Reading Notes #659

This week's reading notes cover a variety of insightful topics, from enhancing your development environment with dev containers on Windows to prioritizing open-source bugs effectively. You'll also find helpful posts on integrating MFA into your login process, exploring RavenDB's vector search capabilities, and understanding the differences between Ask Mode and Agent Mode in Visual Studio.

Happy reading!

a wild turkey in my driveway
A wild turkey in my driveway!?

Suggestion of the week


Databases


Programming

  • Why You Should Incorporate MFA into Your Login Process (Suzanne Scacca) - You think the answer is simple, think again. Nice post that explains the difference between 2FA and MFA and why you should or should not implement one of those

  • Aspire Dashboard (Joseph Guadagno) - Great deep dive about the Aspire dashboard, learn all the features packed inside it


Open Source

  • How I Prioritize OSS Bugs (jeremydmiller) - A very instructive post on a real-life issue. It's harder than people think to prioritize. And it may help you write better bug reports...

AI


Sharing my Reading Notes is a habit I started a long time ago, where I share a list of all the articles, blog posts, and books that catch my interest during the week. 

If you have interesting content, share it! 

~frank

Reading Notes #658

This week, we explore the latest insights on AI, Cloud, and software development to keep you informed and inspired.

little branch with leaves and walnuts

Cloud

Programming

Databases

AI

Miscellaneous


Sharing my Reading Notes is a habit I started a long time ago, where I share a list of all the articles, blog posts, and books that catch my interest during the week. 

If you have interesting content, share it! 

~frank

Why Your .NET Code Coverage Badge is 'Unknown' in GitLab (And How to Fix It)


In a recent post, I shared how to set up a CI/CD pipeline for a .NET Aspire project on GitLab. The pipeline includes unit tests, security scanning, and secret detection, and if any of those fail, the pipeline would fail. Great, but what about code coverage for the unit tests? The pipeline included code coverage commands, but the coverage was not visible in the GitLab interface. Let's fix that.

(blog post en français ici)

Badge on Gitlab showing coverage unknown

The Problem

One thing I initially thought was that the regex used to extract the coverage was incorrect. The regex used in the pipeline was:

coverage: '/Total\s*\|\s*(\d+(?:\.\d+)?)%/'

That regex came directly from the GitLab documentation, so I thought it should work correctly. However, coverage still wasn't visible in the GitLab interface.

So with the help of GitHub Copilot, we wrote a few commands to validate:

  • That the coverage.cobertura.xml was in a consistent location (instead of being in a folder with a GUID name)
  • That the coverage.cobertura.xml file was in a valid format
  • What exactly the regex was looking for

Everything checked out fine, so why was the coverage not visible?

The Solution

It turns out that the coverage command with the regex expression is scanning the console output and not the coverage.cobertura.xml file. Aha! One solution was to install dotnet-tools to changing where the the test results was persisted; to the console instead of the XML file, but I preferred keeping the .NET environment unchanged.

The solution I ended up implementing was executing a grep command to extract the coverage from the coverage.cobertura.xml file and then echoing it to the console. Here's what it looks like:

- COVERAGE=$(grep -o 'line-rate="[0-9.]*"' TestResults/coverage.cobertura.xml | head -1 | grep -o '[0-9.]*' | awk '{printf "%.1f", $1*100}')
- echo "Total | ${COVERAGE}%"

Results

And now when the pipeline runs, the coverage is visible in the GitLab pipeline!



And the badge is updated to show the coverage percentage.

Coverage badge showing percentage


Complete Configuration

Here's the complete test job configuration. Of course, the full .gitlab-ci.yml file is available in the GitLab repository.

test:
  stage: test
  image: mcr.microsoft.com/dotnet/sdk:9.0
  <<: *dotnet_cache
  dependencies:
    - build
  script:
    - dotnet test $SOLUTION_FILE --configuration Release --logger "junit;LogFilePath=$CI_PROJECT_DIR/TestResults/test-results.xml" --logger "console;verbosity=detailed" --collect:"XPlat Code Coverage" --results-directory $CI_PROJECT_DIR/TestResults
    - find TestResults -name "coverage.cobertura.xml" -exec cp {} TestResults/coverage.cobertura.xml \;
    - COVERAGE=$(grep -o 'line-rate="[0-9.]*"' TestResults/coverage.cobertura.xml | head -1 | grep -o '[0-9.]*' | awk '{printf "%.1f", $1*100}')
    - echo "Total | ${COVERAGE}%"
  artifacts:
    when: always
    reports:
      junit: "TestResults/test-results.xml"
      coverage_report:
        coverage_format: cobertura
        path: "TestResults/coverage.cobertura.xml"
    paths:
      - TestResults/
    expire_in: 1 week
  coverage: '/Total\s*\|\s*(\d+(?:\.\d+)?)%/'

Conclusion

I hope this helps others save time when setting up code coverage for their .NET projects on GitLab. The key insight is that GitLab's coverage regex works on console output, not on the files (XML or other formats).

If you have any questions or suggestions, feel free to reach out!


~frank



Reading Notes #657

a rocky path ends at the shore of a lake
This week's collection of interesting articles and resources covers AI development, DevOps practices, and open source tools. From GitHub Copilot customization to local AI deployments and containerization best practices, here are the highlights worth your attention.

AI

DevOps

  • Local Deploy with Bicep (Sam Cogan) - A perfect short story, I'll explain why the hell bicep can now deploy locally and how to do it

Open Source

  • Introducing OpenCLI (Patrik Svensson) - A standard that describes CLI so both humans and agents can understand how it works. Love it!

~frank


How to Have GitLab CI/CD for a .NET Aspire Project

Getting a complete CI/CD pipeline for your .NET Aspire solution doesn't have to be complicated. I've created a template that gives you everything you need to get started in minutes.

(blog post en français ici)

Watch the Video


Part 1: The Ready-to-Use Template

I've built a .NET Aspire template that comes with everything configured and ready to go. Here's what you get:

What's Included

  • A classic .NET Aspire Starter project (API and frontend)
  • Unit tests using xUnit (easily adaptable to other testing frameworks)
  • Complete .gitlab-ci.yml pipeline configuration
  • Security scanning and secret detection
  • All documentation you need

What the Pipeline Does

The pipeline runs two main jobs automatically:

  1. Build: Compiles your code
  2. Test: Runs all unit tests, scans for vulnerabilities, and checks for accidentally committed secrets (API keys, passwords, etc.)

You can see all test results directly in GitLab's interface, making it easy to track your project's health.

How to Get Started

It's simple:

  1. Clone the template repository: cloud5mins/aspire-template
  2. Replace the sample project with your own .NET Aspire code
  3. Push to your GitLab repository
  4. Watch your CI/CD pipeline run automatically

That's it! You immediately get automated builds, testing, and security scanning.

Pro Tip: The best time to set up CI/CD is when you're just starting your project because everything is still simple.


Part 2: Building the Template with GitLab Duo

Now let me share my experience creating this template using GitLab's AI assistant, GitLab Duo.

Starting Simple, Growing Smart

I didn't build this complex pipeline all at once. I started with something very basic and used GitLab Duo to gradually add features. The AI helped me:

  • Add secret detection when I asked: "How can I scan for accidentally committed secrets?"
  • Fix test execution issues when my unit tests weren't running properly
  • Optimize the pipeline structure for better performance
screen capture in VSCode using GitLab Duo to change the default location for the job SAST

Working with GitLab in VS Code

While you can edit .gitlab-ci.yml files directly in GitLab's web interface, I prefer VS Code. Here's my setup:

  1. Install the official GitLab extension from the VS Code marketplace

Once you've signed in, this extension gives you:

  • Direct access to GitLab issues and work items
  • AI-powered chat with GitLab Duo

GitLab Duo in Action

GitLab Duo became my pair programming partner. Here's how I used it:

Understanding Code: I could type /explain and ask Duo to explain what any part of my pipeline configuration does by highlighting that section.

screen capture in VSCode using GitLab Duo to explain part of the code

Solving Problems: When my solution didn't compile, I described the issue to Duo and got specific suggestions. For example, it helped me realize some projects weren't in .NET 9 because dotnet build required the Aspire workload. I could either keep my project in .NET 8 and add a before_script instruction to install the workload or upgrade to .NET 9; I picked the latest.

Adding Features: I started with just build and test, then incrementally asked Duo to help me add security scanning, secret detection, and better error handling.

Adding Context: Using /include to add the project file or the .gitlab-ci.yml file while asking questions helped Duo understand the context better.

Learn More with the Docs: During my journey, I knew Duo wasn't just making things up as it was referencing the documentation. I could continue my learning there and read more examples of how before_script is used in different contexts.

The AI-Assisted Development Experience

What impressed me most was how GitLab Duo helped me learn while building. Instead of just copying configurations from documentation, each conversation taught me something new about GitLab CI/CD best practices.

Conclusion

I think this template can be useful for anyone starting a .NET Aspire project. Ready to try it? Clone the template at cloud5mins/aspire-template and start building with confidence.

Whether you're new to .NET Aspire or CI/CD, this template gives you a good foundation. And if you want to customize it further, GitLab Duo is there to help you understand and modify the configuration.

If you think we should add more features or improve the template, feel free to open an issue in the repository. Your feedback is always welcome!

[Screen capture of the Aspire template project on GitLab




Thanks to ‪David Fowler‬ for his feedback!

Reading Notes #656

This week, we're exploring a wide range of topics, from .NET 10 previews and A/B testing to the latest in Azure development and AI. Plus, a selection of insightful podcast episodes to keep you informed and inspired.

Cloud


Programming

Open Source

  • Patrik Svensson (Patrik Svensson) - An interesting way to structure the flow that provides more detailed issues and PR with a clear purpose.

AI


Podcasts


~frank

How to convert code with GitHub Copilot, can AI really help?

Recently, someone asked me an interesting question: "Can GitHub Copilot or AI help me convert an application from one language to another?" My answer was a definitive yes! AI can not only help you write code in a new language, but it can also improve team collaboration and bridge the knowledge gap between developers who know different programming languages.

(Version française ici)

Setting Up the Environment

To demonstrate this capability, I decided to convert a COBOL application to Java—a perfect test case since I don't know either language well, which means I really needed Copilot to do the heavy lifting. All the code is available on GitHub.

The first step was setting up a proper development environment. I used a dev container and asked Copilot to help me build it. I also asked for recommendations on the best VS Code extensions for Java development. Within just a few minutes, I had a fully configured environment ready for Java development.

Choosing the Right Copilot Agent

When working with GitHub Copilot for code conversion, you have different mode to choose from:

  • Ask: Great for general questions (like asking about Java extensions)
  • Edit: Perfect for simple document editing (like modifying the generated code)
  • Agent: The powerhouse for complex tasks involving multiple files, imports, and structural changes

For code conversion projects, the Agent is your best friend. It can look at different source files, understand project structure, edit code, and even create new files on your behalf.

The Conversion Process

I used Claude 3.5 Sonnet for this conversion. Here's the simple prompt I used:

"Convert this hello business COBOL application into Java"

Copilot didn't just convert the code, it also provided detailed information about how to execute the Java application, which was invaluable since I had no Java experience.

The results varied depending on the AI model used (Claude, GPT, Gemini, etc.), but the core functionality remained consistent across different attempts. Since the original application was simple, I converted it multiple times using different prompts and models to test the consistency. Sometimes it generated a single file, other times it created multiple files: a main application and an Employee class (which wasn't in my original COBOL version). Sometimes it updated the Makefile to allow compilation and execution using make, while other times it provided instructions to use javac and java commands directly.

This variability is expected with generative AI results will differ between runs, but the core functionality remains reliable.

Real-World Challenges

Of course, the conversion wasn't perfect on the first try. For example, I encountered runtime errors when executing the application. The issue was with the data format—the original file used a flat file format with fixed length records (19 characters per record) and no line breaks.

I went back to Copilot, highlighted the error message from the terminal, and provided additional context about the 19 character record format. This iterative approach is key to successful AI assisted conversion.

"It's not working as expected, check the error in #terminalSelection. The records have fixed length of 19 characters without line breaks. Adjust the code to handle this format"

The Results

After the iterative improvements, my Java application successfully:

  • Compiled without errors
  • Processed all employee records
  • Generated a report with employee data
  • Calculated total salary (a nice addition that wasn't in the original)

While the output format wasn't identical to the original COBOL version (missing leading zeros, different line spacing), the core functionality was preserved.

Video Demonstration

Watch the complete conversion process in action:

Best Practices for AI-Assisted Code Conversion

Based on this experience, here are my recommendations:

1. Start with Small Pieces

Don't try to convert thousands of lines at once. Break your conversion into manageable modules or functions.

2. Set Up Project Standards

Consider creating a .github folder at your project root with an instructions.md file containing:

  • Best practices for your target language
  • Patterns and tools to use
  • Specific versions and frameworks
  • Enterprise standards to follow

3. Stay Involved in the Process

You're not just a spectator - you're an active participant. Review the changes, test the output, and provide feedback when things don't work as expected.

4. Iterate and Improve

Don't expect perfection on the first try. In my case, the converted application worked but produced slightly different output formatting. This is normal and expected, after all you are converting between two different languages with different conventions and styles.

Can AI Really Help with Code Conversion?

Absolutely, yes! GitHub Copilot can significantly:

  • Speed up the conversion process
  • Help with syntax and language specific patterns
  • Provide guidance on running and compiling the target language
  • Bridge knowledge gaps between team members
  • Generate supporting files and documentation

However, remember that it's generative AI, results will vary between runs, and you shouldn't expect identical output every time.

Final Thoughts

GitHub Copilot is definitely a tool you need in your toolkit for conversion projects. It won't replace the need for human oversight and testing, but it will dramatically accelerate the process and help teams collaborate more effectively across different programming languages.

The key is to approach it as a collaborative process where AI does the heavy lifting while you provide guidance, context, and quality assurance. Start small, iterate often, and don't be afraid to ask for clarification or corrections when the output isn't quite right.

Have you tried using AI for code conversion? I'd love to hear about your experiences in the comments below! Visit c5m.ca/copilot to get started with GitHub Copilot.

References


Reading Notes #655

Welcome to the 655th Reading Notes. This edition explores embedding Python in .NET, working with stacked git branches, and an introduction to cloud-native. Plus, a quick tip for the Azure Portal and using local AI for code reviews. 

a kayak on the water with a tree at the horizon

Open Source

Programming

Cloud

AI


Sharing my Reading Notes is a habit I started a long time ago, where I share a list of all the articles, blog posts, and books that catch my interest during the week. 

If you have interesting content, share it!


~frank


Reading Notes #654

Welcome to another edition of my reading notes! This week, I’ve gathered a selection of insightful articles and resources covering topics like AI, cloud security, open source, and developer productivity. Whether you’re interested in best practices, new tools, or thought-provoking perspectives, there’s something here for everyone. 

Dive in and enjoy the highlights!

Suggestion of the week

  • Copilot, The Good Parts: Efficiency (Rob Conery) - I love that post, it's so true! There are good and bad ways to use any tools. And I personally would really like seeing Rob build his stuff. Let's him know If you think like me.

Programming

Open Source

Databases

Miscellaneous


~frank


Reading Notes #653

Welcome to Reading Notes #653 another packed edition of insights, tools, and updates from the tech world! This week's roundup dives into legendary engineering wisdom, AI controversies, and the latest innovations in Docker, Azure, and VS Code. Whether you're exploring MCP, refining your scripting skills, or gearing up for the newest Azure Developer CLI release, there's something here for every developer.

windmill on the cap of Ile Perrot

Let’s get into it!

Cloud

  • Azure Developer CLI (azd) - June 2025 (Kristen Womack) - Love that tool, great updates, so many new features and improvements in this version, very looking forward to try all of them, turning them all

AI

Programming

Miscellaneous


~frank

Stop Writing Git Commits: How AI-Powered GitKraken CLI Accelerates Your Development

As developers, we're constantly looking for tools that can help us stay in the flow and be more productive. Today, I want to share a powerful tool that's been gaining traction in the developer community: GitKraken CLI. This command-line interface brings together several key features that modern developers love - it's AI-powered, terminal-based, and incredibly efficient for managing Git workflows.

(Version française ici)

What Makes GitKraken CLI Special?

GitKraken CLI (accessible via the gk command) stands out because it simplifies complex Git workflows while adding intelligent automation. Unlike traditional Git commands, it provides a more intuitive workflow management system that can handle multiple repositories simultaneously.

Getting Started

Installation is straightforward. On Windows, you can install it using:

winget install gitkraken.cli

Once installed, you'll have access to the gk command, which becomes your gateway to streamlined Git operations.

The Workflow in Action

Let's walk through a typical development session using GitKraken CLI:

1. Starting a Work Session

Instead of manually creating branches and switching contexts, you can start a focused work session:

gk w start "Add Behind my Cloud feed" -i "Add Behind my Cloud feed #1"

This single command:

  • Creates a new branch based on your issue/feature name
  • Switches to that branch automatically
  • Links the work session to a specific issue
  • Sets up your development environment for focused work

2. Managing Multiple Work Sessions

You can easily see all your active work sessions:

gk w list

This is particularly powerful when working across multiple repositories or juggling several features simultaneously.

3. Committing with Intelligence

After making your changes, adding files works as expected:

gk add .

But here's where the AI magic happens. Instead of writing commit messages manually:

gk w commit --ai

The AI analyzes your changes and generates meaningful, descriptive commit messages automatically. No more "quick fix" or "update stuff" commits!

4. Pushing and Creating Pull Requests

Publishing your work is equally streamlined:

gk w push

And when you're ready to create a pull request:

gk w pr create --ai

Again, AI assistance helps generate appropriate PR titles and descriptions based on your work.

5. Wrapping Up

Once your work is complete and merged, clean up is simple:

gk w end

This command:

  • Switches you back to the main branch
  • Deletes the feature branch, locally and on GitHub
  • Closes the work session
  • Leaves your repository clean and ready for the next task
all the commands


Why This Matters

The beauty of GitKraken CLI lies in its ability to keep you in the zone. You don't need to:

  • Switch between multiple tools
  • Remember complex Git commands
  • Write commit messages from scratch
  • Manually manage branch lifecycle

Everything flows naturally from one command to the next, maintaining your focus on what matters most: writing code.

Multi-Repository Power

One of the standout features is GitKraken CLI's ability to manage multiple repositories simultaneously. This is invaluable for:

  • Microservices architectures
  • Full-stack applications with separate frontend/backend repos
  • Organizations with multiple related projects

Try It Yourself

GitKraken CLI is part of a broader suite of developer tools that GitKraken offers. The CLI itself is free to use, which makes it easy to experiment with and integrate into your workflow without any upfront commitment. If you find value in the CLI and want to explore their other tools, GitKraken has various products that might complement your development setup.

The learning curve is genuinely minimal since it builds on Git concepts you already know while adding helpful automation. I've found that even small workflow improvements can compound over time, especially when you're working on multiple projects or dealing with frequent context switching.

If you're curious about what else GitKraken offers beyond the CLI, you can explore their full product lineup here. For those who decide the Pro features would benefit their workflow, as an ambassador of GitKraken I can share my code to provide a 50% discount for your GitKraken Pro subscription.

The combination of AI assistance and intuitive commands addresses real pain points that many developers face daily. Whether GitKraken CLI becomes a core part of your toolkit will depend on your specific workflow, but it's worth trying given that it's free and takes just a few minutes to set up.



The best tools are the ones that get out of your way and let you focus on building. GitKraken CLI aims to do exactly that.