Explore the rapid evolution of "vibe coding" and the rise of agentic AI development. Key discussions clarify emerging industry terms like Claude Code, Agent SDK, and Cowork while highlighting a massive shift in how developers utilize AI models. Real-world examples demonstrate the power of these tools, including software built entirely by AI in just ten days.
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Sorry for my blurry face this episode.
Today we cover the new winapp CLI tool from Microsoft, the new release of Microsoft PowerToys + some GitHub and JetBrains news!
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Links
Windows
⢠PowerToys 0.97 is here: a big Command Palette update and a new mouse utility - https://devblogs.microsoft.com/commandline/powertoys-0-97-is-here-a-big-command-palette-update-and-a-new-mouse-utility/?WT.mc_id=MVP_274787
⢠Announcing winapp, the Windows App Development CLI - https://blogs.windows.com/windowsdeveloper/2026/01/22/announcing-winapp-the-windows-app-development-cli/?WT.mc_id=MVP_274787
GitHub
⢠Install and Use GitHub Copilot CLI directly from the GitHub CLI - https://github.blog/changelog/2026-01-21-install-and-use-github-copilot-cli-directly-from-the-github-cli/
⢠1 vCPU Linux runner now generally available in GitHub Actions - https://github.blog/changelog/2026-01-22-1-vcpu-linux-runner-now-generally-available-in-github-actions/
⢠Faster loading for GitHub Issues - https://github.blog/changelog/2026-01-22-faster-loading-for-github-issues/
⢠Improved pull request āFiles changedā page on by default - https://github.blog/changelog/2026-01-22-improved-pull-request-files-changed-page-on-by-default/
JetBrains
⢠Exposed 1.0 Is Now Available - https://blog.jetbrains.com/kotlin/2026/01/exposed-1-0-is-now-available/
⢠Rider 2026.1 Early Access Program Is Now Open! - https:/
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š¦X: https://x.com/theredcuber
šGithub: https://github.com/noraa-junker
šMy website: https://noraajunker.ch
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Michael #1: GreyNoise IP Check
Brian #2: tprof: a targeting profiler
Michael #3: TOAD is out
Brian #4: FastAPI adds Contribution Guidelines around AI usage
Extras
Brian:
Michael:
RUN --mount=type=cache,target=/root/.cache uv pip install --compile-bytecode --python /venv/bin/pythonJoke: A date
Most teams donāt hit scaling challenges with Azure AI Foundry on day one.
Early on, things are simple. One or two applications call Foundry directly. Traffic is predictable. Model experimentation moves fast. Everything works, and thereās no reason to add extra layers.
Then adoption grows. More applications start calling the same models. Traffic becomes spiky. Teams want better visibility into usage. Questions about rate limits, authentication, and how to evolve models over time begin to surface.
This is usually the moment when teams start asking: āDo we need some kind of control layer in front of Foundry?ā
Across many startups, the same patterns tend to emerge as Foundry usage scales:
None of these are problems at small scale. But together, they create friction as usage grows.
A common pattern at this stage is placing a gateway in front of Azure AI Foundry APIs.
Rather than having every application talk directly to Foundry, teams introduce a control layer that sits between clients and Foundry. On Azure, this is often implemented using API Management with GenAI capabilities.
This gateway does not replace Foundry. Foundry remains the model and AI platform. The gateway simply becomes the entry point for client traffic.
When teams introduce a gateway layer, a few things become much easier:
Importantly, this structure lets teams scale without slowing down experimentation. Model teams can continue to iterate, while platform concerns stay centralized.
Itās worth calling out what this approach is not:
Many teams run successfully without a gateway for a long time. This pattern becomes useful when scale, team size, or operational needs make direct integrations harder to manage.
From experience, teams tend to explore this pattern when:
If those conversations are already happening, itās often a good time to look at a gateway approach.
On Azure, this pattern is commonly implemented using:
The architecture stays flexible. Teams can start simple and add capabilities over time as needs evolve.
This pattern is less about tooling and more about timing.
Adding a gateway too early can slow teams down. Adding it too late can make change painful. The right moment is usually when Foundry usage starts to feel like a shared platform rather than a single experiment.
For teams approaching that stage, a gateway can provide structure without taking away speed.
This blog post was created with the help of AI tools. Yes, I used a bit of magic from language models to organize my thoughts and automate the boring parts, but the geeky fun and the
in C# are 100% mine.
Hi!
Sometimes you donāt need a framework, a service, or a startup idea.
You just need a small tool that actually works.
In my latest video, I put GitHub Copilot CLI to work building a .NET console app that merges 65 MP3 files into a single 3.6GB audio file. No fluff, no fake demo ā a real utility for real problems like podcast editing, long recordings, or preparing audio for transcription.
The interesting part isnāt just that it works ā itās how:
The whole thing comes together in under ten minutes and sets up some nice next steps, like local transcription with Whisper and turning quick hacks into reusable tools.
Watch the video, grab the code, and try it yourself.
This is Copilot CLI doing what it does best: helping you ship useful things faster.
Happy coding!
Greetings
El Bruno
More posts in my blog ElBruno.com.
More info in https://beacons.ai/elbruno
