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INTRODUCTION TO DATA SCIENCE &
ANALYTICS
Learn how to leverage data & analytics to help increase business value.
www.datatechcon.com 1
5
Progress
6
Future Plans
3
Timeline
4
Our Team
INTRODUCTION
1
About Us
2
Our Services
• Fortune 200 Data Scientist
• Founder of Data Techcon
• 10+ years experience in tech
• MIT certified analytics expert
• Data Subject Matter Expert at compTIA
• Trained more than 500 students.
www.datatechcon.com 2
DATA SCIENCE & ANALYTICS TERMS
www.datatechcon.com 3
01. Data Science is an inter-
disciplinary field that uses
scientific methods & algorithms
to extract insights from data. It
is an umbrella term for a
group of fields like DA,
ML……
02. Data: is any pieces of
information represented in the
form of text, image, numbers,
sounds etc.
03. Data Analytics is a sub
field in data science that
focuses on utilizing data to
draw meaningful insights and
solving problem
04. Data Analysis: is a process
in data analytics workflow. It is
the application of statistics to
derive a summary of data.
05. Business Intelligence:
combines business analytics,
data mining, data visualization,
data tools and infrastructure,
and best practices to help
organizations to make more
data-driven decisions.
DATA SCIENCE
& ANALYTICS
TERMS
• 06. Machine Learning: is a sub field of AI and
DS. The ability of machines to produce outcomes. It's
all about implementing algorithms that lets machine
receives data and uses the data to make prediction
and identify patterns and give recommendation. ML
cannot be implemented without data. Demand for
real-time dashboards open opportunities for ML.
• 07. Artificial Intelligence: is simulating human
knowledge and decision making with computers. We
reach ai through Machine Learning.
• 08. Augmented Analytics: is the use of enabling
technologies such as machine learning and AI to
assist with data preparation, insight generation and
insight explanation to augment how people explore
and analyze data in analytics and BI platforms. We
leverage augmented analytics to eliminate iterative
processes like improve data quality, monitor data,
prepare data and derive quick insights.
www.datatechcon.com 4
2 MAJOR CATEGORIES OF DATA SCIENCIST
www.datatechcon.com 5
BUSINESS DATA SCIENTIST-
FOCUS ON ANALYZING
AND DERIVING INSIGHTS
FROM HISTORIC DATA TO
UNDERSTAND WHAT
HAPPENED IN THE PAST…..
PRODUCT DATA
SCIENTIST– FOCUS ON
APPLYING ML ALGORTHMS
AND BUILDING MODELS
THAT FORECAST FUTURE
OUTCOMES……
HOW TO GET
INTO DATA
SCIENCE &
ANALYTICS
www.datatechcon.com 6
ACCREDITED DEGREE
PROGRAMS
ONLINE CERTIFICATION
TRAINING OR BOOTCAMPS
SELF STUDY
DATA
CHALLENGES
www.datatechcon.com 7
Poor Data Quality – Messy Data
Inaccessible Data – Database
Data Collection – lack of real-time data
Data Silo
Data Inconsistency – Disparate sources
Data Management – SQL , NO SQL
Cost – Tools, softwares, hardwares
This analysis historic data to uncover
insights on past incidents such as
revenue, sales, cost etc.
Descriptive
As the name suggests, predictive
analytics is about predicting the
future outcomes
Predictive
Prescriptive analytics determines
which action to take to improve a
situation or solve a problem.
Prescriptive
DATA ANALYTICS
Data Analytics refers to process of analyzing raw data to uncover insights, identify trends & patterns
to make informed business decision. Data is extracted from various sources and is cleaned and
categorized to analyze different behavioral patterns. The techniques and the tools used
vary according to the organization or individual.
www.datatechcon.com 8
KEY BENEFITS OF DATA ANALYTICS
www.datatechcon.com 9
Increase
revenue
1
Mitigate risk of
wasteful
investment
2
Improve
operational
value
3
Monitor & Track
KPIs towards
goal projection
4
Automate
reporting
5
WHEN TO USE ANALYTICS
50%
22%
28%
www.datatechcon.com 10
DATA ANALYTICS TOOLS
Most required tools and technologies based on research and job interviews
SQL BI EXCEL PYTHON R
www.datatechcon.com 1
Abilities to leverage technologies, tools or
software
HARD SKILLS
Industry or functions or area of
specialization
DOMAIN EXPERTISE
Communication, presentation, problem
solving skills
SOFT SKILLS
DATA ANALYTICS SKILLS CATEGORIES
The goal of becoming a successful data analytics professional is by having a
combination skillsets of hard, soft and domain expertise. This will give you
competitive edge over other applicants in a position or role.
www.datatechcon.com 1
KPI METRICS
KPI is also known as Key Performance Indicator.
These are important metrics used to track and
measure performance towards business goals.
01. Ecommerce: Revenue, Profit, Profit
margin, ROI
02. Healthcare: Total Patients, response
time, Recovery rate, Length of stay
03. Marketing: CTR, conversion rate, CPL,
Customer LTV, ROAS, ROI
www.datatechcon.com 13
To analyze patient’s health &
Predict recovery cycle.
HEALTHCARE
To help detect customer that
are likely to default in loans.
FINANCE
To increase brand awareness
and customer conversion rate.
MARKETING
To forecast sales and
customer’s lifetime value
SALES
To predict top performing
products for restocking.
LOGISTICS
To identify fraudulent claims
to help save cost.
INSURANCE
APPLICATION OF DATA ANALYTICS
Succesfull companies harness the power of data and analytics to make data-driven
decisions.
www.datatechcon.com 14
DATA ANALYTICS JOB ROLES
• Data Analyst
• Business Data Analyst
• Business Intelligence Analyst
• Data Analytics Specialist
• Data Visualization Engineer
• Product Data Analyst
• Marketing Analyst
• Healthcare Data Analyst
• Financial Analyst
www.datatechcon.com 15
• Digital Marketing Analyst
• Reporting Analyst
• HR Analyst
• Customer Insights Analyst
• Web Analyst
• CRM Data Analyst
• Manager of Insights & Analytics
• Analytics Manager
• BI Analyst
Understand the
purpose of the
analysis
BUSINESS GOAL
Identify data sources
and collect data
DATA COLLECTION
Manipulate and
transform your dataset
DATA CLEANSING
Apply statistical
analysis to dataset
Analysis
Create visualizations
& Present the data
Visualization
DATA ANALYTICS FRAMEWORK
Data analytics lifecycle workflow
www.datatechcon.com 16
www.datatechcon.com 17
DATA SCIENCE DEVELOPMENT FRAMEWORK
DATA ANALYTICS
CRISP-DM FRAMEWORK
CRISP-DM stands for Cross Industry Standard Process for
Data Mining (6 phases)
• BUSINESS UNDERSTANDING – Understanding the
business projects and objectives
• DATA UNDERSTANDING – Identifying data sources
and databases, collecting & exploring the datasets.
• DATA PREPARATION – data preprocessing and data
cleaning(the most time-consuming phase).
• MODELING – Building model in using machine learning
algorithms
• EVALUATION – Evaluate the performance of the model
• DEPLOYMENT – Deployment to production
www.datatechcon.com 18
DATA ANALYTICS
PROJECT QUESTIONS
• Questions to ask when tasked with an analytics end to end
project.
• What is the goal of the project?
• What is the main problem and solution goal?
• What are the data sources and databases?
• What data is available?
• Is there a data dictionary?
• What type of analysis is requires? Trend, exploratory,
performance?
• Who are the audience or end users?
• How are the data related in each tables?
www.datatechcon.com 19
DATA
GOVERNANCE
www.datatechcon.com 20
Data quality ensures we have quality
data that is secured and have integrity.
• Data quality
• Data dictionary
• Data analysts work within the plan
COMMON MISTAKES
BEGINNERS MAKE
www.datatechcon.com 21
Assuming it's easy -
when u start skills its
easy to assume that
consolidating the data
is easy.
Records count - check
the record count 50
states showing 100
Verify your
calculations - don't
trust the numbers. Use
a calc
Failing to ask for data
dictionary - create
one if it doesn’t exist
Making assumption -
don't assume ask
questions
Making calculations
hard to use -
document
Joins - spend more
time working with
multiple tables to
improve joins
Limited access to the
database - working
with only csv or excel
LEARNING
TAKEAWAYS
• Learn how to leverage data & analytics to make
data-driven decisions.
• Understand data analytics workflow
• Develop analytics interactive dashboards.
• Learn how to uncover insights & tell a data story
• Learn how to use core data analytics tools.
• Become job ready for a data analytics roles
DATA ANALYST LEARN MORE
www.datatechcon.com 22
THANK YOUQuestions & Answers
PERSONAL IG @omozara
BUSINESS IG @datatechcon
WEBSITE: www.datatechcon.com
www.datatechcon.com 23

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Data Science and Analytics

  • 1. INTRODUCTION TO DATA SCIENCE & ANALYTICS Learn how to leverage data & analytics to help increase business value. www.datatechcon.com 1
  • 2. 5 Progress 6 Future Plans 3 Timeline 4 Our Team INTRODUCTION 1 About Us 2 Our Services • Fortune 200 Data Scientist • Founder of Data Techcon • 10+ years experience in tech • MIT certified analytics expert • Data Subject Matter Expert at compTIA • Trained more than 500 students. www.datatechcon.com 2
  • 3. DATA SCIENCE & ANALYTICS TERMS www.datatechcon.com 3 01. Data Science is an inter- disciplinary field that uses scientific methods & algorithms to extract insights from data. It is an umbrella term for a group of fields like DA, ML…… 02. Data: is any pieces of information represented in the form of text, image, numbers, sounds etc. 03. Data Analytics is a sub field in data science that focuses on utilizing data to draw meaningful insights and solving problem 04. Data Analysis: is a process in data analytics workflow. It is the application of statistics to derive a summary of data. 05. Business Intelligence: combines business analytics, data mining, data visualization, data tools and infrastructure, and best practices to help organizations to make more data-driven decisions.
  • 4. DATA SCIENCE & ANALYTICS TERMS • 06. Machine Learning: is a sub field of AI and DS. The ability of machines to produce outcomes. It's all about implementing algorithms that lets machine receives data and uses the data to make prediction and identify patterns and give recommendation. ML cannot be implemented without data. Demand for real-time dashboards open opportunities for ML. • 07. Artificial Intelligence: is simulating human knowledge and decision making with computers. We reach ai through Machine Learning. • 08. Augmented Analytics: is the use of enabling technologies such as machine learning and AI to assist with data preparation, insight generation and insight explanation to augment how people explore and analyze data in analytics and BI platforms. We leverage augmented analytics to eliminate iterative processes like improve data quality, monitor data, prepare data and derive quick insights. www.datatechcon.com 4
  • 5. 2 MAJOR CATEGORIES OF DATA SCIENCIST www.datatechcon.com 5 BUSINESS DATA SCIENTIST- FOCUS ON ANALYZING AND DERIVING INSIGHTS FROM HISTORIC DATA TO UNDERSTAND WHAT HAPPENED IN THE PAST….. PRODUCT DATA SCIENTIST– FOCUS ON APPLYING ML ALGORTHMS AND BUILDING MODELS THAT FORECAST FUTURE OUTCOMES……
  • 6. HOW TO GET INTO DATA SCIENCE & ANALYTICS www.datatechcon.com 6 ACCREDITED DEGREE PROGRAMS ONLINE CERTIFICATION TRAINING OR BOOTCAMPS SELF STUDY
  • 7. DATA CHALLENGES www.datatechcon.com 7 Poor Data Quality – Messy Data Inaccessible Data – Database Data Collection – lack of real-time data Data Silo Data Inconsistency – Disparate sources Data Management – SQL , NO SQL Cost – Tools, softwares, hardwares
  • 8. This analysis historic data to uncover insights on past incidents such as revenue, sales, cost etc. Descriptive As the name suggests, predictive analytics is about predicting the future outcomes Predictive Prescriptive analytics determines which action to take to improve a situation or solve a problem. Prescriptive DATA ANALYTICS Data Analytics refers to process of analyzing raw data to uncover insights, identify trends & patterns to make informed business decision. Data is extracted from various sources and is cleaned and categorized to analyze different behavioral patterns. The techniques and the tools used vary according to the organization or individual. www.datatechcon.com 8
  • 9. KEY BENEFITS OF DATA ANALYTICS www.datatechcon.com 9 Increase revenue 1 Mitigate risk of wasteful investment 2 Improve operational value 3 Monitor & Track KPIs towards goal projection 4 Automate reporting 5
  • 10. WHEN TO USE ANALYTICS 50% 22% 28% www.datatechcon.com 10
  • 11. DATA ANALYTICS TOOLS Most required tools and technologies based on research and job interviews SQL BI EXCEL PYTHON R www.datatechcon.com 1
  • 12. Abilities to leverage technologies, tools or software HARD SKILLS Industry or functions or area of specialization DOMAIN EXPERTISE Communication, presentation, problem solving skills SOFT SKILLS DATA ANALYTICS SKILLS CATEGORIES The goal of becoming a successful data analytics professional is by having a combination skillsets of hard, soft and domain expertise. This will give you competitive edge over other applicants in a position or role. www.datatechcon.com 1
  • 13. KPI METRICS KPI is also known as Key Performance Indicator. These are important metrics used to track and measure performance towards business goals. 01. Ecommerce: Revenue, Profit, Profit margin, ROI 02. Healthcare: Total Patients, response time, Recovery rate, Length of stay 03. Marketing: CTR, conversion rate, CPL, Customer LTV, ROAS, ROI www.datatechcon.com 13
  • 14. To analyze patient’s health & Predict recovery cycle. HEALTHCARE To help detect customer that are likely to default in loans. FINANCE To increase brand awareness and customer conversion rate. MARKETING To forecast sales and customer’s lifetime value SALES To predict top performing products for restocking. LOGISTICS To identify fraudulent claims to help save cost. INSURANCE APPLICATION OF DATA ANALYTICS Succesfull companies harness the power of data and analytics to make data-driven decisions. www.datatechcon.com 14
  • 15. DATA ANALYTICS JOB ROLES • Data Analyst • Business Data Analyst • Business Intelligence Analyst • Data Analytics Specialist • Data Visualization Engineer • Product Data Analyst • Marketing Analyst • Healthcare Data Analyst • Financial Analyst www.datatechcon.com 15 • Digital Marketing Analyst • Reporting Analyst • HR Analyst • Customer Insights Analyst • Web Analyst • CRM Data Analyst • Manager of Insights & Analytics • Analytics Manager • BI Analyst
  • 16. Understand the purpose of the analysis BUSINESS GOAL Identify data sources and collect data DATA COLLECTION Manipulate and transform your dataset DATA CLEANSING Apply statistical analysis to dataset Analysis Create visualizations & Present the data Visualization DATA ANALYTICS FRAMEWORK Data analytics lifecycle workflow www.datatechcon.com 16
  • 17. www.datatechcon.com 17 DATA SCIENCE DEVELOPMENT FRAMEWORK
  • 18. DATA ANALYTICS CRISP-DM FRAMEWORK CRISP-DM stands for Cross Industry Standard Process for Data Mining (6 phases) • BUSINESS UNDERSTANDING – Understanding the business projects and objectives • DATA UNDERSTANDING – Identifying data sources and databases, collecting & exploring the datasets. • DATA PREPARATION – data preprocessing and data cleaning(the most time-consuming phase). • MODELING – Building model in using machine learning algorithms • EVALUATION – Evaluate the performance of the model • DEPLOYMENT – Deployment to production www.datatechcon.com 18
  • 19. DATA ANALYTICS PROJECT QUESTIONS • Questions to ask when tasked with an analytics end to end project. • What is the goal of the project? • What is the main problem and solution goal? • What are the data sources and databases? • What data is available? • Is there a data dictionary? • What type of analysis is requires? Trend, exploratory, performance? • Who are the audience or end users? • How are the data related in each tables? www.datatechcon.com 19
  • 20. DATA GOVERNANCE www.datatechcon.com 20 Data quality ensures we have quality data that is secured and have integrity. • Data quality • Data dictionary • Data analysts work within the plan
  • 21. COMMON MISTAKES BEGINNERS MAKE www.datatechcon.com 21 Assuming it's easy - when u start skills its easy to assume that consolidating the data is easy. Records count - check the record count 50 states showing 100 Verify your calculations - don't trust the numbers. Use a calc Failing to ask for data dictionary - create one if it doesn’t exist Making assumption - don't assume ask questions Making calculations hard to use - document Joins - spend more time working with multiple tables to improve joins Limited access to the database - working with only csv or excel
  • 22. LEARNING TAKEAWAYS • Learn how to leverage data & analytics to make data-driven decisions. • Understand data analytics workflow • Develop analytics interactive dashboards. • Learn how to uncover insights & tell a data story • Learn how to use core data analytics tools. • Become job ready for a data analytics roles DATA ANALYST LEARN MORE www.datatechcon.com 22
  • 23. THANK YOUQuestions & Answers PERSONAL IG @omozara BUSINESS IG @datatechcon WEBSITE: www.datatechcon.com www.datatechcon.com 23