US Citizen
Green Card
EAD (OPT/CPT/GC/H4)
H1B Work Permit
Corp-Corp
W2-Permanent
W2-Contract
Contract to Hire
Consulting/Contract
UG :- - Not Required
PG :- - Not Required
No of position :- ( 1 )
Post :- 21st Dec 2023
Classification (Decision Trees, SVM), Distance (Hamming Distance, Euclidean Distance, Manhattan Distance), Forecasting (Exponential Smoothing, ARIMA, ARIMAX), Great Expectation, Evidently AI, Hypothesis Testing, ML Frameworks (TensorFlow, PyTorch, Sci-Kit Learn, CNTK, Keras, MXNet), Probabilistic Graph Models, Python/PySpark, R/ R Studio, Regression (Linear, Logistic), SAS/SPSS, Statistical analysis and computing, Tools(KubeFlow, BentoML), T-Test, Z-Test
Specialization
Data Science Advanced: Data Specialist
Job requirements
As a consultant within the Data Artificial and Intelligence team, you will work with our clients to define their digital strategy and execution roadmap, and design and implement differentiated digital solutions to help deliver measurable value.
Your Responsible:
As the Data Science lead, you are expected to engineer, develop, support, and deliver ML models using real time network data to enable decision making and drive insights for teams across Planning, Engineering, Operations and Assurance groups for a leading Telecom client.
Collaborate with team to drive the technical roadmap and guide development and implementation of new data driven business solution.
Architecture and design of AI Platform services including Machine Learning Engines, In Memory Computing Systems, Streaming Computing Systems, Distributed Data Systems and etc, in Spark, Java, and Python.
Coordinate the implementation among development teams to ensure system performance, security, scalability and availability.
Job Description:
2 years of experience in developing and deploying products using Docker, Kubernetes, and the containerization technology stack
3 years of experience in development of advanced machine learning and deep learning models such as RNN, LSTM, and specifically Graph Neural Networks(GNN)
3 years of experience in modern data mining and data science techniques (e.g., regressions, decision trees, ensemble algorithms, neural networks, time series analytics, clustering, anomaly detection, text analytics, etc.)
Data Wrangling: The candidate must have proficient data wrangling skills with Python, SQL, and other data processing tools/scripts.
Software Engineering background: The candidate must be proficient in Python and at least one object-oriented programming language (Java, Golang, C, etc.)
Domain Knowledge - Candidate with background in telecom preferred.
Distributed Systems: practical experience with NoSQL data platforms (e.g., Druid, Cassandra) and caching technologies like Redis is a plus.
Expert in developing large scale, enterprise class distributed system or subsystems that require high availability, low-latency, & strong data consistency computing.
Experience with Big Data and analytics in general leveraging technologies like Hadoop, Spark, and MapReduce.