Data Science Course In HSR Layout With 100 % Placement Support | Updated 2025

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

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Data Science Course in HSR Layout

  • Earn a job-focused Data Science certification with 100% placement support.
  • Join Our Best Data Science Training Institute in HSR Layout to Build Data Expertise
  • Enjoy flexible learning options — choose from weekday, weekend, or fast-track programs.
  • Complete Data Science Course in HSR Layout Includes Excel, SQL, Python, and Power BI.
  • Get practical, hands-on exposure through real-world projects and engaging learning modules.
  • Receive Expert Guidance on Resume Building, Technical Interview and Career Planning.

WANT IT JOB

Become a Data Scientist in 3 Months

Freshers Salary

3 LPA

To

8 LPA

Quality Training With Affordable Fees in HSR Layout!
INR ₹28000
INR ₹18500

11963+

(Placed)
Freshers To IT

5963+

(Placed)
NON-IT To IT

8742+

(Placed)
Career Gap

4325+

(Placed)
Less Then 60%

Our Hiring Partners

Overview of Data Science Training

Our Data Science Training in HSR Layout is designed to be easy to follow and beginner-friendly. You will learn Python, Excel, SQL, and Power BI to efficiently gather, clean, and analyze data. The program includes essential topics such as data analysis, visualization, and basic machine learning. With hands-on exercises and step-by-step guidance, you will develop the practical skills needed for real-world job roles. Whether you are starting with a Data Science Internship or working towards a Data Science Certification, this course will help you progress with confidence. We also provide 100% Data Science Placement Support to help you start your career in the IT industry.

What You'll Learn From Data Science Course

Learn to work with data to identify patterns, make smart decisions, and present findings using clear charts and visuals.

Gain a strong foundation in Data Science by mastering data handling, basic coding, and logical thinking with tools like Python and Excel.

Explore essential concepts such as data types, cleaning raw datasets, and using simple formulas effectively.

Put your skills into action through real-world projects and case studies, discovering how Data Science is applied in practical situations.

Advance step-by-step from beginner-level concepts to more advanced techniques, steadily building your expertise.

Join our Data Science Training in HSR Layout to boost your confidence, sharpen your skills, and get ready for a successful career in the data-driven industry.

Additional Info

Course Highlights

  • Select Your Learning Path: Python, SQL, Excel, Power BI, or Tableau.
  • Receive Complete Job Assistance With Leading Companies Seeking Skilled Data Science Experts.
  • Join 11,000+ Successful Students Trained and Placed Through Our 350+ Hiring Partners.
  • Learn From Industry Professionals With Over a Decade of Real-World Experience.
  • Benefit From Easy-to-Follow Lessons, Hands-On Exercises, and End-to-End Career Support.
  • Ideal for Beginners With Flexible Schedules, Affordable Fees, and Guaranteed Job Placement Support.
  • Kickstart Your Data Science Career by Gaining Practical Skills and Working on Live Projects.

Essential the Benefits of Data Science Course

  • High Career Demand – Data Science is one of the fastest-growing fields with abundant job opportunities. Companies are actively looking for professionals who can analyze and interpret data to drive smart decisions. This course equips you with the essential skills to land a high-paying job, grow in your career, and achieve long-term success.
  • Practical Learning – Learn by doing through real-world projects rather than just theory. The program offers hands-on experience with practical examples, enabling you to understand concepts faster and prepare for real industry scenarios. You’ll gain the confidence to handle challenges in any role.
  • No Coding Background Needed – You don’t need prior coding knowledge to begin. The course starts from the basics with clear explanations, making it easy for complete beginners. It’s the perfect entry point for anyone aspiring to enter the tech industry.
  • Stronger Decision-Making Skills – Discover how to extract meaningful insights from data and make evidence-based decisions. This ability not only helps you solve problems effectively but is also valuable across multiple industries.
  • Learn From Industry Experts – Receive mentorship from seasoned professionals with years of real-world expertise. They’ll share practical tips, proven strategies, and real examples to accelerate your learning and help you avoid common mistakes. You’ll have continuous expert support throughout your journey.

Advance Tools of Data Science Training in HSR Layout

  • Python – Python is one of the most popular tools in Data Science, known for being beginner-friendly and highly efficient for data work. You can use it for tasks like data cleaning, creating visualizations, and building predictive models. In our Data Science Course, you’ll work with Python on real-time projects to develop practical skills.
  • Excel – Excel is a great starting point for beginners in Data Science. It helps you organize data, perform basic calculations, and create simple, easy-to-read charts all without needing to code.
  • SQL – SQL is a vital skill for retrieving and managing data from databases. With SQL, you can quickly answer questions like “How many customers purchased last month?” making it an essential tool for any aspiring Data Science professional.
  • Power BI – Power BI turns raw data into interactive dashboards and reports. It’s perfect for showcasing insights in a clear and engaging way. Even without prior design skills, you can create impressive visuals, and our course guides you through each step of using this tool.
  • Jupyter Notebook – Jupyter Notebook is an interactive workspace for writing, testing, and sharing code. It’s ideal for experimenting with data concepts and is widely used in both online and offline Data Science Training sessions for hands-on learning.

Top Frameworks Every Data Scientist Should Know

  • TensorFlow – TensorFlow is a powerful framework used to create intelligent computer models that can learn from data and make accurate predictions. Commonly applied in machine learning and artificial intelligence, it’s widely used for tasks such as image recognition, voice processing, and text analysis.
  • Scikit-learn – Scikit-learn is a beginner-friendly library that provides easy-to-use tools for building models like price prediction and pattern detection. Known for its simplicity, speed, and seamless integration with Python, it’s a fundamental component in most Data Science training programs.
  • Pandas – Pandas makes data handling simple and efficient. With just a few commands, you can clean, sort, and analyze even messy datasets. It’s an essential tool for data manipulation, making large datasets easy to manage.
  • NumPy – NumPy is a core Python library for numerical computing. It enables you to work with arrays, perform mathematical calculations, and process data quickly. It’s indispensable for mathematical operations in Data Science.
  • Matplotlib – Matplotlib is a flexible library for creating visual representations of data, including bar charts, line graphs, and more. It allows you to present insights clearly and is an excellent starting point for anyone learning data visualization.

Must-Have Skills You’ll Gain in a Data Science Course in HSR Layout

  • Data Analysis – Data analysis is the process of examining numbers and facts to uncover meaningful insights. It helps identify trends and patterns within a business or system. In this course, you’ll learn how to analyze data using tools like Excel and Python, making it one of the most essential technical skills in Data Science.
  • Communication Skills – Discovering insights is only the beginning you must also communicate them effectively. Strong communication skills enable you to present your ideas clearly to colleagues or clients. In this course, you’ll learn how to explain findings using simple language and visuals, increasing the impact of your data work.
  • Programming with Python – Python is a versatile, beginner-friendly programming language widely used in Data Science. It allows you to clean data, perform calculations, and build predictive models. Mastering Python is a crucial step for anyone pursuing a career in this field.
  • Problem-Solving – Data Scientists leverage data to address real-world challenges. This involves clear thinking, recognizing patterns, and making well-informed decisions. A quality Data Science course trains you to break down complex problems into manageable steps a valuable soft skill across all industries.
  • Data Visualization – Data visualization converts complex datasets into simple, easy-to-understand visuals like charts and graphs. It ensures your findings are accessible to everyone, even without technical expertise. Using tools like Power BI and Matplotlib, you’ll learn to create clear and impactful visual presentations.

Essential Roles and Responsibilities of a Data Science Training

  • Data Analyst – A Data Analyst collects and examines data to uncover meaningful trends and patterns. They work with tools like Excel, SQL, and Power BI to create reports and visualizations that guide business decisions. Their role often involves collaborating with departments such as marketing, finance, and sales to provide data-driven insights.
  • Data Scientist – A Data Scientist uses coding, statistics, and advanced analytics to solve complex problems. They create predictive models using large datasets and technologies like Python and Machine Learning. Their work helps organizations develop smarter strategies and make future-focused decisions.
  • Machine Learning Engineer – This role focuses on creating systems that can learn from data and improve automatically. Machine Learning Engineers build applications capable of tasks like image recognition, speech processing, and pattern detection. They require strong programming and algorithm skills and often work with Data Scientists to bring models into real-world use.
  • Business Intelligence (BI) Analyst – A BI Analyst converts raw data into interactive dashboards and comprehensive reports. They help management track business performance and make informed choices. Using tools like Power BI or Tableau, they present insights in a clear and actionable way, blending business knowledge with technical skills.
  • Data Engineer – A Data Engineer develops and manages the infrastructure needed to store, process, and deliver data. They ensure that data is clean, accurate, and easily accessible. By managing databases, writing code, and using cloud technologies, they support Data Analysts and Data Scientists in their work.

Top Reasons Why Data Science Training is Ideal for Fresh Graduates

  • High Job Demand – Industries such as business, healthcare, and technology are actively seeking skilled data professionals, creating abundant job opportunities for freshers. With proper training, you can step into the field and start your career quickly.
  • No Coding Experience Needed – You don’t need prior programming knowledge to get started. Our Data Science Course begins with the fundamentals and guides you through each step, making it beginner-friendly. Even without a tech background, you can learn effectively and advance with confidence.
  • Attractive Salary Potential – Data Science positions offer excellent starting salaries, even for entry-level roles. As your skills and experience grow, so does your earning potential. Employers are willing to invest in talented professionals, making this a rewarding career choice.
  • Multiple Career Opportunities – Completing your training opens the door to diverse roles, including Data Analyst, Data Engineer, and Machine Learning Engineer. Career opportunities are available across IT, banking, retail, sports, and many other sectors, giving you flexibility in your career path.

How Data Science Skills Help You Get Remote Jobs

  • Python and Data Tools for Remote Work – Mastering tools like Python, Excel, and Power BI allows you to work from anywhere. These software-based tools are used by companies worldwide, enabling you to complete tasks, analyze data, and share results online with ease. Such technical skills are essential for thriving in remote roles.
  • Effective Communication Skills – In remote jobs, clear communication is key. You must be able to explain your findings in simple terms and prepare concise reports so your team can easily understand your insights without face-to-face interaction. Strong soft skills help maintain seamless collaboration.
  • Problem-Solving from Anywhere – Data Science builds your ability to think critically and solve problems using data skills that remain valuable no matter your location. Employers appreciate remote professionals who can work independently, make informed decisions, and handle challenges confidently.
  • Visual Storytelling with Data – Creating charts, dashboards, and other visuals makes complex information easy to understand. Using tools like Power BI and Tableau, you can present insights effectively in virtual meetings, helping you stand out in remote work environments.
  • Time Management and Self-Discipline – Data Science training strengthens your ability to manage projects, meet deadlines, and stay focused. These organizational skills are essential for working from home, where companies value professionals who can perform efficiently without constant supervision.

What to Expect in Your First Data Science Job

  • Working with Large Data Sets – Much of your time will be spent handling data from different sources. Your tasks will include cleaning, organizing, and interpreting this information. While it may seem challenging at first, consistent practice will make you more efficient. This is a vital starting point for every Data Science project.
  • Using Tools Like Python and Excel – You’ll put into practice the tools learned during training, such as Python, SQL, and Excel. These will help you write simple programs, create charts, and extract valuable insights. Most of your work will be done on your computer using these tools, with your team offering guidance as you continue to grow.
  • Teamwork and Meetings – You’ll work closely with a team rather than in isolation. Regular meetings will give you the chance to share progress, ask questions, and learn from others’ perspectives. Clear communication will help you present your ideas effectively, while being open and approachable will make collaboration easier.
  • Continuous Learning – Your first job will mark the beginning of your journey. Every day will bring opportunities to learn from mastering new tools to receiving tips from colleagues. Mistakes are part of the process, so stay curious, adaptable, and committed to improving your skills.

Top Companies Hiring Data Science Professionals

  • Google – Google employs data scientists to improve search results, advertisements, and overall user experiences. They handle massive amounts of data every day, making their services more intelligent. It’s an excellent place to learn, innovate, and grow in the tech industry.
  • Amazon – Amazon uses data science to recommend products, optimize delivery routes, and create effective pricing strategies. Data scientists play a crucial role in enhancing the customer shopping experience. It’s a strong choice for both freshers and experienced professionals.
  • TCS – Tata Consultancy Services (TCS) offers opportunities for data science roles at all levels, from beginners to experts. They work with global clients on varied data projects, making it an ideal company to start and build your data career.
  • Accenture – Accenture applies data science to address real-world problems in industries like finance, healthcare, and retail. Data scientists here gain hands-on experience and excellent opportunities for professional growth.
  • Infosys – Infosys supports businesses in improving operations through data-driven solutions. They offer training and guidance, especially for freshers entering the data science field, making it a reliable choice to start your career.
  • IBM – IBM is at the forefront of innovation, working on advanced AI, finance, and healthcare projects. Their data scientists develop cutting-edge tools and systems, offering international exposure and a strong platform for career growth.
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Upcoming Batches For Classroom and Online

Weekdays
25 - Aug - 2025
08:00 AM & 10:00 AM
Weekdays
27 - Aug - 2025
08:00 AM & 10:00 AM
Weekends
30 - Aug - 2025
(10:00 AM - 01:30 PM)
Weekends
31 - Aug - 2025
(09:00 AM - 02:00 PM)
Can't find a batch you were looking for?
INR ₹18500
INR ₹28000

OFF Expires in

Who Should Take a Data Science 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 Science Course in HSR Layout

Data Scientist

Business Analyst

Data Scientist

Machine Learning Engineer

Data Engineer

BI Analyst

AI Engineer

Data Science Consultant

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Tools Covered For Data Science Training

Apache Spark Power BI Tableau Data Studio Excel SQL R Programming Python

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 Science Course Syllabus

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

Students joining the Data Science Course in HSR Layout can choose a learning path aligned with their interests and career goals. This flexible approach allows them to develop strong expertise in areas like machine learning, data visualization, or data analysis, while still covering all core topics included in the Data Science Training. The program also offers Data Science Internship opportunities to gain hands-on industry experience. After successfully completing the course, students receive a recognized Data Science Certification to enhance their career growth and job prospects.

  • Core Data Science Track – Learn the basics of data cleaning, analysis, and simple modeling.
  • Advanced Data Science Track – Dive into machine learning, AI, and big data tools.
  • Data Analytics with Excel & Power BI – Turn data into reports and dashboards for business use.
  • Python Programming for Data Science – Use Python to handle, analyze, and visualize data.
Introduction to Data Science
Python for Data Science
Data Handling & Preprocessing
SQL for Data Management
Exploratory Data Analysis
Machine Learning Foundations
Data Science With AI Tools

Builds the base to understand the field and its core functions:

  • What is Data Science – Importance, applications, and workflow
  • Data Science vs Data Analytics – Key differences in roles and outcomes
  • Career Paths – Roles like data analyst, data scientist and ML engineer

Covers essential programming and data handling with Python:

  • Python Basics – Variables, data types, loops and functions
  • Pandas – Reading, cleaning, filtering and grouping data with DataFrames
  • NumPy – Efficient numerical operations using arrays
  • Matplotlib & Seaborn – Plotting line graphs, bar charts, heatmaps, and histograms

Focuses on preparing raw data for analysis:

  • Data Collection – Importing data from files, databases, APIs.
  • Data Cleaning – Handling missing values, duplicates, and outliers.
  • Data Transformation – Encoding, normalization, scaling.
  • Feature Engineering – Creating meaningful features from raw data.

Learn how to reach and work with data that is stored in databases:

  • Basic SQL Commands – SELECT, WHERE, ORDER BY
  • Joins & Relationships – INNER JOIN, LEFT JOIN, RIGHT JOIN
  • Aggregation Functions– COUNT, SUM, AVG, MAX, MIN
  • Views & Subqueries– Organizing and optimizing data queries

Helps find insights and patterns in data visually and statistically:

  • Data Profiling – Summary statistics, distributions, data types
  • Visualization Tools – Box plots, scatter plots, pair plots
  • Correlation Analysis – Identifying relationships between variables
  • Outlier Detection – Visual and statistical methods

Introduces predictive modeling and intelligent data-driven systems:

  • Supervised Learning – Regression and classification techniques.
  • Unsupervised Learning – Clustering and dimensionality reduction.
  • Model Building – Training, testing and tuning machine learning models.
  • Evaluation Metrics – Accuracy, precision, recall and ROC curve.

Applies all learned skills in real-world scenarios:

  • Power BI / Tableau – Interactive dashboards and storytelling
  • Model Deployment Basics – Introduction to using Flask or Streamlit
  • Documentation & Reporting – Presenting insights clearly and effectively

🎁 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 Science Projects

Placement Support Overview

Today's Top Job Openings for Data Science Professionals

Junior Data Analyst

Company Code: IWA664

Bangalore, Karnataka

₹25,000 – ₹35,000 a month

Any Degree

Exp 0-2 yrs

  • We are looking for a detail-focused individual to clean, validate and analyze data from multiple sources. Responsibilities include preparing dashboards, generating data reports and supporting senior analysts in trend and variance analysis.
  • Easy Apply

    Python Data Engineer

    Company Code: DFT109

    Bangalore, Karnataka

    ₹30,000 – ₹45,000 a month

    Any Degree

    Exp 0-2 yr

  • In this role you will help to build and maintain data pipelines using Python. Key tasks include extracting data from databases, transforming datasets for analysis, and automating ETL workflows.
  • Easy Apply

    Business Intelligence Associate

    Company Code: SDI254

    Bangalore, Karnataka

    ₹22,000 – ₹32,000 a month

    Any Degree

    Exp 0-3 yr

  • Join our team as a proactive person to create Power BI and Tableau dashboards, interpret key business metrics and assist in data-driven decision-making. Regularly update reports and closely work with stakeholders to gather requirements.
  • Easy Apply

    Machine Learning Associate

    Company Code: PAI356

    Bangalore, Karnataka

    ₹35,000 – ₹50,000 a month

    Any Degree

    Exp 0-3 yrs

  • We're recruiting for a beginner ML enthusiast to support model development, data preprocessing, and model evaluation. The role includes running experiments tuning parameters and analyzing the model performance under supervision.
  • Easy Apply

    Data Quality Specialist

    Company Code: PDC870

    Bangalore, Karnataka

    ₹20000 – ₹30000 a month

    Any Degree

    Exp 0-3 yrs

  • Open positions available for skilled Data Analyst to manage and analyze large datasets, ensure data accuracy and support business decisions with meaningful insights. This role involves maintaining data system, developing reports, dashboards and improving data quality.
  • Easy Apply

    Data Science Executive

    Company Code: DDA321

    Bangalore, Karnataka

    ₹28,000 – ₹40,000 a month

    Any degree

    Exp 0-2 yrs

  • Now hiring for a self-motivated professional to handle data analysis tasks using Python and SQL. Responsibilities include preparing reports, exploring trends, and assisting in basic machine learning model development.
  • Easy Apply

    Junior Data Scientist

    Company Code: IGT135

    Bangalore, Karnataka

    ₹30,000 – ₹45,000 a month

    Any Degree

    Exp 0-2 yrs

  • Now accepting applications for fresher or early-career candidate to support data science projects. The role involves data preprocessing, model testing, and working with tools like Scikit-learn, Pandas, and Jupyter Notebooks.
  • Easy Apply

    Data Reporting Analyst

    Company Code: IZL765

    Bangalore, Karnataka

    ₹25,000 – ₹35,000 a month

    Any Degree

    Exp 0-3 yrs

  • We're seeking an entry-level analyst to design and manage dashboards in Power BI and Excel. Key duties include generating weekly reports, summarizing KPIs, and ensuring data accuracy for internal teams.
  • Easy Apply

    Highlights for Data Science Internships

    Real-Time Projects

    • 1. Gain hands-on experience by working on live industry-based applications.
    • 2. Understand real-world problem-solving through Data Science 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 mentors who 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 Science skills.
    • 2. Boost your resume with course or project completion certificates from reputed platforms.
    Book Session

    Sample Resume for Data Science (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 Python, SQL, Excel, Power BI, Tableau, Pandas, Data Cleaning, Data Visualization.

    • 3. Real-Time Projects and Achievements

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

    Top Data Science Interview Questions and Answers (2025 Guide)

    Ans:

    Data Science is the process of collecting, analyzing, and interpreting data to extract valuable insights. It combines statistics, programming, and business knowledge to solve problems and guide decisions.

    Ans:

    Core skills include Python or R programming, SQL, data visualization tools (Power BI/Tableau), statistics, machine learning, problem-solving, and strong communication for explaining insights.

    Ans:

    • Supervised Learning: Uses labeled data to train models (e.g., predicting house prices).
    • Unsupervised Learning: Works with unlabeled data to find patterns (e.g., customer segmentation).

    Ans:

    CRISP-DM stands for Cross Industry Standard Process for Data Mining. It includes six steps: Business Understanding, Data Understanding, Data Preparation, Modeling, Evaluation, and Deployment.

    Ans:

    Methods include removing rows/columns with too many missing values, replacing them with mean/median/mode, forward/backward fill, or using predictive models to estimate missing values.

    Ans:

    • Classification: Predicts discrete categories (e.g., spam or not spam).
    • Regression: Predicts continuous values (e.g., temperature, salary).

    Ans:

    Pandas, NumPy, Matplotlib, Seaborn, Scikit-learn, TensorFlow, PyTorch, and Statsmodels are widely used for data analysis, visualization, and machine learning.

    Ans:

    Overfitting happens when a model learns patterns and noise in the training data too well, causing poor performance on new data. Solutions include regularization, pruning, and cross-validation.

    Ans:

    Feature Engineering is the process of creating, modifying, or selecting features to improve model performance. Good features help algorithms better understand and predict outcomes.

    Ans:

    Metrics depend on the problem type:

    • Classification: Accuracy, Precision, Recall, F1-score, ROC-AUC.
    • Regression: MSE, RMSE, MAE, R² Score.

    Company-specific Interview Questions From Top MNCs

    1. What is Data Science vs traditional analysis?

    Ans:

    Data Science involves collecting, cleaning, analyzing, and applying data to make predictions or decisions. It encompasses fields like machine learning, big data, and visualization. Unlike traditional data analysis, which focuses on identifying patterns in past data, Data Science goes further by building models to forecast future trends.

    2. Supervised vs unsupervised learning?

    Ans:

    Supervised learning uses labeled data where the outcomes are known, allowing the model to learn to predict those results. Unsupervised learning deals with unlabeled data, where the model tries to discover hidden structures or groupings on its own.

    3. What is overfitting in models?

    Ans:

    Overfitting occurs when a model learns the training data, including noise, too well, causing poor performance on new data. It can be avoided by using simpler models, applying cross-validation techniques, or employing regularization methods.

    4. Explain bias-variance tradeoff.

    Ans:

    Bias is the error caused by incorrect assumptions in the model, while variance refers to sensitivity to fluctuations in the training data. An effective model balances bias and variance to achieve good accuracy on both training and unseen data.

    5.Python vs R in Data Science?

    Ans:

    Python is widely used for building machine learning models and handling large datasets, making it versatile. R excels in statistical analysis and rapid data visualization. Python serves as a general-purpose language, while R is more specialized for statistics.

    6. How to handle missing data?

    Ans:

    Missing data can be addressed by removing affected rows, imputing missing values with mean or median, or using algorithms that can work with incomplete data. The choice depends on the quantity and nature of the missing information.

    7. Define feature engineering.

    Ans:

    Feature engineering involves creating or modifying input variables to improve a model’s predictive power. It helps the model better capture important patterns in the data.

    8. Classification vs regression tasks?

    Ans:

    Classification predicts discrete categories, such as “spam” or “not spam,” while regression predicts continuous numerical outcomes like prices or temperatures.

    9. What is a confusion matrix?

    Ans:

    A confusion matrix is a table that compares predicted classifications with actual results, detailing true positives, false positives, true negatives, and false negatives to evaluate model performance.

    10. Define precision and recall?

    Ans:

    Precision measures the accuracy of positive predictions and how many predicted positives were actually correct. Recall measures how many actual positives the model successfully identified.

    11.Importance of cross-validation?

    Ans:

    Cross-validation assesses a model’s ability to generalize by testing it on different subsets of data. It helps prevent overfitting and provides a more reliable estimate of performance.

    12.Purpose of regularization?

    Ans:

    Regularization adds a penalty for complexity to the model, encouraging simpler solutions that generalize better and reducing the risk of overfitting.

    13. What is a decision tree?

    Ans:

    A decision tree splits data into branches based on conditions, like a flowchart, leading to decisions or predictions at the leaves. It simplifies complex decision-making processes.

    14. Bagging vs boosting methods?

    Ans:

    Bagging builds multiple models independently and combines their outputs to improve accuracy, while boosting builds models sequentially, each focusing on correcting the errors of the previous ones to enhance performance.

    15. Define dimensionality reduction.

    Ans:

    Dimensionality reduction involves reducing the number of features in a dataset while retaining important information. It speeds up modeling, reduces overfitting, and improves model efficiency.

    1. What is Data Science?

    Ans:

    Data Science is the discipline of extracting insights and patterns from data to support decision-making. It blends computing, mathematics, and domain expertise to solve real-world problems effectively.

    2. Key components of Data Science?

    Ans:

    Core components include data collection, cleaning, analysis, model development, and visualization. It also involves tools like Python, SQL, and machine learning methods.

    3. Explain confusion matrix.

    Ans:

    A confusion matrix is a table that displays correct and incorrect predictions across classes, helping evaluate the accuracy and effectiveness of a classification model.

    4.Model performance metrics?

    Ans:

    Common metrics include accuracy, precision, recall, and F1 score, each offering different perspectives on a model’s prediction quality.

    5. What is feature engineering?

    Ans:

    Feature engineering is the process of creating or refining input variables to enhance a model’s predictive performance.

    6.How to handle missing data?

    Ans:

    Missing data can be addressed by imputing values (mean, median, or mode), removing incomplete rows, or predicting missing entries using machine learning techniques.

    7.What is overfitting and how can it be prevented?

    Ans:

    Overfitting happens when a model memorizes training data, including noise, leading to poor generalization. It can be avoided by simplifying models, using cross-validation, or applying regularization.

    8. What is a random forest?

    Ans:

    A random forest is an ensemble of decision trees that work together to boost prediction accuracy using majority voting for classification and averaging for regression.

    9.Steps in a Data Science project?

    Ans:

    Steps include defining the problem, gathering and cleaning data, exploring data, building and evaluating models, and presenting results through reports or visualizations.

    10. How do you verify the quality of your data?

    Ans:

    Data quality is verified by checking for missing values, duplicates, outliers, correct data types, and logical consistency to ensure reliable model outcomes.

    1. What does a data scientist do in a company?

    Ans:

    A data scientist helps organizations make informed decisions by collecting data, identifying patterns, building predictive models, and sharing actionable insights with various teams.

    2. How is structured data different from unstructured?

    Ans:

    Structured data is organized in rows and columns, like in databases or Excel sheets. Unstructured data includes emails, videos, images, and text, which lack a fixed format and are harder to analyze.

    3. What are the phases of a data science project?

    Ans:

    A data science project usually follows these steps:

    • Understand the problem
    • Collect data
    • Clean the data
    • Explore and analyze it
    • Build a model
    • Test it
    • Share the results

    4. How do you handle missing data?

    Ans:

    Missing data can be addressed by removing affected rows, filling gaps with averages or modes, or using algorithms designed to manage missing values automatically.

    5.What is supervised vs unsupervised learning?

    Ans:

    Supervised learning works with labeled data, where outcomes are known (e.g., categories or prices). Unsupervised learning uses unlabeled data to discover hidden patterns or groupings.

    6. What is cross-validation and why is it used?

    Ans:

    Cross-validation is a method to check if your model works well on different data. To achieve a fair result, it divides the data into sections and runs the model across numerous tests.

    7. What does overfitting mean, and how can it be prevented?

    Ans:

    A model is deemed to be overfit when it learns too much from training data, including noise, and performs badly on fresh data. To avoid it, you can simplify the model, use more data, or apply techniques like regularization.

    8. What is a confusion matrix and what does it show?

    Ans:

    A confusion matrix is a table that shows how well your classification model performed. It includes:

    • True Positives (correct positives)
    • False Positives (wrongly predicted as positive)
    • True Negatives (correct negatives)
    • False Negatives (wrongly predicted as negative)

    9. How do you pick the most important features from data?

    Ans:

    You can use methods like correlation, feature importance from models (like Random Forest), or remove features one by one to see which ones matter most.

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

    Ans:

    KNN looks at the 'K' closest data points to the one you're trying to predict. It then gives the new point a value or label based on what most of those neighbors are.

    11. How does a decision tree algorithm work?

    Ans:

    To divide the data, a decision tree provides a series of yes/no questions. At each step, it chooses the question that best separates the data into groups.

    12. What is Random Forest and how is it better than a single decision tree?

    Ans:

    Random Forest builds a great deal of decision trees and aggregates their output. It’s more accurate and stable because it reduces errors and avoids overfitting.

    13. What is Support Vector Machine (SVM) and how is it used?

    Ans:

    SVM is a model that draws a line (or boundary) to separate data into classes. It works well for both simple and complex problems like face detection or email spam filtering.

    14. What’s the difference between bagging and boosting?

    Ans:

    Indexing in MongoDB helps find data faster. Bagging builds multiple models independently and combines their results to improve accuracy. Boosting builds models one after another, each learning from the mistakes of the last, to make the final model stronger.

    15. How does the Naive Bayes algorithm work?

    Ans:

    Indexing in MongoDB helps find data faster. Naive Bayes predicts outcomes using probability. It assumes features are independent and uses past data to calculate the chance of something happening (like spam detection).

    1. What does overfitting mean, and how can we stop it?

    Ans:

    Overfitting occurs when a model takes too much details from the training data, includes errors and noise. It works well on training data but performs poorly on new data. To prevent it, we can use simpler models, more data, or methods like regularization and cross-validation.

    2. What is cross-validation used for?

    Ans:

    Cross-validation is a way to test how well a model works on new data. We split the data into parts, train on some, and test on the rest. It helps make sure the model isn’t just working well by chance.

    3. What are the steps in the data science process?

    Ans:

    The main steps are:

    • Understanding the problem
    • Collecting data
    • Cleaning and preparing it
    • Exploring it
    • Building a model
    • Testing it
    • Sharing results

    4. What does feature engineering mean?

    Ans:

    Feature engineering means creating new useful data columns from existing ones. It helps the model understand the data better. For example, combining “date of birth” and “current date” to make a new “age” column.

    5. Can you explain a confusion matrix simply?

    Ans:

    A confusion matrix is a table used to see how well a model is predicting. It shows the correct and incorrect guesses made by the model. It helps us understand where the model is going wrong.

    6. How are precision and recall different?

    Ans:

    Precision is about how many of the model’s positive predictions were actually correct. Recall is about how many of the actual positives the model was able to find. Precision is about accuracy; recall is about coverage.

    7. What is a decision tree and how does it make decisions?

    Ans:

    A decision tree is like a flowchart. It asks questions and splits data into parts based on answers. It keeps doing this until it reaches a final decision. It’s easy to understand and follow.

    8. Why do we use regularization in models?

    Ans:

    Regularization helps keep the model simple and avoid overfitting. It adds a small penalty for using too many features or complex rules. This makes the model better on new, unseen data.

    9. What is PCA (Principal Component Analysis) used for?

    Ans:

    PCA helps reduce the number of features in data by combining them into fewer, more useful ones. It keeps the most important information and removes noise. It makes analysis faster and simpler.

    10. What is time series analysis?

    Ans:

    Time series analysis is used to study data over time, like sales per month or weather each day. It helps us see patterns, trends, and make future predictions. It’s often used in finance and forecasting.

    11. What are ensemble methods in machine learning?

    Ans:

    Ensemble methods combine several models to get better results than one model alone. Examples include Random Forest and Gradient Boosting. They help reduce errors and improve accuracy.

    12. What is an ROC curve and why is it important?

    Ans:

    An ROC curve shows how well a classification model can separate different classes. It compares true positives and false positives at different settings. A good model has a curve closer to the top-left corner.

    13. What does data wrangling mean?

    Ans:

    Data wrangling means cleaning, changing, and organizing messy data so it’s ready for analysis. It includes fixing missing values, correcting formats, and removing errors.

    14. What is NLP?

    Ans:

    NLP (Natural Language Processing) helps computers understand and work with human language. It’s used in chatbots, language translation, and analyzing text like customer reviews.

    15. What is clustering and which methods are commonly used?

    Ans:

    Clustering is grouping data points that are similar to each other. It’s used when we don’t have labels for the data. Common methods include K-Means, DBSCAN, and Hierarchical Clustering.

    1. What is meant by backpropagation in machine learning?

    Ans:

    Backpropagation is a way for a computer to learn from its mistakes. It adjusts the weights in a neural network by checking the error between the actual and expected output. It moves backward through the model to improve accuracy over time.

    2. How is a crossover different from a straight-through in neural networks or algorithms?

    Ans:

    Crossover is used in genetic algorithms where two data points mix and produce new ones. Straight-through is a method where values are passed directly through during training, often used in neural networks. They work in different ways to improve models.

    3. What does SMTP stand for and what does it do?

    Ans:

    SMTP means Simple Mail Transfer Protocol. It is the protocol or system that allows emails to be sent over the internet between computers. It only works for sending, not receiving, emails.

    4. What is clustering support in data analysis?

    Ans:

    Clustering means grouping similar data points together. Clustering support refers to the system or tool that helps in creating and managing these groups. It helps find patterns in large data sets.

    5. What is IEEE’s role in computer networking?

    Ans:

    IEEE (Institute of Electrical and Electronics Engineers) creates the standards that make sure computers and devices can connect and talk to each other. For example, Wi-Fi follows IEEE standards like 802.11.

    6. Can you explain what machine learning is?

    Ans:

    A technique called machine learning enables computers to acquire knowledge from data without explicit instructions. They look at patterns in data and use them to make decisions or predictions.

    7. What does function overloading mean?

    Ans:

    Function overloading means using the same function name with different types or numbers of inputs. The program chooses the right version of the function based on how it's called.

    8. What should I know about Python language?

    Ans:

    Python is a simple, easy-to-read programming language used for web development, data science, automation, and more. It's popular because it's beginner-friendly and has many useful libraries.

    9. What is a tunneling protocol in computer networks?

    Ans:

    A tunneling protocol allows one type of network data to pass through another type. It wraps the data in a new format so it can be safely sent through the internet, like creating a secure path.

    10. What are DDL, DML, and DCL in SQL?

    Ans:

    • DDL (Data Definition Language): Used to create or change tables (like CREATE, ALTER).
    • DML (Data Manipulation Language): Used to add, update, or delete data (INSERT, UPDATE, DELETE).
    • DCL (Data Control Language): Used to control access to data (GRANT, REVOKE).

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    Top Data Science Job Opportunities for Freshers

    • 1. Junior Data Scientist 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 Science Training in HSR Layout

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    WFH Jobs (Remote)

    Why Data Science is the Ultimate Career Choice

    High Demand

    Companies prefer multi-skilled professionals who 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 Science 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 Science Certification
    • Microsoft Power BI Certification
    • IBM Data Science Certification
    • SAS Science Certification
    • Tableau Specialist Certification
    • AWS Data Science Certification
    • CAP Certification

    Yes, Data Science Certification greatly boosts your chances of getting a job. It proves that you’ve gained the right skills and practical knowledge, which makes you stand out to employers and increases your chances of getting hired quickly.

    It usually takes 3 to 6 months to complete a Data Science course and receive your certification. The time may vary depending on whether you choose regular, weekend, or fast-track batches.

    Certification proves that you have real knowledge in data science tools and techniques. It adds value to your resume, improves your job chances, and helps you stand out from other candidates.

    • Know what topics will be in the exam
    • Use books or videos to learn each topic
    • Practice by working with sample data
    • Learn how to use tools like Excel and charts
    • Take practice tests to check your progress

    Complete Your Course

    A Downloadable Certificate in PDF Format, Immediately Available to You When You Complete Your Course.

    Get Certified

    A Physical Version of Your Officially Branded and Security-Marked Certificate.

    Get Certified

    Lowest Data Science Fees in HSR Layout

    Affordable, Quality Training for Freshers to Launch IT Careers & Land Top Placements.

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    How is ACTE's Data Science Training in HSR Layout Different?

    Feature

    ACTE Technologies

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    Affordable Fees

    Competitive Pricing With Flexible Payment Options.

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    Industry Experts

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

    Theoretical Class With Limited Practical

    Updated Syllabus

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

    Outdated Curriculum With Limited Practical Training.

    Hands-on projects

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

    Basic Projects With Limited Real-world Application.

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    Industry-recognized Data Science Certifications With Global Validity.

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    Placement Support

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    Strong Ties With Top Tech Companies for Internships and Placements

    No Partnerships, Limited Opportunities

    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 Science Course FAQs

    1. What do I need to become a Data Scientist?

    To become a Data Scientist, you need a good understanding of math, statistics, and programming (especially Python or R). After completing this course, You should also be skilled in data analysis, machine learning and working with databases.
    A career in Data Science opens doors to high-impact roles in analytics, AI and decision-making. With growing demand across industries, professionals can steadily move into senior, specialized, and leadership positions.

    This Course covers key tools and techniques such as:

    • Python and R programming languages
    • Libraries like Pandas, NumPy, Matplotlib, and Seaborn
    • SQL for handling databases
    • Machine Learning using Scikit-learn
    • Data visualization with Power BI or Tableau
    • Basics of Big Data tools like Hadoop and Spark (optional)
    Yes, the training includes live projects that reflect real-world business challenges. These projects help you practice your skills by building models, analyzing data, and solving problems just like a data professional would in a job.
    Yes, we offer complete resume building support. You’ll get help creating a resume that highlights your data science skills, tools you’ve learned, and hands-on project experience—making you job-ready.
    Anyone who is interested in learning how to work with data can join a Data Science course. Whether you are a student, a fresher, a working professional, or someone from a non-technical background, you are welcome. There are no strict entry rules, as the course starts from the basics.
    You do not need a specific degree to become a Data Scientist. While having a graduation in any field is helpful, what really matters is your practical knowledge and problem-solving ability. Many successful data scientists come from diverse educational backgrounds.
    You don’t need to know web development for a Data Science course. The focus is on analyzing data, using tools like Python, Excel, and Power BI, and building machine learning models not on creating websites or apps.
    • Basic understanding of maths and logic
    • Interest in learning new technologies
    • Familiarity with spreadsheets (like Excel)
    • Willingness to learn programming (Python will be taught)

    1. What kind of Data Science placement support will I get?

    After completing the Data Science course, you will receive full placement support. This includes help with preparing your resume, mock interviews, and job referrals to hiring companies. The goal is to make you job-ready and confident during real interviews.

    2. Will I get projects for my resume?

    Yes, you will get hands-on projects during your training. These projects are based on real-time data and industry problems, which you can proudly add to your resume. They help you show your practical skills to employers.

    3. Can I apply to top IT companies after the Data Science Training?

    Freshers are fully supported throughout the course. Even if you have no prior experience, you’ll be guided step by step. The course content is beginner-friendly, and the placement team will help you apply to both startup and top IT companies.

    4. Is support available for freshers?

    Resume building with expert tips, Mock interviews for confidence, Access to job openings and referrals, Guidance for freshers to start their first job.
    Yes, after completing the Data Science training and projects, you’ll receive a recognized certificate that showcases your skills.
    Yes, it’s a great option for both beginners and professionals looking to switch to a data-focused role.
    Knowing Python, Excel, or statistics is helpful but not mandatory, as these topics are usually taught in the course.
    It prepares you with in-demand tools and project experience, making you stand out in the competitive job market.
    The course teaches data analysis, model building, data wrangling, and creating insights from large datasets.

    1. Will I get job support after the Data Science course?

    Yes, you will get full job support after completing the Data Science course. This includes help with resume writing, mock interviews, and job referrals to hiring companies. Many training centers also provide career guidance to help you get placed in a good role.
    Course fees may differ from one training center to another based on factors like location, trainer experience, course duration, and learning materials provided. Some centers may include extra services like live projects, one-on-one mentorship, or lifetime access to recordings.
    The course is usually priced in a way that beginners can afford and benefit from it. However, fees might not be the same in every city, as living costs and demand may vary. It's always good to compare what each center is offering for the price.
    Yes, we charge the same fee in every city. Whether you live in a big city or a small town, the price and training quality stay the same. Everyone should get the same chance to learn.
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