#Data Processing Explained

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#Data Processing Explained Reel by @sundaskhalidd (verified account) - Comment 'Projects' to get 5 Data Scientist Project ideas and a plan 👩🏻‍💻

♻️ repost to share with friends. Here is how to become a data scientist i
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@sundaskhalidd
Comment ‘Projects’ to get 5 Data Scientist Project ideas and a plan 👩🏻‍💻 ♻️ repost to share with friends. Here is how to become a data scientist in 2026 and beyond 📈 the original video was 4 min Andi had to cut it down to 3 because instagram. Should I do a part 3v what are other skills that you would add to the list and let me know what I should cover in the next video 👩🏻‍💻 #datascientist #datascience #python #machinelearning #sql #ai
#Data Processing Explained Reel by @askdatadawn (verified account) - This is the EXACT order I would learn Data Science in 2026.

Hi 😊 my name is Dawn. I've been a Data Scientist at Meta, Patreon and other startups. An
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@askdatadawn
This is the EXACT order I would learn Data Science in 2026. Hi 😊 my name is Dawn. I’ve been a Data Scientist at Meta, Patreon and other startups. And have coached 20+ clients into landing their dream Data jobs in the past year. 1️⃣ Learn SQL SQL is a must-have skill for every data professional because it’s the primary way you get data OUT of a database. It’s also a very easy coding language to learn, so I would start there. Use Interview Master to learn and practice SQL (link in bio): → Learn SQL: www.interviewmaster.ai/content/sql → Practice SQL: www.interviewmaster.ai/home 2️⃣ Start building Product Sense & Business Sense Product sense & business sense basically means you know how to use Data to solve real problems. I would start building this “soft” skill early because (1) it takes time to really learn this, and (2) as you’re learning Stats and Python, you already have context on how these might be used in the real world. I found the book: Cracking the PM Career to be super helpful before I landed my first Data Science job. 3️⃣ Learn Statistics How much Stats do you need for Data Science? Just the foundations, but you need to know it really really well. → Descriptive statistics → Common distributions → Probability and Bayes’ Theorem → Basic Machine Learning models → Experimentation concepts → A/B experiment design Check out Stanford’s Introduction to Statistics, which is free on Coursera. 4️⃣ Learn Python Python is the #1 skill for Data Scientists in 2025, but I put it 4th on this list because I find that it builds on skills 1-3. I learned Python on my own using DataCamp’s Python Data Fundamentals (link in bio). 5️⃣ Use AI-assisted coding tools Many data scientists are already using tools, like Claude Code & Cursor, to 2x their productivity. And also many companies are evaluating you on your use of AI during interviews. #datascience #datascientist
#Data Processing Explained Reel by @data_pumpkin - In my first years as a data scientist, I wasted hours on broken SQL, slow pandas scripts, messy Flask deployments, and "works on my machine" chaos.

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@data_pumpkin
In my first years as a data scientist, I wasted hours on broken SQL, slow pandas scripts, messy Flask deployments, and “works on my machine” chaos. These 4 tools fixed that: • dbt → modular, documented SQL transformations • Polars → faster, cleaner alternative to pandas • FastAPI → quick, reliable model deployment • Docker → consistent environments, no more deployment nightmares If you’re just starting out, learning these early will save you months of frustration.
#Data Processing Explained Reel by @machgorithm - Types of Data Structure
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Video by @codingwithjd 
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#coding #cppproject #cplusplusprogramming #codinglife #codingbootcamp #codingisfun #codingninj
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@machgorithm
Types of Data Structure . Video by @codingwithjd . . . #coding #cppproject #cplusplusprogramming #codinglife #codingbootcamp #codingisfun #codingninjas #coder #coderlife #coderslife #codersofinstagram #programming #programmingproblems #programmers #codingdays #codingchallenge #assembly #instagramgrowth #asciiart #cmd #cmdprompt #batchprocessing #aiartcommunity #artificialintelligence #deepseek #openai #meta #metaverse
#Data Processing Explained Reel by @kreggscode (verified account) - Visualizing the architecture of intelligence. 🕸️✨
Every neural network is built on the same fundamental concept: Layers.
🟡 Input Layer: Receives the
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@kreggscode
Visualizing the architecture of intelligence. 🕸️✨ Every neural network is built on the same fundamental concept: Layers. 🟡 Input Layer: Receives the raw data (pixels, text, numbers). 🟢 Hidden Layers: Where the magic happens—processing features and finding patterns. 🟠 Output Layer: Delivers the final prediction or decision. From the simple Perceptron to the complex loops of an RNN, these structures are the blueprints for how machines learn. 📐 #NeuralNetworks #MachineLearning #DeepLearning #DataScience #AI #Education #Visualized
#Data Processing Explained Reel by @chrisoh.zip - The best projects serve a real use case

Comment "data" for all the links and project descriptions

#tech #data #datascience #ml #explore
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@chrisoh.zip
The best projects serve a real use case Comment “data” for all the links and project descriptions #tech #data #datascience #ml #explore
#Data Processing Explained Reel by @side_end_developer__ (verified account) - Ever wondered where 90GB of data "disappears" when you ZIP a file? 🤔

I used to think compression was magic until I learned what actually happens ins
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@side_end_developer__
Ever wondered where 90GB of data “disappears” when you ZIP a file? 🤔 I used to think compression was magic until I learned what actually happens inside that .zip file.
 Your 100GB folder becomes 10GB in seconds, but here’s the thing - not a single bit is deleted.
 ZIP uses 2 brilliant algorithms working together:
 1. LZ77 - Finds repeated patterns in your data. Instead of writing “Machine Learning” 500 times, it creates a dictionary: 1 = “Machine Learning” and just writes 1 everywhere. One phrase stored, referenced hundreds of times. 2. Huffman Coding - The letter ‘E’ appears way more than ‘Z’ in English. So why give both 8 bits? Huffman gives ‘E’ just 2 bits and ‘Z’ gets 7 bits. Frequent data = shorter code. Math that just makes sense.
 Together they form DEFLATE - the engine that powers every ZIP file you’ve ever created.
 When you unzip? The header contains the entire dictionary. Computer reads it, decodes every reference, and boom - exact original file. Zero data loss. Perfect restoration.
 That’s the beauty of lossless compression - smarter storage, not data deletion. Drop a 🔥 if this made sense, and tell me - what should I explain next? #collegestudents #howthingswork #technology #algorithms #viralreels
#Data Processing Explained Reel by @the.datascience.gal (verified account) - Here's a roadmap to help you go from a software engineer to a data scientist 👩‍💻 👇

If you're tired of writing vanilla apps and want to build ML sy
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@the.datascience.gal
Here’s a roadmap to help you go from a software engineer to a data scientist 👩‍💻 👇 If you’re tired of writing vanilla apps and want to build ML systems instead, this one’s for you. Step 1 – Learn Python and SQL (not Java, C++, or JavaScript). → Focus on pandas, numpy, scikit-learn, matplotlib → For SQL: use LeetCode or StrataScratch to practice real-world queries → Don’t just write code—learn to think in data Step 2 – Build your foundation in statistics + math. → Start with Practical Statistics for Data Scientists → Learn: probability, hypothesis testing, confidence intervals, distributions → Brush up on linear algebra (vectors, dot products) and calculus (gradients, chain rule) Step 3 – Learn ML the right way. → Do Andrew Ng’s ML course (Deeplearning.ai) → Master the full pipeline: cleaning → feature engineering → modeling → evaluation → Read Elements of Statistical Learning or Sutton & Barto if you want to go deeper Step 4 – Build 2–3 real, messy projects. → Don’t follow toy tutorials → Use APIs or scrape data, build full pipelines, and deploy using Streamlit or Gradio → Upload everything to GitHub with a clear README Step 5 – Become a storyteller with data. → Read Storytelling with Data by Cole Knaflic → Learn to explain your findings to non-technical teams → Practice communicating precision/recall/F1 in simple language Step 6 – Stay current. Never stop learning. → Follow PapersWithCode (it's now sun-setted, use huggingface.co/papers/trending, ArXiv Sanity, and follow ML practitioners on LinkedIn → Join communities, follow researchers, and keep shipping new experiments ------- Save this for later. Tag a friend who’s trying to make the switch. [software engineer to data scientist, ML career roadmap, python for data science, SQL for ML, statistics for ML, data science career guide, ML project ideas, data storytelling, becoming a data scientist, ML learning path 2025]
#Data Processing Explained Reel by @techcoachtanuja - DATA Migration Process from CHATGPT to CLAUDE AI

#claudeai 
#datamigration
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@techcoachtanuja
DATA Migration Process from CHATGPT to CLAUDE AI #claudeai #datamigration
#Data Processing Explained Reel by @marytheanalyst - I won't be mad if you copy this entire roadmap…

#dataanalyst #dataanalysis #dataanalytics #data #analyst #techjobs #breakintotech #wfh #workfromhome
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@marytheanalyst
I won’t be mad if you copy this entire roadmap… #dataanalyst #dataanalysis #dataanalytics #data #analyst #techjobs #breakintotech #wfh #workfromhome #wfhjobs #remotejobs #remotework #excel #sql #tableau #python
#Data Processing Explained Reel by @dailymathvisuals - The Kernel Trick explained in 75 seconds ✨

 Ever wondered how machine learning separates data that seems impossible to separate?

 Here's the secret:
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@dailymathvisuals
The Kernel Trick explained in 75 seconds ✨ Ever wondered how machine learning separates data that seems impossible to separate? Here's the secret: → In 2D, no line can separate this data → But lift it into 3D... → A simple plane does the job perfectly This is why Support Vector Machines are so powerful 🧠 Save this for later 🔖 — Follow @dailymathvisuals for daily ML & math visualizations #machinelearning #artificialintelligence #datascience #python #coding #svm #kerneltrick #ai #tech #programming #learnwithreels #educationalreels #mathvisualization #deeplearning #engineering
#Data Processing Explained Reel by @vee_daily19 (verified account) - If you want to crack Data Science jobs in the next 30 days, here's the three step process which you will follow which literally no one talks about.
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@vee_daily19
If you want to crack Data Science jobs in the next 30 days, here’s the three step process which you will follow which literally no one talks about. . . . #datascience #data #interview

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