Data matters! We provide rich and actionable insights from all data touch points, for smart business growth. Our ability to perform data enrichment by filling gaps in existing data and combining data from other available sources with the base datasets makes us unique.
we believe that Business + Data + Math = Actionable Insights.
Data science is the art and science of acquiring knowledge through data. Data science is all about how we take data, use it to acquire knowledge, and then use that knowledge to make decisions, predict the future, understand the past/present, and create new products & opportunities. Data science is about using data in order to gain new insights that you would otherwise have missed. With the sheer volume of data that been collected in various forms and from different sources that often comes in very unorganized format, it is impossible for a human or an excel tool to parse and find insights.
Our expertise in data science & machine learning algorithms across multiple languages such as R, Python and Spark ML allows us to provide specific solutions to address the unique challenges that businesses face. We have helped clients in performing some of the machine learning analysis as listed below:
These kind of analysis helps to understand how the typical value of the dependent variable changes when any one or more of the independent variables is varied, while the other independent variables are held fixed. This includes algorithms such as simple linear regression, multiple linear regression, polynomial regression, support vector regression, decision tree regression, random forest regression, and evaluating different regression model for better performance
These kinds of analysis involve grouping set of objects that are more similar to each other than those in other groups (clusters). Cluster analysis can be achieved by various algorithms such as K-means clustering, Hierarchial clustering, Fuzzy K-means clustering, Model-based clustering, and Topic modeling using LDA.
Classification is a process of using specific information (input) to choose a single selection (output) from a short list of predetermined potential responses. Classification algorithms are at the heart of what is called predictive analytics. The goal of predictive analytics is to build automated systems that can make decisions to replicate human judgment. This includes algorithms such as Logistic Regression, K-NN, Fisher’s linear discriminant analysis, Support Vector Machine, Naive Bayes, Decision Tree, and Random Forest Classification