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Vetted LSTM Professionals

Pre-screened and vetted.

LSTMPythonDockerSQLTensorFlowPyTorch
NY

Nikhil Yenuganti

Mid-level AI/ML Engineer specializing in MLOps, NLP/CV, and fraud detection

USA5y exp
JPMorgan ChaseEastern Illinois University
A/B TestingAgileApache HadoopApache HiveApache KafkaApache Spark+76
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TS

Talha SId

Senior AI/ML & Data Science professional specializing in NLP, LLMs, and MLOps

Newark, Delaware10y exp
AlignerrUniversity of Central Punjab
Machine LearningData AnalyticsLarge Language Models (LLMs)Retrieval-Augmented Generation (RAG)Sentiment AnalysisPrompt Engineering+112
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SR

Sriman Reddy

Mid-level Data Scientist specializing in ML, NLP, and cloud deployment

Columbus, OH4y exp
Capital OneClark University
PythonSQLRETLMachine LearningArtificial Intelligence+100
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NM

Nathan Magnon

Senior AI/ML Engineer specializing in LLMs, NLP, and production MLOps

Texas City, TX11y exp
HealtheeUniversity of York
A/B TestingAmazon EKSApache HadoopApache KafkaApache SparkAWS+99
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TP

Tharun P

Mid-level Data Scientist / ML Engineer specializing in NLP, GenAI, and cloud ML deployment

U.S.A, USA3y exp
Southwest AirlinesUniversity of Cincinnati
PythonSQLPySparkApache SparkDatabricksSnowflake+73
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KM

Krishang Mittal

Junior Full-Stack & ML Engineer specializing in AI products and real-time systems

Madison, WI1y exp
PonyxUniversity of Wisconsin–Madison
AgileAPI IntegrationAWSC#C++Data Structures+78
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AM

Aleem Malik

Principal Automation Architect specializing in cloud DevOps, microservices, and MLOps

Spring, TX16y exp
SparkSoft
AngularJSAnsibleArgo CDAWSAWS IAMAWS Lambda+90
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VT

vedavathi thumula

Screened

Mid-level GenAI/ML Engineer specializing in agentic AI and RAG systems

4y exp
WalmartUniversity of Central Missouri

“Backend/platform engineer who has owned a Python/FastAPI results API and deployed it on Kubernetes with Helm and GitHub Actions-driven CI/CD. Demonstrates strong production operations mindset across performance tuning, monitoring, safe rollouts/rollbacks, and phased migrations, plus hands-on Kafka streaming experience focused on ordering and idempotency.”

A/B TestingApache SparkAWSBERTBashCI/CD+220
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PK

Pravallika Kilari

Screened

Mid-level AI/ML Engineer specializing in NLP, GenAI, and MLOps in healthcare and finance

USA5y exp
CVS HealthUniversity of Houston

“AI/ML engineer with CVS Health experience deploying production LLM systems in regulated healthcare settings, including a large-scale RAG solution (1M+ documents) built for compliance-grade, auditable policy/regulatory Q&A with strong anti-hallucination controls. Also delivered an NLP summarization system for physician notes/case narratives by partnering closely with non-technical care operations stakeholders and iterating via prototypes, dashboards, and feedback loops.”

Anomaly DetectionAWSAWS LambdaAzure Machine LearningBERTCI/CD+128
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CC

Chandan Chalumuri

Screened

Mid-level Data Scientist specializing in ML, NLP, and Generative AI

Tempe, AZ4y exp
MetLifeArizona State University

“Data engineering / ML practitioner with experience at MetLife building transformer-based sentiment analysis over large unstructured datasets and productionizing pipelines with Airflow/PySpark/Hadoop (reported 52% efficiency gain). Also implemented embedding-based semantic search using Pinecone/Weaviate to improve retrieval relevance and enable RAG for customer support and document matching use cases.”

A/B TestingAgileApache AirflowApache HadoopApache KafkaApache Spark+170
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AR

Anvesh Reddy Narra

Screened

Mid-level AI/ML Engineer specializing in Generative AI, RAG, and MLOps

3y exp
State FarmCleveland State University

“Built a secure, on-prem/private GPT assistant to replace manual SharePoint-style search across thousands of policies/SOPs/engineering docs, using a production RAG stack (LangChain/LangGraph, FAISS/Chroma, PyMuPDF+OCR, vLLM). Implemented layout-aware ingestion (including table-to-JSON) and a multi-agent retrieval/generation/verification workflow with strong observability and compliance guardrails, delivering ~70% reduction in search time.”

Anomaly DetectionAnsibleApache KafkaApache SparkAWSBERT+184
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YL

Yurong Luo

Screened

Senior Data Scientist/ML Engineer specializing in scalable ML and LLM systems

Remote9y exp
dataAnnotationVirginia Commonwealth University

“Built and deployed an end-to-end product that brings a research-paper approach into production for large-scale time-series clustering, with attention to partitioning, latency, and scalability. Also designed a Python-based backend validation service (comparing outputs to database ground truths) and handled production reliability issues by reproducing dataset-specific crashes and hardening corner-case behavior with client-friendly errors.”

PythonJavaSQLCC++Linux+109
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CC

Chakrafani Chadalavada

Screened

Mid-level Full-Stack .NET Engineer specializing in Sitecore and cloud-native microservices

Pittsburgh, PA5y exp
Highmark HealthNorthern Illinois University

“Backend/web API engineer with hands-on experience deploying .NET Core APIs to Azure App Service and stabilizing production systems through disciplined log-driven troubleshooting, environment configuration management, and SQL performance tuning (execution plans, query rewrites, indexing). Has also debugged cross-layer incidents involving DB locks and network latency, and modifies Python/XML automation scripts to meet customer-specific requirements while improving logging and performance.”

.NETC#REST APIsMicroservicesHTMLCSS+252
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VM

Vikash Mediboina

Screened

Mid-level Machine Learning & Full-Stack Engineer specializing in GenAI platforms

San Francisco, CA5y exp
WellDhanNortheastern University

“LLM/agent builder who has shipped production AI systems in the wellness space, including an LLM-powered food tracking product used by 5000+ users and a voice/call-routing onboarding workflow using LangGraph/LangChain with LiveKit and Twilio. Strong focus on practical reliability work: latency reduction, retrieval/embedding tuning, and CI-driven evaluation with simulations and metrics.”

AgileAngularAPI DesignAWSCI/CDCloud-Native Architecture+148
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YN

Yogendra Nalam

Screened

Mid-level Data Scientist specializing in ML, NLP, and Generative AI

Michigan, USA3y exp
Ally FinancialUniversity of Michigan-Dearborn

“GenAI/ML engineer with production experience at Cognizant and Ally Financial, building end-to-end LLM/RAG systems and ML pipelines. Delivered a domain chatbot trained from 90k tickets and 45k docs, improving intent accuracy (65%→83%), scaling to 800+ concurrent users with 99.2% uptime and sub-150ms latency, and driving +14% customer satisfaction. Strong in Azure ML + DevOps CI/CD, Dockerized deployments, and explainable/PII-safe modeling using SHAP/LIME to satisfy stakeholder trust and GDPR needs.”

AgileAnomaly DetectionAPI DevelopmentAWSAzure DevOpsAzure Machine Learning+107
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HB

Harideep Balusa

Screened

Mid-level AI/ML Engineer specializing in FinTech risk, fraud detection, and GenAI/RAG systems

USA6y exp
Freddie MacUniversity of Wisconsin

“Built and productionized Azure-based LLM/RAG systems for regulatory/compliance use cases, including automating analyst research and compliance report generation across large unstructured document sets. Demonstrates strong practical depth in hallucination mitigation, hybrid retrieval tuning (BM25 + embeddings), and production MLOps (Databricks, Cognitive Search, AKS, Airflow/MLflow), plus proven ability to deliver auditable, explainable solutions with non-technical compliance teams.”

PythonRSQLScalaMachine LearningDeep Learning+125
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MS

Muaaz Syed

Screened

Mid-level AI/ML Engineer specializing in NLP and conversational AI

Richardson, TX4y exp
CVS HealthUniversity of Texas at Dallas

“ML/NLP engineer focused on real-time IT ops analytics, building a predictive maintenance/anomaly detection platform end-to-end (multi-source ETL, streaming, modeling, and production deployment on GCP/Vertex AI). Uses deep learning (LSTMs, autoencoders/VAEs) plus embeddings (SentenceBERT) and vector search to improve incident correlation and search, citing ~40% reduction in duplicate alert noise.”

AgileWaterfallScrumPythonFastAPIDjango+114
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RV

Rohan Varma Bandari

Screened

Mid-level Data Scientist & Generative AI Engineer specializing in LLMs and RAG

USA4y exp
Wells FargoUniversity of North Texas

“Built production LLM + hybrid RAG and multi-agent orchestration systems at Wells Fargo to automate complaint document/audio transcript understanding and categorization, addressing vocabulary drift via embedding + vector index updates instead of frequent retraining. Strong in LLM workflow reliability (testing/benchmarks/observability) and stakeholder-facing delivery with explainability (citations/SHAP-style justifications) and Tableau dashboards.”

PythonSQLJupyter NotebookAmazon SageMakerVisual Studio CodeNumPy+128
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SK

Sai Krishna Chittanuri

Screened

Mid-level Data Scientist specializing in real-time fraud detection and MLOps

San Francisco, CA5y exp
Charles SchwabCUNY Graduate Center

“ML/NLP engineer with experience at Charles Schwab building an NLP + graph (Neo4j) entity-resolution system to unify fragmented user/device/transaction data and improve downstream model quality and analyst querying. Has applied embeddings (SentenceTransformers + FAISS) with domain fine-tuning to boost hard-case matching recall by ~12% while maintaining precision, and has a track record of hardening scalable Python/Spark pipelines and productionizing fraud models via A/B tests and shadow-mode monitoring.”

PythonRSQLPandasNumPyPySpark+120
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AB

Alekya Battu

Screened

Mid-level Data Scientist specializing in ML, NLP, and MLOps

USA5y exp
Wells FargoWilmington University

“Senior data scientist with ~5 years’ experience building production ML/NLP systems in finance (Wells Fargo) and deep learning for sensor analytics in connected vehicles (Medtronic). Has delivered end-to-end platforms combining time-series forecasting with transformer-based NLP, including automated drift monitoring/retraining (MLflow + Airflow) and standardized Docker/CI/CD deployments; achieved a reported 22% precision improvement after domain fine-tuning.”

AgileScrumKanbanSDLCCI/CDWaterfall+144
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RM

Rakesh Medasani

Screened

Mid-level Full-Stack Developer specializing in scalable web apps and AI/ML systems

Houston, TX4y exp
Kgate Technologies, Inc.University at Buffalo

“Built a healthcare app backend and supporting product pieces from scratch for Maverick Health—covering database schema, API structure, Node.js implementation, and UI design in Figma—while targeting 10,000 patients and keeping AWS run costs to ~$20–$30/month. Shipped an Android closed beta on Google Play and handled real-world launch hurdles like privacy policy compliance and push notification infrastructure.”

PythonCC++SQLJavaScriptHTML+89
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TT

Thrinesh Thode

Screened

Mid-level AI/ML Engineer specializing in MLOps and LLM applications

New York, NY4y exp
BNY MellonUniversity at Albany

“BNY Mellon engineer who has built and operated production AI systems end-to-end: a LangChain/Pinecone RAG platform scaled via FastAPI + Kubernetes to 1000 RPM with 99.9% uptime, supported by monitoring and data-drift detection. Also deep in data/infra orchestration (Airflow, Dagster, Terraform on AWS/EMR/EC2), processing 500GB+ daily and delivering measurable reliability and performance gains, plus strong compliance-facing model explainability using SHAP and Tableau.”

A/B TestingApache KafkaApache SparkAWSAWS LambdaBERT+86
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BV

Bala Venkateswarlu K

Screened

Mid-level Data Scientist specializing in Generative AI, NLP, and MLOps

USA5y exp
MetLifeHarrisburg University of Science and Technology

“Built and deployed an LLM-powered claims-document summarization system (insurance domain) that cut agent review time from 4–5 minutes to under 2 minutes and saved 1,200+ hours per quarter. Hands-on across orchestration and production infrastructure (Airflow retraining DAGs, Kubernetes, SageMaker endpoints, FastAPI) and recent RAG workflows using n8n + Pinecone, with a strong focus on reliability, cost, and explainability for non-technical stakeholders.”

A/B TestingAgileApache KafkaApache SparkAuto ScalingAWS+148
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