jadehardouin
commited on
Commit
•
7769b47
1
Parent(s):
80b9501
Update models.py
Browse files
models.py
CHANGED
@@ -14,9 +14,6 @@ class BaseTCOModel(ABC):
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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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self.num_users = None
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self.input_tokens = None
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self.output_tokens = None
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def get_components(self) -> list[Component]:
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return self._components
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@@ -61,7 +58,7 @@ class OpenAIModel(BaseTCOModel):
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self.set_formula(r"""$CR = \frac{CIT\_1K \times IT + COT\_1K \times OT}{1000}$ <br>
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with: <br>
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CR = Cost per Request <br>
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CIT_1K = Cost per 1000 Input Tokens
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COT_1K = Cost per 1000 Output Tokens <br>
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IT = Input Tokens <br>
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OT = Output Tokens
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@@ -79,45 +76,59 @@ class OpenAIModel(BaseTCOModel):
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self.latency = "5s"
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return gr.Dropdown.update(choices=["4K", "16K"], value="4K")
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self.model = gr.Dropdown(["GPT-4", "GPT-3.5 Turbo"], value="GPT-4",
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label="OpenAI models",
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interactive=True, visible=False)
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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.
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elif model == "GPT-4" and context_length == "32K":
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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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elif model == "GPT-3.5" and 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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cost_per_input_token = (cost_per_1k_input_tokens / 1000)
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cost_per_output_token = (cost_per_1k_output_tokens / 1000)
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return cost_per_input_token, cost_per_output_token
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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")
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self.set_formula(r"""$
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with: <br>
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OTS = Output Tokens per Second <br>
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U = Used <br>
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IT = Input Tokens <br>
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OT = Output Tokens
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""")
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@@ -125,118 +136,37 @@ class OpenSourceLlama2Model(BaseTCOModel):
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super().__init__()
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def render(self):
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vm_choices = ["1x Nvidia A100 (Azure NC24ads A100 v4)",
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"2x Nvidia A100 (Azure NC24ads A100 v4)",
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"2x Nvidia A100 (Azure ND96amsr A100 v4)"]
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def on_model_change(model):
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if model == "Llama 2 7B":
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return [gr.Dropdown.update(choices=vm_choices),
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gr.Markdown.update(value="To see the benchmark results use for the Llama2-7B model, [click here](https://example.com/script)"),
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gr.Number.update(value=3.6730),
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gr.Number.update(value=694.38),
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gr.Number.update(value=694.38),
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]
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else:
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not_supported_vm = ["1x Nvidia A100 (Azure NC24ads A100 v4)", "2x Nvidia A100 (Azure NC24ads A100 v4)"]
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choices = [x for x in vm_choices if x not in not_supported_vm]
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return [gr.Dropdown.update(choices=choices, value="2x Nvidia A100 (Azure ND96amsr A100 v4)"),
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gr.Markdown.update(value="To see the benchmark results used for the Llama2-70B model, [click here](https://www.cursor.so/blog/llama-inference#user-content-fn-llama-paper)"),
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gr.Number.update(value=2*37.186),
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gr.Number.update(value=2860),
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gr.Number.update(value=18.545),
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]
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def on_vm_change(model, vm):
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# TO DO: load info from CSV
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if model == "Llama 2 7B" and vm == "1x Nvidia A100 (Azure NC24ads A100 v4)":
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return [gr.Number.update(value=4.777), gr.Number.update(value=694.38), gr.Number.update(value=694.38)]
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elif model == "Llama 2 7B" and vm == "2x Nvidia A100 (Azure NC24ads A100 v4)":
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return [gr.Number.update(value=2*4.777), gr.Number.update(value=1388.76), gr.Number.update(value=1388.76)]
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elif model == "Llama 2 7B" and vm == "2x Nvidia A100 (Azure ND96amsr A100 v4)":
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return [gr.Number.update(value=2*37.186), gr.Number.update(value=2777.52), gr.Number.update(value=2777.52)]
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elif model == "Llama 2 70B" and vm == "2x Nvidia A100 (Azure ND96amsr A100 v4)":
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return [gr.Number.update(value=2*37.186), gr.Number.update(value=2860), gr.Number.update(value=18.449)]
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self.
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self.vm = gr.Dropdown(choices=["2x Nvidia A100 (Azure ND96amsr A100 v4)"],
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value="2x Nvidia A100 (Azure ND96amsr A100 v4)",
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visible=False,
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label="Instance of VM with GPU",
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info="Your options for this choice depend on the model you previously chose"
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)
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self.vm_cost_per_hour = gr.Number(2
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interactive=False, visible=False)
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self.
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label="
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interactive=False
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)
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self.
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label="
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interactive=False
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)
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self.info = gr.Markdown("
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self.
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cost_per_output_token = vm_cost_per_hour * 100 / (3600 * used * output_tokens_per_second)
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return cost_per_input_token, cost_per_output_token
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class OpenSourceDIY(BaseTCOModel):
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def __init__(self):
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self.set_name("(Open source) DIY")
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self.set_formula(r"""$CT = \frac{VM\_CH \times 100}{3600 \times U} \times (\frac{IT}{ITS} + \frac{OT}{OTS})$<br>
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with: <br>
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CT = Cost per Token <br>
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VM_CH = VM Cost per Hour <br>
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ITS = Input Tokens per Second <br>
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OTS = Output Tokens per Second <br>
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U = Used <br>
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IT = Input Tokens <br>
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OT = Output Tokens
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""")
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self.set_latency("The latency can't be estimated in the DIY scenario for the model isn't defined")
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super().__init__()
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def render(self):
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self.info = gr.Markdown("Compute the cost/token based on our formula below, using your own parameters", visible=False)
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self.display_formula = gr.Markdown(r"""$CT = \frac{VM\_CH \times 100}{3600 \times U} \times (\frac{IT}{ITS} + \frac{OT}{OTS})$<br>
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with: <br>
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CT = Cost per Token <br>
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VM_CH = VM Cost per Hour <br>
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ITS = Input Tokens per Second <br>
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OTS = Output Tokens per Second <br>
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U = Used <br>
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IT = Input Tokens <br>
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OT = Output Tokens
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""", visible=False)
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self.vm_cost_per_hour = gr.Number(3.5, label="VM instance cost per hour",
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interactive=True, visible=False)
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self.input_tokens_per_second = gr.Number(300, visible=False,
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label="Number of input tokens per second processed for this specific model and VM instance",
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interactive=True
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)
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self.output_tokens_per_second = gr.Number(300, visible=False,
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label="Number of output tokens per second processed for this specific model and VM instance",
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interactive=True
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)
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self.used = gr.Slider(minimum=0.01, value=50., step=0.01, label="% used",
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info="Percentage of time the GPU is used",
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interactive=True,
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visible=False)
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def compute_cost_per_token(self,
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cost_per_input_token =
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cost_per_output_token =
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return cost_per_input_token,
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class CohereModel(BaseTCOModel):
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self.model: gr.Dropdown.update(choices=["Default", "Custom"])
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else:
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self.model: gr.Dropdown.update(choices=["Default", "Custom"])
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def compute_cost_per_token(self, model):
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"""Cost per token = """
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use_case = self.use_case
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@@ -279,7 +214,7 @@ class CohereModel(BaseTCOModel):
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cost_per_input_token = cost_per_1M_tokens / 1000000
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cost_per_output_token = cost_per_1M_tokens / 1000000
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return cost_per_input_token, cost_per_output_token
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class ModelPage:
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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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# First decide which indexes
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output = []
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for model in self.models:
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output+= [gr.update(visible=True)] * len(model.get_components())
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# Set use_case and num_users values in the model
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model.use_case = use_case
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model.num_users = num_users
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model.input_tokens = input_tokens
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model.output_tokens = output_tokens
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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[-
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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 = model.compute_cost_per_token(*model_args)
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model_tco = cost_per_input_token *
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formula = model.get_formula()
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latency = model.get_latency()
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return f"Model {current_model} has a cost/request of: ${model_tco}", model_tco, formula, f"The average latency of this model is {latency}"
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begin = begin+model_n_args
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def __init__(self):
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super(BaseTCOModel, self).__setattr__("_components", [])
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self.use_case = None
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def get_components(self) -> list[Component]:
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return self._components
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self.set_formula(r"""$CR = \frac{CIT\_1K \times IT + COT\_1K \times OT}{1000}$ <br>
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with: <br>
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CR = Cost per Request <br>
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CIT_1K = Cost per 1000 Input Tokens <br>
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COT_1K = Cost per 1000 Output Tokens <br>
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IT = Input Tokens <br>
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OT = Output Tokens
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self.latency = "5s"
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return gr.Dropdown.update(choices=["4K", "16K"], value="4K")
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def define_cost_per_token(model, context_length):
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if model == "GPT-4" and 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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elif model == "GPT-4" and context_length == "32K":
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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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elif model == "GPT-3.5" and 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.model = gr.Dropdown(["GPT-4", "GPT-3.5 Turbo"], value="GPT-4",
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label="OpenAI models",
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interactive=True, visible=False)
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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_second = gr.Number(0.03, visible=False,
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label="($) Price/1K input prompt tokens",
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interactive=False
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)
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self.output_tokens_cost_per_second = gr.Number(0.06, visible=False,
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label="($) 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 [here](https://openai.com/pricing)", interactive=False, visible=False)
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self.model.change(on_model_change, inputs=self.model, outputs=self.context_length).then(define_cost_per_token, inputs=[self.model, self.context_length], outputs=[self.input_tokens_cost_per_second, self.output_tokens_cost_per_second])
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self.context_length.change(define_cost_per_token, inputs=[self.model, self.context_length], outputs=[self.input_tokens_cost_per_second, self.output_tokens_cost_per_second])
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self.labor = gr.Number(0, visible=False,
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label="($) Labor cost per month",
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interactive=True
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)
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def compute_cost_per_token(self, input_tokens_cost_per_second, output_tokens_cost_per_second, labor):
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cost_per_input_token = (input_tokens_cost_per_second / 1000)
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cost_per_output_token = (output_tokens_cost_per_second / 1000)
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return cost_per_input_token, cost_per_output_token, labor
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class OpenSourceLlama2Model(BaseTCOModel):
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def __init__(self):
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self.set_name("(Open source) Llama 2 70B")
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self.set_formula(r"""$CR = \frac{CIT\_1K \times IT + COT\_1K \times OT}{1000}$ <br>
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with: <br>
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CR = Cost per Request <br>
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CIT_1K = Cost per 1000 Input Tokens <br>
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COT_1K = Cost per 1000 Output Tokens <br>
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IT = Input Tokens <br>
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OT = Output Tokens
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""")
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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(2.21, label="VM instance cost ($) per hour", info="Note that this is the cost for a single VM instance, it is doubled in our case since two GPUs are needed",
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interactive=False, visible=False)
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self.input_tokens_cost_per_second = gr.Number(0.00052, visible=False,
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label="($) Price/1K input prompt tokens",
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interactive=False
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)
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self.output_tokens_cost_per_second = gr.Number(0.06656, visible=False,
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label="($) Price/1K output prompt tokens",
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interactive=False
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)
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self.info = gr.Markdown("For the Llama2-70B model, we took the cost per input and output tokens values from the benchmark results [here](https://www.cursor.so/blog/llama-inference#user-content-fn-llama-paper)", interactive=False, visible=False)
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self.labor = gr.Number(1000, visible=False,
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label="($) Labor cost per month",
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interactive=True
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)
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# self.used = gr.Slider(minimum=0.01, value=30., step=0.01, label="% used",
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# info="Percentage of time the GPU is used",
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# interactive=True,
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# visible=False)
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165 |
|
166 |
+
def compute_cost_per_token(self, input_tokens_cost_per_second, output_tokens_cost_per_second, labor):
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167 |
+
cost_per_input_token = (input_tokens_cost_per_second / 1000)
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+
cost_per_output_token = (output_tokens_cost_per_second / 1000)
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+
return cost_per_input_token, cost_per_output_token, labor
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|
171 |
class CohereModel(BaseTCOModel):
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self.model: gr.Dropdown.update(choices=["Default", "Custom"])
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else:
|
194 |
self.model: gr.Dropdown.update(choices=["Default", "Custom"])
|
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+
|
196 |
+
self.labor = gr.Number(0, visible=False,
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197 |
+
label="($) Labor cost per month",
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198 |
+
interactive=True
|
199 |
+
)
|
200 |
|
201 |
+
def compute_cost_per_token(self, model, labor):
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"""Cost per token = """
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203 |
use_case = self.use_case
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214 |
cost_per_input_token = cost_per_1M_tokens / 1000000
|
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cost_per_output_token = cost_per_1M_tokens / 1000000
|
216 |
|
217 |
+
return cost_per_input_token, cost_per_output_token, labor
|
218 |
|
219 |
class ModelPage:
|
220 |
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|
241 |
output += model.get_components_for_cost_computing()
|
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return output
|
243 |
|
244 |
+
def make_model_visible(self, name:str, use_case: gr.Dropdown):
|
245 |
# First decide which indexes
|
246 |
output = []
|
247 |
for model in self.models:
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|
249 |
output+= [gr.update(visible=True)] * len(model.get_components())
|
250 |
# Set use_case and num_users values in the model
|
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model.use_case = use_case
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|
252 |
else:
|
253 |
output+= [gr.update(visible=False)] * len(model.get_components())
|
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return output
|
255 |
|
256 |
def compute_cost_per_token(self, *args):
|
257 |
begin=0
|
258 |
+
current_model = args[-3]
|
259 |
+
current_input_tokens = args[-2]
|
260 |
+
current_output_tokens = args[-1]
|
261 |
for model in self.models:
|
262 |
model_n_args = len(model.get_components_for_cost_computing())
|
263 |
if current_model == model.get_name():
|
264 |
|
265 |
model_args = args[begin:begin+model_n_args]
|
266 |
+
cost_per_input_token, cost_per_output_token, labor_cost = model.compute_cost_per_token(*model_args)
|
267 |
+
model_tco = cost_per_input_token * current_input_tokens + cost_per_output_token * current_output_tokens
|
268 |
formula = model.get_formula()
|
269 |
latency = model.get_latency()
|
270 |
|
271 |
+
return f"Model {current_model} has a cost/request of: ${model_tco}", model_tco, formula, f"The average latency of this model is {latency}", labor_cost
|
272 |
|
273 |
begin = begin+model_n_args
|