Index

John T. Fleming (Ideas & Design Group, USA)
Lauren Lawley Head (Lawley Head Media, USA)

Ultimate Gig

ISBN: 978-1-83982-861-4, eISBN: 978-1-83982-860-7

Publication date: 25 March 2021

This content is currently only available as a PDF

Citation

Fleming, J.T. and Head, L.L. (2021), "Index", Ultimate Gig, Emerald Publishing Limited, Leeds, pp. 299-307. https://doi.org/10.1108/978-1-83982-860-720211014

Publisher

:

Emerald Publishing Limited

Copyright © 2021 John T. Fleming. Published under exclusive licence by Emerald Publishing Limited


INDEX

“ABC” test
, 183–184

Academic perspective

BLS
, 26

gig economy
, 27–28

gig personas
, 29–30

gig selection
, 28–29

gig workers
, 28–29

Access economy
, 10

Adaptive learning techniques
, 90

Adkins-Green, Sheryl (CEO of Mary Kay Inc. )
, 241–247

Advanced analytics
, 79

Advocating principles and values
, 164–167

Affiliate(s)
, 167

marketers
, 64

marketing
, 64, 224

Airbnb
, 3, 14, 66–67, 70, 74–75, 97, 186, 200–201, 225–226

Ajjan, Haya
, 74

Alibaba
, 224–225

“Alternative employment arrangements”
, 26–27

Amazon
, 13, 64, 83, 89, 167, 233, 236

Amazon effect
, 77

Amazon’s Alexa
, 76–77

AmazonFlex
, 12

Amazon Associates Program
, 224

“American Dream”
, 44–45

American Express
, 83

Amway Business Owners (ABOs)
, 229–230

Amway corporation
, 229–235

Analytical data warehouse
, 86

Analytical infrastructure
, 84

Analytics

technologies
, 85

types of
, 81

value of
, 81–82

App
, 73–74

Apple iPhones
, 87

Apple’s Siri
, 76–77

Artificial intelligence (AI)
, 73–74, 77

in analytics
, 84

in helping gig economy participants
, 88–91

Assembly Bill 5
, 184–185

Assets
, 8, 68

Associates
, 97

Attributes
, 65

Automated Clearing House transactions (ACH transactions)
, 92–96

Avon, principles guide
, 166–167

Baby Boomers
, 33

Babylonian law
, 98

Beldham, Paul (founder and CEO of PayQuicker)
, 73–74, 91–92

Belief system management
, 174–175

Bellhop
, 12

Best-in-class analytics
, 87–88

Big data
, 83

BlaBlaCar
, 212

Black’s Law Dictionary
, 182

Body Shop
, 76

Bonanza
, 13

Bookkeeping system
, 205

“Borello” test
, 183–184

Bottom-up economy
, 10

Bureau of Labor Statistics (BLS)
, 26

Bush, Lori
, 137

Business Week magazine
, 99

Business(es)
, 20

analytics
, 81, 84

models
, 58–59, 168, 186

C-level executives
, 209–210

sponsor
, 85

California Assembly Bill 5
, 181–184

Care. com
, 12

Career decisions
, 34–35

Caviar
, 216–217

Cavitt, Robert (CEO of Jenkon)
, 73–74

Chatbots in helping gig economy participants
, 88–91

ChefsFeed
, 215

Chief analytics/chief data officer
, 85

Chief executive officer (CEO)
, 213, 229, 235

Chief marketing officer (CMO)
, 229

Cleanliness
, 82

Code of ethics, adopting strong
, 167

Compensation
, 75

plans
, 103, 187–188

Complexity
, 187–188

Conditioning
, 173–174

Consultants
, 97

Consumer packaged goods (CPG)
, 25–26

Consumer-focused organizations
, 186

Consumers
, 9, 75

COREPlus+
, 233

Coronavirus
, 185

Corporations
, 65

COVID-19 pandemic
, 8, 18–19, 58, 71, 104, 107–108, 133–134, 151–152, 181–182, 185, 226

Creativity
, 21–22, 65, 70, 162, 191

Credit
, 177–178

Crowdfunding sectors
, 218

Cultural/culture
, 132–133

attitudes
, 15–16

shift
, 15, 142–143

Customer experience (CX)
, 75

Customer focus
, 63–64

DASH Project
, 216

Dashers
, 12

Data

lake
, 86

scientists/data analysts
, 85

Debts
, 177–178

“Decision Cockpits”
, 83

Deep learning in analytics
, 84

Deliveroo
, 217

Delivery services
, 216

Demographic shifts
, 107–108

Descriptive analytics
, 81

Diagnostic analytics
, 81

Didi Chuxing
, 211–212

Digital marketing
, 53–54, 105

Digital media platforms
, 82–83

Digital processors
, 78–79

Digital services
, 14

Direct selling
, 58–59, 97, 100–101, 131–132, 183, 201–202, 229–230

amazing story of direct selling entrepreneur
, 120–127

business model
, 98

checklist for selecting direct selling company
, 117

companies
, 14, 63, 128–129, 168

components
, 118

future
, 108

highlights of conversations with direct sellers
, 108–117

importants
, 103

lessons direct selling companies
, 129

model
, 7, 65, 157, 187

opportunities
, 103–108

S.W.O.T. analysis
, 101–108

strengths
, 102

ultimate gig research team outlook
, 129

understanding
, 117–119

Direct-to-consumer model
, 131–132

Distributors
, 97

DNA
, 244–245

Domain experts
, 85

“Door-to-door sellers”
, 98, 99

DoorDash
, 12, 74–75, 216

Drizly
, 216–217

Dynamex approach
, 184

Earnest Loans
, 40–41

eBay
, 13, 51, 53

Economic realities
, 15, 18–19

Economic Security Act
, 185

Economies
, 145–146

Electronically mediated employment
, 27

Employee-type benefits
, 192

Employment

laws
, 182

perspective of gig
, 27–28

Enhancer
, 29–30

Enterprise-wide analytics process
, 81

Entrepreneur. See also Microentrepreneurs
, 7, 9, 58, 63–64, 89, 132–133

amazing story of direct selling
, 120–127

creative
, 12–13

Entrepreneurial model
, 58–59

Entrepreneurship
, 70, 158

additional findings and attributes
, 65

brilliant use of technology
, 64–65

customer focus
, 63–64

fueling fire and fanning flames
, 70–71

gig economy growth
, 57–58

power of innovation, creativity, and trust
, 65–70

simplicity
, 60–63

Ethics

insights and unexpected learning
, 191–194

perspective on
, 188–191

Etsy
, 4, 13, 51, 53–55, 63–64, 73–74, 97, 218–219, 222

External data
, 82–83

External factors
, 106–108

Facebook
, 89

Fair Labor Standards Act
, 182

Fair rewards
, 3–4, 9, 162, 245

Falcon-9
, 66

Fanning flames
, 70–71

Financial

asset management
, 177–178

investment
, 58

pressures
, 35–41

stress
, 18–19

Firms
, 30

Fiverr
, 3, 54–55, 213

Flexibility
, 3–4, 9, 22–23, 41, 44, 131–132, 162, 192, 231

Fortune 500 company
, 157

Franchise model
, 7

Franchising
, 58–59, 186

Free economies function
, 21–22

Freedom
, 3–4, 8–10, 22–23, 55, 131–132, 162, 192, 231

Freelance computer work
, 196

Freelancers
, 6, 213

Freelancing in America (FIA)
, 6

Fueling fire
, 70–71

Funding Circle
, 218

Game-changers
, 209–210, 239

companies changing game
, 210–227

eliminating everyday inconveniences
, 214–217

individuals changing game
, 228–247

interview with Kevin Guest, CEO, USANA Health Sciences, Inc.
, 235–241

leasing idea changed game
, 225–227

Milind Pant, CEO, Amway corporation
, 229–235

new ways to access funding
, 217–218

profiles of companies changing game
, 250, 266

selling gigs and platforms
, 218–225

service gigs changed game
, 212–218

Sheryl Adkins-Green, CEO, Mary Kay Inc.
, 241–247

transportation gigs changed game
, 211–212

Gender equality
, 134

Generation Z (Gen Z)
, 33–34, 42–43, 92, 96, 197

Generations
, 34

Gen Xers
, 33

Gen Y
, 33–34

Generation X
, 33

Get-A-Round
, 70

Giertz, Simone
, 222–223

Gig, 196–197. See also Ultimate Gig

adopting strong code of ethics
, 167

advocating principles and values
, 164–167

belief system management
, 174–175

checklist of questions to support quick planning for gig workers
, 159

excellent communication benefits gig providers and gig workers
, 163–164

financial asset management
, 177–178

gig work
, 154–157

gig-providing companies
, 210

insights and unexpected learning
, 168–169

life management
, 170–171

mental health management
, 171–173

pay quicker
, 91–96

physical health management
, 173–174

planning
, 157–160

principles guide Avon
, 166–167

research team
, 11–15

short course in personal development
, 169–170

social relationship management
, 175–177

start-up guidelines for selling gigs
, 160

start-up guidelines for transportation, service, and leasing gigs
, 159–160

time management
, 161

tracking expenses
, 161–162

Gig business models
, 74

Gig economy
, 2–3, 7, 9, 19, 27–28, 41, 44, 50–51, 57–60, 68, 73, 97, 131–132, 143–144, 151–152, 165, 168, 181, 186, 188, 190–194, 210, 224–225, 228, 232, 240

cultural attitudes
, 15–16

economic realities
, 18–19

I. W
, 5–6

impact
, 19–22

key drivers of gig economy growth
, 15–19

labor
, 8

technology changes game
, 16–17

types of gigs
, 11–15

US
, 2

worth exploring
, 22–23

Gig Economy Data Hub
, 27–28

Gig exclusive
, 30

Gig participant
, 9, 100, 134, 138, 153, 158

Gig providers
, 9, 63, 146, 153, 161–162

excellent communication benefits
, 163–164

“Gig worker bill”. See California Assembly Bill 5

Gig workers
, 9, 28, 68, 133–134, 154, 161, 168, 197–198, 203–204, 209–210

checklist of questions to support quick planning for
, 159

excellent communication benefits
, 163–164

primary motivations driving
, 199–202

selection
, 145

work of
, 199

Gigster
, 13, 54–55

GoFundMe
, 218

Good to Great
, 209

Google
, 89

Google’s Assistant
, 77

GoPuff
, 216

Grab
, 217

Gracious Leadership
, 140–141, 143–144

Great Recession
, 35

GrubHub
, 74–75, 216

Guest, Kevin (CEO of USANA Health Sciences, Inc. )
, 235–241

Guidance gig-providing companies
, 158

Hamilton Project
, 183

Han, Vince (CEO and founder of Mobile Coach)
, 73–74

Handy
, 12

HelloTech
, 12

Hire-A-Chef
, 13, 215

“Home-based business”
, 44, 50–51

HomeAway
, 15, 74–75, 227

Homestay
, 227

HopSkipDrive
, 12

House Rules
, 226

Human Resource Department
, 41–42

HyreCar
, 14

Income
, 28, 153

income-earning opportunity
, 157

residual
, 54–55

scalable
, 53–54

Independent contractors
, 105, 153–154, 182, 192

“Independent worker” category
, 183

Independent workforce (I. W)
, 5–6

Industrial Revolution
, 5

Informal economy
, 20

Innovation
, 162, 191

InstaCart
, 216–217

Instant payment
, 92

Institutionalize data-driven decision-making
, 84–88

Integrated reporting
, 87

Internal data
, 82–83

Internal factors
, 104–106

International Franchise Association
, 106

International Monetary Fund (IMF)
, 20

Internet
, 106–107

Internet of Things technologies (IoT technologies)
, 74, 78–79

IT analysts
, 85

JustEats
, 74–75, 217

Kajabi
, 53–54, 64, 223–224

Kickstarter
, 218

Know your customer (KYC)
, 92–96

Labor
, 8

Landlords
, 186–187

Law of physics
, 171

Leadership
, 139

Lean In
, 132

Leasing
, 11

gigs
, 14–15

“Less-is-more” approach
, 187–188

Life
, 170, 181

management
, 170–171

Locker, Maria (CEO of RevolutionHER)
, 135

Lyft
, 3, 11, 67, 70, 74, 131, 204–205, 211–212

Machine learning (ML)
, 77

in analytics
, 84

Manual skill-based services
, 196

Market professional skills
, 62–63

Marketplace
, 182

Mary Kay
, 241

McConnell, David (founder of Avon)
, 166–167

McVeigh, Stephanie (founder and CEO of Strategic Incentive Solutions Inc. )
, 129

Members of Unilever Network
, 75

Mental health management
, 171–173

Mercari
, 13–14

Microcomputer
, 78

Microentrepreneurs
, 9, 63–64, 75, 154

experience
, 75

Microentrepreneurship. See also Entrepreneurship
, 154

Microsoft’s Cortana
, 77

Millennials
, 33–34, 92, 96, 197

MIT Sloan Management Review
, 82

Mobile

devices
, 74

pay
, 92–96

Mompreneurs
, 136

Money
, 35, 166, 177

Motivations for working gig

ability to own boss
, 49–50

financial pressures
, 35–41

flexibility
, 41–44

improve quality of life
, 44–48

residual income
, 54–55

scalable income
, 53–54

work from home
, 50–53

Musk, Elon
, 17

Netflix
, 74, 83

Networked economy
, 10

Networking
, 175

New York University (NYU)
, 4–5

Nutrilite products
, 99

“Office-centric” environment
, 8

Ola Cabs
, 211–212

On-demand economy
, 10

OneFineStay
, 14

Online e-commerce platform
, 54–55

Online groceries
, 87

Pant, Milind (CEO of Amway corporation)
, 230

Parking Panda
, 14

Part-time

job
, 9, 134–135

ncome
, 42

opportunities
, 60

work
, 145–146

Passion economy
, 10

Payee Support
, 92–96

Paying quicker
, 96

Peer economy
, 10

Peer-to-peer (P2P)
, 218

Personal assistance
, 196

Personal development, short course in
, 169–170

Personalized service
, 105

Personas
, 29

enhancer
, 29–30

gig
, 29–30

gig exclusive
, 30

Pew Research Center
, 36

Physical health management
, 173–174

Platform economy
, 10

Policymakers
, 182–183

Poshmark
, 14

Postmates
, 12, 216

Power of innovation
, 65–70

Pre-COVID-19
, 35, 145–146

Predictive analytics
, 81

Predictive models
, 83, 86

Prerequisite
, 168–169

Prescriptive analytics
, 81

Prescriptive models
, 86

Pricing
, 8

Prime Pantry
, 87

Procter & Gamble (P&G)
, 83

Professional services
, 196

Prosper
, 218

Quick payment for services rendered
, 134

Quiq Messaging
, 163–164

Record-keeping tools
, 162

Rental economy
, 10

Renting personal property
, 196–197

Residual income
, 54–55

RevolutionHER
, 136, 143

Richness
, 82

Ride-sharing services
, 197

Roadie
, 12

Rover
, 12, 213–214

Ruby Lane
, 14

Safety nets
, 204–205

Scalable income
, 53–54

Second Life
, 106–107

“Self-talk”
, 173

Selling
, 11

products
, 196

Selling gigs. See also Transportation gigs
, 13–14

and platforms
, 218–225

start-up guidelines for
, 160

Sensors
, 78–79

Service gigs
, 12–13

changed game
, 212–218

Services
, 11

Shankar, Yogi (CEO and founder of Prescriptive Insights)
, 73–74

Sharing economy
, 3–5, 10

Shopify
, 13–14, 51, 53–55, 64, 70–71, 73–74, 148, 218–222

Short-term real-estate rental
, 196–197

Short-term work opportunities
, 134–135

Simplicity
, 60, 63, 153–154, 187–188

Smartphones
, 106–107

smartphone-enabled Fintech solutions
, 92–96

Social entrepreneurship
, 138

Social media platforms
, 82–83, 107

Social relationship management
, 175–177

Socializing
, 175

Software technologies
, 76

Space travel
, 66

SpaceX
, 66, 69

Spirituality
, 174

Squarespace
, 14, 64

Stakeholders
, 191

“Stay Here” (Netflix original show)
, 227

Strategic plans
, 157

Strategy

development
, 86

monitoring and validation
, 87

Strengths, weaknesses, opportunities, and threats analysis (S.W.O.T. analysis)
, 101–108

Structured data
, 82–83

Subscription fee
, 148

TaskRabbit
, 3, 11–13, 70, 97, 215

Tassopoulos, Kerry
, 181

Tassopoulos Law Firm
, 181

Teachable Company
, 64

Team
, 103

Technology
, 15, 73–74, 78, 162

AI and Chatbots in helping gig economy participants
, 88–91

brilliant use of
, 64–65

changes game
, 16–17

critical importance of data
, 82–88

gigs pay quicker
, 91–96

increased use of machine learning, deep learning, and AI in analytics
, 84

institutionalize data-driven decision-making
, 84–88

internet of things
, 78–79

leverage technology to enable analytics and optimize decision-making
, 79–82

technology-driven gig economy
, 42

technology-fueled innovation
, 64

types of analytics
, 81

value of analytics
, 81–82

The Principles that Guide Avon
, 165

The Sharing Economy
, 4–5, 61–62, 67

Thinkific
, 223–224

Thumbtack
, 3

Time management
, 161

Toptal
, 13, 54–55, 213

Tracking expenses
, 161–162

Traditional independent contractors
, 26–27

Transportation
, 11, 197

Transportation gigs. See also Selling gigs
, 11–12, 16, 63, 73–74

changed game
, 211–212

Trust
, 65–70

Tupperware
, 99

Turo
, 14–15

Twitch
, 223

Uber
, 3, 11, 70, 74, 131, 200–201, 204–205, 211–212

Uber Eats
, 216

Ultimate Gig
, 145

checklist
, 146–147

designing
, 147–148

gig workers
, 197–199

insights and unexpected lessons learn
, 151–152

primary motivations driving gig workers
, 199–202

project
, 155

research
, 195

safety nets
, 204–205

satisfaction in comparison to expectation
, 202–204

survey crosstabulation of gig earning expectations
, 195

testimonials from people
, 148–151

Unstructured data
, 82–83

Upstart
, 217

Upwork
, 3, 13, 63, 70, 213

US Department of Labor
, 20, 26, 185

US Postal Service
, 42

US-based LendingClub
, 218

Vacasa
, 15

Value of analytics
, 81–82

Value-adding benefits
, 28–29

Variety
, 83

Velocity
, 83

Via (ridesharing service)
, 11–12

Video content
, 223

Virtual assistants (VAs)
, 77

Virtual cards
, 92–96

Volume
, 83

VRBO
, 14, 74–75, 227

Wag!
, 213–214

Wallets
, 91–92

Walmart
, 64, 224

Wealthy Affiliate
, 70, 224–225

Wix
, 14

Women and of gigs future

hypothesize
, 132–135

insights
, 141–144

Women’s workforce participation
, 141–142

Work
, 210

work–life balance
, 8

Work from home (WFH)
, 50, 53, 138

YouTube
, 53–54, 222–223

Zimmer, John
, 67