No.1 Data Analytics Course in Tambaram | Data Analytics Course With Certification | Updated 2025

Data Analytics Course for All Graduates, NON-IT, Diploma & Career Gaps — ₹18,500/- only.

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Data Analytics Course in Tambaram

  • Join the Data Analytics Training Institute in Tambaram to master data-driven decision-making and industry workflows.
  • Our Data Analytics Training in Tambaram includes Excel, SQL, Power BI, Python, Machine Learning and Data Visualization.
  • Learn with flexible weekday, weekend and fast-track batches designed for all learners.
  • Get practical experience through live projects handled by certified professionals.
  • Earn a globally recognized Data Analytics Certification with placement assistance.
  • Receive guidance for resume building, interview preparation and career guidance.

WANT IT JOB

Become a Data Analyst in 3 Months

Freshers Salary

3 LPA

To

8 LPA

Quality Training With Affordable Fees in Tambaram!
INR ₹32000
INR ₹18500

10451+

(Placed)
Freshers To IT

6142+

(Placed)
NON-IT to IT

7152+

(Placed)
Career Gap

3789+

(Placed)
Less Then 60%

Our Hiring Partners

Overview of the Data Analytics Course

Our Data Analytics Course in Tambaram helps freshers learn to collect, analyze and understand data for real business decisions. This Data Analytics Training includes beginner-friendly lessons, practical tools and real examples to build confidence. Students will get guidance for Data Analytics Internships in Tambaram to gain hands-on experience. We also provide strong Data Analytics Placement support to help learners start their careers. With expert trainers and easy learning methods, anyone can learn Data Analytics without prior knowledge. Join us and begin your journey to a successful future in data analytics.

What You'll Learn From Data Analytics Certification Course

Build strong foundation skills in Data Analytics Course in Tambaram, using tools like Excel, SQL, Python and Power BI to analyze data confidently.

Learn how to clean, organize and visualize data to generate useful insights for real business needs.

Practice with live case studies and mini-projects to apply your learning in real-time situations.

Understand key topics such as dashboards, reporting, database handling and automation for smart data solutions.

Grow from beginner-level analytics to advanced techniques that help in better decision-making and solving practical challenges.

Gain job-ready expertise with certification, mock interviews and focused on career success.

Additional Info

Course Highlights

  • Kickstart your career in analytics with a complete learning program covering Excel, SQL, Python, Power BI, data modeling and dashboard design.
  • Receive full placement support with interview preparation and job connections through trusted hiring partners.
  • Be a part of a growing community of successful learners who have built careers in Data Analytics through expert training.
  • Get trained by industry professionals with extensive experience in analytics, reporting and business insights.
  • Learn at your own pace with beginner-friendly sessions, real-time case studies and continuous mentor guidance.
  • Benefit from flexible batch options, affordable course fees and dedicated assistance to help freshers and career switchers land a Data Analytics job confidently.

Benefits You Gain from an Data Analytics Training in Tambaram

  • Better Decision Making – Data analytics enables businesses and individuals to make more informed decisions by studying data patterns and trends. Making decisions more quickly and accurately is made possible by knowing what functions well and what needs to be improved. It mitigates risks and ensures that strategies are based on accurate information. This ultimately leads to greater results for businesses and career advancement for employees.
  • Career Growth – Acquiring knowledge Numerous job prospects in fields including IT, finance, healthcare and marketing are made possible by data analytics. Professionals with data analysis skills and decision-making insights are highly valued by businesses. Developing these abilities improves your employability and resume. This facilitates the beginning of a successful career in analytics for newcomers and career changers.
  • Real-World Problem Solving – Data Analytics trains you to address practical business challenges using data. You gain the ability to recognize problems, identify their underlying causes and offer workable solutions. Gaining practical experience comes from working on projects and case studies. Employers who desire workers who can have a real influence place a high priority on these abilities.
  • Increased Efficiency – By using Data Analytics, organizations can save time and resources while improving performance. It helps automate tasks, process large amounts of data quickly and focus on important insights. This increases productivity and reduces unnecessary effort. Professionals skilled in analytics can help companies achieve faster and more efficient results.
  • Competitive Advantage – Data analytics provides organizations with a significant advantage over competitors by understanding consumer behavior, market trends and performance measures. It enables organizations to make proactive, educated decisions. Professionals with good data interpretation abilities help their companies stay ahead of the competition. As a result, analytics skills are critical for both professional development and business success.

Important Tools Covered in Data Analytics Course

  • Excel – Excel is one of the most common and easy-to-use tools for Data Analytics. It helps you organize, sort and filter data quickly. You can create charts, graphs and pivot tables to visualize information. Excel is perfect for beginners to start analyzing data without complex software.
  • SQL – SQL is used to manage and retrieve data from databases. It allows you to run queries to extract specific data for examination. Learning SQL enables you to work with large databases more effectively. It is an essential ability for every data analytics professional.
  • Python – Python is programming language widely used in Data Analytics for data manipulation, visualization and machine learning. It has many libraries like Pandas, NumPy and Matplotlib that make analyzing data easier. Python is beginner-friendly and highly versatile. Using Python you can handle complex data problems and projects.
  • Power BI – Power BI is a tool for building interactive dashboards and visual reports. It allows you to convert raw data into understandable images. You can share findings with teams and link them to other data sources. Power BI is widely used across businesses to track performance and make educated decisions.
  • Tableau – Charts, graphs and dashboards can be made with Tableau, another well-liked data visualization program. It allows users to analyze trends and patterns without programming knowledge. Tableau helps in making quick business decisions by presenting data in a clear and interactive way. Professionals use it to simplify complex datasets and reports.

Must-Know Frameworks for Aspiring Data Analysts

  • CRISP-DM – CRISP-DM is a commonly used framework for organizing and managing analytics initiatives. It guides you through six stages business understanding, data comprehension, data preparation, modeling, evaluation and implementation. Both novices and specialists may manage projects more effectively with this methodical approach. Sticking to CRISP-DM guarantees methodical analytics work and dependable outcomes.
  • KDD (Knowledge Discovery in Databases) – KDD is system for extracting valuable patterns and knowledge from huge datasets. It focuses on data selection, preparation, transformation and interpretation in order to make decisions. KDD allows analysts to find trends and hidden insights that can help them enhance their company plans. It is especially valuable for initiatives that involve large data and predictive analytics.
  • TDSP (Team Data Science Process) – TDSP is a framework designed by Microsoft to help teams develop and deploy data science solutions. It emphasizes collaboration, repeatable processes and project management along with analytics tasks. Beginners can follow TDSP to organize experiments, model building and deployment effectively. It makes analytics projects faster, structured and easier to track.
  • SEMMA (Sample, Explore, Modify, Model, Assess) – SAS designed SEMMA, a platform for structured data analysis and predictive modeling. It shows you how to collect data, look for trends, change variables, create models and evaluate findings. SEMMA helps analysts focus on data quality and making correct forecasts. It is suitable for both educational and professional analytics tasks.
  • OSEMN (Obtain, Scrub, Explore, Model, Interpret) – OSEMN provides a straightforward, step-by-step framework for data analytics and machine learning projects. It encompasses data collection, cleaning and preprocessing, as well as pattern exploration, model construction and interpretation. This strategy is simple for novices to follow and produces actual results. OSEMN enables professionals to manage end-to-end analytics duties easily.

Essential Skills You’ll Learn in a Data Analytics Course

  • Data Cleaning and Preparation – One of the most important skills in Data Analytics is learning how to clean and prepare raw data. You will learn to remove errors, handle missing values and organize data for analysis. This ensures accurate and reliable results when making decisions. Clean data is the foundation for all analytics work and reporting.
  • Data Visualization – Data Visualization is the skill of turning complex data into easy-to-understand charts, graphs and dashboards. You will learn tools like Power BI, Tableau and Excel to represent information visually. Visual insights make it easier to communicate findings to teams or managers. This skill helps businesses make quicker and better decisions.
  • SQL and Database Management – SQL and database skills allows to retrieve and manage data from large datasets efficiently. You will learn to query databases, filter information and extract meaningful insights. This skill is essential for working with structured data in any organization. Strong database skills make you a valuable asset for analytics teams.
  • Statistical Analysis – Statistical analysis can help you comprehend trends, patterns and relationships in data. You will learn how to accurately interpret data using concepts such as mean, median, correlation and regression. This expertise enables you to create data-driven predictions and educated decisions. It is the foundation of analytic problem solving.
  • Problem Solving and Critical Thinking – Data Analytics teaches you how to approach problems logically and make decisions based on evidence. You will learn to identify challenges, analyze information and suggest actionable solutions. Strong problem-solving skills make you effective in turning data insights into real business impact. Critical thinking is essential for any analytics career.

Key Roles and Responsibilities of Data Analytics Profession

  • Data Analyst – A Data Analyst collects, organizes and studies data to uncover patterns and trends. They design reports and dashboards to assist organizations in making educated decisions. Their responsibilities include cleansing data, executing statistical analyses and properly presenting results. Data analysts play a important role in providing precise information to support strategy.
  • Business Intelligence (BI) Analyst – The goal of BI analysts is to turn data into useful business insights. They design and maintain dashboards, reports and visualizations for stakeholders. This role involves analyzing performance metrics and identifying opportunities for improvement. BI Analysts bridge the gap between raw data and strategic business decisions.
  • Data Scientist – Data scientists use statistical and machine learning approaches to build sophisticated models that predict future trends. They study massive datasets to uncover hidden patterns and insights. Their work frequently involves developing algorithms and automating analytics operations. Data scientists assist firms in making data-driven, forward-thinking decisions.
  • Data Engineer – The infrastructure required for data collection and storage is designed, built and maintained by data engineers. They ensure that data pipelines run smoothly and data is accessible for analysis. This role involves working with databases, cloud platforms and ETL processes. Data Engineers form the backbone that enables analytics teams to work efficiently.
  • Analytics Consultant – Analytics Consultants advise businesses on how to use data for solving problems and improving performance. They analyze existing processes, recommend solutions and support decision-making. Their work often includes implementing analytics tools and training staff. Consultants help organizations maximize the value of their data for growth and efficiency.

Why Data Analytics is the Smart Choice for Freshers

  • High Demand for Analytics Professionals – Data analytics is one of the most rapidly increasing topics in businesses such as IT, banking, healthcare and marketing. To make sound decisions, businesses need specialists who can analyze data. This opens up countless career options for newcomers. A job in analytics provides both stability and development opportunity.
  • Attractive Salary Packages – Data analytics jobs pay well, especially for entry-level employment. Organizations respect professionals who can convert data into useful insights. Earning potential can be considerably increased through skill development and certification. This makes analytics a financially rewarding career choice for newcomers.
  • Diverse Job Opportunities – A career in the data analysis can lead to range of professions, including data scientist, data engineer, data analyst and business intelligence analyst. Freshmen can select areas that match their interests and abilities. The diverse range of opportunities allows you flexibility in career planning. Analytics provides opportunities for growth across a wide range of industries and domains.
  • Hands-on Learning and Projects – Data Analytics training delivers hands-on exposure through projects, case studies and real-world datasets. Freshers learn how to successfully examine and interpret data. This hands-on experience prepares students for their future careers. It fills the gap among academic knowledge and actual business needs.
  • Career Growth and Advancement – Data Analytics skills are highly valued and can lead to faster career progression. Professionals can move into senior roles, management or specialized analytics positions. Continuous learning and certifications enhance expertise and credibility. This makes analytics a long-term, rewarding career option for freshers.

Landing Remote Jobs with Data Analytics Skills

  • Work with Digital Tools – Data analytics necessitates the use of digital technologies such as Excel, SQL, Python and Power BI, all of which are accessible remotely. Expertise in these tools enables workers to examine and share data from anywhere. Employers respect individuals who can manage data without being physically present. Remote work is made easier and more efficient when people are digitally proficient.
  • Ability to Handle Large Datasets – Strong analytics skills help in managing and interpreting large datasets accurately. Remote employers often need professionals who can process data independently. Efficient data handling ensures projects are completed on time. This skill makes candidates reliable for remote assignments and data-driven decision-making.
  • Creating Reports and Dashboards – Data Analytics skills include designing reports and interactive dashboards that summarize insights clearly. These outputs can be shared with teams online without in-person meetings. Clear visualizations support informed decisions for remote teams. Professionals who can communicate data visually are highly sought for remote roles.
  • Problem-Solving from Anywhere – Analytics professionals can analyze issues, identify trends and provide solutions without needing office presence. Remote companies rely on employees who can independently solve problems using data. Strong analytical thinking ensures work quality is maintained remotely. This makes data analysts valuable contributors from any location.
  • Flexible Industry Applications – Data Analytics skills are needed in IT, finance, marketing, healthcare and many other industries. Professionals can find remote jobs across sectors since data is universally required. This versatility allows working on multiple projects and clients online. Analytics skills open doors to global remote opportunities and career growth.

What to Expect in Your First Data Analysts Job

  • Learning Company Data Systems – The first few weeks often involve understanding how the company collects, stores and manages data. New analysts learn to navigate databases, software tools and reporting systems. This helps in performing tasks accurately and efficiently. Familiarity with company data practices is key to contributing effectively.
  • Handling Real Datasets – Freshers work on real-world datasets to apply the skills learned during training. This includes cleaning, organizing and analyzing data to produce meaningful insights. Hands-on experience improves confidence and understanding of practical challenges. Working with actual data bridges the gap between theory and practice.
  • Creating Reports and Dashboards – Generating reports and dashboards is a major part of entry-level analytics roles. These tools help management and teams make informed decisions. Analysts learn to present data visually and clearly for easy understanding. This task develops skills in data storytelling and effective communication.
  • Collaboration with Teams – Even in analytics, teamwork is essential. Analysts coordinate with managers, developers and other departments to understand requirements and deliver solutions. Learning to communicate and collaborate improves project outcomes. Teamwork also provides exposure to different business functions and insights.
  • Continuous Learning and Improvement – The first job involves adapting to new tools, techniques and industry practices. Feedback from seniors and real-time project challenges help improve skills gradually. Continuous learning ensures better performance and growth in the analytics career. This phase lays the foundation for advanced roles in the future.

Leading Companies are Hiring for Data Analytics Professionals

  • Amazon – Amazon uses data analytics to optimize its e-commerce, supply chain and customer experience. Analysts work on large datasets to improve product recommendations, pricing and delivery efficiency. The company provides exposure to advanced tools and big data projects. Freshers gain valuable experience in high-scale analytics operations.
  • IBM – IBM is global leader in technology and analytics solutions. Data Analytics professionals at IBM work on business intelligence, cloud analytics and AI-driven projects. The company emphasizes innovation and offers hands-on learning with cutting-edge tools. Freshers can grow their skills while contributing to global analytics initiatives.
  • Deloitte – Deloitte offers consulting services that rely heavily on data insights for clients across industries. Analytics professionals analyze business processes, generate reports and provide actionable recommendations. Working at Deloitte helps develop consulting, problem-solving and client-handling skills. Freshers gain exposure to diverse projects and industry best practices.
  • Microsoft – Microsoft uses data analytics to improve its products, cloud services and business strategies. Analysts work on dashboards, reports and predictive models for real-world applications. The company provides opportunities to work with advanced tools like Power BI and Azure Analytics. Freshers get experience in both technical and business aspects of analytics.
  • Accenture – Accenture hires data analytics professionals to support clients in IT, finance, healthcare and more. Analysts provide insights for decision-making, process optimization and digital transformation projects. Working with Accenture exposes freshers to multiple industries and analytics frameworks. Its a great place to start a versatile career in analytics.
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Upcoming Batches For Classroom and Online

Weekdays
01 - Dec - 2025
08:00 AM & 10:00 AM
Weekdays
03 - Dec - 2025
08:00 AM & 10:00 AM
Weekends
06 - Dec - 2025
(10:00 AM - 01:30 PM)
Weekends
07 - Dec - 2025
(09:00 AM - 02:00 PM)
Can't find a batch you were looking for?
INR ₹18500
INR ₹32000

OFF Expires in

Who Should Take a Data Analytics Training

IT Professionals

Non-IT Career Switchers

Fresh Graduates

Working Professionals

Diploma Holders

Professionals from Other Fields

Salary Hike

Graduates with Less Than 60%

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Job Roles For Data Analytics Training

Data Analyst

Business Analyst

Data Scientist

Analytics Consultant

BI Developer

Data Engineer

Statistician Analyst

Data Quality Analyst

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Tools Covered For Data Analytics Course in Offline

Apache-Spark power-bi Tableau Data-Studio excel SQL R-Programming python1

What’s included ?

Convenient learning format

📊 Free Aptitude and Technical Skills Training

  • Learn basic maths and logical thinking to solve problems easily.
  • Understand simple coding and technical concepts step by step.
  • Get ready for exams and interviews with regular practice.
Dedicated career services

🛠️ Hands-On Projects

  • Work on real-time projects to apply what you learn.
  • Build mini apps and tools daily to enhance your coding skills.
  • Gain practical experience just like in real jobs.
Learn from the best

🧠 AI Powered Self Interview Practice Portal

  • Practice interview questions with instant AI feedback.
  • Improve your answers by speaking and reviewing them.
  • Build confidence with real-time mock interview sessions.
Learn from the best

🎯 Interview Preparation For Freshers

  • Practice company-based interview questions.
  • Take online assessment tests to crack interviews
  • Practice confidently with real-world interview and project-based questions.
Learn from the best

🧪 LMS Online Learning Platform

  • Explore expert trainer videos and documents to boost your learning.
  • Study anytime with on-demand videos and detailed documents.
  • Quickly find topics with organized learning materials.

Data Analytics Course Syllabus

  • 🏫 Classroom Training
  • 💻 Online Training
  • 🚫 No Pre Request (Any Vertical)
  • 🏭 Industrial Expert

Our Data Analytics Training in Tambaram offers a complete syllabus for beginners and aspiring data professionals. Learn essential analytics concepts, data cleaning, visualization, SQL, Python and popular tools like Power BI and Tableau. Gain practical experience through Internships and real-time projects to build hands-on skills. The course also covers dashboards, reporting and basic machine learning techniques. Plus, dedicated placement support helps with resume building and interview preparation to kickstart your analytics career.

  • Introduction to Data Analytics – Learn basics like data types, variables and key concepts to build a strong analytics foundation.
  • Advanced Techniques – Explore data cleaning, statistical analysis, automation and libraries like Pandas, NumPy and Scikit-learn.
  • Hands-On Projects – Work on dashboards, predictive models and real-time reports to gain practical industry experience.
  • Analytics Tools and Deployment – Use tools like Power BI, Tableau, Jupyter and Git to manage, share and deploy analytics projects.
Fundamentals of Data Analytics
Excel for Data Analysis
SQL for Data Querying
Python for Data Analytics
Data Visualization Tools
Basics of Machine Learning
Statistics for Data Analytics

These form the foundation of understanding data and analytics:

  • Types of Data – Structured, semi-structured and unstructured data
  • Analytics Types – Descriptive, diagnostic, predictive, prescriptive
  • Data Lifecycle – Collection, cleaning, analysis, visualization, interpretation
  • Roles in Analytics – Data analyst, business analyst, data scientist

These are used for basic data manipulation and visualization:

  • Formulas & Functions – SUM, IF, VLOOKUP, INDEX, MATCH
  • Data Cleaning Tools – Remove duplicates, text-to-columns, data validation
  • Pivot Tables – Summarize and explore large datasets
  • Charts – Column, bar, line, pie, combo charts for visualization

These are used to interact with relational databases:

  • SELECT Queries – Retrieve specific data from tables
  • JOINs – Combine data from multiple tables (INNER, LEFT, RIGHT)
  • GROUP BY & Aggregations – SUM, AVG, COUNT for grouped data
  • Subqueries & Aliasing – Use queries within queries and rename columns

These libraries are used for programming and data operations:

  • NumPy – Numerical computations and array handling
  • Pandas – Dataframes for reading, transforming and analyzing data
  • Matplotlib – Basic charting and visualizations
  • Seaborn – Statistical data visualizations with styling options

These are used to create dashboards and interactive reports:

  • Power BI – Microsoft’s business intelligence tool
  • Tableau – Visual analytics platform for building dashboards
  • Filters & Slicers – Interactive controls for data exploration
  • Calculated Fields – Custom formulas within visuals

These are used to apply predictive analytics and modeling:

  • Scikit-learn – Python library for machine learning
  • Supervised Learning – Regression, classification
  • Unsupervised Learning – Clustering techniques like K-Means
  • Model Evaluation – Accuracy, confusion matrix, cross-validation

These concepts help understand patterns and support decision-making:

  • Descriptive Statistics – Mean, median, mode, range, standard deviation
  • Probability – Basic probability, distributions, conditional probability
  • Inferential Statistics – Hypothesis testing, confidence intervals, t-tests
  • Correlation & Regression – Relationships and prediction between variables

🎁 Free Addon Programs

Aptitude, Spoken English

🎯 Our Placement Activities

Daily Task, Soft Skills, Projects, Group Discussions, Resume Preparation, Mock Interview

Get Real-Time Experience in Data Analytics Projects

Placement Support Overview

Today's Top Job Openings for Data Analytics

Service Desk Analyst

Company Code : WPO416

Chennai, Tamilnadu

₹30,000 - ₹40,000 a month

Any Degree

Exp 0-2 yrs

  • We are looking for fresh graduates with excellent communication skills in English and strong technical knowledge to join our team as Support Analysts. Candidates must hold a minimum graduation degree with all marksheets available. In this role, you will assist users by diagnosing and resolving IT issues.
  • Easy Apply

    Business Analyst

    Company Code : CPS805

    Chennai, Tamilnadu

    ₹30,000 - ₹40,000 a month

    Any Degree

    Exp 0-1yr

  • We are currently recruiting for dynamic Business Analysts will drive our continued growth and success. With a strong focus on innovation, they will identify, develop and support the implementation of strategic initiatives to enhance efficiency and productivity.
  • Easy Apply

    Data Scientist

    Company Code : CFD612

    Chennai, Tamilnadu

    ₹20,000 - ₹40,000 a month

    Any Degree

    Exp 0-5 yrs

  • In this role you will analyze complex data sets, develop predictive models and generate actionable insights to support business strategies. The role requires strong expertise in statistics, machine learning and data visualization.
  • Easy Apply

    Data Engineer

    Company Code : YST413

    Chennai, Tamilnadu

    ₹15,000 - ₹25,000 a month

    Any Degree

    Exp 0-3 yrs

  • Opportunities are now open for a data analytics professional with hands-on experience in big data tools such as Hadoop, Spark and Kafka, along with strong proficiency in scripting languages like Python and Scala. The ideal candidate should have expertise in both SQL and NoSQL databases, including Postgres and MongoDB and be capable of building scalable data pipelines and architectures.
  • Easy Apply

    Marketing Analyst

    Company Code : MPN316

    Chennai, Tamilnadu

    ₹25,000 - ₹50,000 a month

    Any Degree

    Exp 0-3 yrs

  • We are expanding and hiring for a Marketing Analyst can develop and implement effective marketing analysis solutions to support organizational goals. The role involves monitoring key performance metrics, conducting detailed analysis and preparing reports to guide decision-making. Collaboration with cross-functional teams and the creation of technical documentation are also key responsibilities.
  • Easy Apply

    Operations Analyst

    Company Code : CRL431

    Chennai, Tamilnadu

    ₹30,000 - ₹50,000 a month

    Any Degree

    Exp 0-1 yrs

  • We are actively seeking qualified candidates for a detail-oriented professional to manage accruals, invoice processing and contract documentation in close coordination with business and internal teams. The role involves regular interaction with Finance, Compliance, Tax and IT/Infosec departments, ensuring smooth operations and timely resolution of queries. Responsibilities also include preparing MIS reports.
  • Easy Apply

    Business Analyst

    Company Code : ZKA721

    Chennai, Tamilnadu

    ₹25,000 - ₹50,000 a month

    Any Degree

    Exp 0-2 yrs

  • Join our team – we are hiring talented people to become part of our team, where salary will not be a constraint for deserving candidates. The role involves reviewing and analyzing current systems to evaluate their efficiency and effectiveness, while recommending strategic improvements. Candidates will also define the scope and parameters of analysis to ensure measurable outcomes and actionable results.
  • Easy Apply

    Data Analyst

    Company Code : WSA812

    Chennai, Tamilnadu

    ₹15,000 - ₹25,000 a month

    Any Degree

    Exp 0-1 yrs

  • Exciting roles available – apply now For Data Engineer/Analyst to join our team at We Shine Academic and support the development of scalable data infrastructure. The role involves collaborating with teams to gather requirements, building and optimizing data systems and preparing raw data for analysis. Candidates should have a strong focus on accuracy.
  • Easy Apply

    Highlights for Data Analytics Internship in Tambaram

    Real-Time Projects

    • 1. Gain hands-on experience by working on live industry-based applications.
    • 2. Understand real-world problem-solving through Data Analytics scenarios.
    Book Session

    Skill Development Workshops

    • 1. Participate in focused sessions on trending technologies and tools.
    • 2. Learn directly from industry experts through guided practical exercises.
    Book Session

    Employee Welfare

    • 1. Enjoy benefits like health coverage, flexible hours, and wellness programs.
    • 2. Companies prioritize mental well-being and work-life balance for all employees.
    Book Session

    Mentorship & Peer Learning

    • 1. Learn under experienced mentor guide your technical and career growth.
    • 2. Collaborate with peers to enhance learning through code reviews and group projects.
    Book Session

    Soft Skills & Career Readiness

    • 1. Improve communication, teamwork, and time management skills.
    • 2. Prepare for interviews and workplace dynamics with mock sessions and guidance.
    Book Session

    Certification

    • 1. Earn recognized credentials to validate your Data Analytics skills.
    • 2. Boost your resume with course or project completion certificates from reputed platforms.
    Book Session

    Sample Resume for Data Analytics (Fresher)

    • 1. Simple and Neat Resume Format

      – Use a clean layout with clear sections like summary, skills, education, and projects.

    • 2. List of Technologies You Know

      – Mention skills like Excel, SQL, Python, Power BI, Tableau, Data Visualization, and Data Cleaning tools.

    • 3. Real-Time Projects and Achievements

      – Add 1–2 real-time projects with a short description and the tools used.

    Top Data Analytics Tricky Interview Questions and Answers (2025 Guide)

    Ans:

    Data analysis converts raw data into meaningful insights that support decision-making. It enables organizations to detect trends, solve problems early and optimize processes. Businesses may increase productivity and keep a competitive edge in the market by utilizing these information.

    Ans:

    Data profiling is the process of examining datasets to understand their structure, quality and completeness. It highlights missing values, inconsistencies and data types. This ensures that analysts work with reliable and trustworthy data before performing deeper analysis.

    Ans:

    Data validation ensures that datasets are accurate, complete and consistent. It involves checking for incorrect or missing entries and verifying flagged data for correctness. These steps help maintain the integrity of the data before using it for analysis.

    Ans:

    Data analysis focuses on summarizing and interpreting existing data to explain trends. Data mining goes further by uncovering hidden patterns and relationships using advanced methods such machine learning. Both are complementary but serve different purposes in understanding data.

    Ans:

      Popular tools for data analysis include Tableau, KNIME, RapidMiner, OpenRefine and Google Search Operators. These tools assist in cleaning, visualizing and interpreting data effectively. They are widely used to simplify complex datasets and generate actionable insights.

    Ans:

    An outlier is a value that deviates significantly from the other data points in a dataset. It may represent errors, unusual cases or important anomalies. Identifying outliers is important for accurate analysis and understanding underlying trends.

    Ans:

    Model performance is measured by its ability to provide accurate and reliable predictions while adapting to new data. Metrics like accuracy, precision, recall and AUC are used to assess success. A well-performing model should also be interpretable and consistent in results.

    Ans:

    Models need retraining when input data changes, business objectives evolve or accuracy decreases. Regular monitoring ensures the model remains relevant and continues to provide effective predictions. Retraining helps maintain the usefulness of analytics models over time.

    Ans:

    Data cleaning involves identifying and correcting errors, filling missing values, removing duplicates and standardizing formats. This process prepares the data for reliable analysis. Proper cleaning improves the quality of insights and ensures accurate results.

    Ans:

    Pivot tables allow quick summarization and organization of large datasets. They help group, filter and analyze data easily without complex calculations. By simplifying the presentation of data, pivot tables enable faster insight generation and reporting.

    Company-Specific Interview Questions from Top MNCs

    1. How does data analytics differ from data science?

    Ans:

    Building predictive models and applying algorithms to predict future events are the main goals of data science. In contrast, data analytics looks for patterns and trends in past data. Analytics mainly aids in understanding historical performance and deriving practical insights, but data science has a wider reach that includes machine learning and sophisticated modeling.

    2. What are the primary duties of a data analyst?

    Ans:

    A data analyst collects data from multiple sources, cleans it and organizes it for analysis. Trends, patterns and meaningful insights are then extracted from the dataset. Finally reports and visualizations are prepared to assist teams and stakeholders in making informed business decisions.

    3. How should missing values in a dataset be addressed?

    Ans:

    Missing data can be handled by filling gaps using statistical methods like mean, median or mode. If the missing records are few and non-critical, they can be removed. Alternatively algorithms can predict missing values based on other related data points to maintain dataset integrity.

    4. How does structured data differ from unstructured data?

    Ans:

    Structured data is well-organized in tables with rows and columns, such as databases or Excel sheets. Unstructured data includes text, images, videos and emails which lack a fixed format. Choosing the appropriate tools and techniques for analysis is made easier by being aware of this distinction.

    5. What are the main stages of a data analysis project?

    Ans:

    Understanding the issue and obtaining pertinent data are the first steps in a typical data analysis job. After that, the data is prepared, cleaned and examined to find trends. In order to help stakeholders make well-informed decisions, insights are finally shared with them through graphic reports.

    6. How does supervised learning differ from unsupervised learning?

    Ans:

    Supervised learning trains models using labeled data to make predictions or classifications. Unsupervised learning, in contrast, identifies hidden patterns in unlabeled data without predefined categories. Each approach is used based on the nature of the dataset and the problem to be solved.

    7. What is cross-validation in machine learning?

    Ans:

    A method called cross-validation divides data into several segments so that a model can be repeatedly trained and tested. This guarantees that the model does not overfit to a certain group of data and that its performance is consistent. It offers a more trustworthy evaluation of model accuracy.

    8. What does a confusion matrix show?

    Ans:

    A confusion matrix compares actual outcomes with predicted results in classification tasks. It highlights true positives, true negatives, false positives and false negatives. This helps evaluate how well a model is performing and identify areas that need improvement.

    9. How are important features selected from a dataset?

    Ans:

    Finding the most pertinent variables to enhance model performance is known as feature selection. Recursive feature reduction, model-based importance score and correlation analysis are a few methods that help lower complexity and improve prediction accuracy. Models become more effective when the appropriate features are chosen.

    10. How does the K-Nearest Neighbors (KNN) algorithm function?

    Ans:

    KNN predicts the class or value of a new data point by examining the ‘k’ closest points in the dataset. The outcome is determined through majority voting for classification or averaging for regression. This algorithm relies on similarity between data points to make predictions.

    1. What are the key responsibilities of a data analyst?

    Ans:

    A data analyst is the someone who collects, organizes and interprets data to help businesses make decisions. They analyze data to find trends, patterns and actionable insights. These findings assist organizations enhance their procedures, tactics and overall performance.

    2. How can data reliability and accuracy be ensured?

    Ans:

    Ensuring data quality entails using reliable sources and validating their relevance. Duplicate records are eliminated and errors and inconsistencies are addressed. Regular validation, including cross-checking and analyzing outputs, make sure that data is correct and reliable.

    3. What is data cleaning and why is it important?

    Ans:

    Data cleaning is the process of resolving inconsistencies, mistakes and missing values in datasets. It also includes standardizing formats to ensure uniformity. Clean data is critical because it delivers reliable insights and prevents false conclusions that may influence decisions.

    4. Which tools are widely used for data analysis?

    Ans:

    Popular tools include Excel for organizing and summarizing data, SQL for querying databases and Python for scripting and automation. Visualization and reporting are done using Power BI and Tableau to create interactive dashboards for better insights.

    5. How does a primary key differ from a foreign key in databases?

    Ans:

    A main key used to uniquely identify each record in a table, effectively eliminating duplicates. A foreign key is a field in one table that establishes a connection with the main key of another table. This assures data integrity across all tables.

    6. What approaches can handle missing data in a dataset?

    Ans:

    Missing data can be managed by imputing values using mean, median or mode. Rows or columns with excessive gaps may be removed. Machine learning models can also predict missing values based on other available features, ensuring a complete dataset for analysis.

    7. What does normalization mean in databases?

    Ans:

    Normalization is the practice of grouping data into relevant tables to reduce redundancy and improve data integrity. It ensures effective storage, minimizes duplication and simplifies database management. Well-normalized databases enhance overall performance.

    8. Why are pivot tables useful in Excel?

    Ans:

    Pivot tables provide for rapid summary and study of huge datasets. They provide efficient grouping, filtering and calculation of totals or averages. This tool streamlines data analysis and allows users to obtain insights without using complex formulae.

    9. How do correlation and causation differ?

    Ans:

    Correlation indicates that two variables move together or have a relationship, whereas causation means one variable directly influences the other. It is important to note that correlation alone does not prove a cause-and-effect relationship between variables.

    10. Why is data visualization important in analytics?

    Ans:

    Data visualization transforms complex datasets into charts, graphs and dashboards for easy understanding. It allows stakeholders to quickly identify patterns, trends and insights. Visualization supports informed decision-making by presenting data clearly and effectively.

    1. Which tools are commonly used in data analysis?

    Ans:

    Data analysts use a variety of tools depending on the type of task. Excel is used for organizing data and performing basic analyses, while SQL helps query and manage large datasets. Visualization tools like Power BI and Tableau create interactive dashboards and Python or R are used for advanced processing, statistical analysis and automation.

    2. How can missing data in a dataset be handled effectively?

    Ans:

    There are various methods for handling missing values. Excessively missing data can be eliminated from rows or columns and statistical techniques like mean, median or mode it can used to fill in gaps. In order to effectively predict missing values, advanced methodologies use machine learning models or regression algorithms.

    3. What are the main types of SQL joins?

    Ans:

    Data from several tables is combined in various ways using SQL joins. FULL OUTER JOIN returns all records from either table where matches exist, LEFT JOIN returns all records from the left table with matches from the right, RIGHT JOIN returns all records from the right table with matches from the left and INNER JOIN returns records with matching values in both tables.

    4. How do databases differ from data warehouses?

    Ans:

    Databases are designed to manage current, real-time transactional data and support day-to-day operations. Data warehouses, in contrast, store large volumes of historical data and are optimized for fast retrieval and complex analysis. Warehouses are primarily used for business intelligence and decision-making processes.

    5. Why is data cleaning crucial before performing analysis?

    Ans:

    Data cleaning identifies and removes errors, duplicates and inconsistencies in datasets. This ensures that the data is accurate and reliable for analysis. Clean data leads to trustworthy insights that businesses can confidently use for strategy planning and decision-making.

    6. What does data normalization mean and why is it necessary?

    Ans:

    Normalization organizes data into related tables to minimize redundancy and maintain consistency. It improves database efficiency, reduces storage requirements and simplifies data management. Properly normalized data also supports more effective querying and analysis.

    7. How is data validation performed?

    Ans:

    Data validation ensures that data entries are accurate and reliable. It involves checking for correct formats, confirming values fall within expected ranges and using automated validation tools in Excel or custom scripts. This process maintains data integrity and prevents errors during analysis.

    8. What is the importance of data visualization?

    Ans:

    Data visualization converts complex data into easy-to-understand visual formats like charts, graphs and dashboards. It allows quick identification of patterns, trends and key insights. Visualization helps stakeholders make informed decisions faster by presenting data clearly.

    9. Can you explain data modeling in simple terms?

    Ans:

    Data modeling is the process of designing how data will be structured, stored and connected within a system. It uses diagrams and schemas to map tables, fields and relationships. This helps build efficient databases and ensures smooth data retrieval and management.

    10. How can a pivot table be created in Excel?

    Ans:

    Creating a pivot table begins by highlighting the data range to analyze. Next, pick the "Insert" tab and select "Pivot Table," indicating its location. To effectively summarize and examine data, fields can be moved into rows, columns and values sections.

    1. Which tools are commonly used for data analysis?

    Ans:

    Data analysis relies on several popular tools depending on the task. Excel is used for data organization, SQL helps manage and query large datasets and visualization tools like Tableau and Power BI create interactive dashboards. Google Sheets is also widely used for collaboration and simple analysis.

    2. What is a pivot table and why is it useful?

    Ans:

    A pivot table is a tool that quickly summarizes large datasets in a clear format. It allows grouping, filtering and comparing different data points efficiently. Pivot tables simplify reporting, making it easier to explore and present insights without complex calculations.

    3. How should missing data in a dataset be managed?

    Ans:

    There are several approaches of handling missing data. Rows or entries with insufficient information may be removed, while gaps can be filled using averages, medians or most common values. Advanced techniques like data imputation or predictive modeling can estimate missing values accurately.

    4. How does supervised learning differ from unsupervised learning?

    Ans:

    Supervised learning uses labeled data to train models to predict known outcomes. Unsupervised learning, in contrast, identifies hidden patterns or clusters in data without pre-existing labels. Both methods are applied based on the type of problem and dataset available.

    5. Why is the p-value significant in statistics?

    Ans:

    The significance of test results is the determined by the p-value. It shows whether observed results may have happened by random and aids in deciding whether to accept or reject a hypothesis. This measure is essential for confirming statistical results.

    6. Can you describe a challenging data project you worked on?

    Ans:

    Complex data projects often involve messy or unstructured datasets. The challenge lies in cleaning the data, analyzing it to uncover patterns and transforming those insights into actionable recommendations that drive business decisions.

    7. What is regression analysis and how is it used?

    Ans:

    The link between one or more independent variables and a dependent variable is examined using regression analysis. It is frequently used to forecast future results and comprehend how modifications to input factors impact the outputs.

    8. What are the common types of regression?

    Ans:

    Common regression types include linear regression for simple straight-line predictions, logistic regression for binary outcomes and more advanced methods like ridge or polynomial regression for complex data relationships. Each method is chosen based on the data and analysis goal.

    9. How can data quality be maintained?

    Ans:

    High data quality is achieved by using reliable sources, removing duplicates and correcting errors. Keeping datasets consistent and up-to-date ensures accuracy and reliability, which is essential for meaningful analysis and decision-making.

    10. What is data normalization and why is it important?

    Ans:

    Data normalization arranges information to cut down on duplication and boost precision. It enhances database efficiency, makes management easier and ensures that data is structured properly for analysis and retrieval.

    1. What is the role of a data analyst and what do they do?

    Ans:

    A data analyst collects, organizes and examines data to provide actionable insights. They clean datasets, create reports and build dashboards that help companies make informed, evidence-based decisions. Their work uncovers patterns and trends that improve business strategies.

    2. How does data analysis differ from data science?

    Ans:

    Data analysis focuses on reviewing historical data to understand past trends and performance. Data science goes further by applying advanced models, algorithms and predictive techniques to forecast future outcomes and reveal deeper insights that may not be immediately visible.

    3. What responsibilities does a data analyst have within a project team?

    Ans:

    Data analysts transform raw data into clear, meaningful information for decision-making. They create reports and visualizations to communicate insights effectively. They also work together with team members and stakeholders to comprehend business needs and make sure data solutions fulfill project objectives.

    4. Why is making decisions based on data important?

    Ans:

    Decisions guided by data reduce guesswork and personal bias, enabling more objective and confident choices. Relying on factual information helps organizations improve outcomes, optimize strategies and enhance overall business performance.

    5. Which tools are frequently used for data analysis?

    Ans:

    Common tools include Excel for organizing and summarizing data, SQL for database queries and visualization tools like Power BI and Tableau. Google Sheets is also used for collaborative data handling. These tools help analysts manage, filter and present data efficiently.

    6. What is SQL and why is it important in analytics?

    Ans:

    Relational database data is managed and interacted with using SQL or Structured Query Language. It allows analysts to retrieve, update and manipulate large datasets quickly, supporting efficient data handling and preparation for analysis.

    7. What is the significance of a primary key in a database?

    Ans:

    Every record in a database table is uniquely identified by its primary key. It ensures no duplicate entries exist, maintaining data accuracy and integrity. This unique identification is essential for linking records and performing reliable queries.

    8. What data formats are commonly used in analytics?

    Ans:

    Analysts often work with CSV files, Excel spreadsheets, JSON files and SQL database tables. These formats enable easy storage, sharing and integration of data across multiple platforms and tools for analysis.

    9. How is good data quality defined and checked?

    Ans:

    High-quality data is accurate, complete, consistent and current. Analysts review datasets for missing or incorrect values and correct or remove them. Ensuring reliability before analysis helps produce trustworthy and actionable insights.

    10. How can data be maintained as accurate and dependable?

    Ans:

    Data accuracy is maintained through regular validation, cleaning and updates. Using verified and trustworthy sources prevents errors, while continuous monitoring ensures that data remains reliable for analysis and decision-making purposes.

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    Top Data Analytics Job Opportunities for Freshers

    • 1. Junior Data Analyst Jobs at Startups and IT Companies
    • 2. Campus Placements and IT Service Jobs
    • 3. Internship-to-Job Programs
    • 4. Apply Through Job Portals
    • 5. Skills That Help You Get Hired

    Getting Started With Data Analytics Training in Tambaram

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    Why Data Analytics is the Ultimate Career Choice

    High Demand

    Companies prefer multi-skilled professionals can handle entire project cycles.

    Global Opportunities

    Open doors to remote and international job markets.

    High Salary

    Enjoy competitive salaries and rapid career advancement.

    Flexible Career Path

    Explore roles such as developer, architect, freelancer, or entrepreneur.

    Future-Proof Career

    Stay relevant with skills that are consistently in demand in the evolving tech landscape.

    Versatility Across Industries

    Work in various domains like e-commerce, healthcare, finance, and more.

    Career Support

    Placement Assistance

    Exclusive access to ACTE Job portal

    Mock Interview Preparation

    1 on 1 Career Mentoring Sessions

    Career Oriented Sessions

    Resume & LinkedIn Profile Building

    Get Advanced Data Analytics Certification

    You'll receive a certificate proving your industry readiness.Just complete your projects and pass the pre-placement assessment.This certification validates your skills and prepares you for real-world roles.

    • Google Data Analytics Professional Certificate
    • Microsoft Power BI Certification
    • IBM Data Analyst Certification
    • Tableau Specialist Certification
    • SAS Analytics Certification
    • AWS Data Analytics Specialty Certification
    • Cloudera Certified Associate (CCA)

    Completing these certifications significantly enhances career prospects. They demonstrate practical skills, industry-relevant knowledge and dedication, which makes candidates more attractive to employers. While they guarantee a job, certified professionals are often preferred during hiring.

    Most certifications can be completed within a 3 to 6-month timeframe. The duration depends on individual learning speed, prior experience and the level of effort invested in practical exercises and exam preparation.

    • Distinguishes candidates in a competitive job market
    • Validates technical skills and hands-on experience
    • Opens opportunities for better positions and higher salaries
    • Builds confidence during interviews for analytics roles
    • Enroll in a structured, expert-led training program
    • Gain practical experience with live projects
    • Master key tools such as Excel, SQL, Python and Power BI
    • Take mock exams to assess readiness
    • Join online study groups and forums for support and knowledge sharing

    Complete Your Course

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    How is ACTE's Data Analytics Course in Tambaram Different?

    Feature

    ACTE Technologies

    Other Institutes

    Affordable Fees

    Competitive Pricing With Flexible Payment Options.

    Higher Data Analytics Fees With Limited Payment Options.

    Industry Experts

    Well Experienced Trainer From a Relevant Field With Practical Data Analytics Training

    Theoretical Class With Limited Practical

    Updated Syllabus

    Updated and Industry-relevant Data Analytics Course Curriculum With Hands-on Learning.

    Outdated Curriculum With Limited Practical Training.

    Hands-on projects

    Real-world Data Analytics Projects With Live Case Studies and Collaboration With Companies.

    Basic Projects With Limited Real-world Application.

    Certification

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    Placement Support

    Strong Placement Support With Tie-ups With Top Companies and Mock Interviews.

    Basic Placement Support

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    Batch Size

    Small Batch Sizes for Personalized Attention.

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    LMS Features

    Lifetime Access Course video Materials in LMS, Online Interview Practice, upload resumes in Placement Portal.

    No LMS Features or Perks.

    Training Support

    Dedicated Mentors, 24/7 Doubt Resolution, and Personalized Guidance.

    Limited Mentor Support and No After-hours Assistance.

    Data Analytics Course FAQs

    1. What educational background is required to start a career in Data Analytics?

    A career in Data Analytics requires basic knowledge in mathematics, statistics and computer usage. A strong foundation for working effectively with data and carrying out accurate analysis is provided by familiarity with programming languages like Python or R as well as tools such as Excel and SQL.
    The field of Data Analytics is rapidly growing and plays a key role in decision-making across sectors such as finance, healthcare and marketing. As businesses depend more and more on the data-driven insights, there is growing need for qualified analysts with competitive pay and great work prospects.
    The course trains students on essential tools like Excel, SQL, Python, R, Tableau and Power BI. Skills such as data cleaning, statistical analysis, predictive modeling and working with real-world datasets are emphasized to ensure practical and industry-ready knowledge.
    Hands-on projects simulate real business challenges. Assignments allow applying theoretical concepts to practical problems. Projects help build confidence and prepare learners for actual workplace responsibilities.
    Specialized support is provided to craft a standout CV. Professionals guide in showcasing projects, experience and skills. The resume is optimized to attract potential employers in the data analytics industry.
    Anyone interested in data, analytical thinking and problem-solving is welcome to participate. The course is open to students, working professionals and career changers who are eager to learn, regardless of their prior experience in the field.
    A degree is not mandatory for starting a career in Data Analytics. Many professionals enter the field through certifications and practical experience. While degrees in mathematics, statistics, computer science or business are helpful, they are not strictly required.
    Basic Excel knowledge, comfort with numbers and logical thinking are useful starting points. Familiarity with programming languages like Python or foundational statistics can help but the course is designed to teach these concepts from scratch.
    No prior experience with web development is necessary. The focus is on analyzing and interpreting data using tools like Excel, SQL, Python and Power BI, without involving frontend or backend development technologies.

    1. What kind of placement assistance is offered after completing the course?

    After completing the program, full placement support is provided, including resume building, mock interviews, job referrals and assistance with scheduling interviews at partner companies. This helps maximize the chances of securing a suitable job.

    2. Can course projects be added to a resume?

    Projects completed during training are designed to be included on a resume. These real-time assignments showcase practical skills and demonstrate the ability to apply knowledge, making candidates more attractive to potential employers.

    3. Is it possible to apply to top IT and analytics firms after training?

    With the skills and certifications earned, learners can apply to leading IT and analytics organizations. Many past students have successfully secured positions in reputable multinational companies after completing the course.

    4. Do freshers with no prior experience receive placement support?

    Special assistance is available for freshers, including portfolio building, interview coaching and connections with companies hiring entry-level candidates. This ensures that even beginners can access career opportunities in the field.
    Yes, an industry-recognized certificate is awarded upon successful completion of the program. This credential validates skills and knowledge and can be showcased on a resume or LinkedIn profile to enhance job prospects.
    Data Analytics is highly in demand as businesses increasingly rely on data-driven decision-making. It opens doors to diverse industries, offering strong growth potential, lucrative opportunities and a rewarding career path.
    Basic computer skills, analytical thinking and familiarity with mathematics or statistics are helpful for faster learning. However no prior expertise is required, as the course covers foundational concepts from the beginning.
    The program equips learners with practical skills in data collection, cleaning, analysis and visualization. It enhances interview performance, prepares candidates for real-world roles, and creates career opportunities in IT, healthcare, finance and marketing sectors.
    Learners acquire the ability to collect, clean and analyze data using Excel, SQL, Python and Power BI. The course also teaches data visualization, statistical methods and interpretation of results to support effective business decision-making.

    1. Is placement assistance included with the course?

    Yes, the training program provides complete placement support, including resume guidance, interview preparation and job referrals to help learners launch their careers successfully.
    Course fees differ between institutes depending on aspects such as the comprehensiveness of the curriculum, teaching approaches, availability of learning materials and extra support services. Programs that provide extensive practical training, modern tools and well-organized learning structures usually cost more than standard courses.
    The program is priced reasonably for freshers, offering excellent value with hands-on projects, practical experience and expert mentoring. This makes it accessible to those starting their careers in Data Analytics.
    Yes, the fee structure is standardized across cities to ensure that all students have equal access to quality training and resources.
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