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HomeRoboticsAvinash Misra, CEO & Co-Founding father of Skan.AI - Interview Collection

Avinash Misra, CEO & Co-Founding father of Skan.AI – Interview Collection


Avinash Misra is the CEO and co-founder of Skan.  Avinash is a lifelong entrepreneur with a confirmed document of taking ventures from seed to liquidity. He has constructed profitable ventures within the enterprise digital transformation house and his final enterprise was acquired by Genpact (NYSE : G). Avinash’s perception for Skan took seed in massive scale Enterprise Course of Transformation tasks which he has led over the past decade.

Your earlier firm Endeavour Software program Applied sciences was ultimately acquired by Genpact. What was this firm and what have been among the key classes that you simply realized?

This firm was a front-office digital transformation specialist. That’s, it specialised within the construct and deployment of particular applied sciences resembling laptop imaginative and prescient, chatbots/ pure language processing (NLP), and enterprise cellular apps to enhance and rework customer-facing enterprise processes. 

We realized two key classes. First, when know-how is utilized for its sake solely, it creates each technical and course of debt. Second, essentially the most worth is derived when know-how particularly approaches the tip consumer with empathy and a design-think mindset. 

Might you share the genesis story behind Skan?

“Automation begins when automation fails.” In a single sentence, this was our starting. Once we constructed RPA bots for advanced enterprise processes, we repeatedly observed that after a bot was deployed it failed shortly as a result of it didn’t keep in mind the entire nuances, permutation, and exceptions of that enterprise course of. Each time a bot failed, it turned another lacking permutation of labor. It was an countless cycle of deployment and failures. 

So, why don’t we all know all of the nuances of enterprise processes?

We don’t know all of the nuances of enterprise processes as a result of all course of discovery is completed by human enterprise analysts who ask the method brokers to explain work. People are spectacularly unreliable in describing issues which have a way of familiarity or routine and routine. These are sometimes issues they will do nicely, however can by no means describe with the wanted accuracy. Therefore, we constructed Skan to look at actual work and perceive that work and the processes, relatively than interview and doc people.

Skan is partially a course of discovery platform. Might you outline what course of discovery is for our readers?

Course of discovery is a broad time period that refers back to the act of discovering or studying how processes work at an operational or structural degree. That is notably difficult with processes that contain human-system interactions with lots of or hundreds of staff, dozens of software program functions, and sophisticated workflows. An amazing instance is the claims administration course of.  

Immediately, Skan is definitely greater than a course of discovery platform. Skan generates a deep understanding of labor (course of discovery) and supplies superior analytics to assist course of homeowners and transformation leaders measure, analyze, and enhance KPIs that drive enterprise outcomes such because the buyer expertise, income, and value.  We name this broader functionality: course of Intelligence or the systematic assortment of knowledge and the end-to-end course of and utility of that data to manage enterprise outcomes or to be taught, perceive, and make choices. 

In accordance with a research carried out by Ernst & Younger, 30% to 50% of automation tasks fail. Why do you imagine that is so excessive?

Primarily based on working with our clients, we discover that one of many key obstacles to automation success is lack of visibility into present state of KPIs throughout the lifecycle of automation tasks. 

For example, with a view to qualify an automation undertaking, we have to baseline the present state KPIs and construct a enterprise case. Within the experimentation section, we have to determine know-how patterns and outline goal (to-be) KPIs based mostly on present state KPIs. In the course of the design, develop, check, and operationalization section, we have to align with the basis explanation for the issue to resolve. 

Lastly, within the validation section the place we measure funding payback and advantages realization, we’d like traceability to the to-be KPIs. So, we see that throughout this complete lifecycle, transparency and traceability to present state KPIs and root causes is required. And, but, in response to Forrester Analysis (2021), solely 16% of organizations say they’ve full visibility into how processes work. It’s no marvel automation tasks battle to ship worth. 

Are you able to clarify what procedures Skan takes to guard the privateness of individuals which are being monitored and delicate enterprise knowledge?

You will need to word that we don’t monitor folks. We solely observe particular components of labor (not the entire display screen). These components are particular work functions which are predefined upfront.

That mentioned, for any functions noticed, all delicate work knowledge is redacted. We even have the flexibility to anonymize the hyperlink between the one who did the job and the method. The names of people working within the course of may be anonymized, too.

Might you focus on how Skan makes use of machine studying and particularly deep studying?

Skan incorporates a number of AI and machine studying algorithms to handle varied issues resembling anonymizing delicate info (each textual content and picture knowledge), abstracting low-level occasions to enterprise actions, inferring course of graphs, and discovering course of variations.

What are some examples of actionable insights which were gained from this course of?

Skan helps course of homeowners and transformation leaders measure, analyze, and enhance KPIs that drive enterprise outcomes. Some instance insights are:

Effectiveness:

  • Unit price of manufacturing
  • Useful resource (workforce) utilization
  • NPS enchancment

Effectivity:

  • Automation discovery
  • First move charge
  • Course of compliance
  • Capability (workforce) planning
  • Lowered course of variability

What’s your imaginative and prescient for the way forward for course of intelligence?

Our imaginative and prescient for the way forward for course of intelligence is to rework the way in which folks work to allow them to enhance productiveness and attain their full potential. 

Immediately, the worldwide pyramid of labor has a broad base of non-value added duties and a really slender high of value-adding duties. Our imaginative and prescient is for course of discovery to invert this pyramid.

Thanks for the nice interview, readers who want to be taught extra ought to go to Skan.

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