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ANALYTICS MIDTERMS

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Question
Answer
within analytics _________, four categorized skills are outlined as follows: business & organization skills, technical skills, workplace skills   competencies  
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enumerate the 4 categorized skills in analytics competencies   business & organization skills, technical skills, and workplace skills (BTW)  
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what is the only one distinct competency in the realm of workplace skills?   21st Century Skills  
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overall there are how many distinct competencies in the realm of data science skills?   10  
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enumerate the 3 levels of proficiency expectations   entry level, immediate level, and expert level (EIE)  
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this level of proficiency expectation is defined as: "Perform tasks with guidance and supervision"   entry level  
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this level of proficiency expectation is defined as: "Formulate task to achieve organizational goals and works independently"   immediate level  
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this level of proficiency expectation is defined as: "Identifying new approaches to achieve organizational goals. Provides solution to a problem"   expert level  
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enumerate the 4 distinct competencies in the realm of business & organization skills and their respective professions   Domain Knowledge and Application (Functional Analyst), Data Management and Governance (Data Steward), Operational Analytics (Analytics Manager), Data Visualization and Presentation (Data Storytelling) (D-KA, D-MG, O-A, D-VP)  
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in this domain, one must have the following skills: domain-related knowledge, and insights to effectively contextualize data   domain knowledge and application  
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the skills defined in this domain defines a functional analyst, as it encompasses industry knowledge, business experience, and domain expertise   domain knowledge and application  
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identify the domain and the level: "Comprehend the collected data, and grasp the methods by which they are managed and applied within the specific industry domain"   domain knowledge and application, entry level  
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identify the domain and the level: "Craft a comprehensive content strategy and design an effective information architecture tailored to support the unique needs of a given industry domain and its diverse audiences"   domain knowledge and application, immediate level  
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identify the domain and the level: "Formulate compelling business cases aimed at enhancing domain-related procedures by leveraging data-driven decision-making strategies"   domain knowledge and application, expert level  
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in this domain, one must have the following skills: develop & implement data management strategies, enforcing privacy & data security, implement data policies & regulations, and understand ethical considerations   data management and governance  
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the skills defined in this domain defines a data steward, as they are the data gatekeepers of an organization   data management and governance  
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identify the domain and the level: "Maintain vigilant awareness and consistently implement policies and measures to uphold data security, privacy, intellectual property, and ethical standards"   data management and governance, entry level  
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identify the domain and the level: "Effectively implement and enforce policies and procedures pertaining to data security, privacy, intellectual property, and ethical considerations"   data management and governance, immediate level  
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identify the domain and the level: "Formulate comprehensive policies addressing data security, privacy, intellectual property, and ethical considerations"   data management and governance, expert level  
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in this domain, one must have the following skills: general knowledge of business analytics, specialized knowledge of business techniques, and insight derivation for decision-making   operational analytics  
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the skills defined in this domain defines an analytics manager, as they have the project management skills   operational analytics  
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identify the domain and the level: "Conduct comprehensive business analysis on designated tasks and datasets"   operational analytics, entry level  
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identify the domain and the level: "Determine the business implications arising from identified trends and patterns"   operational analytics, immediate level  
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identify the domain and the level: "Discover fresh opportunities to leverage historical data for optimizing organizational processes"   operational analytics, expert level  
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in this domain, one must have the following skills: create & communicate compelling & actionable insights, and utilizing data visualization and presentation   data visualization and presentation  
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this is the term referring to how these data visualization techniques are not just about charts but about telling a story   data storytelling  
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identify the domain and the level: "Create data visualization reports or narratives according to specified requirements"   data visualization and presentation, entry level  
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identify the domain and the level: "Design infographics to facilitate the effective presentation and communication of actionable outcomes"   data visualization and presentation, immediate level  
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identify the domain and the level: "Choose suitable visualization methods and innovate new approaches tailored to a specific industry"   data visualization and presentation, expert level  
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enumerate the 5 distinct competencies in technical skills and their respective professions   Research Methods (Data Scientist), Data Engineering Principles (Data Engineer), Statistical Techniques (Data Scientist), Data Analytics/Methods/Algorithms (Data Scientist), and Computing (Data Scientist/Engineer) (RDCDS)  
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in this domain, one must have the following skills: utilize scientific and engineering methods, and discover and create new knowledge and insights   research methods  
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the skills defined in this domain defines a data scientist, as it encompasses strategies, processes, and techniques   research methods  
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they are utilized in collection of data to uncover new information   data scientist (domain: research methods)  
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identify the domain and the level: "Employ the 4-step research model, comprising hypothesis formulation, research methods selection,artifact creation, and evaluation, to enhance understanding and application in research endeavors"   research methods, entry level  
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identify the domain and the level: "Formula research questions centered on identified issues within established research or business process models"   research methods, immediate level  
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identify the domain and the level: "Create experiments incorporating both passive and active data collection methods to facilitate hypothesis testing and effective problem solving"   research methods, expert level  
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in this domain, one must have the following skills: utilize software and system engineering, and develop data analytics application   data engineering principles  
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the skills defined in this domain defines a data engineer, as it encompasses the ETL method (Extract, Transform, Load)   data engineering principles  
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they are the ones who bring all the data in one repository   data engineer (domain: data engineering principles)  
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identify the domain and the level: "Proficiency in programming selected SQL and NoSQL platforms for data storage and access with a specific focus on writing Extract, Transform, Load (ETL) scripts"   data engineering principles, entry level  
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identify the domain and the level: "Architect and construct both relational and non-relational databases, ensuring the implementation of efficient Extract, Transform, Load (ETL) processes tailored for large datasets"   data engineering principles, immediate level  
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identify the domain and the level: "Demonstrated advanced expertise in leveraging modern Big Data technologies for processing diverse data types sourced from multiple chanels"   data engineering principles, expert level  
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in this domain, one must have the following skills: apply statistical concepts and methodologies for data analysis   statistical techniques  
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the skills defined in this domain defines a data scientist, as it encompasses Mathematics and Statistics   statistical techniques  
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they are utilized to analyze raw data especially from a research data to extract information   data scientist (domain: statistical techniques)  
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identify the domain and the level: "Possess proficiency in emploting statistical methods, including sampling, ANOVA, hypothesis testing, descriptive statistics, regression analysis, and other relevant methodologies"   statistical techniques, entry level  
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identify the domain and the level: "Evaluate and recommend the most suitable statistical methods and tools tailored to specific tasks and datasets"   statistical techniques, immediate level  
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identify the domain and the level: "Recognize issues within collected data and propose corrective measures, encompassing additional data collection, inspection, and pre-processing as needed"   statistical techniques, expert level  
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in this domain, one must have the following skills: implement and evaluate machine learning methods and algorithms, and deriving insights from data for decision-making   data analytics/methods/algorithms  
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the skills defined in this domain defines a data scientist, as it encompasses Algorithm and Machine Learning   data analytics/methods/algorithms  
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they are utilized to identify the most appropriate methods or algorithms to extract insights from data   data scientist (domain: data analytics/methods/algorithms)  
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identify the domain and the level: "Illustrate comprehension of statistical hypothesis testing and proficiently conduct such tests, providing clear explanations regarding the statistical significance of collected data"   data analytics/methods/algorithms, entry level  
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identify the domain and the level: "Apply quantitative techniques, such as time series analysis, optimization, and simulation, to deploy suitable models for analysis and prediction"   data analytics/methods/algorithms, immediate level  
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identify the domain and the level: "Evaluate data reliability and appropriateness. Choose suitable approaches while considering their impact on analysis and the quality of results"   data analytics/methods/algorithms, expert level  
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in this domain, one must have the following skills: apply information technology and computational thinking, utilize programming languages for analyxis, and utilize software and hardware solutions also for analysis   computing  
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the skills defined in this domain defines both a data scientist and a data engineer   computing  
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identify the domain and the level: "Conduct fundamental data manipulation, analysis, and visualization tasks proficiently"   computing, entry level  
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identify the domain and the level: "Utilize computational thinking to translate formal data models and algorithmic processes into program code"   computing, immediate level  
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identify the domain and the level: "Choose suitable application and statistical programming languages, as well as development platforms, tailored to specific processes and datasets"   computing, expert level  
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enumerate the 4 essential 21st century skills   critical thinking, communication, collaboration, and creativity/attitude (4Cs)  
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enumerate the other 7 21st century skills   planning & organizing, business fundamentals, customer focus, working with tools/technology, dynamic (self-) re-skilling, professional network, and ethics (PWD B CPE)  
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they are conceivable as the new resource in this digital world   data  
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this is the process of refinement of data   analytics  
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a complete process of creating, collecting, processing, analyzing, and extracting value from data within an organization   data value chain  
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it covers the entire lifecycle of data   data value chain  
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a stage in data value chain that involves the creation of data which can be generated from biodata, machine logs, and so on   data stage  
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most generated data originates from _________, as data creation fundamentally relies on human involvement   human activity  
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a stage in data value chain that involves the extraction and consolidation of data where it is stored into a single repository   information stage  
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data creation and generation falls on what DVC stage?   data stage  
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data cleaning, categorization, transformation, and aggregation falls on what DVC stage?   information stage  
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this stage enables organizations to answer the question, "What happened?"   information stage  
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data analysis falls on what DVC stage?   insights stage  
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a stage in data value chain that involves finding patterns and trends   insights stage  
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using consolidated information, patterns are uncovered to address "Why did it happen?" and "What is likely to happen next?" in this stage   insights stage  
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a stage in data value chain that involves translating the analyzed data into practical imperatives and recommendations for future actions   imperatives stage  
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in this stage, organizations can now take decisive actions informed by analyzed data in which addresses a pivotal question, "What steps should be taken next?"   imperatives stage  
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enumerate the 4 disciplines in the data stage of DVC   Data Governance, Data Management, Data Security, Data Ethics (GEMS)  
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a discipline on policies for quality and compliance   data governance  
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a discipline on end-to-end oversight of data processes   data management  
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a discipline on safeguarding data from unauthorized access   data security  
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a discipline on responsible and ethical data handling   data ethics  
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enumerate the 4 disciplines in the information stage of DVC   Data Engineering, Data Warehousing, Data Architecture, Business Intelligence (WEA-BI)  
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a discipline on building data systems   data engineering  
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a discipline on managing structured data   data warehousing  
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a discipline on designing data systems   data architecture  
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a discipline on extracting insights for decisions for businesses   business intelligence  
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which DVC stage is integral to descriptive analytics?   information stage  
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this is responsible for summarizing historical data   descriptive analytics  
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enumerate the 3 disciplines in the insights stage of DVC   Data Mining, Algorithms, Machine Learning (MAD)  
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a discipline on extracting insights in general   data mining  
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a discipline on processing data steps   algorithms  
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a discipline on learning and improving from experience   machine learning  
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which DVC stage is integral to diagnostic and predictive analytics?   insights stage  
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this is responsible for analyzing data why an event occurred   diagnostic analytics  
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this is responsible for identifying future events based on historical data   predictive analytics  
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enumerate the 2 disciplines in the imperatives stage of DVC   Optimization, Simulation (OS)  
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a discipline on enhancing efficiency   optimization  
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a discipline on modeling real-world scenarios   simulation  
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this is responsible for recommending actions derived from descriptive & predictive analyses   prescriptive analytics  
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enumerate the 5 professions in DVC and their corresponding stages   Data Steward (Data), Data Engineer (Information), Data Scientist (Insights), Functional Analyst (Imperatives), Analytics Manager (Oversees All Stages)  
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a profession whose responsibilities are to develop, enforce, and maintain   data steward  
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additionally, this profession must also involve with data security and data usage   data steward  
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what are the 2 domains of data stewards?   Business, Industry Domains (B-ID)  
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typically, data stewards are also called as _____ as they are responsible of keeping the data and maintaining it into its quality   data gatekeepers  
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the jobs data privacy officer, data security officer, data governance manager, data curator, and data librarian are under what DVC profession?   data steward  
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a profession whose responsibilities are to design, construct, test, and maintain   data engineer  
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this profession is typically involved with ETL (Extract, Transform, Load)   data engineer  
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what are the 3 domains of data engineers?   IT, IS, CS (IIC)  
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typically, data engineers also work with ____________, which is where the transformed data are stored   data repositories  
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the jobs ETL developer, data architect, data warehousing professional, and big data engineer are under what DVC profession?   data engineer  
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a profession whose responsibilities are statistical techniques and creating statistical models   data scientist  
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this profession is involved with applying trends, patterns (current / historical) to make data-driven predictions   data scientist  
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what are the 2 domains of data scientists?   Mathematics, Statistics (SM)  
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the jobs statistician, statistical modeler, and advanced analytics professional are under what DVC profession?   data scientist  
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a profession whose responsibilities are to utilize data and leverage derived insights   functional analyst  
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this profession validates the insights of the data scientist   functional analyst  
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what are the 2 domains of functional analysts?   Business, Industry Domains (B-ID)  
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this profession is responsible for crafting the definitive prescriptions that outline the necessary actions for their clients or stakeholders   functional analyst  
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the jobs research analyst, HR analyst, marketing analyst, financial analyst, and operations analyst are under what DVC profession?   functional analyst  
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a profession whose responsibilities are to develop and guide data-driven projects   analytics manager  
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this profession includes heavily with Project Management, which includes the Initiation, Planning, Execution, Monitoring and Closure   analytics manager  
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enumerate the 5 steps of project management   Initiation, Planning, Execution, Monitoring, Closure (IPEMC)  
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what is the domain of analytic managers?   Project Management  
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the jobs chief data officer, project manager, data engineering manager, data science manager, and analytics translator are under what DVC profession?   analytics manager  
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analytics helps organizations to provide data-driven decisions; this is why Analytics are called ___________   Decision Support System  
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in the end, the _______ has the final say whether to act upon them or not   end user  
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enumerate the 4 processes which the data becomes information   Data Cleaning, Data Categorization, Data Transformation, Data Aggregation  
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data creation/generation is associated with what stage in the DVC?   data stage  
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data gathering is associated with what stage in the DVC?   information stage  
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data analysis is associated with what stage in the DVC?   insights stage  
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decision making is associated with what stage in the DVC?   imperatives stage  
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enumerate the 5 related jobs for data steward   Data Privacy Officer, Data Security Officer, Data Governance Manager, Data Curator, Data Librarian (PSGCL)  
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enumerate the 4 related jobs for data engineer   Big Data Engineer, ETL Developer, Data Architect, Data Warehousing Professional (BEDD)  
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enumerate the 3 related jobs for data scientist   Advanced Analytics Professional, Statistician, Statistical Modeler (ASS)  
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enumerate the 5 related jobs for functional analyst   Operations Analyst, Financial Analyst, HR Analyst, Research Analyst, Marketing Analyst (OF HRM)  
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enumerate the 5 related jobs for analytics manager   Chief Data Officer, Project Manager, Data Engineering Manager, Analytics Translator, Data Science Manager (CP DAD)  
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