Popular Data Science Tools

classic Classic list List threaded Threaded
5 messages Options
Reply | Threaded
Open this post in threaded view
|

Popular Data Science Tools

datasicdnvfdvdsv
Data science involves a variety of tools used across different stages — from data collection and cleaning to modeling and visualization. Here's a categorized overview of the most commonly used tools:

1. Programming Languages

Python – Most popular for its simplicity and rich ecosystem (NumPy, Pandas, scikit-learn, TensorFlow).

R – Preferred for statistical analysis and visualization (ggplot2, dplyr, caret).

SQL – Essential for querying structured databases.

2. Data Manipulation & Analysis

Pandas – Data manipulation in Python.

NumPy – Efficient numerical computing.

Excel – Basic analysis, especially for small datasets.

Apache Spark – Large-scale data processing and analytics.

3. Machine Learning & Deep Learning

scikit-learn – Standard library for ML algorithms in Python.

TensorFlow – Google's library for deep learning and neural networks.

Keras – High-level neural network API running on top of TensorFlow.

PyTorch – Flexible and widely used for research and production.

XGBoost/LightGBM – Gradient boosting frameworks for high-performance modeling.

4. Data Visualization

Matplotlib & Seaborn – Python libraries for visualizing data. ALso explore Data Quality Management

Tableau – Drag-and-drop BI and dashboard tool.

Power BI – Microsoft’s business intelligence platform.

Plotly – Interactive web-based visualizations in Python or R.

5. Data Storage & Databases

MySQL / PostgreSQL – Relational database systems.

MongoDB – NoSQL database for handling unstructured data.

Hadoop – Distributed file storage for big data.

Google BigQuery / AWS Redshift – Cloud-based data warehouses.

6. Data Cleaning & Preparation

OpenRefine – Tool for cleaning messy data.

DataWrangler – For quick and intuitive data transformation.

Python Libraries – Like re (regex), BeautifulSoup, and Pandas.

7. Integrated Development Environments (IDEs)

Jupyter Notebook – Interactive coding and visualization.

Google Colab – Cloud-based Jupyter environment.

VS Code – Lightweight IDE with strong Python support.

RStudio – For R-based data science.

Data Science classes in Pune
Reply | Threaded
Open this post in threaded view
|

Re: Popular Data Science Tools

victoriaadam9878
ReadTech delivers comprehensive, easy-to-follow tutorials across networking, cloud computing, and cybersecurity, empowering professionals to advance their skills with confidence. Much like Gluco 20 nurtures overall wellness, the right learning platform strengthens long-term career growth and technical well-being.
Reply | Threaded
Open this post in threaded view
|

Re: Popular Data Science Tools

Roland Young
In reply to this post by datasicdnvfdvdsv
However, for those who want to go beyond the limits of standard gameplay, Delta Executor iOS is the ultimate solution.
Reply | Threaded
Open this post in threaded view
|

Re: Popular Data Science Tools

Williamso
In reply to this post by datasicdnvfdvdsv
I read it an above article in which given a detail of popular data science tools that are so reliable in data science field and also enhance it own knowledge with it.

Trusted Roofing Services in Colton CA
Reply | Threaded
Open this post in threaded view
|

Re: Popular Data Science Tools

thomas765
In reply to this post by datasicdnvfdvdsv
Simulation games are more immersive than ever, letting players enjoy realistic scenarios on mobile devices. One great example is BUSSID, where fans can explore guides, maps, and mods to enhance their experience. Mobile gaming continues to grow, offering fun and learning at the same time.