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Building an AI-Native Workplace: Lessons from the Front Lines
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本文探讨了企业如何通过拥抱人工智能(AI)来提升运营效率和产出。文章以赛跑的类比,说明了AI正在改变商业竞争的格局,并强调了将AI融入工作流程的重要性。文章分享了Cockroach Labs的经验,展示了AI在课程开发等方面的应用,以及如何通过有效的管理、明确的流程和人类的监督,充分发挥AI的潜力。文章还提到了AI在任务管理中的具体步骤,并强调了人类专业知识在AI应用中的关键作用。

🚀 **拥抱AI转型:** 文章指出,在商业环境中,AI如同赛车,正在改变竞争规则。企业需要积极拥抱AI,将其融入工作流程,才能在竞争中保持领先地位。

💡 **成为AI管理者:** 文章强调,每个人都应该成为AI的管理者,充分利用AI的智能潜力。这包括自动化任务、发挥创造力、有效地使用AI工具,并验证其结果。

⚙️ **AI任务管理流程:** 文章详细介绍了在任务管理中部署AI的步骤,包括选择合适的AI模型、明确结构化输出、编写具体的提示、迭代完善提示以及进行充分的测试。

👨‍💼 **人类监督的重要性:** 虽然AI可以承担耗时的任务,但人类在AI驱动的流程中仍然扮演着关键角色。人类专家负责初始提示的制定、输出的审核和迭代,以确保准确性和质量。

What would you do if you were running a 10K road race, struggling to get up a tough hill, and suddenly the rules of the race changed? What if drivers started picking up runners in cars and then raced each other to the finish line? Would you keep running, knowing full well you’ll place in the back of the pack? Or get in the car, hit the gas and compete for the grand prize?

In business today, AI is that car that’s disrupting the way companies run. Companies can still choose to move ahead the way they always have – developing long-range plans, adhering to processes, pushing employees to work harder than ever to succeed in increasingly competitive environments. But AI is changing the nature of the race. It’s giving companies a new vehicle to move faster and give workers new routes to zoom around problems. Any business that doesn’t take the wheel and instill the power of AI into its workforce will be left behind on that long, steep hill.

Embracing the Future by Becoming a Manager of AI

Here at Cockroach Labs, we learned very quickly that Gen AI can help us do things we never thought possible. We’ve used it across the company for gen AI search, recommendation systems and semantic search.

One of the best examples of how AI can transform a workforce process is taking place in our education department. Our team is using AI to accelerate the development of curricula that helps customers, partners and our own work force become experts in the operation of our database product line.

We recently created a course that featured 21 hands-on exercises and 20 slide decks with detailed student notes. Before starting the project, we estimated that, using our normal development process – factoring in industry standard estimates for how long it takes developers to produce one hour of content – this would take three to five months to complete.

So, what happened? Incorporating Gen AI into our existing processes, we were able to finish the task in five weeks.

In the process, we learned a number of lessons.

The Step-by-Step Process of Deploying AI for Task Management

Here’s a quick summary of some of the ways AI helped us get up the hill, to the finish line, much faster than we expected.

otherwise it can do crazy things. Clearly state any assumptions about the inputs or environmental conditions and ask the model to handle unexpected cases.

Human Expertise at the Helm: The Essential Role of AI Oversight

While AI removes time-consuming tasks from workers’ day, it doesn’t remove them from the workflows altogether. Humans still play critical roles in our curriculum development, and they need to be integrated in AI-driven processes to ensure that the processes succeed.

A good example is in how our education team conducts prompt engineering. Humans are responsible for crafting the initial prompt, including context from relevant sources. Then, after the Gen AI tool executes the prompt, the human reviews the output of the tool. It’s essential that this person is a subject matter expert who can catch errors early in the process. Teammates continue to collaborate with the tool and iterate until the team is satisfied that the prompt is ready to publish.

While this collaborative human/AI has proven to be effective, it does require a human to manage the context and transitions between models.

Without humans in the loop, teams would be at the mercy of AI tools that can be notoriously unreliable. When we first started with our curriculum project, the tools did well summarizing or explaining concepts, given the right contexts. However, they did hallucinate often. Today the models are better at reasoning, but a human still needs to manage the process. Now, humans can focus on review and creativity and not just on process management.

In the future, AI agents will take a bigger role in the process. Instead of humans manually gathering context from sources, crafting prompts with context, moving work between AI models, and reviewing and refining outputs, we’re developing agents that can perform a lot of these tasks – with a bit of help. The agent can autonomously collect and process source materials as context, generate skills taxonomies and course outlines, execute our established workflows, and present only key decision points to human experts.

Conclusion

While brisk runs are great for keeping in shape, cars long ago transformed humans’ ability to get where they need to go. AI is providing the same benefits in the workplace – helping companies improve processes and generate better outcomes. Those who embrace it and harness its compound efficiency gains will leave competitors behind.

The post Building an AI-Native Workplace: Lessons from the Front Lines appeared first on Unite.AI.

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