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import gradio as gr |
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import pandas as pd |
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import numpy as np |
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import plotly.express as px |
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import plotly.graph_objects as go |
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aws_instances = { |
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"g4dn.xlarge": {"vcpus": 4, "memory": 16, "gpu": "1x NVIDIA T4", "hourly_rate": 0.526, "gpu_memory": "16GB", "tier": "Entry"}, |
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"g4dn.2xlarge": {"vcpus": 8, "memory": 32, "gpu": "1x NVIDIA T4", "hourly_rate": 0.752, "gpu_memory": "16GB", "tier": "Entry"}, |
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"g5.xlarge": {"vcpus": 4, "memory": 16, "gpu": "1x NVIDIA A10G", "hourly_rate": 0.65, "gpu_memory": "24GB", "tier": "Mid"}, |
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"g5.2xlarge": {"vcpus": 8, "memory": 32, "gpu": "1x NVIDIA A10G", "hourly_rate": 1.006, "gpu_memory": "24GB", "tier": "Mid"}, |
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"p3.2xlarge": {"vcpus": 8, "memory": 61, "gpu": "1x NVIDIA V100", "hourly_rate": 3.06, "gpu_memory": "16GB", "tier": "High"}, |
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"p4d.xlarge": {"vcpus": 12, "memory": 85, "gpu": "1x NVIDIA A100", "hourly_rate": 4.10, "gpu_memory": "40GB", "tier": "Premium"}, |
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"p4d.2xlarge": {"vcpus": 24, "memory": 170, "gpu": "2x NVIDIA A100", "hourly_rate": 8.20, "gpu_memory": "2x40GB", "tier": "Premium"}, |
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"p4d.4xlarge": {"vcpus": 48, "memory": 340, "gpu": "4x NVIDIA A100", "hourly_rate": 16.40, "gpu_memory": "4x40GB", "tier": "Premium"}, |
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} |
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gcp_instances = { |
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"n1-standard-4-t4": {"vcpus": 4, "memory": 15, "gpu": "1x NVIDIA T4", "hourly_rate": 0.49, "gpu_memory": "16GB", "tier": "Entry"}, |
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"n1-standard-8-t4": {"vcpus": 8, "memory": 30, "gpu": "1x NVIDIA T4", "hourly_rate": 0.69, "gpu_memory": "16GB", "tier": "Entry"}, |
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"g2-standard-4": {"vcpus": 4, "memory": 16, "gpu": "1x NVIDIA L4", "hourly_rate": 0.59, "gpu_memory": "24GB", "tier": "Mid"}, |
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"g2-standard-8": {"vcpus": 8, "memory": 32, "gpu": "1x NVIDIA L4", "hourly_rate": 0.89, "gpu_memory": "24GB", "tier": "Mid"}, |
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"n1-standard-8-v100": {"vcpus": 8, "memory": 60, "gpu": "1x NVIDIA V100", "hourly_rate": 2.95, "gpu_memory": "16GB", "tier": "High"}, |
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"a2-highgpu-1g": {"vcpus": 12, "memory": 85, "gpu": "1x NVIDIA A100", "hourly_rate": 1.46, "gpu_memory": "40GB", "tier": "Premium"}, |
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"a2-highgpu-2g": {"vcpus": 24, "memory": 170, "gpu": "2x NVIDIA A100", "hourly_rate": 2.93, "gpu_memory": "2x40GB", "tier": "Premium"}, |
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"a2-highgpu-4g": {"vcpus": 48, "memory": 340, "gpu": "4x NVIDIA A100", "hourly_rate": 5.86, "gpu_memory": "4x40GB", "tier": "Premium"}, |
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} |
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api_pricing = { |
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"OpenAI": { |
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"GPT-3.5-Turbo": {"input_per_1M": 0.5, "output_per_1M": 1.5, "token_context": 16385}, |
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"GPT-4o": {"input_per_1M": 5.0, "output_per_1M": 15.0, "token_context": 32768}, |
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"GPT-4o-mini": {"input_per_1M": 2.5, "output_per_1M": 7.5, "token_context": 32768}, |
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}, |
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"TogetherAI": { |
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"Llama-3-8B": {"input_per_1M": 0.15, "output_per_1M": 0.15, "token_context": 8192}, |
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"Llama-3-70B": {"input_per_1M": 0.9, "output_per_1M": 0.9, "token_context": 8192}, |
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"Llama-2-13B": {"input_per_1M": 0.6, "output_per_1M": 0.6, "token_context": 4096}, |
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"Llama-2-70B": {"input_per_1M": 2.5, "output_per_1M": 2.5, "token_context": 4096}, |
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"DeepSeek-Coder-33B": {"input_per_1M": 2.0, "output_per_1M": 2.0, "token_context": 16384}, |
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}, |
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"Anthropic": { |
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"Claude-3-Opus": {"input_per_1M": 15.0, "output_per_1M": 75.0, "token_context": 200000}, |
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"Claude-3-Sonnet": {"input_per_1M": 3.0, "output_per_1M": 15.0, "token_context": 200000}, |
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"Claude-3-Haiku": {"input_per_1M": 0.25, "output_per_1M": 1.25, "token_context": 200000}, |
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} |
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} |
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model_sizes = { |
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"Small (7B parameters)": {"memory_required": 14}, |
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"Medium (13B parameters)": {"memory_required": 26}, |
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"Large (70B parameters)": {"memory_required": 140}, |
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"XL (180B parameters)": {"memory_required": 360}, |
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} |
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def calculate_aws_cost(instance, hours, storage, reserved=False, spot=False, years=1): |
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data = aws_instances[instance] |
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rate = data['hourly_rate'] |
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if spot: |
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rate *= 0.3 |
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elif reserved: |
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factors = {1: 0.6, 3: 0.4} |
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rate *= factors.get(years, 0.6) |
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compute = rate * hours |
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storage_cost = storage * 0.10 |
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return {'total_cost': compute + storage_cost, 'details': data} |
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def calculate_gcp_cost(instance, hours, storage, reserved=False, spot=False, years=1): |
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data = gcp_instances[instance] |
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rate = data['hourly_rate'] |
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if spot: |
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rate *= 0.2 |
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elif reserved: |
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factors = {1: 0.7, 3: 0.5} |
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rate *= factors.get(years, 0.7) |
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compute = rate * hours |
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storage_cost = storage * 0.04 |
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return {'total_cost': compute + storage_cost, 'details': data} |
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def calculate_api_cost(provider, model, in_tokens, out_tokens, calls): |
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m = api_pricing[provider][model] |
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input_cost = in_tokens * m['input_per_1M'] / 1000000 |
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output_cost = out_tokens * m['output_per_1M'] / 1000000 |
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call_cost = calls * 0.0001 if provider == 'TogetherAI' else 0 |
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return {'total_cost': input_cost + output_cost + call_cost, 'details': m} |
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def filter_compatible(instances, min_mem): |
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res = {} |
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for name, data in instances.items(): |
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mem_str = data['gpu_memory'] |
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if 'x' in mem_str and not mem_str.startswith(('1x','2x','4x','8x')): |
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val = int(mem_str.replace('GB','')) |
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elif 'x' in mem_str: |
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parts = mem_str.split('x') |
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val = int(parts[0]) * int(parts[1].replace('GB','')) |
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else: |
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val = int(mem_str.replace('GB','')) |
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if val >= min_mem: |
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res[name] = data |
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return res |
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def generate_cost_comparison( |
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compute_hours, tokens_per_month, input_ratio, api_calls, |
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model_size, storage_gb, reserved_instances, spot_instances, multi_year_commitment, |
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comparison_tier |
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): |
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years = int(multi_year_commitment) |
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in_tokens = tokens_per_month * 1000000 * (input_ratio/100) |
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out_tokens = tokens_per_month * 1000000 - in_tokens |
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min_mem = model_sizes[model_size]['memory_required'] |
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aws_comp = filter_compatible(aws_instances, min_mem) |
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gcp_comp = filter_compatible(gcp_instances, min_mem) |
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if comparison_tier != "All": |
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aws_comp = {k: v for k, v in aws_comp.items() if v.get('tier', '') == comparison_tier} |
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gcp_comp = {k: v for k, v in gcp_comp.items() if v.get('tier', '') == comparison_tier} |
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results = [] |
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aws_html = '<h3>AWS Instances</h3>' |
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aws_html += '<table width="100%"><tr><th>Instance</th><th>vCPUs</th><th>Memory</th><th>GPU</th><th>Tier</th><th>Monthly Cost ($)</th></tr>' |
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if aws_comp: |
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for inst in aws_comp: |
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res = calculate_aws_cost(inst, compute_hours, storage_gb, reserved_instances, spot_instances, years) |
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aws_html += f'<tr><td>{inst}</td><td>{res["details"]["vcpus"]}</td><td>{res["details"]["memory"]}GB</td><td>{res["details"]["gpu"]}</td><td>{res["details"].get("tier", "")}</td><td>${res["total_cost"]:.2f}</td></tr>' |
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best_aws = min(aws_comp, key=lambda x: calculate_aws_cost(x, compute_hours, storage_gb, reserved_instances, spot_instances, years)['total_cost']) |
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best_aws_cost = calculate_aws_cost(best_aws, compute_hours, storage_gb, reserved_instances, spot_instances, years)['total_cost'] |
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best_aws_tier = aws_instances[best_aws].get('tier', '') |
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results.append({'provider': f'AWS ({best_aws})', 'cost': best_aws_cost, 'type': 'Cloud', 'tier': best_aws_tier}) |
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else: |
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aws_html += '<tr><td colspan="6">No compatible instances</td></tr>' |
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aws_html += '</table>' |
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gcp_html = '<h3>GCP Instances</h3>' |
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gcp_html += '<table width="100%"><tr><th>Instance</th><th>vCPUs</th><th>Memory</th><th>GPU</th><th>Tier</th><th>Monthly Cost ($)</th></tr>' |
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if gcp_comp: |
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for inst in gcp_comp: |
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res = calculate_gcp_cost(inst, compute_hours, storage_gb, reserved_instances, spot_instances, years) |
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gcp_html += f'<tr><td>{inst}</td><td>{res["details"]["vcpus"]}</td><td>{res["details"]["memory"]}GB</td><td>{res["details"]["gpu"]}</td><td>{res["details"].get("tier", "")}</td><td>${res["total_cost"]:.2f}</td></tr>' |
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best_gcp = min(gcp_comp, key=lambda x: calculate_gcp_cost(x, compute_hours, storage_gb, reserved_instances, spot_instances, years)['total_cost']) |
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best_gcp_cost = calculate_gcp_cost(best_gcp, compute_hours, storage_gb, reserved_instances, spot_instances, years)['total_cost'] |
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best_gcp_tier = gcp_instances[best_gcp].get('tier', '') |
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results.append({'provider': f'GCP ({best_gcp})', 'cost': best_gcp_cost, 'type': 'Cloud', 'tier': best_gcp_tier}) |
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else: |
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gcp_html += '<tr><td colspan="6">No compatible instances</td></tr>' |
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gcp_html += '</table>' |
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api_html = '<h3>API Options</h3>' |
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api_html += '<table width="100%"><tr><th>Provider</th><th>Model</th><th>Input Cost</th><th>Output Cost</th><th>Total Cost ($)</th><th>Context</th></tr>' |
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api_costs = {} |
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for prov in api_pricing: |
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for mdl in api_pricing[prov]: |
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res = calculate_api_cost(prov, mdl, in_tokens, out_tokens, api_calls) |
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details = api_pricing[prov][mdl] |
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api_html += f'<tr><td>{prov}</td><td>{mdl}</td><td>${in_tokens * details["input_per_1M"] / 1000000:.2f}</td><td>${out_tokens * details["output_per_1M"] / 1000000:.2f}</td><td>${res["total_cost"]:.2f}</td><td>{details["token_context"]:,}</td></tr>' |
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api_costs[(prov, mdl)] = res['total_cost'] |
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api_html += '</table>' |
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if api_costs: |
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best_api = min(api_costs, key=api_costs.get) |
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results.append({'provider': f'{best_api[0]} ({best_api[1]})', 'cost': api_costs[best_api], 'type': 'API', 'tier': 'API'}) |
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direct_comparison_html = "" |
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if comparison_tier != "All" and comparison_tier != "API": |
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direct_comparison_html = f'<h3>Direct {comparison_tier} Tier Comparison</h3>' |
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direct_comparison_html += '<table width="100%"><tr><th>Provider</th><th>Instance</th><th>vCPUs</th><th>Memory</th><th>GPU</th><th>Monthly Cost ($)</th></tr>' |
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aws_filtered = {k: v for k, v in aws_instances.items() if v.get('tier', '') == comparison_tier} |
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gcp_filtered = {k: v for k, v in gcp_instances.items() if v.get('tier', '') == comparison_tier} |
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vcpu_groups = {} |
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for inst, data in aws_filtered.items(): |
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vcpu = data['vcpus'] |
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if vcpu not in vcpu_groups: |
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vcpu_groups[vcpu] = {'aws': [], 'gcp': []} |
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vcpu_groups[vcpu]['aws'].append(inst) |
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for inst, data in gcp_filtered.items(): |
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vcpu = data['vcpus'] |
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if vcpu not in vcpu_groups: |
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vcpu_groups[vcpu] = {'aws': [], 'gcp': []} |
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vcpu_groups[vcpu]['gcp'].append(inst) |
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for vcpu in sorted(vcpu_groups.keys()): |
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group = vcpu_groups[vcpu] |
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for aws_inst in group['aws']: |
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aws_cost = calculate_aws_cost(aws_inst, compute_hours, storage_gb, reserved_instances, spot_instances, years) |
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aws_data = aws_cost['details'] |
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direct_comparison_html += f'<tr><td>AWS</td><td>{aws_inst}</td><td>{aws_data["vcpus"]}</td><td>{aws_data["memory"]}GB</td><td>{aws_data["gpu"]}</td><td>${aws_cost["total_cost"]:.2f}</td></tr>' |
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for gcp_inst in group['gcp']: |
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gcp_cost = calculate_gcp_cost(gcp_inst, compute_hours, storage_gb, reserved_instances, spot_instances, years) |
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gcp_data = gcp_cost['details'] |
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direct_comparison_html += f'<tr><td>GCP</td><td>{gcp_inst}</td><td>{gcp_data["vcpus"]}</td><td>{gcp_data["memory"]}GB</td><td>{gcp_data["gpu"]}</td><td>${gcp_cost["total_cost"]:.2f}</td></tr>' |
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if vcpu != sorted(vcpu_groups.keys())[-1]: |
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direct_comparison_html += '<tr><td colspan="6" style="border-bottom: 1px solid #ccc; height: 10px;"></td></tr>' |
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direct_comparison_html += '</table>' |
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df = pd.DataFrame(results) |
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colors = {'Entry': '#66BB6A', 'Mid': '#42A5F5', 'High': '#FFA726', 'Premium': '#EF5350', 'API': '#AB47BC'} |
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fig = go.Figure() |
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for i, row in df.iterrows(): |
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tier_color = colors.get(row.get('tier', 'API'), '#9E9E9E') |
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fig.add_trace(go.Bar( |
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x=[row['provider']], |
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y=[row['cost']], |
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name=row['provider'], |
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marker_color=tier_color |
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)) |
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for i, row in df.iterrows(): |
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fig.add_annotation( |
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x=row['provider'], |
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y=row['cost'], |
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text=f"${row['cost']:.2f}", |
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showarrow=False, |
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yshift=10, |
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font=dict(size=14) |
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) |
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fig.update_layout( |
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showlegend=False, |
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height=500, |
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yaxis=dict(title='Monthly Cost ($)', tickprefix='$'), |
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xaxis=dict(title=''), |
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title='Cost Comparison' |
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) |
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html = f""" |
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<div style='padding:20px;font-family:Arial;'> |
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{direct_comparison_html} |
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{aws_html} |
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{gcp_html} |
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{api_html} |
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</div> |
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""" |
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return html, fig |
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with gr.Blocks(title="Cloud Cost Estimator", theme=gr.themes.Soft(primary_hue="indigo")) as demo: |
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gr.HTML('<h1 style="text-align:center;">Cloud Cost Estimator</h1>') |
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with gr.Row(): |
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with gr.Column(scale=1): |
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compute_hours = gr.Slider(label="Compute Hours per Month", minimum=1, maximum=300, value=50) |
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tokens_per_month = gr.Slider(label="Tokens per Month (M)", minimum=1, maximum=200, value=5) |
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input_ratio = gr.Slider(label="Input Ratio (%)", minimum=10, maximum=70, value=25) |
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api_calls = gr.Slider(label="API Calls per Month", minimum=100, maximum=100000, value=5000, step=100) |
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model_size = gr.Dropdown(label="Model Size", choices=list(model_sizes.keys()), value="Medium (13B parameters)") |
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storage_gb = gr.Slider(label="Storage (GB)", minimum=10, maximum=1000, value=100) |
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comparison_tier = gr.Radio(label="Comparison Tier", choices=["All", "Entry", "Mid", "High", "Premium", "API"], value="All") |
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reserved_instances = gr.Checkbox(label="Reserved Instances", value=False) |
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spot_instances = gr.Checkbox(label="Spot Instances", value=False) |
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multi_year_commitment = gr.Radio(label="Commitment Period (years)", choices=["1","3"], value="1") |
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with gr.Column(scale=2): |
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out_html = gr.HTML() |
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out_plot = gr.Plot() |
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inputs = [compute_hours, tokens_per_month, input_ratio, api_calls, |
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model_size, storage_gb, reserved_instances, spot_instances, multi_year_commitment, comparison_tier] |
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outputs = [out_html, out_plot] |
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demo.load(generate_cost_comparison, inputs, outputs) |
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for input_component in inputs: |
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input_component.change(generate_cost_comparison, inputs, outputs) |
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demo.launch() |