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Leverage the power of Python to collect, process, and mine deep insights from social media data
About This Book
* Acquire data from various social media platforms such as Facebook, Twitter, YouTube, GitHub, and more
* Analyze and extract actionable insights from your social data using various Python tools
* A highly practical guide to conducting efficient social media analytics at scale
Who This Book Is For
If you are a programmer or a data analyst familiar with the Python programming language and want to perform analyses of your social data to acquire valuable business insights, this book is for you. The book does not assume any prior knowledge of any data analysis tool or process.
What You Will Learn
* Understand the basics of social media mining
* Use PyMongo to clean, store, and access data in MongoDB
* Understand user reactions and emotion detection on Facebook
* Perform Twitter sentiment analysis and entity recognition using Python
* Analyze video and campaign performance on YouTube
* Mine popular trends on GitHub and predict the next big technology
* Extract conversational topics on public internet forums
* Analyze user interests on Pinterest
* Perform large-scale social media analytics on the cloud
Social Media platforms such as Facebook, Twitter, Forums, Pinterest, and YouTube have become part of everyday life in a big way. However, these complex and noisy data streams pose a potent challenge to everyone when it comes to harnessing them properly and benefiting from them. This book will introduce you to the concept of social media analytics, and how you can leverage its capabilities to empower your business.
Right from acquiring data from various social networking sources such as Twitter, Facebook, YouTube, Pinterest, and social forums, you will see how to clean data and make it ready for analytical operations using various Python APIs. This book explains how to structure the clean data obtained and store in MongoDB using PyMongo. You will also perform web scraping and visualize data using Scrappy and Beautifulsoup.
Finally, you will be introduced to different techniques to perform analytics at scale for your social data on the cloud, using Python and Spark. By the end of this book, you will be able to utilize the power of Python to gain valuable insights from social media data and use them to enhance your business processes.
Style and approach
This book follows a step-by-step approach to teach readers the concepts of social media analytics using the Python programming language. To explain various data analysis processes, real-world datasets are used wherever required.
Siddhartha Chatterjee is an experienced Data Scientist with strong focus in Machine Learning and Big Data applied to CRM, Digital and Social Media Analytics. He has worked between 2007 and 2012 at IBM, Cognizant Technologies and Technicolor Research and Innovation. He has completed a pan-european Masters in Data Mining and Knowledge Management at the Ecole Polytechnique of the University of Nantes and University of Eastern Piedmont, Italy. Since 2012, he worked at OgilvyOne Worldwide, leading global customer engagement agency in Paris as Lead Data Scientist and set up the Social Media Analytics and Predictive Analytics offering. From 2014-2016, he was Senior Data Scientist and Head of Semantic Data of Publicis France. During his time at Ogilvy and Publicis he worked on international projects for brands such as Nestle, AXA, BNP Paribas, McDonald's, Orange, Netflix and others. Currently, Siddhartha is serving as Head of Data of the Groupe Aeroport des Paris. You can find him at: https://www.linkedin.com/in/siddhartha-chatterjee-83bb5510 Michal Krystyanczuk is the co-founder of The Data Strategy, a start-up company based in Paris which builds artificial intelligence technologies to provide consumer insights from unstructured data. He previously worked as a Data Scientist in financial sector using Machine Learning and Big Data techniques for different tasks such as pattern recognition on financial markets, credit scoring or hedging strategies optimisation. He is specialised in Social Media analysis for brands using advanced Natural Language Processing and Machine Learning algorithms. He managed semantic data projects for global brands such as Mulberry, BNP Paribas, Groupe SEB, Publicis, Chipotle and others. Personally, he is an enthusiast of Cognitive Computing and Information Retrieval from different types of data: text, image and video. You can find him at: https://www.linkedin.com/in/michalkrystyanczuk