Skip to content

Data Science Lead - R01561319

Brillio
Bangalore, Karnataka, IndiahybridFeb 18, 2026·Posted 1 month ago
View Application Page

Domain

Tech Stack

PythonPySparkTensorFlowPyTorchSci-Kit LearnAutoGenLangChainSemantic KernelKubeFlowBentoMLSASSPSSRCNTKKerasMXNet

Must-Have Requirements

  • Hypothesis Testing
  • Regression (Linear, Logistic)
  • Python/PySpark
  • Statistical analysis and computing
  • ML Frameworks (TensorFlow, PyTorch, Sci-Kit Learn)
  • Agentic AI architecture design
  • Multi-agent framework experience (AutoGen, LangChain, Semantic Kernel)
  • API and Webhook gateway design
  • Speech-to-Text and NLU systems implementation
  • LLM fine-tuning and RAG pipeline optimization

Nice to Have

  • -T-Test, Z-Test
  • -SAS/SPSS
  • -Probabilistic Graph Models
  • -Great Expectation
  • -Evidently AI
  • -Forecasting (Exponential Smoothing, ARIMA, ARIMAX)
  • -KubeFlow
  • -BentoML
  • -Classification (Decision Trees, SVM)
  • -CNTK, Keras, MXNet
  • -R/R Studio

Description

Data Science Lead

Primary Skills Hypothesis Testing, T-Test, Z-Test, Regression (Linear, Logistic), Python/PySpark, SAS/SPSS, Statistical analysis and computing, Probabilistic Graph Models, Great Expectation, Evidently AI, Forecasting (Exponential Smoothing, ARIMA, ARIMAX), Tools(KubeFlow, BentoML), Classification (Decision Trees, SVM), ML Frameworks (TensorFlow, PyTorch, Sci-Kit Learn, CNTK, Keras, MXNet), Distance (Hamming Distance, Euclidean Distance, Manhattan Distance), R/ R Studio

Specialization Data Science Advanced: Data Scientist

Job requirements Job Description: Lead Solution Architect (Agentic AI & App Integration) Role Overview As the Lead Solution Architect, you will be the visionary and technical engine behind our AI-Enabled application. Transform a reactive monitoring environment into a proactive, agentic ecosystem. You will design the foundational integration blocks that allow Generative AI agents to interact with third-party applications, transcribe real-time communications, and provide intelligent, multi-step reasoning to support mission-critical decisions. ________________________________________ The Foundational Blocks 1. Orchestration Layer: Building the multi-agent framework (e.g., AutoGen, LangChain, or Semantic Kernel) that allows AI agents to collaborate, hand off tasks, and resolve complex incidents autonomously. 2. Universal Integration Fabric: Designing a standardized API and Webhook gateway that connects apps for real-time data ingestion and action execution. 3. The "Live Intelligence" Pipeline: Implementing Speech-to-Text (STT) and Natural Language Understanding (NLU) systems to ingest radio, video, and voice comms directly into the AI’s reasoning engine. 4. Governance & ALA (Agentic Level Agreements): Establishing the guardrails, audit logs, and "human-in-the-loop" protocols to ensure AI actions are safe, compliant, and transparent. ________________________________________ Key Responsibilities • Drive Agentic AI Strategy: Lead the architectural design of autonomous agents capable of L1/L2 incident triage, automated investigation, and proactive threat hunting. • Cross-App Integration: Develop reusable integration patterns (Event-Driven, WebSockets, REST) to ensure the app is the "single pane of glass" for all connected applications. • Conversational AI & STT: Design high-fidelity chatbot interfaces and real-time transcription services that allow operators to "talk to the data" and receive voice-activated summaries of active incidents. • Data Science Leadership: Partner with Data Scientists to fine-tune LLMs, optimize Retrieval-Augmented Generation (RAG) pipelines, and ensure model outputs are grounded in enterprise-specific data. • Scalability & Resilience: Ensure the architecture supports high-concurrency, low-latency operations.

Location Context