EPYTHONLAB Telegram 2002
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💰 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


âś… Outcome: More accurate risk assessment + financial inclusion.


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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.


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đź”§ 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



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💰 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


âś… 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.


---

đź”§ 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

BY Epython Lab




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Telegram has announced a number of measures aiming to tackle the spread of disinformation through its platform in Brazil. These features are part of an agreement between the platform and the country's authorities ahead of the elections in October. A new window will come up. Enter your channel name and bio. (See the character limits above.) Click “Create.” Clear So far, more than a dozen different members have contributed to the group, posting voice notes of themselves screaming, yelling, groaning, and wailing in various pitches and rhythms. With the “Bear Market Screaming Therapy Group,” we’ve now transcended language.
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