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Vetted Feature Engineering Professionals

Pre-screened and vetted.

Feature EngineeringPythonSQLDockerscikit-learnTensorFlow
KG

Karthik Gantasala

Screened

Mid-level Generative AI Engineer specializing in LLM agents and RAG

Chesterfield, MO4y exp
Reinsurance Group of AmericaUniversity of Central Missouri

“GenAI/LLM engineer who built and deployed a production RAG system for enterprise document search and decision support, cutting manual lookup time by 40%+. Experienced with LangChain/LangGraph agent orchestration plus Airflow/Prefect for ingestion and incremental reindexing, with a strong focus on reliability (testing, observability) and stakeholder-driven metrics.”

A/B TestingAgileAmazon BedrockAnsibleApache AirflowAWS+168
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JK

Jitesh Kumar S

Screened

Junior Machine Learning Engineer specializing in NLP, computer vision, and MLOps

Lafayette, IN3y exp
YaarcubesUniversity of Maryland, College Park

“ML/LLM engineer with Meta experience building production AI systems for near real-time user-report classification and summarization under strict latency (<250ms), safety, cost, and privacy constraints. Has hands-on MLOps/orchestration experience (Airflow, Spark, MLflow, Kubernetes, Docker, GitHub Actions) plus observability (Prometheus/Grafana) and applies rigorous evaluation, staged rollouts, and A/B testing to keep agent workflows reliable in production.”

PythonSQLBashShell ScriptingJavaC+++99
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AK

Akshay Katageri

Screened

Mid-level AI Engineer specializing in multi-agent systems and RAG

Jersey City, NJ4y exp
Elevance HealthPace University

“Built and shipped a production LangGraph-based multi-agent LLM analytics/decision copilot that answers questions across SQL/BI systems and unstructured docs, emphasizing grounded, tool-verified outputs with citations and confidence gating. Deep hands-on experience with orchestration (LangGraph, CrewAI, OpenAI Assistants, MCP) plus real-world latency/cost optimization (vLLM batching/KV caching, speculative decoding, quantization) and rigorous eval/observability. Partnered closely with business/ops stakeholders to deliver explainable reporting automation, cutting manual reporting time by 50%+.”

Cross-Functional CollaborationData PipelinesDockerFAISSFeature EngineeringFlask+106
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FP

Farida Poor

Screened

Junior Machine Learning Engineer specializing in NLP and multimodal transformers

Bay Area, CA3y exp
Altea TechnologyUniversity of Denver

“Built and deployed LLM-powered agentic chatbot and text-to-SQL systems using LangGraph/LangChain (and Bedrock), structuring workflows as DAGs with planning/replanning and validation to improve tool-calling reliability and reduce hallucinations. Operates production feedback loops with online/offline metrics, drift detection, and LangSmith-based evaluation pipelines, and regularly partners with business stakeholders and clinicians using slide decks and visual charts.”

PythonCC++MATLABRSQL+107
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MV

Mohith Venkata

Screened

Mid-level Full-Stack Developer specializing in cloud-native APIs and data workflows

Tukwila, WA4y exp
Reshmi’s Group Inc.Seattle University

“Built and owned end-to-end ordering and inventory/order management systems for a wholesale distributor, delivering an MVP quickly and iterating based on direct observation of daily users. Experienced with TypeScript/React + Node.js layered architectures and microservices using RabbitMQ, including real-world scaling issues (duplicates, backpressure) and observability practices (correlation IDs, structured logging).”

PythonJavaJavaScriptTypeScriptC++C#+147
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VK

Vaishnavi K

Screened

Mid-level AI/ML Engineer specializing in GenAI, MLOps, and anomaly detection

USA5y exp
TCSUniversity of New Haven

“LLM/MLOps engineer who has shipped a production RAG-based technical documentation assistant (FastAPI) cutting manual review by 45%, with deep hands-on retrieval optimization in Pinecone/LangChain (HNSW, hybrid + multi-query search, caching). Also brings healthcare domain experience—building Airflow-orchestrated EHR pipelines and delivering FDA-auditability-friendly predictive maintenance solutions using SHAP/LIME explainability surfaced in Power BI.”

A/B TestingAmazon EC2Amazon S3Amazon SageMakerApache AirflowApache Hadoop+135
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DK

Deepak K

Screened

Mid-level AI/ML Engineer specializing in NLP, RAG, and MLOps for FinTech

Overland Park, KS4y exp
IntuitUniversity of Central Missouri

“ML/LLM engineer with production experience building a compliant RAG-based virtual assistant at Intuit, optimizing embeddings and FAISS retrieval (including PCA) for low-latency, privacy-controlled search and deploying via AWS SageMaker containers. Also built scalable Airflow+MLflow pipelines using Docker and KubernetesExecutor, cutting training cycles by 37%, and partnered with civil engineers/project managers at Aegis Infra to deliver predictive maintenance for construction equipment.”

A/B TestingAmazon EC2Amazon S3BERTCI/CDClassification+93
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SP

Snehitha Penumaka

Screened

Mid-level AI/ML Engineer specializing in predictive modeling and cloud ML pipelines

Dallas, TX3y exp
Cambard LLCUniversity of Texas at Dallas

“LLM engineer/data engineer who has deployed production RAG systems for internal-document Q&A, building end-to-end ingestion, embedding, vector search, and FastAPI serving while actively reducing hallucinations and latency through rigorous retrieval tuning and caching. Also experienced in orchestrating cloud data pipelines (Airflow, AWS Glue, Azure Data Factory) and partnering with non-technical business teams to deliver AI solutions like automated document review.”

A/B TestingAgileAnomaly DetectionApache SparkAWS LambdaClassification+93
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KR

Krishna Rajput

Screened

Mid-level AI Engineer & Data Scientist specializing in LLMs, RAG, and multimodal systems

Tempe, AZ5y exp
HCLTechArizona State University

“LLM/GenAI engineer who built a production AI-powered credit risk policy summarization and compliance alerting platform at HCL Tech, focused on factual accuracy and auditability for a financial client. Implemented a multi-retriever LangChain RAG architecture with citations-only prompting, fallback agents, and human-in-the-loop legal review—cutting manual review time by 35% and scaling to 12 teams.”

A/B TestingAnomaly DetectionAWS GlueAWS LambdaAzure Machine LearningCI/CD+126
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PK

Pravalika Kuppireddy

Screened

Mid-level AI/ML Engineer specializing in Generative AI and intelligent automation

4y exp
University of Michigan-DearbornUniversity of Michigan-Dearborn

“LLM engineer who built and productionized a system to classify GitHub commits (performance vs non-performance) using zero-/few-shot approaches over commit messages and diffs, working at ~5M-record scale on multi-node NVIDIA GPUs. Experienced orchestrating end-to-end LLM pipelines with Airflow and GitHub Actions, and emphasizes reliability via testing, guardrails, and observability while collaborating closely with non-technical product stakeholders.”

PythonSQLJavaC++Scikit-learnPyTorch+133
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MM

Maheswar Mekala

Screened

Mid-level Machine Learning Engineer specializing in NLP, recommender systems, and MLOps

OH, USA5y exp
General MotorsUniversity of Dayton

“ML/LLM engineer with production experience at General Motors building Transformer-based search and recommendation personalization for a high-traffic vehicle platform. Delivered significant KPI gains (17% conversion lift, 14% bounce-rate reduction) and optimized real-time inference via ONNX Runtime and INT8 quantization while implementing robust MLOps (Airflow/MLflow, monitoring, drift-triggered retraining) and stakeholder-facing explainability/dashboards.”

PythonPandasNumPyScikit-learnSQLGit+101
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SP

Santhoshi Priya Sunchu

Screened

Mid-level Data Scientist specializing in NLP and predictive modeling

Massachusetts, USA5y exp
Blue Cross Blue Shield of MassachusettsUniversity of Massachusetts Dartmouth

“AI/ML practitioner in healthcare/insurance (Blue Cross Blue Shield) who built and deployed a production NLP system to classify patient risk from unstructured clinical notes. Experienced in end-to-end pipeline orchestration (Airflow, AWS Step Functions/Lambda/SageMaker) and real-time optimization (BERT to DistilBERT on AWS GPUs), with strong clinician collaboration to drive adoption.”

PythonSQLRNumPyPandasScikit-learn+147
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SP

saran palle

Screened

Mid-level Applied AI Engineer specializing in agentic LLM workflows

North Carolina4y exp
Acentrik Technology SolutionsUniversity at Buffalo

“AI engineer with production experience building a LangGraph-based, stateful multi-agent system at MetLife to automate complex insurance claims adjudication, integrating document discovery, Azure Document Intelligence OCR/extraction, and health data analysis. Strong in agent orchestration and production deployment (Docker + FastAPI REST APIs), with a structured approach to reliability, evaluation, and stakeholder-driven requirements.”

PythonFastAPIFlaskTypeScriptREST APIsSystem Design+101
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SA

sahithi A

Screened

Mid-level AI Engineer specializing in LLM agents and RAG for health-tech

Remote6y exp
Milton AITexas Tech University

“Backend engineer with health-tech AI platform experience who designed a modular FastAPI/PostgreSQL architecture supporting real-time user data and swap-in AI workflows. Has hands-on production experience with observability (CloudWatch, structured logging, LangSmith/LangGraph/LangChain tracing), secure auth (OAuth2/JWT, RBAC, RLS), and careful data-pipeline migrations using parallel runs and rollback planning.”

AgileAPI IntegrationAWSBackend DevelopmentCI/CDClassification+121
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SA

Sai Addala

Screened

Mid-level AI/ML Engineer specializing in financial risk, fraud analytics, and forecasting

USA4y exp
Northern TrustSyracuse University

“Built and productionized an LLM-powered financial intelligence and forecasting platform at Northern Trust using a RAG architecture (LangChain + Hugging Face + FAISS) with end-to-end MLOps (Docker/Kubernetes, Airflow, MLflow). Emphasized regulatory-grade explainability (SHAP/Power BI) and hallucination control (retrieval-only grounding), achieving ~30% forecasting accuracy improvement and ~65% reduction in analyst research time, with sub-second inference and 95% uptime on EKS/AKS.”

PythonNumPyPandasJSONSQLPostgreSQL+116
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LP

Lakshmi Priya Ramisetty

Screened

Mid-level ML & Data Engineer specializing in GenAI, graph modeling, and fraud/risk analytics

Redwood City, CA5y exp
BlueArcYeshiva University

“Built a production AI fraud/risk scoring platform at BlueArc that ingests web business/product/site data, generates text+image embeddings, and connects entities in a graph to detect reuse patterns and links to known bad actors. Optimized for scale with incremental graph re-scoring and delivered investigator-friendly explainability by surfacing the exact signals/relationships behind each score; orchestrated workflows with Airflow and GCP event-driven components (Pub/Sub, Dataflow, Cloud Run) and has recent LLM workflow orchestration experience (retrieval, prompting, scoring).”

PythonSQLPySparkApache AirflowETLPostgreSQL+92
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SS

Sai somapalli

Screened

Senior LLM Engineer specializing in Generative AI, RAG, and multimodal assistants

USA6y exp
Stellar AI SolutionsCampbellsville University

“GenAI/NLP engineer with experience building classification and summarization pipelines in PyTorch and deploying multimodal GPT-4-style workflows. Has integrated LLM applications across OpenAI, Azure OpenAI, and Amazon Bedrock, and uses LangChain/LlamaIndex/Semantic Kernel to orchestrate RAG and agent workflows with production-focused evaluation metrics like task success rate and groundedness.”

Generative AILarge Language Models (LLMs)ClaudeLlamaLangChainRetrieval-Augmented Generation (RAG)+83
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AG

Aravind Gudipudi

Screened

Mid-level AI/ML Engineer specializing in MLOps and cloud-deployed ML systems

Austin, TX3y exp
PurevisitxUniversity of Illinois Springfield

“ML/AI engineer who built and productionized an NLP system at PurevisitX, orchestrating end-to-end ML workflows with Airflow (S3 ingestion through auto-retraining) and optimizing for drift and low-latency inference. Also partnered with Citibank risk teams on a fraud detection model, translating results via dashboards and iterating thresholds based on stakeholder feedback.”

A/B TestingAgileApache AirflowAWSAWS GlueAWS Lambda+93
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JC

Jahnavi Chakka

Screened

Mid-level Machine Learning Engineer specializing in LLMs, NLP, and MLOps

USA5y exp
McKessonSUNY

“Built a production LLM-RAG system at McKesson to let internal healthcare operations teams query large volumes of unstructured operational documents via natural language with source-backed answers, designed with HIPAA/FHIR compliance in mind. Demonstrated strong production engineering across hallucination mitigation, retrieval quality tuning, and latency/scalability optimization, using LangChain/LangGraph and Airflow plus rigorous evaluation/monitoring practices.”

A/B TestingAgileAmazon ECSAmazon EKSAmazon EMRAmazon SageMaker+125
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SK

SaiGanesh Konagalla

Screened

Mid-level ML Engineer specializing in NLP and Generative AI

Houston, TX4y exp
Epic SystemsUniversity of Central Missouri

“Healthcare AI/ML engineer with Epic experience who built and deployed a HIPAA-compliant GPT-4 RAG clinical assistant over large medical document sets, emphasizing privacy controls and low-latency performance. Also automated end-to-end retraining and deployment of patient risk models using orchestration/CI-CD (Jenkins, SageMaker, MLflow), cutting deployment time from hours to minutes while improving reliability.”

PythonNumPyPandasSciPyScikit-learnSeaborn+186
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MV

Manish Vemula

Screened

Mid-level Machine Learning Engineer specializing in real-time pipelines and NLP/GenAI

TX, USA4y exp
DiscoverCentral Michigan University

“ML/MLOps practitioner from Discover Financial who built and deployed a real-time AI fraud detection platform (LSTM + VAE) on AWS SageMaker with Docker/FastAPI and Jenkins-driven CI/CD. Demonstrated measurable impact (30% accuracy lift, 25% fewer false alerts) and deep expertise in class-imbalance mitigation, drift monitoring, and orchestration (Airflow/Kubeflow), plus strong stakeholder adoption via Power BI dashboards for fraud/compliance teams.”

AgileAnomaly DetectionAPI IntegrationAWS LambdaAzure Machine LearningCI/CD+101
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SS

Shimil Shijo

Screened

Senior AI Software Engineer specializing in Generative AI and NLP

Dearborn, MI6y exp
University of Michigan-DearbornUniversity of Michigan-Dearborn

“Built and deployed a production multimodal language translation platform (text-to-text, speech-to-text, text-to-speech) using fine-tuned pretrained models (NLLB, XLSR), MLflow-orchestrated pipelines, and Docker/Kubernetes on AWS. Worked closely with non-technical linguists to tackle data cleaning and dialect variation in minority languages, improving accuracy through consistent evaluation and monitoring.”

PythonCC++RJavaNumPy+79
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DG

Dimple Galla

Screened

Mid-level Data Scientist / AI-ML Engineer specializing in RAG, MLOps, and real-time analytics

Lawrence, KS4y exp
PaycomUniversity of Kansas

“Software/ML engineer who built a production automated job-finding and cold-email personalization system for Fortune 500 outreach, using JobSpy for dynamic scraping, LangChain orchestration, and LLM+vector DB semantic search with grounding/relevance metrics and guardrails. Also delivered a predictive investment analytics platform for financial advisors, communicating results via Tableau dashboards and portfolio KPIs like Sharpe ratio and drawdowns.”

A/B TestingAmazon EC2Apache KafkaApache SparkAWSAWS Glue+163
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MN

Meghana Nandivada

Screened

Junior Machine Learning Engineer specializing in production ML systems and MLOps

2y exp
TCSStevens Institute of Technology

“ML/AI engineer (TCS) who built and productionized a customer segmentation and personalized-offer recommendation pipeline end-to-end (data cleaning/feature engineering/clustering through Flask API deployment in Docker with monitoring). Emphasizes reliability and operational rigor via validation checks, periodic retraining, model/API versioning, and latency optimization, and has experience translating marketing KPIs into usable dashboards for non-technical teams.”

PythonSQLJavaScalaMachine LearningMLOps+99
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