Unit-IV; Professional Sales Representative (PSR).pptx
Narrative Mind Lessons Learned H4D Stanford 2016
1. Original Problem:
“We seek to develop tools that
will optimize discovery and
investigation of adversary
communication trends on
social media, allowing ARCYBER
and others to more efficiently
respond and mitigate threats
posed by enemy messaging.”
Team Narrative Mind
Sponsor: US Army Cyber Command (ARCYBER)
100
Ten weeks of interviews later... Current Status:
We learned a lot about this this
space and the acquisition
process.
2. Show similar commercial
tools--hear feedback
The Journey
Week #
EmotionalState
0 1 2 3 4 5 6 7 8
9
Suggestions for MVP
switches each week
Hashtag co-
occurrence
framework
ARCYBER
visit, spec of
final MVP
Unclear response from
stakeholders.
3. How do we begin?
Our sponsor gave us a lot of freedom to explore.
4. Initial Mission Model Canvas (Week 1)
- Gnip/Twitter
- CrowdFlower,
Samasource, or
Mechanical Turk
- Pre-existing social
media service and micro-
labor aggregators
- Optimize workflow for social
media analysts
- Expedite categorization
of social media content.
- Use MechanicalTurk to
crowdsource
categorization of content.
- - Algorithmic
virality
predictor
ARCYBER wants to
derive “meaning”
Primary: Intelligence
analysts receive a better
platform.
- Help intelligence analysts: receive cleaner, pre-categorized data,
- Architecture that can
support massive
concurrent data
aggregation and
analysis. E.g.
Storm/Hadoop.
- Testing with analysts
- MechanicalTurk or crowdsourcing labor (microtasks)
- UI Development/Testing with CYBERCOM/ARCYBER analysts.
- Software Development
- Access to Twitter
firehose (Stanford
academic license)
- Individual Analysts
- ARCYBER
- Continued partnership
with crowdsourcing firms,
CrowdFlower,
Samasource, etc.
Beneficiaries
Mission AchievementMission Budget/Costs
Buy-In/Support
Deployment
Value
Proposition
Key Activities
Key Resources
Key Partners
- Categorize
SM posts by
content
Week 1
5. How do we begin?
We learned about a wide variety of problems.
Weeks 1-3
6. DoD/Gvt. social media presence is weak.
Account bans and multiple aliases across
different networks make IDs hard to track
Can’t monitor who views dark-web content.
Fail to understand which narratives are the
most salient.
No baseline for monitoring/aggregating
use of tech;
Language/culture experts aren’t able to
work at scale.
Scale of social media makes manual
efforts painful.
Significant data management overhead.
Can’t determine actual scale
Problems
Weeks 1-3
7. How did we respond?
We brainstormed a lot of MVP’s.
Weeks 1-3
17. Mapping the Problem Space
Global
Tweet-level
Awareness Response
IO Org Chart
No baseline for monitoring/aggregating
use of tech
Automatic Narrative Detection
Language/culture experts aren’t able
to work at scale
Important Event Predictor
Preempt real world events
Persistent ID-Alias tracker
Account bans and multiple aliases across
different networks make IDs hard to track
Site Scraper
Need more cached information
access
Expedited Content Categorization
Scale of social media makes manual efforts
painful
Bot Detector
Can’t determine actual scale of info.
Virality Predictor
Understand which narratives are the most salient
18. Company F
Persistent ID-Alias tracker
Existing Products
Global
Tweet-level
Awareness Response
IO Org Chart
No baseline for monitoring/aggregating
use of tech
Automatic Narrative Detection
Language/culture experts aren’t able
to work at scale
Company C
Virality Predictor
Understand which narratives are the most salient
Counter-Narrative Generator
DoD/Gvt. social media
presence is weak
Company E
Site Scraper
Need more cached information
access
Company D
Expedited Content Categorization
Scale of social media makes manual efforts
painful
Company B
Bot Detector
.
Company A
Important Event Predictor
Preempt real world events
20. Our Beneficiaries
How can we understand our users and
the environment in which they operate?
Week 5-6
21. MMC - Week 6
- Track how groups use
technology over time.
- Gnip/Twitter/Facebook
- CrowdFlower,
Samasource, or
Mechanical Turk
- Third-party access
platforms for social
media
-Data visualization
-Content analysis
platforms
Primary
ARCYBER
-Bg. General (decision
maker)
-MAJ/LTC/COL
(operational plan)
-Analysts/Operators
(actionable insights)
COCOMs
-General (decision
maker)
-MAJ/LTC/COL
-Analyst/Operator
Secondary
Political Campaigns
-Campaign managers
-Supporters
Consumer Brands
-CMO
-Public Relations Team
- Optimize workflow for
social media analysts.
-Deliver insights to
commanders about
online environment.
-Insights into
responses against
narratives
-Detect narratives
emerging in real time
-Early warning on
emerging brand issues ???????????
-Enable faster problem awareness to problem response times for
decision-makers across organizations- UI Development/Testing with ARCYBER analysts.
- Software Development
- Research aggregation
- Access to Twitter
firehose or API
- Local language
speaking crowdsourcing
staff.
- Accurate testing for
intercoder reliability
- ARCYBER: Bg. General,
LTC, Strategic Initiatives
Group, OTA, Purchasing
PMs, End-User operator)
-COCOMs: OTA, Operators,
Purchasing PMs
-Political Campaign:
Opposition research team,
???
-Private Sector: CMO, ???
Beneficiaries
Mission AchievementMission Budget/Costs
Buy-In/Support
Deployment
Value
Proposition
Key Activities
Key Resources
Key Partners
Week 6
22. Value Proposition Canvas
Products
& Services
Web/Desktop
Application
Act on reports and
plans generated
- Little understanding of
ground-level nuances -
Little understanding of
proliferating platforms
Customer
Jobs
Gains
Pains
Gain
Creators
Pain
Relievers
- Narrative detection and topic
categorization
- Global awareness
- Reduce uncertainty of
decision making
- Add methodological rigor
to ARCYBER’s operations
Awareness
ARCYBER - BG General (Decision Maker)
23. Bg. General
(decision maker)
❏ Quickly understand key thematic points of organization's use of social
media put out by intelligence briefs.
MAJ/LTC/COL
(operational planer)
❏ Determine what types themes are rising in popularity and better identify
type of response
Analysts/Operators
(actionable insights)
❏ New movements can be understood and tracked with less direct
cooperation of experts.
Mission Achievement
ARCYBER
Big Picture Success Analogy:
“Most COCOMs and IO shops spend their whole day looking for a needle in a haystack: a user, a
post, an IP address. For narrative-level awareness, we need a strategy that helps us divide the
haystack into a bunch of smaller haystacks that don’t all look like same damn pile of hay.”
25. Customer Quote
“Things are changing everyday. We need
something that can help us with our long-term
strategy, regardless of how many times we have to
adjust our execution.”
Week 7
27. Research Dataset
Dataset Features:
● 600k Unique Tweets
● Spanning October 2015 to May 2016
● 200k Unique Hashtag Combinations
Procedure:
1. Merged records into frequency table of hashtag co-
occurrences.
2. Manually coded 1300 most frequent hashtag sets
3. Visualized volume of these hashtag sets over time as
related to big-picture “narrative”.
Key Findings:
● Process is reasonably scalable.
● Could be implemented quickly by
ARCYBER to supplement
workflow.
● Deciding on narrative categories is
difficult.
● Need to further condition input
tweets to specific groups.
● How does hashtagged traffic
compare to total traffic?
Week 7
29. First Steps: OTA
Proving a prototype and informing a requirement.
Innovation Challenge Initial Award Testing Evaluation
~$5M
1. Industry Day
2. Reqs. synopsis
3. Submit white papers
4. Evaluate papers
5. Proposals selected.
6. Technical discussion.
Original
requirements
synopsis
modified.
1. ACT office has
personnel working with
testers from all ranks.
2. Army Cyber Battle Lab
involved for
integration/concepts.
Budget Adoption
1. Requirement written.
2. Companies apply.
3. If OTA company is
selected, may skip as
far as MS-B.
4. Follow FAR/JCIDS.
1. Problem
requirements are
changed iteratively.
2. Phase objectives
and timeline are
flexible.
Weeks 6-8
Traditional and
non-traditional
contractors must
partner.
30. MMC - Week 7
- Track how groups
propagate narratives with
co-occurring hashtags.
- Gnip/Twitter/Facebook
- CrowdFlower,
Samasource, or
Mechanical Turk
- Pre-existing social
media service and micro-
labor aggregators
- Third-party access
platforms for social
media
-Data visualization
-Content analysis
platforms (Sens.ai,
Leidos)
Primary
ARCYBER
-Bg. General (decision
maker)
-MAJ/LTC/COL
(operational plan)
-Analysts/Operators
(actionable insights)
COCOMs
-General (decision
maker)
-MAJ/LTC/COL
-Analyst/Operator
Secondary
Political Campaigns
-Campaign managers
-Supporters
Consumer Brands
-CMO
-Public Relations Team
OTA in parallel for
product
development
Create dual-use
demand w/ PR
and political
campaigns
- Optimize workflow for
social media analysts.
-Deliver insights to
commanders about
online environment.
-Insights into responses
against broadcasting
narratives
-Enable faster problem awareness to problem response times for
decision-makers across organizations
- MechanicalTurk or crowdsourcing labor (microtasks)
- UI Development/Testing with ARCYBER analysts.
- Software Development
- Research aggregation?
- Access to Twitter
firehose or API
- Local language
speaking crowdsourcing
staff.
- Accurate testing for
intercoder reliability
- ARCYBER: Bg. General,
LTC, Strategic Initiatives
Group, OTA, Purchasing PMs,
End-User operator)
-COCOMs: OTA, Operators,
Purchasing PMs
-Political Campaign:
Opposition research team, ???
-Private Sector: CMO, ???
Beneficiaries
Mission AchievementMission Budget/Costs
Buy-In/Support
Deployment
Value
Proposition
Key Activities
Key Resources
Key Partners
31. Development Timeline Next Steps
20192017 2018 2020 20212016
Q1 Q2 Q1 Q2 Q1 Q2 Q1 Q2 Q1 Q2Q1 Q2 Q3 Q4 Q3 Q4 Q3 Q4 Q3 Q4 Q3 Q4 Q3 Q4
R&D/Dual-Use
Research
Join C5/Apply for OTA OTA Iterative Testing
Research Systems Integration
Burden
Hire Initial Data
Scientists/Engineers
Requirement Dev
User
Onboarding
Seed:
$1.2M
Series A:
$4.75M
Series B:
$20M
Submit
Proposals
Demonstrate Support Capability
System Threat Assessment
Hire Onboarding
Firm
Verify Requirement Compliance
Joint Staff Approval
R&D: Engineering + Design $332,000 Sales $160,000
R&D: Data science $300,000 Support $70,000
QA $80,000 Source Data $250k month (est)
Office, travel, admin, HR $250,000 Crowd labor $90k month (est)
32. Investment Readiness Level
IRL 1
IRL 4
IRL 3
IRL 2
IRL 7
IRL 6
IRL 5
IRL 8
IRL 9
First pass on MMC w/Problem Sponsor
Complete ecosystem analysis petal diagram
Validate mission achievement (Right side of canvas)
Problem validated through initial interviews
Prototype low-fidelity Minimum Viable Product
Value proposition/mission fit (Value Proposition Canvas)
Validate resource strategy (Left side of canvas)
Prototype high-fidelity Minimum Viable Product
Establish mission achievement metrics that matterTeam Assessment :
IRL 4
Editor's Notes
We continued learning…
(3:05)
(4:00)
By mapping out these mission achievement goals for the various tiers of ARCYBER-- from the analyst who generates actionable insights, to the major making the plans, to the general who makes the final call--we were able to better conceptualize what a solution to this problem might look like