Forwarded from Epython Lab
As a Developer, the best practice is writing clean, simple, concise, and readable code.
Learn about how to write clean code https://youtu.be/upe7v7dhv0Y
Sharing is caring 🙏
Learn about how to write clean code https://youtu.be/upe7v7dhv0Y
Sharing is caring 🙏
YouTube
How to Write Clean Code
Join this channel to get access to perks:
https://bit.ly/363MzLo
This tutorial will help you understand how to write clean, simple and concise code.
#python #machinelearning #datascience
Ask your question at https://t.me/epythonlab/
Thanks for watching!
https://bit.ly/363MzLo
This tutorial will help you understand how to write clean, simple and concise code.
#python #machinelearning #datascience
Ask your question at https://t.me/epythonlab/
Thanks for watching!
👍1
Forwarded from Epython Lab
Learn about Dictionary in Python 🐍 with examples
https://youtu.be/7N62qR2jLlA
#python #machinelearning #share
https://youtu.be/7N62qR2jLlA
#python #machinelearning #share
YouTube
Dictionary in Python
#python #dictionary
An overview of Dictionary in Python.
Ask your question at https://t.me/epythonlab/
Thanks for watching!
An overview of Dictionary in Python.
Ask your question at https://t.me/epythonlab/
Thanks for watching!
💡 Researchers & Beginners in Python!
This step-by-step guide walks you through installing and setting up Python on Windows using the Microsoft Store, along with VS Code setup to get you coding in no time!
🔗 https://www.youtube.com/watch?v=EGdhnSEWKok
Like & share if you found this helpful!
#PythonForResearch #PythonSetup #DataScience #AI #MachineLearning #CodingForBeginners #ResearchTools #Academia #PythonOnWindows
This step-by-step guide walks you through installing and setting up Python on Windows using the Microsoft Store, along with VS Code setup to get you coding in no time!
🔗 https://www.youtube.com/watch?v=EGdhnSEWKok
Like & share if you found this helpful!
#PythonForResearch #PythonSetup #DataScience #AI #MachineLearning #CodingForBeginners #ResearchTools #Academia #PythonOnWindows
YouTube
How to Install Python on Windows: Beginner’s Guide (Step-by-Step)
Want to start coding in Python on Windows? This beginner-friendly guide walks you through the setup process—from installing Python and VS Code to writing your first Python script. 🚀 Whether you're a beginner or switching to Python, this tutorial makes it…
👍2
Why You Should Use Virtual Environments & Structure ML Projects Professionally 🚀
When working on machine learning projects, managing dependencies and maintaining a clean, scalable structure is crucial. Without proper organization, projects quickly become messy, unmanageable, and prone to conflicts.
🔹 Why Use Virtual Environments?
A virtual environment (venv) allows you to:
✅ Isolate dependencies for different projects. No more version conflicts!
✅ Ensure reproducibility—your project runs the same anywhere.
✅ Avoid system-wide installations that could break other Python applications.
How? https://youtu.be/qYYYgS-ou7Q
🔹 Why Structure ML Projects Properly?
A professional project structure helps with:
✅ Scalability—separate concerns (data, API, models, notebooks)
✅ Collaboration—team members can understand and contribute easily
✅ Automation—CI/CD for deployment and model updates
Typical ML Project Structure: https://youtu.be/qYYYgS-ou7Q
🔹 Why Use Git, GitHub, and CI/CD?
✅ Git & GitHub for version control & collaboration
✅ CI/CD (e.g., GitHub Actions) for automating testing & deployments
✅ Reproducibility & rollback—track and revert changes easily
💡 Pro Tip: Always maintain a README.md to document setup & usage instructions!
What challenges have you faced in structuring ML projects? Drop your thoughts below! 👇
#Python #MachineLearning #MLProject #GitHub #VirtualEnvironments #DataScience #CI_CD #SoftwareEngineering
When working on machine learning projects, managing dependencies and maintaining a clean, scalable structure is crucial. Without proper organization, projects quickly become messy, unmanageable, and prone to conflicts.
🔹 Why Use Virtual Environments?
A virtual environment (venv) allows you to:
✅ Isolate dependencies for different projects. No more version conflicts!
✅ Ensure reproducibility—your project runs the same anywhere.
✅ Avoid system-wide installations that could break other Python applications.
How? https://youtu.be/qYYYgS-ou7Q
🔹 Why Structure ML Projects Properly?
A professional project structure helps with:
✅ Scalability—separate concerns (data, API, models, notebooks)
✅ Collaboration—team members can understand and contribute easily
✅ Automation—CI/CD for deployment and model updates
Typical ML Project Structure: https://youtu.be/qYYYgS-ou7Q
🔹 Why Use Git, GitHub, and CI/CD?
✅ Git & GitHub for version control & collaboration
✅ CI/CD (e.g., GitHub Actions) for automating testing & deployments
✅ Reproducibility & rollback—track and revert changes easily
💡 Pro Tip: Always maintain a README.md to document setup & usage instructions!
What challenges have you faced in structuring ML projects? Drop your thoughts below! 👇
#Python #MachineLearning #MLProject #GitHub #VirtualEnvironments #DataScience #CI_CD #SoftwareEngineering
👍4
🚀 How to Become a Self-Taught AI Developer?
AI is transforming the world, and the best part? You don’t need a formal degree to break into the field! With the right roadmap and hands-on practice, anyone can become an AI developer. Here’s how you can do it:
1️⃣ Master the Fundamentals of Programming
Start with Python, as it’s the most popular language for AI. Learn data structures, algorithms, and object-oriented programming (OOP). Practice coding on LeetCode and HackerRank.
👉How to get started Python: https://www.youtube.com/watch?v=EGdhnSEWKok
How to Create & Use Python Virtual Environments | ML Project Setup + GitHub Actions CI/CD https://youtu.be/qYYYgS-ou7Q
👉Beginner's Guide to Python Programming. Getting started now: https://youtu.be/ISv6XIl1hn0
👉Data Structures with Projects full tutorial for beginners
https://www.youtube.com/watch?v=lbdKQI8Jsok
👉OOP in Python - beginners Crash Course https://www.youtube.com/watch?v=I7z6i1QTdsw
2️⃣ Build a Strong Math Foundation
AI relies on:
🔹 Linear Algebra – Matrices, vectors (used in deep learning) https://youtu.be/BNa2s6OtWls
🔹 Probability & Statistics – Bayesian reasoning, distributions https://youtube.com/playlist?list=PL0nX4ZoMtjYEl_1ONxAZHu65DPCQcsHmI&si=tAz0B3yoATAjE8Fx
🔹 Calculus – Derivatives, gradients (used in optimization)
📚 Learn from 3Blue1Brown, Khan Academy, or MIT OpenCourseWare.
3️⃣ Learn Machine Learning (ML)
Start with traditional ML before deep learning:
✔ Supervised Learning – Linear regression, decision trees https://youtube.com/playlist?list=PL0nX4ZoMtjYGV8Ff_s2FtADIPfwlHst8B&si=buC-eP3AZkIjzI_N
✔ Unsupervised Learning – Clustering, PCA
✔ Reinforcement Learning – Q-learning, deep Q-networks
🔗 Best course? Andrew Ng’s ML Course on Coursera.
4️⃣ Dive into Deep Learning
Once comfortable with ML, explore:
⚡ Neural Networks (ANNs, CNNs, RNNs, Transformers)
⚡ TensorFlow & PyTorch (Industry-standard deep learning frameworks)
⚡ Computer Vision & NLP
Try Fast.ai or the Deep Learning Specialization by Andrew Ng.
5️⃣ Build Real-World Projects
The best way to learn AI? DO AI. 🚀
💡 Train models with Kaggle datasets
💡 Build a chatbot, image classifier, or recommendation system
💡 Contribute to open-source AI projects
6️⃣ Stay Updated & Join the AI Community
AI evolves fast! Stay ahead by:
🔹 Following Google AI, OpenAI, DeepMind
🔹 Engaging in Reddit r/MachineLearning, LinkedIn AI discussions
🔹 Attending AI conferences like NeurIPS & ICML
7️⃣ Create a Portfolio & Apply for AI Roles
📌 Publish projects on GitHub
📌 Share insights on Medium/Towards Data Science
📌 Network on LinkedIn & Kaggle
No CS degree? No problem! AI is about curiosity, consistency, and hands-on experience. Start now, keep learning, and let’s build the future with AI. 🚀
Tagging AI learners & enthusiasts: What’s your AI learning journey like? Let’s connect!. 🔥👇
#AI #MachineLearning #DeepLearning #Python #ArtificialIntelligence #SelfTaught
AI is transforming the world, and the best part? You don’t need a formal degree to break into the field! With the right roadmap and hands-on practice, anyone can become an AI developer. Here’s how you can do it:
1️⃣ Master the Fundamentals of Programming
Start with Python, as it’s the most popular language for AI. Learn data structures, algorithms, and object-oriented programming (OOP). Practice coding on LeetCode and HackerRank.
👉How to get started Python: https://www.youtube.com/watch?v=EGdhnSEWKok
How to Create & Use Python Virtual Environments | ML Project Setup + GitHub Actions CI/CD https://youtu.be/qYYYgS-ou7Q
👉Beginner's Guide to Python Programming. Getting started now: https://youtu.be/ISv6XIl1hn0
👉Data Structures with Projects full tutorial for beginners
https://www.youtube.com/watch?v=lbdKQI8Jsok
👉OOP in Python - beginners Crash Course https://www.youtube.com/watch?v=I7z6i1QTdsw
2️⃣ Build a Strong Math Foundation
AI relies on:
🔹 Linear Algebra – Matrices, vectors (used in deep learning) https://youtu.be/BNa2s6OtWls
🔹 Probability & Statistics – Bayesian reasoning, distributions https://youtube.com/playlist?list=PL0nX4ZoMtjYEl_1ONxAZHu65DPCQcsHmI&si=tAz0B3yoATAjE8Fx
🔹 Calculus – Derivatives, gradients (used in optimization)
📚 Learn from 3Blue1Brown, Khan Academy, or MIT OpenCourseWare.
3️⃣ Learn Machine Learning (ML)
Start with traditional ML before deep learning:
✔ Supervised Learning – Linear regression, decision trees https://youtube.com/playlist?list=PL0nX4ZoMtjYGV8Ff_s2FtADIPfwlHst8B&si=buC-eP3AZkIjzI_N
✔ Unsupervised Learning – Clustering, PCA
✔ Reinforcement Learning – Q-learning, deep Q-networks
🔗 Best course? Andrew Ng’s ML Course on Coursera.
4️⃣ Dive into Deep Learning
Once comfortable with ML, explore:
⚡ Neural Networks (ANNs, CNNs, RNNs, Transformers)
⚡ TensorFlow & PyTorch (Industry-standard deep learning frameworks)
⚡ Computer Vision & NLP
Try Fast.ai or the Deep Learning Specialization by Andrew Ng.
5️⃣ Build Real-World Projects
The best way to learn AI? DO AI. 🚀
💡 Train models with Kaggle datasets
💡 Build a chatbot, image classifier, or recommendation system
💡 Contribute to open-source AI projects
6️⃣ Stay Updated & Join the AI Community
AI evolves fast! Stay ahead by:
🔹 Following Google AI, OpenAI, DeepMind
🔹 Engaging in Reddit r/MachineLearning, LinkedIn AI discussions
🔹 Attending AI conferences like NeurIPS & ICML
7️⃣ Create a Portfolio & Apply for AI Roles
📌 Publish projects on GitHub
📌 Share insights on Medium/Towards Data Science
📌 Network on LinkedIn & Kaggle
No CS degree? No problem! AI is about curiosity, consistency, and hands-on experience. Start now, keep learning, and let’s build the future with AI. 🚀
Tagging AI learners & enthusiasts: What’s your AI learning journey like? Let’s connect!. 🔥👇
#AI #MachineLearning #DeepLearning #Python #ArtificialIntelligence #SelfTaught
YouTube
How to Install Python on Windows: Beginner’s Guide (Step-by-Step)
Want to start coding in Python on Windows? This beginner-friendly guide walks you through the setup process—from installing Python and VS Code to writing your first Python script. 🚀 Whether you're a beginner or switching to Python, this tutorial makes it…
👍1
Master the Math Behind Machine Learning
Whether you're just starting or looking to strengthen your foundation, here's a curated roadmap covering key mathematical concepts every ML practitioner should know. Dive into Linear Algebra, Probability Distributions, and Linear Regression with focused resources.
Join the learning journey and connect with like-minded learners in our Telegram group https://t.me/epythonlab
🔗 Linear Regression: https://bit.ly/46rqiBu
🔗 Linear Algebra: https://bit.ly/45EpfwB
🔗 Probability Distribution: https://bit.ly/495L8b5
🔗 Telegram Group: https://bit.ly/3IR1lnm
#MachineLearning #MathForML #DataScience #AI #LearningPath #LinearAlgebra #Probability #MLRoadmap
Whether you're just starting or looking to strengthen your foundation, here's a curated roadmap covering key mathematical concepts every ML practitioner should know. Dive into Linear Algebra, Probability Distributions, and Linear Regression with focused resources.
Join the learning journey and connect with like-minded learners in our Telegram group https://t.me/epythonlab
🔗 Linear Regression: https://bit.ly/46rqiBu
🔗 Linear Algebra: https://bit.ly/45EpfwB
🔗 Probability Distribution: https://bit.ly/495L8b5
🔗 Telegram Group: https://bit.ly/3IR1lnm
#MachineLearning #MathForML #DataScience #AI #LearningPath #LinearAlgebra #Probability #MLRoadmap
❤2
🚨 Fraud Isn’t Just a Risk—It’s a Reality. Here’s How We’re Fighting Back with ML in Fintech. 💡https://youtu.be/kQHpXSH4G_E
In the fast-moving world of fintech, trust is currency. And nothing erodes trust faster than fraud.
Recently, I took a deep dive into building a fraud detection engine using classification algorithms in Python—but not just with the traditional plug-and-play mindset.
Instead of asking “Which model performs best?”, I asked: 🔍 How can we build a system that understands fraud like a human analyst would—but at scale and in real time?
📊 Here's the approach:
1. Behavioral Pattern Recognition: Mapped transaction flows to user behavior signatures, not just features. Outliers aren’t always fraud—but often they are.
2. Hybrid Classification Stack: Instead of relying on one algorithm (e.g., Random Forest or Logistic Regression), I built a layered model that integrates explainable models with high-performance black-box learners.
3. Anomaly-Aware Sampling: Balanced class imbalance with strategic undersampling, but retained edge-case patterns using synthetic minority over-sampling (SMOTE with domain tweaks).
4. Real-World Feedback Loop: Built an active learning system that retrains from confirmed fraud cases—turning human analysts into model trainers.
🧠 The result? A system that doesn’t just flag suspicious activity—but learns from every incident.
🎯 Tools used:
Python, Scikit-learn, XGBoost
Pandas, Seaborn (for EDA)
SHAP (for interpretability)
Flask + Streamlit for dashboarding
💬 Fintech peers: How are you balancing accuracy vs explainability in fraud detection models?
Let’s connect if you’re working on ML in fintech—especially in risk, fraud, or anomaly detection. Happy to exchange ideas and build smarter, safer systems together. 🔐📈
#Fintech #MachineLearning #FraudDetection #Python #AI #Classification #DataScience #XAI #MLinFinance #CyberSecurity
In the fast-moving world of fintech, trust is currency. And nothing erodes trust faster than fraud.
Recently, I took a deep dive into building a fraud detection engine using classification algorithms in Python—but not just with the traditional plug-and-play mindset.
Instead of asking “Which model performs best?”, I asked: 🔍 How can we build a system that understands fraud like a human analyst would—but at scale and in real time?
📊 Here's the approach:
1. Behavioral Pattern Recognition: Mapped transaction flows to user behavior signatures, not just features. Outliers aren’t always fraud—but often they are.
2. Hybrid Classification Stack: Instead of relying on one algorithm (e.g., Random Forest or Logistic Regression), I built a layered model that integrates explainable models with high-performance black-box learners.
3. Anomaly-Aware Sampling: Balanced class imbalance with strategic undersampling, but retained edge-case patterns using synthetic minority over-sampling (SMOTE with domain tweaks).
4. Real-World Feedback Loop: Built an active learning system that retrains from confirmed fraud cases—turning human analysts into model trainers.
🧠 The result? A system that doesn’t just flag suspicious activity—but learns from every incident.
🎯 Tools used:
Python, Scikit-learn, XGBoost
Pandas, Seaborn (for EDA)
SHAP (for interpretability)
Flask + Streamlit for dashboarding
💬 Fintech peers: How are you balancing accuracy vs explainability in fraud detection models?
Let’s connect if you’re working on ML in fintech—especially in risk, fraud, or anomaly detection. Happy to exchange ideas and build smarter, safer systems together. 🔐📈
#Fintech #MachineLearning #FraudDetection #Python #AI #Classification #DataScience #XAI #MLinFinance #CyberSecurity
YouTube
Build a Fraud Detection with XGBoost in Python | ML FinTech Project for Beginners
Build a Fraud Detection System using XGBoost in Python — the most in-demand machine learning project for beginners in FinTech!
In this end-to-end machine learning project, you will learn how to:
✅ Load and clean real-world financial data using pandas
✅ Apply…
In this end-to-end machine learning project, you will learn how to:
✅ Load and clean real-world financial data using pandas
✅ Apply…
💰 Machine Learning is Reshaping Fintech — and we're just getting started.
FinTech ML Labs: https://www.youtube.com/playlist?list=PL0nX4ZoMtjYFuTnUcwv0aFnxN9pEyjVez
Two of the most mission-critical areas where ML is making a real-world impact today are:
1. 🔎 Credit Scoring
Traditional credit scoring often overlooks those without a deep financial history. With ML:
We analyze alternative data (e.g., transaction patterns, mobile usage, utility payments)
Apply classification algorithms to predict creditworthiness
Enable inclusive lending for underbanked populations
✅ Outcome: More accurate risk assessment + financial inclusion.
---
2. 🛡️ Fraud Detection
Fraudsters evolve fast. ML evolves faster.
We train models on millions of transactions, identifying subtle anomalies
Use a mix of real-time classification, unsupervised anomaly detection, and behavioral modeling
Continuously improve through feedback loops and active learning
🚨 ML helps flag suspicious activity before it turns into loss.
---
🔧 Tech Stack: Python | Scikit-learn | XGBoost | SHAP | FastAPI | Streamlit | AWS
🔄 The future of fintech is predictive, not reactive.
If you’re building intelligent financial systems—whether it’s for lending, fraud prevention, or personalization—let’s connect and exchange notes. 🚀
#Fintech #MachineLearning #CreditScoring #FraudDetection #ArtificialIntelligence #DataScience #FinancialInclusion #ResponsibleAI #Python #MLinFinance
FinTech ML Labs: https://www.youtube.com/playlist?list=PL0nX4ZoMtjYFuTnUcwv0aFnxN9pEyjVez
Two of the most mission-critical areas where ML is making a real-world impact today are:
1. 🔎 Credit Scoring
Traditional credit scoring often overlooks those without a deep financial history. With ML:
We analyze alternative data (e.g., transaction patterns, mobile usage, utility payments)
Apply classification algorithms to predict creditworthiness
Enable inclusive lending for underbanked populations
✅ Outcome: More accurate risk assessment + financial inclusion.
---
2. 🛡️ Fraud Detection
Fraudsters evolve fast. ML evolves faster.
We train models on millions of transactions, identifying subtle anomalies
Use a mix of real-time classification, unsupervised anomaly detection, and behavioral modeling
Continuously improve through feedback loops and active learning
🚨 ML helps flag suspicious activity before it turns into loss.
---
🔧 Tech Stack: Python | Scikit-learn | XGBoost | SHAP | FastAPI | Streamlit | AWS
🔄 The future of fintech is predictive, not reactive.
If you’re building intelligent financial systems—whether it’s for lending, fraud prevention, or personalization—let’s connect and exchange notes. 🚀
#Fintech #MachineLearning #CreditScoring #FraudDetection #ArtificialIntelligence #DataScience #FinancialInclusion #ResponsibleAI #Python #MLinFinance
YouTube
FinTech ML Labs
🚀 Welcome to FinTech ML Labs – where Python meets real-world finance. Are you ready to go beyond theory and start building actual machine learning systems us...
🚀 Train Loan Prediction Models with Synthetic Data using CTGAN
📊 | #FinTech #MachineLearning #DataScience #SyntheticData #CTGAN
In real-world financial environments, access to high-quality, privacy-compliant loan data can be extremely limited due to regulatory and ethical constraints.
That’s why in my latest FinTech ML project, I explore how to train accurate loan prediction models using synthetic datasets generated by CTGAN (Conditional Tabular GAN).
💡 Why this matters:
Maintain data privacy without sacrificing model realism
Generate diverse borrower profiles and edge cases
Build ML-ready datasets with class balance and feature richness
🔍 What’s covered:
Simulate loan application data (income, credit score, loan amount, status, etc.)
Generate synthetic records using CTGAN from SDV
Train and evaluate classification models (XGBoost, RandomForest)
Compare real vs synthetic model performance
🛠 Tools: Python, Pandas, CTGAN, Scikit-learn, Matplotlib
Let’s advance ethical AI in finance—one synthetic sample at a time.
💬 Curious to try synthetic data in your projects? Drop your thoughts or questions below!
https://youtu.be/cqGLJsOpNPU
📊 | #FinTech #MachineLearning #DataScience #SyntheticData #CTGAN
In real-world financial environments, access to high-quality, privacy-compliant loan data can be extremely limited due to regulatory and ethical constraints.
That’s why in my latest FinTech ML project, I explore how to train accurate loan prediction models using synthetic datasets generated by CTGAN (Conditional Tabular GAN).
💡 Why this matters:
Maintain data privacy without sacrificing model realism
Generate diverse borrower profiles and edge cases
Build ML-ready datasets with class balance and feature richness
🔍 What’s covered:
Simulate loan application data (income, credit score, loan amount, status, etc.)
Generate synthetic records using CTGAN from SDV
Train and evaluate classification models (XGBoost, RandomForest)
Compare real vs synthetic model performance
🛠 Tools: Python, Pandas, CTGAN, Scikit-learn, Matplotlib
Let’s advance ethical AI in finance—one synthetic sample at a time.
💬 Curious to try synthetic data in your projects? Drop your thoughts or questions below!
https://youtu.be/cqGLJsOpNPU
👍5
Forwarded from Epython Lab
💰 Machine Learning is Reshaping Fintech — and we're just getting started.
FinTech ML Labs: https://www.youtube.com/playlist?list=PL0nX4ZoMtjYFuTnUcwv0aFnxN9pEyjVez
Two of the most mission-critical areas where ML is making a real-world impact today are:
1. 🔎 Credit Scoring
Traditional credit scoring often overlooks those without a deep financial history. With ML:
We analyze alternative data (e.g., transaction patterns, mobile usage, utility payments)
Apply classification algorithms to predict creditworthiness
Enable inclusive lending for underbanked populations
✅ Outcome: More accurate risk assessment + financial inclusion.
---
2. 🛡️ Fraud Detection
Fraudsters evolve fast. ML evolves faster.
We train models on millions of transactions, identifying subtle anomalies
Use a mix of real-time classification, unsupervised anomaly detection, and behavioral modeling
Continuously improve through feedback loops and active learning
🚨 ML helps flag suspicious activity before it turns into loss.
---
🔧 Tech Stack: Python | Scikit-learn | XGBoost | SHAP | FastAPI | Streamlit | AWS
🔄 The future of fintech is predictive, not reactive.
If you’re building intelligent financial systems—whether it’s for lending, fraud prevention, or personalization—let’s connect and exchange notes. 🚀
#Fintech #MachineLearning #CreditScoring #FraudDetection #ArtificialIntelligence #DataScience #FinancialInclusion #ResponsibleAI #Python #MLinFinance
FinTech ML Labs: https://www.youtube.com/playlist?list=PL0nX4ZoMtjYFuTnUcwv0aFnxN9pEyjVez
Two of the most mission-critical areas where ML is making a real-world impact today are:
1. 🔎 Credit Scoring
Traditional credit scoring often overlooks those without a deep financial history. With ML:
We analyze alternative data (e.g., transaction patterns, mobile usage, utility payments)
Apply classification algorithms to predict creditworthiness
Enable inclusive lending for underbanked populations
✅ Outcome: More accurate risk assessment + financial inclusion.
---
2. 🛡️ Fraud Detection
Fraudsters evolve fast. ML evolves faster.
We train models on millions of transactions, identifying subtle anomalies
Use a mix of real-time classification, unsupervised anomaly detection, and behavioral modeling
Continuously improve through feedback loops and active learning
🚨 ML helps flag suspicious activity before it turns into loss.
---
🔧 Tech Stack: Python | Scikit-learn | XGBoost | SHAP | FastAPI | Streamlit | AWS
🔄 The future of fintech is predictive, not reactive.
If you’re building intelligent financial systems—whether it’s for lending, fraud prevention, or personalization—let’s connect and exchange notes. 🚀
#Fintech #MachineLearning #CreditScoring #FraudDetection #ArtificialIntelligence #DataScience #FinancialInclusion #ResponsibleAI #Python #MLinFinance
YouTube
FinTech ML Labs
🚀 Welcome to FinTech ML Labs – where Python meets real-world finance. Are you ready to go beyond theory and start building actual machine learning systems us...
🚀 Machine Learning for Customer Churn Prediction
https://youtu.be/da_xqw1oAD8
Understanding why customers leave is just as important as knowing why they stay.
With machine learning, businesses can spot early signs of churn—like drop in activity or purchase frequency—and take action before it’s too late.
Smarter retention starts with smarter prediction. 💡
#MachineLearning #CustomerChurn #AI #DataScience #BusinessIntelligence
https://youtu.be/da_xqw1oAD8
Understanding why customers leave is just as important as knowing why they stay.
With machine learning, businesses can spot early signs of churn—like drop in activity or purchase frequency—and take action before it’s too late.
Smarter retention starts with smarter prediction. 💡
#MachineLearning #CustomerChurn #AI #DataScience #BusinessIntelligence
YouTube
Customer Churn Prediction with Machine Learning | ML FinTech Project for Beginners
Learn how to build and evaluate machine learning models for customer churn prediction using Python. In this step-by-step tutorial, we explore Logistic Regression, Random Forest, and XGBoost to classify customers who churn using the popular Telco Customer…
❤4👍3