mirror of
https://github.com/ggerganov/llama.cpp.git
synced 2024-11-11 21:39:52 +00:00
261 lines
7.5 KiB
Swift
261 lines
7.5 KiB
Swift
import Foundation
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import llama
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let arguments = CommandLine.arguments
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// Check that we have at least one argument (the model path)
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guard arguments.count > 1 else {
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print("Usage: swift MODEL_PATH [PROMPT] [PARALLEL]")
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exit(1)
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}
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let modelPath: String = arguments[1]
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let prompt: String = arguments.count > 2 ? arguments[2] : "Hello my name is"
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let n_parallel: Int = arguments.count > 3 && Int(arguments[3]) != nil ? Int(arguments[3])! : 1
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// total length of the sequences including the prompt
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let n_len: Int = 32
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// init LLM
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llama_backend_init(false)
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defer {
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llama_backend_free()
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}
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let model_params = llama_model_default_params()
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guard let model = llama_load_model_from_file(modelPath.cString(using: .utf8), model_params) else {
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print("Failed to load model")
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exit(1)
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}
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defer {
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llama_free_model(model)
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}
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var tokens = tokenize(text: prompt, add_bos: true)
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let n_kv_req = UInt32(tokens.count) + UInt32((n_len - Int(tokens.count)) * n_parallel)
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var context_params = llama_context_default_params()
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context_params.seed = 1234
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context_params.n_ctx = n_kv_req
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context_params.n_batch = UInt32(max(n_len, n_parallel))
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context_params.n_threads = 8
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context_params.n_threads_batch = 8
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let context = llama_new_context_with_model(model, context_params)
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guard context != nil else {
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print("Failed to initialize context")
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exit(1)
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}
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defer {
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llama_free(context)
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}
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let n_ctx = llama_n_ctx(context)
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print("\nn_len = \(n_len), n_ctx = \(n_ctx), n_batch = \(context_params.n_batch), n_parallel = \(n_parallel), n_kv_req = \(n_kv_req)\n")
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if n_kv_req > n_ctx {
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print("error: n_kv_req (%d) > n_ctx, the required KV cache size is not big enough\n", n_kv_req)
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exit(1)
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}
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var buffer: [CChar] = []
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for id: llama_token in tokens {
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print(token_to_piece(token: id, buffer: &buffer) ?? "", terminator: "")
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}
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print("\n")
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var batch = llama_batch_init(max(Int32(tokens.count), Int32(n_parallel)), 0, 1)
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defer {
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llama_batch_free(batch)
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}
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// evaluate the initial prompt
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batch.n_tokens = Int32(tokens.count)
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for (i, token) in tokens.enumerated() {
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batch.token[i] = token
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batch.pos[i] = Int32(i)
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batch.n_seq_id[i] = 1
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// batch.seq_id[i][0] = 0
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// TODO: is this the proper way to do this?
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if let seq_id = batch.seq_id[i] {
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seq_id[0] = 0
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}
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batch.logits[i] = 0
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}
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// llama_decode will output logits only for the last token of the prompt
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batch.logits[Int(batch.n_tokens) - 1] = 1
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if llama_decode(context, batch) != 0 {
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print("llama_decode() failed")
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exit(1)
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}
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for i in 1 ..< n_parallel {
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llama_kv_cache_seq_cp(context, 0, Int32(i), 0, batch.n_tokens)
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}
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if n_parallel > 1 {
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print("generating \(n_parallel) sequences ...\n")
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}
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var streams: [String] = .init(repeating: "", count: n_parallel)
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var streamBuffers: [[CChar]] = .init(repeating: [], count: n_parallel)
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var i_batch = [Int32](repeating: batch.n_tokens - 1, count: n_parallel)
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var n_cur = batch.n_tokens
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var n_decode = 0
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let t_main_start = ggml_time_us()
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while n_cur <= n_len {
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// prepare the next batch
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batch.n_tokens = 0
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// sample the next token for each parallel sequence / stream
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for i in 0 ..< n_parallel {
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if i_batch[i] < 0 {
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// the stream has already finished
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continue
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}
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var n_vocab = llama_n_vocab(model)
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var logits = llama_get_logits_ith(context, i_batch[i])
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var candidates: [llama_token_data] = .init(repeating: llama_token_data(), count: Int(n_vocab))
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for token_id in 0 ..< n_vocab {
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candidates.append(llama_token_data(id: token_id, logit: logits![Int(token_id)], p: 0.0))
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}
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var candidates_p: llama_token_data_array = .init(
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data: &candidates,
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size: candidates.count,
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sorted: false
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)
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let top_k: Int32 = 40
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let top_p: Float = 0.9
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let temp: Float = 0.4
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llama_sample_top_k(context, &candidates_p, top_k, 1)
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llama_sample_top_p(context, &candidates_p, top_p, 1)
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llama_sample_temp(context, &candidates_p, temp)
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let new_token_id = llama_sample_token(context, &candidates_p)
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// const llama_token new_token_id = llama_sample_token_greedy(ctx, &candidates_p);
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// is it an end of stream? -> mark the stream as finished
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if new_token_id == llama_token_eos(model) || n_cur == n_len {
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i_batch[i] = -1
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// print("")
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if n_parallel > 1 {
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print("stream \(i) finished at n_cur = \(n_cur)")
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}
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continue
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}
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let nextStringPiece = token_to_piece(token: new_token_id, buffer: &streamBuffers[i]) ?? ""
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// if there is only one stream, we print immediately to stdout
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if n_parallel == 1 {
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print(nextStringPiece, terminator: "")
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}
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streams[i] += nextStringPiece
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// push this new token for next evaluation
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batch.token[Int(batch.n_tokens)] = new_token_id
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batch.pos[Int(batch.n_tokens)] = n_cur
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batch.n_seq_id[Int(batch.n_tokens)] = 1
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if let seq_id = batch.seq_id[Int(batch.n_tokens)] {
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seq_id[0] = Int32(i)
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}
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batch.logits[Int(batch.n_tokens)] = 1
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i_batch[i] = batch.n_tokens
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batch.n_tokens += 1
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n_decode += 1
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}
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// all streams are finished
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if batch.n_tokens == 0 {
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break
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}
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n_cur += 1
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// evaluate the current batch with the transformer model
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if llama_decode(context, batch) != 0 {
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print("llama_decode() failed")
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exit(1)
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}
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}
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if n_parallel > 1 {
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print("\n")
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for (i, stream) in streams.enumerated() {
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print("sequence \(i):\n\n\(prompt)\(stream)\n")
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}
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}
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let t_main_end = ggml_time_us()
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print("decoded \(n_decode) tokens in \(String(format: "%.2f", Double(t_main_end - t_main_start) / 1_000_000.0)) s, speed: \(String(format: "%.2f", Double(n_decode) / (Double(t_main_end - t_main_start) / 1_000_000.0))) t/s\n")
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llama_print_timings(context)
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private func tokenize(text: String, add_bos: Bool) -> [llama_token] {
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let utf8Count = text.utf8.count
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let n_tokens = utf8Count + (add_bos ? 1 : 0)
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let tokens = UnsafeMutablePointer<llama_token>.allocate(capacity: n_tokens)
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let tokenCount = llama_tokenize(model, text, Int32(utf8Count), tokens, Int32(n_tokens), add_bos, /*special tokens*/ false)
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var swiftTokens: [llama_token] = []
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for i in 0 ..< tokenCount {
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swiftTokens.append(tokens[Int(i)])
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}
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tokens.deallocate()
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return swiftTokens
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}
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private func token_to_piece(token: llama_token, buffer: inout [CChar]) -> String? {
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var result = [CChar](repeating: 0, count: 8)
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let nTokens = llama_token_to_piece(model, token, &result, Int32(result.count))
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if nTokens < 0 {
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let actualTokensCount = -Int(nTokens)
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result = .init(repeating: 0, count: actualTokensCount)
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let check = llama_token_to_piece(
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model,
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token,
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&result,
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Int32(result.count)
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)
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assert(check == actualTokensCount)
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} else {
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result.removeLast(result.count - Int(nTokens))
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}
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if buffer.isEmpty, let utfString = String(cString: result + [0], encoding: .utf8) {
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return utfString
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} else {
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buffer.append(contentsOf: result)
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let data = Data(buffer.map { UInt8(bitPattern: $0) })
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if buffer.count >= 4 { // 4 bytes is the max length of a utf8 character so if we're here we need to reset the buffer
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buffer = []
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}
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guard let bufferString = String(data: data, encoding: .utf8) else {
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return nil
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}
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buffer = []
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return bufferString
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}
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}
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