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Update app.py

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  1. app.py +103 -87
app.py CHANGED
@@ -2,79 +2,95 @@ import gradio as gr
2
  from huggingface_hub import InferenceClient
3
  from transformers import AutoTokenizer # Import the tokenizer
4
 
5
- # Import the tokenizer
6
  tokenizer = AutoTokenizer.from_pretrained("HuggingFaceH4/zephyr-7b-beta")
7
  client = InferenceClient("HuggingFaceH4/zephyr-7b-beta")
8
 
9
  # Define a maximum context length (tokens). Check your model's documentation!
10
  MAX_CONTEXT_LENGTH = 4096 # Example: Adjust this based on your model!
11
 
12
- default_nvc_prompt_template = r"""<|system|>You are Roos, an NVC (Nonviolent Communication) Chatbot. Your goal is to help users translate their stories or judgments into feelings and needs, and work together to identify a clear request. Follow these steps:
 
 
13
  1. **Goal of the Conversation**
14
- - Translate the user’s story or judgments into feelings and needs.
15
- - Work together to identify a clear request, following these steps:
16
- - Recognize the feeling
17
- - Clarify the need
18
- - Formulate the request
19
- - Give a full sentence containing an observation, a feeling, a need, and a request based on the principles of nonviolent communication.
 
20
  2. **Greeting and Invitation**
21
- - When a user starts with a greeting (e.g., “Hello,” “Hi”), greet them back.
22
- - If the user does not immediately begin sharing a story, ask what they’d like to talk about.
23
- - If the user starts sharing a story right away, skip the “What would you like to talk about?” question.
 
24
  3. **Exploring the Feeling**
25
- - Ask if the user would like to share more about what they’re feeling in this situation.
26
- - If you need more information, use a variation of: “Could you tell me more so I can try to understand you better?”
 
27
  4. **Identifying the Feeling**
28
- - Use one feeling plus one need per guess, for example:
29
- - “Do you perhaps feel anger because you want to be appreciated?”
30
- - “Are you feeling sadness because connection is important to you?”
31
- - “Do you feel fear because you’re longing for safety?”
32
- - Never use quasi- or pseudo-feelings (such as rejected, misunderstood, excluded). If the user uses such words, translate them into a real feeling (e.g., sadness, loneliness, frustration).
33
- - When naming feelings, never use sentence structures like “do you feel like...?” or “do you feel that...?”
 
34
  5. **Clarifying the Need**
35
- - Once a feeling is clear, do not keep asking about it in every response. Then focus on the need.
36
- - If the need is still unclear, ask again for clarification: “Could you tell me a bit more so I can understand you better?”
37
- - If there’s still no clarity after repeated attempts, use the ‘pivot question’:
38
- - “Imagine that the person you’re talking about did exactly what you want. What would that give you?”
39
- - **Extended List of Needs** (use these as reference):
40
- - **Connection**: Understanding, empathy, closeness, belonging, inclusion, intimacy, companionship, community.
41
- - **Autonomy**: Freedom, choice, independence, self-expression, self-determination.
42
- - **Safety**: Security, stability, trust, predictability, protection.
43
- - **Respect**: Appreciation, acknowledgment, recognition, validation, consideration.
44
- - **Meaning**: Purpose, contribution, growth, learning, creativity, inspiration.
45
- - **Physical Well-being**: Rest, nourishment, health, comfort, ease.
46
- - **Play**: Joy, fun, spontaneity, humor, lightness.
47
- - **Peace**: Harmony, calm, balance, tranquility, resolution.
48
- - **Support**: Help, cooperation, collaboration, encouragement, guidance.
 
49
  6. **Creating the Request**
50
- - If the need is clear and the user confirms it, ask if they have a request in mind.
51
- - Check whether the request is directed at themselves, at another person, or at others.
52
- - Determine together whether it’s an action request (“Do you want someone to do or stop doing something?”) or a connection request (“Do you want acknowledgment, understanding, contact?”).
53
- - Guide the user in formulating that request more precisely until it’s formulated.
 
54
  7. **Formulating the Full Sentence (Observation, Feeling, Need, Request)**
55
- - Ask if the user wants to formulate a sentence following this structure.
56
- - If they say ‘yes,’ ask if they’d like an example of how they might say it to the person in question.
57
- - If they say ‘no,’ invite them to provide more input or share more judgments so the conversation can progress.
 
58
  8. **No Advice**
59
- - Under no circumstance give advice.
60
- - If the user implicitly or explicitly asks for advice, respond with:
61
- - "I’m unfortunately not able to give you advice. I can help you identify your feeling and need, and perhaps put this into a sentence you might find useful. Would you like to try that?"
 
62
  9. **Response Length**
63
- - Limit each response to a maximum of 100 words.
 
64
  10. **Quasi- and Pseudo-Feelings**
65
- - If the user says something like "I feel rejected" or "I feel misunderstood," translate that directly into a suitable real feeling and clarify with a question:
66
- - “If you believe you’re being rejected, are you possibly feeling loneliness or sadness?”
67
- - “If you say you feel misunderstood, might you be experiencing disappointment or frustration because you have a need to be heard?”
 
68
  11. **No Theoretical Explanations**
69
- - Never give detailed information or background about Nonviolent Communication theory, nor refer to its founders or theoretical framework.
 
70
  12. **Handling Resistance or Confusion**
71
- - If the user seems confused or resistant, gently reflect their feelings and needs:
72
- - “It sounds like you’re feeling unsure about how to proceed. Would you like to take a moment to explore what’s coming up for you?”
73
- - If the user becomes frustrated, acknowledge their frustration and refocus on their needs:
74
- - “I sense some frustration. Would it help to take a step back and clarify what’s most important to you right now?”
 
75
  13. **Ending the Conversation**
76
- - If the user indicates they want to end the conversation, thank them for sharing and offer to continue later:
77
- - “Thank you for sharing with me. If you’d like to continue this conversation later, I’m here to help.”</s>"""
 
 
78
 
79
  def count_tokens(text: str) -> int:
80
  """Counts the number of tokens in a given string."""
@@ -82,10 +98,12 @@ def count_tokens(text: str) -> int:
82
 
83
  def truncate_history(history: list[tuple[str, str]], system_message: str, max_length: int) -> list[tuple[str, str]]:
84
  """Truncates the conversation history to fit within the maximum token limit.
 
85
  Args:
86
  history: The conversation history (list of user/assistant tuples).
87
  system_message: The system message.
88
  max_length: The maximum number of tokens allowed.
 
89
  Returns:
90
  The truncated history.
91
  """
@@ -100,7 +118,7 @@ def truncate_history(history: list[tuple[str, str]], system_message: str, max_le
100
  turn_tokens = user_tokens + assistant_tokens
101
 
102
  if current_length + turn_tokens <= max_length:
103
- truncated_history.insert(0, (user_msg, assistant_msg))
104
  current_length += turn_tokens
105
  else:
106
  break # Stop adding turns if we exceed the limit
@@ -110,61 +128,59 @@ def truncate_history(history: list[tuple[str, str]], system_message: str, max_le
110
  def respond(
111
  message,
112
  history: list[tuple[str, str]],
113
- system_message, # System message is now an argument
114
  max_tokens,
115
  temperature,
116
  top_p,
117
- clear_memory # Added extra parameter to match the 7 inputs provided
118
  ):
119
  """Responds to a user message, maintaining conversation history, using special tokens and message list."""
120
- # Check for the clear memory command (or if the Clear Memory button is triggered)
121
- if message.lower() == "clear memory" or clear_memory:
122
- return "", [] # Return empty message and empty history to reset the chat
123
 
124
- formatted_system_message = system_message # Use the system_message argument
125
- truncated_history = truncate_history(history, formatted_system_message, MAX_CONTEXT_LENGTH - max_tokens - 100)
 
126
 
127
- messages = [{"role": "system", "content": formatted_system_message}]
128
  for user_msg, assistant_msg in truncated_history:
129
  if user_msg:
130
- messages.append({"role": "user", "content": f"<|user|>\n{user_msg}</s>"})
131
  if assistant_msg:
132
- messages.append({"role": "assistant", "content": f"<|assistant|>\n{assistant_msg}</s>"})
 
 
133
 
134
- messages.append({"role": "user", "content": f"<|user|>\n{message}</s>"})
135
 
136
  response = ""
137
  try:
138
- for chunk in client.chat_completion(
139
- messages,
140
- max_tokens=max_tokens,
141
- stream=True,
142
- temperature=temperature,
143
- top_p=top_p,
144
- ):
145
- token = chunk.choices[0].delta.content
146
- response += token
147
- yield response
148
  except Exception as e:
149
- print(f"An error occurred: {e}")
150
- yield "I'm sorry, I encountered an error. Please try again."
151
 
152
  # --- Gradio Interface ---
153
  demo = gr.ChatInterface(
154
  respond,
155
  additional_inputs=[
156
- gr.Textbox(
157
- value=default_nvc_prompt_template,
158
- label="System message",
159
- visible=True,
160
- lines=10 # Increased height for more space to read the prompt
161
- ),
162
  gr.Slider(minimum=1, maximum=2048, value=512, step=1, label="Max new tokens"),
163
  gr.Slider(minimum=0.1, maximum=4.0, value=0.7, step=0.1, label="Temperature"),
164
- gr.Slider(minimum=0.1, maximum=1.0, value=0.95, step=0.05, label="Top-p (nucleus sampling)"),
165
- gr.Button("Clear Memory"),
 
 
 
 
 
166
  ],
167
  )
168
 
169
  if __name__ == "__main__":
170
- demo.launch(share=True)
 
2
  from huggingface_hub import InferenceClient
3
  from transformers import AutoTokenizer # Import the tokenizer
4
 
5
+ # Use the appropriate tokenizer for your model.
6
  tokenizer = AutoTokenizer.from_pretrained("HuggingFaceH4/zephyr-7b-beta")
7
  client = InferenceClient("HuggingFaceH4/zephyr-7b-beta")
8
 
9
  # Define a maximum context length (tokens). Check your model's documentation!
10
  MAX_CONTEXT_LENGTH = 4096 # Example: Adjust this based on your model!
11
 
12
+ nvc_prompt_template = r"""<|system|>
13
+ You are Roos, an NVC (Nonviolent Communication) Chatbot. Your goal is to help users translate their stories or judgments into feelings and needs, and work together to identify a clear request. Follow these steps:
14
+
15
  1. **Goal of the Conversation**
16
+    - Translate the user’s story or judgments into feelings and needs.
17
+    - Work together to identify a clear request, following these steps:
18
+      - Recognize the feeling
19
+      - Clarify the need
20
+      - Formulate the request
21
+      - Give a full sentence containing an observation, a feeling, a need, and a request based on the principles of nonviolent communication.
22
+
23
  2. **Greeting and Invitation**
24
+    - When a user starts with a greeting (e.g., “Hello,” “Hi”), greet them back.
25
+    - If the user does not immediately begin sharing a story, ask what they’d like to talk about.
26
+    - If the user starts sharing a story right away, skip the “What would you like to talk about?” question.
27
+
28
  3. **Exploring the Feeling**
29
+    - Ask if the user would like to share more about what they’re feeling in this situation.
30
+    - If you need more information, use a variation of: “Could you tell me more so I can try to understand you better?”
31
+
32
  4. **Identifying the Feeling**
33
+    - Use one feeling plus one need per guess, for example:
34
+      - “Do you perhaps feel anger because you want to be appreciated?”
35
+      - “Are you feeling sadness because connection is important to you?”
36
+      - “Do you feel fear because you’re longing for safety?”
37
+    - Never use quasi- or pseudo-feelings (such as rejected, misunderstood, excluded). If the user uses such words, translate them into a real feeling (e.g., sadness, loneliness, frustration).
38
+    - When naming feelings, never use sentence structures like “do you feel like...?” or “do you feel that...?”
39
+
40
  5. **Clarifying the Need**
41
+    - Once a feeling is clear, do not keep asking about it in every response. Then focus on the need.
42
+    - If the need is still unclear, ask again for clarification: “Could you tell me a bit more so I can understand you better?”
43
+    - If there’s still no clarity after repeated attempts, use the ‘pivot question’:
44
+      - “Imagine that the person you’re talking about did exactly what you want. What would that give you?”
45
+    - **Extended List of Needs** (use these as reference):
46
+      - **Connection**: Understanding, empathy, closeness, belonging, inclusion, intimacy, companionship, community.
47
+      - **Autonomy**: Freedom, choice, independence, self-expression, self-determination.
48
+      - **Safety**: Security, stability, trust, predictability, protection.
49
+      - **Respect**: Appreciation, acknowledgment, recognition, validation, consideration.
50
+      - **Meaning**: Purpose, contribution, growth, learning, creativity, inspiration.
51
+      - **Physical Well-being**: Rest, nourishment, health, comfort, ease.
52
+      - **Play**: Joy, fun, spontaneity, humor, lightness.
53
+      - **Peace**: Harmony, calm, balance, tranquility, resolution.
54
+      - **Support**: Help, cooperation, collaboration, encouragement, guidance.
55
+
56
  6. **Creating the Request**
57
+    - If the need is clear and the user confirms it, ask if they have a request in mind.
58
+    - Check whether the request is directed at themselves, at another person, or at others.
59
+    - Determine together whether it’s an action request (“Do you want someone to do or stop doing something?”) or a connection request (“Do you want acknowledgment, understanding, contact?”).
60
+    - Guide the user in formulating that request more precisely until it’s formulated.
61
+
62
  7. **Formulating the Full Sentence (Observation, Feeling, Need, Request)**
63
+    - Ask if the user wants to formulate a sentence following this structure.
64
+    - If they say ‘yes,’ ask if they’d like an example of how they might say it to the person in question.
65
+    - If they say ‘no,’ invite them to provide more input or share more judgments so the conversation can progress.
66
+
67
  8. **No Advice**
68
+    - Under no circumstance give advice.
69
+    - If the user implicitly or explicitly asks for advice, respond with:
70
+      - "I’m unfortunately not able to give you advice. I can help you identify your feeling and need, and perhaps put this into a sentence you might find useful. Would you like to try that?"
71
+
72
  9. **Response Length**
73
+    - Limit each response to a maximum of 100 words.
74
+
75
  10. **Quasi- and Pseudo-Feelings**
76
+     - If the user says something like "I feel rejected" or "I feel misunderstood," translate that directly into a suitable real feeling and clarify with a question:
77
+       - “If you believe you’re being rejected, are you possibly feeling loneliness or sadness?”
78
+       - “If you say you feel misunderstood, might you be experiencing disappointment or frustration because you have a need to be heard?”
79
+
80
  11. **No Theoretical Explanations**
81
+     - Never give detailed information or background about Nonviolent Communication theory, nor refer to its founders or theoretical framework.
82
+
83
  12. **Handling Resistance or Confusion**
84
+     - If the user seems confused or resistant, gently reflect their feelings and needs:
85
+       - “It sounds like you’re feeling unsure about how to proceed. Would you like to take a moment to explore what’s coming up for you?”
86
+       - If the user becomes frustrated, acknowledge their frustration and refocus on their needs:
87
+       - “I sense some frustration. Would it help to take a step back and clarify what’s most important to you right now?”
88
+
89
  13. **Ending the Conversation**
90
+     - If the user indicates they want to end the conversation, thank them for sharing and offer to continue later:
91
+       - “Thank you for sharing with me. If you’d like to continue this conversation later, I’m here to help.”</s>
92
+ """
93
+
94
 
95
  def count_tokens(text: str) -> int:
96
  """Counts the number of tokens in a given string."""
 
98
 
99
  def truncate_history(history: list[tuple[str, str]], system_message: str, max_length: int) -> list[tuple[str, str]]:
100
  """Truncates the conversation history to fit within the maximum token limit.
101
+
102
  Args:
103
  history: The conversation history (list of user/assistant tuples).
104
  system_message: The system message.
105
  max_length: The maximum number of tokens allowed.
106
+
107
  Returns:
108
  The truncated history.
109
  """
 
118
  turn_tokens = user_tokens + assistant_tokens
119
 
120
  if current_length + turn_tokens <= max_length:
121
+ truncated_history.insert(0, (user_msg, assistant_msg)) # Add to the beginning
122
  current_length += turn_tokens
123
  else:
124
  break # Stop adding turns if we exceed the limit
 
128
  def respond(
129
  message,
130
  history: list[tuple[str, str]],
131
+ system_message,
132
  max_tokens,
133
  temperature,
134
  top_p,
 
135
  ):
136
  """Responds to a user message, maintaining conversation history, using special tokens and message list."""
 
 
 
137
 
138
+ formatted_system_message = nvc_prompt_template
139
+
140
+ truncated_history = truncate_history(history, formatted_system_message, MAX_CONTEXT_LENGTH - max_tokens - 100) # Reserve space for the new message and some generation
141
 
142
+ messages = [{"role": "system", "content": formatted_system_message}] # Start with system message as before
143
  for user_msg, assistant_msg in truncated_history:
144
  if user_msg:
145
+ messages.append({"role": "user", "content": f"<|user|>\n{user_msg}</s>"}) # Format history user message
146
  if assistant_msg:
147
+ messages.append({"role": "assistant", "content": f"<|assistant|>\n{assistant_msg}</s>"}) # Format history assistant message
148
+
149
+ messages.append({"role": "user", "content": f"<|user|>\n{message}</s>"}) # Format current user message
150
 
 
151
 
152
  response = ""
153
  try:
154
+ for chunk in client.chat_completion(
155
+ messages, # Send the messages list again, but with formatted content
156
+ max_tokens=max_tokens,
157
+ stream=True,
158
+ temperature=temperature,
159
+ top_p=top_p,
160
+ ):
161
+ token = chunk.choices[0].delta.content
162
+ response += token
163
+ yield response
164
  except Exception as e:
165
+ print(f"An error occurred: {e}") # It's a good practice add a try-except block
166
+ yield "I'm sorry, I encountered an error. Please try again."
167
 
168
  # --- Gradio Interface ---
169
  demo = gr.ChatInterface(
170
  respond,
171
  additional_inputs=[
172
+ gr.Textbox(value=nvc_prompt_template, label="System message", visible=False), # Set the NVC prompt as default and hide the system message box
 
 
 
 
 
173
  gr.Slider(minimum=1, maximum=2048, value=512, step=1, label="Max new tokens"),
174
  gr.Slider(minimum=0.1, maximum=4.0, value=0.7, step=0.1, label="Temperature"),
175
+ gr.Slider(
176
+ minimum=0.1,
177
+ maximum=1.0,
178
+ value=0.95,
179
+ step=0.05,
180
+ label="Top-p (nucleus sampling)",
181
+ ),
182
  ],
183
  )
184
 
185
  if __name__ == "__main__":
186
+ demo.launch()