惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

T
Threat Research - Cisco Blogs
OSCHINA 社区最新新闻
OSCHINA 社区最新新闻
The Register - Security
The Register - Security
A
About on SuperTechFans
Cyber Security Advisories - MS-ISAC
Cyber Security Advisories - MS-ISAC
L
LangChain Blog
N
Netflix TechBlog - Medium
量子位
博客园 - 三生石上(FineUI控件)
宝玉的分享
宝玉的分享
H
Help Net Security
D
Docker
D
DataBreaches.Net
T
Tailwind CSS Blog
阮一峰的网络日志
阮一峰的网络日志
B
Blog
博客园 - 聂微东
Apple Machine Learning Research
Apple Machine Learning Research
Google DeepMind News
Google DeepMind News
The Cloudflare Blog
F
Full Disclosure
GbyAI
GbyAI
F
Fortinet All Blogs
Last Week in AI
Last Week in AI
Y
Y Combinator Blog
人人都是产品经理
人人都是产品经理
Recent Announcements
Recent Announcements
博客园 - Franky
MongoDB | Blog
MongoDB | Blog
有赞技术团队
有赞技术团队
博客园 - 叶小钗
小众软件
小众软件
V
Visual Studio Blog
月光博客
月光博客
Stack Overflow Blog
Stack Overflow Blog
The GitHub Blog
The GitHub Blog
Recorded Future
Recorded Future
J
Java Code Geeks
雷峰网
雷峰网
P
Privacy & Cybersecurity Law Blog
C
Cisco Blogs
C
Cyber Attacks, Cyber Crime and Cyber Security
AWS News Blog
AWS News Blog
Webroot Blog
Webroot Blog
美团技术团队
N
News | PayPal Newsroom
G
Google Developers Blog
Security Archives - TechRepublic
Security Archives - TechRepublic
博客园_首页
V
Vulnerabilities – Threatpost

DEV Community

Authentication Security Deep Dive: From Brute Force to Salted Hashing (With Java Examples) Why AI Systems Don’t Fail — They Drift Spilling beans for how i learn for exam😁"Reinforcement Learning Cheat Sheet" I Replaced Chrome with Safari for AI Browser Automation. Here's What Broke (and What Finally Worked) How Python Borrows Other People's Work The $40 Architecture: Processing 1 Billion API Requests with 99.99% Uptime Vibe Coding: A Workflow Guide (From Zero to SaaS) Most webhook security guides protect the wrong side. The scary part is delivery. Headless CMS for TanStack Start: Build a Blog with Cosmic EU Age Verification App "Hacked in 2 Minutes" — What Actually Happened Comfy Cloud’s delete function does not actually remove files Running AI Models on GPU Cloud Servers: A Beginner Guide Event-driven media intelligence with AWS Step Functions and Bedrock I scored 500 AI prompts across 8 quality dimensions — here's what broke How to Call Google Gemini API from Next.js (Free Tier, No Backend Needed) The Portal Protocol: Reclaiming Human Connection in the Age of AI How to Fix Your Team's Scattered Knowledge Problem With a Self-Hosted Forum Intro to tc Cloud Functors: A Graph-First Mental Model for the Modern Cloud Designing Multi-Tenant Backends With Both Ownership and Team Access I Built a Neumorphic CSS Library with 77+ Components — Here's What I Learned PostgreSQL Performance Optimization: Why Connection Pooling Is Critical at Scale Cómo construí un SaaS multi-rubro para gestionar expensas en Argentina con FastAPI + Vue 3 🚀 I Built an Ethical Hacking Scanner Tool – Open Source Project I Replaced /usage and /context in Claude Code With a Single Statusline A Pythonic Way to Handle Emails (IMAP/SMTP) with Auto-Discovery and AI-Ready Design I Collected 8.9 Million Polymarket Price Points — Here's What I Found About How Markets Really Move EcoTrack AI — Carbon Footprint Tracker & Dashboard Everyone's Using AI. No One Agrees How. 5 self-hosted ebook managers worth trying in 2026 Building Your First AI Agent with LangChain: From Chatbot to Autonomous Assistant Common SOC 2 Failures (Real World) Stop Vibe-Checking Your AI App: A Practical Guide to Evals How to Use SonarQube and SonarScanner Locally to Level Up Your Code Quality Your Next To-Do App Is Dead — I Replaced Mine with an OpenClaw AI Sign a Nostr event in 60 lines of Python using coincurve — no nostr-sdk, no nbxplorer, no rust toolchain ITGC Audit Explained Like You’re in Big 4 Patch Tuesday abril 2026: Microsoft parcha 163 vulnerabilidades y un zero-day en SharePoint Stop scraping everything: a better way to track competitor price changes Listing on MCPize + the Official MCP Registry while routing payments OUTSIDE the marketplace — how I kept 100% of my x402 revenue Building an AI-Powered Risk Intelligence System Using Serverless Architecture Why We Ripped Function Overloading Out of Our AI Toolchain Testing AI-Generated Code: How to Actually Know If It Works SaaS Churn Is Killing Your Business. Here Is What to Do About It (Without a Support Team) The Speed of AI Is No Longer Linear - And Self-Improving Models Are Why How to Implement RBAC for MCP Tools: A Practical Guide for Engineering Teams From Standard Quote to Persuasive Proposal: AI Automation for Arborists I built a CLI that scaffolds complete multi-tenant SaaS apps Axios CVE-2025–62718: The Silent SSRF Bug That Could Be Hiding in Your Node.js App Right Now The dashboard that ended our friendship Data Pipelines Explained Simply (and How to Build Them with Python) The Hidden Cost of AI Systems Nobody Talks About. undefined vs undeclared, and how typeof behaves Switching from file-based jobs to NATS/Kafka in Rust without changing code io_uring Adventures: Rust Servers That Love Syscalls Why Agentic AI is Killing the Traditional Database The POUR principles of web accessibility for developers and designers Quantum Neural Network 3D — A Deep Dive into Interactive WebGL Visualization How To Install Caveman In Codex On macOS And Windows Automation Pipeline Reliability: Why Your Workflow Breaks When Nobody Is Watching I Built an 'Open World' AI Coding Agent — It Works From ANY Folder From Freelancing to Product: A Tech Service Company's SaaS Transformation China's AI Giants: Adding Tencent Hunyuan & ByteDance Doubao to AI University (74 Providers) On the Vibe Coders and Their Lies clerk: Auto-Summarize Your Claude Code Sessions AI Weekly — 2026/04/10–04/17 | The Model Lockdown Is Here, but the Toolchain Is the Real Battleground AI 週報 — 2026/04/10–2026/04/17 模型封鎖潮來了,但工具鏈才是真戰場 Maybe this is how Open-Source apps are born... 🚀 Fine-Tune LLMs with LoRA and QLoRA: 2026 Guide tRPC v11 + Next.js App Router: End-to-End Type Safety Without the Boilerplate ShadCN UI in 2026: Why I Stopped Installing Component Libraries and Started Owning My Components SaaS Billing in React Server Components: Stripe + Supabase Without a Single `useEffect` Join our DEV Weekend Challenge — $1,000 in Prizes Across TEN winners! Submissions Due April 20 at 6:59 AM UTC. Implementing FSRS Spaced Repetition in Flutter + Supabase — Adding Memory Science to an AI Learning App "I Texted My Localhost From the Train — Claude Code Fixed the Bug Before I Got Home" I Built a Sales Prep AI and It Went Deeper Than Expected Design to Code #2: One JSON, Eleven Outputs Solving the 100M-Row Problem: A Summary Table Pattern for High-Volume Push Notification Logs Flutter Web With Wasm: What Actually Changes For Developers I Built 50 Royalty-Free Soundtracks for My Side Project in a Weekend Using AI Music Generation The Vibe Coding Security Checklist: 7 Things to Check Before You Ship Stop Letting Googlebot Guess Fix Your React App's SEO Right Desconstruindo o Streaming do LinkedIn: Como Criar um Engine de Extração de Vídeo de Alta Performance com HLS e FFmpeg (EDA Part-1) EDA (Exploratory Data Analysis) Explained With Real Life — Why Looking at Your Data Is the Most Important Step in Machine Learning Brand Relationship Management at Scale: Our 4-Touch Outreach System for 200+ Brands Why String.fromEnvironment() Might Return an Empty String in Dart JGuardrails 1.0.0 — Hardening Java LLM Apps Against Jailbreaks, Toxicity, and Prompt Injection Plan and Schedule a Full Week of Threads Content From One Claude Conversation Coding Cat Oran Ep3, Five Tables Changed Everything Updated: BFF Pattern I'm done watching freelancers get buried by 200 proposals. So I'm building the alternative. This is my first post BFS Algorithm in Java Step by Step Tutorial with Examples Tracking LLM Pricing Monthly: An Open Dataset for 22 AI Models How We Measure Content ROI on a Comparison Site: Revenue Attribution Without Perfect Data Introducing Nova AI Ops: The AI-Native Operating System for SRE Teams I built a free desktop video downloader for Windows — Grabbit How Talkie OCR Helps Vision-Impaired & Dyslexic Users Read the World Around Them VRCFaceTracking安装和iPhone面捕配置教程,有bug Even CrowdStrike Can't See Your Agents The Automation Gold Rush: What n8n Workflows and Claude Are Opening Up for Developers Right Now
Data Warehouses, Data Marts, Data Lakes, and Lakehouses - Explained Like You’re Building Them in Real Life
Anthony Gich · 2026-05-03 · via DEV Community

If you’ve been around data engineering long enough, you’ve probably heard these terms thrown around in meetings:

  • “Just dump it in the data lake”
  • “We’ll expose it through the warehouse”
  • “That goes into the mart”
  • “We’re moving to a lakehouse architecture”

And honestly… it can sound like four different ways of saying the same thing.

They’re not.

Each one solves a slightly different problem in the data ecosystem. Once you understand the “why” behind each, the architecture suddenly feels a lot less like buzzwords and more like a clean system design.

Let’s break it down in a practical, engineer-first way.


1. The Big Picture (Why all these systems exist)

In most companies, data doesn’t come from one place — it flows in from everywhere:

  • User clicks from web/mobile apps
  • Payments and transactions
  • Logs from servers
  • Third-party APIs (Stripe, Shopify, etc.)
  • IoT or streaming data (Kafka, sensors, etc.)

Now here’s the problem:

Raw data is messy. Business users don’t want messy.

So we build systems that progressively refine data from:

Raw → Clean → Structured → Business-ready

That’s where these four concepts come in:

  • Data Lake → store everything raw
  • Data Warehouse → structured analytics-ready data
  • Data Mart → department-specific slices of warehouse data
  • Lakehouse → hybrid of lake + warehouse

2. Data Lake — “Store everything first, figure it out later”

A data lake is basically a massive storage system where you dump raw data in its original format.

Think of it like:

A giant warehouse where you throw every box in as-is, without opening it.
Or even better: a farm storage system where everything is stored right after harvest, unprocessed and mixed together.

Characteristics:

  • Stores structured, semi-structured, and unstructured data
  • Cheap storage (usually object storage like S3)
  • Schema is applied when reading, not writing (schema-on-read)

Example tools:

  • Amazon S3
  • Azure Data Lake Storage
  • Google Cloud Storage

Example:

You might store:

/events/clicks/2026/05/01.json
/logs/api/2026/05/01.log
/payments/stripe/2026/05/01.parquet

Enter fullscreen mode Exit fullscreen mode

No transformations. No enforcement. Just storage.

Here’s the catch:

If you’re not careful, a data lake becomes a data swamp — lots of data, zero usability.


3. Data Warehouse — “Clean, structured, and business-ready”

A data warehouse is where data goes after it has been cleaned, transformed, and modeled for analytics.

Think of it like:

A well-organized supermarket where everything is cleaned, packaged, labeled, and placed on the right shelves.
You don’t pick raw potatoes from the soil — you get them washed, sorted, and priced.

Characteristics:

  • Structured data only
  • Schema-on-write (you define structure before loading)
  • Optimized for analytics queries (OLAP systems)
  • Highly curated and trustworthy

Example tools:

  • Amazon Redshift
  • Snowflake
  • Google BigQuery

Typical workflow:

  1. Extract data from sources
  2. Transform (clean, join, aggregate)
  3. Load into warehouse tables

Example SQL model:

CREATE TABLE sales_fact (
    order_id INT,
    customer_id INT,
    product_id INT,
    amount DECIMAL(10,2),
    order_date DATE
);

Enter fullscreen mode Exit fullscreen mode

Now business analysts can run queries like:

SELECT product_id, SUM(amount)
FROM sales_fact
GROUP BY product_id;

Enter fullscreen mode Exit fullscreen mode


4. Data Marts — “Department-specific mini warehouses”

A data mart is a subset of a data warehouse focused on a specific business domain.

Think of it like:

A grocery store or specialty shop — like a bakery, butcher, or vegetable shop.
It doesn’t sell everything. It only sells what its customers actually need.

Characteristics:

  • Smaller scope than a warehouse
  • Built for a specific team (finance, marketing, sales)
  • Faster queries for targeted use cases

Example:

A marketing data mart might include:

  • Campaign performance
  • Customer acquisition metrics
  • Ad spend data

Example structure:

CREATE TABLE marketing_campaign_performance AS
SELECT
    campaign_id,
    SUM(clicks) AS total_clicks,
    SUM(impressions) AS total_impressions
FROM ad_events
GROUP BY campaign_id;

Enter fullscreen mode Exit fullscreen mode

Why it exists:

Instead of everyone querying a massive warehouse, teams get pre-optimized datasets.


5. Data Lakehouse — “Best of both worlds”

Now this is where things get interesting.

A lakehouse combines:

  • The flexibility of a data lake
  • The structure and performance of a data warehouse

Think of it like:

A modern retail system where the warehouse and supermarket are combined into one smart facility.
Raw goods arrive, but they are immediately tracked, organized, and made queryable without losing flexibility.

Characteristics:

  • Uses low-cost storage (like a lake)
  • Adds structure, ACID transactions, and governance
  • Supports both analytics and ML workloads

Example tools:

  • Apache Spark + Delta Lake
  • Apache Iceberg
  • Apache Hudi

Why it matters:

In traditional setups:

  • Data lakes = flexible but messy
  • Warehouses = clean but expensive and rigid

Lakehouses try to remove that tradeoff.


6. How They Work Together (Real Architecture Flow)

A modern data pipeline often looks like this:

[ Data Sources ]
      ↓
   DATA LAKE (raw storage)
      ↓
ETL / ELT pipelines (Airflow, Spark)
      ↓
DATA WAREHOUSE (modeled data)
      ↓
DATA MARTS (team-specific views)
      ↓
Dashboards / BI tools

Enter fullscreen mode Exit fullscreen mode

Or in a lakehouse setup:

[ Data Sources ]
      ↓
DATA LAKEHOUSE (single system)
      ↓
BI + ML + Analytics directly

Enter fullscreen mode Exit fullscreen mode


7. Practical Example (Mini Pipeline)

Let’s say we’re processing e-commerce data.

Step 1: Raw data in S3 (Data Lake)

{
  "order_id": 101,
  "user_id": 55,
  "amount": 250,
  "timestamp": "2026-05-01T10:00:00Z"
}

Enter fullscreen mode Exit fullscreen mode

Step 2: Spark transformation

from pyspark.sql import SparkSession

spark = SparkSession.builder.appName("etl").getOrCreate()

df = spark.read.json("s3://datalake/raw/orders/")

clean_df = df.dropna() \
             .withColumnRenamed("amount", "order_amount")

clean_df.write.mode("overwrite").parquet("s3://warehouse/sales_fact/")

Enter fullscreen mode Exit fullscreen mode

Step 3: Load into warehouse (Redshift example)

COPY sales_fact
FROM 's3://warehouse/sales_fact/'
IAM_ROLE 'arn:aws:iam::123456:role/RedshiftRole'
FORMAT AS PARQUET;

Enter fullscreen mode Exit fullscreen mode

Step 4: Create a data mart

CREATE TABLE sales_summary AS
SELECT
    DATE(order_date) AS date,
    SUM(order_amount) AS revenue
FROM sales_fact
GROUP BY DATE(order_date);

Enter fullscreen mode Exit fullscreen mode


8. Common Pitfalls (Where most teams mess up)

1. Turning the data lake into a swamp

Dumping everything without metadata or structure leads to chaos.

2. Over-modeling too early

Trying to build perfect schemas upfront slows everything down.

3. Duplicating logic across marts

You end up with inconsistent metrics like “Revenue_v1”, “Revenue_final”, “Revenue_real_final”.

4. No governance layer

Without access control and cataloging, nobody trusts the data.


9. Best Practices (From real-world systems)

1. Use layered architecture

  • Raw (lake)
  • Cleaned (staging)
  • Modeled (warehouse)
  • Aggregated (marts)

2. Standardize transformations

Use tools like:

  • dbt
  • Apache Airflow
  • Spark jobs with clear ownership

3. Define a single source of truth

One metric definition per business KPI. No duplicates.

4. Treat data like software

Version it, test it, document it.

5. Monitor everything

  • Pipeline failures
  • Data freshness
  • Schema changes

10. Conclusion — The mental model that matters

If you strip away the jargon, it’s really simple:

  • Data Lake → store everything
  • Data Warehouse → clean and organize it
  • Data Mart → tailor it for teams
  • Lakehouse → unify storage and analytics

The real skill in data engineering isn’t memorizing definitions.

It’s knowing:

When to keep data raw, when to structure it, and when to specialize it.

Once that clicks, designing data systems becomes a lot more intuitive — and honestly, more fun to build.