A practical guide to data analysis, revealing the full cycle of working with information: from collection and processing to building machine learning models. It covers working with pandas and SQL tools, methods for identifying patterns and cleaning data. Various sources...
of information are described, including textual, binary, and web data. Statistical methods are detailed: confidence intervals, hypothesis testing, feature engineering. Practical examples in Python from different fields are provided: analysis of transportation systems, environmental research, veterinary analytics. The concluding sections are dedicated to logistic regression and model optimization applied to text classification tasks.
A practical guide to data analysis, revealing the full cycle of working with information: from collection and processing to building machine learning models. It covers working with pandas and SQL tools, methods for identifying patterns and cleaning data. Various sources of information are described, including textual, binary, and web data. Statistical methods are detailed: confidence intervals, hypothesis testing, feature engineering. Practical examples in Python from different fields are provided: analysis of transportation systems, environmental research, veterinary analytics. The concluding sections are dedicated to logistic regression and model optimization applied to text classification tasks.
Be the first to know about our current discounts, offers and new products!
Check icon
You have added to your basket
Check icon
You have added to favourites
Sold out
The item is currently out of stock.
In stock
Available in warehouse. You will receive the exact delivery date from the operator after the order confirmation.
To order
The product is delivered directly from the publisher. The order processing time is up to 14 days, you will receive the exact delivery date from the operator after the order confirmation.
No circulation
Unfortunately, the print run of the book has ended, it is currently unavailable for order.