{"id":45068,"date":"2020-10-24T03:52:50","date_gmt":"2020-10-24T07:52:50","guid":{"rendered":"https:\/\/www.opensource.im\/uncategorized\/bridging-the-skills-gap-for-ai-and-machine-learning-integration-developers.php"},"modified":"2020-10-24T03:52:50","modified_gmt":"2020-10-24T07:52:50","slug":"bridging-the-skills-gap-for-ai-and-machine-learning-integration-developers","status":"publish","type":"post","link":"https:\/\/euvolution.com\/open-source-convergence\/machine-learning\/bridging-the-skills-gap-for-ai-and-machine-learning-integration-developers.php","title":{"rendered":"Bridging the Skills Gap for AI and Machine Learning &#8211; Integration Developers"},"content":{"rendered":"<p><p>Even as COVID-19 has slowed business  investments worldwide, AI\/ML spending is  increasing. In a post for IDN, dotDatas CEO Ryohei Fujimaki, Ph.D, looks at the latest  trends in AI\/ML automation  and how they will speed adoption across  industries.<\/p>\n<\/p>\n<p>COVID-19 has impacted businesses across  the globe, from closures to supply chain interruptions to resource scarcity. As  businesses adjust to the new normal, many are looking to do more with less and  find ways to optimize their current business investments.<\/p>\n<\/p>\n<p>In this resource-constrained  environment, many types of business investments have slowed dramatically. That  said, investments in AI and machine learning are accelerated, according to a  recentAdweek  survey.<\/p>\n<\/p>\n<p>Adweek found two-thirds of business  executives say COVID-19 has not slowed AI projects. In fact, some 40% of  respondents told Adweek that the pandemic has accelerated their AI\/ML efforts.  Reasons for the sustained and growing interest in AI\/ML include decreasing  costs, improving performance, and increasing efficiencies-all efforts to make  up for time and output lost during the COVID-19 slowdown.  <\/p>\n<\/p>\n<p>Despite the rosy outlook for AI\/ML  investments, it bears mentioning that businesses also admit they still struggle  to scale these technologies beyond PoCs (proof of concepts). This is due to an  ongoing talent shortage in the data science field  a shortage that COVID has  made even more acute.<\/p>\n<\/p>\n<p>Data science is an interdisciplinary  approach that requires cross-domain expertise, including mathematics, statistics,  data engineering, software engineering, and subject matter  expertise.<\/p>\n<\/p>\n<p>The shortage of data scientists  as  well as data architects, machine learning engineers skilled in building,  testing, and deploying ML models  has created a big challenge for businesses  implementing AI and ML initiatives, limiting the scale of data science projects  and slowing time to production. The scarcity of data scientists has also  created a quandary for organizations: how can they change the way they do data  science, empowering the teams they already have?<\/p>\n<\/p>\n<p>The democratization of data science is  very important and a current industry trend, but true democratization has never  been easy for organizations. Analytics and data science leaders lament their  team's ability to only manage a few projects per year. BI leaders, on the other  hand, have been trying to embed predictive analytics in their dashboards but  face the daunting task of learning how to build AI\/ML models. What can  organizations do, what tactics will help them to scale AI initiatives and  bridge the gap between what is required and what's available?<\/p>\n<p>Democratization of data science in a  true sense is to empower teams with advanced analytical tools and automation  technologies.<\/p>\n<\/p>\n<p>These tools can significantly simplify  tasks that formerly could only be completed by data scientists. They are  empowering business analysts, BI developers and data engineers to execute AI  and machine learning projects. Further, they accelerate data science processes  with very little training.<\/p>\n<p>Notable among these offerings are:<\/p>\n<p>This class of automation tools removes  much of the time and expense to design and deploy AI-powered analytics  pipelines  and do so little cost and without high-priced technical  staff.<\/p>\n<\/p>\n<p>Today, s typical data team is  interdisciplinary and consists of data engineers, data analysts and data  scientists. The data analyst and engineer are responsible for cleaning,  formatting and preparing data for the data scientist who then uses  analytics-ready data to build features and then build ML models using a trial  and error approach.<\/p>\n<\/p>\n<p>Data science processes are complicated,  highly manual, and iterative in nature. Depending on the maturity of the data  pipelines, a data science project can take from 30 to 90 days to complete with  nearly 80% of the effort spent on AI-focused data preparation and Feature  Engineering.<\/p>\n<\/p>\n<p>Further, the AI-focused data preparation  process requires an impressive amount of hacking skills from developers, data  scientists and data engineers to clean, manipulate and transform the data to  enable data scientists to execute feature engineering.<\/p>\n<\/p>\n<p>That said, the landscaping is changing.  Tools are now surfacing to deliver AI automation to pre-process data, connect  to data and automatically build features and ML models. These results eliminate  the need for having a large team and doing it efficiently at the greatest  possible speed.<\/p>\n<\/p>\n<p>In addition, feature engineering  automation has vast potential to change the traditional data science process.  Feature engineering involves the application of business knowledge, math, and  statistics to transform data into a format that can be directly consumed by  machine learning models.<\/p>\n<\/p>\n<p>It also can significantly lower skill  barriers beyond ML automation alone, eliminating hundreds or even thousands of  manually-crafted SQL queries, and ramps up the speed of the data science  project even without a full light of domain knowledge).<\/p>\n<\/p>\n<p>Organizations with large data science  teams will also find automation platforms very valuable. They free up  highly-skilled resources from many of the manual and time-consuming efforts  involved in data science and machine learning workflow and allow them to focus  on more complex and challenging strategic tasks.<\/p>\n<\/p>\n<p>The trend is definitely to leverage  automation technologies to speed-up the ML development process. By using AI  automation technologies, BI and junior data scientist can automatically build  models. This frees up time for experienced data scientists who take on more  challenging business problems. While everyone seemed to focus on building  automated ML models, the industry is definitely moving towards automating the  entire AI\/ML workflow.<\/p>\n<\/p>\n<p>This empowers data scientists to achieve  higher productivity and drive greater business impact than ever before.<\/p>\n<p>Another important tactic for bridging  the skills gap in data science is ongoing skills training for the AI, data science  and business intelligence teams.<\/p>\n<\/p>\n<p>Rather than hiring outside talent from  an already shallow talent pool, companies are often better off investing time  and resources in data-science training of their existing talent pool. These  citizen data scientists can bridge the skill gap, address the labor shortage  and enable companies to leverage the existing resources they already  have.<\/p>\n<\/p>\n<p>There are many advantages to this  approach.<\/p>\n<\/p>\n<p>Theidea is to build a team  from inside the company versus hiring experts from outside. Any transformation  is only going to succeed, provided it is embraced by the vast majority.  Creating internal AI teams, empowering citizen data scientists and scaling  pilot programs focused on AI is the right approach.<\/p>\n<\/p>\n<p>One of the most important of which is  building data science skills across multiple teams to support data science's  democratization across the organization. This strategy can be implemented by  first identifying employees with existing programming, analytical and  quantitative skills and then augmenting those skills with the required data  science skills and tools training. Experienced data scientists can play the  role of an evangelizer to share data science best practices and guide the  citizen data scientists through the process.<\/p>\n<\/p>\n<p>AI and ML-driven innovation becomes  indispensable as more enterprises transform themselves into data-driven  organizations. Building a strong analytics team, while challenging in todays  resource-scarce environment, is attainable by using appropriate automation  tools. The benefits of this approach include:<\/p>\n<p>These factors can not only help fill the  skills gap but will help accelerate both data science and business innovation,  delivering greater and broader business impact.<\/p>\n<\/p>\n<p><!-- Auto Generated --><\/p>\n<p>More here:<br \/>\n<a target=\"_blank\" href=\"http:\/\/www.idevnews.com\/stories\/7400\/Bridging-the-Skills-Gap-for-AI-and-Machine-Learning\" title=\"Bridging the Skills Gap for AI and Machine Learning - Integration Developers\" rel=\"noopener noreferrer\">Bridging the Skills Gap for AI and Machine Learning - Integration Developers<\/a><\/p>\n","protected":false},"excerpt":{"rendered":"<p> Even as COVID-19 has slowed business investments worldwide, AI\/ML spending is increasing. <\/p>\n","protected":false},"author":1,"featured_media":0,"comment_status":"closed","ping_status":"closed","sticky":false,"template":"","format":"standard","meta":{"footnotes":""},"categories":[27373],"tags":[],"class_list":["post-45068","post","type-post","status-publish","format-standard","hentry","category-machine-learning"],"_links":{"self":[{"href":"https:\/\/euvolution.com\/open-source-convergence\/wp-json\/wp\/v2\/posts\/45068"}],"collection":[{"href":"https:\/\/euvolution.com\/open-source-convergence\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/euvolution.com\/open-source-convergence\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/euvolution.com\/open-source-convergence\/wp-json\/wp\/v2\/users\/1"}],"replies":[{"embeddable":true,"href":"https:\/\/euvolution.com\/open-source-convergence\/wp-json\/wp\/v2\/comments?post=45068"}],"version-history":[{"count":0,"href":"https:\/\/euvolution.com\/open-source-convergence\/wp-json\/wp\/v2\/posts\/45068\/revisions"}],"wp:attachment":[{"href":"https:\/\/euvolution.com\/open-source-convergence\/wp-json\/wp\/v2\/media?parent=45068"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/euvolution.com\/open-source-convergence\/wp-json\/wp\/v2\/categories?post=45068"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/euvolution.com\/open-source-convergence\/wp-json\/wp\/v2\/tags?post=45068"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}