Why You Should Automate Onboarding Using AI and ML

There are many applications of automation in the talent acquisition (TA) space, but one of the areas most ripe for improvement with automation is onboarding. The TA process is often hampered by long delays which has numerous consequences for the new employee experience, especially important during the time of the Great Resignation. Organizations looking to differentiate must find ways to speed up the process and find ways to let onboarding teams be more strategic in their duties. 

Increasing the speed of moving people through the onboarding phase is vital, but it is also worth looking at the benefits of improving integrations. One of the most common challenges when dealing with TA technology is the lack of quality data and analytics, which plays a big part in why organizations seek to upgrade their tech solutions. However, simply having AI or ML capabilities is not the easy fix some might expect. Although those technologies can improve speed and remove mundane tasks, it needs to be paired with a thoughtful analytics strategy that shows the further-down-the-line benefits of onboarding automation. 

One of the easiest ways to determine if having automated TA processes is correlated to overall success is to look at those organizations with AI and ML capabilities in their TA technology and see how they performed against those without. 

Organizations that have automated processes are much more likely to see an increase in engagement, retention, customer satisfaction, and retention. This is likely because they can improve more long-term goals by giving over time-consuming tasks to automation and focusing on the more strategic aspects of onboarding such as early coaching and mentoring, linking onboarding to learning, and cultural communication. 

To improve your organization’s ability to expand onboarding through the use of AI and ML-backed talent acquisition technology, you need to determine what people and processes you have in place to help talent acquisition professionals make use of the automation technology they are given. Organizations should ask themselves those questions, along with the following: 

What data sources does your organization have access to in your current system, and what data sources are you missing? 

What should your onboarding process look like in the next few years and what is automated technology’s role in getting you there? 

What aspects of the onboarding process can benefit from AI, ML and RPA capabilities?

Automating Onboarding for Better Speed and Also Better Strategic Onboarding 

Automate continuous onboarding with check-ins based on any variety of date milestones (1 day, 30 days, 90 days, anniversary) or triggers, and deliver documents, assignments, and assessments at those predetermined intervals. This will allow your organization to handle necessary regulatory paperwork and also to be more strategic by taking the employee sentiment pulse, gathering employee referrals (a great thing to do in the first three months), understand what the company could be doing better, or do periodic skills tests. 

Automate All TA Processes for Better Data Integration 

For too long, onboarding has been seen as a standalone process and that has carried over into how onboarding technology is used. The biggest challenge organizations face when it comes to using TA technology is getting the right data and analytics, and that challenge is directly related to the second most common obstacle — lack of integration with other systems. 

Much of the current use of AI and ML-backed technology is in the early parts of the TA processes — sourcing and screening. This leaves post-hire TA processes sadly in need of more automation because the onboarding processes are just as ripe for improvement through the use of more modern systems. Document management, data collection and governance, and integration with other HCM systems are all areas where AI and ML can make a significant impact. Organizations would be wise to expand the use of AL and ML technologies into more post-hire processes. 

Determine Which Processes Should and Which Shouldn’t Require Human Interaction 

59% of organizations say they are not ready or only somewhat ready to have AI- and ML-driven technology replace human interactions and decision-making. Certainly, using advanced TA technology can improve the candidate experience, but only if the technology is used for that purpose. Significant decisions, meaning those that can affect people directly such as a hiring decision, should only be made by people. 

Other actions, such as eliminating redundant information, or automatically sending needed paperwork to candidates and filing data, can and should be automated to make the candidate experience more efficient and pleasant. 

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Mike Cooke

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Mike Cooke

Chief Executive Officer of Brandon Hall Group Mike Cooke Prior to joining Brandon Hall Group, Mike Cooke was the Chief Executive Officer and co-founder of AC Growth. Mike held leadership and executive positions for the majority of his career, at which he was responsible for steering sales and marketing teams to drive results and profitability. His background includes more than 15 years of experience in sales, marketing, management, and operations in the research, consulting, software and technology industries. Mike has extensive experience in sales, marketing and management having worked for several early high-growth emerging businesses and has implemented technology systems to support various critical sales, finance, marketing and client service functions. He is especially skilled in organizing the sales and service strategy to fully support a company’s growth strategy. The concept of growth was an absolute to Mike and a motivator in starting AC Growth, in order to help organizations achieve research driven results. Most recently, Mike was the VP and General Manager of Field Operations at Bersin & Associates, a global analyst and consulting services firm focused on all areas of enterprise learning, talent management and talent acquisition. Tasked with leading the company’s global expansion, Mike led all sales operations worldwide. During Mike’s tenure, the company has grown into a multi-national firm, conducting business in over 45 countries with over 4,500 multi-national organizations. Mike started his career at MicroVideo Learning Systems in 1992, eventually holding a senior management position and leading all corporate sales before founding Dynamic Minds. Mike was CEO and Co-Founder of Dynamic Minds, a custom developer of software programs, working with clients like Goldman Sachs, Prentice Hall, McGraw Hill and Merrill Lynch. Also, Mike worked for Oddcast, a leading provider of customer experience and marketing solutions, where he held a senior management position leading the company into new markets across various industries. Mike also serves on the Advisory Board for Carbon Solutions America, an independent sustainability consulting and carbon management firm that specializes in the design and implementation of greenhouse reduction and sustainability plans as well as managing the generation of carbon and renewal energy and energy efficiency credits. Mike attended University of Phoenix, studying Business Administration and Finance. He has also completed executive training at the Chicago Graduate School of Business in Chicago, IL.