Allow loading remote contents and showing images to get the best out of this email.FAUN.dev's AI/ML Weekly Newsletter
 
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Kala
 
#ArtificialIntelligence #MachineLearning #MLOps
 
 
🔍 Inside this Issue
 
 

The ground’s shifting under our feet: 71% fear AI will kill jobs while AWS calls replacing juniors the dumbest play in tech. From probabilistic product design and failure-fed agents to infra that hits sub‑millisecond latency, MCP security tripwires, GPT‑5 vs 4o, and two builds you can ship today—there’s signal in every click.


🗣️ AWS CEO says AI replacing junior staff is 'dumbest idea'

😬 71% of Americans Say AI Could ‘Put People Out of Work Permanently

🎲 Building AI Products In The Probabilistic Era

🧠 Context Engineering for AI Agents: Lessons from Building Manus

🔐 Creating AI agent solutions for warehouse data access and security

⚡ How Salesforce Delivers Reliable, Low-Latency AI Inference

⚖️ Is GPT-5 really worse than GPT-4o? Ars puts them to the test.

🚨 MCP Vulnerabilities Every Developer Should Know

🐍 Tiny Agents in Python: a MCP-powered agent in ~70 lines of code

🛒 Building an AI-Powered E-commerce Chat Assistant with MongoDB


You’ve got the signal—turn it into shipped code.


Have a great week!
FAUN.dev Team
 
 
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ℹ️ News, Updates & Announcements
 
eweek.com eweek.com
 
71% of Americans Say AI Could ‘Put People Out of Work Permanently’
 
 
Most Americans now see AI as a threat to their livelihoods, with 71% fearing it could permanently wipe out jobs. The findings come from a new Reuters/Ipsos poll, which shows widespread anxiety across the US as AI threatens job security and challenges the future of employment. The World Economic Forum estimates that 92 million jobs worldwide could be displaced by 2030, but 170 million new ones will be created in their place.
 
 
engineering.salesforce.com engineering.salesforce.com
 
How Salesforce Delivers Reliable, Low-Latency AI Inference
 
 
Salesforce’s AI Metadata Service (AIMS) just got a serious speed boost. They rolled out a multi-layer cache—L1 on the client, L2 on the server—and cut inference latency from 400ms to under 1ms. That’s over 98% faster.

But it’s not just about speed anymore. L2 keeps responses flowing even when the backend tanks, bumping availability to 65% during failures. Services like Agentforce stay up, even if they’re limping a bit.
 
 
theregister.com theregister.com
 
AWS CEO says AI replacing junior staff is 'dumbest idea'
 
 
AWS CEO Matt Garman isn’t buying the “replace juniors with AI” hype. Says it’s a short game move—and a bad one. Junior devs aren’t just fresh hands on the keyboard. They’re the future bench for deep product know-how and smarter AI integration.

Meanwhile, over 80% of AWS developers are already leaning on AI tools regularly. From writing tests to building agentic workflows, machines are in the loop—and the curve’s still climbing.
 
 
arstechnica.com arstechnica.com
 
Is GPT-5 really worse than GPT-4o? Ars puts them to the test.
 
 
OpenAI walked back its latest release after users flagged GPT-5 for sounding flat, hallucinating more, and losing creative spark. The fix? Rolling back to the friendlier GPT-4o.

Head-to-head tests told a nuanced story: GPT-5 nailed accuracy and structure across most prompts. But when the task called for style or depth, GPT-4o brought the warmth and richer detail.
 
 
engineering.fb.com engineering.fb.com
 
Creating AI agent solutions for warehouse data access and security
 
 
Meta’s rebuilding its data warehouse access model from the ground up—this time with LLM-powered agents calling the shots.

Two key agents run the show: the data-user agent, which speaks for the person querying, and the data-owner agent, guarding the vault. They negotiate access at query time, weighing signals like intent, behavior, profile, and query shape.

Decisions don’t fly solo. Rule-based guardrails, usage budgets, and tight feedback loops keep it all traceable and constrained.

The bigger play? LLM agents are moving into the infrastructure layer. Access control, intent modeling, and governance—once siloed systems—are now baked right into the stack.
 
 

👉 Got something to share? Create your FAUN Page and start publishing your blog posts, tools, and updates. Grow your audience, and get discovered by the developer community.

 
🔗 Stories, Tutorials & Articles
 
composio.dev composio.dev
 
MCP Vulnerabilities Every Developer Should Know
 
 
MCP’s blowing up across platforms—but the security? Still sketchy.

Think tool description injection. Botched OAuth. Open doors to supply chain attacks. The new MCP 2025-06-18 spec tries to clean house (no token passthrough, mandatory user consent), but most real-world setups either drag their feet or skip safeguards entirely.

The big picture: MCP's racing toward "HTTP for LLMs" status. Problem is, security isn’t keeping up. That speed’s baking in risks straight into model interfaces—quietly, permanently.
 
 
forbes.com forbes.com
 
Myth Or Reality: Will AI Replace Computer Programmers?
 
 
Generative AI tools like GPT-4o and Claude Sonnet now handle the grunt work—fixing bugs, cranking out code, writing docs—with scary accuracy. Amazon and Anthropic are already hinting at hiring fewer engineers. But the jobs aren’t vanishing; they’re mutating.
 
 
giansegato.com giansegato.com
 
Building AI Products In The Probabilistic Era
 
 
Modern AI broke the rulebook.

By spitting out stochastic outputs from unbounded inputs, it flipped software dev from a game of precision to one of probability. Old tools—funnels, SLO dashboards, crisp A/B tests—don’t quite fit anymore. They were built for systems that behaved.

Today’s AI stacks move with emergence, ambiguity, and weird surprises. That friction hits everything: prompting UX, infra cost models, even how you ship.

The new game? Design for uncertainty. Measure everything. Learn faster than it breaks.
 
 
huggingface.co huggingface.co
 
Tiny Agents in Python: a MCP-powered agent in ~70 lines of code
 
 
A new demo walks through building Tiny Agents in Python—just ~70 lines using the Model Context Protocol (MCP). No boilerplate. Just clean LLM-to-tool hookups with standardized agent configs.

Agents plug into multiple MCP servers out of the box—from local filesystems to Playwright browsers—and handle tool use through a single, OpenAI-style interface.
 
 
freecodecamp.org freecodecamp.org
 
Building an AI-Powered E-commerce Chat Assistant with MongoDB
 
 
freeCodeCamp dropped a new course that walks devs through building an AI-powered shopping agent from scratch. It ties together LangGraph for orchestration, Gemini for reasoning, and MongoDB Atlas as the vector memory layer.

The build covers a Node.js backend, a React frontend, and wires in multi-step agent workflows—complete with custom tools for product search.
 
 
manus.im manus.im
 
Context Engineering for AI Agents: Lessons from Building Manus
 
 
Failures make great teachers—especially for LLMs.

Stuffing failed attempts right into the prompt helps agents recalibrate. It nudges their internal priors, cuts down on repeat mistakes, and sparks smarter behavior.
 
 

👉 Got something to share? Create your FAUN Page and start publishing your blog posts, tools, and updates. Grow your audience, and get discovered by the developer community.

 
⚙️ Tools, Apps & Software
 
github.com github.com
 
simstudioai/sim
 
 
Sim is an open-source AI agent workflow builder. Sim's interface is a lightweight, intuitive way to rapidly build and deploy LLMs that connect with your favorite tools.
 
 
github.com github.com
 
karpathy/rendergit
 
 
Render any git repo into a single static HTML page for humans or LLMs
 
 
github.com github.com
 
Hexastack/Hexabot
 
 
Hexabot is an open-source AI chatbot / agent builder. It allows you to create and manage multi-channel and multilingual chatbots / agents with ease.
 
 
github.com github.com
 
dyad-sh/dyad
 
 
Free, local, open-source AI app builder. v0 / lovable / Bolt alternative
 
 

👉 Spread the word and help developers find and follow your Open Source project by promoting it on FAUN. Get in touch for more information.

 
🤔 Did you know?
 
 
Did you know that FAISS’s GPU nearest-neighbor search employs a warp-level top-k selector called WarpSelect that keeps all intermediate state in registers and reaches up to 55 % of peak GPU memory bandwidth? Because it never materializes the full distance matrix in high-bandwidth memory and writes only the final top-k, the kernel becomes bandwidth-bound rather than compute-bound. That means retrieval throughput is dictated by index layout and memory traffic—not sorting—so any approach that spills distances to memory or does full global sorts wastes precious GPU cycles.
 
 
😂 Meme of the week
 
 
 
 
🤖 Once, SenseiOne Said
 
 
"Reproducibility ends at deployment: your training run is deterministic; your users aren't. MLOps exists to manage that contradiction, not bury it under dashboards."

— SenseiOne
 

(*) SenseiOne is FAUN.dev’s work-in-progress AI agent

 
👤 This Week's Human
 
 
This week, we’re highlighting Ihor Yevtushenko, a DevOps Cloud Engineer in Bern running Yevtushenko DevOps Services. 6x AWS certified (DevOps Pro, Security Specialty) with CKA, he builds Terraform-first AWS platforms, production Kubernetes clusters, and GitOps/CI pipelines with ArgoCD, drawing on hands-on stints at EPAM Systems, HCLTech, Morphean SA, and 42matters.
 

💡 Engage with FAUN.dev on LinkedIn — like, comment on, or share any of our posts on LinkedIn — you might be our next “This Week’s Human”!

 
❤️ Thanks for reading
 
 
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Kala #491: Code a MCP-powered Agent in ~70 Lines of Code
Legend: ✅ = Editor's Choice / ♻️ = Old but Gold / ⭐ = Promoted / 🔰 = Beginner Friendly

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