Industrial AI

Automated Data Logistics & Advanced Machine Learning Techniques

Use Cases

Industrial Use Cases

Our automated, no-code prediction platform streamlines the AI model development and validation process, saving substantial time and effort. Craft and deploy rapid, low-latency solutions tailored for real-time or near real-time applications, enabling prompt and informed decision-making.

Problem
A premier HVAC solutions provider in North America aimed to refine inventory planning and enhance sales predictions across more than 360 locations. The complexity was heightened by a diverse product range exceeding 6,600 SKUs, where stock-outs were leading to elevated warehousing and holding expenses.

Solution
To address this challenge, a specialized forecasting solution was engineered, leveraging both machine learning and deep learning algorithms. These techniques were combined in an ensemble approach to achieve superior accuracy over traditional time-series forecasting methods, offering a strategic advantage in inventory management and sales forecasting.

95%

Accuracy

6,600

SKUs

360

Locations

Problem
A top-tier microelectronics component manufacturer aimed to refine SKU-level pricing strategies for trade sales. Their existing price prediction algorithm was plagued by bugs, leading to extended processing times. The goal was to suggest price points that enhance the chances of winning transactions, thereby maximizing revenue without sacrificing profit margins.

Solution
Findability Sciences deployed its machine learning technology to analyze historical data on revenue, quantities, price points, deal success rates, and forecasted demand. This enabled the recommendation of optimal price points for each SKU.

98%

Accuracy

24 to 1.5 Hours

Reduced Time

MSE 0.4

.

Problem
A Japan-based multinational aimed to reduce employee churn and improve mentorship but struggled to identify root causes of voluntary attrition despite development investments.

Solution
Findability Sciences structured graphical IoT sensor data into CSV files, built ML models to predict breakdown timestamps, and used time series analysis to identify failure patterns and key influencing factors.

90%

Accuracy

Cost Saving

Maximize

Operational Efficeney

Increased

A Top 5 retailer requires digital analytics for 4000 feature releases annually

Their analysts would require 8 weeks to provide analytics on the impact created by a website feature release. These were manually computed, based on just a differential between impressions and conversions. The FS incrementality computation included seasonality, attribution, and statistical significance. Business users could gain instant insights through a conversational interface. Additionally, forecasts were generated with a 22% uplift compared to internal accuracies for all product conversions to detect anomalies after a release.

+22%

Accuracy

>90%

Stat Sig

4 Weeks

Time Saved

Problem
Traditional HVAC distributors struggle with fragmented systems, manual reconciliation, and reactive inventory planning. Poor data visibility leads to excess stock, frequent stockouts, and high fulfilment costs. Seasonal fluctuations and supply chain disruptions amplify inefficiencies, draining capital and reducing service levels across regions — making agility nearly impossible

Solution
Findability Sciences’ Inventory Agentic Workflow Engine (AWE) integrates real-time data from all enterprise systems to enable proactive, AI-driven inventory management. With Forecasting, Segmentation, and Planning Agents, enterprises gain SKU-level precision, simulate demand scenarios, and dynamically optimize replenishment, routing, and placement — transforming operations from reactive to predictive

$49M - $141M

Savings

+5%

Inventory Turns

20%

Lower Carrying Costs

Forecasting of 8 real estate parameters for 24 months with over 90% accuracy

The biggest challenge for a real estate asset management company in the US was forecasting market conditions for investment and divestiture decisions. By forecasting rent, occupancy, and value with over 90% accuracy for 24 months, the company was able to use the forecasts for making financial and investment decisions. Additionally, an economic downturn forecast was conducted to determine the probability of a recession in 6 months, 12 months, and 24 months with 94% accuracy.

>90%

Accuracy

1M+

Forecasts

Recession Prediction

.

Data Pipeline

AI-Powered Data
Pipeline

With advanced multi-model prediction and real-time, low-latency deployment, it empowers businesses to make data-driven, rapid decisions through a fully automated AI forecasting pipeline.

Data Logistics Wide Data

The collection, analysis, unification, and preparation of data assets, encompassing both structured and unstructured categories from Internal and external sources.

Data Scenario

Discrete Target, Continuous Target, Time Series Target

Data Exploration

Employing sophisticated algorithms to sift through data to identify patterns, features, trends, and insights that are crucial for informed decision-making through statistical tests and visualizations.

Data Quality

Employs advanced algorithms to ensure appropriate quality of data through handling missing values, outliers, bias, drifts, etc.

Multi-Model Predictive Analytics

Employs both supervised and unsupervised machine learning algorithms, alongside advanced multi-model prediction and time series forecasting techniques. It finds multiple patterns in the data, creates multiple models, and selects the best model for each record from Prediction data. This methodology allows for a broad range of analyses, from univariate to multivariate, ensuring that the predictive outcomes are highly accurate.

Discrete Target Variable Data

Enterprise Forecasting handles the Binary as well as multi-class scenarios equally well. In case the target variable data is binary it offers three modes of modeling as Model for Least Frequent Value, Model for Most Frequent Value, and Model for Both Values (BV) The Least Frequent option is generally suitable for targeting applications like propensity to pay, Loan default, employee churn, etc.

Continuous Target Variable Data

Enterprise Forecasting identifies if the target variable data is continuous and models the data for multi-model estimation. This is suitable for all regression like applications.

Time Series Data

Enterprise Forecasting can handle time series data and perform modeling and forecast. The data may contain multiple time series and Enterprise Forecasting handles each time series independently. It uses Sequential Additive Ensemble, a proprietary algorithm which provides higher accuracies.

Model Insights

Provides model performance metrics including statistical measures as well as visualizations appropriate for various types of applications to make informed decisions, variable importance to understand the influencing factors, local or model level explanations for deeper understanding and statutory compliances.

Customizable Insight Dissemination

Results are delivered through an array of customizable mediums—be it custom dashboards, triggers, alerts, simple reports, or API integration with existing legacy systems. This flexibility ensures that actionable insights are accessible in the format that best suits the operational and strategic needs of the business, facilitating easier decision making and integration into business processes.

Revolutionizing
Business With AI

Let’s transform your enterprise with data-driven, autonomous intelligence.

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