What is your favorite machine learning project that you've worked on, and what made it memorable?
Share your experience below! π
Share your experience below! π
Data Science Projects
What is your favorite machine learning project that you've worked on, and what made it memorable? Share your experience below! π
This is a simple example of ML Project with the steps involved ππ
https://t.iss.one/datasciencefun/1800
https://t.iss.one/datasciencefun/1800
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How do you stay updated with the latest advancements in machine learning and AI?
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Some helpful Data science projects for beginners
https://www.kaggle.com/c/house-prices-advanced-regression-techniques
https://www.kaggle.com/c/digit-recognizer
https://www.kaggle.com/c/titanic
BEST RESOURCES TO LEARN DATA SCIENCE AND MACHINE LEARNING FOR FREE
https://developers.google.com/machine-learning/crash-course
https://www.kaggle.com/learn/overview
https://forums.fast.ai/t/recommended-python-learning-resources/26888
https://www.fast.ai/
https://imp.i115008.net/JrBjZR
https://ern.li/OP/1qvkxbfaxqj
ENJOY LEARNING ππ
https://www.kaggle.com/c/house-prices-advanced-regression-techniques
https://www.kaggle.com/c/digit-recognizer
https://www.kaggle.com/c/titanic
BEST RESOURCES TO LEARN DATA SCIENCE AND MACHINE LEARNING FOR FREE
https://developers.google.com/machine-learning/crash-course
https://www.kaggle.com/learn/overview
https://forums.fast.ai/t/recommended-python-learning-resources/26888
https://www.fast.ai/
https://imp.i115008.net/JrBjZR
https://ern.li/OP/1qvkxbfaxqj
ENJOY LEARNING ππ
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Free Projects to Practice Data Analysis and Python Skills
Here are free hands-on projects from Coursera with no trial periods or card attachments required.
Each project takes about 8 hours to complete.
1. Web Scraping and Analyzing Data Analyst Job Listings with Python
In this project, you will help a recruitment agency find suitable job listings for their clients, giving them an edge over other job seekers. You'll need to extract job listing data from several websites, visualize, and analyze it.
π https://bit.ly/3W3jFRB
2. Analyzing Social Media Usage Data with Python
In this project, you will work as a data analyst at a marketing firm specializing in brand promotion on social media. Your task is to use Python to extract, clean, and analyze tweets in specific categories (health, family, food, etc.) and create visualizations.
π https://bit.ly/4bM1xlh
Here are free hands-on projects from Coursera with no trial periods or card attachments required.
Each project takes about 8 hours to complete.
1. Web Scraping and Analyzing Data Analyst Job Listings with Python
In this project, you will help a recruitment agency find suitable job listings for their clients, giving them an edge over other job seekers. You'll need to extract job listing data from several websites, visualize, and analyze it.
π https://bit.ly/3W3jFRB
2. Analyzing Social Media Usage Data with Python
In this project, you will work as a data analyst at a marketing firm specializing in brand promotion on social media. Your task is to use Python to extract, clean, and analyze tweets in specific categories (health, family, food, etc.) and create visualizations.
π https://bit.ly/4bM1xlh
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Explain the features of Python / Say something about the benefits of using Python?
Python is a MUST for students and working professionals to become a great Software Engineer specially when they are working in Web Development Domain. I will list down some of the key advantages of learning Python:
β Simple and easy to learn:
* Learning python programming language is easy and fun.
* Compared to other language, like, Java or C++, its syntax is a way lot easier.
* You also donβt have to worry about the missing semicolons (;) in the end!
* It is more expressive means that it is more understandable and readable.
* Python is a great language for the beginner-level programmers.
* It supports the development of a wide range of applications from simple text processing to WWW browsers to games.
* Easy-to-learn β Python has few keywords, simple structure, and a clearly defined syntax. This makes it easy for Beginners to pick up the language quickly.
* Easy-to-read β Python code is more clearly defined and readable. It's almost like plain and simple English.
* Easy-to-maintain β Python's source code is fairly easy-to-maintain.
Features of Python
β Python is Interpreted β
* Python is processed at runtime by the interpreter.
* You do not need to compile your program before executing it. This is similar to PERL and PHP.
β Python is Interactive β
* Python has support for an interactive mode which allows interactive testing and debugging of snippets of code.
* You can open the interactive terminal also referred to as Python prompt and interact with the interpreter directly to write your programs.
β Python is Object-Oriented β
* Python not only supports functional and structured programming methods, but Object Oriented Principles.
β Scripting Language β
* Python can be used as a scripting language or it can be compliled to byte-code for building large applications.
β Dynammic language β
* It provides very high-level dynamic data types and supports dynamic type checking.
β Garbage collection β
* Garbage collection is a process where the objects that are no longer reachable are freed from memory.
* Memory management is very important while writing programs and python supports automatic garbage collection, which is one of the main problems in writing programs using C & C++.
β Large Open Source Community β
* Python has a large open source community and which is one of its main strength.
* And its libraries, from open source 118 thousand plus and counting.
* If you are stuck with an issue, you donβt have to worry at all because python has a huge community for help. So, if you have any queries, you can directly seek help from millions of python community members.
* A broad standard library β Python's bulk of the library is very portable and cross-platform compatible on UNIX, Windows, and Macintosh.
* Extendable β You can add low-level modules to the Python interpreter. These modules enable programmers to add to or customize their tools to be more efficient.
β Cross-platform Language β
* Python is a Cross-platform language or Portable language.
* Python can run on a wide variety of hardware platforms and has the same interface on all platforms.
* Python can run on different platforms such as Windows, Linux, Unix and Macintosh etc.
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What type of project do you enjoy working on the most?
1. Personal projects
2. Open-source contributions
3. Freelance work
4. Corporate projects
5. Academic projects
If any other, add in comments ππ
1. Personal projects
2. Open-source contributions
3. Freelance work
4. Corporate projects
5. Academic projects
If any other, add in comments ππ
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Data Analytics is a wild career. One minute you're doing fancy product experimentation, statistics, and ML... and the next minute you're spending hours copying and pasting into an Excel doc while people tell you to hurry up.
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SQL Interview Question for #DataScience:
A company has provided sales data containing information about customer purchases, as shown in the table below.
Your task is to:
Calculate Total Revenue
Calculate Total Sales by Product
Find Top Customers by Revenue
Solve it using SQL
A company has provided sales data containing information about customer purchases, as shown in the table below.
Your task is to:
Calculate Total Revenue
Calculate Total Sales by Product
Find Top Customers by Revenue
Solve it using SQL
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Hi Guys,
Here are some of the telegram channels which may help you in data analytics journey ππ
SQL: https://t.iss.one/sqlanalyst
Power BI & Tableau: https://t.iss.one/PowerBI_analyst
Excel: https://t.iss.one/excel_analyst
Python: https://t.iss.one/dsabooks
Jobs: https://t.iss.one/jobs_SQL
Data Science: https://t.iss.one/datasciencefree
Artificial intelligence: https://t.iss.one/machinelearning_deeplearning
Data Engineering: https://t.iss.one/sql_engineer
Hope it helps :)
Here are some of the telegram channels which may help you in data analytics journey ππ
SQL: https://t.iss.one/sqlanalyst
Power BI & Tableau: https://t.iss.one/PowerBI_analyst
Excel: https://t.iss.one/excel_analyst
Python: https://t.iss.one/dsabooks
Jobs: https://t.iss.one/jobs_SQL
Data Science: https://t.iss.one/datasciencefree
Artificial intelligence: https://t.iss.one/machinelearning_deeplearning
Data Engineering: https://t.iss.one/sql_engineer
Hope it helps :)
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Future Trends in Artificial Intelligence ππ
1. AI in healthcare: With the increasing demand for personalized medicine and precision healthcare, AI is expected to play a crucial role in analyzing large amounts of medical data to diagnose diseases, develop treatment plans, and predict patient outcomes.
2. AI in finance: AI-powered solutions are expected to revolutionize the financial industry by improving fraud detection, risk assessment, and customer service. Robo-advisors and algorithmic trading are also likely to become more prevalent.
3. AI in autonomous vehicles: The development of self-driving cars and other autonomous vehicles will rely heavily on AI technologies such as computer vision, natural language processing, and machine learning to navigate and make decisions in real-time.
4. AI in manufacturing: The use of AI and robotics in manufacturing processes is expected to increase efficiency, reduce errors, and enable the automation of complex tasks.
5. AI in customer service: Chatbots and virtual assistants powered by AI are anticipated to become more sophisticated, providing personalized and efficient customer support across various industries.
6. AI in agriculture: AI technologies can be used to optimize crop yields, monitor plant health, and automate farming processes, contributing to sustainable and efficient agricultural practices.
7. AI in cybersecurity: As cyber threats continue to evolve, AI-powered solutions will be crucial for detecting and responding to security breaches in real-time, as well as predicting and preventing future attacks.
Like for more β€οΈ
Artificial Intelligence
1. AI in healthcare: With the increasing demand for personalized medicine and precision healthcare, AI is expected to play a crucial role in analyzing large amounts of medical data to diagnose diseases, develop treatment plans, and predict patient outcomes.
2. AI in finance: AI-powered solutions are expected to revolutionize the financial industry by improving fraud detection, risk assessment, and customer service. Robo-advisors and algorithmic trading are also likely to become more prevalent.
3. AI in autonomous vehicles: The development of self-driving cars and other autonomous vehicles will rely heavily on AI technologies such as computer vision, natural language processing, and machine learning to navigate and make decisions in real-time.
4. AI in manufacturing: The use of AI and robotics in manufacturing processes is expected to increase efficiency, reduce errors, and enable the automation of complex tasks.
5. AI in customer service: Chatbots and virtual assistants powered by AI are anticipated to become more sophisticated, providing personalized and efficient customer support across various industries.
6. AI in agriculture: AI technologies can be used to optimize crop yields, monitor plant health, and automate farming processes, contributing to sustainable and efficient agricultural practices.
7. AI in cybersecurity: As cyber threats continue to evolve, AI-powered solutions will be crucial for detecting and responding to security breaches in real-time, as well as predicting and preventing future attacks.
Like for more β€οΈ
Artificial Intelligence
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What's your favorite approach to learning new technologies?
1. Online courses
2. Tutorials and documentation
3. Books
4. Hands-on projects
5. Community forums and meetups
If any other, add in comments ππ
1. Online courses
2. Tutorials and documentation
3. Books
4. Hands-on projects
5. Community forums and meetups
If any other, add in comments ππ
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Hereβs a detailed breakdown of critical roles and their associated responsibilities:
π Data Engineer: Tailored for Data Enthusiasts
1. Data Ingestion: Acquire proficiency in data handling techniques.
2. Data Validation: Master the art of data quality assurance.
3. Data Cleansing: Learn advanced data cleaning methodologies.
4. Data Standardisation: Grasp the principles of data formatting.
5. Data Curation: Efficiently organise and manage datasets.
π Data Scientist: Suited for Analytical Minds
6. Feature Extraction: Hone your skills in identifying data patterns.
7. Feature Selection: Master techniques for efficient feature selection.
8. Model Exploration: Dive into the realm of model selection methodologies.
π Data Scientist & ML Engineer: Designed for Coding Enthusiasts
9. Coding Proficiency: Develop robust programming skills.
10. Model Training: Understand the intricacies of model training.
11. Model Validation: Explore various model validation techniques.
12. Model Evaluation: Master the art of evaluating model performance.
13. Model Refinement: Refine and improve candidate models.
14. Model Selection: Learn to choose the most suitable model for a given task.
π ML Engineer: Tailored for Deployment Enthusiasts
15. Model Packaging: Acquire knowledge of essential packaging techniques.
16. Model Registration: Master the process of model tracking and registration.
17. Model Containerisation: Understand the principles of containerisation.
18. Model Deployment: Explore strategies for effective model deployment.
These roles encompass diverse facets of Data and ML, catering to various interests and skill sets. Delve into these domains, identify your passions, and customise your learning journey accordingly.
π Data Engineer: Tailored for Data Enthusiasts
1. Data Ingestion: Acquire proficiency in data handling techniques.
2. Data Validation: Master the art of data quality assurance.
3. Data Cleansing: Learn advanced data cleaning methodologies.
4. Data Standardisation: Grasp the principles of data formatting.
5. Data Curation: Efficiently organise and manage datasets.
π Data Scientist: Suited for Analytical Minds
6. Feature Extraction: Hone your skills in identifying data patterns.
7. Feature Selection: Master techniques for efficient feature selection.
8. Model Exploration: Dive into the realm of model selection methodologies.
π Data Scientist & ML Engineer: Designed for Coding Enthusiasts
9. Coding Proficiency: Develop robust programming skills.
10. Model Training: Understand the intricacies of model training.
11. Model Validation: Explore various model validation techniques.
12. Model Evaluation: Master the art of evaluating model performance.
13. Model Refinement: Refine and improve candidate models.
14. Model Selection: Learn to choose the most suitable model for a given task.
π ML Engineer: Tailored for Deployment Enthusiasts
15. Model Packaging: Acquire knowledge of essential packaging techniques.
16. Model Registration: Master the process of model tracking and registration.
17. Model Containerisation: Understand the principles of containerisation.
18. Model Deployment: Explore strategies for effective model deployment.
These roles encompass diverse facets of Data and ML, catering to various interests and skill sets. Delve into these domains, identify your passions, and customise your learning journey accordingly.
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What kind of problems neural nets can solve?
Neural nets are good at solving non-linear problems. Some good examples are problems that are relatively easy for humans (because of experience, intuition, understanding, etc), but difficult for traditional regression models: speech recognition, handwriting recognition, image identification, etc.
Neural nets are good at solving non-linear problems. Some good examples are problems that are relatively easy for humans (because of experience, intuition, understanding, etc), but difficult for traditional regression models: speech recognition, handwriting recognition, image identification, etc.
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