The course is teaching developers Amazon Q, Bedrock, security guardrails, and agent workflows.
The post AWS Launches Generative AI Essentials Course on Coursera and edX appeared first on TechRepublic.
The course is teaching developers Amazon Q, Bedrock, security guardrails, and agent workflows.
The post AWS Launches Generative AI Essentials Course on Coursera and edX appeared first on TechRepublic.

Welcome to the Cloud Wars Minute — your daily cloud news and commentary show. Each episode provides insights and perspectives around the “reimagination machine” that is the cloud.
In today’s Cloud Wars Minute, I explore how the AI infrastructure boom is reshaping the global economy — and why sustainability has become a defining battleground for the industry’s biggest players.
00:09 — The biggest AI firms in the world are currently in the midst of the largest and fastest global infrastructure build out since the Industrial Revolution. With this infrastructure rally, we’re seeing investment in underserved geographies and communities, job creation on a massive scale, and the bare bones that will power the most transformative technological revolution in history.
00:35 — But we’re also seeing something else, that’s the potential for, and I want to reiterate the word potential here, the potential for dramatic environmental consequences if issues like clean water, clean energy, and the extraction of raw materials aren’t adequately addressed and in the most part, and for most leaders, they are.
00:58 — But this isn’t simply a checkbox. It’s an ongoing, evolving initiative that’s become an integral part of strategic planning for AI innovations. In one of the latest examples, Microsoft has agreed a deal with Varaha, an Indian startup that works with smallholders in Asia on carbon removal projects.

AI Agent & Copilot Summit is an AI-first event to define opportunities, impact, and outcomes with Microsoft Copilot and agents. Building on its 2025 success, the 2026 event takes place March 17-19 in San Diego. Get more details.
01:23 — Microsoft has committed to acquiring over 100,000 tons of carbon dioxide removal credits over the coming three years through the company. In practice, this will equate to the building of 18 industrial gasification reactors that will burn cotton stalks from smallholder farms in India as biochar.
01:55 — As well as supporting Microsoft’s goals, the project will improve air quality in India’s Maharashtra region by utilizing crop residue that would otherwise be burnt in the open air. These are unprecedented times, and they call for creative thinking. That’s one thing Microsoft and its fellow Cloud Wars leaders have access to in abundance.
02:29 — This is leading to the emergence of new schemes that not only ensure companies are fulfilling their corporate promises and responsibilities, but also have knock-on effects on the communities where these schemes are based.
The post AI’s Infrastructure Boom: Opportunity, Responsibility, and the Race for Sustainable Scale appeared first on Cloud Wars.
Microsoft's PowerToys team is contemplating building a top menu bar for Windows 11, much like Linux, macOS, or older versions of Windows. The menu bar, or Command Palette Dock as Microsoft calls it, would be a new optional UI that provides quick access to tools, monitoring of system resources, and much more.
Microsoft has provided concept images of what it's looking to build, and is soliciting feedback on whether Windows users would use a PowerToy like this. "The dock is designed to be highly configurable," explains Niels Laute, a senior product manager at Microsoft. "It can be positioned on the top, left, right, or bottom edge of the scree …
| This post first appeared on Aman Khan’s AI Product Playbook newsletter and is being republished here with the author’s permission. |
Let me start with some honesty. When people ask me “Should I become an AI PM?” I tell them they’re asking the wrong question.
Here’s what I’ve learned: Becoming an AI PM isn’t about chasing a trendy job title. It’s about developing concrete skills that make you more effective at building products in a world where AI touches everything.
Every PM is becoming an AI PM, whether they realize it or not. Your payment flow will have fraud detection. Your search bar will have semantic understanding. Your customer support will have chatbots.
Think of AI Product Managements as less of an OR and instead more of an AND. For example: AI x health tech PM or AI x fintech PM.
| This post was adapted from a conversation with Aakash Gupta on The Growth Podcast. You can find the episode here. |
After ~9 years of building AI products (the last three of which have been a complete ramp-up using LLMs and agents), here are the skills I use constantly—not the ones that sound good in a blog post, but the ones I literally used yesterday.
Last month, our design team spent two weeks creating beautiful mocks for an AI agent interface. It looked perfect. Then I spent 30 minutes in Cursor building a functional prototype, and we immediately discovered three fundamental UX problems the mocks hadn’t revealed.
The skill: Using AI-powered coding tools to build rough prototypes.
The tool: Cursor. (It’s VS Code but you can describe what you want in plain English.)
Why it matters: AI behavior is impossible to understand from static mocks.
How to start this week:
You’re not trying to become an engineer. You’re trying to understand constraints and possibilities.
Observability is how you actually peek underneath the hood and see how your agent is working.
The skill: Using traces to understand what your AI actually did.
The tool: Any APM that supports LLM tracing. (We use our own at Arize, but there are many.)
Why it matters: “The AI is broken” is not actionable. “The context retrieval returned the wrong document” is.
Your first observability exercise:
| If you haven’t checked it out yet, this is a primer on Evals I worked with Lenny on. |
Vibe coding works if you’re shipping prototypes. It doesn’t really work if you’re shipping production code.
The skill: Turning subjective quality into measurable metrics.
The tool: Start with spreadsheets, graduate to proper eval frameworks.
Why it matters: You can’t improve what you can’t measure.
Build your first eval:

Prompt engineering (1 day): Add brand voice guidelines to the system prompt.
Few-shot examples (3 days): Include examples of on-brand responses.
RAG with style guide (1 week): Pull from our actual brand documentation.
Fine-tuning (1 month): Train a model on our support transcripts.
Each has different costs, timelines, and trade-offs. My job is knowing which to recommend.
Building intuition without building models:
The biggest shift? How I work with engineers.
Old way: I write requirements. They build it. We test it. Ship.
New way: We label training data together. We define success metrics together. We debug failures together. We own outcomes together.
Last month, I spent two hours with an engineer labeling whether responses were “helpful” or not. We disagreed on a lot of them. This taught me that I need to start collaborating on evals with my AI engineers.
Start collaborating differently:
Week 1: Tool setup
Week 2: Observation
Week 3: Measurement
Week 4: Collaboration
Week 5: Iteration
Here’s what I wish someone had told me three years ago: You will feel like a beginner again. After years of being the expert in the room, you’ll be the person asking basic questions. That’s exactly where you need to be.
The PMs who succeed in AI are the ones who are comfortable being uncomfortable. They’re the ones who build bad prototypes, ask “dumb” questions, and treat every confusing model output as a learning opportunity.
Don’t wait for the perfect course, the ideal role, or for AI to “stabilize.” The skills you need are practical, learnable, and immediately applicable.
Pick one thing from this post, commit to doing it this week, and then tell someone what you learned. This is how you’ll begin to accelerate your own feedback loop for AI product management.
The gap between PMs who talk about AI and PMs who build with AI is smaller than you think. It’s measured in hours of hands-on practice, not years of study.
See you on the other side.
How do you create automated tests to check your code for degraded performance as data sizes increase? What are the new features in pandas 3.0? Christopher Trudeau is back on the show this week with another batch of PyCoder’s Weekly articles and projects.
Christopher digs into an article about building tests to make sure your software is fast, or at least doesn’t get slower as it scales. The piece focuses on testing Big-O scaling and its implications for algorithms.
We also discuss another article covering the top features in pandas 3.0, including the new dedicated string dtype, a cleaner way to perform column-based operations, and more predictable default copying behavior with Copy-on-Write.
We share several other articles and projects from the Python community, including a collection of recent releases and PEPs, a profiler for targeting individual functions, a quiz to test your Django knowledge, when to use each of the eight versions of UUID, the hard-to-swallow truths about being a software engineer, an offline reverse geocoding library, and a library for auto-generating CLIs from any Python object.
Our live Python cohorts start February 2, and we’re down to the last few seats. There are two tracks: Python for Beginners or Intermediate Deep Dive. Eight weeks of live instruction, small groups, and real accountability. Grab your seat at realpython.com/live.
This episode is sponsored by Honeybadger.
Course Spotlight: Intro to Object-Oriented Programming (OOP) in Python
Learn Python OOP fundamentals fast: master classes, objects, and constructors with hands-on lessons in this beginner-friendly video course.
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pd.col expressions for cleaner code, Copy-on-Write for predictable behavior, and PyArrow-backed strings for 5-10x faster operations.tprof, a Targeting Profiler – Adam has written tprof, a targeting profiler for Python 3.12+. This article introduces you to the tool and why he wrote it.Discussion:
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