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from gradio.components import Component |
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import gradio as gr |
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import pandas as pd |
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from abc import ABC, abstractclassmethod |
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import inspect |
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class BaseTCOModel(ABC): |
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def __setattr__(self, name, value): |
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if isinstance(value, Component): |
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self._components.append(value) |
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self.__dict__[name] = value |
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def __init__(self): |
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super(BaseTCOModel, self).__setattr__("_components", []) |
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self.use_case = None |
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def get_components(self) -> list[Component]: |
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return self._components |
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def get_components_for_cost_computing(self): |
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return self.components_for_cost_computing |
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def get_name(self): |
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return self.name |
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def register_components_for_cost_computing(self): |
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args = inspect.getfullargspec(self.compute_cost_per_token)[0][1:] |
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self.components_for_cost_computing = [self.__getattribute__(arg) for arg in args] |
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@abstractclassmethod |
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def compute_cost_per_token(self): |
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pass |
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@abstractclassmethod |
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def render(self): |
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pass |
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def set_name(self, name): |
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self.name = name |
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def set_latency(self, latency): |
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self.latency = latency |
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def get_latency(self): |
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return self.latency |
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class OpenAIModelGPT4(BaseTCOModel): |
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def __init__(self): |
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self.set_name("(SaaS) OpenAI GPT4") |
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self.set_latency("15s") |
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super().__init__() |
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def render(self): |
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def define_cost_per_token(context_length): |
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if context_length == "8K": |
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cost_per_1k_input_tokens = 0.03 |
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cost_per_1k_output_tokens = 0.06 |
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else: |
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cost_per_1k_input_tokens = 0.06 |
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cost_per_1k_output_tokens = 0.12 |
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return cost_per_1k_input_tokens, cost_per_1k_output_tokens |
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self.context_length = gr.Dropdown(["8K", "32K"], value="8K", interactive=True, |
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label="Context size", |
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visible=False, info="Number of tokens the model considers when processing text") |
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self.input_tokens_cost_per_token = gr.Number(0.03, visible=False, |
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label="($) Price/1K input prompt tokens", |
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interactive=False |
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) |
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self.output_tokens_cost_per_token = gr.Number(0.06, visible=False, |
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label="($) Price/1K output prompt tokens", |
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interactive=False |
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) |
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self.info = gr.Markdown("The cost per input and output tokens values are from OpenAI's [pricing web page](https://openai.com/pricing)", interactive=False, visible=False) |
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self.context_length.change(define_cost_per_token, inputs=self.context_length, outputs=[self.input_tokens_cost_per_token, self.output_tokens_cost_per_token]) |
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self.labor = gr.Number(0, visible=False, |
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label="($) Labor cost per month", |
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info="This is an estimate of the labor cost of the AI engineer in charge of deploying the model", |
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interactive=True |
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) |
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def compute_cost_per_token(self, input_tokens_cost_per_token, output_tokens_cost_per_token, labor): |
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cost_per_input_token = (input_tokens_cost_per_token / 1000) |
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cost_per_output_token = (output_tokens_cost_per_token / 1000) |
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return cost_per_input_token, cost_per_output_token, labor |
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class OpenAIModelGPT3_5(BaseTCOModel): |
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def __init__(self): |
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self.set_name("(SaaS) OpenAI GPT3.5 Turbo") |
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self.set_latency("5s") |
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super().__init__() |
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def render(self): |
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def define_cost_per_token(context_length): |
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if context_length == "4K": |
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cost_per_1k_input_tokens = 0.0015 |
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cost_per_1k_output_tokens = 0.002 |
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else: |
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cost_per_1k_input_tokens = 0.003 |
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cost_per_1k_output_tokens = 0.004 |
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return cost_per_1k_input_tokens, cost_per_1k_output_tokens |
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self.context_length = gr.Dropdown(choices=["4K", "16K"], value="4K", interactive=True, |
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label="Context size", |
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visible=False, info="Number of tokens the model considers when processing text") |
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self.input_tokens_cost_per_token = gr.Number(0.0015, visible=False, |
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label="($) Price/1K input prompt tokens", |
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interactive=False |
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) |
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self.output_tokens_cost_per_token = gr.Number(0.002, visible=False, |
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label="($) Price/1K output prompt tokens", |
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interactive=False |
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) |
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self.info = gr.Markdown("The cost per input and output tokens values are from OpenAI's [pricing web page](https://openai.com/pricing)", interactive=False, visible=False) |
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self.context_length.change(define_cost_per_token, inputs=self.context_length, outputs=[self.input_tokens_cost_per_token, self.output_tokens_cost_per_token]) |
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self.labor = gr.Number(0, visible=False, |
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label="($) Labor cost per month", |
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info="This is an estimate of the labor cost of the AI engineer in charge of deploying the model", |
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interactive=True |
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) |
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def compute_cost_per_token(self, input_tokens_cost_per_token, output_tokens_cost_per_token, labor): |
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cost_per_input_token = (input_tokens_cost_per_token / 1000) |
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cost_per_output_token = (output_tokens_cost_per_token / 1000) |
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return cost_per_input_token, cost_per_output_token, labor |
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class OpenSourceLlama2Model(BaseTCOModel): |
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def __init__(self): |
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self.set_name("(Open source) Llama 2 70B") |
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self.set_latency("27s") |
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super().__init__() |
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def render(self): |
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self.vm = gr.Textbox(value="2x A100 80GB NVLINK", |
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visible=False, |
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label="Instance of VM with GPU", |
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) |
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self.vm_cost_per_hour = gr.Number(4.42, label="Instance cost ($) per hour", |
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interactive=False, visible=False) |
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self.info_vm = gr.Markdown("This price above is from [CoreWeave's pricing web page](https://www.coreweave.com/gpu-cloud-pricing)", interactive=False, visible=False) |
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self.input_tokens_cost_per_token = gr.Number(0.00052, visible=False, |
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label="($) Price/1K input prompt tokens", |
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interactive=False |
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) |
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self.output_tokens_cost_per_token = gr.Number(0.06656, visible=False, |
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label="($) Price/1K output prompt tokens", |
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interactive=False |
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) |
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self.source = gr.Markdown("""<span style="font-size: 16px; font-weight: 600; color: #212529;">Source</span>""") |
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self.info = gr.Markdown("The cost per input and output tokens values above are from [these benchmark results](https://www.cursor.so/blog/llama-inference#user-content-fn-llama-paper)", |
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label="Source", |
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interactive=False, |
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visible=False) |
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self.labor = gr.Number(10000, visible=False, |
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label="($) Labor cost per month", |
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info="This is an estimate of the labor cost of the AI engineer in charge of deploying the model", |
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interactive=True |
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) |
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def compute_cost_per_token(self, input_tokens_cost_per_token, output_tokens_cost_per_token, labor): |
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cost_per_input_token = (input_tokens_cost_per_token / 1000) |
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cost_per_output_token = (output_tokens_cost_per_token / 1000) |
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return cost_per_input_token, cost_per_output_token, labor |
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class CohereModel(BaseTCOModel): |
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def __init__(self): |
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self.set_name("(SaaS) Cohere") |
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self.set_latency("Not available") |
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super().__init__() |
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def render(self): |
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def on_model_change(model): |
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if model == "Default": |
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cost_per_1M_tokens = 15 |
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else: |
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cost_per_1M_tokens = 30 |
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cost_per_1K_tokens = cost_per_1M_tokens / 1000 |
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return gr.update(value=cost_per_1K_tokens), gr.update(value=cost_per_1K_tokens) |
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self.model = gr.Dropdown(["Default", "Custom"], value="Default", |
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label="Model", |
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interactive=True, visible=False) |
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self.input_tokens_cost_per_token = gr.Number(0.015, visible=False, |
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label="($) Price/1K input prompt tokens", |
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interactive=False |
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) |
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self.output_tokens_cost_per_token = gr.Number(0.015, visible=False, |
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label="($) Price/1K output prompt tokens", |
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interactive=False |
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) |
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self.info = gr.Markdown("The cost per input and output tokens value is from Cohere's [pricing web page](https://cohere.com/pricing?utm_term=&utm_campaign=Cohere+Brand+%26+Industry+Terms&utm_source=adwords&utm_medium=ppc&hsa_acc=4946693046&hsa_cam=20368816223&hsa_grp=154209120409&hsa_ad=666081801359&hsa_src=g&hsa_tgt=dsa-19959388920&hsa_kw=&hsa_mt=&hsa_net=adwords&hsa_ver=3&gad=1&gclid=CjwKCAjww7KmBhAyEiwA5-PUSlyO7pq0zxeVrhViXMd8WuILW6uY-cfP1-SVuUfs-leUAz14xHlOHxoCmfkQAvD_BwE)", interactive=False, visible=False) |
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self.model.change(on_model_change, inputs=self.model, outputs=[self.input_tokens_cost_per_token, self.output_tokens_cost_per_token]) |
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self.labor = gr.Number(0, visible=False, |
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label="($) Labor cost per month", |
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info="This is an estimate of the labor cost of the AI engineer in charge of deploying the model", |
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interactive=True |
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) |
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def compute_cost_per_token(self, input_tokens_cost_per_token, output_tokens_cost_per_token, labor): |
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cost_per_input_token = input_tokens_cost_per_token / 1000 |
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cost_per_output_token = output_tokens_cost_per_token / 1000 |
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return cost_per_input_token, cost_per_output_token, labor |
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class ModelPage: |
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def __init__(self, Models: BaseTCOModel): |
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self.models: list[BaseTCOModel] = [] |
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for Model in Models: |
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model = Model() |
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self.models.append(model) |
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def render(self): |
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for model in self.models: |
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model.render() |
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model.register_components_for_cost_computing() |
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def get_all_components(self) -> list[Component]: |
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output = [] |
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for model in self.models: |
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output += model.get_components() |
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return output |
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def get_all_components_for_cost_computing(self) -> list[Component]: |
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output = [] |
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for model in self.models: |
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output += model.get_components_for_cost_computing() |
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return output |
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def make_model_visible(self, name:str, use_case: gr.Dropdown): |
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output = [] |
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for model in self.models: |
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if model.get_name() == name: |
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output+= [gr.update(visible=True)] * len(model.get_components()) |
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model.use_case = use_case |
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else: |
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output+= [gr.update(visible=False)] * len(model.get_components()) |
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return output |
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def compute_cost_per_token(self, *args): |
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begin=0 |
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current_model = args[-3] |
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current_input_tokens = args[-2] |
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current_output_tokens = args[-1] |
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for model in self.models: |
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model_n_args = len(model.get_components_for_cost_computing()) |
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if current_model == model.get_name(): |
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model_args = args[begin:begin+model_n_args] |
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cost_per_input_token, cost_per_output_token, labor_cost = model.compute_cost_per_token(*model_args) |
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model_tco = cost_per_input_token * current_input_tokens + cost_per_output_token * current_output_tokens |
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latency = model.get_latency() |
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return model_tco, latency, labor_cost |
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begin = begin+model_n_args |