● Capture data for ISP subscribers, equipment, tickets, and revenue
● Sources: Data from workflow of application
● Subscribers, equipment, tickets analytics
● Revenue Analytics
● Machine Learning: Revenue prediction, Capacity utilization and planning
Big Data Analytics Stack
● Airflow, Argo
● Sqoop, Kafka, Spark
● HDFS, Minio, SeaweedFS
● Hive
● Mongodb, Cassandra, Aerospike, ElasticSearch, PrestoDB, Druid
● Kubernetes, Docker
● Superset, Metabase
● PowerBI, Tableau
Machine Learning
● Descriptive and Predictive analysis of structured data - Risk analysis, Fraud detection,
Security incident detection
● Computer vision - Object detection based signature detection in scanned documents.
Image-based document classification and extraction, License-plate detection
● NLP - Named entity recognition, Sequence to Sequence modelling, Sentiment analysis,
Text-based classification
Technology Stack
● TensorFlow, KubeFlow, PyTorch, AutoML, MLlib, Dask, Cloud ML, BERT
● Amazon, Google, Microsoft, Linode, Paperspace