Applied AIML Associate Senior - Machine Learning Engineer, Surveillance
JPMorgan Chase & Co.
All India • 2 months ago
Experience: 4 to 8 Yrs
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Job Description
As a Senior Machine Learning Engineer on our team, you will play a crucial role in designing, building, and productionizing ML and LLM powered detection systems that operate at scale across high-volume communication streams. You will be at the forefront of Risk modeling, NLP, and transformer architectures, working on near real-time inference systems, regulatory explainability, and auditability. This hands-on senior role requires deep expertise in applied NLP, LLM integration, scalable ML systems, and production-grade engineering discipline. You will collaborate with various teams and explore new technologies to drive innovation in the field.
**Key Responsibilities:**
- Design LLM powered features for risk detection, alert explanation, conversation summarization, and reviewer assisted co-pilots
- Implement explainability techniques such as SHAP, LIME, and attention visualization to ensure traceable, versioned, and reproducible model outputs
- Optimize inference latency and token efficiency for production environments
- Implement RAG and LLM based risk analysis pipelines processing data at web scale
- Develop augmentation mechanisms leveraging legacy regular expressions for filtering and optimization
- Design real-time and batch processing and scoring pipelines using technologies like Kafka and Spark
- Implement experiment tracking, model versioning, and CI/CD for ML models
- Conduct monitoring to detect and alert drift, bias, and performance degradation
- Collaborate closely within a cross-functional team following agile-based processes
**Qualifications Required:**
- 8+ years of experience in cloud-based applications with at least 4 years of experience as an MLE
- Strong foundation in Information Retrieval, Natural Language Processing
- Expertise in functional programming and JVM based languages such as Python, Kotlin, Java
- Experience integrating models into cloud-scale, microservices based architectures
- Hands-on experience with ML frameworks like Pytorch, Tensorflow, SciKit, NeMo, Huggingface Transformers
- Proficiency with AWS services including SageMaker, ECS, Lambda functions, Bedrock
- Exposure to SQL, NoSQL, and messaging stacks
- Excellent verbal and written communication skills with a bias for action and ownership in early-stage environments
- Operational experience in supporting an enterprise-grade ML application in production
**Preferred Qualifications:**
- Knowledge of Databricks
- Experience with MLOps frameworks like MLflow, Kubeflow
- Experience in surveillance, fraud detection, fintech, or risk systems is a strong plus
This job provides you with an opportunity to work on cutting-edge technologies in AI-driven Surveillance within a collaborative and innovative environment. You will be part of a team that values diversity, inclusion, and continuous improvement to drive success in the financial industry. As a Senior Machine Learning Engineer on our team, you will play a crucial role in designing, building, and productionizing ML and LLM powered detection systems that operate at scale across high-volume communication streams. You will be at the forefront of Risk modeling, NLP, and transformer architectures, working on near real-time inference systems, regulatory explainability, and auditability. This hands-on senior role requires deep expertise in applied NLP, LLM integration, scalable ML systems, and production-grade engineering discipline. You will collaborate with various teams and explore new technologies to drive innovation in the field.
**Key Responsibilities:**
- Design LLM powered features for risk detection, alert explanation, conversation summarization, and reviewer assisted co-pilots
- Implement explainability techniques such as SHAP, LIME, and attention visualization to ensure traceable, versioned, and reproducible model outputs
- Optimize inference latency and token efficiency for production environments
- Implement RAG and LLM based risk analysis pipelines processing data at web scale
- Develop augmentation mechanisms leveraging legacy regular expressions for filtering and optimization
- Design real-time and batch processing and scoring pipelines using technologies like Kafka and Spark
- Implement experiment tracking, model versioning, and CI/CD for ML models
- Conduct monitoring to detect and alert drift, bias, and performance degradation
- Collaborate closely within a cross-functional team following agile-based processes
**Qualifications Required:**
- 8+ years of experience in cloud-based applications with at least 4 years of experience as an MLE
- Strong foundation in Information Retrieval, Natural Language Processing
- Expertise in functional programming and JVM based languages such as Python, Kotlin, Java
- Experience integrating models into cloud-scale, microservices based architectures
- Hands-on experience with ML frameworks like Pytorch, Tensorflow, SciKit, NeMo, Huggingface Transformers
- Proficiency with AWS services including SageMaker, ECS, Lambda functions, Be
Skills Required
Information Retrieval
Natural Language Processing
Functional Programming
Python
Java
NeMo
ECS
Bedrock
SQL
NoSQL
JVM based languages
Kotlin
ML frameworks
Pytorch
Tensorflow
SciKit
Huggingface Transformers
AWS services
SageMaker
Lambda functions
Messaging stacks
Verbal written communication skills
MLOps frameworks
MLflow
Kubeflow
Posted on: March 11, 2026
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