You will get OpenClaw Agent: Automate Any Computer Workflow

Muhammad A.Status: Offline
Muhammad A. Muhammad A.
5.0
Rising Talent

Let a pro handle the details

Buy Generative AI services from Muhammad, priced and ready to go.
Muhammad A.Status: Offline
Muhammad A. Muhammad A.
5.0
Rising Talent

Let a pro handle the details

Buy Generative AI services from Muhammad, priced and ready to go.

Project details

š—¬š—¼š˜‚š—æ š—æš—²š—½š—²š˜š—¶š˜š—¶š˜ƒš—² š—°š—¼š—ŗš—½š˜‚š˜š—²š—æ š˜„š—¼š—æš—ø š—æš˜‚š—»š˜€ š—¶š˜š˜€š—²š—¹š—³. Agents read pages, fill forms, extract data, update your CRM, and send you a screenshot for approval before taking critical actions.

š˜ š˜£š˜¶š˜Ŗš˜­š˜„ š˜–š˜±š˜¦š˜Æš˜Šš˜­š˜¢š˜ø š˜øš˜°š˜³š˜¬š˜§š˜­š˜°š˜øš˜“ š˜µš˜©š˜¢š˜µ š˜¢š˜¶š˜µš˜°š˜®š˜¢š˜µš˜¦ š˜£š˜³š˜°š˜øš˜“š˜¦š˜³ š˜µš˜¢š˜“š˜¬š˜“, š˜®š˜¶š˜­š˜µš˜Ŗ-š˜“š˜µš˜¦š˜± š˜±š˜³š˜°š˜¤š˜¦š˜“š˜“š˜¦š˜“, š˜¢š˜Æš˜„ š˜¤š˜³š˜°š˜“š˜“-š˜±š˜­š˜¢š˜µš˜§š˜°š˜³š˜® š˜„š˜¢š˜µš˜¢ š˜§š˜­š˜°š˜øš˜“. š˜“š˜Ŗš˜Æš˜¬š˜¦š˜„š˜š˜Æ š˜±š˜³š˜°š˜“š˜±š˜¦š˜¤š˜µš˜Ŗš˜Æš˜Ø, š˜”š˜“š˜š š˜­š˜Ŗš˜“š˜µš˜Ŗš˜Æš˜Ø š˜¦š˜Æš˜µš˜³š˜ŗ, š˜¦-š˜¤š˜°š˜®š˜®š˜¦š˜³š˜¤š˜¦ š˜°š˜±š˜“, š˜Šš˜™š˜” š˜¶š˜±š˜„š˜¢š˜µš˜¦š˜“, š˜„š˜°š˜¤š˜¶š˜®š˜¦š˜Æš˜µ š˜±š˜³š˜°š˜¤š˜¦š˜“š˜“š˜Ŗš˜Æš˜Ø.

Built multi-agent systems that turn šŸÆ-š—µš—¼š˜‚š—æ š—ŗš—®š—»š˜‚š—®š—¹ š—½š—æš—¼š—°š—²š˜€š˜€š—²š˜€ into šŸ±-š—ŗš—¶š—»š˜‚š˜š—² automated runs with human-in-the-loop approval on critical steps.

š—˜š˜ƒš—²š—æš˜† š—®š—°š˜š—¶š—¼š—» š—¹š—¼š—“š—“š—²š—±. Every decision traceable. You stay in control.
AI Algorithms
Convolutional Neural Network, Generative Adversarial Network, Large Language Model, Long Short-Term Memory Network, Multilayer Perceptron, Multimodal Large Language Model, Transformer Model
AI Applications
AI Chatbot, AI-Generated Code, AIOps, Conversational AI, Natural Language Generation, Natural Language Understanding, Sentiment Analysis, Speech Synthesis, Text Recognition
AI Development Language
Python
AI Tools
Azure OpenAI, GitHub Copilot, Hugging Face, Jasper AI, Microsoft 365 Copilot, Microsoft CNTK, NVIDIA AI Platform, PyTorch, Replit
AI Models
ChatGPT, GPT-4, LLaMA, OpenAI Codex
What's included
Service Tiers Starter
$2,000
Standard
$5,500
Advanced
$12,000
Delivery Time 7 days 17 days 35 days
Number of Revisions
135
AI Model Integration
Batch Normalization
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Database Integration
-
Detailed Code Comments
-
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Image Upscaling
-
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MLOps
-
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Model Deployment
Model Documentation
Model Monitoring
-
Model Testing & Optimization
-
Model Tuning
Natural Language Processing
NLP Tokenization
-
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Pre-Training
-
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Prompt Engineering
Setup File
Source Code
Optional add-ons You can add these on the next page.
Additional Workflow (+ 3 Days)
+$800
Observability Dashboard (+ 3 Days)
+$700
Voice Interface Integration (+ 3 Days)
+$600

Frequently asked questions

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SC

Savior C.
5.00
Jan 28, 2026
Full-Stack Developer (Vimeo Custom + LiveKit + WebSocket) – Fix & Stabilize
Muhammad A.Status: Offline

About Muhammad

Muhammad A.Status: Offline
Senior AI/ML Engineer | AI Agents & Voice AI | RAG & LLM Pipelines
5.0 Ā (1 review)
Lahore, PakistanĀ - 4:29 am local time
š—Ŗš—µš—®š˜ š—°š—µš—®š—»š—“š—²š˜€ š˜„š—µš—²š—» š˜†š—¼š˜‚ š—µš—¶š—æš—² š—ŗš—²:

Your support team stops drowning in repetitive calls. Your team finds answers in š˜€š—²š—°š—¼š—»š—±š˜€ instead of digging through documents for hours. Your manual workflows run on autopilot while your people focus on work that actually needs a human brain.

š—„š—²š˜€š˜‚š—¹š˜š˜€ š—œ š—µš—®š˜ƒš—² š—±š—²š—¹š—¶š˜ƒš—²š—æš—²š—±:
• šŸ³šŸ¬% drop in manual call volume for a healthcare client (AI voice agent, LiveKit)
• Sub-šŸ®-š˜€š—²š—°š—¼š—»š—± document retrieval across šŸ­šŸ¬š—ž+ files (RAG system, NHS England)
• šŸµšŸ³% extraction accuracy on structured document processing (OpenAI consultation)
• š—Øš—¦š—” š—£š—®š˜š—²š—»š˜ š—›š—¼š—¹š—±š—²š—æ in applied AI systems

I am a š—™š˜‚š—¹š—¹-š—¦š˜š—®š—°š—ø + š—”š—œ/š— š—Ÿ š—˜š—»š—“š—¶š—»š—²š—²š—æ. You get š—¼š—»š—² š—½š—²š—æš˜€š—¼š—» who designs the architecture, builds the product, and deploys it. No handoffs between "model people" and "app people."

š—œš—³ š˜†š—¼š˜‚ š—®š—æš—² š—µš—²š—æš—² š—³š—¼š—æ š—©š—¼š—¶š—°š—² š—”š—œ / š—Ŗš—²š—Æš—„š—§š—–

Your callers get instant responses. Your team handles only the conversations that need a human.
• š—Ÿš—¶š˜ƒš—²š—žš—¶š˜, š—©š—®š—½š—¶, š—§š˜„š—¶š—¹š—¶š—¼, š—”š—“š—¼š—æš—®, š—š—®š—»š˜‚š˜€
• NAT traversal, SFU/MCU, jitter, echo, low-latency tuning, ASR/TTS pipelines

š—œš—³ š˜†š—¼š˜‚ š—®š—æš—² š—µš—²š—æš—² š—³š—¼š—æ š—”š—œ / š— š—Ÿ (š—Ÿš—Ÿš— š˜€, š—„š—”š—š, š—”š—“š—²š—»š˜š˜€)

Your docs become searchable in seconds. Your workflows run themselves. Your AI gives grounded answers with sources, not hallucinations.
• š—„š—”š—š with š—£š—¶š—»š—²š—°š—¼š—»š—² / š—™š—”š—œš—¦š—¦ / š—Ŗš—²š—®š˜ƒš—¶š—®š˜š—² / š—½š—“š˜ƒš—²š—°š˜š—¼š—æ - hybrid search, re-ranking, citations
• š—”š—œ š—”š—“š—²š—»š˜š˜€ with š—Ÿš—®š—»š—“š—–š—µš—®š—¶š—», š—Ÿš—®š—»š—“š—šš—æš—®š—½š—µ, š—–š—æš—²š˜„š—”š—œ, š—Ÿš—¹š—®š—ŗš—®š—œš—»š—±š—²š˜…
• š—–š—¹š—®š˜‚š—±š—² š—”š—£š—œ, š— š—–š—£ š˜€š—²š—æš˜ƒš—²š—æš˜€, š˜š—¼š—¼š—¹ š˜‚š˜€š—², š—–š—¹š—®š˜‚š—±š—² š—–š—¼š—±š—² integrations
• Models: š—šš—£š—§-šŸ°š—¼, š—–š—¹š—®š˜‚š—±š—², š—šš—²š—ŗš—¶š—»š—¶, š— š—¶š˜€š˜š—æš—®š—¹, š—Ÿš—¹š—®š—ŗš—®, š—›š˜‚š—“š—“š—¶š—»š—“š—™š—®š—°š—²

š—œš—³ š˜†š—¼š˜‚ š—®š—æš—² š—µš—²š—æš—² š—³š—¼š—æ š—„š—¼š—Æš—¼š˜š—¶š—°š˜€ š—”š—œ / š—¢š—½š—²š—»š—–š—¹š—®š˜„

Your robot learns in simulation and works on real hardware.
• š—¦š—¶š—ŗ-š˜š—¼-š—æš—²š—®š—¹ transfer, reinforcement learning, imitation learning
• š—œš˜€š—®š—®š—° š—¦š—¶š—ŗ, š— š˜‚š—š—¼š—–š—¼, š—£š˜†š—•š˜‚š—¹š—¹š—²š˜, š—„š—¢š—¦/š—„š—¢š—¦šŸ®, vision-language models for manipulation

š—œš—³ š˜†š—¼š˜‚ š—»š—²š—²š—± š˜š—µš—² š˜„š—µš—¼š—¹š—² š—½š—æš—¼š—±š˜‚š—°š˜ (š—™š˜‚š—¹š—¹-š—¦š˜š—®š—°š—ø)

You get production code, not demo glue:
• Frontend: š—„š—²š—®š—°š˜ / š—”š—²š˜…š˜.š—·š˜€ (dashboards, admin panels, real-time UIs)
• Backend: š—™š—®š˜€š˜š—”š—£š—œ / š—”š—¼š—±š—².š—·š˜€ (REST, WebSockets, auth, payments, integrations)
• Infra: š——š—¼š—°š—øš—²š—æ, š—”š—Ŗš—¦/š—šš—–š—£/š—”š˜‡š˜‚š—æš—², CI-friendly deploy

š— š˜† "š—»š—¼-š˜€š˜‚š—æš—½š—æš—¶š˜€š—²š˜€" š—±š—²š—¹š—¶š˜ƒš—²š—æš˜† š˜€š˜š˜†š—¹š—²
• Clear milestones (what ships in week 1 vs week 3)
• A testable slice early so you see progress fast
• Clean handoff: documented setup + deploy notes

Tell me what "š—±š—¼š—»š—²" looks like for your project and I will respond with an execution plan.

Steps for completing your project

After purchasing the project, send requirements so Muhammad can start the project.

Delivery time starts when Muhammad receives requirements from you.

Muhammad works on your project following the steps below.

Revisions may occur after the delivery date.

Workflow mapping and agent architecture

I map each workflow end to end, define which agents handle which tasks, design the hand-off logic between agents, and confirm integration points with your tools.

OpenClaw setup and agent build

Configure the OpenClaw environment, build skill files for each workflow, set up browser automation for computer-use tasks, connect APIs, and implement guardrails and approval gates.

Review the work, release payment, and leave feedback to Muhammad.