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Vetted Hugging Face Professionals

Pre-screened and vetted.

Hugging FacePythonDockerSQLAWSPyTorch
BW

Bryan West

Screened

Senior Software Engineer specializing in AI, cloud infrastructure, and full-stack development

Chantilly, VA17y exp
West Consulting LLCHoward University

“ML/NLP engineer who built a production system that converts large-scale unstructured text into a connected, searchable knowledge base using spaCy + Sentence Transformers/FAISS and a Neo4j knowledge graph, with BERTopic and XGBoost for organization/labeling. Strong focus on production-grade Python workflows (FastAPI/Celery, Pydantic validation, Docker, AWS ECS/Lambda) and robust entity resolution with measurable precision/recall and human review for low-confidence matches.”

AgileAmazon DynamoDBAmazon EC2Amazon ECSAmazon RDSAmazon S3+144
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JB

Jaideep bommidi

Screened

Senior ML Engineer & Data Scientist specializing in LLM agents, retrieval/ranking, and MLOps

Denton, TX8y exp
Webster BankUniversity of North Texas

“Machine Learning Engineer currently at Webster Bank building an enterprise-scale LLM agent for Temenos Journey Manager/Maestro, using RAG-style multi-stage retrieval with FAISS/Pinecone, hybrid dense+sparse search, and LoRA fine-tuning optimized via NDCG/MAP and A/B testing. Previously handled messy incident/telemetry data at Deuta Werke GmbH with deterministic + fuzzy entity resolution, and has strong production data engineering experience across Spark/Hadoop and Python ETL systems.”

A/B TestingAgileAmazon EC2Amazon EKSAmazon ECSAmazon Kinesis+181
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RG

Rohan Gore

Screened

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

New York City, NY0y exp
MARV CapitalNYU

“Built and scaled a multi-agent LLM automation pipeline during a fintech internship, growing from a rapid 1-week proof-of-concept to a 15+ agent hierarchical system that cut market brief report generation time from ~5 hours to under 30 minutes. Hands-on with agent frameworks (Haystack, CrewAI, LangChain) and experienced in debugging agent communication issues via sandboxed modular testing and context/token management; also regularly gives architecture-first technical demos at multiple hackathons and university events.”

Apache CassandraApache HadoopApache KafkaAWSAWS LambdaC#+93
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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.”

PythonPySparkScalaJavaRSQL+173
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SS

Samarth Saxena

Screened

Mid-level AI Engineer specializing in LLMs, RAG, and content automation

Los Angeles, CA3y exp
Cloud9USC

“AI/LLM engineer who built a production autonomous GenAI content ecosystem that generates short-form scripts, extracts viral highlights from long-form video, and dubs content into 33+ languages. Focused on making LLM outputs production-safe via schema enforcement, token-to-time alignment, critic-agent verification, and scalable async orchestration—cutting manual workflows by ~90% and saving $200k+ annually.”

PythonSQLScalaTypeScriptBashJava+162
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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.”

AWSAWS LambdaCI/CDContainerizationData PreprocessingDeep Learning+91
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RB

Rushir Bhavsar

Screened

Intern AI/ML Engineer specializing in LLMs, MLOps, and distributed training

1y exp
Cadence Design SystemsArizona State University

“Founding AI engineer (June 2024) at Talon Labs who built and productionized an LLM-powered chatbot for interacting with proprietary supply-chain documents, deployed at large scale (25–100,000 users). Experienced with RAG/LLM orchestration (LangChain, LlamaIndex, Groq AI) and production ops tooling (Kubernetes, Docker, Kubeflow, Airflow), with a metrics-driven approach to evaluation, observability, and stakeholder alignment.”

AngularApache SparkAWSAWS CloudFormationAWS LambdaBitbucket+121
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TL

Tuukka Luolamo

Screened

Executive Technology Leader (CTO) specializing in AI, cloud, and distributed platforms

Remote14y exp
StagePilotLoyola Marymount University

“Engineering leader who stays hands-on in high-leverage technical areas (architecture, scalability, reliability) while operating at an executive level. Led StagePilot’s shift from a tightly coupled legacy system to a cloud-native, event-driven real-time platform proven at 1M+ concurrent users, and previously scaled multiple SRE teams at McGraw-Hill with SLOs, on-call, and blameless ops practices.”

Machine LearningGenerative AILarge Language Models (LLMs)Sentiment AnalysisCloud ComputingDevOps+95
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YV

Yashvi Vaghela

Screened

Entry-Level Frontend Software Developer specializing in React and ML-enabled web apps

Los Angeles, CA1y exp
Easley-Dunn ProductionsUSC

“Backend-focused Python/Flask engineer who owned REST APIs for a video analysis system, including preprocessing, ML inference integration, and post-processing into time-aligned predictions consumable by a React UI. Demonstrated practical performance/scalability work by decoupling API request handling from CPU-heavy processing and adding timing instrumentation to identify and optimize bottlenecks.”

PythonC++JavaSQLMySQLMongoDB+72
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MS

Mukundan Sridharan

Screened

Executive Technology Leader (CTO) specializing in IoT sensing, AI/ML, and RF/embedded systems

Rockville, MD22y exp
Databuoy CorporationOhio State University

“Currently a startup CTO who thrives on building new technology stacks and rapidly turning technical ideas into products. Interested in partnering with a CEO/business team to commercialize embedded/edge concepts such as multi-sensor drone localization (video/audio/RF with SDR), low-cost solar+battery power nodes networked via LoRa, and an Amazon Sidewalk/LoRa connectivity device with cloud management.”

Product managementMachine learningComputer visionOpenCVLSTMHugging Face+231
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VH

Varsha Hemakumar

Screened

Mid-level ML/AI Engineer specializing in NLP, RAG pipelines, and financial risk & fraud systems

USA3y exp
FintaUniversity at Buffalo

“Built and shipped LLM/RAG systems in finance and startup settings, including a Goldman Sachs document intelligence platform that indexed ~8TB of regulatory filings and delivered cited, conversational answers with <2s latency—cutting compliance research by ~4.5 hours per batch. Also developed LangChain-based agent workflows at Finta to automate CRM enrichment and investor lookup with strong testing, tracing (LangSmith), privacy guardrails, and auditability.”

PythonRSQLMongoDBPandasNumPy+95
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AM

Arya Mane

Screened

Junior Full-Stack & AI/ML Engineer specializing in LLMs and multimodal document processing

Dallas, Texas1y exp
Receptro.AIUniversity of Texas at Dallas

“Built a production RAG-based NBA player scouting assistant that embeds player profiles into FAISS, orchestrates retrieval and LLM recommendations with LangChain, and surfaces results via embedded Tableau dashboards. Demonstrates strong focus on evaluation/monitoring (batch tests, LLM-as-judge, latency/failure/token metrics) and has experience translating non-technical founder goals into DAPT + fine-tuning plans on curated data.”

PythonSQLPyTorchTensorFlowscikit-learnHugging Face+83
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TR

Tejaswi Rao

Screened

Mid-level Machine Learning Engineer specializing in MLOps and GenAI analytics

Jersey City, New Jersey7y exp
MediacomStevens Institute of Technology

“ML/LLM practitioner who has deployed a production RAG-based trouble-call identifier using multiple datasets (device, network, past complaints). Experienced in end-to-end MLOps (FastAPI + Docker + Kubernetes with HPA) and in evaluating/monitoring LLM behavior to reduce hallucinations, with additional applied work in forecasting/anomaly detection and churn prediction for retention campaigns.”

Apache AirflowBigQueryC++CI/CDClassificationDeep Learning+54
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DA

David Abbondanzio

Screened

Executive AI Platform & Product Leader specializing in commercialization and multimodal AI

29y exp
InferLinkUniversity of Texas at Dallas

“Entrepreneur building an applied-AI tool for geological resource exploration (critical minerals, oil & gas) that overlays proprietary and public data from reports/logs/maps to generate evidence-based greenfield profiling insights. Has spent ~2 years on industry research, built a POC, validated demand with purchasing signals, and developed partnerships/network including USGS, DARPA, and ESRI.”

Machine LearningNeural NetworksDeep LearningLarge Language Models (LLMs)Retrieval-Augmented Generation (RAG)Computer Vision+153
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HV

Harini Vinu

Screened

Intern Software Engineer specializing in cloud, big data, and test automation

New York, United States1y exp
QualitestNYU

“Internship experience at Qualitest building and deploying an LLM-powered test automation system that reduced manual test creation and improved efficiency (~40%). Demonstrates strong production engineering for LLM systems (timeouts/retries/monitoring/caching, prompt optimization, batching) and has scaled workflows to 100+ concurrent jobs; also has orchestration experience with AWS Step Functions and Kubernetes.”

Amazon CloudWatchAmazon DynamoDBAmazon KinesisAmazon S3Amazon SQSAmazon API Gateway+149
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SV

Sreelekha Vuppala

Screened

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.”

A/B TestingAgileAmazon KinesisApache AirflowApache HadoopApache Kafka+246
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FX

Fangjian Xiong

Screened

Junior Machine Learning Engineer specializing in NLP and biomedical entity extraction

Boston, MA2y exp
Northeastern UniversityNortheastern University

“Built and deployed a production LLM-powered biomedical knowledge extraction pipeline that processed millions of papers to identify tools/techniques and produce a unified knowledge graph via active learning NER (Prodigy + spaCy transformers) and entity linking (Bio-tools/Wikidata). Addressed hard NLP engineering challenges like WordPiece span-offset alignment and scaled inference over ~1.5M documents using batching/caching, containerized services, async workers, and orchestration with Prefect/Airflow.”

AWSBigQueryC#C++Data PreprocessingData Cleaning+94
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SR

SriPreethamSai Ravula

Screened

Mid-level Software & Robotics Engineer specializing in AGVs, perception, and motion planning

Holland, MI3y exp
DematicTrine University

“Robotics software engineer with real customer deployment impact at Dematic, improving AGV front-guided steering, localization sensor fusion, and control-loop performance while integrating with Beckhoff PLC safety systems. Also built a multi-robot ROS milling cell in graduate work, combining URDF/Gazebo simulation, MoveIt/OMPL planning, ROS performance profiling, and CNN-based defect detection to drive coordinated robotic milling.”

AlgorithmsBashC#C++CI/CDData Structures+119
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SS

Sowmya Sree

Screened

Mid-level Machine Learning Engineer specializing in LLM agents, RAG, and MLOps

Dallas, TX5y exp
Bank of AmericaUniversity of North Texas

“Built production LLM systems including a real-time customer feedback analysis and workflow automation platform using RAG and multi-agent orchestration with confidence-based human escalation, addressing privacy and legacy integration challenges. Also automated ML operations with Airflow/Kubernetes (e.g., daily churn model retraining) cutting retraining time to under 30 minutes, and demonstrates a rigorous testing/monitoring approach plus strong non-technical stakeholder collaboration.”

PythonJavaSpring BootJavaScriptRBash+148
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HK

Hanish Kukkala

Screened

Mid-level Data Scientist specializing in Generative AI and NLP

USA6y exp
CVS HealthUniversity of Central Missouri

“ML/GenAI engineer with recent CVS Health experience building a production RAG system over unstructured financial/research documents using LangChain, FAISS, and Pinecone, plus LoRA/PEFT fine-tuning of GPT/LLaMA for domain-aware summarization. Demonstrates strong applied MLOps and data engineering skills (Airflow/Prefect, Docker/Kubernetes, CI/CD, MLflow) and measurable impact (sub-second retrieval, ~40% better context retrieval, ~25% entity matching improvement).”

A/B TestingApache HadoopApache HiveApache KafkaApache SparkAWS+170
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NK

Nishad Kane

Screened

Mid-level Data Scientist & AI Engineer specializing in RAG, agentic AI, and production ML

5y exp
Xtrium AIArizona State University

“AI/data engineer who built a production LLM-powered schema drift detection system (LangChain/LangGraph) to catch semantic data changes before they break downstream analytics/ML. Deployed on AWS with Docker/S3 and implemented an LLM-as-a-judge evaluation framework to improve trust, reduce hallucinations, and control false positives/alert fatigue. Collaborated with non-technical risk/business analytics stakeholders at EY by delivering human-readable drift explanations that improved confidence in financial analytics dashboards.”

A/B TestingAmazon EC2Amazon EKSAmazon RedshiftAmazon S3Amazon SageMaker+104
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HX

Hongye Xiong

Screened

Intern Software Engineer specializing in backend, cloud data platforms, and microservices

Renton, WA0y exp
PACCARSeattle University

“Full-stack engineer who shipped a group scheduling SaaS feature with live availability updates using Next.js App Router + TypeScript, owning production reliability after launch (auth debugging, monitoring, polling/backoff tuning). Has hands-on experience with Postgres schema/index design and query optimization (EXPLAIN ANALYZE) and building durable orchestrated backend workflows with retries and idempotency.”

API GatewayAngularAWSAWS LambdaAutomated TestingCI/CD+82
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RG

Revanth Goli

Screened

Senior Data & Backend Engineer specializing in cloud data pipelines and LLM/RAG systems

Morrisville, NC6y exp
Syneos HealthUniversity of Alabama at Birmingham

“Data engineer with end-to-end ownership of large-scale retail and clinical data ingestion/processing on AWS, including real-time streaming and batch pipelines. Delivered measurable outcomes: 20M daily transactions processed, latency cut from 4 hours to 5 minutes, ~70% fewer failures, and 120+ pipelines running at 99.8% reliability with full audit compliance.”

PythonPandasPySparkFastAPILangChainSQL+97
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PP

Prateek Pravanjan

Screened

Junior Machine Learning Engineer specializing in LLM evaluation and GenAI pipelines

Remote1y exp
MercorStevens Institute of Technology

“LLM/agent engineer who built a production LangGraph multi-agent orchestrator connecting GitHub and APM/observability signals with a chain-of-verification loop for root-cause analysis. Emphasizes pragmatic architecture (start simple with state summaries), performance tuning (async LLM calls, Docker), and rigorous evaluation (LLM-as-judge, adversarial testing, hallucination/instruction adherence metrics, tool-call tracing) while iterating with non-technical stakeholders via A/B testing.”

PyTorchTransformersNumPyScikit-learnModel evaluationPandas+135
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