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TitreDateDurée
98% of Data Strategies Fail: Let's Fix It02 Aug 202400:11:24

This story was originally published on HackerNoon at: https://hackernoon.com/98percent-of-data-strategies-fail-lets-fix-it.
Learn how to fix failing data strategies using the '5 W's' framework. Transform your approach to KPIs and drive real business value with actionable insights.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #data-strategy, #kpi-management, #business-intelligence, #data-driven-decisions, #executive-leadership, #analytics-roi, #data-roi, #data-governance, and more.

This story was written by: @liorb. Learn more about this writer by checking @liorb's about page, and for more stories, please visit hackernoon.com.

Even the most well-equipped organizations can find themselves serving up a mess instead of actionable insights. Here's a step-by-step process of fixing your data strategy, ensuring that you're serving up actionable data instead of a recipe for disaster. In the following sections, we'll dive into the common data strategy nightmares.

How To Measure The Results Of In-App Events When Onelinks Don’t Work30 Jul 202400:05:59

This story was originally published on HackerNoon at: https://hackernoon.com/how-to-measure-the-results-of-in-app-events-when-onelinks-dont-work.
How To Measure The Results Of In-App Events When Onelinks Don’t Work
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #analytics, #onelink, #inapp-events, #marketing, #app-store, #mobile-apps, #digital-marketing, #good-company, and more.

This story was written by: @socialdiscoverygroup. Learn more about this writer by checking @socialdiscoverygroup's about page, and for more stories, please visit hackernoon.com.

Many app developers and marketing managers face the challenge of accurately measuring the impact of In-App Events (IAEs) on the App Store. While IAEs have proven effective for re-engaging users, attracting new downloads, and increasing revenue, traditional tracking methods like OneLink don’t actually include IAEs. Major mobile attribution platforms confirm that currently there is no way to track IAEs properly. At Social Discovery Group, our portfolio of 60+ dating and entertainment brands is supported by a team of over 100 marketers dedicated to app growth and development. We’re used to measuring all our marketing efforts in terms of financial value. Eventually, we’ve managed to develop our own composite way to evaluate IAEs, and are going to share it with you.

How AI-Powered Data Mapping is Democratizing Data Management 27 Jul 202400:08:10

This story was originally published on HackerNoon at: https://hackernoon.com/how-ai-powered-data-mapping-is-democratizing-data-management.
Learn how AI-powered data mapping is transforming data management, making it more accessible and efficient for everyone.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #data-mapping, #data-management, #big-data, #ai-powered, #ai-powered-data-management, #democratizing-data-management, #data-science, #ai-powered-data-mapping, and more.

This story was written by: @kristenburke. Learn more about this writer by checking @kristenburke's about page, and for more stories, please visit hackernoon.com.

AI is revolutionizing data mapping by automating and simplifying the process, making data management more efficient and accessible for businesses and non-technical users alike.

Data Engineering: What’s the Value of API Security in the Generative AI Era?27 Jul 202400:05:47

This story was originally published on HackerNoon at: https://hackernoon.com/data-engineering-whats-the-value-of-api-security-in-the-generative-ai-era.
Discover the importance of API security in the age of Generative AI. Learn how robust API protection ensures data integrity.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #data-engineering, #generative-ai, #ai-regulation, #api-security, #data-security, #data-privacy, #threat-detection, #cybersecurity-best-practices, and more.

This story was written by: @karthikrajashekaran. Learn more about this writer by checking @karthikrajashekaran's about page, and for more stories, please visit hackernoon.com.

API security is crucial in the era of Generative AI, ensuring data integrity, protecting user privacy, and enabling secure and efficient AI integration. Robust API protection helps prevent unauthorized access, data breaches, and potential misuse of AI capabilities.

When A/B Tests Aren’t Possible, Causal Inference Can Still Measure Marketing Impact14 Jan 202600:07:20

This story was originally published on HackerNoon at: https://hackernoon.com/when-ab-tests-arent-possible-causal-inference-can-still-measure-marketing-impact.
Learn how to measure marketing impact without A/B tests using causal inference, Diff-in-Diff, synthetic control, and GeoLift.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #ab-testing, #data-analytics, #data-analysis, #causal-inference, #ab-testing-alternatives, #geolift, #diff-in-diff, #causal-inference-marketing, and more.

This story was written by: @radiokocmoc_l45iej08. Learn more about this writer by checking @radiokocmoc_l45iej08's about page, and for more stories, please visit hackernoon.com.

In many real‑world settings, running a randomized experiment is simply impossible. We’ll walk through Diff‑in‑Diff, Synthetic Control, and Meta’s GeoLift. We show how to prep your data, and provide ready‑to‑run code.

Why Data Quality Is Becoming a Core Developer Experience Metric13 Jan 202600:07:44

This story was originally published on HackerNoon at: https://hackernoon.com/why-data-quality-is-becoming-a-core-developer-experience-metric.
Bad data secretly slows development. Learn why data quality APIs are becoming core DX infrastructure in API-first systems and how they accelerate teams.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #data-quality, #developer-experience, #software-architecture, #engineering-productivity, #data-quality-apis, #api-first-architecture, #distributed-systems, #good-company, and more.

This story was written by: @melissaindia. Learn more about this writer by checking @melissaindia's about page, and for more stories, please visit hackernoon.com.

In API-first systems, poor data quality (invalid emails, duplicate records, etc.) creates unpredictable bugs, forces defensive coding, and makes releases feel risky. This "hidden tax" consumes time and mental energy that should go to building features. The fix? Treat data quality as core infrastructure. By using real-time validation APIs at the point of ingestion, you create predictable systems, simplify business logic, and build developer confidence. This turns a vicious cycle of complexity into a virtuous cycle of velocity and better architecture. Bottom line: Investing in data quality isn't just operational hygiene—it's a direct investment in your team's ability to ship faster and with more confidence.

Srilatha Samala’s Agile Intelligence Approach to Enterprise Reporting as a Strategic Asset03 Dec 202500:04:40

This story was originally published on HackerNoon at: https://hackernoon.com/srilatha-samalas-agile-intelligence-approach-to-enterprise-reporting-as-a-strategic-asset.
Srilatha Samala transforms enterprise reporting with Agile Intelligence, automation, and real-time dashboards that boost visibility and decision speed.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #predictive-analytics, #agile-intelligence, #automated-dashboards, #jira, #rest-api, #power-bi, #enterprise-reporting, #good-company, and more.

This story was written by: @jonstojanjournalist. Learn more about this writer by checking @jonstojanjournalist's about page, and for more stories, please visit hackernoon.com.

Srilatha Samala revolutionized enterprise reporting by replacing fragmented, manual processes with automated, real-time dashboards powered by JIRA APIs, Power BI, and custom scripts. Her Agile Health Dashboard, predictive models, and workflow automation cut reporting time by 75%, improved audits, and turned data into a true strategic asset.

The Hidden Cost of Bad Data: Why It’s Undermining Your AI Strategy03 Dec 202500:18:13

This story was originally published on HackerNoon at: https://hackernoon.com/the-hidden-cost-of-bad-data-why-its-undermining-your-ai-strategy.
Poor data quality is undermining your AI strategy. Uncover the hidden costs and follow our roadmap to transform bad data into a high-ROI strategic asset
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #data-accuracy, #data-quality, #ai-strategy, #bad-data, #data-auditing, #data-management, #artificial-intelligence, #hackernoon-top-story, and more.

This story was written by: @rubenmelkonian. Learn more about this writer by checking @rubenmelkonian's about page, and for more stories, please visit hackernoon.com.

Poor data quality is a massive hidden cost that silently sabotages expensive AI projects and drains company resources. The "1-10-100 Rule" proves that proactive prevention is exponentially cheaper than fixing failures downstream. The solution requires a systematic approach, starting with a data audit and establishing continuous data governance, which ultimately transforms data from a liability into a high-ROI strategic asset.

Data Platform as a Service: A Three-Pillar Model for Scaling Enterprise Data Systems20 Nov 202500:04:22

This story was originally published on HackerNoon at: https://hackernoon.com/data-platform-as-a-service-a-three-pillar-model-for-scaling-enterprise-data-systems.
DPaaS solves the enterprise data scalability paradox with declarative policies, multi-plane architecture, and continuous reconciliation.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #data-management, #platform-engineering, #data-platform-scalability, #data-integration, #dpaas, #multi-plane-architecture, #data-infrastructure, #data-engineering, and more.

This story was written by: @anilkumarkandalam. Learn more about this writer by checking @anilkumarkandalam's about page, and for more stories, please visit hackernoon.com.

Enterprise data platforms hit scaling limits because centralized teams can't grow fast enough to handle organizational complexity. Data Platform as a Service (DPaaS) solves this through declarative policies, multi-plane architecture, and continuous reconciliation. Enabling self service autonomy that delivers significant operational overhead reduction and faster development without proportional engineering headcount growth.

How RAG Improves Database Management20 Nov 202500:12:04

This story was originally published on HackerNoon at: https://hackernoon.com/how-rag-improves-database-management.
RAG is transforming database management with accurate retrieval, real-time insights, and natural language querying to help teams manage and understand data inte
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #data-management, #rag, #ai, #databases, #what-is-rag, #rag-in-data-management, #key-components-of-rag, #how-to-implement-rag, and more.

This story was written by: @victorhorlenko. Learn more about this writer by checking @victorhorlenko's about page, and for more stories, please visit hackernoon.com.

RAG transforms database management by combining intelligent retrieval with LLMs to deliver accurate, real-time, natural-language insights across structured and unstructured data. It enhances accuracy, speeds decision-making, reduces manual querying, and sets the stage for conversational, AI-driven data systems.

How To Power AI, Analytics, and Microservices Using the Same Data19 Nov 202500:08:51

This story was originally published on HackerNoon at: https://hackernoon.com/how-to-power-ai-analytics-and-microservices-using-the-same-data.
Adam Bellemare explains how data streaming unifies AI, analytics, and microservices—solving data access challenges through real-time, scalable pipelines.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #data-streaming-architecture, #confluent, #adam-bellemare, #event-driven-microservices, #generative-ai-data-pipelines, #apache-kafka, #real-time-analytics, #good-company, and more.

This story was written by: @confluent. Learn more about this writer by checking @confluent's about page, and for more stories, please visit hackernoon.com.

Adam Bellemare, Principal Technologist at Confluent, explores how data streaming solves long-standing data access issues for AI, analytics, and microservices. By decoupling producers from consumers and enabling real-time, low-latency data flow, streaming creates a unified data layer that powers GenAI, RAG, and event-driven systems across organizations.

From Data Fragmentation to Billion-Dollar Insights: The Vision of Manish Ravindra Sharath30 Oct 202500:07:19

This story was originally published on HackerNoon at: https://hackernoon.com/from-data-fragmentation-to-billion-dollar-insights-the-vision-of-manish-ravindra-sharath.
Manish Ravindra Sharath unified fragmented enterprise data using PySpark & cloud-native systems,boosting efficiency 99% and driving multimillion-dollar growth.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #enterprise-data-engineering, #manish-ravindra-sharath, #pyspark-data-pipeline, #cloud-data-architecture, #data-modernization-strategy, #hybrid-data-infrastructure, #enterprise-analytics, #good-company, and more.

This story was written by: @sanya_kapoor. Learn more about this writer by checking @sanya_kapoor's about page, and for more stories, please visit hackernoon.com.

Manish Ravindra Sharath transformed enterprise decision-making by architecting a unified PySpark-powered data pipeline that cut reporting time from 30+ hours to 30 minutes. His system achieved 99% efficiency, 40% cost reduction, and 30% faster deal closures—turning fragmented data into billion-dollar insights driving global business performance.

Building a Layered Defense Against Web Scraping30 Oct 202500:08:43

This story was originally published on HackerNoon at: https://hackernoon.com/building-a-layered-defense-against-web-scraping.
Discover how a three-layer data-protection model blends AI, risk-based gating, and legal context to stop web scraping while preserving user trust.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #web-scraping, #data-protection, #ai-security, #product-strategy, #web-scraping-protection, #bot-mitigation, #risk-based-gating, #data-security-strategy, and more.

This story was written by: @areejit1. Learn more about this writer by checking @areejit1's about page, and for more stories, please visit hackernoon.com.

The web-scraping industry is no longer niche. Valued at USD 1.03 billion in 2025, it is projected to nearly double by 2030. Traditional defenses rate limiting, CAPTCHAs, IP bans are brittle against modern toolkits. A layered defense acknowledges this tension.

Cosmo: The Graph Visualization Tool Built for Your Terminal23 Oct 202500:02:56

This story was originally published on HackerNoon at: https://hackernoon.com/cosmo-the-graph-visualization-tool-built-for-your-terminal.
Cosmo is a terminal-based interactive graph visualizer that automatically layouts and displays complex data structures for quick exploration.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #visualization, #terminal, #cli, #graphs, #tui, #cosmo, #complex-data-structures, #gui-visualizer, and more.

This story was written by: @hacker227143. Learn more about this writer by checking @hacker227143's about page, and for more stories, please visit hackernoon.com.

Cosmo is a fast, interactive graph visualizer that makes graphs and trees easy to understand, beautifully arranged, and fully explorable without ever leaving your command line. Pass your data structures directly from code or file and see them come to life.

How Businesses Are Turning Space Data into a Tool for Risk, Resilience, and Sustainability15 Oct 202500:06:06

This story was originally published on HackerNoon at: https://hackernoon.com/how-businesses-are-turning-space-data-into-a-tool-for-risk-resilience-and-sustainability.
Satellites are reshaping insurance, supply chains, and sustainability—here’s how space data became core to global business strategy.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #business-intelligence, #space-economy, #satellite-data, #sustainability-reporting, #supply-chain-analytics, #geospatial-intelligence, #space-technology, #earth-observation, and more.

This story was written by: @150sec. Learn more about this writer by checking @150sec's about page, and for more stories, please visit hackernoon.com.

The global space economy is evolving from exploration to infrastructure. Businesses across insurance, sustainability, and supply chains now rely on satellite data for real-time insights that help manage risk, track biodiversity, forecast disruptions, and meet new reporting standards. As costs drop and access expands, space data has become an essential layer of corporate intelligence—turning orbit into opportunity.

How Data Innovation Changed a State’s Infrastructure Engine10 Oct 202500:07:44

This story was originally published on HackerNoon at: https://hackernoon.com/how-data-innovation-changed-a-states-infrastructure-engine.
Deepak Chanda modernized Massachusetts’ infrastructure systems through data-driven process innovation—turning inefficiency into lasting operational reform.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #data-innovation-in-government, #infrastructure-analytics, #data-transformation, #process-automation, #massachusetts-transportation, #sql-data-pipeline-optimization, #real-time-anomaly-detection, #good-company, and more.

This story was written by: @jonstojanjournalist. Learn more about this writer by checking @jonstojanjournalist's about page, and for more stories, please visit hackernoon.com.

Amid bureaucratic stagnation in Massachusetts’ public works, Senior Data Analyst Deepak Chanda led a quiet revolution. By digitizing blueprint reviews and adding a simple SQL field to track project sign-offs, he cut delays and saved taxpayer dollars. His philosophy—good data should shape the world, not just describe it—continues to drive progress across healthcare and insurance.

Why “Accuracy” Fails for Uplift Models (and What to Use Instead)11 Jan 202600:05:18

This story was originally published on HackerNoon at: https://hackernoon.com/why-accuracy-fails-for-uplift-models-and-what-to-use-instead.
When it comes to uplift modeling, traditional performance metrics commonly used for other machine learning tasks may fall short.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #data-science, #uplift-modeling, #data-analysis, #machine-learning, #uplift-models, #area-under-uplift, #uplift@k, #cg-and-qini, and more.

This story was written by: @eltsefon. Learn more about this writer by checking @eltsefon's about page, and for more stories, please visit hackernoon.com.

When it comes to uplift modeling, traditional performance metrics commonly used for other machine learning tasks may fall short.

How to Optimize Your Marketing Budget Using Just Three Letters: MMM25 Sep 202500:07:26

This story was originally published on HackerNoon at: https://hackernoon.com/how-to-optimize-your-marketing-budget-using-just-three-letters-mmm.
Marketing Mix Modeling is a statistical analysis method used in marketing to determine the optimal allocation of resources.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #data-science, #marketing-analytics, #machine-learning, #marketing, #marketing-budget, #marketing-mix-modeling, #media-mix-modelling, #adstock-and-saturation, and more.

This story was written by: @radiokocmoc_l45iej08. Learn more about this writer by checking @radiokocmoc_l45iej08's about page, and for more stories, please visit hackernoon.com.

Marketing Mix Modeling is a statistical analysis method used in marketing to determine the optimal allocation of resources. The goal of media mix modelling is to understand the impact of different marketing channels on the overall campaign effectiveness. Join me to discover how to optimise the marketing budget by implementing Robyn MMM.

Here's How ShareChat Scaled Their ML Feature Store 1000X Without Scaling the Database25 Sep 202500:12:42

This story was originally published on HackerNoon at: https://hackernoon.com/heres-how-sharechat-scaled-their-ml-feature-store-1000x-without-scaling-the-database.
How ShareChat scaled its ML feature store to 1B features/sec on ScyllaDB, achieving 1000X performance without scaling the database.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #sharechat-ml-feature-store, #scylladb-scaling-case-study, #ml-feature-store-optimization, #sharechat-moj, #low-latency-ml-infrastructure, #scylladb-database-optimization, #p99-conf-sharechat-talk, #good-company, and more.

This story was written by: @scylladb. Learn more about this writer by checking @scylladb's about page, and for more stories, please visit hackernoon.com.

ShareChat scaled its ML feature store from failure at 1M features/sec to 1B features/sec using ScyllaDB optimizations, caching hacks, and relentless tuning. By rethinking schemas, tiling, and caching strategies, engineers avoided scaling the database, cut latency, and boosted cache hit rates—proving performance engineering beats brute-force scaling.

Why You Shouldn’t Judge by PnL Alone24 Sep 202500:13:23

This story was originally published on HackerNoon at: https://hackernoon.com/why-you-shouldnt-judge-by-pnl-alone.
PnL can lie. This hands-on guide shows traders how hypothesis testing separate luck from edge, with a Python example and tips on how not to fool yourself.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #quantitative-research, #trading, #algorithmic-trading, #pnl, #udge-pnl, #profit-and-loss, #judge-profit-and-loss, #hackernoon-top-story, and more.

This story was written by: @ruslan4ezzz. Learn more about this writer by checking @ruslan4ezzz's about page, and for more stories, please visit hackernoon.com.

I’ve spent years building and evaluating systematic strategies across highly adversarial markets. When you iterate on a trading system, PnL is the goal but a terrible day-to-day signal. It’s too noisy, too path-dependent, and too easy to cherry-pick. A simple framework—form a hypothesis, measure a test statistic, translate it into a probability under a “no-effect” world (the p-value)—helps you avoid false wins, iterate faster, and ship changes that actually stick. Below I’ll show a concrete example where two strategies look very different in cumulative PnL charts, yet standard tests say there’s no meaningful difference in their average per-trade outcome. I’ll also demystify the t-test in plain language: difference of means, scaled by uncertainty.

From "Decentralized" to "Unified": SUPCON Uses SeaTunnel to Build an Efficient Data Collection Frame23 Sep 202500:16:17

This story was originally published on HackerNoon at: https://hackernoon.com/from-decentralized-to-unified-supcon-uses-seatunnel-to-build-an-efficient-data-collection-frame.
SUPCON dumped siloed data tools for Apache SeaTunnel—now core sync tasks run 0-failure!
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #bigdata, #apacheseatunnel, #supcon, #data-sync, #high-availability, #data-engineering, #cdc, #hackernoon-top-story, and more.

This story was written by: @williamguo. Learn more about this writer by checking @williamguo's about page, and for more stories, please visit hackernoon.com.

99% lower failures, 100% consistency, 70% less O&M cost. Big thanks to @ApacheSeaTunnel!

Enterprise Data Pipeline Revolution: Suresh Palli's Metadata-Driven Automation Success19 Sep 202500:07:50

This story was originally published on HackerNoon at: https://hackernoon.com/enterprise-data-pipeline-revolution-suresh-pallis-metadata-driven-automation-success.
Suresh Palli revolutionized enterprise data pipelines with metadata-driven automation, cutting dev time 40% and boosting scalability 5x.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #suresh-palli, #metadata-driven-automation, #enterprise-data-pipelines, #data-pipeline-automation, #metadata-governance, #enterprise-data-architecture, #scalable-data-processing, #good-company, and more.

This story was written by: @sanya_kapoor. Learn more about this writer by checking @sanya_kapoor's about page, and for more stories, please visit hackernoon.com.

Suresh Palli led a metadata-driven automation project that cut pipeline development time by 40% and scaled data processing 5x. His centralized metadata governance enabled dynamic adaptation, seamless orchestration, and cross-unit alignment. The success earned industry recognition, consulting opportunities, and set new benchmarks for enterprise data automation.

Unified Data, Smarter Agents—Is Your Architecture Future-Proof?18 Sep 202500:07:51

This story was originally published on HackerNoon at: https://hackernoon.com/unified-data-smarter-agentsis-your-architecture-future-proof.
A hands-on guide to architecting unified, governed and AI-ready data platforms using open table formats, semantic layers and multicloud governance.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #data, #big-data-analytics, #product, #ai, #etl, #azure, #aws, #data-engineering, and more.

This story was written by: @@QueryAndConquer. Learn more about this writer by checking @@QueryAndConquer's about page, and for more stories, please visit hackernoon.com.

A hands-on guide to architecting unified, governed and AI-ready data platforms using open table formats, semantic layers and multicloud governance.

Data-Driven Decisions at Scale: A/B Testing Best Practices for Engineering & Data Science Teams18 Sep 202500:05:59

This story was originally published on HackerNoon at: https://hackernoon.com/data-driven-decisions-at-scale-ab-testing-best-practices-for-engineering-and-data-science-teams.
Ship features like scientists: randomize, measure, and learn fast.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #data-science, #big-data, #experimentation, #experimental-design, #product-development, #software-engineering, #machine-learning, #statistics, and more.

This story was written by: @sayantan. Learn more about this writer by checking @sayantan's about page, and for more stories, please visit hackernoon.com.

Ship features like scientists: randomize, measure, and learn fast. Good A/B tests aren’t just stats — they’re the engine driving smarter products.

Why You Should (Almost) Always Choose Sync Gunicorn Workers17 Sep 202500:06:09

This story was originally published on HackerNoon at: https://hackernoon.com/why-you-should-almost-always-choose-sync-gunicorn-over-workers-ze9c32wj.
Anyone working on a WSGI web application frameworks like Flask would know that as a best practice it is very important to use a WSGI HTTP Server like Gunicorn to deploy the app outside your development servers.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #python-programming, #gevent, #gunicorn, #python-web-development, #flask, #flask-deployment, #latest-tech-stories, #what-are-gunicorn-worker-types, and more.

This story was written by: @shamik-ray. Learn more about this writer by checking @shamik-ray's about page, and for more stories, please visit hackernoon.com.

Gunicorn is a widely popular WSGI Server and its popularity is because it is lightweight, fast, simple yet can support most of the requirements you would have to host an app on production. The default worker type is Sync and I will be arguing for it. Async workers like Gevent create new greenlets (lightweight pseudo threads) Every time a new request comes they are handled by greenlets spawned by the worker threads. At the same time, the resources needed to serve the requests will be less.

Beyond the Ten Blue Links: How Generative AI Rewires Our Brains for Search16 Sep 202500:07:26

This story was originally published on HackerNoon at: https://hackernoon.com/beyond-the-ten-blue-links-how-generative-ai-rewires-our-brains-for-search.
The age of searching is ending. A deep dive into the psychology of AI search, how it centralizes truth & why becoming a trusted source is key to brand survival
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #user-behavior-analytics, #ai-integrated-search, #digital-marketing, #seo, #geo, #future-tech, #psychology, #product-management, and more.

This story was written by: @a_belova. Learn more about this writer by checking @a_belova's about page, and for more stories, please visit hackernoon.com.

Generative AI isn't just a new feature in search; it's a fundamental psychological shift. By providing direct, synthesized answers, it caters to our brain's deep-seated desire to reduce cognitive load and trust authoritative narratives. This "great untraining" is rendering the classic marketing playbook obsolete. For businesses, developers, and marketers, the battle is no longer for clicks on blue links, but for becoming a trusted, citable source inside the AI's "brain." The age of persuasion is ending; the age of becoming a machine-readable source of truth has begun.

Need Web Data? Here Are the 3 Methods Everyone’s Using16 Sep 202500:10:09

This story was originally published on HackerNoon at: https://hackernoon.com/need-web-data-here-are-the-3-methods-everyones-using.
Discover the three best, most modern methods to access and harness web data for your projects.
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This story was written by: @brightdata. Learn more about this writer by checking @brightdata's about page, and for more stories, please visit hackernoon.com.

Need web data? APIs, SDKs, and MCP provide flexible, scalable, and automated ways to access, scrape, and integrate web data for scripts, backends, web apps, pipelines, or AI agents.

Turning Your Data Swamp into Gold: A Developer’s Guide to NLP on Legacy Logs18 Dec 202500:04:30

This story was originally published on HackerNoon at: https://hackernoon.com/turning-your-data-swamp-into-gold-a-developers-guide-to-nlp-on-legacy-logs.
A practical NLP pipeline for cleaning legacy maintenance logs using normalization, TF-IDF, and cosine similarity to detect fraud and improve data quality.
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This story was written by: @dippusingh. Learn more about this writer by checking @dippusingh's about page, and for more stories, please visit hackernoon.com.

The NLP Cleaning Pipeline is a tool to clean, vectorize, and analyze unstructured "free-text" logs. It uses Python 3.9+ and Scikit-Learn for vectorization and similarity metrics. The pipeline uses Unicode normalization, the Thesaurus, and case folding to remove noise.

Applying Transitive Closure to Sort Products Into Categories, Considering Nesting and Overlaps15 Sep 202500:15:50

This story was originally published on HackerNoon at: https://hackernoon.com/applying-transitive-closure-to-sort-products-into-categories-considering-nesting-and-overlaps.
A guide to efficiently managing nested categories and overlapping products, ensuring fast retrieval without duplicates in e-commerce systems.
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This story was written by: @egorgrushin. Learn more about this writer by checking @egorgrushin's about page, and for more stories, please visit hackernoon.com.

Handling product categorization in e-commerce can be quite the task, especially when nested categories and overlapping products make efficient retrieval without duplicates a real challenge. The method I found has a major impact on performance: setting up proper data storage, separating data for reading and modification, using relational and NoSQL databases, and applying graph theory to handle complex category nesting. The step-by-step guide shows how to sort out efficient data storage, use transitive closure for advanced indexing, build a service to maintain and update the graph, and take advantage of database indexing to avoid unnecessary sorting in RAM.

Data Monetization Strategies in Government Digital Platforms17 Dec 202500:05:40

This story was originally published on HackerNoon at: https://hackernoon.com/data-monetization-strategies-in-government-digital-platforms.
How governments monetize digital data to drive innovation, trust, transparency and economic value.
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This story was written by: @strgy. Learn more about this writer by checking @strgy's about page, and for more stories, please visit hackernoon.com.

Government data is not merely a by-product of governance, it's a strategic asset, writes Frida Ghitis. Ghitis: Government cannot be a data broker, but it should be the custodian of the value of the information it possesses.

Why Partner Data Became My Toughest Engineering Problem16 Dec 202500:08:43

This story was originally published on HackerNoon at: https://hackernoon.com/why-partner-data-became-my-toughest-engineering-problem.
Your partner portal isn't broken; your definitions are. How fixing "data lineage" cut deal registration time from 4.5 days to under 2.
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This story was written by: @aniruddhapratapsingh. Learn more about this writer by checking @aniruddhapratapsingh's about page, and for more stories, please visit hackernoon.com.

Partner systems slow down when data definitions drift. Real stability returns only when the model is cleaned up and workflows align around a single, consistent structure.

PBIX Is Not Going Away - But PowerBI Will Never Work the Same Again16 Dec 202500:09:40

This story was originally published on HackerNoon at: https://hackernoon.com/pbix-is-not-going-away-but-powerbi-will-never-work-the-same-again.
PowerBI is shifting from "PBIX" to "PBIR". This article explains what actually changes, who benefits and how teams should prepare for the future without panic.
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This story was written by: @rmghosh18. Learn more about this writer by checking @rmghosh18's about page, and for more stories, please visit hackernoon.com.

"PBIX" packaged PowerBI reports into a single binary file, which worked well for individual authors but struggled at scale. "PBIR" replaces that model with a structured, project-based format that makes report changes explicit, improves collaboration and enables better governance. This shift doesn’t require immediate rewrites, but it does change how teams should think about building and managing Power BI reports long term.

Smart Fire Protection: How AI Is Changing Preventive Maintenance Forever06 Dec 202500:06:16

This story was originally published on HackerNoon at: https://hackernoon.com/smart-fire-protection-how-ai-is-changing-preventive-maintenance-forever.
AI and IoT are transforming fire protection maintenance with predictive monitoring, fewer failures, and smarter, self-maintaining buildings.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #ai-preventive-maintenance, #iot-fire-monitoring, #fire-predictive-analytics, #digital-fire-safety, #ai-fire-protection, #smart-building-fire-prevention, #predictive-fire-safety-systems, #good-company, and more.

This story was written by: @sanya_kapoor. Learn more about this writer by checking @sanya_kapoor's about page, and for more stories, please visit hackernoon.com.

Fire protection is shifting from manual inspections to AI-powered preventative maintenance. With IoT sensors, predictive analytics, and digital tools, fire systems can now detect failures early, reduce false alarms, automate reporting, and improve compliance. Buildings are moving toward self-monitoring, self-testing fire safety systems that keep people safer while reducing operational risks and maintenance costs.

Why More VARs and SIs Are Embedding Melissa Into Their Enterprise Solutions06 Dec 202500:08:14

This story was originally published on HackerNoon at: https://hackernoon.com/why-more-vars-and-sis-are-embedding-melissa-into-their-enterprise-solutions.
Partner with Melissa to empower VARs and SIs with accurate data, seamless integrations, and scalable verification tools for smarter, faster client solutions.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #data-quality, #data-enrichment, #ssis, #var, #identity-verification, #dynamics-365-verification, #melissa-data-tools, #good-company, and more.

This story was written by: @melissaindia. Learn more about this writer by checking @melissaindia's about page, and for more stories, please visit hackernoon.com.

Melissa helps VARs and SIs deliver faster, more accurate, and compliant solutions through powerful verification APIs, global datasets, and plug-and-play integrations. Partners reduce rework, strengthen customer trust, and gain a competitive edge with scalable tools for identity, address, email, and phone validation across major platforms like Salesforce and Dynamics 365.

Big Data as the New Compass of Competition04 Dec 202500:09:40

This story was originally published on HackerNoon at: https://hackernoon.com/big-data-as-the-new-compass-of-competition.
Big Data Analytics has evolved into the modern organization’s most powerful compass.
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This story was written by: @patrickokare. Learn more about this writer by checking @patrickokare's about page, and for more stories, please visit hackernoon.com.

Big Data Analytics has evolved into the modern organization’s most powerful compass, turning raw, complex, ever-flowing information into clear, actionable insight. Big Data has reshaped industries, customer engagement, risk management, and strategic innovation.

How Bayesian Tail-Risk Modeling can save your Retail Business Marketing Budget20 Jan 202600:19:29

This story was originally published on HackerNoon at: https://hackernoon.com/how-bayesian-tail-risk-modeling-can-save-your-retail-business-marketing-budget.
Why average ROI fails. Learn how distributional and tail-risk modeling protects marketing campaigns from catastrophic losses using Bayesian methods.
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This story was written by: @dharmateja. Learn more about this writer by checking @dharmateja's about page, and for more stories, please visit hackernoon.com.

E-commerce marketing is often represented in terms of Return on Investment (ROI) But looking specifically at average ROI can be very misleading. Marketing outcomes can have "fat tails": rare but extreme events on the downside which conventional models' underestimate.

Architecting Trustworthy Healthcare Data Platforms Using Declarative Pipelines 20 Jan 202600:09:05

This story was originally published on HackerNoon at: https://hackernoon.com/architecting-trustworthy-healthcare-data-platforms-using-declarative-pipelines.
In Digital Healthcare data platforms, data quality is no longer a nice-to-have — it is a hard requirement.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #databricks, #data-science, #healthcare-data-platforms, #declarative-pipelines, #declarative-data-quality, #production-grade-pipelines, #healthcare-etl-pipelines, #bad-data, and more.

This story was written by: @hacker95231466. Learn more about this writer by checking @hacker95231466's about page, and for more stories, please visit hackernoon.com.

In Digital Healthcare data platforms, data quality is no longer a nice-to-have — it is a hard requirement.

Clarifying the Difference Between Data Strategy, Analytics, and AI Governance06 Feb 202600:07:50

This story was originally published on HackerNoon at: https://hackernoon.com/clarifying-the-difference-between-data-strategy-analytics-and-ai-governance.
This article examines the structural distinctions between Data & Analytics (D&A) Strategy, D&A Governance, Data Governance, and AI Governance within enterprise
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This story was written by: @susmit82. Learn more about this writer by checking @susmit82's about page, and for more stories, please visit hackernoon.com.

Organizations often struggle to scale analytics and AI because strategy and governance are blurred. This article clarifies four distinct but connected layers: D&A Strategy defines where and why data, analytics, and AI create business value. D&A Governance defines how decisions are made, prioritized, and tracked at the enterprise level. Data Governance ensures data can be trusted through ownership, quality, and compliance controls. AI Governance ensures AI decisions can be trusted through risk, explainability, and lifecycle controls. The paper proposes a hierarchical framework aligning these layers to prevent pilot sprawl, reduce AI risk, and enable scalable, value-driven analytics across industries such as mining, banking, healthcare, retail, and energy.

The “Store Everything” Cloud Model Is Breaking Under Modern AI Workloads06 Feb 202600:10:32

This story was originally published on HackerNoon at: https://hackernoon.com/the-store-everything-cloud-model-is-breaking-under-modern-ai-workloads.
The 'Store Everything' cloud model is dead. Discover how AI Edge Proxies cut storage costs by 60% and solve industrial latency. The era of Smart Data is here.
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This story was written by: @mannkamal. Learn more about this writer by checking @mannkamal's about page, and for more stories, please visit hackernoon.com.

The cloud-first observability model is collapsing under latency, cost, and data overload. This article argues for AI edge proxies that filter noise, act in real time, and send only high-value insights upstream.

Data Pipeline Testing: The 3 Levels Most Teams Miss27 Jan 202600:07:40

This story was originally published on HackerNoon at: https://hackernoon.com/data-pipeline-testing-the-3-levels-most-teams-miss.
Dashboards don’t represent actual state, models degrade unnoticed, and incidents show up as “weird numbers” instead of errors.
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This story was written by: @timonovid_ir5em1fo. Learn more about this writer by checking @timonovid_ir5em1fo's about page, and for more stories, please visit hackernoon.com.

Most data teams test code but not data. That’s why dashboards don’t represent actual state, models degrade unnoticed, and incidents show up as “weird numbers” instead of errors. This article breaks down **three levels of data testing** — schema, business logic, and contracts — and shows how to integrate them into CI/CD and monitoring without turning your data stack into a mess.

HSM: The Original Tiering Engine Behind Mainframes, Cloud, and S325 Jan 202600:59:33

This story was originally published on HackerNoon at: https://hackernoon.com/hsm-the-original-tiering-engine-behind-mainframes-cloud-and-s3.
From mainframe DFSMShsm to cloud storage classes: a practical history of HSM, ILM, tiering, recall, and the products that shaped modern archives.
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This story was written by: @carlwatts. Learn more about this writer by checking @carlwatts's about page, and for more stories, please visit hackernoon.com.

Hierarchical Storage Management (HSM) is the storage world’s oldest magic trick. It makes expensive storage look bigger by quietly moving data to cheaper tiers. HSM has five moving parts: a primary tier, secondary tiers, a policy engine, a recall mechanism, and a migration engine.

Navigating Architectural Trade-offs at Scale to Meet AI Goals in 202623 Jan 202600:06:35

This story was originally published on HackerNoon at: https://hackernoon.com/navigating-architectural-trade-offs-at-scale-to-meet-ai-goals-in-2026.
Success in 2026 is predicated on having total clarity of the underlying data infrastructure.
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This story was written by: @anupmoncy. Learn more about this writer by checking @anupmoncy's about page, and for more stories, please visit hackernoon.com.

Success in 2026 is predicated on having total clarity of the underlying data infrastructure. This requires a stable and secure foundation that uses auto-scaling compute and workload isolation.

Will AI Take Your Job? The Data Tells a Very Different Story23 Jan 202600:21:46

This story was originally published on HackerNoon at: https://hackernoon.com/will-ai-take-your-job-the-data-tells-a-very-different-story.
Historically, technological revolutions have triggered similar waves of anxiety, only for the long-term outcomes to demonstrate a more optimistic narrative.
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This story was written by: @dharmateja. Learn more about this writer by checking @dharmateja's about page, and for more stories, please visit hackernoon.com.

Artificial intelligence (AI) raises an urgent question for workers, businesses, and policymakers. Will AI advancements ultimately lead to widespread unemployment? Historically, technological revolutions have triggered similar waves of anxiety, only for the long-term outcomes to demonstrate a more optimistic narrative.

You Don’t Need an API for Everything (Sometimes Scraping Is Enough)22 Jan 202600:02:59

This story was originally published on HackerNoon at: https://hackernoon.com/you-dont-need-an-api-for-everything-sometimes-scraping-is-enough.
You don't always need an API. Sometimes scraping public pages is the simplest, fastest way to turn repetitive browsing into usable data.
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This story was written by: @fromight. Learn more about this writer by checking @fromight's about page, and for more stories, please visit hackernoon.com.

APIs are useful, but they're not always available, complete, or worth the overhead. If the data you need is already public and you're manually checking a website, scraping is simply a way to automate that behavior. Small, low-frequency scrapers can turn repetitive browsing into structured data, save time, and reduce cognitive load making scraping a practical productivity tool rather than a heavy engineering decision.

How to Use Propensity Score Matching to Measure Down Stream Causal Impact of an Event22 Jan 202600:24:50

This story was originally published on HackerNoon at: https://hackernoon.com/how-to-use-propensity-score-matching-to-measure-down-stream-causal-impact-of-an-event.
How can we know ours ads are making impact that we aim for? What if targeted ads are not working the way we want them to?
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This story was written by: @dharmateja. Learn more about this writer by checking @dharmateja's about page, and for more stories, please visit hackernoon.com.

Ad exposure is not randomly assigned – algorithms may show ads more to highly active users. As a result, “unobservable factors make exposure endogenous,” meaning there are hidden biases in who sees the ad. This is where propensity score matching (PSM) comes in – it’s a statistical way to create apples-to-apples comparisons.

How to Analyze Call Sentiment With Open-Source NLP Libraries21 Jan 202600:06:26

This story was originally published on HackerNoon at: https://hackernoon.com/how-to-analyze-call-sentiment-with-open-source-nlp-libraries.
Unlock call sentiment analysis using open-source NLP. Discover how to analyze customer emotions, improve service, and gain valuable insights from voice data.
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This story was written by: @devinpartida. Learn more about this writer by checking @devinpartida's about page, and for more stories, please visit hackernoon.com.

Call sentiment analysis uses natural language processing (NLP) to surface those signals at scale. Sentiment signals often fall into three broad categories: polarity, intensity and temporal shifts. When applied across large call volumes, sentiment metrics reveal systemic trends that individual call reviews rarely uncover.

AI Belongs Inside DataOps, Not Just at the End of the Pipeline05 Feb 202600:05:19

This story was originally published on HackerNoon at: https://hackernoon.com/ai-belongs-inside-dataops-not-just-at-the-end-of-the-pipeline.
AI shouldn’t sit at the end of the data pipeline. Learn why AI-augmented DataOps is essential for reliability, governance, and scale.
Check more stories related to data-science at: https://hackernoon.com/c/data-science. You can also check exclusive content about #dataops-augmented-ai, #ai-in-data-engineering, #data-reliability-automation, #ai-driven-data-governance, #dataops-automation-at-scale, #upstream-ai-data-operations, #ai-readiness-data-pipelines, #good-company, and more.

This story was written by: @dataops. Learn more about this writer by checking @dataops's about page, and for more stories, please visit hackernoon.com.

As AI drives higher demands for speed, scale, and governance, human-driven data operations no longer hold up. This article argues that AI must move upstream into DataOps, where it can automate enforcement, detect anomalies, maintain documentation, and evaluate readiness continuously. AI-augmented DataOps doesn’t replace engineers—it frees them to design better systems while improving reliability and trust at enterprise scale.

Stop Torturing Your Data: How to Automate Rigor With AI04 Feb 202600:03:40

This story was originally published on HackerNoon at: https://hackernoon.com/stop-torturing-your-data-how-to-automate-rigor-with-ai.
Why improvisation kills research, and how to use AI to enforce methodological discipline.
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This story was written by: @huizhudev. Learn more about this writer by checking @huizhudev's about page, and for more stories, please visit hackernoon.com.

Improvisation in data analysis leads to bias and "p-hacking." This article introduces a "Data Analysis Strategist" AI prompt that forces researchers to pre-commit to a rigorous roadmap. It acts as a flight plan, ensuring validity, checking assumptions, and preventing the "Garden of Forking Paths" effect.

Minimum Incident Lineage (MIL): A Run-Level Evidence Standard for Reproducible Data Incidents04 Feb 202600:08:49

This story was originally published on HackerNoon at: https://hackernoon.com/minimum-incident-lineage-mil-a-run-level-evidence-standard-for-reproducible-data-incidents.
Traditional data lineage shows dependencies—not proof. Learn how Minimum Incident Lineage helps teams reproduce, audit, and resolve data incidents faster.
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This story was written by: @anushakovi. Learn more about this writer by checking @anushakovi's about page, and for more stories, please visit hackernoon.com.

Minimum Incident Lineage (MIL) is the minimal run-level evidence you must capture for each dataset published. It makes incidents replayable, auditable, and fast to triage, without storing raw data.

5 Ways Spark 4.1 Moves Data Engineering From Manual Pipelines to Intent-Driven Design03 Feb 202600:07:17

This story was originally published on HackerNoon at: https://hackernoon.com/5-ways-spark-41-moves-data-engineering-from-manual-pipelines-to-intent-driven-design.
Apache Spark 4.1 introduces significant architectural efficiencies designed to simplify Change Data Capture (CDC) and lifecycle management.
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This story was written by: @amalik. Learn more about this writer by checking @amalik's about page, and for more stories, please visit hackernoon.com.

Apache Spark 4.1 is moving away from the role of "orchestration plumber" and toward something far more strategic. We are entering an era of declarative clarity that promises to reduce pipeline development time by up to 90%. Materialized View (MV) is the end of "Stale Data" anxiety.

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