Sales Management


Book Description




DATA SCIENCE FOR SALES ANALYSIS, FORECASTING, CLUSTERING, AND PREDICTION WITH PYTHON


Book Description

In this comprehensive data science project focusing on sales analysis, forecasting, clustering, and prediction with Python, we embarked on an enlightening journey of data exploration and analysis. Our primary objective was to gain valuable insights from the dataset and leverage the power of machine learning to make accurate predictions and informed decisions. We began by meticulously exploring the dataset, examining its structure, and identifying any missing or inconsistent data. By visualizing features' distributions and conducting statistical analyses, we gained a better understanding of the data's characteristics and potential challenges. The first key aspect of the project was weekly sales forecasting. We employed various machine learning regression models, including Linear Regression, Support Vector Regression, Random Forest Regression, Decision Tree Regression, Gradient Boosting Regression, Extreme Gradient Boosting Regression, Light Gradient Boosting Regression, KNN Regression, Catboost Regression, Naïve Bayes Regression, and Multi-Layer Perceptron Regression. These models enabled us to predict weekly sales based on relevant features, allowing us to uncover patterns and relationships between different factors and sales performance. To optimize the performance of our regression models, we employed grid search with cross-validation. This technique systematically explored hyperparameter combinations to find the optimal configuration, maximizing the models' accuracy and predictive capabilities. Moving on to data segmentation, we adopted the widely-used K-means clustering technique, an unsupervised learning method. The goal was to divide data into distinct segments. By determining the optimal number of clusters through grid search with cross-validation, we ensured that the clustering accurately captured the underlying patterns in the data. The next phase of the project focused on predicting the cluster of new customers using machine learning classifiers. We employed powerful classifiers such as Logistic Regression, K-Nearest Neighbors, Support Vector, Decision Trees, Random Forests, Gradient Boosting, Adaboost, Extreme Gradient Boosting, Light Gradient Boosting, and Multi-Layer Perceptron (MLP) to make accurate predictions. Grid search with cross-validation was again applied to fine-tune the classifiers' hyperparameters, enhancing their performance. Throughout the project, we emphasized the significance of feature scaling techniques, such as Min-Max scaling and Standardization. These preprocessing steps played a crucial role in ensuring that all features were on the same scale, contributing equally during model training, and improving the models' interpretability. Evaluation of our models was conducted using various metrics. For regression tasks, we utilized mean squared error, while classification tasks employed accuracy, precision, recall, and F1-score. The use of cross-validation helped validate the models' robustness, providing comprehensive assessments of their effectiveness. Visualization played a vital role in presenting our findings effectively. Utilizing libraries such as Matplotlib and Seaborn, we created informative visualizations that facilitated the communication of complex insights to stakeholders and decision-makers. Throughout the project, we followed an iterative approach, refining our strategies through data preprocessing, model training, and hyperparameter tuning. The grid search technique proved to be an invaluable tool in identifying the best parameter combinations, resulting in more accurate predictions and meaningful customer segmentation. In conclusion, this data science project demonstrated the power of machine learning techniques in sales analysis, forecasting, and customer segmentation. The insights and recommendations generated from the models can provide valuable guidance for businesses seeking to optimize sales strategies, target marketing efforts, and make data-driven decisions to achieve growth and success. The project showcases the importance of leveraging advanced analytical methods to unlock hidden patterns and unleash the full potential of data for business success.










Sales and Distribution Analysis Module Reference for MicroStrategy 9.5


Book Description

A reference for the MicroStrategy Sales and Distribution Analysis Module (SDAM), part of the MicroStrategy Analytics Modules that come with MicroStrategy Architect.







Collected Works of Sir Arthur Conan Doyle (Delphi Classics)


Book Description

Finally, the great literary giant Sir Arthur Conan Doyle receives the scholarly Delphi Classics treatment. This comprehensive eBook offers the most complete edition possible Sir Arthur Conan Doyle's works in the US. Features: * the most complete edition possible due to US copyright restrictions * annotated with concise introductions to the novels and other texts * illustrated with the original Sherlock Holmes images * images of how the books first appeared, giving your EReader a taste of the Victorian texts * ALMOST all of the Sherlock Holmes stories (due to copyright) – even the rare and unfinished THE ADVENTURE OF THE TALL MAN * the rare comic opera Conan Doyle collaborated on with Peter Pan author J.M. Barrie * ALL of the short stories and short story collections have their own unique contents tables – choose from a vast range of amazing and rare short stories * rare non-fiction texts * Conan Doyle’s historic war treatises with maps and more * scholarly ordering of texts into chronological order and literary genres * features five rare plays by Conan Doyle, including SHERLOCK HOLMES - explore the Great Man's theatrical talents! * scarce non-fiction works, including the GEORGE EDALJI and OSCAR SLATER real-life crime cases that Conan Doyle helped solve! * UPDATED with rare works and stories Please visit www.delphiclassics.com for more information and to browse our exciting titles. The Sherlock Holmes Collections SHERLOCK HOLMES: AN INTRODUCTION A STUDY IN SCARLET THE SIGN OF THE FOUR THE ADVENTURES OF SHERLOCK HOLMES THE MEMOIRS OF SHERLOCK HOLMES THE HOUND OF THE BASKERVILLES THE RETURN OF SHERLOCK HOLMES THE VALLEY OF FEAR HIS LAST BOW THE FIELD BAZAAR HOW WATSON LEARNT THE TRICK THE ADVENTURE OF THE TALL MAN The Sherlock Holmes Stories The Challenger Works THE LOST WORLD THE POISON BELT Historical Novels MICAH CLARKE THE WHITE COMPANY THE GREAT SHADOW THE REFUGEES RODNEY STONE UNCLE BERNAC SIR NIGEL Other Novels and Novellas THE MYSTERY OF CLOOMBER THE FIRM OF GIRDLESTONE THE DOINGS OF RAFFLES HAW BEYOND THE CITY THE PARASITE THE STARK MUNRO LETTERS THE TRAGEDY OF THE KOROSKO A DUET The Short Story Collections THE CAPTAIN OF THE POLESTAR AND OTHER TALES. THE GREAT KEINPLATZ EXPERIMENT AND OTHER TALES OF TWILIGHT AND THE UNSEEN MY FRIEND THE MURDERER AND OTHER MYSTERIES AND ADVENTURES THE GULLY OF BLUEMANSDYKE AND OTHER STORIES ROUND THE RED LAMP THE GREEN FLAG AND OTHER STORIES THE EXPLOITS OF BRIGADIER GERARD THE ADVENTURES OF GERARD ROUND THE FIRE STORIES THE LAST OF THE LEGIONS AND OTHER TALES OF LONG AGO THE LAST GALLEY DANGER! AND OTHER STORIES TALES OF TERROR AND MYSTERY THE DEALINGS OF CAPTAIN SHARKEY AND OTHER TALES OF PIRATES THE MAN FROM ARCHANGEL AND OTHER TALES OF ADVENTURE UNCOLLECTED SHORT STORIES The Short Stories LIST OF SHORT STORIES IN CHRONOLOGICAL ORDER LIST OF SHORT STORIES IN ALPHABETICAL ORDER The Opera JANE ANNIE, OR THE GOOD CONDUCT PRIZE The Plays WATERLOO SHERLOCK HOLMES THE SPECKLED BAND THE CROWN DIAMOND THE JOURNEY The Poetry SONGS OF ACTION SONGS OF THE ROAD THE GUARDS CAME THROUGH The Non Fiction THE GREAT BOER WAR THE WAR IN SOUTH AFRICA THROUGH THE MAGIC DOOR THE CRIME OF THE CONGO THE CASE OF MR. GEORGE EDALJI THE CASE OF MR. OSCAR SLATER THE HOLOCAUST OF MANOR PLACE THE BRAVOES OF MARKET-DRAYTON THE DEBATABLE CASE OF MRS. EMSLEY THE LOVE AFFAIR OF GEORGE VINCENT PARKER THE BRITISH CAMPAIGN IN FRANCE AND FLANDERS VOLUMES I-VI A VISIT TO THREE FRONTS. JUNE 1916 A GLIMPSE OF THE ARMY GREAT BRITAIN AND THE NEXT WAR THE FUTURE OF CANADIAN LITERATURE THE NEW REVELATION THE VITAL MESSAGE THE WANDERINGS OF A SPIRITUALIST THE COMING OF THE FAIRIES




SUPERMARKET SALES ANALYSIS AND PREDICTION USING MACHINE LEARNING WITH PYTHON GUI


Book Description

The dataset used in this project consists of the growth of supermarkets with high market competitions in most populated cities. The dataset is one of the historical sales of supermarket company which has recorded in 3 different branches for 3 months data. Predictive data analytics methods are easy to apply with this dataset. Attribute information in the dataset are as follows: Invoice id: Computer generated sales slip invoice identification number; Branch: Branch of supercenter (3 branches are available identified by A, B and C); City: Location of supercenters; Customer type: Type of customers, recorded by Members for customers using member card and Normal for without member card; Gender: Gender type of customer; Product line: General item categorization groups - Electronic accessories, Fashion accessories, Food and beverages, Health and beauty, Home and lifestyle, Sports and travel; Unit price: Price of each product in $; Quantity: Number of products purchased by customer; Tax: 5% tax fee for customer buying; Total: Total price including tax; Date: Date of purchase (Record available from January 2019 to March 2019); Time: Purchase time (10am to 9pm); Payment: Payment used by customer for purchase (3 methods are available – Cash, Credit card and Ewallet); COGS: Cost of goods sold; Gross margin percentage: Gross margin percentage; Gross income: Gross income; and Rating: Customer stratification rating on their overall shopping experience (On a scale of 1 to 10). In this project, you will perform predicting rating using machine learning. The machine learning models used in this project to predict clusters as target variable are K-Nearest Neighbor, Random Forest, Naive Bayes, Logistic Regression, Decision Tree, Support Vector Machine, LGBM, Gradient Boosting, XGB, and MLP. Finally, you will plot boundary decision, distribution of features, feature importance, cross validation score, and predicted values versus true values, confusion matrix, learning curve, performance of the model, scalability of the model, training loss, and training accuracy.







Sales Management


Book Description

The new 9th edition of Sales Management continues the tradition of blending the most recent sales management research with real-life "best practices" of leading sales organizations. The authors teach sales management courses and interact with sales managers and sales management professors on a regular basis. Their text focuses on the importance of employing different sales strategies for different consumer groups, as well as integrating corporate, business, marketing, and sales strategies. Sales Management includes current coverage of the trends and issues in sales management, along with numerous real-world examples from the contemporary business world that are used throughout the text to illuminate chapter discussions. Key changes in this edition include: Updates in each chapter to reflect the latest sales management research, and leading sales management trends and practices An expanded discussion on trust building and trust-based selling as foundations for effective sales management All new chapter-opening vignettes about well-known companies that introduce each chapter and illustrate key topics from that chapter New or updated comments from sales managers in "Sales Management in the 21st Century" boxes An online instructor's manual with test questions and PowerPoints is available to adopters.