
· 10,613 Views · 4 Likes
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Server Log Analysis: It's More Important Than Google Analytics
This article discusses the significance of analyzing the server logs. The author also demonstrates a server log dashboard created using the open source ELK Stack of Elasticsearch, Logstash, and Kibana.
December 23, 2016
by Samuel Scott
· 16,197 Views · 8 Likes
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Making Spring Boot Applications Run Serverless With AWS
Forget the cloud, it's time to go serverless. Using AWS Lambda and API Gateway can reduce costs and overhead, and it's easy to get your Spring Boot app running on it.
December 18, 2016
by $$anonymous$$
· 40,122 Views · 14 Likes
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An Overview of Meta-Monitoring
Meta-monitoring is basically self-service for monitoring. There are several different requirements and methods that should be kept in mind when it comes to meta-monitoring.
December 15, 2016
by Thomas Kurian Theakanath
· 6,005 Views · 2 Likes
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ConcurrentHashMap isn't always enough
When Java developers come to a task of writing a a new class which should have a Map datastructure field, accessed simultaneously by several threads, they usually try to solve the synchronization issues invloved in such a scenario by simply making the map an instance of ConcurrentHashMap . public class Foo { private Map theMap = new ConcurrentHashMap<>(); // the rest of the class goes here... } In many cases it works fine just because the contract of ConcurrentHashMap takes care of the potential synchronization issues related to reading/writing to the map. But there are cases where it's not enough, and a developer gets race conditions which are hard to predict, and even harder to find/debug and fix. Let's have a look, at the next example: public class Foo { private Map theMap = new ConcurrentHashMap<>(); public Object getOrCreate(String key) { Object value = theMap.get(key); if (value == null) { value = new Object(); theMap.put(key, value); } return value; } } Here we have a "simple" getter ( getOrCreate(String key) ), which gets a key and returns the value assosiated with the given key in theMap . If there is no mapping for the key, the method creates a new value, inserts it into theMap and returns it. So far so good. But what happens when 2 (or more) threads call the getter with the same key when there is no mapping for the key in theMap? In such a case we might receive a race condition: Suppose thread t1 enters the function and comes to line 7. Its value is null . At this point thread t2 enters the function and also comes to line 7. Its value is also obviously null . Therefore from this point the two threads will enter the if statement and execute lines 8 and 9, thus creating two different new Objects. Upon returning from the getter each thread will get a different Object instance, violating programmer's wrong assumption that by using ConcurrentHashMap "everything is synchronized" and therefore two different threads should get the same value for the same key. To solve this issue we can synchronize the entire method, thus making it atomic: public class Foo { private Map theMap = new ConcurrentHashMap<>(); public synchronized Object getOrCreate(String key) { Object value = theMap.get(key); if (value == null) { value = new Object(); theMap.put(key, value); } return value; } } But this is a bit ugly, and uses Foo instace's monitor, which may affect performance if there are other methods in this class which are synchronized. Also a common rule of thumb is to try to eliminate using synchronized methods as much as possible. A much better approach should be using Java 8 Map's computeIfAbsent(K key, Function mappingFunction), which, in ConcurrentHashMap's implementation runs atomically: public class Foo { private Map theMap = new ConcurrentHashMap<>(); public Object getOrCreate(String key) { return theMap.computeIfAbsent(key, k -> new Object()); } } The atomicity of computeIfAbsent(..) assures that only one new Object will be created and put into theMap, and it'll be the exact same instance of Object that will be returned to all threads calling the getOrCreate function. Here, not only the code is correct, it's also cleaner and much shorter. The point of this example was to introduce a common pitfall of blindly relying on ConcurrentHashMap as a majical synchronzed datastructure which is threadsafe and therefore should solve all our concurrency issues regarding multiple threads working on a shared Map. ConcurrentHashMap is, indeed, threadsafe. But it only means that all read/write operations on such map are internally synchronized. And sometimes it's just not enough for our concurrent environment needs, and we have to use some special treatment which will guarantee atomic execution. A good practice will be to use one of the atomic methods implemented by ConcurrentHashMap, i.e: computeIfAbsent(..), putIfAbsent(..), etc.
December 8, 2016
by Dima Leah
· 48,828 Views · 12 Likes
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Camel and Kura: Providing Telemetry Data as OPC UA
If you're using an industrial M2M protocol, consider the combined power of Camel and Kura to get your telemetry data squared away as OPC UA.
November 29, 2016
by Jens Reimann
· 6,081 Views · 3 Likes
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Logging Docker Containers With AWS Cloudwatch
This post describes how to set up the integration between Docker and AWS and then establish a pipeline of logs from CloudWatch into the ELK Stack.
November 28, 2016
by Daniel Berman
· 10,084 Views · 3 Likes
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Developing a Facebook Chatbot With AWS Lambda and MongoDB Atlas
Learn how to program your own chatbot with the helping hands of AWS Lambda and MongoDB's DBaaS, Atlas.
November 21, 2016
by Jason Ma
· 7,015 Views · 7 Likes
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How We Implemented Object Storage to Power an Image Management Service
Rethumb uses DreamObjects to handle vast amounts of image data reliably and with low latency. This article shows the technical aspects behind how it was developed.
November 3, 2016
by Pedro Verruma
· 10,806 Views · 2 Likes
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DevOps: The Three Stage Conversation of People, Process, Products
This post elaborates on the three most important stages of conversation in DevOps, which are people, process, and products.
November 2, 2016
by Mohamed Radwan
· 7,457 Views · 2 Likes
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Monitoring OS Metrics for Amazon RDS with Grafana
This article describes how to visualize and monitor OS metrics for Amazon RDS instances using Grafana.
October 31, 2016
by Roman Vynar
· 9,535 Views
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How to Detect if a User Is Idle
In this article, look at how to detect if a user is active on a Windows machine in order to help deliver notifications more effectively. Read on to find out more.
October 28, 2016
by Romiko Derbynew
· 10,717 Views · 2 Likes
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Amazon ECS Log Analysis (Part 1)
Learn how to use Logz.io's ELK Stack to tackle the challenge of logging your ECS. See how you can mold and shape that data into dashboards and more.
October 19, 2016
by Daniel Berman
· 9,980 Views · 2 Likes
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