eBooki
W kategorii eBooki znajdziesz książki w postaci elektronicznej, w formie PDF, ePub oraz mobi. Po zakupie e-booka będzie on dostępny w Bibliotece na koncie użytkownika. Książki przeczytasz na laptopie, tablecie, smartfonie lub czytniku ebooków (Kindle, Pocketbook, inkBOOK, Prestigio i innych). Więcej na temat wykorzystania i zabezpieczenia eBooków znajdziesz na stronie "Przewodnik po eBookach".
Ebooki dostępne w księgarni Ebookpoint
-
Embedded Analytics
-
21 Recipes for Mining Twitter. Distilling Rich Information from Messy Data
-
Developing with Couchbase Server. Building Scalable, Flexible Database-Based Applications
-
Harnessing Hibernate
-
Designing Data Visualizations. Representing Informational Relationships
-
Learning R. A Step-by-Step Function Guide to Data Analysis
-
Visualizing Data. Exploring and Explaining Data with the Processing Environment
-
Getting Started with CouchDB. Extreme Scalability at Your Fingertips
-
Learning SPARQL. Querying and Updating with SPARQL 1.1. 2nd Edition
-
Communicating Data with Tableau. Designing, Developing, and Delivering Data Visualizations
-
Enterprise Data Workflows with Cascading. Streamlined Enterprise Data Management and Analysis
-
Machine Learning for Email. Spam Filtering and Priority Inbox
-
Enterprise SOA. Designing IT for Business Innovation
-
97 Things Every Data Engineer Should Know
-
Wzorce projektowe uczenia maszynowego. Rozwiązania typowych problemów dotyczących przygotowania danych, konstruowania modeli i MLOps
-
Cloud Native. Using Containers, Functions, and Data to Build Next-Generation Applications
-
Practical Data Science with SAP. Machine Learning Techniques for Enterprise Data
-
Practical Time Series Analysis. Prediction with Statistics and Machine Learning
-
Programming PyTorch for Deep Learning. Creating and Deploying Deep Learning Applications
-
Practical Automated Machine Learning on Azure. Using Azure Machine Learning to Quickly Build AI Solutions
-
Google BigQuery: The Definitive Guide. Data Warehousing, Analytics, and Machine Learning at Scale
-
Praktyczne uczenie maszynowe
-
TinyML. Machine Learning with TensorFlow Lite on Arduino and Ultra-Low-Power Microcontrollers
-
Building Machine Learning Powered Applications. Going from Idea to Product
-
The Practitioner's Guide to Graph Data. Applying Graph Thinking and Graph Technologies to Solve Complex Problems
-
Innovative Tableau. 100 More Tips, Tutorials, and Strategies
-
Practical Synthetic Data Generation. Balancing Privacy and the Broad Availability of Data
-
Analytical Skills for AI and Data Science. Building Skills for an AI-Driven Enterprise
-
Building Machine Learning Pipelines
-
Tableau Prep: Up & Running
-
Semantic Modeling for Data
-
The Self-Service Data Roadmap
-
Machine Learning and Data Science Blueprints for Finance
-
AI and Machine Learning for Coders
-
Kubeflow for Machine Learning
-
Artificial Intelligence in Finance
-
Machine Learning Design Patterns
-
Raportowanie w System Center Configuration Manager Bez tajemnic
-
Python w uczeniu maszynowym
-
Microsoft Excel 2019 Analiza i modelowanie danych biznesowych
-
Microsoft Excel 2019 Przetwarzanie danych za pomocą tabel przestawnych
-
Microsoft Excel 2013 Budowanie modeli danych przy użyciu PowerPivot
-
Microsoft Excel 2013. Analiza i modelowanie danych biznesowych
-
Microsoft Excel 2010 Analiza i modelowanie danych biznesowych
-
Praktyczne uczenie nienadzorowane przy użyciu języka Python
-
Uczenie maszynowe na Raspberry Pi
-
Microsoft Excel 2016 Analiza i modelowanie danych biznesowych
-
Practical Fairness
-
Introducing MLOps
-
Kubeflow Operations Guide
-
Odsłaniamy SQL Server 2019: Klastry Big Data i uczenie maszynowe
-
Kluczowe kompetencje specjalisty danych
-
Data Pipelines Pocket Reference
-
Przetwarzanie języka naturalnego w akcji
-
Hands-On Data Visualization
-
PyTorch Pocket Reference
-
Practical Machine Learning for Computer Vision
-
Tableau Strategies
-
Tableau Desktop Cookbook
-
AI and Machine Learning for On-Device Development
-
Practical Weak Supervision
-
Communicating with Data
-
Data Analysis with Open Source Tools. A Hands-On Guide for Programmers and Data Scientists
-
QuickBooks 2005: The Missing Manual. The Missing Manual
-
Ethics of Big Data. Balancing Risk and Innovation
-
Data Science for Business. What You Need to Know about Data Mining and Data-Analytic Thinking
-
Anonymizing Health Data. Case Studies and Methods to Get You Started
-
Beautiful Visualization. Looking at Data through the Eyes of Experts
-
Programming Elastic MapReduce. Using AWS Services to Build an End-to-End Application
-
Machine Learning for Hackers. Case Studies and Algorithms to Get You Started
-
Natural Language Annotation for Machine Learning
-
HBase: The Definitive Guide. Random Access to Your Planet-Size Data
-
The Data Journalism Handbook
-
Web Mapping Illustrated. Using Open Source GIS Toolkits
-
Hadoop Security. Protecting Your Big Data Platform
-
Scaling MongoDB. Sharding, Cluster Setup, and Administration
-
Practical Machine Learning: A New Look at Anomaly Detection
-
Data Source Handbook. A Guide to Public Data
-
Using Flume. Flexible, Scalable, and Reliable Data Streaming
-
Creating a Data-Driven Organization
-
Thinking with Data. How to Turn Information into Insights
-
Getting Started with Storm
-
Big Data for Chimps. A Guide to Massive-Scale Data Processing in Practice
-
Writing and Querying MapReduce Views in CouchDB
-
XSLT. 2nd Edition
-
Google Compute Engine
-
Hands-On Programming with R. Write Your Own Functions and Simulations
-
Data Mashups in R. A Case Study in Real-World Data Analysis
-
Think Stats. 2nd Edition
-
XSLT Cookbook. 2nd Edition
-
Getting Started with GEO, CouchDB, and Node.js. New Open Source Tools for Location Data
-
Graph Databases. New Opportunities for Connected Data. 2nd Edition
-
Effective Computation in Physics
-
Feedback Control for Computer Systems. Introducing Control Theory to Enterprise Programmers
-
Thoughtful Machine Learning. A Test-Driven Approach
-
Scaling CouchDB. Replication, Clustering, and Administration
-
Beautiful Data. The Stories Behind Elegant Data Solutions
-
Big Data Glossary. A Guide to the New Generation of Data Tools
-
Sharing Big Data Safely. Managing Data Security
-
Getting Started with Couchbase Server
-
Practical Machine Learning: Innovations in Recommendation
-
Doing Data Science. Straight Talk from the Frontline
-
MapReduce Design Patterns. Building Effective Algorithms and Analytics for Hadoop and Other Systems
-
View Updating and Relational Theory. Solving the View Update Problem
-
25 Recipes for Getting Started with R. Excerpts from the R Cookbook
-
Real-World Hadoop
-
ZooKeeper. Distributed Process Coordination
-
Head First Data Analysis. A learner's guide to big numbers, statistics, and good decisions
-
Privacy and Big Data. The Players, Regulators, and Stakeholders
-
Access Data Analysis Cookbook
-
Data Algorithms with Spark
-
Machine Learning for Financial Risk Management with Python
-
Data Mesh
-
Modern Mainframe Development
-
Fundamentals of Deep Learning. 2nd Edition
-
Designing Machine Learning Systems
-
Natural Language Processing with Transformers, Revised Edition
-
Practical Simulations for Machine Learning
-
Excel 2021 i Microsoft 365. Przetwarzanie danych za pomocą tabel przestawnych
-
AI-Powered Business Intelligence