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GK 600: mLamba

  1. MLAMBA GoKart 600
  2. mLamda
  3. Demand for data scientists is definitely outstripping supply. —Andrew Jennings, Chief Analytics Officer, FICO
  4. Data science is an interdisciplinary field about scientific processes and systems to extract knowledge or insights from data in various forms. —Wikipedia
  5. Data Science Domain Expertise Mathematics Computer Science Data Processing Statistical Research Machine Learning
  6. REPORTING OPTIMIZATION OPTIMIZATIONINSIGHT GENERATION INSIGHT COMMUNICATION WEATHER PREDICTION TALENT ACQUISITIONBIG DATA PREDICTIVE MODELING FRAUD DETECTION INVESTMENT IDENTIFICATIONANALYTICS IMPLEMENTATION DATA SCIENCE PROGRAMMING OPTIMIZATIONR, SAS, PYTHON PROGRAMING RISK ASSESSMENTDATA VISUALIZATION REVENUE MODELINGCLOUD COMPUTING RECOMMENDATION SYSTEM DATA CLEANINGSTATISTICAL RESEARCH ALGORITHM CREATION DATA INFRASTRUCTURECONSUMER RESEARCH LEAD ACQUISITION SOCIAL LISTENING
  7. DATA RESEARCHERS DATA ENGINEERS BUSINESS DATA ANALYSTS DATA ANALYSTS DIRECTOR OF ANALYTICS DATA CLEANERSTATISTICIANS DATA DEVELOPERS DATA CREATIVES DATA RESEARCHERS DATA SCIENTISTS
  8. “The sexy job in the next 10 years will be statisticians. People think I’m joking, but who would’ve guessed that computer engineers would’ve been the sexiest job of the 1990s? —Hal Varian, Chief Economist at Google
  9. Big data is not inherently organized or well- generated. It’s certainly not neatly structured in a database. It’s messy. It’s everywhere. It’s a morass of details of what we buy, where we drive, what we surf online, what we “like”. —David Williams, CEO, Deloitte Financial Advisory Services LLP
  10. Problem Statement
  11. By 2018 There will be a Data Science workforce gap of 200,000+
  12. If your company is looking to hire data scientist right now, good luck. —Datanami, March 2016
  13. mLamda will work with and enable companies to educate and further develop their employees to meet the data science gap.
  14. 43% of companies report that lacking appropriate analytical skills is a key challenge
  15. Of those organizations, 20% have changed their approach to attracting and retaining analytics talent.
  16. Demand
  17. As a result of the scarcity of data scientists, 63 percent of the companies who want to grow their data science proficiency are providing formal or on-the-job training in-house.
  18. “One big plus of developing analytical skills among current employees, is that they already know the business.”
  19. Progressive companies are also doing more to train existing managers to become more analytical and new data scientists to better understand their business,
  20. Turning analytical insights into business actions is the top analytics challenge
  21. The “training” landscape for data science learning is inconsistent, disparate, and does not differentiate amongst different “student types”.
  22. Literacy Fluency Mastery
  23. Literacy Fluency Mastery Understanding the possible, of data science.
  24. Fluency Mastery Ability to apply skills to context.
  25. Mastery Complete understanding of operation and execution of data science, so that others can be taught.
  26. Literacy Fluency Mastery Teach
  27. Domain knowledge is more valuable in recruiting and educating data scientists than engineering and quantitative skills. — Mike Ross, Sr. Director of Data science at Capital One.
  28. We believe the best way to train the rising number of junior data scientists is through the transfer of domain knowledge and a progressive education platform.
  29. Assumptions
  30. It’s easier to educate a willing and existing workforce than to hire new. Demystifying data science by bringing it out of the black box and making it available to all.
  31. We need to educate the world that the practice of data science is more accessible to people who want to learn.
  32. Infusing Data Science and educating employees IS the playbook for not falling behind in the future. We assuage Marketplace and Executive FOMO on the data science and machine learning surge.
  33. Opportunity
  34. Training • Companies with 500+ employees: Average spend of $1,200 per employee per year
  35. Tuition Reimbursement • The average maximum reimbursement amount is $4,591 per employee per year
  36. Combined Average Education Spend • 500+ $5,791 per employee per year
  37. Total Addressable Market (New Jobs) Assumptions • 200,000+ jobs gap by 2018 • Companies with 500+ employees spend an average of $5,791 annually on employee training & tuition reimbursement • We capture 1% of the total addressable market Calculations • 1% of 200000 = 2000 • 2000 * $5791 = $11,582,000 annually • ½ of that $11M = $5,791,000 (if organizations only spend half of the average amount on employee education) Annual Revenue • $11M • Achievable by end of year 2 • Potentially undervaluing the market; could be more.
  38. Ask
  39. The cost for GoKart to create an industry-changing business that will solidify the future of Data Science education while addressing a major global skills gap is:
  40. Three 1-Week Sprints 400 Hours $100,000 • Marketing research and opportunity validation • Build and validate the financial model • Curriculum architecture and design roadmap • Prototype build • Prototype testing with potential users • Prototype testing with potential buyers • Technology roadmap and costing The cost for GoKart to create an industry-changing business that will solidify the future of Data Science education while addressing a major global skills gap is:
  41. Plus the $150 we did not spend today ;)
  42. Thank you
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