Ґері В. Левандовскi - ebooki
Tytuły autora: Ґері В. Левандовскi dostępne w księgarni Ebookpoint
-
Unleashing the Power of Data with Trusted AI. A guide for board members and executives
-
Tableau Certified Data Analyst Certification Guide. Ace the Tableau Data Analyst certification exam with expert guidance and practice material
-
Getting Started with DuckDB. A practical guide for accelerating your data science, data analytics, and data engineering workflows
-
Generative Deep Learning with Python. Unleashing the Creative Power of AI by Mastering AI and Python
-
Data Management Strategy at Microsoft. Best practices from a tech giant's decade-long data transformation journey
-
Augmented Analytics
-
Data Engineering with Databricks Cookbook. Build effective data and AI solutions using Apache Spark, Databricks, and Delta Lake
-
Python Data Cleaning Cookbook. Prepare your data for analysis with pandas, NumPy, Matplotlib, scikit-learn, and OpenAI - Second Edition
-
The Ultimate Guide to Snowpark. Design and deploy Snowpark with Python for efficient data workloads
-
LLM Prompt Engineering for Developers. The Art and Science of Unlocking LLMs' True Potential
-
Zarządzanie danymi w zbiorach o dużej skali. Nowoczesna architektura z siatką danych i technologią Data Fabric. Wydanie II
-
Predictive Analytics for the Modern Enterprise
-
Data Analytics for Marketing. A practical guide to analyzing marketing data using Python
-
Data Engineering with Google Cloud Platform. A guide to leveling up as a data engineer by building a scalable data platform with Google Cloud - Second Edition
-
Extending Excel with Python and R. Unlock the potential of analytics languages for advanced data manipulation and visualization
-
Mastering NLP from Foundations to LLMs. Apply advanced rule-based techniques to LLMs and solve real-world business problems using Python
-
Deep Learning for Time Series Cookbook. Use PyTorch and Python recipes for forecasting, classification, and anomaly detection
-
Fundamentals of Analytics Engineering. An introduction to building end-to-end analytics solutions
-
The Definitive Guide to Data Integration. Unlock the power of data integration to efficiently manage, transform, and analyze data
-
The Definitive Guide to Power Query (M). Mastering complex data transformation with Power Query
-
Uczenie maszynowe: Scikit-Learn, Keras i TensorFlow. Szczegółowy poradnik
-
Building Interactive Dashboards in Microsoft 365 Excel. Harness the new features and formulae in M365 Excel to create dynamic, automated dashboards
-
Data-Centric Machine Learning with Python. The ultimate guide to engineering and deploying high-quality models based on good data
-
Kibana 8.x - A Quick Start Guide to Data Analysis. Learn about data exploration, visualization, and dashboard building with Kibana
-
Learn Microsoft Fabric. A practical guide to performing data analytics in the era of artificial intelligence
-
Transformers for Natural Language Processing and Computer Vision. Explore Generative AI and Large Language Models with Hugging Face, ChatGPT, GPT-4V, and DALL-E 3 - Third Edition
-
Azure Data Factory Cookbook. Build ETL, Hybrid ETL, and ELT pipelines using ADF, Synapse Analytics, Fabric and Databricks - Second Edition
-
Data Engineering with Scala and Spark. Build streaming and batch pipelines that process massive amounts of data using Scala
-
Principles of Data Science. A beginner's guide to essential math and coding skills for data fluency and machine learning - Third Edition
-
Specyfikacja wymagań oprogramowania. Kluczowe praktyki analizy biznesowej
-
Jak analizować dane z biblioteką Pandas. Praktyczne wprowadzenie. Wydanie II
-
Automating Data Quality Monitoring
-
Data Observability for Data Engineering. Proactive strategies for ensuring data accuracy and addressing broken data pipelines
-
The Deep Learning Architect's Handbook. Build and deploy production-ready DL solutions leveraging the latest Python techniques
-
Developing Kaggle Notebooks. Pave your way to becoming a Kaggle Notebooks Grandmaster
-
Learn Grafana 10.x. A beginner's guide to practical data analytics, interactive dashboards, and observability - Second Edition
-
Web Data Mining z użyciem języka Python. Odkrywaj i wyodrębniaj informacje ze stron internetowych za pomocą języka Python
-
Data Modeling with Microsoft Excel. Model and analyze data using Power Pivot, DAX, and Cube functions
-
Vector Search for Practitioners with Elastic. A toolkit for building NLP solutions for search, observability, and security using vector search
-
Data Exploration and Preparation with BigQuery. A practical guide to cleaning, transforming, and analyzing data for business insights
-
Cracking the Data Engineering Interview. Land your dream job with the help of resume-building tips, over 100 mock questions, and a unique portfolio
-
Data Science: The Hard Parts
-
Alteryx Designer Cookbook. Over 60 recipes to transform your data into insights and take your productivity to a new level
-
Learn PostgreSQL. Use, manage, and build secure and scalable databases with PostgreSQL 16 - Second Edition
-
Analityk danych. Przewodnik po data science, statystyce i uczeniu maszynowym
-
Amazon Redshift: The Definitive Guide
-
Building ETL Pipelines with Python. Create and deploy enterprise-ready ETL pipelines by employing modern methods
-
Practical Data Quality. Learn practical, real-world strategies to transform the quality of data in your organization
-
Microsoft Power BI. Jak modelować i wizualizować dane oraz budować narracje cyfrowe. Wydanie III
-
AI w Biznesie: Praktyczny Przewodnik Stosowania Sztucznej Inteligencji w Różnych Branżach
-
Data Wrangling on AWS. Clean and organize complex data for analysis
-
Data Wrangling with SQL. A hands-on guide to manipulating, wrangling, and engineering data using SQL
-
AI & Data Literacy. Empowering Citizens of Data Science
-
Data Curious
-
Marketing i analityka biznesowa dla początkujących. Poznaj najważniejsze narzędzia i wykorzystaj ich możliwości
-
Poznaj Tableau 2022. Wizualizacja danych, interaktywna analiza danych i umiejętność data storytellingu. Wydanie V
-
Python w analizie danych. Przetwarzanie danych za pomocą pakietów pandas i NumPy oraz środowiska Jupyter. Wydanie III
-
Data Engineering with dbt. A practical guide to building a cloud-based, pragmatic, and dependable data platform with SQL
-
Driving Data Quality with Data Contracts. A comprehensive guide to building reliable, trusted, and effective data platforms
-
Enhancing Deep Learning with Bayesian Inference. Create more powerful, robust deep learning systems with Bayesian deep learning in Python
-
Inżynieria danych w praktyce. Kluczowe koncepcje i najlepsze technologie
-
Data Ingestion with Python Cookbook. A practical guide to ingesting, monitoring, and identifying errors in the data ingestion process
-
Data Modeling with Snowflake. A practical guide to accelerating Snowflake development using universal data modeling techniques
-
Embedded Analytics
-
Siatka danych. Nowoczesna koncepcja samoobsługowej infrastruktury danych
-
Data Management at Scale. 2nd Edition
-
Wizualizacja danych. Pulpity nawigacyjne i raporty w Excelu
-
Analityka biznesowa wspomagana sztuczną inteligencją. Ulepszanie prognoz i podejmowania decyzji za pomocą uczenia maszynowego
-
Zaawansowana analiza danych w PySpark. Metody przetwarzania informacji na szeroką skalę z wykorzystaniem Pythona i systemu Spark
-
Robo-Advisor with Python. A hands-on guide to building and operating your own Robo-advisor
-
Learn Azure Synapse Data Explorer. A guide to building real-time analytics solutions to unlock log and telemetry data
-
DAX i Power BI w analizie danych. Tworzenie zaawansowanych i efektywnych analiz dla biznesu
-
Spark. Błyskawiczna analiza danych. Wydanie II
-
Data Analytics Using Splunk 9.x. A practical guide to implementing Splunk’s features for performing data analysis at scale
-
Machine Learning Model Serving Patterns and Best Practices. A definitive guide to deploying, monitoring, and providing accessibility to ML models in production
-
Graph Data Processing with Cypher. A practical guide to building graph traversal queries using the Cypher syntax on Neo4j
-
The Art of Data-Driven Business. Transform your organization into a data-driven one with the power of Python machine learning
-
Microsoft Power BI Quick Start Guide. The ultimate beginner's guide to data modeling, visualization, digital storytelling, and more - Third Edition
-
Machine Learning Techniques for Text. Apply modern techniques with Python for text processing, dimensionality reduction, classification, and evaluation
-
Python Feature Engineering Cookbook. Over 70 recipes for creating, engineering, and transforming features to build machine learning models - Second Edition
-
Data Quality Engineering in Financial Services
-
Neural Search - From Prototype to Production with Jina. Build deep learning–powered search systems that you can deploy and manage with ease
-
Scalable Data Architecture with Java. Build efficient enterprise-grade data architecting solutions using Java
-
Data Quality Fundamentals
-
Serverless ETL and Analytics with AWS Glue. Your comprehensive reference guide to learning about AWS Glue and its features
-
SQL for Data Analytics. Harness the power of SQL to extract insights from data - Third Edition
-
Cyfrowe Państwo. Uwarunkowania i perspektywy
-
Data Cleaning and Exploration with Machine Learning. Get to grips with machine learning techniques to achieve sparkling-clean data quickly
-
Simplifying Data Engineering and Analytics with Delta. Create analytics-ready data that fuels artificial intelligence and business intelligence
-
Practical Deep Learning at Scale with MLflow. Bridge the gap between offline experimentation and online production
-
Fundamentals of Data Engineering
-
The Pandas Workshop. A comprehensive guide to using Python for data analysis with real-world case studies
-
Excel 2021 i Microsoft 365. Analiza i modelowanie danych biznesowych
-
Excel 2021 i Microsoft 365. Przetwarzanie danych za pomocą tabel przestawnych
-
AI-Powered Business Intelligence
-
Microsoft Power BI. Jak modelować i wizualizować dane oraz budować narracje cyfrowe. Wydanie II
-
The Tableau Workshop. A practical guide to the art of data visualization with Tableau
-
Data Algorithms with Spark
-
Data Engineering with Google Cloud Platform. A practical guide to operationalizing scalable data analytics systems on GCP
-
Getting Started with Amazon SageMaker Studio. Learn to build end-to-end machine learning projects in the SageMaker machine learning IDE
-
Simplify Big Data Analytics with Amazon EMR. A beginner’s guide to learning and implementing Amazon EMR for building data analytics solutions
-
Getting Started with Elastic Stack 8.0. Run powerful and scalable data platforms to search, observe, and secure your organization
-
Reproducible Data Science with Pachyderm. Learn how to build version-controlled, end-to-end data pipelines using Pachyderm 2.0
-
Analiza danych behawioralnych przy użyciu języków R i Python
-
Data Mesh
-
AI-Powered Commerce. Building the products and services of the future with Commerce.AI
-
Extreme DAX. Take your Power BI and Microsoft data analytics skills to the next level
-
Digital Transformation and Modernization with IBM API Connect. A practical guide to developing, deploying, and managing high-performance and secure hybrid-cloud APIs
-
Optimizing Databricks Workloads. Harness the power of Apache Spark in Azure and maximize the performance of modern big data workloads
-
Digital Transformation with Dataverse for Teams. Become a citizen developer and lead the digital transformation wave with Microsoft Teams and Power Platform
-
Essential PySpark for Scalable Data Analytics. A beginner's guide to harnessing the power and ease of PySpark 3
-
Data Engineering with Apache Spark, Delta Lake, and Lakehouse. Create scalable pipelines that ingest, curate, and aggregate complex data in a timely and secure way
-
Managing Data as a Product. A comprehensive guide to designing and building data product-centered socio-technical architectures
-
Polars Cookbook. Over 60 practical recipes to transform, manipulate, and analyze your data using Python Polars
-
Pandas Cookbook. Practical recipes for scientific computing, time series and exploratory data analysis using Python - Third Edition
-
Becoming a Data Analyst. A beginner's guide to kickstarting your data analysis journey
-
Generative AI Engineering, 1E. Build apps with transformer and diffusion-based large and foundational models
-
Data Analysis with Polars. Get up and running with Polars to perform effective data analysis with Rust
-
Python for Algorithmic Trading Cookbook. Recipes for designing, building, and deploying algorithmic trading strategies with Python
-
Model Risk Management in Practice. A hands-on guide helping you with the design, implementation, monitoring, and reporting of Model Risk