Reval Logo
Home Browse Talent Skilled in scikit-learn

Vetted scikit-learn Professionals

Pre-screened and vetted.

scikit-learnPythonDockerSQLTensorFlowAWS
NR

Nagendra Reddy Palugulla

Screened

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

Florida, United States4y exp
Community Dreams FoundationUniversity of Houston

“Built and shipped a production real-time content moderation platform for Zoom/WebEx-style meetings, combining Whisper speech-to-text with fast NLP classifiers and REST APIs to flag hate speech, bias, and HIPAA-related content under strict latency constraints. Demonstrates strong MLOps/infra depth (Airflow, Kubernetes, Terraform/Helm, observability) and a pragmatic approach to reducing false positives via threshold tuning, context validation, and hard-negative data—while partnering closely with compliance and product stakeholders.”

PythonPyTorchTensorFlowApache SparkScikit-learnHTML+119
View profile
KP

Kundhana Paruchuru

Screened

Mid-level Data Scientist specializing in ML, LLM pipelines, and MLOps

Remote, USA3y exp
Heartland Community NetworkIndiana University Bloomington

“Built and deployed a production LLM-driven document understanding pipeline using LangChain/LangGraph, focusing on reliability via step-by-step prompting, validation checks, and monitoring. Also partnered with non-technical marketing stakeholders at Heartland Community Network to deliver an XGBoost targeting model surfaced in Power BI, improving campaign conversion by 12%.”

A/B TestingAmazon BedrockAmazon S3Amazon SageMakerAWSCI/CD+70
View profile
PT

Phani Tarun Munukuntla

Screened

Junior Machine Learning Engineer specializing in LLMs, NLP, and MLOps

New York, USA2y exp
University at BuffaloUniversity at Buffalo

“Developed and productionized VL-Mate, a vision-language, LLM-powered assistant aimed at helping visually impaired users understand their surroundings and query internal knowledge. Emphasizes reliability and safety via confidence thresholds, uncertainty-aware fallbacks, hallucination grounding checks, and rigorous offline + user-in-the-loop evaluation, with experience orchestrating multi-step LLM pipelines (LangChain-style and custom Python async) and deploying on containerized infrastructure.”

PythonPySparkApache AirflowJavaJavaScriptSQL+121
View profile
SK

Satish Kumar Reddy

Screened

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

Remote, NJ5y exp
Tungsten AutomationPace University

“Built and deployed a production LLM/RAG intelligent document understanding platform for healthcare clinical documents (notes, discharge summaries, diagnostic reports), integrating spaCy entity extraction, Pinecone vector search, and a Spring Boot API on AWS with monitoring and guardrails. Demonstrates strong MLOps/orchestration (LangChain, Airflow, Kubeflow/Kubernetes) and a metrics-driven evaluation approach, and partnered with a healthcare operations manager to cut manual review time by 80%.”

PythonRJavaC++SQLPostgreSQL+142
View profile
AS

Arjun Shrestha

Screened

Intern AI/GenAI Engineer specializing in NLP, RAG, and Snowflake Cortex

Columbus, Ohio1y exp
VertivLamar University

“Built and deployed a production AI invention/patent review platform that compares invention submissions against patent rules to provide instant feedback, reportedly cutting legal team review time by ~80%. Learned Snowflake Cortex LLMs and production deployment (Docker + AWS) on the job, and validated system quality through human-in-the-loop testing with experienced legal stakeholders.”

Amazon ECSAWSBERTData preprocessingDockerFastAPI+70
View profile
GA

Gopichand Amaraneni

Screened

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

USA4y exp
CitiusTechNorthwest Missouri State University

“Healthcare-focused ML/LLM engineer who built a production hybrid RAG workflow to automate prior authorization by retrieving from medical guidelines/historical cases (FAISS) and generating grounded rationales for clinicians. Strong in operationalizing ML with Airflow/Kubeflow/MLflow on SageMaker, optimizing latency (ONNX/quantization/async), and reducing hallucinations via evidence-only prompting; also partnered closely with clinical ops to deploy a readmission prediction tool used in daily rounds.”

PythonNumPyPandasJSONSQLPostgreSQL+151
View profile
RV

Rahul Vemuri

Screened

Mid-level Data Engineer specializing in AI/ML, RAG systems, and cloud data pipelines

Malvern, PA4y exp
PQ CorporationPenn State Great Valley School of Graduate Professional Studies

“Built a production lead-generation system using AI agents that researches the internet for relevant leads and integrates RAG-based contact enrichment/shortlisting aligned to existing CRM data, enabling sales reps to focus more on selling. Also has hands-on AWS data orchestration experience (Glue, Step Functions) moving raw data into Redshift and evaluates agent performance with human-in-the-loop plus BLEU/perplexity metrics.”

Amazon BedrockAmazon RedshiftAmazon S3Apache AirflowAnomaly DetectionAWS+137
View profile
WK

Wijdaan Khundmiri

Screened

Mid-level Full-Stack Developer specializing in cloud-native microservices and AI/ML

New York, USA4y exp
Versa NetworksSUNY Old Westbury

“Full-stack/AI engineer who has shipped production systems spanning real-time analytics dashboards and an internal LLM-powered knowledge assistant. Experienced with RAG pipelines (embeddings/vector DB, semantic retrieval, query rewriting) plus evaluation loops and guardrails, and builds observable Kafka-based data pipelines monitored with Prometheus/Grafana.”

AgileAJAXAmazon CloudWatchAmazon EC2Amazon ECSAmazon EKS+186
View profile
AB

Anil Babu Bollina

Screened

Senior Computer Vision Engineer specializing in industrial automation and 2D/3D perception

Nashville, TN8y exp
Universal RoboticsUniversity of Houston-Clear Lake

“Machine-vision engineer who designed an end-to-end inline inspection station for white wood pallets, combining laser line profilers with 2D color line-scan imaging to detect protruding nails (~2mm threshold) at conveyor speeds. Solved real production constraints (lighting reflections, per-trigger depth/color alignment, barcode tracking) and improved system accuracy from ~80% to 99.5% using barcode symbology changes and Keyence reader AI features.”

PythonCC++OpenCVPyTorchTensorFlow+150
View profile
SM

Sahana Mudduluru

Screened

Mid-level Full-Stack Engineer specializing in cloud-native FinTech analytics

McKinney, TX5y exp
Martingale Solution GroupUniversity of Texas at Dallas

“Full-stack/ML-leaning engineer who has shipped production-grade real-time analytics and an internal AI support assistant using RAG over enterprise documentation. Demonstrates strong systems thinking across scalability, reliability, observability, and LLM safety/evaluation (thresholded retrieval, RBAC, response validation, regression-gated evals), with concrete iteration based on performance metrics and user feedback.”

PythonJavaScriptReactNode.jsDjangoMicroservices+117
View profile
CR

chandankumar ramamurthy

Screened

Junior Full-Stack Engineer specializing in LLM-powered products

Washington, D.C.3y exp
Data Science for Sustainable Development (DSSD)George Washington University

“Built multiple systems from scratch at DSSD and Aglint, including an NGO sustainability reporting dashboard and a production LLM-powered phone screening agent using Twilio/Retell AI with RAG grounded in PostgreSQL candidate/job data. Strong focus on real-world reliability: guardrails, monitoring, and lightweight eval/regression loops that reduced recruiter score overrides by ~30%. Currently on OPT through May 2026 (plans STEM OPT extension) and committed to relocating to NYC for in-person work; seeking $90k–$120k base with meaningful equity for founding engineer roles.”

AgileAlgorithmsAWSBERTCI/CDClaude+73
View profile
PJ

Prithvi Jai Ramesh

Screened

Junior Robotics Engineer specializing in AI, perception, and autonomous navigation

Tempe, AZ1y exp
Arizona State UniversityArizona State University

“Robotics software engineer with 2+ years of ROS/ROS2 experience who built a mobile robot stack from scratch (Fusion 360 → URDF → ROS) and integrated teleop, SLAM, and navigation. Worked in an ASU lab applying deep learning for person tracking on a TurtleBot setup, and solved real deployment issues like Raspberry Pi video-stream latency via compression and on-board processing. Also reports experience with CI/CD tooling (Jenkins) and Kubernetes.”

C++Deep LearningDockerFastAPIGazeboGit+93
View profile
MC

Meghana Chowdary Borra

Screened

Junior Machine Learning Engineer specializing in predictive modeling and GenAI RAG systems

Buffalo, New York2y exp
AFAD AgencyUniversity at Buffalo

“LLM engineer who built and deployed an emotionally intelligent AAC communication system using an emotion-aware RAG pipeline (Empathetic Dialogues + GoEmotions) and a PEFT-adapted model. Experienced with LangChain/LangGraph and custom Python orchestration, focusing on reliability (guards, schema validation, fallbacks), latency optimization, and rigorous evaluation (automatic metrics + human-in-the-loop), with a reported 18% user satisfaction improvement.”

A/B TestingCI/CDDeep LearningFeature EngineeringGitHub ActionsLSTM+122
View profile
PA

Priyansh Aggarwal

Screened

Junior Software Engineer specializing in AI/ML and full-stack web development

Panchkula, India2y exp
CloudNationThe NorthCap University

“Built core perception and decision layers for a 3D AI-powered interactive avatar/agent with a robotics-like perception–reasoning–action loop, combining computer vision, NLP, and real-time response. Focused on making multimodal inputs robust (normalization, intent + emotion signal fusion) and improving real-time performance via instrumentation, profiling, and parallelization; also designed distributed, loosely coupled state-based communication and deployed services with Docker.”

PythonJavaC++MySQLGitHubGit+71
View profile
MS

Mohammed Syed

Screened

Mid-level AI Engineer & Researcher specializing in healthcare AI and multimodal LLM systems

Remote2y exp
University of ArizonaUniversity of Arizona

“Backend/ML engineer focused on clinical AI transparency who built ShifaMind, an explainability-enforced clinical ML system using UMLS/MIMIC-IV/PubMed data with RAG, GraphSAGE, and cross-attention. Demonstrated strong production engineering via FastAPI API design and safe migrations (feature flags/shadow inference), plus HIPAA-aligned auth/RLS patterns; also delivered a real-time comet detection system reaching 97.7% accuracy.”

Anomaly detectionAWSBlenderCC++Collaboration+168
View profile
SM

Supriya Miriyala

Screened

Junior Software Engineer specializing in cloud administration and Python/ML

Springfield, IL2y exp
LTIMindtreeUniversity of Illinois Springfield

“Backend/data engineer with hands-on production experience across Azure and AWS: built FastAPI + PostgreSQL services with Azure AD OAuth2/JWT auth and strong reliability patterns (timeouts, retries, correlation IDs). Delivered AWS Lambda/ECS solutions with Terraform/CI-CD and cost controls (SQS buffering, reserved concurrency), and built/operated AWS Glue ETL pipelines into Redshift while modernizing legacy SAS reporting into Python microservices with parity testing.”

A/B TestingAgileAlgorithmsAngularArtificial IntelligenceBootstrap+124
View profile
AP

Aneri Patel

Screened

Junior Machine Learning Engineer specializing in LLM fine-tuning and semantic retrieval

Washington, D.C.2y exp
Enquire AI, Inc.George Washington University

“Backend engineer with legal-tech and AI workflow experience: built JurisAI, an end-to-end legal research system using OCR + embeddings + Pinecone vector search to deliver citation-grounded LLM answers with safe failure modes (~90% recall@K). Also led a GW Law metadata migration into Caspio with batch validation and parallel rollout, and has strong FastAPI/GCP production reliability and observability practices.”

PythonTypeScriptSQLRJavaMachine Learning+133
View profile
TC

Tamanna Choithani

Screened

Intern Full-Stack Software Engineer specializing in web apps and applied AI

Bay Area, USA1y exp
BottlelyArizona State University

“Full-stack engineer who built an AI-based inventory/procurement query system at Botlily/Botlerly using Flask and Google Sheets as a live knowledge base, overcoming Sheets latency with caching and structured in-memory models. Demonstrated strong LLM product engineering (40% accuracy improvement via preprocessing/prompting) and customer-driven iteration with bar/restaurant owners, evolving the tool into a more comprehensive inventory management and forecasting solution.”

PythonCC++JavaGoJavaScript+123
View profile
VY

vivek y

Screened

Junior Software Engineer specializing in full-stack development and machine learning

Tallahassee, FL1y exp
Florida State UniversityFlorida State University

“Built a production Apple-focused LLM Q&A bot that answers user issues using similar past discussion records, including large-scale scraping and cleaning of thousands of forum threads. Used BeautifulSoup + Playwright for static/dynamic extraction, PySpark + NLP for preprocessing, and LangChain RAG with a custom response-likeliness metric to evaluate performance.”

PythonJavaJavaScriptCReactNode.js+51
View profile
AV

Akshay Vanaparthi

Screened

Junior AI Engineer & Full-Stack Developer specializing in AI agents and RAG systems

Hyderabad, India2y exp
MavenwitStevens Institute of Technology

“Full-stack TypeScript/React/Next.js builder who created an end-to-end customer-facing product (AI Job Master) that generates personalized outreach from resumes and job descriptions. Demonstrates strong product + engineering ownership with rapid MVP iteration, instrumentation-driven prioritization, and pragmatic reliability patterns (microservices, queues, correlation IDs, retries) while tackling a key AI challenge: user trust and output consistency.”

AJAXAmazon API GatewayAmazon DynamoDBAmazon EC2Amazon S3API Development+169
View profile
LM

Lakshmi Meghana

Screened

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

Bristol, PA4y exp
DermanutureStevens Institute of Technology

“Built and deployed a transformer-based clinical document classification system that processes unstructured clinical notes in a HIPAA-compliant healthcare setting, served via FastAPI on AWS and integrated into an Airflow/S3 pipeline. Demonstrates strong end-to-end MLOps skills (data quality remediation, low-latency inference optimization, monitoring with MLflow/CloudWatch) and effective collaboration with clinicians to drive adoption.”

PythonC++RSQLBashPyTorch+112
View profile
KV

Krishna vamsi Dhulipalla

Screened

Mid-level Software & ML Engineer specializing in agentic LLM systems and ML infrastructure

Remote4y exp
Cloud Systems LLCVirginia Tech

“Built and deployed an LLM-to-SQL automation system in a closed/internal environment, using a retriever–reranker–validator architecture on Kubernetes with strong security controls (semantic + rule-based validation and RBAC), achieving 99% uptime and cutting manual query time ~40%. Also worked on genomic sequence classification and semantic search workflows, orchestrating data prep with Airflow, tracking/deploying with MLflow, and optimizing distributed multi-GPU training on a university Kubernetes cluster.”

A/B TestingApache KafkaApache SparkAWSBERTBigQuery+119
View profile
LC

Lahari Chamarthi

Screened

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

Fairfax, VA4y exp
ProvenBaseNJIT

“At Provenbase, built and shipped a production LLM-powered semantic search and candidate matching platform (RAG with GPT-4/Gemini, multi-agent orchestration, Elasticsearch vector search) to scale sourcing across 10M+ candidate records and 1000+ data sources. Drove sub-second performance, cut LLM spend 30% with routing/caching, and improved recruiting outcomes (+45% sourcing accuracy; +38% visibility of underrepresented talent) through bias-aware ranking and tight collaboration with recruiting stakeholders.”

A/B TestingAgileBERTBusiness IntelligenceCI/CDCloud Computing+115
View profile
AB

Anita Bhagashetti

Screened

Mid-Level Software Engineer specializing in distributed systems and cloud microservices

3y exp
ZeOmegaBinghamton University

“Built and productionized a RAG-based semantic search system for video-derived data, focusing on measurable success metrics (p95 latency, reliability, cost/request) and strong observability (prompt versions, retrieved docs, tool calls, token usage). Experienced in diagnosing real-time issues in LLM/agentic workflows and in supporting go-to-market efforts through tailored technical demos, rapid POCs, and post-close onboarding.”

GoRedisIdempotencyNode.jsApache KafkaMongoDB+150
View profile
1...142143144...173

Related

Machine Learning EngineersSoftware EngineersData ScientistsResearch AssistantsSoftware DevelopersAI EngineersAI & Machine LearningEngineeringData & AnalyticsEducation

Need someone specific?

AI Search