100% tevredenheidsgarantie Direct beschikbaar na je betaling Lees online óf als PDF Geen vaste maandelijkse kosten 4,6 TrustPilot
logo-home
College aantekeningen

Introduction to Data Science with Panda 2023

Beoordeling
-
Verkocht
-
Pagina's
29
Geüpload op
19-01-2024
Geschreven in
2023/2024

The document covers topics related to data manipulation, real-world data sources, exploratory data analysis (EDA), Python programming with Pandas, ethics in data science, and various techniques for analyzing and visualizing data. It includes examples, explanations, and references to specific tools and libraries, such as Pandas, Seaborn, and Python, to illustrate key concepts in data science. The content is organized into sections, each focusing on different aspects of data science, such as working with real-world datasets, understanding data sources, and exploring data through statistical analysis and visualization techniques. The document also emphasizes the importance of ethics in data science, addressing issues related to data privacy and the responsible use of information. The notes provide practical examples, walkthroughs, and explanations, making them suitable for a classroom setting or self-study in the field of data science. Overall, the document appears to be a comprehensive resource for individuals learning the fundamentals of data science and its practical applications using Python and related tools.

Meer zien Lees minder
Instelling
Vak

Voorbeeld van de inhoud

Introduction to Data Science 4/10/23
Data Manipulation
• Real world data sources
-New ways of thinking about data
-Python PANDA data frame
-Python related to practical (data analytics)


Real World Data
• Customer Relationship Management (CRM) Systems
-They are not just about politeness
-They hold the info you have on a customer and inform how you can improve
their experience
-One-to-one and collective data (generating data sets = trends, sales, marketing
strategies)
CRM Data Points
• Insights
-Customer names, demographics, etc. = data set
-Purchase history details are great for data analytics
-Raised complaints are logged
• Customer Lifetime Value
-CLV = insights (not just simple questions) exploration, interrogation
-Literal columns of data lead to a number based on purchase history, spending
history etc.
-Feedback/Sentiment (online presence, reviews of product) allows analysis of
words used by customers
-This can inform marketing strategies i.e., data driven decisions
Social Media Platforms
• Social media
-There has been lots of development in attitudes towards social media
-Analysis allows you to build a profile of your target audience
-Potential customers can also be identified (moving on from CRM)
Social media data points
• Users

,-Profile data = target audience
-Popularity/reach of content means you can see where particular individuals are
key
-Parse text for key positive/negative comments/words (sentiment analysis)
-Politics/sociology can be useful for further tailoring to particular demographics
-Branching up different customers using algorithms for analysing the
connectedness of individuals
-Find the influencers and get them to market the product to their followers
-Privacy settings create the potential for the company to know you as a
customer, person and know where you are
-By leveraging these vast data points companies can gain an understanding of
their audiences
Sensor Networks and Internet of Things
• IoT devices
-Gas, electricity, sewage etc. = sensor data (enormous and valuable information)
-Consumption of electricity = clusters
-Sensor networks = manufacturing and healthcare (wearable devices)
-Useful for ageing population
IoT Data points
• Data collection
-Sensor data detects anomalies and targets someone to fix it
-Energy Consumption
-Equipment performance (optimization)
-Location tracking (i.e., item of inventory) = product location and destination
-Costs to transport inventory in a lorry (maximising inventory from point A to
point B so the lorry is always carrying something means less cost to company)
-Energy expenditure = geographical dispersion, understanding where costs are
located
-User behaviour is not JUST humans
-Radio Frequency ID tags (IoT devices) in Supply Chain Tracking
-Example = small beer company manufacturing IPAs:
- the beer left the gates in lorries, and they didn’t know where it was going
as there was no way to track the lorries’ location. The company wanted to track
where their inventory was, how much establishments are taking and how long it
takes them to get through inventory as this influences marketing decisions

, -Predictions = demand
Financial Data
• Points
-Banks use data analytics
-Stock market data (predicting trends in the stock market)
-Betting (predictions)
-How much money is available on demand informs how market analysts can
leverage financial data (fraud)
Financial Data points
-Not just individuals but a collective understanding
-Stock trades = time and value, which stock to buy, how much for etc.
-Trends = getting ahead of market surge (i.e., buy low, sell high)
-Risk Metrics = looking at the collective to establish whether the individual is a
good risk or bad risk
Web Analytics
• Websites and online platforms
-Generate data on a range of things up to large scale gaming platforms
-Tracking is not just text files anymore, there is lots of info
-A http request on a web application makes it possible to capture info about
clicks, searches and usage, along with user interactions with websites
Web Analytics Data Points
• Insights
-User engagement = what they are coming to this website for
-Is the website interactive, are they fascinated by the information presented, are
they strugging to find the info (different reasons people could be on a website)
-High exit bounce rate = quick visit (bad or good? Have they found what they
were looking for quickly or can they not find something)
-Companies want longer stays on their websites
-It is good to know whether a website is not enticing or engaging
-Cookies are helpful from a company’s perspective but users don’t want to be
tracked
-Click-through rate can be used to track ad performance
-Developers are also interested in web analytics

Geschreven voor

Instelling
Studie
Onbekend
Vak

Documentinformatie

Geüpload op
19 januari 2024
Aantal pagina's
29
Geschreven in
2023/2024
Type
College aantekeningen
Docent(en)
Dawn
Bevat
Alle colleges

Onderwerpen

€120,77
Krijg toegang tot het volledige document:

100% tevredenheidsgarantie
Direct beschikbaar na je betaling
Lees online óf als PDF
Geen vaste maandelijkse kosten

Maak kennis met de verkoper
Seller avatar
anthonyrozario

Maak kennis met de verkoper

Seller avatar
anthonyrozario Glasgow Caledonian University
Volgen Je moet ingelogd zijn om studenten of vakken te kunnen volgen
Verkocht
0
Lid sinds
2 jaar
Aantal volgers
0
Documenten
4
Laatst verkocht
-

0,0

0 beoordelingen

5
0
4
0
3
0
2
0
1
0

Recent door jou bekeken

Waarom studenten kiezen voor Stuvia

Gemaakt door medestudenten, geverifieerd door reviews

Kwaliteit die je kunt vertrouwen: geschreven door studenten die slaagden en beoordeeld door anderen die dit document gebruikten.

Niet tevreden? Kies een ander document

Geen zorgen! Je kunt voor hetzelfde geld direct een ander document kiezen dat beter past bij wat je zoekt.

Betaal zoals je wilt, start meteen met leren

Geen abonnement, geen verplichtingen. Betaal zoals je gewend bent via iDeal of creditcard en download je PDF-document meteen.

Student with book image

“Gekocht, gedownload en geslaagd. Zo makkelijk kan het dus zijn.”

Alisha Student

Veelgestelde vragen