Data science as a service allows companies to get business insights leveraging advanced analytics technologies, including deep learning, without investing in in-house data science competencies.
Since 1989, ScienceSoft provides companies with data science services to enable them to exploit growth and process improvement opportunities.
Get Access to Advanced Analytics Techs and Skills
Optimize your business processes with effective root cause analysis and reliable forecasting delivered by ScienceSoft’s team on a regular or on-demand basis.
Hands-on experience with all major languages, libraries and cloud services for data science.
ScienceSoft is a 3-Year Champion in The Americas’ Fastest-Growing Companies Rating by the Financial Times.
ISO 9001 and ISO 27001-certified to assure the quality of the data science services and the security of the customers' data.
Domain experience in 30 industries, including manufacturing, energy, retail and wholesale, professional services, healthcare, financial services, transportation and logistics, telecommunications.
Analytics Domains We Cover with DSaaS and Value You Get
Operational intelligence
Root cause analysis and bottleneck recognition
Forecasting of business performance metrics
Improvements in:
Operational decision-making
Working capital management
Process, resource, cost management
Supply chain management
Supply forecasting
Demand forecasting
Preventive alerting for inventory control
Improvements in:
Stock control
Inventory management
Demand and supply planning
Order fulfillment
Production management
Demand and throughput forecasting
Process quality prediction
Production loss root cause analysis
Improvements in:
Production process management
Overall equipment effectiveness
Overall resource effectiveness
Predictive maintenance
Root cause failure analysis and prediction
Remaining useful lifetime prediction
Predictive monitoring and preventive maintenance
Improvements in:
Asset lifetime and uptime
Total productive maintenance
Maintenance and repair costs management
Risk management
Counterparty risk analytics
Potential damage prediction
Improvements in:
Risk mitigation
Credit risk management
Liquidity risk management
Fraud detection
Customer analytics
Sentiment analysis
Customer behavior prediction
Sales forecasting
Improvements in:
Cost per customer/lead
Revenue per customer
Lead conversion rate
Customer acquisition and retention
Quality management
Defect root cause analysis
Production output predictive modeling with varying inputs
Image and video analysis, automated visual inspection
Improvements in:
Cost of quality management
Material consumption
Rework efforts
Number of product recalls
Our Featured Data Science and Big Data Analytics Projects
13
results for:
Frequently Asked Questions
What value do we get when choosing data science as a service?
Quickly embracing data science capabilities without growing in-house data science competencies.
Getting advanced analytics insights for end business users.
How can we be sure of the quality and speed of analytics insights?
DSaaS delivery is based on the agreed service quality KPIs, which may include:
Output quality KPIs:
Insights by value (high / average / low).
Forecast accuracy.
Missing alerts.
Business result-related KPIs (e.g., improvements in energy consumption or service delivery time).
User satisfaction score.
Will our data be secure?
Data safety is ensured through:
Storing and processing data on highly secure cloud facilities (Azure, AWS, Google Cloud).
Conducting 24/7 in-house data security monitoring.
Using secure data transfer methods (FTP and VPN) controlled via regular health checks.
Data Science Technologies and Methods We Use
Pricing Models for Data Science as a Service
Monthly subscription fee
Recommended when the engagement scope is clear, for outsourcing a particular number of data science talents to perform the required activities.
Time and Material
Recommended when the engagement scope is unclear.
Choose Your Service Option
For companies with no data science capabilities
We offer:
Analysis of business needs driving the company to apply data science.
Source data preparation and cleansing.
Development, training, testing and deployment of machine learning models.
ML model tuning.
Delivering data science output in an agreed format.
Integrating ML models into an application for users’ self-service, if required.
An expert data science team can help you quickly embrace data science for meeting particular advanced analytics objectives and achieving the following benefits:
Up to 30%
Reduction of equipment maintenance cost due to predictive monitoring and preventive maintenance.
Up to 20%
Increased product throughput and improved on-time delivery due to demand and throughput forecasting and production process optimization.
Up to 35%
Increase of product quality in discrete manufacturing with defect root cause analysis and product quality predictive modeling.
5%
Reduction of inventory management costs due to the AI-based forecasting of demand-driving factors.
49%
Consumers willing to shop more frequently due to customer behavior prediction and forecasting.
Support Decision-Making with Advanced Analytics
Cooperate with ScienceSoft to incorporate machine learning (including deep learning) capabilities into your business workflows without investing in building in-house data science teams and competencies.