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Finest Data Analytics Course in Pune! Join Data Analytics Classes in Pune Now

Seeking a career upliftment in the trending world of technology, tried different careers but didn’t get desired results and lost alot of money. Here we are with our Data Analytics Course in Pune at Prime point, providing 100% Placement support. Students pursuing our Data Analytics classes in Pune have seen exponential growth in their careers. This training course is full package providing Interview Preparation expert sessions for technical, managerial and HR Rounds, ATS friendly Resume workshops, Linkedin optimization Sessions, With live project mentorship, stud material, and dedicated learning management systems for each course. Prime Point has already placed 562+ Students in the fields of data analytics and also conducted more than 182+ Placement drives in the last two years along with 58+ Walk in interview drives. 

Prime Point is ISO certified and NASSCOM accredited and trusted by 10000+ students around the globe. We have expert mentors who are industry experts and have worked on top-level projects from top-level MNCs and A-grade projects. Mentorship from these experts will help students know and identify solutions to the challenges coming from a rapidly evolving world of technology. At Prime Point, each student will pursue training in experiential-based learning and case studies for promoting skills like brainstorming and technical interactivity

Features of Data Analytics Training in Pune with Placement

Prime Point is the best IT Training institute providing professional training with 100% Placement support. Our interview preparation makes it easy for all the candidates to effortlessly clear all the interview rounds. Prime Point Conduct LinkedIn Optimization Sessions, in the digital age, it is very important for all the candidates that their respective profiles reach the recruiter’s utmost priority. These sessions are conducted by the experts and boost the visibility of their LinkedIn profiles to recruiters. 

Then comes the ATS Friendly Resume sessions that have helped students of our previous batches of Data Analytics Classes in Pune with Placement. ATS Friendly Resumes resulted in a clearance rate of 82% directly to interview rounds from resume rounds. Then comes the third step which is Mock Interview Preparation, where students are told about all the important do’s and don’t in an interview. Then the candidates appear in the mock interviews of Technical, managerial, and Human resource rounds in data analytics course in pune. We Also have Data Science Course in Pune and Artificial Intelligence Course in Pune, both with placement support similar to Data Analyst Course in Pune.

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NASSCOM Accredited

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100% Placement Support

Internship Letter

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ISO Certified 9001:2015

Live Project Mentorship

Mock Interviews

Online & Classroom Classes

ATS Resume Sessions

LinkedIn Optimization

Syllabus for Data Analytics Course in Pune with Placement

  • MS Office Versions (Similarities and Differences)
  • Interface (Latest Available Version): A complete walkthrough of the interface of the latest MS Office version, including the ribbon layout, tabs like Home, Insert, Page Layout, and others. It also explores the backstage view (accessed via the File tab) where users can manage documents, print, and customize settings. Emphasis is given to changes in the latest interface, such as the addition of AI-powered tools and better accessibility options.
  • Rows and Columns:
    Excel’s fundamental structure consists of rows and columns, forming a grid where data is stored.
  • Keyboard Shortcuts for Easy Navigation: Mastering keyboard shortcuts can save hours of work.
  • Data Entry (Fill Series):
    Data entry becomes seamless with the Fill Handle, a small square at the bottom-right of a selected cell. It enables quick creation of data patterns such as sequential numbers, days, months, or custom lists. This module also covers how to define custom lists and manage series options for specific use cases.
  • Find and Select:
    The Find feature helps locate specific text, numbers, or formats in a worksheet. Advanced features include the ability to search within formulas or across entire workbooks. The Select functionality allows selecting all cells with specific criteria, such as blanks, visible cells, or errors, making data cleanup much faster.
  • Clear Options:
    Clearing data effectively is essential when reusing worksheets. Learn to clear content, formatting, comments, or hyperlinks individually without deleting the entire cell. This avoids accidental data loss while ensuring clean, reusable sheets.
  • Ctrl+Enter: A lesser-known but powerful shortcut, Ctrl+Enter, enables simultaneous data entry across multiple selected cells. This is especially useful for repetitive tasks, like entering a common value or formula across rows or columns.

Font, Alignment, Clipboard (Copy, Paste Special): Formatting transforms raw data into readable and visually appealing content. Learn to change font styles, sizes, and colors for better emphasis. Alignment options, such as centering, wrapping text, and merging cells, enhance readability. Clipboard tools like Paste Special allow copying specific aspects (e.g., only values or formatting) of data to maintain consistency and avoid manual adjustments in data analytics training in Pune.

  • Referencing, Named Ranges, and Uses:
    Referencing is a critical concept for building formulas. Relative references (e.g., A1) adjust automatically when copied, while absolute references (e.g., $A$1) remain fixed. Mixed references (e.g., A$1 or $A1) combine both. Named ranges allow assigning descriptive names to cell ranges (e.g., SalesData), making formulas easier to understand and manage. This section also explains best practices for referencing in large datasets.
  • Arithmetic Functions:

Excel’s arithmetic functions (SUM, COUNT, AVERAGE, etc.) streamline calculations. Advanced variants like SUMIF and COUNTIFS enable conditional calculations (e.g., summing sales above a certain threshold). Practical examples include calculating totals, averages, or counts based on specific conditions.

  • Logical Functions (IF, AND, OR, NESTED IFs, NOT, IFERROR):
    Logical functions help create decision-making workflows. For example, the IF function executes specific actions based on conditions (=IF(A1>50,"Pass","Fail")). Combining IF with AND or OR allows handling multiple criteria. Nested IF statements build complex logic (e.g., grading systems). The IFERROR function ensures clean outputs by replacing errors (e.g., #DIV/0!) with custom messages.
  • Usage of Mathematical and Logical Functions Together: Combining logical and arithmetic functions enhances problem-solving. For instance, calculating bonuses only for employees meeting sales targets involves IF and SUM.
  • LOOKUP, VLOOKUP, HLOOKUP:
    Lookup functions search for data within a specific range. VLOOKUP looks vertically, while HLOOKUP searches horizontally. Examples include fetching prices from a product list or finding employee details from a database.
  • INDEX, INDEX with MATCH:
    INDEX retrieves values from a specified position, while MATCH identifies the position of a value. Combining them overcomes the limitations of VLOOKUP (e.g., backward searches). Practical use cases include dynamic data retrieval from large datasets.
  • INDIRECT, OFFSET: INDIRECT dynamically references cells based on text input (e.g., INDIRECT("A"&B1) points to cell A5 if B1 contains 5). OFFSET creates dynamic ranges by offsetting from a starting point, ideal for charts or reports requiring auto-updates.

Data Validation with Dependent Dropdowns:
Learn to restrict data entry using validation rules. Dependent dropdowns (e.g., selecting a state after choosing a country) ensure accurate and hierarchical data entry.

  • Date Functions:
    Work with dates efficiently using functions like DATE (to create dates), DAY, MONTH, and YEAR (to extract parts). Calculate durations using DATEDIF or project deadlines with EOMONTH.
  • Text Functions: Manipulate text effortlessly with LEFT, RIGHT, MID (to extract substrings), SEARCH (to locate text), and CONCATENATE or TEXTJOIN (to combine text). Flash Fill automates formatting, such as splitting names or formatting phone numbers in data analytics Training in Pune.
  • Sorting and Filtering Data:
    Sorting sales data by region or employee performance by score. Filtering narrows down data by specific criteria, like showing only sales above $10,000. Advanced filters allow for complex conditions using formulas, ensuring better data management.
  • Advanced Filtering:
    This feature allows the extraction of unique values or filtering based on multiple complex conditions. For instance, filtering sales data for specific months across multiple regions provides actionable insights.
  • Subtotal and Grouping: Subtotals automate calculations (e.g., sums, averages) for categorized data. Grouping organizes rows or columns into collapsible sections, simplifying navigation in extensive datasets. For example, you can group yearly sales data by quarters or months.
  • Creating and Customizing Charts:
    Charts transform data into visually appealing graphs, making it easier to identify patterns. Common chart types include bar, line, pie, and scatter plots. Learn how to format charts by changing styles, colors, and layouts to match specific business or academic needs. This module also covers advanced customization, like adding trendlines and secondary axes.
  • Pivot Tables:
    Pivot tables summarize large datasets dynamically. For example, a sales dataset can be summarized to show totals per region, product, or salesperson. Learn to add calculated fields and create multiple levels of grouping for deeper analysis.
  • Slicers and Timeline Filters: These interactive tools enhance pivot table usability. Slicers filter data by categories, while Timelines filter by date ranges, providing quick and intuitive data exploration.
  • Rules and Applications:
    Conditional formatting highlights data based on specific conditions. For instance, cells can turn red if sales fall below a target or green if goals are achieved. Advanced rules include formatting based on formulas, like highlighting the top 10 performers or the bottom 5%.
  • Data Bars, Color Scales, and Icon Sets: Visual elements like data bars show relative values within a range, while color scales provide gradients to represent data intensity (e.g., green for high values, red for low). Icon sets use symbols to display performance, such as arrows or traffic lights.
  • Recording Macros:
    Macros automate repetitive tasks, such as formatting reports or generating weekly summaries. 
  • Running Macros:
    Once recorded, macros can be executed using a shortcut or button. This module explains how to assign macros to buttons or ribbon options for quick access.
  • Visual Basic for Applications:
    Learn to edit recorded macros, write simple scripts, and debug common errors.
  • Protecting Sheets and Workbooks:
    Secure your data by locking sheets or workbooks with passwords. This ensures unauthorized users can’t edit or delete critical data.
  • Restricting Cell Editing:
    Protect specific cells or ranges while allowing others to be edited. For instance, lock formula cells while keeping input fields open for user data entry.
  • File Encryption and Backup: Encrypt workbooks with passwords for added security. Additionally, learn to back up data by saving files in OneDrive or other cloud storage solutions in Data Analytics Training In Pune.
  • Removing Duplicates:
  • Text to Columns
  • Find and Replace for Data Cleanup: This tool efficiently standardizes data. For instance, replacing inconsistent spellings (e.g., "NYC" and "New York") or removing unwanted characters like extra spaces.
  • Array Formulas:
    Array formulas perform calculations on multiple values simultaneously. For example, summing the product of two arrays (e.g., quantities and prices) in one step using =SUM(A1:A10*B1:B10) with Ctrl+Shift+Enter.
  • Dynamic Arrays:
    FILTER, SORT, and UNIQUE, which allow real-time, spillable formulas. For instance, UNIQUE(A1:A10) returns a list of distinct values from the range.
  • TEXTJOIN and CONCAT:
    These functions combine multiple text strings with or without delimiters. TEXTJOIN is especially useful for creating comma-separated lists.
  • Solver for Optimization:
    Solver finds optimal solutions for complex problems, such as maximizing profits or minimizing costs, by changing multiple variables while meeting constraints.
  • Goal Seek: Goal Seek helps reverse-engineer problems.
  • Sharing Workbooks:
    Ensuring that multiple users can edit the same file simultaneously, with changes tracked for accountability.
  • Comments and Notes:
    Add comments to specific cells to provide context or instructions to collaborators. Notes serve as annotations for personal reference or documentation.
  • Track Changes and Version History: Track Changes highlights modifications made by collaborators. Version History lets you revert to previous versions, ensuring no critical data is lost.
  • Data Transformation and Cleaning:
    Power Query simplifies importing and cleaning data from various sources. For example, you can merge datasets, remove duplicates, and split columns without manually editing the data.
  • Loading Data from External Sources:
    Import data directly from databases, web pages, or other Excel files. Power Query automates the process, ensuring consistent formatting and seamless updates when source data changes.
  • Creating Dashboards with Charts and Pivot Tables
  • Using Form Controls
  • Best Practices for Dashboard Design: Keep dashboards clean, with a focus on clarity and accessibility. Use consistent colors, avoid clutter, and ensure that key metrics are prominently displayed.
  • Connecting to Data Sources:
  • Building Simple Visualizations: Create charts, graphs, and maps in Power BI using drag-and-drop functionality. For example, visualize sales performance by region with bar charts or customer distribution with geographic maps.
  • Creating Data Models:
    Data modeling involves defining relationships between multiple tables. For instance, connect a sales table to a product table using product IDs. Power BI’s modeling tools simplify data integration for better analysis.
  • DAX (Data Analysis Expressions):
    DAX is a powerful formula language in Power BI used for custom calculations. For example, create a measure to calculate Year-over-Year growth with DIVIDE(SUM(Sales[Amount]), SUM(Sales[Amount Previous Year])).
  • Interactive Dashboards
  • Using VBA for Automation
  • Scheduling Automated Tasks: Automate workflows by integrating VBA with task schedulers. For example, schedule an Excel macro to refresh data every morning and email the report to stakeholders.
  • Introduction to SQL
  • Data Retrieval and Filtering: Filter and sort data with SQL commands like ORDER BY and LIMIT
  • Joins and Relationships
  • Basic Aggregations
  • Subqueries and Nested Queries
    SELECT Customer FROM Sales WHERE Revenue > (SELECT AVG(Revenue) FROM Sales);
  • Window Functions:
    Window functions calculate values across a set of table rows related to the current row. Use functions like ROW_NUMBER(), RANK(), and OVER() to generate rankings or cumulative totals. For instance, rank salespersons by revenue in descending order.
  • CTEs (Common Table Expressions):
    CTEs simplify complex queries by breaking them into smaller, readable parts. For example, use a CTE to calculate monthly sales totals and then analyze trends.
  • Creating Dynamic Reports: SQL can generate dynamic reports by combining data from multiple tables and applying advanced filters. Learn to create reusable queries for reporting dashboards in BI tools like Power BI or Tableau.
  • Glimpse of Descriptive Statistics
  • Measures of Central Tendency
  • Measures of Dispersion
  • Graphical Techniques
  • Skewness & Kurtosis
  •  
  • Introduction to Probability
  • Random Variables and Expected Value:
    Random variables represent outcomes of random phenomena, and expected value predicts long-term averages. For instance, calculate the expected value of a dice roll in a game.
  • Probability Distributions:
    Study probability distributions like Normal, Binomial, and Poisson. The normal distribution is crucial in understanding real-world phenomena, such as heights or exam scores.
  • Standard Normal Distribution (SND): Learn how to standardize data using z-scores, enabling comparisons across different datasets. This is useful for finding probabilities associated with specific outcomes.
  • Sampling Funnel and Sampling Variation:
    Explore techniques to draw representative samples from populations.
  • Central Limit Theorem (CLT)
  • Confidence Intervals:
    Calculate confidence intervals to estimate population parameters. For example, create a 95% confidence interval for average customer satisfaction scores. Hypothesis Testing: Test assumptions about populations using methods like 2-proportion tests, t-tests, and chi-square tests. For example, test whether two advertising campaigns generate significantly different sales.
  • Chi-Square Test:
    Evaluate relationships between categorical variables, such as customer age groups and product preferences.
  • Data Cleaning:
    Discover techniques to handle blanks, null values, outliers, and invalid cells in datasets. Clean data ensures reliable analysis and decision-making.
  • Imputation Techniques: Replace missing values with statistical measures like mean or median. For instance, impute missing age data in customer profiles.
  • Installing R and RStudio
  • Data Types in R
  • Operators in R
  • Decision Making and Loops:
    Write programs using if, ifelse, for, while, and repeat statements. For instance, automate tasks like calculating monthly expenses.
  • Functions and Built-in Functions:
    Create custom functions in R to simplify repetitive calculations. For example, define a function to calculate ROI.
  • Joins and Data Manipulation:
    Learn to merge data frames and manipulate datasets using dplyr. Filter, select, and arrange data efficiently with commands like filter(Sales > 1000).
  • Data Visualization in ggplot2
  • Introduction to Python
  • Variables and Data Types
  • Operators and Slicing: Use Python’s arithmetic, logical, and relational operators. Learn slicing to extract portions of strings and lists.
  • Dictionaries and Sets:
    Manipulate data using Python dictionaries and sets. Add, remove, and modify elements to manage data efficiently.
  • Regular Expressions:
    Use the re module to search and match patterns in text. For example, extract email addresses from a dataset.
  • Loops and Functions:
    Automate tasks with for and while loops. Create reusable logic with custom and lambda functions.
  • Modules in Python: Learn modules like math, calendar, and datetime to extend Python’s functionality for specialized tasks.
  • Pandas and NumPy Basics:
    Understand how to create data frames, perform data cleaning, and analyze datasets using Pandas. NumPy facilitates efficient numerical operations in Data Analytics Classes in Pune.
  • Data Visualization with the use of Matplotlib & Seaborn
    • Use case of ChatGPT
    • ChatGPT vs. Other Chatbots
    • AI Fundamentals
  • Prompt Engineering
  • Ethics and Future of ChatGPT: Delve into ethical considerations and potential future advancements in AI technology.

Want to know more about our training courses & respective syllabus then download our brochure and explore more.

Course Details for Data Analytics Course in Pune with Placement

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Instructors
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Placement Support
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Online, Classroom & Hybrid Training Providing Flexibility

Online training at Prime Point never feels like you are watching a screen but it feels like a classroom at your home experience. In online training, the study material, teaching faculty, workshops, features, and everything remains very much unchanged. Even Students in online mode can attend practicals in offline mode and they also receive a set of recordings for the lectures through our Learning Management System, which is personalized according to the needs of the students in Online Training for Data Analytics Course in Pune with Placement.

Online Offline Hybrid Mode Of Training in data science course in pune placement
Students also get to attend Data Analyst Classes in Pune in hybrid mode and can come to classes whenever they feel like it’s convenient for them. Students in hybrid mode also get recordings for the lectures if they miss any by chance. Features, live projects, and other sessions in hybrid training remain the same it is specially designed for working professionals, as they can attend training in classroom learning mode on weekends thus, the hybrid model provides candidates with flexibility in learning along with this they also get access to our LMS. in Hybrid Training for Data Analytics classes in Pune with Placement.

Which Tools Are Covered in The Data Analytics Course in Pune With Placement?

Python
Pandas
Matplotlib
Keras
Numpy
Seaborn
Tenserflow
Scikit learn
Power Bi
Anaconda
R programming
Tableau
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6+ Generative AI tools Covered!

Chatgpt
claude ai
Microsoft Co Pilot
Midjourney
Daal e
Leonardo AI

Batch Schedule for Data Analytics Classes in Pune

Batch Schedule Timings
Mon to Sat Weekday Batch 10:00 AM - 11:00 PM
Sun to Sat Weekend Batch 01:00 PM - 03:00 PM
Mon to Friday Hybrid Batch 01:00 PM - 03:00 PM
Mon to Friday Classroom Training 05:00 PM - 07:00 PM

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