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Science - 8 November 2024 English | 174 Pages | True PDF | 113 MB https://fileaxa.com/hy860pz51jx1 https://ddownload.com/zwf8ed1llvzj https://rapidgator.net/file/1e3adbec6018cf31e992d3570866b651/ https://turbobit.net/dfcajsb1wdav.html
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Free Download Web Scraping APIs for Data Science 2021 - PostgreSQL+Excel Last updated 2/2023 Created by Dr. Alexander Schlee MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch Genre: eLearning | Language: English + subtitle | Duration: 24 Lectures ( 4h 25m ) | Size: 2.22 GB From Beginner to Advanced | 4 Hands-On Projects What you'll learn web scraping data extraction data mining create your own dataset output data in Excel output your dataframe in PostgreSQL run SQL commands on your dataframe Requirements basic understanding of Python programming Description In this course the students will get to know how to scrape data from the API of a website (if available). We start with the fundamentals and the beginner level project. After that, two different projects will be covered, followed by the advanced project. After scraping data of wach project, the results will be stored inside an Excel file. Within the advanced level project we will create two dofferent datasets with 5000 results each. The goal is to merge both dataframes (total: 10000 results), save it in Excel and output the data in the PostgreSQL database and run SQL commands on our own data.The requirement for this course is basic knowledge of Python Programming. Since we will not cover very difficult Python topics you do not have to be a professional. The most important characteristic is that you are curious about Web Scraping and Data Mining. You should be ready to invest time in gaining the knowledge which is taught in this course.After this course you will have the knowledge and the experience to scrape your own data and create your own dataset. With the help of the course resources you will always have documents you can refer to. If you have a question or if a concept just does not make sense to you, you can ask your questions anytime inside the Q&A - Forum. Either the instructor or other students will answer your question. Thanks to the community you will never have the feeling to learn alone by yourself.Disclaimer : I teach web scraping as a tutor for educational purposes. That's it. The first rule of scraping the web is: do not harm a certain website. The second rule of web crawling is: do NOT harm a certain website. Who this course is for Data Enthusiasts who want to create their own datasets Homepage https://www.udemy.com/course/web-scraping-apis-for-data-science-2021/ Screenshot TakeFile https://takefile.link/7mgui09x6890/wermw.Data.Science.2021..PostgreSQLExcel.rar.html Rapidgator https://rg.to/file/cbadcce3f81aa59180993d77933531a3/wermw.Data.Science.2021..PostgreSQLExcel.rar.html Fikper Free Download https://fikper.com/0Qm7rzvGER/wermw.Web.Scraping.APIs.for.Data.Science.2021..PostgreSQLExcel.part2.rar.html https://fikper.com/7lA8et4IFq/wermw.Web.Scraping.APIs.for.Data.Science.2021..PostgreSQLExcel.part1.rar.html https://fikper.com/Ei8ue4zEvK/wermw.Web.Scraping.APIs.for.Data.Science.2021..PostgreSQLExcel.part3.rar.html https://fikper.com/UTDaWfqO84/wermw.Web.Scraping.APIs.for.Data.Science.2021..PostgreSQLExcel.part3.rar.html https://fikper.com/ZohTjua3N7/wermw.Web.Scraping.APIs.for.Data.Science.2021..PostgreSQLExcel.part1.rar.html https://fikper.com/oDLDbgjv97/wermw.Web.Scraping.APIs.for.Data.Science.2021..PostgreSQLExcel.part2.rar.html https://fikper.com/ps3WIqEP9Y/wermw.Data.Science.2021..PostgreSQLExcel.rar.html No Password - Links are Interchangeable
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Free Download Udemy - Diploma In Midwifery Science Published 10/2024 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 4.06 GB | Duration: 2h 0m midwifery, midwife, midwifery science, online course, diploma, certification, pregnancy, childbirth, women's health What you'll learn Antenatal care Nutrition during pregnancy and childbirth. Clinical errors in healthcare Post partum Care Family planning And many more Reproductive health and sexual rights Research for midwifery Violence against healthcare professionals Professional development in Midwifery. Global challenges in Midwifery. Disaster management and midwifery Gender violence in midwifery Adolescent sexual health. Mental health during pregnancy Midwifery leadership Midwifery practice in different settings Requirements Basics of obstetrics and Gynaecology will help you in better understanding. Description Become a Certified Midwife and Empower Women Throughout Their Pregnancy Journey!Are you passionate about women's health and childbirth? Do you dream of making a difference in the lives of mothers and their newborns? This Diploma in Midwifery Science online course will equip you with the comprehensive knowledge and practical skills needed to excel as a qualified midwife.In this accredited program, you will:Gain a deep understanding of human anatomy, physiology, and the science of pregnancy and childbirth.Master the art of prenatal care, labor and delivery management, and postpartum care.Develop essential clinical skills in assessment, monitoring, and intervention during pregnancy and childbirth.Learn about the emotional and social aspects of pregnancy and childbirth, providing holistic care to mothers and their families.Explore the ethical and legal considerations of midwifery practice.Gain valuable experience through simulated scenarios and case studies.This course is perfect for:Aspiring midwives seeking a globally recognized qualification.Healthcare professionals who want to specialize in midwifery.Individuals passionate about women's health and empowerment.Here's what you'll get:Expert-led video lectures, tutorials, and demonstrations.Comprehensive study materials, including textbooks, articles, and online resources.Interactive quizzes and assessments to track your progress.24/7 access to a dedicated online learning platform.Individualized support from experienced tutors and mentors.Upon successful completion, you will be eligible to:Sit for the international midwifery licensing exam.Register as a certified midwife with your local regulatory body.Pursue a rewarding career in midwifery, making a positive impact on the lives of women and families.Don't miss this chance to fulfill your dream of becoming a midwife! Enroll now and embark on your journey to a fulfilling and impactful career!Enroll now and start your journey to becoming a certified midwife! Overview Section 1: Introduction Lecture 1 introduction to Midwifery Lecture 2 Antenatal care Lecture 3 The recent advances in midwifery Lecture 4 Nutrition during pregnancy and childbirth. Lecture 5 Documentation and record keeping Importance Lecture 6 Documentation and record keeping introduction Lecture 7 Clinical errors in healthcare Lecture 8 Post partum period Lecture 9 Family planning Lecture 10 Reproductive health and sexual rights Lecture 11 Research for midwifery Lecture 12 Violence against healthcare professionals Lecture 13 Medical terminology overview Lecture 14 Professional development in Midwifery. Lecture 15 Research in midwifery Lecture 16 Technology and healthcare Lecture 17 Quality improvement in Midwifery Lecture 18 Global challenges in Midwifery. Lecture 19 Disaster management and midwifery Lecture 20 Gender violence in midwifery Lecture 21 Adolescent sexual health. Lecture 22 Mental health during pregnancy Lecture 23 Midwifery leadership Lecture 24 Midwifery practice in different settings Lecture 25 No expiry date of medicine Everyone who would like to understand and make a career in midwifery Screenshot Homepage https://www.udemy.com/course/diploma-in-midwifery-science/ Rapidgator https://rg.to/file/533372416351a3d1ac7df6879b225f83/tfluy.Diploma.In.Midwifery.Science.part1.rar.html https://rg.to/file/97a3199d1e731f05b5f20bc5dd949e2d/tfluy.Diploma.In.Midwifery.Science.part4.rar.html https://rg.to/file/c10f4f745866ca88bd7cd32e416e20c0/tfluy.Diploma.In.Midwifery.Science.part3.rar.html https://rg.to/file/d0721e7f30445de5222f66b7c3e0f7f4/tfluy.Diploma.In.Midwifery.Science.part2.rar.html https://rg.to/file/ef795c05a8f0d90f5a00d5ce7803520a/tfluy.Diploma.In.Midwifery.Science.part5.rar.html Fikper Free Download https://fikper.com/6IQpwBuX8n/tfluy.Diploma.In.Midwifery.Science.part2.rar.html https://fikper.com/8puZxT75dw/tfluy.Diploma.In.Midwifery.Science.part1.rar.html https://fikper.com/MX7fATM2E9/tfluy.Diploma.In.Midwifery.Science.part4.rar.html https://fikper.com/oe31RdUGIR/tfluy.Diploma.In.Midwifery.Science.part3.rar.html https://fikper.com/pnc5yc518x/tfluy.Diploma.In.Midwifery.Science.part5.rar.html No Password - Links are Interchangeable
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Free Download Udemy - Data Science Using R (2024) Published 10/2024 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 17.31 GB | Duration: 19h 22m "Data Science Using R: Comprehensive Training in Data Analysis, Visualization, and Machine Learning Techniques . What you'll learn Proficient R Programming: Develop a solid foundation in R programming for data manipulation, analysis, and visualization. Statistical Analysis Skills: Apply statistical methods and machine learning algorithms to derive meaningful insights from datasets. Data Visualization Mastery: Create compelling visualizations using ggplot2 to effectively communicate data findings and trends. Practical Application: Complete real-world projects that enhance problem-solving abilities and demonstrate proficiency in data science concepts. Requirements To enroll in the Data Science Using R course, parti[beeep]nts should have a basic understanding of programming concepts, as familiarity with any programming language will facilitate the learning process. A foundational knowledge of statistics is also beneficial, as it will help students grasp essential data analysis techniques more effectively. Additionally, proficiency in general computer literacy and software applications is required to navigate R and its associated tools. Most importantly, a strong eagerness to learn and a curiosity about data science are crucial for success in this course. These prerequisites will ensure that all students are well-prepared to dive into the exciting world of data science. Description This course, "Data Science with R," is designed for aspiring data scientists and analysts seeking to harness the power of R for data manipulation, analysis, and visualization. Parti[beeep]nts will begin by gaining a solid foundation in R programming, covering key concepts such as data types, structures, and essential functions.As the course progresses, students will delve into data wrangling techniques using packages like dplyr and tidyr, enabling them to clean and prepare datasets for analysis. The curriculum emphasizes statistical analysis, including hypothesis testing, regression models, and machine learning algorithms, empowering parti[beeep]nts to draw meaningful insights from their data.Visualization is a key focus, with instruction on using ggplot2 to create informative and engaging graphics that communicate results effectively. Real-world case studies and hands-on projects will provide practical experience, allowing students to apply their skills to actual data challenges.By the end of the course, parti[beeep]nts will have developed a comprehensive toolkit for data science, including proficiency in R, an understanding of statistical methodologies, and the ability to present their findings clearly. This course is perfect for those looking to kickstart a career in data science or enhance their analytical capabilities in any field and sorroundings.IIBM Institute of Business Management. Overview Section 1: R Introduction Lecture 1 R Introduction Section 2: R Implementation, R Data Structures, R Interfaces, R Interfaces Lecture 2 R Implementation, R Data Structures, R Interfaces, R Interfaces Section 3: Data Visualization Using R Software Lecture 3 Introduction to Visualisation - Line Plots and Bar Charts - Pie Chart and Histog Section 4: Predictive Customer Analytics using R - Linear Regression using R Software Lecture 4 Predictive Customer Analytics using R - Linear Regression using R Software-Part1 Lecture 5 Predictive Customer Analytics using R - Linear Regression using R Software-Part2 Section 5: Bank Loan Modelling using R Lecture 6 Logistic Function - Single Predictor Model. Section 6: Sales Promotion Effectiveness -Dimension Reduction using R Software. Lecture 7 Sales Promotion Effectiveness -Dimension Reduction using R Software - Part 1 Lecture 8 Sales Promotion Effectiveness -Dimension Reduction using R Software - Part 2 Section 7: Customer and Market Segmentation - Cluster Analysis using R Lecture 9 Customer and Market Segmentation - Cluster Analysis using R Software-Part 1 Lecture 10 Customer and Market Segmentation - Cluster Analysis using R Software-Part 2 Section 8: Retail Analytics: Market Basket Analysis (MBA) - Association Rule using R. Lecture 11 Association Rule Introduction - Apriori Algorithm - Multiple Association Rules Section 9: Customer Loyalty Analytics- Naïve Bayes Classification using R Software. Lecture 12 Naïve Bayes Introduction - Probabilistic Basics and Probabilistic Classification Section 10: K - Nearest Neighbour (KNN) Using R Software Lecture 13 K - Nearest Neighbour Introduction - K - Nearest Neighbour Algorithm. Section 11: Decision Trees using R Software Lecture 14 What is a Decision Tree? - How to create Decision Tree Section 12: Random Forest using R Software Lecture 15 Ensample of Decision Tree. Section 13: Support Vector Machine - SVM Lecture 16 Linear SVM using Hyperplane - Non-Linear Hyperplane using Kernal Trick. Section 14: Real Time Project - Customer Loyalty Analytics and its Application. Lecture 17 RFM Segmentation and Analysis - Propensity Modelling and its application. Lecture 18 Real Time Project - Customer Loyalty Analytics and its Application Section 15: Real Time Project - Finance Analytics and its Application using R Lecture 19 Credit Risk Analytics using Logistic Regression. Section 16: Course Complete Revision Lecture 20 Course Complete This course is for aspiring data scientists, analysts, and researchers seeking to enhance their R programming skills, gain insights from data, and apply analytical techniques in real-world scenarios. 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Free Download Python For Data Science Your Career Accelerator Published 10/2024 MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz Language: English | Size: 3.83 GB | Duration: 10h 37m Master Python and Unlock Data Analysis, Visualization, and Machine Learning Skills What you'll learn Learn the basics of Python, including data types, variables, loops, conditionals, and string manipulation. Gain hands-on experience with essential libraries like Pandas, NumPy, and Matplotlib for data manipulation, analysis, and visualization. Learn to clean, transform, and preprocess datasets for analysis, preparing them for real-world data science tasks. Understand the concepts of object-oriented programming (OOP) and apply them to structure Python code efficiently. By the end of the course, students will have completed a data science capstone project, where they will collect, analyze, and present insights from a real-world Requirements No programming experience or knowledge of Data Science required. Just come with a passion to learn. Description Are you ready to embark on an exciting journey into the world of data science? "Python for Data Science: Your Career Accelerator" is meticulously designed to transform beginners into proficient data science professionals, equipping you with the essential skills and knowledge needed to thrive in today's rapidly evolving, data-driven landscape.This comprehensive Python for Data Science course covers:Comprehensive Python Course: Master Python programming from the basics to advanced data science applications, including essential libraries like Pandas and NumPy.Data Analysis: Learn essential techniques to manipulate, clean, and analyze real-world datasets, ensuring your data is ready for actionable insights.Data Visualization: Create impactful visualizations using libraries like Matplotlib and Seaborn to present data in a meaningful way and drive decision-making.Machine Learning: Explore core machine learning concepts and algorithms, from linear regression to classification models, and apply them to solve real-world problems.Hands-on Projects: Work on real-world projects to build practical skills and a strong portfolio for your data science career, preparing you to excel in the field.Career-Focused: Gain the skills to excel in roles like Data Analyst, Data Scientist, or Machine Learning Engineer with the confidence to tackle industry challenges.With a focus on practical, project-based learning, this course equips you with both theoretical knowledge and hands-on experience, ensuring you're ready to succeed in the fast-growing field of data science. Overview Section 1: Python Essentials: From Basics to Collaboration Lecture 1 Welcome Note & Intro to python Lecture 2 Introduction to Google Colab Notebook Lecture 3 Introduction to GitHub Lecture 4 Print & Comment Section 2: Python Basics: Fundamental Concepts and Operations Lecture 5 Variables & Assignment Operators Lecture 6 Understanding Data Types Lecture 7 Understanding Expressions Lecture 8 Arithmetic & Assignment Operators Lecture 9 Relational/Comparison Operators Lecture 10 Logical Operators Lecture 11 Identity & Membership Operators, Type Lecture 12 User Input Section 3: Mastering Conditional Branching in Python Lecture 13 Conditional Statements with Logical Operators Lecture 14 If-elif-else Statements Lecture 15 Switch Case Section 4: Mastering Loops in Python Lecture 16 For Loop Lecture 17 While Loops Lecture 18 Do-While Loop Lecture 19 Break and Continue Statements Section 5: Exploring Functions in Python Lecture 20 Introduction to Functions & Pass Statements in Python Lecture 21 Working with Function Arguments Lecture 22 Functions with Return Types Lecture 23 Understanding Local and Global Variables Lecture 24 Lambda Functions in Python Section 6: Mastering Strings in Python Lecture 25 Creating Strings Lecture 26 Understanding Strings as Arrays Lecture 27 Looping Through Strings Lecture 28 String Manipulation Lecture 29 Essential String Operations Lecture 30 Exploring Useful String Methods Section 7: Mastering Lists in Python Lecture 31 Introduction to Lists Lecture 32 Iterating Through List Items Lecture 33 Exploring List Properties Lecture 34 Mastering List Manipulation Lecture 35 Exploring List Methods in Python Section 8: Mastering Tuples in Python Lecture 36 Introduction to Tuples Lecture 37 Advanced Tuple Operations Lecture 38 Mastering Tuple Operations Lecture 39 Exploring Tuple Methods and Operations Section 9: Mastering Dictionaries in Python Lecture 40 Introduction to Dictionaries Lecture 41 Dictionary Operations Lecture 42 Looping through Dictionaries Lecture 43 Essential Dictionary Methods Section 10: Exploring Sets in Python Lecture 44 Understanding Sets Lecture 45 Exploring Set Operations and Looping Lecture 46 Set Operations Lecture 47 Exploring Set Methods Section 11: Machine Learning with K-Nearest Neighbors Lecture 48 KNN Theory Explained Lecture 49 KNN Regression from Scratch using Python Lecture 50 KNN Classification from Scratch using Python Section 12: Machine Learning with Support Vector Machine Lecture 51 SVM Theory Explained Lecture 52 SVM Regression using Python Lecture 53 SVM Classification using Python Section 13: Machine Learning with K-Means Clustering Lecture 54 Detailed Overview of K-Means Clustering Lecture 55 K-Means Clustering using Python Beginners,Career Switchers,Students,Data Enthusiasts Homepage https://www.udemy.com/course/python-for-data-science-your-career-accelerator/ Rapidgator https://rg.to/file/0b96396af360738b70f969c9f56645d7/rkpjb.Python.For.Data.Science.Your.Career.Accelerator.part3.rar.html https://rg.to/file/560bf988f4484f5d21009ea8a33aa391/rkpjb.Python.For.Data.Science.Your.Career.Accelerator.part2.rar.html https://rg.to/file/732b91242f1e89a3d5d627f9231d28c2/rkpjb.Python.For.Data.Science.Your.Career.Accelerator.part1.rar.html https://rg.to/file/aa873b7af3d02ebdac6ed3f2b635364d/rkpjb.Python.For.Data.Science.Your.Career.Accelerator.part4.rar.html Fikper Free Download https://fikper.com/A5VoQywqSj/rkpjb.Python.For.Data.Science.Your.Career.Accelerator.part1.rar.html https://fikper.com/ngsEG1P93X/rkpjb.Python.For.Data.Science.Your.Career.Accelerator.part2.rar.html https://fikper.com/ww0lblGIhg/rkpjb.Python.For.Data.Science.Your.Career.Accelerator.part4.rar.html https://fikper.com/yJgJBFN38T/rkpjb.Python.For.Data.Science.Your.Career.Accelerator.part3.rar.html No Password - Links are Interchangeable
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Free Download Professional Certificate in Data Science 2024 Last updated 1/2024 Created by Academy of Computing & Artificial Intelligence MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch Genre: eLearning | Language: English + subtitle | Duration: 170 Lectures ( 26h 36m ) | Size: 12 GB Learn All the Skills to Become a Data Scientist[ Machine Learning,Deep Learning, CNN, DCGAN, Python, Java, Algorithms] What you'll learn Python Programming Basics For Data Science Machine Learning -[A -Z] Comprehensive Training with Step by step guidance Supervised Learning - (Univariate Linear regression, Multivariate Linear Regression, Logistic regression, Naive Bayes Classifier, Trees, Support Vector Machines, Random Forest) Unsupervised Learning - Clustering, K-Means clustering Evaluating the Machine Learning Algorithms : Precision, Recall, F-Measure, Confusion Matrices, Data Pre-processing - Data Preprocessing is that step in which the data gets transformed, or Encoded, to bring it to such a state that now the machine can easily parse it. Algorithm Analysis For Data Scientists KERAS Tutorial - Developing an Artificial Neural Network in Python -Step by Step Deep Learning -Handwritten Digits Recognition[Step by Step][Complete Project ] Deep Convolutional Generative Adversarial Networks (DCGAN) Java Programming For Data Scientists Kaggle - Covid 19- Classification (Chest X-ray.) - Covid-19 & Pneumonia Developing a CNN From Scratch for CIFAR-10 Photo Classification Requirements Computer & Internet Connection Description At the end of the Course you will have all the skills to become a Data Science Professional. (The most comprehensive Data Science course )1) Python Programming Basics For Data Science - Python programming plays an important role in the field of Data Science2) Introduction to Machine Learning -[A -Z] Comprehensive Training with Step by step guidance3) Setting up the Environment for Machine Learning - Step by step guidance4) Supervised Learning - (Univariate Linear regression, Multivariate Linear Regression, Logistic regression, Naive Bayes Classifier, Trees, Support Vector Machines, Random Forest)5) Unsupervised Learning6) Evaluating the Machine Learning Algorithms7) Data Pre-processing8) Algorithm Analysis For Data Scientists9) Deep Convolutional Generative Adversarial Networks (DCGAN)10) Java Programming For Data ScientistsCourse Learning OutcomesTo provide awareness of the two most integral branches (Supervised & Unsupervised learning) coming under Machine LearningDescribe intelligent problem-solving methods via appropriate usage of Machine Learning techniques.To build appropriate neural models from using state-of-the-art python framework.To build neural models from scratch, following step-by-step instructions. To build end - to - end solutions to resolve real-world problems by using appropriate Machine Learning techniques from a pool of techniques available. To critically review and select the most appropriate machine learning solutionsTo use ML evaluation methodologies to compare and contrast supervised and unsupervised ML algorithms using an established machine learning framework.Beginners guide for python programming is also inclusive. Introduction to Machine Learning - Indicative Module ContentIntroduction to Machine Learning:- What is Machine Learning ?, Motivations for Machine Learning, Why Machine Learning? Job Opportunities for Machine Learning Setting up the Environment for Machine Learning:-Downloading & setting-up Anaconda, Introduction to Google CollabsSupervised Learning Techniques:-Regression techniques, Bayer's theorem, Naïve Bayer's, Support Vector Machines (SVM), Decision Trees and Random Forest.Unsupervised Learning Techniques:- Clustering, K-Means clusteringArtificial Neural networks[Theory and practical sessions - hands-on sessions]Evaluation and Testing mechanisms :- Precision, Recall, F-Measure, Confusion Matrices, Data Protection & Ethical PrinciplesSetting up the Environment for Python Machine LearningUnderstanding Data With Statistics & Data Pre-processing (Reading data from file, Checking dimensions of Data, Statistical Summary of Data, Correlation between attributes)Data Pre-processing - Scaling with a demonstration in python, Normalization , Binarization , Standardization in Python,feature Selection Techniques : Univariate SelectionData Visualization with Python -charting will be discussed here with step by step guidance, Data preparation and Bar Chart,Histogram , Pie Chart, etc..Artificial Neural Networks with Python, KERASKERAS Tutorial - Developing an Artificial Neural Network in Python -Step by StepDeep Learning -Handwritten Digits Recognition[Step by Step][Complete Project ]Naive Bayes Classifier with Python[Lecture & Demo]Linear regressionLogistic regressionIntroduction to clustering[K - Means Clustering ]K - Means ClusteringThe course will have step by step guidance for machine learning & Data Science with Python.You can enhance your core programming skills to reach the advanced level. By the end of these videos, you will get the understanding of following areas the Python Programming Basics For Data Science - Indicative Module ContentPython ProgrammingSetting up the environmentPython For Absolute Beginners : Setting up the Environment : AnacondaPython For Absolute Beginners : Variables , Lists, Tuples , DictionaryBoolean operationsConditions , Loops(Sequence , Selection, Repetition/Iteration)FunctionsFile Handling in PythonAlgorithm Analysis For Data Scientists This section will provide a very basic knowledge about Algorithm Analysis. (Big O, Big Omega, Big Theta)Java Programming for Data Scientists Deep Convolutional Generative Adversarial Networks (DCGAN)Generative Adversarial Networks (GANs) & Deep Convolutional Generative Adversarial Networks (DCGAN) are one of the most interesting and trending ideas in computer science today. Two models are trained simultaneously by an adversarial process. A generator , learns to create images that look real, while a discriminator learns to tell real images apart from fakes.At the end of this section you will understand the basics of Generative Adversarial Networks (GANs) & Deep Convolutional Generative Adversarial Networks (DCGAN) .This will have step by step guidance Import TensorFlow and other librariesLoad and prepare the datasetCreate the models (Generator & Discriminator)Define the loss and optimizers (Generator loss , Discriminator loss)Define the training loopTrain the modelAnalyze the output Does the course get updated?We continually update the course as well.What if you have questions?we offer full support, answering any questions you have.Who this course is for:Beginners with no previous python programming experience looking to obtain the skills to get their first programming job.Anyone looking to to build the minimum Python programming skills necessary as a pre-requisites for moving into machine learning, data science, and artificial intelligence.Who want to improve their career options by learning the Python Data Engineering skills. 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Free Download Math 0-1 Matrix Calculus in Data Science & Machine Learning Last updated 10/2024 Created by Lazy Programmer Inc. MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch Genre: eLearning | Language: English + subtitle | Duration: 40 Lectures ( 6h 55m ) | Size: 2.75 GB A Casual Guide for Artificial Intelligence, Deep Learning, and Python Programmers What you'll learn Derive matrix and vector derivatives for linear and quadratic forms Solve common optimization problems (least squares, Gaussian, financial portfolio) Understand and implement Gradient Descent and Newton's method Learn to use the Matrix Cookbook Requirements Competence with Calculus and Linear Algebra Optional: Familiarity with Python, Numpy, and Matplotlib to implement optimization techniques Description Welcome to the exciting world of Matrix Calculus, a fundamental tool for understanding and solving problems in machine learning and data science. In this course, we will dive into the powerful mathematics that underpin many of the algorithms and techniques used in these fields. By the end of this course, you'll have the knowledge and skills to navigate the complex landscape of derivatives, gradients, and optimizations involving matrices.Course Objectives:Understand the basics of matrix calculus, linear and quadratic forms, and their derivatives.Learn how to utilize the famous Matrix Cookbook for a wide range of matrix calculus operations.Gain proficiency in optimization techniques like gradient descent and Newton's method in one and multiple dimensions.Apply the concepts learned to real-world problems in machine learning and data science, with hands-on exercises and Python code examples.Why Matrix Calculus? Matrix calculus is the language of machine learning and data science. In these fields, we often work with high-dimensional data, making matrices and their derivatives a natural representation for our problems. Understanding matrix calculus is crucial for developing and analyzing algorithms, building predictive models, and making sense of the vast amounts of data at our disposal.Section 1: Linear and Quadratic Forms In the first part of the course, we'll explore the basics of linear and quadratic forms, and their derivatives. The linear form appears in all of the most fundamental and popular machine learning models, including linear regression, logistic regression, support vector machine (SVM), and deep neural networks. We will also dive into quadratic forms, which are fundamental to understanding optimization problems, which appear in regression, portfolio optimization in finance, signal processing, and control theory.The Matrix Cookbook is a valuable resource that compiles a wide range of matrix derivative formulas in one place. You'll learn how to use this reference effectively, saving you time and ensuring the accuracy of your derivations.Section 2: Optimization Techniques Optimization lies at the heart of many machine learning and data science tasks. In this section, we will explore two crucial optimization methods: gradient descent and Newton's method. You'll learn how to optimize not only in one dimension but also in high-dimensional spaces, which is essential for training complex models. We'll provide Python code examples to help you grasp the practical implementation of these techniques.Course Structure:Each lecture will include a theoretical introduction to the topic.We will work through relevant mathematical derivations and provide intuitive explanations.Hands-on exercises will allow you to apply what you've learned to real-world problems.Python code examples will help you implement and experiment with the concepts.There will be opportunities for questions and discussions to deepen your understanding.Prerequisites:Basic knowledge of linear algebra, calculus, and Python programming is recommended.A strong desire to learn and explore the fascinating world of matrix calculus.Conclusion: Matrix calculus is an indispensable tool in the fields of machine learning and data science. It empowers you to understand, create, and optimize algorithms that drive innovation and decision-making in today's data-driven world. This course will equip you with the knowledge and skills to navigate the intricate world of matrix calculus, setting you on a path to become a proficient data scientist or machine learning engineer. So, let's dive in, embrace the world of matrices, and unlock the secrets of data science and machine learning together! 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Free Download Master Advanced Data Science -Data Scientist AIML Experts TM Published 10/2024 MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch Language: English | Duration: 31h 29m | Size: 15.6 GB Real-World Case Studies and Practical Applications in Data Science What you'll learn Data Science Sessions Part 1 & 2: Understand the foundational methodologies and approaches in data science. Data Science vs Traditional Analysis: Compare modern data science techniques to traditional statistical methods. Data Scientist Journey Parts 1 & 2: Explore the skills, roles, and responsibilities of a data scientist. Data Science Process Overview Parts 1 & 2: Gain insights into the end-to-end data science process. Introduction to Python for Data Science: Learn Python programming for data science tasks and analysis. Python Libraries for Data Science: Master key Python libraries like Numpy, Pandas, and Matplotlib. Introduction to R for Data Science: Get acquainted with R programming for statistical analysis. Data Structures and Functions in Python & R: Handle and manipulate data efficiently using Python and R. Introduction to Data Collection Methods: Understand various data collection techniques, including experimental methods. Data Preprocessing (Parts 1 & 2): Clean and transform raw data to prepare it for analysis. Exploratory Data Analysis (EDA): Detect outliers and anomalies to understand your data better. Data Visualization Techniques: Choose the right visualization methods to represent data insights. Tableau and Data Visualization: Utilize Tableau for advanced data visualization. Inferential Statistics for Hypothesis Testing: Apply inferential statistics to test hypotheses and determine confidence intervals. Introduction to Machine Learning: Learn the fundamentals of machine learning and its applications. Unsupervised Learning (Clustering, DBSCAN, Dimensionality Reduction): Discover patterns and clusters in unlabeled datasets. Supervised Learning (Regression, Classification, Decision Trees): Build and evaluate predictive models using labeled data. Evaluation Metrics for Regression & Classification: Use various metrics to assess machine learning model performance. Model Evaluation and Validation Techniques: Improve model robustness through bias-variance tradeoffs and validation techniques. Ethical Challenges in Data Science: Address ethical concerns in data collection and model deployment. Requirements Anyone can learn this class it is very simple. Description This comprehensive Data Science Mastery Program is designed to equip learners with essential skills and knowledge across the entire data science lifecycle. The course covers key concepts, tools, and techniques in data science, from basic data collection and processing to advanced machine learning models. 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Free Download Hands On Python Data Science - Data Science Bootcamp Published 10/2024 Created by Sayman Creative Institute MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch Genre: eLearning | Language: English | Duration: 24 Lectures ( 5h 40m ) | Size: 1.55 GB Master Python for Data Science with Real-World Applications: Dive Deep into Data Analysis, Machine Learning What you'll learn A strong foundation in Python programming concepts, including variables, data types, control flow, and functions. Effective use of various data structures, such as lists, tuples, dictionaries, and sets. Proficiency in the NumPy library for efficient numerical computations and array manipulation. Skillful application of the Pandas library for data cleaning, filtering, grouping, and aggregation. Exposure to fundamental machine learning concepts and algorithms using Scikit-learn. Requirements No experience required Description This comprehensive course is designed for both beginners and those looking to sharpen their data science skills. Through a step-by-step approach, you'll learn to harness Python's powerful libraries like Pandas, NumPy, Matplotlib, and Scikit-Learn, enabling you to analyze, visualize, and draw insights from data like a pro.What You'll Learn:Python Fundamentals for Data Science: Master the essentials of Python programming and understand how to apply them in data science.Data Analysis & Manipulation: Explore how to clean, filter, and manipulate large datasets using Pandas and NumPy.Data Visualization: Create stunning visualizations using Matplotlib and Seaborn to communicate insights effectively.Machine Learning Made Easy: Dive into key algorithms such as regression, classification, and clustering using Scikit-Learn, and apply them to real-world projects.Real-World Projects: Work on hands-on projects, including data analysis and predictive modeling, that will give you a portfolio to showcase your skills.Why Enroll in This Course?Hands-On Learning: Get practical experience with coding exercises, quizzes, and real-world projects.Industry-Relevant Skills: Acquire the tools and techniques used by top data scientists in the industry.Guided Support: Learn with easy-to-follow lessons, and get answers to your questions through interactive Q&A.Lifetime Access: Revisit lessons anytime, anywhere, and continue your learning journey at your own pace.Whether you're an aspiring data scientist, analyst, or someone looking to make data-driven decisions, this bootcamp is your gateway to a successful data science career. Enroll now and transform raw data into actionable insights! Who this course is for Individuals with no prior programming experience but a desire to learn data science. Homepage https://www.udemy.com/course/hands-on-python-data-science-data-science-bootcamp/ Screenshot Rapidgator https://rg.to/file/1d480f79a95ea852a6eacc8989996888/frgwj.Hands.On.Python.Data.Science..Data.Science.Bootcamp.part2.rar.html https://rg.to/file/c00f05967df0abd13890e035747c46fc/frgwj.Hands.On.Python.Data.Science..Data.Science.Bootcamp.part1.rar.html Fikper Free Download https://fikper.com/SWX9aLTkSJ/frgwj.Hands.On.Python.Data.Science..Data.Science.Bootcamp.part2.rar.html https://fikper.com/qxDzGCIqhQ/frgwj.Hands.On.Python.Data.Science..Data.Science.Bootcamp.part1.rar.html No Password - Links are Interchangeable
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Free Download Exploring Data Science with .NET using Polyglot Notebooks & ML.NET Released 10/2024 With Matt Eland MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch Skill level: Intermediate | Genre: eLearning | Language: English + subtitle | Duration: 2h 1m 11s | Size: 220 MB Learn to conduct data analytics and data science experiments using Polyglot Notebooks. Explore core concepts, language support, data ingestion, exploratory analysis, and more. Course details In this course, Matt Eland-an AI specialist, Microsoft MVP, and author-equips experienced .NET developers with the skills to conduct data analytics and data science experiments using Polyglot Notebooks. Dive into the core of Polyglot Notebooks, its relationship to Jupyter Notebooks, and language support for C#, F#, PowerShell, SQL, and Mermaid diagrams. Learn data ingestion, sharing between kernels, exploratory data analysis with descriptive statistics, and data visualization using libraries like Microsoft.Data.Analysis, ScottPlot, and Plotly.NET. Explore basic machine learning concepts, model training, train/test splits, evaluation, and beginner classification/regression experiments with ML.NET's AutoML capabilities. Plus, cover advanced Polyglot Notebooks integrations like Azure OpenAI, Semantic Kernel, Sequence Diagram Generation, and Azure AI Services. Homepage https://www.linkedin.com/learning/exploring-data-science-with-dot-net-using-polyglot-notebooks-ml-dot-net Screenshot Rapidgator https://rg.to/file/40359c14c04405724635b2026176eab2/ncxwf.Exploring.Data.Science.with..NET.using.Polyglot.Notebooks..ML.NET.rar.html Fikper Free Download https://fikper.com/gSCMb4kosU/ncxwf.Exploring.Data.Science.with..NET.using.Polyglot.Notebooks..ML.NET.rar.html No Password - Links are Interchangeable
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Free Download Excel Data Science with Power BI & R Published 10/2024 MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch Language: English | Duration: 6h 49m | Size: 3.29 GB Power BI and R What you'll learn Learn to combine Power BI's visualization with R's advanced statistical analysis for powerful data insights and decision-making in any business environment. Master Power BI's dashboards and R's statistical techniques to analyze trends, forecast outcomes, and drive data-driven decisions for business success. Discover how to integrate Power BI and R for dynamic visualizations, advanced analytics, and actionable insights to enhance your data analysis skills. Elevate your data skills by learning how to merge Power BI's visual tools with R's statistical power to create impactful insights for business decisions. Requirements Basic Knowledge of Power BI: Familiarity with Power BI's interface and basic data visualization techniques is recommended. Understanding of R or Programming Basics: Prior experience with R or a general understanding of programming and data manipulation is helpful, but not mandatory. Foundational Data Analysis Skills: Basic knowledge of data analysis concepts, such as working with datasets, interpreting data, and creating simple reports, is ideal. Access to Power BI and R: Ensure you have access to both Power BI and R installed on your system to follow along with the exercises. No prior advanced experience in Power BI or R is required, as the course will guide you through their integration step by step. Description Excel TV is excited to offer our premium course, Data Science with Power BI & R, led by renowned data science expert, Ryan Wade. This course is designed to equip professionals with the skills to harness the full potential of Power BI's advanced visualization features and the robust statistical computing power of R.In today's data-driven world, businesses are increasingly relying on insights gleaned from vast datasets. Power BI, with its intuitive and dynamic dashboards, allows users to visualize and interpret data with ease. However, to gain deeper, more complex insights, R's statistical computing capabilities are indispensable. This course brings together the best of both worlds, teaching you how to seamlessly integrate these two powerful tools for comprehensive data analysis.Under Ryan Wade's expert guidance, you'll not only learn how to create compelling visual reports using Power BI, but also how to implement advanced statistical techniques with R to analyze trends, forecast outcomes, and derive actionable insights. Whether you're a business analyst, data scientist, or aspiring professional, this course will empower you to take your data analysis skills to the next level.By the end of the course, you'll have mastered the ability to generate impactful, data-driven insights that can drive strategic decision-making within any organization. Don't miss this opportunity to elevate your data science expertise with Excel TV's Data Science with Power BI & R course! Who this course is for Business Analysts: Professionals looking to enhance their data analysis skills by integrating Power BI's visualization with R's advanced statistical capabilities. Data Scientists: Individuals who want to leverage Power BI for interactive dashboards while applying R for deeper statistical analysis and forecasting. Aspiring Data Professionals: Those seeking to enter the data science field, looking to gain practical knowledge in using both Power BI and R for comprehensive data insights. Decision Makers and Strategists: Executives and managers who want to better understand how to drive data-driven decisions using advanced analytics and visualization. Power BI Users: Current Power BI users interested in expanding their skills by incorporating R's robust data manipulation and analysis techniques. Homepage https://www.udemy.com/course/excel-data-science-with-power-bi-r/ Screenshot Rapidgator https://rg.to/file/067a3300e38be570829751f25f7f2b5a/tcjia.Excel.Data.Science.with.Power.BI..R.part4.rar.html https://rg.to/file/6b9530764100166d584881dcf7e71ed7/tcjia.Excel.Data.Science.with.Power.BI..R.part1.rar.html https://rg.to/file/8a148e0e5c0bdf68411decbb31579055/tcjia.Excel.Data.Science.with.Power.BI..R.part2.rar.html https://rg.to/file/eb29c755b50d2599b8b868c3309b5c38/tcjia.Excel.Data.Science.with.Power.BI..R.part3.rar.html Fikper Free Download https://fikper.com/ThZYHJzT6b/tcjia.Excel.Data.Science.with.Power.BI..R.part3.rar.html https://fikper.com/VcodWMJWzP/tcjia.Excel.Data.Science.with.Power.BI..R.part1.rar.html https://fikper.com/Xzrj9V8NFp/tcjia.Excel.Data.Science.with.Power.BI..R.part2.rar.html https://fikper.com/mQ4ka9fx1o/tcjia.Excel.Data.Science.with.Power.BI..R.part4.rar.html No Password - Links are Interchangeable
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Free Download Coursera - Data Science Foundations Specialization by University of London Last updated 10/2024 MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch Genre: eLearning | Language: English + subtitle | Duration: 190 Lessons ( 14h 51m ) | Size: 2.55 GB Unlock Academic & Career Success with Data Science. Build the foundational knowledge and hands-on skills you need to forge new career opportunities, with no technical experience required. What you'll learn Foundational knowledge and practical understanding of data science that unlocks academic and career opportunities Basic hands-on skills in Python, R, SQL, and tools like GitHub and Jupyter Notebooks, including their essential features and uses in data science Foundational data science processes, including data collection, simple model building, and algorithm concepts using flowcharts and pseudocode. Basic data analysis with Python, using libraries like Pandas and Numpy, creating simple dashboards, and working with clustering algorithms. Skills you'll gain Data Acquisition Python (Programming Language) Project Management Data Science Machine Learning Nearly one in four job postings in the US alone require some data science skills and employers are paying up to 14% more for those skills. (Report : ExcelinEd & the Burning Glass Institute). This powerful specialisation from the University of London and IBM gives you the perfect academic and industry-informed practical introduction to data science. You get - Progress transfer for the University of London's BSc in Computer Science - The foundational skills and knowledge you need to get a job in a data-rich environment. During this specialisation, you'll be introduced to data science, statistics, programming, computational thinking, machine learning, and more. You'll discover the role of data science in today's data-driven world. Plus, you'll get hands-on using IBM's data science tools, giving you practical experience to talk about in interviews. Half the teaching is provided by Goldsmiths, University of London, giving you a strong academic foundation. The other half, designed by IBM, provides real-world professional insight supported by practical projects and a capstone project for your resume. The "Problems and Algorithms in Data Science" course is a great preview of the BSc Computer Science degree with the opportunity to roll your progress into the degree, if you successfully apply and register. If you're looking for a solid, practical understanding of data science that unlocks academic and career opportunities, ENROLL today! Applied Learning Project There are two Capstone projects that draw together the material across the Data Science Foundations specialization to enable you to apply what you have learned. In one project, students will tackle a prediction problem: forecasting the number of bicycles that will be rented on a given day. Using historical data, students will consider factors such as weather, the day of the week, and other relevant variables to accurately predict daily bicycle rentals. This will help ensure that the bicycle rental service is prepared with the appropriate number of bicycles each day. Students will learn specifically about data acquisition, linear regression, and correlation. In the other project, students will predict if the Falcon 9 rocket's first stage will land successfully and determine the cost of a launch. In doing so, students will apply skills to perform data collection, data wrangling, exploratory data analysis, data visualization model development, and model evaluation. Homepage https://www.coursera.org/specializations/data-science-foundations Screenshot Rapidgator http://peeplink.in/61feb558f69f Fikper Free Download https://fikper.com/DhezOirCgC/vgiav.Coursera..Data.Science.Foundations.Specialization.by.University.of.London.part1.rar.html https://fikper.com/HcJ79CHsgE/vgiav.Coursera..Data.Science.Foundations.Specialization.by.University.of.London.part2.rar.html https://fikper.com/IwH8cX1cav/vgiav.Coursera..Data.Science.Foundations.Specialization.by.University.of.London.part3.rar.html No Password - Links are Interchangeable
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Science News - 16 November 2024 English | 40 Pages | True PDF | 13 MB https://fileaxa.com/wxdw0o96keda https://ddownload.com/3pbn1bns3znp https://rapidgator.net/file/3272193b22372a91229e06156a1940e5/ https://turbobit.net/gg8fiqutldxa.html
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Free Download Behavioral Science for Effective Product Management Last updated 7/2024 Created by YouAccel Training MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch Genre: eLearning | Language: English | Duration: 122 Lectures ( 13h 34m ) | Size: 3.76 GB Leveraging Behavioral Science to Enhance Decision-Making and Drive Product Success What you'll learn Understand market trends and technical skills in product management Gain insights into consumer behavior and decision-making processes Learn to predict consumer choices with behavioral science principles Enhance user experience through psychological principles Apply cognitive biases and heuristics to product design Integrate behavioral science into product management strategies Conduct behavioral research and design experiments Analyze key behavioral patterns to anti[beeep]te consumer needs Implement behavioral insights in product development and marketing Foster collaboration and learn from diverse peer experiences Requirements No Prerequisites. Description This course delves into the fascinating realm of behavioral science, offering you the tools to transform your approach to product management. Imagine being equipped with insights that enable you to predict consumer choices, enhance user experience, and drive product success with pinpoint accuracy. This is precisely what you will gain as you embark on this educational journey designed to merge the art and science of product management with the empirical rigor of behavioral science.Our course is meticulously crafted to empower you with the knowledge and skills to leverage behavioral science in your day-to-day decision-making processes. You will explore the psychological principles and behavioral theories that underpin how consumers think, feel, and act. From cognitive biases and heuristics to motivation and emotion, you will uncover the hidden drivers of consumer behavior and learn how to apply these insights to design successful products. The curriculum is designed to be both comprehensive and practical, ensuring that you can immediately apply what you learn to your professional context.At the heart of this course is the belief that understanding human behavior is crucial to creating products that not only meet but exceed user expectations. By integrating behavioral science into your product management toolkit, you will be able to craft strategies that resonate with your target audience on a deeper level. This course will guide you through the process of identifying and analyzing key behavioral patterns, allowing you to anti[beeep]te and respond to consumer needs more effectively. Whether you are involved in product development, marketing, or user experience design, the insights gained from this course will be invaluable in enhancing your professional practice.One of the unique features of this course is its focus on real-world application. You will engage with case studies and practical exercises that illustrate the principles of behavioral science in action. Through these hands-on activities, you will learn how to apply behavioral insights to various stages of product management, from ideation and prototyping to launch and post-launch evaluation. This experiential learning approach ensures that you not only understand the theoretical concepts but also develop the confidence and competence to implement them in your own projects.Moreover, the course is designed to foster a collaborative learning environment. You will have the opportunity to interact with peers from diverse backgrounds, sharing experiences and learning from each other. This exchange of ideas and perspectives will enrich your understanding of behavioral science and its applications, providing you with a broader and more nuanced perspective. The course instructors, who are experts in both behavioral science and product management, will guide you through the learning process, offering personalized feedback and support to help you achieve your goals.As you progress through the course, you will develop a robust framework for integrating behavioral science into your product management practice. You will learn how to conduct behavioral research, design experiments, and interpret data to inform your decision-making. By the end of the course, you will be able to create products that not only fulfill functional requirements but also engage and delight users on an emotional level. This ability to connect with consumers on a deeper level will set you apart as a product manager and enhance your career prospects.The potential impact of this course on your personal and professional development cannot be overstated. By mastering the principles of behavioral science, you will become a more effective and strategic product manager. You will be equipped to make informed decisions that drive product success, leading to increased customer satisfaction and business growth. Furthermore, the skills and knowledge gained from this course will enhance your ability to innovate and adapt in a rapidly changing market, ensuring that you remain at the forefront of your field.In addition to the immediate benefits to your career, the insights gained from this course will also enrich your understanding of human behavior more broadly. You will develop a deeper appreciation for the complexities of decision-making and the factors that influence our choices. This enhanced understanding will not only benefit your professional practice but also your personal interactions and relationships. By learning to see the world through the lens of behavioral science, you will gain a new perspective on the world around you, making you a more empathetic and insightful individual.The course is designed to be both challenging and rewarding, offering a rigorous and immersive learning experience. Whether you are a seasoned product manager looking to enhance your skills or a newcomer to the field seeking to build a strong foundation, this course offers valuable insights and practical tools to help you succeed. The comprehensive curriculum, combined with the expertise of our instructors and the collaborative learning environment, ensures that you will receive a high-quality education that prepares you for the demands of the modern market. Who this course is for Experienced product managers seeking to integrate behavioral science into their decision-making processes. Newcomers to product management wanting to build a strong foundational understanding of consumer behavior. Marketing professionals aiming to enhance their strategies with insights from behavioral science. User experience designers looking to improve user engagement and satisfaction through behavioral insights. Product development teams interested in predicting and influencing consumer choices effectively. Business strategists focused on driving product success and business growth by understanding human behavior. Entrepreneurs and startup founders who want to create products that exceed user expectations. Professionals in tech industries seeking to stay ahead in a rapidly changing market by leveraging behavioral science. Data analysts and researchers aiming to apply behavioral theories in their research to inform product decisions. Innovators and change-makers desiring to enhance their ability to adapt and innovate in the marketplace. Homepage https://www.udemy.com/course/behavioral-science-for-effective-product-management/ Screenshot Rapidgator https://rg.to/file/5b0498a6d2013d59dc4268ac507f9b5a/gtnzx.Behavioral.Science.for.Effective.Product.Management.part2.rar.html https://rg.to/file/a83b762872447e3f473fe818ff60abcd/gtnzx.Behavioral.Science.for.Effective.Product.Management.part3.rar.html https://rg.to/file/c3e1f53e6c4702c32c0c8d98b6c2cd5f/gtnzx.Behavioral.Science.for.Effective.Product.Management.part4.rar.html https://rg.to/file/d1d816366145d3d589ea92e9c96c3864/gtnzx.Behavioral.Science.for.Effective.Product.Management.part1.rar.html Fikper Free Download https://fikper.com/9MMJWr9qIA/gtnzx.Behavioral.Science.for.Effective.Product.Management.part3.rar.html https://fikper.com/DmHvC429i8/gtnzx.Behavioral.Science.for.Effective.Product.Management.part2.rar.html https://fikper.com/I3aNyFSHwO/gtnzx.Behavioral.Science.for.Effective.Product.Management.part4.rar.html https://fikper.com/ysTlgtt9lU/gtnzx.Behavioral.Science.for.Effective.Product.Management.part1.rar.html No Password - Links are Interchangeable
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Science - 18 October 2024 English | 112 Pages | True PDF | 77 MB [img=https://ddownload.com/images/promo/banner_240-32.png] https://ddownload.com/kpsy0z9jsn8z https://rapidgator.net/file/77fdbe64c64f572b191c05771fa9ad36/ https://turbobit.net/x17mywtca4el.html
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Science News Explores - November 2024 English | 36 Pages | True PDF | 12 MB [img=https://ddownload.com/images/promo/banner_240-32.png] https://ddownload.com/k9k50j4v214h https://rapidgator.net/file/599e247f6a756fedac45c3b46481c4f0/ https://turbobit.net/5k6o8ei5sjr6.html
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pdf | 37.03 MB | English| Isbn:9781324006190 | Author: Geoffrey L. Cohen | Year: 2022 Description: Category:Psychology, Psychology - Theory, History & Research, Social Psychology https://ddownload.com/5713z1n760vy https://rapidgator.net/file/c4a7c0e439de2435b1e655e418cef473/ https://turbobit.net/xed4ts0l97dh.html
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Science - 11 October 2024 English | 124 Pages | True PDF | 25 MB [img=https://ddownload.com/images/promo/banner_240-32.png] https://ddownload.com/t1esbrkrj6hn https://rapidgator.net/file/4029d593a3b22f103eec65eed3c0839d/ https://turbobit.net/6sxn1hjcnhif.html
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epub | 8.91 MB | English| Isbn:9780262378222 | Author: James K. Rilling | Year: 2024 Description: Category:Science & Technology, Parenting & Family, Medicine & Nursing, Biology & Life Sciences, Family - Assorted Topics, Medicine, Biology, Basic Sciences, Biology - General & Miscellaneous, Fatherhood, Neuroscience https://ddownload.com/m1mu0kdb8aak https://rapidgator.net/file/a54abe779b13da5bf46fedfb43c2b278/ https://turbobit.net/8g6kxgflf0mb.html
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Science of Cycling, 2024 English | 116 pages | PDF | 50 MB [img=https://ddownload.com/images/promo/banner_240-32.png] https://ddownload.com/3ahdi3qhxjzb https://rapidgator.net/file/3202b75853e53867a2e4c71e0bb619c3/ https://turbobit.net/39tmsqgdfeb0.html
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Science - 04 October 2024 English | 116 Pages | True PDF | 34 MB [img=https://ddownload.com/images/promo/banner_240-32.png] https://ddownload.com/as76lupsp1rg https://rapidgator.net/file/f5551edf967c382a143612f033b4c421/ https://turbobit.net/3rfb7ww1xos9.html
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Science - 27 September 2024 English | 116 Pages | True PDF | 30 MB [img=https://ddownload.com/images/promo/banner_240-32.png] https://ddownload.com/tozovfkbr9wt https://rapidgator.net/file/97f7e102d3a6bc3c04a740ff861ff37f/ https://turbobit.net/zcydfrt6f01j.html
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MiniMag - Easy Science Special Edition 2024 English | 44 pages | True PDF | 19.8 MB MiniMag is an edutainment magazine that has been around for over 25 years and gives kids everything they need. From information on current events and important issues to fun activities and competitions, MiniMag has it all! Educational content is presented in a fun manner with the use of humour and vibrant artwork which appeals to children. A combination of fact and fantasy draws the child into the world of reading. MiniMag's content compliments school curricula and it has achieved great success in the classroom as a teaching aid. Children benefit from reading MiniMag as it Instills a love for reading and encourages active parti[beeep]tion. It also stimulates creativity and broadens general knowledge. Discover the joys of learning inside our colourful, fun pages! [img=https://ddownload.com/images/promo/banner_240-32.png] https://ddownload.com/1xd2htdm1cvx https://rapidgator.net/file/3e3bd4a2d3dbfa448bf1ec4f4918fdc3/ https://turbobit.net/fp3yprh1qgfx.html
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Science News - 5 October 2024 English | 35 Pages | True PDF | 14 MB [img=https://ddownload.com/images/promo/banner_240-32.png] https://ddownload.com/v834lzos2ji9 https://rapidgator.net/file/6e6363ec05ffce21da7584323589a243/ https://turbobit.net/mu1eazaadq13.html