Skip to content
View in the app

A better way to browse. Learn more.

Benchmark Six Sigma Forum

A full-screen app on your home screen with push notifications, badges and more.

To install this app on iOS and iPadOS
  1. Tap the Share icon in Safari
  2. Scroll the menu and tap Add to Home Screen.
  3. Tap Add in the top-right corner.
To install this app on Android
  1. Tap the 3-dot menu (⋮) in the top-right corner of the browser.
  2. Tap Add to Home screen or Install app.
  3. Confirm by tapping Install.
Message added by Mayank Gupta,

Hyperautomation is the use of advanced technologies like artificial intelligence (AI) and robotic process automation (RPA) etc. to automate not only simple but complex business processes as well. It goes beyond traditional automation by integrating multiple systems and technologies to incorporate intelligence to automate processes requiring reasoning, judgment, and analysis, enabling organizations to achieve end-to-end automation.

 

An application-oriented question on the topic along with responses can be seen below. The best answer was provided by Anchal Parashar on 29th Nov 2024.

 

Applause for all the respondents - Jiten Nagar, Anchal Parashar, Sudhir Gayakwad, Michael Navin Xavier.

Featured Replies

Q 724. What are the capabilities that Hyperautomation adds to RPA? Which industries are most likely to benefit from Hyperautomation? 

 

Note for website visitors -

Solved by Anchal Parashar

In our organization it has been sometime that I hear about Hyperautomation consistently and during the few presentations, go to understand the below elements that are part of Hyperautomation and where it is used.

 

1.      Artificial Intelligence (AI) & Machine Learning (ML):

  • Drug Discovery and Development: AI and ML algorithms can analyze vast datasets to identify potential drug candidates more quickly and accurately than traditional methods.
  • Clinical Trial Optimization: Predictive analytics can identify the best candidates for clinical trials, optimize trial designs, and monitor patient data in real-time to accelerate the trial process.
  • Patient Recruitment: Machine learning algorithms analyze patient data to identify and recruit suitable candidates for trials faster and more accurately.
  • Data Monitoring: AI processes real-time patient data to detect adverse effects early and ensure patient safety.

2.      Natural Language Processing (NLP):

  • Regulatory Compliance: NLP can be used to automate the extraction and interpretation of regulatory requirements from documents, ensuring compliance with local and international regulations.
  • Medical Literature Analysis: Automates the process of scanning and analyzing medical literature to stay up-to-date with the latest research and findings.
  • NLP: Data Extraction: Automates the extraction of relevant information from patient records, consent forms, and trial reports into structured datasets.

3.      Process Mining:

  • Manufacturing Process Optimization: Process mining can analyze manufacturing workflows to identify bottlenecks and inefficiencies, leading to improved productivity and reduced costs.
  • Supply Chain Management: Analyzes supply chain processes to optimize logistics, reduce waste, and ensure timely delivery of raw materials and products.
  • Process Mining: Workflow Analysis: Identifies inefficiencies in the trial process, such as delays in data reporting or redundant steps, and provides recommendations for improvements.

4.      Intelligent Document Processing (IDP):

  • Data Entry and Management: Automates the extraction and processing of data from various documents (e.g., patient records, lab reports, regulatory submissions), reducing manual data entry and errors.
  • Regulatory Submission Preparation: Streamlines the compilation and preparation of documents required for drug approval submissions to regulatory bodies like the FDA.
  • IDP: Document Management: Automates data entry and processing for clinical trial documents, ensuring accurate and quick submissions to regulatory bodies.

5.      Computer Vision:

  • Quality Control: Uses image recognition technology to inspect products for defects during the manufacturing process, ensuring high quality and reducing the likelihood of recalls.
  • Inventory Management: Automates the visual tracking of inventory levels and conditions in warehouses.

6.      Advanced Analytics:

  • Market Analysis: Predictive analytics can forecast market demand and help in the strategic planning of drug launches and marketing campaigns.
  • Risk Management: Identifies and mitigates risks associated with drug production and distribution, ensuring a more resilient supply chain.
  • Advanced Analytics: Outcome Prediction: Uses predictive analytics to forecast trial outcomes, helping in decision-making and resource allocation.

7.      Digital Twins:

  • Process Simulation: Creates digital replicas of manufacturing processes to simulate and optimize production lines, improving efficiency and reducing costs.
  • Clinical Trial Simulation: Simulates clinical trial processes to predict outcomes and identify potential issues before they arise.

 

Benefits:

  1. Reduced Time-to-Market: Accelerates the trial process, allowing drugs to reach the market faster.
  2. Cost Savings: Decreases the operational costs associated with manual data entry, patient recruitment, and process inefficiencies.
  3. Improved Accuracy and Compliance: Enhances data accuracy and ensures compliance with regulatory requirements through automated, standardized processes.
  4. Enhanced Patient Safety: Early detection of adverse effects ensures better patient safety and more reliable trial results.

Hyperautomation significantly enhances the capabilities of Robotic Process Automation (RPA) by integrating advanced technologies and methodologies, allowing organizations to automate more complex processes and improve overall efficiency.

 

## Capabilities Added to RPA by Hyperautomation

 

1. **Integration of Advanced Technologies**: Hyperautomation combines RPA with artificial intelligence (AI), machine learning (ML), natural language processing (NLP), and intelligent document processing (IDP). This integration allows for the automation of tasks that require human-like cognition, such as understanding unstructured data and making decisions based on context.

 

2. **End-to-End Process Automation**: While RPA typically focuses on automating repetitive tasks with predefined rules, hyperautomation extends this capability to manage entire workflows across multiple systems. This includes automating complex, long-running processes that involve decision-making and cross-departmental collaboration.

 

3. **Dynamic Adaptability**: Hyperautomation tools can adapt to changing circumstances and make real-time decisions, which is a significant advancement over traditional RPA that operates on fixed rules. This adaptability enables organizations to respond quickly to new information or changes in business conditions.

 

4. **Enhanced Data Processing**: With the incorporation of AI technologies, hyperautomation can handle both structured and unstructured data effectively. This capability allows for improved data analytics, reporting, and insights, facilitating better decision-making processes.

 

5. **Improved Collaboration and Integration**: Hyperautomation fosters seamless integration between various business applications and processes, breaking down silos within organizations. This interconnectedness enhances communication and information flow across departments, leading to more informed decision-making.

 

## Industries Likely to Benefit from Hyperautomation

 

Hyperautomation can provide substantial benefits across various industries, particularly those that rely heavily on data processing and complex workflows:

 

1. **Financial Services**: Banks and financial institutions can automate compliance checks, fraud detection, and customer service processes, improving efficiency while maintaining regulatory standards.

 

2. **Healthcare**: The healthcare sector can leverage hyperautomation for patient data management, billing processes, and regulatory compliance, leading to enhanced patient care and operational efficiency.

 

3. **Manufacturing**: Manufacturers can optimize supply chain management, inventory control, and production scheduling through hyperautomation, resulting in reduced costs and improved productivity.

 

4. **Retail**: Retailers can enhance customer experience by automating order processing, inventory management, and personalized marketing efforts using AI-driven insights.

 

5. **Telecommunications**: Telecom companies can streamline customer service operations and network management through hyperautomation, enabling faster response times and improved service delivery.

 

In summary, hyperautomation not only expands the capabilities of RPA but also offers transformative potential across various industries by enabling comprehensive automation strategies that enhance efficiency and adaptability in business processes.

 

Hyper automation enhances Robotic Process Automation (RPA) by integrating advanced technologies to automate complex business processes more effectively and efficiently.

Hyper automation’s ability to combine multiple technologies makes it a powerful tool for transforming business operations across various industries.

Few key capabilities that Hyper automation adds to RPA: Artificial Intelligence (AI) and Machine Learning (ML), Process Mining and Discovery, Natural Language Processing (NLP), Advanced Analytics, Intelligent Document Processing, Orchestration and Governance

Industries which benefit from Hyper automation are Finance and Banking, Healthcare, Manufacturing, Retail, Telecommunications, Insurance.

HyperAutomation is a business strategy that involves the use of advanced technologies to automate complex business processes and functions beyond traditional automation. It combines various automation tools and technologies, such as robotic process automation (RPA), artificial intelligence (AI), machine learning (ML), natural language processing (NLP), and process mining, to create a more comprehensive and efficient automation ecosystem.

 

HyperAutomation enhances Robotic Process Automation (RPA) by integrating advanced technologies and capabilities that extend beyond traditional automation. Here are some key capabilities that HyperAutomation adds to RPA:

 

Intelligent Decision-Making: HyperAutomation incorporates artificial intelligence (AI) and machine learning (ML) to enable systems to analyze data, learn from it, and make informed decisions. This allows for more complex and nuanced automation scenarios that RPA alone cannot handle.

Natural Language Processing (NLP): By integrating NLP, HyperAutomation can process and understand human language, enabling automation of tasks that involve unstructured data, such as customer inquiries or document processing.

Process Mining: HyperAutomation utilizes process mining tools to analyze existing workflows and identify inefficiencies. This capability allows organizations to optimize processes before automating them, ensuring that the automation is effective and efficient.

End-to-End Automation: While RPA typically focuses on automating specific tasks, HyperAutomation aims to automate entire workflows and processes, providing a more comprehensive solution that enhances overall operational efficiency.

Integration of Multiple Technologies: HyperAutomation combines RPA with other technologies such as AI, ML, and analytics, creating a more robust automation ecosystem that can handle a wider range of tasks and processes.

Scalability and Flexibility: HyperAutomation solutions can be scaled across various departments and functions, allowing organizations to adapt quickly to changing business needs and market conditions.

Enhanced User Experience: By automating complex processes and improving decision-making, HyperAutomation can lead to a better user experience for both employees and customers, as it reduces manual intervention and speeds up service delivery.

 

Industries that are most likely to benefit from HyperAutomation include:

 

Financial Services: Banks and financial institutions can automate processes such as loan approvals, compliance checks, and customer service, leading to faster transactions and improved customer satisfaction.

Healthcare: HyperAutomation can streamline patient data management, billing processes, and appointment scheduling, enhancing operational efficiency and patient care.

Manufacturing: Automation of supply chain management, inventory control, and quality assurance processes can lead to increased productivity and reduced operational costs.

Retail: HyperAutomation can improve inventory management, customer service, and order fulfillment processes, enhancing the overall shopping experience.

Telecommunications: Companies can automate customer support, billing, and network management, leading to improved service delivery and customer retention.

Insurance: Automating claims processing, underwriting, and customer service can significantly reduce processing times and improve customer satisfaction.

 

 

Overall, HyperAutomation provides organizations across various industries with the tools to enhance efficiency, reduce costs, and improve service delivery, making it a valuable strategy in today's competitive landscape.

Hyperautomation can boost RPA capabilities by integrating advance technologies like Machine Learning (ML), Artificial Intelligence (AI), Big Data, Process Mining and Natural Language Processing (NLP) with RPA systems.

 

Let's see how hyperautomation can add capabilities to RPA:

 

1. Enhancement In Data Processing: The technologies like NLP and Intelligent Document Processing (IDP) makes data extraction and information analysis easier specifically when dealing with unstructured data like PDFs and emails.

 

2. Intelligent Automation: The technologies like ML and AI will increase system capabilities with data analytics, predictions and complex problem solving.

 

3. End to End Process Automation: With hyperautomation there is possibility of automating entire business process and not just the individual tasks, thus allowing for comprehensive automation solution.

 

4. Scalability and Flexibility: Hyperautomation can help with automation across different departments and thus provides flexibility and scalability in automation.

 

5. Advanced Data Analytics: Integrating RPA with Big Data and Process Mining can help with uncovering hidden data patterns and thus can enhance advanced data analytics through making predictions easier by understanding underlying patterns.

 

Let's talk about industries most likely to benefit from hyperautomation:

 

1. Manufacturing: Through improvement in PQCDSM parameters (Productivity, Quality, Cost, Delivery, Safety & Morale through RPA enabled with hyperautomation.

 

2. Healthcare: Through automation in patient data processing, health parameters monitoring and improving patient care.

 

3. E-Commerce: Through streamlining inventory management, customer service & order processing.

 

4. Banking & Finance: Through enhancement in compliance, customer service & customer experience improvement and fraud detection.

 

5. Insurance: Through improvement in claim processing, risk management and decision making.

 

Thus, Hyperautomation will boost RPA capabilities which will have widespread application across almost all the sectors in the economy.

 

 

 

  • Solution

Hyper automation – As the term itself suggests to be an amalgamation of two words – Hyper & Automation, which basically indicates automation being done at its full force, negating OR completing minimizing the need of any human intervention to get a task performed.

Its usually used for businesses or processes, wherein variety of applications or systems have to co-ordinate with one another to produce a desired outcome. These ecosystems are quite complex in nature and constant human eye checks are required to operate to generate a synchronized delivery.

 

As the efforts are towards reducing the needs of human intellect and precision, AI & ML powered applications and systems are generally used as the base for hyper automation strategy. Large Language models (LLM), are designed and deployed to replicate the human decision making to run projects/businesses by synchronizing the communications amongst all the processes involved.

Most important facet of Hyper automation is, it helps in integrating the processes working in isolation and thus creating a more intelligent and holistic enterprise level systems.

 

Hyper automation & RPA – Robotic Process Automation (RPA) is a unique approach of automating the repetitive tasks by ‘mimicking’ human actions, which are performed otherwise.

 

It can be said that RPA is a single technology with benefits being delivered in pockets within enterprise while hyper automation is a bouquet of multiple such technologies with enterprise-wide benefits.

 

Usage and Benefits -

RPA has a major challenge of being used for ‘Structured Data Set’ only. This functional limitation of RPA can easily be controlled by using AI powered tools and applications, which can work, both on structured and unstructured data.

RPA strategy lacks ‘cognitive thinking capability’ and Hyper automation is based on LLM, through which tools and applications can perform cognitively.

Hyper automation increases the ambit of automation strategy of organization unlike RPA which functions in isolation or pockets of business.

RPA can only perform tasks based on set rules and thus needs to mimic them whereas Hyper automation uses AI &ML, Orchestration and workflow tools (PEGA, Appian,XTRAC) to perform tasks as efficiently as humans with decision making capabilities.

Hyper automation is now widely being used in industries wherein large datasets have to be handled and scope of committing an error are minimal. Some of the industries wherein hyper automation is being practiced are Automobile, Retail, Healthcare, Banking and Financial Services.

 

 

 

 

Hyperautomation!

Prelude –

I had joined an organization 14 years ago. We had extensive manpower for

1.       Washing the utensils and equipment used in process.

2.       Contractual labour for shifting the raw material to the machines,

3.       Labours to check the product and correct for accuracy level, manually.

4.       Contract labours to pack the boxes and shift them to the bounded storage location.

5.       Labours to print and paste the labels on the boxes.

6.       Labours to shift the packed boxes and shift them to the dispatch location.

7.       Labours to load the boxes in the truck. And finally, goods used to dispatch.

On the softer side –

1.       We had a system to record the performance of each machine manually on papers.

2.       Record all incidences on the machine manually in SAP system.

3.       Analyse the data by brainstorming.

4.       Whenever there any deviation in the process experts were consulted to correct the settings.

5.       Engineers need to keep records of process parameters critical to quality and refer as and when required.

Challenges – most the things were with manual intervention –

It used to affect –

Response time for deviation in the process,

Accuracy of the action to correct the process,

Accuracy of results and Re corrections,

All these aspects of the business processes used to impact heavily on-

Productivity – Profitability,

On time dispatch to customer – Customer service and satisfaction,

Customer complaints - Brand image in the market.

Strategy –

Considering all above facts and figures getting impacted negatively – Organization decided strategically to go for Digital way of doing business and invested in Digitalization – IioT, AI enabled technologies, machine learning, Robotic process automation – AGVs, automated business process management etc.

A.       Integration –

Complete business process was scanned, and all the elements were connected from the point of automation. The sequence of events, processes were brainstormed in the views to get the required benefits. The challenges in each link were detailed discussed. Thus, all the sequence of operations integrated from the point to modify, upgrade.

 

B.       Discovering – As per above links – each and every task was analysed and explored from the automation implementation point of view. It was minutely scanned which aspect of automation will work like, AI, machine learning, robotics, AGVs, SCADA/ APROL etc. All the advanced systems were integrated.

C.       Implementation

a.       Automated systems used for labour intensive jobs like washing systems replaced by automatic washing machines along with loading and unloading.

b.       Raw material supply to the machines were done by AGVs. Machine learning also got integrated here. Raw material requirements were directly communicated by machines to concerned departments and instructed AGVs digitally.

c.        Packing forwarding - All logistics related activities in dispatch department got automated and saved lots of labour. Packing the boxes and pasting the boxes and shifting to storage got automated with AGV, Robots etc. Storing of the boxes and retrieving at the time of dispatch got automated. It improved accuracy as right consignment going to right customer. Loading the boxes in the truck got automated. AI, AGVs and machine learning helped integrate all the sequence of operations.

d.       RFID – was at a great support in reading data and for flow of communication.

e.       IiOT – enabled capturing most of the data directly from the digital devices installed on the equipment in process monitoring. It gives trends as well as history of process to correct the process in future. It improved flexibility in adapting new product with agility.

f.         Process monitoring – All the information available on the SCADA in the form of figures as well graphs. This helped to conclude the actions manually as well as automatically. NO expert intervention needed.

 

D.      Monitoring – Governance

a.       There is a dedicated department integrating all advance systems at a single place to monitor the performance of each element of Hyperautomation.

b.       They provide real time solutions and trouble shooting to get the maximum benefits out of it.

c.        All the data collected real time, is analysed by system itself and it takes own decision with very minimal human intervention.

image.png

 

Benefits –

1.       Labour requirement drastically came down to 35 to40%. It gave higher profitability along with better accuracy and no dependability on human resources.

2.       Shift in skill of manpower – skilled labour requirement shifted to semi and unskilled labour for only few activities. Expert decision makers were got reduced. directly benefitting to Profitability.

3.       Accuracy in production improved due to digital analysis with the help of modern tools to find accurate inference. Real time corrections reduced wastages and improved productivity.

4.       Visual factory – all critical process parameters available at ease. Sufficient data available for future reference and past analysis. Quick access to trends enabling exploring further for upgradation in business.

5.       Better brand image for the organization – Digital control impressing the customers with minimal human intervention enabled easy to control all statutory compliance. Bigger business opportunity with customer delight. Customer getting converted to be partner in business process.

 

Conclusion –

                World economic forum (WEF) –Improving the state of the world by the belief in the power of human brilliance, entrepreneurship, innovation and cooperation. WEF highly appreciate and certifies the organizations having Hyperautomation in their business management, had appreciated the above organization I am talking about. This is the power of hyperautomation which leads to better Productivity- profitability, Better customer delight and better society.

 

------X------

 

 

 

Let us first understand what are RPA and Hyperautomation? RPA or Robotic Process Automation is a software technology that helps build, deploy and manage software robots that emulate human action and can interact with digital systems and software. RPA is a simple rule-based system that will automate repetitive tasks done by a human in a process. Hence RPA is process driven.

 

Hyperautomation is more of a strategy than a technology. Hyperautomation is a strategy that applies AI powered automation with advanced technologies, tools and systems to streamline and optimize processes. Hyperautomation aims to automate complete business processes (as many tasks as possible) while RPA work on standalone functions.

There is a key bridge between Hyperautomation and RPA. Intelligent Automation or IA as they call it, is all about using AI, NLP and ML technologies with RPA to bring intelligence into processes. While RPA can be a single tool, IA uses multiple tools. IA provides the core capabilities towards Hyperautomation. IA ensures seamless interoperability and integration of the enterprise systems which are key to driving the process towards Hyperautomation.

 

There are several industries that can benefit from hyperautomation. Industries like Insurance, Manufacturing, Healthcare and banking can benefit immensely from hyperautomation.

 

1)  Insurance: Claims processing time can be accelerated and accuracy can be increased. It can strengthen compliance and broaden connectivity across systems to make better decisions

2)  Manufacturing: Using computer vision powered by AI, it can reinforce quality assurance by checking and assessing products for quality, defects and apply corrective actions

3) Healthcare: In healthcare, it can streamline administrative tasks to reduce errors during billing and other also securely handle sensitive data. Hence compliance is ensured

4)  Banking: In banking it can ensure that complex tasks like loan initiation and its associated activities are automated to improve efficiency, TAT and cost

 

According to Gartner, 3 Key strategies are required for enabling hyperautomation in any organization.

1)      Plan the Process Automation Journey

2)      Apply Digital-Ops Toolbox (for integration)

3)      Augment with AI

 

How do we bring Hyperautomation together? “Integration” is key to the success of implementing strategies like Hyperautomation. Integration Systems, API’s and iPaaS serve as foundation to Hyperautomation allowing large scale complex workflows to be automated. A platform is provided for systems that are disparate to be interconnected, streamlined, work real time and have data exchanges done easily. Pre-built API’s and Connectors offer easy integration. Cloud facilities like iPaaS provide support to execute automations.

 

Generative AI can be brought in to accelerate hyperautomation strategies by automating and augmenting multiple aspects of automation lifecycle and business process execution.

 

  • Author

🎉 Big congratulations to Anchal Parasher, our winner for today! His response stood out for its precision and spot-on application references. 👏 A special mention to Michael Navin, whose answer is a must-read for everyone!

 

🌟 Kudos to all who participated and shared their insights—your contributions are truly valuable and appreciated! 🙌🎊

Create an account or sign in to comment

Account

Navigation

Search

Search

Configure browser push notifications

Chrome (Android)
  1. Tap the lock icon next to the address bar.
  2. Tap Permissions → Notifications.
  3. Adjust your preference.
Chrome (Desktop)
  1. Click the padlock icon in the address bar.
  2. Select Site settings.
  3. Find Notifications and adjust your preference.