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Vokturz
commited on
Commit
•
d37299b
1
Parent(s):
0cc3d3a
added Apple vendor
Browse files- data/gpu_specs.csv +19 -0
- src/app.py +38 -17
data/gpu_specs.csv
CHANGED
@@ -932,3 +932,22 @@ Data Center GPU Max 1100,Ponte Vecchio,"Jan 10th, 2023",PCIe 5.0 x16,"48 GB, HBM
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Data Center GPU Max 1350,Ponte Vecchio,"Jan 10th, 2023",PCIe 5.0 x16,"96 GB, HBM2e, 8192 bit",750 MHz,1200 MHz,14336 / 896 / 0,96.0,Intel,2023
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Data Center GPU Max 1550,Ponte Vecchio,"Jan 10th, 2023",PCIe 5.0 x16,"128 GB, HBM2e, 8192 bit",900 MHz,1600 MHz,16384 / 1024 / 0,128.0,Intel,2023
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Data Center GPU Max Subsystem,Ponte Vecchio,"Jan 10th, 2023",PCIe 5.0 x16,"128 GB, HBM2e, 8192 bit",900 MHz,1565 MHz,16384 / 1024 / 0,128.0,Intel,2023
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932 |
Data Center GPU Max 1350,Ponte Vecchio,"Jan 10th, 2023",PCIe 5.0 x16,"96 GB, HBM2e, 8192 bit",750 MHz,1200 MHz,14336 / 896 / 0,96.0,Intel,2023
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Data Center GPU Max 1550,Ponte Vecchio,"Jan 10th, 2023",PCIe 5.0 x16,"128 GB, HBM2e, 8192 bit",900 MHz,1600 MHz,16384 / 1024 / 0,128.0,Intel,2023
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Data Center GPU Max Subsystem,Ponte Vecchio,"Jan 10th, 2023",PCIe 5.0 x16,"128 GB, HBM2e, 8192 bit",900 MHz,1565 MHz,16384 / 1024 / 0,128.0,Intel,2023
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935 |
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M1 8 GB,M1,"Nov 10th, 2020",None,"8 GB, LPDDR4X, 128 bit",None,None,None,8.0,Apple,2020
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936 |
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M1 16 GB,M1,"Nov 10th, 2020",None,"16 GB, LPDDR4X, 128 bit",None,None,None,16.0,Apple,2020
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937 |
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M1 Pro 16 GB,M1 Pro,"Oct 18th, 2021",None,"16 GB, LPDDR5, 256 bit",None,None,None,16.0,Apple,2021
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938 |
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M1 Pro 32 GB,M1 Pro,"Oct 18th, 2021",None,"32 GB, LPDDR5, 256 bit",None,None,None,32.0,Apple,2021
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939 |
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M1 Max 32 GB,M1 Max,"Oct 18th, 2021",None,"32 GB, LPDDR5, 512 bit",None,None,None,32.0,Apple,2021
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940 |
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M1 Max 64 GB,M1 Max,"Oct 18th, 2021",None,"64 GB, LPDDR5, 512 bit",None,None,None,64.0,Apple,2021
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941 |
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M1 Ultra 64 GB,M1 Ultra,"Mar 18th, 2022",None,"64 GB, LPDDR5, 1024 bit",None,None,None,64.0,Apple,2022
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942 |
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M1 Ultra 128 GB,M1 Ultra,"Mar 18th, 2022",None,"128 GB, LPDDR5, 1024 bit",None,None,None,128.0,Apple,2022
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943 |
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M2 8 GB,M2,"Jun 24th, 2022",None,"8 GB, LPDDR5, 128 bit",None,None,None,8.0,Apple,2022
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944 |
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M2 16 GB,M2,"Jun 10th, 2020",None,"16 GB, LPDDR5, 128 bit",None,None,None,16.0,Apple,2022
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M2 24 GB,M2,"Jun 10th, 2020",None,"24 GB, LPDDR5, 128 bit",None,None,None,24.0,Apple,2022
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M2 Pro 32 GB,M2 Pro,"Jan 17th, 2023",None,"32 GB, LPDDR5, 256 bit",None,None,None,32.0,Apple,2023
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M2 Pro 64 GB,M2 Pro,"Jan 17th, 2023",None,"64 GB, LPDDR5, 256 bit",None,None,None,64.0,Apple,2023
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948 |
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M2 Max 32 GB,M2 Max,"Jan 17th, 2020",None,"32 GB, LPDDR5, 512 bit",None,None,None,32.0,Apple,2023
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949 |
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M2 Max 64 GB,M2 Max,"Jan 17th, 2020",None,"64 GB, LPDDR5, 512 bit",None,None,None,64.0,Apple,2023
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950 |
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M2 Max 96 GB,M2 Max,"Jan 17th, 2020",None,"96 GB, LPDDR5, 512 bit",None,None,None,96.0,Apple,2023
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951 |
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M2 Ultra 64 GB,M2 Ultra,"Jun 13th, 2023",None,"64 GB, LPDDR5, 1024 bit",None,None,None,64.0,Apple,2023
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952 |
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M2 Ultra 128 GB,M2 Ultra,"Jun 13th, 2023",None,"128 GB, LPDDR5, 1024 bit",None,None,None,128.0,Apple,2023
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M2 Ultra 192 GB,M2 Ultra,"Jun 13th, 2023",None,"192 GB, LPDDR5, 1024 bit",None,None,None,192.0,Apple,2023
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src/app.py
CHANGED
@@ -27,22 +27,32 @@ def get_mistralai_table():
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model = get_model("mistralai/Mistral-7B-v0.1", library="transformers", access_token="")
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return calculate_memory(model, ["float32", "float16/bfloat16", "int8", "int4"])
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-
def show_gpu_info(info, trainable_params=0):
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for var in ['Inference', 'Full Training Adam', 'LoRa Fine-tuning']:
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_info = info.loc[var]
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if
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else:
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-
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func(msg, icon=icon)
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@@ -65,7 +75,6 @@ with col.expander("Information", expanded=True):
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st.latex(r"""\text{Memory}_\text{Inference} \approx \text{Model Size} \times 1.2""")
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st.markdown("""- For LoRa Fine-tuning, I'm asuming a **16-bit** dtype of trainable parameters. The formula (in terms of GB) is""")
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st.latex(r"\text{Memory}_\text{LoRa} \approx \text{Model Size} + \left(\text{ \# trainable Params}_\text{Billions}\times\frac{16}{8} \times 4\right) \times 1.2")
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st.markdown("- You can understand `int4` as models in `GPTQ-4bit`, `AWQ-4bit` or `Q4_0 GGUF/GGML` formats")
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access_token = st.sidebar.text_input("Access token")
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model_name = st.sidebar.text_input("Model name", value="mistralai/Mistral-7B-v0.1")
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@@ -89,7 +98,7 @@ if model_name not in st.session_state:
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st.session_state['actual_model'] = model_name
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gpu_vendor = st.sidebar.selectbox("GPU Vendor", ["NVIDIA", "AMD", "Intel"])
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# year = st.sidebar.selectbox("Filter by Release Year", list(range(2014, 2024))[::-1], index=None)
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gpu_info = gpu_specs[gpu_specs['Vendor'] == gpu_vendor].sort_values('Product Name')
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# if year:
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@@ -122,6 +131,10 @@ _memory_table.columns = ['Inference', 'Full Training Adam', 'LoRa Fine-tuning']
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_memory_table = _memory_table.stack().reset_index()
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_memory_table.columns = ['dtype', 'Variable', 'Number of GPUs']
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col1, col2 = st.columns([1,1.3])
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with col1:
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st.write(f"#### [{model_name}](https://huggingface.co/{model_name}) ({custom_ceil(memory_table.iloc[3,0],1):.1f}B)")
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@@ -129,15 +142,23 @@ with col1:
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tabs = st.tabs(dtypes)
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for dtype, tab in zip(dtypes, tabs):
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with tab:
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info = _memory_table[_memory_table['dtype'] == dtype].set_index('Variable')
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show_gpu_info(info, lora_pct)
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st.write(memory_table.iloc[[0, 1, 2, 4]])
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with col2:
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num_colors= 4
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colors = [px.colors.sequential.RdBu[int(i*(len(px.colors.sequential.RdBu)-1)/(num_colors-1))] for i in range(num_colors)]
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fig = px.bar(_memory_table, x='Variable', y='Number of GPUs', color='dtype', barmode='group', color_discrete_sequence=colors)
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fig.update_layout(title=dict(text=f"Number of GPUs required for<br> {get_name(gpu)}", font=dict(size=25))
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, xaxis_tickfont_size=14, yaxis_tickfont_size=16, yaxis_dtick='1')
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st.plotly_chart(fig, use_container_width=True)
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model = get_model("mistralai/Mistral-7B-v0.1", library="transformers", access_token="")
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return calculate_memory(model, ["float32", "float16/bfloat16", "int8", "int4"])
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def show_gpu_info(info, trainable_params=0, vendor=""):
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for var in ['Inference', 'Full Training Adam', 'LoRa Fine-tuning']:
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_info = info.loc[var]
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if vendor != "Apple":
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if _info['Number of GPUs'] >= 3:
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func = st.error
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icon = "⛔"
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elif _info['Number of GPUs'] == 2:
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func = st.warning
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icon = "⚠️"
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else:
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func = st.success
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icon = "✅"
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msg = f"You require **{_info['Number of GPUs']}** GPUs for **{var}**"
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if var == 'LoRa Fine-tuning':
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msg += f" ({trainable_params}%)"
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else:
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if _info['Number of GPUs']==1:
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msg = f"You can run **{var}**"
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func = st.success
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icon = "✅"
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else:
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msg = f"You cannot run **{var}**"
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func = st.error
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icon = "⛔"
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func(msg, icon=icon)
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st.latex(r"""\text{Memory}_\text{Inference} \approx \text{Model Size} \times 1.2""")
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st.markdown("""- For LoRa Fine-tuning, I'm asuming a **16-bit** dtype of trainable parameters. The formula (in terms of GB) is""")
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st.latex(r"\text{Memory}_\text{LoRa} \approx \text{Model Size} + \left(\text{ \# trainable Params}_\text{Billions}\times\frac{16}{8} \times 4\right) \times 1.2")
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access_token = st.sidebar.text_input("Access token")
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model_name = st.sidebar.text_input("Model name", value="mistralai/Mistral-7B-v0.1")
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st.session_state['actual_model'] = model_name
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gpu_vendor = st.sidebar.selectbox("GPU Vendor", ["NVIDIA", "AMD", "Intel", "Apple"])
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# year = st.sidebar.selectbox("Filter by Release Year", list(range(2014, 2024))[::-1], index=None)
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gpu_info = gpu_specs[gpu_specs['Vendor'] == gpu_vendor].sort_values('Product Name')
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# if year:
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_memory_table = _memory_table.stack().reset_index()
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_memory_table.columns = ['dtype', 'Variable', 'Number of GPUs']
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col1, col2 = st.columns([1,1.3])
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if gpu_vendor == "Apple":
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col.warning("""For M1/M2 Apple chips, PyTorch uses [Metal Performance Shaders (MPS)](https://huggingface.co/docs/accelerate/usage_guides/mps) as backend.\\
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Remember that Apple M1/M2 chips share memory between CPU and GPU.""", icon="⚠️")
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with col1:
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st.write(f"#### [{model_name}](https://huggingface.co/{model_name}) ({custom_ceil(memory_table.iloc[3,0],1):.1f}B)")
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tabs = st.tabs(dtypes)
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for dtype, tab in zip(dtypes, tabs):
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with tab:
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if dtype in ["int4", "int8"]:
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_dtype = dtype.replace("int", "")
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st.markdown(f"`int{_dtype}` refers to models in `GPTQ-{_dtype}bit`, `AWQ-{_dtype}bit` or `Q{_dtype}_0 GGUF/GGML`")
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info = _memory_table[_memory_table['dtype'] == dtype].set_index('Variable')
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show_gpu_info(info, lora_pct, gpu_vendor)
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st.write(memory_table.iloc[[0, 1, 2, 4]])
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with col2:
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extra = ""
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if gpu_vendor == "Apple":
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st.warning("This graph is irrelevant for M1/M2 chips as they can't run in parallel.", icon="⚠️")
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extra = "⚠️"
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num_colors= 4
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colors = [px.colors.sequential.RdBu[int(i*(len(px.colors.sequential.RdBu)-1)/(num_colors-1))] for i in range(num_colors)]
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fig = px.bar(_memory_table, x='Variable', y='Number of GPUs', color='dtype', barmode='group', color_discrete_sequence=colors)
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fig.update_layout(title=dict(text=f"{extra} Number of GPUs required for<br> {get_name(gpu)}", font=dict(size=25))
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, xaxis_tickfont_size=14, yaxis_tickfont_size=16, yaxis_dtick='1')
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st.plotly_chart(fig, use_container_width=True)
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+
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