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Best Data Analytics Course In Kolhapur With Placement

100% Placement Assistance | Live Online Sessions

3 Month Personalized Live Data Analytics Training is taught by industry experts in a comprehensive & question-oriented format.

Enroll Before: 04th January, 2025

2000+

Students Trained

100%

Placement Assistance

04 January, 2025

Start Date

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EMI Available

7:30 AM - 9:30 AM

Lecture Timings ( IST )

Suraj Patil
Suraj Patil
21. January, 2023.
Best platform for Software Testing for Professional Work Experience.
Prathmesh Belsare
Prathmesh Belsare
18. January, 2023.
Excellent teaching staff and all teachers are very good and friendly and best platform to develop our career, Thank you so much Bug spotter team.
vikas jadhav
vikas jadhav
18. January, 2023.
Best training institute ever. Great staff with good support and lot more about career guidance. Very detailed and comprehensive teaching.
abhijeet gadekar
abhijeet gadekar
18. January, 2023.
Excellent teaching staff everyone treat you as a friend..Bugspotter is good platform to change your life from zero to hero.....
Vijay Mahale
Vijay Mahale
18. January, 2023.
All the teachers at Buaspotter teach well, I thank them from the bottom of my heart.
Ashwini Deshmukh
Ashwini Deshmukh
18. January, 2023.
One of the best software Testing class.

Key Highlights Of The Data Analyst Course

Get familiar with our online Data Anaylst course syllabus.

Syllabus for Data Analyst Course

Our hybrid online Data Analyst  course is designed to teach students the basics to the advanced level concepts of Data Analyst with practice assignments and offline in-class projects which helps them to get placed in MNC’s.

Data Analytics Course In Kolhapur

Term 1

In this term, you will learn how to ace Data Analytics

  • Overview of Data Analytics
  • Role of a Data Analyst
  • Introduction to Data-Driven Decision Making
  • Tools and Technologies used in Data Analysis

Term 2

In this term, you will learn how to ace Data Analytics

  • Intro to Power BI
  • Data Acquisition & Transform.
  • Modeling Basics
  • Visualization Techniques
  • Formatting & Custom Visuals 
  • Advanced DAX             
  • Power Query M Language
  • Power BI Service              
  • Data Refresh and Gateways    
  • Power BI Administration     
  • Dataflow                  
  • Paginated Reports             
  • Performance Optimization      
  • Power BI Embedded         
  • Final Project and Review 

Term 3

In this term, you will learn how to ace Data Analytics

Data Collection And Data Wrangling

  • Data Sources and Types
  • Data Collection Techniques
  • Data Cleaning and Preprocessing
    • Handling Missing Data
    • Data Transformation and Normalization
    • Outlier Detection and Treatment
  • Introduction to Data Wrangling Tools (e.g., Excel, SQL, Python)

Descriptive Statistics and Data Visualization

  • Measures of Central Tendency (Mean, Median, Mode)
  • Measures of Dispersion (Range, Variance, Standard Deviation)
  • Data Distribution (Normal, Skewness, Kurtosis)
  • Introduction to Data Visualization
    • Charts and Graphs (Bar, Pie, Line, Histogram)
    • Dashboarding (using Power BI, Tableau)

Data Visualization Best Practices

Term 4

In this term, you will learn how to ace Data Analytics

  • Excel Basics: Formulas, Functions, and Pivot Tables
  • Data Analysis Tools in Excel
  • Performing Statistical Analysis in Excel
  • Creating Data Models in Excel
  • Advanced Excel Functions (VLOOKUP, INDEX-MATCH)

Term 5

In this term, you will learn how to ace Data Analytics

  • Introduction to Databases and SQL
  • Basic SQL Queries
    • SELECT, INSERT, UPDATE, DELETE
  • SQL Joins and Subqueries
  • Data Aggregation and Grouping
  • Advanced SQL Functions (Window Functions, CTEs)
  • SQL for Data Analysis: Case Studies

  • Introduction to Python Programming
  • Python Libraries for Data Analysis (Pandas, NumPy, Matplotlib, Seaborn)
  • Data Manipulation with Pandas
    • DataFrames, Series, Indexing, and Filtering
  • Exploratory Data Analysis (EDA)
    • Descriptive Statistics, Correlation Analysis
  • Data Visualization in Python
    • Creating Visualizations with Matplotlib and Seaborn

  • Probability Theory
  • Hypothesis Testing
    • t-tests, ANOVA, Chi-Square Test
  • Regression Analysis
    • Simple Linear Regression
    • Multiple Regression
    • Logistic Regression
  • Introduction to Time Series Analysis

Term 6

In this term, you will learn how to ace Data Analytics

  • The Importance of Data Storytelling
  • Techniques for Effective Data Communication
  • Creating Reports and Dashboards
  • Presenting Data Analysis Results to Stakeholders

  • Real-World Data Analysis Project
  • Problem Identification and Data Collection
  • Data Cleaning and Analysis
  • Visualization and Reporting

Presentation of Findings

  • Building a Data Analyst Portfolio
  • Resume Writing and Interview Preparation
  • Networking and Industry Best Practices
  • Job Search Strategies and Career Pathway

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HOURS OF LIVE LEARNING
0 +
Live Projects
0 +
HOURS OF VIDEO LEARNING

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Detailed Course Syllabus & Trainer List

Join our comprehensive Data Analytics course and qualify for top industry roles, including:

Power BI Developer

  • Master the art of creating interactive dashboards and reports with Power BI.
  • Gain the skills to transform raw data into meaningful insights.
  • Become a key player in data-driven decision-making processes.

Data Analyst

  • Learn to analyze complex datasets, identify trends, and make data-driven recommendations.
  • Develop expertise in tools like Excel, SQL, and Python for effective data analysis.
  • Step into a role that is at the heart of business strategy and performance.

MIS Analyst

  • Specialize in managing and interpreting data to improve business efficiency.
  • Use tools like Excel and SQL to generate and analyze reports for management.
  • Become the go-to expert for management information systems in your organization.

Process Excellence Analyst

  • Focus on improving business processes through data analysis and optimization.
  • Gain skills in identifying process bottlenecks and recommending solutions.
  • Play a crucial role in enhancing productivity and driving organizational success.

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Data Analytics Course in Kolhapur

Introduction to Data Analytics

Data Analytics involves analyzing raw data to extract valuable insights that guide decision-making. It helps organizations uncover patterns, trends, and correlations to make informed, data-driven choices.

Why Data Analytics Matters

  • Understand Customer Behavior: Personalize products/services.
  • Optimize Operations: Improve efficiency and reduce costs.
  • Predict Trends: Forecast market changes and consumer actions.

Key Components of Data Analytics

  1. Data Collection: Gathering data from various sources.
  2. Data Cleaning: Ensuring data accuracy and consistency.
  3. Data Analysis: Using tools like Excel, SQL, Python, and R to identify patterns.

Data Analytics Process

  1. Collect Data
  2. Clean and Prepare Data
  3. Analyze Data (using statistical or machine learning techniques)
  4. Create Visualizations (charts, graphs)
  5. Interpret and Present Insights

Role of a Data Analyst

Data analysts transform raw data into actionable insights using tools like Excel, SQL, Python, Tableau, and Power BI to help businesses make informed decisions.

Applications of Data Analytics

  • Healthcare: Improve patient care.
  • E-commerce: Optimize pricing and customer experience.
  • Finance: Detect fraud and manage risks.
  • Marketing: Enhance campaigns and customer segmentation.

How to Get Started

  • Take Courses: Learn through platforms like Coursera or Udemy.
  • Gain Experience: Work on real-world datasets.
  • Network: Join data analytics communities for mentorship.

Data Analytics is a vital skill across industries, enabling smarter, data-driven decision-making.

data science course in pune

Eligibility

for Data Analyst Course​

Eligibility and Requirements for the Program

  • Graduate Background: Open to all graduates; no specific field of study required.
  • Interest in Coding: No prior coding experience needed. A willingness to learn programming languages like Python, R, and SQL is essential.
  • Time Commitment: Dedicate 3-4 hours per day for lectures, hands-on practice, and learning.
  • No Prior Experience: This program is designed for beginners, starting from the basics.
  • Curiosity & Problem-Solving: A curious mind and an analytical approach will set you up for success.

FAQs

Frequently asked questions

1. What Is the Difference Between Data Analytics and Data Science?

Data Analytics focuses on interpreting existing data to make actionable decisions, while Data Science involves advanced techniques like machine learning and data modeling to create predictive models.

2. Do I Need to Have a Background in Statistics for Data Analytics?

A basic understanding of statistics helps, but most Data Analytics courses will teach the necessary statistical concepts as part of the curriculum, even for beginners.

3. What Are the Common Challenges Faced During a Data Analytics Course?

Some challenges include mastering data cleaning techniques, dealing with large datasets, and learning coding languages like Python and R, but with consistent practice, these can be overcome.

4. Are There Any Prerequisite Courses Before Taking a Data Analytics Course?

No specific prerequisites are required, though familiarity with basic mathematics, particularly statistics, and Excel will be helpful. The course will start with the basics.

5. How Do I Build a Portfolio After Completing a Data Analytics Course?

A portfolio can be built by working on real-world projects, creating dashboards, analyzing datasets, and showcasing your ability to solve business problems using data analytics tools and techniques.

6. Can Data Analytics Help Small Businesses?

Yes, Data Analytics can be incredibly useful for small businesses. It helps them optimize operations, understand customer behavior, track sales trends, and make more informed, data-driven decisions.

How much can a data analyst earn?

Data analyst salaries vary based on factors like location, experience, and skills. In the U.S., salaries typically range from $50,000 to $80,000 per year. Experienced analysts and those with specialized skills can earn more. Salaries may differ across countries and industries.

Data Engineer

Roles and Responsibility for Data Analyst

Roles and Responsibility for Data Analyst

  1. Data Collection
    Gather data from various sources such as databases, surveys, APIs, and online platforms to build a comprehensive dataset for analysis.

  2. Data Cleaning
    Address issues like duplicates, missing values, and inaccuracies by cleaning and transforming the data into a consistent, reliable format.

  3. Data Analysis
    Apply statistical techniques and tools to uncover patterns, trends, and meaningful insights that can drive business decisions.

  4. Data Visualization
    Create visual representations such as graphs, charts, and dashboards to make findings easily understandable and actionable for stakeholders.

  5. Reporting
    Present findings through detailed reports or presentations, highlighting key insights and offering recommendations to support business strategies.

  6. Building Reports and Dashboards
    Design and automate reports and dashboards for continuous data tracking, allowing real-time monitoring of key metrics and performance indicators.

  7. Collaboration
    Collaborate with cross-functional teams (such as marketing, product, and operations) to provide data-driven recommendations and support informed decision-making.

  8. Data Interpretation
    Translate complex data into clear, actionable insights that guide strategic decisions and improve business outcomes.

Course Duration

Data Analyst in 3-5 Months?

Can I Learn Data Analysis in 4-5 Months?

Yes, it’s absolutely possible to learn Data Analysis in 4-5 months with strong focus and commitment. By dedicating 3-4 hours daily to studying, practicing, and working on hands-on projects, you can develop the necessary skills. Completing real-world projects will not only reinforce your learning but also help you build a portfolio that will impress potential employers.

With consistency, a clear study plan, and a focus on practical application, you can be job-ready by the end of 4-5 months.

Enroll Now and get 5% Off On Course Fees

Enroll Now and get 5% Off On Course Fees

Enroll Now and get 5% Off On Course Fees

Enroll Now and get 5% Off On Course Fees