Showing posts with label Data Science. Show all posts
Showing posts with label Data Science. Show all posts

Wednesday, 3 December 2025

Mathematics-Basics to Advanced for Data Science And GenAI

 


Why This Course — and Why Mathematics Matters for Data Science & GenAI

In data science, machine learning, and modern AI (including generative AI), math isn't just a side skill — it’s often the foundation. Concepts from linear algebra, calculus, probability, and statistics are central to how data is represented, transformed, modeled, and analyzed. Without a firm mathematical base, it's easy to treat ML/AI algorithms as “magic black boxes” rather than understand their behavior, limitations, and how to fine-tune them. 

The “Mathematics-Basics to Advanced for Data Science And GenAI” course aims to build exactly this foundation — guiding learners from basic high-school-level math into the advanced math that underpins data science, ML, and GenAI workflows. For many who struggle with math or have only a cursory background, such a course can make ML and AI more accessible. 


What the Course Covers — Core Topics & Structure

Here are the main mathematical areas the course covers, and why each matters for data science / GenAI:

1. Calculus (Derivatives, Integrals, Limits)

You master fundamentals like derivatives and integrals. These concepts show up in optimization methods (e.g. gradient descent), in understanding how models learn and adjust weights, and in certain data transformations. 

2. Linear Algebra (Vectors, Matrices, Eigenvalues/Eigenvectors)

Linear algebra is central to representing data in multidimensional spaces, performing transformations, dimensionality reduction (like PCA), and understanding how many ML/deep learning models operate on data behind the scenes. 

3. Probability Theory

Probability gives you tools to model uncertainty, randomness, and variation in data — essential for predictive modeling, classification, risk assessment, and for interpreting model outputs. 

4. Statistics (Descriptive & Inferential)

Statistics helps you summarize data, perform hypothesis testing, analyze distributions, draw inferences, and validate results. For data science and GenAI, this means you can make data-driven decisions, evaluate models logically, and understand data behavior beyond superficial patterns. 


Who This Course Is For — Ideal Learners & Use Cases

This course is especially useful for:

  • Beginners in data science or AI who are not confident in their mathematics foundation but want to build a solid base before diving into coding ML/DL.

  • Professionals transitioning from other domains (engineering, business, analytics) into data science/AI — they often need to strengthen math basics first.

  • Students or self-learners who plan to study machine learning, generative AI, or related fields — having good math familiarity helps in understanding algorithms deeply rather than just using libraries.

  • Anyone working with GenAI or ML in long-term — even if you use high-level libraries and frameworks, understanding underlying math helps you debug issues, optimize models, and judge when an approach makes sense.

If you come with only high-school math (algebra, arithmetic, geometry), the course aims to build from there — making it accessible to many. 


Why This Course Stands Out — Its Strengths

  • Comprehensive Math Coverage: Rather than focusing narrowly, the course spans calculus, linear algebra, probability, and statistics — giving a holistic math foundation for data science. 

  • Practical Orientation: It doesn’t just teach abstract math. The course emphasizes how math is used in real-world data science, ML, and GenAI tasks — making the learning relevant and applied. 

  • Accessible to Beginners: No prior programming or advanced math background required — so even those from non-CS or non-math backgrounds can benefit. 

  • Flexibility and Self-Paced: As with many online courses, you can learn at your own pace — which is ideal when dealing with math topics that may require time and practice to internalize.


What to Keep in Mind — Limitations & Realistic Expectations

  • Speed of Content: For complete beginners, some advanced topics (eigenvalues, calculus-based optimization, probability distributions) may come fast — expect to spend time revising and practicing.

  • Practice Needed: Understanding math theory is one thing; applying it in ML/AI contexts requires regular practice — solving problems, coding examples, experimenting with data.

  • Math + Coding ≠ Magic: Good math foundation helps, but you’ll still need programming skills, domain knowledge, and project experience to build real data science or GenAI solutions.

  • Not a Full ML/AI Course: This course builds the math backbone — to get full ML or GenAI skills, you’ll likely need additional courses or resources focusing on algorithms, frameworks, and practical system building.


How Taking This Course Might Shape Your Data Science / GenAI Journey

  • You’ll build confidence working with mathematical concepts — making ML/AI learning more understandable and less intimidating.

  • Your ability to debug, analyze, and optimize ML models will improve — math gives you tools to understand what’s happening under the hood.

  • You’ll be well-prepared to go deeper into advanced topics: neural networks, deep learning architectures, probabilistic modeling, generative models.

  • For long-term career or research in data science / AI / GenAI — a strong math foundation often pays off, because you can adapt more easily and understand new methods as they emerge.


Join Now: Mathematics-Basics to Advanced for Data Science And GenAI

Conclusion

If you want to build a solid foundation before diving into machine learning or generative AI — especially if your math background is weak or rusty — Mathematics-Basics to Advanced for Data Science And GenAI can be a strong starting point. By covering calculus, linear algebra, probability, and statistics in a structured, applied way, it gives you the fundamentals that underpin almost every data-driven model and algorithm.

Remember: mastering math doesn’t guarantee that you’ll become a data scientist overnight — but it equips you with a deeper understanding, stronger intuition, and better tools to learn, implement, and reason about ML and AI systems. If you’re serious about a career in data science or GenAI, this course is a wise foundation.

Tuesday, 2 December 2025

A Hands-On Introduction to Data Science with Python

 


Data science has become one of the most essential and fast-growing fields in the tech world, touching everything from business analytics and machine learning to artificial intelligence and automation. For beginners entering this exciting space, having the right learning resource makes all the difference—and that’s where “A Hands-On Introduction to Data Science with Python” stands out.

This book is designed to help new learners build a strong foundation in data science using one of the most popular languages in the field—Python. What makes it particularly appealing is its practical, hands-on approach that guides you through key concepts step by step.


A Practical Learning Journey

Unlike theory-heavy textbooks, this book emphasizes learning by doing. Each chapter contains exercises, examples, and real-world scenarios that not only build technical skills but also help readers understand how data science is used in practice.

You don’t just read about data preprocessing, visualization, modeling, or analysis—you actively perform each task using Python. This experiential learning helps reinforce concepts and makes the content accessible even to those without a strong math or programming background.


Who This Book Is For

This book is ideal for:

  • Students exploring data science for the first time

  • Professionals transitioning into analytics or AI roles

  • Developers who want to strengthen their Python skills

  • Anyone curious about how data shapes modern decision-making

Even if you’ve never written a line of Python, the book provides enough introductory support to help you get started comfortably. And if you already have some experience, it builds smoothly toward more advanced concepts.


What You Will Learn

The book covers a full spectrum of beginner-friendly yet essential data science topics, including:

1. Python Basics for Data Science

You learn core Python syntax, data structures, and how to use libraries essential to data science workflows.

2. Data Cleaning and Preprocessing

You gain hands-on experience in handling missing values, transforming datasets, and ensuring data quality—critical steps before any analysis.

3. Exploratory Data Analysis (EDA)

Visualization tools and techniques help readers uncover insights, trends, and patterns within datasets.

4. Working With Popular Libraries

You get practical training in tools such as

  • Pandas for data manipulation

  • NumPy for numerical computing

  • Matplotlib and Seaborn for visualization

  • Scikit-learn for basic machine learning

5. Introduction to Machine Learning

The book introduces supervised and unsupervised learning, helping readers build their first predictive models.

6. Real-World Examples

Every concept is tied to applications such as business decisions, social trends, and technical problem-solving.


Why This Book Stands Out

Hands-On Approach

Readers don’t just learn concepts—they apply them immediately through coding exercises.

Beginner Friendly

The writing is clear, accessible, and doesn’t overwhelm new learners with unnecessary jargon.

Builds Real Skills

By the end, readers have practical experience in the tools used by professional data scientists.

Project-Driven Mindset

The text encourages working on real datasets, helping you build the confidence needed for portfolio projects.


Hard Copy: A Hands-On Introduction to Data Science with Python

Kindle: A Hands-On Introduction to Data Science with Python

Conclusion

“A Hands-On Introduction to Data Science with Python” is an excellent starting point for anyone looking to enter the world of data science. Its focus on practical exercises, real-world applications, and accessible explanations makes learning not only easier but genuinely enjoyable. By guiding readers from Python basics to actual data analysis and machine learning, the book transforms beginners into capable, confident data practitioners.

Data Science Fundamentals: From Raw Data to Insight: A Complete Beginner’s Guide to Statistics, Feature Engineering, and Real-World Data Science Workflows ... Series – Learn. Build. Master. Book 8)

 


Introduction

In the world of data, raw numbers rarely tell the full story. To get meaningful insights — whether for business decisions, research, or building machine-learning models — you need a structured approach: from cleaning and understanding data, to transforming it, analyzing it, and drawing conclusions.

This book, Data Science Fundamentals, aims to be a complete guide for beginners. It walks you through the entire data-science journey: data cleaning, preprocessing, statistical understanding, feature engineering, and building real-world workflows. It’s written to help someone go from “I have some raw data” to “I have actionable insights or a clean dataset ready for modeling.”

If you’re starting out in data science, or want to build strong foundational skills before diving deep into ML or advanced analytics — this book is a solid starting point.


Why This Book Is Valuable

  • Clear, Beginner-Friendly Path: It starts from basics, so even if you have limited experience with data, statistics, or programming, you can follow along. It doesn’t assume deep math or prior ML knowledge.

  • Holistic Approach — From Data to Insight: Many books stop at statistics or simple analysis. This book covers the full pipeline: preprocessing, exploration, feature creation, and structuring data for further work.

  • Focus on Real-World Data Challenges: Real datasets are messy: missing values, inconsistencies, noise, mixed types. The guide helps you handle such data realistically — a crucial skill for any data practitioner.

  • Bridges Data Cleaning, Statistics & Feature Engineering: Understanding raw data + statistics + good features = better analysis and modeling. This book helps you build that bridge.

  • Prepares You for Next-Level Work: Once you master fundamentals, you’ll be ready for advanced topics — machine learning, predictive modeling, deep learning, data pipelines, and production analytics.


What You’ll Learn — Core Themes & Skills

Here are the main topics and skills that this book covers:

Understanding & Preprocessing Raw Data

  • Loading data from different sources (CSV, JSON, databases, etc.)

  • Handling missing values, inconsistent data, incorrect types

  • Data cleaning: normalizing formats, converting types, detecting anomalies

  • Exploratory Data Analysis (EDA): summarizing data, understanding distributions, outliers, correlations

Statistics & Data Understanding

  • Basic descriptive statistics: mean, median, variance, standard deviation, quantiles

  • Understanding distributions, skewness, outliers — how they affect analysis

  • Correlation analysis, covariance, relationships between variables — vital for insight and feature selection

Feature Engineering & Data Transformation

  • Creating new features from raw data (e.g., combining, normalizing, encoding)

  • Handling categorical data, datetime features, text features, missing values — making data model-ready

  • Scaling, normalization, discretization, binning — techniques to improve model or analysis performance

Workflow Design: From Data to Insight

  • Building repeatable, modular data pipelines: load → clean → transform → analyze

  • Documenting data transformations and decisions — making analysis reproducible and understandable

  • Preparing data for downstream use: visualization, reporting, machine learning, forecasting

Real-World Use-Cases & Practical Considerations

  • Applying skills to real datasets — business data, survey data, logs, mixed data types

  • Recognizing biases, sampling issues, data leakage — being mindful of real-world pitfalls

  • Best practices for cleanliness, versioning, and data governance (especially if data will be used repeatedly or shared)


Who Should Read This Book

The book is ideal for:

  • Beginners to Data Science — people with little or no prior experience but lots of interest.

  • Students, Researchers, or Analysts — anyone working with data (surveys, field data, business data) needing to clean, understand, or analyze datasets.

  • Aspiring Data Scientists / ML Engineers — as a foundational stepping stone before tackling machine learning, modeling, or predictive analytics.

  • Professionals in Non-Tech Domains — marketing, operations, social sciences — who frequently deal with data and want to make sense of it.

  • Anyone wanting systematic data-handling skills — even for simple tasks like data cleaning, reporting, summarization, visualization, or analysis.


What You’ll Take Away — Skills and Capabilities

After working through this book, you should be able to:

  • Load and clean messy real-world datasets robustly

  • Perform exploratory data analysis to understand structure, patterns, and anomalies

  • Engineer meaningful features and transform data for further analysis or modeling

  • Build data pipelines and workflows that are reproducible and maintainable

  • Understand statistical properties of data and how they influence analysis

  • Prepare data ready for machine learning or predictive modeling — or derive meaningful insights and reports

  • Detect common data pitfalls (bias, noise, outliers, missing values) and handle them properly

These are foundational skills — but also among the most sought-after in data, analytics, and ML roles.


Why This Book Matters — In Today’s Data-Driven World

  • Data is everywhere now — companies, organizations, and research projects generate huge volumes of data. From logs and user data to survey results. Handling raw data effectively is the first and most important step.

  • Bad data ruins models and insights — even the best ML models fail if data is poor. A solid grounding in data cleaning and preprocessing differentiates good data work from rubbish output.

  • Strong foundations make learning advanced topics easier — once you’re comfortable with data handling and feature engineering, you can more easily pick up machine learning, statistical modeling, time-series analysis, or deep learning.

  • Cross-domain relevance — whether you’re in finance, business analytics, healthcare, social research, or product development — data fundamentals are universally useful.

If you want to work with data seriously — not casually — this book offers a reliable, comprehensive foundation.


Kindle: Data Science Fundamentals: From Raw Data to Insight: A Complete Beginner’s Guide to Statistics, Feature Engineering, and Real-World Data Science Workflows ... Series – Learn. Build. Master. Book 8)

Conclusion

Data Science Fundamentals: From Raw Data to Insight is much more than a beginner’s guide — it’s a foundation builder. It teaches you not just how to handle data, but how to think about data: what makes it good, what makes it problematic, how to transform and engineer it, and ultimately how to extract insight or prepare for modeling.

If you’re new to data science or want to ensure your skills are grounded in real-world practicality, this book is a great place to start. With solid understanding of data workflows, preprocessing, statistics, and feature engineering, you’ll be ready to build meaningful analyses or robust machine learning applications.


Pandas for Data Science

 


Introduction

In modern data science, handling and analysing tabular (structured) data is one of the most common tasks — whether it’s survey data, business data, time-series data, logs, or CSV/Excel/SQL exports. The Python library pandas has become the de-facto standard for this work. “Pandas for Data Science” is a course designed to teach you how to leverage pandas effectively: from reading data, cleaning it, manipulating, analyzing, and preparing it for further data science or machine learning tasks.

If you want to build a solid foundation in data handling and manipulation — this course offers a well-structured path.


Why This Course Matters

  1. Structured Learning of a Core Data Tool

    • Pandas is foundational in the Python data science ecosystem: with its data structures (Series, DataFrame) you can handle almost any tabular data. 

    • Knowing pandas well lets you move beyond spreadsheets (Excel) into programmable, reproducible data workflows — an essential skill for data scientists, analysts, and ML engineers.

  2. Focus on Real-World Data Challenges

    • In practice, data is messy: missing values, inconsistent types, duplicate rows, mixed sources. This course teaches how to read different data formats, clean and standardize data, deal with anomalies and missing data. 

    • It emphasizes best practices — loading data correctly, cleaning it, managing data types — critical steps before any analysis or modeling. 

  3. End-to-End Skills—From Raw Data to Analysis-Ready Tables

    • You learn not just data loading and cleaning, but also data manipulation: filtering, merging/joining tables, combining data from multiple sources, querying, aggregating. These are everyday tasks in real data workflows.

    • As a result, you get the confidence to handle datasets of varying complexity — useful whether you do exploratory data analysis (EDA), report generation, or feed data into ML pipelines.

  4. Accessibility for Beginners

    • The course is marked beginner-level. If you know basic Python (variables, lists/dicts, functions), you can follow along and build solid pandas skills. 

    • This makes it a great bridge for developers, analysts, or students who want to move into data science but don’t yet have deep ML or statistics background.


What You Learn — Course Contents & Core Skills

The course is organized into four main modules. Here’s what each module covers and what you’ll learn:

1. Intro to pandas + Strings and I/O

  • Reading data from files (CSV, Excel, maybe text files) into pandas.

  • Writing data back to files after manipulation.

  • Handling string data: cleaning, parsing, converting.

  • Basic file operations, data import/export, and understanding data I/O workflows. 

2. Tabular Data with pandas

  • Introduction to pandas core data structures: DataFrame, Series

  • Recognizing the characteristics and challenges of tabular data.

  • Basic data manipulation: indexing/filtering rows and columns, selecting subsets, etc. 

3. Loading & Cleaning Data

  • Reading from various common data formats used in data science.

  • Data cleaning: dealing with missing values, inconsistent types or formats, malformed data.

  • Best practices to make raw data ready for analysis or modeling. 

4. Data Manipulation & Combining Datasets

  • Techniques to merge, join, concatenate data from different sources or tables. Important for multi-table datasets (e.g. relational-style data). 

  • Efficient querying and subsetting of data — selecting/filtering based on conditions.

  • Aggregation, grouping, summarization (though this course may focus mostly on manipulation — but pandas supports all these.) 

Skills You Gain

  • Data import/export, cleaning, and preprocessing using Python & pandas. 

  • Data manipulation and integration — combining data, transforming it, shaping it. 

  • Preparation of data for further tasks: analysis, visualization, machine learning, reporting, etc.


Who Should Take This Course

This course is particularly useful for:

  • Aspiring data scientists / analysts who want a strong foundation in data handling.

  • Software developers or engineers who are new to data science, but already know Python and want to learn data workflows.

  • Students or researchers working with CSV/Excel/tabular data who want to automate cleaning and analysis.

  • Business analysts or domain experts who frequently handle datasets and want to move beyond spreadsheets to programmatic data manipulation.

  • Anyone preparing for machine learning or data-driven projects — mastering pandas is often the first step before building statistical models, ML pipelines, or visualization dashboards.


How to Make the Most of the Course

  • Code along in a notebook (Jupyter / Colab) — Don’t just watch: write code alongside lessons to internalize syntax, workflows, data operations.

  • Practice on real datasets — Use publicly available datasets (CSV, Excel, JSON) — maybe from open data portals — and try cleaning, merging, filtering, summarizing them.

  • Try combining multiple data sources — E.g. separate CSV files that together form a relational dataset: merge, join, or concatenate to build a unified table.

  • Explore edge cases — Missing data, inconsistent types, duplicated records: clean and handle them as taught, since real datasets often have such issues.

  • After pandas, move forward to visualization or ML — Once your data is clean and structured, you can plug it into plotting libraries, statistical analysis, or ML pipelines.


What You’ll Walk Away With

  • Strong command over pandas library — confident in reading, cleaning, manipulating, and preparing data.

  • Ability to handle messy real-world datasets: cleaning inconsistencies, combining sources, restructuring data.

  • Ready-to-use data science workflow: from raw data to clean, analysis-ready tables.

  • The foundation to proceed further: data visualization, statistical analysis, machine learning, data pipelines, etc.

  • Confidence to work on data projects independently — not relying on manual tools like spreadsheets but programmable, reproducible workflows.


Join Now: Pandas for Data Science

Conclusion

“Pandas for Data Science” gives you critical, practical skills — the kind that form the backbone of almost every data-driven application or analysis. If you want to build data science or machine learning projects, or even simple data-driven scripts, pandas mastery is non-negotiable.

This course offers a clear, structured, beginner-friendly yet deep introduction. If you put in the effort, code along, and practice on real datasets, you’ll come out ready to handle data like a pro.

Monday, 1 December 2025

Python Data Science: Math, Stats and EDA from Theory to Code

 

Introduction

With the explosion of data in nearly every domain — business, research, healthcare, finance, social media — the ability to extract meaningful insights has become a critical skill. But raw data is rarely clean or well-structured. That’s where data science fundamentals come in: programming, statistics, exploratory data analysis (EDA), and feature engineering.

This course is built to help learners — even those with little to no prior background — build a strong foundation in data science. It combines Python programming with math, statistics, and EDA to prepare you for more advanced analytics or machine learning work.


Why This Course Matters

  • Strong Foundation from Scratch: You start by learning core Python (data structures, loops, functions, OOP) — the lingua franca of modern data science. Then you layer on statistics and mathematics, making it easier to understand how and why data and ML work under the hood.

  • Bridges Theory and Practice: Instead of treating math or statistics as abstract, the course connects them to real data tasks: data cleaning, manipulation, visualization, feature engineering, and analysis.

  • Focus on EDA & Feature Engineering — Often Overlooked But Critical: Many ML problems fail not because the model is bad, but because the data was not well understood or preprocessed. This course emphasises data cleaning, transformation, visualization, and insight generation before modeling, which is a best-practice in data science.

  • Beginner-Friendly Yet Comprehensive: You don’t need prior coding or advanced math background. The course is designed to guide absolute beginners step by step, making data science accessible.

  • Versatile Use Cases: Skills taught apply across domains — business analytics, research, product data, survey data, experiments, and more. Once you master the fundamentals, you can branch into ML, data pipelines, forecasting, or deeper AI.


What You’ll Learn — Core Modules & Key Skills

Here’s a breakdown of the main components and learning outcomes of the course:

Python for Data Science

  • Basics of Python: variables, loops, control flow, functions, data structures (lists, dictionaries, etc.), object-oriented basics — essential for data manipulation and scripting.

  • Introduction to data science libraries: likely including the tools for working with arrays, data tables, and data manipulation (common in Python-based data science).

Mathematics for Machine Learning & Data Analysis

  • Fundamentals: vectors, matrices, derivatives — the mathematical backbone behind many ML algorithms and data transformations.

  • Understanding how math connects to data operations — e.g. how arrays, matrix operations, linear algebra reflect data transformations.

Statistics & Probability for Data Science

  • Descriptive statistics: mean, median, mode, variance, distribution analysis — to summarise and understand data.

  • Distributions, correlations, statistical relationships — to understand how attributes relate and how to interpret data.

  • Basic probabilistic thinking and statistical reasoning — important for inference, hypothesis testing, and understanding uncertainty.

Exploratory Data Analysis (EDA)

  • Combining statistics and visualization to understand datasets: distributions, relationships, outliers, missing values. 

  • Data cleaning and preprocessing: handling missing data, inconsistent entries, noise — making data fit for analysis or modeling.

  • Feature engineering: creating meaningful variables (features) from raw data — handling categorical variables, encoding, scaling, transformations — to improve modeling or analysis outcomes.

  • Insight generation: uncovering patterns, trends, and hidden relationships that guide further analysis or decision-making.

Data Visualization & Communication

  • Using Python data-visualization tools to create charts/plots: histograms, scatter plots, heatmaps, etc. — to visually communicate findings and data structure.

  • Building intuition about data — visualization + statistics makes it easier to understand distributions, outliers, anomalies, and data quality.


Who This Course Is Best For

This course is especially well-suited for:

  • Absolute beginners — people with little or no coding or math background, but keen to start a career or learning path in data science.

  • Students or recent graduates — looking for a practical foundation before diving into complex ML or deep learning.

  • Professionals from non-tech backgrounds — who frequently work with data (sales, operations, research, business analytics) and want to upskill for better analysis or decision-making.

  • Aspiring data scientists / analysts — who want to master the fundamentals before using advanced modeling or AI tools.

  • Anyone planning to build data projects or work with real-world data — since the skills are domain-agnostic and helpful across industries.


What You’ll Walk Away With — Capabilities & Readiness

By the end of this course, you should be able to:

  • Write clean, logical Python code for data manipulation and analysis.

  • Understand and apply basic math and statistical concepts to real datasets intelligently.

  • Perform effective exploratory data analysis: discover patterns, detect outliers, handle missing data, summarize distributions — and understand what the data “says.”

  • Engineer features (variables) from raw data that are usable in modeling or deeper analysis.

  • Visualize data effectively — creating plots and charts that communicate insights clearly.

  • Build a repeatable data-analysis workflow: data loading → cleaning → analysis/EDA → transformation → ready for modeling or decision-making.

This foundation makes you ready to take on more advanced tasks: predictive modeling, machine learning pipelines, data-driven product design, or further specialization in analytics.


Why EDA & Fundamentals Matter More Than You May Think

Many aspiring data scientists rush into machine learning and modeling, chasing accuracy metrics — but skip foundational steps like EDA, cleaning, and ensuring data quality. This is risky, because real-world data is messy, incomplete, and often biased.

By mastering the fundamentals — math, statistics, EDA, feature engineering — you build robust, reliable, interpretable data work. It ensures your models, insights, and decisions are based on solid ground, not shaky assumptions.

In short: strong fundamentals make smarter, safer, and more trustworthy data science.


Join Now: Python Data Science: Math, Stats and EDA from Theory to Code

Conclusion

If you’re looking for a gentle yet thorough entry into data science — one that balances theory and practice, code and insight — Python Data Science: Math, Stats and EDA from Theory to Code is a strong choice. It helps you build the foundation that every data scientist needs before jumping into advanced modeling or AI.

Tuesday, 25 November 2025

9 Pandas Tricks That Data Scientists Use Quietly


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