Data Analytics
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Dive into the world of Data Analytics โ€“ uncover insights, explore trends, and master data-driven decision making.

Admin: @HusseinSheikho || @Hussein_Sheikho
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I found the BEST video explaining how LLMs work ๐Ÿ‘‡

๐Ÿ”— check out the full video here : https://lnkd.in/dvjZS89d

#LLM #ML #AI #Python

By: https://t.me/DataAnalyticsX
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LLM Interview Questions.pdf
71.2 KB
๐Ÿ”– 50 interview questions for LLM

A good warm-up before the interview: 50 questions on Large Language Models in one document. Not in-depth, but as a checklist to test your knowledge โ€” just perfect.

tags: #LLM #ML #python #pytorch

โžก https://t.me/DataAnalyticsX
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Aโ€“ZDictionaryofData.pdf
1008.6 KB
Data is everywhere. Clarity is rare.โฃ
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Behind every dashboard, SQL query, or machine learning model lies a common challenge โ€” understanding the language of data.โฃ
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The ๐€โ€“๐™ ๐ƒ๐ข๐œ๐ญ๐ข๐จ๐ง๐š๐ซ๐ฒ ๐จ๐Ÿ ๐ƒ๐š๐ญ๐š ๐€๐ง๐š๐ฅ๐ฒ๐ญ๐ข๐œ๐ฌ & ๐๐ฎ๐ฌ๐ข๐ง๐ž๐ฌ๐ฌ ๐ˆ๐ง๐ญ๐ž๐ฅ๐ฅ๐ข๐ ๐ž๐ง๐œ๐ž brings together 500+ essential terms across SQL, Python, Power BI, Excel, Statistics, and Machine Learning in one structured reference. โฃ
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This is the layer many professionals underestimate.โฃ
Not tools. Not dashboards.โฃ
But the ability to understand, interpret, and communicate concepts with precision.โฃ
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๐–๐ก๐š๐ญ ๐ฆ๐š๐ค๐ž๐ฌ ๐ญ๐ก๐ข๐ฌ ๐ฏ๐š๐ฅ๐ฎ๐š๐›๐ฅ๐ž:โฃ
- Clear definitions without unnecessary complexityโฃ
- Concepts connected across tools and domainsโฃ
- Coverage from foundational terms to advanced analytics conceptsโฃ
- Useful for both technical execution and business communicationโฃ
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๐–๐ก๐ž๐ซ๐ž ๐ญ๐ก๐ข๐ฌ ๐›๐ž๐œ๐จ๐ฆ๐ž๐ฌ ๐ข๐ฆ๐ฉ๐š๐œ๐ญ๐Ÿ๐ฎ๐ฅ:โฃ
- During interviews, when explaining concepts matters more than just knowing themโฃ
- In projects, where misinterpreting a term can lead to incorrect insightsโฃ
- In stakeholder discussions, where clarity builds credibilityโฃ
- In learning journeys, where structured understanding accelerates growthโฃ
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๐’๐ญ๐ซ๐จ๐ง๐  ๐๐š๐ญ๐š ๐ฉ๐ซ๐จ๐Ÿ๐ž๐ฌ๐ฌ๐ข๐จ๐ง๐š๐ฅ๐ฌ ๐๐จ๐งโ€™๐ญ ๐ฃ๐ฎ๐ฌ๐ญ ๐ฐ๐จ๐ซ๐ค ๐ฐ๐ข๐ญ๐ก ๐๐š๐ญ๐š. ๐“๐ก๐ž๐ฒ ๐ฌ๐ฉ๐ž๐š๐ค ๐ข๐ญ๐ฌ ๐ฅ๐š๐ง๐ ๐ฎ๐š๐ ๐ž ๐ฐ๐ข๐ญ๐ก ๐œ๐จ๐ง๐Ÿ๐ข๐๐ž๐ง๐œ๐ž.โฃ
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#DataAnalytics #BusinessIntelligence #DataScience #SQL #Python #PowerBI #Excel #MachineLearning #Statistics #DataEngineering #AnalyticsCareer #DataLearning #DataProfessionals #CareerGrowth #InterviewPreparation

https://t.me/DataAnalyticsX
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Forwarded from Machine Learning
๐Ÿ”– 10 Stanford courses on AI and ML โ€” with official pages and all materials

โ–ถ๏ธ CS221: Artificial Intelligence
โ–ถ๏ธ CS229: Machine Learning
โ–ถ๏ธ CS229M: Theory of Machine Learning
โ–ถ๏ธ CS230: Deep Learning
โ–ถ๏ธ CS234: Reinforcement Learning
โ–ถ๏ธ CS224N: Natural Language Processing
โ–ถ๏ธ CS231N: Deep Learning for Computer Vision
โ–ถ๏ธ CME295: Large Language Models
โ–ถ๏ธ CS236: Deep Generative Models
โ–ถ๏ธ CS336: Modeling Language from Scratch

They cover the entire spectrum: classic ML, LLM, and generative models โ€” with theory and practice.

tags: #python #ML #LLM #AI

โžก https://t.me/MachineLearning9
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AI for Data Processing and Analytics ๐Ÿค–๐Ÿ“Š

Hex โ€” a platform that helps analyze data through SQL and Python, automating most routine tasks ๐Ÿš€๐Ÿ’ป

What it can do: โœจ๐Ÿ› 
โ€ข generate SQL queries and Python code ๐Ÿ’พ๐Ÿงฉ
โ€ข build charts and dashboards ๐Ÿ“ˆ๐Ÿ“‰
โ€ข explain results and answer questions in simple language ๐Ÿ—ฃ๐Ÿง 
โ€ข allow you to quickly create a report or a data app ๐Ÿ“๐Ÿ“ฑ

Link: https://hex.tech/ ๐Ÿ”—๐ŸŒ

#DataAnalytics #HexTech #SQL #Python #Automation #DataScience

https://t.me/DataAnalyticsX โœˆ๏ธ
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Cheat sheet for working with data in Python (Data Science) ๐Ÿ๐Ÿ“Š

๐Ÿ”น importing NumPy and pandas libraries โ€” basic tools for data processing ๐Ÿ› ๏ธ

๐Ÿ”น text files โ€” reading/writing plain text and working via context manager ๐Ÿ“„

๐Ÿ”น tabular CSV/flat files โ€” loading and processing structured data into DataFrame ๐Ÿ“Š

๐Ÿ”น Excel files โ€” working with sheets and tables ๐Ÿ“‘

๐Ÿ”น SAS/Stata files โ€” importing statistical formats ๐Ÿ“‰

๐Ÿ”น HDF5 and Pickle โ€” saving and loading complex data structures ๐Ÿ’พ

๐Ÿ”น MATLAB files โ€” reading .mat via SciPy ๐Ÿงฎ

๐Ÿ”น relational databases (SQL) โ€” connecting, querying, and converting results into DataFrame ๐Ÿ—„๏ธ

๐Ÿ”น Python dictionaries โ€” accessing keys, values, and nested structures ๐Ÿ”‘

๐Ÿ”น data exploration (NumPy arrays and pandas DataFrames) โ€” viewing types, sizes, and basic statistics ๐Ÿ”

๐Ÿ”น file system navigation โ€” magic commands and os module for working with files and directories ๐Ÿ“‚

#Python #DataScience #Coding #Programming #Tech #Learning

https://t.me/DataAnalyticsX โœ…
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โšก๏ธ Machine Learning Roadmap 2026: a large map for entering ML without fairy tales about "neural networks in a month" ๐Ÿค–

A large Russian-language roadmap for machine learning: from the first import of numpy to LLM, RAG, fine-tuning, AI agents, and MLOps, and even Vue coding. ๐Ÿš€

Inside, there's a normal structure: what to learn, in what order, why it's needed, and what should be achieved in practice after each stage. ๐Ÿง 

The roadmap is divided into 7 tracks: ๐Ÿ“Š

1. Foundation: Python, mathematics, statistics, tools ๐Ÿ—๏ธ
2. Classic ML: scikit-learn, tabular data, metrics, validation ๐Ÿ“ˆ
3. Deep Learning: PyTorch, CNN, RNN, training loop ๐Ÿง 
4. LLM and transformers: attention, KV-cache, RAG, LoRA, agents ๐Ÿค–
5. Generative AI: images, videos, audio, multimodality ๐ŸŽจ
6. MLOps and production: Docker, Kubernetes, CI/CD, monitoring, serving โš™๏ธ
7. Specialization: CV, NLP, RecSys, RL, Safety ๐ŸŽฏ

The roadmap doesn't sell the illusion of "training a model - becoming an ML engineer". ๐Ÿšซ

In real work, a lot of time is spent on data, metrics, deployment, monitoring, reproducibility, and error analysis. Model is just part of the system. ๐Ÿ› ๏ธ

A good idea from the roadmap: LLM doesn't make a junior a senior. It accelerates someone who already understands the basics. Without the basics, a person just becomes an operator of Copilot, who can't explain why everything broke down. ๐Ÿ›‘

In terms of time, it's no fairy tale either: โณ

1. 0-3 months: mathematics, classic ML ๐Ÿ“š
2. 3-6 months: Deep Learning and PyTorch ๐Ÿ”ฅ
3. 6-12 months: LLM, RAG, fine-tuning, AI agents ๐Ÿค–
4. 12+ months: MLOps, production, scaling, specialization ๐Ÿš€

Here, seven large free courses on machine learning, mathematics, and Vue coding are also collected! ๐ŸŽ“

If you've long wanted to enter ML systematically, rather than jumping between videos about ChatGPT, Stable Diffusion, and "top-10 libraries", this is a good guide. ๐Ÿ—บ๏ธ

https://github.com/justxor/MachineLearningRoadmap ๐Ÿ”—

#MachineLearning #AI #DataScience #LLM #MLOps #Python
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Pandas vs Polars vs DuckDB: Which Library Should You Choose? ๐Ÿค”๐Ÿ“Š

pandas remains the default choice for notebooks, exploratory analysis, visualization, and machine learning workflows ๐Ÿ“๐Ÿ“ˆ. Polars focus on fast, memory-efficient DataFrame processing โšก๐Ÿ’พ, while DuckDB brings a SQL-first approach for querying local files and embedded analytics ๐Ÿ—„๏ธ๐Ÿ”.

Each tool fits a different kind of local data workflow ๐Ÿ› ๏ธ. In this article, we compare pandas, Polars, and DuckDB across performance, architecture, interoperability, and real-world use cases ๐Ÿ†๐Ÿ”—.

More: https://www.analyticsvidhya.com/blog/2026/05/pandas-vs-polars-vs-duckdb/ ๐Ÿ”—

#DataScience #Pandas #Polars #DuckDB #Python #Analytics
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Forwarded from Learn Python Coding
Data validation with Pydantic! ๐Ÿโœจ

In the early stages of development, data validation usually doesn't cause problems. In many Python projects, validation initially looks simple:

if not isinstance(age, int):
raise ValueError("age must be an int")

But then come email, JSON from APIs, query parameters, nested objects, configs, nullable fields, and type conversion. At some point, the code turns into a set of if/else and manual checks.

For such tasks, Pydantic is often used. Installation:

pip install pydantic
pip install "pydantic[email]"

Create a model:

from pydantic import BaseModel

class User(BaseModel):
name: str
age: int

Now the data is validated automatically:

user = User(
name="Alex",
age="30"
)

print(user.age)
print(type(user.age))

The result:
30
<class 'int'>

Pydantic will automatically convert the string "30" to an int. If you pass an incorrect value, you'll get a ValidationError:

User(
name="Alex",
age="test"
)

This is especially convenient when working with APIs, JSON, query parameters, and incoming data from outside.

A common production case is checking email:

from pydantic import BaseModel, EmailStr

class User(BaseModel):
email: EmailStr

User(email="alex@test.com")

If the email is invalid, Pydantic will throw a ValidationError. You can set default values:

from pydantic import BaseModel

class Config(BaseModel):
host: str = "localhost"
port: int = 5432

And allow None:

from pydantic import BaseModel

class User(BaseModel):
nickname: str | None = None

This field becomes optional. A practical example is processing an API response:

from pydantic import BaseModel

class Product(BaseModel):
id: int
title: str
price: float

data = {
"id": "1",
"title": "Keyboard",
"price": "99.5"
}

product = Product(**data)

print(product)

The types will be automatically converted. For nested model structures, you can combine:

from pydantic import BaseModel

class Address(BaseModel):
city: str
zip_code: str

class User(BaseModel):
name: str
address: Address

user = User(
name="Alex",
address={
"city": "Berlin",
"zip_code": "10115"
}
)

print(user)

The nested object will also be validated. Serialization in Pydantic v2:

print(user.model_dump())
print(user.model_dump_json())

Pydantic is actively used in FastAPI, ETL, microservices, data pipelines, and API clients.

For working with environment variables in Pydantic v2, a separate package is usually used:

pip install pydantic-settings

It's important to understand: Pydantic is not an ORM and does not replace business logic. Its task is to validate data, convert types, and describe schemas.

๐Ÿ”ฅ Pydantic significantly reduces the amount of manual data validation and makes processing incoming structures more predictable.

#Python #Pydantic #DataValidation #FastAPI #Coding #DevOps

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๐Ÿš€ Create an LLM from Scratch!

I came across a great find from Vizuara โ€” a series of 43 lectures that truly delivers on its promise: showing how to build a large language model from scratch. ๐Ÿง โœจ

Most people use ChatGPT.
But only a few actually understand how it works under the hood. โš™๏ธ

This playlist step by step breaks down all the key concepts without overloading with complex explanations.

๐Ÿ“š What you will learn:
โ†’ The architecture of Transformer ๐Ÿ—๏ธ
โ†’ The internal structure of GPT
โ†’ Tokenization and BPE ๐Ÿงฉ
โ†’ Attention mechanisms ๐Ÿ”
โ†’ The process of training an LLM ๐Ÿ“ˆ
โ†’ Full implementations in Python ๐Ÿ

โœ… Suitable for:
โ€ข ML engineers
โ€ข AI enthusiasts
โ€ข Developers entering the GenAI field
โ€ข Anyone who is tired of explaining AI as a "black box" ๐Ÿ•ต๏ธ

If you really want to understand what lies at the heart of models like ChatGPT, Claude, and Gemini โ€” this material is worth watching. ๐Ÿ‘€

๐Ÿ”— Link to the playlist:
https://www.youtube.com/playlist?list=PLPTV0NXA_ZSgsLAr8YCgCwhPIJNNtexWu

#LLM #AI #MachineLearning #Python #GenAI #DeepLearning

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