Vetted Workflow Orchestration Professionals

Pre-screened and vetted.

SR

Senior Cloud/DevOps Engineer specializing in Azure, Kubernetes, and Infrastructure as Code

Virginia, US5y exp
Electrify AmericaGeorge Mason University

Azure cloud platform engineer with strong enterprise Linux operations background who designs multi-region HA/DR on Azure (and AWS) using Azure Site Recovery, Traffic Manager, AKS autoscaling, and geo-replicated Azure SQL. Built secure Azure DevOps CI/CD pipelines for .NET/Python microservices to AKS/VMs and provisions full environments via Terraform modules with remote state, drift checks, and staged rollouts; has not directly owned IBM Power/AIX at scale.

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

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

6y exp
CitibankUniversity of Texas at Arlington

Built a production real-time fraud detection and customer-support automation platform at Citibank, tackling extreme class imbalance (reported ~1:5000) and strict latency constraints. Combines hands-on MLOps (Airflow, Kubernetes, MLflow; Snowflake/Spark/S3 integrations; CI/CD model promotion) with cross-functional delivery to Risk & Compliance focused on interpretability and reducing false positives.

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Prithviraju Venkataraman - Mid-level AI/ML Engineer specializing in MLOps, NLP, and Computer Vision in Long Beach, CA

Mid-level AI/ML Engineer specializing in MLOps, NLP, and Computer Vision

Long Beach, CA5y exp
Dell TechnologiesCal State Long Beach

Built and deployed a production LLM-powered text extraction/classification system that converts messy unstructured reports into searchable insights, running on AWS SageMaker with automated retraining and monitoring. Strong in orchestration (Step Functions/Kubernetes/Airflow patterns) and reliability practices (gold datasets, prompt/tool unit tests, shadow/canary/A-B testing, guardrails/rollback), and has experience translating non-technical stakeholder needs into an NLP workflow plus dashboard.

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Hsi-Chun Wang - Mid-level Data Scientist specializing in LLM development and scalable ML pipelines in Remote

Hsi-Chun Wang

Screened

Mid-level Data Scientist specializing in LLM development and scalable ML pipelines

Remote4y exp
GearFactory.aiUniversity of Maryland, College Park

Built and deployed production LLM pipelines for evidence-based scoring in two domains: biomedical literature mining (scoring ~2700 drug compounds vs gene targets/mechanisms) and long-horizon news analytics (35 years of Chinese articles). Emphasizes reliability at scale (retries/checkpointing/validation), rigorous empirical model benchmarking (GPT-4o/mini/5), and translating results into stakeholder-friendly visual narratives.

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AD

Ananya Dandi

Screened

Junior Machine Learning Researcher specializing in knowledge distillation

College Park, MD1y exp
University of Maryland Department of Computer ScienceUniversity of Maryland, College Park

Built and shipped LLM-powered agents including a production RAG research assistant that cut research lookup time from ~20 minutes to ~10–20 seconds using caching, retrieval thresholds, and citation-enforced grounded answers. Also designed multi-step, tool-calling workflows with stateful critique/revision loops and pragmatic monitoring (retry/schema-failure/low-confidence signals) plus normalization/validation layers for messy notes/spreadsheet-style data.

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RM

Rahul Manne

Screened

Mid-level Software Engineer specializing in .NET, Azure, and enterprise platforms

New Brunswick, NJ4y exp
Johnson & JohnsonClark University

JavaScript/React/TypeScript engineer with hands-on open-source experience improving a hooks utility library—fixed a reported async race condition that reduced unexpected re-renders and added a debounced callback hook that became widely used. Brings a production-minded approach to performance and abstractions (APM/metrics-driven, DB/caching focus) with strong testing, documentation, and community support practices.

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KR

Mid-level AI/ML Engineer specializing in LLMs, NLP, and MLOps

Texas, USA4y exp
McKessonUniversity of Texas at Arlington

AI/ML engineer with healthcare domain depth who led a HIPAA-compliant, production LLM system at McKesson to automate clinical document understanding—extracting entities, summarizing provider notes, and supporting authorization decisions. Hands-on across Spark/Python ETL, Hugging Face + LoRA/QLoRA fine-tuning, RAG, and cloud-native MLOps (Airflow/Kubernetes/Step Functions, MLflow, blue-green on EKS/GKE), with explicit work on PHI handling and hallucination reduction.

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RK

Ram Kottala

Screened

Mid-level Data & GenAI Engineer specializing in lakehouse, streaming, and RAG platforms

Michigan, USA5y exp
FordWebster University

Built a production internal LLM-powered knowledge assistant using a RAG architecture (Python, LLM APIs, cloud services) that answers employee questions with sourced, grounded responses from internal documents. Demonstrates strong practical depth in retrieval tuning (chunking/metadata filters), orchestration with LangChain, and production reliability practices (latency optimization, automated embedding refresh, evaluation metrics, logging/monitoring) while partnering closely with non-technical operations teams.

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NY

Naga Yanala

Screened

Mid-level Data Engineer specializing in cloud data pipelines and analytics platforms

Texas, USA5y exp
Molina HealthcareSoutheast Missouri State University

Data engineer with healthcare and enterprise experience (Molina Healthcare, Dell Technologies) building and operating high-volume batch + streaming pipelines across AWS and Azure. Strong focus on data quality (schema validation, fail-fast checks), reliability (monitoring/alerts, retries), and performance tuning (Spark/partitioning), with measurable runtime reduction and improved downstream trust.

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Esha Gangam - Mid-level AI/ML Engineer specializing in LLMs, RAG, and MLOps in USA

Esha Gangam

Screened

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

USA4y exp
DeloitteUniversity at Albany

GenAI/ML engineer from Deloitte who built and shipped a production RAG-based internal search assistant for support teams, delivering quantified operational gains (20% effort reduction, 35% faster manual lookup). Experienced in enterprise-grade LLM reliability (grounding/hallucination control), compliance/security constraints, and rapid release cycles using CI/CD, MLflow, and orchestration tools (Airflow, Databricks Jobs, LangChain).

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SS

Intern AI/ML Engineer specializing in full-stack and data systems

Boston, MA1y exp
ChewyUniversity of Massachusetts Amherst

Built an LLM-powered customer segmentation agent during a Chewy internship, consolidating Snowflake data into a knowledge graph so non-technical marketing users could query customer cohorts in natural language. Stands out for combining agent/tooling design with rigorous data engineering practices, including schema audits, imputation, validation layers, and idempotent pipelines on messy large-scale datasets.

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RT

Rekha Talla

Screened

Mid-level Full-Stack Software Engineer specializing in AI and document automation

Los Angeles, CA5y exp
IBMUniversity of North Carolina at Charlotte

Backend/AI infrastructure engineer focused on production-ready LLM systems and distributed workflows. They described building a RAG-based multi-step agent with strong reliability controls, evaluation loops, and graceful degradation that improved latency by 30%, retrieval accuracy by 15%, and reduced support workload by 40%.

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Naveena Musku - Mid-level AI/ML Engineer specializing in agentic AI and LLM systems

Naveena Musku

Screened

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

5y exp
Western UnionJawaharlal Nehru Technological University

Backend engineer focused on productionizing LLM systems: built a FastAPI-based RAG and multi-agent automation platform deployed with Docker/Kubernetes, prioritizing safe execution and reduced hallucinations. Experienced in refactoring monolithic ML services with feature-flagged incremental rollouts, and implementing JWT/RBAC plus row-level security (e.g., Supabase) for secure, scalable APIs.

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SG

Sai Garipally

Screened

Mid-level AI/ML Engineer specializing in GenAI, LLMs, and computer vision

USA5y exp
UiPathSacred Heart University

Built and productionized a multi-agent, LLM-powered document understanding system to replace manual review of long documents, using LangGraph orchestration plus RAG to reduce hallucinations. Implemented layered reliability controls (structured templates, checker agent, and human-in-the-loop feedback) and reported ~40% speed improvement after orchestration; also has hands-on Airflow experience for scheduled data pipelines.

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Ramtin Kazemi - Junior Full-Stack Software Engineer specializing in Django, AWS, and AI/ML in San Diego, California

Ramtin Kazemi

Screened

Junior Full-Stack Software Engineer specializing in Django, AWS, and AI/ML

San Diego, California1y exp
FOMOUniversity of San Diego

Full-stack engineer who built and owned an AI-powered personal statement editor in Next.js (App Router + TypeScript), including dynamic routing, server-side data fetching, and typed API route handlers. Post-launch, they handled production monitoring/debugging and shipped reliability/performance upgrades (rate limiting, retries, rollback, DB indexing), and report a 40% latency reduction using Suspense/streaming and React concurrency patterns. Also implemented a durable Temporal-orchestrated AI document workflow with robust retry/idempotency strategies.

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Abdul Mohammed - Mid-level Data Analyst specializing in healthcare and financial analytics in USA

Mid-level Data Analyst specializing in healthcare and financial analytics

USA3y exp
Cardinal HealthIndiana Tech

Built and productionized an LLM-powered clinical documentation and insights pipeline at Cardinal Health using LangChain + GPT-4 with RAG to summarize long clinical notes, extract medication/dosage entities, and generate structured SQL-ready outputs for downstream analytics. Emphasizes clinical reliability via labeled benchmarking (precision/recall/F1), shadow deployments, clinician human-in-the-loop review, and ongoing monitoring/orchestration with Airflow, Lambda, S3, Postgres, and Power BI.

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NR

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

5y exp
Wells FargoSouthern Methodist University

Built and deployed a production RAG-based internal knowledge assistant that let analysts query company documents in natural language, using LangChain/LangGraph with Pinecone and a FastAPI service for integration. Emphasizes reliability in production through hallucination mitigation (retrieval tuning + prompt guardrails) and measurable evaluation/monitoring (accuracy, latency, task completion, hallucination rate), iterating based on user feedback.

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Rohit Vibhu Channananjundarya - Mid-level Software Engineer specializing in distributed systems and full-stack platforms in Chicago, IL

Mid-level Software Engineer specializing in distributed systems and full-stack platforms

Chicago, IL6y exp
ExpediaUniversity of Illinois Chicago

Engineer who treats AI as a force multiplier rather than a replacement for judgment, with hands-on experience using tools like Claude Code, Cursor, Copilot, and Codex across planning, coding, testing, and review. Particularly notable for building a multi-agent PR review system that automated summarization, risk scanning, schema validation, and test suggestions, helping the team shift reviewer time toward architecture and business logic.

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KP

Mid-level Data Analytics & ML Engineer specializing in NLP, LLMs, and cloud data platforms

Dallas, TX5y exp
MattelKennesaw State University

At KPMG, built and productionized a secure RAG-based LLM assistant that lets business and risk stakeholders query data warehouses in natural language, reducing dependence on data engineers for ad-hoc analysis. Demonstrates strong production rigor (Airflow orchestration, CI/CD, containerization), retrieval/embedding tuning (rechunking, semantic abstraction for structured data), and reliability controls (confidence thresholds, refusal behavior, monitoring and canary evals).

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SK

Mid-level Data Scientist / ML Engineer specializing in streaming ML systems for healthcare and IoT

Urbandale, IA4y exp
John DeereAuburn University at Montgomery

ML/GenAI engineer with production experience building an LLM-powered governance layer that summarizes verified drift/performance signals into validation reports and release notes, designed for regulated environments with de-identification and non-blocking fallbacks. Strong Airflow-based orchestration background across healthcare and finance, integrating Databricks/Spark and MLflow for scalable retraining/monitoring. Demonstrated ability to partner with non-technical healthcare operations teams to deliver actionable risk-scoring outputs via dashboards and automated reporting.

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RM

Senior Site Reliability Engineer specializing in multi-cloud Kubernetes and DevSecOps

Tallahassee, FL10y exp
Gainwell TechnologiesUniversity of the Cumberlands

Cloud/Kubernetes-focused production engineer with experience running 99.95% uptime platforms across AWS/Azure/GCP. Strong in incident response and performance troubleshooting (including a 30% MTTR reduction), and in building secure CI/CD and Terraform-based IaC for AKS/GKE microservices with robust change controls and rollback practices. Notably does not have direct IBM Power/AIX/VIOS/HMC or PowerHA/HACMP ownership.

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Rishitha reddy katamareddy - Mid-level Generative AI & Machine Learning Engineer specializing in agentic LLM systems in USA

Mid-level Generative AI & Machine Learning Engineer specializing in agentic LLM systems

USA4y exp
OptumUniversity at Buffalo

Built and deployed a production agentic LLM knowledge assistant that answers complex questions over internal documents, APIs, and databases using a RAG architecture (FAISS/Pinecone) and LangChain/LangGraph orchestration. Emphasizes production-grade reliability and hallucination control through grounding, confidence thresholds, validation, retries/fallbacks, and full observability (logging/metrics/traces) with continuous evaluation and feedback loops.

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Melanie Gittiban - Executive Healthcare Operations Leader specializing in AI-enabled value-based care in Dallas–Fort Worth, TX

Executive Healthcare Operations Leader specializing in AI-enabled value-based care

Dallas–Fort Worth, TX19y exp
Cascala HealthUniversity of Texas at Arlington

Operations leader with deep healthcare delivery experience who joined a struggling VC-backed company and helped architect a full strategic pivot away from a fragmented home care LTSS agency model into a scalable chronic care telehealth/value-based care platform. Designed the end-to-end virtual care operating model (clinical team structure, triage/escalation workflows, EHR/RCM/call center ops) and rebuilt performance management around leading indicators to help leadership steer scaling decisions.

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Sreelekha Vuppala - Mid-level Data Scientist specializing in Generative AI, MLOps, and cloud data platforms in USA

Mid-level Data Scientist specializing in Generative AI, MLOps, and cloud data platforms

USA4y exp
CitiusTechArizona State University

GenAI/ML engineer (CitiusTech) who has deployed production RAG systems for compliance/operations document Q&A, using Pinecone + FastAPI microservices on Kubernetes with strong monitoring and guardrails. Also built a GenAI-powered incident triage/routing solution in collaboration with non-technical stakeholders, achieving 35% faster response times and 40% fewer misclassified tickets, and has hands-on orchestration experience with Airflow and AutoSys.

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