#Datalake Datawarehouse

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#Datalake Datawarehouse Reel by @randyjrouse - The most expensive part of a data lake?

When you skip the curation layer.

Today's video: the simple 3‑layer lifecycle that keeps lakes from becoming
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RA
@randyjrouse
The most expensive part of a data lake? When you skip the curation layer. Today’s video: the simple 3‑layer lifecycle that keeps lakes from becoming swamps. #DataArchitecture #DataEngineering #Governance @questsoftware #erwin
#Datalake Datawarehouse Reel by @she_explores_data - Most people use terms like Data Lake, Data Warehouse, and Data Mesh interchangeably. They are not the same.

Each concept solves a different architect
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@she_explores_data
Most people use terms like Data Lake, Data Warehouse, and Data Mesh interchangeably. They are not the same. Each concept solves a different architectural challenge. Storage. Structuring. Domain ownership. Movement of data. Monitoring. Reliability. If you understand how these pieces fit together, you stop memorizing definitions and start thinking like a data architect. Clear concepts lead to better system design, stronger interview answers, and more confident technical conversations. [Data Lake, Data Warehouse, Data Mart, Data Mesh, Data Pipeline, Data Observability, Data Quality, Data Engineering, Business Intelligence, Analytics, ETL, ELT, Data Modeling, Cloud Data, Big Data, SQL, Python, Data Governance, Metadata, Data Monitoring, Data Reliability, Enterprise Data, Analytics Engineering, Dashboarding, Reporting] #DataEngineering #DataAnalytics #BusinessIntelligence #DataArchitecture #BigData
#Datalake Datawarehouse Reel by @data_engineer_academy - Think $200K is the ceiling for data engineers?

That's what most people believe… until they see the real numbers.

Top data engineers aren't just work
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@data_engineer_academy
Think $200K is the ceiling for data engineers? That’s what most people believe… until they see the real numbers. Top data engineers aren’t just working at FAANG. They’re building revenue-driving data systems at companies like Databricks, Netflix, Stripe, Nvidia, Snowflake, and ByteDance — and earning $450K–$500K+ in total comp. The pattern? When data = revenue, engineers = leverage. And leverage = higher pay. If you want to break past the “average salary” mindset, you need: • Strong system design • Production-level data infra experience • Business impact (not just dashboards) • The ability to operate at scale The ceiling is way higher than most people think. If u want to become a high paid data engineer, comment data engineer
#Datalake Datawarehouse Reel by @data_master_consulting - Still confused about Databricks?

Most people overcomplicate it.

It's simply a unified Data + AI platform built on Lakehouse architecture - combining
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@data_master_consulting
Still confused about Databricks? Most people overcomplicate it. It’s simply a unified Data + AI platform built on Lakehouse architecture — combining Data Lake and Data Warehouse in one system. If you’re in: • Data Engineering • Data Science • AI • Analytics You NEED to understand this. Follow for more Data & AI breakdowns. Full tutorials on YouTube (Link in bio). Save this for later 🚀 #techexplained #datacareer #databricks #machinelearning #dataengineering
#Datalake Datawarehouse Reel by @dataanalystduo (verified account) - Most people ask the wrong question.

It's not
"Which role pays more?"
or
"Which one is more advanced?"

The real difference between a Data Analyst, Da
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@dataanalystduo
Most people ask the wrong question. It’s not “Which role pays more?” or “Which one is more advanced?” The real difference between a Data Analyst, Data Engineer, and Data Scientist is 👉 where you sit in the data lifecycle and what decisions you are responsible for. Here’s the clean breakdown — no hype, no buzzwords. A Data Analyst answers: “What happened, why did it happen, and what should we do next?” They work closest to business teams. They query data, build dashboards, analyze trends, cohorts, funnels, KPIs — and most importantly, interpret results so decisions can be made. If you only write SQL and build charts without insights, you’re replaceable. Good analysts are valued for thinking, not querying. A Data Engineer answers: “How do we get the right data, reliably, at scale, every single day?” They build pipelines, data warehouses, ETL/ELT flows, and infrastructure. They work with databases, cloud systems, orchestration tools, performance tuning. No dashboards. No storytelling. If pipelines fail, everyone is blocked — analysts and scientists included. A Data Scientist answers: “Can we predict this, automate this, or optimize this decision?” They build models, run experiments, forecast outcomes, and work with uncertainty. Their world is statistics, probability, machine learning, and validation. Hard truth: If data quality is bad or there’s no real business use case, even the best model is useless. Many so-called “data scientist” roles are actually advanced analyst roles. The brutal reality nobody tells you: These are not levels of the same job. You don’t automatically “grow” from Analyst → Scientist. They are different career tracks. Most companies need: 10 Data Analysts 3 Data Engineers 1 Data Scientist Choose your role based on: • Business thinking vs systems thinking vs math thinking • What kind of problems you enjoy solving • Not Instagram salary reels or fancy titles Tools don’t define you. Your responsibility in the decision-making chain does. This is the difference between learning tools and thinking like a data professional. #dataanalystduo
#Datalake Datawarehouse Reel by @sahirmaharaj_ (verified account) - Great models don't start with algorithms - they start with clean architecture.

I use a medallion approach inside Fabric Lakehouses:

- Bronze: Raw in
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@sahirmaharaj_
Great models don’t start with algorithms - they start with clean architecture. I use a medallion approach inside Fabric Lakehouses: - Bronze: Raw ingested data - Silver: Cleaned, validated, and conformed - Gold: Aggregated, business-ready, and model-ready features This separation makes pipelines easier to debug, govern, and scale. When something breaks, I always know which layer to inspect. And when stakeholders need new features, I know exactly where to derive them without contaminating raw data. 𝗧𝗶𝗽: Keep transformations between layers declarative and documented - it makes audits and lineage reviews trivial. #MicrosoftFabric #Lakehouse #MedallionArchitecture #DataEngineering #MLOps #Analytics #DataScience #Kaggle
#Datalake Datawarehouse Reel by @spooky_joon - .
.

Choosing a career in data but not sure which path fits you? 🤔

Here's a simple breakdown of Data Analyst, Data Scientist, and Data Engineer. Thr
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@spooky_joon
. . Choosing a career in data but not sure which path fits you? 🤔 Here’s a simple breakdown of Data Analyst, Data Scientist, and Data Engineer. Three roles that work together to turn raw data into real impact. 📊 Analysts turn data into insights 🧠 Scientists build models & predictions ⚙️ Engineers build the systems that make it all possible There’s no “best” role, only the one that matches your skills and interests ✨ I’m exploring my journey in data and learning something new every day 🙌 Which role are you most interested in? #dataanalyst #datascience #dataengineer #spookyjoon #joonlearns
#Datalake Datawarehouse Reel by @datascopic (verified account) - Most aspiring Data Analysts are preparing the wrong way.

They chase tools.
They collect certificates.
They jump from SQL to Python to Power BI to Clo
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@datascopic
Most aspiring Data Analysts are preparing the wrong way. They chase tools. They collect certificates. They jump from SQL to Python to Power BI to Cloud. But tools are common. Thinking is rare. In 2026, AI will generate dashboards. It will write basic queries. It will automate reports. What it won’t automate: • Understanding business context • Asking better questions • Connecting numbers to revenue • Explaining impact clearly If your value is syntax, you’re replaceable. If your value is insight, you’re not. Build depth. Build proof. Build thinking. - DataScopic If you’re serious about becoming a high-value analyst - check the bio. #datascopic #dataanalytics #datacareer #sql #datascience businessintelligence
#Datalake Datawarehouse Reel by @itsallbout_data - Building a big data pipeline can feel like trying to assemble IKEA furniture without the manual-until you see it laid out like this. 🏗️💻
Whether you
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@itsallbout_data
Building a big data pipeline can feel like trying to assemble IKEA furniture without the manual—until you see it laid out like this. 🏗️💻 Whether you’re team AWS, Azure, or GCP, this is your ultimate roadmap from raw ingestion to final presentation. Save this so you never have to second-guess which service handles your ETL ever again! The Cheat Sheet Breakdown: * Ingestion: Getting the data in the door (Lambda, IoT Hub, Pub/Sub). * Data Lake: Storing it all in its raw glory (S3, Data Lake Store, Cloud Storage). * Computation: The heavy lifting & ML (SageMaker, Databricks, BigQuery). * Warehouse: Organizing for the win (RedShift, SQL, BigTable). * Presentation: Turning numbers into narratives (QuickSight, Power BI, DataLab). Which cloud provider are you currently building on? Let’s settle the debate in the comments! 👇 #BigData #DataEngineering #CloudComputing #AWS #Azure [GCP DataScience TechTips ByteByteGo CodingLife SoftwareArchitecture DataPipeline]
#Datalake Datawarehouse Reel by @itsdatagirl - Know your customer. Who is this data for?

Before I build any dataset, I ask one thing: Who's going to use it?

Because the "customer" determines ever
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@itsdatagirl
Know your customer. Who is this data for? Before I build any dataset, I ask one thing: Who’s going to use it? Because the “customer” determines everything: structure, complexity, even data types. Data for Analysts & Data Scientists → easy to query → no unnecessary complexity → minimal exotic types Data for Data Engineers → compact → nested structures are fine → optimization matters Data for ML models → depends on the model → feature structure > human readability Data for Clients / non-technical stakeholders → straightforward → clean & interpretable → easy to trust Same raw data. Very different design choices. Data modeling isn’t just technical work. It’s context work. Would you agree? #dataengineering #datamodeling #analyticsengineering #machinelearning #100daysofdataship
#Datalake Datawarehouse Reel by @dswithdennis (verified account) - Combine charts and narratives for compelling data reports
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@dswithdennis
Combine charts and narratives for compelling data reports
#Datalake Datawarehouse Reel by @muskan.khannaa - The projects you build decide whether you get shortlisted or ignored.

A lot of you commented "PROJECT" on my last reel.
So here it is.

If I were swi
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@muskan.khannaa
The projects you build decide whether you get shortlisted or ignored. A lot of you commented “PROJECT” on my last reel. So here it is. If I were switching to data engineering today especially from testing or a non-DE background these are the kinds of projects I’d build. Not random tutorials. Not copy-paste GitHub stuff. Real problems. Real signals. Real interviews. This even covers a project close to testing which helps bridge the gap in the switch to DE. Comment “PROJECT” to get the complete guide in your DM. . . . . . [data engineering projects, switching to data engineering, testing to data engineer, data engineer roadmap, data engineering resume] #dataengineering #dataengineer

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