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Data Analytics Training in UK
Build Advanced Analytics Skills with Version IT’s Data analytic training in UK. Get certified now & placed in the top MNC’s.
Understanding the Importance of Data Analytics Training in UK
Information has turned into one of the most precious resources of the organizations all over the world. This increasing reliance on data has generated a high demand in this field of analytics. The Version IT Data analytics training in UK is based on assisting those who want to acquire practical analytic skill and equip oneself to work in the modern world based on data.
The program is aimed at professional training based on the industry-related tools, analytical thinking in real-time and contemporary technologies adopted in the contemporary data ecosystem. Whether you are seeking to embark on a career in analytics or seeking to improve your technical competencies, the data analytics course in the UK offered by Version IT offers a systematic strategizing towards accomplishing your ambitions in the career.
The training focuses on practical learning, problem-solving skills that are analytical and applying advanced tools that organizations apply to convert raw data into relevant insights.
Learn Advanced Analytics with Artificial Intelligence
Artificial Intelligence has altered the manner in which organizations interpret data. With computers doing all the work using AI, it is possible to process vast amounts of data in a short period of time, automatically recognize patterns, and guide the analysts to make valid predictions.
The AI training in data analytics available in UK through Version IT can assist the learners to comprehend how the AI technologies can improve data analysis. With the help of analytics and intelligent automation, professionals can enhance efficiency and derive more insights out of the data.
Generative AI is another technology that is driving analytics. In UK and data analytics with training generative AI, students investigate how generative models can be used to aid in automated interpretation of data, intelligent reporting and more complex analysis.
Knowledge of these technologies places specialists in a powerful position in the contemporary analytics work.
Develop Strong Analytical Skills with Python
Python is now one of the most popular mechanisms in analytics. Due to its strong libraries, and easy syntax, it is perfect in data analysis, automation, and predictive modeling.
The python training on data analytics in UK aids the learners in gaining insights into how python can be utilized in processing datasets, statistical analysis and meaningful visualizations.
Python analytics tools enable specialists to handle small and large data efficiently. Organizations would like to have analysts that are able to merge programming skills and business knowledge.
The training of data analytics in UK will provide the learners with the practical exposure to the data analysis methods based on Python, which is extensively used in industries.
Combine Data Analytics and Business Analysis Skills
Analytics professionals tend to collaborate extensively with business teams to know the problems of the organization and find solutions using the insights of the data. Business analysis skills are very valuable due to this relationship between business strategy and analytics.
Other courses that Version IT advances include learners who are interested in business analyst course in UK and business analyst training in UK. Business analysts are geared towards determining operational issues, analyzing trends in data and suggesting strategic changes to organizations.
Individuals who acquire both analytics and business insights are able to work in jobs that involve interaction between the technical staff and the business stakeholders.
Such analytical and strategic skills combine to increase career opportunities across any number of industries.
Why Choose Version IT for Data Analytics Training in UK
Version IT has been known to offer professional training programs in technology that emphasizes on the industry demands. The institute offers systematic learning courses which are supposed to enable one to acquire practical knowledge in the current technologies.
Our data analytics training in UK is oriented on formation of analytical thinking, technical and practical problem solving skills. Trainers also come with a wide experience in their industry and can lead learners through real time life situations which depict real business issues.
Skill-oriented learning has been one of the biggest strengths at Version IT. Rather than having learners concentrate on theoretical knowledge alone, the training will help the learner put the concepts of analytics into real life scenarios.
The learners who attend the data analyst online training in UK are assured of the ability to work with analytical programs and comprehend the business data needs. This training makes them fit well in professional duties in the analytics sector.
Career Opportunities After Data Analytics Training
The analytics workers are required in almost all industries. Data experts help companies keep track of their performance, opportunities, and efficiency in operations.
Upon finishing a data analysis course in UK, one may contemplate the following jobs:
- Data Analyst
- Business Analyst
- Data Reporting Specialist
- Analytics Consultant
- Data Visualization Analyst
Data analytics with AI training in UK and data analytics with generative AI training in UK professionals will find even greater opportunities available to them as companies advance to the use of AI-powered analytics.
By using the appropriate analytical ability and exposure, one is able to establish a successful career in the fast growing analytics field.
Data Analytics Course Certification at Version IT
The certificate obtained in UK on passing data analytics training reflects your level of analytical skills and increases your level of professionalism. An established certification by Version IT proves that you can operate with the current data tools, the methods of data analysis in AI and Python. It assists employers in extracting qualified candidates in the field of analytics. Individuals who take a data analyst course in UK and are certified tend to find career prospects and are highly recognized in the industry.
Topics You will Learn
What You Will Learn in Python
By the end of this module, you will be able to:
✔ Write clean and structured Python programs
✔ Perform data cleaning and transformation using Pandas
✔ Conduct Exploratory Data Analysis (EDA)
✔ Create professional data visualizations
✔ Build predictive machine learning models
✔ Automate repetitive data tasks
✔ Connect Python with SQL databases
✔ Develop end-to-end analytics workflows
Core Python
PYTHON PROGRAMMING
01 – Foundations
- Introduction to Python
- Installation of Python
02 – Data Types & Variables
- Data types
- Variables
- Input
03 – Operators & Conditions
- Operators
- if, elif, else statements
04 – Loops
- for loops
- while loops
05 – Data Structures
- Lists, Tuples
- Dictionaries, Sets
- String Handling
06 – Functions
- Function Definition
- Parameters & Return
07 – Modules & Files
- Date and Time Module
- File Handling
08 – Error Handling
- Errors & Debugging
- Exception Handling
OBJECT-ORIENTED PROGRAMMING
(OOP) – The 4 Pillars
OOPS Principles
Encapsulation
Bundling data and methods together
- Data Hiding
- Private/Public Access
- Controlled Access
Abstraction
Hiding complexity, showing essentials
- Hide Implementation
- Show Interface
- Simplify Complexity
Polymorphism
Objects can take multiple forms
- Method Overloading
- Method Overriding
- Runtime Flexibility
Inheritance
Class hierarchy and reusability
- Parent-Child Classes
- Code Reusability
- IS-A Relationship
Key Benefits: Modularity • Reusability • Maintainability • Scalability • Security
Python Libraries for Data Analytics
Part 1: NumPy, Pandas & EDA
KEY LEARNING OUTCOMES
- Master NumPy for numerical computing and array operations
- Use Pandas for data manipulation and cleaning
- Perform exploratory data analysis with visualization
- Create professional visualizations using Matplotlib
- Create advanced visualizations using Seaborn
- Understand univariate, bivariate, and multivariate analysis
- Prepare data for machine learning applications
- Build complete data analysis pipelines
- Handle real-world messy data effectively
SECTION 1: NUMPY – NUMERICAL COMPUTING
- Introduction to NumPy: Framework and advantages
- NumPy Attributes: Shape, size, dtype, ndim
- Array Creation: zeros, ones, arange, linspace
- Indexing & Slicing: Accessing array elements
- Iteration over Arrays: Looping through elements
- Array Manipulations: Reshape, flatten, transpose
- Mathematical Operators: Addition, subtraction, multiplication
- Relational Operators: Comparison operators
- Mathematical Functions: sin, cos, sqrt, exp, log
- Broadcasting: Operating on arrays of different shapes
SECTION 2: PANDAS – DATA MANIPULATION
- Introduction to Pandas: Data analysis library
- Series: One-dimensional labeled arrays
- DataFrames: Two-dimensional labeled arrays
- Creating DataFrames: From lists, dicts, numpy arrays
- Column Operations: Selection, addition, deletion
- Row Operations: Selection, adding, deletion
- Merging DataFrames: Join, merge, concatenate
- Importing Data: CSV, Excel, SQL, JSON formats
- Basic Dataset Insights: head, tail, info, describe
- Summarizing Data: Aggregation and statistics
SECTION 3: EXPLORATORY DATA ANALYSIS (EDA)
- Univariate Analysis: Analyzing single variables
- Bivariate Analysis: Relationship between two variables
- Multivariate Analysis: Relationship among multiple variables
- Matplotlib Plots: Histogram, Box, Scatter, Line, Pie, Bar
- Matplotlib Subplots: Multiple plots in one figure
- Seaborn Bar Plot: Categorical data visualization
- Seaborn Count Plot: Category frequency visualization
- Seaborn Box Plot: Distribution comparison
Python Libraries for Data Analytics
Part 2: Data Cleaning & AI/ML
KEY LEARNING OUTCOMES (Advanced)
- Clean and prepare messy data for analysis
- Handle missing values and outliers effectively
- Understand machine learning fundamentals
- Build supervised learning models
- Build unsupervised learning models
- Implement linear and logistic regression
- Apply decision trees and clustering
- Evaluate and optimize machine learning models
- Prevent overfitting and underfitting
- Build complete end-to-end ML pipelines
SECTION 4: DATA CLEANING & PREPARATION
- Dealing with Wrong Data Types: Type conversion
- Type Checking: Validating data types
- Type Conversion: Converting between types
- Treating Duplicates: Identifying and removing duplicates
- Handling Missing Values: NaN detection and treatment
- Missing Value Imputation: Fill, forward fill, backward fill
- Handling Outliers: Detection and treatment methods
- Statistical Methods: IQR, z-score for outlier detection
- Drop Unnecessary Columns: Feature selection
- Data Validation: Ensuring data quality
SECTION 5: INTRODUCTION TO AI & MACHINE LEARNING
- Machine Learning Basics: Concepts and types
- Supervised vs Unsupervised Learning: Key differences
- Regression Analysis: Predicting continuous values
- Linear Regression: Simple and multiple regression
- Logistic Regression: Binary and multiclass classification
- Decision Trees: Tree-based classification and regression
- Tree Splitting: Gini index and entropy
- K-Means Clustering: Unsupervised learning
- Model Evaluation Metrics: Accuracy, precision, recall
- Confusion Matrix: Classification performance analysis
- Cross-Validation: Training and validation strategies
- Train-Test Split: Data partitioning for evaluation
SQL Server for Data Analytics – What You Will Learn
KEY LEARNING OUTCOMES
- Master SQL fundamentals, database design, and normalization concepts
- Design and create robust relational databases with proper data modeling
- Write efficient and optimized SQL queries for complex business problems
- Perform advanced data retrieval using subqueries, CTEs, and window functions
- Implement ranking, partitioning, and aggregate window functions
- Create and manage views, stored procedures, and user-defined functions
- Optimize database performance through indexing and query optimization
- Conduct comprehensive exploratory data analysis and perform customer segmentation, RFM analysis, and sales analytics
- Build CI dashboards, performance reports, and business intelligence summaries
SECTION 1: DATABASE FUNDAMENTALS
- Introduction to Databases, DBMS, RDBMS vs NoSQL
- MySQL Installation, Configuration & Environment Setup
- Data Types (INT, VARCHAR, DATE, FLOAT, DECIMAL, TEXT, BLOB, etc.)
- Primary Keys, Foreign Keys, Composite Keys & Candidate Keys
- Constraints: NOT NULL, UNIQUE, CHECK, DEFAULT, AUTO_INCREMENT
- CRUD Operations: (Create, Read, Update, Delete)
- SQL Commands: DDL, DML, DCL, TCL – Understanding Differences
- SELECT, Commands with WHERE clause & Filtering Techniques
- INSERT, UPDATE, DELETE Commands with Examples
- ORDER BY (ASC/DESC), GROUP BY, HAVING Clauses
- Logical, Comparison & Arithmetic Operators
- Aggregate Functions: SUM, AVG, COUNT, MAX, MIN with GROUP BY
SECTION 2: ADVANCED SQL TECHNIQUES
- JOINs: INNER, LEFT, RIGHT, FULL OUTER, CROSS join with real examples
- Self Joins & Multiple Table Joins for Complex Queries
- Subqueries: Scalar, Row, Table Subqueries in SELECT, WHERE, FROM
- Correlated Subqueries & Nested Subqueries for Advanced Filtering
- Common Table Expressions (CTE) with WITH clause
- Recursive CTEs for Hierarchical Data Processing
- Database Normalization (1NF, 2NF, 3NF, BCNF Concepts)
- Data Manipulation Strategies for Performance Optimization
- Entity-Relationship (ER) Modeling & ER Diagram Creation
- Window Functions: ROW_NUMBER, RANK, DENSE_RANK, NTILE
- Aggregate Window Functions: SUM OVER, AVG OVER with PARTITION BY
- Views: Simple & Complex Views, Stored Procedures & User-Defined Functions
Master SQL Server for Advanced Data Analytics
Build a strong SQL foundation and master advanced techniques!
SQL SERVER FOR DATA ANALYTICS
Part 2: Analytics & Applications
SECTION 3: SQL FOR DATA ANALYTICS
(Key Performance Indicator (KPI) Calculations & Dashboard Metrics)
- Revenue Analysis: Total Sales, Growth Rate, Trends, Forecasting
- Sales Performance Reports: Top Products, Sales by Region/Category
- Customer Segmentation: RFM (Recency, Frequency, Monetary) Analysis
- Cohort Analysis: Customer Lifetime Retention, Month-on-Month
- Customer Lifetime Value (CLV): Calculation & Segmentation
- Product Performance: Sales Volume, Margins, Inventory Levels
- Year-over-Year (YoY) Comparisons & Growth Analysis
- Month-over-Month (MoM) Trends & Seasonality
- Pivot Tables & Cross-tabulation for Data Summarization
- Time-Series Data Analysis: Moving Averages, Trends, Seasonality
- Anomaly Detection: Identifying Outliers in Data
SECTION 4: REAL-WORLD APPLICATIONS
- E-commerce Analytics: Order analysis, Customer Behavior, Conversion Rates
- Financial & Banking Analytics: Transaction Analysis, Risk Assessment
- Supply Chain Optimization: Inventory Management, Supplier Performance
- HR Analytics: Employee Performance, Payroll, Retention Analysis
- Marketing Campaign Analysis: ROI, Customer Acquisition, Attribution
- Social Media Analytics: Engagement, Reach, Sentiment Analysis
- Integration with Python: Pandas, SQLAlchemy, Database Connectivity
- Integration with Power BI & Tableau: Query Optimization for BI Tools
- Building Automated Reports & Dashboards with Scheduled Queries
- Database Security: User Permissions, Role Management, Encryption
Master SQL and Transform Data into Actionable Business Intelligence
Build a Career in Data Analytics with Industry-Ready SQL Skills
Excel Basics & Formulas – Part 1
KEY LEARNING OUTCOMES
- Master Excel interface, formatting, and data entry techniques
- Perform complex calculations using advanced formulas and functions
- Create dynamic pivot tables and data summaries
- Build interactive dashboards and KPI reports
- Use what-if analysis for scenario planning
- Analyze data with conditional formatting and validation
- Create professional visualizations and interactive charts
- Integrate Excel with SQL and Power BI for end-to-end analytics
- Develop automated analytical workflows and business reports
SECTION 1: EXCEL BASICS & INTERFACE
- Ribbon Interface & Workbook Navigation
- Excel Interface and Toolbar Customization
- Cell References: Absolute, Relative, Mixed References
- Number Formatting: Currency, Percentage, Date Formats
- Cell Formatting: Borders, Fill Colors, Font Styles
- Data Entry & Input Validation Rules
- Sorting & Filtering Techniques
- Autofill, Flash Fill & Quick Analysis Tools
- Freeze Panes & Splitting Windows
- Creating and Managing Worksheets
SECTION 2: ESSENTIAL FUNCTIONS & FORMULAS
- Basic Math Functions: SUM, AVERAGE, MIN, MAX
- Conditional Functions: IF, Nested IF Statements
- COUNT & SUM IF Conditional Counting/Summing
- COUNTIFS & SUMIFS for Multiple Criteria
- VLOOKUP & HLOOKUP Functions
- XLOOKUP: Modern Lookup Function
- INDEX-MATCH: Advanced Lookup Replacement
- Logical Functions: AND, OR, NOT for Complex Scenarios
- IFERROR & IFNA for Error Handling
- CHOOSE Function for Multiple Value Selection
- INDIRECT Function for Dynamic References
Master Excel Fundamentals for Data Analytics!
Build a strong Excel foundation and grow your analytics skills!
Excel Dashboards & Analysis
Part 2
KEY LEARNING OUTCOMES (Advanced)
- Master text and date functions for data manipulation
- Clean messy data using Text to Columns & Flash Fill
- Create and customize pivot tables for complex analysis
- Build dynamic charts and KPI dashboards
- Implement data validation and conditional formatting
- Perform what-if analysis using Goal Seek & Solver
- Create scenario analysis models for decision making
- Design interactive reports with slicers and filters
- Build professional business intelligence dashboards
SECTION 3: TEXT & DATE FUNCTIONS
- Text Functions: LEFT, RIGHT, MID for String Extraction
- LEN Function for String Length & TRIM for Cleanup
- UPPER, LOWER, PROPER for Text Case Conversion
- CONCAT & CONCATENATE for String Joining
- FIND & SEARCH for Substring Location
- SUBSTITUTE for Text Replacement
- TODAY Function for Current Date
- NOW Function for Current Date & Time
- DATE Function for Creating Specific Dates
- DATEDIF for Date Difference Calculations
- YEAR, MONTH, DAY Extraction Functions
- WEEKDAY & WEEKNUM for Date Analysis
SECTION 4: DATA CLEANING & PIVOT TABLES
- Remove Duplicates from Large Datasets
- Text to Columns: Delimiter-based Separation
- Flash Fill for Pattern Recognition & Auto-fill
- Conditional Formatting: Color Scales, Data Bars, Icons
- Creating Pivot Tables from Raw Data
- Pivot Table Grouping: By Date, Category, Range
- Calculated Fields & Calculated Items in Pivots
- Pivot Slicers for Dynamic Filtering
- Timeline Slicers for Date-based Filtering
- Pivot Charts for Visual Data Representation
SECTION 5: ADVANCED FEATURES & DASHBOARDS
- Data Validation Rules: List, Number Range, Custom Formulas
- What-If Analysis: Goal Seek for Single Cell Optimization
- Solver Add-in for Complex Optimization Problems
- Scenario Manager for Multiple Scenario Planning
- Dynamic Charts: Charts that Update with Data
- KPI Dashboards: Creating Business Intelligence Dashboards
- Interactive Reports with Slicers & Filters
- Sparklines: Mini Charts within Cells
- Chart Types: Line, Bar, Pie, Scatter, Combo Charts
- Excel Integration: SQL Queries, Power Query, Power BI Connection
Master Advanced Excel & Dashboard Development
Create powerful analytics dashboards and business intelligence reports!
What You Will Learn
KEY LEARNING OUTCOMES
- Master descriptive statistics and data summarization techniques
- Conduct hypothesis testing and inferential statistics analysis
- Apply probability concepts and distributions to real-world problems
- Perform correlation and regression analysis for predictive modeling
- Understand sampling techniques and statistical significance
- Apply Bayesian reasoning and conditional probability
- Analyze normal distributions and use Central Limit Theorem
- Build simple and multiple regression models
- Interpret statistical results and communicate findings
- Make data-driven decisions using statistical evidence
SECTION 1: DESCRIPTIVE STATISTICS
- Mean, Median, Mode: Calculating and interpreting central tendency
- Range: Understanding data spread
- Variance & Standard Deviation: Measuring data dispersion
- Coefficient of Variation: Comparing variability across datasets
- Percentiles & Quartiles: Analyzing distribution segments
- Skewness: Understanding distribution asymmetry
- Kurtosis: Analyzing tail behavior and distribution
- Summary Statistics: Creating statistical profiles
- Data Visualization: Histograms, box plots, density plots
- Outlier Detection: Identifying and handling anomalies
- Data Summarization: Aggregate statistics and reporting
- Distribution Shapes: Normal, skewed, bimodal distributions
SECTION 2: INFERENTIAL STATISTICS & HYPOTHESIS TESTING
- Sampling Techniques: Random, stratified, systematic, cluster sampling
- Population vs Sample: Understanding parameters and statistics
- Sampling Distribution: Behavior of sample statistics
- Standard Error: Measuring sampling uncertainty
- Confidence Intervals: Constructing confidence bounds
- Hypothesis Testing Framework: Null vs alternative hypotheses
- Type I & II Errors: Understanding statistical errors
- p-value: Interpretation and significance testing
- Z-test: Testing means with known population variance
- t-test: One-sample, two-sample, and paired comparisons
- Chi-Square Test: Testing categorical associations
- ANOVA: Analyzing variance across multiple groups
Power BI for Business Intelligence – Part 1: Fundamentals & Data Modeling
KEY LEARNING OUTCOMES
- Master Power BI Desktop and Power BI Service platforms
- Connect to and import data from multiple sources
- Clean and transform data using Power Query effectively
- Design star schema and snowflake schema models
- Create relationships between tables for analysis
- Optimize data models for performance and clarity
- Build foundation for advanced BI solutions
- Understand Power BI architecture and components
- Implement best practices in data preparation
- Prepare data for advanced DAX calculations and visualizations
SECTION 1: POWER BI INTRODUCTION & DATA SOURCES
- Power BI Desktop: Installation, interface, workspace
- Power BI Service: Cloud platform and collaboration
- Power BI Architecture: Desktop, Service, Mobile
- Data Sources: Excel, SQL, Azure, Cloud Services
- Importing Data: Various import methods and options
- Data Connectors: Native and custom sources
- Query Settings: Loading and refresh options
- Power BI Licensing: Pro, Premium, Per User
- Workspace Management: Organization and structure
- Gateway Configuration: On-premises connectivity
SECTION 2: POWER QUERY – DATA CLEANING
- Power Query Editor: Interface and functionality
- Data Cleaning: Removing duplicates and errors
- Data Type Conversion: Changing data types
- Text Functions: Extracting and splitting text
- Date Functions: Formatting and calculations
- Conditional Columns: Creating new columns
- Merge Queries: Joining tables with join types
- Append Queries: Combining rows from tables
- Pivot & Unpivot: Reshaping data structures
- Replace Values: Finding and replacing data
Master Power BI Foundations and Data Preparation
Build a strong foundation for advanced BI solutions!
Power BI for Business Intelligence
Part 2: DAX, Visualizations & Advanced
KEY LEARNING OUTCOMES (Advanced)
- Master DAX (Data Analysis Expressions) language
- Write complex formulas and calculated columns
- Create advanced measures with time intelligence
- Design professional data visualizations
- Build interactive dashboards with drill-through
- Implement row-level security for data access
- Use AI visuals for predictive analytics
- Deploy and publish reports to Power BI Service
- Optimize performance and identify bottlenecks
- Implement collaboration and sharing strategies
SECTION 3: DATA MODELING – SCHEMAS & RELATIONSHIPS
- Star Schema Design: Fact tables with dimensions
- Snowflake Schema: Multi-level normalized hierarchies
- Fact Tables: Transactional and measure data
- Dimension Tables: Descriptive attributes
- Creating Relationships: One-to-many, many-to-many
- Primary & Foreign Keys: Data integrity
- Bridge Tables: Handling complex relationships
- Model Validation: Ensuring consistency
- Calendar Tables: Time dimension creation
- Role-Playing Dimensions: Multiple relationships
SECTION 4: DAX (DATA ANALYSIS EXPRESSIONS)
- DAX Syntax: Functions, operators, expressions
- Calculated Columns: Adding computed columns
- Measures: Creating aggregations and KPIs
- Context Functions: Row and filter context
- Aggregation Functions: SUM, AVERAGE, COUNT
- CALCULATE Function: Complex calculations
- SUMX & Similar Functions: Iterative calculations
- RELATED & RELATEDTABLE: Cross-table relationships
- Time Intelligence: YTD, MTD, QTD, YoY, MoM
- Advanced DAX: Complex nested formulas
SECTION 5: VISUALIZATIONS, DASHBOARDS & ADVANCED
- Chart Types: Bar, column, line, area, scatter
- KPI Cards: Key metric displays and gauges
- Table & Matrix Visuals: Detailed data representation
- Maps: Geographic visualization
- Treemaps & Waterfalls: Hierarchical and sequential
- Slicers: Single and multi-select filters
- Drill-Through: Navigation between pages
- Tooltips: Custom information on hover
- Row-Level Security: Data access control
- AI Visuals & Forecasting: Predictive analytics
SECTION 6: PUBLISHING, SHARING & COLLABORATION
- Publishing to Power BI Service: Desktop to cloud
- Report Scheduling: Automated refresh settings
- Alert Configuration: Data threshold notifications
- Sharing Reports: Permissions and access control
- Applications: Packaged content distribution
- Dashboards: Pinning visuals and metrics
- Collaboration: Comments and sharing notes
- Power BI Mobile: Mobile app deployment
- Email Subscriptions: Scheduled report delivery
- Performance Analyzer: Identifying bottlenecks
Basic Module
- Introduction to Tableau
- Connections
- Visual Analytics
- Basic Charts
- Sorting
- Filtering
- Grouping
- Sets
- Built-in Functions (Number, String, Date, Logical and Aggregate)
- Operators and Syntax Conventions
- Table Calculations
Advance Module
- Types of Calculations
- Trend lines
- Reference lines
- Forecasting
- Advance Plots
- Dashboard
GIT HUB
Integration with Microsoft Fabric
MINI PROJECTS
✔ Retail Sales Dashboard
✔ HR Analytics Dashboard
✔ SQL Customer Database Project
✔ Excel KPI Dashboard
✔ Python Sales Prediction Model
MAJOR PROJECTS
- End-to-End Retail Analytics
- Banking Loan Prediction Model
- Customer Churn Analysis
- E-commerce Business Dashboard
FAQ's
Enquiry Form
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Version IT is highly recommended!Posted on Manikanta NaiduTrustindex verifies that the original source of the review is Google. My experience at Version IT’s Azure Data Engineer Training in Hyderabad was truly outstanding. The trainers have deep industry expertise and focus on real-time implementation of Azure services. The curriculum includes data pipelines, cloud integration, and visualization tools. The institute also provides mock interviews and job assistance. Thanks to Version IT, I developed the skills required to excel as an Azure Data Engineer.Posted on Kannepamula Venkata laxmiTrustindex verifies that the original source of the review is Google. Version IT’s Python Full Stack Training in Hyderabad provided me with excellent technical knowledge and hands-on experience. The trainers are highly experienced and explain each concept clearly. The course covers Python, Django, React, and database integration in detail. The institute also provides real-time projects and placement support, helping me start my career confidently as a Full Stack Developer. Highly recommended!Posted on Saicharan ChitturiTrustindex verifies that the original source of the review is Google. Version IT offers outstanding Java Full Stack Training in Hyderabad. The faculty is very experienced and focuses on both theory and practical learning. The course structure is well-designed with hands-on projects that enhance coding and problem-solving skills. The environment is motivating, and the placement team is very supportive. I’m thankful to Version IT for shaping my development career.Posted on Mudavath Eswar Durga NaikTrustindex verifies that the original source of the review is Google. My experience with Version IT’s Java Full Stack Training in Hyderabad was excellent. The trainers provide step-by-step guidance and explain real-world applications. The course covers all modern tools and technologies like Java, React, Spring Boot, and MySQL. Their mock interviews and career assistance helped me get job-ready. Version IT truly provides industry-oriented full-stack developer training.Posted on BhargavTrustindex verifies that the original source of the review is Google. Version IT’s Python Full Stack Training in Hyderabad exceeded my expectations. The trainers are experts who teach using real-time projects, ensuring deep understanding. The course focuses on both frontend and backend technologies like Python, Django, and JavaScript. Their career counseling and placement support were very helpful. I’m truly grateful to Version IT for shaping my path as a Full Stack Developer.Posted on SurendraTrustindex verifies that the original source of the review is Google. Version IT’s Azure Data Engineer Training in Hyderabad was an exceptional learning experience. The trainers are knowledgeable and provide in-depth understanding of Azure tools, data pipelines, and cloud storage. The course includes real-time projects and hands-on practice, which improved my technical skills. Thanks to Version IT’s expert guidance and placement support, I was able to confidently begin my career as a Data Engineer.Posted on GundiVinayTrustindex verifies that the original source of the review is Google. Version IT provides the best Azure Data Engineer Training in Hyderabad with a perfect blend of theory and practical sessions. The trainers focus on real-world cloud data engineering applications using Azure services. The learning environment is interactive, and the placement support is excellent. I’m grateful to Version IT for providing such comprehensive training that prepared me for a successful data engineering career.Posted on Rajesh DevapoojaTrustindex verifies that the original source of the review is Google. Enrolling in Version IT’s Azure Data Engineer Training in Hyderabad was one of my best career decisions. The course is well-structured, covering data storage, transformation, and analytics using Azure tools. The trainers are patient and explain complex concepts in a simple manner. The institute’s placement support and hands-on sessions helped me become confident in real-time project handling. Highly recommend Version IT!