SlideShare a Scribd company logo
1 of 12
Download to read offline
Data analytics
Introduction
Data analytics is the process of examining large datasets to uncover
hidden patterns, correlations, trends, and insights that can inform
decision-making and drive business strategies. In today's data-driven
world, organizations across various industries are leveraging data
analytics to gain a competitive edge, optimize operations, enhance
customer experiences, and innovate.
At its core, data analytics involves collecting, cleaning, transforming,
and analyzing data using various statistical and computational
techniques. It encompasses a spectrum of approaches, from
descriptive analytics, which focuses on summarizing and interpreting
historical data, to predictive analytics, which uses statistical models
and machine learning algorithms to forecast future trends and
outcomes. Additionally, prescriptive analytics suggests actions to
optimize results based on predictive insights.
Data analytics can be applied in diverse domains, including finance,
marketing, healthcare, manufacturing, retail, and more. It empowers
businesses to make data-driven decisions, identify opportunities for
growth, mitigate risks, and streamline processes. Moreover, it plays a
crucial role in extracting valuable insights from the vast amount of
data generated by digital technologies, such as social media, IoT
devices, and online transactions.
In essence, data analytics enables organizations to harness the power
of data to gain actionable insights, improve performance, and drive
innovation in an increasingly complex and interconnected world. As
technology continues to evolve and generate unprecedented volumes
of data, the importance of data analytics in unlocking its potential for
value creation and strategic decision-making will only continue to
grow.
Types of data analytics
Data analytics encompasses various types, each serving
different purposes and providing unique insights into data.
Here are some of the main types:
1. Descriptive Analytics:
- Descriptive analytics focuses on summarizing historical data
to understand what has happened in the past.
- It involves techniques such as data aggregation, data
mining, and data visualization to generate meaningful insights
and patterns.
- Descriptive analytics answers questions like "What
happened?" and "What are the key trends?"
2. Diagnostic Analytics:
- Diagnostic analytics goes beyond describing past events to
understand why they happened.
- It involves analyzing data to uncover the root causes of
specific outcomes or events.
- Diagnostic analytics helps organizations understand the
factors that influence certain trends or occurrences.
3. Predictive Analytics:
- Predictive analytics uses statistical models and machine
learning algorithms to forecast future outcomes or trends
based on historical data.
- It identifies patterns and relationships in data to make
predictions about future events.
- Predictive analytics enables organizations to anticipate
future trends, risks, and opportunities.
4. Prescriptive Analytics:
- Prescriptive analytics takes predictive analytics a step
further by providing recommendations or actions to optimize
future outcomes.
- It utilizes optimization and simulation techniques to suggest
the best course of action based on predictive insights.
- Prescriptive analytics helps organizations make informed
decisions and take proactive measures to achieve desired
outcomes.
5. Diagnostic Analytics:
- Diagnostic analytics focuses on understanding why certain
events occurred by analyzing historical data.
- It involves identifying patterns, correlations, and
relationships in data to uncover root causes.
- Diagnostic analytics helps organizations gain insights into
the factors influencing specific outcomes or trends.
6. Real-time Analytics:
- Real-time analytics involves analyzing data as it is generated
to provide immediate insights and actionable information.
- It enables organizations to respond quickly to changing
conditions, make data-driven decisions in real-time, and detect
anomalies or patterns as they occur.
- Real-time analytics is essential in applications such as fraud
detection, monitoring of IoT devices, and dynamic pricing in e-
commerce.
These types of data analytics complement each other and can
be used in combination to gain a comprehensive understanding
of data, inform decision-making, and drive business success.
Advantages of data analytics
Data analytics offers numerous advantages across various domains and
industries. Here are some key advantages:
1. Informed Decision-Making: Data analytics enables organizations to make
informed decisions by providing valuable insights derived from data analysis.
Whether it's optimizing business processes, identifying market trends, or
understanding customer behavior, data-driven insights empower decision-
makers to act with confidence.
2. Improved Efficiency and Productivity: By leveraging data analytics,
organizations can streamline processes, automate repetitive tasks, and identify
areas for optimization. This leads to improved efficiency, reduced costs, and
increased productivity as resources are allocated more effectively based on
data-driven insights.
3. Competitive Advantage: Data analytics provides organizations with a
competitive edge by uncovering hidden patterns, trends, and opportunities that
others may overlook. By leveraging data to make strategic decisions and
innovate, businesses can differentiate themselves in the market and stay ahead
of the competition.
4. Enhanced Customer Experience: Understanding customer preferences,
behavior, and sentiment through data analytics allows organizations to
personalize products, services, and marketing efforts. This leads to improved
customer satisfaction, loyalty, and retention, as well as more targeted and
effective marketing campaigns.
5. Risk Mitigation: Data analytics helps organizations identify and mitigate risks
by analyzing historical data, detecting anomalies, and predicting potential future
outcomes. Whether it's identifying fraudulent activities, managing supply chain
disruptions, or assessing financial risks, data analytics enables proactive risk
management strategies.
6. Innovation and Business Growth: Data analytics fuels innovation by
uncovering new insights, opportunities, and market trends. By leveraging datato
drive product development, identify untapped markets, and optimize business
strategies, organizations can foster innovation and accelerate growth.
7. Data-Driven Culture: Embracing data analytics fosters a data-driven culture
within organizations, where decisions are based on evidence and empirical
analysis rather than intuition or gut feeling. This encourages data literacy,
collaboration, and continuous learning, leading to more informed decision-
making at all levels of the organization.
8. Scalability and Flexibility: With advancements in technology and cloud
computing, data analytics solutions are increasingly scalable and flexible,
allowing organizations to process and analyze large volumes of data efficiently.
Whether it's scaling up to handle growing datasets or adapting to changing
business needs, data analytics solutions offer scalability and flexibility to meet
evolving requirements.
Features of data analytics
Data analytics encompasses a wide range of features and capabilities
that enable organizations to extract valuable insights from data. Here
are some key features of data analytics:
1. Data Collection: Data analytics involves collecting data from
various sources, including internal databases, external sources,
sensors, social media, and more. This may involve structured data
(e.g., databases) and unstructured data (e.g., text, images).
2. Data Cleaning and Preparation: Before analysis, data often needs to
be cleaned and prepared to ensure its quality and consistency. This
process involves removing errors, duplicates, and inconsistencies, as
well as transforming data into a suitable format for analysis.
3. Data Exploration and Visualization: Data analytics tools allow users
to explore and visualize data to uncover patterns, trends, and
relationships. Visualization techniques such as charts, graphs, and
dashboards help make complex data more understandable and
actionable.
4. Descriptive Analytics: Descriptive analytics involves summarizing
and interpreting historical data to understand what has happened in
the past. It provides insights into key metrics, trends, and patterns,
helping organizations gain a comprehensive view of their operations.
5. Diagnostic Analytics: Diagnostic analytics goes beyond descriptive
analytics to understand why certain events occurred. It involves
analyzing data to identify root causes, correlations, and relationships,
enabling organizations to diagnose problems and make informed
decisions.
6. Predictive Analytics: Predictive analytics uses statistical models and
machine learning algorithms to forecast future outcomes based on
historical data. It helps organizations anticipate trends, risks, and
opportunities, enabling proactive decision-making and strategic
planning.
7. Prescriptive Analytics: Prescriptive analytics takes predictive
analytics a step further by providing recommendations or actions to
optimize future outcomes. It suggests the best course of action based
on predictive insights, helping organizations make data-driven
decisions to achieve desired results.
8. Real-time Analytics: Real-time analytics involves analyzing data as
it is generated to provide immediate insights and actionable
information. It enables organizations to monitor operations in real-
time, detect anomalies, and respond quickly to changing conditions.
9. Scalability and Performance: Data analytics platforms and tools
should be scalable to handle large volumes of data efficiently and
perform analytics tasks in a timely manner. This ensures that
organizations can process and analyze data effectively as their needs
grow.
10. Integration and Collaboration: Data analytics solutions often
integrate with other systems and tools, such as databases, business
intelligence platforms, and data visualization tools. This enables
seamless data integration, collaboration among team members, and
sharing of insights across the organization.
Overall, these features of data analytics enable organizations to
extract valuable insights from data, make informed decisions, and
drive business success in today's data-driven world.
Scope of data analytics
The scope of data analytics is vast and continually expanding as organizations
across various industries recognize the value of leveraging data to drive
decision-making and innovation. Here are some key aspects that highlight the
scope of data analytics:
1. Business Intelligence: Data analytics plays a crucial role in business
intelligence, providing organizations with insights into their operations,
customers, and market trends. It enables companies to monitor key
performance indicators (KPIs), identify opportunities for improvement, and
make data-driven decisions to optimize business processes.
2. Marketing and Customer Insights: Data analytics helps marketers
understand customer behavior, preferences, and demographics to create
targeted marketing campaigns and personalized experiences. By analyzing
customer data from various channels, organizations can segment their
audience, optimize marketing strategies, and enhance customer engagement
and retention.
3. Financial Analysis and Risk Management: In finance, data analytics is used
for financial modeling, risk assessment, and fraud detection. By analyzing
financial data and market trends, organizations can make informed investment
decisions, manage risks effectively, and detect anomalies or fraudulent
activities in real-time.
4. Healthcare and Life Sciences: Data analytics is revolutionizing healthcare by
improving patient care, optimizing treatment outcomes, and reducing costs. It
enables healthcare providers to analyze patient data, identify patterns, and
personalize treatment plans. In life sciences, data analytics is used for drug
discovery, genomics research, and clinical trials analysis.
5. Supply Chain Management: Data analytics is essential for optimizing supply
chain operations, improving efficiency, and reducing costs. By analyzing supply
chain data, organizations can forecast demand, optimize inventory levels, and
streamline logistics processes to ensure timely delivery of products and
services.
6. Human Resources and Talent Management: Data analytics is increasingly
used in human resources (HR) to improve talent acquisition, employee
engagement, and performance management. By analyzing HR data,
organizations can identify top performers, assess employee satisfaction, and
develop data-driven strategies for talent retention and succession planning.
7. Internet of Things (IoT) and Sensor Data Analytics: With the proliferation of
IoT devices and sensors, there is a growing need for data analytics to process
and analyze the vast amount of data generated. Data analytics enables
organizations to extract actionable insights from IoT data, monitor equipment
performance, and optimize operations in industries such as manufacturing,
energy, and smart cities.
8. Social Media and Sentiment Analysis: Data analytics is used to analyze social
media data and extract insights into customer sentiment, brand perception,
and market trends. By monitoring social media conversations, organizations
can identify emerging issues, engage with customers, and shape their
marketing strategies accordingly.
9. Environmental and Sustainability Analytics: Data analytics is increasingly
used to address environmental challenges and promote sustainability. It
enables organizations to analyze environmental data, track carbon emissions,
optimize energy usage, and implement sustainable practices to reduce their
environmental footprint.
10. Government and Public Policy: Data analytics is employed in government
and public policy to inform decision-making, improve public services, and
enhance governance. It enables policymakers to analyze demographic data,
monitor public health trends, and develop evidence-based policies to address
social and economic challenges.
Overall, the scope of data analytics is broad and diverse, encompassing a wide
range of industries, applications, and use cases. As organizations continue to
generate and collect vast amounts of data, the demand for skilled data
analysts and data scientists will continue to grow, driving further innovation
and advancements in the field of data analytics.
Salary package
Data Analyst salary in India ranges between ₹ 1.8 Lakhs to ₹
13.0 Lakhs with an average annual salary of ₹ 6.4 Lakhs.
https://excellenceacademy.co.in/data-analytics-training-in-chandigarh/

More Related Content

Similar to Data analytics course in chandigarh, mohali

Regression and correlation
Regression and correlationRegression and correlation
Regression and correlationVrushaliSolanke
 
Data Analytics for Digital Marketing Lecture for Advanced Digital & Social Me...
Data Analytics for Digital Marketing Lecture for Advanced Digital & Social Me...Data Analytics for Digital Marketing Lecture for Advanced Digital & Social Me...
Data Analytics for Digital Marketing Lecture for Advanced Digital & Social Me...Valters Lauzums
 
Data Analysis Methods 101 - Turning Raw Data Into Actionable Insights
Data Analysis Methods 101 - Turning Raw Data Into Actionable InsightsData Analysis Methods 101 - Turning Raw Data Into Actionable Insights
Data Analysis Methods 101 - Turning Raw Data Into Actionable InsightsDataSpace Academy
 
Uncover Trends and Patterns with Data Science.pdf
Uncover Trends and Patterns with Data Science.pdfUncover Trends and Patterns with Data Science.pdf
Uncover Trends and Patterns with Data Science.pdfUncodemy
 
What Are the Challenges and Opportunities in Big Data Analytics.pdf
What Are the Challenges and Opportunities in Big Data Analytics.pdfWhat Are the Challenges and Opportunities in Big Data Analytics.pdf
What Are the Challenges and Opportunities in Big Data Analytics.pdfMr. Business Magazine
 
Analytics with Descriptive, Predictive and Prescriptive Techniques
Analytics with Descriptive, Predictive and Prescriptive TechniquesAnalytics with Descriptive, Predictive and Prescriptive Techniques
Analytics with Descriptive, Predictive and Prescriptive Techniquesleadershipsoil
 
Unit 1 pptx.pptx
Unit 1 pptx.pptxUnit 1 pptx.pptx
Unit 1 pptx.pptxrekhabawa2
 
Data Analytics Certification in Pune-January
Data Analytics Certification in Pune-JanuaryData Analytics Certification in Pune-January
Data Analytics Certification in Pune-JanuaryDataMites
 
Data_Analytics_introduction_to_Analytics
Data_Analytics_introduction_to_AnalyticsData_Analytics_introduction_to_Analytics
Data_Analytics_introduction_to_Analyticskoteshwari1
 
what is ..how to process types and methods involved in data analysis
what is ..how to process types and methods involved in data analysiswhat is ..how to process types and methods involved in data analysis
what is ..how to process types and methods involved in data analysisData analysis ireland
 
DATAFICATION - Datafication refers to the transformation of various aspects
DATAFICATION - Datafication refers to the transformation of various aspectsDATAFICATION - Datafication refers to the transformation of various aspects
DATAFICATION - Datafication refers to the transformation of various aspectsincmagazineseo
 
Business Decision-Making and Data Analytics
 Business Decision-Making and Data Analytics Business Decision-Making and Data Analytics
Business Decision-Making and Data AnalyticsCiente
 
How To Transform Your Analytics Maturity Model Levels, Technologies, and Appl...
How To Transform Your Analytics Maturity Model Levels, Technologies, and Appl...How To Transform Your Analytics Maturity Model Levels, Technologies, and Appl...
How To Transform Your Analytics Maturity Model Levels, Technologies, and Appl...Data Science Council of America
 
Understanding the Basics of Data Analytics
Understanding the Basics of Data AnalyticsUnderstanding the Basics of Data Analytics
Understanding the Basics of Data AnalyticsAttitude Tally Academy
 
5.Data Analytics.pptx
5.Data Analytics.pptx5.Data Analytics.pptx
5.Data Analytics.pptxAbhitazKhan
 
Data Analytics Course in Chennai-January
Data Analytics Course in Chennai-JanuaryData Analytics Course in Chennai-January
Data Analytics Course in Chennai-JanuaryDataMites
 

Similar to Data analytics course in chandigarh, mohali (20)

Introduction to Business Anlytics and Strategic Landscape
Introduction to Business Anlytics and Strategic LandscapeIntroduction to Business Anlytics and Strategic Landscape
Introduction to Business Anlytics and Strategic Landscape
 
Regression and correlation
Regression and correlationRegression and correlation
Regression and correlation
 
Data Analytics for Digital Marketing Lecture for Advanced Digital & Social Me...
Data Analytics for Digital Marketing Lecture for Advanced Digital & Social Me...Data Analytics for Digital Marketing Lecture for Advanced Digital & Social Me...
Data Analytics for Digital Marketing Lecture for Advanced Digital & Social Me...
 
Data Analysis Methods 101 - Turning Raw Data Into Actionable Insights
Data Analysis Methods 101 - Turning Raw Data Into Actionable InsightsData Analysis Methods 101 - Turning Raw Data Into Actionable Insights
Data Analysis Methods 101 - Turning Raw Data Into Actionable Insights
 
Uncover Trends and Patterns with Data Science.pdf
Uncover Trends and Patterns with Data Science.pdfUncover Trends and Patterns with Data Science.pdf
Uncover Trends and Patterns with Data Science.pdf
 
What Are the Challenges and Opportunities in Big Data Analytics.pdf
What Are the Challenges and Opportunities in Big Data Analytics.pdfWhat Are the Challenges and Opportunities in Big Data Analytics.pdf
What Are the Challenges and Opportunities in Big Data Analytics.pdf
 
LESSON 1.pdf
LESSON 1.pdfLESSON 1.pdf
LESSON 1.pdf
 
Analytics with Descriptive, Predictive and Prescriptive Techniques
Analytics with Descriptive, Predictive and Prescriptive TechniquesAnalytics with Descriptive, Predictive and Prescriptive Techniques
Analytics with Descriptive, Predictive and Prescriptive Techniques
 
Unit 1 pptx.pptx
Unit 1 pptx.pptxUnit 1 pptx.pptx
Unit 1 pptx.pptx
 
Data Analytics Certification in Pune-January
Data Analytics Certification in Pune-JanuaryData Analytics Certification in Pune-January
Data Analytics Certification in Pune-January
 
Data_Analytics_introduction_to_Analytics
Data_Analytics_introduction_to_AnalyticsData_Analytics_introduction_to_Analytics
Data_Analytics_introduction_to_Analytics
 
Insurance value chain
Insurance value chainInsurance value chain
Insurance value chain
 
what is ..how to process types and methods involved in data analysis
what is ..how to process types and methods involved in data analysiswhat is ..how to process types and methods involved in data analysis
what is ..how to process types and methods involved in data analysis
 
Business Analytics Unit III: Developing analytical talent
Business Analytics Unit III: Developing analytical talentBusiness Analytics Unit III: Developing analytical talent
Business Analytics Unit III: Developing analytical talent
 
DATAFICATION - Datafication refers to the transformation of various aspects
DATAFICATION - Datafication refers to the transformation of various aspectsDATAFICATION - Datafication refers to the transformation of various aspects
DATAFICATION - Datafication refers to the transformation of various aspects
 
Business Decision-Making and Data Analytics
 Business Decision-Making and Data Analytics Business Decision-Making and Data Analytics
Business Decision-Making and Data Analytics
 
How To Transform Your Analytics Maturity Model Levels, Technologies, and Appl...
How To Transform Your Analytics Maturity Model Levels, Technologies, and Appl...How To Transform Your Analytics Maturity Model Levels, Technologies, and Appl...
How To Transform Your Analytics Maturity Model Levels, Technologies, and Appl...
 
Understanding the Basics of Data Analytics
Understanding the Basics of Data AnalyticsUnderstanding the Basics of Data Analytics
Understanding the Basics of Data Analytics
 
5.Data Analytics.pptx
5.Data Analytics.pptx5.Data Analytics.pptx
5.Data Analytics.pptx
 
Data Analytics Course in Chennai-January
Data Analytics Course in Chennai-JanuaryData Analytics Course in Chennai-January
Data Analytics Course in Chennai-January
 

More from amarjeet7981999

Java training course in chandigarh, mohali
Java training course in chandigarh, mohaliJava training course in chandigarh, mohali
Java training course in chandigarh, mohaliamarjeet7981999
 
Web designing course in Chandigarh, Mohali
Web designing course in Chandigarh, MohaliWeb designing course in Chandigarh, Mohali
Web designing course in Chandigarh, Mohaliamarjeet7981999
 
Graphic designing course in Chandigarh , Mohali
Graphic designing course in Chandigarh , MohaliGraphic designing course in Chandigarh , Mohali
Graphic designing course in Chandigarh , Mohaliamarjeet7981999
 
DIGITAL MARKETING course in Chandigarh ,Mohali
DIGITAL MARKETING course in Chandigarh ,MohaliDIGITAL MARKETING course in Chandigarh ,Mohali
DIGITAL MARKETING course in Chandigarh ,Mohaliamarjeet7981999
 
web designing course in Chandigarh, mohali
web designing course in Chandigarh, mohaliweb designing course in Chandigarh, mohali
web designing course in Chandigarh, mohaliamarjeet7981999
 
digital marketing course in Chandigarh, Mohali
digital marketing course in Chandigarh, Mohalidigital marketing course in Chandigarh, Mohali
digital marketing course in Chandigarh, Mohaliamarjeet7981999
 

More from amarjeet7981999 (6)

Java training course in chandigarh, mohali
Java training course in chandigarh, mohaliJava training course in chandigarh, mohali
Java training course in chandigarh, mohali
 
Web designing course in Chandigarh, Mohali
Web designing course in Chandigarh, MohaliWeb designing course in Chandigarh, Mohali
Web designing course in Chandigarh, Mohali
 
Graphic designing course in Chandigarh , Mohali
Graphic designing course in Chandigarh , MohaliGraphic designing course in Chandigarh , Mohali
Graphic designing course in Chandigarh , Mohali
 
DIGITAL MARKETING course in Chandigarh ,Mohali
DIGITAL MARKETING course in Chandigarh ,MohaliDIGITAL MARKETING course in Chandigarh ,Mohali
DIGITAL MARKETING course in Chandigarh ,Mohali
 
web designing course in Chandigarh, mohali
web designing course in Chandigarh, mohaliweb designing course in Chandigarh, mohali
web designing course in Chandigarh, mohali
 
digital marketing course in Chandigarh, Mohali
digital marketing course in Chandigarh, Mohalidigital marketing course in Chandigarh, Mohali
digital marketing course in Chandigarh, Mohali
 

Recently uploaded

Basic Civil Engineering notes on Transportation Engineering & Modes of Transport
Basic Civil Engineering notes on Transportation Engineering & Modes of TransportBasic Civil Engineering notes on Transportation Engineering & Modes of Transport
Basic Civil Engineering notes on Transportation Engineering & Modes of TransportDenish Jangid
 
8 Tips for Effective Working Capital Management
8 Tips for Effective Working Capital Management8 Tips for Effective Working Capital Management
8 Tips for Effective Working Capital ManagementMBA Assignment Experts
 
Personalisation of Education by AI and Big Data - Lourdes Guàrdia
Personalisation of Education by AI and Big Data - Lourdes GuàrdiaPersonalisation of Education by AI and Big Data - Lourdes Guàrdia
Personalisation of Education by AI and Big Data - Lourdes GuàrdiaEADTU
 
Andreas Schleicher presents at the launch of What does child empowerment mean...
Andreas Schleicher presents at the launch of What does child empowerment mean...Andreas Schleicher presents at the launch of What does child empowerment mean...
Andreas Schleicher presents at the launch of What does child empowerment mean...EduSkills OECD
 
Improved Approval Flow in Odoo 17 Studio App
Improved Approval Flow in Odoo 17 Studio AppImproved Approval Flow in Odoo 17 Studio App
Improved Approval Flow in Odoo 17 Studio AppCeline George
 
How to Manage Website in Odoo 17 Studio App.pptx
How to Manage Website in Odoo 17 Studio App.pptxHow to Manage Website in Odoo 17 Studio App.pptx
How to Manage Website in Odoo 17 Studio App.pptxCeline George
 
Transparency, Recognition and the role of eSealing - Ildiko Mazar and Koen No...
Transparency, Recognition and the role of eSealing - Ildiko Mazar and Koen No...Transparency, Recognition and the role of eSealing - Ildiko Mazar and Koen No...
Transparency, Recognition and the role of eSealing - Ildiko Mazar and Koen No...EADTU
 
TỔNG HỢP HƠN 100 ĐỀ THI THỬ TỐT NGHIỆP THPT TOÁN 2024 - TỪ CÁC TRƯỜNG, TRƯỜNG...
TỔNG HỢP HƠN 100 ĐỀ THI THỬ TỐT NGHIỆP THPT TOÁN 2024 - TỪ CÁC TRƯỜNG, TRƯỜNG...TỔNG HỢP HƠN 100 ĐỀ THI THỬ TỐT NGHIỆP THPT TOÁN 2024 - TỪ CÁC TRƯỜNG, TRƯỜNG...
TỔNG HỢP HƠN 100 ĐỀ THI THỬ TỐT NGHIỆP THPT TOÁN 2024 - TỪ CÁC TRƯỜNG, TRƯỜNG...Nguyen Thanh Tu Collection
 
male presentation...pdf.................
male presentation...pdf.................male presentation...pdf.................
male presentation...pdf.................MirzaAbrarBaig5
 
Trauma-Informed Leadership - Five Practical Principles
Trauma-Informed Leadership - Five Practical PrinciplesTrauma-Informed Leadership - Five Practical Principles
Trauma-Informed Leadership - Five Practical PrinciplesPooky Knightsmith
 
Spellings Wk 4 and Wk 5 for Grade 4 at CAPS
Spellings Wk 4 and Wk 5 for Grade 4 at CAPSSpellings Wk 4 and Wk 5 for Grade 4 at CAPS
Spellings Wk 4 and Wk 5 for Grade 4 at CAPSAnaAcapella
 
Đề tieng anh thpt 2024 danh cho cac ban hoc sinh
Đề tieng anh thpt 2024 danh cho cac ban hoc sinhĐề tieng anh thpt 2024 danh cho cac ban hoc sinh
Đề tieng anh thpt 2024 danh cho cac ban hoc sinhleson0603
 
When Quality Assurance Meets Innovation in Higher Education - Report launch w...
When Quality Assurance Meets Innovation in Higher Education - Report launch w...When Quality Assurance Meets Innovation in Higher Education - Report launch w...
When Quality Assurance Meets Innovation in Higher Education - Report launch w...Gary Wood
 
How To Create Editable Tree View in Odoo 17
How To Create Editable Tree View in Odoo 17How To Create Editable Tree View in Odoo 17
How To Create Editable Tree View in Odoo 17Celine George
 
Sternal Fractures & Dislocations - EMGuidewire Radiology Reading Room
Sternal Fractures & Dislocations - EMGuidewire Radiology Reading RoomSternal Fractures & Dislocations - EMGuidewire Radiology Reading Room
Sternal Fractures & Dislocations - EMGuidewire Radiology Reading RoomSean M. Fox
 
Stl Algorithms in C++ jjjjjjjjjjjjjjjjjj
Stl Algorithms in C++ jjjjjjjjjjjjjjjjjjStl Algorithms in C++ jjjjjjjjjjjjjjjjjj
Stl Algorithms in C++ jjjjjjjjjjjjjjjjjjMohammed Sikander
 
TỔNG HỢP HƠN 100 ĐỀ THI THỬ TỐT NGHIỆP THPT TOÁN 2024 - TỪ CÁC TRƯỜNG, TRƯỜNG...
TỔNG HỢP HƠN 100 ĐỀ THI THỬ TỐT NGHIỆP THPT TOÁN 2024 - TỪ CÁC TRƯỜNG, TRƯỜNG...TỔNG HỢP HƠN 100 ĐỀ THI THỬ TỐT NGHIỆP THPT TOÁN 2024 - TỪ CÁC TRƯỜNG, TRƯỜNG...
TỔNG HỢP HƠN 100 ĐỀ THI THỬ TỐT NGHIỆP THPT TOÁN 2024 - TỪ CÁC TRƯỜNG, TRƯỜNG...Nguyen Thanh Tu Collection
 
An overview of the various scriptures in Hinduism
An overview of the various scriptures in HinduismAn overview of the various scriptures in Hinduism
An overview of the various scriptures in HinduismDabee Kamal
 

Recently uploaded (20)

Basic Civil Engineering notes on Transportation Engineering & Modes of Transport
Basic Civil Engineering notes on Transportation Engineering & Modes of TransportBasic Civil Engineering notes on Transportation Engineering & Modes of Transport
Basic Civil Engineering notes on Transportation Engineering & Modes of Transport
 
8 Tips for Effective Working Capital Management
8 Tips for Effective Working Capital Management8 Tips for Effective Working Capital Management
8 Tips for Effective Working Capital Management
 
Personalisation of Education by AI and Big Data - Lourdes Guàrdia
Personalisation of Education by AI and Big Data - Lourdes GuàrdiaPersonalisation of Education by AI and Big Data - Lourdes Guàrdia
Personalisation of Education by AI and Big Data - Lourdes Guàrdia
 
Andreas Schleicher presents at the launch of What does child empowerment mean...
Andreas Schleicher presents at the launch of What does child empowerment mean...Andreas Schleicher presents at the launch of What does child empowerment mean...
Andreas Schleicher presents at the launch of What does child empowerment mean...
 
Improved Approval Flow in Odoo 17 Studio App
Improved Approval Flow in Odoo 17 Studio AppImproved Approval Flow in Odoo 17 Studio App
Improved Approval Flow in Odoo 17 Studio App
 
How to Manage Website in Odoo 17 Studio App.pptx
How to Manage Website in Odoo 17 Studio App.pptxHow to Manage Website in Odoo 17 Studio App.pptx
How to Manage Website in Odoo 17 Studio App.pptx
 
Transparency, Recognition and the role of eSealing - Ildiko Mazar and Koen No...
Transparency, Recognition and the role of eSealing - Ildiko Mazar and Koen No...Transparency, Recognition and the role of eSealing - Ildiko Mazar and Koen No...
Transparency, Recognition and the role of eSealing - Ildiko Mazar and Koen No...
 
Mattingly "AI and Prompt Design: LLMs with NER"
Mattingly "AI and Prompt Design: LLMs with NER"Mattingly "AI and Prompt Design: LLMs with NER"
Mattingly "AI and Prompt Design: LLMs with NER"
 
TỔNG HỢP HƠN 100 ĐỀ THI THỬ TỐT NGHIỆP THPT TOÁN 2024 - TỪ CÁC TRƯỜNG, TRƯỜNG...
TỔNG HỢP HƠN 100 ĐỀ THI THỬ TỐT NGHIỆP THPT TOÁN 2024 - TỪ CÁC TRƯỜNG, TRƯỜNG...TỔNG HỢP HƠN 100 ĐỀ THI THỬ TỐT NGHIỆP THPT TOÁN 2024 - TỪ CÁC TRƯỜNG, TRƯỜNG...
TỔNG HỢP HƠN 100 ĐỀ THI THỬ TỐT NGHIỆP THPT TOÁN 2024 - TỪ CÁC TRƯỜNG, TRƯỜNG...
 
male presentation...pdf.................
male presentation...pdf.................male presentation...pdf.................
male presentation...pdf.................
 
Trauma-Informed Leadership - Five Practical Principles
Trauma-Informed Leadership - Five Practical PrinciplesTrauma-Informed Leadership - Five Practical Principles
Trauma-Informed Leadership - Five Practical Principles
 
Spellings Wk 4 and Wk 5 for Grade 4 at CAPS
Spellings Wk 4 and Wk 5 for Grade 4 at CAPSSpellings Wk 4 and Wk 5 for Grade 4 at CAPS
Spellings Wk 4 and Wk 5 for Grade 4 at CAPS
 
Đề tieng anh thpt 2024 danh cho cac ban hoc sinh
Đề tieng anh thpt 2024 danh cho cac ban hoc sinhĐề tieng anh thpt 2024 danh cho cac ban hoc sinh
Đề tieng anh thpt 2024 danh cho cac ban hoc sinh
 
When Quality Assurance Meets Innovation in Higher Education - Report launch w...
When Quality Assurance Meets Innovation in Higher Education - Report launch w...When Quality Assurance Meets Innovation in Higher Education - Report launch w...
When Quality Assurance Meets Innovation in Higher Education - Report launch w...
 
How To Create Editable Tree View in Odoo 17
How To Create Editable Tree View in Odoo 17How To Create Editable Tree View in Odoo 17
How To Create Editable Tree View in Odoo 17
 
Sternal Fractures & Dislocations - EMGuidewire Radiology Reading Room
Sternal Fractures & Dislocations - EMGuidewire Radiology Reading RoomSternal Fractures & Dislocations - EMGuidewire Radiology Reading Room
Sternal Fractures & Dislocations - EMGuidewire Radiology Reading Room
 
Stl Algorithms in C++ jjjjjjjjjjjjjjjjjj
Stl Algorithms in C++ jjjjjjjjjjjjjjjjjjStl Algorithms in C++ jjjjjjjjjjjjjjjjjj
Stl Algorithms in C++ jjjjjjjjjjjjjjjjjj
 
TỔNG HỢP HƠN 100 ĐỀ THI THỬ TỐT NGHIỆP THPT TOÁN 2024 - TỪ CÁC TRƯỜNG, TRƯỜNG...
TỔNG HỢP HƠN 100 ĐỀ THI THỬ TỐT NGHIỆP THPT TOÁN 2024 - TỪ CÁC TRƯỜNG, TRƯỜNG...TỔNG HỢP HƠN 100 ĐỀ THI THỬ TỐT NGHIỆP THPT TOÁN 2024 - TỪ CÁC TRƯỜNG, TRƯỜNG...
TỔNG HỢP HƠN 100 ĐỀ THI THỬ TỐT NGHIỆP THPT TOÁN 2024 - TỪ CÁC TRƯỜNG, TRƯỜNG...
 
Including Mental Health Support in Project Delivery, 14 May.pdf
Including Mental Health Support in Project Delivery, 14 May.pdfIncluding Mental Health Support in Project Delivery, 14 May.pdf
Including Mental Health Support in Project Delivery, 14 May.pdf
 
An overview of the various scriptures in Hinduism
An overview of the various scriptures in HinduismAn overview of the various scriptures in Hinduism
An overview of the various scriptures in Hinduism
 

Data analytics course in chandigarh, mohali

  • 1. Data analytics Introduction Data analytics is the process of examining large datasets to uncover hidden patterns, correlations, trends, and insights that can inform decision-making and drive business strategies. In today's data-driven world, organizations across various industries are leveraging data analytics to gain a competitive edge, optimize operations, enhance customer experiences, and innovate. At its core, data analytics involves collecting, cleaning, transforming, and analyzing data using various statistical and computational techniques. It encompasses a spectrum of approaches, from descriptive analytics, which focuses on summarizing and interpreting historical data, to predictive analytics, which uses statistical models and machine learning algorithms to forecast future trends and outcomes. Additionally, prescriptive analytics suggests actions to optimize results based on predictive insights. Data analytics can be applied in diverse domains, including finance, marketing, healthcare, manufacturing, retail, and more. It empowers businesses to make data-driven decisions, identify opportunities for growth, mitigate risks, and streamline processes. Moreover, it plays a crucial role in extracting valuable insights from the vast amount of data generated by digital technologies, such as social media, IoT devices, and online transactions. In essence, data analytics enables organizations to harness the power of data to gain actionable insights, improve performance, and drive
  • 2. innovation in an increasingly complex and interconnected world. As technology continues to evolve and generate unprecedented volumes of data, the importance of data analytics in unlocking its potential for value creation and strategic decision-making will only continue to grow.
  • 3. Types of data analytics Data analytics encompasses various types, each serving different purposes and providing unique insights into data. Here are some of the main types: 1. Descriptive Analytics: - Descriptive analytics focuses on summarizing historical data to understand what has happened in the past. - It involves techniques such as data aggregation, data mining, and data visualization to generate meaningful insights and patterns. - Descriptive analytics answers questions like "What happened?" and "What are the key trends?" 2. Diagnostic Analytics: - Diagnostic analytics goes beyond describing past events to understand why they happened. - It involves analyzing data to uncover the root causes of specific outcomes or events. - Diagnostic analytics helps organizations understand the factors that influence certain trends or occurrences. 3. Predictive Analytics: - Predictive analytics uses statistical models and machine learning algorithms to forecast future outcomes or trends based on historical data.
  • 4. - It identifies patterns and relationships in data to make predictions about future events. - Predictive analytics enables organizations to anticipate future trends, risks, and opportunities. 4. Prescriptive Analytics: - Prescriptive analytics takes predictive analytics a step further by providing recommendations or actions to optimize future outcomes. - It utilizes optimization and simulation techniques to suggest the best course of action based on predictive insights. - Prescriptive analytics helps organizations make informed decisions and take proactive measures to achieve desired outcomes. 5. Diagnostic Analytics: - Diagnostic analytics focuses on understanding why certain events occurred by analyzing historical data. - It involves identifying patterns, correlations, and relationships in data to uncover root causes. - Diagnostic analytics helps organizations gain insights into the factors influencing specific outcomes or trends. 6. Real-time Analytics: - Real-time analytics involves analyzing data as it is generated to provide immediate insights and actionable information.
  • 5. - It enables organizations to respond quickly to changing conditions, make data-driven decisions in real-time, and detect anomalies or patterns as they occur. - Real-time analytics is essential in applications such as fraud detection, monitoring of IoT devices, and dynamic pricing in e- commerce. These types of data analytics complement each other and can be used in combination to gain a comprehensive understanding of data, inform decision-making, and drive business success.
  • 6. Advantages of data analytics Data analytics offers numerous advantages across various domains and industries. Here are some key advantages: 1. Informed Decision-Making: Data analytics enables organizations to make informed decisions by providing valuable insights derived from data analysis. Whether it's optimizing business processes, identifying market trends, or understanding customer behavior, data-driven insights empower decision- makers to act with confidence. 2. Improved Efficiency and Productivity: By leveraging data analytics, organizations can streamline processes, automate repetitive tasks, and identify areas for optimization. This leads to improved efficiency, reduced costs, and increased productivity as resources are allocated more effectively based on data-driven insights. 3. Competitive Advantage: Data analytics provides organizations with a competitive edge by uncovering hidden patterns, trends, and opportunities that others may overlook. By leveraging data to make strategic decisions and innovate, businesses can differentiate themselves in the market and stay ahead of the competition. 4. Enhanced Customer Experience: Understanding customer preferences, behavior, and sentiment through data analytics allows organizations to personalize products, services, and marketing efforts. This leads to improved customer satisfaction, loyalty, and retention, as well as more targeted and effective marketing campaigns. 5. Risk Mitigation: Data analytics helps organizations identify and mitigate risks by analyzing historical data, detecting anomalies, and predicting potential future outcomes. Whether it's identifying fraudulent activities, managing supply chain disruptions, or assessing financial risks, data analytics enables proactive risk management strategies. 6. Innovation and Business Growth: Data analytics fuels innovation by uncovering new insights, opportunities, and market trends. By leveraging datato
  • 7. drive product development, identify untapped markets, and optimize business strategies, organizations can foster innovation and accelerate growth. 7. Data-Driven Culture: Embracing data analytics fosters a data-driven culture within organizations, where decisions are based on evidence and empirical analysis rather than intuition or gut feeling. This encourages data literacy, collaboration, and continuous learning, leading to more informed decision- making at all levels of the organization. 8. Scalability and Flexibility: With advancements in technology and cloud computing, data analytics solutions are increasingly scalable and flexible, allowing organizations to process and analyze large volumes of data efficiently. Whether it's scaling up to handle growing datasets or adapting to changing business needs, data analytics solutions offer scalability and flexibility to meet evolving requirements.
  • 8. Features of data analytics Data analytics encompasses a wide range of features and capabilities that enable organizations to extract valuable insights from data. Here are some key features of data analytics: 1. Data Collection: Data analytics involves collecting data from various sources, including internal databases, external sources, sensors, social media, and more. This may involve structured data (e.g., databases) and unstructured data (e.g., text, images). 2. Data Cleaning and Preparation: Before analysis, data often needs to be cleaned and prepared to ensure its quality and consistency. This process involves removing errors, duplicates, and inconsistencies, as well as transforming data into a suitable format for analysis. 3. Data Exploration and Visualization: Data analytics tools allow users to explore and visualize data to uncover patterns, trends, and relationships. Visualization techniques such as charts, graphs, and dashboards help make complex data more understandable and actionable. 4. Descriptive Analytics: Descriptive analytics involves summarizing and interpreting historical data to understand what has happened in the past. It provides insights into key metrics, trends, and patterns, helping organizations gain a comprehensive view of their operations. 5. Diagnostic Analytics: Diagnostic analytics goes beyond descriptive analytics to understand why certain events occurred. It involves analyzing data to identify root causes, correlations, and relationships, enabling organizations to diagnose problems and make informed decisions. 6. Predictive Analytics: Predictive analytics uses statistical models and machine learning algorithms to forecast future outcomes based on historical data. It helps organizations anticipate trends, risks, and opportunities, enabling proactive decision-making and strategic planning. 7. Prescriptive Analytics: Prescriptive analytics takes predictive analytics a step further by providing recommendations or actions to
  • 9. optimize future outcomes. It suggests the best course of action based on predictive insights, helping organizations make data-driven decisions to achieve desired results. 8. Real-time Analytics: Real-time analytics involves analyzing data as it is generated to provide immediate insights and actionable information. It enables organizations to monitor operations in real- time, detect anomalies, and respond quickly to changing conditions. 9. Scalability and Performance: Data analytics platforms and tools should be scalable to handle large volumes of data efficiently and perform analytics tasks in a timely manner. This ensures that organizations can process and analyze data effectively as their needs grow. 10. Integration and Collaboration: Data analytics solutions often integrate with other systems and tools, such as databases, business intelligence platforms, and data visualization tools. This enables seamless data integration, collaboration among team members, and sharing of insights across the organization. Overall, these features of data analytics enable organizations to extract valuable insights from data, make informed decisions, and drive business success in today's data-driven world.
  • 10. Scope of data analytics The scope of data analytics is vast and continually expanding as organizations across various industries recognize the value of leveraging data to drive decision-making and innovation. Here are some key aspects that highlight the scope of data analytics: 1. Business Intelligence: Data analytics plays a crucial role in business intelligence, providing organizations with insights into their operations, customers, and market trends. It enables companies to monitor key performance indicators (KPIs), identify opportunities for improvement, and make data-driven decisions to optimize business processes. 2. Marketing and Customer Insights: Data analytics helps marketers understand customer behavior, preferences, and demographics to create targeted marketing campaigns and personalized experiences. By analyzing customer data from various channels, organizations can segment their audience, optimize marketing strategies, and enhance customer engagement and retention. 3. Financial Analysis and Risk Management: In finance, data analytics is used for financial modeling, risk assessment, and fraud detection. By analyzing financial data and market trends, organizations can make informed investment decisions, manage risks effectively, and detect anomalies or fraudulent activities in real-time. 4. Healthcare and Life Sciences: Data analytics is revolutionizing healthcare by improving patient care, optimizing treatment outcomes, and reducing costs. It enables healthcare providers to analyze patient data, identify patterns, and personalize treatment plans. In life sciences, data analytics is used for drug discovery, genomics research, and clinical trials analysis. 5. Supply Chain Management: Data analytics is essential for optimizing supply chain operations, improving efficiency, and reducing costs. By analyzing supply chain data, organizations can forecast demand, optimize inventory levels, and streamline logistics processes to ensure timely delivery of products and services.
  • 11. 6. Human Resources and Talent Management: Data analytics is increasingly used in human resources (HR) to improve talent acquisition, employee engagement, and performance management. By analyzing HR data, organizations can identify top performers, assess employee satisfaction, and develop data-driven strategies for talent retention and succession planning. 7. Internet of Things (IoT) and Sensor Data Analytics: With the proliferation of IoT devices and sensors, there is a growing need for data analytics to process and analyze the vast amount of data generated. Data analytics enables organizations to extract actionable insights from IoT data, monitor equipment performance, and optimize operations in industries such as manufacturing, energy, and smart cities. 8. Social Media and Sentiment Analysis: Data analytics is used to analyze social media data and extract insights into customer sentiment, brand perception, and market trends. By monitoring social media conversations, organizations can identify emerging issues, engage with customers, and shape their marketing strategies accordingly. 9. Environmental and Sustainability Analytics: Data analytics is increasingly used to address environmental challenges and promote sustainability. It enables organizations to analyze environmental data, track carbon emissions, optimize energy usage, and implement sustainable practices to reduce their environmental footprint. 10. Government and Public Policy: Data analytics is employed in government and public policy to inform decision-making, improve public services, and enhance governance. It enables policymakers to analyze demographic data, monitor public health trends, and develop evidence-based policies to address social and economic challenges. Overall, the scope of data analytics is broad and diverse, encompassing a wide range of industries, applications, and use cases. As organizations continue to generate and collect vast amounts of data, the demand for skilled data analysts and data scientists will continue to grow, driving further innovation and advancements in the field of data analytics.
  • 12. Salary package Data Analyst salary in India ranges between ₹ 1.8 Lakhs to ₹ 13.0 Lakhs with an average annual salary of ₹ 6.4 Lakhs. https://excellenceacademy.co.in/data-analytics-training-in-chandigarh/