While assembling your portfolio both when you're looking for a new role (either as a beginner or as an experienced data analyst) or if you're pitching your services on a freelance basis, the strength of your marketing analytics portfolio depends on:
(1) the diversity of the projects undertaken - marketing analytics projects will frequently showcase clustering, regression, and classification problems. Go beyond to showcase Topic Modelling for new product development.
(2) how well contextualized the projects are - this is your chance to shine and demonstrate your business acumen and your insight into the constraints and domain knowledge the sector grapples with - be it banking, telecommunication, or e-commerce, you'll find you can not only work with different types of data, but you can stack the insights into the context
(3) Showcase your ability to leverage citizen data insights within the institution - you can position yourself as the go-to resource person on auto-machine learning and specialized e-commerce marketing Python packages.
The course will cover:
The low-code solution to analyzing millions of customer interactions and unlocking hidden insights
How to accurately predict customer churn and create targeted retention campaigns in just a few lines of code
Revolutionize customer segmentation with state-of-the-art clustering algorithms and increase sales by understanding buyer personas
Transform your marketing strategy by gaining a deeper understanding of customer sentiment with cutting-edge topic modeling
Leverage association rule mining to increase sales and enhance customer lifetime value through optimized cross-selling and up-selling campaigns.
If you're a beginner, worry not, we are working with an Auto Machine Learning Package where you can download the codebook, change the dataset, and run through the different steps to glean similar insights as the exercises we walk through together by yourself when you use your own datasets (however, if one is a complete beginner experimenting with their own datasets for a project at work, it's best to have contributions reviewed by a Data Scientist - AutoML provides an easy starting point, and eliminates "points of frustration", yet precise and usable solutions need experts).
Plus, we are primarily working with inbuilt datasets which means you don't have to trip yourself up in downloading the datasets and loading them again into your notebook and your environment (the objective here is to eliminate frustrations at the beginning of a learning journey, and to instead stack wins - this insight, derived from habit formation research, is especially useful as a beginner where working professionals may not find the time and energy to invest in learning a skill ).
PyCaret, developed by Moez Ali is an AutoML library with a wide range of applications:
If you’re an existing freelance data science analytics provider, you can double the services you provide in analytics by using PyCaret. Leverage the visuals that PyCaret generates to communicate critical insights to your stakeholders.
PyCaret Anomaly Detection module is useful to detect spikes in demand for inventory management, detect anomalous reactions to Social Media posts, etc.
PyCaret’s Association Rule Mining course helps you identify patterns within transaction datasets for e-commerce datasets, or if you plan to service Hypermarkets or Supermarket chains.
PyCaret’s Topic Modeling for new product development or for identifying themes from large amounts of unstructured text. Whether you are combining through 1000s of product reviews to identify new features that need to be adopted, you no longer need to read these documents when you can instead leverage unsupervised learning to glean the themes in the document collection.
This course is designed for marketing analysts, data scientists, and business leaders who want to improve their skills in marketing analytics and gain a competitive advantage.
Whether a beginner or an experienced professional, this course will help you gain new insights and skills to enhance your marketing strategies.
Here are some of the benefits of taking this course:
Apply RFM analysis, customer churn prediction, sentiment analysis, topic modeling, and association rule mining
Quickly undertake data preprocessing, feature engineering, model selection, and evaluation using Auto Machine Learning
Communicate insights and results to stakeholders with compelling visuals that enhance explainability and effectively aid decision-making
Gain hands-on experience with real-world data and use cases
You will learn how to use machine learning and NLP in Python to create predictive models, visualize and communicate results, and apply the concepts to real-world marketing challenges.
We will be using Google Colab in this course, so let us get started.