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Practical Machine Learning with Python: A Problem-Solver's Guide to Building Real-World Intelligent


Practical Machine Learning with Python: A Problem-Solver's Guide to Building Real-World Intelligent
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Beschreibung

PART I - Understanding Machine Learning
Chapter 1:  Machine Learning BasicsChapter Goal: This chapter familiarizes and acquaints readers with the basics of machine learning, industry standard workflows followed for machine learning processes and expands on the different types of machine learning and deep learning algorithmsNo of pages: 50-60 Sub -Topics1. Brief on machine learning, definitions and concepts2. Industry standard for data mining processes - CRISP - DM and adoption in ML3. Brief on data processing, visualization, feature extraction\engineering concepts4. Types of learning algorithms - supervised, unsupervised, reinforcement learning5. Advanced models - time series, deep learning6. Model building and validation concepts7. Applications of machine learningChapter 2:  The Python Machine Learning EcosystemChapter Goal: This chapter introduces readers to the python language and the entire ecosystem built around machine learning with python tools, frameworks and libraries. Overview and code samples are given for each tool to depict its usage and effectivenessNo of pages: 50 - 60Sub - Topics 1. Brief on Python  2. Why is Python effective for machine learning and data science3. Brief overview on the python ecosystem followed by data scientists (includes anaconda distribution) 4. Reproducible research with ipython5. Data processing and computing with pandas, numpy, scipy6. Statistical learning with statsmodels7. ML frameworks - scikit-learn, pyml etc8. NLP frameworks - nltk, pattern, spacy9. DL frameworks - theano, tensorflow, keras
PART II -  The Machine Learning PipelineChapter 3: Processing, wrangling and visualizing data&Sub - Topics:  1. Data Retrieval mechanisms (crawling, databases, APIs etc)2. Data processing (handling various forms of data - SQL, JSON, XML, Images)3. Data attributes and features (numeric, categorical etc)4. Data Wrangling (cleaning, handling missing values, normalizing data)5. Data Summarization6. Data Visualization (bar, histogram, boxplot, line, scatter etc)
Chapter 4:  Feature Engineering and SelectionChapter Goal: This chapter focuses on the next stage in the ML pipeline, feature extraction, engineering and selection. Readers will learn about both basic and advanced feature engineering methods for different data formats including numeric, text and images. We will also focus on methods for effective feature selectionNo of pages:  50 - 60Sub - Topics: 1. Features - understanding yourv>2. Basic Feature engineering3. Extracting features from numeric, categorical variables4. Extracting features from date\timestamp variables5. Extracting Basic features from textual data (bag of words)6. Advanced Feature engineering7. Extracting complex features from textual data (word vectorization, tfidf, topic models)8. Extracting features from images (pixels, edge detection, shapes)9. Time series features10. Feature scaling and standardization11 Feature selection techniques12 Using forward\backward selection techniques13 Using machine learning models like random forests14 Other methods
Chapter 5: Building, tuning and deploying modelsChapter Goal: This chapter focuses on the final stage in the ML pipeline where readers will learn how to fit and build models on data features, how to optimize and tune models and f learn ways of deploying models to use them in real-world scenarios for predictions\insightsNo of pages : 50-60Sub - Topics:  1. Fitting and building models 2. Model evaluation techniques3. Model optimization methods like gradient descent4. Model tuning methodologies like cross validation, grid search5. How to save and load models6. Deploying models in action
PART III -  Real-world case studies in applied machine learningChapter 6: Analyzing bike sharing trendsChapter Goal: This chapter will focus on a real-world case study of analyzing and predicting bike sharing trends with a focus on regression modelsNo of pages : 30-40Sub - Topics:  1. Trend analysis2. Regression models3. Predictive analytics
Chapter 7: Analyzing movie reviews sentimentChapter Goal: This chapter will focus on a real-world case study of analyzing sentiment for popular movie reviews using concepts and techniques from natural language processing, text analytics and classificationNo of pages : 30-40Sub - Topics:  1. Text Classification2. Natural language processing3. Sentiment analysis4. Comparing models and different features
Chapter 8: Customer segmentation and effective cross sellingChapter Goal: This chapter will focus on a real-world case study of leveraging unsupervised learning and pattern recognition for solving problems in the retail industry like customer segmentation, cross selling and so onNo of pages : 30-40Sub - Topics:  1. Clustering techniques2. Customer segmentation3. Pattern recognition and association rule mining4. Analyze potential product assoelling trendsChapter 9: Social network analysis - A Facebook case-studyChapter Goal: This chapter will focus on analyzing data from a popular social network - Facebook and acquaint readers to concepts from social network analysis and graph theoryNo of pages : 30-40Sub - Topics:  1. Social network analysis2. Data retrieval and analysis from Facebook3. Concepts from graph theory applied in real-world data4. Useful visualizations from facebook data
Chapter 10: Analyzing music trends and recommentationsChapter Goal: This chapter will focus on a real-world case study of analyzing music trends and also providing music recommendations to users using concepts from recommender systems like collaborative filteringNo of pages : 40 - 50Sub - Topics:  1. Recommender systems2. Techniques - collaborative fv>iv>3. Analyzing tresights from music dataiv>4. Music\song recommendations in action
Chapter 11: Forecasting stock and commodity pricesChapter Goal: This chapter will focus on a real-world case study of trying to forecast stock and commodity price trends based on market data and using advanced models like time series models and deep learning models like RNNsNo of pages : 40 - 50Sub - Topics:  1. Trend analysis2. Time series forecasting - ARIMA\EWMA models3. Deep learning based forecasting - RNN\LSTM models4. Regression\MC models if needed
Chapter 12: Image similarity, classification and generationChapter Goal: This chapter will focus on trying to analyze a real-world image dataset and look at methods for image similarity, build image classifiers and generate images using innovative techniqueen advanced deep learning modelsNo of pages : 50Sudiv>b - Topics:  ;iv>1. Image processing, similarity analysis2. Basic models - simple classification, dynamic time warping3. Image classification with deep learning models - CNNs, MLPs4. Image generation using generative adversial networks in deep learning (GANs) - if time\scope permits

Eigenschaften

Breite: 177
Gewicht: 1062 g
Höhe: 252
Länge: 31
Seiten: 530
Sprachen: Englisch
Autor: Dipanjan Sarkar, Raghav Bali, Tushar Sharma

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