Here are 5 beginner-friendly data science project ideas
Loan Approval Prediction
Predict whether a loan will be approved based on customer demographic and financial data. This requires data preprocessing, feature engineering, and binary classification techniques.
Credit Card Fraud Detection
Detect fraudulent credit card transactions with a dataset that contains transactions made by credit cards. This is a good project for learning about imbalanced datasets and anomaly detection methods.
Netflix Movies and TV Shows Analysis
Analyze Netflix's movies and TV shows to discover trends in ratings, popularity, and genre distributions. Visualization tools and exploratory data analysis are key components here.
Sentiment Analysis of Tweets
Analyze the sentiment of tweets to determine whether they are positive, negative, or neutral. This project involves natural language processing and working with text data.
Weather Data Analysis
Analyze historical weather data from the National Oceanic and Atmospheric Administration (NOAA) to look for seasonal trends, weather anomalies, or climate change indicators. This project involves time series analysis and data visualization.
Loan Approval Prediction
Predict whether a loan will be approved based on customer demographic and financial data. This requires data preprocessing, feature engineering, and binary classification techniques.
Credit Card Fraud Detection
Detect fraudulent credit card transactions with a dataset that contains transactions made by credit cards. This is a good project for learning about imbalanced datasets and anomaly detection methods.
Netflix Movies and TV Shows Analysis
Analyze Netflix's movies and TV shows to discover trends in ratings, popularity, and genre distributions. Visualization tools and exploratory data analysis are key components here.
Sentiment Analysis of Tweets
Analyze the sentiment of tweets to determine whether they are positive, negative, or neutral. This project involves natural language processing and working with text data.
Weather Data Analysis
Analyze historical weather data from the National Oceanic and Atmospheric Administration (NOAA) to look for seasonal trends, weather anomalies, or climate change indicators. This project involves time series analysis and data visualization.
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https://youtu.be/ZOJvKbbc6cw
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Find Customer Referee Leet Code | SQL Day 2 Where and COALESCE
Remove Consecutive Duplicates in Python from a list – Data Science With Ved
https://datasciencewithved.wordpress.com/2024/08/28/remove-consecutive-duplicates-in-python-from-a-list/
https://datasciencewithved.wordpress.com/2024/08/28/remove-consecutive-duplicates-in-python-from-a-list/
Data Science With Ved
Remove Consecutive Duplicates in Python from a list
When working with lists in Python, you might encounter a situation where you need to remove consecutive duplicate elements. Whether you’re processing data from a file, cleaning up user inputs…
📚 Understanding Linear Regression Through a Student’s Journey
Let’s take a trip back to your student days to understand linear regression, one of the most fundamental concepts in machine learning.
Alex, a dedicated student, is trying to predict their final exam score based on the number of hours they study each week. They gather data over the semester and notice a pattern—more hours studied generally leads to higher scores. To quantify this relationship, Alex uses linear regression.
What is Linear Regression?
Linear regression is like drawing a straight line through a scatterplot of data points that best predicts the dependent variable (exam scores) from the independent variable (study hours). The equation of the line looks like this:
Score= Intercept + Slope * Study Hours
Here, the intercept is the score Alex might expect with zero study hours (hopefully not too low!), and the slope shows how much the score increases with each additional hour of study.
Linear regression works under several assumptions:
1. Linearity: The relationship between study hours and exam scores should be linear. If Alex studies twice as much, their score should increase proportionally. But what if the benefit of extra hours diminishes over time? That’s where the linearity assumption can break down.
2. Independence: Each data point (study hours vs. exam score) should be independent of others. If Alex’s friends start influencing their study habits, this assumption might be violated.
3. Homoscedasticity: The variance of errors (differences between predicted and actual scores) should be consistent across all levels of study hours. If Alex’s predictions are more accurate for students who study a little but less accurate for those who study a lot, this assumption doesn’t hold.
4. Normality of Errors: The errors should follow a normal distribution. If the errors are skewed, it might suggest that factors beyond study hours are influencing scores.
Despite its simplicity, linear regression isn’t perfect. Here are a few limitations of linear regression.
- Non-Linearity:If the relationship between study hours and exam scores isn’t linear (e.g., diminishing returns after a certain point), linear regression might not capture the true pattern.
- Outliers: A few students who study a lot but still score poorly can heavily influence the regression line, leading to misleading predictions.
- Overfitting: If Alex adds too many variables (like study environment, type of study material, etc.), the model might become too complex, fitting the noise rather than the true signal.
In Alex’s case, while linear regression provides a simple and interpretable model, it’s important to remember these assumptions and limitations. By understanding them, Alex can better assess when to rely on linear regression and when it might be necessary to explore more advanced methods.
Let’s take a trip back to your student days to understand linear regression, one of the most fundamental concepts in machine learning.
Alex, a dedicated student, is trying to predict their final exam score based on the number of hours they study each week. They gather data over the semester and notice a pattern—more hours studied generally leads to higher scores. To quantify this relationship, Alex uses linear regression.
What is Linear Regression?
Linear regression is like drawing a straight line through a scatterplot of data points that best predicts the dependent variable (exam scores) from the independent variable (study hours). The equation of the line looks like this:
Score= Intercept + Slope * Study Hours
Here, the intercept is the score Alex might expect with zero study hours (hopefully not too low!), and the slope shows how much the score increases with each additional hour of study.
Linear regression works under several assumptions:
1. Linearity: The relationship between study hours and exam scores should be linear. If Alex studies twice as much, their score should increase proportionally. But what if the benefit of extra hours diminishes over time? That’s where the linearity assumption can break down.
2. Independence: Each data point (study hours vs. exam score) should be independent of others. If Alex’s friends start influencing their study habits, this assumption might be violated.
3. Homoscedasticity: The variance of errors (differences between predicted and actual scores) should be consistent across all levels of study hours. If Alex’s predictions are more accurate for students who study a little but less accurate for those who study a lot, this assumption doesn’t hold.
4. Normality of Errors: The errors should follow a normal distribution. If the errors are skewed, it might suggest that factors beyond study hours are influencing scores.
Despite its simplicity, linear regression isn’t perfect. Here are a few limitations of linear regression.
- Non-Linearity:If the relationship between study hours and exam scores isn’t linear (e.g., diminishing returns after a certain point), linear regression might not capture the true pattern.
- Outliers: A few students who study a lot but still score poorly can heavily influence the regression line, leading to misleading predictions.
- Overfitting: If Alex adds too many variables (like study environment, type of study material, etc.), the model might become too complex, fitting the noise rather than the true signal.
In Alex’s case, while linear regression provides a simple and interpretable model, it’s important to remember these assumptions and limitations. By understanding them, Alex can better assess when to rely on linear regression and when it might be necessary to explore more advanced methods.
🚨 Major Announcement: Mukesh Ambani to transform Rel'AI'ince into a deeptech company
He is focused on driving AI adoption across Reliance Industries Limited's operations through several initiatives:
➡️ Developing cost-effective generative AI models and partnering with tech companies to optimize AI inferencing
➡️ Introducing Jio Brain, a comprehensive suite of AI tools designed to enhance decision-making, predictions, and customer insights across Reliance’s ecosystem
➡️ Building a large-scale, AI-ready data center in Jamnagar, Gujarat, equipped with advanced AI inference facilities
➡️ Launching JioAI Cloud with a special Diwali offer of up to 100 GB of free cloud storage
➡️ Collaborating with Jio Institute to create AI programs for upskilling
➡️ Introducing "Hello Jio," a generative AI voice assistant integrated with JioTV OS to help users find content on Jio set-top boxes
➡️ Launching "JioPhoneCall AI," a feature that uses generative AI to transcribe, summarize, and translate phone calls.
He is focused on driving AI adoption across Reliance Industries Limited's operations through several initiatives:
➡️ Developing cost-effective generative AI models and partnering with tech companies to optimize AI inferencing
➡️ Introducing Jio Brain, a comprehensive suite of AI tools designed to enhance decision-making, predictions, and customer insights across Reliance’s ecosystem
➡️ Building a large-scale, AI-ready data center in Jamnagar, Gujarat, equipped with advanced AI inference facilities
➡️ Launching JioAI Cloud with a special Diwali offer of up to 100 GB of free cloud storage
➡️ Collaborating with Jio Institute to create AI programs for upskilling
➡️ Introducing "Hello Jio," a generative AI voice assistant integrated with JioTV OS to help users find content on Jio set-top boxes
➡️ Launching "JioPhoneCall AI," a feature that uses generative AI to transcribe, summarize, and translate phone calls.
Making all my interview experiences public so that I am forced to learn new things :)
Machine Learning
1. Explain 'irreducible error' with the help of a real life example
2. What two models are compared while calculating R2 in a regression setup?
3. How do you evaluate clustering algorithms?
4. What is Gini and Cross-entropy? What are the minimum and maximum value for both?
5. What does MA component mean in ARIMA models?
6. You are a senior data scientist and one of your team members suggests you to use KNN with 70:30 train test split , what must you immediately correct in his approach?
AWS & DevOps
1. Run time limit for Lambda functions.
2. What do you mean by a serverless architecture?
3. Tell me any four Docker commands.
4. What is Git Checkout?
5. How does ECS help container orchestration and how could you make it serverless?
6. Can you run a docker image locally?
Generative AI
1. Most important reason why one may just still use RAG when you have LLMs offering context window in million tokens
2. How do you handle a situation when tokens in your retrieved context exceed tokens that your LLM supports?
3. What is context precision and context recall in the context of RAG?
4. What is hybrid search and what are the advantages / limitations?
5. What inputs are shared when you do recursive chunking?
Machine Learning
1. Explain 'irreducible error' with the help of a real life example
2. What two models are compared while calculating R2 in a regression setup?
3. How do you evaluate clustering algorithms?
4. What is Gini and Cross-entropy? What are the minimum and maximum value for both?
5. What does MA component mean in ARIMA models?
6. You are a senior data scientist and one of your team members suggests you to use KNN with 70:30 train test split , what must you immediately correct in his approach?
AWS & DevOps
1. Run time limit for Lambda functions.
2. What do you mean by a serverless architecture?
3. Tell me any four Docker commands.
4. What is Git Checkout?
5. How does ECS help container orchestration and how could you make it serverless?
6. Can you run a docker image locally?
Generative AI
1. Most important reason why one may just still use RAG when you have LLMs offering context window in million tokens
2. How do you handle a situation when tokens in your retrieved context exceed tokens that your LLM supports?
3. What is context precision and context recall in the context of RAG?
4. What is hybrid search and what are the advantages / limitations?
5. What inputs are shared when you do recursive chunking?
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𝗠𝗮𝘀𝘁𝗲𝗿 𝗦𝗤𝗟 𝗪𝗶𝗻𝗱𝗼𝘄 𝗙𝘂𝗻𝗰𝘁𝗶𝗼𝗻𝘀 🌟
SQL window functions are key to cracking technical interviews and optimizing your SQL queries. They’re often a focal point in data-focused roles, where showing your knowledge of these functions can set you apart. By mastering these functions, you can solve complex problems efficiently and design more effective databases, making you a valuable asset in any data-driven organization.
To make it easier to understand, I have divided SQL window functions into three main categories: Aggregate, Ranking, and Value functions.
1. 𝗔𝗴𝗴𝗿𝗲𝗴𝗮𝘁𝗲 𝗙𝘂𝗻𝗰𝘁𝗶𝗼𝗻𝘀
Aggregate functions like AVG(), SUM(), COUNT(), MIN(), and MAX() compute values over a specified window, such as running totals or averages. These functions help optimize queries that require complex calculations while retaining row-level details.
2. 𝗥𝗮𝗻𝗸𝗶𝗻𝗴 𝗙𝘂𝗻𝗰𝘁𝗶𝗼𝗻𝘀
Ranking functions such as ROW_NUMBER(), RANK(), and DENSE_RANK() assign ranks, dense ranks, or row numbers based on a specified order within a partition. These are crucial for solving common interview problems and creating optimized queries for ordered datasets.
3. 𝗩𝗮𝗹𝘂𝗲 𝗙𝘂𝗻𝗰𝘁𝗶𝗼𝗻𝘀
Value functions like LAG(), LEAD(), FIRST_VALUE(), and LAST_VALUE() allow you to access specific rows within your window. These functions are essential for trend analysis, comparisons, and detecting changes over time.
I’ve broken down each category with examples, sample code, expected output, interview questions, and even ChatGPT prompts to help you dive deeper into SQL window functions. Whether you're preparing for an interview or looking to optimize your SQL queries, understanding these functions is a game-changer.
SQL window functions are key to cracking technical interviews and optimizing your SQL queries. They’re often a focal point in data-focused roles, where showing your knowledge of these functions can set you apart. By mastering these functions, you can solve complex problems efficiently and design more effective databases, making you a valuable asset in any data-driven organization.
To make it easier to understand, I have divided SQL window functions into three main categories: Aggregate, Ranking, and Value functions.
1. 𝗔𝗴𝗴𝗿𝗲𝗴𝗮𝘁𝗲 𝗙𝘂𝗻𝗰𝘁𝗶𝗼𝗻𝘀
Aggregate functions like AVG(), SUM(), COUNT(), MIN(), and MAX() compute values over a specified window, such as running totals or averages. These functions help optimize queries that require complex calculations while retaining row-level details.
2. 𝗥𝗮𝗻𝗸𝗶𝗻𝗴 𝗙𝘂𝗻𝗰𝘁𝗶𝗼𝗻𝘀
Ranking functions such as ROW_NUMBER(), RANK(), and DENSE_RANK() assign ranks, dense ranks, or row numbers based on a specified order within a partition. These are crucial for solving common interview problems and creating optimized queries for ordered datasets.
3. 𝗩𝗮𝗹𝘂𝗲 𝗙𝘂𝗻𝗰𝘁𝗶𝗼𝗻𝘀
Value functions like LAG(), LEAD(), FIRST_VALUE(), and LAST_VALUE() allow you to access specific rows within your window. These functions are essential for trend analysis, comparisons, and detecting changes over time.
I’ve broken down each category with examples, sample code, expected output, interview questions, and even ChatGPT prompts to help you dive deeper into SQL window functions. Whether you're preparing for an interview or looking to optimize your SQL queries, understanding these functions is a game-changer.
ARIMA is easier than you think.
Explained in 3 minutes.
ARIMA stands for AutoRegressive Integrated Moving Average. It’s a popular method used for forecasting time series data.
In simple terms, ARIMA helps us predict future values based on past data. It combines three main components: autoregression, differencing, and moving averages.
Let's breakdown those three parts:
1️⃣ Autoregression means we use past values to predict future ones.
2️⃣ Differencing helps to make the data stationary, which means it has a consistent mean over time.
3️⃣ Moving averages smooth out short-term fluctuations.
Using ARIMA can help you make better decisions, manage inventory, and boost profits. It’s a powerful tool for anyone looking to understand trends in their data!
Explained in 3 minutes.
ARIMA stands for AutoRegressive Integrated Moving Average. It’s a popular method used for forecasting time series data.
In simple terms, ARIMA helps us predict future values based on past data. It combines three main components: autoregression, differencing, and moving averages.
Let's breakdown those three parts:
1️⃣ Autoregression means we use past values to predict future ones.
2️⃣ Differencing helps to make the data stationary, which means it has a consistent mean over time.
3️⃣ Moving averages smooth out short-term fluctuations.
Using ARIMA can help you make better decisions, manage inventory, and boost profits. It’s a powerful tool for anyone looking to understand trends in their data!
https://youtu.be/ZOJvKbbc6cw
Hi guys a lot of you have not subscribed my channel yet. If you're reading this message then don't forget to subscribe my channel and comment your views. At least half of you go and subscribe my channel.
Thank you in advance
Hi guys a lot of you have not subscribed my channel yet. If you're reading this message then don't forget to subscribe my channel and comment your views. At least half of you go and subscribe my channel.
Thank you in advance
YouTube
Find Customer Referee Leet Code | SQL Day 2 Where and COALESCE
Forwarded from AI Jobs (Artificial Intelligence)
Recently, I completed two rounds of technical interviews for an ML Engineer role focused on LLMs, which pushed me to dive deep into concepts like attention mechanisms, tokenization, RAG, and GPU parallelism. I ended up creating a 30-page document of notes to organize my learnings.
To further solidify these concepts, I built three projects:
1️⃣ Two follow-along RAG-based "ChatPDF" projects with slight variations—one using Google Gen AI + FAISS, and another using HuggingFace + Pinecone.
2️⃣ A custom web scraper project that creates a vector store from website data and leverages advanced RAG techniques (like top-k retrieval and reranking) to provide LLM-driven answers for queries about the website.
Although the company ultimately chose another candidate who better matched their specific requirements, I received positive feedback on both rounds, and I’m excited to continue building on what I’ve learned. Onward and upward!
Notes: https://lnkd.in/dAvJjawc
Google Gen AI + FAISS+ Streamlit: https://lnkd.in/d7hPEz8c
Huggingface + Pinecone:https://lnkd.in/dgbJTSpq
Web scraper + Advanced RAG: https://lnkd.in/ddJfbBcF
P.S. you would need your own API keys for Google Gen AI, Pinecone and Cohere. All these are free to use for the purposes of small projects and for learning.
To further solidify these concepts, I built three projects:
1️⃣ Two follow-along RAG-based "ChatPDF" projects with slight variations—one using Google Gen AI + FAISS, and another using HuggingFace + Pinecone.
2️⃣ A custom web scraper project that creates a vector store from website data and leverages advanced RAG techniques (like top-k retrieval and reranking) to provide LLM-driven answers for queries about the website.
Although the company ultimately chose another candidate who better matched their specific requirements, I received positive feedback on both rounds, and I’m excited to continue building on what I’ve learned. Onward and upward!
Notes: https://lnkd.in/dAvJjawc
Google Gen AI + FAISS+ Streamlit: https://lnkd.in/d7hPEz8c
Huggingface + Pinecone:https://lnkd.in/dgbJTSpq
Web scraper + Advanced RAG: https://lnkd.in/ddJfbBcF
P.S. you would need your own API keys for Google Gen AI, Pinecone and Cohere. All these are free to use for the purposes of small projects and for learning.
lnkd.in
LinkedIn
This link will take you to a page that’s not on LinkedIn
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Forwarded from Machine Learning And AI
https://youtu.be/ZOJvKbbc6cw
Hi guys a lot of you have not subscribed my channel yet. If you're reading this message then don't forget to subscribe my channel and comment your views. At least half of you go and subscribe my channel.
Thank you in advance
Hi guys a lot of you have not subscribed my channel yet. If you're reading this message then don't forget to subscribe my channel and comment your views. At least half of you go and subscribe my channel.
Thank you in advance
YouTube
Find Customer Referee Leet Code | SQL Day 2 Where and COALESCE
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