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AI-Powered New Reps or Seasoned Pros: Who Quotes Faster?

Gouri ChoubeyNews

Among the many pivotal decisions suppliers must make, one that stands out is the choice between harnessing the power of AI-driven matching and translation engines or sticking with traditional manual processes. We’ve often heard B2B players asking, “What’s better, AI-powered new reps or seasoned pros?”

 

While everyone talks about AI, it could be tough to adapt to new changes- especially when you have been practicing manual methods in your company. However, according to Accenture’s findings, AI technologies have the potential to boost productivity by up to 40%. These AI tools excel at automating repetitive tasks, streamlining workflows, and offering actionable insights, allowing marketers to redirect their efforts toward more valuable activities. Moreover, many AI solutions are engineered to execute tasks with remarkable speed, significantly enhancing overall business efficiency.

 

In this blog, we walk you through both approaches, delving into the world of supply chain operations to determine which method reigns supreme: the cutting-edge capabilities of AI or the tried-and-true reliability of manual processes. and explore AI-Powered New Reps or Seasoned Pros, who quote faster. 

 

Related article: How AI and Translation Engine Resolving Common Supply Chain Procurement Challenges

 

AI-powered new reps or seasoned pros: Quoting Process

 

In B2B e-commerce within the supply chain, the quoting process plays a pivotal role in facilitating transactions between suppliers and buyers. 

 

So How Does the Quoting Process Work?

it all begins with the buyer taking the initiative to create an RFQ. In this document, they specify their product requirements, quantities, quality standards, and delivery timelines within the e-commerce platform. Suppliers who are capable of meeting these requirements then respond with comprehensive price quotes, providing details on pricing, lead times, minimum order quantities, and relevant terms and conditions.

Once these quotes are received, the buyer faces the task of carefully evaluating them. They consider various factors, including price, quality, reliability, and more, in order to make an informed choice. This evaluation process can be time-consuming, especially when dealing with a large number of quotes.

Following the evaluation, negotiations may take place. Buyers and suppliers work together to fine-tune terms and ensure that both parties are satisfied. This often involves discussions on aspects such as pricing and delivery schedules.

Finally, once a suitable quote is selected, the buyer proceeds with the purchase. This sets in motion the subsequent phases of order processing and fulfillment.

The manual process of creating RFQs

AI Search Engine for Quoting

AI search engines can significantly enhance the quoting process in B2B supply chain e-commerce:

 

  • Efficiency: AI engines can quickly scan through vast databases of suppliers and product listings to match the buyer’s RFQ with potential suppliers. This expedites the process, reducing the time it takes to receive quotes.
  • Data Accuracy: AI can ensure that the quotes provided are accurate and consistent, minimizing errors associated with manual data entry.
  • Recommendations: AI systems can also provide intelligent recommendations based on historical data, helping buyers make more informed decisions about supplier selection.
  • Scalability: AI search engines can handle a high volume of RFQs and supplier inquiries simultaneously, making them suitable for large-scale e-commerce operations.

Manual Quoting

Manual quoting relies on human effort throughout the process. 

  • Time-Consuming: Manually sifting through supplier listings and RFQs can be time-consuming, especially for complex or high-volume purchases.
  • Human Error: The manual entry of data into quotes can introduce errors, leading to discrepancies in pricing, product details, or terms.
  • Limited Data Analysis: Buyers may struggle to analyze a large number of quotes effectively without data analytics tools, potentially missing out on valuable insights.
  • Subjectivity: The human element in negotiations can introduce subjectivity and variability, making it challenging to ensure consistent and fair quoting processes.

AI-Powered New Reps or Seasoned Pros: Demand Forecasting

Demand forecasting in B2B supply chain e-commerce is essential for ensuring efficient inventory management, meeting customer demands, and optimizing supply chain operations. 

Demand management in Supply Chain

How demand management works in supply chain operations

Demand Forecasting Process 

The process begins with a thorough collection of historical sales data, market trends, customer orders, and other relevant information. These data sources can vary, including data from the e-commerce platform, customer records, and external market data.

Next, analysts or advanced software systems delve into data analysis, meticulously examining the gathered information to uncover patterns, seasonal variations, and emerging trends. They also consider factors such as economic conditions, actions taken by competitors, and shifts in the market landscape. As the process advances, forecasters choose an appropriate forecasting model based on the available data and the desired forecasting timeline. Common models include time series analysis, regression analysis, and machine learning algorithms

 

AI-Powered Demand Forecasting

  • Data Processing: AI systems excel at processing vast datasets quickly, identifying complex patterns, and handling large volumes of historical data, which can lead to more accurate forecasts.
  • Automation: AI systems can automate much of the data collection, analysis, and model selection processes, reducing the need for extensive manual intervention.
  • Scalability: AI can easily scale to handle increasing data volumes and complex forecasting scenarios, making it suitable for large-scale e-commerce operations.
  • Continuous Learning: AI models can continuously learn and adapt to changing market conditions, ensuring that forecasts remain relevant and accurate over time.

 

Manual Demand Forecasting

 

  • Expertise Dependent: Manual forecasting relies heavily on human expertise and judgment. The accuracy of forecasts may vary depending on the skill and experience of the forecasters.
  • Time-Consuming: Collecting and analyzing data manually can be time-consuming, particularly for organizations with extensive product catalogs or a high volume of SKU-level data.
  • Subjectivity: Manual forecasting can introduce subjectivity, biases, and personal opinions into the forecasting process, potentially leading to less objective predictions.
  • Limited Scale: Manual forecasting may struggle to handle large datasets and complex models efficiently, which can be a drawback for rapidly growing businesses.

AI-Powered New Reps or Seasoned Pros: Supplier Operations

Supplier operations in B2B supply chain e-commerce are integral to ensuring the timely and efficient delivery of goods and services to meet customer demands. 

Supplier Operations Process

Suppliers create profiles and furnish essential information about their products, services, pricing, and other pertinent details. Subsequently, suppliers list their offerings on the platform, providing comprehensive descriptions, images, specifications, and pricing, making this information readily accessible to potential buyers.

When a buyer places an order through the e-commerce platform, the supplier springs into action, initiating the order processing workflow. Effective inventory management is a key component, ensuring that suppliers can fulfill incoming orders promptly. Many employ inventory management software to monitor stock levels in real-time, enabling streamlined operations.

The final piece of the puzzle revolves around quoting. Suppliers respond to buyer requests for quotes (RFQs) by offering pricing, delivery times, and other relevant terms. This stage often spotlights the comparison between AI search engines and manual quoting, showcasing the pivotal role of technology in shaping these interactions.

 

AI Search Engine for Quoting

  • Efficiency: AI engines can quickly match buyer RFQs with relevant supplier listings, streamlining the quoting process and reducing response times.
  • Data Accuracy: AI ensures accuracy in quoting by automating data entry and minimizing errors associated with manual input.
  • Data Analysis: AI systems can analyze historical quoting data to suggest competitive pricing strategies, helping suppliers remain competitive.
  • Scalability: AI can handle a high volume of RFQs simultaneously, making it suitable for suppliers with varying workloads.

 

Manual Quoting

 

  • Time-Consuming: Manually reviewing and responding to RFQs can be time-consuming, especially for suppliers dealing with numerous requests.
  • Human Error: Manual data entry and calculations can introduce errors, leading to discrepancies in quotes or pricing.
  • Subjectivity: The human element in negotiations can introduce subjectivity, potentially impacting pricing consistency and competitiveness.
  • Limited Analysis: Suppliers may struggle to analyze a large number of RFQs efficiently without data analytics tools, potentially missing opportunities for optimizing pricing strategies.

 

AI-Powered New Reps or Seasoned Pros: Procurement Process

Procurement in B2B supply chain e-commerce involves the acquisition of goods and services by organizations to meet their operational needs. Here’s an overview of how procurement typically works, followed by a comparison between AI search engines and manual quoting in this context:

The procurement journey commences with identifying the organization’s needs, spanning raw materials, finished products, equipment, or services, drawing from historical data, forecasts, or immediate requirements. Procurement experts then seek potential suppliers, employing existing relationships, directories, or B2B e-commerce platforms as avenues for exploration.

 

Next, the process unfolds as Requests for Quotes (RFQs) are dispatched to selected suppliers. These RFQs are comprehensive documents, specifying exact requirements, desired quantities, quality standards, delivery timelines, and comprehensive terms and conditions, setting the stage for supplier responses.

 

Suppliers respond with detailed quotes, encapsulating pricing, delivery terms, payment conditions, and other essential details. This phase often highlights the comparison between AI search engines and manual quoting, demonstrating technology’s role in shaping these interactions.

 

Subsequently, procurement professionals meticulously evaluate the received quotes, meticulously considering factors such as cost, quality, reliability, and contractual compliance. In certain instances, negotiations may ensue to fine-tune terms to mutual satisfaction.

Finally, the formalized agreement takes shape in the form of a Purchase Order, a document that meticulously outlines the agreed-upon terms. In this way, the procurement process meticulously guides a structured journey, leading from the identification of needs to supplier selection, negotiation, and the ultimate finalization of agreements.

 

AI Search Engine for Quoting

 

AI search engines can enhance the procurement process:

  • Efficiency: AI engines can quickly scan through a database of potential suppliers to match RFQs with suitable suppliers, reducing the time it takes to receive quotes.
  • Data Accuracy: AI ensures accuracy in quoting by automating data entry and minimizing errors associated with manual input.
  • Recommendations: AI systems can provide intelligent recommendations based on historical data, helping procurement professionals make more informed decisions about supplier selection.
  • Scalability: AI can handle a high volume of RFQs and supplier inquiries simultaneously, making it suitable for large-scale procurement operations.

 

Manual Quoting

 

Manual quoting in procurement has its characteristics:

 

  • Time-Consuming: Manually reviewing and responding to RFQs can be time-consuming, especially for organizations dealing with numerous requests.
  • Human Error: Manual data entry and calculations can introduce errors, leading to discrepancies in quotes, pricing, or terms.
  • Subjectivity: The human element in negotiations can introduce subjectivity, potentially impacting supplier selection and negotiation outcomes.
  • Limited Analysis: Procurement professionals may struggle to analyze a large number of RFQs efficiently without data analytics tools, potentially missing opportunities for optimizing supplier selection and negotiation.

 

Bottom line is that AI-powered solutions are reshaping the future of B2B supply chain e-commerce. Their efficiency, accuracy, scalability, and data-driven insights are setting new standards, making them essential for businesses striving to remain competitive and agile. While manual processes still have their place, it is clear that embracing AI is not just an option but a strategic imperative for supply chain management in the digital age. The future promises a harmonious blend of human expertise and AI innovation to elevate the supply chain industry to greater heights of excellence