#Erwin Data Modeler Tutorials

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#Erwin Data Modeler Tutorials Reel by @code_helping - Using an Arduino and the MPU6050 accelerometer, this project shows how real-world movement can control a 3D model on screen, in real-time! 
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#codin
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@code_helping
Using an Arduino and the MPU6050 accelerometer, this project shows how real-world movement can control a 3D model on screen, in real-time! . . #coding #tech #programming #python #java #softwaredeveloper #engineering #softwaredevelopment #mpu6050 #accelerometer #3dmodel #arduino #computerscience #modelling #code #programmers
#Erwin Data Modeler Tutorials Reel by @evotionai - I think GLM 4.5 won this round🧐. Prompt: "Create a 2D Eulerian fluid simulator in a single HTML file using JavaScript and the Canvas API. The simulat
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@evotionai
I think GLM 4.5 won this round🧐. Prompt: “Create a 2D Eulerian fluid simulator in a single HTML file using JavaScript and the Canvas API. The simulation should visualize the flow of incompressible and inviscid (zero-viscosity) fluids on a fixed grid. A constant stream of smoke should enter from a tube on the left side of the canvas, and the flow must interact with a circular obstacle placed in its path.” #ai #artificialinteligence #evotionai #testingai #generativeai #claudevsgpt #gpt5 #claude #programming #chatgpt
#Erwin Data Modeler Tutorials Reel by @jessramosdata (verified account) - comment "AI" for my full synthetic data tutorial Youtube video! save for later & follow for more!

You can customize any dataset for any industry, bus
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@jessramosdata
comment “AI” for my full synthetic data tutorial Youtube video! save for later & follow for more! You can customize any dataset for any industry, business problem, or project and get way more interesting data than Kaggle. Plus, you can ask for imperfect data with inconsistent values, duplicates, or nulls to make it feel more realistic to the real world. You just have to know how to specify your requirements and constraints when prompt engineering. Here’s what you should specify: ✨ size of dataset(s) (rows / columns) ✨ column names and data types ✨ primary keys and foreign keys ✨ distribution and allowed values ✨ variation of datapoints ✨ downloadable as CSVs ✨ anything else that may impact your project! Full example below: You are a data engineer generating a realistic synthetic dataset for [INDUSTRY] and [PROJECT TYPE OR PURPOSE].Can you generate [NUMBER] realistic datasets with the following requirements.Create an [TABLE NAME] table with [ROW COUNT] rows and columns: [LIST REQUIRED COLUMNS], plus any additional realistic columns you think would be useful. [PRIMARY KEY] is the primary key. [FOREIGN KEY 1] and [FOREIGN KEY 2] are foreign keys that connect to the [RELATED TABLE NAME] table. Ensure that [NUMBER] foreign key values exist in the related table but do not appear in this table (to simulate missing relationships).Create a [DIMENSION TABLE NAME] table with [ROW COUNT] rows and columns: [LIST REQUIRED COLUMNS], plus any additional realistic columns. [PRIMARY KEY] is the primary key and connects to the first table. Ensure that [NUMBER] records in this table have no matching rows in the first table.For both tables, include high variation across values, non-even category distributions, and realistic data patterns. All ID fields should be random numeric values only (no letters).[Add in any other requirements, constraints, or behavior rules]Return each table as a separate, downloadable CSV file. Have you tried this hack and said goodbye to Kaggle yet?
#Erwin Data Modeler Tutorials Reel by @akashcode.ai - Generative AI feels complex.
It's not.

You only need to understand two things:

Embeddings and vector databases.

Embeddings convert text into number
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@akashcode.ai
Generative AI feels complex. It’s not. You only need to understand two things: Embeddings and vector databases. Embeddings convert text into numbers called vectors. Text with similar meaning gets similar vectors. That’s why “dog” and “puppy” are close to each other even though the words are different. Vector databases store these vectors and help find the most relevant information fast. When you ask a question: • your question becomes a vector • similar vectors are retrieved • that data is given to the LLM • the answer is generated from real documents This is how systems avoid hallucinations. Instead of guessing, the model is grounded in your data. It’s like giving someone a textbook before asking them to answer. If you understand embeddings and vector databases, you understand generative AI. Everything else is built on top of this. Save this. #genai #llm #embeddings #vectordatabase #rag
#Erwin Data Modeler Tutorials Reel by @dhanyindraswara (verified account) - Data modeling in Power BI is like building a "map" for your data so tables can talk to each other. With the right relationships (for example, using a
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@dhanyindraswara
Data modeling in Power BI is like building a “map” for your data so tables can talk to each other. With the right relationships (for example, using a Product Key), your visuals become more accurate, structured, and easier to analyze. When the data structure is solid, Power BI from Microsoft isn’t just about good-looking dashboards, it delivers real insights. #PowerBI #DataModeling #BusinessIntelligence
#Erwin Data Modeler Tutorials Reel by @halo.christo - Kalian sebel ga sih sama orang yang ngeshare tutor setengah-setengah suruh pake komen-komen segala?  Eh ujung-ujungnya suruh bayar. 🫩😡

Apa lagi sek
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@halo.christo
Kalian sebel ga sih sama orang yang ngeshare tutor setengah-setengah suruh pake komen-komen segala? Eh ujung-ujungnya suruh bayar. 🫩😡 Apa lagi sekarang ada banyak Anomali Tutor Render sekali klik pake Gemini. Padahal gampang bikin-nya cui Wkwkwk Mending buat sendiri pake Gems di Gemini, tinggal copy-paste instruksi, beres! Hemat waktu, hasil tetap konsisten. 🔥 Instruksi ada di Kolom Komen ya ! 😎 Awesome design by @mondododo @dformco #rendergangsta #AITips #GeminiGems 3DRender TechTutorial
#Erwin Data Modeler Tutorials Reel by @heysirio (verified account) - Gemini 2.5 Pro Preview 05-06 is the worlds best coding AI tool in my opinion. 

It can fully analyze videos and it can build apps from your words or d
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@heysirio
Gemini 2.5 Pro Preview 05-06 is the worlds best coding AI tool in my opinion. It can fully analyze videos and it can build apps from your words or drawings in ONE GO. Literally. Zero code. Just explain and sketch your app idea and upload the video. It is cheaper than GPT-4 and has 1 million + token context (that would mean around 700.000 words, or almost 1h of video) It’s now live on Google studio for ABSOLUTELY FREE. Also, drop “Canada” if you want to try out what I built with it 🫡
#Erwin Data Modeler Tutorials Reel by @edhonour (verified account) - Vector embedding with local models is actually very easy. /api/embed
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@edhonour
Vector embedding with local models is actually very easy. /api/embed
#Erwin Data Modeler Tutorials Reel by @woman.engineer (verified account) - 🚀There are many types of generative models, handling different data modalities across various domains. #generativeai

📌Text-to-text: Models that gen
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@woman.engineer
🚀There are many types of generative models, handling different data modalities across various domains. #generativeai 📌Text-to-text: Models that generate text from input text, like conversational agents. Ex- amples: LLaMa 2, GPT-4, Claude, and PaLM 2. 📌Text-to-image: Models that generate images from text captions. Examples: DALL-E 2, Stable Diffusion, and Imagen. 📌Text-to-audio: Models that generate audio clips and music from text. Examples: Jukebox, AudioLM, and MusicGen. 📌Text-to-video: Models that generate video content from text descriptions. Example: Phenaki and Emu Video. 📌Text-to-speech: Models that synthesize speech audio from input text. Examples: WaveNet and Tacotron. 📌Speech-to-text: Models that transcribe speech to text [also called Automatic Speech Recognition (ASR)]. Examples: Whisper and SpeechGPT. 📌Image-to-text: Models that generate image captions from images. Examples: CLIP and DALL-E 3. 📌Image-to-image: Applications for this type of model are data augmentation such as su- per-resolution, style transfer, and inpainting. 📌Text-to-code: Models that generate programming code from text. Examples: Stable Dif- fusion and DALL-E 3. 📌Video-to-audio: Models that analyze video and generate matching audio. Example: Soun- dify. . . . #datascience #researchpaper #womeninstem #datascientist #dataanalyst #machinelearningengineer #datasciencetools #datascienceeducation #machinelearningalgorithms #deeplearningmachine #datadriven #dataanalytics #dataset #machinelearning #deeplearning #computervision #naturallanguageprocessing #largelanguagemodels #sql
#Erwin Data Modeler Tutorials Reel by @insightforge.ai - Overfitting occurs when a model memorizes the training data too precisely, including its noise and randomness, instead of learning the general underly
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@insightforge.ai
Overfitting occurs when a model memorizes the training data too precisely, including its noise and randomness, instead of learning the general underlying pattern. Imagine fitting curves to data points that roughly follow a parabolic shape. A linear model is too basic. Since it can’t capture the curve, it underfits, resulting in high error on both training and test data. A quadratic model reflects the true structure of the data, producing low training and test error - this is the right balance. But if you move to a cubic model, it may warp itself to pass exactly through every training point. This gives extremely low training error, but it fails to generalize. On new data, the predictions swing too much, causing high test error. That behavior is overfitting: great performance on data the model has seen, poor performance on data it hasn’t. C: Welch Labs #machinelearning #deeplearning #datascience #python #programming #computerscience #tech #coding #pythonprogramming #datascientist
#Erwin Data Modeler Tutorials Reel by @ihtesham.ai (verified account) - Gemini can now turn a paper sketch into a 3D printable file.

Not an image. Not a description. An actual production-ready file.

Engineers prototype w
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@ihtesham.ai
Gemini can now turn a paper sketch into a 3D printable file. Not an image. Not a description. An actual production-ready file. Engineers prototype without CAD. Makers go from napkin to object. The gap between idea and physical thing just got a lot smaller. Deep Think → available now for Google AI Ultra subscribers. What are you building first? 👇 #ai #gemini #3dprint #aitools

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Instagramには#Erwin Data Modeler Tutorialsの下にthousands of件の投稿があり、プラットフォームで最も活気のあるビジュアルエコシステムの1つを作り出しています。

#Erwin Data Modeler Tutorialsは現在、Instagram で最も注目を集めているトレンドの1つです。このカテゴリーにはthousands of以上の投稿があり、@evotionai, @jessramosdata and @techie007.devのようなクリエイターがバイラルコンテンツでリードしています。Pictameでこれらの人気動画を匿名で閲覧できます。

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12リールの分析

✅ 中程度の競争

💡 トップ投稿は平均223.4K回の再生(平均の2.3倍)

週3-5回、活動時間に定期的に投稿

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