News AggregatorBeyond Ingestion: Teaching Your NiFi Flows to ThinkAggregated on: 2026-02-17 19:23:50 If you are working with data pipelines, chances are you have crossed paths with Apache NiFi. For years, it's been the go-to way for getting data from point A to point B (and often C, D, and E). Its visual interface makes building complex routing, transformation, and delivery flows surprisingly easy, handling everything from simple log collection to intricate IoT data streams across countless organizations. It's powerful, it's flexible, and honestly, it just works really well for shuffling bits around reliably. We set up our sources, connect our processors, define our destinations, and watch the data flow — job done, right? AI Opportunity Well, mostly. While Apache NiFi is fantastic at the logistics of data movement, I started wondering: what if we could make the data smarter while it's still in motion? We hear about AI everywhere, crunching massive datasets after they've landed in a data lake or warehouse. But what about adding that intelligence during ingestion? Imagine enriching events, making routing decisions based on predictions, or flagging anomalies before the data even hits its final storage. View more...Design and Implementation of Cloud-Native Microservice Architectures for Scalable Insurance Analytics PlatformsAggregated on: 2026-02-17 18:23:50 Objective Statement This study proposes a scalable, modular, and cloud-native microservice architecture tailored for the insurance industry. The goal is to enable rapid enterprise-wide analytics adoption, seamless AI integration, and real-time data processing through containerization, orchestration, and service-based deployment models that enhance scalability, agility, and system resilience. Problem Context Although insurers are among the earliest adopters of artificial intelligence, fewer than 10% have successfully scaled AI initiatives beyond pilot programs. Most struggle with monolithic legacy systems, fragmented data pipelines, and rigid IT infrastructures that limit agility and interoperability. Insights from Risk & Insurance (2024) and McKinsey & Company (2014–2023) reveal that organizational silos and outdated core technologies prevent carriers from realizing the full business value of analytics. Addressing this gap requires a cloud-native, microservice-based architecture capable of supporting continuous delivery, real-time analytics, and ecosystem-wide integration. View more...Leading Through the Chaos of Large-Scale Cloud Operations: 7 Best PracticesAggregated on: 2026-02-17 17:23:50 High-scale systems fail in many unexpected ways that you would never have designed for. Over the past 14 years, I have navigated the layers of physical and virtual networking. I started as an individual contributor writing code for data plane services and later led global teams managing highly distributed services that owned millions of hosts. I have seen a wide range of incidents, including multi-service impacts, single-service impacts, cascading failures, single-customer issues, service failures during incident recovery, service failures post-recovery, and services that cannot auto-recover. The list goes on and on. I have studied the root causes of major outages across the industry’s cloud leaders. There are common failure patterns across the industry. While these events are inevitable, based on my experience, adhering to the best practices below for managing failures will greatly improve your ability to handle them. These are the seven best practices I recommend to keep teams efficient during large-scale incidents and help reduce the impact time. View more...The Citizen Developer Boom: How Generative AI Lowers the Barrier to EntryAggregated on: 2026-02-17 16:23:50 For years, enterprises have chased the dream of “Citizen Development”—empowering non-engineers to build their own tools using low-code/no-code platforms. The promise is enticing: business users solve their own problems, IT backlogs shrink, and innovation accelerates. However, the reality is often different. Adoption stalls because the “low-code” barrier is still too high for the average employee. They get stuck on API integration, basic logic flow, or security compliance. View more...From Prompts to Platforms: Scaling Agentic AI (Part 1)Aggregated on: 2026-02-17 15:23:50 The industry is shifting from passive generative AI — systems that simply respond to prompts — to active, goal-driven, agentic AI. This is more than a race toward better model benchmarks; it represents a fundamental change in how we architect platforms for autonomous execution at scale. From building agentic systems that power job seeker, hiring, and sales use cases, I’ve seen firsthand how difficult it is to move from proof of concept to a global ecosystem serving millions of members. Scaling these systems requires addressing latency, cost, and reliability challenges while preserving modularity and extensibility. View more...Open Notebook: A Secure Alternative to Google NotebookLMAggregated on: 2026-02-17 15:08:50 Google NotebookLM is a powerful AI tool for interacting with your documents. However, privacy concerns might prevent you from uploading sensitive data to NotebookLM. There is an open source alternative by means of Open Notebook. All data can be kept local, and you are not restricted to Google's Gemini models. Let's check this out! Introduction Google NotebookLM lets you upload your documents and get insights about the documents using Google's Gemini models. It is a very powerful and convenient tool. View more...AI Transformation Anti-Patterns (And How to Diagnose Them)Aggregated on: 2026-02-17 15:08:50 TL;DR: AI Transformation Anti-Patterns AI initiatives fail for the same reasons Agile transformations did: The majority of failures result from people, culture, and processes, not technology. This article gives you a diagnostic checklist of 10 AI transformation anti-patterns to spot where your organization’s initiatives are coming off track. Why Your AI Initiative Is Failing Your organization announced an AI initiative, the leadership bought licenses, and someone launched a pilot. The quarterly review called it a success. Six months later, nobody uses it. View more...Responding to HTTP Session Expiration on the Front-End via WebSocketsAggregated on: 2026-02-17 15:08:50 There is no doubt that nowadays software applications and products that have a significant contribution to our well-being are real-time. Real-time software makes systems responsive, reliable, and safe, especially in cases where timing is important — from healthcare and defense to entertainment and transportation. Such applications are helpful as they process and respond to data almost instantly or within a guaranteed time frame, which is critical when timing and accuracy directly affect performance, safety, or even user experience. As a protocol that enables real-time, two-way (full-duplex) communication between a client and a server over a single, long-lived TCP connection, WebSockets are among the technologies used by such applications. View more...My Learning About Password Hashing After Moving Beyond BcryptAggregated on: 2026-02-16 20:23:49 For a long time, I thought I had password hashing figured out. Like many Java developers, I relied on bcrypt, mostly because it’s the default choice in Spring Security. It was easy to use, widely recommended, and treated in tutorials as "the secure option." I plugged it in, shipped features, and moved on. View more...Automatic Data Correlation: Why Modern Observability Tools Fail and Cost Engineers TimeAggregated on: 2026-02-16 19:23:49 When a production issue hits, it starts a race to find the data that shows you what went wrong. And in many engineering organizations, the data search takes longer than understanding what the bug is — or coding the fix itself. This is what I call the “correlation problem”: the information you need to debug an issue exists, but it’s scattered across multiple tools, systems, and log files. View more...Breaking the Vendor Lock in Network Automation: A Pure Python ArchitectureAggregated on: 2026-02-16 18:23:49 In the world of Infrastructure as Code (IaC), servers are a solved problem. We spin up thousands of VMs with a single script. But the network layer? That often remains a manual bottleneck. The reason is the “Multi-Vendor Trap.” Enterprise networks are rarely homogeneous. They are a patchwork of routers, switches, and load balancers from different vendors (Cisco, Juniper, F5), each with its own proprietary CLI syntax. This fragmentation makes standard automation difficult, leading to long lead times (often weeks) just to open a VLAN or update a firewall rule. View more...Stop Fine-Tuning for Everything: A Decision Tree for RAG vs Tuning vs ToolsAggregated on: 2026-02-16 17:23:49 I used to treat fine-tuning like the “grown-up” step in an LLM project. Prototype with prompts → hit a problem → fine-tune it. View more...Schema Evolution in Event-Driven Systems: Avro/Protobuf Strategies That Don’t Break ConsumersAggregated on: 2026-02-16 16:23:49 Most schema-evolution advice is technically correct and still gets teams hurt. It usually stops at “add fields, don’t remove fields,” and skips the parts that cause real incidents: semantic drift, consumer lag, unknown consumers, and silent failures. In an event-driven system, the most dangerous break is the one that doesn’t crash anything — it just produces wrong results quietly. View more...Building a Self-Correcting GraphRAG Pipeline for Enterprise ObservabilityAggregated on: 2026-02-16 15:23:49 The RAG Plateau: Why Vector Search Is Failing the Enterprise In the early days of generative AI, retrieval-augmented generation (RAG) was a revelation. By grounding large language models (LLMs) in external data, we solved the immediate problem of static knowledge. However, as we move through 2026, enterprise developers have hit what I call the "RAG Plateau." Standard RAG relies on vector databases and cosine similarity. This works perfectly for "flat" queries—where the answer exists within a single paragraph of text. But enterprise data isn't flat; it’s a web of interconnected dependencies. If you ask an AI, "Which microservices are at risk if the 'User-Auth' database experiences 500ms latency?", a vector search will find snippets about "User-Auth" and "Latency." It will almost certainly fail to map the three-hop relationship between the database, the authentication service, and the downstream billing gateway. View more...Automating the DFIR Triage Loop With Memory Forensics and LLMsAggregated on: 2026-02-16 14:23:49 Most modern security operations centers (SOCs) face a problem of speed and volume of data collection. While collecting data is no longer the issue in many cases, analyzing it is — especially during high-priority incidents. To collect forensic evidence in many cases, analysts manually run multiple tools: Volatility for memory dumps, YARA for malware signatures, and strings for basic text search. Each tool creates a different output. The combination of all of those outputs is required for meaningful analysis. Manual correlation of these outputs is time-consuming and error-prone. Manual correlation of forensic outputs also contributes to alert fatigue — when the number of alerts becomes so large that they cannot be reasonably processed by humans. View more...Building Intelligent Agents With MCP and LangGraphAggregated on: 2026-02-16 13:23:49 We're at an interesting point in AI development. Language models have become very good at understanding and generating text, but they still can't do much independently. They can't check your calendar, pull data from your database, or send that email you've been meaning to write. Whenever we want to give an AI system a new capability, we have to write custom integration code. It’s like having a brilliant assistant who requires a new instruction manual for every single task. The Model Context Protocol is working to solve this issue, and honestly, it's about time someone stepped up. View more...The Death of the CSS Selector: Architecting Resilient, AI-Powered Web ScrapersAggregated on: 2026-02-16 12:23:49 Introduction: The High Cost of Fragile Data Pipelines For over a decade, web scraping has been a game of cat and mouse. You write a script to scrape a job board, targeting specific DOM elements like div.job-title or span#salary. It works perfectly for a month. Then, the website deploys a frontend update. The class names change to random hashes (common in React/Next.js apps), your selectors fail, and your data pipeline crashes. The hidden cost of web scraping isn't the compute; it's the engineering maintenance hours spent debugging and fixing broken selectors. View more...AI Agents Demystified: From Language Models to Autonomous IntelligenceAggregated on: 2026-02-13 20:23:48 What Exactly Is an AI Agent? Artificial Intelligence has entered a new phase, one where systems no longer just respond, but reason, plan, and act. Language models like GPT, Gemini, or Claude are incredibly powerful, but they live inside a box. They can generate, summarize, and explain, but they can’t take real-world action unless connected to something beyond themselves. That’s where AI agents come in. View more...A Guide to Parallax and Scroll-Based AnimationsAggregated on: 2026-02-13 19:23:47 Parallax animation can transform static web pages into immersive, interactive experiences. While traditional parallax relies on simple background image movement and tons of JavaScript code, scroll-based CSS animation opens up a world of creative possibilities with no JavaScript at all. In this guide, we’ll explore two distinct approaches: SVG block animation: Creating movement using SVG graphics for unique, customizable effects. Multi-image parallax background: Stacking and animating multiple image layers for a classic parallax illusion. We'll walk through each technique step by step, compare their strengths and limitations, and offer practical tips for responsive design. View more...Quantum-Safe Trading Systems: Preparing Risk Engines for the Post-Quantum ThreatAggregated on: 2026-02-13 18:23:48 The Coming Break in Trust Picture this: a structured BRL-USD note is booked and hedged in 2025, stitched across FX triggers, callable steps, and a sovereign curve that looks stable enough to lull even the cautious. Trade capture is clean, risk logs balance, settlement acknowledges signatures, and the desk moves on. Years pass. The note remains live, coupons roll, collateral terms are amended twice, and the position is referenced by downstream analytics and audit trails that assume the original cryptographic guarantees still hold. Then the ground shifts. Adversaries who quietly harvested network traffic in 2025 now possess hardware that can break the RSA and ECC protections that guarded those artifacts. The trade’s lineage—what was agreed, authorized, and attested — no longer rests on unforgeable proofs. It rests on assumptions that no longer apply. This is not a scare line for a compliance deck. It is a systems problem with direct pricing consequences. If a payoff confirmation, margin call message, or risk model artifact can be replayed, altered, or repudiated because yesterday’s signatures are breakable tomorrow, the integrity of the entire lifecycle is at risk. You can mark a curve correctly and still be wrong if the attestation that links a payout to a specific state of the world becomes suspect. View more...How to Build an MCP ServerAggregated on: 2026-02-13 17:23:47 Model Context Protocol has been playing a crucial role in integrating various tools with agents in a very streamlined manner. You can expose your tools via APIs and connect to the MCP clients. At the same time, there has been lots of confusion about MCP. Below clarifies the doubt: What MCP Server Is Not MCP is not a framework for building agents. MCP is not a Python library. MCP is not a container. MCP is not a way to code agents. How Model Context Protocol (MCP) Works Ultimately, View more...Scaling Enterprise RPA With Secure Automation and Robust GovernanceAggregated on: 2026-02-13 16:23:47 Enterprise RPA has matured from “task bots” into a core capability for automating business processes at scale across several domains, including finance operations, customer onboarding, supply chain workflows, HR shared services, and regulated back-office functions. The challenge is no longer whether automation works, but whether it can be scaled predictably without creating new operational risk: credential sprawl, uncontrolled bot changes, fragile UI dependencies, audit gaps, and inconsistent exception handling. This article lays out a blueprint for enterprise RPA that supports scaling robotic process automation across teams, business units, and geographies while delivering secure and compliant RPA solutions under a strong governance model. View more...Green AI in Practice: How I Track GPU Hours, Energy, CO₂, and Cost for Every ML ExperimentAggregated on: 2026-02-13 15:23:47 Most data teams track Accuracy, Latency, and maybe GPU Utilization if someone is watching the dashboard. Almost no one tracks: How many GPU-hours a model run consumed How many kWh of electricity that implies How much CO₂ and cloud spend are associated with each experiment Once I started paying attention to these metrics, it completely changed how I design and run experiments. View more...Introducing Sierra ChartsAggregated on: 2026-02-13 14:23:47 Sierra is an open-source framework for simplifying the development of Java Swing applications. It is based on the open-source Kilo framework, which has been discussed in previous articles: Writing (Slightly) Cleaner Code With Collections and Optionals Efficiently Transforming JDBC Query Results to JSON Using Schema Annotations to Create and Execute SQL Queries For example, Sierra's UILoader class can be used to easily construct a hierarchy of user interface elements: View more...The Human Bottleneck in DevOps: Automating Knowledge with AIOps and SECIAggregated on: 2026-02-13 13:23:47 In modern IT operations (ITOps), we face a paradox: our infrastructure is dynamic, scalable, and cloud-native, but our operational processes are often static, manual, and dependent on a few hero engineers. When an incident occurs, the mean time to recovery (MTTR) often depends less on the technology stack and more on who is on call. If the expert is unavailable, the system stays down. This is the knowledge bottleneck. View more...Serverless Is Not Cheaper by DefaultAggregated on: 2026-02-13 12:23:47 The pitch is clean: you pay only for what you use. No servers idling at 3 a.m., burning cash. No capacity planning. Just functions that appear when needed and disappear when done. Serverless feels like the ideal everyone was waiting for — and sometimes it actually is. Then the bill shows up. A developer I know — an experienced guy, not some junior making rookie mistakes — built what looked like a simple proof of concept. AWS Bedrock knowledge base, OpenSearch Serverless backend. Nothing fancy. A few LLM queries, maybe 2 GB of PDFs uploaded for testing. He was expecting maybe twenty or thirty bucks. The invoice came back at over $200. He spent an hour just staring at the line items, trying to figure out what happened. No error, no hack. Just the way it works. View more...A Developer-Centric Cloud Architecture Framework (DCAF) for Enterprise PlatformsAggregated on: 2026-02-12 20:23:47 Enterprise-class cloud systems seldom fail because of infrastructure constraints; rather, problems arise when architectural vision cannot scale to match the scale of the business. With the increasing use of the cloud by various teams, geographic locations, and business units, certain recurring scenarios emerge: View more...Mastering Postback Tracking and S2S Conversion TrackingAggregated on: 2026-02-12 19:23:47 Accurate conversion tracking is the backbone of any high-performing affiliate or partner marketing program. Postback tracking, also known as server-to-server (S2S) tracking, offers a privacy-friendly, robust way to record conversions without relying on client-side pixels. This article explains what postback and S2S tracking are, how they work, why they matter, and how to implement, troubleshoot, and choose platforms that support them. View more...AWS Bedrock Knowledge Bases: Comparing S3 Vector Store, OpenSearch, PostgreSQL, and Neptune for Cost and PerformanceAggregated on: 2026-02-12 18:23:47 Since July 15, 2025, AWS has added support for S3 vector stores for Bedrock knowledge bases, allowing for seamless storage and retrieval of embeddings for RAG workflows. Currently, it supports multiple stores: AWS-Managed Non AWS-Managed OpenSearch MongoDB Atlas S3 vector store Pinecone PostgreSQL Redis Enterprise Cloud Neptune View more...Building an Identity Graph for Clickstream DataAggregated on: 2026-02-12 17:23:47 Clickstream data is easy to collect and hard to use. Every modern system can emit page views, taps, API calls, and application events with timestamps and attributes. The trouble starts when analysis or downstream services require a notion of “user.” In most production systems, identity is incomplete by default. Many events arrive without a logged-in account. Cookies reset. Mobile devices are shared. IP addresses rotate. A single person often appears as several disconnected records, while unrelated users occasionally collide on the same attributes. View more...Building Trust in LLM-Generated Code Reviews: Adding Deterministic Confidence to GenAI OutputsAggregated on: 2026-02-12 16:23:47 In a previous article, Automating AWS Glue Infra and Code Reviews with RAG and Amazon Bedrock, I described how I built a GenAI-powered code review system for AWS Glue jobs using a retrieval-augmented generation (RAG) approach. Given a use case, the system searched all associated jobs, retrieved each job script and a predefined engineering checklist from S3, invoked an LLM, and generated a structured Markdown (.md) review file per job. Each checklist item was evaluated with: View more...Golden Paths for AI Workloads - Standardizing Deployment, Observability, and TrustAggregated on: 2026-02-12 15:23:47 As AI workloads mature from experimental prototypes into business-critical systems, organizations are discovering a familiar problem: inconsistency at scale. Each team deploys models differently, observability varies widely, and operational maturity depends heavily on individual expertise. This is where Golden Paths become essential. View more...Backing Up Azure Infrastructure with Python and AztfexportAggregated on: 2026-02-12 14:23:47 In an ideal DevOps world, every cloud resource is spawned from Terraform or Bicep. In the real world, we deal with “ClickOps.” An engineer manually tweaks a Network Security Group (NSG) to fix a production outage, or a legacy resource group exists with no code definition at all. When a disaster strikes — such as the accidental deletion of a resource group — you can’t just “re-run the pipeline” if the pipeline doesn’t match reality. View more...Java Developers: Build Something Awesome with Copilot CLI and Win Big Prizes!Aggregated on: 2026-02-12 13:23:47 Here’s today’s invitation: join the GitHub Copilot CLI Challenge and build something with Copilot right in your terminal. Visit the challenge page for the rules, FAQ, and submission template. Why I’m Excited About Copilot CLI (especially for Java) If you write Java for a living, you already know the truth: the terminal is where we build and test. It’s where feedback loops are short and where most productivity gains come from “small wins” repeated hundreds of times. View more...Bootstrapping a Java File SystemAggregated on: 2026-02-12 12:23:47 So, what does a file system mean to you? Most think of file systems as directories and files accessed via your computer: local disk, remotely shared via NFS or SMB, thumb drives, something else. Sufficient for those who require basic file access, nothing more, nothing less. That perspective on file systems is too limited: VCS repositories, archive files (zip/jar), and remote systems can be treated as file systems, potentially accessed via the same APIs used for local file access while still meeting security and data requirements. Or how about a file system that automatically transcodes videos to different formats or extracts audio metadata for vector searches? Wouldn’t it be cool to use standard APIs rather than create something customized? Definitely! View more...Jakarta EE 12 M2: Entering the Data Age of Enterprise JavaAggregated on: 2026-02-11 20:08:47 Every major Jakarta EE release tends to have a defining theme. Jakarta EE 11 was about modernization: a new baseline with Java 17, forward compatibility with Java 21, and a decisive cleanup of long-standing technical debt. Jakarta EE 12 builds directly on that momentum, but its direction is different. This release is less about removing the past and more about aligning the future. Jakarta EE 12 is best understood as the Data Age of enterprise Java. View more...Jakarta NoSQL in Jakarta EE 12 M2: A Maturing Story of Polyglot PersistenceAggregated on: 2026-02-11 19:08:47 NoSQL databases did not become popular because relational databases failed; relational databases are still alive. They became popular because systems changed. As applications grew more distributed, data volumes increased, and access patterns diversified, the limits of a single persistence model became more visible. Document databases simplified aggregate storage, key-value stores optimized for latency and scale, column databases handled massive datasets efficiently, and graph databases modeled relationships that relational schemas struggled to express. Over time, these technologies moved from experimentation into critical, production-grade use cases, including highly regulated industries such as finance. View more...Information Security Outsourcing 2.0: Balancing Control, Cost, and CapabilityAggregated on: 2026-02-11 18:08:47 Information security outsourcing involves transferring part or all of an organization’s cybersecurity and IT infrastructure protection responsibilities to external experts. This approach allows companies to reduce the costs associated with maintaining an in-house Security Operations Center (SOC) and dedicated staff, gain access to advanced technologies and global best practices without significant upfront investments, and ensure continuous 24/7 monitoring and incident response. However, outsourcing critical functions also brings new challenges, particularly in areas such as trust, control, and regulatory compliance. The key is to strike the right balance between efficiency, visibility, and accountability. View more...Building a CRUD Application With Spring and SimpleJdbcMapperAggregated on: 2026-02-11 17:08:47 Spring Framework's JDBC core package, designed to simplify database interactions using JDBC, is a popular option for applications to persist data to a relational database. The central classes used are JdbcClient with its fluent API and JdbcTemplate with the older classic API. When using these APIs, the CRUD operations tend to be verbose. The SimpleJdbcMapper mitigates this verbosity and also stays out of the way so you can keep using all the features of JdbcClient/JdbcTemplate. View more...How AI-Driven Software Automation Reduced Deployment Failures by 40%?Aggregated on: 2026-02-11 16:08:47 Deployment failures remain one of the most expensive and disruptive challenges in modern software development. Even with advancements in DevOps for traditional software workflows and AI/ML Ops for AI-integrated ones, the majority of organizations still struggle with production incidents and downtime. The result? Millions are being lost in revenue, teams are fatigued, and everybody dreads the production-deployment day. View more...Why SAP BDC Is a Game Changer for SAP DataAggregated on: 2026-02-11 15:23:47 SAP BDC (Business Data Cloud) is considered a game changer for SAP’s data portfolio because it fundamentally changes how SAP data is unified, governed, and consumed for analytics and AI. Instead of data being locked inside individual SAP systems, BDC turns SAP into an open, business-ready data platform. For many years, SAP data was difficult to use. Data lived in different SAP systems such as ECC, S/4HANA, SuccessFactors, and Ariba. Companies had to move data into SAP BW or BW/4HANA to analyze it. This process was slow, costly, and complex. View more...Playwright Fixtures vs. Lazy ApproachAggregated on: 2026-02-11 14:23:47 When building scalable test automation frameworks, how you create and manage objects (pages, services, helpers) matters as much as the tests themselves. Two commonly used patterns are the Fixture Approach and the Lazy Approach. Each has its own strengths — and choosing the right one can significantly impact performance, readability, and maintainability. In this blog, we take a deep dive into the Fixture Approach and the Lazy Approach, helping you understand when and why to use each one. View more...Shift-Left QA With Octopus Deploy: Orchestrating Katalon Tests in Your PipelineAggregated on: 2026-02-11 13:23:46 Octopus Deploy is helpful in planning releases and runbooks across multiple environments. Integrating Katalon with the Katalon Runtime Engine (KRE) and TestOps provides strong, scriptable UI and API testing, reporting, and team workflows. Combining these approaches will allow us to improve release cycles through automated testing, publish artifacts to a single repository, and fail fast when quality is compromised. There are two possible ways of integration: View more...Database Connection Pooling at Scale: PgBouncer + Multi-Tenant Postgres (10K Concurrent Connections)Aggregated on: 2026-02-11 12:23:46 Last month, I watched our production Postgres cluster melt down at 3 AM. We’d hit 8,000 concurrent connections, memory usage spiked to 94%, and our carefully tuned indexes became irrelevant. The database was spending more time managing connections than executing queries. Sound familiar? Here’s what the PgBouncer documentation won’t tell you: simply throwing connection pooling at the problem doesn’t magically solve high-concurrency issues. I’ve seen teams install PgBouncer, pat themselves on the back, and then wonder why their database still chokes under load. The reality? Most connection-pooling implementations are fundamentally flawed for multi-tenant architectures at scale. View more...The AI Firewall: Using Local Small Language Models (SLMs) to Scrub PII Before Cloud ProcessingAggregated on: 2026-02-10 20:08:46 As organizations increasingly rely on powerful cloud-based AI services like GPT-4, Claude, and Gemini for sophisticated text analysis, summarization, and generation tasks, a critical security concern emerges: what happens to sensitive data when it's sent to external AI providers? Personal Identifiable Information (PII) — including names, email addresses, phone numbers, social security numbers, and financial data — can inadvertently be exposed during cloud AI processing. This creates compliance risks under regulations like GDPR, HIPAA, and CCPA, and opens the door to potential data breaches. View more...OCI Images as Kubernetes Volumes: A New Era for Data ManagementAggregated on: 2026-02-10 19:08:46 A new volume type has recently joined the Kubernetes ecosystem: the image volume. This feature, available starting with version 1.35.0 and currently in beta, promises to change how we manage static data and configurations in our clusters. The relevance of this volume type has been growing in cloud-native environments. Several applications already use container images to store information in OCI (Open Container Initiative) format. Popular tools such as Falco (for security rules), Kyverno (for policies), and FluxCD (for deployment management) are clear examples of this trend. Now, this capability is native to Kubernetes. View more...Visualizing Exposure Bias Using SimulationAggregated on: 2026-02-10 18:08:46 Abstract Randomization is a foundational assumption in A/B testing. In practice, however, randomized experiments can still produce biased estimates under realistic data collection conditions. We use simulation to demonstrate how bias can emerge despite correct random assignment. Visualization is shown to be an effective diagnostic tool for detecting these issues before causal interpretation. Introduction A/B testing is widely used to estimate the causal impact of product changes. Users are randomly assigned to control (C) or treatment (T), and differences in outcomes are attributed to the experiment. Randomization is intended to balance user characteristics across groups when assignment occurs at the user level. However, even with correct random assignment, the observed segment mix can differ because real experiments are often analyzed on a filtered or triggered subset of users. Eligibility rules, exposure conditions, logging behavior, and data availability can vary by variant due to trigger logic, instrumentation loss, device or browser differences, and latency. As a result, treatment and control may represent different effective populations. View more...A Pattern for Intelligent Ticket Routing in ITSMAggregated on: 2026-02-10 17:08:46 In the world of IT Service Management (ITSM), the Service Desk often acts as a human router. A ticket comes in, a coordinator reads it, checks a spreadsheet to see who is on shift, remembers who is good at databases versus networking, and then assigns the ticket. This process is slow, subjective, and prone to cherry-picking (where engineers grab easy tickets and ignore hard ones). It creates a bottleneck that increases Mean Time to Resolution (MTTR). View more...Designing a Real-Time Data Activation Platform Using Segment CDP, Databricks, and IterableAggregated on: 2026-02-10 16:08:46 The first sign our activation stack was failing wasn’t latency or scale. It was when two internal teams triggered conflicting workflows from the same event, and neither system could explain why. That moment made something clear: once multiple teams depend on the same signals, activation stops being a marketing workflow problem and becomes a software architecture problem. View more...Query-Aware Retrieval Routing for Analytics on AWS: When to Use Redshift, OpenSearch, Neptune, or CacheAggregated on: 2026-02-10 15:08:46 Typically, LLM analytics assistants or chatbots start with retrieval-augmented generation (RAG) and a database connection. That's fine until real users ask a mix of KPI questions, definition lookups, lineage questions, and repeated dashboard-style requests. If everything goes through one retrieval path to access data, you will see three predictable failures. Wrong answers: Metrics that are computed at the wrong grain, wrong joins, missing filters Slow answers: Long prompts, retries Higher cost: More tokens, more queries, more wasted warehouse scans Analytics questions are not the same every time. The backend that is best for one question (e.g., what does active users mean?) may not be the best for another (e.g., which dashboards depend on the product type field?). View more... |
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