As AI adoption continues to surge, the tech infrastructure market is undergoing a significant transformation. Traditional IT infrastructure providers are facing increasing pressure to innovate and adapt to the evolving demands of AI-powered applications. This shift is driving the development of new technologies and solutions that can support the intensive computational requirements and data-intensive nature of AI workloads.
At Lenovo’s recently held Asia Pacific summit in Shanghai they detailed their ‘AI for All’ strategy as they prepare for the next computing era. Building on their history as a major force in the hardware market, new AI-ready offerings will be prominent in their enhanced portfolio.
At the same time, Lenovo is adding software and services, both homegrown and with partners, to leverage their already well-established relationships with client IT teams. Sustainability is also a crucial message as it seeks to address the need for power efficiency and zero waste lifecycle management in their products.
Ecosystm Advisor Darian Bird comment on Lenovo’s recent announcements and messaging.
Click here to download Lenovo’s Innovation Roadmap: Takeaways from the APAC Analyst Summit as a PDF
1. Lenovo’s AI Strategy
Lenovo’s AI strategy focuses on launching AI PCs that leverage their computing legacy.
As the adoption of GenAI increases, there’s a growing need for edge processing to enhance privacy and performance. Lenovo, along with Microsoft, is introducing AI PCs with specialised components like CPUs, GPUs, and AI accelerators (NPUs) optimised for AI workloads.
Energy efficiency is vital for AI applications, opening doors for mobile-chip makers like Qualcomm. Lenovo’s latest ThinkPads, featuring Qualcomm’s Snapdragon X Elite processors, support Microsoft’s Copilot+ features while maximising battery life during AI tasks.
Lenovo is also investing in small language models (SLMs) that run directly on laptops, offering GenAI capabilities with lower resource demands. This allows users to interact with PCs using natural language for tasks like file searches, tech support, and personal management.
2. Lenovo’s Computer Vision Solutions
Lenovo stands out as one of the few computing hardware vendors that manufactures its own systems.
Leveraging precision engineering, Lenovo has developed solutions to automate production lines. By embedding computer vision in processes like quality inspection, equipment monitoring, and safety supervision, Lenovo customises ML algorithms using customer-specific data. Clients like McLaren Automotive use this technology to detect flaws beyond human capability, enhancing product quality and speeding up production.
Lenovo extends their computer vision expertise to retail, partnering with Sensormatic and Everseen to digitise branch operations. By analysing camera feeds, Lenovo’s solutions optimise merchandising, staffing, and design, while their checkout monitoring system detects theft and scanning errors in real-time. Australian customers have seen significant reductions in retail shrinkage after implementation.
3. AI in Action: Autonomous Robots
Like other hardware companies, Lenovo is experimenting with new devices to futureproof their portfolio.
Earlier this year, Lenovo unveiled the Daystar Bot GS, a six-legged robotic dog and an upgrade from their previous wheeled model. Resembling Boston Dynamics’ Spot but with added legs inspired by insects for enhanced stability, the bot is designed for challenging environments. Lenovo is positioning it as an automated monitoring assistant for equipment inspection and surveillance, reducing the need for additional staff. Power stations in China are already using the robot to read meters, detect temperature anomalies, and identify defective equipment.
Although it is likely to remain a niche product in the short term, the robot is an avenue for Lenovo to showcase their AI wares on a physical device, incorporating computer vision and self-guided movement.
Considerations for Lenovo’s Future Growth
Lenovo outlined an AI vision leveraging their expertise in end user computing, manufacturing, and retail. While the strategy aligns with Lenovo’s background, they should consider the following:
Hybrid AI. Initially, AI on PCs will address performance and privacy issues, but hybrid AI – integrating data across devices, clouds, and APIs – will eventually dominate.
Data Transparency & Control. The balance between convenience and privacy in AI is still unclear. Evolving transparency and control will be crucial as users adapt to new AI tools.
AI Ecosystem. AI’s value lies in data, applications, and integration, not just hardware. Hardware vendors must form deeper partnerships in these areas, as Lenovo’s focus on industry-specific solutions demonstrates.
Enhanced Experience. AI enhances operational efficiency and customer experience. Offloading level one support to AI not only cuts costs but also resolves issues faster than live agents.
As AI evolves rapidly, the emergence of GenAI technologies such as GPT models has sparked a novel and critical role: prompt engineering. This specialised function is becoming indispensable in optimising the interaction between humans and AI, serving as a bridge that translates human intentions into prompts that guide AI to produce desired outcomes. In this Ecosystm Insight, I will explore the importance of prompt engineering, highlighting its significance, responsibilities, and the impact it has on harnessing AI’s full potential.
Understanding Prompt Engineering
Prompt engineering is an interdisciplinary role that combines elements of linguistics, psychology, computer science, and creative writing. It involves crafting inputs (prompts) that are specifically designed to elicit the most accurate, relevant, and contextually appropriate responses from AI models. This process requires a nuanced understanding of how different models process information, as well as creativity and strategic thinking to manipulate these inputs for optimal results.
As GenAI applications become more integrated across sectors – ranging from creative industries to technical fields – the ability to effectively communicate with AI systems has become a cornerstone of leveraging AI capabilities. Prompt engineers play a crucial role in this scenario, refining the way we interact with AI to enhance productivity, foster innovation, and create solutions that were previously unimaginable.
The Art and Science of Crafting Prompts
Prompt engineering is as much an art as it is a science. It demands a balance between technical understanding of AI models and the creative flair to engage these models in producing novel content. A well-crafted prompt can be the difference between an AI generating generic, irrelevant content and producing work that is insightful, innovative, and tailored to specific needs.
Key responsibilities in prompt engineering include:
- Prompt Optimisation. Fine-tuning prompts to achieve the highest quality output from AI models. This involves understanding the intricacies of model behaviour and leveraging this knowledge to guide the AI towards desired responses.
- Performance Testing and Iteration. Continuously evaluating the effectiveness of different prompts through systematic testing, analysing outcomes, and refining strategies based on empirical data.
- Cross-Functional Collaboration. Engaging with a diverse team of professionals, including data scientists, AI researchers, and domain experts, to ensure that prompts are aligned with project goals and leverage domain-specific knowledge effectively.
- Documentation and Knowledge Sharing. Developing comprehensive guidelines, best practices, and training materials to standardise prompt engineering methodologies within an organisation, facilitating knowledge transfer and consistency in AI interactions.
The Strategic Importance of Prompt Engineering
Effective prompt engineering can significantly enhance the efficiency and outcomes of AI projects. By reducing the need for extensive trial and error, prompt engineers help streamline the development process, saving time and resources. Moreover, their work is vital in mitigating biases and errors in AI-generated content, contributing to the development of responsible and ethical AI solutions.
As AI technologies continue to advance, the role of the prompt engineer will evolve, incorporating new insights from research and practice. The ability to dynamically interact with AI, guiding its creative and analytical processes through precisely engineered prompts, will be a key differentiator in the success of AI applications across industries.
Want to Hire a Prompt Engineer?
Here is a sample job description for a prompt engineer if you think that your organisation will benefit from the role.
Conclusion
Prompt engineering represents a crucial evolution in the field of AI, addressing the gap between human intention and machine-generated output. As we continue to explore the boundaries of what AI can achieve, the demand for skilled prompt engineers – who can navigate the complex interplay between technology and human language – will grow. Their work not only enhances the practical applications of AI but also pushes the frontier of human-machine collaboration, making them indispensable in the modern AI ecosystem.