Los costos de envío se calcularán en base a esta dirección en todo el sitio.
Selecciona tu país
América
Argentina
Brasil
Canadá
Chile
Colombia
Costa Rica
Ecuador
El Salvador
Estados Unidos
México
Perú
República Dominicana
Uruguay
Europa
Alemania
Austria
Bélgica
Croacia
Dinamarca
Eslovaquia
Eslovenia
España
Finlandia
Francia
Grecia
Hungría
Irlanda
Italia
Letonia
Malta
Noruega
Países Bajos
Polonia
Portugal
Reino Unido
República Checa
Serbia
Suecia
Suiza
Resto del mundo


Python First Principles for Data Scientists and Developers. Developers Volume 3: The Data Structures Lab (en Inglés)
Ravindra Kumar Nayak (Autor) · Independently published · Tapa Blanda
Quedan más de 100 unidades
17,16 €Volume 1 helped you understand Python thinking.
Volume 2 helped you build practical programs.
Volume 3 teaches you how to organize information so your programs become clearer, smarter, and more useful.
Many beginners learn lists, dictionaries, tuples, and sets as separate syntax topics. But real confidence begins when you understand them as shapes of thought.
A list is for order.
A dictionary is for labels and lookup.
A set is for uniqueness.
A tuple is for fixed facts.
Nested data is for real-world records.
Python First Principles for Data Scientists and Developers - Volume 3: The Data Structures Lab breaks these ideas down slowly and practically. Through friendly explanations, interactive dialogues, guided examples, exercises, checklists, mini-projects, and a capstone learning tracker, readers learn how to choose the right structure before writing code.
Inside this volume, readers will learn:
How lists help store ordered information
How dictionaries connect keys to meaning
How tuples protect fixed facts
How sets remove duplicates and compare groups
How strings behave like structured text
How nested data represents real-world records
How comprehensions make repeated transformations cleaner
How searching, sorting, counting, and grouping work
How simple algorithm patterns prepare the mind for deeper problem solving
How data scientists and developers think differently about the same structures
This is not a rushed syntax reference.
It is a practical lab for building structured Python thinking.
By the end of Volume 3, readers will understand how information moves through Python programs, how patterns appear in data, and how small structures become the foundation for data science, automation, software tools, and machine learning.
Data enters.
Structure forms.
Insight begins.
¿Tienes una pregunta sobre el libro? Inicia sesión para poder agregar tu propia pregunta.
