talk-data.com talk-data.com

Topic

Analytics

data_analysis insights metrics

4552

tagged

Activity Trend

398 peak/qtr
2020-Q1 2026-Q1

Activities

4552 activities · Newest first

Introduction to GPUs for Data Analytics

Moore’s law has finally run out of steam for CPUs. The number of x86 cores that can be placed cost-effectively on a single chip has reached a practical limit, making higher densities prohibitively expensive for most applications. Fortunately, for big data analytics, machine learning, and database applications, a more capable and cost-effective alternative for scaling compute performance is already available: the graphics processing unit, or GPU. In this report, executives at Kinetica and Sierra Communications explain how incorporating GPUs is ideal for keeping pace with the relentless growth in streaming, complex, and large data confronting organizations today. Technology professionals, business analysts, and data scientists will learn how their organizations can begin implementing GPU-accelerated solutions either on premise or in the cloud. This report explores: How GPUs supplement CPUs to enable continued price/performance gains The many database and data analytics applications that can benefit from GPU acceleration Why GPU databases with user-defined functions (UDFs) can simplify and unify the machine learning/deep learning pipeline How GPU-accelerated databases can process streaming data from the Internet of Things and other sources in real time The performance advantage of GPU databases in demanding geospatial analytics applications How cognitive computing—the most compute-intensive application currently imaginable—is now within reach, using GPUs

Transforming Industry Through Data Analytics

The information technology revolutions over the past six decades have been astonishing, from mainframes to personal computers to smart and connected economies. But those changes pale in comparison to what’s about to happen. By 2020, seven billion people and roughly 50 billion devices will be connected to the internet, leaving the world awash in data. How do we make sense of it all? In this insightful book, Raghunath Nambiar from Cisco examines the role of analytics in enabling digital transformation within the enterprise, including challenges associated with the explosion of data. It embraces the need for analytics at the edge of the network with a local context and analytics at the data center core with a global context. He also explores the differences between the four types of analytics—descriptive, diagnostic, predictive, and prescriptive—including the driving factors behind the need for each of them, as well as the analytical systems required to process them to produce actionable insight. Raghu then takes a deep dive into how the explosion in internet connections affects key industries, and how applied analytics will impact our future. Learn how analytics can make a difference in: Smart cities to manage energy, the environment, traffic, parking, structures, waste, safety, and crowds Smart energy to enable sustainable and efficient offerings that provide substantial benefits for both providers and customers Healthcare to address the aging population, growing shortage of physicians, and rising costs through connected health Manufacturing for producing higher quality products, creating new lines of business, reducing time-to-market, and increasing revenue growth Transportation to address the increasing demand through collaborative consumption, connected cars, and the potential for autonomous vehicles

Jeff Palmucci / @TripAdvisor talk about building a Machine Learning Team and shared some best practices for running a data-driven startup

Timeline: 0:29 Jeff's journey. 8:28 Jeff's experience of working in different eras of data science. 10:34 Challenges in working on a futuristic startup. 13:40 Entrepreneurship and ML solutions. 16:42 Putting together a ML team. 20:32 How to chose the right use case to work on? 22:20 Hacks for putting together a group for ML solutions. 24:40 Convincing the leadership of changing the culture. 29:00 Thought process of putting together an ML group. 31:36 How to gauge the right data science candidate? 35:46 Important KPIs to consider while putting together a ML group. 38:30 The merit of shadow groups within a business unit. 41:05 Jeff's key to success. 42:58 How is having a hobby help a data science leader? 45:05 Appifying is good or bad? 52:07 The fear of what ML throws out. 54:09 Jeff's favorite reads. 55:34 Closing remarks.

Podcast Link: https://futureofdata.org/jeff-palmucci-tripadvisor-discusses-managing-machinelearning-ai-team/

About Jeff Palmucci: As a serial entrepreneur, Jeff has started several companies. He was VP of Software Development for Optimax Systems, a developer of scheduling systems for manufacturing operations acquired by i2 Technologies. As a Founder and CTO of programmatic hedge fund Percipio Capital Management, he helped lead the company to an acquisition by Link Ventures. Jeff is currently leading the Machine Learning group at Tripadvisor, which does various machine learning projects across the company, including natural language processing, review fraud detection, personalization, information retrieval, and machine vision. Jeff has publications in natural language processing, machine learning, genetic algorithms, expert systems, and programming languages. When Jeff is not writing code, he enjoys going to innumerable rock concerts as a professional photographer.

Jeff's Favorite Authors (Genre: Science Fiction): Vernor Vinge http://amzn.to/2ygDPOu Stephen Baxter http://amzn.to/2ygG6cn

About #Podcast:

FutureOfData podcast is a conversation starter to bring leaders, influencers, and lead practitioners to discuss their journey to create the data-driven future.

Wanna Join? If you or any you know wants to join in, Register your interest @ http://play.analyticsweek.com/guest/

Want to sponsor? Email us @ [email protected]

Keywords: FutureOfData Data Analytics Leadership Podcast Big Data Strategy

In this podcast, Pascal Marmier sat with Vishal Kumar to discuss challenges, opportunities, and nuances in running an innovation hub within regulated corporate culture settings and shared some best practices in promoting data driven innovation.

Timeline: 0:29 Pascal's journey. 6:12 Quitting law and getting into digital analytics. 10:44 Defining Head Analytics Catalyst. 13:46 Putting up an Analytics Catalyst team. 18:43 Steps to create a data lab. 22:02 Securing executive sponsorship. 25:45 Differences in creating lab in Europe in comparison to the USA. 29:43 Challenges in setting up a digital analytics catalyst. 32:27 Ideal team members to have in a digital analytics catalyst team. 35:14 Company culture interfering with lab innovation. 38:00 Lab innovation determining the company's future. 42:19 Important KPIs for setting up a lab. 46:55 Prophesy on the insurance company. 51:15 What can insurance do to secure themselves? 54:48 Insurance dealing with changing risk profiles. 59:26 Pascal's favorite read. 1:00:56 Closing remarks.

Podcast link: https://futureofdata.org/pascal-marmier-pmarmier-swissre-discuss-running-data-driven-innovation-catalyst/

About Pascal Marmier: After many years helping to build the swissnex network in Boston and in China, I recently joined Swiss Re in Boston to help the Digital Analytics Catalyst team identify and develop novel ideas/tech into a sustainable business. As part of the digital transformation of the insurance industry, our team in Boston and London is engaging with startups and academia in various fields of technology such as digital health, IoT, AI. We are working with the teams at Swiss Re to provide business solutions based on the transformative power of data innovation.

Pascal's Favorite Read: Sapiens: A Brief History of Humankind http://amzn.to/2yHvYGV About #Podcast:

FutureOfData podcast is a conversation starter to bring leaders, influencers, and lead practitioners to discuss their journey to create the data-driven future.

Wanna Join? If you or any you know wants to join in, Register your interest @ http://play.analyticsweek.com/guest/ Want to sponsor? Email us @ [email protected]

Keywords: FutureOfData Data Analytics Leadership Podcast Big Data Strategy

In this Podcast, Charlie Berger from Oracle discussed some of the challenges of data-driven enterprises.

Timeline: 0:29 Charlie's journey. 6:12 Charlie's current role. 8:55 Oracle's role in the future of data. 13:20 The evolution of ML. 20:41 The need for revaluating mathematical models that data science is based on. 27:50 On the concept of appification of analytics. 36:17 On enterprise IT landscape changing. 43:17 Geekifying analytics. 47:15 Charlie's favorite read. 50:21 Closing remarks.

Charlie's favorite read suggestions: 1. The Naked Future: What Happens in a World That Anticipates Your Every Move?

Podcast link: https://futureofdata.org/futureofdata-charliedatamine-oracle-discussing-running-analytics-enterprise/

Charlie's BIO: Passionate technical professional skilled in building entrepreneurial, start-up initiatives, and environments. Strong technical, product management, communication, marketing, and leadership skills.

• Experienced product management professional with over 30 years of experience in leading-edge technologies in large corporations and entrepreneurial start-ups. • During 15 years at Oracle Corporation, developed an innovative portfolio of “big data analytics” products developed as in-database SQL data mining functions and integrated "predictive analytics" applications. • Strong technical, product management, communication, and leadership skills. • Responsible for product management and direction for the Oracle Database data mining and predictive analytics technology, including Oracle Data Mining, text mining, and statistical functions. • Strong product champion, evangelist, and frequent speaker in the field of predictive analytics and data mining. • Leveraged relationships with customers, development, and sales to communicate product capabilities and value proposition.

About #Podcast:

FutureOfData podcast is a conversation starter to bring leaders, influencers, and lead practitioners to discuss their journey to create the data-driven future.

Wanna Join? If you or any you know wants to join in, Register your interest @ http://play.analyticsweek.com/guest/

Want to sponsor? Email us @ [email protected]

Keywords: FutureOfData Data Analytics Leadership Podcast Big Data Strategy

Practical Real-time Data Processing and Analytics

This book provides a comprehensive guide to real-time data processing and analytics using modern frameworks like Apache Spark, Flink, Storm, and Kafka. Through practical examples and in-depth explanations, you will learn how to implement efficient, scalable, real-time processing pipelines. What this Book will help me do Understand real-time data processing essentials and the technology stack Learn integration of components like Apache Spark and Kafka Master the concepts of stream processing with detailed case studies Gain expertise in developing monitoring and alerting solutions for real-time systems Prepare to implement production-grade real-time data solutions Author(s) Shilpi Saxena and Saurabh Gupta, the authors, are experienced professionals in distributed systems and data engineering, focusing on practical applications of real-time computing. They bring their extensive industry experience to this book, helping readers understand the complexities of real-time data solutions in an approachable and hands-on manner. Who is it for? This book is ideal for software engineers and data engineers with a background in Java who seek to develop real-time data solutions. It is suitable for readers familiar with concepts of real-time data processing, and enhances knowledge in frameworks like Spark, Flink, Storm, and Kafka. Target audience includes learners building production data solutions and those designing distributed analytics engines.

Practical Time Series Analysis

Discover how to unlock the secrets of time-series data with "Practical Time Series Analysis". With a focus on hands-on learning, this book takes you on a journey through time series data processing, visualization, and modeling. Gain the technical expertise and confidence to tackle real-world datasets using Python. What this Book will help me do Understand the fundamental principles of time series analysis and their application to real-world datasets. Learn to utilize Python for data preparation, visualization, and processing in the context of time series. Master the techniques of evaluating and addressing common challenges such as non-stationarity and autocorrelation. Apply statistical methods and machine learning models, including ARIMA and deep learning approaches, to forecasting tasks. Develop practical skills to implement and deploy end-to-end predictive models for time series data analysis. Author(s) PKS Prakash and Avishek Pal bring decades of combined experience in data science and analytics. Their meticulous approach toward simplifying complex concepts makes learning time series approachable and engaging. Drawing from their professional expertise, they incorporate extensive examples to merge theory with practice. Who is it for? This book is ideal for data scientists and engineers keen on enhancing their abilities to analyze temporal data. Prior knowledge in Python and basic statistics will help you gain the most from this book. Whether advancing your career or solving practical problems, you'll find invaluable insights here.

podcast_episode
by Val Kroll , Corry Prohens (IQ Workforce) , Julie Hoyer , Tim Wilson (Analytics Power Hour - Columbus (OH) , Moe Kiss (Canva) , Michael Helbling (Search Discovery)

Have you learned R yet? No? Well, then Tim is disappointed in you. Or, maybe that's totally okay! Way back on episode #035, we asked the question if data science was the future of digital analytics. We concluded...maybe...for some. On this episode, we dive deeper into what the career options are for digital analysts with longtime digital analytics industry recruiting and staffing maven Corry Prohens, founder and CEO of IQ Workforce. The good news? There are lots of options (if you find your passion and follow it)! For complete show notes, including links to items mentioned in this episode and a transcript of the show, visit the show page.

Apache Spark 2.x Machine Learning Cookbook

This book is your gateway to mastering machine learning with Apache Spark 2.x. Through detailed hands-on recipes, you'll delve into building scalable ML models, optimizing big data processes, and enhancing project efficiency. Gain practical knowledge and explore real-world applications of recommendations, clustering, analytics, and more with Spark's powerful capabilities. What this Book will help me do Understand how to integrate Scala and Spark for effective machine learning development. Learn to create scalable recommendation engines using Spark. Master the development of clustering systems to organize unlabelled data at scale. Explore Spark libraries to implement efficient text analytics and search engines. Optimize large-scale data operations, tackling high-dimensional issues with Spark. Author(s) The team of authors brings expertise in machine learning, data science, and Spark technologies. Their combined industry experience and academic knowledge ensure the book is grounded in practical applications while offering theoretical insights. With clear explanations and a step-by-step approach, they aim to simplify complex concepts for developers and data scientists. Who is it for? This book is crafted for Scala developers familiar with machine learning concepts but seeking practical applications with Spark. If you have been implementing models but want to scale them and leverage Spark's robust ecosystem, this guide will serve you well. It is ideal for professionals seeking to deepen their skills in Spark and data science.

R Data Analysis Cookbook, Second Edition - Second Edition

R Data Analysis Cookbook, Second Edition, is your companion for mastering various data analysis techniques using R. Combining powerful R libraries like ggplot2, this book guides you through tasks such as data mining, visualization, and even advanced concepts like time series analysis. Whether you're cleaning and formatting data or generating actionable insights, this book offers hands-on recipes to upskill efficiently. What this Book will help me do Learn how to acquire, prepare, and visualize datasets using popular R libraries. Master exploratory data analysis concepts to discover insights in any data. Get introduced to machine learning algorithms in R such as regression and classification. Develop advanced skills like social network analysis, recommendation systems, and geospatial analysis. Learn to generate dynamic reports and interactive dashboards using tools like Shiny. Author(s) Kuntal Ganguly and Viswa Viswanathan bring a wealth of experience in data science, analytics, and R programming to this book. Their passion for teaching complex topics with clarity and practical insight shines throughout. The co-authors incorporate years of technical expertise to guide readers step-by-step in solving real-world data analysis challenges. Who is it for? This book is ideal for data scientists, analysts, or enthusiasts taking their first or next steps with R. It caters to professionals with a beginner or intermediate understanding of statistics and programming who are seeking practical examples and solutions to complex data tasks. If you want actionable knowledge to address real-world analytics challenges, this book is for you.

In this Podcast, Jay talks about the landscape of Information Security and how businesses are preparing to address their cybersecurity challenges. This is a great podcast for anyone interested in learning about best practices when it comes to managing infrastructure security for their organization.

Timeline: 0:29 Jay's journey. 3:18 What's Scientia Institute? 8:28 The book Data-Driven Security. 10:42 The aha moment while writing the book. 11:53 High points of Jay's book. 14:08 Security level of a typical business today. 16:22 Thoughts on how companies can understand risk. 19:50 Balancing mitigation of threat vs. business continuity. 25:33 Treating security as a financial problem. 27:25 Security predictability and insurance. 28:44 Who should take responsibility for risk and security? 30:15 Measuring the risk of company infrastructure. 31:33 Tackling standards and regulations. 33:04 The concept of best practices. 34:38 The maturity of the model in the security side of businesses. 37:55 The lower limit and higher limit of security. 39:50 Resources to learn about security. 41:11 Who's a good security candidate? 42:20 Jay's favorite read. 43:36 Examples of companies who're doing well in security. 45:28 What's next in the world of security. 47:40 Closing remarks.

Podcast link: https://futureofdata.org/understanding-data-analytics-information-security-jayjarome-bitsight/

About #Podcast:

FutureOfData podcast is a conversation starter to bring leaders, influencers, and lead practitioners to discuss their journey to create the data-driven future.

Wanna Join? If you or any you know wants to join in, Register your interest @ http://play.analyticsweek.com/guest/

Want to sponsor? Email us @ [email protected]

Keywords: FutureOfData Data Analytics Leadership Podcast Big Data Strategy

In this Podcast Clayton, @theclaymethod from @TiVo sat with Vishal to talk about his experience running analytics group within media landscape and shed light on running analytics in media industry.

Timeline: 0:29 Clayton's journey. 2:50 Clayton's current role as the director of Tivo. 5:13 Clayton's path to become a data scientist. 9:10 Analytics in the media. 12:06 Data in the creative industry. 14:32 Interesting use cases of data in media industry. 17:03 Classifying data for different media platforms. 18:48 Defining a typical data scientist in the media industry. 22:12 Art of doing business and science of doing business. 25:02 Putting together a data science team. 29:26 Successful KPIs in the media industry. 32:47 Interesting companies and products and their data practice. 34:22 Knowing the requirement of an AI/ML model in a business. 37:02 Data science practice in bigger companies. 38:33 Clayton's choice of the media industry. 39:42 Advice for data analysts who want to enter the media industry. 41:42 Mentorship and buddy system. 44:06 Advice for those who are from non engineering background. 47:40 Clayton's favorite reads. 49:40 Clayton's next ideal hire. 51:15 Closing remarks.

Podcast link: https://futureofdata.org/futureofdata-with-theclaymethod-tivo-discussing-running-analytics-in-media-industry/

Bio: Clayton Kim is the Director of Data Science at TiVo, responsible for managing the applications of machine learning and statistical research on TV consumption data. Before TiVo, Clayton was the Sr. Manager of Data Science at Localytics, working on applying predictive intelligence to mobile app analytics and messaging.

About #Podcast:

FutureOfData podcast is a conversation starter to bring leaders, influencers and lead practitioners to come on show and discuss their journey in creating the data driven future.

Wanna Join?

If you or any you know wants to join in,

Register your interest @ http://play.analyticsweek.com/guest/

Want to sponsor?

Email us @ [email protected]

Keywords:

FutureOfData

Data

Analytics

Leadership Podcast

Big Data

Strategy

Learning Spark SQL

"Learning Spark SQL" takes you from data exploration to designing scalable applications with Apache Spark SQL. Through hands-on examples, you will comprehend real-world use cases and gain practical skills crucial for working with Spark SQL APIs, data frames, streaming data, and optimizing Spark applications. What this Book will help me do Understand the principles of Spark SQL and its APIs for building scalable distributed applications. Gain hands-on experience performing data wrangling and visualization using Spark SQL and real-world datasets. Learn how to design and optimize applications for performance and scalability with Spark SQL. Develop the skills to integrate Spark SQL with other frameworks like Apache Kafka for streaming analytics. Master the techniques required to architect machine learning and deep learning solutions using Spark SQL. Author(s) None Sarkar is an experienced technologist and trainer specializing in big data, streaming analytics, and scalable architectures using Apache Spark. With years of practical experience in implementing Spark solutions, Sarkar draws from real-world projects to provide readers with valuable insights. Sarkar's approachable and detailed writing style ensures readers grasp both the theory and the practice of Spark SQL. Who is it for? This book is ideal for software developers, data engineers, and architects aspiring to harness Apache Spark for robust, scalable applications. It suits readers with some SQL querying experience and a basic knowledge of programming in languages like Scala, Java, or Python. Whether you're a Spark newcomer or advancing your capabilities in scalable data processing, this resource will accelerate your learning journey.

Infonomics

Infonomics is the theory, study, and discipline of asserting economic significance to information. It strives to apply economic and asset management principles to the valuation, handling, and deployment of information assets. This for the chief data officers and other leaders in their struggle to help their organizations become infosavvy. "Doug Laney masterfully weaves together a collection of great examples with a solid framework to guide readers on how to gain competitive advantage through what he labels "the unruly asset" – data. The framework is comprehensive, the advice practical and the success stories global and across industries and applications." Liz Rowe, Chief Data Officer, State of New Jersey "A must read for anybody who wants to survive in a data centric world." Shaun Adams, Head of Data Science, Betterbathrooms.com "Phenomenal! An absolute must read for data practitioners, business leaders and technology strategists. Doug's lucid style has a set a new standard in providing intelligible material in the field of information economics. His passion and knowledge on the subject exudes thru his literature and inspires individuals like me." Ruchi Rajasekhar, Principal Data Architect, MISO Energy "I highly recommend Infonomics to all aspiring analytics leaders. Doug Laney’s work gives readers a deeper understanding of how and why information should be monetized and managed as an enterprise asset. Laney’s assertion that accounting should recognize information as a capital asset is quite convincing and one I agree with. Infonomics enjoyably echoes that sentiment!" Matt Green, independent business analytics consultant, Atlanta area "If you care about the digital economy, and you should, read this book." Tanya Shuckhart, Analyst Relations Lead, IRI Worldwide

Data & Analytics Bi-Weekly Newsletter Cast Aug 31, 2017

Wanna chip-in to help #Houston? Here's the link: https://www.nytimes.com/2017/08/28/us/donate-harvey-charities-scams.html

About #Podcast:

FutureOfData podcast is a conversation starter to bring leaders, influencers and lead practitioners to come on show and discuss their journey in creating the data driven future.

Wanna Join? If you or any you know wants to join in, Register your interest @ http://play.analyticsweek.com/guest/

Want to sponsor? Email us @ [email protected]

Keywords: FutureOfData Data Analytics Leadership Podcast Big Data Strategy

Competing on Analytics: Updated, with a New Introduction

The New Edition of a Business Classic This landmark work, the first to introduce business leaders to analytics, reveals how analytics are rewriting the rules of competition. Updated with fresh content, Competing on Analytics provides the road map for becoming an analytical competitor, showing readers how to create new strategies for their organizations based on sophisticated analytics. Introducing a five-stage model of analytical competition, Davenport and Harris describe the typical behaviors, capabilities, and challenges of each stage. They explain how to assess your company’s capabilities and guide it toward the highest level of competition. With equal emphasis on two key resources, human and technological, this book reveals how even the most highly analytical companies can up their game. With an emphasis on predictive, prescriptive, and autonomous analytics for marketing, supply chain, finance, M&A, operations, R&D, and HR, the book contains numerous new examples from different industries and business functions, such as Disney’s vacation experience, Google’s HR, UPS’s logistics, the Chicago Cubs’ training methods, and Firewire Surfboards’ customization. Additional new topics and research include: Data scientists and what they do Big data and the changes it has wrought Hadoop and other open-source software for managing and analyzing data Data products—new products and services based on data and analytics Machine learning and other AI technologies The Internet of Things and its implications New computing architectures, including cloud computing Embedding analytics within operational systems Visual analytics The business classic that turned a generation of leaders into analytical competitors, Competing on Analytics is the definitive guide for transforming your company’s fortunes in the age of analytics and big data.

In this podcast, Rob Griffin from Almighty(X), a Connelly partner company, sat with Vishal Kumar to discuss running innovation in a media agency.

Timeline: 0:29 Rob's journey. 8:12 Marketing, the earliest adopter of analytics. 10:43 Defining transformational innovation. 22:05 Art of doing business and science of doing business. 26:12 Problems for an innovative analytics company. 31:00 Innovation in different size companies. 34:31 Common mistakes businesses make on innovation. 40:00 The future of the creative industry. 42:49 ML and AI impact on the digital market. 49:29 Don't be efficient, be creative. 57:39 Rob's recommended books.

Podcast link: https://futureofdata.org/futureofdata-robtelerob-connellyagency-running-innovation-agency/

Here's Rob's Bio: Driving transformational innovation in marketing and advertising. Pushing creative and media technology limits. Helping brands take ownership of their technology, data, and media for greater transparency and accountability. Putting the agent back in the agency. Been working in digital marketing and advertising since 1996. A Bostonian. A die-hard Celtics fan. Dad. Speaker. Writer. Advisor. Skier. Comic book fan. Lover of good eats.

About #Podcast:

FutureOfData podcast is a conversation starter to bring leaders, influencers, and lead practitioners to discuss their journey to create the data-driven future.

Wanna Join? If you or any you know wants to join in, Register your interest @ http://play.analyticsweek.com/guest/

Want to sponsor? Email us @ [email protected]

Keywords:

FutureOfData #DataAnalytics #Leadership #Podcast #BigData #Strategy

Advanced Analytics with R and Tableau

In "Advanced Analytics with R and Tableau," you will learn how to combine the statistical computing power of R with the excellent data visualization capabilities of Tableau to perform advanced analysis and present your findings effectively. This book guides you through practical examples to understand topics such as classification, clustering, and predictive analytics while creating compelling visual dashboards. What this Book will help me do Integrate advanced statistical computations in R with Tableau's visual analysis for comprehensive analytics. Master making R function calls from Tableau through practical applications such as RServe integration. Develop predictive and classification models in R, visualized wonderfully in Tableau dashboards. Understand clustering and unsupervised learning concepts, applied to real-world datasets for business insights. Leverage the combination of Tableau and R for making impactful, data-driven decisions in your organization. Author(s) Ruben Oliva Ramos, Jen Stirrup, and Roberto Rösler are accomplished professionals with extensive experience in data science and analytics. Their combined expertise brings practical insights into combining R and Tableau for advanced analytics. Advocates for hands-on learning, they emphasize clarity and actionable knowledge in their writing. Who is it for? "Advanced Analytics with R and Tableau" is ideal for business analysts, data scientists, and Tableau professionals eager to expand their capabilities into advanced analytics. Readers should be familiar with Tableau and have basic knowledge of R, though the book starts with accessible examples. If you're looking to enhance your analytics with R's statistical power seamlessly integrated into Tableau, this book is for you.

Mastering Predictive Analytics with R, Second Edition - Second Edition

This comprehensive guide dives into predictive analytics with R, exploring the powerful functionality and vast ecosystem of packages available in this programming language. By studying this book, you will gain mastery over predictive modeling techniques and learn how to apply machine learning to real-world problems efficiently and effectively. What this Book will help me do Develop proficiency in predictive modeling processes, from data preparation to model evaluation. Gain hands-on experience with R's diverse packages for machine learning. Understand the theoretical foundations and practical applications of various predictive models. Learn advanced techniques such as deep learning implementations of word embeddings and recurrent neural networks. Acquire the ability to handle large datasets using R for scalable predictive analytics workflows. Author(s) James D. Miller and Rui Miguel Forte are experts in data science and predictive analytics with decades of combined experience in the field. They bring practical insights from their work in both academia and industry. Their clear and engaging writing style aims at making complex concepts accessible to readers by integrating theoretical knowledge with real-world applications. Who is it for? This book is ideal for budding data scientists, predictive modelers, or quantitative analysts with some basic knowledge of R and statistics. Advanced learners aiming to refine their expertise in predictive analytics and those wishing to explore the functionality of R for applied machine learning will also greatly benefit from this resource. The book is suitable for professionals and enthusiasts keen to expand their understanding of predictive modeling and learn advanced techniques.

Data & Analytics Bi-Weekly Newsletter Cast Aug 17, 2017

About #Podcast:

FutureOfData podcast is a conversation starter to bring leaders, influencers and lead practitioners to come on show and discuss their journey in creating the data driven future.

Wanna Join? If you or any you know wants to join in, Register your interest @ http://play.analyticsweek.com/guest/

Want to sponsor? Email us @ [email protected]

Keywords: FutureOfData Data Analytics Leadership Podcast Big Data Strategy