In recent times, supply chain disruptions have affected businesses and consumers alike, resulting in shortages across various product categories, with semiconductor chips being a critical component in this scenario. While the CHIPS and Science Act, passed in August, aims to bolster semiconductor manufacturing in the United States, its immediate impact on the supply chain remains uncertain.
Brandon Kulik, a semiconductor industry leader and principal at Deloitte Consulting, emphasizes that the semiconductor supply chain still faces constraints, even though lead times have slightly decreased in response to softer demand in the consumer electronics sector. However, the demand for high-performance data center chips, defense, and automotive chips continues to be historically high, with some semiconductor companies experiencing growth rates exceeding 40%.
For companies reliant on semiconductors, a potential solution in the near term involves the utilization of advanced data analytics and artificial intelligence tools to address supply chain challenges. According to Rohit Tandon, Managing Director and Global AI & Analytics Services Leader at Deloitte, the COVID-19 pandemic illustrated the disruptive potential of unforeseen events in global supply chains. AI can play a pivotal role in preventing such disruptions by leveraging vast data generated in supply chains to predict events like weather conditions, transportation bottlenecks, and labor strikes, allowing proactive measures such as rerouting shipments.
Tandon further highlights the significant enhancements AI can offer in areas like demand forecasting, risk planning, supplier management, customer management, logistics, and warehousing. This leads to improved operational efficiency, working capital management, transparency, accountability, and delivery accuracy, ultimately reducing supply chain disruptions. Organizations employing AI for visibility in their smart factory operations can respond effectively to potential disruptions, ensuring resilience and the continued satisfaction of customer demands.
Data analytics tools can provide deeper insights across the supply chain, enhancing demand prediction and facilitating data sharing with customers and partners. Moreover, AI can predict or forecast events related to logistics, geopolitical challenges, and supply disruptions, autonomously executing actions or offering recommendations to stakeholders. This allows companies to fortify their supply chains with increased resilience.
When implementing these supply chain management tools, it is advisable to begin with a focused approach and expand the models and algorithms gradually as their accuracy and value become evident. Additionally, high-quality data is essential, as the reliability of analytics and AI outputs depends on the underlying data. Establishing data governance processes that ensure consistency and completeness across products, suppliers, and customers is pivotal in building trust in the analytics and AI processes.
Rand Technology, an independent semiconductor distributor, is effectively using data analytics to address customer supply-related challenges. For instance, it employs data and analytics to identify potential users of surplus inventory and create opportunities for rehoming surplus components, benefiting OEMs and contract manufacturers in managing their inventory mix.
Data and analytics also play a crucial role during a manufacturer’s new product introduction phase in selecting bill of materials, allowing for flexibility in semiconductor sourcing. This approach prevents reliance on a single semiconductor provider, reducing the impact of supply disruptions. Advanced analytics help to anticipate semiconductor availability, identify trends, and spot gaps, price fluctuations, or product change notices in advance. Furthermore, advanced data analytics provide Rand with the capability to strategically guide customers through market uncertainties by offering real-time visibility into availability, market shifts, and global conditions, ultimately reducing risks and preplanning strategies.
In conclusion, the integration of data analytics and AI technologies into semiconductor supply chain management is proving to be a valuable solution in addressing the challenges posed by supply chain disruptions, contributing to greater efficiency, resilience, and reduced supply chain interruptions.
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