AWS Lambda is a serverless computing platform that lets users run code without provisioning or managing servers. With Lambda, users can run code for virtually any type of app or backend service—all with zero administration. It takes of requirements to run and scale code with high availability.
$NaN
Per 1 ms
Google App Engine
Score 8.2 out of 10
N/A
Google App Engine is Google Cloud's platform-as-a-service offering. It features pay-per-use pricing and support for a broad array of programming languages.
$0.05
Per Hour Per Instance
OpenText ALM/Quality Center
Score 9.1 out of 10
N/A
OpenText™ ALM/Quality Center, formerly from Micro Focus, serves as the single pane of glass for software quality management. It helps users to govern application lifecycle management activities and implement rigorous, auditable lifecycle processes.
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Pricing
AWS Lambda
Google App Engine
OpenText ALM/Quality Center
Editions & Modules
128 MB
$0.0000000021
Per 1 ms
1024 MB
$0.0000000167
Per 1 ms
10240 MB
$0.0000001667
Per 1 ms
Starting Price
$0.05
Per Hour Per Instance
Max Price
$0.30
Per Hour Per Instance
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Pricing Offerings
AWS Lambda
Google App Engine
OpenText ALM/Quality Center
Free Trial
No
No
No
Free/Freemium Version
No
Yes
No
Premium Consulting/Integration Services
No
No
No
Entry-level Setup Fee
No setup fee
No setup fee
No setup fee
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Community Pulse
AWS Lambda
Google App Engine
OpenText ALM/Quality Center
Considered Multiple Products
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Chose AWS Lambda
AWS Lambda is good for short running functions, and ideally in response to events within AWS. Google App Engine is a more robust environment which can have complex code running for long periods of time, and across more than one instance of hardware. Google App Engine allows for …
For our organization, we selected Google App Engine which provides a reliable and efficient way to create and deploy apps moreover it supports a lot of languages and provides automatic debugging of code which enables us to deploy code to production as soon as development is …
If you have a small team which is also responsible for development of the product then surely go for it. And if you have a larger team with dedicated person to take care of deployments. Go for cheaper options such as compute engine or AWS (be sure to do your research on pricing …
You can create and scale Kubernetes clusters quickly, but you have to keep an eye on that cluster. In-App Engine, you don't have to worry about infrastructure, but in some scenarios, Kubernetes fits better.
Azure App Service is in par with Google App Engine although you may want to use Azure App Service if you are integrating with other Microsoft IT components, for example SQL Server. Google App Engine is great when in long run, you will be using Google cloud components, for …
The two giants are Google and Amazon. Both are very similar however Google App Engine allows you to deploy your web applications through platforms like Python where as if you're using AWS, you have full control on the operating system services. Google is good because you pay as …
I think that Microsoft and Amazon are simply investing more in their offerings, and there are a bunch of cool PaaS solutions out there as well. Google App Engine is solid, and is probably the right choice for some projects. But ultimately one should evaluate each platform …
Lambda excels at event-driven, short-lived tasks, such as processing files or building simple APIs. However, it's less ideal for long-running, computationally intensive, or applications that rely on carrying the state between jobs. Cold starts and constant load can easily balloon the costs.
App Engine is such a good resource for our team both internally and externally. You have complete control over your app, how it runs, when it runs, and more while Google handles the back-end, scaling, orchestration, and so on. If you are serving a tool, system, or web page, it's perfect. If you are serving something back-end, like an automation or ETL workflow, you should be a little considerate or careful with how you are structuring that job. For instance, the Standard environment in Google App Engine will present you with a resource limit for your server calls. If your operations are known to take longer than, say, 10 minutes or so, you may be better off moving to the Flexible environment (which may be a little more expensive but certainly a little more powerful and a little less limited) or even moving that workflow to something like Google Compute Engine or another managed service.
For an organisation that has completely adopted SAFe structure including naming terminology, it is less appropriate and apart from that. It can suit any organisation out there, and it can solve all your problems one way or another by customising it. It is a robust and highly scalable solution to support all the business needs. It improves a lot of productivity and visibility.
If you have a mix of automation & manual test suites, HPALM is the best tool to manage that. It definitely integrates very well with HP automation tools like HP Unified Functional Testing and HP LoadRunner. Automated Suites can be executed, reports can be maintained automatically. It also classifies which test suites are manual & which are automated & managers can see the progress happening in moving from manual to automated suites. In HPA ALM all the functional test suites, performance test suites, security suites can be defined, managed & tracked in one place.
It is a wonderful tool for test management. Whether you want to create test cases, or import it, from execution to snapshot capturing, it supports all activities very well. The linking of defects to test runs is excellent. Any changes in mandatory fields or status of the defect triggers an e-mail and sent automatically to the user that the defect is assigned to.
It also supports devops implementation by interacting with development tool sets such as Jenkins & GIT. It also bring in team collaboration by supporting collaboration tools like Slack and Hubot.
This tool can integrate to any environment, any source control management tool bringing in changes and creates that trace-ability and links between source control changes to requirements to tests across the sdlc life-cycle.
Developing test cases for Lambda functions can be difficult. For functions that require some sort of input it can be tough to develop the proper payload and event for a test.
For the uninitiated, deploying functions with Infrastructure as Code tools can be a challenging undertaking.
Logging the output of a function feels disjointed from running the function in the console. A tighter integration with operational logging would be appreciated, perhaps being able to view function logs from the Lambda console instead of having to navigate over to CloudWatch.
Sometimes its difficult to determine the correct permissions needed for Lambda execution from other AWS services.
There is a slight learning curve to getting used to code on Google App Engine.
Google Cloud Datastore is Google's NoSQL database in the cloud that your applications can use. NoSQL databases, by design, cannot give handle complex queries on the data. This means that sometimes you need to think carefully about your data structures - so that you can get the results you need in your code.
Setting up billing is a little annoying. It does not seem to save billing information to your account so you can re-use the same information across different Cloud projects. Each project requires you to re-enter all your billing information (if required)
The requirements module is not as user friendly as other applications, such as Blue Bird. Managing requirements is usually done in another tool. However, having the requirements in ALM is important to ensure traceability to tests and defects.
Reporting across multiple ALM repositories is not supported within the tool. Only graphs are included within ALM functionality. Due to size considerations, one or two projects is not a good solution. Alternatively, we have started leveraging the template functionality within ALM and are integrating with a third party reporting tool to work around this issue.
NET (not Octane) requires a package for deployment to machines without administrative rights. Every time there is a change, a new package must be created, which increases the time to deploy. It also forces us to wait until multiple patches have been provided before updating production.
App Engine is a solid choice for deployments to Google Cloud Platform that do not want to move entirely to a Kubernetes-based container architecture using a different Google product. For rapid prototyping of new applications and fairly straightforward web application deployments, we'll continue to leverage the capabilities that App Engine affords us.
I give it a seven is usability because it's AWS. Their UI's are always clunkier than the competition and their documentation is rather cumbersome. There's SO MUCH to dig through and it's a gamble if you actually end up finding the corresponding info if it will actually help. Like I said before, going to google with a specific problem is likely a better route because AWS is quite ubiquitous and chances are you're not the first to encounter the problem. That being said, using SAM (Serverless application model) and it's SAM Local environment makes running local instances of your Lambdas in dev environments painless and quite fun. Using Nodejs + Lambda + SAM Local + VS Code debugger = AWESOME.
I had to revisit the UI after a year of just setting up and forgetting. The UI got some improvements but the amount of navigation we have to go through to setup a new app has increased but also got easier to setup. Gemini now is integrated and make getting answers faster
Because it lets me track the test cases with detailed scenarios and is clearly separated in folders. Also the defect filter helps me filter only the ones that have been assigned to a particular area of interest. The availability of reports lets me see the essentials fields which I might be missing the data on and helps me to work on these instead of having to go through everything.
Amazon consistently provides comprehensive and easy-to-parse documentation of all AWS features and services. Most development team members find what they need with a quick internet search of the AWS documentation available online. If you need advanced support, though, you might need to engage an AWS engineer, and that could be an unexpected (or unwelcome) expense.
Good amount of documentation available for Google App Engine and in general there is large developer community around Google App Engine and other products it interacts with. Lastly, Google support is great in general. No issues so far with them.
It is a great tool, however, it got this rating because there is a lot of learning that takes a lot longer than other tools. There are no mobile versions of ALM even with just a project summary view. I believe ALM is well capable of integration with other analytics tools that can help business solutions prediction based on current and past project data. This is Data held in ALM but with no other use apart from human reading and project progress. ALM looks like a steady platform that I believe can handle more dynamic functionality. You could add an internal communication platform that is not a third party. Limit that communication tool to specific project members.
AWS Lambda is good for short running functions, and ideally in response to events within AWS. Google App Engine is a more robust environment which can have complex code running for long periods of time, and across more than one instance of hardware. Google App Engine allows for both front-end and back-end infrastructure, while AWS Lambda is only for small back-end functions
We were on another much smaller cloud provider and decided to make the switch for several reasons - stability, breadth of services, and security. In reviewing options, GCP provided the best mixtures of meeting our needs while also balancing the overall cost of the service as compared to the other major players in Azure and AWS.
We have other tools in our organization like Atlassian JIRA and Microsoft Team Foundation Server, which are very capable tools but very narrow in their approach and feature set and does not come even close to the some of the core capabilities of HP ALM. HP ALM is the "System of Record" in our organization. It gives visibility for an artifact throughout the delivery chain, which cut downs unnecessary bottlenecks and noise during releases.
Positive - Only paying for when code is run, unlike virtual machines where you pay always regardless of processing power usage.
Positive - Scalability and accommodating larger amounts of demand is much cheaper. Instead of scaling up virtual machines and increasing the prices you pay for that, you are just increasing the number of times your lambda function is run.
Negative - Debugging/troubleshooting, and developing for lambda functions take a bit more time to get used to, and migrating code from virtual machines and normal processes to Lambda functions can take a bit of time.
Effective integration to other java based frameworks.
Time to market is very quick. Build, test, deploy and use.
The GAE Whitelist for java is an important resource to know what works and what does not. So use it. It would also be nice for Google to expand on items that are allowed on GAE platform.