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Vetted Grafana Professionals

Pre-screened and vetted.

GrafanaDockerPythonKubernetesCI/CDAWS
MG

Mark Garrasi

Senior Full-Stack Engineer specializing in backend systems and cloud-native microservices

Pace, FL11y exp
micro1Florida Institute of Technology
PythonDjangoFlaskFastAPINode.jsExpress+100
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LG

LAVANYA GALI

Mid-level Full-Stack Engineer specializing in Python microservices and cloud automation

San Jose, CA6y exp
MicrosoftSaint Louis University
PythonJavaScriptTypeScriptSQLBashFastAPI+114
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RC

Rohan Chickalkar

Senior Data/GenAI Engineer specializing in cloud-native ML, RAG, and real-time data platforms

Richardson, TX8y exp
ToyotaTexas A&M University
PythonScalaJavaRSQLShell Scripting+178
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MT

MANIKONDA THARUN

Mid-level Full-Stack Developer specializing in React, Node.js, and Spring Boot

CA, USA4y exp
McKinsey & CompanyUniversity of Alabama at Birmingham
ReactReduxTailwind CSSBootstrapMaterial UISpring Boot+57
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SS

Shailendra Sunkewar

Mid-Level Full-Stack Python Engineer specializing in AI-powered web apps and cloud-native systems

San Francisco, CA6y exp
StripeSaint Louis University
PythonFastAPIDjangoFlaskJavaScriptTypeScript+89
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DS

Dhruv Susheelkar

Junior AI/ML Engineer specializing in agentic AI and cloud optimization

Cupertino, CA1y exp
AdvantisUC San Diego
PythonGoJavaC++CSQL+71
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SV

Suhuruth Veeramalla

Mid-level AI/ML Engineer specializing in recommendation, retrieval, and MLOps

San Francisco, CA5y exp
MetaConcordia University
PythonPyTorchTensorFlowScikit-learnNumPyPandas+127
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WW

Wayne Wu

Entry-Level Software Engineer specializing in backend systems and cloud messaging

Mountain View, CA1y exp
NewsBreakRice University
PythonJavaJavaScriptTypeScriptSQLGo+63
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PD

Pavan Devulapalle

Screened ReferencesModerate rec.

Mid-level Software Engineer specializing in cloud platforms and AI-integrated full-stack development

Seattle, WA3y exp
AmazonUniversity of Texas at Dallas

“Backend engineer who built Flask-based internal APIs supporting GenAI-driven provisioning/diagnostics (Outpost/AWS Outposts-like environment), with deep hands-on optimization across Postgres/SQLAlchemy (2s to <200ms endpoint improvement). Experienced integrating ML/LLM workflows via AWS SageMaker and Bedrock, and designing multi-tenant isolation plus high-throughput Redis-backed background task pipelines (minutes to seconds).”

PythonJavaKotlinC#SQLTypeScript+150
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GM

Gagan Mundada

Screened

Intern Machine Learning Engineer specializing in multimodal AI and evaluation benchmarks

San Diego, CA2y exp
McAuley Lab, UC San DiegoUC San Diego

“ML-focused candidate with beginner ROS/ROS2 experience (custom pub-sub nodes; TurtleBot3 SLAM simulation debugging via topic inspection and transform/orientation checks). Has research/project exposure to LLM training approaches (GRPO with pseudo-labels using Hugging Face TRL on Qwen/Llama) and uses Docker/Kubernetes + CI/CD to run ViT saliency-attention/compression workloads on UCSD Nautilus infrastructure.”

PythonC++SQLMATLABGoTypeScript+94
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SN

Sharath Nyalakonda

Screened

Mid-level AI/ML Engineer specializing in NLP, graph models, and MLOps for FinTech and Healthcare

Remote, USA5y exp
StripeKent State University

“AI/ML engineer who has deployed production LLM/transformer-based systems for merchant intelligence and fraud/support optimization, delivering +27% merchant engagement and +18% payment success. Deep experience in privacy-preserving, PCI DSS-compliant data/ML pipelines (Airflow, AWS Glue, Spark, Delta Lake) and scalable microservices on Kubernetes, plus proven cross-functional delivery in healthcare claims analytics at UnitedHealth Group (12% HEDIS claim reduction).”

PythonpandasspaCyRSQLPySpark+185
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NM

Nehal Mahankali

Screened

Mid-level Full-Stack Python Developer specializing in cloud-native banking applications

6y exp
TruistPace University

“Backend engineer who built a low-latency real-time transaction API in Python/Flask, with strong depth in PostgreSQL/SQLAlchemy performance tuning (time-based partitioning, indexing, connection pooling). Has production experience integrating ML scoring and OpenAI-style APIs with safety/latency controls, and designing multi-tenant isolation strategies including per-tenant pooling/caching and premium-tenant isolation.”

PythonFlaskDjangoFastAPIJavaScriptTypeScript+104
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PP

Poorna Pedapudi

Screened

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

Seattle, WA5y exp
UberGeorge Mason University

“Software engineer focused on data platforms and applied LLM systems: built an internal data quality monitoring layer to catch silent data drift and iterated post-launch after finding ~30% false-positive alerts, reducing noise via dynamic baselines and improved structured logging. Also shipped a production RAG-based internal knowledge assistant over Jira/Confluence with citations, confidence-based fallbacks, and nightly automated evals to prevent regressions.”

GoPythonJavaJavaScriptTypeScriptC+++115
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PC

Prateek C

Screened

Mid-Level Full-Stack Software Engineer specializing in Java/Spring, React, and AWS

San Francisco, CA6y exp
ShopifyClemson University

“Backend/full-stack engineer (5+ years) with Shopify experience integrating LLM/RAG workflows into production APIs. Owned a Python TensorFlow Serving inference pipeline connected to Java microservices via gRPC, optimizing tail latency at ~10k concurrent load and improving retrieval relevance with embedding and evaluation work. Strong Kubernetes/EKS + GitOps/CI/CD background, including monolith-to-microservices migrations and event-driven streaming patterns.”

JavaJavaScriptTypeScriptPythonSQLSpring Boot+188
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DS

Darsh Sharma

Screened

Mid-level Software Engineer specializing in ML systems and microservices

Madison, WI2y exp
TeradataUniversity of Wisconsin–Madison

“Teradata Text Security intern who built a production LLM-powered planner agent that decomposes complex tasks into dependency-aware subtasks (DAG/topological graph) and executes them via a custom orchestrator with parallelism, status tracking, and error handling. Also contributed to an HR-facing internal document chatbot concept to streamline onboarding, showing cross-functional collaboration.”

CC++CUDAPythonJavaSQL+101
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SG

Sarthak Gupta

Screened

Mid-level AI/ML Engineer specializing in LLMs, NLP, and real-time AI systems

New York, NY4y exp
New York UniversityNYU

“Backend engineer who built a real-time pipeline for recording, transcribing, and analyzing audio from 400+ news radio stations, scaling Whisper on an HPC cluster with 7 H100 GPUs. Has strong performance optimization experience (30% latency reduction via SQL/query design; 50% DB call reduction via Redis caching) and has implemented region-based data isolation and PII protections in a regulated environment (JP Morgan Chase).”

PythonPandasNumPySciPyJavaC+113
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JG

Jayanth Godi

Screened

Mid-level Site Reliability Engineer specializing in cloud infrastructure, Kubernetes, and LLM applications

San Jose, CA6y exp
AmazonSan Jose State University

“SRE-focused engineer with experience at Sony Interactive Entertainment productionizing high-throughput LLM/agentic systems on Kubernetes, including GPU-aware autoscaling and warm-pool strategies to manage latency and cost under traffic spikes. Demonstrates strong incident response using Prometheus/Grafana + Jaeger tracing (e.g., resolving recursive agent loops and restoring 99.9% availability within minutes) and partners closely with sales/customer teams through PoV demos and developer workshops.”

AWSMicrosoft AzureDockerKubernetesLinuxPrometheus+86
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JY

Jiacheng Yin

Screened

Intern Software Engineer specializing in data engineering and AI agent systems

Beijing, China1y exp
JD.comCornell University

“AI engineer at Anote.ai who built and shipped a production multi-agent LangGraph/LangChain/Ray RAG platform for enterprise search and workflow automation, supporting 3 commercial products and 100+ developers. Drove measurable gains (30% accuracy improvement, lower latency) and improved reliability with Redis-based state checkpointing, message-queue synchronization, and Milvus retrieval optimizations, while partnering with PMs/clients to add transparency features like confidence scores and real-time logs.”

.NETAgileAmazon CloudFrontAngularAnomaly detectionAPI Gateway+158
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CA

Charles Amoyaw

Screened

Senior DevOps Engineer specializing in cloud infrastructure and CI/CD automation

Columbus, OH8y exp
Oracle CernerYoungstown State University

“Infrastructure/operations engineer with hands-on IBM Power/AIX administration (LPAR/DLPAR, HMC, RMC) and PowerHA cluster failover experience, plus modern DevOps tooling across CI/CD, Kubernetes/Helm, and IaC (Terraform/CloudFormation/Ansible). Emphasizes controlled change management, drift prevention via Git-as-source-of-truth, and observability practices using Prometheus/Grafana.”

AgileAmazon DynamoDBAmazon EC2Amazon EKSAmazon ECSAmazon RDS+153
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MS

Manjory saran

Screened

Senior Backend & Infrastructure Engineer specializing in cloud-native distributed systems

5y exp
WalmartSan José State University

“LLM infrastructure engineer who built a production-critical real-time personalization and memory retrieval system for a user-facing product, adding <100ms P99 latency while improving relevance ~20–25% and holding SLA through 3x traffic. Experienced designing tiered retrieval backends (Redis + vector store), deploying on Kubernetes with autoscaling/circuit breakers, and running rigorous observability, incident response, and agent evaluation (shadow traffic, A/B tests, regression/replay).”

API DesignAsynchronous ProcessingAWSAWS CloudFormationCachingCI/CD+105
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SV

sasanka voleti

Screened

Senior DevOps & Site Reliability Engineer specializing in cloud reliability and observability

9y exp
Goldman SachsCalifornia State University, East Bay

“Built and deployed a production AI/ML SRE copilot that uses RAG over real-time Splunk signals plus deployment/runbook data to generate grounded incident summaries and next steps, cutting time-to-contact by 30%. Treats the knowledge corpus like a production dataset (quality gates, semantic chunking, metadata enrichment) and runs golden-dataset automated evals to ensure reliability, while partnering closely with ops/support leaders through discovery sessions and metric-driven demos.”

Site Reliability EngineeringCI/CDJenkinsGradleCloud ComputingAWS+79
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