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Data Analytics Course in Kerala - Become a Certified Data Analyst

Master data analytics in Kerala with Entri Elevate to kickstart your career in the field. Enroll now for top notch curriculum and assistance.

Course Type

Online

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An Overview of Data Analytics Course in Kerala

The data analytics certification course provided by Entri Elevate ensures a seamless and fruitful understanding and mastery of the ins and outs of data analytics. With guidance from highly skilled professionals and industry experts, this course is curated with the utmost detail and an emphasis on practical applications. Graduates are skilled in analyzing data, discovering trends, and making decisions upon completion.

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Inclusive & Immersive Hybrid Training Sessions

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Industry Expert Sessions

80+ Live & Recorded Sessions Icon

80+ Live & Recorded Sessions

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Soft Skill Sessions

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Industry Networking

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Placement Training

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Illinois Tech Certification

Get Started with Full Stack Web Development for Free !

Become Job ready with Entri. Explore the basics of full stack web development with our free classes in Malayalam. Perfect to get aligned with the subject !

Skills Covered

Here are the skills that are covered during the course that will make you distinct in the particular field.

Placement Stories

Get a peek into the remarkable accomplishments of our aspirants.

Download Power BI Tutorial For Free 📥

Learn Power BI basics with our easy tutorials. Covering data visualization, dashboards, reports, and more, these guides make mastering Power BI simple and fun for beginners

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Tools Covered

Illuminate the path to insights! Unlock the power of Data Analytics with these necessary tools!

Data Analytics Job Roles

What Exactly Does a Data Analyst Do? Lets Dive Deep into Roles!

Data Analyst

Data analysts gather, organize, and interpret data to provide valuable insights to businesses. They use statistical tools and techniques to identify trends and patterns and communicate their findings to key stakeholders. A data science and machine learning course equips individuals with skills in data manipulation, visualization, and analytics, making them a perfect fit for this role.

Business Intelligence Analyst

Business intelligence analysts are responsible for studying data to uncover trends and patterns that can assist companies in making informed decisions. They employ a variety of data analytics tools to collect information from various data sources and present it in a format that can be easily comprehended by stakeholders. This position necessitates strong analytical abilities, business expertise, and excellent communication skills.

Data Scientist

Roles and responsibilities include collecting, analyzing, and interpreting large amounts of datasets. The role also requires making use of statistical and machine learning techniques to identify trends and patterns in data.

Data Engineer

Being one of the most technical profiles in the whole of data science and analytics careers, this particular data analytics career closes the gap between software and application developers. The core responsibilities include designing and building infrastructure and systems that support data collection, storage, and analysis

Data Analytics Curriculum

The Data Analytics curriculum is available now. Covers stats, Preparatory Sessions, Python Programming, MySQL, PowerBI. Practical projects included. Enroll for a competitive edge.

  • Introduction to Data Analytics
  • Data Analytics Lifecycle,
  • Types of Data Statistics Basics (Mean, Median, Mode,Variance, Standard Deviation).
  • Introduction to Excel Interface
  • Basics of Excel
  • Spreadsheet basics
  • Data Entry.
  • Fundamentals of Excel
  • Insertion
  • Deletion
  • Importing Data
  • Table Creation

  • -sum()
  • min()
  • max()
  • count()
  • average()
  • if()
  • sumif()
  • countif()
  • averageif()
  • formatting text using right() left(), mid(), upper(), lower(),proper()

  • Introduction to Data Cleaning
  • Removing duplicate data
  • Handling missing data
  • Correcting inconsistent data
  • Text-to-columns and Flash Fill

  • Data Validations
  • Data transformation,
  • What-if analysis
  • scenario Manager
  • Removing unnecessary characters and spaces
  • Conditional formatting for data cleaning

  • Filtering and Sorting data in excel Descriptive Statistics
  • Mean
  • standard deviation, etc., using Analysis ToolPak
  • Mean, standard,deviation, etc., using Analysis ToolPak

  • TODAY
  • NOW
  • YEAR
  • MONTH
  • WEEKDAY
  • DATEDIF
  • VLOOKUP
  • HLOOKUP
  • XLOOKUP
  • INDEX
  • MATCH

  • Creating Pivot tables
  • Connecting multiple tables and show analysing and creating visualization with multiple tables.
  • Data Analysis and Visualization using Pivot Table

  • Charts and Graphs
  • Bar
  • Column
  • Pie
  • Line
  • Scatter
  • Combo charts
  • Sparklines
  • PivotCharts
  • Dynamic charts with slicers and filters
  • create and design interactive dashboard.

  • Installation of Power BI Desktop
  • Exploring the Power BI interface
  • Connecting to data sources

  • Importing Data into Power Query
  • Data Cleaning and Transformation: Handling Missing Data and Duplicate Data, Sorting and Filtering Rows, Aggregating and Grouping Data in Power Query

  • Normalization vs denormalization
  • Relationships in PowerBI
  • Cardinality
  • cross filter direction
  • Building Star schema data model

  • Calculated Columns and tables using DAX
  • Measures, Simple DAX Functions and Operators(Mathematical, Logical, Statistical & Text Functions)
  • Advanced DAX – Aggregations and Calculations(Aggregate, Filter, Datetime, Time Intelligence & Table Functions)

  • Bar
  • Column
  • Pie
  • Donut
  • Line,
  • Area,
  • Scatter
  • KPI & Gauge
  • Table
  • Matrix
  • Map
  • Tree map
  • Combo

  • Creating Hierarchies ; Filters, Slicers ; Drill-Downs

  • Learn how to apply Data Analysis using Excel and PowerBI, mini project spanning 10 days.

  • IS NULL,

  • IS NOT NULL

  • IN

  • NOT IN

  • BETWEEN

  • NOT BETWEEN

  • LIKE,

  • NOT LIKE

  • ORDER BY

  • LIMIT,

  • Aggregate functions,

  • GROUP BY, HAVING, INNER JOIN , LEFT JOIN, RIGHT JOIN, UNION, UNION ALL

  • Mathematical, String
  • Date & time
  •  User-defined function
  • Stored Procedures
  • Subqueries -single, multi-row; Views - simple, complex views, Triggers

  • DCL- GRANT, REVOKE ; TCL - COMMIT, SAVEPOINT, ROLLBACK - ACID properties, show connecting mysql and powerbi

Learn how to create and analyse databases using MySQL mini project, spanning 5 days.

  • String
  • String methods
  • String slicing
  • Tuple
  • Tuple methods
  • Immutable vs Mutable Data Types
  • Dictionary
  • Dictionary methods
  • Set
  • Set methods Frozenset

  • Conditional statements - if, else, elif, while loop ,else, break & continue with while loop, range; for loop ; else, break & continue with for loop; nested for loop ; enumerate ; List Comprehension

  • NumPy
  • NumPy arrays
  • Array operations and functions

merge, concat, join, group by

Visualization Using Matplotlib

  •  Scatter Plot
  • Line Chart
  • Bar Chart
  • Pie Chart
  • Histogram
  • Box Plot

VisualizationUsing Seaborn

  • Count Plot
  • Bar plot
  • Scatter plot
  • Line plot
  • Box plot
  • Histogram
  • Density Plot
  • Violin Plot
  • Swarm Plot
  • Heatmap
  • Pair Plot

Data Analytics Blogs

Explore Trending Topics of Data Analytics

How to Become a Data Analyst? Skills Required

Discover the path to becoming a data analyst in this insightful blog. Learn about the essential skills you need, from mastering data tools like Excel, SQL, and Python to honing analytical thinking and communication abilities. Explore industry trends, career opportunities, and practical tips to kickstart your journey in the dynamic world of data analysis.

Data Science Vs Data Analytics

Data Science focuses on building models and using advanced techniques like AI to predict outcomes. Data Analytics is about analyzing existing data to find trends and insights. Both are key in today’s data-driven world, but their goals and methods differ.

Exploratory Data Analysis Techniques

EDA makes sure that the proper patterns and trends are made available so that the model may be trained to produce the desired results, much like a good recipe. As a result, using the appropriate EDA tool and appropriate data will help accomplish the desired result.

Data Analysis – Process, Methods, Types

Explore the steps, methods, and types of data analysis used to turn raw data into actionable insights.

Eligibility /Pre-requisities

Anyone with an interest in data Analytics can enroll in these courses. There is no specific educational background required. However, a basic understanding of mathematics, statistics, and programming can be beneficial.

Basic Programming Skills icon

Basic Programming Skills

Analyzing and interpreting complex datasets, developing machine learning models, and providing actionable insights to solve business problems.

Logical thinking icon

Logical thinking

Having the ability to think critically and approach problems analytically by identifying its key components, and understanding how they relate to each other.

Problem-Solving Skills icon

Problem-Solving Skills

Formulate data-driven solutions, identify patterns and trends, and ability to apply logical thinking to solve complex problems with strong problem-solving and analytical skills.

Basic Mathematical skills icon

Basic Mathematical skills

Mastering fundamental mathematical concepts, like algebra, calculus, and probability, is essential.

Our Hiring Partners

Connect employers with a global network of recruitment partners to meet their hiring goals.

Why Live Sessions?

Live sessions on data Analytics have several advantages that make them a valuable learning resource.

Live Sessions

Real-time interaction

Live sessions allow learners to interact with instructors and peers in real time, promoting community and creating an environment for asking questions, receiving feedback, and learning from others.

Flexible and Convenient

Learners can participate from anywhere with an internet connection, making it easier to fit learning into their busy schedules. Also, if learners miss a session, recordings are often available for later viewing.

Up-to-date information

Live sessions are up-to-date with the latest trends and technologies. Instructors can share their expertise on emerging topics and provide insights into industry trends. This information helps learners stay current and competitive in the field of data Analytics.

Affordability

Compared to traditional classroom-based training, live sessions are often more affordable, making them accessible to a broader audience. This affordability also makes it easier for organizations to provide ongoing training and development opportunities to their employees.

Your Mentor

Gain an edge in your career by accessing our team of experts who will provide invaluable guidance and support. Meet our team of mentors!

Data Analytics instructors

Learn From Industry Experts

Data Analytics With Python Exam & Certification

Courses Recognised by

illinois Tech
NSDC

Frequently Asked Questions

Illinois certification validates your proficiency and expertise across various industries. It can enhance your credibility and positively impact your career growth, earning potential, and professional fulfillment. Obtaining Illinois certification opens up opportunities for career advancement and high-paying jobs, bringing ample career opportunities and enhancing your professional success.

Illinois certification is best for IT freshers. This certification program provides comprehensive training and education on various aspects of IT, including programming languages, software development, database management, and more.

Illinois certification helps freshers build a strong foundation in IT. It equips them with the necessary skills to succeed in their careers and to get better job opportunities with higher salaries.

What Our Students Are Saying

Enrolled by Students
4.8 (89 Ratings)

Key Learning Outcomes of Data Analytics Course

The key takeaways from the "Entri Data Analytics" course are as follows

Enhance your analytical skills

Cultivate the skills and usage of tools to tackle business problems independently. Master formulas across various tools

Master formulas across various tools

Learn extensively various formulas in powerful tools such as Python, SQL, etc.

Master business insights

Gain insights in how to extract data and present them to various stakeholders in a comprehendible manner

Practical projects

Experience hands-on projects that will familiarize you with the tools and its applications.

Live Sessions

Frequently Asked Question about Data Analytics Course

Data Analytics is the process of analyzing data to identify patterns, problems and make decisions based on the analytics.

Data Science is a broader field that involves using various techniques, algorithms, and tools to extract insights and knowledge from structured and unstructured data. Data Science involves not only analyzing data but also developing predictive models, creating machine learning algorithms, and building data-driven products. On the other hand, Data Analytics focuses on extracting insights and useful information from data by analyzing it. It is a narrower field that involves collecting, processing, and performing statistical analyses on data. The main goal of Data Analytics is to uncover patterns and trends in data that can inform business decisions or improve operational efficiency. In summary, Data Science is a more comprehensive field that includes Data Analytics, along with other techniques and tools for data processing, modeling, and product development.

Data analytics is the process of examining raw data using statistical and quantitative techniques to extract meaningful insights and information. It involves collecting, cleaning, processing, and analyzing data to identify patterns, relationships, and trends that can be used to make informed decisions. Data analytics is often used in scientific research, healthcare, and other fields where there is a large amount of data to be analyzed. Business analytics, is the use of data and statistical methods to drive business decisions and improve performance. It involves using data to identify opportunities for growth, optimize business processes, and make better decisions. It is often used in marketing, finance, and operations to improve performance and increase profitability. In summary, data analytics focuses on the analysis of data to uncover insights and information, while business analytics focuses on using data to drive business decisions and improve performance.

We would suggest our learners follow our curriculum and timeline to get the best results. Our mentors would also be following the same to help with the learners.

According to various sources across the globe, the scope for data analytics is really huge and is ready to be tapped in.

Data analysts are some of the most sought-after professionals in the tech industry, and it would be best if you were highly skilled to be good at what you do. Due to this, the chances of getting a job in data analytics are also high. With the right set of skills and mindset, you would be able to crack a role!

It would require at least 12-15 hours of time commitment per week from the learner’s side.

Eligibility for Refunds: Learners can avail a refund within 30 days of joining the batch. No refund request will be entertained under any circumstance after 30 days of joining the batch. Refunds are not applicable to the recorded video subscriptions. Refund Process: To request a refund, learners must contact our User Happiness Team and raise the refund request. Our team will analyze the case and decide on the refund. If approved, learners will receive the refund within 30 working days after approval. Learners will continue to pay the monthly EMI for loan (if applicable) and such loan cannot be canceled. Refund Amount: Refund amounts will be determined based on the following conditions (Once your refund request is approved): Before the batch starts, there will be an operational cost deduction of 20% of the paid amount or Rs 3000 whichever is the highest Once the batch starts, a deduction of 40% of the paid amount or Rs 6000 whichever is highest will be applicable. No refund requests will be entertained after 30 days from the date of batch commencement. Exclusions: Refunds are also not applicable to learners who have completed more than 30 days in the batch. Changes to the Refund Policy: We reserve the right to modify or update this refund policy at any time without prior notice. Any changes to the policy will be posted on our website Scenario Before batch commencement : 20% of the program fee paid or Rs 3000 (Whichever is highest) Post batch commencement up to 30 day: 40% of the program fee paid or Rs 6000 (Whichever is highest) Post 30 days of batch commencement: No Refund

If a Learner, due to unavoidable circumstances is unable to commence with the batch and requests for a deferral before the batch Commencement date, Learner will have an option to defer to another batch. There is no cost involved in changing the batch. However, you can raise a maximum of 1 batch change request and our academics team has to approve the batch change request. A Learner can request for deferral once to a batch which starts within the next 6 months from the batch start date of the initial batch the Learner enrolled for. For example if the initial batch commencement was January 1, the deferral batch commencement date should be within June 1.

Learners can apply to defer a batch till 30 days from the commencement of the batch. Only one deferral request will be entertained once the batch commences. No additional fee is applicable for deferrals Post 30 days, no batch deferrals will be entertained The deferred batch will be a fresh batch and not from where the user paused the initial batch. Deferral policy Scenario: Before batch commencement :No deferral fee. Learners can do one batch deferral request provided the batch is not commenced. The deferred batch commencement should be within 6 months from the first batch commencement date learner opted for. After batch commencement : Learner can request once for batch change / deferral within 30 days of batch commencement No deferral fee

Indeed, Data Analytics will make great careers in 2025. There is a strong market for qualified machine learning engineers and data scientists, and the pay is attractive. Furthermore, because the sector is perpetually changing, there are always fresh chances for development and learning.

Advantages of Learning Elevate Data Analytics Course

Elevate Learning Experience

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Student Support

Available all-day, using Slack for urgent queries.

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Q&A Forum

Timely doubt resolution from peers and mentors

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Expert Feedback

Personalized feedback on assignments and projects

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Industry Networking

Live doubt clearing sessions with Industry Experts

Career Support

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Personalized Industry Mentorship

Get personalized feedback and mentorship from an experienced data specialist to enhance your career path.

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Resume Review

Get personalized guidance on your resume structure and content.

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Live profile-building workshops

Build your profile with hands-on sessions, whether on your résumé, GitHub, or Kaggle platform.

Upcoming and Recorded Webinars

Who Can Apply For the Course

  • Students
  • Professionals
  • Career Switchers
  • Job Seekers
  • House Wife
  • Un-employers
  • Freelancers
Who can apply
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