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Vetted Feature Engineering Professionals

Pre-screened and vetted.

Feature EngineeringPythonSQLDockerscikit-learnTensorFlow
KP

Kalyan Pavuluri

Screened

Mid-level Full-Stack Java Developer specializing in cloud-native microservices and React

5y exp
Northern TrustCentral Michigan University

“Full-stack engineer who owned enterprise workflow platforms end-to-end at Northern Trust and Elevance Health—building NestJS/Java Spring Boot APIs, React UIs, and cloud deployments on GCP Cloud Run. Strong in data-heavy applications (hundreds of thousands of records) with proven production performance tuning (indexing/query rewrites, Cloud Run concurrency/min instances) and secure RBAC via Azure AD.”

AgileAJAXAmazon API GatewayAmazon CloudWatchAmazon DynamoDBAmazon EC2+169
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MM

Matthew Melendez

Screened

Mid-level Data Scientist specializing in machine learning and analytics

Houston, TX5y exp
SyscoTexas Christian University

“Data scientist with hands-on experience building an XGBoost-based customer segmentation/churn risk scoring model used by sales and marketing teams. Emphasizes production-grade practices—efficient SQL for large-scale data pulls, rigorous data validation/testing, and scalable, modular Python code designed to support multiple customer types.”

PythonNumPyPandasScikit-learnMachine LearningFeature Engineering+56
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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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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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SP

Samuel Park

Screened

Mid-level Software Engineer specializing in backend systems, DevOps/SRE, and AI workflows

Los Angeles, CA5y exp
xAIUC Santa Barbara

“Built an end-to-end automated trading system for Polymarket, including Go/Python execution services, Terraform-scheduled ETL/feature pipelines, and monitoring on modest hardware. Also shipped a production LLM+RAG signal verifier/explainer that grounds trade decisions in external context (news/social) with vector DB retrieval and guardrails, plus a lightweight RAGAS-style eval loop on ~50 resolved markets that improved signal faithfulness by ~15%.”

GoPythonJavaScriptTypeScriptNode.jsReact+73
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AB

Ankush Banthia

Screened

Senior Data & Platform Engineer specializing in cloud-native streaming and distributed systems

USA10y exp
JPMorgan ChaseNew York Institute of Technology

“Financial data engineer who has built and operated high-volume batch + streaming pipelines (200–300 GB/day; 5–10k events/sec) using AWS, Spark/Delta, Airflow, Kafka, and Snowflake, with strong emphasis on data quality and reliability. Demonstrated measurable impact via 99.9% SLA adherence, major reductions in bad records/nulls, MTTR improvements, and significant latency/runtime/query performance gains; also built a distributed web-scraping system processing 5–10M records/day with anti-bot and schema-drift defenses.”

OnboardingMentoringAgileScrumJiraConfluence+150
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HG

Hritvik Gupta

Screened

Mid-level AI Engineer specializing in LLMs, RAG, and healthcare AI

San Francisco, CA3y exp
Penn MedicineUC Riverside

“Built and scaled an AI-powered voice/chat patient engagement platform at Penn Medicine from early prototype into production clinical workflows, focusing on latency, edge cases, and user trust. Strong in LLM reliability engineering (structured prompts, validation/fallbacks), real-time troubleshooting with observability, and cross-functional enablement through pilots, demos, and sales/customer partnership.”

AWSAWS LambdaC++CI/CDCommunicationData Engineering+78
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MA

maheen Adeeb

Screened

Senior Machine Learning Engineer specializing in LLMs, speech AI, and RAG systems

Chicago, IL3y exp
VosynDePaul University

“AI engineer with production experience building multilingual speech-to-speech translation pipelines (ASR + LLM) for enterprise/media, focused on reliability at scale. Has hands-on orchestration experience (including IBM Watson contexts) and emphasizes production evaluation/monitoring using a mix of traditional metrics and LLM-based evaluators to catch quality regressions while balancing latency and cost.”

PythonSQLJavaScriptTypeScriptC++PyTorch+116
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BS

BHEEMA SABILLA

Screened

Mid-level Data Engineer specializing in Lakehouse, Streaming, and ML/LLM data systems

Remote, USA3y exp
DiscoverUniversity of South Dakota

“Built and productionized an enterprise retrieval-augmented generation platform for internal knowledge over large unstructured corpora, emphasizing trust via strict citation/grounding and hybrid retrieval (BM25 + FAISS + cross-encoder re-ranking). Demonstrates strong scaling and cost/latency optimization through incremental indexing/embedding and index partitioning, plus disciplined evaluation/observability practices. Has experience operationalizing pipelines with Airflow/Databricks/GitHub Actions and partnering closely with risk & compliance stakeholders on auditability requirements.”

PythonPySparkSQLScalaPandasNumPy+157
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FE

Franz Engel

Screened

Junior Full-Stack & ML Engineer specializing in research tooling and applied machine learning

San Diego, CA1y exp
University of California, IrvineUC Irvine

“Full-stack engineer and ML assistant in UC Irvine’s CS department who deployed a lab project showcase platform and integrated on-demand execution of computational projects using Docker for isolation. Also built and optimized Linux cloud/cluster test automation for research, diagnosing RAM and network sync bottlenecks, and later led development of a Python-based predictive analytics tool for musicians using probabilistic graphical models and flexible data pipelines.”

AgileAngularAPI TestingAWSBackend DevelopmentC+86
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LV

Lakshmi Vivek Jagabathina

Screened

Mid-Level Software Developer specializing in Java/Spring microservices and Salesforce

USA5y exp
Wells FargoUniversity of Maryland, Baltimore County

“Backend/AI engineer who built an AI icon-generation SaaS backend (Java/Spring Boot, MongoDB) on AWS, including async job processing with idempotency and S3-based result storage to handle traffic spikes. Also shipped applied AI in finance—an end-to-end fraud detection pipeline with risk scoring—and designed a banking support AI agent with strict guardrails, audit logs, and human-in-the-loop escalation.”

AgileAngularAPI GatewayAWSAWS IAMAWS Lambda+135
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LW

Lingyi Wu

Screened

Mid-level Financial/Data Analyst specializing in analytics, forecasting, and healthcare/MarTech data

Los Angeles, CA4y exp
MINISOWestcliff University

“Growth/creative marketer from Esleydunn Games who uses Google Analytics to integrate cross-channel performance data (TikTok, YouTube, LinkedIn, Facebook) and run structured A/B tests on video ad length and layout. Reported reducing CPA by 20 per customer when leveraging YouTube and TikTok, and improved CTR through CTA/button placement testing and ongoing user-feedback loops (forum/WeChat topics).”

PythonSQLRMachine LearningDeep LearningFeature Engineering+104
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AA

Aditi Akhilesh

Screened

Junior Software Engineer specializing in backend systems and developer tooling

Kerala, India2y exp
GadgEon SystemsPurdue University

“Built and maintained a Node.js backend for a restaurant recommendation project that became widely reused by other students, effectively acting like an internal open-source library. Refactored a messy filtering system into modular query/validation/pagination utilities, added tests, and upgraded docs (JSDoc, README, demo app) to reduce repeat issues and make contributions easier. Comfortable owning end-to-end improvements (design, performance, documentation, and support) in unstructured environments.”

API DesignAgileAJAXAWSBashBitbucket+55
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NK

Nandini Kosgi

Screened

Mid-level AI/ML Engineer specializing in NLP, RAG systems, and real-time risk modeling

PA, USA4y exp
Capital OneRobert Morris University

“AI/ML Engineer with 4+ years of experience (Capital One, Odin Technologies) and a master’s in Data Analytics (4.0 GPA) who has deployed LLM/RAG systems to production for compliance/risk and document review. Strong in orchestration and MLOps (Airflow, Kubernetes, MLflow, GitHub Actions) and in tackling real-world LLM constraints like latency, context limits, and data privacy, with measurable impact (20%+ manual review reduction; 33% faster release cycles).”

Agentic AIAnomaly DetectionApache HadoopApache HiveApache KafkaApache Spark+115
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AY

Archana yaramala

Screened

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

NY, USA4y exp
DataRobotSt. Francis College

“Built and deployed production LLM assistants for internal Q&A and customer-feedback summarization, emphasizing reliability (RAG, prompt tuning, validation/whitelisting) and privacy safeguards. Improved adoption by adding explainable outputs and a user feedback mechanism, and has hands-on orchestration experience with Aflow and Azure Logic Apps.”

AWSAzure Machine LearningCI/CDClassificationClusteringCommunication+80
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MB

Medhovarsh Bayyapureddi

Screened

Intern Machine Learning & Full-Stack Engineer specializing in computer vision and healthcare AI

India0y exp
Amrita Vishwa VidyapeethamUniversity of Illinois Urbana-Champaign

“AI/ML-focused backend engineer who shipped two production systems: PersonaPal (agentic LLM chatbot with RAG, FAISS-based retrieval, and Redis semantic caching) and CervixScan (clinical diagnostics platform with PostgreSQL data modeling and human-in-the-loop safety for low-confidence predictions). Demonstrates strong performance/reliability work (indexed vector search, caching, query optimization to ~200ms) and end-to-end ownership from orchestration design through deployment.”

API DevelopmentCC++ClusteringData StructuresDeep Learning+69
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CT

Chethan Thimapuram

Screened

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

5y exp
HCA HealthcareUniversity of South Florida

“Built a production, real-time clinical documentation system at HCA that converts doctor–patient conversations into structured clinical summaries using speech-to-text, LLM summarization, and RAG. Demonstrated measurable gains from medical-domain fine-tuning (clinical concept recall +18%, ROUGE-L 0.62 to 0.74) while meeting HIPAA constraints via PHI anonymization and encryption, and deployed via Docker/FastAPI with CI/CD and monitoring.”

Amazon CloudWatchApache AirflowApache KafkaApache SparkAWS GlueAWS IAM+125
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VM

Vaibhav Monpara

Screened

Mid-Level Full-Stack/Backend Engineer specializing in AWS, APIs, and GenAI systems

Los Angeles, CA5y exp
AIRKITCHENZCalifornia State University, Fullerton

“Backend engineer who built the core backend for Air Kitchens’ discovery/booking platform on AWS (Node + Python, DynamoDB, SQS/Lambda), optimizing for fast user-facing APIs and scalable async workflows. Introduced an AI matching service with a deterministic pre-filter + LLM ranking approach to balance latency vs quality, and has hands-on experience with production security (JWT/RBAC/RLS), CI/CD, and blue-green, staged migrations from Django to modular services.”

A/B TestingAlgorithmsAPI DesignAPI GatewayAsynchronous ProcessingAudit Logging+101
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VG

Varun Gattamaneni

Screened

Mid-level GenAI Engineer specializing in LLM fine-tuning, RAG, and MLOps

Glassboro, NJ5y exp
HCLTechRowan University

“Healthcare-focused LLM engineer who deployed a production triage and clinical knowledge retrieval assistant using RAG and LangGraph-orchestrated multi-agent workflows. Emphasizes clinical safety and compliance with robust hallucination controls, HIPAA/PHI protections (tokenization, encryption, audit logging, zero-retention), and human-in-the-loop escalation; reports a 75% latency reduction in a healthcare agent system.”

PythonPandasNumPyRSQLBash+150
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TA

TEJASWI ARAVELLI

Screened

Junior Machine Learning Engineer specializing in Generative AI and analytics automation

Bengaluru, India2y exp
AccentureUniversity of Alabama at Birmingham

“AI/LLM engineer who built a production intelligent support system using RAG over a vectorized documentation library, addressing real-world issues like lost-in-the-middle context failures and doc freshness via automated GitHub-driven re-embedding pipelines. Emphasizes rigorous agent evaluation (component/E2E/ops) and prefers lightweight, decoupled workflow automation using message brokers (Redis/RabbitMQ) over heavyweight orchestration frameworks.”

PythonSQLRJavaTensorFlowKeras+100
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AT

Aishwarya Thorat

Screened

Intern Data Scientist specializing in ML engineering and LLM agentic workflows

San Francisco, CA6y exp
ContentstackSan José State University

“Built an agentic, multi-step LLM system that generates full-stack code for API integrations using LangChain orchestration, Pinecone/SentenceBERT RAG, and a human-in-the-loop feedback loop for iterative code refinement. Also collaborated with non-technical content writers and PMs during a Contentstack internship to deliver a Slack-based AI workflow that generates and brand-checks articles with one-click approvals.”

A/B TestingAgentic AIAmazon RedshiftAmazon S3API IntegrationAWS+129
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PS

Pavithra Shankar

Screened

Mid-level QA Engineer specializing in AI/ML model validation and data quality

USA7y exp
AccentureClarkson University

“ML practitioner with a QA background who has built end-to-end ML pipelines for a health risk prediction use case (lifestyle + demographics), emphasizing robustness through strict data validation, leakage prevention, and cross-validation. Collaborated with a dietician to sanity-check predictions and refine feature interpretation for real-world practicality; has not yet deployed LLM/AI systems to production and has no hands-on orchestration framework experience but is willing to learn.”

API testingClassificationClusteringCross-functional collaborationData cleaningData validation+91
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MY

Manish Yamsani

Screened

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

6y exp
Elevance HealthMLR Institute of Technology

“Built a production multi-agent orchestration platform to automate healthcare claims and HR workflows, combining LangChain/CrewAI/AutoGPT with RAG (FAISS/Pinecone) and fine-tuned open-source LLMs (LLaMA/Mistral/Falcon) in private Azure ML environments to meet HIPAA requirements. Emphasizes rigorous agent evaluation/observability (trajectory eval, adversarial testing, LLM-as-judge, drift monitoring) and reports measurable outcomes including 35% faster claims processing and 40% fewer chatbot errors.”

Agentic AIAnomaly DetectionAPI IntegrationAWSAWS GlueAWS Lambda+116
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VS

Venkatesh Sanaboina

Screened

Senior AI/ML Engineer specializing in Generative AI, LLMs, and MLOps

Tampa, FL9y exp
VerizonJawaharlal Nehru Technological University

“Telecom (Verizon) AI/ML practitioner who built a production multimodal system that ingests messy customer issue reports (calls, chats, emails, screenshots, videos) and turns them into confidence-scored incident summaries with reproducible steps and evidence links. Also built KPI/alarm-to-ticket correlation to rank likely root-cause domains (RAN/Core/Transport), cutting triage from hours to minutes and improving MTTR.”

A/B TestingAgileAmazon RedshiftAmazon S3Amazon SageMakerAnomaly Detection+168
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