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Open Data   Startups



              Massimo Zaglio
              Christian Racca
Agenda
   Obiettivi del workshop
   Big Data
   Cosa sono gli Open Data e perchè Open Data?
   Quali vantaggi possono dare gli Open Data?
   Gli Open Data nel mondo
   Chi produce Open Data?
   Linked Open Data
   Alcuni Datasets disponibili
   Qualche esempio di Apps
   Altri esempi
   Le 10 slide

20 sett 2011               Open Data      Startups
Workshop GOALS
 Dare consapevolezza del valore potenziale dei
 dati open.

 Creare una versione ALPHA di start-up
 utilizzando uno o più datasets (suggeriti e non).

 Presentare in un elevator pitch di 4(?) minuti il
 proprio "seme" di start-up.




                             Open Data       Startups
WEB 2.0

  WEB 2.0 is dead... Long life to

WEB OF DATA
                   Open Data        Startups
Big Data: A growing torrent
 $600 to buy a disk drive that can store all the world's music.
 5 billion mobile phone in use in 2010.
 30 billion pieces of content shared on Facebook every
 month.
 40% of projected growth in global data generated per year
 VS 5% growth in global IT spending.
 235 terabytes data collected by US Library of Congress
 in April 2011.
 15 out of 17 sectors in the United States have more data
 stored per company than the US Library of Congress.

 * rapporto McKinsey: Big Data: The next frontier of innovation, competition and productivity. (may 2011)




                                                                    Open Data                               Startups
Big Data: Capturing the value
  $300 billion potential annual value to US health care -
  more than X 2 total annual health care spending in Spain.
  €250 billion potential annual value to Europe's public
  sector administration - more than GDP of Greece.
  $600 billion potential annual consumer surplus from using
  personal location data globally.
  60% potential increase in retailers' operating margins possible
  with big data.
  140.000-190.000 more deep analytical talent position
  and 1.5 million more data-savvy managers needed to take full
  advantage of big data in the USA.
 * rapporto McKinsey: Big Data: The next frontier of innovation, competition and productivity. (may 2011)



                                                                    Open Data                               Startups
Quanti di voi hanno preso l'autobus
          questa mattina?




                   Open Data   Startups
Quanti di voi hanno preso l'autobus
          questa mattina?




                   Open Data   Startups
Quanti di voi hanno preso l'autobus
          questa mattina?




                   Open Data   Startups
Quanti di voi hanno preso l'autobus
          questa mattina?




                   Open Data   Startups
Quanti di voi hanno preso l'autobus
          questa mattina?




                   Open Data   Startups
Open Data - What are ?
                          da Wikipedia

        Con Dati aperti, comunemente chiamati con il
 termine inglese Open Data anche nel contesto italiano, si fa
riferimento ad una filosofia, che è al tempo stesso una pratica.
   Essa implica che alcune tipologie di dati siano liberamente
accessibili a tutti, senza restrizioni di copyright, brevetti o altre
       forme di controllo che ne limitino la riproduzione.




                                      Open Data            Startups
Open Data - What are ?
                          in pratica

     Open Data propone un modello di valorizzazione del
patrimonio informativo pubblico basato sulla possibilità di usare
  i dati aperti per creare nuovi servizi e nuovi strumenti.




                                    Open Data          Startups
Open Data is a matter of:
 Prezzi
          I beni digitali: non rivali, costo di distribuzione/
          riproduzione basso.
          Recupero dei costi VS distribuzione al costo
          marginale.

 Licenze
          OKF (Open Knowledge Foundation)
          CC (Creative Commons)
          ! possibilità di riuso a fini commerciali.

 Formati e Tecnologie ...
                                    Open Data              Startups
Open Data - Formats
         Rendere disponibili i dati sul WEB in qualunque
         formato, utilizzando una licenza aperta.


         Rendere disponibili i dati sul WEB in formato
         leggibile dalle macchine (CSV, XLS...)


         Utilizzare formati non proprietari.


         Utilizzare lo standard RDF


         Dati in formato RDF linkati fra di loro
         (Linked RDF DATA)
                       Open Data               Startups
Open Data in the world
                                    La mia amministrazione è impegnata a creare un livello
                                    di apertura senza precedenti nella gestione del Governo.
                                    Lavoreremo insieme per accrescere la fiducia del
                                    pubblico e per creare un sistema basato sulla
                                    trasparenza, la partecipazione e la collaborazione.
                                    Questa apertura rafforzerà la nostra democrazia e
                                    promuoverà l'efficenza e l'efficacia nel nostro Governo.

                                    Transparency and Open Government Memorandum for the
                                    Heads of Executive Departments and Agencies (2009)



"People are tempted to keep it [data]. You hug your
database, you don't want to let it go until you've made
a beautiful website for it. Well I'd like to suggest that,
yes, make a beautiful website, who am I to say don't
make a beautiful website? Make a beautiful website,
but first, give us the unadulterated data, we want the
data, we want unadulterated data. We have to ask
for raw data now."

Tim Berners-Lee, inventore del WEB e advisor
data.gov.uk
                                                      Open Data                Startups
Who produce Open Data ?
 Il settore pubblico possiede e
 gestisce grandi quantità di dati e
 informazioni il cui valore app. è
 27 Miliardi di €
 (MEPSIR Report - Measuring
 European Public Sector
 Resources, 2006).

 La PSI può essere un primo
 grande fornitore di Open Data.

 Il settore privato potrebbe
 però diventare il maggior
 produttore di Open Data se ne
 percepisse il giusto valore.
                                  Open Data   Startups
Open Data - Benefits
 Trasparenza

 Efficienza

 Concorrenza

 Innovazione
               Open Data   Startups
Open Data - Challanges
      “Invogliare” la Pubblica   Amministrazione a rendere i
      propri dati disponibili.

 LeCommunity (e start-ups) dovrebbero aggiungere
 business model e innovazione.
 Serendipity:
 L’innovazione è spesso generata dall’uso inaspettato di dati!

 Problemi
 Trovare nuovi dataset di dati
 “Fondere” e “linkare” dati e dataset (possibilmente on-the-fly).

                                      Open Data            Startups
Data As A Service
 I datinon sono più "chiusi" nelle applicazioni...
 ... ma consumati on-demand come un qualsiasi altro tipo di
 servizio.
 RESTful: accedere ai dati come si accede ad una risorsa web:
 tramite URL.




                                  Open Data          Startups
Data Marketplace
 Business Models:
 Data owner: paid to publish / revenue share.
 Data user: pay for data delivery/trasformation/analysis services.


 New Generation Marketplace
 Operano su dati open e non.

 Forniscono dati on-the-fly attraverso API (anche custom).

 Coinvolgono (in alcuni casi) la comunità nel mantenere (curation)
 i dati: crowdsourcing (e.g. Factual).

 Forniscono strumenti integrati (web based) per l'esplorazione.

                                     Open Data             Startups
LINKED Open Data
 Principi base:
 Le cose hanno un nome (persone, città, aziende).

 Ogni nome inizia con http://

 Rappresentare i dati come un RDF
 (Resource Description Framework is a W3C standard).



 Linked Data spiegato da Tim Berners Lee:
 http://www.ted.com/talks/tim_berners_lee_on_the_next_web.html

                                   Open Data           Startups
Data as a RDF graph




              Open Data   Startups
The Vision - A global
            interconnected
            database




               Open Data   Startups
The Vision - Mix data
            on-the-fly




               Open Data   Startups
Linked Data - hands on
DBPedia fornisce una gran parte delle entità di Wikipedia in
formato Linked Data.

Firenze: http://dbpedia.org/page/Florence


                            dbpedia-owl:leaderName
                                                     Renzi


          Firenze

                                      Open Data              Startups
Where are the Data ?
 Un archivio di open (e non open) data:
 http://ckan.net/
 http://it.ckan.net/

 Esempi:
 5T: http://biennaledemocrazia.it/dataset/
 Dati Piemonte: http://dati.piemonte.it
 Datasets originali ISTAT: http://dati.istat.it/
 Enel http://data.enel.com/




                                   Open Data       Startups
Food




       Open Data   Startups
Transportation




                 Open Data   Startups
Children




           Open Data   Startups
Transparency




               Open Data   Startups
Environment




              Open Data   Startups
Other examples




                 Open Data   Startups
The linked Data CLOUD




 http://richard.cyganiak.de/2007/10/lod/lod-
 datasets_2010-09-22_colored.html
                                 Open Data     Startups
The hackers WAY
 Quando licenze e copyright lo permettono...
 Web Site scraping è un possibilità.




 http://scraperwiki.com/
 Es. http://scraperwiki.com/scrapers/aria-comune-di-torino/
                                          Open Data           Startups
Interesting Tools & Links
ONLINE DATA VISUALIZATION
G visualization Api: http://code.google.com/intl/it-IT/apis/chart/
Tableau Public: http://www.tableausoftware.com/public
Open Heat Map: http://www.openheatmap.com/
ONLINE STORAGE+VISUALIZATION
Google Public Data explorer: http://www.google.com/publicdata/home
IBM Many Eyes: http://www-958.ibm.com/software/data/cognos/manyeyes/
Google Fusion tables: http://www.google.com/fusiontables/Home
Impure: http://www.impure.com/ è un linguaggio visuale tipo Y! Pipes per la data visualization. Molto
potente ma non facile da usare.
CURATION & LINKING
Google Refine
Data Wrangler: http://vis.stanford.edu/wrangler/
OFFLINE TOOLS
R per dati statistici potentissimo molti plugin anche sparql: http://www.r-project.org/
Jscript Library per la data visualization: http://thejit.org/
Anche questa: http://vis.stanford.edu/protovis/
Il miglior tool di network e graph analysis e visualization (non facilissimo ma davvero powerful, ha plugin
sparql): http://gephi.org/
Linguaggio turing complete per la dataviz, potentissimo, difficile (lo usano tutti i visual artist seri):
http://processing.org/


                                                           Open Data                      Startups
Workshop Output


   10 slides to pitch a
   Venture Capitalist


              Open Data   Startups
How to Pitch a VC




Dave McClure, Founders Fund,
   Master of 500 Hats blogs
   @DaveMcClure on Twitter
    http://500startups.com/
Essential Elements of a Hot
                VC Pitch
•     Love in an Elevator (30-second quick pitch)
•     The Money Shot (live demo, screen shots, video)
•     Size Matters (market size, bottom up / top down)
•     Nice Package (customer$, metric$ UP & to the RIGHT)
•     Superheros & Rock Stars (your team)




    * note: the above are teaser images… they don’t really mean anything; they’re just here to capture your attention.
10 Erogenous VC Zones
                        Teaser Image
                         Goes Here
1.   Elevator Pitch                        6. Proprietary Tech
2.   The Problem                           7. Competition
3.   Your Solution      Money Shot
                                           8. Marketing Plan
                                           9. Team / Hires
                        Goes Here
4.   Market Size
5.   Business Model                        10. Money / Milestones
                                                 AA
                                                   RR
                                                     R!
      The Money Shot:           Business
           Demo                  Metrics                   Cu$tomer
       Screen Shots              (NOT Revenue             Testimonial$
           Video                  Projections)
1. The Elevator Pitch
           The 30-second quickie, for when you don’t have
                      time for lots of VC lovin’

• Short, Simple, Memorable: “What, How, Why.”
   – “We’re X for Y” is ok if 1) it’s true 2) X & Y are well-known
• Max 3 key words / phrases, 2 sentences.
   –   “SlideShare is the world’s largest community for sharing presentations.
   –   “TeachStreet is a place to teach or learn anything.”
   –   “Mint.com is the free, easy way to manage your money online.”

• Logo and/or Image ok
• No “Inside Baseball” lingo
   – make it easy for non-experts to understand.
• Smile. It’s ok to have fun when you pitch !
2. The Problem

• What is The Problem? Make it Obvious.
   – “Ouch. Yeah, I have that too…”




• Who has it? How Many? How do you know?
   – stats, examples, research, links.


• “Painkiller not Vitamin”
   – Vitamins are great, but you NEED painkillers. BAD.

   (note: Viagra is not a Vitamin)
3. Your Solution

Describe why your Solution:
– Makes customers very happy
– Does it better, different than anyone else
– Remember “NICHE to WIN”
    (Customer Case Study can also go here)
4. Market Size
                                                                                                          no idea what this is, but it
                                                                                                          looks really F’ing
                                                                                                          impressive, doesn’t it? up
                                                                                                          & to the right.




• Bigger is Better
• Top Down = someone else reported it
     – Forrester, Gartner, Your Uncle

• Bottom Up = calculate users/usage/rev$
     –   Avg Txn = $X
     –   Y customers in our market
     –   Avg customer buys Z times per year
     –   Market Size = $X * Y * Z annually = a big friggin’ #
     –   Market growing @ 100+% per year



 note: “top down” and “bottom up” have nothing to do with giving VCs hard-ons. Get your mind out of the gutter.
5. Business Model
             (How Do You Plan to Make Money?)

• Describe Top 1-3 Revenue Sources
   – Prioritize by Size, Growth, and/or Potential
   – Cite current market activity / customer behavior as proof


• Show How You Get to Break-even (or Profitable)
   – Ideally, on the current round of funding you’re raising


• Common Revenue Models
   – Direct: ecommerce, subscription, digital goods, brands
   – Indirect: advertising, lead gen, affiliate / CPA


• See Andrew Chen presentation:
       • Revenue: The Internet Wants to Be Free,
         but You Need to Get Paid
6. Proprietary Tech
             (What is your Unfair Advantage?)

• VCs *really* like unfair advantage
   – big market lead
   – experienced team
   – ex-Google PhDs
   – core / “breakthrough” tech
   – “defensible” IP / patents
   – “exclusive” partnership
   – great sales/marketing
   – balls of steel
7. Competition
    (+ why they all suck, why you’re different, yellow,
                          better)
•   List all top competitors
     – (especially top ones; we’ll find them anyway)



•   Say how you’re better, or at least different
     – If not better or different -> “NICHE TO WIN”
     – position(-ing) matters


•   2-axis graph is trite, but still useful
     – see next page for example


•   useful comparisons / differentiation:
     –   simple vs complex
     –   value vs cheap (tougher to prove tho)
     –   cheap vs expensive (but careful you don’t race to bottom)
     –   consumer vs enterprise
     –   open vs proprietary (in this case, open usually better… but not always)
We’re Better, Different.
              (and You Suck.)
                    Funny!




Accepted                              Shocking !!!




                   Not Funny.
8. Marketing Plan
Ok, so your product / technology rocks, but…
 … how do you get customers / distribution?

lots of channels, lots of decisions… choose a few:
       •   PR                        •   Email
       •   Contest                   •   SEO / SEM
       •   Biz Dev                   •   Blogs / Bloggers
                                     •   Viral / Referral
       •   Direct Marketing
                                     •   Affiliate / CPA
       •   Radio / TV / Print        •   Widgets / Apps
       •   Dedicated Sales           •   LOLCats
       •   Telemarketing


   3 Things That Matter / To Measure :
       1. Volume
       2. Cost
       3. Conversion
9. Team

People that Get VCs all Hot & Bothered
• Geeks with deep technical background
• Entrepreneurs who have sold companies
• Sales/Marketing who Make it Rain


Also Identify:
• Key Hires you Need but *Don’t* Have, and…
• … you’ve got candidates lined up in those areas
• ... ready to hire as soon as you close funding
• … or at least job descriptions / est. salary
10. Money, Milestones
• How Much Money Raised / Now Raising?
   – Show 3 Budgets: Small, Medium, Large
   – Show how you’ve got “Small” already lined up
   – Show “Optionality”, Competitive Interest (if poss.)

• How Will You Spend It?
   – Key Hires (Build Product)
   – Marketing & Sales (Drive Revenue)
   – CapX, Ops Infrastructure (Scale Up)

• Show Achievable Milestones with Non-Linear Increase in Value
   – Show what will get you to next milestone (product, customers, hires)
   – Show how the capital you have is more than adequate
Additional Resources
•   Dave McClure:
    – Startup Metrics for Pirates (AARRR!)
    – ZapMeals Sample Pitch Presentation
    – Master of 500 Hats Blog: “Greatest Hats” (top blog posts)


•   Steve Blank: 4 Steps to Epiphany, Customer Development Methodology
•   Eric Ries: StartupLessonsLearned
•   Sean Ellis: Startup-Marketing.com
•   Andrew Chen: AndrewChenBlog.com
•   Brad Feld, Jason Mendelson: AskTheVC.com
•   Aydin Senkut: Felicis Ventures blog
•   Mark Suster: Both Sides of the Table
•   VentureHacks.com
•   StartupCompanyLawyer.com
Open Data           Startups



           rks hop
       Wo
              he re!!!
      st arts
                         Massimo Zaglio
                         Christian Racca

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Open data 4 startups (2°edition)

  • 1. Open Data Startups Massimo Zaglio Christian Racca
  • 2. Agenda Obiettivi del workshop Big Data Cosa sono gli Open Data e perchè Open Data? Quali vantaggi possono dare gli Open Data? Gli Open Data nel mondo Chi produce Open Data? Linked Open Data Alcuni Datasets disponibili Qualche esempio di Apps Altri esempi Le 10 slide 20 sett 2011 Open Data Startups
  • 3. Workshop GOALS Dare consapevolezza del valore potenziale dei dati open. Creare una versione ALPHA di start-up utilizzando uno o più datasets (suggeriti e non). Presentare in un elevator pitch di 4(?) minuti il proprio "seme" di start-up. Open Data Startups
  • 4. WEB 2.0 WEB 2.0 is dead... Long life to WEB OF DATA Open Data Startups
  • 5. Big Data: A growing torrent $600 to buy a disk drive that can store all the world's music. 5 billion mobile phone in use in 2010. 30 billion pieces of content shared on Facebook every month. 40% of projected growth in global data generated per year VS 5% growth in global IT spending. 235 terabytes data collected by US Library of Congress in April 2011. 15 out of 17 sectors in the United States have more data stored per company than the US Library of Congress. * rapporto McKinsey: Big Data: The next frontier of innovation, competition and productivity. (may 2011) Open Data Startups
  • 6. Big Data: Capturing the value $300 billion potential annual value to US health care - more than X 2 total annual health care spending in Spain. €250 billion potential annual value to Europe's public sector administration - more than GDP of Greece. $600 billion potential annual consumer surplus from using personal location data globally. 60% potential increase in retailers' operating margins possible with big data. 140.000-190.000 more deep analytical talent position and 1.5 million more data-savvy managers needed to take full advantage of big data in the USA. * rapporto McKinsey: Big Data: The next frontier of innovation, competition and productivity. (may 2011) Open Data Startups
  • 7. Quanti di voi hanno preso l'autobus questa mattina? Open Data Startups
  • 8. Quanti di voi hanno preso l'autobus questa mattina? Open Data Startups
  • 9. Quanti di voi hanno preso l'autobus questa mattina? Open Data Startups
  • 10. Quanti di voi hanno preso l'autobus questa mattina? Open Data Startups
  • 11. Quanti di voi hanno preso l'autobus questa mattina? Open Data Startups
  • 12. Open Data - What are ? da Wikipedia Con Dati aperti, comunemente chiamati con il termine inglese Open Data anche nel contesto italiano, si fa riferimento ad una filosofia, che è al tempo stesso una pratica. Essa implica che alcune tipologie di dati siano liberamente accessibili a tutti, senza restrizioni di copyright, brevetti o altre forme di controllo che ne limitino la riproduzione. Open Data Startups
  • 13. Open Data - What are ? in pratica Open Data propone un modello di valorizzazione del patrimonio informativo pubblico basato sulla possibilità di usare i dati aperti per creare nuovi servizi e nuovi strumenti. Open Data Startups
  • 14. Open Data is a matter of: Prezzi I beni digitali: non rivali, costo di distribuzione/ riproduzione basso. Recupero dei costi VS distribuzione al costo marginale. Licenze OKF (Open Knowledge Foundation) CC (Creative Commons) ! possibilità di riuso a fini commerciali. Formati e Tecnologie ... Open Data Startups
  • 15. Open Data - Formats Rendere disponibili i dati sul WEB in qualunque formato, utilizzando una licenza aperta. Rendere disponibili i dati sul WEB in formato leggibile dalle macchine (CSV, XLS...) Utilizzare formati non proprietari. Utilizzare lo standard RDF Dati in formato RDF linkati fra di loro (Linked RDF DATA) Open Data Startups
  • 16. Open Data in the world La mia amministrazione è impegnata a creare un livello di apertura senza precedenti nella gestione del Governo. Lavoreremo insieme per accrescere la fiducia del pubblico e per creare un sistema basato sulla trasparenza, la partecipazione e la collaborazione. Questa apertura rafforzerà la nostra democrazia e promuoverà l'efficenza e l'efficacia nel nostro Governo. Transparency and Open Government Memorandum for the Heads of Executive Departments and Agencies (2009) "People are tempted to keep it [data]. You hug your database, you don't want to let it go until you've made a beautiful website for it. Well I'd like to suggest that, yes, make a beautiful website, who am I to say don't make a beautiful website? Make a beautiful website, but first, give us the unadulterated data, we want the data, we want unadulterated data. We have to ask for raw data now." Tim Berners-Lee, inventore del WEB e advisor data.gov.uk Open Data Startups
  • 17.
  • 18.
  • 19.
  • 20. Who produce Open Data ? Il settore pubblico possiede e gestisce grandi quantità di dati e informazioni il cui valore app. è 27 Miliardi di € (MEPSIR Report - Measuring European Public Sector Resources, 2006). La PSI può essere un primo grande fornitore di Open Data. Il settore privato potrebbe però diventare il maggior produttore di Open Data se ne percepisse il giusto valore. Open Data Startups
  • 21. Open Data - Benefits Trasparenza Efficienza Concorrenza Innovazione Open Data Startups
  • 22. Open Data - Challanges “Invogliare” la Pubblica Amministrazione a rendere i propri dati disponibili. LeCommunity (e start-ups) dovrebbero aggiungere business model e innovazione. Serendipity: L’innovazione è spesso generata dall’uso inaspettato di dati! Problemi Trovare nuovi dataset di dati “Fondere” e “linkare” dati e dataset (possibilmente on-the-fly). Open Data Startups
  • 23.
  • 24. Data As A Service I datinon sono più "chiusi" nelle applicazioni... ... ma consumati on-demand come un qualsiasi altro tipo di servizio. RESTful: accedere ai dati come si accede ad una risorsa web: tramite URL. Open Data Startups
  • 25. Data Marketplace Business Models: Data owner: paid to publish / revenue share. Data user: pay for data delivery/trasformation/analysis services. New Generation Marketplace Operano su dati open e non. Forniscono dati on-the-fly attraverso API (anche custom). Coinvolgono (in alcuni casi) la comunità nel mantenere (curation) i dati: crowdsourcing (e.g. Factual). Forniscono strumenti integrati (web based) per l'esplorazione. Open Data Startups
  • 26.
  • 27. LINKED Open Data Principi base: Le cose hanno un nome (persone, città, aziende). Ogni nome inizia con http:// Rappresentare i dati come un RDF (Resource Description Framework is a W3C standard). Linked Data spiegato da Tim Berners Lee: http://www.ted.com/talks/tim_berners_lee_on_the_next_web.html Open Data Startups
  • 28. Data as a RDF graph Open Data Startups
  • 29. The Vision - A global interconnected database Open Data Startups
  • 30. The Vision - Mix data on-the-fly Open Data Startups
  • 31. Linked Data - hands on DBPedia fornisce una gran parte delle entità di Wikipedia in formato Linked Data. Firenze: http://dbpedia.org/page/Florence dbpedia-owl:leaderName Renzi Firenze Open Data Startups
  • 32. Where are the Data ? Un archivio di open (e non open) data: http://ckan.net/ http://it.ckan.net/ Esempi: 5T: http://biennaledemocrazia.it/dataset/ Dati Piemonte: http://dati.piemonte.it Datasets originali ISTAT: http://dati.istat.it/ Enel http://data.enel.com/ Open Data Startups
  • 33. Food Open Data Startups
  • 34. Transportation Open Data Startups
  • 35. Children Open Data Startups
  • 36. Transparency Open Data Startups
  • 37. Environment Open Data Startups
  • 38. Other examples Open Data Startups
  • 39. The linked Data CLOUD http://richard.cyganiak.de/2007/10/lod/lod- datasets_2010-09-22_colored.html Open Data Startups
  • 40. The hackers WAY Quando licenze e copyright lo permettono... Web Site scraping è un possibilità. http://scraperwiki.com/ Es. http://scraperwiki.com/scrapers/aria-comune-di-torino/ Open Data Startups
  • 41. Interesting Tools & Links ONLINE DATA VISUALIZATION G visualization Api: http://code.google.com/intl/it-IT/apis/chart/ Tableau Public: http://www.tableausoftware.com/public Open Heat Map: http://www.openheatmap.com/ ONLINE STORAGE+VISUALIZATION Google Public Data explorer: http://www.google.com/publicdata/home IBM Many Eyes: http://www-958.ibm.com/software/data/cognos/manyeyes/ Google Fusion tables: http://www.google.com/fusiontables/Home Impure: http://www.impure.com/ è un linguaggio visuale tipo Y! Pipes per la data visualization. Molto potente ma non facile da usare. CURATION & LINKING Google Refine Data Wrangler: http://vis.stanford.edu/wrangler/ OFFLINE TOOLS R per dati statistici potentissimo molti plugin anche sparql: http://www.r-project.org/ Jscript Library per la data visualization: http://thejit.org/ Anche questa: http://vis.stanford.edu/protovis/ Il miglior tool di network e graph analysis e visualization (non facilissimo ma davvero powerful, ha plugin sparql): http://gephi.org/ Linguaggio turing complete per la dataviz, potentissimo, difficile (lo usano tutti i visual artist seri): http://processing.org/ Open Data Startups
  • 42. Workshop Output 10 slides to pitch a Venture Capitalist Open Data Startups
  • 43. How to Pitch a VC Dave McClure, Founders Fund, Master of 500 Hats blogs @DaveMcClure on Twitter http://500startups.com/
  • 44. Essential Elements of a Hot VC Pitch • Love in an Elevator (30-second quick pitch) • The Money Shot (live demo, screen shots, video) • Size Matters (market size, bottom up / top down) • Nice Package (customer$, metric$ UP & to the RIGHT) • Superheros & Rock Stars (your team) * note: the above are teaser images… they don’t really mean anything; they’re just here to capture your attention.
  • 45. 10 Erogenous VC Zones Teaser Image Goes Here 1. Elevator Pitch 6. Proprietary Tech 2. The Problem 7. Competition 3. Your Solution Money Shot 8. Marketing Plan 9. Team / Hires Goes Here 4. Market Size 5. Business Model 10. Money / Milestones AA RR R! The Money Shot: Business Demo Metrics Cu$tomer Screen Shots (NOT Revenue Testimonial$ Video Projections)
  • 46. 1. The Elevator Pitch The 30-second quickie, for when you don’t have time for lots of VC lovin’ • Short, Simple, Memorable: “What, How, Why.” – “We’re X for Y” is ok if 1) it’s true 2) X & Y are well-known • Max 3 key words / phrases, 2 sentences. – “SlideShare is the world’s largest community for sharing presentations. – “TeachStreet is a place to teach or learn anything.” – “Mint.com is the free, easy way to manage your money online.” • Logo and/or Image ok • No “Inside Baseball” lingo – make it easy for non-experts to understand. • Smile. It’s ok to have fun when you pitch !
  • 47. 2. The Problem • What is The Problem? Make it Obvious. – “Ouch. Yeah, I have that too…” • Who has it? How Many? How do you know? – stats, examples, research, links. • “Painkiller not Vitamin” – Vitamins are great, but you NEED painkillers. BAD. (note: Viagra is not a Vitamin)
  • 48. 3. Your Solution Describe why your Solution: – Makes customers very happy – Does it better, different than anyone else – Remember “NICHE to WIN” (Customer Case Study can also go here)
  • 49. 4. Market Size no idea what this is, but it looks really F’ing impressive, doesn’t it? up & to the right. • Bigger is Better • Top Down = someone else reported it – Forrester, Gartner, Your Uncle • Bottom Up = calculate users/usage/rev$ – Avg Txn = $X – Y customers in our market – Avg customer buys Z times per year – Market Size = $X * Y * Z annually = a big friggin’ # – Market growing @ 100+% per year note: “top down” and “bottom up” have nothing to do with giving VCs hard-ons. Get your mind out of the gutter.
  • 50. 5. Business Model (How Do You Plan to Make Money?) • Describe Top 1-3 Revenue Sources – Prioritize by Size, Growth, and/or Potential – Cite current market activity / customer behavior as proof • Show How You Get to Break-even (or Profitable) – Ideally, on the current round of funding you’re raising • Common Revenue Models – Direct: ecommerce, subscription, digital goods, brands – Indirect: advertising, lead gen, affiliate / CPA • See Andrew Chen presentation: • Revenue: The Internet Wants to Be Free, but You Need to Get Paid
  • 51. 6. Proprietary Tech (What is your Unfair Advantage?) • VCs *really* like unfair advantage – big market lead – experienced team – ex-Google PhDs – core / “breakthrough” tech – “defensible” IP / patents – “exclusive” partnership – great sales/marketing – balls of steel
  • 52. 7. Competition (+ why they all suck, why you’re different, yellow, better) • List all top competitors – (especially top ones; we’ll find them anyway) • Say how you’re better, or at least different – If not better or different -> “NICHE TO WIN” – position(-ing) matters • 2-axis graph is trite, but still useful – see next page for example • useful comparisons / differentiation: – simple vs complex – value vs cheap (tougher to prove tho) – cheap vs expensive (but careful you don’t race to bottom) – consumer vs enterprise – open vs proprietary (in this case, open usually better… but not always)
  • 53. We’re Better, Different. (and You Suck.) Funny! Accepted Shocking !!! Not Funny.
  • 54. 8. Marketing Plan Ok, so your product / technology rocks, but… … how do you get customers / distribution? lots of channels, lots of decisions… choose a few: • PR • Email • Contest • SEO / SEM • Biz Dev • Blogs / Bloggers • Viral / Referral • Direct Marketing • Affiliate / CPA • Radio / TV / Print • Widgets / Apps • Dedicated Sales • LOLCats • Telemarketing 3 Things That Matter / To Measure : 1. Volume 2. Cost 3. Conversion
  • 55. 9. Team People that Get VCs all Hot & Bothered • Geeks with deep technical background • Entrepreneurs who have sold companies • Sales/Marketing who Make it Rain Also Identify: • Key Hires you Need but *Don’t* Have, and… • … you’ve got candidates lined up in those areas • ... ready to hire as soon as you close funding • … or at least job descriptions / est. salary
  • 56. 10. Money, Milestones • How Much Money Raised / Now Raising? – Show 3 Budgets: Small, Medium, Large – Show how you’ve got “Small” already lined up – Show “Optionality”, Competitive Interest (if poss.) • How Will You Spend It? – Key Hires (Build Product) – Marketing & Sales (Drive Revenue) – CapX, Ops Infrastructure (Scale Up) • Show Achievable Milestones with Non-Linear Increase in Value – Show what will get you to next milestone (product, customers, hires) – Show how the capital you have is more than adequate
  • 57. Additional Resources • Dave McClure: – Startup Metrics for Pirates (AARRR!) – ZapMeals Sample Pitch Presentation – Master of 500 Hats Blog: “Greatest Hats” (top blog posts) • Steve Blank: 4 Steps to Epiphany, Customer Development Methodology • Eric Ries: StartupLessonsLearned • Sean Ellis: Startup-Marketing.com • Andrew Chen: AndrewChenBlog.com • Brad Feld, Jason Mendelson: AskTheVC.com • Aydin Senkut: Felicis Ventures blog • Mark Suster: Both Sides of the Table • VentureHacks.com • StartupCompanyLawyer.com
  • 58. Open Data Startups rks hop Wo he re!!! st arts Massimo Zaglio Christian Racca