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GitOps Done Right: 10 Best Practices That Make It Work

GitOps ditches hand-rolled deployment scripts for a cleaner, declarative model. Git becomes the truth. Agents likeArgo CDorFlux CDwatch for changes and sync your clusters on their own. It’s not just about pushing YAML. Good GitOps setups lean onKustomizefor modular config, wire inautomated image up.. read more  

GitOps Done Right: 10 Best Practices That Make It Work
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You might not need tmux

A dev swapped outtmuxfor a slick combo:Zellij,SSH multiplexing, andsystemdsocket daemons. No more virtual splits. Just clean session persistence and tight remote control. This setup brings scrollback back where it belongs—your terminal’s native buffer. It plays nice with extras like theKitty graphi.. read more  

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Automating infrastructure deployments in the Cloud with Terraform and Azure Pipelines

This Azure lab wires upTerraformwithAzure Pipelines CI/CDto spin up infrastructure and deploy a .NET Core app using IaC. It handles remote state with Azure Storage, automatesplanandapplyin pipelines, and swaps in config values via token replacement during deploy... read more  

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How I Scanned all of GitHub’s “Oops Commits” for Leaked Secrets

Truffle Security dropped a sharp new open-source tool that digs through GitHub’s public commit history looking forzero-commit force pushes—a tactic devs use to erase mistakes, usually secrets. Problem is, they don’t go quietly. By tapping into historical GitHub PushEvents via GH Archive, the tool h.. read more  

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Writing a basic service for GNU Guix

A developer walks through building acustom GNU Guix system serviceforkmonad—yes, the keyboard remapper—by wiring up a newservice-typethat plugs intoShepherdandaccount-service-type. To get there, they lift patterns from services likewesnothd, usemake-forkexec-constructorto spin up the daemon, and de.. read more  

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Supply chain attack compromises npm packages to spread backdoor malware

A fresh supply chain ambush—Scavenger—slipped into npm through the front door. Attackers phished maintainers of high-profile packages likeis,eslint-plugin-prettier, andsynckit, then dropped cross-platform JavaScript malware straight into the codebase. Real-time C2 channels included. They typosquatt.. read more  

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Cloudflare and the infinite sadness of migrations

A recent Cloudflare DNS outage traced back to legacy gear tangled with global config changes. Turns out, incomplete migrations can still pack a punch. Their newer topology system does support progressive rollouts—but running it side-by-side with the old one just made the blast radius bigger. System.. read more  

Cloudflare and the infinite sadness of migrations
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Beyond IAM access keys: Modern authentication approaches for AWS

AWS wants long-term IAM access keys gone. In their place:temporary creds via IAM roles,IAM Identity Center,CloudShell, andOIDC integrations. The push covers everything—CLI tools, local dev, compute, CI/CD, even old-school on-prem. The message is clear: rotate automatically, grant minimally, and sto.. read more  

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Creating a GitHub App based Azure DevOps Pipelines Service Connection

Azure DevOps made it easier to link up with GitHub—no more re-installing the Azure Pipelines GitHub App to kick things off. Teams can spin up aGitHub App–based service connectiondirectly from a dummy pipeline setup. The service connection comes GitHub App–authenticated out of the gate. Super handy .. read more  

Creating a GitHub App based Azure DevOps Pipelines Service Connection
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Zero Trust and Cloud-Native Windows

Microsoft’s moving the cheese again—this time steering Windows deep into the cloud. The old on-prem management playbook? Getting dusty. At the core:Intune, pushingZero Trustlike it means it. Identity-based access, always-on compliance, real-time config—no more trusting the device just because it’s .. read more  

AIStor is an enterprise-grade, high-performance object storage platform built for modern data workloads such as AI, machine learning, analytics, and large-scale data lakes. It is designed to handle massive datasets with predictable performance, operational simplicity, and hyperscale efficiency, while remaining fully compatible with the Amazon S3 API. AIStor is offered under a commercial license as a subscription-based product.

At its core, AIStor is a software-defined, distributed object store that runs on commodity hardware or in containerized environments like Kubernetes. Rather than being limited to traditional file or block interfaces, it exposes object storage semantics that scale from petabytes to exabytes within a single namespace, enabling consistent, flat addressing of vast datasets. It is engineered to sustain very high throughput and concurrency, with examples of multi-TiB/s read performance on optimized clusters.

AIStor is optimized specifically for AI and data-intensive workloads, where throughput, low latency, and horizontal scalability are critical. It integrates broadly with modern AI and analytics tools, including frameworks such as TensorFlow, PyTorch, Spark, and Iceberg-style table engines, making it suitable as the foundational storage layer for pipelines that demand both performance and consistency.

Security and enterprise readiness are central to AIStor’s design. It includes capabilities like encryption, replication, erasure coding, identity and access controls, immutability, lifecycle management, and operational observability, which are important for mission-critical deployments that must meet compliance and data protection requirements.

AIStor is positioned as a platform that unifies diverse data workloads — from unstructured storage for application data to structured table storage for analytics, as well as AI training and inference datasets — within a consistent object-native architecture. It supports multi-tenant environments and can be deployed across on-premises, cloud, and hybrid infrastructure.