thousenselite
thousenselite
Thousense Lite
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ThouSense is an AI/ML-based, easy-to-use SaaS platform that helps businesses worldwide predict short-term and long-term demand planning and forecasting. You can get automated and accurate demand forecasts of macroeconomic indicators, currency fluctuations, weather and seasonality patterns, etc. With historical sales data, it predicts future sales volume, anticipates demand trends and seasonality without compromising on accuracy. It also helps with financial forecasting, budgeting, scenario planning, and supply chain management for small-to-large enterprises. Visit: https://lite.thousense.ai/
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thousenselite · 2 years ago
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Thousense: Mastering Supply and Demand Forecasting
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Discover the power of Thousense in guiding businesses through a seamless supply and demand forecasting journey. This infographic unveils how Thousense's advanced tools and capabilities simplify the process.
Visit: https://thousense.ai/
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thousenselite · 2 years ago
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Unlocking Success: The Importance of Promotion with Thousense
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This infographic delves into the crucial role of promotion in business success, highlighting the tools and strategies Thousense offers to make your promotional endeavors a triumph. Discover how Thousense transforms data into effective promotions, drives customer engagement, and helps your brand stand out. Explore the path to success in promotion with Thousense as your guide.
Visit: https://thousense.ai/
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thousenselite · 2 years ago
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AI-Driven Demand Pattern Analysis
This informative infographic explores the power of artificial intelligence in analyzing and predicting demand patterns. Topics covered include AI-powered forecasting, historical data analysis, real-time demand fluctuations, scenario modeling, and adaptive AI evolution. Discover how AI empowers businesses to make informed decisions and adapt to dynamic market conditions for improved efficiency and profitability.
Visit: https://thousense.ai/
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thousenselite · 2 years ago
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Transforming Supply Chain Management
Transform supply chain management with advanced forecasting techniques, empowering efficiency and performance. Accurate demand predictions and proactive decision-making streamline operations and enhance customer satisfaction.
Visit: https://thousense.ai/
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thousenselite · 2 years ago
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Optimizing Inventory Costs with AI/ML-Based Precise Demand Forecasting
Optimize inventory costs with AI/ML-based precise demand forecasting. Accurate predictions enable improved inventory management, cost savings, and enhanced operational efficiency.
Visit: https://thousense.ai/
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thousenselite · 2 years ago
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Save Time and Money with Thousense's Demand Planning Tool
Explore how Thousense's innovative demand planning tool enables businesses to optimize their inventory management and forecasting processes. By leveraging advanced algorithms and data analysis, the tool streamlines demand prediction, reduces excess inventory costs, minimizes stockouts, and ultimately maximizes operational efficiency, leading to significant time and cost savings for businesses.
Visit: https://thousense.ai/
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thousenselite · 2 years ago
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AI/ML demand forecasting assists during supply chain disruptions
AI/ML demand forecasting aids businesses in navigating supply chain disruptions by accurately predicting demand patterns, optimizing inventory, and facilitating informed decision-making.
Visit: https://thousense.ai/
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thousenselite · 2 years ago
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ThouSense: Your Partner for Optimal Forecasting and Supply Chain Management
ThouSense is your trusted partner for achieving optimal financial forecasting and streamlining supply chain management. With its advanced AI capabilities, it provides accurate demand predictions, enabling you to make informed decisions, increase operational efficiency, and drive business success.
Visit: https://thousense.ai/
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thousenselite · 2 years ago
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Unlocking Your Business's Potential with Precise Demand Forecasting
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Have you ever struggled to balance your inventory levels? Have you ever had to pay extra costs for storing your unsold products? Have you ever missed out on sales due to a shortage of inventory? If you are in the business of manufacturing or retailing, you have likely experienced these issues. These problems stem from inaccurate demand forecasting, which can be a significant setback for businesses.
The technique of estimating future demand for a good or service is known as demand forecasting. It is a critical step in determining the inventory levels and production schedules of businesses. Accurate demand forecasting helps businesses to identify the demand trends, make informed decisions, and plan their production schedules accordingly. However, inaccurate demand forecasting can lead to overproduction or underproduction, which can result in financial losses.
The traditional approach to demand forecasting involves analyzing sales history, trends, and market information. However, this approach has limitations as it does not take into account the real-time factors that can impact demand, such as weather, promotions, events, or changes in consumer preferences. Thus, businesses need to adopt a more precise and advanced approach to demand forecasting.
One such approach is the use of artificial intelligence and machine learning algorithms to predict demand with accuracy. Thousense.ai is one such platform that provides businesses with advanced demand forecasting capabilities. Its AI-powered algorithms analyze historical sales data and real-time factors to predict future demand accurately. Thousense.ai helps businesses to optimize their inventory levels, reduce costs, and maximize their profits.
Adopting an AI-powered demand forecasting solution
1. Improve Production Planning and Scheduling
Accurate demand forecasting helps businesses to plan their production schedules efficiently. With Thousense.ai, businesses can predict demand accurately and plan their production schedules accordingly. This helps businesses to avoid overproduction or underproduction, which can lead to wastage or missed sales opportunities. Efficient production planning and scheduling can significantly reduce production costs and increase profitability.
2. Optimize Inventory Levels
Maintaining the right inventory levels is critical for businesses. Overstocking or understocking can result in financial losses and missed sales opportunities. Thousense.ai's advanced demand forecasting algorithms help businesses to optimize their inventory levels accurately. Businesses can reduce their inventory holding costs and increase their turnover rates with accurate demand forecasting.
3. Increase Revenues and Profits
Accurate demand forecasting can help businesses to meet their customers' demands efficiently. This can result in increased sales revenue and profits. By adopting an AI-powered demand forecasting solution like Thousense.ai, businesses can make informed decisions, reduce costs, and increase their profitability.
4. Enhance Customer Satisfaction
Meeting customer demands efficiently is critical for maintaining customer satisfaction. Accurate demand forecasting helps businesses to deliver products at the right time and in the right quantity, thus enhancing customer satisfaction. With Thousense.ai, businesses can improve their customer service levels and customer retention rates.
5. Gain Competitive Advantage
Adopting an AI-powered demand forecasting solution like Thousense.ai can provide businesses with a competitive advantage. Accurate demand forecasting helps businesses to make informed decisions, optimize their operations, and reduce costs. This can lead to increased profitability and market share.
Conclusion
Accurate demand forecasting is critical for businesses. By adopting an AI-powered demand forecasting solution like Thousense.ai, businesses can optimize their operations, reduce costs, and increase profitability. Accurate demand forecasting can help businesses to meet their customers' demands efficiently, enhance customer satisfaction, and gain a competitive advantage. Unlock your business's potential with precise demand forecasting today!
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thousenselite · 2 years ago
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Streamline Your Demand Forecasting with Thousense's Automated Solution
Thousense is a demand forecasting tool that provides businesses with accurate and automated predictions of future demand for their products or services. By analyzing historical data and using advanced algorithms, Thousense can generate real-time forecasts that help businesses optimize inventory, reduce waste, and improve overall efficiency. With Thousense, businesses can make informed decisions, minimize risks, and maximize profitability.
Visit: https://thousense.ai/
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thousenselite · 2 years ago
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The Future of Demand Forecasting with AI/ML
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Demand forecasting has historically been a crucial component of business planning, particularly for businesses that do manufacturing, management of supply chains, and retail. Demand forecasting has improved in accuracy and efficiency with the development of machine learning and artificial intelligence. We will talk about the use of AI and ML in demand forecasting in this article.
A few advantages of AI/ML-based demand forecasting include improved forecast accuracy, faster decision-making, and more accurate estimates across geographies and exchangers over longer periods. AI-driven commodities market insights can deliver all the relevant data and forecast future commodity prices, allowing businesses to make wiser decisions. The danger of stockouts or overstocking can be decreased by using AI/ML-based demand forecasting to assist firms to improve their operations and better fulfilling customer demand.
AI/ML benefits for demand forecasting
Better accuracy over time is one advantage of utilizing AI/ML for demand forecasting, as machine learning algorithms evaluate and grasp statistical data using methods that search for patterns. ML models can outperform conventional forecasting techniques because they are substantially more noise-resistant and tend to make more accurate forecasts. By automatically assessing all available data and restrictions, AI systems can continuously rebalance demand and supply, providing supply chain managers with an ideal purchase plan that is ready for implementation at any moment.
1. Increased Prediction Accuracy
The ability to gradually improve accuracy while utilizing AI/ML for prediction is one of its main advantages. Traditional forecasting methods rely on data and assumptions from the past, which might not be accurate predictors of demand trends in the future. Contrarily, AI/ML systems can examine enormous amounts of data and identify trends and patterns that access more information would miss. As a result of more precise demand projections, businesses can streamline operations and cut down on waste.
2. Forecasting in real-time
Using AI/ML, forecasting can be done instantly. This suggests that businesses can quickly modify their operations in response to shifting consumer expectations. For instance, businesses can increase production right away in reaction to an unanticipated surge in demand for a product. Real-time forecasting can be used by businesses to spot possible supply chain issues and take preventative measures to reduce them.
3. Personalized Demand Forecasts
To customize demand predictions to every customer's taste, AI/ML techniques can be used. This can increase customer happiness and retention while enabling organizations to customize product offers and pricing strategies for certain clients.
4. Supply Chain Management Improvements
Demand forecasting, which is primarily reliant on sales projections generated by AI and ML, has been considerably improved. Businesses may shorten lead times, boost supply chain effectiveness, and enhance inventory management by accurately guessing demand trends. With the help of AI/ML-powered demand predictions, businesses may identify potential supply chain inadequacies and inefficiencies, enabling them to take proactive efforts to address these issues.
5. Cost-cutting
Through enhancing processes, demand forecasting made possible by AI/ML can also assist businesses in cutting expenses. Businesses may reduce inventory levels, reduce waste, and improve their manufacturing processes by accurately predicting demand trends. Significant cost reductions can subsequently increase profitability.
AI/ ML Revolution:
Demand forecasting powered by AI/ML can completely change how firms make the future. AI/ML algorithms can effectively forecast future demand trends by utilizing vast volumes of data, which enables businesses to make wise decisions regarding production, stock, and pricing. The following are some of the main ways that AI/ML will revolutionize demand forecasting:
Increased Accuracy: Among the main benefits of demand forecasting enabled by AI/ML is its capacity to increase accuracy. Conventional forecasting techniques are based on past data and presumptions, which may not necessarily be reliable indicators of future demand trends. On the other side, AI/ML systems can examine vast quantities of data and spot developments and patterns that human analysts might overlook. As a result, firms may improve operations and cut waste thanks to more precise demand estimates.
Forecasting in real-time: Forecasting can be performed in real-time with AI/ML. This implies that organizations can swiftly adapt their operations to changes in consumer demands. For instance, companies can immediately boost production in response to an unexpected spike in the market for a product. Businesses can identify possible problems with the supply chain and take proactive steps to mitigate them with the use of real-time forecasting.
Forecasting that is tailored to each customer's preferences: AI/ML techniques may also be employed to tailor demand predictions. Increased customer happiness and loyalty can enable firms to customize their product offers and pricing plans to individual clients.
Enhanced Supply Chain Management: Demand forecasting is a crucial part of supply chain management, which has been improved. Businesses may optimize inventory management, save lead times, and boost supply chain effectiveness by correctly predicting demand patterns. Businesses may discover possible supply chain bottlenecks and inefficiencies with the aid of AI/ML-powered demand forecasts, enabling them to take preventative action to address these problems.
Lower Costs: Finally, by streamlining operations, demand forecasting powered by AI/ML can help firms cut expenses. Businesses can lower inventory levels, minimize waste, and improve their production processes by precisely forecasting demand trends. Profitability can rise because of large cost reductions.
Conclusion:
Demand forecasting with AI/ML is quickly altering how firms make future planning. Many advantages are provided, such as real-time forecasting, customized demand predictions, enhanced supply-chain management, and cost savings. Businesses are then better able to fulfill customer demand and enhance operations by making educated decisions about production, inventory, and pricing. Businesses can stay competitive in a market that is changing quickly and stay ahead of their rivals with the help of AI/ML-powered demand forecasting. This is where Thousense comes into play. Visit https://thousense.ai/ to learn more.
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thousenselite · 2 years ago
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Demand Forecasting: How AI and Data-Driven Insights Improve Accuracy
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Businesses are under increasing pressure to streamline processes, cut costs, and enhance customer service in today's quickly changing industry. Accurately anticipating future demand is one of the biggest problems that organizations have. To optimize inventory levels, cut waste, and ensure customer satisfaction, accurate sales forecasting is essential. Manual surveys & statistical models, which are common demand forecasting techniques, are unreliable and time-consuming. Yet developments in AI & data-driven insight are revolutionizing demand forecasting, allowing companies to predict future demand more precisely. This article will examine how artificial intelligence (AI) and data-driven analytics are enhancing demand forecasting precision and transforming supply chain management's strategic planning procedure.
The Function of AI in Forecasting
To find elements that affect demand, AI algorithms can evaluate enormous volumes of data from numerous sources, such as social networking sites, internet searches, and weather trends. Businesses can more accurately predict future demand by including these elements in demand forecasting models. Businesses may modify their demand forecasting in real-time thanks to the ability of ML algorithms to respond to shifting market conditions.
Businesses can also find trends and patterns using AI-powered demand forecasting that are not apparent using conventional statistical techniques. AI systems, for instance, can examine consumer behavior and preferences to spot new patterns and trends that may affect demand. This data can be used by firms to modify manufacturing and stock levels in response to shifting customer demands.
AI-Powered Demand Forecasting's Advantages
The advantages of demand forecasting powered by AI are numerous, including:
1. Enhanced Accuracy
Large volumes of data can be analyzed by AI systems to pinpoint elements that influence demand, leading to more precise demand forecasting.
2. Real-time Modifications
Businesses may alter overall demand forecasting in real-time thanks to AI algorithms' ability to react to shifting market conditions.
3. Cost reduction
Through accurate demand forecasts, businesses may optimize their inventory levels, lowering inventory costs and reducing wastage.
4. Enhanced Client Services
By ensuring that goods are accessible when customers need them, effective demand prediction can assist organizations in enhancing customer service levels.
Inventory planning software based on AI: Five Strategies to Improve Supply Chain Management
 AI-driven tools have at least five advantages over using conventional ones. It all boils down to fewer manual processes, fewer errors brought on by complicated supply chains, and finally, assisting the supply chain in inventory planning
1. Data consolidation and workflow automation
Several Excel spreadsheets are used by managers of supply chains at small to large firms to manage the data from their organization resource planning (ERP) platforms. This planning must be done manually, which takes weeks and frequently results in team members using stale information. As an alternative, AI solutions may interface with all sources of data and update the information in ERP automatically by sending daily suggested manufacturing, transfer, and sales order to the ERP system.
2. Ordering Plans Are Automatically Updated
What will my new revenue be? is a question that supply chain managers are frequently asked. What should the composition of my inventory be? What stock do I currently have? What is currently being provided, and how could delays impact my supply chain? How should my replenishment strategy be structured to reduce the costs associated with overstock and out-of-stocks? AI tools provide immediate answers to these queries by dynamically simulating the interactions between the company schedules.
These methods might also automatically alter your ordering strategy while taking any number of supply and demand limitations into account. Your restocking plan can then become more practical and constantly be current as a result.
3. Dealing with unpredictable suppliers
The dependability of supplier lead times is crucial for inventory management. Supply chain executives are currently dealing with lead times that are escalating due to the recent volatility in the supply chain. The 30-day period can easily extend to 90 days or beyond. Planning an inventory can be severely disrupted by such developments. AI tools immediately account for changing lead - time and automatically change ordering plans in response to the issue.
4. Selling Goods With No Prior Sales Information
Supply chain managers must predict demand properly to develop efficient ordering strategies. They need accurate historical sales data, which can be impossible to obtain for some goods, such as brand-new offerings with no prior sales history, to do that. In these situations, AI software can make use of the market prediction models for a comparable existing product and update it automatically when new data is received.
5. Reducing excess inventory and stockouts
The key to successful inventory planning is placing orders for precisely the proper quantity of goods to satisfy consumer demand while avoiding excess or out-of-stock situations. By automatically assessing all the available data and limits, AI solutions can continuously rebalance supply and demand.
Strategic Planning Effects of AI-based Demand Forecasting
Strategic planning requires accurate demand forecasting, which enables companies to decide on production, inventory, & distribution in an informed manner. Businesses can reduce the danger of having too much inventory or running out of stock by effectively anticipating demand, which allows them to change their manufacturing and stock levels to suit changing customer needs. Businesses may experience large cost reductions as a result of this, especially in sectors with high inventory expenses.
AI-based demand forecasting also can assist companies in finding fresh chances for development and growth. Businesses can create novel goods or services that better satisfy shifting customer needs by monitoring consumer behavior and preferences to spot new patterns and products that may have an impact on demand. This can help firms expand and profit while staying one step ahead of the competition.
Conclusion
AI and data-driven analytics are revolutionizing demand forecasting and empowering organizations to estimate demand more precisely. Many advantages of accurate demand forecasting include cost reduction, enhanced customer service, and simplified supply chain operations. AI ML-based demand forecasting is transforming supply chain management's strategic planning process thanks to its capacity to evaluate massive volumes of data and adapt to shifting market conditions.
The significance of AI-based demand forecasting will indeed increase as organizations continue to rely more and more on data-driven insights. Businesses that want to remain competitive in today's quickly changing market must invest in AI-powered demand forecasting, which is no longer an option but rather a must. Businesses may increase the accuracy of their demand forecasting and advance their management of supply chains by leveraging AI and data-driven insights.
Thousense can give organizations use information about anticipated demand trends and assist them in making better-informed decisions. To get started with this technique to estimate demand and eventually grow your business contact us today!
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thousenselite · 2 years ago
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Best Practices for Utilizing Machine Learning in Demand Forecasting
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Computer Vision, Voice Recognition, Robots, Fintech, Medical Technologies, Supply Chain, Logistics, and many more fields are embracing artificial machine learning and artificial intelligence (AI-ML). Each sector is eager to automate its systems and incorporate AI-ML into at least one of its activities. Even supply chain procedures are being increasingly digitalized and transformed using AI-ML technology.
Demand forecast, logistics and transportation, inventory control, production scheduling, and procurement are just a few of the supply chain elements that can benefit from the application of AI-ML ideas. One of the supply chain's components is a major talking point. But machine learning can readily deal with it. Although it is a crucial part of the supply chain management, many sectors are either having trouble with it or are still employing outdated techniques. Many of the problems that planners encounter in the later phases can be successfully resolved if correctly executed. This value is utilized for logistics and transportation, inventory management, and production planning. It involves forecasting demand.
Machine learning has gained popularity as a method for demand forecasting due to its ability to examine enormous datasets swiftly and accurately. Yet, there are best practices that businesses should adhere to make sure their models for demand forecasting based on machine learning are successful.
Perks of AI-ML in Demand Forecasting:
1. Choose the appropriate algorithms.
Demand forecasting can make use of a variety of machine learning methods, including decision trees, neural networks, and regression. It's crucial to select the algorithm that works well for the forecasting issue. For instance, if the consumer demands are non-linear, a neural net may be the best option, whereas a decision tree may be preferable if the data is organized.
2. Quantity and high-quality data
For precise demand forecasting, the quality and volume of data utilized to train models using machine learning are essential. Companies should make sure their data is complete, accurate, and current. They should also gather sufficient data to prevent overfitting and guarantee that the model generalizes well to new information.
3. Enhancement engineering
The process of feature engineering includes choosing and developing features that are pertinent to the forecasting issue. These elements may be past sales data, cost data, promotional efforts, weather information, and economic indicators in demand forecasting. For the model to contain the most pertinent features, feature extraction should be determined by statistical analysis and domain expertise.
4. Routine updates
Demand patterns are subject to change over time, thus it's critical to update the model used for machine learning frequently with fresh information. By doing this, the model is preserved as accurate and pertinent to the current consumption circumstances. Businesses should set up procedures for data collection, cleansing, and preparation and maintain a regular cycle for model changes.
5. Model assessment
A crucial stage in verifying the accuracy and dependability of the model used for machine learning is model evaluation. Metrics like Mean Absolute Percentage Error, Root Mean Square Error, and Mean Absolute Error should be used by organizations to assess the performance of the model. To assess the model's efficacy, these measures should be contrasted with industry benchmarks and previous demand forecasting techniques.
6. Readability and comprehensibility
Models created by machine learning can be intricate and challenging to understand. Organizations should be aware of how the model generates its forecasts, though. Making sure that the model is producing correct predictions, might assist find any biases or flaws in it. The usage of methods like correlation-based feature analyses and partial dependency plots by organizations can help them understand how the model generates its predictions.
Machine Learning's Value
The less evident search behavior mentioned above, in which the intent to acquire is not overt, is one example of the nonlinear relationships that machine learning is particularly good at identifying and which are essential for demand forecasting. Without machine learning, even an automatic platform would struggle to find those nonlinear correlations. Real-time data combined with machine learning can be a potent one-two punch. CPGs and merchants can do the following with the understanding of nonlinear patterns in unstructured data:
Discover new consumer habits like panic buying that are more effectively caused by outside factors like a weather disaster or the introduction of a disease strain.
Create a scenario plan. CPGs and merchants can use computer simulations to do "what-if" analyses. For instance, depending on the predicted activities of a rival, they can assess the likely effects of running a campaign at a specific time. There are countless possible outcomes. For instance, how would a planned campaign for a CPG product that is not essential differ depending on whether it is marketed in a metropolis or a rural area? Planning of this nature requires little capital.
According to research, CPG companies have "cut prediction error by even more than one-third, lowered the volume exposed to a severe error by half, and drove a six-fold rise in realized value from investment opportunities in people, processes, and technology associated with planning." This is done by using deep learning and third-party data, such as trend data and real-time data, to sense demand through the pandemic.
Conclusion
Demand forecasting using machine learning has the potential to significantly increase the precision and effectiveness of business planning. Businesses should adhere to best practices such as gathering high-quality data, including a variety of sources of information, selecting the appropriate model, routinely updating, and improving the prototype, and tracking and assessing its performance to get the most out of this technology. Businesses may make better judgments and maintain a competitive edge in a – measured/computed environment by adhering to these best practices. To learn more about AI-ML-based Demand Forecasting visit us at https://lite.thousense.ai/
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thousenselite · 2 years ago
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Streamline Your Business with the help of AI
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ThouSense's demand forecasting and budgeting AI tool helps you streamline your financial planning and decision-making. With accurate predictions of sales volume, revenue, and expenses, you can plan for different scenarios and make informed decisions.
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thousenselite · 2 years ago
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From Historical Sales Data to Future Sales Projections: How ThouSense Makes It Easy
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Forecasting is the technique of estimating and predicting future consumer demand for a good or service using prediction analysis of previous data. By anticipating future sales, demand forecasting enables organizations to optimize inventory. Demand managers may make well-informed company decisions about anything from inventory planning & warehousing requirements to running flash sales and satisfying consumer expectations by reviewing past sales data.
From previous sales information to projections for future sales. This is where machine learning and artificial intelligence are useful. A reduced demand forecasting experience is offered by ThouSense Lite, an AI/ML-based demand forecasting solution. Important sales and organizational hierarchy data must be uploaded by the user, who also sets the forecast or reporting levels. To give precise demand estimates in hours, AI/ML-based algorithms simplify the data processing process by taking into account other pertinent elements including macroeconomic and environmental conditions.
Forecasting demand is crucial for e-commerce.
There isn't any business if there is no demand. Also, firms are unable to decide how much money to spend on marketing, how much to produce, how many employees to hire, and other matters without a solid understanding of demand.
Although there will never be a demand forecast that is 100% accurate, there are things you can do to shorten production lead times, boost operational effectiveness, save money, introduce new goods, and enhance the customer experience.
How precisely does it accomplish this?
A business that uses AI can monitor every link in the supply chain, from the number of products being sold to when the stock will run out. It also monitors which products are performing poorly, which drives up storage costs, and how demand and sales can change with the seasons or the period of the year.
Advantages of anticipating demand
A corporation can rely on this information to provide an accurate forecast when it comes time to create a demand projection. Better demand projections can aid a business in...
1. Increase client happiness and customer retention: If your product is always available, customers will be happier, and precise projections help maintain your warehouses filled sufficiently (but not too full) to fulfill demand.
2. Improve sales and discounts: Retailers lose money when items sit on a shelf collecting dust. Demand Forecasting identifies which sales and reductions will pique consumer attention, helping businesses move slow-moving goods.
3. Eliminate staff shortages: Predicting staff need for an entire year or busy historic periods can help firms make the best use of their workforce planning, including when and how to hire seasonal staff.
4. AI acts like a sponge; it gets better with time: Every time it has access to fresh data, it applies machine learning to provide improved forecasts and predictions, gradually becoming more knowledgeable and precise.
5. Be more productive: By using demand forecasting, teams may concentrate on strategic challenges rather than dealing with supply chain issues or managing unforeseen stock variations.
How Does Demand Forecasting with AI Improves Logistics?
The cost of the supply chain can be decreased, and personal finance, capacity planning, profit margins, and risk management strategies can all be considerably improved with the use of demand forecasting. With solutions that offer practical action plans and help decision-making based on extensive data analytics, AI-enabled demand forecasting improves logistics.
Supply chain managers can perform more strategic tasks because machine learning predicts sales and creates advanced forecasts using real-time information that takes into account outside influences like demographics, climate, the performance of comparable products, and social media and internet reviews.
For instance, by utilizing AI to predict needs and optimize the supply of those crucial parts to keep manufacturing running, organizations can eliminate distribution network delays for parts utilized in their most famous or niche items.
The advantages of logistics demand forecasting powered by AI
The following is a unique list of attractive advantages demonstrating how demand forecasting powered by AI improves logistics.
1. Companies can improve the accuracy of forecasts and optimize their replenishment proposals by trying to integrate machine learning into corporation supply chain management when logistic support operators must ensure that requirement forecasting models are applied properly and act quickly premised on AI-powered data analytics.
2. Using data from both internal and external sources including demographic information, the weather, online surveys, and social media, machine learning advances demand to forecast and enables you to generate more accurate predictions.
3. Supply chain linkages that can cross more manually regulated connections by data analysts and respond to external changes are enhanced by AI-enabled demand forecasting.
4. Real-time data, AI, and machine learning are used in large-scale planning to increase flexibility in adapting to shifting customer needs, decrease sales losses from out-of-stocks, prevent oversize or oversize, and enhance manufacturers' overall level of customer service.
5. One of the most exciting uses of machine learning in the supply chain is the use of machine learning and artificial intelligence (AI) to enhance demand forecasting.
Conclusion
The way businesses manage their distribution networks and make choices is changing as a result of AI demand forecasting.
Instead of relying on human processes, AI market analysis gathers and combines data sources before examining them for patterns and problems. As a result, businesses may make decisions regarding everything from stock purchases to price markdowns using demand estimates supported by icy, hard data rather than on a whim. To make better judgments, Thousense assists businesses in integrating AI demand forecasts into digital infrastructure.
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thousenselite · 2 years ago
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Maximizing ROI with Better Demand Planning
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The idea is to identify the process management areas that need to be addressed and then define the related metrics that can be monitored and translated into ROI when a manufacturer must evaluate the efficacy and accompanying return on investment (ROI) of a volume planning process. Although there are many key parts connected to demand planning, producers should pay particular attention to a few key areas to achieve the largest process improvement. Before beginning a project, a company must carefully analyze these emphasis areas and ensure that it can accurately quantify worth, and ROI based just on the economy of the component that is being enhanced.
Focal Topics for Business Processes
1. Forecast Accuracy
Prediction accuracy is the most crucial starting point for every project aimed at improving the demand planning process. A prediction is only as accurate as the information you rely on to commit to and develop it. Forecasting accuracy is the primary business metric that determines the efficacy of the balance of the demands planning process at any manufacturer. Your forecast is subject to inaccuracies and variations if you are just capturing a part of the information.
One of the most frequent errors is relying just on past data when forecasting and failing to delve far enough into the supply part of the company. For this reason, expanding the scope of the market through a strategic planning process constitutes the initial step in increasing prediction accuracy. This indicates that for many manufacturers, the forecasting process must be extended as far as is practicable to the retail location to collect a more comprehensive demand signal. Demand Planning should involve all parties involved in the forecasting process, including corporate sales teams, outside rep companies, distributors, and important clients.
2. Times of Forecast Cycles
Changing the forecast cycle times is one area where businesses may gain significantly and see an immediate and big ROI. By doing this, manufacturers can gain better insight into predicted changes as they happen, improving their ability to handle exceptions. The truth is that businesses that estimate and adhere to a strategy on a quarterly run the danger of having excess inventory. A quarterly assessment and prediction just do not work anymore because so much can alter in just one week.
With the latest technologies available, businesses may now collect data in real-time, so they can make decisions based on events that are happening that day rather than waiting a week to compile and analyze the data. Businesses that use technology that enables near-real-time data collection have already been able to shift their forecast planning cycles from monthly to weekly. As the data are current rather than being reviewed after one month, this modification can result in a huge return on investment. According to experience, businesses that switch to weekly forecasting rather than monthly forecasting would see higher inventory turns, better streamlined and optimized stock levels, greater client retention rates, and higher margins.
3. Inventory Control
Improvements in forecast accuracy would immediately impact inventory management, another operational area that needs careful assessment. There are numerous facets to managing inventory, but for this article, we'll concentrate on two aspects: on-hand stock and inventory turns, which are common to most manufacturers.
Order management systems and inventory managers will feel confident enough to tighten the weeks-on-hand and safety helps capture inventories across items if they have a reliable demand master plan that everyone trusts. To enable more precise forecasting, it is crucial to provide the ability to link current inventory data to demand prediction data. This entails giving up-to-date backlog and shipping data in line with the forecast data. Together with forecast input from the field, this creates a behavioral link between forecast and shipments, which heightens accountability.
Reducing the inventory reserves at all stages of the supply chain, which results in lower costs for carrying inventory and write-offs, serves as the benchmark for this area.
4. Customer Satisfaction
Customer Satisfaction Forecast accuracy helps with improved inventory management which helps with better lead time management, which can decide the fate of a relationship with customers in a cascading connection.
To maintain the most satisfied clients for the highest priority clients, according to revenue, competitive situations, or other business partnership drivers, the quantification areas for client satisfaction include reducing scarcity and stockouts, rising order fill rates, and optimizing supply/demand matching. You may develop a deeper connection with your consumers by getting to know them better and more frequently, as well as by better understanding the demands they have. This will ultimately be advantageous for both firms.
Conclusion
Manufacturers can continuously enhance their demand planning process by enhancing and measuring business operational efficiencies in three important areas. This enables these businesses to make more lucrative business decisions while still having enough time to realize a return from those decisions. A more thorough demand planning method also implies that revenue and margin forecasts can now be made with confidence. This is crucial since there is a great deal of pressure on the bottom-line measurements, which can result in "misses" that have a significant impact on the company's valuation. This is where, Thousense, an AI ML-based forecasting tool comes into play with the solution to all your demand forecasting needs. 
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thousenselite · 2 years ago
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Why Forecasting is Important in Supply Chain Management?
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One could argue that today's manufacturers need a fortune teller given the complexity and ambiguity involved in managing a global commodity network to see what's coming, whether certain events can affect preparatory work and manufacturing, and what manufacturers can do to minimize the consequences of production parameters and restraints. While manufacturing organizations lack a fortune teller, they do have a variety of clever, sophisticated, and safe installations at their disposal that can help them get a better understanding of their supply issues and the market factors that affect their production cycles.
What is forecasting for the supply chain?
Utilizing historical data on product demand, and supply chain forecasting aids in forecasting, planning, and stock inventory decisions. It can prevent a loss for a company, especially around the holidays.
The technique of foreseeing demand, supply, or price for a product — or a variety of items — in a certain industry is known as supply chain forecasting.
For instance, the algorithms underlying prediction models can forecast a product's price by examining data from buyers and suppliers. To improve the accuracy of the pricing estimate, the computer can also look at outside variables like the climate or other disruptive events.
AI is used in sophisticated supply chain forecasting to reduce costs and time, increase accuracy, and assist businesses in quickly responding to exceptions. Large amounts of forecasting data may be assimilated by AI-powered supply chain platforms, which can then deliver insightful data that helps to ensure a flexible and agile supply chain.
Companies need to understand how and why economic forecasts are such a crucial operation, regardless of whether you're worried about sales forecasts (projections based on existing market evolution or tier of use of a given product) or demand forecasting (information about existing manufacturing trends and the variables that may affect or implications these trends). While this does not imply that forecasting is not a top priority for managers and planners, it is still important to review the five reasons why distribution network forecasting is important and how manufacturing firms may use forecasting to gain a unique competitive advantage in production and production planning.
Arranging more efficient manufacturing
So much of the current demand planning technique may be equated to peering through a rearview mirror. Yes, knowing where you've been and where you're going can often help you predict where you're going, but this doesn't always prevent multiple-car accidents on the motorway. However, forecasting enables businesses to look ahead and prevent this fictitious disaster through more efficient production scheduling that takes into account market dynamics, consumer wants, and raw material availability and parts. Manufacturing businesses can work with more agility, openness, and flexibility to react to changing production settings or schemes because forecasting offers them an edge over these components of manufacturing and planning cycles.
Inventory decreased
Manufacturing companies can work more successfully with suppliers to attain ideal inventory levels and lower the probability of part shortages or overages if they have a better understanding of and ability to estimate consumption or orders for specific products. Manufacturing firms may more correctly assess the degree of customer demand about the number of parts required to complete orders and maintain scheduled delivery windows thanks to forecasting capabilities. Goods reduction helps businesses optimize their operations by lowering the length of time unused capacity spends in a warehouse, which in turn helps reduce the amount of storage or container space needed.
Cost cutting
We previously spoke about how forecasting lowers the costs of leftover materials or components, but forecasting also assists businesses in lowering costs by giving them the foresight to place orders for less stock than is required to satisfy client demands. Additionally, forecasting assists in lowering costs related to a variety of other crucial production operations, including hiring and managing staff, locating raw resources, and even certain front-office or client-facing tasks. A more efficient & cost-effective production platform translates to a more efficient & cost-effective manufacturing company because forecasting affects the production cycle from beginning to end (and because production cycles affect each point of contact of the value chain).
Improved transportation logistics
Suppose Manufacturing Company A is analyzing its transport logistics just to uncover significant expenditures involved with moving a given quantity of goods to a certain place. This company intends to combine deliveries or modes of transit to control or perhaps lower these costs. Depending on customer demand, it may even change delivery dates. Even if these might be respectable choices, forecasting enables businesses to go a step further and methodically assess their sustainable transport system to spot places where economies can be improved and redundancies reduced.
Improved client satisfaction
In the modern global manufacturing sector, ensuring that the client receives the appropriate product at the appropriate time and that it is delivered in a manner that meets their expectations is the key to achieving customer satisfaction. It makes sense how forecasting functions to raise customer satisfaction and encourage expansion and growth in the short, mid, and long term if we view forecasting as a holistic method of enhancing, streamlining, and improving a manufacturing company's operational, logistical support, and production cycle platforms.
Conclusion
Utilizing real-time data, supply chain management can assist in the process of anticipating and monitoring the supply chain, which synchronizes the demand-supply cycle. As a result, the stock becomes less likely to remain underused. For instance, a manufacturer of baked goods utilizing SCM software can keep an eye on its stock levels and send an online order to its vendors in advance of a spike in demand. Whenever it involves overseeing your supply chain, experience is a plus. Possessing years of market information helps you better estimate future demand.
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