Adopting AI in the Context of Knowledge Work: Empirical Insights from German Organizations
Abstract
:1. Introduction
2. Literature Review
2.1. Artificial Intelligence
Based on this widely accepted definition of AI, and depending on how intelligence is defined or understood, some may argue that we are decades away from achieving AI, while others may consider that a simple regression analysis […] is achieving artificial intelligence already. This quite lax definition has allowed companies to claim they offer AI powered products and services […], where most AI researchers would be dubious at best to qualify them as such.
2.2. Impact of AI on Work
2.3. Challenges and Success Factors of Adopting AI at Work
3. Materials and Methods
3.1. Case Selection
3.2. Data Collection
3.3. Data Analysis
4. Results
4.1. Perceived Changes in the Workplace
4.1.1. Shift from Manual Labor and Repetitive Tasks to Tasks Involving Reasoning and Empathy
[The system] relieves employees from a lot of work. You have to imagine that we once wrote individual letters or emails. Then we started using text templates. […] And now we sort of only press a button and 500 emails go out.(Team manager, O3)
And this has led to the elimination of these routine tasks so that employees can work on tasks where they have strengths, where they do research, where they have to make conclusions, but also where they work customer-oriented and service-oriented. Thus this means they can concentrate on really important things.(Project leader, O3)
4.1.2. Emergence of New Tasks and Roles
You actually need people, who know how customers react and who [–in case that is needed–] perhaps simply write content for two weeks. What would they explain to the customer on the phone or what would the customer […] ask in the first place?(Developer, O6)
I believe this will be a new occupational role in customer service […] that employees no longer work at the hotline but train chatbots. We started with three or four colleagues and now they are eight [employees], whose daily business consists of preparing content, creating intents and training [the chatbot] and maintaining the […] knowledge database.(Project leader, O6)
Generally and in contrast to my first job, chatting with customers, I like it considerably more. It is fun. […] It’s exactly my thing. And with Rasa [a program for creating chatbot conversations] I admit I still have my problems. But I think it’s the future. Because I believe that no customer will be interested in this classical question-answer-game in three, four, five years. Instead, it’s about conversational design. […] This is why I find it really exciting to learn how to do this.(Employee, O6)
4.1.3. Emergence of New Skill Requirements
I also attended training for the use of AI […] for businesses. I also obtained certification and certificates for that to have an official acknowledgment of [my training] but at the end of the day I learned most of what I am doing nowadays from colleagues. So […] I am learning every day. And I would have never thought that I would consider architecture infrastructure diagrams totally appealing one day, because I didn’t even know what that was four years ago. So, that’s why there is a lot of self-learning involved.(Project leader, O6)
Due to digitization, I expect that these classic so-called historical ancillary sciences will disappear and competences will decline in these fields. […] At the same time, these cultural objects are not self-explanatory, which is why I believe that the service of conveying the meaning of these objects will become more important.(Librarian, O5)
Now and this is the point: Making an EU-wide tender for an AI-application requires that the person who writes it has a clue. He has to write down things such as: “It’s not allowed to be a neural network, because of explainability”. But they can’t do this. We first need to educate those people to an extent that they feel capable to write the text for the tender.(AI expert, O2)
4.2. Organizational Conditions Conducive to the Development of AI Systems
4.2.1. Leadership Support
“My direct supervisor is […] responsible for digital transformation in our house. In this respect, it was possible to get certain freedoms and implement certain things that […] would not have been possible in regular operations.”
On the other hand, there is the group and the group sets targets […], in our case it is the board member […]. And that is the fortunate circumstance that she has a background in AI. […] She is a computer scientist by training, […] and did research on AI before she joined [O2]. So she really gets it and is now really pushing the [group in this regard]. For example, this disposition topic in Stuttgart. That was her idea. […] So you don’t have to explain that to her, but she comes up with ideas and challenges us to implement them. And she has set up a so-called house on AI at the board level, which is trying to form the group-wide hub that we as [subsidiary] cannot build, because we are only a service provider.
4.2.2. Participative Change Management
[It was important] […] that we teach the [users] what we know about the application so that they can really use it in a meaningful way and don’t just say “Yeah, so what’s that about? I don’t get it. I don’t want it”.(Developer, O4)
We now have a range of trainings that we offer. Depending on your role in the company, you can attend a half-day training, that enables you to differentiate between a neural network and machine learning, up to a training that lasts several days, where we say: “Okay, the person who now implements an AI application needs to know in a bit more detail what is going on”.
4.2.3. Effective Integration of Domain Knowledge
[W]e worked very closely with the manager who provided the data […] and […] had regular meetings and [trained] each other a bit, so that I told him in machine learning this matters and then he told me […] in the allocation of the audit data that matters and then we tried to bring our knowledge a bit closer together.(Developer, O4)
Actually, we work together closely with them [the train dispatchers]. I was on the early shift today, from 6:30 to 9:30 […] and observed the disposition for the three hours […] a month ago, we also conducted interviews with them.(Project leader, O2)
It’s more of a mutual, they get a feel for what those data look like and then they in turn can maybe give us a gut feeling about whether or not a machine is doing something systematically wrong.(Project leader, O8)
5. Discussion
5.1. Theoretical Implications
5.2. Managerial Implications
5.3. Limitations and Future Research
Author Contributions
Funding
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Organization | Description | AI-Application | Number of Interviews |
---|---|---|---|
O1 | Transcription of audio- and video records | Since 2018, O1 offers its customers AI-based transcription of audio- and video records. After the automatic transcription by the AI system, a freelancer is hired to correct mistakes. The AI system was developed by an external solution provider. | 4 |
O2 | Railroad company | O2 is developing an AI system that provides decision support to train dispatchers. Train dispatching involves making decisions such as which train receives priority at track switches and train stations in case of delays. The project’s goal is to minimize delays in the system. | 5 |
O3 | Customer service provider in the energy industry | O3 is using an AI system developed by an external solution provider to identify customer concerns in customer inquiries (i.e., the reason why customers contact their energy provider). The inquiry is then forwarded to the employee specialized for the type of inquiry. | 5 |
O4 | Auditing and tax consulting firm | O4 developed and implemented an AI system to support employees with the allocation of accounts on specific target structures (e.g., commercial code). | 3 |
O5 | Universal library | O5 is developing several interrelated AI systems to digitize its historical library collection. For example, one AI system is meant to recognize the layout of pages, another to process text. The project’s goal is that the collection can be accessed by scholars around the globe. | 8 |
O6 | Telecommunications company | O6 purchased an external chatbot solution to automate customer service processes and tasks. Over time, the project team has been implementing additional use cases. For example, the chatbot is used for the authentication of customers or providing feedback on invoices. | 4 |
O7 | Collaborative, free knowledge base | O7 is developing an AI system to support editors with the quality assurance of content in the knowledge database. The software automatically evaluates the quality of entries and identify cases of vandalism. | 6 |
O8 | Library for economic literature | O8 is developing an AI system that automatically indexes publications for its library catalog and provides suggestions for keywords to librarians during the intellectual indexing process. The goal is support librarians to handle the ever increasing number of publications. | 6 |
Total | 41 |
Perceived Changes in the Workplace | ||
Shift from manual labor and repetitive tasks to tasks involving reasoning and empathy | Emergence of new tasks and roles | Emergence of new skill requirements |
Organizational conditions conducive to the development of AI systems | ||
Leadership support | Participative change management | Effective integration of domain knowledge |
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von Richthofen, G.; Ogolla, S.; Send, H. Adopting AI in the Context of Knowledge Work: Empirical Insights from German Organizations. Information 2022, 13, 199. https://doi.org/10.3390/info13040199
von Richthofen G, Ogolla S, Send H. Adopting AI in the Context of Knowledge Work: Empirical Insights from German Organizations. Information. 2022; 13(4):199. https://doi.org/10.3390/info13040199
Chicago/Turabian Stylevon Richthofen, Georg, Shirley Ogolla, and Hendrik Send. 2022. "Adopting AI in the Context of Knowledge Work: Empirical Insights from German Organizations" Information 13, no. 4: 199. https://doi.org/10.3390/info13040199