Machine Learning Glossary
This glossary defines general machine learning terms, plus terms specific to TensorFlow
https://developers.google.com/machine-learning/glossary/#convolutional_neural_network
This glossary defines general machine learning terms, plus terms specific to TensorFlow
https://developers.google.com/machine-learning/glossary/#convolutional_neural_network
Google for Developers
Machine Learning Glossary | Google for Developers
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Batch - 2025 / 2024
Stipend: 1.5 Lakhs/month
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Batch - 2025 / 2024
Stipend: 1.5 Lakhs/month
Apply - https://bit.ly/Getjobss
7⃣ Free Certification Courses from Microsoft to try in 2023:
https://news.1rj.ru/str/free4unow_backup/644
https://news.1rj.ru/str/free4unow_backup/644
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20 AI Tools Students should know:
1. http://perplexity.ai → Research Assistant
2. http://hissab.io → Calculate Anything
3. http://otter.ai → Automate Lecture Notes
4. http://stepwisemath.ai → Math Tutor
5. http://scholarcy.com → Article Summarizer
6. http://caktus.ai → Study Tool
7. http://bookai.chat → Chat with Books
8. http://chatdoc.com → Chat with Documents
9. http://textero.ai → Essay Generator
10. http://jenni.ai → Write Research Papers
11. http://tome.app → Presentation Generator
12. http://plaito.ai → Personal Tutor
13. http://heyscience.ai → Scientific Research Assistant
14. http://wisdolia.com → Flashcard Generator
15. http://duolingo.com → Learn a Language
16. http://knowji.com → Learn Vocabulary
17. http://quillbot.com → Grammar Checker
18. http://consensus.app → Evidence-Based Answers
19. http://knewton.com → Adaptive Learning
20. http://grammarly.com → Plagiarism Checker
1. http://perplexity.ai → Research Assistant
2. http://hissab.io → Calculate Anything
3. http://otter.ai → Automate Lecture Notes
4. http://stepwisemath.ai → Math Tutor
5. http://scholarcy.com → Article Summarizer
6. http://caktus.ai → Study Tool
7. http://bookai.chat → Chat with Books
8. http://chatdoc.com → Chat with Documents
9. http://textero.ai → Essay Generator
10. http://jenni.ai → Write Research Papers
11. http://tome.app → Presentation Generator
12. http://plaito.ai → Personal Tutor
13. http://heyscience.ai → Scientific Research Assistant
14. http://wisdolia.com → Flashcard Generator
15. http://duolingo.com → Learn a Language
16. http://knowji.com → Learn Vocabulary
17. http://quillbot.com → Grammar Checker
18. http://consensus.app → Evidence-Based Answers
19. http://knewton.com → Adaptive Learning
20. http://grammarly.com → Plagiarism Checker
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🚦Top 10 Data Science Tools🚦
Here we will examine the top best Data Science tools that are utilized generally by data researchers and analysts. But prior to beginning let us discuss about what is Data Science.
🛰What is Data Science ?
Data science is a quickly developing field that includes the utilization of logical strategies, calculations, and frameworks to extract experiences and information from organized and unstructured data .
🗽Top Data Science Tools that are normally utilized :
1.) Jupyter Notebook : Jupyter Notebook is an open-source web application that permits clients to make and share archives that contain live code, conditions, representations, and narrative text .
2.) Keras : Keras is a famous open-source brain network library utilized in data science. It is known for its usability and adaptability.
Keras provides a range of tools and techniques for dealing with common data science problems, such as overfitting, underfitting, and regularization.
3.) PyTorch : PyTorch is one more famous open-source AI library utilized in information science. PyTorch also offers easy-to-use interfaces for various tasks such as data loading, model building, training, and deployment, making it accessible to beginners as well as experts in the field of machine learning.
4.) TensorFlow : TensorFlow allows data researchers to play out an extensive variety of AI errands, for example, image recognition , natural language processing , and deep learning.
5.) Spark : Spark allows data researchers to perform data processing tasks like data control, investigation, and machine learning , rapidly and effectively.
6.) Hadoop : Hadoop provides a distributed file system (HDFS) and a distributed processing framework (MapReduce) that permits data researchers to handle enormous datasets rapidly.
7.) Tableau : Tableau is a strong data representation tool that permits data researchers to make intuitive dashboards and perceptions. Tableau allows users to combine multiple charts.
8.) SQL : SQL (Structured Query Language) SQL permits data researchers to perform complex queries , join tables, and aggregate data, making it simple to extricate bits of knowledge from enormous datasets. It is a powerful tool for data management, especially for large datasets.
9.) Power BI : Power BI is a business examination tool that conveys experiences and permits clients to make intuitive representations and reports without any problem.
10.) Excel : Excel is a spreadsheet program that broadly utilized in data science. It is an amazing asset for information the board, examination, and visualization .Excel can be used to explore the data by creating pivot tables, histograms, scatterplots, and other types of visualizations.
Here we will examine the top best Data Science tools that are utilized generally by data researchers and analysts. But prior to beginning let us discuss about what is Data Science.
🛰What is Data Science ?
Data science is a quickly developing field that includes the utilization of logical strategies, calculations, and frameworks to extract experiences and information from organized and unstructured data .
🗽Top Data Science Tools that are normally utilized :
1.) Jupyter Notebook : Jupyter Notebook is an open-source web application that permits clients to make and share archives that contain live code, conditions, representations, and narrative text .
2.) Keras : Keras is a famous open-source brain network library utilized in data science. It is known for its usability and adaptability.
Keras provides a range of tools and techniques for dealing with common data science problems, such as overfitting, underfitting, and regularization.
3.) PyTorch : PyTorch is one more famous open-source AI library utilized in information science. PyTorch also offers easy-to-use interfaces for various tasks such as data loading, model building, training, and deployment, making it accessible to beginners as well as experts in the field of machine learning.
4.) TensorFlow : TensorFlow allows data researchers to play out an extensive variety of AI errands, for example, image recognition , natural language processing , and deep learning.
5.) Spark : Spark allows data researchers to perform data processing tasks like data control, investigation, and machine learning , rapidly and effectively.
6.) Hadoop : Hadoop provides a distributed file system (HDFS) and a distributed processing framework (MapReduce) that permits data researchers to handle enormous datasets rapidly.
7.) Tableau : Tableau is a strong data representation tool that permits data researchers to make intuitive dashboards and perceptions. Tableau allows users to combine multiple charts.
8.) SQL : SQL (Structured Query Language) SQL permits data researchers to perform complex queries , join tables, and aggregate data, making it simple to extricate bits of knowledge from enormous datasets. It is a powerful tool for data management, especially for large datasets.
9.) Power BI : Power BI is a business examination tool that conveys experiences and permits clients to make intuitive representations and reports without any problem.
10.) Excel : Excel is a spreadsheet program that broadly utilized in data science. It is an amazing asset for information the board, examination, and visualization .Excel can be used to explore the data by creating pivot tables, histograms, scatterplots, and other types of visualizations.
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Complete Roadmap with Free Resources to become a data analyst
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https://www.linkedin.com/posts/sql-analysts_dataanalysts-sql-python-activity-7111579206714572800-Hbmw?utm_source=share&utm_medium=member_android
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https://www.linkedin.com/posts/sql-analysts_dataanalysts-sql-python-activity-7111579206714572800-Hbmw?utm_source=share&utm_medium=member_android
Important SQL concepts to become a data analyst
👇👇
https://www.linkedin.com/posts/sql-analysts_data-analysts-activity-7111254842974613504-X0cj
Important Python concepts to become a data analyst
👇👇
https://www.linkedin.com/posts/sql-analysts_python-for-data-analysis-activity-7111251746722623488-bff0?utm_source=share&utm_medium=member_android
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https://www.linkedin.com/posts/sql-analysts_data-analysts-activity-7111254842974613504-X0cj
Important Python concepts to become a data analyst
👇👇
https://www.linkedin.com/posts/sql-analysts_python-for-data-analysis-activity-7111251746722623488-bff0?utm_source=share&utm_medium=member_android
ML For Beginners
12 weeks, 26 lessons, 52 quizzes, classic Machine Learning for all
Creator: microsoft
Stars ⭐️: 53.7k
Forked By: 11.3k
https://github.com/microsoft/ML-For-Beginners
12 weeks, 26 lessons, 52 quizzes, classic Machine Learning for all
Creator: microsoft
Stars ⭐️: 53.7k
Forked By: 11.3k
https://github.com/microsoft/ML-For-Beginners
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Who is Data Scientist?
He/she is responsible for collecting, analyzing and interpreting the results, through a large amount of data. This process is used to take an important decision for the business, which can affect the growth and help to face compititon in the market.
A data scientist analyzes data to extract actionable insight from it. More specifically, a data scientist:
Determines correct datasets and variables.
Identifies the most challenging data-analytics problems.
Collects large sets of data- structured and unstructured, from different sources.
Cleans and validates data ensuring accuracy, completeness, and uniformity.
Builds and applies models and algorithms to mine stores of big data.
Analyzes data to recognize patterns and trends.
Interprets data to find solutions.
Communicates findings to stakeholders using tools like visualization.
He/she is responsible for collecting, analyzing and interpreting the results, through a large amount of data. This process is used to take an important decision for the business, which can affect the growth and help to face compititon in the market.
A data scientist analyzes data to extract actionable insight from it. More specifically, a data scientist:
Determines correct datasets and variables.
Identifies the most challenging data-analytics problems.
Collects large sets of data- structured and unstructured, from different sources.
Cleans and validates data ensuring accuracy, completeness, and uniformity.
Builds and applies models and algorithms to mine stores of big data.
Analyzes data to recognize patterns and trends.
Interprets data to find solutions.
Communicates findings to stakeholders using tools like visualization.
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